SlideShare una empresa de Scribd logo
1 de 34
Descargar para leer sin conexión
•
•
•
•
•
•
•
•
•
•
•
•
•
•
0
0.5
1
1.5
2
2.5
3
3.5
4
0 168 336 504 672 840
Similarity
Δ Hours
•
•
•
0
0.5
1
1.5
2
2.5
3
3.5
4
0 168 336 504 672 840
Similarity
Δ Hours
Daily pattern:
views in similar hours of the
days are more similar
•
•
•
0
0.5
1
1.5
2
2.5
3
3.5
4
0 168 336 504 672 840
Similarity
Δ Hours
Weekly pattern:
views in similar days of the
week are more similar
Daily pattern:
views in similar hours of the
days are more similar
•
•
•
0
0.5
1
1.5
2
2.5
3
3.5
4
0 168 336 504 672 840
Similarity
Δ Hours
Weekly pattern:
views in similar days of the
week are more similar
Daily pattern:
views in similar hours of the
days are more similar
Overall decay:
recent views are more similar
•
•
0
0.02
0.04
0.06
0.08
0.1
0 168 336
Similarity
∆ Hours
0
0 168 336 504 672 840
Similarity
Δ Hours
VOD Daypart View Similarity
0
1
2
3
4
0 168 336 504 672 840
Similarity
VOD Daypart View Similarity
0
0.1
0.2
0.3
0.4
0 168 336
Repeatpercentage
∆ Hours
Repeated-Search Pattern
0
0.1
0 168 336
Similarity
∆ Hours
Linear(Station-level) View Similarity
•
•
Number of Signals
0.7
7
= New Signal
•
•
•
•
0%
20%
40%
60%
80%
100%
Top 5 Top 10 Top 20
Only Social
Nielsen + DVR
Nielsen + DVR +
Social
•
•
•
•
20.00
25.00
30.00
35.00
40.00
45.00
50.00
55.00
60.00
65.00
70.00
0.40 0.60 0.80 1.00 1.20 1.40 1.60
Recall
Resolution (Weighted Sum, Normalized by User Study)
Recall vs. Resolution
BaseLine
CoMPASS
CoMPASS++
ViaccessOrca
DigitalSmith
Rovi
ContentWise
Gravity
MortarData
ThinkAnalytics
Compass (Trend)
Various
internal
and
external
Algorithms
•
•
•
•
•
•
•
•
•
•
•
•
•
•
•
•
Picture courtesy of Cisco
•
•
•
•
Baseline w/
100% cache
size
NetworkBWSavedbyCache
Baseline w/
100% cache
size
Prediction w/
30% cache
size
NetworkBWSavedbyCache
Baseline w/
100% cache
size
Prediction w/
30% cache
size
Prediction w/
60% cache size
NetworkBWSavedbyCache
















How Comcast uses Data Science to Improve the Customer Experience

Más contenido relacionado

Destacado

Section 4 - Outdoor Spaces and Furniture
Section 4 - Outdoor Spaces and FurnitureSection 4 - Outdoor Spaces and Furniture
Section 4 - Outdoor Spaces and FurnitureDaniel Woodward
 
Node.js Authentication and Data Security
Node.js Authentication and Data SecurityNode.js Authentication and Data Security
Node.js Authentication and Data SecurityTim Messerschmidt
 
Adding Identity Management and Access Control to your Application
Adding Identity Management and Access Control to your ApplicationAdding Identity Management and Access Control to your Application
Adding Identity Management and Access Control to your ApplicationFernando Lopez Aguilar
 
Chela stress test
Chela stress testChela stress test
Chela stress testsuperserch
 
Cwin16 - Paris - ux design
Cwin16 - Paris - ux designCwin16 - Paris - ux design
Cwin16 - Paris - ux designCapgemini
 
Ia32 Modo Protegido
Ia32 Modo ProtegidoIa32 Modo Protegido
Ia32 Modo ProtegidoErwin Meza
 
Marc Stickdorn & Jakob Schneider – Mobile ethnography and ExperienceFellow, a...
Marc Stickdorn & Jakob Schneider – Mobile ethnography and ExperienceFellow, a...Marc Stickdorn & Jakob Schneider – Mobile ethnography and ExperienceFellow, a...
Marc Stickdorn & Jakob Schneider – Mobile ethnography and ExperienceFellow, a...Jakob Schneider
 
