We can't find the internet
Attempting to reconnect
Something went wrong!
Hang in there while we get back on track
Your intelligence agent for what matters
Tell ZeroNoise what you want to stay on top of. It finds the right sources, follows them continuously, and sends you a cited daily or weekly brief.
Your time, back
An AI curator that monitors the web nonstop, lets you control every source and setting, and delivers verified daily or weekly briefs.
Save hours
AI monitors connected sources 24/7—YouTube, X, Substack, Reddit, RSS, people's appearances and more—condensing everything into one daily brief.
Full control over the agent
Add/remove sources. Set your agent's focus and style. Auto-embed clips from full episodes and videos. Control exactly how briefs are built.
Verify every claim
Citations link to the original source and the exact span.
Discover sources on autopilot
Your agent discovers relevant channels and profiles based on your goals. You get to decide what to keep.
Multi-media sources
Track YouTube channels, Podcasts, X accounts, Substack, Reddit, and Blogs. Plus, follow people across platforms to catch their appearances.
Private or Public
Create private agents for yourself, publish public ones, and subscribe to agents from others.
3 steps to your first brief
Describe your goal
Tell your AI agent what you want to track using natural language. Choose platforms for auto-discovery (YouTube, X, Substack, Reddit, RSS) or manually add sources later.
Review and launch
Your agent finds relevant channels and profiles based on your instructions. Review suggestions, keep what fits, remove what doesn't, add your own. Launch when ready—you can always adjust sources anytime.
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
Get your briefs
Get concise daily or weekly updates with precise citations directly in your inbox. You control the focus, style, and length.
Omar Sanseviero
Marc Andreessen 🇺🇸
Just Loki
Funding & Deals
Avoca raised over $125M from Seed through Series B at a $1B valuation, backed by Kleiner Perkins, Meritech Capital, General Catalyst, Amplify, and other investors. The YC W23 company is building AI agents for home-services businesses that answer inbound calls, book jobs, follow up on estimates, and drive new leads based on technician capacity; YC says it is on track to book $1B in jobs this year.
Sereact raised $110M in Series B, launched Cortex 2, and says it now has 200+ systems deployed, more than 1B real picks, and one intervention per 53,000 picks. It is opening its first US office in Boston; Nathan Benaich called it the best embodied AI shop in town.
Emerging Teams
FieldCamp rebuilt field-service software around a plain-English customization layer plus AI agents that handle reception, dispatching, and follow-up work. In the last 80 days, revenue rose 300% and average contract value moved from $79 per month to about $700 as buyers started comparing the product to hiring a dispatcher rather than buying another FSM tool.
Reasonblocks is positioning as a runtime for production AI agents that catches loops, dead ends, and wasted tokens mid-run and learns from those failures. YC says it delivered 42% higher accuracy and 52% lower cost on SWE-Bench Pro; the launch was led by founders @sajeevmagesh and @rohankvij.
Sherpa automates website experimentation rather than just surfacing recommendations. YC says one user shipped 40 experiments in 30 days and lifted Lindy's conversion rate 30%; founders are @ethan_kinnan and @norbusonam.
GradeAid.ai is building personalized learning paths where AI agents generate games on the spot based on each child's interests. The beta has been tested by 50 kids, has 4 school LOIs for trials, and a 200+ waitlist; the team says it started from a Lovable-built MVP and is initially targeting families plus special schools interested in learning-difficulty support.
AI & Tech Breakthroughs
Keystone-Eval from Imbue is a strong signal that agent benchmarking is getting more adversarial and more useful. It runs self-configuring agents across nearly 200 codebases, injects breaking mutations to catch faking, and reports 93% completion for Claude Opus 4.6; Codex GPT-5.4 caught 75% of mutations and was reported to cheat more often than Claude.
Document parsing is getting benchmarked and productized at the same time. LlamaIndex released ParseBench with 2,000 verified pages of real enterprise documents. It also showed an end-to-end loan income-verification workflow using LlamaParse plus the Claude Agent SDK, with schema-driven extraction, cross-document validation, and a COMPLETE/REVIEW/FLAG output for a task that loan processors spend 40% to 60% of their time on.
Arc Gate is an open-source proxy that intercepts indirect and roleplay prompt-injection attacks before they reach an OpenAI-compatible model. On a 40-prompt out-of-distribution benchmark it reported 1.00 recall and 0.95 F1, versus 0.75 and 0.86 for OpenAI Moderation and 0.55 and 0.71 for LlamaGuard 3 8B; blocked prompts averaged 1.3 seconds and required no GPU, though commenters immediately flagged legitimate-request latency and non-English robustness as open questions.
