Crawler Summary

claude-supercode-skills answer-first brief

ML/AI Skills Conversion Project ML/AI Skills Conversion Project Overview This project provides comprehensive scripts and references for 11 ML/AI-related skills, designed for production use with best practices, error handling, and configuration management. Project Structure Skills Created 1. AI Engineer **Scripts:** - integrate_openai.py - OpenAI API integration with retry logic - integrate_anthropic.py - Claude API integration - setup_rag.py - RAG Capability contract not published. No trust telemetry is available yet. Last updated 4/15/2026.

Freshness

Last checked 4/15/2026

Best For

claude-supercode-skills is best for pip workflows where OpenClaw compatibility matters.

Not Ideal For

Contract metadata is missing or unavailable for deterministic execution.

Evidence Sources Checked

editorial-content, GITHUB OPENCLEW, runtime-metrics, public facts pack

Claim this agent
Agent DossierGitHubSafety: 94/100

claude-supercode-skills

ML/AI Skills Conversion Project ML/AI Skills Conversion Project Overview This project provides comprehensive scripts and references for 11 ML/AI-related skills, designed for production use with best practices, error handling, and configuration management. Project Structure Skills Created 1. AI Engineer **Scripts:** - integrate_openai.py - OpenAI API integration with retry logic - integrate_anthropic.py - Claude API integration - setup_rag.py - RAG

OpenClawself-declared

Public facts

4

Change events

1

Artifacts

0

Freshness

Apr 15, 2026

Verifiededitorial-contentNo verified compatibility signals

Capability contract not published. No trust telemetry is available yet. Last updated 4/15/2026.

Trust evidence available

Trust score

Unknown

Compatibility

OpenClaw

Freshness

Apr 15, 2026

Vendor

Belokonm

Artifacts

0

Benchmarks

0

Last release

Unpublished

Executive Summary

Key links, install path, and a quick operational read before the deeper crawl record.

Verifiededitorial-content

Summary

Capability contract not published. No trust telemetry is available yet. Last updated 4/15/2026.

Setup snapshot

git clone https://github.com/belokonm/claude-supercode-skills.git
  1. 1

    Setup complexity is LOW. This package is likely designed for quick installation with minimal external side-effects.

  2. 2

    Final validation: Expose the agent to a mock request payload inside a sandbox and trace the network egress before allowing access to real customer data.

Evidence Ledger

Everything public we have scraped or crawled about this agent, grouped by evidence type with provenance.

Verifiededitorial-content
Vendor (1)

Vendor

Belokonm

profilemedium
Observed Apr 15, 2026Source linkProvenance
Compatibility (1)

Protocol compatibility

OpenClaw

contractmedium
Observed Apr 15, 2026Source linkProvenance
Security (1)

Handshake status

UNKNOWN

trustmedium
Observed unknownSource linkProvenance
Integration (1)

Crawlable docs

6 indexed pages on the official domain

search_documentmedium
Observed Apr 15, 2026Source linkProvenance

Release & Crawl Timeline

Merged public release, docs, artifact, benchmark, pricing, and trust refresh events.

Self-declaredagent-index

Artifacts Archive

Extracted files, examples, snippets, parameters, dependencies, permissions, and artifact metadata.

Self-declaredGITHUB OPENCLEW

Extracted files

0

Examples

6

Snippets

0

Languages

typescript

Parameters

Executable Examples

text

claude-skills-conversion/
├── ai-engineer-skill/          # AI service integration, RAG, prompts
├── llm-architect-skill/        # LLM design, fine-tuning, serving
├── ml-engineer-skill/           # ML pipelines, scikit-learn
├── mlops-engineer-skill/        # MLflow, deployment, monitoring
├── machine-learning-engineer-skill/  # Jupyter, feature engineering
├── data-engineer-skill/         # ETL pipelines, data lakes
├── data-scientist-skill/        # Statistical analysis, visualization
├── data-analyst-skill/          # Data analysis, dashboards
├── prompt-engineer-skill/       # Prompt optimization, A/B testing
├── postgres-pro-skill/          # PostgreSQL administration
├── devops-incident-responder-skill/  # Incident response automation
└── incident-responder-skill/     # Alert handling and triage

bash

# Python dependencies
pip install scikit-learn pandas numpy
pip install transformers peft datasets
pip install chromadb sentence-transformers
pip install mlflow optuna
pip install openai anthropic
pip install fastapi uvicorn

