Edureka - Practical Deep Learning With Python

18 Views | 0 Comments | Posted in: Tutorials
24
March
2025
Edureka - Practical Deep Learning With Python
2.66 GB | 7min 14s | mp4 | 1920X1080 | 16:9
Genre:eLearning |Language:English



Files Included :
FileName :02-course introduction.mp4 | Size: (27.98 MB)
FileName :03-environment configuration.mp4 | Size: (21.81 MB)
FileName :01-machine learning vs deep learning.mp4 | Size: (34.27 MB)
FileName :02-what is deep learning.mp4 | Size: (20.31 MB)
FileName :03-neural networks.mp4 | Size: (42.16 MB)
FileName :04-artificial neural network ann.mp4 | Size: (24.4 MB)
FileName :05-ann types and applications.mp4 | Size: (17.78 MB)
FileName :06-forward propagation.mp4 | Size: (20.61 MB)
FileName :07-perceptron.mp4 | Size: (30.93 MB)
FileName :08-learning rate.mp4 | Size: (29.25 MB)
FileName :09-what is activation function.mp4 | Size: (17.83 MB)
FileName :10-activation function and its types.mp4 | Size: (23.41 MB)
FileName :11-importance of epoch.mp4 | Size: (24.78 MB)
FileName :12-single layer perceptron define sigmoid function.mp4 | Size: (44.01 MB)
FileName :13-single layer perceptron decision boundary.mp4 | Size: (77.15 MB)
FileName :01-limitations of single layered perceptron.mp4 | Size: (11.05 MB)
FileName :02-multi layered perceptron.mp4 | Size: (12.04 MB)
FileName :03-what is backpropagation.mp4 | Size: (10.26 MB)
FileName :04-backpropagation.mp4 | Size: (17 MB)
FileName :05-demonstration building a simple neural network.mp4 | Size: (40.88 MB)
FileName :06-demonstration understanding how backpropagation has worked.mp4 | Size: (40.45 MB)
FileName :07-demonstration handwritten digits classification data preprocessing.mp4 | Size: (41.79 MB)
FileName :08-demonstration handwritten digits classification designing the model.mp4 | Size: (73.21 MB)
FileName :09-demonstration handwritten digits classification optimizing the model.mp4 | Size: (88.77 MB)
FileName :01-summary of deep learning components.mp4 | Size: (36.33 MB)
FileName :01-limitations of mlp.mp4 | Size: (27.91 MB)
FileName :02-mlp limitations resolving the issue with cnn.mp4 | Size: (21.51 MB)
FileName :03-visual cortex and cnn.mp4 | Size: (31.61 MB)
FileName :04-convolutional layer.mp4 | Size: (31.99 MB)
FileName :05-working of convolutional layer.mp4 | Size: (31.99 MB)
FileName :06-demonstration load and preprocess the data.mp4 | Size: (42.04 MB)
FileName :07-demonstration designing the model.mp4 | Size: (52.84 MB)
FileName :08-demonstration building the cnn model.mp4 | Size: (37.97 MB)
FileName :09-demonstration model accuracy.mp4 | Size: (21.45 MB)
FileName :10-demonstration adding more layers.mp4 | Size: (62.39 MB)
FileName :11-demonstration building basic cnn model with new parameters.mp4 | Size: (78.21 MB)
FileName :12-demonstration pre trained model.mp4 | Size: (37.38 MB)
FileName :01-classification and object detection.mp4 | Size: (29.81 MB)
FileName :02-introduction to rcnn.mp4 | Size: (31.51 MB)
FileName :03-r cnn bounding box regression.mp4 | Size: (12.46 MB)
FileName :04-pre trained model.mp4 | Size: (29.04 MB)
FileName :05-fast regional cnn.mp4 | Size: (32.1 MB)
FileName :06-demonstration creating base variables and loading the model.mp4 | Size: (37 MB)
FileName :07-demonstration training the model and visualizing the predictions.mp4 | Size: (53.63 MB)
FileName :08-demonstration svm as a classifier.mp4 | Size: (23.4 MB)
FileName :01-fast rcnn limitations.mp4 | Size: (24.9 MB)
FileName :02-advent of faster r cnn.mp4 | Size: (25.24 MB)
FileName :03-tensorflow hub.mp4 | Size: (20.32 MB)
FileName :04-demonstration object detection with faster rcnn pretrained model setup.mp4 | Size: (74.66 MB)
FileName :05-demonstration object detection with faster rcnn building the model.mp4 | Size: (82.91 MB)
FileName :01-summary of cnn in deep learning.mp4 | Size: (13.32 MB)
FileName :02-summary of faster rcnn.mp4 | Size: (22.48 MB)
FileName :01-rnn fundamentals.mp4 | Size: (20.5 MB)
FileName :02-rnn architecture.mp4 | Size: (22.59 MB)
FileName :03-rnn architecture workflow.mp4 | Size: (28.92 MB)
FileName :04-implementing rnn.mp4 | Size: (28.87 MB)
FileName :05-demonstration rnn dataset preparation.mp4 | Size: (62.04 MB)
FileName :06-demonstration rnn building the model.mp4 | Size: (62.37 MB)
FileName :01-basics of lstm.mp4 | Size: (28.36 MB)
FileName :02-lstm structure.mp4 | Size: (24.24 MB)
FileName :03-forget gate and input gate.mp4 | Size: (20.87 MB)
FileName :04-output gate.mp4 | Size: (14.09 MB)
FileName :05-importance of lstm architecture.mp4 | Size: (23.04 MB)
FileName :06-types of lstm.mp4 | Size: (19.16 MB)
FileName :07-demonstration next word prediction processing the corpus.mp4 | Size: (50.16 MB)
FileName :08-demonstration next word prediction layers.mp4 | Size: (58.92 MB)
FileName :09-demonstration next word prediction model compilation and prediction.mp4 | Size: (96.56 MB)
FileName :01-improving a model.mp4 | Size: (32.93 MB)
FileName :02-model optimization.mp4 | Size: (21.83 MB)
FileName :03-using adam optimizer.mp4 | Size: (31.96 MB)
FileName :04-model compilation.mp4 | Size: (14.37 MB)
FileName :05-model compilation with popular frameworks.mp4 | Size: (27.34 MB)
FileName :06-demonstration model compilation preparing the dataset.mp4 | Size: (55.53 MB)
FileName :07-demonstration building and compiling model.mp4 | Size: (46.26 MB)
FileName :08-demonstration from rmsprop to adam.mp4 | Size: (45.17 MB)
FileName :01-summary of deep learning with rnn and lstm with model optimization.mp4 | Size: (32.88 MB)
FileName :01-course summary for practical deep learning with python.mp4 | Size: (23.39 MB)]
Screenshot



