SlideShare a Scribd company logo
1 of 8
Caffe Tutorial
http://caffe.berkeleyvision.org/tutorial/
Blobs
• A Blob is a wrapper over the actual data being
processed and passed along by Caffe
• dimensions for batches of image data
– number N x channel K x height H x width W
Layer
• essence of a model and the fundamental unit
of computation.
• filters, pool, take inner products, apply
nonlinearities like rectified-linear and sigmoid
and other elementwise transformations,
normalize, load data, and compute losses like
softmax and hinge.
Net
name: "LogReg"
layer {
name: "mnist"
type: "Data"
top: "data"
top: "label"
data_param {
source: "input_leveldb"
batch_size: 64 }
}
layer {
name: "ip"
type: "InnerProduct"
bottom: "data"
top: "ip"
inner_product_param{
num_output: 2
}
}
layer {
name: "loss"
type: "SoftmaxWithLoss"
bottom: "ip"
bottom: "label"
top: "loss"
}
Forward and Backward
• methods
– Net::Forward() , Net::Backward()
Loss
• learning is driven by a loss function (also known
as an error, cost, or objective function).
layer {
name: "loss"
type: "SoftmaxWithLoss"
bottom: "ip"
bottom: "label"
top: "loss"
}
Solver
• orchestrates model optimization by coordinating the network’s
forward inference and backward gradients
– to form parameter updates that attempt to improve the loss.
• solver prototxt file:
– base_lr: 0.01 # begin training at a learning rate of 0.01
– lr_policy: "step"
– gamma: 0.1 # drop the learning rate
– stepsize: 100000 # drop the learning rate every 100K iterations
– max_iter: 350000
– momentum: 0.9
• 해석
– 100,000 번째 step 에서( 반복했을 때 ) Learning rate = lr*gamma=0.01 *0.1=0.001
– 200,000 번째 step 에서 Learning rate = lr*gamma=0.001*0.1=0.0001
Data: Ins and Outs
layer {
name: "mnist"
type: "Data"
top: "data"
top: "label"
data_param {
source: "examples/mnist/mnist_train_lmdb"
backend: LMDB
batch_size: 64
}
transform_param {scale: 0.00390625}
}
%해석: transform으로 [0, 255]의 MNIST data 를 [0, 1] 로 스케일 변경

More Related Content

What's hot

[SNU Computer Vision Course Project] Image Style Recognition
[SNU Computer Vision Course Project] Image Style Recognition[SNU Computer Vision Course Project] Image Style Recognition
[SNU Computer Vision Course Project] Image Style RecognitionHunjae Jung
 
Intro to Scalable Deep Learning on AWS with Apache MXNet
Intro to Scalable Deep Learning on AWS with Apache MXNetIntro to Scalable Deep Learning on AWS with Apache MXNet
Intro to Scalable Deep Learning on AWS with Apache MXNetAmazon Web Services
 
Introduction to Chainer
Introduction to ChainerIntroduction to Chainer
Introduction to ChainerSeiya Tokui
 
CUDA and Caffe for deep learning
CUDA and Caffe for deep learningCUDA and Caffe for deep learning
CUDA and Caffe for deep learningAmgad Muhammad
 
[241]large scale search with polysemous codes
[241]large scale search with polysemous codes[241]large scale search with polysemous codes
[241]large scale search with polysemous codesNAVER D2
 
IIBMP2019 講演資料「オープンソースで始める深層学習」
IIBMP2019 講演資料「オープンソースで始める深層学習」IIBMP2019 講演資料「オープンソースで始める深層学習」
IIBMP2019 講演資料「オープンソースで始める深層学習」Preferred Networks
 
Early Experiences with the OpenMP Accelerator Model
Early Experiences with the OpenMP Accelerator ModelEarly Experiences with the OpenMP Accelerator Model
Early Experiences with the OpenMP Accelerator ModelChunhua Liao
 
Massively Parallel K-Nearest Neighbor Computation on Distributed Architectures
Massively Parallel K-Nearest Neighbor Computation on Distributed Architectures Massively Parallel K-Nearest Neighbor Computation on Distributed Architectures
Massively Parallel K-Nearest Neighbor Computation on Distributed Architectures Intel® Software
 
Tokyo Webmining Talk1
Tokyo Webmining Talk1Tokyo Webmining Talk1
Tokyo Webmining Talk1Kenta Oono
 
Aran Khanna, Software Engineer, Amazon Web Services at MLconf ATL 2017
Aran Khanna, Software Engineer, Amazon Web Services at MLconf ATL 2017Aran Khanna, Software Engineer, Amazon Web Services at MLconf ATL 2017
Aran Khanna, Software Engineer, Amazon Web Services at MLconf ATL 2017MLconf
 
Common Design of Deep Learning Frameworks
Common Design of Deep Learning FrameworksCommon Design of Deep Learning Frameworks
Common Design of Deep Learning FrameworksKenta Oono
 
Performance Optimization of Deep Learning Frameworks Caffe* and Tensorflow* f...
Performance Optimization of Deep Learning Frameworks Caffe* and Tensorflow* f...Performance Optimization of Deep Learning Frameworks Caffe* and Tensorflow* f...
Performance Optimization of Deep Learning Frameworks Caffe* and Tensorflow* f...Intel® Software
 
