07-07-2024, 10:22 AM
Download Free Download : Udemy TensorFlow for Deep Learning Bootcamp
mp4 | Video: h264,1280X720 | Audio: AAC, 44.1 KHz
Genre:eLearning | Language: English | Size:31.9 GB
mp4 | Video: h264,1280X720 | Audio: AAC, 44.1 KHz
Genre:eLearning | Language: English | Size:31.9 GB
Files Included :
001 Course Outline.mp4 (60.45 MB)
MP4
002 Join Our Online Classroom!.mp4 (77.59 MB)
MP4
005 ZTM Resources.mp4 (43.82 MB)
MP4
001 What is deep learning.mp4 (36.22 MB)
MP4
002 Why use deep learning.mp4 (26.16 MB)
MP4
003 What are neural networks.mp4 (65.63 MB)
MP4
005 What is deep learning already being used for.mp4 (64.61 MB)
MP4
006 What is and why use TensorFlow.mp4 (69.29 MB)
MP4
007 What is a Tensor.mp4 (19.38 MB)
MP4
008 What we're going to cover throughout the course.mp4 (14.36 MB)
MP4
009 How to approach this course.mp4 (24.96 MB)
MP4
011 Creating your first tensors with TensorFlow and tf constant().mp4 (133.83 MB)
MP4
012 Creating tensors with TensorFlow and tf Variable().mp4 (59.2 MB)
MP4
013 Creating random tensors with TensorFlow.mp4 (88.82 MB)
MP4
014 Shuffling the order of tensors.mp4 (76.03 MB)
MP4
015 Creating tensors from NumPy arrays.mp4 (101.04 MB)
MP4
016 Getting information from your tensors (tensor attributes).mp4 (86.84 MB)
MP4
017 Indexing and expanding tensors.mp4 (85.73 MB)
MP4
018 Manipulating tensors with basic operations.mp4 (45.95 MB)
MP4
019 Matrix multiplication with tensors part 1.mp4 (103.39 MB)
MP4
020 Matrix multiplication with tensors part 2.mp4 (106.93 MB)
MP4
021 Matrix multiplication with tensors part 3.mp4 (80.48 MB)
MP4
022 Changing the datatype of tensors.mp4 (72.64 MB)
MP4
023 Tensor aggregation (finding the min, max, mean & more).mp4 (90.17 MB)
MP4
024 Tensor troubleshooting example (updating tensor datatypes).mp4 (70.68 MB)
MP4
025 Finding the positional minimum and maximum of a tensor (argmin and argmax).mp4 (97.68 MB)
MP4
026 Squeezing a tensor (removing all 1-dimension axes).mp4 (30.1 MB)
MP4
027 One-hot encoding tensors.mp4 (19.96 MB)
MP4
028 Trying out more tensor math operations.mp4 (57.17 MB)
MP4
029 Exploring TensorFlow and NumPy's compatibility.mp4 (43.6 MB)
MP4
030 Making sure our tensor operations run really fast on GPUs.mp4 (112.43 MB)
MP4
001 Introduction to Neural Network Regression with TensorFlow.mp4 (51.38 MB)
MP4
002 Inputs and outputs of a neural network regression model.mp4 (50.3 MB)
MP4
003 Anatomy and architecture of a neural network regression model.mp4 (51.87 MB)
MP4
004 Creating sample regression data (so we can model it).mp4 (89.43 MB)
MP4
006 The major steps in modelling with TensorFlow.mp4 (186.24 MB)
MP4
007 Steps in improving a model with TensorFlow part 1.mp4 (39.71 MB)
MP4
008 Steps in improving a model with TensorFlow part 2.mp4 (91.48 MB)
MP4
009 Steps in improving a model with TensorFlow part 3.mp4 (135.67 MB)
MP4
010 Evaluating a TensorFlow model part 1 (visualise, visualise, visualise).mp4 (66.92 MB)
MP4
011 Evaluating a TensorFlow model part 2 (the three datasets).mp4 (81.29 MB)
MP4
012 Evaluating a TensorFlow model part 3 (getting a model summary).mp4 (196.42 MB)
MP4
013 Evaluating a TensorFlow model part 4 (visualising a model's layers).mp4 (70.97 MB)
MP4
014 Evaluating a TensorFlow model part 5 (visualising a model's predictions).mp4 (66.57 MB)
MP4
015 Evaluating a TensorFlow model part 6 (common regression evaluation metrics).mp4 (70.81 MB)
MP4
016 Evaluating a TensorFlow regression model part 7 (mean absolute error).mp4 (56.52 MB)
MP4
017 Evaluating a TensorFlow regression model part 7 (mean square error).mp4 (32.6 MB)
MP4
018 Setting up TensorFlow modelling experiments part 1 (start with a simple model).mp4 (128 MB)
MP4
019 Setting up TensorFlow modelling experiments part 2 (increasing complexity).mp4 (61.4 MB)
MP4
