Running Formulas MCP Server
Provides comprehensive running performance calculations including VDOT, training paces, race time predictions, velocity markers, and heart rate zones using Jack Daniels, Greg McMillan, and Riegel methodologies.
README
running-formulas-mcp MCP server
An MCP server with comprehensive tools for running calculations including VDOT, training paces, race time predictions, velocity markers, heart rate zones, and pace conversions. Supports multiple methodologies including Jack Daniels, Greg McMillan, and Riegel's formula.
Features
Jack Daniels Methodology
- VDOT Calculation: Calculate VDOT from race performance using Jack Daniels' formula
- Training Paces: Get recommended training paces (Easy, Marathon, Threshold, Interval, Repetition) for a given VDOT
- Race Time Predictions: Predict race times using Jack Daniels' equivalent performance methodology
McMillan Methodology
- Velocity Markers: Calculate vLT (Lactate Threshold), CV (Critical Velocity), and vVO2 (VO2max velocity)
- Training Paces: Comprehensive training pace zones (Endurance, Stamina, Speed, Sprint) with sub-categories
- Race Time Predictions: Predict race times for all standard distances using McMillan's methodology
- Heart Rate Zones: Calculate training heart rate zones using multiple estimation formulas
Additional Tools
- Riegel's Formula: Race time predictions using Riegel's power law
- Pace Conversions: Convert between different pace and speed formats (min/km, min/mile, km/h, mph)
Tools
Jack Daniels Tools
-
daniels_calculate_vdot: Calculate VDOT from race performance using Jack Daniels' formula.- Input:
distance(float): Distance in meterstime(float): Time in seconds
- Output:
vdot(float): The calculated VDOT value
- Input:
-
daniels_calculate_training_paces: Get recommended training paces for a given VDOT.- Input:
vdot(float): VDOT value
- Output:
easy(object): Easy pace range with lower and upper boundsmarathon(object): Marathon pacethreshold(object): Threshold paceinterval(object): Interval pacerepetition(object): Repetition pace- All paces formatted as "MM:SS/km"
- Input:
-
daniels_predict_race_time: Predict race time using Jack Daniels' equivalent performance methodology.- Input:
current_distance(float): Distance of known performance in meterscurrent_time(float): Time of known performance in secondstarget_distance(float): Distance for race time prediction in meters
- Output:
value(string): Predicted time in "HH:MM:SS" formatformat(string): "HH:MM:SS"time_seconds(float): Time in seconds
- Input:
McMillan Tools
-
mcmillan_calculate_velocity_markers: Calculate velocity markers (vLT, CV, vVO2) from race performance.- Input:
distance(float): Race distance in meterstime(float): Race time in seconds
- Output:
velocity_markers(object): Contains vLT, CV, and vVO2 with pace and description
- Input:
-
mcmillan_predict_race_times: Predict race times for standard distances using McMillan methodology.- Input:
distance(float): Race distance in meterstime(float): Race time in seconds
- Output:
- Dictionary with predicted times for all standard race distances
- Input:
-
mcmillan_calculate_training_paces: Calculate comprehensive training paces using McMillan methodology.- Input:
distance(float): Race distance in meterstime(float): Race time in seconds
- Output:
- Training paces organized by zones (endurance, stamina, speed, sprint)
- Input:
-
mcmillan_heart_rate_zones: Calculate heart rate training zones.- Input:
age(int): Runner's age in yearsresting_heart_rate(int): Resting heart rate in BPMmax_heart_rate(int, optional): Maximum heart rate in BPM
- Output:
- Heart rate zones with both HRMAX and HRRESERVE calculations
- Input:
Additional Tools
-
riegel_predict_race_time: Predict race time using Riegel's formula.- Input:
current_distance(float): Distance of known performance in meterscurrent_time(float): Time of known performance in secondstarget_distance(float): Distance for race time prediction in meters
- Output:
value(string): Predicted time in "HH:MM:SS" formatformat(string): "HH:MM:SS"time_seconds(float): Time in seconds
- Input:
-
convert_pace: Convert between different pace and speed units.- Input:
value(float): The numeric value to convertfrom_unit(string): Source unit ("min_km", "min_mile", "kmh", "mph")to_unit(string): Target unit ("min_km", "min_mile", "kmh", "mph")
- Output:
value(float): Converted numeric valueformatted(string): Human-readable formatted resultunit(string): Target unit descriptor
- Input:
Usage
This server is designed to be used as an MCP stdio server. It does not expose HTTP endpoints directly.
Example: Calculate VDOT for a 5k in 25 minutes
Call the daniels_calculate_vdot tool with:
{
"name": "daniels_calculate_vdot",
"arguments": { "distance": 5000, "time": 1500 }
}
Returns:
{
"vdot": 38.4
}
Example: Get training paces for VDOT 38.4
Call the daniels_calculate_training_paces tool with:
{
"name": "daniels_calculate_training_paces",
"arguments": { "vdot": 38.4 }
}
Returns structured pace data like:
{
"easy": {
"lower": {"value": "5:42", "format": "MM:SS/km"},
"upper": {"value": "6:29", "format": "MM:SS/km"}
},
"marathon": {"value": "5:07", "format": "MM:SS/km"},
"threshold": {"value": "4:50", "format": "MM:SS/km"},
"interval": {"value": "4:32", "format": "MM:SS/km"},
"repetition": {"value": "4:26", "format": "MM:SS/km"}
}
Example: Calculate McMillan velocity markers from 5K performance
Call the mcmillan_calculate_velocity_markers tool with:
{
"name": "mcmillan_calculate_velocity_markers",
"arguments": { "distance": 5000, "time": 1500 }
}
Returns velocity markers:
{
"velocity_markers": {
"vLT": {
"pace": "4:50",
"description": "Velocity at Lactate Threshold (vLT) - sustainable pace for ~1 hour"
},
"CV": {
"pace": "4:32",
"description": "Critical Velocity (CV) - theoretical maximum sustainable pace"
},
"vVO2": {
"pace": "4:15",
"description": "Velocity at VO2max (vVO2) - pace at maximum oxygen uptake"
}
}
}
Example: Predict 10K time using Daniels methodology
Call the daniels_predict_race_time tool with:
{
"name": "daniels_predict_race_time",
"arguments": { "current_distance": 5000, "current_time": 1500, "target_distance": 10000 }
}
Returns:
{
"value": "00:52:07",
"format": "HH:MM:SS",
"time_seconds": 3127.4
}
Example: Calculate heart rate zones for a 30-year-old
Call the mcmillan_heart_rate_zones tool with:
{
"name": "mcmillan_heart_rate_zones",
"arguments": { "age": 30, "resting_heart_rate": 60, "max_heart_rate": 190 }
}
Example: Convert pace from min/km to min/mile
Call the convert_pace tool with:
{
"name": "convert_pace",
"arguments": { "value": 5.0, "from_unit": "min_km", "to_unit": "min_mile" }
}
Returns:
{
"value": 8.047,
"formatted": "8:02",
"unit": "min_mile"
}
Configuration
This server is designed to be used with Claude Desktop or other MCP-compatible clients. See the installation sections below for configuration details.
Installation
{
"mcpServers": {
"running-formulas-mcp": {
"command": "uvx",
"args": ["running-formulas-mcp"]
}
}
}
License
This project is licensed under the MIT License - see the LICENSE file for details.
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