source_code
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def x(self, n, x): n_array = np.zeros(n + 1) n_array[n] = 1 return hermite.hermval(x, n_array, tensor=False)
H_n
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, n, x):\n n_array = np.zeros(n + 1)\n n_array[n] = 1\n return hermite.hermval(x, n_array, tensor=False)\n", "role": "user" }, { "cont...
def x(self, n, x): prefactor = 1.0 / np.sqrt(2 ** n * np.sqrt(np.pi) * math.factorial(n)) return prefactor * self.H_n(n, x) * np.exp(-x ** 2 / 2.0)
phi_n
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, n, x):\n prefactor = 1.0 / np.sqrt(2 ** n * np.sqrt(np.pi) * math.factorial(n))\n return prefactor * self.H_n(n, x) * np.exp(-x ** 2 / 2.0)\n", ...
def x(self, kwargs_list): lens_model = self._lens_mode_list[0] if self._solver_type == 'CENTER': center_x = kwargs_list[0]['center_x'] center_y = kwargs_list[0]['center_y'] x = [center_x, center_y] elif self._solver_type == 'ELLIPSE': e1 = kwargs_list[0]['e1'] e2 = kw...
extract_array
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, kwargs_list):\n lens_model = self._lens_mode_list[0]\n if self._solver_type == 'CENTER':\n center_x = kwargs_list[0]['center_x']\n ce...
def x(self): if self._background_noise is None: return data_util.bkg_noise(self.read_noise, self._exposure_time, self.sky_brightness, self.pixel_scale, num_exposures=self. _num_exposures) else: return self._background_noise
background_noise
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n if self._background_noise is None:\n return data_util.bkg_noise(self.read_noise, self._exposure_time,\n self.sky_brightness, self...
def x(self): if self._data_count_unit == 'ADU': exp_time = self.ccd_gain * self.exposure_time else: exp_time = self.exposure_time return exp_time
scaled_exposure_time
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n if self._data_count_unit == 'ADU':\n exp_time = self.ccd_gain * self.exposure_time\n else:\n exp_time = self.exposure_time\n re...
def x(self, magnitude): cps = data_util.magnitude2cps(magnitude, magnitude_zero_point=self. _magnitude_zero_point) if self._data_count_unit == 'e-': cps *= self.ccd_gain return cps
magnitude2cps
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, magnitude):\n cps = data_util.magnitude2cps(magnitude, magnitude_zero_point=self.\n _magnitude_zero_point)\n if self._data_count_unit == 'e-...
def x(self, r, rho0, Ra, Rs): Ra, Rs = self._sort_ra_rs(Ra, Rs) rho = rho0 / ((1 + (r / Ra) ** 2) * (1 + (r / Rs) ** 2)) return rho
density
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, r, rho0, Ra, Rs):\n Ra, Rs = self._sort_ra_rs(Ra, Rs)\n rho = rho0 / ((1 + (r / Ra) ** 2) * (1 + (r / Rs) ** 2))\n return rho\n", "role": "u...
def x(self, x, y, rho0, Ra, Rs, center_x=0, center_y=0): Ra, Rs = self._sort_ra_rs(Ra, Rs) x_ = x - center_x y_ = y - center_y r = np.sqrt(x_ ** 2 + y_ ** 2) sigma0 = self.rho2sigma(rho0, Ra, Rs) sigma = sigma0 * Ra * Rs / (Rs - Ra) * (1 / np.sqrt(Ra ** 2 + r ** 2) - 1 / np.sqrt(Rs ** 2 ...
density_2d
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, x, y, rho0, Ra, Rs, center_x=0, center_y=0):\n Ra, Rs = self._sort_ra_rs(Ra, Rs)\n x_ = x - center_x\n y_ = y - center_y\n r = np.sqrt(x_ ** ...
def x(self, r, rho0, Ra, Rs): m_3d = 4 * np.pi * rho0 * Ra ** 2 * Rs ** 2 / (Rs ** 2 - Ra ** 2) * (Rs * np.arctan(r / Rs) - Ra * np.arctan(r / Ra)) return m_3d
mass_3d
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, r, rho0, Ra, Rs):\n m_3d = 4 * np.pi * rho0 * Ra ** 2 * Rs ** 2 / (Rs ** 2 - Ra ** 2) * (Rs *\n np.arctan(r / Rs) - Ra * np.arctan(r / Ra))\n ...
def x(self, r, rho0, Ra, Rs): Ra, Rs = self._sort_ra_rs(Ra, Rs) sigma0 = self.rho2sigma(rho0, Ra, Rs) m_2d = 2 * np.pi * sigma0 * Ra * Rs / (Rs - Ra) * (np.sqrt(Ra ** 2 + r ** 2) - Ra - np.sqrt(Rs ** 2 + r ** 2) + Rs) return m_2d
mass_2d
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, r, rho0, Ra, Rs):\n Ra, Rs = self._sort_ra_rs(Ra, Rs)\n sigma0 = self.rho2sigma(rho0, Ra, Rs)\n m_2d = 2 * np.pi * sigma0 * Ra * Rs / (Rs - Ra) ...
def x(self, rho0, Ra, Rs): Ra, Rs = self._sort_ra_rs(Ra, Rs) sigma0 = self.rho2sigma(rho0, Ra, Rs) m_tot = 2 * np.pi * sigma0 * Ra * Rs return m_tot
mass_tot
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, rho0, Ra, Rs):\n Ra, Rs = self._sort_ra_rs(Ra, Rs)\n sigma0 = self.rho2sigma(rho0, Ra, Rs)\n m_tot = 2 * np.pi * sigma0 * Ra * Rs\n return m_...
def x(self, x, y, rho0, Ra, Rs, center_x=0, center_y=0): Ra, Rs = self._sort_ra_rs(Ra, Rs) x_ = x - center_x y_ = y - center_y r = np.sqrt(x_ ** 2 + y_ ** 2) pot = 4 * np.pi * rho0 * Ra ** 2 * Rs ** 2 / (Rs ** 2 - Ra ** 2) * (Rs / r * np.arctan(r / Rs) - Ra / r * np.arctan(r / Ra) + 1.0 / 2 ...
grav_pot
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, x, y, rho0, Ra, Rs, center_x=0, center_y=0):\n Ra, Rs = self._sort_ra_rs(Ra, Rs)\n x_ = x - center_x\n y_ = y - center_y\n r = np.sqrt(x_ ** ...
