Data science and artificial intelligence applications are rapidly adopted for a range of applications in finance. With the increasing use of cloud computing, the internet of things, blockchain systems,etc., large volumes of financial data are available in huge varieties today. Because the technologies in the financial services are evolving rapidly, as data is largely unavailable and analytics is primary concern, developments should be watched closely. Breakthroughs of Data science in trading and risk management can contribute to the growth of financial services in a safe and secure pathway.
Applications of AI & Data Science in Trading
Data science is evolving as one of the prominent applications in every industry. Analyzing raw data and driving meaningful insights acting as a fuel to generate valuable output for the industry. Financial industry especially, in vital sectors like trading, relying on quant for longer periods is no longer valuable. It is time that traders should think about analyzing data. Below mentioned are the applications of data science that can be leveraged while trading for better returns.
1. Risk analysis:
Miscalculated risk management can subsequently affect trading companies and individual traders alike. The risk analysis and management is the method through which investors and traders identify, analyze, and measure decisions related to trading. Risk analysis is important because traders are losing millions from years, without any prior knowledge in risk analysis and management. Leveraging data science in predicting subjective risks and taking actions according to future market trends help in making better decisions related to trading. And an important aspect of leveraging risk analysis is to generate a report on the creditworthiness of the customer.
The financial institutions store information about the various stakeholders. And the stored information may get affected by originated risks from competitors, markets, trends. With a predictive analytical model for risk analysis, the companies can build advanced strategies that win clients and customers trust, and increase security for the company.
2. Real-time analysis:
Most often businesses use traditional statistical tools to perform data analytics. And the trading institutions using these can perform only historical data analysis. And with evolving technologies, real-time data analysis can be performed to make on-demand decisions. And to withstand changing and fluctuating market trends, the trading business needs to leverage data science tools. Data science tools can analyze real-time data and it can predict the insights for making decisions in real-time.
3. Consumer analytics:
Personalized customer service is a major operation for financial business. For instance, financial institutions like banks have to segregate, analyze, and then take actions on customer data, and it is a time-consuming process. Customer data is available in both structured and unstructured formats. Analyzing unstructured data and driving meaningful insights is a complicated task.
Data science technologies can be leveraged to analyze unstructured data, and it can drive real-time insights on customer’s account status, credits, life-time value, and identify new pathways for cross-selling their services. And the business using advanced data science technologies can make better decisions related to customer offerings by performing analysis.
4. Fraud analysis:
Fraud is the biggest concern for any financial institution. especially in the businesses of trading. With increasing applications for trading, it has raised the bar of being a victim of fraud. Preventing and detecting fraud, protecting clients data, and winning customer trust are the biggest challenges.
Data science and machine learning tools can detect the anomalies from previously committed fraud. And these tools can predict the chance of occurrence of the same activity in the future time. Through anomalies detection, the companies can segregate and cluster data that is highly suspicious. And the financial institutions leveraging machine learning tools can identify the unusual patterns in customer data and further investigate it.
5. Algorithmic trading:
Algorithmic trading is the automated process for executing trading and placing orders by utilizing trading instructions to account for variables such as price, volume, and trading time. And it is considered that 40% of the world performs algorithmic trading and in the US, the trading market contributes 70% towards algorithmic trading. Advantages of algorithmic trading include; instant and accurate trade order placement, Deciding trade timing to avoid significant price fluctuations, and trades are executed at the best possible prices to minimize future risk of losses.
6. Stock valuation:
Stock valuation is the process of leveraging data science models to predict stock prices using a price-to-earnings ratio to detect the value of the stock. The data tools can predict market trends and advise a reasonable trading price with minimum risk and high returns. However, these models are less reliable with a minimum quantity of data. If the model is practiced for analyzing large volumes of data, the outputs are more predictable. An AI integrated data analytical tools can act better as stock advisors.
The role of data science has a vital impact on the field of trading. And the prominent areas where the data science, AI, and machine learning technologies leveraged today are risk management, fraud analysis, customer services, and in various forms of trading operations. From anomaly detection to prevent fraud to predicting future pricing by observing market trends are wide areas for performing data analysis. And the data science models can help traders in minimizing risk and maximizing future returns. If you resonate with our article on data science in trading, please share your thoughts with us.