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  • IPE LAB
  • Beijing, China
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IPE-lab/README.md
  • 👋 Hi, I’m @IPE-lab, the Intelligent Petroleum Engineering Lab.
  • 👀 I’m interested in developing artificial intelligence code for the petroleum engineering industry.
  • 🌱 I’m currently learning and exploring new advancements in AI technologies and their applications in the petroleum engineering domain.
  • 💞️ I’m looking to collaborate with professionals and organizations in the petroleum engineering industry who are interested in leveraging AI solutions to optimize their operations and decision-making processes.
  • 🌐 Check out our website at [https://ipe-lab.github.io/] to learn more about our research and projects.
  • 📫 You can reach me by sending an email to [linbotao@vip.163.com]

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