020 Comparing and tracking your TensorFlow modelling experiments.mp4 (93.06 MB)
MP4
021 How to save a TensorFlow model.mp4 (93.26 MB)
MP4
022 How to load and use a saved TensorFlow model.mp4 (105.9 MB)
MP4
023 (Optional) How to save and download files from Google Colab.mp4 (68.94 MB)
MP4
024 Putting together what we've learned part 1 (preparing a dataset).mp4 (146.36 MB)
MP4
025 Putting together what we've learned part 2 (building a regression model).mp4 (122.94 MB)
MP4
026 Putting together what we've learned part 3 (improving our regression model).mp4 (156.78 MB)
MP4
027 Preprocessing data with feature scaling part 1 (what is feature scaling).mp4 (93.61 MB)
MP4
028 Preprocessing data with feature scaling part 2 (normalising our data).mp4 (83.12 MB)
MP4
029 Preprocessing data with feature scaling part 3 (fitting a model on scaled data).mp4 (76.74 MB)
MP4
001 Introduction to neural network classification in TensorFlow.mp4 (73.83 MB)
MP4
002 Example classification problems (and their inputs and outputs).mp4 (20.43 MB)
MP4
003 Input and output tensors of classification problems.mp4 (18.68 MB)
MP4
004 Typical architecture of neural network classification models with TensorFlow.mp4 (113.61 MB)
MP4
005 Creating and viewing classification data to model.mp4 (107.1 MB)
MP4
006 Checking the input and output shapes of our classification data.mp4 (38.9 MB)
MP4
007 Building a not very good classification model with TensorFlow.mp4 (127.17 MB)
MP4
008 Trying to improve our not very good classification model.mp4 (85.14 MB)
MP4
009 Creating a function to view our model's not so good predictions.mp4 (163.19 MB)
MP4
011 Make our poor classification model work for a regression dataset.mp4 (125.83 MB)
MP4
012 Non-linearity part 1 Straight lines and non-straight lines.mp4 (97.48 MB)
MP4
013 Non-linearity part 2 Building our first neural network with non-linearity.mp4 (60.23 MB)
MP4
014 Non-linearity part 3 Upgrading our non-linear model with more layers.mp4 (125.8 MB)
MP4
015 Non-linearity part 4 Modelling our non-linear data once and for all.mp4 (98.44 MB)
MP4
016 Non-linearity part 5 Replicating non-linear activation functions from scratch.mp4 (149 MB)
MP4
017 Getting great results in less time by tweaking the learning rate.mp4 (137.89 MB)
MP4
018 Using the TensorFlow History object to plot a model's loss curves.mp4 (62.92 MB)
MP4
019 Using callbacks to find a model's ideal learning rate.mp4 (156.68 MB)
MP4
020 Training and evaluating a model with an ideal learning rate.mp4 (89.55 MB)
MP4
021 Introducing more classification evaluation methods.mp4 (36.78 MB)
MP4
022 Finding the accuracy of our classification model.mp4 (33.87 MB)
MP4
023 Creating our first confusion matrix (to see where our model is getting confused).mp4 (56.54 MB)
MP4
024 Making our confusion matrix prettier.mp4 (114.96 MB)
MP4
025 Putting things together with multi-class classification part 1 Getting the data.mp4 (87.22 MB)
MP4
026 Multi-class classification part 2 Becoming one with the data.mp4 (48.8 MB)
MP4
027 Multi-class classification part 3 Building a multi-class classification model.mp4 (143.98 MB)
MP4
028 Multi-class classification part 4 Improving performance with normalisation.mp4 (114.43 MB)
MP4
029 Multi-class classification part 5 Comparing normalised and non-normalised data.mp4 (18.81 MB)
MP4
030 Multi-class classification part 6 Finding the ideal learning rate.mp4 (25.44 MB)
MP4
031 Multi-class classification part 7 Evaluating our model.mp4 (119.38 MB)
MP4
032 Multi-class classification part 8 Creating a confusion matrix.mp4 (34.22 MB)
MP4
033 Multi-class classification part 9 Visualising random model predictions.mp4 (58.93 MB)
MP4
034 What patterns is our model learning.mp4 (56.26 MB)
MP4
001 Introduction to Computer Vision with TensorFlow.mp4 (23.3 MB)
MP4
002 Introduction to Convolutional Neural Networks (CNNs) with TensorFlow.mp4 (77.91 MB)
