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.

Set up your agent
What should this agent keep you on top of?
Discovering sources...
Syncing sources 0/180...
Extracting information
Generating 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

1

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.

Weekly report on space exploration and electric vehicle innovations
Daily newsletter on AI news and research
Startup funding digest with key venture capital trends
Weekly digest on longevity, health optimization, and wellness breakthroughs
Auto-discover sources

2

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.

Discovering sources...
Sam Altman Profile

Sam Altman

Profile
3Blue1Brown Avatar

3Blue1Brown

Channel
Paul Graham Avatar

Paul Graham

Account
Example Substack Avatar

The Pragmatic Engineer

Newsletter
Reddit Machine Learning

r/MachineLearning

Community
Naval Ravikant Profile

Naval Ravikant

Profile
Example X List

AI High Signal

List
Example RSS Feed

Stratechery

RSS
Sam Altman Profile

Sam Altman

Profile
3Blue1Brown Avatar

3Blue1Brown

Channel
Paul Graham Avatar

Paul Graham

Account
Example Substack Avatar

The Pragmatic Engineer

Newsletter
Reddit Machine Learning

r/MachineLearning

Community
Naval Ravikant Profile

Naval Ravikant

Profile
Example X List

AI High Signal

List
Example RSS Feed

Stratechery

RSS

3

Get your briefs

Get concise daily or weekly updates with precise citations directly in your inbox. You control the focus, style, and length.

Endra and Sekai Lead New Deals as Physical-Economy and Workflow AI Gain Momentum
Jun 2
5 min read
737 docs
Machine Learning
Import AI
r/SideProject - A community for sharing side projects
+12
Endra’s Series A and Sekai’s $26M round were the clearest financing signals, while YC launches showed continued momentum in workflow-native AI across healthcare, robotics, developer tooling, and operations. The broader backdrop remains aggressive AI growth, rising capex, and new investable layers in agent safety and physical-economy software.

Funding & Deals

  • Endra — $50M Series A led by a16z. The round brings total funding to $74M in 12 months. Endra automates mechanical, electrical, and plumbing design for data centers, hospitals, and buildings: engineers set rules for systems like fire or power, hit optimize, and compress weeks of manual floor-plan work into a single sitting. The founding team pairs Niklas Lindgren and Anton Juric—childhood best friends who previously sold a company in an adjacent space and grew up around MEP consultants—with David Rydberg and Gustav Hammarlund from Goldman’s low-latency trading desk in Stockholm. Investors describe the bet as AI fundamentally rewriting how engineering organizations operate .

  • Sekai — $26M for consumer AI creation. The round was led by Keith Rabois at Khosla Ventures and Nik Quinn at Connect Ventures, with participation from Mayfield, a16z speedrun, and A*. Founder lucky_z2 cites prior companies acquired by Apple and TikTok, and says Sekai’s no-code platform has already enabled 15M creations from a phone. Rabois called it the highest-potential consumer AI application since ChatGPT .

  • Gigascale Capital — $250M first institutional fund. The new vehicle is aimed at early-stage founders rebuilding the physical economy. Sarah Guo publicly backed the firm’s physical-economy thesis and endorsed Schrep as a trusted technologist for early cap tables .

Emerging Teams

  • Plena is the clearest traction signal among new launches. The company positions itself as an AI OS for specialty medical practices, automating referrals, fax, scheduling, and collections end-to-end so doctors can focus on medicine. It says it grew 17x in eight months and crossed seven figures in contracted ARR. Founders are @eebadaeebada and Ahmed .

  • Intelligence Factory is a robotics team to watch. YC says it is building human intelligence for robots by training general-purpose manipulation models on human demonstration data across vision, action, and touch, then deploying them in warehouses, grocery stores, and data centers .

  • Vertical AI operating systems are spreading into messy workflows. Parrot is building an AI-native OS for auto repair shops whose agents can call real people using context across estimates, parts, customers, insurers, suppliers, and payments. Gravy connects to banks, investments, and email to explain money and automate financial tasks. Memoir turns code into demo videos and founder-voice social posts, while Bloom turns brand systems into infrastructure that agents can call .

