搜索
[FCSNEW.NET] Udemy - Practical Deep Learning Master PyTorch in 15 Days
磁力链接/BT种子名称
[FCSNEW.NET] Udemy - Practical Deep Learning Master PyTorch in 15 Days
磁力链接/BT种子简介
种子哈希:
8b5448475ab3ed02e022e76f5ee7e3ef6f0e5054
文件大小:
17.58G
已经下载:
141
次
下载速度:
极快
收录时间:
2025-09-15
最近下载:
2025-10-17
移花宫入口
移花宫.com
邀月.com
怜星.com
花无缺.com
yhgbt.icu
yhgbt.top
磁力链接下载
magnet:?xt=urn:btih:8B5448475AB3ED02E022E76F5EE7E3EF6F0E5054
推荐使用
PIKPAK网盘
下载资源,10TB超大空间,不限制资源,无限次数离线下载,视频在线观看
下载BT种子文件
磁力链接
迅雷下载
PIKPAK在线播放
世界之窗
小蓝俱乐部
含羞草
欲漫涩
逼哩逼哩
成人快手
51品茶
51动漫
91短视频
抖音Max
TikTok成人版
PornHub
暗网Xvideo
草榴社区
哆哔涩漫
呦乐园
萝莉岛
搜同
最近搜索
下春药
调教大神 2025
多发
学历
性感女友
桃瀬
糖心
模特 小白
玉玉
电影
黑丝 自拍
湿润
湖南大奶人妻
ガンダム
马尼拉
被黑人干
喝一口酸奶
半裸
穿着
上上上 无语
yukiko
风吟
極上泡姫物語
新人吃鸡
商场美女
vec
未来星
全裸骚舞
淫语调教
上位骑乘后入
文件列表
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/2. good.zip
946.5 MB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/2. defective.zip
916.0 MB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/13. Part 4 Evaluating Model Performance and Addressing Overfitting.mp4
311.6 MB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/20. Demonstrating Overfitting in Neural Network Training.mp4
306.9 MB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/6. Investigating Key Data Relationships for Model Training.mp4
275.4 MB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/19. Using the Trained Model to Predict Tire Quality.mp4
261.2 MB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/5. Using ResNet-50 to Classify an Image of a Cat.mp4
259.4 MB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/28. Optional extra Application of Overfitting Detection and Model Finalization.mp4
253.7 MB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/12. Evaluating Model with Key Performance Metrics.mp4
247.5 MB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/5. Exploring the Used Car Dataset with Pandas.mp4
242.3 MB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/15. Implementing Training and Validation Data Splits in Python.mp4
231.1 MB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/16. Integrating Data Augmentation into Model Training for Improved Accuracy.mp4
226.5 MB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/23. Optional extra Applying a Neural Network to Custom Images.mp4
224.2 MB
03. Day 2 Neuron Training From Adjusting Parameters to Batch Learning/8. Training a Neuron 1 Preparing and Optimizing.mp4
223.7 MB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/8. Optional Applying a Single Neuron to Student Exam Data.mp4
222.6 MB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/7. Optional extra Exploring the ResNet Research Paper.mp4
220.4 MB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/9. Building and Training Our First Neural Network.mp4
218.5 MB
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/14. The dtype of a Tensor.mp4
214.9 MB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/19. Optional extra Generating Embeddings with BART for Spam Detection.mp4
214.1 MB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/13. Evaluating a Neural Network for Multi-Class Classification.mp4
212.5 MB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/7. Part 1 Implementing a CNN.mp4
210.9 MB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/16. Implementing Input Normalization in PyTorch for Improved Predictions.mp4
209.8 MB
08. Day 8 Exercise Loan Approval Classification/4. Solution Part 2 Building and Training the Loan Approval Model.mp4
205.8 MB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/8. Preparing Data for ResNet Training.mp4
203.9 MB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/3. Using Count Vectorizer to Transform Text into Numerical Data.mp4
201.8 MB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/5. Building a Binary Classifier for 0 Detection.mp4
190.6 MB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/10. Training the Model Initial Setup and Challenges.mp4
188.7 MB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/18. Implementing Mini-Batch Learning for Efficient Training.mp4
187.9 MB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/2. Exploring and Preprocessing the SMS Spam Dataset.mp4
187.4 MB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/10. Part 2 Building a Transfer Learning Model for Tire Quality Prediction.mp4
185.6 MB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/6. Evaluating the Binary Classifier for 0 Detection.mp4
181.4 MB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/21. Optional extra Integrating Embeddings into the Spam Filter.mp4
178.3 MB
08. Day 8 Exercise Loan Approval Classification/2. Exploring the Loan Approval Dataset.mp4
176.9 MB
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/13. Creating a Model.mp4
176.8 MB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/4. An Introduction to ResNet in Transfer Learning.mp4
176.0 MB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/11. Reducing CNN Complexity with Max Pooling.mp4
171.9 MB
03. Day 2 Neuron Training From Adjusting Parameters to Batch Learning/13. Batch Learning and Making Predictions with PyTorch.mp4