MP4
003 Downloading an image dataset for our first Food Vision model.mp4 (73.2 MB)
MP4
004 Becoming One With Data.mp4 (45.67 MB)
MP4
005 Becoming One With Data Part 2.mp4 (90.2 MB)
MP4
006 Becoming One With Data Part 3.mp4 (33.74 MB)
MP4
007 Building an end to end CNN Model.mp4 (70.1 MB)
MP4
008 Using a GPU to run our CNN model 5x faster.mp4 (117.14 MB)
MP4
009 Trying a non-CNN model on our image data.mp4 (102.21 MB)
MP4
010 Improving our non-CNN model by adding more layers.mp4 (108.42 MB)
MP4
011 Breaking our CNN model down part 1 Becoming one with the data.mp4 (92.14 MB)
MP4
012 Breaking our CNN model down part 2 Preparing to load our data.mp4 (110 MB)
MP4
013 Breaking our CNN model down part 3 Loading our data with ImageDataGenerator.mp4 (105.23 MB)
MP4
014 Breaking our CNN model down part 4 Building a baseline CNN model.mp4 (87.47 MB)
MP4
015 Breaking our CNN model down part 5 Looking inside a Conv2D layer.mp4 (190.14 MB)
MP4
016 Breaking our CNN model down part 6 Compiling and fitting our baseline CNN.mp4 (64.91 MB)
MP4
017 Breaking our CNN model down part 7 Evaluating our CNN's training curves.mp4 (89.21 MB)
MP4
018 Breaking our CNN model down part 8 Reducing overfitting with Max Pooling.mp4 (132.37 MB)
MP4
019 Breaking our CNN model down part 9 Reducing overfitting with data augmentation.mp4 (66.34 MB)
MP4
020 Breaking our CNN model down part 10 Visualizing our augmented data.mp4 (160.58 MB)
MP4
021 Breaking our CNN model down part 11 Training a CNN model on augmented data.mp4 (96.01 MB)
MP4
022 Breaking our CNN model down part 12 Discovering the power of shuffling data.mp4 (105.23 MB)
MP4
023 Breaking our CNN model down part 13 Exploring options to improve our model.mp4 (42.39 MB)
MP4
024 Downloading a custom image to make predictions on.mp4 (44.31 MB)
MP4
025 Writing a helper function to load and preprocessing custom images.mp4 (107.27 MB)
MP4
026 Making a prediction on a custom image with our trained CNN.mp4 (100.93 MB)
MP4
027 Multi-class CNN's part 1 Becoming one with the data.mp4 (140.95 MB)
MP4
028 Multi-class CNN's part 2 Preparing our data (turning it into tensors).mp4 (46.62 MB)
MP4
029 Multi-class CNN's part 3 Building a multi-class CNN model.mp4 (91.9 MB)
MP4
030 Multi-class CNN's part 4 Fitting a multi-class CNN model to the data.mp4 (60.92 MB)
MP4
031 Multi-class CNN's part 5 Evaluating our multi-class CNN model.mp4 (34.31 MB)
MP4
032 Multi-class CNN's part 6 Trying to fix overfitting by removing layers.mp4 (131.54 MB)
MP4
033 Multi-class CNN's part 7 Trying to fix overfitting with data augmentation.mp4 (48.71 MB)
MP4
034 Multi-class CNN's part 8 Things you could do to improve your CNN model.mp4 (35.81 MB)
MP4
035 Multi-class CNN's part 9 Making predictions with our model on custom images.mp4 (97.9 MB)
MP4
036 Saving and loading our trained CNN model.mp4 (70.43 MB)
MP4
001 What is and why use transfer learning.mp4 (30.4 MB)
MP4
002 Downloading and preparing data for our first transfer learning model.mp4 (133.27 MB)
MP4
003 Introducing Callbacks in TensorFlow and making a callback to track our models.mp4 (95.32 MB)
MP4
004 Exploring the TensorFlow Hub website for pretrained models.mp4 (87.72 MB)
MP4
005 Building and compiling a TensorFlow Hub feature extraction model.mp4 (138.21 MB)
MP4
006 Blowing our previous models out of the water with transfer learning.mp4 (101.53 MB)
MP4
007 Plotting the loss curves of our ResNet feature extraction model.mp4 (62.18 MB)
MP4
008 Building and training a pre-trained EfficientNet model on our data.mp4 (108.05 MB)
MP4
009 Different Types of Transfer Learning.mp4 (113.32 MB)
MP4
010 Comparing Our Model's Results.mp4 (53.08 MB)
MP4
012 Exercise Imposter Syndrome.mp4 (8.97 MB)
MP4
001 Introduction to Transfer Learning in TensorFlow Part 2 Fine-tuning.mp4 (61.99 MB)
