SlideShare a Scribd company logo
1. INTUITION – HOW AI LEARN
2. PUT IT IN CONTEXT – PNEUMONIA
3. PLAN OF ATTACK– HOW TO DO IT
4. DEMO – JUPYTER NOTEBOOK
5. GENERALIZATION
Is this an apple ?
apple apple not apple
apple apple not appleapple apple not apple
...
apple apple
...
not appleapple apple not apple
Neural Network
Training
Validataion
Labels
Features
apple apple not apple
1/3 2/3Performance :
(accuracy)
2/3 =67%
Prediction apple apple apple
INPUTs :
(image + label)
Feed to
NN
NN
predicts
labels
BUILD A MODEL TO CLASSIFY PNEUMONIA
The Neural Networks
Model Prediction
. .
Pneumonia Normal
Normal
Pneumonia
...
All done in one Jupyter notebook
1.Get
data
2.Data
Process
&
Explore
3.1
framework
(TF, Keras,
Torch...etc)
3.2 loss &
optimize
function
3.Neural Network architecture
Deep learning
4.Prediction
3.3 train &
validate
DEMO
Demo
THE SAME CONCEPT CAN BE
APPLIED TO OTHER
SCENARIOS
INPUTs :
Images of objects of interests
Feed
to NN
Object
shapes
BUILD A MODEL TO LEARN VIDEO SEMANTIC SEGMENTATION
(ENET)
Model Prediction:
The Neural Networks
INPUTs :
Images of objects of interests
Feed
to NN
Object
labels +
location
BUILD A MODEL TO LEARN OBJECT DETECTION IN VIDEO
(SSD)
Model Prediction:
The Neural Networks
Raw input abdominal CT
scan
Output segment
BUILD A MODEL TO SEGMENT 4D CT SCAN ORGANS
(NIFTYNET)
BUILD A MODEL TO LEARN TO PLAY ANGRY BIRD
PARKING
Predictedoriginal

More Related Content

Similar to Zenodia TechDays talks Oct 24-25 Stockholm Kistamässan

Don't Start from Scratch: Transfer Learning for Novel Computer Vision Problem...
Don't Start from Scratch: Transfer Learning for Novel Computer Vision Problem...Don't Start from Scratch: Transfer Learning for Novel Computer Vision Problem...
Don't Start from Scratch: Transfer Learning for Novel Computer Vision Problem...
StampedeCon
 
Designing your neural networks – a step by step walkthrough
Designing your neural networks – a step by step walkthroughDesigning your neural networks – a step by step walkthrough
Designing your neural networks – a step by step walkthrough
Lavanya Shukla
 
Understanding Deep Learning & Parameter Tuning with MXnet, H2o Package in R
Understanding Deep Learning & Parameter Tuning with MXnet, H2o Package in RUnderstanding Deep Learning & Parameter Tuning with MXnet, H2o Package in R
Understanding Deep Learning & Parameter Tuning with MXnet, H2o Package in R
Manish Saraswat
 
Automated Speech Recognition
Automated Speech Recognition Automated Speech Recognition
Automated Speech Recognition
Pruthvij Thakar
 
Deep Learning with Apache MXNet (September 2017)
Deep Learning with Apache MXNet (September 2017)Deep Learning with Apache MXNet (September 2017)
Deep Learning with Apache MXNet (September 2017)
Julien SIMON
 
Machine learning - xGem - AI
Machine learning - xGem - AIMachine learning - xGem - AI
Machine learning - xGem - AI
Juan Carniglia
 
xGem Machine Learning
xGem Machine LearningxGem Machine Learning
xGem Machine Learning
Jorge Hirtz
 
Chapter1
Chapter1Chapter1
Ann model and its application
Ann model and its applicationAnn model and its application
Ann model and its application
milan107
 
IRJET- Detection of Writing, Spelling and Arithmetic Dyslexic Problems in...
IRJET-  	  Detection of Writing, Spelling and Arithmetic Dyslexic Problems in...IRJET-  	  Detection of Writing, Spelling and Arithmetic Dyslexic Problems in...
IRJET- Detection of Writing, Spelling and Arithmetic Dyslexic Problems in...
IRJET Journal
 
