Published 05-09-2023
Keywords
- machine learning,
- data streams
This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.
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Abstract
Real-time analytics has become a cornerstone of modern data-driven decision-making, enabling businesses to extract actionable insights from data as it flows. Implementing machine learning (ML) algorithms for analyzing data streams in real time transforms how organizations respond to critical events, offering unparalleled speed and accuracy. This approach involves leveraging advanced ML models that can process, analyze, and derive insights from continuous data streams, such as customer interactions, financial transactions, or IoT sensor data, without latency. Key challenges include: Handling high-velocity data, Ensuring system scalability & Addressing issues like data noise and missing values in real time. Solutions like distributed computing frameworks, event-driven architectures, and specialized ML algorithms, like online learning and incremental models, have emerged to meet these demands. By integrating real-time analytics with ML, businesses can unlock opportunities like fraud detection, personalized recommendations, and operational efficiency improvements. This shift enhances responsiveness and helps organizations predict and prevent potential issues before they escalate. The implementation process involves deploying ML pipelines capable of handling dynamic data inputs, optimizing algorithms for streaming data, and ensuring robust system reliability. With use cases spanning e-commerce, healthcare, finance, and beyond, real-time ML analytics reshapes industries by bridging the gap between data collection and decision-making. As organizations continue to prioritize real-time capabilities, the convergence of ML and stream processing offers transformative potential for businesses striving to maintain a competitive edge in today’s fast-paced landscape.
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