In the context of the 4.0 industrial revolution taking place strongly, artificial intelligence (AI) has been gradually changing the face of many industries, including finance. With the ability to process and analyze large amounts of data, make accurate forecasts, and automate many complex processes, AI promises to bring many opportunities for financial institutions to improve operational efficiency, optimize investment decisions, and improve customer experience. However, besides the potential benefits, the application of AI in finance also poses many technical, ethical, and legal challenges.
The Opportunity of AI in the Finance Industry
One of the most prominent opportunities that AI brings to the financial industry is the ability to optimize investment decisions. With the power of data analysis and machine learning, AI models can quickly process large volumes of market information from various sources such as news, financial reports, and transaction data to make accurate forecasts of price trends, helping investors make informed decisions and minimize risks. AI-based automated trading systems also allow for high-speed execution of buy/sell orders in real time, helping to maximize profits and limit the negative impact of market volatility.
AI also opens up opportunities for the development of personalized financial services to meet the increasingly diverse needs of customers. AI-based investment advisory applications (robo-advisors) can analyze each individual's risk profile, financial goals, and investment preferences to make investment recommendations that are appropriate for each person. AI also helps banks and financial companies better understand customer behavior and preferences through data analysis, thereby building product and service packages that are suitable for target customer groups and providing increasingly better experiences.
Another important benefit of AI is its ability to enhance risk management and financial security. AI algorithms can help predict and detect fraud, money laundering, or suspicious activity by analyzing behavior and looking for unusual patterns in massive transaction databases. This helps financial institutions reduce risk and increase efficiency in complying with anti-money laundering (AML) and terrorist financing regulations.
The Challenge of AI in the Finance Industry
While the potential of AI in finance is huge, implementing this technology also poses many challenges. One of the biggest hurdles is data. For AI models to work effectively, they need to be fed with large volumes of high-quality data that is complete, reliable, and trustworthy. However, many financial institutions are still using outdated IT systems, making it difficult to integrate and exploit data. Complying with personal data protection regulations such as the EU’s General Data Protection Regulation (GDPR) also adds complexity to data collection, storage, and processing.
Another key challenge in the application of AI is ethics and transparency. AI models can be biased and discriminatory if they are trained on inappropriate data or if the algorithms are biased. Using AI to make decisions without explaining its reasoning also raises concerns about fairness and transparency. This is a major challenge, requiring financial institutions to develop and adhere to strong ethical rules to ensure that AI is deployed responsibly and fairly.
The challenge of skills and human resources is also a difficult problem. Developing and operating AI systems requires a team of highly qualified experts in fields such as computer science, statistics, and econometrics. However, human resources with these skills are currently very scarce. Financial institutions need to invest heavily in training and skills development, and attract and retain talent to build internal AI capabilities.
On the regulatory front, regulators are faced with the challenge of developing an appropriate regulatory framework to govern the use of AI in the financial industry. This requires a balance between facilitating technological innovation and protecting the interests of users and investors. The lack of regulatory clarity has led some financial institutions to hesitate in adopting AI due to concerns about potential legal risks.
Solution Oriented
To effectively leverage AI opportunities and overcome challenges, financial institutions need to adopt specific strategic directions and actions. First, they need to build a strong data foundation through investing in modern technology infrastructure, integrating distributed data sources, and applying strict data governance processes. This will help provide important input sources for AI algorithms.
Investing in cybersecurity should also be a top priority. Financial institutions need to strengthen security measures, applying advanced technologies such as encryption and multi-factor authentication to protect data and systems from cyber attacks. At the same time, employees need to raise awareness of information security through regular training and drills.
To solve the problem of human resources, organizations need to promote internal training programs, organize seminars and conferences to improve employees' knowledge and skills in AI. Cooperating with educational institutions and research institutes to create specialized training programs and degrees in the field of AI is also a solution that needs attention.
On the ethical side, financial institutions need to issue and strictly enforce ethical principles and standards in the development and use of AI, ensuring fairness, non-discrimination, privacy protection, and social benefits. Close cooperation between financial institutions, technology developers, regulators, and other stakeholders will help promote the transparent and responsible adoption of AI.
Finally, to adapt to the regulatory environment, financial institutions need to proactively participate in the process of developing and perfecting regulatory frameworks related to AI. The perspectives and practical experience of the financial industry will help policy makers build an effective legal framework that facilitates innovation and protects consumer rights at the same time.
Conclude
Like a new door opening, AI has been and is completely changing the face of the financial industry. The opportunities to optimize investment decisions, improve customer experience, and enhance financial security are creating strong motivation for organizations to accelerate the application of this technology. However, the road ahead is still full of thorny challenges with data, ethics, human resources, and legal.
To turn potential into reality and overcome obstacles, the financial sector needs to move towards a systematic and synchronous strategy. Focusing on building a data platform, enhancing cybersecurity, developing high-quality human resources, adhering to ethical values and supporting the completion of the legal framework are urgent solutions in the current period.
Success cannot be achieved overnight, but requires deep and long-term cooperation between financial institutions, technology companies, researchers, and regulators. Only when all parties work together can we fully exploit the potential of AI, bringing benefits to the financial sector in particular and society in general.
On the journey to the future, the financial industry is facing great opportunities and challenges from the AI revolution. However, with the right strategic direction, decisive action and joint efforts of stakeholders, we believe that AI will become the key to financial success in the digital age, bringing sustainable and long-term value to investors, customers, and the whole society.
Mr Dang Xuan Thang
Technology Director
HVA Investment Joint Stock Company