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001 Become An Alumni.html |
1.79KB |
001 Course Outline.en.srt |
8.28KB |
001 Course Outline.mp4 |
58.03MB |
001 Introduction to Computer Vision with TensorFlow.en.srt |
15.59KB |
001 Introduction to Computer Vision with TensorFlow.mp4 |
75.00MB |
001 Introduction to Milestone Project 1_ Food Vision Big™.en.srt |
9.53KB |
001 Introduction to Milestone Project 1_ Food Vision Big™.mp4 |
42.31MB |
001 Introduction to Milestone Project 2_ SkimLit.en.srt |
22.88KB |
001 Introduction to Milestone Project 2_ SkimLit.mp4 |
148.38MB |
001 Introduction to neural network classification in TensorFlow.en.srt |
13.27KB |
001 Introduction to neural network classification in TensorFlow.mp4 |
72.81MB |
001 Introduction to Neural Network Regression with TensorFlow.en.srt |
11.85KB |
001 Introduction to Neural Network Regression with TensorFlow.mp4 |
60.06MB |
001 Introduction to Transfer Learning in TensorFlow Part 2_ Fine-tuning.en.srt |
10.16KB |
001 Introduction to Transfer Learning in TensorFlow Part 2_ Fine-tuning.mp4 |
61.46MB |
001 Introduction to Transfer Learning Part 3_ Scaling Up.en.srt |
10.51KB |
001 Introduction to Transfer Learning Part 3_ Scaling Up.mp4 |
41.52MB |
001 More Videos Coming Soon!.html |
940B |
001 More Videos Coming Soon!.html |
940B |
001 More Videos Coming Soon!.html |
940B |
001 Quick Note_ Upcoming Videos.html |
1.57KB |
001 Quick Note_ Upcoming Videos.html |
1.57KB |
001 Quick Note_ Upcoming Videos.html |
1.57KB |
001 Quick Note_ Upcoming Videos.html |
1.57KB |
001 Special Bonus Lecture.html |
4.91KB |
001 Welcome to natural language processing with TensorFlow!.html |
1.96KB |
001 What is and why use transfer learning_.en.srt |
16.57KB |
001 What is and why use transfer learning_.mp4 |
65.81MB |
001 What is deep learning_.en.srt |
7.07KB |
001 What is deep learning_.mp4 |
34.17MB |
002 Downloading and preparing data for our first transfer learning model.en.srt |
18.85KB |
002 Downloading and preparing data for our first transfer learning model.mp4 |
132.67MB |
002 Example classification problems (and their inputs and outputs).en.srt |
10.30KB |
002 Example classification problems (and their inputs and outputs).mp4 |
50.71MB |
002 Getting helper functions ready and downloading data to model.en.srt |
18.47KB |
002 Getting helper functions ready and downloading data to model.mp4 |
131.54MB |
002 Importing a script full of helper functions (and saving lots of space).en.srt |
10.17KB |
002 Importing a script full of helper functions (and saving lots of space).mp4 |
89.38MB |
002 Inputs and outputs of a neural network regression model.en.srt |
13.63KB |
002 Inputs and outputs of a neural network regression model.mp4 |
57.57MB |
002 Introduction to Convolutional Neural Networks (CNNs) with TensorFlow.en.srt |
12.59KB |
002 Introduction to Convolutional Neural Networks (CNNs) with TensorFlow.mp4 |
76.65MB |
002 Introduction to Natural Language Processing (NLP) and Sequence Problems.en.srt |
21.08KB |
002 Introduction to Natural Language Processing (NLP) and Sequence Problems.mp4 |
124.03MB |
002 Join Our Online Classroom!.html |
3.31KB |
002 LinkedIn Endorsements.html |
2.93KB |
002 Making sure we have access to the right GPU for mixed precision training.en.srt |
14.63KB |
002 Making sure we have access to the right GPU for mixed precision training.mp4 |
88.15MB |
002 Section Overview.en.srt |
4.98KB |
002 Section Overview.en.srt |
3.84KB |
002 Section Overview.en.srt |
3.36KB |
002 Section Overview.mp4 |
13.35MB |
002 Section Overview.mp4 |
13.33MB |
002 Section Overview.mp4 |
10.87MB |
002 What is Machine Learning_.en.srt |
9.31KB |
002 What is Machine Learning_.mp4 |
28.31MB |
002 What we're going to cover in Milestone Project 2 (NLP for medical abstracts).en.srt |
12.36KB |
002 What we're going to cover in Milestone Project 2 (NLP for medical abstracts).mp4 |
71.01MB |
002 Why use deep learning_.en.srt |
14.73KB |
002 Why use deep learning_.mp4 |
62.32MB |
003 AI_Machine Learning_Data Science.en.srt |
6.69KB |
003 AI_Machine Learning_Data Science.mp4 |
19.67MB |
003 Anatomy and architecture of a neural network regression model.en.srt |
12.74KB |
003 Anatomy and architecture of a neural network regression model.mp4 |
59.00MB |
003 Downloading and turning our images into a TensorFlow BatchDataset.en.srt |
22.98KB |
003 Downloading and turning our images into a TensorFlow BatchDataset.mp4 |
173.59MB |
003 Downloading an image dataset for our first Food Vision model.en.srt |
10.74KB |
003 Downloading an image dataset for our first Food Vision model.mp4 |
72.93MB |
003 Downloading Workbooks and Assignments.html |
1.83KB |
003 Example NLP inputs and outputs.en.srt |
12.14KB |
003 Example NLP inputs and outputs.mp4 |
64.27MB |
003 Exercise_ Meet The Community.html |
3.71KB |
003 Getting helper functions ready.en.srt |
4.09KB |
003 Getting helper functions ready.mp4 |
31.09MB |
003 Input and output tensors of classification problems.en.srt |
9.18KB |
003 Input and output tensors of classification problems.mp4 |
51.01MB |
003 Introducing Callbacks in TensorFlow and making a callback to track our models.en.srt |
14.87KB |
003 Introducing Callbacks in TensorFlow and making a callback to track our models.mp4 |
94.89MB |
003 Introducing Our Framework.en.srt |
3.83KB |
003 Introducing Our Framework.mp4 |
11.39MB |
003 NumPy Introduction.en.srt |
7.89KB |
003 NumPy Introduction.mp4 |
26.86MB |
003 Outlining the model we're going to build and building a ModelCheckpoint callback.en.srt |
7.70KB |
003 Outlining the model we're going to build and building a ModelCheckpoint callback.mp4 |
40.61MB |
003 SkimLit inputs and outputs.en.srt |
18.80KB |
003 SkimLit inputs and outputs.mp4 |
76.78MB |
003 TensorFlow Certificate.html |
1.25KB |
003 What are neural networks_.en.srt |
15.27KB |
003 What are neural networks_.mp4 |
63.43MB |
004 6 Step Machine Learning Framework.en.srt |
7.12KB |
004 6 Step Machine Learning Framework.mp4 |
23.45MB |
004 All Course Resources + Notebooks.html |
2.86KB |
004 Becoming One With Data.en.srt |
7.04KB |
004 Becoming One With Data.mp4 |
45.61MB |
004 Creating a data augmentation layer to use with our model.en.srt |
6.49KB |
004 Creating a data augmentation layer to use with our model.mp4 |
40.56MB |
004 Creating sample regression data (so we can model it).en.srt |
16.81KB |
004 Creating sample regression data (so we can model it).mp4 |
