445 lines
16 KiB
Python
445 lines
16 KiB
Python
#!/usr/bin/env python
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# encoding: utf-8
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import pandas as pd
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import numpy as np
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from math import ceil
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# Values manipulations
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def round_half_point(val):
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try:
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return 0.5 * ceil(2.0 * val)
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except ValueError:
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return val
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except TypeError:
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return val
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latex_caract = ["\\NoRep", "\\RepZ", "\\RepU", "\\RepD", "\\RepT"]
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def note_to_rep(x):
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r""" Transform a Note to the latex caracter
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:param x: dictionnary with "Niveau" and "Note" keys
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>>> d = {"Eleve":["E1"]*6 + ["E2"]*6,
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... "Nom": ["N1"]*4+["N2"]*2 + ["N1"]*4+["N2"]*2,
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... "Exercice":["Ex1"]*2+["Ex2"]*2+["Ex1"]+["Ex2"] + ["Ex1"]*2+["Ex2"]*2+["Ex1"]+["Ex2"],
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... "Question":["Q1"]+["Q2"]+["Q1"]+["Q2"]+["Q1"]+["Q1"] + ["Q1"]+["Q2"]+["Q1"]+["Q2"]+["Q1"]+["Q1"],
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... "Date":["16/09/2016"]*4+["01/10/2016"]*2 + ["16/09/2016"]*4+["01/10/2016"]*2,
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... "Trimestre": ["1"]*12,
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... "Bareme":[1]*2+[2]*2+[2]*2 + [1]*2+[2]*2+[2]*2,
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... "Niveau":[0]*4+[1]*2 + [0]*4+[1]*2,
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... "Note":[1, 0.33, 2, 1.5, 1, 3, 0.666, 1, 1.5, 1, 2, 3],
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... }
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>>> df = pd.DataFrame(d)
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>>> note_to_rep(df.loc[0])
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1.0
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>>> note_to_rep(df.loc[4])
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'\\RepU'
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"""
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if x["Niveau"]:
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if pd.isnull(x["Note"]):
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return latex_caract[0]
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elif x["Note"] in range(4):
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return latex_caract[int(x["Note"])+1]
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return x["Note"]
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def note_to_mark(x):
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""" Compute the mark when it is a "Nivea" note
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:param x: dictionnary with "Niveau", "Note" and "Bareme" keys
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>>> d = {"Eleve":["E1"]*6 + ["E2"]*6,
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... "Nom": ["N1"]*4+["N2"]*2 + ["N1"]*4+["N2"]*2,
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... "Exercice":["Ex1"]*2+["Ex2"]*2+["Ex1"]+["Ex2"] + ["Ex1"]*2+["Ex2"]*2+["Ex1"]+["Ex2"],
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... "Question":["Q1"]+["Q2"]+["Q1"]+["Q2"]+["Q1"]+["Q1"] + ["Q1"]+["Q2"]+["Q1"]+["Q2"]+["Q1"]+["Q1"],
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... "Date":["16/09/2016"]*4+["01/10/2016"]*2 + ["16/09/2016"]*4+["01/10/2016"]*2,
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... "Trimestre": ["1"]*12,
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... "Bareme":[1]*2+[2]*2+[2]*2 + [1]*2+[2]*2+[2]*2,
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... "Niveau":[0]*4+[1]*2 + [0]*4+[1]*2,
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... "Note":[1, 0.33, 2, 1.5, 1, 3, 0.666, 1, 1.5, 1, 2, 3],
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... }
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>>> df = pd.DataFrame(d)
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>>> note_to_mark(df.loc[0])
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1.0
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>>> note_to_mark(df.loc[10])
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1.3333333333333333
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"""
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if x["Niveau"]:
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return x["Note"] * x["Bareme"] / 3
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return x["Note"]
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def question_uniq_formater(row):
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""" Create a kind of unique description of the question
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>>> d = {"Eleve":["E1"]*6 + ["E2"]*6,
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... "Nom": ["N1"]*4+["N2"]*2 + ["N1"]*4+["N2"]*2,
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... "Exercice":["Ex1"]*2+["Ex2"]*2+["Ex1"]+["Ex2"] + ["Ex1"]*2+["Ex2"]*2+["Ex1"]+["Ex2"],
