Chronos Protocol
MCP server providing time intelligence, persistent memory and complete traceability for AI coding agents.
Chronos Protocol transforms AI development workflows by eliminating temporal blindness in automated systems. The MCP server provides complete traceability and session continuity, enabling AI agents to maintain context across sessions while delivering enterprise-grade time tracking, intelligent scheduling, and comprehensive development analytics.
Table of Contents
Background
Core Capabilities
Chronos Protocol addresses critical gaps in AI development workflows through sophisticated time intelligence and persistent memory systems designed specifically for automated coding environments.
System Time First Approach
Chronos Protocol transforms how automated systems handle time by prioritizing your computer's local system time as the intelligent default. No more timezone confusion - just use "system"
or "local"
and get instant, contextual time awareness that adapts to your environment.
Core Time Intelligence
get_current_time
Chronos Protocol prioritizes your computer's local system time as the intelligent default. Most AI IDEs already embed system time in their prompts, but Chronos Protocol provides explicit, structured temporal context that works across all MCP clients.
Get standardized timestamps with system time context:
System Time Priority: Uses your local system time as the intelligent default
Cross-Timezone Collaboration: Show local time alongside team timezone for global projects
Temporal Context: AI agents always know "when" they're operating for better decision-making
convert_time
Eliminate timezone calculation errors with intelligent conversion:
Meeting Scheduling: Convert times between global timezones
Release Planning: Coordinate deployments across regions
Time Difference Analysis: Calculate timezone offsets with DST handling
Activity Intelligence System
start_activity_log
Start sophisticated activity monitoring with unique Activity IDs and rich metadata for agentic development workflows:
Autonomous Session Management: Track coding sessions, debugging processes, and feature implementations with persistent context
Intelligent Task Analysis: Monitor and learn from task completion patterns to optimize future planning
Context Preservation: Maintain precise records for cross-session continuity and seamless task resumption
end_activity_log
Complete activities with automatic duration calculation and rich outcome data for performance intelligence:
Self-Performance Analysis: Analyze actual vs. estimated completion times for better future planning accuracy
Autonomous Documentation: Document accomplishments and lessons learned for persistent knowledge retention
Adaptive Performance: Build historical intelligence on development velocity and success patterns
get_elapsed_time
Monitor ongoing activities without interrupting execution flow:
Long-Running Task Management: Check progress on extended debugging or complex implementations
Intelligent Time Boxing: Monitor and optimize work sessions for maximum efficiency
Context Awareness: Track duration of different phases in problem-solving processes
get_activity_logs
Query and analyze development patterns with sophisticated filtering:
Autonomous Pattern Recognition: Generate performance reports and identify optimization opportunities
Self-Learning Analytics: Identify which task types require more resources and adapt approach accordingly
Cross-Project Learning: Leverage experience from different projects to improve overall effectiveness
update_activity_log
Modify completed activities with updated insights and corrections:
Autonomous Learning: Add insights discovered after task completion for future reference
Self-Correction: Fix timing errors or update task descriptions based on new information
Continuous Documentation: Update results and learnings as projects evolve and new context emerges
Intelligent Reminder System
create_time_reminder
Set smart reminders linked to your development workflow:
Code Review Follow-ups: Never forget to check on pending pull requests
Dependency Updates: Schedule regular checks for outdated packages and security patches
Release Checkpoints: Set reminders for deployment, testing, and rollback windows
check_time_reminders
Stay ahead of important tasks with intelligent reminder detection:
Upcoming Deadlines: Get advance warning of approaching project milestones
Maintenance Windows: Be reminded of scheduled system maintenance or deployments
Team Coordination: Never miss collaborative sessions or important check-ins
Problem Statement
Solves Real Problems
Eliminates AI Temporal Blindness: Your AI agents can actively check current time and make time-aware decisions instead of relying solely on embedded system time in the its System Prompt
Reduces Context Switching: AI agents can track time without interrupting your flow
Cross-Project Continuity: Start tracking in Project A, finish in Project B - everything stays connected
Developer-Centric Design: Built specifically for agentic coding workflows, not generic time tracking
Architecture
Flexible Storage Architecture
Chronos Protocol supports dual storage modes to fit your development workflow:
Centralized Mode (Traditional)
Single database for all projects
Cross-project analytics and historical intelligence
Perfect for: Teams wanting unified time tracking across all work
AI Framework Integration: Persistent memory works across all projects
Per-Project Mode (Dynamic)
Automatic project detection with zero configuration
Isolated storage per project (
{project-root}/chronos-data/time_server_data.json
)Perfect for: Individual developers who prefer project-specific tracking
Zero Setup: Just use
--storage-mode per-project
and it works everywhere
Context Engineering Framework Integration
Chronos Protocol's activity logging system provides persistent memory for AI frameworks like Claude Task Master, Agent OS, and BMAD Method, enabling enhanced task tracking, centralized activity logging, and historical analysis with persistent Activity IDs across agent operations.