90.16MB |
004 Discussing the four (actually five) modelling experiments we're running.en.srt |
3.72KB |
004 Discussing the four (actually five) modelling experiments we're running.mp4 |
15.87MB |
004 Exercise_ Machine Learning Playground.en.srt |
8.46KB |
004 Exercise_ Machine Learning Playground.mp4 |
42.56MB |
004 Exploring the TensorFlow Hub website for pretrained models.en.srt |
15.33KB |
004 Exploring the TensorFlow Hub website for pretrained models.mp4 |
102.96MB |
004 Introduction to TensorFlow Datasets (TFDS).en.srt |
18.35KB |
004 Introduction to TensorFlow Datasets (TFDS).mp4 |
116.84MB |
004 Pandas Introduction.en.srt |
7.19KB |
004 Pandas Introduction.mp4 |
27.46MB |
004 Quick Note_ Correction In Next Video.html |
2.52KB |
004 Setting up our notebook for Milestone Project 2 (getting the data).en.srt |
20.50KB |
004 Setting up our notebook for Milestone Project 2 (getting the data).mp4 |
146.03MB |
004 The typical architecture of a Recurrent Neural Network (RNN).en.srt |
13.96KB |
004 The typical architecture of a Recurrent Neural Network (RNN).mp4 |
107.16MB |
004 Typical architecture of neural network classification models with TensorFlow.en.srt |
15.21KB |
004 Typical architecture of neural network classification models with TensorFlow.mp4 |
112.73MB |
004 What is deep learning already being used for_.en.srt |
14.02KB |
004 What is deep learning already being used for_.mp4 |
76.21MB |
005 Becoming One With Data Part 2.en.srt |
16.74KB |
005 Becoming One With Data Part 2.mp4 |
104.58MB |
005 Building and compiling a TensorFlow Hub feature extraction model.en.srt |
19.74KB |
005 Building and compiling a TensorFlow Hub feature extraction model.mp4 |
135.62MB |
005 Comparing the TensorFlow Keras Sequential API versus the Functional API.en.srt |
4.20KB |
005 Comparing the TensorFlow Keras Sequential API versus the Functional API.mp4 |
26.45MB |
005 Creating a headless EfficientNetB0 model with data augmentation built in.en.srt |
14.02KB |
005 Creating a headless EfficientNetB0 model with data augmentation built in.mp4 |
80.41MB |
005 Creating and viewing classification data to model.en.srt |
15.00KB |
005 Creating and viewing classification data to model.mp4 |
106.08MB |
005 Exploring and becoming one with the data (Food101 from TensorFlow Datasets).en.srt |
23.29KB |
005 Exploring and becoming one with the data (Food101 from TensorFlow Datasets).mp4 |
116.71MB |
005 How Did We Get Here_.en.srt |
7.61KB |
005 How Did We Get Here_.mp4 |
30.49MB |
005 NumPy DataTypes and Attributes.en.srt |
20.87KB |
005 NumPy DataTypes and Attributes.mp4 |
78.97MB |
005 Preparing a notebook for our first NLP with TensorFlow project.en.srt |
12.20KB |
005 Preparing a notebook for our first NLP with TensorFlow project.mp4 |
82.41MB |
005 Series, Data Frames and CSVs.en.srt |
19.22KB |
005 Series, Data Frames and CSVs.mp4 |
95.43MB |
005 The major steps in modelling with TensorFlow.en.srt |
26.85KB |
005 The major steps in modelling with TensorFlow.mp4 |
181.81MB |
005 Types of Machine Learning Problems.en.srt |
14.97KB |
005 Types of Machine Learning Problems.mp4 |
60.46MB |
005 Visualising examples from the dataset (becoming one with the data).en.srt |
17.84KB |
005 Visualising examples from the dataset (becoming one with the data).mp4 |
132.24MB |
005 What is and why use TensorFlow_.en.srt |
12.19KB |
005 What is and why use TensorFlow_.mp4 |
69.16MB |
006 Becoming One With Data Part 3.en.srt |
6.81KB |
006 Becoming One With Data Part 3.mp4 |
39.89MB |
006 Becoming one with the data and visualising a text dataset.en.srt |
23.12KB |
006 Becoming one with the data and visualising a text dataset.mp4 |
160.31MB |
006 Blowing our previous models out of the water with transfer learning.en.srt |
14.28KB |
006 Blowing our previous models out of the water with transfer learning.mp4 |
99.45MB |
006 Checking the input and output shapes of our classification data.en.srt |
6.85KB |
006 Checking the input and output shapes of our classification data.mp4 |
38.14MB |
006 Creating a preprocessing function to prepare our data for modelling.en.srt |
19.63KB |
006 Creating a preprocessing function to prepare our data for modelling.mp4 |
132.19MB |
006 Creating NumPy Arrays.en.srt |
13.01KB |
006 Creating NumPy Arrays.mp4 |
66.84MB |
006 Creating our first model with the TensorFlow Keras Functional API.en.srt |
16.51KB |
006 Creating our first model with the TensorFlow Keras Functional API.mp4 |
132.18MB |
006 Data from URLs.html |
2.35KB |
006 Exercise_ YouTube Recommendation Engine.en.srt |
5.85KB |
006 Exercise_ YouTube Recommendation Engine.mp4 |
19.43MB |
006 Fitting and evaluating our biggest transfer learning model yet.en.srt |
11.94KB |
006 Fitting and evaluating our biggest transfer learning model yet.mp4 |
70.15MB |
006 Steps in improving a model with TensorFlow part 1.en.srt |
7.93KB |
006 Steps in improving a model with TensorFlow part 1.mp4 |
45.82MB |
006 Types of Data.en.srt |
6.71KB |
006 Types of Data.mp4 |
29.31MB |
006 What is a Tensor_.en.srt |
5.19KB |
006 What is a Tensor_.mp4 |
27.58MB |
006 Writing a preprocessing function to structure our data for modelling.en.srt |
27.05KB |
006 Writing a preprocessing function to structure our data for modelling.mp4 |
218.07MB |
007 Batching and preparing our datasets (to make them run fast).en.srt |
19.98KB |
007 Batching and preparing our datasets (to make them run fast).mp4 |
132.24MB |
007 Building an end to end CNN Model.en.srt |
27.06KB |
007 Building an end to end CNN Model.mp4 |
155.08MB |
007 Building a not very good classification model with TensorFlow.en.srt |
16.72KB |
007 Building a not very good classification model with TensorFlow.mp4 |
125.29MB |
007 Compiling and fitting our first Functional API model.en.srt |
16.46KB |
007 Compiling and fitting our first Functional API model.mp4 |
132.84MB |
007 Describing Data with Pandas.en.srt |
14.83KB |
007 Describing Data with Pandas.mp4 |
75.65MB |
007 NumPy Random Seed.en.srt |
10.91KB |
007 NumPy Random Seed.mp4 |
51.94MB |
007 Performing visual data analysis on our preprocessed text.en.srt |
11.34KB |
007 Performing visual data analysis on our preprocessed text.mp4 |
74.22MB |
007 Plotting the loss curves of our ResNet feature extraction model.en.srt |
11.27KB |
007 Plotting the loss curves of our ResNet feature extraction model.mp4 |
62.09MB |
