Citi Fuel (ООО Staff Atlantic)
Lead AI Engineer (Agentic AI, LangChain, Python)
- Docker
- CI/CD
- SQL
- Git
- FastAPI
- Apache Airflow
- Русский — C2 — В совершенстве
- Английский — C1 — Продвинутый
About the Project
Fuel card sales in the U.S. (all sales are conducted within the United States).
Project launch: March 2024.
Part of a logistics group: The project is a division of a U.S. trucking logistics group, which is the market leader in Uzbekistan.
The company is a registered IT Park resident with offices in Tashkent (two offices), Chicago, and Orlando.
Purpose of the Role
To build the internal agentic AI architecture from scratch — from designing LLM agents and pipelines to setting up production infrastructure. The main objective is to automate and optimize internal processes using advanced LLM-based tools.
Key Responsibilities
-
Design and implement internal AI-agent architecture from the ground up.
-
Utilize OpenAI API, LangChain (or similar frameworks), and external tools (SQL, APIs, files).
-
Develop systems for planning, memory, query processing, and action generation.
-
Integrate agents with internal data sources (databases, Google Docs, files, CRM, etc.).
-
Deploy solutions into production ensuring scalability and reliability.
-
Establish documentation, standards, and a foundation for scaling AI initiatives.
Requirements
-
4+ years of hands-on development experience with Python.
-
1+ years of experience with LLM infrastructure (LangChain, OpenAI API, RAG, etc.).
-
Proven experience designing and implementing agentic approaches (or similar pipelines).
-
Strong skills in working with APIs, SQL, file sources, and knowledge bases.
-
Solid understanding of LLM architecture, memory, tool usage, and reasoning principles.
-
Experience in deployment: Docker, CI/CD, and basic DevOps practices.
-
Ability to work independently and build infrastructure from scratch.
-
Experience in documenting and setting up tech stacks for scaling.
Nice to Have
-
Experience building RAG systems (retrieval-augmented generation).
-
Knowledge of vector databases (FAISS, Weaviate, Pinecone, etc.).
-
Hands-on work with LangGraph, CrewAI, AutoGPT, or similar frameworks.
-
Production-level experience integrating PDF, CSV, email streams, calendars, and other data sources.
Tools and Technologies
Python, LangChain, OpenAI API
SQL, REST APIs, Docker, Git
Vector databases (as required)
Airflow/FastAPI (optional)
Conditions
-
Compensation: discussed individually, depending on competencies.
-
Direct access to top management — your ideas will be heard.
-
Work schedule: 5/2, following the U.S. production calendar for holidays and weekends.
-
Hybrid work format.
-
Relocation candidates are also considered.