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MCP server that builds a world model for codebases to prevent hallucinations, repeated mistakes, and regressions

Project description

World Model MCP

Enforcement, provenance, and harness-neutral memory for AI coding agents. A temporal knowledge graph that validates code changes against learned constraints at the edit boundary, re-injects relevant context after compaction, tracks contradictions with confidence-weighted resolution, and runs across Claude Code, Cursor, and pi.

Status: v0.8.1 -- 26 MCP tools, 19 CLI subcommands, 375 tests, 105-pair contradiction-resolution benchmark. Expands the v0.7.4 24-pair benchmark to 105 pairs across 19 categories, including 6 new categories that exercise the v0.8.0 provenance + decay schema. Internal correctness check, not a category benchmark — the real wedge benchmark (repeat-mistake rate on AI coding tasks) is coming in v0.9. v0.8.0 added domain-aware confidence decay with per-evidence-type TTL, per-item provenance fields source_tool and confirmer, slash command write operations, and a confirmer parameter on resolve_contradiction. Antigravity adapter held for the third consecutive release pending a TransformCompactionHook in the SDK; next re-verify 2026-06-27. v0.7.6 added the /world-model slash command and status-watch TUI widget. v0.7.5 added the Codex CLI adapter. v0.7.0 introduced PostCompact auto-injection, the defer enforcement tier, confidence-weighted contradiction resolution, and a compaction audit log. Contributions welcome.

PyPI Downloads License: MIT Python 3.11+ world-model-mcp MCP server

mcp-name: io.github.SaravananJaichandar/world-model-mcp

If world-model-mcp helped you, star the repo or open an issue with what worked or didn't. I read every one and the feedback shapes what ships next.


What It Does

World Model MCP creates a temporal knowledge graph of your codebase that learns from every coding session to:

  • Prevent Hallucinations -- Validates API/function references against known entities before use
  • Stop Repeated Mistakes -- Learns constraints from corrections, applies them in future sessions
  • Reduce Regressions -- Tracks bug fixes and warns when changes touch critical regions
  • Survive Compaction -- Re-injects top constraints and recent facts after the agent's context window resets
  • Resolve Contradictions -- Picks a winner between conflicting facts using confidence, recency, or source count

Think of it as a long-term memory layer that runs alongside Claude Code, Cursor, or any MCP-aware coding agent.


What's new in v0.8.1

  • Contradiction-resolution benchmark expansion -- the v0.7.4 24-pair benchmark grew to 105 hand-curated pairs across 19 categories. Six new categories exercise the v0.8.0 schema specifically: source_tool_corroboration, confirmer_overrides_pending, decay_advantage_session_vs_source, decay_advantage_stale_session, evidence_type_user_correction, settled_beats_higher_confidence. Deterministic runner at benchmarks/contradictions-200/run.py; full per-strategy + per-category breakdown at benchmarks/contradictions-200/RESULTS.md.

  • Honest framing on the numbers: the new dataset is harder than v0.7.4's 24-pair set because the new categories deliberately test schema awareness (confirmer, evidence_type, decay) rather than raw confidence ranking. Headline numbers: keep_most_sources 99.0%, keep_higher_confidence 81.0%, auto 77.1%, keep_higher_confidence_decayed 90.5% (on the 21 pairs where evidence_type is present), overall 78.2% across all strategies. The original 24-pair v0.7.4 93.5% number is preserved unchanged at benchmarks/contradictions/ and is not invalidated; it tested a different (smaller, easier) corpus.

  • The wedge benchmark is v0.9: "does the learning loop measurably reduce repeated coding-agent mistakes on a public task corpus?" The contradiction-resolution work in this release is internal schema-correctness validation. The empirical artifact that maps to the published essay framing — the learning loop is the durable layer — lands in v0.9 with a SWE-bench-style repeat-mistake benchmark.

What's new in v0.8.0

  • Domain-aware confidence decay -- new world_model_server/decay.py module with exponential half-life decay per evidence_type. Half-lives: source_code 365d, test 180d, session 14d, user_correction 730d, bug_fix 365d. Decay applies on read (no background task), so the next query_fact call returns the time-corrected confidence. Settled facts (canonical status, or any fact with confirmer != NULL) never auto-transition. Synthesized facts that decay below 0.2 confidence and corroborated facts that decay below 0.1 confidence auto-supersede on read, surfacing rot to the next compaction injection.

