SlideShare a Scribd company logo
© 2016, Amazon Web Services, Inc. or its Affiliates. All rights reserved.
Denis V. Batalov, PhD
AWS Solutions Architect, EMEA
November 30, 2016
Predicting Customer Churn
with Amazon Machine Learning
@dbatalov
MAC307
Customer churn
Machine learning
Science
• Computer Science
• Statistics
• Neuroscience
• Operations Research
Artificial Intelligence
• Rule extraction from data
• Inspired by human learning
• Adaptive algorithms
Engineering
• Training: Data  Models
• Prediction: Models  Forecast
• Decision: Forecast  Actions
ML: Robotics
ML: Robotics
ML: Image recognition
Supervised learning
Supervised learning
Input Outcome
Supervised learning
Input Outcome
Input
Input
Input
Outcome
Outcome
Outcome
Supervised Learning
Input Outcome
Input
Input
Input
Outcome
Outcome
Outcome
Supervised
Learning
known historical data
Amazon ML
Supervised learning
Input Outcome
Input
Input
Input
Outcome
Outcome
Outcome
Supervised
Learning
Unseen Input Same Outcome
known historical data
Amazon ML
Amazon Machine Learning service
Amazon Machine Learning service
Amazon Machine Learning service
Amazon Machine Learning service
Telco churn dataset
• US telco customers, their cell phone plans and usage
• 21 attributes, 3333 rows:
• Customer: State, Area_Code, Phone
• Plan: Intl_Plan, VMail_Plan
• Behavior: VMail_Messages, Day_Mins, Day_Calls,
Day_Charge, Eve_Mins, Eve_Calls, Eve_Charge,
Night_Mins, Night_Calls, Night_Charge, Intl_Mins,
Intl_Calls, Intl_Charge
• Other: Account_Length, CustServ_Calls, Churn
Telco churn dataset
• US telco customers, their cell phone plans and usage
• 21 attributes, 3333 rows:
• Customer: State, Area_Code, Phone
• Plan: Intl_Plan, VMail_Plan
• Behavior: VMail_Messages, Day_Mins, Day_Calls,
Day_Charge, Eve_Mins, Eve_Calls, Eve_Charge,
Night_Mins, Night_Calls, Night_Charge, Intl_Mins,
Intl_Calls, Intl_Charge
• Other: Account_Length, CustServ_Calls, Churn
Telco churn dataset
KS, 128, 415, 382-4657, 0, 1, 25, 265.100000, 110, 45.070000, 197.400000, 99,
16.780000, 244.700000, 91, 11.010000, 10.000000, 3, 2.700000, 1, 0
OH, 107, 415, 371-7191, 0, 1, 26, 161.600000, 123, 27.470000, 195.500000, 103,
16.620000, 254.400000, 103, 11.450000, 13.700000, 3, 3.700000, 1, 0
NJ, 137, 415, 358-1921, 0, 0, 0, 243.400000, 114, 41.380000, 121.200000, 110,
10.300000, 162.600000, 104, 7.320000, 12.200000, 5, 3.290000, 0, 0
OH, 84, 408, 375-9999, 1, 0, 0, 299.400000, 71, 50.900000, 61.900000, 88, 5.260000,
196.900000, 89, 8.860000, 6.600000, 7, 1.780000, 2, 0
OK, 75, 415, 330-6626, 1, 0, 0, 166.700000, 113, 28.340000, 148.300000, 122, 12.610000,
186.900000, 121, 8.410000, 10.100000, 3, 2.730000, 3, 0
AL, 118, 510, 391-8027, 1, 0, 0, 223.400000, 98, 37.980000, 220.600000, 101, 18.750000,
203.900000, 118, 9.180000, 6.300000, 6, 1.700000, 0, 0
Console: Creating datasource for Amazon ML
Console: Creating datasource for Amazon ML
Console: Building the Amazon ML model
Recipe
{ "groups": {
"NUMERIC_VARS_NORM":
"group('Intl_Charge','Night_Calls','Day_Calls','Eve_Calls','Eve_Mins','Int
l_Mins','VMail_Message','Intl_Calls','Day_Mins','Night_Mins','Day_Charge',
'Night_Charge','Eve_Charge','Account_Length')” },
"assignments": {},
"outputs": [
"ALL_BINARY",
"State",
"Area_Code",
"normalize(NUMERIC_VARS_NORM)",
"CustServ_Calls"
]
}
Recipe: normalize() function
Account_Length Normalized Value
128 0.808771865
107 -0.047574816
137 1.175777586
84 -0.985478323
75 -1.352484044
118 0.400987732
Building the Amazon ML model
Cost of errors
• Cost of customer churn and acquisition (false negative):
• Foregone cash flow
• Advertising costs
• POS and sign-up admin costs
• Customer retention cost (false + true positive)
• Discounts
• Phone upgrades
• Etc.
Financial outcome of applying a model
Prior Churn Churn Cost Cost without ML
14.49% $500.00 $72.46
Financial outcome of applying a model
Prior Churn Churn Cost Cost without ML
14.49% $500.00 $72.46
False Negative True + False Pos Retention Cost Cost with ML
4.80% 12.10% + 14.30% $100.00 $50.40
Financial outcome of applying a model
Prior Churn Churn Cost Cost without ML
14.49% $500.00 $72.46
False Negative True + False Pos Retention Cost Cost with ML
4.80% 12.10% + 14.30% $100.00 $50.40
• Threshold 0.3  0.17
• $22.06 of savings per customer
• With 100,000 customers over $2MM in savings with ML
What’s next?
• https://aws.amazon.com/getting-started/projects/build-
machine-learning-model/
• https://aws.amazon.com/machine-learning/developer-
resources/
• https://github.com/dbatalov/cost_based_ml
Thank you!
Denis V. Batalov, PhD
AWS Solutions Architect, EMEA
@dbatalov
Remember to complete
your evaluations!

