Rust f64::atanh

Percentage Accurate: 100.0% → 100.0%
Time: 4.6s
Alternatives: 7
Speedup: 1.0×

Specification

?
\[\begin{array}{l} \\ \tanh^{-1} x \end{array} \]
(FPCore (x) :precision binary64 (atanh x))
double code(double x) {
	return atanh(x);
}
def code(x):
	return math.atanh(x)
function code(x)
	return atanh(x)
end
function tmp = code(x)
	tmp = atanh(x);
end
code[x_] := N[ArcTanh[x], $MachinePrecision]
\begin{array}{l}

\\
\tanh^{-1} x
\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 7 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: 100.0% accurate, 1.0× speedup?

\[\begin{array}{l} \\ 0.5 \cdot \mathsf{log1p}\left(\frac{2 \cdot x}{1 - x}\right) \end{array} \]
(FPCore (x) :precision binary64 (* 0.5 (log1p (/ (* 2.0 x) (- 1.0 x)))))
double code(double x) {
	return 0.5 * log1p(((2.0 * x) / (1.0 - x)));
}
public static double code(double x) {
	return 0.5 * Math.log1p(((2.0 * x) / (1.0 - x)));
}
def code(x):
	return 0.5 * math.log1p(((2.0 * x) / (1.0 - x)))
function code(x)
	return Float64(0.5 * log1p(Float64(Float64(2.0 * x) / Float64(1.0 - x))))
end
code[x_] := N[(0.5 * N[Log[1 + N[(N[(2.0 * x), $MachinePrecision] / N[(1.0 - x), $MachinePrecision]), $MachinePrecision]], $MachinePrecision]), $MachinePrecision]
\begin{array}{l}

\\
0.5 \cdot \mathsf{log1p}\left(\frac{2 \cdot x}{1 - x}\right)
\end{array}

Alternative 1: 100.0% accurate, 1.0× speedup?

\[\begin{array}{l} \\ 0.5 \cdot \mathsf{log1p}\left(\frac{x + x}{1 - x}\right) \end{array} \]
(FPCore (x) :precision binary64 (* 0.5 (log1p (/ (+ x x) (- 1.0 x)))))
double code(double x) {
	return 0.5 * log1p(((x + x) / (1.0 - x)));
}
public static double code(double x) {
	return 0.5 * Math.log1p(((x + x) / (1.0 - x)));
}
def code(x):
	return 0.5 * math.log1p(((x + x) / (1.0 - x)))
function code(x)
	return Float64(0.5 * log1p(Float64(Float64(x + x) / Float64(1.0 - x))))
end
code[x_] := N[(0.5 * N[Log[1 + N[(N[(x + x), $MachinePrecision] / N[(1.0 - x), $MachinePrecision]), $MachinePrecision]], $MachinePrecision]), $MachinePrecision]
\begin{array}{l}

\\
0.5 \cdot \mathsf{log1p}\left(\frac{x + x}{1 - x}\right)
\end{array}
Derivation
  1. Initial program 100.0%

    \[0.5 \cdot \mathsf{log1p}\left(\frac{2 \cdot x}{1 - x}\right) \]
  2. Add Preprocessing
  3. Step-by-step derivation
    1. lift-*.f64N/A

      \[\leadsto \frac{1}{2} \cdot \mathsf{log1p}\left(\frac{\color{blue}{2 \cdot x}}{1 - x}\right) \]
    2. count-2-revN/A

      \[\leadsto \frac{1}{2} \cdot \mathsf{log1p}\left(\frac{\color{blue}{x + x}}{1 - x}\right) \]
    3. lower-+.f64100.0

      \[\leadsto 0.5 \cdot \mathsf{log1p}\left(\frac{\color{blue}{x + x}}{1 - x}\right) \]
  4. Applied rewrites100.0%

    \[\leadsto 0.5 \cdot \mathsf{log1p}\left(\frac{\color{blue}{x + x}}{1 - x}\right) \]
  5. Add Preprocessing

