SlideShare a Scribd company logo
1 of 6
Download to read offline
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 09 Issue: 11 | Nov 2022 www.irjet.net p-ISSN: 2395-0072
© 2022, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 316
Unraveling Information about Deep Learning
Simardeep Singh Mehta
Amity University Noida, Amity Road, Sector 125,Noida, Uttar Pradesh 201301
---------------------------------------------------------------------***---------------------------------------------------------------------
Abstract - A new field of machine learning (ML) study is deep learning. There are numerous concealedartificialneuralnetwork
layers in it. The deep learning methodology uses high level model abstractions and transformations in massive databases. Deep
learning architectures have recently made major strides in a variety of domains, and these developments have already had a big
impact on artificial intelligence. Additionally, the advantages of the layer-based hierarchy and nonlinear operations of deep
learning methodology are discussed and contrasted with those of more traditional techniques in widely used applications. It also
has a significant impact on face recognition methods, as demonstrated by Facebook'shighlyeffectiveDeep Facetechnology, which
enables users to tag photos.
1. INTRODUCTION
Artificial neural systems are the foundation of deep learning, which is a branch of AI that mimics the human brain in a similar
way to how neural systems function. We don't have to explicitly programme everythingindeeplearning.Deeplearningisnota
brand-new concept. At this point, it has been around for two or three years. Because we didn't have as much planning power
and information in the past, it's on hype these days. Deep learning and AI entered the scene as the preparing power increased
tremendously over the last 20 years.
1.1 A formal defining of deep learning is-
Deep learning is a particular kind of machine learning that achieves great power and flexibility by learning to represent the
world as a nested hierarchy of concepts, with each concept defined in relation to simpler concepts, and more abstract
representations computed in terms of less abstract ones.
In human brain approximately 100 billion neurons all together this is a picture of an individual neuron, and each neuron is
connected through thousands of their neighbors. The question here is how we recreate these neurons in a computer. So, we
create an artificial structure called an artificial neural net where we have nodes or neurons. We have some neurons for input
value and some for-output value and in between, there may be lots of neurons interconnected in the hidden layer. [1]
AI empowered computers benefited from genuine crude informationormodels,andit attempts toextricatedesigns fromitand
settle on better choices without anyone else. A portion of the AI calculations are strategic relapse, SVM and so forth.
The presentation of these AI calculations relies vigorously upon the portrayal oftheinformationthataregiven.Eachsnippetof
data remembered for the portrayal is known as highlights and these calculations figures out how to utilize these highlights to
extricate designs or to get information.
Nevertheless, sometimes it might be challenging to discern which details should be deleted. For instance, if we were trying to
identify cars from a photograph, we may enjoy the opportunity to use the proximity of the wheel asa cue.However,intermsof
pixel values, it is challenging to depict what a wheel looks like. Using AI to extract value from those traits (representation) but
not the highlights themselves is one way to solve this problem. This approach is called portrayal learning. Once more, if the
calculation learns without the assistance of anyone else and with very little human
2. HISTORY
Long time back in 1943, deep learning was introduced by Warren McCulloch and Walter Pitts, when they created a computer
based on neural networks in the brain Warren McColluchandWalterPittsmadea combinationof algorithmsandmathematical
evolutions which is known as threshold magic in order to replicate the thought process. And thus, after that deep learning has
evolved a lot and there have been two major breakthrough moments. [6] One of these was in 1960 by Henry J Kelly which was
the development of basics of continuous beam propagation model Later on in 1962 Stuart Drefyus found a simple version
based on the chain rule One of the earliest roles to develop deep learning algorithms was in 1965 where two people Alexey
Grigoryevich IvakhnenkoandValentinGrigor’evichLapa usedmodelsofpolynomial functionswhichwereanalyzedstatistically
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 09 Issue: 11 | Nov 2022 www.irjet.net p-ISSN: 2395-0072
© 2022, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 317
There were various hurdles too in the development of it which is one of the most important and interesting topics in today’s
world. A major setback was when in 1970 due to lack of funding the research aboutartificial intelligenceanddeeplearninghad
to restricted. But even after such impossible conditions certain individuals researched aboutitevenafterlack offinancial help
The term convolutional neural networks which we hear the most in today’s time whenever we talk about deep learning was
used the first time by Kunihiko Fukushima. [6] He himself designed the neural networks usingconvolutional layers Hecreated
a multilayer and hierarchical design in1979 which was termedasneocognitron.Ithelpedthecomputertolearnvisual patterns.
The networks resembled modern versions and were trained to activate multiple recurring layers.
Later then the world was introduced with the FORTAN CODE for Back Propagation. This was developed in the 1970’s and it
used numerous errors to train the deep learning models.
This became popular later on when a thesis written by Seppo Linnainmaa including The FORTAN CODE became available and
known. [5] Even though the fact that it was developed in 1970 it wasn’t under action in neural networks until the year 1985.
Yann LeCunn was the first one to explain the and provide a practical demonstration in 1989.Something thathedidwasthathe
combined convolutional networks with back propagation in order to scan handwritten digits
As the next decade kicked in artificial intelligence and deep learning did not make a lot of progress. in 1995 Vladimir Vapnik
and Dana Cortes developed the support vector machine which is a system for mapping and recognizing similar data. Long
short-term memory or LSTM was developed in 1997 by Juergen Schmidhuber and Sepp Hochreiter for recurrent neural
networks.
Chart -1: History
Going into the next century The Vanishing Gradient downside came into the year
2000 once “features” (lessons) fashioned in lower layers weren't being learned by the higher layers since no learning signal
reached these layers were discovered. This wasn'tan elementarydownsideforall neural networkshoweveritwasrestrictedto
solely gradient-based learning ways.
In 2001, a quest report compiled by the META cluster (now known as Gartner) came up with the challenges andopportunities
of the three-dimensional knowledge growth. This report marked the onslaught of massive knowledge and represented the
increasing volume and speed of information as increasing the vary of information sources and kinds.
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 09 Issue: 11 | Nov 2022 www.irjet.net p-ISSN: 2395-0072
© 2022, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 318
3. NEED OF DEEP LEARNING
Now the question that would pop in in everyone’s mind is that why it matters and why dowe needdeeplearning.injusta word,
deep learning can be defined using accuracy and precise work Deep learning has achieved higher accuracy in recognition
department than anyone ever before this has numerous benefits,oneofwhichismeetingcustomerexpectations andimportant
for the operation of self-learning devices such as driverless cars
Recent research shows and scientists believe that there are certain tasks at which deep learning is even better than humans
mainly being image recognition
Deep learning was firstly introduced in 1980s properly, since then it has been evolving and there are two main reasons for its
existence-
1. One of the major needs of deep learning is labelled data. For example, millions of images and hours of video are required
for development of driverless cars
2. Deep learning requires substantial computing power. High-performance GPUs have a parallel architecturethatisefficient
for deep learning. When combined with cloud computing, this enables development of teams to reduce training timefora
deep learning network from weeks to hours or less.
4. WORKING
Well what do you do when you get to know about a problem the first thing that you do is that you identify it and then find a
solution for the problem, the feasibility of the Deep Learning should also be checked. Second, we need to identify the relevant
data which corresponds to the actual problem and should be prepared accordingly. Third, picking the appropriate deep
learning algorithm. Fourth, Algorithm should be used while training the dataset. Fifth, Final testing should be done on the
dataset.
Fig -1: Timeline
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 09 Issue: 11 | Nov 2022 www.irjet.net p-ISSN: 2395-0072
© 2022, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 319
Fig -1: Flow Graph
Most deep learning methods use neural network architectures,whichiswhydeeplearningmodelsareoftenmentionedasdeep
neural networks.
The term “deep” usually refers to the number of hidden layers within the neural network. [1] Generally, neural networks just
contain 2-3 hidden layers, while deep networks can have as many as 150.
Deep learning models are trained by using large sets of labelled data and neural network architectures that learn features
automatically from the data without the need for manual feature extraction.
Fig -1: Model
One of the foremost popular sorts of deep neural networks is understood as convolutional neural networks(CNN orConvNet).
A CNN convolves learned features with input file, and uses 2D convolutional layers, making this architecture compatible to
processing 2D data, like images.
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 09 Issue: 11 | Nov 2022 www.irjet.net p-ISSN: 2395-0072
© 2022, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 320
CNNs eliminate the necessity for manual feature extraction, so you are doing not got to identify features wont to classify
images.[1] The CNN works by extractingfeaturesdirectlyfromimages.Therelevantfeaturesaren'tpre-trained;they'relearned
while the network trains on a set of images. This automated feature extraction makes deeplearningmodelshighlyaccuratefor
computer vision tasks like object classification.
Fig -1: CNN Working
CNNs learn to detect different features of a picture using tens or many hidden layers. Every hidden layer increases the
complexity of the learned image features. For example, the primary hidden layer could find out how to detect edges, and
therefore the last learns the way to detect more complex shapes specifically catered to the form of the object we are trying to
recognize.
5. FUTURE PROSPECTS
It is difficult to know about everything happening in the artificial intelligenceworld.Withsomanypapersbeing released,itcan
be difficult to talk about the reality which is the present existence and future prospects.
1. Architecture Search
Designing neural network architectures requires more art than science. Mostindividualsjustgraba well-likedspecificationoff
the shelf. Does anybody wonder how were these cutting-edge architectures discovered? The answer is simple- trial anderror
using powerful GPU computers.
The decision of when to use max-pooling, which convolution filter size to use, where to feature dropout layers is simply about
random guessing.
2. Compressing Neural Networks
Training deep learning networks may be a good way to urgeconversantinmemory.Atypical laptophas16GBofRAMmemory.
The latest iPhone has around 4 GB of RAM. The VGG16 image classification network, with around 144 million parameters, is
around 500 MB. Due to the big size of those networks it's very difficult to create mobile AI apps and apps that use multiple
networks. Having the networks loaded into RAM memory enables much faster computing time.
Research on compressingthesenetworkslikeDeepCompressionworksveryalmostlikeJPEGimagecompression, Quantization
and Huffman encoding. Deep Compression can reduce VGG-16 from 552 MB to 11.3 MB with no loss of accuracy.
3. GAN-based Data Augmentation
A major challenge while building deep learning models is the dataset. Deep learning models require a lot of data. GANs are a
promising generative modelling framework that can conclude new data points from a dataset. This can be used to create
humungous datasets from small ones.
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 09 Issue: 11 | Nov 2022 www.irjet.net p-ISSN: 2395-0072
© 2022, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 321
6. APPLICATIONS
1.Automatic Text Generation – Corpus of text is learned and from this model new text is generated, word-by-word
eventually this model can learn how to spell, form sentences, and use punctuations.
2.Healthcare – It helps in diagnosing many diseases and helps in the treatment process withthehelpofmedical imaging[2].
3.Automatic Machine Translation – Certain words, sentences, or phrases in one language is transformed into another
language (Deep Learning is achieving top results in the areas of text, images).
4.Image Recognition – Recognizing and identifying people and objects in images as well being able to understand content
and context. [4] This area is already being used in Tourism and Gaming industry just to name a few
5.Predicting Earthquakes – Teaches a computer to perform viscoelastic computations which are used in predicting
earthquakes. [6]
7. CONCLUSIONS
We are on the verge of creating or might have successfully created the most intriguing technology in the history of mankind.
Thus, Artificial Intelligence (Deep Learning) is the most interesting topic in the field of Science and Technology. According to
recent research there was news that certain robotswerespeakinganaltogetherdifferentlanguageandpossiblymalfunctioned,
however as soon as engineers monitored the robots they concluded that machines had developed a language of their ownand
were communicating effectively. Later they were shut down.
So there are hundreds of possibilities in the land of artificial intelligence and specially in deep learning. Deep Learning can
change our lives completely with the advancement in technology. Once we can calibrate our braintosucha level wherewecan
unlock more capabilities of our brain, it can be breakthrough research for the mankind.
A major revolution is undertaking, and we are a part of it. Therefore, we must help in whatever way we can and contribute
towards the technology. Deep Learning has a lot of potential even beyond our imagination. Huge technological giant Elon
Musk’s new company Neuralink is profoundly researching on deep learning and neural networks. Apple has also beendoinga
lot of research lately and has filed various patents related to artificial intelligence. Also, when such established companies
invest billions of dollars in the technology we can very easily estimate its potential and capabilities.
REFERENCES
1. Yann LeCun, Yoshua Bengio & Geoffrey Hinton, Deep learning
2. Jonghoon Kim, Prospects of deep learning for medical imaging
3. S. M. S. Islam, S. Rahman, M. M. Rahman, E. K. Dey and M. Shoyaib, Application of deep learning to computer vision: A
comprehensive study
4. Kaiming He, Deep Residual Learning for Image Recognition
5. Deng, L. (2014). A tutorial survey of architectures, algorithms, and applications for deep learning.

