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Measurement and calibration layer for AI — track what it knows, gate what it does

Project description

Empirica

We Gave AI a Mirror. Now It Measures What It Believes.

Version PyPI Python License

Epistemic infrastructure for AI — measurement, memory, and calibration across sessions.

Empirica tracks what AI knows, gates what it does, and compounds learning across session boundaries. It measures the gap between what AI predicts and what's true — making AI agents measurably more reliable.

Training & Guides | CLI Reference | Architecture

Important: Empirica is an AI measurement framework. It has no cryptocurrency, token, coin, or blockchain component. Any token using the Empirica name (including "$EMPIRICA" on Solana) is unauthorized and not affiliated with this project or Empirica AI GmbH.


The Problem

AI coding agents today have no self-awareness about what they know:

  • Forgets between sessions — same questions, same dead ends, every time
  • Acts before understanding — edits your code without knowing the architecture
  • Can't tell you when it's guessing — no distinction between knowledge and confabulation
  • No audit trail — reasoning evaporates with the context window

What Empirica Does

Capability What You Experience
Measures before acting AI investigates your codebase before touching it. The Sentinel gate blocks edits until understanding is demonstrated
Remembers across sessions Findings, dead-ends, and learnings persist in a 4-layer memory system. Session 3 starts where Session 2 left off
Prevents confident mistakes The CHECK gate uses domain-aware thresholds scaled by criticality — cybersec/high is stricter than default/low
Shows confidence in real-time Live statusline in your terminal: [empirica] ⚡94% ↕70% │ 🎯3 │ POST 🔍92% │ K:95% C:92%
Calibrates against reality Three-vector model: self-assessed, observed (from deterministic checks), and AI-reasoned grounded state with rationale. Domain compliance loops iterate until all checks pass
Tracks your codebase Temporal entity model auto-extracts functions, classes, and imports from every file edit — the AI knows what's alive and what's stale
Works through natural language You describe tasks normally. The AI operates the measurement system automatically
Optional: coordinates with peer AIs Cross-Claude mesh via Cortex (opt-in) — peer AIs propose work, ECO accepts/declines, completion handshakes carry commit SHAs. A persistent listener wakes idle sessions on inbox events. Empirica core works standalone without this — see Cross-AI Mesh below for the ecosystem layer

How You Use It

You talk to your AI normally. Empirica works in the background:

You:      "Fix the authentication bug in the login flow"

Empirica: [AI investigates → logs findings → passes Sentinel gate → implements fix → measures learning]

You see:  ⚡87% ↕70% │ 🎯1 │ POST 🔍85% │ K:88% C:82% │ Δ +K

You direct. The AI measures.

Empirica's CLI has 150+ commands spanning investigation, measurement, calibration, and memory — like a cockpit instrument panel. You don't need to learn any of them. The AI reads the instruments, operates the controls, and reports back in natural language. The statusline gives you the flight data at a glance.

For power users, direct CLI access is always available: empirica goals-list, empirica calibration-report, empirica project-search --task "...", and more.

Learn the full workflow: getempirica.com has interactive training, guides, and deep explanations of every concept.


Quick Start

Install + Claude Code (Recommended)

pip install empirica
empirica setup-claude-code

Then just start working. The hooks, Sentinel, system prompt, statusline, and MCP server are all configured automatically. See Claude Code Setup for details — including a "What the hooks inject" section for Claude sessions that want to see the contract (which hook fires when, what it adds to the AI's context, source pointers for every emission) before agreeing to install.

Already have Claude Code configured? Use --force to replace your default Claude Code settings with Empirica's epistemic hooks. Without --force, setup only writes files that don't already exist — so if you've already used Claude Code, the default internals stay in place and Empirica's hooks won't activate.

empirica setup-claude-code --force

--force replaces hooks in settings.json but only removes Empirica's own hooks — hooks from other plugins (Railway, Superpowers, etc.) are preserved.

Alternative Installation Methods

Homebrew (macOS)
brew tap nubaeon/tap
brew install empirica
empirica setup-claude-code
Docker
# Security-hardened Alpine image (~276MB, recommended)
docker pull nubaeon/empirica:1.11.1-alpine

# Standard image (Debian slim, ~414MB)
docker pull nubaeon/empirica:1.11.1

# Run
docker run -it -v $(pwd)/.empirica:/data/.empirica nubaeon/empirica:1.11.1 /bin/bash
Manual / Other AI Platforms
pip install empirica
pip install empirica-mcp        # MCP Server (for Cursor, Cline, etc.)
cd your-project && empirica project-init

The CLI works standalone on any platform. The full epistemic workflow (epistemic transactions, Sentinel, calibration) requires loading the system prompt into your AI — the easiest path is empirica setup-claude-code, which wires the lean prompt into ~/.claude/empirica-system-prompt.md and references it from your ~/.claude/CLAUDE.md. See Claude Code Setup for details.

