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.
Riley Brown
Geoffrey Huntley
Logan Kilpatrick
🔥 TOP SIGNAL
Long-running coding agents are now the real unit of work—not one-shot chat completions. Geoffrey Huntley’s bar for an autonomous harness is whether you trust it enough to close the laptop and sleep; Cursor says its agent now works for hours or even days; and GitHub says those long-running, parallelized agentic sessions are why Copilot is tightening limits and pausing individual signups .
That pushes the practical frontier away from prompt cleverness and toward harness design: memory layers, async updates, searchable history, and cost-aware orchestration .
"The real test of harness isn't speed... It's whether you trust it enough to close your laptop, walk away and go to sleep."
🛠️ TOOLS & MODELS
- GitHub Copilot Individual plans: official reset driven by agentic compute. Changes include tighter usage limits, pausing new signups for individual plans, moving Claude Opus 4.7 to the $39/month Pro+ tier, dropping older Opus models, and shifting to token-based per-session and weekly limits. This affects Copilot CLI, cloud agent, code review, and IDE integrations .
- Claude Code pricing: Anthropic briefly appeared to move Claude Code off the $20 Pro plan and onto $100/$200 Max only, then restored the Pro checkbox while offering no clear official explanation. If you are standardizing team access, watch the pricing page closely .
- Codex + GPT Image 2 / new image model: Codex now defaults to a new image model and can call it like any other tool in its toolkit. Practitioners are using that for website starts, game assets, and agent-generated slides; access is available on Free, Go ($8), and Plus ($20) plans according to Alexander Embiricos, while Riley Brown says any ChatGPT account can access Codex .
- T3 Code: Theo’s angle is not “replace your harness,” but control-plane it. T3 Code is open source, lets you bring your existing Claude Code / Codex / OpenCode / Cursor credentials, run them in parallel across projects, and file GitHub PRs from the orchestrator .
- OpenClaw + Anthropic: signal is mixed but improved. Anthropic docs now say OpenClaw usage is allowed again, but Peter Steinberger says CLI support has still been weird in practice despite prior approval for CLI usage .
💡 WORKFLOWS & TRICKS
- Use autonomous loops like a production system, not autocomplete. Huntley’s RALPH pattern is simple: give the agent a context window, give it one singular goal, then let it autoregress toward that goal. His hackathon rule was literally “write prompt, set up agent, hands off,” and he pegs AFK Claude/Codex loop cost at about $10.42/hour at API pricing .
- Memory stack beats a giant system prompt. Jason Zhou’s recurring pattern across Claude Code, OpenCloud, and Hermes: keep hot memory always loaded, warm memory on-demand, skills as reusable task knowledge, searchable history, and an async/background process that updates memory so the main agent does not have to remember to do it .
- Default to one main agent. Use subagents surgically. Jason’s practical preference is one agent doing the work so you avoid context-passing failure modes; the strongest reason he gives for subagents is model-switching. The leaked Claude Design setup backs a similar pattern: do not let the main agent verify itself—fork a subagent for screenshot, layout, and JS validation in the background .
- Stop babying modern vibe-coding prompts. Logan Kilpatrick’s update: when you want 30 things, ask for 30 things in the first prompt. Pair that with context engineering and skills—use skills to bring domain and architecture context in, then let the model retrieve what it needs from the codebase instead of hand-pointing it to files .
- Generate options, then hand off to code. Theo’s workflow: prototype in Claude Design, ask for a varied set of options instead of repeated regenerations, export the dev-ready folder, then hand that package to Claude Code for implementation .
- Do not go fully agentic by default. Jason’s framing is the right sanity check: there is a spectrum from a single LLM call to workflow automation to full agents, and the more agentic you go, the slower and more expensive it gets. Pick the least-complex architecture that matches the job .
👤 PEOPLE TO WATCH
- Geoffrey Huntley: high-signal because he is speaking from actual autonomous coding harnesses—RALPH, Ouroboros, AFK cost math, and a clear success metric for unattended runs. He also says a roughly 20-person team is producing 30x the output from three years ago using agents .
- Jason Zhou: strong source today if you care about self-evolving agents. He cleanly separates harness-improvement loops from in-context learning, then shows concrete implementations across Claude Code, OpenCloud, Hermes, and leaked Claude Design prompt patterns .
- Logan Kilpatrick: worth tracking because his advice is grounded in real app-building workflow changes, not prompt folklore—ask bigger, rely on context retrieval, expect more custom tooling and forks, and keep updating your playbook every few months .
- Simon Willison: still the cleanest source on pricing and access volatility around coding agents. Today’s useful work: official Copilot pricing notes and calling out the lack of clear communication around Claude Code plan changes .
