ChartMogul MCP for AI. Ask questions about your revenue data.
Works with every AI agent you already use
…and any MCP-compatible client








How this MCP server connects to your AI agent
ChartMogul MCP gives your AI agent direct access to your SaaS billing data. It lets you analyze Monthly Recurring Revenue, track customer churn rates, and monitor lifetime value without opening a single dashboard.
You get real-time financial intelligence on growth patterns, subscription plans, and overall business health directly through conversation.
What AI agents can do with ChartMogul Automation
Create customer record
Adds a new customer record into your system.
Get summary metrics
Retrieves key, high-level SaaS metrics like MRR and ARR in one call.
Get api status
Checks the current connection status between your AI client and ChartMogul.
The agent retrieves real-time Monthly Recurring Revenue (MRR) and Annual Run Rate (ARR) figures for your business.
You can check current churn rates and analyze Lifetime Value (LTV) across custom time ranges to assess overall user health.
The agent lists your entire customer roster and retrieves detailed historical profiles for any given account.
You can query how user counts or specific revenue metrics have changed across days, weeks, months, or quarters.
Ask an AI about this
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What AI agents can do with ChartMogul - 12 Tools
These tools allow your AI agent to perform specific actions like calculating MRR trends, listing customer details, or tracking user growth directly from ChartMogul data.
Make your AI actually useful.
Add this MCP to Claude, Cursor, or Windsurf and your AI stops guessing. It gets real tools to look things up, take action, and handle the stuff you keep doing by hand.
Start using ChartMogul on VinkiusCreate Customer Record
Adds a new customer record into your system.
Get Summary Metrics
Retrieves key, high-level SaaS metrics like MRR and ARR in one call.
Get Api Status
Checks the current connection status between your AI client and ChartMogul.
Get Arr History
Analyzes how your Annual Run Rate (ARR) has changed over time for trend spotting.
Get Churn Rates
Calculates and analyzes customer retention and churn rates for a given period.
Get Customer Count History
Tracks the total number of users or customers over various time periods to monitor growth.
Get Customer Details
Fetches a detailed profile for any specific customer account, including historical data.
Get Customer Ltv
Calculates the estimated Lifetime Value (LTV) for individual customers based on...
Get Mrr History
Analyzes the Monthly Recurring Revenue (MRR) trend, showing how your core revenue...
List Customers
Retrieves a complete list of all active and past SaaS customers in your account.
List Data Sources
Lists all billing providers or data feeds connected to ChartMogul for oversight.
List Subscription Plans
Shows the names, pricing tiers, and details of all billing plans you offer.
Security and governance baked right in.
Pick your AI client below to get set up. Just create a Vinkius account, subscribe, and you're instantly up and running. We handle the entire backend infrastructure, delivering out-of-the-box support for HTTPS Streamable, SSE, and OAuth2—zero messy routing required.
Choose How to Get Started
Build a custom MCP for your own tools, or connect a ready-made integration from our catalog.
Build Your Own
Turn any API into an MCP. Import a spec, define Agent Skills, or deploy with MCPFusion.
- Import from OpenAPI, Swagger, or YAML specs
- Create Agent Skills with progressive disclosure
- Deploy to edge with MCPFusion framework
- Built in DLP, auth, and compliance on every call
- Real time usage dashboard and cost metering
- Publish to catalog or keep private
Make Your AI Do More
Start with ChartMogul, then connect any of our 5,100+ other servers whenever your AI needs more. One click, no limits.
- Use this MCP plus 5,100+ others, all in one place
- Add new capabilities to your AI anytime you want
- Every connection is secured and compliant automatically
- Track usage and costs across all your servers
- Works with Claude, ChatGPT, Cursor, and more
- New servers added to the catalog every week
Independent Platform Disclaimer: Vinkius is an independent platform and is not affiliated with, endorsed by, sponsored by, verified by, or otherwise authorized by ChartMogul. All third-party trademarks, logos, and brand names are the property of their respective owners. Their use on this website is strictly for informational purposes to identify service compatibility and interoperability.
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Built on the Model Context Protocol (MCP) for Claude, ChatGPT, Cursor, and more
The Model Context Protocol standardizes how applications expose capabilities to LLMs. Instead of operating in isolation, your AI gains direct access to external platforms, live data, and real-world actions through secure, standardized connections.
This connection provides 12 powerful capabilities that interface natively with Claude, ChatGPT, Cursor, and other compatible AI platforms. No middleware. No custom integration required.
The dashboard rabbit hole is exhausting.
Today, figuring out if your MRR targets were hit means clicking into ChartMogul. You navigate to the 'Billing' tab, find the correct filter for the time period, select a cohort view, and then export a CSV just so you can graph it in Google Sheets. It takes 20 minutes of clicks before you even get the raw data.
With this MCP, that process vanishes. You simply tell your agent, 'Show me our MRR growth over Q2.' Your AI client immediately pulls the historical metrics using the right tools and presents you with the analysis in plain text—no dashboards, no exporting, just answers.
Get clear financial insights with ChartMogul MCP
You don't have to juggle getting customer lists from one screen and then checking their billing plans on another. The agent coordinates it all, pulling both the list of customers via list_customers and cross-referencing them against your active subscription plans using list_subscription_plans.
Your AI client acts as a dedicated revenue analyst for every query. You stop managing data pipelines and start making decisions.
What your AI can actually do with this
You're tired of jumping between charts and dashboards just to figure out your company's revenue trajectory. This MCP connects your AI agent straight into ChartMogul, giving you immediate control over your SaaS finance data. Instead of exporting CSVs or manually scrubbing filtered views, you talk to your agent about your business performance.
