Script 1049: SBA Intraday Budget Cap Budget via Dimension Tags

Purpose

Python script to pause and resume campaigns based on Dimension tags (SBA Strategy and SBA Monthly Budget) by monitoring bi-hourly intraday spend.

To Elaborate

This Python script automates the process of pausing and resuming campaigns in an advertising platform based on certain conditions. The key business rules are as follows:

  • The script calculates the monthly spend for each campaign group (defined by the SBA Strategy dimension) and compares it to the monthly budget specified in the SBA Campaign Budget dimension.
  • If the spend exceeds a certain safety margin (defined by the BUDGET_CAP_SAFETY_MARGIN parameter), the script recommends pausing the campaign.
  • If the spend is below the budget (with the safety margin), but the campaign has a pause date specified, the script recommends resuming the campaign.
  • The script also takes into account the SBA Traffic dimension, pausing or resuming campaigns based on the recommended status and the current campaign status.

Walking Through the Code

  1. The script starts by defining a configurable parameter, BUDGET_CAP_SAFETY_MARGIN, which determines how close the monthly spend can get to the monthly budget before pausing the campaign.
  2. The script then checks if it is running on a server or locally, based on the presence of a pickle file path. If running locally, the script loads the dataSourceDict from the pickle file.
  3. The script sets up the necessary imports and defines the required columns for input and output.
  4. The inputDf is a copy of the originalDf to keep the dataSourceDict.pkl pristine.
  5. The script performs some data type conversions and fills NaN values with 0.0 or empty strings.
  6. The script calculates the MTD Budget Group Spend by grouping the inputDf by the SBA Strategy dimension and summing the Pub. Cost $ column.
  7. Based on the calculated spend and the monthly budget, the script determines which campaigns to pause and which campaigns to resume.
  8. The script updates the recommended status and pause date columns accordingly.
  9. The script also considers the SBA Traffic dimension and updates the campaign status and pause date for campaigns that should be paused or resumed based on the recommended status.
  10. The script selects the changed rows from the inputDf and renames the campaign status column to the bulk column header.
  11. Finally, the script outputs the resulting dataframes, outputDf and debugDf, and saves them as CSV files if running in local development mode.

Vitals

  • Script ID : 1049
  • Client ID / Customer ID: 1306927757 / 60270153
  • Action Type: Bulk Upload (Preview)
  • Item Changed: Campaign
  • Output Columns: Account, Campaign, Status, SBA Pause Date, SBA Recommended Status
  • Linked Datasource: M1 Report
  • Reference Datasource: None
  • Owner: dwaidhas@marinsoftware.com (dwaidhas@marinsoftware.com)
  • Created by dwaidhas@marinsoftware.com on 2024-05-07 20:49
  • Last Updated by dwaidhas@marinsoftware.com on 2024-05-07 20:49
> See it in Action

Python Code

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##
## name: Intraday Budget Cap via Dimensions
## description:
##  Pause campaigns when MTD spend reaches Monthly Budget (stored in Dimensions)
## 
## author: Dana Waidhas
## created: 2024-02-26
## 

##### Configurable Param #####
# Define how close MTD spend can get to Monthly Budget before being Paused
#  - compensates for lag in system
#  - compendates for non-linearity in intraday spend
BUDGET_CAP_SAFETY_MARGIN = 0.02 # set to 2%
##############################


########### START - Local Mode Config ###########
# Step 1: Uncomment download_preview_input flag and run Preview successfully with the Datasources you want
download_preview_input=False
# Step 2: In MarinOne, go to Scripts -> Preview -> Logs, download 'dataSourceDict' pickle file, and update pickle_path below
pickle_path = '/Users/mhuang/Downloads/pickle/generic_budget_cap_intraday_datasource_dict.pkl'
# Step 3: Copy this script into local IDE with Python virtual env loaded with pandas and numpy.
# Step 4: Run locally with below code to init dataSourceDict

# determine if code is running on server or locally
def is_executing_on_server():
    try:
        # Attempt to access a known restricted builtin
        dict_items = dataSourceDict.items()
        return True
    except NameError:
        # NameError: dataSourceDict object is missing (indicating not on server)
        return False

local_dev = False

if is_executing_on_server():
    print("Code is executing on server. Skip init.")
elif len(pickle_path) > 3:
    print("Code is NOT executing on server. Doing init.")
    local_dev = True
    # load dataSourceDict via pickled file
    import pickle
    dataSourceDict = pickle.load(open(pickle_path, 'rb'))

    # print shape and first 5 rows for each entry in dataSourceDict
    for key, value in dataSourceDict.items():
        print(f"Shape of dataSourceDict[{key}]: {value.shape}")
        # print(f"First 5 rows of dataSourceDict[{key}]:\n{value.head(5)}")

    # set outputDf same as inputDf
    inputDf = dataSourceDict["1"]
    outputDf = inputDf.copy()

    # setup timezone
    import datetime
    # Chicago Timezone is GMT-5. Adjust as needed.
    CLIENT_TIMEZONE = datetime.timezone(datetime.timedelta(hours=-5))

