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Alta Ares Raises $60M as AMI Labs and Vertical AI Teams Draw Attention
Jun 10
6 min read
666 docs
Yann LeCun
David Sacks
Yann LeCun
+13
A defense-tech Series A and a new $150M early-stage fund lead this batch, alongside standout signals from Sandstone, FetchSandbox, and Shiftia. The deeper themes are physical AI, improving local inference economics, and investor attention shifting toward infrastructure constraints and leaner founding teams.

Funding & Deals

  • Alta Ares — $60M Series A. Air Street led a $60M Series A in Alta Ares to accelerate air defense for autonomous warfare . The company is described as building the Iron Dome for autonomous air defense, with roots on the battlefield in Ukraine and current expansion across Europe, the Middle East, and Asia . Co-investors include Harpoon Ventures, Cherry Ventures, and OTB Ventures . Nathan Benaich later framed Alta Ares as a candidate to become France's next major defense champion .

  • Section32 — $150M early-stage fund. Bill Maris raised $150M for a new early-stage fund, Section32 . Maris previously founded and led Google Ventures and served as Google's VP of Special Projects, where he incubated Waymo, Google X, and Calico . He pointed to prior investments including CrowdStrike, Cohere, and Coinbase . His argument for staying smaller is selectivity and founder attention . He also cited data that funds smaller than $750M averaged 4.76x versus 2.42x for funds larger than $1B, and represented 95% of top-decile performers in that period . He pointed to AI infrastructure and human biology as current areas of interest, rather than larger models themselves .

Emerging Teams

  • Sandstone. Sandstone is building an AI-native workflow platform for in-house legal teams, starting at intake and routing across business systems, then building a legal-specific context graph behind the workflow layer . Founder Nick Fleischer studied software engineering, later led McKinsey's legal tech practice, and started the company with a former in-house lawyer . Fleischer says the broader team combines long-time Google Drive engineers with former big-law partners, general counsels, heads of legal ops, and alumni of Ironclad, Brightflag, and Luminance . The company argues the in-house legal market is larger than the law-firm market and could become winner-take-all if one platform becomes legal's day-to-day home . Demand looks strong: Fleischer says some 10-20 person legal teams at 1,000-2,000 employee companies have signed purchase orders the same day as the demo . Sandstone's claimed defensibility rests on team quality, the context layer, and hard integrations across legal and business systems .

  • FetchSandbox. FetchSandbox is building stateful API sandboxes for AI coding agents, letting users spin up sandboxes, map webhook flows across services like Stripe, Resend, and Clerk, and test full sequences before writing integration code . The founder says the product now has 1,000 MAU, 1,045 MCP installs per month, and 55 live APIs, with slow but compounding organic growth .

  • Shiftia. After six months of building, Shiftia is targeting shift planning in hospitals, care homes, and call centers, with the founder saying early customer conversations surfaced fear of labor inspections more than time lost as the core pain . The product validates labor-rule constraints automatically, including minimum rest periods, against a backdrop of real 6,000€ fines . It also adds fairness metrics for unpopular shifts, sub-second AI matching for replacement coverage, and audit history for regulators . The founder's framing is blunt: the moat is solving the customer's legal pain, not merely adding AI .

  • Suhail's new venture. Suhail said he is back in the game starting with two 8xB200 systems , has been revisiting fundamentals after time spent on image models , is running an autonomous AI scientist on new optimizations , and is hiring employee #1 .

AI & Tech Breakthroughs

  • LeCun's JEPA and world-model push into physical AI. Yann LeCun said he left Meta and formed AMI Labs to pursue physical AI, robotics, and control problems that are high-dimensional, continuous, and noisy . His core technical argument is JEPA: predict in representation space rather than reconstruct every detail, which he says is a better route to grounded intelligence, planning, common sense, and hierarchical control . In the examples he discussed, impossible physical events drive prediction error sharply higher, and the learned representation supports depth prediction and 3D understanding from video alone .

  • Single-GPU local inference is still moving fast. A practitioner benchmark reported Qwen3.6-27B on a single 3090 improving from 35.7 tok/s in Ollama to 80.2 tok/s in llama.cpp with MTP . Even as a single data point, it adds to the evidence that local-model serving on commodity hardware is still improving quickly .

