SlideShare ist ein Scribd-Unternehmen logo
1 von 13
Downloaden Sie, um offline zu lesen
Story of Building a Telecom
Data Solution
Sawinder Pal Kaur, PhD
Data Scientist, SAP Labs
Outline
1. Define business objectives and translating business
problem into data science problem
2. Introduction to Telecom data - data scale, volume,
continuous and categorical variables, static and dynamic
data
3. Architecture and data processing pipeline: Big data
handling and data science methods for Categorical
feature selection
4. Solution Engineering: How to keep project managers do
feature selection and identify the opportunities to
optimize the existing plans and services?
Business Objective
Business Objective
• Personalize
recommendation
• More customer satisfaction
• Improved Customer
retention
• Increased frequency of
selling
• Better mix of products
• Increased customer loyalty
• Better decision on coupons
and discounts
• Develop effective strategy for
new product launches
• Better offers to specific
customer profile
• Better product design /
pricing
• Improve quality of service
for highest margin
customers
• Invest where highest
margin customers are
using the network
resources
Recommend
Plans and Services
Grouping/
Clustering
Identify Profit
Maximization
Opportunities
Telecom Data &
Data Processing
Pipeline
Data
• How much data is available?
• Data infrastructure
• Data dashboards
• Data preparation for
Machine learning
• Data protection and privacy
Partitioning the data into similar groups
Multi dimensional clustering
Grouping customers-
One dimensional
binning/clustering
High, low, and normal
profitable customers -
One dimensional outlier
detection
Multi dimensional outlier detection
• Dealing with missing –
• Delete the rows with missing
• Replace missing using
• mean/median
• Other number
• Conditional mean
• Model like K nearest neighborhood
• Filter Methods – used as independent feature selection e.g.
Pearson correlation, Mutual Information, MRMR
• Dimensionality reduction – PCA, Variational autoencoder
• Feature Engineering
• Creating new variables – Polynomials, Interaction variables, Ratios
• Wrapper and Embedded methods - used in the model building
process
Feature
selection
Base set
Learning
Model
Performance
Business Insights
Cluster Size Revenue Profit Usage Discount Cost
1 1283 0.05 -0.24 0.90 0.23 0.46
2 582 -0.13 -0.05 -0.15 -1.87 -0.10
3 71 -0.28 -0.55 0.05 -8.07 0.46
4 5309 -0.17 -0.01 -0.37 0.25 -0.25
5 9 19.37 16.26 1.12 -0.06 3.03
6 222 0.10 -1.19 3.66 0.13 2.06
7 270 2.75 2.35 0.11 0.08 0.36
8 8 0.64 -12.55 6.61 0.25 20.97
Revenue, profit and
cost is
very high
Profit is very low
profit and cost and
volume are very high
Telecom Data Analytics

Weitere ähnliche Inhalte

Ähnlich wie Telecom Data Analytics

Barga Galvanize Sept 2015
Barga Galvanize Sept 2015Barga Galvanize Sept 2015
Barga Galvanize Sept 2015Roger Barga
 
Machine intelligence data science methodology 060420
Machine intelligence data science methodology 060420Machine intelligence data science methodology 060420
Machine intelligence data science methodology 060420Jeremy Lehman
 
Tata steel ideation contest
Tata steel ideation contestTata steel ideation contest
Tata steel ideation contestashwinikumar1424
 
AI Class Topic 3: Building Machine Learning Predictive Systems (Predictive Ma...
AI Class Topic 3: Building Machine Learning Predictive Systems (Predictive Ma...AI Class Topic 3: Building Machine Learning Predictive Systems (Predictive Ma...
AI Class Topic 3: Building Machine Learning Predictive Systems (Predictive Ma...Value Amplify Consulting
 
PrADS Introduction & offerings 2017
PrADS Introduction & offerings 2017 PrADS Introduction & offerings 2017
PrADS Introduction & offerings 2017 Kiran Kumar Muthyala
 
