At a Glance
- Tasks: Lead portfolio risk analytics and deliver actionable insights for investment decisions.
- Company: Join Fasanara, a pioneering global asset manager in Fintech strategies.
- Benefits: Enjoy competitive bonuses, health benefits, generous leave, and fun team events.
- Other info: Collaborative culture focused on meritocracy and professional growth.
- Why this job: Make a real impact in the Fintech ecosystem while developing your skills.
- Qualifications: 5+ years in data analytics with strong Python and SQL skills.
The predicted salary is between 80000 - 100000 £ per year.
Founded in 2011, Fasanara is a global asset manager and technology platform managing c. USD 5.7 billion AUM (as of December 31, 2025) in Fintech strategies on behalf of pension funds and insurance companies in Europe and North America. With c.130 employees globally, we are a pioneer investor in Fintech Lending and Digital Asset investing. Fasanara manages the largest and longest-standing Fintech Lending fund in Europe and invests in early-stage Fintech companies via its venture capital vehicles, using its central role in the Fintech ecosystem to identify and back revolutionary new businesses.
Our Culture
We are strong believers in meritocracy, and we seek to reward people based on impact, judgement, and excellence in execution. We keep bureaucracy to a minimum, so decisions are made quickly and people have real ownership. Our environment is collaborative, inclusive, entrepreneurial, and built on trust. We set ambitious goals, work hard in a focused and sustainable way, and place a strong emphasis on teamwork, integrity, and quality in everything we do. We know we are only as good as our people, so we are deliberately building the firm around exceptional talent and diverse perspectives, and we support our leaders to grow, influence, and shape the future of the business.
The Role
The Risk Analytics Lead, VP is responsible for leading the development and delivery of portfolio risk analytics across Fasanara's Asset-Backed Finance (ABF) strategies. This role sits at the intersection of Risk, Investment, and Technology, translating complex portfolio data into actionable insights to support investment decisions, portfolio construction, and risk monitoring. The position combines strong technical expertise in data analytics and modelling with a commercial mindset, supporting multiple stakeholders including Portfolio Management, Capital Markets, and Investor Relations. The role also involves managing and developing junior team members, driving the evolution of the analytics platform, and ensuring high standards of data quality, governance, and scalability.
Responsibilities
- Portfolio Risk Analytics & Insights
- Lead the execution of portfolio risk analytics across ABF strategies, including concentration, exposure, performance diagnostics, and outlier investigations.
- Deliver clear, decision-ready insights to support the Risk and Investment teams.
- Monitor portfolio risk and limits, identifying emerging risks and escalating issues where appropriate.
- Develop originator-level analytics and monitoring frameworks, including performance tracking and early risk identification.
- Analytics Frameworks & Model Development
- Translate business and risk requirements into scalable analytics frameworks, including metric definitions, monitoring tools, and reporting outputs.
- Drive the development, enhancement, and validation of risk models, ensuring robustness and alignment with portfolio characteristics.
- Enhance scenario analysis and stress testing capabilities across portfolios under different market conditions.
- Ensure full documentation, reproducibility, and auditability of all models and analytics.
- Data & Platform Development
- Work closely with Tech and Data Engineering teams to improve the analytics platform, focusing on data quality, reconciliation, and scalability.
- Design and implement analytics using granular (loan-level) data across multiple originators and products.
- Standardise and automate analytics and reporting outputs to improve efficiency and consistency.
- Structure and harmonise heterogeneous datasets into consistent portfolio-level views.
- Stakeholder Collaboration
- Partner with Portfolio Management and Capital Markets teams to support portfolio construction, origination assessment, and strategic initiatives.
- Provide analytics and documentation for regulatory, audit, and governance processes.
- Support broader business functions including Investor Relations with data-driven insights.
- Communicate analytical findings clearly to both technical and non-technical stakeholders.
- Team Leadership & Execution
- Coordinate and oversee the day-to-day activities of the Risk Analytics team, setting priorities and ensuring timely delivery.
- Review team outputs to ensure quality, consistency, and accuracy.
- Mentor and develop junior team members, supporting their technical and professional growth.
- Manage multiple workstreams simultaneously, maintaining a strong ownership and execution mindset.
Requirements
Essential
- 5+ years of experience in data analytics within private credit, asset-backed finance, securitisation, or related fields.
- Strong understanding of ABF / securitisation fundamentals, including collateral analysis, portfolio monitoring, and structure mechanics (e.g. waterfalls, triggers).
- Advanced Python skills for data analysis, modelling, and production-level code.
