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Dataiku DSS
You are viewing the documentation for version 13 of DSS.
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  • Building Agents Open page in a new tab

Building Agents¶

Dataiku provides a full environment for building, troubleshooting, evaluating, deploying, monitoring, and exposing at scale AI Agents for the enterprise.

  • Introduction to Agents in Dataiku
    • Tools
    • Types of agents
      • Visual Agents
      • Code Agents
      • Other agent kinds
    • Using agents
  • Visual Agents
    • Sources
    • Context
  • Code Agents
    • Requirements
    • What does the Code do
    • Using tools
    • Streaming
  • Managed tools
    • Using tools
      • Visual Agent
      • API
        • Native API
        • LangChain API
        • Tool descriptor
        • Context
    • Knowledge Bank Search tool
      • Core configuration
      • Retrieval settings
      • Sources
      • Global filter
      • Document-level security
    • Model Predict tool
    • LLM Mesh Query
    • Dataset Lookup tool
    • Dataset Append tool
    • SQL Question Answering Tool
    • Google Search
    • Writing your own tool
  • Tracing
    • Anatomy of a trace
    • Traces built into the LLM Mesh
    • Adding your own trace items
    • Traces Explorer
      • Creating a Traces Explorer Webapp
      • Using the Traces Explorer
      • Troubleshooting & Notes
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