- Theo: worth watching for orchestration and handoff patterns, not just takes—T3 Code, Claude Design to Claude Code packaging, and simple prompt tricks that actually change output diversity .
🎬 WATCH & LISTEN
- 5:01-9:09 — Jason Zhou on the memory stack that makes agents improve instead of drift. If your current setup is just a bloated
CLAUDE.md, this clip explains the hot/warm/searchable-history/async-update pattern clearly and concretely .
- 11:56-13:59 — Logan Kilpatrick on why you should ask for “30 things” now. Best short reset on the last six months of vibe coding: the model can handle the full brief, and the real bottleneck is your willingness to specify it .
- 9:30-9:56 — Geoffrey Huntley on the only harness metric that matters. Tiny clip, strong litmus test for any autonomous coding setup: would you trust it enough to walk away? .
📊 PROJECTS & REPOS
- Huntley’s self-improving agent repo: roughly 300 lines and a couple thousand stars. The point is not polish; it is a small, understandable example of an agent iteratively improving itself so you can internalize the loop .
- T3 Code: open-source control plane for agentic development; bring your own harness and subscription, run multiple coding agents in parallel, easy to fork, and integrated with Git and GitHub workflows .
- Self-improving skills ecosystem: Jason calls out pskoett/self-improving-agent, ivangdavila/self-improving, and halthelobster/proactive-agent as hook-based ways to add memory and self-learning to OpenCloud or Claude Code. His tested pattern uses
user-prompt-submitand post-tool hooks plus learnings, errors, and feature files . - OpenClaw: still worth tracking as the open-source agent harness people keep trying to wire into Anthropic workflows. Adoption signal: Peter notes the project was “blowing up on Hacker News,” even as CLI policy stayed messy .
- Journey Chat: emerging tool from Matthew Berman for agent-to-agent group chat. Installation is simple—copy the install prompt from the homepage into OpenClaw, Hermes, or Claude Code, then join a shared room .
Editorial take: the edge today is not multi-agent theater; it is a trustworthy single-agent loop with good memory, selective verification, and economics you can live with.
martin_casado
clem 🤗
Machine Learning
1) Funding & Deals
- Bolto — $12M Series A. Bolto raised a $12M Series A led by Standard Capital with participation from Y Combinator, General Catalyst, and others. The company is building an AI-native HR platform that combines recruiting, payroll, HRIS, and global compliance; YC says jobs are posted into the platform, Bolto’s recruiters compete to fill them, and hires move directly into payroll and compliance workflows.
"Bringing recruiting, compliance and payroll into a single product is inevitable... we believe now is the right time for an AI-native approach."
- Founder-first underwriting signal. Jason Calacanis frames Joshua Sirota as a founder-first bet after a YC rejection; he says he is "a big buyer of stock" in Sirota and notes the founder later raised $12M at a $100M valuation with a16z.
2) Emerging Teams
Matforge. YC launched Matforge, founded by Advaith Sridhar and Akash Ramdas, to build AI scientists for semiconductor-material discovery. The pitch is to compress a search process that currently takes 10+ years of lab work.
Arzana AI. Arzana’s agents plug into email and ERP systems to automate order keying, quoting, and invoicing for American manufacturers. YC says customers are quoting 10x faster, reducing data-entry errors 70%, and saving millions annually.
Atlarix. Atlarix turns a codebase into a structured architecture graph—functions, APIs, services, and database calls—so AI can query the system with roughly 5K tokens instead of dumping 100K+ into context. The founder says v7 adds parallel agents and post-build verification, that the project won a prize at the Amazon Nova AI Hackathon, and that pilots are underway with companies in Kenya and abroad.
CockpitCopilot. Built by a Senior CSM, this Chrome extension takes Gong transcripts and generates Gainsight timeline entries, CTAs, milestones, tasks, risk flags with direct customer quotes, and follow-up emails. The founder says it cuts a 60-90 minute daily workflow to about 60 seconds.
3) AI & Tech Breakthroughs
Hugging Face’s ml-intern automates a post-training team loop. The open-source agent researches papers, walks citation graphs, pulls datasets, runs training in GPU sandboxes, and iterates on failures. In one scientific reasoning run it improved GPQA from 10% to 32% on Qwen3-1.7B in under 10 hours; in healthcare it generated 1,100 synthetic datapoints and beat Codex on HealthBench by 60%; in math it autonomously wrote a GRPO script, launched A100 training on HF Spaces, and ran ablations.