More Related Content

Similar to Unraveling Information about Deep Learning

The upsurge of deep learning for computer vision applications
The upsurge of deep learning for computer vision applicationsThe upsurge of deep learning for computer vision applications
The upsurge of deep learning for computer vision applicationsIJECEIAES
 
IRJET - Deep Learning Applications and Frameworks – A Review
IRJET -  	  Deep Learning Applications and Frameworks – A ReviewIRJET -  	  Deep Learning Applications and Frameworks – A Review
IRJET - Deep Learning Applications and Frameworks – A ReviewIRJET Journal
 
IRJET- Deep Learning Techniques for Object Detection
IRJET-  	  Deep Learning Techniques for Object DetectionIRJET-  	  Deep Learning Techniques for Object Detection
IRJET- Deep Learning Techniques for Object DetectionIRJET Journal
 
Introduction_to_DEEP_LEARNING.ppt
Introduction_to_DEEP_LEARNING.pptIntroduction_to_DEEP_LEARNING.ppt
Introduction_to_DEEP_LEARNING.pptSwatiMahale4
 
Intelligent System For Face Mask Detection
Intelligent System For Face Mask DetectionIntelligent System For Face Mask Detection
Intelligent System For Face Mask DetectionIRJET Journal
 
An Overview On Neural Network And Its Application
An Overview On Neural Network And Its ApplicationAn Overview On Neural Network And Its Application
An Overview On Neural Network And Its ApplicationSherri Cost
 
Toward enhancement of deep learning techniques using fuzzy logic: a survey
Toward enhancement of deep learning techniques using fuzzy logic: a survey Toward enhancement of deep learning techniques using fuzzy logic: a survey
Toward enhancement of deep learning techniques using fuzzy logic: a survey IJECEIAES
 
