Datalog
Paradigm | Logic, Declarative |
---|---|
Family | Prolog |
First appeared | 1977 |
Typing discipline | Weak |
Dialects | |
Datomic, .QL, Soufflé, XTDB, etc. | |
Influenced by | |
Prolog | |
Influenced | |
SQL |
Filename extension |
.dl |
---|---|
Internet media type | |
Website | datalog-specs |
Datalog is a declarative logic programming language. While it is syntactically a subset of Prolog, Datalog generally uses a bottom-up rather than top-down evaluation model. This difference yields significantly different behavior and properties from Prolog. It is often used as a query language for deductive databases. Datalog has been applied to problems in data integration, networking, program analysis, and more.
Example
[edit]A Datalog program consists of facts, which are statements that are held to be true, and rules, which say how to deduce new facts from known facts. For example, here are two facts that mean xerces is a parent of brooke and brooke is a parent of damocles:
parent(xerces, brooke).
parent(brooke, damocles).
The names are written in lowercase because strings beginning with an uppercase letter stand for variables. Here are two rules:
ancestor(X, Y) :- parent(X, Y).
ancestor(X, Y) :- parent(X, Z), ancestor(Z, Y).
The :-
symbol is read as "if", and the comma is read "and", so these rules mean:
- X is an ancestor of Y if X is a parent of Y.
- X is an ancestor of Y if X is a parent of some Z, and Z is an ancestor of Y.
The meaning of a program is defined to be the set of all of the facts that can be deduced using the initial facts and the rules. This program's meaning is given by the following facts:
parent(xerces, brooke).
parent(brooke, damocles).
ancestor(xerces, brooke).
ancestor(brooke, damocles).
ancestor(xerces, damocles).
Some Datalog implementations don't deduce all possible facts, but instead answer queries:
?- ancestor(xerces, X).
This query asks: Who are all the X that xerces is an ancestor of? For this example, it would return brooke and damocles.
Comparison to relational databases
[edit]The non-recursive subset of Datalog is closely related to query languages for relational databases, such as SQL. The following table maps between Datalog, relational algebra, and SQL concepts:
Datalog | Relational algebra | SQL |
---|---|---|
Relation | Relation | Table |
Fact | Tuple | Row |
Rule | n/a | Materialized view |
Query | Select | Query |
More formally, non-recursive Datalog corresponds precisely to unions of conjunctive queries, or equivalently, negation-free relational algebra.
Schematic translation from non-recursive Datalog into SQL
|
---|
s(x, y).
t(y).
r(A, B) :- s(A, B), t(B).
CREATE TABLE s (
z0 TEXT NONNULL,
z1 TEXT NONNULL,
PRIMARY KEY (z0, z1)
);
CREATE TABLE t (
z0 TEXT NONNULL PRIMARY KEY
);
INSERT INTO s VALUES ('x', 'y');
INSERT INTO t VALUES ('y');
CREATE VIEW r AS
SELECT s.z0, s.z1
FROM s, t
WHERE s.z1 = t.z0;
|
Syntax
[edit]A Datalog program consists of a list of rules (Horn clauses).[1] If constant and variable are two countable sets of constants and variables respectively and relation is a countable set of predicate symbols, then the following BNF grammar expresses the structure of a Datalog program:
<program> ::= <rule> <program> | ""
<rule> ::= <atom> ":-" <atom-list> "."
<atom> ::= <relation> "(" <term-list> ")"
<atom-list> ::= <atom> | <atom> "," <atom-list> | ""
<term> ::= <constant> | <variable>
<term-list> ::= <term> | <term> "," <term-list> | ""
Atoms are also referred to as literals. The atom to the left of the :-
symbol is called the head of the rule; the atoms to the right are the body. Every Datalog program must satisfy the condition that every variable that appears in the head of a rule also appears in the body (this condition is sometimes called the range restriction).[1][2]
There are two common conventions for variable names: capitalizing variables, or prefixing them with a question mark ?
.[3]
Note that under this definition, Datalog does not include negation nor aggregates; see § Extensions for more information about those constructs.
Rules with empty bodies are called facts. For example, the following rule is a fact:
r(x) :- .
The set of facts is called the extensional database or EDB of the Datalog program. The set of tuples computed by evaluating the Datalog program is called the intensional database or IDB.
Syntactic sugar
[edit]Many implementations of logic programming extend the above grammar to allow writing facts without the :-
, like so:
r(x).
Some also allow writing 0-ary relations without parentheses, like so:
p :- q.
These are merely abbreviations (syntactic sugar); they have no impact on the semantics of the program.
Semantics
[edit]Herbrand universe, base, and model of a Datalog program |
---|
Program: edge(x, y).
edge(y, z).
path(A, B) :-
edge(A, B).
path(A, C) :-
path(A, B),
edge(B, C).
|
Herbrand universe: x , y , z |
Herbrand base: edge(x, x) , edge(x, y) , ..., edge(z, z) , path(x, x) , ..., path(z, z) |
Herbrand model: edge(x, y) , edge(y, z) , path(x, y) , path(y, z) , path(x, z) |
There are three widely-used approaches to the semantics of Datalog programs: model-theoretic, fixed-point, and proof-theoretic. These three approaches can be proven equivalent.[4]
An atom is called ground if none of its subterms are variables. Intuitively, each of the semantics define the meaning of a program to be the set of all ground atoms that can be deduced from the rules of the program, starting from the facts.
