17. Learn Python/7. Exercise How Does Python Work.srt 2.9 kB
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/1. Section Overview.srt 2.8 kB
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/24. Optional How machines learn and what's going on behind the scenes.html 2.8 kB
8. Matplotlib Plotting and Data Visualization/1. Section Overview.srt 2.8 kB
17. Learn Python/5. Latest Version Of Python.srt 2.8 kB
17. Learn Python/8. Learning Python.srt 2.6 kB
1. Introduction/3. Exercise Meet The Community.html 2.6 kB
16. Career Advice + Extra Bits/6. JTS Learn to Learn.srt 2.6 kB
5. Data Science Environment Setup/10. Sharing your Conda Environment.html 2.5 kB
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/4.4 End-to-end Dog Vision Notebook (the project we'll be working through).html 182 Bytes
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/42.1 Dog Vision Predictions with MobileNetV2 Ready for Kaggle Submission.html 180 Bytes
5. Data Science Environment Setup/10.1 Conda documentation on sharing an environment.html 172 Bytes
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/27.3 Step by step breakdown of a convolutional neural network (what MobileNetV2 is made of).html 172 Bytes
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/41.1 Dog Vision Prediction Probabilities Array.html 170 Bytes
18. Learn Python Part 2/4.1 Truthy vs Falsey Stackoverflow.html 170 Bytes
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/28.1 [Article] How to choose loss & activation functions when building a deep learning model.html 169 Bytes
5. Data Science Environment Setup/3.3 Getting your computer ready for machine learning How, what and why you should use Anaconda, Miniconda and Conda (blog post).html 167 Bytes
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/27.2 MobileNetV2 (the model we're using) architecture explanation by Sik-Ho Tsang.html 163 Bytes
17. Learn Python/6.2 Python 2 vs Python 3 - another one.html 161 Bytes
2. Machine Learning 101/7. Are You Getting It Yet.html 160 Bytes
11. Milestone Project 1 Supervised Learning (Classification)/2.1 Structured Data Projects on GitHub.html 155 Bytes
12. Milestone Project 2 Supervised Learning (Time Series Data)/2.1 Structured Data Projects on GitHub.html 155 Bytes
3. Machine Learning and Data Science Framework/3.1 A 6 Step Field Guide for Machine Learning Modelling (blog post).html 147 Bytes
6. Pandas Data Analysis/9.2 Jake VanderPlas's Data Manipulation with Pandas.html 146 Bytes
15. Storytelling + Communication How To Present Your Work/2.1 How to Think About Communicating and Sharing Your Work (blog post).html 142 Bytes
5. Data Science Environment Setup/3.1 Getting started with Conda (documentation).html 139 Bytes
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/31.1 Early Stopping Callback (a way to stop your model from training when it stops improving) Documentation.html 136 Bytes
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/30.1 TensorBoard Callback Documentation.html 134 Bytes
9. Scikit-learn Creating Machine Learning Models/16.1 Scikit-Learn machine learning map (how to choose the right machine learning model).html 133 Bytes
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/25.3 MobileNetV2 (the model we're using) on TensorFlow Hub.html 132 Bytes
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/10.1 Loading TensorFlow 2.0 into a Colab Notebook (if it isn't the default).html 129 Bytes
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/14.1 Documentation on how many images Google recommends for image problems.html 129 Bytes
17. Learn Python/6.1 Python 2 vs Python 3.html 128 Bytes
6. Pandas Data Analysis/3.3 10-minutes to pandas (from the pandas documentation).html 127 Bytes
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/35.1 TensorFlow documentation for the unbatch() function.html 127 Bytes
13. Data Engineering/7.1 OLTP vs OLAP.html 126 Bytes
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/4.5 Kaggle Dog Breed Identification Competition (the basis of our upcoming project).html 119 Bytes
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/4.2 Google Colab IO example (how to get data in and out of your Colab notebook).html 113 Bytes
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/6.1 Google Colab IO example (how to get data in and out of your Colab notebook).html 113 Bytes
17. Learn Python/35.1 List Methods.html 113 Bytes
17. Learn Python/49.1 Sets Methods.html 112 Bytes
5. Data Science Environment Setup/11.3 Jupyter Notebook documentation.html 111 Bytes
17. Learn Python/16.1 Base Numbers.html 111 Bytes
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/5.1 Google Colab FAQ (things you should know about Google Colab).html 110 Bytes
17. Learn Python/27.1 Built in Functions.html 109 Bytes
6. Pandas Data Analysis/13.2 Course notebooks - Github.html 108 Bytes
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/17.1 Blog post by Rachel Thomas (of fast.ai) on how and why you should create a validation set.html 108 Bytes
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/26.1 Keras in TensorFlow Overview Documentation.html 108 Bytes
18. Learn Python Part 2/30.1 Solution Repl.html 108 Bytes
5. Data Science Environment Setup/5.1 Miniconda download documentation.html 107 Bytes
5. Data Science Environment Setup/7.1 Miniconda download documentation.html 107 Bytes
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/27.1 The Softmax Function (activation function we use in our model).html 107 Bytes
6. Pandas Data Analysis/3.2 Pandas Documentation.html 106 Bytes
15. Storytelling + Communication How To Present Your Work/6.2 fast_template by fast.ai (a template you can use for your blog on GitHub Pages).html 106 Bytes
18. Learn Python Part 2/43.2 Exercise Repl.html 100 Bytes
18. Learn Python Part 2/18.1 Solution Repl.html 99 Bytes
18. Learn Python Part 2/18.2 Exercise Repl.html 99 Bytes
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/18.1 TensorFlow guidelines for loading all kinds of data (turning your data into Tensors).html 98 Bytes
17. Learn Python/45.1 Exercise Repl.html 97 Bytes
6. Pandas Data Analysis/13.1 Google Colab.html 95 Bytes
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/4.3 Google Colab (our workspace for the upcoming project).html 95 Bytes
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/5.2 Google Colab (our workspace for the upcoming project).html 95 Bytes
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/25.1 Andrei Karpathy's talk on AI at Tesla.html 95 Bytes
18. Learn Python Part 2/34.1 Solution Repl.html 95 Bytes
17. Learn Python/36.1 Exercise Repl.html 94 Bytes
17. Learn Python/38.1 Exercise Repl.html 94 Bytes
5. Data Science Environment Setup/3.2 Conda documentation.html 93 Bytes
17. Learn Python/34.1 Exercise Repl.html 93 Bytes
13. Data Engineering/2.1 Kaggle.html 92 Bytes
17. Learn Python/33.1 Exercise Repl.html 92 Bytes
18. Learn Python Part 2/12.1 Solution Repl.html 92 Bytes
17. Learn Python/49.2 Exercise Repl.html 91 Bytes
15. Storytelling + Communication How To Present Your Work/6.1 Devblog by Hashnode (an easy and free way to create a blog you own).html 89 Bytes
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/25.2 Papers with Code (a great resource for some of the best machine learning papers with code examples).html 88 Bytes
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/25.4 PyTorch Hub (PyTorch version of TensorFlow Hub).html 85 Bytes
17. Learn Python/2.1 python.org.html 84 Bytes
7. NumPy/2.3 NumPy Documentation.html 83 Bytes
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/23.1 TensorFlow Hub (resource for pre-trained deep learning models and more).html 79 Bytes
14. Neural Networks Deep Learning, Transfer Learning and TensorFlow 2/25.5 TensorFlow Hub (resource for pre-trained deep learning models and more).html 79 Bytes