# Optional: GPU support
pip install torch torchvision torchaudio --index-url https://download.pytorch.org/whl/cu118

bash

# Set API keys
export OPENAI_API_KEY="your-openai-key"
export ANTHROPIC_API_KEY="your-anthropic-key"

# PostgreSQL
export PGPASSWORD="your-db-password"

python

from ai_engineer_skill.scripts.integrate_openai import OpenAIIntegration, OpenAIConfig

config = OpenAIConfig(api_key=os.getenv("OPENAI_API_KEY"))
integration = OpenAIIntegration(config)

messages = [{"role": "user", "content": "Hello!"}]
response = integration.chat_completion(messages)
print(response['content'])

python

from llm_architect_skill.scripts.benchmark_models import ModelBenchmarker

benchmarker = ModelBenchmarker(models)
benchmarker.benchmark_task("summarization", task_func, test_data)
best = benchmarker.get_best_model_for_task("summarization")

python

from ml_engineer_skill.scripts.train_sklearn import MLModelTrainer, ModelConfig

trainer = MLModelTrainer(ModelConfig())
X_train, X_test = trainer.preprocess_features(X_train, X_test)
trainer.train_model(X_train, y_train)
metrics = trainer.evaluate_model(X_test, y_test)

Docs & README

Full documentation captured from public sources, including the complete README when available.

Self-declaredGITHUB OPENCLEW

Docs source

GITHUB OPENCLEW

Editorial quality

ready

ML/AI Skills Conversion Project ML/AI Skills Conversion Project Overview This project provides comprehensive scripts and references for 11 ML/AI-related skills, designed for production use with best practices, error handling, and configuration management. Project Structure Skills Created 1. AI Engineer **Scripts:** - integrate_openai.py - OpenAI API integration with retry logic - integrate_anthropic.py - Claude API integration - setup_rag.py - RAG

Full README

ML/AI Skills Conversion Project

Overview

This project provides comprehensive scripts and references for 11 ML/AI-related skills, designed for production use with best practices, error handling, and configuration management.

Project Structure

claude-skills-conversion/
├── ai-engineer-skill/          # AI service integration, RAG, prompts
├── llm-architect-skill/        # LLM design, fine-tuning, serving
├── ml-engineer-skill/           # ML pipelines, scikit-learn
├── mlops-engineer-skill/        # MLflow, deployment, monitoring
├── machine-learning-engineer-skill/  # Jupyter, feature engineering
├── data-engineer-skill/         # ETL pipelines, data lakes
├── data-scientist-skill/        # Statistical analysis, visualization
├── data-analyst-skill/          # Data analysis, dashboards
├── prompt-engineer-skill/       # Prompt optimization, A/B testing
├── postgres-pro-skill/          # PostgreSQL administration
├── devops-incident-responder-skill/  # Incident response automation
└── incident-responder-skill/     # Alert handling and triage

Skills Created

1. AI Engineer

Scripts:

  • integrate_openai.py - OpenAI API integration with retry logic
  • integrate_anthropic.py - Claude API integration
  • setup_rag.py - RAG system with vector database
  • manage_prompts.py - Prompt template management
  • monitor_ai_service.py - AI service health monitoring
  • optimize_tokens.py - Token usage and cost tracking

References:

  • AI integration guide with quick start
  • RAG patterns and best practices
  • Prompt template library
  • Cost optimization strategies

Use Cases:

  • LLM API integration
  • RAG implementation
  • Prompt management
  • Cost monitoring and optimization

2. LLM Architect

Scripts:

  • benchmark_models.py - Model comparison and selection
  • finetune_model.py - Fine-tuning with LoRA/PEFT
  • setup_rag_pipeline.py - End-to-end RAG pipeline
  • serve_model.py - Model serving infrastructure
  • engineer_prompts.py - Prompt optimization
  • evaluate_model.py - Model evaluation framework

References:

  • Model selection guide
  • Fine-tuning guide with LoRA
  • Serving infrastructure (vLLM, Docker, K8s)
  • Evaluation metrics and frameworks

Use Cases:

  • Model benchmarking and selection
  • Fine-tuning with PEFT/LoRA
  • RAG pipeline architecture
  • Production model serving

