SynthBasics:moogVCF from YampaSynth-0.2

Percentage Accurate: 93.6% → 98.3%
Time: 8.1s
Alternatives: 8
Speedup: 1.0×

Specification

?
\[\begin{array}{l} \\ x + \left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) \end{array} \]
(FPCore (x y z t)
 :precision binary64
 (+ x (* (* y z) (- (tanh (/ t y)) (tanh (/ x y))))))
double code(double x, double y, double z, double t) {
	return x + ((y * z) * (tanh((t / y)) - tanh((x / y))));
}
real(8) function code(x, y, z, t)
    real(8), intent (in) :: x
    real(8), intent (in) :: y
    real(8), intent (in) :: z
    real(8), intent (in) :: t
    code = x + ((y * z) * (tanh((t / y)) - tanh((x / y))))
end function
public static double code(double x, double y, double z, double t) {
	return x + ((y * z) * (Math.tanh((t / y)) - Math.tanh((x / y))));
}
def code(x, y, z, t):
	return x + ((y * z) * (math.tanh((t / y)) - math.tanh((x / y))))
function code(x, y, z, t)
	return Float64(x + Float64(Float64(y * z) * Float64(tanh(Float64(t / y)) - tanh(Float64(x / y)))))
end
function tmp = code(x, y, z, t)
	tmp = x + ((y * z) * (tanh((t / y)) - tanh((x / y))));
end
code[x_, y_, z_, t_] := N[(x + N[(N[(y * z), $MachinePrecision] * N[(N[Tanh[N[(t / y), $MachinePrecision]], $MachinePrecision] - N[Tanh[N[(x / y), $MachinePrecision]], $MachinePrecision]), $MachinePrecision]), $MachinePrecision]), $MachinePrecision]
\begin{array}{l}

\\
x + \left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right)
\end{array}

Sampling outcomes in binary64 precision:

Local Percentage Accuracy vs ?

The average percentage accuracy by input value. Horizontal axis shows value of an input variable; the variable is choosen in the title. Vertical axis is accuracy; higher is better. Red represent the original program, while blue represents Herbie's suggestion. These can be toggled with buttons below the plot. The line is an average while dots represent individual samples.

Accuracy vs Speed?

Herbie found 8 alternatives:

AlternativeAccuracySpeedup
The accuracy (vertical axis) and speed (horizontal axis) of each alternatives. Up and to the right is better. The red square shows the initial program, and each blue circle shows an alternative.The line shows the best available speed-accuracy tradeoffs.

Initial Program: 93.6% accurate, 1.0× speedup?

\[\begin{array}{l} \\ x + \left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) \end{array} \]
(FPCore (x y z t)
 :precision binary64
 (+ x (* (* y z) (- (tanh (/ t y)) (tanh (/ x y))))))
double code(double x, double y, double z, double t) {
	return x + ((y * z) * (tanh((t / y)) - tanh((x / y))));
}
real(8) function code(x, y, z, t)
    real(8), intent (in) :: x
    real(8), intent (in) :: y
    real(8), intent (in) :: z
    real(8), intent (in) :: t
    code = x + ((y * z) * (tanh((t / y)) - tanh((x / y))))
end function
public static double code(double x, double y, double z, double t) {
	return x + ((y * z) * (Math.tanh((t / y)) - Math.tanh((x / y))));
}
def code(x, y, z, t):
	return x + ((y * z) * (math.tanh((t / y)) - math.tanh((x / y))))
function code(x, y, z, t)
	return Float64(x + Float64(Float64(y * z) * Float64(tanh(Float64(t / y)) - tanh(Float64(x / y)))))
end
function tmp = code(x, y, z, t)
	tmp = x + ((y * z) * (tanh((t / y)) - tanh((x / y))));
end
code[x_, y_, z_, t_] := N[(x + N[(N[(y * z), $MachinePrecision] * N[(N[Tanh[N[(t / y), $MachinePrecision]], $MachinePrecision] - N[Tanh[N[(x / y), $MachinePrecision]], $MachinePrecision]), $MachinePrecision]), $MachinePrecision]), $MachinePrecision]
\begin{array}{l}

\\
x + \left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right)
\end{array}

Alternative 1: 98.3% accurate, 1.0× speedup?

\[\begin{array}{l} y_m = \left|y\right| \\ \begin{array}{l} \mathbf{if}\;y\_m \leq 1.18 \cdot 10^{+207}:\\ \;\;\;\;\mathsf{fma}\left(z \cdot \left(\tanh \left(\frac{t}{y\_m}\right) - \tanh \left(\frac{x}{y\_m}\right)\right), y\_m, x\right)\\ \mathbf{else}:\\ \;\;\;\;\mathsf{fma}\left(t - x, z, x\right)\\ \end{array} \end{array} \]
y_m = (fabs.f64 y)
(FPCore (x y_m z t)
 :precision binary64
 (if (<= y_m 1.18e+207)
   (fma (* z (- (tanh (/ t y_m)) (tanh (/ x y_m)))) y_m x)
   (fma (- t x) z x)))
y_m = fabs(y);
double code(double x, double y_m, double z, double t) {
	double tmp;
	if (y_m <= 1.18e+207) {
		tmp = fma((z * (tanh((t / y_m)) - tanh((x / y_m)))), y_m, x);
	} else {
		tmp = fma((t - x), z, x);
	}
	return tmp;
}
y_m = abs(y)
function code(x, y_m, z, t)
	tmp = 0.0
	if (y_m <= 1.18e+207)
		tmp = fma(Float64(z * Float64(tanh(Float64(t / y_m)) - tanh(Float64(x / y_m)))), y_m, x);
	else
		tmp = fma(Float64(t - x), z, x);
	end
	return tmp
end
y_m = N[Abs[y], $MachinePrecision]
code[x_, y$95$m_, z_, t_] := If[LessEqual[y$95$m, 1.18e+207], N[(N[(z * N[(N[Tanh[N[(t / y$95$m), $MachinePrecision]], $MachinePrecision] - N[Tanh[N[(x / y$95$m), $MachinePrecision]], $MachinePrecision]), $MachinePrecision]), $MachinePrecision] * y$95$m + x), $MachinePrecision], N[(N[(t - x), $MachinePrecision] * z + x), $MachinePrecision]]
\begin{array}{l}
y_m = \left|y\right|

\\
\begin{array}{l}
\mathbf{if}\;y\_m \leq 1.18 \cdot 10^{+207}:\\
\;\;\;\;\mathsf{fma}\left(z \cdot \left(\tanh \left(\frac{t}{y\_m}\right) - \tanh \left(\frac{x}{y\_m}\right)\right), y\_m, x\right)\\

\mathbf{else}:\\
\;\;\;\;\mathsf{fma}\left(t - x, z, x\right)\\


\end{array}
\end{array}
Derivation
  1. Split input into 2 regimes
  2. if y < 1.18e207

