景航网络科技(上海)有限公司
logo logo
  • 首页
  • 公司概况
  • 服务中心
  • 行业解决方案
  • 典型案例
  • 新闻中心
  • 加入我们
  • 联系我们

通过开放式标准和生态系统 打造更具弹性和可持续发展的未来

实现灵活性、敏捷性和可扩展性,从而实施宏大的数字策略,在数字时代,继续培养伟大的创新文化和开拓精神。

  • 06月01日 2025
  • Robert Bosch GmbH

Robert Bosch GmbH

By combining road and weather expertise with rich vehicle data, Bosch attained real-time, granular insights by using Azure Data Explorer—improving driving safety, forecast accuracy, and increasing the availability of automated driving functions, in a way that was globally scalable.

Wet, icy, or damaged roads require safe and appropriate driving. Like human drivers, automated vehicles must be able to anticipate road conditions correctly and react appropriately.

Through real-time aggregation of road weather data and cross-OEM vehicle sensor data, Bosch`s predictive road condition service provides information and warnings to vehicle infotainment systems, improves safety of driver assistant systems and increases the safety and availability of automated driving vehicles.

Unlike traditional weather forecasts, Bosch combines road weather and strong vehicle expertise. For development and monitoring of the service, Bosch set up a continuously driving reference fleet, which is equipped with professional road condition sensors. To enhance its service and scale across the globe, Bosch needed a system that could deliver deeper and faster real-time insights into the high amount of weather and vehicle data.

Better data, safer roads

“About one-and-a-half years ago, we started thinking about how to get more information out of our data,” explains Thomas Mahlberg, a data engineer at Bosch. “We were looking at big volumes of data—it was all quite abstract. The data science team and the back-end operations team used different data storage and data analysis technologies. Evaluating a huge amount of files was time-consuming and analyzing the whole picture was difficult, as was getting an understanding of regional or time-based effects.”

At that time, Bosch was visualizing the data on a map by using a search engine platform. “It was working quite well—to get a first impression of what our data actually meant,” says Mahlberg. But when Bosch began incorporating data not only from Germany, but all of Europe, the system began to show its limitations. In addition, it required continuous maintenance efforts.

“We are currently developing a service to predict the road conditions facing the driving vehicle,” explains Stefan Manzer, Product Owner of the data science team at Bosch. “This allows automated driving vehicles to drive safely, but also provides additional information and warnings to non-automated vehicles. Our goal is to reduce the number of accidents that happen due to severe road and weather conditions like ice, water on the road, or fog.”

To run the kind of analysis Bosch was looking for, the company needed a query engine able to produce geographical aggregations—summarized by Geohash/S2 cells—from which metrics could then be calculated. “We needed this feature because our Europe implementation had roughly 860,000 forecasts per time slot,” explains Mahlberg. “But bringing a data load like that up on a map without aggregation was tantamount to killing the browser.”

Building on its trusted, long-term partnership with Microsoft, the Bosch team homed in on Azure Data Explorer. The changeover meant that Bosch could move away from a cost-intensive infrastructure as a service (IaaS)–based solution to a cost-effective native platform service. The change to the Kusto query language also paved the way for greater efficiency, being highly intuitive for both time series data and geospatial analytics.

“The initial system was set up within a week,” explains Mahlberg. “We saved data into the blob storage and from the blob storage we inserted it into ADX automatically. Bringing the data to ADX was simple.” Having used a REST API for running queries from the front end to the back end under the company’s former setup, Bosch replaced the connector to the previous platform with a connector to ADX, writing a few additional queries. “It was just replacing the data source—that works quite well and fast,” explains Mahlberg.

Soon, the Bosch team was reaping the benefits of more powerful analysis and more intuitive Kusto query language. “You can run the queries for much bigger timeframes,” says Mahlberg.

“Before we used ADX, we needed to think, ‘What's our use case?’ In-depth analyses for a few hours of joined sensor and weather data required data to be stored differently compared to analyzing a whole year of Europe-wide weather data on a high level. Now, we just put it in ADX and later we see what queries we will run on the data. We don't have to examine beforehand how to optimally store the data in order to query it.”

