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Looplens

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An MCP server for detecting retry loops and analyzing iteration patterns in agentic coding workflows, providing structured debugging intelligence to improve rep

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Описание

An MCP server for detecting retry loops and analyzing iteration patterns in agentic coding workflows, providing structured debugging intelligence to improve repair attempts.

README

See the loop. Break the loop.

LoopLens MCP is an iteration observability and loop-detection MCP server for Claude Code and agentic coding workflows.

It is built for a very specific pain point:

You ask the model to fix something. It tries. The fix fails. You ask again. It retries. Same issue. More edits. More noise. 😵‍💫

LoopLens turns that messy retry cycle into structured debugging intelligence.


✨ What is LoopLens MCP?

LoopLens is not a memory MCP. LoopLens is not just another logger.

It is a focused debugging intelligence layer that helps AI coding workflows understand:

  • what has already been tried 🔁
  • what changed between attempts 🧩
  • which failures keep repeating 🚨
  • whether the workflow is converging or thrashing 📉📈
  • what the next most promising debugging step should be 🎯

🤔 Why LoopLens exists

AI coding tools can be amazing on first-pass fixes.

But repeated repair attempts often become chaotic:

  • same failing command again and again
  • same files edited repeatedly
  • same tests still red
  • new wording, same failure
  • regressions introduced while fixing something else
  • retries that look different but are actually the same loop

That is exactly where LoopLens helps.


🧠 Core capabilities

1. Iteration logging

Capture repair/debug attempts across a task.

2. Attempt linking

Detect whether a prompt is:

  • a new task
  • a continuation
  • a retry
  • a regression check
  • a strategy branch

3. Loop detection

Identify patterns such as:

  • identical retry loops
  • repeated error signatures
  • command retry loops
  • file oscillation
  • validation stagnation
  • evidence-free retries
  • regression after partial success

4. Attempt comparison

Compare attempt N vs N-1:

  • files changed
  • tools used
  • commands run
  • validations changed
  • hypothesis shifts
  • outcome shifts

5. Convergence analysis

Estimate whether the workflow is:

  • converging ✅
  • weakly converging 🤏
  • stagnant 😐
  • diverging 📉
  • regressing ⚠️

6. Next-fix suggestions

Recommend the best next move:

  • gather more evidence
  • isolate root cause
  • narrow validation
  • revert harmful change
  • inspect external signals
  • stop editing and compare attempts
  • split task into subproblems

7. Connector observations

LoopLens can ingest signal from:

  • GitHub / GitLab
  • CI systems
  • Sentry
  • Jira / Linear
  • test runners
  • filesystem metadata
  • other MCP servers

LoopLens is the debugging brain 🧠 Other tools are signal sources 📡


💡 Philosophy

Don't just log the attempt. Understand the iteration.

That means:

  • structured trajectories instead of flat logs
  • failure fingerprints instead of noisy raw output
  • loop diagnosis instead of generic analytics
  • actionable next-step guidance instead of passive storage

🚫 Not a memory MCP

LoopLens does not try to become long-term user memory.

It focuses on:

  • observable debugging events
  • tool calls
  • validation results
  • explicit summaries
  • failure patterns
  • retry trajectories

It is built for debugging, evaluation, and improvement of coding workflows.


🛠 Example use cases

  • "Why did the last 3 fixes fail?"
  • "Are we editing the same files without real progress?"
  • "Did the failure actually change?"
  • "Are we stuck in a retry loop?"
  • "Which attempt got us closest to success?"
  • "What should Claude try next?"
  • "Export the last 20 failed repair loops as eval cases."