MP4
002 Importing a script full of helper functions (and saving lots of space).mp4 (54.49 MB)
MP4
003 Downloading and turning our images into a TensorFlow BatchDataset.mp4 (175.76 MB)
MP4
004 Discussing the four (actually five) modelling experiments we're running.mp4 (11.15 MB)
MP4
005 Comparing the TensorFlow Keras Sequential API versus the Functional API.mp4 (16.95 MB)
MP4
007 Creating our first model with the TensorFlow Keras Functional API.mp4 (134.12 MB)
MP4
008 Compiling and fitting our first Functional API model.mp4 (136.29 MB)
MP4
009 Getting a feature vector from our trained model.mp4 (149.28 MB)
MP4
010 Drilling into the concept of a feature vector (a learned representation).mp4 (53.28 MB)
MP4
011 Downloading and preparing the data for Model 1 (1 percent of training data).mp4 (98.15 MB)
MP4
012 Building a data augmentation layer to use inside our model.mp4 (118.18 MB)
MP4
014 Visualizing what happens when images pass through our data augmentation layer.mp4 (123.3 MB)
MP4
015 Building Model 1 (with a data augmentation layer and 1% of training data).mp4 (155.92 MB)
MP4
016 Building Model 2 (with a data augmentation layer and 10% of training data).mp4 (161.1 MB)
MP4
017 Creating a ModelCheckpoint to save our model's weights during training.mp4 (68.95 MB)
MP4
018 Fitting and evaluating Model 2 (and saving its weights using ModelCheckpoint).mp4 (69.29 MB)
MP4
019 Loading and comparing saved weights to our existing trained Model 2.mp4 (63.03 MB)
MP4
020 Preparing Model 3 (our first fine-tuned model).mp4 (201.27 MB)
MP4
021 Fitting and evaluating Model 3 (our first fine-tuned model).mp4 (59.53 MB)
MP4
022 Comparing our model's results before and after fine-tuning.mp4 (84.75 MB)
MP4
023 Downloading and preparing data for our biggest experiment yet (Model 4).mp4 (56.64 MB)
MP4
024 Preparing our final modelling experiment (Model 4).mp4 (96.11 MB)
MP4
025 Fine-tuning Model 4 on 100% of the training data and evaluating its results.mp4 (98.02 MB)
MP4
026 Comparing our modelling experiment results in TensorBoard.mp4 (96.09 MB)
MP4
027 How to view and delete previous TensorBoard experiments.mp4 (18.48 MB)
MP4
001 Introduction to Transfer Learning Part 3 Scaling Up.mp4 (40.99 MB)
MP4
002 Getting helper functions ready and downloading data to model.mp4 (132.57 MB)
MP4
003 Outlining the model we're going to build and building a ModelCheckpoint callback.mp4 (29.17 MB)
MP4
004 Creating a data augmentation layer to use with our model.mp4 (36.19 MB)
MP4
005 Creating a headless EfficientNetB0 model with data augmentation built in.mp4 (81.39 MB)
MP4
006 Fitting and evaluating our biggest transfer learning model yet.mp4 (60.1 MB)
MP4
007 Unfreezing some layers in our base model to prepare for fine-tuning.mp4 (100.48 MB)
MP4
008 Fine-tuning our feature extraction model and evaluating its performance.mp4 (66.14 MB)
MP4
009 Saving and loading our trained model.mp4 (57.96 MB)
MP4
010 Downloading a pretrained model to make and evaluate predictions with.mp4 (80.12 MB)
MP4
011 Making predictions with our trained model on 25,250 test samples.mp4 (115.71 MB)
MP4
012 Unravelling our test dataset for comparing ground truth labels to predictions.mp4 (38.11 MB)
MP4
013 Confirming our model's predictions are in the same order as the test labels.mp4 (50.88 MB)
MP4
014 Creating a confusion matrix for our model's 101 different classes.mp4 (162.54 MB)
MP4
015 Evaluating every individual class in our dataset.mp4 (133.35 MB)
MP4
016 Plotting our model's F1-scores for each separate class.mp4 (78.45 MB)
MP4
017 Creating a function to load and prepare images for making predictions.mp4 (109.08 MB)
MP4
018 Making predictions on our test images and evaluating them.mp4 (173.5 MB)
MP4
019 Discussing the benefits of finding your model's most wrong predictions.mp4 (59.09 MB)
MP4