- Advanced SQL skills for working with large and complex datasets.
- Strong experience designing and implementing portfolio analytics using granular data.
- Proven ability to analyse concentration, exposure dynamics, and performance trends across portfolios.
- Experience working with multiple datasets from different sources, including data standardisation and reconciliation.
- Solid understanding of risk modelling techniques, including implementation, testing, and documentation.
- Strong grasp of portfolio risk concepts and early warning indicators.
- Experience coordinating or mentoring junior team members.
- Ability to translate business and risk requirements into analytical outputs.
- Strong communication skills, with the ability to present insights in a structured and actionable way.
- Experience working cross-functionally with Risk, Investment, and Technology teams.
Desirable
- Experience in structuring or exposure to securitisation transactions.
- Familiarity with scenario analysis and stress testing frameworks.
- Experience with Git and collaborative development environments.
- Understanding of data engineering concepts (data pipelines, ingestion, transformation).
- Exposure to fintech lending platforms or non-bank lending environments.
- Interest in leveraging AI tools and technologies to enhance analytics capabilities.
Benefits
Competitive bonus scheme. Bupa health & dental, Cycle to Work scheme, enhanced pension, and generous annual leave. Enhanced parental leave, special leave allowances, and charity giving options. Regular team events, legendary summer & Christmas parties, knowledge sharing sessions, and quarterly town halls. Team lunches, dinners, Friday drinks, team sport activities.
Risk Analytics Lead, VP in London employer: Fasanara
Fasanara is an exceptional employer that champions a collaborative and entrepreneurial work culture, where meritocracy thrives and employees are rewarded based on their impact and excellence. Located in a dynamic sector, we offer competitive benefits including a robust bonus scheme, comprehensive health coverage, and generous leave policies, alongside ample opportunities for professional growth and development within a diverse and talented team. Join us to be part of a pioneering firm at the forefront of Fintech innovation, where your contributions will shape the future of asset management.
StudySmarter Expert Advice🤫
We think this is how you could land Risk Analytics Lead, VP in London
✨Tip Number 1
Network like a pro! Reach out to people in the industry, attend events, and connect on LinkedIn. You never know who might have the inside scoop on job openings or can put in a good word for you.
✨Tip Number 2
Prepare for interviews by researching Fasanara's culture and values. Understand their approach to risk analytics and be ready to discuss how your experience aligns with their goals. Show them you're not just a fit on paper but also in spirit!
✨Tip Number 3
Practice your storytelling skills! Be ready to share specific examples of your past work that demonstrate your expertise in data analytics and risk management. Make it engaging and relevant to the role of Risk Analytics Lead.
✨Tip Number 4
Don’t forget to apply through our website! It’s the best way to ensure your application gets seen. Plus, it shows you’re genuinely interested in being part of the Fasanara team.
We think you need these skills to ace Risk Analytics Lead, VP in London
Some tips for your application 🫡
Tailor Your Application:Make sure to customise your CV and cover letter for the Risk Analytics Lead role. Highlight your experience in data analytics, especially in asset-backed finance, and showcase how your skills align with Fasanara's needs.
Showcase Your Technical Skills:Don’t forget to emphasise your advanced Python and SQL skills! We want to see how you’ve used these tools in real-world scenarios, so include specific examples of your work with data analytics and modelling.
Communicate Clearly:When writing your application, keep it clear and concise. Use straightforward language to explain your analytical findings and ensure that even non-technical folks can understand your insights. This is key for collaboration!
Apply Through Our Website:We encourage you to apply directly through our website. It’s the best way for us to receive your application and ensures you’re considered for the role. Plus, it shows you’re keen on joining our team!
How to prepare for a job interview at Fasanara
✨Know Your Numbers
As a Risk Analytics Lead, you'll need to demonstrate your strong grasp of data analytics. Brush up on key metrics related to asset-backed finance and be ready to discuss how you've used data to drive investment decisions in the past.
✨Showcase Your Technical Skills
Make sure to highlight your advanced Python and SQL skills during the interview. Prepare examples of how you've implemented portfolio analytics or developed risk models, as this will show your technical expertise and problem-solving abilities.
✨Communicate Clearly
You'll be working with both technical and non-technical stakeholders, so practice explaining complex concepts in simple terms. Think of examples where you've successfully communicated analytical findings to diverse teams, as this will demonstrate your ability to bridge gaps.
✨Emphasise Team Leadership
Since the role involves mentoring junior team members, be prepared to discuss your leadership style. Share experiences where you've coordinated team activities or supported others' professional growth, showcasing your commitment to collaboration and development.