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In the rapidly developing field of Artificial Intelligence, it is more important than ever to convert unstructured data into organized, useful information efficiently. Recently, a team of researchers introduced the Neo4j LLM Knowledge Graph Builder , an AItool that can easily address this issue.
Datasets for Analysis Our first example is its capacity to perform dataanalysis when provided with a dataset. Imagine equipping generative AI with a dataset rich in information from various sources. Idea Generation This isn’t isolated to just data analytics.
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The second course, “ChatGPT Advanced DataAnalysis,” focuses on automating tasks using ChatGPT's code interpreter. teaches students to automate document handling and dataextraction, among other skills. Up-to-Date Industry Topics : Includes the latest developments in AI models and their applications.
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Summary: AI is revolutionising the way we use spreadsheet software like Excel. By integrating AI capabilities, Excel can now automate DataAnalysis, generate insights, and even create visualisations with minimal human intervention. You can automatically clean, organise, and analyse large datasets with AI.
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