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I have a dataframe as follows:

layer   bit-idx exponent    accuracy
conv2d  0       0           0.683099
conv2d  1       0           0.683099
conv2d  2       0           0.683099
conv2d  3       0           0.683099
conv2d  0       1           0.682403
conv2d  1       1           0.668917
conv2d  2       1           0.472103
conv2d  3       1           0.668600
dense   0       0           0.683107
dense   1       0           0.683101
dense   2       0           0.683020
dense   3       0           0.513099
dense   0       1           0.683107
dense   1       1           0.683101
dense   2       1           0.483020
dense   3       1           0.553099

my. first try on the hole dataframe is as follows:

plt.grid()
ax = sns.scatterplot(data=df_bi, x='layer', y=df_bi['accuracy']*100, hue='index', alpha=1, s=100, palette='RdBu', legend=True)
sns.lineplot(data=df_wi, x='layer', y=68.3099, linestyle='--', color='red', linewidth=1, ax=ax)
plt.ylim(10,80)

and I get the following results:

enter image description here

How can I possibly plot this dataframe as a scatterplot where the X-axis represents layers, and each tick is split into two columns for exponent=0 and exponent=1, and Y-axis representing accuracy?

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  • 1
    do you mean this: sns.swarmplot(data=df, x='layer', y='accuracy', hue='exponent', dodge=True) i.sstatic.net/Zb1xL.png
    – tdy
    Commented Dec 24, 2022 at 21:47
  • It seems close to what I am imagining Commented Dec 24, 2022 at 21:51

1 Answer 1

1

It seems you are thinking of a swarmplot, not a scatterplot. The usage is as follows:

import seaborn as sns
sns.swarmplot(data='df', x='layer', y='accuracy', hue='exponent', dodge=True)

"hue" changes the color dependent on the exponent, "dodge" makes sure they are non-overlapping such that you have "different columns". Hope that helps, cheers.

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