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Big Data & Hadoop
Gizem Akman | SoftwareInfraStructure
Hadoop
• The leading Big Data platform
• Shifts the «RDBMS+Centralized Processing» paradigm with
• Distributed Storage ( Hadoop Distributed File System)
• Distributed Computation ( Hadoop MapReduce Framework)
• Scales linearly!
Hadoop Ecosystem
Hadoop @IBTECH/SMG
Teradata Appliance with Hortonworks HDP2.4
Write Analyze
CORE
Milena
SMG BigData
Analysis
powered by
HDFS
Apache Kafka
Apache Flume
• Apache Flume is a distributed, reliable, and available system for
efficiently collecting, aggregating and moving large amounts of log
data from many different sources to a centralized data store.
Apache Spark
• Apache Spark™ is a fast and general engine for large-scale data
processing.
Sample Analysis Results
for 7th and 17th of October
• 29.1 GB of data collected
• 3.643.185 transactions
• 79.606.260 inner service calls
• ~22 inner service calls per
transaction
Summary
• 35.25 GB of data collected
• 4.362.005 transactions
• 96.390.471 inner service calls
• ~22 inner service calls per
transaction
Oct. 7,2016 Oct. 17,2016
For 32 jvms;
• 931.2 GB of data
• 116.581.920 transactions
• 2.547.400.320 inner service calls
For 32 jvms;
• 1.10 TB of data
• 139.584.160 transactions
• 3.084.495.072 inner service calls
Core Layers
External System
42%
Query
16%
Pom
17%
Code
25%
Total Duration
External System
41%
Query
16%
Pom
17%
Code
26%
Total Duration
Oct. 7,2016 Oct. 17,2016
Core Layers
External System
41%
Oct. 17,2016
External System Durations
CRM
37%
ESBNew
27%
CCENTER
14%
Kredi Kartları
14%
KimlikNoKontrol
4%
SMSGateway
2%
KOMTAŞ
1%
Oct. 17,2016
Query / POM Durations
4%
3%
2%
2%
1%
1%
1%
1%
1%
1%
81%
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
Oct. 7,2016
Names are removed
Service Durations
14%
5%
4%
2%
2%
2%
71%
Contribution to Overall Core Response
Time
1
2
3
4
5
6
7
Names are removed
14%
5%
5%
2%
2%
2%
1%69%
Contribution to Overall Core Response
Time
Names are removed
Oct. 7,2016 Oct. 17,2016
Core Average Response Time : 75.2 ms Core Average Response Time : 80.8 ms
Service DurationsService Name Total Call
Count
Avg
Response
Time (ms)
Core
Response
Time (ms)
% of Core
Response
Time
Core RT after
– 10%
Core RT
after – 20%
Core RT after
– 30%
Core RT after
– 50%
S1 138.771 280,3 75,20 14,2 % 74,14 73,07 72 69,86
S2 398.532 31,89 75,20 4,64 74,85 74,51 74,16 73,46
S3 587.459 20,2 75,20 4,33 74,88 74,55 74,23 73,57
S4 7.714 813,11 75,20 2,29 75,03 74,86 74,69 74,34
S5 11.455 483,97 75,20 2,02 75,05 74,9 74,75 74,44
S6 93.360 53,05 75,20 1,81 75,07 74,93 74,8 74,52
S7 4.422.880 1,05 75,20 1,7 75,08 74,95 74,82 74,57
S8 1.486.604 2,63 75,20 1,43 75,1 74,99 74,88 74,67
S9 7.253 536,72 75,20 1,42 75,1 74,99 74,88 74,67
S10 3.457.667 1,11 75,20 1,4 75,1 74,99 74,89 74,68
Oct. 7,2016
Names are removed
Service Name Total Call
Count
Avg
Response
Time (ms)
Core
Response
Time (ms)
% of Core
Response
Time
Core RT
after – 10%
Core RT
after – 20%
Core RT
after – 30%
Core RT
after – 50%
S1 162769 310,3934 80,8 14,33552 79,64 78,48 77,32 75
S2 703853 22,62099 80,8 4,517756 80,43 80,07 79,7 78,97
S3 477557 33,20403 80,8 4,499302 80,43 80,07 79,7 78,98
