Lead Data/ai Engineer

AT&T AT&T · Telecom · CZE:642:Brno +2

Lead Data/AI Engineer role focused on architecting, building, and deploying enterprise AI systems using LLMs, prompt engineering, and agentic workflows. The role involves designing context-rich solutions, optimizing prompts, integrating LLMs with frameworks like LangGraph, and developing robust data pipelines for scalable deployment. Emphasis on full-stack Python, RAG, and multi-agent systems.

What you'd actually do

  1. Design, optimize, and evaluate prompts for LLMs to achieve precise and contextually appropriate outputs across diverse use cases.
  2. Architect and implement dynamic context management strategies, including session memory, retrieval-augmented generation, and user personalization to enhance agent performance.
  3. Integrate, fine-tune, and orchestrate LLMs within Python-based applications, leveraging APIs and custom pipelines for scalable deployment.
  4. Build and manage complex conversational and agent workflows using frameworks like LangGraph to support multi-agent or multi-step solutions.
  5. Develop and maintain robust backend services, APIs, and (optionally) front-end interfaces to deliver end-to-end AI applications.

Skills

Required

  • full stack Python development (FastAPI, Flask; SQL/NoSQL databases)
  • prompt engineering for LLMs (OpenAI, Anthropic, open-source LLMs)
  • context engineering, including session management, vector search, and knowledge retrieval strategies
  • integrating AI agents and LLMs into production systems
  • agentic/conversational flow frameworks such as LangGraph
  • Retrieval-Augmented Generation (RAG) pipelines
  • multi-agent orchestration
  • cloud infrastructure
  • containerization (Docker)
  • CI/CD practices
  • API development patterns (e.g., HTTP/REST, GraphQL)
  • microservice architecture

Nice to have

  • data engineering technologies (e.g., Spark, Kafka, Databricks, Snowflake)
  • additional languages (e.g., Java, Scala, SQL)
  • fine-tuning language models
  • statistics and machine learning (probability, hypothesis testing, experimental design, bias/variance, regularization)
  • building and validating predictive models end-to-end (feature engineering, training, cross-validation, model selection, error analysis) using tools like scikit-learn and XGBoost

What the JD emphasized

  • architecting and scaling enterprise AI systems
  • full stack Python
  • modern data and AI engineering technology stack
  • large language models (LLMs)
  • prompt engineering
  • advanced context management
  • agentic AI solutions
  • autonomous AI agents
  • LangGraph
  • Retrieval-Augmented Generation (RAG)
  • multi-agent orchestration
  • fine-tuning

Other signals

  • architecting and scaling enterprise AI systems
  • large language models (LLMs)
  • prompt engineering
  • advanced context management
  • agentic AI solutions
  • autonomous AI agents