Airbnb

Airbnb

Online marketplace for lodging with strong data science and infrastructure.

4 Rounds ~21 Days Hard
Start Mock Interview

The Interview Loop

Recruiter Screen (30 min)

Standard fit check, behavioral questions, and resume overview.

Technical Loop (3-4 Rounds)

Deep dive into domain knowledge, coding, and system design.

Interview Question Bank

Machine Learning Engineer Technical medium

In our Learning to Rank (LTR) model for search, we want to optimize for NDCG. Explain the difference between pointwise, pairwise, and listwise approaches. Which would you choose for Airbnb search and why?

#Learning to Rank #Information Retrieval #Loss Functions
Machine Learning Engineer Technical hard

How would you handle position bias in Airbnb's search ranking logs when training a new click-through rate (CTR) prediction model?

#Bias Mitigation #Click Models #Feature Engineering
Machine Learning Engineer Technical medium

We want to build a model to predict the likelihood of a guest canceling a booking. The dataset is highly imbalanced (cancellations are rare). What metrics would you use to evaluate this model, and how would you handle the class imbalance during training?

#Imbalanced Data #Evaluation Metrics #Classification

Difficulty Radar

Based on recent AI-sourced data.

Meet Your Interviewers

The "Standard" Interviewer

Senior Engineer

Focuses on core competencies, system constraints, and clear communication.

Simulate

Unwritten Rules

Think Out Loud

Always explain your thought process before writing code or drawing architecture.

Practice Now