  • Per-item provenance fields on facts -- three additive columns (source_tool TEXT, confirmer TEXT, last_decay_at TIMESTAMP), all NULL-defaulted, no backfill. source_tool records which tool wrote the fact (e.g. claude_code, codex, cursor, pi, user). confirmer records who confirmed it, distinct from the asserter; NULL means pending, non-NULL means settled. Both are exposed on the Fact model and propagated through create_fact. Honors the public commitment to Patdolitse (anthropics/claude-code#47023) and ferhimedamine (openai/codex#19195).

  • Slash command write operations -- two new subcommands. /world-model resolve <id> marks a contradiction as resolved (manual; for confidence-weighted picking use the resolve_contradiction MCP tool). /world-model forget <id> sets invalid_at on a fact (preserved in the audit log; current-only reads skip it from then on). Both are idempotent and report cleanly on unknown ids. Help text now lists both alongside the read-only subcommands shipped in v0.7.6.

  • resolve_contradiction accepts confirmer -- when a confirmer argument is provided to the MCP tool or its underlying resolve function, the winning fact gets its confirmer column stamped with that value. This is the spec primitive that distinguishes "the asserter says X" from "X is confirmed by Y" per the working group sketch.

  • Antigravity adapter held for the third consecutive release. The 2026-06-13 re-verification found OnCompactionHook declared as InspectHook in the SDK with no TransformCompactionHook and no additional_context return field. The load-bearing memory-injection contract still does not exist in the SDK. Next re-verify 2026-06-27.

What's new in v0.7.6

  • In-agent /world-model slash command -- typed by the user inside the agent harness, surfaces the world model state without leaving the chat. Read-only in v0.7.6 (status, contradictions, recent, help); write operations (resolve, forget) land in v0.8. Works across Claude Code, Cursor, Codex, and pi by intercepting UserPromptSubmit in the existing inject_helper. Returns additionalContext in the strict camelCase shape Codex enforces (deny_unknown_fields), so the same wire-up serves all four harnesses without a per-harness branch.
  • world-model status-watch TUI widget -- terminal pane that runs alongside the agent and refreshes every 5 seconds. Shows constraints (total, severity=error, severity=warning), unresolved contradictions, facts (canonical / synthesized / superseded), and last compaction time. Built on the rich library already in the dependency tree; falls back to a plain-text one-shot dump when rich is not installed.
  • Antigravity CLI adapter intentionally NOT shipped in this release -- the re-verification on 2026-06-13 against google-antigravity/antigravity-sdk-python HEAD surfaced an architectural gap: OnCompactionHook is declared as an InspectHook (read-only, non-blocking) with no additional_context return field and no TransformCompactionHook subclass. The load-bearing memory-injection contract does not exist in the SDK today. Targeting 2026-06-27 for the next re-verification; v0.7.6 ships without Antigravity rather than against a contract that cannot do the work.

What's new in v0.7.5

  • Codex CLI adapter -- new install-codex CLI subcommand appends a [mcp_servers.world_model] block plus PreToolUse, PostToolUse, PostCompact, and SessionStart hooks to ~/.codex/config.toml. The bundled snippet was verified against openai/codex@main at v0.138.0-alpha (server name uses underscore to dodge the tool-name hyphen-strip in codex-rs/codex-mcp/src/mcp/mod.rs; hook output sticks to camelCase with deny_unknown_fields compliance). Schema regression tests in tests/test_v075_features.py lock the contract down. See adapters/codex/README.md.
  • Dual-shape payload normalization in hook_helper and inject_helper -- both helpers now accept either Claude Code's payload shape (event, project_dir) or Codex's (hook_event_name, cwd), so the same Python code drives all four adapters (Claude Code, Cursor, pi, Codex).
  • Antigravity CLI adapter intentionally NOT shipped this release -- the Antigravity API surface is still settling (six 1.0.x releases in three weeks, the url field for HTTP MCP servers landed June 3, hook JSON event-name casing remains undocumented). Targeting June 25 for that adapter after the API stabilizes. Detailed reasoning in the v0.7.5 RELEASE_NOTES entry.

