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I made N experiments and for each experiment I have a list of results with dates, i.e. I have N lists of the type [[float1, date1], [float2, date2], ...]

I want to make a matrix(NxM) of the results of all the experiments for the common dates. What is the most efficient way to do it?

For example,

Given three experiments (N = 3) with values:

[[float1a, date1],
[float2a, date2],
[float3a, date3]]

[[float1b, date1],
[float2b, date2],
[float3b, date3]]

[[float1c, date1],
[float2c, date2],
[float3c, date3],
[float3, date4]]

I would like to produce something like:

date1 - float1a float1b float1c
date2 - float2a float2b float2b
date3 - float3a float3b float3c
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  • do you have one list contain lists? so whats the dim of your list ?
    – Mazdak
    Sep 3, 2014 at 14:16

3 Answers 3

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I'd look at using pandas for something like this:

import pandas as pd
from datetime import date

expr1 = [[1.2,date(2012,1,1)], [1.3,date(2012,1,2)], [1.4,date(2012,1,3)]]
expr2 = [[1.2,date(2012,1,1)], [1.3,date(2012,1,2)], [1.4,date(2012,1,3)], [1.5,date(2012,1,4)]]
expr3 = [[1.2,date(2012,1,1)], [1.3,date(2012,1,2)], [1.4,date(2012,1,3)]]

exper_df1 = pd.DataFrame(expr1).set_index(1).rename(columns={0: "Result_1"})
exper_df2 = pd.DataFrame(expr2).set_index(1).rename(columns={0: "Result_2"})
exper_df3 = pd.DataFrame(expr3).set_index(1).rename(columns={0: "Result_3"})

experiments = [exper_df2, exper_df3]

exper_df = exper_df1.join(experiments, how='inner')

This produces a single DataFrame labelled by the dates you seek:

            Result_1  Result_2  Result_3
1                                       
2012-01-01       1.2       1.2       1.2
2012-01-02       1.3       1.3       1.3
2012-01-03       1.4       1.4       1.4
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  • Thank you! But it's not exactly that I want but very close. In your example, I want the result to be as follows: 0 1 2012-01-01 1.2 1.2 2012-01-02 1.3 1.3 2012-01-03 1.4 1.4 And if there is a date say 2012-01-04 for expr2 only than I want it to be dropped Sep 3, 2014 at 15:52
  • @user2598356 - This is an inner join on the table. I've updated the code
    – undershock
    Sep 3, 2014 at 16:13
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I'm not sure I understood you correctly, but by common dates you mean similar dates, you can create a dictionary where each key is a date, and the value is a list of experiments from that date.

{'date1': ['float1', 'float11', etc..], 'date2': [...], ... }

This will also allow easy access to results from a specific date. it can be done the following way:

my_results_list =  [[float1, date1], [float2, date2], ...]
results_by_date = {}
for res_couple in results:
    date, result = res_couple
    if date not in results_by_date:
        results_by_date[date] = []
    results_by_date.append(result)

I'm certain there are better ways to do this performance wise if that is an issue, but you get the idea.
Hope this helps.

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  • I ment that I want to find only common dates, i.e. the dates when I have results for all N experiments, there will be say M of such dates. And then make a matrix where I write the results of all N experiments for these M shared dates Sep 3, 2014 at 15:49
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Use numpy.asmatrix(data, dtype=None) function ! this is an efficient way for create MATRIX

import numpy as np
x = np.array([[float1, date1], [float2, date2], ...])
matrix = np.asmatrix(x)

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