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Overcoming Cultural and Technical Challenges in Automating Currency Risk Management

With a turnover of more than $7 trillion per day, the global foreign exchange market provides a challenging backdrop for businesses engaged in international trade. This is a highly volatile environment, with currency prices fluctuating based on factors such as geopolitics, major world events, and the macroeconomic health of the countries whose currency is being traded.

This is where currency risk management and automation can play critically important roles in helping cross-border trade activity. Currency risk management involves strategies to mitigate financial losses due to currency fluctuations. Automation refers to using advanced technologies like artificial intelligence (AI) and machine learning (ML) to predict and manage these risks more efficiently.

The ability to use full automation to tackle currency risk is becoming increasingly achievable. Full automation harnesses technology to provide real-time insights, reduce human error, and make more efficient, data-driven decisions in currency trading and risk mitigation.

But despite the availability of technology to achieve this, several cultural and technical obstacles hinder the full implementation of automation in currency risk management.

Cultural considerations

Firstly, there is the underutilization of currency risk management strategies. Many organizations don’t actively engage in managing currency risks. A limited understanding of the benefits of currency risk management or a misconception that it’s irrelevant to their operations makes these organizations even more vulnerable to exchange rate volatility.

Finance professionals, including CFOs, also rely strongly on human consultants. This traditional approach sees enterprises rely on human expertise to formulate risk management policies and conventional banking methods to execute hedging transactions.

Many financial professionals fear automated decision-support processes, resulting in them overlooking the potential efficiencies and insights provided by these modern solutions. Without a clear grasp of how automation works and its benefits, finance professionals may view automated systems as unreliable or too vague, therefore remaining 'stuck' in their more traditional, manual risk management methods.

Technical hurdles

Beyond the cultural, technical challenges also limit the adoption of automated currency risk management solutions.

The main one stems from the hardware and software costs of transitioning to automated systems. It also requires recruiting and retaining skilled technical staff capable of developing, managing, and maintaining these systems.

Another challenge is that of the high concentration of data. Effective automation relies on the integration of several types of data, including internal financial and operational data as well as external currency market data. The challenge lies in aggregating this data in a way that is both secure and accessible for the automated systems.

There’s also the issue of enterprise resource planning (ERP) and legacy system connectivity. Many current financial systems are outdated and weren’t designed with modern connectivity in mind. Integrating these systems with advanced ERP solutions and automated platforms often requires specialized integration to ensure that automated systems can effectively communicate with existing databases and financial tools.

Structural and cost hurdles

The financial industry's structure, characterized by a separation between various service providers like banks, brokers, and ERP system providers, significantly complicates the implementation of a unified automation strategy. This fragmentation means that integrating various systems and services for a streamlined approach to currency risk management often involves navigating a complex web of protocols and interfaces.

Additionally, the costs associated with infrastructure development and transactions with liquidity providers can be prohibitive, especially for smaller businesses or those new to automated financial systems. These costs include not only the initial setup and integration but also ongoing expenses related to maintenance, updates, and possibly transaction fees.

Overcoming the obstacles

In addressing these challenges, organizations can consider several key strategies. Firstly, embracing AI becomes crucial. Automated solutions that leverage this technology represent the most efficient approach to managing complex currency issues. Not only do these intelligent, automated systems use best practice methodologies to reduce the likelihood of human error, but they can also process vast amounts of data to uncover patterns and insights that traditional methods might miss.

Secondly, promoting ERP connectivity and API-driven solutions is vital. By using cloud-based, real-time, and modular solutions, businesses can achieve better integration with their existing ERP systems. This facilitates the efficient flow of financial data, enabling real-time analysis and response to currency fluctuations.

It also becomes important to rethink traditional banking models. Moving towards Banking as a Service (BaaS) solutions and neobanks for liquidity management can offer more agility and flexibility than traditional banking. These modern banking approaches often provide more agile information connectivity, competitive rates, lower fees, and faster services.

Collaborating towards a unified goal

The path towards full automation in currency risk management requires a concerted effort from all stakeholders. With this in mind, I urge businesses, financial institutions, and technology providers to collaborate closely. In this way, we can unlock the full potential of automation in currency risk management to help ensure that corporations and institutions which engage in cross-border trade enjoy financial stability and sustained growth in an increasingly globalized economy.

 

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Benjamin Avraham

Benjamin Avraham

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Okoora

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This post is from a series of posts in the group:

Artificial Intelligence and Financial Services

Artificial Intelligence and Financial Services


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