Tachyon workshop 2015-07-19

Post on 14-Aug-2015

164 views 1 download

Tags:

Transcript of Tachyon workshop 2015-07-19

Bin Fan, Tachyon NexusJuly 19, 2015 @ Tachyon Workshop

tachyon-project.org

A Reliable Memory-Centric Distributed

Storage System

• Founded by Tachyon creators and top contributors

• $7.5 million Series A from Andreessen Horowitz

• Committed to Tachyon Open Source

• www.tachyonnexus.com

2

3

Outline

• Overview–Motivation– Tachyon Architecture– Using Tachyon

• Open Source– Status– Production Use Cases

• Roadmap

4

Outline

• Overview–Motivation– Tachyon Architecture– Using Tachyon

• Open Source– Status– Production Use Cases

• Roadmap

5

Started From UCB AMPLab

Berkeley Data Analytics Stack (BDAS)

Cluster manager Parallel computation framework

Reliable, distributed memory-centric storage system

6

7

Why Tachyon?

Memory is Fast

• RAM throughput increasing exponentially

• Disk throughput increasing slowly

8

Memory-locality key to interactive response times

Memory is Cheaper

source: jcmit.com9

Realized by many…

10

11

Is theProblem Solved?

12

Missing a Solution for the Storage Layer

An Example: -

• Fast, in-memory data processing framework– Keep one in-memory copy inside JVM– Track lineage of operations used to derive

data– Upon failure, use lineage to recompute

datamap

filter map

joinreduc

e

Lineage Tracking

13

Issue 1

14

Data Sharing is the bottleneck in analytics

pipeline:Slow writes to diskSpark Job1

Spark memblock manager

block 1

block 3

Spark Job2

Spark memblock manager

block 3

block 1

HDFS / Amazon S3block

1block

3

block 2

block 4

storage engine & execution enginesame process(slow writes)

Issue 1

15

Spark Job

Spark memblock manager

block 1

block 3

Hadoop MR Job

YARN

HDFS / Amazon S3block

1block

3

block 2

block 4

Data Sharing is the bottleneck in analytics

pipeline:Slow writes to diskstorage engine &

execution enginesame process(slow writes)

Issue 2

16

Spark Task

Spark memoryblock manager

block 1

block 3

HDFS / Amazon S3block 1

block 3

block 2

block 4

execution engine &

storage enginesame process

Cache loss when process crashes

Issue 2

17

crash

Spark memoryblock manager

block 1

block 3

HDFS / Amazon S3block 1

block 3

block 2

block 4

execution engine &

storage enginesame process

Cache loss when process crashes

HDFS / Amazon S3

Issue 2

18

block 1

block 3

block 2

block 4

execution engine &

storage enginesame process

crash

Cache loss when process crashes

HDFS / Amazon S3

Issue 3

19

In-memory Data Duplication &

Java Garbage CollectionSpark Task1

Spark memblock manager

block 1

block 3

Spark Task2

Spark memblock manager

block 3

block 1

block 1

block 3

block 2

block 4

execution engine &

storage enginesame process(duplication & GC)

Tachyon

Reliable data sharing atmemory-speed within and

across cluster frameworks/jobs

20

Technical Overview

Ideas• A memory-centric storage

architecture• Push lineage down to storage layer• Manage tiered storage

Facts• One data copy in memory• Re-computation for fault-tolerance

21

Apache

Spark

Apache MR

Apache

HBaseH2O Apach

e FlinkImpal

a

S3Gluste

rFSHDFS Swift NFS Ceph ……

……

Stack

22

Tachyon Memory-Centric Architecture

23

Tachyon Memory-Centric Architecture

24

Lineage in Tachyon

25

Issue 1 revisited

26

Memory-speed data sharing

among jobs in different frameworks

execution engine &

storage enginesame process(fast writes)

Spark Job

Spark mem

Hadoop MR Job

YARN

HDFS / Amazon S3block

1block

3

block 2

block 4

HDFSdisk

block 1

block 3

block 2

block 4Tachyonin-memory

block 1

block 3 block 4

HDFS / Amazon S3block 1

block 3

block 2

block 4

Tachyonin-memory

block 1

block 3 block 4

Issue 2 revisited

27

Spark Task

Spark memoryblock manager

execution engine &

storage enginesame process

Keep in-memory data safe,even when a job crashes.

Issue 2 revisited

28

HDFSdisk

block 1

block 3

block 2

block 4

execution engine &

storage enginesame process

Tachyonin-memory

block 1

block 3 block 4

crash

HDFS / Amazon S3block 1

block 3

block 2

block 4

Keep in-memory data safe,even when a job crashes.

Issue 3 revisited

29

No in-memory data duplication,

much less GCSpark Task

Spark mem

Spark Task

Spark mem

HDFS / Amazon S3block

1block

3

block 2

block 4

execution engine &

storage enginesame process(no duplication & GC) HDFS

diskblock 1

block 3

block 2

block 4Tachyonin-memory

block 1

block 3 block 4

Comparison with In-Memory HDFS

30

How easy / hard to use Tachyon?