007 Splitting data into training and validation sets.en.srt |
8.17KB |
007 Splitting data into training and validation sets.mp4 |
59.87MB |
007 Steps in improving a model with TensorFlow part 2.en.srt |
13.67KB |
007 Steps in improving a model with TensorFlow part 2.mp4 |
90.23MB |
007 Types of Evaluation.en.srt |
4.73KB |
007 Types of Evaluation.mp4 |
17.74MB |
007 Types of Machine Learning.en.srt |
5.71KB |
007 Types of Machine Learning.mp4 |
22.81MB |
007 Unfreezing some layers in our base model to prepare for fine-tuning.en.srt |
17.30KB |
007 Unfreezing some layers in our base model to prepare for fine-tuning.mp4 |
100.07MB |
007 What we're going to cover throughout the course.en.srt |
7.52KB |
007 What we're going to cover throughout the course.mp4 |
29.38MB |
008 Are You Getting It Yet_.html |
1.03KB |
008 Building and training a pre-trained EfficientNet model on our data.en.srt |
14.87KB |
008 Building and training a pre-trained EfficientNet model on our data.mp4 |
105.92MB |
008 Converting text data to numbers using tokenisation and embeddings (overview).en.srt |
13.60KB |
008 Converting text data to numbers using tokenisation and embeddings (overview).mp4 |
82.30MB |
008 Exploring what happens when we batch and prefetch our data.en.srt |
9.76KB |
008 Exploring what happens when we batch and prefetch our data.mp4 |
63.82MB |
008 Features In Data.en.srt |
7.12KB |
008 Features In Data.mp4 |
36.77MB |
008 Fine-tuning our feature extraction model and evaluating its performance.en.srt |
12.36KB |
008 Fine-tuning our feature extraction model and evaluating its performance.mp4 |
66.23MB |
008 Getting a feature vector from our trained model.en.srt |
18.47KB |
008 Getting a feature vector from our trained model.mp4 |
147.62MB |
008 How to approach this course.en.srt |
8.57KB |
008 How to approach this course.mp4 |
26.17MB |
008 Selecting and Viewing Data with Pandas.en.srt |
15.89KB |
008 Selecting and Viewing Data with Pandas.mp4 |
72.29MB |
008 Steps in improving a model with TensorFlow part 3.en.srt |
17.53KB |
008 Steps in improving a model with TensorFlow part 3.mp4 |
132.94MB |
008 Trying to improve our not very good classification model.en.srt |
13.20KB |
008 Trying to improve our not very good classification model.mp4 |
84.29MB |
008 Turning our target labels into numbers (ML models require numbers).en.srt |
19.64KB |
008 Turning our target labels into numbers (ML models require numbers).mp4 |
117.40MB |
008 Using a GPU to run our CNN model 5x faster.en.srt |
13.60KB |
008 Using a GPU to run our CNN model 5x faster.mp4 |
114.94MB |
008 Viewing Arrays and Matrices.en.srt |
14.49KB |
008 Viewing Arrays and Matrices.mp4 |
70.65MB |
009 Creating a function to view our model's not so good predictions.en.srt |
19.77KB |
009 Creating a function to view our model's not so good predictions.mp4 |
160.55MB |
009 Creating modelling callbacks for our feature extraction model.en.srt |
10.23KB |
009 Creating modelling callbacks for our feature extraction model.mp4 |
60.79MB |
009 Different Types of Transfer Learning.en.srt |
16.31KB |
009 Different Types of Transfer Learning.mp4 |
110.57MB |
009 Drilling into the concept of a feature vector (a learned representation).en.srt |
5.60KB |
009 Drilling into the concept of a feature vector (a learned representation).mp4 |
51.50MB |
009 Evaluating a TensorFlow model part 1 (_visualise, visualise, visualise_).en.srt |
10.20KB |
009 Evaluating a TensorFlow model part 1 (_visualise, visualise, visualise_).mp4 |
66.94MB |
009 Manipulating Arrays.en.srt |
17.91KB |
009 Manipulating Arrays.mp4 |
80.66MB |
009 Model 0_ Creating, fitting and evaluating a baseline model for SkimLit.en.srt |
11.97KB |
009 Model 0_ Creating, fitting and evaluating a baseline model for SkimLit.mp4 |
81.63MB |
009 Modelling - Splitting Data.en.srt |
8.08KB |
009 Modelling - Splitting Data.mp4 |
27.55MB |
009 Need A Refresher_.html |
1.79KB |
009 Saving and loading our trained model.en.srt |
9.36KB |
009 Saving and loading our trained model.mp4 |
57.40MB |
009 Selecting and Viewing Data with Pandas Part 2.en.srt |
19.75KB |
009 Selecting and Viewing Data with Pandas Part 2.mp4 |
106.49MB |
009 Setting up a TensorFlow TextVectorization layer to convert text to numbers.en.srt |
23.08KB |
009 Setting up a TensorFlow TextVectorization layer to convert text to numbers.mp4 |
199.93MB |
009 Trying a non-CNN model on our image data.en.srt |
12.13KB |
009 Trying a non-CNN model on our image data.mp4 |
100.55MB |
009 What Is Machine Learning_ Round 2.en.srt |
6.48KB |
009 What Is Machine Learning_ Round 2.mp4 |
25.51MB |
010 Comparing Our Model's Results.en.srt |
22.44KB |
010 Comparing Our Model's Results.mp4 |
143.93MB |
010 Creating your first tensors with TensorFlow and tf.constant().en.srt |
25.80KB |
010 Creating your first tensors with TensorFlow and tf.constant().mp4 |
134.83MB |
010 Downloading and preparing the data for Model 1 (1 percent of training data).en.srt |
13.52KB |
010 Downloading and preparing the data for Model 1 (1 percent of training data).mp4 |
97.80MB |
010 Downloading a pretrained model to make and evaluate predictions with.en.srt |
9.27KB |
010 Downloading a pretrained model to make and evaluate predictions with.mp4 |
78.69MB |
010 Evaluating a TensorFlow model part 2 (the three datasets).en.srt |
14.63KB |
010 Evaluating a TensorFlow model part 2 (the three datasets).mp4 |
81.56MB |
010 Improving our non-CNN model by adding more layers.en.srt |
14.56KB |
010 Improving our non-CNN model by adding more layers.mp4 |
106.47MB |
010 Make our poor classification model work for a regression dataset.en.srt |
17.02KB |
010 Make our poor classification model work for a regression dataset.mp4 |
123.01MB |
010 Manipulating Arrays 2.en.srt |
12.53KB |
010 Manipulating Arrays 2.mp4 |
67.91MB |
010 Manipulating Data.en.srt |
19.33KB |
010 Manipulating Data.mp4 |
104.99MB |
010 Mapping the TextVectorization layer to text data and turning it into numbers.en.srt |
16.55KB |
010 Mapping the TextVectorization layer to text data and turning it into numbers.mp4 |
97.91MB |
010 Modelling - Picking the Model.en.srt |
6.45KB |
010 Modelling - Picking the Model.mp4 |
23.24MB |
010 Preparing our data for deep sequence models.en.srt |
13.52KB |
010 Preparing our data for deep sequence models.mp4 |
85.15MB |
010 Section Review.en.srt |
2.28KB |
010 Section Review.mp4 |
5.55MB |
010 Turning on mixed precision training with TensorFlow.en.srt |