Netflix Nebula - Gradle Summit 2014
Netflix Nebula - Gradle Summit 2014Netflix Nebula - Gradle Summit 2014
Netflix Nebula - Gradle Summit 2014Justin Ryan
 
MMDS 2014 Talk - Distributing ML Algorithms: from GPUs to the Cloud
MMDS 2014 Talk - Distributing ML Algorithms: from GPUs to the CloudMMDS 2014 Talk - Distributing ML Algorithms: from GPUs to the Cloud
MMDS 2014 Talk - Distributing ML Algorithms: from GPUs to the CloudXavier Amatriain
 
Cwin16 tls-partner-hpe-digital economy & Hybrid IT
Cwin16 tls-partner-hpe-digital economy & Hybrid ITCwin16 tls-partner-hpe-digital economy & Hybrid IT
Cwin16 tls-partner-hpe-digital economy & Hybrid ITCapgemini
 

Destacado (11)

Section 4 - Outdoor Spaces and Furniture
Section 4 - Outdoor Spaces and FurnitureSection 4 - Outdoor Spaces and Furniture
Section 4 - Outdoor Spaces and Furniture
 
Node.js Authentication and Data Security
Node.js Authentication and Data SecurityNode.js Authentication and Data Security
Node.js Authentication and Data Security
 
May: If I Were 22
May: If I Were 22May: If I Were 22
May: If I Were 22
 
Adding Identity Management and Access Control to your Application
Adding Identity Management and Access Control to your ApplicationAdding Identity Management and Access Control to your Application
Adding Identity Management and Access Control to your Application
 
Chela stress test
Chela stress testChela stress test
Chela stress test
 
Cwin16 - Paris - ux design
Cwin16 - Paris - ux designCwin16 - Paris - ux design
Cwin16 - Paris - ux design
 
Ia32 Modo Protegido
Ia32 Modo ProtegidoIa32 Modo Protegido
Ia32 Modo Protegido
 
Marc Stickdorn & Jakob Schneider – Mobile ethnography and ExperienceFellow, a...
Marc Stickdorn & Jakob Schneider – Mobile ethnography and ExperienceFellow, a...Marc Stickdorn & Jakob Schneider – Mobile ethnography and ExperienceFellow, a...
Marc Stickdorn & Jakob Schneider – Mobile ethnography and ExperienceFellow, a...
 
Netflix Nebula - Gradle Summit 2014
Netflix Nebula - Gradle Summit 2014Netflix Nebula - Gradle Summit 2014
Netflix Nebula - Gradle Summit 2014
 
MMDS 2014 Talk - Distributing ML Algorithms: from GPUs to the Cloud
MMDS 2014 Talk - Distributing ML Algorithms: from GPUs to the CloudMMDS 2014 Talk - Distributing ML Algorithms: from GPUs to the Cloud
MMDS 2014 Talk - Distributing ML Algorithms: from GPUs to the Cloud
 
Cwin16 tls-partner-hpe-digital economy & Hybrid IT
Cwin16 tls-partner-hpe-digital economy & Hybrid ITCwin16 tls-partner-hpe-digital economy & Hybrid IT
Cwin16 tls-partner-hpe-digital economy & Hybrid IT
 

Más de Turi, Inc.

Webinar - Analyzing Video
Webinar - Analyzing VideoWebinar - Analyzing Video
Webinar - Analyzing VideoTuri, Inc.
 
Webinar - Patient Readmission Risk
Webinar - Patient Readmission RiskWebinar - Patient Readmission Risk
Webinar - Patient Readmission RiskTuri, Inc.
 
Webinar - Know Your Customer - Arya (20160526)
Webinar - Know Your Customer - Arya (20160526)Webinar - Know Your Customer - Arya (20160526)
Webinar - Know Your Customer - Arya (20160526)Turi, Inc.
 
Webinar - Product Matching - Palombo (20160428)
Webinar - Product Matching - Palombo (20160428)Webinar - Product Matching - Palombo (20160428)
Webinar - Product Matching - Palombo (20160428)Turi, Inc.
 
