consult7
Analyze large codebases and document collections using high-context models via OpenRouter, OpenAI, or Google AI -- very useful, e.g., with Claude Code
Consult7 MCP Server
Consult7 is a Model Context Protocol (MCP) server that enables AI agents to consult large context window models via OpenRouter for analyzing extensive file collections - entire codebases, document repositories, or mixed content that exceed the current agent's context limits.
Why Consult7?
Consult7 enables any MCP-compatible agent to offload file analysis to large context models (up to 2M tokens). Useful when:
- Agent's current context is full
- Task requires specialized model capabilities
- Need to analyze large codebases in a single query
- Want to compare results from different models
"For Claude Code users, Consult7 is a game changer."
How it works
Consult7 collects files from the specific paths you provide (with optional wildcards in filenames), assembles them into a single context, and sends them to a large context window model along with your query. The result is directly fed back to the agent you are working with.
Example Use Cases
Quick codebase summary
- Files:
["/Users/john/project/src/*.py", "/Users/john/project/lib/*.py"] - Query: "Summarize the architecture and main components of this Python project"
- Model:
"google/gemini-3-flash-preview" - Mode:
"fast"
Deep analysis with reasoning
- Files:
["/Users/john/webapp/src/*.py", "/Users/john/webapp/auth/*.py", "/Users/john/webapp/api/*.js"] - Query: "Analyze the authentication flow across this codebase. Think step by step about security vulnerabilities and suggest improvements"
- Model:
"anthropic/claude-sonnet-4.6" - Mode:
"think"
Generate a report saved to file
- Files:
["/Users/john/project/src/*.py", "/Users/john/project/tests/*.py"] - Query: "Generate a comprehensive code review report with architecture analysis, code quality assessment, and improvement recommendations"
- Model:
"google/gemini-2.5-pro" - Mode:
"think" - Output File:
"/Users/john/reports/code_review.md" - Result: Returns
"Result has been saved to /Users/john/reports/code_review.md"instead of flooding the agent's context
Featured: Gemini 3.1 Models
Consult7 supports Google's Gemini 3.1 family:
- Gemini 3.1 Pro (
google/gemini-3.1-pro-preview) - Flagship reasoning model, 1M context - Gemini 3 Flash (
google/gemini-3-flash-preview) - Ultra-fast model, 1M context - Gemini 3.1 Flash Lite (
google/gemini-3.1-flash-lite-preview) - Ultra-fast lite model, 1M context
Quick mnemonics for power users:
gemt= Gemini 3.1 Pro + think (flagship reasoning)gemf= Gemini 3 Flash + fast (ultra fast)gptt= GPT-5.4 + think (latest GPT)grot= Grok 4 + think (alternative reasoning)oput= Claude Opus 4.6 + think (deep reasoning)ULTRA= Run GEMT, GPTT, GROT, and OPUT in parallel (4 frontier models)
These mnemonics make it easy to reference model+mode combinations in your queries.
Installation
Claude Code
Simply run:
claude mcp add -s user consult7 uvx -- consult7 your-openrouter-api-key
Claude Desktop
Add to your Claude Desktop configuration file:
{
"mcpServers": {
"consult7": {
"type": "stdio",
"command": "uvx",
"args": ["consult7", "your-openrouter-api-key"]
}
}
}
Replace your-openrouter-api-key with your actual OpenRouter API key.
No installation required - uvx automatically downloads and runs consult7 in an isolated environment.
Command Line Options
uvx consult7 <api-key> [--test]
<api-key>: Required. Your OpenRouter API key--test: Optional. Test the API connection
The model and mode are specified when calling the tool, not at startup.
Supported Models
Consult7 supports all 500+ models available on OpenRouter. Below are the flagship models with optimized dynamic file size limits:
| Model | Context | Use Case |
|---|---|---|
openai/gpt-5.4 | 1M | Latest GPT, balanced performance |
google/gemini-3.1-pro-preview | 1M | Flagship reasoning model |
google/gemini-3-flash-preview | 1M | Gemini 3 Flash, ultra fast |
google/gemini-3.1-flash-lite-preview | 1M | Ultra-fast lite model |
anthropic/claude-opus-4.6 | 200k | Best quality, deep reasoning |
anthropic/claude-sonnet-4.6 | 200k | Excellent reasoning, fast |
anthropic/claude-haiku-4.5 | 200k | Budget, very fast |
x-ai/grok-4 | 256k | Alternative reasoning model |
x-ai/grok-4.1-fast | 2M | Largest context window |
Quick mnemonics:
gptt=openai/gpt-5.4+think(latest GPT, deep reasoning)gemt=google/gemini-3.1-pro-preview+think(Gemini 3.1 Pro, flagship reasoning)grot=x-ai/grok-4+think(Grok 4, deep reasoning)oput=anthropic/claude-opus-4.6+think(Claude Opus, deep reasoning)opuf=anthropic/claude-opus-4.6+fast(Claude Opus, no reasoning)gemf=google/gemini-3-flash-preview+fast(Gemini 3 Flash, ultra fast)ULTRA= call GEMT, GPTT, GROT, and OPUT IN PARALLEL (4 frontier models for maximum insight)
You can use any OpenRouter model ID (e.g., deepseek/deepseek-r1-0528). See the full model list. File size limits are automatically calculated based on each model's context window.
