Member of Technical Staff, Backend - NomadicML

pear-vc· NomadicML
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📍 San FranciscoFullTime

About this role

About NomadicML

Americans drive over 5 trillion miles a year, more than 500 billion of them recorded. Buried in that footage is the next frontier of machine intelligence. At NomadicML, we’re building the platform that unlocks it.

Our Vision-Language Models (VLMs) act as the new “hydraulic mining” for video, transforming raw footage into structured intelligence that powers real-world autonomy and robotics. We partner with industry leaders across self-driving, robotics, and industrial automation to mine insights from petabytes of data that were once unusable.

NomadicML was founded by Mustafa Bal and Varun Krishnan, who met at Harvard University while studying Computer Science.

  • Mustafa is a core contributor to ONNX Runtime and DeepSpeed with deep expertise in distributed systems and large-scale model training infrastructure

  • Varun is an INFORMS Wagner Prize Finalist for his research in large-scale driver navigation AI models and one of the top chess players in the US.

Our team has built mission-critical AI systems at Snowflake, Lyft, Microsoft, Amazon, and IBM Research, holds top-tier publications in VLMS and AI at conferences like CVPR, and moves with the speed and clarity of a startup obsessed with impact.

About the Role

We’re looking for a Backend / Infrastructure Engineer who thrives at the intersection of cloud systems, SDK design, and large-scale inference infrastructure.

You’ll build and scale the backbone that powers NomadicML’s video intelligence platform — from secure cloud ingestion to distributed GPU inference pipelines that run our largest foundation models. You’ll collaborate with ML researchers to productionize their models, automate deployment and scaling, and expose those capabilities through clean APIs and SDKs used by enterprises worldwide.

This role blends systems engineering, distributed compute orchestration, and developer experience. You’ll be working across cloud storage, inference scheduling, GPU clusters, and the NomadicML SDK.

What You’ll Build

  • GPU Inference Workflows: Architect pipelines to run massive multi-GPU inference jobs on foundation-scale video models, optimizing for throughput, cost, and reliability.

  • Cloud Upload Infrastructure: Build direct integrations with AWS S3, GCP Storage, and Azure Blobs to support large-scale ingest via signed URLs and resumable uploads.

  • Distributed Processing Pipelines: Design event-driven, autoscaling job systems using Kubernetes, Pub/Sub, or Ray for analyzing terabytes of video data in parallel.

  • Developer SDKs and APIs: Power the NomadicML Python SDK used for programmatic video ingestion, analysis, and search — the core tool researchers and customers rely on.

  • End-to-End Observability: Build logging, tracing, and metrics pipelines that surface GPU utilization, job latency, and per-video inference health.

  • Lightweight Frontend Integrations: Support the web app’s Cloud Integrations and Project Workflows through backend endpoints and TypeScript SDK bindings.

You Might Be a Fit If You Have

  • Deep proficiency in Python, Go, or TypeScript for backend systems.

  • Experience with AWS, GCP, or Azure (IAM, S3/Blob Storage, Batch/Compute APIs, etc.).

  • Strong understanding of GPU inference scaling, Kubernetes, container orchestration, and event-driven pipelines.

  • Prior experience designing REST/gRPC APIs, SDKs, or developer-facing infrastructure.

  • Familiarity with asynchronous job orchestration (Ray, Airflow, Dagster, Temporal).

  • A practical mindset: you take research-grade systems and make them reliable, fast, and usable.

Nice to Have

  • Experience contributing to inference orchestration frameworks or ML infra tools (e.g., DeepSpeed, Triton, Ray Serve).

  • Understanding of video encoding, chunking, and streaming formats for efficient multi-modal ingestion.

  • Basic front-end experience (React / Next.js) for integrating backend pipelines into product workflows.

  • Background in ML infrastructure, observability, or data management systems.

Frequently Asked Questions

Is the salary disclosed for the Member of Technical Staff, Backend - NomadicML position at pear-vc?
The salary for this Member of Technical Staff, Backend - NomadicML role at pear-vc is not publicly listed. Click "Apply Now" to learn more about the compensation package on their official careers page.
Where is the Member of Technical Staff, Backend - NomadicML position at pear-vc located?
This Member of Technical Staff, Backend - NomadicML role at pear-vc is based in San Francisco. The position is listed as on-site or hybrid. Check the full job description or apply directly to confirm the work arrangement.
Is the Member of Technical Staff, Backend - NomadicML role at pear-vc full-time or part-time?
This is listed as a FullTime position. It is posted as a Member of Technical Staff, Backend - NomadicML role in the NomadicML department at pear-vc.
Which team or department does the Member of Technical Staff, Backend - NomadicML at pear-vc belong to?
This Member of Technical Staff, Backend - NomadicML position is part of the NomadicML department at pear-vc. See the full job description for more information about the team structure and responsibilities.
How do I apply for the Member of Technical Staff, Backend - NomadicML position at pear-vc?
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When was the Member of Technical Staff, Backend - NomadicML job at pear-vc posted?
This Member of Technical Staff, Backend - NomadicML position at pear-vc was posted on Oct 28, 2025. Apply as soon as possible — early applications are often reviewed first.
Member of Technical Staff, Backend - NomadicML
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