Posts
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YOLO5
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CNNs
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Self-supervised learning (SSL)
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Egeria
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Variational Auto-Encoder
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Auto-Encoder
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Data Preprocessing
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Bayesian prerequisites | Sampling
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Bayesian prerequisites | Bayes Rule
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Bayesian prerequisites | Beta and Gamma distributions
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Bayesian prerequisites | Gaussian
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There is only one way and these are two ways | Frequentist vs. Bayes approach
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KL Divergence | Relative Entropy
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Bias Variance Noise trade off
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The Power of Joint Probability
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Activation functions
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ML brainstorming
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Expectation of Random Variable
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Probability notation
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NLP progress (brainstorming)
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MLE for the coin toss example
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Logistic Regression
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Creating ResNet18 from scratch
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HuggingFace Config Params Explained
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GPT2 receipt example
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Acronyms, metrics and tasks in NLP
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BERT predicts the words
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Transformers
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Learning the sum operation (regression)
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From Thin Air
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Freezing layers (parameters) of a neural net
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Resnet inside
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Heatmaps
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Working with images in Python, PyTorch
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Swish and Mish
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LSUV
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PAMAdam
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Adam and Adaam
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LAMB
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SGD optimizer with momentum
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Layer initialization in PyTorch
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Random Forest
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Caffe2
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Matplotlib
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Python Callbacks vs. PyTorch hooks
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Pseudo labeling
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Pooling operations in PyTorch
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Convolution details in PyTorch
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Resnet simple explained
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PyTorch Cheat Sheet
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The Impact of Matrix Multiplication
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Softmax vs. Sigmoid functions
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Impact of Weight Decay
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Altering classes of FastAi
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Planet dataset from Kaggle, detect the criterion FastAi uses
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Torchvision
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Color Normalization
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Batch norm
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Gpt 2
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Pytorch healthier life
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ImageDataBunch
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Github zen
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Windows 10 tips
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Pytorch training model
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What is new in PyTorch 1.0?
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Building pytorch functionality
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Number of Parameters in Keras LSTM
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Time Series terms
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LSTM in PyTorch
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ПЦА
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PyTorch from tabula rasa
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Backpropagation honorable notes
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Searching the GitHub
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Creating Github Pull Requests
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