source_code stringlengths 45 7.24k | function_name stringlengths 1 111 | messages list |
|---|---|---|
def x(knots, order):
if isinstance(knots, np.ndarray) and knots.ndim > 1:
raise ValueError('knots must be a list or a rank-1 array')
knots = list(knots)
return np.array([knots[0]] * order + knots + [knots[-1]] * order)
| augknt | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(knots, order):\n if isinstance(knots, np.ndarray) and knots.ndim > 1:\n raise ValueError('knots must be a list or a rank-1 array')\n knots = list(... |
def x(t, k):
t = np.atleast_1d(t)
if t.ndim > 1:
raise ValueError('t must be a list or a rank-1 array')
n = t.shape[0]
u = max(0, n - (k - 1))
out = np.empty((u,), dtype=t.dtype)
for j in range(u):
out[j] = sum(t[j:j + k]) / k
return out
| aveknt | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(t, k):\n t = np.atleast_1d(t)\n if t.ndim > 1:\n raise ValueError('t must be a list or a rank-1 array')\n n = t.shape[0]\n u = max(0, n - (k... |
def x(tau, order):
tau = np.atleast_1d(tau)
k = order + 1
if tau.ndim > 1:
raise ValueError('tau must be a list or a rank-1 array')
if len(tau) < k:
k = len(tau)
if not (tau == sorted(tau)).all():
raise ValueError('tau must be nondecreasing')
u = len(tau) - k
for i in... | aptknt | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(tau, order):\n tau = np.atleast_1d(tau)\n k = order + 1\n if tau.ndim > 1:\n raise ValueError('tau must be a list or a rank-1 array')\n if l... |
def x(t):
t = np.atleast_1d(t)
if t.ndim > 1:
raise ValueError('t must be a list or a rank-1 array')
out = []
e = None
for k in range(t.shape[0]):
if t[k] != e:
e = t[k]
count = 0
else:
count += 1
out.append(count)
return np.arr... | knt2mlt | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(t):\n t = np.atleast_1d(t)\n if t.ndim > 1:\n raise ValueError('t must be a list or a rank-1 array')\n out = []\n e = None\n for k in ran... |
def x(knots, order, tau):
m = knt2mlt(tau)
B = bspline.Bspline(knots, order)
dummy = B(0.0)
nbasis = len(dummy)
A = np.empty((tau.shape[0], nbasis), dtype=dummy.dtype)
for i, item in enumerate(zip(tau, m)):
taui, mi = item
f = B.diff(order=mi)
A[i, :] = f(taui)
return... | spcol | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(knots, order, tau):\n m = knt2mlt(tau)\n B = bspline.Bspline(knots, order)\n dummy = B(0.0)\n nbasis = len(dummy)\n A = np.empty((tau.shape[0], ... |
def x(self, xi):
return np.where(np.all([self.knot_vector[:-1] <= xi, xi < self.
knot_vector[1:]], axis=0), 1.0, 0.0)
| basis0 | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, xi):\n return np.where(np.all([self.knot_vector[:-1] <= xi, xi < self.\n knot_vector[1:]], axis=0), 1.0, 0.0)\n",
"role": "user"
},
{
... |
def x(self, xi, p, compute_derivatives=False):
if p == 0:
return self.__basis0(xi)
else:
basis_p_minus_1 = self.__basis(xi, p - 1)
first_term_numerator = xi - self.knot_vector[:-p]
first_term_denominator = self.knot_vector[p:] - self.knot_vector[:-p]
second_term_numerator = self.knot... | basis | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, xi, p, compute_derivatives=False):\n if p == 0:\n return self.__basis0(xi)\n else:\n basis_p_minus_1 = self.__basis(xi, p - 1)\n f... |
def x(self, xi):
return self.__basis(xi, self.p, compute_derivatives=True)
| d | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, xi):\n return self.__basis(xi, self.p, compute_derivatives=True)\n",
"role": "user"
},
{
"content": "d",
"role": "assistant"
}
] |
def x(self):
try:
import matplotlib.pyplot as plt
except ImportError:
from sys import stderr
print(
'ERROR: matplotlib.pyplot not found, matplotlib must be installed to use this function'
, file=stderr)
raise
x_min = np.min(self.knot_vector)
x_max ... | plot | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n try:\n import matplotlib.pyplot as plt\n except ImportError:\n from sys import stderr\n print(\n 'ERROR: matplot... |
def x(self):
assert self.p > 0, 'order of Bspline must be > 0'
t = self.knot_vector
p = self.p
Bi = Bspline(t[:-1], p - 1)
Bip1 = Bspline(t[1:], p - 1)
numer1 = +p
numer2 = -p
denom1 = t[p:-1] - t[:-(p + 1)]
denom2 = t[p + 1:] - t[1:-p]
with np.errstate(divide='ignore', invalid='... | diff_internal | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n assert self.p > 0, 'order of Bspline must be > 0'\n t = self.knot_vector\n p = self.p\n Bi = Bspline(t[:-1], p - 1)\n Bip1 = Bspline(t[... |
def x(self, order=1):
order = int(order)
if order < 0:
raise ValueError('order must be >= 0, got %d' % order)
if order == 0:
return self.__call__
if order > self.p:
dummy = self.__call__(0.0)
nbasis = dummy.shape[0]
return lambda x: np.zeros((nbasis,), dtype=dummy... | diff | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, order=1):\n order = int(order)\n if order < 0:\n raise ValueError('order must be >= 0, got %d' % order)\n if order == 0:\n return ... |
def x(self, tau, deriv_order=0):
dummy = self.__call__(0.0)
nbasis = dummy.shape[0]
tau = np.atleast_1d(tau)
if tau.ndim > 1:
raise ValueError('tau must be a list or a rank-1 array')
A = np.empty((tau.shape[0], nbasis), dtype=dummy.dtype)
f = self.diff(order=deriv_order)
for i, taui ... | collmat | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, tau, deriv_order=0):\n dummy = self.__call__(0.0)\n nbasis = dummy.shape[0]\n tau = np.atleast_1d(tau)\n if tau.ndim > 1:\n raise Valu... |
def x(interfaces):
def x(block, parts):
try:
method = block['method'].lower()
except KeyError:
for k, v in compat.iteritems(block):
traverse(v, parts + [k])
else:
path = '.'.join(parts)
try:
methods[method]
... | build_interfaces_by_method | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(interfaces):\n\n def x(block, parts):\n try:\n method = block['method'].lower()\n except KeyError:\n for k, v in compat.... |
def x(method, url, nonce, params, ext='', body_hash=None):
