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Poetic’s AI-Compiler Thesis, Noble Mobile’s Seed, and New Signals on AI Specialization
Jun 11
4 min read
675 docs
Deep Learning
Software As a Service Companies — The Future Of Tech Businesses
r/SideProject - A community for sharing side projects
+10
A $10.3M seed for Noble Mobile leads the deal flow, while Poetic, Alta Ares, Lattice Health, and Serafis stand out as early-stage teams to watch. The deeper read is on AI-compiled software, industrial world models, agent verification, and why investors increasingly see specialization and voice-native data layers as key themes.

Funding & Deals

  • Noble Mobile — $10.3M seed. Andrew Yang's carrier startup said it raised a $10.3M seed round. Yang previously founded Adventure for America. The company charges $50 per month for unlimited data and gives up to $20 back to lighter users. Noble says it launched in September and has reached millions in revenue with thousands of subscribers. Yang says average subscriber spend is $42 per month and screen time is down 17%. He cites Mark Cuban's Cost Plus Drugs as inspiration for the model.

  • AI trip-planning startup — $6M led by Sequoia. The company said it raised $6M led by Sequoia. Its product plans flights, hotels, and personalized itineraries that can be booked in one flow. The product is already live and free to use.

Emerging Teams

  • Poetic. Markie Wagner's company is building enterprise software that learns written and tacit business rules on-site and turns them into code. The team is mostly engineers, many ex-Palantir, who spend weeks with customers to capture process detail. Backers include Founders Fund, Kleiner Perkins, Genius Ventures, and OpenAI. Current deployments include AIG, SoFi, and Chime; AIG CEO Peter Zaffino said Poetic has already achieved "99%+ quality outcomes on multi-hour processes."

  • Alta Ares. Hadrien Canter's defense AI startup is building a compact drone interceptor, about the size of a desk lamp, that uses AI software and radar to detect, catch, and destroy military drones. France is testing Alta Ares models in the UAE.

  • Lattice Health. YC says Lattice Health monitors deployed medical-imaging AI and flags when accuracy starts to slip across X-rays, CTs, and MRIs. The launch post highlighted @sparkcpark.

  • Serafis. YC's launch describes Serafis as a podcast app for investors. Its data platform is already live with top asset managers representing $70B+ in AUM.

AI & Tech Breakthroughs

  • AI as compiler, not runtime. Poetic says AI should compile business processes into deterministic code that runs cheaply and predictably, then regenerate that code when the world changes. The company says this yields 100x less token usage and "nines of accuracy" on complex tasks.

"Agents should do the thinking, code should do the doing."

  • World model for the factory. Forgis-Labs says it is replacing bespoke industrial models with a single pipeline that predicts events across machines, robots, and processes from raw sensor streams. The stack includes FactoryNet for pretraining data, HEPA for edge time-series event prediction, RASA for topology-driven reasoning, and TEMPO for natural-language explanations of raw sensor streams. The team says five papers were accepted to ICML workshops.

  • SmithDB search infra. LangChain says it built a custom inverted index from scratch to support full-text search and JSON filtering across agent traces that can span hundreds of MBs while maintaining 400ms P50 latency. Harrison Chase said this is the first in a planned series on how the company builds LLM infrastructure.

  • Verification-first agents. OMK is a local-first CLI that treats "done" as a verification problem, with a Goal → DAG → Route → Verify → Replay loop and artifacts including proof bundles, decision traces, and replay logs. In the discussion, another builder said the proof that an agent actually completed a task is often harder than the retrieval step itself.

Market Signals

  • Specialization is becoming the VC moat. Foundation Capital says the AI and LLM cycle is pushing firms toward clearer bookends—growth platforms at one end and early-stage specialists at the other—and making it harder to do both. Its own strategy is pre-product-market-fit technical seed, often before product or revenue, serving as first institutional investor 85% of the time. Iconic says it is taking concentrated bets from seed onward and has built a 50-person support bench beyond the investment team.

"With more competition, you have to have specialization."

  • Contrarian infrastructure timing still matters. Foundation pointed to Cerebras as a 2015-2016 incubation alongside Benchmark, when AI chips were not a crowded trade. Cerebras has now gone public.

