惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

N
News and Events Feed by Topic
Malwarebytes
Malwarebytes
Threat Intelligence Blog | Flashpoint
Threat Intelligence Blog | Flashpoint
C
Cybersecurity and Infrastructure Security Agency CISA
F
Future of Privacy Forum
C
Cisco Blogs
T
The Exploit Database - CXSecurity.com
A
Arctic Wolf
S
Securelist
K
Kaspersky official blog
S
Schneier on Security
T
ThreatConnect
T
Tenable Blog
Spread Privacy
Spread Privacy
T
True Tiger Recordings
AWS News Blog
AWS News Blog
F
Fox-IT International blog
量子位
T
Threatpost
V
Vulnerabilities – Threatpost
C
CERT Recently Published Vulnerability Notes
Cisco Talos Blog
Cisco Talos Blog
GbyAI
GbyAI
宝玉的分享
宝玉的分享
腾讯CDC
G
Google Developers Blog
aimingoo的专栏
aimingoo的专栏
Cyberwarzone
Cyberwarzone
有赞技术团队
有赞技术团队
S
SegmentFault 最新的问题
OSCHINA 社区最新新闻
OSCHINA 社区最新新闻
V
Visual Studio Blog
U
Unit 42
雷峰网
雷峰网
cs.CV updates on arXiv.org
cs.CV updates on arXiv.org
Simon Willison's Weblog
Simon Willison's Weblog
O
OpenAI News
freeCodeCamp Programming Tutorials: Python, JavaScript, Git & More
The GitHub Blog
The GitHub Blog
The Register - Security
The Register - Security
MyScale Blog
MyScale Blog
小众软件
小众软件
A
About on SuperTechFans
Last Week in AI
Last Week in AI
Y
Y Combinator Blog
博客园 - 三生石上(FineUI控件)
美团技术团队
Google Online Security Blog
Google Online Security Blog
P
Proofpoint News Feed
MongoDB | Blog
MongoDB | Blog

Hacker News - Newest: "AI"