urlparts = urlparse.urlparse(url)
if urlparts.query:
norm_url = '%s?%s' % (urlparts.path, urlparts.query)
elif params:
norm_url = '%s?%s' % (urlparts.path, get_normalized_params(params))
else:
norm_url = urlparts.path
... | get_normalized_request_string | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(method, url, nonce, params, ext='', body_hash=None):\n urlparts = urlparse.urlparse(url)\n if urlparts.query:\n norm_url = '%s?%s' % (urlparts.pat... |
def x(params):
norm_params = get_normalized_params(params)
return binascii.b2a_base64(hashlib.sha1(norm_params).digest())[:-1]
| get_body_hash | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(params):\n norm_params = get_normalized_params(params)\n return binascii.b2a_base64(hashlib.sha1(norm_params).digest())[:-1]\n",
"role": "user"
},
... |
def x(api_secret, norm_request_string):
hashed = hmac.new(str(api_secret), norm_request_string, hashlib.sha1)
return binascii.b2a_base64(hashed.digest())[:-1]
| get_mac_signature | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(api_secret, norm_request_string):\n hashed = hmac.new(str(api_secret), norm_request_string, hashlib.sha1)\n return binascii.b2a_base64(hashed.digest())[:... |
def x(self, access_mode='r'):
try:
with open(self, access_mode, encoding='utf-8') as file:
return file.read()
except IOError:
print(self + ' File not found.')
sys.exit(0)
| open_file | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, access_mode='r'):\n try:\n with open(self, access_mode, encoding='utf-8') as file:\n return file.read()\n except IOError:\n ... |
def x(self, itraj):
A = self._hmm.transition_matrix
pi = self._hmm.initial_distribution
obs = self._observations[itraj]
T = len(obs)
self._hmm.output_model.p_obs(obs, out=self._pobs)
logprob = hidden.forward(A, self._pobs, pi, T=T, alpha_out=self._alpha)[0]
hidden.backward(A, self._pobs, T=T... | forward_backward | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, itraj):\n A = self._hmm.transition_matrix\n pi = self._hmm.initial_distribution\n obs = self._observations[itraj]\n T = len(obs)\n self._h... |
def x(self, gammas, count_matrices, maxiter=10000000):
gamma0_sum = self._init_counts(gammas)
C = self._transition_counts(count_matrices)
logger().info('Initial count = \n' + str(gamma0_sum))
logger().info('Count matrix = \n' + str(C))
from bhmm.estimators._tmatrix_disconnected import estimate_P, st... | update_model | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, gammas, count_matrices, maxiter=10000000):\n gamma0_sum = self._init_counts(gammas)\n C = self._transition_counts(count_matrices)\n logger().inf... |
def x(self):
K = len(self._observations)
A = self._hmm.transition_matrix
pi = self._hmm.initial_distribution
paths = np.empty(K, dtype=object)
for itraj in range(K):
obs = self._observations[itraj]
pobs = self._hmm.output_model.p_obs(obs)
paths[itraj] = hidden.viterbi(A, pobs... | compute_viterbi_paths | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n K = len(self._observations)\n A = self._hmm.transition_matrix\n pi = self._hmm.initial_distribution\n paths = np.empty(K, dtype=object)\n ... |
def x(self):
logger().info(
'=================================================================')
logger().info('Running Baum-Welch:')
logger().info(' input observations: ' + str(self.nobservations) +
' of lengths ' + str(self.observation_lengths))
logger().info(' initial HMM guess:' + ... | fit | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n logger().info(\n '=================================================================')\n logger().info('Running Baum-Welch:')\n logger(... |
def x(mean, covar, covariance_type='diag', n_samples=1, random_state=None):
rng = check_random_state(random_state)
n_dim = len(mean)
rand = rng.randn(n_dim, n_samples)
if n_samples == 1:
rand.shape = n_dim,
if covariance_type == 'spherical':
rand *= np.sqrt(covar)
elif covariance... | sample_gaussian | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(mean, covar, covariance_type='diag', n_samples=1, random_state=None):\n rng = check_random_state(random_state)\n n_dim = len(mean)\n rand = rng.randn(... |
def x(gmm, X, responsibilities, weighted_X_sum, norm, min_covar):
avg_X2 = np.dot(responsibilities.T, X * X) * norm
avg_means2 = gmm.means_ ** 2
avg_X_means = gmm.means_ * weighted_X_sum * norm
return avg_X2 - 2 * avg_X_means + avg_means2 + min_covar
| covar_mstep_diag | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(gmm, X, responsibilities, weighted_X_sum, norm, min_covar):\n avg_X2 = np.dot(responsibilities.T, X * X) * norm\n avg_means2 = gmm.means_ ** 2\n avg_X... |
def x(*args):
cv = _covar_mstep_diag(*args)
return np.tile(cv.mean(axis=1)[:, np.newaxis], (1, cv.shape[1]))
| covar_mstep_spherical | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(*args):\n cv = _covar_mstep_diag(*args)\n return np.tile(cv.mean(axis=1)[:, np.newaxis], (1, cv.shape[1]))\n",
"role": "user"
},
{
"content":... |
def x(gmm, X, responsibilities, weighted_X_sum, norm, min_covar):
n_features = X.shape[1]
cv = np.empty((gmm.n_components, n_features, n_features))
for c in range(gmm.n_components):
post = responsibilities[:, c]
mu = gmm.means_[c]
diff = X - mu
with np.errstate(under='ignore'... | covar_mstep_full | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(gmm, X, responsibilities, weighted_X_sum, norm, min_covar):\n n_features = X.shape[1]\n cv = np.empty((gmm.n_components, n_features, n_features))\n fo... |
def x(self):
if self.covariance_type == 'full':
return self.covars_
elif self.covariance_type == 'diag':
return [np.diag(cov) for cov in self.covars_]
elif self.covariance_type == 'tied':
return [self.covars_] * self.n_components
elif self.covariance_type == 'spherical':
... | get_covars | [
{
"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.covariance_type == 'full':\n return self.covars_\n elif self.covariance_type == 'diag':\n return [np.diag(cov) for cov in ... |