020 Writing code to uncover our model's most wrong predictions.mp4 (110.89 MB)
MP4
021 Plotting and visualising the samples our model got most wrong.mp4 (127.93 MB)
MP4
022 Making predictions on and plotting our own custom images.mp4 (110.03 MB)
MP4
001 Introduction to Milestone Project 1 Food Vision Big™.mp4 (28.07 MB)
MP4
002 Making sure we have access to the right GPU for mixed precision training.mp4 (87.85 MB)
MP4
003 Getting helper functions ready.mp4 (26.5 MB)
MP4
004 Introduction to TensorFlow Datasets (TFDS).mp4 (99.42 MB)
MP4
005 Exploring and becoming one with the data (Food101 from TensorFlow Datasets).mp4 (116.54 MB)
MP4
006 Creating a preprocessing function to prepare our data for modelling.mp4 (132.52 MB)
MP4
007 Batching and preparing our datasets (to make them run fast).mp4 (133.48 MB)
MP4
008 Exploring what happens when we batch and prefetch our data.mp4 (55.73 MB)
MP4
009 Creating modelling callbacks for our feature extraction model.mp4 (60.3 MB)
MP4
011 Turning on mixed precision training with TensorFlow.mp4 (109.41 MB)
MP4
012 Creating a feature extraction model capable of using mixed precision training.mp4 (108.39 MB)
MP4
013 Checking to see if our model is using mixed precision training layer by layer.mp4 (89.08 MB)
MP4
014 Training and evaluating a feature extraction model (Food Vision Big™).mp4 (89.93 MB)
MP4
015 Introducing your Milestone Project 1 challenge build a model to beat DeepFood.mp4 (91.54 MB)
MP4
002 Introduction to Natural Language Processing (NLP) and Sequence Problems.mp4 (125.34 MB)
MP4
003 Example NLP inputs and outputs.mp4 (27.77 MB)
MP4
004 The typical architecture of a Recurrent Neural Network (RNN).mp4 (108.68 MB)
MP4
005 Preparing a notebook for our first NLP with TensorFlow project.mp4 (83.11 MB)
MP4
006 Becoming one with the data and visualising a text dataset.mp4 (162.87 MB)
MP4
007 Splitting data into training and validation sets.mp4 (60.45 MB)
MP4
008 Converting text data to numbers using tokenisation and embeddings (overview).mp4 (81.84 MB)
MP4
009 Setting up a TensorFlow TextVectorization layer to convert text to numbers.mp4 (203.17 MB)
MP4
010 Mapping the TextVectorization layer to text data and turning it into numbers.mp4 (98.85 MB)
MP4
011 Creating an Embedding layer to turn tokenised text into embedding vectors.mp4 (137.63 MB)
MP4
012 Discussing the various modelling experiments we're going to run.mp4 (88.08 MB)
MP4
013 Model 0 Building a baseline model to try and improve upon.mp4 (94.83 MB)
MP4
014 Creating a function to track and evaluate our model's results.mp4 (151.77 MB)
MP4
015 Model 1 Building, fitting and evaluating our first deep model on text data.mp4 (210.67 MB)
MP4
016 Visualising our model's learned word embeddings with TensorFlow's projector tool.mp4 (292.11 MB)
MP4
017 High-level overview of Recurrent Neural Networks (RNNs) + where to learn more.mp4 (97.74 MB)
MP4
018 Model 2 Building, fitting and evaluating our first TensorFlow RNN model (LSTM).mp4 (167.36 MB)
MP4
019 Model 3 Building, fitting and evaluating a GRU-cell powered RNN.mp4 (170.57 MB)
MP4
020 Model 4 Building, fitting and evaluating a bidirectional RNN model.mp4 (168.53 MB)
MP4
021 Discussing the intuition behind Conv1D neural networks for text and sequences.mp4 (185.8 MB)
MP4
022 Model 5 Building, fitting and evaluating a 1D CNN for text.mp4 (54.2 MB)
MP4
023 Using TensorFlow Hub for pretrained word embeddings (transfer learning for NLP).mp4 (139.89 MB)
MP4
024 Model 6 Building, training and evaluating a transfer learning model for NLP.mp4 (100.27 MB)
MP4
025 Preparing subsets of data for model 7 (same as model 6 but 10% of data).mp4 (91.41 MB)
MP4
026 Model 7 Building, training and evaluating a transfer learning model on 10% data.mp4 (102.51 MB)
MP4
027 Fixing our data leakage issue with model 7 and retraining it.mp4 (169.69 MB)