170.1 MB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/9. Structuring Data for Model Input and Running an Initial Prediction.mp4
168.4 MB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/19. Saving and Loading Model in PyTorch.mp4
167.0 MB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/21. Strategies to Counter Overfitting.mp4
166.6 MB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/20. Day 12 Advancing CNN Complexity.mp4
166.4 MB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/15. Data Augmentation for Combating Overfitting.mp4
166.3 MB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/12. Day 14 Part 3 Training the Transfer Learning Model.mp4
165.4 MB
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/2. Installing the necessary tools (Windows).mp4
165.0 MB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/3. Getting Started with Jupyter Interactive Python Programming.mp4
158.8 MB
08. Day 8 Exercise Loan Approval Classification/1. Introduction to Loan Approval Prediction.mp4
158.5 MB
03. Day 2 Neuron Training From Adjusting Parameters to Batch Learning/6. Understanding Gradient Descent for Neuron Optimization.mp4
158.0 MB
12. Day 15 Deploying AI Models with Gradio From Setup to Real-World Predictions/5. Integrating Gradio with PyTorch for Predictions.mp4
157.2 MB
08. Day 8 Exercise Loan Approval Classification/3. Solution Part 1 Preparing Data for the Loan Approval Model.mp4
154.1 MB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/18. Experimenting with Training Parameters Through Loss Visualization.mp4
153.4 MB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/16. Optimizing Tensor Computations on GPU.mp4
152.7 MB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/11. Training a Neural Network for Multi-Class Classification.mp4
146.7 MB
12. Day 15 Deploying AI Models with Gradio From Setup to Real-World Predictions/6. Deploying Gradio for Real-World Tire Predictions.mp4
145.4 MB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/3. Optional extra Exploring Nonlinearity and Its Impact on Neural Networks.mp4
145.3 MB
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/3. Installing the necessary tools (Linux).mp4
140.1 MB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/17. Experimenting with Different Neural Network Architectures.mp4
138.4 MB
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/4. Installing the necessary tools (macOS).mp4
135.9 MB
12. Day 15 Deploying AI Models with Gradio From Setup to Real-World Predictions/3. Uploading and Processing Images with Gradio.mp4
134.8 MB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/9. Part 1 Customizing ResNet-50 for Tire Quality Prediction.mp4
134.3 MB
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/8. Developing a First Neuron.mp4
134.3 MB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/20. Testing Approaches for Tire Model Deployment.mp4
134.3 MB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/3. From Dataset to DataLoader Preparing Data for Neural Network.mp4
133.1 MB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/16. Optimizing Training with Adam.mp4
130.6 MB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/8. Multi-Class Classification in Neural Networks.mp4
128.1 MB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/2. Exploring MNIST Data with TorchVision.mp4
128.1 MB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/6. Training the Model for Spam Classification.mp4
124.9 MB
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/12. Matrix in a Tensor.mp4
124.4 MB
12. Day 15 Deploying AI Models with Gradio From Setup to Real-World Predictions/2. Getting Started with Gradio for Simple AI Apps.mp4
124.2 MB
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/1. Course Materials.zip
122.2 MB
03. Day 2 Neuron Training From Adjusting Parameters to Batch Learning/4. How Neuron Learns A Scalable Approach.mp4
122.2 MB
03. Day 2 Neuron Training From Adjusting Parameters to Batch Learning/2. What is learning.mp4
121.2 MB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/15. Day 8 Introducing ReLU Activation Function.mp4
120.6 MB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/18. Accelerating CNN Execution Speed with GPU.mp4
119.7 MB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/13. Implementing Output Normalization in PyTorch for Consistent Predictions.mp4
118.7 MB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/5. Optional Decoding the Mathematics of Backpropagation.mp4
116.7 MB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/8. Part 2 Advancing CNN Implementation.mp4
114.8 MB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/20. Optional extra Building a Function to Generate Embeddings for Spam Detection.mp4
114.6 MB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/17. Running Simple Model on GPU.mp4
113.6 MB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/22. Solution Adding an Additional Column to the Model.mp4
113.1 MB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/18. Optional extra Improving Spam Detection with Large Language Model Embeddings.mp4