Time-series forecasting of indoor temperature using pre-trained Deep Neural N...
Time-series forecasting of indoor temperature using pre-trained Deep Neural N...Time-series forecasting of indoor temperature using pre-trained Deep Neural N...
Time-series forecasting of indoor temperature using pre-trained Deep Neural N...
Francisco Zamora-Martinez
 
An Introduction to Deep Learning (May 2018)
An Introduction to Deep Learning (May 2018)An Introduction to Deep Learning (May 2018)
An Introduction to Deep Learning (May 2018)
Julien SIMON
 
238 243
238 243238 243
238 243
238 243238 243
DS LAB MANUAL.pdf
DS LAB MANUAL.pdfDS LAB MANUAL.pdf
DS LAB MANUAL.pdf
Builders Engineering College
 
Debugging
DebuggingDebugging
Debugging
Olivier Teytaud
 
Plant recognition system
Plant recognition systemPlant recognition system
Plant recognition system
Sinisa Vukovic
 
Anomaly detection in deep learning (Updated) English
Anomaly detection in deep learning (Updated) EnglishAnomaly detection in deep learning (Updated) English
Anomaly detection in deep learning (Updated) English
Adam Gibson
 
AI_07_Deep Learning.pptx
AI_07_Deep Learning.pptxAI_07_Deep Learning.pptx
AI_07_Deep Learning.pptx
Yousef Aburawi
 
Neural Networks
Neural NetworksNeural Networks
Neural Networks
NikitaRuhela
 

Similar to Zenodia TechDays talks Oct 24-25 Stockholm Kistamässan (20)

Don't Start from Scratch: Transfer Learning for Novel Computer Vision Problem...
Don't Start from Scratch: Transfer Learning for Novel Computer Vision Problem...Don't Start from Scratch: Transfer Learning for Novel Computer Vision Problem...
Don't Start from Scratch: Transfer Learning for Novel Computer Vision Problem...
 
Designing your neural networks – a step by step walkthrough
Designing your neural networks – a step by step walkthroughDesigning your neural networks – a step by step walkthrough
Designing your neural networks – a step by step walkthrough
 
Understanding Deep Learning & Parameter Tuning with MXnet, H2o Package in R
Understanding Deep Learning & Parameter Tuning with MXnet, H2o Package in RUnderstanding Deep Learning & Parameter Tuning with MXnet, H2o Package in R
Understanding Deep Learning & Parameter Tuning with MXnet, H2o Package in R
 
Automated Speech Recognition
Automated Speech Recognition Automated Speech Recognition
Automated Speech Recognition
 
Deep Learning with Apache MXNet (September 2017)
Deep Learning with Apache MXNet (September 2017)Deep Learning with Apache MXNet (September 2017)
Deep Learning with Apache MXNet (September 2017)
 
Machine learning - xGem - AI
Machine learning - xGem - AIMachine learning - xGem - AI
Machine learning - xGem - AI
 
xGem Machine Learning
xGem Machine LearningxGem Machine Learning
xGem Machine Learning
 
Chapter1
Chapter1Chapter1
Chapter1
 
Ann model and its application
Ann model and its applicationAnn model and its application
Ann model and its application
 
IRJET- Detection of Writing, Spelling and Arithmetic Dyslexic Problems in...
IRJET-  	  Detection of Writing, Spelling and Arithmetic Dyslexic Problems in...IRJET-  	  Detection of Writing, Spelling and Arithmetic Dyslexic Problems in...
IRJET- Detection of Writing, Spelling and Arithmetic Dyslexic Problems in...
 
Time-series forecasting of indoor temperature using pre-trained Deep Neural N...
Time-series forecasting of indoor temperature using pre-trained Deep Neural N...Time-series forecasting of indoor temperature using pre-trained Deep Neural N...
Time-series forecasting of indoor temperature using pre-trained Deep Neural N...
 