Two launches pushed agent and app security forward. Replit’s Security Agent combines static analysis with AI reasoning to review full codebases, act on custom threat models, resolve vulnerabilities in parallel, and cut false positives by 90%; Amjad Masad calls the wave of issues in AI-generated apps "one of the defining problems of the AI era." Brex’s open-source CrabTrap takes a different angle, intercepting every outbound agent request and using LLMs to block risky activity before it hits external APIs.
LlamaIndex ParseBench. LlamaIndex says ParseBench is the first benchmark for document OCR plus VLM chart understanding over enterprise documents. It uses 568 real-world pages with embedded charts and introduces ChartDataPointMatch to test whether models can extract actual datapoints from charts, not just captions or surrounding text.
On-prem medical reasoning is getting lighter. Chaperone-Thinking-LQ-1.0, a 4-bit GPTQ + QLoRA fine-tuned DeepSeek-R1-Distill-Qwen-32B, reports 84% on MedQA in about 20GB—small enough for a single L40/L40s GPU—while running 1.6x faster with roughly 43% lower median latency than the base model. The team says it built the model for enterprise healthcare customers with strict data-sovereignty requirements.
4) Market Signals
Private-market concentration now exceeds public SaaS on SaaStr’s measure. SaaStr says the top 10 private enterprise software companies total $1.93T in aggregate value versus $1.88T for the 115-company Sapphire Pure SaaS Index. If Anthropic’s secondary pricing is included, the private total moves past $2.5T; the same piece says those 10 companies already equal 30%+ of the full public software market, and that the three leading AI labs drove 73% of 2025’s unicorn value growth.
The AI operating model is diverging from classic SaaS. SaaStr’s checklist includes usage-based pricing, 200-400% ARR growth, 130-200% net dollar retention, $1M-$5M ARR per employee, and a willingness to stay private longer because secondaries can reprice companies quickly. The article points to Anthropic’s jump from a $380B primary valuation to an implied secondary valuation up to $1T two months later, alongside annualized revenue growth from $9B to $30B in four months and a reported 73% share of new enterprise AI spending in March.
Enterprise agent deployment still looks services-heavy. Aaron Levie argues companies need help modernizing legacy stacks, stitching together fragmented data, digitizing missing knowledge, and managing workflow change while still running the business. His conclusion: there is room for both new startups and existing services firms to deploy agents into specific domains, and vendor-led implementation models should stay durable.
Open-source AI is facing both political and economic pressure. Clement Delangue says there is renewed lobbying in DC and state legislatures to ban or severely restrict open source. He also argues that some labs are moving more closed because training costs are massive and releasing model weights offers limited upside, and that open-source AI will need monetization mechanisms such as revenue sharing to stay sustainable.
5) Worth Your Time
Macro:The Top 10 Private AI Companies Are Now Worth More Than Every Public SaaS Company Combined — the best single read here on private-market concentration, secondaries, and the emerging AI growth profile.
Benchmark:ParseBench blog / paper / site — useful if document parsing, chart extraction, or enterprise OCR sits in your diligence path.
Open-source research agent:ml-intern CLI / web app — the most concrete open-source example in this set of automating the post-training research loop.
Policy context:Hugging Face on cybersecurity and openness — pairs well with Delangue’s warning on renewed efforts to restrict open source.
Company materials:Bolto Series A announcement and Matforge’s YC launch page — primary source material on two of the more interesting early-stage teams in this set.
Amol Avasare
Jeremy Howard
vLLM
Top Stories
Why it matters: Today’s clearest signals were about who is setting the pace in multimodal quality, who controls the coding stack, and how quickly research workflows are becoming agentic.
OpenAI launched ChatGPT Images 2.0 and immediately moved to the top of Image Arena. OpenAI describes it as a state-of-the-art image model and its first image system with thinking capabilities, adding stronger instruction following, denser text rendering, multilingual output, sharper editing, richer layouts, flexible aspect ratios, and, when used with a thinking model, web search, multi-image generation, self-checking, and QR code creation . Arena ranked GPT-Image-2 #1 in text-to-image, single-image edit, and multi-image edit, including a record +242 lead in text-to-image . The practical shift is that image models are now being positioned for slides, diagrams, charts, and other production workflows—not just creative demos .
SpaceXAI and Cursor signed one of the year’s biggest coding-AI deals. SpaceX said it is partnering with Cursor to build “the world’s best coding and knowledge work AI,” combining Cursor’s distribution to expert software engineers with SpaceX’s million-H100-equivalent Colossus supercomputer . Cursor also granted SpaceX the right to acquire it later this year for $60 billion or pay $10 billion for the joint work . The structure pairs frontier-scale compute with one of the strongest developer products in the market.
