2.8. Writing good code¶
2.8.1. Naming variables and functions¶
I try to put verbs in the names of functions (
get_returns()) and name dataframes after their unit-levels (
monthly_df). Avoid ambiguous abbreviations.
2.8.2. Code style + Auto-Formatting!¶
There are many ways to achieve the same things in python. Python tends to be a very readable language compared to others. Still, the style of how you write the code can make python code easy to read or hard to read!
Obey the naming suggestions above.
Use an auto-formatter! This will rewrite your code automatically to have good style!
There are a few popular auto-formatters (black, yapf, and autopep8). In my JupyterLab set up, I explain how I set up Black, the “uncompromising Python code formatter” which is very opinionated (“any color you’d like, as long as it is black”).
Look at what Black does to this code:
This function is too long to even read:
def very_important_function(template: str, *variables, file: os.PathLike, engine: str, header: bool = True, debug: bool = False): """Applies `variables` to the `template` and writes to `file`.""" with open(file, 'w') as f: ...
I hit CTRL+SHIFT+F and this was the result:
def very_important_function( template: str, *variables, file: os.PathLike, engine: str, header: bool = True, debug: bool = False ): """Applies `variables` to the `template` and writes to `file`.""" with open(file, "w") as f: ...
2.8.3. Use a linter + coding assistance¶
A linter is a programming tool to detect possible errors in your code and stylistic issues.
See my JupyterLab set up, for install instructions you can follow to install
Jupyterlab-lsp. This extension provides code navigation + hover suggestions + linters + autocompletion + rename assistance.
2.8.4. DRY code¶
Don’t Repeat Yourself. See the Functions page for tips on how to use functions to reduce duplication.
2.8.5. Premature optimization¶
In this class, you likely won’t get to the point where you try to optimize your code for speed. Our problem sets aren’t quite massive enough to need that. Some student projects might tempt students to optimize for speed.
Don’t! Total time = your coding time (initial time, debug time, revising time) + computer time. Computer time is cheap. Yours is limited.
First: Write clean, easy to use code that works.
Only once your code is virtually complete should you even contemplate speed. And still, you’re probably optimizing too soon. (You haven’t yet realized that you need to completely reformulate the approach to the problem.)
2.8.6. Magic numbers are bad¶
A magic number is a literal number or parameter value embedded in your code. Having numbers that act as in-line inputs and parameters can easily lead to errors and make modifying code very tough.
Here is an example that tries to download and stock price data.
If I want to change the stocks included, I’ll need to change the list of stocks twice.
import pandas_datareader as pdr from datetime import datetime # load stock returns start = datetime(2004, 1, 1) end = datetime(2007, 12, 31) stock_prices = pdr.get_data_yahoo(['MSFT','AAPL'], start=start, end=end) stock_prices = stock_prices.filter(like='Adj Close') stock_prices.columns = ['MSFT','AAPL'] # do more stuff...
Now I only need to change the variable
stocks to alter the entire code.
import pandas_datareader as pdr from datetime import datetime # load stock returns start = datetime(2004, 1, 1) end = datetime(2007, 12, 31) stocks = ['MSFT','AAPL'] stock_prices = pdr.get_data_yahoo(stocks, start=start, end=end) stock_prices = stock_prices.filter(like='Adj Close') stock_prices.columns = stocks # do more stuff...