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... "Question":["Q1"]+["Q2"]+["Q1"]+["Q2"]+["Q1"]+["Q1"] + ["Q1"]+["Q2"]+["Q1"]+["Q2"]+["Q1"]+["Q1"],
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... "Date":["16/09/2016"]*4+["01/10/2016"]*2 + ["16/09/2016"]*4+["01/10/2016"]*2,
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... "Trimestre": ["1"]*12,
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... "Bareme":[1]*2+[2]*2+[2]*2 + [1]*2+[2]*2+[2]*2,
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... "Niveau":[0]*4+[1]*2 + [0]*4+[1]*2,
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... "Note":[1, 0.33, 2, 1.5, 1, 3, 0.666, 1, 1.5, 1, 2, 3],
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... }
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>>> df = pd.DataFrame(d)
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>>> question_uniq_formater(df.loc[0])
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'Ex1 Q1'
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>>> question_uniq_formater(df.loc[10])
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'Ex1 Q1'
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"""
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ans = ""
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try:
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int(row['Exercice'])
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except ValueError:
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ans += str(row["Exercice"])
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else:
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ans += "Exo"+str(row["Exercice"])
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ans += " "
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try:
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int(row["Question"])
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except ValueError:
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if not pd.isnull(row["Question"]):
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ans += str(row["Question"])
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else:
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ans += "Qu"+str(row["Question"])
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try:
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row["Commentaire"]
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except KeyError:
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pass
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else:
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if not pd.isnull(row["Commentaire"]):
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ans += " ({})".format(row["Commentaire"])
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return ans
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# DataFrame columns manipulations
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def compute_marks(df):
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""" Add Mark column to df
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:param df: DataFrame with "Note", "Niveau" and "Bareme" columns.
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>>> d = {"Eleve":["E1"]*6 + ["E2"]*6,
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... "Nom": ["N1"]*4+["N2"]*2 + ["N1"]*4+["N2"]*2,
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... "Exercice":["Ex1"]*2+["Ex2"]*2+["Ex1"]+["Ex2"] + ["Ex1"]*2+["Ex2"]*2+["Ex1"]+["Ex2"],
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... "Question":["Q1"]+["Q2"]+["Q1"]+["Q2"]+["Q1"]+["Q1"] + ["Q1"]+["Q2"]+["Q1"]+["Q2"]+["Q1"]+["Q1"],
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... "Date":["16/09/2016"]*4+["01/10/2016"]*2 + ["16/09/2016"]*4+["01/10/2016"]*2,
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... "Trimestre": ["1"]*12,
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... "Bareme":[1]*2+[2]*2+[2]*2 + [1]*2+[2]*2+[2]*2,
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... "Niveau":[0]*4+[1]*2 + [0]*4+[1]*2,
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... "Note":[1, 0.33, 2, 1.5, 1, 3, 0.666, 1, 1.5, 1, 2, 3],
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... }
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>>> df = pd.DataFrame(d)
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>>> compute_marks(df)
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0 1.000000
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1 0.330000
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2 2.000000
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3 1.500000
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4 0.666667
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5 2.000000
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6 0.666000
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7 1.000000
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8 1.500000
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9 1.000000
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10 1.333333
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11 2.000000
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dtype: float64
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"""
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return df[["Note", "Niveau", "Bareme"]].apply(note_to_mark, axis=1)
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def compute_latex_rep(df):
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""" Add Latex_rep column to df
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:param df: DataFrame with "Note" and "Niveau" columns.
