Full-Time

Software Tech Lead

Simulation

Confirmed live in the last 24 hours

Wayve

Wayve

201-500 employees

Develops embodied AI for autonomous vehicles

Automotive & Transportation
AI & Machine Learning

Senior

Sunnyvale, CA, USA

Hybrid working policy requires time in the office in Sunnyvale.

Category
Backend Engineering
Embedded Engineering
Software Engineering
Required Skills
Microsoft Azure
Python
AWS
C/C++
Google Cloud Platform
Requirements
  • Domain experience in simulation, motion planning, localization, controls, modern machine learned graphics techniques (NeRF, Gaussian Splatting, or GenAI) or other areas of robotics
  • Good development skills in Python and C++, including modern C++ (11, 14, 17, 20)
  • Good sense of systems and data oriented software engineering design - what makes code reusable and extensible
  • Understanding of common software performance issues and design tradeoffs
  • 5+ years of industry experience designing and programming software
  • Excellent communication and people engagement skills
  • Experience in the field of autonomous vehicles
  • Experience with simulating / modelling the dynamics of vehicles and robots.
  • Experience with simulating / modelling real sensors (lidar, radar, gnss, etc...), including modelling noise
  • Experience implementing modern machine learned graphics techniques (NeRF, Gaussian Splatting, or GenAI)
  • Experience with rigid body simulation
  • Experience with design, implementation, and optimization of large-scale machine learning inference systems running in cloud GPU environments
  • Experience with cloud infrastructure (AWS, Azure and/or GCP).
Responsibilities
  • Own key performance indicators (KPIs) for simulator realism, reproducibility, and/or cost
  • Work cross-company on aligning technical dependencies for simulator implementation
  • Lead technical discussions and guide technical direction
  • Effectively integrate the components of the simulated robot into the simulation platform
  • Effectively integrate machine-learned graphics subsystems into the simulation platform
  • Implement production quality software in C++ and Python

Wayve.ai develops self-driving technology known as AV2.0, which focuses on creating a smarter and safer approach to autonomous vehicles. Their technology uses embodied AI software, allowing vehicles to learn from their experiences and adapt to different environments without needing detailed programming. This method is different from traditional self-driving technologies that often rely on expensive hardware and pre-mapped data. Instead, Wayve.ai employs end-to-end deep learning, making their solution more cost-effective for automakers. The company targets automakers and fleet operators, providing them with adaptable and affordable solutions for driving automation. Wayve.ai aims to enhance mobility by partnering with companies like Ocado Group and Asda to test their technology in real-world delivery scenarios.

Company Stage

Series C

Total Funding

$1.3B

Headquarters

London, United Kingdom

Founded

2017

Growth & Insights
Headcount

6 month growth

23%

1 year growth

67%

2 year growth

126%
Simplify Jobs

Simplify's Take

What believers are saying

  • Partnership with Uber enhances market reach and credibility for Wayve's technology.
  • Expansion into the U.S. market offers insights from diverse urban environments.
  • Strategic investment from SoftBank boosts financial resources for R&D and expansion.

What critics are saying

  • Increased competition in San Francisco could dilute Wayve's market presence.
  • Dependency on Uber partnership may pose risks if expectations aren't met.
  • Rapid tech advancements could render Wayve's technology obsolete if not updated.

What makes Wayve unique

  • Wayve uses embodied AI, enabling vehicles to learn and adapt without explicit programming.
  • Their AV2.0 technology eliminates the need for costly robotic stacks and complex mapping.
  • Wayve's GAIA-1 model enhances AI adaptability and learning in autonomous vehicle development.

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