SlideShare a Scribd company logo
1 of 89
Download to read offline
Generative models
Vitaly Bondar
DL Enthusiast & Senior Researcher @ Neuromation
johngull @ gmail | ODS
Generative task
Discriminative task
P(X, Y) or P(Y)
P(Y | X)
Solve as discriminative task
Solve as discriminative task
Autoregressive models
Autoregressive models
Training Inference
Autoregressive models
Autoregressive models
Autoregressive models
Autoregressive models. PixelCNN++
Multiscale processing for long dependencies
Autoregressive models. PixelSnail
PixelCNN/PixelCNN++ PixelSnail
Autoregressive models. PixelSnail
Autoregressive models. PixelSnail
Autoregressive models. Fast PixelCNN
Autoregressive models
Pros:
● Likelihood models
● Generate nice details
● Generalization
Cons:
● Slow inference
● Tend to lost global features
Autoencoder
Variational autoencoder (VAE)
Variational autoencoder (VAE)
Variational autoencoder (VAE)
Beta-VAE
Beta-VAE
VQ-VAE/VQ-VAE2
VQ-VAE2
NVAE
NVAE
NVAE
Latent variable models (autoencoders)
Pros:
● Direct loss
● Simple latent recovery
Cons:
● Encoder output distribution is limited (diagonal-covariance gaussian)
● Blurred images
Normalizing flows
Normalizing flows
Normalizing flows
f(x) - invertible and differentiable
Normalizing flows
Normalizing flows
Normalizing flows
Normalizing flows
Normalizing flows
Normalizing flows. HINT (Hierarchical coupling flow)
Normalizing flows. Glow
Normalizing Flows. Glow
Normalizing Flows. SRFlow
Normalizing Flows. SRFlow
Normalizing flows
Pros:
● Direct loss
● Simple latent recovery
● Exact distribution recovery
Cons:
● Lower quality than GANs for now
● Limitations for the model blocks
Generative adversarial networks
“I came up with this idea in a bar in Montreal, Canada
called "Three Winemakers." Ian Goodfellow
Generative adversarial networks
Generative adversarial networks
GAN. WGAN
GAN. Relativistic losses
GAN. Relativistic losses
GAN. Critic penalties
WGAN-GP
R1/R2
Any auxiliary target!
GAN architectures: DCGAN
GAN architectures: pix2pix (vid2vid)
GAN architectures: CycleGAN
GAN architectures: TransGAGA
GAN architectures: StarGAN
GAN architectures: AEGAN
GAN architectures: BicycleGAN
GAN architectures: BicycleGAN
GAN architectures: Self-supervised GAN
GAN architectures: Self-attention GAN
GAN architectures: ESRGAN
GAN architectures: Real-SR
GAN architectures: Text-to-Image
GAN architectures: BigGAN
GAN architectures: BigGAN (fun) results
GAN architectures: Progressive GAN
GAN architectures: StyleGAN
GAN architectures: StyleGAN noise effect
GAN architectures: StyleGAN truncation trick
GAN architectures: MSG-GAN
GAN architectures: StyleGAN2
GAN architectures: SinGan
GAN architectures: SinGan
GAN architectures: COCO-GAN
GAN architectures: GauGAN
GAN architectures: GauGAN
GAN architectures: infinite nature
GAN architectures: infinite nature
GAN architectures: FUNIT
GAN architectures: FUNIT
GAN architectures: Everybody dance now
GAN architectures: Everybody dance now
GAN. Data problem
● CelebA - 202,599
● CelebA-HQ - 300K
● FFHQ - 70K
● LSUN-Bedroom - 3,033,042
● LSUN-Church - 126,227
● LSUN-Car - 2,067,710
GAN. Data problem
What we usually do
GAN. Data problem
What GAN will generate
GAN. Data problem
Zhao et al. Improved Consistency Regularization for GANs
GAN. Adaptive Discriminator Augmentation (StyleGAN2-ADA)
GAN. Adaptive Discriminator Augmentation
GANs: tricks
● ReLU -> LeakyRELU
● MaxPool -> AvgPool or Conv+stride
● Upsampling -> Deconvolution, PixelShuffle
● Use additional data if you have it
● Averaged generator
● Discriminator regularization
● Weights equalizing/special normalizations
Thank you.

