SAS IS A CATEGORY LEADER
Chartis RiskTech Quadrant for Credit Portfolio Management Solutions, 2023
SAS scored four out of four stars in all six vendor capability measures. According to this Chartis report, our solutions can integrate various components smoothly throughout the credit management process. From data management and credit scoring to risk modeling and compliance, the platform creates a unified environment.
SAS stands out in the CPM landscape for its strong suite of advanced analytics capabilities. In an industry where practical insights are crucial, SAS’ expertise in handling complex statistical models and predictive analytics is particularly advantageous for financial institutions looking for a nuanced approach to credit management. This capability isn’t just theoretical – it is a practical tool for those dealing with the complexities of CPM for which there is value in actionable analysis.
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- 〓分析◆アナリスト・〓レポート Chartis RiskTech Quadrant Asset and Liability Management, 2024SAS is named a category leader in Chartis Research's 2024 RiskTech Quadrant for ALM solutions, FTP solutions, LRM and reporting technology solutions, capital and balance sheet optimization solutions., hedging and risk management solutions, and financial planning and budgeting solutions.
- 〓分析◆アナリスト・〓レポート Chartis RiskTech100 2025SAS ranks #2 overall in the prestigious Chartis RiskTech100, 2025. Six category wins are AI for Banking, Balance Sheet Risk Management, Behavioral Modeling, Enterprise Stress Testing, IFRS 9 and Model Risk Management.
- 〓分析◆アナリスト・〓レポート Chartis RiskTech100 2024SAS climbs to No. 2 in the prestigious Chartis RiskTech 100®, 2024, and bested seven technology award categories, including AI for Banking, Behavioral Modeling and Enterprise Stress Testing.
- 記事 IFRS9とCECL:信用損失会計基準に関する課題CECLとIFRS9は銀行に対し、予想信用損失(ECL)の予測精度を向上させることを義務付けます。この要件を満たすためには、アナリティクスに基づく新しい信用損失モデルが必要になります。
- e-Book Unifying Model Management Across the BankHow banks can empower all departments to manage model risk effectively across the entire model life cycle.
- ホワイトペーパー Tackle the Complexity of IFRS 9 and CECL StandardsThe US standard for CECL increases the complexity of the allowance estimation process. Outside the US, IFRS 9 is having the same effect. Learn about best practices for getting this right.
- ホワイトペーパー CECL: Don't Neglect the FundamentalsFirms that proactively implement a CECL process that is controlled, efficient, collaborative and sustainable will find themselves with a competitive advantage over time. This paper discusses the long-term benefits of this holistic approach.
- ホワイトペーパー Compete and win with better model risk managementAs explored in this paper, models can degrade over time, and sound model risk management (MRM) is the key to managing this risk.
- ホワイトペーパー Basel IV: The push you neededIn a landscape of great uncertainty and the economic crisis sparked by COVID-19, financial institutions must address the challenges Basel IV will bring. An integrated risk management approach is the best path forward to meeting ever-evolving regulatory needs.
- e-Book Adapting to the New Age of Risk AnalyticsRapid advancements in technology are leading to a new age of risk analytics. The availability of commercial and open source software – coupled with significantly improved integration using industry standard tools – has made analytics more user friendly, expanding its reach to a broader range of business professionals.
- イベント関連資料 ホワイトペーパー Model Risk Management: Today's Governance and Future DirectionsA GARP-SAS Survey on Model Risk in the Age of Artificial Intelligence and Machine Learning.
- ホワイトペーパー Machine Learning Model GovernanceBanks are rapidly expanding their use of machine learning-enabled (ML) models, because they can provide step-level improvements in accuracy. But ML models need even more rigorous governance than traditional models. This paper explores what's required to implement effective ML model governance.
- ホワイトペーパー Risk-Aware Finance and the Changing Nature of CreditNew research by Chartis and SAS highlights how financial institutions must align finance and risk departments to accurately assess future risks and bolster budgeting and forecasting capabilities. This paper explores how risk-aware finance is becoming essential to meeting future regulatory and competitive demands.
- 記事 信用リスク管理、それが答えです貸付・融資量は金融危機前の水準を回復しています。しかし、銀行は滞納率の上昇にも直面しています。だからこそ、信用リスク管理の改善がカギなのです。