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AxiomSL announces IFRS 9 partnership with AlgoSave

7 October 2015 – AxiomSL, a global provider of regulatory reporting and risk management solutions, announced today that it has formed a partnership with AlgoSave, a provider of credit modelling products. As part of the agreement, AlgoSave’s expected credit loss (ECL) model has been integrated into AxiomSL’s solution for International Financial Reporting Standard 9 (IFRS 9).
IFRS 9 is a new accounting standard that has been created to ensure the exposure of financial instruments to risk is better understood and accurately reported. When it comes into force in 2018, IFRS 9 will be leveraged for a wide range of regulatory and internal reporting requirements.
AxiomSL’s solution addresses the challenges of IFRS 9 by aggregating and integrating the disparate data required by the standard, including risk and financial data, and providing rule sets to determine how financial instruments should be classified. Based on the results, the instruments are either measured at fair value or amortized cost. The solution displays the outputs in accordance with the IFRS taxonomy and can produce both standard IFRS and management information (MI) reports.
The challenges created by IFRS 9 include requirements for financial firms to calculate the ECL for their instruments and maintain capital provisions to mitigate the expected losses. IFRS 9 includes many scenarios under which financial firms will be obliged to calculate the ECL for the lifetime of an instrument. As a result, their provisioning requirements will be significant and firms will be keen to take advantage of any opportunity to reduce them.
As part of the new partnership between the two companies, AxiomSL’s clients have the option of leveraging AlgoSave’s CSF (Calibrated Stochastic Simulations of the Fundamentals of Borrowers) Credit Model to calculate the ECL for their instruments. This model has been fully integrated into AxiomSL’s IFRS 9 solution. Clients can also use any other model that has not been integrated into the solution.
The AlgoSave model has been used for many years to support corporate credit risk analysis, company valuation, and high-yield and distressed-debt investments. It delivers auditable, simulation-based, point-in-time (PIT) IFRS 9 ECL calculations, using up to 100,000 scenarios per borrower. AlgoSave’s unique PIT default correlation matrix enables clients to calculate the ECL on a portfolio basis, helping entities to reduce their overall provisioning requirements. It also empowers them with much-needed PIT insights into their risk-adjusted return on capital (RAROC) and risk capital assessments.

“Building and maintaining the PIT ECL model required for IFRS 9 promises to be a challenging exercise for many firms, so we are pleased to offer our clients the option of leveraging the model that has already been developed by our new partner, AlgoSave. This project with AlgoSave demonstrates our model integration capabilities,” said Olivier Kamoun, CEO APAC, AxiomSL. “IFRS 9 is one of a number of new requirements, including BCBS 239, which call for greater integration between risk and finance. We are empowering clients to overcome this challenge by providing a platform that can aggregate and normalize data from different systems and ensure it conforms to the same standards.”

“Based on 40 years’ experience in banking, high-yield and distressed-debt investment, AlgoSave’s CSF Credit Model provides IFRS 9 PIT ECL calculations together with multi-period PIT probability of default and PIT loss-given default. AlgoSave also offers unique, multi-period PIT default and asset value correlation matrices, which empower financial institutions with much-needed insights into their RAROC and risk capital assessments,” said Mikhael Botbol, founder of AlgoSave. “We are delighted to announce our strategic partnership with AxiomSL, which provides a robust and effective environment to deliver AlgoSave’s IP and know-how to AxiomSL’s current and future clients.”

Press contacts:

Eva Schueckel
Tel: +44 20 7324 5485
Nicholas Hamilton
Tel: +44 20 3823 4600

About AxiomSL:

AxiomSL is the leading global provider of regulatory reporting and risk management solutions for financial services firms, including banks, broker dealers, asset managers and insurance companies. Its unique enterprise data management (EDM) platform delivers data lineage, risk aggregation, analytics, workflow automation, validation and audit functionality.
The AxiomSL platform seamlessly integrates clients’ source data from disparate systems and geographical locations without forcing data conversion. It enriches and validates the data, and runs it through risk and regulatory calculations to produce both internal and external reports. The platform supports disclosures in multiple formats, including XBRL. The unparalleled transparency offered by the high-performance platform gives users the ability to drill down on their data to any level of granularity.
AxiomSL’s platform supports compliance with a wide range of global and local regulations, including Basel III capital and liquidity requirements, the Dodd-Frank Act, FATCA, AEI (CRS), EMIR, COREP/FINREP, CCAR, FDSF, BCBS 239, Solvency II, AIFMD, IFRS, central bank disclosures, and both market and credit risk management requirements. The enterprise-wide approach offered by AxiomSL enables clients to leverage their existing data and risk management infrastructure, and reduces implementation costs, time to market and complexity.
AxiomSL was voted Best Reporting System Provider in the 2015 Waters Rankings and was highlighted as a ‘category leader’ by Chartis Research in its 2015 Sell-side Risk Management Technology report. The company’s work has also been recognized through a number of other accolades, including success in the Best Reporting Initiative category of the American Financial Technology Awards and in the Customer Satisfaction section of the Chartis RiskTech100 rankings.

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