Model theoretic
[edit]A rule is called ground if all of its atoms (head and body) are ground. A ground rule R1 is a ground instance of another rule R2 if R1 is the result of a substitution of constants for all the variables in R2. The Herbrand base of a Datalog program is the set of all ground atoms that can be made with the constants appearing in the program. The Herbrand model of a Datalog program is the smallest subset of the Herbrand base such that, for each ground instance of each rule in the program, if the atoms in the body of the rule are in the set, then so is the head.[5] The model-theoretic semantics define the minimal Herbrand model to be the meaning of the program.
Fixed-point
[edit]Let I be the power set of the Herbrand base of a program P. The immediate consequence operator for P is a map T from I to I that adds all of the new ground atoms that can be derived from the rules of the program in a single step. The least-fixed-point semantics define the least fixed point of T to be the meaning of the program; this coincides with the minimal Herbrand model.[6]
The fixpoint semantics suggest an algorithm for computing the minimal model: Start with the set of ground facts in the program, then repeatedly add consequences of the rules until a fixpoint is reached. This algorithm is called naïve evaluation.
Proof-theoretic
[edit]The proof-theoretic semantics defines the meaning of a Datalog program to be the set of facts with corresponding proof trees. Intuitively, a proof tree shows how to derive a fact from the facts and rules of a program.
One might be interested in knowing whether or not a particular ground atom appears in the minimal Herbrand model of a Datalog program, perhaps without caring much about the rest of the model. A top-down reading of the proof trees described above suggests an algorithm for computing the results of such queries. This reading informs the SLD resolution algorithm, which forms the basis for the evaluation of Prolog.
Evaluation
[edit]There are many different ways to evaluate a Datalog program, with different performance characteristics.
Bottom-up evaluation strategies
[edit]Bottom-up evaluation strategies start with the facts in the program and repeatedly apply the rules until either some goal or query is established, or until the complete minimal model of the program is produced.
Naïve evaluation
[edit]Naïve evaluation mirrors the fixpoint semantics for Datalog programs. Naïve evaluation uses a set of "known facts", which is initialized to the facts in the program. It proceeds by repeatedly enumerating all ground instances of each rule in the program. If each atom in the body of the ground instance is in the set of known facts, then the head atom is added to the set of known facts. This process is repeated until a fixed point is reached, and no more facts may be deduced. Naïve evaluation produces the entire minimal model of the program.[7]
Semi-naïve evaluation
[edit]This section needs expansion. You can help by adding to it. (February 2023) |
Semi-naïve evaluation is a bottom-up evaluation strategy that can be asymptotically faster than naïve evaluation.[8]
Performance considerations
[edit]Naïve and semi-naïve evaluation both evaluate recursive Datalog rules by repeatedly applying them to a set of known facts until a fixed point is reached. In each iteration, rules are only run for "one step", i.e., non-recursively. As mentioned above, each non-recursive Datalog rule corresponds precisely to a conjunctive query. Therefore, many of the techniques from database theory used to speed up conjunctive queries are applicable to bottom-up evaluation of Datalog, such as
- Index selection[10]
- Query optimization, especially join order[11][12]
- Join algorithms
- Selection of data structures used to store relations; common choices include hash tables and B-trees, other possibilities include disjoint set data structures (for storing equivalence relations),[13] bries (a variant of tries),[14] binary decision diagrams,[15] and even SMT formulas[16]
Many such techniques are implemented in modern bottom-up Datalog engines such as Soufflé. Some Datalog engines integrate SQL databases directly.[17]
Bottom-up evaluation of Datalog is also amenable to parallelization. Parallel Datalog engines are generally divided into two paradigms:
- In the shared-memory, multi-core setting, Datalog engines execute on a single node. Coordination between threads may be achieved using locking or lock-free data structures. The shared-memory setting may be further divided into single instruction, multiple data and multiple instruction, multiple data paradigms:
- Datalog engines that execute on graphics processing units fall into the SIMD paradigm.[18]
- Datalog engines using OpenMP[19] are instances of the MIMD paradigm.
- In the shared-nothing setting, Datalog engines execute on a cluster of nodes. Such engines generally operate by splitting relations into disjoint subsets based on a hash function, performing computations (joins) on each node, and then exchanging newly-generated tuples over the network.[20] Examples include Datalog engines based on MPI,[9] Hadoop,[21] and Spark.[22]
Top-down evaluation strategies
[edit]This section needs expansion. You can help by adding to it. (March 2023) |
SLD resolution is sound and complete for Datalog programs.
Magic sets
[edit]Top-down evaluation strategies begin with a query or goal. Bottom-up evaluation strategies can answer queries by computing the entire minimal model and matching the query against it, but this can be inefficient if the answer only depends on a small subset of the entire model. The magic sets algorithm takes a Datalog program and a query, and produces a more efficient program that computes the same answer to the query while still using bottom-up evaluation.[23] A variant of the magic sets algorithm has been shown to produce programs that, when evaluated using semi-naïve evaluation, are as efficient as top-down evaluation.[24]
Complexity
[edit]The decision problem formulation of Datalog evaluation is as follows: Given a Datalog program P split into a set of facts (EDB) E and a set of rules R, and a ground atom A, is A in the minimal model of P? In this formulation, there are three variations of the computational complexity of evaluating Datalog programs:[25]
- The data complexity is the complexity of the decision problem when A and E are inputs and R is fixed.
