Fanatics is the ultimate one-stop sports fan destination that ignites and harnesses the passion of fans and maximizes the presence and reach for preeminent sports partners globally. Leveraging long-standing, often exclusive relationships with more than 900 sports properties, a database of more than 90 million consumers worldwide and a trusted brand name, Fanatics is furthering its innovation across the sports landscape by building the leading global digital sports platform, complete with offerings including e-commerce and licensed merchandise, physical and digital trading cards and collectibles, and online sports betting and iGaming.
The Fanatics family of companies currently includes Fanatics Commerce, a vertically-integrated licensed merchandise business that has changed the way fans purchase their favorite team apparel, jerseys, headwear and hardgoods through a tech-infused approach to making and quickly distributing fan gear in today’s 24/7 mobile-first economy; Fanatics Collectibles, a transformative company that is building a new model for the hobby and giving collectors an end-to-end physical and digital collectibles experience; and Fanatics Betting & Gaming, a mobile betting, gaming and retail sportsbook platform.
As a market leader with more than 10,000 employees, and hundreds of partners, suppliers, and vendors worldwide, we take responsibility for driving toward more ethical and sustainable practices. We are committed to building an inclusive Fanatics community, reflecting and representing society at every level of the business, including our employees, vendors, partners and fans. Fanatics is also dedicated to making a positive impact in the communities where we all live, work, and play through strategic philanthropic initiatives.
At Fanatics, we’re a diverse, passionate group of employees aiming to ignite pride and passion in the fans we outfit, celebrate and support. We recognize that diversity helps drive and foster innovation, and through our IDEA program (inclusion, diversity, equality and advocacy) at Fanatics we provide employees with tools and resources to feel connected and engaged in who they are and what they do to support the ultimate fan experience.
The base salary range for this role is $152,000 per year - $228,000 per year, depending on job-related knowledge, skills, and experience.
This role is eligible for the Fanatics Betting and Gaming annual bonus program and an equity award. In addition to the base, bonus, and equity, full-time employees are eligible for Medical, Dental, Vision, 401K, paid time off, and other benefits like GymPass, Pet Insurance, Family Care Benefits, Free Shipt deliveries, and more. We’ll also give you $500 to set up your home office!
Fanatics is looking for a Machine Learning Engineer III with a deep background in software engineering, data infrastructure and data science. The role reports to our Senior Machine learning Engineering Manager. This engineer will partner with the data engineers and data scientists to build and scale data solutions that address business problems for end users and internal stakeholders.
By using predictive models, experimental design methodologies and ML techniques, the candidate will be working on the development of exciting projects like recommendation systems, customer segmentation, A/B Testing, risk analysis, and trends for sports betting and trading.
Ideal candidates will have a strong academic background in software engineering, Data Science, distributed systems.Responsibilities Build and Scale infrastructure for predictive models on large-scale datasets to address various business problems including recommendation systems.Develop and implement scalable and efficient data pipeline features /scoring algorithms that work with large-scale data in production systemsCollaborate with cross functional Engineering teams to identify data sources and build services to serve prediction the data into the product.Work on recommendation systems, customer segmentations, cohort analysis, life cycle analysis using predictive modeling, experimental design methods and optimization techniques.Iteratively update the model to improve model accuracy and speed, and deploying it at scale with high throughput and uptime.Must be open to occasional travel to events and Bet Fanatics offices for various offsite and team meetings.QualificationsStrong academic background in software engineering, ML and distributed systemsProficient in one or more programming languages such as PythonExperience with one or more end to end machine learning tools such as Databricks, AWS SagemakerKnowledge and experience with popular Machine learning and deep learning frameworks (e.g. Pytorch, Tensorflow, Keras, Caffe)Knowledge and experience of working with relational and dimensional databases using SQLPractical understanding of the mathematics behind modern machine learning, linear algebra, and statisticsExperience in Experimentation, A/B Testing, Optimization
**If you possess some of these skills but not all of them, we still encourage you to apply!
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Tryouts are open at Fanatics! Our team is passionate, talented, unified, and charged with creating the fan experience of tomorrow. The ball is in your court now.
Fanatics is committed to responsible planning and purchasing (RPP) practices, working with its business partners across its global and multi-layered supply chain, to ensure that planning, sourcing, and purchasing decisions, along with other supporting processes, do not impede or conflict with the fulfillment of Fanatics’ fair labor practices.
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