T
Talent@ Beta
Modal

Member of Technical Staff - ML Training Systems

Modal · Series B · Website

Role Details

Location
New York
Salary (est. USD)
~$180K - $280K (est. USD)

Estimated based on role seniority, company stage (Series B), and industry benchmarks. Actual compensation may vary.

How is this calculated?
Seniority band Staff / Principal
Base range $180K – $280K

Based on Web3 & AI industry compensation data. Seniority is inferred from role title keywords. Company stage affects ranges: early-stage (−15%), late-stage/public (+10%).

Department
Engineering
Type
Full-time
Vertical
AI
Posted
1 week ago

Job Description

About Us:

Modal provides the infrastructure foundation for AI teams. With instant GPU access, sub-second container startups, and native storage, Modal makes it simple to train models, run batch jobs, and serve low-latency inference. We have thousands of customers who rely on us for production AI workloads, including Lovable, Scale AI, Substack, and Suno.

We're a fast-growing team based out of NYC, SF, and Stockholm. We've hit 9-figure ARR and recently raised a Series B at a $1.1B valuation. Our investors include Lux Capital, Redpoint Ventures, Amplify Partners, and Elad Gil.

Working at Modal means joining one of the fastest-growing AI infrastructure organizations at an early stage, with many opportunities to grow within the company. Our team includes creators of popular open-source projects (e.g. Seaborn, Luigi), academic researchers, international olympiad medalists, and experienced engineering and product leaders with decades of experience.

The Role:

We are looking for strong engineers with experience training production machine learning models. If you are interested in contributing to open-source projects and evolving Modal's infrastructure to train the next generation of language models, we'd love to hear from you!

Requirements:

  • 5+ years of experience writing high-quality, high-performance code.

  • Experience working with torch and high-level training frameworks (Huggingface, verl, slime)

  • Experience with ML training optimization (tell us a story about eliminating data loading bottlenecks, overlapping communications with compute, rewriting a trainer to handle off-policy rollouts, etc.)

  • Nice-to-have: familiarity with low-level operating system foundations (Linux kernel, file systems, containers, etc).

  • Ability to work in-person, in our NYC or San Francisco office.

About Modal

Serverless cloud infrastructure for AI/ML workloads.

View company profile

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