What's new in v0.7.4

  • AGENTS.md / .agents/skills/ constraint reader -- world-model-mcp now reads declarative project conventions from AGENTS.md, CLAUDE.md, GEMINI.md, and .agents/skills/*.md files and mixes them into PreToolUse enforcement alongside the SQLite-backed constraints. Supports structured fence blocks (```constraint and YAML frontmatter) and heuristic imperative-sentence extraction for prose-style AGENTS.md files. New MCP tool: get_agents_md_constraints. (anthropics/claude-code#6235 has 4,000+ thumbs-up for AGENTS.md as the cross-agent format.)
  • Self-hosted Claude Managed Agents deployment guide -- Anthropic's official position: "Memory is not yet supported in self-hosted sessions." world-model-mcp fills that gap. New guide at docs/deployment/managed-agents-self-hosted.md, with a Modal quickstart you can deploy in under five minutes.
  • Reproducible contradiction-resolution benchmark -- 24-pair dataset at benchmarks/contradictions/dataset.jsonl, runner at benchmarks/contradictions/run.py, results at benchmarks/contradictions/RESULTS.md. Headline: 93.5% overall accuracy, 100% on keep_higher_confidence and keep_most_sources, with documented honest weaknesses on tie-handling and small confidence gaps. Re-run with python benchmarks/contradictions/run.py. CI workflow guards regressions.

What's new in v0.7.3

  • world-model demo -- one command to see every primitive working. Initializes the knowledge graph, seeds reproducible demo data via scripts/demo_seed.py, then exercises each primitive (PreToolUse enforcement, contradiction detection, PostCompact injection, audit log) with real outputs. New users can see the value without writing any code.
  • Opt-in telemetry -- off by default, prompted once during world-model setup, inspectable with world-model telemetry --status, disabled with world-model telemetry --disable. No file paths, no code, no identifiers tied to a person. See Privacy and Security for the exact payload.
  • pi adapter -- new adapters/pi/ package. world-model-mcp now plugs into earendil-works/pi via pi's extension API (tool_call -> PreToolUse, context -> auto-injection, session_compact -> audit log). Install with world-model install-pi.

What v0.7.0 introduced (still active)

  • PostCompact / UserPromptSubmit auto-injection -- when the agent's context is compacted, the hook automatically splices the top constraints and recent canonical facts back into the next turn. Configurable, fails open.
  • defer enforcement tier -- PreToolUse now classifies recurring warning-level violations as defer, which pauses headless agents (with graceful fallback to ask on older clients) instead of either hard-denying or silently passing through.
  • Confidence-weighted contradiction resolution -- the new resolve_contradiction tool picks a winner using keep_higher_confidence, keep_most_recent, keep_most_sources, or auto. The loser is marked superseded.
  • Compaction audit log -- every PostCompact event writes a row with pre/post token counts and what was re-injected. Query with the audit-compactions CLI or export to JSONL.
  • Cursor adapter -- harness-neutral hooks under adapters/cursor/. Same Python helpers, different manifest format.
  • Streamable HTTP transport (v0.7.2) -- WORLD_MODEL_TRANSPORT=http so the same 25 MCP tools work behind an MCP tunnel for Claude Managed Agents with self-hosted sandboxes. See docs/deployment/mcp-tunnel.md.

Quick Start

Option 1: Desktop Extension (one-click for Claude Desktop)

Download the latest .mcpb from Releases and drag it into Claude Desktop. Auto-installs hooks, MCP server config, and dependencies.

