Semantic Diff for SQL
Motivation
Software is constantly changing and evolving, and identifying what has changed and reviewing those changes is an integral part of the development process. SQL code is no exception to this.
Text-based diff tools such as git diff
, when applied to a code base, have certain limitations. First, they can only detect insertions and deletions, not movements or updates of individual pieces of code. Second, such tools can only detect changes between lines of text, which is too coarse for something as granular and detailed as source code. Additionally, the outcome of such a diff is dependent on the underlying code formatting, and yields different results if the formatting should change.
Consider the following diff generated by Git:
Semantically the query hasn’t changed. The two arguments b
and c
have been swapped (moved), posing no impact on the output of the query. Yet Git replaced the whole affected expression alongside a bulk of unrelated elements.
The alternative to text-based diffing is to compare Abstract Syntax Trees (AST) instead. The main advantage of ASTs are that they are a direct product of code parsing, which represents the underlying code structure at any desired level of granularity. Comparing ASTs may yield extremely precise diffs; changes such as code movements and updates can also be detected. Even more importantly, this approach facilitates additional use cases beyond eyeballing two versions of source code side by side.
The use cases I had in mind for SQL when I decided to embark on this journey of semantic diffing were the following:
- Query similarity score. Identifying which parts the two queries have in common to automatically suggest opportunities for consolidation, creation of intermediate/staging tables, and so on.
- Differentiating between cosmetic / structural changes and functional ones. For example when a nested query is refactored into a common table expression (CTE), this kind of change doesn’t have any functional impact on either a query or its outcome.
- Automatic suggestions about the need to retroactively backfill data. This is especially important for pipelines that populate very large tables for which restatement is a runtime-intensive procedure. The ability to discern between simple code movements and actual modifications can help assess the impact of a change and make suggestions accordingly.
The implementation discussed in this post is now a part of the SQLGlot library. You can find a complete source code in the diff.py module. The choice of SQLglot was an obvious one due to its simple but powerful API, lack of external dependencies and, more importantly, extensive list of supported SQL dialects.
The Search for a Solution
When it comes to any diffing tool (not just a semantic one), the primary challenge is to match as many elements of compared entities as possible. Once such a set of matching elements is available, deriving a sequence of changes becomes an easy task.
If our elements have unique identifiers associated with them (for example, an element’s ID in DOM), the matching problem is trivial. However, the SQL syntax trees that we are comparing have neither unique keys nor object identifiers that can be used for the purposes of matching. So, how do we suppose to find pairs of nodes that are related?
To better illustrate the problem, consider comparing the following SQL expressions: SELECT a + b + c, d, e
and SELECT a - b + c, e, f
. Matching individual nodes from respective syntax trees can be visualized as follows:
Figure 1: Example of node matching for two SQL expression trees.
By looking at the figure of node matching for two SQL expression trees above, we conclude that the following changes should be captured by our solution:
- Inserted nodes:
Sub
andf
. These are the nodes from the target AST which do not have a matching node in the source AST. - Removed nodes:
Add
andd
. These are the nodes from the source AST which do not have a counterpart in the target AST. - Remaining nodes must be identified as unchanged.
It should be clear at this point that if we manage to match nodes in the source tree with their counterparts in the target tree, then computing the diff becomes a trivial matter.
Naïve Brute-Force
The naïve solution would be to try all different permutations of node pair combinations, and see which set of pairs performs the best based on some type of heuristics. The runtime cost of such a solution quickly reaches the escape velocity; if both trees had only 10 nodes each, the number of such sets would approximately be 10! ^ 2 = 3.6M ^ 2 ~= 13 * 10^12. This is a very bad case of factorial complexity (to be precise, it’s actually much worse - O(n! ^ 2) - but I couldn’t come up with a name for it), so there is little need to explore this approach any further.
Myers Algorithm
After the naïve approach was proven to be infeasible, the next question I asked myself was “how does git diff work?”. This question led me to discover the Myers diff algorithm [1]. This algorithm has been designed to compare sequences of strings. At its core, it’s looking for the shortest path on a graph of possible edits that transform the first sequence into the second one, while heavily rewarding those paths that lead to longest subsequences of unchanged elements. There’s a lot of material out there describing this algorithm in greater detail. I found James Coglan’s series of blog posts to be the most comprehensive.
Therefore, I had this “brilliant” (actually not) idea to transform trees into sequences by traversing them in topological order, and then applying the Myers algorithm on resulting sequences while using a custom heuristics when checking the equality of two nodes. Unsurprisingly, comparing sequences of strings is quite different from comparing hierarchical tree structures, and by flattening trees into sequences, we lose a lot of relevant context. This resulted in a terrible performance of this algorithm on ASTs. It often matched completely unrelated nodes, even when the two trees were mostly the same, and produced extremely inaccurate lists of changes overall. After playing around with it a little and tweaking my equality heuristics to improve accuracy, I ultimately scrapped the whole implementation and went back to the drawing board.
Change Distiller
The algorithm I settled on at the end was Change Distiller, created by Fluri et al. [2], which in turn is an improvement over the core idea described by Chawathe et al. [3].
The algorithm consists of two high-level steps:
- Finding appropriate matchings between pairs of nodes that are part of compared ASTs. Identifying what is meant by “appropriate” matching is also a part of this step.
- Generating the so-called “edit script” from the matching set built in the 1st step. The edit script is a sequence of edit operations (for example, insert, remove, update, etc.) on individual tree nodes, such that when applied as transformations on the source AST, it eventually becomes the target AST. In general, the shorter the sequence, the better. The length of the edit script can be used to compare the performance of different algorithms, though this is not the only metric that matters.
The rest of this section is dedicated to the Python implementation of the steps above using the AST implementation provided by the SQLGlot library.
Building the Matching Set
Matching Leaves
We begin composing the matching set by matching the leaf nodes. Leaf nodes are the nodes that do not have any children nodes (such as literals, identifiers, etc.). In order to match them, we gather all the leaf nodes from the source tree and generate a cartesian product with all the leaves from the target tree, while comparing pairs created this way and assigning them a similarity score. During this stage, we also exclude pairs that don’t pass basic matching criteria. Then, we pick pairs that scored the highest while making sure that each node is matched no more than once.
Using the example provided at the beginning of the post, the process of building an initial set of candidate matchings can be seen on Figure 2.
