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Trissential, a part of the global consulting group Expleo, is a consulting firm founded in 2003. It provides comprehensive business improvement and digital transformation solutions
AI / ML Engineer
Location
United States
Posted
12 days ago
Salary
$85 - $95 / hour
Seniority
Mid Level
No structured requirement data.
Job Description
AI / ML Engineer
Expleo
Role Description Are you excited by the idea of building real, production AI systems that directly impact patient care? Trissential is partnering with a leading healthcare organization to hire AI/ML Engineers who thrive at the intersection of advanced AI, cloud engineering, and healthcare delivery. This is not an experimental or academic role. You’ll design, build, evaluate, and deploy production-grade AI and agentic systems that clinicians and operational teams rely on every day. Your Role & Responsibilities - Design and implement agentic AI systems, including LLM integrations, orchestration patterns, prompt engineering, and tool-using agents. - Build and maintain production Python services, APIs, automation workflows, and data pipelines. - Develop RAG pipelines using embeddings, vector databases, and structured/unstructured healthcare data. - Implement evaluation frameworks and guardrails to address hallucinations, safety, PHI protection, and quality before production. - Deploy, monitor, and optimize AI/ML solutions in cloud environments using CI/CD pipelines. - Collaborate cross-functionally to translate clinical and operational needs into scalable AI solutions. - Ensure solutions meet healthcare regulatory, quality, and risk mitigation standards. - Contribute to AI/ML best practices, MLOps/LLMOps methodologies, and continuous improvement. Qualifications - 7+ years of experience in software engineering, ML engineering, or AI engineering. - Strong Python experience in production environments (APIs, async workflows, testing). - Hands-on experience designing and deploying AI / LLM agent systems. - Experience with at least one agent framework such as LangChain, LangGraph, LlamaIndex, Semantic Kernel, or Google ADK. - Practical experience with RAG architectures, embeddings, and vector databases. - Experience deploying AI systems in Azure, AWS, or GCP. - Understanding of HIPAA / PHI handling, including de-identification and secure AI workflows. - Strong communication skills and ability to explain complex AI concepts to non-technical stakeholders. Bonus Points If You Have - Experience with Google Cloud or Azure in regulated environments. - MCP, A2A, or protocol-driven AI architectures. - Experience with BigQuery, Firestore, Cloud SQL, or Dataflow. - MLOps or LLMOps experience in enterprise environments. - Infrastructure as Code (Terraform) and CI/CD (Azure DevOps Pipelines). - Experience with healthcare informatics standards and clinical data models. Education & Certifications You Need - Master’s degree in Engineering, Computer Science, Mathematics, Health Science, or related field with 1+ year experience OR - Bachelor’s degree with 3+ years of relevant experience OR - HS Diploma/GED with 7+ years of experience. Benefits - Competitive Compensation – $85–$95 per hour. Final compensation is determined based on skill alignment, years of experience, and fair, market-based rates by geography. - Comprehensive Benefits for you and your dependents – Medical, dental, vision, free tele-health, HSA with company contribution, life and disability insurance, and 401k with matching. - Paid Time Off – Offers paid time away from work. - High-Impact Healthcare Work – Build AI systems used in real clinical environments. - Professional Growth – Work alongside senior AI engineers, clinicians, and healthcare leaders.
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