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Add support for FalkorDB/RedisGraph #1

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@gkorland gkorland changed the title initial commit add FalkorDB support Add support for FalkorDB/RedisGraph Aug 23, 2023
gkorland and others added 25 commits August 23, 2023 17:01
Expose classmethods to convenient initialize the vectostore.

The purpose of this PR is to make it easy for users to initialize an
empty vectorstore that's properly pre-configured without having to index
documents into it via `from_documents`.

This will make it easier for users to rely on the following indexing
code: langchain-ai#9614
to help manage data in the qdrant vectorstore.
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Hi LangChain :) Thank you for such a great project! 
I was going through the CONTRIBUTING.md and found a few minor issues.
Return the feedback values in an eval run result

Also made a helper method to display as a dataframe but it may be
overkill
## Description 

The following PR enables the [grammar-based
sampling](https://github.com/ggerganov/llama.cpp/tree/master/grammars)
in llama-cpp LLM.

In short, loading file with formal grammar definition will constrain
model outputs. For instance, one can force the model to generate valid
JSON or generate only python lists.

In the follow-up PR we will add:
* docs with some description why it is cool and how it works
* maybe some code sample for some task such as in llama repo

---------

Co-authored-by: Lance Martin <[email protected]>
Co-authored-by: Bagatur <[email protected]>
…hain-ai#9867)

The most reliable way to not have a chain run an undesirable SQL command
is to not give it database permissions to run that command. That way the
database itself performs the rule enforcement, so it's much easier to
configure and use properly than anything we could add in ourselves.
@gkorland gkorland closed this Aug 30, 2023
@gkorland gkorland deleted the falkordb-langchain branch August 30, 2023 10:15
gkorland pushed a commit that referenced this pull request Oct 17, 2023
Initial commit of rl_chain code
gkorland pushed a commit that referenced this pull request Feb 13, 2024
…introduction (langchain-ai#16568)

- **Description:** Adding Baichuan Text Embedding Model and Baichuan Inc
introduction.

Baichuan Text Embedding ranks #1 in C-MTEB leaderboard:
https://huggingface.co/spaces/mteb/leaderboard

Co-authored-by: BaiChuanHelper <[email protected]>
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8 participants