首页 磁力链接怎么用

[UdemyCourseDownloader] Building Recommender Systems with Machine Learning and AI

文件类型 收录时间 最后活跃 资源热度 文件大小 文件数量
视频 2018-12-8 23:23 2024-12-26 06:43 235 4.48 GB 109
二维码链接
[UdemyCourseDownloader] Building Recommender Systems with Machine Learning and AI的二维码
种子下载(838888不存储任何种子文件)
种子下载线路1(迅雷)--推荐
种子下载线路2(比特彗星)
种子下载线路3(torcache)
3条线路均为国内外知名下载网站种子链接,内容跟本站无关!
文件列表
  1. 08 Introduction to Deep Learning [Optional]/056 [Activity] Handwriting Recognition with Tensorflow part 1.mp4181.85MB
  2. 01 Getting Started/001 Udemy 101 Getting the Most From This Course.mp419.71MB
  3. 01 Getting Started/002 [Activity] Install Anaconda course materials and create movie recommendations.mp4104.08MB
  4. 01 Getting Started/003 Course Roadmap.mp427.58MB
  5. 01 Getting Started/004 Types of Recommenders.mp426.82MB
  6. 01 Getting Started/005 Understanding You through Implicit and Explicit Ratings.mp420.72MB
  7. 01 Getting Started/006 Top-N Recommender Architecture.mp437.09MB
  8. 01 Getting Started/007 [Quiz] Review the basics of recommender systems..mp421.3MB
  9. 02 Introduction to Python [Optional]/008 [Activity] The Basics of Python.mp443.03MB
  10. 02 Introduction to Python [Optional]/009 Data Structures in Python.mp424.41MB
  11. 02 Introduction to Python [Optional]/010 Functions in Python.mp412.27MB
  12. 02 Introduction to Python [Optional]/011 [Exercise] Booleans loops and a hands-on challenge.mp413.86MB
  13. 03 Evaluating Recommender Systems/012 TrainTest and Cross Validation.mp429.05MB
  14. 03 Evaluating Recommender Systems/013 Accuracy Metrics (RMSE MAE).mp440.28MB
  15. 03 Evaluating Recommender Systems/014 Top-N Hit Rate - Many Ways.mp424.53MB
  16. 03 Evaluating Recommender Systems/015 Coverage Diversity and Novelty.mp413.73MB
  17. 03 Evaluating Recommender Systems/016 Churn Responsiveness and AB Tests.mp460.94MB
  18. 03 Evaluating Recommender Systems/017 [Quiz] Review ways to measure your recommender..mp412.83MB
  19. 03 Evaluating Recommender Systems/018 [Activity] Walkthrough of RecommenderMetrics.py.mp464.3MB
  20. 03 Evaluating Recommender Systems/019 [Activity] Walkthrough of TestMetrics.py.mp454.36MB
  21. 03 Evaluating Recommender Systems/020 [Activity] Measure the Performance of SVD Recommendations.mp421.56MB
  22. 04 A Recommender Engine Framework/021 Our Recommender Engine Architecture.mp432.73MB
  23. 04 A Recommender Engine Framework/022 [Activity] Recommender Engine Walkthrough Part 1.mp437.88MB
  24. 04 A Recommender Engine Framework/023 [Activity] Recommender Engine Walkthrough Part 2.mp439.59MB
  25. 04 A Recommender Engine Framework/024 [Activity] Review the Results of our Algorithm Evaluation..mp434.57MB
  26. 05 Content-Based Filtering/025 Content-Based Recommendations and the Cosine Similarity Metric.mp461.58MB
  27. 05 Content-Based Filtering/026 K-Nearest-Neighbors and Content Recs.mp419.61MB
  28. 05 Content-Based Filtering/027 [Activity] Producing and Evaluating Content-Based Movie Recommendations.mp452.36MB
  29. 05 Content-Based Filtering/028 [Activity] Bleeding Edge Alert Mise en Scene Recommendations.mp446.52MB
  30. 05 Content-Based Filtering/029 [Exercise] Dive Deeper into Content-Based Recommendations.mp424.11MB
  31. 06 Neighborhood-Based Collaborative Filtering/030 Measuring Similarity and Sparsity.mp459.1MB
  32. 06 Neighborhood-Based Collaborative Filtering/031 Similarity Metrics.mp430.68MB
  33. 06 Neighborhood-Based Collaborative Filtering/032 User-based Collaborative Filtering.mp434.21MB
  34. 06 Neighborhood-Based Collaborative Filtering/033 [Activity] User-based Collaborative Filtering Hands-On.mp448.65MB
  35. 06 Neighborhood-Based Collaborative Filtering/034 Item-based Collaborative Filtering.mp452.23MB
  36. 06 Neighborhood-Based Collaborative Filtering/035 [Activity] Item-based Collaborative Filtering Hands-On.mp426.81MB
