VP, Head of Securitization and Structured Finance

TeamSec
London
5 months ago
Applications closed

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About TeamSec:


TeamSec is at the forefront of fintech innovation, specializing in securitization-as-a-service solutions powered by AI and machine learning. With a presence across Turkey, GCC, and MENA, we are transforming capital markets and structured finance by enabling efficient, scalable, and transparent access to liquidity for institutions and corporates.


Role Overview :


We are looking for a seasoned professional with extensive experience in capital markets, securitization, and structured finance to lead our Securitization and Structured Finance division as VP, Head of Securitization and Structured Finance. This role is crafted for a securitization

leader who not only brings a proven track record in managing large portfolios and complex

asset-backed transactions but also has the vision to drive innovation and expansion across our

markets.This role will suit someone with in-depth knowledge of residential, consumer, and commercial assets, especially someone experienced in Single-Family Rental (SFR), collateral valuation, and risk management. You will play a key role in designing and executing securitization transactions, advising clients on optimal asset-backed solutions, and leading a high-performing team to expand TeamSec’s offerings.


Key Responsibilities:


Securitization Structuring & Execution:Leverage your deep expertise to lead end-to-end securitization for RMBS, CMBS, ABS, and innovative synthetic structures, including Shariah compliant transactions when applicable.

Client Solutions & Advisory:Work directly with clients, understanding their financing needs, and provide tailored advisory on securitization structures. Design strategies that maximize profitability while managing risks.

Portfolio Management and Loan Pricing:Utilize your background in managing

portfolios worth billions to advise on optimal pricing, structuring, and execution strategies. Apply loan pricing and portfolio management expertise developed through advisory roles in top financial institutions.

Risk Management & Forecasting:Oversee market risk by developing and implementing forecasting models for delinquent units and loss allowances. Ensure rigorous risk management across all securitization transactions.

Credit Enhancement & Valuation Analysis:Lead credit enhancement strategy design,

implementing mechanisms like over- collateralization and reserve accounts, and guide valuation and pricing analysis for structured finance products.

Team Leadership:Mentor and develop a skilled team, fostering growth in financial

modeling, pricing, and securitization expertise, ensuring your knowledge and skills are passed on to future securitization leaders.


Key Qualifications:


Experience:Over 15 years in capital markets, asset management, and securitization, including experience in residential, consumer, and commercial assets

Educational Background:Mathematical Finance, Risk Management and related fields.

Technical Expertise:Proficiency in Intex, Bloomberg, VBA for Excel, and financial

modeling. Exceptional skills in cash flow waterfall modeling, pricing, and valuation.

Risk & Market Oversight:Proven ability to oversee market risk, monitor trading activities, and contribute to regulatory submissions (e.g., CCAR).

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