Market Signals
YC's new Requests for Startups are a compact market map. YC says AI has stopped being a feature and started being the foundation for rebuilding software, services, silicon, and physical-world systems. The recurring asks are AI-native service companies that do the work, company brains and AI operating systems that make firms queryable to agents, software rebuilt for agents as first-class users, cheaper SaaS challengers, and new infrastructure around agent inference chips and semiconductor supply chains; YC is also explicitly calling for startups in low-pesticide agriculture, counter-swarm defense, space electronics, and cost-of-living categories such as housing, food, and transportation.
Agentic spend is likely to concentrate in systems agents must use. SaaStr says its Salesforce bill rose 83% to about $22,000 even with 80% fewer human seats because 20+ AI agents now use the system around 100x more than humans did. The same team says it effectively stopped using Notion because agents built their own dashboards elsewhere; their bull categories are AI infrastructure APIs, data platforms, CRM, code tools, and communication systems, while project management and traditional marketing automation look more exposed.
Moats are shifting, and procurement is getting stricter. Ben Horowitz argues that code and UI are weaker moats in AI because enough GPUs and data can solve many problems, turning some categories into a capital race. At the same time, enterprise security questionnaires are now arriving with AI sections asking for output-monitoring controls, protections against sensitive data reaching LLM endpoints, regulation-citable answers, and exportable 90-day audit logs; one builder says deals are stalling because most teams are not ready. Paul Graham's founder-side take is blunt: most startups are still more likely to fail than be eaten by the model companies.
The macro software and AI budget backdrop is still strengthening. Gartner revised 2026 software-spend growth back up to 15.1% for a $1.44T market, with data-center systems projected to grow 55.8% to $788B, GenAI model spend growing more than 100% year over year, and total IT spend reaching $6.31T. Separately, Marc Andreessen endorsed the point that labs are compute-constrained because they are serving so many customers at once.
Worth Your Time
YC Requests for Startups: the clearest live map in this set for where new companies are being pulled across agents, semis, agriculture, defense, space, and cost-of-living markets.
Why We Pay Salesforce 83% More Than Last Year. But Stopped Using Notion Entirely. The AI Agent Seat Problem Is Real.: one of the clearest operator essays on how agentic usage may re-rank B2B software winners and losers.
Gartner: Software Spend Now $1.44 Trillion in 2026, Revised Back Up to 15.1%. The Slowdown Never Came. Are You Grabbing That Budget?: helpful macro context for why software and AI budget conversations still matter.
Keystone-Eval report: a useful diligence read if you want a more adversarial way to test coding-agent claims.
Build automated loan income verification with LlamaParse and Claude Agent SDK: a concrete walkthrough of document AI turning into an enterprise workflow.
Riley Brown
Geoffrey Huntley
🔥 TOP SIGNAL
Today's clearest edge is harness engineering, not another round of model swapping. Harrison Chase says LangChain moved DeepAgent from 30th to 5th on Terminal Bench without changing the model, while Geoffrey Huntley's harness panel makes the same point from the builder side: exhaust tool design, context funneling, and evals before stacking more agent loops .
Across the sources, the recurring pattern is that tool design, context management, and observability are producing gains people often chase via model changes alone .
🛠️ TOOLS & MODELS
- DeepAgent — LangChain's open-source, model-agnostic harness jumped from 30th to 5th on Terminal Bench via harness tuning alone. Good reminder: benchmark movement can come from the scaffold, not the weights .
- Codex + GPT-5.5 — Riley Brown says his team of seven engineers has switched to Codex, and he prefers it to Claude Desktop and Cursor for complex infrastructure work because it combines coding, docs, automations, and multitasking chats in one GUI .
- GPT-5.5 — Greg Brockman says it is strong on hard tasks like writing GPU kernels. Riley's usage note: use lower effort for simpler changes and higher effort for harder work, with the tradeoff that API usage costs more even if the model can be more direct about intent .
- GPT Image 2 -> Codex frontend loop — Romain Huet points to a practical pairing: do the design pass with GPT Image 2, then build with Codex + GPT-5.5. The cited demo showed watch components generation and alignment landing in one shot .
- Claude Code at Applied Intuition — Peter Ludwig says Cursor was initially the hottest tool internally, but Claude Code now leads their internal adoption leaderboard and is phenomenally useful. His caveat is the one that matters: in safety-critical systems, human validation is still mandatory .
- OpenClaw 2026.4.26 — New release adds solutions for PR and issue management, remote test execution, and large CI testing workflows. The maintainer also calls out community work across docs, Windows, Linux, Docker, and local-model edge cases .
💡 WORKFLOWS & TRICKS
- Codex multitasking setup
- Create one project or folder per goal.
-
Spawn separate chats with
Cmd+N. - Use the blue dot as the done or unread signal.
- Fork a chat when a branch deserves its own deliverable.
