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I created a data_frame using the following code:

data_series = {}
while not q.empty():
    (name, data_dict) = q.get()
    data_series[name] = pd.Series(data_dict)`
data_frame = pd.DataFrame(data_series)

#data_dict is of the format { MD5: [time_as_float1, time_as_float2] }
#I have multiple data_dicts stored in a queue (created by multiple worker threads)

I would like to basically be able to achieve the following: 1. For each MD5, output how much time flog, hlog and slog took. (By subtracting corresponding time_as_float2 and time_as_float1)
2. For each of hlog, flog .., show first time they saw an MD5 (smallest time_as_float1) and last time they saw an MD5 (max(time_as_float2)

data_frame: Index: 395 entries, 0037B4F499705D725C2B3B00956B574E to FF11433CC64568110D3AD46037290725 Data columns (total 3 columns): flog 220 non-null values hlog 175 non-null values slog 20 non-null values dtypes: object(3) (Pdb) data_frame['hlog'] 0037B4F499705D725C2B3B00956B574E [1401808481.57, 1401808481.7] 016E73F1038CE46AF4A619453AC7DE70 [1401808491.38, 1401808491.51] 0250F3B15665E8B00F7D58CCA8C2C8F4 NaN 0260FA375596B150DF8B4D7E3CA2D934 NaN 03173B333E22CE63F6485AC87D616878 [1401808482.36, 1401808482.49]

I'm not even sure if my way of constructing the data_frame is correct, cuz it feels like my requirements are so simple, they'd be supported by default.

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Can you give a sample of q? 2 lines would suffice, just to make reproduction of your data sets easier –  FooBar Jun 3 '14 at 11:31
q is a Queue.Queue object that contains tuples of (name, data_dict).. name is str and data_dict is in the question already –  Lelouch Lamperouge Jun 3 '14 at 11:42

1 Answer 1

up vote 1 down vote accepted

You are right, your way of constructing the data frame is not really good. Try to make use of pandas strong interaction with numpy.

I create the dataframe first (for all indices, you should know how many rows you will have ex-ante for better performance) and then populate by row. I cannot improve this part since I don't have python 3 and queue.

# first initialize dataframe
data_frame = pd.DataFrame(columns=['type', 'hash', 't0', 't1'], index=np.arange(10))

# this is now what would have to be inside the queue loop
data_dict = {'type': name, 'hash':md5hash,
             't0': times[0], 't1': times[1]}
name = "hlog"

data_series = pd.Series(data_dict)

data_frame.loc[0] = data_series
data_series[['t0', 't1']] += 0.5 # now I just quickly "fake" an additional loop to create more data
data_frame.loc[1] = data_series

This is now how my data set looks:

   type hash   t0   t1
0  hlog  MD5  0.1  0.2
1  hlog  MD5  0.6  0.7
2   NaN  NaN  NaN  NaN
3   NaN  NaN  NaN  NaN

So now, with having separate columns for t0 and t1, your first question becomes very easy:

data_frame['time-it-took'] = data_frame['t1'] - data_frame['t0']

The second one has also been answered quite often here at SO: It is a typical groupby-apply combination you can find a lot information on in the documentation: # set as index: type data_frame.set_index(['type'], inplace=True) # by type: group up, and set as value the minimum to data_frame['first-time'] = data_frame.groupby(level=0).apply(lambda x: x['t0'].min())

This is now how my data looks (with the index still set to be the hash type):

     hash   t0   t1 time-it-took  first-time
hlog  MD5  0.1  0.2          0.1         0.1
hlog  MD5  0.6  0.7          0.1         0.1
NaN   NaN  NaN  NaN          NaN         NaN

Once you understood what happened here, I'm sure you can apply this to find the maximum of 't1'.

Again, they key was to set up the data frame properly, which is something you should spend more time on doing. Try thinking about the ways your data would be structured most logically.

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