Webinar - Pattern Mining Log Data - Vega (20160426)
Webinar - Pattern Mining Log Data - Vega (20160426)Webinar - Pattern Mining Log Data - Vega (20160426)
Webinar - Pattern Mining Log Data - Vega (20160426)Turi, Inc.
 
Webinar - Fraud Detection - Palombo (20160428)
Webinar - Fraud Detection - Palombo (20160428)Webinar - Fraud Detection - Palombo (20160428)
Webinar - Fraud Detection - Palombo (20160428)Turi, Inc.
 
Scaling Up Machine Learning: How to Benchmark GraphLab Create on Huge Datasets
Scaling Up Machine Learning: How to Benchmark GraphLab Create on Huge DatasetsScaling Up Machine Learning: How to Benchmark GraphLab Create on Huge Datasets
Scaling Up Machine Learning: How to Benchmark GraphLab Create on Huge DatasetsTuri, Inc.
 
Pattern Mining: Extracting Value from Log Data
Pattern Mining: Extracting Value from Log DataPattern Mining: Extracting Value from Log Data
Pattern Mining: Extracting Value from Log DataTuri, Inc.
 
Intelligent Applications with Machine Learning Toolkits
Intelligent Applications with Machine Learning ToolkitsIntelligent Applications with Machine Learning Toolkits
Intelligent Applications with Machine Learning ToolkitsTuri, Inc.
 
Text Analysis with Machine Learning
Text Analysis with Machine LearningText Analysis with Machine Learning
Text Analysis with Machine LearningTuri, Inc.
 
Machine Learning with GraphLab Create
Machine Learning with GraphLab CreateMachine Learning with GraphLab Create
Machine Learning with GraphLab CreateTuri, Inc.
 
Machine Learning in Production with Dato Predictive Services
Machine Learning in Production with Dato Predictive ServicesMachine Learning in Production with Dato Predictive Services
Machine Learning in Production with Dato Predictive ServicesTuri, Inc.
 
Machine Learning in 2016: Live Q&A with Carlos Guestrin
Machine Learning in 2016: Live Q&A with Carlos GuestrinMachine Learning in 2016: Live Q&A with Carlos Guestrin
Machine Learning in 2016: Live Q&A with Carlos GuestrinTuri, Inc.
 
Scalable data structures for data science
Scalable data structures for data scienceScalable data structures for data science
Scalable data structures for data scienceTuri, Inc.
 
Introduction to Deep Learning for Image Analysis at Strata NYC, Sep 2015
Introduction to Deep Learning for Image Analysis at Strata NYC, Sep 2015Introduction to Deep Learning for Image Analysis at Strata NYC, Sep 2015
Introduction to Deep Learning for Image Analysis at Strata NYC, Sep 2015Turi, Inc.
 
Introduction to Recommender Systems
Introduction to Recommender SystemsIntroduction to Recommender Systems
Introduction to Recommender SystemsTuri, Inc.
 
Machine learning in production
Machine learning in productionMachine learning in production
Machine learning in productionTuri, Inc.
 
Overview of Machine Learning and Feature Engineering
Overview of Machine Learning and Feature EngineeringOverview of Machine Learning and Feature Engineering
Overview of Machine Learning and Feature EngineeringTuri, Inc.
 
Building Personalized Data Products with Dato
Building Personalized Data Products with DatoBuilding Personalized Data Products with Dato
Building Personalized Data Products with DatoTuri, Inc.
 

Más de Turi, Inc. (20)

Webinar - Analyzing Video
Webinar - Analyzing VideoWebinar - Analyzing Video
Webinar - Analyzing Video
 
Webinar - Patient Readmission Risk
Webinar - Patient Readmission RiskWebinar - Patient Readmission Risk
Webinar - Patient Readmission Risk
 
Webinar - Know Your Customer - Arya (20160526)
Webinar - Know Your Customer - Arya (20160526)Webinar - Know Your Customer - Arya (20160526)
Webinar - Know Your Customer - Arya (20160526)
 