Alternative 2: 99.8% accurate, 2.8× speedup?

\[\begin{array}{l} \\ 0.5 \cdot \left(\mathsf{fma}\left(\mathsf{fma}\left(\mathsf{fma}\left(0.2857142857142857, x \cdot x, 0.4\right), x \cdot x, 0.6666666666666666\right), x \cdot x, 2\right) \cdot x\right) \end{array} \]
(FPCore (x)
 :precision binary64
 (*
  0.5
  (*
   (fma
    (fma (fma 0.2857142857142857 (* x x) 0.4) (* x x) 0.6666666666666666)
    (* x x)
    2.0)
   x)))
double code(double x) {
	return 0.5 * (fma(fma(fma(0.2857142857142857, (x * x), 0.4), (x * x), 0.6666666666666666), (x * x), 2.0) * x);
}
function code(x)
	return Float64(0.5 * Float64(fma(fma(fma(0.2857142857142857, Float64(x * x), 0.4), Float64(x * x), 0.6666666666666666), Float64(x * x), 2.0) * x))
end
code[x_] := N[(0.5 * N[(N[(N[(N[(0.2857142857142857 * N[(x * x), $MachinePrecision] + 0.4), $MachinePrecision] * N[(x * x), $MachinePrecision] + 0.6666666666666666), $MachinePrecision] * N[(x * x), $MachinePrecision] + 2.0), $MachinePrecision] * x), $MachinePrecision]), $MachinePrecision]
\begin{array}{l}

\\
0.5 \cdot \left(\mathsf{fma}\left(\mathsf{fma}\left(\mathsf{fma}\left(0.2857142857142857, x \cdot x, 0.4\right), x \cdot x, 0.6666666666666666\right), x \cdot x, 2\right) \cdot x\right)
\end{array}
Derivation
  1. Initial program 100.0%

    \[0.5 \cdot \mathsf{log1p}\left(\frac{2 \cdot x}{1 - x}\right) \]
  2. Add Preprocessing
  3. Taylor expanded in x around 0

    \[\leadsto \frac{1}{2} \cdot \color{blue}{\left(x \cdot \left(2 + {x}^{2} \cdot \left(\frac{2}{3} + {x}^{2} \cdot \left(\frac{2}{5} + \frac{2}{7} \cdot {x}^{2}\right)\right)\right)\right)} \]
  4. Step-by-step derivation
    1. *-commutativeN/A

      \[\leadsto \frac{1}{2} \cdot \color{blue}{\left(\left(2 + {x}^{2} \cdot \left(\frac{2}{3} + {x}^{2} \cdot \left(\frac{2}{5} + \frac{2}{7} \cdot {x}^{2}\right)\right)\right) \cdot x\right)} \]
    2. lower-*.f64N/A

      \[\leadsto \frac{1}{2} \cdot \color{blue}{\left(\left(2 + {x}^{2} \cdot \left(\frac{2}{3} + {x}^{2} \cdot \left(\frac{2}{5} + \frac{2}{7} \cdot {x}^{2}\right)\right)\right) \cdot x\right)} \]
  5. Applied rewrites99.8%

    \[\leadsto 0.5 \cdot \color{blue}{\left(\mathsf{fma}\left(\mathsf{fma}\left(\mathsf{fma}\left(0.2857142857142857, x \cdot x, 0.4\right), x \cdot x, 0.6666666666666666\right), x \cdot x, 2\right) \cdot x\right)} \]
  6. Add Preprocessing

Alternative 3: 99.8% accurate, 3.8× speedup?

