Full-Time

CV/ML Engineer

Confirmed live in the last 24 hours

Arena Club

Arena Club

11-50 employees

Transforms physical collectibles into digital assets

Crypto & Web3
Consumer Goods

Senior

Los Angeles, CA, USA

Category
Applied Machine Learning
Computer Vision
AI & Machine Learning
Required Skills
Microsoft Azure
Python
Data Science
Tensorflow
Pytorch
Docker
AWS
OpenCV
Computer Vision
Databricks
Google Cloud Platform
Requirements
  • 5+ years of experience in machine learning, data science, or related fields
  • 2+ years of experience with Computer Vision
  • Strong programming skills in Python or other relevant languages
  • Experience in dockerizing ML pipelines
  • In-depth knowledge of machine learning algorithms and techniques
  • Familiarity with popular machine learning frameworks, such as TensorFlow or PyTorch
  • Experience building machine learning pipelines on cloud platforms (AWS, GCP, Azure, Databricks)
  • Basic knowledge and experience with OpenCV
  • Strong problem-solving skills and the ability to think critically and creatively
  • Experience working at a startup
  • Experience with MLFlow
  • Experience building and testing large-scale models using OpenCV
  • Ability to work effectively in a remote team environment and collaborate with engineers across various time zones
Responsibilities
  • Design, prototype, implement, evaluate, optimize, and monitor machine learning algorithms and software that can identify data points on trading cards.
  • Build and maintain production ML pipelines on AWS
  • Migrate ML pipelines from on-premise machine to AWS
  • Build, test, deploy, and maintain production systems
  • Maintain and promote best practices for software development, including deployment processes, documentation, and coding standards
  • Contribute to technical and product discussions, and share knowledge and ideas with colleagues across the company

Arena Club operates in the collectibles market, focusing on transforming physical items like trading cards and sports memorabilia into digital assets. The company creates digital representations of these collectibles, allowing users to trade, sell, or showcase them on their platform. This process provides a secure way for collectors to manage their items, reducing the risk of physical damage or loss. Arena Club differentiates itself from competitors by offering a platform that not only facilitates transactions but also includes premium services such as enhanced security features and valuation services. The goal of Arena Club is to enhance the collecting experience by bridging the gap between physical and digital assets, catering to collectors, enthusiasts, and investors.

Company Stage

Series A

Total Funding

$9.7M

Headquarters

Los Angeles, California

Founded

2021

Growth & Insights
Headcount

6 month growth

22%

1 year growth

83%

2 year growth

135%
Simplify Jobs

Simplify's Take

What believers are saying

  • The recent $10MM Series A funding round provides significant capital for growth and platform enhancements.
  • Arena Club's innovative approach to digital collectibles could attract a large user base, driving transaction volume and revenue.
  • The involvement of high-profile figures like Derek Jeter can boost brand recognition and credibility in the market.

What critics are saying

  • The niche market of digital collectibles may limit Arena Club's user base and revenue potential.
  • Reliance on AI for grading could face skepticism from traditional collectors who prefer established methods.

What makes Arena Club unique

  • Arena Club uniquely bridges the gap between physical and digital collectibles, offering a secure platform for trading and showcasing valuable items.
  • The use of Artificial Intelligence for grading collectibles sets Arena Club apart from traditional grading methods, providing more accurate and efficient evaluations.
  • Backed by high-profile investors like Derek Jeter and venture capital firms such as M13 and Lightspeed Ventures, Arena Club benefits from strong financial and strategic support.

Help us improve and share your feedback! Did you find this helpful?