More Related Content

What's hot

Machine Learning & Data Lake for IoT scenarios on AWS
Machine Learning & Data Lake for IoT scenarios on AWSMachine Learning & Data Lake for IoT scenarios on AWS
Machine Learning & Data Lake for IoT scenarios on AWS
Amazon Web Services
 
Structured, Unstructured and Streaming Big Data on the AWS
Structured, Unstructured and Streaming Big Data on the AWSStructured, Unstructured and Streaming Big Data on the AWS
Structured, Unstructured and Streaming Big Data on the AWS
Amazon Web Services
 
AWS re:Invent 2017 Recap - Strategy & Direction
AWS re:Invent 2017 Recap - Strategy & DirectionAWS re:Invent 2017 Recap - Strategy & Direction
AWS re:Invent 2017 Recap - Strategy & Direction
Amazon Web Services
 
엔터프라이즈를 위한 머신러닝 그리고 AWS (김일호 솔루션즈 아키텍트, AWS) :: AWS Techforum 2018
엔터프라이즈를 위한 머신러닝 그리고 AWS (김일호 솔루션즈 아키텍트, AWS) :: AWS Techforum 2018엔터프라이즈를 위한 머신러닝 그리고 AWS (김일호 솔루션즈 아키텍트, AWS) :: AWS Techforum 2018
엔터프라이즈를 위한 머신러닝 그리고 AWS (김일호 솔루션즈 아키텍트, AWS) :: AWS Techforum 2018
Amazon Web Services Korea
 
Analytics on AWS with Amazon Redshift, Amazon QuickSight, and Amazon Machine ...
Analytics on AWS with Amazon Redshift, Amazon QuickSight, and Amazon Machine ...Analytics on AWS with Amazon Redshift, Amazon QuickSight, and Amazon Machine ...
Analytics on AWS with Amazon Redshift, Amazon QuickSight, and Amazon Machine ...
Amazon Web Services
 
The AWS Big Data Platform – Overview
The AWS Big Data Platform – OverviewThe AWS Big Data Platform – Overview
The AWS Big Data Platform – Overview
Amazon Web Services
 
Big data on_aws in korea by abhishek sinha (lunch and learn)
Big data on_aws in korea by abhishek sinha (lunch and learn)Big data on_aws in korea by abhishek sinha (lunch and learn)
Big data on_aws in korea by abhishek sinha (lunch and learn)Amazon Web Services Korea
 
Build Data Driven Apps with Real-time and Offline Capabilities
Build Data Driven Apps with Real-time and Offline CapabilitiesBuild Data Driven Apps with Real-time and Offline Capabilities
Build Data Driven Apps with Real-time and Offline Capabilities
Amazon Web Services
 
Build Data Lakes & Analytics on AWS: Patterns & Best Practices
Build Data Lakes & Analytics on AWS: Patterns & Best PracticesBuild Data Lakes & Analytics on AWS: Patterns & Best Practices
Build Data Lakes & Analytics on AWS: Patterns & Best Practices
Amazon Web Services
 
AWS Summit Singapore Opening Keynote
AWS Summit Singapore Opening Keynote AWS Summit Singapore Opening Keynote
AWS Summit Singapore Opening Keynote
Amazon Web Services
 
Serverless Streaming Data Processing using Amazon Kinesis Analytics
Serverless Streaming Data Processing using Amazon Kinesis AnalyticsServerless Streaming Data Processing using Amazon Kinesis Analytics
Serverless Streaming Data Processing using Amazon Kinesis Analytics
Amazon Web Services
 
Building Data Lakes and Analytics on AWS; Patterns and Best Practices - BDA30...
Building Data Lakes and Analytics on AWS; Patterns and Best Practices - BDA30...Building Data Lakes and Analytics on AWS; Patterns and Best Practices - BDA30...
Building Data Lakes and Analytics on AWS; Patterns and Best Practices - BDA30...
Amazon Web Services
 
Journey Through the AWS Cloud - Big Data Analysis
Journey Through the AWS Cloud - Big Data AnalysisJourney Through the AWS Cloud - Big Data Analysis
Journey Through the AWS Cloud - Big Data Analysis
Amazon Web Services
 
Preparing Data for the Lake
Preparing Data for the LakePreparing Data for the Lake
Preparing Data for the Lake
Amazon Web Services
 
ABD318_Architecting a data lake with Amazon S3, Amazon Kinesis, AWS Glue and ...
ABD318_Architecting a data lake with Amazon S3, Amazon Kinesis, AWS Glue and ...ABD318_Architecting a data lake with Amazon S3, Amazon Kinesis, AWS Glue and ...
ABD318_Architecting a data lake with Amazon S3, Amazon Kinesis, AWS Glue and ...
Amazon Web Services
 
Amazon AI/ML Overview
Amazon AI/ML OverviewAmazon AI/ML Overview
Amazon AI/ML Overview
BESPIN GLOBAL
 
Using Data Lakes
Using Data LakesUsing Data Lakes
Using Data Lakes
Amazon Web Services
 
AWS Cloud Kata 2014 | Jakarta - 2-3 Big Data
 AWS Cloud Kata 2014 | Jakarta - 2-3 Big Data AWS Cloud Kata 2014 | Jakarta - 2-3 Big Data
AWS Cloud Kata 2014 | Jakarta - 2-3 Big Data
Amazon Web Services
 
How Amazon uses AWS Analytics
How Amazon uses AWS AnalyticsHow Amazon uses AWS Analytics
How Amazon uses AWS Analytics
Amazon Web Services
 
Building a Big Data & Analytics Platform using AWS
Building a Big Data & Analytics Platform using AWS Building a Big Data & Analytics Platform using AWS
Building a Big Data & Analytics Platform using AWS
Amazon Web Services
 

What's hot (20)

Machine Learning & Data Lake for IoT scenarios on AWS
Machine Learning & Data Lake for IoT scenarios on AWSMachine Learning & Data Lake for IoT scenarios on AWS
Machine Learning & Data Lake for IoT scenarios on AWS
 
Structured, Unstructured and Streaming Big Data on the AWS
Structured, Unstructured and Streaming Big Data on the AWSStructured, Unstructured and Streaming Big Data on the AWS
Structured, Unstructured and Streaming Big Data on the AWS
 
AWS re:Invent 2017 Recap - Strategy & Direction
AWS re:Invent 2017 Recap - Strategy & DirectionAWS re:Invent 2017 Recap - Strategy & Direction
AWS re:Invent 2017 Recap - Strategy & Direction
 
엔터프라이즈를 위한 머신러닝 그리고 AWS (김일호 솔루션즈 아키텍트, AWS) :: AWS Techforum 2018
엔터프라이즈를 위한 머신러닝 그리고 AWS (김일호 솔루션즈 아키텍트, AWS) :: AWS Techforum 2018엔터프라이즈를 위한 머신러닝 그리고 AWS (김일호 솔루션즈 아키텍트, AWS) :: AWS Techforum 2018
엔터프라이즈를 위한 머신러닝 그리고 AWS (김일호 솔루션즈 아키텍트, AWS) :: AWS Techforum 2018
 
Analytics on AWS with Amazon Redshift, Amazon QuickSight, and Amazon Machine ...
Analytics on AWS with Amazon Redshift, Amazon QuickSight, and Amazon Machine ...Analytics on AWS with Amazon Redshift, Amazon QuickSight, and Amazon Machine ...
Analytics on AWS with Amazon Redshift, Amazon QuickSight, and Amazon Machine ...
 