def x(self, covars):
covars = np.asarray(covars)
_validate_covars(covars, self.covariance_type, self.n_components)
self.covars_ = covars
| set_covars | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, covars):\n covars = np.asarray(covars)\n _validate_covars(covars, self.covariance_type, self.n_components)\n self.covars_ = covars\n",
"role... |
def x(self, X):
check_is_fitted(self, 'means_')
X = check_array(X)
if X.ndim == 1:
X = X[:, np.newaxis]
if X.size == 0:
return np.array([]), np.empty((0, self.n_components))
if X.shape[1] != self.means_.shape[1]:
raise ValueError('The shape of X is not compatible with self')... | score_samples | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, X):\n check_is_fitted(self, 'means_')\n X = check_array(X)\n if X.ndim == 1:\n X = X[:, np.newaxis]\n if X.size == 0:\n return ... |
def x(self, X, y=None):
logprob, _ = self.score_samples(X)
return logprob
| score | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, X, y=None):\n logprob, _ = self.score_samples(X)\n return logprob\n",
"role": "user"
},
{
"content": "score",
"role": "assistant"
... |
def x(self, X):
logprob, responsibilities = self.score_samples(X)
return responsibilities.argmax(axis=1)
| predict | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, X):\n logprob, responsibilities = self.score_samples(X)\n return responsibilities.argmax(axis=1)\n",
"role": "user"
},
{
"content": "pr... |
def x(self, n_samples=1, random_state=None):
check_is_fitted(self, 'means_')
if random_state is None:
random_state = self.random_state
random_state = check_random_state(random_state)
weight_cdf = np.cumsum(self.weights_)
X = np.empty((n_samples, self.means_.shape[1]))
rand = random_state... | sample | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, n_samples=1, random_state=None):\n check_is_fitted(self, 'means_')\n if random_state is None:\n random_state = self.random_state\n random... |
def x(self, X, y=None):
X = check_array(X, dtype=np.float64)
if X.shape[0] < self.n_components:
raise ValueError(
'GMM estimation with %s components, but got only %s samples' %
(self.n_components, X.shape[0]))
max_log_prob = -np.infty
for _ in range(self.n_init):
... | fit | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, X, y=None):\n X = check_array(X, dtype=np.float64)\n if X.shape[0] < self.n_components:\n raise ValueError(\n 'GMM estimation wit... |
def x(self, X, responsibilities, params, min_covar=0):
weights = responsibilities.sum(axis=0)
weighted_X_sum = np.dot(responsibilities.T, X)
inverse_weights = 1.0 / (weights[:, np.newaxis] + 10 * EPS)
if 'w' in params:
self.weights_ = weights / (weights.sum() + 10 * EPS) + EPS
if 'm' in para... | do_mstep | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, X, responsibilities, params, min_covar=0):\n weights = responsibilities.sum(axis=0)\n weighted_X_sum = np.dot(responsibilities.T, X)\n inverse_w... |
def x(self):
ndim = self.means_.shape[1]
if self.covariance_type == 'full':
cov_params = self.n_components * ndim * (ndim + 1) / 2.0
elif self.covariance_type == 'diag':
cov_params = self.n_components * ndim
elif self.covariance_type == 'tied':
cov_params = ndim * (ndim + 1) / 2.... | n_parameters | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n ndim = self.means_.shape[1]\n if self.covariance_type == 'full':\n cov_params = self.n_components * ndim * (ndim + 1) / 2.0\n elif sel... |
def x(self, X):
return -2 * self.score(X).sum() + self._n_parameters() * np.log(X.shape[0])
| bic | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, X):\n return -2 * self.score(X).sum() + self._n_parameters() * np.log(X.shape[0])\n",
"role": "user"
},
{
"content": "bic",
"role": "a... |
def x(cls):
init = getattr(cls.__init__, 'deprecated_original', cls.__init__)
if init is object.__init__:
return []
args, varargs, kw, default = inspect.getargspec(init)
if varargs is not None:
raise RuntimeError(
"scikit-learn estimators should always specify their parameter... | get_param_names | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(cls):\n init = getattr(cls.__init__, 'deprecated_original', cls.__init__)\n if init is object.__init__:\n return []\n args, varargs, kw, defaul... |
def x(self, **params):
if not params:
return self
valid_params = self.get_params(deep=True)
for key, value in six.iteritems(params):
split = key.split('__', 1)
if len(split) > 1:
name, sub_name = split
if not name in valid_params:
raise ValueEr... | set_params | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, **params):\n if not params:\n return self\n valid_params = self.get_params(deep=True)\n for key, value in six.iteritems(params):\n ... |
def x(observations, nstates, reversible=True):
ntrajectories = len(observations)
collected_observations = np.array([], dtype=config.dtype)
for o_t in observations:
collected_observations = np.append(collected_observations, o_t)
from bhmm._external.sklearn import mixture
gmm = mixture.GMM(n_c... | init_model_gaussian1d | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(observations, nstates, reversible=True):\n ntrajectories = len(observations)\n collected_observations = np.array([], dtype=config.dtype)\n for o_t in ... |
def x(self, o):
if self.__impl__ == self.__IMPL_C__:
return gc.p_o(o, self.means, self.sigmas, out=None, dtype=type(o))
elif self.__impl__ == self.__IMPL_PYTHON__:
if np.any(self.sigmas < np.finfo(self.sigmas.dtype).eps):
raise RuntimeError('at least one sigma is too small to continu... | p_o | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, o):\n if self.__impl__ == self.__IMPL_C__:\n return gc.p_o(o, self.means, self.sigmas, out=None, dtype=type(o))\n elif self.__impl__ == self... |
def x(self, obs, out=None):
if self.__impl__ == self.__IMPL_C__:
res = gc.p_obs(obs, self.means, self.sigmas, out=out, dtype=config.
