Highlighting a few different categories of templates
These are some of the more popular templates to get started with.
- Retrieval Augmented Generation Chatbot: Build a chatbot over your data. Defaults to OpenAI and PineconeVectorStore.
- Extraction with OpenAI Functions: Do extraction of structured data from unstructured data. Uses OpenAI function calling.
- Local Retrieval Augmented Generation: Build a chatbot over your data. Uses only local tooling: Ollama, GPT4all, Chroma.
- OpenAI Functions Agent: Build a chatbot that can take actions. Uses OpenAI function calling and Tavily.
- XML Agent: Build a chatbot that can take actions. Uses Anthropic and You.com.
These templates cover advanced retrieval techniques, which can be used for chat and QA over databases or documents.
- Reranking: This retrieval technique uses Cohere's reranking endpoint to rerank documents from an initial retrieval step.
- Anthropic Iterative Search: This retrieval technique uses iterative prompting to determine what to retrieve and whether the retriever documents are good enough.
- Parent Document Retrieval using Neo4j or MongoDB: This retrieval technique stores embeddings for smaller chunks, but then returns larger chunks to pass to the model for generation.
- Semi-Structured RAG: The template shows how to do retrieval over semi-structured data (e.g. data that involves both text and tables).
- Temporal RAG: The template shows how to do hybrid search over data with a time-based component using Timescale Vector.
A selection of advanced retrieval methods that involve transforming the original user query, which can improve retrieval quality.
- Hypothetical Document Embeddings: A retrieval technique that generates a hypothetical document for a given query, and then uses the embedding of that document to do semantic search. Paper.
- Rewrite-Retrieve-Read: A retrieval technique that rewrites a given query before passing it to a search engine. Paper.
- Step-back QA Prompting: A retrieval technique that generates a "step-back" question and then retrieves documents relevant to both that question and the original question. Paper.
- RAG-Fusion: A retrieval technique that generates multiple queries and then reranks the retrieved documents using reciprocal rank fusion. Article.
- Multi-Query Retriever: This retrieval technique uses an LLM to generate multiple queries and then fetches documents for all queries.
A selection of advanced retrieval methods that involve constructing a query in a separate DSL from natural language, which enable natural language chat over various structured databases.
- Elastic Query Generator: Generate elastic search queries from natural language.
- Neo4j Cypher Generation: Generate cypher statements from natural language. Available with a "full text" option as well.
- Supabase Self Query: Parse a natural language query into a semantic query as well as a metadata filter for Supabase.
These templates use OSS models, which enable privacy for sensitive data.
- Local Retrieval Augmented Generation: Build a chatbot over your data. Uses only local tooling: Ollama, GPT4all, Chroma.
- SQL Question Answering (Replicate): Question answering over a SQL database, using Llama2 hosted on Replicate.
- SQL Question Answering (LlamaCpp): Question answering over a SQL database, using Llama2 through LlamaCpp.
- SQL Question Answering (Ollama): Question answering over a SQL database, using Llama2 through Ollama.
These templates extract data in a structured format based upon a user-specified schema.
- Extraction Using OpenAI Functions: Extract information from text using OpenAI Function Calling.
- Extraction Using Anthropic Functions: Extract information from text using a LangChain wrapper around the Anthropic endpoints intended to simulate function calling.
- Extract BioTech Plate Data: Extract microplate data from messy Excel spreadsheets into a more normalized format.
These templates summarize or categorize documents and text.
- Summarization using Anthropic: Uses Anthropic's Claude2 to summarize long documents.
These templates build chatbots that can take actions, helping to automate tasks.
- OpenAI Functions Agent: Build a chatbot that can take actions. Uses OpenAI function calling and Tavily.
- XML Agent: Build a chatbot that can take actions. Uses Anthropic and You.com.
These templates enable moderation or evaluation of LLM outputs.
- Guardrails Output Parser: Use guardrails-ai to validate LLM output.
- Chatbot Feedback: Use LangSmith to evaluate chatbot responses.