The AWS Big Data Platform – Overview
The AWS Big Data Platform – OverviewThe AWS Big Data Platform – Overview
The AWS Big Data Platform – Overview
 
Big data on_aws in korea by abhishek sinha (lunch and learn)
Big data on_aws in korea by abhishek sinha (lunch and learn)Big data on_aws in korea by abhishek sinha (lunch and learn)
Big data on_aws in korea by abhishek sinha (lunch and learn)
 
Build Data Driven Apps with Real-time and Offline Capabilities
Build Data Driven Apps with Real-time and Offline CapabilitiesBuild Data Driven Apps with Real-time and Offline Capabilities
Build Data Driven Apps with Real-time and Offline Capabilities
 
Build Data Lakes & Analytics on AWS: Patterns & Best Practices
Build Data Lakes & Analytics on AWS: Patterns & Best PracticesBuild Data Lakes & Analytics on AWS: Patterns & Best Practices
Build Data Lakes & Analytics on AWS: Patterns & Best Practices
 
AWS Summit Singapore Opening Keynote
AWS Summit Singapore Opening Keynote AWS Summit Singapore Opening Keynote
AWS Summit Singapore Opening Keynote
 
Serverless Streaming Data Processing using Amazon Kinesis Analytics
Serverless Streaming Data Processing using Amazon Kinesis AnalyticsServerless Streaming Data Processing using Amazon Kinesis Analytics
Serverless Streaming Data Processing using Amazon Kinesis Analytics
 
Building Data Lakes and Analytics on AWS; Patterns and Best Practices - BDA30...
Building Data Lakes and Analytics on AWS; Patterns and Best Practices - BDA30...Building Data Lakes and Analytics on AWS; Patterns and Best Practices - BDA30...
Building Data Lakes and Analytics on AWS; Patterns and Best Practices - BDA30...
 
Journey Through the AWS Cloud - Big Data Analysis
Journey Through the AWS Cloud - Big Data AnalysisJourney Through the AWS Cloud - Big Data Analysis
Journey Through the AWS Cloud - Big Data Analysis
 
Preparing Data for the Lake
Preparing Data for the LakePreparing Data for the Lake
Preparing Data for the Lake
 
ABD318_Architecting a data lake with Amazon S3, Amazon Kinesis, AWS Glue and ...
ABD318_Architecting a data lake with Amazon S3, Amazon Kinesis, AWS Glue and ...ABD318_Architecting a data lake with Amazon S3, Amazon Kinesis, AWS Glue and ...
ABD318_Architecting a data lake with Amazon S3, Amazon Kinesis, AWS Glue and ...
 
Amazon AI/ML Overview
Amazon AI/ML OverviewAmazon AI/ML Overview
Amazon AI/ML Overview
 
Using Data Lakes
Using Data LakesUsing Data Lakes
Using Data Lakes
 
AWS Cloud Kata 2014 | Jakarta - 2-3 Big Data
 AWS Cloud Kata 2014 | Jakarta - 2-3 Big Data AWS Cloud Kata 2014 | Jakarta - 2-3 Big Data
AWS Cloud Kata 2014 | Jakarta - 2-3 Big Data
 
How Amazon uses AWS Analytics
How Amazon uses AWS AnalyticsHow Amazon uses AWS Analytics
How Amazon uses AWS Analytics
 
Building a Big Data & Analytics Platform using AWS
Building a Big Data & Analytics Platform using AWS Building a Big Data & Analytics Platform using AWS
Building a Big Data & Analytics Platform using AWS
 

Viewers also liked

AWS re:Invent 2016: Zillow Group: Developing Classification and Recommendatio...
AWS re:Invent 2016: Zillow Group: Developing Classification and Recommendatio...AWS re:Invent 2016: Zillow Group: Developing Classification and Recommendatio...
AWS re:Invent 2016: Zillow Group: Developing Classification and Recommendatio...
Amazon Web Services
 
AWS re:Invent 2016: Using MXNet for Recommendation Modeling at Scale (MAC306)
AWS re:Invent 2016: Using MXNet for Recommendation Modeling at Scale (MAC306)AWS re:Invent 2016: Using MXNet for Recommendation Modeling at Scale (MAC306)
AWS re:Invent 2016: Using MXNet for Recommendation Modeling at Scale (MAC306)
Amazon Web Services
 
(CMP305) Deep Learning on AWS Made EasyCmp305
(CMP305) Deep Learning on AWS Made EasyCmp305(CMP305) Deep Learning on AWS Made EasyCmp305
(CMP305) Deep Learning on AWS Made EasyCmp305
Amazon Web Services
 
AWS re:Invent 2016: Deep Learning at Cloud Scale: Improving Video Discoverabi...
AWS re:Invent 2016: Deep Learning at Cloud Scale: Improving Video Discoverabi...AWS re:Invent 2016: Deep Learning at Cloud Scale: Improving Video Discoverabi...
AWS re:Invent 2016: Deep Learning at Cloud Scale: Improving Video Discoverabi...
Amazon Web Services
 
Netflix's Recommendation ML Pipeline Using Apache Spark: Spark Summit East ta...
Netflix's Recommendation ML Pipeline Using Apache Spark: Spark Summit East ta...Netflix's Recommendation ML Pipeline Using Apache Spark: Spark Summit East ta...
Netflix's Recommendation ML Pipeline Using Apache Spark: Spark Summit East ta...
Spark Summit
 
[系列活動] 機器學習速遊
[系列活動] 機器學習速遊[系列活動] 機器學習速遊
[系列活動] 機器學習速遊
台灣資料科學年會
 

Viewers also liked (6)

AWS re:Invent 2016: Zillow Group: Developing Classification and Recommendatio...
AWS re:Invent 2016: Zillow Group: Developing Classification and Recommendatio...AWS re:Invent 2016: Zillow Group: Developing Classification and Recommendatio...
AWS re:Invent 2016: Zillow Group: Developing Classification and Recommendatio...
 
