An Online Microcredential Certification Program to Upskill Petrotechnical Professionals in Data Analytics and Machine Learning with an Upstream Oil and Gas Industry Focus

Kalyanaraman Venugopal, D. Shastri, Suryanarayanan Radhakrishnan, R. Krishnamoorti
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Abstract

The upstream oil and gas industry's digital transformation over the last few years has accelerated because of the COVID-19 pandemic. Data analytics and machine learning are key components of this digital transformation and have become essential skills for experienced petrotechnical professionals (PTPs) and aspiring entrants into the field. The objective of our work was to design and deliver a practical, engaging, and online microcredential certification program in upstream energy data analytics for PTPs. The program was conceived as a collaboration between academia (University of Houston's UH Energy) and industry (NExT, a Schlumberger company). It was designed as three belt levels (Bronze, Silver, and Gold), each containing three stackable badges of 12 to 15 hours duration per badge. Key design points included Identifying an online platform for administration Delivering convenient, interactive, live online sessions Delivering hybrid classes blending lectures and hands-on laboratories Designing laboratories using upstream datasets across various stages of oilfield expertise Administering test and quizzes, Kaggle competitions, and team projects. The program contents were designed incorporating appropriate instructional design practices for effective online class delivery. The design and delivery of the laboratories using a code-free approach by leveraging visual programming offers PTPs and new entrants a unique opportunity to learn data analytics concepts without the traditional concern of learning to code. Additionally, the collaboration between academia and industry enables delivering a program that combines academic rigor with application of the skills and knowledge to solve problems facing the industry using the real-world datasets. As a pilot program, all three badges of the Bronze belt were scheduled and successfully delivered during July and August 2020, as six 2-hour sessions per badge. From a total of 26 students registered in badge 1, 24 completed it, resulting in a completion rate of 92%. Out of these students, 19 registered and completed badge 2 and badge 3, resulting in the completion rates of 100%. Based on the success of the pilot program, a second delivery of the Bronze belt with 18 participants was offered from October 2020 through January 2021. All 18 participants completed all three badges. Feedback from participants attests to the success of the pilot program as seen in the following excerpts: "A very good course and instructors. I have already recommended the course to a friend and I will continue to be an advocate for the course." "Teachers are very receptive to questions and it is a joy to hear their lectures." "I found the University of Houston course to be both highly engaging and incredibly informative. The course teaches basic principles of data science without being bogged down by the specific coding language."
一个在线微证书认证计划,以上游石油和天然气行业为重点,提高石油技术专业人员在数据分析和机器学习方面的技能
由于COVID-19大流行,过去几年上游石油和天然气行业的数字化转型加速了。数据分析和机器学习是这一数字化转型的关键组成部分,已经成为经验丰富的石油技术专业人员(ptp)和有抱负的进入该领域的人的基本技能。我们的工作目标是设计并提供一个实用的、引人入胜的在线微证书认证项目,用于上游能源数据分析。该项目是学术界(休斯顿大学能源学院)和工业界(斯伦贝谢公司NExT)的合作项目。它被设计为三个腰带级别(青铜,白银和黄金),每个包含三个可堆叠的徽章,每个徽章持续12至15小时。主要设计要点包括确定一个在线管理平台,提供方便、互动、实时的在线会议,提供混合课程,将讲座和实践实验室相结合,设计使用油田不同阶段的上游数据集的实验室,管理测试和测验、Kaggle竞赛和团队项目。课程内容的设计结合了适当的教学设计实践,以有效地在线授课。通过利用可视化编程,使用无代码方法设计和交付实验室,为ptp和新进入者提供了学习数据分析概念的独特机会,而无需传统的学习代码的担忧。此外,学术界和工业界之间的合作能够提供一个将学术严谨性与技能和知识的应用相结合的项目,通过使用现实世界的数据集来解决行业面临的问题。作为试点项目,铜带的所有三个徽章都计划在2020年7月和8月期间成功交付,每个徽章分为6个2小时的会议。在1号徽章注册的26名学生中,有24名完成了考试,完成率为92%。在这些学生中,有19人注册并完成了徽章2和徽章3,完成率为100%。在试点项目取得成功的基础上,从2020年10月到2021年1月,第二次交付了18名参与者的青铜带。所有18名参与者都完成了所有三个徽章。参与者的反馈证明了试点项目的成功,如下摘录所示:“非常好的课程和教师。我已经向一位朋友推荐了这门课程,我将继续倡导这门课程。”“老师们非常乐于接受问题,听他们讲课是一种乐趣。”“我发现休斯顿大学的课程非常吸引人,而且信息量很大。该课程教授数据科学的基本原理,而不会被特定的编码语言所困扰。”
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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