dtype)
return self._handle_outliers(res)
elif self.__impl__ == self.__IMPL_PYTHON__:
T = len(obs)
if out is None:
res = np.... | p_obs | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, obs, out=None):\n if self.__impl__ == self.__IMPL_C__:\n res = gc.p_obs(obs, self.means, self.sigmas, out=out, dtype=config.\n dtype... |
def x(self, observations, weights):
N = self.nstates
K = len(observations)
self._means = np.zeros(N)
w_sum = np.zeros(N)
for k in range(K):
for i in range(N):
self.means[i] += np.dot(weights[k][:, i], observations[k])
w_sum += np.sum(weights[k], axis=0)
self._means /=... | estimate | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, observations, weights):\n N = self.nstates\n K = len(observations)\n self._means = np.zeros(N)\n w_sum = np.zeros(N)\n for k in range(K):\... |
def x(self, observations, prior=None):
for state_index in range(self.nstates):
observations_in_state = observations[state_index]
nsamples_in_state = len(observations_in_state)
if nsamples_in_state == 0:
logger().warn('Warning: State %d has no observations.' %
stat... | sample | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, observations, prior=None):\n for state_index in range(self.nstates):\n observations_in_state = observations[state_index]\n nsamples_in_s... |
def x(self, state_index):
observation = self.sigmas[state_index] * np.random.randn() + self.means[
state_index]
return observation
| generate_observation_from_state | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, state_index):\n observation = self.sigmas[state_index] * np.random.randn() + self.means[\n state_index]\n return observation\n",
"role":... |
def x(self, state_index, nobs):
observations = self.sigmas[state_index] * np.random.randn(nobs
) + self.means[state_index]
return observations
| generate_observations_from_state | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, state_index, nobs):\n observations = self.sigmas[state_index] * np.random.randn(nobs\n ) + self.means[state_index]\n return observations\n",... |
def x(self, s_t):
T = s_t.shape[0]
o_t = np.zeros([T], dtype=config.dtype)
for t in range(T):
s = s_t[t]
o_t[t] = self.sigmas[s] * np.random.randn() + self.means[s]
return o_t
| generate_observation_trajectory | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, s_t):\n T = s_t.shape[0]\n o_t = np.zeros([T], dtype=config.dtype)\n for t in range(T):\n s = s_t[t]\n o_t[t] = self.sigmas[s] * n... |
def x(self):
res = np.empty((self.nsamples, self.nstates), dtype=config.dtype)
for i in range(self.nsamples):
res[i, :] = self._sampled_hmms[i].stationary_distribution
return res
| initial_distribution_samples | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n res = np.empty((self.nsamples, self.nstates), dtype=config.dtype)\n for i in range(self.nsamples):\n res[i, :] = self._sampled_hmms[i].st... |
def x(self):
res = np.empty((self.nsamples, self.nstates, self.nstates), dtype=
config.dtype)
for i in range(self.nsamples):
res[i, :, :] = self._sampled_hmms[i].transition_matrix
return res
| transition_matrix_samples | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n res = np.empty((self.nsamples, self.nstates, self.nstates), dtype=\n config.dtype)\n for i in range(self.nsamples):\n res[i, :, :]... |
def x(self):
res = np.empty((self.nsamples, self.nstates), dtype=config.dtype)
for i in range(self.nsamples):
res[i, :] = self._sampled_hmms[i].eigenvalues
return res
| eigenvalues_samples | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n res = np.empty((self.nsamples, self.nstates), dtype=config.dtype)\n for i in range(self.nsamples):\n res[i, :] = self._sampled_hmms[i].ei... |
def x(self):
res = np.empty((self.nsamples, self.nstates, self.nstates), dtype=
config.dtype)
for i in range(self.nsamples):
res[i, :, :] = self._sampled_hmms[i].eigenvectors_left
return res
| eigenvectors_left_samples | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n res = np.empty((self.nsamples, self.nstates, self.nstates), dtype=\n config.dtype)\n for i in range(self.nsamples):\n res[i, :, :]... |
def x(self):
res = np.empty((self.nsamples, self.nstates, self.nstates), dtype=
config.dtype)
for i in range(self.nsamples):
res[i, :, :] = self._sampled_hmms[i].eigenvectors_right
return res
| eigenvectors_right_samples | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n res = np.empty((self.nsamples, self.nstates, self.nstates), dtype=\n config.dtype)\n for i in range(self.nsamples):\n res[i, :, :]... |
def x(self):
res = np.empty((self.nsamples, self.nstates - 1), dtype=config.dtype)
for i in range(self.nsamples):
res[i, :] = self._sampled_hmms[i].timescales
return res
| timescales_samples | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n res = np.empty((self.nsamples, self.nstates - 1), dtype=config.dtype)\n for i in range(self.nsamples):\n res[i, :] = self._sampled_hmms[i... |
def x(self):
res = np.empty((self.nsamples, self.nstates), dtype=config.dtype)
for i in range(self.nsamples):
res[i, :] = self._sampled_hmms[i].lifetimes
return res
| lifetimes_samples | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n res = np.empty((self.nsamples, self.nstates), dtype=config.dtype)\n for i in range(self.nsamples):\n res[i, :] = self._sampled_hmms[i].li... |
def x(self, impl):
if impl.lower() == 'python':
self.__impl__ = self.__IMPL_PYTHON__
elif impl.lower() == 'c':
self.__impl__ = self.__IMPL_C__
else:
import warnings
warnings.warn('Implementation ' + impl +
' is not known. Using the fallback python implementation.'... | set_implementation | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, impl):\n if impl.lower() == 'python':\n self.__impl__ = self.__IMPL_PYTHON__\n elif impl.lower() == 'c':\n self.__impl__ = self.__IMP... |
def x(self, obs, out=None, dtype=np.float32):
if out is None:
return np.log(self.p_obs(obs))
else:
self.p_obs(obs, out=out, dtype=dtype)
np.log(out, out=out)
return out
| log_p_obs | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, obs, out=None, dtype=np.float32):\n if out is None:\n return np.log(self.p_obs(obs))\n else:\n self.p_obs(obs, out=out, dtype=dtype)\... |
def x(self, p_o):
if self.ignore_outliers:
outliers = np.where(p_o.sum(axis=1) == 0)[0]
if outliers.size > 0:
p_o[outliers, :] = 1.0
self.found_outliers = True
return p_o
| handle_outliers | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, p_o):\n if self.ignore_outliers:\n outliers = np.where(p_o.sum(axis=1) == 0)[0]\n if outliers.size > 0:\n p_o[outliers, :] = ... |
def x(A, pobs, pi, T=None, alpha_out=None, dtype=np.float32):
if T is None:
T = pobs.shape[0]
elif T > pobs.shape[0]:
raise ValueError('T must be at most the length of pobs.')
