Other
[OneHack Us] Coursera - Practical Deep Learning With Python 2025
Torrent info
Name:[OneHack Us] Coursera - Practical Deep Learning With Python 2025
Infohash: C7BB387E940A369D54E1C25A892B00661CB93B3B
Total Size: 2.66 GB
Magnet: Magnet Download
Seeds: 10
Leechers: 5
Stream: Watch Full Movies @ LimeMovies
Last Updated: 2026-01-18 20:21:37 (Update Now)
Torrent added: 2025-03-12 11:31:30
Torrent Files List
01-Deep_Learning_Components (Size: 2.66 GB) (Files: 94)
01-Deep_Learning_Components
01-Environment_Set_Up_And_Configuration
01-welcome_to_practical_deep_learning_with_python_instructions.html
02-course_introduction.mp4
03-environment_configuration.mp4
04-system_requirements_and_pre_requisite_for_studying_deep_learning_instructions.html
02-Essentials_Of_Deep_Learning
01-machine_learning_vs_deep_learning.mp4
02-what_is_deep_learning.mp4
03-neural_networks.mp4
04-artificial_neural_network_ann.mp4
05-ann_types_and_applications.mp4
06-forward_propagation.mp4
07-perceptron.mp4
08-learning_rate.mp4
09-what_is_activation_function.mp4
10-activation_function_and_its_types.mp4
11-importance_of_epoch.mp4
12-single_layer_perceptron_define_sigmoid_function.mp4
13-single_layer_perceptron_decision_boundary.mp4
14-learning_rate_in_deep_learning_instructions.html
03-Building_Perceptron_And_Its_Working
01-limitations_of_single_layered_perceptron.mp4
02-multi_layered_perceptron.mp4
03-what_is_backpropagation.mp4
04-backpropagation.mp4
05-demonstration_building_a_simple_neural_network.mp4
06-demonstration_understanding_how_backpropagation_has_worked.mp4
07-demonstration_handwritten_digits_classification_data_preprocessing.mp4
08-demonstration_handwritten_digits_classification_designing_the_model.mp4
09-demonstration_handwritten_digits_classification_optimizing_the_model.mp4
10-hebbian_learning_algorithm_instructions.html
04-Module_Wrap_Up_And_Assessment
01-summary_of_deep_learning_components.mp4
02-Deep_Learning_With_Cnn_Rcnn_And_Faster_Rcnn
01-Convolutional_Neural_Network
01-limitations_of_mlp.mp4
01. Support - Onehack.Us.txt
02-mlp_limitations_resolving_the_issue_with_cnn.mp4
03-visual_cortex_and_cnn.mp4
04-convolutional_layer.mp4
05-working_of_convolutional_layer.mp4
06-demonstration_load_and_preprocess_the_data.mp4
07-demonstration_designing_the_model.mp4
08-demonstration_building_the_cnn_model.mp4
09-demonstration_model_accuracy.mp4
10-demonstration_adding_more_layers.mp4
11-demonstration_building_basic_cnn_model_with_new_parameters.mp4
12-demonstration_pre_trained_model.mp4
13-why_convolutions_are_important_instructions.html
02-Tensorflow_Hub_For_Object_Detection_Using_Faster_Rcnn
01-classification_and_object_detection.mp4
02-introduction_to_rcnn.mp4
03-r_cnn_bounding_box_regression.mp4
04-pre_trained_model.mp4
05-fast_regional_cnn.mp4
06-demonstration_creating_base_variables_and_loading_the_model.mp4
07-demonstration_training_the_model_and_visualizing_the_predictions.mp4
08-demonstration_svm_as_a_classifier.mp4
09-svm_classifier_in_object_detection_instructions.html
03-Faster_Rcnn_Recurrent_Convolutional_Neural_Network
01-fast_rcnn_limitations.mp4
02-advent_of_faster_r_cnn.mp4
03-tensorflow_hub.mp4
04-demonstration_object_detection_with_faster_rcnn_pretrained_model_setup.mp4
05-demonstration_object_detection_with_faster_rcnn_building_the_model.mp4
06-faster_r_cnn_architecture_instructions.html
04-Module_Wrap_Up_And_Assessment
01-summary_of_cnn_in_deep_learning.mp4
02-summary_of_faster_rcnn.mp4
03-Deep_Learning_With_Rnn_Lstm_And_Model_Optimization
01-Working_Of_Recurrent_Neural_Networks_Rnn
01-rnn_fundamentals.mp4
02-rnn_architecture.mp4
03-rnn_architecture_workflow.mp4
04-implementing_rnn.mp4
05-demonstration_rnn_dataset_preparation.mp4
06-demonstration_rnn_building_the_model.mp4
07-recurrent_neural_networks_rnns_in_deep_learning_instructions.html
02-Lstm_Architecture
01-basics_of_lstm.mp4
02-lstm_structure.mp4
03-forget_gate_and_input_gate.mp4
04-output_gate.mp4
05-importance_of_lstm_architecture.mp4
06-types_of_lstm.mp4
07-demonstration_next_word_prediction_processing_the_corpus.mp4
08-demonstration_next_word_prediction_layers.mp4
09-demonstration_next_word_prediction_model_compilation_and_prediction.mp4
10-attention_based_lstm_long_short_term_memory_instructions.html
11-capsule_networks_in_deep_learning_instructions.html
03-Module_Optimization_And_Compilation
01-improving_a_model.mp4
02-model_optimization.mp4
03-using_adam_optimizer.mp4
04-model_compilation.mp4
05-model_compilation_with_popular_frameworks.mp4
06-demonstration_model_compilation_preparing_the_dataset.mp4
07-demonstration_building_and_compiling_model.mp4
08-demonstration_from_rmsprop_to_adam.mp4
09-model_optimizers_beyond_adam_instructions.html
04-Module_Wrap_Up_And_Assessment
01-summary_of_deep_learning_with_rnn_and_lstm_with_model_optimization.mp4
Resources
01-Module_3_Datasets
history.p
next_word_model.keras
02-Module_2_Datasets
resources.html
04-Course_Wrap_Up_And_Assessment
01-course_summary_for_practical_deep_learning_with_python.mp4
02-practice_project_mnist_fashion_dataset_analysis_instructions.html
Support - Onehack.Us.txt
tracker
leech seedsTorrent description
Feel free to post any comments about this torrent, including links to Subtitle, samples, screenshots, or any other relevant information, Watch [OneHack Us] Coursera - Practical Deep Learning With Python 2025 Online Free Full Movies Like 123Movies, Putlockers, Fmovies, Netflix or Download Direct via Magnet Link in Torrent Details.
related torrents
Torrent name
health leech seeds Size







