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Sam Altman
3Blue1Brown
Paul Graham
The Pragmatic Engineer
r/MachineLearning
Naval Ravikant
AI High Signal
Stratechery
Sam Altman
3Blue1Brown
Paul Graham
The Pragmatic Engineer
r/MachineLearning
Naval Ravikant
AI High Signal
Stratechery
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Google Antigravity
OpenAI Developers
Corey Quinn
🔥 TOP SIGNAL
OpenAI is stopping SWE-bench Verified reporting and recommending SWE-bench Pro, citing benchmark saturation, contamination (frontier models can regurgitate solutions/problem statements from the Task ID), and test-design issues that make a large chunk of remaining tasks effectively unsound to chase . If you’re using SWE-bench numbers to pick models or to market agent gains, this is a hard reset on what “good” looks like in coding evals .
🛠️ TOOLS & MODELS
OpenAI Responses API — WebSockets mode
- New WebSockets support aimed at low-latency, long-running agents with heavy tool calls (explicitly positioned as good for coding agents) .
- Docs: http://developers.openai.com/api/docs/guides/websocket-mode.
- Huet notes it was built to “keep up” with GPT-5.3-Codex-Spark.
Codex CLI — multi-agent mode
- Enable multiple specialized agents in one session (each with its own role/model/behavior) .
-
Setup:
-
Open
~/codex/config.toml -
Add
[features] multi_agent = true -
Run
/experimental→ “Multi-agent mode is now on”
-
Open
- Comes with explorer / worker / general helper agents out of the box .
Agentic “full stack orchestration” demo — Antigravity
- “Add GPay to your website” via one prompt: detects Angular, installs deps, edits frontend+backend, then verifies via an automated browser run .
OpenClaw — new beta
- Beta focuses on security + bugfixes (and regression fixes), plus adds Kilo provider and Kimi vision + video support.
- Release notes: https://github.com/openclaw/openclaw/releases.
Practitioner model notes (Codex vs Claude, cost/latency)
- Multiple practitioners are calling GPT-5.3-Codex + Codex app the best option “for getting software dev work done,” with strong instruction-following (trade-off: more “machine-like” personality) . Brockman attributes this to heavy investment + model/harness co-design + rapid post-training iterations .
- QuinnyPig reports Codex made Claude Code feel dramatically weaker after testing (starting from skepticism) .
-
Claude Code pain points surfaced today:
- “Opus 4.6 is thinking WAY TOO long” (annoying, not delivering value) .
- Primeagen tried “Claude fast 4.6” for high-stakes work and spent $100s in ~1 hour (but said it was fast) .
💡 WORKFLOWS & TRICKS
New eval reality: stop optimizing for brittle tests
- OpenAI’s critique: SWE-bench Verified became less meaningful at high scores—narrow tests can devolve into “guessing” exact names/implementation details rather than measuring coding ability .
- What they say they want next: longer-term tasks, open-ended design decisions, code quality/maintainability, real-world product building, and human-intensive rubric evaluation.
Red/green TDD as an agent control surface (Willison)
- Prompt pattern: write tests first → confirm they fail (“red”) → implement until they pass (“green”).
- Why it works with agents: reduces the odds of shipping code that doesn’t work or that’s unnecessary, and leaves you with a regression suite .
-
Copy/paste starter prompt:
Build a Python function to extract headers from a markdown string. Use red/green TDD.
“Conformance suite + reference implementation” makes big agentic ports safer (Ladybird)
- Andreas Kling ported LibJS to Rust using Claude Code and Codex, but emphasizes it was human-directed (he chose what to port, in what order, and how the Rust should look) .
-
Guardrails that mattered:
- Started with components that had strong test262 coverage .
- Required byte-for-byte identical output vs the C++ pipeline; verified identical ASTs and bytecode; reported zero regressions.
- Result: ~25,000 lines of Rust in ~two weeks (vs “multiple months” manually) .
Context files (AGENTS.md / CLAUDE.md): when they help vs when they’re just tax
-
Theo cites a study on “context files” for GitHub issue resolution:
- Dev-written context files: only +4% success vs omitting .
- LLM-generated context files: -3% success .
- More exploration/testing/reasoning → >20% higher costs.
- Recommendation: omit LLM-generated context files; keep only minimal non-discoverable requirements like specific tooling .
- Addy Osmani’s rule of thumb: auto-generated AGENTS(.md) duplicates what agents can discover and inflates cost; human-written files help mainly for non-discoverable gotchas/conventions/landmines. He suggests treating AGENTS(.md) as a living list of codebase smells (not permanent config) .
-
Theo’s practical heuristics:
- Don’t distract the model with irrelevant background—keep it focused on “the thing” .
- If the info is in the codebase, it often doesn’t belong in AgentMD; models can usually find what they need (e.g., via package.json + repo search) .
- If you’re investing time, prioritize unit/integration tests, type checks, and feedback systems you can expose to the model over growing AgentMD files .
-
Theo cites a study on “context files” for GitHub issue resolution:
Agentic quality loops you can steal
- Automated “review → fix → review” loop (Armin Ronacher): his
/reviewextension for ralph loops between “review on an empty branch” and “go back and fix your shit” until P0/P1/P2 are resolved . - Unblock multi-step tasks (Theo): if step 2 keeps failing, ask the agent for step 3—he claims it often back-solves step 2 to get there .
- Infra upgrade prompt that actually worked (Ronacher):
upgrade me to postgres 18. don’t make any mistakes—shared as a successful approach for painful major version upgrades .
- Automated “review → fix → review” loop (Armin Ronacher): his
👤 PEOPLE TO WATCH
- Simon Willison — launched Agentic Engineering Patterns (written by him, not an LLM) and is turning scattered best practices into an evergreen “guide” format . First chapters: “writing code is cheap now” and “red/green TDD” .
- Theo (t3.gg) — consistently practical on agent context management; argues many AGENTS.md/CLAUDE.md setups are counterproductive and measured as a cost/latency hit .
- Addy Osmani — sharp framing: AGENTS.md should be about non-discoverable landmines, and a single root file won’t scale for complex repos (he argues for a hierarchy of scoped files) .