113.0 MB
03. Day 2 Neuron Training From Adjusting Parameters to Batch Learning/10. Training a Neuron 2 Iterative Learning and Adjustments.mp4
111.2 MB
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/5. Running a first file.mp4
109.4 MB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/13. Simplifying the Code with nn.Sequential.mp4
109.4 MB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/25. Refining CNN with Batch Normalization.mp4
104.6 MB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/24. Optimizing CNN with Dropout Layers.mp4
104.4 MB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/12. Day 4 Understanding Output Normalization for Stable Learning.mp4
102.4 MB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/2. Optional Understanding Activation Functions in Neural Networks.mp4
102.1 MB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/27. Optional Understanding the Mathematics of Batch Normalization.mp4
97.5 MB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/5. Optional Extra Exploring TF-IDF Vectorizer for Improved Text Preprocessing.mp4
96.8 MB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/21. Exercise Adding an Additional Column to the Model.mp4
96.6 MB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/24. Optional extra Overcoming Preprocessing Challenges in Model Application.mp4
91.9 MB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/10. Switching to Binary Cross Entropy Loss for Effective Training.mp4
90.8 MB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/14. Optional Enabling CUDA on NVIDIA GPUs.mp4
90.1 MB
03. Day 2 Neuron Training From Adjusting Parameters to Batch Learning/12. The Importance of Mean Squared Error in Model Training.mp4
88.2 MB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/1. Day 13 Introduction to Transfer Learning and Tire Quality Prediction.mp4
87.6 MB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/16. Applying and Evaluating the Model on Fresh Data.mp4
84.5 MB
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/11. Unpacking Tensors, Accessing Vectors.mp4
84.1 MB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/21. Enhancing CNN Performance with Increased Filter Complexity.mp4
81.5 MB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/12. Evaluating Neural Network Performance.mp4
81.5 MB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/19. Understanding Overfitting in Neural Networks.mp4
77.3 MB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/7. Analyzing Student Performance Data for Exam Predictions.mp4
75.0 MB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/19. Optimizing Loss Tracking in Mini-Batch Training.mp4
74.4 MB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/8. Finalizing Input and Target Columns for Model Training.mp4
72.9 MB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/14. Day 6 Understanding Training, Validation and Test Data in Model Development.mp4
72.0 MB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/11. Using BCE with Sigmoid for Loss Calculation and Prediction.mp4
69.3 MB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/16. Applying Softmax in Neural Network.mp4
67.4 MB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/8. Understanding the Sigmoid Activation Function for Probability Output.mp4
66.7 MB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/15. Leveraging Google Colab's Free GPU.mp4
62.1 MB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/15. Understanding Input Normalization for Consistent Training.mp4
60.6 MB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/3. Optional Assessing Previous Model Performance on Fashion MNIST Data.mp4
59.3 MB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/2. Overview of the Used Car Price Dataset.mp4
59.2 MB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/18. Adapting Model Weights for Universal Compatibility.mp4
57.0 MB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/23. Introducing Dropout for Improved Generalization.mp4
56.4 MB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/4. Exploring Edge Detection with the Sobel Operator.mp4
56.2 MB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/15. Day 10 Understanding Softmax for Class Probability Normalization.mp4
52.6 MB
12. Day 15 Deploying AI Models with Gradio From Setup to Real-World Predictions/1. Introduction to Deploying AI Models with Gradio.mp4
52.3 MB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/4. Understanding Backpropagation in Neural Networks.mp4
52.0 MB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/9. Understanding One-Hot Encoding.mp4
50.7 MB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/3. Exploring the Tire Quality Dataset.mp4
49.5 MB
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/6. What is a model.mp4
47.2 MB
14. Closing words/1. Closing words.mp4
46.5 MB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/2. Exploring Fashion MNIST Data.mp4
44.6 MB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/1. Day 11 Introduction to Convolutional Neural Networks.mp4