  37. 06 Neighborhood-Based Collaborative Filtering/036 [Exercise] Tuning Collaborative Filtering Algorithms.mp419.7MB
  38. 06 Neighborhood-Based Collaborative Filtering/037 [Activity] Evaluating Collaborative Filtering Systems Offline.mp415.43MB
  39. 06 Neighborhood-Based Collaborative Filtering/038 [Exercise] Measure the Hit Rate of Item-Based Collaborative Filtering.mp49.5MB
  40. 06 Neighborhood-Based Collaborative Filtering/039 KNN Recommenders.mp424.85MB
  41. 06 Neighborhood-Based Collaborative Filtering/040 [Activity] Running User and Item-Based KNN on MovieLens.mp423.76MB
  42. 06 Neighborhood-Based Collaborative Filtering/041 [Exercise] Experiment with different KNN parameters..mp441.26MB
  43. 06 Neighborhood-Based Collaborative Filtering/042 Bleeding Edge Alert Translation-Based Recommendations.mp421.49MB
  44. 07 Matrix Factorization Methods/043 Principal Component Analysis (PCA).mp461.2MB
  45. 07 Matrix Factorization Methods/044 Singular Value Decomposition.mp425.07MB
  46. 07 Matrix Factorization Methods/045 [Activity] Running SVD and SVD on MovieLens.mp437.49MB
  47. 07 Matrix Factorization Methods/046 Improving on SVD.mp423.07MB
  48. 07 Matrix Factorization Methods/047 [Exercise] Tune the hyperparameters on SVD.mp412.46MB
  49. 07 Matrix Factorization Methods/048 Bleeding Edge Alert Sparse Linear Methods (SLIM).mp426.46MB
  50. 08 Introduction to Deep Learning [Optional]/049 Deep Learning Introduction.mp417.62MB
  51. 08 Introduction to Deep Learning [Optional]/050 Deep Learning Pre-Requisites.mp437.05MB
  52. 08 Introduction to Deep Learning [Optional]/051 History of Artificial Neural Networks.mp484.21MB
  53. 08 Introduction to Deep Learning [Optional]/052 [Activity] Playing with Tensorflow.mp4145.4MB
  54. 08 Introduction to Deep Learning [Optional]/053 Training Neural Networks.mp438.35MB
  55. 08 Introduction to Deep Learning [Optional]/054 Tuning Neural Networks.mp431.27MB
  56. 08 Introduction to Deep Learning [Optional]/055 Introduction to Tensorflow.mp492.47MB
  57. 08 Introduction to Deep Learning [Optional]/057 [Activity] Handwriting Recognition with Tensorflow part 2.mp457.58MB
  58. 08 Introduction to Deep Learning [Optional]/058 Introduction to Keras.mp416.45MB
  59. 08 Introduction to Deep Learning [Optional]/059 [Activity] Handwriting Recognition with Keras.mp488.71MB
  60. 08 Introduction to Deep Learning [Optional]/060 Classifier Patterns with Keras.mp424.84MB
  61. 08 Introduction to Deep Learning [Optional]/061 [Exercise] Predict Political Parties of Politicians with Keras.mp4100.21MB
  62. 08 Introduction to Deep Learning [Optional]/062 Intro to Convolutional Neural Networks (CNNs).mp478.19MB
  63. 08 Introduction to Deep Learning [Optional]/063 CNN Architectures.mp422.54MB
  64. 08 Introduction to Deep Learning [Optional]/064 [Activity] Handwriting Recognition with Convolutional Neural Networks (CNNs).mp482.28MB
  65. 08 Introduction to Deep Learning [Optional]/065 Intro to Recurrent Neural Networks (RNNs).mp449.64MB
  66. 08 Introduction to Deep Learning [Optional]/066 Training Recurrent Neural Networks.mp420.72MB
  67. 08 Introduction to Deep Learning [Optional]/067 [Activity] Sentiment Analysis of Movie Reviews using RNNs and Keras.mp4119.78MB
  68. 09 Deep Learning for Recommender Systems/068 Intro to Deep Learning for Recommenders.mp442.62MB
  69. 09 Deep Learning for Recommender Systems/069 Restricted Boltzmann Machines (RBMs).mp431.67MB
  70. 09 Deep Learning for Recommender Systems/070 [Activity] Recommendations with RBMs part 1.mp4144.44MB
  71. 09 Deep Learning for Recommender Systems/071 [Activity] Recommendations with RBMs part 2.mp476.73MB
  72. 09 Deep Learning for Recommender Systems/072 [Activity] Evaluating the RBM Recommender.mp437.67MB