An Introduction to Deep Learning (May 2018)
An Introduction to Deep Learning (May 2018)An Introduction to Deep Learning (May 2018)
An Introduction to Deep Learning (May 2018)
 
238 243
238 243238 243
238 243
 
238 243
238 243238 243
238 243
 
DS LAB MANUAL.pdf
DS LAB MANUAL.pdfDS LAB MANUAL.pdf
DS LAB MANUAL.pdf
 
Debugging
DebuggingDebugging
Debugging
 
Plant recognition system
Plant recognition systemPlant recognition system
Plant recognition system
 
Anomaly detection in deep learning (Updated) English
Anomaly detection in deep learning (Updated) EnglishAnomaly detection in deep learning (Updated) English
Anomaly detection in deep learning (Updated) English
 
AI_07_Deep Learning.pptx
AI_07_Deep Learning.pptxAI_07_Deep Learning.pptx
AI_07_Deep Learning.pptx
 
Neural Networks
Neural NetworksNeural Networks
Neural Networks
 

More from Zenodia Charpy

DeepLearning Experiments in Medical Image show case
DeepLearning Experiments in Medical Image show case DeepLearning Experiments in Medical Image show case
DeepLearning Experiments in Medical Image show case
Zenodia Charpy
 
how to build a Length of Stay model for a ProofOfConcept project
how to build a Length of Stay model for a ProofOfConcept projecthow to build a Length of Stay model for a ProofOfConcept project
how to build a Length of Stay model for a ProofOfConcept project
Zenodia Charpy
 
Tech Day Kista Mässa Stockholm 2018
Tech Day Kista Mässa Stockholm 2018Tech Day Kista Mässa Stockholm 2018
Tech Day Kista Mässa Stockholm 2018
Zenodia Charpy
 
Aiday
AidayAiday
Data Science on Azure
Data Science on Azure Data Science on Azure
Data Science on Azure
Zenodia Charpy
 
Datascience and Azure(v1.0)
Datascience and Azure(v1.0)Datascience and Azure(v1.0)
Datascience and Azure(v1.0)
Zenodia Charpy
 
Göteborg university(condensed)
Göteborg university(condensed)Göteborg university(condensed)
Göteborg university(condensed)
Zenodia Charpy
 
Meetup sthlm - introduction to Machine Learning with demo cases
Meetup sthlm - introduction to Machine Learning with demo casesMeetup sthlm - introduction to Machine Learning with demo cases
Meetup sthlm - introduction to Machine Learning with demo cases
Zenodia Charpy
 

More from Zenodia Charpy (8)

DeepLearning Experiments in Medical Image show case
DeepLearning Experiments in Medical Image show case DeepLearning Experiments in Medical Image show case
DeepLearning Experiments in Medical Image show case
 
how to build a Length of Stay model for a ProofOfConcept project
how to build a Length of Stay model for a ProofOfConcept projecthow to build a Length of Stay model for a ProofOfConcept project
how to build a Length of Stay model for a ProofOfConcept project
 
Tech Day Kista Mässa Stockholm 2018
Tech Day Kista Mässa Stockholm 2018Tech Day Kista Mässa Stockholm 2018
Tech Day Kista Mässa Stockholm 2018
 
Aiday
AidayAiday
Aiday
 
Data Science on Azure
Data Science on Azure Data Science on Azure
Data Science on Azure
 
Datascience and Azure(v1.0)
Datascience and Azure(v1.0)Datascience and Azure(v1.0)
Datascience and Azure(v1.0)
 
Göteborg university(condensed)
Göteborg university(condensed)Göteborg university(condensed)
Göteborg university(condensed)
 
Meetup sthlm - introduction to Machine Learning with demo cases
Meetup sthlm - introduction to Machine Learning with demo casesMeetup sthlm - introduction to Machine Learning with demo cases
Meetup sthlm - introduction to Machine Learning with demo cases
 

Recently uploaded

Main news related to the CCS TSI 2023 (2023/1695)
Main news related to the CCS TSI 2023 (2023/1695)Main news related to the CCS TSI 2023 (2023/1695)
Main news related to the CCS TSI 2023 (2023/1695)
Jakub Marek
 
Y-Combinator seed pitch deck template PP
Y-Combinator seed pitch deck template PPY-Combinator seed pitch deck template PP
Y-Combinator seed pitch deck template PP
c5vrf27qcz
 
June Patch Tuesday
June Patch TuesdayJune Patch Tuesday
June Patch Tuesday
Ivanti
 
