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Building Features from Text Data in Microsoft Azure

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Michael Heydt

1:54:16

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  • 1. Course Overview.mp4
    01:57
  • 01. Module Overview.mp4
    02:18
  • 02. Prerequisites.mp4
    02:57
  • 03. Demo - Configure AMLS.mp4
    03:41
  • 04. Preprocessing and NLP.mp4
    02:08
  • 05. Tokenization and Cleaning.mp4
    03:40
  • 06. Demo - Sentence and Word Tokenization.mp4
    04:06
  • 07. Demo - NLTK Tokenizers.mp4
    03:18
  • 08. Demo - Token Cleaning.mp4
    01:35
  • 09. Stopword Removal.mp4
    01:12
  • 10. Demo - Stopword Removal.mp4
    04:28
  • 11. Frequency Filtering.mp4
    01:17
  • 12. Demo - Frequency Filtering.mp4
    04:40
  • 13. Stemming.mp4
    01:30
  • 14. Demo - Stemming.mp4
    02:43
  • 15. Parts-of-speech Tagging.mp4
    01:10
  • 16. Demo - Parts-of-speech.mp4
    01:30
  • 17. Lemmatization.mp4
    01:31
  • 18. Demo - Lemmatization.mp4
    02:12
  • 19. N-grams.mp4
    02:09
  • 20. Demo - N-grams.mp4
    03:25
  • 21. Module Summary.mp4
    02:23
  • 01. Module Overview.mp4
    02:18
  • 02. Encoding Text as Numbers.mp4
    04:01
  • 03. One-hot and Count Vector Encoding.mp4
    05:18
  • 04. Demo - Bag-of-words.mp4
    04:11
  • 05. Demo - Bag-of-n-grams.mp4
    02:19
  • 06. TF-IDF Encoding.mp4
    02:05
  • 07. Demo - TF-IDF Encoding.mp4
    03:39
  • 08. Word Embeddings.mp4
    02:30
  • 09. Demo - Word Embeddings Using Word2Vec.mp4
    03:42
  • 10. Feature Hashing.mp4
    03:44
  • 11. Demo - The Hashing Trick.mp4
    05:16
  • 12. Locality-sensitive Hashing.mp4
    02:42
  • 13. Demo - Locality-sensitive Hashing.mp4
    04:38
  • 14. BERT.mp4
    03:44
  • 15. Demo - Word Embeddings with BERT on AMLS.mp4
    06:37
  • 16. Summary.mp4
    01:42
  • Description


    This course covers aspects of building text features for machine learning using Azure Machine Learning Service virtual machines, including tokenization, stopword removal, feature vectorization, and more from natural language processing.

    What You'll Learn?


      Using text data to make decisions is key in creating text features for machine learning models. In this course, Building Features from Text Data in Microsoft Azure, you'll obtain the ability to structure your data several ways that are usable in machine learning models using Microsoft Azure Machine Learning Service virtual machines. First, you’ll discover how to use natural language processing to prepare text data, and how to leverage several natural language processing technologies, such as document tokenization, stopword removal, frequency filtering, stemming and lemmatization, parts-of-speech tagging, and n-gram identification. Then, you’ll explore documents as text features, where you'll learn to represent documents as feature vectors by using techniques including one-hot and count vector encodings, frequency based encodings, word embeddings, hashing, and locality-sensitive hashing. Finally, you'll delve into using BERT to generate word embeddings. By the end of this course, you'll have the skills and knowledge to use textual data and Microsoft Azure in conceptually sound ways to create text features for machine learning models.

    More details


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    Michael Heydt
    Michael Heydt
    Instructor's Courses
    Mike is a seasoned software developer, IT guy, cloud architect, IoT fanatic, and overall gadget hound. He is currently a freelance developer, DevOps engineer, author, trainer, and speaker. Mike has worked in many industries including finance/trading systems, cable television/interactive TV, GIS, healthcare, social media, and genomics. Mike’s background has historically been in Microsoft solutions, having built those systems since the days of DOS all the way through .NET and Azure. He holds over 17 active Microsoft certifications in Azure, C#, development, and also multiple AWS certifications in development. Mike is also a Linux fan and has built almost everything in the last 5+ years using C# or Python on Linux. When not using computers, Mike spends his time helping his son with his undergrad astronomy degree (and performing amateur astronomy), cheering on his wife who is working on her own media degree, and exploring the wilds of Montana with his Braque D’Auvergn “Bleu”
    Pluralsight, LLC is an American privately held online education company that offers a variety of video training courses for software developers, IT administrators, and creative professionals through its website. Founded in 2004 by Aaron Skonnard, Keith Brown, Fritz Onion, and Bill Williams, the company has its headquarters in Farmington, Utah. As of July 2018, it uses more than 1,400 subject-matter experts as authors, and offers more than 7,000 courses in its catalog. Since first moving its courses online in 2007, the company has expanded, developing a full enterprise platform, and adding skills assessment modules.
    • language english
    • Training sessions 38
    • duration 1:54:16
    • level average
    • English subtitles has
    • Release Date 2022/12/12