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PlotFile.py
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Sun, May 5, 16:04

PlotFile.py

import numpy as np
import scipy
from scipy.optimize import curve_fit
from scipy import constants as cst
import Functions as uf
import os
import matplotlib.pyplot as plt
from matplotlib.backends.backend_pdf import PdfPages
import h5py
import pandas as pd
from matplotlib.ticker import EngFormatter
from matplotlib import rc
import LoadData
#rc('text', usetex=True)
formCurrent = EngFormatter(unit='A', places=3)
formA = EngFormatter(unit='A', places=3)
formB = EngFormatter(unit='s', places=3)
file = '/Volumes/lben/lben-commun/2018 User Data/Michael/Axopatch/20180706/NorcadaCh1_100mMKCl_1mM_Cis_trans_ph74_640nm_100mW_IV_Later_Trace.dat'
#file = '/Volumes/lben/lben-commun/2018 User Data/Michael/Axopatch/20180706/NorcadaCh1_100mMKCl_1mM_Cis_trans_ph74_640nm_150mmlens_50mW_IV_Later_Trace.dat'
dat = LoadData.OpenFile(file)
fig1 = plt.figure(1, figsize=(8, 4))
ax_part1 = fig1.add_subplot(1, 1, 1)
'''
start2 = int(1.44e7)
end2 = int(2.04e7)
start1 = int(0)
end1 = int(900000)
i1 = np.array([])
#i1 = np.append(i1, dat['i1'][start1:end1])
#i1 = np.append(i1, dat['i1'][start2:end2]+(i1[-1:]-dat['i1'][start2]))
'''
t = np.arange(len(dat['i1']))/dat['samplerate']
ax_part1.plot(t, dat['i1']*1e9)
#ax_part1.plot(dat['i1'])
plt.show()
#fig1.savefig('/Users/migraf/SWITCHdrive/PhD/Generator Laser/Figures/Raw/640Temp' + '.eps')

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