#!/usr/bin/env python3
# Copyright (c) 2017-2018, Lawrence Livermore National Security, LLC.
# Produced at the Lawrence Livermore National Laboratory. LLNL-CODE-734707.
# All Rights reserved. See files LICENSE and NOTICE for details.
#
# This file is part of CEED, a collection of benchmarks, miniapps, software
# libraries and APIs for efficient high-order finite element and spectral
# element discretizations for exascale applications. For more information and
# source code availability see http://github.com/ceed.
#
# The CEED research is supported by the Exascale Computing Project 17-SC-20-SC,
# a collaborative effort of two U.S. Department of Energy organizations (Office
# of Science and the National Nuclear Security Administration) responsible for
# the planning and preparation of a capable exascale ecosystem, including
# software, applications, hardware, advanced system engineering and early
# testbed platforms, in support of the nation's exascale computing imperative.


#####   Adjustable plot parameters:
log_y=0               # use log scale on the y-axis?
x_range=(1e1,4e6)     # plot range for the x-axis; comment out for auto
y_range=(0,2e9)       # plot range for the y-axis; comment out for auto
draw_iter_lines=0     # draw the "iter/s" lines?
ymin_iter_lines=3e5   # minimal y value for the "iter/s" lines
ymax_iter_lines=8e8   # maximal y value for the "iter/s" lines
legend_ncol=(2 if log_y else 1)   # number of columns in the legend
write_figures=1       # save the figures to files?
show_figures=1        # display the figures on the screen?


#####   Load the data
import pandas as pd
from postprocess_base import read_logs

runs = read_logs()

#####   Sample plot output
from matplotlib import use
if not show_figures:
   use('pdf')
from pylab import *

rcParams['font.sans-serif'].insert(0,'Noto Sans')
rcParams['font.sans-serif'].insert(1,'Open Sans')
rcParams['figure.figsize']=[10, 8] # default: 8 x 6

cm_size=16
colors=['dimgrey','black','saddlebrown','firebrick','red','orange',
        'gold','lightgreen','green','cyan','teal','blue','navy',
        'purple','magenta','pink']

##### Get test names
sel_runs=runs
tests=list(sel_runs.test.unique())
test=tests[0]

##### Run information
print('Using test:', test)

if 'CEED Benchmark Problem' in test:
   test_short = test.strip().split()[0] + ' BP' + test.strip().split()[-1]

##### Plot same BP
sel_runs=sel_runs.loc[sel_runs['test'] == test]

##### Plot same case (scalar vs vector)
cases=list(sel_runs.case.unique())
case=cases[0]
vdim=1 if case=='scalar' else 3
print('Using case:', case)
sel_runs=sel_runs.loc[sel_runs['case'] == case]

##### Plot same 'code'
codes = list(sel_runs.code.unique())
code  = codes[0]
sel_runs=sel_runs.loc[sel_runs['code'] == code]

##### Group plots by backend and number of processes
pl_set=sel_runs[['backend', 'backend_memtype', 'num_procs', 'num_procs_node']]
pl_set=pl_set.drop_duplicates()

##### Plotting
for index, row in pl_set.iterrows():
   backend=row['backend']
   backend_memtype=row['backend_memtype']
   num_procs=float(row['num_procs'])
   num_procs_node=float(row['num_procs_node'])
   num_nodes=num_procs/num_procs_node
   pl_runs=sel_runs[(sel_runs.backend==backend) |
                    (sel_runs.num_procs==num_procs) |
                    (sel_runs.num_procs_node==num_procs_node)]
   if len(pl_runs.index)==0:
      continue

   print('backend: %s, compute nodes: %i, number of MPI tasks = %i'%(
      backend,num_nodes,num_procs))