  • Voice is emerging as a new system of record. a16z argues that the highest-value enterprise context still lives in conversations, and that LLMs are well suited to converting voice into structured, searchable data. The firm describes the opportunity as large and still early.

  • Investor diligence still needs hard economics. Paul Graham relayed an AI startup generating roughly $400 in annual revenue per $1,000 of GPU hardware, or about a 40% annual return on GPU cost. At the same time, SaaS operators say repeated "AI replaced this" and "10x that" claims are starting to blur together, making genuine traction harder to distinguish from attention farming.

Worth Your Time

  • Web Summit panel on VC specialization. Useful for how AI is widening the gap between growth platforms and seed specialists.
  • Andrew Yang on Noble Mobile's pricing model. Useful founder clip on the aligned-carrier thesis behind the new seed round.
Anthropic Reverses Hidden Fable Safeguards as Google Opens DiffusionGemma
Jun 11
4 min read
1010 docs
Dario Amodei
sarah guo
Cursor
+23
Anthropic paired a benchmark lead with a retreat on covert safeguards, Google introduced a faster open text-generation architecture, and new signals emerged on OpenAI’s IPO path, infrastructure buildouts, and AI policy positioning.

Top Stories

Why it matters: the biggest signals today were about frontier-model trust, new inference architectures, and the next phase of lab competition.

  • Anthropic turned a controversy into a product change. Claude Fable 5 ranked #1 on the new Agent Arena leaderboard, leading Opus-4.8 and GPT-5.5 by the widest margin yet on confirmed task success and praise vs. complaint across millions of real-world, long-horizon tasks . But after backlash, Anthropic said flagged frontier-LLM-development requests will now visibly fall back to Opus 4.8 and API refusals will return explicit reasons; it said invisible safeguards were the wrong tradeoff .
  • Google released DiffusionGemma. The experimental open model uses text diffusion instead of token-by-token decoding, generating whole blocks at once for up to 4x faster output; Google and others cited 1,000+ tokens per second, Apache 2.0 licensing, and 18 GB GPU viability for local use . vLLM called it the first diffusion language model it supports natively .
  • OpenAI’s next strategic turn is coming into view. A report on an internal memo says OpenAI expects to go public within the next year while preparing model 5.6, described internally as a meaningful improvement over GPT-5.5; the same memo discussed recursive self-improvement as a factor in whether the company ultimately stays private .

Research & Innovation

Why it matters: today’s strongest technical updates were about making long-context, multi-agent, and reasoning systems more practical.

  • A new KV-cache compression technique reports a 200x memory reduction without changing the base model. At 256k context, cache use drops from 36 GiB to about 360 MiB in a single forward pass while preserving correct answers .
  • DeLM replaces a central controller with asynchronous agents writing verified results into shared context. The framework hit 65.7% on SWE-bench Verified with Gemini 3-Flash, about 10 points above the best centralized alternatives at less than half the cost .
  • The paper Think Fast estimates frontier models’ no-chain-of-thought task horizons are doubling every 373 days; even the slowest 95% confidence case reaches almost 10 minutes by 2030 .

Products & Launches

Why it matters: new products kept pushing AI deeper into developer workflows and perception-heavy tasks.

  • Perceptron launched Agentic Detection, which localizes anything described in natural language or shown by example, without fine-tuning or fixed classes. Its multi-pass harness zooms, tiles, and requeries, outperforming Gemini, Qwen, and base models on dense and geospatial detection tasks .
  • Cursor upgraded Bugbot: the code review agent is now over 3x faster, 22% cheaper, and finds 10% more bugs. Users can also run /review locally before pushing code .
  • GitHub launched a new Copilot app for paid users to identify work, implement changes, and guide PRs through merge; GitHub also said Copilot is coming to Xcode .

Industry Moves

Why it matters: capital, infrastructure, and revenue signals are starting to matter almost as much as model benchmarks.

  • DeepSeek posted for IDC planning engineers after earlier data-center hiring, the clearest sign yet that it plans to own MW-to-GW-scale compute infrastructure rather than just rent capacity .
  • PoeticHQ launched with a $50M raise at a $500M valuation and says its system handles complex multi-hour enterprise tasks with 99%+ accuracy and 10x fewer tokens than agents. The company says it reached an eight-figure run rate in one year and 99%+ quality on SoFi fraud investigations in five weeks .
  • Runway said it added more ARR in May than in all of 2025 combined, pointing to stronger enterprise demand for generative video workflows. It cited BBC use of live AI avatars and Salomon’s latest global campaign as examples .

