Credit Risk – The Bank Data Challenge In Frontier Markets

The contemporary world is powered by data and advanced technology. The concept of the global village has been further strengthened in the past decade with the proliferation of internet technology. Every industry that relies on the use of modern technology is leveraging data to grow exponentially. Be it the e-commerce industry, the marketing industry or the finance industry, they have all changed drastically in the last decade. Today we have tools like contextual banking and Robo-advisors only because we have a huge database to rely upon. Let’s delve deeper into the role of big data in banking.

Big Data In Banking

Banks and financial institutions today rely heavily on data to make more informed, improved and result-oriented decisions in the business. From analysing customer behaviour to predicting market trends and improving organisational processes, there is a whole lot that the banking industry is using data for. With the advent of AI and Machine Learning, improving internal process and increasing general efficiency has been a piece of cake. Robotic process automation technology also helps to automate a whole lot of work that was earlier performed by using human labour. This helps the organisation to save a lot of time, money and reduce the error to zero which is highly beneficial to players in the banking and finance industry. In addition to this, it also helps in boosting cyber security and eliminating the risk elements.

Data Challenge In Frontier Markets

After the global financial crisis, the banking and finance industry has been very rigid in terms of regulatory requirements to avoid any kind of unfair practice that may lead to future crises. Minimizing the credit risk has been a priority for all financial institutions. From a broader perspective, the process of credit risk assessment includes gathering relevant information about the borrower, analysing the information collected and then making a decision as to whether the credit risk profile of the borrower is acceptable or not. On the technical side of it, this requires applying various financial analysis techniques and predicting future cash flows based on the data obtained.
The whole credit risk analysis process can be only as good as the information collected about the borrowing party. In the case of frontier markets, collecting the relevant data or information is a challenge. The accuracy of information gathered is questionable, which further adds up to this blunder is the challenge of consistent analysis across the credit management system. A truly effective credit risk analysis requires the right kind of information

The Basel committee guidelines have set certain standards and regulations that are to be followed by banks to maintain a healthy global economy. These measures include maintaining the required capital reserve amount, putting a risk evaluating methodology in place and explaining the same to authorities. As a result of these benchmark standards, players in this industry require sufficient data to back their judgment, satisfy the regulatory bodies and maintain their presence in the global markets.

Apart from the seasoned players, there are many newbies in the industry especially in the frontier markets where there is comparatively less competition. The big players already have years of experience and relevant data to adhere to guidelines and make accurate predictions. When it comes to the nascent players in the industry they face the challenge of default data shortage for various asset classes and other relevant data from clients.

Another challenge that the banks or other financial institutions face in the frontier markets is having a proper model in place to analyse both quantitative and qualitative aspects of the data gathered. Quantitative data can be easily evaluated and assessed, when it comes to qualitative measures it’s a tough nut to crack. For example, how do we compare and incorporate the effect of weak management vs. robust management practice? The need to build models that can easily incorporate qualitative aspects of information is paramount.

How is Imarticus Placement Assistance Helpful?

Ayush Shahi spills the beans on the switch from Engineering to Investment Banking with Imarticus Learning.

I did my graduation in Mechanical engineering, after which I joined Imarticus Learning. At Imarticus, I opted for the CIBOP course, which focuses on investment banking operations. Right after having completed the course, I got placed in the CITCO group of companies. I’ve been given a really good package, and I’m ecstatic to have achieved all my targets.

The Mentorship at Imarticus Learning was great.

The Investment Banking Training program not only developed me as a person but also as a professional. The various case studies that I came across during the course, developed my thought process and this will definitely help me in my career. I’ve gained a lot of confidence throughout the duration of this course.

Imarticus’ Placement Assistance was of great help to me.

Today, as students, the biggest challenge we face is getting placed/hired. Imarticus really takes care of this aspect during the course. Despite coming from a different background, I got hired in the very first interview with a great company and got a fantastic package. I’m thrilled with the placement services that Imarticus provides.

My life has changed a lot since I joined Imarticus. I have an entirely new set of targets and goals in my life now. I have developed a professional approach to whatever I do and have become a more confident person overall.

Imarticus is beneficial for both fresher graduates and working professionals.

Imarticus has well-equipped training facilities with experienced trainers who have a sound knowledge and understanding of the subjects they teach. The institute thrives on developing professionalism within you, which is beneficial for freshers and working people alike. If I were to give my Imarticus Learning reviews as a score, I would definitely give Imarticus full marks!

As I come from an engineering background, everything I learned from CIBOP was completely new to me. That really nurtured my excitement and bolstered my interest in financial markets. Even now that I’ve been placed, I would like to keep learning as I move forward in my career, all thanks to Imarticus Learning!

R – What’s in it for me?

R is a programming language widely used in data analytics, research and statistical computing. It can be used to retrieve, clean, analyze, visualize data, which makes it a hot choice of data analysts, statisticians and researchers. What makes R so popular is the ease of presenting the results as a presentation or a document.

Its syntax is very expressive, and its interface is very user-friendly which increases its popularity year after year. Here is why you should learn R and what is in it for you. Considered as one of the best tools for data scientists, R is considered as the bridging language of data science.

According to the survey conducted by O’Reilly Media in 2014 to learn about the popular tools among the data scientists, R turned out to be the most popular amongst the programming languages.

Why is R Used in Graphics and Statistical Computing?

  1. R Programming is an Open Source

Most of the R packages are licensed under GNU General Public license terms and you can download it for free and use them even for commercial purposes

  1. Cross-Platform Interoperability

In today’s technology-driven world, it is very important for any program to be flexible and adaptable. The ability to be able to run on popular platforms like Windows, Mac, and Linux makes R a popular choice.

  1. Career Prospects

Data science training and proficiency in R is highly desirable for software job openings. It makes you stand out from the crowd when you apply for a job.

  1. Popular Programme Among Tech Giants

Popularity and preference among tech giants show the potential of a programming language. R exhibits great potential this way. Better data analytics makes R a hot choice for many companies to aid them in the decision-making process. Learning R thus increases your chances to work with market leaders.

Companies Using R

As mentioned earlier, R is the hot choice amongst the market leaders. Listed below are some examples of renowned R users and an indication on how it helps them.

  1. Facebook – To analyze user behavior by considering profile pictures and status updates.
  2. Google – To enhance the effectiveness of ads and economic forecasting.
  3. Twitter – To visualize the data and for semantic clustering
  4. Microsoft – Uses R for a myriad of purposes that it eventually acquired Revolution R company!
  5. Uber – To analyze various user statistics
  6. Airbnb – To scale data science.
  7. IBM – The extensive application of R made them join R Consortium Group
  8. ANZ – To create and analyze credit risk modeling.

Real-World Application of R Programming

  1. Data Science

R programming facilitates real-time data collection and thus, makes it an extremely useful tool for data scientists. They can perform predictive as well as statistical analysis with these data. It also helps to create visualizations and to effectively communicate the results to respective stakeholders.

  1. Statistical Computing

R is very simple highly user-friendly that even a non-computer professional can import data from requisite sources and analyze them to create better results. The excellent charting capability of R program helps you to create good visualizations also has charting capabilities, which means you can plot your data and create outstanding visualizations from a given dataset.

  1. Machine Learning

R programming has found its application in machine learning as well. Machine learning professionals use R to implement the algorithms in various fields including marketing, finance, retail marketing, genetics research, and healthcare to mention some.

Conclusion

Most suited for graphics, statistical analysis and data visualization R is the most desirable tool that is leading the world of computer programming. One of the most preferred programs by the market giants, Learning R offers better career prospects.