It pulls real-time metrics like Monthly Recurring Revenue (MRR) and Annual Run Rate (ARR), lets you understand exactly why customers are leaving by analyzing churn rates, and helps you map out growth patterns over specific time periods. If you use Vinkius, you get this MCP alongside thousands of others, giving your agent a unified view of all your critical business data points—from customer lists to billing plans—all in one chat window.
019dd0cc-2796-72d8-8946-96f9882b9f0f Here's how it actually works
The bottom line is you talk about finance metrics, and the MCP handles pulling the structured data from ChartMogul for your AI client to read.
Subscribe to this MCP and grab your API Key from the ChartMogul settings dashboard.
Connect your AI client (Claude, Cursor, etc.) to Vinkius using that key.
Ask your agent questions like 'What was our MRR last quarter?' or 'Show me high-value customers'—and get instant data.
Who is this actually for?
Founders who need a quick financial pulse check without logging into dedicated BI tools. Finance directors who manage quarterly reporting but hate jumping between systems. Data analysts who need structured billing metrics for reports, not just dashboards.
Needs to instantly get high-level summaries of MRR and churn rates using simple natural language commands.
Monitors ARR trends, LTV changes, and customer base health without leaving their communication environment.
Automates the retrieval of structured SaaS metrics—like historical MRR or specific user counts—for internal reporting pipelines.
What Changes When You Connect
Stop manually pulling charts. Instead of exporting CSVs or filtering dashboards, you simply ask the agent to 'What was our MRR last quarter?' and get a direct answer.
Track user growth over time with calls like get_customer_count_history. You can see exactly how your user base changed month-over-month without needing specialized BI tools.
Understand customer health by running analyses on churn rates using get_churn_rates, spotting retention dips faster than waiting for a finance report.
Deep dive into individual accounts: Use get_customer_details or get_customer_ltv to instantly know how much a key client contributes and their predicted long-term value.
Map out your entire billing structure. You can list all available plans with list_subscription_plans, ensuring your AI agent knows exactly what pricing models exist.
Get an immediate financial snapshot using get_summary_metrics for MRR and ARR, giving you a high-level overview of business performance in seconds.
See it in action
Reviewing Quarter-End Performance
A founder needs to summarize Q3 revenue. They ask their agent, 'Show me the MRR history for the last three months.' The MCP uses get_mrr_history and get_summary_metrics to provide an instant, detailed breakdown of growth that they can immediately use in a board meeting.
Identifying Revenue Leakage
A finance manager notices revenue slowing down. They ask the agent about churn rates. The MCP runs get_churn_rates and identifies a specific drop-off point, allowing the team to focus retention efforts immediately.
Onboarding a New Client
A salesperson needs to know how valuable a potential client is. They ask the agent to check customer LTV for that domain. The MCP runs get_customer_ltv, giving them key data points to close the deal faster.
Auditing Billing Infrastructure
A CTO needs to confirm all payment methods are linked correctly. They ask the agent to list connected sources. The MCP runs list_data_sources, confirming Stripe and Braintree data feeds are active.
The honest tradeoffs
Treating it like a general database query
Trying to ask the agent, 'List all users who purchased blue shirts last year.' The system can't answer because this MCP only handles billing and subscription data.
Keep your questions focused on finance: Use list_customers to get the user roster, then use get_customer_details to find billing info. Stick to revenue-related metrics.
Overloading it with unrelated tools
Asking the agent to 'Calculate churn rates AND write a blog post about SaaS marketing.' The MCP will only handle the financial data, ignoring the content writing request.
Keep your requests focused on calculation and retrieval. Use get_churn_rates for metrics; save creative tasks for dedicated AI clients.
Relying on manual exports
Exporting a massive CSV of all customer data, then manually trying to graph the MRR change yourself.
Ask the agent directly: 'What was our MRR trend over the last year?' The MCP uses get_mrr_history and gives you the analysis immediately.
When It Fits, When It Doesn't
Use this if your primary need is quantifying financial health. If you are asking questions about how much money, who pays what, or when revenue dipped, this MCP works for you. It's built around structured SaaS billing data—MRR, ARR, LTV, and churn rates. Don't use it if you just need to analyze unstructured text, like customer feedback comments, or if your business logic requires complex multi-step workflows that span multiple unconnected systems (e.g., 'Check inventory in System A, then draft an email based on the result, and finally send it from System B'). For those scenarios, you'll need a general purpose automation MCP type tool instead. If you only need to list products or manage basic CRUD operations outside of billing context, this might be too narrow.
Questions you might have
Can ChartMogul MCP calculate MRR based on custom date ranges? +
Yes, it can analyze your Monthly Recurring Revenue (MRR) for specific periods. You use get_mrr_history to pinpoint exactly how revenue changed over any given time frame.
What is the difference between list_customers and list_users? +
list_customers provides a comprehensive roster of your SaaS customers, while other tools like get_customer_details provide granular information about individual accounts. It's for billing oversight.
Does ChartMogul MCP handle user roles or permissions? +
No, this MCP focuses exclusively on revenue intelligence and subscription metrics. Tools are limited to financial data retrieval like get_churn_rates and LTV calculations.
How do I check if the connection is working with ChartMogul MCP? +
You use the get_api_status tool. This confirms that your AI client has live access to the necessary billing data in ChartMogul.
We've already built the connector for ChartMogul. Just plug in your AI agents and start using Vinkius.
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