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Have you heard about the use of Machine Learning in the financial market? One of the new technologies that have been gaining ground in several sectors, Machine Learning is an intelligent system that uses the principles of technological neural networks to simulate the functioning of the human brain.
Machine Learning is used to help manage different business models, including the financial market. To explain how Machine Learning applications are made in the financial market in practice, we have prepared this article on the subject. Good reading!
First, we need to talk about what Machine Learning is and how it is so important for the future of technology in general.
Machine Learning, or Machine Learning in translation into Urdu, is a category of Artificial Intelligence aimed at the continuous improvement of processes through the automation of various activities previously performed by humans.
For this process automation to happen, Machine Learning uses complex algorithms to analyze a large volume of data at the same time. In this way, it is possible to identify patterns, make predictions and gain insights.
Data Science is a science focused on unfocused data and information. The main objective of Data Science is data analysis to gain insights and answer questions based on reliable data and sources.
Because of their similar goals, Data Science and Machine Learning are two technologies that complement each other.
Machine Learning is a technology that has been used by several sectors, including the financial sector. As it is a sector that deals daily with a huge amount of data, Machine Learning in the finance area proves to be something super necessary.
The use of machine learning in the financial sector is important because with it is possible to perform predictive analyzes to have a better understanding of consumer behavior.
In addition, there are other reasons that justify the use of Machine Learning in the financial market, such as:
Increased productivity;
Improved customer experience;
Reduction of operating costs.
Initially, Machine Learning in the financial market began to be used due to the area's need to have more concrete predictions about the next market movements. Thus, they would be able to anticipate some actions and maximize their financial return.
Machine learning in the financial market can be used in different ways, depending on the objective and what you intend to achieve with it.
To exemplify the use of Machine Learning applications in the financial market, we brought some real situations in which this technology is applied:
In summary, process automation consists of a technique to eliminate repetitive day-to-day tasks and reduce bureaucracy. In the case of the financial market, process automation is one of the most common applications of Machine Learning.
Process automation in the financial market is used to:
Expand the portfolio of available services;
Improve the customer experience;
Optimize resources by directing them to the correct locations;
Reduce costs.
For this to happen, in practice, the financial market uses some technologies. For example, call center automation and the use of chatbots in customer service.
Machine learning in the financial market contributes to cyber security.
Algorithmic trading is a strategy used by the financial market to monitor market movements in real-time. In this way, it is possible to make decisions more assertively and intelligently.
With algorithmic trading, financial market professionals are able to identify patterns, forecast uptrends or downtrends in the stock market, and much more.
Credit analysis is already a recurrent and consolidated practice in the financial market. Basically, credit scores depend on a number of issues that are analyzed, such as the risk of breach of contract or risk of default.
To optimize this process, making it faster and more assertive, financial institutions invest in Machine Learning technology to analyze hundreds of data from customer profiles and make predictions of the risks that institutions run.
With the growing number of financial transactions and cyber crimes, financial institutions are betting on Machine Learning as a security strategy to detect fraud, identify risks and isolate cyber threats to the institution's systems.
The use of Machine Learning in financial institutions has seen a steady wave of growth due to its numerous benefits. Because it is still a recent technology, there are few professionals available to handle all the market demands. Therefore, Machine Learning specialists are highly sought after and have an above-average salary.
Firstly, to work with Machine Learning in the financial market, the professional needs to be a curious person and be willing to always be studying to update him on subjects related to machine learning and technology in general.
Next, it is important to have an affinity with topics related to Statistics and Programming, since many of its concepts are applied in Machine Learning. For example, in Statistics knowing how to interpret data is fundamental, whereas in Programming it is necessary to know how to program in some programming language.
In addition, you must also be interested in Data Science and know how to manage different types of databases in order to build a bank full of information.