Script 671: Dimension Tags from Campaign Name
Purpose
The script extracts pacing dates and goals from campaign names in a dataset to populate missing information.
To Elaborate
The Python script is designed to process a dataset containing campaign information, specifically focusing on extracting pacing start and end dates, as well as campaign goals from the campaign names. This is particularly useful when such details are not explicitly provided in separate columns. The script uses regular expressions to identify date patterns and goal indicators within the campaign names. It then converts these extracted strings into appropriate date formats and assigns goals based on predefined patterns. The processed data is filtered to include only rows where this information has been successfully extracted, ensuring that the output dataset is enriched with the necessary pacing and goal details.
Walking Through the Code
- Date Conversion Function:
- The
convert_date
function attempts to parse date strings into date objects, handling both four-digit and two-digit year formats. This ensures flexibility in date formats within campaign names.
- The
- Information Extraction Function:
- The
extract_info_from_campaign_name_enhanced
function uses regular expressions to extract date ranges and goal types from campaign names. It identifies patterns for dates and specific goal keywords like ‘CPM’ and ‘MS’, determining the goal based on these matches.
- The
- Data Preparation:
- The script renames columns in the input DataFrame to match expected names and removes unnecessary columns. It also cleans column names by stripping whitespace.
- Filtering and Processing:
- The script filters the DataFrame to focus on rows where the ‘Goal’ column is blank. It ensures campaign names are treated as strings to prevent errors during processing.
- Data Extraction and Population:
- For each row in the filtered DataFrame, the script extracts start and end dates and goals using the extraction function. It populates these values into new columns if any valid information is found.
- Final Filtering and Output:
- The script filters the DataFrame again to retain only rows with extracted goal information. It then creates an output DataFrame with selected columns and prints it to verify the extracted data.
Vitals
- Script ID : 671
- Client ID / Customer ID: 1306927181 / 60270139
- Action Type: Bulk Upload
- Item Changed: Campaign
- Output Columns: Account, Campaign, Goal, Pacing - End Date, Pacing - Start Date
- Linked Datasource: M1 Report
- Reference Datasource: None
- Owner: ascott@marinsoftware.com (ascott@marinsoftware.com)
- Created by ascott@marinsoftware.com on 2024-01-31 18:28
- Last Updated by Jesus Garza on 2024-07-09 00:29
> See it in Action
Python Code
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## name: Dimension Tags from Campaign Name
## description: Extracts pacing dates and goal from campaign name
## author:
## created: 2023-12-04
## 7/1 Updated version with CPM and MS for Social Campaigns
## 6/27 Updated version w/o 'Target (Impr/Spend/Views)'
# Column Definitions
RPT_COL_CAMPAIGN = 'Campaign'
RPT_COL_ACCOUNT = 'Account'
RPT_COL_PACING_START_DATE = 'Pacing - Start Date'
RPT_COL_PACING_END_DATE = 'Pacing - End Date'
RPT_COL_GOAL = 'Goal'
# Function to convert date with enhanced logic to handle two-digit years
def convert_date(date_str):
if date_str is None:
return None
try:
# Try to parse date with four-digit year
return datetime.datetime.strptime(date_str, '%m/%d/%Y').date()
except ValueError:
try:
# Try to parse date with two-digit year
return datetime.datetime.strptime(date_str, '%m/%d/%y').date()
except ValueError:
return None
# Function to extract information from the campaign name with enhanced logic
def extract_info_from_campaign_name_enhanced(campaign_name):
# Updated date pattern to handle various delimiters and formats
date_pattern = r'\(?(\d{1,2}/\d{1,2}/\d{2,4})[-\s_]+(\d{1,2}/\d{1,2}/\d{2,4})\)?'
goal_pattern = r'(Search|RGD|SGD|SBD|CPM|MS)'
date_match = re.search(date_pattern, campaign_name)
goal_match = re.search(goal_pattern, campaign_name)
start_date_str, end_date_str = (date_match.groups() if date_match else (None, None))
goal_segment = goal_match.group(1) if goal_match else None
if 'CPM' in campaign_name:
goal = 'CPM'
elif 'MS' in campaign_name:
goal = 'MS'
else:
goal = 'MS' if goal_segment and 'Search' in goal_segment else 'CPM' if goal_segment in ['RGD', 'SGD', 'SBD'] else ''
start_date = convert_date(start_date_str)
end_date = convert_date(end_date_str)
return start_date, end_date, goal
# Rename columns to match the script's expectations
inputDf.columns = ['Campaign', 'Account', 'Pacing - Start Date', 'Pacing - End Date', 'Goal', 'Unnamed', 'Target (Impr/Spend/Views)']
# Drop the 'Unnamed' column
inputDf.drop(columns=['Unnamed'], inplace=True)
# Clean any leading/trailing spaces in the column names
inputDf.columns = inputDf.columns.str.strip()
# Filter for rows where the Goal column is blank and create a copy to avoid SettingWithCopyWarning
inputDf_filtered = inputDf[inputDf[RPT_COL_GOAL].isna()].copy()
# Ensure that the campaign names are treated as strings to avoid TypeError
inputDf_filtered[RPT_COL_CAMPAIGN] = inputDf_filtered[RPT_COL_CAMPAIGN].astype(str)
# Adding columns for extracted information to inputDf_filtered
inputDf_filtered[RPT_COL_PACING_START_DATE] = np.nan
inputDf_filtered[RPT_COL_PACING_END_DATE] = np.nan
inputDf_filtered[RPT_COL_GOAL] = np.nan
# Process each row in inputDf_filtered to extract information
for index, row in inputDf_filtered.iterrows():
start_date, end_date, goal = extract_info_from_campaign_name_enhanced(row[RPT_COL_CAMPAIGN])
if start_date or end_date or goal: # Include rows with any valid extracted information
inputDf_filtered.loc[index, RPT_COL_PACING_START_DATE] = start_date
inputDf_filtered.loc[index, RPT_COL_PACING_END_DATE] = end_date
inputDf_filtered.loc[index, RPT_COL_GOAL] = goal
# Filter inputDf_filtered for rows with extracted information
filteredDf = inputDf_filtered.dropna(subset=[RPT_COL_GOAL])
# Define the columns to be included in the output DataFrame
cols = [
RPT_COL_CAMPAIGN,
RPT_COL_ACCOUNT,
RPT_COL_PACING_START_DATE,
RPT_COL_PACING_END_DATE,
RPT_COL_GOAL
]
# Create output DataFrame with the selected columns
outputDf = filteredDf[cols].copy()
# Print the output DataFrame to check the extracted information
print("Output DataFrame with extracted information:")
print(outputDf)
Post generated on 2024-11-27 06:58:46 GMT