About a-team Marketing Services
The knowledge platform for the financial technology industry
The knowledge platform for the financial technology industry

A-Team Insight Blogs

Algorithmics Makes Case for Data Oriented Risk Management

Subscribe to our newsletter

In its latest paper, Algorithmics sets out the case for an integrated data-oriented approach to risk management, and outlines the practical steps risk IT professionals can take to achieve this. Based on Algorithmics’ innovative risk technology and decades of experience working with financial institutions around the world, the paper provides insight into risk-specific data issues, such as the use of shared architectural foundations for marshalling data into risk analytics systems for end-to-end risk management.

The paper, ‘Data management for risk management: the importance of data-oriented systems’, outlines how centralising risk data collection facilitates the most efficient validation and normalisation, enabling risk managers to do more with the data that already exists across the organisation. Only such an approach makes it feasible for calculation results and stress tests to accurately reflect the interdependence between different risk types.

Neil Bartlett, chief technology officer, Algorithmics, commented: “Continuing to manage data in a siloed risk environment is simply not a feasible option; using an integrated, data oriented system is fundamental to enterprise risk management and tackles financial institutions’ other important business needs, including the minimisation of operational risk. In such a system, all calculations are driven from a centralised data source, providing consistency, timeliness, minimisation of workloads, and elimination of the errors that manual processes typically produce. The benefit is less time spent on data management, and more time spent on adding value to the business across all aspects of enterprise risk management.”

In Algorithmics’ view, a data oriented risk management system with integrated data architecture is characterised by the ability to leverage a single data intake across multiple risk disciplines, and includes the following features that are explored in the paper:

• Configurable data modelling and management: simplified, configurable data interfaces that facilitate data capture from multiple sources, and an integrated end-to-end data workflow from data input through to risk reporting. This makes for easier stress testing by capturing the interactions and potential compounding of market and credit risks.

• High levels of data accuracy: data needs to be current, accurate, complete and traceable, and encapsulate risk domain-specific knowledge.

• Embedded data transformation: functionality that services multiple risk data consumers that may have different data requirements, such as a risk analytics engine or reporting tool.

• Risk-focused, high volume data handling capabilities: services designed to contribute to the risk management process, such as high volume data pooling and de-pooling required by ALM and regulatory capital management to reduce simulation times.

• Maximised data reuse and consistency: using outputs in one area as inputs elsewhere reduces redundant calculations. For example, automotive propagation of counterparty risk/CVA between market and credit risk in an auditable way.

• Operational data services: services designed to simplify data interaction and support operational needs across the enterprise, including support for large data volumes, as well as fault tolerance and failover mechanisms.

• Robust data security and governance: features that define what specific users can or cannot do with data.

Neil Bartlett, CTO, concluded: “Lessons learned from the financial crisis have been driving firms to recognise the importance of a comprehensive and consistent approach to the data that drives their risk analytics. Data-oriented risk management facilitates consistent data modeling, quality, security, transformation, pooling and de-pooling, and workflow, making it an approach that allows risk managers to do more with the existing data that they already have.”

Subscribe to our newsletter

Related content

WEBINAR

Recorded Webinar: How to automate entity data management and due diligence to ensure efficiency, accuracy and compliance

Requesting, gathering, analysing and monitoring customer, vendor and partner entity data is time consuming, and often a tedious manual process. This can slow down customer relationships and expose financial institutions to risk from inaccurate, incomplete or outdated data – but there are solutions to these problems. This webinar will consider the challenges of sourcing and...

BLOG

Regulations for UK Digital Securities Sandbox Come into Force on 8 January 2024

Regulations for the UK’s first Digital Securities Sandbox (DSS) will come into force on 8 January 2024, enabling financial market infrastructures and new entrants to experiment with developing technologies in a more flexible legal and regulatory environment than the existing framework. To date, the government says it has received 19 expressions of interest from financial...

EVENT

Data Management Summit London

Now in its 14th year, the Data Management Summit (DMS) in London brings together the European capital markets enterprise data management community, to explore how data strategy is evolving to drive business outcomes and speed to market in changing times.

GUIDE

Regulatory Data Handbook 2023 – Eleventh Edition

Welcome to the eleventh edition of A-Team Group’s Regulatory Data Handbook, a popular publication that covers new regulations in capital markets, tracks regulatory change, and provides advice on the data, data management and implementation requirements of more than 30 regulations across UK, European, US and Asia-Pacific capital markets. This edition of the handbook includes new...