Data Scientist

Posted 8 Days Ago
Be an Early Applicant
Manila, Metro Manila, National Capital Region, PHL
In-Office
Mid level
Fintech • Payments • Financial Services
The Role
Design, implement, monitor, and improve production-grade fair value models and data pipelines for lending portfolios. Build Python-based regression and time-series models, ensure explainability, traceability, and reproducibility, support model monitoring and performance analysis, investigate data quality and model issues, and collaborate with engineers, risk, finance, and validation stakeholders.
Summary Generated by Built In

Think Forward

At ING, our purpose is to empower people to stay a step ahead in life and in business. We are a digital bank at scale, continuously evolving how we serve our customers and colleagues through technology, data, and innovation.

Within Wholesale Banking Lending, the Fair Value squad develops and maintains valuation capabilities used for pricing transparency, portfolio insight, and regulatory alignment across lending products. The squad combines quantitative finance, statistical modelling, and production-grade data science to deliver robust valuation solutions in a regulated environment.

Your role and work environment

You will join the Fair Value squad within the Wholesale Banking Lending tribe. The squad focuses on fair valuation of lending portfolios, including modelling of cash flow behaviour, discounting, spreads, and risk-related valuation components.

In this role, you will contribute to the design, implementation, monitoring, and improvement of production-grade fair value models and supporting data pipelines. You will work on model components such as spread estimation, regression-based proxy models, portfolio analytics, and valuation parameter application across the lending landscape.

You will operate in a multidisciplinary environment together with Data Scientists, Quants, Java engineers, DevOps engineers, and business stakeholders. The work requires strong technical skills, sound quantitative judgement, and the ability to deliver reliable and explainable outputs in a controlled banking environment.

The team

You will work in a multidisciplinary environment with:

  • Data Scientists and Quant specialists
  • Java and platform engineers
  • DevOps and production support teams
  • Risk, Finance, and Lending domain experts
  • Model validation and control stakeholders

The Fair Value squad works at the intersection of quantitative methodology, production engineering, and regulatory control, with strong focus on collaboration, robustness, and traceability.

Key responsibilities

  • Develop and maintain Python-based model code, data transformations, and monitoring pipelines
  • Translate quantitative valuation concepts into robust and maintainable data science implementations
  • Work on regression-based and statistical models used in fair value components such as spread estimation and proxy modelling
  • Support modelling of discounting, valuation assumptions, and risk-related inputs used in fair value calculations
  • Ensure outputs are explainable, traceable, reproducible, and suitable for use in a regulated environment
  • Contribute to model monitoring, performance analysis, and periodic model reviews
  • Investigate data quality, feature behaviour, and model performance issues in production
  • Collaborate with Java engineers on how spread parameters and valuation logic are applied in downstream systems
  • Contribute to technical design decisions, implementation improvements, and documentation
  • Partner with Risk, Finance, Lending, and validation stakeholders to support transparency and governance

What you will deliver

  • Reliable fair value model implementations and supporting analytics for lending portfolios
  • Python-based production solutions for model execution, monitoring, and reporting
  • Improved transparency and robustness in valuation outputs and model behaviour
  • Well-documented and reproducible modelling components aligned with governance expectations
  • Insights into spread behaviour, model performance, and valuation drivers
  • Technical contributions that improve maintainability, control, and scalability of fair value solutions

Requirements

  • MSc or PhD in Data Science, Statistics, Econometrics, Quantitative Finance, Mathematics, Computer Science, or a related field
  • Strong Python engineering experience with the ability to build and maintain production-grade model implementations
  • Strong knowledge of statistics, regression, and time-series or panel-data methods
  • Experience developing, validating, or monitoring predictive or explanatory models in production environments
  • Ability to translate quantitative or financial concepts into robust data and model implementations
  • Solid analytical skills and comfort working with valuation, pricing, discounting, or risk-related concepts
  • Experience with data pipelines, testing, version control, and production support practices
  • Ability to independently validate results, investigate model behaviour, and explain outcomes clearly
  • Experience working in a regulated environment with strong expectations on controls, traceability, and reproducibility
  • Strong communication skills and ability to collaborate across technical and non-technical stakeholders

