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authorDaniel Friesel <daniel.friesel@uos.de>2020-07-03 12:26:50 +0200
committerDaniel Friesel <daniel.friesel@uos.de>2020-07-03 12:26:50 +0200
commitadaa03cf0247b065e6b3863cf16ad88ee24f5169 (patch)
tree82ee685bc24872d233965b0dbee1c58f0bc61d7e
parent2b9aa06f7ca63eb58a4fe9abde9880fada1773e0 (diff)
AnalyticFunction: Remove _ prefix from public attributes
-rwxr-xr-xbin/analyze-archive.py8
-rwxr-xr-xbin/analyze-timing.py4
-rwxr-xr-xbin/eval-outlier-removal.py16
-rwxr-xr-xlib/automata.py6
-rw-r--r--lib/functions.py20
-rwxr-xr-xtest/test_parameters.py2
-rwxr-xr-xtest/test_ptamodel.py18
-rwxr-xr-xtest/test_timingharness.py32
8 files changed, 53 insertions, 53 deletions
diff --git a/bin/analyze-archive.py b/bin/analyze-archive.py
index bf3ab64..e23fb9e 100755
--- a/bin/analyze-archive.py
+++ b/bin/analyze-archive.py
@@ -645,13 +645,13 @@ if __name__ == "__main__":
if param_info(state, attribute):
print(
"{:10s}: {}".format(
- state, param_info(state, attribute)["function"]._model_str
+ state, param_info(state, attribute)["function"].model_function
)
)
print(
"{:10s} {}".format(
"",
- param_info(state, attribute)["function"]._regression_args,
+ param_info(state, attribute)["function"].model_args,
)
)
for trans in model.transitions():
@@ -661,14 +661,14 @@ if __name__ == "__main__":
"{:10s}: {:10s}: {}".format(
trans,
attribute,
- param_info(trans, attribute)["function"]._model_str,
+ param_info(trans, attribute)["function"].model_function,
)
)
print(
"{:10s} {:10s} {}".format(
"",
"",
- param_info(trans, attribute)["function"]._regression_args,
+ param_info(trans, attribute)["function"].model_args,
)
)
diff --git a/bin/analyze-timing.py b/bin/analyze-timing.py
index 4039f45..924388d 100755
--- a/bin/analyze-timing.py
+++ b/bin/analyze-timing.py
@@ -423,14 +423,14 @@ if __name__ == "__main__":
"{:10s}: {:10s}: {}".format(
trans,
attribute,
- param_info(trans, attribute)["function"]._model_str,
+ param_info(trans, attribute)["function"].model_function,
)
)
print(
"{:10s} {:10s} {}".format(
"",
"",
- param_info(trans, attribute)["function"]._regression_args,
+ param_info(trans, attribute)["function"].model_args,
)
)
diff --git a/bin/eval-outlier-removal.py b/bin/eval-outlier-removal.py
index 14f0e60..b091ea4 100755
--- a/bin/eval-outlier-removal.py
+++ b/bin/eval-outlier-removal.py
@@ -141,12 +141,12 @@ if __name__ == "__main__":
if param_i1(state, attribute):
print(
"{:10s}: {}".format(
- state, param_i1(state, attribute)["function"]._model_str
+ state, param_i1(state, attribute)["function"].model_function
)
)
print(
"{:10s} {}".format(
- "", param_i1(state, attribute)["function"]._regression_args
+ "", param_i1(state, attribute)["function"].model_args
)
)
for trans in m1.transitions():
@@ -162,12 +162,12 @@ if __name__ == "__main__":
"{:10s}: {:10s}: {}".format(
trans,
attribute,
- param_i1(trans, attribute)["function"]._model_str,
+ param_i1(trans, attribute)["function"].model_function,
)
)
print(
"{:10s} {:10s} {}".format(
- "", "", param_i1(trans, attribute)["function"]._regression_args
+ "", "", param_i1(trans, attribute)["function"].model_args
)
)
param_m2, param_i2 = m2.get_fitted()
@@ -176,12 +176,12 @@ if __name__ == "__main__":
if param_i2(state, attribute):
