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Model Routing, Deep-Tech Patience, and Linear’s Fundraising Discipline
Jun 8
4 min read
614 docs
Software As a Service Companies — The Future Of Tech Businesses
Brian Armstrong
Tony Fadell
+3
This brief highlights a growing thesis around model routing and cheaper inference, a practical fundraising template from Linear, and a small set of AI teams tackling concrete enterprise and industrial problems.

Funding & Deals

  • Linear. With three co-founders, the company raised a small angel round so it could build the first version without much money or an early VC commitment. Sequoia later led the seed once the team decided to raise, and about a year later Linear was breakeven/profitable; later rounds were run as short, relationship-driven processes, with Accel's Series B discussion rooted in prior research rather than a standard pitch.

  • Build. Tony Fadell says Build backs hardware, software, and chemical technologies that can unseat incumbents across environmental, societal, and health markets. The firm also works with founders on product, operations, financing, org design, and storytelling so teams can get closer on version one or two rather than waiting until version four; Fadell adds that earlier positions in Grok and Cerebras were made before the hype cycle.

Emerging Teams

  • Soryn. The product connects a team's Google Drive and answers internal questions about company documents. The founder emphasizes tenant isolation via Postgres RLS and AES-256-GCM, automatic per-company OpenAI budget caps, query rewriting plus a larger context window, and Redis semantic caching for repeated queries; the system is stable with automated onboarding and the founder is now asking for real user feedback.

  • ApplyBoostAI. The founder says the product direction came after speaking with dozens of job seekers and finding that many did not understand why they were failing to get interviews, often blaming the market instead of the resume itself. That insight became ApplyBoostAI.com.

  • Simbi Robotics, Great Parrot, and Oriannis. Fadell cites Simbi Robotics, which uses AI + robotics for retail inventory and is "just taking off" after 7-8 years; Great Parrot, which uses AI + cameras for recycling sorting and textile defect detection; and Oriannis, which has been applying AI to drug design for 10 years and is "taking off."

AI & Tech Breakthroughs

  • Tracer. After observing repeated production traffic spent on tasks like classification, tagging, routing, moderation, extraction, intent detection, and tool selection, the founder built Tracer to train lightweight local models from prior LLM traces. Those surrogates are activated only when they match the original model well enough, while uncertain cases go back to the frontier model; on one repeated classification workflow, the founder says this reduced LLM cost by about 95%.

  • Model routing. Jerry Liu argues that significant value will accrue to startups building "model routing as a service," extending from document infrastructure such as parsing, extraction, and search to web-search analogs and vertical applications. He also says that finding the right point on the accuracy/cost/latency curve requires substantial evaluation, benchmarking, and reliability work.

  • Operational AI in the physical world. The Build examples share a common structure: AI is paired with robotics, cameras, or scientific workflows to address inventory labor, recycling and textile waste, and drug design rather than only software-side productivity.

Market Signals

  • Model economics. One X post argued that demand for intelligence is near-infinite, but 80% of workloads will run on models that are 99% cheaper within 12-18 months, while 20% stay on latest-generation models; under that view, energy and compute become the bottleneck rather than incremental model quality.

  • Value capture. Liu's framing implies that more of the value may sit in the layer that chooses the right model and operating point for each task, because accuracy, cost, latency, and long-tail reliability have to be optimized together.

  • Investor filter.

    "I always start from pain."

    Fadell says new technology should solve real pain in a way that creates a fundamentally different product and can unseat incumbents, not just feature-compete. He also argues that deep-tech founders often need help translating strong research into product and storytelling.

Worth Your Time

  • Tony Fadell on Lenny's Podcast. Useful for his pain-first deep-tech framework and for concrete examples across retail robotics, recycling/textiles, and AI drug design.
Apple and OpenAI Push Beyond Chat as Model Routing Becomes Strategic
Jun 8
4 min read
420 docs
0xSero
Brian Armstrong
Suraj Sharma
+11
Reported platform shifts from Apple and OpenAI point to assistants that act across apps, devices, and tasks rather than just chat. This brief also covers a new benchmark for self-improving agents, Nvidia's high-end local AI workstation, and why model routing is becoming a strategic layer.

Top Stories

Why it matters: the clearest shift today is from single chatbots to AI systems that orchestrate work across devices, apps, and model stacks.

