The ML Platform team is responsible for bringing numerous features to advertisers and consumers while simultaneously supporting scalable modeling and continuous experimentation by all Ad Platforms teams. As a key contributor to this team you will design and develop secure and scalable back-end systems. You will enjoy building high-performing elegant systems from the ground up in close partnerships with various teams. You will also possess keen judgment in selecting technologies and building the right solution for the interesting challenges we get to tackle here. You will have the opportunity to define and refine architectures to meet the unique ad network challenges we must solve. You will play a meaningful role building machine learning products which deliver on Apples privacy commitments and change the way advertising works with data. Join us and contribute to a culture that emphasizes reliability simplicity and scalability. You will join a team of world-class machine learning engineers hungry to apply leading-edge technologies to deliver extraordinary experiences to our customers. We are one team nurturing each others growth and supporting each other in delivering for our customers!
Proven track record of designing and scaling robust ML infrastructure and frameworks that support both training and inference across teams and orgs.
Experience of model quantization tensor parallelism and inference optimizations (e.g ONNX Runtime TensorRT vLLM). Actively led evaluation and adoption of such technologies.
Recognized as a technical leader and mentor supports the growth of engineers through code/design reviews working groups and internal knowledge sharing.
Experience building machine learning models using frameworks like PyTorch TensorFlow. Provides technical guidance and mentorship on best practices.
Prior experience in advertising industry federated learning and privacy-preserving ML techniques.
Led development of foundational AI/ML platforms and tooling including Feature Stores Vector DB to accelerate team productivity and model lifecycle management.
Experience working on distributed systems (e.g Ray Spark Kubernetes).
Experience performance tuning & trouble-shooting.
Pride in building tools to automate routine tasks organized & detailed.
Passionate about developer experience builds abstractions automation tools and reusable components to streamline ML workflows and reduce operational burden.
Ability to communicate effectively both written and verbal with technical and non-technical multi-functional teams.
Results oriented with a desire to work in a fast-paced and collaborative work environment.
PhD/MS/BS in computer science or related field with 8 years of experience in machine learning and strong software engineering skills.
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