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AdvancedMiner
Product Overview
Software platform for
predictive analytics
and analytical data processing
© Algolytics. All rights reserved. 2
WHAT IS ADVANCEDMINER?
Analytical software suite
• advanced data analysis
tasks
• constructing
data mining
models
• complex data
■ hundreds of models
■ thousands of variables
■ millions of records
■ various data sources
© Algolytics. All rights reserved. 3
Supports all analytical tasks:
• Data extraction and transformation
• Building and evaluating models
• Testing
• Reporting
Complex analytical processes can be defined in a simple way using drag & drop technique.
Advanced users can create their own scripts and new node types.
ADVANCEDMINER
Integrated analytical tool with a graphical environment for data
processing, analysis and modeling.
© Algolytics. All rights reserved. 4
Advanced features:
• Support for SQL language
(including analytical functions)
• Integration with the R package
• Integration with Java
ADVANCEDMINER – SCRIPTING INTERFACE
Limitless possibilities
for advanced users !
© Algolytics. All rights reserved. 5
■ software development on demand
■ working on new analytical features (project
funded by EU, 1.5 million €)
ADVANCEDMINER ADVANTAGES
■ Extensive Customization by user
■ powerful Python-based script language
■ Commercially used in big telco projects
■ 1000s of variables
■ 100s of data GigaBytes
e.g. works with 5TB datamarts
with single tables of 200GB
■ 11 years
of software
commercial use
■ tested and applied
■ in telecoms: 14 mln. customers
and their call data
■ in banks: over 1 mln. customers
and their payments history
Robust
data processing
Flexible
solutions
Reliable
product
Evolving
© Algolytics. All rights reserved. 6
PROJECTS DELIVERED WITH ADVANCEDMINER
Commercial
applications
Credit & Rating
Models
Debt
Collection
Scoring
Fraud
Detection
Churn
Prediction
Campaign
Targeting
Customer
Segmentations
Customer
Lifetime Value
Ad-hoc Data
Analysis &
Reporting
ETL & Data
Quality
Product
recommending
© Algolytics. All rights reserved. 7
ADVANCEDMINER TOOLS
data
manipulation
data mining
models
data
reporting
ETL and data
extraction
data
exploration
A d v a n c e d M i n e r
© Algolytics. All rights reserved. 8
DATA EXPLORATION
• interactive views
of distributions
and statistics
• drill-downs to
source database
• creating
SQL expressions
• virtual attributes
Effective work with
1000s of variables
© Algolytics. All rights reserved. 9
DATA EXPLORATION & REPORTING
Direct export of histograms
to fully editable Excel charts
© Algolytics. All rights reserved. 10
INTERACTIVE DECISION TREES
• Interactive model visualization
• Context zoom
• Alternative splits
© Algolytics. All rights reserved. 11
LOGISTIC REGRESSION
Elaborated Logistic Regression Algorithm
© Algolytics. All rights reserved. 12
SCORING CARDS TOOLS
• Export to MS Excel table
• Basel II scoring quality reports
• efficiency, statistical tests,
stability
Effective development, monitoring
and validation of scoring models
© Algolytics. All rights reserved. 13
TASKS AUTOMATION AND PARAMETRIZATION
Full control of ETL tasks and complex models contruction
• Python-based script
• Extended with SQL and fast data processing procedures
• Use of external libraries
(Java, Python …)
Flexible customization thanks to
powerful scripting language
© Algolytics. All rights reserved. 14
OTHER TOOLS
• Data Mining algorithms
• Self Organizing Maps
• Survival Models
• Association Rules
• Bivariate Probit
• K-means and more
• Distributed teamwork
• sharing tasks and data
• versioning
• Scalability
• on single computer
• as Client – Distributed Server
© Algolytics. All rights reserved. 15
AdvancedMiner users
• Telecoms
• Financial sector
• Customer service companies
REFERENCES
• Polkomtel
• 14 million customers
• predictive analytical models and reporting
for CRM
• Alior Bank
• analytical platform for risk analysis, reporting and
predictive analysis
• More than 50 users
• KDD Cup 2009
• 8th place in fast track
out of 465 teams
• predictive models on data
15 000 cols * 100 000 rows
© Algolytics. All rights reserved. 16
WHAT ARE MY BENEFITS?
