AlekSystem Workflow Detail

Recipe Recommendations with Qdrant and Mistral Workflow Solution

Recipe Recommendations with Qdrant and Mistral

This AlekSystem workflow demonstrates creating a recipe recommendation chatbot using the Qdrant vector store recommendation API.

Rank 51 Verified workflow

Workflow overview

Why this workflow matters

Potentially useful as a reusable automation building block.

This AlekSystem workflow demonstrates creating a recipe recommendation chatbot using the Qdrant vector store recommendation API. Use this example to build recommendation features in your AI Agents for your users. How it works For our recipes, we'll use HelloFresh's weekly course and recipes for data. We'll scrape the website for this data. Each recipe is split, vectorised and inserted into a Qdrant Collection using Mistral Embeddings Additionally the whole recipe is stored in a SQLite database for later retrieval. Our AI Agent is setup to recommend recipes from our Qdrant vector store. However, instead of the default similarity search, we'll use the Recommendation API instead. Qdrant's Recommendation API allows you to provide a negative prompt; in our case, the user can specify recipes or ingredients to avoid. The AI Agent is now able to suggest a recipe recommendation better suited for the user and increase customer satisfaction. Requirements Qdrant vector store instance to save the recipes Mistral.ai account for embeddings and LLM agent Customising the workflow This workflow can work for a variety of different audiences. Try different sets of data such as clothes, sports shoes, vehicles or even holidays.

Best fit

Categories

AI/MLCommunication

Services

AI AgentRecursive Character Text SplitterCall AlekSystem Workflow ToolDefault Data LoaderEmbeddings Mistral CloudMistral Cloud Chat ModelQdrant Vector Store

Use cases

business process automation