Dear All, if you are looking for feature engineering materials, please check my feature engineering playlist, all videos are available. Happy Learning!
@yash20december4 жыл бұрын
if you don't mind will u reopen the link or provide your writen codes on github with link
@krishnaik064 жыл бұрын
@@yash20december all materials are available in feature engineering playlist
@ulysses_grant4 жыл бұрын
Thank you sir.
@mamtarajput98464 жыл бұрын
is there something more you provide for the paid ones. please let me know.
@matrix47764 жыл бұрын
Sir, Can you please send me the all feature engineering technique file. it will be very helpful to me, if you send them. My email id is ara007kumar@gmail.com
@prateshtamhankar35684 жыл бұрын
What a coincedence, today is also an Independence day, this really suprised me, I was following your youtube videos and suddenly you greeted, for a movement it got a smile on my face. Happy Independence day.
@josealjndro4 жыл бұрын
you are the best, greetings from an ecuadorian studying in Portugal.
@viveksrivastavasc5 жыл бұрын
There was doubt from so long about this that when there are more than 100 types of value then how to do encoding which is clear today thank you sir 🙏🙏
@jeevanraj17892 жыл бұрын
Hi
@saimanikanta1365Ай бұрын
bro can you send me the material
@pankajgoikar41582 жыл бұрын
No Words for education. Many Thanks and wishes for futures.
@azharafridi9619 Жыл бұрын
thank you so much respected sir. Alot love for you from pakistan. this video was very helpfull. we are looking foreword to see others playlist like these from you. once again thanks
@anirvansen65915 жыл бұрын
Just started watching your videos. You explain the concepts in a simple manner.Thanks
@sandhyas69724 жыл бұрын
Hi Krish, It's the best video I have ever seen. Crystal clear.
@cenobit08154 жыл бұрын
you saved my day with mean encoding
@sonalisrivastava99813 жыл бұрын
We need mentor like you... Great job👍
@samriddhlakhmani2843 ай бұрын
Still the best video out there. I think other content dont know what a practitioner of DS needs at 2:30 am .... :p
@pravallikak76373 жыл бұрын
Krish Sir the way you explain is easy to understand. Please reopen the form. Thanks 🙂
@sam718394 жыл бұрын
Wao thank you soo much, sir you explained soo well. whenever I face any doubts your video saves my day.. God bless u .. Happy Learning
@akshaygupta63215 жыл бұрын
Krish your way of explanation is just amazing....Thanks for these amazing videos and yes please share zip file
@jeevanraj17892 жыл бұрын
Hi
@jeevanraj17892 жыл бұрын
Hi
@gajjukumar85 жыл бұрын
Hi krish, nice way to collect the data free of cost.
@floyd78353 жыл бұрын
you are doing a wonderful job Kris...👏👏
@shubhammishra86865 жыл бұрын
Thanks Krish Bhai..I have learned a lot from your videos
@deepeshkumarsharma65145 жыл бұрын
thanks sir for listening to my request to create a video on mean encoding , i am really enjoying your videos , and i have learned a lot from that. Please continue to create such awesome videos.
@jeevanraj17892 жыл бұрын
Hi
@sanyamsinghal79925 жыл бұрын
thanks a lot, this thing can't be explained better than how you explained it. I just became Fan of your ML knowledge.
@jeevanraj17892 жыл бұрын
Hi
@hokapokas5 жыл бұрын
Hey krish, nice video as usual... Filled the form and thanks for making motivational and additional support videos for encouragement. Kudos
@SanthoshKumar-dk8vs5 жыл бұрын
Hi bro, could you please send me featuring document pls?
@hokapokas5 жыл бұрын
@@SanthoshKumar-dk8vs you can fork it from either mine or krish's GitHub account. Check Krish's video description for his GitHub link and you find all there
@shivamkaushal44794 жыл бұрын
Hello bro, can you share zip file, bcz I watched it today so not able to fill form as you know. Kaushalshivam2018@gmail.com
@sarath209944 жыл бұрын
hi bro this is sarath.. I am a data scientist aspirant can you share me feature engineering notes.. mail id : sarath20994@gmail.com
@manishsahu31815 жыл бұрын
Sir, please share the link once again. I saw your video and it's a very helpful for the student's like me. I want to know more about the feature engineering. Thank you for making such an amazing lecture. Waiting for the feature engineering link.
