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@langchain/exa
Advanced tools
This package contains the LangChain.js integrations for exa through their SDK.
npm install @langchain/exa @langchain/core
To develop the exa package, you'll need to follow these instructions:
yarn install
yarn build
Or from the repo root:
yarn build --filter=@langchain/exa
Test files should live within a tests/
file in the src/
folder. Unit tests should end in .test.ts
and integration tests should
end in .int.test.ts
:
$ yarn test
$ yarn test:int
Run the linter & formatter to ensure your code is up to standard:
yarn lint && yarn format
If you add a new file to be exported, either import & re-export from src/index.ts
, or add it to the entrypoints
field in the config
variable located inside langchain.config.js
and run yarn build
to generate the new entrypoint.
FAQs
Exa integration for LangChain.js
The npm package @langchain/exa receives a total of 0 weekly downloads. As such, @langchain/exa popularity was classified as not popular.
We found that @langchain/exa demonstrated a healthy version release cadence and project activity because the last version was released less than a year ago. It has 0 open source maintainers collaborating on the project.
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