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>>> d = {"Eleve":["E1"]*6 + ["E2"]*6,
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... "Nom": ["N1"]*4+["N2"]*2 + ["N1"]*4+["N2"]*2,
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... "Exercice":["Ex1"]*2+["Ex2"]*2+["Ex1"]+["Ex2"] + ["Ex1"]*2+["Ex2"]*2+["Ex1"]+["Ex2"],
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... "Question":["Q1"]+["Q2"]+["Q1"]+["Q2"]+["Q1"]+["Q1"] + ["Q1"]+["Q2"]+["Q1"]+["Q2"]+["Q1"]+["Q1"],
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... "Date":["16/09/2016"]*4+["01/10/2016"]*2 + ["16/09/2016"]*4+["01/10/2016"]*2,
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... "Trimestre": ["1"]*12,
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... "Bareme":[1]*2+[2]*2+[2]*2 + [1]*2+[2]*2+[2]*2,
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... "Niveau":[0]*4+[1]*2 + [0]*4+[1]*2,
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... "Note":[1, 0.33, 2, 1.5, 1, 3, 0.666, 1, 1.5, 1, 2, 3],
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... }
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>>> df = pd.DataFrame(d)
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>>> compute_latex_rep(df)
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0 1
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1 0.33
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2 2
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3 1.5
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4 \RepU
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5 \RepT
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6 0.666
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7 1
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8 1.5
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9 1
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10 \RepD
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11 \RepT
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dtype: object
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"""
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return df[["Note", "Niveau"]].apply(note_to_rep, axis=1).fillna("??")
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def compute_normalized(df):
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""" Compute the normalized mark (Mark / Bareme)
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:param df: DataFrame with "Mark" and "Bareme" columns
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>>> d = {"Eleve":["E1"]*6 + ["E2"]*6,
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... "Nom": ["N1"]*4+["N2"]*2 + ["N1"]*4+["N2"]*2,
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... "Exercice":["Ex1"]*2+["Ex2"]*2+["Ex1"]+["Ex2"] + ["Ex1"]*2+["Ex2"]*2+["Ex1"]+["Ex2"],
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... "Question":["Q1"]+["Q2"]+["Q1"]+["Q2"]+["Q1"]+["Q1"] + ["Q1"]+["Q2"]+["Q1"]+["Q2"]+["Q1"]+["Q1"],
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... "Date":["16/09/2016"]*4+["01/10/2016"]*2 + ["16/09/2016"]*4+["01/10/2016"]*2,
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... "Trimestre": ["1"]*12,
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... "Bareme":[1]*2+[2]*2+[2]*2 + [1]*2+[2]*2+[2]*2,
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... "Niveau":[0]*4+[1]*2 + [0]*4+[1]*2,
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... "Note":[1, 0.33, 2, 1.5, 1, 3, 0.666, 1, 1.5, 1, 2, 3],
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... }
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>>> df = pd.DataFrame(d)
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>>> df["Mark"] = compute_marks(df)
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>>> compute_normalized(df)
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0 1.000000
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1 0.330000
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2 1.000000
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3 0.750000
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4 0.333333
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5 1.000000
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6 0.666000
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7 1.000000
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8 0.750000
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9 0.500000
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10 0.666667
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11 1.000000
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dtype: float64
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"""
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return df["Mark"] / df["Bareme"]
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def compute_question_description(df):
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""" Compute the unique description of a question """
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return df.apply(question_uniq_formater, axis = 1)
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# Computing custom values
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def compute_exo_marks(df):
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""" Compute Exercice level marks
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:param df: the original marks
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:returns: DataFrame with computed marks
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>>> d = {"Eleve":["E1"]*6 + ["E2"]*6,
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... "Nom": ["N1"]*4+["N2"]*2 + ["N1"]*4+["N2"]*2,
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... "Exercice":["Ex1"]*2+["Ex2"]*2+["Ex1"]+["Ex2"] + ["Ex1"]*2+["Ex2"]*2+["Ex1"]+["Ex2"],
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... "Question":["Q1"]+["Q2"]+["Q1"]+["Q2"]+["Q1"]+["Q1"] + ["Q1"]+["Q2"]+["Q1"]+["Q2"]+["Q1"]+["Q1"],
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... "Date":["16/09/2016"]*4+["01/10/2016"]*2 + ["16/09/2016"]*4+["01/10/2016"]*2,
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... "Trimestre": ["1"]*12,
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... "Bareme":[1]*2+[2]*2+[2]*2 + [1]*2+[2]*2+[2]*2,
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... "Niveau":[0]*4+[1]*2 + [0]*4+[1]*2,
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... "Note":[1, 0.33, 2, 1.5, 1, 3, 0.666, 1, 1.5, 1, 2, 3],