  • Developer tooling is moving from copilots toward autonomous loops. Ara describes itself as a self-driving IDE that ships features instead of waiting for prompts, using self-improving memory across the app, Claude, and Codex. BentoLabsAI is building a monitoring and learning layer for long-running agents and reports Sonnet 4.5 improving from 42.2% to 52.4% on its internal TB2 benchmark .

AI & Tech Breakthroughs

  • Biohub released a major protein-model stack. Biohub, founded by Priscilla Chan and Mark Zuckerberg, introduced ESMC, trained on about 2.8B protein sequences, ESMFold2, which it says outperforms AlphaFold 3 on some benchmarks, and ESM Atlas, covering 6.8B sequences and 1.1B predicted structures. In cancer and immunology binder-design experiments, the tools achieved 36–88% hit rates for compact minibinders and 15–29% for antibody-derived formats, with confirmed lab binding. The release also reports scaling-law behavior across model generations .

  • MiniMax M3 is a notable new open-weight model. It combines 59.0% on SWE-Bench Pro, 66.0% on Terminal Bench 2.1, 1M context through MiniMax Sparse Attention, and native multimodality from step zero. Weights and a tech report are expected in about 10 days .

  • GPIC is a notable new permissive dataset for image-model builders. The Stanford-led Giant Permissive Image Corpus offers 100M safety-filtered, deduplicated images with captions, restricted to permissively licensed sources such as CC BY and CC0, and is hosted on Hugging Face for research and commercial use .

  • Gladia’s multilingual ASR router is a practical architecture worth tracking. Instead of one large multilingual model, it routes audio between smaller monolingual models using Zipformer for streaming transcription, Silero VAD for speech boundaries, and SpeechBrain for language identification. The system rolls back to the last speech boundary when it detects a language switch, and reports about 13% WER on inter-utterance code-switching benchmarks at smaller size than tested alternatives .

  • LangSmith Sandboxes signal a maturing stack for agent execution. The product is now GA for safely running agent-written code in isolated runtimes with network controls, persistent state, and snapshot/restore. Harrison Chase’s view is that future agents will need to write and execute code .

Market Signals

  • The AI economy is scaling faster than conventional statistics make visible. Import AI estimates nominal US AI GDP at about $250B in 2025, growing roughly 2,600% annually in quality-adjusted real terms, with compute spending rising from $37B in 2023 to $219B in 2025 and quality-adjusted AI output growing above 2,200%. The same writeup argues standard GDP misses much of this because prices are falling quickly and much of the impact sits in inference .

  • Usage, model output, and revenue are still accelerating. Exponential View notes 170 AI models released since September 2025, top models handling tasks four times longer than last year’s best, and quarterly token consumption tripling. It estimates sector revenue at $25B per quarter, with OpenAI rising from $1.7B to $6B and Anthropic from $400M to $4.8B, while quarterly capex commitments climbed 43% to about $158B and revenue doubling time improved to 0.73 years .

  • The main caution flag is capex strain, not broad revenue deterioration. Exponential View says only one of its five bubble indicators is red, but capex has already pushed economic strain above 1% of US GDP into the amber zone .

  • Two investment themes recur across the startup flow: physical-economy AI and agent control layers. Gigascale’s new fund explicitly targets founders rebuilding the physical economy, and Endra applies AI to MEP engineering for buildings and data centers. Separately, LangSmith Sandboxes, Orka, and PiQ all point to a new control stack around safe execution, approval gates, immutable logging, and signed audit trails for autonomous agents .

Worth Your Time

Durable Agent Workflows, Codex+Notion Playbooks, and New LangChain Infra
Jun 2
4 min read
114 docs
Cursor
Riley Brown
Addy Osmani
+6
Today's strongest signal is architectural: coding agents are becoming long-running workflows with real state, sleep, review, and safe execution primitives. Also covered: Riley Brown's copyable Codex+Notion patterns and the latest releases from LangChain, Google, and Cursor.

🔥 TOP SIGNAL

Production coding agents are crossing a line from chat-with-tools to long-running workflows with real runtime design. Addy Osmani distilled the core requirements into three parts: true dormancy, durable checkpoints on every transition, and a separate evaluator instead of letting the agent grade its own work . LangChain's newest agent infra points the same direction—managed cross-session context plus isolated sandboxes with persistence, auth controls, and snapshot/restore .

