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Developing High Frequency
Indicators Using Real-Time Tick Data
on Apache Superset and Druid
CBRT Big Data Team
Emre Tokel, Kerem Başol, M. Yağmur Şahin
Zekeriya Besiroglu / Komtas Bilgi Yonetimi
21 March 2019 Barcelona
Agenda
WHO WE ARE
CBRT & Our Team
PROJECT DETAILS
Before, Test Cluster,
Phase 1-2-3, Prod
Migration
HIGH FREQUENCY
INDICATORS
Importance & Goals
CURRENT ARCHITECTURE
Apache Kafka, Spark,
Druid & Superset
WORK IN
PROGRESS
Further analyses
FUTURE PLANS
6
5
4
3
2
1
Who We Are
1
Our Solutions
Data Management
• Data Governance Solutions
• Next Generation Analytics
• 360 Engagement
• Data Security
Analytics
• Data Warehouse Solutions
• Customer Journey Analytics
• Advanced Marketing Analytics Solutions
• Industry-specific analytic use cases
• Online Customer Data Platform
• IoT Analytics
• Analytic Lab Solution
Big Data & AI
• Big Data & AI Advisory Services
• Big Data & AI Accelerators
• Data Lake Foundation
• EDW Optimization / Offloading
• Big Data Ingestion and Governance
• AI Implementation – Chatbot
• AI Implementation – Image Recognition
Security Analytics
• Security Analytic Advisory Services
• Integrated Law Enforcement Solutions
• Cyber Security Solutions
• Fraud Analytics Solutions
• Governance, Risk & Compliance Solutions
• +20 IT , +18 DB&DWH
• +7 BIG DATA
• Lead Archtitect &Big Data /Analytics
@KOMTAS
• Instructor&Consultant
• ITU,MEF,Şehir Uni. BigData Instr.
• Certified R programmer
• Certified Hadoop Administrator
Our Organization
§ The Central Bank of the Republic of Turkey is primarily responsible for steering the
monetary and exchange rate policies in Turkey.
o Price stability
o Financial stability
o Exchange rate regime
o The privilege of printing and issuing banknotes
o Payment systems
• Big Data Engineer• Big Data Engineer
M. Yağmur Şahin Emre Tokel Kerem Başol
• Big Data Team Leader
High Frequency
Indicators
2
1
Importance and Goals
§ To observe foreign exchange markets in real-time
o Are there any patterns regarding to specific time intervals during the day?
o Is there anything to observe before/after local working hours throughout the whole day?
o What does the difference between bid/ask prices tell us?
§ To be able to detect risks and take necessary policy measures in a timely manner
o Developing liquidity and risk indicators based real-time tick data
o Visualizing observations for decision makers in real-time
o Finally, discovering possible intraday seasonality
§ Wouldn’t it be great to be able to correlate with news flow as well?
Project Details 3
2
1
Development of High Frequency Indicators Using Real-Time Tick
Data on Apache Superset and Druid
Phase 1
Prod
migratio
n
Next
phases
Test
Cluster
Phase 2 Phase 3
Test Cluster
§ Our first studies on big data have started on very humble servers
o 5 servers with 32 GB RAM for each
o 3 TB storage
§ HDP 2.6.0.3 installed
o Not the latest version back then
§ Technical difficulties
o Performance problems
o Apache Druid indexing
o Apache Superset maturity
Development of High Frequency Indicators Using Real-Time Tick
Data on Apache Superset and Druid
Phase 1
Prod
migratio
n
Next
phases
Test
Cluster
Phase 2 Phase 3
TREP API
Apache
Kafka
Apache NiFi MongoDB
Apache
Zeppelin &
Power BI
Thomson Reuters Enterprise Platform (TREP)
§ Thomson Reuters provides its subscribers with an enterprise platform that they can
collect the market data as it is generated
§ Each financial instrument on TREP has a unique code called RIC
§ The event queue implemented by the platform can be consumed with the provided
Java SDK
§ We developed a Java application for consuming this event queue to collect tick-data
according to required RICs
TREP API
Apache
Kafka
Apache NiFi MongoDB
Apache
Zeppelin &
Power BI
Apache Kafka
§ The data flow is very fast and quite dense
o We published the messages containing tick data collected by our Java application to a message
queue
o Twofold analysis: Batch and real-time
§ We decided to use Apache Kafka residing on our test big data cluster
§ We created a topic for each RIC on Apache Kafka and published data to related topics
TREP API
Apache
Kafka
Apache NiFi MongoDB
Apache
Zeppelin &
Power BI
Apache NiFi
§ In order to manage the flow, we decided to use Apache NiFi
§ We used KafkaConsumer processor to consume messages from Kafka queues
§ The NiFi flow was designed to be persisted on MongoDB
Our NiFi
Flow
TREP API
Apache
Kafka
Apache NiFi MongoDB
Apache
Zeppelin &
Power BI
MongoDB
§ We had prepared data in JSON format with our Java application
§ Since we have MongoDB installed on our enterprise systems, we decided to persist
this data to MongoDB
§ Although MongoDB is not a part of HDP, it seemed as a good choice for our
researchers to use this data in their analyses
TREP API
Apache
Kafka
Apache NiFi MongoDB
Apache
Zeppelin &
Power BI
Apache Zeppelin
§ We provided our researchers with access to Apache Zeppelin and connection to
MongoDB via Python
§ By doing so, we offered an alternative to the tools on local computers and provided a
unified interface for financial analysis
Business Intelligence on Client Side
§ Our users had to download daily tick-data manually from their Thomson Reuters
Terminals and work on Excel
§ Users were then able to access tick-data using Power BI
o We also provided our users with a news timeline along with the tick-data
We needed more!
