Senior MLOps Engineer

Nace AI

$130K — $180K *
Information Technology
5 - 7 years of experience
Job Overview by Ladders

Qualifications

  • 5+ years of experience in MLOps or ML infrastructure with production ownership.
  • Proven track record in deploying and scaling LLM inference infrastructure.
  • Strong proficiency in Kubernetes and containerization tools like Docker.
  • Hands-on experience managing GPU clusters and distributed environments.
  • Proficient in Python with experience in maintaining complex systems.
  • Familiarity with ML pipeline tools such as Airflow or Kubeflow.
  • Solid foundation in cloud architecture (AWS, GCP, Azure).
  • BS in Computer Science or a related field.

Responsibilities

  • Design and build end-to-end ML infrastructure covering training and evaluation.
  • Own the LLM/SLM serving infrastructure, focusing on low-latency and high-throughput.
  • Manage multi-GPU training and inference clusters in cloud and on-prem environments.
  • Implement observability for production models with actionable alerting.
  • Apply inference optimizations, collaborating with ML and Research Engineers.
  • Ensure enterprise deployment standards like reproducibility and traceability.
  • Establish MLOps best practices and tooling standards as a senior team member.

Benefits

  • Health, dental, and vision insurance.
  • Flexible work hours with remote work options.
  • Professional development and training opportunities.
  • Annual team retreats and events.
  • Generous paid time off policy.
Full Job Description
Palo Alto, CA | Full-Time | On-site

Role Overview:

As a Senior MLOps Engineer, you will own the infrastructure that takes Nace.AI's models from research to reliable, production-grade systems. Our infrastructure generates task-specific Small Language Models (SLMs) in real time - which means our training, serving, and evaluation infrastructure isn't an afterthought; it is the product. You will design and operate the pipelines, orchestration, and serving layers that allow us to train, deploy, monitor, and continuously improve many specialized models at once, with the reliability that high-stakes audit, compliance, and finance workflows demand. This role sits at the intersection of ML engineering, LLM inference infrastructure, and platform reliability, and requires both strong systems instincts and hands-on execution.

Key Responsibilities:
  • Design, build, and operate end-to-end ML infrastructure: training orchestration, experiment tracking, model registries, CI/CD for models, and automated evaluation pipelines.
  • Own LLM/SLM serving infrastructure - scale low-latency, high-throughput inference using frameworks like vLLM, including batching, caching, and autoscaling strategies.
  • Build and manage multi-GPU training and inference clusters (scheduling, utilization, cost optimization) across cloud and on-prem environments.
  • Implement observability for models in production: latency, throughput, drift, regression, and quality monitoring with actionable alerting.
  • Apply inference-time optimizations - quantization (AWQ, GPTQ, FP8/GGUF), distillation support, KV-cache management, and deployment tuning - in partnership with our ML and Research Engineers.
  • Harden our stack for enterprise deployment: reproducibility, versioning, access controls, and audit-ready traceability of model behavior.
  • Set MLOps best practices and tooling standards as an early, senior member of the infrastructure team.

Qualifications:
  • 5+ years of experience in MLOps, ML infrastructure, or platform engineering, with substantial production ownership.
  • Proven experience deploying and scaling LLM, inference infrastructure in production, including model serving frameworks such as TRT, vLLM, SGLang or TGI.
  • Strong proficiency with Kubernetes, containerization (Docker), and infrastructure-as-code (Terraform or similar).
  • Hands-on experience with GPU cluster management and distributed training/serving environments.
  • Proficient in Python with a strong track record of building substantial, maintainable systems.
  • Experience with ML pipeline and orchestration tooling (e.g., Airflow, Kubeflow, Ray, MLflow, Weights & Biases).
  • Solid foundation in computer science fundamentals and cloud architecture (AWS, GCP, or Azure).
  • BS degree in CS or related technical field.
  • Self-starter comfortable working in a fast-paced, dynamic environment.

Preferred Qualifications:
  • MS in CS or related technical field.
  • Experience operating multi-node GPU training infrastructure.
  • Hands-on experience with quantization techniques (AWQ, GPTQ, FP8/GGUF) and other inference-time optimizations.
  • Familiarity with data processing stacks such as Spark and Airflow.
  • Experience supporting fine-tuning workflows for LLMs/VLMs (instruction tuning, RLHF/DPO pipelines).
  • Experience in regulated or enterprise environments where reliability, security, and auditability are first-class requirements.
  • Contributor to open-source ML infrastructure projects.

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