搜索
[FCSNEW.NET] Udemy - Complete Computer Vision Bootcamp With PyTorch & Tensorflow
磁力链接/BT种子名称
[FCSNEW.NET] Udemy - Complete Computer Vision Bootcamp With PyTorch & Tensorflow
磁力链接/BT种子简介
种子哈希:
449197e7d034f02430a0d07504f51628d94d0760
文件大小:
28.27G
已经下载:
8
次
下载速度:
极快
收录时间:
2025-10-14
最近下载:
2025-10-19
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:449197E7D034F02430A0D07504F51628D94D0760
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
让她
女処
2025女友自拍
momdrips
电影
前后cd
尽兴
the client list
玫玫
全裸瑜伽
一个
clarice mp4
各种
学生 直播
莉子老师
利 内射
獸女
纯子
丫丫
fc2+ppv
摇摇
最爱萝
精彩大秀直播
汉化
组
新山
绿妻
早年
一
北美
文件列表
05. computer vision (Open CV With Python)/19. Image Segmentation Using openCV.mp4
690.3 MB
06. PyTorch/16. CNN Training Using a Custom Dataset.mp4
561.3 MB
02. Python Prerequisites/37. Pandas-DataFrame And Series.mp4
558.5 MB
02. Python Prerequisites/36. Numpy In Python.mp4
545.7 MB
02. Python Prerequisites/38. Data Manipulation With Pandas And Numpy.mp4
468.7 MB
05. computer vision (Open CV With Python)/20. Haar Cascade for face detection.mp4
440.3 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/6. Vanishing Gradient Problem and Sigmoid.mp4
418.6 MB
11. Image Segmentation/7. Implementing Custom Unet Training.mp4
415.2 MB
02. Python Prerequisites/12. Sets In Python.mp4
412.7 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/3. ANN intuition and Working.mov.mp4
405.2 MB
02. Python Prerequisites/9. Loops In Python.mp4
395.2 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/4. Back Propogation and Weight Updation.mp4
377.4 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/17. Loss Function Classification Problem.mp4
375.4 MB
06. PyTorch/12. Create Linear Regression model with Pytorch components.mp4
370.6 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/1. Perceptron Intuition.mp4
342.8 MB
11. Image Segmentation/5. Fully Convolutional Networks (FCNs).mp4
340.8 MB
10. Basics of Object Detection/11. Custom Object Detection with YOLOv11.mp4
322.3 MB
02. Python Prerequisites/8. Conditional Statements(if,elif,else).mp4
322.0 MB
06. PyTorch/22. Implementing gradio app inference backend.mp4
321.8 MB
02. Python Prerequisites/13. Dictionaries In Python.mp4
313.3 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/16. Regression Cost Function.mp4
299.6 MB
11. Image Segmentation/8. Mask-RCNN.mp4
288.9 MB
05. computer vision (Open CV With Python)/11. Affine.mp4
288.9 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/32. Convolution Operatuin In CNN.mp4
288.5 MB
05. computer vision (Open CV With Python)/6. image Resizing, Scaling and interpolation.mp4
288.3 MB
02. Python Prerequisites/39. Reading Data From Various Data Source Using Pandas.mp4
285.5 MB
11. Image Segmentation/9. Training Yolov11 Instance Segmentation.mp4
284.1 MB
02. Python Prerequisites/5. Variables In Python.mp4
280.7 MB
06. PyTorch/14. Understanding components of custom data loader in pytorch.mp4
279.8 MB
02. Python Prerequisites/40. Logging Practical Implementation In Python.mp4
266.5 MB
06. PyTorch/15. Defining custom Image Dataset loader and usage.mp4
260.5 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/8. Sigmoid Activation Function part -2.mp4
246.2 MB
10. Basics of Object Detection/12. Custom Object Detection with Detectron2.mp4
244.7 MB
03. Introduction To Deep Learning/2. Why Deep Learning is Becoming Popular.mp4
239.5 MB
02. Python Prerequisites/16. More Coding Examples With Functions.mp4
235.1 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/5. Chain Rule Of Derivatives.mp4
234.5 MB
02. Python Prerequisites/4. Python Basics- Syntax and Semantics.mp4
231.8 MB
06. PyTorch/7. Tensor Manuplation.mp4
225.0 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/28. Dropout Layers.mp4
223.9 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/22. SGD with Momentum.mp4
221.7 MB
10. Basics of Object Detection/2. Object Detection Metrics.mp4
218.2 MB
06. PyTorch/11. Understanding Pytorch neural network components.mp4
216.9 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/19. Gradient Descent Optimizers.mp4
216.8 MB
02. Python Prerequisites/24. Exception Handling.mp4
214.2 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/27. Weight Initialisation Techniques.mp4
211.3 MB
05. computer vision (Open CV With Python)/4. Exploring Color Space.mp4
208.9 MB
07. Deep Dive Visualizing CNNs/1. Image Understanding with CNNs vs ANNs.mp4
208.4 MB
05. computer vision (Open CV With Python)/18. Contours.mp4
206.3 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/13. Softmax for Multiclass Classification.mp4
203.9 MB
02. Python Prerequisites/28. Encapsulation In OOPS.mp4
196.1 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/10. Relu Activation Function.mp4
193.4 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/35. Max, Min and Average Pooling.mp4
191.2 MB
02. Python Prerequisites/25. Classes And Objects In Python.mp4
187.9 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/21. Mini Batch With SGD.mp4
187.2 MB
02. Python Prerequisites/15. Getting Started With Functions.mp4
185.8 MB
10. Basics of Object Detection/4. Getting started with YOLO.mp4
185.7 MB
02. Python Prerequisites/35. Function Copy,Closures And Decorators.mp4