Option 2: pip install (Claude Code CLI / IDE plugins)

# 1. Install the package
pip install world-model-mcp

# 2. Setup in your project (auto-seeds the knowledge graph from existing code)
cd /path/to/your/project
python -m world_model_server.cli setup

# 3. Restart Claude Code
# Done! The world model is pre-populated and active

You can also re-seed or seed manually at any time:

# Seed from existing codebase
world-model seed

# Re-seed with force (re-processes already seeded files)
world-model seed --force

Option 3: HTTP transport for remote / MCP-tunnel deployment

For Claude Managed Agents with self-hosted sandboxes, or any deployment where the MCP server lives behind a firewall and the agent reaches it from Anthropic-side infrastructure, run world-model-mcp in HTTP mode.

pip install 'world-model-mcp[http]'

export WORLD_MODEL_TRANSPORT=http
export WORLD_MODEL_HTTP_PORT=8765
python -m world_model_server.server

Or use the bundled image:

docker compose up -d                    # Dockerfile.http + persistent volume
curl http://127.0.0.1:8765/healthz      # {"status":"ok","version":"0.7.2"}

Full walkthrough including Anthropic MCP tunnels setup: docs/deployment/mcp-tunnel.md.

Stdio remains the default transport for Claude Code, Cursor, and .mcpb installs. Nothing changes for those flows.

Option 4: Run the guided demo (no Claude Code required)

To see every primitive working with real outputs from a real SQLite database before committing to a full install:

pip install world-model-mcp
cd /tmp/wm-test && mkdir -p wm-test && cd wm-test
world-model demo

The demo initializes a knowledge graph, seeds reproducible data, and exercises PreToolUse enforcement, contradiction detection, the PostCompact injection bundle, and the compaction audit log -- with the actual JSON outputs. Re-runs are idempotent.

Option 5: Run inside pi (experimental)

For users of earendil-works/pi:

pip install world-model-mcp           # the Python helpers
world-model install-pi                # writes adapters/world-model-pi/
pi install local:./adapters/world-model-pi

The pi adapter wires the same hook_helper and inject_helper you'd use from Claude Code into pi's tool_call, context, and session_compact events. See adapters/pi/README.md.

Option 6: Run inside Codex CLI (experimental)

For users of OpenAI's Codex CLI:

pip install world-model-mcp                # the Python helpers
python -m world_model_server.cli install-codex
# (appends [mcp_servers.world_model] + hook blocks to ~/.codex/config.toml)
# Restart codex; verify with: codex mcp list

--dry-run prints what would be appended without writing; --force re-appends even if the adapter marker is already present. The bundled snippet uses world_model (underscore) as the MCP server name to dodge Codex's silent hyphen-strip in its tool-name sanitizer. Hook output is camelCase with deny_unknown_fields compliance against Codex's strict Rust schema; the contract is locked down by tests in tests/test_v075_features.py. See adapters/codex/README.md.

What Gets Installed

your-project/
├── .mcp.json                    # MCP server configuration
├── .claude/
│   ├── settings.json           # Hook configuration
│   ├── hooks/                  # Compiled TypeScript hooks
│   └── world-model/            # SQLite databases (~155 KB)

Features

1. Hallucination Prevention

Before:

// Claude invents an API that doesn't exist
const user = await User.findByEmail(email); // This method doesn't exist

After:

// Claude checks the world model first
const user = await User.findOne({ email }); // Verified to exist

Goal: Reduce non-existent API references by validating against the knowledge graph

2. Learning from Corrections

Session 1: User corrects Claude

// Claude writes:
console.log('debug info');

// User corrects to:
logger.debug('debug info');

// World model learns: "Use logger.debug() not console.log()"

Session 2: Claude uses the learned pattern

// Claude automatically writes:
logger.debug('debug info'); // No correction needed

Goal: Learned patterns persist across sessions and prevent repeat violations

3. Regression Prevention

// Week 1: Bug fixed (null check added)
if (user && user.email) { ... }

// Week 2: Refactoring
// World model warns: "This line preserves a critical bug fix"
// Claude preserves the null check