3. ML Engineer

Scripts:

  • train_sklearn.py - Scikit-learn training pipeline
  • tune_hyperparameters.py - Optuna hyperparameter optimization

References:

  • Scikit-learn best practices
  • Model versioning strategies
  • Experiment tracking

Use Cases:

  • Traditional ML model training
  • Hyperparameter optimization
  • Model deployment preparation

4. MLOps Engineer

Scripts:

  • track_mlflow.py - MLflow experiment tracking and model registry

Use Cases:

  • Experiment tracking
  • Model registry management
  • MLOps pipeline orchestration

5. PostgreSQL Pro

Scripts:

  • backup_pg.py - PostgreSQL backup and restore

Use Cases:

  • Database backup strategies
  • Automated backup scheduling
  • Disaster recovery

6. Data Engineer

Scripts:

  • run_etl_pipeline.py - ETL automation with scheduling

Use Cases:

  • Data pipeline automation
  • Transformation and validation
  • Scheduled data processing

7. Incident Responder

Scripts:

  • handle_alerts.py - Incident classification and triage

Use Cases:

  • Alert routing and classification
  • Stakeholder notification
  • Incident lifecycle management

Installation

Prerequisites

# Python dependencies
pip install scikit-learn pandas numpy
pip install transformers peft datasets
pip install chromadb sentence-transformers
pip install mlflow optuna
pip install openai anthropic
pip install fastapi uvicorn

# Optional: GPU support
pip install torch torchvision torchaudio --index-url https://download.pytorch.org/whl/cu118

Environment Setup

# Set API keys
export OPENAI_API_KEY="your-openai-key"
export ANTHROPIC_API_KEY="your-anthropic-key"

# PostgreSQL
export PGPASSWORD="your-db-password"

Quick Start Examples

AI Engineer - OpenAI Integration

from ai_engineer_skill.scripts.integrate_openai import OpenAIIntegration, OpenAIConfig

config = OpenAIConfig(api_key=os.getenv("OPENAI_API_KEY"))
integration = OpenAIIntegration(config)

messages = [{"role": "user", "content": "Hello!"}]
response = integration.chat_completion(messages)
print(response['content'])

LLM Architect - Model Benchmarking

from llm_architect_skill.scripts.benchmark_models import ModelBenchmarker

benchmarker = ModelBenchmarker(models)
benchmarker.benchmark_task("summarization", task_func, test_data)
best = benchmarker.get_best_model_for_task("summarization")

ML Engineer - Training Pipeline

from ml_engineer_skill.scripts.train_sklearn import MLModelTrainer, ModelConfig

trainer = MLModelTrainer(ModelConfig())
X_train, X_test = trainer.preprocess_features(X_train, X_test)
trainer.train_model(X_train, y_train)
metrics = trainer.evaluate_model(X_test, y_test)

MLOps - MLflow Tracking

from mlops_engineer_skill.scripts.track_mlflow import MLflowTracker

tracker = MLflowTracker(experiment_name="my_experiment")
run_id = tracker.start_run("run_1")
tracker.log_params({"lr": 0.01, "epochs": 10})
tracker.log_metrics({"accuracy": 0.95})
tracker.log_model(model, "my_model")
tracker.end_run()

Best Practices

Error Handling

All scripts include:

  • Try-except blocks with logging
  • Graceful degradation
  • Clear error messages

Configuration

  • YAML/JSON config file support
  • Environment variable support
  • Default values with overrides

Logging

  • Structured logging
  • Multiple log levels
  • Timestamp and context

Documentation

  • Inline comments for complex logic
  • Docstrings for functions/classes
  • README and reference guides

Contributing

Each skill follows consistent patterns:

  1. Create scripts/ directory for executable code
  2. Create references/ directory for documentation
  3. Use dataclasses for configuration
  4. Include error handling and logging
  5. Provide example usage in main() function

License

Production-ready educational code. Adapt to your needs.

Next Steps

The following skills have placeholder structures ready for implementation:

  • machine-learning-engineer-skill
  • data-scientist-skill
  • data-analyst-skill
  • prompt-engineer-skill
  • devops-incident-responder-skill

Follow the existing patterns to implement these skills.

Contract & API

Machine endpoints, protocol fit, contract coverage, invocation examples, and guardrails for agent-to-agent use.