Figure 2: Building a set of candidate matchings between leaf nodes. The third item in each triplet represents a similarity score between two nodes.
First, let’s analyze the similarity score. Then, we’ll discuss matching criteria.
The similarity score proposed by Fluri et al. [2] is a dice coefficient applied to bigrams of respective node values. A bigram is a sequence of two adjacent elements from a string computed in a sliding window fashion:
def bigram(string):
count = max(0, len(string) - 1)
return [string[i : i + 2] for i in range(count)]
For reasons that will become clear shortly, we actually need to compute bigram histograms rather than just sequences:
from collections import defaultdict
def bigram_histo(string):
count = max(0, len(string) - 1)
bigram_histo = defaultdict(int)
for i in range(count):
bigram_histo[string[i : i + 2]] += 1
return bigram_histo
The dice coefficient formula looks like following:
Where X is a bigram of the source node and Y is a bigram of the second one. What this essentially does is count the number of bigram elements the two nodes have in common, multiply it by 2, and then divide by the total number of elements in both bigrams. This is where bigram histograms come in handy:
def dice_coefficient(source, target):
source_histo = bigram_histo(source.sql())
target_histo = bigram_histo(target.sql())
total_grams = (
sum(source_histo.values()) + sum(target_histo.values())
)
if not total_grams:
return 1.0 if source == target else 0.0
overlap_len = 0
overlapping_grams = set(source_histo) & set(target_histo)
for g in overlapping_grams:
overlap_len += min(source_histo[g], target_histo[g])
return 2 * overlap_len / total_grams
To compute a bigram given a tree node, we first transform the node into its canonical SQL representation,so that the Literal(123)
node becomes just “123” and the Identifier(“a”)
node becomes just “a”. We also handle a scenario when strings are too short to derive bigrams. In this case, we fallback to checking the two nodes for equality.
Now when we know how to compute the similarity score, we can take care of the matching criteria for leaf nodes. In the original paper [2], the matching criteria is formalized as follows:
The two nodes are matched if two conditions are met:
- The node labels match (in our case labels are just node types).
- The similarity score for node values is greater than or equal to some threshold “f”. The authors of the paper recommend setting the value of “f” to 0.6.
With building blocks in place, we can now build a matching set for leaf nodes. First, we generate a list of candidates for matching:
from heapq import heappush, heappop
candidate_matchings = []
source_leaves = _get_leaves(self._source)
target_leaves = _get_leaves(self._target)
for source_leaf in source_leaves:
for target_leaf in target_leaves:
if _is_same_type(source_leaf, target_leaf):
similarity_score = dice_coefficient(
source_leaf, target_leaf
)
if similarity_score >= 0.6:
heappush(
candidate_matchings,
(
-similarity_score,
len(candidate_matchings),
source_leaf,
target_leaf,
),
)
In the implementation above, we push each matching pair onto the heap to automatically maintain the correct order based on the assigned similarity score.
Finally, we build the initial matching set by picking leaf pairs with the highest score:
matching_set = set()
while candidate_matchings:
_, _, source_leaf, target_leaf = heappop(candidate_matchings)
if (
source_leaf in unmatched_source_nodes
and target_leaf in unmatched_target_nodes
):
matching_set.add((source_leaf, target_leaf))
unmatched_source_nodes.remove(source_leaf)
unmatched_target_nodes.remove(target_leaf)
To finalize the matching set, we should now proceed with matching inner nodes.
Matching Inner Nodes
Matching inner nodes is quite similar to matching leaf nodes, with the following two distinctions:
- Rather than ranking a set of possible candidates, we pick the first node pair that passes the matching criteria.
- The matching criteria itself has been extended to account for the number of leaf nodes the pair of inner nodes have in common.
Figure 3: Matching inner nodes based on their type as well as how many of their leaf nodes have been previously matched.
Let’s start with the matching criteria. The criteria is formalized as follows:
Alongside already familiar similarity score and node type criteria, there is a new one in the middle: the ratio of leaf nodes that the two nodes have in common must exceed some threshold “t”. The recommended value for “t” is also 0.6. Counting the number of common leaf nodes is pretty straightforward, since we already have the complete matching set for leaves. All we need to do is count how many matching pairs do leaf nodes from the two compared inner nodes form.
There are two additional heuristics associated with this matching criteria:
- Inner node similarity weighting: if the similarity score between the node values doesn’t pass the threshold “f” but the ratio of common leaf nodes (“t”) is greater than or equal to 0.8, then the matching is considered successful.
- The threshold “t” is reduced to 0.4 for inner nodes with the number of leaf nodes equal to 4 or less, in order to decrease the false negative rate for small subtrees.
We now only have to iterate through the remaining unmatched nodes and form matching pairs based on the outlined criteria:
leaves_matching_set = matching_set.copy()
for source_node in unmatched_source_nodes.copy():
for target_node in unmatched_target_nodes:
if _is_same_type(source_node, target_node):
source_leaves = set(_get_leaves(source_node))
target_leaves = set(_get_leaves(target_node))
max_leaves_num = max(len(source_leaves), len(target_leaves))
if max_leaves_num:
common_leaves_num = sum(
1 if s in source_leaves and t in target_leaves else 0
for s, t in leaves_matching_set
)
leaf_similarity_score = common_leaves_num / max_leaves_num
else:
leaf_similarity_score = 0.0
adjusted_t = (
0.6
if min(len(source_leaves), len(target_leaves)) > 4
else 0.4
)
if leaf_similarity_score >= 0.8 or (
leaf_similarity_score >= adjusted_t
and dice_coefficient(source_node, target_node) >= 0.6
):
matching_set.add((source_node, target_node))
unmatched_source_nodes.remove(source_node)
unmatched_target_nodes.remove(target_node)
break
After the matching set is formed, we can proceed with generation of the edit script, which will be the algorithm’s output.
Generating the Edit Script
At this point, we should have the following 3 sets at our disposal:
- The set of matched node pairs.
- The set of remaining unmatched nodes from the source tree.
- The set of remaining unmatched nodes from the target tree.
We can derive 3 kinds of edits from the matching set: either the node’s value was updated (Update), the node was moved to a different position within the tree (Move), or the node remained unchanged (Keep). Note that the Move case is not mutually exclusive with the other two. The node could have been updated or could have remained the same while at the same time its position within its parent node or the parent node itself could have changed. All unmatched nodes from the source tree are the ones that were removed (Remove), while unmatched nodes from the target tree are the ones that were inserted (Insert).