31

Spark/MapReduce/Shark without Tachyon

• Sparkscala> val file = sc.textFile(“hdfs://ip:port/path”)

• Hadoop MapReduce$ hadoop jar hadoop-examples-1.0.4.jar wordcount hdfs://localhost:19998/input hdfs://localhost:19998/output

• SharkCREATE TABLE orders_cached AS SELECT * FROM orders;

32

Spark/MapReduce/Sharkwith Tachyon

• Sparkscala> val file = sc.textFile(“tachyon://ip:port/path”)

• Hadoop MapReduce$ hadoop jar hadoop-examples-1.0.4.jar wordcount tachyon://localhost:19998/input tachyon://localhost:19998/output

• SharkCREATE TABLE orders_tachyon AS SELECT * FROM orders;

33

Outline

• Overview–Motivation– Tachyon Architecture– Using Tachyon

• Open Source– Status– Production Use Cases

• Roadmap

34

Open Source Status

• Started at UC Berkeley AMPLab in Summer 2012

• Apache License 2.0, Version 0.7 (July 2015)

• Deployed at > 50 companies (July 2014)• 30+ Companies Contributing• Spark/MapReduce/Flink applications can run

without code change

35

36

Contributors Growth

v0.4Feb ‘14

v0.3Oct ‘13

v0.2Apr ‘13

v0.1Dec ‘12

v0.6Mar ‘15

v0.5Jul ‘14

v0.7Jul ‘15

1 3

15

30

46

70

100+

37

Codebase Growth

v0.4Feb ‘14

v0.3Oct ‘13

v0.2Apr ‘13

v0.6Mar ‘15

v0.5Jul ‘14

v0.7Jul ‘15

465commits

696commits

1080commits

1610commits

2884commits

4969commits

Open Community

38

Berkeley Contrib-utors

Non-Berkeley Contributors

Thanks to Our Contributors!Aaron DavidsonAbhiraj ButalaAchal SoniAlbert ChuAli GhodsiAndrew AshAnurag KhandelwalAslan BekirovBill ZhaoBin FanBradley ChildsCalvin JiaCarson WangChao ChenCheng ChangCheng HaoColin Patrick McCabeDan Crankshaw

Darion YaphetDavid CapwellDavid ZhuDina LeventolDu LiFei WangGene PangGerald ZhangGrace HuangHaoyuan LiHenry SaputraHobin YoonHuamin ChenJacky LiJey KottalamJingxin FengJoseph TangJuan Zhou

Jun AokiKun XuLukasz JastrzebskiLuogan KunManu GoyalMark HamstraMingfei ShiMubarak SeyedNan DunNick LanhamOrcun SimsekPengfei XuanQianhao DongQifan PuRamaraju IndukuriRaymond LiuRob VesseRobert Metzger

Rong GuSean ZhongSeonghwan MoonShaoshan LiuShivaram VenkataramanShu PengSrinivas ParayyaTao WangThu KyawTimothy St. ClairVaishnav KovvuriVikram SreekantiXi LiuXiaomeng HuangXiaomin ZhangXing LinYi LiuZhao Zhang

39

Tachyon Usage

40

Under Filesystem Choices(Big Data, Cloud, HPC, Enterprise)

41

Use Case: Baidu

• Framework: SparkSQL• Under Storage: Baidu’s File System• Storage Media: MEM + HDD• 100+ nodes deployment• 1PB+ managed space• 30x Performance Improvement

More Details: www.meetup.com/Tachyon42

Use Case: a SAAS Company

• Framework: Impala

• Under Storage: S3

• Storage Media: MEM + SSD

• 15x Performance Improvement

43

Use Case: an Oil Company

• Framework: Spark

• Under Storage: GlusterFS

• Storage Media: MEM only

• Analyzing data in traditional storage

44

Use Case: a SAAS Company

• Framework: Spark

• Under Storage: S3

• Storage Media: SSD only

• Elastic Tachyon deployment

45

Outline

• Overview–Motivation– Tachyon Architecture– Using Tachyon

• Open Source– Status– Production Use Cases

• Roadmap

46

New Features

• Lineage in Storage (alpha)• Tiered Storage (alpha)

47

New Features

• Lineage in Storage (alpha)• Tiered Storage (alpha)• Data Serving• Support for New Hardware• …• Your New Feature!

48

49

Tachyon’s Goal?

Distributed Memory-Centric Storage:

Better Assist Other Components

Welcome Collaboration!

50

JIRA New Contributor Tasks

Apache

Spark

Apache MR

Apache

HBaseH2O Apach

e FlinkImpal

a

S3Gluste

rFSHDFS Swift NFS Ceph ……

……

• Website: http://tachyon-project.org

• Github: https://github.com/amplab/tachyon

• Meetup: http://www.meetup.com/Tachyon

• Training program: coming soon

• Tachyon Nexus is hiring

• News Letter Subscription: http://goo.gl/mwB2sX

• Email: binfan@tachyonnexus.com51