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Codex Plan mode one-shot builds, GPT‑5.3 Codex hits Cursor, and harness-first eval loops mature
Feb 10
7 min read
139 docs
Jediah Katz
Harrison Chase
Salvatore Sanfilippo
+17
Codex Plan mode is producing credible “one-shot build” reports from experienced engineers, while GPT-5.3 Codex lands in Cursor with a notable safety classification and safeguards. Also: practical harness patterns (tracing, checklists, undo) and a sharp warning that unfamiliar context formats can create a brutal “grep tax.”

🔥 TOP SIGNAL

A repeatable “idea → shipped app” loop is emerging around Codex Plan mode: one engineer reports refining an idea in ChatGPT, pasting the full chat into Codex Plan mode, selecting Codex’s suggested options, and hitting run—after which Codex “built everything in one shot,” and the output was “flawless” on careful review (from a dev with 15 years’ experience) . Romain Huet (OpenAI, working on Codex) frames the bottleneck shift bluntly: “Code is no longer the barrier. Imagination is.”


🛠️ TOOLS & MODELS

  • OpenAI Codex app — “Plan mode” one-shot builds (practitioner report)

    • Workflow claim: paste the entire ChatGPT refinement into Codex Plan mode, choose suggested options, run once → “built everything in one shot” / “flawless” .
    • Greg Brockman amplifies the same report and tells people to “try the codex app!”.
  • GPT-5.3 Codex → Cursor (availability + safety note)

    • Cursor: GPT-5.3 Codex is now available in Cursor, and is “noticeably faster than 5.2” and “preferred” by many of their engineers .
    • Jediah Katz: Cursor shipped ASAP because people “have been loving the model,” and says it’s the first model rated “high cybersecurity risk” by OAI, with Cursor/OpenAI collaborating on safeguards .
    • Dispute to track: Teknium suggests OpenAI “withhold” the model from Cursor ; robinbers counters: “they’re not withholding anything” and argues Cursor likely already has access/optimizations underway .
  • Codex 5.3 behavior shift (prompting ergonomics)

    • Peter Steinberger: Codex 5.3 is “more trigger-friendly” than 5.2; a simple “discuss” no longer reliably stays in discussion mode, so he switched to “give me options” to prevent it from running ahead writing code .
  • Claude Opus 4.6 — strong arena wins + mixed agent temperament reports

    • swyx: running large-scale randomized tests in arena mode; says Opus 4.6 beats other models consistently, with “>60% winrate” as a clear margin .
    • swyx (Opus 4.5 vs 4.6): win-rate bump 11.5% (nonthinking) and 23% (with thinking) inside Windsurf arena mode .
    • Qualities swyx calls out: diligence, willingness to write throwaway tests, strong tables, great performance profiling, faster termination on simple questions, and strong chain-of-thought communication .
    • Contrast: an atzydev report says Opus 4.6 is intelligent but “greatly overthinks/gets anxious” and that subagents didn’t help much for them .
  • Cursor — Composer 1.5 (new model release, positioning claim)

    • Cursor announces Composer 1.5 available now; says it balances “intelligence and speed” .
    • Aman Sanger claims: “We trained the best coding model in the world under 1T parameters.”
  • LangChain Deep Agents + LangSmith — harness-first improvements + eval tooling

    • Deep Agents described as a harness to customize agents via prompts/tools/hooks, plus multi-model usage (example: Codex 5.3 + Opus 4.6) .
    • “Harness improvements can yield bigger improvements than switching models” (as stated in the LangChain discussion) .
  • Context engineering for file-native agents (paper + “grep tax”)

    • Damon McMillan paper summary (via Simon Willison): 9,649 experiments across 11 models, 4 formats (YAML/Markdown/JSON/TOON), schemas 10 to 10,000 tables.
    • Frontier vs OSS: frontier models (Opus 4.5, GPT-5.2, Gemini 2.5 Pro) beat leading open-source models (DeepSeek V3.2, Kimi K2, Llama 4) .
    • Format pitfall: TOON is smaller, but models’ unfamiliarity caused big token overhead (“grep tax”): +138% tokens at 500 tables, +740% at 10,000 tables vs YAML (Claude scale experiments) .
  • OpenClaw v2026.2.9 (release)

  • 🧿oracle (release)

  • Antigravity — Undo as a safety net

    • Undo button is a “time machine” that reverts the entire last turn (codebase + conversation), meant as a safety net for complex refactors and feature work .
    • If an implementation has unexpected side effects, you can “instantly reset and try again” .

💡 WORKFLOWS & TRICKS

  • Codex Plan mode: “chat → plan → run” (copy/paste workflow)

    1. Refine your idea in ChatGPT .
    2. Copy the entire chat into Codex Plan mode.
    3. Choose Codex’s suggested options and hit run .
    4. Treat the output like code review: the report explicitly says they reviewed carefully; “It was flawless.”
  • If Codex 5.3 starts executing when you wanted discussion: change the prompt shape

    • Steinberger’s workaround: replace “discuss” with “give me options” to keep it from auto-running into implementation .
  • Observability-driven agent improvement (LangSmith traces → datasets → harness changes)

    • Ship agents early to see real user behavior and build test sets from what people actually do .
    • Build offline eval datasets from production traces: ship → collect traces → turn failure states into test cases and iterate prompts/tools .
    • Use deterministic harness hooks to catch “agent pathologies” like re-editing the same file 5–6 times, then force a step-back / replan .
    • Add verification middleware before the agent finishes: generate tests, lint, and apply coding best practices for feedback loops .
    • Automate trace triage: fetch traces, group failure modes, propose fixes, and generate a report—then do human review in parallel .
  • Benchmark loop detail worth copying: don’t just change models—track harness regressions

    • In the LangChain workflow, they run Terminal Bench (89 tasks) and cite results like 65.2 pass rate on “Codex 5.2 extra high,” then re-run on other models to compare changes .
  • .NET/C# guardrails for agentic coding (reduce style drift + enforce quality)

    • Add a strong style constraint in your agent instructions: “only use .NET 10 code style” to reduce variance across eras of training data .
    • Use Roslyn analyzers to create “back pressure” .
    • Turn warnings up and make them fail builds: “warnings should fail builds” .
  • OpenClaw deployment (Fly.io recipe)

    • Kent C. Dodds: fork and deploy via GitHub Actions secrets (repo: https://github.com/kentcdodds/flying-jarvis) .
    • Additional setup mentions: Cloudflare tunnel for control UI + Discord bot token, etc. .
  • Context format gotcha: token-minimal isn’t always token-cheap

    • Simon Willison highlights TOON’s “grep tax” when the model isn’t familiar with the format—token use can explode over multiple iterations even if the file is smaller .

👤 PEOPLE TO WATCH

  • Romain Huet (OpenAI, Codex) — crisp product thesis: “Code is no longer the barrier. Imagination is.”
  • Greg Brockman (OpenAI) — actively pointing people to try the Codex app and amplifying “one-shot build” reports .
  • Jediah Katz (Cursor) — high-signal distribution + safety collaboration details for GPT-5.3 Codex in Cursor (including “high cybersecurity risk” classification) .
  • Peter Steinberger — practical operator notes on model behavior changes (“trigger-friendly” Codex 5.3) and shipping OpenClaw releases .
  • swyx — running large-scale arena testing and reporting both win-rates and qualitative coding behaviors for Opus 4.6 .
  • Simon Willison — reliably surfaces sharp paper takeaways, and flags the human cost: LLM productivity boosts can be “exhausting” and cognitively intense .

🎬 WATCH & LISTEN

1) LangSmith trace analyzer: turn traces into failure clusters + fix proposals (and keep humans in the loop)

Source: LangChain — Agent Observability Powers Agent Evaluation
Timestamp: ~29:55–32:00
Hook: A concrete pattern: fetch traces, group failure modes, propose fixes, auto-generate a report, then do human review in parallel—plus a real benchmark datapoint (65.2 pass rate on Codex 5.2 extra high) .

2) Why “concept mastery” matters more than API familiarity when using coding agents

Source: Salvatore Sanfilippo — I junior non maturano in senior a causa della AI?
Timestamp: ~06:26–11:03
Hook: Sanfilippo argues strong results come from understanding core concepts (systems constraints, architecture), not memorizing APIs—he gives a firsthand example of writing Metal/MPS code successfully via AI without prior Metal experience by leaning on conceptual grounding .


📊 PROJECTS & REPOS

Editorial take: The winners aren’t just “better models”—they’re teams building control surfaces (options prompts, undo, checklists) and tight feedback loops (tracing → evals → harness tweaks) to keep agent speed from turning into agent chaos.

ChatGPT tests ads as Codex 5.3 and Opus 4.6 intensify the post-benchmark coding-agent race
Feb 10
8 min read
211 docs
Anthropic
Jediah Katz
Harrison Chase
+18
OpenAI starts testing ads in ChatGPT’s Free/Go tiers and lays out trust and privacy principles. Meanwhile, the coding-agent race heats up with GPT-5.3-Codex rolling into major dev tools, strong arena signals for Claude Opus 4.6, and new benchmarks (AIRS-Bench) that make end-to-end “research agents” harder to hand-wave.

ChatGPT begins testing ads (with a trust-first rubric)

OpenAI is rolling out a test of ads in ChatGPT to a subset of Free and Go users in the U.S. . OpenAI says the goal is to keep ChatGPT free with fewer limits while protecting the trust users place in it for important/personal tasks .

  • Ads won’t affect answers: OpenAI says ads do not influence ChatGPT’s responses, and will be labeled as sponsored and visually separated from the model output .
  • Who sees ads: Ads are shown to Free and Go tiers; no ads for Pro, Plus, and Enterprise.
  • Design principles highlighted in the podcast: keeping answers independent from ads , not using sensitive chats for ads , offering transparency/controls (including clearing data and turning off personalization) , and explicitly prioritizing user trust over user value, advertiser value, and revenue.

Why it matters: This is a major product and business-model shift for a mass-market AI assistant, and OpenAI is explicitly framing it as a tradeoff to fund higher free-tier usage limits rather than making the free experience overly constrained .

More: http://openai.com/index/testing-ads-in-chatgpt/


Coding agents accelerate: GPT-5.3-Codex distribution expands, Opus 4.6 climbs

GPT-5.3-Codex rolls out to mainstream dev surfaces (with added security work)

GPT-5.3-Codex is rolling out in Cursor, GitHub, and VS Code. Sam Altman said OpenAI is moving to get it to all API customers, but noted extra work because this is OpenAI’s first model with a high bar for cybersecurity.

Cursor integration notes:

  • Cursor says GPT-5.3 Codex is available and noticeably faster than 5.2, becoming a preferred model for many engineers .
  • Cursor’s team described it as the first model rated “high cybersecurity risk” by OpenAI, and said they collaborated on safeguards against abuse .
  • Martin Casado reported that in his testing it “picked up… the auth issues” he’d been investigating .

Why it matters: The story is shifting from model announcements to distribution + safety gating: getting coding agents into the default tools (IDE, repo, editor) while treating cybersecurity risk as a first-class launch constraint .

Codex app adoption continues to spike

OpenAI says the Codex App saw more than 1 million downloads in its first week and 60+% growth in overall Codex users last week . Altman said Codex will remain available to Free/Go users after the promotion (with possible limit reductions) to keep it broadly accessible for trying and building .

Why it matters: Rapid consumer uptake suggests coding agents are crossing from “pro tool” into “mass trial,” and OpenAI is signaling it wants that funnel to stay open beyond the initial promo window .

Claude Opus 4.6: strong arena signals + broader access moves

In blind arena testing, swyx reported Opus 4.6 showed an 11.5% win-rate bump without “thinking,” rising to 23% with “thinking” enabled in a windsurf arena mode setup . He also described it as “destroying every other model” in their Frontier arena, citing traits like diligence, writing throwaway tests, strong tables, and performance profiling .

Adoption and packaging signals:

  • Anthropic says nonprofits on Team and Enterprise now get Claude Opus 4.6 at no extra cost.
  • Perplexity upgraded its Advanced Deep Research harness from Opus 4.5 to Opus 4.6, saying this furthers its lead on Google’s DSQA benchmark; rollout is immediate for Max users and gradual for Pro users .

Why it matters: Opus 4.6 appears to be gaining momentum both via competitive eval results and via distribution decisions (nonprofit access, research harness upgrades) that can expand real-world feedback loops quickly .


“Post-benchmark” reality: evaluation harnesses and new benchmarks for agents

Coding-agent evaluation is becoming a product discipline

In a LangChain webinar on agent observability and evaluation, the speakers noted that new model releases make this a fast-moving target, with Opus available via API and the newest Codex not yet available via API at the time of discussion . They shared that Codex 5.2 achieved a 65.2% pass rate in their TerminalBench 2.0 harness run , and highlighted a “really big increase” from Codex 5.2 to Codex 5.3 in their tracking charts .

They described evaluation approaches spanning single-step, full-turn, and multi-turn tests , and using traces to detect failure modes like repeated edits spiraling into failure—then injecting harness interventions and re-evaluating .

Why it matters: As agent behavior becomes less legible from benchmark deltas alone, harness design, traces, and iterative eval loops are increasingly the differentiator between “cool model” and “reliable agent” in production settings .

Meta FAIR releases AIRS-Bench for end-to-end ML research agents

Meta FAIR released AIRS-Bench, a benchmark to evaluate whether an AI agent can perform the full ML research lifecycle (ideation, experiment design, iterative refinement) across 20 tasks sourced from recent ML papers, with no baseline code provided.

Results from testing 14 agent configurations:

  • Agents beat human SOTA in 4/20 tasks (sometimes with novel solutions, e.g., a two-level stacked ensemble) .
  • They missed SOTA on the other 16 tasks; overall average normalized score was 23.4%.
  • Only 58.8% of attempts produced a valid submission at all .

Links: arXiv https://arxiv.org/abs/2602.06855; code https://github.com/facebookresearch/airs-bench

Why it matters: AIRS-Bench makes “research agent” claims testable across the messy end-to-end loop—not just coding correctness—and the low valid-submission rate highlights how much scaffolding still matters .


Research: transfer learning in the ocean, plus “societies of thought” and chip-design limits

DeepMind’s Perch 2.0 transfers from birds to whales

Google DeepMind said Perch 2.0 (trained primarily on terrestrial animals like birds) is performing strongly on underwater acoustics, despite having no underwater audio in training. DeepMind attributes the extension to underwater identification to transfer learning .

Perch 2.0 was evaluated on whale vocalization tasks (distinguishing baleen whale species and killer whale subpopulations) and ranked consistently top or second-best versus pre-trained models across datasets and sample sizes .

Demo/info: https://goo.gle/4rd16sE

Why it matters: This is a concrete example of foundation-model generalization enabling new domain performance (marine ecosystems) without in-domain training data—useful where labeled data collection is hard .

Import AI: reasoning models as multi-persona “societies,” plus chip-design benchmarks and automation

Highlights from Import AI’s roundup:

  • “Societies of thought”: Researchers found RL-trained reasoning models (tested on DeepSeek-R1 and QwQ-32B) show multi-agent-like internal debates with distinct perspectives/personality traits while solving hard problems .
  • Chip design reality check (ChipBench): A new benchmark for AI-aided chip design suggests out-of-the-box frontier models still struggle with real-world Verilog writing/debugging/reference models; the authors report relatively low pass@1 and conclude models remain far from industrial workflow readiness .
  • Huawei AscendCraft: A two-stage LLM pipeline (DSL generation + structured LLM-based lowering/transcompilation) for AscendC kernels achieved 98.1% compilation success and 90.4% functional correctness; 46.2% of generated kernels matched or exceeded PyTorch eager performance in tests .
  • Gemini Aletheia (math discovery): In a study on 700 open Erdős problems, the system surfaced many candidates but human expert review reduced results to a small number of meaningful solves, including 2 “autonomous novel solution” cases (with one described as genuinely interesting) .