AWS re:Invent 2016: Using MXNet for Recommendation Modeling at Scale (MAC306)
AWS re:Invent 2016: Using MXNet for Recommendation Modeling at Scale (MAC306)AWS re:Invent 2016: Using MXNet for Recommendation Modeling at Scale (MAC306)
AWS re:Invent 2016: Using MXNet for Recommendation Modeling at Scale (MAC306)
 
(CMP305) Deep Learning on AWS Made EasyCmp305
(CMP305) Deep Learning on AWS Made EasyCmp305(CMP305) Deep Learning on AWS Made EasyCmp305
(CMP305) Deep Learning on AWS Made EasyCmp305
 
AWS re:Invent 2016: Deep Learning at Cloud Scale: Improving Video Discoverabi...
AWS re:Invent 2016: Deep Learning at Cloud Scale: Improving Video Discoverabi...AWS re:Invent 2016: Deep Learning at Cloud Scale: Improving Video Discoverabi...
AWS re:Invent 2016: Deep Learning at Cloud Scale: Improving Video Discoverabi...
 
Netflix's Recommendation ML Pipeline Using Apache Spark: Spark Summit East ta...
Netflix's Recommendation ML Pipeline Using Apache Spark: Spark Summit East ta...Netflix's Recommendation ML Pipeline Using Apache Spark: Spark Summit East ta...
Netflix's Recommendation ML Pipeline Using Apache Spark: Spark Summit East ta...
 
[系列活動] 機器學習速遊
[系列活動] 機器學習速遊[系列活動] 機器學習速遊
[系列活動] 機器學習速遊
 

Similar to AWS re:Invent 2016: Predicting Customer Churn with Amazon Machine Learning (MAC307)

Amazon Machine Learning Case Study: Predicting Customer Churn
Amazon Machine Learning Case Study: Predicting Customer ChurnAmazon Machine Learning Case Study: Predicting Customer Churn
Amazon Machine Learning Case Study: Predicting Customer Churn
Amazon Web Services
 
Machine Learning as a Service with Amazon Machine Learning
Machine Learning as a Service with Amazon Machine LearningMachine Learning as a Service with Amazon Machine Learning
Machine Learning as a Service with Amazon Machine Learning
Julien SIMON
 
Build a Recommendation Engine using Amazon Machine Learning in Real-time
Build a Recommendation Engine using Amazon Machine Learning in Real-timeBuild a Recommendation Engine using Amazon Machine Learning in Real-time
Build a Recommendation Engine using Amazon Machine Learning in Real-time
Amazon Web Services
 
使用Amazon Machine Learning 建立即時推薦引擎
使用Amazon Machine Learning 建立即時推薦引擎使用Amazon Machine Learning 建立即時推薦引擎
使用Amazon Machine Learning 建立即時推薦引擎
Amazon Web Services
 
Getting Started with Amazon Machine Learning
Getting Started with Amazon Machine LearningGetting Started with Amazon Machine Learning
Getting Started with Amazon Machine Learning
Amazon Web Services
 
AWS ML and SparkML on EMR to Build Recommendation Engine
AWS ML and SparkML on EMR to Build Recommendation Engine AWS ML and SparkML on EMR to Build Recommendation Engine
AWS ML and SparkML on EMR to Build Recommendation Engine
Amazon Web Services
 
Amazon Machine Learning #AWSLoft Berlin
Amazon Machine Learning #AWSLoft BerlinAmazon Machine Learning #AWSLoft Berlin
Amazon Machine Learning #AWSLoft Berlin
AWS Germany
 
Amazon Machine Learning: Empowering Developers to Build Smart Applications
Amazon Machine Learning: Empowering Developers to Build Smart ApplicationsAmazon Machine Learning: Empowering Developers to Build Smart Applications
Amazon Machine Learning: Empowering Developers to Build Smart Applications
Amazon Web Services
 
Amazon Machine Learning
Amazon Machine LearningAmazon Machine Learning
Amazon Machine Learning
Amazon Web Services
 
Amazon Machine Learning: Empowering Developers to Build Smart Applications
Amazon Machine Learning: Empowering Developers to Build Smart ApplicationsAmazon Machine Learning: Empowering Developers to Build Smart Applications
Amazon Machine Learning: Empowering Developers to Build Smart Applications
Amazon Web Services
 
Getting Started with Amazon Machine Learning
Getting Started with Amazon Machine LearningGetting Started with Amazon Machine Learning
Getting Started with Amazon Machine Learning
Amazon Web Services
 
Amazon Machine Learning: Empowering Developers to Build Smart Applications
Amazon Machine Learning: Empowering Developers to Build Smart ApplicationsAmazon Machine Learning: Empowering Developers to Build Smart Applications
Amazon Machine Learning: Empowering Developers to Build Smart Applications
Amazon Web Services
 
AWS reinvent 2019 recap - Riyadh - AI And ML - Ahmed Raafat
AWS reinvent 2019 recap - Riyadh - AI And ML - Ahmed RaafatAWS reinvent 2019 recap - Riyadh - AI And ML - Ahmed Raafat
AWS reinvent 2019 recap - Riyadh - AI And ML - Ahmed Raafat
AWS Riyadh User Group
 
What are the Unique Challenges and Opportunities in Systems for ML?
What are the Unique Challenges and Opportunities in Systems for ML?What are the Unique Challenges and Opportunities in Systems for ML?
What are the Unique Challenges and Opportunities in Systems for ML?
Matei Zaharia
 
IBM Meetup on November 1, 2018: Machine Learning made easy with Watson Studio
IBM Meetup on November 1, 2018: Machine Learning made easy with Watson StudioIBM Meetup on November 1, 2018: Machine Learning made easy with Watson Studio
IBM Meetup on November 1, 2018: Machine Learning made easy with Watson Studio
Svetlana Levitan, PhD
 
ML Workflows with Amazon SageMaker and AWS Step Functions (API325) - AWS re:I...
ML Workflows with Amazon SageMaker and AWS Step Functions (API325) - AWS re:I...ML Workflows with Amazon SageMaker and AWS Step Functions (API325) - AWS re:I...
ML Workflows with Amazon SageMaker and AWS Step Functions (API325) - AWS re:I...
Amazon Web Services
 
Build, Train and Deploy Machine Learning Models at Scale (April 2019)
Build, Train and Deploy Machine Learning Models at Scale (April 2019)Build, Train and Deploy Machine Learning Models at Scale (April 2019)
Build, Train and Deploy Machine Learning Models at Scale (April 2019)
Julien SIMON
 
Build, train, and deploy ML models at scale.pdf
Build, train, and deploy ML models at scale.pdfBuild, train, and deploy ML models at scale.pdf
Build, train, and deploy ML models at scale.pdf
Amazon Web Services
 
