AI in finance need not be scary

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Technologies have driven business progress by providing innovative and effective ways to solve business problems. The financial sector is one of the most accepting of innovation, and the growing pressure from fintechs has encouraged other businesses to act. This has driven rapid incorporation of artificial intelligence (AI) processes and machine learning (ML) models into standard processes in financial institutions, including to optimize decision making.

New methods are replacing traditional machine learning methods that were fairly easy to understand, explain and interpret, but less effective. It is obvious that the use of AI is essential for banks, insurers, telecommunications operators, the public sector, health care and industry. Financial institutions that do not use AI risk lagging behind competitors who make strategic decisions using AI-supported analytical systems.

Profiting from the wave of AI use

The use of artificial intelligence is changing the financial industry. Several factors have significantly increased the potential of its applications:

  • Big data. Financial institutions have collected data for many years, but they could not monetize its potential until recently.
  • Machine learning mechanisms. Data mining is not a new concept, and the financial industry has widely used it for years. However, modern analytical methods have expanded the range of approaches and methodologies available to analysts and developers, enriching analytical modelling processes.
  • Processing power and technological infrastructure. Modern in-memory technology (RAM processing) significantly shortens the modelling process and allows the use of demanding AI techniques. The time required to develop and implement analytical models has been radically reduced.

AI techniques for targeted solutions

Many of us associate AI with robots, chatbots and other machines that learn from historical data and support human processes. This is one application, but AI techniques also provide a toolkit for building targeted solutions.

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About Author

Łukasz Libuda

Łukasz is responsible for supporting SAS customers in the Central Europe region in the effective development and transformation of Enterprise Risk Management areas with particular emphasis on Asset and Liability Management (ALM), Integrated Balance Sheet Management, identification and management of Credit, Market, and Operational Risk, Liquidity Management from a managerial and regulatory perspective (Basel III/IV, IFRS9). Passionate about new emerging topics like finding the most effective approaches to ESG (Environment, Social, Governance) analytics, calculation, and reporting. Based on many years of professional experience, Łukasz supports organizations in unlocking growth by creating processes and developing risk management concepts at the strategic enterprise-wide level, planning and implementing stress test mechanisms as key tools for risk managers in turbulent times. With his team, he supports customers in protecting profits by implementing AI-based analytics and real-time decision-making processes for Credit Origination, Early Warning System and Collections, obtaining compliance in comprehensive Risk Management, Governance and Compliance. Łukasz education matches very well with his business profile. He graduated from the Warsaw School of Economics and was awarded two master's degrees: 1) Finance and Banking and 2) Quantitative Methods and Information Systems. Additionally, he was awarded a master's degree in International Management by the Community of European Management Schools (CEMS) and finished postgraduate studies in Audit, Financial Control and Accounting.

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