Why it matters: Across these threads, the pattern is consistent: candidate generation is accelerating, but verification, scaffolding, and domain-specific structure (benchmarks, DSLs, expert review) remain the gating factors .


Industry + policy signals: capital, compute, and data-center constraints

  • Big tech AI capex: Big Technology cites reporting that big tech plans to spend $650B on AI computing in 2026 .
  • Financing: The same digest notes Nvidia is reportedly nearing a $20B investment in OpenAI as part of OpenAI’s plans to raise another $100B, and that voice AI startup ElevenLabs raised $500M.
  • Regulation / infrastructure: New York lawmakers proposed a three-year pause on new data centers.

Why it matters: Funding and capex numbers continue to climb while data-center siting/expansion faces political constraints—together shaping where model training and inference capacity can realistically scale .


xAI/Grok: growth claims, new modalities, and heavy infrastructure narrative

A post compiling xAI/Grok metrics claimed a 43% surge in app downloads, 29.11% surge in monthly active users, and 15.81% growth in website visits, alongside “all-time highs” in usage/downloads; Elon Musk replied “Good progress” . Separately, Musk highlighted 43% month-over-month downloads growth and shared a post claiming a 30% surge in monthly active users in one month of 2026 .

The same compiled post also claimed:

  • Launches of Grok Imagine 1.0 (including API) and rollout of 10-second, 720p videos in Imagine .
  • xAI announced a $20B Series E funding round and said it became the first AI company to run a gigawatt-scale training cluster.

On product modality, Musk promoted Grok Voice + Live Camera, describing a real-time “point, ask, get answers” experience .

Why it matters: xAI’s public narrative is pairing consumer growth and multimodal UX with an explicit “compute scale” storyline—positioning distribution + infrastructure as core competitive moats .


Security: AI-driven vulnerability discovery hits critical open-source targets

A post highlighted AI cybersecurity research that reported discovering 12 of 12 new OpenSSL zero-days, 5 CVEs in curl, and 100+ validated CVEs across critical open-source infrastructure, middleware, and secure apps; Jeff Dean called it a “cool application of AI models to find security vulnerabilities” .

Why it matters: This is a high-impact example of AI being applied to security work where findings can translate directly into ecosystem-wide risk reduction—while also reinforcing why labs are treating advanced models as potential cybersecurity risks to manage carefully .


Governance perspective: “reputation collectives” as a template for voluntary AI safety

A ChinAI writeup summarizes peer-reviewed research arguing that in high-risk industries, international associations can raise safety standards via shared reputation—using confidential internal benchmarking and peer reviews rather than public naming-and-shaming . It suggests that if AI develops a collective safety reputation, voluntary initiatives may work better with low barriers to entry, avoiding public shaming, and emphasizing peer-to-peer learning .

Separately, ChinAI notes the China AI Industry Alliance’s “AI Security and Safety Commitments” have 22 signatories, with 18 disclosing practices via a voluntary initiative; however, the examples were presented as an unattributed list of typical practices .

Why it matters: As voluntary AI safety commitments proliferate, the design details (transparency vs. confidentiality, membership rules, incentives) may determine whether these efforts meaningfully change practice or remain largely symbolic .

AI compression meets product craft: vibe-coding economics, OKRs with AI, and secure autonomy patterns
Feb 10
12 min read
81 docs
Tony Fadell
Teresa Torres
Nir Eyal
+8
AI is compressing product cycles and even team shapes—shifting the bottleneck toward clarity, taste, and safer systems. This edition covers AI-assisted OKRs, secure agent design patterns, early-stage regression management, and timeboxing tactics for protecting attention.

Big Ideas

1) Execution is getting cheaper; taste + clarity are becoming the bottleneck

Aakash Gupta argues that agentic workflows are collapsing the product development loop from quarters to weeks, and that a PM who can wire Claude Code into an analytics pipeline, CRM, and codebase via MCPs can prototype in an afternoon what used to take a cross-functional team and a fiscal quarter . In the same thread, he frames the shift as: AI tools collapsed the cost of shipping, moving the bottleneck from “can we build this?” to “do we know what’s worth building?”—a product taste problem .

Why it matters: If build time compresses, the differentiator moves upstream: choosing the right problems, defining “good,” and sequencing decisions so teams don’t just ship faster—they ship better.

How to apply:

  • Treat “what’s worth building” as a first-class artifact: explicit problem framing + success criteria before generating implementation plans .
  • Where possible, connect AI tooling directly to the systems where decisions live (analytics/CRM/codebase) so prototypes are informed by real context, not generic outputs .

2) “Early stage” is not funding or headcount; it’s clarity

Tony Fadell’s framing: a viable early-stage company is defined by clarity on the pain, the customer, and why the customer will pay—not by funding, headcount, or a slick deck . Without clarity, you’re “pre-clarity,” and capital only makes confusion more expensive .

“Capital doesn’t create clarity. It just makes confusion more expensive.”

Why it matters: AI can accelerate output, but it can also accelerate confusion. If the org is “pre-clarity,” faster shipping just multiplies rework.

How to apply:

  • In discovery, explicitly test for (1) pain, (2) customer, (3) willingness to pay—before scaling execution .
  • Use AI to speed up exploration, but keep the “clarity checkpoints” human-owned (what problem, for whom, and why they pay) .

3) AI can improve OKRs—if it doesn’t replace the hard parts

In Christina Wodtke’s talk, she warns that direct AI-generated OKRs tend to be generic and unowned, and can encourage outsourcing thinking—citing research that people who use AI to write may struggle to answer questions about the work they present as their own . Her alternative is to use AI as a thinking partner: brainstorm metrics, critique failure modes and gaming risks, and challenge conclusions—while keeping ownership, cadence, and learning at the center .

“You have to be really careful what you outsource… It’s augmented thinking, not outsourced thinking.”

Why it matters: OKRs work because they create focus, decision hygiene, and learning loops. If AI makes them “easy,” it can remove the struggle that creates ownership (which Wodtke links to the IKEA effect) .

How to apply:

  • Use AI to generate options and critiques; keep humans responsible for selecting, committing, and learning .
  • Protect cadence: weekly commitments matter more than perfect wording .

4) “Autonomous AI” needs architectural guardrails, not prompt instructions

The Product Compass describes OpenClaw as giving an AI agent full access to your environment (files/terminal/API keys) with “guardrails” implemented as prompt instructions that injected prompts can override . As a response, the author built Agent One with hard boundaries: a Manager that plans/delegates but cannot touch files or run scripts, and Executors that operate in controlled environments with explicit permissions and approvals .

Why it matters: PMs increasingly evaluate/ship workflows that connect AI to real systems (docs, email, storage, scripts). The difference between “works in a demo” and “safe in production” is often guardrails implemented as architecture.

How to apply:

  • Prefer hard guardrails (permissions, isolation, approvals) over “please don’t” prompt instructions .
  • Keep coordination contracts minimal (context/goal/constraints) so the system spends tokens doing work, not managing bureaucracy .

5) Personal productivity: manage inputs (time + attention), not just outputs

Nir Eyal argues that timeboxing (calendar blocking) beats to-do lists because lists emphasize outputs, while timeboxing allocates the inputs required to produce outcomes—time and attention. He suggests blocking across three domains (you, relationships, work) and protecting reflective work (planning/strategizing/deep thinking) from reactive work (emails/calls/interruptions) .

Why it matters: As AI increases the pace of execution, the constraint often becomes attention fragmentation and reactive overload.

How to apply:

  • Measure success as: “did I do what I said I’d do for the time I promised, without distraction,” not “did I finish everything” .
  • Treat schedule updates like experiments: don’t rewrite today’s plan mid-day; revise future days based on what you learn .

Tactical Playbook

1) An AI-accelerated PM workflow (without losing the plot)

Gupta’s example: PMs integrating Claude Code via MCPs into analytics/CRM/codebase can prototype in an afternoon what used to require a cross-functional quarter .

How to apply (steps):

  1. Identify one loop you want to compress (e.g., insight → prototype → iteration), and wire your AI workflow into the systems that contain the needed context (analytics pipeline, CRM, codebase) via MCPs .
  2. Use the speed to run shorter loops—but keep the bottleneck question explicit: “what’s worth building?” .
  3. Watch for the organizational signal: Gupta frames employer refusal to adopt these tools as meaningful information to “use accordingly” .

2) OKRs with AI: use it to stress-test goals, not to auto-generate them

Wodtke’s playbook combines human ownership + cadence with AI critique.

How to apply (steps):

  1. Set objectives properly: objectives are qualitative and inspirational; key results are quantitative and should be results (not tasks) .
  2. Do the human work first: collaborate on the initial objective; have the team silently free-list possible metrics, then sort and discuss .
  3. Use AI for critique + breadth: ask it for measurement ideas and to explain an OKR from different perspectives (e.g., engineer vs salesperson) . Ask for failure modes, what you might accidentally incentivize, and how OKRs could be gamed .
  4. Add context, not more instructions: use Claude Projects with custom instructions (e.g., “ask clarifying questions,” “KRs are results”) and upload strategy/PRD files so the model can push back with relevant questions .
  5. Run weekly cadence: reinforce focus with weekly Monday commitments . In status updates, track confidence (0–10) and reflect on what was done/not-done and why .
  6. Retro for learning: prefer qualitative storytelling retrospectives (“what happened / what did we learn?”) over binary/decimal scoring . Use AI to summarize status emails and challenge conclusions—without using it to avoid uncomfortable truths .

3) Handling “break → fix → break” in early-stage product: prioritize + test + staff for QA

A non-technical founder described a constant cycle of break/fix/break and uncertainty about whether it’s normal at early stage . Replies emphasized prioritization and pragmatic quality controls.

How to apply (steps):

  1. Prioritize explicitly: at this stage, focus on the highest-benefit work for the least effort; you can’t do everything at once .
  2. Anchor on revenue impact: one reply frames the goal as focusing on what makes money while fixing “hair on fire” issues that cause or prevent money .
  3. Add tests as regressions happen: implement AI-aided unit tests to reduce future regressions (especially for non-hacky features) .
  4. Name the tradeoff: it’s a balance between tidying up tech debt and moving faster while accepting that debt increases the chance of future breaks .
  5. Consider QA capacity: a commenter notes that catching these issues is the job of QA/QC; if you have multiple developers and no QA, making QA a next hire may be appropriate .

4) Timeboxing for PMs: build a schedule that forces tradeoffs (and protects deep work)

Eyal’s approach is explicitly values-driven: values are attributes of your future self, and you can observe real values via how you spend time and money .

How to apply (steps):

  1. Define values and block time across three domains: you, relationships, then work.
  2. Ensure work includes reflective time (planning/strategizing) and doesn’t collapse into purely reactive time .
  3. Use a weekly “agenda sync” with your manager: show your timeboxed calendar and ask them to help prioritize what doesn’t fit .
  4. For urges to distract, use the “10-minute rule”: delay for 10 minutes; Eyal describes urges as peaking and fading like a wave .

5) Building safer AI agents: a PM checklist for autonomy + security

From Agent One’s design and lessons:

How to apply (steps):

  1. Structure delegation as context / goal / constraints (don’t over-prescribe steps and tools) .
  2. Implement hard guardrails (architectural boundaries) instead of soft prompt suggestions (e.g., “ask me before sending email” must be enforced by orchestration) .
  3. Enforce separation of concerns: Manager plans/delegates and never touches files/scripts; Executors do the hands-on work and report back .
  4. Treat prompts as version-controlled code in production systems .
  5. Start with simple memory (data tables) and upgrade only when needed .
  6. Minimize complexity: for many tasks, VPS executor + cloud storage is enough; adding laptop access adds tunnel/timeout complexity that most tasks don’t justify .
  7. Add observability: the author broadcast logs from OpenRouter to LangSmith because n8n’s logs didn’t show tool input parameters on failure .

Case Studies & Lessons

1) Lovable’s “vibe coder” as measurable headcount compression

Gupta cites Lovable hitting $100M ARR in 8 months with 45 people, and scaling past 100 employees at $200M ARR, running at roughly $2M revenue per head—nearly 7× a cited SaaS benchmark of $275K . He describes a “vibe coder” role where one person handled products, campaigns, templates, and internal tools—compressing work that might otherwise span PM, design, frontend, and growth into one seat .

He adds that the individual (Lazar) had no traditional coding background but shipped production-quality apps across partnerships, marketing, community, and growth using AI tools built on Lovable’s platform . The note also characterizes Lovable as a $6.6B company that raised $330M and processes 100,000 new projects per day, scaling this into a formal residency program because “the unit economics already proved out” .

Takeaways for PMs:

  • If these economics hold, organizations will increasingly evaluate PM leverage as “clarity + taste + shipped outcomes,” not role boundaries .
  • Hiring and team design may shift toward “multi-capability builders” who can move from idea to shipped artifact quickly, with PM judgment as the constraint .

2) Agent One: a concrete pattern for “autonomous, but constrained” assistants

The Product Compass positions OpenClaw as unsafe because it grants full environment access with prompt-based guardrails that are vulnerable to prompt injection . Their alternative, Agent One, uses a Manager/Executor split, n8n data tables for memory/sessions, and hard security boundaries (Docker isolation, mounted folder permissions, and tool approvals) . For complex tasks, it uses the “Ralph Wiggum loop” (context reset with session-only state) to avoid long-conversation noise .

Takeaways for PMs:

  • Autonomy without constraints is treated as a liability; constraints should be enforced by system boundaries, not wording .
  • Even frontier models need human judgment to catch inconsistencies and runtime cracks .

3) Claude Code as a “personal retrieval layer” + Zettelkasten for rigorous thinking

Petra Wille describes using Claude Code to search her prior content (books, blog posts, hard drive) while drafting a newsletter about annual reviews/feedback sessions for product leaders . She reports Claude surfaced an extensive list of relevant references, including reminding her she had published a free chapter on giving feedback that she had forgotten .

In the same conversation, Teresa Torres describes applying Zettelkasten as a way of collecting beliefs and examining them: writing atomic notes as claims, attaching evidence and sources, noting limitations, and linking notes to build a rigorous web of reasoning. She uses Claude to help with tedious linking and feedback (e.g., spotting multiple claims per note, missing links) while she focuses on judgment about the claims .

Takeaways for PMs:

  • AI can save time by making large bodies of internal text searchable and reusable across writing, interviews, and customer artifacts .
  • “Critical thinking embodied” can be operationalized: claims → evidence → links → limitations, with AI assisting the mechanics .

Career Corner

1) Your company’s AI posture is a career signal

Gupta’s advice is blunt: “Your employer’s refusal to adopt these tools is information. Use it accordingly.”

How to apply:

  • Treat access to modern agentic tooling as part of your role’s leverage (and as a signal of how fast your org expects you to operate) .