@jeevanraj17892 жыл бұрын
Hi
@AkshayPatel-eq7uy5 жыл бұрын
Thank you for putting the time and efforts to create this video, also all other videos. Very helpful.!
@anirudhr.huilgol.94494 жыл бұрын
Very useful information provided by u sir. Thank you.
@vishalshukla2happy5 жыл бұрын
Great help Krish... Thanks for your video man
@dollyshukla48215 жыл бұрын
Vishal Shukla. could you please share this docs with me on dolly.shukla7860@gmail.com
@jeevanraj17892 жыл бұрын
Hi
@salikmalik76314 жыл бұрын
You are the best sir.
@wordguinho2 жыл бұрын
Thank you so much for sharing your knowledge with us
@tech_charli Жыл бұрын
Amazing explanation sir 🙏🙏
@prakashsaravanan66133 жыл бұрын
Excellent Explanation Sir, Thanks a lot
@mr.foysalhossain21423 жыл бұрын
excellent job Boss. really helpful
@harshitgupta25155 жыл бұрын
Sir u r doing really great and I think under your guidance I will become a good data scientist soon...please help me sir
@mahindrarao45653 жыл бұрын
I liked the Mean Encoding technique and Target-guided encoding. We are preserving the normality of the data as well as not increasing the dimensions.
@thetensordude4 жыл бұрын
Thanks sir for all these free contents! :p
@raakupgaming4 жыл бұрын
Can you send the zip file to me. arifmollick8578@gmail.com
@baneledludlu7983 Жыл бұрын
Thanks man! Great content The Lord bless you with more understanding and help you to know Him better and better
@taranilakshmi96805 жыл бұрын
Nice information about feature engineering. Thanks a lot
@abhaysharma31715 жыл бұрын
can you plz send it to me
@manikosuru57125 жыл бұрын
Thank U so much Sir for such Huge help....
@robertkumar77684 жыл бұрын
The video is quite informative and easy to understand. I really loved the video :)
@aakashprasad31263 жыл бұрын
Clearly Explained, Thankyou!
@shivaaryaprakash4 жыл бұрын
Thanks alot for sharing such a absolutely amazing knowledgeable video...
@biggusmaximus16513 жыл бұрын
thank you sir from tamil
@thakuraditi54 жыл бұрын
Really good one Krish
@manojrana0094 жыл бұрын
Hi Krish, it is just a suggestion if u start same channel in Hindi language. It will more helpful to those Indian students who are living in small cities and not much familiar with English lecture. Hope u understand my request. I'm your regular viewer and respect ur effort and knowledge. God luck.
@bharathjc47005 жыл бұрын
Please re-open the form for feature engineering techniques. Thank you.
@streamingtamilan84214 ай бұрын
Yes sir please re-open the form Excited to learn the coding part too Sir.
@menardtchatchou56474 жыл бұрын
so happy I found your channel...wooh amazing lecture Please send me the zip file with respect to feature engineering thank you sir will definitely join your channel.
@Itachiuchiha-de9cj4 жыл бұрын
Guys plz if u don't like his videos then leave it, but don't do dislike 🙏
@mushirahunt4 жыл бұрын
Hello sir...your way of teaching is really incredible. I am studying through your lecture for past 1week and that's why unable to fill the form to get the materials which you have prepared for the same... So if possible please enable the form link again...
@Itachiuchiha-de9cj4 жыл бұрын
You are awesome sir 🙏
@jeevanraj17892 жыл бұрын
Hi
@tahamansoor5994 жыл бұрын
Great Video plz give demo also
@gordongogah53764 жыл бұрын
I came across this video today and i like to learn more feature engineering "if you don't mind will u reopen the link sir"
@nemesisanims74014 жыл бұрын
Yes pleaseeee
@karthikeyans16464 жыл бұрын
Yes please sir reopen
@siddhantpathak62894 жыл бұрын
Yes, it's very much needed now
@sarveshkhetan42414 жыл бұрын
yes please sir
@priyabratapanda12164 жыл бұрын
It's on the GitHub
@divyagayathritalla32552 жыл бұрын
In mean encoding,If the feature values are replaced by the mean values ,the no of data values in the pincode column are still the same right??Then whats the point of doing mean encoding?