42.8 MB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/13. Utilizing GPU Acceleration with PyTorch.mp4
41.1 MB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/6. Understanding the Structure of Convolutional Neural Networks for Edge Detection.mp4
38.3 MB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/1. Day 7 From Single Neuron to Neural Networks.mp4
33.9 MB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/1. Day 3 Introduction to Predicting Used Car Prices.mp4
30.5 MB
01. Introduction/1. Overview Practical Deep Learning.mp4
26.9 MB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/1. Day 5 Introduction to Spam Detection.mp4
26.9 MB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/1. Day 9 Introduction to Handwritten Digit Classification.mp4
20.4 MB
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/10. A First Tensor.mp4
19.8 MB
03. Day 2 Neuron Training From Adjusting Parameters to Batch Learning/1. Introduction to Neuron Training.mp4
16.9 MB
13. Day 15 Exam/1.2 PRACTICE EXAM Test your knowledge so far (22).html
116.9 kB
06. Day 6 Exam/1.1 PRACTICE EXAM Test your knowledge so far (12).html
103.5 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/29.38 Test your knowledge on Key CNN Techniques.html
32.3 kB
03. Day 2 Neuron Training From Adjusting Parameters to Batch Learning/12. geogebra.ggb
31.7 kB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/21.43 Test your knowledge on Tire Quality Prediction and Transfer Learning.html
30.4 kB
03. Day 2 Neuron Training From Adjusting Parameters to Batch Learning/14.7 Test your knowledge on Batch Learning, Loss Functions and Training Process.html
27.5 kB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/20.24 Test your knowledge on Essential Neural Network Concepts.html
27.5 kB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/25.31 Test your knowledge on Multi-Class Classifier Fundamentals.html
27.3 kB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/20.13 Test your knowledge on Data Preparation, Model Training and Evaluation.html
25.7 kB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/23.19 Test your knowledge on Spam Detection Techniques.html
25.6 kB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/22.18 Optional extra Test your knowledge on Enhancing Detection with LLM Embeddings.html
23.0 kB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/13. Part 4 Evaluating Model Performance and Addressing Overfitting.vtt
22.8 kB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/20. Demonstrating Overfitting in Neural Network Training.vtt
22.4 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/9.33 Test your knowledge on CNN Architecture and Functionality.html
22.3 kB
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/9.2 Test Your Knowledge of the Structure and Mathematical Model of a Neuron.html
22.0 kB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/4.14 Test your knowledge on Spam Detection and Text Preprocessing.html
22.0 kB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/13.16 Test your knowledge on Loss Functions and Evaluation Metrics in Spam Detection.html
21.9 kB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/7.9 Test your knowledge on Data Exploration and Preparation with Pandas.html
21.8 kB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/9.15 Test your knowledge on Model Training and Sigmoid Function for Spam Detection.html
21.7 kB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/4.25 Test your knowledge on Data Preparation for Neural Network Training.html
21.6 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/26.37 Test your knowledge on Dropout and Batch Normalization.html
21.6 kB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/17.17 Test your knowledge on Data Segmentation in Model Development.html
21.6 kB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/11.10 Test your knowledge on Data Preparation and Initial Neuron Training Steps.html
21.6 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/19.35 Test your knowledge on Utilizing GPUs with PyTorch.html
21.6 kB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/18.29 Test your knowledge on Softmax and Network Architecture.html
21.6 kB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/6.39 Test your knowledge of Transfer Learning and ResNet.html
21.5 kB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/7.26 Test your knowledge on Binary Classifier Essentials.html
21.5 kB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/10.27 Test your knowledge on Preparing Data for Multi-Class Classification.html
21.2 kB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/14.11 Test your knowledge on Output Data Normalization.html
21.1 kB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/22.30 Test your knowledge on Overfitting in Neural Network.html
21.0 kB
03. Day 2 Neuron Training From Adjusting Parameters to Batch Learning/5.4 Test your knowledge on Loss Functions, Learning Rates, Parameter Initialization.html
