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Machine Learning Infrastructure Engineer

Asteralabs
Full Timeentry
San Jose, California, United StatesPosted 3 days ago

Role Overview

Asteralabs is hiring a entry-level Machine Learning Infrastructure Engineer. This is a full-time role in San Jose, California. Part of Asteralabs's Data Science hiring, posted 3 days ago. Full responsibilities, required qualifications, and the apply link are listed in the description below.

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PythonAWSGCPTelemetryORTriageCompensationAstera

Job description

Astera Labs (NASDAQ: ALAB) provides rack-scale AI infrastructure through purpose-built connectivity solutions. By collaborating with hyperscalers and ecosystem partners, Astera Labs enables organizations to unlock the full potential of modern AI. Astera Labs’ Intelligent Connectivity Platform integrates CXL®, Ethernet, NVLink, PCIe®, and UALink™ semiconductor-based technologies with the company’s COSMOS software suite to unify diverse components into cohesive, flexible systems that deliver end-to-end scale-up, and scale-out connectivity. The company’s custom connectivity solutions business complements its standards-based portfolio, enabling customers to deploy tailored architectures to meet their unique infrastructure requirements. Discover more at www.asteralabs.com.

 

Machine Learning Infrastructure Engineer

Location: San Jose, CA
Experience: 1–5 years
Team: Applied AI

The role

We’re hiring a Machine Learning Infrastructure Engineer to build the runtime, platform, and operational backbone for modern AI systems. This role is for someone who wants to work on the systems behind the systems: model access layers, routing, serving paths, telemetry, observability, evaluation infrastructure, and the controls needed to make fast-moving AI work reliable in practice.

 

This is a platform role, but not in the old sense. The work is tightly coupled to how modern AI systems are actually built and used: multiple model providers, agent runtimes, skill and tool layers, inference telemetry, cost-aware routing, AI spend visibility, and governance that is strong enough for real internal adoption.

 

What you’ll do

  • Build and improve internal AI infrastructure for LLM applications, agents, retrieval systems, and model-backed engineering workflows.
  • Own inference deployment paths across managed and self-serve environments, including access control, monitoring, and operational reliability.
  • Build platform layers such as model gateways, routing, runtime integrations, telemetry, and controls for safe execution at scale.
  • Develop AI Ops capabilities across evaluation, release readiness, observability, incident triage, regression detection, and cost monitoring.
  • Build dashboards, tracing, logging, and alerting for production AI systems, including spend and usage visibility across tools and teams.
  • Improve performance and unit economics through routing, caching, batching, failover, and latency/cost optimization.
  • Create reusable APIs, SDKs, and platform abstractions that make AI systems easier to deploy, evaluate, govern, and operate.

What we’re looking for

  • 1–5 years of experience in software engineering, ML infrastructure, MLOps, platform engineering, or related backend/infrastructure roles.
  • Strong Python plus strong systems instincts.
  • Experience with AWS or GCP and real production service ownership.
  • Familiarity with inference deployments, model APIs, gateways, serving systems, or runtime infrastructure for LLM/ML workloads.
  • Experience with observability, telemetry, reliability engineering, and incident response.
  • Understanding of eval systems, release workflows, retrieval-backed systems, and debugging non-deterministic AI behavior.
  • Ability to translate messy platform needs into scalable internal infrastructure.

What strong candidates often look like

They have built or operated systems where latency, routing, cost, telemetry, and reliability actually matter. They understand that modern AI infrastructure is not just about getting a model endpoint running. It is about building the runtime, visibility, controls, and developer experience that let an applied AI team move fast without losing quality or trust.

 

Why this role is interesting

The team is building AI-ready infrastructure in the most literal sense: observability, access control, AI spend tracking, secure managed platforms, skill/tool infrastructure, and telemetry that spans requests, tools, models, and outcomes. If you want to work on the platform layer that makes modern agentic systems possible — and do it in a setting where the downstream users are serious engineers with high expectations — this is that role.

 

The base pay compensation range for this role is between $140,000 - $165,000

We know that creativity and innovation happen more often when teams include diverse ideas, backgrounds, and experiences, and we actively encourage everyone with relevant experience to apply, including people of color, LGBTQ+ and non-binary people, veterans, parents, and individuals with disabilities.

About Asteralabs

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Asteralabs

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Frequently Asked Questions

How do I apply for the Machine Learning Infrastructure Engineer position at Asteralabs?

Use the Apply button above to submit your application directly to Asteralabs. Most applications take less than 5 minutes if your resume and contact details are ready, and you'll be routed to the employer's official application system to finish.

Where is the Machine Learning Infrastructure Engineer position at Asteralabs located?

This position is based in San Jose, California. Asteralabs has not indicated remote or hybrid options for this role, so candidates should plan for on-site work.

What does a Machine Learning Infrastructure Engineer at Asteralabs earn?

Asteralabs has not disclosed a salary range in this posting. Many employers share specifics later in the interview process; you can also ask during a recruiter screen if compensation transparency is important to you.

When was the Machine Learning Infrastructure Engineer role at Asteralabs posted?

This role was posted on July 8, 2026 (3 days ago). It's still listed as actively hiring; we re-confirm openings against the source system multiple times per day and remove closed roles.

Is the Machine Learning Infrastructure Engineer role at Asteralabs entry-level?

Yes. This is an entry-level position. Strong candidates typically have 0-2 years of relevant work experience, internships, or significant project work. Read the full description for any specific qualification requirements Asteralabs has listed.

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