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Weekly digest on longevity, health optimization, and wellness breakthroughs
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Sam Altman

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3Blue1Brown

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Paul Graham

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The Pragmatic Engineer

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Reddit Machine Learning

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Naval Ravikant Profile

Naval Ravikant

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AI High Signal

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OpenAI’s Home Device Plans, DeepSeek’s $7.4B Raise, and Agent Demand Surge
Jul 15
4 min read
930 docs
Perplexity
sarah guo
AI at Meta
+19
OpenAI’s reported home-device plans, DeepSeek’s large financing round, and surging Codex and ChatGPT Work use lead the day’s AI developments. The brief also covers efficient local models, active video reasoning, research-agent tooling, and emerging AI governance proposals.

Top Stories

Why it matters: AI’s competitive landscape is widening beyond model releases into consumer hardware, capital formation, and rapidly scaling agent use.

  • OpenAI’s first hardware device is reportedly a mobile, screen-free smart speaker designed as a home AI companion. Bloomberg reporting describes a battery-powered device that can be carried around the home, control appliances, play media, answer messages, and use cameras and sensors to understand its surroundings. It is also reported to learn from habits, context, and personal information including emails.

  • DeepSeek has reportedly raised $7.4 billion as its ARR approaches $500 million. The company is said to maintain a gross margin above 50% on access to its V4 flagship model, while structuring a second round aimed at overseas, particularly Middle Eastern, dollar investors and preparing for a Shanghai STAR Market IPO next year.

  • OpenAI says it has reached 8 million active users across Codex and ChatGPT Work. The company reset usage limits without a five-hour cap for GPT-5.6 Sol; Sam Altman said demand growth was “insane” and warned that further scaling could bring service hiccups.

Research & Innovation

Why it matters: advances in local inference and active information retrieval could make capable systems more efficient to deploy and operate.

  • PrismML introduced Bonsai 27B, which it calls the first 27B-class multimodal model to run on a phone. Based on Qwen3.6 27B, it supports multi-step reasoning, tool use, long-context workflows, and agentic loops. Its phone-oriented 1-bit variant is 3.9 GB, while a 5.9 GB ternary version targets laptops; both are open-sourced under Apache 2.0.

  • OmniAgent-7B frames long-video understanding as an active evidence-search task. On LVBench, the 7B model scored 50.5 versus 47.3 for Qwen2.5-VL-72B while using about 203 frames rather than 768. It iteratively requests only needed frames or audio, summarizes findings into memory, and can stop once it considers the evidence sufficient.

Products & Launches

Why it matters: research-agent, voice, and search capabilities are moving into directly accessible products.

  • Perplexity open-sourced WANDR, a 500-task benchmark built from real knowledge work for agents that must research both broadly and deeply. Wide Research is now available in the Perplexity Agent API, using a “Search as Code” architecture intended to execute a designed research plan deterministically at scale.

  • OpenAI shipped a full-duplex conversation engine for GPT. A live test described the system as enabling real conversation, while noting remaining quirks.

  • Google is adding image generation to AI Overviews in Search. The feature uses the Nano Banana model to create custom visuals from text prompts directly in results pages, with an English rollout planned over coming weeks in supported regions.

Industry Moves

Why it matters: AI companies are pairing agent products with capital and distribution to expand into established enterprise workflows.

  • Cognition says its first year after acquiring Windsurf lifted revenue run rate from $73 million to more than $500 million. The combined company launched models including SWE1.7, Devin Review and CLI, and Devin Desktop; it is also developing event-driven agents and agent swarms.

  • ChaiDiscovery raised a $400 million Series C at a $3.8 billion valuation. The company says it is pursuing medicine design at engineering-like precision and scale, and has deployments with Eli Lilly, Pfizer, and Novartis.

Policy & Regulation

Why it matters: government contracting and corporate-law proposals are beginning to define how advanced AI can be deployed and governed.

  • A DeepMind researcher, citing The Information, said Google’s classified Pentagon agreement permits “any lawful government purpose.” The reported terms require Google to help adjust safety settings at government request and provide no veto over lawful operational decisions. More than 600 DeepMind employees signed an open letter opposing deployment of models on classified networks.

