SlideShare a Scribd company logo
1 of 14
Download to read offline
Edith Ohri
Datalert (startup)
edith@datalert.co.il
FabHighQ
- a GT data mining application
Team member - Edith Ohri
• Edith Ohri - Industrial & Management Eng. from Israel
Technion and MSc from NY Polytech.
• The developer of GT data mining (big data); GT
received a research grant from SMU Singapore.
• Currently works on applications of GT.
• Previously initiated a project sponsored by Israel Chief
Scientist on “Procedure Systems Diagnostics”.
• Prior to that worked in Israel and the USA as an IE
Eng. And System Analyst.
7Sep-2018 Garage+ presentation by Datalert © GT analytics Slide 2
Fab-High-Q Value Proposition:
HIGHER YIELDS
• Fab-High-Q produces higher yields by finding
the root causes of Quality faults, and guiding
their detection and early stage prevention.
• The solution has a very high net value thanks
to using existing infrastructure, thus saving
the large part of investment, preparations,
integration, training and maintenance costs.
7Sep-2018 Garage+ presentation by Datalert © GT analytics 3
Further Benefits
• Shorter time to market for new products
• Flexible capacity planning
• Faster Learning
• More automation
• Reduced overhead
7Sep-2018 Garage+ presentation by Datalert © GT analytics 4
The product: Fab-High-Q
Fab-High-Q is a data analytics algorithm that
spots Quality risks, sends alerts and suggests
corrections, based on GT – a proprietary
universal solution.
Main strengths:
– Discovery of hidden patterns
– Early detection
– In-depth Machine Learning
– Robustness, very little pre requirements
– Supplied as a turn-key project.
7Sep-2018 Garage+ presentation by Datalert © GT analytics Slide 5
Options of implementation
• Per order project
• Licensing
• Collaboration.
7Sep-2018 Garage+ presentation by Datalert © GT analytics 6
Example – Fab Higher Yields
• The case: a Fab which specializes in small-batch
manufacturing, experienced a steep decrease
in yields.
• GT was called in “to find out which work
stations are responsible for the quality failure”.
• It found that the root cause was rather in the
wafer supply processes. The findings led to
new insights about prevention and
improvement of yields.
7Sep-2018 Garage+ presentation by Datalert © GT analytics 7
Example cont. Overcoming Bad Data
7Sep-2018 Garage+ presentation by Datalert © GT analytics 8
• The data input was challenging. It had many outliers,
noise, missing values, and disrupted records due to a
computer upgrade that took place in the critical period.
• GT overcame the bad data by applying cluster analysis.
Example cont. Finding a clue
Among the clusters there was an irregular tiny
yet significant pattern (marked in red) that
occurred in the beginning of the Quality
deterioration. (cont. next slide)
7Sep-2018 Garage+ presentation by Datalert © GT analytics 9
Example cont. The Root Cause
7Sep-2018
The Quality failure was indeed related to a special
event: a very large production order in the 2 lines under
study (red and blue).
The large order created a shortage in high quality
wafers. The “blue” line started to fail consequently until
brought to a halt.
Garage+ presentation by Datalert © GT analytics 10
Example cont. The Solution
• The answer to a raw-material shortage is
increased supply by acquiring additional
quantities from internal or external sources.
• The best way though to increase the supply
would be to improve the quality of the in-
house wafers, by learning with GT their “long
tail” quality distribution.
7Sep-2018 Garage+ presentation by Datalert © GT analytics 11
GT founds in the wafer long tails several sub-
groups. The high end sub-groups could be
expanded thereby improving the total ovens
turn out.
Example cont. Exploiting Long Tails
7Sep-2018 Garage+ presentation by Datalert © GT analytics 12
Example cont. Lessons to draw
• All data sources are equally good; the more
unsupervised the better it is.
• Presuming in big data analysis doesn’t help.
• Good AI creates more answers than asked-for.
• Focus first and most on root causes.
“Defining the source of the problem is half
the way to the solution” (a Hebrew proverb).
7Sep-2018 Garage+ presentation by Datalert © GT analytics 13
Thanks
Edith Ohri
Datalert (startup)
edith@datalert.co.il
* The pictures are from free sources on the internet
7Sep-2018 Garage+ presentation by Datalert © GT analytics 14

More Related Content

What's hot

AVEVA World Conference NA - Cormac Ryan, AVEVA ISM
AVEVA World Conference NA - Cormac Ryan, AVEVA ISMAVEVA World Conference NA - Cormac Ryan, AVEVA ISM
AVEVA World Conference NA - Cormac Ryan, AVEVA ISMAVEVA-Americas
 
