mirror of https://github.com/python/cpython
bpo-41513: Improve speed and accuracy of math.hypot() (GH-21803)
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@ -795,7 +795,8 @@ class MathTests(unittest.TestCase):
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# Verify scaling for extremely large values
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# Verify scaling for extremely large values
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fourthmax = FLOAT_MAX / 4.0
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fourthmax = FLOAT_MAX / 4.0
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for n in range(32):
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for n in range(32):
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self.assertEqual(hypot(*([fourthmax]*n)), fourthmax * math.sqrt(n))
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self.assertTrue(math.isclose(hypot(*([fourthmax]*n)),
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fourthmax * math.sqrt(n)))
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# Verify scaling for extremely small values
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# Verify scaling for extremely small values
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for exp in range(32):
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for exp in range(32):
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@ -904,8 +905,8 @@ class MathTests(unittest.TestCase):
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for n in range(32):
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for n in range(32):
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p = (fourthmax,) * n
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p = (fourthmax,) * n
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q = (0.0,) * n
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q = (0.0,) * n
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self.assertEqual(dist(p, q), fourthmax * math.sqrt(n))
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self.assertTrue(math.isclose(dist(p, q), fourthmax * math.sqrt(n)))
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self.assertEqual(dist(q, p), fourthmax * math.sqrt(n))
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self.assertTrue(math.isclose(dist(q, p), fourthmax * math.sqrt(n)))
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# Verify scaling for extremely small values
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# Verify scaling for extremely small values
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for exp in range(32):
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for exp in range(32):
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@ -0,0 +1,2 @@
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Minor algorithmic improvement to math.hypot() and math.dist() giving small
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gains in speed and accuracy.
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@ -2406,6 +2406,13 @@ math_fmod_impl(PyObject *module, double x, double y)
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/*
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/*
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Given an *n* length *vec* of values and a value *max*, compute:
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Given an *n* length *vec* of values and a value *max*, compute:
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sqrt(sum((x * scale) ** 2 for x in vec)) / scale
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where scale is the first power of two
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greater than max.
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or compute:
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max * sqrt(sum((x / max) ** 2 for x in vec))
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max * sqrt(sum((x / max) ** 2 for x in vec))
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The value of the *max* variable must be non-negative and
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The value of the *max* variable must be non-negative and
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@ -2425,19 +2432,25 @@ The *csum* variable tracks the cumulative sum and *frac* tracks
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the cumulative fractional errors at each step. Since this
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the cumulative fractional errors at each step. Since this
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variant assumes that |csum| >= |x| at each step, we establish
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variant assumes that |csum| >= |x| at each step, we establish
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the precondition by starting the accumulation from 1.0 which
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the precondition by starting the accumulation from 1.0 which
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represents the largest possible value of (x/max)**2.
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represents the largest possible value of (x*scale)**2 or (x/max)**2.
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After the loop is finished, the initial 1.0 is subtracted out
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After the loop is finished, the initial 1.0 is subtracted out
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for a net zero effect on the final sum. Since *csum* will be
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for a net zero effect on the final sum. Since *csum* will be
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greater than 1.0, the subtraction of 1.0 will not cause
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greater than 1.0, the subtraction of 1.0 will not cause
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fractional digits to be dropped from *csum*.
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fractional digits to be dropped from *csum*.
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To get the full benefit from compensated summation, the
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largest addend should be in the range: 0.5 <= x <= 1.0.
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Accordingly, scaling or division by *max* should not be skipped
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even if not otherwise needed to prevent overflow or loss of precision.
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*/
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*/
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static inline double
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static inline double
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vector_norm(Py_ssize_t n, double *vec, double max, int found_nan)
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vector_norm(Py_ssize_t n, double *vec, double max, int found_nan)
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{
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{
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double x, csum = 1.0, oldcsum, frac = 0.0;
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double x, csum = 1.0, oldcsum, frac = 0.0, scale;
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int max_e;
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Py_ssize_t i;
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Py_ssize_t i;
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if (Py_IS_INFINITY(max)) {
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if (Py_IS_INFINITY(max)) {
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@ -2449,14 +2462,36 @@ vector_norm(Py_ssize_t n, double *vec, double max, int found_nan)
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if (max == 0.0 || n <= 1) {
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if (max == 0.0 || n <= 1) {
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return max;
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return max;
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}
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}
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frexp(max, &max_e);
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if (max_e >= -1023) {
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scale = ldexp(1.0, -max_e);
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assert(max * scale >= 0.5);
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assert(max * scale < 1.0);
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for (i=0 ; i < n ; i++) {
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x = vec[i];
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assert(Py_IS_FINITE(x) && fabs(x) <= max);
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x *= scale;
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x = x*x;
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assert(x <= 1.0);
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assert(csum >= x);
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oldcsum = csum;
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csum += x;
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frac += (oldcsum - csum) + x;
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}
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return sqrt(csum - 1.0 + frac) / scale;
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}
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/* When max_e < -1023, ldexp(1.0, -max_e) overflows.
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So instead of multiplying by a scale, we just divide by *max*.
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*/
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for (i=0 ; i < n ; i++) {
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for (i=0 ; i < n ; i++) {
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x = vec[i];
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x = vec[i];
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assert(Py_IS_FINITE(x) && fabs(x) <= max);
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assert(Py_IS_FINITE(x) && fabs(x) <= max);
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x /= max;
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x /= max;
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x = x*x;
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x = x*x;
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assert(x <= 1.0);
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assert(csum >= x);
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oldcsum = csum;
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oldcsum = csum;
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csum += x;
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csum += x;
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assert(csum >= x);
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frac += (oldcsum - csum) + x;
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frac += (oldcsum - csum) + x;
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}
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}
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return max * sqrt(csum - 1.0 + frac);
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return max * sqrt(csum - 1.0 + frac);
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