🚀 Quick Start

# Install
uv sync

# Run the MCP server
uv run looplens-mcp

🔌 Claude Code Integration

Add to ~/.claude/settings.json:

{
  "mcpServers": {
    "looplens": {
      "command": "uv",
      "args": ["run", "--directory", "/path/to/looplens-mcp", "looplens-mcp"],
      "env": {
        "LOOPLENS_LOG_LEVEL": "INFO"
      }
    }
  }
}

⚙️ Configuration

All settings use the LOOPLENS_ prefix:

Variable Default Description
LOOPLENS_DATA_DIR ~/.looplens Base data directory
LOOPLENS_DB_PATH ~/.looplens/looplens.db SQLite database path
LOOPLENS_LOG_LEVEL INFO Log level
LOOPLENS_LOOP_FREQUENCY_THRESHOLD 3 Min repeats to flag a loop
LOOPLENS_LOOP_WINDOW_SIZE 20 Sliding window size for detection
LOOPLENS_REDACTION_ENABLED true Auto-redact secrets from payloads
LOOPLENS_RETENTION_DAYS 90 Days before old sessions are pruned

🔧 MCP Tools Reference

Tool Description
create_session Create a new debug session
get_session Get session details
list_sessions List sessions with filters
close_session Mark session complete/abandoned
ingest_event Record a single tool event
ingest_batch Record multiple events at once
get_session_events Retrieve session event history
detect_loops Run loop detection algorithms
get_loops Get detected loop patterns
mark_false_positive Mark a false detection
get_convergence Get convergence score
analyze_convergence_trend Analyze trend over time
export_eval_cases Export as eval dataset
get_diagnostics Server health metrics
annotate_event Add metadata to an event
search_events Search by tool name

🔁 Loop Types Detected

  • infinite — same tool called with identical input repeatedly
  • oscillating — alternating between states without converging
  • thrashing — high-frequency oscillation across many tools
  • stuck — no meaningful progress for extended period
  • tool_retry — same tool retried after repeated failures

🏗 Architecture

looplens/
├── server/          # MCP server wiring (app.py, __main__.py)
├── tools/           # 16 MCP tool handlers
├── resources/       # 4 MCP resource handlers
├── prompts/         # 3 MCP prompt builders
├── domain/          # Immutable domain models (Pydantic v2)
├── storage/         # SQLAlchemy 2.0 async repositories
├── ingestion/       # Event normalization pipeline
├── loop_detection/  # 4 detection algorithms + classifier + scorer
├── convergence/     # 5-metric scoring engine
├── analytics/       # Orchestrator for detection + convergence
├── security/        # Redactor, path guard, rate limiter
├── connectors/      # Claude Code, JSON, JSONL event parsers
└── exports/         # Eval case exporter

🌟 Why it matters

One of the biggest weak points in AI coding today is what happens after the first fix fails.

LoopLens helps make retries:

  • measurable
  • comparable
  • diagnosable
  • learnable

Instead of:

"try something else"

you get:

"Attempt 3 repeated the same failure signature as attempt 2, edited the same files, and did not reduce validation severity — likely retry loop. Best next step: gather more evidence before editing again."

That is the kind of debugging intelligence coding agents need.


🌍 Vision

LoopLens aims to become the iteration intelligence layer for agentic debugging:

  • better local debugging
  • better repair observability
  • better eval datasets
  • better failure analysis
  • better coding-agent improvement loops

🧪 Status

Early project / active build.

If this resonates with you, ideas, contributions, and feedback are very welcome 🙌


📄 License

MIT


🔁🔍 LoopLens MCP

See the loop. Break the loop.

from github.com/musaceylan/looplens-mcp

Установка Looplens

У этого сервера нет опубликованного пакета — он собирается из исходников. Открой репозиторий и следуй инструкции в README.

▸ github.com/musaceylan/looplens-mcp

FAQ

Looplens MCP бесплатный?

Да, Looplens MCP бесплатный — установка в пару кликов через Unyly без оплаты.

Нужен ли API-ключ для Looplens?

Нет, Looplens работает без API-ключей и переменных окружения.

Looplens — hosted или self-hosted?

Self-hosted: сервер запускается локально на твоей машине командой из раздела установки.

Как установить Looplens в Claude Desktop, Claude Code или Cursor?

Открой Looplens на unyly.org, выбери вкладку своего клиента (Claude Desktop, Claude Code, Cursor) и нажми Install — конфиг сгенерируется автоматически, без правки JSON.

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