Build, train and deploy ML models at scale.pdf
Build, train and deploy ML models at scale.pdfBuild, train and deploy ML models at scale.pdf
Build, train and deploy ML models at scale.pdf
Amazon Web Services
 
Machine Learning in azione con Amazon SageMaker
Machine Learning in azione con Amazon SageMakerMachine Learning in azione con Amazon SageMaker
Machine Learning in azione con Amazon SageMaker
Amazon Web Services
 

Similar to AWS re:Invent 2016: Predicting Customer Churn with Amazon Machine Learning (MAC307) (20)

Amazon Machine Learning Case Study: Predicting Customer Churn
Amazon Machine Learning Case Study: Predicting Customer ChurnAmazon Machine Learning Case Study: Predicting Customer Churn
Amazon Machine Learning Case Study: Predicting Customer Churn
 
Machine Learning as a Service with Amazon Machine Learning
Machine Learning as a Service with Amazon Machine LearningMachine Learning as a Service with Amazon Machine Learning
Machine Learning as a Service with Amazon Machine Learning
 
Build a Recommendation Engine using Amazon Machine Learning in Real-time
Build a Recommendation Engine using Amazon Machine Learning in Real-timeBuild a Recommendation Engine using Amazon Machine Learning in Real-time
Build a Recommendation Engine using Amazon Machine Learning in Real-time
 
使用Amazon Machine Learning 建立即時推薦引擎
使用Amazon Machine Learning 建立即時推薦引擎使用Amazon Machine Learning 建立即時推薦引擎
使用Amazon Machine Learning 建立即時推薦引擎
 
Getting Started with Amazon Machine Learning
Getting Started with Amazon Machine LearningGetting Started with Amazon Machine Learning
Getting Started with Amazon Machine Learning
 
AWS ML and SparkML on EMR to Build Recommendation Engine
AWS ML and SparkML on EMR to Build Recommendation Engine AWS ML and SparkML on EMR to Build Recommendation Engine
AWS ML and SparkML on EMR to Build Recommendation Engine
 
Amazon Machine Learning #AWSLoft Berlin
Amazon Machine Learning #AWSLoft BerlinAmazon Machine Learning #AWSLoft Berlin
Amazon Machine Learning #AWSLoft Berlin
 
Amazon Machine Learning: Empowering Developers to Build Smart Applications
Amazon Machine Learning: Empowering Developers to Build Smart ApplicationsAmazon Machine Learning: Empowering Developers to Build Smart Applications
Amazon Machine Learning: Empowering Developers to Build Smart Applications
 
Amazon Machine Learning
Amazon Machine LearningAmazon Machine Learning
Amazon Machine Learning
 
Amazon Machine Learning: Empowering Developers to Build Smart Applications
Amazon Machine Learning: Empowering Developers to Build Smart ApplicationsAmazon Machine Learning: Empowering Developers to Build Smart Applications
Amazon Machine Learning: Empowering Developers to Build Smart Applications
 
Getting Started with Amazon Machine Learning
Getting Started with Amazon Machine LearningGetting Started with Amazon Machine Learning
Getting Started with Amazon Machine Learning
 
Amazon Machine Learning: Empowering Developers to Build Smart Applications
Amazon Machine Learning: Empowering Developers to Build Smart ApplicationsAmazon Machine Learning: Empowering Developers to Build Smart Applications
Amazon Machine Learning: Empowering Developers to Build Smart Applications
 
AWS reinvent 2019 recap - Riyadh - AI And ML - Ahmed Raafat
AWS reinvent 2019 recap - Riyadh - AI And ML - Ahmed RaafatAWS reinvent 2019 recap - Riyadh - AI And ML - Ahmed Raafat
AWS reinvent 2019 recap - Riyadh - AI And ML - Ahmed Raafat
 
What are the Unique Challenges and Opportunities in Systems for ML?
What are the Unique Challenges and Opportunities in Systems for ML?What are the Unique Challenges and Opportunities in Systems for ML?
What are the Unique Challenges and Opportunities in Systems for ML?
 
IBM Meetup on November 1, 2018: Machine Learning made easy with Watson Studio
IBM Meetup on November 1, 2018: Machine Learning made easy with Watson StudioIBM Meetup on November 1, 2018: Machine Learning made easy with Watson Studio
IBM Meetup on November 1, 2018: Machine Learning made easy with Watson Studio
 
ML Workflows with Amazon SageMaker and AWS Step Functions (API325) - AWS re:I...
ML Workflows with Amazon SageMaker and AWS Step Functions (API325) - AWS re:I...ML Workflows with Amazon SageMaker and AWS Step Functions (API325) - AWS re:I...
ML Workflows with Amazon SageMaker and AWS Step Functions (API325) - AWS re:I...
 
Build, Train and Deploy Machine Learning Models at Scale (April 2019)
Build, Train and Deploy Machine Learning Models at Scale (April 2019)Build, Train and Deploy Machine Learning Models at Scale (April 2019)
Build, Train and Deploy Machine Learning Models at Scale (April 2019)
 
Build, train, and deploy ML models at scale.pdf
Build, train, and deploy ML models at scale.pdfBuild, train, and deploy ML models at scale.pdf
Build, train, and deploy ML models at scale.pdf
 
Build, train and deploy ML models at scale.pdf
Build, train and deploy ML models at scale.pdfBuild, train and deploy ML models at scale.pdf
Build, train and deploy ML models at scale.pdf
 
Machine Learning in azione con Amazon SageMaker
Machine Learning in azione con Amazon SageMakerMachine Learning in azione con Amazon SageMaker
Machine Learning in azione con Amazon SageMaker
 

More from Amazon Web Services

Come costruire servizi di Forecasting sfruttando algoritmi di ML e deep learn...
Come costruire servizi di Forecasting sfruttando algoritmi di ML e deep learn...Come costruire servizi di Forecasting sfruttando algoritmi di ML e deep learn...
Come costruire servizi di Forecasting sfruttando algoritmi di ML e deep learn...
Amazon Web Services
 
Big Data per le Startup: come creare applicazioni Big Data in modalità Server...
Big Data per le Startup: come creare applicazioni Big Data in modalità Server...Big Data per le Startup: come creare applicazioni Big Data in modalità Server...
Big Data per le Startup: come creare applicazioni Big Data in modalità Server...
Amazon Web Services
 
Esegui pod serverless con Amazon EKS e AWS Fargate
Esegui pod serverless con Amazon EKS e AWS FargateEsegui pod serverless con Amazon EKS e AWS Fargate
Esegui pod serverless con Amazon EKS e AWS Fargate
Amazon Web Services
 