MP4
028 Comparing all our modelling experiments evaluation metrics.mp4 (117.33 MB)
MP4
029 Uploading our model's training logs to TensorBoard and comparing them.mp4 (111.11 MB)
MP4
030 Saving and loading in a trained NLP model with TensorFlow.mp4 (105.82 MB)
MP4
031 Downloading a pretrained model and preparing data to investigate predictions.mp4 (132.11 MB)
MP4
032 Visualising our model's most wrong predictions.mp4 (77.13 MB)
MP4
033 Making and visualising predictions on the test dataset.mp4 (76.94 MB)
MP4
034 Understanding the concept of the speedscore tradeoff.mp4 (112.62 MB)
MP4
001 Introduction to Milestone Project 2 SkimLit.mp4 (149.5 MB)
MP4
002 What we're going to cover in Milestone Project 2 (NLP for medical abstracts).mp4 (71.73 MB)
MP4
003 SkimLit inputs and outputs.mp4 (55.06 MB)
MP4
004 Setting up our notebook for Milestone Project 2 (getting the data).mp4 (146.94 MB)
MP4
005 Visualising examples from the dataset (becoming one with the data).mp4 (133.59 MB)
MP4
006 Writing a preprocessing function to structure our data for modelling.mp4 (221.99 MB)
MP4
007 Performing visual data analysis on our preprocessed text.mp4 (75.02 MB)
MP4
008 Turning our target labels into numbers (ML models require numbers).mp4 (100.39 MB)
MP4
009 Model 0 Creating, fitting and evaluating a baseline model for SkimLit.mp4 (81.62 MB)
MP4
010 Preparing our data for deep sequence models.mp4 (85.54 MB)
MP4
011 Creating a text vectoriser to map our tokens (text) to numbers.mp4 (130.95 MB)
MP4
012 Creating a custom token embedding layer with TensorFlow.mp4 (101.34 MB)
MP4
013 Creating fast loading dataset with the TensorFlow tf data API.mp4 (77.96 MB)
MP4
014 Model 1 Building, fitting and evaluating a Conv1D with token embeddings.mp4 (170.8 MB)
MP4
015 Preparing a pretrained embedding layer from TensorFlow Hub for Model 2.mp4 (127.2 MB)
MP4
016 Model 2 Building, fitting and evaluating a Conv1D model with token embeddings.mp4 (108.1 MB)
MP4
017 Creating a character-level tokeniser with TensorFlow's TextVectorization layer.mp4 (171.15 MB)
MP4
018 Creating a character-level embedding layer with tf keras layers Embedding.mp4 (27.55 MB)
MP4
019 Model 3 Building, fitting and evaluating a Conv1D model on character embeddings.mp4 (131.91 MB)
MP4
020 Discussing how we're going to build Model 4 (character + token embeddings).mp4 (60.34 MB)
MP4
021 Model 4 Building a multi-input model (hybrid token + character embeddings).mp4 (186.03 MB)
MP4
022 Model 4 Plotting and visually exploring different data inputs.mp4 (88.6 MB)
MP4
023 Crafting multi-input fast loading tf data datasets for Model 4.mp4 (85.28 MB)
MP4
024 Model 4 Building, fitting and evaluating a hybrid embedding model.mp4 (141.43 MB)
MP4
025 Model 5 Adding positional embeddings via feature engineering (overview).mp4 (44.78 MB)
MP4
026 Encoding the line number feature to used with Model 5.mp4 (113.08 MB)
MP4
027 Encoding the total lines feature to be used with Model 5.mp4 (64.34 MB)
MP4
028 Model 5 Building the foundations of a tribrid embedding model.mp4 (70.49 MB)
MP4
029 Model 5 Completing the build of a tribrid embedding model for sequences.mp4 (156.23 MB)
MP4
030 Visually inspecting the architecture of our tribrid embedding model.mp4 (108.77 MB)
MP4
031 Creating multi-level data input pipelines for Model 5 with the tf data API.mp4 (101.46 MB)
MP4
032 Bringing SkimLit to life!!! (fitting and evaluating Model 5).mp4 (118.04 MB)
MP4
033 Comparing the performance of all of our modelling experiments.mp4 (78.33 MB)
MP4
034 Saving, loading & testing our best performing model.mp4 (85.01 MB)
MP4
035 Congratulations and your challenge before heading to the next module.mp4 (136.93 MB)
MP4
002 Introduction to Milestone Project 3 (BitPredict) & where you can get help.mp4 (30.33 MB)
MP4