14.46KB |
010 Turning on mixed precision training with TensorFlow.mp4 |
107.71MB |
011 Breaking our CNN model down part 1_ Becoming one with the data.en.srt |
13.51KB |
011 Breaking our CNN model down part 1_ Becoming one with the data.mp4 |
90.92MB |
011 Building a data augmentation layer to use inside our model.en.srt |
16.83KB |
011 Building a data augmentation layer to use inside our model.mp4 |
117.46MB |
011 Creating a feature extraction model capable of using mixed precision training.en.srt |
18.12KB |
011 Creating a feature extraction model capable of using mixed precision training.mp4 |
107.92MB |
011 Creating an Embedding layer to turn tokenised text into embedding vectors.en.srt |
18.64KB |
011 Creating an Embedding layer to turn tokenised text into embedding vectors.mp4 |
135.65MB |
011 Creating a text vectoriser to map our tokens (text) to numbers.en.srt |
19.81KB |
011 Creating a text vectoriser to map our tokens (text) to numbers.mp4 |
129.78MB |
011 Creating tensors with TensorFlow and tf.Variable().en.srt |
10.36KB |
011 Creating tensors with TensorFlow and tf.Variable().mp4 |
70.85MB |
011 Evaluating a TensorFlow model part 3 (getting a model summary).en.srt |
22.43KB |
011 Evaluating a TensorFlow model part 3 (getting a model summary).mp4 |
192.79MB |
011 Making predictions with our trained model on 25,250 test samples.en.srt |
16.93KB |
011 Making predictions with our trained model on 25,250 test samples.mp4 |
115.59MB |
011 Manipulating Data 2.en.srt |
15.49KB |
011 Manipulating Data 2.mp4 |
86.56MB |
011 Modelling - Tuning.en.srt |
5.28KB |
011 Modelling - Tuning.mp4 |
15.98MB |
011 Non-linearity part 1_ Straight lines and non-straight lines.en.srt |
14.39KB |
011 Non-linearity part 1_ Straight lines and non-straight lines.mp4 |
95.61MB |
011 Standard Deviation and Variance.en.srt |
10.25KB |
011 Standard Deviation and Variance.mp4 |
51.13MB |
011 TensorFlow Transfer Learning Part 1 challenge, exercises & extra-curriculum.html |
3.37KB |
012 Breaking our CNN model down part 2_ Preparing to load our data.en.srt |
17.18KB |
012 Breaking our CNN model down part 2_ Preparing to load our data.mp4 |
109.47MB |
012 Checking to see if our model is using mixed precision training layer by layer.en.srt |
10.71KB |
012 Checking to see if our model is using mixed precision training layer by layer.mp4 |
87.67MB |
012 Creating a custom token embedding layer with TensorFlow.en.srt |
13.15KB |
012 Creating a custom token embedding layer with TensorFlow.mp4 |
99.51MB |
012 Creating random tensors with TensorFlow.en.srt |
13.58KB |
012 Creating random tensors with TensorFlow.mp4 |
88.45MB |
012 Discussing the various modelling experiments we're going to run.en.srt |
14.33KB |
012 Discussing the various modelling experiments we're going to run.mp4 |
87.60MB |
012 Evaluating a TensorFlow model part 4 (visualising a model's layers).en.srt |
9.61KB |
012 Evaluating a TensorFlow model part 4 (visualising a model's layers).mp4 |
70.28MB |
012 Manipulating Data 3.en.srt |
14.58KB |
012 Manipulating Data 3.mp4 |
91.07MB |
012 Modelling - Comparison.en.srt |
13.81KB |
012 Modelling - Comparison.mp4 |
44.86MB |
012 Non-linearity part 2_ Building our first neural network with non-linearity.en.srt |
7.88KB |
012 Non-linearity part 2_ Building our first neural network with non-linearity.mp4 |
59.00MB |
012 Reshape and Transpose.en.srt |
10.10KB |
012 Reshape and Transpose.mp4 |
53.57MB |
012 Unravelling our test dataset for comparing ground truth labels to predictions.en.srt |
8.02KB |
012 Unravelling our test dataset for comparing ground truth labels to predictions.mp4 |
43.81MB |
012 Visualising what happens when images pass through our data augmentation layer.en.srt |
15.06KB |
012 Visualising what happens when images pass through our data augmentation layer.mp4 |
119.36MB |
013 Assignment_ Pandas Practice.html |
2.93KB |
013 Breaking our CNN model down part 3_ Loading our data with ImageDataGenerator.en.srt |
14.01KB |
013 Breaking our CNN model down part 3_ Loading our data with ImageDataGenerator.mp4 |
103.42MB |
013 Building Model 1 (with a data augmentation layer and 1% of training data).en.srt |
23.38KB |
013 Building Model 1 (with a data augmentation layer and 1% of training data).mp4 |
152.95MB |
013 Confirming our model's predictions are in the same order as the test labels.en.srt |
7.05KB |
013 Confirming our model's predictions are in the same order as the test labels.mp4 |
50.54MB |
013 Creating fast loading dataset with the TensorFlow tf.data API.en.srt |
13.32KB |
013 Creating fast loading dataset with the TensorFlow tf.data API.mp4 |
90.64MB |
013 Dot Product vs Element Wise.en.srt |
16.58KB |
013 Dot Product vs Element Wise.mp4 |
83.80MB |
013 Evaluating a TensorFlow model part 5 (visualising a model's predictions).en.srt |
12.42KB |
013 Evaluating a TensorFlow model part 5 (visualising a model's predictions).mp4 |
78.87MB |
013 Model 0_ Building a baseline model to try and improve upon.en.srt |
13.14KB |
013 Model 0_ Building a baseline model to try and improve upon.mp4 |
93.18MB |
013 Non-linearity part 3_ Upgrading our non-linear model with more layers.en.srt |
14.98KB |
013 Non-linearity part 3_ Upgrading our non-linear model with more layers.mp4 |
123.24MB |
013 Overfitting and Underfitting Definitions.html |
2.87KB |
013 Shuffling the order of tensors.en.srt |
13.19KB |
013 Shuffling the order of tensors.mp4 |
89.86MB |
013 Training and evaluating a feature extraction model (Food Vision Big™).en.srt |
14.67KB |
013 Training and evaluating a feature extraction model (Food Vision Big™).mp4 |
89.02MB |
014 Breaking our CNN model down part 4_ Building a baseline CNN model.en.srt |
11.70KB |
014 Breaking our CNN model down part 4_ Building a baseline CNN model.mp4 |
85.30MB |
014 Building Model 2 (with a data augmentation layer and 10% of training data).en.srt |
24.42KB |
014 Building Model 2 (with a data augmentation layer and 10% of training data).mp4 |
159.77MB |
014 Creating a confusion matrix for our model's 101 different classes.en.srt |
18.34KB |
014 Creating a confusion matrix for our model's 101 different classes.mp4 |
156.60MB |
014 Creating a function to track and evaluate our model's results.en.srt |
17.37KB |
014 Creating a function to track and evaluate our model's results.mp4 |
148.65MB |
014 Creating tensors from NumPy arrays.en.srt |
