library/specializations/domains/science/mechanical-engineering/skills/cnc-programming/SKILL.md
Expert skill for CNC programming and toolpath optimization using CAM software
npx skillsauth add a5c-ai/babysitter cnc-programmingInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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The CNC Programming skill provides expert capabilities for CNC programming and toolpath optimization using CAM software, enabling efficient and accurate machining of mechanical components.
Material Removal Strategies | Strategy | Application | Advantages | |----------|-------------|------------| | Adaptive/Dynamic | General roughing | Constant chip load | | Pocket | Enclosed areas | Efficient material removal | | Facing | Flat surfaces | Surface prep | | Plunge rough | Deep pockets | Axial chip evacuation |
Stock Allowance
Finishing allowance = 0.25-0.5 mm (typical)
Semi-finish allowance = 0.5-1.0 mm
Rough allowance = Stock - finish - semi-finish
Step-Over Guidelines
Adaptive roughing: 10-25% tool diameter
Pocket roughing: 50-75% tool diameter
Depth of cut: 1-2x tool diameter (end mills)
Surface Finish Strategies | Strategy | Application | Surface Finish | |----------|-------------|----------------| | Parallel | Flat surfaces | Ra 0.8-1.6 um | | Contour | Walls, profiles | Ra 0.8-1.6 um | | Scallop | 3D surfaces | Ra 1.6-3.2 um | | Pencil | Corners, fillets | Clean-up |
Step-Over for Finish
Cusp height = r - sqrt(r^2 - (s/2)^2)
For cusp height = 0.01 mm, r = 5 mm:
Step-over s = 0.89 mm
Cutting Speed (SFM): V = pi * D * N / 12 (imperial)
V = pi * D * N / 1000 (metric)
Feed Rate: F = f * z * N
Where:
V = cutting speed (SFM or m/min)
D = tool diameter
N = spindle speed (RPM)
f = feed per tooth
z = number of teeth
F = feed rate (IPM or mm/min)
| Material | Speed (SFM) | Feed/Tooth (in) | Notes | |----------|-------------|-----------------|-------| | Aluminum | 500-1000 | 0.004-0.008 | High spindle, coolant | | Steel (mild) | 80-120 | 0.003-0.006 | Flood coolant | | Steel (hard) | 50-80 | 0.002-0.004 | Reduce speed | | Stainless | 60-100 | 0.002-0.005 | Rigid setup | | Titanium | 40-60 | 0.002-0.004 | High pressure coolant |
| Application | Tool Type | Coating | |-------------|-----------|---------| | Aluminum roughing | 2-3 flute, polished | Uncoated/ZrN | | Aluminum finishing | 2-3 flute, high helix | Uncoated | | Steel roughing | 4+ flute, variable helix | AlTiN/TiAlN | | Steel finishing | 4+ flute | AlTiN | | Hardened steel | Ball nose, solid carbide | AlCrN |
Tool life tracking:
- Material removed (cm3)
- Cutting time (minutes)
- Parts produced
Replace at:
- Wear land > 0.3 mm
- Surface finish degradation
- Dimension out of tolerance
Clamping Force
Accessibility
Simulation Checks
First Article
{
"part_model": "CAD file reference",
"material": {
"name": "string",
"hardness": "string (e.g., HRC 30)"
},
"machine": {
"type": "3-axis|4-axis|5-axis|lathe",
"controller": "Fanuc|Siemens|Haas|other",
"spindle_max": "number (RPM)",
"rapids": "number (mm/min)"
},
"tolerances": {
"dimensional": "number (mm)",
"surface_finish": "number (Ra um)"
},
"production_volume": "prototype|low|medium|high"
}
{
"program_info": {
"program_number": "string",
"operations": "number",
"total_tools": "number"
},
"cycle_time": {
"machining": "number (min)",
"non-cutting": "number (min)",
"total": "number (min)"
},
"tool_list": [
{
"tool_number": "number",
"description": "string",
"diameter": "number (mm)",
"length": "number (mm)"
}
],
"setup_sheet": {
"work_offset": "string",
"fixture": "string",
"stock_size": "array [L, W, H]"
},
"nc_file": "file reference"
}
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