Responsibilities:
- LLM-Optimized MLOps Infrastructure: Design and implement MLOps infrastructure on AWS tailored for LLMs, leveraging services like SageMaker, EC2 (with GPU instances), S3, ECS/EKS, Lambda, and more.
- LLM Deployment Pipelines: Build and manage CI/CD pipelines specifically for LLM deployment, addressing unique challenges like model size, inference optimization, and versioning.
- LLMOps Practices: Implement LLMOps best practices for monitoring model performance, drift detection, prompt management, and feedback loops for continuous improvement.
- RESTful API Development: Design and develop RESTful APIs to expose LLM capabilities to other applications and services, ensuring scalability, security, and optimal performance.
- Model Optimization: Apply techniques like quantization, distillation, and pruning to optimize LLM models for efficient inference on AWS infrastructure.
- Monitoring and Observability: Establish comprehensive monitoring and alerting mechanisms to track LLM performance, latency, resource utilization, and potential biases.
- Prompt Engineering and Management: Develop strategies for prompt engineering and management to enhance LLM outputs and ensure consistency and safety.
- Collaboration: Work closely with data scientists, researchers, and software engineers to integrate LLM models into production systems effectively.
- Cost Optimization: Continuously optimize LLMOps processes and infrastructure for cost-efficiency while maintaining high performance and reliability.
Qualifications:
- Experience: 3+ years of experience in MLOps or a related field, with hands-on experience in deploying and managing LLMs.
- AWS Expertise: Strong proficiency in AWS services relevant to MLOps and LLMs, including SageMaker, EC2 (with GPU instances), S3, ECS/EKS, Lambda, and API Gateway.
- LLM Knowledge: Deep understanding of LLM architectures (e.g., Transformers), training techniques, and inference optimization strategies.
- Programming Skills: Proficiency in Python and experience with infrastructure-as-code tools (e.g., Terraform, CloudFormation), REST API frameworks (e.g., Flask, FastAPI), and LLM libraries (e.g., Hugging Face Transformers).
- Monitoring: Familiarity with monitoring and logging tools for LLMs, such as Prometheus, Grafana, and CloudWatch.
- Containerization: Experience with Docker and container orchestration (e.g., Kubernetes, ECS) for LLM deployment.
- Problem Solving: Excellent problem-solving and troubleshooting skills in the context of LLMs and MLOps.
- Communication: Strong communication and collaboration skills to effectively work with cross-functional teams.
Additional Details :
Projected Start Date : 2024-07-29T04:00:00
Projected End Date : 2025-01-31T12:00:00
Client Company : Southern Glazer's Wine & Spirits - Miramar, FL
Vendor Pay Rate : 80.01
Selling points for candidate :
Background Check : No