def x(self, r_a, r_s): return r_a / (1 + np.sqrt(1 + r_a ** 2)) - r_s / (1 + np.sqrt(1 + r_s ** 2) )
f_A20
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, r_a, r_s):\n return r_a / (1 + np.sqrt(1 + r_a ** 2)) - r_s / (1 + np.sqrt(1 + r_s ** 2)\n )\n", "role": "user" }, { "content": "f_...
def x(self, rho0, Ra, Rs): return np.pi * rho0 * Ra * Rs / (Rs + Ra)
rho2sigma
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, rho0, Ra, Rs):\n return np.pi * rho0 * Ra * Rs / (Rs + Ra)\n", "role": "user" }, { "content": "rho2sigma", "role": "assistant" } ]
def x(inputArray, scale_min=None, scale_max=None): imageData = np.array(inputArray, copy=True) if scale_min is None: scale_min = imageData.min() if scale_max is None: scale_max = imageData.max() imageData = imageData.clip(min=scale_min, max=scale_max) imageData = imageData - scale_mi...
sqrt
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(inputArray, scale_min=None, scale_max=None):\n imageData = np.array(inputArray, copy=True)\n if scale_min is None:\n scale_min = imageData.min()\n...
def x(self, args): (kwargs_lens, kwargs_source, kwargs_lens_light, kwargs_ps, kwargs_cosmo ) = self.param.args2kwargs(args) self._reset_point_source_cache(bool=True) logL = 0 if self._check_bounds is True: penalty, bound_hit = self.check_bounds(args, self._lower_limit, self._...
logL
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, args):\n (kwargs_lens, kwargs_source, kwargs_lens_light, kwargs_ps, kwargs_cosmo\n ) = self.param.args2kwargs(args)\n self._reset_point_sour...
def x(args, lowerLimit, upperLimit): penalty = 0 bound_hit = False for i in range(0, len(args)): if args[i] < lowerLimit[i] or args[i] > upperLimit[i]: penalty = 10 ** 15 bound_hit = True return penalty, bound_hit
check_bounds
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(args, lowerLimit, upperLimit):\n penalty = 0\n bound_hit = False\n for i in range(0, len(args)):\n if args[i] < lowerLimit[i] or args[i] > uppe...
def x(self, kwargs_lens, kwargs_source, kwargs_lens_light, kwargs_ps): num_linear = 0 if self._image_likelihood is True: num_linear = self.image_likelihood.num_param_linear(kwargs_lens, kwargs_source, kwargs_lens_light, kwargs_ps) num_param, _ = self.param.num_param() return self.num...
effectiv_num_data_points
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, kwargs_lens, kwargs_source, kwargs_lens_light, kwargs_ps):\n num_linear = 0\n if self._image_likelihood is True:\n num_linear = self.image_l...
def x(self, x, y, kwargs_lens, idex_source): if self._multi_source_plane is False: x_source, y_source = self._lensModel.ray_shooting(x, y, kwargs_lens) elif self._multi_lens_plane is False: x_alpha, y_alpha = self._lensModel.alpha(x, y, kwargs_lens) scale_factor = self._deflection_scalin...
image2source
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, x, y, kwargs_lens, idex_source):\n if self._multi_source_plane is False:\n x_source, y_source = self._lensModel.ray_shooting(x, y, kwargs_lens)...
def x(self, x, y, amp, sigma, e1, e2, center_x=0, center_y=0): alpha_ra, alpha_dec = self.derivatives(x, y, amp, sigma, e1, e2, center_x, center_y) diff = self._diff alpha_ra_dx, alpha_dec_dx = self.derivatives(x + diff, y, amp, sigma, e1, e2, center_x, center_y) alpha_ra_dy, alpha_dec_d...
hessian
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, x, y, amp, sigma, e1, e2, center_x=0, center_y=0):\n alpha_ra, alpha_dec = self.derivatives(x, y, amp, sigma, e1, e2,\n center_x, center_y)\n ...
def x(self, kwargs_profile, kwargs_aperture, kwargs_light, kwargs_anisotropy, num=1000): sigma_s2_sum = 0 for i in range(0, num): sigma_s2_draw = self._vel_disp_one(kwargs_profile, kwargs_aperture, kwargs_light, kwargs_anisotropy) sigma_s2_sum += sigma_s2_draw sigma_s2_averag...
vel_disp
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, kwargs_profile, kwargs_aperture, kwargs_light,\n kwargs_anisotropy, num=1000):\n sigma_s2_sum = 0\n for i in range(0, num):\n sigma_s2_dr...
def x(self, kwargs_profile, kwargs_aperture, kwargs_light, kwargs_anisotropy): while True: r = self.lightProfile.draw_light(kwargs_light) R, x, y = util.R_r(r) x_, y_ = util.displace_PSF(x, y, self.FWHM) bool = self.aperture.aperture_select(x_, y_, kwargs_aperture) if bool is...
vel_disp_one
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, kwargs_profile, kwargs_aperture, kwargs_light, kwargs_anisotropy):\n while True:\n r = self.lightProfile.draw_light(kwargs_light)\n R, x...
def x(self, r, R, kwargs_profile, kwargs_anisotropy, kwargs_light): beta = self.anisotropy.beta_r(r, kwargs_anisotropy) return (1 - beta * R ** 2 / r ** 2) * self.sigma_r2(r, kwargs_profile, kwargs_anisotropy, kwargs_light)
sigma_s2
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, r, R, kwargs_profile, kwargs_anisotropy, kwargs_light):\n beta = self.anisotropy.beta_r(r, kwargs_anisotropy)\n return (1 - beta * R ** 2 / r ** 2)...
def x(self, r, kwargs_profile, kwargs_anisotropy, kwargs_light): return self.jeans_solver.sigma_r2(r, kwargs_profile, kwargs_anisotropy, kwargs_light)
sigma_r2
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, r, kwargs_profile, kwargs_anisotropy, kwargs_light):\n return self.jeans_solver.sigma_r2(r, kwargs_profile, kwargs_anisotropy,\n kwargs_light)\...
def x(self, r, kwargs_profile, kwargs_anisotropy, kwargs_light): theta_E = kwargs_profile['theta_E'] gamma = kwargs_profile['gamma'] r_ani = kwargs_anisotropy['r_ani'] a = 0.551 * kwargs_light['r_eff'] rho0_r0_gamma = self._rho0_r0_gamma(theta_E, gamma) prefac1 = 4 * np.pi * const.G * a ** -gamm...
