As a Lead Quantitative Analyst you will execute proprietary research pertaining to various types of credit rating models, such as default models, cashflow models, capital models, regression models covering asset classes of RMBS, ABS, CMBS, Covered Bond, Structured Credit, Corporates, Financial Institutions and Sovereigns.
The Credit Quant Modeling team will collaborate with members from the Credit Ratings, Credit Practices, Independent Review, Data and Technology teams to create class leading models that are as innovative as they are easy to understand in the marketplace.
You will be involved in development of model frameworks from prototype phase to a fully-fledged, scalable, and client-facing service.
Leveraging deep principles of Statistical, Machine Learning, AI principles and built on massive amounts of Financial datasets.
Often, these services must be integrated into organization's platform of financial products, so that our clients can use these software tools in the investment decision-making process.
We are looking for an individual who possesses strong Econometric knowledge coupled with technical skills and leverage them to build efficient model verification frameworks for evolving FinTech solutions.
Alongside the person should have a passion for investment research.
Responsibilities :
Team Leadership : Manage and mentor a small team of 2-4 quant analysts, providing guidance on modeling techniques and fostering a collaborative work environment.
Strategic Decision-Making : Take responsibility for assessing the statistical significance of variables and determining their inclusion in models, ensuring robust and expected model performance.
Model Oversight : Oversee the entire modeling process, from initial development through validation, and UAT ensuring that all models meet regulatory and internal standards.
Stakeholder Engagement : Engage with senior management and other internal stakeholders to present modeling results and insights, influencing strategic decisions based on quantitative analysis.
Innovative Review Methodologies : Develop and implement innovative model review methodologies to execute regulatory reviews and enhance the accuracy of statistical models.
Model Building Blocks : Lead initiatives to develop reusable model building blocks to enhance accuracy and efficiency.
Leverage advanced Python coding techniques to streamline workflows.
Ensure that the models are aligned with latest Morningstar DBRS technology infrastructure.
Requirements :
Minimum of 7-11 years of relevant experience working in Credit Modeling / Model Validation roles.
Qualifications : MBA (Finance) / BTech / PHD (Math) from a Tier I college.
Knowledge of finance, statistics, behavioral sciences.
Familiarity fixed income products.
Strong Analytical skills.
Experience with large databases / datasets preferred.
Knowledge and proficiency in a programming language (Python and packages as NumPy, Pandas, SciPy).
Familiarity with AWS infrastructure is considered an added advantage.
Experience working with large data / Data Warehouses.
Morningstar DBRS is an equal opportunity employer.