\[\begin{array}{l} \\ 0.5 \cdot \left(\mathsf{fma}\left(\mathsf{fma}\left(0.4, x \cdot x, 0.6666666666666666\right), x \cdot x, 2\right) \cdot x\right) \end{array} \]
(FPCore (x)
 :precision binary64
 (* 0.5 (* (fma (fma 0.4 (* x x) 0.6666666666666666) (* x x) 2.0) x)))
double code(double x) {
	return 0.5 * (fma(fma(0.4, (x * x), 0.6666666666666666), (x * x), 2.0) * x);
}
function code(x)
	return Float64(0.5 * Float64(fma(fma(0.4, Float64(x * x), 0.6666666666666666), Float64(x * x), 2.0) * x))
end
code[x_] := N[(0.5 * N[(N[(N[(0.4 * N[(x * x), $MachinePrecision] + 0.6666666666666666), $MachinePrecision] * N[(x * x), $MachinePrecision] + 2.0), $MachinePrecision] * x), $MachinePrecision]), $MachinePrecision]
\begin{array}{l}

\\
0.5 \cdot \left(\mathsf{fma}\left(\mathsf{fma}\left(0.4, x \cdot x, 0.6666666666666666\right), x \cdot x, 2\right) \cdot x\right)
\end{array}
Derivation
  1. Initial program 100.0%

    \[0.5 \cdot \mathsf{log1p}\left(\frac{2 \cdot x}{1 - x}\right) \]
  2. Add Preprocessing
  3. Taylor expanded in x around 0

    \[\leadsto \frac{1}{2} \cdot \color{blue}{\left(x \cdot \left(2 + {x}^{2} \cdot \left(\frac{2}{3} + \frac{2}{5} \cdot {x}^{2}\right)\right)\right)} \]
  4. Step-by-step derivation
    1. *-commutativeN/A

      \[\leadsto \frac{1}{2} \cdot \color{blue}{\left(\left(2 + {x}^{2} \cdot \left(\frac{2}{3} + \frac{2}{5} \cdot {x}^{2}\right)\right) \cdot x\right)} \]
    2. lower-*.f64N/A

      \[\leadsto \frac{1}{2} \cdot \color{blue}{\left(\left(2 + {x}^{2} \cdot \left(\frac{2}{3} + \frac{2}{5} \cdot {x}^{2}\right)\right) \cdot x\right)} \]
    3. +-commutativeN/A

      \[\leadsto \frac{1}{2} \cdot \left(\color{blue}{\left({x}^{2} \cdot \left(\frac{2}{3} + \frac{2}{5} \cdot {x}^{2}\right) + 2\right)} \cdot x\right) \]
    4. *-commutativeN/A

      \[\leadsto \frac{1}{2} \cdot \left(\left(\color{blue}{\left(\frac{2}{3} + \frac{2}{5} \cdot {x}^{2}\right) \cdot {x}^{2}} + 2\right) \cdot x\right) \]
    5. lower-fma.f64N/A

      \[\leadsto \frac{1}{2} \cdot \left(\color{blue}{\mathsf{fma}\left(\frac{2}{3} + \frac{2}{5} \cdot {x}^{2}, {x}^{2}, 2\right)} \cdot x\right) \]
    6. +-commutativeN/A

      \[\leadsto \frac{1}{2} \cdot \left(\mathsf{fma}\left(\color{blue}{\frac{2}{5} \cdot {x}^{2} + \frac{2}{3}}, {x}^{2}, 2\right) \cdot x\right) \]
    7. lower-fma.f64N/A

      \[\leadsto \frac{1}{2} \cdot \left(\mathsf{fma}\left(\color{blue}{\mathsf{fma}\left(\frac{2}{5}, {x}^{2}, \frac{2}{3}\right)}, {x}^{2}, 2\right) \cdot x\right) \]
    8. unpow2N/A

      \[\leadsto \frac{1}{2} \cdot \left(\mathsf{fma}\left(\mathsf{fma}\left(\frac{2}{5}, \color{blue}{x \cdot x}, \frac{2}{3}\right), {x}^{2}, 2\right) \cdot x\right) \]
    9. lower-*.f64N/A

      \[\leadsto \frac{1}{2} \cdot \left(\mathsf{fma}\left(\mathsf{fma}\left(\frac{2}{5}, \color{blue}{x \cdot x}, \frac{2}{3}\right), {x}^{2}, 2\right) \cdot x\right) \]
    10. unpow2N/A