More Related Content

What's hot

Deep Generative Models
Deep Generative Models Deep Generative Models
Deep Generative Models Chia-Wen Cheng
 
Use Case Patterns for LLM Applications (1).pdf
Use Case Patterns for LLM Applications (1).pdfUse Case Patterns for LLM Applications (1).pdf
Use Case Patterns for LLM Applications (1).pdfM Waleed Kadous
 
Variational Autoencoder
Variational AutoencoderVariational Autoencoder
Variational AutoencoderMark Chang
 
Generative Models for General Audiences
Generative Models for General AudiencesGenerative Models for General Audiences
Generative Models for General AudiencesSangwoo Mo
 
Generative adversarial networks
Generative adversarial networksGenerative adversarial networks
Generative adversarial networks남주 김
 
상상을 현실로 만드는, 이미지 생성 모델을 위한 엔지니어링
상상을 현실로 만드는, 이미지 생성 모델을 위한 엔지니어링상상을 현실로 만드는, 이미지 생성 모델을 위한 엔지니어링
상상을 현실로 만드는, 이미지 생성 모델을 위한 엔지니어링Taehoon Kim
 
Generative adversarial networks
Generative adversarial networksGenerative adversarial networks
Generative adversarial networksDing Li
 
Reinventing Deep Learning
 with Hugging Face Transformers
Reinventing Deep Learning
 with Hugging Face TransformersReinventing Deep Learning
 with Hugging Face Transformers
Reinventing Deep Learning
 with Hugging Face TransformersJulien SIMON
 
PR-409: Denoising Diffusion Probabilistic Models
PR-409: Denoising Diffusion Probabilistic ModelsPR-409: Denoising Diffusion Probabilistic Models
PR-409: Denoising Diffusion Probabilistic ModelsHyeongmin Lee
 
Latent diffusions vs DALL-E v2
Latent diffusions vs DALL-E v2Latent diffusions vs DALL-E v2
Latent diffusions vs DALL-E v2Vitaly Bondar
 
Generative Adversarial Networks
Generative Adversarial NetworksGenerative Adversarial Networks
Generative Adversarial NetworksMustafa Yagmur
 
Lecture_16_Self-supervised_Learning.pptx
Lecture_16_Self-supervised_Learning.pptxLecture_16_Self-supervised_Learning.pptx
Lecture_16_Self-supervised_Learning.pptxKarimdabbabi
 
Understanding Black Box Models with Shapley Values
Understanding Black Box Models with Shapley ValuesUnderstanding Black Box Models with Shapley Values
Understanding Black Box Models with Shapley ValuesJonathan Bechtel
 
Variational Autoencoders VAE - Santiago Pascual - UPC Barcelona 2018
Variational Autoencoders VAE - Santiago Pascual - UPC Barcelona 2018Variational Autoencoders VAE - Santiago Pascual - UPC Barcelona 2018
Variational Autoencoders VAE - Santiago Pascual - UPC Barcelona 2018Universitat Politècnica de Catalunya
 
Explainability and bias in AI
Explainability and bias in AIExplainability and bias in AI
Explainability and bias in AIBill Liu
 
Introduction To Generative Adversarial Networks GANs
Introduction To Generative Adversarial Networks GANsIntroduction To Generative Adversarial Networks GANs
Introduction To Generative Adversarial Networks GANsHichem Felouat
 
Tutorial on Deep Generative Models
 Tutorial on Deep Generative Models Tutorial on Deep Generative Models
Tutorial on Deep Generative ModelsMLReview
 
