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Big Data for CIO Big Problem or Big Opportunity?

Big Data for CIO Big Problem or Big Opportunity?. APEC Workshop and 9 th IAC Forum on ICT and Aging Society Singapore , June 15th -17th, 2014 . Professor Alexander Ryjov Russian Presidential Academy of National Economy and Public Administration Department of Economics

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Big Data for CIO Big Problem or Big Opportunity?

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  1. Big Data for CIOBig Problem or Big Opportunity? APEC Workshop and 9th IAC Forum on ICT and Aging Society Singapore, June 15th -17th, 2014 Professor Alexander Ryjov Russian Presidential Academy of National Economy and Public Administration Department of Economics IT Business School Chair of Business Processes Management Systems Head of the Chair

  2. Is “Big Data” a new reality? • Big data: The next frontier for innovation, competition, and productivity. McKinsey Global Institute. (May 2011). http://www.mckinsey.com/insights/mgi/research/technology_and_innovation/big_data_the_next_frontier_for_innovation • IBM. Bringing Big Data to the Enterprise. http://www-01.ibm.com/software/data/bigdata/ • Microsoft Big Data. http://www.microsoft.com/sqlserver/en/us/solutions-technologies/business-intelligence/big-data.aspx • Oracle and Big Data. Big Data for the Enterprise. http://www.oracle.com/us/technologies/big-data/index.html • …

  3. Yes, it is something new • $300B potential annual value to US health care – more than double the total annual health care spending in Spain • € 250B potential annual value to Europe’s public sector administration – more than GDP of Greece • $600B potential annual customer surplus from using personal location data globally • 60% potential increase in retailers’ operating margins possible with big data Ref.: http://www.mckinsey.com/mgi/publications/big_data/index.asp

  4. Why now? • Data storage progress • $600 to buy a disc drive that can store all of the world’s music • 235 TBs data collected by the US Library of Congress in April 2011 • Mobile electronics market • 5B mobile phones in use in 2010 • 195M+ is global notebooks shipments in 2012 (Digitimes Research) • 144,5M tablets was sold in 2012 (IDC) • Sensors and social networks generates amount of data • 30B pieces of content shared in Facebook every months • 40% projected growth in global data generated per year vs. 5% growth in global IT spending • 15 out of 17 sectors in the US have more data stored per company than the US Library of Congress

  5. The global data storage, Exabyte The global computing power, 1018 ops/sec Ref: «The world’s technological capacity to store, communicate, and compute information» by Hilbert &Lopez, Science, 2011

  6. Who generates the data? Devices People

  7. How we can use the data?

  8. Case 1: Retail

  9. Profiles Input: receipts + database of discount program (personal data) Question: who are our high profitable customers? Solution: split (PROFIT) for categories (less then 8200; 8200 – 23300; 23300 – 60500; more then 60500). Build profile for “more then 60500”

  10. Customers’ behavior Input:receipts for 1 year Question:which goods are good for selling in particular time (of the year/ months/ weeks/ days)? Solution: split goods for categories, time for periods • Results: • customers with average check prefer to buy #10 at summer; • these customers prefer to buy ## 5, 7, 9 in conjunction at winter • …

  11. Cross-selling • Input: receipts for 1 year • Question: which goods are most likely to be bought together? • Solution: split goods for categories. • Results: • goods #14 are bought together with #5, #4, #7, # 9 • if we add #6 or #13, we can increase the sales • …

  12. Case 2: Telco

  13. Architecture for data-mining-based recommendation engine Data Analysis: Analysis of customer’s behavior Information Systems: customer transactions Real world: customer behavior Preprocessing ClearingTransformations Identification: Purchasing Ordering Downloading … … Transactions Outswapping Data bases Data Mining Interpretation sms e-mail … Rec. Engine Communications Rules Report

  14. average 1-st week 2-nd week average 1-st week 2-nd week Results - Selling Sales Trend Start of promo

  15. Results: response rate

  16. Case 3: Energy/ Smart Grid

  17. Customers’ behavior Problem definition: Local electric power substation has a retreating feeder and the meter installed on it. The switching station has a unit step voltage control under load with steps (0%, ±2.5%, ± 5%, ± 7.5%, ± 10%). The task is to maintain the voltage deviation at the substation buses at a given level ±5%. Data can be obtained from the meter: the current value of the phase voltages and currents. Quality measure: (total time period when the voltage deviation are out of level  5% without control)/(total time period when the voltage deviation are out of level  5% with control). Results: up to 10 times quality increasing on real data (on the figure: real data (up), control, results (down)).