Webinar - Product Matching - Palombo (20160428)
Webinar - Product Matching - Palombo (20160428)Webinar - Product Matching - Palombo (20160428)
Webinar - Product Matching - Palombo (20160428)
 
Webinar - Pattern Mining Log Data - Vega (20160426)
Webinar - Pattern Mining Log Data - Vega (20160426)Webinar - Pattern Mining Log Data - Vega (20160426)
Webinar - Pattern Mining Log Data - Vega (20160426)
 
Webinar - Fraud Detection - Palombo (20160428)
Webinar - Fraud Detection - Palombo (20160428)Webinar - Fraud Detection - Palombo (20160428)
Webinar - Fraud Detection - Palombo (20160428)
 
Scaling Up Machine Learning: How to Benchmark GraphLab Create on Huge Datasets
Scaling Up Machine Learning: How to Benchmark GraphLab Create on Huge DatasetsScaling Up Machine Learning: How to Benchmark GraphLab Create on Huge Datasets
Scaling Up Machine Learning: How to Benchmark GraphLab Create on Huge Datasets
 
Pattern Mining: Extracting Value from Log Data
Pattern Mining: Extracting Value from Log DataPattern Mining: Extracting Value from Log Data
Pattern Mining: Extracting Value from Log Data
 
Intelligent Applications with Machine Learning Toolkits
Intelligent Applications with Machine Learning ToolkitsIntelligent Applications with Machine Learning Toolkits
Intelligent Applications with Machine Learning Toolkits
 
Text Analysis with Machine Learning
Text Analysis with Machine LearningText Analysis with Machine Learning
Text Analysis with Machine Learning
 
Machine Learning with GraphLab Create
Machine Learning with GraphLab CreateMachine Learning with GraphLab Create
Machine Learning with GraphLab Create
 
Machine Learning in Production with Dato Predictive Services
Machine Learning in Production with Dato Predictive ServicesMachine Learning in Production with Dato Predictive Services
Machine Learning in Production with Dato Predictive Services
 
Machine Learning in 2016: Live Q&A with Carlos Guestrin
Machine Learning in 2016: Live Q&A with Carlos GuestrinMachine Learning in 2016: Live Q&A with Carlos Guestrin
Machine Learning in 2016: Live Q&A with Carlos Guestrin
 
Scalable data structures for data science
Scalable data structures for data scienceScalable data structures for data science
Scalable data structures for data science
 
Introduction to Deep Learning for Image Analysis at Strata NYC, Sep 2015
Introduction to Deep Learning for Image Analysis at Strata NYC, Sep 2015Introduction to Deep Learning for Image Analysis at Strata NYC, Sep 2015
Introduction to Deep Learning for Image Analysis at Strata NYC, Sep 2015
 
Introduction to Recommender Systems
Introduction to Recommender SystemsIntroduction to Recommender Systems
Introduction to Recommender Systems
 
Machine learning in production
Machine learning in productionMachine learning in production
Machine learning in production
 
Overview of Machine Learning and Feature Engineering
Overview of Machine Learning and Feature EngineeringOverview of Machine Learning and Feature Engineering
Overview of Machine Learning and Feature Engineering
 
SFrame
SFrameSFrame
SFrame
 
Building Personalized Data Products with Dato
Building Personalized Data Products with DatoBuilding Personalized Data Products with Dato
Building Personalized Data Products with Dato
 

Último

Semantic Shed - Squashing and Squeezing.pptx
Semantic Shed - Squashing and Squeezing.pptxSemantic Shed - Squashing and Squeezing.pptx
Semantic Shed - Squashing and Squeezing.pptxMike Bennett
 
Decoding Patterns: Customer Churn Prediction Data Analysis Project
Decoding Patterns: Customer Churn Prediction Data Analysis ProjectDecoding Patterns: Customer Churn Prediction Data Analysis Project
Decoding Patterns: Customer Churn Prediction Data Analysis ProjectBoston Institute of Analytics
 
wepik-insightful-infographics-a-data-visualization-overview-20240401133220kwr...
wepik-insightful-infographics-a-data-visualization-overview-20240401133220kwr...wepik-insightful-infographics-a-data-visualization-overview-20240401133220kwr...
wepik-insightful-infographics-a-data-visualization-overview-20240401133220kwr...KarteekMane1
 
