Coursera | Practical Deep Learning With Python 2025

seeders: 7
leechers: 1
Added 1 year ago by Prom3th3uS in Other

Download Fast Safe Anonymous
movies, software, shows...

Files

Coursera | Practical Deep Learning With Python 2025 (Size: 2.66 GB)
  01-Deep_Learning_Components
  01-Environment_Set_Up_And_Configuration
  01-welcome_to_practical_deep_learning_with_python_instructions.html 7.21 KB
  02-course_introduction.mp4 27.98 MB
  03-environment_configuration.mp4 21.82 MB
  04-system_requirements_and_pre_requisite_for_studying_deep_learning_instructions.html 4.51 KB
  02-Essentials_Of_Deep_Learning
  01-machine_learning_vs_deep_learning.mp4 34.27 MB
  02-what_is_deep_learning.mp4 20.31 MB
  03-neural_networks.mp4 42.16 MB
  04-artificial_neural_network_ann.mp4 24.4 MB
  05-ann_types_and_applications.mp4 17.78 MB
  06-forward_propagation.mp4 20.61 MB
  07-perceptron.mp4 30.93 MB
  08-learning_rate.mp4 29.25 MB
  09-what_is_activation_function.mp4 17.83 MB
  10-activation_function_and_its_types.mp4 23.41 MB
  11-importance_of_epoch.mp4 24.78 MB
  12-single_layer_perceptron_define_sigmoid_function.mp4 44.01 MB
  13-single_layer_perceptron_decision_boundary.mp4 77.15 MB
  14-learning_rate_in_deep_learning_instructions.html 3.86 KB
  03-Building_Perceptron_And_Its_Working
  01-limitations_of_single_layered_perceptron.mp4 11.05 MB
  02-multi_layered_perceptron.mp4 12.04 MB
  03-what_is_backpropagation.mp4 10.26 MB
  04-backpropagation.mp4 17 MB
  05-demonstration_building_a_simple_neural_network.mp4 40.88 MB
  06-demonstration_understanding_how_backpropagation_has_worked.mp4 40.45 MB
  07-demonstration_handwritten_digits_classification_data_preprocessing.mp4 41.79 MB
  08-demonstration_handwritten_digits_classification_designing_the_model.mp4 73.22 MB
  09-demonstration_handwritten_digits_classification_optimizing_the_model.mp4 88.77 MB
  10-hebbian_learning_algorithm_instructions.html 27.28 KB
  04-Module_Wrap_Up_And_Assessment
  01-summary_of_deep_learning_components.mp4 36.33 MB
  02-Deep_Learning_With_Cnn_Rcnn_And_Faster_Rcnn
  01-Convolutional_Neural_Network
  01-limitations_of_mlp.mp4 27.91 MB
  01. Support - Onehack.Us.txt 94 B
  02-mlp_limitations_resolving_the_issue_with_cnn.mp4 21.51 MB
  03-visual_cortex_and_cnn.mp4 31.61 MB
  04-convolutional_layer.mp4 31.99 MB
  05-working_of_convolutional_layer.mp4 31.99 MB
  06-demonstration_load_and_preprocess_the_data.mp4 42.04 MB
  07-demonstration_designing_the_model.mp4 52.84 MB
  08-demonstration_building_the_cnn_model.mp4 37.97 MB
  09-demonstration_model_accuracy.mp4 21.46 MB
  10-demonstration_adding_more_layers.mp4 62.39 MB
  11-demonstration_building_basic_cnn_model_with_new_parameters.mp4 78.21 MB
  12-demonstration_pre_trained_model.mp4 37.38 MB
  13-why_convolutions_are_important_instructions.html 2.08 KB
  02-Tensorflow_Hub_For_Object_Detection_Using_Faster_Rcnn
  01-classification_and_object_detection.mp4 29.81 MB
  02-introduction_to_rcnn.mp4 31.51 MB
  03-r_cnn_bounding_box_regression.mp4 12.46 MB
  04-pre_trained_model.mp4 29.04 MB
  05-fast_regional_cnn.mp4 32.1 MB
  06-demonstration_creating_base_variables_and_loading_the_model.mp4 37 MB
  07-demonstration_training_the_model_and_visualizing_the_predictions.mp4 53.63 MB
  08-demonstration_svm_as_a_classifier.mp4 23.4 MB
  09-svm_classifier_in_object_detection_instructions.html 4.26 KB
  03-Faster_Rcnn_Recurrent_Convolutional_Neural_Network
  01-fast_rcnn_limitations.mp4 24.9 MB
  02-advent_of_faster_r_cnn.mp4 25.24 MB
  03-tensorflow_hub.mp4 20.32 MB
  04-demonstration_object_detection_with_faster_rcnn_pretrained_model_setup.mp4 74.66 MB
  05-demonstration_object_detection_with_faster_rcnn_building_the_model.mp4 82.91 MB
  06-faster_r_cnn_architecture_instructions.html 5.92 KB
  04-Module_Wrap_Up_And_Assessment
  01-summary_of_cnn_in_deep_learning.mp4 13.32 MB
  02-summary_of_faster_rcnn.mp4 22.48 MB
  03-Deep_Learning_With_Rnn_Lstm_And_Model_Optimization
  01-Working_Of_Recurrent_Neural_Networks_Rnn
  01-rnn_fundamentals.mp4 20.5 MB
  02-rnn_architecture.mp4 22.59 MB
  03-rnn_architecture_workflow.mp4 28.92 MB
  04-implementing_rnn.mp4 28.87 MB
  05-demonstration_rnn_dataset_preparation.mp4 62.04 MB
  06-demonstration_rnn_building_the_model.mp4 62.38 MB
  07-recurrent_neural_networks_rnns_in_deep_learning_instructions.html 19.64 KB
  02-Lstm_Architecture
  01-basics_of_lstm.mp4 28.36 MB
  02-lstm_structure.mp4 24.24 MB
  03-forget_gate_and_input_gate.mp4 20.87 MB
  04-output_gate.mp4 14.09 MB
  05-importance_of_lstm_architecture.mp4 23.04 MB
  06-types_of_lstm.mp4 19.16 MB
  07-demonstration_next_word_prediction_processing_the_corpus.mp4 50.16 MB
  08-demonstration_next_word_prediction_layers.mp4 58.93 MB
  09-demonstration_next_word_prediction_model_compilation_and_prediction.mp4 96.56 MB
  10-attention_based_lstm_long_short_term_memory_instructions.html 7.41 KB
  11-capsule_networks_in_deep_learning_instructions.html 4.17 KB
  03-Module_Optimization_And_Compilation
  01-improving_a_model.mp4 32.93 MB
  02-model_optimization.mp4 21.84 MB
  03-using_adam_optimizer.mp4 31.96 MB
  04-model_compilation.mp4 14.37 MB
  05-model_compilation_with_popular_frameworks.mp4 27.34 MB
  06-demonstration_model_compilation_preparing_the_dataset.mp4 55.53 MB
  07-demonstration_building_and_compiling_model.mp4 46.26 MB
  08-demonstration_from_rmsprop_to_adam.mp4 45.17 MB
  09-model_optimizers_beyond_adam_instructions.html 87.35 KB
  04-Module_Wrap_Up_And_Assessment
  01-summary_of_deep_learning_with_rnn_and_lstm_with_model_optimization.mp4 32.88 MB
  04-Course_Wrap_Up_And_Assessment
  01-course_summary_for_practical_deep_learning_with_python.mp4 23.39 MB
  02-practice_project_mnist_fashion_dataset_analysis_instructions.html 64 KB
  Resources
  01-Module_3_Datasets
  history.p 436 B
  next_word_model.keras 9.76 MB
  02-Module_2_Datasets
  resources.html 65.68 KB
  Support - Onehack.Us.txt 94 B

