Position Description:
Builds and maintains large scale Machine Learning (ML) Infrastructure and ML pipelines using Big Data ML toolkits -- SparkML and Amazon SageMaker. Builds and deploys data centric RESTful Java APIs. Uses ETL data pipelines and workflow tools -- Luigi and Airflow, and Cloud Technologies -- Docker, Kubernetes, AWS CLI, AWS CloudFormation and AWS services. Delivers high quality data solutions in a multi-developer environment. Performs deep data analysis on multiple database platforms using SQL skills. Builds data pipelines to evaluate ML models, using Apache and Spark. Writes code with object-oriented/object scripting languages -- Python, Java, C++, and Scala.
Primary Responsibilities:
Education and Experience:
Bachelor’s degree (or foreign education equivalent) in Computer Science, Computational Science, Engineering, Information Technology, Information Systems, Mathematics, Physics, or a closely related field and three (3) years of experience as a Senior Machine Learning Engineer (or closely related occupation) performing real time analytics and developing personalized recommendation applications using Amazon Web Services (AWS).
Or, alternatively, Master’s degree (or foreign education equivalent) in Computer Science, Computational Science, Engineering, Information Technology, Information Systems, Mathematics, Physics, or a closely related field and one (1) year of experience as a Senior Machine Learning Engineer (or closely related occupation) performing real time analytics and developing personalized recommendation applications using Amazon Web Services (AWS).
Skills and Knowledge:
Candidate must also possess:
#PE1M2
#LI-DNI
Information Technology
Fidelity’s hybrid working model blends the best of both onsite and offsite work experiences. Working onsite is important for our business strategy and our culture. We also value the benefits that working offsite offers associates. Most hybrid roles require associates to work onsite every other week (all business days, M-F) in a Fidelity office.
Read Full Description