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{"slug": "h2oai--awesome-h2o", "title": "H2o", "description": "A curated list of research, applications and projects built using the H2O Machine Learning platform", "github_url": "https://github.com/h2oai/awesome-h2o", "stars": "345", "tag": "Computer Science", "entry_count": 102, "subcategory_count": 1, "subcategories": [{"name": "General", "parent": "", "entries": [{"name": "Blog Posts & Tutorials", "url": "#blog-posts--tutorials", "description": ""}, {"name": "Books", "url": "#books", "description": ""}, {"name": "Research Papers", "url": "#research-papers", "description": ""}, {"name": "Benchmarks", "url": "#benchmarks", "description": ""}, {"name": "Presentations", "url": "#presentations", "description": ""}, {"name": "Courses", "url": "#courses", "description": ""}, {"name": "Software (built using H2O)", "url": "#software", "description": ""}, {"name": "License", "url": "#license", "description": ""}, {"name": "Using H2O AutoML to simplify training process (and also predict wine quality)", "url": "https://enjoymachinelearning.com/posts/h2o-auto-machine-learning/", "description": ""}, {"name": "Visualizing ML Models with LIME", "url": "https://uc-r.github.io/lime", "description": ""}, {"name": "Parallel Grid Search in H2O", "url": "https://www.pavel.cool/h2o-3/h2o-parallel-grid-search/", "description": ""}, {"name": "Importing, Inspecting and Scoring with MOJO models inside H2O", "url": "https://www.pavel.cool/h2o-3/h2o-mojo-import/", "description": ""}, {"name": "Artificial Intelligence Made Easy with H2O.ai: A Comprehensive Guide to Modeling with H2O.ai and AutoML in Python", "url": "https://towardsdatascience.com/artificial-intelligence-made-easy-187ecb90c299", "description": ""}, {"name": "Anomaly Detection With Isolation Forests Using H2O", "url": "https://dzone.com/articles/anomaly-detection-with-isolation-forests-using-h2o-1", "description": ""}, {"name": "Predicting residential property prices in Bratislava using recipes - 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