We are a small, independent team of experienced engineers with a mix of skills in algorithms, software, and infrastructure. We work in a DevOps style and build cross-team solutions that support research and development of advanced perception algorithms.
Our flagship project is a unified AV dataset used to train and evaluate next-generation models. We take large volumes of multi-camera video, object labels, HD maps, and sensor data from across the organization, and turn it into a curated, high-quality training set - at scale.
We are looking for someone who brings ML and computer-vision depth to the team - someone who can help shape the intelligence layer that decides what data is worth training on.
What will your job look like:
- Work collaboratively with shared ownership. Your focus area will be the curation and ML side of our data pipeline, but you will contribute across the full stack alongside the rest of the team.
- Build and improve the curation pipeline - from vision-model embeddings and scene detection, through VLM-based scene analysis, to scoring, deduplication, and sampling that produces a balanced and diverse dataset.
- Run and optimize GPU inference at scale (embedding extraction, VLM inference) across thousands of driving sessions using workflow orchestration.
- Develop scoring and sampling strategies that ensure rare but important scenarios (night driving, adverse weather, hazardous situations) are well-represented in the final dataset.
- Work with algorithm teams to understand what data gaps hurt model performance and translate those into curation criteria.
- Build validation and diagnostics that measure dataset quality - not just pipeline health, but whether the data is actually good for training.
- Contribute to the core dataset SDK, converter, and 3D-geometry tooling (camera projection, calibration, coordinate transforms).
All you need is:
- 4+ years in data engineering or backend/software engineering with serious data work — pipelines that run in production, not just notebooks.
- Strong Python and the PyData stack (NumPy, PyArrow, Pandas, DuckDB).
- Some background in research, algorithms, or ML — enough that you can read a paper, understand a model's outputs, and have informed conversations with algorithm engineers.
- Comfort working with vision-model outputs as data: embeddings, detection results, VLM responses.
- Ability to work across team boundaries — this role lives between algorithm teams, infra teams, and our own.
- Experience with autonomous-driving datasets or perception pipelines.
- 3D geometry and camera model intuition (or the mathematical background to ramp up).
- Workflow orchestration (Argo, Airflow, Kubeflow).
- Vector databases or columnar analytics (LanceDB, DuckDB, Parquet at scale).
- Familiarity with curation concepts (active learning, hard-example mining, distribution balancing) — useful context, not a requirement.
- Exposure to LLM agents or agentic workflows for data tasks.
Skills Required
- 4+ years in data engineering or backend/software engineering with production pipelines
- Strong Python and PyData stack (NumPy, PyArrow, Pandas, DuckDB)
- Background in research, algorithms, or ML sufficient to read papers and discuss models
- Comfort working with vision-model outputs (embeddings, detection results, VLM responses)
- Experience running and optimizing GPU inference at scale
- Ability to work across algorithm, infra, and product teams
- Experience with production-grade validation and diagnostics for dataset quality
- Experience with autonomous-driving datasets or perception pipelines
- 3D geometry and camera model intuition or mathematical background to learn quickly
- Workflow orchestration experience (Argo, Airflow, Kubeflow)
- Experience with vector databases or columnar analytics (LanceDB, DuckDB, Parquet at scale)
- Familiarity with curation concepts (active learning, hard-example mining, distribution balancing)
- Exposure to LLM agents or agentic workflows for data tasks
What We Do
Mobileye is leading the mobility revolution with its autonomous-driving and driver-assistance technologies, harnessing world-renowned expertise in computer vision, machine learning, mapping, and data analysis. Founded in 1999, Mobileye has pioneered such groundbreaking technologies as REM™ crowdsourced mapping, True Redundancy™ sensing, and the RSS™ safety model. These technologies are driving the ADAS and AV fields towards the future of mobility – enabling self-driving vehicles and mobility solutions, powering industry-leading advanced driver-assistance systems and delivering valuable intelligence to optimize mobility infrastructure. Mobileye technology is used in over 170 million vehicles worldwide. In 2022, Mobileye became an independent company while still being majority-owned by Intel. Mobileye’s headquarters and R&D center are based in Jerusalem, with additional offices across Israel and around the world.
Why Work With Us
Our technology enables self-driving vehicles and mobility solutions, powers industry-leading advanced driver assistance systems, and delivers valuable intelligence to optimize mobility infrastructure.
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