print(
"{:10s}: {}".format(
- state, param_i2(state, attribute)["function"]._model_str
+ state, param_i2(state, attribute)["function"].model_function
)
)
print(
"{:10s} {}".format(
- "", param_i2(state, attribute)["function"]._regression_args
+ "", param_i2(state, attribute)["function"].model_args
)
)
for trans in m2.transitions():
@@ -197,12 +197,12 @@ if __name__ == "__main__":
"{:10s}: {:10s}: {}".format(
trans,
attribute,
- param_i2(trans, attribute)["function"]._model_str,
+ param_i2(trans, attribute)["function"].model_function,
)
)
print(
"{:10s} {:10s} {}".format(
- "", "", param_i2(trans, attribute)["function"]._regression_args
+ "", "", param_i2(trans, attribute)["function"].model_args
)
)
diff --git a/lib/automata.py b/lib/automata.py
index 69b3969..ebe1871 100755
--- a/lib/automata.py
+++ b/lib/automata.py
@@ -103,7 +103,7 @@ class PTAAttribute:
def __repr__(self):
if self.function is not None:
return "PTAATtribute<{:.0f}, {}>".format(
- self.value, self.function._model_str
+ self.value, self.function.model_function
)
return "PTAATtribute<{:.0f}, None>".format(self.value)
@@ -137,8 +137,8 @@ class PTAAttribute:
}
if self.function:
ret["function"] = {
- "raw": self.function._model_str,
- "regression_args": list(self.function._regression_args),
+ "raw": self.function.model_function,
+ "regression_args": list(self.function.model_args),
}
ret["function_error"] = self.function_error
return ret
diff --git a/lib/functions.py b/lib/functions.py
index 0b849bd..99ba17d 100644
--- a/lib/functions.py
+++ b/lib/functions.py
@@ -141,7 +141,7 @@ class AnalyticFunction:
"""
self._parameter_names = parameters
self._num_args = num_args
- self._model_str = function_str
+ self.model_function = function_str
rawfunction = function_str
self._dependson = [False] * (len(parameters) + num_args)
self.fit_success = False
@@ -174,12 +174,12 @@ class AnalyticFunction:
self._function = function_str
if regression_args:
- self._regression_args = regression_args.copy()
+ self.model_args = regression_args.copy()
self._fit_success = True
elif type(function_str) == str:
- self._regression_args = list(np.ones((num_vars)))
+ self.model_args = list(np.ones((num_vars)))
else:
- self._regression_args = []
+ self.model_args = []
def get_fit_data(self, by_param, state_or_tran, model_attribute):
"""
@@ -260,22 +260,22 @@ class AnalyticFunction:
error_function = lambda P, X, y: self._function(P, X) - y
try:
res = optimize.least_squares(
- error_function, self._regression_args, args=(X, Y), xtol=2e-15
+ error_function, self.model_args, args=(X, Y), xtol=2e-15
)
except ValueError as err:
logger.warning(
"Fit failed for {}/{}: {} (function: {})".format(
- state_or_tran, model_attribute, err, self._model_str
+ state_or_tran, model_attribute, err, self.model_function
),
)
return
if res.status > 0:
- self._regression_args = res.x
+ self.model_args = res.x
self.fit_success = True
else:
logger.warning(
"Fit failed for {}/{}: {} (function: {})".format(
- state_or_tran, model_attribute, res.message, self._model_str
+ state_or_tran, model_attribute, res.message, self.model_function
),
)
else:
@@ -308,9 +308,9 @@ class AnalyticFunction:
corresponds to lexically first parameter, etc.
:param arg_list: argument values (list of float), if arguments are used.