185.3 MB
05. computer vision (Open CV With Python)/12. Image FIlters.mp4
185.2 MB
05. computer vision (Open CV With Python)/14. Edge Detection Using Sobel, Canny & Laplacian.mp4
182.1 MB
11. Image Segmentation/1. Introduction to Image Segmentation.mp4
181.6 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/26. Exploding Gradient Problem.mp4
177.9 MB
02. Python Prerequisites/14. Tuples In Python.mp4
176.9 MB
02. Python Prerequisites/7. Operators In Python.mp4
175.8 MB
06. PyTorch/13. Multi Class classification with pytorch using custom neural networks.mp4
173.2 MB
02. Python Prerequisites/26. Inheritance In OOPS.mp4
169.5 MB
02. Python Prerequisites/27. Polymorphism In OOPS.mp4
165.4 MB
02. Python Prerequisites/2. Anaconda Installation.mp4
163.8 MB
05. computer vision (Open CV With Python)/3. Working with the video Files.mp4
163.0 MB
05. computer vision (Open CV With Python)/16. Histogram Equalization.mp4
162.5 MB
05. computer vision (Open CV With Python)/5. Color Thresholding.mp4
158.9 MB
10. Basics of Object Detection/1. What is Object Detection.mp4
155.9 MB
05. computer vision (Open CV With Python)/7. Flip, Rotate and Crop Images.mp4
154.0 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/29. CNN Introduction.mp4
153.6 MB
03. Introduction To Deep Learning/1. Introduction.mp4
153.5 MB
02. Python Prerequisites/21. Standard Library Overview.mp4
151.5 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/23. Adagard.mp4
151.2 MB
08. Image Classification/4. LeNet with Pytorch.mp4
148.7 MB
02. Python Prerequisites/3. Getting Started With VS Code.mp4
148.6 MB
06. PyTorch/10. Stack Operation.mp4
147.3 MB
10. Basics of Object Detection/10. FASTER RCNN with Pytorch Implementation.mp4
147.0 MB
08. Image Classification/17. ResNet Architecture.mp4
146.9 MB
02. Python Prerequisites/42. Logging With a Real World Examples.mp4
144.3 MB
10. Basics of Object Detection/5. Getting started with Detectron2.mp4
143.8 MB
07. Deep Dive Visualizing CNNs/2. CNN Explainer.mp4
143.4 MB
02. Python Prerequisites/32. Custom Exception Handling.mp4
142.8 MB
02. Python Prerequisites/22. File Operation In Python.mp4
142.5 MB
02. Python Prerequisites/20. Import Modules And Package In Python.mp4
142.0 MB
08. Image Classification/6. AlexNet with Keras.mp4
141.9 MB
06. PyTorch/19. Tools to create interactive demos.mp4
141.7 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/36. Flattening and Fully Connected Layers.mp4
141.3 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/34. Operation Of CNN Vs ANN.mp4
139.6 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/30. Human Brain V CNN.mp4
137.3 MB
10. Basics of Object Detection/9. FASTER RCNN.mp4
135.9 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/20. SGD.mp4
135.3 MB
02. Python Prerequisites/6. Basic Datatypes In Python.mp4
132.8 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/31. All you need to know about Images.mp4
127.9 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/2. Adv and Diadvantaes of Perceptron.mp4
127.5 MB
07. Deep Dive Visualizing CNNs/5. Building Your Own Filters.mp4
122.3 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/7. Sigmoid Activation Function.mp4
122.0 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/15. Loss Function Vs Cost Function.mp4
121.8 MB
07. Deep Dive Visualizing CNNs/4. CNN Filters.mp4
120.7 MB
11. Image Segmentation/6. UNet.mp4
118.9 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/25. Adam Optimiser.mp4
118.9 MB
09. Data Augmentation/2. Data Augmentation with Albumentations.mp4
118.4 MB
05. computer vision (Open CV With Python)/17. CLAHE.mp4
116.7 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/24. RMSPROP.mp4
115.0 MB
06. PyTorch/6. Tensor data types.mp4
113.6 MB
08. Image Classification/20. Resnet Transfer Learning.mp4
113.1 MB
06. PyTorch/1. Introduction PyTorch.mp4
112.1 MB
06. PyTorch/3. indexing Tensors.mp4
110.8 MB
08. Image Classification/7. AlexNet with Pytorch.mp4
110.5 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/33. Padding In CNN.mp4
110.0 MB
08. Image Classification/12. VGG Transfer Learning.mp4
109.0 MB
08. Image Classification/13. Inception Architecture.mp4
107.9 MB
08. Image Classification/16. Inception Transfer Learning.mp4
107.7 MB
11. Image Segmentation/10. Testing Yolov11 Instance Segmentation.mp4
107.2 MB
05. computer vision (Open CV With Python)/15. Calculating and Plotting Histogram.mp4
107.1 MB
06. PyTorch/4. Using Random Numbers to create noise image.mp4
104.8 MB
06. PyTorch/9. View and Reshape Operation.mp4
102.8 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/9. Tanh Activation Function.mp4
102.7 MB
07. Deep Dive Visualizing CNNs/7. CNN Parameter Calculations.mp4
102.4 MB
05. computer vision (Open CV With Python)/13. Applying Blur filters Average, Gaussian, Median.mp4
101.9 MB
08. Image Classification/8. VGG Architecture.mp4
101.4 MB
06. PyTorch/2. Introduction to Tensors.mp4
101.1 MB
07. Deep Dive Visualizing CNNs/3. Visualization with Tensorspace.mp4
97.0 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/14. Which Activation Function To Apply When.mp4
96.2 MB
05. computer vision (Open CV With Python)/9. Drawing lines and shapes using opencv.mp4
94.6 MB