  • Delaware is discussing an “Artificial Intelligence Company” legal entity for businesses run autonomously by AI agents. Norm Ai is leading a public-private partnership to further develop the proposed framework.

Quick Takes

Why it matters: capabilities continue to spread across science, speech, hardware, and local deployment.

  • Meta reported that its model scored 30/30 on the Asian Physics Olympiad theoretical exam, tying the top three student contestants.
  • Tencent released 1-bit and 4-bit versions of its 295B-parameter Hy3 model, saying it can be served on one GPU.
  • NVIDIA introduced its Vera Arm CPU, claiming up to a 1.9× speedup for the CPU-intensive portion of agent loops.
  • Anthropic launched Claude for Teachers, offering verified U.S. K–12 educators free premium access, teaching skills, and standards-mapped curricula.
TerraFirma and Singularity Defense Secure Major Series A Rounds
Jul 15
4 min read
794 docs
Software As a Service Companies — The Future Of Tech Businesses
r/SideProject - A community for sharing side projects
Suhail
+4
Two sizable Series A financings highlight investor appetite for deployable robotic construction and scaled air-defense production. The broader startup signal is AI infrastructure moving from model capability toward agent economics, workflow continuity, and leaner product-team structures.

Funding & Deals

  • TerraFirma announced a $100M Series A within $115M total funding, led by Kleiner Perkins. Bain Capital Ventures, Glade Brook Capital Partners, BANNER VC, Saga Ventures, Trust Ventures, Definition, PEAK6, Magnetar Capital, and Ravelin Capital also participated. The company says it is building a full robotic-construction technology stack intended to deliver order-of-magnitude efficiency gains, with an eventual goal of applying the technology to Moon and Mars construction.

  • Singularity Defense raised an $80M Series A at a $400M valuation. The company is developing low-cost missile-based air-defense interceptors designed for automotive-scale production.

Emerging Teams

  • TerraFirma pairs SpaceX operating pedigree with deployment claims. Co-founders Noah Schochet and Noah McGuinn previously worked on SpaceX programs including Starship, Starshield, and Starlink. TerraFirma reports more than 10x growth over the past 12 months, projects underway globally, and a target to operate the three largest robotic-construction fleets by October 2026—one on each continent. These are company-reported operating milestones to diligence.

  • Singularity Defense’s team combines aerospace and production backgrounds. YC says its founders include alumni of SpaceX, Tesla, Anduril, and Lockheed Martin, alongside operators who have sold more than $12B in air-defense systems. The company reportedly runs multiple flight tests per month and is building production lines larger than comparable U.S. systems.

  • A newly seed-funded, unnamed AI post-training startup is moving quickly on compute and infrastructure. Its founder reports validating a basic RLVR post-training stack, acquiring 64 B300s after beginning with two 8×B200 systems, and making a first hire while recruiting for a second role in RLVR/OPSD post-training or low-level model optimization.

  • PasteSheet offers an early read on activation challenges for AI data-access tooling. Launched 10 days ago, it turns public Google Sheets into cached JSON APIs and MCP servers for Claude, ChatGPT, or Cursor. The founder reports roughly 30 real users, with 11 connecting a sheet, 10 making a request, and two returning on day two or later.

AI & Tech Breakthroughs

  • Agent economics may hinge more on orchestration than model choice. One AI GTM-workforce founder reports cutting runtime cost from about $35/hour to $1.53/hour by changing context handling, tool calls, and sub-agent interactions rather than switching models. The largest reported gain came from avoiding repeated transmission of an accumulating conversation history in tool loops—a pattern the founder describes as producing near-quadratic cost growth across many calls.

  • A new video-model architecture is framed as streaming and interactive. Nathan Benaich describes it as an autoregressive diffusion transformer that predicts video frame by frame to address accumulating generation errors, while allowing text prompts to steer the stream.

  • Cross-model session continuity is emerging as an application-layer problem. GiState is being tested as an AI-harness platform that saves an AI session’s state and dynamically routes it to another model, with the founder seeking beta users ahead of launch.

