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Natural Language Processing with AWS AI Services

You're reading from   Natural Language Processing with AWS AI Services Derive strategic insights from unstructured data with Amazon Textract and Amazon Comprehend

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Product type Paperback
Published in Nov 2021
Publisher Packt
ISBN-13 9781801812535
Length 508 pages
Edition 1st Edition
Languages
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Authors (2):
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Mona M Mona M
Author Profile Icon Mona M
Mona M
Premkumar Rangarajan Premkumar Rangarajan
Author Profile Icon Premkumar Rangarajan
Premkumar Rangarajan
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Toc

Table of Contents (23) Chapters Close

Preface 1. Section 1:Introduction to AWS AI NLP Services
2. Chapter 1: NLP in the Business Context and Introduction to AWS AI Services FREE CHAPTER 3. Chapter 2: Introducing Amazon Textract 4. Chapter 3: Introducing Amazon Comprehend 5. Section 2: Using NLP to Accelerate Business Outcomes
6. Chapter 4: Automating Document Processing Workflows 7. Chapter 5: Creating NLP Search 8. Chapter 6: Using NLP to Improve Customer Service Efficiency 9. Chapter 7: Understanding the Voice of Your Customer Analytics 10. Chapter 8: Leveraging NLP to Monetize Your Media Content 11. Chapter 9: Extracting Metadata from Financial Documents 12. Chapter 10: Reducing Localization Costs with Machine Translation 13. Chapter 11: Using Chatbots for Querying Documents 14. Chapter 12: AI and NLP in Healthcare 15. Section 3: Improving NLP Models in Production
16. Chapter 13: Improving the Accuracy of Document Processing Workflows 17. Chapter 14: Auditing Named Entity Recognition Workflows 18. Chapter 15: Classifying Documents and Setting up Human in the Loop for Active Learning 19. Chapter 16: Improving the Accuracy of PDF Batch Processing 20. Chapter 17: Visualizing Insights from Handwritten Content 21. Chapter 18: Building Secure, Reliable, and Efficient NLP Solutions 22. Other Books You May Enjoy

Introducing the AWS ML stack

The AWS ML services and features are organized into three layers of the stack, keeping in mind that some developers and data scientists are expert ML practitioners who are comfortable working with ML frameworks, algorithms, and infrastructure to build, train, and deploy models.

For these experts, the bottom layer of the AWS ML stack offers powerful CPU and GPU compute instances (the https://aws.amazon.com/ec2/instance-types/p4/ instances offer the highest performance for ML training in the cloud today), support for major ML frameworks including TensorFlow, PyTorch, and MXNet, which customers can use to build models with Amazon SageMaker as a managed experience, or using deep learning AMIs and containers on Amazon EC2 instances.

You can see the three layers of the AWS ML stack in the next figure. For more details, please refer to https://aws.amazon.com/machine-learning/infrastructure/:

To make ML more accessible and expansive, at the middle layer of the stack, Amazon SageMaker is a fully managed ML platform that removes the undifferentiated heavy lifting at each step of the ML process. Launched in 2018, SageMaker is one of the fastest-growing services in AWS history and is built on Amazon's two decades of experience in building real-world ML applications. With SageMaker Studio, developers and data scientists have the first fully integrated development environment designed specifically for ML. To learn how to build ML models using Amazon SageMaker, refer to Julien Simon's book, Learn Amazon SageMaker, also published by Packt (https://www.packtpub.com/product/learn-amazon-sagemaker/9781800208919):

Figure 1.7 – A tabular list of Amazon SageMaker features for each step of the ML workflow

Figure 1.7 – A tabular list of Amazon SageMaker features for each step of the ML workflow

For customers who are not interested in dealing with models and training, at the top layer of the stack, the AWS AI services provide pre-trained models with easy integration by means of API endpoints for common ML use cases including speech, text, vision, recommendations, and anomaly detection:

Figure 1.8 – AWS AI services

Figure 1.8 – AWS AI services

Alright, it's time that we started getting technical. Now that we understand how cloud computing played a major role in bringing ML and AI to the mainstream and how adding NLP to your application can accelerate business outcomes, let's deep dive into the NLP services Amazon Textract for document analysis and Amazon Comprehend for advanced text analytics.

Ready? Let's go!!

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Natural Language Processing with AWS AI Services
Published in: Nov 2021
Publisher: Packt
ISBN-13: 9781801812535
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