Case study on machine learning
Case study on machine learningCase study on machine learning
Case study on machine learningHarshitBarde
 
UNSUPERVISED LEARNING MODELS OF INVARIANT FEATURES IN IMAGES: RECENT DEVELOPM...
UNSUPERVISED LEARNING MODELS OF INVARIANT FEATURES IN IMAGES: RECENT DEVELOPM...UNSUPERVISED LEARNING MODELS OF INVARIANT FEATURES IN IMAGES: RECENT DEVELOPM...
UNSUPERVISED LEARNING MODELS OF INVARIANT FEATURES IN IMAGES: RECENT DEVELOPM...ijscai
 
UNSUPERVISED LEARNING MODELS OF INVARIANT FEATURES IN IMAGES: RECENT DEVELOPM...
UNSUPERVISED LEARNING MODELS OF INVARIANT FEATURES IN IMAGES: RECENT DEVELOPM...UNSUPERVISED LEARNING MODELS OF INVARIANT FEATURES IN IMAGES: RECENT DEVELOPM...
UNSUPERVISED LEARNING MODELS OF INVARIANT FEATURES IN IMAGES: RECENT DEVELOPM...ijscai
 
Unsupervised learning models of invariant features in images: Recent developm...
Unsupervised learning models of invariant features in images: Recent developm...Unsupervised learning models of invariant features in images: Recent developm...
Unsupervised learning models of invariant features in images: Recent developm...IJSCAI Journal
 
Precaution for Covid-19 based on Mask detection and sensor
Precaution for Covid-19 based on Mask detection and sensorPrecaution for Covid-19 based on Mask detection and sensor
Precaution for Covid-19 based on Mask detection and sensorIRJET Journal
 
IRJET- Object Detection in an Image using Deep Learning
IRJET- Object Detection in an Image using Deep LearningIRJET- Object Detection in an Image using Deep Learning
IRJET- Object Detection in an Image using Deep LearningIRJET Journal
 
Application To Monitor And Manage People In Crowded Places Using Neural Networks
Application To Monitor And Manage People In Crowded Places Using Neural NetworksApplication To Monitor And Manage People In Crowded Places Using Neural Networks
Application To Monitor And Manage People In Crowded Places Using Neural NetworksIJSRED
 
BIS Report/Neuralink
BIS Report/NeuralinkBIS Report/Neuralink
BIS Report/NeuralinkIdilBilgic
 
Introduction_to_DEEP_LEARNING.ppt machine learning that uses data, loads ...
Introduction_to_DEEP_LEARNING.ppt     machine learning that uses data, loads ...Introduction_to_DEEP_LEARNING.ppt     machine learning that uses data, loads ...
Introduction_to_DEEP_LEARNING.ppt machine learning that uses data, loads ...gkyenurkar
 
Vertex perspectives artificial intelligence
Vertex perspectives   artificial intelligenceVertex perspectives   artificial intelligence
Vertex perspectives artificial intelligenceYanai Oron
 
Vertex Perspectives | Artificial Intelligence
Vertex Perspectives | Artificial IntelligenceVertex Perspectives | Artificial Intelligence
Vertex Perspectives | Artificial IntelligenceVertex Holdings
 
IRJET- Deep Learning Methods for Selecting Appropriate Cosmetic Products ...
IRJET-  	  Deep Learning Methods for Selecting Appropriate Cosmetic Products ...IRJET-  	  Deep Learning Methods for Selecting Appropriate Cosmetic Products ...
IRJET- Deep Learning Methods for Selecting Appropriate Cosmetic Products ...IRJET Journal
 

Similar to Unraveling Information about Deep Learning (20)

The upsurge of deep learning for computer vision applications
The upsurge of deep learning for computer vision applicationsThe upsurge of deep learning for computer vision applications
The upsurge of deep learning for computer vision applications
 
Neural networks report
Neural networks reportNeural networks report
Neural networks report
 
IRJET - Deep Learning Applications and Frameworks – A Review
IRJET -  	  Deep Learning Applications and Frameworks – A ReviewIRJET -  	  Deep Learning Applications and Frameworks – A Review
IRJET - Deep Learning Applications and Frameworks – A Review
 
IRJET- Deep Learning Techniques for Object Detection
IRJET-  	  Deep Learning Techniques for Object DetectionIRJET-  	  Deep Learning Techniques for Object Detection
IRJET- Deep Learning Techniques for Object Detection
 
Introduction_to_DEEP_LEARNING.ppt
Introduction_to_DEEP_LEARNING.pptIntroduction_to_DEEP_LEARNING.ppt
Introduction_to_DEEP_LEARNING.ppt
 
Intelligent System For Face Mask Detection
Intelligent System For Face Mask DetectionIntelligent System For Face Mask Detection
Intelligent System For Face Mask Detection
 
An Overview On Neural Network And Its Application
An Overview On Neural Network And Its ApplicationAn Overview On Neural Network And Its Application
An Overview On Neural Network And Its Application
 
Toward enhancement of deep learning techniques using fuzzy logic: a survey
Toward enhancement of deep learning techniques using fuzzy logic: a survey Toward enhancement of deep learning techniques using fuzzy logic: a survey
Toward enhancement of deep learning techniques using fuzzy logic: a survey
 
Case study on machine learning
Case study on machine learningCase study on machine learning
Case study on machine learning
 
UNSUPERVISED LEARNING MODELS OF INVARIANT FEATURES IN IMAGES: RECENT DEVELOPM...
UNSUPERVISED LEARNING MODELS OF INVARIANT FEATURES IN IMAGES: RECENT DEVELOPM...UNSUPERVISED LEARNING MODELS OF INVARIANT FEATURES IN IMAGES: RECENT DEVELOPM...
UNSUPERVISED LEARNING MODELS OF INVARIANT FEATURES IN IMAGES: RECENT DEVELOPM...
 
UNSUPERVISED LEARNING MODELS OF INVARIANT FEATURES IN IMAGES: RECENT DEVELOPM...
UNSUPERVISED LEARNING MODELS OF INVARIANT FEATURES IN IMAGES: RECENT DEVELOPM...UNSUPERVISED LEARNING MODELS OF INVARIANT FEATURES IN IMAGES: RECENT DEVELOPM...
UNSUPERVISED LEARNING MODELS OF INVARIANT FEATURES IN IMAGES: RECENT DEVELOPM...
 
Unsupervised learning models of invariant features in images: Recent developm...
Unsupervised learning models of invariant features in images: Recent developm...Unsupervised learning models of invariant features in images: Recent developm...
Unsupervised learning models of invariant features in images: Recent developm...
 
Precaution for Covid-19 based on Mask detection and sensor
Precaution for Covid-19 based on Mask detection and sensorPrecaution for Covid-19 based on Mask detection and sensor
Precaution for Covid-19 based on Mask detection and sensor
 
IRJET- Object Detection in an Image using Deep Learning
IRJET- Object Detection in an Image using Deep LearningIRJET- Object Detection in an Image using Deep Learning
IRJET- Object Detection in an Image using Deep Learning
 
Application To Monitor And Manage People In Crowded Places Using Neural Networks
Application To Monitor And Manage People In Crowded Places Using Neural NetworksApplication To Monitor And Manage People In Crowded Places Using Neural Networks
Application To Monitor And Manage People In Crowded Places Using Neural Networks
 
BIS Report/Neuralink
BIS Report/NeuralinkBIS Report/Neuralink
BIS Report/Neuralink
 
Introduction_to_DEEP_LEARNING.ppt machine learning that uses data, loads ...
Introduction_to_DEEP_LEARNING.ppt     machine learning that uses data, loads ...Introduction_to_DEEP_LEARNING.ppt     machine learning that uses data, loads ...
Introduction_to_DEEP_LEARNING.ppt machine learning that uses data, loads ...
 