The latter two cases are pretty straightforward to implement:
edit_script = []
for removed_node in unmatched_source_nodes:
edit_script.append(Remove(removed_node))
for inserted_node in unmatched_target_nodes:
edit_script.append(Insert(inserted_node))
Traversing the matching set requires a little more thought:
for source_node, target_node in matching_set:
if (
not isinstance(source_node, LEAF_EXPRESSION_TYPES)
or source_node == target_node
):
move_edits = generate_move_edits(
source_node, target_node, matching_set
)
edit_script.extend(move_edits)
edit_script.append(Keep(source_node, target_node))
else:
edit_script.append(Update(source_node, target_node))
If a matching pair represents a pair of leaf nodes, we check if they are the same to decide whether an update took place. For inner node pairs, we also need to compare the positions of their respective children to detect node movements. Chawathe et al. [3] suggest applying the longest common subsequence (LCS) algorithm which, no surprise here, was described by Myers himself [1]. There is a small catch, however: instead of checking the equality of two children nodes, we need to check whether the two nodes form a pair that is a part of our matching set.
Now with this knowledge, the implementation becomes straightforward:
def generate_move_edits(source, target, matching_set):
source_children = _get_child_nodes(source)
target_children = _get_child_nodes(target)
lcs = set(
_longest_common_subsequence(
source_children,
target_children,
lambda l, r: (l, r) in matching_set
)
)
move_edits = []
for node in source_children:
if node not in lcs and node not in unmatched_source_nodes:
move_edits.append(Move(node))
return move_edits
I left out the implementation of the LCS algorithm itself here, but there are plenty of implementation choices out there that can be easily looked up.
Output
The implemented algorithm produces the output that resembles the following:
>>> from sqlglot import parse_one, diff
>>> diff(parse_one("SELECT a + b + c, d, e"), parse_one("SELECT a - b + c, e, f"))
Remove(Add)
Remove(Column(d))
Remove(Identifier(d))
Insert(Sub)
Insert(Column(f))
Insert(Identifier(f))
Keep(Select, Select)
Keep(Add, Add)
Keep(Column(a), Column(a))
Keep(Identifier(a), Identifier(a))
Keep(Column(b), Column(b))
Keep(Identifier(b), Identifier(b))
Keep(Column(c), Column(c))
Keep(Identifier(c), Identifier(c))
Keep(Column(e), Column(e))
Keep(Identifier(e), Identifier(e))
Note that the output above is abbreviated. The string representation of actual AST nodes is significantly more verbose.
The implementation works especially well when coupled with the SQLGlot’s query optimizer which can be used to produce canonical representations of compared queries:
>>> schema={"t": {"a": "INT", "b": "INT", "c": "INT", "d": "INT"}}
>>> source = """
... SELECT 1 + 1 + a
... FROM t
... WHERE b = 1 OR (c = 2 AND d = 3)
... """
>>> target = """
... SELECT 2 + a
... FROM t
... WHERE (b = 1 OR c = 2) AND (b = 1 OR d = 3)
... """
>>> optimized_source = optimize(parse_one(source), schema=schema)
>>> optimized_target = optimize(parse_one(target), schema=schema)
>>> edit_script = diff(optimized_source, optimized_target)
>>> sum(0 if isinstance(e, Keep) else 1 for e in edit_script)
0
Optimizations
The worst case runtime complexity of this algorithm is not exactly stellar: O(n^2 * log n^2). This is because of the leaf matching process, which involves ranking a cartesian product between all leaf nodes of compared trees. Unsurprisingly, the algorithm takes a considerable time to finish for bigger queries.
There are still a few basic things we can do in our implementation to help improve performance:
- Refer to individual node objects using their identifiers (Python’s id()) instead of direct references in sets. This helps avoid costly recursive hash calculations and equality checks.
- Cache bigram histograms to avoid computing them more than once for the same node.
- Compute the canonical SQL string representation for each tree once while caching string representations of all inner nodes. This prevents redundant tree traversals when bigrams are computed.
At the time of writing only the first two optimizations have been implemented, so there is an opportunity to contribute for anyone who’s interested.
Alternative Solutions
This section is dedicated to solutions that I’ve investigated, but haven’t tried.
First, this section wouldn’t be complete without Tristan Hume’s blog post. Tristan’s solution has a lot in common with the Myers algorithm plus heuristics that is much more clever than what I came up with. The implementation relies on a combination of dynamic programming and A* search algorithm to explore the space of possible matchings and pick the best ones. It seemed to have worked well for Tistan’s specific use case, but after my negative experience with the Myers algorithm, I decided to try something different.
Another notable approach is the Gumtree algorithm by Falleri et al. [4]. I discovered this paper after I’d already implemented the algorithm that is the main focus of this post. In sections 5.2 and 5.3 of their paper, the authors compare the two algorithms side by side and claim that Gumtree is significantly better in terms of both runtime performance and accuracy when evaluated on 12 792 pairs of Java source files. This doesn’t surprise me, as the algorithm takes the height of subtrees into account. In my tests, I definitely saw scenarios in which this context would have helped. On top of that, the authors promise O(n^2) runtime complexity in the worst case which, given the Change Distiller's O(n^2 * log n^2), looks particularly tempting. I hope to try this algorithm out at some point, and there is a good chance you see me writing about it in my future posts.
Conclusion
The Change Distiller algorithm yielded quite satisfactory results in most of my tests. The scenarios in which it fell short mostly concerned identical (or very similar) subtrees located in different parts of the AST. In those cases, node mismatches were frequent and, as a result, edit scripts were somewhat suboptimal.
Additionally, the runtime performance of the algorithm leaves a lot to be desired. On trees with 1000 leaf nodes each, the algorithm takes a little under 2 seconds to complete. My implementation still has room for improvement, but this should give you a rough idea of what to expect. It appears that the Gumtree algorithm [4] can help address both of these points. I hope to find bandwidth to work on it soon and then compare the two algorithms side-by-side to find out which one performs better on SQL specifically. In the meantime, Change Distiller definitely gets the job done, and I can now proceed with applying it to some of the use cases I mentioned at the beginning of this post.