2) Don’t confuse “AI-written” with “PM competence”

A Reddit thread notes it’s harder to spot incompetent PMs because PRDs and docs can “sound like ChatGPT” . Replies argue AI can help with documentation, but gaps show quickly in live settings; one commenter says calls reveal whether someone understands what they wrote, and that leadership isn’t oblivious . Another reply lists areas AI can’t do (presentations, live Q&A, negotiations, stakeholder management, identifying what matters, delivering results) .

How to apply:

  • Invest in “live” PM skills (narrative clarity under questions, negotiation, stakeholder alignment) rather than optimizing only for document production .

3) Skills to double down on: taste, critical thinking, and AI product sense

Multiple sources converge on “taste” as the scarce skill:

  • Gupta frames the post-AI bottleneck as product taste—knowing what’s worth building .
  • Lenny Rachitsky highlights that design skills and taste may become the most important skills in the future, and quotes Lazar advising against starting to learn to code if you haven’t—because you may be optimizing for the wrong skillset .
  • Torres argues that critical thinking—examining beliefs and their dependencies—is a future skill, and describes using Claude to support rigorous research workflows .
  • The Product Compass advises PMs to build (prototypes) to develop AI intuition and AI product sense, emphasizing mental models and transferable skills over specific tools that may become obsolete quickly .

How to apply:

  • Build artifacts to develop AI intuition, but keep your advantage in judgment: claim quality, tradeoffs, and taste .
  • Use AI to challenge your conclusions rather than to smooth over uncertainty .

4) Treat AI like an intern (especially with sensitive data)

A practical safety heuristic from Petra Wille’s discussion: treat AI like a temporary intern—don’t hand it all company data at once; share only what you would share with an intern who’s with you briefly .

Tools & Resources

GPT‑5.3‑Codex rollout (and pause), ChatGPT ads test, and Opus 4.6 tops leaderboards
Feb 10
9 min read
788 docs
Ahmad
Jediah Katz
Claude
+34
GPT-5.3-Codex reaches Cursor, VS Code, and GitHub Copilot with reported speed gains and a heightened cybersecurity classification—then GitHub pauses the rollout for reliability. Also: OpenAI begins testing ads in ChatGPT, Claude Opus 4.6 leads major leaderboards amid token-cost concerns, and new research targets cheaper agent reasoning and more scalable MoE training.

Top Stories

1) GPT-5.3‑Codex expands across IDEs and Copilot—then GitHub pauses the rollout

Why it matters: Coding models are now shipping as default developer infrastructure (Cursor, VS Code, Copilot). Release reliability and safety posture can become just as important as raw capability.

  • Availability/rollout: GPT‑5.3‑Codex is rolling out in Cursor, VS Code (@code), and GitHub/Copilot. GitHub also announced it as generally available for Copilot .
  • Claimed performance: GitHub reports early testing shows 25% faster performance than GPT‑5.2‑Codex on agentic coding tasks, plus improved reasoning/execution in complex workflows . Cursor says it’s “noticeably faster” than 5.2 and preferred by many of their engineers .
  • Safety posture + phased API: OpenAI says this is the first model they’re treating as high cybersecurity capability under their Preparedness Framework, and they’re starting with a small set of API customers while scaling mitigations before expanding access . Cursor’s CEO says OpenAI rated it “high cybersecurity risk” and that Cursor and OpenAI collaborated on safeguards .
  • Reliability update: GitHub says it is pausing the rollout to focus on platform reliability. VS Code’s @code account echoed that users not seeing it are affected by the pause .

Adoption signal: Sam Altman reports the Codex App crossed 1M downloads in its first week and saw 60%+ growth in overall Codex users last week .

2) OpenAI begins testing ads in ChatGPT (U.S., subset of Free + Go)

Why it matters: Ads materially change product incentives and trust expectations for an assistant used for “important and personal tasks.”

  • OpenAI is rolling out a test for ads in ChatGPT to a subset of Free and Go users in the U.S..
  • OpenAI states ads are labeled as sponsored, visually separate from responses, and do not influence ChatGPT’s answers.
  • Stated goal: enable access to ChatGPT “for free with fewer limits,” while protecting trust .
  • OpenAI also released a podcast episode on “ad principles” and how ads in Free/Go tiers expand access, featuring ads lead Asad Awan .

Details: http://openai.com/index/testing-ads-in-chatgpt/

3) Claude Opus 4.6 takes top spots across public leaderboards—while cost/token use becomes a core constraint

Why it matters: Opus 4.6 is being positioned as a frontier coding + agent model, but multiple reports emphasize token hunger and high inference cost, which can shape real-world deployment.

  • Model update: Anthropic introduced Claude Opus 4.6 as an upgrade that “plans more carefully,” sustains agentic tasks longer, works reliably in massive codebases, and catches its own mistakes . Anthropic also says it’s their first Opus-class model with 1M token context in beta .
  • Arena results: AI Arena reports Opus 4.6 is #1 in Code Arena and Text Arena, with “thinking” and “non-thinking” occupying the top two spots across both leaderboards .
  • WeirdML result + token cost: One benchmark report says Opus 4.6 (adaptive) leads WeirdML at 77.9% (vs GPT‑5.2 xhigh at 72.2%), but is “extremely token hungry,” averaging 32k output tokens per request, sometimes failing to finish within 128k tokens.

4) Multi‑Head LatentMoE + “Head Parallelism” claims O(1) communication and up to 1.61× faster MoE training

Why it matters: MoE scalability is often constrained by inter‑GPU communication and load imbalance. This work claims a route to scale expert count while keeping communication predictable.

  • Core idea: Split tokens into “heads” and exchange them evenly across GPUs before routing, so routing and expert compute happen locally, with a single send-back afterward .
  • Claimed benefits: Constant communication independent of expert count, balanced workloads, deterministic communication .
  • Results reported: Up to 1.61× faster training than standard MoE (+EP) with identical model performance; still 1.11× faster with doubled granularity and higher performance .

Paper: https://arxiv.org/abs/2602.04870v1 | Code: https://github.com/kerner-lab/Sparse-GPT-Pretraining

5) GLM‑5 architecture details land in Transformers PRs: ~740B params (~50B active), 200k context features

Why it matters: The open-weights ecosystem is surfacing implementation-level architecture details quickly via framework PRs, shaping what’s easy to run, fine-tune, and compare.

  • A Transformers PR describes GLM‑5 as ~740B parameters with ~50B active, 78 layers, MLA attention “lifted from DeepSeek V3,” and a sparse attention indexer (DeepSeek V3.2) for 200k context.

PR: https://github.com/huggingface/transformers/pull/43858


Research & Innovation

Why it matters: This week’s research cluster is about making agentic reasoning cheaper and more reliable (distilling multi-agent debate, iterative reasoning with learned summarization), plus closing integration gaps for real software work.

Distilling multi-agent debate into a single model: AgentArk

  • AgentArk distills multi-agent debate reasoning into a single LLM via trajectory extraction and targeted fine-tuning—shifting cost from inference time to training time .
  • The strongest method (PAD) preserves multi-agent deliberation structure (verification and error localization) .
  • Reported results (120 experiments): PAD achieves 4.8% average gain over single-agent baselines (up to 30% in-domain) and improves intermediate verification/coherence metrics .

Paper: https://arxiv.org/abs/2602.03955

“Infinite-horizon” reasoning via iterative summaries: InftyThink+

  • InftyThink+ trains models to reason in iterative rounds connected by self-generated summaries, aiming to avoid context window limits and quadratic attention costs .
  • Training is two-stage: supervised cold-start then end-to-end RL that learns summarization and continuation policies .
  • Reported results on DeepSeek‑R1‑Distill‑Qwen‑1.5B include +21pp on AIME24 vs baseline and −32.8% inference latency on AIME25 vs standard reasoning .

Paper: https://arxiv.org/abs/2602.06960

Multi-agent full-stack web dev with execution feedback: FullStack-Agent

  • FullStack-Agent targets a common failure mode: agents generating frontends with mock data while missing functional backends/databases that integrate correctly .
  • It uses three specialized agents (planning, backend coding with HTTP debugging, frontend coding with runtime error monitoring) and validates during generation via “Development-Oriented Testing” .
  • Reported benchmark results show large gains over baselines across frontend/backend/database accuracy on FullStack‑Bench .

Paper: https://arxiv.org/abs/2602.03798

Multi-agent evaluation realism: Google’s 180-agent-config study + a new “Γ” metric proposal

  • Google evaluated 180 agent configurations, reporting multi-agent systems can boost parallelizable tasks by 81% but degrade sequential tasks by 70%.
  • A separate paper proposes a metric Γ that compares multi-agent system performance against a single agent using the same total resource budget; Γ>1 indicates true collaboration gain, Γ≤1 suggests an expensive illusion .

Products & Launches

Why it matters: Distribution is shifting from “a model” to bundled workflows (research harnesses, IDE commands, reproducible eval/tracing) and interactive performance (real-time media + inference stacks).

Perplexity upgrades Deep Research and moves to Opus 4.6

  • Perplexity says it upgraded Deep Research, claiming state-of-the-art performance on leading external benchmarks and improved accuracy/reliability vs other deep research tools .
  • Perplexity says Deep Research now runs on Opus 4.6, improving internal/external benchmark results further .
  • Availability: now for Max users; rolling out to Pro users .

Cursor ships Composer 1.5 (and emphasizes post-training scale)

  • Cursor released Composer 1.5, positioning it as balancing intelligence and speed for interactive coding .
  • A user summary claims Composer 1.5 used “20× scaled RL” on the same pretrained model as Composer 1, and is trained to self-summarize when context runs out . Another post claims post-training compute exceeded pretraining compute for Composer 1.5 .

More: https://cursor.com/blog/composer-1-5

Real-time image-to-image editing (fal) at 10+ FPS

  • fal says it launched real-time image-to-image editing for FLUX.2 Klein at 10+ FPS, emphasizing low latency and hand-tuned kernels .

Playground: https://fal.ai/models/fal-ai/flux-2/klein/realtime/playground

Lightweight inference education + reference stack: “mini-sglang” thread

  • A thread walks through a ~5k-line Python inference engine (“mini-sglang”), highlighting production features and concrete optimizations like radix prefix caching, chunked prefill, overlap scheduling, and CUDA graphs for decode latency .

New developer building blocks

  • Google released Gemini Skills, a “library of skills for the Gemini API, SDK and model interactions” . Repo: https://github.com/google-gemini/gemini-skills.
  • OpenAI says its Platform API docs now redirect to a unified developer hub consolidating API docs, guides, cookbooks, and Codex/ChatGPT Apps content . Hub: https://developers.openai.com/.
  • VS Code workflow composition: a /review command can use Opus 4.6 fast mode, GPT‑5.3‑Codex, and Gemini 3 Pro to review changes and “grade each other’s work” for higher-quality review comments .

Industry Moves

Why it matters: The competitive map is being shaped by distribution partnerships, infra execution, and capital allocation to AI-native products.

Databricks reports $5.4B revenue run-rate and highlights “Genie” product line

  • Databricks’ CEO reports Q4 stats including $5.4B revenue run-rate growing >65% YoY, $1.4B AI revenue run-rate, and being FCF positive for the year .
  • He attributes momentum to GenAI lowering SQL/Python barriers via the “Genie” family (Genie, Data Science Genie, Data Engineer Genie) .

Press release: https://www.databricks.com/company/newsroom/press-releases/databricks-grows-65-yoy-surpasses-5-4-billion-revenue-run-rate

a16z leads Shizuku AI seed (AI companions/characters in Japan)

  • a16z says it’s leading Shizuku AI’s seed round; Shizuku is building an AI lab in Japan focused on AI companions and characters .
  • The announcement frames founder Akio Kodaira’s prior AI VTuber work and background (PhD at UC Berkeley; prior Meta and Luma AI) .

Announcement: https://a16z.com/announcement/investing-in-shizuku-ai/

Aston Martin F1 partners with Cognition

  • Aston Martin F1 announced Cognition as a Global Partner and “AI software engineering partner” .

xAI: world-modeling hiring + co-founder departure

  • xAI is hiring for “World Modeling,” describing work on a world simulator with real-time interaction and long-horizon video .
  • Separately, xAI co-founder @Yuhuai says they resigned from xAI .

Infra + go-to-market signals

  • Together AI says DecagonAI partnered with Together AI to meet growing demand and strict latency budgets for AI customer support .
  • LangChain is hiring to prototype integrations and build cookbooks/tutorials, describing the role as shaping the “Agent Stack” .

Policy & Regulation

Why it matters: “Policy” is increasingly embedded in platform rules (ads, safety frameworks) and energy constraints that shape how/where AI runs.

Ads governance in ChatGPT

  • OpenAI’s ad test states ads are sponsored/labeled, separated from answers, and do not influence responses .

Safety classification for a coding model

  • OpenAI states GPT‑5.3‑Codex is the first model treated as high cybersecurity capability under its Preparedness Framework .

Energy policy affecting AI infrastructure (China)

  • China set sector-specific renewable share quotas for energy-intensive industries; national hub node data centers have a flat 80% renewable requirement (2025) . Quotas include hydro and can vary by province, with some provinces specifying separate non-hydro targets .

Quick Takes

Why it matters: Smaller releases often become default components (benchmarks, agent tooling, architecture PRs) within a few weeks.

  • Qwen3.5 architecture surfaced in a Transformers PR: a vision-language hybrid SSM‑Transformer with Gated DeltaNet linear attention mixed with standard attention, interleaved MRoPE, and shared+routed MoE experts .
  • H Company’s Holo2 GUI localization model (Holo2‑235B‑A22B) claims #1 on ScreenSpot‑Pro (78.5%) and OSWorld‑G (79.0%) .
  • Google DeepMind Perch 2.0: a bioacoustics foundation model trained primarily on terrestrial animals shows strong performance on underwater acoustics, including whale vocalization tasks, using transfer learning .
  • OpenEnv (Hugging Face + Meta) aims to make RL environment building easier for LLM/VLM training; an example Snake environment sends base64 images as observations .
  • Text-to-Image Arena updates: seven prompt categories added and ~15% noisy prompts filtered to stabilize rankings .
  • Seedance 2.0: ByteDance’s model is in beta and “only available in China,” with “very strong results” claimed on CookingLeBron‑Bench .
Elite overproduction, founder “wartime” realism, and a trait-first praise heuristic
Feb 10
3 min read
191 docs
Ryan Hoover
Gokul Rajaram
jack
+4
Today’s strongest signal is Jack Mallers’ recommendation of Peter Turchin’s *The End Times*—shared as a KPI-driven lens on real wages and “elite overproduction.” Also surfaced: an a16z partner’s “honest business book” pick for founders, plus smaller-but-high-conviction recommendations spanning state-building, biography, and a parenting/relationships praise heuristic.

Most compelling recommendation: The End Times (a framework for spotting instability)

  • Title: The End Times
  • Content type: Book
  • Author/creator: Peter Turchin
  • Link/URL: https://www.youtube.com/watch?v=B5dZgGeXA2o
  • Recommended by: Jack Mallers (CEO, Strike)
  • Key takeaway (as shared): Turchin is cited for predicting U.S. “empire collapse” and for using two core “KPIs” to recognize the trend: real wage growth (in real purchasing-power terms) and elite overproduction (too many people competing for a limited set of elite roles). Mallers connects declining real wages with rising unrest, and describes elite overproduction as a pipeline that can produce educated, debt-burdened young people with poor job prospects who become politically radicalized.
  • Why it matters: This is a concrete, observable-indicators lens for thinking about social and political stress—useful if you’re trying to reason from measurable conditions (real wages, opportunity scarcity) rather than vibes.