-
If you want a Claude-specific pass, open the terminal with
Cmd+Jand runclaudeinside Codex .
- Reusable skill + examples beats long instructions — Riley's example is a YouTube research skill that pulls the last 10 transcripts and produces a targeted critique. He pairs that with a knowledge base of good examples, and says organized docs plus screen recordings are increasingly useful references for future agent workflows .
- Automation recipe — Do the task once, then tell the agent to turn it into a recurring automation. After that, use
run now, inspect the output, and edit the automation until it works reliably . - Harness upgrade checklist — Expose tools and knowledge through a virtual file-system-like interface when possible, use long-context models to reduce compaction, keep one context window per goal or activity, and only add more nested loops after you have exhausted tool design, system prompt work, context funneling, and evals .
- Trace-to-PR improvement loop — Instrument traces, attach explicit or inferred failure signals, detect repeated tool loops, and let an agent suggest prompt, code, or harness changes from that data. Chase describes this as a meta-harness improvement flywheel, with a human deciding where the approval boundary sits .
👤 PEOPLE TO WATCH
- Harrison Chase — High signal if you care about production agents, not demos. The useful bits today were harness engineering, trace-driven evals, and the idea that observability and regression testing remain timeless even as models improve .
- Riley Brown — Worth watching because he is publishing repeatable Codex workflows from real operating use, not just toy prompts. His recent output spans a full beginner guide and a Codex masterclass covering skills, browser agents, Claude Code inside Codex, and day-one projects .
- Peter Ludwig — Rare signal from a co-founder and CTO running a 1000-engineer company in a safety-critical domain. His notes on tool adoption, hiring for AI engineer skills, and required human validation are more valuable than most benchmark chatter .
- Geoffrey Huntley's harness panel — Good source for timeless primitives: harness as deterministic code around the agent loop, nested loops as orchestration, and the warning not to stack more loops before fixing tool design and context handling .
- Simon Willison — Still one of the better voices for zooming out. His current framing is that agent loops may apply to more knowledge work than coding, and he says about 95% of the code he produces today is not typed by him .
🎬 WATCH & LISTEN
- 16:30-18:31 — Trace data into agent improvement. Chase walks through the loop of running agents on data, evaluating failures, feeding the results back into the system, and deciding where the human should approve changes .
- 33:21-36:59 — Why examples beat instructions. Riley explains why collecting strong outputs, organizing them in a knowledge base, and recording workflows can make agents much more reliable on subjective work .
- 29:46-31:30 — The simplest automation pattern in Codex. Riley's recipe is dead simple: do the task once, convert it into an automation, test with
run now, then edit until it is solid .
📊 PROJECTS & REPOS
- DeepAgent — The best project-level signal in the notes. Open-source, model-agnostic, and already showing that harness tuning alone can move a coding benchmark materially .
- LangGraph + LangSmith — Worth studying as a production stack for deterministic workflows, stateful resumes after failures, parallel execution, traces, online evals, and regression testing .
- OpenClaw 2026.4.26 — Fresh release with PR and issue management, remote test execution, and heavier CI support, plus visible community contribution across platform edge cases .
Editorial take: the durable edge right now is not one magic model pick; it is the harness and workflow around the model — cleaner contexts, reusable skills, trace-based evals, and human checkpoints where failure is expensive
Chubby♨️
etn.
Andy Jassy
Top Stories
Why it matters: Cloud distribution, frontier funding, and flagship model releases all shifted in meaningful ways.
- OpenAI widened its distribution options. OpenAI said Microsoft remains its primary cloud partner, but its products and services can now be offered across all clouds; OpenAI also said it will continue providing Microsoft with models and products until 2032, with revenue share through 2030. AWS CEO Andy Jassy added that OpenAI models will be available directly on Bedrock in coming weeks alongside a Stateful Runtime Environment .
- David Silver’s new lab launched at unusual scale. Ineffable Intelligence said it is building a system that discovers knowledge from its own experience, while multiple posts reported a $1.1B raise at a $5.1B post-money valuation. The company is building in London, and Silver committed 100% of his Ineffable equity proceeds to Founders Pledge .
- Anthropic shipped Claude Opus 4.7. The update was described as a coding-focused upgrade over Opus 4.6 with improved vision, a new xhigh effort setting, and real-world cyber safeguards. On the live GSO benchmark, Opus 4.7 was listed first at 42.2%, ahead of Opus 4.6 and GPT-5.5 at 37.3%.
Research & Innovation
Why it matters: The most useful research this cycle focused on making agents more reliable, more structured, and less wasteful.
- A smaller model beat a much larger one in theorem proving. Self-Guided Self-Play adds a Guide role that filters synthetic problems and reduces reward hacking; in Lean4, a 7B model outperformed a 671B baseline in fewer than 200 rounds .