Urs Köster - Convolutional and Recurrent Neural Networks
Urs Köster - Convolutional and Recurrent Neural NetworksUrs Köster - Convolutional and Recurrent Neural Networks
Urs Köster - Convolutional and Recurrent Neural NetworksIntel Nervana
 
Driving Moore's Law with Python-Powered Machine Learning: An Insider's Perspe...
Driving Moore's Law with Python-Powered Machine Learning: An Insider's Perspe...Driving Moore's Law with Python-Powered Machine Learning: An Insider's Perspe...
Driving Moore's Law with Python-Powered Machine Learning: An Insider's Perspe...PyData
 
An Introduction to TensorFlow architecture
An Introduction to TensorFlow architectureAn Introduction to TensorFlow architecture
An Introduction to TensorFlow architectureMani Goswami
 
Deep learning with TensorFlow
Deep learning with TensorFlowDeep learning with TensorFlow
Deep learning with TensorFlowNdjido Ardo BAR
 
Anil Thomas - Object recognition
Anil Thomas - Object recognitionAnil Thomas - Object recognition
Anil Thomas - Object recognitionIntel Nervana
 
SF Big Analytics & SF Machine Learning Meetup: Machine Learning at the Limit ...
SF Big Analytics & SF Machine Learning Meetup: Machine Learning at the Limit ...SF Big Analytics & SF Machine Learning Meetup: Machine Learning at the Limit ...
SF Big Analytics & SF Machine Learning Meetup: Machine Learning at the Limit ...Chester Chen
 
Braxton McKee, CEO & Founder, Ufora at MLconf NYC - 4/15/16
Braxton McKee, CEO & Founder, Ufora at MLconf NYC - 4/15/16Braxton McKee, CEO & Founder, Ufora at MLconf NYC - 4/15/16
Braxton McKee, CEO & Founder, Ufora at MLconf NYC - 4/15/16MLconf
 

What's hot (20)

[SNU Computer Vision Course Project] Image Style Recognition
[SNU Computer Vision Course Project] Image Style Recognition[SNU Computer Vision Course Project] Image Style Recognition
[SNU Computer Vision Course Project] Image Style Recognition
 
Intro to Scalable Deep Learning on AWS with Apache MXNet
Intro to Scalable Deep Learning on AWS with Apache MXNetIntro to Scalable Deep Learning on AWS with Apache MXNet
Intro to Scalable Deep Learning on AWS with Apache MXNet
 
Introduction to Chainer
Introduction to ChainerIntroduction to Chainer
Introduction to Chainer
 
CUDA and Caffe for deep learning
CUDA and Caffe for deep learningCUDA and Caffe for deep learning
CUDA and Caffe for deep learning
 
[241]large scale search with polysemous codes
[241]large scale search with polysemous codes[241]large scale search with polysemous codes
[241]large scale search with polysemous codes
 
IIBMP2019 講演資料「オープンソースで始める深層学習」
IIBMP2019 講演資料「オープンソースで始める深層学習」IIBMP2019 講演資料「オープンソースで始める深層学習」
IIBMP2019 講演資料「オープンソースで始める深層学習」
 
Early Experiences with the OpenMP Accelerator Model
Early Experiences with the OpenMP Accelerator ModelEarly Experiences with the OpenMP Accelerator Model
Early Experiences with the OpenMP Accelerator Model
 
Massively Parallel K-Nearest Neighbor Computation on Distributed Architectures
Massively Parallel K-Nearest Neighbor Computation on Distributed Architectures Massively Parallel K-Nearest Neighbor Computation on Distributed Architectures
Massively Parallel K-Nearest Neighbor Computation on Distributed Architectures
 
Tokyo Webmining Talk1
Tokyo Webmining Talk1Tokyo Webmining Talk1
Tokyo Webmining Talk1
 
Aran Khanna, Software Engineer, Amazon Web Services at MLconf ATL 2017
Aran Khanna, Software Engineer, Amazon Web Services at MLconf ATL 2017Aran Khanna, Software Engineer, Amazon Web Services at MLconf ATL 2017
Aran Khanna, Software Engineer, Amazon Web Services at MLconf ATL 2017
 
Common Design of Deep Learning Frameworks
Common Design of Deep Learning FrameworksCommon Design of Deep Learning Frameworks
Common Design of Deep Learning Frameworks
 
MXNet Workshop
MXNet WorkshopMXNet Workshop
MXNet Workshop
 
Performance Optimization of Deep Learning Frameworks Caffe* and Tensorflow* f...
Performance Optimization of Deep Learning Frameworks Caffe* and Tensorflow* f...Performance Optimization of Deep Learning Frameworks Caffe* and Tensorflow* f...
Performance Optimization of Deep Learning Frameworks Caffe* and Tensorflow* f...
 
Urs Köster - Convolutional and Recurrent Neural Networks
Urs Köster - Convolutional and Recurrent Neural NetworksUrs Köster - Convolutional and Recurrent Neural Networks
Urs Köster - Convolutional and Recurrent Neural Networks
 
Driving Moore's Law with Python-Powered Machine Learning: An Insider's Perspe...
Driving Moore's Law with Python-Powered Machine Learning: An Insider's Perspe...Driving Moore's Law with Python-Powered Machine Learning: An Insider's Perspe...
Driving Moore's Law with Python-Powered Machine Learning: An Insider's Perspe...
 
