/try-agents-haystack

Trying the Agents ๐Ÿ•ต๏ธ --> new feature introduced in Haystack 1.15.0 to make Large Language Models resolve complex queries and tasks

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try-agents-haystack

Trying the Agents ๐Ÿ•ต๏ธ --> new feature introduced in Haystack 1.15.0 to make Large Language Models resolve complex queries and tasks.


As of release 1.15, Haystack implements Agents ๐Ÿ•ต๏ธ!

Put simply, an Agent is a Large Language Model with a specific prompt.

Based on that prompt, the Agent can answer complex questions, by performing a sequence of steps.

At each step, the Agent (our brain ๐Ÿง ) can select a Tool from its toolbox ๐Ÿงฐ and use it to accomplish a task.

Some examples of Tools: Web Search, calculator, several pipelines/nodes (available in Haystack)...

Demo

demo.mp4

In the video, you see the Agent in action with the task of answering questions about books on my reading list.

  • I uploaded a CSV containing a minimal reading list ๐Ÿ“š
  • I initialized two Tools โš’๏ธ:
    • A Question Answering component to answer questions about my reading list
    • A Search tool ๐Ÿ”Ž๐ŸŒ, which can browse the web and find information
  • I defined an Agent, based on Davinci model and equipped with the Tools defined above.
  • Now I can ask complex questions, such as "Can you provide me with information on the shortest book on my reading list, including author and price on Amazon?"" ๐Ÿš€

Currently, Agents work great with OpenAI Davinci model. Soon, open-source models will also be supported, so you can have the power of LLM at your disposal without giving up your data!

More information

Agents in Haystack

Papers