Performance Modes
fast: No reasoning - quick answers, simple tasksmid: Moderate reasoning - code reviews, bug analysisthink: Maximum reasoning - security audits, complex refactoring
File Specification Rules
- Absolute paths only:
/Users/john/project/src/*.py - Wildcards in filenames only:
/Users/john/project/*.py(not in directory paths) - Extension required with wildcards:
*.pynot* - Mix files and patterns:
["/path/src/*.py", "/path/README.md", "/path/tests/*_test.py"]
Common patterns:
- All Python files:
/path/to/dir/*.py - Test files:
/path/to/tests/*_test.pyor/path/to/tests/test_*.py - Multiple extensions:
["/path/*.js", "/path/*.ts"]
Automatically ignored: __pycache__, .env, secrets.py, .DS_Store, .git, node_modules
Size limits: Dynamic based on model context window (e.g., Grok 4 Fast: ~8MB, GPT-5.4: ~1.5MB)
Tool Parameters
The consultation tool accepts the following parameters:
- files (required): List of absolute file paths or patterns with wildcards in filenames only
- query (required): Your question or instruction for the LLM to process the files
- model (required): The LLM model to use (see Supported Models above)
- mode (required): Performance mode -
fast,mid, orthink - output_file (optional): Absolute path to save the response to a file instead of returning it
- If the file exists, it will be saved with
_updatedsuffix (e.g.,report.md→report_updated.md) - When specified, returns only:
"Result has been saved to /path/to/file" - Useful for generating reports, documentation, or analyses without flooding the agent's context
- If the file exists, it will be saved with
- zdr (optional): Enable Zero Data Retention routing (default:
false)- When
true, routes only to endpoints with ZDR policy (prompts not retained by provider) - ZDR available: Gemini 3.1 Pro/Flash, Claude Opus 4.6, GPT-5
- Not available: GPT-5.4, Grok 4 (returns error)
- When
Usage Examples
Via MCP in Claude Code
Claude Code will automatically use the tool with proper parameters:
{
"files": ["/Users/john/project/src/*.py"],
"query": "Explain the main architecture",
"model": "google/gemini-3-flash-preview",
"mode": "fast"
}
Via Python API
from consult7.consultation import consultation_impl
result = await consultation_impl(
files=["/path/to/file.py"],
query="Explain this code",
model="google/gemini-3-flash-preview",
mode="fast", # fast, mid, or think
provider="openrouter",
api_key="sk-or-v1-..."
)
Testing
# Test OpenRouter connection
uvx consult7 sk-or-v1-your-api-key --test
Uninstalling
To remove consult7 from Claude Code:
claude mcp remove consult7 -s user
Version History
v3.4.0
- Upgraded models: Gemini 3.1 Pro, Claude Opus 4.6, Claude Sonnet 4.6, Grok 4.1 Fast
- Added new models: Claude Haiku 4.5, Gemini 3.1 Flash Lite
- Updated mnemonics:
gemt→ Gemini 3.1 Pro,oput/opuf→ Claude Opus 4.6 - Legacy model IDs still supported
v3.3.0
- Fixed GPT-5.2 thinking mode truncation issue (switched to streaming)
- Added
google/gemini-3-flash-preview(Gemini 3 Flash, ultra fast) - Updated
gemfmnemonic to use Gemini 3 Flash - Added
zdrparameter for Zero Data Retention routing
v3.2.0
- Updated to GPT-5.2 with effort-based reasoning
v3.1.0
- Added
google/gemini-3-pro-preview(1M context, flagship reasoning model) - New mnemonics:
gemt(Gemini 3 Pro),grot(Grok 4),ULTRA(parallel execution)
v3.0.0
- Removed Google and OpenAI direct providers - now OpenRouter only
- Removed
|thinkingsuffix - usemodeparameter instead (now required) - Clean
modeparameter API:fast,mid,think - Simplified CLI from
consult7 <provider> <key>toconsult7 <key> - Better MCP integration with enum validation for modes
- Dynamic file size limits based on model context window
v2.1.0
- Added
output_fileparameter to save responses to files
v2.0.0
- New file list interface with simplified validation
- Reduced file size limits to realistic values
License
MIT
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