Costruire Applicazioni Moderne con AWS
Costruire Applicazioni Moderne con AWSCostruire Applicazioni Moderne con AWS
Costruire Applicazioni Moderne con AWS
Amazon Web Services
 
Come spendere fino al 90% in meno con i container e le istanze spot
Come spendere fino al 90% in meno con i container e le istanze spot Come spendere fino al 90% in meno con i container e le istanze spot
Come spendere fino al 90% in meno con i container e le istanze spot
Amazon Web Services
 
Open banking as a service
Open banking as a serviceOpen banking as a service
Open banking as a service
Amazon Web Services
 
Rendi unica l’offerta della tua startup sul mercato con i servizi Machine Lea...
Rendi unica l’offerta della tua startup sul mercato con i servizi Machine Lea...Rendi unica l’offerta della tua startup sul mercato con i servizi Machine Lea...
Rendi unica l’offerta della tua startup sul mercato con i servizi Machine Lea...
Amazon Web Services
 
OpsWorks Configuration Management: automatizza la gestione e i deployment del...
OpsWorks Configuration Management: automatizza la gestione e i deployment del...OpsWorks Configuration Management: automatizza la gestione e i deployment del...
OpsWorks Configuration Management: automatizza la gestione e i deployment del...
Amazon Web Services
 
Microsoft Active Directory su AWS per supportare i tuoi Windows Workloads
Microsoft Active Directory su AWS per supportare i tuoi Windows WorkloadsMicrosoft Active Directory su AWS per supportare i tuoi Windows Workloads
Microsoft Active Directory su AWS per supportare i tuoi Windows Workloads
Amazon Web Services
 
Computer Vision con AWS
Computer Vision con AWSComputer Vision con AWS
Computer Vision con AWS
Amazon Web Services
 
Database Oracle e VMware Cloud on AWS i miti da sfatare
Database Oracle e VMware Cloud on AWS i miti da sfatareDatabase Oracle e VMware Cloud on AWS i miti da sfatare
Database Oracle e VMware Cloud on AWS i miti da sfatare
Amazon Web Services
 
Crea la tua prima serverless ledger-based app con QLDB e NodeJS
Crea la tua prima serverless ledger-based app con QLDB e NodeJSCrea la tua prima serverless ledger-based app con QLDB e NodeJS
Crea la tua prima serverless ledger-based app con QLDB e NodeJS
Amazon Web Services
 
API moderne real-time per applicazioni mobili e web
API moderne real-time per applicazioni mobili e webAPI moderne real-time per applicazioni mobili e web
API moderne real-time per applicazioni mobili e web
Amazon Web Services
 
Database Oracle e VMware Cloud™ on AWS: i miti da sfatare
Database Oracle e VMware Cloud™ on AWS: i miti da sfatareDatabase Oracle e VMware Cloud™ on AWS: i miti da sfatare
Database Oracle e VMware Cloud™ on AWS: i miti da sfatare
Amazon Web Services
 
Tools for building your MVP on AWS
Tools for building your MVP on AWSTools for building your MVP on AWS
Tools for building your MVP on AWSAmazon Web Services
 
How to Build a Winning Pitch Deck
How to Build a Winning Pitch DeckHow to Build a Winning Pitch Deck
How to Build a Winning Pitch DeckAmazon Web Services
 
Building a web application without servers
Building a web application without serversBuilding a web application without servers
Building a web application without serversAmazon Web Services
 
AWS_HK_StartupDay_Building Interactive websites while automating for efficien...
AWS_HK_StartupDay_Building Interactive websites while automating for efficien...AWS_HK_StartupDay_Building Interactive websites while automating for efficien...
AWS_HK_StartupDay_Building Interactive websites while automating for efficien...Amazon Web Services
 
Introduzione a Amazon Elastic Container Service
Introduzione a Amazon Elastic Container ServiceIntroduzione a Amazon Elastic Container Service
Introduzione a Amazon Elastic Container Service
Amazon Web Services
 

More from Amazon Web Services (20)

Come costruire servizi di Forecasting sfruttando algoritmi di ML e deep learn...
Come costruire servizi di Forecasting sfruttando algoritmi di ML e deep learn...Come costruire servizi di Forecasting sfruttando algoritmi di ML e deep learn...
Come costruire servizi di Forecasting sfruttando algoritmi di ML e deep learn...
 
Big Data per le Startup: come creare applicazioni Big Data in modalità Server...
Big Data per le Startup: come creare applicazioni Big Data in modalità Server...Big Data per le Startup: come creare applicazioni Big Data in modalità Server...
Big Data per le Startup: come creare applicazioni Big Data in modalità Server...
 
Esegui pod serverless con Amazon EKS e AWS Fargate
Esegui pod serverless con Amazon EKS e AWS FargateEsegui pod serverless con Amazon EKS e AWS Fargate
Esegui pod serverless con Amazon EKS e AWS Fargate
 
Costruire Applicazioni Moderne con AWS
Costruire Applicazioni Moderne con AWSCostruire Applicazioni Moderne con AWS
Costruire Applicazioni Moderne con AWS
 
Come spendere fino al 90% in meno con i container e le istanze spot
Come spendere fino al 90% in meno con i container e le istanze spot Come spendere fino al 90% in meno con i container e le istanze spot
Come spendere fino al 90% in meno con i container e le istanze spot
 
Open banking as a service
Open banking as a serviceOpen banking as a service
Open banking as a service
 
Rendi unica l’offerta della tua startup sul mercato con i servizi Machine Lea...
Rendi unica l’offerta della tua startup sul mercato con i servizi Machine Lea...Rendi unica l’offerta della tua startup sul mercato con i servizi Machine Lea...
Rendi unica l’offerta della tua startup sul mercato con i servizi Machine Lea...
 
OpsWorks Configuration Management: automatizza la gestione e i deployment del...
OpsWorks Configuration Management: automatizza la gestione e i deployment del...OpsWorks Configuration Management: automatizza la gestione e i deployment del...
OpsWorks Configuration Management: automatizza la gestione e i deployment del...
 
