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The Age of ML-Driven Financial Solutions: A New Era in Fintech
• Machine Learning – The New Normal in Fintech?
• An insightful conversation with Sebastian Niehaus, CTO at SEKASA Technologies, about the transformative role of AI and machine learning in the fintech sector.
By JAKUB JAKUBOWICZ | 5 minutes read | August 09, 2023
In my recent conversation about the fusion of artificial intelligence (AI) and machine learning in the finance sector, I had the privilege of steering the dialogue with pointed questions. Guiding our deep dive was Sebastian Niehaus, a Machine Learning Engineer specializing in Quantitative Finance and the CTO at SEKASA Technologies . Sebastian’s vast expertise provided enlightening insights into the growing symbiosis of AI and fintech .
During our CTO chat, Sebastian and I delved into the world of AI and finance. Despite being miles apart, the conversation flowed effortlessly!
Now let’s dive into the world of Machine Learning and Fintech!
Jakub: Sebastian, tell us why should a financial firm look at integrating AI into its day-to-day business?
Sebastian: Quite simply, it enables the analysis of large amounts of data that cannot be analyzed in any other way, thus creating significant market advantages.
Finance is all about analysing and processing data. Regardless of whether we are talking about payment providers, investment firms, banks or market makers. Every market participant, no matter how small, carries out analyses with existing data, perhaps not with fancy algorithms but with other forms of analysis.
The problem with data, however, is that independent data points are usually useless, they only become interesting when context is added. This context can be added by comparing the data of the current case to similar cases or adding more related and unrelated data. This could be for example the integration of other markets or environmental data in investment decisions or a wider range of transactions in fraud detection.
Jakub: Looking from this point of view – what are AI and machine learning in general?
Sebastian: Artificial intelligence (AI) is the development of computing systems capable of performing tasks that normally require human intelligence, such as learning, reasoning, problem-solving, and decision-making.
Machine Learning is a subset of AI that focuses on training algorithms to learn patterns and make predictions from retrospective data to fulfill a specific task. Thus, it uncovers patterns and mechanisms to automate tasks or generates new knowledge about them.
AI or machine learning methods became that popular over the last few years because they are able to process a large amount of different data features. That is a large difference from the classical statistical models that we are using in finance since the 80s.
Jakub: That’s an interesting insight! So, what are the benefits of machine learning for FinTech companies?
Sebastian: In one sentence: They are using their full potential!
FinTechs are pure data producers and they have to deal with large amounts of financial and alternative data. Out of this data, they can discover new business potentials, secure current processes, make their decisions more transparent and improve the quality of their decisions.
Even if processes or especially decision processes are clearly defined and well working, it often makes sense to add machine learning algorithms to provide a second view and reduce the subjective error by humans. This could, for example, prevent investment companies from making FOMO investments.
Jakub: What is the motivation and business case for integrating AI?
Sebastian: It is often about securing competitive advantages, process optimization, or just answering specific questions. In addition, there are also topics such as future viability – which is an issue for very established financial companies, for example. These companies often don’t even know what potential lies in their data and come with the simple request: “We’d like to try out what can be improved with Machine Learning in our company”.
Let me make the answer more tangible with a few examples:
🟥 In investment funds, there is often the motivation to provide investors with more security and thus, of course, to develop a competitive advantage. For example, in a value investing approach, this can be adding a machine learning model as an additional control instance.
🟥 In the case of analyses in M&A consulting, for example, forecasts can take into account significantly more influencing factors and thus provide the buyer with more information about the potential target.
I can continue this list forever:
🟥 AI-driven automation can furthermore lead to reduced labor costs and increased productivity, resulting in significant cost savings for businesses.
🟥 Improved Product Development / Improved Portfolio-Structuring
🟥 Integrating ML into your progress will lead to enhanced efficiency. ML Tools can automate repetitive and time-consuming tasks, so the staff can focus more on important and value-adding tasks.
🟥 Identifying new customers
🟥 Personalized Customer Experience
🟥 Customer Service Automation: Identifying credit Failure risk / Credit Risk Assessment
🟥 Fraud Detection
🟥 Regulatory Compliance
🟥 Signal identification for stock markets prices, forex, and commodities
🟥 Price forecasts
🟥 Identifying market risks
🟥 Portfolio-Optimization
Sebastian: It is important to start with the business case and the current processes. This seems to be obvious, but it is common that this point is completely underrated and often missed.
🟥 Define Use Case / Business Case
🟥 Check current processes and set relevant targets
🟥 Define relevant, available, and needed Data
🟥 Data collection and preprocessing
🟥 Model and Infrastructure Set-up
🟥 Model Selection
🟥 Feature Engineering
🟥 Model Training
🟥 Model Evaluation
🟥 Deployment
🟥 Report / Output Design
🟥 Report Generation
🟥 Interpretation of results
🟥 Continuous monitoring and maintenance
🟥 It all relies on data availability and quality.
🟥 Robust IT infrastructure and computing power are needed.
🟥 Human resources with the right field of expertise and knowledge
🟥 Data privacy and security need to be considered at any time.
🟥 Integrating ML into given processes may lead to needed updates in the current process.
🟥 Understanding of results and the correct interpretation can be difficult.
🟥 Models need to be tested and checked continuously.
🟥 Continuous monitoring and maintaining.
This may sound like a lot, but many of these tasks can be standardised and automated. And once integrated, the benefits quickly outweigh the effort.
Jakub: What you have mentioned earlier begs for a question – how adaptable are machine learning models to changing environments?
Sebastian: Machine learning models are highly adaptive and must be able to respond quickly to changing environments. They can be adapted to changing environments through techniques such as retraining on updated data, transfer learning, and continuous monitoring. This ensures that the performance of machine learning models remains relevant and accurate over time.
Example: For Trading companies.
Trading signals for forex or commodities can change for example through changes in the behavior of other market participants. We can see this for example through the rise of trading apps, but also through more advanced events.
For this reason, companies that are already working with quantitative methods should always consider keeping their algorithms updated and include fresh ideas.
Jakub: Sebastian Thank You for an insightful conversation. We’re excited to see more growth and innovation in this field!
Sebastian: My pleasure, Jakub. I appreciate this platform as it allowed us to discuss the exciting progress in our field and its significance in the ever-changing digital landscape.
- Jakub: Sebastian, tell us why should a financial firm look at integrating AI into its day-to-day business?
- Jakub: Looking from this point of view – what are AI and machine learning in general?
- Jakub: That’s an interesting insight! So, what are the benefits of machine learning for FinTech companies?
- Jakub: What is the motivation and business case for integrating AI?
- Jakub: What you have mentioned earlier begs for a question – how adaptable are machine learning models to changing environments?