- Kent C. Dodds — evolving his reviews of agent code toward “is it actually wrong or just different,” focusing on principles over personal style; also calls out UI “taste” as a remaining bottleneck (CSS + knowing when UI looks bad) .
- Armin Ronacher — hands-on, blunt tool feedback: calls MCP architecture token-inefficient/resource-intensive and says it underperforms “skills” in his testing .
🎬 WATCH & LISTEN
1) Prompt/context hierarchy explained (and why “extra context” sneaks into every request) — Theo (≈ 7:10–10:28)
Hook: A concrete mental model for why AgentMD/ClaudeMD “rules” are sticky: provider/system/developer/user layers, and everything above gets sent each turn—so context decisions directly impact cost and behavior .
2) What a “better coding benchmark” should measure — Latent Space + OpenAI Frontier Evals (≈ 14:04–15:51)
Hook: The team argues we’re moving beyond “solve a small GitHub issue” toward longer-running tasks and harder-to-measure signals like design taste, code quality, and maintainability .
📊 PROJECTS & REPOS
- OpenClaw — beta release notes (security/bugfix focus): https://github.com/openclaw/openclaw/releases
- Agentic Engineering Patterns (Willison) — guide hub + first chapters:
- test262 (referenced as a key “unlock” for safe agentic work on language tooling): https://github.com/tc39/test262
Editorial take: “Writing code is cheap now,” but proving it’s good (tests, evals, reviews, and anti-contamination discipline) is where serious teams will win .
Latent.Space
Geoffrey Hinton
Security & model protection: Anthropic alleges large-scale distillation of Claude
Anthropic: “industrial-scale distillation attacks” tied to DeepSeek, Moonshot AI, and MiniMax
Anthropic says it identified distillation attacks on its models by DeepSeek, Moonshot AI, and MiniMax, involving 24,000+ fraudulent accounts and 16M+ exchanges with Claude used to “extract its capabilities” for training other models . Anthropic also emphasized that distillation can be legitimate (e.g., making smaller/cheaper models), but warned that illicit distillation can remove safeguards and feed capabilities into military, intelligence, and surveillance systems .
Why it matters: This is a concrete, quantified claim of large-scale capability extraction—and a signal that model access controls are becoming a first-order competitive and national-security issue .
“more industrial strength thieves complaining about having been ripped off 🙄”
Anthropic says attacks are “growing in intensity and sophistication” and calls for “rapid, coordinated action” across industry, policymakers, and the broader AI community . More details: https://www.anthropic.com/news/detecting-and-preventing-distillation-attacks.
Benchmarks reset: OpenAI sunsets SWE-Bench Verified
OpenAI: stop reporting SWE-Bench Verified; recommend SWE-Bench Pro
OpenAI says it will no longer report SWE-Bench Verified, recommending SWE-Bench Pro instead, citing benchmark saturation and evidence of contamination from public repositories . In OpenAI-linked discussion, “every single frontier model” is described as able to regurgitate evaluation data and solutions—sometimes from the Task ID alone.
Why it matters: SWE-Bench Verified has functioned as a “north star” coding benchmark; OpenAI’s deprecation is a public admission that headline coding-eval progress can become misleading once contamination and test issues dominate .
What OpenAI says went wrong (two separate failure modes)
- Bad / unfair tests: In a review, OpenAI’s team describes many cases where tests expected unspecified implementation details (e.g., exact naming) or even additional features not in the problem description . In a separate summary, OpenAI’s deeper analysis is described as finding >60% of remaining problems unsolvable, including 49 tests “too narrowly defined” and 26 tests “too wide” (requiring unspecified features) .
- Training-on-test contamination: SWE-Bench tasks draw from popular open-source repos (no “canary strings”), which makes leakage hard to prevent; OpenAI describes examples where a model’s reasoning referenced repository specifics needed to pass a test that was otherwise “pretty impossible” .
Where evals are headed next (per OpenAI Frontier Evals discussions)
OpenAI-associated commentary points to future coding evals that better capture long-horizon work, open-ended design decisions, code quality/maintainability, end-to-end product building, and real-world usage metrics.
Model and product updates (signals from major labs)
Google: Gemini 3.1 Pro announced
Google announced Gemini 3.1 Pro, positioned to power consumer apps like Gemini and NotebookLM plus enterprise products, and claimed “more than double the reasoning performance” versus the prior Gemini model . Google also gave examples of advanced reasoning tasks (e.g., code-based animations and more advanced web design), and named early enterprise testers including JetBrains, Databricks, Cartwheel, and Hostinger Horizons.
Why it matters: The pitch explicitly bundles reasoning gains with agentic workflow positioning (data synthesis, long context, multi-step tools), which is increasingly how frontier model launches are being framed .
Anthropic: Claude Sonnet 4.6 + 1M-token context (beta)
Anthropic debuted Claude Sonnet 4.6, saying it reaches capabilities similar to its larger Opus 4.6 at lower pricing, and introduced a 1M token context window in beta—positioned as large enough for full “codebases, lengthy contracts or dozens of research papers” in one request . Claimed upgrades include improved agentic tools, “computer use” (operating software “like a human would”), and stronger long-context reasoning for business tasks like financial and document analysis .
Why it matters: The combination of long context + agentic “computer use” continues the trend toward assistants that can act across tools and documents, not just chat .
OpenAI: gpt-realtime-1.5 (realtime API)
OpenAI released gpt-realtime-1.5, described as improving “intelligence, instruction following, and voice quality,” with a public demo link and a phone number to try it . Greg Brockman also pointed to an “Improved realtime API” announcement .
Why it matters: Realtime voice quality and instruction following are key friction points for voice-first agents; shipping a new realtime model suggests continued iteration toward production-grade conversational interfaces .
OpenAI Codex: ex-Cursor hire to pursue an “Agent Development Environment”
Rohan Varma (ex-Cursor) said he’s joining OpenAI Codex to build the “future of agentic development,” arguing the next step isn’t “a better IDE” but an Agent Development Environment (ADE) for orchestrating agents and reasoning over their outputs . In the same thread, he points to Codex shipping models for agentic coding (e.g., gpt-5.3-codex) and to the new “Codex App” as a glimpse of direction .