Show HN: Live AI music sequencing agent The Dark Between the Stars GitHub - lynote-ai/humanize-text: Free open-source AI text humanizer to convert AI-generated content into undetectable, human-like writing. Bypass Turnitin, GPTZero, and all major AI detectors. No sign-up required. Try our unlimited free online tool Sign in Nobody Wants AI Anymore [video][12 mins] AI Has Taken Over Open Source How to Teach AI the "Taste" Global AI Diffusion: Q1 2026 Trends and Insights [pdf] HN: Silau – AI detects employee burnout" How AI Talks People Out of Conspiracy Theories–and What We Can Learn from That What to know about the AI models that are jolting Washington AI for design needs solving | by Megha Agrawal Client Challenge Predicting AI job exposure — Benedict Evans AI is becoming increasingly unpopular AI-Driven Design Automation What's Left for AI-Assisted Coding GitHub - Totes-MickGOATs/mcgoats-game-template: AI-powered game development template with CI/CD, auto-merge queue, TDD enforcement, 3-layer master protection, and 50+ skills for Godot/Unity/Unreal Vericoding: The End of "Trust Me Bro, The AI Wrote It". Bone Keeper AI Assisted Feature Film – Barrett Sonntag Nuance in all things. A dive into (Anti-) “AI” Myths AgentGate — Trust Authorization for Autonomous AI Agents AI is learning to fly airplanes – and aviation is starting to embrace it GitHub - oldrich-research/gravitational-constant-relation: A high-precision phenomenological relation for Newton's gravitational constant: G = (4/3)(hbar c / m_e^2) alpha^21 exp(-5 alpha/2). Companion to Zenodo DOI 10.5281/zenodo.20120946. Research performed by AI agents under named author's direction. AI agents just got their own web browser via a Firefox fork AI poses "urgent threat" to student learning and the HSC The AI Bifurcation of Tech The largest study of AI use by undergrads is in, revealing disparities in access — and in cheating NZ at wild frontier of AI superhacking The Race Is On Google CEO Sundar Pichai says booing graduates will shape AI's future Show HN: TalkTimer, a micro-SaaS run by an AI agent team Trickster's Table Venture Capitalist John Doerr Says AI Is the Biggest Tech 'Tsunami' AI Can’t Care – Dan Moore! GitHub - peterxcli/ccost: Turn local AI coding session logs into a searchable terminal UI with a cost lens. Ask HN: What is your daily AI stack? GitHub - PanzerPeter/Neuro: A programing language for AI Resyl: AI Memory for People - Apps on Google Play AI Chip Component Costs: Memory at 63% | Epoch AI Ask HN: Why do people seem to generally hate AI? Resonance, randomness, and negotiated meaning for AI-assisted tarot divination GitHub - Kind-Computers/quinlight-audio: Audophile-quality MOD music with AI remastering at 32-bit 96 kHz! The Case Against the AI Job Apocalypse AI and the Rise of Just-In-Time Knowledge Work Careers After AI There Is No AI (It's Just People), with Jaron Lanier [video] wolfram-fb0 — AI writes x86_64 asm + eBPF for fractals, in a real VM in your browser Bursting the AI Bubble: Fed Could Take Away the "Who Could Have Known?" Defense AI proves mathematicians wrong I built a free AI travel planner for budget Europe trips Our AI just got even better Integral Intelligence: a Catholic view of the AI debate How to Tame AI’s Voracious Appetite for Energy GitHub - atveit/pi-mojo: A mojo port of the PI AI Agent Toolkit Autotrader – paper trading AI agent for Indian equities The invisible fabric of AI: chips are not a war between two, but a global fabric - zoopa.es Responsible Work with AI The AI Existential Crisis: Western AI Agents Will Win Commerce Legal Ontologies for AI This AI Stock Is the Ultimate Set-It-and-Forget-It Buy for Long-Term Investors AI wealth must benefit the public, South Korea's deputy PM says amid Samsung labor tensions Forget electrons, this breakthrough uses light-matter particles to power AI State Explosion Security Problem in AI-Era Software Supply Chains ShannonBase: The Lightweight Semantic Layer for Enterprise AI SQL AI Content Got Too Real. Now OpenAI and Nvidia Are Using Google’s Watermarking System. - Firethering Karen Hao: AI creating a DESPERATE BASE OF WORKERS with no full-time employment GitHub - barvhaim/llm-learning-path: 🎓 Structured LLM Learning Path — From Zero to Researcher. 8-phase curriculum covering Transformers, pre-training, fine-tuning, alignment, agents, and advanced research. Letting Agents Write Code Without Ratcheting Up Risk Why Every Electronic Product May Need To Be Rebuilt For On-Device AI: The Chip Layer Will Decide The Next Hardware Wave – Easelink Tech Ask HN: I mapped 6,494 AI engines into a taxonomy – anyone else tried this? China behind in LLM race but it can still win in AI, ex-Tencent AI lead says Newsom signs order aimed at tackling AI job displacement How AI is redefining Software Engineering Hiro, AI job matching with real visa sponsorship data (550K jobs) For developers without design skills, how do you leverage AI for front end dev? The Anatomy of AI Power in 2026 | Wayne Research arxiv ‘AI washing’: firms are scrambling to rebrand themselves as tech-focused Clawd Cursor v0.9.7 SpaceX, OpenAI and Anthropic IPOs set to test limits of AI boom Export chats from 11 AI platforms to PDF or Markdown locally From Vibe Coding to AI-Assisted Engineering: Lessons from Real Projects Shannon Got AI This Far. Kolmogorov Shows Where It Stops GitHub - machineswillrise/jagent: AI coding agent in Java GitHub - anatomia-dev/anatomia: Verified AI development. Ship with proof. Joe Rogan accidentally exposed AI in four words [video][12 mins] AI Headshot Generator for Work | Preview before you pay $4.99 one-time, no subscription MAXTOKEN A Unified Framework for Unbounded Output Generation and Repository-Scale Code Understanding The unlikely Vatican-Anthropic relationship that's reshaping AI ethics debate Fashion designer Jeremy Scott gets a huge cheer after ripping up his AI-written commencement speech Sycophantic AI decreases prosocial intentions and promotes dependence GitHub - anasmohiuddinsyed-bit/ai-fix: When a command fails, one word fixes it. AI-powered error fixer for your terminal. AI Governance 2026: I Almost Quit over This Shit (and Why You Might Too) GitHub - sabir-gbs/the-polyglot-protocol: A senior-engineer protocol for polyglot code generation, architecture, testing, security, performance, and agent validation. CodeShot — Beautiful Code Screenshots via API Apple Preparing New 'Gen AI' Website Ahead of WWDC Duolingo's CEO says he backtracked on evaluating AI use in performance reviews AgentLens — Know if your AI features are actually working How Much AI Compute Do Frontier Labs Use? AIBTC
My AI coding flow was burning tokens to do things code should do
toadi · 2026-05-25 · via Hacker News - Newest: "AI"

Most AI coding flows are getting more elaborate. Mine got simpler.