- The program complexity is the complexity of the decision problem when A and R are inputs and E is fixed.
- The combined complexity is the complexity of the decision problem when A, E, and R are inputs.
With respect to data complexity, the decision problem for Datalog is P-complete. With respect to program complexity, the decision problem is EXPTIME-complete. In particular, evaluating Datalog programs always terminates; Datalog is not Turing-complete.
Some extensions to Datalog do not preserve these complexity bounds. Extensions implemented in some Datalog engines, such as algebraic data types, can even make the resulting language Turing-complete.
Extensions
[edit]Several extensions have been made to Datalog, e.g., to support negation, aggregate functions, inequalities, to allow object-oriented programming, or to allow disjunctions as heads of clauses. These extensions have significant impacts on the language's semantics and on the implementation of a corresponding interpreter.
Datalog is a syntactic subset of Prolog, disjunctive Datalog, answer set programming, DatalogZ, and constraint logic programming. When evaluated as an answer set program, a Datalog program yields a single answer set, which is exactly its minimal model.[26]
Many implementations of Datalog extend Datalog with additional features; see § Datalog engines for more information.
Aggregation
[edit]This section needs expansion. You can help by adding to it. (February 2023) |
Datalog can be extended to support aggregate functions.[27]
Notable Datalog engines that implement aggregation include:
Negation
[edit]Adding negation to Datalog complicates its semantics, leading to whole new languages and strategies for evaluation. For example, the language that results from adding negation with the stable model semantics is exactly answer set programming.
Stratified negation can be added to Datalog while retaining its model-theoretic and fixed-point semantics. Notable Datalog engines that implement stratified negation include:
Comparison to Prolog
[edit]Unlike in Prolog, statements of a Datalog program can be stated in any order. Datalog does not have Prolog's cut operator. This makes Datalog a fully declarative language.
In contrast to Prolog, Datalog
- disallows complex terms as arguments of predicates, e.g.,
p(x, y)
is admissible but notp(f(x), y)
, - disallows negation,
- requires that every variable that appears in the head of a clause also appear in a literal in the body of the clause.
This article deals primarily with Datalog without negation (see also Syntax and semantics of logic programming § Extending Datalog with negation). However, stratified negation is a common addition to Datalog; the following list contrasts Prolog with Datalog with stratified negation. Datalog with stratified negation
- also disallows complex terms as arguments of predicates,
- requires that every variable that appears in the head of a clause also appear in a positive (i.e., not negated) atom in the body of the clause,
- requires that every variable appearing in a negative literal in the body of a clause also appear in some positive literal in the body of the clause.[30][unreliable source?]
Expressiveness
[edit]Datalog generalizes many other query languages. For instance, conjunctive queries and union of conjunctive queries can be expressed in Datalog. Datalog can also express regular path queries.
When we consider ordered databases, i.e., databases with an order relation on their active domain, then the Immerman–Vardi theorem implies that the expressive power of Datalog is precisely that of the class PTIME: a property can be expressed in Datalog if and only if it is computable in polynomial time.[31]
The boundedness problem for Datalog asks, given a Datalog program, whether it is bounded, i.e., the maximal recursion depth reached when evaluating the program on an input database can be bounded by some constant. In other words, this question asks whether the Datalog program could be rewritten as a nonrecursive Datalog program, or, equivalently, as a union of conjunctive queries. Solving the boundedness problem on arbitrary Datalog programs is undecidable,[32] but it can be made decidable by restricting to some fragments of Datalog.
