Machine Learning, Engineer

  • Washington, WA
  • Posted 60+ days ago | Updated 9 hours ago

Overview

On Site
USD 97,700.00 - 176,200.00 per year
Full Time

Skills

Algorithms
Software Engineering
Cloud Computing
Scalability
Research Design
Collaboration
Training
Performance Improvement
Computer Science
Statistics
Informatics
Information Systems
Data Engineering
Data Science
Apache Hadoop
Apache Hive
Apache Kafka
Root Cause Analysis
Programming Languages
Python
R
Java
Scala
Apache Spark
Databricks
Telecommunications
Relational Databases
SQL
Database
Big Data
Machine Learning (ML)
Management
Unsupervised Learning
Sales
Customer Service
Recruiting
Paradox
Coaching
Life Insurance
Internet
Insurance
AIM
Law
Forms

Job Details

At T-Mobile, we invest in YOU! Our Total Rewards Package ensures that employees get the same big love we give our customers. All team members receive a competitive base salary and compensation package - this is Total Rewards. Employees enjoy multiple wealth-building opportunities through our annual stock grant, employee stock purchase plan, 401(k), and access to free, year-round money coaches. That's how we're UNSTOPPABLE for our employees!

Job Overview
The Machine Learning (ML) Engineer focuses on coding, deploying, and maintaining large-scale machine learning models throughout their lifecycle. By combining software engineering principles and data science/machine learning knowledge, the ML Engineer develops the data processes that make ML models generally available for use in products for end-users and customers. The ML engineer should understand machine learning algorithms, have experience in software engineering and various programming languages, including Python, SQL, and Apache Spark. An understanding of latest cloud technologies is imperative for the development and deployment of ML solutions as well. The chief contribution of the ML Engineer is their ability to optimize machine learning solutions for performance and scalability.

Job Responsibilities:
  • Build and maintain the entire machine learning lifecycle (research, design, experimentation, development, deployment, monitoring, and maintenance).
  • Assemble large, complex data sets that meet functional/ non-functional business requirements for machine learning.
  • Collaborate with data science, tech, and product teams on defining, architecting, and building data ingestion systems and model training pipelines from experimentation to deployment, monitoring, and continuous performance improvement.
  • Ensure machine learning models are optimized and scalable.


  • Education:
  • Bachelor's Degree Computer Science, Statistics, Informatics, Information Systems, Machine Learning, or another quantitative field (Required)
  • Master's/Advanced Degree Computer Science, Statistics, Informatics, Information Systems, Machine Learning, or another quantitative field (Preferred)


  • Work Experience:
  • Data Engineering, Data Science (Required)
  • Experience with big data architecture and pipeline, Hadoop, Hive, Spark, Kafka, etc., is preferred (Required)
  • Experience performing root cause analysis on internal and external data and processes to answer specific business questions and identify opportunities for improvement (Required)
  • Experience in programming languages such as Python/R, Java/Scala, and/ or Go (Required)
  • Experience in Apache Spark and Databricks (Preferred)
  • Experience in the telecom industry (Preferred)


  • Knowledge, Skills and Abilities:
  • Programming Working SQL knowledge and experience working with relational databases, query authoring (SQL) as well as working familiarity with a variety of databases (Required)
  • Big Data Solid understanding of machine learning concepts and techniques related to supervised and unsupervised learning (Required)


  • Licenses and Certifications:

    At least 18 years of age
    Legally authorized to work in the United States

    Travel:
    Travel Required (Yes/No):No

    DOT Regulated:
    DOT Regulated Position (Yes/No):No
    Safety Sensitive Position (Yes/No):No

    Base Pay Range: $97,700 - $176,200

    Corporate Bonus Target: 15%

    The pay range above is the general base pay range for a successful candidate in the role. The successful candidate's actual pay will be based on various factors, such as work location, qualifications, and experience, so the actual starting pay will vary within this range.

    At T-Mobile, employees in regular, non-temporary roles are eligible for an annual bonus or periodic sales incentive or bonus, based on their role. Most Corporate employees are eligible for a year-end bonus based on company and/or individual performance and which is set at a percentage of the employee's eligible earnings in the prior year. Certain positions in Customer Care are eligible for monthly bonuses based on individual and/or team performance. To find the pay range for this role based on hiring location, ;paradox=1

    At T-Mobile, our benefits exemplify the spirit of One Team, Together! A big part of how we care for one another is working to ensure our benefits evolve to meet the needs of our team members. Full and part-time employees have access to the same benefits when eligible. We cover all of the bases, offering medical, dental and vision insurance, a flexible spending account, 401(k), employee stock grants, employee stock purchase plan, paid time off and up to 12 paid holidays - which total about 4 weeks for new full-time employees and about 2.5 weeks for new part-time employees annually - paid parental and family leave, family building benefits, back-up care, enhanced family support, childcare subsidy, tuition assistance, college coaching, short- and long-term disability, voluntary AD&D coverage, voluntary accident coverage, voluntary life insurance, voluntary disability insurance, and voluntary long-term care insurance. We don't stop there - eligible employees can also receive mobile service & home internet discounts, pet insurance, and access to commuter and transit programs! To learn about T-Mobile's amazing benefits, check out ;br>
    Never stop growing!
    As part of the T-Mobile team, you know the Un-carrier doesn't have a corporate ladder-it's more like a jungle gym of possibilities! We love helping our employees grow in their careers, because it's that shared drive to aim high that drives our business and our culture forward. By applying for this career opportunity, you're living our values while investing in your career growth-and we applaud it. You're unstoppable!

    T-Mobile USA, Inc. is an Equal Opportunity Employer. All decisions concerning the employment relationship will be made without regard to age, race, ethnicity, color, religion, creed, sex, sexual orientation, gender identity or expression, national origin, religious affiliation, marital status, citizenship status, veteran status, the presence of any physical or mental disability, or any other status or characteristic protected by federal, state, or local law. Discrimination, retaliation or harassment based upon any of these factors is wholly inconsistent with how we do business and will not be tolerated.

    Talent comes in all forms at the Un-carrier. If you are an individual with a disability and need reasonable accommodation at any point in the application or interview process, please let us know by emailing or calling 1-. Please note, this contact channel is not a means to apply for or inquire about a position and we are unable to respond to non-accommodation related requests.
    Employers have access to artificial intelligence language tools (“AI”) that help generate and enhance job descriptions and AI may have been used to create this description. The position description has been reviewed for accuracy and Dice believes it to correctly reflect the job opportunity.