Best Data analytics report templates for marketing teams and agencies (2024)

Automate marketing reporting with dozens of 100% customizable, white-label Data analytics report templates. Used and made by +10,000 marketers in over 60 countries.

Facebook Ads report template for marketing teams and agencies

Optimize your Facebook Ads strategy with this report template. Measure key metrics like cost per conversion, ROAS, and CTR. Analyze performance by audience, placement, and time. Ideal for PPC specialists to track and improve paid media campaigns. Consolidate data from Facebook Ads and PPC for actionable insights.

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E-commerce report template for marketing teams and agencies

Optimize your strategy with this E-commerce report template. Track metrics like conversion rate, average order value, and CPA. Analyze dimensions by audience, channel, and time. Integrate data from E-commerce, Paid Media, and SEO. Ideal for marketing teams to measure performance and achieve goals effectively.

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Weekly report template for marketing teams and agencies

Optimize your marketing strategy with this Weekly report template. Track CAC, conversion rates, ROI, and more. Consolidate data from SEO, Google Analytics 4, Facebook Ads, Instagram Insights, and YouTube. Segment by demographics, location, and time. Perfect for marketing teams to measure key metrics and enhance performance.

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Blog report template for marketing teams and agencies

Blog report template: Track and measure key metrics like click-through rate, lead conversion, and customer acquisition cost. Analyze audience dimensions—demographic, behavioral, and income level—using Google Analytics 4. Ideal for content marketing teams to unify strategy and achieve campaign goals efficiently.

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Twitter Ads report template for marketing teams and agencies

Analyze key metrics like CTR, conversion rate, and social actions with this Twitter Ads report template. Track performance by campaign objective, ad format, and audience targeting. Segment data by time, location, gender, and age. Perfect for PPC specialists to consolidate Twitter Ads and Paid Media strategies for actionable insights.

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HubSpot report template for marketing teams and agencies

Optimize B2B marketing with this HubSpot report template. Track metrics like conversion rate, ROI, and average deal size. Analyze CRM contacts and campaign performance by demographic and psychographic breakdowns. Ideal for inbound marketing teams to measure and refine email marketing and funnel strategies across different timeframes.

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Digital marketing report template for marketing teams and agencies

Optimize your strategy with this digital marketing report template. Track metrics like conversion rate, CTR, and ROAS. Analyze demographics and behavior across CRM, E-commerce, Facebook Ads, Google Analytics 4, and LinkedIn Ads. Segment by timeframes for actionable insights. Perfect for marketing teams to measure performance and align with objectives.

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Video marketing report template for marketing teams and agencies

Optimize your social media and YouTube strategies with this Video marketing report template. Track CTR, conversion rate, ROI, likes, shares, and views. Analyze demographics, psychographics, and geographic data. Gain actionable insights to enhance performance and meet marketing goals. Perfect for marketing teams seeking to unify key metrics and drive success.

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Google Ads PMax report template for marketing teams and agencies

Track key metrics with this Google Ads PMax report template. Measure conversion value, CTR, and impressions. Analyze by campaign type, audience segment, and time period. Consolidate data from Google Ads and Paid Media for actionable insights. Ideal for marketing teams focused on optimizing PPC performance and achieving strategic goals.

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What is a data analytics report?

A data analytics report is a document that consolidates data from multiple sources (e.g., databases, APIs, spreadsheets) to track and display key performance indicators (KPIs) (e.g., data accuracy, processing time, user engagement), enabling teams to monitor data performance and create presentations for stakeholders and executives. 

Data analytics reports are typically created using flexible tools like Google Looker Studio, Power BI, Google Sheets, or platform-specific solutions to enable high customization and integration of multiple data sources.

What to include in a data analytics report?

An actionable data analytics report balances context and specificity based on the audience (executives, managers, and analysts) and their use cases.

Executive data analytics reports

Executive reports for CTOs, CIOs, and stakeholders show data's impact on business outcomes. Reviewed weekly, monthly, or quarterly, they include:

  • Data quality analysis: accuracy, completeness, and consistency of data across systems.
  • Performance metrics: system uptime, response time, and data processing speed.
  • User engagement analysis: user activity, adoption rates, and feedback.
  • Add text for additional context to translate metrics for non-technical audiences. Present in slide decks and simplified Looker Studio reports.