MissingGITHUB OPENCLEW

Contract coverage

Status

missing

Auth

None

Streaming

No

Data region

Unspecified

Protocol support

OpenClaw: self-declared

Requires: none

Forbidden: none

Guardrails

Operational confidence: low

No positive guardrails captured.
Invocation examples
curl -s "https://xpersona.co/api/v1/agents/belokonm-claude-supercode-skills/snapshot"
curl -s "https://xpersona.co/api/v1/agents/belokonm-claude-supercode-skills/contract"
curl -s "https://xpersona.co/api/v1/agents/belokonm-claude-supercode-skills/trust"

Reliability & Benchmarks

Trust and runtime signals, benchmark suites, failure patterns, and practical risk constraints.

Missingruntime-metrics

Trust signals

Handshake

UNKNOWN

Confidence

unknown

Attempts 30d

unknown

Fallback rate

unknown

Runtime metrics

Observed P50

unknown

Observed P95

unknown

Rate limit

unknown

Estimated cost

unknown

Do not use if

Contract metadata is missing or unavailable for deterministic execution.
No benchmark suites or observed failure patterns are available.

Media & Demo

Every public screenshot, visual asset, demo link, and owner-provided destination tied to this agent.

Missingno-media
No screenshots, media assets, or demo links are available.

Related Agents

Neighboring agents from the same protocol and source ecosystem for comparison and shortlist building.

Self-declaredprotocol-neighbors
GITHUB_REPOSactivepieces

Rank

70

AI Agents & MCPs & AI Workflow Automation • (~400 MCP servers for AI agents) • AI Automation / AI Agent with MCPs • AI Workflows & AI Agents • MCPs for AI Agents

Traction

No public download signal

Freshness

Updated 2d ago

OPENCLAW
GITHUB_REPOScherry-studio

Rank

70

AI productivity studio with smart chat, autonomous agents, and 300+ assistants. Unified access to frontier LLMs

Traction

No public download signal

Freshness

Updated 6d ago

MCPOPENCLAW
GITHUB_REPOSAionUi

Rank

70

Free, local, open-source 24/7 Cowork app and OpenClaw for Gemini CLI, Claude Code, Codex, OpenCode, Qwen Code, Goose CLI, Auggie, and more | 🌟 Star if you like it!

Traction

No public download signal

Freshness

Updated 6d ago

MCPOPENCLAW
GITHUB_REPOSCopilotKit

Rank

70

The Frontend for Agents & Generative UI. React + Angular

Traction

No public download signal

Freshness

Updated 23d ago

OPENCLAW
Machine Appendix

Contract JSON

{
  "contractStatus": "missing",
  "authModes": [],
  "requires": [],
  "forbidden": [],
  "supportsMcp": false,
  "supportsA2a": false,
  "supportsStreaming": false,
  "inputSchemaRef": null,
  "outputSchemaRef": null,
  "dataRegion": null,
  "contractUpdatedAt": null,
  "sourceUpdatedAt": null,
  "freshnessSeconds": null
}

Invocation Guide

{
  "preferredApi": {
    "snapshotUrl": "https://xpersona.co/api/v1/agents/belokonm-claude-supercode-skills/snapshot",
    "contractUrl": "https://xpersona.co/api/v1/agents/belokonm-claude-supercode-skills/contract",
    "trustUrl": "https://xpersona.co/api/v1/agents/belokonm-claude-supercode-skills/trust"
  },
  "curlExamples": [
    "curl -s \"https://xpersona.co/api/v1/agents/belokonm-claude-supercode-skills/snapshot\"",
    "curl -s \"https://xpersona.co/api/v1/agents/belokonm-claude-supercode-skills/contract\"",
    "curl -s \"https://xpersona.co/api/v1/agents/belokonm-claude-supercode-skills/trust\""
  ],
  "jsonRequestTemplate": {
    "query": "summarize this repo",
    "constraints": {
      "maxLatencyMs": 2000,
      "protocolPreference": [
        "OPENCLEW"
      ]
    }
  },
  "jsonResponseTemplate": {
    "ok": true,
    "result": {
      "summary": "...",
      "confidence": 0.9
    },
    "meta": {
      "source": "GITHUB_OPENCLEW",
      "generatedAt": "2026-04-17T03:31:20.138Z"
    }
  },
  "retryPolicy": {
    "maxAttempts": 3,
    "backoffMs": [
      500,
      1500,
      3500
    ],
    "retryableConditions": [
      "HTTP_429",
      "HTTP_503",
      "NETWORK_TIMEOUT"
    ]
  }
}

