Senior Machine Learning Engineer (Auto Labeling)42dot • Mountain View, California, United States
Senior Machine Learning Engineer (Auto Labeling)
42dot
- Mountain View, California, United States
- Mountain View, California, United States
About
Active Learning : Our team explores techniques for efficiently selecting and labeling informative data points, minimizing labeling efforts while enhancing model performance.
Network Architecture Search : We investigate methods for autonomously discovering optimal neural network architectures, specifically tailored for label generation from sensor and video data in autonomous driving contexts.
Transfer/Low-shot/Long-tail Learning : Our efforts include developing strategies to leverage knowledge from related tasks or domains, addressing scenarios with limited labeled data (low-shot learning), and handling class distribution imbalances (long-tail learning) commonly found in autonomous driving datasets.
Efficient Learning and Inference : We optimize learning algorithms and inference processes to ensure resource-efficient utilization, crucial for real-time deployment in autonomous driving systems.
Privacy : Our team prioritizes the development of privacy-preserving techniques, ensuring the handling of sensitive data while maintaining high-performance label generation, in compliance with privacy regulations and safeguarding user information.
Qualifications Master’s or Ph.D. in Computer Science, Electrical Engineering, Mathematics, Statistics, or a closely related field with relevance to machine learning.
At least 7 years of hands-on experience in developing machine learning models and pipelines.
Deep knowledge of Linear Algebra, Probability, Signal Processing, and machine learning fundamentals.
Advanced programming skills in C/C++, Python, and related libraries/frameworks (e.g., PyTorch, TensorFlow).
Preferred Qualifications Extensive experience in autonomous driving or robotics applications, especially in Object Detection , Semantic Segmentation , Depth Estimation , and Transformer-based models .
Expertise in designing and implementing automated learning pipelines for large-scale systems.
Strong research background with publications in top-tier conferences/journals (e.g., CVPR, ICCV, ECCV, NeurIPS, ICLR, AAAI).
Proven ability to handle large-scale datasets and innovate solutions for rare and challenging edge cases.
Passion for problem discovery and creative problem-solving in the field of autonomous systems.
Interview Process Application Review - Coding Test - 1st Interview - 2nd Interview - 3rd Interview - Offer
The process may vary by position and is subject to change
Schedule and results will be communicated via the email provided in your application
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Languages
- English
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