Business intelligence prof nikhat fatma mumtaz husain shaikh
Business intelligence  prof nikhat fatma mumtaz husain shaikhBusiness intelligence  prof nikhat fatma mumtaz husain shaikh
Business intelligence prof nikhat fatma mumtaz husain shaikhNikhat Fatma Mumtaz Husain Shaikh
 
finalestkddfinalpresentation-111207021040-phpapp01.pptx
finalestkddfinalpresentation-111207021040-phpapp01.pptxfinalestkddfinalpresentation-111207021040-phpapp01.pptx
finalestkddfinalpresentation-111207021040-phpapp01.pptxshumPanwar
 
Deliveinrg explainable AI
Deliveinrg explainable AIDeliveinrg explainable AI
Deliveinrg explainable AIGary Allemann
 
Is Your Marketing Database "Model Ready"?
Is Your Marketing Database "Model Ready"?Is Your Marketing Database "Model Ready"?
Is Your Marketing Database "Model Ready"?Vivastream
 
Data Science Introduction by Emerging India Analytics
Data Science Introduction by Emerging India AnalyticsData Science Introduction by Emerging India Analytics
Data Science Introduction by Emerging India AnalyticsAyeshaSharma29
 
Group 1 Report CRISP - DM METHODOLOGY.pptx
Group 1 Report CRISP - DM METHODOLOGY.pptxGroup 1 Report CRISP - DM METHODOLOGY.pptx
Group 1 Report CRISP - DM METHODOLOGY.pptxellamangapis2003
 
Data Refinement: The missing link between data collection and decisions
Data Refinement: The missing link between data collection and decisionsData Refinement: The missing link between data collection and decisions
Data Refinement: The missing link between data collection and decisionsVivastream
 

Ähnlich wie Telecom Data Analytics (20)

Data mining
Data miningData mining
Data mining
 
Barga Galvanize Sept 2015
Barga Galvanize Sept 2015Barga Galvanize Sept 2015
Barga Galvanize Sept 2015
 
Machine intelligence data science methodology 060420
Machine intelligence data science methodology 060420Machine intelligence data science methodology 060420
Machine intelligence data science methodology 060420
 
Tata steel ideation
Tata steel ideationTata steel ideation
Tata steel ideation
 
Tata steel ideation contest
Tata steel ideation contestTata steel ideation contest
Tata steel ideation contest
 
Tata steel ideation contest
Tata steel ideation contestTata steel ideation contest
Tata steel ideation contest
 
RowanDay3.pptx
RowanDay3.pptxRowanDay3.pptx
RowanDay3.pptx
 
AI Class Topic 3: Building Machine Learning Predictive Systems (Predictive Ma...
AI Class Topic 3: Building Machine Learning Predictive Systems (Predictive Ma...AI Class Topic 3: Building Machine Learning Predictive Systems (Predictive Ma...
AI Class Topic 3: Building Machine Learning Predictive Systems (Predictive Ma...
 
PrADS Introduction & offerings 2017
PrADS Introduction & offerings 2017 PrADS Introduction & offerings 2017
PrADS Introduction & offerings 2017
 
Business intelligence prof nikhat fatma mumtaz husain shaikh
Business intelligence  prof nikhat fatma mumtaz husain shaikhBusiness intelligence  prof nikhat fatma mumtaz husain shaikh
Business intelligence prof nikhat fatma mumtaz husain shaikh
 
finalestkddfinalpresentation-111207021040-phpapp01.pptx
finalestkddfinalpresentation-111207021040-phpapp01.pptxfinalestkddfinalpresentation-111207021040-phpapp01.pptx
finalestkddfinalpresentation-111207021040-phpapp01.pptx
 
Day 1 (Lecture 2): Business Analytics
Day 1 (Lecture 2): Business AnalyticsDay 1 (Lecture 2): Business Analytics
Day 1 (Lecture 2): Business Analytics
 
Deliveinrg explainable AI
Deliveinrg explainable AIDeliveinrg explainable AI
Deliveinrg explainable AI
 
Is Your Marketing Database "Model Ready"?
Is Your Marketing Database "Model Ready"?Is Your Marketing Database "Model Ready"?
Is Your Marketing Database "Model Ready"?
 
