Agentic AI Software Developer

Maestro Technologies, Inc.
Sunnyvale, California
Full-timePermanent

Job Description

Responsibilities:

  • Design, build, and evaluate agentic AI systems that can plan, reason, act, and collaborate across tools and environments, including single- and multi-agent setups for complex, long-horizon tasks.
  • Develop robust agent harnesses and evaluation frameworks covering end-to-end testing, regression analysis, trace logging, replayability, and metrics for success, cost, latency, robustness, and safety.
  • Implement self-improving agent loops using reflection, critique, self-debugging, and iterative optimization strategies driven by agent experience, execution traces, and automated feedback.
  • Architect and optimize agent memory systems, including short-term and long-term memory, retrieval-augmented generation, summarization, compression, forgetting policies, and privacy-aware retention.
  • Enable reliable deployment of agents on constrained and edge environments, focusing on model/runtime optimization, partial or offline execution, secure tool-use, and seamless edge-cloud coordination.

Qualifications

Basic Qualifications

  • Bachelor or master's degree in computer science or engineering
  • Strong software engineering skills in Python
  • Hands-on experience with LLMs and agentic systems, such as tool-using agents, planner-executor patterns, multistep reasoning pipelines, RAG systems
  • Solid understanding of ML fundamentals and practical model usage, including prompting, evaluation, and error analysis
  • Ability to design experiments and interpret results, including ablations, statistical thinking, clear success criteria and measurable KPIs
  • Strong communication and documentation skills including clear write-ups, reproducible experiments, and crisp technical presentations

Preferred Qualifications

  • 3+ years experiences in industrial research.
  • Experience with one or more of the following topics:
  • Agent frameworks
  • Structured generation
  • Agent memory management
  • Self-improving agents
  • LLM fine-tuning & reinforcement learning
  • Model optimization for edge

Published on 6/15/2026, 10:30 AM