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Software Engineer (Agentic) – AI & Workflow Automation

CloudBees

Salary not specified
Aug 28, 2025
Los Angeles, CA, US
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CloudBees is looking to evolve its software delivery platform with agentic AI technologies that help developers work smarter, not harder, by architecting and prototyping AI/LLM-driven workflows that augment developer productivity.

Requirements

  • 3 agentic systems, LLM
  • 5+ years of hands-on experience in AI/ML engineering, LLM Ops,
  • Proven knowledge & experience developing agentic flows with frameworks like (Langchain, CrewAI, Agno, or custom)
  • Familiarity with prototyping and testing in environments with MCP enabled tools like Claude Desktop/Goose, AWS Q, and Gemini.
  • Experience designing and maintaining pipelines for ML models, workflows, or LLM agents.
  • Strong programming skills in Python, TypeScript,
  • Comfortable working in cloud-native environments (AWS/GCP) and with DevOps pipelines (e.g., GitHub Actions, Argo).

Responsibilities

  • Design, prototype, and test agentic workflows using platforms like Goose, Unify MCP, AWS Q, and Google Gemini.
  • Build and iterate on AI-powered agents that can autonomously interact with systems, APIs, and developer tools.
  • Translate product concepts into working demos and scalable pipeline implementations.
  • Collaborate cross-functionally with product managers, ML engineers, and DevOps teams to refine user workflows.
  • Optimize agent behavior for reasoning, autonomy, reliability, and safety.
  • Contribute to ML pipeline development for deploying and monitoring agentic flows in production environments.
  • Document architectures and share learnings across the engineering org.

Other

  • Startup experience or demonstrated ability to build fast, iterate quickly, and wear multiple hats.
  • Experience integrating agentic workflows into SaaS developer platforms.
  • Familiarity with orchestration, memory management, and context-aware agents.
  • Understanding of prompt engineering, tool augmentation, and LLM fine-tuning.
  • Knowledge of system observability and debugging tools for agents.