For our ADA-friendly site, please click here

Sr. Engineer, Data Engineering

📁
Information Technology
💼
Neiman Marcus

Sr. Engineer, Data Engineering

This is an exciting opportunity to be part of the Data & Analytics Delivery Organization at Neiman Marcus.  Neiman Marcus is going through a digital transformation and insights from our data are driving the transformation of Neiman Marcus Group into a Luxury Customer Platform and providing the best customer experience across all our brands.

 

We are looking for a Sr. Engineer, Data Engineering that will have the unique combination of business acumen needed to interface directly with key stakeholders to understand the problem along with the skills and vision to translate the need into a world-class technical solution using the latest technologies.  You will be in a hands-on role and responsible for building data engineering solutions for NMG Enterprise using cloud-based data platform. You will provide day-to-day technical deliverables and participate in technical design, development, and support for data engineering workloads.

Job Requirements

  • Understand and Analyze data from multiple data sources and develop technology to integrate the enterprise data layer
  • Create robust and automated pipelines to ingest and process structured and unstructured data from source systems into analytical platforms using batch and streaming mechanisms leveraging cloud native toolset
  • Work activity includes processing complex data sets, leveraging technologies used to process these disparate data sets and understanding the correlations as well as patterns that exist between these different data sets
  • Implement orchestrations of data pipelines and environment using Airflow
  • Implement custom applications using the Kinesis, Lambda and other AWS toolset as required to address streaming use cases
  • Implement automation to optimize data platform compute and storage resources
  • Develop and enhance end to end monitoring capability of cloud data platforms
  • Participate in educating and cross training other team members
  • Provide regular updates to all relevant stakeholders
  • Participate in daily scrum calls and provide clear visibility to work products

 

Job Requirements

  • BS in Computer Science or related field
  • 6+ years of experience in the data engineering and analytic space
  • 5+ years of Python experience. Solid programing experience in Python - needs to be an expert in this 4/5 level. (Must have strong Python skills, along with lambdas and Airflow Dag processing.)
  • 5+ years of RDBMS concepts with strong data analysis and SQL experience
  • 4+ years of Linux OS command line tools and bash scripting proficiency
  • 1+ year of experience working on Big Data Processing Frameworks and Tools
  • Exposure to software engineering such as parallel data processing, data flows, REST

APIs, JSON, XML, and micro service architectures

  • Certification –preferably AWS Certified Big Data or any other cloud data platforms, big data platforms

 

Nice to have:

  • Kubernetes and Docker experience a plus
  • Prior working experience on data science work bench
  • Knowledge of machine learning pipelines (e.g., train/test splitting, scoring process, etc.)

Previous Job Searches

My Profile

Create and manage profiles for future opportunities.

Go to Profile

My Submissions

Track your opportunities.

My Submissions

Similar Listings

Corporate

Irving, Texas

📁 Information Technology

Neiman Marcus

Irving, Texas

📁 Information Technology

Corporate

Irving, Texas

📁 Information Technology

Los Angeles and San Francisco Applicants: Neiman Marcus will consider for employment qualified applicants with criminal history as required by applicable law.
If you have a disability under the Americans with Disabilities Act or similar law, and you need assistance in accessing our Career Center or wish to discuss potential accommodations related to applying for employment at our Company, please contact ApplicantSupport@NeimanMarcus.com.
To listen to an audio clip of this information, click HERE.