S4 5205845 1,486075 80,8 2,195134 80,62 80,44 80,26 79,91
S5 10412 718,6932 80,8 2,123278 80,62 80,45 80,28 79,94
S6 108530 53,68224 80,8 1,653139 80,66 80,53 80,39 80,13
S7 4115612 1,236997 80,8 1,444548 80,68 80,56 80,44 80,21
S8 8431 596,7942 80,8 1,427686 80,68 80,56 80,45 80,22
S9 4875 1009,183 80,8 1,395962 80,68 80,57 80,46 80,23
S10 1765712 2,715116 80,8 1,360308 80,69 80,58 80,47 80,25
S11 9225 504,0494 80,8 1,319376 80,69 80,58 80,48 80,26
Service Durations Oct. 17,2016
Names are removed
Channel Transactionsbased on Finansbank Mobile & Finansbank Internet Banking
18%
14%
7%
5%
4%
52%
Contribution to Overall Response Time for
Channels
1
2
3
4
5
6
Names are removed
18%
13%
6%
6%
4%
53%
Contribution to Overall Response Time for
Channels
Oct. 7,2016 Oct. 17,2016
18%
Names are removed
Transaction Detailfor channels Mobile & Internet Banking,
transaction CHTX1 on Oct. 7
Transaction Detailfor channels Mobile & Internet Banking,
transaction CHTRX1 on Oct. 7
S4
33%
S3
27%
S2
24%
S1
6%
Total Duration
Names are removed
Servis Total ms call count avg rt
S1 835056 2499 334,1561
S2 3373311 61727 54,64887
S3 3890225 141831 27,42859
S4 4724796 218729 21,60114
Channel Transactionsbased on Mobile & Internet Banking on Oct. 7
18%
14%
7%
5%
4%
52%
Contribution to Overall Response Time for Channels
1
2
3
4
5
6
Names are removed
14%
Transaction Detailfor channels Mobile & Internet Banking,
transaction CHTRX2 on Oct. 7
Transaction Detailfor channels 148 & 002,
transaction CHTRX2 on Oct. 7
S1
99%
Total Duration
Names are removed
Servis Total ms call countavg rt (ms)
S1 10491926 21049 498,4524681
S2 46903 21049 2,228276878
S3 24636 21049 1,170411896
S4 10915 21049 0,51855195
Names are removed
Service Detailfor S1 on Oct. 7
99%
Names are removed
Service Detail Analysisfor S1 on Oct. 7
S1
97%
code
3%Total Duration
Names are removed
Item Total Duration (ms) Count Average Duration
S2 27917 10248 2,724141296
S3 63452184 278049 228,205043
code 1600537 307085 5,212032499
T1POMData-UPDATE 127666 10937 11,67285362
T1POMData-CREATE 47540 1748 27,19679634
T1POMData-findONE 128077 10937 11,71043248
Names are removed
Service Detail Analysisfor UI1 on Oct. 7
1
29%
2
14%
3
8%4
8%
5
8%
6
7%
7
6%
8
4%
9
3%
10
3%
11
2%
Names are removed
Service Dependencyfor FINDMUSTERINO_FROM_HESAPNO
ChannelTrx1
Service1
Service2
Service3
Service4
KRD0010 – Branch Screen MUHG001 - Batch
Names are removed
Inner Service Call Countper entry service, on Oct. 7
Entry Service Call Count Total Inner Call Count Average Inner Call Count
s1 1 2544 2544
s2 788 1899814 2410,93
s3 1 2235 2235
s4 2 3626 1813
s5 1 1718 1718
s6 11 17039 1549
s7 47 72513 1542,83
s8 7 10260 1465,71
s9 4 5651 1412,75
Names are removed
Service Code Durationtime elapsed during the execution of Java code, per service, on Oct. 7
0
1000
2000
3000
4000
5000
6000
7000
8000
1 2 3 4 5 6 7 8 9
Service Code Duration (ms)
Series1 Series2
Core Average
Code Duration per
Service : 0,85 ms
Jobs Written So Far
• Analysis results shared in this presentation are obtained from the outputs of the
following 14 jobs
For more information…
Milena Wiki

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Big Data & Hadoop

  • 1. Big Data & Hadoop Gizem Akman | SoftwareInfraStructure
  • 2.
