sasha HF staff commited on
Commit
1aae210
·
1 Parent(s): 81370eb

ok how about this

Browse files
Files changed (1) hide show
  1. app.py +4 -3
app.py CHANGED
@@ -27,12 +27,13 @@ def get_plots(task):
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  return fig
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  def get_all_plots():
 
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  for task in tasks:
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  task_df= pd.read_csv('data/energy/'+task)
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  params_df = pd.read_csv('data/params/'+task)
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  params_df= params_df.rename(columns={"Link": "model"})
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  tasks_df = pd.merge(task_df, params_df, on='model')
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- all_df = pd.DataFrame(columns = tasks_df.columns)
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  all_df = pd.concat([all_df, tasks_df])
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  all_df['Total GPU Energy (Wh)'] = all_df['total_gpu_energy']*1000
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  all_df = all_df.sort_values(by=['Total GPU Energy (Wh)'])
@@ -67,13 +68,13 @@ def get_model_names(task):
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  def get_all_model_names():
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  #TODO: add link to results in model card of each model
 
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  for task in tasks:
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  task_df= pd.read_csv('data/params/'+task)
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  energy_df= pd.read_csv('data/energy/'+task)
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  task_df= task_df.rename(columns={"Link": "model"})
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  tasks_df = pd.merge(task_df, energy_df, on='model')
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- print(tasks_df.columns)
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- all_df = pd.DataFrame(columns = tasks_df.columns)
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  all_df = pd.concat([all_df, tasks_df])
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  all_df=all_df.drop_duplicates(subset=['model'])
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  all_df['Parameters'] = all_df['parameters'].apply(format_params)
 
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  return fig
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  def get_all_plots():
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+ all_df = pd.DataFrame(columns = ['model', 'parameters', 'total_gpu_energy']
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  for task in tasks:
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  task_df= pd.read_csv('data/energy/'+task)
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  params_df = pd.read_csv('data/params/'+task)
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  params_df= params_df.rename(columns={"Link": "model"})
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  tasks_df = pd.merge(task_df, params_df, on='model')
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+ tasks_df= tasks_df[['model', 'parameters', 'total_gpu_energy']]
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  all_df = pd.concat([all_df, tasks_df])
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  all_df['Total GPU Energy (Wh)'] = all_df['total_gpu_energy']*1000
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  all_df = all_df.sort_values(by=['Total GPU Energy (Wh)'])
 
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  def get_all_model_names():
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  #TODO: add link to results in model card of each model
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+ all_df = pd.DataFrame(columns = ['model', 'parameters', 'total_gpu_energy']
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  for task in tasks:
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  task_df= pd.read_csv('data/params/'+task)
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  energy_df= pd.read_csv('data/energy/'+task)
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  task_df= task_df.rename(columns={"Link": "model"})
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  tasks_df = pd.merge(task_df, energy_df, on='model')
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+ tasks_df= tasks_df[['model', 'parameters', 'total_gpu_energy']]
 
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  all_df = pd.concat([all_df, tasks_df])
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  all_df=all_df.drop_duplicates(subset=['model'])
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  all_df['Parameters'] = all_df['parameters'].apply(format_params)