AVEVA World Conference NA - Jeyoung Woo, University of Texas at Austin
AVEVA World Conference NA - Jeyoung Woo, University of Texas at AustinAVEVA World Conference NA - Jeyoung Woo, University of Texas at Austin
AVEVA World Conference NA - Jeyoung Woo, University of Texas at AustinAVEVA-Americas
 
Fusing Material and Data Science
Fusing Material and Data ScienceFusing Material and Data Science
Fusing Material and Data ScienceSentient Science
 
Monitoring data quality by Jos Gheerardyn of Yields.io
Monitoring data quality by Jos Gheerardyn of Yields.ioMonitoring data quality by Jos Gheerardyn of Yields.io
Monitoring data quality by Jos Gheerardyn of Yields.ioDataops Ghent Meetup
 
Replatform your Teradata to a Next-Gen Cloud Data Platform in Weeks, Not Years
Replatform your Teradata to a Next-Gen Cloud Data Platform in Weeks, Not YearsReplatform your Teradata to a Next-Gen Cloud Data Platform in Weeks, Not Years
Replatform your Teradata to a Next-Gen Cloud Data Platform in Weeks, Not YearsVMware Tanzu
 
Resume_Sarnab
Resume_SarnabResume_Sarnab
Resume_Sarnabsarnab13
 
Ideagen Compliance Overview
Ideagen Compliance OverviewIdeagen Compliance Overview
Ideagen Compliance Overviewdarren_s
 
AVEVA World Conference NA - Todd Kubiak, AVEVA NET
AVEVA World Conference NA - Todd Kubiak, AVEVA NETAVEVA World Conference NA - Todd Kubiak, AVEVA NET
AVEVA World Conference NA - Todd Kubiak, AVEVA NETAVEVA-Americas
 
Accelerating Innovation Through HPC-Enabled Simulations
Accelerating Innovation Through HPC-Enabled SimulationsAccelerating Innovation Through HPC-Enabled Simulations
Accelerating Innovation Through HPC-Enabled SimulationsAnsys
 
Predictive Maintenance for Oil and Gas
Predictive Maintenance for Oil and Gas Predictive Maintenance for Oil and Gas
Predictive Maintenance for Oil and Gas Helen Fisher
 
Welcome to DataBench
Welcome to DataBenchWelcome to DataBench
Welcome to DataBenchDataBench
 
Bridged Overview by CodeData
Bridged Overview by CodeDataBridged Overview by CodeData
Bridged Overview by CodeDataSam Sur
 
ANSYS Corporate Overview
ANSYS Corporate OverviewANSYS Corporate Overview
ANSYS Corporate OverviewAnsys
 
An example of discovering simple patterns using basic data mining
An example of discovering simple patterns using basic data miningAn example of discovering simple patterns using basic data mining
An example of discovering simple patterns using basic data miningEoin Brazil
 
Creating data harmonisation between seven wind farms Martin Elliot 20 Novembe...
Creating data harmonisation between seven wind farms Martin Elliot 20 Novembe...Creating data harmonisation between seven wind farms Martin Elliot 20 Novembe...
Creating data harmonisation between seven wind farms Martin Elliot 20 Novembe...BVG Associates
 
Cloud Computing Examples at ICHEC
Cloud Computing Examples at ICHECCloud Computing Examples at ICHEC
Cloud Computing Examples at ICHECEoin Brazil
 
Pragmatic Analytics - Case Studies of High Performance Computing for Better B...
Pragmatic Analytics - Case Studies of High Performance Computing for Better B...Pragmatic Analytics - Case Studies of High Performance Computing for Better B...
Pragmatic Analytics - Case Studies of High Performance Computing for Better B...Eoin Brazil
 

What's hot (20)

AVEVA World Conference NA - Cormac Ryan, AVEVA ISM
AVEVA World Conference NA - Cormac Ryan, AVEVA ISMAVEVA World Conference NA - Cormac Ryan, AVEVA ISM
AVEVA World Conference NA - Cormac Ryan, AVEVA ISM
 
AVEVA World Conference NA - Jeyoung Woo, University of Texas at Austin
AVEVA World Conference NA - Jeyoung Woo, University of Texas at AustinAVEVA World Conference NA - Jeyoung Woo, University of Texas at Austin
AVEVA World Conference NA - Jeyoung Woo, University of Texas at Austin
 
Fusing Material and Data Science
Fusing Material and Data ScienceFusing Material and Data Science
Fusing Material and Data Science
 
Jan Baum - IgniteMEDA
Jan Baum - IgniteMEDAJan Baum - IgniteMEDA
Jan Baum - IgniteMEDA
 
Monitoring data quality by Jos Gheerardyn of Yields.io
Monitoring data quality by Jos Gheerardyn of Yields.ioMonitoring data quality by Jos Gheerardyn of Yields.io
Monitoring data quality by Jos Gheerardyn of Yields.io
 