- A major survey gave world-model research a common vocabulary. The 40-author Agentic World Modeling paper proposes a levels × laws framework spanning L1 predictors, L2 simulators, and L3 evolvers, synthesizing 400+ works and 100+ systems across RL, web agents, video generation, and scientific discovery .
- A new cost paper challenged common assumptions about coding agents. On SWE-bench Verified, agentic coding used about 1000x more tokens than chat or code reasoning, varied by up to 30x across identical runs, and higher spend did not reliably improve accuracy .
Products & Launches
Why it matters: New launches are pushing agents deeper into real developer workflows rather than standalone demos.
- Xiaomi open-sourced MiMo-V2.5 under MIT. The release includes MiMo-V2.5-Pro for agent and coding tasks and MiMo-V2.5 as a native omni-modal model; both support a 1M-token context window. vLLM highlighted long-horizon execution across 1000+ tool calls for the Pro model .
- Cognition launched Devin for Terminal. It is a local coding agent that runs in the shell with full access to the codebase, tools, and environment, and can hand work off to the cloud after a laptop is closed .
- OpenAI open-sourced Symphony for Codex. The orchestration layer connects issue trackers such as Linear to coding agents and turns the workflow into: open issue, assign agent, generate PR, then human review .
Industry Moves
Why it matters: Enterprise adoption is increasingly arriving through large partnerships, not just model benchmarks.
- Cognition partnered with Mercedes-Benz on what it called one of the most extensive deployments of AI software engineering in the automotive industry so far .
- Google DeepMind expanded in South Korea with a new AI Campus in Seoul, internships for Korean students, and collaboration with the Korean AI Safety Institute .
- Together AI joined the U.S. DOE’s Genesis Mission with 17 national laboratories, aimed at connecting supercomputers, facilities, and datasets to help double American scientific productivity within a decade .
Policy & Regulation
Why it matters: Governments are becoming more willing to shape cross-border AI deals directly.
- China blocked Meta’s $2B acquisition of Manus, citing concerns over foreign investment and the transfer of strategic AI technology to the U.S. .
Quick Takes
Why it matters: A few smaller updates still stood out for pricing, infrastructure, and developer tooling.
- GitHub Copilot moves to usage-based billing on June 1 as it supports more agentic and advanced workflows .
- vLLM v0.20.0 added DeepSeek V4 support, moved to CUDA 13 / PyTorch 2.11, and introduced TurboQuant 2-bit KV cache with 4x capacity .
- OpenAI announced gpt-realtime-1.5 for interactive voice-controlled apps and published an open-source repo developers can fork and extend .
- Moonshot open-sourced Kimi K2.6, a coding and long-horizon agent model that scales to 300 concurrent sub-agents across 4,000 coordinated steps.
Elon Musk
Balaji Srinivasan
Start here
Sam Monella Academy video on thorium
- Content type: YouTube video
- Author/creator: Sam Monella Academy
- Link/URL: Direct resource URL was not provided in the source; mentioned in this interview
- Who recommended it: Balaji Srinivasan
- Key takeaway: Balaji said it is essential for understanding India’s thorium and breeder-reactor progress, and said "everyone should watch."
- Why it matters: This is the clearest technical learning recommendation in today’s set because it comes with a specific reason to spend time on it.
"Everybody should know about thorium... there’s a really good Sam Monella Academy YouTube video on thorium, which everyone should watch."
One leadership case study to watch
The Greatest Night in Pop
- Content type: Documentary
- Author/creator: Not specified in the source
- Link/URL: No direct resource URL in the source; described as available on Netflix and discussed in this interview
- Who recommended it: Ben Horowitz
- Key takeaway: Horowitz recommended the film about the making of "We Are the World," with Quincy Jones’ leadership highlighted in the source notes as the lesson to watch for.
- Why it matters: It turns a documentary recommendation into a practical management case study on leading highly talented, difficult people.
Two individual reads worth saving
Paul Graham essay at paulgraham.com/kids.html
- Content type: Essay / blog post
- Author/creator: Paul Graham
- Link/URL:https://paulgraham.com/kids.html
- Who recommended it: Sam Altman
- Key takeaway: Altman shared it with the simple endorsement: "this is so good."
- Why it matters: The source gives no extra framing, but the endorsement is direct and unambiguous.
Sam Altman May Control Our Future. Can He Be Trusted?
- Content type: Magazine article
- Author/creator: Ronan Farrow and Andrew Marantz
- Link/URL:https://www.newyorker.com/magazine/2026/04/13/sam-altman-may-control-our-future-can-he-be-trusted
- Who recommended it: Elon Musk
- Key takeaway: Musk called it "very much worth reading" while using it to reinforce his criticism of Altman.