15.69KB |
014 Creating tensors from NumPy arrays.mp4 |
101.33MB |
014 Evaluating a TensorFlow model part 6 (common regression evaluation metrics).en.srt |
11.60KB |
014 Evaluating a TensorFlow model part 6 (common regression evaluation metrics).mp4 |
70.37MB |
014 Exercise_ Nut Butter Store Sales.en.srt |
18.19KB |
014 Exercise_ Nut Butter Store Sales.mp4 |
91.26MB |
014 Experimentation.en.srt |
5.29KB |
014 Experimentation.mp4 |
21.29MB |
014 How To Download The Course Assignments.en.srt |
11.70KB |
014 How To Download The Course Assignments.mp4 |
66.79MB |
014 Introducing your Milestone Project 1 challenge_ build a model to beat DeepFood.en.srt |
11.70KB |
014 Introducing your Milestone Project 1 challenge_ build a model to beat DeepFood.mp4 |
89.12MB |
014 Model 1_ Building, fitting and evaluating a Conv1D with token embeddings.en.srt |
25.65KB |
014 Model 1_ Building, fitting and evaluating a Conv1D with token embeddings.mp4 |
168.42MB |
014 Non-linearity part 4_ Modelling our non-linear data once and for all.en.srt |
12.52KB |
014 Non-linearity part 4_ Modelling our non-linear data once and for all.mp4 |
96.62MB |
015 Breaking our CNN model down part 5_ Looking inside a Conv2D layer.en.srt |
23.74KB |
015 Breaking our CNN model down part 5_ Looking inside a Conv2D layer.mp4 |
186.03MB |
015 Comparison Operators.en.srt |
5.47KB |
015 Comparison Operators.mp4 |
26.37MB |
015 Creating a ModelCheckpoint to save our model's weights during training.en.srt |
11.21KB |
015 Creating a ModelCheckpoint to save our model's weights during training.mp4 |
68.98MB |
015 Evaluating a TensorFlow regression model part 7 (mean absolute error).en.srt |
8.49KB |
015 Evaluating a TensorFlow regression model part 7 (mean absolute error).mp4 |
56.09MB |
015 Evaluating every individual class in our dataset.en.srt |
20.16KB |
015 Evaluating every individual class in our dataset.mp4 |
131.77MB |
015 Getting information from your tensors (tensor attributes).en.srt |
17.69KB |
015 Getting information from your tensors (tensor attributes).mp4 |
87.38MB |
015 Milestone Project 1_ Food Vision Big™, exercises and extra-curriculum.html |
3.24KB |
015 Model 1_ Building, fitting and evaluating our first deep model on text data.en.srt |
29.85KB |
015 Model 1_ Building, fitting and evaluating our first deep model on text data.mp4 |
207.74MB |
015 Non-linearity part 5_ Replicating non-linear activation functions from scratch.en.srt |
19.08KB |
015 Non-linearity part 5_ Replicating non-linear activation functions from scratch.mp4 |
146.61MB |
015 Preparing a pretrained embedding layer from TensorFlow Hub for Model 2.en.srt |
15.62KB |
015 Preparing a pretrained embedding layer from TensorFlow Hub for Model 2.mp4 |
124.68MB |
015 Tools We Will Use.en.srt |
6.31KB |
015 Tools We Will Use.mp4 |
27.34MB |
016 Breaking our CNN model down part 6_ Compiling and fitting our baseline CNN.en.srt |
10.29KB |
016 Breaking our CNN model down part 6_ Compiling and fitting our baseline CNN.mp4 |
77.08MB |
016 Evaluating a TensorFlow regression model part 7 (mean square error).en.srt |
4.06KB |
016 Evaluating a TensorFlow regression model part 7 (mean square error).mp4 |
32.31MB |
016 Fitting and evaluating Model 2 (and saving its weights using ModelCheckpoint).en.srt |
10.27KB |
016 Fitting and evaluating Model 2 (and saving its weights using ModelCheckpoint).mp4 |
68.15MB |
016 Getting great results in less time by tweaking the learning rate.en.srt |
20.18KB |
016 Getting great results in less time by tweaking the learning rate.mp4 |
136.77MB |
016 Indexing and expanding tensors.en.srt |
17.66KB |
016 Indexing and expanding tensors.mp4 |
86.56MB |
016 Model 2_ Building, fitting and evaluating a Conv1D model with token embeddings.en.srt |
16.79KB |
016 Model 2_ Building, fitting and evaluating a Conv1D model with token embeddings.mp4 |
106.95MB |
016 Optional_ Elements of AI.html |
1.83KB |
016 Plotting our model's F1-scores for each separate class.en.srt |
11.19KB |
016 Plotting our model's F1-scores for each separate class.mp4 |
77.93MB |
016 Sorting Arrays.en.srt |
9.35KB |
016 Sorting Arrays.mp4 |
32.82MB |
016 Visualising our model's learned word embeddings with TensorFlow's projector tool.en.srt |
30.95KB |
016 Visualising our model's learned word embeddings with TensorFlow's projector tool.mp4 |
283.21MB |
017 Breaking our CNN model down part 7_ Evaluating our CNN's training curves.en.srt |
17.81KB |
017 Breaking our CNN model down part 7_ Evaluating our CNN's training curves.mp4 |
106.20MB |
017 Creating a character-level tokeniser with TensorFlow's TextVectorization layer.en.srt |
31.05KB |
017 Creating a character-level tokeniser with TensorFlow's TextVectorization layer.mp4 |
197.66MB |
017 Creating a function to load and prepare images for making predictions.en.srt |
16.43KB |
017 Creating a function to load and prepare images for making predictions.mp4 |
109.54MB |
017 High-level overview of Recurrent Neural Networks (RNNs) + where to learn more.en.srt |
14.34KB |
017 High-level overview of Recurrent Neural Networks (RNNs) + where to learn more.mp4 |
96.64MB |
017 Loading and comparing saved weights to our existing trained Model 2.en.srt |
10.06KB |
017 Loading and comparing saved weights to our existing trained Model 2.mp4 |
62.67MB |
017 Manipulating tensors with basic operations.en.srt |
7.24KB |
017 Manipulating tensors with basic operations.mp4 |
45.22MB |
017 Setting up TensorFlow modelling experiments part 1 (start with a simple model).en.srt |
18.17KB |
017 Setting up TensorFlow modelling experiments part 1 (start with a simple model).mp4 |
127.25MB |
017 Turn Images Into NumPy Arrays.en.srt |
11.05KB |
017 Turn Images Into NumPy Arrays.mp4 |
85.98MB |
017 Using the TensorFlow History object to plot a model's loss curves.en.srt |
8.72KB |
017 Using the TensorFlow History object to plot a model's loss curves.mp4 |
62.12MB |
018 Assignment_ NumPy Practice.html |
3.05KB |
018 Breaking our CNN model down part 8_ Reducing overfitting with Max Pooling.en.srt |
20.02KB |
018 Breaking our CNN model down part 8_ Reducing overfitting with Max Pooling.mp4 |
130.43MB |
018 Creating a character-level embedding layer with tf.keras.layers.Embedding.en.srt |
10.86KB |
018 Creating a character-level embedding layer with tf.keras.layers.Embedding.mp4 |
77.52MB |
018 Making predictions on our test images and evaluating them.en.srt |