Deep learning
Deep learningDeep learning
Deep learning
 
Data Science Introduction by Emerging India Analytics
Data Science Introduction by Emerging India AnalyticsData Science Introduction by Emerging India Analytics
Data Science Introduction by Emerging India Analytics
 
Group 1 Report CRISP - DM METHODOLOGY.pptx
Group 1 Report CRISP - DM METHODOLOGY.pptxGroup 1 Report CRISP - DM METHODOLOGY.pptx
Group 1 Report CRISP - DM METHODOLOGY.pptx
 
HashCash big data services
HashCash big data servicesHashCash big data services
HashCash big data services
 
Technology to decision analysis
Technology to decision analysisTechnology to decision analysis
Technology to decision analysis
 
Data Refinement: The missing link between data collection and decisions
Data Refinement: The missing link between data collection and decisionsData Refinement: The missing link between data collection and decisions
Data Refinement: The missing link between data collection and decisions
 

Kürzlich hochgeladen

Customer Service Analytics - Make Sense of All Your Data.pptx
Customer Service Analytics - Make Sense of All Your Data.pptxCustomer Service Analytics - Make Sense of All Your Data.pptx
Customer Service Analytics - Make Sense of All Your Data.pptxEmmanuel Dauda
 
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdf
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdfMarket Analysis in the 5 Largest Economic Countries in Southeast Asia.pdf
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdfRachmat Ramadhan H
 
Brighton SEO | April 2024 | Data Storytelling
Brighton SEO | April 2024 | Data StorytellingBrighton SEO | April 2024 | Data Storytelling
Brighton SEO | April 2024 | Data StorytellingNeil Barnes
 
Full night 🥵 Call Girls Delhi New Friends Colony {9711199171} Sanya Reddy ✌️o...
Full night 🥵 Call Girls Delhi New Friends Colony {9711199171} Sanya Reddy ✌️o...Full night 🥵 Call Girls Delhi New Friends Colony {9711199171} Sanya Reddy ✌️o...
Full night 🥵 Call Girls Delhi New Friends Colony {9711199171} Sanya Reddy ✌️o...shivangimorya083
 
VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130
VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130
VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130Suhani Kapoor
 
Beautiful Sapna Vip Call Girls Hauz Khas 9711199012 Call /Whatsapps
Beautiful Sapna Vip  Call Girls Hauz Khas 9711199012 Call /WhatsappsBeautiful Sapna Vip  Call Girls Hauz Khas 9711199012 Call /Whatsapps
Beautiful Sapna Vip Call Girls Hauz Khas 9711199012 Call /Whatsappssapnasaifi408
 
PKS-TGC-1084-630 - Stage 1 Proposal.pptx
PKS-TGC-1084-630 - Stage 1 Proposal.pptxPKS-TGC-1084-630 - Stage 1 Proposal.pptx
PKS-TGC-1084-630 - Stage 1 Proposal.pptxPramod Kumar Srivastava
 
VIP High Profile Call Girls Amravati Aarushi 8250192130 Independent Escort Se...
VIP High Profile Call Girls Amravati Aarushi 8250192130 Independent Escort Se...VIP High Profile Call Girls Amravati Aarushi 8250192130 Independent Escort Se...
VIP High Profile Call Girls Amravati Aarushi 8250192130 Independent Escort Se...Suhani Kapoor
 
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改atducpo
 
VIP Call Girls in Amravati Aarohi 8250192130 Independent Escort Service Amravati
VIP Call Girls in Amravati Aarohi 8250192130 Independent Escort Service AmravatiVIP Call Girls in Amravati Aarohi 8250192130 Independent Escort Service Amravati
VIP Call Girls in Amravati Aarohi 8250192130 Independent Escort Service AmravatiSuhani Kapoor
 
dokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.ppt
dokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.pptdokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.ppt
dokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.pptSonatrach
 
Dubai Call Girls Wifey O52&786472 Call Girls Dubai
Dubai Call Girls Wifey O52&786472 Call Girls DubaiDubai Call Girls Wifey O52&786472 Call Girls Dubai
Dubai Call Girls Wifey O52&786472 Call Girls Dubaihf8803863
 
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip CallDelhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Callshivangimorya083
 
Data Warehouse , Data Cube Computation
Data Warehouse   , Data Cube ComputationData Warehouse   , Data Cube Computation
Data Warehouse , Data Cube Computationsit20ad004
 
From idea to production in a day – Leveraging Azure ML and Streamlit to build...
From idea to production in a day – Leveraging Azure ML and Streamlit to build...From idea to production in a day – Leveraging Azure ML and Streamlit to build...
From idea to production in a day – Leveraging Azure ML and Streamlit to build...Florian Roscheck
 
