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- class MigrationOptimizer:
- """
- Power the optimization process, where you provide a list of Operations
- and you are returned a list of equal or shorter length - operations
- are merged into one if possible.
-
- For example, a CreateModel and an AddField can be optimized into a
- new CreateModel, and CreateModel and DeleteModel can be optimized into
- nothing.
- """
-
- def optimize(self, operations, app_label=None):
- """
- Main optimization entry point. Pass in a list of Operation instances,
- get out a new list of Operation instances.
-
- Unfortunately, due to the scope of the optimization (two combinable
- operations might be separated by several hundred others), this can't be
- done as a peephole optimization with checks/output implemented on
- the Operations themselves; instead, the optimizer looks at each
- individual operation and scans forwards in the list to see if there
- are any matches, stopping at boundaries - operations which can't
- be optimized over (RunSQL, operations on the same field/model, etc.)
-
- The inner loop is run until the starting list is the same as the result
- list, and then the result is returned. This means that operation
- optimization must be stable and always return an equal or shorter list.
-
- The app_label argument is optional, but if you pass it you'll get more
- efficient optimization.
- """
- # Internal tracking variable for test assertions about # of loops
- self._iterations = 0
- while True:
- result = self.optimize_inner(operations, app_label)
- self._iterations += 1
- if result == operations:
- return result
- operations = result
-
- def optimize_inner(self, operations, app_label=None):
- """Inner optimization loop."""
- new_operations = []
- for i, operation in enumerate(operations):
- right = True # Should we reduce on the right or on the left.
- # Compare it to each operation after it
- for j, other in enumerate(operations[i + 1:]):
- in_between = operations[i + 1:i + j + 1]
- result = operation.reduce(other, app_label)
- if isinstance(result, list):
- if right:
- new_operations.extend(in_between)
- new_operations.extend(result)
- elif all(op.reduce(other, app_label) is True for op in in_between):
- # Perform a left reduction if all of the in-between
- # operations can optimize through other.
- new_operations.extend(result)
- new_operations.extend(in_between)
- else:
- # Otherwise keep trying.
- new_operations.append(operation)
- break
- new_operations.extend(operations[i + j + 2:])
- return new_operations
- elif not result:
- # Can't perform a right reduction.
- right = False
- else:
- new_operations.append(operation)
- return new_operations
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