// Result: Bug not re-introduced

Goal: Detect potential regressions before code execution


How It Works

Architecture

┌──────────────────────────────────────────────────────────┐
│ Claude Code + Hooks                                      │
│ Captures: file edits, tool calls, user corrections       │
└──────────────────────────────────────────────────────────┘
                         |
                         v
┌──────────────────────────────────────────────────────────┐
│ MCP Server (Python)                                      │
│ - 22 MCP tools for querying/recording/predicting          │
│ - LLM-powered entity extraction (Claude Haiku)           │
│ - External linter integration (ESLint, Pylint, Ruff)     │
└──────────────────────────────────────────────────────────┘
                         |
                         v
┌──────────────────────────────────────────────────────────┐
│ Knowledge Graph (SQLite + FTS5)                          │
│ - entities.db: APIs, functions, classes                  │
│ - facts.db: Temporal assertions with evidence            │
│ - relationships.db: Entity dependency graph              │
│ - constraints.db: Learned rules from corrections         │
│ - sessions.db: Session history and outcomes              │
│ - events.db: Activity log with reasoning chains          │
└──────────────────────────────────────────────────────────┘

Key Concepts

  1. Temporal Facts: Every fact has validAt and invalidAt timestamps

    • "Function X existed from 2024-01-15 to 2024-03-20"
    • Query: "What was true on March 1st?"
  2. Evidence Chains: Every assertion traces back to source

    • Fact -> Session -> Event -> Source Code Location
  3. Constraint Learning: Pattern recognition from user corrections

    • Automatic rule type inference (linting, architecture, testing)
    • Severity detection (error, warning, info)
    • Example generation for future reference
  4. Dual Validation: Combines two validation sources

    • World model constraints (learned from user)
    • External linters (ESLint, Pylint, Ruff)

MCP Tools

Twenty-two MCP tools available to Claude Code:

1. query_fact

Check if APIs/functions exist before using them

result = query_fact(
    query="Does User.findByEmail exist?",
    entity_type="function"
)
# Returns: {exists: bool, confidence: float, facts: [...]}

2. record_event

Capture development activity with reasoning chains

record_event(
    event_type="file_edit",
    file_path="src/api/auth.ts",
    reasoning="Added JWT authentication middleware"
)

3. validate_change

Pre-execution validation against constraints and linters

result = validate_change(
    file_path="src/api/auth.ts",
    proposed_content="..."
)
# Returns: {safe: bool, violations: [...], suggestions: [...]}

4. get_constraints

Retrieve project-specific rules for a file

constraints = get_constraints(
    file_path="src/**/*.ts",
    constraint_types=["linting", "architecture"]
)

5. record_correction

Learn from user edits (HIGH PRIORITY)

record_correction(
    claude_action={...},
    user_correction={...},
    reasoning="Use logger.debug instead of console.log"
)

6. get_related_bugs

Regression risk assessment

result = get_related_bugs(
    file_path="src/api/auth.ts",
    change_description="refactoring authentication logic"
)
# Returns: {bugs: [...], risk_score: float, critical_regions: [...]}

7. seed_project

Scan the codebase and populate the knowledge graph with entities and relationships

result = seed_project(
    project_dir=".",
    force=False
)
# Returns: {files_seeded: int, entities_created: int, relationships_created: int}

8. ingest_pr_reviews

Pull GitHub PR review comments and convert team feedback into constraints

result = ingest_pr_reviews(
    repo="owner/repo",  # Auto-detected from git remote if omitted
    count=10
)
# Returns: {prs_scanned: int, constraints_created: int, constraints_updated: int}

Documentation


Testing

# Run tests
pytest

# With coverage
pytest --cov=world_model_server --cov-report=html

186 tests covering knowledge graph CRUD, FTS5 search, constraint management, bug tracking, auto-seeding, PR review ingestion, decision traces, outcome linkage, trajectory learning, prediction layer, memory health, contradiction detection, transcript pointers, project identity, and PreToolUse enforcement. See tests/ for details.


Configuration

Environment Variables

# Database location (default: ./.claude/world-model/)
export WORLD_MODEL_DB_PATH="/custom/path"

# Anthropic API key (optional - enables LLM extraction)
# IMPORTANT: Never commit this! Use .env file (see .env.example)
export ANTHROPIC_API_KEY="your-api-key-here"

# Model selection
export WORLD_MODEL_EXTRACTION_MODEL="claude-3-haiku-20240307"  # Fast
export WORLD_MODEL_REASONING_MODEL="claude-3-5-sonnet-20241022"  # Accurate

# Debug mode
export WORLD_MODEL_DEBUG=1

Note: Create a .env file in your project root (see .env.example) - it's automatically ignored by git.