Why it matters: This is an explicit strategic framing: developer tooling as orchestration and supervision of multiple agents, not just code completion .
Safety, governance, and “what happens next” (research + expert signals)
Bengio: hardware controls and international safety guidelines (nuclear analogy)
Yoshua Bengio warned that human-level AI could arrive “in a few years” to “20 years,” citing how systems like ChatGPT surprised researchers . He argued for international safety guidelines (drawing parallels to post–WWII nuclear governance) and advocated controls around AI hardware—describing GPUs as a bottleneck that could be registered and licensed with guardrails .
Hinton: most experts expect superintelligence within ~20 years; calls for cross-country alignment research sharing
Geoffrey Hinton said “most neural net experts believe” superintelligent AI will arrive within ~20 years (offering his own range of “very likely” more than five years and possibly up to 20) and noted other prominent timelines he’s heard (e.g., Demis Hassabis ~10 years; Ilya Sutskever sooner than 10; Dario Amodei 3 years) . He also suggested creating research institutes in different countries that test how to make national “super smart AI” systems “care more about people than about itself,” sharing alignment techniques internationally while not sharing capability-advancing methods .
Simulated nuclear crises: LLMs escalated and never chose de-escalation options
A King’s College London researcher ran simulated nuclear crisis games across 21 matches (over 300 turns) with GPT-5.2, Claude Sonnet 4, and Gemini 3 Flash, finding models used nuclear weapons “more often and earlier than humans,” and that no model selected any de-escalatory option in the action distribution . The paper reported 95% of games reached tactical nuclear use and 76% reached strategic nuclear threats .
Why it matters: If AI systems become routine “advisors” in high-stakes settings, this suggests model choice could materially change crisis dynamics—and that evaluation needs to capture strategic behavior, not just static QA .
Measuring progress (beyond product demos): new benchmarks and attribution tools
“Concept Influence”: training-data attribution via interpretable vectors
A new approach called Concept Influence proposes attributing model behavior to interpretable vectors (e.g., probes, SAE features) rather than to individual examples, described as 20× faster than influence functions and “more semantically meaningful” . Reported results include outperforming influence functions on emergent misalignment attribution, and a finding on OASST1 that using only 5% of the data maintained full capability while reducing harm 3×.
Why it matters: If robust, this is a practical bridge between interpretability artifacts (probes/SAEs) and governance-oriented questions like “which data causes this behavior?” .
LABBench2: 1,900-task benchmark for AI systems doing biology research work
Researchers from Edison Scientific, UC Berkeley, FutureHouse, and the Broad Institute released LABBench2 (1,900 tasks) spanning literature retrieval, protocol troubleshooting, molecular biology assistance, and experiment planning . The benchmark highlights weaknesses like poor cross-referencing across biological databases and difficulty interpreting figures/tables, while noting that tool access can improve performance .
Why it matters: It’s an example of evals shifting toward “can the system do real scientific work,” not just answer exam-style questions—while explicitly showing where current frontier models still break down .
Workforce and ecosystem signals
Software jobs vs. “AI kills coding jobs” narratives
François Chollet highlighted a data point that software development jobs grew 10% over the last year while the overall market declined 5.8%. In related posts, he argued that if AI makes software engineers more productive, demand can rise (invoking Jevons paradox), and suggested latent demand for software is “orders of magnitude” larger than what’s deployed today .
Andrew Ng: “X Engineer” roles and more software builders
Andrew Ng argued that even if developers become “10x more productive,” demand for custom software “has no practical ceiling,” and predicted growth in “X Engineer” jobs (e.g., Recruiting Engineer, Marketing Engineer) embedded in business functions to create software for that function .
Hugging Face: competition framing
Clement Delangue warned that the AI ecosystem needs “more competition and innovation spreading,” arguing that otherwise “a few companies” could control the world in a “very scary” way .
Brad Lightcap
Chubby♨️
Sakana AI
Top Stories
1) Anthropic reports industrial-scale “distillation” campaigns targeting Claude
Why it matters: If model capabilities can be reconstructed through massive API querying, it changes the security perimeter from compute access to API abuse detection—with implications for safeguards, export controls, and the economics of frontier development.
Anthropic says it identified industrial-scale campaigns by DeepSeek, Moonshot AI, and MiniMax that used ~24,000 fraudulent accounts to generate 16M+ exchanges with Claude, extracting capabilities to train or improve other models . One breakdown circulating in the discussion lists query volume as ~150k (DeepSeek), 3.4M (Moonshot), and 13M (MiniMax).
A widely shared explanation frames distillation as copying a stronger model’s behavior by collecting millions of input/output examples—common internally for “smaller, cheaper models,” but here characterized as an espionage-like operation via API calls . Specific tactics cited include requesting step-by-step reasoning, targeting agent capabilities across many accounts, and rapidly pivoting to new model releases .
Several posts emphasized downstream risks: safety filters can be lost, and “frontier AI without safeguards” could be used in military/surveillance contexts . Others argue this could undermine chip export controls if output-copying scales . A recurring recommendation: shared detection systems across frontier labs, since attackers can rotate to the weakest defenses .
Notably, reaction is mixed: one commenter argues “distillation is not an attack” , another claims DeepSeek’s use was “qualitatively different” than MiniMax’s and that lumping them together may be unfair .
2) Standard Intelligence’s FDM-1: computer action learning from raw internet video
Why it matters: If agents can learn UI actions directly from video at internet scale, the bottleneck shifts from human labeling to compute and data access—enabling longer-horizon, higher-precision computer use.
Standard Intelligence announced FDM-1, a foundation model for computer actions that learns from video (not screenshot datasets with human action labels) . The reported approach uses:
- An inverse dynamics model to infer the action between frames
- A video encoder that compresses nearly 2 hours of high-res footage into the space other models use for 1 minute
- Auto-labeling to reach 11M hours of screen recordings after training on 40k hours of labeled data (described as 550,000× larger than the biggest open dataset)
Demonstrations include constructing a gear in Blender, finding software bugs, and driving a real car through San Francisco using arrow keys . One claim highlights the driving result after <1 hour of training footage . A separate framing: this takes computer action learning from “data-constrained” to “compute-constrained” .