  • Applied AI guardrails are getting more explicit in regulated wellness. Ones describes a five-step system that ingests blood panels, wearable data, health goals, medications, and allergies; prioritizes biomarkers; selects from 70+ ingredients with evidence anchors; optimizes dosage; and runs a separate critic agent for safety and interaction validation . The company says every early-user formula is also reviewed by medical professionals and the pack updates every 60 days as new data arrives . Legally, it is positioned as a DSHEA dietary supplement with structure/function claims only, plus explicit consent around AI analysis and lab-data processing .

Market Signals

  • Infrastructure bottlenecks are becoming the front-line debate.

    The biggest problem today is power.

    Harry Stebbings also expects continued resistance to data-centre buildout . That lines up with Bill Maris' preference to invest in controllers, physics engines, GPUs, and platforms rather than larger models themselves .

  • Coding agents continue to post numbers that contradict the idea they will die in the path of AGI labs. Sarah Guo pointed to strong metrics at Cursor, Lovable, and Cognition as a narrative violation for that bearish view .

  • Lean founding teams are getting structurally more capable. A post later amplified by Marc Andreessen argues that a single founder can now ship full apps, design product, generate and distribute clips, replace support, analyze user behavior, and automate lead generation with current AI-native tools . Andreessen's response was terse, but the toolchain itself is a useful screen for unusually efficient teams .

  • Perplexity is seeding early startup formation with credits. Perplexity launched the Billion Pound Build competition, offering early-stage teams a share of £1M in Computer credits; the pitch phase is open and closes July 6 .

Worth Your Time

Claude Fable 5 Reshapes the Frontier as Real-Time Translation and Open Coding Models Advance
Jun 10
4 min read
1223 docs
Deep Learning Weekly
Jason ✨👾SaaStr.Ai✨ Lemkin
Aidan Gomez
+21
Anthropic’s Claude Fable 5 dominated the day, but the broader picture also included mainstream real-time translation, new long-context and agent benchmarks, and fresh signs of how AI deployment, evaluation, and sovereign adoption are evolving.

Top Stories

Why it matters: today’s biggest shift was a major frontier-model release, paired with new questions about safeguards, access, and trust.

  • Anthropic launched Claude Fable 5, a Mythos-class model made safe for general use and described as more capable than any prior generally available Anthropic model . Artificial Analysis put it at #1 on its Intelligence Index with a score of 64.9, nearly five points ahead of the next-best non-Anthropic model; it also led agentic evaluations including GDPval-AA and Terminal-Bench Hard . Anthropic and early users emphasized its edge on long, complex software and knowledge-work tasks, including a Stripe test where a 50-million-line Ruby migration reportedly dropped from two months of team work to one day .

  • The Fable launch also surfaced a governance controversy. Anthropic says Fable shares Mythos 5’s underlying model with added safeguards, and uses fallback to Opus 4.8 for flagged cyber, bio, chemistry, and distillation requests, with fallback in fewer than 5% of sessions on average . Posts citing Anthropic’s materials say frontier-LLM-development requests may be quietly capability-limited through prompt modification, steering vectors, and PEFT, affecting about 0.03% of traffic .

  • Real-time speech translation reached mainstream products. Gemini 3.5 Live Translate launched for 70+ languages with continuous speech-to-speech translation, natural voice preservation, auto language detection, and rollout across Google Translate, the Gemini API, and Google Meet preview .

Research & Innovation

Why it matters: new research sharpened both the technical frontier and the reality check on what agents can actually do.

  • Latent Context Language Models (LCLMs) compress long inputs into latent representations instead of relying on KV-cache compression. The authors report a new Pareto frontier on RULER, LongBench, and LongHealth with lower memory use and faster time-to-first-token . Code, models, and paper were released publicly .

  • Agents’ Last Exam (ALE) introduced a labor-market-aligned benchmark for real jobs; on its hardest tier, top agents pass only 2.6%. That makes it a useful counterweight to increasingly strong demo-driven claims about near-term job automation .

  • Mayo Clinic’s REDMOD detected pancreatic cancer on routine CT scans up to three years before diagnosis. In testing on nearly 2,000 scans, it found 73% of hidden cancers a median 475 days early, nearly double expert radiologists .