power_law_anisotropy
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, r, kwargs_profile, kwargs_anisotropy, kwargs_light):\n theta_E = kwargs_profile['theta_E']\n gamma = kwargs_profile['gamma']\n r_ani = kwargs_an...
def x(self, r, kwargs_profile, kwargs_anisotropy, kwargs_light): if self._mass_profile == 'power_law': if self._anisotropy_type == 'r_ani': if self._light_profile == 'Hernquist': sigma_r = self.power_law_anisotropy(r, kwargs_profile, kwargs_anisotropy, kwargs_...
sigma_r2
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, r, kwargs_profile, kwargs_anisotropy, kwargs_light):\n if self._mass_profile == 'power_law':\n if self._anisotropy_type == 'r_ani':\n ...
def x(self, ra, dec, kwargs_aperture): if self._aperture_type == 'shell': bool_list = self.shell_select(ra, dec, **kwargs_aperture) elif self._aperture_type == 'slit': bool_list = self.slit_select(ra, dec, **kwargs_aperture) else: raise ValueError('aperture type %s not implemented!' ...
aperture_select
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, ra, dec, kwargs_aperture):\n if self._aperture_type == 'shell':\n bool_list = self.shell_select(ra, dec, **kwargs_aperture)\n elif self._ape...
def x(self, kwargs_lens, kwargs_source, kwargs_lens_light, kwargs_else, inv_bool=False): wls_list, error_map_list, cov_param_list, param_list = [], [], [], [] for i in range(self._num_bands): wls_model, error_map, cov_param, param = self._imageModel_list[i ].image_linear_solve(kwargs_len...
image_linear_solve
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, kwargs_lens, kwargs_source, kwargs_lens_light, kwargs_else,\n inv_bool=False):\n wls_list, error_map_list, cov_param_list, param_list = [], [], [],...
def x(self, kwargs_lens, kwargs_source, kwargs_lens_light, kwargs_ps, source_marg=False): logL = 0 for i in range(self._num_bands): if self._compute_bool[i] is True: logL += self._imageModel_list[i].likelihood_data_given_model( kwargs_lens, kwargs_source, kwargs_lens_ligh...
likelihood_data_given_model
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, kwargs_lens, kwargs_source, kwargs_lens_light, kwargs_ps,\n source_marg=False):\n logL = 0\n for i in range(self._num_bands):\n if self._...
def x(self, kwargs_lens, kwargs_source, kwargs_lens_light, kwargs_ps, inv_bool=False): A = self.linear_response_matrix(kwargs_lens, kwargs_source, kwargs_lens_light, kwargs_ps) C_D_response, model_error_list = self.error_response(kwargs_lens, kwargs_ps ) d = self.data_response param,...
image_linear_solve
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, kwargs_lens, kwargs_source, kwargs_lens_light, kwargs_ps,\n inv_bool=False):\n A = self.linear_response_matrix(kwargs_lens, kwargs_source,\n ...
def x(self, kwargs_lens, kwargs_ps): C_D_response, model_error = [], [] for i in range(self._num_bands): if self._compute_bool[i] is True: kwargs_lens_i = [kwargs_lens[k] for k in self._idex_lens_list[i]] C_D_response_i, model_error_i = self._imageModel_list[i ].e...
error_response
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, kwargs_lens, kwargs_ps):\n C_D_response, model_error = [], []\n for i in range(self._num_bands):\n if self._compute_bool[i] is True:\n ...
def x(self, x, y, amp, sigma_x, sigma_y, center_x=0, center_y=0): c = amp / (2 * np.pi * sigma_x * sigma_y) delta_x = x - center_x delta_y = y - center_y exponent = -((delta_x / sigma_x) ** 2 + (delta_y / sigma_y) ** 2) / 2.0 return c * np.exp(exponent)
function
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, x, y, amp, sigma_x, sigma_y, center_x=0, center_y=0):\n c = amp / (2 * np.pi * sigma_x * sigma_y)\n delta_x = x - center_x\n delta_y = y - cente...
def x(self, x, y, amp, sigma_x, sigma_y, center_x=0, center_y=0): f_ = self.function(x, y, amp, sigma_x, sigma_y, center_x, center_y) return f_ * (center_x - x) / sigma_x ** 2, f_ * (center_y - y ) / sigma_y ** 2
derivatives
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, x, y, amp, sigma_x, sigma_y, center_x=0, center_y=0):\n f_ = self.function(x, y, amp, sigma_x, sigma_y, center_x, center_y)\n return f_ * (center_x...
def x(self, x, y, amp, sigma_x, sigma_y, center_x=0, center_y=0): f_ = self.function(x, y, amp, sigma_x, sigma_y, center_x, center_y) f_xx = f_ * (-1.0 / sigma_x ** 2 + (center_x - x) ** 2 / sigma_x ** 4) f_yy = f_ * (-1.0 / sigma_y ** 2 + (center_y - y) ** 2 / sigma_y ** 4) f_xy = f_ * (center_x - x) /...
hessian
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, x, y, amp, sigma_x, sigma_y, center_x=0, center_y=0):\n f_ = self.function(x, y, amp, sigma_x, sigma_y, center_x, center_y)\n f_xx = f_ * (-1.0 / s...
def x(self, Rs, rho0, c): return 4 * np.pi * rho0 * Rs ** 3 * (np.log(1.0 + c) - c / (1.0 + c))
M200
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, Rs, rho0, c):\n return 4 * np.pi * rho0 * Rs ** 3 * (np.log(1.0 + c) - c / (1.0 + c))\n", "role": "user" }, { "content": "M200", "role...
def x(self, c): return 200.0 / 3 * self.rhoc * c ** 3 / (np.log(1.0 + c) - c / (1.0 + c))
rho0_c
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, c):\n return 200.0 / 3 * self.rhoc * c ** 3 / (np.log(1.0 + c) - c / (1.0 + c))\n", "role": "user" }, { "content": "rho0_c", "role": "...
def x(self, rho0): if not hasattr(self, '_c_rho0_interp'): c_array = np.linspace(0.1, 10, 100) rho0_array = self.rho0_c(c_array) from scipy import interpolate self._c_rho0_interp = interpolate.InterpolatedUnivariateSpline( rho0_array, c_array, w=None, bbox=[None, None], k...
c_rho0
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, rho0):\n if not hasattr(self, '_c_rho0_interp'):\n c_array = np.linspace(0.1, 10, 100)\n rho0_array = self.rho0_c(c_array)\n from...
