AlekSystem Workflow Detail

Chat with Your Email History using Telegram, Mistral and Pgvector for RAG Workflow Solution

Chat with Your Email History using Telegram, Mistral and Pgvector for RAG

Who is this for? Everyone!

Rank 57 Verified workflow

Workflow overview

Why this workflow matters

Improves internal consulting operations and productivity. Relevant for managed services and support workflows.

Who is this for? Everyone! Did you dream of asking an AI "what hotel did I stay in for holidays last summer?" or "what were my marks last semester like?". Dream no more, as vector similarity searches and this workflow are the foundations to make it possible (as long as the information appears in your e-mails 😅). 100% Local and Open Source! This workflow is designed to use locally-hosted open source. Ollama as LLM provider, nomic-embed-text as the embeddings model, and pgvector as the vector database engine, on top of Postgres. Structured AND Vectorized This workflow combines structured and semantic search on your e-mail. No need for enterprise setups! Leverage the convenience of AlekSystem and open source to get a bleeding edge solution. Setup You will need a PGVector database with embeddings for all your email. Use my other template Gmail to Vector Embeddings with PGVector and Ollama to set it up in a breeze! Make a copy of my Email Assistant: Convert Natural Language to SQL Queries with Phi4-mini and PostgreSQL, you will need it for structured searches. Install this template and modify the Call the SQL composer Workflow step, to point at your copy of the SQL workflow. Adjust the rest of necessary steps: Telegram Trigger, AI Chat model, AI Embeddings... Activate the workflow and chat around!

Best fit

Categories

AI/MLCommunicationProductivity

Services

TelegramAI AgentOpenAI Chat ModelSimple MemoryCall AlekSystem Workflow ToolEmbeddings OllamaPostgres PGVector Store

Use cases

email workflow automation