Senior Machine Learning Engineer
Location
Texas
Posted
1 day ago
Salary
0
Seniority
Senior
Job Description
Senior Machine Learning Engineer
Revionics, an Aptos Company
• Designing, building, deploying, and evolving the end-to-end AI & ML systems • Initial focus on agentic capabilities, agent-to-agent (A2A) protocol, demand modeling and forecasting, optimization, product relationships • Building out new features on the Science roadmap • Working on full stack technology, from prototyping to production-ready software • Collaborating with product, engineers, and data scientists to translate ideas into new products, services and features • Exposing and evangelizing the Science team capabilities
Job Requirements
- Bachelor's/Master’s degree in a STEM field such as computer science
- Proficiency in Python, SQL, and agentic frameworks such as ADK or LangChain
- Proficiency with agentic development concepts such as Skills, Tools, Callbacks, code execution, token caching, compaction, multi-agent orchestration etc.
- Experience exposing agentic systems using MCP or A2A frameworks
- Experience working in cloud native environments like GCP (BQ, Cloud run, GKE etc) or AWS
- Strong track record of developing and scaling AI/ML systems within software products and production systems
- Broader software development skills (backend/frontend, data engineering, APIs, system design, etc.)
- Experience building scalable agentic systems in production
- Comfort with LLM-based development platforms such as Claude or Codex
- Strong algorithmic problem-solving skills and an analytical mindset
- Proactively security-conscious mindset
- Experience with large scale, high-performance systems and full software development life-cycle experience (CI/CD etc.)
- Enjoys tough technical challenges and is naturally intellectually curious
- Seeks to drive change and influence others through clear and effective communication.
Benefits
- industry-leading training and development opportunities
- inclusive culture
- competitive total rewards package
- discretionary incentive compensation based on individual achievements
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