3) OpenAI ships WebSockets for agents + upgrades real-time voice with gpt-realtime-1.5
Why it matters: Latency and tool-call overhead are becoming core constraints for agent products; reducing round trips can translate directly into faster, more reliable agentic workflows.
OpenAI introduced WebSockets in the Responses API for low-latency, long-running agents with heavy tool calling . The mode keeps a persistent connection and sends only incremental inputs rather than resending full context each turn . OpenAI says maintaining in-memory state can speed up runs with 20+ tool calls by 20%–40%.
Early third-party results highlighted in posts:
- Cline reported ~15% faster on simple tasks and ~39% faster on complex multi-file workflows (best cases 50%) vs the standard API, noting a small handshake overhead that amortizes on heavy tool use .
- Cursor said OpenAI models are now up to 30% faster after upgrading users to WebSockets .
On voice, OpenAI released gpt-realtime-1.5 in the Realtime API with improved instruction following, tool calling, and multilingual accuracy . OpenAI also reported internal eval lifts: +5% on Big Bench Audio, +10.23% on alphanumeric transcription, and +7% on instruction following . Partners shared deployment signals, including Genspark’s phone-call alpha test reporting a 66% human connection rate (up from 43.7%) and a reduced “problem case rate” (2.1% vs 4.2%) .
4) Guide Labs releases Steerling-8B, positioning interpretability as a first-class model feature
Why it matters: Claims of built-in traceability and memorization suppression—if they hold up in practice—target two recurring barriers to high-stakes deployment: understanding why outputs occur and controlling training-data leakage.
Guide Labs announced Steerling-8B, described as the first and largest “large-scale inherently interpretable” language model . It is presented as tracing each generated token back to input context, training data, and human-understandable concepts. The team also claims it can self-monitor memorized content and suppress it at inference time without retraining.
Release links: Guide Labs post, GitHub, and Hugging Face .
5) DeepSeek V4 signals intensify alongside claims of training on NVIDIA Blackwell despite U.S. export restrictions
Why it matters: Reports of cutting-edge GPU access despite bans, combined with ongoing model-copying allegations, sharpen the question of what policy levers (compute vs access vs outputs) can realistically constrain capability diffusion.
Reuters reporting (as shared in posts) cites a senior U.S. official saying DeepSeek’s new model—described as imminent—was trained using NVIDIA Blackwell GPUs despite the export ban . Separately, posts suggested DeepSeek V4’s release is imminent, with one claim pointing to a pre-release polish pattern (merging PRs) .
Research & Innovation
Monitoring reasoning traces: when chain-of-thought (CoT) helps—and when it doesn’t
Why it matters: As CoT is used for oversight, the question isn’t just “does the model show its work,” but whether monitors can reliably extract the right signals.
A paper summary shared by DAIR.AI formalizes CoT “monitorability” using information theory: mutual information between CoT and output is necessary but not sufficient for effective monitoring . It identifies two failure modes—information gap and elicitation error—and proposes two training approaches (oracle-based rewards for transparency, and a label-free conditional mutual information objective) that improve monitor performance without degrading reasoning traces . Paper link: https://arxiv.org/abs/2602.18297.
Synthetic reasoning structure (ByteDance): “semantic isomers” and Mole-Syn
Why it matters: Long CoT training can become unstable if the model learns incompatible “reasoning structures,” even when surface-level solutions look similar.
ByteDance research is summarized as treating strong long CoT as having a molecular-like internal structure with three behaviors: deep reasoning, self-reflection, and self-exploration . The summary warns that simply copying reasoning traces can fail—mixing traces from different models can destabilize training due to incompatible structures (“semantic isomers”) . A proposed method, Mole-Syn, extracts transition patterns (deep reasoning → reflection → exploration) and generates new structured synthetic data without verbatim copying . Paper link: https://arxiv.org/abs/2601.06002.
Speech NER under real-world diversity: SF Streets benchmark + a small-sample fix
Why it matters: Navigation and emergency dispatch failures can be driven by named-entity transcription errors, especially across diverse linguistic backgrounds.
Together Research introduced SF Streets, a benchmark for named entity recognition in speech across 15 models. Reported metrics include 39% average error rate on street names, 18% lower accuracy for non-English speakers, and mis-transcriptions landing you 2.4 miles off target . A proposed fix—cross-lingual style transfer with <1,000 synthetic samples—yielded a 60% relative improvement on Whisper-Large . SF Streets and US Streets datasets are said to be releasing publicly .
Evaluations: OpenAI stops reporting SWE-bench Verified
Why it matters: If a benchmark is contaminated or broken, “leaderboard progress” can diverge from real capability—and distort model selection.
OpenAI says SWE-bench Verified is saturated due to test-design issues and contamination from public repositories, and recommends reporting SWE-bench Pro instead . A separate audit summary shared in posts claims that after reviewing 27.6% of frequently failed tasks, at least 59.4% had flawed tests that reject correct solutions .
Products & Launches
Pip-installable vector search: Alibaba open-sources Zvec
Why it matters: Making vector search a library (not a server) lowers adoption friction for local RAG, edge retrieval, and offline-first apps.
Alibaba open-sourced Zvec, described as a vector database you can pip install with no servers or Docker . Performance claims shared include 8,000+ QPS on 10M vectors and “2×” the previous leader on VectorDBBench . Repo: https://github.com/alibaba/zvec.
LlamaIndex: LlamaAgents Builder adds file uploads for document workflows
Why it matters: Example documents as context can make “natural language workflow building” more grounded—especially for schema inference and validation.
LlamaIndex added file upload support to LlamaAgents Builder, letting users upload example docs so the agent can infer schema, validation rules, and pre/post-processing logic . The tool is positioned for scalable extraction with citations over complex documents, with user review before approval . Walkthrough + signup links were shared .
Image generation: Reve V1.5 reaches the top of Image Arena with 4K output
Why it matters: Arena performance combined with higher-resolution output can influence which models become default choices for commercial design workflows.
Reve launched Reve V1.5, a text-to-image model with output up to 4K resolution. It ranked top 3 in Image Arena behind GPT-Image-1.5 and Nano Banana Pro variants . Detailed scores: https://arena.ai/leaderboard/text-to-image.
