Lead Agentic Data Systems Engineer

Salesforce Salesforce · Enterprise · Mexico City, Mexico

Lead Agentic Data Systems Engineer responsible for architecting and maintaining a private ecosystem of autonomous agents for ETL, synthetic data generation, automated QA, and predictive modeling. The role involves designing multi-step reasoning architectures, verification protocols, and providing agents with secure data access. This is a hands-on engineering role focused on building production-grade data products and managing complex hand-off protocols between specialized AI agents.

What you'd actually do

  1. Architect and maintain a private ecosystem of 10+ autonomous agents specialized in ETL, synthetic data generation, automated QA, and predictive modeling.
  2. Design multi-step reasoning architectures and verification protocols to ensure agents autonomously validate and peer-review their own outputs.
  3. Transform high-level, ambiguous business requirements into production-ready data products independently, bypassing the need for mid-level project management.
  4. Use domain knowledge to ensure deployed tools are well governed. Governance as code for data pipelines and Agentic development. Context aware Agent development.
  5. Develop and maintain Model Context Protocol (MCP) servers to provide agents with secure, deep-link access to Snowflake, Salesforce, AWS, and proprietary internal data catalogs.

Skills

Required

  • Python
  • dbt
  • Airflow
  • SQL
  • Apache Spark
  • Snowflake
  • LangGraph
  • Prompt Engineering
  • Docker
  • Kubernetes
  • serverless compute environments
  • Data Mesh
  • Data-as-a-Product (DaaP)
  • Event-Driven Architectures
  • Semantic layer
  • Knowledge Graphs
  • generative AI acceleration
  • end-to-end data strategy

Nice to have

  • Cursor
  • Codex
  • Claude Code
  • Salesforce Core
  • Data 360

What the JD emphasized

  • production-grade data products
  • autonomous agents
  • multi-agent ecosystems
  • agentic orchestration
  • multi-step reasoning architectures
  • verification protocols
  • governance as code
  • context aware Agent development
  • AI-native development environments
  • Prompt Engineering
  • agentic frameworks
  • chain-of-thought prompting
  • self-correction loops
  • iterative reasoning paths
  • generative AI to accelerate personal and departmental output by orders of magnitude
  • function as a 'Domain Data Officer'
  • minimal supervision
  • subtle logic errors or hallucinations in agentic output

Other signals

  • building autonomous agents
  • multi-agent ecosystems
  • agentic orchestration
  • governance as code for agentic development