ML Ops Engineer — Agentic AI Lab (Founding Team)

Posted Yesterday
7 Locations
In-Office or Remote
Senior level
Artificial Intelligence • Software • Industrial • Manufacturing
The Role
Build and operate secure, scalable ML pipelines and hybrid GPU infrastructure for training, fine-tuning, serving, and governing open-source LLMs and agentic apps. Implement CI/CD, model versioning, observability, benchmarking, security controls, and integration with RAG/agent tools and vector DBs to support production deployments across tenants.
Summary Generated by Built In

ML Ops Engineer — Agentic AI Lab (Founding Team)

Location: San Francisco Bay Area

Type: Full-Time

Compensation: Competitive salary + meaningful equity (founding tier)

Backed by 8VC, we're building a world-class team to tackle one of the industry’s most critical infrastructure problems.

About the Role

Our AI Lab is pioneering the future of intelligent infrastructure through open-source LLMs, agent-native pipelines, retrieval-augmented generation (RAG), and knowledge-graph-grounded models.

We’re hiring an ML Ops Engineer to be the glue between ML research and production systems — responsible for automating the model training, deployment, versioning, and observability pipelines that power our agents and AI data fabric.

You’ll work across compute orchestration, GPU infrastructure, fine-tuned model lifecycle management, model governance, and security e

Responsibilities

  • Build and maintain secure, scalable, and automated pipelines for:

  • LLM fine-tuning, SFT, LoRA, RLHF, DPO training

  • RAG embedding pipelines with dynamic updates

  • Model conversion, quantization, and inference rollout

  • Manage hybrid compute infrastructure (cloud, on-prem, GPU clusters) for training and

    inference workloads using Kubernetes, Ray, and Terraform

  • Containerize models and agents using Docker, with reproducible builds and CI/CD via

    GitHub Actions or ArgoCD

  • Implement and enforce model governance: versioning, metadata, lineage, reproducibility,

    and evaluation capture

  • Create and manage evaluation and benchmarking frameworks (e.g. OpenLLM-Evals,

    RAGAS, LangSmith)

  • Integrate with security and access control layers (OPA, ABAC, Keycloak) to enforce

    model policies per tenant

  • Instrument observability for model latency, token usage, performance metrics, error

    tracing, and drift detection

  • Support deployment of agentic apps with LangGraph, LangChain, and custom inference

    backends (e.g. vLLM, TGI, Triton)

Desired Experience

Model Infrastructure:

  • 4+ years in MLOps, ML platform engineering, or infra-focused ML roles

  • Deep familiarity with model lifecycle management tools: MLflow, Weights & Biases, DVC,

  • HuggingFace Hub

  • Experience with large model deployments (open-source LLMs preferred): LLaMA,

  • Mistral, Falcon, Mixtral

  • Comfortable with tuning libraries (HuggingFace Trainer, DeepSpeed, FSDP, QLoRA)

  • Familiarity with inference serving: vLLM, TGI, Ray Serve, Triton Inference Server

Automation + Infra:

  • Proficient with Terraform, Helm, K8s, and container orchestration

  • Experience with CI/CD for ML (e.g. GitHub Actions + model checkpoints)

  • Managed hybrid workloads across GPU cloud (Lambda, Modal, HuggingFace Inference,

  • Sagemaker)

  • Familiar with cost optimization (spot instance scaling, batch prioritization, model sharding)

Agent + Data Pipeline Support:

Familiarity with LangChain, LangGraph, LlamaIndex or similar RAG/agent orchestration tools

Built embedding pipelines for multi-source documents (PDF, JSON, CSV, HTML)

Integrated with vector databases (Weaviate, Qdrant, FAISS, Chroma)

Security & Governance:

