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Disability Non-Profit Amadipesment Boosts Managerial Efficiency Using Sisense
技术
- 应用基础设施与中间件 - 数据可视化
- 分析与建模 - 预测分析
适用行业
- 医疗保健和医院
适用功能
- 商业运营
- 质量保证
服务
- 系统集成
- 软件设计与工程服务
挑战
As an organization with many different projects, departments, and moving parts, Amadip-Esment collects vast amounts of information from various sources, including human resources, financial ERP, operational software at restaurants and printing units, and specific software systems containing sensitive data related to persons with disabilities. The team had been manually collecting data and arranging it in Excel pivot tables, which was labor-intensive and limited in analysis. They needed to increase the efficiency of organizing and managing these data pieces and required a core BI platform for managerial reporting and customized data queries. Above all, they needed a system that could bring all their disparate data together for analysis.
关于客户
Amadip-Esment is a nonprofit organization based on the Spanish island of Mallorca, dedicated to helping people with intellectual disabilities enjoy the best possible quality of life. Established in 1962, the organization offers a wide range of services, including housing, leisure activities, occupational workshops, a day center, and training and employment opportunities. These services are provided both with external companies and within various internal business units such as printing, gardening, cleaning, restaurants, and agriculture. With 470 employees, Amadip-Esment is committed to improving the lives of individuals with intellectual disabilities through comprehensive support and opportunities.
解决方案
Amadip-Esment decided to adopt Sisense as their core BI platform after trying out several other BI tools that failed to address their primary pain points. They needed a solution that was simple, straightforward, fast to implement, and came with powerful and flexible visualization features. During the trial phase, they set up a test database and successfully ran the software on very cheap PC hardware. Once they purchased Sisense, the setup was easy, and they were ready to go. The team quickly created management dashboards that allowed several department and activity managers to get the information they needed in the desired format. Managers now have the freedom to design the data they want to see and how it should be presented, enabling them to gain a swift and complete snapshot of any part of the organization.
运营影响
数量效益
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