Skip to main content
Glama
agentladle

AgentLadle MCP CNINFO

AgentLadle MCP CNINFO

English | 中文

🇨🇳 China A-Share Annual Reports — Cloud-hosted MCP for Shanghai & Shenzhen listed companies. Read more | Get API Key

A MCP (Model Context Protocol) server that provides tools for discovering, downloading, parsing, and searching China A-share announcements from CNINFO (巨潮资讯网).

It enables AI assistants (Claude, Cursor, etc.) to access CNINFO announcement data through 6 structured tools — from discovering available announcements to keyword-searching within their pages.

Scope (v0.1): Announcements only. Periodic reports (年报 / 半年报 / 一季报 / 三季报) are out of scope.

Features

  • 6 MCP tools for CNINFO announcement data: state-driven retrieval (search directly, fallback to download/parse only when needed)

  • PDF document parsing using PyMuPDF — physical page extraction into page-split JSON

  • Local keyword search with TF + position-boost scoring, zero external search dependencies

  • Idempotent — already-downloaded/parsed files are automatically skipped

  • Zero-config install — one line to add to your MCP client, no clone or manual setup needed

  • Pure Python, cross-platform (Windows / macOS / Linux)

Related MCP server: Chinese Stock MCP

Prerequisites

Note: After installing uv, restart your terminal and MCP client (e.g. Cherry Studio) to ensure the uv command is recognized.

Quick Start

Add to your MCP client configuration (Claude Desktop, Cursor, etc.):

{
  "mcpServers": {
    "mcp-cninfo": {
      "command": "uvx",
      "args": ["agentladle-mcp-cninfo"]
    }
  }
}

That's it. uvx will automatically download the package and its dependencies from PyPI — no clone, no manual install, no path configuration.

Alternative: pip install

If you prefer managing the environment yourself:

pip install agentladle-mcp-cninfo

Then configure:

{
  "mcpServers": {
    "mcp-cninfo": {
      "command": "agentladle-mcp-cninfo"
    }
  }
}

Alternative: Run from source (local development)

Clone the repository and run directly:

git clone https://github.com/agentladle/mcp-cninfo.git

Then configure your MCP client:

{
  "mcpServers": {
    "mcp-cninfo": {
      "command": "uv",
      "args": ["run", "--directory", "/path/to/mcp-cninfo", "agentladle-mcp-cninfo"]
    }
  }
}

Replace /path/to/mcp-cninfo with the actual path to the cloned repository.

Data Flow

CNINFO API                        Local Files (~/.agentladle/mcp-cninfo/data/)
──────────────                    ──────────────────────────────
szse_stock.json        ──→       companies.json               (stock_code→orgId mapping)
                                     │
hisAnnouncement/query  ──→        pdf/{LOCAL_KEY}/            (Tool 2: primary PDF/HTML + manifest)
                                     │
PyMuPDF parsing        ──→        json/*.json                 (Tool 3: parse, page-split)
                                     │
Local TF search        ──→        search results              (Tool 4: keyword search)
Page range read        ──→        page content                (Tool 5: read pages)

Tools

#

Tool

Description

1

list_cninfo_announcements

Discover available CNINFO announcements for a company

2

download_cninfo_announcement

Download announcement PDF (HTML fallback); idempotent

3

parse_cninfo_announcement

Parse PDF/HTML into page-split JSON using PyMuPDF

4

keyword_search

Full-text keyword search with TF relevance scoring

5

get_announcement_pages

Read announcement content by page number range

6

lookup_stock_code

Diagnostic: look up stock_code→orgId mapping when resolution fails

Tool 1: list_cninfo_announcements

List available CNINFO announcements for a company. Use this tool ONLY when the exact date/title is unspecified by the user, or when a download attempt fails due to an ambiguous match. Default categories exclude periodic reports (年报 / 半年报 / 一季报 / 三季报).

Parameter

Type

Required

Description

stock_code

string

6-digit stock code, e.g. "000001"

category

string

Category key, short code, or Chinese label, e.g. "董事会", "DSH", "category_dshgg_szsh". Omit to list default announcement categories

start_date

string

Start date YYYY-MM-DD

end_date

string

End date YYYY-MM-DD

title_keyword

string

Title keyword filter

limit

int

Max announcements to return, default 10, max 50

Tool 2: download_cninfo_announcement

Download a specific CNINFO announcement from static.cninfo.com.cn. Prefer local_key from list_cninfo_announcements when available. Idempotent.

Parameter

Type

Required

Description

stock_code

string

6-digit stock code, e.g. "000001"

announce_date

string

Announce date YYYY-MM-DD (optional if local_key provided)

title_keyword

string

Title substring to disambiguate same-day announcements

category

string

Optional category filter

announcement_id

string

CNINFO announcement id if known

local_key

string

Exact local bundle key from list results

Tool 3: parse_cninfo_announcement

Parse a downloaded announcement PDF/HTML into page-split JSON. Uses PyMuPDF for PDF physical-page text extraction.

Parameter

Type

Required

Description

local_key

string

Bundle key returned by list/download, e.g. "000001_DSH_2026-07-02_8b1ad607"

Tool 4: keyword_search

Full-text keyword search across all pages. Results ranked by TF + position-boost score.