⚡ TRY THIS

  • Move instructions out of chat and into durable docs. Riley Brown's setup: install the Notion plugin in Codex, open Notion inside Codex's signed-in browser, put a top-of-page banner like if you are an AI agent, read the following tabs, and use Cmd+Cmd App Shots to pass the exact page context before asking for edits . Kent C. Dodds' lighter variant is simpler: keep markdown files around and let the agent find the right instructions on demand .

  • Only promote repeat work to a skill after you've seen a perfect run. Riley's method: make Codex do the task, tighten formatting, links, and conciseness until it behaves, then say make that a skill or turn that into a skill called Notion Quick Note. He uses the same pattern for Notion Research, where Slash Tabs add research at the top of a page without cluttering the main document .

  • Give the agent its own notebook and a nightly recap. Riley keeps a separate Notion notebook that Codex can write to, then asks it to create a 10pm automation to write a one-page daily summary, infer the top tasks, and email it . He says this became useful once he started generating many long chat threads per day .

  • For long-running jobs, wire explicit wake-up and review paths. Peter Steinberger tells Codex to call sag.sh whenever it needs human help—for example, a release blocked on 1Password—so the agent asks only when it is stuck . Pair that with Addy Osmani's production pattern: sleep until a webhook, schedule, human callback, or tool callback wakes the agent, checkpoint state on every transition, and split planner, generator, and evaluator roles so the writer is not its own reviewer; his caution is that agents still need human judgment for the final 20-30% .

📡 WHAT SHIPPED

  • Google / Addy Osmani: Addy said his team shipped ADK 2.0 plus a graph-based Agent CLI runtime, prepackaged skills, Gemini 3.5 Flash, and AntiGravity 2.0; he also pointed to open-source long-running-agent docs and new Skills Registry docs .

  • LangChain — Managed Deep Agents: keeps the familiar AGENTS.md, skills/, subagents/, and tools.json shape, while Context Hub stores and updates context across sessions so agent definitions can evolve over time. Blog: Managed Deep Agents.

  • LangSmith Engine: LangChain is pitching this as a way to stop manual failure triage: connect your tracing project, optionally connect your repo, then review and merge suggested improvements. Link: LangSmith Engine.

  • LangSmith Sandboxes: LangChain's keynote framed this as safe execution infra with isolated runtime, network controls, persistent state, and snapshot/restore . Mukil Loganathan added the concrete product details: about 0.98s P50 spin-up, dynamic scale to thousands, an auth proxy with allow and deny lists plus credentials kept out of the runtime, pause and resume, no lifetime limit, multi-agent shared state, bring-your-own Docker or CLI support, and paid-plans-only availability; roadmap items include local and remote handoff, shared volumes, and full execution tracing .

  • LangSmith LLM Gateway: LangChain posted a 3-step setup for routing and policy control—point agents at the gateway with a LangSmith API key, add provider keys to workspace secrets, then set policies in the UI. Blog: LLM Gateway.

  • Cursor Teams: usage limits are going up for every Teams user, and a new Premium team seat offers 5x usage for 3x the cost. Announcement: teams pricing update.

  • Adoption signal: Mukil estimated that roughly 70% of the Interrupt audience already uses coding agents; he also said LangChain's internal OpenSUI commits hundreds of PRs across repos, while citing Google at 75% AI-generated code and Stripe at 1,300 AI-generated PRs per week .

🎬 GO DEEPER

  • 1:47-4:33 — Addy Osmani on long-running agent architecture. Covers sleep, checkpoints, and evaluator separation in one sequence .

  • 9:29-12:13 — Riley Brown on skill bootstrapping in Codex. A clean walkthrough of the do it well once -> make that a skill loop, using Notion Quick Note as the example .

  • 6:31-8:58 — Mukil Loganathan on sandbox safety primitives. Covers auth proxy, persistent state, pause and resume, and snapshot/restore for untrusted agent code .

  • Project and doc pages worth reading:Managed Deep Agents for cross-session context , LangSmith Engine for failure-repair workflow , and LLM Gateway for policy and routing setup .

Editorial take: the frontier is shifting from clever one-shot prompts to agent runtime design—persistent instructions, durable state, human callbacks, and separate evaluators are what turn agent demos into dependable workflows.