11. Image Segmentation/3. UpsamplingTransposed Convolution.mp4
93.8 MB
10. Basics of Object Detection/6. Object Detection Architectures.mp4
93.3 MB
07. Deep Dive Visualizing CNNs/8. Receptive Fields.mp4
93.2 MB
11. Image Segmentation/4. Segmentation Loss Functions.mp4
92.8 MB
02. Python Prerequisites/41. Logging With Multiple Loggers.mp4
92.7 MB
02. Python Prerequisites/34. Generators In Python.mp4
91.2 MB
05. computer vision (Open CV With Python)/2. Reading and Writing Images.mp4
89.3 MB
08. Image Classification/3. LeNet with Keras.mp4
89.1 MB
06. PyTorch/17. Understanding Components of an Application.mp4
89.1 MB
08. Image Classification/20. Fruits dataset.zip
89.0 MB
01. Introduction/1. Welcome to the Course.mp4
87.4 MB
11. Image Segmentation/2. Downsampling.mp4
87.3 MB
02. Python Prerequisites/18. Map Functions In Python.mp4
86.4 MB
02. Python Prerequisites/11. Preactical Exmaples Of List.mp4
86.2 MB
07. Deep Dive Visualizing CNNs/6. Feature Map Size Calculation.mp4
85.3 MB
09. Data Augmentation/1. What is Data Augmentation.mp4
85.2 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/11. Leaky Relu and Parametric Relu.mp4
83.1 MB
06. PyTorch/8. Matrix Aggregation.mp4
83.1 MB
10. Basics of Object Detection/8. FAST RCNN.mp4
82.8 MB
08. Image Classification/1. What is Image Classification.mp4
82.4 MB
02. Python Prerequisites/31. Operator Overloading In Python.mp4
81.2 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/37. CNN Example with RGB.mp4
80.7 MB
10. Basics of Object Detection/7. RCNN.mp4
80.4 MB
02. Python Prerequisites/23. Working With File Paths.mp4
77.4 MB
06. PyTorch/24. Deploying gradio app on hugging face space.mp4
76.9 MB
02. Python Prerequisites/29. Abstraction In OOPS.mp4
75.7 MB
06. PyTorch/20. Hosting platform.mp4
74.0 MB
02. Python Prerequisites/19. Filter Function In Python.mp4
73.8 MB
02. Python Prerequisites/10. List and List Comprehension In Python.mp4
73.2 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/12. ELU Activation Function.mp4
72.4 MB
02. Python Prerequisites/30. Magic Methods In Python.mp4
71.9 MB
02. Python Prerequisites/17. Python Lambda Functions.mp4
71.5 MB
05. computer vision (Open CV With Python)/10. Adding Text to Image.mp4
70.8 MB
08. Image Classification/5. AlexNet Architecture.mp4
70.6 MB
08. Image Classification/10. VGG Pretrained Keras.mp4
68.8 MB
08. Image Classification/2. LeNet Architecture.mp4
68.7 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/18. Which Loss Function To Use When.mp4
65.1 MB
09. Data Augmentation/3. Data Augmentation with Imgaug.mp4
61.4 MB
06. PyTorch/23. Setting hugging face space.mp4
61.3 MB
06. PyTorch/21. Setting up gradio app in local space.mp4
57.2 MB
10. Basics of Object Detection/3. What are Bounding Boxes.mp4
53.0 MB
02. Python Prerequisites/33. Iterators In Python.mp4
49.8 MB
05. computer vision (Open CV With Python)/1. Introduction to OpenCV.mp4
49.2 MB
08. Image Classification/14. Inception Pretrained Keras.mp4
48.0 MB
08. Image Classification/11. VGG Pretrained Pytorch.mp4
44.5 MB
06. PyTorch/5. Tensors of Zero's and One's.mp4
37.1 MB
08. Image Classification/15. Inception Pretrained Pytorch.mp4
37.0 MB
08. Image Classification/9. Transfer Learning vs Pretrained.mp4
35.6 MB
10. Basics of Object Detection/5. Getting_Started_with_Detectron2_Object_Detection.ipynb
35.0 MB
06. PyTorch/22. 022. Implementing gradio app inference backend(gradio-app-1-chkpt-22).zip
32.8 MB
06. PyTorch/16. 016-CNN-Training-Using-a-Custom-Dataset.zip
32.8 MB
06. PyTorch/18. What is Deployment.mp4
31.6 MB
08. Image Classification/19. Resnet Pretrained Pytorch.mp4
27.3 MB
08. Image Classification/18. Resnet Pretrained Keras.mp4
23.0 MB
05. computer vision (Open CV With Python)/8. Understanding Coordinate system in openCV.mp4
22.9 MB
05. computer vision (Open CV With Python)/3. 003. Working_with_video_files.zip
9.2 MB
07. Deep Dive Visualizing CNNs/1. Understanding of images with Visualization.pdf
8.8 MB
05. computer vision (Open CV With Python)/2. 002. Reading_and_writing_images.zip
6.9 MB
05. computer vision (Open CV With Python)/11. 011. Affine and Perspective Transformation.zip
5.4 MB
10. Basics of Object Detection/12. Custom_Dataset_Training_with_Detectron2.ipynb
5.2 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/29. 30-38 CNN.pdf
5.2 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/6. 8-15 Activation functions.pdf
4.9 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/19. 20-26 Optimizers.pdf
4.4 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/3. 5-8 Deep LEarning.pdf
4.4 MB
07. Deep Dive Visualizing CNNs/5. Building Your Custom Filters.ipynb
4.3 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/15. 16-19 Loss Functions.pdf
3.6 MB
03. Introduction To Deep Learning/1. 1-4 Deep learnng.pdf
3.3 MB
05. computer vision (Open CV With Python)/20. 020. Haar Cascade for face detection (1).zip
3.2 MB
05. computer vision (Open CV With Python)/19. 019. Image Segmentation Using openCV (1).zip
3.1 MB
05. computer vision (Open CV With Python)/7. 007. Flip, Rotate and Crop Images.zip
2.4 MB
11. Image Segmentation/8. 008-Mask-RCNN.pdf
2.3 MB
05. computer vision (Open CV With Python)/6. 006. Image Resizing, Scaling and interpolation.zip