Implemented model-level RBAC, usage tracking, audit trails

Integrated with API rate limits, tenant billing, and SLA observability

Experience with policy-as-code systems (OPA, Rego) and access layers

Preferred Stack

  • LLM Ops: HuggingFace, DeepSpeed, MLflow, Weights & Biases, DVC

  • Infra: Kubernetes (GKE/EKS), Ray, Terraform, Helm, GitHub Actions, ArgoCD

  • Serving: vLLM, TGI, Triton, Ray Serve

  • Pipelines: Prefect, Airflow, Dagster

  • Monitoring: Prometheus, Grafana, OpenTelemetry, LangSmith

  • Security: OPA (Rego), Keycloak, Vault

  • Languages: Python (primary), Bash, optionally Rust or Go for tooling

Mindset & Culture Fit

  • Builder's mindset with startup autonomy: you automate what slows you down

  • Obsessive about reproducibility, observability, and traceability

  • Comfortable with a hybrid team of AI researchers, DevOps, and backend engineers

  • Interested in aligning ML systems to product delivery, not just papers

  • Bonus: experience with SOC2, HIPAA, or GovCloud-grade model operations

What We’re Looking For

Experience:

  • 5+ years as a full stack or backend engineer

  • Experience owning and delivering production systems end-to-end

  • Prior experience with modern frontend frameworks (React, Next.js)

  • Familiarity with building APIs, databases, cloud infrastructure, or deployment workflows at scale

  • Comfortable working in early-stage startups or autonomous roles, prior experience as a founder, founding engineer, or a 0-1 pre-seed startup is a big plus

Mindset:

  • Comfortable with ambiguity, eager to prototype and iterate quickly

  • Strong sense of ownership — prefers to build systems rather than wait for tickets

  • Enjoys thinking about architecture, performance, and tradeoffs at every level

  • Clear communicator and pragmatic team player

  • Values equity and impact over prestige or hierarchy

  • Prior startup or founding team experience

Why This Role Matters

Your work will enable models and agents to be trained, evaluated, deployed, and governed at

scale — across many tenants, models, and tasks. This is the backbone of a secure, reliable,

and scalable AI-native enterprise system. If you dream about using AI to solve some really hard

real world problems – we would love to hear from you.

Skills Required

  • 4+ years in MLOps, ML platform engineering, or infra-focused ML roles
  • 5+ years as a full stack or backend engineer (ownership of production systems end-to-end)
  • Proficiency in Python (primary) and Bash
  • Experience with containerization and orchestration: Docker, Kubernetes (GKE/EKS), Helm
  • Infrastructure-as-code and provisioning experience with Terraform
  • Experience building CI/CD for ML (GitHub Actions, ArgoCD) and reproducible model builds/checkpoints
  • Hands-on experience with model lifecycle tools: MLflow, Weights & Biases, DVC, HuggingFace Hub
  • Experience with LLM fine-tuning and tuning libraries (HuggingFace Trainer, DeepSpeed, FSDP, QLoRA)
  • Experience deploying and serving large models: vLLM, TGI, Triton, Ray Serve
  • Hybrid GPU compute management across cloud and on-prem (GPU clusters, Lambda/Modal/HuggingFace Inference, SageMaker)
  • Built RAG embedding pipelines and integrated with vector DBs (Weaviate, Qdrant, FAISS, Chroma)
  • Implemented observability for model latency, token usage, performance metrics, error tracing, and drift detection (Prometheus, Grafana, OpenTelemetry)
  • Implemented model governance, versioning, metadata, lineage, reproducibility, and evaluation capture
  • Experience with security & governance integrations (OPA/Rego, Keycloak, RBAC, audit trails, policy-as-code)
  • Familiarity with agent and orchestration tools (LangChain, LangGraph, LlamaIndex) and evaluation frameworks (LangSmith, OpenLLM-Evals, RAGAS)
  • Prior startup or founding-team experience, or comfort working in early-stage, autonomous environments
  • Familiarity or experience with SOC2, HIPAA, or GovCloud-grade operations
  • Optional experience writing tooling in Rust or Go for infra components
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The Company
8 Employees

What We Do

Fabrion is an AI-native platform and operating system purpose-built for the new industrial era. The company provides an intelligence layer for modern manufacturing, aiming to transform complex industrial value chains and enterprises. By offering an AI-powered supplier intelligence platform, Fabrion helps industrial manufacturers move faster, operate smarter, and build with confidence, effectively transforming the industrial enterprise and complex supply chains.

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