Applied Research Intern, Proactive Intelligence & Customer World Models
Graduate research intern (MS/PhD) building Customer World Models and proactive intelligence systems using representation learning, RL, and agentic decision-making. Own research end-to-end from framing to production deployment.
What you'll work on
Depending on your interests and Apollo's roadmap, you'll focus on one or more of the following areas:
Customer World Models
Building rich representations of customers from event streams, financial activity, operational signals, and behavioral data.
- Representation learning over long-horizon customer histories
- Event-based foundation models
- Multi-modal customer representations spanning structured, sequential, and graph data
- Memory architectures for long-term customer understanding
Proactive Intelligence
Developing systems that can anticipate customer needs and initiate helpful actions before being asked.
- Opportunity detection and next-best-action systems
- Long-horizon planning and decision-making
- Preference and goal inference
- Learning when intervention creates value versus friction
Agentic Decision Systems
Building agents that reason over customer world models and take actions in real environments.
- Tool use and planning
- Multi-step reasoning over customer state
- Autonomous workflow execution
- Recovery and adaptation under uncertainty
Learning from Feedback Loops
Developing methods that allow intelligence to improve continuously from real-world outcomes.
- Reinforcement learning from customer and product feedback
- Reward modeling and preference learning
- Counterfactual evaluation
- Credit assignment over long decision horizons
Evaluation and Measurement
Building evaluation frameworks that predict real-world performance, trust, and customer value.
- Simulated customer environments
- Longitudinal evaluation
- Decision quality metrics
- Safety and reliability benchmarks
What we're looking for
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 you'll get
- Direct mentorship from researchers working on the future of proactive intelligence at Block.
- Access to large-scale datasets, modern infrastructure, frontier models, and substantial compute resources.
- Opportunities to publish and contribute to open-source projects.
- A chance to shape foundational technology that could power the next generation of Block products.
- Exposure to both scientific research and product deployment, with a clear path from idea to impact.