--- name: outlit-mcp description: Use when querying Outlit customer data via MCP tools (outlit_*). Triggers on customer analytics, revenue metrics, activity timelines, cohort analysis, churn risk assessment, SQL queries against analytics data, or any Outlit data exploration task. --- # Outlit MCP Server Query customer intelligence data through 6 MCP tools covering customer and user profiles, revenue metrics, activity timelines, and raw SQL analytics access. ## Quick Start | What you need | Tool | |---------------|------| | Browse/filter customers | `outlit_list_customers` | | Browse/filter users | `outlit_list_users` | | Single customer deep dive | `outlit_get_customer` | | Customer activity history | `outlit_get_timeline` | | Custom analytics / aggregations | `outlit_query` (SQL) | | Discover tables & columns | `outlit_schema` | **Before writing SQL:** Always call `outlit_schema` first to discover available tables and columns. ### Common Patterns **Find at-risk customers:** ```json { "tool": "outlit_list_customers", "billingStatus": "PAYING", "noActivityInLast": "30d", "orderBy": "mrr_cents", "orderDirection": "desc" } ``` **Revenue breakdown (SQL):** ```json { "tool": "outlit_query", "sql": "SELECT billing_status, count(*) as customers, sum(mrr_cents)/100 as mrr_dollars FROM customer_dimensions GROUP BY 1 ORDER BY 3 DESC" } ``` --- ## MCP Setup ### Get an API Key Go to **Settings > MCP Integration** in the Outlit dashboard ([app.outlit.ai](https://app.outlit.ai)). ### Auto-Detection Setup Detect the current environment and run the appropriate setup command: 1. **Check for Claude Code** — If running inside Claude Code (check if `claude` CLI is available), run: ```bash claude mcp add outlit https://mcp.outlit.ai/mcp -- --header "Authorization: Bearer API_KEY" ``` 2. **Check for Cursor** — If `.cursor/mcp.json` exists in the project or home directory, add to that file: ```json { "mcpServers": { "outlit": { "url": "https://mcp.outlit.ai/mcp", "headers": { "Authorization": "Bearer API_KEY" } } } } ``` 3. **Check for Claude Desktop** — If `claude_desktop_config.json` exists at `~/Library/Application Support/Claude/` (macOS) or `%APPDATA%/Claude/` (Windows), add to that file: ```json { "mcpServers": { "outlit": { "url": "https://mcp.outlit.ai/mcp", "headers": { "Authorization": "Bearer API_KEY" } } } } ``` Ask the user for their API key if not provided. Replace `API_KEY` with the actual key. ### Verify Connection Call `outlit_schema` to confirm the connection is working. --- ## Tool Reference ### outlit_list_customers Filter and paginate customers. | Key Params | Values | |------------|--------| | `billingStatus` | NONE, TRIALING, PAYING, CHURNED | | `hasActivityInLast` / `noActivityInLast` | 7d, 14d, 30d, 90d (mutually exclusive) | | `mrrAbove` / `mrrBelow` | cents (10000 = $100) | | `search` | name or domain | | `orderBy` | last_activity_at, first_seen_at, name, mrr_cents | | `limit` | 1-1000 (default: 20) | | `cursor` | pagination token | ### outlit_list_users Filter and paginate users. | Key Params | Values | |------------|--------| | `journeyStage` | DISCOVERED, SIGNED_UP, ACTIVATED, ENGAGED, INACTIVE | | `customerId` | filter by customer | | `hasActivityInLast` / `noActivityInLast` | Nd, Nh, or Nm (e.g., 7d, 24h) — mutually exclusive | | `search` | email or name | | `orderBy` | last_activity_at, first_seen_at, email | | `limit` | 1-1000 (default: 20) | | `cursor` | pagination token | ### outlit_get_customer Single customer deep dive. Accepts customer ID, domain, or name. | Key Params | Values | |------------|--------| | `customer` | customer ID, domain, or name (required) | | `include` | `users`, `revenue`, `recentTimeline`, `behaviorMetrics` | | `timeframe` | 7d, 14d, 30d, 90d (default: 30d) | Only request the `include` sections you need — omitting unused ones is faster. ### outlit_get_timeline Activity timeline for a customer. | Key Params | Values | |------------|--------| | `customer` | customer ID or domain (required) | | `channels` | SDK, EMAIL, SLACK, CALL, CRM, BILLING, SUPPORT, INTERNAL | | `eventTypes` | filter by specific event types | | `timeframe` | 7d, 14d, 30d, 90d, all (default: 30d) | | `startDate` / `endDate` | ISO 8601 (mutually exclusive with timeframe) | | `limit` | 1-1000 (default: 50) | | `cursor` | pagination token | ### outlit_query Raw SQL against ClickHouse analytics tables. **SELECT only.** See [SQL Reference](references/sql-reference.md) for ClickHouse syntax and security model. | Key Params | Values | |------------|--------| | `sql` | SQL SELECT query (required) | | `limit` | 1-10000 (default: 1000) | Available tables: `events`, `customer_dimensions`, `user_dimensions`, `mrr_snapshots`. ### outlit_schema Discover tables and columns. Call with no params for all tables, or `table: "events"` for a specific table. Always call this before writing SQL. --- ## Data Model **Billing status:** NONE → TRIALING → PAYING → CHURNED **Journey stages:** DISCOVERED → SIGNED_UP → ACTIVATED → ENGAGED → INACTIVE **Data formats:** - Monetary values in cents (divide by 100 for dollars) - Timestamps in ISO 8601 - IDs with string prefixes (`cust_`, `contact_`, `evt_`) **Pagination:** All list endpoints use cursor-based pagination. Check `pagination.hasMore` before requesting more pages. Pass `pagination.nextCursor` as `cursor` for the next page. --- ## Best Practices 1. **Call `outlit_schema` before writing SQL** — discover columns, don't guess 2. **Use customer tools for single lookups** — don't use SQL for individual customer queries 3. **Filter at the source** — use tool params and WHERE clauses, not post-fetch filtering 4. **Only request needed includes** — omit unused `include` options for faster responses 5. **Always add time filters to event SQL** — `WHERE occurred_at >= now() - INTERVAL N DAY` 6. **Convert cents to dollars** — divide monetary values by 100 for display 7. **Use LIMIT in SQL** — cap result sets to avoid large data transfers ## Known Limitations 1. **SQL is read-only** — no INSERT, UPDATE, DELETE 2. **Organization isolation** — cannot query other organizations' data 3. **Timeline requires a customer** — cannot query timeline across all customers 4. **MRR filtering is post-fetch** — may be slower on large datasets in list_customers 5. **Event queries need time filters** — queries without date ranges scan all data 6. **ClickHouse syntax** — uses different functions than MySQL/PostgreSQL (see [SQL Reference](references/sql-reference.md)) --- ## Tool Gotchas | Tool | Gotcha | |------|--------| | `outlit_list_customers` | `hasActivityInLast` and `noActivityInLast` are mutually exclusive | | `outlit_list_customers` | `search` checks name and domain only | | `outlit_get_customer` | `behaviorMetrics` depends on timeframe — extend it if empty | | `outlit_get_timeline` | `timeframe` and `startDate`/`endDate` are mutually exclusive | | `outlit_query` | Use ClickHouse date syntax: `now() - INTERVAL 30 DAY`, not `DATE_SUB()` | | `outlit_query` | `properties` column is JSON — use `JSONExtractString(properties, 'key')` | --- ## References | Reference | When to Read | |-----------|--------------| | [SQL Reference](references/sql-reference.md) | ClickHouse syntax, security model, query patterns | | [Workflows](references/workflows.md) | Multi-step analysis: churn risk, revenue dashboards, account health |