SlideShare une entreprise Scribd logo
1  sur  85
Télécharger pour lire hors ligne
Gremlin’s Graph Traversal Machinery
Dr. Marko A. Rodriguez
Director of Engineering at DataStax, Inc.
Project Management Committee, Apache TinkerPop
http://tinkerpop.apache.org
f : X ! X
The function f is a process that maps a structure of type X to a structure of type X.
f(x1) = x2
The function f maps the object x1 (from the set of X) to the object x2 (from the set of X).
x1 2 X x2 2 X
f(x)
A step is a function.
f(x)
Assume that this step rotates an X by 90°.
90°
90°
The algorithm of the step is a “black box.”
90°
A traverser wraps a value of type V.
class Traverser<V> {
V value;
}
class Traverser<V> {
V value;
}
90°
The step maps an integer traverser to an integer traverser.
class Traverser<V> {
V value;
}
class Traverser<V> {
V value;
}
Traverser<Integer> Traverser<Integer>
90°
A traverser of with a rotation of 0° becomes a traverser with a rotation of 90°.
Traverser(0) Traverser(90)
class Traverser<V> {
V value;
}
class Traverser<V> {
V value;
}
90°
Both the input and output traversers are of type Traverser<Integer>.
90°
T[N] ! T[N]
2 T[N]
2 T[N]
A stream of input traversers…
90°
…yields a stream of output traversers.
90°
A traverser can have a bulk which denotes how many V values it represents.
90°
class Traverser<V> {
V value;
long bulk;
}
class Traverser<V> {
V value;
long bulk;
}
4
4
Bulking groups identical traversers to reduce the number of evaluations of a step.
90°
class Traverser<V> {
V value;
long bulk;
}
class Traverser<V> {
V value;
long bulk;
}
A variegated stream of input traversers yields a variegated stream of output traversers.
90°
1
2
1 1
1
2
Bulking can reduce the size of the stream.
90°
class Traverser<V> {
V value;
long bulk;
}
class Traverser<V> {
V value;
long bulk;
}
If the order of the stream does not matter…
90°
…then reordering can increase the likelihood of bulking.
90°
1
21
total bulk = 4
total count = 4
total bulk = 4
total count = 3
90°
180°
270°
360°
A traversal is a list of one or more steps.
90° 90° 90°
90°
f : X ! Y
Different functions can yield different mappings between different domains and ranges.
h : Y ! Z
The output of f can be the input to h because the range of f is the domain of h (i.e. Y).
Y y = f(x)
Z z = h(y)
y = f(x)
z = h(y)
y = f(x)
z = h(y)
f(x) = y
h(y) = z
f(x) = y
h(y) = z
f(x) = yh(y) = z
f(x) h = z
f h = zx
f h = zx · ·
x · f · h = z
h(f(x)) = z
readable
unreadable
≣
z = x · f · h
z = x.f().h().next()
z = x · f · h
stream/iterator/traversalhead/start
90° 225°
315°
Different types of steps exist and their various compositions yield query expressivity.
90° 225°
315°
Steps process traverser streams/flows and their composition is a traversal/iterator.
= . (). ().next()90° 225°
repeat( ).times(2)
180°
Anonymous traversals can serve as step arguments.
90°
traversal with a single step
90°
repeat( ).times(2)
180°
Some functions serve as step-modulators instead of steps.
90°
…groupCount().by(out().count())
…select(“a”,”b”).by(“name”)
…addE(“knows”).from(“a”).to(“b”)
…order().by(“age”,decr)
repeat( ).times(2)
≣
90° 90°
180°
During optimization, traversal strategies may rewrite a traversal to a more efficient,
semantically equivalent form.
90°
RepeatUnrollStrategy
interface TraversalStrategy {
void apply(Traversal traversal);
Set<TraversalStrategy> applyPrior();
Set<TraversalStrategy> applyPost();
}
repeat( ).until(0°)90°
Continuously process a traverser until some condition is met.
repeat( ).until(0°)
4 loops
2 loops
1 loop
90° 180° 360°
90°do while(x != )
repeat().until() provides do/while-semantics.
90°
≣
until(0°).repeat( )
0 loops
2 loops
1 loop
90° 180° 0°
90°dowhile(x != )
90°
≣
until().repeat() provides while/do-semantics.
until(0°).repeat( )
3
Even if the traversers in the input stream can not be bulked, the output traversers may be able to be.
90°
filter(x)map(x) sideEffect(x)flatMap(x)
one-to-one one-to-many one-to-(one-or-none) one-to-same
m
filter(x)map(x) sideEffect(x)flatMap(x)
one-to-one one-to-many one-to-(one-or-none) one-to-same
out(“knows”)
has(“name”,”gremlin”)
groupCount(“m”)
where(“a”,eq(“b”))
select(“a”,”b”)
path()
mean()
sum()
count()
groupCount()
many-to-one(reducers)
order()
values(“age”)
values(“name”)
and(x,y)
or(x,y)
coin(0.5)
sample(10)
simplePath()
dedup()
store(“m”)
tree(“m”)
subgraph(“m”)
in(“created”)
group(“m”)
m
label()
id()
* A collection of examples. Not the full step library.
match(x,y,z)
properties()
outE(“knows”)
V()
values(“age”)
filter(x)map(x) sideEffect(x)flatMap(x)
one-to-one one-to-many one-to-(one-or-none) one-to-same
out(“knows”)
has(“name”,”gremlin”)
path()
groupCount()
simplePath()
m
label()
outE(“knows”)
group(“m”)
V()
T[V [ E] ! T[N+
]
values(“age”)
filter(x)map(x) sideEffect(x)flatMap(x)
one-to-one one-to-many one-to-(one-or-none) one-to-same
out(“knows”)
has(“name”,”gremlin”)
path()
groupCount()
simplePath()
m
label()
outE(“knows”)
T[?] ! T[path]
T[V [ E] ! T[string]
T[?] ! T[?]
T[V [ E] ! ; [ T[V [ E]
T[?] ! ; [ T[?]
T[V ] ! T[V ]⇤
T[V ] ! T[E]⇤
group(“m”)
V()T[?] ! T[map[?, N+
]]
T[G] ! T[V ]⇤
T[V [ E] ! T[N+
]
values(“age”)
out(“knows”)
has(“name”,”gremlin”)
groupCount()
T[V [ E] ! ; [ T[V [ E]
T[V ] ! T[V ]⇤
V()T[?] ! T[map[?, N+
]]
T[G] ! T[V ]⇤
g.V().has(“name”,”gremlin”).
out(“knows”).values(“age”).
groupCount()
T[V [ E] ! T[N+
]values(“age”)
out(“knows”)
has(“name”,”gremlin”)
groupCount()
T[V ] ! T[V ]⇤
V()
T[?] ! T[map[?, N+
]]
T[G] ! T[V ]⇤
g.V().has(“name”,”gremlin”).
out(“knows”).values(“age”).
groupCount()
Steps can be composed if their respective domains and ranges match.
T[V [ E] ! ; [ T[V [ E]
values(“age”)
out(“knows”)
has(“name”,”gremlin”)
groupCount()
T[V ] ! T[V ]⇤
V() T[G] ! T[V ]⇤
g.V().has(“name”,”gremlin”).
out(“knows”).values(“age”).
groupCount()
T[V ] ! ; [ T[V ]
T[V ] ! T[N+
]
T[N+
] ! T[map[N+
, N+
]]
g.V().has(“name”,”gremlin”).
out(“knows”).values(“age”).
groupCount()