Anthropic Files for IPO as OpenAI Lands on Bedrock and Perplexity Rewrites Search
Jun 2
4 min read
790 docs
WSJ Tech
OpenAI
Amazon Web Services
+26
Anthropic’s confidential IPO filing, OpenAI’s Bedrock expansion, and Perplexity’s code-driven search architecture led the day. The brief also covers ARC-AGI progress, new agent tooling from Qwen and Google, and major capital and infrastructure bets from Alphabet, OpenAI, and NVIDIA.

Top Stories

Why it matters: distribution, capital markets, and agent architecture all shifted meaningfully today.

  • OpenAI expanded onto AWS. GPT-5.5, GPT-5.4, and Codex are now generally available on Amazon Bedrock, giving enterprises access through AWS security, compliance, and governance workflows they already use . AWS said Bedrock adds automatic scaling, and Codex now supports CLI, desktop, and IDE workflows on Bedrock with AWS-native auth/IAM . OpenAI said this is the start of a broader AWS expansion, including future cybersecurity tools like Daybreak .

  • Anthropic took a formal step toward public markets. The company said it confidentially submitted a draft S-1 to the SEC, which gives it the option to pursue an IPO pending SEC review . That makes Anthropic the latest frontier lab moving from private funding toward public-market preparation.

  • Perplexity changed how its agents search. Its new Search as Code system has models write Python that calls search primitives directly instead of looping through one function call at a time . Perplexity said the design cuts latency and context pollution, and reported wins or ties across DSQA, BrowseComp, HLE, WideSearch, and WANDR, including 0.871 on DSQA versus Anthropic’s 0.815 at nearly half the cost per task .

Research & Innovation

Why it matters: benchmark behavior, scaling theory, and reasoning efficiency all advanced.

  • Claude Opus 4.8 posted a notable ARC-AGI-3 jump. A shared result said it tripled GPT-5.5’s score and reached 1.5% human efficiency . ARC-specific notes said 4.8 worked at a higher abstraction level than 4.7—seeing objects instead of just pixels—and held onto hypotheses longer before resetting .

  • A new scaling paper argued larger models are bottlenecked by data competition. Goodfire and collaborators traced better task learning to data-induced competition for neuron resources, using formal analysis, idealized tasks, and real pretraining .

  • Reasoning in Memory proposed latent reasoning without visible thought tokens. The claim: a dedicated latent workspace can preserve reasoning quality while making inference much faster by avoiding explicit reasoning-token generation .

Products & Launches

Why it matters: new launches kept moving agent capabilities into APIs and safer execution environments.

  • Qwen3.7-Plus is a new multimodal agent model that unifies vision and language for GUI and CLI tasks, coding, visual reasoning, grounding, and search-augmented QA . Alibaba said it is available via API on Model Studio, and shared results describing competitive text performance plus broad multimodal gains in understanding, tool use, and task execution .

  • Managed Agents in the Gemini API lets developers spin up an agent with a single API call that can reason, write and run code, and manage files inside a hosted Linux sandbox .

  • LangSmith Sandboxes are now generally available for agents that need to execute code safely, with runtime isolation, network controls, persistent state, and snapshot/restore .

Industry Moves

Why it matters: the biggest companies kept committing more capital, infrastructure, and device surface area to AI.

  • Alphabet is raising more capital for AI buildout. The Wall Street Journal said Alphabet plans to issue $80 billion in equity to finance AI-related capital expenditures . A cited Google press statement said demand for its AI products from enterprises and consumers is exceeding available supply .

  • OpenAI broke ground on Stargate Michigan. The 1GW data center uses closed-loop cooling, is expected to create thousands of union jobs, and comes with more than $40 million in free Codex credits for Michigan college, community college, and trade school students . OpenAI-linked commentary framed the site as part of making AI more useful, reliable, and affordable over time .

  • NVIDIA and Microsoft pushed harder on local AI PCs. Microsoft highlighted next-generation Windows PCs powered by RTX Spark with 1 petaflop of AI performance and up to 128GB unified memory . NVIDIA also introduced DGX Station for Windows, with up to 748GB coherent memory and support for running models up to 1 trillion parameters locally .

