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langchain/cookbook
Taqi Jaffri bfc12a4a76
DOCS: Simplified Docugami cookbook to remove code now available in docugami library (#13828)
The cookbook had some code to upload files, and wait for the processing
to finish.

This code is now moved to the `docugami` library so removing from the
cookbook to simplify.

Thanks @rlancemartin for suggesting this when working on evals.

---------

Co-authored-by: Taqi Jaffri <tjaffri@docugami.com>
6 months ago
..
autogpt DOCS: format notebooks (#13371) 7 months ago
LLaMA2_sql_chat.ipynb Lint Python notebooks with ruff. (#12677) 7 months ago
Multi_modal_RAG.ipynb IMPROVEMENT: update assistants output and doc (#13480) 7 months ago
README.md DOCS: update rag use case (#13319) 7 months ago
Semi_Structured_RAG.ipynb DOCS: format notebooks (#13371) 7 months ago
Semi_structured_and_multi_modal_RAG.ipynb DOCS: format notebooks (#13371) 7 months ago
Semi_structured_multi_modal_RAG_LLaMA2.ipynb DOCS: format notebooks (#13371) 7 months ago
advanced_rag_eval.ipynb DOCS: format notebooks (#13371) 7 months ago
analyze_document.ipynb DOCS: update rag use case (#13319) 7 months ago
baby_agi.ipynb DOCS: format notebooks (#13371) 7 months ago
baby_agi_with_agent.ipynb DOCS: format notebooks (#13371) 7 months ago
camel_role_playing.ipynb DOCS: format notebooks (#13371) 7 months ago
causal_program_aided_language_model.ipynb DOCS: format notebooks (#13371) 7 months ago
code-analysis-deeplake.ipynb DOCS: remove openai api key from cookbook (#13633) 6 months ago
custom_agent_with_plugin_retrieval.ipynb DOCS: format notebooks (#13371) 7 months ago
custom_agent_with_plugin_retrieval_using_plugnplai.ipynb DOCS: format notebooks (#13371) 7 months ago
databricks_sql_db.ipynb Start cookbook and move stuff from use cases (#11636) 8 months ago
deeplake_semantic_search_over_chat.ipynb DOCS: format notebooks (#13371) 7 months ago
docugami_xml_kg_rag.ipynb DOCS: Simplified Docugami cookbook to remove code now available in docugami library (#13828) 6 months ago
elasticsearch_db_qa.ipynb DOCS: format notebooks (#13371) 7 months ago
extraction_openai_tools.ipynb DOCS: format notebooks (#13371) 7 months ago
fake_llm.ipynb DOCS: format notebooks (#13371) 7 months ago
forward_looking_retrieval_augmented_generation.ipynb DOCS: format notebooks (#13371) 7 months ago
generative_agents_interactive_simulacra_of_human_behavior.ipynb DOCS: format notebooks (#13371) 7 months ago
gymnasium_agent_simulation.ipynb DOCS: format notebooks (#13371) 7 months ago
hugginggpt.ipynb notebook fmt (#12498) 7 months ago
human_input_chat_model.ipynb DOCS: format notebooks (#13371) 7 months ago
human_input_llm.ipynb DOCS: format notebooks (#13371) 7 months ago
hypothetical_document_embeddings.ipynb DOCS: format notebooks (#13371) 7 months ago
learned_prompt_optimization.ipynb DOCS: format notebooks (#13371) 7 months ago
llm_bash.ipynb IMPROVEMENT: Conditionally import core type hints (#13700) 6 months ago
llm_checker.ipynb Start cookbook and move stuff from use cases (#11636) 8 months ago
llm_math.ipynb DOCS: format notebooks (#13371) 7 months ago
llm_summarization_checker.ipynb Start cookbook and move stuff from use cases (#11636) 8 months ago
llm_symbolic_math.ipynb Start cookbook and move stuff from use cases (#11636) 8 months ago
meta_prompt.ipynb DOCS: format notebooks (#13371) 7 months ago
multi_modal_QA.ipynb DOCS: format notebooks (#13371) 7 months ago
multi_modal_RAG_chroma.ipynb DOCS: format notebooks (#13371) 7 months ago
multi_modal_output_agent.ipynb DOCS: format notebooks (#13371) 7 months ago
multi_player_dnd.ipynb DOCS: format notebooks (#13371) 7 months ago
multiagent_authoritarian.ipynb DOCS: format notebooks (#13371) 7 months ago
multiagent_bidding.ipynb DOCS: format notebooks (#13371) 7 months ago
myscale_vector_sql.ipynb DOCS: format notebooks (#13371) 7 months ago
openai_functions_retrieval_qa.ipynb DOCS: format notebooks (#13371) 7 months ago
openai_v1_cookbook.ipynb DOCS: format notebooks (#13371) 7 months ago
petting_zoo.ipynb DOCS: format notebooks (#13371) 7 months ago
plan_and_execute_agent.ipynb notebook fmt (#12498) 7 months ago
press_releases.ipynb notebook fmt (#12498) 7 months ago
program_aided_language_model.ipynb DOCS: format notebooks (#13371) 7 months ago
qa_citations.ipynb DOCS: update rag use case (#13319) 7 months ago
qianfan_baidu_elasticesearch_RAG.ipynb DOCS: format notebooks (#13371) 7 months ago
rag_fusion.ipynb DOCS: format notebooks (#13371) 7 months ago
retrieval_in_sql.ipynb DOCS: format notebooks (#13371) 7 months ago
rewrite.ipynb DOCS: format notebooks (#13371) 7 months ago
sales_agent_with_context.ipynb DOCS: format notebooks (#13371) 7 months ago
selecting_llms_based_on_context_length.ipynb DOCS: format notebooks (#13371) 7 months ago
self_query_hotel_search.ipynb Lint Python notebooks with ruff. (#12677) 7 months ago
smart_llm.ipynb DOCS: format notebooks (#13371) 7 months ago
sql_db_qa.mdx RM snippets (#11798) 8 months ago
stepback-qa.ipynb DOCS: format notebooks (#13371) 7 months ago
tree_of_thought.ipynb DOCS: format notebooks (#13371) 7 months ago
twitter-the-algorithm-analysis-deeplake.ipynb DOCS: format notebooks (#13371) 7 months ago
two_agent_debate_tools.ipynb DOCS: format notebooks (#13371) 7 months ago
two_player_dnd.ipynb DOCS: format notebooks (#13371) 7 months ago
wikibase_agent.ipynb DOCS: format notebooks (#13371) 7 months ago

