StackAdapt

Technology

Senior/StaffAppliedMachineLearningScientist

United Kingdom
Market Sentiment
HIGH DEMAND

Neural analysis suggests this role is
optimal for Senior candidates.

The Brief

“Senior/Staff Applied Machine Learning Scientist at StackAdapt. Skills: Machine Learning, Data Science, Algorithm Development. Lead creation and optimization of ML algorithms. Enhance advertising effectiveness and ROI”

What You'll Achieve.

Enhance advertising effectiveness and ROI; Drive measurable results across customer journey

Industry & Context.

Technology
Problems you'll solve

Break down ambiguously defined task

What They're Looking For.

Must Have

3+ years of industry experience, Masters degree or PhD in Computer Science, Statistics, Operations Research, or a related field, Ability to take an ambiguously defined task, and break it down into actionable steps, Proficient in coding, data structures, and algorithms

Nice to Have

dual degrees a plus

What You'll Do.

Lead creation and optimization of ML algorithms

Enhance advertising effectiveness and ROI

Own end-to-end development of ML models

Deploy and integrate algorithms into live systems

Drive prototyping and testing of algorithms

Validate performance using historical data

Lead iterative improvements based on insights

How You'll Work.

Team & Collaboration

Collaborate with Data Engineers to deploy models; Working in a friendly, collaborative environment

Full Job Description

StackAdapt is the leading technology company that empowers marketers to reach, engage, and convert audiences with precision. With 465 billion automated optimizations per second, the AI-powered StackAdapt Marketing Platform seamlessly connects brand and performance marketing to drive measurable results across the entire customer journey. The most forward-thinking marketers choose StackAdapt to orchestrate high-impact campaigns across programmatic advertising and marketing channels. We are searching for a talented Senior/Staff Applied Machine Learning Scientist to join our engineering team as we continue to expand our data science efforts. Our platform is connected to thousands of publishers and advertisers worldwide and as a result, we're dealing with millions of requests each second, making billions of decisions. We utilize the latest technologies to solve challenges in traffic, data storage, machine learning, and scalability. 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: Lead the creation and optimization of advanced machine learning algorithms—from developing new methods to refining existing techniques—to enhance advertising effectiveness and ROI using deep ML expertise. Own the end-to-end development of production-grade ML models: write efficient, scalable code and collaborate with Data Engineers to deploy and integrate algorithms into live systems. Drive the prototyping and rigorous testing of innovative algorithms and data pipelines using historical data to validate performance and scalability; lead iterative improvements based on data-driven insights. What you'll bring to the table: 3+ ye

Free ATS check

Applying for this Senior/Staff Applied Machine Learning Scientist role?

Most applicants get filtered before a human reads their resume. See if yours makes the cut.

How to Apply on Greenhouse

  • Create a Greenhouse profile before applying — it saves time across multiple applications.
  • Upload your resume as a PDF; the parser handles it better than Word.
  • Answer all knockout questions carefully — wrong answers auto-reject before a human sees you.
  • Enable email notifications to track application status in real time.

ANONYMOUS · UNFILTERED

What do employees actually say about StackAdapt?

Real rants from real employees. Read before you apply.

Read Company Rants →