24.55KB |
018 Making predictions on our test images and evaluating them.mp4 |
171.68MB |
018 Matrix multiplication with tensors part 1.en.srt |
15.91KB |
018 Matrix multiplication with tensors part 1.mp4 |
100.85MB |
018 Model 2_ Building, fitting and evaluating our first TensorFlow RNN model (LSTM).en.srt |
25.65KB |
018 Model 2_ Building, fitting and evaluating our first TensorFlow RNN model (LSTM).mp4 |
165.78MB |
018 Preparing Model 3 (our first fine-tuned model).en.srt |
26.97KB |
018 Preparing Model 3 (our first fine-tuned model).mp4 |
198.23MB |
018 Setting up TensorFlow modelling experiments part 2 (increasing complexity).en.srt |
16.55KB |
018 Setting up TensorFlow modelling experiments part 2 (increasing complexity).mp4 |
95.62MB |
018 Using callbacks to find a model's ideal learning rate.en.srt |
25.94KB |
018 Using callbacks to find a model's ideal learning rate.mp4 |
155.88MB |
019 Breaking our CNN model down part 9_ Reducing overfitting with data augmentation.en.srt |
9.77KB |
019 Breaking our CNN model down part 9_ Reducing overfitting with data augmentation.mp4 |
66.08MB |
019 Comparing and tracking your TensorFlow modelling experiments.en.srt |
13.70KB |
019 Comparing and tracking your TensorFlow modelling experiments.mp4 |
92.25MB |
019 Discussing the benefits of finding your model's most wrong predictions.en.srt |
9.80KB |
019 Discussing the benefits of finding your model's most wrong predictions.mp4 |
59.29MB |
019 Fitting and evaluating Model 3 (our first fine-tuned model).en.srt |
11.06KB |
019 Fitting and evaluating Model 3 (our first fine-tuned model).mp4 |
69.16MB |
019 Matrix multiplication with tensors part 2.en.srt |
18.10KB |
019 Matrix multiplication with tensors part 2.mp4 |
107.79MB |
019 Model 3_ Building, fitting and evaluating a Conv1D model on character embeddings.en.srt |
19.80KB |
019 Model 3_ Building, fitting and evaluating a Conv1D model on character embeddings.mp4 |
131.07MB |
019 Model 3_ Building, fitting and evaluating a GRU-cell powered RNN.en.srt |
24.87KB |
019 Model 3_ Building, fitting and evaluating a GRU-cell powered RNN.mp4 |
168.10MB |
019 Optional_ Extra NumPy resources.html |
1.91KB |
019 Training and evaluating a model with an ideal learning rate.en.srt |
12.39KB |
019 Training and evaluating a model with an ideal learning rate.mp4 |
89.00MB |
020 Breaking our CNN model down part 10_ Visualizing our augmented data.en.srt |
22.45KB |
020 Breaking our CNN model down part 10_ Visualizing our augmented data.mp4 |
157.61MB |
020 Comparing our model's results before and after fine-tuning.en.srt |
14.45KB |
020 Comparing our model's results before and after fine-tuning.mp4 |
84.17MB |
020 Discussing how we're going to build Model 4 (character + token embeddings).en.srt |
9.08KB |
020 Discussing how we're going to build Model 4 (character + token embeddings).mp4 |
60.31MB |
020 How to save a TensorFlow model.en.srt |
11.88KB |
020 How to save a TensorFlow model.mp4 |
92.29MB |
020 Introducing more classification evaluation methods.en.srt |
9.21KB |
020 Introducing more classification evaluation methods.mp4 |
42.21MB |
020 Matrix multiplication with tensors part 3.en.srt |
13.84KB |
020 Matrix multiplication with tensors part 3.mp4 |
80.62MB |
020 Model 4_ Building, fitting and evaluating a bidirectional RNN model.en.srt |
28.30KB |
020 Model 4_ Building, fitting and evaluating a bidirectional RNN model.mp4 |
167.29MB |
020 Writing code to uncover our model's most wrong predictions.en.srt |
17.79KB |
020 Writing code to uncover our model's most wrong predictions.mp4 |
109.59MB |
021 Breaking our CNN model down part 11_ Training a CNN model on augmented data.en.srt |
14.17KB |
021 Breaking our CNN model down part 11_ Training a CNN model on augmented data.mp4 |
94.06MB |
021 Changing the datatype of tensors.en.srt |
9.00KB |
021 Changing the datatype of tensors.mp4 |
71.39MB |
021 Discussing the intuition behind Conv1D neural networks for text and sequences.en.srt |
28.08KB |
021 Discussing the intuition behind Conv1D neural networks for text and sequences.mp4 |
184.39MB |
021 Downloading and preparing data for our biggest experiment yet (Model 4).en.srt |
9.34KB |
021 Downloading and preparing data for our biggest experiment yet (Model 4).mp4 |
56.68MB |
021 Finding the accuracy of our classification model.en.srt |
5.86KB |
021 Finding the accuracy of our classification model.mp4 |
34.07MB |
021 How to load and use a saved TensorFlow model.en.srt |
13.35KB |
021 How to load and use a saved TensorFlow model.mp4 |
104.36MB |
021 Model 4_ Building a multi-input model (hybrid token + character embeddings).en.srt |
23.53KB |
021 Model 4_ Building a multi-input model (hybrid token + character embeddings).mp4 |
181.85MB |
021 Plotting and visualising the samples our model got most wrong.en.srt |
16.14KB |
021 Plotting and visualising the samples our model got most wrong.mp4 |
125.49MB |
022 (Optional) How to save and download files from Google Colab.en.srt |
8.10KB |
022 (Optional) How to save and download files from Google Colab.mp4 |
67.70MB |
022 Breaking our CNN model down part 12_ Discovering the power of shuffling data.en.srt |
14.88KB |
022 Breaking our CNN model down part 12_ Discovering the power of shuffling data.mp4 |
103.86MB |
022 Creating our first confusion matrix (to see where our model is getting confused).en.srt |
12.04KB |
022 Creating our first confusion matrix (to see where our model is getting confused).mp4 |
65.70MB |
022 Making predictions on and plotting our own custom images.en.srt |
15.23KB |
022 Making predictions on and plotting our own custom images.mp4 |
108.30MB |
022 Model 4_ Plotting and visually exploring different data inputs.en.srt |
12.83KB |
022 Model 4_ Plotting and visually exploring different data inputs.mp4 |
86.56MB |
022 Model 5_ Building, fitting and evaluating a 1D CNN for text.en.srt |
15.45KB |
022 Model 5_ Building, fitting and evaluating a 1D CNN for text.mp4 |
77.75MB |
022 Preparing our final modelling experiment (Model 4).en.srt |
15.53KB |
022 Preparing our final modelling experiment (Model 4).mp4 |
96.42MB |
022 Tensor aggregation (finding the min, max, mean & more).en.srt |
13.43KB |
022 Tensor aggregation (finding the min, max, mean & more).mp4 |
89.58MB |
023 Breaking our CNN model down part 13_ Exploring options to improve our model.en.srt |
7.82KB |