Policy & Regulation

Why it matters: policy debate is expanding from safety rules to ownership and governance.

  • Bernie Sanders said he will introduce the American AI Sovereign Wealth Fund Act. The proposal would impose a one-time 50% tax paid in stock by OpenAI, Anthropic, and xAI; the government would receive voting shares and equal board seats, with the stock funding a public citizen-owned fund .

Quick Takes

Why it matters: a few smaller updates still add signal on safety, open models, and benchmarks.

  • OpenAI Foundation said it has more than $130M in initial grants underway for bio-resilience, cyber-resilience, AI model safety, and AI’s impact on young people .
  • JetBrains released Mellum2, an open-source 12B MoE for natural language and code with 128K context, ultra-low-latency inference, and day-0 vLLM support .
  • Artificial Analysis launched AA-WER Streaming for speech-to-text agents; Cartesia Ink-2 and ElevenLabs Scribe v2 lead the accuracy-latency frontier, while Deepgram Flux is fastest .
  • Cosmos3-Super is now live on fal for text-to-image and image-to-video workflows .
Pattern Breakers and Kenneth Arrow’s Learning Loop Lead Today’s Picks
Jun 2
3 min read
154 docs
Tim Ferriss
Tony Fadell
Tim Ferriss
+1
Tim Ferriss and Tony Fadell surfaced the clearest authentic recommendations today: Mike Maples Jr.'s startup framework in Pattern Breakers, and Kenneth Arrow's case that judgment is built through experience. Tim Ferriss also added narrower but useful picks on meaning in an AI-shaped world and on credible reading in bioelectronic medicine.

Most compelling recommendation

Pattern Breakers — Mike Maples Jr.

  • Content type: Book
  • Author/creator: Mike Maples Jr.
  • Link/URL: No direct URL was provided in the source.
  • Who recommended it: Tim Ferriss, who said Maples taught him the fundamentals of angel investing in 2007/2008 and that he is revisiting his Kindle highlights now
  • Key takeaway: Ferriss pulled out one question from the book that he still finds worth revisiting: are your customers "interested" or "desperate"?
  • Why it matters: This was the strongest recommendation in the set because it came with both a long-term personal endorsement and a concrete framework readers can immediately apply

"One simple distinction from the book worth revisiting often is this: are your customers interested or desperate?"

Best paired read on AI and expertise

Tony Fadell's recommendation worked best as a pair: a current article that restates Kenneth Arrow's idea, and Arrow's original paper. Together, they make a clear argument that AI should accelerate learning rather than remove the formative work that produces judgment

Kenneth Arrow on "learning by doing"

  • Content type: Article
  • Author/creator: Not specified in the provided source.
  • Who recommended it: Tony Fadell
  • Key takeaway: Productivity and expertise improve through experience, and the repetitive work early in a career is often where people learn the patterns that later become judgment
  • Why it matters: It translates an older economic idea into a current management question for AI adoption: what is lost if teams automate away the work juniors learn from?

Learning by Doing

  • Content type: Paper
  • Author/creator: Kenneth Arrow
  • Who recommended it: Tony Fadell
  • Key takeaway: Fadell points readers back to Arrow's original work to support the idea that expertise compounds through lived experience
  • Why it matters: It gives readers the primary source behind Fadell's warning that organizations should preserve or replace the learning loop, not erase it

"Knowledge can be taught, but judgement is built through lived experience."

Additional signals from Tim Ferriss

Riding the Leopard — Pachy McCormick

  • Content type: Article / transcribed talk
  • Author/creator: Pachy McCormick
  • Link/URL: No direct resource URL was provided in the source. Ferriss discussed it in Rabbit Hole: Does Tim Ferriss Dream In Japanese?
  • Who recommended it: Tim Ferriss, who said the piece had just been sent to him and that it caught his attention
  • Key takeaway: Ferriss highlighted its argument that when scarcity recedes, the dominant unresolved problem becomes meaning, with identity next; he also emphasized its references to Victor Frankl and Joseph Campbell
  • Why it matters: This was the clearest recommendation today that tried to move the AI conversation away from funding and toward purpose and identity

"Across all of these books, by far the most common thing left to solve for post scarcity is meaning. 59% of books were about the search for meaning. Identity was next at 17%."