Datalog engines
[edit]Systems that implement languages inspired by Datalog, whether compilers, interpreters, libraries, or embedded DSLs, are referred to as Datalog engines. Datalog engines often implement extensions of Datalog, extending it with additional data types, foreign function interfaces, or support for user-defined lattices. Such extensions may allow for writing non-terminating or otherwise ill-defined programs.[citation needed]
Here is a short list of systems that are either based on Datalog or provide a Datalog interpreter:
Free software/open source
[edit]Name | Year of latest release | Written in | Licence | Data sources | Description | Links |
---|---|---|---|---|---|---|
AbcDatalog | 2023 | Java | BSD | Datalog engine that implements common evaluation algorithms; designed for extensibility, research use, and education | Homepage | |
Ascent | 2023 | Rust | MIT License | A logic programming language (similar to Datalog) embedded in Rust via macros, supporting a Lattice and customized datastructure. | Repository | |
bddbddb | 2007 | Java | GNU LGPL | Datalog implementation designed to query Java bytecode including points-to analysis on large Java programs; using BDDs internally. | Homepage | |
Bloom (Bud) | 2017 | Ruby | BSD 3-Clause | Ruby DSL for programming with data-centric constructs, based on the Dedalus extension of Datalog which adds a temporal dimension to the logic | Homepage Repository | |
Cascalog | 2014 | Clojure | Apache 2.0 | can query other DBMS | Data processing and querying library for Clojure and Java, designed to be used on Hadoop | Repository Homepage (archived) |
Clingo | 2024 | C++ | MIT License | Answer Set Programming system that supports Datalog as a special case; its standalone grounder gringo suffices for plain Datalog | Homepage Repository Online demo | |
ConceptBase | 2023 | various | BSD 2-Clause | deductive and object-oriented database system for conceptual modeling and metamodeling, which includes a Datalog query evaluator | Homepage | |
Coral | 1997 | C++ | proprietary, free for some uses, open source | A deductive database system written in C++ with semi-naïve datalog evaluation. Developed 1988-1997. | Homepage | |
Crepe | 2023 | Rust | Apache 2.0 or MIT | Rust library for expressing Datalog-like inferences, based on procedural macros | Homepage | |
Datafrog | 2019 | Rust | Apache 2.0 or MIT | Lightweight Datalog engine intended to be embedded in other Rust programs | Homepage | |
Datafun | 2016 | Racket | open source, no license in repository | Functional programming language that generalized Datalog on semilattices | Homepage Repository | |
Datahike | 2024 | Clojure | Eclipse Public License 1.0 | built-in database (in-memory or file) | Fork of DataScript with a durable backend based on a hitchhiker tree, using Datalog as query language | Homepage |
Datalevin | 2024 | Clojure | Eclipse Public License 1.0 | LMDB bindings | Fork of DataScript optimized for LMDB durable storage, using Datalog as query language | Homepage |
Datalog (Erlang) | 2019 | Erlang | Apache 2.0 | Library to support Datalog queries in Erlang, with data represented as streams of tuples | Homepage | |
Datalog (MITRE) | 2016 | Lua | GNU LGPL | Lightweight deductive database system, designed to be small and usable on memory constrained devices | Homepage Online demo | |
Datalog (OCaml) | 2019 | OCaml | BSD 2-clause | In-memory Datalog implementation for OCaml featuring bottom-up and top-down algorithms | Homepage | |
Datalog (Racket) | 2022 | Racket | Apache 2.0 or MIT | Racket package for using Datalog | Homepage Repository | |
Datalog Educational System | 2021 | Prolog | GNU LGPL | DBMS connectors | Open-source implementation intended for teaching Datalog[33] | Homepage |
DataScript | 2024 | Clojure | Eclipse Public License 1.0 | in-memory database | Immutable database that runs in a browser, using Datalog as query language | Homepage |
Datomic | 2024 | Clojure | closed source; binaries released under Apache 2.0 | bindings for DynamoDB, Cassandra, PostgreSQL and others | Distributed database running on cloud architectures; uses Datalog as query language | Homepage |
DDlog | 2021 | Rust | MIT License | Incremental, in-memory, typed Datalog engine; compiled in Rust; based on the differential dataflow[34] library | Homepage | |
DLV | 2023 | C++ | proprietary, free for some uses | Answer Set Programming system that supports Datalog as a special case | Homepage Company | |
Dyna1 | 2013 | Haskell | GNU AGPL v3 | Declarative programming language using Datalog for statistical AI programming; later Dyna versions do not use Datalog | Repository Homepage (archived) | |
Flix | 2024 | Java | Apache 2.0 | Functional and logic programming language inspired by Datalog extended with user-defined lattices and monotone filter/transfer functions | Homepage Online demo | |
Graal | 2018 | Java | CeCILL v2.1 | RDF import, CSV import, DBMS connectors | Java toolkit dedicated to querying knowledge bases within the framework of existential rules (a.k.a. tuple-generating dependencies or Datalog+/-) | Homepage |
Inter4QL | 2020 | C++ | BSD | Interpreter for a database query language based on four-valued logic, supports Datalog as a special case | Homepage | |
IRIS | 2016 | Java | GNU LGPL v2.1 | Logic programming system supporting Datalog and negation under the well-founded semantics; support for RDFS | Repository | |
Jena | 2024 | Java | Apache 2.0 | RDF import | Semantic web framework that includes a Datalog implementation as part of its general purpose rule engine; compatibility with RDF | Rule engine documentation |
Mangle | 2024 | Go | Apache 2.0 | Programming language for deductive database programming, supporting an extension of Datalog | Homepage | |
Naga | 2021 | Clojure | Eclipse Public License 1.0 | Asami graph database | Query engine that executes Datalog queries over the graph database; runs in browsers (memory), on JVM (memory/files), or natively (memory/files). | Homepage |
Nemo | 2024 | Rust | Apache 2.0 or MIT | RDF import, CSV import | In-memory rule engine for knowledge graph analysis and database transformations; compatible with RDF and SPARQL; supports tgds | Homepage Online demo |
pyDatalog | 2015 | Python | GNU LGPL | DBMS connectors from Python | Python library for interpreting Datalog queries | Homepage Repository |
RDFox | 2024 | C++ | proprietary, free for some uses | in-memory database, RDF import, CSV import, DBMS connectors | Main-memory based RDF triple store with Datalog reasoning; supports incremental evaluation and high availability setups | Homepage |
SociaLite | 2016 | Java | Apache 2.0 | HDFS bindings | Datalog variant and engine for large-scale graph analysis | Homepage (archived) Repository |
Soufflé | 2023 | C++ | UPL v1.0 | CSV import, sqlite3 bindings | Datalog engine originally designed for applications static program analysis; rule sets are either compiled to C++ programs or interpreted | Homepage |
tclbdd | 2015 | Tcl | BSD | Datalog implementation based on binary decision diagrams; designed to support development of an optimizing compiler for Tcl[35] | Homepage | |
TerminusDB | 2024 | Prolog/Rust | Apache 2.0 | Graph database and document store, that also features a Datalog-based query language | Homepage | |
XSB | 2022 | C | GNU LGPL | A logic programming and deductive database system based on Prolog with tabling giving Datalog-like termination and efficiency, including incremental evaluation[36] | Homepage | |
XTDB (formerly Crux) | 2024 | Clojure | MPL 2.0 | bindings for Apache Kafka and others | Immutable database with time-travel, Datalog used as query language in XTDB 1.x (may change in XTDB 2.x) | Homepage Repository |
Non-free software
[edit]- FoundationDB provides a free-of-charge database binding for pyDatalog, with a tutorial on its use.[37]
- Leapsight Semantic Dataspace (LSD) is a distributed deductive database that offers high availability, fault tolerance, operational simplicity, and scalability. LSD uses Leaplog (a Datalog implementation) for querying and reasoning and was create by Leapsight.[38]
- LogicBlox, a commercial implementation of Datalog used for web-based retail planning and insurance applications.