Preferred Skills (Nice-to-Have)

  • Experience in banking, lending, risk, or valuation use cases
  • Familiarity with discounted cash flow methods, spread-based discounting, or proxy modelling approaches
  • Experience with SOx-critical data pipelines and model controls
  • Working knowledge of Java, especially for understanding application logic linked to spread parameters and discounting
  • Experience with model monitoring frameworks and performance reporting
  • Familiarity with DevOps practices, CI/CD, and deployment workflows
  • Experience collaborating with model validation or audit stakeholders
  • Ability to mentor junior colleagues and contribute to squad-level technical direction

Skills Required

  • MSc or PhD in Data Science, Statistics, Econometrics, Quantitative Finance, Mathematics, Computer Science, or related field
  • Strong Python engineering experience building and maintaining production-grade model implementations
  • Strong knowledge of statistics, regression, and time-series or panel-data methods
  • Experience developing, validating, or monitoring predictive or explanatory models in production environments
  • Ability to translate quantitative or financial concepts into robust data and model implementations
  • Analytical skills and comfort with valuation, pricing, discounting, or risk-related concepts
  • Experience with data pipelines, testing, version control, and production support practices
  • Ability to validate results independently, investigate model behaviour, and explain outcomes clearly
  • Experience working in a regulated environment with strong expectations on controls, traceability, and reproducibility
  • Strong communication skills and ability to collaborate across technical and non-technical stakeholders
  • Experience in banking, lending, risk, or valuation use cases
  • Familiarity with discounted cash flow methods, spread-based discounting, or proxy modelling approaches
  • Experience with SOx-critical data pipelines and model controls
  • Working knowledge of Java for understanding application logic linked to spread parameters and discounting
  • Experience with model monitoring frameworks and performance reporting
  • Familiarity with DevOps practices, CI/CD, and deployment workflows
  • Experience collaborating with model validation or audit stakeholders
  • Ability to mentor junior colleagues and contribute to squad-level technical direction
Am I A Good Fit?
beta
Get Personalized Job Insights.
Our AI-powered fit analysis compares your resume with a job listing so you know if your skills & experience align.

The Company
HQ: Amsterdam
65,710 Employees

What We Do

ING is a pioneer in digital banking and on the forefront as one of the most innovative banks in the world. As ING, we have a clear purpose that represents our conviction of people’s potential. We don’t judge, coach, or tell people how to live their lives. However big or small, modest or grand, we empower people and businesses to realise their vision for a better future. We made the promise to make banking frictionless, removing barriers to progress, and make people confident in their financial decisions. As a global bank we have a huge opportunity – and responsibility – to make an impact for the better. We can play a role by financing change, sharing knowledge, and innovating. Being sustainable is in all the choices we make—as a lender, as a partner and through the services we offer our customers

Similar Jobs

Arch Global Services (Philippines) Inc. Logo Arch Global Services (Philippines) Inc.

Data Scientist

Information Technology • Insurance • Professional Services • Consulting
In-Office or Remote
Taguig City, Metro Manila, National Capital Region, PHL
1000 Employees
In-Office
Muntinlupa City, Metro Manila, National Capital Region, PHL
843 Employees

Binance Logo Binance

Data Scientist

Blockchain • Fintech • Software • Cryptocurrency • Metaverse
In-Office or Remote
26 Locations
7696 Employees

Binance Logo Binance

Data Scientist

Blockchain • Fintech • Software • Cryptocurrency • Metaverse
In-Office or Remote
19 Locations
7696 Employees

Similar Companies Hiring

Hanover Park Thumbnail
Artificial Intelligence • Fintech • Software • Financial Services
New York, New York
42 Employees
Kepler  Thumbnail
Fintech • Software
New York, New York
6 Employees
Onshore Thumbnail
Artificial Intelligence • Fintech • Software • Financial Services
New York, New York
60 Employees

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account