    # import pandas
    import pandas as pd
    import numpy as np

    # Printing out the version of Python, Pandas and Numpy
    # import sys
    # python_version = sys.version
    # pandas_version = pd.__version__
    # numpy_version = np.__version__

    # print(f"python version: {python_version}")
    # print(f"pandas version: {pandas_version}")
    # print(f"numpy version: {numpy_version}")

    # other imports
    import re
    import urllib

    # import Marin util functions
    from marin_scripts_utils import tableize, select_changed
else:
    print("Running locally but no pickle path defined. dataSourceDict not loaded.")
    exit(1)
########### END - Local Mode Setup ###########

today = datetime.datetime.now(CLIENT_TIMEZONE).date()

# primary data source and columns
inputDf = dataSourceDict["1"]
RPT_COL_ACCOUNT = 'Account'
RPT_COL_CAMPAIGN = 'Campaign'
RPT_COL_CAMPAIGN_STATUS = 'Campaign Status'
RPT_COL_PUB_COST = 'Pub. Cost $'
RPT_COL_SBA_TRAFFIC = 'SBA Traffic'
RPT_COL_SBA_BUDGET_GROUP = 'SBA Strategy'
RPT_COL_SBA_GROUP_MONTHLY_BUDGET = 'SBA Campaign Budget'
RPT_COL_SBA_PAUSE_DATE = 'SBA Pause Date'
RPT_COL_SBA_RECOMMENDED_STATUS = 'SBA Recommended Status'

# output columns and initial values
BULK_COL_ACCOUNT = 'Account'
BULK_COL_CAMPAIGN = 'Campaign'
BULK_COL_STATUS = 'Status'
BULK_COL_SBA_PAUSE_DATE = 'SBA Pause Date'
BULK_COL_SBA_RECOMMENDED_STATUS = 'SBA Recommended Status'

# Make inputDf a copy of original to keep dataSourceDict.pkl pristine
originalDf = dataSourceDict["1"]
inputDf = originalDf.copy()

# define some intermediate columns
COL_MTD_BUDGET_GROUP_SPEND = 'mtd_budget_group_spend'

# define Status values
VAL_STATUS_ACTIVE = 'Active'
VAL_STATUS_PAUSED = 'Paused'
VAL_BLANK = ''

print("inputDf shape", inputDf.shape)
print("inputDf info", inputDf.info())

## force expected types
# Convert RPT_COL_SBA_MONTHLY_BUDGET to numeric, coercing errors to NaN
inputDf[RPT_COL_SBA_GROUP_MONTHLY_BUDGET] = pd.to_numeric(inputDf[RPT_COL_SBA_GROUP_MONTHLY_BUDGET], errors='coerce')
# Replace NaN values with 0.0 if that's the desired behavior
inputDf[RPT_COL_SBA_GROUP_MONTHLY_BUDGET].fillna(0.0, inplace=True)
# Force RPT_COL_SBA_PAUSE_DATE to be Date type
inputDf[RPT_COL_SBA_PAUSE_DATE] = pd.to_datetime(inputDf[RPT_COL_SBA_PAUSE_DATE], errors='coerce').dt.date

# HACK: replace nan with empty strings so comparison doesn't fail
inputDf.fillna(VAL_BLANK, inplace=True)





# Calculate MTD Budget Group Spend
inputDf[COL_MTD_BUDGET_GROUP_SPEND] = inputDf.groupby(RPT_COL_SBA_BUDGET_GROUP)[RPT_COL_PUB_COST].transform('sum')

# Recommend to Pause camapigns with MTD Budget Group Spend over Monthly Budget (by a margin)
has_monthly_group_budget = inputDf[RPT_COL_SBA_GROUP_MONTHLY_BUDGET] > 0.0
over_spent_campaigns = inputDf[COL_MTD_BUDGET_GROUP_SPEND] >= inputDf[RPT_COL_SBA_GROUP_MONTHLY_BUDGET] * (1 - BUDGET_CAP_SAFETY_MARGIN)
campaigns_to_pause = has_monthly_group_budget & over_spent_campaigns

inputDf.loc[campaigns_to_pause, 'pause'] = 1
print(f"campaigns_to_pause count: {sum(campaigns_to_pause)}")
if campaigns_to_pause.any():
    print("campaigns_to_pause campaigns", tableize(inputDf.loc[campaigns_to_pause].head()))

inputDf.loc[ campaigns_to_pause, \
             RPT_COL_SBA_RECOMMENDED_STATUS \
           ] = VAL_STATUS_PAUSED
 