Replatform your Teradata to a Next-Gen Cloud Data Platform in Weeks, Not Years
Replatform your Teradata to a Next-Gen Cloud Data Platform in Weeks, Not YearsReplatform your Teradata to a Next-Gen Cloud Data Platform in Weeks, Not Years
Replatform your Teradata to a Next-Gen Cloud Data Platform in Weeks, Not Years
 
Resume_Sarnab
Resume_SarnabResume_Sarnab
Resume_Sarnab
 
Ideagen Compliance Overview
Ideagen Compliance OverviewIdeagen Compliance Overview
Ideagen Compliance Overview
 
AVEVA World Conference NA - Todd Kubiak, AVEVA NET
AVEVA World Conference NA - Todd Kubiak, AVEVA NETAVEVA World Conference NA - Todd Kubiak, AVEVA NET
AVEVA World Conference NA - Todd Kubiak, AVEVA NET
 
Accelerating Innovation Through HPC-Enabled Simulations
Accelerating Innovation Through HPC-Enabled SimulationsAccelerating Innovation Through HPC-Enabled Simulations
Accelerating Innovation Through HPC-Enabled Simulations
 
Predictive Maintenance for Oil and Gas
Predictive Maintenance for Oil and Gas Predictive Maintenance for Oil and Gas
Predictive Maintenance for Oil and Gas
 
Welcome to DataBench
Welcome to DataBenchWelcome to DataBench
Welcome to DataBench
 
Bridged Overview by CodeData
Bridged Overview by CodeDataBridged Overview by CodeData
Bridged Overview by CodeData
 
ANSYS Corporate Overview
ANSYS Corporate OverviewANSYS Corporate Overview
ANSYS Corporate Overview
 
An example of discovering simple patterns using basic data mining
An example of discovering simple patterns using basic data miningAn example of discovering simple patterns using basic data mining
An example of discovering simple patterns using basic data mining
 
Creating data harmonisation between seven wind farms Martin Elliot 20 Novembe...
Creating data harmonisation between seven wind farms Martin Elliot 20 Novembe...Creating data harmonisation between seven wind farms Martin Elliot 20 Novembe...
Creating data harmonisation between seven wind farms Martin Elliot 20 Novembe...
 
Postgres survey podcast
Postgres survey podcastPostgres survey podcast
Postgres survey podcast
 
Cloud Computing Examples at ICHEC
Cloud Computing Examples at ICHECCloud Computing Examples at ICHEC
Cloud Computing Examples at ICHEC
 
Pragmatic Analytics - Case Studies of High Performance Computing for Better B...
Pragmatic Analytics - Case Studies of High Performance Computing for Better B...Pragmatic Analytics - Case Studies of High Performance Computing for Better B...
Pragmatic Analytics - Case Studies of High Performance Computing for Better B...
 
Material In-Charge89
Material In-Charge89Material In-Charge89
Material In-Charge89
 

Similar to Gt data mining ai algorithm for fabs

Washington DC DataOps Meetup -- Nov 2019
Washington DC DataOps Meetup   -- Nov 2019Washington DC DataOps Meetup   -- Nov 2019
Washington DC DataOps Meetup -- Nov 2019DataKitchen
 
Fri benghiat gil-odsc-data-kitchen-data science to dataops
Fri benghiat gil-odsc-data-kitchen-data science to dataopsFri benghiat gil-odsc-data-kitchen-data science to dataops
Fri benghiat gil-odsc-data-kitchen-data science to dataopsDataKitchen
 
Artificial Intelligence and Analytic Ops to Continuously Improve Business Out...
Artificial Intelligence and Analytic Ops to Continuously Improve Business Out...Artificial Intelligence and Analytic Ops to Continuously Improve Business Out...
Artificial Intelligence and Analytic Ops to Continuously Improve Business Out...DataWorks Summit
 
Hadoop 2015: what we larned -Think Big, A Teradata Company
Hadoop 2015: what we larned -Think Big, A Teradata CompanyHadoop 2015: what we larned -Think Big, A Teradata Company
Hadoop 2015: what we larned -Think Big, A Teradata CompanyDataWorks Summit
 
seven steps to dataops @ dataops.rocks conference Oct 2019
seven steps to dataops @ dataops.rocks conference Oct 2019seven steps to dataops @ dataops.rocks conference Oct 2019
seven steps to dataops @ dataops.rocks conference Oct 2019DataKitchen
 
🌐 Transforming Supply Chains with Generative AI
🌐 Transforming Supply Chains with Generative AI🌐 Transforming Supply Chains with Generative AI
🌐 Transforming Supply Chains with Generative AIDanar Mustafa
 
