公司规模
Large Corporate
地区
- Europe
国家
- Norway
产品
- IBM Algo Risk Service on Cloud
技术栈
- Cloud-based risk modeling
实施规模
- Enterprise-wide Deployment
影响指标
- Productivity Improvements
- Digital Expertise
技术
- 基础设施即服务 (IaaS) - 云计算
适用行业
- 金融与保险
适用功能
- 离散制造
用例
- 预测性维护
服务
- 云规划/设计/实施服务
关于客户
KLP 是挪威最大的互助人寿保险公司。它在公共部门养老金领域占据主导地位,拥有来自市政和县级当局、健康信托和其他公有公司的 70 多万名会员。其子公司 KLP Kapitalforvaltning 负责管理该集团总资产中的 2780 亿挪威克朗,2013 年总资产为 3750 亿挪威克朗。该公司的 58 名员工管理着 33 个不同资产类别的共同基金。大多数是指数基金;其余是被动或主动管理的固定收益基金。
挑战
KLP 是挪威最大的互助人寿保险公司,该公司面临着将复杂的风险建模技术嵌入其日常决策流程的挑战。该公司目前有两种风险建模解决方案,但它们不够用户友好,并且缺乏灵活性,无法以易于访问或理解的方式呈现结果。这使得投资组合经理和风险分析师难以获得所需的数据。KLP 的高级管理人员决定研究基于云的解决方案来解决此问题。
解决方案
KLP 采用了 IBM Algo Risk Service on Cloud,这是一种基于云的单一解决方案,用于对所有资产类别进行风险建模。该解决方案为每个用户提供对关键风险指标和及时个性化报告的即时 Web 访问。IBM Algo 解决方案支持针对不同资产类别的多种模型,使 KLP 能够通过单一解决方案满足其所有风险建模需求。该解决方案还使该公司能够监控其投资组合中的“纯 alpha”和“纯 beta”风险,并轻松跟踪每个组的风险。项目团队与要求最严格的用户密切合作,以确保该解决方案能够满足他们的需求。
运营影响
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