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No matter what market you operate in, AI is critical to keeping your business competitive. Until recently, discussion of this technology was prospective; experts merely developed theories about what AI might be able to do in the future. Today, integrating AI into your workflow isn’t hypothetical, it’s MANDATORY.
Using the DirectX analytics interface can enable you to pick out important trading insights and points, which simplifies algorithmic trading. For example, when your trading algorithm makes losses or a particular threshold or condition is met. Pick out the different market emotions or trends. This is according to Danyel Fisher.
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