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Find the Hidden Signal
in Market Data Noise
Revolution Analytics webinar, 2014-03-18
Andrie de Vries
Business Services Director (Europe)
@RevoAndrie
andrie@revolutionanalytics.com
Revolution Analytics Webinar,
13 March 2013
Agenda
 Find the Hidden Signal in Market Data Noise
 Louis Lovas
 Onetick
 Revolution Analytics, the R project and Financial
applications
 Andrie de Vries
 Revolution Analytics
THE R PROJECT AND
FINANCIAL APPLICATIONS
Revolution Analytics webinar, 2014-03-18
- Started by Robert Gentleman &
Ross Ihaka, 1993
- Version 1.0 in 2000
- 2.5 Million Global Users
- 5000+ “Packages”
- R in Universities = New Talent
- Open Source = Access To
Innovation
- Programming Agility
- Huge range of predictive
analytics
Open source R
Revolution Analytics webinar, 2014-03-18
Image source: http://www.quantmod.com/gallery/
Poll Question
 What are you connecting to in order to
access your data? (please check all that
apply)
 A) RDBMS
 B) Spreadsheet
 C) Time Series / Tick DB
 D) non-relational / no-SQL database
Revolution Analytics webinar, 2014-03-18
Revolution Analytics is a visionary
Revolution Analytics webinar, 2014-03-18
Gartner magic quadrant
Advanced Analytics, 2014
LeadersChallengers
VisionariesOther players
Source: http://inside-bigdata.com/2014/02/25/gartner-reveals-magic-quadrant-advance-analytics/
Big Data In-memory bound Hybrid memory & disk
scalability
Operates on bigger volumes
& factors
Speed of
Analysis
Single threaded Parallel threading Shrinks analysis time
Enterprise
Readiness
Community support Commercial support Delivers full service
production support
Analytic Breadth
& Depth
5000+ innovative
analytic packages
Leverage open source
packages plus Big Data
ready packages
Supercharges R
Commercial
Viability
Risk of deployment of
open source
Commercial license Eliminate risk with open
source
Enhancing R for Enterprise deployment
Revolution Analytics webinar, 2014-03-18
Poll Question
 What is your usual hardware set up?
 A) Workstation
 B) Server
 C) Grid / Cluster
 D) GPU (graphical processing unit)
 E) Hadoop
Revolution Analytics webinar, 2014-03-18
Revolution R Enterprise
Revolution Analytics webinar, 2014-03-18
Language
Interpreter and
Standard R
Algorithm Suites
Development &
Deployment Tooling
Big Data Distributed
Execution Platform
R+CRAN
RevoR
DistributedR
ConnectR
ScaleR
DevelopR
Deploy
R
Revolution R Enterprise
 Big Data Big Analytics Ready
– Enterprise readiness
– High performance analytics
– Multi-platform architecture
– Data source integration
– Development tools, Deployment tools
ScaleR: high performance analytics
Revolution Analytics webinar, 2014-03-18
• Text formats
• SAS
• SPSS
• Teradata
• Netezza
• Greenplum
• Hadoop
• ODBC
• DataStep
• Clean
• Transform
• Refactor
• Sort
• De-duplicate
• Split
• Merge / Join
• Cube
• Summarise
• Significance
test
• Histogram
• Parallelise
(rxExec)
• Regression
• Logistic
Regression
• GLM’s
• Clustering
• Decision trees /
Forests
• Classification
trees
• Predict
• Residual
analysis
• ROC (cum
gain curve)
• Simulation
• Online
• Web API
• BI tools
• Export to
database
• Score in-
database
Import Pre-process Analyse Model Score Deploy
Distil / combine structured and unstructured
Build models that where legacy apps can’t
Iterate and innovate at speed
Operate on bigger data – work inside Hadoop with no M/R programming
More effective models = Better business decisions
R and empirical finance
 The CRAN Taskview (Empirical Finance)
 a rich source of recommendations for tools and packages in the field of
finance
 Topics include:
 Regression models
 Time series
 Finance
 Risk management
 Data and date management
 Other relevant task views:
 Econometrics
 Optimization
 Time Series
 Social sciences
 Robust statistical methods
Image source:
http://timelyportfolio.github.io/rCharts_time_series/history.html
Poll Question
 What is your preferred statistical
programming platform?
 A) MATLAB
 B) STATA
 C) SAS
 D) R / RRE
 E) NAG (Numerical Algorithm Group)
 F) C++, JAVA, PYTHON
Revolution Analytics webinar, 2014-03-18
FIND THE HIDDEN SIGNAL IN
MARKET DATA NOISE
Revolution Analytics webinar, 2014-03-18
Find the Hidden signal in market data noise
Director of Solutions at OneMarketData
Louis Lovas
© 2014 OneMarketData LLC1
ONE TICK®
Accelerating Quant Research and Trading
About OneMarketData, LLC
Founded in 2005, Profitable in 2008
 Self-Funded & Self-Directed.
