SlideShare ist ein Scribd-Unternehmen logo
1 von 48
TensorFlow Tutorial
Detecting Diabetic Retinopathy
Diabetic Retinopathy is the fastest growing cause of blindness in the world. Deep Learning algorithms using TensorFlow are
capable of interpreting signs of Diabetic Retinopathy in retinal photographs.
128,000 images of eye retina’s
Fed to a Neural Network
for training
New image of eye retina Identifies Healthy and
Diseased eye
What’s in it for you?
What is Deep Learning?
What is TensorFlow?
Top Deep Learning Libraries
Why use TensorFlow?
Building a Computational Graph
Programming Elements in TensorFlow
Introducing Recurrent Neural Networks
Use case implementation of RNN using TensorFlow
What is Deep learning?
Subset of Machine Learning and works
on the structure and functions of a
human brain
Learns from unstructured data and
performs complex computations
Uses a Neural Net with multiple layers to
train an algorithm
Deep Learning Input Layer Hidden
Layers
Output
Layer
Popular libraries for Deep Learning
TensorFlow
Deep Learning 4
Java
TheanoTorch
Keras
Deep Learning Libraries
Why use TensorFlow?
Provides both C++ and Python
API’s that makes it easier to
work on
TensorFlow reduces the
chances of errors by 55% to
85%
Teams can run TensorFlow on
large scale server farms
embedded on devices, CPUs,
GPUs, TPUs, etc
TensorFlow allows you to train
models faster as it has faster
compilation time
What is TensorFlow?
TensorFlow
Open source library
developed by Google brain
team in 2012
Developed initially to run large
sets of numerical
computations
Uses Data Flow graphs to
process data and perform
computations
Takes data in the form of
arrays of potentially higher
dimensions and ranks
What is a Tensor?
Tensor is a mathematical object represented as arrays of higher dimensions. These arrays of data with different
dimensions and ranks that are fed as input to the neural network are called Tensors.
Arrays of data with
different dimensions is
fed as input to the
network
Input Layer Hidden Layers Output Layer
a
m
k
q
d
Tensor of Dimensions[5]
What is a Tensor?
Tensor is a mathematical object represented as arrays of higher dimensions. These arrays of data with different
dimensions and ranks that are fed as input to the neural network are called Tensors.
Input Layer Hidden Layers Output Layer
1
6
8
3
9
3
3
4
1
7
4
9
1
5
3
7
1
6
9
2
Tensor of Dimensions[5,4]
What is a Tensor?
Tensor is a mathematical object represented as arrays of higher dimensions. These arrays of data with different
dimensions and ranks that are fed as input to the neural network are called Tensors.
Input Layer Hidden Layers Output Layer
Tensor of Dimensions[3,3,3]
Tensor Rank
The number of dimensions used to represent the data is known as its Rank.
S = 10 Tensor of Rank 0 or a Scalar.
Tensor of Rank 1 or a Vector.V = [10., 11., 12.]
M = [[1, 2, 3],[4, 5, 6]] Tensor of Rank 2 or a Matrix.
T = [[[1],[2],[3]],[[4],[5],[6]],[[7],[8],[9]]] Tensor of Rank 3 or a Tensor
Tensor Data type
Data Type Python Type Description
DF_FLOAT tf.float32 32 bits floating point
DF_DOUBLE tf.float64 64 bits floating point
DT_INT8 tf.int8 8 bits signed integer
DT_INT16 tf.int16 16 bits signed integer
DT_INT32 tf.int32 32 bits signed integer
DT_INT64 tf.int64 64 bits signed integer
DT_UINT8 tf.unit8 8 bits unsigned integer
DT_STRING tf.string Variable length byte arrays
DT_BOOL tf.bool Boolean
In addition to rank and shape, Tensors have a data type. Following is the list of the data type:
Building a Computation Graph
Everything in TensorFlow is based on creating a computational graph. It has a network of nodes, with each
node performing an operation like addition, multiplication or evaluating some multivariate equation.
input
input
add
mul
mul
a
b
c
d
e
5
3
4
2
7
1
2
84
In TensorFlow, a computation is described
using a Data Flow graph
Nodes represent mathematical operation and
edge represents tensors
Building a Computation Graph
Lets compute a function F of 3 variables a, b, c : F(a,b,c) = 5(a+bc)
p = bc
q = a + p
F = 5*q
a=4
b=3
c=5
p = bc
q = a + p F = 5*q
15
19 95
Programming elements in TensorFlow
Constants
Constants are parameters whose value does not
change. To define a constant, we use tf.constant()
command.
Example:
a = tf.constant(2.0, tf.float32)
b = tf.constant(3.0)
Print(a, b)
Programming elements in TensorFlow
Variables
Variables allow us to add new trainable parameters to
graph. To define a variable, we use tf.Variable()
command and initialize them before running the graph in
a session.
Example:
W = tf.Variable([.3],dtype=tf.float32)
b = tf.Variable([-.3],dtype=tf.float32)
x = tf.placeholder(tf.float32)
linear_model = W*x+b
Programming elements in TensorFlow
Placeholder
Placeholders allow us to feed data to a tensorflow model
from outside a model. It permits a value to be assigned
later. To define a placeholder, we use tf.placeholder()
command.
Example:
a = tf.placeholder(tf.float32)
b = a*2
with tf.Session() as sess:
result = sess.run(b,feed_dict={a:3.0})
print result
feed_dict specifies tensors
that provide concrete values to
the placeholders
Programming elements in TensorFlow
Session
A session is run to evaluate the nodes. This is called as
the TensorFlow runtime.
Example:
a = tf.constant(2.0)
b = tf.constant(4.0)
c = a+b
# Launch Session
sess = tf.Session()
# Evaluate the tensor c
print(sess.run(c))
Running a Computation
Graph
a
b
c
4.0
2.0
Addition
6.0
Linear Regression using TensorFlow
Let’s work on a regression example to solve a simple equation [y=m*x+b]. We will calculate the slope and the intercept of the
line that best fits our data.
1. Setting up some artificial data for regression
Linear Regression using TensorFlow
2. Plot the Data
Linear Regression using TensorFlow
3. Assign the variables
4. Apply the Cost Function
Linear Regression using TensorFlow
5. Apply the Optimization function
6. Initialize the variables
7. Create the session and run the computation
Linear Regression using TensorFlow
8. Print the slope and intercept
Linear Regression using TensorFlow
9. Evaluate the results
Introducing Recurrent Neural Networks
In a Feed-Forward Network like CNN/ANN, information flows only in forward direction, from the input nodes, through the
hidden layers (if any) and to the output nodes. There are no cycles or loops in the network.
Input Layer Hidden Layers Output Layer
Feed-Forward Network
Yellow
Patch
Petals length
and width
Sepals length
and width
Output
Iris
Not Iris
Introducing Recurrent Neural Networks
Recurrent Neural Networks are used to handle sequential time series data because it is able to memorize the inputs. At a
particular time step, RNN accepts previous output result along with the current input to generate the output at that time step.
Recurrent Neural Network
h
x
y
w
Rotate the neural network
vertically and compress the
layers
How does a Recurrent Neural Network look like?
h
x
y
w Unfold ht-1
xt-1
yt-1
ht
xt
yt
ht+1
xt+1
yt+1
w ww w
Input at time t
Output at time t
Hidden state at
time t
ht = f (ht-1 ,xtw )
ht = new state
fw = function with parameter w
ht-1
= old state
xt = input vector at time step t
Types of RNN
While Feed-Forward Networks map one input to one output, Recurrent Neural Networks can map one to many, many to one
and many to many.
One to One One to Many Many to One Many to Many
Types of RNN
While Feed-Forward Networks map one input to one output, Recurrent Neural Networks can map one to many, many to one
and many to many.
One to One One to Many Many to One Many to Many
• Known as the Vanilla Neural Network. Used for
regular machine learning problems
1 output
1 input
Types of RNN
While Feed-Forward Networks map one input to one output, Recurrent Neural Networks can map one to many, many to one
and many to many.
One to One One to Many Many to One Many to Many
• Used for image captioning. Given an image, it
generate a sequence of words, captioning the
image
multiple
outputs
1 input
Types of RNN
While Feed-Forward Networks map one input to one output, Recurrent Neural Networks can map one to many, many to one
and many to many.
One to One One to Many Many to One Many to Many
• Used to carry out Sentiment Analysis. Given a
set of words, it tells you the sentiment present
1 output
multiple
inputs
Types of RNN
While Feed-Forward Networks map one input to one output, Recurrent Neural Networks can map one to many, many to one
and many to many.
One to One One to Many Many to One Many to Many
• Used in Machine Translation. Given a sets of
words in one language, it translates it to
another
multiple
inputs
multiple
outputs
Use case implementation of RNN
Lets look at a use case of predicting the monthly milk production
per cow in pounds using a time series data
Based on
Data between Jan 1962 to
Dec 1975
How much milk
production can we
expect in a
month?
Use case implementation of RNN
1. Import the necessary libraries
2. Read the dataset and print the head of it
Use case implementation of RNN
3. Convert the index to time series
4. Plot the time series data
Use case implementation of RNN
5. Perform the train test split on the data
Use case implementation of RNN
6. Scale the data using standard Machine Learning process
7. Applying the batch function
Use case implementation of RNN
8. Setting up the RNN model
Use case implementation of RNN
9. Create Placeholders for X and y
10. Applying the loss function and optimizer
11. Initialize the Global variables
12. Create an instance of tf.train.Saver()
Use case implementation of RNN
13. Create the session and run it
Use case implementation of RNN
14. Display the Test Data
Use case implementation of RNN
15. Create a seed training_instance to predict the last 12 months milk production from the training data
Use case implementation of RNN
16. Displaying the results of the prediction
Use case implementation of RNN
17. Reshape the results
18. Create a new column on the test data called Generated
Use case implementation of RNN
19. View the test_set dataframe
Use case implementation of RNN
20. Plot the predicted result and the actual result
Key Takeaways
TensorFlow Tutorial: Detecting Diabetic Retinopathy with Deep Learning