  73. 09 Deep Learning for Recommender Systems/073 [Exercise] Tuning Restricted Boltzmann Machines.mp433.61MB
  74. 09 Deep Learning for Recommender Systems/074 Exercise Results Tuning a RBM Recommender.mp411.85MB
  75. 09 Deep Learning for Recommender Systems/075 Auto-Encoders for Recommendations Deep Learning for Recs.mp426.91MB
  76. 09 Deep Learning for Recommender Systems/076 [Activity] Recommendations with Deep Neural Networks.mp475.41MB
  77. 09 Deep Learning for Recommender Systems/077 Clickstream Recommendations with RNNs.mp448.72MB
  78. 09 Deep Learning for Recommender Systems/078 [Exercise] Get GRU4Rec Working on your Desktop.mp47.46MB
  79. 09 Deep Learning for Recommender Systems/079 Exercise Results GRU4Rec in Action.mp462.65MB
  80. 09 Deep Learning for Recommender Systems/080 Bleeding Edge Alert Deep Factorization Machines.mp457.36MB
  81. 09 Deep Learning for Recommender Systems/081 More Emerging Tech to Watch.mp427.64MB
  82. 10 Scaling it Up/082 [Activity] Introduction and Installation of Apache Spark.mp453.32MB
  83. 10 Scaling it Up/083 Apache Spark Architecture.mp417.36MB
  84. 10 Scaling it Up/084 [Activity] Movie Recommendations with Spark Matrix Factorization and ALS.mp455.61MB
  85. 10 Scaling it Up/085 [Activity] Recommendations from 20 million ratings with Spark.mp450.67MB
  86. 10 Scaling it Up/086 Amazon DSSTNE.mp442.31MB
  87. 10 Scaling it Up/087 DSSTNE in Action.mp4116.66MB
  88. 10 Scaling it Up/088 Scaling Up DSSTNE.mp410.44MB
  89. 10 Scaling it Up/089 AWS SageMaker and Factorization Machines.mp415.58MB
  90. 10 Scaling it Up/090 SageMaker in Action Factorization Machines on one million ratings in the cloud.mp468.34MB
  91. 11 Real-World Challenges of Recommender Systems/091 The Cold Start Problem (and solutions).mp427.79MB
  92. 11 Real-World Challenges of Recommender Systems/092 [Exercise] Implement Random Exploration.mp42.2MB
  93. 11 Real-World Challenges of Recommender Systems/093 Exercise Solution Random Exploration.mp424.17MB
  94. 11 Real-World Challenges of Recommender Systems/094 Stoplists.mp419.91MB
  95. 11 Real-World Challenges of Recommender Systems/095 [Exercise] Implement a Stoplist.mp41.35MB
  96. 11 Real-World Challenges of Recommender Systems/096 Exercise Solution Implement a Stoplist.mp426.71MB
  97. 11 Real-World Challenges of Recommender Systems/097 Filter Bubbles Trust and Outliers.mp492.41MB
  98. 11 Real-World Challenges of Recommender Systems/098 [Exercise] Identify and Eliminate Outlier Users.mp41.77MB
  99. 11 Real-World Challenges of Recommender Systems/099 Exercise Solution Outlier Removal.mp438.49MB
  100. 11 Real-World Challenges of Recommender Systems/100 Fraud The Perils of Clickstream and International Concerns.mp458.23MB
  101. 11 Real-World Challenges of Recommender Systems/101 Temporal Effects and Value-Aware Recommendations.mp454.02MB
  102. 12 Case Studies/102 Case Study YouTube Part 1.mp426.91MB
  103. 12 Case Studies/103 Case Study YouTube Part 2.mp426.26MB
  104. 12 Case Studies/104 Case Study Netflix Part 1.mp427.55MB
  105. 12 Case Studies/105 Case Study Netflix Part 2.mp426.57MB
  106. 13 Hybrid Approaches/106 Hybrid Recommenders and Exercise.mp418.4MB
  107. 13 Hybrid Approaches/107 Exercise Solution Hybrid Recommenders.mp433.18MB
  108. 14 Wrapping Up/108 More to Explore.mp438.93MB
  109. 14 Wrapping Up/109 Bonus Lecture Companion Book and More Courses from Sundog Education.mp421.12MB
友情提示
不会用的朋友看这里 把磁力链接复制到离线下载,或者bt下载软件里即可下载文件,或者直接复制迅雷链接到迅雷里下载! 亲,你造吗?将网页分享给您的基友,下载的人越多速度越快哦!

违规内容投诉邮箱:[email protected]

概述 838888磁力搜索是一个磁力链接搜索引擎,是学术研究的副产品,用于解决资源过度分散的问题 它通过BitTorrent协议加入DHT网络,实时的自动采集数据,仅存储文件的标题、大小、文件列表、文件标识符(磁力链接)等基础信息 838888磁力搜索不下载任何真实资源,无法判断资源的合法性及真实性,使用838888磁力搜索服务的用户需自行鉴别内容的真伪 838888磁力搜索不上传任何资源,不提供Tracker服务,不提供种子文件的下载,这意味着838888磁力搜索 838888磁力搜索是一个完全合法的系统