By dlt-hub
Initialize dlt workspaces with secure TOML-based secrets management for credentials, route queries to optimal data toolkits and skills, refine existing skills from session debugging patterns and workflows, and run local MCP server for AI-assisted data pipeline ETL operations.
Improve existing skills based on the current session. Use at the end of a session (or when the user asks) to capture new debugging patterns, data issues, data validation tracks, querying techniques, doc references, or workflow improvements learned during the session. Keeps skills lean and personalized.
Safely manage dlt secrets in *.secrets.toml. Use when the user directly asks to set up, configure, or inspect credentials (API keys, database passwords, tokens). Also use when writing Python code that needs to read secrets via dlt.secrets without exposing values. Do NOT use for pipeline creation, source discovery, or debugging pipeline execution — those skills call setup-secrets when they need credentials configured.
Helps users figure out what they can build with dlt and which workflow to start. MUST use this skill when the user asks questions like 'what can you do', 'how do I build a pipeline', 'how do I make reports', 'how do I deploy', 'what are toolkits', 'what's available', 'I'm new to dlt', 'where do I start', or seems confused about what to do next after initial setup. Also use when the user asks broad capability questions about data engineering with dlt. Do NOT use when the user has a specific task in progress like debugging a pipeline, validating data, or adding endpoints.
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npx claudepluginhub dlt-hub/dlthub-ai-workbench --plugin initBuild REST API pipelines with dlt: scope, debug and validate data
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Prepare Python environment for dlthub workspace
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