Architect a scalable Rate Limiting Engine

Last updated: October 28, 2025

Quick Overview

Design a scalable rate limiting system that handles millions of requests. Discuss trade-offs in consistency, availability, and performance.

Stripe
System Design
Software Engineer
Stripe
October 28, 2025
Software Engineer
Technical Screen
System Design
Hard

70

6

3,017 solved


Design a scalable rate limiting system that handles millions of requests. Discuss trade-offs in consistency, availability, and performance.

Stripe asks this during the Technical Screen to assess your understanding of the full ML lifecycle. They want to see how you translate a business problem into an ML objective, design the feature pipeline, and plan for model monitoring and retraining.

What the Interviewer Expects
  • Design the full ML lifecycle from data collection to model monitoring
  • Address cold start, exploration/exploitation, and model freshness
  • Discuss multi-objective optimization and ranking systems
  • Plan for model debugging, fairness, and bias mitigation
  • Design the feature store and training pipeline for scale
  • Address model versioning, canary deployments, and rollback strategies
  • Discuss the data flywheel and long-term system evolution
Key Topics to Cover
Monitoring and model degradation detection
Data collection and labeling strategy
Model selection and architecture
Online vs offline evaluation
Training pipeline and infrastructure
Feedback loops and model retraining
How to Approach This
  1. Start by clarifying functional and non-functional requirements with the interviewer.
  2. Estimate the scale: QPS, storage, bandwidth. This drives your design decisions.
  3. Draw a high-level architecture first, then deep dive into 1-2 critical components.
  4. Discuss trade-offs explicitly (e.g., consistency vs availability, SQL vs NoSQL).
  5. Address failure scenarios, monitoring, and how the system handles 10x traffic spikes.
Possible Follow-up Questions
  • How would you run A/B tests on different model versions?
  • How would you handle a 10x increase in prediction requests?
  • How would you handle the cold start problem?
  • How would you ensure fairness and reduce bias in the model?
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Sample Answer
Requirements Clarification

Before diving into the architecture, clarify the scope with the interviewer. For scalable Rate Limiting Engine, key functional requirements include: w...

Capacity Estimation

Estimate the scale to drive design decisions. Assume 100M DAU with an average of 10 actions per user per day = 1B requests/day ~ 12K QPS average, ~36K...


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