def x(self, M, z): A = 5.22 B = -0.072 C = -0.42 M_pivot = 2.0 * 10 ** 12 return A * (M / M_pivot) ** B * (1 + z) ** C
c_M_z
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, M, z):\n A = 5.22\n B = -0.072\n C = -0.42\n M_pivot = 2.0 * 10 ** 12\n return A * (M / M_pivot) ** B * (1 + z) ** C\n", "role": "user...
def x(self, M, z): c = self.c_M_z(M, z) r200 = self.r200_M(M) rho0 = self.rho0_c(c) Rs = r200 / c return r200, rho0, c, Rs
profileMain
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, M, z):\n c = self.c_M_z(M, z)\n r200 = self.r200_M(M)\n rho0 = self.rho0_c(c)\n Rs = r200 / c\n return r200, rho0, c, Rs\n", "role": "...
def x(self, image_model_class, kwargs_lens, kwargs_source, kwargs_lens_light, kwargs_ps): model, error_map, cov_param, param = image_model_class.image_linear_solve( kwargs_lens, kwargs_source, kwargs_lens_light, kwargs_ps) data = image_model_class.Data.data mask = image_model_class.ImageNumerics...
image_single_point_source
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, image_model_class, kwargs_lens, kwargs_source,\n kwargs_lens_light, kwargs_ps):\n model, error_map, cov_param, param = image_model_class.image_line...
def x(kernel_list_new, kernel_old, sigma_bkg, factor=1, stacking_option= 'median', symmetry=1): n = int(len(kernel_list_new) * symmetry) angle = 360.0 / symmetry kernelsize = len(kernel_old) kernel_list = np.zeros((n, kernelsize, kernelsize)) i = 0 for kernel_new in kernel_list_new: ...
combine_psf
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(kernel_list_new, kernel_old, sigma_bkg, factor=1, stacking_option=\n 'median', symmetry=1):\n n = int(len(kernel_list_new) * symmetry)\n angle = 360.0...
def x(self, D_d, D_delta_t): if self._kde_type == 'scipy_gaussian': density = self._PDF_kernel([D_d, D_delta_t]) logL = np.log(density) else: x = np.array([[D_d], [D_delta_t]]) logL = self._kde.score_samples(x.T) return logL
logLikelihood
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, D_d, D_delta_t):\n if self._kde_type == 'scipy_gaussian':\n density = self._PDF_kernel([D_d, D_delta_t])\n logL = np.log(density)\n e...
def x(self, r, rho0, Rs): rho = rho0 / (r / Rs * (1 + r / Rs) ** 3) return rho
density
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, r, rho0, Rs):\n rho = rho0 / (r / Rs * (1 + r / Rs) ** 3)\n return rho\n", "role": "user" }, { "content": "density", "role": "assis...
def x(self, x, y, rho0, Rs, center_x=0, center_y=0): x_ = x - center_x y_ = y - center_y r = np.sqrt(x_ ** 2 + y_ ** 2) X = r / Rs sigma0 = self.rho2sigma(rho0, Rs) if isinstance(X, int) or isinstance(X, float): if X == 1: X = 1.000001 else: X[X == 1] = 1.000001 ...
density_2d
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, x, y, rho0, Rs, center_x=0, center_y=0):\n x_ = x - center_x\n y_ = y - center_y\n r = np.sqrt(x_ ** 2 + y_ ** 2)\n X = r / Rs\n sigma0 = ...
def x(self, r, rho0, Rs): mass_3d = 2 * np.pi * Rs ** 3 * rho0 * r ** 2 / (r + Rs) ** 2 return mass_3d
mass_3d
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, r, rho0, Rs):\n mass_3d = 2 * np.pi * Rs ** 3 * rho0 * r ** 2 / (r + Rs) ** 2\n return mass_3d\n", "role": "user" }, { "content": "mass...
def x(self, r, sigma0, Rs): rho0 = self.sigma2rho(sigma0, Rs) return self.mass_3d(r, rho0, Rs)
mass_3d_lens
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, r, sigma0, Rs):\n rho0 = self.sigma2rho(sigma0, Rs)\n return self.mass_3d(r, rho0, Rs)\n", "role": "user" }, { "content": "mass_3d_lens...
def x(self, r, rho0, Rs): sigma0 = self.rho2sigma(rho0, Rs) return self.mass_2d_lens(r, sigma0, Rs)
mass_2d
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, r, rho0, Rs):\n sigma0 = self.rho2sigma(rho0, Rs)\n return self.mass_2d_lens(r, sigma0, Rs)\n", "role": "user" }, { "content": "mass_2d...
def x(self, r, sigma0, Rs): X = r / Rs alpha_r = 2 * sigma0 * Rs * X * (1 - self._F(X)) / (X ** 2 - 1) mass_2d = alpha_r * r * np.pi return mass_2d
mass_2d_lens
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, r, sigma0, Rs):\n X = r / Rs\n alpha_r = 2 * sigma0 * Rs * X * (1 - self._F(X)) / (X ** 2 - 1)\n mass_2d = alpha_r * r * np.pi\n return mass_...
def x(self, rho0, Rs): m_tot = 2 * np.pi * rho0 * Rs ** 3 return m_tot
mass_tot
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, rho0, Rs):\n m_tot = 2 * np.pi * rho0 * Rs ** 3\n return m_tot\n", "role": "user" }, { "content": "mass_tot", "role": "assistant" ...
def x(self, x, y, rho0, Rs, center_x=0, center_y=0): x_ = x - center_x y_ = y - center_y r = np.sqrt(x_ ** 2 + y_ ** 2) M = self.mass_tot(rho0, Rs) pot = M / (r + Rs) return pot
grav_pot
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, x, y, rho0, Rs, center_x=0, center_y=0):\n x_ = x - center_x\n y_ = y - center_y\n r = np.sqrt(x_ ** 2 + y_ ** 2)\n M = self.mass_tot(rho0, R...
def x(self, x, y, sigma0, Rs, center_x=0, center_y=0): x_ = x - center_x y_ = y - center_y r = np.sqrt(x_ ** 2 + y_ ** 2) if isinstance(r, int) or isinstance(r, float): r = max(self._s, r) else: r[r < self._s] = self._s X = r / Rs f_ = sigma0 * Rs ** 2 * (np.log(X ** 2 / 4.0)...
function
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, x, y, sigma0, Rs, center_x=0, center_y=0):\n x_ = x - center_x\n y_ = y - center_y\n r = np.sqrt(x_ ** 2 + y_ ** 2)\n if isinstance(r, int) o...
