|
|
001. Welcome.mp4
|
MP4
|
10.2 MB
|
|
|
001. Welcome.srt
|
SRT
|
8.8 KB
|
|
|
002. What is a neural network.mp4
|
MP4
|
10 MB
|
|
|
002. What is a neural network.srt
|
SRT
|
9.9 KB
|
|
|
003. Supervised Learning with Neural Networks.mp4
|
MP4
|
12.9 MB
|
|
|
003. Supervised Learning with Neural Networks.srt
|
SRT
|
11.9 KB
|
|
|
004. Why is Deep Learning taking off.mp4
|
MP4
|
18.6 MB
|
|
|
004. Why is Deep Learning taking off.srt
|
SRT
|
17.9 KB
|
|
|
005. About this Course.mp4
|
MP4
|
4.7 MB
|
|
|
005. About this Course.srt
|
SRT
|
4.3 KB
|
|
|
006. Course Resources.mp4
|
MP4
|
2.5 MB
|
|
|
006. Course Resources.srt
|
SRT
|
3.6 KB
|
|
|
007. Geoffrey Hinton interview.mp4
|
MP4
|
191.8 MB
|
|
|
007. Geoffrey Hinton interview.srt
|
SRT
|
57.5 KB
|
|
|
008. Binary Classification.mp4
|
MP4
|
15.2 MB
|
|
|
008. Binary Classification.srt
|
SRT
|
10.6 KB
|
|
|
009. Logistic Regression.mp4
|
MP4
|
8.5 MB
|
|
|
009. Logistic Regression.srt
|
SRT
|
7.6 KB
|
|
|
010. Logistic Regression Cost Function.mp4
|
MP4
|
13.2 MB
|
|
|
010. Logistic Regression Cost Function.srt
|
SRT
|
11 KB
|
|
|
011. Gradient Descent.mp4
|
MP4
|
17 MB
|
|
|
011. Gradient Descent.srt
|
SRT
|
15.4 KB
|
|
|
012. Derivatives.mp4
|
MP4
|
13.4 MB
|
|
|
012. Derivatives.srt
|
SRT
|
12 KB
|
|
|
013. More Derivative Examples.mp4
|
MP4
|
16.8 MB
|
|
|
013. More Derivative Examples.srt
|
SRT
|
12.9 KB
|
|
|
014. Computation graph.mp4
|
MP4
|
5.7 MB
|
|
|
014. Computation graph.srt
|
SRT
|
4.3 KB
|
|
|
015. Derivatives with a Computation Graph.mp4
|
MP4
|
21.7 MB
|
|
|
015. Derivatives with a Computation Graph.srt
|
SRT
|
16.3 KB
|
|
|
016. Logistic Regression Gradient Descent.mp4
|
MP4
|
11.2 MB
|
|
|
016. Logistic Regression Gradient Descent.srt
|
SRT
|
9 KB
|
|
|
017. Gradient Descent on m Examples.mp4
|
MP4
|
12.2 MB
|
|
|
017. Gradient Descent on m Examples.srt
|
SRT
|
12.3 KB
|
|
|
018. Vectorization.mp4
|
MP4
|
12.6 MB
|
|
|
018. Vectorization.srt
|
SRT
|
9.6 KB
|
|
|
019. More Vectorization Examples.mp4
|
MP4
|
10.3 MB
|
|
|
019. More Vectorization Examples.srt
|
SRT
|
7.4 KB
|
|
|
020. Vectorizing Logistic Regression.mp4
|
MP4
|
11.5 MB
|
|
|
020. Vectorizing Logistic Regression.srt
|
SRT
|
9.6 KB
|
|
|
021. Vectorizing Logistic Regression's Gradient Output.mp4
|
MP4
|
15.5 MB
|
|
|
021. Vectorizing Logistic Regression's Gradient Output.srt
|
SRT
|
10.7 KB
|
|
|
022. Broadcasting in Python.mp4
|
MP4
|
16.2 MB
|
|
|
022. Broadcasting in Python.srt
|
SRT
|
14 KB
|
|
|
023. A note on python numpy vectors.mp4
|
MP4
|
12.4 MB
|
|
|
023. A note on python numpy vectors.srt
|
SRT
|
9 KB
|
|
|
024. Quick tour of Jupyter iPython Notebooks.mp4
|
MP4
|
9.2 MB
|
|
|
024. Quick tour of Jupyter iPython Notebooks.srt
|
SRT
|
5.8 KB
|
|
|
025. Explanation of logistic regression cost function (optional).mp4
|
MP4
|
10.5 MB
|
|
|
025. Explanation of logistic regression cost function (optional).srt
