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FinTech

AI in Finance and The Machine Economy

AI in Financial Transactions and Economic Modeling

AI-Driven Financial Forecasting and Market Predictions

Financial forecasting is a core area where AI excels. Microsoft Research has developed numerous deep learning models and platforms for market prediction. For example, Microsoft’s open‐source Qlib platform provides high‐performance infrastructure for AI‐driven quantitative investment research 1. It enables end‐to‐end workflows (from stock trend prediction to portfolio optimization) and accommodates the data‐driven nature of AI in finance 2 1. Google Research introduced advanced neural architectures like the Temporal Fusion Transformer (TFT), an attention‐based model that achieved state‐of‐the‐art multi‐horizon forecasting with interpretable insights into market dynamics 3. TFT combines recurrent layers for short‐term patterns with self‐attention for long‐term dependencies, helping analysts understand which factors drive predictions 3. On the industry side, Amazon’s AI teams have applied deep learning to large‐scale time‐series forecasting. Amazon scientists note that “some of the world’s most challenging forecasting problems can be found inside Amazon or posed by AWS customers,” spanning demand prediction, capacity planning, and workforce scheduling 5. By using “deep learning and probabilistic methods”, Amazon improved forecast accuracy and efficiency across these business and financial scenarios 5. Such advancements in AI‐driven forecasting are directly translatable to financial markets – hedge funds and banks are beginning to leverage these models to predict asset prices, volatility, and market trends with increasing precision.