Very good explanation. Suppose for single set a feature values, I am getting as outlier. How to find out top features contributed for the decision?
@HafeezUllah14 күн бұрын
Very nice explanation.
@roi_4_dayz16 күн бұрын
Very nice explanation. Thanks for the help!
@MD.RAKIBHASAN-il5vc22 күн бұрын
All are videos very helpful , thank you so much for give us those video
@TigranKheranyan-c1sАй бұрын
Great explanation
@abhijitnayak3634Ай бұрын
thanks for nice explanation.
@DalboniАй бұрын
👍
@sg6458Ай бұрын
The transcript is incorrect for this video
@azogdevil2 ай бұрын
Thanks 🙏
@D11C11L2 ай бұрын
neat explanation, thankyou!
@deepanshugoel37902 ай бұрын
Perfectly explained! Thanks
@tassiaaccioly23552 ай бұрын
This video is so good! You make all these concepts sound so easy! Thank you for this! Learning by ourselves is hard, but these videos really help making things easily digestable!
@machinelearningplus2 ай бұрын
Thanks for the good words
@MarkMoore-l4g2 ай бұрын
Lee Karen Wilson Richard Gonzalez John
@MarkMoore-l4g2 ай бұрын
Perez Amy Moore Gary Taylor Thomas
@johnyoung88482 ай бұрын
fatal error C1083: Cannot open include file: 'io.h': No such file or directory
@peterwestfall69242 ай бұрын
Kurtosis does not measure peakedness. You can have infinitely peaked distributions with very low kurtosis, and you can have low, perfectly flat-topped distributions with very high kurtosis. Examples are given on the current Wikipedia page, right next to the graphs that you discussed. Kurtosis measures tail weight only.
@machinelearningplus2 ай бұрын
You are right
@MarinaUganda3 ай бұрын
What you call TEST data is actually VALIDATION data. Right? Because the test data is part of the training data, in your video.
@machinelearningplus3 ай бұрын
We call it validation data when dealing with multiple ML models and you are trying to pick the best one. The champion model is then tested on the entirely unseen test data to provide unbiased evaluation. In this video, we are discussing only one model to understand the concept. In this context, since only one model is involved the conflict of whether it is validation or test does not arise. Should be ok to call it validation data as well.
@machinelearningplus3 ай бұрын
I teach the Complete Data Science Course (self paced course) to master Data Science from scratch: edu.machinelearningplus.com/s/pages/ds-career-path
@machinelearningplus3 ай бұрын
I teach the Complete Data Science Course (self paced course) to master Data Science from scratch: edu.machinelearningplus.com/s/pages/ds-career-path
@vipclassic1052 ай бұрын
Hello sir can uh reverse or decode cython
@machinelearningplus3 ай бұрын
I teach the Complete Data Science Course (self paced course) to master Data Science from scratch: edu.machinelearningplus.com/s/pages/ds-career-path
@machinelearningplus3 ай бұрын
I teach the Complete Data Science Course (self paced course) to master Data Science from scratch: edu.machinelearningplus.com/s/pages/ds-career-path
@snehangshudas73 ай бұрын
great explanation sir . plz make a working probelem in this topic
@mosama223 ай бұрын
Thank you for the BEAUTIFUL video 🙂
@Ayush010103 ай бұрын
Sir I have macbook I don't have excel in my mac .so which software should I use as a alternate of excel?
@machinelearningplus3 ай бұрын
Probably OpenOffice or googlesheets. I haven't tried it, but I imagine it should work
@idopshik3 ай бұрын
Very very underrated playlist about pandas. Sk good.
@machinelearningplus3 ай бұрын
Thank you
@rohitd78343 ай бұрын
Amazing explanation!
@cyberlando3 ай бұрын
You are amazing!!
@idopshik3 ай бұрын
2024 - now all dictionaries are ordered in Python by default .
@machinelearningplus3 ай бұрын
That's right
@SatyamSingh-oc3hd4 ай бұрын
Thanks a lot sir . Helped me a lot
@thezenithanalysis75414 ай бұрын
You are doing a great job. My concept of KDE is much more clear.
@thezenithanalysis75414 ай бұрын
Thank you for this video. It helped.
@hazuvlen4 ай бұрын
Thank you so much for your easy-to-understand explanation! I want to make sure one thing, if I have 5 variables (5 columns of data), does that mean I plot my data in 5 axes? So when I compute MD, the vector (x and m) will contain 5 dimensions? Thank you in advance!
@machinelearningplus4 ай бұрын
Yes, all dimensions (5 variables) are considered. But we don't exactly 'plot' 5 dimensions visually
@ANANDKUMAR-sl4rj7 күн бұрын
Which parameters used for plotting
@somebody51864 ай бұрын
What a perfect indisn accent :)
@VishalKumar-dk3uw4 ай бұрын
Hii sir, this pandas series so good and clear... just to clarify the challenge section in this video at last shouldt we put axis='rows' for apply since check the qcut for each column?
