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

Microsoft Azure Blog
Microsoft Azure Blog
博客园_首页
Forbes - Security
Forbes - Security
WordPress大学
WordPress大学
P
Proofpoint News Feed
T
Threat Research - Cisco Blogs
L
LINUX DO - 热门话题
L
Lohrmann on Cybersecurity
Spread Privacy
Spread Privacy
D
Darknet – Hacking Tools, Hacker News & Cyber Security
大猫的无限游戏
大猫的无限游戏
博客园 - 三生石上(FineUI控件)
P
Privacy International News Feed
A
About on SuperTechFans
T
Tailwind CSS Blog
I
InfoQ
S
Securelist
云风的 BLOG
云风的 BLOG
罗磊的独立博客
Recent Announcements
Recent Announcements
T
The Exploit Database - CXSecurity.com
B
Blog RSS Feed
V
Visual Studio Blog
Know Your Adversary
Know Your Adversary
The GitHub Blog
The GitHub Blog
Jina AI
Jina AI
腾讯CDC
Cyberwarzone
Cyberwarzone
有赞技术团队
有赞技术团队
AWS News Blog
AWS News Blog
博客园 - 【当耐特】
cs.AI updates on arXiv.org
cs.AI updates on arXiv.org
F
Full Disclosure
S
Secure Thoughts
博客园 - 司徒正美
J
Java Code Geeks
Y
Y Combinator Blog
Google Online Security Blog
Google Online Security Blog
GbyAI
GbyAI
N
News and Events Feed by Topic
Help Net Security
Help Net Security
freeCodeCamp Programming Tutorials: Python, JavaScript, Git & More
Project Zero
Project Zero
T
Tenable Blog
cs.CV updates on arXiv.org
cs.CV updates on arXiv.org
T
Tor Project blog
MyScale Blog
MyScale Blog
Scott Helme
Scott Helme
小众软件
小众软件
K
Kaspersky official blog