An Introduction to TensorFlow architecture
An Introduction to TensorFlow architectureAn Introduction to TensorFlow architecture
An Introduction to TensorFlow architecture
 
Deep learning with TensorFlow
Deep learning with TensorFlowDeep learning with TensorFlow
Deep learning with TensorFlow
 
Anil Thomas - Object recognition
Anil Thomas - Object recognitionAnil Thomas - Object recognition
Anil Thomas - Object recognition
 
SF Big Analytics & SF Machine Learning Meetup: Machine Learning at the Limit ...
SF Big Analytics & SF Machine Learning Meetup: Machine Learning at the Limit ...SF Big Analytics & SF Machine Learning Meetup: Machine Learning at the Limit ...
SF Big Analytics & SF Machine Learning Meetup: Machine Learning at the Limit ...
 
Braxton McKee, CEO & Founder, Ufora at MLconf NYC - 4/15/16
Braxton McKee, CEO & Founder, Ufora at MLconf NYC - 4/15/16Braxton McKee, CEO & Founder, Ufora at MLconf NYC - 4/15/16
Braxton McKee, CEO & Founder, Ufora at MLconf NYC - 4/15/16
 

Viewers also liked

Computer vision, machine, and deep learning
Computer vision, machine, and deep learningComputer vision, machine, and deep learning
Computer vision, machine, and deep learningIgi Ardiyanto
 
Using Gradient Descent for Optimization and Learning
Using Gradient Descent for Optimization and LearningUsing Gradient Descent for Optimization and Learning
Using Gradient Descent for Optimization and LearningDr. Volkan OBAN
 
Pattern Recognition and Machine Learning : Graphical Models
Pattern Recognition and Machine Learning : Graphical ModelsPattern Recognition and Machine Learning : Graphical Models
Pattern Recognition and Machine Learning : Graphical Modelsbutest
 
Face Recognition Based on Deep Learning (Yurii Pashchenko Technology Stream)
Face Recognition Based on Deep Learning (Yurii Pashchenko Technology Stream) Face Recognition Based on Deep Learning (Yurii Pashchenko Technology Stream)
Face Recognition Based on Deep Learning (Yurii Pashchenko Technology Stream) IT Arena
 
Muzammil Abdulrahman PPT On Gabor Wavelet Transform (GWT) Based Facial Expres...
Muzammil Abdulrahman PPT On Gabor Wavelet Transform (GWT) Based Facial Expres...Muzammil Abdulrahman PPT On Gabor Wavelet Transform (GWT) Based Facial Expres...
Muzammil Abdulrahman PPT On Gabor Wavelet Transform (GWT) Based Facial Expres...Petroleum Training Institute
 
Semi fragile watermarking
Semi fragile watermarkingSemi fragile watermarking
Semi fragile watermarkingYash Diwakar
 
Center loss for Face Recognition
Center loss for Face RecognitionCenter loss for Face Recognition
Center loss for Face RecognitionJisung Kim
 
Optimization in deep learning
Optimization in deep learningOptimization in deep learning
Optimization in deep learningJeremy Nixon
 
Face recognition and deep learning โดย ดร. สรรพฤทธิ์ มฤคทัต NECTEC
Face recognition and deep learning  โดย ดร. สรรพฤทธิ์ มฤคทัต NECTECFace recognition and deep learning  โดย ดร. สรรพฤทธิ์ มฤคทัต NECTEC
Face recognition and deep learning โดย ดร. สรรพฤทธิ์ มฤคทัต NECTECBAINIDA
 
[AI07] Revolutionizing Image Processing with Cognitive Toolkit
[AI07] Revolutionizing Image Processing with Cognitive Toolkit[AI07] Revolutionizing Image Processing with Cognitive Toolkit
[AI07] Revolutionizing Image Processing with Cognitive Toolkitde:code 2017
 
Structure Learning of Bayesian Networks with p Nodes from n Samples when n&lt...
Structure Learning of Bayesian Networks with p Nodes from n Samples when n&lt...Structure Learning of Bayesian Networks with p Nodes from n Samples when n&lt...
Structure Learning of Bayesian Networks with p Nodes from n Samples when n&lt...Joe Suzuki
 
Processor, Compiler and Python Programming Language
Processor, Compiler and Python Programming LanguageProcessor, Compiler and Python Programming Language
Processor, Compiler and Python Programming Languagearumdapta98
 
Caffe - A deep learning framework (Ramin Fahimi)
Caffe - A deep learning framework (Ramin Fahimi)Caffe - A deep learning framework (Ramin Fahimi)
Caffe - A deep learning framework (Ramin Fahimi)irpycon
 
Rattani - Ph.D. Defense Slides
Rattani - Ph.D. Defense SlidesRattani - Ph.D. Defense Slides
Rattani - Ph.D. Defense SlidesPluribus One
 
Pattern Recognition and Machine Learning: Section 3.3
Pattern Recognition and Machine Learning: Section 3.3Pattern Recognition and Machine Learning: Section 3.3
Pattern Recognition and Machine Learning: Section 3.3Yusuke Oda
 