Generative Adversarial Networks (GANs) - Ian Goodfellow, OpenAI
Generative Adversarial Networks (GANs) - Ian Goodfellow, OpenAIGenerative Adversarial Networks (GANs) - Ian Goodfellow, OpenAI
Generative Adversarial Networks (GANs) - Ian Goodfellow, OpenAIWithTheBest
 
Large Language Models - Chat AI.pdf
Large Language Models - Chat AI.pdfLarge Language Models - Chat AI.pdf
Large Language Models - Chat AI.pdfDavid Rostcheck
 

What's hot (20)

Deep Generative Models
Deep Generative Models Deep Generative Models
Deep Generative Models
 
Use Case Patterns for LLM Applications (1).pdf
Use Case Patterns for LLM Applications (1).pdfUse Case Patterns for LLM Applications (1).pdf
Use Case Patterns for LLM Applications (1).pdf
 
Variational Autoencoder
Variational AutoencoderVariational Autoencoder
Variational Autoencoder
 
Generative Models for General Audiences
Generative Models for General AudiencesGenerative Models for General Audiences
Generative Models for General Audiences
 
Generative adversarial networks
Generative adversarial networksGenerative adversarial networks
Generative adversarial networks
 
상상을 현실로 만드는, 이미지 생성 모델을 위한 엔지니어링
상상을 현실로 만드는, 이미지 생성 모델을 위한 엔지니어링상상을 현실로 만드는, 이미지 생성 모델을 위한 엔지니어링
상상을 현실로 만드는, 이미지 생성 모델을 위한 엔지니어링
 
Generative adversarial networks
Generative adversarial networksGenerative adversarial networks
Generative adversarial networks
 
Reinventing Deep Learning
 with Hugging Face Transformers
Reinventing Deep Learning
 with Hugging Face TransformersReinventing Deep Learning
 with Hugging Face Transformers
Reinventing Deep Learning
 with Hugging Face Transformers
 
PR-409: Denoising Diffusion Probabilistic Models
PR-409: Denoising Diffusion Probabilistic ModelsPR-409: Denoising Diffusion Probabilistic Models
PR-409: Denoising Diffusion Probabilistic Models
 
Latent diffusions vs DALL-E v2
Latent diffusions vs DALL-E v2Latent diffusions vs DALL-E v2
Latent diffusions vs DALL-E v2
 
Generative Adversarial Networks
Generative Adversarial NetworksGenerative Adversarial Networks
Generative Adversarial Networks
 
Lecture_16_Self-supervised_Learning.pptx
Lecture_16_Self-supervised_Learning.pptxLecture_16_Self-supervised_Learning.pptx
Lecture_16_Self-supervised_Learning.pptx
 
Explainable AI
Explainable AIExplainable AI
Explainable AI
 
Understanding Black Box Models with Shapley Values
Understanding Black Box Models with Shapley ValuesUnderstanding Black Box Models with Shapley Values
Understanding Black Box Models with Shapley Values
 
Variational Autoencoders VAE - Santiago Pascual - UPC Barcelona 2018
Variational Autoencoders VAE - Santiago Pascual - UPC Barcelona 2018Variational Autoencoders VAE - Santiago Pascual - UPC Barcelona 2018
Variational Autoencoders VAE - Santiago Pascual - UPC Barcelona 2018
 
Explainability and bias in AI
Explainability and bias in AIExplainability and bias in AI
Explainability and bias in AI
 
Introduction To Generative Adversarial Networks GANs
Introduction To Generative Adversarial Networks GANsIntroduction To Generative Adversarial Networks GANs
Introduction To Generative Adversarial Networks GANs
 
Tutorial on Deep Generative Models
 Tutorial on Deep Generative Models Tutorial on Deep Generative Models
Tutorial on Deep Generative Models
 