§ We had to visualize the data in real-time
o Analysis on persisted data using MongoDB, PowerBI and Apache Zeppelin was not enough
TREP API
Apache
Kafka
Apache NiFi MongoDB
Apache
Zeppelin &
Power BI
Development of High Frequency Indicators Using Real-Time Tick
Data on Apache Superset and Druid
Phase 1
Prod
migratio
n
Next
phases
Test
Cluster
Phase 2 Phase 3
TREP
API
Apache
Kafka
Apache
Druid
Apache
Superset
Apache Druid
§ We needed a database which was able to:
o Answer ad-hoc queries (slice/dice) for a limited window efficiently
o Store historic data and seamlessly integrate current and historic data
o Provide native integration with possible real-time visualization frameworks (preferably from
Apache stack)
o Provide native integration with Apache Kafka
§ Apache Druid addressed all the aforementioned requirements
§ Indexing task was achieved using Tranquility
TREP
API
Apache
Kafka
Apache
Druid
Apache
Superset
Apache Superset
§ Apache Superset was the obvious alternative for real-time visualization since tick-data
was stored on Apache Druid
o Native integration with Apache Druid
o Freely available on Hortonworks service stack
§ We prepared real-time dashboards including:
o Transaction Count
o Bid / Ask Prices
o Contributor Distribution
o Bid - Ask Spread
We needed more, again!
§ Reliability issues with Druid
§ Performance issues
§ Enterprise integration requirements
Development of High Frequency Indicators Using Real-Time Tick
Data on Apache Superset and Druid
Phase 1
Prod
migratio
n
Next
phases
Test
Cluster
Phase 2 Phase 3
Architecture
Internet Data
Enterprise Content
Social Media/Media
Micro Level Data
Commercial Data Vendors
Ingestion
Big Data Platform Data Science
GovernanceData Sources
Development of High Frequency Indicators Using Real-Time Tick
Data on Apache Superset and Druid
Phase 1
Prod
migratio
n
Next
phases
Test
Cluster
Phase 2 Phase 3
TREP API Apache Kafka
Apache
Hive + Druid
Integration
Apache Spark
Apache
Superset
Apache Hive + Druid Integration
§ After setting up our production environment (using HDP 3.0.1.0) and started to
feed data, we realized that data were scattered and we were missing the option to
co-utilize these different data sources
§ We then realized that Apache Hive was already providing Kafka & Druid indexing
service in the form of a simple table creation and querying facility for Druid from
Hive
TREP API Apache Kafka
Apache
Hive + Druid
Integration
Apache Spark
Apache
Superset
Apache Spark
§ Due to additional calculation requirements of our users, we decided to utilize Apache
Spark
§ With Apache Spark 2.4, we used Spark Streaming and Spark SQL contexts together in
the same application
§ In our Spark application
o For every 5 seconds, a 30-second window is created
o On each window, outlier boundaries are calculated
o Outlier data points are detected
Current Architecture
4
3
2
1
Current Architecture & Progress So Far
Java Application
Kafka Topic (real-time)
Kafka Topic (windowed)
TREP Event Queue
Consume Publish
Spark Application
Consume
Publish
Druid Datasource
(real-time)
Druid Datasource
(windowed)
Superset Dashboard
(tick data)
Superset Dashboard
(outlier)
TREP Data Flow
Windowed Spark Streaming
Tick-Data Dashboard
Outlier Dashboard
Work in Progress
5
4
3
2
1
Implementing…
§ Moving average calculation (20-day window)
§ Volatility Indicator
§ Average True Range Indicator (moving average)
o [ max(t) - min(t) ]
o [ max(t) - close(t-1) ]
o [ max(t) - close(t-1) ]
Future Plans
6
5
4
3
2
1
To-Do List
§ Matching data subscription
§ Bringing historical tick data into real-time analysis
§ Possible use of machine learning for intraday indicators
Thank you!