怖くない誤差逆伝播法 Chainerを添えて
怖くない誤差逆伝播法 Chainerを添えて怖くない誤差逆伝播法 Chainerを添えて
怖くない誤差逆伝播法 Chainerを添えてmarujirou
 
Face Recognition Methods based on Convolutional Neural Networks
Face Recognition Methods based on Convolutional Neural NetworksFace Recognition Methods based on Convolutional Neural Networks
Face Recognition Methods based on Convolutional Neural NetworksElaheh Rashedi
 

Viewers also liked (20)

Computer vision, machine, and deep learning
Computer vision, machine, and deep learningComputer vision, machine, and deep learning
Computer vision, machine, and deep learning
 
Using Gradient Descent for Optimization and Learning
Using Gradient Descent for Optimization and LearningUsing Gradient Descent for Optimization and Learning
Using Gradient Descent for Optimization and Learning
 
Pattern Recognition and Machine Learning : Graphical Models
Pattern Recognition and Machine Learning : Graphical ModelsPattern Recognition and Machine Learning : Graphical Models
Pattern Recognition and Machine Learning : Graphical Models
 
Face Recognition Based on Deep Learning (Yurii Pashchenko Technology Stream)
Face Recognition Based on Deep Learning (Yurii Pashchenko Technology Stream) Face Recognition Based on Deep Learning (Yurii Pashchenko Technology Stream)
Face Recognition Based on Deep Learning (Yurii Pashchenko Technology Stream)
 
Muzammil Abdulrahman PPT On Gabor Wavelet Transform (GWT) Based Facial Expres...
Muzammil Abdulrahman PPT On Gabor Wavelet Transform (GWT) Based Facial Expres...Muzammil Abdulrahman PPT On Gabor Wavelet Transform (GWT) Based Facial Expres...
Muzammil Abdulrahman PPT On Gabor Wavelet Transform (GWT) Based Facial Expres...
 
Semi fragile watermarking
Semi fragile watermarkingSemi fragile watermarking
Semi fragile watermarking
 
портфоліо Бабич О.А.
портфоліо Бабич О.А.портфоліо Бабич О.А.
портфоліо Бабич О.А.
 
Center loss for Face Recognition
Center loss for Face RecognitionCenter loss for Face Recognition
Center loss for Face Recognition
 
Optimization in deep learning
Optimization in deep learningOptimization in deep learning
Optimization in deep learning
 
Face recognition and deep learning โดย ดร. สรรพฤทธิ์ มฤคทัต NECTEC
Face recognition and deep learning  โดย ดร. สรรพฤทธิ์ มฤคทัต NECTECFace recognition and deep learning  โดย ดร. สรรพฤทธิ์ มฤคทัต NECTEC
Face recognition and deep learning โดย ดร. สรรพฤทธิ์ มฤคทัต NECTEC
 
[AI07] Revolutionizing Image Processing with Cognitive Toolkit
[AI07] Revolutionizing Image Processing with Cognitive Toolkit[AI07] Revolutionizing Image Processing with Cognitive Toolkit
[AI07] Revolutionizing Image Processing with Cognitive Toolkit
 
Structure Learning of Bayesian Networks with p Nodes from n Samples when n&lt...
Structure Learning of Bayesian Networks with p Nodes from n Samples when n&lt...Structure Learning of Bayesian Networks with p Nodes from n Samples when n&lt...
Structure Learning of Bayesian Networks with p Nodes from n Samples when n&lt...
 
Processor, Compiler and Python Programming Language
Processor, Compiler and Python Programming LanguageProcessor, Compiler and Python Programming Language
Processor, Compiler and Python Programming Language
 
Caffe - A deep learning framework (Ramin Fahimi)
Caffe - A deep learning framework (Ramin Fahimi)Caffe - A deep learning framework (Ramin Fahimi)
Caffe - A deep learning framework (Ramin Fahimi)
 
Facebook Deep face
Facebook Deep faceFacebook Deep face
Facebook Deep face
 
Rattani - Ph.D. Defense Slides
Rattani - Ph.D. Defense SlidesRattani - Ph.D. Defense Slides
Rattani - Ph.D. Defense Slides
 
Pattern Recognition and Machine Learning: Section 3.3
Pattern Recognition and Machine Learning: Section 3.3Pattern Recognition and Machine Learning: Section 3.3
Pattern Recognition and Machine Learning: Section 3.3
 
怖くない誤差逆伝播法 Chainerを添えて
怖くない誤差逆伝播法 Chainerを添えて怖くない誤差逆伝播法 Chainerを添えて
怖くない誤差逆伝播法 Chainerを添えて
 
Face Recognition Methods based on Convolutional Neural Networks
Face Recognition Methods based on Convolutional Neural NetworksFace Recognition Methods based on Convolutional Neural Networks
Face Recognition Methods based on Convolutional Neural Networks
 
Deep Learning for Computer Vision: Face Recognition (UPC 2016)
Deep Learning for Computer Vision: Face Recognition (UPC 2016)Deep Learning for Computer Vision: Face Recognition (UPC 2016)
Deep Learning for Computer Vision: Face Recognition (UPC 2016)
 

