A boilerplate solution for processing image and PDF documents for regulated industries, with lineage and pipeline operations metadata services.
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Updated
Oct 25, 2021 - Python
A boilerplate solution for processing image and PDF documents for regulated industries, with lineage and pipeline operations metadata services.
QuickSeek is a chrome extension that allows you to easily search and navigate through a YouTube video, you can quickly find and watch only parts of the video that contain words you are looking for. The Chrome extension uses Amazon Transcribe to make the audio searchable and Amazon Comprehend to perform sentiment analysis on the transcript.
As an Intelligent Process Automation showcase. We combined Business Process Management with Artificial Intelligence, and the result was awesome! Find out more: https://www.novatec-gmbh.de/en/blog/ipa-camunda-comprehend/
Dataiku DSS plugin to use the Amazon Comprehend Medical API 🩺
Dataiku DSS plugin to use the Amazon Comprehend APIs 📚
Front-end website | Backend API | Authentication | Backend compute functions | Asynchronous reporting workflow | Distributed tracing | Monitoring features | Improving performance
Amazon Comprehend sample code that calls Sentiment and Key phrase APIs and does additional processing.
Provides a reliable political feed for readers to become knowledgeable and informed voters on the state political level.
Live Streamed Alexa Skill development to create a searchable index of the Alexa Office Hours Archives
This repository contains the implementation of various AWS AI Services.
Scaling sentiment analysis with AWS Glue and Amazon Comprehend.
Analyse user sentiments and identify entities on subreddits using AWS serverless architecture.
This module looks at how use Amazon Connect, Lex, and Lambda to interact with a chatbot using voice. You will create a personal call center using Amazon Connect and you will learn how to connect the call center to your Lex chatbot
This module teaches you how to design a chatbot using Amazon Lex by following the best design practices for conversational AI. You will start by learning the basics of chatbots. Then, you will use Amazon Lex to create a custom chatbot that gets the latest stock market quotes by recognizing the intent in text
A benchmark comparison project among the most popular sentiment analysis engines: VaderSentiment, TextBlob, Azure Text Analysis and Amazon Comprehend. The benchmarker is a python module that supports 3 datasets: IMDb, Sentiment140 and Twitter.
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