First Session

empirica onboard   # Interactive walkthrough of the full workflow

Or just start working — with Claude Code hooks active, the AI manages the epistemic workflow automatically.


The Measurement Architecture

Empirica works through nested abstraction layers:

Plan
 └── Transaction 1 (Goal A)
      ├── NOETIC: investigate, search, read → findings, unknowns, dead-ends
      ├── CHECK: Sentinel gate → proceed / investigate more
      ├── PRAXIC: implement, write, commit → goals completed
      └── POSTFLIGHT: measure learning delta → persists to memory
 └── Transaction 2 (Goal B, informed by T1's findings)
      └── ...

Plans decompose into transactions — one per goal or Claude Code task. Each transaction is a noetic-praxic loop: investigate first (noetic), then act (praxic), with the Sentinel gating the transition. Along the way, the AI collects and reads artifacts (findings, unknowns, assumptions, dead-ends, decisions) while using semantic search to surface relevant epistemic patterns and anti-patterns from the project's history. Top artifacts are ranked by confidence and fed into each project's MEMORY.md as a hot cache.

The Epistemic Transaction Cycle

PREFLIGHT ────────► CHECK ────────► POSTFLIGHT
    │                 │                  │
 Baseline         Sentinel           Learning
 Assessment        Gate               Delta
    │                 │                  │
 "What do I      "Am I ready      "What did I
  know now?"      to act?"         learn?"

PREFLIGHT: AI assesses its knowledge state before starting work. CHECK: Sentinel gate validates readiness before allowing code edits. POSTFLIGHT: AI measures what it learned, creating a delta that persists.


Live Statusline

With Claude Code hooks enabled, you see the AI's epistemic state in real-time:

[empirica] ⚡94% ↕70% │ 🎯3 ❓12/5 │ POST 🔍92% │ K:95% C:92% │ Δ +K +C
Signal Meaning
⚡94% Overall epistemic confidence
↕70% Sentinel threshold (know gate) — user-facing only
🎯3 ❓12/5 Open goals (3), unknowns (12 total, 5 blocking)
POST 🔍92% Transaction phase + work state (🔍 investigating / 🔨 acting) with composite score
K:95% C:92% Knowledge and Context vectors (color-coded by gap to threshold)
Δ +K +C Learning delta (POSTFLIGHT only) — which vectors improved

The 13 Epistemic Vectors

These vectors emerged from 600+ real working sessions across multiple AI systems. They measure the dimensions that consistently predict success or failure in complex tasks.

Tier Vector What It Measures
Gate engagement Is the AI actively processing or disengaged?
Foundation know Domain knowledge depth
do Execution capability
context Access to relevant information
Comprehension clarity How clear is the understanding?
coherence Do the pieces fit together?
signal Signal-to-noise in available information
density Information richness
Execution state Current working state
change Rate of progress/change
completion Task completion level
impact Significance of the work
Meta uncertainty Explicit doubt tracking

Deep dive: Epistemic Vectors Explained


How It Works With Claude Code

Empirica doesn't replace or reinvent anything Claude Code already does. Claude Code owns tasks, plans, memory, and projects. Empirica adds the measurement layer on top:

Claude Code Does Empirica Adds
Task management Epistemic goals with measurable completion
Plan mode Investigation phase with Sentinel gating — no edits until understanding is verified
MEMORY.md Auto-curated hot cache ranked by epistemic confidence
Context window 4-layer memory that survives compaction and persists across sessions
Code editing Grounded calibration — was the AI's confidence justified by test results?
Subagent spawning Bounded autonomy with delegated work counting and budget tracking

The result: Claude Code's native capabilities, enhanced with measurement, gating, and calibration feedback that compounds over time.


Cross-AI Mesh (Optional Ecosystem Layer)

This section describes an optional layer. Empirica core — measurement, calibration, artifacts, goals, project-search, sentinel gating — works fully standalone. The mesh is an opt-in capability for users who run multiple Claude sessions across projects and want them to coordinate as peers. If you only use one AI in one repo, skip this section.