2.2 MB
09. Data Augmentation/2. Data_Augmenation_with_Albumentations.ipynb
2.1 MB
11. Image Segmentation/1. 001-Introduction to image segmentation.pdf
2.1 MB
10. Basics of Object Detection/1. What is Object Detection.pdf
2.0 MB
05. computer vision (Open CV With Python)/11. 011. Affine and Perspective Transformation.pdf
2.0 MB
05. computer vision (Open CV With Python)/16. 016. Histogram Equalization.zip
2.0 MB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/27. 27-8 Weight initialization Techniques.pdf
2.0 MB
05. computer vision (Open CV With Python)/4. 004. Exploring_Color_Space (1).zip
1.9 MB
08. Image Classification/8. VGG CNN Architecture .pdf
1.9 MB
10. Basics of Object Detection/9. Faster RCNN.pdf
1.9 MB
05. computer vision (Open CV With Python)/6. 006. Image Resizing, Scaling and interpolation (1).zip
1.8 MB
05. computer vision (Open CV With Python)/17. 017. CLAHE.zip
1.8 MB
05. computer vision (Open CV With Python)/14. 014. Edge Detection Using Sobel, Canny & Laplacian_pdf.zip
1.7 MB
11. Image Segmentation/5. 005-Fully Convolutional Networks (FCNs).pdf
1.7 MB
05. computer vision (Open CV With Python)/19. 019. Image Segmentation Using openCV.zip
1.6 MB
08. Image Classification/17. Resnet Architecture .pdf
1.5 MB
10. Basics of Object Detection/7. RCNN.pdf
1.5 MB
05. computer vision (Open CV With Python)/12. 012. Image FIlters (1).zip
1.5 MB
08. Image Classification/13. Googlenet CNN Architecture.pdf
1.5 MB
08. Image Classification/2. LeNet-5 CNN Architecture .pdf
1.4 MB
10. Basics of Object Detection/8. Fast RCNN.pdf
1.3 MB
06. PyTorch/20. 020. Hosting platform.pdf
1.3 MB
10. Basics of Object Detection/10. Faster_RCNN_with_Pytorch.ipynb
1.2 MB
10. Basics of Object Detection/3. Bounding Boxes.pdf
1.2 MB
08. Image Classification/1. What is Image Classification.pdf
1.2 MB
11. Image Segmentation/4. 004-Segmentation Loss Functions.pdf
1.1 MB
05. computer vision (Open CV With Python)/14. 014. Edge Detection Using Sobel, Canny & Laplacian.zip
1.1 MB
10. Basics of Object Detection/11. Custom_Dataset_Training_with_YOLOv11.ipynb
1.1 MB
05. computer vision (Open CV With Python)/5. 005. Color Thresholding (1).zip
1.1 MB
11. Image Segmentation/6. 006-Unet.pdf
1.0 MB
05. computer vision (Open CV With Python)/16. 016. Histogram Equalization (1).zip
1.0 MB
05. computer vision (Open CV With Python)/3. 003. Working_with_video_files (1).zip
1.0 MB
06. PyTorch/17. 017. Understanding Components of an Application.pdf
997.2 kB
10. Basics of Object Detection/6. Object Detection Architectures .pdf
978.0 kB
06. PyTorch/9. 009-View-and-reshape.zip
965.9 kB
06. PyTorch/9. 009-View-and-reshape.pdf
965.7 kB
05. computer vision (Open CV With Python)/17. 017. CLAHE.pdf
962.8 kB
11. Image Segmentation/9. 009-Training Yolov11 Instance Segmentation.pdf
961.6 kB
08. Image Classification/5. AlexNet CNN Architecture.pdf
928.0 kB
06. PyTorch/15. 015. Defining custom Image Dataset loader and usage.pdf
919.4 kB
06. PyTorch/16. 016. CNN Training Using a Custom Dataset.pdf
918.9 kB
07. Deep Dive Visualizing CNNs/7. CNN Parameters Calculation.pdf
914.9 kB
11. Image Segmentation/3. 003-Transposed convolution.pdf
912.9 kB
06. PyTorch/19. 019. Tools to create interactive demos.pdf
908.5 kB
05. computer vision (Open CV With Python)/7. 007. Flip, Rotate and Crop Images (1).zip
906.0 kB
09. Data Augmentation/3. Data_Augmentation_with_IMGAUG.ipynb
895.9 kB
05. computer vision (Open CV With Python)/5. 005. Color Thresholding.zip
887.2 kB
06. PyTorch/11. 011-Understanding-Pytorch-neural-network-components.pdf
883.0 kB
07. Deep Dive Visualizing CNNs/8. Receptive Fields in CNN.pdf
869.1 kB
06. PyTorch/10. 010-Stack-Operation.zip
867.2 kB
06. PyTorch/10. 010-Stack-Operation.pdf
867.0 kB
06. PyTorch/18. 018. What is Deployment.pdf
863.9 kB
11. Image Segmentation/2. 002-Downsampling.pdf
845.6 kB
05. computer vision (Open CV With Python)/18. 018. Contours (1).zip
837.4 kB
05. computer vision (Open CV With Python)/4. 004. Exploring_Color_Space.zip
833.1 kB
08. Image Classification/20. Resnet Transfer Learning Pytorch.ipynb
805.9 kB
05. computer vision (Open CV With Python)/8. 008. Understanding Coordinate system in openCV.pdf
798.7 kB
08. Image Classification/16. InceptionV3_Transfer_Learning_Keras_CIFAR10.ipynb
778.9 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/28. 29-Dropout Layer.pdf
778.4 kB
06. PyTorch/4. 004-Using Random Numbers to create noise image .zip
778.0 kB
08. Image Classification/14. Inception Pretrained.ipynb
772.4 kB
05. computer vision (Open CV With Python)/13. 013. Applying Blur filters Average, Gaussian, Median.zip
695.9 kB
08. Image Classification/18. Resnet Pretrained Keras.ipynb
670.6 kB
09. Data Augmentation/1. Data Augmentation(DA).pdf
635.7 kB
05. computer vision (Open CV With Python)/13. 013. Applying Blur filters Average, Gaussian, Median (1).zip
599.1 kB
05. computer vision (Open CV With Python)/12. 012. Image FIlters.zip
584.1 kB
05. computer vision (Open CV With Python)/18. 018. Contours.zip
572.2 kB
02. Python Prerequisites/1. Complete-Python-Bootcamp-main.zip
567.5 kB
02. Python Prerequisites/3. Complete-Python-Bootcamp-main.zip
567.5 kB
07. Deep Dive Visualizing CNNs/6. Feature Map Size Calculation .pdf