N = A.shape[0]
if alpha_out is None:
alpha_out = np.zeros((T, N), dtype=dtype)
elif T > alpha_out.sh... | forward | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(A, pobs, pi, T=None, alpha_out=None, dtype=np.float32):\n if T is None:\n T = pobs.shape[0]\n elif T > pobs.shape[0]:\n raise ValueError('T... |
def x(A, pobs, T=None, beta_out=None, dtype=np.float32):
if T is None:
T = pobs.shape[0]
elif T > pobs.shape[0]:
raise ValueError('T must be at most the length of pobs.')
N = A.shape[0]
if beta_out is None:
beta_out = np.zeros((T, N), dtype=dtype)
elif T > beta_out.shape[0]:
... | backward | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(A, pobs, T=None, beta_out=None, dtype=np.float32):\n if T is None:\n T = pobs.shape[0]\n elif T > pobs.shape[0]:\n raise ValueError('T must... |
def x(alpha, beta, A, pobs, T=None, out=None, dtype=np.float32):
if T is None:
T = pobs.shape[0]
elif T > pobs.shape[0]:
raise ValueError('T must be at most the length of pobs.')
N = len(A)
if out is None:
out = np.zeros((N, N), dtype=dtype, order='C')
else:
out[:] = ... | transition_counts | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(alpha, beta, A, pobs, T=None, out=None, dtype=np.float32):\n if T is None:\n T = pobs.shape[0]\n elif T > pobs.shape[0]:\n raise ValueError... |
def x(A, pobs, pi, dtype=np.float32):
T, N = pobs.shape[0], pobs.shape[1]
psi = np.zeros((T, N), dtype=int)
v = pi * pobs[0, :]
v /= v.sum()
psi[0] = 0.0
for t in range(1, T):
vA = np.dot(np.diag(v), A)
v = pobs[t, :] * np.max(vA, axis=0)
v /= v.sum()
psi[t] = np.... | viterbi | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(A, pobs, pi, dtype=np.float32):\n T, N = pobs.shape[0], pobs.shape[1]\n psi = np.zeros((T, N), dtype=int)\n v = pi * pobs[0, :]\n v /= v.sum()\n ... |
def x(alpha, A, pobs, T=None, dtype=np.float32):
N = pobs.shape[1]
if T is None:
T = pobs.shape[0]
elif T > pobs.shape[0] or T > alpha.shape[0]:
raise ValueError('T must be at most the length of pobs and alpha.')
S = np.zeros(T, dtype=int)
psel = alpha[T - 1, :]
psel /= psel.sum(... | sample_path | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(alpha, A, pobs, T=None, dtype=np.float32):\n N = pobs.shape[1]\n if T is None:\n T = pobs.shape[0]\n elif T > pobs.shape[0] or T > alpha.shape[... |
def x(P, M):
W = np.linalg.inv(np.dot(M.T, M))
A = np.dot(np.dot(M.T, P), M)
P_coarse = np.dot(W, A)
P_coarse = np.maximum(P_coarse, 0)
P_coarse /= P_coarse.sum(axis=1)[:, None]
return P_coarse
| coarse_grain_transition_matrix | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(P, M):\n W = np.linalg.inv(np.dot(M.T, M))\n A = np.dot(np.dot(M.T, P), M)\n P_coarse = np.dot(W, A)\n P_coarse = np.maximum(P_coarse, 0)\n P_co... |
def x(p0, P, reversible=True, stationary=False, C=None, eps=None):
n = P.shape[0]
if eps is None:
eps = 0.01 / n
P = np.maximum(P, eps)
P /= P.sum(axis=1)[:, None]
if reversible:
P = _tmatrix_disconnected.enforce_reversible_on_closed(P)
if stationary:
_tmatrix_disconnecte... | regularize_hidden | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(p0, P, reversible=True, stationary=False, C=None, eps=None):\n n = P.shape[0]\n if eps is None:\n eps = 0.01 / n\n P = np.maximum(P, eps)\n ... |
def x(B, nonempty=None, separate=None, eps=None):
B = B.copy()
n, m = B.shape
if eps is None:
eps = 0.01 / m
if nonempty is None:
nonempty = np.arange(m)
if separate is None:
B[:, nonempty] = np.maximum(B[:, nonempty], eps)
else:
nonempty_nonseparate = np.array(li... | regularize_pobs | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(B, nonempty=None, separate=None, eps=None):\n B = B.copy()\n n, m = B.shape\n if eps is None:\n eps = 0.01 / m\n if nonempty is None:\n ... |
def x(C_full, nstates, reversible=True, stationary=True, active_set=None, P
=None, eps_A=None, eps_B=None, separate=None):
nfull = C_full.shape[0]
if eps_A is None:
eps_A = 0.01 / nstates
if eps_B is None:
eps_B = 0.01 / nfull
symsum = C_full.sum(axis=0) + C_full.sum(axis=1)
none... | init_discrete_hmm_spectral | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(C_full, nstates, reversible=True, stationary=True, active_set=None, P\n =None, eps_A=None, eps_B=None, separate=None):\n nfull = C_full.shape[0]\n if ... |
def x(C_full, nstates, reversible=True, stationary=True, active_set=None, P
=None, eps_A=None, eps_B=None, separate=None):