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... }
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>>> df = pd.DataFrame(d)
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>>> df["Mark"] = compute_marks(df)
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>>> compute_exo_marks(df)
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Eleve Nom Exercice Date Trimestre Bareme Mark Question Niveau
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0 E1 N1 Ex1 16/09/2016 1 2.0 1.5 Total 0
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1 E1 N1 Ex2 16/09/2016 1 4.0 3.5 Total 0
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2 E1 N2 Ex1 01/10/2016 1 2.0 1.0 Total 0
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3 E1 N2 Ex2 01/10/2016 1 2.0 2.0 Total 0
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4 E2 N1 Ex1 16/09/2016 1 2.0 2.0 Total 0
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5 E2 N1 Ex2 16/09/2016 1 4.0 2.5 Total 0
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6 E2 N2 Ex1 01/10/2016 1 2.0 1.5 Total 0
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7 E2 N2 Ex2 01/10/2016 1 2.0 2.0 Total 0
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"""
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exo_pt = pd.pivot_table(df,
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index = [ "Eleve", "Nom", "Exercice", "Date", "Trimestre"],
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values = ["Bareme", "Mark"],
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aggfunc=np.sum,
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).applymap(round_half_point)
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exo = exo_pt.reset_index()
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exo["Question"] = "Total"
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exo["Niveau"] = 0
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return exo
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def compute_eval_marks(df):
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""" Compute Nom level marks from the dataframe using only row with Total in Question
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:param df: DataFrame with value Total in Question column
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:returns: DataFrame with evaluation marks
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>>> d = {"Eleve":["E1"]*6 + ["E2"]*6,
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... "Nom": ["N1"]*4+["N2"]*2 + ["N1"]*4+["N2"]*2,
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... "Exercice":["Ex1"]*2+["Ex2"]*2+["Ex1"]+["Ex2"] + ["Ex1"]*2+["Ex2"]*2+["Ex1"]+["Ex2"],
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... "Question":["Q1"]+["Q2"]+["Q1"]+["Q2"]+["Q1"]+["Q1"] + ["Q1"]+["Q2"]+["Q1"]+["Q2"]+["Q1"]+["Q1"],
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... "Date":["16/09/2016"]*4+["01/10/2016"]*2 + ["16/09/2016"]*4+["01/10/2016"]*2,
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... "Trimestre": ["1"]*12,
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... "Bareme":[1]*2+[2]*2+[2]*2 + [1]*2+[2]*2+[2]*2,
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... "Niveau":[0]*4+[1]*2 + [0]*4+[1]*2,
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... "Note":[1, 0.33, 2, 1.5, 1, 3, 0.666, 1, 1.5, 1, 2, 3],
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... }
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>>> df = pd.DataFrame(d)
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>>> df["Mark"] = compute_marks(df)
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>>> df_exo = compute_exo_marks(df)
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>>> compute_eval_marks(df_exo)
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index Eleve Nom Trimestre Bareme Date Mark
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0 0 E1 N1 1 6.0 16/09/2016 5.0
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1 1 E2 N1 1 6.0 16/09/2016 4.5
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2 0 E1 N2 1 4.0 01/10/2016 3.0
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3 1 E2 N2 1 4.0 01/10/2016 3.5
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"""
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def date_format(dates):
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date_l = list(dates.unique())
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if len(date_l) == 1:
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return date_l[0]
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else:
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return "Trimestre"
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eval_m = pd.DataFrame()
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for eval_name in df["Nom"].unique():
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eval_df = df[df["Nom"] == eval_name]
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dates = eval_df["Date"].unique()
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if len(dates) > 1:
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# Les devoirs sur la durée, les NaN ne sont pas pénalisants
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# On les enlèves
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eval_df = eval_df.dropna(subset=["Mark"])
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dates = ["Trimestre"]
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eval_pt = pd.pivot_table(eval_df,
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index = [ "Eleve", "Nom", "Trimestre"],
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values = ["Bareme", "Mark", "Date"],
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aggfunc={"Bareme": np.sum, "Mark": np.sum, "Date":lambda x:dates[0]},
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)
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eval_pt = eval_pt.reset_index()
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eval_m = pd.concat([eval_m, eval_pt])
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eval_m = eval_m.reset_index()
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return eval_m
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def digest_flat_df(flat_df):
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r""" Compute necessary element to make a flat df usable for analysis.
