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seen Jul 6 at 14:05

Oct
1
comment Linear regression - reduce degrees of freedom
Thanks a lot (for both the solution, and for help tips)!
Sep
30
asked Linear regression - reduce degrees of freedom
Sep
9
comment From tick by tick data to candlestick
I ever tryed this, unfortunately it doesn't work, it converts to array of big int numbers In [145]: df2.index.get_level_values(1).astype(object) Out[145]: array([1341177000000000000, 1341177300000000000, 1341177600000000000, 1341177900000000000, 1341178200000000000, 1341178500000000000], dtype=object) see full code here pastebin.com/ne7Fjdiq I would like to have date for X-axis (not number of candle)
Sep
8
awarded  Commentator
Sep
8
comment From tick by tick data to candlestick
And I get this error message : TypeError: ufunc subtract cannot use operands with types dtype('<M8[ns]') and dtype('float64'). It seems to be because of Date = df2.index.get_level_values(1) which returns array(['2012-07-01T23:10:00.000000000+0200', '2012-07-01T23:15:00.000000000+0200', '2012-07-01T23:20:00.000000000+0200', '2012-07-01T23:25:00.000000000+0200', '2012-07-01T23:30:00.000000000+0200', '2012-07-01T23:35:00.000000000+0200'], dtype='datetime64[ns]') instead of array of datetime... I don't know how to convert it
Sep
8
comment From tick by tick data to candlestick
I did df2 = pd.concat([ask, bid], axis=1, keys=['Ask', 'Bid']) #Date = df2.index.get_level_values(1) Date = range(len(df2)) Open = df2['Bid']['open'].values Close = df2['Bid']['close'].values High = df2['Bid']['high'].values Low = df2['Bid']['low'].values Volume = np.zeros(len(df2)) DOCHLV = zip(Date, Open, Close, High, Low, Volume) fig = plt.figure() fig.subplots_adjust(bottom=0.1) ax = fig.add_subplot(211) df['Bid'].plot() plt.title("Price graph") ax = fig.add_subplot(212) plt.title("Candlestick chart") candlestick(ax, DOCHLV, width=0.6, colorup='g', colordown='r', alpha=1.0) plt.show()
Sep
8
comment From tick by tick data to Renko chart
That's what I did now (I edited my question) but I still have some problems as my code doesn't draw really a Renko plot
Sep
8
comment From tick by tick data to candlestick
Thanks a lot !!! It works fine
Sep
8
awarded  Editor
Sep
8
revised From tick by tick data to Renko chart
added 1959 characters in body
Sep
8
comment From tick by tick data to Renko chart
that's not what I'm looking for... In fact Renko chart looks like candlestick chart but is different from it. With candlestick X-axis is time and Y-axis is price. But with Renko chart, Y-axis is price but X-axis is NOT time. A new candle appears each time price is moving more than "candle_height". So if price is moving less than candle_heigth, no new candle appears (even if it lasts a long time)
Sep
7
comment From tick by tick data to candlestick
woah! that's very impressive ! but I still have TypeError: Only valid with DatetimeIndex or PeriodIndex I tryed this df = pd.read_csv('test_EURUSD/EURUSD-2012-07.csv', names=['Symbol', 'Date_Time', 'Bid', 'Ask'], index_col=1) but it doesn't work
Sep
7
asked From tick by tick data to Renko chart
Sep
7
comment From tick by tick data to candlestick
It's nice to tell me that I'm on the right path to go (you've noticed my tags) ... but I'm definitely stuck. I tryed df2 = df.resample('1Min') but I get TypeError: Only valid with DatetimeIndex or PeriodIndex
Sep
7
awarded  Student
Sep
7
asked From tick by tick data to candlestick
Jul
27
comment Import historical Metatrader CSV data to Python with Pandas library (date/time parsing)
Thanks a lot ! it helps me a lot !
Jul
26
comment Import historical Metatrader CSV data to Python with Pandas library (date/time parsing)
when I try your code df = read_csv('data/EURUSD15.csv', header=None, parse_dates = [['YYYY.MM.DD', 'HH:MM']], index_col = 0, date_parser=parse) I get this error message NameError: name 'parse' is not defined So I tryed df = read_csv('data/EURUSD15.csv', header=None, parse_dates = [['YYYY.MM.DD', 'HH:MM']], index_col = 0, date_parser=True) and get this error message ValueError: could not broadcast input array from shape (15719) into shape (0)
Jul
26
comment Import historical Metatrader CSV data to Python with Pandas library (date/time parsing)
Sorry but it doesn't work ! df = read_csv('data/EURUSD15.csv', header=None, parse_dates=[0]) works for the first column and df = read_csv('data/EURUSD15.csv', header=None, parse_dates=[1]) works for the second column but not df = read_csv('data/EURUSD15.csv', header=None, parse_dates=[[0, 1]])
Jul
26
asked Import historical Metatrader CSV data to Python with Pandas library (date/time parsing)