Machine Learning Full Course | Learn Machine Learning | Machine Learning Tutorial | Simplilearn

  Рет қаралды 895,838

Simplilearn

Simplilearn

Күн бұрын

🔥AI & Machine Learning Bootcamp(US Only): www.simplilearn.com/ai-machin...
🔥Professional Certificate Course In AI And Machine Learning by IIT Kanpur (India Only): www.simplilearn.com/iitk-prof...
🔥 Purdue Post Graduate Program In AI And Machine Learning: www.simplilearn.com/pgp-ai-ma...
🔥AI Engineer Masters Program (Discount Code - YTBE15): www.simplilearn.com/masters-i...
This complete Machine Learning full course video covers all the topics that you need to know to become a master in the field of Machine Learning. It covers all the basics of Machine Learning, the different types of Machine Learning, and the various applications of Machine Learning used in different industries. This video will help you learn different Machine Learning algorithms in Python. Linear Regression, Logistic Regression, K Means Clustering, Decision Tree, and Support Vector.
Dataset Link - drive.google.com/drive/folder...
Below topics are explained in this Machine Learning course for beginners:
0:00 Table of contents
01:46 Basics of Machine Learning
09:18 Why Machine Learning
13:25 What is Machine Learning
18:32 Types of Machine Learning
18:44 Supervised Learning
21:06 Reinforcement Learning
22:26 Supervised VS Unsupervised
23:38 Linear Regression
25:08 Introduction to Machine Learning
26:40 Application of Linear Regression
27:19 Understanding Linear Regression
28:00 Regression Equation
35:57 Multiple Linear Regression
55:45 Logistic Regression
56:04 What is Logistic Regression
59:35 What is Linear Regression
01:05:28 Comparing Linear & Logistic Regression
01:26:20 What is K-Means Clustering
01:38:00 How does K-Means Clustering work
02:15:15 What is Decision Tree
02:25:15 How does Decision Tree work
02:39:56 Random Forest Tutorial
02:41:52 Why Random Forest
02:43:21 What is Random Forest
02:52:02 How does Decision Tree work-
03:22:02 K-Nearest Neighbors Algorithm Tutorial
03:24:11 Why KNN
03:24:24 What is KNN
03:25:38 How do we choose 'K'
03:27:37 When do we use KNN
03:48:31 Applications of Support Vector Machine
03:48:55 Why Support Vector Machine
03:50:34 What Support Vector Machine
03:54:54 Advantages of Support Vector Machine
04:13:06 What is Naive Bayes
04:17:45 Where is Naive Bayes used
04:54:48 Top 10 Application of Machine Learning
Subscribe to our channel for more Machine Learning Tutorials: kzbin.info...
#MachineLearning #CompleteMachineLearningCourse #MachineLearningForBeginners #MachineLearningTutorial #MachineLearningWithPython #LearnMachineLearning #MachineLearingBasics #MachineLearningAlgorithms #MachineLearningEngineer #MachineLearningEngineerSalary #MachineLearningEngineerSkills #SimplilearnMachineLearning #MachineLearningCourse
➡️ About Post Graduate Program In AI And Machine Learning
This AI ML course is designed to enhance your career in AI and ML by demystifying concepts like machine learning, deep learning, NLP, computer vision, reinforcement learning, and more. You'll also have access to 4 live sessions, led by industry experts, covering the latest advancements in AI such as generative modeling, ChatGPT, OpenAI, and chatbots.
✅ Key Features
- Post Graduate Program certificate and Alumni Association membership
- Exclusive hackathons and Ask me Anything sessions by IBM
- 3 Capstones and 25+ Projects with industry data sets from Twitter, Uber, Mercedes Benz, and many more
- Master Classes delivered by Purdue faculty and IBM experts
- Simplilearn's JobAssist helps you get noticed by top hiring companies
- Gain access to 4 live online sessions on latest AI trends such as ChatGPT, generative AI, explainable AI, and more
- Learn about the applications of ChatGPT, OpenAI, Dall-E, Midjourney & other prominent tools
✅ Skills Covered
- ChatGPT
- Generative AI
- Explainable AI
- Generative Modeling
- Statistics
- Python
- Supervised Learning
- Unsupervised Learning
- NLP
- Neural Networks
- Computer Vision
- And Many More…
Learn more at: www.simplilearn.com/big-data-...
🔥 Enroll for FREE Machine Learning Course & Get your Completion Certificate: www.simplilearn.com/learn-mac..."

Пікірлер: 4 600
@SimplilearnOfficial
@SimplilearnOfficial 10 ай бұрын
🔥AI & Machine Learning Bootcamp(US Only): www.simplilearn.com/ai-machine-learning-bootcamp?MachineLearning-9f-GarcDY58&Comments& 🔥Professional Certificate Course In AI And Machine Learning by IIT Kanpur (India Only): www.simplilearn.com/iitk-professional-certificate-course-ai-machine-learning?AugustTubebuddyExpPCPAIandML&Comments& 🔥 Purdue Post Graduate Program In AI And Machine Learning: www.simplilearn.com/pgp-ai-machine-learning-certification-training-course?MachineLearning-9f-GarcDY58&Comments& 🔥AI Engineer Masters Program (Discount Code - YTBE15): www.simplilearn.com/masters-in-artificial-intelligence?SCE-AIMasters&CommentsFF&
@shreyaskulkarni6910
@shreyaskulkarni6910 3 жыл бұрын
Dene waala jab bhi deta deta chhapar phad ke thankyou for such amazing course huge respect ✊🙏🏻🙏🏻🙏🏻
@imranshaikh115
@imranshaikh115 3 жыл бұрын
It's a very great tutorial ever found on youtube, Thanks a lot for sharing your valuable time and knowledge. It would be great if would have put all the practice datasets in the description.
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Hello, thanks for viewing our tutorial. It would be helpful if you will provide your email ID to us so that we can send the requested dataset promptly. On the off chance that you need your email ID to be kept hidden from others, we can do that too. Hope that helps.
@amritapal1000
@amritapal1000 2 жыл бұрын
@@SimplilearnOfficial hi team could you please send me the datasets used in this video as well? My email id is mou229@Gmail.com
@samrudhichatorikar7133
@samrudhichatorikar7133 2 жыл бұрын
@@SimplilearnOfficial l 🙏 LP see
@samrudhichatorikar7133
@samrudhichatorikar7133 2 жыл бұрын
@@SimplilearnOfficial mo
@sadrulalom1627
@sadrulalom1627 2 жыл бұрын
It's really a great.. I can't believe how to make the learning simple... Thank you.. expected more videos
@robindong3802
@robindong3802 3 жыл бұрын
Simplilearn always provided us the best tutorials, great job, really love it.