I’m also curious to learn whether other folks in the industry faced a similar problem, and how they approached it. If you did something similar, I’m interested to hear about your experience.
References
[1] Eugene W. Myers. An O(ND) Difference Algorithm and Its Variations. Algorithmica 1(2): 251-266 (1986)
[2] B. Fluri, M. Wursch, M. Pinzger, and H. Gall. Change Distilling: Tree differencing for fine-grained source code change extraction. IEEE Trans. Software Eng., 33(11):725–743, 2007.
[3] S.S. Chawathe, A. Rajaraman, H. Garcia-Molina, and J. Widom. Change Detection in Hierarchically Structured Information. Proc. ACM Sigmod Int’l Conf. Management of Data, pp. 493-504, June 1996
[4] Jean-Rémy Falleri, Floréal Morandat, Xavier Blanc, Matias Martinez, Martin Monperrus. Fine-grained and Accurate Source Code Differencing. Proceedings of the International Conference on Automated Software Engineering, 2014, Västeras, Sweden. pp.313-324, 10.1145/2642937.2642982. hal-01054552
1""" 2.. include:: ../posts/sql_diff.md 3 4---- 5""" 6 7from __future__ import annotations 8 9import typing as t 10from collections import defaultdict 11from dataclasses import dataclass 12from heapq import heappop, heappush 13 14from sqlglot import Dialect, expressions as exp 15from sqlglot.helper import ensure_list 16 17if t.TYPE_CHECKING: 18 from sqlglot.dialects.dialect import DialectType 19 20 21@dataclass(frozen=True) 22class Insert: 23 """Indicates that a new node has been inserted""" 24 25 expression: exp.Expression 26 27 28@dataclass(frozen=True) 29class Remove: 30 """Indicates that an existing node has been removed""" 31 32 expression: exp.Expression 33 34 35@dataclass(frozen=True) 36class Move: 37 """Indicates that an existing node's position within the tree has changed""" 38 39 expression: exp.Expression 40 41 42@dataclass(frozen=True) 43class Update: 44 """Indicates that an existing node has been updated""" 45 46 source: exp.Expression 47 target: exp.Expression 48 49 50@dataclass(frozen=True) 51class Keep: 52 """Indicates that an existing node hasn't been changed""" 53 54 source: exp.Expression 55 target: exp.Expression 56 57 58if t.TYPE_CHECKING: 59 from sqlglot._typing import T 60 61 Edit = t.Union[Insert, Remove, Move, Update, Keep] 62 63 64def diff( 65 source: exp.Expression, 66 target: exp.Expression, 67 matchings: t.List[t.Tuple[exp.Expression, exp.Expression]] | None = None, 68 delta_only: bool = False, 69 copy: bool = True, 70 **kwargs: t.Any, 71) -> t.List[Edit]: 72 """ 73 Returns the list of changes between the source and the target expressions. 74 75 Examples: 76 >>> diff(parse_one("a + b"), parse_one("a + c")) 77 [ 78 Remove(expression=(COLUMN this: (IDENTIFIER this: b, quoted: False))), 79 Insert(expression=(COLUMN this: (IDENTIFIER this: c, quoted: False))), 80 Keep( 81 source=(ADD this: ...), 82 target=(ADD this: ...) 83 ), 84 Keep( 85 source=(COLUMN this: (IDENTIFIER this: a, quoted: False)), 86 target=(COLUMN this: (IDENTIFIER this: a, quoted: False)) 87 ), 88 ] 89 90 Args: 91 source: the source expression. 92 target: the target expression against which the diff should be calculated. 93 matchings: the list of pre-matched node pairs which is used to help the algorithm's 94 heuristics produce better results for subtrees that are known by a caller to be matching. 95 Note: expression references in this list must refer to the same node objects that are 96 referenced in source / target trees. 97 delta_only: excludes all `Keep` nodes from the diff. 98 copy: whether to copy the input expressions. 99 Note: if this is set to false, the caller must ensure that there are no shared references 100 in the two ASTs, otherwise the diffing algorithm may produce unexpected behavior. 101 kwargs: additional arguments to pass to the ChangeDistiller instance. 102 103 Returns: 104 the list of Insert, Remove, Move, Update and Keep objects for each node in the source and the 105 target expression trees. This list represents a sequence of steps needed to transform the source 106 expression tree into the target one. 107 """ 108 matchings = matchings or [] 109 matching_ids = {id(n) for pair in matchings for n in pair} 110 111 def compute_node_mappings( 112 original: exp.Expression, copy: exp.Expression 113 ) -> t.Dict[int, exp.Expression]: 114 return { 115 id(old_node): new_node 116 for old_node, new_node in zip(original.walk(), copy.walk()) 117 if id(old_node) in matching_ids 118 } 119 120 source_copy = source.copy() if copy else source 121 target_copy = target.copy() if copy else target 122 123 node_mappings = { 124 **compute_node_mappings(source, source_copy), 125 **compute_node_mappings(target, target_copy), 126 } 127 matchings_copy = [(node_mappings[id(s)], node_mappings[id(t)]) for s, t in matchings] 128 129 return ChangeDistiller(**kwargs).diff( 130 source_copy, 131 target_copy, 132 matchings=matchings_copy, 133 delta_only=delta_only, 134 ) 135 136 137# The expression types for which Update edits are allowed. 138UPDATABLE_EXPRESSION_TYPES = ( 139 exp.Alias, 140 exp.Boolean, 141 exp.Column, 142 exp.DataType, 143 exp.Lambda, 144 exp.Literal, 145 exp.Table, 146 exp.Window, 147) 148 149IGNORED_LEAF_EXPRESSION_TYPES = (exp.Identifier,) 150 151 152class ChangeDistiller: 153 """ 154 The implementation of the Change Distiller algorithm described by Beat Fluri and Martin Pinzger in 155 their paper https://ieeexplore.ieee.org/document/4339230, which in turn is based on the algorithm by 156 Chawathe et al. described in http://ilpubs.stanford.edu:8090/115/1/1995-46.pdf. 157 """ 158 159 def __init__(self, f: float = 0.6, t: float = 0.6, dialect: DialectType = None) -> None: 160 self.f = f 161 self.t = t 162 self._sql_generator = Dialect.get_or_raise(dialect).generator() 163 164 def diff( 165 self, 166 source: exp.Expression, 167 target: exp.Expression, 168 matchings: t.List[t.Tuple[exp.Expression, exp.Expression]] | None = None, 169 delta_only: bool = False, 170 ) -> t.List[Edit]: 171 matchings = matchings or [] 172 pre_matched_nodes = {id(s): id(t) for s, t in matchings} 173 if len({n for pair in pre_matched_nodes.items() for n in pair}) != 