@VARISHROCKS3 жыл бұрын
Sir , Thankyou for this wonderful lecture , please share the study material
@sagardesai12534 жыл бұрын
Thanks for sharing, the video is helpful!
@arvindsaini66784 жыл бұрын
Hi @Krish, can you please share the Feature engineering materials if possible. Your videos are really impressive.
@NikhilSharma-rc4jg2 жыл бұрын
Great Video, Thanks!
@rojaroja99134 жыл бұрын
Thank You Sir!!things we can understand easily by your Videos.Sir could you pleasee reopen the link where we could get the Feature engg materials that could be more great
@zeeshankhanyousafzai52293 жыл бұрын
Sir, I am working in Data Science for a long time but want to your all playlist as I already have covered some of them. I need your notes on Feature Engineering so can you provide me it now. I shall be very thankful to you for this kindness. Best wishes more love for you from Pakistan.
@jeevanraj17892 жыл бұрын
Hi
@jackdairies2live4005 жыл бұрын
Hi krish, I started seeing your videos now and want the feature engg doc. Can you please open the link for the form? Waiting for your response.
@ArindamSinha-v7b Жыл бұрын
Hi Krish , I really liked the way you are teaching, could you please share the feature engineering study material?
@adhipathis123 жыл бұрын
Thanks Krish!!!! :)
@sindhuranimmaraju73925 жыл бұрын
Hi I already joined as a member
@ranjan44955 жыл бұрын
1st to view, 2nd to like, 1st to comment.
@anithjoseph87305 жыл бұрын
Hi sir, I want the feature engineering doc. Can you please open the link for the form? Waiting for your response
@MM-vx8go4 жыл бұрын
Hello I want the feature engineering document👏👋👋👋👋👋 Just came across this video please
@akhil98694 жыл бұрын
@@MM-vx8go its available on his github
@MM-vx8go4 жыл бұрын
Akhil Kasare where please
@MM-vx8go4 жыл бұрын
Akhil Kasare this is my email.. mmaxwell265@gmail.com
@MM-vx8go4 жыл бұрын
What's the github username
@sandipansarkar92113 жыл бұрын
finished watching
@sandyjust5 жыл бұрын
@16:18 position you are saying to use 'one-hot encoding with multi-category' for an ensemble technique. But the beginning of the video you had explained ensemble techniques does not require feature scaling. Can you please clarify?
@leadership_guru2 жыл бұрын
Hi krish, thanks so much for shedding light on this topic of Feature Engineering. I'm at Beginner Level of learning DS/ML and I really fell in love with your way of teaching these techniques. I would really love to get that document on FE you mentioned about in this video. I tried to drop my details via the google form but I see it's closed. Kindly assist please. Thanks in advance!
@vkasrajpurohit16142 жыл бұрын
Hi krish.. google response link not active. how can I get the material
@javeda3 жыл бұрын
Please do a session work on the dython package and setting categories in it
@firta_banjara4 жыл бұрын
Hi Krish, At 20:23 the Label for A - 0 and A - 1 will be different based on mean right ? for example the mean will be calculated this way right ? A - 1 => 0.73 B - 1 => 0.6 C - 1 => 0.4 A - 0 => 0.5 B - 0 => 0.35 C - 0 => 0.36 Then the ordering of feature will be as below right ? A - 1 >> B - 1 >> A - 0 >> C -1 >> C - 0 >> B - 0
@Avyukt-AN3 жыл бұрын
31 dislike for what? Teaching you free of cost with market standard!! One should provide the link of better videos,if they dislike anything. 🥇
@sivakrishna43965 жыл бұрын
Could you please upload the forum again . ? Thanks in advance :)
@saumyagupta40194 жыл бұрын
Sir please open the form enteries to get zip file for feature engineering
@nadellagayathri4 жыл бұрын
Hi Krish, I have started liking your channel so much. Hats off for the great service you are doing for the aspiring and already experienced Datascientists. The form url which you have shared is no more available. Could yuo please share the material via google drive or reactivate the form.
@af121x4 жыл бұрын
Thanks a lot for the clear explanation. Can you Please reopen the google form again?