    1. Initial program 94.5%

      \[x + \left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) \]
    2. Add Preprocessing
    3. Step-by-step derivation
      1. lift-+.f64N/A

        \[\leadsto \color{blue}{x + \left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right)} \]
      2. +-commutativeN/A

        \[\leadsto \color{blue}{\left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) + x} \]
      3. lift-*.f64N/A

        \[\leadsto \color{blue}{\left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right)} + x \]
      4. lift-*.f64N/A

        \[\leadsto \color{blue}{\left(y \cdot z\right)} \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) + x \]
      5. associate-*l*N/A

        \[\leadsto \color{blue}{y \cdot \left(z \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right)\right)} + x \]
      6. *-commutativeN/A

        \[\leadsto \color{blue}{\left(z \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right)\right) \cdot y} + x \]
      7. lower-fma.f64N/A

        \[\leadsto \color{blue}{\mathsf{fma}\left(z \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right), y, x\right)} \]
      8. *-commutativeN/A

        \[\leadsto \mathsf{fma}\left(\color{blue}{\left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) \cdot z}, y, x\right) \]
      9. lower-*.f6497.7

        \[\leadsto \mathsf{fma}\left(\color{blue}{\left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) \cdot z}, y, x\right) \]
    4. Applied rewrites97.7%

      \[\leadsto \color{blue}{\mathsf{fma}\left(\left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) \cdot z, y, x\right)} \]

    if 1.18e207 < y

    1. Initial program 69.0%

      \[x + \left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) \]
    2. Add Preprocessing
    3. Taylor expanded in y around inf

      \[\leadsto \color{blue}{x + z \cdot \left(t - x\right)} \]
    4. Step-by-step derivation
      1. +-commutativeN/A

        \[\leadsto \color{blue}{z \cdot \left(t - x\right) + x} \]
      2. *-commutativeN/A

        \[\leadsto \color{blue}{\left(t - x\right) \cdot z} + x \]
      3. lower-fma.f64N/A

        \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
      4. lower--.f6497.3

        \[\leadsto \mathsf{fma}\left(\color{blue}{t - x}, z, x\right) \]
    5. Applied rewrites97.3%

      \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
  3. Recombined 2 regimes into one program.
  4. Final simplification97.7%

    \[\leadsto \begin{array}{l} \mathbf{if}\;y \leq 1.18 \cdot 10^{+207}:\\ \;\;\;\;\mathsf{fma}\left(z \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right), y, x\right)\\ \mathbf{else}:\\ \;\;\;\;\mathsf{fma}\left(t - x, z, x\right)\\ \end{array} \]
  5. Add Preprocessing

Alternative 2: 65.5% accurate, 0.5× speedup?

\[\begin{array}{l} y_m = \left|y\right| \\ \begin{array}{l} t_1 := \left(z \cdot y\_m\right) \cdot \left(\tanh \left(\frac{t}{y\_m}\right) - \tanh \left(\frac{x}{y\_m}\right)\right) + x\\ \mathbf{if}\;t\_1 \leq -\infty:\\ \;\;\;\;\left(-z\right) \cdot x\\ \mathbf{elif}\;t\_1 \leq 5 \cdot 10^{+304}:\\ \;\;\;\;1 \cdot x\\ \mathbf{else}:\\ \;\;\;\;z \cdot t\\ \end{array} \end{array} \]
y_m = (fabs.f64 y)
(FPCore (x y_m z t)
 :precision binary64
 (let* ((t_1 (+ (* (* z y_m) (- (tanh (/ t y_m)) (tanh (/ x y_m)))) x)))
   (if (<= t_1 (- INFINITY))
     (* (- z) x)
     (if (<= t_1 5e+304) (* 1.0 x) (* z t)))))
y_m = fabs(y);
double code(double x, double y_m, double z, double t) {
	double t_1 = ((z * y_m) * (tanh((t / y_m)) - tanh((x / y_m)))) + x;
	double tmp;
	if (t_1 <= -((double) INFINITY)) {
		tmp = -z * x;
	} else if (t_1 <= 5e+304) {
		tmp = 1.0 * x;
	} else {
		tmp = z * t;
	}
	return tmp;
}
y_m = Math.abs(y);
public static double code(double x, double y_m, double z, double t) {
	double t_1 = ((z * y_m) * (Math.tanh((t / y_m)) - Math.tanh((x / y_m)))) + x;
	double tmp;
	if (t_1 <= -Double.POSITIVE_INFINITY) {
		tmp = -z * x;
	} else if (t_1 <= 5e+304) {
		tmp = 1.0 * x;
	} else {
		tmp = z * t;
	}
	return tmp;
}
y_m = math.fabs(y)
def code(x, y_m, z, t):
	t_1 = ((z * y_m) * (math.tanh((t / y_m)) - math.tanh((x / y_m)))) + x
	tmp = 0
	if t_1 <= -math.inf:
		tmp = -z * x
	elif t_1 <= 5e+304:
		tmp = 1.0 * x
	else:
		tmp = z * t
	return tmp
y_m = abs(y)
function code(x, y_m, z, t)
	t_1 = Float64(Float64(Float64(z * y_m) * Float64(tanh(Float64(t / y_m)) - tanh(Float64(x / y_m)))) + x)
	tmp = 0.0
	if (t_1 <= Float64(-Inf))
		tmp = Float64(Float64(-z) * x);
	elseif (t_1 <= 5e+304)
		tmp = Float64(1.0 * x);
	else
		tmp = Float64(z * t);
	end
	return tmp
end
y_m = abs(y);
function tmp_2 = code(x, y_m, z, t)
	t_1 = ((z * y_m) * (tanh((t / y_m)) - tanh((x / y_m)))) + x;
	tmp = 0.0;
	if (t_1 <= -Inf)
		tmp = -z * x;
	elseif (t_1 <= 5e+304)
		tmp = 1.0 * x;
	else
		tmp = z * t;
	end
	tmp_2 = tmp;
end
y_m = N[Abs[y], $MachinePrecision]
code[x_, y$95$m_, z_, t_] := Block[{t$95$1 = N[(N[(N[(z * y$95$m), $MachinePrecision] * N[(N[Tanh[N[(t / y$95$m), $MachinePrecision]], $MachinePrecision] - N[Tanh[N[(x / y$95$m), $MachinePrecision]], $MachinePrecision]), $MachinePrecision]), $MachinePrecision] + x), $MachinePrecision]}, If[LessEqual[t$95$1, (-Infinity)], N[((-z) * x), $MachinePrecision], If[LessEqual[t$95$1, 5e+304], N[(1.0 * x), $MachinePrecision], N[(z * t), $MachinePrecision]]]]
\begin{array}{l}
y_m = \left|y\right|

\\
\begin{array}{l}
t_1 := \left(z \cdot y\_m\right) \cdot \left(\tanh \left(\frac{t}{y\_m}\right) - \tanh \left(\frac{x}{y\_m}\right)\right) + x\\
\mathbf{if}\;t\_1 \leq -\infty:\\
\;\;\;\;\left(-z\right) \cdot x\\

\mathbf{elif}\;t\_1 \leq 5 \cdot 10^{+304}:\\
\;\;\;\;1 \cdot x\\

\mathbf{else}:\\
\;\;\;\;z \cdot t\\


\end{array}
\end{array}
Derivation
  1. Split input into 3 regimes
  2. if (+.f64 x (*.f64 (*.f64 y z) (-.f64 (tanh.f64 (/.f64 t y)) (tanh.f64 (/.f64 x y))))) < -inf.0

