Discretized Streams: A Fault-Tolerant Model for Scalable Stream Processing
Report 2012 en
Authors
MZ
Matei Zaharia
TD
Tathagata Das
HL
Haoyuan Li
Abstract
1 min read
Many "big data" applications need to act on data arriving in real time.However, current programming models for distributed stream processing are relatively low-level, often leaving the user to worry about consistency of state across the system and fault recovery.Furthermore, the models that provide fault recovery do so in an expensive manner, requiring either hot replication or long recovery times.We propose a new programming model, discretized streams (D-Streams), that offers a high-level functional API, strong consistency, and efficient fault recovery.D-Streams support a new recovery mechanism that improves efficiency over the traditional replication and upstream backup schemes in streaming databasesparallel recovery of lost state-and unlike previous systems, also mitigate stragglers.We implement D-Streams as an extension to the Spark cluster computing engine that lets users seamlessly intermix streaming, batch and interactive queries.Our system can process over 60 million records/second at sub-second latency on 100 nodes.
Frank Sifei Luan, Ziming Mao, R. Wang, Chi‐Wei Lin, Amog Kamsetty, Hao Chen, Cheng Su, Balaji Veeramani, Scott Lee, SangBin Cho, Clark Zinzow, Eric Liang, Ion Stoica, Stephanie Wang
Discussion(0)
No comments yet. Be the first to comment.