- Profium Sense is a native RDF compliant graph database written in Java. It provides Datalog evaluation support of user defined rules.
- .QL, a commercial object-oriented variant of Datalog created by Semmle for analyzing source code to detect security vulnerabilities.[39]
- SecPAL a security policy language developed by Microsoft Research.[40]
- Stardog is a graph database, implemented in Java. It provides support for RDF and all OWL 2 profiles providing extensive reasoning capabilities, including datalog evaluation.
- StrixDB: a commercial RDF graph store, SPARQL compliant with Lua API and Datalog inference capabilities. Could be used as httpd (Apache HTTP Server) module or standalone (although beta versions are under the Perl Artistic License 2.0).
Uses and influence
[edit]Datalog is quite limited in its expressivity. It is not Turing-complete, and doesn't include basic data types such as integers or strings. This parsimony is appealing from a theoretical standpoint, but it means Datalog per se is rarely used as a programming language or knowledge representation language.[41] Most Datalog engines implement substantial extensions of Datalog. However, Datalog has a strong influence on such implementations, and many authors don't bother to distinguish them from Datalog as presented in this article. Accordingly, the applications discussed in this section include applications of realistic implementations of Datalog-based languages.
Datalog has been applied to problems in data integration, information extraction, networking, security, cloud computing and machine learning.[42][43] Google has developed an extension to Datalog for big data processing.[44]
Datalog has seen application in static program analysis.[45] The Soufflé dialect has been used to write pointer analyses for Java and a control-flow analysis for Scheme.[46][47] Datalog has been integrated with SMT solvers to make it easier to write certain static analyses.[48] The Flix dialect is also suited to writing static program analyses.[49]
Some widely used database systems include ideas and algorithms developed for Datalog. For example, the SQL:1999 standard includes recursive queries, and the Magic Sets algorithm (initially developed for the faster evaluation of Datalog queries) is implemented in IBM's DB2.[50]
History
[edit]The origins of Datalog date back to the beginning of logic programming, but it became prominent as a separate area around 1977 when Hervé Gallaire and Jack Minker organized a workshop on logic and databases.[51] David Maier is credited with coining the term Datalog.[52]
See also
[edit]- Answer set programming
- Conjunctive query
- DatalogZ
- Disjunctive Datalog
- Flix
- SWRL
- Tuple-generating dependency (TGD), a language for integrity constraints on relational databases with a similar syntax to Datalog
Notes
[edit]- ^ a b Ceri, Gottlob & Tanca 1989, p. 146.
- ^ Eisner, Jason; Filardo, Nathaniel W. (2011). "Dyna: Extending Datalog for Modern AI". In de Moor, Oege; Gottlob, Georg; Furche, Tim; Sellers, Andrew (eds.). Datalog Reloaded. Lecture Notes in Computer Science. Vol. 6702. Berlin, Heidelberg: Springer. pp. 181–220. doi:10.1007/978-3-642-24206-9_11. ISBN 978-3-642-24206-9.
- ^ Maier, David; Tekle, K. Tuncay; Kifer, Michael; Warren, David S. (2018-09-01), "Datalog: concepts, history, and outlook", Declarative Logic Programming: Theory, Systems, and Applications, vol. 20, Association for Computing Machinery and Morgan & Claypool, pp. 3–100, doi:10.1145/3191315.3191317, ISBN 978-1-970001-99-0, S2CID 69379310, retrieved 2023-03-02
- ^ Van Emden, M. H.; Kowalski, R. A. (1976-10-01). "The Semantics of Predicate Logic as a Programming Language". Journal of the ACM. 23 (4): 733–742. doi:10.1145/321978.321991. ISSN 0004-5411. S2CID 11048276.
- ^ Ceri, Gottlob & Tanca 1989, p. 149.
- ^ Ceri, Gottlob & Tanca 1989, p. 150.
- ^ Ceri, Gottlob & Tanca 1989, p. 154.