@rahulranjan86822 жыл бұрын
by introducing a higher number to the categories on the basis of a higher no. of occurrence in a given class ( say here 1) are you not introducing bias in the dataset? ( target guided ordinal encoding)
@shivashisswain26823 жыл бұрын
Hi @krish Naik, how can get the zip file of all feature engineering techniques? kindly help
@juliussilaa89982 жыл бұрын
Please share with me too. Thanks
@chetanahirrao5601 Жыл бұрын
Very good
@svishaliyer22545 жыл бұрын
Hi Krish, I am not able to fill the form. Its removed. Can you please upload that
@amarjeetkushwaha42585 жыл бұрын
Same here
@mohankumar-cw5lw5 жыл бұрын
same here
@sravanijammula5735 жыл бұрын
Where did krish upload the form... Can u share the link related to it
@svishaliyer22545 жыл бұрын
@@sravanijammula573 Krish uploaded the form when he uploaded the video. Now it's old so I think he removed that. I am also not able to fill the form as I saw video very late
@sravanijammula5735 жыл бұрын
Thanks vishal for the update... If u are aware of it jus post it here...
@sofiarao71444 жыл бұрын
can someone share the feature engineering doc of krish pls? i missed filling the form.
@RahulKumar-lv9yz3 жыл бұрын
Did you get the material? If yes, can you share it?
@ghurahuchaurasiya24444 жыл бұрын
It's very helpful, sir please reopen the form link...
@arunporky4 жыл бұрын
Hi sir. I have started to learn ML from your channel only. Thank you for your knowledge that you are sharing with us. I also have one request for you can i get feature engineering zip file now. I am really interested in ML.
@fifodalekids4 жыл бұрын
Hi @Krish Bro Your link for google form is no longer available. And I must thank you for the amazing knowledge you share with us. God bless you for your good work. Trust me, I think you are the only person who can teach data science to anyone, I mean you are making it halwa for your viewers :D. I have watched almost all of your Videos. Thumbs up to you (y) .
@jeevanraj17892 жыл бұрын
Hi
@sathyanarayanan18224 жыл бұрын
Hi sir, I need the feature engineering material sir.so please send the link Once again..your techings are awesome and clean to understand 🙂
@AbhishekKumar-jv3fe5 жыл бұрын
Hi Krish ..... I had recently started to follow up your video & it was very helpful. could you please provide me the materials related to feature Engineering......thanks in advance
@rohitchan007 Жыл бұрын
I read on scikit learn documentation that label encoding should be applied only to the output column.
@madunishant60525 жыл бұрын
Hey Krish! I have few questions based on encoding which are 1. Let’s suppose I have a feature which has 1000 different categories which I need to convert to either an integer/float how should I do that?Here I can’t go for one hot encoding as it might create 999 columns.And also it has only 1100 record /rows by which even though going by the “one hot encoding with multiple categories” method the most repeated categories will be extremely less how do we handle it in such cases? 2. In Ordinal encoding why are the ranks need to be assigned to a categorical label instead we can give some random unique number to the categorical values without ranking them for example PhD as 1 , BE as 2, Masters as 4 and Stats as 3. 3. Also regarding “Label Encoding” how are the ranks decided say if PhD needs to be given higher rank let’s suppose ‘4’ how can a library know that it should be given a higher rank? Or is it something else that in the library code we need to manually set it?
@pradeepkumar-qo8lu5 жыл бұрын
Do you have any ideas how to tackle this issue ?
@krishnaik065 жыл бұрын
For the first point u should not apply one hot encoding instead we can go ahead with Mean encoding. Label encoding for ordinal categorical will be assigned with ranks. In this case PhD should have a highest rank or label. This will help us to specify the ML algorithm where in we are providing higher importance to phd
@madunishant60525 жыл бұрын
Krish Naik Thanks a lot Krish👍🏻😊 And thanks a ton for your awesome content learning new things. Waiting for the part - 2 of the series😊
@HarpreetKaur-qq8rx4 жыл бұрын
Hi Krish, I am confused with your explanation. My doubts are: You said for target guided ordinal categories you are assigning the rank based on mean values then how does it matter if the category is nominal or ordinal since the ranks are assigned based on mean values and not the inherent rank/order of the variable itself. Also for label encoding the number actually mean anything since it isn't like price/sales where the number holds significance so won't the result be junk/unusable and if they are usable then how do you interpret the result
@benvelloor4 жыл бұрын
If the categorical feature is ordinal then we can assign labels to it. Here the category which obtains highest target mean will be assigned the highest label value. If the categorical feature is nominal then we cannot assign labels. This is because in label encoding the number does mean something. Different numbers teach the model to make different predictions. For example, a value of 4 (PHD) in the salary prediction example results in a prediction of higher salary whereas a value of 1 (Bcom) results in prediction of a lower salary! This happens because, in the training data, entries with PHD as educational attribute will have a higher salary in the target column. This is generally useful when we do not know the exact ranking!! We find the correlation on the categorical feature to the target and then rank categories according to the mean of the values observed in the target! If the categorical feature is nominal, we do not want the algorithm to learn more from some categories compared to the others. Hence using one hot encoding, we set the values to be 1 and 0. Now as for Mean encoding of nominal categorical features, we essentially map a relationship between the categories and the target. When applied to the example of pin code numbers, some pin codes may result in higher salaries (assuming we are trying to predict salary again). Hence the mean of that pin code will be higher. We simply map in the mean value in place of that category!! So now when the model learns, it will know that a data point with high value in the pin code feature should predict higher salary! Regards!
