Applied Researcher I

Capital One Capital One · Banking · New York, NY +4

Applied Researcher I at Capital One focused on building AI foundation models and delivering them at scale for customer-facing products. The role involves partnering with cross-functional teams, leveraging various technologies, and conducting applied research to push AI capabilities into next-generation customer experiences. Requires a strong technical background in deep learning, model training, optimization, and a track record of delivering models in production.

What you'd actually do

  1. Partner with a cross-functional team of data scientists, software engineers, machine learning engineers and product managers to deliver AI-powered products that change how customers interact with their money.
  2. Leverage a broad stack of technologies — Pytorch, AWS Ultraclusters, Huggingface, Lightning, VectorDBs, and more — to reveal the insights hidden within huge volumes of numeric and textual data.
  3. Build AI foundation models through all phases of development, from design through training, evaluation, validation, and implementation.
  4. Engage in high impact applied research to take the latest AI developments and push them into the next generation of customer experiences.
  5. Flex your interpersonal skills to translate the complexity of your work into tangible business goals.

Skills

Required

  • PhD in Electrical Engineering, Computer Engineering, Computer Science, AI, Mathematics, or related fields, or M.S. in related fields plus 2 years of experience in Applied Research
  • Experience building large deep learning models (language, images, events, or graphs)
  • Expertise in training optimization, self-supervised learning, robustness, explainability, or RLHF
  • Engineering mindset with a track record of delivering models at scale (training data and inference volumes)
  • Experience in delivering libraries, platform level code or solution level code to existing products
  • Ability to own and pursue a research agenda

Nice to have

  • LLM
  • NLP
  • pre-training of large language models
  • deep learning theory
  • geometric deep learning
  • Graph Neural Networks
  • Sequential Models
  • Multivariate Time Series
  • large scale deep learning based recommender systems
  • production real-time and streaming environments
  • optimization of training of very large deep learning models
  • Model Sparsification
  • Quantization

What the JD emphasized

  • track record of delivering models at scale
  • deep understanding of the foundations of AI methodologies
  • hands-on experience developing AI foundation models and solutions
  • published state-of-the-art methods
  • track record of coming up with high quality ideas or improving upon existing ideas in machine learning, demonstrated by accomplishments such as first author publications or projects
  • own and pursue a research agenda

Other signals

  • building AI foundation models
  • applied research
  • delivering models at scale