Policy & Regulation

Why it matters: labs are no longer just shipping models; they are openly trying to shape the rules around them.

  • Dario Amodei published Policy on the AI Exponential, arguing AI is moving faster than policymaking institutions can handle. Anthropic paired the essay with an Advanced AI Framework that says governments should be able to block or revoke unsafe frontier models, plus an economic policy framework backed by a $200M fund and a forthcoming $150M national fellowship program .

Quick Takes

Why it matters: these smaller updates still sharpen the picture of where deployment and competition are heading.

  • Cohere Transcribe topped Hugging Face’s far-field ASR benchmark with 17.9 WER; the model remains Apache 2.0 and laptop-capable .
  • Apple’s Foundation Models framework now supports Claude for multi-step reasoning, code generation, and longer-context app flows .
  • Biohub released ESMFold2 and ESM Atlas, described as beating AlphaFold and generating new biological knowledge; weights are on Hugging Face .
  • Google Search will soon build persistent mini apps with Antigravity for ongoing tasks, starting with AI Pro and Ultra subscribers in the U.S. .
Anthropic’s Policy Push Leads a Day of Open Models and Big AI Financing
Jun 11
4 min read
303 docs
Ben Thompson
Sarah Guo
Elad Gil
+13
Anthropic moved from product controversy to a broad policy push, while Google DeepMind released DiffusionGemma and Alphabet moved to raise $80 billion for AI expansion. Biohub also unveiled an open protein world model, and new workplace data showed why AI productivity gains still fail to cleanly translate into organizational performance.

Anthropic makes its policy case

Dario Amodei argues policy is trailing the technology

Dario Amodei published Policy on the AI Exponential, arguing that AI is advancing faster than policy institutions were built to handle and that frontier models should face mandatory third-party testing for cyber, bio, and autonomy risks, with the power to block or revoke deployment of catastrophic-risk systems . Anthropic paired the essay with an Advanced AI Framework that says governments should be able to block unsafe frontier releases and invest in societal resilience, plus an Economic Policy Framework backed by $200 million for major evaluations of labor-market responses and a $150 million fellowship program for early-career professionals . Anthropic said these projects are signals of intent rather than sufficient on their own, and the essay frames the stakes across jobs, scientific progress, civil liberties, and geopolitics .

Why it matters: Frontier labs are increasingly trying to shape the policy architecture around deployment, not just the models themselves .

Anthropic says Fable 5 safeguards will be made visible

Simon Willison highlighted Anthropic language saying it is changing Fable 5's safeguards for frontier LLM development "to make them visible," which he interpreted as ending the decision to have the model hide refusals while keeping the refusals in place . Even with that change, critics said the episode has left researchers more worried about silent steering becoming part of frontier-lab practice .

Why it matters: Transparency is becoming part of the safety debate itself, not just the restrictions labs choose to impose .

Speed and capital are becoming central competitive levers

Google DeepMind opens DiffusionGemma

Google DeepMind released DiffusionGemma, an experimental open model that generates whole blocks of text simultaneously rather than word by word, a design the company says enables real-time self-correction and complex markdown formatting . Google says the model can deliver up to 4x faster inference on dedicated GPUs, and Sundar Pichai said the weights are available on Hugging Face under an Apache 2.0 license . NVIDIA said its optimizations support RTX, RTX PRO, and DGX systems, with throughput reaching 1,000 tokens per second on H100 .

Why it matters: Developers now have an open way to test whether blockwise text generation can improve low-latency local workloads and agent loops .

Alphabet lines up $80 billion for AI expansion

Bloomberg reported that Alphabet is raising $80 billion through equity offerings, including a $10 billion Berkshire Hathaway investment, to fund its AI spending plans . In Ben Thompson's breakdown, Google Cloud grew from $2.6 billion in revenue in Q4 2019 to $20 billion in Q1 2026, while Google Services reached $89.6 billion in the same quarter . Thompson argued the financing signals that expected AI compute demand may be larger than many assume, and that Google's TPU cost advantage could matter if access to capacity becomes the main constraint .