Products & Launches

Why it matters: the most notable launches targeted translation, open coding models, and agent infrastructure.

  • Cohere open-sourced North Mini Code, its first open-source coding model. It is a 30B-total/3B-active MoE with 256K context under Apache 2.0, built for agentic coding and community use . Artificial Analysis scored it 33.4 on its Coding Index and about 199 output tokens/sec in pre-release speed tests .

  • Google Colab CLI and Skills now let developers provision GPU/TPU runtimes from the terminal, execute remote scripts, use a REPL, and call a built-in agent skill that can automatically fine-tune Gemma .

  • OpenAI added image results to web search in the Responses API, expanding search outputs beyond text for apps that need products, places, and visual references .

Industry Moves

Why it matters: companies kept pairing models with distribution, sovereign deployment, and domain-specific commercialization.

  • Cohere partnered with Québec to support secure, sovereign Canadian-built AI for public services .
  • Genesis Molecular AI expanded its Incyte collaboration to $1B, applying AI to both hit identification and lead optimization in drug discovery .
  • Together AI partnered with Pax8 to bring cost-efficient AI and leading open-source models to SMBs through existing channel distribution .

Policy & Regulation

Why it matters: evaluation transparency is becoming a live policy issue, not just a research norm.

  • CAISI was reportedly directed to stop publishing public model assessments as the new AI executive order is implemented . Separate commentary said the decision was tied to the Mythos release, reducing public scrutiny of frontier model evaluations .

Quick Takes

Why it matters: a few smaller updates still added signal on model competition, enterprise adoption, and real-world evaluation.

  • MiniMax-M3 scored 55 on the Artificial Analysis Intelligence Index, with 1M context and planned weight release in about 10 days .
  • OpenAI’s frontier models and Codex are now generally available on AWS Bedrock, including GovCloud regions .
  • Agent Arena launched large-scale real-world agent evaluation based on 300K+ tasks and 2M+ tool calls .
  • Anthropic says 54% of new enterprise logos now come self-serve, after threading Claude through parts of its sales workflow .
Fable 5 Pushes Coding Agents Into Project-Sized Work
Jun 10
5 min read
166 docs
Jediah Katz
Andrej Karpathy
Claude
+8
Claude Fable 5 dominated the day, but the useful signal is practical: senior engineers are handing coding agents bigger objectives, longer autonomous runs, and cleaner human-approval seams. This brief distills the highest-leverage workflows, what actually shipped, and the clips and code worth studying.

🔥 TOP SIGNAL

  • Claude Fable 5 is the clearest step-function signal today: Andrej Karpathy says the jump shows up on long, difficult problem-solving sessions because you can hand the model more ambitious end-to-end tasks and it will run with them; Mike Krieger says it is the first model he hands whole projects to; Simon Willison used it to ship major agent features in LLM 0.32a3 and a 13.9 MB CPython WASM wheel in a day. The practical takeaway is larger task envelopes and longer autonomous runs, not blind trust: Karpathy warns against fully hands-off production use because launch safeguards are still trigger-happy.

⚡ TRY THIS

  • Shift from tasks to objectives in Fable. Alex Albert's launch checklist: 1) give it bigger tasks, 2) define what done looks like and how to verify it, 3) use /loop and /goal for open-ended work, and 4) rework old CLAUDE.mds or skills that may anchor it to older-model behavior. Karpathy's examples of the bigger task class: explainers, visualizers, dashboards, bespoke single-use apps, 10x test suites, auto-optimization, and custom research HTML. Albert recommends xhigh/high by default, while Matthew Berman found the lowest effort setting sufficient in many of his tests and called extra effort slow or overkill.

  • Use repo + artifacts + iterative follow-ups instead of one giant prompt. Simon Willison started with Clone simonw/micropython-wasm from GitHub and research how this could use a full Python as opposed to MicroPython, attached Brett Cannon's build zips, then followed up with Try a bit more at the single-zip-stdlib problem and I want a wheel that has the whole system in it.... In his run, that produced a 13.9 MB wheel usable via uv run --with cpython-wasm -c 'code'.