Description


Visit >>> http://onehack.us/

https://i.ibb.co/fYngh2NR/Practical-Deep.png

Coursera - Practical Deep Learning With Python 2025

Course details

Welcome to the Practical Deep Learning with Python course, where you'll gain hands-on experience with cutting-edge deep learning techniques to model and ...

What you'll learn
- Understand the core components of deep learning models and their role in AI.
- Apply CNN, R-CNN, and Faster R-CNN for object detection tasks.
- Implement RNNs and LSTMs for sequential data processing.
- Optimize and evaluate deep learning models for improved performance.

There are 4 modules in this course

Welcome to the Practical Deep Learning with Python course, where you'll gain hands-on experience with cutting-edge deep learning techniques to model and analyze complex datasets. Unlock the power of deep learning to solve real-world problems and uncover actionable insights from massive data volumes. This course explores industry-specific applications and equips you with the practical skills needed to build and optimize advanced models.

By the end of this course, you’ll be able to:
- Describe the foundational components of deep learning models and their significance in artificial intelligence.
- Illustrate the working of CNNs, R-CNNs, and Faster R-CNNs for object detection and related applications.
- Understand the limitations of Perceptrons and how Multi-Layer Perceptrons (MLPs) address them.
- Implement Recurrent Neural Networks (RNNs) and Long Short-Term Memory (LSTM) architectures for sequential data analysis.
- Optimize and evaluate deep learning models to achieve higher accuracy and efficiency.

This course is designed for data scientists, machine learning engineers, and AI enthusiasts with a foundational knowledge of Python and machine learning who aim to expand their expertise in deep learning.

Experience in building machine learning models, along with knowledge of statistics and proficiency in Python programming, is recommended for this course.

Embark on this educational journey to enhance your expertise in deep learning and elevate your capabilities in building intelligent systems for the future of artificial intelligence.

General Details:
Duration: 6h 10m
Updated: 03/2025
Language: English
Source: https://www.coursera.org/learn/practical-deep-learning-with-python
Instructor: https://www.edureka.co/

MP4 | Video: AVC, 1920x1080p | Audio: AAC, 44.100 KHz, 2 Ch

Related Torrents

torrent name size uploader age seed leech
3
1
6