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Machine Learning/AI Scientist Intern (PhD), 2026

LinkedIn Netflix Los Angeles, CA
Not Applicable Posted April 3, 2026 Job link
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Requirements
  • Domain expertise in one or more of the following areas:
  • Personalization & Recommender Systems: Using Transformers/LLMs for recommendations, collaborative filtering, content-based recommendation, hybrid systems, and conversational recommenders.
  • Natural Language Processing (NLP): Large Language Models (LLMs), fine-tuning, in-context learning, prompt engineering, alignment, evaluation, text generation, and embeddings.
  • Reinforcement Learning (RL): Offline and online RL, alignment and post-training, preference- and human-feedback-based learning, bandit algorithms.
  • Computer Vision (CV): Image and video understanding, generation, and representation learning.
  • Computer Graphics: 3D modeling and understanding, neural rendering, animation, and related areas.
  • Reliable ML: Robustness, explainability, interpretability.
  • Causal ML: Causal inference, causal discovery, double ML, policy learning, dynamic panel and dynamic choice modeling, matrix completion for counterfactuals.
  • Agentic AI: Developing and evaluating agentic systems that reason, plan, and act autonomously, including tool use, retrieval-augmented reasoning, memory and goal management, and feedback-driven learning.
  • Multimodal Data: Experience in large vision language models, modality fusion and alignment, multimodal retrieval.
  • Experience handling and integrating text, image, video, audio, and other data sources.
  • Model Optimization and Efficiency: Training and inference efficiency, model benchmarking, optimization techniques.
  • ML Platform & Infrastructure: Designing and building scalable systems for model development, training, and deployment, managing large-scale data pipelines and distributed compute environments.
  • General ML Application Engineering: Implementing machine learning solutions across various domains, end-to-end ML pipelines, from experimentation to deployment.
  • Experience programming in at least one programming language (Python, Java, Scala, or C/C++)
  • Familiarity developing ML models using common frameworks (e.g., PyTorch, TensorFlow, Keras) and training on GPUs.
  • Familiarity with distributed training and inference paradigms and associated frameworks (eg.
  • DDP, FSDP, HSDP, Deepspeed)
  • Familiarity with end-to-end machine learning pipelines (e.g. training or production deployment) and common challenges like explainability.
  • Curious, self-motivated, and excited about solving open-ended challenges at Netflix.
  • Great communication skills, both oral and written.
Preferred Skills
  • Familiarity with distributed training and inference paradigms and associated frameworks (eg.
  • DDP, FSDP, HSDP, Deepspeed)
  • Familiarity with end-to-end machine learning pipelines (e.g. training or production deployment) and common challenges like explainability.
  • Curious, self-motivated, and excited about solving open-ended challenges at Netflix.
  • Comfortable with distributed computing environments such as Spark or Presto.
  • Comfortable with software engineering best practices (e.g. version control, testing, code review, etc.).
  • For your application to be considered complete
Education
  • (Not required) – Currently enrolled student pursuing an advanced degree (PhD) in areas such as Computer Science, Machine Learning, Artificial Intelligence, Computer Engineering, Mathematics, Statistics, Data Science, Economics, Computational Biology, Chemistry, Physics, Cognitive Science or a related field