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...Thomas Poetter
 
Easter Eggs From Star Wars and in cars 1 and 2
Easter Eggs From Star Wars and in cars 1 and 2Easter Eggs From Star Wars and in cars 1 and 2
Easter Eggs From Star Wars and in cars 1 and 217djon017
 
Advanced Machine Learning for Business Professionals
Advanced Machine Learning for Business ProfessionalsAdvanced Machine Learning for Business Professionals
Advanced Machine Learning for Business ProfessionalsVICTOR MAESTRE RAMIREZ
 
modul pembelajaran robotic Workshop _ by Slidesgo.pptx
modul pembelajaran robotic Workshop _ by Slidesgo.pptxmodul pembelajaran robotic Workshop _ by Slidesgo.pptx
modul pembelajaran robotic Workshop _ by Slidesgo.pptxaleedritatuxx
 
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...Boston Institute of Analytics
 
Bank Loan Approval Analysis: A Comprehensive Data Analysis Project
Bank Loan Approval Analysis: A Comprehensive Data Analysis ProjectBank Loan Approval Analysis: A Comprehensive Data Analysis Project
Bank Loan Approval Analysis: A Comprehensive Data Analysis ProjectBoston Institute of Analytics
 
Principles and Practices of Data Visualization
Principles and Practices of Data VisualizationPrinciples and Practices of Data Visualization
Principles and Practices of Data VisualizationKianJazayeri1
 
Data Factory in Microsoft Fabric (MsBIP #82)
Data Factory in Microsoft Fabric (MsBIP #82)Data Factory in Microsoft Fabric (MsBIP #82)
Data Factory in Microsoft Fabric (MsBIP #82)Cathrine Wilhelmsen
 
FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024
FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024
FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024Susanna-Assunta Sansone
 
INTRODUCTION TO Natural language processing
INTRODUCTION TO Natural language processingINTRODUCTION TO Natural language processing
INTRODUCTION TO Natural language processingsocarem879
 
What To Do For World Nature Conservation Day by Slidesgo.pptx
What To Do For World Nature Conservation Day by Slidesgo.pptxWhat To Do For World Nature Conservation Day by Slidesgo.pptx
What To Do For World Nature Conservation Day by Slidesgo.pptxSimranPal17
 
Learn How Data Science Changes Our World
Learn How Data Science Changes Our WorldLearn How Data Science Changes Our World
Learn How Data Science Changes Our WorldEduminds Learning
 
Digital Marketing Plan, how digital marketing works
Digital Marketing Plan, how digital marketing worksDigital Marketing Plan, how digital marketing works
Digital Marketing Plan, how digital marketing worksdeepakthakur548787
 
6 Tips for Interpretable Topic Models _ by Nicha Ruchirawat _ Towards Data Sc...
6 Tips for Interpretable Topic Models _ by Nicha Ruchirawat _ Towards Data Sc...6 Tips for Interpretable Topic Models _ by Nicha Ruchirawat _ Towards Data Sc...
6 Tips for Interpretable Topic Models _ by Nicha Ruchirawat _ Towards Data Sc...Dr Arash Najmaei ( Phd., MBA, BSc)
 
Data Analysis Project Presentation: Unveiling Your Ideal Customer, Bank Custo...
Data Analysis Project Presentation: Unveiling Your Ideal Customer, Bank Custo...Data Analysis Project Presentation: Unveiling Your Ideal Customer, Bank Custo...
Data Analysis Project Presentation: Unveiling Your Ideal Customer, Bank Custo...Boston Institute of Analytics
 
English-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdf
English-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdfEnglish-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdf
English-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdfblazblazml
 

Último (20)

Semantic Shed - Squashing and Squeezing.pptx
Semantic Shed - Squashing and Squeezing.pptxSemantic Shed - Squashing and Squeezing.pptx
Semantic Shed - Squashing and Squeezing.pptx
 
Decoding Patterns: Customer Churn Prediction Data Analysis Project
Decoding Patterns: Customer Churn Prediction Data Analysis ProjectDecoding Patterns: Customer Churn Prediction Data Analysis Project
Decoding Patterns: Customer Churn Prediction Data Analysis Project
 
Data Analysis Project: Stroke Prediction
Data Analysis Project: Stroke PredictionData Analysis Project: Stroke Prediction
Data Analysis Project: Stroke Prediction
 
wepik-insightful-infographics-a-data-visualization-overview-20240401133220kwr...
wepik-insightful-infographics-a-data-visualization-overview-20240401133220kwr...wepik-insightful-infographics-a-data-visualization-overview-20240401133220kwr...
wepik-insightful-infographics-a-data-visualization-overview-20240401133220kwr...
 