Hugging Face open-sourced
ml-intern, an agent for post-training ML research. The system researches papers and citations, inspects datasets, launches training jobs, diagnoses failures, and retrains on the Hugging Face ecosystem . In examples, it pushed GPQA from 10% to 32% in under 10 hours on Qwen3-1.7B, beat Claude Code’s 22.99%, beat Codex on HealthBench by 60%, and wrote its own GRPO training script for competitive math . Open-source research agents are starting to look like usable ML tooling rather than demos.
Research & Innovation
Why it matters: The strongest technical work today focused on better agent coordination, smaller-model specialization, and clearer evidence of where current systems still fail.*
Stanford’s AgentFlow uses four specialized agents—Planner, Executor, Verifier, and Generator—coordinating through shared memory while optimizing the Planner live with Flow-GRPO . The team says its 7B system beats GPT-4o and larger models such as Llama-3.1-405B/GPT-4o across 10 benchmarks .
Sakana AI’s AC/DC coevolves a population of specialized models instead of scaling one monolith. Sakana says a collective of 8 small evolved models can outperform a 72B model with fewer total parameters, pointing to collective intelligence as a more parameter-efficient path .
A new document-editing study exposed a practical failure mode: across 19 LLMs, even frontier models corrupted about 25% of document content after 20 interactions, while the average model lost 50%. Repeated chat-based revision remains brittle.
Products & Launches
Why it matters: New products are becoming more agentic, more multimodal, and easier to plug into real workflows.
Google launched Deep Research and Deep Research Max via the Gemini API. The agents can navigate the web plus custom data, support arbitrary MCP connections, accept PDFs/CSVs/images/audio/video, and generate fully cited reports with native charts and infographics . Third-party summaries say Deep Research Max scored 85.9% on BrowseComp and costs roughly $2–$5 per report.
OpenAI released Euphony, an open-source viewer for chat data and Codex session logs. It turns raw logs into a browsable interface with translation, filtering, editing, and local-file or public-URL support .
vLLM redesigned recipes.vllm.ai so users can generate exact deployment commands for a given model and hardware setup, with Hugging Face-mirrored URLs, an interactive command builder, and a JSON API for agents .
Industry Moves
Why it matters: New labs and new capital are clustering around agent systems and automation-first companies.
- Core Automation launched with the goal of building systems that “optimize and automate work, starting with research itself” .
- NeoCognition launched with $40 million in seed funding to build self-learning agents specialized across domains, arguing that human expertise does not scale .
- Project Prometheus, Jeff Bezos’s “physical AI” startup, is reportedly raising $10 billion at a $38 billion valuation, targeting manufacturing and aerospace while recruiting from OpenAI and Google DeepMind .
Quick Takes
Why it matters: These are smaller updates, but each points to where adoption and competition are moving next.*
- Codex passed 4 million weekly users, up from over 3 million just two weeks earlier .
- Anthropic is testing removal of Claude Code from the Pro plan for about 2% of new prosumer signups; existing Pro and Max users are unaffected for now .
- Dreamina Seedance-2.0 is now #1 across all three Video Arenas, including Video Edit .
- Hugging Face CEO Clement Delangue said there is renewed lobbying in DC and state legislatures to ban or severely restrict open-source AI .
Climate One
John Doerr
What stood out
Today's best signal came from recommendations that explain structural change rather than merely comment on it. Marc Andreessen highlighted one older article about what happens when speech becomes nearly free and one newer essay about what becomes scarce as productivity rises; Brad Feld supplied a compact reading stack for thinking about AI more precisely; John Doerr resurfaced a film that directly shaped his climate agenda.
Most compelling recommendation
"In 1995 ... Eugene Volokh published 'Cheap Speech and What It Will Do'—the most prescient article ever written about the internet."
- Title:Cheap Speech and What It Will Do
- Content type: Article (1995)
- Author/creator: Eugene Volokh
- Link/URL: Direct article URL was not provided; recommendation thread: Hall Research on X
- Who recommended it: Andy Hall (@ahall_research); Marc Andreessen amplified the recommendation and added, "The new era is wildly better than the 20th Century."
- Key takeaway: When the cost of speaking falls to near zero, power shifts from intermediaries to speakers and listeners.
- Why it matters: Hall argued the piece anticipated Spotify, the Kindle, Substack, and filter bubbles, and that it recognized both the dark side of collapsing intermediaries and the larger upside of freer expression.
This was the clearest recommendation of the day because it paired strong conviction with a specific model for how the internet changes power.
Another strong framework on structural change
"This is obviously correct."