Weitere ähnliche Inhalte

Was ist angesagt?

Deep Learning - Convolutional Neural Networks
Deep Learning - Convolutional Neural NetworksDeep Learning - Convolutional Neural Networks
Deep Learning - Convolutional Neural NetworksChristian Perone
 
Convolutional Neural Network
Convolutional Neural NetworkConvolutional Neural Network
Convolutional Neural NetworkVignesh Suresh
 
Convolutional neural network
Convolutional neural network Convolutional neural network
Convolutional neural network Yan Xu
 
Image classification using CNN
Image classification using CNNImage classification using CNN
Image classification using CNNNoura Hussein
 
Deep Learning Frameworks 2019 | Which Deep Learning Framework To Use | Deep L...
Deep Learning Frameworks 2019 | Which Deep Learning Framework To Use | Deep L...Deep Learning Frameworks 2019 | Which Deep Learning Framework To Use | Deep L...
Deep Learning Frameworks 2019 | Which Deep Learning Framework To Use | Deep L...Simplilearn
 
Deep Learning - CNN and RNN
Deep Learning - CNN and RNNDeep Learning - CNN and RNN
Deep Learning - CNN and RNNAshray Bhandare
 
Notes from Coursera Deep Learning courses by Andrew Ng
Notes from Coursera Deep Learning courses by Andrew NgNotes from Coursera Deep Learning courses by Andrew Ng
Notes from Coursera Deep Learning courses by Andrew NgdataHacker. rs
 
CONVOLUTIONAL NEURAL NETWORK
CONVOLUTIONAL NEURAL NETWORKCONVOLUTIONAL NEURAL NETWORK
CONVOLUTIONAL NEURAL NETWORKMd Rajib Bhuiyan
 
Introduction To TensorFlow
Introduction To TensorFlowIntroduction To TensorFlow
Introduction To TensorFlowSpotle.ai
 
Convolutional Neural Network (CNN) - image recognition
Convolutional Neural Network (CNN)  - image recognitionConvolutional Neural Network (CNN)  - image recognition
Convolutional Neural Network (CNN) - image recognitionYUNG-KUEI CHEN
 
Deep learning - Conceptual understanding and applications
Deep learning - Conceptual understanding and applicationsDeep learning - Conceptual understanding and applications
Deep learning - Conceptual understanding and applicationsBuhwan Jeong
 
Introduction to Deep learning
Introduction to Deep learningIntroduction to Deep learning
Introduction to Deep learningleopauly
 
Resnet.pptx
Resnet.pptxResnet.pptx
Resnet.pptxYanhuaSi
 
Deep learning - A Visual Introduction
Deep learning - A Visual IntroductionDeep learning - A Visual Introduction
Deep learning - A Visual IntroductionLukas Masuch
 
Transfer Learning and Fine-tuning Deep Neural Networks
 Transfer Learning and Fine-tuning Deep Neural Networks Transfer Learning and Fine-tuning Deep Neural Networks
Transfer Learning and Fine-tuning Deep Neural NetworksPyData
 
An introduction to Deep Learning
An introduction to Deep LearningAn introduction to Deep Learning
An introduction to Deep LearningJulien SIMON
 
Introduction to CNN
Introduction to CNNIntroduction to CNN
Introduction to CNNShuai Zhang
 
Convolution Neural Network (CNN)
Convolution Neural Network (CNN)Convolution Neural Network (CNN)
Convolution Neural Network (CNN)Basit Rafiq
 

Was ist angesagt? (20)

Deep Learning - Convolutional Neural Networks
Deep Learning - Convolutional Neural NetworksDeep Learning - Convolutional Neural Networks
Deep Learning - Convolutional Neural Networks
 
Convolutional Neural Network
Convolutional Neural NetworkConvolutional Neural Network
Convolutional Neural Network
 
Deep learning
Deep learning Deep learning
Deep learning
 
Convolutional neural network
Convolutional neural network Convolutional neural network
Convolutional neural network
 
Image classification using CNN
Image classification using CNNImage classification using CNN
Image classification using CNN
 
Deep Learning Frameworks 2019 | Which Deep Learning Framework To Use | Deep L...
Deep Learning Frameworks 2019 | Which Deep Learning Framework To Use | Deep L...Deep Learning Frameworks 2019 | Which Deep Learning Framework To Use | Deep L...
Deep Learning Frameworks 2019 | Which Deep Learning Framework To Use | Deep L...
 
