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Atlas shifts the browser paradigm; video SOTA and context compression advance
22 October 2025
7 minutes read
OpenAI OpenAI
Anthropic Anthropic
Gary Marcus Gary Marcus
+19
OpenAI’s ChatGPT Atlas arrives as an AI‑native browser with agents and memory, while DeepMind’s Veo 3.1 leads video benchmarks and DeepSeek‑OCR advances long‑context efficiency. Also: Airbnb’s model choices, fast agentic code search, new robotics and recsys tools, and key policy and platform shifts.

Atlas reframes the browser around agents and memory

OpenAI launches ChatGPT Atlas on macOS

OpenAI introduced ChatGPT Atlas, an AI‑first browser that makes chat the primary interface, adds page‑aware “Ask ChatGPT,” optional browser memories, and an Agent mode that can act inside your tabs. It’s rolling out worldwide on macOS today; Agent mode is in preview for Plus, Pro, and Business users, with Windows, iOS, and Android coming soon .

“ChatGPT now can take actions for you… [it] will actually bring up [a] little cursor [and] start clicking around when you ask it to.”

OpenAI emphasizes controls and safety: the agent operates only in the tabs you grant, can’t execute local code, and actions require approval; memories are opt‑in and manageable. Independent testing also flagged prompt‑injection risks to watch for, and users can disable data sharing for model improvement . Why it matters: OpenAI frames this as a once‑a‑decade chance to rethink the browser, while others argue “the browser is the new operating system” and full‑context is the bottleneck; one observer noted Google’s stock dipped ~3% during the announcement .


Products and capabilities

DeepMind’s Veo 3.1 tops Video Arena

Veo 3.1 is now #1 on both Text‑to‑Video and Image‑to‑Video leaderboards, the first model to surpass a 1400 score. It shows large gains over Veo 3.0 (+30 for text‑to‑video; +70 for image‑to‑video), with access via flow.google and the Gemini app . Why it matters: Clear state‑of‑the‑art signal in a hotly competitive modality .

Grok Imagine adds instant photo‑to‑video and fast upscaling

Grok Imagine can turn photos into short videos in about 17 seconds and now supports one‑click upscaling to HD in under 10 seconds on the web. Elon Musk and xAI highlighted the speed and ease of the new flow . Why it matters: Faster iteration lowers friction for everyday creative use cases.

Google AI Studio: prompt‑to‑production for Gemini

Google announced an “AI‑first” coding experience in AI Studio designed to take developers from prompt to production, with free access at ai.studio/build . Why it matters: Streamlined, no‑cost on‑ramp for AI app creation may accelerate Gemini adoption.

Cognition’s SWE‑grep speeds agentic code search

Cognition introduced SWE‑grep/SWE‑grep‑mini to surface relevant files for coding agents at >2,800 TPS; its Fast Context agent runs four turns of search in under three seconds. Early Windsurf A/Bs show up to 42% faster end‑to‑end agent trajectories with a 1.5% higher accept rate; the design uses limited‑agency, highly parallel tool calls to balance quality, latency, and cost . Why it matters: A pragmatic recipe for faster, more reliable agent workflows in large codebases.

GaussGym: photorealistic locomotion training at scale

GaussGym is an open‑source framework for learning locomotion from pixels, with ultra‑fast parallelized rendering across 4,000+ iPhone, GrandTour, ARKit, and Veo scenes. It targets the sim‑to‑real “reality gap,” with notable excitement from robotics researchers . Why it matters: Rich, scalable visual environments are essential for progress in robot control.

NewsRex: modular, JAX‑powered news recommendation

NewsRex is a state‑of‑the‑art news recommendation framework built on Keras 3 with a JAX backend and XLA acceleration; it’s designed to be extensible and easy to use. Code is available on GitHub . Why it matters: Modern, scalable recsys stacks remain core infrastructure for content platforms.

InVideo integrates Sora 2 for full‑length cinematic video

InVideo, an official partner, integrated OpenAI’s Sora 2 to let users create full‑length cinematic videos without watermarks, overcoming the typical 10–15s watermarked clip limit and regional availability. The integration broadens access to long‑form AI video production . Why it matters: Partner integrations can expand Sora’s reach and practical utility.


Research and methods

DeepSeek‑OCR compresses long context via images

DeepSeek‑OCR renders text as images and feeds visual tokens to an LLM, achieving around 10× fewer tokens at 97% long‑context decoding precision in one summary, and up to 20× compression with 97% OCR accuracy at <10× in vLLM tests. The model avoids a monolithic ViT via a 16× conv compressor, uses an MoE decoder, runs ~2,500 tok/s on A100‑40G, and will have official support in the next vLLM release . Why it matters: A promising path to cheaper long‑context processing and scalable multimodal inference .

NucleusDiff improves drug binding predictions with physics constraints

Caltech and collaborators introduced NucleusDiff, a physics‑informed model that enforces a simple rule: atoms can’t get too close due to repulsive forces. They report significantly improved binding‑affinity prediction in drug design, with the work appearing in a PNAS AI+Chemistry special edition . Why it matters: Injecting basic physics can materially boost scientific ML performance.

Self‑Alignment for Factuality (preprint)

A preprint proposes leveraging an LLM’s self‑evaluation to generate training signals that steer models toward factuality, reducing hallucinations without human intervention. The authors argue this approach can raise factual confidence in high‑stakes domains . Why it matters: Scalable, human‑free alignment signals are attractive for production systems.

Where self‑play shines—and fails—for LLMs

A detailed thread explains why self‑play provably converges to minimax in finite two‑player zero‑sum games (e.g., Go, Poker, StarCraft), but can drift from human utility in other settings (e.g., Ultimatum Game). Teacher‑student self‑play can also be gamed without careful reward shaping; while self‑play has worked in Diplomacy and Hanabi, applying it to real‑world LLM tasks is much harder . Why it matters: Avoid untethered objectives; tie rewards to human usefulness to train agentic models.

Sora 2 still struggles with everyday physics

A compilation highlights motion and physical‑reasoning glitches (e.g., characters stalling on ladders or in revolving doors), suggesting storyboard/keyframe continuity issues. Despite major progress, coherent videos for some routine actions remain challenging . Why it matters: Real‑world physical coherence remains a key benchmark for video models.


Enterprise and adoption

Airbnb favors Alibaba’s Qwen in production for cost and speed

Airbnb’s CEO said the company relies heavily on Qwen due to its quality, speed, and low cost, while OpenAI’s latest models are used less in production. The comment accompanies a push to invest in domestic open models, with a warning that the window to act is small . Why it matters: A clear example of pragmatic model selection based on price‑performance, and growing momentum for open ecosystems.

Perplexity hits #1 app in Brazil

Perplexity became the top app across all categories in Brazil, signaling strong consumer traction beyond early adopter circles . Why it matters: Search‑adjacent AI apps are breaking into mainstream mobile markets.

Applied Intuition announces Stellantis partnership

Applied Intuition disclosed a partnership with Stellantis; details are linked in the company’s announcement . Why it matters: Tooling and simulation vendors continue to embed deeper into automotive programs.


Policy and platforms

WhatsApp changes ahead for 1‑800‑ChatGPT

OpenAI says Meta’s policy changes mean 1‑800‑ChatGPT will stop working on WhatsApp after Jan 15, 2026. Users can save chats by linking their account via the WhatsApp contact, and switch to the ChatGPT apps, web, or Atlas; more details are in OpenAI’s post . Why it matters: Platform policies continue to shape AI distribution and user migration paths.

Anthropic reiterates alignment with U.S. AI goals

Anthropic stated it aims to maximize AI’s benefits, manage risks, and help advance American AI leadership, linking to a CEO statement . Why it matters: Model providers are working to align product roadmaps with policy priorities.

Microsoft’s annual letter: AI is refactoring the stack

Satya Nadella wrote that AI is “radically changing every layer of the tech stack,” and shared Microsoft’s shareholder letter for broader context . Why it matters: Enterprise platforms are reorganizing around AI across products and infrastructure.


Ecosystem signals and commentary

The case for agents

A new talk and essay argue that agents are ChatGPT’s path to 1B MAU, with a framework for “Agent Engineering” and a Latent Space episode for discussion . Why it matters: A growing chorus sees agentic workflows as the next major UX and growth lever.

Distribution and “vibe coding” skepticism

A thread argues OpenAI remains the leader but is ceding percentage share to incumbents with massive distribution, and claims “vibe coding” agents are under‑delivering, leading to churn; Gary Marcus amplified the critique . Why it matters: Product‑market fit for coding agents remains unsettled; distribution advantages loom large.

Timelines and tokenizers: Karpathy’s views

Karpathy reiterates AGI is roughly a decade away, calling timelines “vibes” absent convincing evidence; he also clarified “delete tokenizer” to mean moving beyond text encodings altogether, arguing “pixels is the only way.” Related timestamps for his recent interview provide additional topics . Why it matters: Expect continued debate—and experimentation—around multimodal inputs and capability forecasting.


Tools and learning resources

Hugging Face robotics course released

A 70‑page crash course (LeRobot’s Francesco) covering RL sim/real, ACT, diffusion policies, VLAs/SmolVLA/Pi‑0 is now on the Hugging Face hub; Thomas Wolf called it “absolute gold.” . Why it matters: A concise, practical on‑ramp to modern robot learning methods.

Meta/PyTorch: watch for major updates to TorchForge and Monarch

Soumith Chintala signaled “giant new code pushes” are imminent; repositories are public for early review . Why it matters: Upstream improvements in PyTorch tooling can quickly ripple through research and production stacks.

Build Faster, Learn Faster: AI Hypotheses, Delight-by-Design, and Problem-Oriented Execution
22 October 2025
9 minutes read
Teresa Torres Teresa Torres
Lenny Rachitsky Lenny Rachitsky
Julie Zhuo Julie Zhuo
+11
Actionable PM intelligence: AI’s launch–learn–adjust cycle, delight as a strategic lever, problem‑oriented execution with sequencing, 4D roadmapping and metric decompositions; plus discovery playbooks, real product case studies, career tactics, and tools to ship smarter.

Big Ideas

1) AI features are hypotheses — adopt a launch→listen→adjust build cycle

  • Why it matters: AI outputs are probabilistic, so certainty comes from exposure, not specs .
  • How to apply:
    • Shorten cycles: ship smaller, faster; treat every release as a rep that strengthens judgment .
    • Instrument feedback and model telemetry; iterate based on what you learn .

"Every AI feature is a hypothesis, not a promise."

2) Delight is a strategy (not sprinkles) — design for deep delight

  • Why it matters: Emotionally connected users are ~2× more likely to buy, recommend, and stay (retention, revenue, referral) .
  • How to apply:
    • Blend functional + emotional needs in the core experience (deep delight) .
    • Balance your roadmap: ~50% functionality (low delight), 40% deep delight, 10% surface delight .
    • Measure with longitudinal signals (e.g., HATS) and plan ongoing delight to avoid habituation .

"It's not a nice to have. It's a must have."

3) Organize around problems, then sequence (not score) your way to impact

  • Why it matters: Problem‑oriented teams avoid principal–agent drift; user value compounds the faster you ship .
  • How to apply:
    • Replace job and feature lists with problem descriptions and problem roadmaps; commit to three problems per team per quarter .
    • Sequence work (80% right quickly) and let lower‑priority fires burn to maximize total value .
    • Track learning velocity (show‑and‑tell participation, speed of iteration) .

4) Plan with 4D roadmapping (Vision, Strategy, Customer, Business)

  • Why it matters: Moves beyond scoring (e.g., RICE) to a strategic, balanced roadmap you can defend in annual planning .
  • How to apply: Classify initiatives across Vision, Strategy, Customer requests, and Business input metrics; pressure‑test balance before committing .

5) Run your product by equations — focus on the few levers that matter

  • Why it matters: Most orgs overtrack; ~100 metrics explain ~90% of outcomes. Attention is scarce .
  • How to apply:
    • Decompose top‑line into levers (e.g., Revenue = Users × Impressions per User × Ad Impressions per Impression × Revenue per Ad) .
    • For growth, break MAU into New + Retained + Resurrected; then peel New Users into its funnel to find the highest‑impact step .

6) Browsers are becoming OS‑like — plan for Personal vs Work experiences (with agents)

  • Why it matters: Divergent needs (memory, payments, graphs, permissions) will split roadmaps and KPIs .
  • How to apply: Build persistent personal/enterprise memory, collaboration graphs, permissioning, and agent co‑workers as first‑class citizens .