Customizing Hooks

Edit .claude/settings.json to customize which tools trigger world model hooks:

{
  "hooks": {
    "PostToolUse": [{
      "matcher": "Edit|Write|Bash",
      "hooks": [...]
    }]
  }
}

Language Support

Currently Supported:

  • TypeScript / JavaScript
  • Python

Coming Soon:

  • Go, Rust, Java, C++

Extensible Architecture: Easy to add new language parsers (see CONTRIBUTING.md)


Privacy and Security

  • Local-First: All knowledge graph data stays on your machine.
  • Optional LLM: Works without API key (uses regex patterns as fallback).
  • Encrypted Storage: SQLite databases are local files (encrypt your disk for security).

Telemetry (opt-in, off by default)

v0.7.3 added anonymous usage telemetry. It is:

  • Off by default. You have to explicitly opt in.
  • Asked once during world-model setup, with a clear y/N prompt.
  • Inspectable: world-model telemetry --status shows the exact JSON payload that would be sent.
  • Disable any time with world-model telemetry --disable, or globally with WORLD_MODEL_TELEMETRY_DISABLE=1.
  • Skipped in non-TTY environments (CI, scripts) so it never blocks an automated setup.

What we send (only if you opt in):

Field Example Why
event setup_completed, demo_run, hook_fired Which lifecycle step ran
version 0.7.3 Which release you're on
install_id random UUID at ~/.world-model/install_id Distinguish installs without identifying users
ts unix timestamp When the event fired

What we never send: file paths, file contents, rule names, hostnames, IP addresses, API keys, decision-trace text, fact text, or anything else that could identify a person or leak business logic. The full payload schema lives in world_model_server/telemetry.py.

Where it goes: opt-in events are posted to a dedicated private GitHub repo (SaravananJaichandar/world-model-telemetry) as plain issues. There is no third-party analytics service, no cookie, no fingerprint. The PAT embedded in the client is scoped to that one repo with Issues: write only.

API Key Usage (only if you provide ANTHROPIC_API_KEY)

  • Entity extraction from code changes
  • Constraint inference from corrections
  • Never sends: Credentials, secrets, PII

Security Best Practices

  • Never commit .env files
  • Use .env.example as template
  • Store API keys in environment variables or .env files only
  • The .gitignore automatically excludes sensitive files

Roadmap

v0.2.x

  • Auto-seeding: knowledge graph populates from existing codebase on setup
  • PR Review Intelligence: ingest GitHub review comments as constraints
  • Relationship tracking: import and dependency graph between entities
  • Multi-language support: Python, TypeScript/JavaScript, Solidity, Go, Rust
  • CLI query command for knowledge graph lookups
  • 40 tests, 8 MCP tools

v0.3.0

  • Module-level matching: query by module name finds the file and its contents
  • Incremental re-seeding: only re-process files changed since last seed
  • Fuzzy entity matching: approximate name search for typos and abbreviations
  • Query caching: in-memory cache with TTL for repeated lookups
  • Java support: complete multi-language coverage
  • MCP server pipeline validation on real projects

v0.4.0

  • Outcome linkage: test failures linked to code changes with facts
  • Trajectory learning: co-edit patterns tracked across sessions
  • Decision trace capture: structured log of agent proposals and human corrections
  • Cross-project entity search with project registry
  • 5 new MCP tools (13 total), 104 tests

v0.5.0

  • Regression prediction, "what if" simulation, test failure prediction
  • Multi-project knowledge transfer, memory health, fact TTL/decay
  • get_context_for_action pre-edit bundle, constraint violation tracking, find_contradictions
  • 20 MCP tools, 151 tests

v0.6.0 — Enforcement, Provenance, Identity

  • PreToolUse constraint enforcement hook: deny hard violations at the edit boundary
  • Indexed transcript pointers: hydrate any fact back to source conversation
  • Project identity decoupling: stable UUID across directory renames
  • Content-hash deduplication for facts and constraints
  • Auto-generate CLAUDE.md from the knowledge graph
  • BetaAbstractMemoryTool subclass for Anthropic SDK integration
  • Desktop Extension (.mcpb) packaging for Claude Desktop
  • 22 MCP tools, 13 CLI subcommands, 186 tests