Why it matters: At the frontier, AI competition is looking more and more like a balance-sheet contest alongside a model contest .

AI in science gets a major open release

Biohub launches an open protein world model

Chan Zuckerberg Biohub said its new ESM Fold is an open system for scientific discovery in protein biology, trained on billions of protein sequences and able to predict atomic-resolution protein structures . Biohub says the model is state-of-the-art across structure-prediction benchmarks, especially protein-protein and protein-antibody interactions, has folded 1.1 billion proteins, and can be used to digitally design proteins and single-chain antibodies that produced nanomolar binders in small experimental cycles . The organization has committed $500 million to its virtual biology initiative and says it plans to release its models open-source to get them into more scientists' hands quickly .

Why it matters: This is a strong example of frontier AI moving beyond language and code into experimentally grounded biology while staying open to the wider research community .

The workplace evidence is getting sharper

A large survey finds a wide execution gap

Glean's Work AI Index 2026 says 87% of workers now use AI and report saving 13 hours per week on average, yet only 13% say their organization is performing significantly better as a result . The report attributes much of the gap to "botsitting"—the hidden work of feeding context, debugging, and cleaning up outputs—which consumes 6.4 hours per week, and to the practice of shipping AI-generated work people cannot explain or defend, which 69% admitted doing . It also says organizations with stronger AI strategy, measurement, and shared context are seeing better results .

Why it matters: The limiting factor in enterprise AI may be shifting from tool access to context, incentives, and change management .

Code Review Loops and Verification Packs Take the Lead
Jun 11
4 min read
136 docs
Cursor
Salvatore Sanfilippo
Mike Krieger
+7
Today's useful signal was not another one-shot demo. It was the convergence on review-heavy coding-agent workflows: dual-model code review, plan-first execution, PR verification artifacts, and production feedback loops that turn failures into evals—plus fresh releases from Cursor and LangChain, and a new open-source app-builder repo worth dissecting.

🔥 TOP SIGNAL

  • The strongest pattern today: code review is becoming the highest-leverage job for coding agents, but only inside explicit loops. Salvatore Sanfilippo's A-writes/B-reviews/A-revises/B-verifies workflow, Cisco CX's trace → triage → coding-agent → draft-PR pipeline, and Mike Krieger's screenshot/video/staging verification stack all point to the same operating model: let agents read, audit, and self-test aggressively; keep humans on approval and final judgment .

⚡ TRY THIS

  • Run a two-model review loop. 1) Let model A write or fix the code. 2) Send the result to model B for review, especially when A stalls. 3) Hand B's review doc back to A for changes. 4) Send the updated code back to B for verification. Salvatore Sanfilippo says this beats vague role splits and is how he turns two models into a macro mixture-of-experts setup .
  • Split planning from execution. Run /improve on your strongest model to audit bugs, perf issues, tech debt, missing tests, and future build ideas, then have it write an execution plan that cheaper agents can follow . Mike Krieger front-loads architecture conversations, asks the model to turn the plan into HTML/markdown/diagrams for team alignment, then routes quick questions to lighter models like Sonnet or lower effort levels when full reasoning is unnecessary . Theo's higher-autonomy variant: give a bounded prompt like look into other options to make this more performant and let the model synthesize, test, and validate before reporting back .
  • Ship a verification pack with every agent PR. Krieger's pattern: require screenshots or video on every PR, run real staging flows with real data, cover both known regression paths and the specific intent of the current change, and use video plus FFmpeg when screenshots miss UI jank between frames . When the backend is too messy to boot locally, have the agent build in-memory mocks or proxies so tests can still run and evolve with the codebase .
  • Close the production feedback loop like a support queue, not a chat log. Cisco CX pulls thumbs-down, errors, and low-confidence traces from LangSmith, clusters similar failures, dismisses false positives or opens one Jira per real bug, then hands the case to a coding agent for deeper diagnostics and draft fixes . Humans stay on approval/redirect/final-PR duty, every merged fix becomes a new eval in the repo, and MCP is the swap-any-backend integration layer underneath . This is already running against 10k+ concurrent cases and 153k requests .