  • Apple is reportedly rebuilding Siri around a hybrid Gemini stack. One report says WWDC 2026 will focus on making Siri relevant again, with a small on-device Apple model (~3B parameters) paired with a Gemini-class cloud model reportedly around 1.2T parameters, while Apple controls the UI, app access, and privacy layer . Reported features include deeper personal context across apps, screen awareness, in-app actions, multimodal interaction, and a dedicated Siri app . If accurate, that would position Siri as Apple's private AI layer across iPhone, Mac, and iPad .

  • OpenAI is reportedly pushing ChatGPT beyond chat into a broader assistant. A phased redesign could start in coming weeks, steering users toward Codex, agents, image generation, and partner apps, while one OpenAI employee described the goal as a single AI assistant acting across work and personal life . The strategic message is clear: the product is being framed less as a chat UI and more as an action layer.

  • Model routing is becoming a core architecture choice. Brian Armstrong argued that 80% of workloads will run on models that are 99% cheaper within 12-18 months, while only 20% will need the latest generation for the hardest tasks; Coinbase says prompt routing to cheaper models has helped keep costs roughly flat even as token usage grows exponentially . Separate commentary said value should accrue to model routing as a service because frontier labs only cover part of the accuracy-cost Pareto curve .

Research & Innovation

Why it matters: some of the strongest research this week was about measuring real discovery and making vision systems work with less supervision.

  • A new paper proposes a cleaner test for self-improving agents. It separates retrieval, search, and discovery, arguing that discovery means inventing concepts an earlier version could not have produced . In a Builder/Breaker protein-mechanics experiment, the model's R² fell from 0.48 to 0.41 while data grew nearly 10x and code only 1.3x, suggesting the agent was taking on harder problems rather than optimizing easy benchmarks .

  • INSID3 shows one-example segmentation across very different domains. The CVPR 2026 system works across natural, medical, underwater, and aerial images using only one annotated example, without a segmentation decoder, task-specific fine-tuning, or SAM . Its key trick is a lightweight, training-free correction that removes hidden positional bias in DINOv3 features, improving cross-image matching .

Products & Launches

Why it matters: new releases kept pushing AI toward local deployment, reusable workflows, and more operational autonomy.

  • Nvidia brought DGX Station to Windows. The new desktop system offers up to 784GB of coherent memory and 20 petaflops of FP4 compute, can handle up to 1 trillion parameters locally, and is priced up to around $85,000 .

  • OpenProse packages agent workflows as reusable programs. The open-source system describes workflows in logical English and runs inside coding agents such as Claude Code and Codex, with the agent acting as the compiler . It adds reviewable programs, explicit tool dependencies, isolated sub-agents, run receipts, logs, artifacts, and audit trails .

  • OpenAI published a broad set of Codex workflows. The examples span inbox management, PR review, Figma-to-code, bug triage, spreadsheet queries, deployment, and app building, while OpenAI describes Codex as becoming an AI teammate across software engineering, design, data analysis, and operations .

Industry Moves

Why it matters: the competitive edge is increasingly about where agents fit into real work and where top technical talent chooses to build.

  • GitHub is explicitly reorganizing around human-agent collaboration. Its CPO said models hit an inflection point around Dec. 2025, when developers could reliably micro-delegate to agents, and argued GitHub's mission now needs to include developer-agent collaboration . He also pointed to explosive agent traffic, a new Copilot app, and real-time canvases for co-creation .

  • OpenAI-Anthropic competition is spilling into personnel and hardware. OpenAI's Sora lead left, and a former OpenAI custom-chip leader said he joined Anthropic after helping build OpenAI's chip program as its second hardware hire . One commentary said OpenAI's take-every-big-bet-at-once strategy looks more fragile amid competition with Anthropic, especially in coding .

Quick Takes

Why it matters: a few smaller updates added useful signal on where open models, coding tools, and research culture are heading.