Skybuffer SAM4U tool for SAP license adoption
Skybuffer SAM4U tool for SAP license adoptionSkybuffer SAM4U tool for SAP license adoption
Skybuffer SAM4U tool for SAP license adoption
Tatiana Kojar
 
"Frontline Battles with DDoS: Best practices and Lessons Learned", Igor Ivaniuk
"Frontline Battles with DDoS: Best practices and Lessons Learned",  Igor Ivaniuk"Frontline Battles with DDoS: Best practices and Lessons Learned",  Igor Ivaniuk
"Frontline Battles with DDoS: Best practices and Lessons Learned", Igor Ivaniuk
Fwdays
 
Choosing The Best AWS Service For Your Website + API.pptx
Choosing The Best AWS Service For Your Website + API.pptxChoosing The Best AWS Service For Your Website + API.pptx
Choosing The Best AWS Service For Your Website + API.pptx
Brandon Minnick, MBA
 
zkStudyClub - LatticeFold: A Lattice-based Folding Scheme and its Application...
zkStudyClub - LatticeFold: A Lattice-based Folding Scheme and its Application...zkStudyClub - LatticeFold: A Lattice-based Folding Scheme and its Application...
zkStudyClub - LatticeFold: A Lattice-based Folding Scheme and its Application...
Alex Pruden
 
Overcoming the PLG Trap: Lessons from Canva's Head of Sales & Head of EMEA Da...
Overcoming the PLG Trap: Lessons from Canva's Head of Sales & Head of EMEA Da...Overcoming the PLG Trap: Lessons from Canva's Head of Sales & Head of EMEA Da...
Overcoming the PLG Trap: Lessons from Canva's Head of Sales & Head of EMEA Da...
saastr
 
"Choosing proper type of scaling", Olena Syrota
"Choosing proper type of scaling", Olena Syrota"Choosing proper type of scaling", Olena Syrota
"Choosing proper type of scaling", Olena Syrota
Fwdays
 
Mutation Testing for Task-Oriented Chatbots
Mutation Testing for Task-Oriented ChatbotsMutation Testing for Task-Oriented Chatbots
Mutation Testing for Task-Oriented Chatbots
Pablo Gómez Abajo
 
Apps Break Data
Apps Break DataApps Break Data
Apps Break Data
Ivo Velitchkov
 
JavaLand 2024: Application Development Green Masterplan
JavaLand 2024: Application Development Green MasterplanJavaLand 2024: Application Development Green Masterplan
JavaLand 2024: Application Development Green Masterplan
Miro Wengner
 
Northern Engraving | Nameplate Manufacturing Process - 2024
Northern Engraving | Nameplate Manufacturing Process - 2024Northern Engraving | Nameplate Manufacturing Process - 2024
Northern Engraving | Nameplate Manufacturing Process - 2024
Northern Engraving
 
5th LF Energy Power Grid Model Meet-up Slides
5th LF Energy Power Grid Model Meet-up Slides5th LF Energy Power Grid Model Meet-up Slides
5th LF Energy Power Grid Model Meet-up Slides
DanBrown980551
 
Principle of conventional tomography-Bibash Shahi ppt..pptx
Principle of conventional tomography-Bibash Shahi ppt..pptxPrinciple of conventional tomography-Bibash Shahi ppt..pptx
Principle of conventional tomography-Bibash Shahi ppt..pptx
BibashShahi
 
[OReilly Superstream] Occupy the Space: A grassroots guide to engineering (an...
[OReilly Superstream] Occupy the Space: A grassroots guide to engineering (an...[OReilly Superstream] Occupy the Space: A grassroots guide to engineering (an...
[OReilly Superstream] Occupy the Space: A grassroots guide to engineering (an...
Jason Yip
 
HCL Notes und Domino Lizenzkostenreduzierung in der Welt von DLAU
HCL Notes und Domino Lizenzkostenreduzierung in der Welt von DLAUHCL Notes und Domino Lizenzkostenreduzierung in der Welt von DLAU
HCL Notes und Domino Lizenzkostenreduzierung in der Welt von DLAU
panagenda
 
