luau/tools/heapgraph.py

198 lines
6.0 KiB
Python

#!/usr/bin/python
# This file is part of the Luau programming language and is licensed under MIT License; see LICENSE.txt for details
# Given two heap snapshots (A & B), this tool performs reachability analysis on new objects allocated in B
# This is useful to find memory leaks - reachability analysis answers the question "why is this set of objects not freed"
# This tool can also be ran with just one snapshot, in which case it displays all allocated objects
# The result of analysis is a .svg file which can be viewed in a browser
# To generate these dumps, use luaC_dump, ideally preceded by luaC_fullgc
import argparse
import json
import sys
import svg
argumentParser = argparse.ArgumentParser(description='Luau heap snapshot analyzer')
argumentParser.add_argument('--split', dest = 'split', type = str, default = 'none', help = 'Perform additional root split using memory categories', choices = ['none', 'custom', 'all'])
argumentParser.add_argument('snapshot')
argumentParser.add_argument('snapshotnew', nargs='?')
arguments = argumentParser.parse_args()
class Node(svg.Node):
def __init__(self):
svg.Node.__init__(self)
self.size = 0
self.count = 0
# data for memory category filtering
self.objects = []
self.categories = set()
def text(self):
return self.name
def title(self):
return self.name
def details(self, root):
return "{} ({:,} bytes, {:.1%}); self: {:,} bytes in {:,} objects".format(self.name, self.width, self.width / root.width, self.size, self.count)
# load files
if arguments.snapshotnew == None:
dumpold = None
with open(arguments.snapshot) as f:
dump = json.load(f)
else:
with open(arguments.snapshot) as f:
dumpold = json.load(f)
with open(arguments.snapshotnew) as f:
dump = json.load(f)
# reachability analysis: how much of the heap is reachable from roots?
visited = set()
queue = []
offset = 0
root = Node()
for name, addr in dump["roots"].items():
queue.append((addr, root.child(name)))
while offset < len(queue):
addr, node = queue[offset]
offset += 1
if addr in visited:
continue
visited.add(addr)
obj = dump["objects"][addr]
if not dumpold or not addr in dumpold["objects"]:
node.count += 1
node.size += obj["size"]
node.objects.append(obj)
if obj["type"] == "table":
pairs = obj.get("pairs", [])
for i in range(0, len(pairs), 2):
key = pairs[i+0]
val = pairs[i+1]
if key and val and dump["objects"][key]["type"] == "string":
queue.append((key, node))
queue.append((val, node.child(dump["objects"][key]["data"])))
else:
if key:
queue.append((key, node))
if val:
queue.append((val, node))
for a in obj.get("array", []):
queue.append((a, node))
if "metatable" in obj:
queue.append((obj["metatable"], node.child("__meta")))
elif obj["type"] == "function":
queue.append((obj["env"], node.child("__env")))
source = ""
if "proto" in obj:
proto = dump["objects"][obj["proto"]]
if "source" in proto:
source = proto["source"]
if "proto" in obj:
queue.append((obj["proto"], node.child("__proto")))
for a in obj.get("upvalues", []):
queue.append((a, node.child(source)))
elif obj["type"] == "userdata":
if "metatable" in obj:
queue.append((obj["metatable"], node.child("__meta")))
elif obj["type"] == "thread":
queue.append((obj["env"], node.child("__env")))
for a in obj.get("stack", []):
queue.append((a, node.child("__stack")))
elif obj["type"] == "proto":
for a in obj.get("constants", []):
queue.append((a, node))
for a in obj.get("protos", []):
queue.append((a, node))
elif obj["type"] == "upvalue":
if "object" in obj:
queue.append((obj["object"], node))
def annotateContainedCategories(node, start):
for obj in node.objects:
if obj["cat"] < start:
obj["cat"] = 0
node.categories.add(obj["cat"])
for child in node.children.values():
annotateContainedCategories(child, start)
for cat in child.categories:
node.categories.add(cat)
def filteredTreeForCategory(node, category):
children = {}
for c in node.children.values():
if category in c.categories:
filtered = filteredTreeForCategory(c, category)
if filtered:
children[filtered.name] = filtered
if len(children):
result = Node()
result.name = node.name
# re-count the objects with the correct category that we have
for obj in node.objects:
if obj["cat"] == category:
result.count += 1
result.size += obj["size"]
result.children = children
return result
else:
result = Node()
result.name = node.name
# re-count the objects with the correct category that we have
for obj in node.objects:
if obj["cat"] == category:
result.count += 1
result.size += obj["size"]
if result.count != 0:
return result
return None
def splitIntoCategories(root):
result = Node()
for i in range(0, 256):
filtered = filteredTreeForCategory(root, i)
if filtered:
name = dump["stats"]["categories"][str(i)]["name"]
filtered.name = name
result.children[name] = filtered
return result
if dump["stats"].get("categories") and arguments.split != 'none':
if arguments.split == 'custom':
annotateContainedCategories(root, 128)
else:
annotateContainedCategories(root, 0)
root = splitIntoCategories(root)
svg.layout(root, lambda n: n.size)
svg.display(root, "Memory Graph", "cold")