Hacker News

Introducing Claude Opus 4.7 Qwen Studio The Future of Everything is Lies, I Guess: Where Do We Go From Here? GitHub - SeanFDZ/macmind: Single-layer transformer in HyperTalk for the classic Macintosh Show HN: Agent-cache – Multi-tier LLM/tool/session caching for Valkey and Redis Moving a large-scale metrics pipeline from StatsD to OpenTelemetry / Prometheus GitHub - Nightmare-Eclipse/RedSun: The Red Sun vulnerability repository GitHub - SethPyle376/hiraeth: Local AWS emulator focused on fast integration testing, with SQS support, SQLite-backed state, and a debug-friendly web UI. GitHub - macOS26/Agent: Any AI, replaces Claude Code, Cursor, OpenClaw. Over 18 LLM providers (Claude, OpenAI, Gemini, Ollama, Zai, HF, Qwen) wired into a native Mac app that writes code, builds Xcode projects, bumps versions, manages git, automates Safari, use AppleScript, JS or Accessibility, extend Agent! w/ MCP Servers, run tasks from your iPhone via Messages. YouTube now lets you turn off Shorts I Made a Terminal Pager Burgers | マクドナルド公式 Commands — HackerNews CLI documentation ChatGPT for Excel PiCore - Raspberry Pi Port of Tiny Core Linux Live Nation illegally monopolized ticketing market, jury finds Google Broke Its Promise to Me. Now ICE Has My Data. Founding Engineer at Adaptional | Y Combinator CRISPR takes important step toward silencing Down syndrome’s extra chromosome GitHub - saffron-health/libretto: The AI toolkit for building reliable browser automations US v. Heppner (S.D.N.Y. 2026) no attorney-client privilege for AI chats [pdf] Unexpected €54k billing spike in 13 hours: Firebase browser key without API restrictions used for Gemini requests Retrofitting JIT Compilers into C Interpreters IPv6 – Google The Accursèd Alphabetical Clock Cybersecurity Looks Like Proof of Work Now Fragments: April 14 Cal.com Goes Closed Source: Why AI Security Is Forcing Our Decision | Cal.com - Scheduling Software for Online Bookings Laravel raised money and now injects ads directly into your agent When moving fast, talking is the first thing to break Too much Discussion of the XOR swap trick – Heather Cafe Introduction to Spherical Harmonics for Graphics Programmers The Grand Line Building a Z-Machine in the worst possible language High-Level Rust: Getting 80% of the Benefits with 20% of the Pain GitHub - duguyue100/midnight-captain: Inspired by Midnight Commander, tailored to my taste. How to build a `git diff` driver · Jamie Tanna | Software Engineer Center for Responsible, Decentralized Intelligence at Berkeley The Local Universe’s Expansion Rate Is Clearer Than Ever, but Still Doesn’t Add Up - A new synthesis of astronomical measurements confirms a persistent mismatch that could point to physics beyond current models The air throughout our homes is infused with microplastics. But there are things you can do to breathe less of them The disturbing white paper Red Hat is trying to erase from the internet – OSnews The Future of Everything is Lies, I Guess: Annoyances ‘Abhorrent’: the inside story of the Polymarket gamblers betting millions on war Productive procrastination — Max van IJsselmuiden maps, territory and LMs 447 Terabytes per Square Centimetre at Zero Retention Energy: Non-Volatile Memory at the Atomic Scale on Fluorographane Show HN: Pardonned.com – A searchable database of US Pardons 20 Years on AWS and Never Not My Job The Seasons are Wrong Artemis II crew splashes down near San Diego after historic moon mission We gave an AI a 3 year retail lease in SF and asked it to make a profit | Andon Labs How a dancer with ALS used brainwaves to perform live On filing the corners off my MacBooks Installing every* Firefox extension OpenClaw’s memory is unreliable, and you don’t know when it will break Steve Blank Nowhere Is Safe Chimpanzees in Uganda locked in vicious 'civil war', say researchers watgo - a WebAssembly Toolkit for Go linux/Documentation/process/coding-assistants.rst at master · torvalds/linux GitHub - callumlocke/json-formatter: Makes JSON easy to read. Founding Product Engineer at Bild AI | Y Combinator A compelling title that is cryptic enough to get you to take action on it GitHub - Keychron/Keychron-Keyboards-Hardware-Design: Industrial design files for Keychron keyboards and mice. 100+ models with CAD assets in STEP, DXF, DWG, and PDF. Source-available, with commercial use allowed for original compatible accessories within the license terms. [ANNOUNCE] WireGuardNT v0.11 and WireGuard for Windows v0.6 Released 1D-Chess Helium Is Hard to Replace Cooperative Vectors Introduction | Evolve Keeping a Postgres queue healthy — PlanetScale Our response to the Axios developer tool compromise Do Americans read print books, e-books or audiobooks more? The Zettelkasten Method in Obsidian: A Practical Setup Guide Artemis II Is Competency Porn and We Are Starving For It WeakC4 Flight Viz — Cockpit View A Mexican surveillance giant you’ve never heard of is now watching the U.S. border Surelock: Deadlock-Free Mutexes for Rust RISC-V 101 – what is it and what does it mean for Canonical? | Ubuntu The Problem That Built an Industry How Much Linear Memory Access Is Enough? | Solidean Investigating Split Locks on x86-64 Simplest hash functions Sybilproof reputation mechanisms (2005) [pdf] What is a property? How Complex is my Code? Static code analysis in Kotlin — tools overview Toffoli gates are all you need PGLite evangelism dcmake: a new CMake debugger UI Clojure on Fennel part one: Persistent Data Structures Fragments: April 2 Python Release Python install manager 26.1 The Life and Death of the Book Review - Liberties Introducing Database Traffic Control — PlanetScale Bitcoin miners are losing $19,000 on every BTC produced as difficulty drops 7.8% God sleeps in the minerals Building slogbox Apple Silicon and Virtual Machines: Beating the 2 VM Limit Who was “Not Even Wrong” first? Pokemon Evolution Vs Darwinian Evolution The APL Programming Language Source Code
Business logic as plain data
tie-in · 2026-06-21 · via Hacker News

Reproduce a production bug on your laptop, no database required.