Deep Learning - CNN and RNN
Deep Learning - CNN and RNNDeep Learning - CNN and RNN
Deep Learning - CNN and RNN
 
Notes from Coursera Deep Learning courses by Andrew Ng
Notes from Coursera Deep Learning courses by Andrew NgNotes from Coursera Deep Learning courses by Andrew Ng
Notes from Coursera Deep Learning courses by Andrew Ng
 
CONVOLUTIONAL NEURAL NETWORK
CONVOLUTIONAL NEURAL NETWORKCONVOLUTIONAL NEURAL NETWORK
CONVOLUTIONAL NEURAL NETWORK
 
Introduction To TensorFlow
Introduction To TensorFlowIntroduction To TensorFlow
Introduction To TensorFlow
 
Convolutional Neural Network (CNN) - image recognition
Convolutional Neural Network (CNN)  - image recognitionConvolutional Neural Network (CNN)  - image recognition
Convolutional Neural Network (CNN) - image recognition
 
Deep learning - Conceptual understanding and applications
Deep learning - Conceptual understanding and applicationsDeep learning - Conceptual understanding and applications
Deep learning - Conceptual understanding and applications
 
Introduction to Deep learning
Introduction to Deep learningIntroduction to Deep learning
Introduction to Deep learning
 
Resnet.pptx
Resnet.pptxResnet.pptx
Resnet.pptx
 
Deep learning - A Visual Introduction
Deep learning - A Visual IntroductionDeep learning - A Visual Introduction
Deep learning - A Visual Introduction
 
Transfer Learning and Fine-tuning Deep Neural Networks
 Transfer Learning and Fine-tuning Deep Neural Networks Transfer Learning and Fine-tuning Deep Neural Networks
Transfer Learning and Fine-tuning Deep Neural Networks
 
Resnet
ResnetResnet
Resnet
 
An introduction to Deep Learning
An introduction to Deep LearningAn introduction to Deep Learning
An introduction to Deep Learning
 
Introduction to CNN
Introduction to CNNIntroduction to CNN
Introduction to CNN
 
Convolution Neural Network (CNN)
Convolution Neural Network (CNN)Convolution Neural Network (CNN)
Convolution Neural Network (CNN)
 

Ähnlich wie TensorFlow Tutorial: Detecting Diabetic Retinopathy with Deep Learning

Introduction To Using TensorFlow & Deep Learning
Introduction To Using TensorFlow & Deep LearningIntroduction To Using TensorFlow & Deep Learning
Introduction To Using TensorFlow & Deep Learningali alemi
 
TensorFlow example for AI Ukraine2016
TensorFlow example  for AI Ukraine2016TensorFlow example  for AI Ukraine2016
TensorFlow example for AI Ukraine2016Andrii Babii
 
Introduction to Tensor Flow for Optical Character Recognition (OCR)
Introduction to Tensor Flow for Optical Character Recognition (OCR)Introduction to Tensor Flow for Optical Character Recognition (OCR)
Introduction to Tensor Flow for Optical Character Recognition (OCR)Vincenzo Santopietro
 
Lecture Note DL&NN Tensorflow.pptx
Lecture Note DL&NN Tensorflow.pptxLecture Note DL&NN Tensorflow.pptx
Lecture Note DL&NN Tensorflow.pptxBhaviniBhatt7
 
Neural networks and google tensor flow
Neural networks and google tensor flowNeural networks and google tensor flow
Neural networks and google tensor flowShannon McCormick
 
TENSORFLOW: ARCHITECTURE AND USE CASE - NASA SPACE APPS CHALLENGE by Gema Par...
TENSORFLOW: ARCHITECTURE AND USE CASE - NASA SPACE APPS CHALLENGE by Gema Par...TENSORFLOW: ARCHITECTURE AND USE CASE - NASA SPACE APPS CHALLENGE by Gema Par...
TENSORFLOW: ARCHITECTURE AND USE CASE - NASA SPACE APPS CHALLENGE by Gema Par...Big Data Spain
 
Java and Deep Learning (Introduction)
Java and Deep Learning (Introduction)Java and Deep Learning (Introduction)
Java and Deep Learning (Introduction)Oswald Campesato
 
Synthetic dialogue generation with Deep Learning
Synthetic dialogue generation with Deep LearningSynthetic dialogue generation with Deep Learning
Synthetic dialogue generation with Deep LearningS N
 
deepnet-lourentzou.ppt
deepnet-lourentzou.pptdeepnet-lourentzou.ppt
deepnet-lourentzou.pptyang947066
 
NeuralProcessingofGeneralPurposeApproximatePrograms
NeuralProcessingofGeneralPurposeApproximateProgramsNeuralProcessingofGeneralPurposeApproximatePrograms
NeuralProcessingofGeneralPurposeApproximateProgramsMohid Nabil
 
Towards neuralprocessingofgeneralpurposeapproximateprograms
Towards neuralprocessingofgeneralpurposeapproximateprogramsTowards neuralprocessingofgeneralpurposeapproximateprograms
Towards neuralprocessingofgeneralpurposeapproximateprogramsParidha Saxena
 
Deep Learning Tutorial | Deep Learning Tutorial for Beginners | Neural Networ...
Deep Learning Tutorial | Deep Learning Tutorial for Beginners | Neural Networ...Deep Learning Tutorial | Deep Learning Tutorial for Beginners | Neural Networ...
Deep Learning Tutorial | Deep Learning Tutorial for Beginners | Neural Networ...Edureka!
 
Language translation with Deep Learning (RNN) with TensorFlow
Language translation with Deep Learning (RNN) with TensorFlowLanguage translation with Deep Learning (RNN) with TensorFlow
Language translation with Deep Learning (RNN) with TensorFlowS N
 
Neural Networks with Google TensorFlow
Neural Networks with Google TensorFlowNeural Networks with Google TensorFlow
Neural Networks with Google TensorFlowDarshan Patel
 
Introduction to Neural Networks in Tensorflow
Introduction to Neural Networks in TensorflowIntroduction to Neural Networks in Tensorflow
Introduction to Neural Networks in TensorflowNicholas McClure
 
Feed forward neural network for sine
Feed forward neural network for sineFeed forward neural network for sine
Feed forward neural network for sineijcsa
 
Introduction to deep learning
Introduction to deep learningIntroduction to deep learning
Introduction to deep learningJunaid Bhat
 

Ähnlich wie TensorFlow Tutorial: Detecting Diabetic Retinopathy with Deep Learning (20)

Introduction To Using TensorFlow & Deep Learning
Introduction To Using TensorFlow & Deep LearningIntroduction To Using TensorFlow & Deep Learning
Introduction To Using TensorFlow & Deep Learning
 
TensorFlow.pptx
TensorFlow.pptxTensorFlow.pptx
TensorFlow.pptx
 
TensorFlow example for AI Ukraine2016
TensorFlow example  for AI Ukraine2016TensorFlow example  for AI Ukraine2016
TensorFlow example for AI Ukraine2016
 
Introduction to Tensor Flow for Optical Character Recognition (OCR)
Introduction to Tensor Flow for Optical Character Recognition (OCR)Introduction to Tensor Flow for Optical Character Recognition (OCR)
Introduction to Tensor Flow for Optical Character Recognition (OCR)
 
Lecture Note DL&NN Tensorflow.pptx
Lecture Note DL&NN Tensorflow.pptxLecture Note DL&NN Tensorflow.pptx
Lecture Note DL&NN Tensorflow.pptx
 
Neural networks and google tensor flow
Neural networks and google tensor flowNeural networks and google tensor flow
Neural networks and google tensor flow
 
TENSORFLOW: ARCHITECTURE AND USE CASE - NASA SPACE APPS CHALLENGE by Gema Par...
TENSORFLOW: ARCHITECTURE AND USE CASE - NASA SPACE APPS CHALLENGE by Gema Par...TENSORFLOW: ARCHITECTURE AND USE CASE - NASA SPACE APPS CHALLENGE by Gema Par...
TENSORFLOW: ARCHITECTURE AND USE CASE - NASA SPACE APPS CHALLENGE by Gema Par...
 