Generative Adversarial Networks (GANs) - Ian Goodfellow, OpenAI
Generative Adversarial Networks (GANs) - Ian Goodfellow, OpenAIGenerative Adversarial Networks (GANs) - Ian Goodfellow, OpenAI
Generative Adversarial Networks (GANs) - Ian Goodfellow, OpenAI
 
Large Language Models - Chat AI.pdf
Large Language Models - Chat AI.pdfLarge Language Models - Chat AI.pdf
Large Language Models - Chat AI.pdf
 

Similar to Generative models (Geek hub 2021 lecture)

Image-to-Image Translation with Conditional Adversarial Nets (UPC Reading Group)
Image-to-Image Translation with Conditional Adversarial Nets (UPC Reading Group)Image-to-Image Translation with Conditional Adversarial Nets (UPC Reading Group)
Image-to-Image Translation with Conditional Adversarial Nets (UPC Reading Group)Universitat Politècnica de Catalunya
 
Generative adversarial networks in computer vision
Generative adversarial networks in computer visionGenerative adversarial networks in computer vision
Generative adversarial networks in computer visionShreeGowriRadhakrish
 
Image-to-Image Translation
Image-to-Image TranslationImage-to-Image Translation
Image-to-Image TranslationJunho Kim
 
OpenGLES - Graphics Programming in Android
OpenGLES - Graphics Programming in Android OpenGLES - Graphics Programming in Android
OpenGLES - Graphics Programming in Android Arvind Devaraj
 
[CVPR2020] Simple but effective image enhancement techniques
[CVPR2020] Simple but effective image enhancement techniques[CVPR2020] Simple but effective image enhancement techniques
[CVPR2020] Simple but effective image enhancement techniquesJaeJun Yoo
 
CD in Machine Learning Systems
CD in Machine Learning SystemsCD in Machine Learning Systems
CD in Machine Learning SystemsThoughtworks
 
Machine learning for newbies
Machine learning for newbiesMachine learning for newbies
Machine learning for newbiesAndrew Nikishaev
 
Deep Generative Modelling
Deep Generative ModellingDeep Generative Modelling
Deep Generative ModellingPetko Nikolov
 
Image optimization q_auto - f_auto
Image optimization q_auto - f_autoImage optimization q_auto - f_auto
Image optimization q_auto - f_autoCan Ozdoruk
 
Vladislav Kolbasin “Introduction to Generative Adversarial Networks (GANs)”
Vladislav Kolbasin “Introduction to Generative Adversarial Networks (GANs)”Vladislav Kolbasin “Introduction to Generative Adversarial Networks (GANs)”
Vladislav Kolbasin “Introduction to Generative Adversarial Networks (GANs)”Lviv Startup Club
 
Photo echance. Problems. Solutions. Ideas
Photo echance. Problems. Solutions. Ideas Photo echance. Problems. Solutions. Ideas
Photo echance. Problems. Solutions. Ideas Andrew Nikishaev
 
An Introduction to NV_path_rendering
An Introduction to NV_path_renderingAn Introduction to NV_path_rendering
An Introduction to NV_path_renderingMark Kilgard
 
Development of Reliability Analysis and Multidisciplinary Design Optimization...
Development of Reliability Analysis and Multidisciplinary Design Optimization...Development of Reliability Analysis and Multidisciplinary Design Optimization...
Development of Reliability Analysis and Multidisciplinary Design Optimization...Altair
 
Keep Calm and Use Kanban
Keep Calm and Use KanbanKeep Calm and Use Kanban
Keep Calm and Use KanbanAcquate
 
When it all GOes right
When it all GOes rightWhen it all GOes right
When it all GOes rightPavlo Golub
 

Similar to Generative models (Geek hub 2021 lecture) (20)

GANs: key ideas
GANs:  key ideasGANs:  key ideas
GANs: key ideas
 
Image-to-Image Translation with Conditional Adversarial Nets (UPC Reading Group)
Image-to-Image Translation with Conditional Adversarial Nets (UPC Reading Group)Image-to-Image Translation with Conditional Adversarial Nets (UPC Reading Group)
Image-to-Image Translation with Conditional Adversarial Nets (UPC Reading Group)
 
