技术
- 基础设施即服务 (IaaS) - 公共云
适用行业
- 建筑与基础设施
关于客户
该解决方案的客户是需要地理空间分析功能的 Google BigQuery 用户。这些用户的范围从数据科学家和分析师到依赖地理空间数据进行运营的企业和组织。他们需要一个强大且可扩展的基础设施来进行地理空间分析,以处理大量数据。他们还需要一种高效且用户友好的方式将地理空间数据集成到他们的分析中。 Google 和 CARTO 提供的解决方案满足了这些需求,增强了 BigQuery 的功能,并使用户能够更轻松、更高效地进行地理空间分析。
挑战
谷歌的BigQuery在地理空间分析领域面临着挑战。用于地理空间分析的传统硬件和软件限制了 BigQuery 的潜力。现有基础设施的限制阻碍了地理空间分析的可扩展性和性能。此外,整合地理空间数据的过程既繁琐又耗时。用户经常被要求执行管理任务和参考表,这被认为是“无聊”但必要的。面临的挑战是增强 BigQuery 的地理空间分析能力,并使地理空间数据的集成更加高效和用户友好。
解决方案
Google 与 CARTO 合作,解决 BigQuery 在地理空间分析中面临的挑战。利用 CARTO 在空间数据基础设施方面的专业知识来增强 BigQuery 的性能和可扩展性。该合作伙伴关系还侧重于改进地理空间数据的集成。 Google 和 CARTO 共同创建了公共数据收集合作伙伴关系,其中包括内置的地理空间数据。这使得地理空间数据的集成更加高效且用户友好。谷歌还专注于改进用户交互最多的数据集。他们加倍努力寻找行政边界、邮政编码多边形和其他难以找到或令人厌烦的数据集。该解决方案被设计为“准备运行”,并包含所有必要的“电池”。
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