- Why it matters: It is the only long-form reported feature in today’s set and the only recommendation centered on OpenAI leadership.
Balaji’s media-and-power reading cluster
Balaji also surfaced a reading stack he framed as worldview-changing examples involving journalists and authoritarian leaders. No direct resource URLs were provided for the items below; all were mentioned in this interview.
- Ten Days That Shook the World - Book by John Reed. Who recommended it: Balaji Srinivasan. Key takeaway: Balaji presented it as a book that whitewashed the Bolshevik Revolution and emphasized Reed’s importance to that moment. Why it matters: It opens Balaji’s broader media-history list and sets the frame for the rest.
- Walter Duranty’s Stalin coverage - Articles / reporting by Walter Duranty. Who recommended it: Balaji Srinivasan. Key takeaway: Balaji singled out Duranty as a Pulitzer-winning Stalin apologist tied to covering up mass killing in Ukraine. Why it matters: It broadens the cluster from books into consequential newspaper reporting.
- Red Star Over China - Book by Edgar Snow. Who recommended it: Balaji Srinivasan. Key takeaway: Balaji said the book became a major Western source and portrayed Mao and his followers as dedicated reformers. Why it matters: It shows the same theme through an influential book-length account.
- The Gray Lady Winked - Book by Ashley Rinsberg. Who recommended it: Balaji Srinivasan. Key takeaway: Balaji called it a good book on the Herbert Matthews / Fidel Castro episode and said it goes through similar cases. Why it matters: It is the most explicit follow-on reading recommendation in this cluster because he directly called it a good book on the subject.
Bottom line
If you only save two items from today, the thorium video has the clearest technical learning payoff, and The Greatest Night in Pop has the most immediately transferable leadership lesson.
Hiten Shah
scott belsky
Adam Nash
Big Ideas
1) Learning speed is becoming the discovery constraint
“The bottleneck in product development is shifting. It’s no longer how fast we can build—it’s how fast we can learn.”
AI-moderated interviews automate the conversation itself: the model asks questions, follows up based on responses, and adapts in real time . That changes the economics of customer discovery. Anthropic used this model to run 81,000 interviews across 159 countries and 70 languages, collecting open-ended feedback at a scale that would be hard to match with calendar-bound research .
- Why it matters: PM teams can remove three common bottlenecks at once—calendar capacity, language coverage, and turnaround time .
- How to apply: Use AI-moderated interviews when you need broad, open-ended signal quickly. Draft the interview plan with AI, launch interviews asynchronously, and review the synthesized themes .
2) Discovery is moving from pull to push
Julie Zhuo argues that pull systems work when someone already knows what to ask: search boxes, dashboards, and explicit queries . But the more important insight may be the question nobody asked—something that would not surface through manual lookup alone . Her point: discovery increasingly happens through push systems such as feeds and notifications, which can surface relevant information users would not have searched for themselves .
- Why it matters: Many PM workflows still assume stakeholders will discover important signals by querying dashboards. That misses unasked questions .
- How to apply: For analytics, research repos, and internal intelligence systems, add proactive alerts, recommendations, or feed-like surfaces alongside search and dashboards .
3) Better AI prototypes depend more on context than on prompting
Ravi Mehta argues that product teams used to rely on low-signal artifacts such as specs and wireframes because working software was expensive. As AI makes working software cheaper, teams can bring functional prototypes into discovery much earlier . The important reframing is that prototypes are not deliverables; they are decision-making tools used to learn, align, and validate before production code replaces them .
Good results depend on context engineering: providing the model with the right information and tools for the task while avoiding “context rot” from overly long, distracting prompts . The most complete prototypes combine functional context (what it should do), visual context (what it should look like), and data context (the schema and realistic data that make the prototype believable) .
- Why it matters: Better context produces higher-signal prototypes, better customer feedback, and clearer internal decisions .
- How to apply: Start by naming the decision you need to make, choose the right prototype type, then provide functional, visual, and data context in a balanced way. Pair the prototype with a PRD, since the prototype answers the what while the PRD still answers the why.
4) Strategy and execution have to run concurrently
“ballet wrapped in violence”
Run the Business uses that phrase to describe product work: strategy provides legibility, discipline, and a clear through-line, while execution requires force, speed, scope cuts, and a willingness to learn through incomplete information . In practice, the two are in constant conversation—execution reveals broken assumptions, while new inputs from the market, customers, and technical reality change what execution should do next .
- Why it matters: Treating strategy and execution as separate handoffs creates either analysis paralysis or thrashing .
- How to apply: Keep strategy legible enough that teams stay oriented, but revisit assumptions during execution rather than waiting for a separate planning cycle .
