{"mode":"Text","textContent":"#region VEXcode Generated Robot Configuration\nimport math\nimport random\nfrom vexcode_vr import *\n\n# Brain should be defined by default\nbrain=Brain()\n\ndrivetrain = Drivetrain(\"drivetrain\", 0)\npen = Pen(\"pen\", 8)\npen.set_pen_width(THIN)\nleft_bumper = Bumper(\"leftBumper\", 2)\nright_bumper = Bumper(\"rightBumper\", 3)\nfront_eye = EyeSensor(\"frontEye\", 4)\ndown_eye = EyeSensor(\"downEye\", 5)\nfront_distance = Distance(\"frontdistance\", 6)\ndistance = front_distance\nmagnet = Electromagnet(\"magnet\", 7)\nlocation = Location(\"location\", 9)\n\n#endregion VEXcode Generated Robot Configuration\n# ------------------------------------------\n# \n# \tProject:      VEXcode Project\n#\tAuthor:       VEX\n#\tCreated:\n#\tDescription:  VEXcode VR Python Project\n# \n# ------------------------------------------\n\n# Add project code in \"main\"\ndef main():\n    SideNumber = random.randint(4,12)\n    AngleNumber = 360/SideNumber\n    if SideNumber == 4: \n        SideMeasure=325\n        wait(.5, SECONDS)\n    elif SideNumber == 5: \n        SideMeasure=300\n        wait(.5, SECONDS)\n    elif SideNumber == 6: \n        SideMeasure=275\n        wait(.5, SECONDS)\n    elif SideNumber == 7: \n        SideMeasure=250\n        wait(.5, SECONDS)\n    elif SideNumber == 8: \n        SideMeasure=225\n        wait(.5, SECONDS)\n    elif SideNumber == 9: \n        SideMeasure=200\n        wait(.5, SECONDS)\n    elif SideNumber == 10: \n        SideMeasure=175\n        wait(.5, SECONDS)\n    elif SideNumber == 11: \n        SideMeasure=150\n        wait(.5, SECONDS)\n    elif SideNumber == 12: \n        SideMeasure=125\n        wait(.5, SECONDS)\n    else:\n        drivetrain.stop() \n\n    drivetrain.drive_for(FORWARD, 275, MM)\n    drivetrain.turn_for(LEFT, 90, DEGREES)\n    drivetrain.drive_for(FORWARD, 360, MM)\n    pen.set_pen_color_rgb(37,42,37,100)\n    pen.move(DOWN)\n\n    for value in range(SideNumber):\n        drivetrain.drive_for(FORWARD, SideMeasure, MM)\n        drivetrain.turn_for(RIGHT, AngleNumber, DEGREES)\n        wait(5, MSEC)\n\n    pen.move(UP)\n    drivetrain.turn_for(RIGHT, 30, DEGREES)\n    drivetrain.drive_for(FORWARD, 100, MM)\n    pen.fill(1,108,39,75)\n\n# VR threads — Do not delete\nvr_thread(main)\n","textLanguage":"python","rconfig":[],"slot":0,"platform":"PG","sdkVersion":"20220726.10.00.00","appVersion":"3.0.5","minVersion":"3.0.0","fileFormat":"1.2.0","icon":"","targetBrainGen":"First","v5SoundsEnabled":false,"playground":"ArtCanvasPlus","robotModel":"vr","canvasImage":"data:image/png;base64,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