ClickProof
UI interaction verifier for computer-use agents — tracks which UI elements exist and their expected behavior to catch ghost actions.
README
clickproof
Persistent GUI behavioral facts for computer-use agents.

Quick Start · How It Works · CLI Reference · GitHub Action · vs. Alternatives · Claude/MCP · Contributing
Why
Computer-use agents navigate GUIs blindly. Every session restarts from zero — the agent re-discovers which button opens a dialog, which tab holds exports, which field triggers validation.
This is expensive. More importantly, it's fragile: apps change, and the agent's cached intuition from training is often wrong.
clickproof solves this by giving agents a persistent, confidence-scored memory of UI behavioral facts. Before a session starts, the agent loads what is known about the target app. Observations from every run update confidence scores. When an interface changes, scores decay and the agent adapts.
# Inject known facts into an agent's system prompt
clickproof query salesforce --min-score 0.7
How It Works
flowchart LR
A[Agent records UIFact\napp · element · action → outcome] --> B[FactStore\nSQLite persistence]
B --> C[FactObservation\nconfirmed or refuted]
C --> D[FactScorer\nbase_ratio × staleness_decay × count_boost]
D --> E[FactRetriever\nquery by app + min_score]
E --> F[bootstrap_context\ntext for system prompt injection]
Core primitives:
- UIFact — an immutable, content-addressed record of
app_name + app_version + element + action → outcome. ID = SHA-256[:16] of the key fields. Same element observed twice always produces the same ID. - FactObservation — a confirmed/refuted signal from an agent run, linked to a UIFact.
- FactScorer — computes a confidence score from observation history:
base_ratio × staleness_decay × count_boost. - FactRetriever — queries facts by app and version, filtered by minimum score, and generates a text context string for agent injection.
Features
| Feature | Details |
|---|---|
| Content-addressed facts | Same app/version/element/action always produces the same ID |
| Bayesian-style scoring | Score = base ratio × staleness decay × count boost |
| Staleness decay | Score decays exponentially at e^(-0.1 × staleness_days) |
| Offline / local-first | Single SQLite file, no server required |
| Agent context injection | bootstrap_context() returns a ready-to-inject text block |
| JSON output | Machine-readable output for downstream automation |
| Markdown output | Ready-to-paste format for issue comments and PRs |
| FastAPI REST server | /fact, /observe, /query, /facts, /bootstrap, /health endpoints |
| MCP server | Model Context Protocol tools for Claude and other MCP-compatible agents |
| 166 tests | Comprehensive suite covering all layers with 87%+ branch coverage |
Quick Start
pip install clickproof
Extras / Optional Dependencies
# FastAPI REST server (5 endpoints: /fact /observe /query /facts /bootstrap /health)
pip install 'clickproof[api]'
uvicorn clickproof.api:app --reload
# MCP server for Claude Desktop and other MCP-compatible agents
pip install 'clickproof[mcp]'
from clickproof import UIFact, FactObservation, FactStore, FactRetriever, FactScorer
import time
with FactStore("my_app.db") as store:
# Record a UI behavioral fact
fact = UIFact(
app_name="salesforce",
app_version="2025.11",
element="export-csv-button",
action="click",
outcome="opens-download-dialog",
context="reports-page",
)
store.add_fact(fact)
# Record an observation confirming the fact
obs = FactObservation(
fact_id=fact.id,
observed_at=time.time(),
confirmed=True,
agent_run_id="run_001",
)
store.add_observation(obs)
# Retrieve facts for an app session
retriever = FactRetriever(store, FactScorer())
pairs = retriever.query(app_name="salesforce", min_score=0.5)
for fact, score in pairs:
print(f"[{score.score:.2f}] {fact.element} --{fact.action}--> {fact.outcome}")
# Get a text block for agent context injection
context = retriever.bootstrap_context("salesforce", "2025.11")
print(context)
CLI Reference
clickproof [--db PATH] COMMAND [ARGS]
Commands:
add APP VERSION ELEMENT ACTION OUTCOME Stage a UIFact
observe FACT_ID --confirmed/--refuted Record an observation
query APP [--version V] [--min-score F] Retrieve scored facts (--format rich|json|markdown)
log [--app APP] [--json] List all stored facts
status Show store info and stats
decay APP [--min-score F] [--format F] Show score decay projections for an app
export APP [-o FILE] [--bootstrap] Export facts as JSON (bootstrap pack optional)
Examples
# Add a fact
clickproof add salesforce 2025.11 export-csv-button click opens-download-dialog
# Confirm it from an agent run
clickproof observe <fact_id> --confirmed --run-id run_001
# Query with minimum score threshold
clickproof query salesforce --min-score 0.6