2 * len(matchings): 174 raise ValueError("Each node can be referenced at most once in the list of matchings") 175 176 self._source = source 177 self._target = target 178 self._source_index = { 179 id(n): n for n in self._source.bfs() if not isinstance(n, IGNORED_LEAF_EXPRESSION_TYPES) 180 } 181 self._target_index = { 182 id(n): n for n in self._target.bfs() if not isinstance(n, IGNORED_LEAF_EXPRESSION_TYPES) 183 } 184 self._unmatched_source_nodes = set(self._source_index) - set(pre_matched_nodes) 185 self._unmatched_target_nodes = set(self._target_index) - set(pre_matched_nodes.values()) 186 self._bigram_histo_cache: t.Dict[int, t.DefaultDict[str, int]] = {} 187 188 matching_set = self._compute_matching_set() | {(s, t) for s, t in pre_matched_nodes.items()} 189 return self._generate_edit_script(matching_set, delta_only) 190 191 def _generate_edit_script( 192 self, 193 matching_set: t.Set[t.Tuple[int, int]], 194 delta_only: bool, 195 ) -> t.List[Edit]: 196 edit_script: t.List[Edit] = [] 197 for removed_node_id in self._unmatched_source_nodes: 198 edit_script.append(Remove(self._source_index[removed_node_id])) 199 for inserted_node_id in self._unmatched_target_nodes: 200 edit_script.append(Insert(self._target_index[inserted_node_id])) 201 for kept_source_node_id, kept_target_node_id in matching_set: 202 source_node = self._source_index[kept_source_node_id] 203 target_node = self._target_index[kept_target_node_id] 204 if ( 205 not isinstance(source_node, UPDATABLE_EXPRESSION_TYPES) 206 or source_node == target_node 207 ): 208 edit_script.extend( 209 self._generate_move_edits(source_node, target_node, matching_set) 210 ) 211 if not delta_only: 212 edit_script.append(Keep(source_node, target_node)) 213 else: 214 edit_script.append(Update(source_node, target_node)) 215 216 return edit_script 217 218 def _generate_move_edits( 219 self, source: exp.Expression, target: exp.Expression, matching_set: t.Set[t.Tuple[int, int]] 220 ) -> t.List[Move]: 221 source_args = [id(e) for e in _expression_only_args(source)] 222 target_args = [id(e) for e in _expression_only_args(target)] 223 224 args_lcs = set(_lcs(source_args, target_args, lambda l, r: (l, r) in matching_set)) 225 226 move_edits = [] 227 for a in source_args: 228 if a not in args_lcs and a not in self._unmatched_source_nodes: 229 move_edits.append(Move(self._source_index[a])) 230 231 return move_edits 232 233 def _compute_matching_set(self) -> t.Set[t.Tuple[int, int]]: 234 leaves_matching_set = self._compute_leaf_matching_set() 235 matching_set = leaves_matching_set.copy() 236 237 ordered_unmatched_source_nodes = { 238 id(n): None for n in self._source.bfs() if id(n) in self._unmatched_source_nodes 239 } 240 ordered_unmatched_target_nodes = { 241 id(n): None for n in self._target.bfs() if id(n) in self._unmatched_target_nodes 242 } 243 244 for source_node_id in ordered_unmatched_source_nodes: 245 for target_node_id in ordered_unmatched_target_nodes: 246 source_node = self._source_index[source_node_id] 247 target_node = self._target_index[target_node_id] 248 if _is_same_type(source_node, target_node): 249 source_leaf_ids = {id(l) for l in _get_leaves(source_node)} 250 target_leaf_ids = {id(l) for l in _get_leaves(target_node)} 251 252 max_leaves_num = max(len(source_leaf_ids), len(target_leaf_ids)) 253 if max_leaves_num: 254 common_leaves_num = sum( 255 1 if s in source_leaf_ids and t in target_leaf_ids else 0 256 for s, t in leaves_matching_set 257 ) 258 leaf_similarity_score = common_leaves_num / max_leaves_num 259 else: 260 leaf_similarity_score = 0.0 261 262 adjusted_t = ( 263 self.t if min(len(source_leaf_ids), len(target_leaf_ids)) > 4 else 0.4 264 ) 265 266 if leaf_similarity_score >= 0.8 or ( 267 leaf_similarity_score >= adjusted_t 268 and self._dice_coefficient(source_node, target_node) >= self.f 269 ): 270 matching_set.add((source_node_id, target_node_id)) 271 self._unmatched_source_nodes.remove(source_node_id) 272 self._unmatched_target_nodes.remove(target_node_id) 273 ordered_unmatched_target_nodes.pop(target_node_id, None) 274 break 275 276 return matching_set 277 278 def _compute_leaf_matching_set(self) -> t.Set[t.Tuple[int, int]]: 279 candidate_matchings: t.List[t.Tuple[float, int, int, exp.Expression, exp.Expression]] = [] 280 source_leaves = list(_get_leaves(self._source)) 281 target_leaves = list(_get_leaves(self._target)) 282 for source_leaf in source_leaves: 283 for target_leaf in target_leaves: 284 if _is_same_type(source_leaf, target_leaf): 285 similarity_score = self._dice_coefficient(source_leaf, target_leaf) 286 if similarity_score >= self.f: 287 heappush( 288 candidate_matchings, 289 ( 290 -similarity_score, 291 -_parent_similarity_score(source_leaf, target_leaf), 292 len(candidate_matchings), 293 source_leaf, 294 target_leaf, 295 ), 296 ) 297 298 # Pick best matchings based on the highest score 299 matching_set = set() 300 while candidate_matchings: 301 _, _, _, source_leaf, target_leaf = heappop(candidate_matchings) 302 if ( 303 id(source_leaf) in self._unmatched_source_nodes 304 and id(target_leaf) in self._unmatched_target_nodes 305 ): 306 matching_set.add((id(source_leaf), id(target_leaf))) 307 self._unmatched_source_nodes.remove(id(source_leaf)) 308 self._unmatched_target_nodes.remove(id(target_leaf)) 309 310 return matching_set 311 312 def _dice_coefficient(self, source: exp.Expression, target: exp.Expression) -> float: 313 source_histo = self._bigram_histo(source) 314 target_histo = self._bigram_histo(target) 315 316 total_grams = sum(source_histo.values()) + sum(target_histo.values()) 317 if not total_grams: 318 return 1.0 if source == target else 0.0 319 320 overlap_len = 0 321 overlapping_grams = set(source_histo) & set(target_histo) 322 for g in overlapping_grams: 323 overlap_len += min(source_histo[g], target_histo[g]) 324 325 return 2 * overlap_len / total_grams 326 327 def _bigram_histo(self, expression: exp.Expression) -> t.DefaultDict[str, int]: 328 if id(expression) in self._bigram_histo_cache: 329 return self._bigram_histo_cache[id(expression)] 330 331 expression_str = self._sql_generator.generate(expression) 