Develops and deploys ML models for ads targeting, ranking, and measurement on Discord's Ads platform. Requires 5+ years ML experience, 3+ years in Ads ML, Python proficiency, and PyTorch/TensorFlow expertise.
220k – 247k/yr
On-site5+ YOEML Engineering
About the role
What You'll Be Doing
Design, develop, and deploy machine learning models for ads targeting and ranking.
Develop sophisticated ML solutions such as identity graph to enhance ad targeting.
Build and optimize ad ranking models to serve the most effective ads based on campaign objectives (e.g., app installs, link click).
Improve ads targeting and ranking by leveraging both on-platform and off-platform signals.
Collaborate cross-functionally with product, engineering, and business teams to define and execute on the Ads ML roadmap.
Scale our ML infrastructure to support an increasing number of concurrent ad campaigns while ensuring low-latency decision-making.
Drive research and implementation of state-of-the-art ML techniques in the field of online advertising.
What You Should Have
5+ years of experience as a Machine Learning Engineer or Data Scientist.
3+ years of experience specifically in Ads ML (ads ranking, personalization, optimization, privacy-compliant user modeling, targeting, or measurement).
Strong proficiency in Python and familiarity with deep learning frameworks such as PyTorch or TensorFlow.
Experience with applied deep learning (e.g transformers, embedding models).
Proven track record of designing, implementing, and scaling ML-driven ad systems in real-world applications.
Experience working with real-time ML inference, A/B testing, and optimization frameworks.
Experience translating ML evaluation results and performance metrics into actionable product roadmap items.
Ability to connect business objectives to ML solutions, with the flexibility to shift focus toward the highest-impact problems as priorities evolve.
Bonus Skills
Strong understanding of performance advertising and how ML impacts revenue and advertiser retention.
Knowledge of ad tech industry standards and ads ecosystem including targeting, retrieval, ranking, pacing, frequency, auction, etc.
Experience with large-scale recommendation systems.
Experience with large-scale data infrastructure and distributed computing
Compensation: US base salary range $220,000 to $247,000 + equity + benefits.
Skills
PythonPyTorchTensorFlowMachine LearningDeep LearningTransformersEmbeddingsA/B TestingRecommendation SystemsReal-Time Ml Inference
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