What is the distribution of ages of the people that Gremlin knows?
g.V().has(“name”,”gremlin”).
out(“knows”).values(“age”).
groupCount()
one graph to many vertices
(flatMap)
…
g.V().has(“name”,”gremlin”).
out(“knows”).values(“age”).
groupCount()
one graph to many vertices
(flatMap)
one vertex
to that vertex or no vertex
(filter)
?
…
g.V().has(“name”,”gremlin”).
out(“knows”).values(“age”).
groupCount()
one graph to many vertices
(flatMap)
one vertex
to that vertex or no vertex
(filter)
one vertex
to many friend vertices
(flatMap)
?
…
name=gremlin
g.V().has(“name”,”gremlin”).
out(“knows”).values(“age”).
groupCount()
one graph to many vertices
(flatMap)
one vertex
to that vertex or no vertex
(filter)
one vertex
to many friend vertices
(flatMap)
one vertex to
one age value
(map)
?
…
37
name=gremlin
g.V().has(“name”,”gremlin”).
out(“knows”).values(“age”).
groupCount()
one graph to many vertices
(flatMap)
one vertex
to that vertex or no vertex
(filter)
one vertex
to many friend vertices
(flatMap)
one vertex to
one age value
(map)
many age values
to an age distribution
(map — reducer)
?
…
37 [37:2, 41:1,
24:1, 35:4]37
37
24
35
35
35
35 41
name=gremlin
The Gremlin Traversal Language
The Gremlin Traversal Machine
a b c
a b c
Traversal creation via
step composition
Step parameterization via
traversal and constant nesting
a().b().c()
a(b().c()).d(x)d(x)
function
com
position
function
nesting
fluent m
ethods
m
ethod
argum
ents
Any language that supports function composition and function nesting can host Gremlin.
Gremlin Traversal Language
class Traverser<V> {
V value;
long bulk;
}
class Step<S,E> {
Traverser<E> processNextStart();
}
f(x)
class Traversal<S,E> implements Iterator<E> {
E next();
Traverser<E> nextTraverser();
}
The fundamental constructs of Gremlin’s machinery.
Gremlin Traversal Machine
interface TraversalStrategy {
void apply(Traversal traversal);
Set<TraversalStrategy> applyPrior();
Set<TraversalStrategy> applyPost();
}
a db c
a de
≣
1
Bytecode
Gremlin-Java
g.V(1).
repeat(out(“knows”)).times(2).
groupCount().by(“age”)
[[V, 1]
[repeat, [[out, knows]]]
[times, 2]
[groupCount]
[by, age]]
Traversal GraphStep GroupCountStep
RepeatStep
VertexStep
GraphStep GroupCountStepVertexStep VertexStep
Traversal
Strategies
GraphStep GroupCountStepVertexStep VertexStep
translates
compiles
optimizes
executes
[29:2, 30:1,
31:1, 35:10]
1
Bytecode
Gremlin-Python
g.V(1).
repeat(out(‘knows’)).times(2).
groupCount().by(‘age’)
[[V, 1]
[repeat, [[out, knows]]]
[times, 2]
[groupCount]
[by, age]]
Traversal GraphStep GroupCountStep
RepeatStep
VertexStep
GraphStep GroupCountStepVertexStep VertexStep
Traversal
Strategies
GraphStep GroupCountStepVertexStep VertexStep
translates
compiles
optimizes
executes
[29:2, 30:1,
31:1, 35:10]
1
Bytecode
Gremlin-Python
g.V(1).
repeat(out(‘knows’)).times(2).
groupCount().by(‘age’)
[[V, 1]
[repeat, [[out, knows]]]
[times, 2]
[groupCount]
[by, age]]
Traversal GraphStep GroupCountStep
RepeatStep
VertexStep
GraphStep GroupCountStepVertexStep VertexStep
Traversal
Strategies
GraphStep GroupCountStepVertexStep VertexStep
translates
compiles
optimizes
executes
[29:2, 30:1,
31:1, 35:10]
Gremlin language variant
Language agnostic bytecode
Execution engine assembly
Execution engine optimization
Execution engine evaluation
LanguageMachine
LanguageMachine
Gremlin-Python
Gremlin-Groovy
Gremlin-Java
Gremlin-JavaScriptGremlin-Ruby
Gremlin-Scala
Gremlin-Clojure
Bytecode
Java-based Implementation
?
?-based Implementation
?
?
Python 2.7.2 (default, Oct 11 2012, 20:14:37)
[GCC 4.2.1 Compatible Apple Clang 4.0 (tags/Apple/clang-418.0.60)] on darwin
Type "help", "copyright", "credits" or "license" for more information.
>>> from gremlin_python.structure.graph import Graph
>>> from gremlin_python.driver.driver_remote_connection import DriverRemoteConnection
Gremlin-Python
CPython
Python 2.7.2 (default, Oct 11 2012, 20:14:37)
[GCC 4.2.1 Compatible Apple Clang 4.0 (tags/Apple/clang-418.0.60)] on darwin
Type "help", "copyright", "credits" or "license" for more information.
>>> from gremlin_python.structure.graph import Graph
>>> from gremlin_python.driver.driver_remote_connection import DriverRemoteConnection
>>> graph = Graph()
>>> g = graph.traversal().withRemote(DriverRemoteConnection('ws://localhost:8182','g'))
Gremlin-Python
DriverRemoteConnection
CPython
Python 2.7.2 (default, Oct 11 2012, 20:14:37)
[GCC 4.2.1 Compatible Apple Clang 4.0 (tags/Apple/clang-418.0.60)] on darwin
Type "help", "copyright", "credits" or "license" for more information.
>>> from gremlin_python.structure.graph import Graph
>>> from gremlin_python.driver.driver_remote_connection import DriverRemoteConnection
>>> graph = Graph()
>>> g = graph.traversal().withRemote(DriverRemoteConnection('ws://localhost:8182','g'))
# nested traversal with Python slicing and attribute interception extensions
>>> g.V().hasLabel("person").repeat(both()).times(2).name[0:2].toList()
[u'marko', u'marko']
Gremlin-Python
Bytecode
DriverRemoteConnection
Gremlin Traversal Machine
CPython JVM
Python 2.7.2 (default, Oct 11 2012, 20:14:37)
[GCC 4.2.1 Compatible Apple Clang 4.0 (tags/Apple/clang-418.0.60)] on darwin
Type "help", "copyright", "credits" or "license" for more information.
>>> from gremlin_python.structure.graph import Graph
>>> from gremlin_python.driver.driver_remote_connection import DriverRemoteConnection
>>> graph = Graph()
>>> g = graph.traversal().withRemote(DriverRemoteConnection('ws://localhost:8182','g'))
# nested traversal with Python slicing and attribute interception extensions
>>> g.V().hasLabel("person").repeat(both()).times(2).name[0:2].toList()
[u'marko', u'marko']
# a complex, nested multi-line traversal
>>> g.V().match( 
... as_(“a”).out("created").as_(“b”), 
... as_(“b”).in_(“created").as_(“c”), 
... as_(“a”).out("knows").as_(“c”)). 
... select("c"). 
... union(in_(“knows"),out("created")). 
... name.toList()
