About this project
it-programming / artificial-intelligence-1
Open
We are looking for a Python developer with strong experience in LangChain and vector databases to build an AI Retriever Chain with contextual prompting.
๐ฏ Goal:
Create a modular chain using LangChain and Qdrant to retrieve relevant context from a local or remote vector store and inject it into prompt templates for downstream models (e.g., OpenAI, DeepSeek).
๐ Core Tasks:
Setup Qdrant (local or remote) in Docker
Index and persist sample documents (we will provide .txt/.md files)
Build retriever logic with filters based on metadata
Integrate with LangChain chains for RAG (Retrieval-Augmented Generation)
Use prompt templates with injected context and fallback chaining
๐งช Testing & Evaluation:
Ensure vector queries return relevant chunks
Validate prompt composition and chaining
Must support multiple llm backends (via api) โ we provide details
๐ฆ deliverables:
dockerized solution (langchain + qdrant)
clean python code with comments
github repo delivery only
readme with clear setup & usage steps
๐ก bonus if you can add basic cli tool to test queries.
๐ต Budget: $200โ278 USD, fixed
โฑ๏ธ Payment only after full working solution is delivered and verified.
Do not apply if partial/milestone payment is expected.
We are only looking for results-driven developers who can deliver clean, testable code and respect the delivery terms.
Category IT & Programming
Subcategory Artificial Intelligence
Project size Large
Delivery term: Not specified
Skills needed