raise NotImplementedError('ML-initialization not yet implemented')
| init_discrete_hmm_ml | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(C_full, nstates, reversible=True, stationary=True, active_set=None, P\n =None, eps_A=None, eps_B=None, separate=None):\n raise NotImplementedError('ML-in... |
def x(self, Pi, Tij):
from msmtools import analysis as msmana
self._Tij = np.array(Tij)
assert msmana.is_transition_matrix(self._Tij
), 'Given transition matrix is not a stochastic matrix'
assert self._Tij.shape[0
] == self._nstates, 'Given transition matrix has unexpected number of stat... | update | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, Pi, Tij):\n from msmtools import analysis as msmana\n self._Tij = np.array(Tij)\n assert msmana.is_transition_matrix(self._Tij\n ), 'Give... |
def x(self):
return np.allclose(np.dot(self._Pi, self._Tij), self._Pi)
| is_stationary | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n return np.allclose(np.dot(self._Pi, self._Tij), self._Pi)\n",
"role": "user"
},
{
"content": "is_stationary",
"role": "assistant"
... |
def x(self):
assert _tmatrix_disconnected.is_connected(self._Tij, strong=False
), 'No unique stationary distribution because transition matrix is not connected'
import msmtools.analysis as msmana
return msmana.stationary_distribution(self._Tij)
| stationary_distribution | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n assert _tmatrix_disconnected.is_connected(self._Tij, strong=False\n ), 'No unique stationary distribution because transition matrix is not c... |
def x(self):
from msmtools.analysis.dense.decomposition import timescales_from_eigenvalues as _timescales
self._ensure_spectral_decomposition()
ts = _timescales(self._eigenvalues, tau=self._lag)
return ts[1:]
| timescales | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n from msmtools.analysis.dense.decomposition import timescales_from_eigenvalues as _timescales\n self._ensure_spectral_decomposition()\n ts = _... |
def x(self):
return -self._lag / np.log(np.diag(self.transition_matrix))
| lifetimes | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n return -self._lag / np.log(np.diag(self.transition_matrix))\n",
"role": "user"
},
{
"content": "lifetimes",
"role": "assistant"
}... |
def x(self, states):
pi_sub = self._Pi[states]
pi_sub /= pi_sub.sum()
P_sub = self._Tij[states, :][:, states]
assert np.all(P_sub.sum(axis=1) > 0
), 'Illegal sub_hmm request: transition matrix cannot be normalized on ' + str(
states)
P_sub /= P_sub.sum(axis=1)[:, None]
out_sub = ... | sub_hmm | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, states):\n pi_sub = self._Pi[states]\n pi_sub /= pi_sub.sum()\n P_sub = self._Tij[states, :][:, states]\n assert np.all(P_sub.sum(axis=1) > 0... |
def x(self):
if self.hidden_state_trajectories is None:
raise RuntimeError('HMM model does not have a hidden state trajectory.'
)
C = msmest.count_matrix(self.hidden_state_trajectories, 1, nstates=self
._nstates)
return C.toarray()
| count_matrix | [
{
"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.hidden_state_trajectories is None:\n raise RuntimeError('HMM model does not have a hidden state trajectory.'\n )\n C =... |
def x(self):
if self.hidden_state_trajectories is None:
raise RuntimeError('HMM model does not have a hidden state trajectory.'
)
n = [traj[0] for traj in self.hidden_state_trajectories]
return np.bincount(n, minlength=self.nstates)
| count_init | [
{
"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.hidden_state_trajectories is None:\n raise RuntimeError('HMM model does not have a hidden state trajectory.'\n )\n n =... |
def x(self, observations, state_index):
if not self.hidden_state_trajectories:
raise RuntimeError('HMM model does not have a hidden state trajectory.'
)
dtype = observations[0].dtype
collected_observations = np.array([], dtype=dtype)
for s_t, o_t in zip(self.hidden_state_trajectories... | collect_observations_in_state | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, observations, state_index):\n if not self.hidden_state_trajectories:\n raise RuntimeError('HMM model does not have a hidden state trajectory.'\... |
def x(self, nsteps, initial_Pi=None, start=None, stop=None, dtype=np.int32):
if initial_Pi is not None and start is not None:
raise ValueError(
'Arguments initial_Pi and start are exclusive. Only set one of them.'
