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

Block (Square)
San Francisco, US
RemoteCareer-pivot friendly

Who this role is best for

Best suited to graduate students in machine learning or related fields who want hands-on research experience with large-scale customer data and proactive AI systems.

Best fit for

  • PhD candidates with strong ML foundations and independent research experience
    — “Currently enrolled in an MS or PhD program in Computer Science, Machine Learning, Statistics, Mathematics, Operations Research, or a related field
  • Researchers interested in building AI systems that understand and anticipate customer needs
    — “We're looking for researchers interested in building systems that understand people, learn from experience, and improve over time
  • Those with experience in representation learning, foundation models, or reinforcement learning
    — “Strong foundations in modern machine learning, including deep learning, optimization, representation learning, and foundation models

Things to consider

  • 8-month co-op requires returning to your graduate program afterward
    — “Duration: Fall/Winter 2026 co-op — 8 months, flexible start September 2026
  • Must be comfortable owning a research problem end-to-end
    — “You'll own a research problem end-to-end: framing the question, developing methods, running experiments, publishing findings

How to stand out

  • Highlight publications or open-source contributions that demonstrate research excellence
    — “Evidence of research excellence through publications, open-source contributions, technical leadership, or equivalent work
  • Showcase experience with large language models or agentic systems
    — “Experience with large language models and agentic systems
  • Emphasize projects where you translated research into working systems
    — “Experience conducting independent research and translating ideas into working systems
Pace · SteadyCollaboration · MediumAutonomy · HighDecision Impact · IndustryLevel · Mid Level

Derived from job-description analysis by Serendipath's career intelligence engine.

What success looks like

  • Developed methods for proactive intelligence
  • Shipped production systems
  • Published research findings
Typical background
Graduate student (MS or PhD)

Skills & requirements

Required

AI ResearchProactive IntelligenceCustomer World ModelsMachine Learning

Preferred

Reinforcement LearningCausal Reasoning

Stack & domain

Representation LearningFoundation ModelsReinforcement LearningCausal ReasoningAgentic SystemsProduct IntelligenceResearchProblem SolvingAIMachine Learning

About the role

Original posting from Block (Square)

Team: Apollo — Block Applied R&D

Location: Remote (US / Canada)

Duration: Fall/Winter 2026 co-op — 8 months, flexible start September 2026

Level: Graduate student (MS or PhD, returning to your program after the co-op)

About Apollo

Apollo leads Block's efforts to build the Customer World Model (CWM): a continuously evolving representation of each customer's goals, context, history, constraints, and likely future needs.

The CWM powers proactive intelligence across Block's ecosystem. Instead of customers navigating products in search of features, intelligence observes their world, understands what matters, anticipates what comes next, and initiates actions on their behalf.

We believe the next generation of AI products will not be defined by chat interfaces or isolated agents. They will be defined by rich world models that enable systems to reason over a customer's evolving state, make better decisions, and learn continuously from outcomes. Apollo designs, prototypes, and guides the development of this intelligence layer.

About the role

We're hiring a small cohort of graduate research interns to help build the foundations of proactive intelligence.

This is not a traditional internship. You'll 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.

You'll work at the intersection of representation learning, foundation models, reinforcement learning, causal reasoning, agentic systems, and product intelligence. The goal is not simply to build smarter models, but to build systems that develop a deeper understanding of customers and use that understanding to make better decisions over time.

Past interns have shipped production systems within months and published their work in the same year.

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.

Examples include:

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.

Examples include:

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.

Examples include:

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.

Examples include:

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.

Examples include:

Simulated customer environments

Longitudinal evaluation

Decision quality metrics

Safety and reliability benchmarks

What we're looking for

We're looking for researchers interested in building systems that understand people, learn from experience, and improve over time.

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.

Application Guidelines

Candidates may submit up to 9 active applications within a 60-day period. Reapplications to the same role are accepted 90 days after a previous application has been reviewed.

Use of AI in Our Hiring Process

We may use automated AI tools to evaluate job applications for efficiency and consistency. These tools comply with local regulations, including bias audits, and we handle all personal data in accordance with state and local privacy laws. 

Contact us here with hiring practice or data usage questions.

Every benefit we offer is designed with one goal: empowering you to do the best work of your career while building the life you want. Remote work, medical insurance, flexible time off, retirement savings plans, and modern family planning are just some of our offering. Check out our other benefits at Block.

Block, Inc. (NYSE: XYZ) builds technology to increase access to the global economy. Each of our brands unlocks different aspects of the economy for more people. Square makes commerce and financial services accessible to sellers. Cash App is the easy way to spend, send, and store money. Afterpay is transforming the way customers manage their spending over time. TIDAL is a music platform that empowers artists to thrive as entrepreneurs. Bitkey is a simple self-custody wallet built for bitcoin. Proto is a suite of bitcoin mining products and services. Together, we’re helping build a financial system that is open to everyone.

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Source: Block (Square) careers

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