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模組 mbcp.mp_math.function
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func cal_gradient_3vf(func: ThreeSingleVarsFunc, p: Point3, epsilon: float = EPSILON) -> Vector3
説明 : 计算三元函数在某点的梯度向量。
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返回 : 梯度
源碼 或 於GitHub上查看 python def cal_gradient_3vf (func: ThreeSingleVarsFunc, p: Point3, epsilon: float = EPSILON ) -> Vector3:
dx = (func(p.x + epsilon, p.y, p.z) - func(p.x - epsilon, p.y, p.z)) / ( 2 * epsilon)
dy = (func(p.x, p.y + epsilon, p.z) - func(p.x, p.y - epsilon, p.z)) / ( 2 * epsilon)
dz = (func(p.x, p.y, p.z + epsilon) - func(p.x, p.y, p.z - epsilon)) / ( 2 * epsilon)
return Vector3(dx, dy, dz)
func curry(func: MultiVarsFunc, *args: Var) -> OneVarFunc
説明 : 对多参数函数进行柯里化。
變數説明 :
返回 : 柯里化后的函数
範例 :
python def add (a: int , b: int , c: int ) -> int :
return a + b + c
add_curried = curry(add, 1 , 2 )
add_curried( 3 ) # 6
源碼 或 於GitHub上查看 python def curry (func: MultiVarsFunc, * args: Var) -> OneVarFunc:
def curried_func ( * args2: Var) -> Var:
return func( * args, * args2)
return curried_func
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