Qualtrics is hiring a

Sr. Machine Learning Engineer - CORE ML

Seattle, United States

Why Qualtrics?

Qualtrics is the technology platform that organizations use to collect, manage, and act on experience data, also called X-data™. The Qualtrics XM Platform™ is a system of action, used by teams, departments, and entire organizations to manage the four core experiences of business—customer, product, employee and brand—on one platform. Over 10,000 enterprises worldwide, including more than 75 percent of the Fortune 100 and 99 of the top 100 U.S. business schools, rely on Qualtrics to consistently build products that people love, create more loyal customers, develop a phenomenal employee culture, and build iconic brands.  Join us on this adventure that can open many doors! Join a company that is dedicated to your ideas and growth, recognizes your unique contribution, fills you with purpose, and provides a fun, flexible and inclusive work environment.

The Challenge

We are looking for engineers to bring our Machine Learning and Artificial Intelligence R&D strategy to the next level. Our goal is to personalize the Qualtrics experience using ML and AI features, showcasing Qualtrics data as a core value proposition and competitive advantage.

As a Machine Learning Engineer at Qualtrics, you should love building simple solutions to solve hard customer problems. Crafting systems in an agile environment to withstand hyper growth and owning quality from end to end is a rewarding challenge and one of the reasons Qualtrics is such an exciting place to work!

In addition, you will:

  • Work in a multi-disciplinary team to implement, tune, and productize cutting-edge machine learning models to meet the demands of our rapidly growing business
  • Develop scalable, fast, robust, and best-in-class solutions to solve complex business problems
  • Work closely with, and incorporate feedback from other specialists, tech-ops, and product managers
  • Lead and engage in design reviews, architectural discussions, requirement definitions and other technical activities in diverse capacity
  • Attend daily stand-up meetings, collaborate with your peers, prioritize features, and work with a sense of urgency to deliver value to your customers
  • Build and maintain highly scalable data pipelines to cleanse, anonymize, measure, and index complex and multi-modal data.
  • Finding quick ways to prototype and test possible solutions to large problems

Basic Qualifications 

  • Bachelor’s degree in Computer Science or related fields.
  • Strong Computer Science fundamentals in algorithm design, complexity analysis, and performance
  • Experience in building and managing distributed systems and high-throughput services.
  • Experience in building and managing Scalable ML Infra.
  • 5+ years of programming experience with at least one modern programming language such as Python, GO
  • 5+ years of experience contributing to the architecture and design (architecture, design patterns, reliability, and scaling) of new and current systems
  • Interest in modern machine learning / deep learning systems
  • Systematic problem-solving approach and knowledge of algorithms, data structures, and complexity analysis.
  • Strong feeling of ownership

Preferred Qualifications 

  • Deep understanding of machine learning model life cycle management
  • Experience with Tensorflow, PyTorch or similar training frameworks
  • Experience with ONNX, TensorRT, or similar inference frameworks
  • The ability to define system architecture and explore the feasibility of various designs
  • Experience developing cloud-based software services and an understanding of design for scalability, performance, and reliability 
  • Experience building data pipelines for machine learning and processing large volumes of data with modern big data systems such as Spark, EMR, Hadoop etc.
  • Experience with workflow management tools, e.g. Airflow, KubeFlow etc.

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