Generative adversarial networks in computer vision
Generative adversarial networks in computer visionGenerative adversarial networks in computer vision
Generative adversarial networks in computer vision
 
Image-to-Image Translation
Image-to-Image TranslationImage-to-Image Translation
Image-to-Image Translation
 
OpenGLES - Graphics Programming in Android
OpenGLES - Graphics Programming in Android OpenGLES - Graphics Programming in Android
OpenGLES - Graphics Programming in Android
 
[CVPR2020] Simple but effective image enhancement techniques
[CVPR2020] Simple but effective image enhancement techniques[CVPR2020] Simple but effective image enhancement techniques
[CVPR2020] Simple but effective image enhancement techniques
 
CD in Machine Learning Systems
CD in Machine Learning SystemsCD in Machine Learning Systems
CD in Machine Learning Systems
 
Machine learning for newbies
Machine learning for newbiesMachine learning for newbies
Machine learning for newbies
 
Stochastic Screen-Space Reflections
Stochastic Screen-Space ReflectionsStochastic Screen-Space Reflections
Stochastic Screen-Space Reflections
 
Let's Get to the Rapids
Let's Get to the RapidsLet's Get to the Rapids
Let's Get to the Rapids
 
PNGHack 1.0 Presentation
PNGHack 1.0 PresentationPNGHack 1.0 Presentation
PNGHack 1.0 Presentation
 
Deep Generative Modelling
Deep Generative ModellingDeep Generative Modelling
Deep Generative Modelling
 
Image optimization q_auto - f_auto
Image optimization q_auto - f_autoImage optimization q_auto - f_auto
Image optimization q_auto - f_auto
 
Vladislav Kolbasin “Introduction to Generative Adversarial Networks (GANs)”
Vladislav Kolbasin “Introduction to Generative Adversarial Networks (GANs)”Vladislav Kolbasin “Introduction to Generative Adversarial Networks (GANs)”
Vladislav Kolbasin “Introduction to Generative Adversarial Networks (GANs)”
 
Photo echance. Problems. Solutions. Ideas
Photo echance. Problems. Solutions. Ideas Photo echance. Problems. Solutions. Ideas
Photo echance. Problems. Solutions. Ideas
 
An Introduction to NV_path_rendering
An Introduction to NV_path_renderingAn Introduction to NV_path_rendering
An Introduction to NV_path_rendering
 
Tutorial of GANs in Gifu Univ
Tutorial of GANs in Gifu UnivTutorial of GANs in Gifu Univ
Tutorial of GANs in Gifu Univ
 
Development of Reliability Analysis and Multidisciplinary Design Optimization...
Development of Reliability Analysis and Multidisciplinary Design Optimization...Development of Reliability Analysis and Multidisciplinary Design Optimization...
Development of Reliability Analysis and Multidisciplinary Design Optimization...
 
Keep Calm and Use Kanban
Keep Calm and Use KanbanKeep Calm and Use Kanban
Keep Calm and Use Kanban
 
When it all GOes right
When it all GOes rightWhen it all GOes right
When it all GOes right
 

Recently uploaded

Data Visualization Exploring and Explaining with Data 1st Edition by Camm sol...
Data Visualization Exploring and Explaining with Data 1st Edition by Camm sol...Data Visualization Exploring and Explaining with Data 1st Edition by Camm sol...
Data Visualization Exploring and Explaining with Data 1st Edition by Camm sol...ssuserf63bd7
 
obat aborsi Bontang wa 081336238223 jual obat aborsi cytotec asli di Bontang6...
obat aborsi Bontang wa 081336238223 jual obat aborsi cytotec asli di Bontang6...obat aborsi Bontang wa 081336238223 jual obat aborsi cytotec asli di Bontang6...
obat aborsi Bontang wa 081336238223 jual obat aborsi cytotec asli di Bontang6...yulianti213969
 
