适用行业
- 玻璃
- 包装
适用功能
- 产品研发
用例
- 智能包装
- 时间敏感网络
关于客户
Rots Maatwerk 是一家荷兰公司,通过为开发项目提供优质材料,为户外区域注入生机。该公司所有产品均采用内部设计,使用各种材料,包括玻璃、木材、天然石材和钢材。 Rots Maatwerk 利用广泛的供应商网络来确保无与伦比的质量。该公司严重依赖软件程序来支持其绘图和设计活动。然而,多个软件程序的复杂环境正在带来操作挑战,导致工程人员决定简化其绘图包。
挑战
Rots Maatwerk 是一家专门为开发项目提供优质材料的荷兰公司,其绘图和设计活动面临着挑战。该公司严重依赖各种软件程序来支持这些活动。然而,多个软件程序的复杂环境给业务带来了困难。该公司的 CAD 工程师 Bart Veenstra 必须同时运行五个不同的程序才能完成复杂的项目。每个软件包都发挥其功能,但它们之间的信息交换困难且繁琐。此外,Veenstra 是唯一一位能够自信地跨所有不同软件包工作的团队成员。这种情况在繁忙时期造成了潜在的瓶颈,使工程团队依赖于一个人,并降低了工作准备的关键灵活性。
解决方案
为了应对这些挑战,Rots Maatwerk 决定为工程人员简化其绘图包。 2019 年 9 月,软件经销商 CADkoop Nederland BV 推荐 BricsCAD 作为理想的解决方案。 BricsCAD 将所有学科统一在一个程序中,使团队能够使用单一模型进行工作,并帮助在流程的早期识别和解决潜在的错误和问题。 BricsCAD 的另一个显着优势是它允许所有团队成员使用相同的软件包,平均分配工作并消除对单个人的依赖。规划人员和项目负责人可以轻松使用和查看模型。 Rots Maatwerk 利用了 BricsCAD 中提供的各种不同许可证,项目负责人使用 Bricsys Classic (Lite),工作规划人员使用 Pro,设计师使用 Ultimate。改用 BricsCAD 还使公司的年度许可成本节省了 50%。
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