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.
The community for ventures designed to scale rapidly | Read our rules before posting ❤️
Yann LeCun
Yann LeCun
Funding & Deals
Agave — $15M Series A. Agave is bringing AI to construction's back office, automating invoice processing, job costing, and financial reconciliation across disconnected systems. The company says it has 500+ customers, nearly $100B of construction volume on platform, two years of profitability, and revenue that nearly tripled year over year.
Surtr Defense — $4.8M seed. Surtr combines sensors, radars, and effectors into one interface and can automatically cue a response to incoming threats. YC says the system was tested in Ukraine and detected and tracked FPV drones with under 100ms latency.
Oratomic — Khosla's largest initial investment to date. Vinod Khosla says Khosla Ventures made its largest initial investment yet into Oratomic after evaluating a dozen quantum startups over a decade. The target is a fault-tolerant quantum computer capable of solving Shor's algorithm and supporting useful applications.
Emerging Teams
Ami Labs. LeCun described Ami Labs as a France-based global company centered on world models. The company draws on the FAIR Paris talent pipeline and a team already spread across Paris, New York, Montreal, and Singapore; it is hiring researchers and engineers and expects industrial collaborations around JEPA/world-model applications. Its investor base is roughly 40% European, 33% U.S. including Jeff Bezos and Greycroft, and 27% Asian.
Perfectvector. Two former image-model researchers with PhD/MS backgrounds say they have spent six months full-time building a model from scratch that turns PNG or JPG inputs into editable SVGs. They claim roughly 70% fewer nodes than standard tracers on their test set, and the product is free for now because GPU costs are high and the team wants feedback.
PromptShielder. PromptShielder masks names, emails, salaries, and IDs in the browser before text is sent to ChatGPT or Claude, then restores the originals locally on the way back. The founder frames it as a response to enterprise leakage risk after seeing HR staff paste sensitive termination letters into ChatGPT; the tool has no backend, logs, or stored prompts.
AI & Tech Breakthroughs
World models are being positioned as a post-LLM frontier. Ami Labs' approach is to learn predictive representations of the physical world via JEPA rather than reconstructing pixels or tokens. LeCun says the world-model stack uses SIGREG and pushes for statistical independence, not just decorrelation, inside joint-embedding methods.
Model-based vectorization may beat tracer cleanup for AI imagery. Perfectvector says classic tracers follow pixel boundaries, which makes anti-aliased AI renders hard to simplify cleanly, so the team stopped building on top of tracers and trained a model instead. The current target is illustrations, logos, stickers, and other flat-ish art rather than photos or painterly renders.
Deterministic AI analytics is emerging as a design pattern. One solo founder's analytics product lets users ask questions in plain English from a dashboard or through Claude/MCP, but the AI can only call the same deterministic reports the dashboard renders, and CI fails if the two ever diverge. The product is aimed at small SaaS teams that find Mixpanel or Amplitude expensive and want tighter data control.
Market Signals
Sovereign AI positioning is becoming a commercial wedge. LeCun says industry and governments want a frontier AI supplier that is neither American nor Chinese, which is part of why Ami Labs is headquartered in France.
This set again favors vertical AI with measurable workflow outcomes. Agave's Series A is tied to construction accounting automation, and the company says it already has 500+ customers, nearly $100B of construction volume on platform, two years of profitability, and revenue that nearly tripled year over year. Elizabeth Yin also highlighted pre-seed investor Pat Matthews as focused on AI-native business software.
Configurable AI layers are showing stronger usage than fixed feature roadmaps in at least one enterprise case. One startup says it stopped building standard enterprise features and instead let customer ops teams build their own tools inside the app with an LLM-based builder. It reports 90% activation on those custom tools with no training and 89% day-30 retention.
New startups are targeting AI's side effects, not just model output. Slopfix says clients arrive with 100k-line AI-generated codebases, so it commits to reduction targets and charges in proportion to code removed, while PromptShielder targets the opposite problem of employees sending sensitive documents to external LLMs despite company bans.
We get paid to delete code.
Worth Your Time
- LeCun on post-LLM world models — Primary-source discussion of JEPA, SIGREG, and Ami Labs' geopolitical positioning.
Perfectvector founder post — Technical explanation of why tracer-based cleanup failed and why the team trained a model instead.
Slopfix founder post — Founder essay on pricing refactors against code deletion in AI-generated codebases.