Vertex perspectives artificial intelligence
Vertex perspectives   artificial intelligenceVertex perspectives   artificial intelligence
Vertex perspectives artificial intelligence
 
Vertex Perspectives | Artificial Intelligence
Vertex Perspectives | Artificial IntelligenceVertex Perspectives | Artificial Intelligence
Vertex Perspectives | Artificial Intelligence
 
IRJET- Deep Learning Methods for Selecting Appropriate Cosmetic Products ...
IRJET-  	  Deep Learning Methods for Selecting Appropriate Cosmetic Products ...IRJET-  	  Deep Learning Methods for Selecting Appropriate Cosmetic Products ...
IRJET- Deep Learning Methods for Selecting Appropriate Cosmetic Products ...
 

More from IRJET Journal

TUNNELING IN HIMALAYAS WITH NATM METHOD: A SPECIAL REFERENCES TO SUNGAL TUNNE...
TUNNELING IN HIMALAYAS WITH NATM METHOD: A SPECIAL REFERENCES TO SUNGAL TUNNE...TUNNELING IN HIMALAYAS WITH NATM METHOD: A SPECIAL REFERENCES TO SUNGAL TUNNE...
TUNNELING IN HIMALAYAS WITH NATM METHOD: A SPECIAL REFERENCES TO SUNGAL TUNNE...IRJET Journal
 
STUDY THE EFFECT OF RESPONSE REDUCTION FACTOR ON RC FRAMED STRUCTURE
STUDY THE EFFECT OF RESPONSE REDUCTION FACTOR ON RC FRAMED STRUCTURESTUDY THE EFFECT OF RESPONSE REDUCTION FACTOR ON RC FRAMED STRUCTURE
STUDY THE EFFECT OF RESPONSE REDUCTION FACTOR ON RC FRAMED STRUCTUREIRJET Journal
 
A COMPARATIVE ANALYSIS OF RCC ELEMENT OF SLAB WITH STARK STEEL (HYSD STEEL) A...
A COMPARATIVE ANALYSIS OF RCC ELEMENT OF SLAB WITH STARK STEEL (HYSD STEEL) A...A COMPARATIVE ANALYSIS OF RCC ELEMENT OF SLAB WITH STARK STEEL (HYSD STEEL) A...
A COMPARATIVE ANALYSIS OF RCC ELEMENT OF SLAB WITH STARK STEEL (HYSD STEEL) A...IRJET Journal
 
Effect of Camber and Angles of Attack on Airfoil Characteristics
Effect of Camber and Angles of Attack on Airfoil CharacteristicsEffect of Camber and Angles of Attack on Airfoil Characteristics
Effect of Camber and Angles of Attack on Airfoil CharacteristicsIRJET Journal
 
A Review on the Progress and Challenges of Aluminum-Based Metal Matrix Compos...
A Review on the Progress and Challenges of Aluminum-Based Metal Matrix Compos...A Review on the Progress and Challenges of Aluminum-Based Metal Matrix Compos...
A Review on the Progress and Challenges of Aluminum-Based Metal Matrix Compos...IRJET Journal
 
Dynamic Urban Transit Optimization: A Graph Neural Network Approach for Real-...
Dynamic Urban Transit Optimization: A Graph Neural Network Approach for Real-...Dynamic Urban Transit Optimization: A Graph Neural Network Approach for Real-...
Dynamic Urban Transit Optimization: A Graph Neural Network Approach for Real-...IRJET Journal
 
Structural Analysis and Design of Multi-Storey Symmetric and Asymmetric Shape...
Structural Analysis and Design of Multi-Storey Symmetric and Asymmetric Shape...Structural Analysis and Design of Multi-Storey Symmetric and Asymmetric Shape...
Structural Analysis and Design of Multi-Storey Symmetric and Asymmetric Shape...IRJET Journal
 
A Review of “Seismic Response of RC Structures Having Plan and Vertical Irreg...
A Review of “Seismic Response of RC Structures Having Plan and Vertical Irreg...A Review of “Seismic Response of RC Structures Having Plan and Vertical Irreg...
A Review of “Seismic Response of RC Structures Having Plan and Vertical Irreg...IRJET Journal
 
A REVIEW ON MACHINE LEARNING IN ADAS
A REVIEW ON MACHINE LEARNING IN ADASA REVIEW ON MACHINE LEARNING IN ADAS
A REVIEW ON MACHINE LEARNING IN ADASIRJET Journal
 
Long Term Trend Analysis of Precipitation and Temperature for Asosa district,...
Long Term Trend Analysis of Precipitation and Temperature for Asosa district,...Long Term Trend Analysis of Precipitation and Temperature for Asosa district,...
Long Term Trend Analysis of Precipitation and Temperature for Asosa district,...IRJET Journal
 
P.E.B. Framed Structure Design and Analysis Using STAAD Pro
P.E.B. Framed Structure Design and Analysis Using STAAD ProP.E.B. Framed Structure Design and Analysis Using STAAD Pro
P.E.B. Framed Structure Design and Analysis Using STAAD ProIRJET Journal
 
A Review on Innovative Fiber Integration for Enhanced Reinforcement of Concre...
A Review on Innovative Fiber Integration for Enhanced Reinforcement of Concre...A Review on Innovative Fiber Integration for Enhanced Reinforcement of Concre...
A Review on Innovative Fiber Integration for Enhanced Reinforcement of Concre...IRJET Journal
 
Survey Paper on Cloud-Based Secured Healthcare System
Survey Paper on Cloud-Based Secured Healthcare SystemSurvey Paper on Cloud-Based Secured Healthcare System
Survey Paper on Cloud-Based Secured Healthcare SystemIRJET Journal
 
Review on studies and research on widening of existing concrete bridges
Review on studies and research on widening of existing concrete bridgesReview on studies and research on widening of existing concrete bridges
Review on studies and research on widening of existing concrete bridgesIRJET Journal
 
React based fullstack edtech web application
React based fullstack edtech web applicationReact based fullstack edtech web application
React based fullstack edtech web applicationIRJET Journal
 
A Comprehensive Review of Integrating IoT and Blockchain Technologies in the ...
A Comprehensive Review of Integrating IoT and Blockchain Technologies in the ...A Comprehensive Review of Integrating IoT and Blockchain Technologies in the ...
A Comprehensive Review of Integrating IoT and Blockchain Technologies in the ...IRJET Journal
 
A REVIEW ON THE PERFORMANCE OF COCONUT FIBRE REINFORCED CONCRETE.
A REVIEW ON THE PERFORMANCE OF COCONUT FIBRE REINFORCED CONCRETE.A REVIEW ON THE PERFORMANCE OF COCONUT FIBRE REINFORCED CONCRETE.
A REVIEW ON THE PERFORMANCE OF COCONUT FIBRE REINFORCED CONCRETE.IRJET Journal
 
