hadoop summit sj 2016: next gen big data analytics with apache apex

27
Next Gen Big Data Analytics with Apache Apex Thomas Weise, Pramod Immaneni Hadoop Summit, San Jose, June 30 th 2016

Upload: apache-apex

Post on 16-Apr-2017

2.987 views

Category:

Technology


0 download

TRANSCRIPT

Page 1: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

Next Gen Big Data Analytics with Apache Apex

Thomas Weise, Pramod ImmaneniHadoop Summit, San Jose, June 30th 2016

Page 2: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

Stream Data Processing• Data from variety of sources (IoT, Kafka, files, social media etc.)• Unbounded, continuous data streams

ᵒ Batch can be processed as stream (but a stream is not a batch)• (In-memory) Processing with temporal boundaries (windows)• Stateful operations: Aggregation, Rules, … -> Analytics• Results stored to variety of sinks or destinations

ᵒ Streaming application can also serve data with very low latency

2

Browser

Web Server

Kafka Input(logs)

Decompress, Parse, Filter

Dimensions Aggregate Kafka

LogsKafka

Page 3: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

3

Apache Apex• In-memory, distributed stream processing

• Application logic broken into components called operators that run in a distributed fashion across your cluster

• Natural programming model• Unobtrusive Java API to express (custom) logic• Maintain state and metrics in your member variables

• Scalable, high throughput, low latency• Operators can be scaled up or down at runtime according to the load and SLA• Dynamic scaling (elasticity), compute locality

• Fault tolerance & correctness• Automatically recover from node outages without having to reprocess from

beginning• State is preserved, checkpointing, incremental recovery• End-to-end exactly-once

• Operability• System and application metrics, record/visualize data• Dynamic changes

Page 4: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

4

Apex Platform Overview

Page 5: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

5

Native Hadoop Integration

• YARN is the resource manager

• HDFS for storing persistent state

Page 6: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

6

Application Development Model

A Stream is a sequence of data tuplesA typical Operator takes one or more input streams, performs computations & emits one or more output streams

• Each Operator is YOUR custom business logic in java, or built-in operator from our open source library• Operator has many instances that run in parallel and each instance is single-threaded

Directed Acyclic Graph (DAG) is made up of operators and streams

Directed Acyclic Graph (DAG)

Filtered

Stream

Output StreamTuple Tuple

Filtered Stream

Enriched Stream

Enriched

Stream

er

Operator

er

Operator

er

Operator

er

Operator

er

Operator

er

Operator

Page 7: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

7

Checkpointing

Application window Sliding window and tumbling window

Checkpoint window No artificial latency

Page 8: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

8

Event time based computation

(All) : 5t=4:00 : 2t=5:00 : 3

k=A, t=4:00 : 2k=A, t=5:00 : 1k=B, t=5:00 : 2

(All) : 4t=4:00 : 2t=5:00 : 2

k=A, t=4:00 : 2

K=B, t=5:00 : 2

k=At=5:00

(All) : 1t=4:00 : 1

k=A, t=4:00 : 1

k=Bt=5:59

k=Bt=5:00

k=AT=4:30

k=At=4:00

Page 9: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

9

ScalabilityNxM PartitionsUnifier

0 1 2 3

Logical DAG

0 1 2

1

1 Unifier

1

20

Logical Diagram

Physical Diagram with operator 1 with 3 partitions

0

Unifier

1a

1b

1c

2a

2b

Unifier 3

Physical DAG with (1a, 1b, 1c) and (2a, 2b): No bottleneck

Unifier

Unifier0

1a

1b

1c

2a

2b

Unifier 3

Physical DAG with (1a, 1b, 1c) and (2a, 2b): Bottleneck on intermediate Unifier

Page 10: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

10

Advanced Partitioning

0

1a

1b

2 3 4Unifier

Physical DAG

0 4

3a2a1a

1b 2b 3b

Unifier

Physical DAG with Parallel Partition

Parallel Partition

Container

uopr

uopr1

uopr2

uopr3

uopr4

uopr1

uopr2

uopr3

uopr4

dopr

dopr

doprunifier

unifier

unifier

unifier

Container

Container

NIC

NIC

NIC

NIC

NIC

Container

NIC

Logical Plan

Execution Plan, for N = 4; M = 1

Execution Plan, for N = 4; M = 1, K = 2 with cascading unifiers

Cascading Unifiers

0 1 2 3 4

Logical DAG

Page 11: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

11

Dynamic Partitioning

• Partitioning change while application is runningᵒ Change number of partitions at runtime based on statsᵒ Determine initial number of partitions dynamically

