Remote AI Python Engineer — LLMs, RAG & Azure
Springfield, Sangamon County, Illinois, 62777, USA
Listed on 2026-05-31
-
Software Development
AI Engineer, Machine Learning/ ML Engineer, Cloud Engineer - Software, Backend Developer
Remote position but may be required to go on-site occasionally
We are looking for a AI Engineer to design, develop, and deploy an intelligent, multilingual chatbot that helps users track their parcels seamlessly. The chatbot will integrate with Snowflake for data retrieval, leverage APIs or web scraping to fetch tracking updates from external systems and run as a containerized solution on Azure
. We are seeking to hire an engineer who is passionate about building scalable, AI-powered applications. You’ll work at the intersection of backend development and AI integration, leveraging modern tools like LLMs
, MongoDB
, Docker
, and best coding practices. You’ll be responsible for writing clean, efficient, and maintainable code while working closely product teams to deploy intelligent systems. We need a proactive, self-motivated leader who thrives in a dynamic environment.
- Design, develop, and maintain an AI-powered chatbot capable of handling multi-lingual conversations.
- Implement Retrieval-Augmented Generation (RAG) workflows to improve response accuracy and reduce unnecessary LLM calls.
- Integrate AI and LLM tools (e.g., OpenAI, Lang Chain, Hugging Face) into real-world applications.
- Integrate chatbot with Snowflake to fetch tracking data using tracking IDs.
- Develop web scraping and API connectors to external parcel tracking systems.
- Deploy and manage chatbot services on Azure using Docker containers.
- Implement vector databases (e.g., Pinecone, FAISS, Chroma) for efficient context management and response caching.
- Ensure code quality through best practices: clean code, testing, and code reviews.
- Programming:
Strong proficiency in Python and relevant libraries (e.g., Lang Chain, FastAPI, Beautiful Soup, Requests). - AI Tools & Frameworks:
Experience with OpenAI, Hugging Face, or similar AI APIs. - RAG Implementation:
Hands‑on experience integrating LLMs with vector databases and retrieval pipelines. - NLP:
Strong understanding of prompt design, token usage, embeddings, and language model. - Data Integration:
Experience connecting with Snowflake or similar data warehouses. - Deployment:
Knowledge of Docker and Azure container deployments. - Web Scraping & APIs:
Experience building scrapers or integrating with third‑party APIs. - Version Control:
Familiarity with Git and CI/CD pipelines. - Strong communication skills — able to explain complex AI concepts in simple terms.
- Collaborative attitude and openness to feedback.
- Familiarity with LLM orchestration frameworks (Lang Chain, Llama Index).
- Exposure to multi‑lingual NLP models or translation APIs.
(If this job is in fact in your jurisdiction, then you may be using a Proxy or VPN to access this site, and to progress further, you should change your connectivity to another mobile device or PC).