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# Agents | |
Agents use an LLM to determine which actions to take and in what order. | |
An action can either be using a tool and observing its output, or returning to the user. | |
For a list of easily loadable tools, see [here](tools.md). | |
Here are the agents available in LangChain. | |
For a tutorial on how to load agents, see [here](getting_started.ipynb). | |
## `zero-shot-react-description` | |
This agent uses the ReAct framework to determine which tool to use | |
based solely on the tool's description. Any number of tools can be provided. | |
This agent requires that a description is provided for each tool. | |
## `react-docstore` | |
This agent uses the ReAct framework to interact with a docstore. Two tools must | |
be provided: a `Search` tool and a `Lookup` tool (they must be named exactly as so). | |
The `Search` tool should search for a document, while the `Lookup` tool should lookup | |
a term in the most recently found document. | |
This agent is equivalent to the | |
original [ReAct paper](https://arxiv.org/pdf/2210.03629.pdf), specifically the Wikipedia example. | |
## `self-ask-with-search` | |
This agent utilizes a single tool that should be named `Intermediate Answer`. | |
This tool should be able to lookup factual answers to questions. This agent | |
is equivalent to the original [self ask with search paper](https://ofir.io/self-ask.pdf), | |
where a Google search API was provided as the tool. | |
### `conversational-react-description` | |
This agent is designed to be used in conversational settings. | |
The prompt is designed to make the agent helpful and conversational. | |
It uses the ReAct framework to decide which tool to use, and uses memory to remember the previous conversation interactions. | |