Senior AIML Engineer
Job Location:
Woodland Hills, CA - USA
Monthly Salary:
Not Disclosed
Posted on:
10 days ago
Vacancies:
1 Vacancy
Job Summary
Key Responsibilities
- Architect 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: Architect and oversee deployment of AI/ML workloads on Azure Cloud ensuring compliance scalability and cost optimization.
- Data Architecture: Design and optimize data pipelines and storage solutions using Azure AI Search Redis Cosmos DB Blob Storage and Iceberg.
- Application Development: Build and manage Azure Functions and Azure Container Apps for microservices-based AI solutions.
- Performance & Scalability: Define cloud-native architecture 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 & Research: 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 Azure Cloud services including deployment monitoring and scaling.
- Databases: Expertise in Azure AI Search Redis Cosmos DB; familiarity with Blob Storage and Iceberg is advantageous.
- Cloud-Native Architecture: 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. Architectural Vision
- Ability to define enterprise-level AI/ML architecture aligned with cloud-native principles.
- Experience in scalability resilience and performance optimization.
3. Cloud & Data Expertise
- Hands-on deployment of AI workloads on Azure Cloud.
- Strong knowledge of databases search 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 & Research Orientation
- Evidence of staying current with GenAI advancements and applying them to real-world problems.
Preferred Qualifications
- Bachelors or masters in computer science AI/ML or related field.
- Certifications in Azure Solutions Architect or AI Engineering.
- Publications patents or contributions to open-source AI/ML projects.