What Will Be Scarce
- Content type: Essay
- Author/creator: Alex Imas
- Link/URL:aleximas.substack.com/p/what-will-be-scarce
- Who recommended it: Marc Andreessen
- Key takeaway: As people get richer, they shift spending toward sectors with higher income elasticity; the cited Econometrica paper estimates income effects account for more than 75% of observed structural change.
- Why it matters: Imas's argument is that the sectors that get automated can become a smaller share of the economy, while labor and spending move toward relational sectors tied to status, exclusivity, and social desirability. That makes this useful for thinking about the post-commodity future of work.
A companion technical note is available for readers who want the formal model behind the essay.
Brad Feld's AI-futures reading stack
Feld's recommendations work best as a sequence: get the definitions straight, map the spectrum of reactions to AI, then use fiction to think through cascading consequences and surprise failure modes.
If Anyone Creates This Everyone Dies
- Content type: Book, as referred to by Feld
- Author/creator: Eliezer Yudkowsky
- Who recommended it: Brad Feld
- Key takeaway: Feld said people should read it to get one level deeper on what is meant by AI, how current tools differ from what is marketed as "super intelligence," and how that differs from older AGI language.
- Why it matters: He framed it as an entry point readers should use before jumping into AI-risk arguments.
Superagency
- Content type: Book
- Author/creator: Reed Hoffman
- Who recommended it: Brad Feld
- Key takeaway: Feld highlighted Hoffman's spectrum of AI attitudes, from enthusiastic "boomers" to "gloomers" or "doomers."
- Why it matters: Feld used it to frame the range of views on AI-driven change.
Seveneves
- Content type: Science fiction book
- Author/creator: Neal Stephenson
- Who recommended it: Brad Feld
- Key takeaway: Feld used the opening premise—the moon breaking into seven pieces—to illustrate how quickly first-order scenarios turn into cascading second-order consequences.
- Why it matters: He presented it as a useful way to think through compounding downstream effects after a major shock.
When the Moon Hits Your Eye
- Content type: Science fiction book
- Author/creator: John Scalzi
- Who recommended it: Brad Feld
- Key takeaway: Feld described it as a hilarious story in which the moon suddenly turns into cheese.
- Why it matters: He said he would recommend it to anybody who likes sci-fi.
A resource with long-term personal impact
An Inconvenient Truth
- Content type: Film
- Who recommended it: John Doerr, through a personal story about watching it with his daughter in 2006
- Key takeaway: The viewing became a lasting emotional catalyst after his daughter told him his generation had put younger people into this problem.
- Why it matters: Doerr connected that original reaction to a still-practical optimism about climate progress, arguing that after solar scaled 100-fold in the 20 years since the film came out, another 13x over the next 25 years is completely possible.
Bottom line
If you queue only one resource, start with Cheap Speech and What It Will Do. It had the strongest endorsement and the clearest explanatory payoff. Pair it with What Will Be Scarce if you want a current framework for where value and labor may move as automation advances. Use Feld's stack if your immediate need is sharper thinking about AI definitions, scenario analysis, and the range of reactions to technological change.
Product Growth
Aakash Gupta
The community for ventures designed to scale rapidly | Read our rules before posting ❤️
Big Ideas
1) Automate signal collection, but keep product thinking multiplayer
Aakash Gupta frames PM work as two intelligence layers: personal context before decisions and meetings, and the team’s systems that serve users . His examples show AI tools can keep both layers fresher through competitor checks, sentiment scans, pre-meeting briefs, and shared agents with audit trails . But The Beautiful Mess makes the counterpoint: if teams use AI to mass-produce PRDs and business cases without changing how they learn together, they get polished markdown without better judgment .
"More artifacts, same blind spots."
Why it matters: AI can surface signals and extend working context, but the leverage still comes from conversations where teams challenge assumptions, reshape principles, and build shared understanding .
How to apply:
- Automate recurring inputs such as competitor moves, user sentiment, and pre-meeting briefs .
- Bring those outputs into review sessions where people with different perspectives can reinterpret them together .
- Leave traces between sessions—context pointers, shared docs, evolving principles—so async work compounds instead of resetting each time .
2) Segment before you debate roadmap, pricing, or product quality
Shreyas Doshi’s point is blunt: many confusing business problems come from staring at averages that hide different stories . Flat retention can hide one cohort churning while another expands; a middling NPS can be fanatics and detractors canceling each other out . The same mistake shows up in roadmap and pricing: one backlog or one SKU spanning SMB founders, mid-market IT, and Fortune 500 procurement is trying to satisfy incompatible needs and willingness to pay .
"A good customer segmentation is worth a thousand strategy offsites."
Why it matters: segmentation changes the diagnosis. It can reveal that the issue is not the product in aggregate, but one segment, one workflow stage, or one price and packaging mismatch .