Pure Effect is a zero-dependency effect library for JavaScript and TypeScript. Your business logic returns plain objects describing the I/O it would perform, instead of performing it. You can read those objects in a test or replay them from a failed production run, and the database is never touched until the interpreter runs them.

$ npm install pure-effect

It works on your machine. It broke in production. You can't reproduce it.

The cause is always the same: business logic and I/O are tangled together. When you write await db.findUser(email), the call fires immediately, mid-logic. So a test can only check what happened by making the I/O happen too, against a mock, a fake, or a container. And when production fails, all you have is a stack trace, because the calls the request actually made were never captured to replay.

async / await: the I/O is the logic

// The call fires immediately, mid-logic.
async function registerUser(input) {
  const found = await db.findUser(input.email);
  if (found) throw new Error('Email in use');
  return db.saveUser(input);
}

// To test it you must run it. When it fails
// in prod, nothing was recorded to replay.

You check behavior by executing it. The failed run leaves no trace you can step through.

pure-effect: the logic returns I/O as data

// Read what it would do first. Nothing ran.
const flow = registerUserFlow(input);
assert.equal(flow.cmd.name, 'cmdFindUser');

// Feed in what production saw and walk the
// exact same path, no database is touched.
const next = flow.next(recordedUser);
assert.equal(next.cmd.name, 'cmdSaveUser');

You check it by reading the tree. The same calls can be recorded in prod and replayed here, with no infrastructure.

Six pieces. Learnable in an afternoon.

Every Effect is one of these shapes. They compose into trees the interpreter walks at the edge of your system.

i.

Success(value)

OK

A successful computation result. Returns { type: 'Success', value }. Any pipeline step can return one to feed the next.

ii.

Failure(error)

ERR

Stops the pipeline immediately and short-circuits remaining steps. Optional initialInput is preserved for diagnostics.

iii.

Command(cmd, next)

deferred I/O

A side effect described as data. cmd is the function that would run; next turns its result into the next Effect.

iv.

Ask(next)

context · DI

Reads the context object passed to runEffect such as tenant, request id, and config without threading it through every signature.

v.

Retry(effect, opts)

resilience

Wraps any Effect with retry-on-failure. Configure attempts, delay, backoff. On exhaustion: a structured Failure.

vi.

Parallel(effects, next)

concurrency

Runs Effect trees concurrently via Promise.all. Ask context flows into every branch. First Failure short-circuits.

plus the composers: effectPipe(...fns): sequential runEffect(effect, ctx?): the interpreter configureEffect(opts): global hooks

Complete example: user registration flow

import { Success, Failure, Command, effectPipe, runEffect } from 'pure-effect';

// Pure functions, no I/O, no imports, instantly testable.
function validateRegistration(input) {
  if (!input.email?.includes('@')) return Failure('Invalid email.');
  if (input.password?.length < 8)  return Failure('Password too short.');
  return Success(input);
}

function ensureEmailAvailable(found) {
  return found ? Failure('Email already in use.') : Success(true);
}

// Commands: side effects described as data, executed by the interpreter.
function findUserByEmail(email) {
  const cmdFindUser = () => db.findUserByEmail(email);
  return Command(cmdFindUser, (found) => Success(found));
}

function saveUser(input) {
  const cmdSaveUser = () => db.saveUser(input);
  return Command(cmdSaveUser, (saved) => Success(saved));
}

// Pipeline: compose into a single flow.
const registerUserFlow = (input) =>
  effectPipe(
    validateRegistration,
    () => findUserByEmail(input.email),
    ensureEmailAvailable,
    () => saveUser(input)
  )(input);

// Test: assert on structure, no mocks, no I/O.
const flow = registerUserFlow({ email: '[email protected]', password: 'password123' });
assert.equal(flow.cmd.name, 'cmdFindUser');
assert.equal(flow.next(null).cmd.name, 'cmdSaveUser');

// Run: hand the tree to the interpreter at the boundary.
const saved = await runEffect(registerUserFlow(input), { flowName: 'register' });

What you get out of the box.