563.5 kB
05. computer vision (Open CV With Python)/15. 015. Calculating and Plotting Histograms (1).zip
483.4 kB
05. computer vision (Open CV With Python)/2. 002. Reading_and_writing_images (1).zip
482.9 kB
08. Image Classification/12. VGG Transfer Learning Pytorch.ipynb
450.9 kB
08. Image Classification/19. Resnet Pretrained Pytorch.ipynb
432.3 kB
11. Image Segmentation/8. 008-Mask-RCNN.zip
423.0 kB
05. computer vision (Open CV With Python)/9. 009. Drawing lines and shapes using opencv.zip
418.7 kB
08. Image Classification/15. Inception Pytorch Pretrained.ipynb
418.3 kB
07. Deep Dive Visualizing CNNs/4. CNN Filters.pdf
416.7 kB
08. Image Classification/10. VGG Keras Pretrained Model.ipynb
401.4 kB
08. Image Classification/9. Transfer Learning vs Pretrained .pdf
395.2 kB
08. Image Classification/11. VGG Pretrained Pytorch.ipynb
373.0 kB
05. computer vision (Open CV With Python)/15. 015. Calculating and Plotting Histograms.zip
312.0 kB
06. PyTorch/15. 015-Defining-custom-Image-Dataset-loader-and-usage.zip
159.4 kB
05. computer vision (Open CV With Python)/19. Image Segmentation Using openCV.vtt
125.8 kB
11. Image Segmentation/9. 009-Training Yolov11 Instance Segmentation.zip
122.3 kB
08. Image Classification/6. AlexNet _ Keras.ipynb
110.7 kB
06. PyTorch/16. CNN Training Using a Custom Dataset.vtt
106.9 kB
05. computer vision (Open CV With Python)/9. 009. Drawing lines and shapes using opencv (1).zip
92.5 kB
08. Image Classification/4. LeNet5 Pytorch.ipynb
91.4 kB
05. computer vision (Open CV With Python)/20. Haar Cascade for face detection.vtt
71.7 kB
08. Image Classification/7. AlexNet Pytorch.ipynb
70.1 kB
06. PyTorch/12. Create Linear Regression model with Pytorch components.vtt
65.7 kB
11. Image Segmentation/7. Implementing Custom Unet Training.vtt
64.4 kB
11. Image Segmentation/5. Fully Convolutional Networks (FCNs).vtt
61.1 kB
05. computer vision (Open CV With Python)/11. Affine.vtt
56.8 kB
06. PyTorch/7. Tensor Manuplation.vtt
56.4 kB
02. Python Prerequisites/10. List and List Comprehension In Python.vtt
53.8 kB
07. Deep Dive Visualizing CNNs/5. Build Your Custom Filters.pdf
53.1 kB
02. Python Prerequisites/13. Dictionaries In Python.vtt
52.0 kB
05. computer vision (Open CV With Python)/10. 010. Adding Text to images.zip
49.6 kB
06. PyTorch/14. Understanding components of custom data loader in pytorch.vtt
49.2 kB
06. PyTorch/11. Understanding Pytorch neural network components.vtt
48.6 kB
05. computer vision (Open CV With Python)/18. Contours.vtt
47.2 kB
06. PyTorch/15. Defining custom Image Dataset loader and usage.vtt
45.2 kB
02. Python Prerequisites/37. Pandas-DataFrame And Series.vtt
44.0 kB
06. PyTorch/22. Implementing gradio app inference backend.vtt
43.8 kB
02. Python Prerequisites/36. Numpy In Python.vtt
43.4 kB
11. Image Segmentation/9. Training Yolov11 Instance Segmentation.vtt
43.4 kB
11. Image Segmentation/8. Mask-RCNN.vtt
42.9 kB
02. Python Prerequisites/9. Loops In Python.vtt
42.5 kB
02. Python Prerequisites/16. More Coding Examples With Functions.vtt
41.4 kB
05. computer vision (Open CV With Python)/6. image Resizing, Scaling and interpolation.vtt
39.8 kB
05. computer vision (Open CV With Python)/12. Image FIlters.vtt
39.3 kB
02. Python Prerequisites/38. Data Manipulation With Pandas And Numpy.vtt
38.8 kB
02. Python Prerequisites/24. Exception Handling.vtt
38.3 kB
05. computer vision (Open CV With Python)/4. Exploring Color Space.vtt
38.1 kB
05. computer vision (Open CV With Python)/14. Edge Detection Using Sobel, Canny & Laplacian.vtt
36.9 kB
02. Python Prerequisites/15. Getting Started With Functions.vtt
35.3 kB
02. Python Prerequisites/25. Classes And Objects In Python.vtt
34.5 kB
02. Python Prerequisites/14. Tuples In Python.vtt
33.9 kB
02. Python Prerequisites/28. Encapsulation In OOPS.vtt
33.9 kB
06. PyTorch/13. Multi Class classification with pytorch using custom neural networks.vtt
33.8 kB
02. Python Prerequisites/35. Function Copy,Closures And Decorators.vtt
33.8 kB
10. Basics of Object Detection/11. Custom Object Detection with YOLOv11.vtt
33.5 kB
10. Basics of Object Detection/2. Object Detection Metrics.vtt
33.2 kB
02. Python Prerequisites/12. Sets In Python.vtt
32.9 kB
06. PyTorch/10. Stack Operation.vtt
32.5 kB
11. Image Segmentation/1. Introduction to Image Segmentation.vtt
31.5 kB
11. Image Segmentation/10. 010-Testing Yolov11 Instance Segmentation.zip
31.2 kB
05. computer vision (Open CV With Python)/5. Color Thresholding.vtt
31.1 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/6. Vanishing Gradient Problem and Sigmoid.vtt
30.9 kB
10. Basics of Object Detection/9. FASTER RCNN.vtt
30.4 kB
02. Python Prerequisites/43.1 Python CodeQuiz.html
30.2 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/3. ANN intuition and Working.mov.vtt
29.7 kB
08. Image Classification/4. LeNet with Pytorch.vtt
29.7 kB
02. Python Prerequisites/8. Conditional Statements(if,elif,else).vtt
29.7 kB
08. Image Classification/17. ResNet Architecture.vtt
29.4 kB
05. computer vision (Open CV With Python)/16. Histogram Equalization.vtt
29.4 kB
02. Python Prerequisites/5. Variables In Python.vtt
29.2 kB
05. computer vision (Open CV With Python)/3. Working with the video Files.vtt
29.1 kB
