A Scalable Framework for Multilevel Streaming Data Analytics using Deep Learning
Shihao Ge, Haruna Isah, Farhana Zulkernine, Shahzad Khan

TL;DR
This paper introduces a scalable, multilevel streaming data analytics framework that integrates real-time processing with deep learning for language understanding and sentiment analysis, addressing the challenges of hybrid streaming and offline data processing.
Contribution
It presents a novel framework combining Spark streaming, LSTM deep learning, and SQL tools for efficient multilevel streaming text analytics.
Findings
Framework effectively processes high-volume streaming data
Deep learning improves sentiment analysis accuracy
System demonstrates scalability and integration capabilities
Abstract
The rapid growth of data in velocity, volume, value, variety, and veracity has enabled exciting new opportunities and presented big challenges for businesses of all types. Recently, there has been considerable interest in developing systems for processing continuous data streams with the increasing need for real-time analytics for decision support in the business, healthcare, manufacturing, and security. The analytics of streaming data usually relies on the output of offline analytics on static or archived data. However, businesses and organizations like our industry partner Gnowit, strive to provide their customers with real time market information and continuously look for a unified analytics framework that can integrate both streaming and offline analytics in a seamless fashion to extract knowledge from large volumes of hybrid streaming data. We present our study on designing a…
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