Khosla on Oratomic — Short statement of why Khosla Ventures made its largest initial quantum investment after reviewing the category for a decade.
Jukan @ ICML
John Nay
OpenAI
Top Stories
Why it matters: the biggest developments today were about who gets next-generation AI capabilities, and how quickly they are moving into products.
Meta launched Muse Image and previewed Muse Video, the first media generation models from Meta Superintelligence Labs. Muse Image is now available in the Meta AI app and web, plus Instagram Stories and WhatsApp in limited countries. Meta says the model can search the web for factual grounding, execute code for precise outputs like plots and QR codes, compose from multiple references, and use RL-driven self-refinement and test-time compute. Meta also built in Content Seal, a hidden provenance signal with a public verification tool. Muse Image ranked #2 in Image Arena, while Muse Video entered Video Arena at #3.
OpenAI said GPT-5.6 Sol, Terra, and Luna will launch publicly on Thursday, with preview access expanding globally now. OpenAI’s announcement was brief, but early-access users described Sol as a major improvement over GPT-5.5 for subagent orchestration, computer use, and coding workflows.
Research & Innovation
Why it matters: several notable advances focused on reliability, interpretability, and harder real-world evaluation—not just scale.
Goodfire introduced Block-Sparse Featurizers, an interpretability method that learns multidimensional subspaces instead of single directions. The company says BSFs explain DINOv3 and SDXL activations more faithfully and efficiently than SAEs, and that most concepts in vision models appear to be 2-4 dimensional.
Liquid AI open-sourced Antidoom, a method for removing the “doom loop” failure mode in reasoning models by fine-tuning the loop-start token rather than retraining from scratch. Reported doom-loop rates fell from 10.2% to 1.4% on an LFM2.5-2.6B checkpoint and from 22.9% to 1% on Qwen3.5-4B.
Epoch AI and METR launched MirrorCode, a benchmark for testing whether models can reimplement full real-world programs end-to-end without source access. Claude Opus 4.7 currently leads at a 56% solve rate.
Products & Launches
Why it matters: the most practical launches today made agents easier to deploy and speech tools easier to localize.
Google DeepMind added four new managed-agent capabilities to the Gemini API: background execution, remote MCP servers, custom function calling, and credential refresh across turns without resetting sandbox state.
Cohere released Cohere Transcribe Arabic under Apache 2.0, calling it its most accurate open-source Arabic ASR model. Cohere says it leads the Open Universal Arabic ASR leaderboard, handles code-switching and multiple dialects, and was preferred to Whisper in 96% of human tests.
GitHub opened the Copilot app to all Copilot plans, including free and student tiers.
Industry Moves
Why it matters: labs are pairing model progress with funding, hardware, and infrastructure bets.
Norm AI raised $120M at a $1.2B valuation to expand its full-stack legal AI approach. The company says clients representing more than $30T in assets use its software, and that its agents are increasingly used to supervise other AI agents in regulated environments.
NVIDIA unveiled Vera, a CPU architecture aimed at agentic AI workloads where single-threaded performance can bottleneck tool-use loops. NVIDIA says Vera delivers 50% higher IPC than Grace, and Perplexity reported faster coding workflows and sandbox startup in early tests.
Chinese AI labs are pushing deeper into custom silicon. Zhipu is exploring a custom chip as GLM demand strains compute supply, while DeepSeek is reportedly developing an inference chip with external partners.
Policy & Regulation
Why it matters: access to frontier models is increasingly becoming a geopolitical constraint, not just a commercial one.
- China’s Ministry of Commerce has discussed restricting overseas access to cutting-edge AI models, including unreleased systems and potentially open-weight models. Proposals reportedly include a tiered framework—basic models via filing, high-performance models via security review, and frontier models barred from public release or limited to domestic use—plus tougher penalties for AI tech leakage and limits on foreign capital in Chinese AI startups.
Quick Takes
Why it matters: smaller updates still sharpened the picture on model quality, access, and speed.
- Harvey LAB-AA, a 120-task private legal benchmark, shows frontier legal work is still far from solved: Claude Fable 5 leads at 14.2% all-pass.
- Claude Sonnet 5 debuted at #6 on Agent Arena, with its strongest signals in confirmed task success and praise vs. complaint.
- GLM 5.2 on Together AI reached #1 on Artificial Analysis for both output speed and latency.
- Anthropic expanded Claude for Open Source, offering 6 months of Claude Max 20x to maintainers and core contributors.