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
Minimizing AI Hallucinations/Confabulations and the Path towards AGI with Exa...
 
Easter Eggs From Star Wars and in cars 1 and 2
Easter Eggs From Star Wars and in cars 1 and 2Easter Eggs From Star Wars and in cars 1 and 2
Easter Eggs From Star Wars and in cars 1 and 2
 
Advanced Machine Learning for Business Professionals
Advanced Machine Learning for Business ProfessionalsAdvanced Machine Learning for Business Professionals
Advanced Machine Learning for Business Professionals
 
modul pembelajaran robotic Workshop _ by Slidesgo.pptx
modul pembelajaran robotic Workshop _ by Slidesgo.pptxmodul pembelajaran robotic Workshop _ by Slidesgo.pptx
modul pembelajaran robotic Workshop _ by Slidesgo.pptx
 
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
Decoding the Heart: Student Presentation on Heart Attack Prediction with Data...
 
Bank Loan Approval Analysis: A Comprehensive Data Analysis Project
Bank Loan Approval Analysis: A Comprehensive Data Analysis ProjectBank Loan Approval Analysis: A Comprehensive Data Analysis Project
Bank Loan Approval Analysis: A Comprehensive Data Analysis Project
 
Principles and Practices of Data Visualization
Principles and Practices of Data VisualizationPrinciples and Practices of Data Visualization
Principles and Practices of Data Visualization
 
Data Factory in Microsoft Fabric (MsBIP #82)
Data Factory in Microsoft Fabric (MsBIP #82)Data Factory in Microsoft Fabric (MsBIP #82)
Data Factory in Microsoft Fabric (MsBIP #82)
 
FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024
FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024
FAIR, FAIRsharing, FAIR Cookbook and ELIXIR - Sansone SA - Boston 2024
 
INTRODUCTION TO Natural language processing
INTRODUCTION TO Natural language processingINTRODUCTION TO Natural language processing
INTRODUCTION TO Natural language processing
 
What To Do For World Nature Conservation Day by Slidesgo.pptx
What To Do For World Nature Conservation Day by Slidesgo.pptxWhat To Do For World Nature Conservation Day by Slidesgo.pptx
What To Do For World Nature Conservation Day by Slidesgo.pptx
 
Learn How Data Science Changes Our World
Learn How Data Science Changes Our WorldLearn How Data Science Changes Our World
Learn How Data Science Changes Our World
 
Digital Marketing Plan, how digital marketing works
Digital Marketing Plan, how digital marketing worksDigital Marketing Plan, how digital marketing works
Digital Marketing Plan, how digital marketing works
 
6 Tips for Interpretable Topic Models _ by Nicha Ruchirawat _ Towards Data Sc...
6 Tips for Interpretable Topic Models _ by Nicha Ruchirawat _ Towards Data Sc...6 Tips for Interpretable Topic Models _ by Nicha Ruchirawat _ Towards Data Sc...
6 Tips for Interpretable Topic Models _ by Nicha Ruchirawat _ Towards Data Sc...
 
Data Analysis Project Presentation: Unveiling Your Ideal Customer, Bank Custo...
Data Analysis Project Presentation: Unveiling Your Ideal Customer, Bank Custo...Data Analysis Project Presentation: Unveiling Your Ideal Customer, Bank Custo...
Data Analysis Project Presentation: Unveiling Your Ideal Customer, Bank Custo...
 
English-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdf
English-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdfEnglish-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdf
English-8-Q4-W3-Synthesizing-Essential-Information-From-Various-Sources-1.pdf
 

How Comcast uses Data Science to Improve the Customer Experience