📡 WHAT SHIPPED

  • Cursor Bugbot update — over 3x faster, 22% cheaper, and finding 10% more bugs; you can now run /review locally before pushing . More: cursor.com/blog/bugbot-updates-june-2026.
  • LangSmith Sandboxes — now GA; secure, scalable environments for agent code execution, integrated with Deep Agents SDK and LangSmith . More: langchain.com/blog/langsmith-sandboxes-generally-available.
  • Managed Deep Agents — keep the agent definition in your repo, then create and operate managed agents in LangSmith via API . More: langchain.com/blog/introducing-managed-deep-agents.
  • RubricMiddleware for Deep Agents — lets you define what done looks like so the agent keeps going until the criteria is met . Deep dive: langchain.com/blog/introducing-rubrics-for-deepagents.
  • LangSmith Fleet: Software Engineer template — Slack-triggered coding agent that takes Linear issues, writes and verifies code, and opens a PR from a sandbox . Try it: langchain.com/templates/software-engineer.
  • Open-source project to inspect: Rilable — Riley Brown says he built the iOS app that generates web and iOS apps with Fable 5 in 10 prompts for about $210 in API tokens; each generated app spins up a Daytona sandbox and uses Convex, Vercel AI Gateway, and Chorus iOS skills . Repo: github.com/rbrown101010/rilable. Stack refs: daytona.io · ios.chorus.com · convex.dev · vercel.com.
  • Practitioner comparison worth noting — Salvatore Sanfilippo says Fable beat GPT 5.5 on a speculative-decoding optimization by reasoning from timing and MoE constraints instead of trial-and-error, but also says it provides fewer intermediate feedbacks and is harder to steer mid-task . Mike Krieger's routing advice lines up with that: use lighter models for quick questions and save higher-effort Fable sessions for work that actually needs them .
  • Fable usage reality check — Theo says usage-based burned $100 in about 8 minutes, and he maxed a $200 plan's five-hour session limit in roughly 2 hours during one workflow; a practical reminder to keep autonomous runs bounded .

🎬 GO DEEPER

  • 4:09–6:17 — Salvatore Sanfilippo on cross-model review. Best short walkthrough of the A-writes → B-reviews → A-revises → B-verifies loop, and a clean argument against fuzzy one model designs, one model codes role splits .
  • 36:49–40:26 — Mike Krieger on verification loops. Concrete guidance on requiring screenshot/video artifacts, exercising real staging flows, and using video plus FFmpeg when UI problems only show up between frames .
  • Repo worth studying — Rilable. Worth reading for the architecture alone: Daytona sandbox per app, Convex DB, Vercel AI Gateway, and Chorus iOS skill hooks .
  • Template worth skimming — LangChain Software Engineer. Useful if you want a concrete Slack → Linear → GitHub sandbox flow instead of another abstract agent diagram .

Editorial take: the edge is shifting away from raw codegen and toward review infrastructure—clear done criteria, reusable evals, and merge-time verification are starting to matter more than one-shot demos .

Levchin’s Book Canon, Plus Two Timely AI-Era Recommendations
Jun 11
4 min read
191 docs
Jeremy Howard
Tim Ferriss
Jeremy Howard
+2
The clearest signal today came from Max Levchin’s unusually specific book recommendations, from The Master and Margarita and Seven Powers to the sci-fi that shaped his engineering worldview. Jeremy Howard added two grounded AI-era picks: Rachel Thomas on vibe coding and Brett Victor’s interactive computing demos.

What stood out

Today’s cleanest recommendations came from long-form conversation and talks: Max Levchin shared a reading stack that spans literary fiction, business strategy, leadership, and sci-fi , while Jeremy Howard pointed to one article and one body of demo work that speak directly to AI-assisted creation .

Most compelling recommendation

The strongest save today is The Master and Margarita. It is the least obviously tactical item in the set, but it carries the clearest evidence of durable personal impact: Levchin said it is his favorite book, buys copies in bulk for new friends, keeps copies on his desk, and credited it with shaping both his life and his marriage .

The Master and Margarita

  • Content type: Book
  • Author/creator: Mikhail Bulgakov
  • Link/URL: Not provided in notes
  • Who recommended it: Max Levchin
  • Key takeaway: Levchin treats it as a book worth repeatedly gifting, not just admiring
  • Why it matters: This was the clearest example in today’s notes of a recommendation with long-term personal significance, not a passing mention

"It’s my favorite book. It’s always been my favorite book."