[u'ripple', u'marko', u'lop']
>>>
Gremlin-Python
Bytecode
DriverRemoteConnection
Gremlin Traversal Machine
CPython JVM
Cypher
Bytecode
Distinct query languages (not only Gremlin language variants) can generate bytecode for
evaluation by any OLTP/OLAP TinkerPop-enabled graph system.
Gremlin Traversal Machine
SELECT DISTINCT ?c
WHERE {
?a v:label "person" .
?a e:created ?b .
?b v:name ?c .
?a v:age ?d .
FILTER (?d > 30)
}
[
[V],
[match,
[[as, a], [hasLabel, person]],
[[as, a], [out, created], [as, b]],
[[as, a], [has, age, gt(30)]]],
[select, b],
[by, name],
[dedup]
]
Bytecode
Graph
Database
OLTP
Graph
Processor
OLAP
Bytecode
Bytecode
Bytecode
TinkerGraph
DSE Graph
Titan
Neo4j
OrientDB
IBM Graph
…
TinkerComputer
Spark
Giraph
Hadoop
Fulgora
…
Gremlin Traversal Machine
Traversal
Traversal
Traversal
Gremlin traversals can be executed against OLTP graph databases and OLAP graph processors.
That means that if, e.g., SPARQL compiles to bytecode, it can execute both OLTP and OLAP.
Graph
Database
OLTP
Graph
Processor
OLAP
Gremlin Traversal Machine
Traversal
Traversal
Traversal
TraversalStrategies TraversalStrategies
optimizes
Graph system providers (OLTP/OLAP) typically have custom strategies registered
with the Gremlin traversal machine that take advantage of unique, provider-specific features.
Most OLTP graph systems have a traversal strategy that combines
[V,has*]-sequences into a single global index-based flatMap-step.
g.V().has(“name”,”gremlin”).
out(“knows”).values(“age”).
groupCount()
one graph to many vertices using index lookup
(flatMap)
GraphStepStrategy
one graph to many vertices
(flatMap)
one vertex to that vertex or no vertex
(filter)
?
…
compiles
optimizes
name=gremlin
DataStax 
Enterprise Graph
Most OLAP graph systems have a traversal strategy that bypasses Traversal semantics
and implements reducers using the native API of the system.
g.V().count()
one graph to long
(map — reducer)
rdd.count() 12,146,934
compiles
one graph to many vertices
(flatMap)
many vertices to long
(map — reducer)
… 12,146,934
optimizes
SparkInterceptorStrategy
…
Physical Machine
DataProgram Traversal
Heap/DiskMemory Memory
Memory/Graph System
Physical Machine
Java
Virtual Machine
bytecode
steps
DataProgram
Memory/DiskMemory
Physical Machine
instructions
Java
Virtual Machine
Gremlin
Traversal Machine
From the physical computing machine to the Gremlin traversal machine.
Stakeholders
Language Providers
Gremlin Language Variant
Distinct Query Language
Application Developers Graph System Providers
OLAP Provider
OLTP Provider
Stakeholders
Application Developers
One query language for
all OLTP/OLAP systems.
GremlinG = (V, E)
Real-time and analytic queries are represented in Gremlin.
Graph
Database
OLTP
Graph
Processor
OLAP
Stakeholders
Application Developers
One query language for
all OLTP/OLAP systems.
No vendor lock-in.
Apache TinkerPop as the JDBC for graphs.
DataStax 
Enterprise Graph
Stakeholders
Application Developers
One query language for
all OLTP/OLAP systems.
No vendor lock-in.
Gremlin is embedded in
the developer’s language.
Iterator<String> result =
g.V().hasLabel(“person”).
order().by(“age”).
limit(10).values(“name”)
vs.
ResultSet result = statement.executeQuery(
“SELECT name FROM People n” +
“ ORDER BY age n” +
“ LIMIT 10”)
Grem
lin-Java
SQL
in
Java
No “fat strings.” The developer writes their graph database/processor
queries in their native programming language.
Stakeholders
Language Providers
Gremlin Language Variant
Distinct Query Language
Easy to generate bytecode.
GraphTraversal.getMethods()
.findAll { GraphTraversal.class == it.returnType }
.collect { it.name }
.unique()
.each {
pythonClass.append(
""" def ${it}(self, *args):
self.bytecode.add_step(“${it}”, *args)
return self
“””)}
Gremlin-Python’s source code is
programmatically generated using Java reflection.
Stakeholders
Language Providers
Gremlin Language Variant
Distinct Query Language
Easy to generate bytecode.
Bytecode executes against
TinkerPop-enabled systems.
Language providers write a translator for the Gremlin traversal machine,
not a particular graph database/processor.
DataStax 
Enterprise Graph
Graph
Database
OLTP
Graph
Processor
OLAP
Stakeholders
Language Providers
Gremlin Language Variant
Distinct Query Language
Easy to generate bytecode.
Bytecode executes against
TinkerPop-enabled systems.
Provider can focus on design,
not evaluation.
Gremlin Traversal Machine
The language designer does not have to concern themselves with
OLTP or OLAP execution. They simply generate bytecode and the
Gremlin traversal machine handles the rest.
Easy to implement core
interfaces.
Graph System Providers
Stakeholders
OLAP Provider
OLTP Provider
Vertex
Edge
Graph
Transaction
TraversalStrategy
Property
key=value
?
? ?
Provider supports all
provided languages.
Easy to implement core
interfaces.
Graph System Providers
Stakeholders
OLAP Provider
OLTP Provider
The provider automatically supports all query languages
that have compilers that generate Gremlin bytecode.
OLTP providers can leverage
existing OLAP systems.
Provider supports all
provided languages.
Easy to implement core
interfaces.
Graph System Providers
Stakeholders
OLAP Provider
OLTP Provider
DSE Graph leverages SparkGraphComputer for OLAP processing.
DataStax 
Enterprise Graph
Stakeholders
Language Providers
Gremlin Language Variant
Distinct Query Language
Application Developers Graph System Providers
OLAP Provider
OLTP Provider
One query language for
all OLTP/OLAP systems.
No vendor lock-in.
Gremlin is embedded in
the developer’s language.
Easy to generate bytecode.
Bytecode executes against
TinkerPop-enabled systems.
Provider can focus on design,
not evaluation.
Easy to implement core
interfaces.
Provider supports all
provided languages.
OLTP providers can leverage
existing OLAP systems.
Thank you.
http://tinkerpop.apache.org
http://www.datastax.com/products/datastax-enterprise-graph

