Tencent Cloud Code Analysis
An official MCP server for Tencent Cloud Code Analysis (TCA) to quickly start code analysis and obtain reports.
Tencent Cloud Code Analysis (TCA) MCP Server
Official website (https://tca.tencent.com) MCP Server supporting MCP protocol for quickly starting code analysis and obtaining code analysis reports.
Tencent Cloud Code Analysis (TCA), which started in 2012 (internal code name: CodeDog), is a cloud-native, distributed, and high-performance comprehensive code analysis and tracking management platform integrating numerous code analysis tools. Its main functions are to continuously track and analyze code, observe project code quality, and support teams in inheriting code culture. For more information about Tencent Cloud Code Assistant, please visit the official website usage guide: https://tca.tencent.com/document/zh/guide/.
TCA MCP Server Usage Steps
1,Create relevant resources on the TCA official website
Official website: https://tca.tencent.com/
-
step1: [Create a team] Visit the TCA official website, log in, select to create a team, fill in relevant information, and wait for the application to be approved:

-
step2: [Create a project team] After creating the team, click to select the team, and create a project team after entering:

-
step3: [Access the code repository] After creating the project team, click to select the project team, and select to access the code repository that needs to be analyzed after entering:

-
step4: [Create an analysis project] After successfully accessing the code repository, create an analysis project (it is recommended to first use the official experience plan in the figure for usage experience):

2, Create a tca-mcp.ini configuration file in the code repository
Create a tca-mcp.ini configuration file in the code repository that needs code analysis. The configuration file is stored in the root directory of the code repository, and the content of the configuration file is as follows:
[config]
project_id=<project_id>
repo_id=<repo_id>
org_sid=<org_sid>
team_name=<team_name>
Relevant parameters can be obtained from the route of the corresponding page, as shown in the following figure:

Where 4iYVpci9nAX corresponds to org_sid; 19485 corresponds to repo_id; 234521 corresponds to project_id; first corresponds to team_name. Fill in according to the actual situation.
3, Configure TCA MCP Server
{
"mcpServers": {
"tca-mcp-server": {
"command": "npx",
"args": ["-y", "-p", "tca-mcp-server@latest", "tca-mcp-stdio"],
"env": {
"TCA_TOKEN": "<TCA_TOKEN>",
"TCA_USER_NAME": "<TCA_USER_NAME>"
}
}
}
}
The corresponding TCA_TOKEN and TCA_USER_NAME are obtained from the TCA official website, [Personal Center] -> [Personal Token], and can be accessed at https://tca.tencent.com/user/token.
TCA MCP Server Development Steps
Requirements: nodejs >= 22.0.0
1,npm run build 2, Manually add test configuration:
{
"mcpServers": {
"tca-mcp-server-test": {
"command": "node",
"args": ["/path/to/tca-mcp-server/dist/stdio.js"],
"env": {
"TCA_TOKEN": "<TCA_TOKEN>",
"TCA_USER_NAME": "<TCA_USER_NAME>",
}
}
}
}
Похожие серверы
Scout Monitoring MCP
спонсорPut performance and error data directly in the hands of your AI assistant.
Alpha Vantage MCP Server
спонсорAccess financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
MCP-Inscription Server
Interact with Ordinals Inscriptions and display content from transactions.
Trading Simulator
An MCP server for interacting with the Trading Simulator API to simulate trading activities.
Julia Documentation MCP Server
An MCP server for accessing Julia documentation and source code.
xcsimctl
Manage Xcode simulators.
MediaWiki MCP Server
Enables LLM clients to interact with any MediaWiki wiki using the Model Context Protocol.
VoteShip
MCP server for VoteShip - manage feature requests, votes, roadmaps, and changelogs from any MCP client. 22 tools, 5 resources, 4 workflow prompts. Triage feedback, detect duplicates, plan sprints, and generate changelogs with AI.
Reactive AI Agent Framework
A reactive AI agent framework for creating agents that use tools to perform tasks, with support for multiple LLM providers and MCP servers.
UseGrant MCP Server
Interact with the UseGrant API for programmatic access control and permissions management.
Markdown Sidecar MCP Server
Serve and access markdown documentation for locally installed NPM, Go, or PyPi packages.
Fal.ai OpenAI Image
A server for the Fal.ai text-to-image API, powered by OpenAI's image model. Requires Fal.ai and OpenAI API keys.