def x(self, x, y, kwargs, k=None): return self.lens_model.ray_shooting(x, y, kwargs, k=k)
ray_shooting
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, x, y, kwargs, k=None):\n return self.lens_model.ray_shooting(x, y, kwargs, k=k)\n", "role": "user" }, { "content": "ray_shooting", "ro...
def x(self, x_image, y_image, x_source, y_source, kwargs_lens): if hasattr(self.lens_model, 'fermat_potential'): return self.lens_model.fermat_potential(x_image, y_image, x_source, y_source, kwargs_lens) else: raise ValueError( 'Fermat potential is not defined in multi-pl...
fermat_potential
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, x_image, y_image, x_source, y_source, kwargs_lens):\n if hasattr(self.lens_model, 'fermat_potential'):\n return self.lens_model.fermat_potentia...
def x(self, x, y, kwargs, k=None): return self.lens_model.potential(x, y, kwargs, k=k)
potential
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, x, y, kwargs, k=None):\n return self.lens_model.potential(x, y, kwargs, k=k)\n", "role": "user" }, { "content": "potential", "role": "...
def x(self, x, y, kwargs, k=None): return self.lens_model.alpha(x, y, kwargs, k=k)
alpha
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, x, y, kwargs, k=None):\n return self.lens_model.alpha(x, y, kwargs, k=k)\n", "role": "user" }, { "content": "alpha", "role": "assistan...
def x(self, x, y, kwargs, k=None): return self.lens_model.hessian(x, y, kwargs, k=k)
hessian
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, x, y, kwargs, k=None):\n return self.lens_model.hessian(x, y, kwargs, k=k)\n", "role": "user" }, { "content": "hessian", "role": "assi...
def x(self, x, y, kwargs, diff=1e-06): f_xx, f_xy, f_yx, f_yy = self.hessian(x, y, kwargs) f_xx_dx, f_xy_dx, f_yx_dx, f_yy_dx = self.hessian(x + diff, y, kwargs) f_xx_dy, f_xy_dy, f_yx_dy, f_yy_dy = self.hessian(x, y + diff, kwargs) f_xxx = (f_xx_dx - f_xx) / diff f_xxy = (f_xx_dy - f_xx) / diff ...
flexion
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, x, y, kwargs, diff=1e-06):\n f_xx, f_xy, f_yx, f_yy = self.hessian(x, y, kwargs)\n f_xx_dx, f_xy_dx, f_yx_dx, f_yy_dx = self.hessian(x + diff, y, k...
def x(self, args): H0 = args[0] omega_m = self.omega_m_fixed Ode0 = self._omega_lambda_fixed logL, bool = self.prior_H0(H0) if bool is True: logL += self.LCDM_lensLikelihood(H0, omega_m, Ode0) return logL, None
X2_chain_H0
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, args):\n H0 = args[0]\n omega_m = self.omega_m_fixed\n Ode0 = self._omega_lambda_fixed\n logL, bool = self.prior_H0(H0)\n if bool is True:...
def x(self, args): H0 = args[0] h = H0 / 100.0 omega_m = self.omega_mh2_fixed / h ** 2 Ode0 = self._omega_lambda_fixed logL, bool = self.prior_omega_mh2(h, omega_m) if bool is True: logL += self.LCDM_lensLikelihood(H0, omega_m, Ode0) return logL, None
X2_chain_omega_mh2
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, args):\n H0 = args[0]\n h = H0 / 100.0\n omega_m = self.omega_mh2_fixed / h ** 2\n Ode0 = self._omega_lambda_fixed\n logL, bool = self.pri...
def x(self, args): [H0, omega_m] = args Ode0 = self._omega_lambda_fixed logL_H0, bool_H0 = self.prior_H0(H0) logL_omega_m, bool_omega_m = self.prior_omega_m(omega_m) logL = logL_H0 + logL_omega_m if bool_H0 is True and bool_omega_m is True: logL += self.LCDM_lensLikelihood(H0, omega_m, O...
X2_chain_H0_omgega_m
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, args):\n [H0, omega_m] = args\n Ode0 = self._omega_lambda_fixed\n logL_H0, bool_H0 = self.prior_H0(H0)\n logL_omega_m, bool_omega_m = self.pr...
def x(self, H0, H0_min=0, H0_max=200): if H0 < H0_min or H0 > H0_max: penalty = -10 ** 15 return penalty, False else: return 0, True
prior_H0
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, H0, H0_min=0, H0_max=200):\n if H0 < H0_min or H0 > H0_max:\n penalty = -10 ** 15\n return penalty, False\n else:\n return 0, ...
def x(self, omega_m, omega_m_min=0, omega_m_max=1): if omega_m < omega_m_min or omega_m > omega_m_max: penalty = -10 ** 15 return penalty, False else: return 0, True
prior_omega_m
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, omega_m, omega_m_min=0, omega_m_max=1):\n if omega_m < omega_m_min or omega_m > omega_m_max:\n penalty = -10 ** 15\n return penalty, Fal...
def x(self, n_walkers, n_run, n_burn, mean_start, sigma_start): sampler = emcee.EnsembleSampler(n_walkers, self.cosmoParam.numParam, self.chain.likelihood) p0 = emcee.utils.sample_ball(mean_start, sigma_start, n_walkers) new_pos, _, _, _ = sampler.run_mcmc(p0, n_burn) sampler.reset() store =...
mcmc_emcee
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, n_walkers, n_run, n_burn, mean_start, sigma_start):\n sampler = emcee.EnsembleSampler(n_walkers, self.cosmoParam.numParam,\n self.chain.likelih...
def x(numPix, deltaPix, exposure_time=1, sigma_bkg=1, inverse=False): mean = 0.0 (x_grid, y_grid, ra_at_xy_0, dec_at_xy_0, x_at_radec_0, y_at_radec_0, Mpix2coord, Mcoord2pix) = (util.make_grid_with_coordtransform( numPix=numPix, deltapix=deltaPix, subgrid_res=1, inverse=inverse)) exposure_ma...
data_configure_simple
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(numPix, deltaPix, exposure_time=1, sigma_bkg=1, inverse=False):\n mean = 0.0\n (x_grid, y_grid, ra_at_xy_0, dec_at_xy_0, x_at_radec_0, y_at_radec_0,\n ...