  • 3. Hadoop • The leading Big Data platform • Shifts the «RDBMS+Centralized Processing» paradigm with • Distributed Storage ( Hadoop Distributed File System) • Distributed Computation ( Hadoop MapReduce Framework) • Scales linearly!
  • 6. Teradata Appliance with Hortonworks HDP2.4
  • 10. Apache Flume • Apache Flume is a distributed, reliable, and available system for efficiently collecting, aggregating and moving large amounts of log data from many different sources to a centralized data store.
  • 11. Apache Spark • Apache Spark™ is a fast and general engine for large-scale data processing.
  • 12. Sample Analysis Results for 7th and 17th of October
  • 13. • 29.1 GB of data collected • 3.643.185 transactions • 79.606.260 inner service calls • ~22 inner service calls per transaction Summary • 35.25 GB of data collected • 4.362.005 transactions • 96.390.471 inner service calls • ~22 inner service calls per transaction Oct. 7,2016 Oct. 17,2016 For 32 jvms; • 931.2 GB of data • 116.581.920 transactions • 2.547.400.320 inner service calls For 32 jvms; • 1.10 TB of data • 139.584.160 transactions • 3.084.495.072 inner service calls
  • 14. Core Layers External System 42% Query 16% Pom 17% Code 25% Total Duration External System 41% Query 16% Pom 17% Code 26% Total Duration Oct. 7,2016 Oct. 17,2016
  • 16. External System Durations CRM 37% ESBNew 27% CCENTER 14% Kredi Kartları 14% KimlikNoKontrol 4% SMSGateway 2% KOMTAŞ 1% Oct. 17,2016
  • 17. Query / POM Durations 4% 3% 2% 2% 1% 1% 1% 1% 1% 1% 81% 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 Oct. 7,2016 Names are removed
  • 18. Service Durations 14% 5% 4% 2% 2% 2% 71% Contribution to Overall Core Response Time 1 2 3 4 5 6 7 Names are removed 14% 5% 5% 2% 2% 2% 1%69% Contribution to Overall Core Response Time Names are removed Oct. 7,2016 Oct. 17,2016 Core Average Response Time : 75.2 ms Core Average Response Time : 80.8 ms
  • 19. Service DurationsService Name Total Call Count Avg Response Time (ms) Core Response Time (ms) % of Core Response Time Core RT after – 10% Core RT after – 20% Core RT after – 30% Core RT after – 50% S1 138.771 280,3 75,20 14,2 % 74,14 73,07 72 69,86 S2 398.532 31,89 75,20 4,64 74,85 74,51 74,16 73,46 S3 587.459 20,2 75,20 4,33 74,88 74,55 74,23 73,57 S4 7.714 813,11 75,20 2,29 75,03 74,86 74,69 74,34 S5 11.455 483,97 75,20 2,02 75,05 74,9 74,75 74,44 S6 93.360 53,05 75,20 1,81 75,07 74,93 74,8 74,52 S7 4.422.880 1,05 75,20 1,7 75,08 74,95 74,82 74,57 S8 1.486.604 2,63 75,20 1,43 75,1 74,99 74,88 74,67 S9 7.253 536,72 75,20 1,42 75,1 74,99 74,88 74,67 S10 3.457.667 1,11 75,20 1,4 75,1 74,99 74,89 74,68 Oct. 7,2016 Names are removed
