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@apatil
apatil / lxc-sense
Last active December 14, 2015 08:39
A Linux container based on the stock 'ubuntu' one for Sense.
#!/bin/bash
#
# template script for generating container for LXC
# with username and password 'sense'
# and an ssh key for the root user.
#
# This script consolidates and extends the existing lxc ubuntu scripts
#
@apatil
apatil / theano_second_derivatives.py
Created June 2, 2011 18:19
Attempts to produce second derivative vector (diagonal of Hessian) in Theano
import numpy as np
from theano import tensor as T
import theano
x = T.dvector('x')
z = T.dscalar('z')
y = T.sum(T.cos(x*z))
x_test = np.random.normal(size=10)
from scipy.sparse import linalg
import numpy as np
import map_utils
def dim2w(dim):
return np.arange(-np.ceil((dim-1)/2.), np.floor((dim-1)/2.)+1)
class fractional_modified_laplacian(linalg.LinearOperator):
def __init__(self, dims, kappa, alpha):
from copy import copy
import theano as th
import theano.tensor as T
def isshared(node):
"Is there a better way to do this?"
return hasattr(node, 'update')
def unpack_nodes(expr):
"""
@apatil
apatil / history_steps.py
Created February 24, 2011 18:27
Step methods that try to sample in 'isotropic position' using histories of their parameters
import pymc as pm
import numpy as np
# FIXME: Need to store duplicates too, when jumps are rejected. That means some mechanism
# for making sure the history is full-rank needs to be employed.
class HistoryCovarianceStepper(pm.StepMethod):
_state = ['n_points','history','tally','verbose']
@apatil
apatil / pymc_335.py
Created February 3, 2011 13:00
Tracking down PyMC issue 335
#!/usr/bin/env python
import numpy as npy
from pymc.gp import Mean, Covariance, Realization, observe, plot_envelope, NearlyFullRankCovariance, FullRankCovariance
from pymc.gp.cov_funs import matern #, thinplate1d
import matplotlib
matplotlib.rcParams['axes.facecolor']=[1,1,1]
__all__ = ['surface_mean', 'M', 'C']
def surface_mean(x, val):
"""docstring for parabolic_fun"""
#!/usr/bin/env python
import pymc
from pymc import gp
from pymc.gp.cov_funs import matern,gaussian
from pylab import *
# Load some data generated from a GP with mean=0, scale=1, amp=1
xdata,ydata = loadtxt('train.txt', unpack=1)
@apatil
apatil / ballast.py
Last active September 24, 2015 03:57
Figures out the mass of your narrowboat and how much ballast you need to add to achieve a desired result.
from __future__ import division
import numpy as np
# A boat is a dict with keys
# mass, center_of_mass, cm_depth, front_depth, back_depth, pitch, length, width
# units are radians (angles), meters (depths and lengths), tons (mass)
# Boats are idealized as rectangular prisms
water_density = 1
import numpy as np
import pylab as pl
import pymc as pm
Tau_test = np.matrix([[ 209.47883244, 10.88057915, 13.80581557],
[ 10.88057915, 213.58694978, 11.18453854],
[ 13.80581557, 11.18453854, 209.89396417]])
C_test = Tau_test.I
# Illustrates why log-sums are better than direct sums for probability integrals
# when probabilities are initially computed on the log scale
import pymc
import numpy
lp_big = numpy.random.normal(loc=0,scale=2,size=1000)
print numpy.log(numpy.mean(numpy.exp(lp_big)))
print pymc.flib.logsum(lp_big)-numpy.log(len(lp_big))