• Kafka operators scale according to number of kafka partitionsᵒ Supports re-distribution of state when number of partitions changeᵒ API for custom scaler or partitioner

2b

2c

3

2a

2d

1b

1a1a 2a

1b 2b

3

1a 2b

1b 2c 3b

2a

2d

3a

Unifiers not shown

Page 12: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

12

Fault Tolerance• Operator state is checkpointed to persistent store

ᵒ Automatically performed by engine, no additional coding neededᵒ Asynchronous and distributed ᵒ In case of failure operators are restarted from checkpoint state

• Automatic detection and recovery of failed containersᵒ Heartbeat mechanismᵒ YARN process status notification

• Buffering to enable replay of data from recovered pointᵒ Fast, incremental recovery, spike handling

• Application master state checkpointedᵒ Snapshot of physical (and logical) planᵒ Execution layer change log

Page 13: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

• In-memory PubSub• Stores results emitted by operator until committed• Handles backpressure / spillover to local disk• Ordering, idempotency

Operator 1

Container 1

BufferServer

Node 1

Operator 2

Container 2

Node 2

Buffer Server

13

Page 14: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

End-to-End Exactly Once

14

• Important when writing to external systems• Data should not be duplicated or lost in the external system in case

of application failures• Common external systems

ᵒ Databasesᵒ Filesᵒ Message queues

• Exactly-once = at-least-once + idempotency + consistent state• Data duplication must be avoided when data is replayed from

checkpointᵒ Operators implement the logic dependent on the external systemᵒ Platform provides checkpointing and repeatable windowing

Page 15: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

15

Data Processing Pipeline ExampleApp Builder

Page 16: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

Application Specification (Java)

16

Java Stream API (declarative)

DAG API (compositional)

Page 17: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

Java Streams API + Windowing

17

Next Release (3.5): Support for Windowing à la Apache Beam (incubating):

@ApplicationAnnotation(name = "WordCountStreamingApiDemo")public class ApplicationWithStreamAPI implements StreamingApplication{ @Override public void populateDAG(DAG dag, Configuration configuration) { String localFolder = "./src/test/resources/data"; ApexStream<String> stream = StreamFactory .fromFolder(localFolder) .flatMap(new Split()) .window(new WindowOption.GlobalWindow(), new TriggerOption().withEarlyFiringsAtEvery(Duration.millis(1000)).accumulatingFiredPanes()) .countByKey(new ConvertToKeyVal()).print(); stream.populateDag(dag); }}

Page 18: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

Writing an Operator

18

Page 19: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

19

Operator Library RDBMS• Vertica• MySQL• Oracle• JDBC

NoSQL• Cassandra, Hbase• Aerospike, Accumulo• Couchbase/ CouchDB• Redis, MongoDB• Geode

Messaging• Kafka• Solace• Flume, ActiveMQ• Kinesis, NiFi

File Systems• HDFS/ Hive• NFS• S3

Parsers• XML • JSON• CSV• Avro• Parquet

Transformations• Filters• Rules• Expression• Dedup• Enrich

Analytics• Dimensional Aggregations

(with state management for historical data + query)

Protocols• HTTP• FTP• WebSocket• MQTT• SMTP

Other• Elastic Search• Script (JavaScript, Python,

R)• Solr• Twitter

Page 20: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

20

Monitoring ConsoleLogical View Physical View

Page 21: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

21

Real-Time Dashboards

Page 22: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

22

Maximize Revenue w/ real-time insightsPubMatic is the leading marketing automation software company for publishers. Through real-time analytics, yield management, and workflow automation, PubMatic enables publishers to make smarter inventory decisions and improve revenue performance

Business Need Apex based Solution Client Outcome

• Ingest and analyze high volume clicks & views in real-time to help customers improve revenue