      \[\leadsto \frac{1}{2} \cdot \left(\mathsf{fma}\left(\mathsf{fma}\left(\frac{2}{5}, x \cdot x, \frac{2}{3}\right), \color{blue}{x \cdot x}, 2\right) \cdot x\right) \]
    11. lower-*.f6499.7

      \[\leadsto 0.5 \cdot \left(\mathsf{fma}\left(\mathsf{fma}\left(0.4, x \cdot x, 0.6666666666666666\right), \color{blue}{x \cdot x}, 2\right) \cdot x\right) \]
  5. Applied rewrites99.7%

    \[\leadsto 0.5 \cdot \color{blue}{\left(\mathsf{fma}\left(\mathsf{fma}\left(0.4, x \cdot x, 0.6666666666666666\right), x \cdot x, 2\right) \cdot x\right)} \]
  6. Add Preprocessing

Alternative 4: 99.6% accurate, 5.0× speedup?

\[\begin{array}{l} \\ 0.5 \cdot \left(x \cdot \left(1 - \mathsf{fma}\left(-0.6666666666666666 \cdot x, x, -1\right)\right)\right) \end{array} \]
(FPCore (x)
 :precision binary64
 (* 0.5 (* x (- 1.0 (fma (* -0.6666666666666666 x) x -1.0)))))
double code(double x) {
	return 0.5 * (x * (1.0 - fma((-0.6666666666666666 * x), x, -1.0)));
}
function code(x)
	return Float64(0.5 * Float64(x * Float64(1.0 - fma(Float64(-0.6666666666666666 * x), x, -1.0))))
end
code[x_] := N[(0.5 * N[(x * N[(1.0 - N[(N[(-0.6666666666666666 * x), $MachinePrecision] * x + -1.0), $MachinePrecision]), $MachinePrecision]), $MachinePrecision]), $MachinePrecision]
\begin{array}{l}

\\
0.5 \cdot \left(x \cdot \left(1 - \mathsf{fma}\left(-0.6666666666666666 \cdot x, x, -1\right)\right)\right)
\end{array}
Derivation
  1. Initial program 100.0%

    \[0.5 \cdot \mathsf{log1p}\left(\frac{2 \cdot x}{1 - x}\right) \]
  2. Add Preprocessing
  3. Taylor expanded in x around 0

    \[\leadsto \frac{1}{2} \cdot \color{blue}{\left(x \cdot \left(2 + \frac{2}{3} \cdot {x}^{2}\right)\right)} \]
  4. Step-by-step derivation
    1. *-commutativeN/A

      \[\leadsto \frac{1}{2} \cdot \color{blue}{\left(\left(2 + \frac{2}{3} \cdot {x}^{2}\right) \cdot x\right)} \]
    2. lower-*.f64N/A

      \[\leadsto \frac{1}{2} \cdot \color{blue}{\left(\left(2 + \frac{2}{3} \cdot {x}^{2}\right) \cdot x\right)} \]
    3. +-commutativeN/A

      \[\leadsto \frac{1}{2} \cdot \left(\color{blue}{\left(\frac{2}{3} \cdot {x}^{2} + 2\right)} \cdot x\right) \]
    4. lower-fma.f64N/A

      \[\leadsto \frac{1}{2} \cdot \left(\color{blue}{\mathsf{fma}\left(\frac{2}{3}, {x}^{2}, 2\right)} \cdot x\right) \]
    5. unpow2N/A

      \[\leadsto \frac{1}{2} \cdot \left(\mathsf{fma}\left(\frac{2}{3}, \color{blue}{x \cdot x}, 2\right) \cdot x\right) \]
    6. lower-*.f6499.6

      \[\leadsto 0.5 \cdot \left(\mathsf{fma}\left(0.6666666666666666, \color{blue}{x \cdot x}, 2\right) \cdot x\right) \]
  5. Applied rewrites99.6%