Market Signals

  • This cycle’s disclosed financings favor capital-intensive physical autonomy and defense production. TerraFirma’s $100M Series A funds robotic construction, while Singularity Defense’s $80M Series A supports automotive-scale air-defense interceptors. Both are early-stage rounds attached to systems intended for field deployment and production scale.

  • The “builder” role is becoming a reported organizational pattern in leading-edge AI companies. A16z says it is seeing companies consolidate programmer, product-manager, and designer responsibilities into a loosely defined builder role, based on the view that AI lets each function generate code and design across the former boundaries. This is an observed and argued trend, not a quantified labor-market finding.

  • AI-native creative tooling is shifting from workflow generation toward adaptation of proven formats. Clone targets fashion performance marketers by letting them replace products and models in an existing viral reel or ad. Its founder argues that prior node-based workflows produced lower ROAS than traditional ads and failed to capture the elements that make a video perform.

Worth Your Time

Bun’s 11-Day Rust Port Shows What Agent Verification Looks Like
Jul 15
4 min read
124 docs
LangChain
Jason Zhou
LangChain
+5
A massive Bun migration offers a concrete blueprint for reliable agent workflows: pilot first, use adversarial review, treat failures as workflow bugs, and require evidence before merge. Also: new coding-agent tracing, Pi harness extensibility, and model-routing practices from active practitioners.

🔥 TOP SIGNAL

At agent scale, the breakthrough is the verification system—not a bigger prompt. In Theo’s walkthrough, Jared’s Bun rewrite reportedly moved a 500k-line Zig codebase to Rust in 11 days using about 50 continuously running Claude Code dynamic workflows, producing 6,502 commits and 1.78 million lines written or rewritten. The transferable pattern was adversarial review, a language-independent test suite, and fixing the process that generated bad code rather than hand-patching each failure.

⚡ TRY THIS

  • Pilot the workflow before scaling the task. For a migration or broad refactor: (1) have the agent create a mapping guide for source-to-target patterns, (2) adversarially review it and read it yourself, then (3) run a three-file trial with one implementer, two reviewers checking behavior and guide compliance, and one fixer before unleashing the full job. That is the sequence used before Bun’s bulk translation.

  • Turn failures into a queue—and recurring failures into workflow changes. Work crate-by-crate from compiler errors; when the agent finds a systematic issue, add a classification/fix workflow instead of starting over. For resource-hungry test suites, isolate runs with SystemD/cgroups; merge only after the entire suite passes in CI across platforms and you confirm tests were not skipped.

  • Audit AGENTS.md before persistent goals. After a model release, run: Review my AGENTS.md for stale rules or things we should revise or remove, then clean it up—those rules load into every agent’s context. swyx’s stronger warning: if you do not know what the file says before launching a task, you are effectively accepting indirect prompt injection; he describes a five-stage goal spending eight hours stuck refining stage 0 because repository instructions prevented it from moving on.

  • Add visual proof before building more loops. Jason Zhou’s verifier-setup skill scaffolds a verifier sub-agent that drives the real app, embeds screenshots/video in every PR, and provides a one-command dev stack usable locally or in per-agent cloud sandboxes. His claimed review compression: watch the 20-second video, then merge.

📡 WHAT SHIPPED

  • LangSmith tracing for coding agents: LangChain added tracing support for Cursor, Copilot, Pi, and OpenCode, including stable trace keys across agents, full run trees for turns/model calls/tools/subagents, and session token-cost tracking. Docs

  • Codex-to-LangSmith plugin: Codex sessions can now emit inspectable traces covering turns, tool calls, model metadata, token usage, and nested subagents. The setup uses the Codex Marketplace plugin plus config flags and environment variables.

  • Pi Agent’s extensibility is the notable harness contrast. AI Jason highlights a deliberately minimal default—bash plus file read/write/edit, no bundled subagents or MCP—then adds behavior through extension files for tools, hooks, context, session logic, UI, and model providers. One example package filters tool output before it reaches the model, reducing token use for git log-style commands by up to 96% in the demonstrated case.

  • Model-routing field note from swyx: for large projects, he uses Sol Ultra to plan, Fable 5 to critique, then Sonnet 5/Terra Ultra/SWE 1.7 for implementation and Devin Review via Kakuna for review. His comparison method is useful: give Fable and Sol the same prompt, then have each critique the other’s plan; he reports Fable consistently preferred Sol’s plan.