Integration Guide: For AI coding agents, refer to the sample prompt template in AGENTS.md
which provides Cursor Rules that can be integrated with your existing workflow rules. This template demonstrates the complete activity logging protocol with customizable task list filename patterns.
Persistent Memory Benefits
Cross-Session Continuity: Tasks started in one session can be tracked and completed in another
Framework-Agnostic Storage: JSON database works with any AI framework that can append Activity IDs
Rich Context Preservation: Full activity metadata including duration, outcomes, and custom tags
Historical Intelligence: AI frameworks can query past activities for pattern recognition and optimization
Install
Prerequisites
Python: 3.10 or higher
MCP Support: AI client with Model Context Protocol support
Installation Steps
After installation, configure Chronos Protocol in your MCP client using the appropriate configuration schema in the Configuration section.
Usage
Basic Time Intelligence Operations
Get Current Time with Context
Smart Timezone Conversion
Activity Intelligence Workflow
Complete Development Session Tracking
Intelligent Task Analysis
Cross-Session Continuity
AI Framework Integration Example
This creates an intelligent feedback loop where AI frameworks learn from historical task performance and timing patterns!
API
Time Intelligence Functions
get_current_time(timezone)
Get standardized timestamps with system time context.
Parameters:
timezone
(string): Target timezone. Use"system"
or"local"
for user's local time, or IANA names like"America/New_York"
,"Europe/London"
,"UTC"
Returns: Current time with full timezone context and metadata
convert_time(source_timezone, time, target_timezone)
Convert time between timezones with intelligent handling of DST.
Parameters:
source_timezone
(string): Source timezonetime
(string): Time in 24-hour format (HH:MM)target_timezone
(string): Target timezone
Returns: Converted time with timezone difference information
Activity Intelligence Functions
start_activity_log(activityType, task_scope, description, tags?)
Initialize activity monitoring with unique Activity ID and rich metadata.
Parameters:
activityType
(string): Type of activity (e.g., 'debugging', 'feature-implementation')task_scope
(string): Scope of the task from predefined optionsdescription
(string): Detailed description of the activitytags
(array, optional): Array of strings for categorizing the activity
Returns: Unique Activity ID for tracking
end_activity_log(activityId, result?, notes?)
Complete activity with automatic duration calculation and rich outcome data.
Parameters:
activityId
(string): Unique identifier of the activity to endresult
(string, optional): Result or outcome of the activitynotes
(string, optional): Additional notes about the activity
Returns: Completed activity with duration and timestamps
get_elapsed_time(activityId)
Monitor ongoing activities without interrupting execution flow.
Parameters:
activityId
(string): Unique identifier of the activity
Returns: Elapsed time information for the specified activity
get_activity_logs(filters?)
Query and analyze development patterns with sophisticated filtering.
Parameters:
filters
(object, optional): Filtering options including:activityType
(string): Filter by activity typetask_scope
(string): Filter by task scopestartDate
(string): Filter by start date (ISO 8601 format)endDate
(string): Filter by end date (ISO 8601 format)limit
(integer): Maximum number of logs to return
Returns: Array of activity logs matching the criteria
update_activity_log(activityId, updates)
Modify completed activities with updated insights and corrections.
Parameters:
activityId
(string): Unique identifier of the activity to updateupdates
(object): Object containing fields to update
Returns: Updated activity log
Reminder System Functions
create_time_reminder(reminderTime, message, relatedTaskId?)
Create time-based reminder using system time for scheduling.
Parameters:
reminderTime
(string): Time for the reminder (ISO 8601 format with timezone)message
(string): Reminder messagerelatedTaskId
(string, optional): ID of related task or activity
Returns: Created reminder with unique identifier
check_time_reminders(upcomingMinutes?)
Check for due or upcoming time reminders.
Parameters:
upcomingMinutes
(integer, optional): Check for reminders due within this many minutes (default: 60)
Returns: Array of due and upcoming reminders
Configuration
Chronos Protocol supports two storage modes:
Mode | Use Case | Data Location |
Per-Project | Individual project isolation |
|
Centralized | Cross-project analytics | Custom directory via
|
ID Format Options
Format | Example | Length | Use Case |
|
| 12 chars | Ultra-compact for task lists |
|
| 22 chars | Balanced readability |
|
| 36 chars | Legacy compatibility |
Important: Type Parameter Warning
DO NOT add "type": "stdio"
to your MCP configuration.