Developer tooling highlights
- Devin Review: an AI-powered interface for understanding complex PRs; now supports fixing PRs inline by asking Devin to propose changes and applying them with one click . Try: http://devinreview.com.
- LangSmith: shipped native tracing for Google ADK agents . Docs: https://docs.langchain.com/langsmith/trace-with-google-adk.
- OpenRouter: launched “Effective Pricing,” estimating average provider costs based on cache pricing and cache hit rates .
Industry Moves
OpenAI expands enterprise deployment via “Frontier Alliances”
Why it matters: Enterprise adoption often hinges on integration and change management, not just model quality.
OpenAI announced Frontier Alliances with BCG, McKinsey, Accenture, and Capgemini to deploy “OpenAI Frontier” to enterprises globally . The partnerships emphasize strategy, workflow redesign, system integration, and change management . Announcement: https://openai.com/index/frontier-alliance-partners.
A separate report link shared on X says OpenAI is hiring hundreds of AI consultants to boost enterprise sales .
Salesforce Ventures invests in Sakana AI
Why it matters: Enterprise-focused AI labs are positioning around vertical credibility and deployment readiness.
Sakana AI announced an investment from Salesforce Ventures and said Salesforce will evaluate integrating Sakana’s enterprise technology into Salesforce’s global platform offerings .
Anthropic hiring: interpretability research engineers
Why it matters: As models become more central to critical workflows, internal understanding of model behavior is treated as infrastructure work.
Anthropic’s interpretability team is hiring ~10 research engineers (no prior interpretability experience required), targeting seasoned ML infrastructure engineers .
Policy & Regulation
Pentagon–Anthropic tensions over Claude safeguards
Why it matters: Government adoption of frontier models is colliding with limits on surveillance and autonomy—potentially shaping what “acceptable safeguards” look like in high-stakes deployments.
An Axios-sourced report shared on X says the Pentagon threatened to ban Claude from classified systems and planned a meeting with Anthropic CEO Dario Amodei involving an “ultimatum” . The same reporting says Claude is described as the only AI model available in the military’s classified systems and the most capable model for sensitive defense and intelligence work . Anthropic is said to be willing to loosen restrictions, while still walling off mass surveillance of Americans and autonomous weapons that fire without human involvement .
Export controls vs capability diffusion
Why it matters: If frontier capability can be replicated via API outputs—or trained on restricted hardware anyway—policy focus may shift toward access, enforcement, and monitoring.
Posts summarizing Anthropic’s position argue that illicit distillation can remove safeguards and feed capabilities into military/intelligence/surveillance systems . Separately, Reuters reporting (as cited in posts) claims DeepSeek trained on NVIDIA Blackwell GPUs despite U.S. export restrictions .
Quick Takes
- Anthropic AI Fluency Index: tracked 11 behaviors across thousands of Claude.ai conversations; one finding shared says 85.7% of conversations exhibited iteration and refinement .
- Claude memorization extraction claim: researchers reported extracting 95.8% of Harry Potter and the Sorcerer’s Stone from Claude Sonnet .
- IBM volatility tied to AI modernization headlines: a post said IBM stock fell >10% after claims that Claude can streamline COBOL code .
- Gemini training for educators: Google said it’s making Gemini training available to 6 million U.S. K–12 teachers and higher-ed faculty, with modular training and badges .
- Veo 3.1 templates: Google said templates are rolling out in the Gemini app to provide a “visual foundation” for video creation .
- Qdrant 1.17: announced features include relevance feedback queries, lower latency under heavy writes, and a cluster-wide telemetry API .
- Wispr Flow: launched on Android as an AI voice dictation app; Richard Socher said he’s a “very happy user” .
Sachin Rekhi
Teresa Torres
Big Ideas
1) AI makes it easier to ship—while acquisition can get harder
Andrew Chen frames a growing tension: “your product gets better every week, but your CAC gets worse every month.” The question becomes whether your product can get good enough to drive organic growth before marketing channels saturate at scale .
AI may intensify both sides of the equation: teams can write, code, and ship faster, while the marketing environment gets noisier as AI-led products launch and AI-generated content fills feeds .
Why it matters: Faster delivery doesn’t automatically translate into efficient growth if the environment for distribution is degrading over time .
How to apply: Use this as a standing planning constraint: pressure-test whether your near-term roadmap is aimed at (a) reaching “good enough” for organic pull and (b) doing it before channel noise/costs move further against you .
2) Re-draw PM/Engineering boundaries: product owns the what; engineering owns the how
Teresa Torres and Petra Wille argue for a crisp division of responsibility:
“The product trio owns the what… And engineers own the how.”
They describe common boundary blurs—PMs prioritizing bugs, communicating bug status, deciding tech debt payoff, and even getting into architecture/system design . One root cause they point to is an IT/order-taker mindset where engineers “take orders from the business” . Another is the “CEO of the product” metaphor, which can push responsibility for engineering quality onto PMs .
Why it matters: They link blurred boundaries to PM burnout, poor engineering quality, and toxic culture .
How to apply:
- If quality is an issue, surface it to engineering leadership rather than trying to manage individual engineers yourself .
- Reduce “PM-as-middleman” by facilitating a direct channel for bug status visibility (Slack, dashboard, or a bug tracking system) .
3) The PM “meta-skill”: adapt to business context (and build commercial credibility)
In a Mind the Product conversation, Dave Wascha emphasizes two basics that often get missed:
- Empathy for internal stakeholders (e.g., sales, founders/executives) and adapting your approach to their context . He shares an example of a junior PM insisting on 6–8 weeks of discovery while a founder faced urgent customer commitments tied to sales the company needed .
- Commercial context: understanding how the company makes money and how to read a balance sheet—described as “table stakes” and a potential “cheat code” . He recounts realizing that at Zoopla, only ~5–10 PMs (out of ~25–30) understood how the company makes money, which undermined product credibility with commercial teams .
Why it matters: Wascha also notes a “huge explosion” in the number of people with the PM title, creating noise for employers trying to find candidates who’ve actually done the job .
How to apply: Treat “empathy + economics” as a paired capability: sense what the business needs now and show your work in those terms (runway, commitments, churn/sales urgency) .