# Get JSON output for scripting
clickproof query salesforce --json | jq '.facts[].fact.element'
# Get Markdown output (ready to paste in issues / PRs)
clickproof query salesforce --format markdown
# Show score decay projections
clickproof decay salesforce --min-score 0.6
# Export facts to a file
clickproof export salesforce -o salesforce_facts.json
# Show store info
clickproof status
Formatters
clickproof ships three output formatters in clickproof.report (also importable from clickproof):
| Function | Description |
|---|---|
print_facts(pairs, console) |
Rich-formatted console table |
to_json(pairs) |
JSON string — {"count": N, "facts": [...]} |
to_markdown(pairs) |
Markdown table — ready to paste in issue comments and PRs |
from clickproof import FactRetriever, FactScorer, FactStore, to_markdown
with FactStore("my_app.db") as store:
retriever = FactRetriever(store, FactScorer())
pairs = retriever.query("salesforce", min_score=0.6)
print(to_markdown(pairs))
GitHub Action
Add clickproof fact queries to any CI/CD workflow:
- uses: sandeep-alluru/clickproof@main
with:
app-name: salesforce
app-version: "2025.11"
db: clickproof.db
min-score: "0.5"
vs. Alternatives
| clickproof | Plain cache | Vector store | Re-run | |
|---|---|---|---|---|
| Confidence-based | ✓ | ✗ | partial | ✗ |
| Staleness decay | ✓ | ✗ | ✗ | N/A |
| Content-addressed | ✓ | ✗ | ✗ | N/A |
| Local-first | ✓ | ✓ | partial | ✓ |
| MCP native | ✓ | ✗ | partial | ✗ |
| Agent context injection | ✓ | manual | manual | N/A |
Claude/MCP
clickproof ships a built-in MCP server. Add it to your Claude configuration:
{
"mcpServers": {
"clickproof-mcp": {
"command": "clickproof-mcp",
"env": { "CLICKPROOF_DB": "/path/to/clickproof.db" }
}
}
}
Available MCP tools: add_ui_fact, query_facts, bootstrap_context.
OpenAI / Tool Use
See tools/openai-tools.json for pre-built OpenAI function-calling tool definitions.
Case Studies
See how teams are using clickproof in production:
- Eliminating Session Startup Latency in Enterprise RPA with Persistent UI Facts
- Persistent CSS Selector Memory for High-Volume Web Data Extraction
Repository Tree
clickproof/
├── clickproof/
│ ├── __init__.py Public API
│ ├── fact.py UIFact + FactObservation data models
│ ├── scorer.py FactScorer + FactScore
│ ├── store.py SQLite-backed FactStore
│ ├── retriever.py FactRetriever + bootstrap_context
│ ├── report.py Rich / JSON / Markdown formatters
│ ├── cli.py Click CLI
│ ├── api.py FastAPI server
│ └── mcp_server.py MCP server
├── tests/ 166 pytest tests
├── examples/
│ ├── demo.py Standalone walkthrough
│ ├── computer_use_agent.py Computer-use agent integration
│ ├── multi_agent_shared_memory.py Multi-agent shared memory example
│ └── web_scraper_validation.py Web scraper validation example
├── action.yml GitHub Action
└── pyproject.toml
GitHub Topics
computer-use llm-agents agent-memory gui-automation behavioral-facts mcp llmops sqlite python
Stay Updated
Subscribe to The Silence Layer — weekly dispatches on production AI infrastructure, new releases, and the failure modes that production AI systems don't surface until it's too late.
Star History
<!-- mcp-name: io.github.sandeep-alluru/clickproof -->
Recommended Servers
playwright-mcp
A Model Context Protocol server that enables LLMs to interact with web pages through structured accessibility snapshots without requiring vision models or screenshots.
Magic Component Platform (MCP)
An AI-powered tool that generates modern UI components from natural language descriptions, integrating with popular IDEs to streamline UI development workflow.
Audiense Insights MCP Server
Enables interaction with Audiense Insights accounts via the Model Context Protocol, facilitating the extraction and analysis of marketing insights and audience data including demographics, behavior, and influencer engagement.
VeyraX MCP
Single MCP tool to connect all your favorite tools: Gmail, Calendar and 40 more.
graphlit-mcp-server
The Model Context Protocol (MCP) Server enables integration between MCP clients and the Graphlit service. Ingest anything from Slack to Gmail to podcast feeds, in addition to web crawling, into a Graphlit project - and then retrieve relevant contents from the MCP client.
Kagi MCP Server
An MCP server that integrates Kagi search capabilities with Claude AI, enabling Claude to perform real-time web searches when answering questions that require up-to-date information.
E2B
Using MCP to run code via e2b.
Neon Database
MCP server for interacting with Neon Management API and databases
Exa Search
A Model Context Protocol (MCP) server lets AI assistants like Claude use the Exa AI Search API for web searches. This setup allows AI models to get real-time web information in a safe and controlled way.
Qdrant Server
This repository is an example of how to create a MCP server for Qdrant, a vector search engine.