Thursday, July 9, 2020
AI vs Machine Learning vs Deep Learning
AI vs Machine Learning vs Deep Learning AI vs Machine Learning vs Deep Learning Back Home Categories Online Courses Mock Interviews Webinars NEW Community Write for Us Categories Artificial Intelligence AI vs Machine Learning vs Deep LearningMachine Learning AlgorithmsArtificial Intelligence TutorialWhat is Deep LearningDeep Learning TutorialInstall TensorFlowDeep Learning with PythonBackpropagationTensorFlow TutorialConvolutional Neural Network TutorialVIEW ALL BI and Visualization What is TableauTableau TutorialTableau Interview QuestionsWhat is InformaticaInformatica Interview QuestionsPower BI TutorialPower BI Interview QuestionsOLTP vs OLAPQlikView TutorialAdvanced Excel Formulas TutorialVIEW ALL Big Data What is HadoopHadoop ArchitectureHadoop TutorialHadoop Interview QuestionsHadoop EcosystemData Science vs Big Data vs Data AnalyticsWhat is Big DataMapReduce TutorialPig TutorialSpark TutorialSpark Interview QuestionsBig Data TutorialHive TutorialVIEW ALL Blockchain Blockchain TutorialWhat is BlockchainHyperledger FabricWhat Is EthereumEthereum TutorialB lockchain ApplicationsSolidity TutorialBlockchain ProgrammingHow Blockchain WorksVIEW ALL Cloud Computing What is AWSAWS TutorialAWS CertificationAzure Interview QuestionsAzure TutorialWhat Is Cloud ComputingWhat Is SalesforceIoT TutorialSalesforce TutorialSalesforce Interview QuestionsVIEW ALL Cyber Security Cloud SecurityWhat is CryptographyNmap TutorialSQL Injection AttacksHow To Install Kali LinuxHow to become an Ethical Hacker?Footprinting in Ethical HackingNetwork Scanning for Ethical HackingARP SpoofingApplication SecurityVIEW ALL Data Science Python Pandas TutorialWhat is Machine LearningMachine Learning TutorialMachine Learning ProjectsMachine Learning Interview QuestionsWhat Is Data ScienceSAS TutorialR TutorialData Science ProjectsHow to become a data scientistData Science Interview QuestionsData Scientist SalaryVIEW ALL Data Warehousing and ETL What is Data WarehouseDimension Table in Data WarehousingData Warehousing Interview QuestionsData warehouse architectureTalend T utorialTalend ETL ToolTalend Interview QuestionsFact Table and its TypesInformatica TransformationsInformatica TutorialVIEW ALL Databases What is MySQLMySQL Data TypesSQL JoinsSQL Data TypesWhat is MongoDBMongoDB Interview QuestionsMySQL TutorialSQL Interview QuestionsSQL CommandsMySQL Interview QuestionsVIEW ALL DevOps What is DevOpsDevOps vs AgileDevOps ToolsDevOps TutorialHow To Become A DevOps EngineerDevOps Interview QuestionsWhat Is DockerDocker TutorialDocker Interview QuestionsWhat Is ChefWhat Is KubernetesKubernetes TutorialVIEW ALL Front End Web Development What is JavaScript â" All You Need To Know About JavaScriptJavaScript TutorialJavaScript Interview QuestionsJavaScript FrameworksAngular TutorialAngular Interview QuestionsWhat is REST API?React TutorialReact vs AngularjQuery TutorialNode TutorialReact Interview QuestionsVIEW ALL Mobile Development Android TutorialAndroid Interview QuestionsAndroid ArchitectureAndroid SQLite DatabaseProgramming Frameworks you need to knowAI vs Machine Learning vs Deep LearningA Comprehensive Guide To Artificial Intelligence With Python Introduction to Deep Learning What is Deep Learning? Getting Started With Deep LearningDeep Learning with Python : Beginners Guide to Deep LearningWhat Is A Neural Network? Introduction To Artificial Neural NetworksDeep Learning Tutorial : Artificial Intelligence Using Deep LearningPyTorch vs TensorFlow: Which Is The Better Framework? Neural Networks Deep Learning : Perceptron Learning AlgorithmNeural Network Tutorial â" Multi Layer PerceptronBackpropagation â" Algorithm For Training A Neural Network Tensorflow A Step By Step Guide to Install TensorFlowTensorFlow Tutorial â" Deep Learning Using TensorFlowConvolutional Neural Network Tutorial (CNN) â" Developing An Image Classifier In Python Using TensorFlowCapsule Neural Networks â" Set of Nested Neural LayersObject Detection Tutorial in TensorFlow: Real-Time Object DetectionTensorFlow Image Classification : All you nee d to know about Building ClassifiersRecurrent Neural Networks (RNN) Tutorial | Analyzing Sequential Data Using TensorFlow In Python Dimensionality Reduction Autoencoders Tutorial : A Beginner's Guide to AutoencodersRestricted Boltzmann Machine Tutorial â" Introduction to Deep Learning Concepts Most Frequently Asked Artificial Intelligence Interview Questions Data Science Topics CoveredBusiness Analytics with R (31 Blogs)Data Science (39 Blogs)Mastering Python (67 Blogs)Decision Tree Modeling Using R (1 Blogs)SEE MORE AI vs Machine Learning vs Deep Learning Last updated on Mar 02,2020 16.1K Views Atul Sr. Research Analyst with a demonstrated history of working in the e-learning... Sr. Research Analyst with a demonstrated history of working in the e-learning industry. Experienced in machine learning with python and visualizing data and creating... Bookmark 11 / 12 Blog from Introduction to Artificial Intelligence Become a Certified Professional AI vs Machine Learning vs Dee p Learning, these terms have confused a lot of people. If you too are one among them then this blog AI