21.0 kB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/11.40 Test your knowledge on Preparing and Modifying ResNet for Transfer Learning.html
20.9 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/5.32 Test your knowledge on CNN Basics and Image Processing.html
20.6 kB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/11.21 Test your knowledge on Data Analysis and Neural Network Training.html
20.5 kB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/17.42 Test your knowledge on Enhancing Models with Data Augmentation.html
20.5 kB
12. Day 15 Deploying AI Models with Gradio From Setup to Real-World Predictions/4.44 Test your knowledge on Gradio and AI Model Integration.html
20.4 kB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/14.41 Test your knowledge on Training and Evaluating a Transfer Learning Model.html
20.3 kB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/6.20 Test your knowledge on Neural Network Fundamentals.html
20.2 kB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/5. Using ResNet-50 to Classify an Image of a Cat.vtt
20.2 kB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/17.23 Test your knowledge on Optimizing Neural Networks with ReLU and Adam.html
20.2 kB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/4.8 Test your knowledge on Used Car Dataset and Jupyter.html
20.1 kB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/14.22 Test your knowledge on Neural Network Application Techniques.html
20.1 kB
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/7.1 Test your knowledge about the Foundations of Machine Learning and Models.html
19.8 kB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/14.28 Test your knowledge on Neural Network Adjustments for Multi-Class Classification.html
19.6 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/12.34 Test your knowledge on Max Pooling in CNNs.html
19.6 kB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/6. Investigating Key Data Relationships for Model Training.vtt
19.4 kB
03. Day 2 Neuron Training From Adjusting Parameters to Batch Learning/11.6 Test your knowledge on Data Handling and Iterative Training.html
19.4 kB
12. Day 15 Deploying AI Models with Gradio From Setup to Real-World Predictions/7.45 Test your knowledge on Real-World Testing of Gradio Apps.html
19.3 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/22.36 Test your knowledge on CNN Layer Configurations.html
19.3 kB
03. Day 2 Neuron Training From Adjusting Parameters to Batch Learning/3.3 Test your knowledge on Training Neurons and Learning Parameters.html
19.2 kB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/12. Evaluating Model with Key Performance Metrics.vtt
19.0 kB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/2. license.txt
19.0 kB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/17.12 Test your knowledge on Input Data Normalization.html
18.9 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/28. Optional extra Application of Overfitting Detection and Model Finalization.vtt
18.6 kB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/15. Implementing Training and Validation Data Splits in Python.vtt
18.5 kB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/19. Using the Trained Model to Predict Tire Quality.vtt
18.1 kB
03. Day 2 Neuron Training From Adjusting Parameters to Batch Learning/7.5 Test your knowledge on Gradient Descent.html
17.6 kB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/5. Exploring the Used Car Dataset with Pandas.vtt
17.6 kB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/23. Optional extra Applying a Neural Network to Custom Images.vtt
17.5 kB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/13. Evaluating a Neural Network for Multi-Class Classification.vtt
17.5 kB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/9. Building and Training Our First Neural Network.vtt
17.4 kB
03. Day 2 Neuron Training From Adjusting Parameters to Batch Learning/8. Training a Neuron 1 Preparing and Optimizing.vtt
17.1 kB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/7. Optional extra Exploring the ResNet Research Paper.vtt
16.7 kB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/16. Implementing Input Normalization in PyTorch for Improved Predictions.vtt
16.6 kB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/8. Optional Applying a Single Neuron to Student Exam Data.vtt
16.6 kB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/16. Integrating Data Augmentation into Model Training for Improved Accuracy.vtt
16.5 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/7. Part 1 Implementing a CNN.vtt
16.5 kB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/19. Optional extra Generating Embeddings with BART for Spam Detection.vtt
16.2 kB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/3. Using Count Vectorizer to Transform Text into Numerical Data.vtt
15.4 kB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/2. Exploring and Preprocessing the SMS Spam Dataset.vtt
15.3 kB
08. Day 8 Exercise Loan Approval Classification/4. Solution Part 2 Building and Training the Loan Approval Model.vtt
