Artificial Intelligence (AI), Artificial Intelligence (AI) Natural Language, Best Practices, Cloud Computing, Code Reviews, Computer Science, Cost Control, Cross-Functional, Data Management, Data Storage, Distributed Computing, Environmental Compliance, Financial Trend Analysis, HIPAA (Health Insurance Portability and Accountability Act), Healthcare, Java, Leadership, MCP - Microsoft Certified Professional, Maintain Compliance, Mentoring, Microservices, Modeling Languages, Open Source, Patents, Performance Tuning/Optimization, Publications, Python Programming/Scripting Language, Redis, Regulations, Software Development, Software Engineering, Team Player, Technical Leadership
Role: Senior AI/ML Engineer GenAI & Cloud Solutions
Location: Woodland hills, CA (onsite Role )
Key Responsibilities
Clienthitect and Design: Lead the design of scalable, secure, and high-performance AI/ML systems leveraging Agentic Layer A2A frameworks and MCP Protocols.
Solution Engineering: Drive end-to-end solution development including vector embeddings, prompt engineering, and context engineering for enterprise-grade GenAI applications.
Cloud Deployment: Clienthitect and oversee deployment of AI/ML workloads on Clienture Cloud, ensuring compliance, scalability, and cost optimization.
Data Clienthitecture: Design and optimize data pipelines and storage solutions using Clienture AI SeClienth, Redis, Cosmos DB, Blob Storage, and Iceberg.
Application Development: Build and manage Clienture Functions and Clienture Container Apps for microservices-based AI solutions.
Performance & Scalability: Define cloud-native Clienthitecture patterns, implement performance tuning, and ensure resilience across distributed systems.
Domain Expertise: Apply deep knowledge of healthcare domain requirements, ensuring solutions meet regulatory standards (HIPAA, GDPR, etc.) and handle sensitive data securely.
Technical Leadership: Mentor engineering teams, establish best practices, and conduct design/code reviews.
Innovation & ReseClienth: Stay ahead of emerging GenAI, LLM/NLM trends, and integrate cutting-edge approaches into enterprise solutions.
Required Skills & Expertise
Agentic Layer & Protocols: Hands-on expertise with Agentic Layer A2A frameworks and MCP Protocol for multi-agent orchestration.
AI/ML Engineering: Strong background in vector embeddings, prompt engineering, context engineering, and fine-tuning LLMs.
GenAI & LLM Concepts: Deep understanding of Generative AI, Natural Language Models (NLM), and Large Language Models (LLM).
Programming: Advanced proficiency in Python; exposure to Java/Go is a plus.
Cloud Proficiency: Strong experience with Clienture Cloud services, including deployment, monitoring, and scaling.
Databases: Expertise in Clienture AI SeClienth, Redis, Cosmos DB; familiarity with Blob Storage and Iceberg is advantageous.
Cloud-Native Clienthitecture: Solid grasp of microservices, containerization, serverless computing, scalability, and performance optimization.
Healthcare Domain: Experience working with regulated data environments and compliance frameworks.
Evaluation Criteria (Critical Components)
1. Technical Depth
Ability to design and implement multi-agent AI systems.
Experience in LLM fine-tuning, embeddings, and context engineering.
Expertise in coding proficiency with production-grade systems in Python.
2. Clienthitectural Vision
Ability to define enterprise-level AI/ML Clienthitecture aligned with cloud-native principles.
Experience in scalability, resilience, and performance optimization.
3. Cloud & Data Expertise
Hands-on deployment of AI workloads on Clienture Cloud.
Strong knowledge of databases, seClienth systems, and distributed storage.
4. Domain Knowledge
Familiarity with healthcare regulations and ability to design compliant solutions.
5. Leadership & Collaboration
Experience mentoring engineers, conducting reviews, and driving technical excellence.
Ability to collaborate with cross-functional teams including product, compliance, and operations.
6. Innovation & ReseClienth Orientation
Evidence of staying current with GenAI advancements and applying them to real-world problems.
Preferred Qualifications
Bachelors or master s in computer science, AI/ML, or related field.
Certifications in Clienture Solutions Clienthitect or AI Engineering.
Publications, patents, or contributions to open-source AI/ML projects.
R
Resource Logistics, Inc.
500 to 999 employees
Medical Devices and Supplies