Best practical picks for builders

Seven Powers

  • Content type: Book
  • Author/creator: Hamilton Helmer
  • Link/URL: Not provided in notes
  • Who recommended it: Max Levchin
  • Key takeaway: Levchin called it a "really worthwhile distillation" of what it takes to build a competitively lasting business, including why network businesses last longer and what brand actually means
  • Why it matters: It was the most direct framework recommendation in today’s set for readers trying to understand durable advantage

Influence

  • Content type: Book
  • Author/creator: Robert Cialdini
  • Link/URL: Not provided in notes
  • Who recommended it: Max Levchin
  • Key takeaway: Levchin said anyone trying to start a business should read it and called it "probably the most important social science book published in the last 50 years"
  • Why it matters: This was the strongest explicit recommendation for founders in the notes

"If you’re trying to start a business, you should read Influence..."

Titan

  • Content type: Book
  • Author/creator: Ron Chernow
  • Link/URL: Not provided in notes
  • Who recommended it: Max Levchin
  • Key takeaway: Among Chernow’s biographies, Levchin singled out Titan on John D. Rockefeller as the one closest to business advice
  • Why it matters: It was the clearest biography pick for readers who want business lessons rather than a general historical survey

Sci-fi that shaped a founder

All three of these came from Levchin’s reflection on the books that shaped how he thought about software, digital currency, and the future . Source conversation: https://www.youtube.com/watch?v=uOjgVxOfxXo

Cryptonomicon

  • Content type: Book
  • Author/creator: Neal Stephenson
  • Link/URL: Not provided in notes
  • Who recommended it: Max Levchin
  • Key takeaway: Levchin said it was effectively required reading for the early PayPal team because it felt like it was describing exactly what they were trying to do with digital currency and cryptography
  • Why it matters: It was one of the strongest examples today of fiction intersecting directly with startup execution

Snow Crash

  • Content type: Book
  • Author/creator: Neal Stephenson
  • Link/URL: Not provided in notes
  • Who recommended it: Max Levchin
  • Key takeaway: Levchin said it shaped his software engineering life, and the conversation notes it as the book that coined "metaverse"
  • Why it matters: It was the sci-fi title he tied most directly to his engineering identity

Neuromancer

  • Content type: Book
  • Author/creator: William Gibson
  • Link/URL: Not provided in notes
  • Who recommended it: Max Levchin
  • Key takeaway: Levchin said it was the first book he read after arriving in the US and part of the science-fiction canon that defined his early years there
  • Why it matters: It shows how foundational cyberpunk fiction was in his early US experience and friendships

Two timely AI-era recommendations

Source talk: https://www.youtube.com/watch?v=SUZwYV5JYBM

Breaking the Spell of Vibe Coding

  • Content type: Article
  • Author/creator: Rachel Thomas
  • Link/URL: Not provided in notes
  • Who recommended it: Jeremy Howard
  • Key takeaway: Howard said Thomas shows how some AI coding interactions can harness a "dark flow," contrasting it with the productive flow that comes from high challenge and high skill
  • Why it matters: It was the sharpest corrective in today’s set for readers who want a more grounded view of AI-assisted programming

Brett Victor’s work

  • Content type: Videos / demos
  • Author/creator: Brett Victor
  • Link/URL: Not provided in notes
  • Who recommended it: Jeremy Howard
  • Key takeaway: Howard pointed to Victor’s demos of graphical code editing and even a "time machine" for code, then said readers should watch everything he has done
  • Why it matters: Howard framed this as a body of work worth exploring in full, not a one-off demo

One more worth saving

A Mind at Play

  • Content type: Book
  • Author/creator: Not provided in notes
  • Link/URL: Not provided in notes
  • Who recommended it: Max Levchin
  • Key takeaway: Levchin highlighted it as Claude Shannon’s biography and used Shannon as an example of someone who did serious work while staying playful
  • Why it matters: It complements the more tactical books above with a model of technical creativity and playfulness
Designing for Agents, New Users, and Better PM Judgment
Jun 11
4 min read
65 docs
Y Combinator
The community for ventures designed to scale rapidly | Read our rules before posting ❤️
Aakash Gupta
+3
This brief highlights new PM lessons on agentic product design, interface-led growth, and the workflows that matter as models improve. It also covers concrete tactics for discovery, instruction-file audits, coaching, and self-serve PM automation.