    1. Initial program 49.7%

      \[x + \left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) \]
    2. Add Preprocessing
    3. Taylor expanded in y around inf

      \[\leadsto \color{blue}{x + z \cdot \left(t - x\right)} \]
    4. Step-by-step derivation
      1. +-commutativeN/A

        \[\leadsto \color{blue}{z \cdot \left(t - x\right) + x} \]
      2. *-commutativeN/A

        \[\leadsto \color{blue}{\left(t - x\right) \cdot z} + x \]
      3. lower-fma.f64N/A

        \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
      4. lower--.f64100.0

        \[\leadsto \mathsf{fma}\left(\color{blue}{t - x}, z, x\right) \]
    5. Applied rewrites100.0%

      \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
    6. Taylor expanded in x around inf

      \[\leadsto x \cdot \color{blue}{\left(1 + -1 \cdot z\right)} \]
    7. Step-by-step derivation
      1. Applied rewrites55.3%

        \[\leadsto \left(1 - z\right) \cdot \color{blue}{x} \]
      2. Taylor expanded in z around inf

        \[\leadsto \left(-1 \cdot z\right) \cdot x \]
      3. Step-by-step derivation
        1. Applied rewrites55.3%

          \[\leadsto \left(-z\right) \cdot x \]

        if -inf.0 < (+.f64 x (*.f64 (*.f64 y z) (-.f64 (tanh.f64 (/.f64 t y)) (tanh.f64 (/.f64 x y))))) < 4.9999999999999997e304

        1. Initial program 99.3%

          \[x + \left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) \]
        2. Add Preprocessing
        3. Taylor expanded in y around inf

          \[\leadsto \color{blue}{x + z \cdot \left(t - x\right)} \]
        4. Step-by-step derivation
          1. +-commutativeN/A

            \[\leadsto \color{blue}{z \cdot \left(t - x\right) + x} \]
          2. *-commutativeN/A

            \[\leadsto \color{blue}{\left(t - x\right) \cdot z} + x \]
          3. lower-fma.f64N/A

            \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
          4. lower--.f6453.6

            \[\leadsto \mathsf{fma}\left(\color{blue}{t - x}, z, x\right) \]
        5. Applied rewrites53.6%

          \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
        6. Taylor expanded in x around inf

          \[\leadsto x \cdot \color{blue}{\left(1 + -1 \cdot z\right)} \]
        7. Step-by-step derivation
          1. Applied rewrites53.1%

            \[\leadsto \left(1 - z\right) \cdot \color{blue}{x} \]
          2. Taylor expanded in z around 0

            \[\leadsto 1 \cdot x \]
          3. Step-by-step derivation
            1. Applied rewrites70.0%

              \[\leadsto 1 \cdot x \]

            if 4.9999999999999997e304 < (+.f64 x (*.f64 (*.f64 y z) (-.f64 (tanh.f64 (/.f64 t y)) (tanh.f64 (/.f64 x y)))))

            1. Initial program 52.6%

              \[x + \left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) \]
            2. Add Preprocessing
            3. Taylor expanded in y around inf

              \[\leadsto \color{blue}{x + z \cdot \left(t - x\right)} \]
            4. Step-by-step derivation
              1. +-commutativeN/A

                \[\leadsto \color{blue}{z \cdot \left(t - x\right) + x} \]
              2. *-commutativeN/A

                \[\leadsto \color{blue}{\left(t - x\right) \cdot z} + x \]
              3. lower-fma.f64N/A

                \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
              4. lower--.f6492.6

                \[\leadsto \mathsf{fma}\left(\color{blue}{t - x}, z, x\right) \]
            5. Applied rewrites92.6%

              \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
            6. Taylor expanded in x around 0

              \[\leadsto t \cdot \color{blue}{z} \]
            7. Step-by-step derivation
              1. Applied rewrites70.8%

                \[\leadsto z \cdot \color{blue}{t} \]
            8. Recombined 3 regimes into one program.
            9. Final simplification69.2%

              \[\leadsto \begin{array}{l} \mathbf{if}\;\left(z \cdot y\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) + x \leq -\infty:\\ \;\;\;\;\left(-z\right) \cdot x\\ \mathbf{elif}\;\left(z \cdot y\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) + x \leq 5 \cdot 10^{+304}:\\ \;\;\;\;1 \cdot x\\ \mathbf{else}:\\ \;\;\;\;z \cdot t\\ \end{array} \]
            10. Add Preprocessing

            Alternative 3: 65.8% accurate, 0.5× speedup?

            \[\begin{array}{l} y_m = \left|y\right| \\ \begin{array}{l} t_1 := \left(z \cdot y\_m\right) \cdot \left(\tanh \left(\frac{t}{y\_m}\right) - \tanh \left(\frac{x}{y\_m}\right)\right) + x\\ \mathbf{if}\;t\_1 \leq -\infty:\\ \;\;\;\;z \cdot t\\ \mathbf{elif}\;t\_1 \leq 5 \cdot 10^{+304}:\\ \;\;\;\;1 \cdot x\\ \mathbf{else}:\\ \;\;\;\;z \cdot t\\ \end{array} \end{array} \]
            y_m = (fabs.f64 y)
            (FPCore (x y_m z t)
             :precision binary64
             (let* ((t_1 (+ (* (* z y_m) (- (tanh (/ t y_m)) (tanh (/ x y_m)))) x)))
               (if (<= t_1 (- INFINITY)) (* z t) (if (<= t_1 5e+304) (* 1.0 x) (* z t)))))
            y_m = fabs(y);
            double code(double x, double y_m, double z, double t) {
            	double t_1 = ((z * y_m) * (tanh((t / y_m)) - tanh((x / y_m)))) + x;
            	double tmp;
            	if (t_1 <= -((double) INFINITY)) {
            		tmp = z * t;
            	} else if (t_1 <= 5e+304) {
            		tmp = 1.0 * x;
            	} else {
            		tmp = z * t;
            	}
            	return tmp;
            }
            
            y_m = Math.abs(y);
            public static double code(double x, double y_m, double z, double t) {
            	double t_1 = ((z * y_m) * (Math.tanh((t / y_m)) - Math.tanh((x / y_m)))) + x;
            	double tmp;
            	if (t_1 <= -Double.POSITIVE_INFINITY) {
            		tmp = z * t;
            	} else if (t_1 <= 5e+304) {
            		tmp = 1.0 * x;
            	} else {
            		tmp = z * t;
            	}
            	return tmp;
            }
            
            y_m = math.fabs(y)
            def code(x, y_m, z, t):
            	t_1 = ((z * y_m) * (math.tanh((t / y_m)) - math.tanh((x / y_m)))) + x
            	tmp = 0
            	if t_1 <= -math.inf:
            		tmp = z * t
            	elif t_1 <= 5e+304:
            		tmp = 1.0 * x
            	else:
            		tmp = z * t
            	return tmp
            
            y_m = abs(y)
            function code(x, y_m, z, t)
            	t_1 = Float64(Float64(Float64(z * y_m) * Float64(tanh(Float64(t / y_m)) - tanh(Float64(x / y_m)))) + x)
            	tmp = 0.0
            	if (t_1 <= Float64(-Inf))
            		tmp = Float64(z * t);
            	elseif (t_1 <= 5e+304)
            		tmp = Float64(1.0 * x);
            	else
            		tmp = Float64(z * t);
            	end
            	return tmp
            end
            
