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Senior Machine Learning Engineer

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Kinetic Automation Inc.

Costa Mesa, CA (In Person)

Full-Time

Posted 4 days ago (Updated 14 hours ago) • Actively hiring

Expires 6/13/2026

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Job Description

Senior Machine Learning Engineer Kinetic Automation Inc. Costa Mesa, CA Job Details Full-time 17 hours ago Benefits Paid holidays Health insurance Dental insurance Paid time off Retirement plan Qualifications PyTorch Computer vision Outlier detection Object detection Model training Machine learning libraries AI Model evaluation Machine learning frameworks Debugging Full Job Description About Kinetic Kinetic Automation is building a network of automated repair centers for modern vehicles. The auto industry is transitioning from mechanically complex vehicles to mechanically simple ones with complex software and technology. Kinetic aims to be the primary infrastructure-as-a-service for servicing future vehicles with our robotic repair centers, powered by our proprietary software and AI. We are a strong team of experienced robotics + automotive + shared mobility enthusiasts who have worked in self-driving, mapping, lidar, motorsport, and ride-sharing. We are a venture backed startup (Series B) with a clear go-to-market strategy and meaningful revenue. About the role You will be a part of a small, production-minded ML team based in Orange County/Oakland. You'll collaborate with other engineers and researchers to develop, evaluate, and help deploy vision models for tasks like semantic/instance segmentation and object/damage detection across 2D and 3D data. Experience & Skills Required Deep ML /
CV Fundamentals:
You need hands-on experience training and evaluating deep models for segmentation and detection (PyTorch). You must understand how Transformer/LLM building blocks map to vision (ViT/DETR/Mask2Former) and have practical exposure to 2D/3D data, point clouds, and camera geometry Curiosity & Strict Attention to
Detail:
You are obsessed with corner cases. You have a sharp eye for data anomalies, run rigorous ablations, keep meticulous experiment logs, and can clearly communicate trade-offs
AI-Empowered, Not AI-Dependent:
We strongly encourage leveraging AI tools (Copilot, ChatGPT, Claude) to maximize your efficiency. However, you must 100% understand the underlying details of the code you ship. We are looking for strong independent thinkers and debuggers, not someone who simply passes along AI outputs without deep comprehension Working knowledge of transformer and LLM building blocks applied to vision, including self-attention, positional encodings, tokenization, and mapping these ideas to vision models (e.g., ViT, DETR, Mask2Former) Practical exposure to 3D/depth data, including familiarity with point clouds, camera geometry (intrinsics/extrinsics), basic calibration, and multi-view geometry Proficiency in Python and the relevant tech stack: PyTorch, torchvision, Detectron2 or MMDetection/Segmentation, and Hugging Face Transformers Experience with Python services (FastAPI/Flask), Docker, and AWS services (S3, Batch/EC2, ECR) is preferred. Strong communication skills with the ability to write tidy PRs, experiment logs, and short design notes to ensure reproducibility
Responsibilities The Work:
Implement training loops, curate datasets, drive high-priority experiments, and partner with cross-functional teams to close feedback loops from edge cases
The Stack:
PyTorch, Detectron2 / MMDetection / Segmentation, Hugging Face Transformers, Python (FastAPI), Docker, AWS Collaborate on model development by implementing training loops, losses, augmentations, and evaluations using PyTorch Keep current with the industry by summarizing relevant papers and PRs, and proposing small, testable improvements Contribute to datasets by helping define labeling guidelines, curating splits, running quality checks, and maintaining data versioning Run experiments to track metrics, perform ablations, write clear experiment notes, and present findings. Provide production support by exporting models, writing basic inference code, adding tests, and assisting with performance profiling Work cross-functionally, partnering with backend engineers on APIs, containers, and CI, and with ops/labeling teams on edge cases and feedback loops Benefits Competitive salary and equity package Comprehensive health and dental insurance Retirement savings plan. Paid time off and holidays Kinetic is an equal opportunity employer. We celebrate diversity and are committed to creating an inclusive environment for all employees. We do not discriminate based on race, color, religion, gender, gender expression, age, national origin, disability, marital status, sexual orientation, military status, or any protected attribute. We encourage qualified candidates from all backgrounds to apply and join us in our mission. If you require accommodation at any stage of the application process due to a disability, please let us know.

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