Senior Data/ML Engineer- #7921

California - San Mateo

Applications have closed

Fanatics Inc

Fanatics offers the broadest assortment of fan merchandise and memorabilia worldwide.

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Company Overview
Fanatics is the global leader in licensed sports merchandise and changing the way fans purchase their favorite team apparel and jerseys. Through an innovative, tech-infused approach to making and selling fan gear in today's on-demand culture, Fanatics operates more than 300 online and offline stores, including the e-commerce business for all major professional sports leagues (NFL, MLB, NBA, NHL, NASCAR, MLS, PGA), and more than 200 collegiate and professional team properties, which include several of the biggest global soccer clubs (Manchester United, Real Madrid, Chelsea). Fanatics offers the largest collection of timeless and timely merchandise whether shopping online, on your phone, in stores, in stadiums or on-site at the world's biggest sporting events.  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.   
About the Team
Fanatics is first and foremost a technology company. We are powered by cutting-edge tech created by our small agile teams using the latest tools and technologies under our highly analytical, forward thinking, and open-minded leadership. As the global leader in licensed sports merchandise, we challenge ourselves by improving our new fully responsive NodeJS cloud commerce platform, Elasticsearch engine, and deep data science capabilities while building the best-in-class retail manufacturing and supply chain technologies. Our tech teams work together to revolutionize data science and engineering initiatives, provide highly scalable real-time and streaming platforms, and create secure e-commerce and in-stadium fan experience products. Our own e-commerce platform transacts in over 190 countries, 17 languages, and 14 currencies. Our motto is “#GSD”—get stuff done—and we do just that. If you want to be at the nexus of sports, commerce, and technology, come be a part of our industry-leading team here at Fanatics Tech.
At Fanatics, we are passionate about leveraging data, ML and AI to drive growth and operational efficiencies. We firmly believe in putting data at the forefront of delivering an engaging experience for our sports fans! Fanatics Inc. is looking for highly motivated individuals to join our Data Science and Engineering team. You will collaborate closely with data-scientists, other ML Engineers, Software engineers, PMs, cross functional business units to address challenging problems using techniques from applied statistics, machine learning and/or data mining fields. 
Job Requirements ·      Design and build solutions for our Machine Learning infrastructure and technologies.·      Experience in Sagemaker (or other cloud-based ML services), TensorFlow, MLflow, Kubeflow, ONNX, PyTorch, MXNET, Feature engineering, ML Automation, MLOps.·      Must be an expert in building complex, multistage ML pipelines for models with heterogenous data sources using Spark (Scala), Flink, Hadoop/MR, Hive, Redshift, S3 Data Lake, AWS Athena·      Good experience in building and optimizing Big data ecosystems such as Spark, Hadoop and distributed systems such as Kafka, Cassandra. Energetic, enthusiastic, detail-oriented, and passionate about producing high-quality analytics deliverables.·      Knowledge of basic statistical analysis and deep understanding of inner working of machine learning models desired.·      BS/MS in Computer Science preferred, Mathematics, Physics or other quantitative field or relevant work experience.·      Have at least 3 years of industry experience in working in Big Data in data science domain.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.
Ensure your Fanatics job offer is legitimate and don’t fall victim to fraud.  Fanatics never seeks payment from job applicants.  Fanatics recruiters will only reach out to applicants from an @fanatics.com or @fanatics.co.uk email address.  For added security, where possible, apply through our company website at www.fanaticsinc.com/careers

NOTICE TO CALIFORNIA RESIDENTS/APPLICANTS: In connection with your application, we collect information that identifies, reasonably relates to or describes you (“Personal Information”). The categories of Personal Information that we collect include your name, government issued identification number(s), email address, mailing address, other contact information, emergency contact information, employment history, educational history, criminal record, and demographic information.  We collect and use those categories of Personal Information about you for human resources and other business management purposes, including identifying and evaluating you as a candidate for potential or future employment or future contract positions, recordkeeping in relation to recruiting and hiring, conducting criminal background checks as permitted by law, conducting analytics, and ensuring compliance with applicable legal requirements and Company policies.

Tags: Agile Athena AWS Big Data Cassandra Computer Science Data Mining Distributed Systems E-commerce Elasticsearch Engineering Feature engineering Flink Hadoop Kafka Machine Learning Mathematics MLFlow ML models MLOps MXNet Node.js ONNX Physics Pipelines PyTorch Redshift SageMaker Scala Security Spark Statistics Streaming TensorFlow

Perks/benefits: Career development Startup environment Team events

Region: North America
Country: United States
Job stats:  5  1  0

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