Similar to Caffe framework tutorial

Lens: Data exploration with Dask and Jupyter widgets
Lens: Data exploration with Dask and Jupyter widgetsLens: Data exploration with Dask and Jupyter widgets
Lens: Data exploration with Dask and Jupyter widgetsVíctor Zabalza
 
RabbitMQ + CouchDB = Awesome
RabbitMQ + CouchDB = AwesomeRabbitMQ + CouchDB = Awesome
RabbitMQ + CouchDB = AwesomeLenz Gschwendtner
 
Using The New Flash Stage3D Web Technology To Build Your Own Next 3D Browser ...
Using The New Flash Stage3D Web Technology To Build Your Own Next 3D Browser ...Using The New Flash Stage3D Web Technology To Build Your Own Next 3D Browser ...
Using The New Flash Stage3D Web Technology To Build Your Own Next 3D Browser ...Daosheng Mu
 
Computer Vision for Beginners
Computer Vision for BeginnersComputer Vision for Beginners
Computer Vision for BeginnersSanghamitra Deb
 
Applied Machine learning using H2O, python and R Workshop
Applied Machine learning using H2O, python and R WorkshopApplied Machine learning using H2O, python and R Workshop
Applied Machine learning using H2O, python and R WorkshopAvkash Chauhan
 
Exploiting GPU's for Columnar DataFrrames by Kiran Lonikar
Exploiting GPU's for Columnar DataFrrames by Kiran LonikarExploiting GPU's for Columnar DataFrrames by Kiran Lonikar
Exploiting GPU's for Columnar DataFrrames by Kiran LonikarSpark Summit
 
Real-Time Streaming: Move IMS Data to Your Cloud Data Warehouse
Real-Time Streaming: Move IMS Data to Your Cloud Data WarehouseReal-Time Streaming: Move IMS Data to Your Cloud Data Warehouse
Real-Time Streaming: Move IMS Data to Your Cloud Data WarehousePrecisely
 
Cost-Based Optimizer in Apache Spark 2.2 Ron Hu, Sameer Agarwal, Wenchen Fan ...
Cost-Based Optimizer in Apache Spark 2.2 Ron Hu, Sameer Agarwal, Wenchen Fan ...Cost-Based Optimizer in Apache Spark 2.2 Ron Hu, Sameer Agarwal, Wenchen Fan ...
Cost-Based Optimizer in Apache Spark 2.2 Ron Hu, Sameer Agarwal, Wenchen Fan ...Databricks
 
IEEE 2014 MATLAB IMAGE PROCESSING PROJECTS Phase based-binarization-of-ancie...
IEEE 2014 MATLAB IMAGE PROCESSING PROJECTS  Phase based-binarization-of-ancie...IEEE 2014 MATLAB IMAGE PROCESSING PROJECTS  Phase based-binarization-of-ancie...
IEEE 2014 MATLAB IMAGE PROCESSING PROJECTS Phase based-binarization-of-ancie...IEEEBEBTECHSTUDENTPROJECTS
 
Alerting mechanism and algorithms introduction
Alerting mechanism and algorithms introductionAlerting mechanism and algorithms introduction
Alerting mechanism and algorithms introductionFEG
 
An Introduction to Deep Learning
An Introduction to Deep LearningAn Introduction to Deep Learning
An Introduction to Deep Learningmilad abbasi
 
Introduction to Deep Learning
Introduction to Deep LearningIntroduction to Deep Learning
Introduction to Deep LearningMehrnaz Faraz
 
Cost-Based Optimizer in Apache Spark 2.2
Cost-Based Optimizer in Apache Spark 2.2 Cost-Based Optimizer in Apache Spark 2.2
Cost-Based Optimizer in Apache Spark 2.2 Databricks
 
Apache Drill: An Active, Ad-hoc Query System for large-scale Data Sets
Apache Drill: An Active, Ad-hoc Query System for large-scale Data SetsApache Drill: An Active, Ad-hoc Query System for large-scale Data Sets
Apache Drill: An Active, Ad-hoc Query System for large-scale Data SetsMapR Technologies
 
Sc12 workshop-writeup
Sc12 workshop-writeupSc12 workshop-writeup
Sc12 workshop-writeupAaron Zauner
 
Deep learning - the conf br 2018
Deep learning - the conf br 2018Deep learning - the conf br 2018
Deep learning - the conf br 2018Fabio Janiszevski
 
High-Volume Data Collection and Real Time Analytics Using Redis
High-Volume Data Collection and Real Time Analytics Using RedisHigh-Volume Data Collection and Real Time Analytics Using Redis
High-Volume Data Collection and Real Time Analytics Using Rediscacois
 
Streaming Operational Data with MariaDB MaxScale
Streaming Operational Data with MariaDB MaxScaleStreaming Operational Data with MariaDB MaxScale
Streaming Operational Data with MariaDB MaxScaleMariaDB plc
 

Similar to Caffe framework tutorial (20)

Lens: Data exploration with Dask and Jupyter widgets
Lens: Data exploration with Dask and Jupyter widgetsLens: Data exploration with Dask and Jupyter widgets
Lens: Data exploration with Dask and Jupyter widgets
 
RabbitMQ + CouchDB = Awesome
RabbitMQ + CouchDB = AwesomeRabbitMQ + CouchDB = Awesome
RabbitMQ + CouchDB = Awesome
 
Using The New Flash Stage3D Web Technology To Build Your Own Next 3D Browser ...
Using The New Flash Stage3D Web Technology To Build Your Own Next 3D Browser ...Using The New Flash Stage3D Web Technology To Build Your Own Next 3D Browser ...
Using The New Flash Stage3D Web Technology To Build Your Own Next 3D Browser ...
 
