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Patterns, trends and correlations that may go unnoticed in text-based data can be more easily exposed and recognized with data visualization software. Data virtualization is becoming more popular due to its huge benefits. billion on data virtualization services by 2026. Companies are expected to spend nearly $4.9
This is only clearer with this week’s news of Microsoft and OpenAI planning a >$100bn 5 GW AI data center for 2028. This would be its 5th generation AI training cluster. They are currently part way through Gen 3 deployment, while Gen 4 is due in 2026. comparable to much larger and more expensive models such as GPT-4.
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It’s crucial to grasp these concepts, considering the exponential growth of the global Data Science Platform Market, which is expected to reach 26,905.36 billion INR by 2026, with a CAGR of 27.7%. Similarly, the Data and Analytics market is set to grow at a CAGR of 12.85% , reaching 15,313.99 billion INR by 2027.
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