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Datalog.Shell

A shell for my Datalog engine.

What is Datalog?

Datalog is a fully declarative language for expressing relational data and queries, typically written using a syntactic subset of Prolog. Its most interesting feature compared to other relational languages such as SQL is that it features production rules.

Briefly, a datalog database consists of rules and tuples. Tuples are written a(b, "c", 126, ...)., require no declaration eg. of table, may be of arbitrary even varying length. The elements of this tuple are strings which may be written as bare words or quoted.

In the interpreter (or a file), we could define a small graph as such -

$ datalog
>>> edge(a, b).
⇒ edge('a', 'b')
>>> edge(b, c).
⇒ edge('b', 'c')
>>> edge(c, d).
⇒ edge('c', 'd')

But how can we query this? We can issue queries by entering a tuple terminated with ? instead of ..

For instance we could query if some tuples exist in the database -

>>> edge(a, b)?
⇒ edge('a', 'b')
>>> edge(d, f)?
⇒ Ø
>>> 

We did define edge(a, b). so our query returns that tuple. However the tuple edge(d, f). was not defined, so our query produces no results. Rather than printing nothing, the Ø symbol which denotes the empty set is printed for clarity.

This is correct, but uninteresting. How can we find say all the edges from a? We don't have a construct like wildcards with which to match anything - yet.

Enter logic variables. Logic variables are capitalized words, X, Foo and the like, which are interpreted as wildcards by the query engine. Capitalized words are always understood as logic variables.

>>> edge(a, X)?
⇒ edge('a', 'b')

However unlike wildcards which simply match anything, logic variables are unified within a query. Were we to write edge(X, X)? we would be asking for the set of tuples such that both elements of the edge tuple equate.

>>> edge(X, X)?
⇒ Ø

Of which we have none.

But what if we wanted to find paths between edges? Say to check if a path existed from a to d. We'd need to find a way to unify many logic variables together - and so far we've only seen queries of a single tuple.

Enter rules. We can define productions by which the Datalog engine can produce new tuples. Rules are written as a tuple "pattern" which may contain constants or logic variables, followed by a sequence of "clauses" separated by the :- assignment operator.

Rules are perhaps best understood as subqueries. A rule defines an indefinite set of tuples such that over that set, the query clauses are simultaneously satisfied. This is how we achieve complex queries.

There is no alternation - or - operator within a rule's body. However, rules can share the same tuple "pattern".

So if we wanted to say find paths between edges in our database, we could do so using two rules. One which defines a "simple" path, and one which defines a path from X to Y recursively by querying for an edge from X to an unconstrained Z, and then unifying that with path(Z, Y).

>>> path(X, Y) :- edge(X, Y).
⇒ path('X', 'Y') :- edge('X', 'Y').
>>> path(X, Y) :- edge(X, Z), path(Z, Y).
⇒ path('X', 'Y') :- edge('X', 'Z'), path('Z', 'Y').
>>> path(a, X)?
⇒ path('a', 'b')
⇒ path('a', 'c')
⇒ path('a', 'd')

We could also ask for all paths -

>>> path(X, Y)?
⇒ path('b', 'c')
⇒ path('a', 'b')
⇒ path('c', 'd')
⇒ path('b', 'd')
⇒ path('a', 'c')
⇒ path('a', 'd')

Datalog also supports negation. Within a rule, a tuple prefixed with ~ becomes a negative statement. This allows us to express "does not exist" relations, or antjoins. Note that this is only possible by making the closed world assumption.

Datalog also supports binary equality as a special relation. =(X,Y)? is a nonsense query alone because the space of X and Y are undefined. However within a rule body, equality (and negated equality statements!) can be quite useful.

For convenience, the Datalog interpreter supports "retracting" (deletion) of tuples and rules. edge(a, b)! would retract that constant tuple, but we cannot retract path(a, b)! as that tuple is generated by a rule. We can however retract the rule - edge(X, Y)! which would remove both edge production rules from the database.

The Datalog interpreter also supports reading tuples (and rules) from one or more files, each specified by the --db <filename> command line argument.

Usage

pip install --user arrdem.datalog.shell

This will install the datalog interpreter into your user-local python bin directory, and pull down the core arrdem.datalog engine as well.

Status

This is a complete to my knowledge implementation of a traditional datalog.

Support is included for binary = as builtin relation, and for negated terms in rules (prefixed with ~)

Rules, and the recursive evaluation of rules is supported with some guards to prevent infinite recursion.

The interactive interpreter supports definitions (terms ending in .), retractions (terms ending in !) and queries (terms ending in ?), see the interpreter's help response for more details.

Limitations

Recursion may have some completeness bugs. I have not yet encountered any, but I also don't have a strong proof of correctness for the recursive evaluation of rules yet.

The current implementation of negated clauses CANNOT propagate positive information. This means that negated clauses can only be used in conjunction with positive clauses. It's not clear if this is an essential limitation.

There is as of yet no query planner - not even segmenting rules and tuples by relation to restrict evaluation. This means that the complexity of a query is O(dataset * term count), which is clearly less than ideal.

License

Mirrored from https://git.arrdem.com/arrdem/datalog-py

Published under the MIT license. See LICENSE.md