)
if start is None:
if initial_Pi is not None:
... | generate_synthetic_state_trajectory | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, nsteps, initial_Pi=None, start=None, stop=None, dtype=np.int32):\n if initial_Pi is not None and start is not None:\n raise ValueError(\n ... |
def x(self, length, initial_Pi=None):
s_t = self.generate_synthetic_state_trajectory(length, initial_Pi=
initial_Pi)
o_t = self.output_model.generate_observation_trajectory(s_t)
return [o_t, s_t]
| generate_synthetic_observation_trajectory | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, length, initial_Pi=None):\n s_t = self.generate_synthetic_state_trajectory(length, initial_Pi=\n initial_Pi)\n o_t = self.output_model.gener... |
def x(self, ntrajectories, length, initial_Pi=None):
O = list()
S = list()
for trajectory_index in range(ntrajectories):
o_t, s_t = self.generate_synthetic_observation_trajectory(length=
length, initial_Pi=initial_Pi)
O.append(o_t)
S.append(s_t)
return O, S
| generate_synthetic_observation_trajectories | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, ntrajectories, length, initial_Pi=None):\n O = list()\n S = list()\n for trajectory_index in range(ntrajectories):\n o_t, s_t = self.gene... |
def x(nb_path):
exporter = python.PythonExporter()
output, resources = exporter.from_filename(nb_path)
return output
| nb_to_python | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(nb_path):\n exporter = python.PythonExporter()\n output, resources = exporter.from_filename(nb_path)\n return output\n",
"role": "user"
},
{
... |
def x(nb_path):
exporter = html.HTMLExporter(template_file='full')
output, resources = exporter.from_filename(nb_path)
header = output.split('<head>', 1)[1].split('</head>', 1)[0]
body = output.split('<body>', 1)[1].split('</body>', 1)[0]
header = header.replace('<style', '<style scoped="scoped"')
... | nb_to_html | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(nb_path):\n exporter = html.HTMLExporter(template_file='full')\n output, resources = exporter.from_filename(nb_path)\n header = output.split('<head>',... |
def x(self, obs, out=None):
if out is None:
out = self._output_probabilities[:, obs].T
return self._handle_outliers(out)
else:
if obs.shape[0] == out.shape[0]:
np.copyto(out, self._output_probabilities[:, obs].T)
elif obs.shape[0] < out.shape[0]:
out[:obs.... | p_obs | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, obs, out=None):\n if out is None:\n out = self._output_probabilities[:, obs].T\n return self._handle_outliers(out)\n else:\n i... |
def x(self, observations, weights):
N, M = self._output_probabilities.shape
K = len(observations)
self._output_probabilities = np.zeros((N, M))
if self.__impl__ == self.__IMPL_C__:
for k in range(K):
dc.update_pout(observations[k], weights[k], self.
_output_probabilit... | estimate | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, observations, weights):\n N, M = self._output_probabilities.shape\n K = len(observations)\n self._output_probabilities = np.zeros((N, M))\n i... |
def x(self, observations_by_state):
from numpy.random import dirichlet
N, M = self._output_probabilities.shape
for i, obs_by_state in enumerate(observations_by_state):
count = np.bincount(obs_by_state, minlength=M).astype(float)
count += self.prior[i]
positive = count > 0
sel... | sample | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, observations_by_state):\n from numpy.random import dirichlet\n N, M = self._output_probabilities.shape\n for i, obs_by_state in enumerate(observ... |
def x(self, state_index):
import scipy.stats
gen = scipy.stats.rv_discrete(values=(range(len(self.
_output_probabilities[state_index])), self._output_probabilities[
state_index]))
gen.rvs(size=1)
| generate_observation_from_state | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, state_index):\n import scipy.stats\n gen = scipy.stats.rv_discrete(values=(range(len(self.\n _output_probabilities[state_index])), self._out... |
def x(self, state_index, nobs):
import scipy.stats
gen = scipy.stats.rv_discrete(values=(range(self._nsymbols), self.
_output_probabilities[state_index]))
gen.rvs(size=nobs)
| generate_observations_from_state | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, state_index, nobs):\n import scipy.stats\n gen = scipy.stats.rv_discrete(values=(range(self._nsymbols), self.\n _output_probabilities[state_... |
def x(self, s_t, dtype=None):
if dtype is None:
dtype = np.int32
T = s_t.shape[0]
nsymbols = self._output_probabilities.shape[1]
if s_t.max() >= self.nstates or s_t.min() < 0:
msg = ''
msg += 's_t = %s\n' % s_t
msg += 's_t.min() = %d, s_t.max() = %d\n' % (s_t.min(), s_t.m... | generate_observation_trajectory | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, s_t, dtype=None):\n if dtype is None:\n dtype = np.int32\n T = s_t.shape[0]\n nsymbols = self._output_probabilities.shape[1]\n if s_t.... |
def x(impl):
global __impl__
if impl.lower() == 'python':
__impl__ = __IMPL_PYTHON__
elif impl.lower() == 'c':
__impl__ = __IMPL_C__
else:
import warnings
warnings.warn('Implementation ' + impl +
' is not known. Using the fallback python implementation.')
... | set_implementation | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(impl):\n global __impl__\n if impl.lower() == 'python':\n __impl__ = __IMPL_PYTHON__\n elif impl.lower() == 'c':\n __impl__ = __IMPL_C__... |
def x(A, pobs, pi, T=None, alpha_out=None):
if __impl__ == __IMPL_PYTHON__:
return ip.forward(A, pobs, pi, T=T, alpha_out=alpha_out, dtype=
config.dtype)
elif __impl__ == __IMPL_C__:
return ic.forward(A, pobs, pi, T=T, alpha_out=alpha_out, dtype=
config.dtype)
else:
... | forward | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(A, pobs, pi, T=None, alpha_out=None):\n if __impl__ == __IMPL_PYTHON__:\n return ip.forward(A, pobs, pi, T=T, alpha_out=alpha_out, dtype=\n ... |
def x(A, pobs, T=None, beta_out=None):
if __impl__ == __IMPL_PYTHON__:
return ip.backward(A, pobs, T=T, beta_out=beta_out, dtype=config.dtype)
elif __impl__ == __IMPL_C__:
return ic.backward(A, pobs, T=T, beta_out=beta_out, dtype=config.dtype)
else:
raise RuntimeError('Nonexisting im... | backward | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(A, pobs, T=None, beta_out=None):\n if __impl__ == __IMPL_PYTHON__:\n return ip.backward(A, pobs, T=T, beta_out=beta_out, dtype=config.dtype)\n eli... |
def x(alpha, beta, T=None, gamma_out=None):
global ones_size
if ones_size != alpha.shape[1]:
global ones
ones = np.ones(alpha.shape[1])[:, None]
ones_size = alpha.shape[1]
if alpha.shape[0] != beta.shape[0]:
raise ValueError('Inconsistent sizes of alpha and beta.')