Founder/operator realism (one “honest” business-book pick)

  • Title: The Hard Thing About Hard Things
  • Content type: Book
  • Author/creator: Ben Horowitz
  • Link/URL: https://www.youtube.com/watch?v=Aq0JSbuIppQ
  • Recommended by: Anish Acharya (General Partner, Andreessen Horowitz)
  • Key takeaway (as shared): Acharya calls it “the first honest business book,” arguing most business books are in the business of selling business books. He highlights Horowitz’s “wartime” stories and navigating inflection points—and that founders often feel “somebody finally sees me.”
  • Why it matters: If you’re operating through ambiguous, high-pressure decisions, this is recommended specifically for its authenticity and situational context (not canned frameworks).

State-building as “startup state” (title not specified)

  • Title: Book on how the UAE was built (title not specified in the post)
  • Content type: Book
  • Author/creator: Mohammed bin Rashid Al Maktoum
  • Link/URL: https://x.com/balajis/status/2020880068629975486
  • Recommended by: Balaji Srinivasan (@balajis)
  • Key takeaway (as shared): Balaji frames the UAE as one of the most important small countries—alongside Singapore and El Salvador—because it is a “startup state,” and points to a book by Mohammed bin Rashid Al Maktoum on how it was built.
  • Why it matters: This is a lead for readers interested in institutional design and “country-building” narratives through a startup-like lens.

A biography that “profoundly impacted” an operator/investor (title not specified)

  • Title: Biography of John Rockefeller Jr. (title not specified)
  • Content type: Book
  • Author/creator: Not specified in the clip
  • Link/URL: https://www.youtube.com/watch?v=ZFR5mcBEsAE
  • Recommended by: Gokul Rajaram
  • Key takeaway (as shared): Rajaram cites this biography as the most recent book/podcast that “profoundly impacted” his thinking, calling it an “incredible book.”
  • Why it matters: It’s a high-conviction signal from a product leader/investor; even without detailed notes on which lessons, the strength of endorsement suggests it’s worth a look if you’re collecting biographies that shape decision-making.

Relationships & parenting: praise traits, not outcomes

  • Title: Podcast by @ChrisWillx (episode not specified)
  • Content type: Podcast
  • Author/creator: @ChrisWillx
  • Link/URL: https://x.com/rrhoover/status/2020950170339508506
  • Recommended by: Ryan Hoover (@rrhoover)
  • Key takeaway (as shared):

“Don’t praise a guy’s achievements, praise the personality traits that made them possible.”

  • Why it matters: This is a compact heuristic for reinforcing process/character—shared explicitly in the context of relationships and raising children.
Soybeans surge on Brazil weather and China-demand scrutiny; cattle cash stays strong amid import headline risk
Feb 10
10 min read
145 docs
农业致富经 Agriculture And Farming
Successful Farming
Gabe Brown
+16
Soybeans led the tape on Brazil weather disruption and ongoing China-demand scrutiny, while cattle cash strength continued to clash with import-policy headline risk. This edition also highlights scalable regenerative practices (Brazil coffee cover crops), labor-saving harvest robotics (China), and key planning items: USDA balance-sheet expectations and US biofuels policy timelines.

Market Movers

Soybeans: weather-driven rally meets China-demand scrutiny (US / Brazil / China)

  • Soybean prices rallied ~7% in a week, driven by too much rain in Brazil and drought concerns in the US Corn Belt. In Brazil, north Mato Grosso saw 150–200mm in a few days, with more heavy rains forecast; farmers reported damaged soybeans and lagging corn planting.
  • US commentary tied the latest strength to China-demand chatter: a 50-cent rally in old-crop soybeans was linked to news that China may buy up to 20 MMT of US soybeans; one scenario cited would pull the US soybean balance sheet down to 265 million bushels (or tighter) .
  • At the same time, multiple sources emphasized the market’s need for confirmation: one analyst said there has been no evidence of additional Chinese demand yet via flash sales or export sales reports , while another said the market needs to see China “come to the table” soon as South America harvest advances .
  • A concrete datapoint: private exporters reported 264,000 MT of soybeans sold to China for MY 2025/2026 .

Positioning / flow:

  • One segment reported funds adding to long soybean positions again, with high volume and rising open interest suggesting “new buyers” . Another CFTC-related summary said managed money was estimated net long 125,000 soybean contracts as of Friday’s close (private estimates) .

South America supply: faster Brazil harvest and record-crop talk (Brazil / Argentina)

  • Brazil’s soybean harvest was cited at ~17% complete (vs 10% a year ago) with some rain slowing parts of north-central Brazil; one estimate projected a record 181.6 MMT Brazil soybean crop . Separately, Brazil’s harvest was also cited at 16% in the latest week (AG Rural), up from 10% a week earlier (and 15% a year prior) .
  • Argentina had been pretty dry in key soybean areas recently, but rain was forecast for much of the country over the next 10 days (with caveats that forecasts are not guarantees) .

Corn and wheat: heavy supplies vs. export pace (US)

  • Corn futures were down early Feb. 9 (March $4.28¼, down ) , and one market discussion pinned near-term constraints on a ~2.3 billion bushel carry.
  • Export signals were mixed:
    • US corn export inspections for the week ending Feb. 5 were 51.5 million bushels, and marketing-year-to-date inspections were said to exceed the seasonal pace needed to hit USDA’s target by 332 million bushels.
    • For wheat, weekly export inspections were 21.3 million bushels, and marketing-year-to-date inspections were ahead of pace by 61 million bushels.

Bean oil: trade headlines and crush pace (US / India)

  • Bean oil strength was linked to a US–India trade agreement and the view that US bean oil is currently competitive in the Indian market.
  • The same discussion noted a robust US crushing pace running ~9–10% above last year’s pace (which was also a record) .
  • Another summary said India agreed to reduce or eliminate tariffs and barriers on select US ag products including soybean oil and dry distillers grains, aiming to lower domestic food and feed costs—while not offering concessions on importing genetically modified US food crops such as dairy products or soybeans .

Cattle: cash strength vs. policy and headline risk (US)

  • Cash-fed cattle strength remained a key theme; one segment reported cash averaged over 240 last week and noted a shift where cash traded over nearby futures . Another said the cash market has put on about $10 in two weeks due to very tight numbers .
  • Trade/policy headline: an executive order was described as allowing 100,000 MT of Argentine lean beef trimmings to enter the US under a lower tariff rate (framed as 20,000 MT per quarter) . The same discussion characterized the fundamental volume impact as small but warned market psychology mattered—referencing a prior 16% cattle correction and 21% feeder-cattle correction in Oct–Nov tied to similar rhetoric and positioning .

Hogs: pullback from highs (US)

  • Hogs were described as lower and consolidating off contract highs, with hedge activity and profitability-taking cited, plus a “wait and see” stance on summer demand . Another segment flagged the market had been overbought since early December and that high slaughter weights were a counterweight to disease-driven supply concerns .

Innovation Spotlight

Regenerative coffee inter-row cover crops scale-up (Brazil: Minas Gerais)

  • A Minas Gerais initiative (“Construindo Solos Saudáveis”) plants cover crops in coffee inter-rows to improve fertility, reduce erosion, and raise productivity with an environmental sustainability focus .
  • The approach includes up to 13 different species in an inter-row, using varied root depths and flowering patterns to improve filtration/infiltration and nutrient cycling (deep nutrients pulled up and released after mowing) .
  • Reported field benefits included:
    • Soil temperature reduction of more than 10°C when comparing bare soil to soil with cover plants
    • Improved infiltration/retention and compaction relief via root-created channels
    • More beneficial insects and flower increases linked to diversity
  • The program was described as scaling from 50 demo units (2021) to ~1,000, with exporters investing due to global demand for regenerative practices and sustainability requirements .

Organic potato yield jump with defined input recipe (India: Uttar Pradesh)

  • A farmer profile from Barabanki reported shifting from chemical to organic potato production for 5–6 years using Zydus bio-products, with a claimed yield increase from ~50 quintals/acre to ~65–70 quintals/acre.
  • The on-farm recipe included 2 kg of “Zaytonik” mixed with 4–6 bags of DAP per acre at sowing. Additional “Zaytonik Active” was mixed with pesticides starting 25–30 days after planting, described as extending efficacy .

Harvest labor reduction: electric banana-taro robot economics (China: Yunnan)

  • Manual harvest for banana taro (芭蕉芋) was described as 4–5 minutes per plant and ~100–200 kg/hour, less than 0.5 mu/hour.
  • A track-driven electric robot was tested and described as achieving ~8× manual efficiency overall in a field test framing (robot harvested ~40 plants in 10 minutes vs. 2 villagers harvesting 50) .
  • Operating cost was described as roughly ~2 kWh per mu, with power at ~0.5 yuan/kWh (about ~1 yuan per mu electricity) .

Soilless strawberry seedlings to reduce soil-borne disease and lift output (China: Shandong)

  • A strawberry grower described moving seedling production onto racks using imported substrates (not soil) to avoid soil-borne disease impacts and reduce seedling loss .
  • The output claim cited was an increase from ~3,000 jin per mu previously to ~8,000 jin per mu after adopting the rack/substrate approach .

Regional Developments

Brazil: harvest progress and disruptive rainfall windows (Brazil)

  • Central and Southeast Brazil were flagged for 100–150mm rainfall totals over a short window (RJ, ES, south Minas, north SP, Triângulo Mineiro), with risks including fieldwork disruption and potential flooding/landslides .
  • Persistent rain was cited as hindering soybean harvest in central-north Mato Grosso, while Mato Grosso do Sul had a near-term window for fieldwork .
  • In Alta Floresta, intermittent rain into about Feb. 20 was expected to limit windows for soybean harvest and second-crop corn planting before heavier volumes return .

Brazil: exports and logistics

  • Brazil exported 1.876 million tons of soybeans in January 2026 (up 75.5% YoY), generating nearly US$831M in revenue (up 92% YoY) with an average price of US$442/ton (up 9%)—attributed to delayed shipments from last year’s record crop .
  • In Mato Grosso, producers and local leaders protested over the unpaved BR-158, describing mud in rainy periods, dust in dry seasons, and year-round losses; the state was paving an alternative (MT-109) as a partial, emergency route .

US: water and livestock protection measures (US)

  • The Trump Administration was described as securing a deal to guarantee enforcement of the 1944 U.S.–Mexico water treaty, aiming to provide certainty for South Texas farmers and ranchers dependent on the Rio Grande .
  • USDA announced completion of a sterile fly dispersal facility in Edinburg, Texas to expand capability to disperse sterile flies along the border and into the US if needed, in the fight against New World Screwworm. (More: Screwworm.gov.)

Turkey: poultry export halt (Turkey)

  • Turkey’s Trade Ministry announced measures to stop poultry meat exports, implemented Feb. 9 .

Paraguay: poultry processing expansion plan (Paraguay)

  • Two cooperatives (La Paz and Pirapó) described plans to build a broiler slaughterhouse designed for 3,000 birds/hour (starting at 1,500), with construction targeted for 2H 2026 and export-standard design (initial focus on the domestic market) .

Best Practices

Crop protection: insist on effective modes of action (US)

  • One agronomy note cautioned that premixes marketed as “2+ modes of action” may effectively provide only one for a given target (e.g., waterhemp example where only Group 15 is effective; frogeye leaf spot example where triazole may be the only effective component due to strobilurin resistance) .

Spring herbicide planning: resistance + drift safeguards (US)

  • Planning with retailers was emphasized to avoid repeating the same active ingredients for multiple years and to help manage resistance .
  • Emerging/problem weeds mentioned: morning glory, Johnson grass, dog hempbane.
  • Implementation guidance highlighted:
    • Build programs with 2–3 effective sites of action on problematic weeds .
    • Validate approved nozzles and tank mix partners for Enlist programs at enlist.com and prioritize nozzle selection for coverage .
    • Reduce drift risk near sensitive crops, endangered species habitats, and bees by identifying these before spraying .

Precision guidance foundation: record accurate driven field boundaries (US)

  • John Deere guidance materials framed accurate driven boundaries as foundational for tools like AutoTrac, Turn Automation, AutoPath Boundaries, and autonomy workflows .
  • Practical setup steps included verifying receiver measurements (boundary recorded from receiver reference point), completing TCM calibration, and using RTK correction modes where applicable .

Feedlot operations: animal intake protocols (Paraguay)

  • A Paraguay feedlot example described an arrival process including antiparasitic treatment plus a reconstituting product, with animals moved into an adaptation lot .

Soil management (garden-scale but transferable principles): keep soil covered (US)

  • A no-till gardening approach emphasized continuous cover using alfalfa hay or grass clippings to reduce weeds, feed biology, and protect soil from erosion . Improved soil aggregation was linked to improved infiltration—reported as over 30 inches/hour in one example .

Input Markets

Feed and co-products: bean oil, DDGs, and crush-driven supply (US / India)

  • The US crushing pace was described as running ~9–10% above last year’s record pace, creating additional veg-oil supply that could be “offloaded” if exports (e.g., to India) expand .
  • India’s trade steps explicitly included soybean oil and dry distillers grains as products on the list for tariff/barrier reductions, while not granting concessions for GMO food crops such as soybeans/dairy .

Equipment availability: used planters and compact tractors (US)

  • Used planter inventories were reported down 50%, with technology options now a major driver of value and availability .
  • Compact tractor updates highlighted:
    • Case IH Farmall 35A/40A: hydraulic enhancements and factory loader options; wide platform and step-through design .
    • New Holland Workmaster 35C/40C: ergonomic platform and intuitive controls .

Seed traits: corn rootworm control (US)

  • Syngenta’s DuraStack trait was promoted as a triple Bt protein stack with three modes of action for corn rootworm control, with rootworm damage cited as costing up to $1B/year; availability referenced for the 2027 season.

Forward Outlook

USDA report risk: minimal changes vs. market expectations (US)

  • One preview expected the upcoming USDA report to show tiny changes with minimal adjustments . A separate note raised the question of whether the market will be disappointed if balance sheets show no changes.

Soybean demand watch: confirmations and timing (US / China / Brazil)

  • Multiple discussions converged on timing: the soybean market may need confirmed additional China business to sustain strength as South America’s harvest advances . The reported 264,000 MT sale to China is a concrete signal to monitor in subsequent reporting .

Biofuels policy: 45Z incentive + E15 pathway (US)

  • Treasury guidance on the 45Z clean fuels production tax credit was described as making most ethanol plants eligible if CI is below 50 and as potentially delivering about $0.10/gallon—nearly doubling typical ethanol plant margins in one estimate and helping drive expansion announcements .
  • On E15, one analysis emphasized that a permanent RVP waiver removes only one hurdle and is not a mandate; US blend rates were described around 10.4–10.5%, with expectations for slow movement higher over time . Iowa advocates were cited pushing year-round E15, estimating E15 at ~30% of Iowa fuel sales and growing ~45% annually, with draft legislation expected by Feb. 15 and a potential House vote as early as Feb. 25.

Livestock: headline sensitivity remains elevated (US)

  • Cattle market commentary underscored that small import volumes (e.g., Argentine lean trimmings) can still create volatility through sentiment and fund positioning . A separate market note explicitly advised being aware of downside risk in cattle amid broader commodity volatility .

