I am not familiar with exported plot data from LTspice, so I am assuming that the formatting of the example lines you provided are valid for all times.
Looking at the IO Tools section of the pandas-0.18 documentation (here), I don't see any ready-to-use parser utility for your data format. The first thing that comes to mind is to do your own parsing and preparing before filling out a pandas dataframe.
I am assuming the crucial part of your problem is to parse the data file, it's been a while since I played with pandas and matplotlib so expect mistakes relating to those.
Example
Here is a quick & dirty python3 script to parse your data into a list of dictionaries, build a pandas dataframe with it and plot it using the DataFrame's plot
method. I tried to explain the steps in the comments :
# ltspice.py
""" Use it as:
> python3 ltspice.py /path/to/datafile """
import pandas
import sys
data_header = "Time Gain Degree".split()
# Valid line example:
# 5.00000000000000e+006\t(2.84545891331278e+001dB,8.85405282381414e+001°)
def parse_line(linestr):
# ValueError and IndexError exceptions are used to mark the failure of
# the parse.
try:
# First we split at the '\t' character. This will raise ValueError if
# there is no \t character or there is more than 1 \t
timestr, rest = linestr.split('\t')
# Then we find the indexes of the '(' and ')' in the rest string.
parenst, parenend = (rest.find('(')+1, rest.find(')'))
if (parenst == -1) or (parenend == -1):
# find() method returns -1 if nothing is found, I raise ValueError
# to mark it as a parsing failure
raise ValueError
# rest[parenst:parenend] returns the string inside parens. split method
# splits the string into words separated by the given character (i.e.
# ',')
powstr, degstr = rest[parenst:parenend].split(',')
# converting strings into floats. Replacing units as necessary.
time = float(timestr)
power = float(powstr.replace('dB', ''))
# this will fail with python 2.x
deg = float(degstr.replace('°', ''))
# You can use dict() instead of tuple()
return tuple(zip(data_header, (time, power, deg)))
except (ValueError,IndexError) as e:
return None
def fileparser(fname):
""" A generator function to return a parsed line on each iteration """
with open(fname, mode='r') as fin:
for line in fin:
res = parse_line(line)
if res is not None:
yield res
def create_dataframe(fname):
p = fileparser(fname)
# rec is a tuple of 2-tuples that can be used to directly build a python
# dictionary
recs = [dict(rec) for rec in p]
return pandas.DataFrame.from_records(recs)
if __name__ == '__main__':
data_fname = sys.argv[1]
df = create_dataframe(data_fname)
ax = df.plot(x='Time', y='Gain')
fig = ax.get_figure()
fig.savefig('df.png')
You can copy this code to a text editor and save it as ltspice.py
and run it with python3 ltspice.py yourdata.dat
from your terminal.
Note that, parse_line
function actually returns a tuple of 2-tuples in the form of ('key', value) where 'key' represents the column name. This value is then used to build the list of dictionaries in the create_dataframe
function.
Extra
I wrote another script to test the behaviour:
# test.py
import random
from ltspice import fileparser
def gen_data():
time = random.randint(0,100)*1e6
db = random.lognormvariate(2,0.5)
degree = random.uniform(0,360)
# this is necessary for comparing parsed values with values generated
truncate = lambda x: float('{:.15e}'.format(x))
return (truncate(time),truncate(db),truncate(degree))
def format_data_line(datatpl):
time, db, degree = datatpl[0], datatpl[1], datatpl[2]
formatted = "{0:.15e}\t({1:.15e}dB,{2:.15e}°)\n"
return formatted.format(time, db, degree)
def gen_ignore_line():
tmpl = "Step Information: L={}n (Run:{}/{})\n"
l = random.randint(100,1000)
r2 = random.randint(1,100)
r1 = random.randint(0,r2)
return tmpl.format(l,r1,r2)
def create_test_file(fname, valid_count, invalid_count):
""" Creates a test file containing data lines mixed with lines to be
ignored. Returns the data created.
valid_count: number of the actual data lines
invalid_count: number of the to-be-ignored lines
"""
header = 'Time Gain Degree'.split()
data = []
formatteddatalines = []
for i in range(valid_count):
unfmtdata = gen_data()
data.append(tuple(zip(header, unfmtdata)))
formatteddatalines.append(format_data_line(unfmtdata))
invalidlines = []
for i in range(invalid_count):
invalidlines.append(gen_ignore_line())
lines = formatteddatalines + invalidlines
random.shuffle(lines)
with open(fname, mode='w') as fout:
fout.writelines(lines)
return data
if __name__ == '__main__':
fname = 'test.data'
validcnt = 10
invalidcnt = 2
validdata = create_test_file(fname, validcnt, invalidcnt)
parseddata = [data for data in fileparser(fname)]
# Note: this check ignores duplicates.
assert(set(validdata) == set(parseddata))