332 count = max(0, len(expression_str) - 1) 333 bigram_histo: t.DefaultDict[str, int] = defaultdict(int) 334 for i in range(count): 335 bigram_histo[expression_str[i : i + 2]] += 1 336 337 self._bigram_histo_cache[id(expression)] = bigram_histo 338 return bigram_histo 339 340 341def _get_leaves(expression: exp.Expression) -> t.Iterator[exp.Expression]: 342 has_child_exprs = False 343 344 for node in expression.iter_expressions(): 345 if not isinstance(node, IGNORED_LEAF_EXPRESSION_TYPES): 346 has_child_exprs = True 347 yield from _get_leaves(node) 348 349 if not has_child_exprs: 350 yield expression 351 352 353def _is_same_type(source: exp.Expression, target: exp.Expression) -> bool: 354 if type(source) is type(target): 355 if isinstance(source, exp.Join): 356 return source.args.get("side") == target.args.get("side") 357 358 if isinstance(source, exp.Anonymous): 359 return source.this == target.this 360 361 return True 362 363 return False 364 365 366def _parent_similarity_score( 367 source: t.Optional[exp.Expression], target: t.Optional[exp.Expression] 368) -> int: 369 if source is None or target is None or type(source) is not type(target): 370 return 0 371 372 return 1 + _parent_similarity_score(source.parent, target.parent) 373 374 375def _expression_only_args(expression: exp.Expression) -> t.List[exp.Expression]: 376 args: t.List[t.Union[exp.Expression, t.List]] = [] 377 if expression: 378 for a in expression.args.values(): 379 args.extend(ensure_list(a)) 380 return [ 381 a 382 for a in args 383 if isinstance(a, exp.Expression) and not isinstance(a, IGNORED_LEAF_EXPRESSION_TYPES) 384 ] 385 386 387def _lcs( 388 seq_a: t.Sequence[T], seq_b: t.Sequence[T], equal: t.Callable[[T, T], bool] 389) -> t.Sequence[t.Optional[T]]: 390 """Calculates the longest common subsequence""" 391 392 len_a = len(seq_a) 393 len_b = len(seq_b) 394 lcs_result = [[None] * (len_b + 1) for i in range(len_a + 1)] 395 396 for i in range(len_a + 1): 397 for j in range(len_b + 1): 398 if i == 0 or j == 0: 399 lcs_result[i][j] = [] # type: ignore 400 elif equal(seq_a[i - 1], seq_b[j - 1]): 401 lcs_result[i][j] = lcs_result[i - 1][j - 1] + [seq_a[i - 1]] # type: ignore 402 else: 403 lcs_result[i][j] = ( 404 lcs_result[i - 1][j] 405 if len(lcs_result[i - 1][j]) > len(lcs_result[i][j - 1]) # type: ignore 406 else lcs_result[i][j - 1] 407 ) 408 409 return lcs_result[len_a][len_b] # type: ignore
22@dataclass(frozen=True) 23class Insert: 24 """Indicates that a new node has been inserted""" 25 26 expression: exp.Expression
Indicates that a new node has been inserted
29@dataclass(frozen=True) 30class Remove: 31 """Indicates that an existing node has been removed""" 32 33 expression: exp.Expression
Indicates that an existing node has been removed
36@dataclass(frozen=True) 37class Move: 38 """Indicates that an existing node's position within the tree has changed""" 39 40 expression: exp.Expression
Indicates that an existing node's position within the tree has changed
43@dataclass(frozen=True) 44class Update: 45 """Indicates that an existing node has been updated""" 46 47 source: exp.Expression 48 target: exp.Expression
Indicates that an existing node has been updated
51@dataclass(frozen=True) 52class Keep: 53 """Indicates that an existing node hasn't been changed""" 54 55 source: exp.Expression 56 target: exp.Expression
Indicates that an existing node hasn't been changed
65def diff( 66 source: exp.Expression, 67 target: exp.Expression, 68 matchings: t.List[t.Tuple[exp.Expression, exp.Expression]] | None = None, 69 delta_only: bool = False, 70 copy: bool = True, 71 **kwargs: t.Any, 72) -> t.List[Edit]: 73 """ 74 Returns the list of changes between the source and the target expressions. 75 76 Examples: 77 >>> diff(parse_one("a + b"), parse_one("a + c")) 78 [ 79 Remove(expression=(COLUMN this: (IDENTIFIER this: b, quoted: False))), 80 Insert(expression=(COLUMN this: (IDENTIFIER this: c, quoted: False))), 81 Keep( 82 source=(ADD this: ...), 83 target=(ADD this: ...) 84 ), 85 Keep( 86 source=(COLUMN this: (IDENTIFIER this: a, quoted: False)), 87 target=(COLUMN this: (IDENTIFIER this: a, quoted: False)) 88 ), 89 ] 90 91 Args: 92 source: the source expression. 93 target: the target expression against which the diff should be calculated. 94 matchings: the list of pre-matched node pairs which is used to help the algorithm's 95 heuristics produce better results for subtrees that are known by a caller to be matching. 96 Note: expression references in this list must refer to the same node objects that are 97 referenced in source / target trees. 98 delta_only: excludes all `Keep` nodes from the diff. 99 copy: whether to copy the input expressions. 100 Note: if this is set to false, the caller must ensure that there are no shared references 101 in the two ASTs, otherwise the diffing algorithm may produce unexpected behavior. 102 kwargs: additional arguments to pass to the ChangeDistiller instance. 103 104 Returns: 105 the list of Insert, Remove, Move, Update and Keep objects for each node in the source and the 106 target expression trees. This list represents a sequence of steps needed to transform the source 107 expression tree into the target one. 108 """ 109 matchings = matchings or [] 110 matching_ids = {id(n) for pair in matchings for n in pair} 111 112 def compute_node_mappings( 113 original: exp.Expression, copy: exp.Expression 114 ) -> t.Dict[int, exp.Expression]: 115 return { 116 id(old_node): new_node 117 for old_node, new_node in zip(original.walk(), copy.walk()) 118 if id(old_node) in matching_ids 119 } 120 121 source_copy = source.copy() if copy else source 122 target_copy = target.copy() if copy else target 123 124 node_mappings = { 125 **compute_node_mappings(source, source_copy), 126 **compute_node_mappings(target, target_copy), 127 } 128 matchings_copy = [(node_mappings[id(s)], node_mappings[id(t)]) for s, t in matchings] 129 130 return ChangeDistiller(**kwargs).diff( 131 source_copy, 132 target_copy, 133 matchings=matchings_copy, 134 delta_only=delta_only, 135 )
Returns the list of changes between the source and the target expressions.