Industrialised data - the key to AI success.pdf
Industrialised data - the key to AI success.pdfIndustrialised data - the key to AI success.pdf
Industrialised data - the key to AI success.pdfLars Albertsson
 
B2 Creative Industry Response Evaluation.docx
B2 Creative Industry Response Evaluation.docxB2 Creative Industry Response Evaluation.docx
B2 Creative Industry Response Evaluation.docxStephen266013
 

Kürzlich hochgeladen (20)

Customer Service Analytics - Make Sense of All Your Data.pptx
Customer Service Analytics - Make Sense of All Your Data.pptxCustomer Service Analytics - Make Sense of All Your Data.pptx
Customer Service Analytics - Make Sense of All Your Data.pptx
 
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdf
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdfMarket Analysis in the 5 Largest Economic Countries in Southeast Asia.pdf
Market Analysis in the 5 Largest Economic Countries in Southeast Asia.pdf
 
Brighton SEO | April 2024 | Data Storytelling
Brighton SEO | April 2024 | Data StorytellingBrighton SEO | April 2024 | Data Storytelling
Brighton SEO | April 2024 | Data Storytelling
 
Full night 🥵 Call Girls Delhi New Friends Colony {9711199171} Sanya Reddy ✌️o...
Full night 🥵 Call Girls Delhi New Friends Colony {9711199171} Sanya Reddy ✌️o...Full night 🥵 Call Girls Delhi New Friends Colony {9711199171} Sanya Reddy ✌️o...
Full night 🥵 Call Girls Delhi New Friends Colony {9711199171} Sanya Reddy ✌️o...
 
VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130
VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130
VIP Call Girls Service Miyapur Hyderabad Call +91-8250192130
 
Beautiful Sapna Vip Call Girls Hauz Khas 9711199012 Call /Whatsapps
Beautiful Sapna Vip  Call Girls Hauz Khas 9711199012 Call /WhatsappsBeautiful Sapna Vip  Call Girls Hauz Khas 9711199012 Call /Whatsapps
Beautiful Sapna Vip Call Girls Hauz Khas 9711199012 Call /Whatsapps
 
PKS-TGC-1084-630 - Stage 1 Proposal.pptx
PKS-TGC-1084-630 - Stage 1 Proposal.pptxPKS-TGC-1084-630 - Stage 1 Proposal.pptx
PKS-TGC-1084-630 - Stage 1 Proposal.pptx
 
VIP High Profile Call Girls Amravati Aarushi 8250192130 Independent Escort Se...
VIP High Profile Call Girls Amravati Aarushi 8250192130 Independent Escort Se...VIP High Profile Call Girls Amravati Aarushi 8250192130 Independent Escort Se...
VIP High Profile Call Girls Amravati Aarushi 8250192130 Independent Escort Se...
 
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改
代办国外大学文凭《原版美国UCLA文凭证书》加州大学洛杉矶分校毕业证制作成绩单修改
 
VIP Call Girls in Amravati Aarohi 8250192130 Independent Escort Service Amravati
VIP Call Girls in Amravati Aarohi 8250192130 Independent Escort Service AmravatiVIP Call Girls in Amravati Aarohi 8250192130 Independent Escort Service Amravati
VIP Call Girls in Amravati Aarohi 8250192130 Independent Escort Service Amravati
 
dokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.ppt
dokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.pptdokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.ppt
dokumen.tips_chapter-4-transient-heat-conduction-mehmet-kanoglu.ppt
 
Dubai Call Girls Wifey O52&786472 Call Girls Dubai
Dubai Call Girls Wifey O52&786472 Call Girls DubaiDubai Call Girls Wifey O52&786472 Call Girls Dubai
Dubai Call Girls Wifey O52&786472 Call Girls Dubai
 
E-Commerce Order PredictionShraddha Kamble.pptx
E-Commerce Order PredictionShraddha Kamble.pptxE-Commerce Order PredictionShraddha Kamble.pptx
E-Commerce Order PredictionShraddha Kamble.pptx
 
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip CallDelhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
Delhi Call Girls CP 9711199171 ☎✔👌✔ Whatsapp Hard And Sexy Vip Call
 
