Ahh this is exactly what I needed! Thank you so much for explaining RNNs in such a clear way :) Keep up the great work - I'm sure it's much appreciated by lots of viewers!
there are several contents on RNN which does not explain the intuition but yours is the best content i've seen which gives you the intuition and concepts in a short video thanks a lot
Highly Underrated Channel. Just one thing to ask how many layers are there in each RNN as you wrote weight matrices are all same since its actually only one cell. Also when then input from last timestamp comes how is it simultaneously passed along with other input. Are both vectors added ?
hi there, may I ask if RNN (particularly LSTM) can be trained as any NN for both classification and detection? like can I classify action and detect say face ?
I am from india i am in 10th grade i know little python i wanna become a data scientist can i take this course? On your website in this your official website i hope?? Please give me a reply?
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Ahh this is exactly what I needed! Thank you so much for explaining RNNs in such a clear way :) Keep up the great work - I'm sure it's much appreciated by lots of viewers!
That’s great to hear Christina! I’m glad it was helpful. :)
there are several contents on RNN which does not explain the intuition but yours is the best content i've seen which gives you the intuition and concepts in a short video thanks a lot
Hope this explanation was helpful for you! Did you hear anything for the first time in this video?
In only 3 minutes, I understood the concept that I couldn't understand in hours of lectures. Good Girl!
High quality content and very well explained. I saw about 10 different videos of RNN and by far this is the best. thanks a lot!
That's great to hear, thank you!
Highly Underrated Channel. Just one thing to ask how many layers are there in each RNN as you wrote weight matrices are all same since its actually only one cell. Also when then input from last timestamp comes how is it simultaneously passed along with other input. Are both vectors added ?
Very intuitive explanation, espeically with your interpretation! Keep up the great work :)
Thank you. This was precisely the explanation I was looking for: especially how the input is handled in terms of time-steps..
You're very welcome!
Awesome video!!! Eagerly waiting for the next one on this channel :)
Thank you Python Engineer!
crystal clear explaination of RNN !!! Thank You so much ❣
That's a very important topic. This video inspires me to add RNN to my code demonstration library. Thanks.
Awesome to hear!
Wow! You explained this so much better than Lex Fridman :D
So easy to understand
thats so clear explanation! It would be awesome to give a real example with sequential data where you have vectors with the weights.
Amazing Explanation!! 👏
Very clear description, thank you!
hi there, may I ask if RNN (particularly LSTM) can be trained as any NN for both classification and detection? like can I classify action and detect say face ?
Thank you for your amazing explanations ! I have now a better understanding of LSTM thanks to you clarity.
That's great to hear Jérémy!
Explanation is fine. Only one wish is to make some insulation in the studio to avoid big echo
Amazing Explanation
Very well and clearly explained. Thanks
You're welcome!
Hello Misra 🙂🌻 Thank you so much for concise summary on RNN and variants 🎉
You are very welcome. :)
I read the title and thought: "Fool-proof? Well, I'm a fool! I better watch this!"
you are doing awesome job, thank you !
Thanks Tech Elefant!
Very Good explained
Thanks!
Good explanation.
Thank you for sharing this.
this tutorial is fire
This is awesome! Thank you!!
Thanks! and you are very welcome :)
WE MAKING IT OUTTA THE AGI WITH THIS ONE🗣🗣🗣🗣💯💯💯💯🔥🔥🔥🔥
I am from india i am in 10th grade i know little python i wanna become a data scientist can i take this course? On your website in this your official website i hope?? Please give me a reply?
Hey Mike, yes the link in the description is my official website. :)
Your video just proved me a fool. I now understand it
thanks
You're very welcome!
Hi, thanks for your helpful videos, you are very smart and beautiful.
Great to hear you like the videos!
💯💯💯💯💯💯
Thank you!!