Senior ML Infrastructure Engineer

Posted 2 Days Ago
New York City, NY, USA
In-Office
Senior level
Artificial Intelligence • Software • Analytics • Business Intelligence • Industrial • Generative AI
Building the AI operating system for the trades.
The Role
Design, build, and operate an internal ML platform: CLI/SDK/frontend services, IaC integrations for compute/storage/serving, observability and cost tooling, model registry/feature store management, and developer-facing APIs to accelerate ML experiment-to-production workflows.
Summary Generated by Built In
Senior ML Infrastructure Engineer

Background

Rebar is building the next-generation operating system for commercial HVAC, electrical, and plumbing suppliers and subcontractors. Over the past year, our V1 quoting product has scaled to thousands of quotes completed weekly, doubled revenue in 2026, and gained adoption across many of the top suppliers in North America. Fresh off a $14M Series A backed by leading construction tech investors, we're entering our next phase of growth — with AI at the center of everything we build next.

We're looking for a Senior ML Infrastructure Engineer to build the platform our ML engineers depend on to rapidly iterate, experiment, and ship models — spanning feature pipelines, training infrastructure, evaluation, deployment, and monitoring. You'll be joining a small, highly capable team focused on delivering practical, production-ready ML systems in a fast-moving startup context.

This role is ideal for someone who enjoys designing clean abstractions, integrating disparate systems into coherent platforms, and obsessing over the developer experience of the engineers they support. Our work spans the full ML lifecycle, and we're building the platform that makes it all hang together.

Responsibilities

Platform & Developer Experience: Design and build the CLI, SDK, and services that serve as the single front door to our ML platform. Make launching a training job, tracking an experiment, or shipping a model feel like one coherent product.

Infrastructure Integration: Wire together our cloud and SaaS stack — compute providers, storage, experiment tracking, model serving — into a unified system, codified as version-controlled infrastructure-as-code. Own the abstractions for compute orchestration, feature store, model registry, and model deployment.

Observability & Operations: Build cost attribution, usage dashboards, and monitoring across the platform. Surface what's running where, catch problems early, and keep production model serving — across detection, segmentation, recognition, and LLM/VLM workloads — reliable and cost-efficient at scale.

Collaboration and Roadmap: Work closely with ML engineers to understand their workflows, turn one-off scripts into self-serve platform features, and participate in architecture and roadmap decisions.

What We're Looking For

You should feel confident designing developer-facing APIs and SDKs, integrating disparate cloud and SaaS services into coherent systems, and obsessing over the experience of the engineers who use what you build.

We're seeking someone with strong platform-engineering instincts who enjoys turning fragmented workflows into products teams actually want to use. This role is a great fit if you have taste in abstractions, opinions about developer experience, and a track record of making ML or data teams meaningfully more productive.

Required Qualifications
  • Bachelor's degree or higher in Computer Science, Electrical Engineering, or other relevant field — or equivalent industry experience.

  • 3+ years of experience building production backend systems, with significant time on internal developer platforms, ML platforms, or integration-heavy infrastructure work.

  • Expert-level Python; comfortable picking up other languages as the tooling demands.

  • 2+ years of experience with cloud infrastructure (AWS preferred), including IAM, networking, and cost management.

  • Proficiency with infrastructure-as-code (IaC) tooling such as Terraform, AWS CDK, or Pulumi for managing reproducible, version-controlled cloud environments.

  • Hands-on experience with managed ML inference and serving platforms such as AWS SageMaker and GCP Vertex AI.

  • A proven track record operating inference at large scale across a range of model types — detection, segmentation, recognition, and LLM/VLM workloads.

  • Experience managing a model zoo / model registry — versioning, promotion, and governance of models from experiment to production.

  • Proven ability to design clean, composable APIs and SDKs that internal users adopt willingly.

  • Deep understanding of ML related workflows and requirements.

Nice to Have
  • Experience integrating common ML tooling — experiment trackers (W&B, MLflow), feature stores, model serving frameworks — into broader platforms.

  • Experience with DAG / workflow orchestration frameworks such as Temporal, Prefect, or Apache Airflow.

  • Built a Backstage-style internal developer portal or comparable internal platform.

  • Familiarity with GPU compute providers (AWS, Lambda Labs, CoreWeave, RunPod).

  • Some ML practitioner background — you've trained or deployed models yourself and understand the workflow from the user's side.

  • Experience with deployment and monitoring pipelines for ML systems.

Compensation and Benefits
  • Salary: Competitive

  • Equity: Meaningful equity package, commensurate with experience

  • Benefits: Comprehensive medical, dental, and vision coverage

  • Perks: Free lunches and dinners provided

This is a salaried, onsite role located in New York City's beautiful Flatiron district, just minutes away from Madison Square Park and Union Square. Working onsite offers invaluable opportunities for real-time collaboration, creative problem-solving, and building strong connections within our talented and dynamic team. You'll be at the heart of our fast-paced operations, actively contributing to a culture that values engagement, growth, and teamwork.

Skills Required

  • Bachelor's degree in Computer Science, Electrical Engineering, or equivalent industry experience.
  • 3+ years building production backend systems, with significant work on internal developer or ML platforms.
  • Expert-level Python.
  • 2+ years with cloud infrastructure (AWS preferred), including IAM, networking, and cost management.
  • Proficiency with infrastructure-as-code tooling such as Terraform, AWS CDK, or Pulumi.
  • Hands-on experience with managed ML inference and serving platforms such as AWS SageMaker and GCP Vertex AI.
  • Proven track record operating inference at large scale across detection, segmentation, recognition, and LLM/VLM workloads.
  • Experience managing a model zoo / model registry including versioning, promotion, and governance from experiment to production.
  • Proven ability to design clean, composable APIs and SDKs for internal users.
  • Deep understanding of ML-related workflows and requirements.

Rebar Compensation & Benefits Highlights

The following summarizes recurring compensation and benefits themes identified from responses generated by popular LLMs to common candidate questions about Rebar and has not been reviewed or approved by Rebar.

  • Healthcare Strength Health, dental, and vision insurance are described as fully covered by the employer, indicating strong core medical support.
  • Wellbeing & Lifestyle Benefits Office lunches and dinners plus covered late‑night rides reduce daily costs and support employees during longer in‑office days.
  • Equity Value & Accessibility Several roles explicitly include a meaningful equity grant alongside salary, signaling real ownership opportunities for hires.

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The Company
HQ: New York, New York
26 Employees
Year Founded: 2024

What We Do

Rebar is building the AI operating system for HVAC, plumbing, and electrical trades. Starting with takeoffs and expanding into spec review, submittals, and bid management.

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