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Glad you like them!
@dhurpo
@dhurpo 4 жыл бұрын
This is a great tutorial! Very easy to follow for beginners. Thank you for this! Could you please tell me how I can find the coefficient for the variable “State” in total? As now the variable has split into two and each of those has a separate coefficient.
@ambroseap3474
@ambroseap3474 3 жыл бұрын
does it mean that, knowing everything in this course, qualifies me as a machine learning expert? asking for a friend please .
@d4doe949
@d4doe949 Жыл бұрын
Will watch this soon. Very grateful to Simplilearn. Thank you so much for sharing your knowledge with us.🙏
@SimplilearnOfficial
@SimplilearnOfficial Жыл бұрын
Hello thank you for watching our video .We are glad that we could help you in your learning !
@Eduapfbr
@Eduapfbr 4 жыл бұрын
I would like to thank the Simplilearn staff, especially Mr. Kennet Rajan for the datasets. Thank you very much and congratulations for the professionalism.
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Many many thanks! Do subscribe to our channel and stay tuned for more.
@tamalmajumder7160
@tamalmajumder7160 3 жыл бұрын
@@SimplilearnOfficial tamalmajumder687@gmail.com , pls mail the csv
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Machine Learning is the Future and yours can begin today. Comment below with your email to get our latest Machine Learning Career Guide. Let your journey begin. Do not forget to answer the quiz at 06:50 . Here are the topics covered with the timelines: Basics of Machine Learning - 01:46 Why Machine Learning - 09:18 What is Machine Learning - 13:25 Types of Machine Learning - 18:32 Supervised Learning - 18:44 Reinforcement Learning - 21:06 Supervised VS Unsupervised - 22:26 Linear Regression - 23:38 Introduction to Machine Learning - 25:08 Application of Linear Regression - 26:40 Understanding Linear Regression - 27:19 Regression Equation - 28:00 Multiple Linear Regression - 35:57 Logistic Regression - 55:45 What is Logistic Regression - 56:04 What is Linear Regression - 59:35 Comparing Linear & Logistic Regression - 01:05:28 What is K-Means Clustering - 01:26:20 How does K-Means Clustering work - 01:38:00 What is Decision Tree - 02:15:15 How does Decision Tree work - 02:25:15 Random Forest Tutorial - 02:39:56 Why Random Forest - 02:41:52 What is Random Forest - 02:43:21 How does Decision Tree work- 02:52:02 K-Nearest Neighbors Algorithm Tutorial - 03:22:02 Why KNN - 03:24:11 What is KNN - 03:24:24 How do we choose 'K' - 03:25:38 When do we use KNN - 03:27:37 Applications of Support Vector Machine - 03:48:31 Why Support Vector Machine - 03:48:55 What Support Vector Machine - 03:50:34 Advantages of Support Vector Machine - 03:54:54 What is Naive Bayes - 04:13:06 Where is Naive Bayes used - 04:17:45 Top 10 Application of Machine Learning - 04:54:48 How to become a Machine Learning Engineer - 04:59:46 Machine Learning Interview Questions - 05:09:03 Do check out our Machine Learning Certification Training at www.simplilearn.com/big-data-and-analytics/machine-learning-certification-training-course . Do you have any questions on this topic? Please share your feedback in the comment section below and we'll have our experts answer it for you. Thanks for watching the video. Cheers!
@andreriley739
@andreriley739 4 жыл бұрын
Can you please share the 1000_Companies csv?
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Hello Andre, thanks for viewing our tutorial and we hope it is helpful. It would be helpful if you will provide your email ID to us so that we could send the requested dataset promptly.
@buntypatel4669
@buntypatel4669 4 жыл бұрын
I dont have knowledge about python. But i have knowledge in java with ds and ada concept are clear.. Can i start this course or should i start python and jump into this course?... Plzz help me.😳
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Hi Bunty, it would be great if you can start learning Python coz it has an edge over Java in a lot of aspects. Java requires you to declare the data types of your variables before using them, while Python does not. Because it is statically typed, it expects its variables to be declared before they can be assigned values. Python is more flexible and can save you time and space when running scripts.
@Adgagdga
@Adgagdga 4 жыл бұрын
at (4:25:23) when A equals buy... you wrote P(weekday?buy)= = 2/6 it's wrong right ? it should be 9/24
@SandeepRana-xn8mk
@SandeepRana-xn8mk 2 жыл бұрын
Hi Sir, In Linear Regression at 54:00, we have 4 input label column but we are getting (large no. of regression coefficients) that is slope values. Why ? We should get only 4 slope coefficient value.
@lkong
@lkong 3 жыл бұрын
Great tutorial! Very easy to follow. I learned a lot. Thanks a lot!!
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Hi, thanks for watching our video. We have sent the requested dataset to your mail ID. Do show your love by subscribing to our channel using this link: kzbin.info and don't forget to hit the like button as well. Cheers!
@duhithashety
@duhithashety 3 жыл бұрын
Ppt was easy and impressive, and the course contents started from scratch and explained with sufficient examples thank you simplilearn
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Glad you enjoyed our video! We have a ton more videos like this on our channel. We hope you will join our community!
@ajiththalachil
@ajiththalachil 4 жыл бұрын
This was very helpful. Well explained in detail and thanks for sharing the timelines as well. COuld you please provide me with the data set used in the tutorial.
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Hello Ajith, thanks for viewing our tutorial. It would be helpful if you will provide your email ID to us so that we could send the requested dataset promptly. On the off chance that you need your email ID to be kept hidden from others, we can do that also. Hope that helps.
@ajiththalachil
@ajiththalachil 4 жыл бұрын
@@SimplilearnOfficial ajith172@homail.com
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
@@ajiththalachil THanks for sharing your email ID. We have sent the requested dataset to your mail ID. Do subscribe to our channel and stay updated.
@mohamedbhasith90
@mohamedbhasith90 4 жыл бұрын
@@SimplilearnOfficial sir,can you please send the datasets for me too..here is my email id. thamisbhasith8@gmail.com
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Hi, thanks for watching our video. We have sent the requested dataset to your mail ID. Do show your love by subscribing to our channel using this link: kzbin.info and don't forget to hit the like button as well. Cheers!