- ^ Alvarez-Picallo, Mario; Eyers-Taylor, Alex; Peyton Jones, Michael; Ong, C.-H. Luke (2019). "Fixing Incremental Computation: Derivatives of Fixpoints, and the Recursive Semantics of Datalog". In Caires, Luís (ed.). Programming Languages and Systems. Lecture Notes in Computer Science. Vol. 11423. Cham: Springer International Publishing. pp. 525–552. doi:10.1007/978-3-030-17184-1_19. ISBN 978-3-030-17184-1. S2CID 53430789.
- ^ a b Gilray, Thomas; Sahebolamri, Arash; Kumar, Sidharth; Micinski, Kristopher (2022-11-21). "Higher-Order, Data-Parallel Structured Deduction". arXiv:2211.11573 [cs.PL].
- ^ Subotić, Pavle; Jordan, Herbert; Chang, Lijun; Fekete, Alan; Scholz, Bernhard (2018-10-01). "Automatic index selection for large-scale datalog computation". Proceedings of the VLDB Endowment. 12 (2): 141–153. doi:10.14778/3282495.3282500. ISSN 2150-8097. S2CID 53569679.
- ^ Antoniadis, Tony; Triantafyllou, Konstantinos; Smaragdakis, Yannis (2017-06-18). "Porting doop to Soufflé". Proceedings of the 6th ACM SIGPLAN International Workshop on State of the Art in Program Analysis. SOAP 2017. New York, NY, USA: Association for Computing Machinery. pp. 25–30. doi:10.1145/3088515.3088522. ISBN 978-1-4503-5072-3. S2CID 3074689. "The LogicBlox engine performs full query optimization."
- ^ Arch, Samuel; Hu, Xiaowen; Zhao, David; Subotić, Pavle; Scholz, Bernhard (2022). "Building a Join Optimizer for Soufflé". In Villanueva, Alicia (ed.). Logic-Based Program Synthesis and Transformation. Lecture Notes in Computer Science. Vol. 13474. Cham: Springer International Publishing. pp. 83–102. doi:10.1007/978-3-031-16767-6_5. ISBN 978-3-031-16767-6.
- ^ Nappa, Patrick; Zhao, David; Subotic, Pavle; Scholz, Bernhard (2019). "Fast Parallel Equivalence Relations in a Datalog Compiler". 2019 28th International Conference on Parallel Architectures and Compilation Techniques (PACT). pp. 82–96. doi:10.1109/PACT.2019.00015. ISBN 978-1-7281-3613-4. S2CID 204827819. Retrieved 2023-11-28.
- ^ Jordan, Herbert; Subotić, Pavle; Zhao, David; Scholz, Bernhard (2019-02-17). "Brie: A Specialized Trie for Concurrent Datalog". Proceedings of the 10th International Workshop on Programming Models and Applications for Multicores and Manycores. New York, NY, USA: Association for Computing Machinery. pp. 31–40. doi:10.1145/3303084.3309490. ISBN 978-1-4503-6290-0. S2CID 239258588.
- ^ Whaley, John; Avots, Dzintars; Carbin, Michael; Lam, Monica S. (2005). "Using Datalog with Binary Decision Diagrams for Program Analysis". In Yi, Kwangkeun (ed.). Programming Languages and Systems. Lecture Notes in Computer Science. Vol. 3780. Berlin, Heidelberg: Springer. pp. 97–118. doi:10.1007/11575467_8. ISBN 978-3-540-32247-4. S2CID 5223577.
- ^ Hoder, Kryštof; Bjørner, Nikolaj; de Moura, Leonardo (2011). "μZ– an Efficient Engine for Fixed Points with Constraints". In Gopalakrishnan, Ganesh; Qadeer, Shaz (eds.). Computer Aided Verification. Lecture Notes in Computer Science. Vol. 6806. Berlin, Heidelberg: Springer. pp. 457–462. doi:10.1007/978-3-642-22110-1_36. ISBN 978-3-642-22110-1.
- ^ Fan, Zhiwei; Zhu, Jianqiao; Zhang, Zuyu; Albarghouthi, Aws; Koutris, Paraschos; Patel, Jignesh (2018-12-10). "Scaling-Up In-Memory Datalog Processing: Observations and Techniques". arXiv:1812.03975 [cs.DB].
- ^ Shovon, Ahmedur Rahman; Dyken, Landon Richard; Green, Oded; Gilray, Thomas; Kumar, Sidharth (November 2022). "Accelerating Datalog applications with cuDF". 2022 IEEE/ACM Workshop on Irregular Applications: Architectures and Algorithms (IA3). IEEE. pp. 41–45. doi:10.1109/IA356718.2022.00012. ISBN 978-1-6654-7506-8. S2CID 256565728.
- ^ Jordan, Herbert; Subotić, Pavle; Zhao, David; Scholz, Bernhard (2019-02-16). "A specialized B-tree for concurrent datalog evaluation". Proceedings of the 24th Symposium on Principles and Practice of Parallel Programming. PPoPP '19. New York, NY, USA: Association for Computing Machinery. pp. 327–339. doi:10.1145/3293883.3295719. ISBN 978-1-4503-6225-2. S2CID 59617209.