            y_m = abs(y);
            function tmp_2 = code(x, y_m, z, t)
            	t_1 = ((z * y_m) * (tanh((t / y_m)) - tanh((x / y_m)))) + x;
            	tmp = 0.0;
            	if (t_1 <= -Inf)
            		tmp = z * t;
            	elseif (t_1 <= 5e+304)
            		tmp = 1.0 * x;
            	else
            		tmp = z * t;
            	end
            	tmp_2 = tmp;
            end
            
            y_m = N[Abs[y], $MachinePrecision]
            code[x_, y$95$m_, z_, t_] := Block[{t$95$1 = N[(N[(N[(z * y$95$m), $MachinePrecision] * N[(N[Tanh[N[(t / y$95$m), $MachinePrecision]], $MachinePrecision] - N[Tanh[N[(x / y$95$m), $MachinePrecision]], $MachinePrecision]), $MachinePrecision]), $MachinePrecision] + x), $MachinePrecision]}, If[LessEqual[t$95$1, (-Infinity)], N[(z * t), $MachinePrecision], If[LessEqual[t$95$1, 5e+304], N[(1.0 * x), $MachinePrecision], N[(z * t), $MachinePrecision]]]]
            
            \begin{array}{l}
            y_m = \left|y\right|
            
            \\
            \begin{array}{l}
            t_1 := \left(z \cdot y\_m\right) \cdot \left(\tanh \left(\frac{t}{y\_m}\right) - \tanh \left(\frac{x}{y\_m}\right)\right) + x\\
            \mathbf{if}\;t\_1 \leq -\infty:\\
            \;\;\;\;z \cdot t\\
            
            \mathbf{elif}\;t\_1 \leq 5 \cdot 10^{+304}:\\
            \;\;\;\;1 \cdot x\\
            
            \mathbf{else}:\\
            \;\;\;\;z \cdot t\\
            
            
            \end{array}
            \end{array}
            
            Derivation
            1. Split input into 2 regimes
            2. if (+.f64 x (*.f64 (*.f64 y z) (-.f64 (tanh.f64 (/.f64 t y)) (tanh.f64 (/.f64 x y))))) < -inf.0 or 4.9999999999999997e304 < (+.f64 x (*.f64 (*.f64 y z) (-.f64 (tanh.f64 (/.f64 t y)) (tanh.f64 (/.f64 x y)))))

              1. Initial program 51.3%

                \[x + \left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) \]
              2. Add Preprocessing
              3. Taylor expanded in y around inf

                \[\leadsto \color{blue}{x + z \cdot \left(t - x\right)} \]
              4. Step-by-step derivation
                1. +-commutativeN/A

                  \[\leadsto \color{blue}{z \cdot \left(t - x\right) + x} \]
                2. *-commutativeN/A

                  \[\leadsto \color{blue}{\left(t - x\right) \cdot z} + x \]
                3. lower-fma.f64N/A

                  \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
                4. lower--.f6495.8

                  \[\leadsto \mathsf{fma}\left(\color{blue}{t - x}, z, x\right) \]
              5. Applied rewrites95.8%

                \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
              6. Taylor expanded in x around 0

                \[\leadsto t \cdot \color{blue}{z} \]
              7. Step-by-step derivation
                1. Applied rewrites63.8%

                  \[\leadsto z \cdot \color{blue}{t} \]

                if -inf.0 < (+.f64 x (*.f64 (*.f64 y z) (-.f64 (tanh.f64 (/.f64 t y)) (tanh.f64 (/.f64 x y))))) < 4.9999999999999997e304

                1. Initial program 99.3%

                  \[x + \left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) \]
                2. Add Preprocessing
                3. Taylor expanded in y around inf

                  \[\leadsto \color{blue}{x + z \cdot \left(t - x\right)} \]
                4. Step-by-step derivation
                  1. +-commutativeN/A

                    \[\leadsto \color{blue}{z \cdot \left(t - x\right) + x} \]
                  2. *-commutativeN/A

                    \[\leadsto \color{blue}{\left(t - x\right) \cdot z} + x \]
                  3. lower-fma.f64N/A

                    \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
                  4. lower--.f6453.6

                    \[\leadsto \mathsf{fma}\left(\color{blue}{t - x}, z, x\right) \]
                5. Applied rewrites53.6%

                  \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
                6. Taylor expanded in x around inf

                  \[\leadsto x \cdot \color{blue}{\left(1 + -1 \cdot z\right)} \]
                7. Step-by-step derivation
                  1. Applied rewrites53.1%

                    \[\leadsto \left(1 - z\right) \cdot \color{blue}{x} \]
                  2. Taylor expanded in z around 0

                    \[\leadsto 1 \cdot x \]
                  3. Step-by-step derivation
                    1. Applied rewrites70.0%

                      \[\leadsto 1 \cdot x \]
                  4. Recombined 2 regimes into one program.
                  5. Final simplification69.1%

                    \[\leadsto \begin{array}{l} \mathbf{if}\;\left(z \cdot y\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) + x \leq -\infty:\\ \;\;\;\;z \cdot t\\ \mathbf{elif}\;\left(z \cdot y\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) + x \leq 5 \cdot 10^{+304}:\\ \;\;\;\;1 \cdot x\\ \mathbf{else}:\\ \;\;\;\;z \cdot t\\ \end{array} \]
                  6. Add Preprocessing

                  Alternative 4: 79.8% accurate, 1.6× speedup?

                  \[\begin{array}{l} y_m = \left|y\right| \\ \begin{array}{l} \mathbf{if}\;y\_m \leq 6800:\\ \;\;\;\;1 \cdot x\\ \mathbf{elif}\;y\_m \leq 1.08 \cdot 10^{+185}:\\ \;\;\;\;\mathsf{fma}\left(\left(\frac{t}{y\_m} - \tanh \left(\frac{x}{y\_m}\right)\right) \cdot z, y\_m, x\right)\\ \mathbf{else}:\\ \;\;\;\;\mathsf{fma}\left(t - x, z, x\right)\\ \end{array} \end{array} \]
                  y_m = (fabs.f64 y)
                  (FPCore (x y_m z t)
                   :precision binary64
                   (if (<= y_m 6800.0)
                     (* 1.0 x)
                     (if (<= y_m 1.08e+185)
                       (fma (* (- (/ t y_m) (tanh (/ x y_m))) z) y_m x)
                       (fma (- t x) z x))))
                  y_m = fabs(y);
                  double code(double x, double y_m, double z, double t) {
                  	double tmp;
                  	if (y_m <= 6800.0) {
                  		tmp = 1.0 * x;
                  	} else if (y_m <= 1.08e+185) {
                  		tmp = fma((((t / y_m) - tanh((x / y_m))) * z), y_m, x);
                  	} else {
                  		tmp = fma((t - x), z, x);
                  	}
                  	return tmp;
                  }
                  
                  y_m = abs(y)
                  function code(x, y_m, z, t)
                  	tmp = 0.0
                  	if (y_m <= 6800.0)
                  		tmp = Float64(1.0 * x);
                  	elseif (y_m <= 1.08e+185)
                  		tmp = fma(Float64(Float64(Float64(t / y_m) - tanh(Float64(x / y_m))) * z), y_m, x);
                  	else
                  		tmp = fma(Float64(t - x), z, x);
                  	end
                  	return tmp
                  end
                  
                  y_m = N[Abs[y], $MachinePrecision]
                  code[x_, y$95$m_, z_, t_] := If[LessEqual[y$95$m, 6800.0], N[(1.0 * x), $MachinePrecision], If[LessEqual[y$95$m, 1.08e+185], N[(N[(N[(N[(t / y$95$m), $MachinePrecision] - N[Tanh[N[(x / y$95$m), $MachinePrecision]], $MachinePrecision]), $MachinePrecision] * z), $MachinePrecision] * y$95$m + x), $MachinePrecision], N[(N[(t - x), $MachinePrecision] * z + x), $MachinePrecision]]]
                  