  • Autoreview skill: Peter Steinberger recommends running autoreview as standard practice despite the token cost. Study the implementation.

🎬 GO DEEPER

  • 17:18–20:04 — Theo on operationalizing a massive agent rewrite. The useful part is not the migration headline: watch the compiler-error work queue, workflow-level fixes, and cgroup isolation for tests that exhaust system resources.
  • 2:51–3:29 — LangChain’s Codex trace anatomy. A concise walkthrough of what observability should capture: accumulated context, outputs, model metadata, each tool call’s inputs/outputs, and nested subagent hierarchy.
  • Study verifier-setup. It is a compact example of making PR evidence a first-class agent output rather than trusting an agent’s completion message.

  • Study OpenClaw’s autoreview skill. It is a practical starting point for adding a repeatable review pass to an agent workflow.

Editorial take: agent autonomy scales when execution is paired with adversarial review, observable traces, and evidence that the real app worked—not when teams merely add more parallel agents.

Codex Becomes a Broader Work Surface as AI Efficiency and Agent Evaluation Advance
Jul 15
3 min read
284 docs
Latent.Space
Tencent Hy
Emad
+9
OpenAI turns Codex into a more complete agentic work environment, while Perplexity releases a benchmark for wide research. The digest also tracks compression and inference-efficiency claims, the growing emphasis on agent oversight and evaluation, and ChaiDiscovery’s major funding round.

OpenAI folds Codex into ChatGPT and expands its agentic work surface

GPT-5.6 Sol powers a broader coding-and-work environment

OpenAI has brought Codex into ChatGPT in a dedicated space alongside a new work agent, while making its GPT-5.6 Sol frontier model available to all users. Codex can now automatically divide work across subagents, operate browsers—including apps requiring logins and passkeys—and deploy full-stack applications through Sites with hosting, authentication, database, and storage built in.

OpenAI also reported that usage of its agentic products—Codex and ChatGPT Work—rose 2.5× over the past week.

Why it matters: The release packages model reasoning, delegated coding work, browser interaction, deployment, and collaboration into a single workflow rather than treating code generation as a standalone feature.

Perplexity opens a benchmark for wide research agents

WANDR targets real knowledge-work tasks that remain difficult for frontier models

Perplexity has open-sourced WANDR, an internal benchmark it used to develop deep and wide research capabilities. The suite contains 500 tasks built on real knowledge work and is described as difficult even for today’s most powerful models.

Alongside the benchmark, Perplexity made a Wide Research preset available in its Agent API. It says its “Search as Code” architecture lets a model design research once and execute it deterministically at scale without overwhelming context.

Why it matters: Research agents need evaluation beyond isolated question answering; WANDR offers a shared target for measuring systems that must explore broadly as well as reason deeply.

Efficiency advances span model compression and data-center inference

Tencent reports a 1-bit, 295B model that fits in 88GB

Tencent released 1-bit and 4-bit quantized versions of its 295B Hy3 model, saying it can be served on a single GPU with llama.cpp and MTP enabled. Emad Mostaque reported 75.4% on SWE-Bench Verified and 53.9% on SWE-Bench Pro for the 1-bit version, with an 88GB footprint; he characterized the drop from 16-bit precision as roughly 5%.

At the infrastructure layer, NVIDIA says its GB300 NVL72 systems deliver up to 25× Hopper’s performance per watt on DeepSeek V4 Pro, 20× on GLM5.1, and 10× on Kimi K2.6. NVIDIA also says Anthropic and OpenAI use Blackwell NVL72 systems for inference, while CoreWeave, Perplexity, and Fireworks AI run open models in production on the platform.

Why it matters: Compression and rack-scale efficiency are advancing in parallel, potentially changing where capable models can run and the economics of serving them.

The engineering focus shifts from agents to the systems around them

Reliability, evaluation, and human oversight take center stage

A Latent.Space review of AI Engineer World’s Fair 2026 reports a shift from prompting individual agents toward building “harnesses” that manage workflows, context, permissions, evaluation, persistent state, and continuous improvement. Speakers framed this as “loop engineering”: agents can run an inner execution loop, while people retain an outer loop for feedback, evaluations, direction, and decisions.