Optimizing Business Management Process Workflows: The Dynamic Influence of Mi...
Optimizing Business Management Process Workflows: The Dynamic Influence of Mi...Optimizing Business Management Process Workflows: The Dynamic Influence of Mi...
Optimizing Business Management Process Workflows: The Dynamic Influence of Mi...IRJET Journal
 
Multistoried and Multi Bay Steel Building Frame by using Seismic Design
Multistoried and Multi Bay Steel Building Frame by using Seismic DesignMultistoried and Multi Bay Steel Building Frame by using Seismic Design
Multistoried and Multi Bay Steel Building Frame by using Seismic DesignIRJET Journal
 
Cost Optimization of Construction Using Plastic Waste as a Sustainable Constr...
Cost Optimization of Construction Using Plastic Waste as a Sustainable Constr...Cost Optimization of Construction Using Plastic Waste as a Sustainable Constr...
Cost Optimization of Construction Using Plastic Waste as a Sustainable Constr...IRJET Journal
 

More from IRJET Journal (20)

TUNNELING IN HIMALAYAS WITH NATM METHOD: A SPECIAL REFERENCES TO SUNGAL TUNNE...
TUNNELING IN HIMALAYAS WITH NATM METHOD: A SPECIAL REFERENCES TO SUNGAL TUNNE...TUNNELING IN HIMALAYAS WITH NATM METHOD: A SPECIAL REFERENCES TO SUNGAL TUNNE...
TUNNELING IN HIMALAYAS WITH NATM METHOD: A SPECIAL REFERENCES TO SUNGAL TUNNE...
 
STUDY THE EFFECT OF RESPONSE REDUCTION FACTOR ON RC FRAMED STRUCTURE
STUDY THE EFFECT OF RESPONSE REDUCTION FACTOR ON RC FRAMED STRUCTURESTUDY THE EFFECT OF RESPONSE REDUCTION FACTOR ON RC FRAMED STRUCTURE
STUDY THE EFFECT OF RESPONSE REDUCTION FACTOR ON RC FRAMED STRUCTURE
 
A COMPARATIVE ANALYSIS OF RCC ELEMENT OF SLAB WITH STARK STEEL (HYSD STEEL) A...
A COMPARATIVE ANALYSIS OF RCC ELEMENT OF SLAB WITH STARK STEEL (HYSD STEEL) A...A COMPARATIVE ANALYSIS OF RCC ELEMENT OF SLAB WITH STARK STEEL (HYSD STEEL) A...
A COMPARATIVE ANALYSIS OF RCC ELEMENT OF SLAB WITH STARK STEEL (HYSD STEEL) A...
 
Effect of Camber and Angles of Attack on Airfoil Characteristics
Effect of Camber and Angles of Attack on Airfoil CharacteristicsEffect of Camber and Angles of Attack on Airfoil Characteristics
Effect of Camber and Angles of Attack on Airfoil Characteristics
 
A Review on the Progress and Challenges of Aluminum-Based Metal Matrix Compos...
A Review on the Progress and Challenges of Aluminum-Based Metal Matrix Compos...A Review on the Progress and Challenges of Aluminum-Based Metal Matrix Compos...
A Review on the Progress and Challenges of Aluminum-Based Metal Matrix Compos...
 
Dynamic Urban Transit Optimization: A Graph Neural Network Approach for Real-...
Dynamic Urban Transit Optimization: A Graph Neural Network Approach for Real-...Dynamic Urban Transit Optimization: A Graph Neural Network Approach for Real-...
Dynamic Urban Transit Optimization: A Graph Neural Network Approach for Real-...
 
Structural Analysis and Design of Multi-Storey Symmetric and Asymmetric Shape...
Structural Analysis and Design of Multi-Storey Symmetric and Asymmetric Shape...Structural Analysis and Design of Multi-Storey Symmetric and Asymmetric Shape...
Structural Analysis and Design of Multi-Storey Symmetric and Asymmetric Shape...
 
A Review of “Seismic Response of RC Structures Having Plan and Vertical Irreg...
A Review of “Seismic Response of RC Structures Having Plan and Vertical Irreg...A Review of “Seismic Response of RC Structures Having Plan and Vertical Irreg...
A Review of “Seismic Response of RC Structures Having Plan and Vertical Irreg...
 
A REVIEW ON MACHINE LEARNING IN ADAS
A REVIEW ON MACHINE LEARNING IN ADASA REVIEW ON MACHINE LEARNING IN ADAS
A REVIEW ON MACHINE LEARNING IN ADAS
 
Long Term Trend Analysis of Precipitation and Temperature for Asosa district,...
Long Term Trend Analysis of Precipitation and Temperature for Asosa district,...Long Term Trend Analysis of Precipitation and Temperature for Asosa district,...
Long Term Trend Analysis of Precipitation and Temperature for Asosa district,...
 
P.E.B. Framed Structure Design and Analysis Using STAAD Pro
P.E.B. Framed Structure Design and Analysis Using STAAD ProP.E.B. Framed Structure Design and Analysis Using STAAD Pro
P.E.B. Framed Structure Design and Analysis Using STAAD Pro
 
A Review on Innovative Fiber Integration for Enhanced Reinforcement of Concre...
A Review on Innovative Fiber Integration for Enhanced Reinforcement of Concre...A Review on Innovative Fiber Integration for Enhanced Reinforcement of Concre...
A Review on Innovative Fiber Integration for Enhanced Reinforcement of Concre...
 
Survey Paper on Cloud-Based Secured Healthcare System
Survey Paper on Cloud-Based Secured Healthcare SystemSurvey Paper on Cloud-Based Secured Healthcare System
Survey Paper on Cloud-Based Secured Healthcare System
 
Review on studies and research on widening of existing concrete bridges
Review on studies and research on widening of existing concrete bridgesReview on studies and research on widening of existing concrete bridges
Review on studies and research on widening of existing concrete bridges
 
React based fullstack edtech web application
React based fullstack edtech web applicationReact based fullstack edtech web application
React based fullstack edtech web application
 
A Comprehensive Review of Integrating IoT and Blockchain Technologies in the ...
A Comprehensive Review of Integrating IoT and Blockchain Technologies in the ...A Comprehensive Review of Integrating IoT and Blockchain Technologies in the ...
A Comprehensive Review of Integrating IoT and Blockchain Technologies in the ...
 
A REVIEW ON THE PERFORMANCE OF COCONUT FIBRE REINFORCED CONCRETE.
A REVIEW ON THE PERFORMANCE OF COCONUT FIBRE REINFORCED CONCRETE.A REVIEW ON THE PERFORMANCE OF COCONUT FIBRE REINFORCED CONCRETE.
A REVIEW ON THE PERFORMANCE OF COCONUT FIBRE REINFORCED CONCRETE.
 
Optimizing Business Management Process Workflows: The Dynamic Influence of Mi...
Optimizing Business Management Process Workflows: The Dynamic Influence of Mi...Optimizing Business Management Process Workflows: The Dynamic Influence of Mi...
Optimizing Business Management Process Workflows: The Dynamic Influence of Mi...
 
Multistoried and Multi Bay Steel Building Frame by using Seismic Design
Multistoried and Multi Bay Steel Building Frame by using Seismic DesignMultistoried and Multi Bay Steel Building Frame by using Seismic Design
Multistoried and Multi Bay Steel Building Frame by using Seismic Design
 
Cost Optimization of Construction Using Plastic Waste as a Sustainable Constr...
Cost Optimization of Construction Using Plastic Waste as a Sustainable Constr...Cost Optimization of Construction Using Plastic Waste as a Sustainable Constr...
Cost Optimization of Construction Using Plastic Waste as a Sustainable Constr...
 