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Codex Plan mode one-shot builds, GPT‑5.3 Codex hits Cursor, and harness-first eval loops mature
Feb 10
7 min read
139 docs
Jediah Katz
Harrison Chase
Salvatore Sanfilippo
+17
Codex Plan mode is producing credible “one-shot build” reports from experienced engineers, while GPT-5.3 Codex lands in Cursor with a notable safety classification and safeguards. Also: practical harness patterns (tracing, checklists, undo) and a sharp warning that unfamiliar context formats can create a brutal “grep tax.”

🔥 TOP SIGNAL

A repeatable “idea → shipped app” loop is emerging around Codex Plan mode: one engineer reports refining an idea in ChatGPT, pasting the full chat into Codex Plan mode, selecting Codex’s suggested options, and hitting run—after which Codex “built everything in one shot,” and the output was “flawless” on careful review (from a dev with 15 years’ experience) . Romain Huet (OpenAI, working on Codex) frames the bottleneck shift bluntly: “Code is no longer the barrier. Imagination is.”


🛠️ TOOLS & MODELS

  • OpenAI Codex app — “Plan mode” one-shot builds (practitioner report)

    • Workflow claim: paste the entire ChatGPT refinement into Codex Plan mode, choose suggested options, run once → “built everything in one shot” / “flawless” .
    • Greg Brockman amplifies the same report and tells people to “try the codex app!”.
  • GPT-5.3 Codex → Cursor (availability + safety note)

    • Cursor: GPT-5.3 Codex is now available in Cursor, and is “noticeably faster than 5.2” and “preferred” by many of their engineers .
    • Jediah Katz: Cursor shipped ASAP because people “have been loving the model,” and says it’s the first model rated “high cybersecurity risk” by OAI, with Cursor/OpenAI collaborating on safeguards .
    • Dispute to track: Teknium suggests OpenAI “withhold” the model from Cursor ; robinbers counters: “they’re not withholding anything” and argues Cursor likely already has access/optimizations underway .
  • Codex 5.3 behavior shift (prompting ergonomics)

    • Peter Steinberger: Codex 5.3 is “more trigger-friendly” than 5.2; a simple “discuss” no longer reliably stays in discussion mode, so he switched to “give me options” to prevent it from running ahead writing code .
  • Claude Opus 4.6 — strong arena wins + mixed agent temperament reports

    • swyx: running large-scale randomized tests in arena mode; says Opus 4.6 beats other models consistently, with “>60% winrate” as a clear margin .
    • swyx (Opus 4.5 vs 4.6): win-rate bump 11.5% (nonthinking) and 23% (with thinking) inside Windsurf arena mode .
    • Qualities swyx calls out: diligence, willingness to write throwaway tests, strong tables, great performance profiling, faster termination on simple questions, and strong chain-of-thought communication .
    • Contrast: an atzydev report says Opus 4.6 is intelligent but “greatly overthinks/gets anxious” and that subagents didn’t help much for them .
  • Cursor — Composer 1.5 (new model release, positioning claim)

    • Cursor announces Composer 1.5 available now; says it balances “intelligence and speed” .
    • Aman Sanger claims: “We trained the best coding model in the world under 1T parameters.”
  • LangChain Deep Agents + LangSmith — harness-first improvements + eval tooling

    • Deep Agents described as a harness to customize agents via prompts/tools/hooks, plus multi-model usage (example: Codex 5.3 + Opus 4.6) .
    • “Harness improvements can yield bigger improvements than switching models” (as stated in the LangChain discussion) .
  • Context engineering for file-native agents (paper + “grep tax”)

    • Damon McMillan paper summary (via Simon Willison): 9,649 experiments across 11 models, 4 formats (YAML/Markdown/JSON/TOON), schemas 10 to 10,000 tables.
    • Frontier vs OSS: frontier models (Opus 4.5, GPT-5.2, Gemini 2.5 Pro) beat leading open-source models (DeepSeek V3.2, Kimi K2, Llama 4) .
    • Format pitfall: TOON is smaller, but models’ unfamiliarity caused big token overhead (“grep tax”): +138% tokens at 500 tables, +740% at 10,000 tables vs YAML (Claude scale experiments) .
  • OpenClaw v2026.2.9 (release)

  • 🧿oracle (release)

  • Antigravity — Undo as a safety net

    • Undo button is a “time machine” that reverts the entire last turn (codebase + conversation), meant as a safety net for complex refactors and feature work .
    • If an implementation has unexpected side effects, you can “instantly reset and try again” .

💡 WORKFLOWS & TRICKS

  • Codex Plan mode: “chat → plan → run” (copy/paste workflow)

    1. Refine your idea in ChatGPT .
    2. Copy the entire chat into Codex Plan mode.
    3. Choose Codex’s suggested options and hit run .
    4. Treat the output like code review: the report explicitly says they reviewed carefully; “It was flawless.”
  • If Codex 5.3 starts executing when you wanted discussion: change the prompt shape

    • Steinberger’s workaround: replace “discuss” with “give me options” to keep it from auto-running into implementation .
  • Observability-driven agent improvement (LangSmith traces → datasets → harness changes)

    • Ship agents early to see real user behavior and build test sets from what people actually do .
    • Build offline eval datasets from production traces: ship → collect traces → turn failure states into test cases and iterate prompts/tools .
    • Use deterministic harness hooks to catch “agent pathologies” like re-editing the same file 5–6 times, then force a step-back / replan .
    • Add verification middleware before the agent finishes: generate tests, lint, and apply coding best practices for feedback loops .
    • Automate trace triage: fetch traces, group failure modes, propose fixes, and generate a report—then do human review in parallel .
  • Benchmark loop detail worth copying: don’t just change models—track harness regressions

    • In the LangChain workflow, they run Terminal Bench (89 tasks) and cite results like 65.2 pass rate on “Codex 5.2 extra high,” then re-run on other models to compare changes .
  • .NET/C# guardrails for agentic coding (reduce style drift + enforce quality)

    • Add a strong style constraint in your agent instructions: “only use .NET 10 code style” to reduce variance across eras of training data .
    • Use Roslyn analyzers to create “back pressure” .
    • Turn warnings up and make them fail builds: “warnings should fail builds” .
  • OpenClaw deployment (Fly.io recipe)

    • Kent C. Dodds: fork and deploy via GitHub Actions secrets (repo: https://github.com/kentcdodds/flying-jarvis) .
    • Additional setup mentions: Cloudflare tunnel for control UI + Discord bot token, etc. .
  • Context format gotcha: token-minimal isn’t always token-cheap

    • Simon Willison highlights TOON’s “grep tax” when the model isn’t familiar with the format—token use can explode over multiple iterations even if the file is smaller .

👤 PEOPLE TO WATCH

  • Romain Huet (OpenAI, Codex) — crisp product thesis: “Code is no longer the barrier. Imagination is.”
  • Greg Brockman (OpenAI) — actively pointing people to try the Codex app and amplifying “one-shot build” reports .
  • Jediah Katz (Cursor) — high-signal distribution + safety collaboration details for GPT-5.3 Codex in Cursor (including “high cybersecurity risk” classification) .
  • Peter Steinberger — practical operator notes on model behavior changes (“trigger-friendly” Codex 5.3) and shipping OpenClaw releases .
  • swyx — running large-scale arena testing and reporting both win-rates and qualitative coding behaviors for Opus 4.6 .
  • Simon Willison — reliably surfaces sharp paper takeaways, and flags the human cost: LLM productivity boosts can be “exhausting” and cognitively intense .

🎬 WATCH & LISTEN

1) LangSmith trace analyzer: turn traces into failure clusters + fix proposals (and keep humans in the loop)

Source: LangChain — Agent Observability Powers Agent Evaluation
Timestamp: ~29:55–32:00
Hook: A concrete pattern: fetch traces, group failure modes, propose fixes, auto-generate a report, then do human review in parallel—plus a real benchmark datapoint (65.2 pass rate on Codex 5.2 extra high) .

2) Why “concept mastery” matters more than API familiarity when using coding agents

Source: Salvatore Sanfilippo — I junior non maturano in senior a causa della AI?
Timestamp: ~06:26–11:03
Hook: Sanfilippo argues strong results come from understanding core concepts (systems constraints, architecture), not memorizing APIs—he gives a firsthand example of writing Metal/MPS code successfully via AI without prior Metal experience by leaning on conceptual grounding .


📊 PROJECTS & REPOS

Editorial take: The winners aren’t just “better models”—they’re teams building control surfaces (options prompts, undo, checklists) and tight feedback loops (tracing → evals → harness tweaks) to keep agent speed from turning into agent chaos.

ChatGPT tests ads as Codex 5.3 and Opus 4.6 intensify the post-benchmark coding-agent race
Feb 10
8 min read
211 docs
Anthropic
Jediah Katz
Harrison Chase
+18
OpenAI starts testing ads in ChatGPT’s Free/Go tiers and lays out trust and privacy principles. Meanwhile, the coding-agent race heats up with GPT-5.3-Codex rolling into major dev tools, strong arena signals for Claude Opus 4.6, and new benchmarks (AIRS-Bench) that make end-to-end “research agents” harder to hand-wave.

ChatGPT begins testing ads (with a trust-first rubric)

OpenAI is rolling out a test of ads in ChatGPT to a subset of Free and Go users in the U.S. . OpenAI says the goal is to keep ChatGPT free with fewer limits while protecting the trust users place in it for important/personal tasks .

  • Ads won’t affect answers: OpenAI says ads do not influence ChatGPT’s responses, and will be labeled as sponsored and visually separated from the model output .
  • Who sees ads: Ads are shown to Free and Go tiers; no ads for Pro, Plus, and Enterprise.
  • Design principles highlighted in the podcast: keeping answers independent from ads , not using sensitive chats for ads , offering transparency/controls (including clearing data and turning off personalization) , and explicitly prioritizing user trust over user value, advertiser value, and revenue.

Why it matters: This is a major product and business-model shift for a mass-market AI assistant, and OpenAI is explicitly framing it as a tradeoff to fund higher free-tier usage limits rather than making the free experience overly constrained .

More: http://openai.com/index/testing-ads-in-chatgpt/


Coding agents accelerate: GPT-5.3-Codex distribution expands, Opus 4.6 climbs

GPT-5.3-Codex rolls out to mainstream dev surfaces (with added security work)

GPT-5.3-Codex is rolling out in Cursor, GitHub, and VS Code. Sam Altman said OpenAI is moving to get it to all API customers, but noted extra work because this is OpenAI’s first model with a high bar for cybersecurity.

Cursor integration notes:

  • Cursor says GPT-5.3 Codex is available and noticeably faster than 5.2, becoming a preferred model for many engineers .
  • Cursor’s team described it as the first model rated “high cybersecurity risk” by OpenAI, and said they collaborated on safeguards against abuse .
  • Martin Casado reported that in his testing it “picked up… the auth issues” he’d been investigating .

Why it matters: The story is shifting from model announcements to distribution + safety gating: getting coding agents into the default tools (IDE, repo, editor) while treating cybersecurity risk as a first-class launch constraint .

Codex app adoption continues to spike

OpenAI says the Codex App saw more than 1 million downloads in its first week and 60+% growth in overall Codex users last week . Altman said Codex will remain available to Free/Go users after the promotion (with possible limit reductions) to keep it broadly accessible for trying and building .

Why it matters: Rapid consumer uptake suggests coding agents are crossing from “pro tool” into “mass trial,” and OpenAI is signaling it wants that funnel to stay open beyond the initial promo window .

Claude Opus 4.6: strong arena signals + broader access moves

In blind arena testing, swyx reported Opus 4.6 showed an 11.5% win-rate bump without “thinking,” rising to 23% with “thinking” enabled in a windsurf arena mode setup . He also described it as “destroying every other model” in their Frontier arena, citing traits like diligence, writing throwaway tests, strong tables, and performance profiling .

Adoption and packaging signals:

  • Anthropic says nonprofits on Team and Enterprise now get Claude Opus 4.6 at no extra cost.
  • Perplexity upgraded its Advanced Deep Research harness from Opus 4.5 to Opus 4.6, saying this furthers its lead on Google’s DSQA benchmark; rollout is immediate for Max users and gradual for Pro users .

Why it matters: Opus 4.6 appears to be gaining momentum both via competitive eval results and via distribution decisions (nonprofit access, research harness upgrades) that can expand real-world feedback loops quickly .


“Post-benchmark” reality: evaluation harnesses and new benchmarks for agents

Coding-agent evaluation is becoming a product discipline

In a LangChain webinar on agent observability and evaluation, the speakers noted that new model releases make this a fast-moving target, with Opus available via API and the newest Codex not yet available via API at the time of discussion . They shared that Codex 5.2 achieved a 65.2% pass rate in their TerminalBench 2.0 harness run , and highlighted a “really big increase” from Codex 5.2 to Codex 5.3 in their tracking charts .

They described evaluation approaches spanning single-step, full-turn, and multi-turn tests , and using traces to detect failure modes like repeated edits spiraling into failure—then injecting harness interventions and re-evaluating .

Why it matters: As agent behavior becomes less legible from benchmark deltas alone, harness design, traces, and iterative eval loops are increasingly the differentiator between “cool model” and “reliable agent” in production settings .

Meta FAIR releases AIRS-Bench for end-to-end ML research agents

Meta FAIR released AIRS-Bench, a benchmark to evaluate whether an AI agent can perform the full ML research lifecycle (ideation, experiment design, iterative refinement) across 20 tasks sourced from recent ML papers, with no baseline code provided.

Results from testing 14 agent configurations:

  • Agents beat human SOTA in 4/20 tasks (sometimes with novel solutions, e.g., a two-level stacked ensemble) .
  • They missed SOTA on the other 16 tasks; overall average normalized score was 23.4%.
  • Only 58.8% of attempts produced a valid submission at all .

Links: arXiv https://arxiv.org/abs/2602.06855; code https://github.com/facebookresearch/airs-bench

Why it matters: AIRS-Bench makes “research agent” claims testable across the messy end-to-end loop—not just coding correctness—and the low valid-submission rate highlights how much scaffolding still matters .


Research: transfer learning in the ocean, plus “societies of thought” and chip-design limits

DeepMind’s Perch 2.0 transfers from birds to whales

Google DeepMind said Perch 2.0 (trained primarily on terrestrial animals like birds) is performing strongly on underwater acoustics, despite having no underwater audio in training. DeepMind attributes the extension to underwater identification to transfer learning .

Perch 2.0 was evaluated on whale vocalization tasks (distinguishing baleen whale species and killer whale subpopulations) and ranked consistently top or second-best versus pre-trained models across datasets and sample sizes .

Demo/info: https://goo.gle/4rd16sE

Why it matters: This is a concrete example of foundation-model generalization enabling new domain performance (marine ecosystems) without in-domain training data—useful where labeled data collection is hard .

Import AI: reasoning models as multi-persona “societies,” plus chip-design benchmarks and automation

Highlights from Import AI’s roundup:

  • “Societies of thought”: Researchers found RL-trained reasoning models (tested on DeepSeek-R1 and QwQ-32B) show multi-agent-like internal debates with distinct perspectives/personality traits while solving hard problems .
  • Chip design reality check (ChipBench): A new benchmark for AI-aided chip design suggests out-of-the-box frontier models still struggle with real-world Verilog writing/debugging/reference models; the authors report relatively low pass@1 and conclude models remain far from industrial workflow readiness .
  • Huawei AscendCraft: A two-stage LLM pipeline (DSL generation + structured LLM-based lowering/transcompilation) for AscendC kernels achieved 98.1% compilation success and 90.4% functional correctness; 46.2% of generated kernels matched or exceeded PyTorch eager performance in tests .
  • Gemini Aletheia (math discovery): In a study on 700 open Erdős problems, the system surfaced many candidates but human expert review reduced results to a small number of meaningful solves, including 2 “autonomous novel solution” cases (with one described as genuinely interesting) .