02. Python Prerequisites/4. Python Basics- Syntax and Semantics.vtt
29.0 kB
02. Python Prerequisites/26. Inheritance In OOPS.vtt
28.7 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/17. Loss Function Classification Problem.vtt
28.7 kB
06. PyTorch/14. 014-Understanding-components-of-custom-data-loader-in-pytorch.zip
28.2 kB
05. computer vision (Open CV With Python)/9. Drawing lines and shapes using opencv.vtt
27.8 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/4. Back Propogation and Weight Updation.vtt
27.7 kB
02. Python Prerequisites/27. Polymorphism In OOPS.vtt
26.8 kB
02. Python Prerequisites/21. Standard Library Overview.vtt
26.6 kB
02. Python Prerequisites/20. Import Modules And Package In Python.vtt
26.5 kB
06. PyTorch/3. indexing Tensors.vtt
26.1 kB
08. Image Classification/3. LeNet5 with MNIST Keras.ipynb
26.1 kB
02. Python Prerequisites/22. File Operation In Python.vtt
25.9 kB
05. computer vision (Open CV With Python)/7. Flip, Rotate and Crop Images.vtt
25.9 kB
06. PyTorch/19. Tools to create interactive demos.vtt
25.9 kB
07. Deep Dive Visualizing CNNs/1. Image Understanding with CNNs vs ANNs.vtt
25.4 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/1. Perceptron Intuition.vtt
25.3 kB
06. PyTorch/1. Introduction PyTorch.vtt
25.0 kB
05. computer vision (Open CV With Python)/15. Calculating and Plotting Histogram.vtt
24.6 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/32. Convolution Operatuin In CNN.vtt
24.0 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/16. Regression Cost Function.vtt
23.5 kB
08. Image Classification/6. AlexNet with Keras.vtt
23.5 kB
02. Python Prerequisites/7. Operators In Python.vtt
23.5 kB
10. Basics of Object Detection/1. What is Object Detection.vtt
23.3 kB
08. Image Classification/8. VGG Architecture.vtt
22.9 kB
08. Image Classification/13. Inception Architecture.vtt
22.7 kB
02. Python Prerequisites/39. Reading Data From Various Data Source Using Pandas.vtt
22.7 kB
02. Python Prerequisites/40. Logging Practical Implementation In Python.vtt
22.6 kB
10. Basics of Object Detection/12. Custom Object Detection with Detectron2.vtt
22.4 kB
06. PyTorch/9. View and Reshape Operation.vtt
22.3 kB
07. Deep Dive Visualizing CNNs/4. CNN Filters.vtt
22.3 kB
10. Basics of Object Detection/10. FASTER RCNN with Pytorch Implementation.vtt
22.2 kB
06. PyTorch/6. Tensor data types.vtt
21.8 kB
05. computer vision (Open CV With Python)/17. CLAHE.vtt
21.7 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/8. Sigmoid Activation Function part -2.vtt
21.5 kB
10. Basics of Object Detection/6. Object Detection Architectures.vtt
21.4 kB
07. Deep Dive Visualizing CNNs/8. Receptive Fields.vtt
21.3 kB
11. Image Segmentation/4. Segmentation Loss Functions.vtt
21.3 kB
11. Image Segmentation/6. UNet.vtt
21.3 kB
06. PyTorch/4. Using Random Numbers to create noise image.vtt
20.9 kB
06. PyTorch/2. Introduction to Tensors.vtt
20.6 kB
05. computer vision (Open CV With Python)/13. Applying Blur filters Average, Gaussian, Median.vtt
20.1 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/28. Dropout Layers.vtt
19.3 kB
08. Image Classification/7. AlexNet with Pytorch.vtt
19.1 kB
06. PyTorch/8. Matrix Aggregation.vtt
19.1 kB
11. Image Segmentation/10. Testing Yolov11 Instance Segmentation.vtt
19.0 kB
11. Image Segmentation/2. Downsampling.vtt
18.9 kB
11. Image Segmentation/3. UpsamplingTransposed Convolution.vtt
18.7 kB
05. computer vision (Open CV With Python)/10. Adding Text to Image.vtt
18.4 kB
05. computer vision (Open CV With Python)/2. Reading and Writing Images.vtt
18.3 kB
10. Basics of Object Detection/7. RCNN.vtt
18.1 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/22. SGD with Momentum.vtt
18.1 kB
07. Deep Dive Visualizing CNNs/5. Building Your Own Filters.vtt
17.9 kB
08. Image Classification/12. VGG Transfer Learning.vtt
17.9 kB
03. Introduction To Deep Learning/2. Why Deep Learning is Becoming Popular.vtt
17.8 kB
02. Python Prerequisites/2. Anaconda Installation.vtt
17.8 kB
08. Image Classification/20. Resnet Transfer Learning.vtt
17.8 kB
10. Basics of Object Detection/8. FAST RCNN.vtt
17.7 kB
10. Basics of Object Detection/4. Getting started with YOLO.vtt
17.5 kB
07. Deep Dive Visualizing CNNs/2. CNN Explainer.vtt
17.5 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/19. Gradient Descent Optimizers.vtt
17.2 kB
02. Python Prerequisites/34. Generators In Python.vtt
17.1 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/27. Weight Initialisation Techniques.vtt
16.8 kB
02. Python Prerequisites/18. Map Functions In Python.vtt
16.7 kB
06. PyTorch/17. Understanding Components of an Application.vtt
16.4 kB
08. Image Classification/5. AlexNet Architecture.vtt
16.4 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/13. Softmax for Multiclass Classification.vtt
16.3 kB
02. Python Prerequisites/3. Getting Started With VS Code.vtt
16.3 kB
07. Deep Dive Visualizing CNNs/6. Feature Map Size Calculation.vtt
16.2 kB
08. Image Classification/1. What is Image Classification.vtt
16.2 kB
07. Deep Dive Visualizing CNNs/7. CNN Parameter Calculations.vtt
16.1 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/5. Chain Rule Of Derivatives.vtt
