
Netflix
Mid
SWE4, Netflix Graph Search — backend + distributed search at studio scale
Build and operate Netflix's internal Search-as-a-Service platform (Graph Search) that powers discovery across studio and production tooling, moving data from transactional systems into near-real-time search indices. The role spans backend feature ownership, distributed search cluster scaling, and the team's newer chat-based natural-language search interfaces. Core stack is Java/Python, Spring Boot, GraphQL/gRPC, Kafka, OpenSearch/Elasticsearch, AWS Neptune, Cassandra, and AWS.
走进这场面试
免费 · 一场按这个岗位校准的真语音模拟
这场面试考什么
- Search-as-a-service architecture and index topology at scale
- Near-real-time data pipelines from transactional to search stores
- Backend feature ownership in Java/Spring Boot
- Sharding, throughput, and data consistency for search clusters
- Graph data modeling (AWS Neptune) vs document search (OpenSearch/Elasticsearch)
- Emerging natural-language / RAG-style search interfaces
常见提问方向
Design a near-real-time indexing pipeline from a transactional DB into a search index
When to use a graph database vs a search index for content relationships
Debug/optimize a sharding or throughput bottleneck in a search cluster
Own a backend feature end-to-end in Java — testing and deployment approach
How you'd extend structured search into a natural-language chat interface
相关面试

Netflix
Senior
Integrations Support Engineer 5 - Ads Conversion API

Netflix
Senior
Software Engineering 5 - Ads Conversion Attribution

Netflix
Senior
Software Engineer 5, Ads Reporting

Amazon
Mid
Software Development Engineer, Amazon Music Catalog

Amazon
Mid
Software Development Engineer, Sponsored Product and Brands Sourcing Delivery

Twilio
Senior