  18. Case 4: Finance

  19. Suspicious transactions detection • Target group: companies dealing with detection of suspicious or fraudulent transactions (auditors, banks, telecoms); companies with internal audit departments. • Business goal: to efficiently reveal suspicious transactions with greater accuracy and less time. • Technology: neural networks, cluster analysis. • Solution: • Automatic detection of non-typical (suspicious) transactions for further investigation. • Automatic detection of transactions similar to fraudulent, specified by the user. • Results: • Tests showed 7 times more accurate detection of suspicious transactions than currently widespread method.

  20. Credit scoring system • Business goal: objectively assess loan applicant’s credit risks and decide whether to grant a loan or not. • Technology: data mining, associative rules induction. • Solution: • Automatic analysis of existing credit histories along with application forms of current borrowers. Identification of common characteristics and building profiles of “good” and “bad” borrowers. • Instant assessment of loan applicant’s credit risks and recommendation on granting a loan. • Reasoning of recommended decision: why should we deny application? • Results: • Client using Score reports that bank’s share of bad loans is 2 times less than market average.

  21. Case 5: HR

  22. Evaluation of job applicants • Target group: companies with 200+ employees or companies large turnover of certain types of employees (call centers, banks, shops). • Business goal: discover what makes best employees best; estimate job applicant’s potential loyalty. • Method: analysis of company employees’ resumes. • Technology we use: data mining, associative rules induction. • Tasks we solve: • Structure and analyze company employees resumes, combine with performance data if available. • Discover what is in common for top performing employees. • Discover indicators of loyalty/unloyalty. • Build profiles of different groups of employees (e.g. top-performers, most loyal employees, graduates of specific university, etc.) • Result: interactive report with employees profiles and loyalty indicators.

  23. Lesson Big data is an effective tool not for big business only, for every businesses.

  24. How? Factors of success/ failure Ref: Bullish on digital: McKinsey Global Survey results - http://www.mckinsey.com/insights/business_technology/bullish_on_digital_mckinsey_global_survey_results#

  25. How? Level of support Ref: Bullish on digital: McKinsey Global Survey results - http://www.mckinsey.com/insights/business_technology/bullish_on_digital_mckinsey_global_survey_results#

  26. Where? Processes in companies Ref: Bullish on digital: McKinsey Global Survey results - http://www.mckinsey.com/insights/business_technology/bullish_on_digital_mckinsey_global_survey_results#

  27. Question for CIO Where are you?

  28. The sense of the reply Sales HR Sales HR Marketing … Marketing … “Big Data” CIO CIO

  29. The value of the “Big Data” approach • From Data to Information • From Information to Knowledge • From “How Much” to “How Well” questions

  30. Thank you!

  31. Backups

  32. Sales: the best case Trend Genre: A Growth: 96% Rules: Sales Start of promo

  33. Sales: the typical case Genre: B Trend Growth: 55% Rules: Sales Start of promo

  34. Rec. items Non-Rec. items Non- Rec. Non-Rec. items Rec. items Rec. Sales: statistics Sales (rec vs. non-rec.)

  35. Improving employees’ creativity and communications • Target group: companies with 100+ employees. • Business goal: to boost employees’ creativity, invention of new ideas and products. • Method: improving internal communication. The more people communicate the more creative they are. • Technology we use: social networks analysis. • Tasks we solve: • Identification of key experts in the company. Who people go to for an advice? • Identification of initiators. Who starts spreading new ideas and news? • Identification of “bridges” between communities. Who connects departments? • What-if analysis. What will happen if ... (key employee leaves, retires, gets sick; connection between teams breaks)? • Recommendations: how to increase communications sustainability and knowledge sharing between departments?

  36. Employees communicate and share. Here is how: Who is an expert?Who people consult with?

  37. Who spreads the knowledge? Who is the bridge between groups?

  38. Case: The digital engagement of customers accelerates Ref: Bullish on digital: McKinsey Global Survey results - http://www.mckinsey.com/insights/business_technology/bullish_on_digital_mckinsey_global_survey_results#

  39. Across regions, companies’ investments in digital business vary. Ref:Bullish on digital: McKinsey Global Survey results - http://www.mckinsey.com/insights/business_technology/bullish_on_digital_mckinsey_global_survey_results#

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