Data manager reports

Manager reports have cross-system views with drill-downs to see performance by department, project, region, team member, and data source. They help align teams, define strategies, and include:

  • Cross-system reporting: overall data flow, project, department, or region reporting across systems.
  • Goal tracking: compare current performance vs objectives.
  • Data audits for prioritization and spotting issues 
  • Benchmarking for performance and efficiency mapping.
  • Data source and integration analysis

Operational Data Analytics Reports

Operational reports for analysts and data engineers have granular, customizable KPIs to solve technical issues. Monitored hourly, daily, or weekly, they cover:

  • Data processing: ETL performance, data pipeline efficiency, error rates.
  • System monitoring: server load, memory usage, network latency.
  • User activity: login rates, session duration, feature usage.
  • Data integrity: validation errors, data anomalies, reconciliation issues.

Operational data analytics reports are highly customized, built in flexible tools like Google Sheets or Looker Studio to enable data cleaning, blending, annotations, and integrating multiple sources.



How to build a data analytics report?

To build a data analytics report, connect your data sources, choose a template on Looker Studio or Sheets, build your queries by selecting metrics and dimensions, choose charts to visualize your data, customize the report, design and share via link, PDF or email. 

Here’s the breakdown: 

Connect data sources

Define and connect the data sources to bring to your report. Common sources are databases, APIs, CRM systems, and cloud storage for data analytics.

To connect your data sources, go to portermetrics.com, choose the data sources to bring to your report. 

You can follow these tutorials on connecting your data:

Choose a template

Choose from dozens of data analytics report templates in Google Sheets or Looker Studio, designed for use cases like data monitoring, performance tracking, and user engagement analysis. 

Learn to copy Looker Studio templates

While templates are the starting point. Make them specific for your business or agency. Map your specific metrics, especially custom data points, CRM data, and all the fields and metrics that you define as "key performance indicators" and "outcomes".

Depending on your reporting tool—Google Sheets or Google Looker Studio, pick any of the dozens of templates created by our team and customers to solve your data analytics reporting use cases, such as data monitoring, performance tracking, and user engagement analysis. 

Select metrics, dimensions, and charts

Once your report template is downloaded, you may 1)modify it or 2) create a blank page to build it from scratch. Whatever the case, setting up a query always follows these steps: 

  1. Select the data source and the account connected to it
  2. Choose metrics (e.g., data accuracy, processing time, user engagement, etc.). 
  3. Choose breakdowns to segment your data (e.g., by date, department, data source, etc.)

You can follow these tutorials on adding data to your reports

Design

To make your data analytics reports truly white-label you can add logos, colors, fonts, and styling to mirror your brand. 

Follow these tutorials to design your data analytics reports:

Share

Share your data analytics reports via links, PDF, schedule emails, and control permissions.

KPIs to include in a data analytics report?

Data analytics reports should include a mix of data quality, performance, user engagement, and cost metrics and KPIs to fully understand the performance of data systems towards business goals. They include:

Data quality KPIs measure the integrity and reliability of data: 

  • Accuracy metrics: error rates, validation success, data consistency
  • Completeness metrics: missing values, data coverage, record counts
  • Timeliness metrics: data latency, update frequency, processing time

Performance KPIs compare your data processing outputs to the system capabilities, including:

  • Processing speed: data throughput, ETL efficiency
  • System uptime: availability, downtime incidents
  • Resource utilization: CPU, memory, network usage 

User engagement KPIs measure the interaction with data systems:

  • Activity metrics: login rates, session duration
  • Adoption metrics: feature usage, user growth
  • Feedback metrics: user satisfaction, issue reports

Cost KPIs show the financial impact of your data systems:

  • Operational costs: infrastructure, maintenance
  • Efficiency: cost per transaction, cost savings
  • Effectiveness: ROI, cost-benefit analysis

To analyze these data analytics KPIs, segment them by:

  • System: database, application, cloud service
  • Time: Hourly, daily, weekly, monthly
  • Project: phase, objective
  • Business: department, branch, region
  • User: role, location, behavior
  • Data source: type, format, origin