Tactical Playbook
1) When leadership expectations are unrealistic: diagnose the disagreement, then drive the narrative forward
A Reddit thread describes a PM in a niche 0-to-1 beta who set modest revenue expectations based on market pricing, while leadership expected a “huge money maker” and dismissed requests for a pricing study/market sizing revisit .
Step-by-step:
- Clarify where you disagree: is it the sizing/pricing method, the assumptions, or an implicit desire to “stretch” delivery regardless of evidence?
- Write it down early and continuously: “document everything, save emails, cc people” to prove you raised concerns .
- Avoid “I told you so” energy: one commenter warns that making leadership feel stupid is counterproductive .
- Bring a one-pager that converts beta reality into options: summarize what the beta is showing, where assumptions were off, and 2–3 adjustment options + your recommendation.
- Start with your manager relationship: how you play it depends heavily on your relationship with your direct manager .
2) Critical bug investigations: choose your role by scope—and avoid becoming the status conduit
A separate Reddit discussion suggests your role depends on the bug . Sometimes you “just want to know when it’s fixed” ; other times the issue spans code and business processes, requiring a PM to steer interim workarounds with the business while engineering fixes the technical issue .
Step-by-step:
- Classify the incident: pure code fix vs. cross-functional breakdown (code + process) .
- If it’s mostly technical, delegate: get a summary to update customers/stakeholders—“too many cooks” can slow things down .
- If it crosses into business operations, lead the coordination: focus on containment and interim paths until the fix lands .
- Systematize visibility: set up a place where the business can ask engineers for bug status (Slack channel, dashboard, or tracking system) so the PM isn’t the middleman .
3) Planning in big orgs: treat multi-team work as a first-order risk
Andrew Chen summarizes a heuristic from Uber:
- New project within your own team: easy
- Between two teams: possible but hard
- Three or more teams: impossible
Step-by-step:
- Count the teams required before committing to scope (not after) .
- If it’s trending toward 3+ teams, treat the plan as non-viable unless scope or ownership changes .
- If it’s two teams, assume friction is real and plan communications accordingly .
Case Studies & Lessons
1) “Board wants it” vs. market reality: protect the team and redirect the conversation
In the misalignment thread, the PM explains they were told to build the product because “the board wants it,” and found leadership’s price expectations were based on competitors where the capability was often an add-on—using an analogy like pricing the whole Microsoft suite as if it were priced on Outlook’s value alone . When told pricing wasn’t their concern, they documented a compare/contrast feature analysis against competitors to show the discrepancy .
Takeaways:
- If leadership blocks pricing/sizing work, you can still document competitive deltas to create an evidence trail .
- When delivery expectations are implicit (e.g., feature parity on an impossible timeline), documentation becomes a form of team protection .
2) What “good boundaries” look like with strong engineers
Teresa/Petra describe that with skilled engineers, it’s “impossible to work” in a way where PMs split work into components or dictate how it should be built—strong engineers will push back, own architecture and sprint planning, and handle refactoring/tech legacy management within engineering .
Takeaway: If your team expects PMs to decide component order and architecture, it may be signaling a leadership/skills gap rather than a PM responsibility gap .
3) Credibility gap: PM teams that don’t understand how the company makes money
Wascha recounts that at Zoopla, many PMs didn’t understand how the company makes money, which undermined credibility with commercial counterparts .
Takeaway: Commercial context isn’t “nice to have”; it directly affects whether non-product stakeholders trust product decision-making .
Career Corner
1) In a noisy PM market, make it easy for employers to see signal
Wascha suggests there may be an oversupply dynamic—many people hold the PM title without the “classic experience” of product management, creating noise and extra filtering work for employers .
How to apply:
- Build your narrative around commercial context and impact orientation (e.g., showing you understand business drivers) .
- If you’re job hunting: keep the CV to one page if you’ve worked <10 years.
Tools & Resources
1) Claude Code workflows for PM work (plus a free live session)
Sachin Rekhi says he has migrated nearly all his product work to Claude Code, claiming at least another 3x productivity gain beyond prior AI’s “10x” improvement . He describes custom skills for end-to-end customer interview synthesis, autonomous NPS programs, exploratory data analysis without writing SQL, and critiquing product strategy drafts .
He also lists agentic capabilities like autonomous workflows without needed input, generating local markdown artifacts, custom tool calls (e.g., transcribing interview recordings), and writing code on his behalf .
Resource: Free event “Claude Code for Product Managers” (March 4, 10am PT) with workflow demos and building a custom skill . Registration link: https://luma.com/b2zbii7n
2) Opportunity Solution Trees (OST): generation is getting automated; visualization is the next bottleneck
A post in r/prodmgmt describes a tool that generates OSTs from multiple customer interviews, synthesizes the data, and outputs a full OST analysis in text (or potentially JSON) . The open question: how PMs prefer to write up or visualize OSTs (e.g., Jira vs. a visual artifact) .
Why it matters: If OST creation becomes easier, the differentiator shifts to how clearly you communicate the tree to stakeholders and connect it to execution artifacts .
3) Two videos worth saving
- Boundaries Between Product & Engineering — All Things Product with Teresa & Petra (YouTube): https://www.youtube.com/watch?v=Nr1r_FBmQe8
- Why so many product managers feel frustrated right now | Dave Wascha (YouTube): https://www.youtube.com/watch?v=y3D0SaeCMe8
sarah guo
Brad Gerstner
Most compelling recommendation: a culture + hospitality reframe that shaped Airbnb
Peak: How Great Companies Get Their Mojo from Maslow (book)
- Title: Peak: How Great Companies Get Their Mojo from Maslow
- Content type: Book
- Author/creator: Chip Conley
- Link/URL: Not provided for the book (context clip: https://www.youtube.com/watch?v=oC2KMh8zvDw)
- Who recommended it: Brian Chesky (in a conversation reflecting on starting Airbnb)
- Key takeaway (as shared): Chesky says the book had a “profound impact” and he took away lessons on culture and hospitality, including a reframing of hospitality as “service with heart.”