Recently uploaded

Oxy acetylene welding presentation note.
Oxy acetylene welding presentation note.Oxy acetylene welding presentation note.
Oxy acetylene welding presentation note.eptoze12
 
IVE Industry Focused Event - Defence Sector 2024
IVE Industry Focused Event - Defence Sector 2024IVE Industry Focused Event - Defence Sector 2024
IVE Industry Focused Event - Defence Sector 2024Mark Billinghurst
 
Artificial-Intelligence-in-Electronics (K).pptx
Artificial-Intelligence-in-Electronics (K).pptxArtificial-Intelligence-in-Electronics (K).pptx
Artificial-Intelligence-in-Electronics (K).pptxbritheesh05
 
What are the advantages and disadvantages of membrane structures.pptx
What are the advantages and disadvantages of membrane structures.pptxWhat are the advantages and disadvantages of membrane structures.pptx
What are the advantages and disadvantages of membrane structures.pptxwendy cai
 
HARMONY IN THE NATURE AND EXISTENCE - Unit-IV
HARMONY IN THE NATURE AND EXISTENCE - Unit-IVHARMONY IN THE NATURE AND EXISTENCE - Unit-IV
HARMONY IN THE NATURE AND EXISTENCE - Unit-IVRajaP95
 
High Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur EscortsHigh Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur Escortsranjana rawat
 
Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...
Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...
Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...Dr.Costas Sachpazis
 
VIP Call Girls Service Kondapur Hyderabad Call +91-8250192130
VIP Call Girls Service Kondapur Hyderabad Call +91-8250192130VIP Call Girls Service Kondapur Hyderabad Call +91-8250192130
VIP Call Girls Service Kondapur Hyderabad Call +91-8250192130Suhani Kapoor
 
microprocessor 8085 and its interfacing
microprocessor 8085  and its interfacingmicroprocessor 8085  and its interfacing
microprocessor 8085 and its interfacingjaychoudhary37
 
Call Girls Narol 7397865700 Independent Call Girls
Call Girls Narol 7397865700 Independent Call GirlsCall Girls Narol 7397865700 Independent Call Girls
Call Girls Narol 7397865700 Independent Call Girlsssuser7cb4ff
 
main PPT.pptx of girls hostel security using rfid
main PPT.pptx of girls hostel security using rfidmain PPT.pptx of girls hostel security using rfid
main PPT.pptx of girls hostel security using rfidNikhilNagaraju
 
Gurgaon ✡️9711147426✨Call In girls Gurgaon Sector 51 escort service
Gurgaon ✡️9711147426✨Call In girls Gurgaon Sector 51 escort serviceGurgaon ✡️9711147426✨Call In girls Gurgaon Sector 51 escort service
Gurgaon ✡️9711147426✨Call In girls Gurgaon Sector 51 escort servicejennyeacort
 
College Call Girls Nashik Nehal 7001305949 Independent Escort Service Nashik
College Call Girls Nashik Nehal 7001305949 Independent Escort Service NashikCollege Call Girls Nashik Nehal 7001305949 Independent Escort Service Nashik
College Call Girls Nashik Nehal 7001305949 Independent Escort Service NashikCall Girls in Nagpur High Profile
 
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur EscortsHigh Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur EscortsCall Girls in Nagpur High Profile
 
chaitra-1.pptx fake news detection using machine learning
chaitra-1.pptx  fake news detection using machine learningchaitra-1.pptx  fake news detection using machine learning
chaitra-1.pptx fake news detection using machine learningmisbanausheenparvam
 
CCS355 Neural Network & Deep Learning UNIT III notes and Question bank .pdf
CCS355 Neural Network & Deep Learning UNIT III notes and Question bank .pdfCCS355 Neural Network & Deep Learning UNIT III notes and Question bank .pdf
CCS355 Neural Network & Deep Learning UNIT III notes and Question bank .pdfAsst.prof M.Gokilavani
 
Architect Hassan Khalil Portfolio for 2024
Architect Hassan Khalil Portfolio for 2024Architect Hassan Khalil Portfolio for 2024
Architect Hassan Khalil Portfolio for 2024hassan khalil
 
HARMONY IN THE HUMAN BEING - Unit-II UHV-2
HARMONY IN THE HUMAN BEING - Unit-II UHV-2HARMONY IN THE HUMAN BEING - Unit-II UHV-2
HARMONY IN THE HUMAN BEING - Unit-II UHV-2RajaP95
 
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICSAPPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICSKurinjimalarL3
 

Recently uploaded (20)

Oxy acetylene welding presentation note.
Oxy acetylene welding presentation note.Oxy acetylene welding presentation note.
Oxy acetylene welding presentation note.
 
IVE Industry Focused Event - Defence Sector 2024
IVE Industry Focused Event - Defence Sector 2024IVE Industry Focused Event - Defence Sector 2024
IVE Industry Focused Event - Defence Sector 2024
 
Artificial-Intelligence-in-Electronics (K).pptx
Artificial-Intelligence-in-Electronics (K).pptxArtificial-Intelligence-in-Electronics (K).pptx
Artificial-Intelligence-in-Electronics (K).pptx
 
What are the advantages and disadvantages of membrane structures.pptx
What are the advantages and disadvantages of membrane structures.pptxWhat are the advantages and disadvantages of membrane structures.pptx
What are the advantages and disadvantages of membrane structures.pptx
 
HARMONY IN THE NATURE AND EXISTENCE - Unit-IV
HARMONY IN THE NATURE AND EXISTENCE - Unit-IVHARMONY IN THE NATURE AND EXISTENCE - Unit-IV
HARMONY IN THE NATURE AND EXISTENCE - Unit-IV
 
High Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur EscortsHigh Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Isha Call 7001035870 Meet With Nagpur Escorts
 
★ CALL US 9953330565 ( HOT Young Call Girls In Badarpur delhi NCR
★ CALL US 9953330565 ( HOT Young Call Girls In Badarpur delhi NCR★ CALL US 9953330565 ( HOT Young Call Girls In Badarpur delhi NCR
★ CALL US 9953330565 ( HOT Young Call Girls In Badarpur delhi NCR
 
Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...
Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...
Sheet Pile Wall Design and Construction: A Practical Guide for Civil Engineer...
 