v0.7.0 — Auto-injection, defer tier, contradiction resolution, harness adapters

  • PostCompact and UserPromptSubmit auto-injection: re-emit top constraints and recent facts after context loss
  • defer enforcement tier in PreToolUse: pause headless agents on recurring warning-level violations, with graceful fallback to ask
  • Confidence-weighted contradiction resolution: pick a winner using confidence, recency, or source count, with an auto strategy
  • Compaction audit log: query and export what was remembered across each compaction boundary
  • Cursor adapter package
  • 25 MCP tools, 14 CLI subcommands, 220 tests

v0.7.2 — Streamable HTTP transport

  • HTTP transport mode for remote / MCP-tunnel deployment
  • /healthz endpoint, Dockerfile.http, docker-compose.yml
  • docs/deployment/mcp-tunnel.md walkthrough for Claude Managed Agents
  • 236 tests

v0.7.3 — Onboarding, telemetry, pi adapter

  • world-model demo guided tour for first-time users
  • Opt-in anonymous telemetry, off by default, inspectable
  • pi-package adapter (adapters/pi/, install-pi CLI)
  • 17 CLI subcommands, 256 tests

v0.7.4 (Current) — Interop, deployment, benchmark

  • AGENTS.md / .agents/skills/ constraint reader (new MCP tool: get_agents_md_constraints)
  • Self-hosted Claude Managed Agents deployment guide + Modal quickstart
  • Reproducible contradiction-resolution benchmark (24-pair dataset, CI workflow, RESULTS.md)
  • 26 MCP tools, 17 CLI subcommands, 283 tests

v0.7.5

  • Codex CLI adapter (install-codex, shipped 2026-06-05)

v0.7.6

  • In-agent /world-model slash command (read-only: status, contradictions, recent, help)
  • world-model status-watch TUI status widget

v0.8.0

  • Decay + provenance schema: source_tool, confirmer, last_decay_at columns on facts. Per-evidence-type TTL with domain-aware half-lives (source_code 365d, test 180d, session 14d, user_correction 730d, bug_fix 365d).
  • Slash command write operations (/world-model resolve <id>, /world-model forget <id>).
  • resolve_contradiction accepts confirmer to stamp the winning fact as settled.

v0.8.1

  • Expanded contradiction-resolution benchmark: 24 → 105 pairs across 19 categories, including 6 new categories that test the v0.8.0 schema (decay, provenance, confirmer).
  • Honest per-strategy + per-category RESULTS.md with the v0.7.4 number preserved as baseline.

v0.9 (Next, in design)

  • Repeat-mistake benchmark on AI coding tasks. The empirical test of the central wedge: does the learning loop measurably reduce repeated agent mistakes? Runs against a SWE-bench-style task corpus with Claude Code headless, measures delta in repeat-mistake rate with vs without world-model-mcp learning the constraint from the first attempt. This is the artifact the visibility plan has been reaching for; it maps directly to the June 2026 essay framing.
  • auto strategy rewrite to fold in confirmer + decay awareness (should lift the v0.8.1 benchmark's auto score from 77.1% past 90%).
  • Antigravity CLI adapter (held since 2026-06-13; SDK lacks a TransformCompactionHook for the load-bearing memory-injection contract; re-verify 2026-06-27).
  • MCP spec 2026-07-28 readiness (stateless transport, _meta headers, InputRequiredResult).
  • Cline adapter (lower urgency after they shipped global AGENTS rules in v3.86).

Contributing

Contributions are welcome. See CONTRIBUTING.md for:

  • Development setup
  • Coding standards
  • Adding language support
  • Writing tests
  • Submitting PRs

Areas where help is needed:

  • Language parsers (Go, Rust, Java, C++)
  • Performance optimization
  • Documentation improvements
  • Real-world testing feedback

Stats

Project Size:

  • ~4,800 lines of code
  • 13 Python modules
  • 3 TypeScript hook implementations

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