Tactical Playbook
1) A practical AI-moderated discovery loop
- Draft the plan with AI. Start with the research goal, target segment, and interview plan .
- Run interviews asynchronously. Let the AI conduct conversations without scheduling overhead .
- Use scale deliberately. If you need broad coverage, AI can run hundreds or thousands of interviews in parallel .
- Widen the surface area. Use translation and transcription to include participants in other languages .
- Review synthesized themes. Use AI to summarize findings once the interviews are complete .
- Why it matters: This turns discovery from a calendar-constrained activity into a faster learning system .
- How to apply: Start with one segment where response volume, language coverage, or turnaround time is the current bottleneck, then compare cycle time with your current approach .
2) A minimum viable context stack for AI prototyping
- Define the decision first. If there is no open decision, you may not need a prototype at all .
- Pick the prototype type. Use concept prototypes to explore directions, design prototypes to align fidelity, research prototypes for customer testing, and technical prototypes to test feasibility .
- Provide functional context. Spell out features, interactions, and use cases .
- Provide visual context. Add screenshots, sketches, wireframes, or design references .
- Provide data context. Include schema and realistic sample data so the prototype feels believable .
- Generate data separately when possible. That makes the prototype reusable across multiple scenarios .
- Keep context balanced. Too little produces generic output; too much creates context rot .
- Pair the prototype with the PRD. Engineering still needs help separating intentional decisions from incidental ones .
Aakash Gupta adds two tactical tips from Claude Design: answer the clarifying questions carefully, and use Tweaks → Edit → Comments in that order to control token cost while improving output quality .
- Why it matters: Teams can move faster without losing clarity .
- How to apply: Standardize a shared template for functional, visual, and data context, then reuse it across the team .
3) How to ramp on an unfamiliar product without faking expertise
In a ProductManagement thread, the original problem was familiar: being dropped onto a product you barely know and still being expected to identify gaps, risks, and solutions immediately .
A pragmatic ramp plan from the comments:
- Dogfood the product. Use it directly and note where understanding breaks down .
- Talk to engineering and stakeholders. Build a view of the current state and what counts as a near-, short-, and long-term win .
- Use AI for explanation, not as a substitute for judgment. Keep questions anchored in basics like customer, opportunity size, and product principles .
- Reuse your prior methods. One commenter’s advice: do not force a perfect connection to past experience; reuse the tools and behaviors that made you effective before .
- Look for moving levers. If something is stuck, diagnose whether the blocker is bureaucracy, politics, a stakeholder, or the roadmap itself .
- Why it matters: The early feeling of “just surviving” may reflect both impostor syndrome and genuine product ambiguity .
- How to apply: Treat this as a 30-day ramp checklist rather than expecting instant fluency .
Case Studies & Lessons
1) Anthropic shows what discovery looks like when interviews scale
Anthropic’s 81,000 AI-moderated interviews across 159 countries and 70 languages are a useful marker for what changes when the interview itself can be automated . The lesson is not just more research. It is that rich, open-ended conversations can now run with far more concurrency than a human interview calendar allows .
- Why it matters: It shows that open-ended research can scale across markets and languages without collapsing under scheduling overhead .
- How to apply: When you need directional signal across many segments, design research around concurrency and coverage—not just available interview slots .
2) Daffy solved an emotional behavior problem by separating two hard decisions
Adam Nash says many people already believe they should give to charity, but they miss their own annual giving goals because life interrupts and donations become reactive . Daffy’s product separates how much to give from who to give it to, using an account with automated deposits and investments so users can make one good decision up front and act later when inspired . Daffy then layers campaigns and personal stories on top, because Nash argues many products fail by applying rational solutions to emotional problems .
Examples that have resonated include memorial campaigns, school fundraising, and holiday or cause-based campaigns .
- Why it matters: Behavioral design can beat a purely rational model when the real blocker is time, emotion, and fragmented decision-making .
- How to apply: If a journey contains multiple hard choices, separate them where possible and automate the durable step first .
3) Datadog’s prototype compression highlights the new iteration loop
Aakash Gupta points to a Datadog PM who compressed a week of brief-mockup-review cycles into a working prototype before the meeting ended . The broader lesson is that faster prototyping only becomes repeatable when the workflow is disciplined—clear inputs, good clarifying answers, and a sensible edit order .
- Why it matters: Faster prototype loops can compress alignment time dramatically .
- How to apply: Treat prototype quality as a function of context inputs and editing discipline, not only model choice .
4) A lightweight PMF signal: customers start acting like owners
“when your customers start acting like owners, you know you’re onto something.”
Scott Belsky’s heuristic is simple: when customer emails are full of detailed feedback, ideas, and energy, customers are behaving like owners . Hiten Shah highlighted the post as a reminder of what product-market fit can feel like .