    \[\leadsto 0.5 \cdot \color{blue}{\left(\mathsf{fma}\left(0.6666666666666666, x \cdot x, 2\right) \cdot x\right)} \]
  6. Step-by-step derivation
    1. Applied rewrites99.6%

      \[\leadsto 0.5 \cdot \mathsf{fma}\left(x, \color{blue}{2}, \left(\left(x \cdot x\right) \cdot 0.6666666666666666\right) \cdot x\right) \]
    2. Step-by-step derivation
      1. Applied rewrites99.6%

        \[\leadsto 0.5 \cdot \mathsf{fma}\left(\mathsf{fma}\left(0.6666666666666666 \cdot x, x, 1\right), \color{blue}{x}, x\right) \]
      2. Step-by-step derivation
        1. Applied rewrites99.6%

          \[\leadsto 0.5 \cdot \left(x \cdot \color{blue}{\left(1 - \mathsf{fma}\left(-0.6666666666666666 \cdot x, x, -1\right)\right)}\right) \]
        2. Add Preprocessing

        Alternative 5: 99.6% accurate, 5.4× speedup?

        \[\begin{array}{l} \\ 0.5 \cdot \mathsf{fma}\left(\mathsf{fma}\left(0.6666666666666666 \cdot x, x, 1\right), x, x\right) \end{array} \]
        (FPCore (x)
         :precision binary64
         (* 0.5 (fma (fma (* 0.6666666666666666 x) x 1.0) x x)))
        double code(double x) {
        	return 0.5 * fma(fma((0.6666666666666666 * x), x, 1.0), x, x);
        }
        
        function code(x)
        	return Float64(0.5 * fma(fma(Float64(0.6666666666666666 * x), x, 1.0), x, x))
        end
        
        code[x_] := N[(0.5 * N[(N[(N[(0.6666666666666666 * x), $MachinePrecision] * x + 1.0), $MachinePrecision] * x + x), $MachinePrecision]), $MachinePrecision]
        
        \begin{array}{l}
        
        \\
        0.5 \cdot \mathsf{fma}\left(\mathsf{fma}\left(0.6666666666666666 \cdot x, x, 1\right), x, x\right)
        \end{array}
        
        Derivation
        1. Initial program 100.0%

          \[0.5 \cdot \mathsf{log1p}\left(\frac{2 \cdot x}{1 - x}\right) \]
        2. Add Preprocessing
        3. Taylor expanded in x around 0

          \[\leadsto \frac{1}{2} \cdot \color{blue}{\left(x \cdot \left(2 + \frac{2}{3} \cdot {x}^{2}\right)\right)} \]
        4. Step-by-step derivation
          1. *-commutativeN/A

            \[\leadsto \frac{1}{2} \cdot \color{blue}{\left(\left(2 + \frac{2}{3} \cdot {x}^{2}\right) \cdot x\right)} \]
          2. lower-*.f64N/A

            \[\leadsto \frac{1}{2} \cdot \color{blue}{\left(\left(2 + \frac{2}{3} \cdot {x}^{2}\right) \cdot x\right)} \]
          3. +-commutativeN/A

            \[\leadsto \frac{1}{2} \cdot \left(\color{blue}{\left(\frac{2}{3} \cdot {x}^{2} + 2\right)} \cdot x\right) \]
          4. lower-fma.f64N/A

            \[\leadsto \frac{1}{2} \cdot \left(\color{blue}{\mathsf{fma}\left(\frac{2}{3}, {x}^{2}, 2\right)} \cdot x\right) \]
          5. unpow2N/A

            \[\leadsto \frac{1}{2} \cdot \left(\mathsf{fma}\left(\frac{2}{3}, \color{blue}{x \cdot x}, 2\right) \cdot x\right) \]
          6. lower-*.f6499.6

            \[\leadsto 0.5 \cdot \left(\mathsf{fma}\left(0.6666666666666666, \color{blue}{x \cdot x}, 2\right) \cdot x\right) \]
        5. Applied rewrites99.6%