15.1 kB
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/14. The dtype of a Tensor.vtt
15.0 kB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/10. Training the Model Initial Setup and Challenges.vtt
15.0 kB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/6. Evaluating the Binary Classifier for 0 Detection.vtt
14.1 kB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/10. Part 2 Building a Transfer Learning Model for Tire Quality Prediction.vtt
14.0 kB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/8. Preparing Data for ResNet Training.vtt
13.9 kB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/21. Optional extra Integrating Embeddings into the Spam Filter.vtt
13.9 kB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/9. Structuring Data for Model Input and Running an Initial Prediction.vtt
13.6 kB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/19. Saving and Loading Model in PyTorch.vtt
13.5 kB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/4. An Introduction to ResNet in Transfer Learning.vtt
12.8 kB
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/13. Creating a Model.vtt
12.8 kB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/21. Strategies to Counter Overfitting.vtt
12.7 kB
08. Day 8 Exercise Loan Approval Classification/2. Exploring the Loan Approval Dataset.vtt
12.6 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/20. Day 12 Advancing CNN Complexity.vtt
12.5 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/11. Reducing CNN Complexity with Max Pooling.vtt
12.5 kB
03. Day 2 Neuron Training From Adjusting Parameters to Batch Learning/13. Batch Learning and Making Predictions with PyTorch.vtt
12.5 kB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/12. Day 14 Part 3 Training the Transfer Learning Model.vtt
12.5 kB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/18. Experimenting with Training Parameters Through Loss Visualization.vtt
12.3 kB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/11. Training a Neural Network for Multi-Class Classification.vtt
12.2 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/16. Optimizing Tensor Computations on GPU.vtt
12.0 kB
03. Day 2 Neuron Training From Adjusting Parameters to Batch Learning/6. Understanding Gradient Descent for Neuron Optimization.vtt
11.9 kB
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/2. Installing the necessary tools (Windows).vtt
11.7 kB
08. Day 8 Exercise Loan Approval Classification/3. Solution Part 1 Preparing Data for the Loan Approval Model.vtt
11.7 kB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/3. Optional extra Exploring Nonlinearity and Its Impact on Neural Networks.vtt
11.6 kB
08. Day 8 Exercise Loan Approval Classification/1. Introduction to Loan Approval Prediction.vtt
11.4 kB
12. Day 15 Deploying AI Models with Gradio From Setup to Real-World Predictions/5. Integrating Gradio with PyTorch for Predictions.vtt
11.3 kB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/15. Data Augmentation for Combating Overfitting.vtt
11.3 kB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/17. Experimenting with Different Neural Network Architectures.vtt
11.1 kB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/16. Optimizing Training with Adam.vtt
11.0 kB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/3. Getting Started with Jupyter Interactive Python Programming.vtt
10.8 kB
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/8. Developing a First Neuron.vtt
10.3 kB
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/10. A First Tensor.vtt
10.3 kB
12. Day 15 Deploying AI Models with Gradio From Setup to Real-World Predictions/3. Uploading and Processing Images with Gradio.vtt
10.2 kB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/8. Multi-Class Classification in Neural Networks.vtt
9.9 kB
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/3. Installing the necessary tools (Linux).vtt
9.9 kB
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/4. Installing the necessary tools (macOS).vtt
9.9 kB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/9. Part 1 Customizing ResNet-50 for Tire Quality Prediction.vtt
9.7 kB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/13. Implementing Output Normalization in PyTorch for Consistent Predictions.vtt
9.6 kB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/6. Training the Model for Spam Classification.vtt
9.5 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/17. Running Simple Model on GPU.vtt
9.5 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/8. Part 2 Advancing CNN Implementation.vtt
9.5 kB
12. Day 15 Deploying AI Models with Gradio From Setup to Real-World Predictions/6. Deploying Gradio for Real-World Tire Predictions.vtt
9.4 kB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/5. Optional Decoding the Mathematics of Backpropagation.vtt
9.3 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/18. Accelerating CNN Execution Speed with GPU.vtt
9.3 kB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/13. Simplifying the Code with nn.Sequential.vtt