# Recommend to reactivate campaigns with MTD Budget Group Spend under Monthly Group Budget (by a margin)
# but limited to campaigns with SBA Pause Date populated 10 digit date
under_spent_campaigns = inputDf[COL_MTD_BUDGET_GROUP_SPEND] < inputDf[RPT_COL_SBA_GROUP_MONTHLY_BUDGET] * (1 - BUDGET_CAP_SAFETY_MARGIN)
sba_paused_campaigns = inputDf[RPT_COL_SBA_PAUSE_DATE].astype('str').str.len() >= 10
campaigns_to_resume = under_spent_campaigns & sba_paused_campaigns

inputDf.loc[campaigns_to_resume, 'resume'] = 1
print(f"campaigns_to_resume count: {sum(campaigns_to_resume)}")
if campaigns_to_resume.any():
    print("campaigns_to_resume", tableize(inputDf.loc[campaigns_to_resume].head()))

inputDf.loc[ campaigns_to_resume, \
             RPT_COL_SBA_RECOMMENDED_STATUS  \
           ] = VAL_STATUS_ACTIVE

## Actually taffic PAUSE

should_traffic = inputDf[RPT_COL_SBA_TRAFFIC].astype(str).str.lower() == 'traffic'

should_traffic_pause = should_traffic & \
                       (inputDf[RPT_COL_SBA_RECOMMENDED_STATUS] == VAL_STATUS_PAUSED) & \
                       (inputDf[RPT_COL_SBA_RECOMMENDED_STATUS] != inputDf[RPT_COL_CAMPAIGN_STATUS])


inputDf.loc[should_traffic_pause, 'traffic_pause'] = 1
print(f"should_traffic_pause count: {sum(should_traffic_pause)}")
if should_traffic_pause.any():
    print("should_traffic_pause campaigns", tableize(inputDf.loc[should_traffic_pause].head()))


inputDf.loc[should_traffic_pause, RPT_COL_CAMPAIGN_STATUS] = inputDf.loc[should_traffic_pause, RPT_COL_SBA_RECOMMENDED_STATUS]
inputDf.loc[should_traffic_pause, RPT_COL_SBA_PAUSE_DATE] = today.strftime('%Y-%m-%d')

## Actually taffic RESUME

should_traffic_resume = should_traffic & \
                       (inputDf[RPT_COL_SBA_RECOMMENDED_STATUS] == VAL_STATUS_ACTIVE) & \
                       (inputDf[RPT_COL_SBA_RECOMMENDED_STATUS] != inputDf[RPT_COL_CAMPAIGN_STATUS]) & \
                       sba_paused_campaigns

inputDf.loc[should_traffic_resume, 'traffic_resume'] = 1
print(f"should_traffic_resume count: {sum(should_traffic_resume)}")
if should_traffic_resume.any():
    print("should_traffic_resume campaigns", tableize(inputDf.loc[should_traffic_resume].head()))

inputDf.loc[should_traffic_resume, RPT_COL_CAMPAIGN_STATUS] = inputDf.loc[should_traffic_resume, RPT_COL_SBA_RECOMMENDED_STATUS]
inputDf.loc[should_traffic_resume, RPT_COL_SBA_PAUSE_DATE] = VAL_BLANK

print(f"select_changed with inputDf shape {inputDf.shape} and originalDf shape {originalDf.shape}")


# only include changed rows in bulk file
(outputDf, debugDf) = select_changed(inputDf, \
                                    originalDf, \
                                    diff_cols = [ \
                                        RPT_COL_CAMPAIGN_STATUS, \
                                        RPT_COL_SBA_RECOMMENDED_STATUS, \
                                    ], \
                                    select_cols = [ \
                                        RPT_COL_ACCOUNT, \
                                        RPT_COL_CAMPAIGN, \
                                        RPT_COL_CAMPAIGN_STATUS, \
                                        RPT_COL_SBA_RECOMMENDED_STATUS, \
                                        RPT_COL_SBA_PAUSE_DATE, \
                                    ], \
                                    merged_cols=[RPT_COL_ACCOUNT, RPT_COL_CAMPAIGN] \
                                    )


changed = (debugDf[RPT_COL_CAMPAIGN_STATUS+'_new'] != debugDf[RPT_COL_CAMPAIGN_STATUS+'_orig']) | \
          (debugDf[RPT_COL_SBA_RECOMMENDED_STATUS+'_new'] != debugDf[RPT_COL_SBA_RECOMMENDED_STATUS+'_orig'])

debugDf.loc[changed, 'changed'] = 1
print(f"changed count: {sum(changed)}")
if changed.any():
    print("changed campaigns", tableize(debugDf.loc[changed].head()))

# remember to use Bulk column header for Status
outputDf = outputDf.rename(columns = { \
                RPT_COL_CAMPAIGN_STATUS: BULK_COL_STATUS \
                })

print("outputDf shape", outputDf.shape)
print("outputDf", tableize(outputDf.tail(5)))

## local debug
if local_dev:
    output_filename = 'outputDf.csv'
    outputDf.to_csv(output_filename, index=False)
    print(f"Local Dev: Output written to: {output_filename}")

    debug_filename = 'debugDf.csv'
    debugDf.to_csv(debug_filename, index=False)
    print(f"Local Dev: Debug written to: {debug_filename}")

Post generated on 2024-05-15 07:44:05 GMT

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