README.md

LangChain cookbook

Example code for building applications with LangChain, with an emphasis on more applied and end-to-end examples than contained in the main documentation.

Notebook Description
LLaMA2_sql_chat.ipynb Build a chat application that interacts with a SQL database using an open source llm (llama2), specifically demonstrated on an SQLite database containing rosters.
Semi_Structured_RAG.ipynb Perform retrieval-augmented generation (rag) on documents with semi-structured data, including text and tables, using unstructured for parsing, multi-vector retriever for storing, and lcel for implementing chains.
Semi_structured_and_multi_moda... Perform retrieval-augmented generation (rag) on documents with semi-structured data and images, using unstructured for parsing, multi-vector retriever for storage and retrieval, and lcel for implementing chains.
Semi_structured_multi_modal_RA... Perform retrieval-augmented generation (rag) on documents with semi-structured data and images, using various tools and methods such as unstructured for parsing, multi-vector retriever for storing, lcel for implementing chains, and open source language models like llama2, llava, and gpt4all.
analyze_document.ipynb Analyze a single long document.
autogpt/autogpt.ipynb Implement autogpt, a language model, with langchain primitives such as llms, prompttemplates, vectorstores, embeddings, and tools.
autogpt/marathon_times.ipynb Implement autogpt for finding winning marathon times.
baby_agi.ipynb Implement babyagi, an ai agent that can generate and execute tasks based on a given objective, with the flexibility to swap out specific vectorstores/model providers.
baby_agi_with_agent.ipynb Swap out the execution chain in the babyagi notebook with an agent that has access to tools, aiming to obtain more reliable information.
camel_role_playing.ipynb Implement the camel framework for creating autonomous cooperative agents in large-scale language models, using role-playing and inception prompting to guide chat agents towards task completion.
causal_program_aided_language_... Implement the causal program-aided language (cpal) chain, which improves upon the program-aided language (pal) by incorporating causal structure to prevent hallucination in language models, particularly when dealing with complex narratives and math problems with nested dependencies.
code-analysis-deeplake.ipynb Analyze its own code base with the help of gpt and activeloop's deep lake.
custom_agent_with_plugin_retri... Build a custom agent that can interact with ai plugins by retrieving tools and creating natural language wrappers around openapi endpoints.
custom_agent_with_plugin_retri... Build a custom agent with plugin retrieval functionality, utilizing ai plugins from the plugnplai directory.
databricks_sql_db.ipynb Connect to databricks runtimes and databricks sql.
deeplake_semantic_search_over_... Perform semantic search and question-answering over a group chat using activeloop's deep lake with gpt4.
elasticsearch_db_qa.ipynb Interact with elasticsearch analytics databases in natural language and build search queries via the elasticsearch dsl API.
extraction_openai_tools.ipynb Structured Data Extraction with OpenAI Tools
forward_looking_retrieval_augm... Implement the forward-looking active retrieval augmented generation (flare) method, which generates answers to questions, identifies uncertain tokens, generates hypothetical questions based on these tokens, and retrieves relevant documents to continue generating the answer.
generative_agents_interactive_... Implement a generative agent that simulates human behavior, based on a research paper, using a time-weighted memory object backed by a langchain retriever.
gymnasium_agent_simulation.ipynb Create a simple agent-environment interaction loop in simulated environments like text-based games with gymnasium.
hugginggpt.ipynb Implement hugginggpt, a system that connects language models like chatgpt with the machine learning community via hugging face.