Computer Vision for Beginners
Computer Vision for BeginnersComputer Vision for Beginners
Computer Vision for Beginners
 
Applied Machine learning using H2O, python and R Workshop
Applied Machine learning using H2O, python and R WorkshopApplied Machine learning using H2O, python and R Workshop
Applied Machine learning using H2O, python and R Workshop
 
Learning to Optimize
Learning to OptimizeLearning to Optimize
Learning to Optimize
 
Exploiting GPU's for Columnar DataFrrames by Kiran Lonikar
Exploiting GPU's for Columnar DataFrrames by Kiran LonikarExploiting GPU's for Columnar DataFrrames by Kiran Lonikar
Exploiting GPU's for Columnar DataFrrames by Kiran Lonikar
 
Real-Time Streaming: Move IMS Data to Your Cloud Data Warehouse
Real-Time Streaming: Move IMS Data to Your Cloud Data WarehouseReal-Time Streaming: Move IMS Data to Your Cloud Data Warehouse
Real-Time Streaming: Move IMS Data to Your Cloud Data Warehouse
 
Cost-Based Optimizer in Apache Spark 2.2 Ron Hu, Sameer Agarwal, Wenchen Fan ...
Cost-Based Optimizer in Apache Spark 2.2 Ron Hu, Sameer Agarwal, Wenchen Fan ...Cost-Based Optimizer in Apache Spark 2.2 Ron Hu, Sameer Agarwal, Wenchen Fan ...
Cost-Based Optimizer in Apache Spark 2.2 Ron Hu, Sameer Agarwal, Wenchen Fan ...
 
IEEE 2014 MATLAB IMAGE PROCESSING PROJECTS Phase based-binarization-of-ancie...
IEEE 2014 MATLAB IMAGE PROCESSING PROJECTS  Phase based-binarization-of-ancie...IEEE 2014 MATLAB IMAGE PROCESSING PROJECTS  Phase based-binarization-of-ancie...
IEEE 2014 MATLAB IMAGE PROCESSING PROJECTS Phase based-binarization-of-ancie...
 
Alerting mechanism and algorithms introduction
Alerting mechanism and algorithms introductionAlerting mechanism and algorithms introduction
Alerting mechanism and algorithms introduction
 
An Introduction to Deep Learning
An Introduction to Deep LearningAn Introduction to Deep Learning
An Introduction to Deep Learning
 
Introduction to Deep Learning
Introduction to Deep LearningIntroduction to Deep Learning
Introduction to Deep Learning
 
Cost-Based Optimizer in Apache Spark 2.2
Cost-Based Optimizer in Apache Spark 2.2 Cost-Based Optimizer in Apache Spark 2.2
Cost-Based Optimizer in Apache Spark 2.2
 
M7 and Apache Drill, Micheal Hausenblas
M7 and Apache Drill, Micheal HausenblasM7 and Apache Drill, Micheal Hausenblas
M7 and Apache Drill, Micheal Hausenblas
 
Apache Drill: An Active, Ad-hoc Query System for large-scale Data Sets
Apache Drill: An Active, Ad-hoc Query System for large-scale Data SetsApache Drill: An Active, Ad-hoc Query System for large-scale Data Sets
Apache Drill: An Active, Ad-hoc Query System for large-scale Data Sets
 
Sc12 workshop-writeup
Sc12 workshop-writeupSc12 workshop-writeup
Sc12 workshop-writeup
 
Deep learning - the conf br 2018
Deep learning - the conf br 2018Deep learning - the conf br 2018
Deep learning - the conf br 2018
 
High-Volume Data Collection and Real Time Analytics Using Redis
High-Volume Data Collection and Real Time Analytics Using RedisHigh-Volume Data Collection and Real Time Analytics Using Redis
High-Volume Data Collection and Real Time Analytics Using Redis
 
Streaming Operational Data with MariaDB MaxScale
Streaming Operational Data with MariaDB MaxScaleStreaming Operational Data with MariaDB MaxScale
Streaming Operational Data with MariaDB MaxScale
 

Recently uploaded

BigBuy dropshipping via API with DroFx.pptx
BigBuy dropshipping via API with DroFx.pptxBigBuy dropshipping via API with DroFx.pptx
BigBuy dropshipping via API with DroFx.pptxolyaivanovalion
 
Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...ZurliaSoop
 
Vip Mumbai Call Girls Marol Naka Call On 9920725232 With Body to body massage...
Vip Mumbai Call Girls Marol Naka Call On 9920725232 With Body to body massage...Vip Mumbai Call Girls Marol Naka Call On 9920725232 With Body to body massage...
Vip Mumbai Call Girls Marol Naka Call On 9920725232 With Body to body massage...amitlee9823
 