7) Data quality is product quality for AI

  • Why it matters: Training on viral short‑form social data degraded models (−23% reasoning; −30% long‑context), with representational rot that didn’t fully heal on clean retraining .
  • How to apply: Gate social data, monitor reasoning/long‑context benchmarks continuously, and design rollback/sandbox strategies; include behavioral checks in safety pipelines .

8) Platform risk is real — maintain owned channels

  • Why it matters: Third‑party policy shifts can strand users (e.g., WhatsApp 1‑800‑CHATGPT cutoff in Jan 2026) .
  • How to apply: Provide migration paths to your app/web/browser, preserve conversations, and communicate deadlines and CTAs .

Tactical Playbook

Discovery that drives decisions (field‑ready prompts and triage)

  • Steps:
    1. Ask about the specific problem first; present a concise hypothetical solution; probe flaws/decision factors .
    2. Run a diagnostic set with every interview: did they face it; emotional drain; attempted workarounds; are workarounds broken; expected outcome of better solution .
    3. Triage: No‑Go (domain expertise + no unmet need); Pivot (unmet need + lack expertise); Restart validation (expertise + asked wrong questions) .
    4. Use Mom‑Test‑style prompts: "What are you already trying to solve this problem?" and "What’s stopping you from changing it?" .
    5. Timbergen method to turn problems into behavior stories: Function, Mechanism, Development, Evolution; keep chats to 3–4 focused questions .

Sequencing over scoring (and when to hard‑gate paywalls)

  • Do: Pick three problems; finish before adding more; decide 80% right fast and move .
  • Avoid: Early hard paywalls unless value is a one‑time exchange; deliver the “aha moment” before gating .

Accessibility: make it continuous, justified, and incremental

  • Build early like security; dedicate small sprint capacity and integrate WCAG into designs to avoid tech debt .
  • Prove business impact: run A/B on critical flows (sign‑up/checkout); if positive, you have indisputable evidence .
  • Quantify trade‑offs: treat as a business/legal decision; compare fines vs lost revenue; estimate engineering cost; get explicit buy‑in .
  • Tactics: Break work into spikes then flow tickets into sprints; leverage plugins/SDKs; enlist sales/marketing to show revenue lift .
  • Product ethos: "Accessibility is a craft" and "good accessibility is for everybody" — it improves CX broadly .

Tool adoption and automation: treat as a feature

  • Clarify the job first; many tools are 10‑lb solutions to 1‑lb problems .
  • Discovery before adoption: verify the problem exists and the tool truly solves it; don’t automate a bad process .

GTM for AI in legacy industries (sell motion that works)

  • Answer two questions first: who am I selling to, and how do I get their attention .
  • Start with the smallest customer that has the problem; qualify empowered, incentivized buyers; mid‑market can move fast with the right person .
  • Founder‑led sales first; AI SDRs amplify only once a working process exists .

Recruiting beta users (B2C)

  • Reuse your validation pool as first customers; if missing, study competitor ICPs and recruit via direct chats (Reddit/Discord) without spamming .
  • State the problem and benefits, not features; lead with time/money/stress relief to earn interviews .

Operationalize delight

  • Plan “delight days” and make delight a product pillar; color‑code delighters on the roadmap to maintain a balanced bouquet .
  • Measure feature‑level happiness (HATS) and validate inclusiveness to avoid backlash (e.g., notification misfires) .
  • B2B applies: adopt a Business‑to‑Human lens; different emotions, same need for respect .

AI data hygiene guardrails

  • Gate/label social UGC; monitor reasoning and long‑context regression tests; sandbox and rollback where needed; add tone/personality checks .

Investor communications

  • Default to decks for boards/investors; if asked, send a 15‑minute KPI summary and return to building .
  • Build a repeatable playbook: log calls, what resonated, and common concerns to refine updates .

Case Studies & Lessons

Kong: pivoting from API marketplace to connectivity infrastructure

  • What happened: Marketplace constraints (power concentration, lack of exclusivity, quality blame, poor unit economics) pushed a pivot; the team built and open‑sourced an API engine (Kong), later scaling from < $1M ARR to ~$10M in a year and beyond, with a control‑plane/data‑plane pattern suited to microservices .
  • So what: The same gateway abstraction now applies to AI — dispatch and govern traffic across many LLMs/agents rather than wiring each endpoint by hand .

Granola: outages create roadmap clarity

  • What happened: An AWS outage triggered many user messages; the team prioritized a fully offline mode .
  • So what: Outage‑driven demand is strong PMF signal; invest where pain is acute .

Mandible → Firecall (YC): find the component users crave

  • What happened: Despite six‑figure ARR, a crawler component built for internal needs saw stronger pull from AI agent builders; experiments confirmed demand, and the team pivoted to the component .
  • So what: If a sub‑system shows outsized pull, test it quickly — conviction beats inertia.

Autonomous NPS analysis (Sachin Rekhi)

  • What happened: A Claude Code agent ingested raw survey CSV, calculated NPS/trends, segmented with significance tests, summarized verbatims, surfaced improvements, and produced dashboards + exec slides — with zero human intervention .
  • So what: Equips generalists to deliver specialist‑level analysis and stakeholder‑ready artifacts in minutes . Validate outputs with the AI‑hypothesis mindset above.

Expert‑in‑the‑loop for high‑assurance AI

  • What happened: Researchers used ChatGPT to solve a convex optimization problem, then “vibecoded” a Lean proof with GPT‑5 under significant human feedback; ChatGPT was listed as a co‑author .
  • So what: For critical tasks, pair models with domain experts and formal verification.

Career Corner

Build AI fluency by building, not cert collecting

  • Why: The field shifts too fast for rigid curricula; interviews ask, "What have you built?" .
  • How: Prototype with n8n or similar to stitch flows/agents quickly; avoid branding as “AI PM” — be a PM who knows AI and your org’s data .
  • Optional path: If coding is weak, learn to prompt coding tools (e.g., generate MVPs) or start basic programming first .

Differentiate with a PM portfolio (only ~17% have one)

  • What to include: headline (your candidate–market fit), navigable deep dives, evidence of work products, and easy contact CTAs .
  • Extras: video sales letter; open‑source artifacts; personal passions .

Job search realities (optimize for signal)

  • Expect: LinkedIn can be a black hole with relisted, high‑applicant roles; recruiters sometimes post speculative roles to use platform credits .
  • Tactics: Apply on company sites, network into smaller firms, and calibrate resume keywords to the role (e.g., database/platform for infra PMs) .

Lead like this

  • Build environments where high performers thrive without you; loyalty reflects psychological safety for ambition .
  • Strengthen judgment by shipping often; teams that wait to ship are waiting to learn .

Early‑stage roles: be clear on founder vs early employee

  • Rule of thumb: Employees bring labor; co‑founders bring capital (money, customers, or investor access) — calibrate asks accordingly .
  • If “cofounder” isn’t offered: negotiate meaningful equity, decision influence, and early‑hire perks; preserve relationships and walk if needed .
  • Expectation setting: Cofounder title typically requires unique, hard‑to‑find technical value or financing; don’t mix friendship with business .

Mindsets from the field

  • Prioritization in hard times is survival; “no one knows the right answer” unlocks agency; early user interviews transform practice .

Tools & Resources

  • Atlas (OpenAI): a browser reimagined around AI/ChatGPT with page‑aware chat and agent mode; available on macOS (Windows coming). Download at chatgpt.com/atlas .
  • 4D Roadmapping workshop (free): Annual planning with Vision/Strategy/Customer/Business via Productboard (Oct 23, 9am PT) .
  • AI tool “buckets” for PMs (Aakash Gupta): prototyping, customer intelligence, vibe coding/experimentation, dictation, meetings, LLMs, AI coding, agent platforms (simple + full‑featured) — leaders should license a complete stack .
  • No/low‑code automation:
    • n8n for fast agent/LLM pipelines and workflows .
    • Tines as a core automation fabric (forms, cross‑tool data flows: Jira/Productboard/Figma) .
  • Meeting capture: Granola, Fathom, Otter.ai, tl;dv, Fireflies to summarize and track next steps .
  • User‑research crib sheet: r/userexperience interview prompts wiki .
  • Delight by design (talk): frameworks, HATS, and the 50/40/10 roadmap mix — great primer for embedding delight into process .
  • Analytics decomposition walkthrough (Julie Zhuo): model your business as equations; focus on ~100 metrics; break MAU and revenue into actionable levers .

"Teams that wait to ship are really waiting to learn."

AI browsers arrive, optical context compression accelerates, and video models reset benchmarks
22 October 2025
7 minutes read
AI High Signal AI High Signal
OpenAI launches ChatGPT Atlas, pushing agentic browsing into the mainstream amid security scrutiny. Text‑as‑image approaches (DeepSeek‑OCR, Glyph) accelerate context compression; Veo 3.1 tops video leaderboards; DeepSeek v3.2 targets long‑context cost; LangChain raises $125M to build agent platforms; Qwen3‑VL expands edge‑to‑cloud multimodal options.

Top Stories

Why it matters: Core interfaces, compression methods, and frontier models are shifting how people use and build with AI.

  1. OpenAI debuts ChatGPT Atlas, an AI-first web browser with built‑in agents
  • Atlas brings ChatGPT into the browser UI: an “Ask ChatGPT” sidebar that sees the current page, in‑place writing suggestions, and tab control; an Agent mode can take actions (e.g., navigate, populate carts) as you browse . It’s rolling out on macOS (Windows, iOS, Android “coming soon”); Agent mode is in preview for Plus/Pro/Business . Safety controls include an incognito mode and settings to restrict use of logged‑in accounts .
  • Strategic context: Commentators frame this as the start of an “AI browser war” and a shift from chatbot to “OS‑like” assistants owning the interface . Early user feedback is mixed—some report it’s helpful for papers and Jupyter, while others found Agent mode immature .
  • Security lens: Brave disclosed broader risks of indirect prompt injections in AI browsers (not specific to Atlas), underscoring the need for hardening agentic browsing .

“This is one of those ‘feel the AGI’ moments.”

  1. Text‑as‑image “optical compression” surges: DeepSeek‑OCR and Zhipu’s Glyph
  • DeepSeek‑OCR shows text rendered as images can compress long context substantially—reporting up to 20× visual context compression with ~97% OCR accuracy at <10× and, at a fixed 97% decoding precision, needing ~10× fewer visual tokens than text . vLLM is adding official support to ease deployment .
  • Zhipu’s concurrent “Glyph” reports 3–4× context compression and sharp infilling cost reductions without quality loss on long‑context QA/summarization; decoding savings are more modest with DSA . Analysts note the biggest gains appear in input‑heavy agent workflows (e.g., deep research) .
  • Debate: Karpathy argues pixels as inputs can eliminate tokenizer baggage at the input stage . Others say similar compression is achievable by squeezing text tokens (e.g., 500× prompt compression) and caution against attributing the wins to images per se; some also argue the idea has prior art and should be cited accordingly .
  1. Video takes a step: Veo 3.1 tops public leaderboards and opens to creators
  • Google DeepMind’s Veo 3.1 reached #1 on both text‑to‑video and image‑to‑video leaderboards, the first model to break 1400 on Video Arena (+30 vs 3.0) .
  • Product details: pricing from $0.15/second with audio, guided generation with up to 3 reference images, extension of existing clips, and frame‑defined transitions; it’s a paid feature, available in AI Studio .
  1. DeepSeek v3.2 (685B MoE) targets long‑context cost and speed
  • The new model attends to the most relevant tokens, reporting 2–3× faster long‑context inference and 6–7× cheaper processing than v3.1; weights carry an MIT license, API pricing is $0.28/$0.028/$0.42 per 1M input/cached/output tokens, with optimization for Huawei and other China chips; performance is similar overall to v3.1, with small gains on coding/agentic tasks and slight dips on some science/math .
  1. LangChain raises $125M to build an agent‑engineering platform
  • Funding at a $1.25B valuation supports an agent‑centric roadmap, including a LangSmith insights agent, 1.0 releases of LangChain/LangGraph, and a no‑code agent builder . The team positions this as moving from generation to action with robust, observable, secure agent apps .

Research & Innovation

Why it matters: New methods for representation, training, and safety can translate into faster, more reliable systems.

