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Deep Learning Interview Prep Course 

freeCodeCamp.org
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Prepare for a job interview about deep learning. This course covers 50 common interview questions related to deep learning and gives detailed explanations.
✏️ Course created by Tatev Karen Aslanyan.
✏️ Expanded course with 100 questions: courses.lunartech.ai/courses/...
⭐️ Contents ⭐️
⌨️ 0:00:00 Introduction
⌨️ 0:08:20 Question 1: What is Deep Learning?
⌨️ 0:11:45 Question 2: How does Deep Learning differ from traditional Machine Learning?
⌨️ 0:15:25 Question 3: What is a Neural Network?
⌨️ 0:21:40 Question 4: Explain the concept of a neuron in Deep Learning
⌨️ 0:24:35 Question 5: Explain architecture of Neural Networks in simple way
⌨️ 0:31:45 Question 6: What is an activation function in a Neural Network?
⌨️ 0:35:00 Question 7: Name few popular activation functions and describe them
⌨️ 0:47:40 Question 8: What happens if you do not use any activation functions in a neural network?
⌨️ 0:48:20 Question 9: Describe how training of basic Neural Networks works
⌨️ 0:53:45 Question 10: What is Gradient Descent?
⌨️ 1:03:50 Question 11: What is the function of an optimizer in Deep Learning?
⌨️ 1:09:25 Question 12: What is backpropagation, and why is it important in Deep Learning?
⌨️ 1:17:25 Question 13: How is backpropagation different from gradient descent?
⌨️ 1:19:55 Question 14: Describe what Vanishing Gradient Problem is and it’s impact on NN
⌨️ 1:25:55 Question 15: Describe what Exploding Gradients Problem is and it’s impact on NN
⌨️ 1:33:55 Question 16: There is a neuron in the hidden layer that always results in an error. What could be the reason?
⌨️ 1:37:50 Question 17: What do you understand by a computational graph?
⌨️ 1:43:28 Question 18: What is Loss Function and what are various Loss functions used in Deep Learning?
⌨️ 1:47:15 Question 19: What is Cross Entropy loss function and how is it called in industry?
⌨️ 1:50:18 Question 20: Why is Cross-entropy preferred as the cost function for multi-class classification problems?
⌨️ 1:53:10 Question 21: What is SGD and why it’s used in training Neural Networks?
⌨️ 1:58:24 Question 22: Why does stochastic gradient descent oscillate towards local minima?
⌨️ 2:03:38 Question 23: How is GD different from SGD?
⌨️ 2:08:19 Question 24: How can optimization methods like gradient descent be improved? What is the role of the momentum term?
⌨️ 2:14:22 Question 25: Compare batch gradient descent, minibatch gradient descent, and stochastic gradient descent.
⌨️ 2:19:12 Question 26: How to decide batch size in deep learning (considering both too small and too large sizes)?
⌨️ 2:26:01 Question 27: Batch Size vs Model Performance: How does the batch size impact the performance of a deep learning model?
⌨️ 2:29:33 Question 28: What is Hessian, and how can it be used for faster training? What are its disadvantages?
⌨️ 2:34:12 Question 29: What is RMSProp and how does it work?
⌨️ 2:38:43 Question 30: Discuss the concept of an adaptive learning rate. Describe adaptive learning methods
⌨️ 2:43:34 Question 31: What is Adam and why is it used most of the time in NNs?
⌨️ 2:49:59 Question 32: What is AdamW and why it’s preferred over Adam?
⌨️ 2:54:50 Question 33: What is Batch Normalization and why it’s used in NN?
⌨️ 3:03:19 Question 34: What is Layer Normalization, and why it’s used in NN?
⌨️ 3:06:20 Question 35: What are Residual Connections and their function in NN?
⌨️ 3:15:05 Question 36: What is Gradient clipping and their impact on NN?
⌨️ 3:18:09 Question 37: What is Xavier Initialization and why it’s used in NN?
⌨️ 3:22:13 Question 38: What are different ways to solve Vanishing gradients?
⌨️ 3:25:25 Question 39: What are ways to solve Exploding Gradients?
⌨️ 3:26:42 Question 40: What happens if the Neural Network is suffering from Overfitting relate to large weights?
⌨️ 3:29:18 Question 41: What is Dropout and how does it work?
⌨️ 3:33:59 Question 42: How does Dropout prevent overfitting in NN?
⌨️ 3:35:06 Question 43: Is Dropout like Random Forest?
⌨️ 3:39:21 Question 44: What is the impact of Drop Out on the training vs testing?
⌨️ 3:41:20 Question 45: What are L2/L1 Regularizations and how do they prevent overfitting in NN?