Essential Prerequisites for Maximizing Success from Big Data
Essential Prerequisites for Maximizing Success from Big DataEssential Prerequisites for Maximizing Success from Big Data
Essential Prerequisites for Maximizing Success from Big DataSociety of Petroleum Engineers
 
[DSC Europe 23] Marcel Tkacik - Augmented Retrieval Products with GAI models
[DSC Europe 23] Marcel Tkacik - Augmented Retrieval Products with GAI models[DSC Europe 23] Marcel Tkacik - Augmented Retrieval Products with GAI models
[DSC Europe 23] Marcel Tkacik - Augmented Retrieval Products with GAI modelsDataScienceConferenc1
 
ATAGTR2017 Performance Testing and Non-Functional Testing Strategy for Big Da...
ATAGTR2017 Performance Testing and Non-Functional Testing Strategy for Big Da...ATAGTR2017 Performance Testing and Non-Functional Testing Strategy for Big Da...
ATAGTR2017 Performance Testing and Non-Functional Testing Strategy for Big Da...Agile Testing Alliance
 
Challenges of an large infrastructure provider
Challenges of an large infrastructure  providerChallenges of an large infrastructure  provider
Challenges of an large infrastructure providerData Market Austria
 
R meetup talk scaling data science with dgit
R meetup talk   scaling data science with dgitR meetup talk   scaling data science with dgit
R meetup talk scaling data science with dgitVenkata Pingali
 
Internet of Things Cologne 2015: The Contribution of New Data Storage and Ana...
Internet of Things Cologne 2015: The Contribution of New Data Storage and Ana...Internet of Things Cologne 2015: The Contribution of New Data Storage and Ana...
Internet of Things Cologne 2015: The Contribution of New Data Storage and Ana...MongoDB
 
Kaggle and data science
Kaggle and data scienceKaggle and data science
Kaggle and data scienceAkira Shibata
 
Leveraging Automated Data Validation to Reduce Software Development Timeline...
Leveraging Automated Data Validation  to Reduce Software Development Timeline...Leveraging Automated Data Validation  to Reduce Software Development Timeline...
Leveraging Automated Data Validation to Reduce Software Development Timeline...Cognizant
 
Cbt storage at scale use case deck
Cbt storage at scale use case deckCbt storage at scale use case deck
Cbt storage at scale use case deckjaswantinxero
 
Capgemini Flexplm Case Studies
Capgemini Flexplm Case StudiesCapgemini Flexplm Case Studies
Capgemini Flexplm Case StudiesBrion Carroll (II)
 
Big Data for Product Managers
Big Data for Product ManagersBig Data for Product Managers
Big Data for Product ManagersPentaho
 
Gimel at Teradata Analytics Universe 2018
Gimel at Teradata Analytics Universe 2018Gimel at Teradata Analytics Universe 2018
Gimel at Teradata Analytics Universe 2018Romit Mehta
 
Analytics ROI Best Practices
Analytics ROI Best PracticesAnalytics ROI Best Practices
Analytics ROI Best PracticesDATAVERSITY
 

Similar to Gt data mining ai algorithm for fabs (20)

Washington DC DataOps Meetup -- Nov 2019
Washington DC DataOps Meetup   -- Nov 2019Washington DC DataOps Meetup   -- Nov 2019
Washington DC DataOps Meetup -- Nov 2019
 
Fri benghiat gil-odsc-data-kitchen-data science to dataops
Fri benghiat gil-odsc-data-kitchen-data science to dataopsFri benghiat gil-odsc-data-kitchen-data science to dataops
Fri benghiat gil-odsc-data-kitchen-data science to dataops
 
Artificial Intelligence and Analytic Ops to Continuously Improve Business Out...
Artificial Intelligence and Analytic Ops to Continuously Improve Business Out...Artificial Intelligence and Analytic Ops to Continuously Improve Business Out...
Artificial Intelligence and Analytic Ops to Continuously Improve Business Out...
 
Hadoop 2015: what we larned -Think Big, A Teradata Company
Hadoop 2015: what we larned -Think Big, A Teradata CompanyHadoop 2015: what we larned -Think Big, A Teradata Company
Hadoop 2015: what we larned -Think Big, A Teradata Company
 
seven steps to dataops @ dataops.rocks conference Oct 2019
seven steps to dataops @ dataops.rocks conference Oct 2019seven steps to dataops @ dataops.rocks conference Oct 2019
seven steps to dataops @ dataops.rocks conference Oct 2019
 
🌐 Transforming Supply Chains with Generative AI
🌐 Transforming Supply Chains with Generative AI🌐 Transforming Supply Chains with Generative AI
🌐 Transforming Supply Chains with Generative AI
 
Essential Prerequisites for Maximizing Success from Big Data
Essential Prerequisites for Maximizing Success from Big DataEssential Prerequisites for Maximizing Success from Big Data
Essential Prerequisites for Maximizing Success from Big Data
 