9.3 kB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/20. Testing Approaches for Tire Model Deployment.vtt
9.2 kB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/15. Day 8 Introducing ReLU Activation Function.vtt
9.0 kB
03. Day 2 Neuron Training From Adjusting Parameters to Batch Learning/4. How Neuron Learns A Scalable Approach.vtt
9.0 kB
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/12. Matrix in a Tensor.vtt
9.0 kB
12. Day 15 Deploying AI Models with Gradio From Setup to Real-World Predictions/2. Getting Started with Gradio for Simple AI Apps.vtt
8.8 kB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/20. Optional extra Building a Function to Generate Embeddings for Spam Detection.vtt
8.8 kB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/22. Solution Adding an Additional Column to the Model.vtt
8.8 kB
03. Day 2 Neuron Training From Adjusting Parameters to Batch Learning/2. What is learning.vtt
8.8 kB
03. Day 2 Neuron Training From Adjusting Parameters to Batch Learning/10. Training a Neuron 2 Iterative Learning and Adjustments.vtt
8.6 kB
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/5. Running a first file.vtt
8.3 kB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/2. Optional Understanding Activation Functions in Neural Networks.vtt
8.1 kB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/12. Day 4 Understanding Output Normalization for Stable Learning.vtt
7.9 kB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/18. Optional extra Improving Spam Detection with Large Language Model Embeddings.vtt
7.9 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/24. Optimizing CNN with Dropout Layers.vtt
7.8 kB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/24. Optional extra Overcoming Preprocessing Challenges in Model Application.vtt
7.6 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/25. Refining CNN with Batch Normalization.vtt
7.4 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/27. Optional Understanding the Mathematics of Batch Normalization.vtt
7.2 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/14. Optional Enabling CUDA on NVIDIA GPUs.vtt
7.1 kB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/5. Optional Extra Exploring TF-IDF Vectorizer for Improved Text Preprocessing.vtt
7.1 kB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/21. Exercise Adding an Additional Column to the Model.vtt
6.8 kB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/16. Applying and Evaluating the Model on Fresh Data.vtt
6.7 kB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/12. Evaluating Neural Network Performance.vtt
6.6 kB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/10. Switching to Binary Cross Entropy Loss for Effective Training.vtt
6.6 kB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/1. Day 13 Introduction to Transfer Learning and Tire Quality Prediction.vtt
6.4 kB
03. Day 2 Neuron Training From Adjusting Parameters to Batch Learning/12. The Importance of Mean Squared Error in Model Training.vtt
6.3 kB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/16. Applying Softmax in Neural Network.vtt
6.0 kB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/19. Understanding Overfitting in Neural Networks.vtt
5.9 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/21. Enhancing CNN Performance with Increased Filter Complexity.vtt
5.9 kB
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/11. Unpacking Tensors, Accessing Vectors.vtt
5.9 kB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/11. Using BCE with Sigmoid for Loss Calculation and Prediction.vtt
5.8 kB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/14. Day 6 Understanding Training, Validation and Test Data in Model Development.vtt
5.7 kB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/7. Analyzing Student Performance Data for Exam Predictions.vtt
5.5 kB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/8. Finalizing Input and Target Columns for Model Training.vtt
5.4 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/23. Introducing Dropout for Improved Generalization.vtt
4.8 kB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/8. Understanding the Sigmoid Activation Function for Probability Output.vtt
4.8 kB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/2. Overview of the Used Car Price Dataset.vtt
4.7 kB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/15. Understanding Input Normalization for Consistent Training.vtt
4.6 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/15. Leveraging Google Colab's Free GPU.vtt
4.6 kB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/18. Adapting Model Weights for Universal Compatibility.vtt
4.3 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/3. Optional Assessing Previous Model Performance on Fashion MNIST Data.vtt
4.2 kB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/4. Understanding Backpropagation in Neural Networks.vtt
4.1 kB
01. Introduction/1. Overview Practical Deep Learning.vtt
4.0 kB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/15. Day 10 Understanding Softmax for Class Probability Normalization.vtt