如何办理哥伦比亚大学毕业证(Columbia毕业证)成绩单原版一比一
如何办理哥伦比亚大学毕业证(Columbia毕业证)成绩单原版一比一如何办理哥伦比亚大学毕业证(Columbia毕业证)成绩单原版一比一
如何办理哥伦比亚大学毕业证(Columbia毕业证)成绩单原版一比一fztigerwe
 
How to Transform Clinical Trial Management with Advanced Data Analytics
How to Transform Clinical Trial Management with Advanced Data AnalyticsHow to Transform Clinical Trial Management with Advanced Data Analytics
How to Transform Clinical Trial Management with Advanced Data AnalyticsBrainSell Technologies
 
SCI8-Q4-MOD11.pdfwrwujrrjfaajerjrajrrarj
SCI8-Q4-MOD11.pdfwrwujrrjfaajerjrajrrarjSCI8-Q4-MOD11.pdfwrwujrrjfaajerjrajrrarj
SCI8-Q4-MOD11.pdfwrwujrrjfaajerjrajrrarjadimosmejiaslendon
 
原件一样伦敦国王学院毕业证成绩单留信学历认证
原件一样伦敦国王学院毕业证成绩单留信学历认证原件一样伦敦国王学院毕业证成绩单留信学历认证
原件一样伦敦国王学院毕业证成绩单留信学历认证pwgnohujw
 
如何办理(Dalhousie毕业证书)达尔豪斯大学毕业证成绩单留信学历认证
如何办理(Dalhousie毕业证书)达尔豪斯大学毕业证成绩单留信学历认证如何办理(Dalhousie毕业证书)达尔豪斯大学毕业证成绩单留信学历认证
如何办理(Dalhousie毕业证书)达尔豪斯大学毕业证成绩单留信学历认证zifhagzkk
 
The Significance of Transliteration Enhancing
The Significance of Transliteration EnhancingThe Significance of Transliteration Enhancing
The Significance of Transliteration Enhancingmohamed Elzalabany
 
Data Analytics for Digital Marketing Lecture for Advanced Digital & Social Me...
Data Analytics for Digital Marketing Lecture for Advanced Digital & Social Me...Data Analytics for Digital Marketing Lecture for Advanced Digital & Social Me...
Data Analytics for Digital Marketing Lecture for Advanced Digital & Social Me...Valters Lauzums
 
Displacement, Velocity, Acceleration, and Second Derivatives
Displacement, Velocity, Acceleration, and Second DerivativesDisplacement, Velocity, Acceleration, and Second Derivatives
Displacement, Velocity, Acceleration, and Second Derivatives23050636
 
Predictive Precipitation: Advanced Rain Forecasting Techniques
Predictive Precipitation: Advanced Rain Forecasting TechniquesPredictive Precipitation: Advanced Rain Forecasting Techniques
Predictive Precipitation: Advanced Rain Forecasting TechniquesBoston Institute of Analytics
 
Credit Card Fraud Detection: Safeguarding Transactions in the Digital Age
Credit Card Fraud Detection: Safeguarding Transactions in the Digital AgeCredit Card Fraud Detection: Safeguarding Transactions in the Digital Age
Credit Card Fraud Detection: Safeguarding Transactions in the Digital AgeBoston Institute of Analytics
 
Statistics Informed Decisions Using Data 5th edition by Michael Sullivan solu...
Statistics Informed Decisions Using Data 5th edition by Michael Sullivan solu...Statistics Informed Decisions Using Data 5th edition by Michael Sullivan solu...
Statistics Informed Decisions Using Data 5th edition by Michael Sullivan solu...ssuserf63bd7
 
