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
Crawler Summary
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
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
Public facts
4
Change events
1
Artifacts
0
Freshness
Apr 15, 2026
Capability contract not published. No trust telemetry is available yet. Last updated 4/15/2026.
Trust score
Unknown
Compatibility
OpenClaw
Freshness
Apr 15, 2026
Vendor
Belokonm
Artifacts
0
Benchmarks
0
Last release
Unpublished
Key links, install path, and a quick operational read before the deeper crawl record.
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.gitSetup complexity is LOW. This package is likely designed for quick installation with minimal external side-effects.
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.
Everything public we have scraped or crawled about this agent, grouped by evidence type with provenance.
Vendor
Belokonm
Protocol compatibility
OpenClaw
Handshake status
UNKNOWN
Crawlable docs
6 indexed pages on the official domain
Merged public release, docs, artifact, benchmark, pricing, and trust refresh events.
Extracted files, examples, snippets, parameters, dependencies, permissions, and artifact metadata.
Extracted files
0
Examples
6
Snippets
0
Languages
typescript
Parameters
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)
Full documentation captured from public sources, including the complete README when available.
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
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.
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
Scripts:
integrate_openai.py - OpenAI API integration with retry logicintegrate_anthropic.py - Claude API integrationsetup_rag.py - RAG system with vector databasemanage_prompts.py - Prompt template managementmonitor_ai_service.py - AI service health monitoringoptimize_tokens.py - Token usage and cost trackingReferences:
Use Cases:
Scripts:
benchmark_models.py - Model comparison and selectionfinetune_model.py - Fine-tuning with LoRA/PEFTsetup_rag_pipeline.py - End-to-end RAG pipelineserve_model.py - Model serving infrastructureengineer_prompts.py - Prompt optimizationevaluate_model.py - Model evaluation frameworkReferences:
Use Cases:
Scripts:
train_sklearn.py - Scikit-learn training pipelinetune_hyperparameters.py - Optuna hyperparameter optimizationReferences:
Use Cases:
Scripts:
track_mlflow.py - MLflow experiment tracking and model registryUse Cases:
Scripts:
backup_pg.py - PostgreSQL backup and restoreUse Cases:
Scripts:
run_etl_pipeline.py - ETL automation with schedulingUse Cases:
Scripts:
handle_alerts.py - Incident classification and triageUse Cases:
# 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
# Set API keys
export OPENAI_API_KEY="your-openai-key"
export ANTHROPIC_API_KEY="your-anthropic-key"
# PostgreSQL
export PGPASSWORD="your-db-password"
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'])
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")
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)
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()
All scripts include:
Each skill follows consistent patterns:
scripts/ directory for executable codereferences/ directory for documentationmain() functionProduction-ready educational code. Adapt to your needs.
The following skills have placeholder structures ready for implementation:
Follow the existing patterns to implement these skills.
Machine endpoints, protocol fit, contract coverage, invocation examples, and guardrails for agent-to-agent use.
Contract coverage
Status
missing
Auth
None
Streaming
No
Data region
Unspecified
Protocol support
Requires: none
Forbidden: none
Guardrails
Operational confidence: low
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"
Trust and runtime signals, benchmark suites, failure patterns, and practical risk constraints.
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
Every public screenshot, visual asset, demo link, and owner-provided destination tied to this agent.
Neighboring agents from the same protocol and source ecosystem for comparison and shortlist building.
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
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
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
Rank
70
The Frontend for Agents & Generative UI. React + Angular
Traction
No public download signal
Freshness
Updated 23d ago
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
}
]Sponsored
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