def x(psf_type='GAUSSIAN', fwhm=1, kernelsize=11, deltaPix=1, truncate=6, kernel=None): if psf_type == 'GAUSSIAN': sigma = util.fwhm2sigma(fwhm) sigma_axis = sigma gaussian = Gaussian() x_grid, y_grid = util.make_grid(kernelsize, deltaPix) kernel_large = gaussian.function...
psf_configure_simple
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(psf_type='GAUSSIAN', fwhm=1, kernelsize=11, deltaPix=1, truncate=6,\n kernel=None):\n if psf_type == 'GAUSSIAN':\n sigma = util.fwhm2sigma(fwhm)\n...
def x(self, theta_E, w_c, w_t): if not w_t > w_c: w_t, w_c = w_c, w_t s_scale_1 = w_c s_scale_2 = w_t f_x_1, f_y_1 = self.nie.derivatives(1, 0, theta_E=1, e1=0, e2=0, s_scale=s_scale_1) f_x_2, f_y_2 = self.nie.derivatives(1, 0, theta_E=1, e1=0, e2=0, s_scale=s_scale_2) f_...
theta_E_convert
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, theta_E, w_c, w_t):\n if not w_t > w_c:\n w_t, w_c = w_c, w_t\n s_scale_1 = w_c\n s_scale_2 = w_t\n f_x_1, f_y_1 = self.nie.derivative...
def x(self, x, y, center_x=0, center_y=0, **kwargs): assert 'norm' in kwargs.keys( ), "key word arguments must contain 'norm', the normalization of deflection angle in units of arcsec." x_ = x - center_x y_ = y - center_y R = np.sqrt(x_ ** 2 + y_ ** 2) alpha = self._interp(x_, y_, **kwargs) ...
derivatives
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, x, y, center_x=0, center_y=0, **kwargs):\n assert 'norm' in kwargs.keys(\n ), \"key word arguments must contain 'norm', the normalization of de...
def x(self, x, y, center_x=0, center_y=0, **kwargs): diff = 1e-06 alpha_ra, alpha_dec = self.derivatives(x, y, center_x=center_x, center_y=center_y, **kwargs) alpha_ra_dx, alpha_dec_dx = self.derivatives(x + diff, y, center_x= center_x, center_y=center_y, **kwargs) alpha_ra_dy, alpha_dec...
hessian
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, x, y, center_x=0, center_y=0, **kwargs):\n diff = 1e-06\n alpha_ra, alpha_dec = self.derivatives(x, y, center_x=center_x,\n center_y=center_...
def x(self, x, y, n_sersic, R_sersic, k_eff, e1, e2, center_x=0, center_y=0): phi_G, q = param_util.ellipticity2phi_q(e1, e2) x_, y_ = self._coord_transf(x, y, q, phi_G, center_x, center_y) f_ = self.sersic.function(x_, y_, n_sersic, R_sersic, k_eff) return f_
function
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, x, y, n_sersic, R_sersic, k_eff, e1, e2, center_x=0, center_y=0):\n phi_G, q = param_util.ellipticity2phi_q(e1, e2)\n x_, y_ = self._coord_transf(x...
def x(self, x, y, n_sersic, R_sersic, k_eff, e1, e2, center_x=0, center_y=0): phi_G, q = param_util.ellipticity2phi_q(e1, e2) e = abs(1.0 - q) cos_phi = np.cos(phi_G) sin_phi = np.sin(phi_G) x_, y_ = self._coord_transf(x, y, q, phi_G, center_x, center_y) f_x_prim, f_y_prim = self.sersic.derivati...
derivatives
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, x, y, n_sersic, R_sersic, k_eff, e1, e2, center_x=0, center_y=0):\n phi_G, q = param_util.ellipticity2phi_q(e1, e2)\n e = abs(1.0 - q)\n cos_phi...
def x(grid2d, x_pos, y_pos, kernel, order=1): x_int = int(round(x_pos)) y_int = int(round(y_pos)) shift_x = x_int - x_pos shift_y = y_int - y_pos kernel_shifted = interp.shift(kernel, [-shift_y, -shift_x], order=order) return add_layer2image_int(grid2d, x_int, y_int, kernel_shifted)
add_layer2image
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(grid2d, x_pos, y_pos, kernel, order=1):\n x_int = int(round(x_pos))\n y_int = int(round(y_pos))\n shift_x = x_int - x_pos\n shift_y = y_int - y_pos...
def x(grid2d, x_pos, y_pos, kernel): nx, ny = np.shape(kernel) if nx % 2 == 0: raise ValueError('kernel needs odd numbers of pixels') num_x, num_y = np.shape(grid2d) x_int = int(round(x_pos)) y_int = int(round(y_pos)) k_x, k_y = np.shape(kernel) k_l2_x = int((k_x - 1) / 2) k_l2_y...
add_layer2image_int
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(grid2d, x_pos, y_pos, kernel):\n nx, ny = np.shape(kernel)\n if nx % 2 == 0:\n raise ValueError('kernel needs odd numbers of pixels')\n num_x, ...
def x(image, sigma_bkd): if sigma_bkd < 0: raise ValueError( 'Sigma background is smaller than zero! Please use positive values.' ) nx, ny = np.shape(image) background = np.random.randn(nx, ny) * sigma_bkd return background
add_background
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, sigma_bkd):\n if sigma_bkd < 0:\n raise ValueError(\n 'Sigma background is smaller than zero! Please use positive values.'\n ...
def x(image, exp_time): """ adds a poison (or Gaussian) distributed noise with mean given by surface brightness """ if isinstance(exp_time, int) or isinstance(exp_time, float): if exp_time <= 0: exp_time = 1 else: mean_exp_time = np.mean(exp_time) exp_time[exp_tim...
add_poisson
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, exp_time):\n \"\"\"\n adds a poison (or Gaussian) distributed noise with mean given by surface brightness\n \"\"\"\n if isinstance(exp_time,...
def x(x_in, y_in, input_values, x_out, y_out): interp_2d = scipy.interpolate.interp2d(x_in, y_in, input_values, kind= 'linear') out_values = interp_2d.__call__(x_out, y_out) return out_values
re_size_array
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(x_in, y_in, input_values, x_out, y_out):\n interp_2d = scipy.interpolate.interp2d(x_in, y_in, input_values, kind=\n 'linear')\n out_values = inter...
def x(image, symmetry): img_sym = np.zeros_like(image) angle = 360.0 / symmetry for i in range(symmetry): img_sym += rotateImage(image, angle * i) img_sym /= symmetry return img_sym
symmetry_average
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, symmetry):\n img_sym = np.zeros_like(image)\n angle = 360.0 / symmetry\n for i in range(symmetry):\n img_sym += rotateImage(image, angle...