@dataprince4504
@dataprince4504 4 жыл бұрын
Hi, thanks for the tutorial. It is really helpful, I enjoyed watching. Now i would like to try it myself. Please could you send me the datasets used in this course? Thank you.
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Hello, thanks for viewing our tutorial. It would be helpful if you will provide your email ID to us so that we could send the requested dataset promptly. On the off chance that you need your email ID to be kept hidden from others, we can do that also. Hope that helps.
@PavendanKumar
@PavendanKumar 2 жыл бұрын
Hello Sir, Thanks for giving such wonderful lectures on this topic! I have a doubt on one hot encoding in linear regression.....categorical_features = [3] is not working ...showing an error.....how can i rectify this?????????i tried with column transformer instead but output changed to different values ....
@bikrambhattacharjee4967
@bikrambhattacharjee4967 4 жыл бұрын
Just started watching this video as a beginner with a little knowledge on python..but this seems amazing..
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Glad it was helpful!
@warriorv8360
@warriorv8360 3 жыл бұрын
I'm watching machine learning course on youtube is always recommend on my home
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
That's awesome!
@fazalurrahman3027
@fazalurrahman3027 4 жыл бұрын
TYSM for uploading this , Efforts appreciated , it was great learning the whole course :) . Can you guys please send me .csv file of data sets ?
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Hi Fazal, we are glad you love our videos. It would be helpful if you will provide your email ID to us so that we could send the requested dataset promptly.
@nithishreddy2572
@nithishreddy2572 4 жыл бұрын
did they sent .csv?
@krishna2803
@krishna2803 4 жыл бұрын
@@nithishreddy2572, I also asked them many times, but I didn't receive any files. :'-(
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
@@krishna2803 Hello Krishna, thanks for viewing our tutorial and we hope it is helpful. It would be helpful if you will provide your email ID to us so that we could send the requested dataset promptly.
@vivekpandey6979
@vivekpandey6979 4 жыл бұрын
@@SimplilearnOfficial please provide CSV files and required file need to learn ml pandeyvivek203@gmail.com
@IMMANUELDAVIDSONURKRA
@IMMANUELDAVIDSONURKRA 2 жыл бұрын
The explanation was good. Thanks a lot for sharing your valuable time and knowledge. It would be great if would have put all the practice datasets in the description.
@SimplilearnOfficial
@SimplilearnOfficial 2 жыл бұрын
Hello, thanks for viewing our tutorial. You can find your requested dataset in the video description. Hope that helps.
@rlgcwm
@rlgcwm Жыл бұрын
Excellent tutorial and the best i have seen so far on internet. Thanks.😀😃
@SimplilearnOfficial
@SimplilearnOfficial Жыл бұрын
We are delighted to have been a part of your learning journey! If you want to continue honing your skills and keeping up-to-date with industry trends, check out our course offerings in the description box.
@girishthendi6815
@girishthendi6815 3 жыл бұрын
I m 31 now, I m a complete fresher in machine learning and in python, I was working as a supermarket billing guy for the past 8 years. Can I have a future in big companies if I study this??
@successsteertv
@successsteertv 3 жыл бұрын
Oh Yes You can I started IT when I was 34 Now I am 39. Please go ahead and learn all the way, the future is bright for you
@WeLoveChess
@WeLoveChess 3 жыл бұрын
Ya best of luck
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Thanks for sharing your valuable experience.
@danish_roshan
@danish_roshan 3 жыл бұрын
Yeah.. Best of luck
@jaganmohan520
@jaganmohan520 3 жыл бұрын
100% Yes for sure.. But not easy.. Once u learn these technologies, U will understand what u need to learn more.. to get a job It will take atleast 1.5 years for your success.. I would suggest once u complete the basics, select a role that u want to achieve > search for jobs on Naukri with role like "data engineer" or "data scientist" etc> write down companies requirement > then start learning most frequent requirements So u will be confident for applying such jobs next time. All the best..
@devarpitasinha8649
@devarpitasinha8649 2 жыл бұрын
Is it possible to get the dataset? I want to implement the codes by myself. Thank you in advance.
@SimplilearnOfficial
@SimplilearnOfficial 2 жыл бұрын
Hello, thanks for viewing our tutorial. It would be helpful if you will provide your email ID to us so that we can send the requested dataset promptly. On the off chance that you need your email ID to be kept hidden from others, we can do that too. Hope that helps.
@AbhishekMishra-nx6ro
@AbhishekMishra-nx6ro 2 жыл бұрын
I love this channel than edureka because of animated explaination Hats off to your working ❤️❤️
@SimplilearnOfficial
@SimplilearnOfficial 2 жыл бұрын
Thank you for the appreciation. You can check our videos related to various technologies and subscribe to our channel to stay updated with all the trending technologies.
@guruprasad6102
@guruprasad6102 4 жыл бұрын
The entire video is really great. But I had a doubt in interview questions section at time stamp 5:16:00 it's been said that when model gets higher accuracy in train data and less on test data that's over fitting which I think is not correct as per my understanding it should be the case with under fitting. And when model tries to judge each point correctly that is having high validation accuracy and less training accuracy that's the over fitting case.
@chalmerilexus2072
@chalmerilexus2072 2 жыл бұрын
No dear. Tutor is right.
@MuhammadIjaz-fp5rt
@MuhammadIjaz-fp5rt 4 жыл бұрын
Quiz#1: 1.Supervised 2.Supervised 3.Unsupervised Is I am correct?
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Wow! You got all the answers right. Here are the answers with explanation. Scenario 1: Facebook recognizes your friend in a picture from an album of tagged photographs Explanation: It is supervised learning. Here Facebook is using tagged photos to recognize the person. Therefore, the tagged photos become the labels of the pictures and we know that when the machine is learning from labelled data, it is supervised learning. Scenario 2: Recommending new songs based on someone’s past music choices Explanation: It is supervised learning. The model is training a classifier on pre-existing labels (genres of songs). This is what Netflix, Pandora, and Spotify do all the time, they collect the songs/movies that you like already, evaluate the features based on your likes/dislikes and then recommend new movies/songs based on similar features. Scenario 3: Analyze bank data for suspicious looking transactions and flag the fraud transactions Explanation: It is unsupervised learning. In this case, the suspicious transactions are not defined, hence there are no labels of ""fraud"" and ""not fraud"". The model tries to identify outliers by looking at anomalous transactions and flags them as 'fraud'.
@lakshmi24101986
@lakshmi24101986 4 жыл бұрын
@@SimplilearnOfficial Awesome examples!