Java and Deep Learning (Introduction)
Java and Deep Learning (Introduction)Java and Deep Learning (Introduction)
Java and Deep Learning (Introduction)
 
Synthetic dialogue generation with Deep Learning
Synthetic dialogue generation with Deep LearningSynthetic dialogue generation with Deep Learning
Synthetic dialogue generation with Deep Learning
 
Tensor flow
Tensor flowTensor flow
Tensor flow
 
deepnet-lourentzou.ppt
deepnet-lourentzou.pptdeepnet-lourentzou.ppt
deepnet-lourentzou.ppt
 
NeuralProcessingofGeneralPurposeApproximatePrograms
NeuralProcessingofGeneralPurposeApproximateProgramsNeuralProcessingofGeneralPurposeApproximatePrograms
NeuralProcessingofGeneralPurposeApproximatePrograms
 
Towards neuralprocessingofgeneralpurposeapproximateprograms
Towards neuralprocessingofgeneralpurposeapproximateprogramsTowards neuralprocessingofgeneralpurposeapproximateprograms
Towards neuralprocessingofgeneralpurposeapproximateprograms
 
Deep Learning Tutorial | Deep Learning Tutorial for Beginners | Neural Networ...
Deep Learning Tutorial | Deep Learning Tutorial for Beginners | Neural Networ...Deep Learning Tutorial | Deep Learning Tutorial for Beginners | Neural Networ...
Deep Learning Tutorial | Deep Learning Tutorial for Beginners | Neural Networ...
 
Language translation with Deep Learning (RNN) with TensorFlow
Language translation with Deep Learning (RNN) with TensorFlowLanguage translation with Deep Learning (RNN) with TensorFlow
Language translation with Deep Learning (RNN) with TensorFlow
 
Neural Networks with Google TensorFlow
Neural Networks with Google TensorFlowNeural Networks with Google TensorFlow
Neural Networks with Google TensorFlow
 
Introduction to Neural Networks in Tensorflow
Introduction to Neural Networks in TensorflowIntroduction to Neural Networks in Tensorflow
Introduction to Neural Networks in Tensorflow
 
Feed forward neural network for sine
Feed forward neural network for sineFeed forward neural network for sine
Feed forward neural network for sine
 
Introduction to deep learning
Introduction to deep learningIntroduction to deep learning
Introduction to deep learning
 
Distributed deep learning_over_spark_20_nov_2014_ver_2.8
Distributed deep learning_over_spark_20_nov_2014_ver_2.8Distributed deep learning_over_spark_20_nov_2014_ver_2.8
Distributed deep learning_over_spark_20_nov_2014_ver_2.8
 

Mehr von Simplilearn

ChatGPT in Cybersecurity
ChatGPT in CybersecurityChatGPT in Cybersecurity
ChatGPT in CybersecuritySimplilearn
 
Whatis SQL Injection.pptx
Whatis SQL Injection.pptxWhatis SQL Injection.pptx
Whatis SQL Injection.pptxSimplilearn
 
Top 5 High Paying Cloud Computing Jobs in 2023
 Top 5 High Paying Cloud Computing Jobs in 2023  Top 5 High Paying Cloud Computing Jobs in 2023
Top 5 High Paying Cloud Computing Jobs in 2023 Simplilearn
 
Types Of Cloud Jobs In 2024
Types Of Cloud Jobs In 2024Types Of Cloud Jobs In 2024
Types Of Cloud Jobs In 2024Simplilearn
 
Top 12 AI Technologies To Learn 2024 | Top AI Technologies in 2024 | AI Trend...
Top 12 AI Technologies To Learn 2024 | Top AI Technologies in 2024 | AI Trend...Top 12 AI Technologies To Learn 2024 | Top AI Technologies in 2024 | AI Trend...
Top 12 AI Technologies To Learn 2024 | Top AI Technologies in 2024 | AI Trend...Simplilearn
 
What is LSTM ?| Long Short Term Memory Explained with Example | Deep Learning...
What is LSTM ?| Long Short Term Memory Explained with Example | Deep Learning...What is LSTM ?| Long Short Term Memory Explained with Example | Deep Learning...
What is LSTM ?| Long Short Term Memory Explained with Example | Deep Learning...Simplilearn
 
Top 10 Chat GPT Use Cases | ChatGPT Applications | ChatGPT Tutorial For Begin...
Top 10 Chat GPT Use Cases | ChatGPT Applications | ChatGPT Tutorial For Begin...Top 10 Chat GPT Use Cases | ChatGPT Applications | ChatGPT Tutorial For Begin...
Top 10 Chat GPT Use Cases | ChatGPT Applications | ChatGPT Tutorial For Begin...Simplilearn
 
React JS Vs Next JS - What's The Difference | Next JS Tutorial For Beginners ...
React JS Vs Next JS - What's The Difference | Next JS Tutorial For Beginners ...React JS Vs Next JS - What's The Difference | Next JS Tutorial For Beginners ...
React JS Vs Next JS - What's The Difference | Next JS Tutorial For Beginners ...Simplilearn
 
Backpropagation in Neural Networks | Back Propagation Algorithm with Examples...
Backpropagation in Neural Networks | Back Propagation Algorithm with Examples...Backpropagation in Neural Networks | Back Propagation Algorithm with Examples...
Backpropagation in Neural Networks | Back Propagation Algorithm with Examples...Simplilearn
 
How to Become a Business Analyst ?| Roadmap to Become Business Analyst | Simp...
How to Become a Business Analyst ?| Roadmap to Become Business Analyst | Simp...How to Become a Business Analyst ?| Roadmap to Become Business Analyst | Simp...
How to Become a Business Analyst ?| Roadmap to Become Business Analyst | Simp...Simplilearn
 
Career Opportunities In Artificial Intelligence 2023 | AI Job Opportunities |...
Career Opportunities In Artificial Intelligence 2023 | AI Job Opportunities |...Career Opportunities In Artificial Intelligence 2023 | AI Job Opportunities |...
Career Opportunities In Artificial Intelligence 2023 | AI Job Opportunities |...Simplilearn
 
Programming for Beginners | How to Start Coding in 2023? | Introduction to Pr...
Programming for Beginners | How to Start Coding in 2023? | Introduction to Pr...Programming for Beginners | How to Start Coding in 2023? | Introduction to Pr...
Programming for Beginners | How to Start Coding in 2023? | Introduction to Pr...Simplilearn
 
