Spotify logo

Staff Machine Learning Engineer, NativeAds - Spotify

View Company Profile
Job Title
Staff Machine Learning Engineer, NativeAds
Job Location
New York, NY
Job Description
Spotify is looking for a Staff ML Engineer to join the Native Ads product area in the Music Mission. In Native Ads, we build consumer and industry-facing music promotion products which provide creators new avenues for promoting their work, reaching new audiences, and deepening their connections with fans. You will play a crucial role in shaping the future of Native Ads products, technology and business, and represent Native Ads in the continuously evolving Coordinated Promotions ecosystem by collaborating with key partners in PZN and Ads.

As the Staff Machine Learning Engineer for this team, you will work with a cross-functional team to define and execute a Machine Learning technical strategy for the product area. Working with a team of Engineering Managers, Staff and Senior Staff Engineers, along with a team of engineers and partners in PZN, you will shape and drive initiatives that tackle complex problems surrounding campaign forecasting, serving observability and targeting optimization with the goal to improve overall supply and campaign performance.

You will build ML-driven solutions to bring promotional music experiences to our 350+ million active users on behalf of millions of artists, using a diverse range of datasets including user behaviors, contextual data, and other signals across our broad range of mobile and connected platforms. Above all, your work will impact the way the world experiences music and the way creators connect to their fans!
What You'll Do
  • Lead the creation of a Machine Learning Engineering Strategy for Native Ads
  • Contribute to designing, building, evaluating, shipping, and refining Native Ads products via hands-on ML development
  • Collaborate with a cross functional agile team spanning user research, design, data science, product management, and engineering to build new product features that advance our mission to connect artists and fans.
  • Prototype new approaches and productionize solutions for Spotify For Artists customers
  • Help drive optimization, testing, and tooling to improve quality.
  • Work closely with Personalization and Music Tech Research teams to ideate and innovate on Music Promotion Tools
  • Who You Are
  • You have a strong background in machine learning, with experience and expertise in machine learning algorithms.
  • You have hands-on experience implementing production machine learning systems at scale in Java, Scala, Python, or similar languages.
  • You have experience or a strong interest in emerging agent technologies and generative recommender systems
  • You care about agile software processes, data-driven development, reliability, and disciplined experimentation
  • You enjoy leading projects from start to finish working closely with your team and peers. You are comfortable dealing with ambiguity on high impact projects
  • Be accountable to senior tech leadership for meeting our product and technology objectives and managing expectations if those are at risk
  • Passion for the opportunity to better serve artists & their teams
  • Team-first approach with developed techniques to ensure teams are happy, motivated, and productive
  • A plus if you have experience with Ads systems
  • Where You'll Be
  • We offer you the flexibility to work where you work best! For this role, you can be within the North America region as long as we have a work location.
  • This team operates within the Eastern Standard time zone for collaboration.
  • Everything You Need, One Platform.

    From job listings to startups, investors to funding rounds, and everything in between, Employbl puts the power in your hands. Why wait?

    Start your free trial today!


    Stay Ahead of the Curve

    Sign up for our newsletter to stay informed about the latest startups and trends in the tech market. Let Employbl be your guide to success.

    Spotify Headquarters Location

    ,

    View on map

    Spotify Founded Year

    2006

    Spotify Funding Rounds

    View funding details