François Chollet similarly argued that enterprises need stronger evaluations for knowledge-work workflows, so they can tell whether a model, prompt, or system change improved or broke performance.

Why it matters: As agentic tools move into longer-running work, the differentiator is increasingly the operational system that constrains, measures, and improves them—not only the underlying model.

ChaiDiscovery raises $400 million for AI drug discovery

New capital follows deployments with major pharmaceutical companies

ChaiDiscovery has raised a $400 million Series C at a $3.8 billion valuation from Index Ventures, Kleiner Perkins, Sequoia, and Dimension Capital. The company has deployments with Eli Lilly, Pfizer, and Novartis, according to Sarah Guo.

Why it matters: The financing is a substantial vote of confidence in AI-enabled drug discovery, paired with reported use at several large pharmaceutical companies.

A Shared AI-Ecosystem Framework, Trust-Based Fundraising, and Institutional Lessons
Jul 15
3 min read
191 docs
Chamath Palihapitiya
Satya Nadella
Balaji Srinivasan
+4
Two technology leaders independently recommend Demis Hassabis’s article on building a frontier AI ecosystem. The remaining picks examine trust-based fundraising, data centers and electricity prices, and Lee Kuan Yew’s theory alongside Singapore’s practice.

Most compelling: Demis Hassabis’s article on a frontier AI ecosystem

  • Title: Demis Hassabis’s article (title not provided in the source)
  • Content type: Article
  • Author/creator: Demis Hassabis
  • Link:Read the article
  • Recommended by: Satya Nadella and Chamath Palihapitiya
  • Key takeaway: Nadella called it an important reminder that the aim is a frontier ecosystem promoting innovation and choice while avoiding a single model release that “breaks the world.” Chamath described Hassabis’s framework as well reasoned and recommended adopting it over what he called an alternative “Pull Up The Ladder Framework.”
  • Why it matters: It is the day’s strongest signal: two prominent technology leaders independently endorsed the same framework, emphasizing both openness of choice and caution around concentrated model risk.

“The goal is a frontier ecosystem that promotes innovation and choice, while avoiding any one model drop that breaks the world!”

A fundraising guide centered on trust

  • Title:The Tao of Fundraising
  • Content type: Book
  • Author: John Kim
  • Link/URL: Not provided in the source notes
  • Recommended by: Patrick O’Shaughnessy
  • Key takeaway: O’Shaughnessy called the book “the definitive guide to attracting capital.” He highlighted its discussion of building consensus at General Catalyst, the idea that money moves at the speed of trust, persuasion as “desire minus fear,” the three laws of fundraising, and the GP/LP relationship.
  • Why it matters: The recommendation points to fundraising as a relationship- and persuasion-driven discipline rather than solely a financial transaction.

Two contrasting lenses on infrastructure and institution-building

Data centers haven’t been raising residential bills

  • Content type: Article
  • Author: Shawn Regan
  • Link:Read the City Journal article
  • Recommended by: Marc Andreessen
  • Key takeaway: Andreessen shared the article as “Interesting.” Its argument is that the sharpest residential electricity-price increases have occurred in states with aggressive climate policies rather than those with the most data centers; it contrasts California’s relatively modest data-center growth and fast-rising rates with Virginia’s high data-center electricity use and near-national-average price increases.
  • Why it matters: It offers a specific, comparative claim for readers examining the connection between data-center expansion and household electricity costs.

Lee Kuan Yew’s books

  • Content type: Books
  • Author: Lee Kuan Yew
  • Link/URL: Not provided for the books in the source notes
  • Recommended by: Balaji Srinivasan
  • Key takeaway: Srinivasan identified Lee Kuan Yew’s books as important theory for thinking about network states, while treating Singapore itself as the practice that validates the theory.
  • Why it matters: The recommendation pairs written political theory with an institutional example, stressing that practical results are what make the underlying ideas worth studying.

The clearest pattern is frameworks tested against outcomes: Hassabis’s ecosystem proposal is endorsed by two leaders, Kim’s fundraising guidance foregrounds trust, Regan’s article advances a state-by-state comparison, and Srinivasan connects theory to Singapore’s practical record.

