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hubspot-mcp-server
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Based on SOC occupation classification
| name | HubSpot MCP Server |
| slug | hubspot-mcp-server |
| description | |
| github_stars | 397 |
| verification | security_reviewed |
| source | https://github.com/HubSpot/hubspot-api-nodejs |
| author | HubSpot |
| category | Integrations & Connectors |
| framework | MCP |
| tool_ecosystem | {"github_repo":"hubspot/hubspot-api-nodejs","github_stars":397,"npm_package":"@hubspot/api-client","npm_weekly_downloads":1083653} |
Node.js, npm
Use the upstream install or setup path that matches your environment:
Requirements and caveats from upstream:
Basic usage or getting-started notes:
defaultHeaders: { 'My-header': 'test-example' },
All methods return a [promise]. The success includes the serialized to JSON body and response objects. Use the API method via:
javascript
Extracted from upstream docs: https://raw.githubusercontent.com/HubSpot/hubspot-api-nodejs/HEAD/README.md
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