  • Add a pause/resume seam for human approval. Simon used Fable to push a clean pattern into llm: let tools accept llm_tool_call, raise llm.PauseChain when you need approval, and resume from messages= history or explicit tool_calls_list= so the chain keeps tool-call state. This came out of Datasette Agent's ask_user() requirement and is the best public example in today's source set of human-in-the-loop tool execution without brittle placeholder hacks.

  • Run a pre-prod repo review, then override the question treadmill if needed. Berman's test prompt is review the entire code base and ask for security, docs, logical gaps, edge cases, UX/UI workflows, and test coverage; in workflows mode he saw that fan out into 100+ subagents. swyx's lighter-weight version is review my code for issues as a pre-prod Fable Check, and Berman's override when Claude gets stuck in clarification/spec-confirmation loops is Don't ask more questions. Just build.

📡 WHAT SHIPPED

  • Claude Fable 5 — Mythos-class model with added safeguards; Anthropic says its lead grows as tasks get longer and more complex. Shipping today in Claude Code/Cowork, paid Claude plans, the API at $10/M input and $50/M output, and Devin/Cognition at 1.4x ACUs; cyber/bio requests fall back to Opus 4.8 and Mike Krieger says 95%+ of sessions never notice. Public benchmark numbers cited across today's coverage: SW Bench Pro 80%, Frontier Code Diamond 29.3%, and computer use 85%.

  • Cursor integration — Fable 5 is live in Cursor and set a new CursorBench SOTA at 72.9%, 8 points above the previous best; comparison page is cursor.com/evals. Practical warning from Jediah Katz: Cursor users should read the model docs first because Fable has unusual required data-retention policies for safety.

  • Claude Code nested subagents — shipped today with depth capped at 5.

  • LLM 0.32a3 / Datasette Agent — Fable pushed out llm.PauseChain, llm_tool_call, guaranteed unique tool_call_id, and resuming from unresolved tool calls; Simon says the release was almost entirely written by Fable. Adoption signal: he spent $110.42 of tokens in one day on his Max plan, with one prod_datasette_agent session accounting for 78.2M tokens and $99.26.

  • Anecdotal side-project ceiling — Riley Brown says Fable one-shotted a Replit-like mobile app builder from the prompt build an app like Replit, that uses @daytonaio for sandboxing, and convex for DB, and later extended a Lovable-like builder to web/mobile preview, editing, sandboxes, DB/auth, voice-to-text, and Swift previews in 2-5 prompts. Treat this as anecdotal, but it is a useful snapshot of what fast-moving builders tried on day one.

🎬 GO DEEPER

  • Matthew Berman — 13:05-13:31: workflows fan-out. Best short demo of what repo-wide orchestration looks like in practice: a planning agent that can spawn 100+ subagents after a few minutes of planning. Good watch before you hand a big review or migration to workflows mode.
  • Matthew Berman — 23:36-24:22: model routing for cost discipline. His takeaway after a week with Fable: reserve it for the hardest long-horizon problems and route the rest to Sonnet/Haiku.
  • Matthew Berman — 48:51-50:12: the Just build override. Worth watching if you keep hitting clarification, spec confirmation, and approach approval loops before the model starts coding.
  • Read these diffs:Datasette Agent PR #20 and LLM PR #1482. They show a real human-approval workflow getting turned from local hacks into framework primitives.

  • Tool worth adding:AgentsView for local agent transcript and cost analysis. Simon uses it to attribute spend across projects and models; when Fable pricing was missing, he used Fable itself to reverse-engineer a custom price config.

Editorial take: the bottleneck just moved up a level — from getting a model to write code, to deciding how much work to hand it, where to force approval, and when frontier-model tokens are actually worth spending.

Fable 5 Goes Public as Google Ships Live Translation and China Scales AI Infrastructure
Jun 10
3 min read
296 docs
Mercor
Nathan Lambert
Dario Amodei
+10
Anthropic's Fable 5 dominated the day, both as a major public model release and as a flashpoint over hidden safety controls. Google pushed real-time translation into products and APIs, while China and researchers highlighted how fast the surrounding infrastructure and governance debate is moving.

The big story

Anthropic opens Fable 5 to general users

Anthropic released Claude Fable 5, the general-access version of its Mythos-class model family, saying it exceeds any model the company has previously made generally available . Anthropic said Fable 5 is state-of-the-art on nearly all tested benchmarks, with especially strong results in software engineering, knowledge work, scientific research, and vision, and with larger leads on longer, more complex tasks .

