
Machine Learning Engineer, LLMs / RAG
ghSMART
full-time
Posted on:
Location Type: Remote
Location: United States
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Salary
💰 $160,000 - $175,000 per year
About the role
- Design, build, and extend ML models (LLMs and traditional ML) that deliver high-accuracy insights from ghSMART’s structured leadership dataset; own end-to-end experimentation, evaluation, and deployment.
- Develop RAG-based agents and algorithms to unlock novel leadership insights from our research database.
- Integrate advanced solutions and AI Agents into the Leadership Intelligence Platform and partner cross-functionally to align features with strategic objectives and user needs.
- Optimize data pipelines and workflows to ensure robust, efficient data ingestion, transformation, and model serving across engineering teams.
- Collaborate on research with academic partners and contribute to publications and thought leadership by validating findings with rigorous methods.
Requirements
- 5+ years of ML engineering experience building and shipping large-scale models and systems (training, tuning, inference, MLOps, monitoring).
- Hands-on expertise with RAG frameworks and LLMs, including designing retrieval strategies, prompt orchestration, evaluation, and deployment at scale. Experience building AI agents via the LangChain, LangGraph framework is a plus.
- Strong data engineering fundamentals across pipelines, data quality, and feature engineering to support reliable ML workflows. Experience with Databricks and Azure is a plus.
- Security and privacy mindset, with experience applying best practices to protect sensitive data in ML systems.
- Collaborative, remote-first working style with clear communication and ownership; familiarity with Salesforce (SFDC), Jira, Confluence, and Git.
Benefits
- 401(k) plan with an annual employer contribution
- Comprehensive benefits package
- Flexible schedules to support life outside of work
Applicant Tracking System Keywords
Tip: use these terms in your resume and cover letter to boost ATS matches.
Hard Skills & Tools
ML engineeringlarge-scale modelsMLOpsRAG frameworksLLMsdata engineeringfeature engineeringdata pipelinesmodel servingAI agents
Soft Skills
collaborativeclear communicationownershipremote-first working style