          \[\leadsto 0.5 \cdot \color{blue}{\left(\mathsf{fma}\left(0.6666666666666666, x \cdot x, 2\right) \cdot x\right)} \]
        6. Step-by-step derivation
          1. Applied rewrites99.6%

            \[\leadsto 0.5 \cdot \mathsf{fma}\left(x, \color{blue}{2}, \left(\left(x \cdot x\right) \cdot 0.6666666666666666\right) \cdot x\right) \]
          2. Step-by-step derivation
            1. Applied rewrites99.6%

              \[\leadsto 0.5 \cdot \mathsf{fma}\left(\mathsf{fma}\left(0.6666666666666666 \cdot x, x, 1\right), \color{blue}{x}, x\right) \]
            2. Add Preprocessing

            Alternative 6: 99.6% accurate, 5.7× speedup?

            \[\begin{array}{l} \\ 0.5 \cdot \left(\mathsf{fma}\left(0.6666666666666666, x \cdot x, 2\right) \cdot x\right) \end{array} \]
            (FPCore (x)
             :precision binary64
             (* 0.5 (* (fma 0.6666666666666666 (* x x) 2.0) x)))
            double code(double x) {
            	return 0.5 * (fma(0.6666666666666666, (x * x), 2.0) * x);
            }
            
            function code(x)
            	return Float64(0.5 * Float64(fma(0.6666666666666666, Float64(x * x), 2.0) * x))
            end
            
            code[x_] := N[(0.5 * N[(N[(0.6666666666666666 * N[(x * x), $MachinePrecision] + 2.0), $MachinePrecision] * x), $MachinePrecision]), $MachinePrecision]
            
            \begin{array}{l}
            
            \\
            0.5 \cdot \left(\mathsf{fma}\left(0.6666666666666666, x \cdot x, 2\right) \cdot x\right)
            \end{array}
            
            Derivation
            1. Initial program 100.0%

              \[0.5 \cdot \mathsf{log1p}\left(\frac{2 \cdot x}{1 - x}\right) \]
            2. Add Preprocessing
            3. Taylor expanded in x around 0

              \[\leadsto \frac{1}{2} \cdot \color{blue}{\left(x \cdot \left(2 + \frac{2}{3} \cdot {x}^{2}\right)\right)} \]
            4. Step-by-step derivation
              1. *-commutativeN/A

                \[\leadsto \frac{1}{2} \cdot \color{blue}{\left(\left(2 + \frac{2}{3} \cdot {x}^{2}\right) \cdot x\right)} \]
              2. lower-*.f64N/A

                \[\leadsto \frac{1}{2} \cdot \color{blue}{\left(\left(2 + \frac{2}{3} \cdot {x}^{2}\right) \cdot x\right)} \]
              3. +-commutativeN/A

                \[\leadsto \frac{1}{2} \cdot \left(\color{blue}{\left(\frac{2}{3} \cdot {x}^{2} + 2\right)} \cdot x\right) \]
              4. lower-fma.f64N/A

                \[\leadsto \frac{1}{2} \cdot \left(\color{blue}{\mathsf{fma}\left(\frac{2}{3}, {x}^{2}, 2\right)} \cdot x\right) \]
              5. unpow2N/A

                \[\leadsto \frac{1}{2} \cdot \left(\mathsf{fma}\left(\frac{2}{3}, \color{blue}{x \cdot x}, 2\right) \cdot x\right) \]
              6. lower-*.f6499.6

                \[\leadsto 0.5 \cdot \left(\mathsf{fma}\left(0.6666666666666666, \color{blue}{x \cdot x}, 2\right) \cdot x\right) \]
            5. Applied rewrites99.6%

              \[\leadsto 0.5 \cdot \color{blue}{\left(\mathsf{fma}\left(0.6666666666666666, x \cdot x, 2\right) \cdot x\right)} \]
            6. Add Preprocessing

            Alternative 7: 99.0% accurate, 11.4× speedup?

