Here's file I used for charting and creating pandas dataframe object(OCHL), from csv files to aggregage csv files by fixed number of rows. It's not efficient for sure, please correct me. I use matplotlib.finance.candlestick2 to plot candle chart, but I have no idea how to put timestamp in the graph. candlestick(without 2) uses both date, and ohlc object. I have to plot uneven time interval with microsecond precision. Any way to add my index into the graph? Thank you!

```
import matplotlib
matplotlib.use('TkAgg')
import pandas as pd
import numpy as np
import matplotlib.pyplot as plt
from matplotlib.finance import candlestick
from matplotlib.finance import candlestick2
import chart
eur = pd.read_csv("C:/Users/CZ61217/eu.csv")
e = eur.set_index(pd.to_datetime(eur['Time']))
e = e.drop('Time',1)
e = e.drop('Ask',1)
e = e.drop('AskVolume',1)
e = e.drop('BidVolume',1)
e.to_csv("eu2.csv",float_format='%.5f', date_format='%Y-%m-%d %H:%M:%S')
e = pd.read_csv("eu2.csv")
e = e.set_index('Time')
x = range(len(e.Bid))
y = [i/200 for i in x]
e['n'] = y
o=e.groupby('n').head(1)
tindex = o.index.levels[1]
o=o.set_index('n')
o.rename(columns={'Bid':'Open'}, inplace=True)
h=e.groupby('n').aggregate(np.max)
h.rename(columns={'Bid':'High'}, inplace=True)
l=e.groupby('n').aggregate(np.min)
l.rename(columns={'Bid':'Low'}, inplace=True)
c=e.groupby('n').tail(1)
c=c.set_index('n')
c.rename(columns={'Bid':'Close'}, inplace=True)
ohlc = o.join(h).join(l).join(c)
ohlc = ohlc.set_index(tindex)
ohlc.index.name = 'Time'
#ohlc = ohlc[:50]
fig = plt.figure()
ax = fig.add_subplot(111)
y_formatter = matplotlib.ticker.ScalarFormatter(useOffset=False)
ax.yaxis.set_major_formatter(y_formatter)
chart.cchart(ax, ohlc['Open'], ohlc['Close'], ohlc['High'], ohlc['Low'], width=.5, colorup='g', colordown='r', alpha=1)
#ax.set_xticks(tindex)
plt.savefig("1.png")
plt.show()
```

and here's the chart file, I modified candlestick2 function in matplotlib, doesn't like tails in candle.

```
import datetime
import numpy as np
from matplotlib import verbose, get_cachedir
from matplotlib.dates import date2num
from matplotlib.cbook import iterable, mkdirs
from matplotlib.collections import LineCollection, PolyCollection
from matplotlib.colors import colorConverter
from matplotlib.lines import Line2D, TICKLEFT, TICKRIGHT
from matplotlib.patches import Rectangle
from matplotlib.transforms import Affine2D
def cchart(ax, opens, closes, highs, lows, width=4,
colorup='k', colordown='r',
alpha=0.75,
):
"""
Represent the open, close as a bar line and high low range as a
vertical line.
ax : an Axes instance to plot to
width : the bar width in points
colorup : the color of the lines where close >= open
colordown : the color of the lines where close < open
alpha : bar transparency
return value is lineCollection, barCollection
"""
# note this code assumes if any value open, close, low, high is
# missing they all are missing
delta = width/2.
barVerts = [ ( (i-delta, open), (i-delta, close), (i+delta, close), (i+delta, open) ) for i, open, close in zip(xrange(len(opens)), opens, closes) if open != -1 and close!=-1 ]
#rangeSegments = [ ((i, low), (i, high)) for i, low, high in zip(xrange(len(lows)), lows, highs) if low != -1 ]
rangeSegments = [ ((i, max(open, close)), (i, high)) for i, high, open, close in zip(xrange(len(highs)), highs, opens, closes) if high!=-1 ]
rangeSegments2 = [ ((i, low), (i, min(open, close))) for i, low, open, close in zip(xrange(len(lows)), lows, opens, closes) if low!=-1]
r,g,b = colorConverter.to_rgb(colorup)
colorup = r,g,b,alpha
r,g,b = colorConverter.to_rgb(colordown)
colordown = r,g,b,alpha
colord = { True : colorup,
False : colordown,
}
colors = [colord[open<close] for open, close in zip(opens, closes) if open!=-1 and close !=-1]
assert(len(barVerts)==len(rangeSegments))
useAA = 0, # use tuple here
lw = 0.5, # and here
rangeCollection = LineCollection(rangeSegments,
colors = ( (0,0,0,1), ),
linewidths = lw,
antialiaseds = useAA,
)
rangeCollection2 = LineCollection(rangeSegments2,
colors = ( (0,0,0,1), ),
linewidths = lw,
antialiaseds = useAA,
)
barCollection = PolyCollection(barVerts,
facecolors = colors,
edgecolors = ( (0,0,0,1), ),
antialiaseds = useAA,
linewidths = lw,
)
minx, maxx = 0, len(rangeSegments)
miny = min([low for low in lows if low !=-1])
maxy = max([high for high in highs if high != -1])
corners = (minx, miny), (maxx, maxy)
ax.update_datalim(corners)
ax.autoscale_view()
# add these last
ax.add_collection(rangeCollection)
ax.add_collection(rangeCollection2)
ax.add_collection(barCollection)
return rangeCollection, barCollection
```