 No venture capital / Cash-flow positive
Our Pedigree
 President and Founder, Leonid Frants
 Technology Built by Wall Street experts –
Leader in Financial Data Management Technology – OneTick™
 Comprehensive solution financial big data management
90+ Clients Worldwide
 Hedge Funds/Prop Traders, Banks & Brokers, Market Makers,
Marketplaces & Exchanges
Broad range of financial use cases
 Trading model back-testing & Quant Research,
Pricing Models, Pre/Post Trade TCA, …
Bloomberg
© 2014 OneMarketData LLC2
ONE TICK®
Accelerating Quant Research and Trading
About ONETICK
X
CEP & Database
Engine
Tick Server Clients
Programming APIs
C++ C# Java
Business Intelligence
Spotfire / Tableau
Visual Dashboards
Panopticon
Analytics
R language
Reporting
ODBC/SQL
Analytics
filter
enrich
aggregate
transform
correlate
Historical
Data
In-memory
Database
Reference
Data
Historical
Data
 Trading
Systems,
 Web Portals,
 Messaging
 Biz Intelligence,
 Programming
 100+ Built-In High Performance/High Precision Analytical Operators +
 Direct support for Corporate Actions , Corrections, Cancels, Symbol Maps,…
Historical
Data
Real-Time
Feeds
 Price & Volume Analytics, Historical Volatility, …
 Pricing modeling, Spread Trading signaling, Portfolio Analytics, …
Consolidated (Reuters,
Bloomberg, etc).
Exchange feeds.
ASCII/Binary/SQL sources
3rd party(NYSE TAQ,
CME, …)
© 2014 OneMarketData LLC3
ONE TICK®
Accelerating Quant Research and Trading
Delivering on timely business insights from market analysis
True price discovery, volume and trading patterns…
 Revealing unique observations and patterns
 Deriving precise analytics
 Market Data Quality is Key to outcomes
... result in improved trade & pricing models
x
Historical
Data
Reference
Data
Historical
Data Market Data + Analytics ( Equities, Options )  Pricing/Trading models
Markets…
ONETICK
Time Series Database and CEP
Market Analysis from
Streaming data
Equity Underliers – analytical models
Option pricing and risk models
… Predictive Models
Effective Market Analytics and Quantitative Research
Analytics
© 2014 OneMarketData LLC4
ONE TICK®
Accelerating Quant Research and Trading
Industry Advantages Where Your Success Counts
ONETICK Product Demonstration
Introduction to …
 OneTick Analytical Query Design
 Integration with R analytics
 Using OneTick and R for Options
QUESTION SESSION
Revolution Analytics webinar, 2014-03-18

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18Mar14 Find the Hidden Signal in Market Data Noise Webinar

  • 1. Find the Hidden Signal in Market Data Noise Revolution Analytics webinar, 2014-03-18 Andrie de Vries Business Services Director (Europe) @RevoAndrie andrie@revolutionanalytics.com Revolution Analytics Webinar, 13 March 2013
  • 2. Agenda  Find the Hidden Signal in Market Data Noise  Louis Lovas  Onetick  Revolution Analytics, the R project and Financial applications  Andrie de Vries  Revolution Analytics
  • 3. THE R PROJECT AND FINANCIAL APPLICATIONS Revolution Analytics webinar, 2014-03-18
  • 4. - Started by Robert Gentleman & Ross Ihaka, 1993 - Version 1.0 in 2000 - 2.5 Million Global Users - 5000+ “Packages” - R in Universities = New Talent - Open Source = Access To Innovation - Programming Agility - Huge range of predictive analytics Open source R Revolution Analytics webinar, 2014-03-18 Image source: http://www.quantmod.com/gallery/
  • 5. Poll Question  What are you connecting to in order to access your data? (please check all that apply)  A) RDBMS  B) Spreadsheet  C) Time Series / Tick DB  D) non-relational / no-SQL database Revolution Analytics webinar, 2014-03-18
  • 6. Revolution Analytics is a visionary Revolution Analytics webinar, 2014-03-18 Gartner magic quadrant Advanced Analytics, 2014 LeadersChallengers VisionariesOther players Source: http://inside-bigdata.com/2014/02/25/gartner-reveals-magic-quadrant-advance-analytics/
  • 7. Big Data In-memory bound Hybrid memory & disk scalability Operates on bigger volumes & factors Speed of Analysis Single threaded Parallel threading Shrinks analysis time Enterprise Readiness Community support Commercial support Delivers full service production support Analytic Breadth & Depth 5000+ innovative analytic packages Leverage open source packages plus Big Data ready packages Supercharges R Commercial Viability Risk of deployment of open source Commercial license Eliminate risk with open source Enhancing R for Enterprise deployment Revolution Analytics webinar, 2014-03-18
  • 8. Poll Question  What is your usual hardware set up?  A) Workstation  B) Server  C) Grid / Cluster  D) GPU (graphical processing unit)  E) Hadoop Revolution Analytics webinar, 2014-03-18