Client
benefits
Effective analytical
projects
Flexible
analytics
Reliable
tools
Robust
data processing
Flexible
solutions
Reliable
product
Evolving
Follow news on analytical solutions
at Algolytics.com/blog
click here to open
Read more about AdvancedMiner platform
www.advancedminer.com
Ask us any details:
info@algolytics.com

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AdvancedMiner predictive analytics software platform overview

  • 1. AdvancedMiner Product Overview Software platform for predictive analytics and analytical data processing
  • 2. © Algolytics. All rights reserved. 2 WHAT IS ADVANCEDMINER? Analytical software suite • advanced data analysis tasks • constructing data mining models • complex data ■ hundreds of models ■ thousands of variables ■ millions of records ■ various data sources
  • 3. © Algolytics. All rights reserved. 3 Supports all analytical tasks: • Data extraction and transformation • Building and evaluating models • Testing • Reporting Complex analytical processes can be defined in a simple way using drag & drop technique. Advanced users can create their own scripts and new node types. ADVANCEDMINER Integrated analytical tool with a graphical environment for data processing, analysis and modeling.
  • 4. © Algolytics. All rights reserved. 4 Advanced features: • Support for SQL language (including analytical functions) • Integration with the R package • Integration with Java ADVANCEDMINER – SCRIPTING INTERFACE Limitless possibilities for advanced users !
  • 5. © Algolytics. All rights reserved. 5 ■ software development on demand ■ working on new analytical features (project funded by EU, 1.5 million €) ADVANCEDMINER ADVANTAGES ■ Extensive Customization by user ■ powerful Python-based script language ■ Commercially used in big telco projects ■ 1000s of variables ■ 100s of data GigaBytes e.g. works with 5TB datamarts with single tables of 200GB ■ 11 years of software commercial use ■ tested and applied ■ in telecoms: 14 mln. customers and their call data ■ in banks: over 1 mln. customers and their payments history Robust data processing Flexible solutions Reliable product Evolving
  • 6. © Algolytics. All rights reserved. 6 PROJECTS DELIVERED WITH ADVANCEDMINER Commercial applications Credit & Rating Models Debt Collection Scoring Fraud Detection Churn Prediction Campaign Targeting Customer Segmentations Customer Lifetime Value Ad-hoc Data Analysis & Reporting ETL & Data Quality Product recommending
  • 7. © Algolytics. All rights reserved. 7 ADVANCEDMINER TOOLS data manipulation data mining models data reporting ETL and data extraction data exploration A d v a n c e d M i n e r
  • 8. © Algolytics. All rights reserved. 8 DATA EXPLORATION • interactive views of distributions and statistics • drill-downs to source database • creating SQL expressions • virtual attributes Effective work with 1000s of variables
  • 9. © Algolytics. All rights reserved. 9 DATA EXPLORATION & REPORTING Direct export of histograms to fully editable Excel charts
  • 10. © Algolytics. All rights reserved. 10 INTERACTIVE DECISION TREES • Interactive model visualization • Context zoom • Alternative splits
  • 11. © Algolytics. All rights reserved. 11 LOGISTIC REGRESSION Elaborated Logistic Regression Algorithm
  • 12. © Algolytics. All rights reserved. 12 SCORING CARDS TOOLS • Export to MS Excel table • Basel II scoring quality reports • efficiency, statistical tests, stability Effective development, monitoring and validation of scoring models
  • 13. © Algolytics. All rights reserved. 13 TASKS AUTOMATION AND PARAMETRIZATION Full control of ETL tasks and complex models contruction • Python-based script • Extended with SQL and fast data processing procedures • Use of external libraries (Java, Python …) Flexible customization thanks to powerful scripting language
  • 14. © Algolytics. All rights reserved. 14 OTHER TOOLS • Data Mining algorithms • Self Organizing Maps • Survival Models • Association Rules • Bivariate Probit • K-means and more • Distributed teamwork • sharing tasks and data • versioning • Scalability • on single computer • as Client – Distributed Server
  • 15. © Algolytics. All rights reserved. 15 AdvancedMiner users • Telecoms • Financial sector • Customer service companies REFERENCES • Polkomtel • 14 million customers • predictive analytical models and reporting for CRM • Alior Bank • analytical platform for risk analysis, reporting and predictive analysis • More than 50 users • KDD Cup 2009 • 8th place in fast track out of 465 teams • predictive models on data 15 000 cols * 100 000 rows
  • 16. © Algolytics. All rights reserved. 16 WHAT ARE MY BENEFITS? Client benefits Effective analytical projects Flexible analytics Reliable tools Robust data processing Flexible solutions Reliable product Evolving
  • 17. Follow news on analytical solutions at Algolytics.com/blog click here to open
  • 18. Read more about AdvancedMiner platform www.advancedminer.com Ask us any details: info@algolytics.com