How to apply:
- Break retention, NPS, pricing, and packaging decisions out by segment instead of relying on portfolio averages .
- If one roadmap serves very different buyers, decide which segment you are actually building for .
- Test whether the real opportunity is segment-based or problem-based; one Reddit example found the problem appeared across multiple segments at a specific workflow stage .
3) Faster building raises the cost of drift
Across recent community discussions, the PM role is being reframed away from ticket management and toward discovery, strategic choices, and keeping teams aligned as engineers move faster with AI . Several practitioners describe doing less documentation and more coding, prototyping, and data analysis with Claude or ChatGPT . At the same time, commenters warn that this is not a case for no process; teams still need enough structure to ship consistently, even if cargo-cult ceremonies become less defensible .
Why it matters: if execution speeds up, teams can diverge faster too. One cited risk is scope drift: more chances for features to appear simply because the model suggested them or because nobody reset direction in time .
How to apply:
- Keep PM attention on which problem to solve, for whom, and which outcome matters .
- Use stories as placeholders for conversation, not as a substitute for alignment .
- When a prototype already exists, move quickly to MVP testing with a small group instead of defaulting to long research cycles .
Tactical Playbook
1) Set up a lightweight intelligence loop before Monday planning
Aakash shares a concrete starting point: a competitor pricing monitor that scans three pages every morning, compares them to yesterday’s Notion log, and posts only changes to Slack; he says it took about 20 minutes to set up . He pairs that with a weekly sentiment scan across Reddit, G2, and Product Hunt to surface consistent themes rather than loud anecdotes .
Why it matters: this turns scattered market noise into a repeatable signal stream before prioritization meetings .
How to apply:
- Choose the intelligence layer you want to improve first: personal context before decisions, or shared team context .
-
Match the tool to the job:
- Cowork Scheduled Tasks if the workflow needs local files on your machine .
- Claude Routines for cloud-based scheduled work like 7 AM competitor checks or Monday sentiment scans; Pro gets 5 runs/day and Max gets 15 .
- Managed Agents when multiple PMs need the same agent with separate sessions and audit trails .
- Log only deltas, not full dumps, so the team reviews what changed .
- Review the output in a live planning or review conversation rather than treating the summary as the decision itself .
2) Run a segment-and-usage review before changing roadmap or pricing
This combined framework is useful when the numbers feel wrong or a feature looks underloved but still important .
Why it matters: it helps separate four different problems: wrong segment, wrong solution, wrong packaging, or a low-frequency but still valuable use case .
How to apply:
- Split the data by segment: retention, NPS, usage, price sensitivity, and buyer type .
-
Classify each feature or product by adoption and frequency:
- Star: broad, frequent use
- Helicopter: few but frequent users; decide whether you can expand distribution or whether this is the ceiling
- Christmas Tree: many users but infrequent use; decide whether to keep, remove, or monetize through tiering or upgrades
- Turd: low adoption and low frequency; easiest to cut
- Ask whether the product is framed around the right audience or around the real underlying problem. One example found the need cut across multiple segments at a workflow stage, not one narrow segment .
- Check product fit separately from market size. In the same discussion, low usage came from poor problem-solution fit, with customers solving the need on competitor platforms instead .
- Before prioritizing work, distinguish buyer from user and ask whether the problem is blocking core value or just making the product “suck less” .
3) Use a campfires-trails-quests rhythm for AI-assisted execution
TBM’s collaboration model is a practical antidote to isolated prompting .
Why it matters: AI can sharpen prep and preserve context, but the leverage comes from alternating solo work with reconvening, not from replacing the reconvening .
How to apply:
- Use AI for individual prep so each participant arrives with synthesized context .
- Kick off and co-design together, then split for deeper research or implementation .
- Leave traces as you go: context pointers, shared docs, code comments, evolving principles .
- Pair prompt on thorny issues so different perspectives shape the search path in real time .
- Reconvene to update the team’s shared understanding, then iterate and release .
4) Validate quietly before you widen the blast radius
For early products—especially in sensitive domains—the strongest advice in the startup thread was to learn with a small target group before building hype .
Why it matters: you want proof of return usage, key actions, and basic privacy or security before broader promotion .
How to apply:
- Start with a small bug-finding round, then a beta, then a soft launch at MMP; one suggested sequence was 10 users, then 40, then soft launch .
- Watch concrete success signals such as users coming back and taking the actions you care about .
- Ask for feedback from the target community, not a broad audience .
- If the product handles sensitive data, run a two-account test on separate devices to confirm one account cannot read another account’s data .