  • Mechanistic insight: LLMs track “position” on a helix to decide line breaks

    • For fixed‑width line breaking, researchers traced a model’s internal “place‑cell‑like” features and found positions lie on a smooth 6D helix; the model rotates/aligns helices to estimate remaining space, assembling this with contributions from multiple attention heads .
  • Parallelizing recurrent‑depth models with diffusion forcing (no retraining)

    • Applying diffusion‑style sampling to recurrent models yields ~5× inference speedups by decoding incomplete latent states in parallel with adaptive fallback to sequential decoding .
  • Continual learning via “memory layers” (Meta collaboration)

    • Sparsely fine‑tuning input‑independent KV “memory layers” retained new facts with far less forgetting (−11%) versus full FT (−89%) or LoRA (−71%) on held‑out tasks .
  • Automatic prompt optimization with RL (Prompt‑MII)

    • An RL‑trained LM ingests task examples and emits a task description prompt, outperforming strong ICL/GEPA baselines with 13× fewer tokens across 3,000+ HF classification datasets .
  • Auditing agents detect adversarial fine‑tuning

    • “Auditing agents” that search training data and query the in‑training model detected several existing fine‑tuning attacks with low false positives, addressing growing risk from more powerful fine‑tuning APIs .

Products & Launches

Why it matters: New releases are expanding capabilities for developers and creators.

  • Qwen3‑VL‑2B and Qwen3‑VL‑32B (edge→cloud, FP8, Thinking/Instr.)

    • Qwen reports the 32B model outperforming GPT‑5 mini and Claude 4 Sonnet across STEM, VQA, OCR, video understanding, and agent tasks; FP8 variants and “Thinking”/“Instruct” versions are available; vLLM announced support .
  • Together AI adds video/image generation via Runware

    • 20+ video models (e.g., Sora 2, Veo 3) and 15+ image models are available through the same APIs used for text, with per‑model transparent pricing .
  • Runway “Workflows”: node‑based tools inside Runway

    • Build custom node graphs chaining models/modalities/steps for more control; available now for Creative Partners/Enterprise, coming to all plans .
  • Prime Intellect Inference API for environment evals

    • One endpoint, 56 models (and growing), unified billing, a rewards/rollouts viewer, and a simple prime env eval to run evaluations; share results on the Hub .
  • Cognition’s Fast Context (SWE‑grep)

    • Limited‑turn, parallel subagents surface relevant code context ~20× faster; A/Bs show up to 42% faster end‑to‑end agent trajectories with slightly higher accept rates; 4‑turn agentic search runs in <3s at ~2,800 tok/s .
  • Chandra OCR (open source)

    • OCR with full layout, image/diagram captioning, handwriting/forms/tables, plus vLLM/transformers integration; quickstart available; notes include limitations in some math, languages, and rotated pages .
  • MagicPath adds image‑referenced “Variants & Flows”

    • Create multiple variants and use images as references for variants/flows; code examples included .
  • Glif agents for creators

    • Transition agent tutorials for phone footage and a new agent that adds Attenborough‑style narration/music to uploaded videos (supports YouTube/X/TikTok links) .
  • kvcached: elastic GPU sharing for LLMs

    • Share unused KV‑cache blocks across multiple models on one GPU; works directly with vLLM .

Industry Moves

Why it matters: Capital and compute access determine who can train and deploy the next generation of systems.

  • Anthropic–Google: compute talks reportedly in the “high tens of billions”

    • Bloomberg‑cited reports point to a large Google Cloud compute deal under discussion .
  • LangChain raises $125M at $1.25B valuation

    • Funds will accelerate an agent‑engineering platform (LangChain/LangGraph 1.0, LangSmith insights, no‑code builder) .
  • Sakana AI in talks to raise $100M at $2.5B valuation

    • The company focuses on Japan‑specialized models “inspired by evolution” .
  • Replit growth signal

    • Company projects $1B revenue by end of 2026 and is “closing in on $250M ARR,” after recently announcing $150M ARR .
  • Report: OpenAI “Project Mercury” targets junior banker workflows

    • A thread reports OpenAI has hired 100+ ex‑bankers at $150/hour to build models/prompts for tasks like IPOs and restructurings; contractors submit one model per week .

Policy & Regulation (plus Security)

Why it matters: Rules, platform policies, and security issues shape what can be deployed—and how safely.

  • U.S. chip controls vs. China’s rare earth export controls

    • Analysts note China’s controls are far broader than any U.S. measures; a U.S. control at similar scope would license any moderately advanced chip, any product containing such chips, and most fab equipment worldwide—whereas current U.S. controls are targeted (high‑end AI chips to 47 countries; certain fab gear to 24) .
  • AI browser security

    • Brave disclosed that indirect prompt injections are a systemic issue in AI‑powered browsers, publishing more vulnerabilities beyond a prior Comet finding .
  • WhatsApp policy change for ChatGPT access

    • Meta’s policy change will disable “1‑800‑ChatGPT” on WhatsApp after Jan 15, 2026; OpenAI directs users to migrate to its app, web, or Atlas browser and to link accounts to save chats .

Quick Takes

Why it matters: Smaller signals often foreshadow where adoption and research are heading.

  • SWE‑Bench Pro update: SoTA models now surpass 40% pass rate; Anthropic swept top three (Claude 4.5 Sonnet, Claude 4 Sonnet, Claude 4.5 Haiku) .
  • NVIDIA GTC: Jensen Huang keynote Oct 28, 8:30 a.m. ET; focus on startups, infra, science; livestream link provided .
  • Apache TVM FFI: New open ABI/FFI enables ML compilers, libraries, and frameworks to interoperate across Python/C++/Rust—an interop layer welcomed by vLLM .
  • Copilot Actions (Windows): UI automation demo (extract PDF data, organize files, sort photos) coming soon to Windows Insiders via Copilot Labs .
  • GLM‑4.6 (Reasoning) providers: Baseten led TTFAT at 19.4s and output at 104 tok/s; pricing is similar across providers and full 200k context is supported .
  • DeepSeek‑OCR at scale: One project extracted datasets from tables/charts across 500k+ arXiv papers for ~$1,000 using DeepSeek‑OCR (a Mistral OCR approach was estimated higher) .
  • GaussGym: open‑source locomotion‑from‑pixels framework with ultra‑fast photorealistic rendering across 4,000+ scenes; endorsed for training locomotion environments .
  • Agents4Science (Oct 22): Conference showcases AI agents that author and review papers; registration link shared .
  • Perplexity: Ranked #1 app across all categories in Brazil in a shared chart snapshot .
Andreessen highlights California Forever’s city‑building plan
22 October 2025
1 minute read
Marc Andreessen 🇺🇸 Marc Andreessen 🇺🇸
One standout, high-signal pick: Marc Andreessen highlights an All-In Pod clip on California Forever’s plan to build a new American city, featuring Jan Sramek, with clear reasons it matters.

Top pick

  • Title: California Forever: The Startup Building America’s Next Great City
  • Content type: Video clip
  • Author/creator: theallinpod (X post)
  • Link/URL:https://x.com/theallinpod/status/1980726875849736518
  • Recommended by: Marc Andreessen

"It’s time to m—–f—— build! 🇺🇸"

  • What it covers:
    • (0:00) Introducing Jan Sramek
    • (0:51) How California Forever is building America’s next great city
  • Featuring: Jan Sramek (@jansramek), CAForever (@CAForever)
  • Why it matters: Concise look at a live attempt to build a new American city—useful context for the current push to “build” ambitious projects
Soy Rally, Cattle Volatility, and Autonomy at Scale: What to Act on Now
22 October 2025
8 minutes read
Tarım Editörü Tarım Editörü
Farm Journal Farm Journal
Brownfield Ag News Brownfield Ag News
+10
Actionable ag intel on grain rallies, beef policy volatility, and technology that’s delivering in the field. Covers U.S., Canada, Brazil, Argentina, Australia, Paraguay, Turkey: market drivers, proven innovations, regional shifts, best practices, input trends, and near‑term planning signals.

Market Movers

  • Soybeans (U.S./China/Brazil)

    • Futures rallied roughly 35¢ off last week’s lows, with basis and spreads firming as harvest nears its final quarter and end-users remain underbought . Producer selling is also tied to November futures expiry and basis contracts that must be cleaned up at month-end . Easing U.S.–China rhetoric has supported the bounce; during the first trade war China bought 14–15 MMT, and the market is watching for 10–12 MMT this time if talks proceed . Brazilian basis is “on fire,” making beans relatively expensive for Chinese buyers .
  • Corn (U.S./Global)

    • Spreads continue to strengthen and cash signals suggest corn needs to hold near the $4.20 area; flat price met technical resistance near $4.25 . Export inspections are running at record weekly levels; U.S. corn is the cheapest globally through February–March and recently undercut Brazilian and Argentine offers . National yield indications have settled near 181–184 bu/acre (not 188), with localized disease issues (southern rust, tar spot) .
  • Wheat (Russia/EU/U.S.)

    • Russian ICAR raised production expectations, pressuring prices; motif (MATIF) spreads have been bull-spreading even as U.S. wheat gave back recent gains on a stronger dollar and technical selling .
  • Cattle and Beef (U.S./Argentina/Brazil)

    • Volatility followed talk of buying Argentine beef to cool U.S. retail prices. Market participants want details before turning broadly bearish; technical support is watched near 360 (feeders) and ~240 (live) . Argentina supplies a minor share (~2.1%) of U.S. beef imports; analysts say tariff cuts on Brazil (a much larger source) would be a more impactful lever . Industry groups called the import talk harmful to U.S. producers .

“The president ought to keep his mouth shut about beef prices because it has a negative consequence for the cattle market.”

  • Hogs (U.S.)

    • After nearly 15 down sessions, a technical flush occurred; seasonally cash is expected softer, but a modest bounce could confirm a near‑term bottom. Watch weekly slaughter numbers .
  • Cotton (U.S./Global)

    • Plains producers anticipate better yields than the prior three drought years and good irrigated grades, but very low prices and high inputs remain a squeeze; cotton demand has not fully recovered since COVID and trade issues persist . Additional color from producers cites cotton down ~$0.10/lb year‑to‑date and ~$0.30/lb year‑over‑year amid reduced Chinese demand and cottonseed byproduct weakness .
  • Canada/Ontario grains

    • Large crops are muting upside risk for soybeans, corn, and wheat .

Innovation Spotlight

  • Autonomous field operations (U.S./Australia)
    • Bonsai’s AR500 (200 hp) retrofit enables ~80–90% task automation on existing tractors, lowering labor and potentially capex/opex by reimagining form factors around autonomy . Operations in Australia report extended run‑times (e.g., 8.3‑m mowers “flashers” operating ~18 hours/day) and utilization gains beyond typical 10–12 hour shifts . Over 60 machines are running in Australia where labor shortages and many seasonal passes accelerate adoption .
    • A single transformer‑based, temporal AI model is being deployed across crops (open‑field, strawberry, lettuce) for real‑time perception; research led by OpenCV founder Gary Bradski .
    • Example ROI lever: using a shuttle truck power‑plant approach can avoid a ~$130,000 purpose purchase in almond harvest .
  • Aerial application drones (U.S.)

    • EA Vision J150: 20‑gal tank, four‑nozzle system; typical 36–38 ft operating swath (tested >40 ft in ideal conditions) and 60–80 acres/hour at 2 gal/acre on half‑mile runs at ~30 mph . Basic package ~$40,500 (drone, three batteries, charger, remote, liquid tank), plus generator and transport; operators commonly cycle three batteries . With shortages of planes/ground rigs this season (two‑week waits reported), growers hired drones to fill gaps .
  • Real‑time soil/air monitoring (China/Urban agriculture)

    • A LoRaWAN soil–air EC/TH sensor ran stably ~578 m from the gateway, transmitting every 10 minutes and buffering data during network dropouts; probe installation at 10–15 cm depth . Recorded soil moisture spanned ~25% RH (dry) to ~96% RH (waterlogged), aiding irrigation decisions; air readings aligned with local weather .

Regional Developments

  • U.S. (Texas High Plains cotton)

    • USDA’s Lubbock office classed 2,700 bales in the first report; initial grades “decent,” with better yields than the prior three drought years; irrigation remains supplemental due to limited capacity .
  • U.S. (Beef policy)

    • Importing Argentine beef would have limited impact on U.S. price inflation given Argentina’s small U.S. share (~2.1%); Brazil was the top supplier earlier this year until a 50% tariff cut imports from ~30,000 to ~7,000 mt/month . Analysts say lowering Brazil’s tariff would be a simpler lever .
  • Paraguay (Forestry)

    • Planted forest area reached ~339,000 ha by Dec 2024 (+66% vs. 2022), adding ~70,000 ha/year since 2022; exports of veneers/plywood set records, but logistics remain a key constraint . A major cellulose factory is planned in Concepción; producers highlight legal/environmental compliance, biodiversity measures, and local‑community engagement .
  • Turkey (Olives/olive oil)

    • Harvest has begun; upcoming analyses will track production costs, extra‑virgin producer prices, carryover stocks, domestic demand and shelf prices, and export market developments .
  • U.S. (Poultry health)

    • Minnesota turkey farms report additional avian flu cases, posing localized supply risks .