Interconnects described it as the smartest model currently available to the general public and said the jump appears to come from improvements across the stack, at roughly 2x the price of current Opus models; on APEX-SWE, Fable 5 scored 65.5% Pass@1, about 18 points above Opus 4.8, including 69.7% on observability tasks .

"a major-version-bump-deserving step change forward"

Why it matters: This appears to be a meaningful capability jump in a generally available model, especially for coding and long-horizon work.

The launch also sharpened the argument over who gets access

Anthropic said Fable 5 ships with new classifiers for cybersecurity, biology and chemistry, and distillation requests; when those trigger, the request is handled by Claude Opus 4.8 and users are told the fallback occurred, with Anthropic saying more than 95% of Fable sessions involve no fallback . Separately, it added non-visible interventions for requests tied to frontier LLM development, including pretraining pipelines, distributed training infrastructure, and ML accelerator design, using prompt modification, steering vectors, or PEFT rather than a fallback model .

That second policy drew immediate criticism. Nathan Lambert said silent limits on model diffusion are misaligned and make open frontier models more strategically valuable , while Jeremy Howard called restricting access for frontier research "very very very unsafe" .

Why it matters: Safety policy is increasingly becoming product policy: the question is not only how powerful a model is, but how labs decide to gate it and how visible those decisions are.

Other major moves

Google ships real-time speech translation into products and APIs

Google launched Gemini 3.5 Live Translate, a speech-to-speech model that converts streamed speech into more than 70 languages while preserving tone, pace, and pitch for more natural conversations . It is available in Google Translate and via API preview in Google AI Studio, with Logan Kilpatrick adding availability in the Gemini API and a forthcoming rollout to Google Meet .

Jeff Dean pointed to Grab as an early deployment example for helping travelers communicate with drivers .

Why it matters: Real-time translation is moving from demo territory into mainstream consumer surfaces and developer workflows.

China outlines a state-led AI infrastructure buildout

China is preparing to spend about $295 billion, or 2 trillion yuan over five years, on a nationwide network of interconnected AI data centers, with AI framed as a national-security project and a goal of 80% domestic technology by 2028 . The plan would rely on government debt and long-term bonds, with state telecom operators running the infrastructure and domestic suppliers including Huawei providing hardware .

Why it matters: The scale matters, but so does the framing: AI infrastructure is being treated as sovereign capability, not just commercial cloud capacity.

A new paper pushes the AI risk debate beyond misuse

A new paper co-authored by 30 experts, including Yoshua Bengio, argues that AI poses "epistemic risks" to accurate belief formation, reasoning, and the health of shared information environments . It highlights persuasion and manipulation, cognitive offloading, and human-AI or AI-AI feedback loops that narrow the epistemic space humans and systems draw from, and warns these risks can become self-perpetuating .

Why it matters: This is a notable attempt to broaden the risk conversation from direct misuse to the conditions needed for judgment, trust, and governance.

The throughline

Todays updates all pointed in the same direction: AI is getting more useful in public-facing products, while control over deployment is becoming more explicit through safety routing, API packaging, and state-backed infrastructure plans .

Applied AI Execution, Open Strategy, and the Evergreen Books Builders Keep Recommending
Jun 10
4 min read
150 docs
Invest Like The Best
Aaron Levie
Shane Parrish
+3
Aaron Levie's top pick explained where applied AI companies actually build defensibility, while Bill Gurley surfaced two reads on sophisticated open strategies. The rest of the signal came from durable books on design, influence, company building, investing research, and leverage.

Most compelling recommendation

The strongest save today is the post Aaron Levie called critical reading for anyone building an applied AI company. It stands out because the recommendation preserves the operating thesis, not just the link: value accrues in integration, data preparation, tool access, and ongoing change management, not just raw model capability .

Sara's X post on applied AI execution

  • Content type: X post / thread
  • Author/creator:@saranormous
  • Who recommended it: Aaron Levie
  • Key takeaway: Applications become defensible by doing the "unglamorous work" of arranging company-specific reality so models can act, giving models tools, and helping customers change workflows
  • Why it matters: Levie argues there is still a large gap between frontier-model progress and real enterprise deployment, leaving room for applied AI companies, infrastructure providers, and new system integrators

"An application earns its place in the untrainable corner by doing unglamorous work... Integration and maintenance run as long as the relationship does"

Two timely reads on "open" as strategy

Bill Gurley's two shares fit together: one is a concrete robotics example, the other a broader strategy explainer .