Jual Obat Aborsi Bandung (Asli No.1) Wa 082134680322 Klinik Obat Penggugur Ka...
Jual Obat Aborsi Bandung (Asli No.1) Wa 082134680322 Klinik Obat Penggugur Ka...Jual Obat Aborsi Bandung (Asli No.1) Wa 082134680322 Klinik Obat Penggugur Ka...
Jual Obat Aborsi Bandung (Asli No.1) Wa 082134680322 Klinik Obat Penggugur Ka...Klinik Aborsi
 
Formulas dax para power bI de microsoft.pdf
Formulas dax para power bI de microsoft.pdfFormulas dax para power bI de microsoft.pdf
Formulas dax para power bI de microsoft.pdfRobertoOcampo24
 
Seven tools of quality control.slideshare
Seven tools of quality control.slideshareSeven tools of quality control.slideshare
Seven tools of quality control.slideshareraiaryan448
 
Identify Customer Segments to Create Customer Offers for Each Segment - Appli...
Identify Customer Segments to Create Customer Offers for Each Segment - Appli...Identify Customer Segments to Create Customer Offers for Each Segment - Appli...
Identify Customer Segments to Create Customer Offers for Each Segment - Appli...ThinkInnovation
 
社内勉強会資料_Object Recognition as Next Token Prediction
社内勉強会資料_Object Recognition as Next Token Prediction社内勉強会資料_Object Recognition as Next Token Prediction
社内勉強会資料_Object Recognition as Next Token PredictionNABLAS株式会社
 
Aggregations - The Elasticsearch "GROUP BY"
Aggregations - The Elasticsearch "GROUP BY"Aggregations - The Elasticsearch "GROUP BY"
Aggregations - The Elasticsearch "GROUP BY"John Sobanski
 

Recently uploaded (20)

Data Visualization Exploring and Explaining with Data 1st Edition by Camm sol...
Data Visualization Exploring and Explaining with Data 1st Edition by Camm sol...Data Visualization Exploring and Explaining with Data 1st Edition by Camm sol...
Data Visualization Exploring and Explaining with Data 1st Edition by Camm sol...
 
obat aborsi Bontang wa 081336238223 jual obat aborsi cytotec asli di Bontang6...
obat aborsi Bontang wa 081336238223 jual obat aborsi cytotec asli di Bontang6...obat aborsi Bontang wa 081336238223 jual obat aborsi cytotec asli di Bontang6...
obat aborsi Bontang wa 081336238223 jual obat aborsi cytotec asli di Bontang6...
 
如何办理哥伦比亚大学毕业证(Columbia毕业证)成绩单原版一比一
如何办理哥伦比亚大学毕业证(Columbia毕业证)成绩单原版一比一如何办理哥伦比亚大学毕业证(Columbia毕业证)成绩单原版一比一
如何办理哥伦比亚大学毕业证(Columbia毕业证)成绩单原版一比一
 
How to Transform Clinical Trial Management with Advanced Data Analytics
How to Transform Clinical Trial Management with Advanced Data AnalyticsHow to Transform Clinical Trial Management with Advanced Data Analytics
How to Transform Clinical Trial Management with Advanced Data Analytics
 
SCI8-Q4-MOD11.pdfwrwujrrjfaajerjrajrrarj
SCI8-Q4-MOD11.pdfwrwujrrjfaajerjrajrrarjSCI8-Q4-MOD11.pdfwrwujrrjfaajerjrajrrarj
SCI8-Q4-MOD11.pdfwrwujrrjfaajerjrajrrarj
 
原件一样伦敦国王学院毕业证成绩单留信学历认证
原件一样伦敦国王学院毕业证成绩单留信学历认证原件一样伦敦国王学院毕业证成绩单留信学历认证
原件一样伦敦国王学院毕业证成绩单留信学历认证
 
如何办理(Dalhousie毕业证书)达尔豪斯大学毕业证成绩单留信学历认证
如何办理(Dalhousie毕业证书)达尔豪斯大学毕业证成绩单留信学历认证如何办理(Dalhousie毕业证书)达尔豪斯大学毕业证成绩单留信学历认证
如何办理(Dalhousie毕业证书)达尔豪斯大学毕业证成绩单留信学历认证
 