Best Practices (actionable)

  • Grain merchandising (U.S.)

    • Lock price before planting to set a $/acre plan; many producers routinely contract ~90% after mapping exact input costs (example breakevens: soy $8.75/bu; corn $3.30/bu) . Use accumulator tables and off‑season storage to seek premiums; monitor basis/spreads closely—especially over the next 30–40 days as commercials roll hedges and delivery timing tightens . Be cautious with “free DP” and consider minimum‑price structures given current carries .
  • Risk management (U.S.)

    • Crop insurance: prevented‑planting paired with alternative forage (e.g., sorghum) can preserve revenue and serve dairy customers in wet years . Insurance helps manage weather risks (hail/too wet) and provides peace of mind .
  • Livestock — hay efficiency & pasture protection (U.S.)

    • On small acreage with Dexter cattle, hay‑only finishing from ~600 lb to ~700–750 lb in ~1 year was feasible but winter hay waste and pasture damage were significant; mitigation includes a concrete pad and head‑gates to control access. Pasture recovery after trampling took ~2 years .
  • Predator management (U.S.)

    • LGDs can be trained to respect boundaries (tracking/training collars, reinforcement by older dogs), but roaming and liability remain real risks without fencing or supervision . If not raised with stock, consider a porch‑content guard dog instead of an LGD for mixed‑use homesteads .
  • Barn and home insect control (U.S.)

    • Daily cobweb removal reduces disease risk in barns; pyrethroid perimeter sprays (e.g., Talstar, Tempo) offer weeks of residual and can be applied around exterior bases, windows/doors, and basements per label .
  • Soil health and irrigation

    • Deploy low‑power IoT sensors to monitor soil moisture/EC in situ (10–15 cm depth; 10‑minute intervals) to prevent stress or waterlogging and optimize irrigation .
    • Build soil with raw‑material mulches (lawn clippings, leaves), green manures, and perennial cover; many systems add compost just once in a 4‑year rotation .
    • When sourcing horse manure, avoid material from aminopyralid/picloram–treated fields and confirm dewormer status with handlers; both can compromise compost and crops .
  • Root crop storage (cold room)

    • Carrots/turnips can be stored through winter in slightly damp sawdust (“humid, not wet”), with beets reported to keep >1 year; manage humidity to reduce mold .
  • Outbuilding fire alerts

    • For stables/shops requiring phone notifications, confirm backhaul (Wi‑Fi/cellular) or plan for wired runs to a hub; range/connectivity limits affect remote sensors .
  • Feed efficiency

    • Sprout or ferment wet grains/brewers’ grains to improve utilization; drying thin layers on black plastic with regular stirring can work in ~3 days (watch for rain) . Wet grain is usually poor seed but acceptable as feed; compare dryer energy cost/payoff before oven‑drying .
    • Backyard poultry: chickens readily consume sprouted corn .
    • Formulate homestead feeds above industrial minimum protein targets (e.g., layers often 16% in industrial settings) to account for higher activity and mixing error; raise the proportion of protein ingredients (e.g., soy/peas) within sustainable cost limits .

Input Markets

  • Cost inflation and risk (U.S.)

    • Producers report inputs—not commodity prices—as the main squeeze: insurance premiums have tripled in some cases despite no claims; fuel, tires, tractor maintenance, and mineral costs are higher .
    • Finance strategy: secure pre‑approval to lock input purchases and maximize discounts .
  • Fertilizer/nitrogen management

    • For fall‑applied nitrogen on corn, stabilizers such as N‑Serve are promoted to keep N in the soil profile .
  • Feed and byproducts

    • Breweries often provide wet grains free; plan fermentation or low‑cost drying methods to avoid spoilage .
    • Evaluate grain‑dryer energy costs versus value lift before drying wet grain; livestock typically accept it as‑is, and neighbors with pigs may take excess .
  • Crop protection/home perimeter

    • Pyrethroid insecticides (Tempo, Talstar) with residual control are widely labeled across settings; follow labels and integrate with sanitation .

Forward Outlook

  • China demand and calendar dynamics (U.S./China)

    • Soybean price action is highly sensitive to U.S.–China headlines; focus on the late‑month meeting and potential 10–12 MMT purchase signals. Near term, basis/spreads and end‑of‑month cleanup of basis contracts will drive cash opportunity over the next 30–40 days .
  • Beef policy path (U.S./Argentina/Brazil)

    • Argentine imports alone are too small to reset U.S. price inflation; watch for possible tariff moves on Brazil (larger lever) and any formal policy “announcements coming” from the administration . Cattle supply tightness after drought remains a structural factor .
  • Application capacity

    • Expect continued tightness in aerial/ground application windows; growers reported two‑week waits for planes and drones this season—on‑farm drone capacity mitigates risk .
  • Cotton (U.S.)

    • Plains stakeholders do not anticipate major acreage changes in 2026; ongoing low prices versus inputs and trade/demand headwinds keep margins tight .
  • Animal health

    • Monitor avian flu developments in Minnesota turkeys ahead of holiday demand planning .
  • Biofuels

    • API’s opposition to E15 legislation—reversing prior support—signals policy uncertainty for ethanol margins .
  • Land income and grid constraints (U.S.)

    • A rush to start renewable projects before 2027 credit sunsets is pushing aggressive developer terms, but transmission bottlenecks and interconnection costs remain chronic; landowners should negotiate contract language cautiously and price long‑duration encumbrances appropriately .
Airline and retail acceptance broaden as Lightning rails and self‑custody tools advance
22 October 2025
5 minutes read
Wallet of Satoshi Wallet of Satoshi
Bitcoin Ekasi Bitcoin Ekasi
Money⚡️Badger Money⚡️Badger
+9
Airline and retail checkouts advanced in South Africa and El Salvador, Finland added the most‑northerly merchant, and new Lightning on‑ramps and self‑custody tooling emerged. Grassroots activity across Africa and Peru highlights circular‑economy and humanitarian use cases.

Major Adoption News

  • FlySafair (South Africa) now accepts Bitcoin for flight bookings. Customers can request a Zapper QR at checkout, scan with the MoneyBadger app, and complete payment from any Lightning wallet .

    • Significance: Extends Bitcoin payments into the airline vertical and showcases a QR-aggregator-to-Lightning flow that reduces merchant integration complexity.
  • Starbucks (El Salvador) acceptance observed at the El Encuentro mall location in San Blas, supported by an in-store video and the shop’s Google Maps listing .

    • Significance: A global brand accepting Bitcoin at a specific location increases consumer visibility of routine retail payments.
  • Bootlegger café (Gardens Centre, Cape Town, South Africa) processed a breakfast purchase in Bitcoin; on-the-spot staff onboarding used the MoneyBadger app, and 2,600 sats were sent to the waitress. The payer received 5,000 sats as a thank-you for product testing, with the transaction described as “fast, seamless” .

    • Significance: Demonstrates live, in-venue Lightning transactions and rapid staff enablement—key for scaling everyday retail acceptance.
  • New “most northerly” Bitcoin-accepting merchant reported in Finland, approximately 400 km inside the Arctic Circle, with listing on BTCmap .

    • Significance: Expands geographic breadth of the merchant network, signaling resilience and reach across extreme locations.
  • BurgerChickenCo (Awka, Nigeria) accepted Bitcoin for a meal; the community shared a Lightning address for tips/donations (burgerchickenandco@blink.sv) and framed it as part of building a local circular economy .

    • Significance: Reinforces grassroots, real-world spend in food service and community-led merchant activation.
  • Bitcoin Ekasi will sell a limited batch of hand-crafted mini surfboards at the Lugano Plan ₿ event (24–25 Oct), with proceeds reinvested into the Vuselela project to create jobs and sustain a Bitcoin circular economy (Lugano, Switzerland) .

    • Significance: Links commerce to circular-economy funding, highlighting economic development use cases tied to Bitcoin.

Payment Infrastructure

  • QR-to-Lightning rails in South Africa: Zapper QR codes combined with the MoneyBadger app enable Lightning payments at merchants such as FlySafair and Bootlegger .

    • Significance: Lowers deployment friction by leveraging existing QR infrastructure while enabling Lightning settlement from customer wallets.
  • South Africa Lightning on-ramps and costs: Users can fund Lightning wallets (e.g., Blink, Wallet of Satoshi) with on-chain BTC, though some wallets may require manual setup . Fees can be material for small amounts (e.g., Blink: 5,000 sats for payments below 1,000,000 sats; Wallet of Satoshi: 1.95% network fee), making frequent small top-ups costly . Major local exchanges Luno and VALR do not yet support Lightning deposits/withdrawals, pushing users to on-chain funding . A tested workaround is using CapeCrypto, with step-by-step guidance published; the author later noted Binance can also move BTC onto Lightning .

    • Significance: On-ramp frictions persist for micro-spends; interim solutions (local providers and major exchanges with Lightning support) help reduce costs and complexity.
  • Wallet innovation: Wallet of Satoshi announced a “new self custody Wallet of Satoshi” and emphasized ongoing usability improvements; a sats giveaway accompanied the launch communications .

    • Significance: Movement toward self-custody options while prioritizing simplicity can broaden the addressable user base for payments.
  • Skills enablement: YakiHonne x School of Satoshi will host an online Nostr workshop (Sat, 25 Oct 2025, 2 PM GMT+1) covering how to build on Nostr, experience YakiHonne, and “use Bitcoin payments & earn sats” .

    • Significance: Education on open-web protocols and Lightning-aligned earning flows supports developer and user onboarding in emerging ecosystems.
  • Community infrastructure building (South Africa): Thulisa founded the BitcoinLoxion circular economy in Khayelitsha and spoke at Adopting Bitcoin Cape Town; talk link provided .

    • Significance: Grassroots ecosystem-building and knowledge sharing create local capacity for sustained adoption.

Regulatory Landscape

  • No new regulatory changes or policy updates surfaced in today’s sources.

Usage Metrics

  • Service-sector earnings via Lightning (anecdotal):

“i’ve been paying my hairdresser with lightning for almost five years and she showed me her balance today and she’s stacked a little over $3900 in BTC”

  • Location/sector: Personal care services. Indicator: multi-year Lightning income accrual. Contextual note: a reply framed this as a recurring pattern (“Many such cases”) .

  • In-venue microtransactions (Cape Town, South Africa): 2,600 sats sent to a waitress during a Bitcoin-paid breakfast; 5,000 sats sent to the tester for feedback; described as completed in seconds .

  • Lightning address usage (Awka, Nigeria): Merchant shared burgerchickenandco@blink.sv for tips, indicating Lightning-address adoption in local commerce .

  • Note: Sources provided illustrative case studies rather than aggregated transaction volumes or regional totals.

Emerging Markets

  • Kenya: A founder from Kenya represented the country at TBD by Trezor; a video highlighted unemployment, the gig economy, and how Bitcoin can open new job opportunities . In Kitui, an artist was encouraged to monetize his work via Bitcoin, positioning art + Bitcoin as a path to empowerment; local messaging emphasized “Bitcoin is Money” and “Bitcoin is Borderless” .

    • Significance: Bitcoin-facilitated earnings channels for creatives and gig workers support income generation where traditional opportunities are limited.
  • Uganda: The Nostr + Bitcoin payments workshop aims to help participants build, earn, and connect in the open web economy .

    • Significance: Practical training on Lightning-aligned applications is key to bottom-up adoption.
  • Nigeria: Routine purchases via Lightning (e.g., BurgerChickenCo in Awka) are framed as “real adoption” with Lightning addresses shared for community support .

    • Significance: Everyday spend across food service reinforces circular-economy dynamics.
  • Peru: Motiv Peru’s “Life Saving Steps” program used Bitcoin to provide shoes for children in the Cusco highlands, emphasizing community impact .

    • Significance: Humanitarian deployments illustrate Bitcoin’s utility for directed aid and local needs.
  • South Africa: Multiple signals—airline bookings (FlySafair), café payments (Bootlegger), community-building in Khayelitsha (BitcoinLoxion)—underscore growing infrastructure and merchant readiness .

    • Significance: Convergence of merchant enablement, payment rails, and community leadership positions South Africa as an active testbed for Bitcoin payments.

Adoption Outlook

Momentum this cycle is characterized by: (1) broader vertical coverage (airline, retail coffee, cafes), (2) pragmatic rails that bridge existing QR infrastructure to Lightning, (3) continued friction on on-ramps for small-value transactions in some markets alongside emerging workarounds, and (4) strong grassroots activity across African and Latin American communities. Geographic reach continues to widen—from El Salvador’s retail checkouts to an Arctic Circle merchant in Finland—while education and self-custody tooling aim to simplify user experiences and sustain real-world spending .