Big Ideas

  • AI products need an autonomy spectrum, not a single mode. Linear sees three user groups: non-users, people who want AI with approval, and people willing to fully delegate. Its triage feature uses historical routing data to classify and route incoming bugs or requests while still letting customers choose how much control to keep . YC adds a complementary constraint: when AI changes the economics of a workflow, redesign the process end to end - but keep the product surface area small and bounded . Why it matters: PMs now have to define the human/agent handoff explicitly. Apply it: map one workflow into manual, approve, and delegate modes before adding more automation.

  • The biggest growth bets may come from new interfaces, not smarter models. OpenAI's early fit was strongest in knowledge-worker-heavy markets like Germany and the US, but much weaker in Brazil and India . Search broadened everyday usefulness, and image generation opened ChatGPT to people less likely to use a text-first interface. India became OpenAI's #2 market, and Image Gen 2 launched at 1,512 ELO, about 240 points above the next competitor . Why it matters: deeper intelligence and broader adoption are different roadmap jobs. Apply it: force every major bet into one of two buckets - deepen current users, or unlock people who cannot use the product today.

Tactical Playbook

  1. Interview for the signal the model does not have. YC argues customers rarely hand you the winning prompt; they describe a local optimum shaped by their own constraints . A startup example with 3,080 users and only one paid conversion shows the right next step: interview the payer on why they bought and a cross-section of free users on why they did not, then test packaging or paywall changes from there . Why it matters: execution is cheaper, but hidden demand is not. Apply it: compare payer vs. non-payer decision paths, capture willingness-to-pay language verbatim, and decide whether you have a painkiller or a vitamin before changing the roadmap.

  2. Re-audit your AI instruction files when the model gets better.The Product Compass argues that old CLAUDE.md files, duplicated rules, drifted facts, and guardrails written for weaker models can actively hold back stronger ones . Why it matters: better models can inherit worse habits from legacy instructions. Apply it: ask the model to review its own instructions before you edit them, then cut contradictions and stale rules. Default effort to high, reserve max for rare cases, and use /goal patterns for long unattended PM work .

"Don't fix anything yet. Report first. I decide what gets cut."

Case Studies & Lessons

  • Linear is moving from issue tracker to "product development system for teams and agents." The shift includes optional but default-ready agentic workflows: triage incoming feedback, create issues or PRDs from transcripts and notes, and connect third-party or internal agents through APIs across tools like Slack, Gong, and Intercom . Messaging has also moved upmarket from feature language toward value language and customer proof points . Takeaway: centralize context, then let automation meet users where they already work.

  • Brex's AI rethink started upstream, not at the task level. Instead of only building an agent for KYC, the team redesigned onboarding end to end. That moved risk qualification earlier in the funnel, making it possible to KYC leads rather than only customers and changing who they target . Takeaway: when AI makes a downstream task cheap, revisit upstream qualification, targeting, and process boundaries.

Career Corner

  • PMs are becoming faster adopters of agentic workflows. Linear says non-engineering roles - especially PMs - have made some of the biggest recent gains, often using agents for self-serve work like meeting-to-issues or PRD drafting instead of waiting on engineering or data partners . Apply it: start with one repeatable workflow where the output is easy to review, not one where the model becomes the decision-maker.

"Coaching is not about telling people what to do or giving them answers. It's about holding a space and reflecting..."

  • Use coaching to improve judgment, not outsource it. Mind the Product describes most PM coaching relationships as a coach/mentor hybrid, with the client still responsible for the decision . Good sessions start with a current blocker or frustration, and peer triads can work well inside organizations . LLMs can help with structured reflection, but not replace human accountability . Apply it: spend 5-10 minutes before a coaching session naming the behavior or decision you want to change.

Tools & Resources

  • Keep the instruction-file audit prompt handy. It is a practical template for cleaning up PM agent rules before your next model upgrade .
  • Try a lightweight LLM accountability loop. A morning agenda prompt plus end-of-day recalibration in Slack helped one coach stay focused and reduce shiny-object drift .

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