Contenu connexe

Tendances

Neptune, the Graph Database | AWS Floor28
Neptune, the Graph Database | AWS Floor28Neptune, the Graph Database | AWS Floor28
Neptune, the Graph Database | AWS Floor28Amazon Web Services
 
Introduction to Apache Flink
Introduction to Apache FlinkIntroduction to Apache Flink
Introduction to Apache Flinkmxmxm
 
Deep Dive on Amazon Neptune - AWS Online Tech Talks
Deep Dive on Amazon Neptune - AWS Online Tech TalksDeep Dive on Amazon Neptune - AWS Online Tech Talks
Deep Dive on Amazon Neptune - AWS Online Tech TalksAmazon Web Services
 
Graphs in datastructures
Graphs in datastructuresGraphs in datastructures
Graphs in datastructuresLikhithaGunturi
 
GraphFrames: Graph Queries In Spark SQL
GraphFrames: Graph Queries In Spark SQLGraphFrames: Graph Queries In Spark SQL
GraphFrames: Graph Queries In Spark SQLSpark Summit
 
An overview of Neo4j Internals
An overview of Neo4j InternalsAn overview of Neo4j Internals
An overview of Neo4j InternalsTobias Lindaaker
 
Batch and Stream Graph Processing with Apache Flink
Batch and Stream Graph Processing with Apache FlinkBatch and Stream Graph Processing with Apache Flink
Batch and Stream Graph Processing with Apache FlinkVasia Kalavri
 
Data Structure and Algorithms Heaps and Trees
Data Structure and Algorithms Heaps and TreesData Structure and Algorithms Heaps and Trees
Data Structure and Algorithms Heaps and TreesManishPrajapati78
 
Everyday I'm Shuffling - Tips for Writing Better Spark Programs, Strata San J...
Everyday I'm Shuffling - Tips for Writing Better Spark Programs, Strata San J...Everyday I'm Shuffling - Tips for Writing Better Spark Programs, Strata San J...
Everyday I'm Shuffling - Tips for Writing Better Spark Programs, Strata San J...Databricks
 
Data structures & algorithms lecture 3
Data structures & algorithms lecture 3Data structures & algorithms lecture 3
Data structures & algorithms lecture 3Poojith Chowdhary
 
Sequence and Traverse - Part 2
Sequence and Traverse - Part 2Sequence and Traverse - Part 2
Sequence and Traverse - Part 2Philip Schwarz
 
Graphql presentation
Graphql presentationGraphql presentation
Graphql presentationVibhor Grover
 
Dom(document object model)
Dom(document object model)Dom(document object model)
Dom(document object model)Partnered Health
 
Spark and S3 with Ryan Blue
Spark and S3 with Ryan BlueSpark and S3 with Ryan Blue
Spark and S3 with Ryan BlueDatabricks
 
Olap Functions Suport in Informix
Olap Functions Suport in InformixOlap Functions Suport in Informix
Olap Functions Suport in InformixBingjie Miao
 

Tendances (20)

Neptune, the Graph Database | AWS Floor28
Neptune, the Graph Database | AWS Floor28Neptune, the Graph Database | AWS Floor28
Neptune, the Graph Database | AWS Floor28
 
Introduction to Apache Flink
Introduction to Apache FlinkIntroduction to Apache Flink
Introduction to Apache Flink
 
Deep Dive on Amazon Neptune - AWS Online Tech Talks
Deep Dive on Amazon Neptune - AWS Online Tech TalksDeep Dive on Amazon Neptune - AWS Online Tech Talks
Deep Dive on Amazon Neptune - AWS Online Tech Talks
 
Graphs in datastructures
Graphs in datastructuresGraphs in datastructures
Graphs in datastructures
 
GraphFrames: Graph Queries In Spark SQL
GraphFrames: Graph Queries In Spark SQLGraphFrames: Graph Queries In Spark SQL
GraphFrames: Graph Queries In Spark SQL
 
An overview of Neo4j Internals
An overview of Neo4j InternalsAn overview of Neo4j Internals
An overview of Neo4j Internals
 
Pregel and giraph
Pregel and giraphPregel and giraph
Pregel and giraph
 
Batch and Stream Graph Processing with Apache Flink
Batch and Stream Graph Processing with Apache FlinkBatch and Stream Graph Processing with Apache Flink
Batch and Stream Graph Processing with Apache Flink
 
Data Structure and Algorithms Heaps and Trees
Data Structure and Algorithms Heaps and TreesData Structure and Algorithms Heaps and Trees
Data Structure and Algorithms Heaps and Trees
 
Everyday I'm Shuffling - Tips for Writing Better Spark Programs, Strata San J...
Everyday I'm Shuffling - Tips for Writing Better Spark Programs, Strata San J...Everyday I'm Shuffling - Tips for Writing Better Spark Programs, Strata San J...
Everyday I'm Shuffling - Tips for Writing Better Spark Programs, Strata San J...
 