VIP Call Girls Service Kondapur Hyderabad Call +91-8250192130
VIP Call Girls Service Kondapur Hyderabad Call +91-8250192130VIP Call Girls Service Kondapur Hyderabad Call +91-8250192130
VIP Call Girls Service Kondapur Hyderabad Call +91-8250192130
 
microprocessor 8085 and its interfacing
microprocessor 8085  and its interfacingmicroprocessor 8085  and its interfacing
microprocessor 8085 and its interfacing
 
Call Girls Narol 7397865700 Independent Call Girls
Call Girls Narol 7397865700 Independent Call GirlsCall Girls Narol 7397865700 Independent Call Girls
Call Girls Narol 7397865700 Independent Call Girls
 
main PPT.pptx of girls hostel security using rfid
main PPT.pptx of girls hostel security using rfidmain PPT.pptx of girls hostel security using rfid
main PPT.pptx of girls hostel security using rfid
 
Gurgaon ✡️9711147426✨Call In girls Gurgaon Sector 51 escort service
Gurgaon ✡️9711147426✨Call In girls Gurgaon Sector 51 escort serviceGurgaon ✡️9711147426✨Call In girls Gurgaon Sector 51 escort service
Gurgaon ✡️9711147426✨Call In girls Gurgaon Sector 51 escort service
 
College Call Girls Nashik Nehal 7001305949 Independent Escort Service Nashik
College Call Girls Nashik Nehal 7001305949 Independent Escort Service NashikCollege Call Girls Nashik Nehal 7001305949 Independent Escort Service Nashik
College Call Girls Nashik Nehal 7001305949 Independent Escort Service Nashik
 
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur EscortsHigh Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur Escorts
High Profile Call Girls Nagpur Meera Call 7001035870 Meet With Nagpur Escorts
 
chaitra-1.pptx fake news detection using machine learning
chaitra-1.pptx  fake news detection using machine learningchaitra-1.pptx  fake news detection using machine learning
chaitra-1.pptx fake news detection using machine learning
 
CCS355 Neural Network & Deep Learning UNIT III notes and Question bank .pdf
CCS355 Neural Network & Deep Learning UNIT III notes and Question bank .pdfCCS355 Neural Network & Deep Learning UNIT III notes and Question bank .pdf
CCS355 Neural Network & Deep Learning UNIT III notes and Question bank .pdf
 
Architect Hassan Khalil Portfolio for 2024
Architect Hassan Khalil Portfolio for 2024Architect Hassan Khalil Portfolio for 2024
Architect Hassan Khalil Portfolio for 2024
 
HARMONY IN THE HUMAN BEING - Unit-II UHV-2
HARMONY IN THE HUMAN BEING - Unit-II UHV-2HARMONY IN THE HUMAN BEING - Unit-II UHV-2
HARMONY IN THE HUMAN BEING - Unit-II UHV-2
 
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICSAPPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
APPLICATIONS-AC/DC DRIVES-OPERATING CHARACTERISTICS
 