- ^ Wu, Jiacheng; Wang, Jin; Zaniolo, Carlo (2022-06-11). "Optimizing Parallel Recursive Datalog Evaluation on Multicore Machines". Proceedings of the 2022 International Conference on Management of Data. SIGMOD '22. New York, NY, USA: Association for Computing Machinery. pp. 1433–1446. doi:10.1145/3514221.3517853. ISBN 978-1-4503-9249-5. S2CID 249578825. "These approaches implement the idea of parallel bottom-up evaluation by splitting the tables into disjoint partitions via discriminating functions, such as hashing, where each partition is then mapped to one of the parallel workers. After each iteration, workers coordinate with each other to exchange newly generated tuples where necessary.
- ^ Shaw, Marianne; Koutris, Paraschos; Howe, Bill; Suciu, Dan (2012). "Optimizing Large-Scale Semi-Naïve Datalog Evaluation in Hadoop". In Barceló, Pablo; Pichler, Reinhard (eds.). Datalog in Academia and Industry. Lecture Notes in Computer Science. Vol. 7494. Berlin, Heidelberg: Springer. pp. 165–176. doi:10.1007/978-3-642-32925-8_17. ISBN 978-3-642-32925-8.
- ^ Shkapsky, Alexander; Yang, Mohan; Interlandi, Matteo; Chiu, Hsuan; Condie, Tyson; Zaniolo, Carlo (2016-06-14). "Big Data Analytics with Datalog Queries on Spark". Proceedings of the 2016 International Conference on Management of Data. SIGMOD '16. Vol. 2016. New York, NY, USA: Association for Computing Machinery. pp. 1135–1149. doi:10.1145/2882903.2915229. ISBN 978-1-4503-3531-7. PMC 5470845. PMID 28626296.
- ^ Balbin, I.; Port, G. S.; Ramamohanarao, K.; Meenakshi, K. (1991-10-01). "Efficient bottom-up computation of queries on stratified databases". The Journal of Logic Programming. 11 (3): 295–344. doi:10.1016/0743-1066(91)90030-S. ISSN 0743-1066.
- ^ Ullman, J. D. (1989-03-29). "Bottom-up beats top-down for datalog". Proceedings of the eighth ACM SIGACT-SIGMOD-SIGART symposium on Principles of database systems - PODS '89. New York, NY, USA: Association for Computing Machinery. pp. 140–149. doi:10.1145/73721.73736. ISBN 978-0-89791-308-9. S2CID 13269547.
- ^ Dantsin, Evgeny; Eiter, Thomas; Gottlob, Georg; Voronkov, Andrei (2001-09-01). "Complexity and expressive power of logic programming". ACM Computing Surveys. 33 (3): 374–425. doi:10.1145/502807.502810. ISSN 0360-0300.
- ^ Bembenek, Aaron; Greenberg, Michael; Chong, Stephen (2023-01-11). "From SMT to ASP: Solver-Based Approaches to Solving Datalog Synthesis-as-Rule-Selection Problems". Proceedings of the ACM on Programming Languages. 7 (POPL): 7:185–7:217. doi:10.1145/3571200. S2CID 253525805.
- ^ Zaniolo, Carlo; Yang, Mohan; Das, Ariyam; Shkapsky, Alexander; Condie, Tyson; Interlandi, Matteo (September 2017). "Fixpoint semantics and optimization of recursive Datalog programs with aggregates*". Theory and Practice of Logic Programming. 17 (5–6): 1048–1065. arXiv:1707.05681. doi:10.1017/S1471068417000436. ISSN 1471-0684. S2CID 6272867.
- ^ "Chapter 7. Rules - LogicBlox 3.10 Reference Manual". developer.logicblox.com. Retrieved 2023-03-04.
- ^ "6.4. Negation - LogicBlox 3.10 Reference Manual". developer.logicblox.com. Retrieved 2023-03-04. "Additionally, negation is only allowed when the platform can determine a way to stratify all rules and constraints that use negation."
- ^ Michael Lam; Dr. Sin Min Lee. "Datalog". Course CS 157A. SAN JOSÉ STATE UNIVERSITY, department of Computer Science. Archived from the original on 2017-03-25.
- ^ Kolaitis, Phokion G.; Vardi, Moshe Y. (1990-04-02). "On the expressive power of datalog: Tools and a case study". Proceedings of the ninth ACM SIGACT-SIGMOD-SIGART symposium on Principles of database systems. ACM. pp. 61–71. doi:10.1145/298514.298542. ISBN 978-0-89791-352-2.
{{cite book}}
:|journal=
ignored (help) - ^ Hillebrand, Gerd G; Kanellakis, Paris C; Mairson, Harry G; Vardi, Moshe Y (1995-11-01). "Undecidable boundedness problems for datalog programs". The Journal of Logic Programming. 25 (2): 163–190. doi:10.1016/0743-1066(95)00051-K. ISSN 0743-1066.
- ^ Saenz-Perez (2011), "DES: A Deductive Database System", Electronic Notes in Theoretical Computer Science, 271, ES: 63–78, doi:10.1016/j.entcs.2011.02.011.
- ^ Differential Dataflow, July 2022
- ^ Kenny, Kevin B (12–14 November 2014). Binary decision diagrams, relational algebra, and Datalog: deductive reasoning for Tcl (PDF). Twenty-first Annual Tcl/Tk Conference. Portland, Oregon. Retrieved 29 December 2015.