Microsoft Active Directory su AWS per supportare i tuoi Windows Workloads
Microsoft Active Directory su AWS per supportare i tuoi Windows WorkloadsMicrosoft Active Directory su AWS per supportare i tuoi Windows Workloads
Microsoft Active Directory su AWS per supportare i tuoi Windows Workloads
 
Computer Vision con AWS
Computer Vision con AWSComputer Vision con AWS
Computer Vision con AWS
 
Database Oracle e VMware Cloud on AWS i miti da sfatare
Database Oracle e VMware Cloud on AWS i miti da sfatareDatabase Oracle e VMware Cloud on AWS i miti da sfatare
Database Oracle e VMware Cloud on AWS i miti da sfatare
 
Crea la tua prima serverless ledger-based app con QLDB e NodeJS
Crea la tua prima serverless ledger-based app con QLDB e NodeJSCrea la tua prima serverless ledger-based app con QLDB e NodeJS
Crea la tua prima serverless ledger-based app con QLDB e NodeJS
 
API moderne real-time per applicazioni mobili e web
API moderne real-time per applicazioni mobili e webAPI moderne real-time per applicazioni mobili e web
API moderne real-time per applicazioni mobili e web
 
Database Oracle e VMware Cloud™ on AWS: i miti da sfatare
Database Oracle e VMware Cloud™ on AWS: i miti da sfatareDatabase Oracle e VMware Cloud™ on AWS: i miti da sfatare
Database Oracle e VMware Cloud™ on AWS: i miti da sfatare
 
Tools for building your MVP on AWS
Tools for building your MVP on AWSTools for building your MVP on AWS
Tools for building your MVP on AWS
 
How to Build a Winning Pitch Deck
How to Build a Winning Pitch DeckHow to Build a Winning Pitch Deck
How to Build a Winning Pitch Deck
 
Building a web application without servers
Building a web application without serversBuilding a web application without servers
Building a web application without servers
 
Fundraising Essentials
Fundraising EssentialsFundraising Essentials
Fundraising Essentials
 
AWS_HK_StartupDay_Building Interactive websites while automating for efficien...
AWS_HK_StartupDay_Building Interactive websites while automating for efficien...AWS_HK_StartupDay_Building Interactive websites while automating for efficien...
AWS_HK_StartupDay_Building Interactive websites while automating for efficien...
 
Introduzione a Amazon Elastic Container Service
Introduzione a Amazon Elastic Container ServiceIntroduzione a Amazon Elastic Container Service
Introduzione a Amazon Elastic Container Service
 

Recently uploaded

GridMate - End to end testing is a critical piece to ensure quality and avoid...
GridMate - End to end testing is a critical piece to ensure quality and avoid...GridMate - End to end testing is a critical piece to ensure quality and avoid...
GridMate - End to end testing is a critical piece to ensure quality and avoid...
ThomasParaiso2
 
GraphSummit Singapore | The Art of the Possible with Graph - Q2 2024
GraphSummit Singapore | The Art of the  Possible with Graph - Q2 2024GraphSummit Singapore | The Art of the  Possible with Graph - Q2 2024
GraphSummit Singapore | The Art of the Possible with Graph - Q2 2024
Neo4j
 
Why You Should Replace Windows 11 with Nitrux Linux 3.5.0 for enhanced perfor...
Why You Should Replace Windows 11 with Nitrux Linux 3.5.0 for enhanced perfor...Why You Should Replace Windows 11 with Nitrux Linux 3.5.0 for enhanced perfor...
Why You Should Replace Windows 11 with Nitrux Linux 3.5.0 for enhanced perfor...
SOFTTECHHUB
 
Pushing the limits of ePRTC: 100ns holdover for 100 days
Pushing the limits of ePRTC: 100ns holdover for 100 daysPushing the limits of ePRTC: 100ns holdover for 100 days
Pushing the limits of ePRTC: 100ns holdover for 100 days
Adtran
 
Removing Uninteresting Bytes in Software Fuzzing
Removing Uninteresting Bytes in Software FuzzingRemoving Uninteresting Bytes in Software Fuzzing
Removing Uninteresting Bytes in Software Fuzzing
Aftab Hussain
 
FIDO Alliance Osaka Seminar: The WebAuthn API and Discoverable Credentials.pdf
FIDO Alliance Osaka Seminar: The WebAuthn API and Discoverable Credentials.pdfFIDO Alliance Osaka Seminar: The WebAuthn API and Discoverable Credentials.pdf
FIDO Alliance Osaka Seminar: The WebAuthn API and Discoverable Credentials.pdf
FIDO Alliance
 
PHP Frameworks: I want to break free (IPC Berlin 2024)
PHP Frameworks: I want to break free (IPC Berlin 2024)PHP Frameworks: I want to break free (IPC Berlin 2024)
PHP Frameworks: I want to break free (IPC Berlin 2024)
Ralf Eggert
 
UiPath Test Automation using UiPath Test Suite series, part 5
UiPath Test Automation using UiPath Test Suite series, part 5UiPath Test Automation using UiPath Test Suite series, part 5
UiPath Test Automation using UiPath Test Suite series, part 5
DianaGray10
 
FIDO Alliance Osaka Seminar: Passkeys and the Road Ahead.pdf
FIDO Alliance Osaka Seminar: Passkeys and the Road Ahead.pdfFIDO Alliance Osaka Seminar: Passkeys and the Road Ahead.pdf
FIDO Alliance Osaka Seminar: Passkeys and the Road Ahead.pdf
FIDO Alliance
 
SAP Sapphire 2024 - ASUG301 building better apps with SAP Fiori.pdf
SAP Sapphire 2024 - ASUG301 building better apps with SAP Fiori.pdfSAP Sapphire 2024 - ASUG301 building better apps with SAP Fiori.pdf
SAP Sapphire 2024 - ASUG301 building better apps with SAP Fiori.pdf
Peter Spielvogel
 
Elevating Tactical DDD Patterns Through Object Calisthenics
Elevating Tactical DDD Patterns Through Object CalisthenicsElevating Tactical DDD Patterns Through Object Calisthenics
Elevating Tactical DDD Patterns Through Object Calisthenics
Dorra BARTAGUIZ
 
20240605 QFM017 Machine Intelligence Reading List May 2024
20240605 QFM017 Machine Intelligence Reading List May 202420240605 QFM017 Machine Intelligence Reading List May 2024
20240605 QFM017 Machine Intelligence Reading List May 2024
Matthew Sinclair
 
National Security Agency - NSA mobile device best practices
National Security Agency - NSA mobile device best practicesNational Security Agency - NSA mobile device best practices
National Security Agency - NSA mobile device best practices
Quotidiano Piemontese
 
Alt. GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using ...
Alt. GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using ...Alt. GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using ...
Alt. GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using ...
James Anderson
 
Encryption in Microsoft 365 - ExpertsLive Netherlands 2024
Encryption in Microsoft 365 - ExpertsLive Netherlands 2024Encryption in Microsoft 365 - ExpertsLive Netherlands 2024
Encryption in Microsoft 365 - ExpertsLive Netherlands 2024
Albert Hoitingh
 