[DSC Europe 23] Marcel Tkacik - Augmented Retrieval Products with GAI models
[DSC Europe 23] Marcel Tkacik - Augmented Retrieval Products with GAI models[DSC Europe 23] Marcel Tkacik - Augmented Retrieval Products with GAI models
[DSC Europe 23] Marcel Tkacik - Augmented Retrieval Products with GAI models
 
ATAGTR2017 Performance Testing and Non-Functional Testing Strategy for Big Da...
ATAGTR2017 Performance Testing and Non-Functional Testing Strategy for Big Da...ATAGTR2017 Performance Testing and Non-Functional Testing Strategy for Big Da...
ATAGTR2017 Performance Testing and Non-Functional Testing Strategy for Big Da...
 
Challenges of an large infrastructure provider
Challenges of an large infrastructure  providerChallenges of an large infrastructure  provider
Challenges of an large infrastructure provider
 
R meetup talk scaling data science with dgit
R meetup talk   scaling data science with dgitR meetup talk   scaling data science with dgit
R meetup talk scaling data science with dgit
 
Six Sigma Project
Six Sigma ProjectSix Sigma Project
Six Sigma Project
 
Internet of Things Cologne 2015: The Contribution of New Data Storage and Ana...
Internet of Things Cologne 2015: The Contribution of New Data Storage and Ana...Internet of Things Cologne 2015: The Contribution of New Data Storage and Ana...
Internet of Things Cologne 2015: The Contribution of New Data Storage and Ana...
 
Kaggle and data science
Kaggle and data scienceKaggle and data science
Kaggle and data science
 
Leveraging Automated Data Validation to Reduce Software Development Timeline...
Leveraging Automated Data Validation  to Reduce Software Development Timeline...Leveraging Automated Data Validation  to Reduce Software Development Timeline...
Leveraging Automated Data Validation to Reduce Software Development Timeline...
 
Cbt storage at scale use case deck
Cbt storage at scale use case deckCbt storage at scale use case deck
Cbt storage at scale use case deck
 
Capgemini Flexplm Case Studies
Capgemini Flexplm Case StudiesCapgemini Flexplm Case Studies
Capgemini Flexplm Case Studies
 
Big Data for Product Managers
Big Data for Product ManagersBig Data for Product Managers
Big Data for Product Managers
 
Gimel at Teradata Analytics Universe 2018
Gimel at Teradata Analytics Universe 2018Gimel at Teradata Analytics Universe 2018
Gimel at Teradata Analytics Universe 2018
 
Analytics ROI Best Practices
Analytics ROI Best PracticesAnalytics ROI Best Practices
Analytics ROI Best Practices
 

Recently uploaded

DATA SUMMIT 24 Building Real-Time Pipelines With FLaNK
DATA SUMMIT 24  Building Real-Time Pipelines With FLaNKDATA SUMMIT 24  Building Real-Time Pipelines With FLaNK
DATA SUMMIT 24 Building Real-Time Pipelines With FLaNKTimothy Spann
 
Top profile Call Girls In Tumkur [ 7014168258 ] Call Me For Genuine Models We...
Top profile Call Girls In Tumkur [ 7014168258 ] Call Me For Genuine Models We...Top profile Call Girls In Tumkur [ 7014168258 ] Call Me For Genuine Models We...
Top profile Call Girls In Tumkur [ 7014168258 ] Call Me For Genuine Models We...nirzagarg
 
Ranking and Scoring Exercises for Research
Ranking and Scoring Exercises for ResearchRanking and Scoring Exercises for Research
Ranking and Scoring Exercises for ResearchRajesh Mondal
 
Top profile Call Girls In Chandrapur [ 7014168258 ] Call Me For Genuine Model...
Top profile Call Girls In Chandrapur [ 7014168258 ] Call Me For Genuine Model...Top profile Call Girls In Chandrapur [ 7014168258 ] Call Me For Genuine Model...
Top profile Call Girls In Chandrapur [ 7014168258 ] Call Me For Genuine Model...gajnagarg
 
TrafficWave Generator Will Instantly drive targeted and engaging traffic back...
TrafficWave Generator Will Instantly drive targeted and engaging traffic back...TrafficWave Generator Will Instantly drive targeted and engaging traffic back...
TrafficWave Generator Will Instantly drive targeted and engaging traffic back...SOFTTECHHUB
 
Top profile Call Girls In Begusarai [ 7014168258 ] Call Me For Genuine Models...
Top profile Call Girls In Begusarai [ 7014168258 ] Call Me For Genuine Models...Top profile Call Girls In Begusarai [ 7014168258 ] Call Me For Genuine Models...
Top profile Call Girls In Begusarai [ 7014168258 ] Call Me For Genuine Models...nirzagarg
 
In Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi Arabia
In Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi ArabiaIn Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi Arabia
In Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi Arabiaahmedjiabur940
 
Charbagh + Female Escorts Service in Lucknow | Starting ₹,5K To @25k with A/C...
Charbagh + Female Escorts Service in Lucknow | Starting ₹,5K To @25k with A/C...Charbagh + Female Escorts Service in Lucknow | Starting ₹,5K To @25k with A/C...
Charbagh + Female Escorts Service in Lucknow | Starting ₹,5K To @25k with A/C...HyderabadDolls
 
Top profile Call Girls In Purnia [ 7014168258 ] Call Me For Genuine Models We...
Top profile Call Girls In Purnia [ 7014168258 ] Call Me For Genuine Models We...Top profile Call Girls In Purnia [ 7014168258 ] Call Me For Genuine Models We...
Top profile Call Girls In Purnia [ 7014168258 ] Call Me For Genuine Models We...nirzagarg
 
Vadodara 💋 Call Girl 7737669865 Call Girls in Vadodara Escort service book now
Vadodara 💋 Call Girl 7737669865 Call Girls in Vadodara Escort service book nowVadodara 💋 Call Girl 7737669865 Call Girls in Vadodara Escort service book now
Vadodara 💋 Call Girl 7737669865 Call Girls in Vadodara Escort service book nowgargpaaro
 
Top profile Call Girls In Hapur [ 7014168258 ] Call Me For Genuine Models We ...
Top profile Call Girls In Hapur [ 7014168258 ] Call Me For Genuine Models We ...Top profile Call Girls In Hapur [ 7014168258 ] Call Me For Genuine Models We ...
Top profile Call Girls In Hapur [ 7014168258 ] Call Me For Genuine Models We ...nirzagarg
 
Computer science Sql cheat sheet.pdf.pdf
Computer science Sql cheat sheet.pdf.pdfComputer science Sql cheat sheet.pdf.pdf
Computer science Sql cheat sheet.pdf.pdfSayantanBiswas37
 
怎样办理圣地亚哥州立大学毕业证(SDSU毕业证书)成绩单学校原版复制
怎样办理圣地亚哥州立大学毕业证(SDSU毕业证书)成绩单学校原版复制怎样办理圣地亚哥州立大学毕业证(SDSU毕业证书)成绩单学校原版复制
怎样办理圣地亚哥州立大学毕业证(SDSU毕业证书)成绩单学校原版复制vexqp
 
Digital Transformation Playbook by Graham Ware
Digital Transformation Playbook by Graham WareDigital Transformation Playbook by Graham Ware
Digital Transformation Playbook by Graham WareGraham Ware
 
Jual obat aborsi Bandung ( 085657271886 ) Cytote pil telat bulan penggugur ka...
Jual obat aborsi Bandung ( 085657271886 ) Cytote pil telat bulan penggugur ka...Jual obat aborsi Bandung ( 085657271886 ) Cytote pil telat bulan penggugur ka...
Jual obat aborsi Bandung ( 085657271886 ) Cytote pil telat bulan penggugur ka...Klinik kandungan
 
Statistics notes ,it includes mean to index numbers
Statistics notes ,it includes mean to index numbersStatistics notes ,it includes mean to index numbers
Statistics notes ,it includes mean to index numberssuginr1
 
Discover Why Less is More in B2B Research
Discover Why Less is More in B2B ResearchDiscover Why Less is More in B2B Research
Discover Why Less is More in B2B Researchmichael115558
 
如何办理英国诺森比亚大学毕业证(NU毕业证书)成绩单原件一模一样
如何办理英国诺森比亚大学毕业证(NU毕业证书)成绩单原件一模一样如何办理英国诺森比亚大学毕业证(NU毕业证书)成绩单原件一模一样
如何办理英国诺森比亚大学毕业证(NU毕业证书)成绩单原件一模一样wsppdmt
 
SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...
SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...
SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...Elaine Werffeli
 

Recently uploaded (20)

DATA SUMMIT 24 Building Real-Time Pipelines With FLaNK
DATA SUMMIT 24  Building Real-Time Pipelines With FLaNKDATA SUMMIT 24  Building Real-Time Pipelines With FLaNK
DATA SUMMIT 24 Building Real-Time Pipelines With FLaNK
 
Top profile Call Girls In Tumkur [ 7014168258 ] Call Me For Genuine Models We...
Top profile Call Girls In Tumkur [ 7014168258 ] Call Me For Genuine Models We...Top profile Call Girls In Tumkur [ 7014168258 ] Call Me For Genuine Models We...
Top profile Call Girls In Tumkur [ 7014168258 ] Call Me For Genuine Models We...
 
