From Prompt to Production: How to use AI Code Assistants for Python Data Systems

Serhii Sokolenko

Sponsor
Python Skill Intermediate
Domain Expertise Intermediate

This 90-minute hands-on tutorial shows how to design, build, and deploy Python data pipelines and data agents using AI coding assistants in a supervised engineering workflow.

Outline

  • The state of AI code generation for data engineering
  • Designing collaborative Human/LLM development loops
  • Building a data pipeline with structured AI assistance
  • Creating a simple data agent
  • Deploying and operating Python workloads in production using Tower.dev
  • Using logs, observability, and runtime feedback to guide AI-driven refactoring
  • Best practices, risks, and guardrails

Participants will leave with practical patterns for integrating AI into real-world data engineering workflows, from prototype to production.

Serhii Sokolenko

Serhii Sokolenko is a co-founder of Tower, a Pythonic platform for data flows and agents running on top of open analytical storage. Prior to founding Tower, Serhii worked at Databricks, Snowflake and Google on data processing and databases.