  • CVPR 2026 accepted about 4,000 papers and posters; one attendee said AI coding tools are now effectively universal among researchers, with robotics and world models especially prominent in workshops .
  • Claude Workflows reportedly found and fixed 144 bugs in a large codebase during a weekend test .
  • Nvidia published 9 of the 30 models on page 1 of Hugging Face, prompting claims that American open source is resurging .
  • Gemma 4 MTP was merged into llama.cpp, enabling lightweight, fast Gemma 4 QAT + MTP setups .
NVIDIA Extends Its AI Stack in Korea as Agents Show Utility—and Limits
Jun 8
4 min read
200 docs
Brian Armstrong
Greg Brockman
Suraj Sharma
+4
NVIDIA widened its reach in Korea through AI factory, robotics, mobility, and PC ecosystem moves, making its full-stack strategy unusually visible in one day. Meanwhile, OpenAI and Microsoft offered more grounded evidence of agent adoption, while a new benchmark suggested current systems remain far from autonomous self-improvement.

The main shift

NVIDIA supplied the day’s clearest strategic signal: in South Korea, it is pairing consumer AI hardware with industrial AI factory, robotics, mobility, and sovereign-model partnerships, extending its stack across laptops, factories, and data centers . Elsewhere, updates from OpenAI, Microsoft, and a new agent benchmark painted a more grounded picture of agentic AI: strong progress on concrete workflows, but little evidence yet of true recursive self-improvement .

NVIDIA expands from PCs into Korean AI infrastructure

LG and Doosan make the AI factory pitch more concrete

NVIDIA said it is building an AI factory with LG Group across robotics, autonomous driving, data center technologies, and GPU cloud services, with a workflow linking AI model development, physical AI data generation, robot simulation, edge deployment, and digital twins . LG plans to use Isaac Sim, Isaac Lab, and Isaac GR00T for robots, Cosmos for synthetic data, DRIVE Hyperion and DRIVE AGX for mobility, and Blackwell GPUs, NeMo, and TensorRT-LLM to advance the EXAONE sovereign model family .

In parallel, NVIDIA and Doosan expanded work across industrial robotics, autonomous equipment, power systems, and AI data center materials. Doosan Robotics is integrating Isaac Sim, Isaac Lab, Cosmos, Newton, and Jetson Thor into its Agentic Robot OS, while Doosan Bobcat is exploring physical AI for compact autonomous machinery and Doosan Enerbility is evaluating power infrastructure for DSX-based AI factories .

Why it matters: Taken together, these announcements show NVIDIA selling a full deployment stack—not just accelerators—across robotics, mobility, synthetic data, power, and sovereign AI infrastructure .

RTX Spark gets named software and game support

Following last week’s RTX Spark unveiling, NVIDIA said the Windows PC chip is designed for local AI, creation, and gaming on slim laptops with all-day battery life, and that developers including KRAFTON, NC, Riot Games, NetEase, Remedy Entertainment, and XBOX are already supporting the platform . The company highlighted AAA gaming at 1440p and 100+ FPS, ACE-powered game characters such as PUBG Ally, and launch support for DLSS 4.5 features in titles including CINDER CITY .

Why it matters: This is less about another chip announcement than about early ecosystem proof: NVIDIA is pairing its local-AI PC pitch with named content, developer, and software support .

Agentic tools are getting more practical

Codex and Copilot both emphasize workflow utility over grand claims

OpenAI published a broad set of Codex workflows spanning pull request review, Figma-to-code, large-codebase understanding, bug triage, spreadsheet queries, app deployment, slide creation, task extraction from Slack, and direct computer control . Greg Brockman framed the shift simply: Codex is becoming "an AI teammate instead of just an AI assistant" .

Separately, Microsoft said NHS England is scaling Microsoft 365 Copilot to more than 500,000 staff, with early trials showing average time savings of 43 minutes per day that could be redirected to patient care .

"Codex is becoming an AI teammate instead of just an AI assistant."

Why it matters: The stronger signal today is operational. Rather than promising fully autonomous systems, these updates focus on bounded tasks, measurable time savings, and integration into everyday work .

But autonomous self-improvement still looks distant

Meta-Agent Challenge pushes back on RSI narratives

The Meta-Agent Challenge benchmark tests whether current agents can invent strategies, write code, test, learn from failure, and improve another agent without human design help across math, science, programming, bug fixing, and terminal tasks . Its main result: current agents usually do not beat strong human-made agent setups, and the better results mostly come from closed frontier models like Claude .

The paper summary highlights missing ingredients such as budget awareness, failure recovery, restraint, and the ability to change designs instead of polishing a bad one . Gary Marcus distilled the implication bluntly: "we aren’t close to RSI" .