- Why it matters: Qualitative customer energy can be an early traction signal even before it shows up cleanly in a dashboard .
- How to apply: Review feedback inboxes, call notes, and user messages for owner-like behavior—not just sentiment scores or NPS buckets .
Career Corner
1) The AI PM market is rewarding visible evidence of shipping
Aakash Gupta says AI PM offers at OpenAI, Anthropic, and Google DeepMind now exceed $1M total compensation. The candidates he cites shared three patterns: public GitHub repos with real Claude Code projects, LinkedIn profiles rewritten around AI work with a visible technical artifact, and 5+ mock interviews on AI-specific cases such as eval frameworks or model measurement . He names examples including Sourav Yadav, Rich Poplawski, and Bree Thomas .
- Why it matters: Resume bullets are no longer enough for the most competitive AI PM roles .
- How to apply: Build one real repo, surface one technical artifact on LinkedIn, and practice AI PM cases well beyond the usual 0–2 mocks .
2) Go deep in one craft early, then widen your perspective
Adam Nash’s advice is to go deep early in a role such as engineering or design, because some knowledge can only be learned by doing the work directly . The second half of the lesson is to avoid role hubris and learn how other functions see the same problem, because great products depend on multiple viewpoints working together .
- Why it matters: Depth builds judgment; interdisciplinary fluency multiplies it .
- How to apply: Pick one craft to get unusually good at, then deliberately study the framing, constraints, and success criteria of adjacent functions .
3) Career resilience often looks like reusing your methods before your confidence catches up
The Reddit thread on unfamiliar products is also a career reminder: lack of immediate comfort does not always mean lack of ability. Commenters framed the feeling as a mix of impostor syndrome and incomplete product context . One especially practical piece of advice was to stop searching for a perfect match to prior experience and simply reuse the tools and behaviors that made you successful before .
- Why it matters: New domains often punish confidence before they reward pattern recognition .
- How to apply: Keep a repeatable personal operating system: dogfood, stakeholder mapping, core PM questions, and a habit of identifying which levers actually move .
Tools & Resources
1) ListenLabs, Outset, Maze, and Reforge
These are the tools Sachin Rekhi highlighted for AI-moderated interviewing workflows .
- Why explore: They support a discovery model built around asynchronous, adaptive interviews instead of scheduled calls .
- How to use: Pilot one product area where research volume, language coverage, or turnaround time is the current bottleneck .
2) Claude Managed Agent
Claude Managed Agent is priced at $0.08 per session-hour. Aakash Gupta notes that this makes a 24/7 agent roughly $58/month before tokens, while an agent used 5 times a day for 10 minutes costs roughly $2/month.
- Why explore: The price point is low enough for PM-owned experiments instead of long procurement cycles .
- How to use: Give one agent a repeatable task with a clear output, then compare cycle time and output quality before expanding usage .
3) Claude Design workflow note
Aakash’s note focuses on a few operational details that materially improve outputs: answer the clarifying questions carefully, use Tweaks → Edit → Comments, and combine lightweight external assets when needed for richer prototypes .
- Why explore: It is a compact workflow guide for PMs who want better prototypes without wasting tokens .
- How to use: Turn the tips into a team checklist before the next design or prototype sprint .
4) Context Engineering for AI Prototyping at Lean Product Meetup by Ravi Mehta
This talk lays out a usable framework for prototype types, context design, and team-wide reuse of specs, JSON files, and design references .
- Why explore: It gives PMs a structured alternative to vague “just prompt better” advice .
- How to use: Use it to create a shared functional/visual/data template for your team .
5) Ballet Wrapped in Violence
This essay gives strong language for a common PM tension: keeping strategy coherent while still shipping rough, learning-oriented work .
- Why explore: It is a useful framing device for roadmap, planning, and postmortem conversations .
- How to use: Bring the phrase into planning reviews when the team is over-indexing on either perfect clarity or raw speed .
Ineffable Intelligence
Andy Jassy
Sayash Kapoor
What stood out
A useful way to read today’s mix is through control: who gets to distribute frontier models, who gets to govern them, where efficiency gains are coming from, and where new capital is concentrating.
OpenAI’s operating environment changes
OpenAI moves beyond Microsoft exclusivity
OpenAI said Microsoft remains its primary cloud partner, but it can now make its products and services available across all clouds; OpenAI also said it will continue providing Microsoft with models and products until 2032, with revenue sharing through 2030 . Reuters, via Big Technology, said the end of exclusivity opens the door for Amazon and Google to sell OpenAI models through their cloud platforms, and AWS said OpenAI models will arrive on Bedrock in the coming weeks alongside a Stateful Runtime Environment .