Agibot Open Sourced a Million Robot...

  • Content type: Article
  • Author/creator: Not provided in the notes
  • Who recommended it: Bill Gurley
  • Key takeaway: Gurley pointed readers to it to understand how and why Unitree's top competitor in China open-sourced a massive training data set
  • Why it matters: It frames openness as a deliberate competitive move, not just a distribution choice

From Open Source Software to Open...

  • Content type: Article
  • Author/creator: Not provided in the notes
  • Who recommended it: Bill Gurley
  • Key takeaway: Gurley described it as analysis of the most sophisticated open-source strategies
  • Why it matters: It gives a broader lens for interpreting the Agibot example and similar moves elsewhere

Evergreen books that kept resurfacing

Most of today's book recommendations were not new releases. The common theme was durable operating judgment: better design, better influence, better research habits, and better leverage .

  • Don’t Make Me ThinkType: Book | Author: Steve Krug | Who recommended it: Lenny Rachitsky | Key takeaway: objectively improve product UI | Why it matters: it is positioned as a practical way to sharpen interface quality

  • The Design of Everyday ThingsType: Book | Author: Don Norman | Who recommended it: Lenny Rachitsky | Key takeaway: design flaws, not user error, cause struggles | Why it matters: it pushes builders to blame the product before blaming the user

  • Creativity, Inc.Type: Book | Author: Ed Catmull | Who recommended it: Lenny Rachitsky | Key takeaway: protect early "ugly baby" ideas | Why it matters: it is a reminder that fragile ideas need support before they are polished

  • How to Win Friends and Influence PeopleType: Book | Author: Dale Carnegie | Who recommended it: Lenny Rachitsky | Key takeaway: be interested rather than interesting | Why it matters: it reduces influence to a usable interpersonal habit instead of charisma

  • The Lean StartupType: Book | Author: Eric Ries | Who recommended it: Lenny Rachitsky | Key takeaway: smart iteration | Why it matters: it remains a compact operating principle for early company building

  • The Effective ExecutiveType: Book | Author: Peter Drucker | Who recommended it: Lenny Rachitsky | Key takeaway: prioritize highest-leverage work | Why it matters: it ties career progress to choosing the right work, not just doing more of it

  • Common Stocks and Uncommon ProfitsType: Book | Author: Philip Fisher | Who recommended it: a speaker on Invest Like The Best | Key takeaway: it underpins a "scuttlebutt" research system built on talking with suppliers, customers, and competitors | Why it matters: it is presented as a live research method, not just a classic to admire

  • Strength to StrengthType: Book | Author: Arthur Brooks | Who recommended it: Bill Gurley | Key takeaway: Gurley said he was "very moved" by it because it addresses the next chapter in life | Why it matters: it stands out as a recommendation about transition and purpose, not just craft or returns

Why this set is useful

The strongest pattern today is that leaders were recommending resources about execution under real constraints: making AI work inside organizations, understanding when openness is a competitive strategy, improving interfaces, running better field research, and focusing on high-leverage work .

From Prioritization to Curation, and Better AI Workflows for PMs
Jun 10
4 min read
80 docs
Aakash Gupta
The community for ventures designed to scale rapidly | Read our rules before posting ❤️
Scott Belsky
+8
This brief highlights a shift from backlog prioritization to product curation, plus practical AI workflows for better PM judgment, discovery, and execution. It also covers lessons on empathy-led product discovery, search as a core feature, team learning, and a curated reading list for PM growth.

Big Ideas

  • The PM job is shifting from prioritization to curation. Ravi Mehta argues that when specs, prototypes, and code get cheaper, PMs spend less time ranking scarcity and more time deciding what deserves a place in the product . AI speeds up execution, but the bottleneck moves to customer understanding, alignment, and judgment . He frames the new work as closing three gaps: signal, evidence, and continuity . Why it matters: faster shipping raises the cost of weak selection. Apply it: keep a live stream of customer input, require evidence for roadmap changes, and preserve the "why" from discovery through delivery.