023 Breaking our CNN model down part 13_ Exploring options to improve our model.mp4 |
50.34MB |
023 Crafting multi-input fast loading tf.data datasets for Model 4.en.srt |
11.32KB |
023 Crafting multi-input fast loading tf.data datasets for Model 4.mp4 |
83.83MB |
023 Fine-tuning Model 4 on 100% of the training data and evaluating its results.en.srt |
15.54KB |
023 Fine-tuning Model 4 on 100% of the training data and evaluating its results.mp4 |
96.84MB |
023 Making our confusion matrix prettier.en.srt |
19.08KB |
023 Making our confusion matrix prettier.mp4 |
114.11MB |
023 Putting together what we've learned part 1 (preparing a dataset).en.srt |
19.51KB |
023 Putting together what we've learned part 1 (preparing a dataset).mp4 |
143.51MB |
023 Tensor troubleshooting example (updating tensor datatypes).en.srt |
6.93KB |
023 Tensor troubleshooting example (updating tensor datatypes).mp4 |
69.39MB |
023 Transfer Learning in TensorFlow Part 3 challenge, exercises and extra-curriculum.html |
3.21KB |
023 Using TensorFlow Hub for pretrained word embeddings (transfer learning for NLP).en.srt |
20.25KB |
023 Using TensorFlow Hub for pretrained word embeddings (transfer learning for NLP).mp4 |
138.06MB |
024 Comparing our modelling experiment results in TensorBoard.en.srt |
16.43KB |
024 Comparing our modelling experiment results in TensorBoard.mp4 |
95.75MB |
024 Downloading a custom image to make predictions on.en.srt |
7.25KB |
024 Downloading a custom image to make predictions on.mp4 |
53.08MB |
024 Finding the positional minimum and maximum of a tensor (argmin and argmax).en.srt |
12.92KB |
024 Finding the positional minimum and maximum of a tensor (argmin and argmax).mp4 |
96.50MB |
024 Model 4_ Building, fitting and evaluating a hybrid embedding model.en.srt |
19.35KB |
024 Model 4_ Building, fitting and evaluating a hybrid embedding model.mp4 |
139.22MB |
024 Model 6_ Building, training and evaluating a transfer learning model for NLP.en.srt |
15.71KB |
024 Model 6_ Building, training and evaluating a transfer learning model for NLP.mp4 |
99.03MB |
024 Putting things together with multi-class classification part 1_ Getting the data.en.srt |
14.33KB |
024 Putting things together with multi-class classification part 1_ Getting the data.mp4 |
87.22MB |
024 Putting together what we've learned part 2 (building a regression model).en.srt |
18.76KB |
024 Putting together what we've learned part 2 (building a regression model).mp4 |
121.37MB |
025 How to view and delete previous TensorBoard experiments.en.srt |
2.93KB |
025 How to view and delete previous TensorBoard experiments.mp4 |
21.91MB |
025 Model 5_ Adding positional embeddings via feature engineering (overview).en.srt |
10.57KB |
025 Model 5_ Adding positional embeddings via feature engineering (overview).mp4 |
66.23MB |
025 Multi-class classification part 2_ Becoming one with the data.en.srt |
10.40KB |
025 Multi-class classification part 2_ Becoming one with the data.mp4 |
48.65MB |
025 Preparing subsets of data for model 7 (same as model 6 but 10% of data).en.srt |
15.93KB |
025 Preparing subsets of data for model 7 (same as model 6 but 10% of data).mp4 |
91.64MB |
025 Putting together what we've learned part 3 (improving our regression model).en.srt |
19.63KB |
025 Putting together what we've learned part 3 (improving our regression model).mp4 |
155.11MB |
025 Squeezing a tensor (removing all 1-dimension axes).en.srt |
4.01KB |
025 Squeezing a tensor (removing all 1-dimension axes).mp4 |
30.20MB |
025 Writing a helper function to load and preprocessing custom images.en.srt |
14.34KB |
025 Writing a helper function to load and preprocessing custom images.mp4 |
105.15MB |
026 Encoding the line number feature to used with Model 5.en.srt |
17.32KB |
026 Encoding the line number feature to used with Model 5.mp4 |
113.03MB |
026 Making a prediction on a custom image with our trained CNN.en.srt |
16.14KB |
026 Making a prediction on a custom image with our trained CNN.mp4 |
99.90MB |
026 Model 7_ Building, training and evaluating a transfer learning model on 10% data.en.srt |
13.43KB |
026 Model 7_ Building, training and evaluating a transfer learning model on 10% data.mp4 |
100.71MB |
026 Multi-class classification part 3_ Building a multi-class classification model.en.srt |
22.06KB |
026 Multi-class classification part 3_ Building a multi-class classification model.mp4 |
142.80MB |
026 One-hot encoding tensors.en.srt |
8.35KB |
026 One-hot encoding tensors.mp4 |
59.72MB |
026 Preprocessing data with feature scaling part 1 (what is feature scaling_).en.srt |
14.48KB |
026 Preprocessing data with feature scaling part 1 (what is feature scaling_).mp4 |
92.51MB |
026 Transfer Learning in TensorFlow Part 2 challenge, exercises and extra-curriculum.html |
3.57KB |
027 Encoding the total lines feature to be used with Model 5.en.srt |
10.58KB |
027 Encoding the total lines feature to be used with Model 5.mp4 |
64.28MB |
027 Fixing our data leakage issue with model 7 and retraining it.en.srt |
18.01KB |
027 Fixing our data leakage issue with model 7 and retraining it.mp4 |
165.94MB |
027 Multi-class classification part 4_ Improving performance with normalisation.en.srt |
16.89KB |
027 Multi-class classification part 4_ Improving performance with normalisation.mp4 |
113.41MB |
027 Multi-class CNN's part 1_ Becoming one with the data.en.srt |
23.68KB |
027 Multi-class CNN's part 1_ Becoming one with the data.mp4 |
140.19MB |
027 Preprocessing data with feature scaling part 2 (normalising our data).en.srt |
14.54KB |
027 Preprocessing data with feature scaling part 2 (normalising our data).mp4 |
97.18MB |
027 Trying out more tensor math operations.en.srt |
6.53KB |
027 Trying out more tensor math operations.mp4 |
55.93MB |
028 Comparing all our modelling experiments evaluation metrics.en.srt |
18.60KB |
028 Comparing all our modelling experiments evaluation metrics.mp4 |
115.92MB |
028 Exploring TensorFlow and NumPy's compatibility.en.srt |
7.41KB |
028 Exploring TensorFlow and NumPy's compatibility.mp4 |
43.74MB |
028 Model 5_ Building the foundations of a tribrid embedding model.en.srt |
11.92KB |
028 Model 5_ Building the foundations of a tribrid embedding model.mp4 |
81.89MB |
028 Multi-class classification part 5_ Comparing normalised and non-normalised data.en.srt |
5.66KB |
028 Multi-class classification part 5_ Comparing normalised and non-normalised data.mp4 |
26.77MB |