- 200K events/second data flow

• Report critical metrics for campaign monetization from auction and client logs

- 22 TB/day data generated• Handle ever increasing traffic with

efficient resource utilization• Always-on ad network

• DataTorrent Enterprise platform, powered by Apache Apex

• In-memory stream processing• Comprehensive library of pre-built

operators including connectors• Built-in fault tolerance• Dynamically scalable• Management UI & Data Visualization

console

• Helps PubMatic deliver ad performance insights to publishers and advertisers in real-time instead of 5+ hours

• Helps Publishers visualize campaign performance and adjust ad inventory in real-time to maximize their revenue

• Enables PubMatic reduce OPEX with efficient compute resource utilization

• Built-in fault tolerance ensures customers can always access ad network

Page 23: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

23

Industrial IoT applicationsGE is dedicated to providing advanced IoT analytics solutions to thousands of customers who are using their devices and sensors across different verticals. GE has built a sophisticated analytics platform, Predix, to help its customers develop and execute Industrial IoT applications and gain real-time insights as well as actions.

Business Need Apex based Solution Client Outcome

• Ingest and analyze high-volume, high speed data from thousands of devices, sensors per customer in real-time without data loss

• Predictive analytics to reduce costly maintenance and improve customer service

• Unified monitoring of all connected sensors and devices to minimize disruptions

• Fast application development cycle• High scalability to meet changing business

and application workloads

• Ingestion application using DataTorrent Enterprise platform

• Powered by Apache Apex• In-memory stream processing• Built-in fault tolerance• Dynamic scalability• Comprehensive library of pre-built

operators• Management UI console

• Helps GE improve performance and lower cost by enabling real-time Big Data analytics

• Helps GE detect possible failures and minimize unplanned downtimes with centralized management & monitoring of devices

• Enables faster innovation with short application development cycle

• No data loss and 24x7 availability of applications

• Helps GE adjust to scalability needs with auto-scaling

Page 24: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

24

Smart energy applications

Silver Spring Networks helps global utilities and cities connect, optimize, and manage smart energy and smart city infrastructure. Silver Spring Networks receives data from over 22 million connected devices, conducts 2 million remote operations per year

Business Need Apex based Solution Client Outcome

• Ingest high-volume, high speed data from millions of devices & sensors in real-time without data loss

• Make data accessible to applications without delay to improve customer service

• Capture & analyze historical data to understand & improve grid operations

• Reduce the cost, time, and pain of integrating with 3rd party apps

• Centralized management of software & operations

• DataTorrent Enterprise platform, powered by Apache Apex

• In-memory stream processing• Pre-built operator • Built-in fault tolerance• Dynamically scalable• Management UI console

• Helps Silver Spring Networks ingest & analyze data in real-time for effective load management & customer service

• Helps Silver Spring Networks detect possible failures and reduce outages with centralized management & monitoring of devices

• Enables fast application development for faster time to market

• Helps Silver Spring Networks scale with easy to partition operators

• Automatic recovery from failures

Page 25: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

25

Resources for the use cases• Pubmatic

• https://www.youtube.com/watch?v=JSXpgfQFcU8

• GE• https://www.youtube.com/watch?v=hmaSkXhHNu0• http://

www.slideshare.net/ApacheApex/ge-iot-predix-time-series-data-ingestion-service-using-apache-apex-hadoop

• SilverSpring Networks• https://www.youtube.com/watch?v=8VORISKeSjI• http://www.slideshare.net/ApacheApex/iot-big-data-ingestion-and-processing-in-

hadoop-by-silver-spring-networks

Page 26: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

Q&A

26

Page 27: Hadoop Summit SJ 2016: Next Gen Big Data Analytics with Apache Apex

27

Resources• http://apex.apache.org/• Learn more: http://apex.apache.org/docs.html • Subscribe - http://apex.apache.org/community.html• Download - http://apex.apache.org/downloads.html• Follow @ApacheApex - https://twitter.com/apacheapex• Meetups – http://www.meetup.com/pro/apacheapex/• More examples: https://github.com/DataTorrent/examples• Slideshare:

http://www.slideshare.net/ApacheApex/presentations• https://www.youtube.com/results?search_query=apache+ape

x• Free Enterprise License for Startups -

https://www.datatorrent.com/product/startup-accelerator/