Learn Python Series (#33) - Data Science Part 4 - Pandas

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(Edited)

Learn Python Series (#33) - Data Science Part 4 - Pandas

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What will I learn?

  • You will learn that pandas provides you with powerful tools you can use to filter data with;
  • individual and multiple conditions can be combined;
  • inline conditions can be used;
  • Boolean variables can be defined, useful for readability and re-use;
  • "auto-magical" conditional expression strings can be passed as arguments to the .query() method, but beware for potential security vulnerabilities in case you're accepting external (user / bot) input!

Requirements

  • A working modern computer running macOS, Windows or Ubuntu;
  • An installed Python 3(.7) distribution, such as (for example) the Anaconda Distribution;
  • The ambition to learn Python programming.

Difficulty

  • Beginner, intermediate

Additional sample code files

The full - and working! - iPython tutorial sample code file is included for you to download and run for yourself right here:
https://github.com/realScipio/learn-python-series/blob/master/lps-033/learn-python-series-033-data-science-pt4-pandas.ipynb

The example CSV file that was used in the episodes #31 and #32 is copied to the lps-033 folder as well:
https://github.com/realScipio/learn-python-series/blob/master/lps-033/btcusdt_20190602_20190604_1min_hloc.csv

GitHub Account

https://github.com/realScipio

Learn Python Series (#33) - Data Science Part 4 - Pandas

Re-loading the actual BTCUSDT financial data using pandas

First, let's again read and open the file btcusdt_20190602_20190604_1min_hloc.csv found here on my GitHub account, (after having saved the file to your current working directory, from which you're also opening it using .read_csv()):

import pandas as pd
df = pd.read_csv('btcusdt_20190602_20190604_1min_hloc.csv', 
                 parse_dates=['datetime'], index_col='datetime')
df.head()
open high low close volume
datetime
2019-06-02 00:00:00+00:00 8545.10 8548.55 8535.98 8537.67 17.349543
2019-06-02 00:01:00+00:00 8537.53 8543.49 8524.00 8534.66 31.599922
2019-06-02 00:02:00+00:00 8533.64 8540.13 8529.98 8534.97 7.011458
2019-06-02 00:03:00+00:00 8534.97 8551.76 8534.00 8551.76 5.992965
2019-06-02 00:04:00+00:00 8551.76 8554.76 8544.62 8549.30 15.771411

Executing pandas conditional filters

If you've been following along about pandas in this Data Science sub-series, hopefully by now you've realised that pandas provides you with quite some powerful built-in methods to analyse, enrich, clean-up, and (re-)model data sets with. Like Excel / OpenOffice spreadsheets and like database management systems, pandas is able to "filter" data.

There exist multiple techniques to execute conditional filters.

Inline conditionals

Using the same CSV file, containing 4320 1-minute ticks, fetched from Binance, on their BTCUSDT trading pair, on dates June 2, 2019 to June 4, 2019, you've already analysed (via the df.describe() statistical overview method) that the price of Bitcoin in the given interval was trading between 7481.02 and 8814.78.

df.describe()
open high low close volume
count 4320.000000 4320.000000 4320.000000 4320.000000 4320.000000
mean 8354.033475 8359.921905 8347.543243 8353.818926 34.183344
std 358.395024 357.338897 359.911089 358.538551 54.520356
min 7490.200000 7533.430000 7481.020000 7494.110000 1.351415
25% 7985.045000 7990.270000 7979.205000 7984.997500 11.114809
50% 8519.605000 8524.985000 8513.490000 8518.845000 19.566122
75% 8661.080000 8666.992500 8656.007500 8661.200000 35.273851
max 8808.820000 8814.780000 8805.850000 8809.910000 949.563225

In order to derive how many 1-minute candles the data set contains in which the opening price (the price data in the "open" column) was higher than 8800, the condition itself is - of course:

df['open'] > 8800

To use this condition inline, pass that exact condition as a squared bracket "slicing argument" to the DataFrame df, like so:

df_over_8000 = df[df['open'] > 8800]
df_over_8000
open high low close volume
datetime
2019-06-02 12:04:00+00:00 8801.84 8804.14 8774.17 8784.35 98.534386
2019-06-02 12:45:00+00:00 8804.44 8805.51 8799.00 8799.00 45.084453
2019-06-02 12:47:00+00:00 8807.61 8814.78 8805.85 8808.72 33.917674
2019-06-02 12:48:00+00:00 8808.82 8811.78 8797.34 8797.35 68.527716

I hadn't explicitly explained using the .count() method before, for example in the "basic pandas statistic operations"-section in the 2nd Data Science sub-series episode (found here), but using the .describe() stats overview method, which was explained before, it was mentioned and used already.

Regardless, if you want to count (to use for further processing or simply to return its value) the number of instances on which the condition is True, simply chain the .count() method, like so:

df[df['open'] > 8800]['open'].count()
4

And indeed, the df_over_8000 result table printed 4 (in total) 1-minute data ticks correctly, containing opening prices higher than 8800.

Filtering using multiple inline conditions

In order to filter (= keep) using two or more conditions, use multiple conditions as "filtering slice" via the & (and) and | (or) bitwise operators.