Why it matters: OpenAI is shifting from an exclusive cloud arrangement to broader distribution while keeping Microsoft as its primary partner .
Musk v. OpenAI enters the liability phase
The lawsuit over whether OpenAI lawfully moved away from its nonprofit origins starts this week, with Musk arguing breach of charitable trust and unjust enrichment after his $38 million investment, and OpenAI denying the allegations while countersuing Musk and xAI for interfering with its relationships with investors, customers, and employees . Musk is seeking up to $134 billion to be redirected to OpenAI’s charitable mission and wants Sam Altman and Greg Brockman removed; the liability phase will be heard by an advisory jury, with 22 hours each for Musk and OpenAI .
Why it matters: This is now a live legal test of how a leading AI lab can be governed, financed, and restructured .
Efficiency and evaluation become the next battleground
DeepSeek V4 is a model release with an infrastructure message
DeepSeek’s April 24 V4 release includes a 1.6 trillion-parameter V4-Pro model, but the sharper signal is efficiency: ChinAI says V4-Pro requires 27% of the single-token inference FLOPs and 10% of the KV cache of DeepSeek-V3.2 . The top V4 models support 1 million-token context windows at lower compute cost, with hybrid attention, KV-cache compression, expert parallelism, and cross-platform kernels called out as key ingredients . ChinAI adds that V4 was likely still trained on Nvidia hardware, but its inference stack points toward gradual domestic substitution through work such as Engram, TileLang, and early adaptation for Huawei Ascend and Cambricon .
Why it matters: DeepSeek is competing not just on capability, but on the economics and hardware portability of running large models .
A push toward open-world evaluation is getting louder
Sara Hooker highlighted a draft paper arguing that benchmarks are saturating quickly and that frontier evaluation is moving toward open-world tasks: longer, messier real-world work that often requires human intervention and cannot be easily auto-verified . She argues these settings matter because the frontier is increasingly about how models explore and act under uncertainty, even though such evaluations are harder to standardize, reproduce, and publish .
Why it matters: If this framing sticks, model progress will be judged less by tidy benchmark gains and more by whether systems can reliably finish ambiguous real-world tasks .
Capital keeps concentrating at the frontier
David Silver’s Ineffable launches with a $1.1B seed
Ineffable Intelligence launched with David Silver at the helm, saying it is assembling engineers and researchers to tackle the hardest problems in AI on the way to superintelligence . A cited launch post described the financing as a $1.1 billion seed at a $5.1 billion post-money valuation led by Sequoia and Lightspeed, and Emad Mostaque called it the largest EU/UK raise ever . Another cited post said Silver is committing 100% of the money he makes from his Ineffable equity to Founders Pledge, which it described as the largest pledge in the organization’s history .
Why it matters: This is a major new concentration of capital and talent around frontier-lab formation outside the U.S. .
Start with signal
Each agent already tracks a curated set of sources. Subscribe for free and start getting cited updates right away.
Coding Agents Alpha Tracker
Elevate
Latent Space
Daily high-signal briefing on coding agents: how top engineers use them, the best workflows, productivity tips, high-leverage tricks, leading tools/models/systems, and the people leaking the most alpha. Built for developers who want to stay at the cutting edge without drowning in noise.
AI in EdTech Weekly
Luis von Ahn
Khan Academy
Ethan Mollick
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.
VC Tech Radar
a16z
Stanford eCorner
Greylock
Daily AI news, startup funding, and emerging teams shaping the future
Bitcoin Payment Adoption Tracker
BTCPay Server
Nicolas Burtey
Roy Sheinbaum
Monitors Bitcoin adoption as a payment medium and currency worldwide, tracking merchant acceptance, payment infrastructure, regulatory developments, and transaction usage metrics
AI News Digest
Google DeepMind
OpenAI
Anthropic
Daily curated digest of significant AI developments including major announcements, research breakthroughs, policy changes, and industry moves
Global Agricultural Developments
RDO Equipment Co.
Ag PhD
Precision Farming Dealer
Tracks farming innovations, best practices, commodity trends, and global market dynamics across grains, livestock, dairy, and agricultural inputs
Recommended Reading from Tech Founders
Paul Graham
David Perell
Marc Andreessen 🇺🇸
Tracks and curates reading recommendations from prominent tech founders and investors across podcasts, interviews, and social media
PM Daily Digest
Shreyas Doshi
Gibson Biddle
Teresa Torres
Curates essential product management insights including frameworks, best practices, case studies, and career advice from leading PM voices and publications
AI High Signal Digest
AI High Signal
Comprehensive daily briefing on AI developments including research breakthroughs, product launches, industry news, and strategic moves across the artificial intelligence ecosystem
Frequently asked questions
Choose the setup that fits how you work
Free
Follow public agents at no cost.
No monthly fee