4.0 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/4. Exploring Edge Detection with the Sobel Operator.vtt
4.0 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/2. Exploring Fashion MNIST Data.vtt
3.9 kB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/3. Exploring the Tire Quality Dataset.vtt
3.9 kB
12. Day 15 Deploying AI Models with Gradio From Setup to Real-World Predictions/1. Introduction to Deploying AI Models with Gradio.vtt
3.8 kB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/9. Understanding One-Hot Encoding.vtt
3.7 kB
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/6. What is a model.vtt
3.7 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/1. Day 11 Introduction to Convolutional Neural Networks.vtt
3.4 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/13. Utilizing GPU Acceleration with PyTorch.vtt
3.1 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/6. Understanding the Structure of Convolutional Neural Networks for Edge Detection.vtt
2.8 kB
14. Closing words/1. Closing words.vtt
2.7 kB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/1. Day 7 From Single Neuron to Neural Networks.vtt
2.6 kB
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/1. Day 3 Introduction to Predicting Used Car Prices.vtt
2.4 kB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/1. Day 5 Introduction to Spam Detection.vtt
2.1 kB
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/2. Preparing the Tire Quality Dataset.html
1.8 kB
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/12. Optimizing Training for Our Neural Network Multi-Class Classifier.html
1.6 kB
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/10. Optimizing Training for Our CNN.html
1.3 kB
03. Day 2 Neuron Training From Adjusting Parameters to Batch Learning/1. Introduction to Neuron Training.vtt
1.3 kB
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/10. Optimizing Training for Our Neural Network Classifier.html
1.3 kB
03. Day 2 Neuron Training From Adjusting Parameters to Batch Learning/9. Optimizing Training for Our Neuron Model.html
1.2 kB
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/7. Optimizing Training for Our Neuron Classifier.html
1.0 kB
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/1. Course Materials.html
388 Bytes
0. Websites you may like/[FCSNEW.NET].url
119 Bytes
01. Introduction/0. Websites you may like/[FCSNEW.NET].url
119 Bytes
01. Introduction/[FCSNEW.NET].url
119 Bytes
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/0. Websites you may like/[FCSNEW.NET].url
119 Bytes
02. Day 1 Foundations of Neural Networks From Models and Neurons to Tensors/[FCSNEW.NET].url
119 Bytes
03. Day 2 Neuron Training From Adjusting Parameters to Batch Learning/0. Websites you may like/[FCSNEW.NET].url
119 Bytes
03. Day 2 Neuron Training From Adjusting Parameters to Batch Learning/[FCSNEW.NET].url
119 Bytes
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/0. Websites you may like/[FCSNEW.NET].url
119 Bytes
04. Day 3 & 4 Single Neuron Regression Predicting Used Car Prices with PyTorch/[FCSNEW.NET].url
119 Bytes
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/0. Websites you may like/[FCSNEW.NET].url
119 Bytes
05. Day 5 & 6 Neuron Classifier Spam Detection in SMS/[FCSNEW.NET].url
119 Bytes
06. Day 6 Exam/0. Websites you may like/[FCSNEW.NET].url
119 Bytes
06. Day 6 Exam/[FCSNEW.NET].url
119 Bytes
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/0. Websites you may like/[FCSNEW.NET].url
119 Bytes
07. Day 7 & 8 Neural Network Classifier Student Exam Results Prediction/[FCSNEW.NET].url
119 Bytes
08. Day 8 Exercise Loan Approval Classification/0. Websites you may like/[FCSNEW.NET].url
119 Bytes
08. Day 8 Exercise Loan Approval Classification/[FCSNEW.NET].url
119 Bytes
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/0. Websites you may like/[FCSNEW.NET].url
119 Bytes
09. Day 9 & 10 Neural Network for Multi-Class Classification Handwritten Digits/[FCSNEW.NET].url
119 Bytes
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/0. Websites you may like/[FCSNEW.NET].url
119 Bytes
10. Day 11 & 12 Convolutional Networks Fashion Item Classification (multi-class)/[FCSNEW.NET].url
119 Bytes
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/0. Websites you may like/[FCSNEW.NET].url
119 Bytes
11. Day 13 & 14 Transfer Learning with ResNet for Tire Quality Prediction/[FCSNEW.NET].url
119 Bytes
12. Day 15 Deploying AI Models with Gradio From Setup to Real-World Predictions/0. Websites you may like/[FCSNEW.NET].url
119 Bytes
12. Day 15 Deploying AI Models with Gradio From Setup to Real-World Predictions/[FCSNEW.NET].url
119 Bytes
13. Day 15 Exam/0. Websites you may like/[FCSNEW.NET].url
119 Bytes
13. Day 15 Exam/[FCSNEW.NET].url
119 Bytes
14. Closing words/0. Websites you may like/[FCSNEW.NET].url
119 Bytes
14. Closing words/[FCSNEW.NET].url
119 Bytes
[FCSNEW.NET].url
119 Bytes
随机展示
相关说明
本站不存储任何资源内容,只收集BT种子元数据(例如文件名和文件大小)和磁力链接(BT种子标识符),并提供查询服务,是一个完全合法的搜索引擎系统。 网站不提供种子下载服务,用户可以通过第三方链接或磁力链接获取到相关的种子资源。本站也不对BT种子真实性及合法性负责,请用户注意甄别!