Q & A

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Developing high frequency indicators using real time tick data on apache superset and druid

  • 1. Developing High Frequency Indicators Using Real-Time Tick Data on Apache Superset and Druid CBRT Big Data Team Emre Tokel, Kerem Başol, M. Yağmur Şahin Zekeriya Besiroglu / Komtas Bilgi Yonetimi 21 March 2019 Barcelona
  • 2. Agenda WHO WE ARE CBRT & Our Team PROJECT DETAILS Before, Test Cluster, Phase 1-2-3, Prod Migration HIGH FREQUENCY INDICATORS Importance & Goals CURRENT ARCHITECTURE Apache Kafka, Spark, Druid & Superset WORK IN PROGRESS Further analyses FUTURE PLANS 6 5 4 3 2 1
  • 4. Our Solutions Data Management • Data Governance Solutions • Next Generation Analytics • 360 Engagement • Data Security Analytics • Data Warehouse Solutions • Customer Journey Analytics • Advanced Marketing Analytics Solutions • Industry-specific analytic use cases • Online Customer Data Platform • IoT Analytics • Analytic Lab Solution Big Data & AI • Big Data & AI Advisory Services • Big Data & AI Accelerators • Data Lake Foundation • EDW Optimization / Offloading • Big Data Ingestion and Governance • AI Implementation – Chatbot • AI Implementation – Image Recognition Security Analytics • Security Analytic Advisory Services • Integrated Law Enforcement Solutions • Cyber Security Solutions • Fraud Analytics Solutions • Governance, Risk & Compliance Solutions
  • 5. • +20 IT , +18 DB&DWH • +7 BIG DATA • Lead Archtitect &Big Data /Analytics @KOMTAS • Instructor&Consultant • ITU,MEF,Şehir Uni. BigData Instr. • Certified R programmer • Certified Hadoop Administrator
  • 6. Our Organization § The Central Bank of the Republic of Turkey is primarily responsible for steering the monetary and exchange rate policies in Turkey. o Price stability o Financial stability o Exchange rate regime o The privilege of printing and issuing banknotes o Payment systems
  • 7. • Big Data Engineer• Big Data Engineer M. Yağmur Şahin Emre Tokel Kerem Başol • Big Data Team Leader
  • 9. Importance and Goals § To observe foreign exchange markets in real-time o Are there any patterns regarding to specific time intervals during the day? o Is there anything to observe before/after local working hours throughout the whole day? o What does the difference between bid/ask prices tell us? § To be able to detect risks and take necessary policy measures in a timely manner o Developing liquidity and risk indicators based real-time tick data o Visualizing observations for decision makers in real-time o Finally, discovering possible intraday seasonality § Wouldn’t it be great to be able to correlate with news flow as well?
  • 11. Development of High Frequency Indicators Using Real-Time Tick Data on Apache Superset and Druid Phase 1 Prod migratio n Next phases Test Cluster Phase 2 Phase 3
  • 12. Test Cluster § Our first studies on big data have started on very humble servers o 5 servers with 32 GB RAM for each o 3 TB storage § HDP 2.6.0.3 installed o Not the latest version back then § Technical difficulties o Performance problems o Apache Druid indexing o Apache Superset maturity
  • 13. Development of High Frequency Indicators Using Real-Time Tick Data on Apache Superset and Druid Phase 1 Prod migratio n Next phases Test Cluster Phase 2 Phase 3
  • 14. TREP API Apache Kafka Apache NiFi MongoDB Apache Zeppelin & Power BI
  • 15. Thomson Reuters Enterprise Platform (TREP) § Thomson Reuters provides its subscribers with an enterprise platform that they can collect the market data as it is generated § Each financial instrument on TREP has a unique code called RIC § The event queue implemented by the platform can be consumed with the provided Java SDK § We developed a Java application for consuming this event queue to collect tick-data according to required RICs
  • 16. TREP API Apache Kafka Apache NiFi MongoDB Apache Zeppelin & Power BI
  • 17. Apache Kafka § The data flow is very fast and quite dense o We published the messages containing tick data collected by our Java application to a message queue o Twofold analysis: Batch and real-time § We decided to use Apache Kafka residing on our test big data cluster § We created a topic for each RIC on Apache Kafka and published data to related topics
  • 18. TREP API Apache Kafka Apache NiFi MongoDB Apache Zeppelin & Power BI
  • 19. Apache NiFi § In order to manage the flow, we decided to use Apache NiFi § We used KafkaConsumer processor to consume messages from Kafka queues § The NiFi flow was designed to be persisted on MongoDB