- Why it matters: It’s a concrete example of a founder changing how he defined the company’s job—from “anti-hotels” to learning and teaching hospitality—based on an external framework.
"…hospitality is just service with heart."
Also worth saving: engineering + career guidance in an AI-shift context
Inference Engineering (book)
- Title: Inference Engineering
- Content type: Book
- Author/creator: Philip Kiely
- Link/URL: https://www.baseten.com/inference-engineering/
- Who recommended it: Sarah Guo
- Key takeaway (as shared): She frames it as “democratizing the technical layer that powers the biggest change in computing in decades.”
- Why it matters: If you’re trying to get more literate in the infrastructure layer (not just model headlines), this is flagged as a direct learning resource.
Bill Gurley’s book (title not specified) (book)
- Title: Not specified in the post (“Bill Gurley’s book”)
- Content type: Book
- Author/creator: Bill Gurley
- Link/URL: https://a.co/d/05iTXN6l
- Who recommended it: Brad Gerstner
- Key takeaway (as shared): A set of career principles offered in the context of “anxiety…for parents & kids as AI radically changes job futures,” including:
- Passion is “discovered by moving, learning, experimenting, building.”
- Skills/experience/reputation compound, and being around smart people accelerates that compounding.
- Take risks; be curious; be willing to fail.
- Find a worthy mission and start; don’t fixate on early economic rewards.
- Why it matters: It’s positioned as a practical, action-oriented antidote to career paralysis—especially under uncertainty about future work.
"Passion is not an epiphany. Just find a worthy mission & get going."
ABC Rural
Successful Farming
Market Movers
Grains: mixed prices, strong export flow, and heavy fund buying in soybeans
- US futures (Feb 23): March corn $4.26 (-1.5¢) ; March soybeans $11.28¾ (-8.75¢) ; March Chicago wheat 569¾ (-3.75¢) ; March KC wheat 567 (-5.25¢) .
- Brazil reference prices (Feb 23): soybeans down 0.26% to US$11.50/bu; corn up 0.23% to US$4.40/bu; wheat down a little over 1% to US$5.74/bu.
- Export inspections (week ending Feb 19, mln bu): corn 78.9; soybeans 24.6; wheat 19.7; grain sorghum 7.9. Shipments drew notice among analysts .
- Export inspections to China (week ending Feb 19, mln bu): corn 0.0, sorghum 7.9, soybeans 12.7, wheat 0.0.
- Fund positioning (week ending Feb 17): money managers were net buyers of 43,000 soybean contracts (net long 159,000, largest since early December), plus 15,000 corn and 16,000 SRW wheat contracts . Another segment cited managed-money soybean net longs at 163,000, up ~130,000 over two weeks .
Trade policy and demand narrative: tariffs and China remain the headline risk
- The US Supreme Court struck down tariffs imposed under IEEPA, and the administration moved to 15% global tariffs under Section 122 of the Trade Act of 1974, which can remain in place up to 150 days without congressional approval .
-
Market commentary diverged on China’s incentive to buy US soybeans:
- One view: the soybean market is acting as if China “sticks around,” with prices trading within the pre-ruling range .
- Another view: US soybeans are more expensive than Brazil, leaving “no real incentive” for China to buy at current levels .
- A separate Brazil-focused segment said some Brazilian sectors (e.g., honey, fruits, fish) now face a uniform 15% tariff, described as restoring Brazil’s competitiveness in the US market .
USDA payments: large, near-term support
- USDA was reported to be distributing $12B via a “Farmer Bridge Assistance Program,” with $11B in one-time payments for row crops and $1B for specialty crops; applications open Feb 23 and payments expected by Saturday .
- Separately, USDA was also described as announcing a one-time $11B support payment to American farmers, tied to trade-related market disruptions and rising production costs .
Livestock: sentiment warnings in cattle; hogs rebound
- A cattle-market note flagged that Barron’s cover story (“the cattle crisis”) suggests the live-cattle narrative has reached the masses—creating room for a correction, even while fundamentals support higher prices for longer .
- Brazil beef reference (arroba): Mato Grosso R$331.87, São Paulo R$348.10, Pará R$317.66.
- US hogs were described as up for a fifth day, supported by resilient cutouts and short covering; cash hogs finished the week nearly $4 higher in one segment . Another segment noted big slaughter and funds still long about 116,000 contracts .
Biofuels: soybean oil strength vs. biodiesel output drop
- Soybean oil was described as making new contract highs, with speculation linked to biofuel/RVO hopes; one view emphasized competitiveness hinging on crude oil levels and/or government direction .
- Iowa biodiesel production was reported at 266 million gallons last year vs 353 million in 2024 .
Innovation Spotlight
Ultra-precise, autonomous spot spraying (Europe)
Kubota led a €6.5M pre-Series B round into Norwegian startup Kilter AS to scale its AI-powered AX-1 autonomous spot-spraying robot . The system targets weeds at 6×6 mm resolution in high-value crops, aiming to significantly reduce crop-protection use . Kubota and Kilter also announced distribution via Kubota dealer networks in Germany and the Netherlands starting in 2026.
Gene editing platform moves from specialty crops to big-acre partnerships
Pairwise described its CRISPR platform as enabling precise edits to existing genes (contrasted with bringing in foreign genes) . Reported commercialization/partner activity included:
- Work with Bayer: delivery of 28 traits across crops, and a reported ~70% hit rate identifying genes that cause target phenotypes .
- Work with Bayer and Corteva in big-acre crops (corn/soy/wheat), with relationships said to cover roughly ~70% of the world’s corn acres.
- Specialty examples: blackberries engineered toward compact growth for denser planting and higher yields ; cherries engineered to fruit around 14 months after planting vs “more like four years” in an orchard context .
Brazil: autonomous machines in real farm operations (early market maturity)
Brazilian coverage described autonomous equipment as already operating without onboard operators in some farm stages . Examples cited as commercial today include drones for missions and controlled-environment robotics in dairy and swine (milking/feed cleaning and feed distribution) . Autonomous tractors and sprayers were described as in development, with a key limitation being implement integration (e.g., planting/soil prep) .