                  \begin{array}{l}
                  y_m = \left|y\right|
                  
                  \\
                  \begin{array}{l}
                  \mathbf{if}\;y\_m \leq 6800:\\
                  \;\;\;\;1 \cdot x\\
                  
                  \mathbf{elif}\;y\_m \leq 1.08 \cdot 10^{+185}:\\
                  \;\;\;\;\mathsf{fma}\left(\left(\frac{t}{y\_m} - \tanh \left(\frac{x}{y\_m}\right)\right) \cdot z, y\_m, x\right)\\
                  
                  \mathbf{else}:\\
                  \;\;\;\;\mathsf{fma}\left(t - x, z, x\right)\\
                  
                  
                  \end{array}
                  \end{array}
                  
                  Derivation
                  1. Split input into 3 regimes
                  2. if y < 6800

                    1. Initial program 95.1%

                      \[x + \left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) \]
                    2. Add Preprocessing
                    3. Taylor expanded in y around inf

                      \[\leadsto \color{blue}{x + z \cdot \left(t - x\right)} \]
                    4. Step-by-step derivation
                      1. +-commutativeN/A

                        \[\leadsto \color{blue}{z \cdot \left(t - x\right) + x} \]
                      2. *-commutativeN/A

                        \[\leadsto \color{blue}{\left(t - x\right) \cdot z} + x \]
                      3. lower-fma.f64N/A

                        \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
                      4. lower--.f6451.9

                        \[\leadsto \mathsf{fma}\left(\color{blue}{t - x}, z, x\right) \]
                    5. Applied rewrites51.9%

                      \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
                    6. Taylor expanded in x around inf

                      \[\leadsto x \cdot \color{blue}{\left(1 + -1 \cdot z\right)} \]
                    7. Step-by-step derivation
                      1. Applied rewrites51.4%

                        \[\leadsto \left(1 - z\right) \cdot \color{blue}{x} \]
                      2. Taylor expanded in z around 0

                        \[\leadsto 1 \cdot x \]
                      3. Step-by-step derivation
                        1. Applied rewrites69.2%

                          \[\leadsto 1 \cdot x \]

                        if 6800 < y < 1.08e185

                        1. Initial program 93.6%

                          \[x + \left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) \]
                        2. Add Preprocessing
                        3. Taylor expanded in y around inf

                          \[\leadsto x + \left(y \cdot z\right) \cdot \left(\color{blue}{\frac{t}{y}} - \tanh \left(\frac{x}{y}\right)\right) \]
                        4. Step-by-step derivation
                          1. lower-/.f6476.9

                            \[\leadsto x + \left(y \cdot z\right) \cdot \left(\color{blue}{\frac{t}{y}} - \tanh \left(\frac{x}{y}\right)\right) \]
                        5. Applied rewrites76.9%

                          \[\leadsto x + \left(y \cdot z\right) \cdot \left(\color{blue}{\frac{t}{y}} - \tanh \left(\frac{x}{y}\right)\right) \]
                        6. Step-by-step derivation
                          1. lift-+.f64N/A

                            \[\leadsto \color{blue}{x + \left(y \cdot z\right) \cdot \left(\frac{t}{y} - \tanh \left(\frac{x}{y}\right)\right)} \]
                          2. +-commutativeN/A

                            \[\leadsto \color{blue}{\left(y \cdot z\right) \cdot \left(\frac{t}{y} - \tanh \left(\frac{x}{y}\right)\right) + x} \]
                          3. lift-*.f64N/A

                            \[\leadsto \color{blue}{\left(y \cdot z\right) \cdot \left(\frac{t}{y} - \tanh \left(\frac{x}{y}\right)\right)} + x \]
                          4. lift-*.f64N/A

                            \[\leadsto \color{blue}{\left(y \cdot z\right)} \cdot \left(\frac{t}{y} - \tanh \left(\frac{x}{y}\right)\right) + x \]
                          5. associate-*l*N/A

                            \[\leadsto \color{blue}{y \cdot \left(z \cdot \left(\frac{t}{y} - \tanh \left(\frac{x}{y}\right)\right)\right)} + x \]
                          6. *-commutativeN/A

                            \[\leadsto \color{blue}{\left(z \cdot \left(\frac{t}{y} - \tanh \left(\frac{x}{y}\right)\right)\right) \cdot y} + x \]
                          7. lower-fma.f64N/A

                            \[\leadsto \color{blue}{\mathsf{fma}\left(z \cdot \left(\frac{t}{y} - \tanh \left(\frac{x}{y}\right)\right), y, x\right)} \]
                          8. *-commutativeN/A

                            \[\leadsto \mathsf{fma}\left(\color{blue}{\left(\frac{t}{y} - \tanh \left(\frac{x}{y}\right)\right) \cdot z}, y, x\right) \]
                          9. lower-*.f6483.1

                            \[\leadsto \mathsf{fma}\left(\color{blue}{\left(\frac{t}{y} - \tanh \left(\frac{x}{y}\right)\right) \cdot z}, y, x\right) \]
                        7. Applied rewrites83.1%

                          \[\leadsto \color{blue}{\mathsf{fma}\left(\left(\frac{t}{y} - \tanh \left(\frac{x}{y}\right)\right) \cdot z, y, x\right)} \]

                        if 1.08e185 < y

                        1. Initial program 71.8%

                          \[x + \left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) \]
                        2. Add Preprocessing
                        3. Taylor expanded in y around inf

                          \[\leadsto \color{blue}{x + z \cdot \left(t - x\right)} \]
                        4. Step-by-step derivation
                          1. +-commutativeN/A

                            \[\leadsto \color{blue}{z \cdot \left(t - x\right) + x} \]
                          2. *-commutativeN/A

                            \[\leadsto \color{blue}{\left(t - x\right) \cdot z} + x \]
                          3. lower-fma.f64N/A

                            \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
                          4. lower--.f6494.0

                            \[\leadsto \mathsf{fma}\left(\color{blue}{t - x}, z, x\right) \]
                        5. Applied rewrites94.0%

                          \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
                      4. Recombined 3 regimes into one program.
                      5. Add Preprocessing

                      Alternative 5: 81.0% accurate, 1.7× speedup?