Call Girls Bommasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
Call Girls Bommasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...Call Girls Bommasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
Call Girls Bommasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...amitlee9823
 
Ravak dropshipping via API with DroFx.pptx
Ravak dropshipping via API with DroFx.pptxRavak dropshipping via API with DroFx.pptx
Ravak dropshipping via API with DroFx.pptxolyaivanovalion
 
Cheap Rate Call girls Sarita Vihar Delhi 9205541914 shot 1500 night
Cheap Rate Call girls Sarita Vihar Delhi 9205541914 shot 1500 nightCheap Rate Call girls Sarita Vihar Delhi 9205541914 shot 1500 night
Cheap Rate Call girls Sarita Vihar Delhi 9205541914 shot 1500 nightDelhi Call girls
 
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...Valters Lauzums
 
Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...
Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...
Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...amitlee9823
 
Call Girls Jalahalli Just Call 👗 7737669865 👗 Top Class Call Girl Service Ban...
Call Girls Jalahalli Just Call 👗 7737669865 👗 Top Class Call Girl Service Ban...Call Girls Jalahalli Just Call 👗 7737669865 👗 Top Class Call Girl Service Ban...
Call Girls Jalahalli Just Call 👗 7737669865 👗 Top Class Call Girl Service Ban...amitlee9823
 
CebaBaby dropshipping via API with DroFX.pptx
CebaBaby dropshipping via API with DroFX.pptxCebaBaby dropshipping via API with DroFX.pptx
CebaBaby dropshipping via API with DroFX.pptxolyaivanovalion
 
FESE Capital Markets Fact Sheet 2024 Q1.pdf
FESE Capital Markets Fact Sheet 2024 Q1.pdfFESE Capital Markets Fact Sheet 2024 Q1.pdf
FESE Capital Markets Fact Sheet 2024 Q1.pdfMarinCaroMartnezBerg
 
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...amitlee9823
 
ALSO dropshipping via API with DroFx.pptx
ALSO dropshipping via API with DroFx.pptxALSO dropshipping via API with DroFx.pptx
ALSO dropshipping via API with DroFx.pptxolyaivanovalion
 
Carero dropshipping via API with DroFx.pptx
Carero dropshipping via API with DroFx.pptxCarero dropshipping via API with DroFx.pptx
Carero dropshipping via API with DroFx.pptxolyaivanovalion
 
Capstone Project on IBM Data Analytics Program
Capstone Project on IBM Data Analytics ProgramCapstone Project on IBM Data Analytics Program
Capstone Project on IBM Data Analytics ProgramMoniSankarHazra
 
Al Barsha Escorts $#$ O565212860 $#$ Escort Service In Al Barsha
Al Barsha Escorts $#$ O565212860 $#$ Escort Service In Al BarshaAl Barsha Escorts $#$ O565212860 $#$ Escort Service In Al Barsha
Al Barsha Escorts $#$ O565212860 $#$ Escort Service In Al BarshaAroojKhan71
 
Mg Road Call Girls Service: 🍓 7737669865 🍓 High Profile Model Escorts | Banga...
Mg Road Call Girls Service: 🍓 7737669865 🍓 High Profile Model Escorts | Banga...Mg Road Call Girls Service: 🍓 7737669865 🍓 High Profile Model Escorts | Banga...
Mg Road Call Girls Service: 🍓 7737669865 🍓 High Profile Model Escorts | Banga...amitlee9823
 

Recently uploaded (20)

BigBuy dropshipping via API with DroFx.pptx
BigBuy dropshipping via API with DroFx.pptxBigBuy dropshipping via API with DroFx.pptx
BigBuy dropshipping via API with DroFx.pptx
 
CHEAP Call Girls in Saket (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Saket (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICECHEAP Call Girls in Saket (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
CHEAP Call Girls in Saket (-DELHI )🔝 9953056974🔝(=)/CALL GIRLS SERVICE
 
Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
Jual Obat Aborsi Surabaya ( Asli No.1 ) 085657271886 Obat Penggugur Kandungan...
 
Vip Mumbai Call Girls Marol Naka Call On 9920725232 With Body to body massage...
Vip Mumbai Call Girls Marol Naka Call On 9920725232 With Body to body massage...Vip Mumbai Call Girls Marol Naka Call On 9920725232 With Body to body massage...
Vip Mumbai Call Girls Marol Naka Call On 9920725232 With Body to body massage...
 
Call Girls Bommasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
Call Girls Bommasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...Call Girls Bommasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
Call Girls Bommasandra Just Call 👗 7737669865 👗 Top Class Call Girl Service B...
 
Ravak dropshipping via API with DroFx.pptx
Ravak dropshipping via API with DroFx.pptxRavak dropshipping via API with DroFx.pptx
Ravak dropshipping via API with DroFx.pptx
 
Cheap Rate Call girls Sarita Vihar Delhi 9205541914 shot 1500 night
Cheap Rate Call girls Sarita Vihar Delhi 9205541914 shot 1500 nightCheap Rate Call girls Sarita Vihar Delhi 9205541914 shot 1500 night
Cheap Rate Call girls Sarita Vihar Delhi 9205541914 shot 1500 night
 
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...
Digital Advertising Lecture for Advanced Digital & Social Media Strategy at U...
 
