Senior Machine Learning Engineer - I (MLOps/LLMOps)

Vollzeit
Redwood City, CA, USA
vor 5 Stunden
Senior Machine Learning Engineer - I  (MLOps/LLMOps)

As a Senior Machine Learning Engineer - MLOps/LLMOps, you will design, build, and scale production-grade infrastructure and platforms that enable the full lifecycle of ML and LLM systems. You'll architect robust pipelines for model training, evaluation, deployment, and monitoring while ensuring reliability, observability, and efficiency at scale. This role collaborates closely with ML Engineers, Data Scientists, and Product teams to operationalize AI/ML solutions from prototype to production.

Responsibilities Platform & Infrastructure
  • Design and implement scalable MLOps/LLMOps platforms supporting the full ML lifecycle: data versioning, model training, evaluation, deployment, and monitoring
  • Build and maintain CI/CD pipelines for ML models and LLM applications with automated testing, validation, and rollback capabilities
  • Develop infrastructure-as-code (IaC) for reproducible, version-controlled ML environments
  • Architect model serving infrastructure with auto-scaling, A/B testing, and canary deployment capabilities
LLM Operations
  • Build platforms for LLM fine-tuning, prompt management, and experimentation at scale
  • Implement evaluation frameworks for LLM performance, quality, safety, and cost optimization
  • Design and deploy enterprise-grade AI agents and copilots with robust monitoring and guardrails
  • Establish LLM observability: token usage tracking, latency monitoring, prompt/response logging, and cost attribution
Operational Excellence
  • Own uptime, reliability, and performance of ML/LLM services (SLIs/SLOs)
  • Implement comprehensive monitoring, alerting, and incident response for ML systems
  • Participate in on-call rotations and drive post-incident reviews to improve system resilience
  • Build automation and tooling to reduce toil and accelerate ML development velocity
Collaboration & Leadership
  • Partner with ML Engineers and Data Scientists to translate research into production-ready systems
  • Collaborate with platform and infrastructure teams on cloud architecture and resource optimization
  • Mentor team members on MLOps best practices, production ML patterns, and operational excellence
  • Drive technical decisions on tooling, frameworks, and architectural patterns
Required Qualifications and Skills
  • Education: B.S./M.S./Ph.D. in Computer Science, Engineering, or related technical field
  • Experience: 4+ years of software engineering experience with 2+ years focused on MLOps/LLMOps
  • MLOps Expertise:
    • Production experience with ML model serving frameworks (e.g., TensorFlow Serving, TorchServe, Triton)
    • Hands-on with ML experiment tracking and model registry tools (MLflow, Weights & Biases, Kubeflow)
    • Proficiency in workflow orchestration (Airflow, Prefect, Kubeflow Pipelines, Metaflow)
  • LLMOps Expertise:
    • Experience with LLM deployment, fine-tuning, and evaluation frameworks (e.g., vLLM, LangChain, LlamaIndex)
    • Knowledge of prompt engineering, RAG architectures, and LLM application patterns
    • Familiarity with LLM observability tools (e.g., LangSmith, Arize, WhyLabs)
  • Cloud & Infrastructure:
    • Strong experience with major cloud providers (AWS, GCP, or Azure) and ML-specific services (SageMaker, Vertex AI, Azure ML, Bedrock)
    • Proficiency in containerization (Docker, Kubernetes) and infrastructure-as-code (Terraform, CloudFormation, Pulumi)
    • Experience with microservices architecture and API development (REST, gRPC)
  • Software Engineering:
    • Strong programming skills in Python, terraform and Helm; familiarity with Go, Java, or Rust is a plus
    • Deep understanding of CI/CD practices and tools (GitHub Actions, GitLab CI, Jenkins, ArgoCD)
    • Experience with monitoring and observability stacks (Prometheus, Grafana, DataDog, ELK)
  • Operational Excellence:
    • Track record of managing production systems with defined SLIs/SLOs
    • Experience with on-call rotations, incident management, and reliability engineering practices
Desired Qualifications and Skills
  • Experience building internal ML platforms or developer tooling used by multiple teams
  • Hands-on with distributed training frameworks (Ray, Horovod, DeepSpeed)
  • Knowledge of model optimization techniques (quantization, distillation, pruning)
  • Familiarity with feature stores (Feast, Tecton) and data versioning tools (DVC, LakeFS)
  • Understanding of ML security best practices, model governance, and compliance requirements
  • Experience with cost optimization and resource management for large-scale ML workloads
  • Contributions to open-source MLOps/LLMOps projects
  • Background in applied ML or data science with practical model development experience
About Us

Sumo Logic, Inc. helps make the digital world secure, fast, and reliable by unifying critical security and operational data through its Intelligent Operations Platform. Built to address the increasing complexity of modern cybersecurity and cloud operations challenges, we empower digital teams to move from reaction to readiness—combining agentic AI-powered SIEM and log analytics into a single platform to detect, investigate, and resolve modern challenges. Customers around the world rely on Sumo Logic for trusted insights to protect against security threats, ensure reliability, and gain powerful insights into their digital environments. For more information, visit www.sumologic.com.

Sumo Logic Privacy Policy. Employees will be responsible for complying with applicable federal privacy laws and regulations, as well as organizational policies related to data protection.

The expected annual base salary range for this position is $158,000 - $185,000. Compensation varies based on a variety of factors which include (but aren’t limited to) role level, skills and competencies, qualifications, knowledge, location, and experience. In addition to base pay, certain roles are eligible to participate in our bonus or commission plans, as well as our benefits offerings, and equity awards. 

Must be authorized to work in the United States at time of hire and for duration of employment. At this time, we are not able to offer nonimmigrant visa sponsorship for this position.