Data structures & algorithms lecture 3
Data structures & algorithms lecture 3Data structures & algorithms lecture 3
Data structures & algorithms lecture 3
 
Sequence and Traverse - Part 2
Sequence and Traverse - Part 2Sequence and Traverse - Part 2
Sequence and Traverse - Part 2
 
Graphql presentation
Graphql presentationGraphql presentation
Graphql presentation
 
Dom(document object model)
Dom(document object model)Dom(document object model)
Dom(document object model)
 
Arrays in java
Arrays in javaArrays in java
Arrays in java
 
Spark and S3 with Ryan Blue
Spark and S3 with Ryan BlueSpark and S3 with Ryan Blue
Spark and S3 with Ryan Blue
 
Olap Functions Suport in Informix
Olap Functions Suport in InformixOlap Functions Suport in Informix
Olap Functions Suport in Informix
 
07 java collection
07 java collection07 java collection
07 java collection
 
jQuery for beginners
jQuery for beginnersjQuery for beginners
jQuery for beginners
 
Css position
Css positionCss position
Css position
 

Similaire à Gremlin's Graph Traversal Machinery

CS 354 Graphics Math
CS 354 Graphics MathCS 354 Graphics Math
CS 354 Graphics MathMark Kilgard
 
Rate of change and tangent lines
Rate of change and tangent linesRate of change and tangent lines
Rate of change and tangent linesMrs. Ibtsam Youssef
 
Differentiation full detail presentation
Differentiation full detail presentationDifferentiation full detail presentation
Differentiation full detail presentationxavev33334
 
Computer Graphics in Java and Scala - Part 1b
Computer Graphics in Java and Scala - Part 1bComputer Graphics in Java and Scala - Part 1b
Computer Graphics in Java and Scala - Part 1bPhilip Schwarz
 
Advanced Functions Unit 1
Advanced Functions Unit 1Advanced Functions Unit 1
Advanced Functions Unit 1leefong2310
 
ImplementDijkstra’s algorithm using the graph class you implemente.pdf
ImplementDijkstra’s algorithm using the graph class you implemente.pdfImplementDijkstra’s algorithm using the graph class you implemente.pdf
ImplementDijkstra’s algorithm using the graph class you implemente.pdfgopalk44
 
Mikhail Khristophorov "Introduction to Regular Expressions"
Mikhail Khristophorov "Introduction to Regular Expressions"Mikhail Khristophorov "Introduction to Regular Expressions"
Mikhail Khristophorov "Introduction to Regular Expressions"LogeekNightUkraine
 
Lesson 2: A Catalog of Essential Functions (slides)
Lesson 2: A Catalog of Essential Functions (slides)Lesson 2: A Catalog of Essential Functions (slides)
Lesson 2: A Catalog of Essential Functions (slides)Mel Anthony Pepito
 
Lesson 2: A Catalog of Essential Functions (slides)
Lesson 2: A Catalog of Essential Functions (slides)Lesson 2: A Catalog of Essential Functions (slides)
Lesson 2: A Catalog of Essential Functions (slides)Matthew Leingang
 
3.5 Transformation of Functions
3.5 Transformation of Functions3.5 Transformation of Functions
3.5 Transformation of Functionssmiller5
 
Website designing company in delhi ncr
Website designing company in delhi ncrWebsite designing company in delhi ncr
Website designing company in delhi ncrCss Founder
 
Website designing company in delhi ncr
Website designing company in delhi ncrWebsite designing company in delhi ncr
Website designing company in delhi ncrCss Founder
 
Applicationofpartialderivativeswithtwovariables 140225070102-phpapp01 (1)
Applicationofpartialderivativeswithtwovariables 140225070102-phpapp01 (1)Applicationofpartialderivativeswithtwovariables 140225070102-phpapp01 (1)
Applicationofpartialderivativeswithtwovariables 140225070102-phpapp01 (1)shreemadghodasra
 
A walk in graph databases v1.0
A walk in graph databases v1.0A walk in graph databases v1.0
A walk in graph databases v1.0Pierre De Wilde
 
Monadologie
MonadologieMonadologie
Monadologieleague
 
Lesson 5: Functions and surfaces
Lesson 5: Functions and surfacesLesson 5: Functions and surfaces
Lesson 5: Functions and surfacesMatthew Leingang
 

Similaire à Gremlin's Graph Traversal Machinery (20)

ML-CheatSheet (1).pdf
ML-CheatSheet (1).pdfML-CheatSheet (1).pdf
ML-CheatSheet (1).pdf
 
CS 354 Graphics Math
CS 354 Graphics MathCS 354 Graphics Math
CS 354 Graphics Math
 
Data transformation-cheatsheet
Data transformation-cheatsheetData transformation-cheatsheet
Data transformation-cheatsheet
 
Rate of change and tangent lines
Rate of change and tangent linesRate of change and tangent lines
Rate of change and tangent lines
 
Differentiation full detail presentation
Differentiation full detail presentationDifferentiation full detail presentation
Differentiation full detail presentation
 
Computer Graphics in Java and Scala - Part 1b
Computer Graphics in Java and Scala - Part 1bComputer Graphics in Java and Scala - Part 1b
Computer Graphics in Java and Scala - Part 1b
 
Advanced Functions Unit 1
Advanced Functions Unit 1Advanced Functions Unit 1
Advanced Functions Unit 1
 
ImplementDijkstra’s algorithm using the graph class you implemente.pdf
ImplementDijkstra’s algorithm using the graph class you implemente.pdfImplementDijkstra’s algorithm using the graph class you implemente.pdf
ImplementDijkstra’s algorithm using the graph class you implemente.pdf
 
Mikhail Khristophorov "Introduction to Regular Expressions"
Mikhail Khristophorov "Introduction to Regular Expressions"Mikhail Khristophorov "Introduction to Regular Expressions"
Mikhail Khristophorov "Introduction to Regular Expressions"
 
Lesson 2: A Catalog of Essential Functions (slides)
Lesson 2: A Catalog of Essential Functions (slides)Lesson 2: A Catalog of Essential Functions (slides)
Lesson 2: A Catalog of Essential Functions (slides)
 
Lesson 2: A Catalog of Essential Functions (slides)
Lesson 2: A Catalog of Essential Functions (slides)Lesson 2: A Catalog of Essential Functions (slides)
Lesson 2: A Catalog of Essential Functions (slides)
 
3.5 Transformation of Functions
3.5 Transformation of Functions3.5 Transformation of Functions
3.5 Transformation of Functions
 
Abstract machines for great good
Abstract machines for great goodAbstract machines for great good
Abstract machines for great good
 