Parameter

Type

Required

Description

local_key

string

Bundle key

keywords

string[]

1–5 search keywords

match_mode

string

"ANY" (default, any keyword matches) / "ALL" (all must match)

max_results

int

Max results to return, default 5, max 50

Tool 5: get_announcement_pages

Read full page content by page number range.

Parameter

Type

Required

Description

local_key

string

Bundle key

start_page

int

Start page number (1-based)

page_count

int

Number of pages to return, default 3, max 5

Tool 6: lookup_stock_code

Diagnostic tool: look up stock_code→orgId mapping. Use only when download_cninfo_announcement / list_cninfo_announcements returns Stock code not found. Bypasses the session failed-code cache.

Parameter

Type

Required

Description

stock_code

string

6-digit stock code, e.g. "000001"

refresh

bool

Force re-download of szse_stock.json from CNINFO (default: false)

Configuration

On first run, a default config file is created at ~/.agentladle/mcp-cninfo/config.yaml:

paths:
  data_dir: "~/.agentladle/mcp-cninfo/data"
  pdf_dir: "~/.agentladle/mcp-cninfo/data/pdf"
  json_dir: "~/.agentladle/mcp-cninfo/data/json"

download:
  delay_between_requests: 0.3
  min_file_size: 500
  list_page_size: 30
  list_max_pages: 5

company:
  cache_ttl_days: 7

Data Directory Structure

~/.agentladle/mcp-cninfo/
├── config.yaml                        # Configuration (auto-created)
└── data/
    ├── companies.json                 # stock_code→orgId mapping (auto-downloaded & cached)
    ├── pdf/                           # Downloaded announcement bundles
    │   ├── 000001_DSH_2026-07-02_8b1ad607/
    │   │   ├── primary.pdf
    │   │   └── manifest.json
    │   └── ...
    └── json/                          # Parsed page-split JSON
        ├── 000001_DSH_2026-07-02_8b1ad607.json
        └── ...

File naming convention: {STOCK_CODE}_{CAT_SHORT}_{ANNOUNCE_DATE}_{ID_HASH}

Example Usage

The tools are designed with an EAFP (Easier to Ask for Forgiveness than Permission) approach. AI assistants should attempt to retrieve data directly and rely on errors to trigger downloads.

Scenario A: File already exists locally (Shortest Path)

User: "Search 000001 board resolution for 回购"

1. keyword_search(local_key="000001_DSH_2026-07-02_8b1ad607", keywords=["回购", "决议"])
   → Returns page snippets matching the keywords immediately.

Scenario B: File missing (Fallback triggered)

User: "What did Ping An Bank announce in its latest board notice?"

1. list_cninfo_announcements(stock_code="000001", category="董事会", limit=3)
   → Returns local_key / announce_date / title.

2. keyword_search(local_key="...", keywords=["董事会", "决议"])
   → Error: File not found.

3. download_cninfo_announcement(stock_code="000001", local_key="...")
   → Downloads PDF to ~/.agentladle/mcp-cninfo/data/pdf/

4. parse_cninfo_announcement(local_key="...")
   → Parses into JSON.

5. keyword_search(local_key="...", keywords=["董事会", "决议"])
   → Retries search and returns data.

Tech Stack

Component

Choice

Purpose

MCP Framework

mcp (FastMCP)

MCP server with stdio transport

HTTP Client

httpx

CNINFO API requests & file downloads

PDF Parsing

pymupdf + beautifulsoup4

PDF page text extraction; HTML fallback

Search

Python built-in

TF + position-boost scoring

Config

pyyaml

YAML configuration file

Project Structure

src/mcp_cninfo/
├── __init__.py
├── server.py                 # MCP Server entry point
├── config.py                 # Config loading (~/.agentladle/mcp-cninfo/config.yaml, singleton cached)
├── models.py                 # Data models
├── categories.py             # Announcement category whitelist / blacklist
├── response.py               # Unified JSON responses
├── instances.py              # Service singletons
├── tools/
│   ├── list_announcements.py # Tool 1: list_cninfo_announcements
│   ├── download.py           # Tool 2: download_cninfo_announcement
│   ├── parse.py              # Tool 3: parse_cninfo_announcement
│   ├── search.py             # Tool 4: keyword_search
│   ├── page.py               # Tool 5: get_announcement_pages
│   └── lookup.py             # Tool 6: lookup_stock_code
└── services/
    ├── company.py            # CNINFO szse_stock.json + stock_code→orgId
    ├── downloader.py         # CNINFO query + PDF download
    ├── parser.py             # PDF/HTML→JSON parsing (PyMuPDF)
    ├── searcher.py           # Local JSON search + TF scoring
    └── keys.py               # local_key helpers

License

MIT

Install Server
A
license - permissive license
A
quality
C
maintenance

Maintenance

Maintainers
Response time
Release cycle
Releases (12mo)
Commit activity

Latest Blog Posts

MCP directory API

We provide all the information about MCP servers via our MCP API.

curl -X GET 'https://glama.ai/api/mcp/v1/servers/agentladle/mcp-cninfo'

If you have feedback or need assistance with the MCP directory API, please join our Discord server