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Add continuous auto scale for color scale on spectrograms...
Add continuous auto scale for color scale on spectrograms Signed-off-by: Alexis Jeandet <alexis.jeandet@member.fsf.org>

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amda.py
98 lines | 3.6 KiB | text/x-python | PythonLexer
import traceback
import os
from datetime import datetime, timedelta, timezone
import PythonProviders
import pysciqlopcore
import numpy as np
import requests
import copy
from spwc.amda import AMDA
amda = AMDA()
def amda_make_scalar(var=None):
if var is None:
return pysciqlopcore.ScalarTimeSerie(1)
else:
return pysciqlopcore.ScalarTimeSerie(var.time,var.data)
def amda_make_vector(var=None):
if var is None:
return pysciqlopcore.VectorTimeSerie(1)
else:
return pysciqlopcore.VectorTimeSerie(var.time,var.data)
def amda_make_multi_comp(var=None):
if var is None:
return pysciqlopcore.MultiComponentTimeSerie((0,2))
else:
return pysciqlopcore.MultiComponentTimeSerie(var.time,var.data)
def amda_make_spectro(var=None):
if var is None:
return pysciqlopcore.SpectrogramTimeSerie((0,2))
else:
if "PARAMETER_TABLE_MIN_VALUES[1]" in var.meta:
min_v = np.array([ float(v) for v in var.meta["PARAMETER_TABLE_MIN_VALUES[1]"].split(',') ])
max_v = np.array([ float(v) for v in var.meta["PARAMETER_TABLE_MAX_VALUES[1]"].split(',') ])
y = (max_v + min_v)/2.
elif "PARAMETER_TABLE_MIN_VALUES[0]" in var.meta:
min_v = np.array([ float(v) for v in var.meta["PARAMETER_TABLE_MIN_VALUES[0]"].split(',') ])
max_v = np.array([ float(v) for v in var.meta["PARAMETER_TABLE_MAX_VALUES[0]"].split(',') ])
y = (max_v + min_v)/2.
else:
y = np.logspace(1,3,var.data.shape[1])[::-1]
return pysciqlopcore.SpectrogramTimeSerie(var.time,y,var.data)
def amda_get_sample(metadata,start,stop):
ts_type = amda_make_scalar
try:
param_id = None
for key,value in metadata:
if key == 'xml:id':
param_id = value
elif key == 'type':
if value == 'vector':
ts_type = amda_make_vector
elif value == 'multicomponent':
ts_type = amda_make_multi_comp
elif value == 'spectrogram':
ts_type = amda_make_spectro
tstart=datetime.fromtimestamp(start, tz=timezone.utc)
tend=datetime.fromtimestamp(stop, tz=timezone.utc)
var = amda.get_parameter(start_time=tstart, stop_time=tend, parameter_id=param_id, method="REST")
return ts_type(var)
except Exception as e:
print(traceback.format_exc())
print("Error in amda.py ",str(e))
return ts_type()
if len(amda.component) is 0:
amda.update_inventory()
parameters = copy.deepcopy(amda.parameter)
for name,component in amda.component.items():
if 'components' in parameters[component['parameter']]:
parameters[component['parameter']]['components'].append(component)
else:
parameters[component['parameter']]['components']=[component]
products = []
for key,parameter in parameters.items():
path = f"/AMDA/{parameter['mission']}/{parameter.get('observatory','')}/{parameter['instrument']}/{parameter['dataset']}/{parameter['name']}"
components = [component['name'] for component in parameter.get('components',[])]
metadata = [ (key,item) for key,item in parameter.items() if key is not 'components' ]
n_components = parameter.get('size',0)
if n_components == '3':
metadata.append(("type","vector"))
elif parameter.get('display_type','')=="spectrogram":
metadata.append(("type","spectrogram"))
elif n_components !=0:
metadata.append(("type","multicomponent"))
else:
metadata.append(("type","scalar"))
products.append( (path, components, metadata))
PythonProviders.register_product(products, amda_get_sample)