Best IDE for Programming in 2023 | Top 8 Programming IDE You Should Know | Si...
Best IDE for Programming in 2023 | Top 8 Programming IDE You Should Know | Si...Best IDE for Programming in 2023 | Top 8 Programming IDE You Should Know | Si...
Best IDE for Programming in 2023 | Top 8 Programming IDE You Should Know | Si...Simplilearn
 
React 18 Overview | React 18 New Features and Changes | React 18 Tutorial 202...
React 18 Overview | React 18 New Features and Changes | React 18 Tutorial 202...React 18 Overview | React 18 New Features and Changes | React 18 Tutorial 202...
React 18 Overview | React 18 New Features and Changes | React 18 Tutorial 202...Simplilearn
 
What Is Next JS ? | Introduction to Next JS | Basics of Next JS | Next JS Tut...
What Is Next JS ? | Introduction to Next JS | Basics of Next JS | Next JS Tut...What Is Next JS ? | Introduction to Next JS | Basics of Next JS | Next JS Tut...
What Is Next JS ? | Introduction to Next JS | Basics of Next JS | Next JS Tut...Simplilearn
 
How To Become an SEO Expert In 2023 | SEO Expert Tutorial | SEO For Beginners...
How To Become an SEO Expert In 2023 | SEO Expert Tutorial | SEO For Beginners...How To Become an SEO Expert In 2023 | SEO Expert Tutorial | SEO For Beginners...
How To Become an SEO Expert In 2023 | SEO Expert Tutorial | SEO For Beginners...Simplilearn
 
WordPress Tutorial for Beginners 2023 | What Is WordPress and How Does It Wor...
WordPress Tutorial for Beginners 2023 | What Is WordPress and How Does It Wor...WordPress Tutorial for Beginners 2023 | What Is WordPress and How Does It Wor...
WordPress Tutorial for Beginners 2023 | What Is WordPress and How Does It Wor...Simplilearn
 
Blogging For Beginners 2023 | How To Create A Blog | Blogging Tutorial | Simp...
Blogging For Beginners 2023 | How To Create A Blog | Blogging Tutorial | Simp...Blogging For Beginners 2023 | How To Create A Blog | Blogging Tutorial | Simp...
Blogging For Beginners 2023 | How To Create A Blog | Blogging Tutorial | Simp...Simplilearn
 
How To Start A Blog In 2023 | Pros And Cons Of Blogging | Blogging Tutorial |...
How To Start A Blog In 2023 | Pros And Cons Of Blogging | Blogging Tutorial |...How To Start A Blog In 2023 | Pros And Cons Of Blogging | Blogging Tutorial |...
How To Start A Blog In 2023 | Pros And Cons Of Blogging | Blogging Tutorial |...Simplilearn
 
How to Increase Website Traffic ? | 10 Ways To Increase Website Traffic in 20...
How to Increase Website Traffic ? | 10 Ways To Increase Website Traffic in 20...How to Increase Website Traffic ? | 10 Ways To Increase Website Traffic in 20...
How to Increase Website Traffic ? | 10 Ways To Increase Website Traffic in 20...Simplilearn
 

Mehr von Simplilearn (20)

ChatGPT in Cybersecurity
ChatGPT in CybersecurityChatGPT in Cybersecurity
ChatGPT in Cybersecurity
 
Whatis SQL Injection.pptx
Whatis SQL Injection.pptxWhatis SQL Injection.pptx
Whatis SQL Injection.pptx
 
Top 5 High Paying Cloud Computing Jobs in 2023
 Top 5 High Paying Cloud Computing Jobs in 2023  Top 5 High Paying Cloud Computing Jobs in 2023
Top 5 High Paying Cloud Computing Jobs in 2023
 
Types Of Cloud Jobs In 2024
Types Of Cloud Jobs In 2024Types Of Cloud Jobs In 2024
Types Of Cloud Jobs In 2024
 
Top 12 AI Technologies To Learn 2024 | Top AI Technologies in 2024 | AI Trend...
Top 12 AI Technologies To Learn 2024 | Top AI Technologies in 2024 | AI Trend...Top 12 AI Technologies To Learn 2024 | Top AI Technologies in 2024 | AI Trend...
Top 12 AI Technologies To Learn 2024 | Top AI Technologies in 2024 | AI Trend...
 
What is LSTM ?| Long Short Term Memory Explained with Example | Deep Learning...
What is LSTM ?| Long Short Term Memory Explained with Example | Deep Learning...What is LSTM ?| Long Short Term Memory Explained with Example | Deep Learning...
What is LSTM ?| Long Short Term Memory Explained with Example | Deep Learning...
 
Top 10 Chat GPT Use Cases | ChatGPT Applications | ChatGPT Tutorial For Begin...
Top 10 Chat GPT Use Cases | ChatGPT Applications | ChatGPT Tutorial For Begin...Top 10 Chat GPT Use Cases | ChatGPT Applications | ChatGPT Tutorial For Begin...
Top 10 Chat GPT Use Cases | ChatGPT Applications | ChatGPT Tutorial For Begin...
 
React JS Vs Next JS - What's The Difference | Next JS Tutorial For Beginners ...
React JS Vs Next JS - What's The Difference | Next JS Tutorial For Beginners ...React JS Vs Next JS - What's The Difference | Next JS Tutorial For Beginners ...
React JS Vs Next JS - What's The Difference | Next JS Tutorial For Beginners ...
 
Backpropagation in Neural Networks | Back Propagation Algorithm with Examples...
Backpropagation in Neural Networks | Back Propagation Algorithm with Examples...Backpropagation in Neural Networks | Back Propagation Algorithm with Examples...
Backpropagation in Neural Networks | Back Propagation Algorithm with Examples...
 
How to Become a Business Analyst ?| Roadmap to Become Business Analyst | Simp...
How to Become a Business Analyst ?| Roadmap to Become Business Analyst | Simp...How to Become a Business Analyst ?| Roadmap to Become Business Analyst | Simp...
How to Become a Business Analyst ?| Roadmap to Become Business Analyst | Simp...
 
Career Opportunities In Artificial Intelligence 2023 | AI Job Opportunities |...
Career Opportunities In Artificial Intelligence 2023 | AI Job Opportunities |...Career Opportunities In Artificial Intelligence 2023 | AI Job Opportunities |...
Career Opportunities In Artificial Intelligence 2023 | AI Job Opportunities |...
 
Programming for Beginners | How to Start Coding in 2023? | Introduction to Pr...
Programming for Beginners | How to Start Coding in 2023? | Introduction to Pr...Programming for Beginners | How to Start Coding in 2023? | Introduction to Pr...
Programming for Beginners | How to Start Coding in 2023? | Introduction to Pr...
 
Best IDE for Programming in 2023 | Top 8 Programming IDE You Should Know | Si...
Best IDE for Programming in 2023 | Top 8 Programming IDE You Should Know | Si...Best IDE for Programming in 2023 | Top 8 Programming IDE You Should Know | Si...
Best IDE for Programming in 2023 | Top 8 Programming IDE You Should Know | Si...
 
React 18 Overview | React 18 New Features and Changes | React 18 Tutorial 202...
React 18 Overview | React 18 New Features and Changes | React 18 Tutorial 202...React 18 Overview | React 18 New Features and Changes | React 18 Tutorial 202...
React 18 Overview | React 18 New Features and Changes | React 18 Tutorial 202...
 