Logan Kilpatrick
Boris Cherny
Logan Kilpatrick
🔥 TOP SIGNAL
The best teams today are not just picking stronger models; they’re making engineering judgment legible inside the repo. At DoorDash, one successful tech lead wrote "50 plus" architectural principles into markdown files so the agent could reference them, and the team turned repetitive mobile setup/test flows into callable skills . Simon Willison hit the same pattern from the release side: he gave Claude Fable 5 the sqlite-utils 4.0 changelog + upgrade guide, had it write scratch scripts to exercise new features, and the run surfaced 4 blockers that became a 16-commit cleanup PR before release .
⚡ TRY THIS
- Run a pre-release audit with scratch scripts(Simon Willison). Before tagging a major version, ask the agent to diff from the last stable tag, read the changelog + upgrade guide, and write throwaway scripts that hit every new feature. Simon’s exact prompt:
review the changes on main since the last tagged 3.x release - I am about to ship them as sqlite-utils 4.0, a stable version that promises no backwards-incompatible fixes for a very long time.
review the changelog and upgrade guide, and write yourself scratch scripts to try out all of the new features in v4 - save those scripts but don't commit them
Fable 5 wrote 12 scripts, found 4 release blockers plus 10 more issues, and even produced a combined repro script; Simon also had the models draft the upgrade guide and release notes .
Create repo-native context packs, not Slack lore(DoorDash / Boris Cherny). Put the architecture rules senior engineers keep repeating into markdown files inside the repo; DoorDash says one lead wrote 50+ principles this way so the agent could reference them while coding. Then wrap annoying setup flows into reusable skills: its mobile team built skills for one-click simulator spin-up and targeted workflow tests so the agent can run them in the background instead of re-instrumenting everything manually .
Use git worktrees to parallelize one repo safely(DoorDash / Boris Cherny). Boris says he usually works from the terminal, opens multiple sessions against the same repo, and uses worktrees to avoid conflicts. Practical pattern: one task per worktree, one agent session per task, then merge or discard independently .
Split planner and executor to keep costs down(@ClaudeDevs + Peter Steinberger). One pattern in the wild: use Fable 5 as an "advisor" while a cheaper executor model does the actual tool-calling work; the example uses Sonnet 5, so most tokens stay billed at the lower executor rate. Steinberger’s extra twist is to ask Fable to make Codex the workhorse, and start from his codex-first SKILL.md.
📡 WHAT SHIPPED
sqlite-utils 4.0 — a strong public example of agent-assisted release hardening. Simon Willison says Claude Fable 5 wrote 12 repro scripts, found 4 blockers + 10 additional issues, and the fixes landed in PR #779; the project also shipped a detailed upgrade guide explicitly meant to be feedable to a coding agent .
GPT-5.6 / gpt-5.6-sol — Theo’s early practitioner read is strong: it’s becoming his "obvious default" for many tasks, is good at subagent orchestration, can run for long stretches without a
/goal, knows iOS dev well, and has far fewer rough edges than 5.5. His comparison is nuanced: not quite as "smart" as Fable, but "incredibly capable"; he separately callsgpt-5.6-sol"world leading in computer use" and says Hermes felt like a "night and day difference" once 5.6 came back .Kody auth upgrade via Cursor + Fable — Kent C. Dodds says one prompt to Cursor AI + Fable produced functional 2FA and passkey support in 2.5 hours. The resulting diff is public in PR #661.
Gemini API Managed Agents — Google added background tasks, remote MCP + function calling, network credential refresh, and free-tier access. Google says the goal is to reduce the cost, friction, and complexity of putting capable agents into production, and says thousands of customers are already using the API .
🎬 GO DEEPER
- 9:01–11:13 — the "mindset overhang" clip. Worth watching if your org is still stuck in tool debates: the argument here is that frontier harnesses are now good enough that the bigger differentiator is how leadership communicates usage and changes workflows. It also contains the strongest claim in the batch: some orgs are close to autonomously shipping almost every PR .
- 2:10–2:46 — Boris Cherny on parallel sessions + worktrees. Short, practical operator detail: terminal first, multiple concurrent sessions, git worktrees to prevent collisions on the same repo .
PR #779 — Study this if you want a concrete example of agent-found release blockers turning into a real cleanup sequence, not just a demo repo. Pair it with Simon’s upgrade guide to see how release docs can become machine-readable migration input .
