Data processing methods for mechanical engineers and non-computer engineers (Introduction 2)

Continuing from the last time, I will write the introduction 2. Please read only the necessary parts as the future contents will be as follows.

  1. Introduction 1 (previous)
  2. Introduction 2 (this time)
  3. About reading and writing CSV
  4. About SQLite
  5. About drawing using the matplotlib library

Then, it is the contents of this time. Last time I introduced Python. It can be incorporated into the IDE for large-scale development, It will be far from the main line. So we will introduce an editor. Editors have personal tastes, so use something that is easy to use. Unless otherwise specified, we recommend the following.

http://www.hi-ho.ne.jp/jun_miura/jmedit.htm

Download JmEditor from here. This is the end of this time.

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