MIT 6.S191: Convolutional Neural Networks

  Рет қаралды 93,771

Alexander Amini

Alexander Amini

Күн бұрын

Пікірлер: 48
@johnpuopolo4413
@johnpuopolo4413 Ай бұрын
Great series! Thanks for making the concepts approachable. These lectures are at a perfect level for understanding key concepts and for having the vocabulary and foundation for understanding other available materials. I especially found Ava's overview of Transformers and how the Q, K, and V matrices relate an "a ha" moment! Thank you, all.
@husseinekeita8909
@husseinekeita8909 6 ай бұрын
Thank you for sharing quality content like this for free for several years
@jhatpatchutpk
@jhatpatchutpk 5 ай бұрын
I don't even need to be in MIT to learn from them! Outstanding and clear delivery of difficult concepts.Thank you.
@mahmoudjafari-tk6ry
@mahmoudjafari-tk6ry 3 ай бұрын
Dear Amini.was good trech too especially navigation too
@aiwroy
@aiwroy 6 ай бұрын
While sliding window is good, YoLo outperforms Faster RCNN and is generally considered state of the art for object detection
@PerceptronsAI
@PerceptronsAI 5 ай бұрын
I wanted to extend my sincere thanks for the wonderful lecture you delivered on Deep Learning.
@wuyanfeng42
@wuyanfeng42 5 күн бұрын
OMG, it's so intuitive !🤩
@noushadarakkal5179
@noushadarakkal5179 Ай бұрын
Thanks for this great lecture series. However the audio is muffled at some points
@ajayrathore7045
@ajayrathore7045 4 ай бұрын
The lecture is awesome but the quality of audio is very poor.
@vijaykumars1771
@vijaykumars1771 5 ай бұрын
Thank you, i have one doubt here, at 15:30 you said 10 k neurons in hidden layer for processing 10k parameters, so resultant would be 10k^2 parameters. My doubt is why we need 10 k neurons at any layer. we can decide the number of layers right?
@primedanny417
@primedanny417 3 ай бұрын
It's just an example, choosing # of neurons and # of layers is an engineering task. Models tend to be able to solve complex tasks better the deeper (or wider) they are, and an example with a 100 x 100 image with 1 fully-connected hidden layer of 10,000 neurons would have >100M connections/weights.
@xxyyzz8464
@xxyyzz8464 2 ай бұрын
@@primedanny417True, but there are plenty of examples of fully connected networks that work and train well on 128x128 sized grayscale images, for example. I know they aren’t HD quality or SoTA by any means, but to say FC nets are “completely impractical” as a blanket statement is a little strong IMO. Great lecture series-this is nit-picking here. We might as well criticize using the term “convolutional” without explaining it’s typically implemented as a cross-correlation and not a convolution while we’re at it! 😆
@fideslegoale9611
@fideslegoale9611 3 ай бұрын
Thank you for courses we are learning lot
@htoorutube
@htoorutube 6 ай бұрын
Software Lab 1 still not made available, when will that happen?
@RajeevKumar-dq4ct
@RajeevKumar-dq4ct 6 ай бұрын
It is published now
@ghaithal-refai4550
@ghaithal-refai4550 6 ай бұрын
Thank you very much, it is a great lecture. I hope that you develop the lectures over the years as it seems to be the same contents. topics like pretrained models and knowledge transfer, YOLO might be good to be added to CNN
@DreamBuilders-rq6km
@DreamBuilders-rq6km 6 ай бұрын
Thanks for sharing this knowledge. Be blessed
@albertmills9365
@albertmills9365 Ай бұрын