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Thanks for appreciating our work. Cheers!
@ezhilarasu5822
@ezhilarasu5822 4 жыл бұрын
@@SimplilearnOfficial tnx for the answer
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
You are welcome!
@ravinikam8228
@ravinikam8228 4 жыл бұрын
1.supervised(Label) 2.unsupervised(Based on past data) 3.unsupervised(Based on past data)
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Hi Ravi, Below are the right answers and explanation for the quiz. Scenario 1: Facebook recognizes your friend in a picture from an album of tagged photographs Explanation: It is supervised learning. Here Facebook is using tagged photos to recognize the person. Therefore, the tagged photos become the labels of the pictures and we know that when the machine is learning from labelled data, it is supervised learning. Scenario 2: Recommending new songs based on someone’s past music choices Explanation: It is supervised learning. The model is training a classifier on pre-existing labels (genres of songs). This is what Netflix, Pandora, and Spotify do all the time, they collect the songs/movies that you like already, evaluate the features based on your likes/dislikes and then recommend new movies/songs based on similar features. Scenario 3: Analyze bank data for suspicious looking transactions and flag the fraud transactions Explanation: It is unsupervised learning. In this case, the suspicious transactions are not defined, hence there are no labels of "fraud" and "not fraud". The model tries to identify outliers by looking at anomalous transactions and flags them as 'fraud.
@benjaminfindon5028
@benjaminfindon5028 4 жыл бұрын
@@SimplilearnOfficial oh right
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Glad you enjoyed our video!
@divyavinod6131
@divyavinod6131 6 ай бұрын
very nice explanation.Thank you.
@aniketchauhan9627
@aniketchauhan9627 2 жыл бұрын
Thanks for amazing tutorial, I'm looking for. Really good explanation and concept. it will be good if you will send practice dataset
@SimplilearnOfficial
@SimplilearnOfficial 2 жыл бұрын
Hello, thanks for viewing our tutorial. You can find your requested dataset in the video description. Hope that helps.
@brindhasenthilkumar7871
@brindhasenthilkumar7871 4 жыл бұрын
Facebook - Supervised Learning Netflix - Unsupervised Learning Fraud detection - Supervised Learning
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Sorry, you didn't get everything correct. You can check out the correct answers below: Scenario 1: Facebook recognizes your friend in a picture from an album of tagged photographs Explanation: It is supervised learning. Here Facebook is using tagged photos to recognize the person. Therefore, the tagged photos become the labels of the pictures and we know that when the machine is learning from labelled data, it is supervised learning. Scenario 2: Recommending new songs based on someone’s past music choices Explanation: It is supervised learning. The model is training a classifier on pre-existing labels (genres of songs). This is what Netflix, Pandora, and Spotify do all the time, they collect the songs/movies that you like already, evaluate the features based on your likes/dislikes and then recommend new movies/songs based on similar features. Scenario 3: Analyze bank data for suspicious looking transactions and flag the fraud transactions Explanation: It is unsupervised learning. In this case, the suspicious transactions are not defined, hence there are no labels of ""fraud"" and ""not fraud"". The model tries to identify outliers by looking at anomalous transactions and flags them as 'fraud'.
@AMJADKHAN-fy3zh
@AMJADKHAN-fy3zh 4 жыл бұрын
right
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Thanks for watching our video @Amjad
@vijayvaghasiya
@vijayvaghasiya 4 жыл бұрын
@@SimplilearnOfficial How her all answers are correct? Her last 2 answers are wrong based on your explanation.
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Sorry! its our mistake.
@makindefunmilayo9703
@makindefunmilayo9703 4 жыл бұрын
Hi, thanks for the tutorial, It is really helpful. Please could you send me the datasets used in this course. Thank you.
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Hi Makinde, we are glad you found our video helpful. It would be helpful if you will provide your email ID to us so that we could send the requested dataset promptly.
@RahulSharma-wz6yv
@RahulSharma-wz6yv 4 жыл бұрын
@@SimplilearnOfficial hello sir, please send me also the dataset, my email is rahul.rameshwar.sharma@gmail.com
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
@@RahulSharma-wz6yv Hi Rahul, thanks for watching our video. We have sent the requested dataset to your mail ID. Do subscribe to our channel and get our new video updates directly into your email. If you have any questions related to these videos, you can post in the comments section, we will clear your queries/doubts.
@nomadsoulkarma
@nomadsoulkarma 4 жыл бұрын
Hi please send the datasets to me too! bruce@cebilingual.com
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Hi Bruce, thanks for sharing your email ID. We have sent the requested dataset to your mail ID. Do subscribe to our channel to stay posted on upcoming tutorials. Cheers!
@kananzeynalzada1900
@kananzeynalzada1900 3 жыл бұрын
Hi, I hope everyone is safe and sound. I am new to machine learning. I have got some questions about Multicollinearity (Testing VIF Score). 1. When building a multiple linear regression model, should we check for multicollinearity? 2. What models do require to check for multicollinearity issue? 3. If there is multicollinearity issue, how can we eliminate it? 4. Is testing a VIF score for each feature a viable option to eliminate multicollinearity? 5. I have not watched the full video but will you teach multicollinearity handling? Thanks!
@itshiraljain
@itshiraljain 3 жыл бұрын
Thanks a lot for this wonderful tutorial.
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Sent!
@atulpandey1979
@atulpandey1979 4 жыл бұрын
1- supervised 2- Unsupervised 3- supervised... Pls leme know the answers if m wrong Thanks this is an amazing video...😊
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Hi Atul, Below are the right answers and explanation for the quiz. Scenario 1: Facebook recognizes your friend in a picture from an album of tagged photographs Explanation: It is supervised learning. Here Facebook is using tagged photos to recognize the person. Therefore, the tagged photos become the labels of the pictures and we know that when the machine is learning from labelled data, it is supervised learning. Scenario 2: Recommending new songs based on someone’s past music choices Explanation: It is supervised learning. The model is training a classifier on pre-existing labels (genres of songs). This is what Netflix, Pandora, and Spotify do all the time, they collect the songs/movies that you like already, evaluate the features based on your likes/dislikes and then recommend new movies/songs based on similar features. Scenario 3: Analyze bank data for suspicious looking transactions and flag the fraud transactions Explanation: It is unsupervised learning. In this case, the suspicious transactions are not defined, hence there are no labels of "fraud" and "not fraud". The model tries to identify outliers by looking at anomalous transactions and flags them as 'fraud'
@lilyabetit6354
@lilyabetit6354 4 жыл бұрын
​@@SimplilearnOfficial Hello first, I would like to thank you for this interesting video as well as for your answers. In fact, I find that your explanation for the second senario is not complete because, to the best of my knowledge, you must specify that it is a recommendation based on the content and not the collaborative recommendation in which we usually use clustering algorithms to group similar people together.