What Is Next JS ? | Introduction to Next JS | Basics of Next JS | Next JS Tut...
What Is Next JS ? | Introduction to Next JS | Basics of Next JS | Next JS Tut...What Is Next JS ? | Introduction to Next JS | Basics of Next JS | Next JS Tut...
What Is Next JS ? | Introduction to Next JS | Basics of Next JS | Next JS Tut...
 
How To Become an SEO Expert In 2023 | SEO Expert Tutorial | SEO For Beginners...
How To Become an SEO Expert In 2023 | SEO Expert Tutorial | SEO For Beginners...How To Become an SEO Expert In 2023 | SEO Expert Tutorial | SEO For Beginners...
How To Become an SEO Expert In 2023 | SEO Expert Tutorial | SEO For Beginners...
 
WordPress Tutorial for Beginners 2023 | What Is WordPress and How Does It Wor...
WordPress Tutorial for Beginners 2023 | What Is WordPress and How Does It Wor...WordPress Tutorial for Beginners 2023 | What Is WordPress and How Does It Wor...
WordPress Tutorial for Beginners 2023 | What Is WordPress and How Does It Wor...
 
Blogging For Beginners 2023 | How To Create A Blog | Blogging Tutorial | Simp...
Blogging For Beginners 2023 | How To Create A Blog | Blogging Tutorial | Simp...Blogging For Beginners 2023 | How To Create A Blog | Blogging Tutorial | Simp...
Blogging For Beginners 2023 | How To Create A Blog | Blogging Tutorial | Simp...
 
How To Start A Blog In 2023 | Pros And Cons Of Blogging | Blogging Tutorial |...
How To Start A Blog In 2023 | Pros And Cons Of Blogging | Blogging Tutorial |...How To Start A Blog In 2023 | Pros And Cons Of Blogging | Blogging Tutorial |...
How To Start A Blog In 2023 | Pros And Cons Of Blogging | Blogging Tutorial |...
 
How to Increase Website Traffic ? | 10 Ways To Increase Website Traffic in 20...
How to Increase Website Traffic ? | 10 Ways To Increase Website Traffic in 20...How to Increase Website Traffic ? | 10 Ways To Increase Website Traffic in 20...
How to Increase Website Traffic ? | 10 Ways To Increase Website Traffic in 20...
 

Kürzlich hochgeladen

Employablity presentation and Future Career Plan.pptx
Employablity presentation and Future Career Plan.pptxEmployablity presentation and Future Career Plan.pptx
Employablity presentation and Future Career Plan.pptxryandux83rd
 
Sulphonamides, mechanisms and their uses
Sulphonamides, mechanisms and their usesSulphonamides, mechanisms and their uses
Sulphonamides, mechanisms and their usesVijayaLaxmi84
 
4.11.24 Poverty and Inequality in America.pptx
4.11.24 Poverty and Inequality in America.pptx4.11.24 Poverty and Inequality in America.pptx
4.11.24 Poverty and Inequality in America.pptxmary850239
 
CLASSIFICATION OF ANTI - CANCER DRUGS.pptx
CLASSIFICATION OF ANTI - CANCER DRUGS.pptxCLASSIFICATION OF ANTI - CANCER DRUGS.pptx
CLASSIFICATION OF ANTI - CANCER DRUGS.pptxAnupam32727
 
DBMSArchitecture_QueryProcessingandOptimization.pdf
DBMSArchitecture_QueryProcessingandOptimization.pdfDBMSArchitecture_QueryProcessingandOptimization.pdf
DBMSArchitecture_QueryProcessingandOptimization.pdfChristalin Nelson
 
Narcotic and Non Narcotic Analgesic..pdf
Narcotic and Non Narcotic Analgesic..pdfNarcotic and Non Narcotic Analgesic..pdf
Narcotic and Non Narcotic Analgesic..pdfPrerana Jadhav
 
BÀI TẬP BỔ TRỢ TIẾNG ANH 8 - I-LEARN SMART WORLD - CẢ NĂM - CÓ FILE NGHE (BẢN...
BÀI TẬP BỔ TRỢ TIẾNG ANH 8 - I-LEARN SMART WORLD - CẢ NĂM - CÓ FILE NGHE (BẢN...BÀI TẬP BỔ TRỢ TIẾNG ANH 8 - I-LEARN SMART WORLD - CẢ NĂM - CÓ FILE NGHE (BẢN...
BÀI TẬP BỔ TRỢ TIẾNG ANH 8 - I-LEARN SMART WORLD - CẢ NĂM - CÓ FILE NGHE (BẢN...Nguyen Thanh Tu Collection
 
ClimART Action | eTwinning Project
ClimART Action    |    eTwinning ProjectClimART Action    |    eTwinning Project
ClimART Action | eTwinning Projectjordimapav
 
ICS 2208 Lecture Slide Notes for Topic 6
ICS 2208 Lecture Slide Notes for Topic 6ICS 2208 Lecture Slide Notes for Topic 6
ICS 2208 Lecture Slide Notes for Topic 6Vanessa Camilleri
 
How to Manage Buy 3 Get 1 Free in Odoo 17
How to Manage Buy 3 Get 1 Free in Odoo 17How to Manage Buy 3 Get 1 Free in Odoo 17
How to Manage Buy 3 Get 1 Free in Odoo 17Celine George
 
Team Lead Succeed – Helping you and your team achieve high-performance teamwo...
Team Lead Succeed – Helping you and your team achieve high-performance teamwo...Team Lead Succeed – Helping you and your team achieve high-performance teamwo...
Team Lead Succeed – Helping you and your team achieve high-performance teamwo...Association for Project Management
 
4.9.24 Social Capital and Social Exclusion.pptx
4.9.24 Social Capital and Social Exclusion.pptx4.9.24 Social Capital and Social Exclusion.pptx
4.9.24 Social Capital and Social Exclusion.pptxmary850239
 
31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...
31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...
31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...Nguyen Thanh Tu Collection
 
An Overview of the Calendar App in Odoo 17 ERP
An Overview of the Calendar App in Odoo 17 ERPAn Overview of the Calendar App in Odoo 17 ERP
An Overview of the Calendar App in Odoo 17 ERPCeline George
 
Grade Three -ELLNA-REVIEWER-ENGLISH.pptx
Grade Three -ELLNA-REVIEWER-ENGLISH.pptxGrade Three -ELLNA-REVIEWER-ENGLISH.pptx
Grade Three -ELLNA-REVIEWER-ENGLISH.pptxkarenfajardo43
 

Kürzlich hochgeladen (20)

Employablity presentation and Future Career Plan.pptx
Employablity presentation and Future Career Plan.pptxEmployablity presentation and Future Career Plan.pptx
Employablity presentation and Future Career Plan.pptx
 
Sulphonamides, mechanisms and their uses
Sulphonamides, mechanisms and their usesSulphonamides, mechanisms and their uses
Sulphonamides, mechanisms and their uses
 
Chi-Square Test Non Parametric Test Categorical Variable
Chi-Square Test Non Parametric Test Categorical VariableChi-Square Test Non Parametric Test Categorical Variable
Chi-Square Test Non Parametric Test Categorical Variable
 
4.11.24 Poverty and Inequality in America.pptx
4.11.24 Poverty and Inequality in America.pptx4.11.24 Poverty and Inequality in America.pptx
4.11.24 Poverty and Inequality in America.pptx
 
CLASSIFICATION OF ANTI - CANCER DRUGS.pptx
CLASSIFICATION OF ANTI - CANCER DRUGS.pptxCLASSIFICATION OF ANTI - CANCER DRUGS.pptx
CLASSIFICATION OF ANTI - CANCER DRUGS.pptx
 
DBMSArchitecture_QueryProcessingandOptimization.pdf
DBMSArchitecture_QueryProcessingandOptimization.pdfDBMSArchitecture_QueryProcessingandOptimization.pdf
DBMSArchitecture_QueryProcessingandOptimization.pdf
 
Introduction to Research ,Need for research, Need for design of Experiments, ...
Introduction to Research ,Need for research, Need for design of Experiments, ...Introduction to Research ,Need for research, Need for design of Experiments, ...
Introduction to Research ,Need for research, Need for design of Experiments, ...
 
