Augmented Analytics: The Future of Business Intelligence
Augmented analytics will improve business decision-making, save money and efforts.
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Join For FreeIt is more important than ever to access accurate and timely data in a rapidly changing business landscape. Unfortunately, the traditional business intelligence methods are no longer adequate to meet the needs of modern businesses. Augmented analytics is a new approach that combines the best of human expertise with the power of artificial intelligence to provide previously unattainable insights.
This technology is already being used by quite a few of the world’s leading companies to gain a competitive edge.
What Is Augmented Analytics?
According to Gartner, this form of analytics uses artificial intelligence (AI) and its subsets like machine learning (ML) in data analytics.
This technology has the potential to revolutionize the way businesses collect and analyze data. Augmented analytics can help businesses make better decisions, improve operational efficiency, and gain a competitive edge. Artificial intelligence has the ability to provide answers and insights that were previously unattainable. Combining this technology with human expertise, businesses gain a fresh perspective on their data and increased efficiency.
A more straightforward definition would be: Analytics that is “augmented” with AI technologies such as machine learning and natural language processing (NLP) are called augmented analytics. For example, data preparation and insight generation are two complex analytics processes that machine learning automates. Using NLP, even untrained business users can ask questions about their data and get answers quickly conversationally.
Augmented analytics is the future of business intelligence. It allows businesses to make better decisions faster and with more accuracy. Artificial intelligence can make sense of vast amounts of data without human intervention. It also allows businesses to respond to real-time changes in the market. For example, organizations can keep track of customer demographics, current trends in the economy, and changes in customer preferences.
Importance of Augmented Analytics
This technology can help businesses make better decisions by providing insights that would otherwise be hidden in complex data sets. In addition to assisting organizations in making better decisions, this technology also has numerous benefits. For example, it makes decisions faster, reduces the number of humans needed to process data, improves the accuracy of predictions, and boosts the ability to react to fast-changing market conditions.
3 Benefits of Augmented Analytics
By harnessing the power of data, this kind of analytics helps businesses make better decisions, improve operations, and find growth opportunities.
- Making organizations agile: With AI, organizations can add to their search for insights, making it faster and more efficient. AI can help reduce the search area, throw up relevant data, and suggest more ways of analysis. By monitoring user behavior, systems can recommend subsequent actions. Over a period of time, these recommendations can be personalized based on people’s responses.
When analysts can get answers to data questions faster, they can concentrate on other essential tasks and not merely sifting through the data.
- Making it more accurate: As machines don’t sleep, they can do assignments that are repeated. The AI technology fueling augmented analytics aids users take the best-informed decisions.
- Making organizations efficient: Wherever you have algorithms-powered tasks, that’s where AI is used mainly. The aim of this type of analytics is the automation of tasks. Doing so helps people save time and effort in data discovery and preparation while analyzing the data.
Role of Machine Learning in Augmented Analytics
Machine learning is a subset of AI that deals with the development and the study of algorithms that can learn from and make predictions around data. Machine learning is used in various applications, such as email filtering and computer vision, and has seen a recent resurgence in popularity due to the advent of big data and deep learning.
Augmented analytics is a term for machine learning to generate insights from data without human intervention automatically.
It is closely related to text analytics, artificial intelligence, and cognitive computing. However, it differs from rule-based predictive analytics or a predictive maintenance method because the latter requires additional rules to make a prediction and can provide predictions on subsequent data that is not available in the training data set.
Published at DZone with permission of Prasanna Chitanand. See the original article here.
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