Mini-curso JavaFX Aula1
Mini-curso JavaFX Aula1Mini-curso JavaFX Aula1
Mini-curso JavaFX Aula1
 
Website designing company in delhi ncr
Website designing company in delhi ncrWebsite designing company in delhi ncr
Website designing company in delhi ncr
 
Website designing company in delhi ncr
Website designing company in delhi ncrWebsite designing company in delhi ncr
Website designing company in delhi ncr
 
Applicationofpartialderivativeswithtwovariables 140225070102-phpapp01 (1)
Applicationofpartialderivativeswithtwovariables 140225070102-phpapp01 (1)Applicationofpartialderivativeswithtwovariables 140225070102-phpapp01 (1)
Applicationofpartialderivativeswithtwovariables 140225070102-phpapp01 (1)
 
A walk in graph databases v1.0
A walk in graph databases v1.0A walk in graph databases v1.0
A walk in graph databases v1.0
 
Monadologie
MonadologieMonadologie
Monadologie
 
Lesson 5: Functions and surfaces
Lesson 5: Functions and surfacesLesson 5: Functions and surfaces
Lesson 5: Functions and surfaces
 

Plus de Marko Rodriguez

mm-ADT: A Virtual Machine/An Economic Machine
mm-ADT: A Virtual Machine/An Economic Machinemm-ADT: A Virtual Machine/An Economic Machine
mm-ADT: A Virtual Machine/An Economic MachineMarko Rodriguez
 
mm-ADT: A Multi-Model Abstract Data Type
mm-ADT: A Multi-Model Abstract Data Typemm-ADT: A Multi-Model Abstract Data Type
mm-ADT: A Multi-Model Abstract Data TypeMarko Rodriguez
 
Open Problems in the Universal Graph Theory
Open Problems in the Universal Graph TheoryOpen Problems in the Universal Graph Theory
Open Problems in the Universal Graph TheoryMarko Rodriguez
 
Gremlin 101.3 On Your FM Dial
Gremlin 101.3 On Your FM DialGremlin 101.3 On Your FM Dial
Gremlin 101.3 On Your FM DialMarko Rodriguez
 
Quantum Processes in Graph Computing
Quantum Processes in Graph ComputingQuantum Processes in Graph Computing
Quantum Processes in Graph ComputingMarko Rodriguez
 
Faunus: Graph Analytics Engine
Faunus: Graph Analytics EngineFaunus: Graph Analytics Engine
Faunus: Graph Analytics EngineMarko Rodriguez
 
Solving Problems with Graphs
Solving Problems with GraphsSolving Problems with Graphs
Solving Problems with GraphsMarko Rodriguez
 
Titan: The Rise of Big Graph Data
Titan: The Rise of Big Graph DataTitan: The Rise of Big Graph Data
Titan: The Rise of Big Graph DataMarko Rodriguez
 
The Pathology of Graph Databases
The Pathology of Graph DatabasesThe Pathology of Graph Databases
The Pathology of Graph DatabasesMarko Rodriguez
 
The Path-o-Logical Gremlin
The Path-o-Logical GremlinThe Path-o-Logical Gremlin
The Path-o-Logical GremlinMarko Rodriguez
 
The Gremlin in the Graph
The Gremlin in the GraphThe Gremlin in the Graph
The Gremlin in the GraphMarko Rodriguez
 
Memoirs of a Graph Addict: Despair to Redemption
Memoirs of a Graph Addict: Despair to RedemptionMemoirs of a Graph Addict: Despair to Redemption
Memoirs of a Graph Addict: Despair to RedemptionMarko Rodriguez
 
Graph Databases: Trends in the Web of Data
Graph Databases: Trends in the Web of DataGraph Databases: Trends in the Web of Data
Graph Databases: Trends in the Web of DataMarko Rodriguez
 
Problem-Solving using Graph Traversals: Searching, Scoring, Ranking, and Reco...
Problem-Solving using Graph Traversals: Searching, Scoring, Ranking, and Reco...Problem-Solving using Graph Traversals: Searching, Scoring, Ranking, and Reco...
Problem-Solving using Graph Traversals: Searching, Scoring, Ranking, and Reco...Marko Rodriguez
 
A Perspective on Graph Theory and Network Science
A Perspective on Graph Theory and Network ScienceA Perspective on Graph Theory and Network Science
A Perspective on Graph Theory and Network ScienceMarko Rodriguez
 
The Graph Traversal Programming Pattern
The Graph Traversal Programming PatternThe Graph Traversal Programming Pattern
The Graph Traversal Programming PatternMarko Rodriguez
 
The Network Data Structure in Computing
The Network Data Structure in ComputingThe Network Data Structure in Computing
The Network Data Structure in ComputingMarko Rodriguez
 
A Model of the Scholarly Community
A Model of the Scholarly CommunityA Model of the Scholarly Community
A Model of the Scholarly CommunityMarko Rodriguez
 
General-Purpose, Internet-Scale Distributed Computing with Linked Process
General-Purpose, Internet-Scale Distributed Computing with Linked ProcessGeneral-Purpose, Internet-Scale Distributed Computing with Linked Process
General-Purpose, Internet-Scale Distributed Computing with Linked ProcessMarko Rodriguez
 

Plus de Marko Rodriguez (20)

mm-ADT: A Virtual Machine/An Economic Machine
mm-ADT: A Virtual Machine/An Economic Machinemm-ADT: A Virtual Machine/An Economic Machine
mm-ADT: A Virtual Machine/An Economic Machine
 
mm-ADT: A Multi-Model Abstract Data Type
mm-ADT: A Multi-Model Abstract Data Typemm-ADT: A Multi-Model Abstract Data Type
mm-ADT: A Multi-Model Abstract Data Type
 
Open Problems in the Universal Graph Theory
Open Problems in the Universal Graph TheoryOpen Problems in the Universal Graph Theory
Open Problems in the Universal Graph Theory
 
Gremlin 101.3 On Your FM Dial
Gremlin 101.3 On Your FM DialGremlin 101.3 On Your FM Dial
Gremlin 101.3 On Your FM Dial
 
Quantum Processes in Graph Computing
Quantum Processes in Graph ComputingQuantum Processes in Graph Computing
Quantum Processes in Graph Computing
 
The Path Forward
The Path ForwardThe Path Forward
The Path Forward
 
Faunus: Graph Analytics Engine
Faunus: Graph Analytics EngineFaunus: Graph Analytics Engine
Faunus: Graph Analytics Engine
 
Solving Problems with Graphs
Solving Problems with GraphsSolving Problems with Graphs
Solving Problems with Graphs
 