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
@@lilyabetit6354 Hi Lilya, thanks for appreciating our work. We will definitely share your feedback with our tech team. Thanks.
@lilyabetit6354
@lilyabetit6354 4 жыл бұрын
@@SimplilearnOfficial Hi thank you so much, i am excited and i am waiting the answer of your tech team !
@joel9909
@joel9909 4 жыл бұрын
Quiz answers: 1. FaceBook : Supervised 2. Netflix: Unsupervised 3. Fraud detection: Supervised
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Hi Joel, Below are the right answers and explanation for the quiz. Scenario 1: Facebook recognizes your friend in a picture from an album of tagged photographs Explanation: It is supervised learning. Here Facebook is using tagged photos to recognize the person. Therefore, the tagged photos become the labels of the pictures and we know that when the machine is learning from labelled data, it is supervised learning. Scenario 2: Recommending new songs based on someone’s past music choices Explanation: It is supervised learning. The model is training a classifier on pre-existing labels (genres of songs). This is what Netflix, Pandora, and Spotify do all the time, they collect the songs/movies that you like already, evaluate the features based on your likes/dislikes and then recommend new movies/songs based on similar features. Scenario 3: Analyze bank data for suspicious looking transactions and flag the fraud transactions Explanation: It is unsupervised learning. In this case, the suspicious transactions are not defined, hence there are no labels of "fraud" and "not fraud". The model tries to identify outliers by looking at anomalous transactions and flags them as 'fraud'
@joel9909
@joel9909 4 жыл бұрын
@@SimplilearnOfficial OO waoh Thank you. I really get it now. Question: how does the model get to know which activities are anomalous in scenario 3? Do you maybe simulate case scenarios over time? Else I feel there will be a few successful fraudulent activities before the model gets its bearings
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Hello Joel, thank you for watching our video and for the honest feedback. We will definitely look into this. Do subscribe, like and share to stay connected with us. Cheers :)
@pavandosapati490
@pavandosapati490 3 жыл бұрын
Superb explanation tqsm sir it's clarity and clear ..... ❤
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
You're most welcome
@galihprasetyo8525
@galihprasetyo8525 3 жыл бұрын
thank you so much.. this is valuable..
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Very welcome!
@shubhamkulkarni2137
@shubhamkulkarni2137 3 жыл бұрын
Great tutorials ..! Loved it ... Please provide CSV datasets to get some hands-on experience ...
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Hello, thanks for viewing our tutorial. It would be helpful if you will provide your email ID to us so that we can send the requested dataset promptly. On the off chance that you need your email ID to be kept hidden from others, we can do that too. Hope that helps.
@pratikmalkan2578
@pratikmalkan2578 Жыл бұрын
Thanks for an intuitive video, really enjoyed it. It would be great if you can send me the datasets that have been used in this course.
@SimplilearnOfficial
@SimplilearnOfficial Жыл бұрын
Hello, thanks for viewing our tutorial. You can find your requested dataset in the video description. Hope that helps.
@snikiweperfect
@snikiweperfect 3 жыл бұрын
Can please also ask , for the k means example , you load the CHINA & FLOWER image , where are you actually taking does images from , m a bit confused because i wanted to compress my own image
@aman_sahu
@aman_sahu 4 жыл бұрын
thanks for this great tutorial.
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Hi, thanks for watching our video. We have sent the requested dataset to your mail ID. Do show your love by subscribing to our channel using this link: kzbin.info and don't forget to hit the like button as well. Cheers!
@aman_sahu
@aman_sahu 4 жыл бұрын
@@SimplilearnOfficial Done
@shafilhosain4260
@shafilhosain4260 3 жыл бұрын
Dear Sir, For KNN diabetes test below codes I modify and working. for column in range(5): #means = np.mean(dataset.iloc[:, column +1]) mean = int(dataset.iloc[:,column+1].mean(skipna=True)) #dataset.iloc[:, column+1].replace(0, np.NaN, inplace =True) dataset.iloc[:, column+1].replace(np.NaN, mean, inplace =True)
@vijayalakshmi.t6924
@vijayalakshmi.t6924 2 жыл бұрын
At sometimes I didn't understand what they are telling .. Please add a captions to this tutorial . It is very much helpfull . Please consider this .
@Neuraldata
@Neuraldata 4 жыл бұрын
Much informative❣️...will recommend your videos to our students also.
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Awesome! Thank you!
@incognito3k
@incognito3k Жыл бұрын
This video is just awesome!!
@SimplilearnOfficial
@SimplilearnOfficial Жыл бұрын
Hello thank you for watching our video .We are glad that we could help you in your learning !
@ganapathibalasubrahmanyam4575
@ganapathibalasubrahmanyam4575 2 жыл бұрын
Refer Naive Bayes Method. Time Stamp 4:22:24: The probability of a Purchase on a weekday P(B) = P(Weekday) has been given as 11/30. Weekday stats show: Probability of Buy as 9/24. Please explain how to arrive at 11/30 for probability of buy.
@SoftwareEngineering226
@SoftwareEngineering226 11 ай бұрын
Make for us a video on how to make an API or an application using python and Sckit Learn library, Because we will not just be doing it in Jupiter notebook, Kindly make that video I will really appreciate
@juctxy
@juctxy 7 ай бұрын
Its great I think you should publish a book about machine learning
@rohithvarma6763
@rohithvarma6763 3 жыл бұрын
great explanation
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Glad it was helpful!
@user-nobody506
@user-nobody506 3 жыл бұрын
Thanks
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Welcome!
@vaibhavjindal9948
@vaibhavjindal9948 4 жыл бұрын
Tutorial are amazing for a begginer.I request for dataset.
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Hello Vaibhav, thanks for viewing our tutorial and we hope it is helpful. It would be helpful if you will provide your email ID to us so that we could send the requested dataset promptly.
@suganthiperumal2662
@suganthiperumal2662 3 жыл бұрын
Very Good Explanation. Need Dataset. It will be helpful
@jfowler1101
@jfowler1101 3 жыл бұрын
How do I get jupyter to give me all the parameters for the RandomForestClassifier fit (i.e., all the input and default parameters). When I run clf.fit(train[features], y), I do not get the verbose output you get.
