Sankhya MCP
by lab019
Server Configuration
Describes the environment variables required to run the server.
| Name | Required | Description | Default |
|---|---|---|---|
| SANKHYA_ENV | No | sandbox ou production. Produção exige opt-in. | sandbox |
| SANKHYA_DRY_RUN | No | Escritas apenas mostram o payload (não executam). | false |
| SANKHYA_X_TOKEN | Yes | Token da aplicação (header X-Token). | |
| SANKHYA_BASE_URL | No | Sobrescreve a base URL (debug/proxy). | |
| SANKHYA_CLIENT_ID | Yes | Client ID OAuth. | |
| SANKHYA_READ_ONLY | No | Bloqueia todas as operações de escrita. | false |
| SANKHYA_HTTP_TIMEOUT | No | Timeout das requisições HTTP (ms). | 30000 |
| SANKHYA_ALLOW_RAW_SQL | No | Habilita a tool execute_query (SQL livre, perigoso). | false |
| SANKHYA_CLIENT_SECRET | Yes | Client Secret OAuth. | |
| SANKHYA_TOKEN_REFRESH_SKEW | No | Folga (s) para renovar o token antes de expirar. | 60 |
Capabilities
Server capabilities have not been inspected yet.
Tools
Functions exposed to the LLM to take actions
| Name | Description |
|---|---|
No tools | |
Prompts
Interactive templates invoked by user choice
| Name | Description |
|---|---|
No prompts | |
Resources
Contextual data attached and managed by the client
| Name | Description |
|---|---|
No resources | |
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