Artificial Intelligence Engineer
VertiSystem Inc
Contract
Stanford, CA
Job description
Job Title: AI/ML Engineer
Duration: 12+ Months assignment (High possibility of extension)
OVERVIEW
The AI/ML Engineer is a key technical contributor driving AI transformation initiatives. This role focuses on building and deploying intelligent, cloud-native applications—from GenAI-powered systems and retrieval-augmented assistants to data-driven automation workflows.
Working at the intersection of machine learning, cloud engineering, and educational innovation, the engineer translates complex needs into scalable, secure, and maintainable AWS-native AI systems that enhance teaching, learning, and operations across global online programs.
RESPONSIBILITIES
- Own the design and end-to-end implementation of AI systems combining GenAI, narrow AI, and traditional ML models (e.g., regression, classification).
- Implement retrieval-augmented generation (RAG), multi-agent, and protocol-based AI systems (e.g., MCP).
- Integrate AI capabilities into production-grade applications using serverless and containerized architectures (AWS Lambda, Fargate, ECS).
- Fine-tune and optimize existing models for specific educational and administrative use cases, focusing on performance, latency, and reliability.
- Build and maintain data pipelines for model training, evaluation, and monitoring using AWS services such as Glue, S3, Step Functions, and Kinesis.
- Architect and manage scalable AI workloads on AWS, leveraging services such as SageMaker, Bedrock, API Gateway, EventBridge, and IAM-based security.
- Build microservices and APIs to integrate AI models into applications and backend systems.
- Develop automated CI/CD pipelines ensuring continuous delivery, observability, and monitoring of deployed workloads.
- Apply containerization best practices using Docker and manage workloads through AWS Fargate and ECS for scalable, serverless orchestration and reproducibility.
- Ensure compliance with Stanford and regulatory standards (FERPA, GDPR) for secure data handling and governance
- Collaborate closely with cross-functional teams to deliver integrated and impactful AI solutions.
- Use Git-based version control and code review best practices as part of a collaborative, agile workflow.
MINIMUM QUALIFICATIONS
- Bachelor’s degree in Computer Science, AI/ML, Data Engineering, or a related field (Master’s preferred).
- AWS certification preferred (Solutions Architect, Developer, or equivalent); Professional-level certification a plus.
- 3+ years of experience developing and deploying AI/ML-driven applications in production.
- 2+ years of hands-on experience with AWS-based architectures (serverless, microservices, CI/CD, IAM).
- Proven ability to design, automate, and maintain data pipelines for model inference, evaluation, and monitoring.
- Experience with both GenAI and traditional ML techniques in applied, production settings.
Job Type: Contract
Pay: $60.00 per hour
Expected hours: 40 per week
Work Location: In person