Why it matters: This is a useful counterweight to the current wave of agent marketing. AI systems are getting better at assisting with work, but this benchmark suggests autonomous AI engineering remains a much harder problem .

One industry signal to watch

Coinbase argues most AI workloads will migrate to much cheaper models

Brian Armstrong argued that demand for intelligence is "near infinite," but that 80% of workloads will run on models that are 99% cheaper within 12-18 months, while only 20% will need the latest-generation models for high-IQ tasks such as scientific breakthroughs . He added that Coinbase is already routing prompts to cheaper models where possible, keeping costs roughly flat even as token usage grows exponentially .

Why it matters: Even as a forecast rather than a result, this captures a live shift in industry thinking: the next bottleneck may be cost, energy, and compute allocation rather than access to a single best model .

Opus Autonomy Playbook and the Loop Backlash
Jun 8
3 min read
26 docs
Rohan Paul
Armin Ronacher ⇌
Peter Steinberger 🦞
+4
Boris Cherny shared the clearest checklist yet for running coding agents autonomously for hours or days, while OpenAI’s Codex use-case push shows where AI teammates are actually landing today. The other big signal: senior engineers are embracing orchestration loops, but there is already backlash against treating that pattern as universal advice.

🔥 TOP SIGNAL

Long-running coding agents finally have an operator playbook. Boris Cherny says he is seeing benchmarks where Opus is the best model for long-running work, and he pairs that with a concrete setup for unattended runs: auto-permissions, dynamic workflows, /goal or /loop, cloud execution, and end-to-end self-verification . The bigger pattern is real—steipete, Armin Ronacher, and Boris are all pointing toward loops that prompt agents—but today’s best correction comes from ThePrimeagen: don’t turn an advanced orchestration pattern into universal advice .

⚡ TRY THIS

  • Boris Cherny — set up Opus for hours/days, not a single sitting. 1) Enable auto mode for permissions. 2) Use dynamic workflows when the task needs hundreds or thousands of agents. 3) Start /goal or /loop so work continues until done. 4) Run Claude Code in the cloud via desktop/mobile so you can close the laptop. 5) Give the agent a way to verify end to end—Chrome for web, iOS/Android sim MCP for mobile, or a full backend/server start path .

  • Loops are emerging as the power-user abstraction. steipete’s pattern is blunt: stop manually prompting coding agents; design loops that prompt them instead. Armin Ronacher says he treats that view as “a glimpse into the future,” and Boris frames the same shift as moving from direct prompts to loops that figure out what to do .

    "99.9999% of you should in fact not being “looping” your agent"

    Takeaway: treat loops as an advanced orchestration technique, not a default requirement for every developer .

  • OpenAI Codex — start with bounded teammate jobs. OpenAI’s concrete examples are the right kind of starting point: review GitHub pull requests before human review, turn Figma designs into production-ready code, understand large codebases in minutes, automate bug triage and QA, deploy apps or websites from prompts, build Mac and iOS apps, and turn Slack threads into coding tasks . The use-cases page is here: developers.openai.com/codex/use-cases.

  • Stress-test your evals with long-horizon tasks. SWE-Marathon is designed to measure coherence across a 1B-token budget on tasks like building Slack from scratch, rewriting a JAX codebase in PyTorch, and building a C compiler in Rust . If you need examples of what long-horizon software work actually looks like, this is the best framing in today’s source set .

📡 WHAT SHIPPED

  • SWE-Marathon — benchmark announcement. New benchmark for autonomous long-horizon software work, centered on 1B-token coherence and big build tasks. Thread: x.com/rishi_desai2/status/2062930906818769356.
  • Codex use-case roundup from OpenAI. OpenAI is positioning Codex as an “AI teammate” across software engineering, design, data analysis, and operations, with concrete dev workflows listed in its use-cases doc. Doc: developers.openai.com/codex/use-cases.
  • Comparison signal: Opus for long runs. Boris Cherny says he is seeing multiple benchmarks showing Opus as the best model for long-running work .

