Automating credit portfolio management enhances its operational efficiency. Learn more in our latest blog.

Corestrat Blog

The Role of C-Level Executives in Leading Digital Transformation in Lending

The digital transformation of lending, driven by automation, presents both significant opportunities and challenges for financial institutions. C-level executives play a crucial role in navigating this landscape, from setting the strategic vision to fostering a culture of innovation and managing the complexities of implementation.

How Do Digital Lending Automation Platforms Maximise ROI for Lenders?

Digital lending automation platforms are revolutionising the lending industry by offering numerous benefits that maximize ROI. Automation gives lenders a competitive edge in the rapidly evolving financial landscape by reducing operational costs, enhancing customer experience, improving risk management, and enabling scalability.

How Does an Intelligent Decisioning System Help Understand Customer Behaviour For Targeted Lending?

Intelligent decisioning systems employ advanced analytics, business rules, and machine learning models to derive actionable insights from vast amounts of customer data and behaviour. Leveraging AI and machine learning, these systems provide superior data analysis, personalised insights, and predictive analytics, resulting in improved credit accessibility, targeted offers, and an enhanced customer experience.

Model.ai Revolutionising Data-Driven Decision Making

Model.ai: Revolutionising Data-Driven Decision Making

Building accurate predictive models from raw data is a daunting and time-consuming task, requiring teams of data scientists and analysts. Model.ai, however, automates this intricate process, enabling businesses to swiftly make data-driven decisions with remarkable precision.

How Can Alternative Data be Used for Credit Risk Assessment

How Can Alternative Data be Used for Credit Risk Assessment?

Alternative data offers a transformative opportunity for the financial industry to enhance credit risk assessment. By providing a more inclusive, accurate, and real-time evaluation of creditworthiness, it enables lenders to make better-informed decisions and extend credit to a broader segment of the population. Additionally, even for those with robust credit files, traditional credit data, at times, provides an incomplete picture of someone’s full financial situation and repayment risk.

What are the regulatory compliance requirements for credit portfolio management

What are the regulatory compliance requirements for credit portfolio management?

Adhering to credit portfolio management regulations is more than mandatory; it’s a strategic advantage. Fintech companies that prioritise compliance not only sidestep regulatory issues but also earn the trust of borrowers and investors. With the regulatory landscape for credit portfolio management being multifaceted and constantly evolving, let’s delve into the most prominent ones.

How do predictive models help in credit scoringscoring

How do predictive models help in credit scoring?

Credit scoring plays a pivotal role in building a sustainable and profitable lending business. It allows for a data-driven assessment of a borrower’s creditworthiness, impacting loan approvals, interest rates, net margins, and overall risk management. By harnessing the power of data and fostering a collaborative environment, predictive models in credit scoring are revolutionising financial accessibility and credit risk management.