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Atlas shifts the browser paradigm; video SOTA and context compression advance
22 October 2025
7 minutes read
OpenAI OpenAI
Anthropic Anthropic
Gary Marcus Gary Marcus
+19
OpenAI’s ChatGPT Atlas arrives as an AI‑native browser with agents and memory, while DeepMind’s Veo 3.1 leads video benchmarks and DeepSeek‑OCR advances long‑context efficiency. Also: Airbnb’s model choices, fast agentic code search, new robotics and recsys tools, and key policy and platform shifts.

Atlas reframes the browser around agents and memory

OpenAI launches ChatGPT Atlas on macOS

OpenAI introduced ChatGPT Atlas, an AI‑first browser that makes chat the primary interface, adds page‑aware “Ask ChatGPT,” optional browser memories, and an Agent mode that can act inside your tabs. It’s rolling out worldwide on macOS today; Agent mode is in preview for Plus, Pro, and Business users, with Windows, iOS, and Android coming soon .

“ChatGPT now can take actions for you… [it] will actually bring up [a] little cursor [and] start clicking around when you ask it to.”

OpenAI emphasizes controls and safety: the agent operates only in the tabs you grant, can’t execute local code, and actions require approval; memories are opt‑in and manageable. Independent testing also flagged prompt‑injection risks to watch for, and users can disable data sharing for model improvement . Why it matters: OpenAI frames this as a once‑a‑decade chance to rethink the browser, while others argue “the browser is the new operating system” and full‑context is the bottleneck; one observer noted Google’s stock dipped ~3% during the announcement .


Products and capabilities

DeepMind’s Veo 3.1 tops Video Arena

Veo 3.1 is now #1 on both Text‑to‑Video and Image‑to‑Video leaderboards, the first model to surpass a 1400 score. It shows large gains over Veo 3.0 (+30 for text‑to‑video; +70 for image‑to‑video), with access via flow.google and the Gemini app . Why it matters: Clear state‑of‑the‑art signal in a hotly competitive modality .

Grok Imagine adds instant photo‑to‑video and fast upscaling

Grok Imagine can turn photos into short videos in about 17 seconds and now supports one‑click upscaling to HD in under 10 seconds on the web. Elon Musk and xAI highlighted the speed and ease of the new flow . Why it matters: Faster iteration lowers friction for everyday creative use cases.

Google AI Studio: prompt‑to‑production for Gemini

Google announced an “AI‑first” coding experience in AI Studio designed to take developers from prompt to production, with free access at ai.studio/build . Why it matters: Streamlined, no‑cost on‑ramp for AI app creation may accelerate Gemini adoption.

Cognition’s SWE‑grep speeds agentic code search

Cognition introduced SWE‑grep/SWE‑grep‑mini to surface relevant files for coding agents at >2,800 TPS; its Fast Context agent runs four turns of search in under three seconds. Early Windsurf A/Bs show up to 42% faster end‑to‑end agent trajectories with a 1.5% higher accept rate; the design uses limited‑agency, highly parallel tool calls to balance quality, latency, and cost . Why it matters: A pragmatic recipe for faster, more reliable agent workflows in large codebases.

GaussGym: photorealistic locomotion training at scale

GaussGym is an open‑source framework for learning locomotion from pixels, with ultra‑fast parallelized rendering across 4,000+ iPhone, GrandTour, ARKit, and Veo scenes. It targets the sim‑to‑real “reality gap,” with notable excitement from robotics researchers . Why it matters: Rich, scalable visual environments are essential for progress in robot control.

NewsRex: modular, JAX‑powered news recommendation

NewsRex is a state‑of‑the‑art news recommendation framework built on Keras 3 with a JAX backend and XLA acceleration; it’s designed to be extensible and easy to use. Code is available on GitHub . Why it matters: Modern, scalable recsys stacks remain core infrastructure for content platforms.

InVideo integrates Sora 2 for full‑length cinematic video

InVideo, an official partner, integrated OpenAI’s Sora 2 to let users create full‑length cinematic videos without watermarks, overcoming the typical 10–15s watermarked clip limit and regional availability. The integration broadens access to long‑form AI video production . Why it matters: Partner integrations can expand Sora’s reach and practical utility.


Research and methods

DeepSeek‑OCR compresses long context via images

DeepSeek‑OCR renders text as images and feeds visual tokens to an LLM, achieving around 10× fewer tokens at 97% long‑context decoding precision in one summary, and up to 20× compression with 97% OCR accuracy at <10× in vLLM tests. The model avoids a monolithic ViT via a 16× conv compressor, uses an MoE decoder, runs ~2,500 tok/s on A100‑40G, and will have official support in the next vLLM release . Why it matters: A promising path to cheaper long‑context processing and scalable multimodal inference .

NucleusDiff improves drug binding predictions with physics constraints

Caltech and collaborators introduced NucleusDiff, a physics‑informed model that enforces a simple rule: atoms can’t get too close due to repulsive forces. They report significantly improved binding‑affinity prediction in drug design, with the work appearing in a PNAS AI+Chemistry special edition . Why it matters: Injecting basic physics can materially boost scientific ML performance.

Self‑Alignment for Factuality (preprint)

A preprint proposes leveraging an LLM’s self‑evaluation to generate training signals that steer models toward factuality, reducing hallucinations without human intervention. The authors argue this approach can raise factual confidence in high‑stakes domains . Why it matters: Scalable, human‑free alignment signals are attractive for production systems.

Where self‑play shines—and fails—for LLMs

A detailed thread explains why self‑play provably converges to minimax in finite two‑player zero‑sum games (e.g., Go, Poker, StarCraft), but can drift from human utility in other settings (e.g., Ultimatum Game). Teacher‑student self‑play can also be gamed without careful reward shaping; while self‑play has worked in Diplomacy and Hanabi, applying it to real‑world LLM tasks is much harder . Why it matters: Avoid untethered objectives; tie rewards to human usefulness to train agentic models.

Sora 2 still struggles with everyday physics

A compilation highlights motion and physical‑reasoning glitches (e.g., characters stalling on ladders or in revolving doors), suggesting storyboard/keyframe continuity issues. Despite major progress, coherent videos for some routine actions remain challenging . Why it matters: Real‑world physical coherence remains a key benchmark for video models.


Enterprise and adoption

Airbnb favors Alibaba’s Qwen in production for cost and speed

Airbnb’s CEO said the company relies heavily on Qwen due to its quality, speed, and low cost, while OpenAI’s latest models are used less in production. The comment accompanies a push to invest in domestic open models, with a warning that the window to act is small . Why it matters: A clear example of pragmatic model selection based on price‑performance, and growing momentum for open ecosystems.

Perplexity hits #1 app in Brazil

Perplexity became the top app across all categories in Brazil, signaling strong consumer traction beyond early adopter circles . Why it matters: Search‑adjacent AI apps are breaking into mainstream mobile markets.

Applied Intuition announces Stellantis partnership

Applied Intuition disclosed a partnership with Stellantis; details are linked in the company’s announcement . Why it matters: Tooling and simulation vendors continue to embed deeper into automotive programs.


Policy and platforms

WhatsApp changes ahead for 1‑800‑ChatGPT

OpenAI says Meta’s policy changes mean 1‑800‑ChatGPT will stop working on WhatsApp after Jan 15, 2026. Users can save chats by linking their account via the WhatsApp contact, and switch to the ChatGPT apps, web, or Atlas; more details are in OpenAI’s post . Why it matters: Platform policies continue to shape AI distribution and user migration paths.

Anthropic reiterates alignment with U.S. AI goals

Anthropic stated it aims to maximize AI’s benefits, manage risks, and help advance American AI leadership, linking to a CEO statement . Why it matters: Model providers are working to align product roadmaps with policy priorities.

Microsoft’s annual letter: AI is refactoring the stack

Satya Nadella wrote that AI is “radically changing every layer of the tech stack,” and shared Microsoft’s shareholder letter for broader context . Why it matters: Enterprise platforms are reorganizing around AI across products and infrastructure.


Ecosystem signals and commentary

The case for agents

A new talk and essay argue that agents are ChatGPT’s path to 1B MAU, with a framework for “Agent Engineering” and a Latent Space episode for discussion . Why it matters: A growing chorus sees agentic workflows as the next major UX and growth lever.

Distribution and “vibe coding” skepticism

A thread argues OpenAI remains the leader but is ceding percentage share to incumbents with massive distribution, and claims “vibe coding” agents are under‑delivering, leading to churn; Gary Marcus amplified the critique . Why it matters: Product‑market fit for coding agents remains unsettled; distribution advantages loom large.

Timelines and tokenizers: Karpathy’s views

Karpathy reiterates AGI is roughly a decade away, calling timelines “vibes” absent convincing evidence; he also clarified “delete tokenizer” to mean moving beyond text encodings altogether, arguing “pixels is the only way.” Related timestamps for his recent interview provide additional topics . Why it matters: Expect continued debate—and experimentation—around multimodal inputs and capability forecasting.


Tools and learning resources

Hugging Face robotics course released

A 70‑page crash course (LeRobot’s Francesco) covering RL sim/real, ACT, diffusion policies, VLAs/SmolVLA/Pi‑0 is now on the Hugging Face hub; Thomas Wolf called it “absolute gold.” . Why it matters: A concise, practical on‑ramp to modern robot learning methods.

Meta/PyTorch: watch for major updates to TorchForge and Monarch

Soumith Chintala signaled “giant new code pushes” are imminent; repositories are public for early review . Why it matters: Upstream improvements in PyTorch tooling can quickly ripple through research and production stacks.

Build Faster, Learn Faster: AI Hypotheses, Delight-by-Design, and Problem-Oriented Execution
22 October 2025
9 minutes read
Teresa Torres Teresa Torres
Lenny Rachitsky Lenny Rachitsky
Julie Zhuo Julie Zhuo
+11
Actionable PM intelligence: AI’s launch–learn–adjust cycle, delight as a strategic lever, problem‑oriented execution with sequencing, 4D roadmapping and metric decompositions; plus discovery playbooks, real product case studies, career tactics, and tools to ship smarter.

Big Ideas

1) AI features are hypotheses — adopt a launch→listen→adjust build cycle

  • Why it matters: AI outputs are probabilistic, so certainty comes from exposure, not specs .
  • How to apply:
    • Shorten cycles: ship smaller, faster; treat every release as a rep that strengthens judgment .
    • Instrument feedback and model telemetry; iterate based on what you learn .

"Every AI feature is a hypothesis, not a promise."

2) Delight is a strategy (not sprinkles) — design for deep delight

  • Why it matters: Emotionally connected users are ~2× more likely to buy, recommend, and stay (retention, revenue, referral) .
  • How to apply:
    • Blend functional + emotional needs in the core experience (deep delight) .
    • Balance your roadmap: ~50% functionality (low delight), 40% deep delight, 10% surface delight .
    • Measure with longitudinal signals (e.g., HATS) and plan ongoing delight to avoid habituation .

"It's not a nice to have. It's a must have."

3) Organize around problems, then sequence (not score) your way to impact

  • Why it matters: Problem‑oriented teams avoid principal–agent drift; user value compounds the faster you ship .
  • How to apply:
    • Replace job and feature lists with problem descriptions and problem roadmaps; commit to three problems per team per quarter .
    • Sequence work (80% right quickly) and let lower‑priority fires burn to maximize total value .
    • Track learning velocity (show‑and‑tell participation, speed of iteration) .

4) Plan with 4D roadmapping (Vision, Strategy, Customer, Business)

  • Why it matters: Moves beyond scoring (e.g., RICE) to a strategic, balanced roadmap you can defend in annual planning .
  • How to apply: Classify initiatives across Vision, Strategy, Customer requests, and Business input metrics; pressure‑test balance before committing .

5) Run your product by equations — focus on the few levers that matter

  • Why it matters: Most orgs overtrack; ~100 metrics explain ~90% of outcomes. Attention is scarce .
  • How to apply:
    • Decompose top‑line into levers (e.g., Revenue = Users × Impressions per User × Ad Impressions per Impression × Revenue per Ad) .
    • For growth, break MAU into New + Retained + Resurrected; then peel New Users into its funnel to find the highest‑impact step .

6) Browsers are becoming OS‑like — plan for Personal vs Work experiences (with agents)

  • Why it matters: Divergent needs (memory, payments, graphs, permissions) will split roadmaps and KPIs .
  • How to apply: Build persistent personal/enterprise memory, collaboration graphs, permissioning, and agent co‑workers as first‑class citizens .