The mesh runs on top of Empirica Cortex (proprietary serving layer) plus an optional browser extension for ECO triage. At a high level:

empirica AI ── proposes work ──► ECO Accept/Decline ──► peer AI wakes + acts
                                                             │
                              completion handshake (commit SHA)
                                                             │
empirica AI ◄────────── outbox/completed event ──────────────┘
Capability What it does
Mesh proposals (two flavors) A noetic flavor is auto-accepted (FYI / question / discussion). Praxic flavors (code change / architecture / investigation) are ECO-gated — they wait for an Accept/Decline decision before the target AI acts
empirica mailbox reply One CLI verb closes the AI-to-AI handshake atomically — single-step completion ack instead of two
Persistent listener service systemd-user / launchd daemon holds a push stream open. Idle sessions wake the moment a peer's proposal is decided, not on next user prompt
Canonical loops Inbox polling (30s adaptive) and daily housekeeping auto-install per AI — no per-project config needed

The browser-side ECO surface (Accept/Decline, inbox triage, publish review) lives in the proprietary Empirica Extension. The full API surface for proposals, listener events, and the trust pipeline is documented at getempirica.com.


Practice Model + Entity Graph (1.10.0)

Empirica's workspace stores entities (projects, contacts, organisations, engagements, users) in entity_registry with typed edges in entity_memberships. The Practice Model frames this consistently:

Term Maps to
Practitioner the AI working on the project (you)
Practice the empirica project itself
Agent a subagent spawned during the work

Four CLI verbs query the graph without raw SQL:

empirica entity-list [--type project|contact|organization|engagement|user]
empirica entity-show <type:id>          # full record + incoming/outgoing edges
empirica entity-walk <type:id> --depth 3 # BFS membership graph, cycle-safe
empirica entity-search "query" [--type T]

All read-only, all support --output json. Backs cross-project orchestration, CRM workflows, and the entity-aware POSTFLIGHT retrospective.


Platform Support

Platform Integration Level What You Get
Claude Code Full (production) Hooks, Sentinel gate, skills, agents, statusline, MCP
Cursor, Cline MCP server Epistemic transaction workflow, memory, calibration via MCP tools
Gemini CLI, Copilot Experimental System prompt + CLI
Any AI CLI + prompt Full measurement via CLI commands and system prompt

Documentation & Training

Resource What It Covers
getempirica.com Training course, interactive guides, deep explanations
Natural Language Guide How to collaborate with AI using Empirica
Getting Started First-time setup and concepts
CLI Reference All 150+ commands documented
Architecture Technical reference for contributors
Claude Code Setup Install + system prompt + plugin wiring
Changelog Full release history — every version since 1.0
Upgrade to 1.10 Migration guide for the subtasktask CLI rename

The Empirica Ecosystem

Project Description Status
Empirica Core measurement system — epistemic transactions, Sentinel, calibration, 13 vectors Open source
Empirica Iris Epistemic browser automation with SVG spatial indexing — Sentinel gating for visual interactions Open source
Docpistemic Epistemic documentation coverage assessment — know what your docs know Open source
Breadcrumbs Survive context compacts with git notes — dead simple session continuity Open source
Empirica Cortex Cross-project intelligence layer — serves verified predictions and accumulated learnings to condition future work Proprietary
Empirica Workspace Entity Knowledge Graph, Epistemic Prompt Engine, CRM, portfolio dashboard Proprietary
Empirica Extension Chrome extension — desktop face of the mesh. ECO Accept/Decline, inbox/outbox triage, publish review, conversation extraction from Claude.ai / ChatGPT / Gemini / Grok Proprietary

Building something with Empirica? Open an issue to get listed.


What's New in 1.10.4

  • Windows: every hook failed on every event — fixed (#111)setup-claude-code now writes forward-slash hook paths (Git Bash was eating the backslashes)
  • Listener replay storms fixedloop_fires.log rotates by rename, so the wake-Monitors stop re-firing duplicate events across the mesh
  • gh run/gh workflow reads un-gated in the Sentinel — CI-status checks no longer need a CHECK gate
  • Decay recency extended to lessons + eidetic — the read-time recency rerank now covers lessons + eidetic facts (longevity modulator), not just findings

Privacy & Data

Your data stays local:

  • .empirica/ — Local SQLite database (gitignored by default)
  • .git/refs/notes/empirica/* — Epistemic checkpoints (local unless you push)
  • Qdrant runs locally if enabled

No cloud dependencies. No telemetry. Your epistemic data is yours.


Community & Support


License

MIT License — see LICENSE for details.


Author: David S. L. Van Assche Version: 1.11.1

Turtles all the way down — built with its own epistemic framework, measuring what it knows at every step.

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