New soybean variety positioning (South America)
A BASF/“BAF” segment presented a new soybean material “616” (Intacta 2 Xtend), emphasizing tolerance to pests plus tolerance to glyphosate and dicamba, along with adaptability across planting dates/soils and improved standability . The same segment said the material had reached 1 million bags sold in west Paraná and south Mato Grosso and described yield potential of 6,000 kg/ha under intensive management (including multiple fungicide applications) .
Regional Developments
Brazil (center-north): heavy rains slow soybean harvest and safrinha planting
- Multiple forecasts described 100–150 mm of rain in five days across key areas, slowing fieldwork and delaying soybean harvest and second-crop corn sowing/installation in regions including Mato Grosso and Goiás .
Brazil (south): water stress risk for developing crops
- Southern states (Paraná, Santa Catarina, Rio Grande do Sul) were described as under water restriction due to lack of rain; one report warned this could consolidate a soybean crop loss in parts of Rio Grande do Sul, with meaningful rain expected only from the second half of March.
Brazil logistics: Miritituba bottleneck and rising tension around waterways
- At the Miritituba corridor in Pará, soybean and corn trucks were reported queuing up to ~30 km, with port operations said to be strong but road logistics (including accidents) creating long delays; the system handles around 2,500 trucks/day. Delays were cited at 30 hours in one report .
- Logistics costs for Brazilian producers were cited at nearly 14%, with commentary comparing this to roughly half that share in the US and Argentina .
“A nossa agricultura está em 4.0 e a nossa infraestrutura, a nossa logística está em 0.0.”
- An indigenous protest at Cargill’s Santarém terminal opposed a decree placing waterways (Madeira/Tocantins/Tapajós) into a privatization program tied to dredging for grain transport . The government suspended the dredging auction and created an interministerial working group .
Trade lanes to watch: Mercosul–EU safeguards; Brazil’s Asia push
- Mercosul–EU: the agreement (signed after 25 years of negotiations) faces EU legal/political hurdles and may take 12–14 months to enter into force, per the segment . Agricultural safeguards were described as potentially triggered by a >5% import increase vs. the prior three years, with a 2–3 month investigation window that can suspend tariff reductions .
- Brazil–South Korea: officials said Korea confirmed receipt of documentation for opening the egg market (certificate expected “in the next days”) and committed to audits tied to grapes, pork expansion beyond Santa Catarina, and a beef audit/mission still pending implementation .
- Brazil–India: discussion highlighted potential to double bean exports via phytosanitary agreements (black mung confirmed; pigeon pea/guandu pending), with last year’s exports cited at ~300k tons and $250M.
Best Practices
Grains: nitrogen planning to protect yield potential through the season
- One agronomy segment emphasized building a 2026 nitrogen plan before the season and treating nitrogen stabilization as risk management under lower commodity prices and current input costs .
- It noted corn can require ~30% of total nitrogen after tassel, creating risk if early-season applications are lost before late-season demand . Warming soils and spring rains were described as a “perfect scenario” for nitrogen loss—even for applications made closer to planting .
Herbicide stewardship: dicamba is back (two seasons), with tighter compliance requirements
EPA approved three over-the-top dicamba products for soybeans and cotton for the next two growing seasons, cited as important for invasive-weed control . Key compliance items mentioned:
- Application rates cut in half and volatility reduction agents doubled
- Stricter temperature restrictions and runoff/erosion mitigation requirements
- Robust buffers, Endangered Species Act mitigations, and a maximum of two passes per season
- Mandatory training for commercial and private applicators/farmers
- EPA review after two seasons (incident reports, environmental monitoring), with potential to adjust restrictions or revoke approvals if risks aren’t controlled
Risk management: updated US crop insurance options and timing
A Farm Journal discussion highlighted:
- 2026 subsidies were described as increasing, with premiums “down about 15%” in their quotes .
- SCO (Supplemental Coverage Option): described as stacking on top of 75% MPCI to bring coverage up to 86% in 2026 (and 90% in 2027) and now available alongside ARC in their description .
- ECO (Enhanced Coverage Option): described as extending coverage to 95%, but paying later (next June) and creating tradeoffs with hurricane insurance in the example discussed .
Livestock: biosecurity deadlines in southern Brazil swine
Rio Grande do Sul commercial hog farms were described as needing to adapt to Instrução Normativa nº 10 (published 2023) by end of May, including shed isolation, sanitary barriers, controlled entry of people/vehicles, feed storage/transport requirements, and sanitary voids between lots . The stated aim is maintaining herd health and classical swine fever-free status .
Input Markets
Seeds: reported corn seed availability constraints (South Georgia)
A Farm Journal discussion cited reports of corn seed shortages across brands in South Georgia, with growers unable to secure preferred varieties—even among those with established corn rotations .
Biofuel policy: California SAF tax-credit proposal (costs, eligibility, and consumer price impacts)
A policy analysis described California’s proposed SAF tax credit as:
- Eligible for SAF with carbon intensity at least 50% below jet fuel, with a credit of $1/gal plus an incremental amount up to $2/gal; eligible feedstocks include used cooking oil, tallow, and distiller’s corn oil.
- HEFA SAF potential: six US refineries equipped for SAF could produce up to 834M gal/year, implying $1.04B in tax credits at $1.25/gal in the example cited .
- Estimated impacts included diesel +12¢/gal and gasoline +11–14¢/gal in California, with annual consumer costs estimated at $1.9–$2.3B.
Forward Outlook
What to monitor next
- US–China trade calendar: a US–China summit was said to be scheduled for March 31–April 2. Market commentary continues to tie soybean direction to expectations about China’s follow-through on purchases vs. incentives to source from Brazil .
- Brazil weather risk window: center-north rains were repeatedly framed as near-term disruptions to harvest and safrinha planting , while southern dryness was framed as potentially damaging for soybeans in grain fill, with rain not expected in meaningful volume until mid-March.
- Regulatory checkpoints:
- Dicamba’s “over-the-top” window is approved for two seasons, with a review based on real-world performance and incident/environmental data after that period .
- Mercosul–EU implementation was framed as a 12–14 month process to resolve legal review and operationalize safeguards .
- Positioning risk: managed-money soybean length was described as rising rapidly (net long ~159k–163k across sources) , increasing sensitivity to demand/tariff headlines.
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