  • 9. Revolution R Enterprise Revolution Analytics webinar, 2014-03-18 Language Interpreter and Standard R Algorithm Suites Development & Deployment Tooling Big Data Distributed Execution Platform R+CRAN RevoR DistributedR ConnectR ScaleR DevelopR Deploy R Revolution R Enterprise  Big Data Big Analytics Ready – Enterprise readiness – High performance analytics – Multi-platform architecture – Data source integration – Development tools, Deployment tools
  • 10. ScaleR: high performance analytics Revolution Analytics webinar, 2014-03-18 • Text formats • SAS • SPSS • Teradata • Netezza • Greenplum • Hadoop • ODBC • DataStep • Clean • Transform • Refactor • Sort • De-duplicate • Split • Merge / Join • Cube • Summarise • Significance test • Histogram • Parallelise (rxExec) • Regression • Logistic Regression • GLM’s • Clustering • Decision trees / Forests • Classification trees • Predict • Residual analysis • ROC (cum gain curve) • Simulation • Online • Web API • BI tools • Export to database • Score in- database Import Pre-process Analyse Model Score Deploy Distil / combine structured and unstructured Build models that where legacy apps can’t Iterate and innovate at speed Operate on bigger data – work inside Hadoop with no M/R programming More effective models = Better business decisions
  • 11. R and empirical finance  The CRAN Taskview (Empirical Finance)  a rich source of recommendations for tools and packages in the field of finance  Topics include:  Regression models  Time series  Finance  Risk management  Data and date management  Other relevant task views:  Econometrics  Optimization  Time Series  Social sciences  Robust statistical methods Image source: http://timelyportfolio.github.io/rCharts_time_series/history.html
  • 12. Poll Question  What is your preferred statistical programming platform?  A) MATLAB  B) STATA  C) SAS  D) R / RRE  E) NAG (Numerical Algorithm Group)  F) C++, JAVA, PYTHON Revolution Analytics webinar, 2014-03-18
  • 13. FIND THE HIDDEN SIGNAL IN MARKET DATA NOISE Revolution Analytics webinar, 2014-03-18
  • 14. Find the Hidden signal in market data noise Director of Solutions at OneMarketData Louis Lovas
  • 15. © 2014 OneMarketData LLC1 ONE TICK® Accelerating Quant Research and Trading About OneMarketData, LLC Founded in 2005, Profitable in 2008  Self-Funded & Self-Directed.  No venture capital / Cash-flow positive Our Pedigree  President and Founder, Leonid Frants  Technology Built by Wall Street experts – Leader in Financial Data Management Technology – OneTick™  Comprehensive solution financial big data management 90+ Clients Worldwide  Hedge Funds/Prop Traders, Banks & Brokers, Market Makers, Marketplaces & Exchanges Broad range of financial use cases  Trading model back-testing & Quant Research, Pricing Models, Pre/Post Trade TCA, … Bloomberg
  • 16. © 2014 OneMarketData LLC2 ONE TICK® Accelerating Quant Research and Trading About ONETICK X CEP & Database Engine Tick Server Clients Programming APIs C++ C# Java Business Intelligence Spotfire / Tableau Visual Dashboards Panopticon Analytics R language Reporting ODBC/SQL Analytics filter enrich aggregate transform correlate Historical Data In-memory Database Reference Data Historical Data  Trading Systems,  Web Portals,  Messaging  Biz Intelligence,  Programming  100+ Built-In High Performance/High Precision Analytical Operators +  Direct support for Corporate Actions , Corrections, Cancels, Symbol Maps,… Historical Data Real-Time Feeds  Price & Volume Analytics, Historical Volatility, …  Pricing modeling, Spread Trading signaling, Portfolio Analytics, … Consolidated (Reuters, Bloomberg, etc). Exchange feeds. ASCII/Binary/SQL sources 3rd party(NYSE TAQ, CME, …)
  • 17. © 2014 OneMarketData LLC3 ONE TICK® Accelerating Quant Research and Trading Delivering on timely business insights from market analysis True price discovery, volume and trading patterns…  Revealing unique observations and patterns  Deriving precise analytics  Market Data Quality is Key to outcomes ... result in improved trade & pricing models x Historical Data Reference Data Historical Data Market Data + Analytics ( Equities, Options )  Pricing/Trading models Markets… ONETICK Time Series Database and CEP Market Analysis from Streaming data Equity Underliers – analytical models Option pricing and risk models … Predictive Models Effective Market Analytics and Quantitative Research Analytics
  • 18. © 2014 OneMarketData LLC4 ONE TICK® Accelerating Quant Research and Trading Industry Advantages Where Your Success Counts ONETICK Product Demonstration Introduction to …  OneTick Analytical Query Design  Integration with R analytics  Using OneTick and R for Options