"A feature is not done when it ships. It’s done when customers get value from it."

  • Empathy beats passion in early product building. Scott Belsky says passion-led teams often launch something "30° off" product-market fit if they anchor on a solution instead of user reality . In Behance’s early research, creatives said they did not need another network; deeper interviews surfaced the actual needs: attribution, discovery by strangers, and ways to publish joint work . Why it matters: users often reject your proposed solution while clearly describing the problem. Apply it: interview for pains, workarounds, and missing outcomes—not feature validation.

Tactical Playbook

  1. Use AI-native design as a product process, not a prompt trick. Sachin Rekhi’s 10-step sequence starts with identifying a manual problem, mapping the current workflow in detail, and gathering real inputs and edge cases. Only step 4 is the actual AI prototype; the rest is testing, integration, rollout, adoption, contribution, and value capture . Why it matters: most AI projects fail in process design, not model choice. Apply it: spend the bulk of the work on workflow mapping and edge cases before worrying about scale.

  2. To avoid AI “slop,” feed context in layers. Matthew Wensing describes Claude as a brilliant junior hire that sprints before it understands the full problem . His pattern: inventory raw material first, start abstract so the model doesn’t snap to a generic template, add rules gradually, reorganize source material around a framework, and only generate talk tracks after the slides exist . Why it matters: executives filter out polished but shallow work quickly. Apply it: prefer iterative working sessions over one-shot prompts, and verify any non-deterministic analysis before it goes into an executive document .

Case Studies & Lessons

  • Customer.io’s AI stack is a strong template for PM leverage. Wensing describes three internal tools: a Slack/Snowflake analysis bot for natural-language data queries with human verification, a Slack scanner that surfaces threads where product input is needed, and Chiefys, which checks new work against strategy and operating docs for contradictions . Why it matters: the best PM AI use cases keep leaders close to data, customer problems, and company context at the same time. Apply it: look for one tool each for analysis, signal detection, and consistency checking.

  • Search becomes the product sooner than many teams expect. In products with large content libraries, the hard part is often not storage but helping users find the right thing fast . Once there are thousands or millions of assets, users care more about discovery than another feature . Complaints like "I can’t find anything" or "the platform feels slow" can actually be search and metadata problems . Apply it: treat metadata structure as a product decision, and invest early before categorization debt compounds .

Career Corner

  • Small-group learning is often the highest-yield format for PM teams. Teresa Torres says it creates accountability, shared momentum, and better application to real work than purely self-directed learning, while also working better than mass training when teams are at different stages . Apply it: pilot new methods with duos or trios, keep coaching groups tight, and use book clubs or course cohorts to turn learning into practice .

  • Do reference checks early enough to learn something. Julie Zhuo shares David Fischer’s view that late-stage reference calls mostly confirm decisions already made . His calibration question: If you were starting a company tomorrow and making your first sales hire, would this person be it?Apply it: move at least one reference conversation earlier in senior hiring loops.

Tools & Resources

  • A practical reading list for whatever skill you need next. Lenny Rachitsky’s latest roundup organizes durable books by job-to-be-done: design, taste/craft, influence, starting a company, and career growth . Useful anchors include Don’t Make Me Think for UI judgment, Never Split the Difference for collaborative negotiation, and The Effective Executive for focusing on the highest-leverage work . Full list: Part 2.

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Daily · Tracks 110 sources
Elevate
Simon Willison's Weblog
Latent Space
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Luis von Ahn
Khan Academy
Ethan Mollick
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Weekly intelligence briefing on how artificial intelligence and technology are transforming education and learning - covering AI tutors, adaptive learning, online platforms, policy developments, and the researchers shaping how people learn.

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VC Tech Radar

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Bitcoin Payment Adoption Tracker

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Nicolas Burtey
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Google DeepMind
OpenAI
Anthropic
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Global Agricultural Developments

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RDO Equipment Co.
Ag PhD
Precision Farming Dealer
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Recommended Reading from Tech Founders

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Paul Graham
David Perell
Marc Andreessen 🇺🇸
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PM Daily Digest

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Shreyas Doshi
Gibson Biddle
Teresa Torres
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AI High Signal

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