if T i... | state_probabilities | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(alpha, beta, T=None, gamma_out=None):\n global ones_size\n if ones_size != alpha.shape[1]:\n global ones\n ones = np.ones(alpha.shape[1])[:... |
def x(gamma, T, out=None):
return np.sum(gamma[0:T], axis=0, out=out)
| state_counts | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(gamma, T, out=None):\n return np.sum(gamma[0:T], axis=0, out=out)\n",
"role": "user"
},
{
"content": "state_counts",
"role": "assistant"
}... |
def x(alpha, beta, A, pobs, T=None, out=None):
if __impl__ == __IMPL_PYTHON__:
return ip.transition_counts(alpha, beta, A, pobs, T=T, out=out,
dtype=config.dtype)
elif __impl__ == __IMPL_C__:
return ic.transition_counts(alpha, beta, A, pobs, T=T, out=out,
dtype=config.dty... | transition_counts | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(alpha, beta, A, pobs, T=None, out=None):\n if __impl__ == __IMPL_PYTHON__:\n return ip.transition_counts(alpha, beta, A, pobs, T=T, out=out,\n ... |
def x(A, pobs, pi):
if __impl__ == __IMPL_PYTHON__:
return ip.viterbi(A, pobs, pi, dtype=config.dtype)
elif __impl__ == __IMPL_C__:
return ic.viterbi(A, pobs, pi, dtype=config.dtype)
else:
raise RuntimeError('Nonexisting implementation selected: ' + str(
__impl__))
| viterbi | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(A, pobs, pi):\n if __impl__ == __IMPL_PYTHON__:\n return ip.viterbi(A, pobs, pi, dtype=config.dtype)\n elif __impl__ == __IMPL_C__:\n retur... |
def x(alpha, A, pobs, T=None):
if __impl__ == __IMPL_PYTHON__:
return ip.sample_path(alpha, A, pobs, T=T, dtype=config.dtype)
elif __impl__ == __IMPL_C__:
return ic.sample_path(alpha, A, pobs, T=T, dtype=config.dtype)
else:
raise RuntimeError('Nonexisting implementation selected: ' +... | sample_path | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(alpha, A, pobs, T=None):\n if __impl__ == __IMPL_PYTHON__:\n return ip.sample_path(alpha, A, pobs, T=T, dtype=config.dtype)\n elif __impl__ == __I... |
def x(name='BHMM', pattern=
'%(asctime)s %(levelname)s %(name)s: %(message)s', date_format=
'%H:%M:%S', handler=logging.StreamHandler(sys.stdout)):
_logger = logging.getLogger(name)
_logger.setLevel(config.log_level())
if not _logger.handlers:
formatter = logging.Formatter(pattern, date_form... | logger | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(name='BHMM', pattern=\n '%(asctime)s %(levelname)s %(name)s: %(message)s', date_format=\n '%H:%M:%S', handler=logging.StreamHandler(sys.stdout)):\n _l... |
def x(self, nsamples, nburn=0, nthin=1, save_hidden_state_trajectory=False,
call_back=None):
for iteration in range(nburn):
logger().info('Burn-in %8d / %8d' % (iteration, nburn))
self._update()
models = list()
for iteration in range(nsamples):
logger().info('Iteration %8d / %8... | sample | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, nsamples, nburn=0, nthin=1, save_hidden_state_trajectory=False,\n call_back=None):\n for iteration in range(nburn):\n logger().info('Burn-in... |
def x(self):
initial_time = time.time()
self._updateHiddenStateTrajectories()
self._updateEmissionProbabilities()
self._updateTransitionMatrix()
final_time = time.time()
elapsed_time = final_time - initial_time
logger().info('BHMM update iteration took %.3f s' % elapsed_time)
| update | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n initial_time = time.time()\n self._updateHiddenStateTrajectories()\n self._updateEmissionProbabilities()\n self._updateTransitionMatrix()\... |
def x(self):
self.model.hidden_state_trajectories = list()
for trajectory_index in range(self.nobs):
hidden_state_trajectory = self._sampleHiddenStateTrajectory(self.
observations[trajectory_index])
self.model.hidden_state_trajectories.append(hidden_state_trajectory)
return
| updateHiddenStateTrajectories | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n self.model.hidden_state_trajectories = list()\n for trajectory_index in range(self.nobs):\n hidden_state_trajectory = self._sampleHiddenS... |
def x(self, obs, dtype=np.int32):
T = obs.shape[0]
A = self.model.transition_matrix
pi = self.model.initial_distribution
self.model.output_model.p_obs(obs, out=self.pobs)
logprob = hidden.forward(A, self.pobs, pi, T=T, alpha_out=self.alpha)[0]
S = hidden.sample_path(self.alpha, A, self.pobs, T=T... | sampleHiddenStateTrajectory | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self, obs, dtype=np.int32):\n T = obs.shape[0]\n A = self.model.transition_matrix\n pi = self.model.initial_distribution\n self.model.output_model.... |
def x(self):
observations_by_state = [self.model.collect_observations_in_state(self.
observations, state) for state in range(self.model.nstates)]
self.model.output_model.sample(observations_by_state)
| updateEmissionProbabilities | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n observations_by_state = [self.model.collect_observations_in_state(self.\n observations, state) for state in range(self.model.nstates)]\n ... |
def x(self):
C = self.model.count_matrix() + self.prior_C
if self.reversible and not _tmatrix_disconnected.is_connected(C, strong
=True):
raise NotImplementedError(
"""Encountered disconnected count matrix with sampling option reversible:
"""
+ str(C) +
'\nU... | updateTransitionMatrix | [
{
"content": "Given the source code of a python function, suggest a fitting name for the function.",
"role": "system"
},
{
"content": "def x(self):\n C = self.model.count_matrix() + self.prior_C\n if self.reversible and not _tmatrix_disconnected.is_connected(C, strong\n =True):\n ... |
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