Fable’s 12-script audit gist — Probably the most copyable artifact of the day if you want to steal Simon’s release-audit loop directly .
codex-first SKILL.md — A concrete artifact for advisor/executor routing. Useful if you want to formalize "expensive model plans, cheaper model executes" as a repeatable skill instead of an unwritten habit .
Editorial take: the durable edge today is not raw model IQ; it’s how much of your team’s judgment you can turn into files, skills, and prompts that an agent can actually execute against.
Aakash Gupta
The community for ventures designed to scale rapidly | Read our rules before posting ❤️
Scott Belsky
Big Ideas
AI is splitting the PM workforce more than role or seniority. In a survey of 5,920 tech workers, with PMs making up 46.9% of respondents, AI-identity stance was the strongest predictor of career optimism and willingness to recommend the field; 49% felt "amplified," while optimism fell sharply and burnout and layoff fear rose for destabilized or diminished workers . Why it matters: AI adoption is a people and management issue, not just a tooling rollout. Apply it: go deep on 2-3 AI tasks that measurably improve output, and watch for the "squeeze" if expectations rise faster than scope or pay . Leaders should invest in managers, turn productivity gains into relief, and watch design/research sentiment closely .
Product fundamentals still win: first-mile UX, core focus, and business metrics. Scott Belsky argues that onboarding, defaults, progressive disclosure, and time-to-value define the only part of the product every customer experiences, and found that removing non-core features increased use of the core product . Separately, SaaS product leaders should show how roadmap work moves ARPU, churn, sales conversion, and gross margin, while adoption metrics act as leading indicators . Apply it: audit the first 30 seconds of your product, trim features that splinter the message, and connect major initiatives to a revenue or retention mechanism.
Tactical Playbook
Build your first PM agent like a workflow, not a moonshot.
- If you repeat the same prompt every week, ask whether it should become an agent .
- Start at the cheapest tier first: built-in agents, then no-code tools like Zapier or n8n, then code frameworks or purpose-built apps .
- Define one trigger and one exact outcome; keep human review before external actions, and add a Slack alert for breakage .
- Test on real data five times, try to break it, log hours saved, and only add a second workflow after the first survives a week .
Protect strategic PM time by making "no" operational.
- Say no with evidence and clear reasoning so stakeholders can self-assess fit .
- Replace ad hoc support with artifacts: written summaries from ops/CS, FAQ docs, and roadmap decks they can deliver themselves .
- Keep direct customer calls for learning, not as the default response to every escalation .
- Expand leadership scope gradually—from sprint clarity to quarter-level outcomes—using tools like the Decision Stack, Now-Next-Later, and Opportunity Solution Tree . In loosely defined orgs, setting those boundaries is part of the job .
Case Studies & Lessons
Enterprise SaaS: stop shipping "standard" features nobody uses. One founder spent six months building bespoke dashboards and reporting for top prospects, only to see customers keep exporting to Excel . The team switched to an AI layer that let customer ops teams build tools inside the product; activation hit 90% without training and day-30 retention reached 89% . Takeaway: if every roadmap "yes" creates tech debt, you may be running a dev shop with a subscription model .
Marketplace growth: borrow distribution before you build it. Airbnb targeted people already looking for short-term sublets on Craigslist, made listing export one click instead of a 10-minute chore, and left subtle backlinks to Airbnb listings . Takeaway: early on, distribution can matter more than interface polish—especially when the traffic already has intent .
Career Corner
"I’m simultaneously having the most fun I’ve had as a product builder and also feeling the most uncertainty I’ve felt."
- That tension is widespread: PM sentiment clustered into energized (41%), conflicted (35%), disoriented (12%), and resentful (12%) groups based on AI emotions . Manager quality remains one of the biggest levers: highly effective managers are associated with roughly 65% higher job enjoyment, yet only 25.5% of tech workers rate theirs highly effective .
- How to respond: prioritize resilience to ambiguity, commercial awareness, and mentorship if you’re early-career; product still has no universal gold standard, so judgment remains context-dependent . Also watch for burnout masquerading as excellence, and avoid letting the job become your whole identity .
Tools & Resources
- For non-technical PM builders: frontend-only prototypes are fine for early validation; add backend and database layers once you need persistence, auth, or real integrations . Knowing the boundaries between frontend, backend, database, and APIs makes AI tools easier to direct and debug . When iterating on UI, reference structured data and specific components like shadcn/ui instead of vague design requests .
- For quick wins: NotebookLM, Claude, and Zapier are enough to launch a first agent and justify budget with measured time saved .
