CVS Health

Receive alerts when this company posts new jobs.

Similar Jobs

Job Details

Data Engineer - Front Store Personalization

at CVS Health

Posted: 11/20/2020
Job Reference #: 1431381BR

Job Description

Job Description
As a Data Engineer, you will collaborate with business partners to identity opportunities to leverage big data technologies in support of Front Store Personalization with a common set of tools and infrastructure to make analytics faster, more insightful, and more efficient. You will build and architect next generation Big Data machine learning framework developed on a group of core Big Data technologies.

You will design highly scalable and extensible Big Data
platforms which enables collection, storage, modeling, and analysis of massive data sets from numerous channels.
You will define and maintain data architecture, focusing on applying technology to enable business solutions. You will assess and provide recommendations on business
relevance, with appropriate timing and deployment. You
will perform architecture design, data modeling, and
implement CVS Big Data platforms and analytic
applications. You will bring a DevOps mindset to enable
big data and batch/real-time analytical solutions that
leverage emerging technologies. You will develop
prototypes and proof of concepts for the selected
solutions, and implement complex big data projects. You
will apply a creative mindset to a focus on collecting,
parsing, managing, and automating data feedback loops in support of business innovation.

Required Qualifications
A minimum of 1 year of experience with:
* Big Data, Machine Learning, and Spark experience building and running products and applications at scale, in production, in mission critical situations
* Platforms: Azure Cloud, DataBricks, Hadoop, Spark, Kafka, Kinesis, Oracle, TD
* Languages: PySpark, Python, Hive, Shell Scripting, SQL, Pig, Java / Scala
* Knowledge of Map-Reduce, Spark, Airflow / Oozie / Jenkins,
* Hbase, Pig, No-SQL, Chef / Puppet, Git
* Familiarity with building data pipelines, data modeling, architecture & governance concepts
* Experience implementing ML models and building highly scalable and high availability systems
* Experience operating in distributed environments including cloud (Azure, GCP, AWS etc.)
* Experience building, launching and maintaining complex analytics pipelines in production

Preferred Qualifications
Exposure to Healthcare Domain knowledge would be a plus.
Masters in Data Science or Business Analytics
Experience with cloud computing environment (ideally
Microsoft Azure).

Education
· Be actively pursuing a Master’s degree focusing in Computer Science, Engineering, Economics, Mathematics, Physics, Statistics, or other related quantitative program
· Have a 3.0+cumulative GPA
· Have an anticipated graduation date between December 2020 and August 2021

Business Overview
At CVS Health, we are joined in a common purpose: helping people on their path to better health. We are working to transform health care through innovations that make quality care more accessible, easier to use, less expensive and patient-focused. Working together and organizing around the individual, we are pioneering a new approach to total health that puts people at the heart.


We strive to promote and sustain a culture of diversity, inclusion and belonging every day. CVS Health is an equal opportunity and affirmative action employer. We do not discriminate in recruiting, hiring or promotion based on race, ethnicity, sex/gender, sexual orientation, gender identity or expression, age, disability or protected veteran status or on any other basis or characteristic prohibited by applicable federal, state, or local law. We proudly support and encourage people with military experience (active, veterans, reservists and National Guard) as well as military spouses to apply for CVS Health job opportunities.

Application Instructions

Please click on the link below to apply for this position. A new window will open and direct you to apply at our corporate careers page. We look forward to hearing from you!