vs Machine Learning vs Deep Learning is definitely for you.AI vs Machine Learning vs Deep Learning Artificial Intelligence is the broader umbrella under which Machine Learning and Deep Learning come. And you can also see in the diagram that even deep learning is a subset of Machine Learning. So all three of them AI, machine learning and deep learning are just the subsets of each other. So let us move on and understand how exactly they are different from each other. AI vs Machine Learning vs Deep Learning | EdurekaSubscribe to our YouTube channel to stay updated with our fresh content Starting with Artificial IntelligenceThe term artificial intelligence was first coined in the year 1956, but AI has become more popular these days why? Well, its because of the tremendous increase in data volumes, advanced algorithms, and improvements in computing power and storage.The data we had was not enough to predict the accurate result. But now there is a tremendous increase in the amount of data. Statistics suggest that By 2020, the accumulated volume of big data will increase from 4.4 zettabytes to roughly 44 zettabytes or 44 trillion GBs of data. Now we even have more advanced algorithms and high end computing power and storage that can deal with such large amount of data. As a result, it is expected that 70% of the enterprise will implement AI over the next 12 months, which is up from 40% in 2016 and 51% in 2017.What is Artificial Intelligence? Artificial Intelligence is a technique which allows the machines to act like humans by replicating their behaviour and nature. Artificial Intelligence makes it possiblefor the machines to learn from their experience.The machines adjust their response based on new inputs thereby performing human-like tasks by processing large amounts of data and recognizing patterns in them.AI Explained with an Analogy: Construction of a Church You can consider that building an artificial intelligence is like building a church.The first church took generations to finish, so most of the workers working on it never saw the final outcome. Those working on it took pride in their craft, building bricks and chiselling stones that were to be placed into the Great Structure. So, as AI researchers, we should think ourselves as humble brick makers, whose job it is to study how to build components (e.g. parsers, planners, learning algorithms, etc) that someday someone, somewhere, will integrate into intelligent systems.Some of the examples of Artificial Intelligence from our day to day life are Apples Siri, the chess-playing computer, teslas self-driving car and many more. These examples are based on deep learning and natural language processing.Well, this was about what is AI and how it gained its hype. So moving on ahead lets discuss machine learning and see what it is and why was it even introduced. Machine Learning came into exis tence in the late 80s and early 90s.But what were the issues with the people which made Machine Learning come into existence? Statistics: How to efficiently train large complex models?Computer Science Artificial Intelligence: How to train more robust versions of the AI systems?Neuroscience: How to design operational models of the brain?What is Machine Learning? Machine Learning is a subset of artificial intelligence. It allowsthe machines to learn and make predictions based on its experience(data) Understanding Machine Learning with an ExampleLets say you want to create a system which could predict the expected weight of a person based on its height. The first thing you do is collect the data. Let us say this is how your data looks like:Each point on the graph represents one data point. To start with we can draw a simple line to predict the weight based on the height. For example, a simple line:W = H 100Where W is weight in kg and H is height in cmThis line can help us to make pre dictions. Our main goal is to reduce the difference between the estimated value and actual value. So in order to achieve it, we try to draw a straight line that fits through all these different points and minimize the error and make them as small as possible. Decreasing the error or the difference between the actual value and the estimated value increases the performance.Further, the more data points we collect, the better will our model become. We can also improve our model by adding more variables (e.g. Gender) and creating different prediction lines for them. Once the line is created, so in future, if a new data (for example height of a person) is fed to the model, it would easily predict the data for you and will tell his predicted weight.I hope you got a clear understanding of machine learning. So moving on ahead lets learn about Deep Learning. Machine Learning Certification Course Get certified in Machine Learning What is Deep Learning?Deep learning is a particular kind of ma chine learning that achieves great power and flexibility by learning to represent the world as nested hierarchy of concepts or abstractionYou can consider deep learning models as a rocket engine and its fuel is the huge amount of data that we feed to these algorithms.The concept of deep learning is not new. But recently its