def x(x_mins, y_mins, min_distance): n = len(x_mins) idex = [] for i in range(n): if i == 0: pass else: for j in range(0, i): if abs(x_mins[i] - x_mins[j]) < min_distance and abs(y_mins [i] - y_mins[j]) < min_distance: ...
findOverlap
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(x_mins, y_mins, min_distance):\n n = len(x_mins)\n idex = []\n for i in range(n):\n if i == 0:\n pass\n else:\n fo...
def x(x_coord, y_coord, numPix, deltapix): idex = [] min = -deltapix * numPix / 2 max = deltapix * numPix / 2 for i in range(len(x_coord)): if x_coord[i] < min or x_coord[i] > max or y_coord[i] < min or y_coord[ i] > max: idex.append(i) x_coord = np.delete(x_coord, id...
coordInImage
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(x_coord, y_coord, numPix, deltapix):\n idex = []\n min = -deltapix * numPix / 2\n max = deltapix * numPix / 2\n for i in range(len(x_coord)):\n ...
def x(image, factor=1): if factor < 1: raise ValueError('scaling factor in re-sizing %s < 1' % factor) f = int(factor) nx, ny = np.shape(image) if int(nx / f) == nx / f and int(ny / f) == ny / f: small = image.reshape([int(nx / f), f, int(ny / f), f]).mean(3).mean(1) return small...
re_size
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, factor=1):\n if factor < 1:\n raise ValueError('scaling factor in re-sizing %s < 1' % factor)\n f = int(factor)\n nx, ny = np.shape(imag...
def x(bin_size, image, wht_map, sigma_bkg, ra_coords, dec_coords, idex_mask): numPix = int(len(image) / bin_size) numPix_precut = numPix * bin_size factor = int(len(image) / numPix) if not numPix * bin_size == len(image): image_precut = image[0:numPix_precut, 0:numPix_precut] else: i...
rebin_image
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(bin_size, image, wht_map, sigma_bkg, ra_coords, dec_coords, idex_mask):\n numPix = int(len(image) / bin_size)\n numPix_precut = numPix * bin_size\n fa...
def x(factor, x_at_radec_0, y_at_radec_0, Mpix2coord, Mcoord2pix): factor = int(factor) Mcoord2pix_resized = Mcoord2pix / factor Mpix2coord_resized = Mpix2coord * factor x_at_radec_0_resized = (x_at_radec_0 + 0.5) / factor - 0.5 y_at_radec_0_resized = (y_at_radec_0 + 0.5) / factor - 0.5 ra_at_xy...
rebin_coord_transform
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(factor, x_at_radec_0, y_at_radec_0, Mpix2coord, Mcoord2pix):\n factor = int(factor)\n Mcoord2pix_resized = Mcoord2pix / factor\n Mpix2coord_resized = ...
def x(image_list, wht_list, sigma_list): image_stacked = np.zeros_like(image_list[0]) wht_stacked = np.zeros_like(image_stacked) sigma_stacked = 0.0 for i in range(len(image_list)): image_stacked += image_list[i] * wht_list[i] sigma_stacked += sigma_list[i] ** 2 * np.median(wht_list[i]) ...
stack_images
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image_list, wht_list, sigma_list):\n image_stacked = np.zeros_like(image_list[0])\n wht_stacked = np.zeros_like(image_stacked)\n sigma_stacked = 0.0\n...
def x(image, numPix): nx, ny = image.shape if nx < numPix or ny < numPix: print('WARNING: image can not be resized, in routine cut_edges.') return image if nx % 2 == 0 or ny % 2 == 0 or numPix % 2 == 0: print( 'WARNING: image or cutout side are even number. This routine o...
cut_edges
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(image, numPix):\n nx, ny = image.shape\n if nx < numPix or ny < numPix:\n print('WARNING: image can not be resized, in routine cut_edges.')\n ...
def x(self): H0_range = np.linspace(10, 100, 90) omega_m_range = np.linspace(0.05, 1, 95) grid2d = np.dstack(np.meshgrid(H0_range, omega_m_range)).reshape(-1, 2) H0_grid = grid2d[:, 0] omega_m_grid = grid2d[:, 1] Dd_grid = np.zeros_like(H0_grid) Ds_Dds_grid = np.zeros_like(H0_grid) for i...
make_interpolation
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n H0_range = np.linspace(10, 100, 90)\n omega_m_range = np.linspace(0.05, 1, 95)\n grid2d = np.dstack(np.meshgrid(H0_range, omega_m_range)).res...
def x(self, Dd, Ds_Dds): if not hasattr(self, '_f_H0') or not hasattr(self, '_f_omega_m'): self._make_interpolation() H0 = self._f_H0(Dd, Ds_Dds) print(H0, 'H0') omega_m = self._f_omega_m(Dd, Ds_Dds) Dd_new, Ds_Dds_new = self.cosmo2Dd_Ds_Dds(H0[0], omega_m[0]) if abs(Dd - Dd_new) / Dd > ...
get_cosmo
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, Dd, Ds_Dds):\n if not hasattr(self, '_f_H0') or not hasattr(self, '_f_omega_m'):\n self._make_interpolation()\n H0 = self._f_H0(Dd, Ds_Dds)\...
def x(self, r, kwargs_profile): kwargs = copy.deepcopy(kwargs_profile) try: del kwargs['center_x'] del kwargs['center_y'] except: pass out = integrate.quad(lambda x: self._profile.density(x, **kwargs) * 4 * np.pi * x ** 2, 0, r) return out[0]
mass_enclosed_3d
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, r, kwargs_profile):\n kwargs = copy.deepcopy(kwargs_profile)\n try:\n del kwargs['center_x']\n del kwargs['center_y']\n except:\n ...
def x(self, r, kwargs_profile): kwargs = copy.deepcopy(kwargs_profile) try: del kwargs['center_x'] del kwargs['center_y'] except: pass out = integrate.quad(lambda x: 2 * self._profile.density(np.sqrt(x ** 2 + r ** 2), **kwargs), 0, 100) return out[0]
density_2d
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, r, kwargs_profile):\n kwargs = copy.deepcopy(kwargs_profile)\n try:\n del kwargs['center_x']\n del kwargs['center_y']\n except:\n ...