  • 20. Service Name Total Call Count Avg Response Time (ms) Core Response Time (ms) % of Core Response Time Core RT after – 10% Core RT after – 20% Core RT after – 30% Core RT after – 50% S1 162769 310,3934 80,8 14,33552 79,64 78,48 77,32 75 S2 703853 22,62099 80,8 4,517756 80,43 80,07 79,7 78,97 S3 477557 33,20403 80,8 4,499302 80,43 80,07 79,7 78,98 S4 5205845 1,486075 80,8 2,195134 80,62 80,44 80,26 79,91 S5 10412 718,6932 80,8 2,123278 80,62 80,45 80,28 79,94 S6 108530 53,68224 80,8 1,653139 80,66 80,53 80,39 80,13 S7 4115612 1,236997 80,8 1,444548 80,68 80,56 80,44 80,21 S8 8431 596,7942 80,8 1,427686 80,68 80,56 80,45 80,22 S9 4875 1009,183 80,8 1,395962 80,68 80,57 80,46 80,23 S10 1765712 2,715116 80,8 1,360308 80,69 80,58 80,47 80,25 S11 9225 504,0494 80,8 1,319376 80,69 80,58 80,48 80,26 Service Durations Oct. 17,2016 Names are removed
  • 21. Channel Transactionsbased on Finansbank Mobile & Finansbank Internet Banking 18% 14% 7% 5% 4% 52% Contribution to Overall Response Time for Channels 1 2 3 4 5 6 Names are removed 18% 13% 6% 6% 4% 53% Contribution to Overall Response Time for Channels Oct. 7,2016 Oct. 17,2016
  • 22. 18% Names are removed Transaction Detailfor channels Mobile & Internet Banking, transaction CHTX1 on Oct. 7
  • 23. Transaction Detailfor channels Mobile & Internet Banking, transaction CHTRX1 on Oct. 7 S4 33% S3 27% S2 24% S1 6% Total Duration Names are removed Servis Total ms call count avg rt S1 835056 2499 334,1561 S2 3373311 61727 54,64887 S3 3890225 141831 27,42859 S4 4724796 218729 21,60114
  • 24. Channel Transactionsbased on Mobile & Internet Banking on Oct. 7 18% 14% 7% 5% 4% 52% Contribution to Overall Response Time for Channels 1 2 3 4 5 6 Names are removed
  • 25. 14% Transaction Detailfor channels Mobile & Internet Banking, transaction CHTRX2 on Oct. 7
  • 26. Transaction Detailfor channels 148 & 002, transaction CHTRX2 on Oct. 7 S1 99% Total Duration Names are removed Servis Total ms call countavg rt (ms) S1 10491926 21049 498,4524681 S2 46903 21049 2,228276878 S3 24636 21049 1,170411896 S4 10915 21049 0,51855195 Names are removed
  • 27. Service Detailfor S1 on Oct. 7 99% Names are removed
  • 28. Service Detail Analysisfor S1 on Oct. 7 S1 97% code 3%Total Duration Names are removed Item Total Duration (ms) Count Average Duration S2 27917 10248 2,724141296 S3 63452184 278049 228,205043 code 1600537 307085 5,212032499 T1POMData-UPDATE 127666 10937 11,67285362 T1POMData-CREATE 47540 1748 27,19679634 T1POMData-findONE 128077 10937 11,71043248 Names are removed
  • 29. Service Detail Analysisfor UI1 on Oct. 7 1 29% 2 14% 3 8%4 8% 5 8% 6 7% 7 6% 8 4% 9 3% 10 3% 11 2% Names are removed
  • 31. Inner Service Call Countper entry service, on Oct. 7 Entry Service Call Count Total Inner Call Count Average Inner Call Count s1 1 2544 2544 s2 788 1899814 2410,93 s3 1 2235 2235 s4 2 3626 1813 s5 1 1718 1718 s6 11 17039 1549 s7 47 72513 1542,83 s8 7 10260 1465,71 s9 4 5651 1412,75 Names are removed
  • 32. Service Code Durationtime elapsed during the execution of Java code, per service, on Oct. 7 0 1000 2000 3000 4000 5000 6000 7000 8000 1 2 3 4 5 6 7 8 9 Service Code Duration (ms) Series1 Series2 Core Average Code Duration per Service : 0,85 ms
  • 33. Jobs Written So Far • Analysis results shared in this presentation are obtained from the outputs of the following 14 jobs