003 What is a time series problem and example forecasting problems at Uber.mp4 (65.61 MB)
MP4
004 Example forecasting problems in daily life.mp4 (27.1 MB)
MP4
005 What can be forecast.mp4 (77.85 MB)
MP4
006 What we're going to cover (broadly).mp4 (25.78 MB)
MP4
007 Time series forecasting inputs and outputs.mp4 (29.17 MB)
MP4
008 Downloading and inspecting our Bitcoin historical dataset.mp4 (150.07 MB)
MP4
009 Different kinds of time series patterns & different amounts of feature variables.mp4 (67.78 MB)
MP4
010 Visualizing our Bitcoin historical data with pandas.mp4 (42.3 MB)
MP4
011 Reading in our Bitcoin data with Python's CSV module.mp4 (103.95 MB)
MP4
012 Creating train and test splits for time series (the wrong way).mp4 (63.04 MB)
MP4
013 Creating train and test splits for time series (the right way).mp4 (37.74 MB)
MP4
014 Creating a plotting function to visualize our time series data.mp4 (59.44 MB)
MP4
015 Discussing the various modelling experiments were going to be running.mp4 (77.68 MB)
MP4
016 Model 0 Making and visualizing a naive forecast model.mp4 (114.79 MB)
MP4
017 Discussing some of the most common time series evaluation metrics.mp4 (66.66 MB)
MP4
018 Implementing MASE with TensorFlow.mp4 (41.74 MB)
MP4
019 Creating a function to evaluate our model's forecasts with various metrics.mp4 (93.07 MB)
MP4
020 Discussing other non-TensorFlow kinds of time series forecasting models.mp4 (60.62 MB)
MP4
021 Formatting data Part 2 Creating a function to label our windowed time series.mp4 (109.91 MB)
MP4
022 Discussing the use of windows and horizons in time series data.mp4 (72.79 MB)
MP4
023 Writing a preprocessing function to turn time series data into windows & labels.mp4 (255.25 MB)
MP4
024 Turning our windowed time series data into training and test sets.mp4 (93.57 MB)
MP4
025 Creating a modelling checkpoint callback to save our best performing model.mp4 (65.23 MB)
MP4
026 Model 1 Building, compiling and fitting a deep learning model on Bitcoin data.mp4 (168.99 MB)
MP4
027 Creating a function to make predictions with our trained models.mp4 (122.55 MB)
MP4
028 Model 2 Building, fitting and evaluating a deep model with a larger window size.mp4 (155 MB)
MP4
029 Model 3 Building, fitting and evaluating a model with a larger horizon size.mp4 (123.54 MB)
MP4
030 Adjusting the evaluation function to work for predictions with larger horizons.mp4 (90.46 MB)
MP4
031 Model 3 Visualizing the results.mp4 (87.97 MB)
MP4
032 Comparing our modelling experiments so far and discussing autocorrelation.mp4 (93.88 MB)
MP4
033 Preparing data for building a Conv1D model.mp4 (113.81 MB)
MP4
034 Model 4 Building, fitting and evaluating a Conv1D model on our Bitcoin data.mp4 (147.27 MB)
MP4
035 Model 5 Building, fitting and evaluating a LSTM (RNN) model on our Bitcoin data.mp4 (169.02 MB)
MP4
036 Investigating how to turn our univariate time series into multivariate.mp4 (121.18 MB)
MP4
037 Creating and plotting a multivariate time series with BTC price and block reward.mp4 (74.59 MB)
MP4
038 Preparing our multivariate time series for a model.mp4 (100.77 MB)
MP4
039 Model 6 Building, fitting and evaluating a multivariate time series model.mp4 (82.26 MB)
MP4
040 Model 7 Discussing what we're going to be doing with the N-BEATS algorithm.mp4 (105.39 MB)
MP4
041 Model 7 Replicating the N-BEATS basic block with TensorFlow layer subclassing.mp4 (220.05 MB)
MP4
042 Model 7 Testing our N-BEATS block implementation with dummy data inputs.mp4 (187.28 MB)
MP4
043 Model 7 Creating a performant data pipeline for the N-BEATS model with tf data.mp4 (124.14 MB)
MP4
044 Model 7 Setting up hyperparameters for the N-BEATS algorithm.mp4 (101.81 MB)
MP4
045 Model 7 Getting ready for residual connections.mp4 (150.37 MB)
MP4
046 Model 7 Outlining the steps we're going to take to build the N-BEATS model.mp4 (107.91 MB)