🎬 GO DEEPER

No video or podcast clips were available in today’s source set. These are the best primary links to read closely:

  • Boris Cherny’s post on running Opus autonomously — The most copyable post of the day. It compresses the current unattended-agent playbook into five operator decisions: permissions, orchestration, persistence, cloud runtime, and self-verification .
  • SWE-Marathon thread — Worth reading if your eval mindset is still stuck on short diffs. The task selection is the point: build a product, port a framework, or implement a compiler under a huge token budget .
  • Codex use cases — Fastest way to scan OpenAI’s own picture of where Codex already fits inside a dev org. Good for picking one narrow workflow to test first .
  • steipete’s loop post, Armin Ronacher’s response, and ThePrimeagen’s rebuttal — Read these together, not separately. The contrast is the signal: expert users are moving toward orchestration, and the backlash is against pretending that makes it beginner advice .

Editorial take: the edge is moving from better prompts to better runtime control—permissions, loops, and verification—but full agent looping still looks like an expert move, not a default workflow.

AI Coding Caution, Red Plenty, and General Magic
Jun 8
3 min read
112 docs
Marc Andreessen 🇺🇸
Lenny's Podcast
Tony Fadell
+3
Today's strongest signal is Chamath Palihapitiya's share of a paper questioning how much AI coding translates into shipped software. It sits alongside two durable historical picks: Marc Andreessen's co-sign for Red Plenty and Tony Fadell's recommendation of General Magic.

Most compelling recommendation

Unspecified SSRN paper on AI coding tools' productivity impact

This is the strongest pick in today's set because it pairs a concrete quantitative claim with a clear operating principle. Chamath Palihapitiya shared a paper presented as showing that AI coding tools pushed commits up 180% while releases rose only 30%, then added his own warning about what happens when teams use AI coding without clear intent .

  • Title:Not provided in the notes — described as an SSRN paper on AI coding tools' productivity impact
  • Content type: Research paper
  • Author/creator: Not specified in the provided notes
  • Link/URL: Shared via this post
  • Who recommended it: Chamath Palihapitiya
  • Key takeaway: AI-assisted coding activity can rise much faster than shipped output; in this share, the gap is framed as commits up 180% versus releases up 30%
  • Why it matters: It is a practical check against mistaking more generated code for proportionate product progress. Chamath's own summary is the reason to save it: lack of upfront intent turns AI coding into "AI slop"

"Using AI to code, without a clear intent upfront, is just AI slop waiting to happen."

Two durable case studies

Red Plenty — Francis Spufford

Marc Andreessen's contribution today was a co-sign on another user's recommendation, but the reason attached to it is strong enough to keep. The book is described as a view of the Soviet economic planning system through the people working inside it, from factory managers to mathematicians and "fixers" .

  • Title:Red Plenty
  • Content type: Book
  • Author/creator: Francis Spufford
  • Link/URL: Review link: chicagoboyz.net/archives/71068.html
  • Who recommended it: Marc Andreessen, via a co-sign of the linked recommendation
  • Key takeaway: The book covers the Soviet economic planning system through factory managers, economic planners, mathematicians, computer scientists, and "fixers"
  • Why it matters: The recommendation points readers to a systems book grounded in front-line perspectives rather than a purely abstract account of planning

General Magic

Tony Fadell's documentary recommendation is the clearest product-timing lesson in today's set. He recommends it specifically as a story about building something impressive far before the market was ready for it .

  • Title:General Magic
  • Content type: Documentary / movie
  • Author/creator: Not specified in the provided notes
  • Link/URL: Recommendation context: Lenny's Podcast interview
  • Who recommended it: Tony Fadell
  • Key takeaway: Fadell frames the story as "the iPhone 15 years too early" — a case where they were making things that were technically exciting but that "nobody needed" yet
  • Why it matters: It is a compact case study in timing, demand, and the gap between invention and adoption

"Your viewers should definitely watch the movie General Magic because absolutely we made the iPhone 15 years too early and that was a classic case where we were just making the things that were really cool but nobody needed it."

What connects these picks

The throughline today is fit. Chamath's paper questions whether AI-generated coding activity maps to real shipped output , Andreessen's co-sign points to a book about how a planning system looks from inside the apparatus , and Fadell's documentary pick shows what happens when a product arrives before demand does . Together, they make a useful short list for readers who care less about novelty and more about whether work, systems, and products actually connect to reality.