Why this causes failures:
Chronos Protocol is hardcoded to use stdio transport
When clients add
"type": "stdio"
, it can interfere with variable resolutionVariable substitution happens before type validation
Results in invalid paths like
C:\Program Files\VSCode\${workspaceFolder}
Correct approach:
Let Chronos Protocol handle transport selection automatically
Only specify
"type"
if your MCP client requires it AND you're not using variablesMost MCP clients work perfectly without explicit type declaration
VS Code Extensions and forks
Roo Code Extension
VS Code Forks
Cursor & Trae
CLI Clients
Claude Code & Gemini CLI
Limited Support Clients
Cline & Qoder
Known Limitations:
Does not support
${workspaceFolder}
variable substitutionCannot use per-project storage mode
Will fail if
--project-root
argument is includedLimited to centralized storage only
Working Configuration:
Do NOT add:
--project-root "${workspaceFolder}"
(causes failures)"type": "stdio"
parameter (see Important section above)
Important: Type Parameter Warning
DO NOT add "type": "stdio"
to your MCP configuration
Why this causes failures:
Chronos Protocol is hardcoded to use stdio transport
When clients add
"type": "stdio"
, it can interfere with variable resolutionVariable substitution happens before type validation
Results in invalid paths like
C:\Program Files\VSCode\${workspaceFolder}
Correct approach:
Let Chronos Protocol handle transport selection automatically
Only specify
"type"
if your MCP client requires it AND you're not using variablesMost MCP clients work perfectly without explicit type declaration
Troubleshooting
Common Issues
"No tools or prompts" Error
Symptoms:
MCP server appears connected
Tools are not available in the client
No error messages visible
Solutions by Client:
Cursor:
Ensure
--project-root "${workspaceFolder}"
is includedCheck that workspace is properly opened
Claude Code:
Remove
--project-root
argument (use default detection)Do not add
"type": "stdio"
parameter
Cline/Qoder:
Use centralized storage mode
Remove all workspace variables
Set explicit
--data-dir
path
Variable Substitution Issues
Problem: ${workspaceFolder}
not resolving
Affected Clients: Cline, Qoder, some Claude Code configurations
Solution:
Storage Permission Errors
Error: Cannot create chronos-data directory Solution:
Ensure write permissions in project directory
For per-project mode, check workspace permissions
For centralized mode, verify
--data-dir
accessibility
Python Module Not Found
Error: ModuleNotFoundError: No module named 'chronos_protocol'
Solution:
Client-Specific Issues
VS Code Extensions
Ensure MCP extension is enabled
Check VS Code version compatibility
Verify workspace is properly opened
VS Code Forks
Some forks may have custom MCP implementations
Check fork-specific documentation
Report issues to fork maintainers
CLI Clients
Ensure proper JSON formatting
Check file permissions for configuration files
Verify Python environment setup
Performance Optimization
Large Activity Logs
Use appropriate ID format for your use case
Consider centralized storage for cross-project analytics
Archive old activities periodically
Memory Usage
Per-project mode isolates memory usage
Centralized mode may accumulate data over time
Monitor storage directory sizes
Getting Help
Community Support
Check GitHub issues for similar problems
Provide detailed error logs and configuration
Include client version and platform information
Debug Information
Contributing
Development Setup
Code Standards
Python: Follow PEP 8 style guidelines
Documentation: Use Google-style docstrings
Testing: Maintain >90% test coverage
Commits: Use conventional commit format
Testing MCP Clients
When adding support for new MCP clients:
Test with both storage modes
Verify all tools work correctly
Check error handling scenarios
Update configuration documentation
Add to compatibility matrix
Reporting Bugs
Bug Report Template:
MCP client name and version
Configuration used
Expected vs actual behavior
Error logs (if available)
Steps to reproduce
License
This project is licensed under the MIT License - see the LICENSE file for details.
Acknowledgments
Anthropic for the Model Context Protocol specification
MCP Community for client implementations and testing
Contributors for their valuable feedback and bug reports
Ready to transform your AI development workflow? Configure Chronos Protocol in your MCP client and start building with complete traceability and session continuity.
hybrid server
The server is able to function both locally and remotely, depending on the configuration or use case.
Tools
Provides time intelligence, persistent memory and complete traceability for AI coding agents. Enables sophisticated activity tracking, timezone management, smart reminders, and cross-session continuity with support for both per-project and centralized storage modes.