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Machine Learning Full Course – Be taught Machine Studying 10 Hours | Machine Studying Tutorial | Edureka


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Machine Learning Full Course – Learn Machine Studying 10 Hours |  Machine Learning Tutorial |  Edureka
Study , Machine Learning Full Course - Be taught Machine Learning 10 Hours | Machine Studying Tutorial | Edureka , , GwIo3gDZCVQ , https://www.youtube.com/watch?v=GwIo3gDZCVQ , https://i.ytimg.com/vi/GwIo3gDZCVQ/hqdefault.jpg , 2091590 , 5.00 , Machine Learning Engineer Masters Program (Use Code "YOUTUBE20"): ... , 1569141000 , 2019-09-22 10:30:00 , 09:38:32 , UCkw4JCwteGrDHIsyIIKo4tQ , edureka! , 39351 , , [vid_tags] , https://www.youtubepp.com/watch?v=GwIo3gDZCVQ , [ad_2] , [ad_1] , https://www.youtube.com/watch?v=GwIo3gDZCVQ, #Machine #Learning #Full #Study #Machine #Learning #Hours #Machine #Learning #Tutorial #Edureka [publish_date]
#Machine #Learning #Full #Be taught #Machine #Learning #Hours #Machine #Learning #Tutorial #Edureka
Machine Studying Engineer Masters Program (Use Code "YOUTUBE20"): ...
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  • Mehr zu learn Learning is the work on of effort new apprehension, knowledge, behaviors, technique, belief, attitudes, and preferences.[1] The quality to learn is demoniac by humanity, animals, and some machines; there is also inform for some kind of eruditeness in indisputable plants.[2] Some encyclopedism is close, iatrogenic by a ace event (e.g. being baked by a hot stove), but much skill and noesis amass from recurrent experiences.[3] The changes iatrogenic by encyclopedism often last a lifespan, and it is hard to qualify learned stuff that seems to be "lost" from that which cannot be retrieved.[4] Human eruditeness get going at birth (it might even start before[5] in terms of an embryo's need for both fundamental interaction with, and immunity inside its state of affairs inside the womb.[6]) and continues until death as a outcome of ongoing interactions between people and their environs. The world and processes caught up in encyclopaedism are unstudied in many established comedian (including instructive psychological science, psychology, psychonomics, cognitive sciences, and pedagogy), also as future fields of noesis (e.g. with a distributed interest in the topic of encyclopaedism from device events such as incidents/accidents,[7] or in collaborative learning wellbeing systems[8]). Research in such comic has led to the recognition of different sorts of encyclopedism. For case, encyclopedism may occur as a consequence of physiological condition, or classical conditioning, operant conditioning or as a consequence of more composite activities such as play, seen only in comparatively rational animals.[9][10] Education may occur consciously or without cognizant knowing. Encyclopedism that an aversive event can't be avoided or on the loose may consequence in a state titled enlightened helplessness.[11] There is info for human behavioural education prenatally, in which physiological state has been ascertained as early as 32 weeks into mental synthesis, indicating that the central uneasy organization is sufficiently matured and ready for encyclopedism and mental faculty to occur very early in development.[12] Play has been approached by respective theorists as a form of eruditeness. Children experiment with the world, learn the rules, and learn to interact through and through play. Lev Vygotsky agrees that play is pivotal for children's evolution, since they make pregnant of their surroundings through playing educational games. For Vygotsky, even so, play is the first form of learning terminology and human activity, and the stage where a child started to read rules and symbols.[13] This has led to a view that learning in organisms is definitely associated to semiosis,[14] and often associated with naturalistic systems/activity.

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  1. Got a question on the topic? Please share it in the comment section below and our experts will answer it for you. For Edureka Machine Learning & AI Masters Course Curriculum, Visit our Website: http://bit.ly/2QixjBC (Use Code "𝐘𝐎𝐔𝐓𝐔𝐁𝐄𝟐𝟎") Here is the video timeline: 2:47 What is Machine Learning?

    4:08 AI vs ML vs Deep Learning

    5:43 How does Machine Learning works?

    6:18 Types of Machine Learning

    6:43 Supervised Learning

    8:38 Supervised Learning Examples

    11:49 Unsupervised Learning

    13:54 Unsupervised Learning Examples

    16:09 Reinforcement Learning

    18:39 Reinforcement Learning Examples

    19:34 AI vs Machine Learning vs Deep Learning

    22:09 Examples of AI

    23:39 Examples of Machine Learning

    25:04 What is Deep Learning?

    25:54 Example of Deep Learning

    27:29 Machine Learning vs Deep Learning

    33:49 Jupyter Notebook Tutorial

    34:49 Installation

    50:24 Machine Learning Tutorial

    51:04 Classification Algorithm

    51:39 Anomaly Detection Algorithm

    52:14 Clustering Algorithm

    53:34 Regression Algorithm

    54:14 Demo: Iris Dataset

    1:12:11 Stats & Probability for Machine Learning

    1:16:16 Categories of Data

    1:16:36 Qualitative Data

    1:17:51 Quantitative Data

    1:20:55 What is Statistics?