Columbus Data & Analytics Wednesdays - June 2024
Columbus Data & Analytics Wednesdays - June 2024Columbus Data & Analytics Wednesdays - June 2024
Columbus Data & Analytics Wednesdays - June 2024
Jason Packer
 
GNSS spoofing via SDR (Criptored Talks 2024)
GNSS spoofing via SDR (Criptored Talks 2024)GNSS spoofing via SDR (Criptored Talks 2024)
GNSS spoofing via SDR (Criptored Talks 2024)
Javier Junquera
 
Dandelion Hashtable: beyond billion requests per second on a commodity server
Dandelion Hashtable: beyond billion requests per second on a commodity serverDandelion Hashtable: beyond billion requests per second on a commodity server
Dandelion Hashtable: beyond billion requests per second on a commodity server
Antonios Katsarakis
 

Recently uploaded (20)

Main news related to the CCS TSI 2023 (2023/1695)
Main news related to the CCS TSI 2023 (2023/1695)Main news related to the CCS TSI 2023 (2023/1695)
Main news related to the CCS TSI 2023 (2023/1695)
 
Y-Combinator seed pitch deck template PP
Y-Combinator seed pitch deck template PPY-Combinator seed pitch deck template PP
Y-Combinator seed pitch deck template PP
 
June Patch Tuesday
June Patch TuesdayJune Patch Tuesday
June Patch Tuesday
 
Skybuffer SAM4U tool for SAP license adoption
Skybuffer SAM4U tool for SAP license adoptionSkybuffer SAM4U tool for SAP license adoption
Skybuffer SAM4U tool for SAP license adoption
 
"Frontline Battles with DDoS: Best practices and Lessons Learned", Igor Ivaniuk
"Frontline Battles with DDoS: Best practices and Lessons Learned",  Igor Ivaniuk"Frontline Battles with DDoS: Best practices and Lessons Learned",  Igor Ivaniuk
"Frontline Battles with DDoS: Best practices and Lessons Learned", Igor Ivaniuk
 
Choosing The Best AWS Service For Your Website + API.pptx
Choosing The Best AWS Service For Your Website + API.pptxChoosing The Best AWS Service For Your Website + API.pptx
Choosing The Best AWS Service For Your Website + API.pptx
 
zkStudyClub - LatticeFold: A Lattice-based Folding Scheme and its Application...
zkStudyClub - LatticeFold: A Lattice-based Folding Scheme and its Application...zkStudyClub - LatticeFold: A Lattice-based Folding Scheme and its Application...
zkStudyClub - LatticeFold: A Lattice-based Folding Scheme and its Application...
 
Overcoming the PLG Trap: Lessons from Canva's Head of Sales & Head of EMEA Da...
Overcoming the PLG Trap: Lessons from Canva's Head of Sales & Head of EMEA Da...Overcoming the PLG Trap: Lessons from Canva's Head of Sales & Head of EMEA Da...
Overcoming the PLG Trap: Lessons from Canva's Head of Sales & Head of EMEA Da...
 
"Choosing proper type of scaling", Olena Syrota
"Choosing proper type of scaling", Olena Syrota"Choosing proper type of scaling", Olena Syrota
"Choosing proper type of scaling", Olena Syrota
 
Mutation Testing for Task-Oriented Chatbots
Mutation Testing for Task-Oriented ChatbotsMutation Testing for Task-Oriented Chatbots
Mutation Testing for Task-Oriented Chatbots
 
Apps Break Data
Apps Break DataApps Break Data
Apps Break Data
 
JavaLand 2024: Application Development Green Masterplan
JavaLand 2024: Application Development Green MasterplanJavaLand 2024: Application Development Green Masterplan
JavaLand 2024: Application Development Green Masterplan
 
Northern Engraving | Nameplate Manufacturing Process - 2024
Northern Engraving | Nameplate Manufacturing Process - 2024Northern Engraving | Nameplate Manufacturing Process - 2024
Northern Engraving | Nameplate Manufacturing Process - 2024
 
5th LF Energy Power Grid Model Meet-up Slides
5th LF Energy Power Grid Model Meet-up Slides5th LF Energy Power Grid Model Meet-up Slides
5th LF Energy Power Grid Model Meet-up Slides
 