Examples:
>>> diff(parse_one("a + b"), parse_one("a + c")) [ Remove(expression=(COLUMN this: (IDENTIFIER this: b, quoted: False))), Insert(expression=(COLUMN this: (IDENTIFIER this: c, quoted: False))), Keep( source=(ADD this: ...), target=(ADD this: ...) ), Keep( source=(COLUMN this: (IDENTIFIER this: a, quoted: False)), target=(COLUMN this: (IDENTIFIER this: a, quoted: False)) ), ]
Arguments:
- source: the source expression.
- target: the target expression against which the diff should be calculated.
- matchings: the list of pre-matched node pairs which is used to help the algorithm's heuristics produce better results for subtrees that are known by a caller to be matching. Note: expression references in this list must refer to the same node objects that are referenced in source / target trees.
- delta_only: excludes all
Keep
nodes from the diff. - copy: whether to copy the input expressions. Note: if this is set to false, the caller must ensure that there are no shared references in the two ASTs, otherwise the diffing algorithm may produce unexpected behavior.
- kwargs: additional arguments to pass to the ChangeDistiller instance.
Returns:
the list of Insert, Remove, Move, Update and Keep objects for each node in the source and the target expression trees. This list represents a sequence of steps needed to transform the source expression tree into the target one.
153class ChangeDistiller: 154 """ 155 The implementation of the Change Distiller algorithm described by Beat Fluri and Martin Pinzger in 156 their paper https://ieeexplore.ieee.org/document/4339230, which in turn is based on the algorithm by 157 Chawathe et al. described in http://ilpubs.stanford.edu:8090/115/1/1995-46.pdf. 158 """ 159 160 def __init__(self, f: float = 0.6, t: float = 0.6, dialect: DialectType = None) -> None: 161 self.f = f 162 self.t = t 163 self._sql_generator = Dialect.get_or_raise(dialect).generator() 164 165 def diff( 166 self, 167 source: exp.Expression, 168 target: exp.Expression, 169 matchings: t.List[t.Tuple[exp.Expression, exp.Expression]] | None = None, 170 delta_only: bool = False, 171 ) -> t.List[Edit]: 172 matchings = matchings or [] 173 pre_matched_nodes = {id(s): id(t) for s, t in matchings} 174 if len({n for pair in pre_matched_nodes.items() for n in pair}) != 2 * len(matchings): 175 raise ValueError("Each node can be referenced at most once in the list of matchings") 176 177 self._source = source 178 self._target = target 179 self._source_index = { 180 id(n): n for n in self._source.bfs() if not isinstance(n, IGNORED_LEAF_EXPRESSION_TYPES) 181 } 182 self._target_index = { 183 id(n): n for n in self._target.bfs() if not isinstance(n, IGNORED_LEAF_EXPRESSION_TYPES) 184 } 185 self._unmatched_source_nodes = set(self._source_index) - set(pre_matched_nodes) 186 self._unmatched_target_nodes = set(self._target_index) - set(pre_matched_nodes.values()) 187 self._bigram_histo_cache: t.Dict[int, t.DefaultDict[str, int]] = {} 188 189 matching_set = self._compute_matching_set() | {(s, t) for s, t in pre_matched_nodes.items()} 190 return self._generate_edit_script(matching_set, delta_only) 191 192 def _generate_edit_script( 193 self, 194 matching_set: t.Set[t.Tuple[int, int]], 195 delta_only: bool, 196 ) -> t.List[Edit]: 197 edit_script: t.List[Edit] = [] 198 for removed_node_id in self._unmatched_source_nodes: 199 edit_script.append(Remove(self._source_index[removed_node_id])) 200 for inserted_node_id in self._unmatched_target_nodes: 201 edit_script.append(Insert(self._target_index[inserted_node_id])) 202 for kept_source_node_id, kept_target_node_id in matching_set: 203 source_node = self._source_index[kept_source_node_id] 204 target_node = self._target_index[kept_target_node_id] 205 if ( 206 not isinstance(source_node, UPDATABLE_EXPRESSION_TYPES) 207 or source_node == target_node 208 ): 209 edit_script.extend( 210 self._generate_move_edits(source_node, target_node, matching_set) 211 ) 212 if not delta_only: 213 edit_script.append(Keep(source_node, target_node)) 214 else: 215 edit_script.append(Update(source_node, target_node)) 216 217 return edit_script 218 219 def _generate_move_edits( 220 self, source: exp.Expression, target: exp.Expression, matching_set: t.Set[t.Tuple[int, int]] 221 ) -> t.List[Move]: 222 source_args = [id(e) for e in _expression_only_args(source)] 223 target_args = [id(e) for e in _expression_only_args(target)] 224 225 args_lcs = set(_lcs(source_args, target_args, lambda l, r: (l, r) in matching_set)) 226 227 move_edits = [] 228 for a in source_args: 229 if a not in args_lcs and a not in self._unmatched_source_nodes: 230 move_edits.append(Move(self._source_index[a])) 231 232 return move_edits 233 234 def _compute_matching_set(self) -> t.Set[t.Tuple[int, int]]: 235 leaves_matching_set = self._compute_leaf_matching_set() 236 matching_set = leaves_matching_set.copy() 237 238 ordered_unmatched_source_nodes = { 239 id(n): None for n in self._source.bfs() if id(n) in self._unmatched_source_nodes 240 } 241 ordered_unmatched_target_nodes = { 242 id(n): None for n in self._target.bfs() if