If you spend most of your day in a coding agent and have started wondering whether some of it should just be a script, this is for you. I am not going to cover MCP servers, skill authoring, or how Pi compares feature by feature to Claude Code. Plenty of other posts do that.

Credit where it is due: Robert Douglass built Spec Kitty and it is a good tool. It sits on top of a coding harness, follows Spec-Driven Development, and gives you governance and auditability. It will work for plenty of teams. I went the other way.

I started with an open source harness called opencode. I learned how it worked, and pretty quickly it started to feel restrictive. Then I found Pi Agent. It is barebones: a read tool, a write tool, an edit tool, bash, and a way to connect your models. Everything else lives in extensions, and you extend it yourself. There is a prompt folder and a skills folder. No agents. That is the whole point. (If you want a longer take on why Pi’s minimalism is interesting, Armin Ronacher wrote one.)

When I was on opencode I leaned on commands and agents to run deterministic steps. The problem is that sometimes the LLM followed them and sometimes it did not, and either way it was burning tokens to do work that did not need a model in the loop. That is my main gripe with where a lot of these flows are heading: we are giving up determinism in the exact places it matters most. Some things should just be code.

I am slowly moving away from pure command/agent/skill flows toward deterministic building blocks the LLM can call in a modular way. The result is more uniform delivery steps, and I no longer have to babysit every session to make sure the model is not running npm when AGENTS.md clearly says yarn, or skipping the commit step, or running the wrong test command.

A concrete example. At our company, GitHub Actions runs a SonarQube check for code coverage and security issues. I want those results fed to the LLM so it can propose fixes. My old approach was a command that told the LLM to pull the report and write it up. It worked, mostly. It also burned tokens and sometimes went off script, which meant I had to verify every step. So I rewrote it as a Pi extension that just runs.

Same story for code review. My codereview extension handles PRs, commits, folders, or uncommitted code. The prompt is built deterministically from whichever target you pick. Before, I would tell the LLM which commands to run and hope. Now it goes right every time.

The rifle creed in my repo is there for the same reason. It reminds me that the tools I trust most are the ones I built and understand. The best way to think about any of this is as dotfiles. Do not copy someone else’s dotfiles wholesale, they are theirs. Browse them for ideas, take what fits, build your own. Same with the Pi Agent extensions. This is my flow. Use it for inspiration, copy what works, but build your own.

Spec Kitty has a nice setup for managing your flow. So does every other tool out there, each in its own ecosystem. I work across many projects with different issue trackers, so I fall back on open source that already solved the problem. Taskwarrior is my local representation. Bugwarrior syncs most of the known issue trackers into it. Hook it up, sync, done.

Sometimes you do not need another tool. You just need to use the one that exists.

I saved enough tokens that I fell off our internal burn leaderboard, which thankfully is not a metric for LLM adoption at our company. Three places are worth looking at.

Chatting. Every message sends the system prompt, your skills, your MCPs, and the agent prompt along with the actual message. Caching helps, but caching is not free either. This is where caveman comes in, an excellent skill built by a Dutch student. I have been running it for three months and recommend it.

Tools. I used to use RTK-AI, but the LLM would sometimes complain that commands were truncated and things broke. RTK-AI lets you exclude commands in config to work around it, but I switched to condensed-milk and have had fewer issues overall.

Compaction. I always thought it was a bit silly to use an LLM to compact a prompt, since you are burning tokens to save tokens. VCC does this locally. It does not summarize, it actually compacts the message through normalization and references certain blocks for retrieval if needed (via vcc-recall). No extra model calls, no lost context.

None of this is a framework. It is a set of choices that fit how I work, written down so I can keep making them on purpose. If something here is useful to you, take it. If not, the better lesson is to write down your own.

Share

No posts