   figure()
   i=0
   sol_p_set=sel_runs['degree'].drop_duplicates()
   sol_p_set=sol_p_set.sort_values()
   ##### Iterate over P
   for sol_p in sol_p_set:
      qpts=sel_runs['quadrature_pts'].loc[pl_runs['degree']==sol_p]
      qpts=qpts.drop_duplicates().sort_values(ascending=False)
      qpts=qpts.reset_index(drop=True)
      print('Degree: %i, quadrature points:'%sol_p, qpts[0])
      # Generate plot data
      d=[[run['degree'],run['num_elem'],1.*run['num_unknowns']/num_nodes/vdim,
          run['cg_iteration_dps']/num_nodes]
         for index, run in
         pl_runs.loc[(pl_runs['degree']==sol_p) |
                     (pl_runs['quadrature_pts']==qpts[0])].iterrows()]
      d=[[e[2],e[3]] for e in d if e[0]==sol_p]
      # (DOFs/[sec/iter]/node)/(DOFs/node) = iter/sec
      d=[[nun,
          min([e[1] for e in d if e[0]==nun]),
          max([e[1] for e in d if e[0]==nun])]
         for nun in set([e[0] for e in d])]
      d=asarray(sorted(d))
      # Plot
      plot(d[:,0],d[:,2],'o-',color=colors[i%cm_size],
           label='p=%i'%sol_p)
      if list(d[:,1]) != list(d[:,2]):
         plot(d[:,0],d[:,1],'o-',color=colors[i])
         fill_between(d[:,0],d[:,1],d[:,2],facecolor=colors[i],alpha=0.2)
      # Continue if only 1 set of qpts
      if len(qpts)==1:
         i=i+1
         continue
      # Second set of qpts
      d=[[run['degree'],run['num_elem'],1.*run['num_unknowns']/num_nodes/vdim,
          run['cg_iteration_dps']/num_nodes]
         for index, run in
         pl_runs.loc[(pl_runs['degree']==sol_p) |
                     (pl_runs['quadrature_pts']==qpts[1])].iterrows()]
      d=[[e[2],e[3]] for e in d if e[0]==sol_p]
      if len(d)==0:
         i=i+1
         continue
      d=[[nun,
          min([e[1] for e in d if e[0]==nun]),
          max([e[1] for e in d if e[0]==nun])]
         for nun in set([e[0] for e in d])]
      d=asarray(sorted(d))
      plot(d[:,0],d[:,2],'s--',color=colors[i],
           label='p=%i'%sol_p)
      if list(d[:,1]) != list(d[:,2]):
         plot(d[:,0],d[:,1],'s--',color=colors[i])
      ##
      i=i+1
   ##
   if draw_iter_lines:
      y0,y1=ymin_iter_lines,ymax_iter_lines
      y=asarray([y0,y1]) if log_y else exp(linspace(log(y0), log(y1)))
      slope1=600.
      slope2=6000.
      plot(y/slope1,y,'k--',label='%g iter/s'%(slope1/vdim))
      plot(y/slope2,y,'k-',label='%g iter/s'%(slope2/vdim))

   # Plot information
   title(r'%i node%s $\times$ %i ranks, %s, %s, %s'%(
         num_nodes,'' if num_nodes==1 else 's',
         num_procs_node,backend,backend_memtype,test_short),fontsize=16)
   xscale('log') # subsx=[2,4,6,8]
   if log_y:
      yscale('log')
   if 'x_range' in vars() and len(x_range)==2:
      xlim(x_range)
   if 'y_range' in vars() and len(y_range)==2:
      ylim(y_range)
   grid('on', color='gray', ls='dotted')
   grid('on', axis='both', which='minor', color='gray', ls='dotted')
   plt.tick_params(labelsize=14)
   exptext = gca().yaxis.get_offset_text()
   exptext.set_size(14)
   gca().set_axisbelow(True)
   xlabel('Points per compute node',fontsize=14)
   ylabel('[DOFs x CG iterations] / [compute nodes x seconds]',fontsize=14)
   legend(ncol=legend_ncol, loc='best',fontsize=13)

   # Write
   if write_figures: # write .pdf file?
      short_backend=backend.replace('/','')
      test_short_save=test_short.replace(' ','')
      pdf_file='plot_%s_%s_%s_%s_N%03i_pn%i.pdf'%(
               code,test_short_save,short_backend,backend_memtype,num_nodes,num_procs_node)
      print('\nsaving figure --> %s'%pdf_file)
      savefig(pdf_file, format='pdf', bbox_inches='tight')

if show_figures: # show the figures?
   print('\nShowing figures ...')
   show()