Unraveling Information about Deep Learning

  • 1. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 09 Issue: 11 | Nov 2022 www.irjet.net p-ISSN: 2395-0072 © 2022, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 316 Unraveling Information about Deep Learning Simardeep Singh Mehta Amity University Noida, Amity Road, Sector 125,Noida, Uttar Pradesh 201301 ---------------------------------------------------------------------***--------------------------------------------------------------------- Abstract - A new field of machine learning (ML) study is deep learning. There are numerous concealedartificialneuralnetwork layers in it. The deep learning methodology uses high level model abstractions and transformations in massive databases. Deep learning architectures have recently made major strides in a variety of domains, and these developments have already had a big impact on artificial intelligence. Additionally, the advantages of the layer-based hierarchy and nonlinear operations of deep learning methodology are discussed and contrasted with those of more traditional techniques in widely used applications. It also has a significant impact on face recognition methods, as demonstrated by Facebook'shighlyeffectiveDeep Facetechnology, which enables users to tag photos. 1. INTRODUCTION Artificial neural systems are the foundation of deep learning, which is a branch of AI that mimics the human brain in a similar way to how neural systems function. We don't have to explicitly programme everythingindeeplearning.Deeplearningisnota brand-new concept. At this point, it has been around for two or three years. Because we didn't have as much planning power and information in the past, it's on hype these days. Deep learning and AI entered the scene as the preparing power increased tremendously over the last 20 years. 1.1 A formal defining of deep learning is- Deep learning is a particular kind of machine learning that achieves great power and flexibility by learning to represent the world as a nested hierarchy of concepts, with each concept defined in relation to simpler concepts, and more abstract representations computed in terms of less abstract ones. In human brain approximately 100 billion neurons all together this is a picture of an individual neuron, and each neuron is connected through thousands of their neighbors. The question here is how we recreate these neurons in a computer. So, we create an artificial structure called an artificial neural net where we have nodes or neurons. We have some neurons for input value and some for-output value and in between, there may be lots of neurons interconnected in the hidden layer. [1] AI empowered computers benefited from genuine crude informationormodels,andit attempts toextricatedesigns fromitand settle on better choices without anyone else. A portion of the AI calculations are strategic relapse, SVM and so forth. The presentation of these AI calculations relies vigorously upon the portrayal oftheinformationthataregiven.Eachsnippetof data remembered for the portrayal is known as highlights and these calculations figures out how to utilize these highlights to extricate designs or to get information. Nevertheless, sometimes it might be challenging to discern which details should be deleted. For instance, if we were trying to identify cars from a photograph, we may enjoy the opportunity to use the proximity of the wheel asa cue.However,intermsof pixel values, it is challenging to depict what a wheel looks like. Using AI to extract value from those traits (representation) but not the highlights themselves is one way to solve this problem. This approach is called portrayal learning. Once more, if the calculation learns without the assistance of anyone else and with very little human 2. HISTORY Long time back in 1943, deep learning was introduced by Warren McCulloch and Walter Pitts, when they created a computer based on neural networks in the brain Warren McColluchandWalterPittsmadea combinationof algorithmsandmathematical evolutions which is known as threshold magic in order to replicate the thought process. And thus, after that deep learning has evolved a lot and there have been two major breakthrough moments. [6] One of these was in 1960 by Henry J Kelly which was the development of basics of continuous beam propagation model Later on in 1962 Stuart Drefyus found a simple version based on the chain rule One of the earliest roles to develop deep learning algorithms was in 1965 where two people Alexey Grigoryevich IvakhnenkoandValentinGrigor’evichLapa usedmodelsofpolynomial functionswhichwereanalyzedstatistically
  • 2. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 09 Issue: 11 | Nov 2022 www.irjet.net p-ISSN: 2395-0072 © 2022, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 317 There were various hurdles too in the development of it which is one of the most important and interesting topics in today’s world. A major setback was when in 1970 due to lack of funding the research aboutartificial intelligenceanddeeplearninghad to restricted. But even after such impossible conditions certain individuals researched aboutitevenafterlack offinancial help The term convolutional neural networks which we hear the most in today’s time whenever we talk about deep learning was used the first time by Kunihiko Fukushima. [6] He himself designed the neural networks usingconvolutional layers Hecreated a multilayer and hierarchical design in1979 which was termedasneocognitron.Ithelpedthecomputertolearnvisual patterns. The networks resembled modern versions and were trained to activate multiple recurring layers. Later then the world was introduced with the FORTAN CODE for Back Propagation. This was developed in the 1970’s and it used numerous errors to train the deep learning models. This became popular later on when a thesis written by Seppo Linnainmaa including The FORTAN CODE became available and known. [5] Even though the fact that it was developed in 1970 it wasn’t under action in neural networks until the year 1985. Yann LeCunn was the first one to explain the and provide a practical demonstration in 1989.Something thathedidwasthathe combined convolutional networks with back propagation in order to scan handwritten digits As the next decade kicked in artificial intelligence and deep learning did not make a lot of progress. in 1995 Vladimir Vapnik and Dana Cortes developed the support vector machine which is a system for mapping and recognizing similar data. Long short-term memory or LSTM was developed in 1997 by Juergen Schmidhuber and Sepp Hochreiter for recurrent neural networks. Chart -1: History Going into the next century The Vanishing Gradient downside came into the year 2000 once “features” (lessons) fashioned in lower layers weren't being learned by the higher layers since no learning signal reached these layers were discovered. This wasn'tan elementarydownsideforall neural networkshoweveritwasrestrictedto solely gradient-based learning ways. In 2001, a quest report compiled by the META cluster (now known as Gartner) came up with the challenges andopportunities of the three-dimensional knowledge growth. This report marked the onslaught of massive knowledge and represented the increasing volume and speed of information as increasing the vary of information sources and kinds.
  • 3. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 09 Issue: 11 | Nov 2022 www.irjet.net p-ISSN: 2395-0072 © 2022, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 318 3. NEED OF DEEP LEARNING Now the question that would pop in in everyone’s mind is that why it matters and why dowe needdeeplearning.injusta word, deep learning can be defined using accuracy and precise work Deep learning has achieved higher accuracy in recognition department than anyone ever before this has numerous benefits,oneofwhichismeetingcustomerexpectations andimportant for the operation of self-learning devices such as driverless cars Recent research shows and scientists believe that there are certain tasks at which deep learning is even better than humans mainly being image recognition Deep learning was firstly introduced in 1980s properly, since then it has been evolving and there are two main reasons for its existence- 1. One of the major needs of deep learning is labelled data. For example, millions of images and hours of video are required for development of driverless cars 2. Deep learning requires substantial computing power. High-performance GPUs have a parallel architecturethatisefficient for deep learning. When combined with cloud computing, this enables development of teams to reduce training timefora deep learning network from weeks to hours or less. 4. WORKING Well what do you do when you get to know about a problem the first thing that you do is that you identify it and then find a solution for the problem, the feasibility of the Deep Learning should also be checked. Second, we need to identify the relevant data which corresponds to the actual problem and should be prepared accordingly. Third, picking the appropriate deep learning algorithm. Fourth, Algorithm should be used while training the dataset. Fifth, Final testing should be done on the dataset. Fig -1: Timeline
  • 4. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 09 Issue: 11 | Nov 2022 www.irjet.net p-ISSN: 2395-0072 © 2022, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 319 Fig -1: Flow Graph Most deep learning methods use neural network architectures,whichiswhydeeplearningmodelsareoftenmentionedasdeep neural networks. The term “deep” usually refers to the number of hidden layers within the neural network. [1] Generally, neural networks just contain 2-3 hidden layers, while deep networks can have as many as 150. Deep learning models are trained by using large sets of labelled data and neural network architectures that learn features automatically from the data without the need for manual feature extraction. Fig -1: Model One of the foremost popular sorts of deep neural networks is understood as convolutional neural networks(CNN orConvNet). A CNN convolves learned features with input file, and uses 2D convolutional layers, making this architecture compatible to processing 2D data, like images.
  • 5. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 09 Issue: 11 | Nov 2022 www.irjet.net p-ISSN: 2395-0072 © 2022, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 320 CNNs eliminate the necessity for manual feature extraction, so you are doing not got to identify features wont to classify images.[1] The CNN works by extractingfeaturesdirectlyfromimages.Therelevantfeaturesaren'tpre-trained;they'relearned while the network trains on a set of images. This automated feature extraction makes deeplearningmodelshighlyaccuratefor computer vision tasks like object classification. Fig -1: CNN Working CNNs learn to detect different features of a picture using tens or many hidden layers. Every hidden layer increases the complexity of the learned image features. For example, the primary hidden layer could find out how to detect edges, and therefore the last learns the way to detect more complex shapes specifically catered to the form of the object we are trying to recognize. 5. FUTURE PROSPECTS It is difficult to know about everything happening in the artificial intelligenceworld.Withsomanypapersbeing released,itcan be difficult to talk about the reality which is the present existence and future prospects. 1. Architecture Search Designing neural network architectures requires more art than science. Mostindividualsjustgraba well-likedspecificationoff the shelf. Does anybody wonder how were these cutting-edge architectures discovered? The answer is simple- trial anderror using powerful GPU computers. The decision of when to use max-pooling, which convolution filter size to use, where to feature dropout layers is simply about random guessing. 2. Compressing Neural Networks Training deep learning networks may be a good way to urgeconversantinmemory.Atypical laptophas16GBofRAMmemory. The latest iPhone has around 4 GB of RAM. The VGG16 image classification network, with around 144 million parameters, is around 500 MB. Due to the big size of those networks it's very difficult to create mobile AI apps and apps that use multiple networks. Having the networks loaded into RAM memory enables much faster computing time. Research on compressingthesenetworkslikeDeepCompressionworksveryalmostlikeJPEGimagecompression, Quantization and Huffman encoding. Deep Compression can reduce VGG-16 from 552 MB to 11.3 MB with no loss of accuracy. 3. GAN-based Data Augmentation A major challenge while building deep learning models is the dataset. Deep learning models require a lot of data. GANs are a promising generative modelling framework that can conclude new data points from a dataset. This can be used to create humungous datasets from small ones.
  • 6. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 09 Issue: 11 | Nov 2022 www.irjet.net p-ISSN: 2395-0072 © 2022, IRJET | Impact Factor value: 7.529 | ISO 9001:2008 Certified Journal | Page 321 6. APPLICATIONS 1.Automatic Text Generation – Corpus of text is learned and from this model new text is generated, word-by-word eventually this model can learn how to spell, form sentences, and use punctuations. 2.Healthcare – It helps in diagnosing many diseases and helps in the treatment process withthehelpofmedical imaging[2]. 3.Automatic Machine Translation – Certain words, sentences, or phrases in one language is transformed into another language (Deep Learning is achieving top results in the areas of text, images). 4.Image Recognition – Recognizing and identifying people and objects in images as well being able to understand content and context. [4] This area is already being used in Tourism and Gaming industry just to name a few 5.Predicting Earthquakes – Teaches a computer to perform viscoelastic computations which are used in predicting earthquakes. [6] 7. CONCLUSIONS We are on the verge of creating or might have successfully created the most intriguing technology in the history of mankind. Thus, Artificial Intelligence (Deep Learning) is the most interesting topic in the field of Science and Technology. According to recent research there was news that certain robotswerespeakinganaltogetherdifferentlanguageandpossiblymalfunctioned, however as soon as engineers monitored the robots they concluded that machines had developed a language of their ownand were communicating effectively. Later they were shut down. So there are hundreds of possibilities in the land of artificial intelligence and specially in deep learning. Deep Learning can change our lives completely with the advancement in technology. Once we can calibrate our braintosucha level wherewecan unlock more capabilities of our brain, it can be breakthrough research for the mankind. A major revolution is undertaking, and we are a part of it. Therefore, we must help in whatever way we can and contribute towards the technology. Deep Learning has a lot of potential even beyond our imagination. Huge technological giant Elon Musk’s new company Neuralink is profoundly researching on deep learning and neural networks. Apple has also beendoinga lot of research lately and has filed various patents related to artificial intelligence. Also, when such established companies invest billions of dollars in the technology we can very easily estimate its potential and capabilities. REFERENCES 1. Yann LeCun, Yoshua Bengio & Geoffrey Hinton, Deep learning 2. Jonghoon Kim, Prospects of deep learning for medical imaging 3. S. M. S. Islam, S. Rahman, M. M. Rahman, E. K. Dey and M. Shoyaib, Application of deep learning to computer vision: A comprehensive study 4. Kaiming He, Deep Residual Learning for Image Recognition 5. Deng, L. (2014). A tutorial survey of architectures, algorithms, and applications for deep learning.