16.0 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/35. Max, Min and Average Pooling.vtt
15.8 kB
08. Image Classification/16. Inception Transfer Learning.vtt
15.6 kB
08. Image Classification/2. LeNet Architecture.vtt
15.5 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/26. Exploding Gradient Problem.vtt
15.5 kB
02. Python Prerequisites/17. Python Lambda Functions.vtt
15.4 kB
02. Python Prerequisites/6. Basic Datatypes In Python.vtt
15.3 kB
09. Data Augmentation/2. Data Augmentation with Albumentations.vtt
15.3 kB
07. Deep Dive Visualizing CNNs/7. CNN Parameter Calculation.ipynb
15.3 kB
02. Python Prerequisites/11. Preactical Exmaples Of List.vtt
15.1 kB
06. PyTorch/20. Hosting platform.vtt
15.1 kB
10. Basics of Object Detection/5. Getting started with Detectron2.vtt
14.9 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/21. Mini Batch With SGD.vtt
14.8 kB
08. Image Classification/3. LeNet with Keras.vtt
14.6 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/10. Relu Activation Function.vtt
14.3 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/7. Sigmoid Activation Function.vtt
13.4 kB
02. Python Prerequisites/29. Abstraction In OOPS.vtt
13.4 kB
02. Python Prerequisites/19. Filter Function In Python.vtt
13.3 kB
05. computer vision (Open CV With Python)/1. Introduction to OpenCV.vtt
13.2 kB
10. Basics of Object Detection/4. Getting_Started_with_Yolov11.ipynb
13.2 kB
02. Python Prerequisites/31. Operator Overloading In Python.vtt
12.8 kB
09. Data Augmentation/1. What is Data Augmentation.vtt
12.8 kB
06. PyTorch/24. Deploying gradio app on hugging face space.vtt
12.4 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/34. Operation Of CNN Vs ANN.vtt
12.3 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/36. Flattening and Fully Connected Layers.vtt
12.3 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/29. CNN Introduction.vtt
12.2 kB
02. Python Prerequisites/30. Magic Methods In Python.vtt
12.2 kB
02. Python Prerequisites/42. Logging With a Real World Examples.vtt
12.1 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/20. SGD.vtt
12.0 kB
02. Python Prerequisites/23. Working With File Paths.vtt
11.7 kB
06. PyTorch/12. 012-Create Linear Regression model with Pytorch components.zip
11.5 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/23. Adagard.vtt
11.4 kB
06. PyTorch/23. Setting hugging face space.vtt
11.2 kB
03. Introduction To Deep Learning/1. Introduction.vtt
11.1 kB
08. Image Classification/9. Transfer Learning vs Pretrained.vtt
10.9 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/30. Human Brain V CNN.vtt
10.9 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/9. Tanh Activation Function.vtt
10.8 kB
02. Python Prerequisites/32. Custom Exception Handling.vtt
10.6 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/2. Adv and Diadvantaes of Perceptron.vtt
10.5 kB
01. Introduction/1. Welcome to the Course.vtt
10.4 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/15. Loss Function Vs Cost Function.vtt
10.3 kB
10. Basics of Object Detection/3. What are Bounding Boxes.vtt
10.0 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/31. All you need to know about Images.vtt
9.8 kB
02. Python Prerequisites/33. Iterators In Python.vtt
9.7 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/24. RMSPROP.vtt
9.5 kB
06. PyTorch/21. Setting up gradio app in local space.vtt
9.5 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/25. Adam Optimiser.vtt
9.4 kB
07. Deep Dive Visualizing CNNs/3. Visualization with Tensorspace.vtt
9.3 kB
08. Image Classification/10. VGG Pretrained Keras.vtt
9.0 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/33. Padding In CNN.vtt
8.8 kB
06. PyTorch/5. Tensors of Zero's and One's.vtt
8.8 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/14. Which Activation Function To Apply When.vtt
7.9 kB
09. Data Augmentation/3. Data Augmentation with Imgaug.vtt
7.7 kB
02. Python Prerequisites/41. Logging With Multiple Loggers.vtt
6.7 kB
06. PyTorch/18. What is Deployment.vtt
6.6 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/37. CNN Example with RGB.vtt
6.6 kB
08. Image Classification/14. Inception Pretrained Keras.vtt
6.5 kB
06. PyTorch/5. 005-Tensors of Zero_s and One_s.zip
6.4 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/11. Leaky Relu and Parametric Relu.vtt
6.4 kB
08. Image Classification/11. VGG Pretrained Pytorch.vtt
6.3 kB
05. computer vision (Open CV With Python)/8. Understanding Coordinate system in openCV.vtt
6.2 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/12. ELU Activation Function.vtt
6.1 kB
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/18. Which Loss Function To Use When.vtt
5.8 kB
06. PyTorch/13. 013-Multi-Class-classification-with-pytorch-using-custom-neural-networks.zip
5.8 kB
08. Image Classification/15. Inception Pretrained Pytorch.vtt
5.6 kB
08. Image Classification/19. Resnet Pretrained Pytorch.vtt
4.3 kB
11. Image Segmentation/7. 007_Implementing_custom_Unet_training.zip
4.0 kB
08. Image Classification/18. Resnet Pretrained Keras.vtt
3.6 kB
06. PyTorch/7. 007-Tensor_Manipulation.zip
3.4 kB
11. Image Segmentation/5. 005-Fully Convolutional Networks (FCNs).zip
2.8 kB
06. PyTorch/11. 011-Understanding Pytorch neural network components.zip