7) Data quality is product quality for AI

  • Why it matters: Training on viral short‑form social data degraded models (−23% reasoning; −30% long‑context), with representational rot that didn’t fully heal on clean retraining .
  • How to apply: Gate social data, monitor reasoning/long‑context benchmarks continuously, and design rollback/sandbox strategies; include behavioral checks in safety pipelines .

8) Platform risk is real — maintain owned channels

  • Why it matters: Third‑party policy shifts can strand users (e.g., WhatsApp 1‑800‑CHATGPT cutoff in Jan 2026) .
  • How to apply: Provide migration paths to your app/web/browser, preserve conversations, and communicate deadlines and CTAs .

Tactical Playbook

Discovery that drives decisions (field‑ready prompts and triage)

  • Steps:
    1. Ask about the specific problem first; present a concise hypothetical solution; probe flaws/decision factors .
    2. Run a diagnostic set with every interview: did they face it; emotional drain; attempted workarounds; are workarounds broken; expected outcome of better solution .
    3. Triage: No‑Go (domain expertise + no unmet need); Pivot (unmet need + lack expertise); Restart validation (expertise + asked wrong questions) .
    4. Use Mom‑Test‑style prompts: "What are you already trying to solve this problem?" and "What’s stopping you from changing it?" .
    5. Timbergen method to turn problems into behavior stories: Function, Mechanism, Development, Evolution; keep chats to 3–4 focused questions .

Sequencing over scoring (and when to hard‑gate paywalls)

  • Do: Pick three problems; finish before adding more; decide 80% right fast and move .
  • Avoid: Early hard paywalls unless value is a one‑time exchange; deliver the “aha moment” before gating .

Accessibility: make it continuous, justified, and incremental

  • Build early like security; dedicate small sprint capacity and integrate WCAG into designs to avoid tech debt .
  • Prove business impact: run A/B on critical flows (sign‑up/checkout); if positive, you have indisputable evidence .
  • Quantify trade‑offs: treat as a business/legal decision; compare fines vs lost revenue; estimate engineering cost; get explicit buy‑in .
  • Tactics: Break work into spikes then flow tickets into sprints; leverage plugins/SDKs; enlist sales/marketing to show revenue lift .
  • Product ethos: "Accessibility is a craft" and "good accessibility is for everybody" — it improves CX broadly .

Tool adoption and automation: treat as a feature

  • Clarify the job first; many tools are 10‑lb solutions to 1‑lb problems .
  • Discovery before adoption: verify the problem exists and the tool truly solves it; don’t automate a bad process .

GTM for AI in legacy industries (sell motion that works)

  • Answer two questions first: who am I selling to, and how do I get their attention .
  • Start with the smallest customer that has the problem; qualify empowered, incentivized buyers; mid‑market can move fast with the right person .
  • Founder‑led sales first; AI SDRs amplify only once a working process exists .

Recruiting beta users (B2C)

  • Reuse your validation pool as first customers; if missing, study competitor ICPs and recruit via direct chats (Reddit/Discord) without spamming .
  • State the problem and benefits, not features; lead with time/money/stress relief to earn interviews .

Operationalize delight

  • Plan “delight days” and make delight a product pillar; color‑code delighters on the roadmap to maintain a balanced bouquet .
  • Measure feature‑level happiness (HATS) and validate inclusiveness to avoid backlash (e.g., notification misfires) .
  • B2B applies: adopt a Business‑to‑Human lens; different emotions, same need for respect .

AI data hygiene guardrails

  • Gate/label social UGC; monitor reasoning and long‑context regression tests; sandbox and rollback where needed; add tone/personality checks .

Investor communications

  • Default to decks for boards/investors; if asked, send a 15‑minute KPI summary and return to building .
  • Build a repeatable playbook: log calls, what resonated, and common concerns to refine updates .

Case Studies & Lessons

Kong: pivoting from API marketplace to connectivity infrastructure

  • What happened: Marketplace constraints (power concentration, lack of exclusivity, quality blame, poor unit economics) pushed a pivot; the team built and open‑sourced an API engine (Kong), later scaling from < $1M ARR to ~$10M in a year and beyond, with a control‑plane/data‑plane pattern suited to microservices .
  • So what: The same gateway abstraction now applies to AI — dispatch and govern traffic across many LLMs/agents rather than wiring each endpoint by hand .

Granola: outages create roadmap clarity

  • What happened: An AWS outage triggered many user messages; the team prioritized a fully offline mode .
  • So what: Outage‑driven demand is strong PMF signal; invest where pain is acute .

Mandible → Firecall (YC): find the component users crave

  • What happened: Despite six‑figure ARR, a crawler component built for internal needs saw stronger pull from AI agent builders; experiments confirmed demand, and the team pivoted to the component .
  • So what: If a sub‑system shows outsized pull, test it quickly — conviction beats inertia.

Autonomous NPS analysis (Sachin Rekhi)

  • What happened: A Claude Code agent ingested raw survey CSV, calculated NPS/trends, segmented with significance tests, summarized verbatims, surfaced improvements, and produced dashboards + exec slides — with zero human intervention .
  • So what: Equips generalists to deliver specialist‑level analysis and stakeholder‑ready artifacts in minutes . Validate outputs with the AI‑hypothesis mindset above.

Expert‑in‑the‑loop for high‑assurance AI

  • What happened: Researchers used ChatGPT to solve a convex optimization problem, then “vibecoded” a Lean proof with GPT‑5 under significant human feedback; ChatGPT was listed as a co‑author .
  • So what: For critical tasks, pair models with domain experts and formal verification.

Career Corner

Build AI fluency by building, not cert collecting

  • Why: The field shifts too fast for rigid curricula; interviews ask, "What have you built?" .
  • How: Prototype with n8n or similar to stitch flows/agents quickly; avoid branding as “AI PM” — be a PM who knows AI and your org’s data .
  • Optional path: If coding is weak, learn to prompt coding tools (e.g., generate MVPs) or start basic programming first .

Differentiate with a PM portfolio (only ~17% have one)

  • What to include: headline (your candidate–market fit), navigable deep dives, evidence of work products, and easy contact CTAs .
  • Extras: video sales letter; open‑source artifacts; personal passions .

Job search realities (optimize for signal)

  • Expect: LinkedIn can be a black hole with relisted, high‑applicant roles; recruiters sometimes post speculative roles to use platform credits .
  • Tactics: Apply on company sites, network into smaller firms, and calibrate resume keywords to the role (e.g., database/platform for infra PMs) .

Lead like this

  • Build environments where high performers thrive without you; loyalty reflects psychological safety for ambition .
  • Strengthen judgment by shipping often; teams that wait to ship are waiting to learn .

Early‑stage roles: be clear on founder vs early employee

  • Rule of thumb: Employees bring labor; co‑founders bring capital (money, customers, or investor access) — calibrate asks accordingly .
  • If “cofounder” isn’t offered: negotiate meaningful equity, decision influence, and early‑hire perks; preserve relationships and walk if needed .
  • Expectation setting: Cofounder title typically requires unique, hard‑to‑find technical value or financing; don’t mix friendship with business .

Mindsets from the field

  • Prioritization in hard times is survival; “no one knows the right answer” unlocks agency; early user interviews transform practice .

Tools & Resources

  • Atlas (OpenAI): a browser reimagined around AI/ChatGPT with page‑aware chat and agent mode; available on macOS (Windows coming). Download at chatgpt.com/atlas .
  • 4D Roadmapping workshop (free): Annual planning with Vision/Strategy/Customer/Business via Productboard (Oct 23, 9am PT) .
  • AI tool “buckets” for PMs (Aakash Gupta): prototyping, customer intelligence, vibe coding/experimentation, dictation, meetings, LLMs, AI coding, agent platforms (simple + full‑featured) — leaders should license a complete stack .
  • No/low‑code automation:
    • n8n for fast agent/LLM pipelines and workflows .
    • Tines as a core automation fabric (forms, cross‑tool data flows: Jira/Productboard/Figma) .
  • Meeting capture: Granola, Fathom, Otter.ai, tl;dv, Fireflies to summarize and track next steps .
  • User‑research crib sheet: r/userexperience interview prompts wiki .
  • Delight by design (talk): frameworks, HATS, and the 50/40/10 roadmap mix — great primer for embedding delight into process .
  • Analytics decomposition walkthrough (Julie Zhuo): model your business as equations; focus on ~100 metrics; break MAU and revenue into actionable levers .

"Teams that wait to ship are really waiting to learn."

AI browsers arrive, optical context compression accelerates, and video models reset benchmarks
22 October 2025
7 minutes read
AI High Signal AI High Signal
OpenAI launches ChatGPT Atlas, pushing agentic browsing into the mainstream amid security scrutiny. Text‑as‑image approaches (DeepSeek‑OCR, Glyph) accelerate context compression; Veo 3.1 tops video leaderboards; DeepSeek v3.2 targets long‑context cost; LangChain raises $125M to build agent platforms; Qwen3‑VL expands edge‑to‑cloud multimodal options.

Top Stories

Why it matters: Core interfaces, compression methods, and frontier models are shifting how people use and build with AI.

  1. OpenAI debuts ChatGPT Atlas, an AI-first web browser with built‑in agents
  • Atlas brings ChatGPT into the browser UI: an “Ask ChatGPT” sidebar that sees the current page, in‑place writing suggestions, and tab control; an Agent mode can take actions (e.g., navigate, populate carts) as you browse . It’s rolling out on macOS (Windows, iOS, Android “coming soon”); Agent mode is in preview for Plus/Pro/Business . Safety controls include an incognito mode and settings to restrict use of logged‑in accounts .
  • Strategic context: Commentators frame this as the start of an “AI browser war” and a shift from chatbot to “OS‑like” assistants owning the interface . Early user feedback is mixed—some report it’s helpful for papers and Jupyter, while others found Agent mode immature .
  • Security lens: Brave disclosed broader risks of indirect prompt injections in AI browsers (not specific to Atlas), underscoring the need for hardening agentic browsing .

“This is one of those ‘feel the AGI’ moments.”

  1. Text‑as‑image “optical compression” surges: DeepSeek‑OCR and Zhipu’s Glyph
  • DeepSeek‑OCR shows text rendered as images can compress long context substantially—reporting up to 20× visual context compression with ~97% OCR accuracy at <10× and, at a fixed 97% decoding precision, needing ~10× fewer visual tokens than text . vLLM is adding official support to ease deployment .
  • Zhipu’s concurrent “Glyph” reports 3–4× context compression and sharp infilling cost reductions without quality loss on long‑context QA/summarization; decoding savings are more modest with DSA . Analysts note the biggest gains appear in input‑heavy agent workflows (e.g., deep research) .
  • Debate: Karpathy argues pixels as inputs can eliminate tokenizer baggage at the input stage . Others say similar compression is achievable by squeezing text tokens (e.g., 500× prompt compression) and caution against attributing the wins to images per se; some also argue the idea has prior art and should be cited accordingly .
  1. Video takes a step: Veo 3.1 tops public leaderboards and opens to creators
  • Google DeepMind’s Veo 3.1 reached #1 on both text‑to‑video and image‑to‑video leaderboards, the first model to break 1400 on Video Arena (+30 vs 3.0) .
  • Product details: pricing from $0.15/second with audio, guided generation with up to 3 reference images, extension of existing clips, and frame‑defined transitions; it’s a paid feature, available in AI Studio .
  1. DeepSeek v3.2 (685B MoE) targets long‑context cost and speed
  • The new model attends to the most relevant tokens, reporting 2–3× faster long‑context inference and 6–7× cheaper processing than v3.1; weights carry an MIT license, API pricing is $0.28/$0.028/$0.42 per 1M input/cached/output tokens, with optimization for Huawei and other China chips; performance is similar overall to v3.1, with small gains on coding/agentic tasks and slight dips on some science/math .
  1. LangChain raises $125M to build an agent‑engineering platform
  • Funding at a $1.25B valuation supports an agent‑centric roadmap, including a LangSmith insights agent, 1.0 releases of LangChain/LangGraph, and a no‑code agent builder . The team positions this as moving from generation to action with robust, observable, secure agent apps .

Research & Innovation

Why it matters: New methods for representation, training, and safety can translate into faster, more reliable systems.