Narcotic and Non Narcotic Analgesic..pdf
Narcotic and Non Narcotic Analgesic..pdfNarcotic and Non Narcotic Analgesic..pdf
Narcotic and Non Narcotic Analgesic..pdf
 
BÀI TẬP BỔ TRỢ TIẾNG ANH 8 - I-LEARN SMART WORLD - CẢ NĂM - CÓ FILE NGHE (BẢN...
BÀI TẬP BỔ TRỢ TIẾNG ANH 8 - I-LEARN SMART WORLD - CẢ NĂM - CÓ FILE NGHE (BẢN...BÀI TẬP BỔ TRỢ TIẾNG ANH 8 - I-LEARN SMART WORLD - CẢ NĂM - CÓ FILE NGHE (BẢN...
BÀI TẬP BỔ TRỢ TIẾNG ANH 8 - I-LEARN SMART WORLD - CẢ NĂM - CÓ FILE NGHE (BẢN...
 
ClimART Action | eTwinning Project
ClimART Action    |    eTwinning ProjectClimART Action    |    eTwinning Project
ClimART Action | eTwinning Project
 
ICS 2208 Lecture Slide Notes for Topic 6
ICS 2208 Lecture Slide Notes for Topic 6ICS 2208 Lecture Slide Notes for Topic 6
ICS 2208 Lecture Slide Notes for Topic 6
 
How to Manage Buy 3 Get 1 Free in Odoo 17
How to Manage Buy 3 Get 1 Free in Odoo 17How to Manage Buy 3 Get 1 Free in Odoo 17
How to Manage Buy 3 Get 1 Free in Odoo 17
 
Team Lead Succeed – Helping you and your team achieve high-performance teamwo...
Team Lead Succeed – Helping you and your team achieve high-performance teamwo...Team Lead Succeed – Helping you and your team achieve high-performance teamwo...
Team Lead Succeed – Helping you and your team achieve high-performance teamwo...
 
CARNAVAL COM MAGIA E EUFORIA _
CARNAVAL COM MAGIA E EUFORIA            _CARNAVAL COM MAGIA E EUFORIA            _
CARNAVAL COM MAGIA E EUFORIA _
 
4.9.24 Social Capital and Social Exclusion.pptx
4.9.24 Social Capital and Social Exclusion.pptx4.9.24 Social Capital and Social Exclusion.pptx
4.9.24 Social Capital and Social Exclusion.pptx
 
prashanth updated resume 2024 for Teaching Profession
prashanth updated resume 2024 for Teaching Professionprashanth updated resume 2024 for Teaching Profession
prashanth updated resume 2024 for Teaching Profession
 
31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...
31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...
31 ĐỀ THI THỬ VÀO LỚP 10 - TIẾNG ANH - FORM MỚI 2025 - 40 CÂU HỎI - BÙI VĂN V...
 
Mattingly "AI & Prompt Design" - Introduction to Machine Learning"
Mattingly "AI & Prompt Design" - Introduction to Machine Learning"Mattingly "AI & Prompt Design" - Introduction to Machine Learning"
Mattingly "AI & Prompt Design" - Introduction to Machine Learning"
 
An Overview of the Calendar App in Odoo 17 ERP
An Overview of the Calendar App in Odoo 17 ERPAn Overview of the Calendar App in Odoo 17 ERP
An Overview of the Calendar App in Odoo 17 ERP
 
Grade Three -ELLNA-REVIEWER-ENGLISH.pptx
Grade Three -ELLNA-REVIEWER-ENGLISH.pptxGrade Three -ELLNA-REVIEWER-ENGLISH.pptx
Grade Three -ELLNA-REVIEWER-ENGLISH.pptx
 