"""
- if len(self._regression_args) == 0:
+ if len(self.model_args) == 0:
return self._function(param_list, arg_list)
- return self._function(self._regression_args, param_list)
+ return self._function(self.model_args, param_list)
class analytic:
diff --git a/test/test_parameters.py b/test/test_parameters.py
index 5d7ec84..baf1c99 100755
--- a/test/test_parameters.py
+++ b/test/test_parameters.py
@@ -63,7 +63,7 @@ class TestModels(unittest.TestCase):
combined_fit = analytic.function_powerset(fit_result, parameter_names, 0)
self.assertEqual(
- combined_fit._model_str,
+ combined_fit.model_function,
"0 + regression_arg(0) + regression_arg(1) * parameter(p_linear)",
)
self.assertEqual(
diff --git a/test/test_ptamodel.py b/test/test_ptamodel.py
index 3237450..9abe3c0 100755
--- a/test/test_ptamodel.py
+++ b/test/test_ptamodel.py
@@ -134,26 +134,26 @@ class TestModels(unittest.TestCase):
param_model, param_info = model.get_fitted()
self.assertEqual(param_info("POWERDOWN", "power"), None)
self.assertEqual(
- param_info("RX", "power")["function"]._model_str,
+ param_info("RX", "power")["function"].model_function,
"0 + regression_arg(0) + regression_arg(1) * np.sqrt(parameter(datarate))",
)
self.assertAlmostEqual(
- param_info("RX", "power")["function"]._regression_args[0], 48530.7, places=0
+ param_info("RX", "power")["function"].model_args[0], 48530.7, places=0
)
self.assertAlmostEqual(
- param_info("RX", "power")["function"]._regression_args[1], 117, places=0
+ param_info("RX", "power")["function"].model_args[1], 117, places=0
)
self.assertEqual(param_info("STANDBY1", "power"), None)
self.assertEqual(
- param_info("TX", "power")["function"]._model_str,
+ param_info("TX", "power")["function"].model_function,
"0 + regression_arg(0) + regression_arg(1) * 1/(parameter(datarate)) + regression_arg(2) * parameter(txpower) + regression_arg(3) * 1/(parameter(datarate)) * parameter(txpower)",
)
self.assertEqual(
- param_info("epilogue", "timeout")["function"]._model_str,
+ param_info("epilogue", "timeout")["function"].model_function,
"0 + regression_arg(0) + regression_arg(1) * 1/(parameter(datarate))",
)
self.assertEqual(
- param_info("stopListening", "duration")["function"]._model_str,
+ param_info("stopListening", "duration")["function"].model_function,
"0 + regression_arg(0) + regression_arg(1) * 1/(parameter(datarate))",
)
@@ -371,7 +371,7 @@ class TestModels(unittest.TestCase):
param_model, param_info = model.get_fitted()
self.assertEqual(param_info("IDLE", "power"), None)
self.assertEqual(
- param_info("RX", "power")["function"]._model_str,
+ param_info("RX", "power")["function"].model_function,
"0 + regression_arg(0) + regression_arg(1) * np.log(parameter(symbolrate) + 1)",
)
self.assertEqual(param_info("SLEEP", "power"), None)
@@ -380,10 +380,10 @@ class TestModels(unittest.TestCase):
self.assertEqual(param_info("XOFF", "power"), None)
self.assertAlmostEqual(
- param_info("RX", "power")["function"]._regression_args[0], 84415, places=0
+ param_info("RX", "power")["function"].model_args[0], 84415, places=0
)
self.assertAlmostEqual(
- param_info("RX", "power")["function"]._regression_args[1], 206, places=0
+ param_info("RX", "power")["function"].model_args[1], 206, places=0
)
diff --git a/test/test_timingharness.py b/test/test_timingharness.py
index 29e21f8..13289ea 100755
--- a/test/test_timingharness.py
+++ b/test/test_timingharness.py
@@ -30,25 +30,25 @@ class TestModels(unittest.TestCase):
self.assertEqual(param_info("setRetries", "duration"), None)
self.assertEqual(param_info("setup", "duration"), None)
self.assertEqual(
- param_info("write", "duration")["function"]._model_str,
