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@tangle-network/agent-runtime

The engine Tangle's AI agents run on. It runs an agent as a chat turn, a one-shot task, or a team of agents working toward a goal, records every run, and uses those records to measure and improve agents against real pass/fail checks.

One loop, used four common ways. Domain behavior (models, tools, knowledge) plugs in as adapters; the scoring statistics and the ship decision come from @tangle-network/agent-eval; sandboxed execution from @tangle-network/sandbox.

pnpm add @tangle-network/agent-runtime @tangle-network/agent-eval @tangle-network/sandbox

Contents

See it run in 30 seconds (offline, no keys): the one move everything else builds on, a driver reading a worker's output and composing the next step from it:

pnpm tsx examples/driver-loop/driver-loop.ts

What you do with it

You want to… Call
Run a chat turn for a production product agent handleChatTurn(...)
Have one agent supervise a team of agents toward a goal supervise(profile, task, opts)
Improve an agent and prove the gain on fresh tasks improve(profile, findings, opts)
Improve a knowledge base with agents, checks, and safe promotion runKnowledgeImprovementJob(...)

Run a chat turn

A product agent is one handleChatTurn call inside a route. You give it how to produce the response and how to persist it; it streams, traces, and persists.

import { handleChatTurn } from '@tangle-network/agent-runtime'

const result = handleChatTurn({
  identity: { tenantId, sessionId: threadId, userId, turnIndex: 0 },
  hooks: {
    produce: () => ({ stream: box.streamPrompt(userMessage), finalText: () => box.lastResponse() }),
    persistAssistantMessage: async ({ identity, finalText }) => db.insertMessage(identity, finalText),
  },
  waitUntil,
})
return new Response(result.body, { headers: { 'content-type': result.contentType } })

Supervise a team of agents

One supervisor spawns and steers workers toward a goal. Where the workers run (an in-process loop, or a sandboxed coding harness) is one data value; the budget, journaling, and stopping are handled for you.

import { supervise } from '@tangle-network/agent-runtime/loops'

const result = await supervise(
  { name: 'supervisor', harness: null, systemPrompt: 'Delegate to workers; do not solve the task yourself.' },
  'Implement the feature and make the tests pass.',
  { budget, router, backend }, // backend = where workers run: router-tools | sandbox+harness | bridge
)

Improve an agent

improve optimizes one part of an agent (its prompt, skills, or code) and only ships a change if it beats the current agent on tasks it never practiced on. Registering an agent for self-improvement cannot ship a worse candidate unless the caller supplies a bad measurement.

import { improve } from '@tangle-network/agent-runtime'

const { profile, shipped, lift } = await improve(baseProfile, findings, {
  surface: 'prompt',        // what to optimize: prompt | skills | code
  gate: 'holdout',          // certified on a held-back exam, never the practice set
  scenarios, judge, agent,  // how to measure a candidate
})

Improve a knowledge base

runKnowledgeImprovementJob is the runtime-owned front door for KB, wiki, memory-backed, and RAG improvement jobs. It creates a candidate copy, runs supervised agents against it, checks readiness through @tangle-network/agent-knowledge, measures spend and timing, and promotes only when the candidate passes.

import { runKnowledgeImprovementJob } from '@tangle-network/agent-runtime/knowledge'

const result = await runKnowledgeImprovementJob({
  root: './kb',
  goal: 'Improve support refund-policy knowledge',
  readinessSpecs,
  budget: { maxIterations: 8, maxTokens: 120_000, maxUsd: 10 },
  backend,
})

console.log(result.promoted, result.measurement.supervisedSpent)

Use it when the product needs one knob for "make this knowledge base better" instead of wiring improveKnowledgeBase, a runtime supervisor, candidate workspaces, readiness checks, and promotion tracking by hand.

How it works (the short version)

  • One agent, run two ways. The same agent runs at "do the task" speed and at "get better at the task" speed. "Driver", "worker", and "coordinator" are roles one agent plays, not separate types.
  • Everything is measured. Every run is a trace: tokens, dollars, time, and a pass/fail score from a real check. "Better" is a number with a denominator, not a vibe, and "equally good but cheaper" is a result you can prove.
  • Improvement is gated. A change ships only after it beats the current agent on fresh tasks no tuning step ever saw, with a statistical test, not a single lucky run.
  • The grader is honest. Whatever gives feedback never sees the answer key, and scores are recomputed from the attempts actually run. An agent cannot fabricate its own win.

Examples

Runnable, grouped by what they show. Copy the one nearest your task:

Do this Example
Run a product chat turn chat-handler
Drive a team of agents to a goal supervise · recursive-supervisor
Benchmark strategies on your own domain coding-benchmark
Benchmark harnesses × models over a real task suite (the real WebCode dataset) webcode-matrix
Render a multi-profile leaderboard with ranked board, score matrix, and SVG/HTML charts leaderboard(records)renderLeaderboardMarkdown / Svg / Html
Trace + bill + effort-gate the WebCode benchmark (the Intelligence SDK) intelligence-webcode
Self-improve an agent, gated on a held-out set improve · self-improving-coder
Improve a KB, wiki, or RAG corpus with runtime agents docs/canonical-api.md
Study coordination vs raw compute ablation-suite

All 29 live in examples/.

Where to go next

  • New here? docs/concepts.md, the mental model in plain terms.
  • docs/canonical-api.md, find the primitive: "I want to ___ → use ___".
  • docs/api/primitive-catalog.md, every export in one generated, never-stale list with its import path. Check it before building anything new.
  • Import subpaths: the root export is the product surface (handleChatTurn, improve); deeper capabilities ship as subpaths: /loops (multi-agent + the loop kernel), /knowledge (KB improvement), /mcp (tool servers), /intelligence (observability drop-in), /lifecycle, /agent, /profiles, /platform, /analyst-loop, /environment-provider.
  • docs/architecture.md, the design, end to end.
  • bench/HARNESS.md, the experiment harness and how to run a benchmark.

Contributing: pnpm i && pnpm test gets you running; the full local gate is the package.json scripts (lint, typecheck, docs:check).

About

The engine for running and improving AI agents. Run loops, analyze traces automatically, and feed learnings back into agents continuously to improve them.

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