  • Mechanistic insight: LLMs track “position” on a helix to decide line breaks

    • For fixed‑width line breaking, researchers traced a model’s internal “place‑cell‑like” features and found positions lie on a smooth 6D helix; the model rotates/aligns helices to estimate remaining space, assembling this with contributions from multiple attention heads .
  • Parallelizing recurrent‑depth models with diffusion forcing (no retraining)

    • Applying diffusion‑style sampling to recurrent models yields ~5× inference speedups by decoding incomplete latent states in parallel with adaptive fallback to sequential decoding .
  • Continual learning via “memory layers” (Meta collaboration)

    • Sparsely fine‑tuning input‑independent KV “memory layers” retained new facts with far less forgetting (−11%) versus full FT (−89%) or LoRA (−71%) on held‑out tasks .
  • Automatic prompt optimization with RL (Prompt‑MII)

    • An RL‑trained LM ingests task examples and emits a task description prompt, outperforming strong ICL/GEPA baselines with 13× fewer tokens across 3,000+ HF classification datasets .
  • Auditing agents detect adversarial fine‑tuning

    • “Auditing agents” that search training data and query the in‑training model detected several existing fine‑tuning attacks with low false positives, addressing growing risk from more powerful fine‑tuning APIs .

Products & Launches

Why it matters: New releases are expanding capabilities for developers and creators.

  • Qwen3‑VL‑2B and Qwen3‑VL‑32B (edge→cloud, FP8, Thinking/Instr.)

    • Qwen reports the 32B model outperforming GPT‑5 mini and Claude 4 Sonnet across STEM, VQA, OCR, video understanding, and agent tasks; FP8 variants and “Thinking”/“Instruct” versions are available; vLLM announced support .
  • Together AI adds video/image generation via Runware

    • 20+ video models (e.g., Sora 2, Veo 3) and 15+ image models are available through the same APIs used for text, with per‑model transparent pricing .
  • Runway “Workflows”: node‑based tools inside Runway

    • Build custom node graphs chaining models/modalities/steps for more control; available now for Creative Partners/Enterprise, coming to all plans .
  • Prime Intellect Inference API for environment evals

    • One endpoint, 56 models (and growing), unified billing, a rewards/rollouts viewer, and a simple prime env eval to run evaluations; share results on the Hub .
  • Cognition’s Fast Context (SWE‑grep)

    • Limited‑turn, parallel subagents surface relevant code context ~20× faster; A/Bs show up to 42% faster end‑to‑end agent trajectories with slightly higher accept rates; 4‑turn agentic search runs in <3s at ~2,800 tok/s .
  • Chandra OCR (open source)

    • OCR with full layout, image/diagram captioning, handwriting/forms/tables, plus vLLM/transformers integration; quickstart available; notes include limitations in some math, languages, and rotated pages .
  • MagicPath adds image‑referenced “Variants & Flows”

    • Create multiple variants and use images as references for variants/flows; code examples included .
  • Glif agents for creators

    • Transition agent tutorials for phone footage and a new agent that adds Attenborough‑style narration/music to uploaded videos (supports YouTube/X/TikTok links) .
  • kvcached: elastic GPU sharing for LLMs

    • Share unused KV‑cache blocks across multiple models on one GPU; works directly with vLLM .

Industry Moves

Why it matters: Capital and compute access determine who can train and deploy the next generation of systems.

  • Anthropic–Google: compute talks reportedly in the “high tens of billions”

    • Bloomberg‑cited reports point to a large Google Cloud compute deal under discussion .
  • LangChain raises $125M at $1.25B valuation

    • Funds will accelerate an agent‑engineering platform (LangChain/LangGraph 1.0, LangSmith insights, no‑code builder) .
  • Sakana AI in talks to raise $100M at $2.5B valuation

    • The company focuses on Japan‑specialized models “inspired by evolution” .
  • Replit growth signal

    • Company projects $1B revenue by end of 2026 and is “closing in on $250M ARR,” after recently announcing $150M ARR .
  • Report: OpenAI “Project Mercury” targets junior banker workflows

    • A thread reports OpenAI has hired 100+ ex‑bankers at $150/hour to build models/prompts for tasks like IPOs and restructurings; contractors submit one model per week .

Policy & Regulation (plus Security)

Why it matters: Rules, platform policies, and security issues shape what can be deployed—and how safely.

  • U.S. chip controls vs. China’s rare earth export controls

    • Analysts note China’s controls are far broader than any U.S. measures; a U.S. control at similar scope would license any moderately advanced chip, any product containing such chips, and most fab equipment worldwide—whereas current U.S. controls are targeted (high‑end AI chips to 47 countries; certain fab gear to 24) .
  • AI browser security

    • Brave disclosed that indirect prompt injections are a systemic issue in AI‑powered browsers, publishing more vulnerabilities beyond a prior Comet finding .
  • WhatsApp policy change for ChatGPT access

    • Meta’s policy change will disable “1‑800‑ChatGPT” on WhatsApp after Jan 15, 2026; OpenAI directs users to migrate to its app, web, or Atlas browser and to link accounts to save chats .

Quick Takes

Why it matters: Smaller signals often foreshadow where adoption and research are heading.

  • SWE‑Bench Pro update: SoTA models now surpass 40% pass rate; Anthropic swept top three (Claude 4.5 Sonnet, Claude 4 Sonnet, Claude 4.5 Haiku) .
  • NVIDIA GTC: Jensen Huang keynote Oct 28, 8:30 a.m. ET; focus on startups, infra, science; livestream link provided .
  • Apache TVM FFI: New open ABI/FFI enables ML compilers, libraries, and frameworks to interoperate across Python/C++/Rust—an interop layer welcomed by vLLM .
  • Copilot Actions (Windows): UI automation demo (extract PDF data, organize files, sort photos) coming soon to Windows Insiders via Copilot Labs .
  • GLM‑4.6 (Reasoning) providers: Baseten led TTFAT at 19.4s and output at 104 tok/s; pricing is similar across providers and full 200k context is supported .
  • DeepSeek‑OCR at scale: One project extracted datasets from tables/charts across 500k+ arXiv papers for ~$1,000 using DeepSeek‑OCR (a Mistral OCR approach was estimated higher) .
  • GaussGym: open‑source locomotion‑from‑pixels framework with ultra‑fast photorealistic rendering across 4,000+ scenes; endorsed for training locomotion environments .
  • Agents4Science (Oct 22): Conference showcases AI agents that author and review papers; registration link shared .
  • Perplexity: Ranked #1 app across all categories in Brazil in a shared chart snapshot .
Andreessen highlights California Forever’s city‑building plan
22 October 2025
1 minute read
Marc Andreessen 🇺🇸 Marc Andreessen 🇺🇸
One standout, high-signal pick: Marc Andreessen highlights an All-In Pod clip on California Forever’s plan to build a new American city, featuring Jan Sramek, with clear reasons it matters.

Top pick

  • Title: California Forever: The Startup Building America’s Next Great City
  • Content type: Video clip
  • Author/creator: theallinpod (X post)
  • Link/URL:https://x.com/theallinpod/status/1980726875849736518
  • Recommended by: Marc Andreessen

"It’s time to m—–f—— build! 🇺🇸"

  • What it covers:
    • (0:00) Introducing Jan Sramek
    • (0:51) How California Forever is building America’s next great city
  • Featuring: Jan Sramek (@jansramek), CAForever (@CAForever)
  • Why it matters: Concise look at a live attempt to build a new American city—useful context for the current push to “build” ambitious projects
Soy Rally, Cattle Volatility, and Autonomy at Scale: What to Act on Now
22 October 2025
8 minutes read
Tarım Editörü Tarım Editörü
Farm Journal Farm Journal
Brownfield Ag News Brownfield Ag News
+10
Actionable ag intel on grain rallies, beef policy volatility, and technology that’s delivering in the field. Covers U.S., Canada, Brazil, Argentina, Australia, Paraguay, Turkey: market drivers, proven innovations, regional shifts, best practices, input trends, and near‑term planning signals.

Market Movers

  • Soybeans (U.S./China/Brazil)

    • Futures rallied roughly 35¢ off last week’s lows, with basis and spreads firming as harvest nears its final quarter and end-users remain underbought . Producer selling is also tied to November futures expiry and basis contracts that must be cleaned up at month-end . Easing U.S.–China rhetoric has supported the bounce; during the first trade war China bought 14–15 MMT, and the market is watching for 10–12 MMT this time if talks proceed . Brazilian basis is “on fire,” making beans relatively expensive for Chinese buyers .
  • Corn (U.S./Global)

    • Spreads continue to strengthen and cash signals suggest corn needs to hold near the $4.20 area; flat price met technical resistance near $4.25 . Export inspections are running at record weekly levels; U.S. corn is the cheapest globally through February–March and recently undercut Brazilian and Argentine offers . National yield indications have settled near 181–184 bu/acre (not 188), with localized disease issues (southern rust, tar spot) .
  • Wheat (Russia/EU/U.S.)

    • Russian ICAR raised production expectations, pressuring prices; motif (MATIF) spreads have been bull-spreading even as U.S. wheat gave back recent gains on a stronger dollar and technical selling .
  • Cattle and Beef (U.S./Argentina/Brazil)

    • Volatility followed talk of buying Argentine beef to cool U.S. retail prices. Market participants want details before turning broadly bearish; technical support is watched near 360 (feeders) and ~240 (live) . Argentina supplies a minor share (~2.1%) of U.S. beef imports; analysts say tariff cuts on Brazil (a much larger source) would be a more impactful lever . Industry groups called the import talk harmful to U.S. producers .

“The president ought to keep his mouth shut about beef prices because it has a negative consequence for the cattle market.”

  • Hogs (U.S.)

    • After nearly 15 down sessions, a technical flush occurred; seasonally cash is expected softer, but a modest bounce could confirm a near‑term bottom. Watch weekly slaughter numbers .
  • Cotton (U.S./Global)

    • Plains producers anticipate better yields than the prior three drought years and good irrigated grades, but very low prices and high inputs remain a squeeze; cotton demand has not fully recovered since COVID and trade issues persist . Additional color from producers cites cotton down ~$0.10/lb year‑to‑date and ~$0.30/lb year‑over‑year amid reduced Chinese demand and cottonseed byproduct weakness .
  • Canada/Ontario grains

    • Large crops are muting upside risk for soybeans, corn, and wheat .

Innovation Spotlight

  • Autonomous field operations (U.S./Australia)
    • Bonsai’s AR500 (200 hp) retrofit enables ~80–90% task automation on existing tractors, lowering labor and potentially capex/opex by reimagining form factors around autonomy . Operations in Australia report extended run‑times (e.g., 8.3‑m mowers “flashers” operating ~18 hours/day) and utilization gains beyond typical 10–12 hour shifts . Over 60 machines are running in Australia where labor shortages and many seasonal passes accelerate adoption .
    • A single transformer‑based, temporal AI model is being deployed across crops (open‑field, strawberry, lettuce) for real‑time perception; research led by OpenCV founder Gary Bradski .
    • Example ROI lever: using a shuttle truck power‑plant approach can avoid a ~$130,000 purpose purchase in almond harvest .
  • Aerial application drones (U.S.)

    • EA Vision J150: 20‑gal tank, four‑nozzle system; typical 36–38 ft operating swath (tested >40 ft in ideal conditions) and 60–80 acres/hour at 2 gal/acre on half‑mile runs at ~30 mph . Basic package ~$40,500 (drone, three batteries, charger, remote, liquid tank), plus generator and transport; operators commonly cycle three batteries . With shortages of planes/ground rigs this season (two‑week waits reported), growers hired drones to fill gaps .
  • Real‑time soil/air monitoring (China/Urban agriculture)

    • A LoRaWAN soil–air EC/TH sensor ran stably ~578 m from the gateway, transmitting every 10 minutes and buffering data during network dropouts; probe installation at 10–15 cm depth . Recorded soil moisture spanned ~25% RH (dry) to ~96% RH (waterlogged), aiding irrigation decisions; air readings aligned with local weather .

Regional Developments

  • U.S. (Texas High Plains cotton)

    • USDA’s Lubbock office classed 2,700 bales in the first report; initial grades “decent,” with better yields than the prior three drought years; irrigation remains supplemental due to limited capacity .
  • U.S. (Beef policy)

    • Importing Argentine beef would have limited impact on U.S. price inflation given Argentina’s small U.S. share (~2.1%); Brazil was the top supplier earlier this year until a 50% tariff cut imports from ~30,000 to ~7,000 mt/month . Analysts say lowering Brazil’s tariff would be a simpler lever .
  • Paraguay (Forestry)

    • Planted forest area reached ~339,000 ha by Dec 2024 (+66% vs. 2022), adding ~70,000 ha/year since 2022; exports of veneers/plywood set records, but logistics remain a key constraint . A major cellulose factory is planned in Concepción; producers highlight legal/environmental compliance, biodiversity measures, and local‑community engagement .
  • Turkey (Olives/olive oil)

    • Harvest has begun; upcoming analyses will track production costs, extra‑virgin producer prices, carryover stocks, domestic demand and shelf prices, and export market developments .
  • U.S. (Poultry health)

    • Minnesota turkey farms report additional avian flu cases, posing localized supply risks .

