How to Build Clustered Charts in Google Sheets & Excel

A practical guide to clustered column charts in Google Sheets and Excel, plus how an AI computer agent can build, refresh, and standardize them for you.
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Why Sheets & Excel charts + AI

Clustered column charts are the workhorse of business reporting. In a single glance, your team can compare regions, products, or campaigns across time and spot where revenue spikes or engagement drops. In Excel, clustered columns shine when you have structured, multi-series data and need tight control over axes and formatting. In Google Sheets, they’re perfect for live, collaborative dashboards backed by forms, CRMs, or ad platforms. Together, Sheets and Excel give you the canvas to tell clear numerical stories without drowning stakeholders in raw tables.But building these charts manually is tedious: cleaning data, updating ranges, relinking series, fixing labels after every new month. That’s where an AI agent steps in. Instead of you clicking through menus, an AI computer agent can open Sheets or Excel, reshape data, rebuild clustered charts, and export updated decks before your Monday standup. You stay focused on decisions; the agent handles the clicks.

How to Build Clustered Charts in Google Sheets & Excel

### OverviewClustered column charts are the backbone of marketing, sales, and finance reporting. They compare categories side by side: regions vs. regions, campaigns vs. campaigns, this quarter vs. last quarter. Below are three ways to build them: classic manual steps, no‑code automation, and finally, fully delegated workflows powered by an AI agent.---## 1. Manual methods in Google Sheets and Excel### 1.1 Google Sheets: From table to clustered chart1. Prepare your data: put categories (e.g., Quarter) in the first column and each series (Region A, Region B, etc.) in separate columns.2. Select the entire data range, including headers.3. Go to `Insert` → `Chart`.4. In the Chart editor, under "Setup", choose `Column chart`. By default, Sheets uses clustered columns when you have multiple series.5. Make sure "Use row 1 as headers" and "Use column A as labels" are enabled.6. Under "Customize", adjust series colors, add data labels, and tidy the legend.7. Optional: move the chart to its own sheet for reporting.Official help: Google’s chart guide is here: https://support.google.com/docs/answer/190718### 1.2 Excel: Standard clustered column chart1. Organize your table: categories in the leftmost column (e.g., Months), and each series (Product A, Product B) in columns to the right.2. Select the full table, including headers.3. Go to the `Insert` tab → in the Charts group, choose `Insert Column or Bar Chart` → `Clustered Column`.4. Excel builds the chart with each series in a different color, clustered by category.5. Use `Chart Design` → `Add Chart Element` to add a chart title, axes titles, and legend.6. Use `Format` to refine fonts, colors, and gap width between columns.7. Right‑click data series to add data labels or change series order.Official help: Microsoft’s column chart guide: https://support.microsoft.com/en-us/office/create-a-column-chart-36ad2b1d-238b-4422-a411-d26e949a3fd5### 1.3 Excel: Combination clustered + stacked for rich comparisonsWhen you want forecast vs. actual, plus breakdown by type, use a combo chart:1. Set up data with Forecast and Total Actual as rows (series), months as columns, and individual actual components (e.g., Payroll, Facilities) under Total Actual.2. Select the entire data table.3. Insert a `Clustered Column` chart.4. Go to `Chart Design` → `Change Chart Type` → `Combo`.5. Set Forecast to `Clustered Column` on the primary axis.6. Set each Actual component to `Stacked Column` on the secondary axis.7. Optionally set Total to `Line` on the secondary axis and add data labels.8. Align primary and secondary axes and clean up legend items as needed.A detailed walkthrough: https://johndalesandro.com/blog/excel-combination-clustered-and-stacked-column-chart/**Pros of manual methods**- Maximum control over every detail.- No extra tools needed.- Great for one‑off, bespoke reports.**Cons**- Repetitive and slow for recurring reports.- Easy to make mistakes when ranges change.- Hard to scale across many files, markets, or clients.---## 2. No‑code automation for recurring charts### 2.1 Automate data feeds into Google SheetsUse connectors (e.g., Google Analytics add‑on, ad platform connectors, or tools like Zapier/Make) to push fresh data into a master sheet.1. Design a "Data" sheet with raw inputs.2. Build a "Model" sheet that reshapes data into a clean table for clustered charts (using formulas like QUERY, FILTER, or pivot tables).3. Link your chart to the "Model" range only.4. Schedule your connector to refresh daily or weekly.Charts update automatically whenever the underlying table updates; no need to touch the chart after the first setup.### 2.2 Excel + Power QueryExcel’s Power Query can automate data import and transformation:1. Use `Data` → `Get Data` to pull from CSVs, databases, or web sources.2. Clean and reshape data in Power Query (remove columns, group by, pivot).3. Load the result into a table that feeds your clustered column chart.4. Click `Refresh All` before each reporting cycle—or schedule refresh via Power BI/Task Scheduler.**Pros of no‑code automation**- Greatly reduces manual data prep.- Chart definitions stay stable over time.- Ideal for weekly or monthly dashboards.**Cons**- Still requires you to maintain structure and fix broken charts.- Setup can be non‑trivial for non‑technical users.- Does not remove the need for someone to open files, export images/PDFs, and share them.---## 3. Scaling with an AI computer agentHere’s where the workflow becomes truly hands‑off. A desktop‑class AI agent such as Simular Pro can operate your computer like a human: opening Excel or Google Sheets in the browser, updating data, rebuilding clustered charts, and exporting or sharing deliverables.### 3.1 Agent workflow: Weekly revenue dashboardFor a sales leader running forecasts across multiple regions:1. The agent opens your CRM exports or analytics reports.2. Cleans and aggregates data into standard templates in Google Sheets or Excel.3. Inserts or updates clustered column charts for each region vs. target.4. Exports charts as images or slides and uploads them to your shared drive or sends them via email/Slack.**Pros**- End‑to‑end automation, not just within one app.- Works across desktop, browser, and cloud tools.- Every action is logged and inspectable, so you can trust and audit the workflow.**Cons**- Requires an initial "teaching" period to define your ideal chart layouts and file structure.- Best suited for teams with recurring reporting needs (agencies, multi‑brand operators, sales orgs).### 3.2 Agent workflow: Multi‑client marketing reportingAgencies often clone the same report for dozens of clients:1. The AI agent iterates through a client list.2. For each client, it opens the right Google Sheet or Excel file template.3. Refreshes data connections or imports CSV exports from ad platforms.4. Ensures that all clustered column charts have the correct ranges, colors, and legends.5. Renames files, exports PDFs, and drops them into client‑specific folders.Instead of a coordinator spending Mondays in spreadsheets, a Simular AI computer agent runs these workflows at scale overnight.Official Simular Pro overview: https://www.simular.ai/simular-pro

Scale clustered charts with an AI workflow agent

Onboard Simular for charts
Show your Simular AI agent how you currently build clustered column charts in Google Sheets and Excel: sample files, naming rules, layouts, and where data lives.
Test and refine the agent
Run Simular Pro on a few test workbooks, watch each transparent step, tweak prompts and file paths, and verify the clustered column charts are correct first run.
Delegate and scale reporting
Schedule your Simular AI agent to update all Sheets and Excel files, rebuild clustered column charts, and export or share reports across teams automatically.

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