The Significance of Transliteration Enhancing
The Significance of Transliteration EnhancingThe Significance of Transliteration Enhancing
The Significance of Transliteration Enhancing
 
Abortion pills in Riyadh Saudi Arabia (+966572737505 buy cytotec
Abortion pills in Riyadh Saudi Arabia (+966572737505 buy cytotecAbortion pills in Riyadh Saudi Arabia (+966572737505 buy cytotec
Abortion pills in Riyadh Saudi Arabia (+966572737505 buy cytotec
 
Data Analytics for Digital Marketing Lecture for Advanced Digital & Social Me...
Data Analytics for Digital Marketing Lecture for Advanced Digital & Social Me...Data Analytics for Digital Marketing Lecture for Advanced Digital & Social Me...
Data Analytics for Digital Marketing Lecture for Advanced Digital & Social Me...
 
Displacement, Velocity, Acceleration, and Second Derivatives
Displacement, Velocity, Acceleration, and Second DerivativesDisplacement, Velocity, Acceleration, and Second Derivatives
Displacement, Velocity, Acceleration, and Second Derivatives
 
Predictive Precipitation: Advanced Rain Forecasting Techniques
Predictive Precipitation: Advanced Rain Forecasting TechniquesPredictive Precipitation: Advanced Rain Forecasting Techniques
Predictive Precipitation: Advanced Rain Forecasting Techniques
 
Credit Card Fraud Detection: Safeguarding Transactions in the Digital Age
Credit Card Fraud Detection: Safeguarding Transactions in the Digital AgeCredit Card Fraud Detection: Safeguarding Transactions in the Digital Age
Credit Card Fraud Detection: Safeguarding Transactions in the Digital Age
 
Statistics Informed Decisions Using Data 5th edition by Michael Sullivan solu...
Statistics Informed Decisions Using Data 5th edition by Michael Sullivan solu...Statistics Informed Decisions Using Data 5th edition by Michael Sullivan solu...
Statistics Informed Decisions Using Data 5th edition by Michael Sullivan solu...
 
Jual Obat Aborsi Bandung (Asli No.1) Wa 082134680322 Klinik Obat Penggugur Ka...
Jual Obat Aborsi Bandung (Asli No.1) Wa 082134680322 Klinik Obat Penggugur Ka...Jual Obat Aborsi Bandung (Asli No.1) Wa 082134680322 Klinik Obat Penggugur Ka...
Jual Obat Aborsi Bandung (Asli No.1) Wa 082134680322 Klinik Obat Penggugur Ka...
 
Formulas dax para power bI de microsoft.pdf
Formulas dax para power bI de microsoft.pdfFormulas dax para power bI de microsoft.pdf
Formulas dax para power bI de microsoft.pdf
 
Seven tools of quality control.slideshare
Seven tools of quality control.slideshareSeven tools of quality control.slideshare
Seven tools of quality control.slideshare
 
Identify Customer Segments to Create Customer Offers for Each Segment - Appli...
Identify Customer Segments to Create Customer Offers for Each Segment - Appli...Identify Customer Segments to Create Customer Offers for Each Segment - Appli...
Identify Customer Segments to Create Customer Offers for Each Segment - Appli...
 
社内勉強会資料_Object Recognition as Next Token Prediction
社内勉強会資料_Object Recognition as Next Token Prediction社内勉強会資料_Object Recognition as Next Token Prediction
社内勉強会資料_Object Recognition as Next Token Prediction
 
Aggregations - The Elasticsearch "GROUP BY"
Aggregations - The Elasticsearch "GROUP BY"Aggregations - The Elasticsearch "GROUP BY"
Aggregations - The Elasticsearch "GROUP BY"
 

Generative models (Geek hub 2021 lecture)