@syedrizwanali27
@syedrizwanali27 2 жыл бұрын
7:18 Scenario 1 & 2: unsupervise, Scenario 3: supervised
@SimplilearnOfficial
@SimplilearnOfficial 2 жыл бұрын
Thanks for watching our video and sharing your thoughts. Do subscribe to our channel and stay tuned for more. Cheers!
@kanishkdeshwal6572
@kanishkdeshwal6572 4 жыл бұрын
categorical_features comes with a Type Error in jupyter notebook. unexpected keyword solution?
@harshnagarkar5939
@harshnagarkar5939 3 жыл бұрын
Will you please again explain that how to find best fit line in linear regression ?
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Hi, Simplilearn provides online training across the world. We would be happy to help you regarding this. Please visit us at www.simplilearn.com and drop us a query and we will get back to you! Thanks!
@robindong3802
@robindong3802 3 жыл бұрын
What did happen at 3:22:08, Seemed it skipped some at end of Iris Flower Analysis and jumped to KNN.
@lavanyaramesh1241
@lavanyaramesh1241 3 жыл бұрын
Amazing lectures💥
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Glad you like them!
@pavanrameshpatchipulusu2612
@pavanrameshpatchipulusu2612 2 жыл бұрын
Hi, good tutorial. Started learning linear regression. Can you please share the data set used in linear regression (companies dataset). Thanks
@SimplilearnOfficial
@SimplilearnOfficial 2 жыл бұрын
Hello, thanks for viewing our tutorial. You can find your requested dataset in the video description. Hope that helps.
@shanky7485
@shanky7485 3 жыл бұрын
Marvellous tutorial
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Thanks a lot!
@Southpaw101
@Southpaw101 3 жыл бұрын
Very helpful
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Glad it helped!
@g.harish7063
@g.harish7063 4 жыл бұрын
U kept ur words.u made us understand simple.thank u.can I get datasets.
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Hello Harish, thanks for viewing our tutorial and we hope it is helpful. It would be helpful if you will provide your email ID to us so that we could send the requested dataset promptly.
@g.harish7063
@g.harish7063 4 жыл бұрын
@@SimplilearnOfficial gopal3jyoti@gmail.com
@g.harish7063
@g.harish7063 4 жыл бұрын
For linear regression
@g.harish7063
@g.harish7063 4 жыл бұрын
I didn't got l,can u send me again
@g.harish7063
@g.harish7063 4 жыл бұрын
@@SimplilearnOfficial yeah I got it, thank u
@a.ma.m8047
@a.ma.m8047 3 жыл бұрын
Very Nice video. Thanks, sharing this! Could you please put a link for the datsets used in the video? Would like to download them to practice and code along. (Y)
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Hello, thanks for viewing our tutorial. It would be helpful if you will provide your email ID to us so that we can send the requested dataset promptly. On the off chance that you need your email ID to be kept hidden from others, we can do that too. Hope that helps.
@a.ma.m8047
@a.ma.m8047 3 жыл бұрын
@@SimplilearnOfficial thanks, I would like to prefer to send it private or if I could inbox you. Thanks once again 😀
@snikiweperfect
@snikiweperfect 3 жыл бұрын
hi , for the code where you predicting digits(logistic regression) , after importing the libraries you load the digits (1:14:33), i just wanted to understand something , where do you load these digits from coz you just type 'load_digits' but you do not put any directory where you taking these digits from ??
@varvara1639
@varvara1639 3 жыл бұрын
Nice video, tried to use it to explain ML to kids; however incorrect description of reinforcement learning. What you explained in the reinforcement learning part was supervised learning - when you have correct answers. In reinforcement learning, you don't have correct answers.
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Hi Varvara, Thanks for the feedback. We shall share your concerns with the concerned department.
@xucao7541
@xucao7541 3 жыл бұрын
Wonderful course!
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Many thanks!
@sidindian1982
@sidindian1982 Жыл бұрын
Brilliant vedio ❤️❤️😍😍🙏🙏🙏🙏
@SimplilearnOfficial
@SimplilearnOfficial Жыл бұрын
Hello thank you for watching our video .We are glad that we could help you in your learning !
@d4devotion
@d4devotion 3 жыл бұрын
Would have been great if algo were explained in sequence, I mean first all supervised then unsupervised and also some in class quiz
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Here are the answers with explanation. Scenario 1: Facebook recognizes your friend in a picture from an album of tagged photographs Explanation: It is supervised learning. Here Facebook is using tagged photos to recognize the person. Therefore, the tagged photos become the labels of the pictures and we know that when the machine is learning from labelled data, it is supervised learning. Scenario 2: Recommending new songs based on someone’s past music choices Explanation: It is supervised learning. The model is training a classifier on pre-existing labels (genres of songs). This is what Netflix, Pandora, and Spotify do all the time, they collect the songs/movies that you like already, evaluate the features based on your likes/dislikes and then recommend new movies/songs based on similar features. Scenario 3: Analyze bank data for suspicious looking transactions and flag the fraud transactions Explanation: It is unsupervised learning. In this case, the suspicious transactions are not defined, hence there are no labels of ""fraud"" and ""not fraud"". The model tries to identify outliers by looking at anomalous transactions and flags them as 'fraud'."
@jennytong8855
@jennytong8855 2 жыл бұрын
hi, on the logistics regression tutorial, where are you getting the images dataset from? Thank you
@SimplilearnOfficial
@SimplilearnOfficial 2 жыл бұрын
Hello, thanks for viewing our tutorial. You can find your requested dataset in the video description. Hope that helps.
@khaledrabah9725
@khaledrabah9725 3 жыл бұрын
Powerful Course, very well done, please may i get the data source, and the best and safe way to download Anaconda Jupiter Notebook, very much appreciated
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
WooHoo! We are so happy you love our videos. Please do keep checking back in. We put up new videos every week on all your favorite topics. Whenever you have the time, you must also check out our blog page @simplilearn.com and tell us what you think. Have a good day!
@manideepavadootha1907
@manideepavadootha1907 11 ай бұрын
Thanks for the great vid. could i get the datasets please? thanks
@nirmalavhad662
@nirmalavhad662 2 жыл бұрын
Will you please make video on python library used in machine learning
@user-hz9th3gy9p
@user-hz9th3gy9p 3 жыл бұрын
Great explanation Please did you explain a book 📖 So, we can take that book as references too
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Thanks for appreciating our work. But, we didn't explain a book!