- Prefer a quiet launch to a community close to the problem over early hype .
Case Studies & Lessons
1) TellMe Networks used a custom segmentation model to change its trajectory
At TellMe Networks, David Weiden built a “Rifle” framework to score financial-services prospects on five weighted criteria, including disqualifiers such as buying-cycle timing and carrier compatibility . The whole company aligned on the scoring, sales stopped chasing poor-fit accounts, product stopped building for customers who would never close, and marketing stopped spraying the market . Over two years, the approach reportedly drove $20M in ARR inside the qualified segment and took the business from a loss to a profit .
Key takeaway: good segmentation is not just an analytics exercise; it can realign product, sales, and marketing around the same market truth .
2) Managed agents can move from individual productivity to team throughput
In Aakash Gupta’s writeup, Managed Agents are positioned for cases where more than one PM needs the same agent, each with a separate session and audit trail . He cites Asana, Notion, Rakuten, and Sentry as already running them in production, and says Rakuten moved from quarterly releases to biweekly .
Key takeaway: the interesting step is not just a personal assistant, but shared automation with auditable usage and team-wide access .
3) A bigger opportunity thesis did not erase poor fit
One Reddit discussion started with a product that was treated as low priority because it served a small segment and consistently underperformed . On closer inspection, the underlying problem showed up across multiple segments at a certain workflow stage, suggesting a larger opportunity than the original framing implied . But another commenter surfaced the harder truth: low usage still came from poor problem-solution fit, and customers were handling the job on competitor platforms instead .
Key takeaway: reframing the market can expand the opportunity, but it does not remove the need to solve the problem better than the alternatives .
Career Corner
1) The PM work least defended right now is ceremony-heavy administration
Several community comments draw the line between PMs who mainly run ceremonies, story points, and backlog grooming, and PMs who discover directions to increase business outcomes . Another commenter adds nuance: teams still need ceremonies and process to ship consistently, but the real differentiator remains discovery and the strategic decision of what problem to solve for whom .
Why it matters: AI may absorb more coordination and drafting work, but it does not remove the need for product judgment .
How to apply:
- Keep your center of gravity in discovery and direction-setting .
- Use stories to trigger conversations, not to replace them .
- Stay willing to reject features that appear because the model suggested them rather than because the product needs them .
2) Prototyping fluency is becoming table stakes in day-to-day PM work
Practitioners report a stronger emphasis on building mocks and prototypes with Claude, easier analysis by connecting Tableau or Looker data to Claude or ChatGPT, and a shift from writing docs toward coding and prototyping . One commenter argues that if you already have a prototype, it can be better to build a small MVP and test it than to repeat drawn-out discovery by default .
Why it matters: the operating rhythm is shifting from document-first to artifact-first in at least some teams .
How to apply:
- Use AI tools to get to a concrete mock or MVP faster .
- Then validate with a small audience instead of assuming the prototype proves the value .
3) AI-adjacent interview loops are starting to probe building and platform thinking
In one reported Uber PM interview for an ML infrastructure team supporting AI work, most questions focused on agents: how to use them, scale them, and build platforms that support hundreds of ML engineers . The candidate says a live demo of a working agent-related prototype during a JAM session helped them advance to the next round . The loop also included a Product Vision & Impact round, system design, and product sense .
Why it matters: at least in some AI-heavy roles, candidates may be evaluated on more than roadmap thinking; they may need to discuss working artifacts, platform constraints, and scaling questions .
How to apply:
- If you are targeting AI-platform roles, prepare to talk about agents operationally: usage, scaling, and developer support .
- Be ready to show or discuss something you have actually built, not just a concept deck .
Tools & Resources
1) Anthropic’s automation stack for PM workflows
Aakash Gupta’s Inside Anthropic’s New Automation Layer is the most practical resource in this batch. It covers seven PM workflows, with prompts, connector setup, failure modes, an engineer handoff brief, and a security doc . The underlying tool split is clear:
- Cowork Scheduled Tasks for work that needs local files
- Claude Routines for cloud-scheduled competitor checks, sentiment scans, and pre-meeting briefs
- Managed Agents for shared, auditable team workflows
Worth exploring if: you want to automate recurring PM intelligence rather than just ad hoc prompting .
2) TBM 418: Campfires, Trails, and Quests for collaborative AI practice
This piece is useful because it turns a vague idea—AI should help teams collaborate—into concrete patterns: Dotwork for pressure-testing guiding principles, context pointers in the codebase, pair prompting across technical and customer perspectives, and a rhythm of trails, quests, and campfires .
Worth exploring if: your team is getting more AI output but not better shared understanding .