Ranking and Scoring Exercises for Research
Ranking and Scoring Exercises for ResearchRanking and Scoring Exercises for Research
Ranking and Scoring Exercises for Research
 
Top profile Call Girls In Chandrapur [ 7014168258 ] Call Me For Genuine Model...
Top profile Call Girls In Chandrapur [ 7014168258 ] Call Me For Genuine Model...Top profile Call Girls In Chandrapur [ 7014168258 ] Call Me For Genuine Model...
Top profile Call Girls In Chandrapur [ 7014168258 ] Call Me For Genuine Model...
 
TrafficWave Generator Will Instantly drive targeted and engaging traffic back...
TrafficWave Generator Will Instantly drive targeted and engaging traffic back...TrafficWave Generator Will Instantly drive targeted and engaging traffic back...
TrafficWave Generator Will Instantly drive targeted and engaging traffic back...
 
Top profile Call Girls In Begusarai [ 7014168258 ] Call Me For Genuine Models...
Top profile Call Girls In Begusarai [ 7014168258 ] Call Me For Genuine Models...Top profile Call Girls In Begusarai [ 7014168258 ] Call Me For Genuine Models...
Top profile Call Girls In Begusarai [ 7014168258 ] Call Me For Genuine Models...
 
In Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi Arabia
In Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi ArabiaIn Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi Arabia
In Riyadh ((+919101817206)) Cytotec kit @ Abortion Pills Saudi Arabia
 
Abortion pills in Jeddah | +966572737505 | Get Cytotec
Abortion pills in Jeddah | +966572737505 | Get CytotecAbortion pills in Jeddah | +966572737505 | Get Cytotec
Abortion pills in Jeddah | +966572737505 | Get Cytotec
 
Charbagh + Female Escorts Service in Lucknow | Starting ₹,5K To @25k with A/C...
Charbagh + Female Escorts Service in Lucknow | Starting ₹,5K To @25k with A/C...Charbagh + Female Escorts Service in Lucknow | Starting ₹,5K To @25k with A/C...
Charbagh + Female Escorts Service in Lucknow | Starting ₹,5K To @25k with A/C...
 
Top profile Call Girls In Purnia [ 7014168258 ] Call Me For Genuine Models We...
Top profile Call Girls In Purnia [ 7014168258 ] Call Me For Genuine Models We...Top profile Call Girls In Purnia [ 7014168258 ] Call Me For Genuine Models We...
Top profile Call Girls In Purnia [ 7014168258 ] Call Me For Genuine Models We...
 
Vadodara 💋 Call Girl 7737669865 Call Girls in Vadodara Escort service book now
Vadodara 💋 Call Girl 7737669865 Call Girls in Vadodara Escort service book nowVadodara 💋 Call Girl 7737669865 Call Girls in Vadodara Escort service book now
Vadodara 💋 Call Girl 7737669865 Call Girls in Vadodara Escort service book now
 
Top profile Call Girls In Hapur [ 7014168258 ] Call Me For Genuine Models We ...
Top profile Call Girls In Hapur [ 7014168258 ] Call Me For Genuine Models We ...Top profile Call Girls In Hapur [ 7014168258 ] Call Me For Genuine Models We ...
Top profile Call Girls In Hapur [ 7014168258 ] Call Me For Genuine Models We ...
 
Computer science Sql cheat sheet.pdf.pdf
Computer science Sql cheat sheet.pdf.pdfComputer science Sql cheat sheet.pdf.pdf
Computer science Sql cheat sheet.pdf.pdf
 
怎样办理圣地亚哥州立大学毕业证(SDSU毕业证书)成绩单学校原版复制
怎样办理圣地亚哥州立大学毕业证(SDSU毕业证书)成绩单学校原版复制怎样办理圣地亚哥州立大学毕业证(SDSU毕业证书)成绩单学校原版复制
怎样办理圣地亚哥州立大学毕业证(SDSU毕业证书)成绩单学校原版复制
 
Digital Transformation Playbook by Graham Ware
Digital Transformation Playbook by Graham WareDigital Transformation Playbook by Graham Ware
Digital Transformation Playbook by Graham Ware
 
Jual obat aborsi Bandung ( 085657271886 ) Cytote pil telat bulan penggugur ka...
Jual obat aborsi Bandung ( 085657271886 ) Cytote pil telat bulan penggugur ka...Jual obat aborsi Bandung ( 085657271886 ) Cytote pil telat bulan penggugur ka...
Jual obat aborsi Bandung ( 085657271886 ) Cytote pil telat bulan penggugur ka...
 