@tauqeerahmed8736
@tauqeerahmed8736 3 жыл бұрын
Scenario 1: friends photo is the feature and it has the label that he is my friend so scenario 1 is supervised learning. Scenario 2: it has only feature with my past movie taste and does not has the label so it should be unsupervised learning. Scenario 3: analysed fraud transactions is the feature and flagging the the transactions is the label so it is supervised learning. Hope I am right please let me know if not, Thank you and your course is so far so good.
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Hi, you almost got the answers right. Here are the answers with explanation. Scenario 1: Facebook recognizes your friend in a picture from an album of tagged photographs Explanation: It is supervised learning. Here Facebook is using tagged photos to recognize the person. Therefore, the tagged photos become the labels of the pictures and we know that when the machine is learning from labelled data, it is supervised learning. Scenario 2: Recommending new songs based on someone’s past music choices Explanation: It is supervised learning. The model is training a classifier on pre-existing labels (genres of songs). This is what Netflix, Pandora, and Spotify do all the time, they collect the songs/movies that you like already, evaluate the features based on your likes/dislikes and then recommend new movies/songs based on similar features. Scenario 3: Analyze bank data for suspicious looking transactions and flag the fraud transactions Explanation: It is unsupervised learning. In this case, the suspicious transactions are not defined, hence there are no labels of ""fraud"" and ""not fraud"". The model tries to identify outliers by looking at anomalous transactions and flags them as 'fraud'."
@sashamuller9743
@sashamuller9743 3 жыл бұрын
prereg's for this video: Intermediate python programmer, understand array's, bayesian probabilty and confusion matrix
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Hi Sasha, this video can be viewed by beginners too. We have covered all the concepts from basics. Thanks.
@mayankprasad8643
@mayankprasad8643 4 жыл бұрын
Richard was great.. The way he taught Linear regression was superb even a person who doesn't have any knowledge of python can understand it. But Mohan is not a proper teacher. Infact first he should go with logistic regression and Sensitivity specificity accuracy threshold value but he doesn't covered that.. This session is only good becoz of Richard. Mohan you took a wide example for logistic first atleast clear us with binary logistic.. Sorry but not happy with Mohan's lecture.. And all the best Richard you are a gem. Now switching to some other machine learning course..
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Hi Mayank, Thanks for the feedback. We shall share your concerns with the concerned department.
@mayankprasad8643
@mayankprasad8643 4 жыл бұрын
@@SimplilearnOfficial Thanks.. All the best..
@thanakim7819
@thanakim7819 4 жыл бұрын
And may i know what platform you are using for python ?
@vinayraghava9500
@vinayraghava9500 3 жыл бұрын
Hi, the video looks engaging, I need the dataset to continue Could you provide.
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Hello Vinay, thanks for viewing our tutorial and we hope it is helpful. It would be helpful if you will provide your email ID to us so that we could send the requested dataset promptly.
@sanjananayak6326
@sanjananayak6326 3 жыл бұрын
At 47:35 I am getting an error called unexpected keyword argument 'categorical_features' why? Any idea?
@ankitasinha7892
@ankitasinha7892 4 жыл бұрын
Great content
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Thank you so much!
@anhuynh5677
@anhuynh5677 3 жыл бұрын
I wish the video should include subtitle because some intructors’ voices are hard to listen to
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Thank you for your review. We are sorry to hear you had such a frustrating experience, but we really appreciate you bringing this issue to our attention
@priyanshigupta1359
@priyanshigupta1359 3 жыл бұрын
Very good tutorial for beginners . I m impressed but plzz simplilearn let me know how I can have the same dataset that u have???
@priyanshigupta1359
@priyanshigupta1359 3 жыл бұрын
My mail id is priyanshig9170@gmail.com
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Hi, thanks for watching our video. We have sent the requested dataset to your mail ID. Do show your love by subscribing to our channel using this link: kzbin.info and don't forget to hit the like button as well. Cheers!
@Martin-lv1xw
@Martin-lv1xw 3 жыл бұрын
Very little explanations of some important code blocks especially for graphics in logistic regression and k-means clustering
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Hi Martin, thank you for watching our video and for the honest feedback. We will definitely look into this. Do subscribe, like and share to stay connected with us. Cheers :)
@Qwerdfg868
@Qwerdfg868 4 жыл бұрын
(47:22) from sklearn.preprocessing import LabelEncoder, OneHotEncoder labelencoder = LabelEncoder() X[:, 3] = labelencoder.fit_transform(X[:, 3]) onehotencoder = OneHotEncoder(categorical_features=[3]) X = onehotencoder.fit_transform(X).toarray() print(X) whenever I try to run this code, it shows a type error as show below: Type error: __init__() got an unexpected keyword argument 'categorical_features'.
@Qwerdfg868
@Qwerdfg868 4 жыл бұрын
If anyone has any idea how to correct this, please reply.
@jfowler1101
@jfowler1101 3 жыл бұрын
I have a problem: When I run the following line of code logisticRegr.fit(X_train, y_train) I get the following error:
@Siddharth-uo6zw
@Siddharth-uo6zw 3 жыл бұрын
#Scenario 1 answer supervised learning, Scenario 2 unsupervised , Scenario 3 supervised learning questions at 7:00
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
You almost got the answers correct. Here are the answers with explanation. Scenario 1: Facebook recognizes your friend in a picture from an album of tagged photographs Explanation: It is supervised learning. Here Facebook is using tagged photos to recognize the person. Therefore, the tagged photos become the labels of the pictures and we know that when the machine is learning from labelled data, it is supervised learning. Scenario 2: Recommending new songs based on someone’s past music choices Explanation: It is supervised learning. The model is training a classifier on pre-existing labels (genres of songs). This is what Netflix, Pandora, and Spotify do all the time, they collect the songs/movies that you like already, evaluate the features based on your likes/dislikes and then recommend new movies/songs based on similar features. Scenario 3: Analyze bank data for suspicious looking transactions and flag the fraud transactions Explanation: It is unsupervised learning. In this case, the suspicious transactions are not defined, hence there are no labels of ""fraud"" and ""not fraud"". The model tries to identify outliers by looking at anomalous transactions and flags them as 'fraud'."
@MaheshPatil-wl9wo
@MaheshPatil-wl9wo 3 жыл бұрын
Error in linear regression It says in onehotencoder categorical_feature is unexpected
@arjunalondhe2272
@arjunalondhe2272 3 жыл бұрын
superbbb
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Thanks!
@hosseinfathi6611
@hosseinfathi6611 3 жыл бұрын
Thank you for the great tutorial. would you please send me the dataset?