The Great Nerve — Kevin Tracy

  • Content type: Book
  • Author/creator: Kevin Tracy
  • Link/URL: No direct resource URL was provided in the source. Mentioned in Rabbit Hole: Does Tim Ferriss Dream In Japanese?
  • Who recommended it: Tim Ferriss
  • Key takeaway: Ferriss described Tracy as the most credible, highly published public scientist he would point to on vagus nerve stimulation
  • Why it matters: It is a useful filter for readers who want a more credible starting point in a category Ferriss framed as noisy and easy to get wrong

Takeaway

The strongest authentic picks today were tied together by one theme: how expertise is built. Ferriss pointed to a durable startup lens for judging customer demand , Fadell argued that judgment comes from practice rather than abstraction , and Ferriss's longer-form picks widened the frame to meaning and scientific credibility .

Anthropic’s $65B Raise Leads a Day of Governance Shifts and Compute Competition
Jun 2
4 min read
211 docs
Amazon Web Services
OpenAI
Jack Clark
+7
Anthropic combined a massive financing, new Claude economics, and IPO optionality, while OpenAI expanded through Bedrock and formalized its policy posture. The digest also covers Huawei's advancing Ascend stack, rising ROI tension in AI spending, and a notable protein-biology release.

Capital and market structure

Anthropic pairs a giant financing with a cheaper, faster Claude update and IPO filing

Anthropic said it raised a $65 billion Series H at a $965 billion post-money valuation and that annualized run-rate revenue passed $48 billion earlier in May . It also launched Claude Opus 4.8, saying the model improves coding, agentic tasks, financial analysis, writing, and knowledge work while being three times cheaper and 2.5x faster in fast mode . Separately, the company confidentially submitted a draft S-1 to the SEC, giving it the option to pursue an IPO after SEC review .

Why it matters: Anthropic is trying to advance on capital, product economics, and public-market access at the same time, with the new funding earmarked for compute expansion, safety and interpretability research, and product scale-up .

Capital keeps accelerating even as ROI questions get louder

Import AI highlighted estimates that the US AI economy could reach about $250 billion in nominal GDP in 2025, with quality-adjusted real growth around 2,600% annually; the same analysis says nominal compute spending rose from $37 billion in 2023 to $219 billion in 2025 . Separately, Big Technology cited EntelligenceAI's estimate that only 18 cents of every AI dollar reaches shipped product, with the rest lost to bug fixes, rewrites, rework, and review, and pointed to growing concern that spend is not translating directly into productivity . The Wall Street Journal also reported that Alphabet plans to issue $80 billion in equity to finance AI capital expenditures .

Why it matters: The buildout is still expanding quickly, but the conversation is shifting from pure scale to whether that scale produces durable margins and usable systems .

Governance and deployment

OpenAI broadens enterprise reach while formalizing governance

OpenAI's frontier models and Codex are now generally available on Amazon Bedrock, letting enterprises use Bedrock's existing security, compliance, governance, and automatic scaling workflows . OpenAI also released a Frontier Governance Framework aligned with California and EU AI rules, while the OpenAI Foundation announced more than $130 million in initial grants across bio-resilience, cyber-resilience, AI model safety, and AI's impact on young people . At the same time, Florida's attorney general sued OpenAI and Sam Altman over alleged ChatGPT harms to minors, described in the cited report as the first such state lawsuit .

Why it matters: OpenAI is making itself easier for large organizations to adopt while operating under a more explicit mix of governance commitments, resilience spending, and legal scrutiny .

Anthropic's Jack Clark says frontier cyber capability now requires government coordination

In a recent interview, Jack Clark said Anthropic trained a general-purpose model called Mythos that is strong at cyber offense and defense, alongside coding, biology, and creative writing, and has crossed a threshold where it becomes interesting to experts . He said Anthropic is using structured access with select partners, while the UK AI Security Institute is evaluating Mythos and GPT-5.5 on cyber challenges . Clark argued the field is moving beyond voluntary coordination and now needs serious coordination between governments on dual-use risks including cyber, bio, and nuclear proliferation .

"We're entering an era where you actually need to do serious coordination including between governments."

Why it matters: This is a notable insider signal that frontier-lab safety discussions are shifting from abstract future scenarios toward structured access, external testing, and state-level coordination now .