Why it matters: Across these threads, the pattern is consistent: candidate generation is accelerating, but verification, scaffolding, and domain-specific structure (benchmarks, DSLs, expert review) remain the gating factors .


Industry + policy signals: capital, compute, and data-center constraints

  • Big tech AI capex: Big Technology cites reporting that big tech plans to spend $650B on AI computing in 2026 .
  • Financing: The same digest notes Nvidia is reportedly nearing a $20B investment in OpenAI as part of OpenAI’s plans to raise another $100B, and that voice AI startup ElevenLabs raised $500M.
  • Regulation / infrastructure: New York lawmakers proposed a three-year pause on new data centers.

Why it matters: Funding and capex numbers continue to climb while data-center siting/expansion faces political constraints—together shaping where model training and inference capacity can realistically scale .


xAI/Grok: growth claims, new modalities, and heavy infrastructure narrative

A post compiling xAI/Grok metrics claimed a 43% surge in app downloads, 29.11% surge in monthly active users, and 15.81% growth in website visits, alongside “all-time highs” in usage/downloads; Elon Musk replied “Good progress” . Separately, Musk highlighted 43% month-over-month downloads growth and shared a post claiming a 30% surge in monthly active users in one month of 2026 .

The same compiled post also claimed:

  • Launches of Grok Imagine 1.0 (including API) and rollout of 10-second, 720p videos in Imagine .
  • xAI announced a $20B Series E funding round and said it became the first AI company to run a gigawatt-scale training cluster.

On product modality, Musk promoted Grok Voice + Live Camera, describing a real-time “point, ask, get answers” experience .

Why it matters: xAI’s public narrative is pairing consumer growth and multimodal UX with an explicit “compute scale” storyline—positioning distribution + infrastructure as core competitive moats .


Security: AI-driven vulnerability discovery hits critical open-source targets

A post highlighted AI cybersecurity research that reported discovering 12 of 12 new OpenSSL zero-days, 5 CVEs in curl, and 100+ validated CVEs across critical open-source infrastructure, middleware, and secure apps; Jeff Dean called it a “cool application of AI models to find security vulnerabilities” .

Why it matters: This is a high-impact example of AI being applied to security work where findings can translate directly into ecosystem-wide risk reduction—while also reinforcing why labs are treating advanced models as potential cybersecurity risks to manage carefully .


Governance perspective: “reputation collectives” as a template for voluntary AI safety

A ChinAI writeup summarizes peer-reviewed research arguing that in high-risk industries, international associations can raise safety standards via shared reputation—using confidential internal benchmarking and peer reviews rather than public naming-and-shaming . It suggests that if AI develops a collective safety reputation, voluntary initiatives may work better with low barriers to entry, avoiding public shaming, and emphasizing peer-to-peer learning .

Separately, ChinAI notes the China AI Industry Alliance’s “AI Security and Safety Commitments” have 22 signatories, with 18 disclosing practices via a voluntary initiative; however, the examples were presented as an unattributed list of typical practices .

Why it matters: As voluntary AI safety commitments proliferate, the design details (transparency vs. confidentiality, membership rules, incentives) may determine whether these efforts meaningfully change practice or remain largely symbolic .

AI compression meets product craft: vibe-coding economics, OKRs with AI, and secure autonomy patterns
Feb 10
12 min read
81 docs
Tony Fadell
Teresa Torres
Nir Eyal
+8
AI is compressing product cycles and even team shapes—shifting the bottleneck toward clarity, taste, and safer systems. This edition covers AI-assisted OKRs, secure agent design patterns, early-stage regression management, and timeboxing tactics for protecting attention.

Big Ideas

1) Execution is getting cheaper; taste + clarity are becoming the bottleneck

Aakash Gupta argues that agentic workflows are collapsing the product development loop from quarters to weeks, and that a PM who can wire Claude Code into an analytics pipeline, CRM, and codebase via MCPs can prototype in an afternoon what used to take a cross-functional team and a fiscal quarter . In the same thread, he frames the shift as: AI tools collapsed the cost of shipping, moving the bottleneck from “can we build this?” to “do we know what’s worth building?”—a product taste problem .

Why it matters: If build time compresses, the differentiator moves upstream: choosing the right problems, defining “good,” and sequencing decisions so teams don’t just ship faster—they ship better.

How to apply:

  • Treat “what’s worth building” as a first-class artifact: explicit problem framing + success criteria before generating implementation plans .
  • Where possible, connect AI tooling directly to the systems where decisions live (analytics/CRM/codebase) so prototypes are informed by real context, not generic outputs .

2) “Early stage” is not funding or headcount; it’s clarity

Tony Fadell’s framing: a viable early-stage company is defined by clarity on the pain, the customer, and why the customer will pay—not by funding, headcount, or a slick deck . Without clarity, you’re “pre-clarity,” and capital only makes confusion more expensive .

“Capital doesn’t create clarity. It just makes confusion more expensive.”

Why it matters: AI can accelerate output, but it can also accelerate confusion. If the org is “pre-clarity,” faster shipping just multiplies rework.

How to apply:

  • In discovery, explicitly test for (1) pain, (2) customer, (3) willingness to pay—before scaling execution .
  • Use AI to speed up exploration, but keep the “clarity checkpoints” human-owned (what problem, for whom, and why they pay) .

3) AI can improve OKRs—if it doesn’t replace the hard parts

In Christina Wodtke’s talk, she warns that direct AI-generated OKRs tend to be generic and unowned, and can encourage outsourcing thinking—citing research that people who use AI to write may struggle to answer questions about the work they present as their own . Her alternative is to use AI as a thinking partner: brainstorm metrics, critique failure modes and gaming risks, and challenge conclusions—while keeping ownership, cadence, and learning at the center .

“You have to be really careful what you outsource… It’s augmented thinking, not outsourced thinking.”

Why it matters: OKRs work because they create focus, decision hygiene, and learning loops. If AI makes them “easy,” it can remove the struggle that creates ownership (which Wodtke links to the IKEA effect) .

How to apply:

  • Use AI to generate options and critiques; keep humans responsible for selecting, committing, and learning .
  • Protect cadence: weekly commitments matter more than perfect wording .

4) “Autonomous AI” needs architectural guardrails, not prompt instructions

The Product Compass describes OpenClaw as giving an AI agent full access to your environment (files/terminal/API keys) with “guardrails” implemented as prompt instructions that injected prompts can override . As a response, the author built Agent One with hard boundaries: a Manager that plans/delegates but cannot touch files or run scripts, and Executors that operate in controlled environments with explicit permissions and approvals .

Why it matters: PMs increasingly evaluate/ship workflows that connect AI to real systems (docs, email, storage, scripts). The difference between “works in a demo” and “safe in production” is often guardrails implemented as architecture.

How to apply:

  • Prefer hard guardrails (permissions, isolation, approvals) over “please don’t” prompt instructions .
  • Keep coordination contracts minimal (context/goal/constraints) so the system spends tokens doing work, not managing bureaucracy .

5) Personal productivity: manage inputs (time + attention), not just outputs

Nir Eyal argues that timeboxing (calendar blocking) beats to-do lists because lists emphasize outputs, while timeboxing allocates the inputs required to produce outcomes—time and attention. He suggests blocking across three domains (you, relationships, work) and protecting reflective work (planning/strategizing/deep thinking) from reactive work (emails/calls/interruptions) .

Why it matters: As AI increases the pace of execution, the constraint often becomes attention fragmentation and reactive overload.

How to apply:

  • Measure success as: “did I do what I said I’d do for the time I promised, without distraction,” not “did I finish everything” .
  • Treat schedule updates like experiments: don’t rewrite today’s plan mid-day; revise future days based on what you learn .

Tactical Playbook

1) An AI-accelerated PM workflow (without losing the plot)

Gupta’s example: PMs integrating Claude Code via MCPs into analytics/CRM/codebase can prototype in an afternoon what used to require a cross-functional quarter .

How to apply (steps):

  1. Identify one loop you want to compress (e.g., insight → prototype → iteration), and wire your AI workflow into the systems that contain the needed context (analytics pipeline, CRM, codebase) via MCPs .
  2. Use the speed to run shorter loops—but keep the bottleneck question explicit: “what’s worth building?” .
  3. Watch for the organizational signal: Gupta frames employer refusal to adopt these tools as meaningful information to “use accordingly” .

2) OKRs with AI: use it to stress-test goals, not to auto-generate them

Wodtke’s playbook combines human ownership + cadence with AI critique.

How to apply (steps):

  1. Set objectives properly: objectives are qualitative and inspirational; key results are quantitative and should be results (not tasks) .
  2. Do the human work first: collaborate on the initial objective; have the team silently free-list possible metrics, then sort and discuss .
  3. Use AI for critique + breadth: ask it for measurement ideas and to explain an OKR from different perspectives (e.g., engineer vs salesperson) . Ask for failure modes, what you might accidentally incentivize, and how OKRs could be gamed .
  4. Add context, not more instructions: use Claude Projects with custom instructions (e.g., “ask clarifying questions,” “KRs are results”) and upload strategy/PRD files so the model can push back with relevant questions .
  5. Run weekly cadence: reinforce focus with weekly Monday commitments . In status updates, track confidence (0–10) and reflect on what was done/not-done and why .
  6. Retro for learning: prefer qualitative storytelling retrospectives (“what happened / what did we learn?”) over binary/decimal scoring . Use AI to summarize status emails and challenge conclusions—without using it to avoid uncomfortable truths .

3) Handling “break → fix → break” in early-stage product: prioritize + test + staff for QA

A non-technical founder described a constant cycle of break/fix/break and uncertainty about whether it’s normal at early stage . Replies emphasized prioritization and pragmatic quality controls.

How to apply (steps):

  1. Prioritize explicitly: at this stage, focus on the highest-benefit work for the least effort; you can’t do everything at once .
  2. Anchor on revenue impact: one reply frames the goal as focusing on what makes money while fixing “hair on fire” issues that cause or prevent money .
  3. Add tests as regressions happen: implement AI-aided unit tests to reduce future regressions (especially for non-hacky features) .
  4. Name the tradeoff: it’s a balance between tidying up tech debt and moving faster while accepting that debt increases the chance of future breaks .
  5. Consider QA capacity: a commenter notes that catching these issues is the job of QA/QC; if you have multiple developers and no QA, making QA a next hire may be appropriate .

4) Timeboxing for PMs: build a schedule that forces tradeoffs (and protects deep work)

Eyal’s approach is explicitly values-driven: values are attributes of your future self, and you can observe real values via how you spend time and money .

How to apply (steps):

  1. Define values and block time across three domains: you, relationships, then work.
  2. Ensure work includes reflective time (planning/strategizing) and doesn’t collapse into purely reactive time .
  3. Use a weekly “agenda sync” with your manager: show your timeboxed calendar and ask them to help prioritize what doesn’t fit .
  4. For urges to distract, use the “10-minute rule”: delay for 10 minutes; Eyal describes urges as peaking and fading like a wave .

5) Building safer AI agents: a PM checklist for autonomy + security

From Agent One’s design and lessons:

How to apply (steps):

  1. Structure delegation as context / goal / constraints (don’t over-prescribe steps and tools) .
  2. Implement hard guardrails (architectural boundaries) instead of soft prompt suggestions (e.g., “ask me before sending email” must be enforced by orchestration) .
  3. Enforce separation of concerns: Manager plans/delegates and never touches files/scripts; Executors do the hands-on work and report back .
  4. Treat prompts as version-controlled code in production systems .
  5. Start with simple memory (data tables) and upgrade only when needed .
  6. Minimize complexity: for many tasks, VPS executor + cloud storage is enough; adding laptop access adds tunnel/timeout complexity that most tasks don’t justify .
  7. Add observability: the author broadcast logs from OpenRouter to LangSmith because n8n’s logs didn’t show tool input parameters on failure .

Case Studies & Lessons

1) Lovable’s “vibe coder” as measurable headcount compression

Gupta cites Lovable hitting $100M ARR in 8 months with 45 people, and scaling past 100 employees at $200M ARR, running at roughly $2M revenue per head—nearly 7× a cited SaaS benchmark of $275K . He describes a “vibe coder” role where one person handled products, campaigns, templates, and internal tools—compressing work that might otherwise span PM, design, frontend, and growth into one seat .

He adds that the individual (Lazar) had no traditional coding background but shipped production-quality apps across partnerships, marketing, community, and growth using AI tools built on Lovable’s platform . The note also characterizes Lovable as a $6.6B company that raised $330M and processes 100,000 new projects per day, scaling this into a formal residency program because “the unit economics already proved out” .

Takeaways for PMs:

  • If these economics hold, organizations will increasingly evaluate PM leverage as “clarity + taste + shipped outcomes,” not role boundaries .
  • Hiring and team design may shift toward “multi-capability builders” who can move from idea to shipped artifact quickly, with PM judgment as the constraint .

2) Agent One: a concrete pattern for “autonomous, but constrained” assistants

The Product Compass positions OpenClaw as unsafe because it grants full environment access with prompt-based guardrails that are vulnerable to prompt injection . Their alternative, Agent One, uses a Manager/Executor split, n8n data tables for memory/sessions, and hard security boundaries (Docker isolation, mounted folder permissions, and tool approvals) . For complex tasks, it uses the “Ralph Wiggum loop” (context reset with session-only state) to avoid long-conversation noise .

Takeaways for PMs:

  • Autonomy without constraints is treated as a liability; constraints should be enforced by system boundaries, not wording .
  • Even frontier models need human judgment to catch inconsistencies and runtime cracks .

3) Claude Code as a “personal retrieval layer” + Zettelkasten for rigorous thinking

Petra Wille describes using Claude Code to search her prior content (books, blog posts, hard drive) while drafting a newsletter about annual reviews/feedback sessions for product leaders . She reports Claude surfaced an extensive list of relevant references, including reminding her she had published a free chapter on giving feedback that she had forgotten .

In the same conversation, Teresa Torres describes applying Zettelkasten as a way of collecting beliefs and examining them: writing atomic notes as claims, attaching evidence and sources, noting limitations, and linking notes to build a rigorous web of reasoning. She uses Claude to help with tedious linking and feedback (e.g., spotting multiple claims per note, missing links) while she focuses on judgment about the claims .

Takeaways for PMs:

  • AI can save time by making large bodies of internal text searchable and reusable across writing, interviews, and customer artifacts .
  • “Critical thinking embodied” can be operationalized: claims → evidence → links → limitations, with AI assisting the mechanics .

Career Corner

1) Your company’s AI posture is a career signal

Gupta’s advice is blunt: “Your employer’s refusal to adopt these tools is information. Use it accordingly.”

How to apply:

  • Treat access to modern agentic tooling as part of your role’s leverage (and as a signal of how fast your org expects you to operate) .