Titan: The Rise of Big Graph Data
Titan: The Rise of Big Graph DataTitan: The Rise of Big Graph Data
Titan: The Rise of Big Graph Data
 
The Pathology of Graph Databases
The Pathology of Graph DatabasesThe Pathology of Graph Databases
The Pathology of Graph Databases
 
The Path-o-Logical Gremlin
The Path-o-Logical GremlinThe Path-o-Logical Gremlin
The Path-o-Logical Gremlin
 
The Gremlin in the Graph
The Gremlin in the GraphThe Gremlin in the Graph
The Gremlin in the Graph
 
Memoirs of a Graph Addict: Despair to Redemption
Memoirs of a Graph Addict: Despair to RedemptionMemoirs of a Graph Addict: Despair to Redemption
Memoirs of a Graph Addict: Despair to Redemption
 
Graph Databases: Trends in the Web of Data
Graph Databases: Trends in the Web of DataGraph Databases: Trends in the Web of Data
Graph Databases: Trends in the Web of Data
 
Problem-Solving using Graph Traversals: Searching, Scoring, Ranking, and Reco...
Problem-Solving using Graph Traversals: Searching, Scoring, Ranking, and Reco...Problem-Solving using Graph Traversals: Searching, Scoring, Ranking, and Reco...
Problem-Solving using Graph Traversals: Searching, Scoring, Ranking, and Reco...
 
A Perspective on Graph Theory and Network Science
A Perspective on Graph Theory and Network ScienceA Perspective on Graph Theory and Network Science
A Perspective on Graph Theory and Network Science
 
The Graph Traversal Programming Pattern
The Graph Traversal Programming PatternThe Graph Traversal Programming Pattern
The Graph Traversal Programming Pattern
 
The Network Data Structure in Computing
The Network Data Structure in ComputingThe Network Data Structure in Computing
The Network Data Structure in Computing
 
A Model of the Scholarly Community
A Model of the Scholarly CommunityA Model of the Scholarly Community
A Model of the Scholarly Community
 
General-Purpose, Internet-Scale Distributed Computing with Linked Process
General-Purpose, Internet-Scale Distributed Computing with Linked ProcessGeneral-Purpose, Internet-Scale Distributed Computing with Linked Process
General-Purpose, Internet-Scale Distributed Computing with Linked Process
 

Dernier

DevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenDevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenHervé Boutemy
 
Scanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL CertsScanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL CertsRizwan Syed
 
Generative AI for Technical Writer or Information Developers
Generative AI for Technical Writer or Information DevelopersGenerative AI for Technical Writer or Information Developers
Generative AI for Technical Writer or Information DevelopersRaghuram Pandurangan
 
Dev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebDev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebUiPathCommunity
 
Unleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubUnleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubKalema Edgar
 
The Ultimate Guide to Choosing WordPress Pros and Cons
The Ultimate Guide to Choosing WordPress Pros and ConsThe Ultimate Guide to Choosing WordPress Pros and Cons
The Ultimate Guide to Choosing WordPress Pros and ConsPixlogix Infotech
 
Transcript: New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024Transcript: New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024BookNet Canada
 
Connect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationConnect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationSlibray Presentation
 
How AI, OpenAI, and ChatGPT impact business and software.
How AI, OpenAI, and ChatGPT impact business and software.How AI, OpenAI, and ChatGPT impact business and software.
How AI, OpenAI, and ChatGPT impact business and software.Curtis Poe
 
DSPy a system for AI to Write Prompts and Do Fine Tuning
DSPy a system for AI to Write Prompts and Do Fine TuningDSPy a system for AI to Write Prompts and Do Fine Tuning
DSPy a system for AI to Write Prompts and Do Fine TuningLars Bell
 
What is DBT - The Ultimate Data Build Tool.pdf
What is DBT - The Ultimate Data Build Tool.pdfWhat is DBT - The Ultimate Data Build Tool.pdf
What is DBT - The Ultimate Data Build Tool.pdfMounikaPolabathina
 
Streamlining Python Development: A Guide to a Modern Project Setup
Streamlining Python Development: A Guide to a Modern Project SetupStreamlining Python Development: A Guide to a Modern Project Setup
Streamlining Python Development: A Guide to a Modern Project SetupFlorian Wilhelm
 
Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?Mattias Andersson
 
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdf
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdfHyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdf
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdfPrecisely
 
Commit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easyCommit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easyAlfredo García Lavilla
 
WordPress Websites for Engineers: Elevate Your Brand
WordPress Websites for Engineers: Elevate Your BrandWordPress Websites for Engineers: Elevate Your Brand
WordPress Websites for Engineers: Elevate Your Brandgvaughan
 
Developer Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQLDeveloper Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQLScyllaDB
 
Digital Identity is Under Attack: FIDO Paris Seminar.pptx
Digital Identity is Under Attack: FIDO Paris Seminar.pptxDigital Identity is Under Attack: FIDO Paris Seminar.pptx
Digital Identity is Under Attack: FIDO Paris Seminar.pptxLoriGlavin3
 
DevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsDevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsSergiu Bodiu
 
TeamStation AI System Report LATAM IT Salaries 2024
TeamStation AI System Report LATAM IT Salaries 2024TeamStation AI System Report LATAM IT Salaries 2024
TeamStation AI System Report LATAM IT Salaries 2024Lonnie McRorey
 

Dernier (20)

DevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache MavenDevoxxFR 2024 Reproducible Builds with Apache Maven
DevoxxFR 2024 Reproducible Builds with Apache Maven
 
Scanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL CertsScanning the Internet for External Cloud Exposures via SSL Certs
Scanning the Internet for External Cloud Exposures via SSL Certs
 
Generative AI for Technical Writer or Information Developers
Generative AI for Technical Writer or Information DevelopersGenerative AI for Technical Writer or Information Developers
Generative AI for Technical Writer or Information Developers
 
Dev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio WebDev Dives: Streamline document processing with UiPath Studio Web
Dev Dives: Streamline document processing with UiPath Studio Web
 
Unleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding ClubUnleash Your Potential - Namagunga Girls Coding Club
Unleash Your Potential - Namagunga Girls Coding Club
 
The Ultimate Guide to Choosing WordPress Pros and Cons
The Ultimate Guide to Choosing WordPress Pros and ConsThe Ultimate Guide to Choosing WordPress Pros and Cons
The Ultimate Guide to Choosing WordPress Pros and Cons
 
Transcript: New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024Transcript: New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
Transcript: New from BookNet Canada for 2024: Loan Stars - Tech Forum 2024
 
Connect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck PresentationConnect Wave/ connectwave Pitch Deck Presentation
Connect Wave/ connectwave Pitch Deck Presentation
 
How AI, OpenAI, and ChatGPT impact business and software.
How AI, OpenAI, and ChatGPT impact business and software.How AI, OpenAI, and ChatGPT impact business and software.
How AI, OpenAI, and ChatGPT impact business and software.
 