It's weird that he uses Boston Dynamics robots in his first slides, since boston dynamics has gone on record saying they don't use AI.
@zhspartan9993
@zhspartan9993 3 ай бұрын
Thanks for the lecture
@ajaywanekar9136
@ajaywanekar9136 4 ай бұрын
Very nice Explanation
@jsherborne92
@jsherborne92 4 ай бұрын
Great content, but audio sounds like it was recorded with a toaster
@sudhirkothari
@sudhirkothari 3 ай бұрын
fantastic ! thank you for the lectures
@woodworkingaspirations1720
@woodworkingaspirations1720 6 ай бұрын
Waiting patiently
@o__bean__o
@o__bean__o 6 ай бұрын
That's the spirit
@jteichma
@jteichma 4 ай бұрын
Great courses thanks!❤
@darylltempesta
@darylltempesta 3 ай бұрын
I love you but the Keller Paradox points to overlooked emergence.
@karterel4562
@karterel4562 6 ай бұрын
thank for sharing that course , that's so usefull !
@leesiheon8013
@leesiheon8013 3 ай бұрын
Love the lecture!
@meshkatuddinahammed
@meshkatuddinahammed 5 ай бұрын
I have a confusion about the Lab 2 Part 2 ( facial Detection with CNN). It has been claimed that in the CelebA dataset most faces are of light skinned females. But the model ultimately gives lower accuracy for this category of faces compared to other three categories. Why is that?
@zahramanafi4793
@zahramanafi4793 4 ай бұрын
Where did you find the labs? Are they available on KZbin?
@shahriarahmadfahim6457
@shahriarahmadfahim6457 6 ай бұрын
But the lab between Lecture 2 and 3 is still not published in the website?
@benjaminy.
@benjaminy. 6 ай бұрын
I think it is not their practice to publish their lab work
@RajeevKumar-dq4ct
@RajeevKumar-dq4ct 6 ай бұрын
It has been published now
@suhaimiseliman8593
@suhaimiseliman8593 5 ай бұрын
EACH COLOR- f RANGE. ACTIVE CMOS SENSOR... PHOTON>e BEAM IF 3 LED CAN PRODUCE MULTICOLOR, I 🤔 I CAN USE R,G & B BANDPASS FILTER TO GET THE SAME RESULT VIA SPECIAL PURPOSE DIGITAL OSCILLOSCOPE..😎😉
@marlhex6280
@marlhex6280 4 ай бұрын
Hello Alex, please enlighten the peasants with a juicy time series episode? If you had been my teacher since I was a kid, I would be a different person today. Thank you for this, grateful today and in the future.
@IvanAnishchuk
@IvanAnishchuk 4 ай бұрын
Time series intro lecture would be great to watch indeed!
@genkideska4486
@genkideska4486 6 ай бұрын
Waiting ..
@tmcgraw
@tmcgraw 6 ай бұрын
right?
@jorgeguiragossian8488
@jorgeguiragossian8488 6 ай бұрын
Have any of the labs been published yet?
@RajeevKumar-dq4ct
@RajeevKumar-dq4ct 6 ай бұрын
yes
@zahramanafi4793
@zahramanafi4793 4 ай бұрын
@@RajeevKumar-dq4ct Where? Are they free or are they paid?
@samiragh63
@samiragh63 6 ай бұрын
Cant wait...
@abdelazizeabdullahelsouday8118
@abdelazizeabdullahelsouday8118 6 ай бұрын
Thank you for sharing, please i need a help and i send an email to you but no response, could you please help me? thanks in advance.
@Mantra-x1d
@Mantra-x1d 3 ай бұрын
Testing
@jackymarcel4108
@jackymarcel4108 Ай бұрын
Jackson Thomas Thomas Charles Thomas Donald
@AnuwktootLee-yf9ff
@AnuwktootLee-yf9ff 6 ай бұрын
Bahia hu hum ab hum tum huneaha sath rahneged university kit universe abantw aur oyra Karen’s gaadi mwd humne svn layered D muje apne array Adamu aki fire m me stover ki emowpwr hitw rehte hua is
@sansdieutechstreetwear
@sansdieutechstreetwear 5 ай бұрын
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