Best Practices (actionable)

  • Grain merchandising (U.S.)

    • Lock price before planting to set a $/acre plan; many producers routinely contract ~90% after mapping exact input costs (example breakevens: soy $8.75/bu; corn $3.30/bu) . Use accumulator tables and off‑season storage to seek premiums; monitor basis/spreads closely—especially over the next 30–40 days as commercials roll hedges and delivery timing tightens . Be cautious with “free DP” and consider minimum‑price structures given current carries .
  • Risk management (U.S.)

    • Crop insurance: prevented‑planting paired with alternative forage (e.g., sorghum) can preserve revenue and serve dairy customers in wet years . Insurance helps manage weather risks (hail/too wet) and provides peace of mind .
  • Livestock — hay efficiency & pasture protection (U.S.)

    • On small acreage with Dexter cattle, hay‑only finishing from ~600 lb to ~700–750 lb in ~1 year was feasible but winter hay waste and pasture damage were significant; mitigation includes a concrete pad and head‑gates to control access. Pasture recovery after trampling took ~2 years .
  • Predator management (U.S.)

    • LGDs can be trained to respect boundaries (tracking/training collars, reinforcement by older dogs), but roaming and liability remain real risks without fencing or supervision . If not raised with stock, consider a porch‑content guard dog instead of an LGD for mixed‑use homesteads .
  • Barn and home insect control (U.S.)

    • Daily cobweb removal reduces disease risk in barns; pyrethroid perimeter sprays (e.g., Talstar, Tempo) offer weeks of residual and can be applied around exterior bases, windows/doors, and basements per label .
  • Soil health and irrigation

    • Deploy low‑power IoT sensors to monitor soil moisture/EC in situ (10–15 cm depth; 10‑minute intervals) to prevent stress or waterlogging and optimize irrigation .
    • Build soil with raw‑material mulches (lawn clippings, leaves), green manures, and perennial cover; many systems add compost just once in a 4‑year rotation .
    • When sourcing horse manure, avoid material from aminopyralid/picloram–treated fields and confirm dewormer status with handlers; both can compromise compost and crops .
  • Root crop storage (cold room)

    • Carrots/turnips can be stored through winter in slightly damp sawdust (“humid, not wet”), with beets reported to keep >1 year; manage humidity to reduce mold .
  • Outbuilding fire alerts

    • For stables/shops requiring phone notifications, confirm backhaul (Wi‑Fi/cellular) or plan for wired runs to a hub; range/connectivity limits affect remote sensors .
  • Feed efficiency

    • Sprout or ferment wet grains/brewers’ grains to improve utilization; drying thin layers on black plastic with regular stirring can work in ~3 days (watch for rain) . Wet grain is usually poor seed but acceptable as feed; compare dryer energy cost/payoff before oven‑drying .
    • Backyard poultry: chickens readily consume sprouted corn .
    • Formulate homestead feeds above industrial minimum protein targets (e.g., layers often 16% in industrial settings) to account for higher activity and mixing error; raise the proportion of protein ingredients (e.g., soy/peas) within sustainable cost limits .

Input Markets

  • Cost inflation and risk (U.S.)

    • Producers report inputs—not commodity prices—as the main squeeze: insurance premiums have tripled in some cases despite no claims; fuel, tires, tractor maintenance, and mineral costs are higher .
    • Finance strategy: secure pre‑approval to lock input purchases and maximize discounts .
  • Fertilizer/nitrogen management

    • For fall‑applied nitrogen on corn, stabilizers such as N‑Serve are promoted to keep N in the soil profile .
  • Feed and byproducts

    • Breweries often provide wet grains free; plan fermentation or low‑cost drying methods to avoid spoilage .
    • Evaluate grain‑dryer energy costs versus value lift before drying wet grain; livestock typically accept it as‑is, and neighbors with pigs may take excess .
  • Crop protection/home perimeter

    • Pyrethroid insecticides (Tempo, Talstar) with residual control are widely labeled across settings; follow labels and integrate with sanitation .

Forward Outlook

  • China demand and calendar dynamics (U.S./China)

    • Soybean price action is highly sensitive to U.S.–China headlines; focus on the late‑month meeting and potential 10–12 MMT purchase signals. Near term, basis/spreads and end‑of‑month cleanup of basis contracts will drive cash opportunity over the next 30–40 days .
  • Beef policy path (U.S./Argentina/Brazil)

    • Argentine imports alone are too small to reset U.S. price inflation; watch for possible tariff moves on Brazil (larger lever) and any formal policy “announcements coming” from the administration . Cattle supply tightness after drought remains a structural factor .
  • Application capacity

    • Expect continued tightness in aerial/ground application windows; growers reported two‑week waits for planes and drones this season—on‑farm drone capacity mitigates risk .
  • Cotton (U.S.)

    • Plains stakeholders do not anticipate major acreage changes in 2026; ongoing low prices versus inputs and trade/demand headwinds keep margins tight .
  • Animal health

    • Monitor avian flu developments in Minnesota turkeys ahead of holiday demand planning .
  • Biofuels

    • API’s opposition to E15 legislation—reversing prior support—signals policy uncertainty for ethanol margins .
  • Land income and grid constraints (U.S.)

    • A rush to start renewable projects before 2027 credit sunsets is pushing aggressive developer terms, but transmission bottlenecks and interconnection costs remain chronic; landowners should negotiate contract language cautiously and price long‑duration encumbrances appropriately .
Airline and retail acceptance broaden as Lightning rails and self‑custody tools advance
22 October 2025
5 minutes read
Wallet of Satoshi Wallet of Satoshi
Bitcoin Ekasi Bitcoin Ekasi
Money⚡️Badger Money⚡️Badger
+9
Airline and retail checkouts advanced in South Africa and El Salvador, Finland added the most‑northerly merchant, and new Lightning on‑ramps and self‑custody tooling emerged. Grassroots activity across Africa and Peru highlights circular‑economy and humanitarian use cases.

Major Adoption News

  • FlySafair (South Africa) now accepts Bitcoin for flight bookings. Customers can request a Zapper QR at checkout, scan with the MoneyBadger app, and complete payment from any Lightning wallet .

    • Significance: Extends Bitcoin payments into the airline vertical and showcases a QR-aggregator-to-Lightning flow that reduces merchant integration complexity.
  • Starbucks (El Salvador) acceptance observed at the El Encuentro mall location in San Blas, supported by an in-store video and the shop’s Google Maps listing .

    • Significance: A global brand accepting Bitcoin at a specific location increases consumer visibility of routine retail payments.
  • Bootlegger café (Gardens Centre, Cape Town, South Africa) processed a breakfast purchase in Bitcoin; on-the-spot staff onboarding used the MoneyBadger app, and 2,600 sats were sent to the waitress. The payer received 5,000 sats as a thank-you for product testing, with the transaction described as “fast, seamless” .

    • Significance: Demonstrates live, in-venue Lightning transactions and rapid staff enablement—key for scaling everyday retail acceptance.
  • New “most northerly” Bitcoin-accepting merchant reported in Finland, approximately 400 km inside the Arctic Circle, with listing on BTCmap .

    • Significance: Expands geographic breadth of the merchant network, signaling resilience and reach across extreme locations.
  • BurgerChickenCo (Awka, Nigeria) accepted Bitcoin for a meal; the community shared a Lightning address for tips/donations (burgerchickenandco@blink.sv) and framed it as part of building a local circular economy .

    • Significance: Reinforces grassroots, real-world spend in food service and community-led merchant activation.
  • Bitcoin Ekasi will sell a limited batch of hand-crafted mini surfboards at the Lugano Plan ₿ event (24–25 Oct), with proceeds reinvested into the Vuselela project to create jobs and sustain a Bitcoin circular economy (Lugano, Switzerland) .

    • Significance: Links commerce to circular-economy funding, highlighting economic development use cases tied to Bitcoin.

Payment Infrastructure

  • QR-to-Lightning rails in South Africa: Zapper QR codes combined with the MoneyBadger app enable Lightning payments at merchants such as FlySafair and Bootlegger .

    • Significance: Lowers deployment friction by leveraging existing QR infrastructure while enabling Lightning settlement from customer wallets.
  • South Africa Lightning on-ramps and costs: Users can fund Lightning wallets (e.g., Blink, Wallet of Satoshi) with on-chain BTC, though some wallets may require manual setup . Fees can be material for small amounts (e.g., Blink: 5,000 sats for payments below 1,000,000 sats; Wallet of Satoshi: 1.95% network fee), making frequent small top-ups costly . Major local exchanges Luno and VALR do not yet support Lightning deposits/withdrawals, pushing users to on-chain funding . A tested workaround is using CapeCrypto, with step-by-step guidance published; the author later noted Binance can also move BTC onto Lightning .

    • Significance: On-ramp frictions persist for micro-spends; interim solutions (local providers and major exchanges with Lightning support) help reduce costs and complexity.
  • Wallet innovation: Wallet of Satoshi announced a “new self custody Wallet of Satoshi” and emphasized ongoing usability improvements; a sats giveaway accompanied the launch communications .

    • Significance: Movement toward self-custody options while prioritizing simplicity can broaden the addressable user base for payments.
  • Skills enablement: YakiHonne x School of Satoshi will host an online Nostr workshop (Sat, 25 Oct 2025, 2 PM GMT+1) covering how to build on Nostr, experience YakiHonne, and “use Bitcoin payments & earn sats” .

    • Significance: Education on open-web protocols and Lightning-aligned earning flows supports developer and user onboarding in emerging ecosystems.
  • Community infrastructure building (South Africa): Thulisa founded the BitcoinLoxion circular economy in Khayelitsha and spoke at Adopting Bitcoin Cape Town; talk link provided .

    • Significance: Grassroots ecosystem-building and knowledge sharing create local capacity for sustained adoption.

Regulatory Landscape

  • No new regulatory changes or policy updates surfaced in today’s sources.

Usage Metrics

  • Service-sector earnings via Lightning (anecdotal):

“i’ve been paying my hairdresser with lightning for almost five years and she showed me her balance today and she’s stacked a little over $3900 in BTC”

  • Location/sector: Personal care services. Indicator: multi-year Lightning income accrual. Contextual note: a reply framed this as a recurring pattern (“Many such cases”) .

  • In-venue microtransactions (Cape Town, South Africa): 2,600 sats sent to a waitress during a Bitcoin-paid breakfast; 5,000 sats sent to the tester for feedback; described as completed in seconds .

  • Lightning address usage (Awka, Nigeria): Merchant shared burgerchickenandco@blink.sv for tips, indicating Lightning-address adoption in local commerce .

  • Note: Sources provided illustrative case studies rather than aggregated transaction volumes or regional totals.

Emerging Markets

  • Kenya: A founder from Kenya represented the country at TBD by Trezor; a video highlighted unemployment, the gig economy, and how Bitcoin can open new job opportunities . In Kitui, an artist was encouraged to monetize his work via Bitcoin, positioning art + Bitcoin as a path to empowerment; local messaging emphasized “Bitcoin is Money” and “Bitcoin is Borderless” .

    • Significance: Bitcoin-facilitated earnings channels for creatives and gig workers support income generation where traditional opportunities are limited.
  • Uganda: The Nostr + Bitcoin payments workshop aims to help participants build, earn, and connect in the open web economy .

    • Significance: Practical training on Lightning-aligned applications is key to bottom-up adoption.
  • Nigeria: Routine purchases via Lightning (e.g., BurgerChickenCo in Awka) are framed as “real adoption” with Lightning addresses shared for community support .

    • Significance: Everyday spend across food service reinforces circular-economy dynamics.
  • Peru: Motiv Peru’s “Life Saving Steps” program used Bitcoin to provide shoes for children in the Cusco highlands, emphasizing community impact .

    • Significance: Humanitarian deployments illustrate Bitcoin’s utility for directed aid and local needs.
  • South Africa: Multiple signals—airline bookings (FlySafair), café payments (Bootlegger), community-building in Khayelitsha (BitcoinLoxion)—underscore growing infrastructure and merchant readiness .

    • Significance: Convergence of merchant enablement, payment rails, and community leadership positions South Africa as an active testbed for Bitcoin payments.

Adoption Outlook

Momentum this cycle is characterized by: (1) broader vertical coverage (airline, retail coffee, cafes), (2) pragmatic rails that bridge existing QR infrastructure to Lightning, (3) continued friction on on-ramps for small-value transactions in some markets alongside emerging workarounds, and (4) strong grassroots activity across African and Latin American communities. Geographic reach continues to widen—from El Salvador’s retail checkouts to an Arctic Circle merchant in Finland—while education and self-custody tooling aim to simplify user experiences and sustain real-world spending .

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