This job posting will be permanently hidden from you. Are you sure?

Sr. Big Data Engineer - internet engineering - job employment

City: San francisco bay area
Date: 08 Mar 2018
Category: Internet Engineers

Overview: Come join our award-winning technology team as a Senior Big Data Engineer and experience what it's like to work for the most engaging retailer in the world!!! We work on a range of interesting problems including building recommendations systems, content discovery, and insight and a wide range of analytical problems.

If you want to be part of a phenomenal team that is forward thinking, innovative, and gives you the opportunity to make an impact - apply today or reach out to [email protected]

Sr. Big Data Engineer: Responsible for the management of software engineering teams. Responsible for creating desired functionality to assigned content, products or services in ecommerce. Manages the development, testing and implementation of software that provides robust technical infrastructure and/or software applications used by business units

Primary Responsibilities: Manages resources and workflows to create desired functionality for assigned domains, products or services.

Required Skill-Set:
5+ years of experience in software development / systems engineering / design, 3+ big data specific experience
Experience with agile development
Building data ingestion from various source systems to Hadoop using Kafka, Flume, Sqoop, Spark Streaming etc.
Bachelor's degree or equivalent in MIS, Computer Science or related field
Worked on Hadoop - exposure to big data.
Build data pipelines using heterogeneous sources using Pig, Hive and Java map reduce
Design and develop different architectural models for our scalable data processing as well as scalable data storage
Responsible to ensure that the platform goes through Continuous Integration (CI) and Continuous Deployment (CD) with DevOps automation
Expands and grows data platform capabilities to solve new data problems and challenges
Knowledge of design strategies for developing scalable, resilient data pipelines on cloud
Views: 58