  • 21. TREP API Apache Kafka Apache NiFi MongoDB Apache Zeppelin & Power BI
  • 22. MongoDB § We had prepared data in JSON format with our Java application § Since we have MongoDB installed on our enterprise systems, we decided to persist this data to MongoDB § Although MongoDB is not a part of HDP, it seemed as a good choice for our researchers to use this data in their analyses
  • 23. TREP API Apache Kafka Apache NiFi MongoDB Apache Zeppelin & Power BI
  • 24. Apache Zeppelin § We provided our researchers with access to Apache Zeppelin and connection to MongoDB via Python § By doing so, we offered an alternative to the tools on local computers and provided a unified interface for financial analysis
  • 25. Business Intelligence on Client Side § Our users had to download daily tick-data manually from their Thomson Reuters Terminals and work on Excel § Users were then able to access tick-data using Power BI o We also provided our users with a news timeline along with the tick-data
  • 26. We needed more! § We had to visualize the data in real-time o Analysis on persisted data using MongoDB, PowerBI and Apache Zeppelin was not enough
  • 27. TREP API Apache Kafka Apache NiFi MongoDB Apache Zeppelin & Power BI
  • 28. Development of High Frequency Indicators Using Real-Time Tick Data on Apache Superset and Druid Phase 1 Prod migratio n Next phases Test Cluster Phase 2 Phase 3
  • 30. Apache Druid § We needed a database which was able to: o Answer ad-hoc queries (slice/dice) for a limited window efficiently o Store historic data and seamlessly integrate current and historic data o Provide native integration with possible real-time visualization frameworks (preferably from Apache stack) o Provide native integration with Apache Kafka § Apache Druid addressed all the aforementioned requirements § Indexing task was achieved using Tranquility
  • 32. Apache Superset § Apache Superset was the obvious alternative for real-time visualization since tick-data was stored on Apache Druid o Native integration with Apache Druid o Freely available on Hortonworks service stack § We prepared real-time dashboards including: o Transaction Count o Bid / Ask Prices o Contributor Distribution o Bid - Ask Spread
  • 33. We needed more, again! § Reliability issues with Druid § Performance issues § Enterprise integration requirements
  • 34. Development of High Frequency Indicators Using Real-Time Tick Data on Apache Superset and Druid Phase 1 Prod migratio n Next phases Test Cluster Phase 2 Phase 3
  • 35. Architecture Internet Data Enterprise Content Social Media/Media Micro Level Data Commercial Data Vendors Ingestion Big Data Platform Data Science GovernanceData Sources
  • 36. Development of High Frequency Indicators Using Real-Time Tick Data on Apache Superset and Druid Phase 1 Prod migratio n Next phases Test Cluster Phase 2 Phase 3
  • 37. TREP API Apache Kafka Apache Hive + Druid Integration Apache Spark Apache Superset
  • 38. Apache Hive + Druid Integration § After setting up our production environment (using HDP 3.0.1.0) and started to feed data, we realized that data were scattered and we were missing the option to co-utilize these different data sources § We then realized that Apache Hive was already providing Kafka & Druid indexing service in the form of a simple table creation and querying facility for Druid from Hive
  • 39. TREP API Apache Kafka Apache Hive + Druid Integration Apache Spark Apache Superset
  • 40. Apache Spark § Due to additional calculation requirements of our users, we decided to utilize Apache Spark § With Apache Spark 2.4, we used Spark Streaming and Spark SQL contexts together in the same application § In our Spark application o For every 5 seconds, a 30-second window is created o On each window, outlier boundaries are calculated o Outlier data points are detected
  • 41.
  • 43. Current Architecture & Progress So Far Java Application Kafka Topic (real-time) Kafka Topic (windowed) TREP Event Queue Consume Publish Spark Application Consume Publish Druid Datasource (real-time) Druid Datasource (windowed) Superset Dashboard (tick data) Superset Dashboard (outlier)
  • 49. Implementing… § Moving average calculation (20-day window) § Volatility Indicator § Average True Range Indicator (moving average) o [ max(t) - min(t) ] o [ max(t) - close(t-1) ] o [ max(t) - close(t-1) ]
  • 51. To-Do List § Matching data subscription § Bringing historical tick data into real-time analysis § Possible use of machine learning for intraday indicators