- Hands-On Data Science and Python Machine Learning
- Frank Kane
- 417字
- 2021-07-15 17:15:05
Using the Canopy IDE
Moving back, I can also run the script from within the IDE. So from within Canopy, I can go to the Run menu. I can either go to Run | Run File, or click on the little play icon, and that will also execute my script, and see the results at the bottom in the output window, as shown in the following screenshot:

So that's another way to do it, and finally, you can also run scripts within this interactive prompt present at the bottom interactively. I can actually type in Python commands one at a time down, and have them just execute and stay within the environment down there:

For example, I could say stuff, make it a list call, and have 1, 2, 3, 4, and now I can say len(stuff), and that will give me 4:

I can say, for x in stuff:print x, and we get output as 1 2 3 4:
So you can see you can kind of makeup scripts as you go down in the interactive prompt at the bottom and execute things one thing at a time. In this example, stuff is a variable we created, a list that stays in memory, it's kind of like a global variable in other languages within this environment.
Now if I do want to reset this environment, if I want to get rid of stuff and start all over, the way you do that is you go up to the Run menu here and you can say Restart Kernel, and that will strike you over with a blank slate:
So now I have a new Python environment that's a clean slate, and in this case, what did I call it? Type stuff and stuff doesn't exist yet because I have a new environment, but I can make it something else, such as [4, 5, 6]; run it and there it is:

So there you have it, three ways of running Python code: the IPython/Jupyter Notebook, which we'll use throughout this book just because it's a good learning tool, you can also run scripts as standalone script files, and you can also execute Python code in the interactive command prompt.
So there you have it, and there you have three different ways of running Python code and experimenting and running things in production. So keep that in mind. We'll be using notebooks throughout the rest of this book, but again, you have those other options when the time comes.
- Java入門經(jīng)典(第6版)
- Rust編程:入門、實(shí)戰(zhàn)與進(jìn)階
- Vue.js 3.x從入門到精通(視頻教學(xué)版)
- Python進(jìn)階編程:編寫更高效、優(yōu)雅的Python代碼
- Banana Pi Cookbook
- C程序設(shè)計案例教程
- TradeStation交易應(yīng)用實(shí)踐:量化方法構(gòu)建贏家策略(原書第2版)
- C專家編程
- 詳解MATLAB圖形繪制技術(shù)
- Quantum Computing and Blockchain in Business
- Unity 2018 Augmented Reality Projects
- 實(shí)戰(zhàn)Java高并發(fā)程序設(shè)計(第2版)
- Clojure for Java Developers
- Mastering PowerCLI
- PHP+MySQL Web應(yīng)用開發(fā)教程