3) Three reusable prioritization templates from the community
You can borrow three lightweight templates directly from this week’s material:
- Custom customer segments instead of default demographics, including AI-assisted segmentation
- Rifle-style weighted scoring with explicit disqualifiers for prospect qualification
- Usage quadrants: Star, Helicopter, Christmas Tree, and Turd for deciding whether to scale, monetize, maintain, or cut
Worth exploring if: your topline numbers are hiding mixed segment behavior or your feature set has become a bag of unrelated use cases .
4) A quiet-launch checklist for sensitive products
The startup discussion offers a compact release checklist: small bug round, beta, soft launch at MMP, explicit success signals, direct community feedback, and a two-account privacy test before wider exposure .
Worth exploring if: you are launching into a niche or high-trust market where one data leak or broken workflow can end the product early .
Thomas Wolf
Greg Brockman
Fei-Fei Li
OpenAI pushes image generation further into real work
ChatGPT Images 2.0 arrives with stronger text, layout, and reasoning
OpenAI launched ChatGPT Images 2.0 as a state-of-the-art image model for complex visual tasks, emphasizing sharper editing, richer layouts, and thinking-level intelligence . The company says it can handle small text, UI elements, dense compositions, non-English text, flexible aspect ratios, and outputs up to 2K resolution; when used with a thinking model, it can also search the web, generate multiple distinct images, double-check outputs, and create functional QR codes .
It is available starting today to all ChatGPT and Codex users, with thinking features for Plus, Pro, and Business users, and the underlying gpt-image-2 model is available in the API . Greg Brockman highlighted applications in education, slides, marketing materials, and diagrams for code documentation .
Why it matters: OpenAI is framing image generation less as a novelty and more as a tool for design, documentation, and communication work .
Coding AI is starting to look like an infrastructure business
SpaceX and Cursor sign an unusually large option-style deal
SpaceX said it is working closely with Cursor to build a coding and knowledge-work AI system, combining Cursor's distribution with its million H100-equivalent Colossus training supercomputer . The agreement gives SpaceX the right to acquire Cursor later this year for $60 billion, or pay $10 billion for the collaboration instead .
Separately, Sam Altman said Codex reached 4 million active users less than two weeks after hitting 3 million, and OpenAI would reset rate limits amid demand .
Why it matters: The coding-assistant market is showing both strategic value and real usage pressure, with large compute partnerships on one side and fast-rising user demand on the other .
Research agents keep getting more production-oriented
Google expands Deep Research in the Gemini API
Google launched Deep Research and Deep Research Max, autonomous research agents powered by Gemini 3.1 Pro that can navigate the web and custom data to create fully cited reports . The update adds better quality, MCP support, and native chart and infographic generation; Google says standard Deep Research is tuned for speed and efficiency, while Max uses more test-time compute for deeper context gathering and synthesis .
Google also highlighted planning mode, full tool support, multimodal inputs, real-time progress streaming, and availability through the Gemini API .
Why it matters: Research agents are being packaged more like configurable products for enterprise workflows, not just web-summarization demos .
Hugging Face open-sources an agent for post-training research
Hugging Face released ml-intern, an open-source agent that researches papers and citation graphs, pulls datasets, runs training in GPU sandboxes, and iterates on model improvement across the HF ecosystem . In examples shared by the team, it raised a Qwen3-1.7B model from 10% to 32% on GPQA in under 10 hours, beat Claude Code's cited 22.99% result on the same prompt, generated 1,100 synthetic healthcare examples and beat Codex by 60% on HealthBench, and wrote plus iterated on a GRPO training script for competitive math .
The tool is available as both a CLI and web/mobile app, and Hugging Face leaders framed the broader platform as a place for agents to use and build AI rather than just call APIs .
Why it matters: This is an open-source attempt to automate part of the model-improvement loop itself, not only downstream agent tasks .
A notable policy signal came from education
China rolls AI into teacher training and school curricula
A recently rolled-out national AI+Education action plan from China's Ministry of Education aims to weave AI into every stage of teaching and learning, before, during, and after class . The plan's stated goal is to establish by 2030 a comprehensive AI education system spanning all levels of schooling and the broader public .
Reported implementation details include AI literacy requirements for teachers, AI content added to national teacher qualification exams, tiered training programs by subject, at least eight study hours per year for primary and secondary students in some regions, and a national smart education platform with more than 1,000 AI courses . The same reporting says teachers are increasingly being recast as learning designers and ethical guides, with AI expected to reduce time spent on standardized tasks such as question generation, grading, and student analysis .
Why it matters: This is a national-scale effort to normalize AI literacy and AI-assisted teaching, not a small pilot or a single curriculum update .
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