TensorFlow Tutorial: Detecting Diabetic Retinopathy with Deep Learning

  • 2. Detecting Diabetic Retinopathy Diabetic Retinopathy is the fastest growing cause of blindness in the world. Deep Learning algorithms using TensorFlow are capable of interpreting signs of Diabetic Retinopathy in retinal photographs. 128,000 images of eye retina’s Fed to a Neural Network for training New image of eye retina Identifies Healthy and Diseased eye
  • 3. What’s in it for you? What is Deep Learning? What is TensorFlow? Top Deep Learning Libraries Why use TensorFlow? Building a Computational Graph Programming Elements in TensorFlow Introducing Recurrent Neural Networks Use case implementation of RNN using TensorFlow
  • 4. What is Deep learning? Subset of Machine Learning and works on the structure and functions of a human brain Learns from unstructured data and performs complex computations Uses a Neural Net with multiple layers to train an algorithm Deep Learning Input Layer Hidden Layers Output Layer
  • 5. Popular libraries for Deep Learning TensorFlow Deep Learning 4 Java TheanoTorch Keras Deep Learning Libraries
  • 6. Why use TensorFlow? Provides both C++ and Python API’s that makes it easier to work on TensorFlow reduces the chances of errors by 55% to 85% Teams can run TensorFlow on large scale server farms embedded on devices, CPUs, GPUs, TPUs, etc TensorFlow allows you to train models faster as it has faster compilation time
  • 7. What is TensorFlow? TensorFlow Open source library developed by Google brain team in 2012 Developed initially to run large sets of numerical computations Uses Data Flow graphs to process data and perform computations Takes data in the form of arrays of potentially higher dimensions and ranks
  • 8. What is a Tensor? Tensor is a mathematical object represented as arrays of higher dimensions. These arrays of data with different dimensions and ranks that are fed as input to the neural network are called Tensors. Arrays of data with different dimensions is fed as input to the network Input Layer Hidden Layers Output Layer a m k q d Tensor of Dimensions[5]
  • 9. What is a Tensor? Tensor is a mathematical object represented as arrays of higher dimensions. These arrays of data with different dimensions and ranks that are fed as input to the neural network are called Tensors. Input Layer Hidden Layers Output Layer 1 6 8 3 9 3 3 4 1 7 4 9 1 5 3 7 1 6 9 2 Tensor of Dimensions[5,4]
  • 10. What is a Tensor? Tensor is a mathematical object represented as arrays of higher dimensions. These arrays of data with different dimensions and ranks that are fed as input to the neural network are called Tensors. Input Layer Hidden Layers Output Layer Tensor of Dimensions[3,3,3]
  • 11. Tensor Rank The number of dimensions used to represent the data is known as its Rank. S = 10 Tensor of Rank 0 or a Scalar. Tensor of Rank 1 or a Vector.V = [10., 11., 12.] M = [[1, 2, 3],[4, 5, 6]] Tensor of Rank 2 or a Matrix. T = [[[1],[2],[3]],[[4],[5],[6]],[[7],[8],[9]]] Tensor of Rank 3 or a Tensor
  • 12. Tensor Data type Data Type Python Type Description DF_FLOAT tf.float32 32 bits floating point DF_DOUBLE tf.float64 64 bits floating point DT_INT8 tf.int8 8 bits signed integer DT_INT16 tf.int16 16 bits signed integer DT_INT32 tf.int32 32 bits signed integer DT_INT64 tf.int64 64 bits signed integer DT_UINT8 tf.unit8 8 bits unsigned integer DT_STRING tf.string Variable length byte arrays DT_BOOL tf.bool Boolean In addition to rank and shape, Tensors have a data type. Following is the list of the data type:
  • 13. Building a Computation Graph Everything in TensorFlow is based on creating a computational graph. It has a network of nodes, with each node performing an operation like addition, multiplication or evaluating some multivariate equation. input input add mul mul a b c d e 5 3 4 2 7 1 2 84 In TensorFlow, a computation is described using a Data Flow graph Nodes represent mathematical operation and edge represents tensors
  • 14. Building a Computation Graph Lets compute a function F of 3 variables a, b, c : F(a,b,c) = 5(a+bc) p = bc q = a + p F = 5*q a=4 b=3 c=5 p = bc q = a + p F = 5*q 15 19 95
  • 15. Programming elements in TensorFlow Constants Constants are parameters whose value does not change. To define a constant, we use tf.constant() command. Example: a = tf.constant(2.0, tf.float32) b = tf.constant(3.0) Print(a, b)
  • 16. Programming elements in TensorFlow Variables Variables allow us to add new trainable parameters to graph. To define a variable, we use tf.Variable() command and initialize them before running the graph in a session. Example: W = tf.Variable([.3],dtype=tf.float32) b = tf.Variable([-.3],dtype=tf.float32) x = tf.placeholder(tf.float32) linear_model = W*x+b
  • 17. Programming elements in TensorFlow Placeholder Placeholders allow us to feed data to a tensorflow model from outside a model. It permits a value to be assigned later. To define a placeholder, we use tf.placeholder() command. Example: a = tf.placeholder(tf.float32) b = a*2 with tf.Session() as sess: result = sess.run(b,feed_dict={a:3.0}) print result feed_dict specifies tensors that provide concrete values to the placeholders
  • 18. Programming elements in TensorFlow Session A session is run to evaluate the nodes. This is called as the TensorFlow runtime. Example: a = tf.constant(2.0) b = tf.constant(4.0) c = a+b # Launch Session sess = tf.Session() # Evaluate the tensor c print(sess.run(c)) Running a Computation Graph a b c 4.0 2.0 Addition 6.0
  • 19. Linear Regression using TensorFlow Let’s work on a regression example to solve a simple equation [y=m*x+b]. We will calculate the slope and the intercept of the line that best fits our data. 1. Setting up some artificial data for regression
  • 20. Linear Regression using TensorFlow 2. Plot the Data
  • 21. Linear Regression using TensorFlow 3. Assign the variables 4. Apply the Cost Function
  • 22. Linear Regression using TensorFlow 5. Apply the Optimization function 6. Initialize the variables 7. Create the session and run the computation
  • 23. Linear Regression using TensorFlow 8. Print the slope and intercept
  • 24. Linear Regression using TensorFlow 9. Evaluate the results
  • 25. Introducing Recurrent Neural Networks In a Feed-Forward Network like CNN/ANN, information flows only in forward direction, from the input nodes, through the hidden layers (if any) and to the output nodes. There are no cycles or loops in the network. Input Layer Hidden Layers Output Layer Feed-Forward Network Yellow Patch Petals length and width Sepals length and width Output Iris Not Iris
  • 26. Introducing Recurrent Neural Networks Recurrent Neural Networks are used to handle sequential time series data because it is able to memorize the inputs. At a particular time step, RNN accepts previous output result along with the current input to generate the output at that time step. Recurrent Neural Network h x y w Rotate the neural network vertically and compress the layers
  • 27. How does a Recurrent Neural Network look like? h x y w Unfold ht-1 xt-1 yt-1 ht xt yt ht+1 xt+1 yt+1 w ww w Input at time t Output at time t Hidden state at time t ht = f (ht-1 ,xtw ) ht = new state fw = function with parameter w ht-1 = old state xt = input vector at time step t
  • 28. Types of RNN While Feed-Forward Networks map one input to one output, Recurrent Neural Networks can map one to many, many to one and many to many. One to One One to Many Many to One Many to Many
  • 29. Types of RNN While Feed-Forward Networks map one input to one output, Recurrent Neural Networks can map one to many, many to one and many to many. One to One One to Many Many to One Many to Many • Known as the Vanilla Neural Network. Used for regular machine learning problems 1 output 1 input
  • 30. Types of RNN While Feed-Forward Networks map one input to one output, Recurrent Neural Networks can map one to many, many to one and many to many. One to One One to Many Many to One Many to Many • Used for image captioning. Given an image, it generate a sequence of words, captioning the image multiple outputs 1 input
  • 31. Types of RNN While Feed-Forward Networks map one input to one output, Recurrent Neural Networks can map one to many, many to one and many to many. One to One One to Many Many to One Many to Many • Used to carry out Sentiment Analysis. Given a set of words, it tells you the sentiment present 1 output multiple inputs
  • 32. Types of RNN While Feed-Forward Networks map one input to one output, Recurrent Neural Networks can map one to many, many to one and many to many. One to One One to Many Many to One Many to Many • Used in Machine Translation. Given a sets of words in one language, it translates it to another multiple inputs multiple outputs
  • 33. Use case implementation of RNN Lets look at a use case of predicting the monthly milk production per cow in pounds using a time series data Based on Data between Jan 1962 to Dec 1975 How much milk production can we expect in a month?
  • 34. Use case implementation of RNN 1. Import the necessary libraries 2. Read the dataset and print the head of it
  • 35. Use case implementation of RNN 3. Convert the index to time series 4. Plot the time series data
  • 36. Use case implementation of RNN 5. Perform the train test split on the data
  • 37. Use case implementation of RNN 6. Scale the data using standard Machine Learning process 7. Applying the batch function
  • 38. Use case implementation of RNN 8. Setting up the RNN model
  • 39. Use case implementation of RNN 9. Create Placeholders for X and y 10. Applying the loss function and optimizer 11. Initialize the Global variables 12. Create an instance of tf.train.Saver()
  • 40. Use case implementation of RNN 13. Create the session and run it
  • 41. Use case implementation of RNN 14. Display the Test Data
  • 42. Use case implementation of RNN 15. Create a seed training_instance to predict the last 12 months milk production from the training data
  • 43. Use case implementation of RNN 16. Displaying the results of the prediction
  • 44. Use case implementation of RNN 17. Reshape the results 18. Create a new column on the test data called Generated
  • 45. Use case implementation of RNN 19. View the test_set dataframe
  • 46. Use case implementation of RNN 20. Plot the predicted result and the actual result

Hinweis der Redaktion

  1. Style - 01
  2. Style - 01