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I have some time series data as(financial stock trading data):

TIMESTAMP    PRICE     VOLUME
1294311545    24990  1500000000
1294317813    25499  5000000000
1294318449    25499   100000000

I need to convert them to OHLC values (JSON list) based on price column,ie,(open,high,low,close), and show that as OHLC graph with highstock JS framework. The output should be as following:

[{'time':'2013-09-01','open':24999,'high':25499,'low':24999,'close':25000,'volume':15000000},
 {'time':'2013-09-02','open':24900,'high':25600,'low':24800,'close':25010,'volume':16000000},
 {...}]

For example,my sample have 10 data for day 2013-09-01,the output will have one object for the day with high is the highest price of all 10 data, low is the lowest price,open is the first price of the day, close is the last price of that day,volume should be the TOTAL volume of all 10 data.

I know there is a python library pandas maybe could do that,but i still could not try it out.

Updated: As suggestion, i use resample() as:

df['VOLUME'].resample('H', how='sum')
df['PRICE'].resample('H', how='ohlc')

But how to merge the result?

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Might help if you attach a sample of the data and the format you would like the output. –  mattexx Sep 3 '13 at 14:20
    
@mattexx, i have updated my sample and output requirement. –  Simon Wang Sep 4 '13 at 0:37

1 Answer 1

up vote 0 down vote accepted

At the moment you can only perform ohlc on a column/Series (will be fixed in 0.13).

First, coerce TIMESTAMP columns to a pandas Timestamp:

In [11]: df.TIMESTAMP = pd.to_datetime(df.TIMESTAMP, unit='s')

In [12]: df.set_index('TIMESTAMP', inplace=True)

In [13]: df
Out[13]:
                     PRICE      VOLUME
TIMESTAMP
2011-01-06 10:59:05  24990  1500000000
2011-01-06 12:43:33  25499  5000000000
2011-01-06 12:54:09  25499   100000000

The resample via ohlc (here I've resampled by hour):

In [14]: df['VOLUME'].resample('H', how='ohlc')
Out[14]:
                           open        high         low       close
TIMESTAMP
2011-01-06 10:00:00  1500000000  1500000000  1500000000  1500000000
2011-01-06 11:00:00         NaN         NaN         NaN         NaN
2011-01-06 12:00:00  5000000000  5000000000   100000000   100000000

In [15]: df['PRICE'].resample('H', how='ohlc')
Out[15]:
                      open   high    low  close
TIMESTAMP
2011-01-06 10:00:00  24990  24990  24990  24990
2011-01-06 11:00:00    NaN    NaN    NaN    NaN
2011-01-06 12:00:00  25499  25499  25499  25499

You can apply to_json to any DataFrame:

In [16]: df['PRICE'].resample('H', how='ohlc').to_json()
Out[16]: '{"open":{"1294308000000000000":24990.0,"1294311600000000000":null,"1294315200000000000":25499.0},"high":{"1294308000000000000":24990.0,"1294311600000000000":null,"1294315200000000000":25499.0},"low":{"1294308000000000000":24990.0,"1294311600000000000":null,"1294315200000000000":25499.0},"close":{"1294308000000000000":24990.0,"1294311600000000000":null,"1294315200000000000":25499.0}}'

*This would probably be a straightforward enhancement for a DataFrame atm its NotImplemented.

Updated: from your desired output (or at least very close to), can be achieved as follows:

In [21]: price = df['PRICE'].resample('D', how='ohlc').reset_index()

In [22]: price
Out[22]: 
            TIMESTAMP   open   high    low  close
0 2011-01-06 00:00:00  24990  25499  24990  25499

Use the records orientation and the iso date_format:

In [23]: price.to_json(date_format='iso', orient='records')
Out[23]: '[{"TIMESTAMP":"2011-01-06T00:00:00.000Z","open":24990,"high":25499,"low":24990,"close":25499}]'

In [24]: price.to_json('foo.json', date_format='iso', orient='records')  # save as json file
share|improve this answer
    
FYI in 0.13 to_json will take a date_unit='s' argument to put the epoch time stamps in seconds for example (0.12 writes these as ns since epoch) –  Jeff Sep 3 '13 at 15:18
    
@Andy, i have updated my question, could you help to check whether it is achievable with pandas?I'm new to both python and pandas:( –  Simon Wang Sep 4 '13 at 0:40
    
@SimonWang thanks for updating! I've just put a PR together to do the ohlc from a DataFrame github.com/pydata/pandas/pull/4740 –  Andy Hayden Sep 4 '13 at 0:49
    
@Andy, how about the 'volume', is it possible to count it for specific time range? –  Simon Wang Sep 4 '13 at 1:15
    
@SimonWang yup, just do the same but replace PRICE with VOLUME :) –  Andy Hayden Sep 4 '13 at 1:17

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