diff --git a/python/paddle/v2/fluid/debuger.py b/python/paddle/v2/fluid/debuger.py index d37935244291d15da8199bd3d3979118e4944b48..db1808c64745ac153962c050b08993450dd93c06 100644 --- a/python/paddle/v2/fluid/debuger.py +++ b/python/paddle/v2/fluid/debuger.py @@ -12,10 +12,202 @@ # See the License for the specific language governing permissions and # limitations under the License. +import sys import re from graphviz import GraphPreviewGenerator import proto.framework_pb2 as framework_pb2 +_vartype2str_ = [ + "UNK", + "LoDTensor", + "SelectedRows", + "FeedMinibatch", + "FetchList", + "StepScopes", + "LodRankTable", + "LoDTensorArray", + "PlaceList", +] +_dtype2str_ = [ + "bool", + "int16", + "int32", + "int64", + "float16", + "float32", + "float64", +] + + +def repr_data_type(type): + return _dtype2str_[type] + + +def repr_tensor(proto): + return "tensor(type={}, shape={})".format(_dtype2str_[int(proto.data_type)], + str(proto.dims)) + + +reprtpl = "{ttype} {name} ({reprs})" + + +def repr_lodtensor(proto): + if not proto.lod_tensor: return + level = proto.lod_tensor.lod_level + reprs = repr_tensor(proto.lod_tensor.tensor) + return reprtpl.format( + ttype="LoDTensor" if level > 0 else "Tensor", + name=proto.name, + reprs="level=%d, %s" % (level, reprs) if level > 0 else reprs) + + +def repr_selected_rows(proto): + if not proto.selected_rows: return + return reprtpl.format( + ttype="SelectedRows", + name=proto.name, + reprs=repr_tensor(proto.selected_rows)) + + +def repr_tensor_array(proto): + if not proto.tensor_array: return + return reprtpl.format( + ttype="TensorArray", + name=proto.name, + reprs="level=%d, %s" % (proto.tensor_array.lod_level, + repr_tensor(proto.lod_tensor))) + + +type_handlers = [ + repr_lodtensor, + repr_selected_rows, + repr_tensor_array, +] + + +def repr_var(vardesc): + for handler in type_handlers: + res = handler(vardesc) + if res: + return res + + +def pprint_program_codes(program_desc): + reprs = [] + for block_idx in range(program_desc.num_blocks()): + block_desc = program_desc.block(block_idx) + block_repr = pprint_block_codes(block_desc) + reprs.append(block_repr) + return '\n'.join(reprs) + + +def pprint_block_codes(block_desc, show_backward=False): + def is_op_backward(op_desc): + if op_desc.type.endswith('_grad'): return True + + def is_var_backward(var): + if "@GRAD" in var.parameter: return True + for arg in var.arguments: + if "@GRAD" in arg: return True + + for var in op_desc.inputs: + if is_var_backward(var): return True + for var in op_desc.outputs: + if is_var_backward(var): return True + return False + + def is_var_backward(var_desc): + return "@GRAD" in var_desc.name + + if type(block_desc) is not framework_pb2.BlockDesc: + block_desc = framework_pb2.BlockDesc.FromString( + block_desc.serialize_to_string()) + var_reprs = [] + op_reprs = [] + for var in block_desc.vars: + if not show_backward and is_var_backward(var): + continue + var_reprs.append(repr_var(var)) + + for op in block_desc.ops: + if not show_backward and is_op_backward(op): continue + op_reprs.append(repr_op(op)) + + tpl = "// block-{idx} parent-{pidx}\n// variables\n{vars}\n\n// operators\n{ops}\n" + return tpl.format( + idx=block_desc.idx, + pidx=block_desc.parent_idx, + vars='\n'.join(var_reprs), + ops='\n'.join(op_reprs), ) + + +def repr_attr(desc): + tpl = "{key}={value}" + valgetter = [ + lambda attr: attr.i, + lambda attr: attr.f, + lambda attr: attr.s, + lambda attr: attr.ints, + lambda attr: attr.floats, + lambda attr: attr.strings, + lambda attr: attr.b, + lambda attr: attr.bools, + lambda attr: attr.block_idx, + lambda attr: attr.l, + ] + key = desc.name + value = valgetter[desc.type](desc) + if key == "dtype": + value = repr_data_type(value) + return tpl.format(key=key, value=str(value)), (key, value) + + +def _repr_op_fill_constant(optype, inputs, outputs, attrs): + if optype == "fill_constant": + return "{output} = {data} [shape={shape}]".format( + output=','.join(outputs), + data=attrs['value'], + shape=str(attrs['shape'])) + + +op_repr_handlers = [_repr_op_fill_constant, ] + + +def repr_op(opdesc): + optype = None + attrs = [] + attr_dict = {} + is_target = None + inputs = [] + outputs = [] + + tpl = "{outputs} = {optype}({inputs}{is_target}) [{attrs}]" + args2value = lambda args: args[0] if len(args) == 1 else str(list(args)) + for var in opdesc.inputs: + key = var.parameter + value = args2value(var.arguments) + inputs.append("%s=%s" % (key, value)) + for var in opdesc.outputs: + value = args2value(var.arguments) + outputs.append(value) + for attr in opdesc.attrs: + attr_repr, attr_pair = repr_attr(attr) + attrs.append(attr_repr) + attr_dict[attr_pair[0]] = attr_pair[1] + + is_target = opdesc.is_target + + for handler in op_repr_handlers: + res = handler(opdesc.type, inputs, outputs, attr_dict) + if res: return res + + return tpl.format( + outputs=', '.join(outputs), + optype=opdesc.type, + inputs=', '.join(inputs), + attrs="{%s}" % ','.join(attrs), + is_target=", is_target" if is_target else "") + def draw_block_graphviz(block, highlights=None, path="./temp.dot"): '''