Avatar for mozee
Inventing a new kind of freedom
  • Early Stage
    Startup in initial stages

Machine Learning Engineer

  • $125k – $170k
  • Remote • 
  • 3 years of exp
  • Full Time
Reposted: 1 year ago
Visa Sponsorship

Not Available

Remote Work Policy

Onsite or remote

Hires remotely in
RelocationAllowed
Skills
Python
TensorFlow
PyTorch

About the job

The Role:

ML is of critical importance to Mozee's mission. It is safer, makes our rides more enjoyable, and will ultimately deliver on the promise of self-driving robo taxis. As a member of Mozee's AI Simulation team, you will be in a unique position to accelerate the pace at which our AI improves over time. The main ways in which the simulation team realizes this include:
Building tools that enable our software developers to perform virtual test drives instead of real ones.
Testing all code changes and software releases for regressive behavior.
Generating synthetic data sets and reinforcement learning pipelines for neural network training.

As an Machine Learning Engineer at mozze, you will contribute to the development of mozze's simulation by enabling and accelerating the creation of photo realistic 3D scenes through neural rendering, neural animation, scene/object reconstruction. More broadly we are looking for experts in these fields:

Neural rendering

Neural animation
Object reconstruction
Environment reconstruction
Scenario reconstruction

Requirements:
Expert level Python Skills
The team operates in a production setting. An ideal candidate has strong software engineering practices and is very comfortable with Python programming, debugging/profiling, and version control.

We train neural networks on a cluster in large-scale distributed settings. An ideal candidate is very comfortable in cluster environments and understands the related computer systems concepts (CPU/GPU interactions/transfers, latency/throughput bottlenecks during training of neural networks, CUDA, pipelining/multiprocessing, etc).

We are at the cutting edge of deep learning applications. The ideal candidate has a strong understanding of the under the hood fundamentals of deep learning (layer details, backpropagation, etc). Additional requirements include the ability to read and implement related academic literature and experience in applying state of the art deep learning models to computer vision (e.g. segmentation, detection) or a closely related area (speech, NLP).

Experience with PyTorch, or at least another major deep learning framework such as TensorFlow, MXNet.

Some experience with data science tools including Python scripting, numpy, scipy, matplotlib, scikit-learn, jupyter notebooks, bash scripting, Linux environment.

About Mozee
Mozee is on a mission to develop the first fully autonomous vehicle fleet and the ecosystem needed to bring this technology to market. As a company at the intersection of robotics, machine learning, and design, we aim to provide innovative mobility-as-a-service in urban environments. We are seeking top talent who are passionate about what we do and want to be part of a dynamic and highly-focused team.

About the company

mozee company logo
Inventing a new kind of freedom11-50 Employees
Company Size
11-50
Company Type
Transportation
Company Industries
Artificial Intelligence / Machine Learning
  • Early Stage
    Startup in initial stages
Learn more about mozee image

Funding

AMOUNT RAISED
$15M
FUNDED OVER
1 round
Round
S
$15,000,000
Seed - Mar 2023

Founders

Shawn Taikratoke
Founder • 3 years
Dallas
image
View the team image

Similar Jobs

Everlance company logo
Everlance
(1) Automatic mileage & expense tracking (2) Powering the future of work
MOLTEN Cloud company logo
MOLTEN Cloud
Multi-cloud SaaS arming digital rights holders with better operations to manage & monetize content
Thoughtful AI company logo
Thoughtful AI
AI-Powered Healthcare Administration, maximizing profitability and operational excellence
Kwil company logo
Kwil
Kwil is a decentralized SQL database for data-intensive dApps and protocols
Spero Institute company logo
Spero Institute
Optimizing virtual intensive mental healthcare