Machine Learning Engineer - Personalization

7000 Target Pkwy N,NCD-0375 Brooklyn Park,MN 55445

Target

Shop Target online and in-store for everything from groceries and essentials to clothing and electronics. Choose contactless pickup or delivery today.

View all jobs at Target

Apply now Apply later

The pay range is $72,100.00 - $129,800.00

Pay is based on several factors which vary based on position. These include labor markets and in some instances may include education, work experience and certifications. In addition to your pay, Target cares about and invests in you as a team member, so that you can take care of yourself and your family. Target offers eligible team members and their dependents comprehensive health benefits and programs, which may include medical, vision, dental, life insurance and more, to help you and your family take care of your whole selves. Other benefits for eligible team members include 401(k), employee discount, short term disability, long term disability, paid sick leave, paid national holidays, and paid vacation. Find competitive benefits from financial and education to well-being and beyond at https://corporate.target.com/careers/benefits.

JOIN TARGET AS A MACHINE LEARNING ENGINEER

About Us:
As a Fortune 50 company with more than 350,000 team members worldwide, Target is an iconic brand and one of America's leading retailers.
 

Working at Target means the opportunity to help all families discover the joy of everyday life. Caring for our communities is woven into who we are, and we invest in the places we collectively live, work and play. We prioritize relationships, develop talent by creating growth opportunities and succeed as one Target team. At our core, our purpose is ingrained in who we are, what we value and how we work. It’s how we care, grow, and win together. Every time a guest enters a Target store or browses Target.com, they experience the impact of Target’s investments in technology and innovation. We’re the technologists behind one of the most loved retail brands, delivering joy to millions of our guests, team members, and communities.

 
Join our global in-house Tech and Data Sciences team of more than 5,000 software engineers, applied data scientists, ML engineers and product managers striving to make Target the most convenient, safe and joyful place to shop. We use agile practices and leverage open-source software to adapt and build best-in-class technology for our team members and guests. We do so with a focus on diversity and inclusion, experimentation and continuous learning.

As a Machine Learning Engineer, you will join a Data Sciences team responsible for creating personalized recommendations on Target.com and the Target App.  You will play a crucial role in designing, implementing, and optimizing production machine learning solutions. We will expect you to understand best practice software design, participate in code reviews, and create a maintainable well-tested codebase with relevant documentation. At an organizational level, you will work in partnership with data scientists, engineers, and product managers to understand the business requirements and build solutions to meet business needs.

Core responsibilities of this job are articulated within this job description. Job duties may change at any time due to business needs.

About you: 

  • 4-year degree in Quantitative disciplines (Science, Technology, Engineering, Mathematics) or equivalent experience
  • Demonstrated proficiency in Python programming
  • Familiarity with ML frameworks such as PyTorch, TensorFlow, XGBoost, and sklearn
  • Familiarity with SQL
  • Familiarity with software design on Linux/Mac
  • Familiarity with software version control such as git and software test coverage practices and frameworks such as PyTest
  • Understanding the end-to-end model lifecycle including data ingestion and processing, feature extraction and selection, model training and tuning, model evaluation, and model deployment
  • Excellent communication skills with the ability to clearly tell data driven stories through appropriate visualizations, graphs, and narratives
  • Self-driven and results oriented; able to meet deadlines
  • Motivated, team player with ability to collaborate effectively across global team

Bonus Points:

  • MS in Computer Science, Applied Mathematics, Statistics, Physics or equivalent work or industry experience
  • Familiarity with cloud ML services such as Vertex AI/Azure ML/Sagemaker
  • Proficiency in Java, PySpark, and/or Scala
  • Experience in end-to-end Machine Learning application development, including data pipelining, model optimization, deployment, and API design
  • Familiarity with containerized technologies like Docker
  • Experience with CI/CD

This position will operate as a Hybrid/Flex for Your Day work arrangement based on Target’s needs. A Hybrid/Flex for Your Day work arrangement means the team member’s core role will need to be performed both onsite at the Target HQ MN location the role is assigned to and virtually, depending upon what your role, team and tasks require for that day. Work duties cannot be performed outside of the country of the primary work location, unless otherwise prescribed by Target. Click here if you are curious to learn more about Minnesota.

Americans with Disabilities Act (ADA)

In compliance with state and federal laws, Target will make reasonable accommodations for applicants with disabilities. If a reasonable accommodation is needed to participate in the job application or interview process, please reach out to candidate.accommodations@HRHelp.Target.com.

Application deadline is : 11/21/2024
Apply now Apply later
Job stats:  1  1  0

Tags: Agile APIs Azure CI/CD Computer Science Docker Engineering Git Java Linux Machine Learning Mathematics Model deployment Model training Open Source Physics PySpark Python PyTorch SageMaker Scala Scikit-learn SQL Statistics TensorFlow Vertex AI XGBoost

Perks/benefits: Career development Competitive pay Health care Insurance Medical leave Salary bonus

Region: North America
Country: United States

More jobs like this