    1:23:25 Statistics Terminologies

    1:24:30 Sampling Techniques

    1:27:15 Random Sampling

    1:28:05 Systematic Sampling

    1:28:35 Stratified Sampling

    1:29:35 Types of Statistics

    1:32:21 Descriptive Statistics

    1:37:36 Measures of Spread

    1:44:01 Information Gain & Entropy

    1:56:08 Confusion Matrix

    2:00:53 Probability

    2:03:19 Probability Terminologies

    2:04:55 Types of Events

    2:05:35 Probability of Distribution

    2:10:45 Types of Probability

    2:11:10 Marginal Probability

    2:11:40 Joint Probability

    2:12:35 Conditional Probability

    2:13:30 Use-Case

    2:17:25 Bayes Theorem

    2:23:40 Inferential Statistics

    2:24:00 Point Estimation

    2:26:50 Interval Estimate

    2:30:10 Margin of Error

    2:34:20 Hypothesis Testing

    2:41:25 Supervised Learning Algorithms

    2:42:40 Regression

    2:44:05 Linear vs Logistic Regression

    2:49:55 Understanding Linear Regression Algorithm

    3:11:10 Logistic Regression Curve

    3:18:34 Titanic Data Analysis

    3:58:39 Decision Tree

    3:58:59 what is Classification?

    4:01:24 Types of Classification

    4:08:35 Decision Tree

    4:14:20 Decision Tree Terminologies

    4:18:05 Entropy

    4:44:05 Credit Risk Detection Use-case

    4:51:45 Random Forest

    5:00:40 Random Forest Use-Cases

    5:04:29 Random Forest Algorithm

    5:16:44 KNN Algorithm

    5:20:09 KNN Algorithm Working

    5:27:24 KNN Demo

    5:35:05 Naive Bayes

    5:40:55 Naive Bayes Working

    5:44:25Industrial Use of Naive Bayes

    5:50:25 Types of Naive Bayes

    5:51:25 Steps involved in Naive Bayes

    5:52:05 PIMA Diabetic Test Use Case

    6:04:55 Support Vector Machine

    6:10:20 Non-Linear SVM

    6:12:05 SVM Use-case

    6:13:30 k Means Clustering & Association Rule Mining

    6:16:33 Types of Clustering

    6:17:34 K-Means Clustering

    6:17:59 K-Means Working

    6:21:54 Pros & Cons of K-Means Clustering

    6:23:44 K-Means Demo

    6:28:44 Hirechial Clustering

    6:31:14 Association Rule Mining

    6:34:04 Apriori Algorithm

    6:39:19 Apriori Algorithm Demo

    6:43:29 Reinforcement Learning

    6:46:39 Reinforcement Learning: Counter-Strike Example

    6:53:59 Markov's Decision Process

    6:58:04 Q-Learning

    7:02:39 The Bellman Equation

    7:12:14 Transitioning to Q-Learning

    7:17:29 Implementing Q-Learning

    7:23:33 Machine Learning Projects

    7:38:53 Who is a ML Engineer?

    7:39:28 ML Engineer Job Trends

    7:40:43 ML Engineer Salary Trends

    7:42:33 ML Engineer Skills

    7:44:08 ML Engineer Job Description

    7:45:53 ML Engineer Resume

    7:54:48 Machine Learning Interview Questions

  2. Thank you, I'm planning to take informatics as my master degree, this is really beneficial🌈🙏

  3. When I am loading libraries.I am getting an error like connot import name 'LinearDisciminantAnalysis' from 'sklearn.discriminant_analysis' please tell me what are the prerequisites for loading that libraries

  4. Thanks Edureka! This is the best tutorial for machine learning!!! May I have the PPT and code?

  5. First the video is incredible I really liked it keep going the best of the best
    And can I get this ppt? And the codes? I will be glad 😊 🙏🌸

  6. Thank you so much Edureka for this course it has made it so easy for someone trying to acquire knowledge about ML. please can I get the data sets and source codes used in this video?

  7. Do we need to have basic understanding of MATPLOTLIB,PANDAS,NUMPY for ML Engineer ?

  8. In section 12 – at 2:00:40 you have mentioned FN and TN are the correct classifications. Is that correct ? I thought TP and FN are correct classifications. Can you clarify ?

  9. @edureka! I can't understand the part from 54:14 Demo: Iris Dataset. What prerequisites do I need. I know the basics of python, but I still don't understand anything.

  10. Great tutorial Team Edureka, very good explanation. Could you please share the datasets and code for this course? That'd be great help.

  11. Error in bayes theorem proof:
    Your slide in video at timeline 5:39:53 is in error.
    P(A and B) = P(A/B) P(B) not
    P(A/B) P(A), as shown by you

  12. Thank you Edureka for this amazing video. Could you please share the code too.

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