“It's dramatically changed how we work, making things that used to be complex, much simpler and quicker,” Manzer says. “As a product owner, it's become easy to just write queries and get basic information. And by using a managed service on Azure we could reduce our operations’ cost drastically, within a couple of months.” Visualizations are also possible directly within ADX. “You can do everything on the web UI, only more conveniently. It's a combination of transparent language and a really rich feature set.” Mahlberg agrees. “It’s easy for non-data scientists to get insight into the data and use their own tools to work with the data without having to set up a Jupyter Notebook or other data science–related tools.”

Stepping on the gas brings business acceleration

“The main benefit of ADX is development speed: queries and evaluations that took days, now take 10 minutes,” says Mahlberg. “Plus, you can handle great volumes of data quite easily. It’s really impressive to see the rate at which you can develop with ADX and the ease with which you can access the data and pull it out again in the right format. Non-data engineers can write a query and get the data they want in a few minutes; meanwhile, data scientists are able to run very complex queries in an equally short amount of time.”

Mahlberg and Manzer are already looking into ways to incorporate even more data into their forecast models, while taking the time to introduce the capabilities of Azure and ADX to other teams at Bosch. “A lot of people have been asking about Azure and ADX,” Mahlberg notes, "And I think we're providing them with extremely relevant feedback."

 

想起曾经的自己,也总因为这些自我询问疑惑过,后来发现,想得再多,疑惑就更难以解决,反而平添烦恼,浪费了很多时间,还不如不问理由直接去做。


景航网络科技

标签: Robert Bosch GmbH 商业 顾问 CRM
景航网络科技作为首批企业正式入驻微软“虹桥数字贸易产业创新赋能中心”

上海由闵行区人民政府发起的,使用微软云技术的微软“虹桥数字贸易产业创新赋能中心”于今日正式揭牌。该中心位于虹桥国际中央商务区核心区域,将由闵行区南虹桥管理委员会办公室运营,将通过加速数字技术、服务和贸易的融合,促进传统贸易企业数字化转型,激发数字服务贸

服务类型

  • 金融服务业
  • 零售业
  • 政府机构
  • 制造业
  • 医疗保健业
  • 汽车业

景航案例

作为创建未来工厂愿景的一部分,这家全球制造商通过将 IT 和业务运营迁移到云端并采用物联网等新技术来实现运.... 06月03日 2025
作为全球不锈钢制造商奥托昆普的业务转型和 IT 执行副总裁,霍夫曼有能力反思公司数字化转型的发展,这是奥托.... 06月07日 2025
联合国 2015 年世界水资源开发报告预测,到 2030 年需求将超过供应近 40%,世界三分之二的人口可能因缺乏淡水.... 06月12日 2025
专注于以全面、前瞻的方式培养幼儿的思想。杜卡斯学校教育总干事Eleni Doukas表示:“学校的作用不仅仅是为孩.... 06月05日 2025
数据透明度、可靠性和完整性的提高为 WBA 带来了广泛的好处不仅与业务结果相关,还与法规遵从性相关。“改进.... 06月14日 2025
数字化转型正在重塑现代公司运营方式的方方面面,其中许多变化主要是由客户不断提高的期望驱动的。简而言之,.... 06月07日 2025
明道 · 取势 · 优术
解决方案
  • 公共司法与安全
  • 能源业
  • 制药和生命科学
  • 医疗保健业
  • 政府机构
  • 金融服务业
典型案例
  • 金融服务业
  • 零售业
  • 政府机构
  • 制造业
  • 医疗保健业
  • 汽车业
服务中心
  • 景航客户关系管理系统
  • 景航财务和供应链管理系统
  • 景航人力资源系统
  • Microsoft Dynamics 365
  • Microsoft Power Platform
  • 景航商业智能系统(BI)
联系我们
17521765439
jinghang@jinghangsoft.com
上海市静安区静安高和大厦11层
jinghangsoft.com
  • 法律声明 | 加入我们
  • 网站建设: 景航网络科技(上海)有限公司

Copyright © 2020- 景航网络科技(上海)有限公司 版权所有  沪ICP备2021027350号  沪公网安备 31010602006451号