Say, for example, you want to filter all 1-minute ticks where opening price was above 8800 and trading volume was above 50 Bitcoins, execute:

df_over_8000_high_volume = df[ (df['open'] > 8800) & (df['volume'] > 50) ]
df_over_8000_high_volume
open high low close volume
datetime
2019-06-02 12:04:00+00:00 8801.84 8804.14 8774.17 8784.35 98.534386
2019-06-02 12:48:00+00:00 8808.82 8811.78 8797.34 8797.35 68.527716

By "eye-balling" the first (single-condition) example output, you can see the results are correct.

If we would replace & for |, we're filtering something completely different, being:

  • let's keep all rows in which either opening price is above 8800,
    or
  • volume is above 50:
df_over_8000_OR_high_volume = df[ (df['open'] > 8800) | (df['volume'] > 50) ]
df_over_8000_OR_high_volume.head(10)
open high low close volume
datetime
2019-06-02 01:22:00+00:00 8586.33 8595.12 8583.23 8594.99 51.051786
2019-06-02 03:02:00+00:00 8535.29 8550.20 8529.55 8545.56 56.543773
2019-06-02 07:33:00+00:00 8588.05 8599.85 8586.00 8599.36 61.909827
2019-06-02 07:34:00+00:00 8599.56 8615.00 8598.09 8614.65 197.822432
2019-06-02 07:35:00+00:00 8611.87 8652.75 8611.05 8648.88 292.018398
2019-06-02 07:36:00+00:00 8648.90 8680.00 8648.87 8670.11 239.552508
2019-06-02 07:37:00+00:00 8673.25 8673.25 8653.92 8661.19 96.012789
2019-06-02 07:38:00+00:00 8661.68 8676.26 8661.68 8674.99 54.226364
2019-06-02 07:39:00+00:00 8674.99 8720.00 8671.88 8715.01 188.849318
2019-06-02 07:40:00+00:00 8710.01 8714.87 8685.24 8703.31 118.652782
df_over_8000_OR_high_volume['open'].count()
671

Remembering that df_over_8000_high_volume returned only 2 rows in which both conditions were met, if we substract those 2 from the individual conditionals combined, indeed we get 671 as a result:

price_over_8800 = df[(df['open'] > 8800)]['open'].count()
volume_over_50 = df[df['volume'] > 50]['open'].count()
num_df_over_8000_high_volume = df_over_8000_high_volume['open'].count()

print(f"price_over_8800: {price_over_8800}")
print(f"volume_over_50: {volume_over_50}")
print(f"num_df_over_8000_high_volume: {num_df_over_8000_high_volume}")
price_over_8800: 4
volume_over_50: 669
num_df_over_8000_high_volume: 2
  • In 4 instances, price was over 8800;
  • In 669 instances, volume was over 50;
  • In 2 instances, price was over 8800 and volume over 50

Ergo: (669 + 4) - 2 = 671

Filtering passing Boolean variables

As you may have noticed, filtering by multipal inline conditions very quickly leads to long lines of code. For readability matters, it's also possible to assign Boolean variables, and pass those instead. The following syntax (same example) also works:

price_over_8800 = df['open'] > 8800
volume_over_50 = df['volume'] > 50
df_over_8000_high_volume = df[price_over_8800 & volume_over_50]
df_over_8000_high_volume
open high low close volume
datetime
2019-06-02 12:04:00+00:00 8801.84 8804.14 8774.17 8784.35 98.534386
2019-06-02 12:48:00+00:00 8808.82 8811.78 8797.34 8797.35 68.527716

--- this looks much better!

Filtering using the .query() method

A third way to filter DataFrame data, is by using the .query() method. .query() expects to receive a string as its expr= argument, using Boolean (instead of bitwise) operators, ergo: and / or.

Also, the column names are referenced inside the conditional expression string. Like so (again: same example):

query_expression = 'open > 8800 and volume > 50'
df.query(query_expression)
open high low close volume
datetime
2019-06-02 12:04:00+00:00 8801.84 8804.14 8774.17 8784.35 98.534386
2019-06-02 12:48:00+00:00 8808.82 8811.78 8797.34 8797.35 68.527716

Nota bene: Please stand still for a second and realise that, in order to make the last mentioned .query() method work, only a "humanized" looking string needed to be passed-in as an argument. It seems to "just work auto-magically"...

Under the hood, .query() utilises the (not yet explained) .eval() method of pandas, which is - in general - able to evaluate strings to derive column-wise vectorised operations from. How magical and convenient that may be (it is very cool actually!) it also allows .eval() to execute arbitrary code. So be careful when using it on an interface where others (users, bots) are allowed to pass their (potentially dangerous) input strings as .eval() arguments!

What did we learn, hopefully?

Hopefully you've learned that pandas provides you with techniques for filtering data based on one or more conditional filters. When using bitwise operators & / |, or boolean operators and / or (using .query()), keep in mind you're writing expressions about which rows you want to keep (not drop).

Thank you for your time!

Curriculum (of the Learn Python Series):



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Thank you for your contribution @scipio.
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