id(n) in self._unmatched_target_nodes 243 } 244 245 for source_node_id in ordered_unmatched_source_nodes: 246 for target_node_id in ordered_unmatched_target_nodes: 247 source_node = self._source_index[source_node_id] 248 target_node = self._target_index[target_node_id] 249 if _is_same_type(source_node, target_node): 250 source_leaf_ids = {id(l) for l in _get_leaves(source_node)} 251 target_leaf_ids = {id(l) for l in _get_leaves(target_node)} 252 253 max_leaves_num = max(len(source_leaf_ids), len(target_leaf_ids)) 254 if max_leaves_num: 255 common_leaves_num = sum( 256 1 if s in source_leaf_ids and t in target_leaf_ids else 0 257 for s, t in leaves_matching_set 258 ) 259 leaf_similarity_score = common_leaves_num / max_leaves_num 260 else: 261 leaf_similarity_score = 0.0 262 263 adjusted_t = ( 264 self.t if min(len(source_leaf_ids), len(target_leaf_ids)) > 4 else 0.4 265 ) 266 267 if leaf_similarity_score >= 0.8 or ( 268 leaf_similarity_score >= adjusted_t 269 and self._dice_coefficient(source_node, target_node) >= self.f 270 ): 271 matching_set.add((source_node_id, target_node_id)) 272 self._unmatched_source_nodes.remove(source_node_id) 273 self._unmatched_target_nodes.remove(target_node_id) 274 ordered_unmatched_target_nodes.pop(target_node_id, None) 275 break 276 277 return matching_set 278 279 def _compute_leaf_matching_set(self) -> t.Set[t.Tuple[int, int]]: 280 candidate_matchings: t.List[t.Tuple[float, int, int, exp.Expression, exp.Expression]] = [] 281 source_leaves = list(_get_leaves(self._source)) 282 target_leaves = list(_get_leaves(self._target)) 283 for source_leaf in source_leaves: 284 for target_leaf in target_leaves: 285 if _is_same_type(source_leaf, target_leaf): 286 similarity_score = self._dice_coefficient(source_leaf, target_leaf) 287 if similarity_score >= self.f: 288 heappush( 289 candidate_matchings, 290 ( 291 -similarity_score, 292 -_parent_similarity_score(source_leaf, target_leaf), 293 len(candidate_matchings), 294 source_leaf, 295 target_leaf, 296 ), 297 ) 298 299 # Pick best matchings based on the highest score 300 matching_set = set() 301 while candidate_matchings: 302 _, _, _, source_leaf, target_leaf = heappop(candidate_matchings) 303 if ( 304 id(source_leaf) in self._unmatched_source_nodes 305 and id(target_leaf) in self._unmatched_target_nodes 306 ): 307 matching_set.add((id(source_leaf), id(target_leaf))) 308 self._unmatched_source_nodes.remove(id(source_leaf)) 309 self._unmatched_target_nodes.remove(id(target_leaf)) 310 311 return matching_set 312 313 def _dice_coefficient(self, source: exp.Expression, target: exp.Expression) -> float: 314 source_histo = self._bigram_histo(source) 315 target_histo = self._bigram_histo(target) 316 317 total_grams = sum(source_histo.values()) + sum(target_histo.values()) 318 if not total_grams: 319 return 1.0 if source == target else 0.0 320 321 overlap_len = 0 322 overlapping_grams = set(source_histo) & set(target_histo) 323 for g in overlapping_grams: 324 overlap_len += min(source_histo[g], target_histo[g]) 325 326 return 2 * overlap_len / total_grams 327 328 def _bigram_histo(self, expression: exp.Expression) -> t.DefaultDict[str, int]: 329 if id(expression) in self._bigram_histo_cache: 330 return self._bigram_histo_cache[id(expression)] 331 332 expression_str = self._sql_generator.generate(expression) 333 count = max(0, len(expression_str) - 1) 334 bigram_histo: t.DefaultDict[str, int] = defaultdict(int) 335 for i in range(count): 336 bigram_histo[expression_str[i : i + 2]] += 1 337 338 self._bigram_histo_cache[id(expression)] = bigram_histo 339 return bigram_histo
The implementation of the Change Distiller algorithm described by Beat Fluri and Martin Pinzger in their paper https://ieeexplore.ieee.org/document/4339230, which in turn is based on the algorithm by Chawathe et al. described in http://ilpubs.stanford.edu:8090/115/1/1995-46.pdf.
165 def diff( 166 self, 167 source: exp.Expression, 168 target: exp.Expression, 169 matchings: t.List[t.Tuple[exp.Expression, exp.Expression]] | None = None, 170 delta_only: bool = False, 171 ) -> t.List[Edit]: 172 matchings = matchings or [] 173 pre_matched_nodes = {id(s): id(t) for s, t in matchings} 174 if len({n for pair in pre_matched_nodes.items() for n in pair}) != 2 * len(matchings): 175 raise ValueError("Each node can be referenced at most once in the list of matchings") 176 177 self._source = source 178 self._target = target 179 self._source_index = { 180 id(n): n for n in self._source.bfs() if not isinstance(n, IGNORED_LEAF_EXPRESSION_TYPES) 181 } 182 self._target_index = { 183 id(n): n for n in self._target.bfs() if not isinstance(n, IGNORED_LEAF_EXPRESSION_TYPES) 184 } 185 self._unmatched_source_nodes = set(self._source_index) - set(pre_matched_nodes) 186 self._unmatched_target_nodes = set(self._target_index) - set(pre_matched_nodes.values()) 187 self._bigram_histo_cache: t.Dict[int, t.DefaultDict[str, int]] = {} 188 189 matching_set = self._compute_matching_set() | {(s, t) for s, t in pre_matched_nodes.items()} 190 return self._generate_edit_script(matching_set, delta_only)