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>>> from numpy import nan
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>>> d = {"Eleve":["E1"]*6 + ["E2"]*6,
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... "Nom": ["N1"]*4+["N2"]*2 + ["N1"]*4+["N2"]*2,
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... "Exercice":["Ex1"]*2+["Ex2"]*2+["Ex1"]+["Ex2"] + ["Ex1"]*2+["Ex2"]*2+["Ex1"]+["Ex2"],
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... "Question":["Q1"]+["Q2"]+["Q1"]+["Q2"]+["Q1"]+["Q1"] + ["Q1"]+["Q2"]+["Q1"]+["Q2"]+["Q1"]+["Q1"],
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... "Date":["16/09/2016"]*4+["01/10/2016"]*2 + ["16/09/2016"]*4+["01/10/2016"]*2,
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... "Trimestre": ["1"]*12,
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... "Bareme":[1]*2+[2]*2+[2]*2 + [1]*2+[2]*2+[2]*2,
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... "Niveau":[0]*4+[1]*2 + [0]*4+[1]*2,
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... "Note":[1, 0.33, 2, 1.5, 1, 3, nan, 0, 0, nan, nan, nan],
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... }
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>>> df = pd.DataFrame(d)
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>>> quest_df, exo_df, eval_df = digest_flat_df(df)
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>>> quest_df[['Eleve', "Nom", "Mark", "Latex_rep", "Normalized", "Uniq_quest"]]
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Eleve Nom Mark Latex_rep Normalized Uniq_quest
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0 E1 N1 1.000000 1 1.000000 Ex1 Q1
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1 E1 N1 0.330000 0.33 0.330000 Ex1 Q2
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2 E1 N1 2.000000 2 1.000000 Ex2 Q1
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3 E1 N1 1.500000 1.5 0.750000 Ex2 Q2
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4 E1 N2 0.666667 \RepU 0.333333 Ex1 Q1
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5 E1 N2 2.000000 \RepT 1.000000 Ex2 Q1
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6 E2 N1 NaN ?? NaN Ex1 Q1
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7 E2 N1 0.000000 0 0.000000 Ex1 Q2
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8 E2 N1 0.000000 0 0.000000 Ex2 Q1
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9 E2 N1 NaN ?? NaN Ex2 Q2
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10 E2 N2 NaN \NoRep NaN Ex1 Q1
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11 E2 N2 NaN \NoRep NaN Ex2 Q1
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>>> exo_df[['Eleve', "Nom", "Exercice", "Mark", "Normalized"]]
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Eleve Nom Exercice Mark Normalized
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0 E1 N1 Ex1 1.5 0.750
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1 E1 N1 Ex2 3.5 0.875
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2 E1 N2 Ex1 1.0 0.500
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3 E1 N2 Ex2 2.0 1.000
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4 E2 N1 Ex1 0.0 0.000
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5 E2 N1 Ex2 0.0 0.000
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6 E2 N2 Ex1 NaN NaN
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7 E2 N2 Ex2 NaN NaN
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>>> eval_df
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index Eleve Nom Trimestre Bareme Date Mark Normalized
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0 0 E1 N1 1 6.0 16/09/2016 5.0 0.833333
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1 1 E2 N1 1 6.0 16/09/2016 0.0 0.000000
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2 0 E1 N2 1 4.0 01/10/2016 3.0 0.750000
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3 1 E2 N2 1 4.0 01/10/2016 NaN NaN
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"""
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df = flat_df.copy()
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df["Mark"] = compute_marks(flat_df)
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df["Latex_rep"] = compute_latex_rep(flat_df)
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df["Normalized"] = compute_normalized(df)
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df["Uniq_quest"] = compute_question_description(df)
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exo_df = compute_exo_marks(df)
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exo_df["Normalized"] = compute_normalized(exo_df)
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eval_df = compute_eval_marks(exo_df)