def x(self, r, kwargs_profile): kwargs = copy.deepcopy(kwargs_profile) try: del kwargs['center_x'] del kwargs['center_y'] except: pass out = integrate.quad(lambda x: self.density_2d(x, kwargs) * 2 * np.pi * x, 0, r) return out[0]
mass_enclosed_2d
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, r, kwargs_profile):\n kwargs = copy.deepcopy(kwargs_profile)\n try:\n del kwargs['center_x']\n del kwargs['center_y']\n except:\n ...
def x(self, x_shift, y_shift, pixel_unit=False): self._coords.shift_coordinate_grid(x_shift, y_shift, pixel_unit=pixel_unit) self._x_grid, self._y_grid = self._coords.coordinate_grid(self.nx)
shift_coordinate_grid
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, x_shift, y_shift, pixel_unit=False):\n self._coords.shift_coordinate_grid(x_shift, y_shift, pixel_unit=pixel_unit)\n self._x_grid, self._y_grid = s...
def x(self): if not hasattr(self, '_C_D'): if self._noise_map is not None: self._C_D = self._noise_map ** 2 else: self._C_D = self.covariance_matrix(self.data, self. background_rms, self.exposure_map) return self._C_D
C_D
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n if not hasattr(self, '_C_D'):\n if self._noise_map is not None:\n self._C_D = self._noise_map ** 2\n else:\n se...
def x(self, data, background_rms=1, exposure_map=1, noise_map=None, verbose =False): if noise_map is not None: return noise_map ** 2 if isinstance(exposure_map, int) or isinstance(exposure_map, float): if exposure_map <= 0: exposure_map = 1 else: mean_exp_time = np.me...
covariance_matrix
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, data, background_rms=1, exposure_map=1, noise_map=None, verbose\n =False):\n if noise_map is not None:\n return noise_map ** 2\n if isins...
def x(self, source_x, source_y, kwargs_lens, search_window=10, precision_limit=10 ** -10, arrival_time_sort=True, x_center=0, y_center =0, num_random=1000, verbose=False): x_solve, y_solve = [], [] for i in range(num_random): x_init = np.random.uniform(-search_window / 2.0, search_window / 2 ...
image_position_stochastic
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, source_x, source_y, kwargs_lens, search_window=10,\n precision_limit=10 ** -10, arrival_time_sort=True, x_center=0, y_center\n =0, num_random=1000,...
def x(self, sourcePos_x, sourcePos_y, kwargs_lens, min_distance=0.1, search_window=10, precision_limit=10 ** -10, num_iter_max=100, arrival_time_sort=True, initial_guess_cut=True, verbose=False, x_center =0, y_center=0, num_random=0): numPix = int(round(search_window / min_distance) + 0.5) x_grid, y...
image_position_from_source
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, sourcePos_x, sourcePos_y, kwargs_lens, min_distance=0.1,\n search_window=10, precision_limit=10 ** -10, num_iter_max=100,\n arrival_time_sort=True,...
def x(self, x_mins, y_mins, kwargs_lens): if hasattr(self.lensModel, '_no_potential'): raise Exception( 'Instance of lensModel passed to this class does not compute the lensing potential, and therefore cannot compute time delays.' ) if len(x_mins) <= 1: return x_mins, y_m...
sort_arrival_times
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, x_mins, y_mins, kwargs_lens):\n if hasattr(self.lensModel, '_no_potential'):\n raise Exception(\n 'Instance of lensModel passed to t...
def x(cls, kwargs_ps): pos_bool = True for kwargs in kwargs_ps: point_amp = kwargs['point_amp'] for amp in point_amp: if amp < 0: pos_bool = False break return pos_bool
check_positive_flux
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(cls, kwargs_ps):\n pos_bool = True\n for kwargs in kwargs_ps:\n point_amp = kwargs['point_amp']\n for amp in point_amp:\n if amp...
def x(self): (kwargs_lens, kwargs_source, kwargs_lens_light, kwargs_ps, kwargs_cosmo ) = self.best_fit(bijective=False) param_class = self._param_class likelihoodModule = self.likelihoodModule logL, _ = likelihoodModule.logL(param_class.kwargs2args(kwargs_lens, kwargs_source, kwargs_lens...
best_fit_likelihood
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self):\n (kwargs_lens, kwargs_source, kwargs_lens_light, kwargs_ps, kwargs_cosmo\n ) = self.best_fit(bijective=False)\n param_class = self._param_...
def x(self, n_burn, n_run, walkerRatio, sigma_scale=1, threadCount=1, init_samples=None, re_use_samples=True): param_class = self._param_class mcmc_class = Sampler(likelihoodModule=self.likelihoodModule) mean_start = param_class.kwargs2args(self._lens_temp, self._source_temp, self._lens_light_te...
mcmc
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, n_burn, n_run, walkerRatio, sigma_scale=1, threadCount=1,\n init_samples=None, re_use_samples=True):\n param_class = self._param_class\n mcmc_cl...
def x(self, n_particles, n_iterations, sigma_scale=1, print_key='PSO', threadCount=1): param_class = self._param_class init_pos = param_class.kwargs2args(self._lens_temp, self._source_temp, self._lens_light_temp, self._ps_temp, self._cosmo_temp) lens_sigma, source_sigma, lens_light_sigma, ps_sig...
pso
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, n_particles, n_iterations, sigma_scale=1, print_key='PSO',\n threadCount=1):\n param_class = self._param_class\n init_pos = param_class.kwargs2a...
def x(self, num_iter=10, no_break=True, stacking_method='median', block_center_neighbour=0, keep_psf_error_map=True, psf_symmetry=1, psf_iter_factor=1, verbose=True, compute_bands=None): kwargs_model = self._updateManager.kwargs_model param_class = self._param_class lens_updated = param_class.update...
psf_iteration
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, num_iter=10, no_break=True, stacking_method='median',\n block_center_neighbour=0, keep_psf_error_map=True, psf_symmetry=1,\n psf_iter_factor=1, ver...
def x(self, n_particles=10, n_iterations=10, lowerLimit=-0.2, upperLimit= 0.2, threadCount=1, compute_bands=None): kwargs_model = self._updateManager.kwargs_model param_class = self._updateManager.param_class(self._lens_temp) lens_updated = param_class.update_lens_scaling(self._cosmo_temp, self. ...
align_images
[ { "content": "Given the source code of a python function, suggest a fitting name for the function.", "role": "system" }, { "content": "def x(self, n_particles=10, n_iterations=10, lowerLimit=-0.2, upperLimit=\n 0.2, threadCount=1, compute_bands=None):\n kwargs_model = self._updateManager.kwarg...