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Full-Time

Machine Learning Engineer

Confirmed live in the last 24 hours

Zelus Analytics

Zelus Analytics

51-200 employees

Provides advanced data analysis for sports teams

Data & Analytics
Consumer Software
Enterprise Software

Compensation Overview

$75k - $150kAnnually

+ Annual Incentive Bonus + Equity

Entry, Junior, Mid, Senior

Remote in USA

Category
Applied Machine Learning
AI & Machine Learning
Required Skills
Python
Data Science
R
SQL
Scala
Linux/Unix
Data Analysis
Requirements
  • Develop, validate, and automate quantitative models using statistics, machine learning, optimization, and simulation
  • Develop, schedule, monitor, and maintain model training and prediction workflows
  • Coordinate with broader engineering team to plan and implement changes to core infrastructure to support one or more sports
  • Collaborate with data scientists to define and manage model productionalization and platform release plans
  • Deploy REST APIs on top of fitted models using distributed computation to support real-time, client-facing integration
  • Collaborate and communicate effectively in a distributed work environment
  • Fulfill other related duties and responsibilities, including rotating platform support
  • Research, design, and test cloud-based computational environments to support quantitative modeling at scale
  • Collaborate with product and data science leads to define and manage implementation, validation, deployment, and release plans/logistics for our sports intelligence platforms
  • Break down complex engineering projects into actionable work plans including proposed task assignments for one to four engineers and data scientists
  • Provide guidance and technical mentorship for junior engineers
  • Assist with recruiting and outreach for the engineering team, including building a diverse network of future candidates
  • Academic and/or industry experience in back-end software design and development
  • Academic, industry, and/or research experience with applied mathematical and predictive modeling (statistics, machine learning, optimization, and/or simulation)
  • Experience with cloud infrastructure and distributed computing
  • Fluency with Python (preferred), R, Scala, and/or other data-oriented and statistical programming languages
  • Experience with relational databases and SQL development
  • Familiarity working with Linux servers in a virtualized/distributed environment
  • Strong software-engineering and problem-solving skills
  • Expertise designing, developing, and optimizing the cloud infrastructure for large-scale, cloud-based analytics systems
  • Experience with task orchestration and workflow automation tools (Airflow preferred)
  • Experience adapting, retraining, and retooling in a rapidly changing technology environment
  • Desire and ability to successfully mentor junior engineers
Responsibilities
  • Develop, validate, and automate quantitative models using statistics, machine learning, optimization, and simulation
  • Develop, schedule, monitor, and maintain model training and prediction workflows
  • Coordinate with broader engineering team to plan and implement changes to core infrastructure to support one or more sports
  • Collaborate with data scientists to define and manage model productionalization and platform release plans
  • Deploy REST APIs on top of fitted models using distributed computation to support real-time, client-facing integration
  • Collaborate and communicate effectively in a distributed work environment
  • Fulfill other related duties and responsibilities, including rotating platform support
  • Research, design, and test cloud-based computational environments to support quantitative modeling at scale
  • Collaborate with product and data science leads to define and manage implementation, validation, deployment, and release plans/logistics for our sports intelligence platforms
  • Break down complex engineering projects into actionable work plans including proposed task assignments for one to four engineers and data scientists
  • Provide guidance and technical mentorship for junior engineers
  • Assist with recruiting and outreach for the engineering team, including building a diverse network of future candidates

Zelus Analytics provides advanced data analysis solutions specifically designed for professional sports teams. Their platform helps teams manage and interpret complex data sources, allowing them to make informed decisions that can lead to improved performance and success in competitions. Unlike many competitors, Zelus Analytics focuses solely on the sports analytics market, leveraging the extensive experience of its team members, who have backgrounds in both sports and business, including leadership roles in organizations like the Dodgers and A.S. Roma. The goal of Zelus Analytics is to become the leading sports intelligence platform, helping teams gain a competitive edge through data-driven insights.

Company Stage

Series A

Total Funding

$3.6M

Headquarters

Austin, Texas

Founded

2019

Growth & Insights
Headcount

6 month growth

4%

1 year growth

9%

2 year growth

53%
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Simplify's Take

What believers are saying

  • The recent $3.6 million investment from notable investors like RedBird Capital and Billy Beane highlights strong financial backing and growth potential.
  • Acquiring TourIQ positions Zelus Analytics to expand its influence in the golf sector, diversifying its client base.
  • Working with teams across six major sports provides a broad market reach and numerous opportunities for innovation and impact.

What critics are saying

  • The sports analytics market is becoming increasingly crowded, requiring Zelus to continuously innovate to maintain its competitive edge.
  • Dependence on professional sports teams for revenue could be risky if these teams face financial difficulties or cut back on analytics spending.

What makes Zelus Analytics unique

  • Zelus Analytics stands out by offering a platform that integrates data from various sources, providing a comprehensive solution for sports teams.
  • The company's leadership, with experience from top sports organizations like the Dodgers and A.S. Roma, brings unparalleled expertise in sports analytics.
  • Their focus on helping teams make data-driven decisions for both strategic and tactical purposes sets them apart from competitors who may only focus on one aspect.