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eval_df["Normalized"] = compute_normalized(eval_df)
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return df, exo_df, eval_df
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def students_pov(quest_df, exo_df, eval_df):
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"""
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>>> d = {"Eleve":["E1"]*6 + ["E2"]*6,
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... "Nom": ["N1"]*4+["N2"]*2 + ["N1"]*4+["N2"]*2,
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... "Exercice":["Ex1"]*2+["Ex2"]*2+["Ex1"]+["Ex2"] + ["Ex1"]*2+["Ex2"]*2+["Ex1"]+["Ex2"],
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... "Question":["Q1"]+["Q2"]+["Q1"]+["Q2"]+["Q1"]+["Q1"] + ["Q1"]+["Q2"]+["Q1"]+["Q2"]+["Q1"]+["Q1"],
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... "Date":["16/09/2016"]*4+["01/10/2016"]*2 + ["16/09/2016"]*4+["01/10/2016"]*2,
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... "Trimestre": ["1"]*12,
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... "Bareme":[1]*2+[2]*2+[2]*2 + [1]*2+[2]*2+[2]*2,
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... "Niveau":[0]*4+[1]*2 + [0]*4+[1]*2,
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... "Note":[1, 0.33, 2, 1.5, 1, 3, 0.666, 1, 1.5, 1, 2, 3],
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... }
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>>> df = pd.DataFrame(d)
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>>> quest_df, exo_df, eval_df = digest_flat_df(df)
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>>> std_pov = students_pov(quest_df, exo_df, eval_df)
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>>> std = std_pov[0]
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>>> std["Nom"]
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'E1'
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>>> "{} / {}".format(std["Total"]["Mark"], std["Total"]["Bareme"])
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'5.0 / 6.0'
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>>> for exo in std["Exercices"]:
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... print("{}: {} / {}".format(exo["Nom"], exo["Total"]["Mark"], exo["Total"]["Bareme"]))
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Ex1: 1.5 / 2.0
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Ex2: 3.5 / 4.0
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>>> exo = std["Exercices"][0]
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>>> for _,q in exo["Questions"].iterrows():
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... print("{} : {}".format(q["Question"], q["Latex_rep"]))
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Q1 : 1.0
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Q2 : 0.33
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|
Q1 : \RepU
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"""
|
|
es = []
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|
for e in eval_df["Eleve"].unique():
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eleve = {"Nom":e}
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e_quest = quest_df[quest_df["Eleve"] == e]
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e_exo = exo_df[exo_df["Eleve"] == e]
|
|
#e_df = ds_df[ds_df["Eleve"] == e][["Exercice", "Question", "Bareme", "Commentaire", "Niveau", "Mark", "Latex_rep"]]
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eleve["Total"] = eval_df[eval_df["Eleve"]==e].iloc[0]
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|
|
|
exos = []
|
|
for exo in e_exo["Exercice"].unique():
|
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ex = {"Nom":exo}
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ex["Total"] = e_exo[e_exo["Exercice"]==exo].iloc[0]
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ex["Questions"] = e_quest[e_quest["Exercice"] == exo]
|
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exos.append(ex)
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eleve["Exercices"] = exos
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|
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es.append(eleve)
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return es
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# -----------------------------
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# Reglages pour 'vim'
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# vim:set autoindent expandtab tabstop=4 shiftwidth=4:
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# cursor: 16 del
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