(NEHA) Call Girls Katra Call Now 8617697112 Katra Escorts 24x7
(NEHA) Call Girls Katra Call Now 8617697112 Katra Escorts 24x7(NEHA) Call Girls Katra Call Now 8617697112 Katra Escorts 24x7
(NEHA) Call Girls Katra Call Now 8617697112 Katra Escorts 24x7
 
Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...
Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...
Vip Mumbai Call Girls Thane West Call On 9920725232 With Body to body massage...
 
Call Girls Jalahalli Just Call 👗 7737669865 👗 Top Class Call Girl Service Ban...
Call Girls Jalahalli Just Call 👗 7737669865 👗 Top Class Call Girl Service Ban...Call Girls Jalahalli Just Call 👗 7737669865 👗 Top Class Call Girl Service Ban...
Call Girls Jalahalli Just Call 👗 7737669865 👗 Top Class Call Girl Service Ban...
 
CebaBaby dropshipping via API with DroFX.pptx
CebaBaby dropshipping via API with DroFX.pptxCebaBaby dropshipping via API with DroFX.pptx
CebaBaby dropshipping via API with DroFX.pptx
 
FESE Capital Markets Fact Sheet 2024 Q1.pdf
FESE Capital Markets Fact Sheet 2024 Q1.pdfFESE Capital Markets Fact Sheet 2024 Q1.pdf
FESE Capital Markets Fact Sheet 2024 Q1.pdf
 
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...
Chintamani Call Girls: 🍓 7737669865 🍓 High Profile Model Escorts | Bangalore ...
 
ALSO dropshipping via API with DroFx.pptx
ALSO dropshipping via API with DroFx.pptxALSO dropshipping via API with DroFx.pptx
ALSO dropshipping via API with DroFx.pptx
 
Carero dropshipping via API with DroFx.pptx
Carero dropshipping via API with DroFx.pptxCarero dropshipping via API with DroFx.pptx
Carero dropshipping via API with DroFx.pptx
 
Capstone Project on IBM Data Analytics Program
Capstone Project on IBM Data Analytics ProgramCapstone Project on IBM Data Analytics Program
Capstone Project on IBM Data Analytics Program
 
Al Barsha Escorts $#$ O565212860 $#$ Escort Service In Al Barsha
Al Barsha Escorts $#$ O565212860 $#$ Escort Service In Al BarshaAl Barsha Escorts $#$ O565212860 $#$ Escort Service In Al Barsha
Al Barsha Escorts $#$ O565212860 $#$ Escort Service In Al Barsha
 
Mg Road Call Girls Service: 🍓 7737669865 🍓 High Profile Model Escorts | Banga...
Mg Road Call Girls Service: 🍓 7737669865 🍓 High Profile Model Escorts | Banga...Mg Road Call Girls Service: 🍓 7737669865 🍓 High Profile Model Escorts | Banga...
Mg Road Call Girls Service: 🍓 7737669865 🍓 High Profile Model Escorts | Banga...
 
Predicting Loan Approval: A Data Science Project
Predicting Loan Approval: A Data Science ProjectPredicting Loan Approval: A Data Science Project
Predicting Loan Approval: A Data Science Project
 

Caffe framework tutorial

  • 2. Blobs • A Blob is a wrapper over the actual data being processed and passed along by Caffe • dimensions for batches of image data – number N x channel K x height H x width W
  • 3. Layer • essence of a model and the fundamental unit of computation. • filters, pool, take inner products, apply nonlinearities like rectified-linear and sigmoid and other elementwise transformations, normalize, load data, and compute losses like softmax and hinge.
  • 4. Net name: "LogReg" layer { name: "mnist" type: "Data" top: "data" top: "label" data_param { source: "input_leveldb" batch_size: 64 } } layer { name: "ip" type: "InnerProduct" bottom: "data" top: "ip" inner_product_param{ num_output: 2 } } layer { name: "loss" type: "SoftmaxWithLoss" bottom: "ip" bottom: "label" top: "loss" }
  • 5. Forward and Backward • methods – Net::Forward() , Net::Backward()
  • 6. Loss • learning is driven by a loss function (also known as an error, cost, or objective function). layer { name: "loss" type: "SoftmaxWithLoss" bottom: "ip" bottom: "label" top: "loss" }
  • 7. Solver • orchestrates model optimization by coordinating the network’s forward inference and backward gradients – to form parameter updates that attempt to improve the loss. • solver prototxt file: – base_lr: 0.01 # begin training at a learning rate of 0.01 – lr_policy: "step" – gamma: 0.1 # drop the learning rate – stepsize: 100000 # drop the learning rate every 100K iterations – max_iter: 350000 – momentum: 0.9 • 해석 – 100,000 번째 step 에서( 반복했을 때 ) Learning rate = lr*gamma=0.01 *0.1=0.001 – 200,000 번째 step 에서 Learning rate = lr*gamma=0.001*0.1=0.0001
  • 8. Data: Ins and Outs layer { name: "mnist" type: "Data" top: "data" top: "label" data_param { source: "examples/mnist/mnist_train_lmdb" backend: LMDB batch_size: 64 } transform_param {scale: 0.00390625} } %해석: transform으로 [0, 255]의 MNIST data 를 [0, 1] 로 스케일 변경