hypothetical_document_embeddin... Improve document indexing with hypothetical document embeddings (hyde), an embedding technique that generates and embeds hypothetical answers to queries.
learned_prompt_optimization.ipynb Automatically enhance language model prompts by injecting specific terms using reinforcement learning, which can be used to personalize responses based on user preferences.
llm_bash.ipynb Perform simple filesystem commands using language learning models (llms) and a bash process.
llm_checker.ipynb Create a self-checking chain using the llmcheckerchain function.
llm_math.ipynb Solve complex word math problems using language models and python repls.
llm_summarization_checker.ipynb Check the accuracy of text summaries, with the option to run the checker multiple times for improved results.
llm_symbolic_math.ipynb Solve algebraic equations with the help of llms (language learning models) and sympy, a python library for symbolic mathematics.
meta_prompt.ipynb Implement the meta-prompt concept, which is a method for building self-improving agents that reflect on their own performance and modify their instructions accordingly.
multi_modal_output_agent.ipynb Generate multi-modal outputs, specifically images and text.
multi_player_dnd.ipynb Simulate multi-player dungeons & dragons games, with a custom function determining the speaking schedule of the agents.
multiagent_authoritarian.ipynb Implement a multi-agent simulation where a privileged agent controls the conversation, including deciding who speaks and when the conversation ends, in the context of a simulated news network.
multiagent_bidding.ipynb Implement a multi-agent simulation where agents bid to speak, with the highest bidder speaking next, demonstrated through a fictitious presidential debate example.
myscale_vector_sql.ipynb Access and interact with the myscale integrated vector database, which can enhance the performance of language model (llm) applications.
openai_functions_retrieval_qa.... Structure response output in a question-answering system by incorporating openai functions into a retrieval pipeline.
openai_v1_cookbook.ipynb Explore new functionality released alongside the V1 release of the OpenAI Python library.
petting_zoo.ipynb Create multi-agent simulations with simulated environments using the petting zoo library.
plan_and_execute_agent.ipynb Create plan-and-execute agents that accomplish objectives by planning tasks with a language model (llm) and executing them with a separate agent.
press_releases.ipynb Retrieve and query company press release data powered by Kay.ai.
program_aided_language_model.i... Implement program-aided language models as described in the provided research paper.
qa_citations.ipynb Different ways to get a model to cite its sources.
retrieval_in_sql.ipynb Perform retrieval-augmented-generation (rag) on a PostgreSQL database using pgvector.
sales_agent_with_context.ipynb Implement a context-aware ai sales agent, salesgpt, that can have natural sales conversations, interact with other systems, and use a product knowledge base to discuss a company's offerings.
self_query_hotel_search.ipynb Build a hotel room search feature with self-querying retrieval, using a specific hotel recommendation dataset.
smart_llm.ipynb Implement a smartllmchain, a self-critique chain that generates multiple output proposals, critiques them to find the best one, and then improves upon it to produce a final output.
tree_of_thought.ipynb Query a large language model using the tree of thought technique.
twitter-the-algorithm-analysis... Analyze the source code of the Twitter algorithm with the help of gpt4 and activeloop's deep lake.
two_agent_debate_tools.ipynb Simulate multi-agent dialogues where the agents can utilize various tools.
two_player_dnd.ipynb Simulate a two-player dungeons & dragons game, where a dialogue simulator class is used to coordinate the dialogue between the protagonist and the dungeon master.
wikibase_agent.ipynb Create a simple wikibase agent that utilizes sparql generation, with testing done on http://wikidata.org.