MP4
047 Model 7 Putting together the pieces of the puzzle of the N-BEATS model.mp4 (242.27 MB)
MP4
048 Model 7 Plotting the N-BEATS algorithm we've created and admiring its beauty.mp4 (47 MB)
MP4
049 Model 8 Ensemble model overview.mp4 (38.03 MB)
MP4
050 Model 8 Building, compiling and fitting an ensemble of models.mp4 (182.63 MB)
MP4
051 Model 8 Making and evaluating predictions with our ensemble model.mp4 (185.17 MB)
MP4
052 Discussing the importance of prediction intervals in forecasting.mp4 (114.33 MB)
MP4
053 Getting the upper and lower bounds of our prediction intervals.mp4 (70.48 MB)
MP4
054 Plotting the prediction intervals of our ensemble model predictions.mp4 (117.82 MB)
MP4
055 (Optional) Discussing the types of uncertainty in machine learning.mp4 (115.69 MB)
MP4
056 Model 9 Preparing data to create a model capable of predicting into the future.mp4 (75.64 MB)
MP4
057 Model 9 Building, compiling and fitting a future predictions model.mp4 (40.33 MB)
MP4
058 Model 9 Discussing what's required for our model to make future predictions.mp4 (63.57 MB)
MP4
059 Model 9 Creating a function to make forecasts into the future.mp4 (121.24 MB)
MP4
060 Model 9 Plotting our model's future forecasts.mp4 (106.71 MB)
MP4
061 Model 10 Introducing the turkey problem and making data for it.mp4 (93.47 MB)
MP4
062 Model 10 Building a model to predict on turkey data (why forecasting is BS).mp4 (112.21 MB)
MP4
063 Comparing the results of all of our models and discussing where to go next.mp4 (110.21 MB)
MP4
002 What is Machine Learning.mp4 (18.65 MB)
MP4
003 AIMachine LearningData Science.mp4 (13.63 MB)
MP4
004 Exercise Machine Learning Playground.mp4 (37.36 MB)
MP4
005 How Did We Get Here.mp4 (15.25 MB)
MP4
006 Exercise YouTube Recommendation Engine.mp4 (9.18 MB)
MP4
007 Types of Machine Learning.mp4 (9.85 MB)
MP4
009 What Is Machine Learning Round 2.mp4 (12.24 MB)
MP4
010 Section Review.mp4 (2.84 MB)
MP4
002 Section Overview.mp4 (6.56 MB)
MP4
003 Introducing Our Framework.mp4 (4.4 MB)
MP4
004 6 Step Machine Learning Framework.mp4 (10.35 MB)
MP4
005 Types of Machine Learning Problems.mp4 (26.57 MB)
MP4
006 Types of Data.mp4 (20.61 MB)
MP4
007 Types of Evaluation.mp4 (6.66 MB)
MP4
008 Features In Data.mp4 (17.82 MB)
MP4
009 Modelling - Splitting Data.mp4 (13.74 MB)
MP4
010 Modelling - Picking the Model.mp4 (8.93 MB)
MP4
011 Modelling - Tuning.mp4 (6.31 MB)
MP4
012 Modelling - Comparison.mp4 (18.67 MB)
MP4
014 Experimentation.mp4 (11.95 MB)
MP4
015 Tools We Will Use.mp4 (13.24 MB)
MP4
002 Section Overview.mp4 (5.26 MB)
MP4
004 Pandas Introduction.mp4 (11.35 MB)
MP4
005 Series, Data Frames and CSVs.mp4 (94.57 MB)
MP4
007 Describing Data with Pandas.mp4 (64.95 MB)
MP4
008 Selecting and Viewing Data with Pandas.mp4 (53.27 MB)
MP4
009 Selecting and Viewing Data with Pandas Part 2.mp4 (106.94 MB)
MP4
010 Manipulating Data.mp4 (105.22 MB)
MP4
011 Manipulating Data 2.mp4 (86.91 MB)
MP4
012 Manipulating Data 3.mp4 (78.96 MB)
MP4
014 How To Download The Course Assignments.mp4 (67.5 MB)
MP4
002 Section Overview.mp4 (12.8 MB)
MP4
003 NumPy Introduction.mp4 (13.99 MB)
MP4
005 NumPy DataTypes and Attributes.mp4 (69.06 MB)
MP4
006 Creating NumPy Arrays.mp4 (58.27 MB)
MP4
007 NumPy Random Seed.mp4 (37.34 MB)
MP4
008 Viewing Arrays and Matrices.mp4 (61.13 MB)
MP4
009 Manipulating Arrays.mp4 (70.45 MB)
MP4
010 Manipulating Arrays 2.mp4 (66.96 MB)
MP4
011 Standard Deviation and Variance.mp4 (45.7 MB)
MP4
012 Reshape and Transpose.mp4 (53.5 MB)
MP4
013 Dot Product vs Element Wise.mp4 (72.12 MB)
MP4
014 Exercise Nut Butter Store Sales.mp4 (90.55 MB)
MP4
015 Comparison Operators.mp4 (22.54 MB)
MP4
016 Sorting Arrays.mp4 (25.15 MB)
MP4
017 numpy-images.zip (7.27 MB)
ZIP
017 Turn Images Into NumPy Arrays.mp4 (88.03 MB)
MP4
[To see links please register or login]