                      \[\begin{array}{l} y_m = \left|y\right| \\ \begin{array}{l} \mathbf{if}\;y\_m \leq 5.8 \cdot 10^{+20}:\\ \;\;\;\;1 \cdot x\\ \mathbf{else}:\\ \;\;\;\;\mathsf{fma}\left(\left(\tanh \left(\frac{t}{y\_m}\right) - \frac{x}{y\_m}\right) \cdot y\_m, z, x\right)\\ \end{array} \end{array} \]
                      y_m = (fabs.f64 y)
                      (FPCore (x y_m z t)
                       :precision binary64
                       (if (<= y_m 5.8e+20)
                         (* 1.0 x)
                         (fma (* (- (tanh (/ t y_m)) (/ x y_m)) y_m) z x)))
                      y_m = fabs(y);
                      double code(double x, double y_m, double z, double t) {
                      	double tmp;
                      	if (y_m <= 5.8e+20) {
                      		tmp = 1.0 * x;
                      	} else {
                      		tmp = fma(((tanh((t / y_m)) - (x / y_m)) * y_m), z, x);
                      	}
                      	return tmp;
                      }
                      
                      y_m = abs(y)
                      function code(x, y_m, z, t)
                      	tmp = 0.0
                      	if (y_m <= 5.8e+20)
                      		tmp = Float64(1.0 * x);
                      	else
                      		tmp = fma(Float64(Float64(tanh(Float64(t / y_m)) - Float64(x / y_m)) * y_m), z, x);
                      	end
                      	return tmp
                      end
                      
                      y_m = N[Abs[y], $MachinePrecision]
                      code[x_, y$95$m_, z_, t_] := If[LessEqual[y$95$m, 5.8e+20], N[(1.0 * x), $MachinePrecision], N[(N[(N[(N[Tanh[N[(t / y$95$m), $MachinePrecision]], $MachinePrecision] - N[(x / y$95$m), $MachinePrecision]), $MachinePrecision] * y$95$m), $MachinePrecision] * z + x), $MachinePrecision]]
                      
                      \begin{array}{l}
                      y_m = \left|y\right|
                      
                      \\
                      \begin{array}{l}
                      \mathbf{if}\;y\_m \leq 5.8 \cdot 10^{+20}:\\
                      \;\;\;\;1 \cdot x\\
                      
                      \mathbf{else}:\\
                      \;\;\;\;\mathsf{fma}\left(\left(\tanh \left(\frac{t}{y\_m}\right) - \frac{x}{y\_m}\right) \cdot y\_m, z, x\right)\\
                      
                      
                      \end{array}
                      \end{array}
                      
                      Derivation
                      1. Split input into 2 regimes
                      2. if y < 5.8e20

                        1. Initial program 95.1%

                          \[x + \left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) \]
                        2. Add Preprocessing
                        3. Taylor expanded in y around inf

                          \[\leadsto \color{blue}{x + z \cdot \left(t - x\right)} \]
                        4. Step-by-step derivation
                          1. +-commutativeN/A

                            \[\leadsto \color{blue}{z \cdot \left(t - x\right) + x} \]
                          2. *-commutativeN/A

                            \[\leadsto \color{blue}{\left(t - x\right) \cdot z} + x \]
                          3. lower-fma.f64N/A

                            \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
                          4. lower--.f6451.9

                            \[\leadsto \mathsf{fma}\left(\color{blue}{t - x}, z, x\right) \]
                        5. Applied rewrites51.9%

                          \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
                        6. Taylor expanded in x around inf

                          \[\leadsto x \cdot \color{blue}{\left(1 + -1 \cdot z\right)} \]
                        7. Step-by-step derivation
                          1. Applied rewrites50.9%

                            \[\leadsto \left(1 - z\right) \cdot \color{blue}{x} \]
                          2. Taylor expanded in z around 0

                            \[\leadsto 1 \cdot x \]
                          3. Step-by-step derivation
                            1. Applied rewrites69.0%

                              \[\leadsto 1 \cdot x \]

                            if 5.8e20 < y

                            1. Initial program 85.8%

                              \[x + \left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) \]
                            2. Add Preprocessing
                            3. Taylor expanded in x around 0

                              \[\leadsto x + \left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \color{blue}{\frac{x}{y}}\right) \]
                            4. Step-by-step derivation
                              1. lower-/.f6480.3

                                \[\leadsto x + \left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \color{blue}{\frac{x}{y}}\right) \]
                            5. Applied rewrites80.3%

                              \[\leadsto x + \left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \color{blue}{\frac{x}{y}}\right) \]
                            6. Step-by-step derivation
                              1. lift-+.f64N/A

                                \[\leadsto \color{blue}{x + \left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \frac{x}{y}\right)} \]
                              2. +-commutativeN/A

                                \[\leadsto \color{blue}{\left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \frac{x}{y}\right) + x} \]
                              3. lift-*.f64N/A

                                \[\leadsto \color{blue}{\left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \frac{x}{y}\right)} + x \]
                              4. *-commutativeN/A

                                \[\leadsto \color{blue}{\left(\tanh \left(\frac{t}{y}\right) - \frac{x}{y}\right) \cdot \left(y \cdot z\right)} + x \]
                              5. lift-*.f64N/A

                                \[\leadsto \left(\tanh \left(\frac{t}{y}\right) - \frac{x}{y}\right) \cdot \color{blue}{\left(y \cdot z\right)} + x \]
                              6. associate-*r*N/A

                                \[\leadsto \color{blue}{\left(\left(\tanh \left(\frac{t}{y}\right) - \frac{x}{y}\right) \cdot y\right) \cdot z} + x \]
                              7. lower-fma.f64N/A

                                \[\leadsto \color{blue}{\mathsf{fma}\left(\left(\tanh \left(\frac{t}{y}\right) - \frac{x}{y}\right) \cdot y, z, x\right)} \]
                              8. lower-*.f6493.7

                                \[\leadsto \mathsf{fma}\left(\color{blue}{\left(\tanh \left(\frac{t}{y}\right) - \frac{x}{y}\right) \cdot y}, z, x\right) \]
                            7. Applied rewrites93.7%

                              \[\leadsto \color{blue}{\mathsf{fma}\left(\left(\tanh \left(\frac{t}{y}\right) - \frac{x}{y}\right) \cdot y, z, x\right)} \]
                          4. Recombined 2 regimes into one program.
                          5. Add Preprocessing

                          Alternative 6: 78.0% accurate, 14.9× speedup?

                          \[\begin{array}{l} y_m = \left|y\right| \\ \begin{array}{l} \mathbf{if}\;y\_m \leq 8.5 \cdot 10^{+20}:\\ \;\;\;\;1 \cdot x\\ \mathbf{else}:\\ \;\;\;\;\mathsf{fma}\left(t - x, z, x\right)\\ \end{array} \end{array} \]
                          y_m = (fabs.f64 y)
                          (FPCore (x y_m z t)
                           :precision binary64
                           (if (<= y_m 8.5e+20) (* 1.0 x) (fma (- t x) z x)))
                          y_m = fabs(y);
                          double code(double x, double y_m, double z, double t) {
                          	double tmp;
                          	if (y_m <= 8.5e+20) {
                          		tmp = 1.0 * x;
                          	} else {
                          		tmp = fma((t - x), z, x);
                          	}
                          	return tmp;
                          }
                          
                          y_m = abs(y)
                          function code(x, y_m, z, t)
                          	tmp = 0.0
                          	if (y_m <= 8.5e+20)
                          		tmp = Float64(1.0 * x);
                          	else
                          		tmp = fma(Float64(t - x), z, x);
                          	end
                          	return tmp
                          end
                          