Principle of conventional tomography-Bibash Shahi ppt..pptx
Principle of conventional tomography-Bibash Shahi ppt..pptxPrinciple of conventional tomography-Bibash Shahi ppt..pptx
Principle of conventional tomography-Bibash Shahi ppt..pptx
 
[OReilly Superstream] Occupy the Space: A grassroots guide to engineering (an...
[OReilly Superstream] Occupy the Space: A grassroots guide to engineering (an...[OReilly Superstream] Occupy the Space: A grassroots guide to engineering (an...
[OReilly Superstream] Occupy the Space: A grassroots guide to engineering (an...
 
HCL Notes und Domino Lizenzkostenreduzierung in der Welt von DLAU
HCL Notes und Domino Lizenzkostenreduzierung in der Welt von DLAUHCL Notes und Domino Lizenzkostenreduzierung in der Welt von DLAU
HCL Notes und Domino Lizenzkostenreduzierung in der Welt von DLAU
 
Columbus Data & Analytics Wednesdays - June 2024
Columbus Data & Analytics Wednesdays - June 2024Columbus Data & Analytics Wednesdays - June 2024
Columbus Data & Analytics Wednesdays - June 2024
 
GNSS spoofing via SDR (Criptored Talks 2024)
GNSS spoofing via SDR (Criptored Talks 2024)GNSS spoofing via SDR (Criptored Talks 2024)
GNSS spoofing via SDR (Criptored Talks 2024)
 
Dandelion Hashtable: beyond billion requests per second on a commodity server
Dandelion Hashtable: beyond billion requests per second on a commodity serverDandelion Hashtable: beyond billion requests per second on a commodity server
Dandelion Hashtable: beyond billion requests per second on a commodity server
 

Zenodia TechDays talks Oct 24-25 Stockholm Kistamässan

  • 1. 1. INTUITION – HOW AI LEARN 2. PUT IT IN CONTEXT – PNEUMONIA 3. PLAN OF ATTACK– HOW TO DO IT 4. DEMO – JUPYTER NOTEBOOK 5. GENERALIZATION
  • 2. Is this an apple ? apple apple not apple apple apple not appleapple apple not apple ...
  • 3. apple apple ... not appleapple apple not apple Neural Network Training Validataion Labels Features apple apple not apple 1/3 2/3Performance : (accuracy) 2/3 =67% Prediction apple apple apple
  • 4. INPUTs : (image + label) Feed to NN NN predicts labels BUILD A MODEL TO CLASSIFY PNEUMONIA The Neural Networks Model Prediction . . Pneumonia Normal Normal Pneumonia ...
  • 5. All done in one Jupyter notebook 1.Get data 2.Data Process & Explore 3.1 framework (TF, Keras, Torch...etc) 3.2 loss & optimize function 3.Neural Network architecture Deep learning 4.Prediction 3.3 train & validate
  • 7.
  • 8. THE SAME CONCEPT CAN BE APPLIED TO OTHER SCENARIOS
  • 9. INPUTs : Images of objects of interests Feed to NN Object shapes BUILD A MODEL TO LEARN VIDEO SEMANTIC SEGMENTATION (ENET) Model Prediction: The Neural Networks
  • 10. INPUTs : Images of objects of interests Feed to NN Object labels + location BUILD A MODEL TO LEARN OBJECT DETECTION IN VIDEO (SSD) Model Prediction: The Neural Networks
  • 11. Raw input abdominal CT scan Output segment BUILD A MODEL TO SEGMENT 4D CT SCAN ORGANS (NIFTYNET)
  • 12. BUILD A MODEL TO LEARN TO PLAY ANGRY BIRD

Editor's Notes

  1. https://www.kaggle.com/kmader/electron-microscopy-3d-segmentation/home
  2. https://www.kaggle.com/kmader/electron-microscopy-3d-segmentation/home
  3. https://www.kaggle.com/kmader/electron-microscopy-3d-segmentation/home
  4. https://www.kaggle.com/kmader/electron-microscopy-3d-segmentation/home
  5. https://www.kaggle.com/kmader/electron-microscopy-3d-segmentation/home