AI at Meta
Greg Brockman
OpenAI
Major launches set the tone
OpenAI puts GPT-5.6 Sol, Terra, and Luna on the calendar
OpenAI said GPT-5.6 Sol, along with Terra and Luna, will launch publicly on Thursday, while preview access is expanding globally now . Greg Brockman added a brief endorsement of Sol, writing, “Sol is rising. It’s a good model.”
Why it matters: This was the clearest near-term model release signal in today’s feed: a named public launch date paired with wider access .
Meta opens a broader media-generation stack with Muse
Meta introduced Muse Image and previewed Muse Video as the first media generation models from Meta Superintelligence Labs . Meta says Muse Image follows instructions closely, edits with precision, composes from multiple references, and can invoke tools, self-refine, search the web for grounding, and execute code for details like plots and QR codes; it is available in the Meta AI app and web, Instagram Stories, and WhatsApp in limited countries . Muse Video shares the same pretraining base with native audio support, and Meta says generated images carry a hidden Content Seal provenance signal that survives cropping, compression, and resizing .
Why it matters: Meta is tying generation, tool use, distribution, and provenance together in one consumer-facing rollout rather than treating them as separate features .
The agent stack gets more concrete
NVIDIA argues CPU design is becoming an agent bottleneck
NVIDIA launched Vera as a “max single-threaded CPU at scale” for the agentic AI era, arguing that tool calling, code execution, data processing, KV-cache work, and result analysis keep CPUs on the critical path of agent loops . It says Vera’s Olympus core delivers 50% higher instructions per cycle than Grace and 1.8x sustained per-core performance versus x86 in loaded agentic workloads; partner results cited 1.5x faster coding workflows at Perplexity, 3x faster SQL analytics with Starburst, and up to 6x lower-latency streaming with Redpanda . Perplexity separately said it is already working with NVIDIA on the sandbox infrastructure behind Perplexity Computer and has seen significant improvements .
Why it matters: The infrastructure conversation is moving beyond training GPUs alone toward the systems that keep sequential agent loops moving under load .
Norm AI raises $120M to supervise agents in regulated environments
Norm AI said it raised a $120 million Series C at a $1.2 billion valuation, bringing total funding to more than $260 million in less than three years . The company says clients representing more than $30 trillion in assets under management use its software, and that its agents are increasingly being used to supervise other AI agents in regulated settings . Its affiliated AI-native law firm, Norm Law, runs on the same platform and prices work by outcomes rather than billable hours .
Why it matters: This is a concrete sign that agent deployment is expanding into compliance-heavy work where supervision is part of the core product .
Open ecosystems keep expanding
NVIDIA and Hugging Face deepen the open robotics workflow
NVIDIA and Hugging Face are bringing NVIDIA Isaac GR00T 1.7 and the Isaac Teleop framework into LeRobot, Hugging Face’s open-source robotics library, with NVIDIA Cosmos 3 planned next . NVIDIA says the integrations give developers a common path to collect and standardize data, train and fine-tune robot foundation models, evaluate performance, and deploy through open workflows . The broader package also includes a 350,000+ trajectory dataset, Isaac Sim and Isaac Lab tooling, and Jetson Thor support for deployment on open-source humanoid robots .
Why it matters: The announcement points to a more complete open robotics stack, where data collection, simulation, model adaptation, and deployment are being connected into one workflow .
Also notable
- Google expands Managed Agents in the Gemini API. The update adds background tasks, remote MCP and function calling, and network credential refresh, and it is now available on the free tier; Google says the goal is to reduce the cost, friction, and complexity of putting capable agents into production, and that thousands of customers are already using the API .
- DeepMind packages expert history models into a plain-English interface. The new Predicting the Past Skill in Google Antigravity grounds Gemini in Aeneas and Ithaca so historians can study Greek and Latin texts without coding, with three case studies showing the workflow .