FIDO Alliance Osaka Seminar: Overview.pdf
FIDO Alliance Osaka Seminar: Overview.pdfFIDO Alliance Osaka Seminar: Overview.pdf
FIDO Alliance Osaka Seminar: Overview.pdf
FIDO Alliance
 
PCI PIN Basics Webinar from the Controlcase Team
PCI PIN Basics Webinar from the Controlcase TeamPCI PIN Basics Webinar from the Controlcase Team
PCI PIN Basics Webinar from the Controlcase Team
ControlCase
 
The Future of Platform Engineering
The Future of Platform EngineeringThe Future of Platform Engineering
The Future of Platform Engineering
Jemma Hussein Allen
 
GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using Deplo...
GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using Deplo...GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using Deplo...
GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using Deplo...
James Anderson
 
Video Streaming: Then, Now, and in the Future
Video Streaming: Then, Now, and in the FutureVideo Streaming: Then, Now, and in the Future
Video Streaming: Then, Now, and in the Future
Alpen-Adria-Universität
 

Recently uploaded (20)

GridMate - End to end testing is a critical piece to ensure quality and avoid...
GridMate - End to end testing is a critical piece to ensure quality and avoid...GridMate - End to end testing is a critical piece to ensure quality and avoid...
GridMate - End to end testing is a critical piece to ensure quality and avoid...
 
GraphSummit Singapore | The Art of the Possible with Graph - Q2 2024
GraphSummit Singapore | The Art of the  Possible with Graph - Q2 2024GraphSummit Singapore | The Art of the  Possible with Graph - Q2 2024
GraphSummit Singapore | The Art of the Possible with Graph - Q2 2024
 
Why You Should Replace Windows 11 with Nitrux Linux 3.5.0 for enhanced perfor...
Why You Should Replace Windows 11 with Nitrux Linux 3.5.0 for enhanced perfor...Why You Should Replace Windows 11 with Nitrux Linux 3.5.0 for enhanced perfor...
Why You Should Replace Windows 11 with Nitrux Linux 3.5.0 for enhanced perfor...
 
Pushing the limits of ePRTC: 100ns holdover for 100 days
Pushing the limits of ePRTC: 100ns holdover for 100 daysPushing the limits of ePRTC: 100ns holdover for 100 days
Pushing the limits of ePRTC: 100ns holdover for 100 days
 
Removing Uninteresting Bytes in Software Fuzzing
Removing Uninteresting Bytes in Software FuzzingRemoving Uninteresting Bytes in Software Fuzzing
Removing Uninteresting Bytes in Software Fuzzing
 
FIDO Alliance Osaka Seminar: The WebAuthn API and Discoverable Credentials.pdf
FIDO Alliance Osaka Seminar: The WebAuthn API and Discoverable Credentials.pdfFIDO Alliance Osaka Seminar: The WebAuthn API and Discoverable Credentials.pdf
FIDO Alliance Osaka Seminar: The WebAuthn API and Discoverable Credentials.pdf
 
PHP Frameworks: I want to break free (IPC Berlin 2024)
PHP Frameworks: I want to break free (IPC Berlin 2024)PHP Frameworks: I want to break free (IPC Berlin 2024)
PHP Frameworks: I want to break free (IPC Berlin 2024)
 
UiPath Test Automation using UiPath Test Suite series, part 5
UiPath Test Automation using UiPath Test Suite series, part 5UiPath Test Automation using UiPath Test Suite series, part 5
UiPath Test Automation using UiPath Test Suite series, part 5
 
FIDO Alliance Osaka Seminar: Passkeys and the Road Ahead.pdf
FIDO Alliance Osaka Seminar: Passkeys and the Road Ahead.pdfFIDO Alliance Osaka Seminar: Passkeys and the Road Ahead.pdf
FIDO Alliance Osaka Seminar: Passkeys and the Road Ahead.pdf
 
SAP Sapphire 2024 - ASUG301 building better apps with SAP Fiori.pdf
SAP Sapphire 2024 - ASUG301 building better apps with SAP Fiori.pdfSAP Sapphire 2024 - ASUG301 building better apps with SAP Fiori.pdf
SAP Sapphire 2024 - ASUG301 building better apps with SAP Fiori.pdf
 
Elevating Tactical DDD Patterns Through Object Calisthenics
Elevating Tactical DDD Patterns Through Object CalisthenicsElevating Tactical DDD Patterns Through Object Calisthenics
Elevating Tactical DDD Patterns Through Object Calisthenics
 
20240605 QFM017 Machine Intelligence Reading List May 2024
20240605 QFM017 Machine Intelligence Reading List May 202420240605 QFM017 Machine Intelligence Reading List May 2024
20240605 QFM017 Machine Intelligence Reading List May 2024
 
National Security Agency - NSA mobile device best practices
National Security Agency - NSA mobile device best practicesNational Security Agency - NSA mobile device best practices
National Security Agency - NSA mobile device best practices
 
Alt. GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using ...
Alt. GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using ...Alt. GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using ...
Alt. GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using ...
 
Encryption in Microsoft 365 - ExpertsLive Netherlands 2024
Encryption in Microsoft 365 - ExpertsLive Netherlands 2024Encryption in Microsoft 365 - ExpertsLive Netherlands 2024
Encryption in Microsoft 365 - ExpertsLive Netherlands 2024
 
FIDO Alliance Osaka Seminar: Overview.pdf
FIDO Alliance Osaka Seminar: Overview.pdfFIDO Alliance Osaka Seminar: Overview.pdf
FIDO Alliance Osaka Seminar: Overview.pdf
 
PCI PIN Basics Webinar from the Controlcase Team
PCI PIN Basics Webinar from the Controlcase TeamPCI PIN Basics Webinar from the Controlcase Team
PCI PIN Basics Webinar from the Controlcase Team
 
The Future of Platform Engineering
The Future of Platform EngineeringThe Future of Platform Engineering
The Future of Platform Engineering
 
GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using Deplo...
GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using Deplo...GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using Deplo...
GDG Cloud Southlake #33: Boule & Rebala: Effective AppSec in SDLC using Deplo...
 
Video Streaming: Then, Now, and in the Future
Video Streaming: Then, Now, and in the FutureVideo Streaming: Then, Now, and in the Future
Video Streaming: Then, Now, and in the Future
 

AWS re:Invent 2016: Predicting Customer Churn with Amazon Machine Learning (MAC307)