028 Multi-class CNN's part 2_ Preparing our data (turning it into tensors).en.srt |
10.40KB |
028 Multi-class CNN's part 2_ Preparing our data (turning it into tensors).mp4 |
72.71MB |
028 Preprocessing data with feature scaling part 3 (fitting a model on scaled data).en.srt |
11.45KB |
028 Preprocessing data with feature scaling part 3 (fitting a model on scaled data).mp4 |
75.72MB |
029 Making sure our tensor operations run really fast on GPUs.en.srt |
15.05KB |
029 Making sure our tensor operations run really fast on GPUs.mp4 |
110.90MB |
029 Model 5_ Completing the build of a tribrid embedding model for sequences.en.srt |
18.94KB |
029 Model 5_ Completing the build of a tribrid embedding model for sequences.mp4 |
152.91MB |
029 Multi-class classification part 6_ Finding the ideal learning rate.en.srt |
15.57KB |
029 Multi-class classification part 6_ Finding the ideal learning rate.mp4 |
73.33MB |
029 Multi-class CNN's part 3_ Building a multi-class CNN model.en.srt |
11.14KB |
029 Multi-class CNN's part 3_ Building a multi-class CNN model.mp4 |
89.24MB |
029 TensorFlow Regression challenge, exercises & extra-curriculum.html |
2.89KB |
029 Uploading our model's training logs to TensorBoard and comparing them.en.srt |
15.95KB |
029 Uploading our model's training logs to TensorBoard and comparing them.mp4 |
109.34MB |
030 Multi-class classification part 7_ Evaluating our model.en.srt |
17.69KB |
030 Multi-class classification part 7_ Evaluating our model.mp4 |
119.14MB |
030 Multi-class CNN's part 4_ Fitting a multi-class CNN model to the data.en.srt |
9.34KB |
030 Multi-class CNN's part 4_ Fitting a multi-class CNN model to the data.mp4 |
59.66MB |
030 Saving and loading in a trained NLP model with TensorFlow.en.srt |
14.07KB |
030 Saving and loading in a trained NLP model with TensorFlow.mp4 |
104.88MB |
030 TensorFlow Fundamentals challenge, exercises & extra-curriculum.html |
2.86KB |
030 Visually inspecting the architecture of our tribrid embedding model.en.srt |
14.38KB |
030 Visually inspecting the architecture of our tribrid embedding model.mp4 |
107.80MB |
031 Creating multi-level data input pipelines for Model 5 with the tf.data API.en.srt |
11.17KB |
031 Creating multi-level data input pipelines for Model 5 with the tf.data API.mp4 |
99.16MB |
031 Downloading a pretrained model and preparing data to investigate predictions.en.srt |
17.18KB |
031 Downloading a pretrained model and preparing data to investigate predictions.mp4 |
131.00MB |
031 Multi-class classification part 8_ Creating a confusion matrix.en.srt |
6.95KB |
031 Multi-class classification part 8_ Creating a confusion matrix.mp4 |
40.52MB |
031 Multi-class CNN's part 5_ Evaluating our multi-class CNN model.en.srt |
7.07KB |
031 Multi-class CNN's part 5_ Evaluating our multi-class CNN model.mp4 |
41.04MB |
031 Python + Machine Learning Monthly.html |
1.66KB |
032 Bringing SkimLit to life!!! (fitting and evaluating Model 5).en.srt |
15.49KB |
032 Bringing SkimLit to life!!! (fitting and evaluating Model 5).mp4 |
115.78MB |
032 LinkedIn Endorsements.html |
2.93KB |
032 Multi-class classification part 9_ Visualising random model predictions.en.srt |
14.12KB |
032 Multi-class classification part 9_ Visualising random model predictions.mp4 |
65.68MB |
032 Multi-class CNN's part 6_ Trying to fix overfitting by removing layers.en.srt |
17.13KB |
032 Multi-class CNN's part 6_ Trying to fix overfitting by removing layers.mp4 |
129.83MB |
032 Visualising our model's most wrong predictions.en.srt |
12.80KB |
032 Visualising our model's most wrong predictions.mp4 |
77.07MB |
033 Comparing the performance of all of our modelling experiments.en.srt |
12.89KB |
033 Comparing the performance of all of our modelling experiments.mp4 |
77.95MB |
033 Making and visualising predictions on the test dataset.en.srt |
12.14KB |
033 Making and visualising predictions on the test dataset.mp4 |
76.72MB |
033 Multi-class CNN's part 7_ Trying to fix overfitting with data augmentation.en.srt |
17.04KB |
033 Multi-class CNN's part 7_ Trying to fix overfitting with data augmentation.mp4 |
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033 What _patterns_ is our model learning_.en.srt |
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033 What _patterns_ is our model learning_.mp4 |
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034 Multi-class CNN's part 8_ Things you could do to improve your CNN model.en.srt |
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034 Multi-class CNN's part 8_ Things you could do to improve your CNN model.mp4 |
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034 Saving, loading & testing our best performing model.en.srt |
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034 Saving, loading & testing our best performing model.mp4 |
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034 TensorFlow classification challenge, exercises & extra-curriculum.html |
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034 Understanding the concept of the speed_score tradeoff.en.srt |
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034 Understanding the concept of the speed_score tradeoff.mp4 |
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035 Congratulations and your challenge before heading to the next module.en.srt |
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035 Congratulations and your challenge before heading to the next module.mp4 |
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035 Multi-class CNN's part 9_ Making predictions with our model on custom images.en.srt |
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035 Multi-class CNN's part 9_ Making predictions with our model on custom images.mp4 |
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035 NLP Fundamentals in TensorFlow challenge, exercises and extra-curriculum.html |
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036 Milestone Project 2 (SkimLit) challenge, exercises and extra-curriculum.html |
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036 Saving and loading our trained CNN model.en.srt |
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036 Saving and loading our trained CNN model.mp4 |
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037 TensorFlow computer vision and CNNs challenge, exercises & extra-curriculum.html |
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