@machinelearningplus3 ай бұрын
what's shown in the video works, but, it can be confusing. When in doubt try out both values for axis for a small portion of the data and check the output.
@jamesminhtran59644 ай бұрын
I have watched about 15 beginner videos on Cython and yours is the best so far. It starts by showing the 2x improvements with no code change. This was excellent. No other video event mentioned this. Then the step by step instructions to add cdef and cpdef was a great explanation for a beginner. And the table to show the list of C data types is very useful. This is also the firstt video that shows how to update setup.py with multiple pyx file. All other videos only have 1 pyx file. Teaching is really an art. Thank you!
@machinelearningplus4 ай бұрын
Thanks to you :)
@xyz8834 ай бұрын
Very well done. Intuitive explanation that can arm practitioners with enough knowledge to apply this in real life.
@rksps15 ай бұрын
please remove the thumbnail feature at the end of your videos. what's the use of it if last 20 seconds content if we are not able to see it.
@machinelearningplus4 ай бұрын
Thanks, hope it's better now
@polanasim5 ай бұрын
jesus christ bless you
@polanasim5 ай бұрын
jesus christ bless you
@ramu15065 ай бұрын
Excellent and clear cut explanation...
@machinelearningplus5 ай бұрын
Thanks 👍
@kevon2175 ай бұрын
Great explanation!
@machinelearningplus5 ай бұрын
Thanks!
@Steven-v6l5 ай бұрын
Yes, cython will let you interact with code libraries written in C. If you do 99% of your work in those C libraries, not in Python; you will get a good increase in speed. Of course you may need a lot of Python code to make sure your data is in a format compatible with those C libraries, and then more code to convert the C results back into Python format ... Why not simply program in C ? you can easily create dictionaries and sets -- these are just hash tables you can easily create tuples, linked lists or trees -- these are just just a "struct" maybe you feel that the python for i in range(n): ... is SO much cleaner than the C for (i=0; i<n; i++) {... maybe you can't endure life without this python loop: for fruit in fruits : ... maybe you simply can't comprehend this C code: startFruitLoop(); while (fruit = nextFruit()) { ... or maybe this C code is just morally offensive for (count=0; count < numFruits; count++) { fruit = fruits[i]; ... maybe you just H A T E all those braces "{}" and semicolons ";" Learn C ... for no other reason than: it looks good on your resume. But you may be surprised. C is a good programming language. If you ever need something to execute QUICKLY; C is a great choice.
@iaroslavd.9165 ай бұрын
useful tutorial. Thanks )
@MwendaNdungu5 ай бұрын
Could I get the DataSQL.csv file that you runned earlier in your class.?
@medhasu_Ai5 ай бұрын
❤ 😊
@aadhyatiwari96885 ай бұрын
One of the best explanations out here! Thankyou
@AB-cd5gd5 ай бұрын
Wow best tuto ever, would it work and actually provide improvement on front end part like tkinter?
@machinelearningplus5 ай бұрын
Yes
@biggriz245 ай бұрын
Very useful and clear explanations on these concepts, thank you
@gemini_5375 ай бұрын
Gemini 1.5 Pro: This video is about how to convert Python code to Cython and achieve significant speed improvements. The video starts by explaining what Cython is and how it works. Cython is a language that allows you to write Python code with C-like syntax. This means that you can take advantage of the speed of C while still being able to write code in a more readable Python style. The video then goes through a step-by-step process of how to convert a Python function to Cython. The process involves creating a new file with a .pyx extension and pasting the Python code into it. Then, you need to use the `scython` library to compile the .pyx file into a C extension module. Once the C extension module is created, you can import it into your Python code and use the Cython function just like any other Python function. The video also shows how to improve the performance of your Cython code by using decorators. Decorators are a special type of function that can be used to modify the behavior of other functions. In Cython, there are a number of decorators that can be used to optimize code for speed. For example, the `@cython.nogil` decorator can be used to tell Cython that the function does not need to acquire the Python Global Interpreter Lock (GIL). This can improve the performance of the function by allowing it to run concurrently with other Python threads. Overall, this video is a great resource for anyone who wants to learn how to speed up their Python code using Cython. By following the steps outlined in the video, you can achieve significant performance improvements without having to rewrite your code in C. Here are the key points covered in the video: * Cython is a language that allows you to write Python code with C-like syntax. * Cython code can be significantly faster than pure Python code. * The process of converting Python code to Cython involves creating a .pyx file and compiling it into a C extension module. * Cython decorators can be used to further improve the performance of Cython code.