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Lære Generating Executive Summaries | Reporting and Visualization for Clients
Python for Digital Agencies

bookGenerating Executive Summaries

Executive summaries play a crucial role in agency-client communication by providing a clear, high-level overview of campaign results and recommendations. Clients often do not have the time or need to review every detail within a full report. Instead, they rely on the executive summary to quickly understand what worked, what needs attention, and what actions are recommended. This concise summary helps clients make informed decisions without getting overwhelmed by data, and it reinforces the agency’s value by highlighting successes and strategic insights.

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import pandas as pd # Sample campaign results DataFrame data = { "Channel": ["Email", "Social", "Search", "Display"], "Impressions": [12000, 25000, 18000, 9000], "Clicks": [300, 1200, 900, 200], "Conversions": [25, 60, 40, 8], "Spend": [400, 1200, 900, 300] } df = pd.DataFrame(data) # Summarize key findings total_impressions = df["Impressions"].sum() total_clicks = df["Clicks"].sum() total_conversions = df["Conversions"].sum() total_spend = df["Spend"].sum() top_channel = df.loc[df["Conversions"].idxmax(), "Channel"] # Format summary as bullet points summary = [ f"- Total impressions: {total_impressions:,}", f"- Total clicks: {total_clicks:,}", f"- Total conversions: {total_conversions:,}", f"- Total spend: ${total_spend:,}", f"- Top performing channel: {top_channel}" ] for line in summary: print(line)
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When creating an executive summary, it is essential to select the most important metrics that align with the client’s goals. These typically include total impressions, clicks, conversions, and spend, as well as identifying which channels or campaigns performed best. Presenting these metrics clearly—using bullet points, concise language, and highlighting standout results—ensures that clients can quickly grasp the most relevant insights. Avoiding unnecessary details keeps the summary focused and actionable.

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def generate_summary(client_name, df): total_impressions = df["Impressions"].sum() total_clicks = df["Clicks"].sum() total_conversions = df["Conversions"].sum() total_spend = df["Spend"].sum() top_channel = df.loc[df["Conversions"].idxmax(), "Channel"] summary = ( f"Executive Summary for {client_name}:\n" f"- Total impressions: {total_impressions:,}\n" f"- Total clicks: {total_clicks:,}\n" f"- Total conversions: {total_conversions:,}\n" f"- Total spend: ${total_spend:,}\n" f"- Top performing channel: {top_channel}\n" ) return summary # Example use for two clients client_a_data = { "Channel": ["Email", "Social"], "Impressions": [8000, 15000], "Clicks": [200, 700], "Conversions": [20, 50], "Spend": [300, 900] } client_b_data = { "Channel": ["Search", "Display"], "Impressions": [10000, 5000], "Clicks": [600, 150], "Conversions": [35, 5], "Spend": [700, 200] } df_a = pd.DataFrame(client_a_data) df_b = pd.DataFrame(client_b_data) print(generate_summary("Acme Corp", df_a)) print(generate_summary("Beta Inc", df_b))
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1. What is the main goal of an executive summary?

2. How can Python help automate summary generation?

3. Why is it important to focus on key metrics in summaries?

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What is the main goal of an executive summary?

Select the correct answer

question mark

How can Python help automate summary generation?

Select the correct answer

question mark

Why is it important to focus on key metrics in summaries?

Select the correct answer

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Sektion 3. Kapitel 6

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bookGenerating Executive Summaries

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Executive summaries play a crucial role in agency-client communication by providing a clear, high-level overview of campaign results and recommendations. Clients often do not have the time or need to review every detail within a full report. Instead, they rely on the executive summary to quickly understand what worked, what needs attention, and what actions are recommended. This concise summary helps clients make informed decisions without getting overwhelmed by data, and it reinforces the agency’s value by highlighting successes and strategic insights.

123456789101112131415161718192021222324252627282930
import pandas as pd # Sample campaign results DataFrame data = { "Channel": ["Email", "Social", "Search", "Display"], "Impressions": [12000, 25000, 18000, 9000], "Clicks": [300, 1200, 900, 200], "Conversions": [25, 60, 40, 8], "Spend": [400, 1200, 900, 300] } df = pd.DataFrame(data) # Summarize key findings total_impressions = df["Impressions"].sum() total_clicks = df["Clicks"].sum() total_conversions = df["Conversions"].sum() total_spend = df["Spend"].sum() top_channel = df.loc[df["Conversions"].idxmax(), "Channel"] # Format summary as bullet points summary = [ f"- Total impressions: {total_impressions:,}", f"- Total clicks: {total_clicks:,}", f"- Total conversions: {total_conversions:,}", f"- Total spend: ${total_spend:,}", f"- Top performing channel: {top_channel}" ] for line in summary: print(line)
copy

When creating an executive summary, it is essential to select the most important metrics that align with the client’s goals. These typically include total impressions, clicks, conversions, and spend, as well as identifying which channels or campaigns performed best. Presenting these metrics clearly—using bullet points, concise language, and highlighting standout results—ensures that clients can quickly grasp the most relevant insights. Avoiding unnecessary details keeps the summary focused and actionable.

12345678910111213141516171819202122232425262728293031323334353637
def generate_summary(client_name, df): total_impressions = df["Impressions"].sum() total_clicks = df["Clicks"].sum() total_conversions = df["Conversions"].sum() total_spend = df["Spend"].sum() top_channel = df.loc[df["Conversions"].idxmax(), "Channel"] summary = ( f"Executive Summary for {client_name}:\n" f"- Total impressions: {total_impressions:,}\n" f"- Total clicks: {total_clicks:,}\n" f"- Total conversions: {total_conversions:,}\n" f"- Total spend: ${total_spend:,}\n" f"- Top performing channel: {top_channel}\n" ) return summary # Example use for two clients client_a_data = { "Channel": ["Email", "Social"], "Impressions": [8000, 15000], "Clicks": [200, 700], "Conversions": [20, 50], "Spend": [300, 900] } client_b_data = { "Channel": ["Search", "Display"], "Impressions": [10000, 5000], "Clicks": [600, 150], "Conversions": [35, 5], "Spend": [700, 200] } df_a = pd.DataFrame(client_a_data) df_b = pd.DataFrame(client_b_data) print(generate_summary("Acme Corp", df_a)) print(generate_summary("Beta Inc", df_b))
copy

1. What is the main goal of an executive summary?

2. How can Python help automate summary generation?

3. Why is it important to focus on key metrics in summaries?

question mark

What is the main goal of an executive summary?

Select the correct answer

question mark

How can Python help automate summary generation?

Select the correct answer

question mark

Why is it important to focus on key metrics in summaries?

Select the correct answer

Var alt klart?

Hvordan kan vi forbedre det?

Tak for dine kommentarer!

Sektion 3. Kapitel 6
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