Machine Learning Engineer 4
adobe
Job Description
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Design and train models for creative understanding across vision, video, and language
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Build labels and features from LLMs, subject-matter experts, and user activity data
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Deliver pipelines for ingestion, featurization, training, versioning, and inference at scale
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Validate models with offline benchmarks and online A/B tests before release
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Operate production ML on Spark, Kubernetes, and GPU/CPU environments
- You'll work with product managers, research scientists, and engineers across Adobe to connect ML work to customer value — from performance insights to brand-aware recommendations and context for agent workflows.
- You'll mentor other engineers, lead design reviews, and share what you learn through docs, talks, and technical interviews.
What you need to succeed
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Strong Python and PyTorch for model development and deployment
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Deep learning experience across vision, video, NLP, or generative AI (LLM/VLM fine-tuning, embeddings, or RAG)
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End-to-end ML systems: feature engineering, training pipelines, inference, and production monitoring
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Distributed data processing and cloud platforms (Spark, Kubernetes, GCP, AWS, or Azure)
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Clear communication with senior leaders on ML trade-offs and technical direction
- You're comfortable owning ambiguous, multi-team problems with little day-to-day direction. Experience with recommendation systems or marketing and creative content platforms is a plus.