- ^ The XSB System, Version 3.7.x, Volume 1: Programmer's Manual (PDF).
- ^ FoundationDB Datalog Tutorial, archived from the original on 2013-08-09.
- ^ "Leapsight". Archived from the original on 2018-11-11.
- ^ Semmle QL, 18 September 2019.
- ^ "SecPAL". Microsoft Research. Archived from the original on 2007-02-23.
- ^ Lifschitz, Vladimir. "Foundations of logic programming." Principles of knowledge representation 3 (1996): 69-127. "The expressive possibilities of [Datalog] are much too limited for meaningful applications to knowledge representation."
- ^ Huang, Green, and Loo, "Datalog and Emerging applications", SIGMOD 2011 (PDF), UC Davis
{{citation}}
: CS1 maint: multiple names: authors list (link). - ^ Mei, Hongyuan; Qin, Guanghui; Xu, Minjie; Eisner, Jason (2020). "Neural Datalog Through Time: Informed Temporal Modeling via Logical Specification". Proceedings of ICML 2020. arXiv:2006.16723.
- ^ Chin, Brian; Dincklage, Daniel von; Ercegovac, Vuk; Hawkins, Peter; Miller, Mark S.; Och, Franz; Olston, Christopher; Pereira, Fernando (2015). Ball, Thomas; Bodik, Rastislav; Krishnamurthi, Shriram; Lerner, Benjamin S.; Morrisett, Greg (eds.). Yedalog: Exploring Knowledge at Scale. 1st Summit on Advances in Programming Languages (SNAPL 2015). Leibniz International Proceedings in Informatics (LIPIcs). Vol. 32. Dagstuhl, Germany: Schloss Dagstuhl–Leibniz-Zentrum fuer Informatik. pp. 63–78. doi:10.4230/LIPIcs.SNAPL.2015.63. ISBN 978-3-939897-80-4.
- ^ Whaley, John; Avots, Dzintars; Carbin, Michael; Lam, Monica S. (2005). "Using Datalog with Binary Decision Diagrams for Program Analysis". In Yi, Kwangkeun (ed.). Programming Languages and Systems. Lecture Notes in Computer Science. Vol. 3780. Berlin, Heidelberg: Springer. pp. 97–118. doi:10.1007/11575467_8. ISBN 978-3-540-32247-4. S2CID 5223577.
- ^ Scholz, Bernhard; Jordan, Herbert; Subotić, Pavle; Westmann, Till (2016-03-17). "On fast large-scale program analysis in Datalog". Proceedings of the 25th International Conference on Compiler Construction. CC 2016. New York, NY, USA: Association for Computing Machinery. pp. 196–206. doi:10.1145/2892208.2892226. ISBN 978-1-4503-4241-4. S2CID 7531543.
- ^ Antoniadis, Tony; Triantafyllou, Konstantinos; Smaragdakis, Yannis (2017-06-18). "Porting doop to Soufflé". Proceedings of the 6th ACM SIGPLAN International Workshop on State of the Art in Program Analysis. SOAP 2017. New York, NY, USA: Association for Computing Machinery. pp. 25–30. doi:10.1145/3088515.3088522. ISBN 978-1-4503-5072-3. S2CID 3074689.
- ^ Bembenek, Aaron; Greenberg, Michael; Chong, Stephen (2020-11-13). "Formulog: Datalog for SMT-based static analysis". Proceedings of the ACM on Programming Languages. 4 (OOPSLA): 141:1–141:31. doi:10.1145/3428209. S2CID 226961727.
- ^ Madsen, Magnus; Yee, Ming-Ho; Lhoták, Ondřej (2016-06-02). "From Datalog to flix: a declarative language for fixed points on lattices". ACM SIGPLAN Notices. 51 (6): 194–208. doi:10.1145/2980983.2908096. ISSN 0362-1340.
- ^ Gryz; Guo; Liu; Zuzarte (2004). "Query sampling in DB2 Universal Database" (PDF). Proceedings of the 2004 ACM SIGMOD international conference on Management of data - SIGMOD '04. p. 839. doi:10.1145/1007568.1007664. ISBN 978-1581138597. S2CID 7775190.
- ^ Gallaire, Hervé; Minker, John 'Jack', eds. (1978), "Logic and Data Bases, Symposium on Logic and Data Bases, Centre d'études et de recherches de Toulouse, 1977", Advances in Data Base Theory, New York: Plenum Press, ISBN 978-0-306-40060-5.
- ^ Abiteboul, Serge; Hull, Richard; Vianu, Victor (1995), Foundations of databases, Addison-Wesley, p. 305, ISBN 9780201537710.
References
[edit]- Ceri, S.; Gottlob, G.; Tanca, L. (March 1989). "What you always wanted to know about Datalog (and never dared to ask)" (PDF). IEEE Transactions on Knowledge and Data Engineering. 1 (1): 146–166. CiteSeerX 10.1.1.210.1118. doi:10.1109/69.43410. ISSN 1041-4347.
- Abiteboul, S. (1995). Foundations of databases. Richard Hull, Victor Vianu. Reading, Mass.: Addison-Wesley. ISBN 0-201-53771-0. OCLC 30546436.