            \[\begin{array}{l} \\ 0.5 \cdot \left(2 \cdot x\right) \end{array} \]
            (FPCore (x) :precision binary64 (* 0.5 (* 2.0 x)))
            double code(double x) {
            	return 0.5 * (2.0 * x);
            }
            
            module fmin_fmax_functions
                implicit none
                private
                public fmax
                public fmin
            
                interface fmax
                    module procedure fmax88
                    module procedure fmax44
                    module procedure fmax84
                    module procedure fmax48
                end interface
                interface fmin
                    module procedure fmin88
                    module procedure fmin44
                    module procedure fmin84
                    module procedure fmin48
                end interface
            contains
                real(8) function fmax88(x, y) result (res)
                    real(8), intent (in) :: x
                    real(8), intent (in) :: y
                    res = merge(y, merge(x, max(x, y), y /= y), x /= x)
                end function
                real(4) function fmax44(x, y) result (res)
                    real(4), intent (in) :: x
                    real(4), intent (in) :: y
                    res = merge(y, merge(x, max(x, y), y /= y), x /= x)
                end function
                real(8) function fmax84(x, y) result(res)
                    real(8), intent (in) :: x
                    real(4), intent (in) :: y
                    res = merge(dble(y), merge(x, max(x, dble(y)), y /= y), x /= x)
                end function
                real(8) function fmax48(x, y) result(res)
                    real(4), intent (in) :: x
                    real(8), intent (in) :: y
                    res = merge(y, merge(dble(x), max(dble(x), y), y /= y), x /= x)
                end function
                real(8) function fmin88(x, y) result (res)
                    real(8), intent (in) :: x
                    real(8), intent (in) :: y
                    res = merge(y, merge(x, min(x, y), y /= y), x /= x)
                end function
                real(4) function fmin44(x, y) result (res)
                    real(4), intent (in) :: x
                    real(4), intent (in) :: y
                    res = merge(y, merge(x, min(x, y), y /= y), x /= x)
                end function
                real(8) function fmin84(x, y) result(res)
                    real(8), intent (in) :: x
                    real(4), intent (in) :: y
                    res = merge(dble(y), merge(x, min(x, dble(y)), y /= y), x /= x)
                end function
                real(8) function fmin48(x, y) result(res)
                    real(4), intent (in) :: x
                    real(8), intent (in) :: y
                    res = merge(y, merge(dble(x), min(dble(x), y), y /= y), x /= x)
                end function
            end module
            
            real(8) function code(x)
            use fmin_fmax_functions
                real(8), intent (in) :: x
                code = 0.5d0 * (2.0d0 * x)
            end function
            
            public static double code(double x) {
            	return 0.5 * (2.0 * x);
            }
            
            def code(x):
            	return 0.5 * (2.0 * x)
            
            function code(x)
            	return Float64(0.5 * Float64(2.0 * x))
            end
            
            function tmp = code(x)
            	tmp = 0.5 * (2.0 * x);
            end
            
            code[x_] := N[(0.5 * N[(2.0 * x), $MachinePrecision]), $MachinePrecision]
            
            \begin{array}{l}
            
            \\
            0.5 \cdot \left(2 \cdot x\right)
            \end{array}
            
            Derivation
            1. Initial program 100.0%

              \[0.5 \cdot \mathsf{log1p}\left(\frac{2 \cdot x}{1 - x}\right) \]
            2. Add Preprocessing
            3. Taylor expanded in x around 0

              \[\leadsto \frac{1}{2} \cdot \color{blue}{\left(2 \cdot x\right)} \]
            4. Step-by-step derivation
              1. lower-*.f6499.3

                \[\leadsto 0.5 \cdot \color{blue}{\left(2 \cdot x\right)} \]
            5. Applied rewrites99.3%

              \[\leadsto 0.5 \cdot \color{blue}{\left(2 \cdot x\right)} \]
            6. Add Preprocessing

            Reproduce

            ?
            herbie shell --seed 2024363 
            (FPCore (x)
              :name "Rust f64::atanh"
              :precision binary64
              (* 0.5 (log1p (/ (* 2.0 x) (- 1.0 x)))))