hype has increased, and deep learning is getting more attention. This field is a special kind of machine learning which is inspired by the functionality of our brain cells called artificial neural network. It simply takes data connections between all artificial neurons and adjusts them according to the data pattern. More neurons are needed if the size of the data is large. It automatically features learning at multiple levels of abstraction thereby allowing a system to learn complex functions mapping without depending on any specific algorithm.Understanding Deep Learning with AnalogiesLet me start with a simple example which explains how things work at a conceptu al level. Example 1: Let us try and understand how you recognize a square from other shapes.The first thing is to check whether there are 4 lines associated with a figure or not (simple concept right!). If yes, we further check, if they are connected and closed, again if yes we finally check whether it is perpendicular and all its sides are equal(Correct!). Well, this nothing but a nested hierarchy of concept.What we did, we took a complex task of identifying a square in this case and broke it into simpler tasks. Now, this Deep Learning also does this but on a larger scale.Example 2: Lets take an example of a machine which recognises the animals. The task of the machine is to recognize whether the given image is of a cat or of a dog.What if were asked to resolve the same issue using the concepts of machine learning, what we would do? First, we would define the features such as check whether the animal has whiskers or not, or check if the animal has pointed ears or not or whether its tail is straight or curved. In short, we will define the facial features and let the system identify which features are more important in classifying a particular animal.Now when it comes to deep learning. It takes this to one step ahead. Deep Learning automatically finds out the features which are important for classification, comparing to Machine Learning where we had to manually give the features.By now I guess my blog- AI vs Machine Learning vs Deep Learning has made you clear that AI is a bigger picture, and Machine Learning and Deep Learning are its subparts, so concluding it I would say the easiest way of understanding the difference between machine learning and deep learning is to know that deep learning is machine learning. More specifically, its the next evolution of machine learning. Looking for a complete Machine Learning course? Enroll Now Recommended videos for you Web Scraping And Analytics With Python Watch Now Data Science : Make Smarter Business Decisions Watch N ow Python for Big Data Analytics Watch Now Python Loops While, For and Nested Loops in Python Programming Watch Now Python Classes Python Programming Tutorial Watch Now Mastering Python : An Excellent tool for Web Scraping and Data Analysis Watch Now Python Programming Learn Python Programming From Scratch Watch Now Sentiment Analysis In Retail Domain Watch Now Python List, Tuple, String, Set And Dictonary Python Sequences Watch Now Python Tutorial All You Need To Know In Python Programming Watch Now 3 Scenarios Where Predictive Analytics is a Must Watch Now Business Analytics Decision Tree in R Watch Now Introduction to Business Analytics with R Watch Now Machine Learning With Python Python Machine Learning Tutorial Watch Now Diversity Of Python Programming Watch Now Python Numpy Tutorial Arrays In Python Watch Now The Whys and Hows of Predictive Modeling-II Watch Now Android Development : Using Android 5.0 Lollipop Watch Now Linear Regression With R Watch Now The Whys and H ows of Predictive Modelling-I Watch NowRecommended blogs for you What is Queue Data Structure In Python? Read Article Which is the Best Book for Machine Learning? Read Article Naive Bayes Classifier: Learning Naive Bayes with Python Read Article 3 Compelling Reasons to choose Python Read Article Programming With Python Tutorial Read Article String Slicing in Python: All you Need to Know Read Article R Tutorial A Beginners Guide to Learn R Programming Read Article How To Implement Find-S Algorithm In Machine Learning? Read Article How to Implement Super Function in Python Read Article A Beginners Guide To Python Functions Read Article Important Python Data Types You Need to Know Read Article How To Best Implement Multiprocessing In Python? Read Article Top 10 Data Science Applications Read Article How To Input a List in Python? Read Article KNN Algorithm: A Practical Implementation Of KNN Algorithm In R Read Article What Is Data Science? A Beginners Guide To Data Science Read Articl e Dictionary In Python: Everything You Need To Know About Python Dictionary Read Article How to implement Merge Sort in Python? Read Article Top 50 R Interview Questions You Must Prepare in 2020 Read Article How To Implement Classification In Machine Learning? Read Article Comments 0 Comments Trending Courses in Data Science Python Certification Training for Data Scienc ...66k Enrolled LearnersWeekend/WeekdayLive Class Reviews 5 (26200)
Subscribe to:
Post Comments (Atom)
No comments:
Post a Comment
Note: Only a member of this blog may post a comment.