                          y_m = N[Abs[y], $MachinePrecision]
                          code[x_, y$95$m_, z_, t_] := If[LessEqual[y$95$m, 8.5e+20], N[(1.0 * x), $MachinePrecision], N[(N[(t - x), $MachinePrecision] * z + x), $MachinePrecision]]
                          
                          \begin{array}{l}
                          y_m = \left|y\right|
                          
                          \\
                          \begin{array}{l}
                          \mathbf{if}\;y\_m \leq 8.5 \cdot 10^{+20}:\\
                          \;\;\;\;1 \cdot x\\
                          
                          \mathbf{else}:\\
                          \;\;\;\;\mathsf{fma}\left(t - x, z, x\right)\\
                          
                          
                          \end{array}
                          \end{array}
                          
                          Derivation
                          1. Split input into 2 regimes
                          2. if y < 8.5e20

                            1. Initial program 95.1%

                              \[x + \left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) \]
                            2. Add Preprocessing
                            3. Taylor expanded in y around inf

                              \[\leadsto \color{blue}{x + z \cdot \left(t - x\right)} \]
                            4. Step-by-step derivation
                              1. +-commutativeN/A

                                \[\leadsto \color{blue}{z \cdot \left(t - x\right) + x} \]
                              2. *-commutativeN/A

                                \[\leadsto \color{blue}{\left(t - x\right) \cdot z} + x \]
                              3. lower-fma.f64N/A

                                \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
                              4. lower--.f6451.9

                                \[\leadsto \mathsf{fma}\left(\color{blue}{t - x}, z, x\right) \]
                            5. Applied rewrites51.9%

                              \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
                            6. Taylor expanded in x around inf

                              \[\leadsto x \cdot \color{blue}{\left(1 + -1 \cdot z\right)} \]
                            7. Step-by-step derivation
                              1. Applied rewrites50.9%

                                \[\leadsto \left(1 - z\right) \cdot \color{blue}{x} \]
                              2. Taylor expanded in z around 0

                                \[\leadsto 1 \cdot x \]
                              3. Step-by-step derivation
                                1. Applied rewrites69.0%

                                  \[\leadsto 1 \cdot x \]

                                if 8.5e20 < y

                                1. Initial program 85.8%

                                  \[x + \left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) \]
                                2. Add Preprocessing
                                3. Taylor expanded in y around inf

                                  \[\leadsto \color{blue}{x + z \cdot \left(t - x\right)} \]
                                4. Step-by-step derivation
                                  1. +-commutativeN/A

                                    \[\leadsto \color{blue}{z \cdot \left(t - x\right) + x} \]
                                  2. *-commutativeN/A

                                    \[\leadsto \color{blue}{\left(t - x\right) \cdot z} + x \]
                                  3. lower-fma.f64N/A

                                    \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
                                  4. lower--.f6481.0

                                    \[\leadsto \mathsf{fma}\left(\color{blue}{t - x}, z, x\right) \]
                                5. Applied rewrites81.0%

                                  \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
                              4. Recombined 2 regimes into one program.
                              5. Add Preprocessing

                              Alternative 7: 66.3% accurate, 15.9× speedup?

                              \[\begin{array}{l} y_m = \left|y\right| \\ \begin{array}{l} \mathbf{if}\;y\_m \leq 1.35 \cdot 10^{+21}:\\ \;\;\;\;1 \cdot x\\ \mathbf{else}:\\ \;\;\;\;\left(1 - z\right) \cdot x\\ \end{array} \end{array} \]
                              y_m = (fabs.f64 y)
                              (FPCore (x y_m z t)
                               :precision binary64
                               (if (<= y_m 1.35e+21) (* 1.0 x) (* (- 1.0 z) x)))
                              y_m = fabs(y);
                              double code(double x, double y_m, double z, double t) {
                              	double tmp;
                              	if (y_m <= 1.35e+21) {
                              		tmp = 1.0 * x;
                              	} else {
                              		tmp = (1.0 - z) * x;
                              	}
                              	return tmp;
                              }
                              
                              y_m = abs(y)
                              real(8) function code(x, y_m, z, t)
                                  real(8), intent (in) :: x
                                  real(8), intent (in) :: y_m
                                  real(8), intent (in) :: z
                                  real(8), intent (in) :: t
                                  real(8) :: tmp
                                  if (y_m <= 1.35d+21) then
                                      tmp = 1.0d0 * x
                                  else
                                      tmp = (1.0d0 - z) * x
                                  end if
                                  code = tmp
                              end function
                              
                              y_m = Math.abs(y);
                              public static double code(double x, double y_m, double z, double t) {
                              	double tmp;
                              	if (y_m <= 1.35e+21) {
                              		tmp = 1.0 * x;
                              	} else {
                              		tmp = (1.0 - z) * x;
                              	}
                              	return tmp;
                              }
                              
                              y_m = math.fabs(y)
                              def code(x, y_m, z, t):
                              	tmp = 0
                              	if y_m <= 1.35e+21:
                              		tmp = 1.0 * x
                              	else:
                              		tmp = (1.0 - z) * x
                              	return tmp
                              
                              y_m = abs(y)
                              function code(x, y_m, z, t)
                              	tmp = 0.0
                              	if (y_m <= 1.35e+21)
                              		tmp = Float64(1.0 * x);
                              	else
                              		tmp = Float64(Float64(1.0 - z) * x);
                              	end
                              	return tmp
                              end
                              
                              y_m = abs(y);
                              function tmp_2 = code(x, y_m, z, t)
                              	tmp = 0.0;
                              	if (y_m <= 1.35e+21)
                              		tmp = 1.0 * x;
                              	else
                              		tmp = (1.0 - z) * x;
                              	end
                              	tmp_2 = tmp;
                              end
                              
                              y_m = N[Abs[y], $MachinePrecision]
                              code[x_, y$95$m_, z_, t_] := If[LessEqual[y$95$m, 1.35e+21], N[(1.0 * x), $MachinePrecision], N[(N[(1.0 - z), $MachinePrecision] * x), $MachinePrecision]]
                              
                              \begin{array}{l}
                              y_m = \left|y\right|
                              
                              \\
                              \begin{array}{l}
                              \mathbf{if}\;y\_m \leq 1.35 \cdot 10^{+21}:\\
                              \;\;\;\;1 \cdot x\\
                              
                              \mathbf{else}:\\
                              \;\;\;\;\left(1 - z\right) \cdot x\\
                              
                              
                              \end{array}
                              \end{array}
                              
                              Derivation
                              1. Split input into 2 regimes
                              2. if y < 1.35e21

                                1. Initial program 95.1%

                                  \[x + \left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) \]
                                2. Add Preprocessing
                                3. Taylor expanded in y around inf

                                  \[\leadsto \color{blue}{x + z \cdot \left(t - x\right)} \]
                                4. Step-by-step derivation
                                  1. +-commutativeN/A

                                    \[\leadsto \color{blue}{z \cdot \left(t - x\right) + x} \]
                                  2. *-commutativeN/A

                                    \[\leadsto \color{blue}{\left(t - x\right) \cdot z} + x \]
                                  3. lower-fma.f64N/A

                                    \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
                                  4. lower--.f6451.9

                                    \[\leadsto \mathsf{fma}\left(\color{blue}{t - x}, z, x\right) \]
                                5. Applied rewrites51.9%