2) Don’t confuse “AI-written” with “PM competence”

A Reddit thread notes it’s harder to spot incompetent PMs because PRDs and docs can “sound like ChatGPT” . Replies argue AI can help with documentation, but gaps show quickly in live settings; one commenter says calls reveal whether someone understands what they wrote, and that leadership isn’t oblivious . Another reply lists areas AI can’t do (presentations, live Q&A, negotiations, stakeholder management, identifying what matters, delivering results) .

How to apply:

  • Invest in “live” PM skills (narrative clarity under questions, negotiation, stakeholder alignment) rather than optimizing only for document production .

3) Skills to double down on: taste, critical thinking, and AI product sense

Multiple sources converge on “taste” as the scarce skill:

  • Gupta frames the post-AI bottleneck as product taste—knowing what’s worth building .
  • Lenny Rachitsky highlights that design skills and taste may become the most important skills in the future, and quotes Lazar advising against starting to learn to code if you haven’t—because you may be optimizing for the wrong skillset .
  • Torres argues that critical thinking—examining beliefs and their dependencies—is a future skill, and describes using Claude to support rigorous research workflows .
  • The Product Compass advises PMs to build (prototypes) to develop AI intuition and AI product sense, emphasizing mental models and transferable skills over specific tools that may become obsolete quickly .

How to apply:

  • Build artifacts to develop AI intuition, but keep your advantage in judgment: claim quality, tradeoffs, and taste .
  • Use AI to challenge your conclusions rather than to smooth over uncertainty .

4) Treat AI like an intern (especially with sensitive data)

A practical safety heuristic from Petra Wille’s discussion: treat AI like a temporary intern—don’t hand it all company data at once; share only what you would share with an intern who’s with you briefly .

Tools & Resources

GPT‑5.3‑Codex rollout (and pause), ChatGPT ads test, and Opus 4.6 tops leaderboards
Feb 10
9 min read
788 docs
Ahmad
Jediah Katz
Claude
+34
GPT-5.3-Codex reaches Cursor, VS Code, and GitHub Copilot with reported speed gains and a heightened cybersecurity classification—then GitHub pauses the rollout for reliability. Also: OpenAI begins testing ads in ChatGPT, Claude Opus 4.6 leads major leaderboards amid token-cost concerns, and new research targets cheaper agent reasoning and more scalable MoE training.

Top Stories

1) GPT-5.3‑Codex expands across IDEs and Copilot—then GitHub pauses the rollout

Why it matters: Coding models are now shipping as default developer infrastructure (Cursor, VS Code, Copilot). Release reliability and safety posture can become just as important as raw capability.

  • Availability/rollout: GPT‑5.3‑Codex is rolling out in Cursor, VS Code (@code), and GitHub/Copilot. GitHub also announced it as generally available for Copilot .
  • Claimed performance: GitHub reports early testing shows 25% faster performance than GPT‑5.2‑Codex on agentic coding tasks, plus improved reasoning/execution in complex workflows . Cursor says it’s “noticeably faster” than 5.2 and preferred by many of their engineers .
  • Safety posture + phased API: OpenAI says this is the first model they’re treating as high cybersecurity capability under their Preparedness Framework, and they’re starting with a small set of API customers while scaling mitigations before expanding access . Cursor’s CEO says OpenAI rated it “high cybersecurity risk” and that Cursor and OpenAI collaborated on safeguards .
  • Reliability update: GitHub says it is pausing the rollout to focus on platform reliability. VS Code’s @code account echoed that users not seeing it are affected by the pause .

Adoption signal: Sam Altman reports the Codex App crossed 1M downloads in its first week and saw 60%+ growth in overall Codex users last week .

2) OpenAI begins testing ads in ChatGPT (U.S., subset of Free + Go)

Why it matters: Ads materially change product incentives and trust expectations for an assistant used for “important and personal tasks.”

  • OpenAI is rolling out a test for ads in ChatGPT to a subset of Free and Go users in the U.S..
  • OpenAI states ads are labeled as sponsored, visually separate from responses, and do not influence ChatGPT’s answers.
  • Stated goal: enable access to ChatGPT “for free with fewer limits,” while protecting trust .
  • OpenAI also released a podcast episode on “ad principles” and how ads in Free/Go tiers expand access, featuring ads lead Asad Awan .

Details: http://openai.com/index/testing-ads-in-chatgpt/

3) Claude Opus 4.6 takes top spots across public leaderboards—while cost/token use becomes a core constraint

Why it matters: Opus 4.6 is being positioned as a frontier coding + agent model, but multiple reports emphasize token hunger and high inference cost, which can shape real-world deployment.

  • Model update: Anthropic introduced Claude Opus 4.6 as an upgrade that “plans more carefully,” sustains agentic tasks longer, works reliably in massive codebases, and catches its own mistakes . Anthropic also says it’s their first Opus-class model with 1M token context in beta .
  • Arena results: AI Arena reports Opus 4.6 is #1 in Code Arena and Text Arena, with “thinking” and “non-thinking” occupying the top two spots across both leaderboards .
  • WeirdML result + token cost: One benchmark report says Opus 4.6 (adaptive) leads WeirdML at 77.9% (vs GPT‑5.2 xhigh at 72.2%), but is “extremely token hungry,” averaging 32k output tokens per request, sometimes failing to finish within 128k tokens.

4) Multi‑Head LatentMoE + “Head Parallelism” claims O(1) communication and up to 1.61× faster MoE training

Why it matters: MoE scalability is often constrained by inter‑GPU communication and load imbalance. This work claims a route to scale expert count while keeping communication predictable.

  • Core idea: Split tokens into “heads” and exchange them evenly across GPUs before routing, so routing and expert compute happen locally, with a single send-back afterward .
  • Claimed benefits: Constant communication independent of expert count, balanced workloads, deterministic communication .
  • Results reported: Up to 1.61× faster training than standard MoE (+EP) with identical model performance; still 1.11× faster with doubled granularity and higher performance .

Paper: https://arxiv.org/abs/2602.04870v1 | Code: https://github.com/kerner-lab/Sparse-GPT-Pretraining

5) GLM‑5 architecture details land in Transformers PRs: ~740B params (~50B active), 200k context features

Why it matters: The open-weights ecosystem is surfacing implementation-level architecture details quickly via framework PRs, shaping what’s easy to run, fine-tune, and compare.

  • A Transformers PR describes GLM‑5 as ~740B parameters with ~50B active, 78 layers, MLA attention “lifted from DeepSeek V3,” and a sparse attention indexer (DeepSeek V3.2) for 200k context.

PR: https://github.com/huggingface/transformers/pull/43858


Research & Innovation

Why it matters: This week’s research cluster is about making agentic reasoning cheaper and more reliable (distilling multi-agent debate, iterative reasoning with learned summarization), plus closing integration gaps for real software work.

Distilling multi-agent debate into a single model: AgentArk

  • AgentArk distills multi-agent debate reasoning into a single LLM via trajectory extraction and targeted fine-tuning—shifting cost from inference time to training time .
  • The strongest method (PAD) preserves multi-agent deliberation structure (verification and error localization) .
  • Reported results (120 experiments): PAD achieves 4.8% average gain over single-agent baselines (up to 30% in-domain) and improves intermediate verification/coherence metrics .

Paper: https://arxiv.org/abs/2602.03955

“Infinite-horizon” reasoning via iterative summaries: InftyThink+

  • InftyThink+ trains models to reason in iterative rounds connected by self-generated summaries, aiming to avoid context window limits and quadratic attention costs .
  • Training is two-stage: supervised cold-start then end-to-end RL that learns summarization and continuation policies .
  • Reported results on DeepSeek‑R1‑Distill‑Qwen‑1.5B include +21pp on AIME24 vs baseline and −32.8% inference latency on AIME25 vs standard reasoning .

Paper: https://arxiv.org/abs/2602.06960

Multi-agent full-stack web dev with execution feedback: FullStack-Agent

  • FullStack-Agent targets a common failure mode: agents generating frontends with mock data while missing functional backends/databases that integrate correctly .
  • It uses three specialized agents (planning, backend coding with HTTP debugging, frontend coding with runtime error monitoring) and validates during generation via “Development-Oriented Testing” .
  • Reported benchmark results show large gains over baselines across frontend/backend/database accuracy on FullStack‑Bench .

Paper: https://arxiv.org/abs/2602.03798

Multi-agent evaluation realism: Google’s 180-agent-config study + a new “Γ” metric proposal

  • Google evaluated 180 agent configurations, reporting multi-agent systems can boost parallelizable tasks by 81% but degrade sequential tasks by 70%.
  • A separate paper proposes a metric Γ that compares multi-agent system performance against a single agent using the same total resource budget; Γ>1 indicates true collaboration gain, Γ≤1 suggests an expensive illusion .

Products & Launches

Why it matters: Distribution is shifting from “a model” to bundled workflows (research harnesses, IDE commands, reproducible eval/tracing) and interactive performance (real-time media + inference stacks).

Perplexity upgrades Deep Research and moves to Opus 4.6

  • Perplexity says it upgraded Deep Research, claiming state-of-the-art performance on leading external benchmarks and improved accuracy/reliability vs other deep research tools .
  • Perplexity says Deep Research now runs on Opus 4.6, improving internal/external benchmark results further .
  • Availability: now for Max users; rolling out to Pro users .

Cursor ships Composer 1.5 (and emphasizes post-training scale)

  • Cursor released Composer 1.5, positioning it as balancing intelligence and speed for interactive coding .
  • A user summary claims Composer 1.5 used “20× scaled RL” on the same pretrained model as Composer 1, and is trained to self-summarize when context runs out . Another post claims post-training compute exceeded pretraining compute for Composer 1.5 .

More: https://cursor.com/blog/composer-1-5

Real-time image-to-image editing (fal) at 10+ FPS

  • fal says it launched real-time image-to-image editing for FLUX.2 Klein at 10+ FPS, emphasizing low latency and hand-tuned kernels .

Playground: https://fal.ai/models/fal-ai/flux-2/klein/realtime/playground

Lightweight inference education + reference stack: “mini-sglang” thread

  • A thread walks through a ~5k-line Python inference engine (“mini-sglang”), highlighting production features and concrete optimizations like radix prefix caching, chunked prefill, overlap scheduling, and CUDA graphs for decode latency .

New developer building blocks

  • Google released Gemini Skills, a “library of skills for the Gemini API, SDK and model interactions” . Repo: https://github.com/google-gemini/gemini-skills.
  • OpenAI says its Platform API docs now redirect to a unified developer hub consolidating API docs, guides, cookbooks, and Codex/ChatGPT Apps content . Hub: https://developers.openai.com/.
  • VS Code workflow composition: a /review command can use Opus 4.6 fast mode, GPT‑5.3‑Codex, and Gemini 3 Pro to review changes and “grade each other’s work” for higher-quality review comments .

Industry Moves

Why it matters: The competitive map is being shaped by distribution partnerships, infra execution, and capital allocation to AI-native products.

Databricks reports $5.4B revenue run-rate and highlights “Genie” product line

  • Databricks’ CEO reports Q4 stats including $5.4B revenue run-rate growing >65% YoY, $1.4B AI revenue run-rate, and being FCF positive for the year .
  • He attributes momentum to GenAI lowering SQL/Python barriers via the “Genie” family (Genie, Data Science Genie, Data Engineer Genie) .

Press release: https://www.databricks.com/company/newsroom/press-releases/databricks-grows-65-yoy-surpasses-5-4-billion-revenue-run-rate

a16z leads Shizuku AI seed (AI companions/characters in Japan)

  • a16z says it’s leading Shizuku AI’s seed round; Shizuku is building an AI lab in Japan focused on AI companions and characters .
  • The announcement frames founder Akio Kodaira’s prior AI VTuber work and background (PhD at UC Berkeley; prior Meta and Luma AI) .

Announcement: https://a16z.com/announcement/investing-in-shizuku-ai/

Aston Martin F1 partners with Cognition

  • Aston Martin F1 announced Cognition as a Global Partner and “AI software engineering partner” .

xAI: world-modeling hiring + co-founder departure

  • xAI is hiring for “World Modeling,” describing work on a world simulator with real-time interaction and long-horizon video .
  • Separately, xAI co-founder @Yuhuai says they resigned from xAI .

Infra + go-to-market signals

  • Together AI says DecagonAI partnered with Together AI to meet growing demand and strict latency budgets for AI customer support .
  • LangChain is hiring to prototype integrations and build cookbooks/tutorials, describing the role as shaping the “Agent Stack” .

Policy & Regulation

Why it matters: “Policy” is increasingly embedded in platform rules (ads, safety frameworks) and energy constraints that shape how/where AI runs.

Ads governance in ChatGPT

  • OpenAI’s ad test states ads are sponsored/labeled, separated from answers, and do not influence responses .

Safety classification for a coding model

  • OpenAI states GPT‑5.3‑Codex is the first model treated as high cybersecurity capability under its Preparedness Framework .

Energy policy affecting AI infrastructure (China)

  • China set sector-specific renewable share quotas for energy-intensive industries; national hub node data centers have a flat 80% renewable requirement (2025) . Quotas include hydro and can vary by province, with some provinces specifying separate non-hydro targets .

Quick Takes

Why it matters: Smaller releases often become default components (benchmarks, agent tooling, architecture PRs) within a few weeks.

  • Qwen3.5 architecture surfaced in a Transformers PR: a vision-language hybrid SSM‑Transformer with Gated DeltaNet linear attention mixed with standard attention, interleaved MRoPE, and shared+routed MoE experts .
  • H Company’s Holo2 GUI localization model (Holo2‑235B‑A22B) claims #1 on ScreenSpot‑Pro (78.5%) and OSWorld‑G (79.0%) .
  • Google DeepMind Perch 2.0: a bioacoustics foundation model trained primarily on terrestrial animals shows strong performance on underwater acoustics, including whale vocalization tasks, using transfer learning .
  • OpenEnv (Hugging Face + Meta) aims to make RL environment building easier for LLM/VLM training; an example Snake environment sends base64 images as observations .
  • Text-to-Image Arena updates: seven prompt categories added and ~15% noisy prompts filtered to stabilize rankings .
  • Seedance 2.0: ByteDance’s model is in beta and “only available in China,” with “very strong results” claimed on CookingLeBron‑Bench .
Elite overproduction, founder “wartime” realism, and a trait-first praise heuristic
Feb 10
3 min read
191 docs
Ryan Hoover
Gokul Rajaram
jack
+4
Today’s strongest signal is Jack Mallers’ recommendation of Peter Turchin’s *The End Times*—shared as a KPI-driven lens on real wages and “elite overproduction.” Also surfaced: an a16z partner’s “honest business book” pick for founders, plus smaller-but-high-conviction recommendations spanning state-building, biography, and a parenting/relationships praise heuristic.

Most compelling recommendation: The End Times (a framework for spotting instability)

  • Title: The End Times
  • Content type: Book
  • Author/creator: Peter Turchin
  • Link/URL: https://www.youtube.com/watch?v=B5dZgGeXA2o
  • Recommended by: Jack Mallers (CEO, Strike)
  • Key takeaway (as shared): Turchin is cited for predicting U.S. “empire collapse” and for using two core “KPIs” to recognize the trend: real wage growth (in real purchasing-power terms) and elite overproduction (too many people competing for a limited set of elite roles). Mallers connects declining real wages with rising unrest, and describes elite overproduction as a pipeline that can produce educated, debt-burdened young people with poor job prospects who become politically radicalized.
  • Why it matters: This is a concrete, observable-indicators lens for thinking about social and political stress—useful if you’re trying to reason from measurable conditions (real wages, opportunity scarcity) rather than vibes.