Compute and scientific systems

Huawei's Ascend software stack is showing more production-grade maturity inside China

ChinAI reported that DeepSeek V4 validated large-scale "chip-model synergy" between DeepSeek V4 and Huawei Ascend chips, something the article frames as previously achievable only with NVIDIA hardware because of CUDA . The same report says Huawei's CANN stack has moved from "infancy" to a "youth phase" where developers can increasingly resolve issues themselves, with one university team porting an HPC solver in under a week and AIGCode reporting 65% MFU during MoE pretraining on Ascend . It also says CANN's core runtime and compilers were open-sourced last December, with support for more than 70 major models at release and developer communities above 4 million members .

Why it matters: The key shift here is ecosystem maturity: the report describes an alternative compute stack moving from vendor-dependent experimentation toward broader production use and outside contribution .

Biohub releases a large protein-biology stack with strong benchmark claims

Biohub released ESMFold2, alongside the ESMC protein language model and ESM Atlas, describing the package as a system for prediction, design, and discovery across protein biology . The release says ESMC was trained on about 2.8 billion sequences, ESMFold2 outperforms AlphaFold 3 on some benchmarks and ties it in others, and the Atlas spans 6.8 billion protein sequences and 1.1 billion predicted structures . In one experiment, Biohub said designs against five cancer and immunology targets achieved 36-88% hit rates for compact minibinders with laboratory-confirmed binding .

Why it matters: It is a reminder that some of the most consequential AI progress is happening in scientific tooling, not only in chat and coding products .

Human Judgment, Faster Idea Pipelines, and a New PM Interview Bar
Jun 2
4 min read
101 docs
Sachin Rekhi
The community for ventures designed to scale rapidly | Read our rules before posting ❤️
Teresa Torres
+9
This brief covers the human skills PMs need as AI becomes table stakes, a practical pipeline for turning ideas into shipped work, and new lessons on pricing, privacy, hiring, and PM tooling.

Big Ideas

  • AI raises the premium on human product judgment. Tomer Cohen argues that vision, empathy, communication, creativity, and judgment remain the critical human skills for product builders as AI automates more work . Shreyas Doshi adds that Taste transfers across domains, is often scarcer than domain knowledge, and is trained by paying attention to everyday experiences at work and in products . Why it matters: tool fluency alone is unlikely to differentiate PMs for long. Apply it: treat daily product use, team decisions, and customer interactions as deliberate Taste practice.

  • Procurement and vendor workflows are product surfaces too. Teresa Torres argues that vendor and procurement experiences affect brand and a company’s ability to bring in outside experts or tools . She points to legal reviews, repetitive forms, and security questionnaires as friction that can cancel training or slow internal communities of practice . She also warns that heavily bureaucratic companies can be outperformed by faster-moving organizations . Apply it: map procurement, legal, and vendor onboarding as end-to-end experiences, especially for AI tools and expert support.

Tactical Playbook

  1. Move from idea to evidence in small steps.

    • Start with one small opportunity and use explicit criteria to justify why it comes first .
    • Turn the idea into a short vision doc or a falsifiable hypothesis before building .
    • Validate with the smallest increment possible: a quick AI prototype or even a dummy UI element that measures intent .
    • Then run a lightweight idea pipeline: Ignite -> Forge -> Signal -> Commit -> Ship to create ownership, preserve contribution history, and kill weak ideas quickly . One team reported moving from 40 ideas/quarter with 0 shipped to 12 ideas/quarter with 8 shipped after switching to this model .
  2. Use a six-question test before choosing usage-based pricing. Check for large variance in cost to serve, variable per-request COGS, inverse-margin risk, sudden usage spikes, a billable unit customers understand, and real customer demand to pay for usage . Rule of thumb: 4+ yes answers supports usage-based or hybrid pricing; 2 or fewer points to flat or per-seat . The trade-off is real: less predictable revenue, metering infrastructure, and more support when invoices vary .