@shaktiprasadmishra52395 жыл бұрын
Hi krish, Today only I saw this video.could you please kindly open that Google forum one more time.
@TheWonderYearsSchool4 жыл бұрын
Hi. Happy New Year Krish. Your content is awesome. Can you pls reopen the link to the encoding document?
@rajashekarnagalikar77884 жыл бұрын
Hey Krish, can you please do share the ZIP file which you have mentioned in the video about the Feature engineering, as I am unable to open the Google url link. it will be more helpful if you help me with the file.
@vikasdixit11663 жыл бұрын
@krish Naik I have a doubt. FOr mean encoding and target guided encoding we need labels for encoding but how would we encoded the data at test time. ?
@vidyakar22923 жыл бұрын
12:03 I felt like Dr.Strange is taking a class.... "Curse of Dimensionality" ,........ "Multiverse of Madness"
@adeyanjumusliyu50862 жыл бұрын
Krish naik you have been so helpful to me on this journey to datascience. The form is no more available is there another way for me to get the feature engineering and again about the Patreon are you still running it or it's already closed?
@deviprasadmishra8055 жыл бұрын
Sir please could you please tell us why the theory of computation is actually used and what are the application of these subjects please Sir make a video on that
@choreographer1smike5 жыл бұрын
Amazing and easy to follow explanations! Newly subscribed and loving it! Just curious how you recover the particular categories and make sense of your results if you use something like mean encoding. Do you have to trace back the original definitions for each mean and what happens if there are repetitions?
@jeevanraj17892 жыл бұрын
Hi
@AVINASHPARASHAR-yb7cb4 жыл бұрын
Hi Krish, We cannot perform Mean or Target encoding on test data because we don't have target column in test data. So how can we deal with such a situation where we have variable with multiple level in it? I am talking in respect with Hackathon where we generally don't have target variable, this is something which we have to predict. Would appreciate your help.
@kentakeshi8716 Жыл бұрын
You already got the ordinal number or the float number for each category class from the training data . So you dont need to do it again in test data. You will simply use it. You might already know this. But I am answering if someone else has this doubt.
@anirudhr.huilgol.94494 жыл бұрын
Hi sir how is is going to be of target guided encoded and mean encoding in case of regression problem.?
@chayanikaporel38585 жыл бұрын
SIr,I want the feature engineering doc. Can you please open the link again?
@meharajbeguma74934 жыл бұрын
sir, pincode is non-categorical variable. Then why do we go for encoding?
@shrikarnarwade44242 жыл бұрын
In Target guided encoding if mean of two variables are same then how to assign numbers? As both has same mean how to decide for which has to give more numbers.?
@davidibrahim8743 жыл бұрын
Thank you so much Kris, your videos have been instrumental in my learning process. However, I wanted to find out if it were too late to get the feature engineering code. As it mentioned, the link was opened fir two days hence its been over a year. Or if you have it on your git, I can get it too. I've been struggling with feature engr, though I'm still learning, having that code would mean alot to me. Thank you so much in advance
@belloahmadmuhammad6854 жыл бұрын
I came across this video today and i like to learn more on feature engineering "if you don't mind would u reopen the link sir"
@meharajbeguma74934 жыл бұрын
For one hot encoding with multiple catergories, it will create columns for top most categories.Then what happened for the records with remaining categories. Do they have 0 for all columns.