Balaji Srinivasan
Shane Parrish
Chris Dixon
Most compelling recommendation
The strongest single signal today was Anthropic's A global workspace in language models. It stood out because the recommendation was unusually direct and the core claim was specific: Anthropic says only a tiny fraction of thoughts are consciously accessible in the brain, and found a similar divide inside Claude . Tobi Lutke amplified it with a simple verdict :
"astonishing"
- Title:A global workspace in language models
- Content type: Research paper/video
- Author/creator: AnthropicAI
- Link/URL:Anthropic X post
- Who recommended it: Tobi Lutke
- Key takeaway: The work compares conscious accessibility in human thought with a similar internal divide inside Claude
- Why it matters: It was the clearest current-technical recommendation in today's set, with both a concrete interpretability claim and a strong endorsement
Books people explicitly tied to major shifts in thinking
Godel, Escher, Bach
- Content type: Book
- Author/creator: Douglas Hofstadter
- Link/URL: Exact book URL was not provided in source notes; discussed in this interview
- Who recommended it: Chris Dixon
- Key takeaway: Dixon said it tied together computers, philosophy, and music, broadened his horizons, and helped lead him to major in philosophy
- Why it matters: This was one of the strongest "this changed my intellectual path" endorsements in the set
The 4-Hour Workweek
- Content type: Book
- Author/creator: Tim Ferriss
- Link/URL: Exact book URL was not provided in source notes; discussed in this interview
- Who recommended it: Rob Fraser
- Key takeaway: Fraser said he read or listened to it at a moment when he felt he was being pulled further down a path he did not want to stay on
- Why it matters: The recommendation was tied to a real career inflection point, not casual book-list name-dropping
Sapiens
- Content type: Book
- Author/creator: Not specified in source notes
- Link/URL: Exact book URL was not provided in source notes; discussed in this interview
- Who recommended it: Chris Dixon
- Key takeaway: Dixon called it a "really good book" and said he highly recommends it
- Why it matters: It was the clearest general-interest book recommendation in his cluster
Daniel Dennett, including Consciousness Explained
- Content type: Book/author cluster
- Author/creator: Daniel Dennett
- Link/URL: Exact URLs were not provided in source notes; discussed in this interview
- Who recommended it: Chris Dixon
- Key takeaway: Dixon recommended "anything" by Dennett and named Consciousness Explained specifically
- Why it matters: It was an explicit pointer toward philosophy-of-mind reading from someone whose own thinking was shaped by that lane
Two systems-level books on truth and record-keeping
The Gray Lady Woke
- Content type: Book
- Author/creator: Ashley Rinsberg
- Link/URL: Exact book URL was not provided in source notes; discussed in this interview
- Who recommended it: Balaji Srinivasan
- Key takeaway: Balaji said it belongs in his top five recommendations and described it as a book that goes through the New York Times archives while challenging the "paper of record" model and authority-based claims to truth
- Why it matters: It was recommended as a way to think about media power, institutional truth claims, and the shift from authority to claims people can check for themselves
The Truth Machine
- Content type: Book
- Author/creator: Michael J. Casey and Paul Vigna
- Link/URL: Exact book URL was not provided in source notes; discussed in this interview
- Who recommended it: Balaji Srinivasan
- Key takeaway: Balaji said it gives a pop-culture explanation of blockchain-style "ledger of record" concepts that many people still do not fully grasp
- Why it matters: It was positioned as an accessible entry point into how control over databases shapes what gets recorded, edited, and retrieved
Ongoing sources and media
Naval podcast on leverage
- Content type: Podcast
- Author/creator: Naval
- Link/URL: Exact show or episode URL was not provided in source notes; recommendation came in this interview
- Who recommended it: Ryan Hoover
- Key takeaway: Hoover pointed listeners to Naval's discussion of leverage while talking about building multiple parallel things that create money or impact without simply trading time for income
- Why it matters: The recommendation came with a concrete reason to listen: understanding leverage as a way to stop being paid purely for time
Stratechery
- Content type: Newsletter/blog
- Author/creator: Ben Thompson
- Link/URL: Exact URL was not provided in source notes; discussed in this interview
- Who recommended it: Chris Dixon
- Key takeaway: Dixon called Ben Thompson "incredibly brilliant" and singled out Stratechery by name
- Why it matters: It was one of the few ongoing written sources, not books, to get direct praise today
Pattern behind the day's best picks
Patrick O'Shaughnessy highlighted Jeremy Giffon's idea of the "billion dollar PDF": documents that crystallize an idea at exactly the right moment, set the narrative for an era, and then attract billions of dollars around them .
"Every so often someone crystallizes an idea at just the right moment. It sets the narrative for that era and billions of dollars organize around it."
The examples he named were the Bitcoin white paper, Situational Awareness, Attention Is All You Need, Brian Arthur's Increasing Returns, and Software is Eating the World. That was the clearest meta-framework in today's notes: the most valuable resources were not just informative; they were durable narrative-setting texts
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