AI-Driven Orchestration Systems in Cloud-Native Financial Applications: A Framework for Next-Generation Investment Platforms
Description
This article introduces a novel framework for integrating artificial intelligence into the orchestration systems of cloud-native investment platforms. As financial institutions increasingly adopt distributed architectures, the challenges of coordinating workloads while responding to dynamic market conditions have grown more complex. Traditional orchestration often fails to account for the unique characteristics of financial workloads, resulting in suboptimal resource allocation and limited resilience during market volatility. The article addresses these limitations through a layered architecture that combines market data awareness with machine learning optimization techniques while maintaining the strict security and compliance requirements inherent to financial services. The article demonstrates how AI-driven orchestration can significantly improve resource efficiency, reduce processing latencies, and enhance system resilience during disruptions. The article’s modular design enables incremental adoption, allowing financial institutions to enhance existing infrastructure without wholesale replacement. This article bridges previously separate domains of financial market analysis and systems orchestration, establishing both theoretical foundations and practical implementation patterns for next-generation investment platforms. The article suggests that context-aware, adaptive orchestration represents a critical evolution for financial technology infrastructure facing increasingly dynamic market conditions.
Files
SJECS-477-2025-355-363.pdf
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(765.4 kB)
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