Full-Time

Machine Learning Engineer

Auto Labeling

Updated on 12/20/2024

42dot

42dot

201-500 employees

Integrated platform for urban transportation management

Data & Analytics
Automotive & Transportation
Government & Public Sector

Senior

Mountain View, CA, USA

Hybrid position requiring in-office presence.

Category
Applied Machine Learning
Computer Vision
AI & Machine Learning
Required Skills
Python
C/C++
Requirements
  • Minimum of 5 years of relevant experience
  • Master's or Ph.D. degree in Computer Science, Electrical Engineering, Mathematics, Statistics, or a related field relevant to machine learning, or equivalent experience
  • Strong background in Linear Algebra, Probability, Signal Processing, and machine learning concepts
  • Proficient programming skills in languages such as C/C++, Python, and others
Responsibilities
  • We focus on curating high-quality datasets tailored to autonomous driving scenarios and designing robust evaluation metrics to accurately assess algorithm performance.
  • Our team explores techniques for efficiently selecting and labeling informative data points, minimizing labeling efforts while enhancing model performance.
  • We investigate methods for autonomously discovering optimal neural network architectures, specifically tailored for label generation from sensor and video data in autonomous driving contexts.
  • 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.
  • We optimize learning algorithms and inference processes to ensure resource-efficient utilization, crucial for real-time deployment in autonomous driving systems.
  • 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.

42dot.ai operates in the smart mobility and urban transportation sector, offering an integrated platform called UMOS (Urban Mobility Operating System). This platform connects various modes of transportation, such as cars and drones, into a unified system to enhance transportation management and logistics. UMOS uses advanced technologies to provide services like demand response and smart material logistics, making it easier for cities to optimize their transportation networks. Unlike its competitors, 42dot.ai focuses on creating a comprehensive solution that integrates multiple transportation modes, which helps city governments, transportation agencies, and private companies improve efficiency and reduce costs. The company's goal is to transform urban mobility and contribute to the development of smart cities by providing a subscription-based service that adapts to the needs of its clients.

Company Stage

Growth Equity (Non-Venture Capital)

Total Funding

$123.9M

Headquarters

Seoul, South Korea

Founded

2019

Growth & Insights
Headcount

6 month growth

11%

1 year growth

11%

2 year growth

11%
Simplify Jobs

Simplify's Take

What believers are saying

  • Hyundai and Kia's $185 million investment boosts 42dot's talent acquisition and development.
  • The global MaaS market is projected to grow at a 25% CAGR from 2023 to 2030.
  • 5G technology enhances communication for autonomous driving, benefiting 42dot's platform.

What critics are saying

  • Tech giants like Google and Amazon pose competition in mobility services.
  • Rapid advancements by companies like NVIDIA may outpace 42dot's technology.
  • Hyundai's focus on SDVs may divert resources from 42dot's core technologies.

What makes 42dot unique

  • 42dot's UMOS platform integrates multiple transportation modes into a single cohesive system.
  • The company focuses on smart city infrastructure, enhancing urban mobility and efficiency.
  • 42dot collaborates with Samsung to develop AI-powered software-defined vehicle platforms.

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