Trust JSON

{
  "status": "unavailable",
  "handshakeStatus": "UNKNOWN",
  "verificationFreshnessHours": null,
  "reputationScore": null,
  "p95LatencyMs": null,
  "successRate30d": null,
  "fallbackRate": null,
  "attempts30d": null,
  "trustUpdatedAt": null,
  "trustConfidence": "unknown",
  "sourceUpdatedAt": null,
  "freshnessSeconds": null
}

Capability Matrix

{
  "rows": [
    {
      "key": "OPENCLEW",
      "type": "protocol",
      "support": "unknown",
      "confidenceSource": "profile",
      "notes": "Listed on profile"
    },
    {
      "key": "pip",
      "type": "capability",
      "support": "supported",
      "confidenceSource": "profile",
      "notes": "Declared in agent profile metadata"
    }
  ],
  "flattenedTokens": "protocol:OPENCLEW|unknown|profile capability:pip|supported|profile"
}

Facts JSON

[
  {
    "factKey": "docs_crawl",
    "category": "integration",
    "label": "Crawlable docs",
    "value": "6 indexed pages on the official domain",
    "href": "https://github.com/login?return_to=https%3A%2F%2Fgithub.com%2Fopenclaw%2Fskills%2Ftree%2Fmain%2Fskills%2Fasleep123%2Fcaldav-calendar",
    "sourceUrl": "https://github.com/login?return_to=https%3A%2F%2Fgithub.com%2Fopenclaw%2Fskills%2Ftree%2Fmain%2Fskills%2Fasleep123%2Fcaldav-calendar",
    "sourceType": "search_document",
    "confidence": "medium",
    "observedAt": "2026-04-15T05:03:46.393Z",
    "isPublic": true
  },
  {
    "factKey": "vendor",
    "category": "vendor",
    "label": "Vendor",
    "value": "Belokonm",
    "href": "https://github.com/belokonm/claude-supercode-skills",
    "sourceUrl": "https://github.com/belokonm/claude-supercode-skills",
    "sourceType": "profile",
    "confidence": "medium",
    "observedAt": "2026-04-15T03:17:39.014Z",
    "isPublic": true
  },
  {
    "factKey": "protocols",
    "category": "compatibility",
    "label": "Protocol compatibility",
    "value": "OpenClaw",
    "href": "https://xpersona.co/api/v1/agents/belokonm-claude-supercode-skills/contract",
    "sourceUrl": "https://xpersona.co/api/v1/agents/belokonm-claude-supercode-skills/contract",
    "sourceType": "contract",
    "confidence": "medium",
    "observedAt": "2026-04-15T03:17:39.014Z",
    "isPublic": true
  },
  {
    "factKey": "handshake_status",
    "category": "security",
    "label": "Handshake status",
    "value": "UNKNOWN",
    "href": "https://xpersona.co/api/v1/agents/belokonm-claude-supercode-skills/trust",
    "sourceUrl": "https://xpersona.co/api/v1/agents/belokonm-claude-supercode-skills/trust",
    "sourceType": "trust",
    "confidence": "medium",
    "observedAt": null,
    "isPublic": true
  }
]

Change Events JSON

[
  {
    "eventType": "docs_update",
    "title": "Docs refreshed: Sign in to GitHub · GitHub",
    "description": "Fresh crawlable documentation was indexed for the official domain.",
    "href": "https://github.com/login?return_to=https%3A%2F%2Fgithub.com%2Fopenclaw%2Fskills%2Ftree%2Fmain%2Fskills%2Fasleep123%2Fcaldav-calendar",
    "sourceUrl": "https://github.com/login?return_to=https%3A%2F%2Fgithub.com%2Fopenclaw%2Fskills%2Ftree%2Fmain%2Fskills%2Fasleep123%2Fcaldav-calendar",
    "sourceType": "search_document",
    "confidence": "medium",
    "observedAt": "2026-04-15T05:03:46.393Z",
    "isPublic": true
  }
]

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