|
SRT
|
8.5 KB
|
|
|
026. Pieter Abbeel interview.mp4
|
MP4
|
80 MB
|
|
|
026. Pieter Abbeel interview.srt
|
SRT
|
26.9 KB
|
|
|
027. Neural Networks Overview.mp4
|
MP4
|
7.2 MB
|
|
|
027. Neural Networks Overview.srt
|
SRT
|
6.6 KB
|
|
|
028. Neural Network Representation.mp4
|
MP4
|
8.3 MB
|
|
|
028. Neural Network Representation.srt
|
SRT
|
8.1 KB
|
|
|
029. Computing a Neural Network's Output.mp4
|
MP4
|
16.3 MB
|
|
|
029. Computing a Neural Network's Output.srt
|
SRT
|
16.5 KB
|
|
|
030. Vectorizing across multiple examples.mp4
|
MP4
|
13.9 MB
|
|
|
030. Vectorizing across multiple examples.srt
|
SRT
|
10.1 KB
|
|
|
031. Explanation for Vectorized Implementation.mp4
|
MP4
|
12 MB
|
|
|
031. Explanation for Vectorized Implementation.srt
|
SRT
|
8.7 KB
|
|
|
032. Activation functions.mp4
|
MP4
|
19.9 MB
|
|
|
032. Activation functions.srt
|
SRT
|
17 KB
|
|
|
033. Why do you need non-linear activation functions.mp4
|
MP4
|
9.3 MB
|
|
|
033. Why do you need non-linear activation functions.srt
|
SRT
|
7.7 KB
|
|
|
034. Derivatives of activation functions.mp4
|
MP4
|
11.4 MB
|
|
|
034. Derivatives of activation functions.srt
|
SRT
|
11.3 KB
|
|
|
035. Gradient descent for Neural Networks.mp4
|
MP4
|
16 MB
|
|
|
035. Gradient descent for Neural Networks.srt
|
SRT
|
13.4 KB
|
|
|
036. Backpropagation intuition (optional).mp4
|
MP4
|
26 MB
|
|
|
036. Backpropagation intuition (optional).srt
|
SRT
|
17.7 KB
|
|
|
037. Random Initialization.mp4
|
MP4
|
12 MB
|
|
|
037. Random Initialization.srt
|
SRT
|
10.4 KB
|
|
|
038. Ian Goodfellow interview.mp4
|
MP4
|
54.5 MB
|
|
|
038. Ian Goodfellow interview.srt
|
SRT
|
23.1 KB
|
|
|
039. Deep L-layer neural network.mp4
|
MP4
|
10.3 MB
|
|
|
039. Deep L-layer neural network.srt
|
SRT
|
7.4 KB
|
|
|
040. Forward Propagation in a Deep Network.mp4
|
MP4
|
13 MB
|
|
|
040. Forward Propagation in a Deep Network.srt
|
SRT
|
9.9 KB
|
|
|
041. Getting your matrix dimensions right.mp4
|
MP4
|
17.4 MB
|
|
|
041. Getting your matrix dimensions right.srt
|
SRT
|
11.4 KB
|
|
|
042. Why deep representations.mp4
|
MP4
|
17.6 MB
|
|
|
042. Why deep representations.srt
|
SRT
|
14.5 KB
|
|
|
043. Building blocks of deep neural networks.mp4
|
MP4
|
12.8 MB
|
|
|
043. Building blocks of deep neural networks.srt
|
SRT
|
10.9 KB
|
|
|
044. Forward and Backward Propagation.mp4
|
MP4
|
19.8 MB
|
|
|
044. Forward and Backward Propagation.srt
|
SRT
|
13.4 KB
|
|
|
045. Parameters vs Hyperparameters.mp4
|
MP4
|
10.2 MB
|
|
|
045. Parameters vs Hyperparameters.srt
|
SRT
|
13 KB
|
|
|
046. What does this have to do with the brain.mp4
|
MP4
|
6 MB
|
|
|
046. What does this have to do with the brain.srt
|
SRT
|
5.6 KB
|
|
|
[CourseClub.NET].url
|
URL
|
102.4 B
|
|
|
[DesireCourse.Com].url
|
URL
|
0 B
|
|
|
[FCS Forum].url
|
URL
|
102.4 B
|
|
|
[FreeCourseSite.com].url
|
URL
|
102.4 B
|