⌨️ 3:44:39 Question 46: What is the difference between L1 and L2 regularisations in NN?
⌨️ 3:48:43 Question 47: How do L1 vs L2 Regularization impact the Weights in a NN?
⌨️ 3:51:56 Question 48: What is the curse of dimensionality in ML or AI?
⌨️ 3:53:04 Question 49: How deep learning models tackle the curse of dimensionality?
⌨️ 3:56:47 Question 50: What are Generative Models, give examples?

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3 май 2024

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Комментарии : 74   
@LunarTech_ai
@LunarTech_ai 3 месяца назад
"Big thanks to the team of FreeCodeCamp, and especially to Beau for this incredible opportunity to collaborate on this AI content. ❤It's a privilege to contribute to worlds leading and most accessible online coding platforms, that shapes coding education and industry. Looking forward to more collaborations in the future!" Tatev Aslanyan
@tijithsasi9015
@tijithsasi9015 16 дней назад
! Q.,.....
@DontAddMe
@DontAddMe 3 месяца назад
Finally a interview prep video other than Full stack Development.
@nocopyrightgameplaystockvi231
@nocopyrightgameplaystockvi231 3 месяца назад
😂😂
@Moj206Pejo
@Moj206Pejo 3 месяца назад
I was also tired of all these videos😂😂😂😂
@virgorising8123
@virgorising8123 3 месяца назад
I love this. Thinking about applying for another job but always nervous when doing interviews. I’ve always gotten hired but still would love to hit them with a woah factor during interview. I feel like with the skills I have and the blown out interview would help me with me negotiating my salary
@cloey_b
@cloey_b 3 месяца назад
AWESOME!!!!!!! Interview preparation is a whole process that involves a lot skills, beside technical skill you need to know how to transmit your knowledge in a clear and effective way. Thank you for this and for all the FCC fantastic content!
@How.To.Train.Your_Ai
@How.To.Train.Your_Ai 3 месяца назад
This was invaluable for interview prep! Not just the tech, but the communication tips really resonate. Thanks for all the FCC gems!
@franciscofurey4878
@franciscofurey4878 Месяц назад
This is just amazing, im having a interview this next week, and this course will be my todo of the weekend. Thanks a lot Tatever and FreeCodeCamp
@snsa_kscc
@snsa_kscc 3 месяца назад
3:05:36 small erratum - gpt style models are decoder only and bert model (sentiment analysis) architecture is encoder only. Btw, great stuff. Have a nice one.
@aafshinfard
@aafshinfard 10 дней назад
Thank you so much, really helpful. I'd correct a mistake: 47:00 the leaky ReLU should not be for but , and to generalize, that can be any number between 0 and 1.
@SaulHernandez-gc8ge
@SaulHernandez-gc8ge 3 месяца назад
Great job in explaining the content, looking forward to what you have got next in store.
@nivitusfernandez3574
@nivitusfernandez3574 Месяц назад
Could you please consider creating a video discussing computer vision interview questions?
@kolsafi71
@kolsafi71 3 месяца назад
It's very clearly made vedio and make sure it helpful to us for clearing any interview
@shivamrawat3719
@shivamrawat3719 3 месяца назад
Most attractive thumbnail of freecodecamp 🥴
@TheMaldingZucchini
@TheMaldingZucchini 3 месяца назад
Good stuff, thanks!
@faizanahmed7485
@faizanahmed7485 3 месяца назад
ALSO REQ FOR IMP TOPICS IN DATA SCIENCE TOO
@user-qe5em9ht2h
@user-qe5em9ht2h 3 месяца назад
Please make a course on machine learning for data science interview prepration.
@DiscoverAwesomeness
@DiscoverAwesomeness 3 месяца назад
This is interesting and a nice refresher. Is there one for machine learning in the works?
@dinkaboutit4228
@dinkaboutit4228 3 месяца назад
Wow. The tech industry should really be ashamed of itself for creating an HR process this hostile.
@juzosuzuya9297
@juzosuzuya9297 3 месяца назад
She is so excellent but why she doesn't have a RU-vid channel?
@progwithpaul
@progwithpaul 3 месяца назад
Maybe she's not so used to content creation or doesn't get enough time to devote to it? :)
@Moj206Pejo
@Moj206Pejo 3 месяца назад
I also asked her and she said she didn't have time
@nocopyrightgameplaystockvi231
@nocopyrightgameplaystockvi231 3 месяца назад
Running a RU-vid channel requires a lot of time.
