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[FreeCoursesOnline.Me] [Packt] Mastering Deep Learning using Apache Spark [FCO]

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种子名称: [FreeCoursesOnline.Me] [Packt] Mastering Deep Learning using Apache Spark [FCO]
文件类型: 视频
文件数目: 29个文件
文件大小: 638.82 MB
收录时间: 2021-5-3 14:58
已经下载: 3
资源热度: 191
最近下载: 2024-12-26 06:25

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[FreeCoursesOnline.Me] [Packt] Mastering Deep Learning using Apache Spark [FCO].torrent
  • 1. CONVOLUTIONAL NEURAL NETWORKS FOR SPEECH RECOGNITION (NLP)/1. The Course Overview-111792.mp416.97MB
  • 1. CONVOLUTIONAL NEURAL NETWORKS FOR SPEECH RECOGNITION (NLP)/2. Analyzing Input Text Data That Will Need to Be Classified-111793.mp453.89MB
  • 1. CONVOLUTIONAL NEURAL NETWORKS FOR SPEECH RECOGNITION (NLP)/3. Configuring Word Vectors That Will Be Used in Our Network-111794.mp414.29MB
  • 1. CONVOLUTIONAL NEURAL NETWORKS FOR SPEECH RECOGNITION (NLP)/4. Adding Layers to Deep Neural Network-111795.mp414.65MB
  • 1. CONVOLUTIONAL NEURAL NETWORKS FOR SPEECH RECOGNITION (NLP)/5. Asserting Classification of Input Sentences-111796.mp416.06MB
  • 2. PERFORMING VIDEO CLASSIFICATION USING RNN AND LSTMS/6. Generating Input Video Data-111798.mp422.08MB
  • 2. PERFORMING VIDEO CLASSIFICATION USING RNN AND LSTMS/7. Creating a Neural Network for Video Classification-111799.mp418.28MB
  • 2. PERFORMING VIDEO CLASSIFICATION USING RNN AND LSTMS/8. Adding RNN and LSTMs to Network to Perform a Task Better-111800.mp419.03MB
  • 2. PERFORMING VIDEO CLASSIFICATION USING RNN AND LSTMS/9. Testing and Validating Deep Learning Model-111801.mp424.45MB
  • 3. TRANSFER LEARNING AND PRE-TRAINED MODELS/10. Creating Paragraph Vectors-111803.mp49.4MB
  • 3. TRANSFER LEARNING AND PRE-TRAINED MODELS/11. Adding Labels to Non-Labelled Data-111804.mp417.56MB
  • 3. TRANSFER LEARNING AND PRE-TRAINED MODELS/12. Finding Similarity between Vectors-111805.mp416.58MB
  • 3. TRANSFER LEARNING AND PRE-TRAINED MODELS/13. Creating a Model That Can Guess the Meaning of The Word-111806.mp414.43MB
  • 4. DEEP REINFORCEMENT LEARNING/14. Anomaly Detection Problem Explained-111808.mp427.33MB
  • 4. DEEP REINFORCEMENT LEARNING/15. Extracting Features from Input Data Using Multi-Layer Approach-111809.mp426.68MB
  • 4. DEEP REINFORCEMENT LEARNING/16. Adding Layer That Finds an Actual Anomaly-111810.mp417MB
  • 4. DEEP REINFORCEMENT LEARNING/17. Testing and Validating Results from Our Deep Learning Model-111811.mp417.37MB
  • 5. GENERATIVE ADVERSARIAL NETWORKS/18. Creating Data Generator for GAN-111813.mp419.36MB
  • 5. GENERATIVE ADVERSARIAL NETWORKS/19. Adding Discriminator for Our Data-111814.mp430.95MB
  • 5. GENERATIVE ADVERSARIAL NETWORKS/20. Create Classifier for Generated Data-111815.mp424.25MB
  • 5. GENERATIVE ADVERSARIAL NETWORKS/21. Performing Validation of Our Model-111816.mp416.51MB
  • 6. DISTRIBUTED MODELS/22. Configuring Spark for High Data Distribution-111818.mp416.03MB
  • 6. DISTRIBUTED MODELS/23. Fetching Input Set into Distributed Data Set Using Spark API-111819.mp414.16MB
  • 6. DISTRIBUTED MODELS/24. Creating Training Master That Supervise Computations on the Workers-111820.mp413.62MB
  • 6. DISTRIBUTED MODELS/25. Evaluating Speed of Distributed Training Using Spark-111821.mp49.9MB
  • 7. TROUBLESHOOTING/26. Monitoring of Models Using Spark UI-111823.mp411.79MB
  • 7. TROUBLESHOOTING/27. Speeding Up Computations by Employing Caching-111824.mp414.54MB
  • 7. TROUBLESHOOTING/28. Partitioning Deep Learning Data into Several Workers-111825.mp464.75MB
  • 7. TROUBLESHOOTING/29. Tweaking Spark Workers Configuration-111826.mp456.91MB