+ param_info("write", "duration")["function"].model_function,
"0 + regression_arg(0) + regression_arg(1) * parameter(max_retry_count) + regression_arg(2) * parameter(retry_delay) + regression_arg(3) * parameter(max_retry_count) * parameter(retry_delay)",
)
self.assertAlmostEqual(
- param_info("write", "duration")["function"]._regression_args[0],
+ param_info("write", "duration")["function"].model_args[0],
1163,
places=0,
)
self.assertAlmostEqual(
- param_info("write", "duration")["function"]._regression_args[1],
+ param_info("write", "duration")["function"].model_args[1],
464,
places=0,
)
self.assertAlmostEqual(
- param_info("write", "duration")["function"]._regression_args[2], 1, places=0
+ param_info("write", "duration")["function"].model_args[2], 1, places=0
)
self.assertAlmostEqual(
- param_info("write", "duration")["function"]._regression_args[3], 1, places=0
+ param_info("write", "duration")["function"].model_args[3], 1, places=0
)
def test_dependent_parameter_pruning(self):
@@ -80,25 +80,25 @@ class TestModels(unittest.TestCase):
self.assertEqual(param_info("setRetries", "duration"), None)
self.assertEqual(param_info("setup", "duration"), None)
self.assertEqual(
- param_info("write", "duration")["function"]._model_str,
+ param_info("write", "duration")["function"].model_function,
"0 + regression_arg(0) + regression_arg(1) * parameter(max_retry_count) + regression_arg(2) * parameter(retry_delay) + regression_arg(3) * parameter(max_retry_count) * parameter(retry_delay)",
)
self.assertAlmostEqual(
- param_info("write", "duration")["function"]._regression_args[0],
+ param_info("write", "duration")["function"].model_args[0],
1163,
places=0,
)
self.assertAlmostEqual(
- param_info("write", "duration")["function"]._regression_args[1],
+ param_info("write", "duration")["function"].model_args[1],
464,
places=0,
)
self.assertAlmostEqual(
- param_info("write", "duration")["function"]._regression_args[2], 1, places=0
+ param_info("write", "duration")["function"].model_args[2], 1, places=0
)
self.assertAlmostEqual(
- param_info("write", "duration")["function"]._regression_args[3], 1, places=0
+ param_info("write", "duration")["function"].model_args[3], 1, places=0
)
def test_function_override(self):
@@ -139,28 +139,28 @@ class TestModels(unittest.TestCase):
self.assertEqual(param_info("setRetries", "duration"), None)
self.assertEqual(param_info("setup", "duration"), None)
self.assertEqual(
- param_info("write", "duration")["function"]._model_str,
+ param_info("write", "duration")["function"].model_function,
"(parameter(auto_ack!) * (regression_arg(0) + regression_arg(1) * parameter(max_retry_count) + regression_arg(2) * parameter(retry_delay) + regression_arg(3) * parameter(max_retry_count) * parameter(retry_delay))) + ((1 - parameter(auto_ack!)) * regression_arg(4))",
)
self.assertAlmostEqual(
- param_info("write", "duration")["function"]._regression_args[0],
+ param_info("write", "duration")["function"].model_args[0],
1162,
places=0,
)
self.assertAlmostEqual(
- param_info("write", "duration")["function"]._regression_args[1],
+ param_info("write", "duration")["function"].model_args[1],
464,
places=0,
)
self.assertAlmostEqual(
- param_info("write", "duration")["function"]._regression_args[2], 1, places=0
+ param_info("write", "duration")["function"].model_args[2], 1, places=0
)
self.assertAlmostEqual(
- param_info("write", "duration")["function"]._regression_args[3], 1, places=0
+ param_info("write", "duration")["function"].model_args[3], 1, places=0
)
self.assertAlmostEqual(
- param_info("write", "duration")["function"]._regression_args[4],
+ param_info("write", "duration")["function"].model_args[4],
1086,
places=0,
)