Test without a database

Assert what your code would do.

Pipelines return inert objects. Walk the tree and check each step: no mock, no in-memory fake, no container.

assert.equal(step.cmd.name, 'cmdFindUser'); assert.equal(step.type, 'Command');

Replay production runs

Step through the failed request locally.

Record what each command returned in production, then feed those results back into the same tree to retrace the exact path, no infrastructure attached.

let step = flow; while (step.type === 'Command') step = step.next(recorded[step.cmd.name]); // replays the recorded path, no I/O

Retry as data

Test resilience without waiting.

Wrap any Effect with retry semantics. Because the config is plain data, tests assert on it directly: no timers, no sleeps, no flaky timing.

Retry(effect, { attempts: 3, delay: 200, backoff: 2 }); // 200·400·800

Parallel execution

Concurrent branches, ordered results.

Promise.all semantics with first-failure short-circuiting. Ask context flows into every branch automatically.

Parallel( [getUser(id), getPerms(id)], ([user, perms]) => Success({ user, perms }) );

Dependency injection

Context without polluting signatures.

Resolve tenant, trace id, or config from the framework layer. Domain functions stay clean and just Ask.

Ask((ctx) => { // ctx.tenant comes from runEffect return Command(...) });

OpenTelemetry

Lifecycle hooks for tracing.

onRun, onStep, and onBeforeCommand let you wrap workflows in spans without touching domain code.

configureEffect({ onRun: (eff, pipeline, name) => tracer.startActiveSpan(name, pipeline) });

Where it fits, and where it doesn't.

Pure Effect describes one finite operation as a tree you read before it runs. That is its strength and its boundary: it is for request-shaped operations, not background processes.

Library

DESCRIPTION

Choose pure-effect if…

Effect-TS

A full functional ecosystem with fibers, streaming, schema validation, and structured concurrency. Powerful, with a steep learning curve.

…you need testable pipelines, retry, and dependency injection that can be learned in an afternoon.

fp-ts

Brings category-theory abstractions such as functors, monads, and applicatives to TypeScript. Teaches a lot of vocabulary along with effects.

…you want effects-as-data without the academic vocabulary.

async/await + mocks

The default. Simple for small surfaces. Falls apart when test isolation matters: mocks drift from real drivers and tests turn into theater.

…test isolation is a real pain point in your codebase.

AI writes the flow. You read it before it runs.

AI code generators emit async/await: to see what it does you run it, and every check touches infrastructure. Because a Pure Effect flow is plain data, you can read its control flow before anything executes: which commands it issues, in what order, down which branch.

async / await: run to verify

// Did the AI handle the error path?
// Did it thread context correctly?
// You won't know until you run it.
async function registerUser(input) {
  const found = await db.findUser(input.email);
  if (found) throw new Error('Email in use');
  return db.saveUser(input); // awaited? who knows.
}

You audit by executing. Every verification touches infrastructure.

pure-effect: read to verify

// AI generated this flow. Inspect it before it runs.
const flow = registerUserFlow(input);

assert.equal(flow.type, 'Command');
assert.equal(flow.cmd.name, 'cmdFindUser');

const step2 = flow.next(null);
assert.equal(step2.cmd.name, 'cmdSaveUser');
// Control flow confirmed. Nothing executed.

You audit by reading the tree. No database, no network.

This confirms the shape of generated code, not its correctness, but it rules out a wrong code path before anything runs.

06  /  install

Six primitives.
Zero dependencies.
See what your code does before it runs.

$ npm install pure-effect