Prototype-First PM, Dynamic Workflows, and Better v1 Decisions
Jun 8
4 min read
59 docs
Hiten Shah
Paul Graham
Tony Fadell
+5
This brief covers the move from PRD-heavy planning to prototype-led work, a concrete AI workflow for turning interviews into ranked opportunities and testable concepts, and Tony Fadell’s lessons on judgment, iteration, and storytelling.

Big Ideas

  • Prototype-first PM is moving from exception to default. Aakash Gupta argues the PRD is no longer the main output; it is an input to a prototype. Docs force design, engineering, and legal to simulate different versions of the product, which can create false alignment. A prototype gives everyone the same object to react to. Why it matters: faster, sharper feedback earlier. Apply it: build the smallest working or clickable artifact you can, then attach a short FAQ covering the hypothesis, V1 requirements, edge cases, and success metrics.

  • For v1 products, judgment still matters more than clean-looking data. Tony Fadell argues that net-new categories have too few analogs for purely data-driven decisions, so a very small group needs to make informed opinion-based calls. He points to the iPhone keyboard debate as a case where the data showed pros and cons on both sides, and Steve Jobs still chose a direction. Fadell’s broader point: leaders should micromanage the few details that matter most, while thinking across the whole system—product, distribution, installation, sales, and marketing—not just the UI. Why it matters: early data can create precision without differentiation. Apply it: decide which decisions need centralized judgment, and evaluate the full experience, not just the feature.

Tactical Playbook

  1. Use dynamic workflows when the next step depends on the last step. The Product Compass describes these as short JavaScript programs Claude writes on the fly to coordinate agents. Use plain subagents for one round of parallel work; use a dynamic workflow when outputs need to route, score, filter, retry, or verify later stages.

  2. For interview synthesis, turn discovery into a six-stage loop:

    • extract structured opportunities, personas, and verbatims from each interview
    • canonicalize overlapping needs into a shared set
    • score opportunities by frequency × importance × (5 - satisfaction)
    • generate solution ideas and rank them by ROI
    • build the top three as clickable HTML prototypes
    • inspect failures or low-confidence outputs, then rerun only the affected stages
  3. Let code handle coordination, and models handle judgment. In the worked example, the workflow used 113 agents, 1.95M tokens, and 12.5 minutes to produce 3/3 built-and-verified prototypes; the routing, scoring, gating, and looping logic used zero model tokens.

  4. Automate the plumbing only after alignment. In one Reddit discussion, PMs stressed that prioritization is still the core job: finance gaps are only one input among many, and they would not automate the decision straight into feature creation. The same thread noted that once teams agree on the metric, tools like Claude Code or even Power Automate can pull finance data and post updates to Jira—but finance access controls may block broad integrations.

Case Studies & Lessons

  • A faster way to surface disagreement: Abhi Muchhal, a PM at OpenAI, was asked to write a PRD for a platform investment, stopped after 20 minutes, built the thing instead, and found the discussion around the working prototype much better than the doc would have been. The lesson is not to eliminate writing; it is to demote the long spec and let the prototype do the heavy lifting.

  • Most products need multiple generations. Fadell’s rule is simple: make the product, fix the product, then fix the business. He says the iPod did not truly break out until the third generation, when Windows support and the iTunes music store helped it move beyond early Mac loyalists. Takeaway: do not judge product-market fit or business viability from version one alone.

Asked how you know whether you are building something people actually want , Hiten Shah’s answer was blunt:

"They will literally tell you once you have."

Paul Graham adds the founder version of that idea: people who start by making something they themselves want are often better at convincing users than investors.

Career Corner

  • Own the story, not just the backlog. Fadell argues that builders need to meet customers in their own context, which makes marketing and storytelling part of product work, not a downstream handoff. He says launch communication should distill to a few tentpole features, and he watched Steve Jobs refine the iPhone story repeatedly until the why was clear. Career takeaway: if you want broader product influence, practice positioning, messaging, and launch narrative with the same rigor you use on specs.

Tools & Resources

  • Claude Code dynamic workflows / ultracode: worth exploring if you regularly triage inbound work, synthesize customer calls, or audit large sets of stories. The reusable patterns called out were classify-and-act, fan-out-and-synthesize, adversarial verification, generate-and-filter, tournament, and loop-until-done. PM use cases included synthesizing 100 interviews and checking 80 user stories against INVEST criteria.

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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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