- ANN
- CNN
- RNN & LSTM
- GAN
- Transfer learning
- style transfer
- Intro to jupyter Notebooks
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Magic word like % or %%
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can be accessed any where by using cloud computing .
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& Anaconda is a
Software distribution, package or Environment manager.\
>>Perceptron algorithm
>>Error function
>>Discrete(Step funcion) or continuous(sigmoid) Error functions
>>Softmax error function for multiclass classification
##### Gradient Descent Algorithm
GDA= - learning rate * gradient
In simple words - ve slope for improve error function
#### Cross Entropy = -(sigma of ln(probability of predictions))
it shows how accurate a neural network workikng .
#### Feed forwardation -->> process to take inputs and get final output
#### Backpropagation is the central mechanism by which neural networks learn.
overfitting vs underfitting ->> *in overfitting* training error is low but Testing error is high, *in underfittinng* Both errors
are high.
1./* Technique to remove overfitting*/ ->> Regularization (L1,L2)
2.[Dropout] : in this technique we drop some nodes which has more weight already or train only less
Weight contain nodes.
- [Types of Gradient descent]:
- 1.Batch GD : take all data point in each epoch
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- Stochastic GD : Take different data-sets in each epoch
- 3.Mini Batch Gd : SGD + BGD
- A DL framework develope by FB Ai research team
- Faster than Tensorflow
- Neural networks from scratch
- Torchvision library for importing different types of Vision data set Ex. MNSIT digit Recognition.. 🤗
- Better than MLP ,beacause In cnn layer each node is not connected to every node of Next layer Only Required ones
- 4 types of filters used in cnnn layer
- Applications: Style transfer, Transfer learning as VGG16,VGG19 trained with Image net dataset
*pretrained models
CNN layer -relu- > Max pooling - - >cNN layer-relu-pooling... + 3 normal layer Then apply softmax or any other activation function
Recurrent Neural network introduce memory in neural network
- Specially working area -Text processing Chat bot,Shri,GOOgle assistant
- *problem -Gradient vanishing
- LSTM Resolve this problem
- LSTM used 4 *Gates in model
- Generator Adversial Network "Produce fake images based on given images or data"
- GAN uses 2 models "Discriminator + Generator"
- Discriminator is a simple network classofy real images or produce real images but Generator produce Fake images By creating Errors in Model.
- Email-Niketkumardheeryan@gmail.com
- LinkedIn- Niket kumar dheeryan