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Hi, thanks for watching our video. We have sent the requested dataset to your mail ID. Do show your love by subscribing to our channel using this link: kzbin.info and don't forget to hit the like button as well. Cheers!
@hosseinfathi6611
@hosseinfathi6611 3 жыл бұрын
@@SimplilearnOfficial I have not received anything yet. my email is cemhfathi@gmail.com
@supriya5740
@supriya5740 4 жыл бұрын
Hello, thanks for this great tutorial. The best think is it is in a single tutorial consisting great content. I need the dataset. please send it on my email.
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Hello Supriya, thanks for viewing our tutorial and we hope it is helpful. It would be helpful if you will provide your email ID to us so that we could send the requested dataset promptly.
@37shubhamgupta64
@37shubhamgupta64 5 ай бұрын
Hello it would be great opportunity to work on different algorithms on this dataset .Can you pls provide me the dataset
@muhammadsaad3423
@muhammadsaad3423 3 жыл бұрын
Great Extplaination can i get your dataset to learn better?
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Hi, thanks for watching our video. Please share your mail ID to receive the dataset. Thanks.
@karthikeyan-dq3uw
@karthikeyan-dq3uw 3 жыл бұрын
Im an instrumentation engineer but im attracted towards Machine learning is it possible for the persons like me to become a Data scientist or Machine Learning engineer by hard work and gaining knowledge through work without a degree in computer science? Please reply.
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
"Yes, It is completely possible for a any engineers to become a Data Scientist. Data Science is a great field for Math and Stat enthusiasts. However, it would be a little hard during initial days due to lack of programming knowledge. The only thing would be to have a right approach, motivation and ready to learn whatever is required to become a data scientist To kickstart, you can check out the Data Science playlist for learning the basics: kzbin.info/www/bejne/jmTTkoKjmNeHoLM. If you are interested to take up a more structured and formal course, you can find the details here: www.simplilearn.com/big-data-and-analytics/senior-data-scientist-masters-program-training."
@ganapathibalasubrahmanyam4575
@ganapathibalasubrahmanyam4575 4 жыл бұрын
This is an awesome course. How can we get the data for the examples. It will be very useful if you share this data with me for learning the code better.
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Hello Ganapathi, thanks for viewing our tutorial and we hope it is helpful. It would be helpful if you will provide your email ID to us so that we could send the requested dataset promptly.
@dilfarazmithila6631
@dilfarazmithila6631 4 жыл бұрын
Hi, Thanks for the video. I will be glad if you kindly send me the data-set.
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Hello Dilfaraz, thanks for viewing our tutorial and we hope it is helpful. It would be helpful if you will provide your email ID to us so that we could send the requested dataset promptly.
@aditikumar6786
@aditikumar6786 3 жыл бұрын
Through this video course can I apply for the role of data science, the knowledge in this video is enough for an individual to give interview?
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
You can try but we prefer you take up our course and try for jobs: www.simplilearn.com/big-data-and-analytics/machine-learning-certification-training-course.
@maheshchennaboina5103
@maheshchennaboina5103 3 жыл бұрын
I am getting an error for below code please help me from sklearn.preprocessing import LabelEncoder,OneHotEncoder labelencoder=LabelEncoder() X[:, 3]= labelencoder.fit_transform(X[:, 3]) onehotencoder=OneHotEncoder(categorical_features=[3]) X=onehotencoder.fit_transform(X).toarray()
@thezodiace7399
@thezodiace7399 3 жыл бұрын
the legend says Simplilearn still replies to every comment posted on any of their videos
@SimplilearnOfficial
@SimplilearnOfficial 3 жыл бұрын
Hi, we always try to keep the engagement live with our viewers always. Thanks.
@gohelboy
@gohelboy 4 жыл бұрын
I suggest you to explain code line what it does it just copy paste maybe this is some how confusion... I hope you understand
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Thanks for the feedback!
@muzzamilahmed8886
@muzzamilahmed8886 4 жыл бұрын
Helllo! Thank you for the turorial. Can you please send me the datasets. Used in this videos.
@muzzamilahmed8886
@muzzamilahmed8886 4 жыл бұрын
muzzamil.ahmed0297@ggmail.com
@muzzamilahmed8886
@muzzamilahmed8886 4 жыл бұрын
muzzamil.ahmed0297@gmail.com
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Hi, thanks for watching our video. We have sent the requested dataset to your mail ID. Do show your love by subscribing to our channel using this link: kzbin.info and don't forget to hit the like button as well. Cheers!
@ramashishprajapati1863
@ramashishprajapati1863 4 жыл бұрын
Thanks for your great tutorial ! can you send me all data sets which are used in this tutorial ?
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Hello Ramashish, thanks for viewing our tutorial and we hope it is helpful. It would be helpful if you will provide your email ID to us so that we could send the requested dataset promptly.
@ramashishprajapati1863
@ramashishprajapati1863 4 жыл бұрын
@@SimplilearnOfficial rpstat40@gmail.com
@ganapathibalasubrahmanyam4575
@ganapathibalasubrahmanyam4575 4 жыл бұрын
Request you to please share a copy of the data sets for all the examples in this video.
@SimplilearnOfficial
@SimplilearnOfficial 4 жыл бұрын
Hello Ganapathi, thanks for viewing our tutorial and we hope it is helpful. It would be helpful if you will provide your email ID to us so that we could send the requested dataset promptly.
Machine Learning for Everybody - Full Course
3:53:53
freeCodeCamp.org
Рет қаралды 5 МЛН
ШЕЛБИЛАР | bayGUYS
24:45
bayGUYS
Рет қаралды 632 М.
Don’t take steroids ! 🙏🙏
00:16
Tibo InShape
Рет қаралды 33 МЛН
11. Introduction to Machine Learning
51:31
MIT OpenCourseWare
Рет қаралды 1,6 МЛН
Things Required To Master Generative AI- A Must Skill In 2024
15:01
Stanford CS229: Machine Learning Course, Lecture 1 - Andrew Ng (Autumn 2018)
1:15:20
Python Machine Learning Tutorial (Data Science)
49:43
Programming with Mosh
Рет қаралды 2,7 МЛН
Harvard CS50’s Artificial Intelligence with Python - Full University Course
11:51:22
Deep Learning Interview Prep Course
3:59:50
freeCodeCamp.org
Рет қаралды 228 М.
ШЕЛБИЛАР | bayGUYS
24:45
bayGUYS
Рет қаралды 632 М.