Position for Today’s Alternatives—and Learn From Stronger Customer Evidence
Jul 15
4 min read
73 docs
Superhuman Mail
Aakash Gupta
The community for ventures designed to scale rapidly | Read our rules before posting ❤️
+6
A customer-centered brief on positioning products against today’s real alternatives, gathering stronger discovery evidence, and measuring AI through behavioral acceptance. It also covers two product experiments and practical PM learning resources.

Big Ideas

Position for the customer’s current decision

April Dunford defines positioning as how a product is best at delivering a value that a well-defined customer segment cares about. Her framework connects five decisions: competitive alternatives, distinct capabilities, differentiated value, best-fit customers, and market category.

Why it matters: In an AI-shifting market, teams can confuse a future product vision with the product buyers can choose now. Dunford’s guidance is to position against the status quo and the competitors actually appearing on customer shortlists—while building for future alternatives separately. Hiten Shah similarly argues that AI is reducing the cost for customers to build some software internally, making the customer itself a potential competitor.

Apply it: Explain today’s value in today’s buying context, but maintain a market point of view grounded in what differentiates your product. Meet customers at their current maturity level rather than leading with capabilities they are not ready to adopt.

Tactical Playbook

Turn customer evidence into positioning decisions

Low-effort inputs—support tickets, reviews, and sales-call notes—can flag something to investigate, but they usually lack enough context to determine what to build. Story-based interviews provide the richer evidence: a specific account of what the customer tried to do, when the need arose, what went wrong, and what they needed.

“The worst thing you could do is never talk to a customer. The best thing you can do is collect a really rich story about their experience.”

Use the following sequence:

  1. Map alternatives from the customer’s view. Ask: If we did not exist, what would they do? Include both the status quo and shortlisted competitors.
  2. List distinct capabilities, then repeatedly ask “so what?” Convert feature differences into one to three customer-value themes rather than a long feature inventory.
  3. Identify the customers who value those themes most. Use that to define the best-fit customer and choose the category context that makes the value understandable.
  4. Keep the model current. Use advisory boards, executive customer sponsorships, win/loss analysis, and regular positioning check-ins to test whether shortlists, customer needs, or differentiation have changed.

Case Studies & Lessons

Constrained free access outperformed a larger free library

A book-summary app tested three freemium approaches after feedback that users wanted to try the product before paying: one free summary daily with push notifications; 20+ free summaries; and no free option. Each variant went to 33% of users.

The daily-summary variant delivered the best conversion and more daily returns; offering many free options appeared to hurt results. Lesson: Test the shape of free value, not merely whether a free tier exists. A recurring, bounded experience can be evaluated against both conversion and return behavior.

AI drafts cleared the adoption question at Superhuman

Superhuman’s Auto Drafts 2.0 uses inbox, calendar, and web information to prepare email replies. The team’s initial concern was whether people would send AI-written drafts. It reports that 40% of drafts are sent within a day and 60% are sent unedited.

Lesson: For assistive AI, track behavioral acceptance—not just feature use. Send rate, time to send, and edit rate directly test whether output is useful enough to act on.

Career Corner

Diagnose your PM strengths through scenarios, not self-ratings

Orlog is a free PM personality test built around workplace scenarios. It maps users across Strategy, Builder, Discovery, Growth, Operational, and Founder archetypes, then returns a hybrid type, strengths, and blind spots without requiring login or email.

How to use it: Treat the result as a reflection prompt, not a verdict: assess whether its scenarios and diagnosis match your actual work, then identify one blind spot to validate with a manager or peer. The creator is specifically seeking feedback on accuracy and scenario realism.

Tools & Resources

  • AI PM learning archive: The Product Compass has released 19 session recordings with timestamps, free templates, and linked resources; it recommends three free sessions as a starting point.
  • A practical Claude operating model: Former FAANG AI PM Jyothi Nookula’s five-layer approach is: use Sonnet for most PM work and Haiku for scheduled automation; prefer the desktop app for coworking, coding, and design; build a context library and MCP-served skills; connect daily tools; then automate repeatable work with agents. Start at the layer you already have in place and build upward.

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

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