Statistics notes ,it includes mean to index numbers
Statistics notes ,it includes mean to index numbersStatistics notes ,it includes mean to index numbers
Statistics notes ,it includes mean to index numbers
 
Discover Why Less is More in B2B Research
Discover Why Less is More in B2B ResearchDiscover Why Less is More in B2B Research
Discover Why Less is More in B2B Research
 
如何办理英国诺森比亚大学毕业证(NU毕业证书)成绩单原件一模一样
如何办理英国诺森比亚大学毕业证(NU毕业证书)成绩单原件一模一样如何办理英国诺森比亚大学毕业证(NU毕业证书)成绩单原件一模一样
如何办理英国诺森比亚大学毕业证(NU毕业证书)成绩单原件一模一样
 
SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...
SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...
SAC 25 Final National, Regional & Local Angel Group Investing Insights 2024 0...
 

Gt data mining ai algorithm for fabs

  • 2. Team member - Edith Ohri • Edith Ohri - Industrial & Management Eng. from Israel Technion and MSc from NY Polytech. • The developer of GT data mining (big data); GT received a research grant from SMU Singapore. • Currently works on applications of GT. • Previously initiated a project sponsored by Israel Chief Scientist on “Procedure Systems Diagnostics”. • Prior to that worked in Israel and the USA as an IE Eng. And System Analyst. 7Sep-2018 Garage+ presentation by Datalert © GT analytics Slide 2
  • 3. Fab-High-Q Value Proposition: HIGHER YIELDS • Fab-High-Q produces higher yields by finding the root causes of Quality faults, and guiding their detection and early stage prevention. • The solution has a very high net value thanks to using existing infrastructure, thus saving the large part of investment, preparations, integration, training and maintenance costs. 7Sep-2018 Garage+ presentation by Datalert © GT analytics 3
  • 4. Further Benefits • Shorter time to market for new products • Flexible capacity planning • Faster Learning • More automation • Reduced overhead 7Sep-2018 Garage+ presentation by Datalert © GT analytics 4
  • 5. The product: Fab-High-Q Fab-High-Q is a data analytics algorithm that spots Quality risks, sends alerts and suggests corrections, based on GT – a proprietary universal solution. Main strengths: – Discovery of hidden patterns – Early detection – In-depth Machine Learning – Robustness, very little pre requirements – Supplied as a turn-key project. 7Sep-2018 Garage+ presentation by Datalert © GT analytics Slide 5
  • 6. Options of implementation • Per order project • Licensing • Collaboration. 7Sep-2018 Garage+ presentation by Datalert © GT analytics 6
  • 7. Example – Fab Higher Yields • The case: a Fab which specializes in small-batch manufacturing, experienced a steep decrease in yields. • GT was called in “to find out which work stations are responsible for the quality failure”. • It found that the root cause was rather in the wafer supply processes. The findings led to new insights about prevention and improvement of yields. 7Sep-2018 Garage+ presentation by Datalert © GT analytics 7
  • 8. Example cont. Overcoming Bad Data 7Sep-2018 Garage+ presentation by Datalert © GT analytics 8 • The data input was challenging. It had many outliers, noise, missing values, and disrupted records due to a computer upgrade that took place in the critical period. • GT overcame the bad data by applying cluster analysis.
  • 9. Example cont. Finding a clue Among the clusters there was an irregular tiny yet significant pattern (marked in red) that occurred in the beginning of the Quality deterioration. (cont. next slide) 7Sep-2018 Garage+ presentation by Datalert © GT analytics 9
  • 10. Example cont. The Root Cause 7Sep-2018 The Quality failure was indeed related to a special event: a very large production order in the 2 lines under study (red and blue). The large order created a shortage in high quality wafers. The “blue” line started to fail consequently until brought to a halt. Garage+ presentation by Datalert © GT analytics 10
  • 11. Example cont. The Solution • The answer to a raw-material shortage is increased supply by acquiring additional quantities from internal or external sources. • The best way though to increase the supply would be to improve the quality of the in- house wafers, by learning with GT their “long tail” quality distribution. 7Sep-2018 Garage+ presentation by Datalert © GT analytics 11
  • 12. GT founds in the wafer long tails several sub- groups. The high end sub-groups could be expanded thereby improving the total ovens turn out. Example cont. Exploiting Long Tails 7Sep-2018 Garage+ presentation by Datalert © GT analytics 12
  • 13. Example cont. Lessons to draw • All data sources are equally good; the more unsupervised the better it is. • Presuming in big data analysis doesn’t help. • Good AI creates more answers than asked-for. • Focus first and most on root causes. “Defining the source of the problem is half the way to the solution” (a Hebrew proverb). 7Sep-2018 Garage+ presentation by Datalert © GT analytics 13
  • 14. Thanks Edith Ohri Datalert (startup) edith@datalert.co.il * The pictures are from free sources on the internet 7Sep-2018 Garage+ presentation by Datalert © GT analytics 14