StackAdapt logo

Technical Manager, Data Science - StackAdapt

View Company Profile
Job Title
Technical Manager, Data Science
Job Location
London
Job Description
StackAdapt is a self-serve advertising platform that specializes in multi-channel solutions including native, display, video, connected TV, audio, in-game, and digital out-of-home ads. We empower hundreds of digitally-focused companies to deliver outcomes and exceptional campaign performance everyday. StackAdapt was founded with a vision to be more than an advertising platform, it’s a hub of innovation, imagination and creativity.

We're looking to add senior, technically capable Data Scientists and Data Engineers to our data science team! This team works on solving complex problems for StackAdapt's digital advertising platform. You'll be working directly with our data scientists, data engineers, Engineering team, and CTO on building pipelines and ad optimization models. With databases that process millions of requests per second, there's no shortage of data and problems to tackle.

Want to learn more about our Data Science Team: https://alldus.com/ie/blog/podcasts/aiinaction-ned-dimitrov-stackadapt/
Learn more about our team culture here: https://www.stackadapt.com/careers/data-science
Watch our talk at Amazon Tech Talks: https://www.youtube.com/watch?v=lRqu-a4gPuU

StackAdapt is a Remote First company, and we are open to candidates located anywhere in the UK for this position.
What you'll be doing:
  • Innovate ML algorithms to maximize ROI and advertising performance. This ranges from creating entirely new algorithms, to improvements on state-of-the art methods, to development using a deep understanding of classic methods
  • Prototype potential algorithms and pipelines, test them using historical data, and iterate to modify based on insights
  • Design modular and scalable real time data pipelines to handle huge datasets
  • Suggest, implement, and coordinate architectural improvements for big data ML pipelines
  • Understand and implement custom ML algorithms in a low latency environment
  • Work on microservice architectures that run training, inference, and monitoring on thousands of ML models concurrently
  • Be closely technically involved in managing a group of Data Scientists and Data Engineers working together to address complex problems
  • What you'll bring to the table:
  • Have the ability to take an ambiguously defined task, and break it down into actionable steps
  • Ability to follow through complex projects to completion, both by independent implementation and by coordinating others
  • Have deep understanding of algorithm and software design, concurrency, and data structures
  • Experience in implementing probabilistic or machine learning algorithms
  • Experience in designing scalable distributed systems
  • A high GPA from a well-respected Computer Science program or equivalent experience in a competitive, innovative, tech company
  • Enjoy working in a friendly, collaborative environment with others
  • StackAdapters enjoy:
  • Competitive salary
  • Private Medical Insurance cover
  • Auto-enrolment into the company pension scheme
  • Work from home reimbursements
  • Coverage and support of personal development initiatives (conferences, courses, etc)
  • An awesome parental leave policy
  • A friendly, welcoming, and supportive culture
  • Our social and team events (virtually!)
  • Take part in our walk and wander policy and work anywhere in the world for up to 90 days a year
  • 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.

    StackAdapt Headquarters Location

    ,

    View on map

    StackAdapt Company Size

    Between 500 - 2,000 employees

    StackAdapt Founded Year

    2014

    StackAdapt Funding Rounds

    View funding details
    • Series A

      $711,643 CAD

    • Seed

      $900,000 USD