Note:
Only Registed user can add comment, view hidden links and more, please register now
At 0dayhome.net, you'll find a vast collection of educational and informative tutorials to help you enhance your skills and knowledge in various fields. Our tutorials section serves as a valuable resource for beginners and experts alike, providing step-by-step guides, tips, and tricks on subjects such as technology, design, programming, photography, and much more. Whether you're looking to expand your professional repertoire or simply indulge in a new hobby, 0dayhome.net has got you covered. Why choose 0dayhome.net for all your tutorial needs? Here are a few reasons: Diverse Topics: Our platform offers a diverse range of tutorials, catering to various interests and skill levels. From learning the basics of coding to mastering advanced graphic design techniques, our tutorials cover it all. Easy-to-Follow Guides: We understand the importance of clear and concise instructions. Our tutorials are meticulously crafted with simplicity in mind, allowing you to easily grasp complex concepts and apply your newfound knowledge. Comprehensive Content: Whether you're a beginner seeking introductory tutorials or an expert looking for advanced techniques, our comprehensive collection has tutorials for every level of expertise. Take your skills to the next level with 0dayhome.net . Regular Updates: We frequently update our tutorials section, ensuring that you have access to the latest trends and techniques in your chosen field. Stay ahead of the curve and expand your knowledge with our up-to-date content. Community Engagement: Join our thriving community of learners and experts to connect, share insights, and seek guidance. Interact with fellow enthusiasts, exchange ideas, and strengthen your skills through collaboration. Free Access: Yes, you read it right! 0dayhome.net offers free access to its tutorials section. Learn and grow without any financial constraints. So, whether you're an aspiring programmer, a budding designer, or simply curious about exploring new subjects, 0dayhome.net tutorials are your go-to resource. Visit our website today and embark on a journey of continuous learning and improvement.
все шаблоны для dle на сайте шаблоны dle 11.2 скачать