2.7 kB
06. PyTorch/3. 003-Indexing-Tensors.zip
2.3 kB
06. PyTorch/2. 002-Introduction to tensors.zip
2.2 kB
06. PyTorch/6. 006-Tensor DataTypes.zip
2.0 kB
06. PyTorch/8. 008-Matrix Aggregation.zip
1.9 kB
05. computer vision (Open CV With Python)/20. 020. Haar Cascade for face detection.zip
1.6 kB
11. Image Segmentation/2. 002-Downsampling.zip
1.4 kB
11. Image Segmentation/3. 003-Transposed convolution.zip
1.3 kB
11. Image Segmentation/4. 004-Segmentation_Loss_Functions.zip
1.2 kB
06. PyTorch/21. 021. Setting up gradio app in local space(gradio-app-1-chkpt-21).zip
778 Bytes
11. Image Segmentation/8. 008-Mask-RCNN-Research-paper-mentioned.txt
262 Bytes
01. Introduction/2. Important Note.html
185 Bytes
0. Websites you may like/[CourseClub.Me].url
122 Bytes
01. Introduction/0. Websites you may like/[CourseClub.Me].url
122 Bytes
01. Introduction/[CourseClub.Me].url
122 Bytes
02. Python Prerequisites/0. Websites you may like/[CourseClub.Me].url
122 Bytes
02. Python Prerequisites/[CourseClub.Me].url
122 Bytes
03. Introduction To Deep Learning/0. Websites you may like/[CourseClub.Me].url
122 Bytes
03. Introduction To Deep Learning/[CourseClub.Me].url
122 Bytes
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/0. Websites you may like/[CourseClub.Me].url
122 Bytes
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/[CourseClub.Me].url
122 Bytes
05. computer vision (Open CV With Python)/0. Websites you may like/[CourseClub.Me].url
122 Bytes
05. computer vision (Open CV With Python)/[CourseClub.Me].url
122 Bytes
06. PyTorch/0. Websites you may like/[CourseClub.Me].url
122 Bytes
06. PyTorch/[CourseClub.Me].url
122 Bytes
07. Deep Dive Visualizing CNNs/0. Websites you may like/[CourseClub.Me].url
122 Bytes
07. Deep Dive Visualizing CNNs/[CourseClub.Me].url
122 Bytes
08. Image Classification/0. Websites you may like/[CourseClub.Me].url
122 Bytes
08. Image Classification/[CourseClub.Me].url
122 Bytes
09. Data Augmentation/0. Websites you may like/[CourseClub.Me].url
122 Bytes
09. Data Augmentation/[CourseClub.Me].url
122 Bytes
10. Basics of Object Detection/0. Websites you may like/[CourseClub.Me].url
122 Bytes
10. Basics of Object Detection/[CourseClub.Me].url
122 Bytes
11. Image Segmentation/0. Websites you may like/[CourseClub.Me].url
122 Bytes
11. Image Segmentation/[CourseClub.Me].url
122 Bytes
[CourseClub.Me].url
122 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. Python Prerequisites/0. Websites you may like/[FCSNEW.NET].url
119 Bytes
02. Python Prerequisites/[FCSNEW.NET].url
119 Bytes
03. Introduction To Deep Learning/0. Websites you may like/[FCSNEW.NET].url
119 Bytes
03. Introduction To Deep Learning/[FCSNEW.NET].url
119 Bytes
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/0. Websites you may like/[FCSNEW.NET].url
119 Bytes
04. Deep Learning-ANN, Optimizers, Loss Functions, Activation Functions,CNN Theory/[FCSNEW.NET].url
119 Bytes
05. computer vision (Open CV With Python)/0. Websites you may like/[FCSNEW.NET].url
119 Bytes
05. computer vision (Open CV With Python)/[FCSNEW.NET].url
119 Bytes
06. PyTorch/0. Websites you may like/[FCSNEW.NET].url
119 Bytes
06. PyTorch/[FCSNEW.NET].url
119 Bytes
07. Deep Dive Visualizing CNNs/0. Websites you may like/[FCSNEW.NET].url
119 Bytes
07. Deep Dive Visualizing CNNs/[FCSNEW.NET].url
119 Bytes
08. Image Classification/0. Websites you may like/[FCSNEW.NET].url
119 Bytes
08. Image Classification/[FCSNEW.NET].url
119 Bytes
09. Data Augmentation/0. Websites you may like/[FCSNEW.NET].url
119 Bytes
09. Data Augmentation/[FCSNEW.NET].url
119 Bytes
10. Basics of Object Detection/0. Websites you may like/[FCSNEW.NET].url
119 Bytes
10. Basics of Object Detection/[FCSNEW.NET].url
119 Bytes
11. Image Segmentation/0. Websites you may like/[FCSNEW.NET].url
119 Bytes
11. Image Segmentation/[FCSNEW.NET].url
119 Bytes
[FCSNEW.NET].url
119 Bytes
02. Python Prerequisites/1. Complete Python Materials.html
87 Bytes
07. Deep Dive Visualizing CNNs/7. Colab-Link.txt
85 Bytes
08. Image Classification/20. Dataset.txt
85 Bytes
09. Data Augmentation/2. Colab-Link.txt
85 Bytes
09. Data Augmentation/3. Colab-Link.txt
85 Bytes
10. Basics of Object Detection/10. Colab-Link.txt
85 Bytes
08. Image Classification/12. Dataset.txt
82 Bytes
08. Image Classification/6. Dataset.txt
82 Bytes
08. Image Classification/7. Dataset.txt
82 Bytes
10. Basics of Object Detection/11. Colab-Link.txt
82 Bytes
10. Basics of Object Detection/12. Colab-Link.txt
82 Bytes
10. Basics of Object Detection/4. Colab-Link.txt
82 Bytes
10. Basics of Object Detection/5. Colab-Link.txt
82 Bytes
11. Image Segmentation/6. 006-Unet-Research-paper-mentioned.txt
66 Bytes
08. Image Classification/2. Paper.txt
60 Bytes
10. Basics of Object Detection/2. OD-Metrics.txt
57 Bytes
11. Image Segmentation/5. 005-Fully Convolutional Networks (FCNs)-Research-paper-mentioned.txt
56 Bytes
07. Deep Dive Visualizing CNNs/3. Tensorspace-Link.txt
50 Bytes
07. Deep Dive Visualizing CNNs/2. CNN-Explainer-Link.txt
41 Bytes
10. Basics of Object Detection/8. Paper-Link.txt
32 Bytes
10. Basics of Object Detection/9. Paper-Link.txt
32 Bytes
10. Basics of Object Detection/7. Paper.txt
31 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!