Deep Generative Learning for All - The Gen AI Hype (Spring 2024)
Deep Generative Learning for All - The Gen AI Hype (Spring 2024)Deep Generative Learning for All - The Gen AI Hype (Spring 2024)
Deep Generative Learning for All - The Gen AI Hype (Spring 2024)
 
Data Warehouse , Data Cube Computation
Data Warehouse   , Data Cube ComputationData Warehouse   , Data Cube Computation
Data Warehouse , Data Cube Computation
 
Russian Call Girls Dwarka Sector 15 💓 Delhi 9999965857 @Sabina Modi VVIP MODE...
Russian Call Girls Dwarka Sector 15 💓 Delhi 9999965857 @Sabina Modi VVIP MODE...Russian Call Girls Dwarka Sector 15 💓 Delhi 9999965857 @Sabina Modi VVIP MODE...
Russian Call Girls Dwarka Sector 15 💓 Delhi 9999965857 @Sabina Modi VVIP MODE...
 
From idea to production in a day – Leveraging Azure ML and Streamlit to build...
From idea to production in a day – Leveraging Azure ML and Streamlit to build...From idea to production in a day – Leveraging Azure ML and Streamlit to build...
From idea to production in a day – Leveraging Azure ML and Streamlit to build...
 
Industrialised data - the key to AI success.pdf
Industrialised data - the key to AI success.pdfIndustrialised data - the key to AI success.pdf
Industrialised data - the key to AI success.pdf
 
B2 Creative Industry Response Evaluation.docx
B2 Creative Industry Response Evaluation.docxB2 Creative Industry Response Evaluation.docx
B2 Creative Industry Response Evaluation.docx
 

Telecom Data Analytics

  • 1. Story of Building a Telecom Data Solution Sawinder Pal Kaur, PhD Data Scientist, SAP Labs
  • 2. Outline 1. Define business objectives and translating business problem into data science problem 2. Introduction to Telecom data - data scale, volume, continuous and categorical variables, static and dynamic data 3. Architecture and data processing pipeline: Big data handling and data science methods for Categorical feature selection 4. Solution Engineering: How to keep project managers do feature selection and identify the opportunities to optimize the existing plans and services?
  • 4. Business Objective • Personalize recommendation • More customer satisfaction • Improved Customer retention • Increased frequency of selling • Better mix of products • Increased customer loyalty • Better decision on coupons and discounts • Develop effective strategy for new product launches • Better offers to specific customer profile • Better product design / pricing • Improve quality of service for highest margin customers • Invest where highest margin customers are using the network resources Recommend Plans and Services Grouping/ Clustering Identify Profit Maximization Opportunities
  • 5. Telecom Data & Data Processing Pipeline
  • 6. Data • How much data is available? • Data infrastructure • Data dashboards • Data preparation for Machine learning • Data protection and privacy
  • 7. Partitioning the data into similar groups Multi dimensional clustering Grouping customers- One dimensional binning/clustering
  • 8. High, low, and normal profitable customers - One dimensional outlier detection Multi dimensional outlier detection
  • 9. • Dealing with missing – • Delete the rows with missing • Replace missing using • mean/median • Other number • Conditional mean • Model like K nearest neighborhood
  • 10. • Filter Methods – used as independent feature selection e.g. Pearson correlation, Mutual Information, MRMR • Dimensionality reduction – PCA, Variational autoencoder • Feature Engineering • Creating new variables – Polynomials, Interaction variables, Ratios • Wrapper and Embedded methods - used in the model building process Feature selection Base set Learning Model Performance
  • 12. Cluster Size Revenue Profit Usage Discount Cost 1 1283 0.05 -0.24 0.90 0.23 0.46 2 582 -0.13 -0.05 -0.15 -1.87 -0.10 3 71 -0.28 -0.55 0.05 -8.07 0.46 4 5309 -0.17 -0.01 -0.37 0.25 -0.25 5 9 19.37 16.26 1.12 -0.06 3.03 6 222 0.10 -1.19 3.66 0.13 2.06 7 270 2.75 2.35 0.11 0.08 0.36 8 8 0.64 -12.55 6.61 0.25 20.97 Revenue, profit and cost is very high Profit is very low profit and cost and volume are very high