HiredinAI LogoHiredinAI
JobsCompaniesJob Alerts
  1. Home
  2. chevron_right
  3. AI Infrastructure Engineer
  4. chevron_right
  5. Forward Deployed Engineer - AI/ML Platforms

Forward Deployed Engineer - AI/ML Platforms

Anyscale
A
apartmentAnyscalelocation_onSan FranciscoschedulePosted 9 days ago
Full-timeAI/ML PlatformsDistributed ComputingRayKubernetes$266,970 - $287,043

About the Role

At Anyscale, we're on a mission to democratize distributed computing and make it accessible to software developers of all skill levels. We’re commercializing Ray, a popular open-source project that's creating an ecosystem of libraries for scalable machine learning. Companies like OpenAI, Uber, Spotify, Instacart, Cruise, and many more, have Ray in their tech stacks to accelerate the progress of AI applications out into the real world. With Anyscale, we’re building the best place to run Ray, so that any developer or data scientist can scale an ML application from their laptop to the cluster without needing to be a distributed systems expert. Proud to be backed by Andreessen Horowitz, NEA, and Addition with $250+ million raised to date. As a Forward Deployed Engineer - AI/ML Platforms at Anyscale, you’ll partner with some of the world’s most sophisticated AI organizations to design, deploy, and operate the infrastructure powering their production AI workloads. In this role you will work directly with customer platform, infrastructure, and ML engineering teams to solve complex technical challenges. You will help customers build scalable AI platforms, modernize ML infrastructure, and operationalize distributed AI applications on Ray and the Anyscale platform. You will combine deep cloud infrastructure expertise with strong customer engagement skills, serving as both a trusted technical advisor and a hands-on engineer. You will work closely with customer teams throughout implementation, from architecture and deployment through production operations. Your work will provide feedback that directly influences the evolution of the Anyscale platform.

Responsibilities

  • Design and implement production-grade AI platform architectures on Kubernetes and public cloud infrastructure (AWS, Azure, and GCP).
  • Partner directly with customer platform, infrastructure, and ML engineering teams to deploy, operate, and optimize distributed AI workloads.
  • Lead implementation engagements that include platform installation, networking, security, observability, scaling, upgrades, and operational readiness.
  • Troubleshoot complex distributed systems issues spanning infrastructure, Kubernetes, networking, storage, and AI applications.
  • Develop automation, tooling, reference implementations, and infrastructure-as-code that accelerate customer success and improve repeatability.
  • Build trusted relationships with technical leaders, platform teams, and executive stakeholders, translating business objectives into robust technical solutions.
  • Collaborate closely with Product and Engineering to communicate customer requirements, identify product improvements, and shape future platform capabilities.
  • Share best practices through technical documentation, architecture guidance, workshops, and enablement.

Requirements

  • 5+ years of experience in cloud infrastructure, platform engineering, DevOps, Site Reliability Engineering, or software engineering.
  • Experience building, deploying, or operating ML/AI platforms that support model training, inference, or large-scale data processing workloads.
  • Strong expertise with Kubernetes and containerized production environments.
  • Experience operating cloud infrastructure on AWS, Azure, or GCP, including networking, security, IAM, storage, and infrastructure automation.
  • Experience with Infrastructure as Code and modern DevOps tooling such as Terraform, Helm, GitOps, CI/CD pipelines, or similar technologies.
  • Strong software engineering skills in Python, Go, Java, or a comparable language, with experience building automation or production services.
  • Experience working directly with enterprise customers in consulting, professional services, field engineering, solutions architecture, or another customer-facing engineering role.
  • Excellent communication skills and the ability to work effectively with both executive and deeply technical stakeholders.

Qualifications

  • Familiarity with distributed computing frameworks such as Ray, Spark, Dask, or Kubernetes-native distributed systems is a strong plus.
  • A passion for solving difficult customer problems and building reusable technical solutions.
  • Willingness to travel as needed to work alongside strategic customers.

Benefits

$266,970 – $287,043

notifications_active

Similar Job Alerts

Get notified about new AI Infrastructure Engineer roles.

expand_more
expand_more
Anyscale
A

Anyscale

View Companyarrow_forward
AI Infrastructure EngineerSan Francisco

Frequently Asked Questions

How do I apply for this Forward Deployed Engineer - AI/ML Platforms position?

Click the "Apply Now" button on this page to be directed to the application. You will be taken to the employer's application page.

Is this position remote?

This role is based in San Francisco. Check the full description for remote or hybrid options.

What is the salary range?

The listed salary range for this position is $266,970 - $287,043. Final compensation may vary based on experience, qualifications, and location.

When was this job posted?

This position was posted 9 days ago. We recommend applying promptly as positions can fill quickly.

Explore More

attach_moneyAI Salary GuideschoolEntry Level AI JobscategoryMore AI Infrastructure Engineer Jobs

Career Resources

article

AI Jobs Salary Guide 2026

Compensation data

article

AI-Proof Jobs: 25 Careers Safe from Automation

Career advice

article

The Complete Guide to AI Training Jobs

Industry guide

smart_toy
HiredinAI

Curated AI jobs across engineering, marketing, design, research, and more — from top companies and startups, updated daily.

alternate_emailworkcode

For Job Seekers

  • Browse Jobs
  • Job Categories
  • Companies
  • Remote AI Jobs
  • Entry Level Jobs
  • AI Salaries
  • Job Alerts
  • Career Blog

For Employers

  • Post a Job
  • Pricing
  • Employer Login
  • Dashboard

Resources

  • Blog
  • AI Glossary
  • Career Advice
  • Salary Guides
  • Industry News

AI Jobs by City

  • San Francisco
  • New York
  • London
  • Seattle
  • Toronto
  • Remote

Company

  • About Us
  • Contact
  • Privacy Policy
  • Terms of Service
  • Guidelines
  • DMCA

© 2026 HiredinAI. All rights reserved.

SitemapPrivacyTermsCookies