Founder/operator realism (one “honest” business-book pick)

  • Title: The Hard Thing About Hard Things
  • Content type: Book
  • Author/creator: Ben Horowitz
  • Link/URL: https://www.youtube.com/watch?v=Aq0JSbuIppQ
  • Recommended by: Anish Acharya (General Partner, Andreessen Horowitz)
  • Key takeaway (as shared): Acharya calls it “the first honest business book,” arguing most business books are in the business of selling business books. He highlights Horowitz’s “wartime” stories and navigating inflection points—and that founders often feel “somebody finally sees me.”
  • Why it matters: If you’re operating through ambiguous, high-pressure decisions, this is recommended specifically for its authenticity and situational context (not canned frameworks).

State-building as “startup state” (title not specified)

  • Title: Book on how the UAE was built (title not specified in the post)
  • Content type: Book
  • Author/creator: Mohammed bin Rashid Al Maktoum
  • Link/URL: https://x.com/balajis/status/2020880068629975486
  • Recommended by: Balaji Srinivasan (@balajis)
  • Key takeaway (as shared): Balaji frames the UAE as one of the most important small countries—alongside Singapore and El Salvador—because it is a “startup state,” and points to a book by Mohammed bin Rashid Al Maktoum on how it was built.
  • Why it matters: This is a lead for readers interested in institutional design and “country-building” narratives through a startup-like lens.

A biography that “profoundly impacted” an operator/investor (title not specified)

  • Title: Biography of John Rockefeller Jr. (title not specified)
  • Content type: Book
  • Author/creator: Not specified in the clip
  • Link/URL: https://www.youtube.com/watch?v=ZFR5mcBEsAE
  • Recommended by: Gokul Rajaram
  • Key takeaway (as shared): Rajaram cites this biography as the most recent book/podcast that “profoundly impacted” his thinking, calling it an “incredible book.”
  • Why it matters: It’s a high-conviction signal from a product leader/investor; even without detailed notes on which lessons, the strength of endorsement suggests it’s worth a look if you’re collecting biographies that shape decision-making.

Relationships & parenting: praise traits, not outcomes

  • Title: Podcast by @ChrisWillx (episode not specified)
  • Content type: Podcast
  • Author/creator: @ChrisWillx
  • Link/URL: https://x.com/rrhoover/status/2020950170339508506
  • Recommended by: Ryan Hoover (@rrhoover)
  • Key takeaway (as shared):

“Don’t praise a guy’s achievements, praise the personality traits that made them possible.”

  • Why it matters: This is a compact heuristic for reinforcing process/character—shared explicitly in the context of relationships and raising children.
Soybeans surge on Brazil weather and China-demand scrutiny; cattle cash stays strong amid import headline risk
Feb 10
10 min read
145 docs
农业致富经 Agriculture And Farming
Successful Farming
Gabe Brown
+16
Soybeans led the tape on Brazil weather disruption and ongoing China-demand scrutiny, while cattle cash strength continued to clash with import-policy headline risk. This edition also highlights scalable regenerative practices (Brazil coffee cover crops), labor-saving harvest robotics (China), and key planning items: USDA balance-sheet expectations and US biofuels policy timelines.

Market Movers

Soybeans: weather-driven rally meets China-demand scrutiny (US / Brazil / China)

  • Soybean prices rallied ~7% in a week, driven by too much rain in Brazil and drought concerns in the US Corn Belt. In Brazil, north Mato Grosso saw 150–200mm in a few days, with more heavy rains forecast; farmers reported damaged soybeans and lagging corn planting.
  • US commentary tied the latest strength to China-demand chatter: a 50-cent rally in old-crop soybeans was linked to news that China may buy up to 20 MMT of US soybeans; one scenario cited would pull the US soybean balance sheet down to 265 million bushels (or tighter) .
  • At the same time, multiple sources emphasized the market’s need for confirmation: one analyst said there has been no evidence of additional Chinese demand yet via flash sales or export sales reports , while another said the market needs to see China “come to the table” soon as South America harvest advances .
  • A concrete datapoint: private exporters reported 264,000 MT of soybeans sold to China for MY 2025/2026 .

Positioning / flow:

  • One segment reported funds adding to long soybean positions again, with high volume and rising open interest suggesting “new buyers” . Another CFTC-related summary said managed money was estimated net long 125,000 soybean contracts as of Friday’s close (private estimates) .

South America supply: faster Brazil harvest and record-crop talk (Brazil / Argentina)

  • Brazil’s soybean harvest was cited at ~17% complete (vs 10% a year ago) with some rain slowing parts of north-central Brazil; one estimate projected a record 181.6 MMT Brazil soybean crop . Separately, Brazil’s harvest was also cited at 16% in the latest week (AG Rural), up from 10% a week earlier (and 15% a year prior) .
  • Argentina had been pretty dry in key soybean areas recently, but rain was forecast for much of the country over the next 10 days (with caveats that forecasts are not guarantees) .

Corn and wheat: heavy supplies vs. export pace (US)

  • Corn futures were down early Feb. 9 (March $4.28¼, down ) , and one market discussion pinned near-term constraints on a ~2.3 billion bushel carry.
  • Export signals were mixed:
    • US corn export inspections for the week ending Feb. 5 were 51.5 million bushels, and marketing-year-to-date inspections were said to exceed the seasonal pace needed to hit USDA’s target by 332 million bushels.
    • For wheat, weekly export inspections were 21.3 million bushels, and marketing-year-to-date inspections were ahead of pace by 61 million bushels.

Bean oil: trade headlines and crush pace (US / India)

  • Bean oil strength was linked to a US–India trade agreement and the view that US bean oil is currently competitive in the Indian market.
  • The same discussion noted a robust US crushing pace running ~9–10% above last year’s pace (which was also a record) .
  • Another summary said India agreed to reduce or eliminate tariffs and barriers on select US ag products including soybean oil and dry distillers grains, aiming to lower domestic food and feed costs—while not offering concessions on importing genetically modified US food crops such as dairy products or soybeans .

Cattle: cash strength vs. policy and headline risk (US)

  • Cash-fed cattle strength remained a key theme; one segment reported cash averaged over 240 last week and noted a shift where cash traded over nearby futures . Another said the cash market has put on about $10 in two weeks due to very tight numbers .
  • Trade/policy headline: an executive order was described as allowing 100,000 MT of Argentine lean beef trimmings to enter the US under a lower tariff rate (framed as 20,000 MT per quarter) . The same discussion characterized the fundamental volume impact as small but warned market psychology mattered—referencing a prior 16% cattle correction and 21% feeder-cattle correction in Oct–Nov tied to similar rhetoric and positioning .

Hogs: pullback from highs (US)

  • Hogs were described as lower and consolidating off contract highs, with hedge activity and profitability-taking cited, plus a “wait and see” stance on summer demand . Another segment flagged the market had been overbought since early December and that high slaughter weights were a counterweight to disease-driven supply concerns .

Innovation Spotlight

Regenerative coffee inter-row cover crops scale-up (Brazil: Minas Gerais)

  • A Minas Gerais initiative (“Construindo Solos Saudáveis”) plants cover crops in coffee inter-rows to improve fertility, reduce erosion, and raise productivity with an environmental sustainability focus .
  • The approach includes up to 13 different species in an inter-row, using varied root depths and flowering patterns to improve filtration/infiltration and nutrient cycling (deep nutrients pulled up and released after mowing) .
  • Reported field benefits included:
    • Soil temperature reduction of more than 10°C when comparing bare soil to soil with cover plants
    • Improved infiltration/retention and compaction relief via root-created channels
    • More beneficial insects and flower increases linked to diversity
  • The program was described as scaling from 50 demo units (2021) to ~1,000, with exporters investing due to global demand for regenerative practices and sustainability requirements .

Organic potato yield jump with defined input recipe (India: Uttar Pradesh)

  • A farmer profile from Barabanki reported shifting from chemical to organic potato production for 5–6 years using Zydus bio-products, with a claimed yield increase from ~50 quintals/acre to ~65–70 quintals/acre.
  • The on-farm recipe included 2 kg of “Zaytonik” mixed with 4–6 bags of DAP per acre at sowing. Additional “Zaytonik Active” was mixed with pesticides starting 25–30 days after planting, described as extending efficacy .

Harvest labor reduction: electric banana-taro robot economics (China: Yunnan)

  • Manual harvest for banana taro (芭蕉芋) was described as 4–5 minutes per plant and ~100–200 kg/hour, less than 0.5 mu/hour.
  • A track-driven electric robot was tested and described as achieving ~8× manual efficiency overall in a field test framing (robot harvested ~40 plants in 10 minutes vs. 2 villagers harvesting 50) .
  • Operating cost was described as roughly ~2 kWh per mu, with power at ~0.5 yuan/kWh (about ~1 yuan per mu electricity) .

Soilless strawberry seedlings to reduce soil-borne disease and lift output (China: Shandong)

  • A strawberry grower described moving seedling production onto racks using imported substrates (not soil) to avoid soil-borne disease impacts and reduce seedling loss .
  • The output claim cited was an increase from ~3,000 jin per mu previously to ~8,000 jin per mu after adopting the rack/substrate approach .

Regional Developments

Brazil: harvest progress and disruptive rainfall windows (Brazil)

  • Central and Southeast Brazil were flagged for 100–150mm rainfall totals over a short window (RJ, ES, south Minas, north SP, Triângulo Mineiro), with risks including fieldwork disruption and potential flooding/landslides .
  • Persistent rain was cited as hindering soybean harvest in central-north Mato Grosso, while Mato Grosso do Sul had a near-term window for fieldwork .
  • In Alta Floresta, intermittent rain into about Feb. 20 was expected to limit windows for soybean harvest and second-crop corn planting before heavier volumes return .

Brazil: exports and logistics

  • Brazil exported 1.876 million tons of soybeans in January 2026 (up 75.5% YoY), generating nearly US$831M in revenue (up 92% YoY) with an average price of US$442/ton (up 9%)—attributed to delayed shipments from last year’s record crop .
  • In Mato Grosso, producers and local leaders protested over the unpaved BR-158, describing mud in rainy periods, dust in dry seasons, and year-round losses; the state was paving an alternative (MT-109) as a partial, emergency route .

US: water and livestock protection measures (US)

  • The Trump Administration was described as securing a deal to guarantee enforcement of the 1944 U.S.–Mexico water treaty, aiming to provide certainty for South Texas farmers and ranchers dependent on the Rio Grande .
  • USDA announced completion of a sterile fly dispersal facility in Edinburg, Texas to expand capability to disperse sterile flies along the border and into the US if needed, in the fight against New World Screwworm. (More: Screwworm.gov.)

Turkey: poultry export halt (Turkey)

  • Turkey’s Trade Ministry announced measures to stop poultry meat exports, implemented Feb. 9 .

Paraguay: poultry processing expansion plan (Paraguay)

  • Two cooperatives (La Paz and Pirapó) described plans to build a broiler slaughterhouse designed for 3,000 birds/hour (starting at 1,500), with construction targeted for 2H 2026 and export-standard design (initial focus on the domestic market) .

Best Practices

Crop protection: insist on effective modes of action (US)

  • One agronomy note cautioned that premixes marketed as “2+ modes of action” may effectively provide only one for a given target (e.g., waterhemp example where only Group 15 is effective; frogeye leaf spot example where triazole may be the only effective component due to strobilurin resistance) .

Spring herbicide planning: resistance + drift safeguards (US)

  • Planning with retailers was emphasized to avoid repeating the same active ingredients for multiple years and to help manage resistance .
  • Emerging/problem weeds mentioned: morning glory, Johnson grass, dog hempbane.
  • Implementation guidance highlighted:
    • Build programs with 2–3 effective sites of action on problematic weeds .
    • Validate approved nozzles and tank mix partners for Enlist programs at enlist.com and prioritize nozzle selection for coverage .
    • Reduce drift risk near sensitive crops, endangered species habitats, and bees by identifying these before spraying .

Precision guidance foundation: record accurate driven field boundaries (US)

  • John Deere guidance materials framed accurate driven boundaries as foundational for tools like AutoTrac, Turn Automation, AutoPath Boundaries, and autonomy workflows .
  • Practical setup steps included verifying receiver measurements (boundary recorded from receiver reference point), completing TCM calibration, and using RTK correction modes where applicable .

Feedlot operations: animal intake protocols (Paraguay)

  • A Paraguay feedlot example described an arrival process including antiparasitic treatment plus a reconstituting product, with animals moved into an adaptation lot .

Soil management (garden-scale but transferable principles): keep soil covered (US)

  • A no-till gardening approach emphasized continuous cover using alfalfa hay or grass clippings to reduce weeds, feed biology, and protect soil from erosion . Improved soil aggregation was linked to improved infiltration—reported as over 30 inches/hour in one example .

Input Markets

Feed and co-products: bean oil, DDGs, and crush-driven supply (US / India)

  • The US crushing pace was described as running ~9–10% above last year’s record pace, creating additional veg-oil supply that could be “offloaded” if exports (e.g., to India) expand .
  • India’s trade steps explicitly included soybean oil and dry distillers grains as products on the list for tariff/barrier reductions, while not granting concessions for GMO food crops such as soybeans/dairy .

Equipment availability: used planters and compact tractors (US)

  • Used planter inventories were reported down 50%, with technology options now a major driver of value and availability .
  • Compact tractor updates highlighted:
    • Case IH Farmall 35A/40A: hydraulic enhancements and factory loader options; wide platform and step-through design .
    • New Holland Workmaster 35C/40C: ergonomic platform and intuitive controls .

Seed traits: corn rootworm control (US)

  • Syngenta’s DuraStack trait was promoted as a triple Bt protein stack with three modes of action for corn rootworm control, with rootworm damage cited as costing up to $1B/year; availability referenced for the 2027 season.

Forward Outlook

USDA report risk: minimal changes vs. market expectations (US)

  • One preview expected the upcoming USDA report to show tiny changes with minimal adjustments . A separate note raised the question of whether the market will be disappointed if balance sheets show no changes.

Soybean demand watch: confirmations and timing (US / China / Brazil)

  • Multiple discussions converged on timing: the soybean market may need confirmed additional China business to sustain strength as South America’s harvest advances . The reported 264,000 MT sale to China is a concrete signal to monitor in subsequent reporting .

Biofuels policy: 45Z incentive + E15 pathway (US)

  • Treasury guidance on the 45Z clean fuels production tax credit was described as making most ethanol plants eligible if CI is below 50 and as potentially delivering about $0.10/gallon—nearly doubling typical ethanol plant margins in one estimate and helping drive expansion announcements .
  • On E15, one analysis emphasized that a permanent RVP waiver removes only one hurdle and is not a mandate; US blend rates were described around 10.4–10.5%, with expectations for slow movement higher over time . Iowa advocates were cited pushing year-round E15, estimating E15 at ~30% of Iowa fuel sales and growing ~45% annually, with draft legislation expected by Feb. 15 and a potential House vote as early as Feb. 25.

Livestock: headline sensitivity remains elevated (US)

  • Cattle market commentary underscored that small import volumes (e.g., Argentine lean trimmings) can still create volatility through sentiment and fund positioning . A separate market note explicitly advised being aware of downside risk in cattle amid broader commodity volatility .

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