AI Training Data Quality
@apifyforge
About AI Training Data Quality
AI training data quality assessment, bias detection, and governance scoring — delivered to any MCP-compatible AI agent through a single always-on server. This server orchestrates 7 specialized data sources (dataset registries, GitHub, ArXiv, Semantic Scholar, Hacker News, Wikiped
Basic information
Config
Add this server to your MCP-compatible client using the configuration below.
{
"mcpServers": {
"ai-training-data-quality-mcp": {
"url": "https://ryanclinton--ai-training-data-quality-mcp.apify.actor/mcp"
}
}
}Tools
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Overview
What is AI Training Data Quality?
AI Training Data Quality is an MCP server that performs automated training data quality assessment, bias detection, and governance scoring for AI teams. It queries seven specialized data sources in parallel (AI Training Data Curator, GitHub, ArXiv, Semantic Scholar, Hacker News, Wikipedia, and Data.gov) to produce per-dataset quality scores, bias reports, provenance chains, governance grades, trend rankings, and model-data fit assessments. No API keys or configuration are required.
How to use AI Training Data Quality?
Add the server URL to any MCP-compatible client (Claude Desktop, Cursor, Windsurf) using the JSON configuration provided. Then invoke any of the eight tools with a query string (e.g., "medical imaging") and optional parameters for sources and result limits. Results return in 30–120 seconds.
Key features of AI Training Data Quality
- 8 specialized tools covering the full data evaluation lifecycle
- 7-source parallel querying with configurable result limits (1–100)
- Weighted composite quality scoring across 5 dimensions
- 7-type bias detection with severity escalation logic
- License scoring matrix for 20+ license types
- Cross-reference network building linking datasets to papers and repos
- 11 model type profiles for data-to-model fit assessment
- 5-dimension governance scoring with compliance status
Use cases of AI Training Data Quality
- Pre-training data audit for ML teams before committing compute resources
- EU AI Act compliance preparation with documented governance assessments
- Dataset discovery and landscape mapping across multiple registries
- Responsible AI documentation for boards, ethics committees, and procurement
- Research data due diligence for legal and compliance teams
FAQ from AI Training Data Quality
What tools does the server provide?
Eight tools: map_data_landscape, assess_dataset_quality, detect_bias_indicators, analyze_data_provenance, score_data_governance, track_dataset_trends, assess_model_data_fit, and generate_data_quality_report.
Do I need API keys or configuration to use it?
No, the server requires no API keys or configuration. Just add the server URL to your MCP client and start querying.
How much does each tool call cost?
Every tool call costs $0.045. The server also enforces a per-run spending limit via Actor.charge().
Can I use this server for EU AI Act compliance?
Yes, score_data_governance and generate_data_quality_report produce documentation suitable for EU AI Act Article 10 compliance.
How long does a query take?
Queries complete in 30–120 seconds, depending on the number of sources queried and result limits.
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