同步操作将从 OpenHarmony-SIG/python 强制同步,此操作会覆盖自 Fork 仓库以来所做的任何修改,且无法恢复!!!
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/* statistics accelerator C extension: _statistics module. */#include "Python.h"#include "structmember.h"#include "clinic/_statisticsmodule.c.h"/*[clinic input]module _statistics[clinic start generated code]*//*[clinic end generated code: output=da39a3ee5e6b4b0d input=864a6f59b76123b2]*//** There is no closed-form solution to the inverse CDF for the normal* distribution, so we use a rational approximation instead:* Wichura, M.J. (1988). "Algorithm AS241: The Percentage Points of the* Normal Distribution". Applied Statistics. Blackwell Publishing. 37* (3): 477–484. doi:10.2307/2347330. JSTOR 2347330.*//*[clinic input]_statistics._normal_dist_inv_cdf -> doublep: doublemu: doublesigma: double/[clinic start generated code]*/static double_statistics__normal_dist_inv_cdf_impl(PyObject *module, double p, double mu,double sigma)/*[clinic end generated code: output=02fd19ddaab36602 input=24715a74be15296a]*/{double q, num, den, r, x;if (p <= 0.0 || p >= 1.0 || sigma <= 0.0) {goto error;}q = p - 0.5;if(fabs(q) <= 0.425) {r = 0.180625 - q * q;// Hash sum-55.8831928806149014439num = (((((((2.5090809287301226727e+3 * r +3.3430575583588128105e+4) * r +6.7265770927008700853e+4) * r +4.5921953931549871457e+4) * r +1.3731693765509461125e+4) * r +1.9715909503065514427e+3) * r +1.3314166789178437745e+2) * r +3.3871328727963666080e+0) * q;den = (((((((5.2264952788528545610e+3 * r +2.8729085735721942674e+4) * r +3.9307895800092710610e+4) * r +2.1213794301586595867e+4) * r +5.3941960214247511077e+3) * r +6.8718700749205790830e+2) * r +4.2313330701600911252e+1) * r +1.0);if (den == 0.0) {goto error;}x = num / den;return mu + (x * sigma);}r = (q <= 0.0) ? p : (1.0 - p);if (r <= 0.0 || r >= 1.0) {goto error;}r = sqrt(-log(r));if (r <= 5.0) {r = r - 1.6;// Hash sum-49.33206503301610289036num = (((((((7.74545014278341407640e-4 * r +2.27238449892691845833e-2) * r +2.41780725177450611770e-1) * r +1.27045825245236838258e+0) * r +3.64784832476320460504e+0) * r +5.76949722146069140550e+0) * r +4.63033784615654529590e+0) * r +1.42343711074968357734e+0);den = (((((((1.05075007164441684324e-9 * r +5.47593808499534494600e-4) * r +1.51986665636164571966e-2) * r +1.48103976427480074590e-1) * r +6.89767334985100004550e-1) * r +1.67638483018380384940e+0) * r +2.05319162663775882187e+0) * r +1.0);} else {r -= 5.0;// Hash sum-47.52583317549289671629num = (((((((2.01033439929228813265e-7 * r +2.71155556874348757815e-5) * r +1.24266094738807843860e-3) * r +2.65321895265761230930e-2) * r +2.96560571828504891230e-1) * r +1.78482653991729133580e+0) * r +5.46378491116411436990e+0) * r +6.65790464350110377720e+0);den = (((((((2.04426310338993978564e-15 * r +1.42151175831644588870e-7) * r +1.84631831751005468180e-5) * r +7.86869131145613259100e-4) * r +1.48753612908506148525e-2) * r +1.36929880922735805310e-1) * r +5.99832206555887937690e-1) * r +1.0);}if (den == 0.0) {goto error;}x = num / den;if (q < 0.0) {x = -x;}return mu + (x * sigma);error:PyErr_SetString(PyExc_ValueError, "inv_cdf undefined for these parameters");return -1.0;}static PyMethodDef statistics_methods[] = {_STATISTICS__NORMAL_DIST_INV_CDF_METHODDEF{NULL, NULL, 0, NULL}};PyDoc_STRVAR(statistics_doc,"Accelerators for the statistics module.\n");static struct PyModuleDef statisticsmodule = {PyModuleDef_HEAD_INIT,"_statistics",statistics_doc,-1,statistics_methods,NULL,NULL,NULL,NULL};PyMODINIT_FUNCPyInit__statistics(void){PyObject *m = PyModule_Create(&statisticsmodule);if (!m) return NULL;return m;}
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