...
首页> 外文期刊>Industrial Engineering and Management >Cumbersome task: data science in the old industry- Katharina Glass, Data scientist at Aurubis AG, Europe
【24h】

Cumbersome task: data science in the old industry- Katharina Glass, Data scientist at Aurubis AG, Europe

机译:笨重的任务:旧行业的数据科学 - Katharina玻璃,Aurubis AG,​​欧洲的数据科学家

获取原文

摘要

About 3 years ago, my boss decided that it’s time to leverage the superpowers of data. So, I was the first data scientist, a unicorn, amongst 6600 colleges at Aurubis. The primary task was to introduce, to explain, promote and establish data science skillset within the organization. Old industry, like metallurgy and mining, are not the typical examples of successful digital transformation because the related business models are extremely stable, even in the era of hyper-innovation. At least this is what some people believe, and it’s partly true, because for some branches, there is no burning platform for digitization, and hence, the change process is inert. Data science is the fundamental component of digital transformation. Our contribution to the change has a huge impact because we can extract the value from the data and generate the business value, to show people what can be done when the data is there and valid.I learned that most valuable, essential skills to succeed in our business are not necessarily programming and statistics. We all have training on data science methods at its best. The two must have skills are resilience and communication. Whenever you start something new, you will fail. You must be and stay resilient to rise strongly. Moreover, in the business world is the ability to communicate - tell data-based stories, to visualize and to promote them is crucial. As a data scientist you can only be as good as your communications skills are, since you need to persuade others to make decisions or help to build products based on your analyses. Finally, dare to start simple. When you introduce data science in the industry, you start on the brown field. Simple use cases and projects like metrics, dashboards, reports, historical analysis help you to understand the business model and to assess where is your contribution to success of the company. This is the key to data science success, not only in the multimetal but everywhere else as well.Commonly known by the term “big data”, Data Science is the study of the generalizable extraction of knowledge from data. It assesses the behaviour of data in a controlled, logic-led, responsive environment for deriving automated solutions and prognostic models for a given situation, problem or business objective. From Tinder to Facebook; LinkedIn to various online giants like Amazon and Google, Data science is playing a pivotal role in making the data scientist the new sought-after job in the market. Using large amounts of data for decision making has become practical now, with industries hiring qualified data scientists to handle a wide range of unprocessed data to come up with modern workable solutions catering to their respective market. Gone are the days when companies used to work on software like Excel only to analyse and store data. Even at that time, only some intelligent ventures worked with SPSS and strata.
机译:大约3年前,我的老板决定是时候利用了数据的超级数据。所以,我是第一个Data Scientis,一个独角兽,Aurubis的6600所学院。主要任务是介绍,解释,促进和建立组织中的数据科学技能。旧工业,如冶金和矿业,不是成功的数字转型的典型例子,因为相关的商业模式非常稳定,即使在超创新的时代。至少这是一些人认为的,它是部分真实的,因为对于一些分支,没有燃烧平台进行数字化,因此,改变过程是惰性的。数据科学是数字转型的基本组成部分。我们对更改的贡献产生了巨大影响,因为我们可以从数据中提取价值并生成业务价值,以显示数据在进行数据并有效时可以完成的内容。我了解到最有价值,成功的最有价值,基本技能我们的业务不一定是编程和统计数据。我们都在最佳培训数据科学方法。这两个必须有技能是抵御能力和沟通。每当你开始新的东西时,你就会失败。你必须坚持并保持强烈上升。此外,在商业世界中是沟通的能力 - 讲述基于数据的故事,以便可视化和促进它们至关重要。作为数据科学家,您只能与您的沟通技能一样好,因为您需要说服他人做出决策或帮助根据您的分析来构建产品。最后,敢于开始简单。当您在行业中介绍数据科学时,您就开始棕色字段。简单的用例和项目等度量标准,仪表板,报告,历史分析可以帮助您了解商业模式,并评估您对公司成功的贡献在哪里。这是数据科学成功的关键,不仅在多算法中,而且在其他地方被众所周知的“大数据”,数据科学是从数据的广泛提取知识的研究。它评估了在受控,逻辑LED,响应环境中的数据的行为,用于导出给定情况,问题或商业目标的自动解决方案和预后模型。从火种到Facebook; LinkedIn与亚马逊和谷歌这样的各种在线巨人,数据科学在使数据科学家在市场上的新寻求工作中发挥了重要作用。现在使用大量的决策数据已经变得实用,具有雇用合格的数据科学家的行业来处理各种未加工的数据来提出现代可行的解决方案,以满足其各自的市场。公司常常常用于Excel等软件的日子已经消失,仅用于分析和存储数据。即使是那个时候,只有一些与SPSS和Strata合作的智能企业。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号