Tree Sitter MCP Server

Provides code analysis capabilities through tree-sitter parsing, enabling structured understanding and manipulation of source code across multiple programming languages for tasks like code review, refactoring, and documentation generation.

Skills

Explore the skills and capabilities of this skillset.

get_ast

Get abstract syntax tree for a file. Args: project: Project name path: File path relative to project root max_depth: Maximum depth of the tree (default: 5) include_text: Whether to include node text Returns: AST as a nested dictionary

get_file

Get content of a file. Args: project: Project name path: File path relative to project root max_lines: Maximum number of lines to return start_line: First line to include (0-based) Returns: File content

configure

Configure the server. Args: config_path: Path to YAML config file cache_enabled: Whether to enable parse tree caching max_file_size_mb: Maximum file size in MB log_level: Logging level (DEBUG, INFO, WARNING, ERROR) Returns: Current configuration

find_text

Search for text pattern in project files. Args: project: Project name pattern: Text pattern to search for file_pattern: Optional glob pattern (e.g., "**/*.py") max_results: Maximum number of results case_sensitive: Whether to do case-sensitive matching whole_word: Whether to match whole words only use_regex: Whether to treat pattern as a regular expression context_lines: Number of context lines to include Returns: List of matches with file, line number, and text

run_query

Run a tree-sitter query on project files. Args: project: Project name query: Tree-sitter query string file_path: Optional specific file to query language: Language to use (required if file_path not provided) max_results: Maximum number of results Returns: List of query matches

find_usage

Find usage of a symbol. Args: project: Project name symbol: Symbol name to find file_path: Optional file to look in (for local symbols) language: Language to search in Returns: List of usage locations

list_files

List files in a project. Args: project: Project name pattern: Optional glob pattern (e.g., "**/*.py") max_depth: Maximum directory depth extensions: List of file extensions to include (without dot) Returns: List of file paths

adapt_query

Adapt a query from one language to another. Args: query: Original query string from_language: Source language to_language: Target language Returns: Adapted query

build_query

Build a tree-sitter query from templates or patterns. Args: language: Language name patterns: List of template names or custom patterns combine: How to combine patterns ("or" or "and") Returns: Combined query

clear_cache

Clear the parse tree cache. Args: project: Optional project to clear cache for file_path: Optional specific file to clear cache for Returns: Status message

get_symbols

Extract symbols from a file. Args: project: Project name file_path: Path to the file symbol_types: Types of symbols to extract (functions, classes, imports, etc.) Returns: Dictionary of symbols by type

get_node_types

Get descriptions of common node types for a language. Args: language: Language name Returns: Dictionary of node types and descriptions

list_languages

List available languages. Returns: Information about available languages

analyze_project

Analyze overall project structure. Args: project: Project name scan_depth: Depth of detailed analysis (higher is slower) ctx: Optional MCP context for progress reporting Returns: Project analysis

diagnose_config

Diagnose issues with YAML configuration loading. Args: config_path: Path to YAML config file Returns: Diagnostic information

get_dependencies

Find dependencies of a file. Args: project: Project name file_path: Path to the file Returns: Dictionary of imports/includes

find_similar_code

Find similar code to a snippet. Args: project: Project name snippet: Code snippet to find language: Language of the snippet threshold: Similarity threshold (0.0-1.0) max_results: Maximum number of results Returns: List of similar code locations

get_file_metadata

Get metadata for a file. Args: project: Project name path: File path relative to project root Returns: File metadata

analyze_complexity

Analyze code complexity. Args: project: Project name file_path: Path to the file Returns: Complexity metrics

list_projects_tool

List all registered projects. Returns: List of project information

remove_project_tool

Remove a registered project. Args: name: Project name Returns: Success message

get_node_at_position

Find the AST node at a specific position. Args: project: Project name path: File path relative to project root row: Line number (0-based) column: Column number (0-based) Returns: Node information or None if not found

register_project_tool

Register a project directory for code exploration. Args: path: Path to the project directory name: Optional name for the project (defaults to directory name) description: Optional description of the project Returns: Project information

get_query_template_tool

Get a predefined tree-sitter query template. Args: language: Language name template_name: Template name (e.g., "functions", "classes") Returns: Query template information

check_language_available

Check if a tree-sitter language parser is available. Args: language: Language to check Returns: Success message

list_query_templates_tool

List available query templates. Args: language: Optional language to filter by Returns: Available templates

Configuration

Customize the skillset to fit your needs.
Connect MCP Server

Tree Sitter MCP Server

Github Issues Creator
The Github Issues Creator is an AI agent for streamlined GitHub issue management. It simplifies creating, tracking, and prioritizing bugs, tasks, or feature requests directly within repositories. Ideal for teams, it ensures consistent formatting, automates repetitive steps, and integrates with development pipelines.
Community Reporter
Analyze community screenshots and report engagement trends and discussion highlights. Upload a screenshot of your community interactions, and the agent generates a clear markdown report summarizing engagement levels, key discussion topics, and notable highlights — perfect for community managers, marketers, and product teams.
Office Docs Helper
An AI-powered virtual administrative assistant for internal company operations. Helps you quickly create high-quality internal documents like announcements, meeting minutes, summaries, forms, procedures, and HR records.
Customer Support Scribe
An AI assistant that helps customer support teams create high-quality support documentation, including FAQs, ticket replies, apology letters, and SOPs. Guides you through creating both internal resources and customer-facing materials.
X/Twitter Manager
An AI-powered Twitter Assistant that helps content creators turn AI product experiences into viral tweets — with auto-polish, smart research, and one-click posting.
Email Marketer
Finds leads and sends a 3-day follow-up email sequence automatically.
Ticket Manager
Collects, analyzes, and manages support tickets from forms and databases, helping you track, prioritize, and respond efficiently.
Brand Designer
A brand marketing AI assistant specially designed for start-up digital products, helping you quickly generate online promotional materials suitable for Product Hunt, AppSumo and other platforms, covering visual creativity, promotional slogans, brand tone and selling point communication
AI Writer
Tell me about the AI product or brand — I’ll draft engaging marketing copy, articles, and social media posts tailored to your brand voice and product details, complete with relevant links and illustrations.

Frequently Asked Questions

Quick one-sentence introduction: What is Bika.ai?
What make Bika.ai so unique?
The English abbreviation "BIKA" stands for what meaning?
How does Bika.ai automate tasks with AI?
Is Bika.ai free to use?
What is the difference between Bika.ai and AI assistants like ChatGPT, Gemini?
What is the difference between Bika.ai and spreadsheet database?
Does Bika.ai get poor performance when the single database records reaches tens of thousands or hundreds of thousands of rows and the associations become more complex?
What is the 'Space' in Bika.ai?
How many paid spaces do I own after making a payment?
What does 'Resources' mean?
How does the Bika.ai team 'eat your own dog food' (use their own product)?
How does Bika.ai help improve work efficiency?
What are the features of Bika.ai's AI automation?
What are the automation templates in Bika.ai?
Does Bika.ai support team collaboration and permissions features?

Embark on Your AI Automation