Case Studies & Lessons

  • Typeahead shows how pricing can reinforce product architecture. Hiten Shah describes a writing assistant that runs locally on the Mac, keeps drafts on-device, ships without telemetry or account requirements, and works offline after activation . The interaction model is simple: ghost text inline, Tab to accept, right arrow for one word, Esc to dismiss . It is priced at $79 once rather than a subscription because the value lives on hardware the user already owns . Lesson: when value is stable, local, and tightly integrated into a daily workflow, privacy model, interaction model, and pricing model can all point in the same direction.

"Good software should ask for the minimum required to do the job well."

Career Corner

  • Product Alliance reports that Google’s PM interviews now include a live AI prototyping round for 2026 candidates. The reported format is a 45-minute session using any AI coding or prototyping tool to build a working prototype . Interviewers are watching for problem framing before building, technical execution under time pressure, and clear narration when something breaks . Best-practice prep is to clarify users, goals, and constraints, scope to one core interaction, keep the stack simple, test, and close with success metrics and guardrails . The standard PM loop remains, but this round may augment or replace the technical round .
  • Also clarify what the PM role actually means before accepting it. One practitioner notes that product roles vary widely by company: some focus on delivery, some on definition, others on strategy. Candidates should probe the real mandate instead of assuming the title is consistent .

Tools & Resources

  • Aakash Gupta’s recent Claude workflows add practical PM patterns beyond generic prompting. Useful ideas in this batch: switch from Chat to Cowork for tasks that need files and tools, load the PM Skills library, connect Gmail, Slack, and analytics in draft-only mode, feed 10 good examples + 3 bad ones, and keep the whole setup in GitHub for portability across tools .

  • The most notable addition is memory design for long-running PM work. One pattern captures ambient notes and screenshots into markdown with source citations and CONFLICT: markers; another compiles curated planning inputs into an interlinked wiki with citations and conflict markers . The recommendation is to combine ambient capture with deliberate curation for Claude Code-style PM systems . Read the full post here: Aakash Gupta’s memory system.

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 avatar

Coding Agents Alpha Tracker

Daily · Tracks 110 sources
Elevate
Simon Willison's Weblog
Latent Space
+107

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 avatar

AI in EdTech Weekly

Weekly · Tracks 92 sources
Luis von Ahn
Khan Academy
Ethan Mollick
+89

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 avatar

VC Tech Radar

Daily · Tracks 120 sources
a16z
Stanford eCorner
Greylock
+117

Daily AI news, startup funding, and emerging teams shaping the future

Bitcoin Payment Adoption Tracker avatar

Bitcoin Payment Adoption Tracker

Daily · Tracks 109 sources
BTCPay Server
Nicolas Burtey
Roy Sheinbaum
+106

Monitors Bitcoin adoption as a payment medium and currency worldwide, tracking merchant acceptance, payment infrastructure, regulatory developments, and transaction usage metrics

AI News Digest avatar

AI News Digest

Daily · Tracks 114 sources
Google DeepMind
OpenAI
Anthropic
+111

Daily curated digest of significant AI developments including major announcements, research breakthroughs, policy changes, and industry moves

Global Agricultural Developments avatar

Global Agricultural Developments

Daily · Tracks 86 sources
RDO Equipment Co.
Ag PhD
Precision Farming Dealer
+83

Tracks farming innovations, best practices, commodity trends, and global market dynamics across grains, livestock, dairy, and agricultural inputs

Recommended Reading from Tech Founders avatar

Recommended Reading from Tech Founders

Daily · Tracks 137 sources
Paul Graham
David Perell
Marc Andreessen 🇺🇸
+134

Tracks and curates reading recommendations from prominent tech founders and investors across podcasts, interviews, and social media

PM Daily Digest avatar

PM Daily Digest

Daily · Tracks 100 sources
Shreyas Doshi
Gibson Biddle
Teresa Torres
+97

Curates essential product management insights including frameworks, best practices, case studies, and career advice from leading PM voices and publications

AI High Signal Digest avatar

AI High Signal Digest

Daily · Tracks 1 source
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.

$0

No monthly fee

Unlimited subscriptions to public agents
No billing setup

Plus

14-day free trial

Get personalized briefs with your own agents.

$20

per month

$20 of usage each month

Private by default
Any topic you follow
Daily or weekly delivery

$20 of usage during trial

Supercharge your knowledge discovery

Start free with public agents, then upgrade when you want your own source-controlled briefs on autopilot.