Applied Research Intern, Proactive Intelligence & Customer World Models (phd / Graduate Co-op)

Block Block · Fintech · ON - Toronto, CA · Remote · 10109 Risk - Prod Dev - Cash App

Research intern role focused on building the Customer World Model (CWM) for proactive intelligence across Block's ecosystem. The role involves end-to-end ownership of research problems at the intersection of representation learning, foundation models, RL, causal reasoning, and agentic systems, with opportunities to publish and ship work into production.

What you'd actually do

  1. Own a research problem end-to-end: framing the question, developing methods, running experiments, publishing findings, and, when successful, shipping your work into production systems used by millions of customers and sellers.
  2. Building rich representations of customers from event streams, financial activity, operational signals, and behavioral data.
  3. Developing systems that can anticipate customer needs and initiate helpful actions before being asked.
  4. Building agents that reason over customer world models and take actions in real environments.
  5. Developing methods that allow intelligence to improve continuously from real-world outcomes.

Skills

Required

  • Currently enrolled in an MS or PhD program in Computer Science, Machine Learning, Statistics, Mathematics, Operations Research, or a related field, and returning to that program after the co-op.
  • Strong foundations in modern machine learning, including deep learning, optimization, representation learning, and foundation models.
  • Experience conducting independent research and translating ideas into working systems.
  • Fluency in Python and experience with PyTorch, JAX, or similar frameworks.
  • Evidence of research excellence through publications, open-source contributions, technical leadership, or equivalent work.

Nice to have

  • Experience with large language models and agentic systems.
  • Experience with reinforcement learning, reward modeling, or sequential decision-making.
  • Experience with representation learning for structured, temporal, or graph data.
  • Familiarity with large-scale training and production ML systems.
  • Interest in building AI systems that directly affect customer outcomes.

What the JD emphasized

  • returning to your program after the co-op
  • shipping your work into production systems
  • Past interns have shipped production systems within months and published their work in the same year.
  • Evidence of research excellence through publications, open-source contributions, technical leadership, or equivalent work.

Other signals

  • customer world models
  • proactive intelligence
  • agentic systems
  • representation learning
  • reinforcement learning