@zanusssidokazano1854
@zanusssidokazano1854 3 месяца назад
I have the same question 😢
@fahvm4362
@fahvm4362 3 месяца назад
There are many more people so good outside RU-vid.😅
@TrendTwist983
@TrendTwist983 3 месяца назад
Thank ypu for making a lot of helpful Stuff free ❤
@Moj206Pejo
@Moj206Pejo 3 месяца назад
its no free 9M subscribers is mony
@clandeszipp4564
@clandeszipp4564 3 месяца назад
She's so brave!
@ickebins6948
@ickebins6948 3 месяца назад
Why?
@caiyu538
@caiyu538 3 месяца назад
Thank you the lectures. for Answer 13, my understanding is reversed.
@nadiareyes7420
@nadiareyes7420 3 месяца назад
Thank you so much FCC for this great content! This will really help me.
@user-pg9ch6gc3i
@user-pg9ch6gc3i 3 месяца назад
In Answer 7, as shown in the chart on the right, shouldnt the formula be 'F(z) = 0.01z' for the negative case?
@nikhilmugganawar
@nikhilmugganawar 2 месяца назад
Do we have similar one for machine learning and natural language processing?
@Dom-zy1qy
@Dom-zy1qy 2 месяца назад
ML interviews seem far easier than Software interviews. (Assuming you've a basic understanding of calculus & linear algebra). Maybe cause software is more saturated & easy to outsource?
@TR1XT3RZ360
@TR1XT3RZ360 3 месяца назад
FYI, the mic orientation is incorrect.
@doctorcode2024
@doctorcode2024 2 месяца назад
Thank you
@Moj206Pejo
@Moj206Pejo 3 месяца назад
very helpfull i hope we are nice to meet you
@user-ke7dd9wf2n
@user-ke7dd9wf2n 3 месяца назад
☑️
@balasivasaimegireddypadala2225
@balasivasaimegireddypadala2225 3 месяца назад
@nocopyrightgameplaystockvi231
@nocopyrightgameplaystockvi231 3 месяца назад
Thanks for this 🎉
@vcool
@vcool Месяц назад
The graph for leaky ReLU is so wrong at 44:50. It does not match the equation.
@rishiraj2548
@rishiraj2548 3 месяца назад
Good evening
@__________________________6910
@__________________________6910 3 месяца назад
It's different
@villisaiandmagudam2.o692
@villisaiandmagudam2.o692 3 месяца назад
Please put game start in unity
@hemlatamahto5431
@hemlatamahto5431 3 месяца назад
Why no sound in video?
@sinarezaei4288
@sinarezaei4288 3 месяца назад
Like like like❤❤❤❤❤❤❤
@zy5492
@zy5492 3 месяца назад
Thanks Karen! Great job!
@khanra17
@khanra17 3 месяца назад
Babita ji aap ?
@karenbobo-yi8lw
@karenbobo-yi8lw 2 месяца назад
Thanks for slime and very helpful explanation. Excellent work.
@vcool
@vcool Месяц назад
I think Hessian is pronounced as heh-see-an, not as Haitian.
@mehdismaeili3743
@mehdismaeili3743 3 месяца назад
Excellent.
@user-alexander353
@user-alexander353 3 месяца назад
Too easy
@gtykh2674
@gtykh2674 2 дня назад
The right side
@abbasmahmoud360
@abbasmahmoud360 3 месяца назад
BANGLADESH
@LeobadoAlexisAguilar
@LeobadoAlexisAguilar 3 месяца назад
Great job
@CLICK_SUBSCRIBE_BUTTON
@CLICK_SUBSCRIBE_BUTTON 2 месяца назад
😊 thank you
@English..Translation..Practice
@English..Translation..Practice 2 месяца назад
Interesting educational video! Definitely a like!
@user-lr8ug1ex4r
@user-lr8ug1ex4r 24 дня назад
and she is pretty
@dracotraits9194
@dracotraits9194 4 дня назад
SPOT THE DRACO🐍=53
@freetechlearnings
@freetechlearnings 3 месяца назад
im first commenter
@leb5550
@leb5550 3 месяца назад
you want a medal?
@deepakjana5948
@deepakjana5948 12 дней назад
😢
@tonos5804
@tonos5804 3 месяца назад
What’s your OF
@vickykanchi-kd7ri
@vickykanchi-kd7ri 3 месяца назад
I am sorry, but this video feels superficial and the vocab is being used just for the sake of being used and not to explain. I am a fan of FCC but not this one
@ickebins6948
@ickebins6948 3 месяца назад
If you need a video like this for a job interview, you should not be at that interview... Just saying
@ankita1102
@ankita1102 3 месяца назад
Thank you
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