                                  \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
                                6. Taylor expanded in x around inf

                                  \[\leadsto x \cdot \color{blue}{\left(1 + -1 \cdot z\right)} \]
                                7. Step-by-step derivation
                                  1. Applied rewrites50.9%

                                    \[\leadsto \left(1 - z\right) \cdot \color{blue}{x} \]
                                  2. Taylor expanded in z around 0

                                    \[\leadsto 1 \cdot x \]
                                  3. Step-by-step derivation
                                    1. Applied rewrites69.0%

                                      \[\leadsto 1 \cdot x \]

                                    if 1.35e21 < y

                                    1. Initial program 85.8%

                                      \[x + \left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) \]
                                    2. Add Preprocessing
                                    3. Taylor expanded in y around inf

                                      \[\leadsto \color{blue}{x + z \cdot \left(t - x\right)} \]
                                    4. Step-by-step derivation
                                      1. +-commutativeN/A

                                        \[\leadsto \color{blue}{z \cdot \left(t - x\right) + x} \]
                                      2. *-commutativeN/A

                                        \[\leadsto \color{blue}{\left(t - x\right) \cdot z} + x \]
                                      3. lower-fma.f64N/A

                                        \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
                                      4. lower--.f6481.0

                                        \[\leadsto \mathsf{fma}\left(\color{blue}{t - x}, z, x\right) \]
                                    5. Applied rewrites81.0%

                                      \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
                                    6. Taylor expanded in x around inf

                                      \[\leadsto x \cdot \color{blue}{\left(1 + -1 \cdot z\right)} \]
                                    7. Step-by-step derivation
                                      1. Applied rewrites57.3%

                                        \[\leadsto \left(1 - z\right) \cdot \color{blue}{x} \]
                                    8. Recombined 2 regimes into one program.
                                    9. Add Preprocessing

                                    Alternative 8: 17.8% accurate, 39.8× speedup?

                                    \[\begin{array}{l} y_m = \left|y\right| \\ z \cdot t \end{array} \]
                                    y_m = (fabs.f64 y)
                                    (FPCore (x y_m z t) :precision binary64 (* z t))
                                    y_m = fabs(y);
                                    double code(double x, double y_m, double z, double t) {
                                    	return z * t;
                                    }
                                    
                                    y_m = abs(y)
                                    real(8) function code(x, y_m, z, t)
                                        real(8), intent (in) :: x
                                        real(8), intent (in) :: y_m
                                        real(8), intent (in) :: z
                                        real(8), intent (in) :: t
                                        code = z * t
                                    end function
                                    
                                    y_m = Math.abs(y);
                                    public static double code(double x, double y_m, double z, double t) {
                                    	return z * t;
                                    }
                                    
                                    y_m = math.fabs(y)
                                    def code(x, y_m, z, t):
                                    	return z * t
                                    
                                    y_m = abs(y)
                                    function code(x, y_m, z, t)
                                    	return Float64(z * t)
                                    end
                                    
                                    y_m = abs(y);
                                    function tmp = code(x, y_m, z, t)
                                    	tmp = z * t;
                                    end
                                    
                                    y_m = N[Abs[y], $MachinePrecision]
                                    code[x_, y$95$m_, z_, t_] := N[(z * t), $MachinePrecision]
                                    
                                    \begin{array}{l}
                                    y_m = \left|y\right|
                                    
                                    \\
                                    z \cdot t
                                    \end{array}
                                    
                                    Derivation
                                    1. Initial program 92.7%

                                      \[x + \left(y \cdot z\right) \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right) \]
                                    2. Add Preprocessing
                                    3. Taylor expanded in y around inf

                                      \[\leadsto \color{blue}{x + z \cdot \left(t - x\right)} \]
                                    4. Step-by-step derivation
                                      1. +-commutativeN/A

                                        \[\leadsto \color{blue}{z \cdot \left(t - x\right) + x} \]
                                      2. *-commutativeN/A

                                        \[\leadsto \color{blue}{\left(t - x\right) \cdot z} + x \]
                                      3. lower-fma.f64N/A

                                        \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
                                      4. lower--.f6459.4

                                        \[\leadsto \mathsf{fma}\left(\color{blue}{t - x}, z, x\right) \]
                                    5. Applied rewrites59.4%

                                      \[\leadsto \color{blue}{\mathsf{fma}\left(t - x, z, x\right)} \]
                                    6. Taylor expanded in x around 0

                                      \[\leadsto t \cdot \color{blue}{z} \]
                                    7. Step-by-step derivation
                                      1. Applied rewrites19.7%

                                        \[\leadsto z \cdot \color{blue}{t} \]
                                      2. Add Preprocessing

                                      Developer Target 1: 97.1% accurate, 1.0× speedup?

                                      \[\begin{array}{l} \\ x + y \cdot \left(z \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right)\right) \end{array} \]
                                      (FPCore (x y z t)
                                       :precision binary64
                                       (+ x (* y (* z (- (tanh (/ t y)) (tanh (/ x y)))))))
                                      double code(double x, double y, double z, double t) {
                                      	return x + (y * (z * (tanh((t / y)) - tanh((x / y)))));
                                      }
                                      
                                      real(8) function code(x, y, z, t)
                                          real(8), intent (in) :: x
                                          real(8), intent (in) :: y
                                          real(8), intent (in) :: z
                                          real(8), intent (in) :: t
                                          code = x + (y * (z * (tanh((t / y)) - tanh((x / y)))))
                                      end function
                                      
                                      public static double code(double x, double y, double z, double t) {
                                      	return x + (y * (z * (Math.tanh((t / y)) - Math.tanh((x / y)))));
                                      }
                                      
                                      def code(x, y, z, t):
                                      	return x + (y * (z * (math.tanh((t / y)) - math.tanh((x / y)))))
                                      
                                      function code(x, y, z, t)
                                      	return Float64(x + Float64(y * Float64(z * Float64(tanh(Float64(t / y)) - tanh(Float64(x / y))))))
                                      end
                                      
                                      function tmp = code(x, y, z, t)
                                      	tmp = x + (y * (z * (tanh((t / y)) - tanh((x / y)))));
                                      end
                                      
                                      code[x_, y_, z_, t_] := N[(x + N[(y * N[(z * N[(N[Tanh[N[(t / y), $MachinePrecision]], $MachinePrecision] - N[Tanh[N[(x / y), $MachinePrecision]], $MachinePrecision]), $MachinePrecision]), $MachinePrecision]), $MachinePrecision]), $MachinePrecision]
                                      
                                      \begin{array}{l}
                                      
                                      \\
                                      x + y \cdot \left(z \cdot \left(\tanh \left(\frac{t}{y}\right) - \tanh \left(\frac{x}{y}\right)\right)\right)
                                      \end{array}
                                      

                                      Reproduce

                                      ?
                                      herbie shell --seed 2024295 
                                      (FPCore (x y z t)
                                        :name "SynthBasics:moogVCF from YampaSynth-0.2"
                                        :precision binary64
                                      
                                        :alt
                                        (! :herbie-platform default (+ x (* y (* z (- (tanh (/ t y)) (tanh (/ x y)))))))
                                      
                                        (+ x (* (* y z) (- (tanh (/ t y)) (tanh (/ x y))))))