DSPy a system for AI to Write Prompts and Do Fine Tuning
DSPy a system for AI to Write Prompts and Do Fine TuningDSPy a system for AI to Write Prompts and Do Fine Tuning
DSPy a system for AI to Write Prompts and Do Fine Tuning
 
What is DBT - The Ultimate Data Build Tool.pdf
What is DBT - The Ultimate Data Build Tool.pdfWhat is DBT - The Ultimate Data Build Tool.pdf
What is DBT - The Ultimate Data Build Tool.pdf
 
Streamlining Python Development: A Guide to a Modern Project Setup
Streamlining Python Development: A Guide to a Modern Project SetupStreamlining Python Development: A Guide to a Modern Project Setup
Streamlining Python Development: A Guide to a Modern Project Setup
 
Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?Are Multi-Cloud and Serverless Good or Bad?
Are Multi-Cloud and Serverless Good or Bad?
 
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdf
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdfHyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdf
Hyperautomation and AI/ML: A Strategy for Digital Transformation Success.pdf
 
Commit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easyCommit 2024 - Secret Management made easy
Commit 2024 - Secret Management made easy
 
WordPress Websites for Engineers: Elevate Your Brand
WordPress Websites for Engineers: Elevate Your BrandWordPress Websites for Engineers: Elevate Your Brand
WordPress Websites for Engineers: Elevate Your Brand
 
Developer Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQLDeveloper Data Modeling Mistakes: From Postgres to NoSQL
Developer Data Modeling Mistakes: From Postgres to NoSQL
 
Digital Identity is Under Attack: FIDO Paris Seminar.pptx
Digital Identity is Under Attack: FIDO Paris Seminar.pptxDigital Identity is Under Attack: FIDO Paris Seminar.pptx
Digital Identity is Under Attack: FIDO Paris Seminar.pptx
 
DevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platformsDevEX - reference for building teams, processes, and platforms
DevEX - reference for building teams, processes, and platforms
 
TeamStation AI System Report LATAM IT Salaries 2024
TeamStation AI System Report LATAM IT Salaries 2024TeamStation AI System Report LATAM IT Salaries 2024
TeamStation AI System Report LATAM IT Salaries 2024
 

Gremlin's Graph Traversal Machinery

  • 1. Gremlin’s Graph Traversal Machinery Dr. Marko A. Rodriguez Director of Engineering at DataStax, Inc. Project Management Committee, Apache TinkerPop http://tinkerpop.apache.org
  • 2. f : X ! X The function f is a process that maps a structure of type X to a structure of type X.
  • 3. f(x1) = x2 The function f maps the object x1 (from the set of X) to the object x2 (from the set of X). x1 2 X x2 2 X
  • 4. f(x) A step is a function.
  • 5. f(x) Assume that this step rotates an X by 90°. 90°
  • 6. 90° The algorithm of the step is a “black box.”
  • 7. 90° A traverser wraps a value of type V. class Traverser<V> { V value; } class Traverser<V> { V value; }
  • 8. 90° The step maps an integer traverser to an integer traverser. class Traverser<V> { V value; } class Traverser<V> { V value; } Traverser<Integer> Traverser<Integer>
  • 9. 90° A traverser of with a rotation of 0° becomes a traverser with a rotation of 90°. Traverser(0) Traverser(90) class Traverser<V> { V value; } class Traverser<V> { V value; }
  • 10. 90°
  • 11. Both the input and output traversers are of type Traverser<Integer>. 90° T[N] ! T[N] 2 T[N] 2 T[N]
  • 12. A stream of input traversers… 90°
  • 13. …yields a stream of output traversers. 90°
  • 14. A traverser can have a bulk which denotes how many V values it represents. 90° class Traverser<V> { V value; long bulk; } class Traverser<V> { V value; long bulk; }
  • 15. 4 4 Bulking groups identical traversers to reduce the number of evaluations of a step. 90° class Traverser<V> { V value; long bulk; } class Traverser<V> { V value; long bulk; }
  • 16. A variegated stream of input traversers yields a variegated stream of output traversers. 90°
  • 17. 1 2 1 1 1 2 Bulking can reduce the size of the stream. 90° class Traverser<V> { V value; long bulk; } class Traverser<V> { V value; long bulk; }
  • 18. If the order of the stream does not matter… 90°
  • 19. …then reordering can increase the likelihood of bulking. 90° 1 21 total bulk = 4 total count = 4 total bulk = 4 total count = 3
  • 20. 90° 180° 270° 360° A traversal is a list of one or more steps. 90° 90° 90° 90°
  • 21. f : X ! Y Different functions can yield different mappings between different domains and ranges. h : Y ! Z
  • 22. The output of f can be the input to h because the range of f is the domain of h (i.e. Y). Y y = f(x) Z z = h(y)
  • 23. y = f(x) z = h(y)
  • 24. y = f(x) z = h(y)
  • 28. f(x) h = z
  • 29. f h = zx
  • 30. f h = zx · ·
  • 31. x · f · h = z h(f(x)) = z readable unreadable ≣
  • 32. z = x · f · h
  • 33. z = x.f().h().next() z = x · f · h stream/iterator/traversalhead/start
  • 34. 90° 225° 315° Different types of steps exist and their various compositions yield query expressivity.
  • 35. 90° 225° 315° Steps process traverser streams/flows and their composition is a traversal/iterator. = . (). ().next()90° 225°
  • 36. repeat( ).times(2) 180° Anonymous traversals can serve as step arguments. 90° traversal with a single step 90°
  • 37. repeat( ).times(2) 180° Some functions serve as step-modulators instead of steps. 90° …groupCount().by(out().count()) …select(“a”,”b”).by(“name”) …addE(“knows”).from(“a”).to(“b”) …order().by(“age”,decr)
  • 38. repeat( ).times(2) ≣ 90° 90° 180° During optimization, traversal strategies may rewrite a traversal to a more efficient, semantically equivalent form. 90° RepeatUnrollStrategy interface TraversalStrategy { void apply(Traversal traversal); Set<TraversalStrategy> applyPrior(); Set<TraversalStrategy> applyPost(); }
  • 39. repeat( ).until(0°)90° Continuously process a traverser until some condition is met.
  • 40. repeat( ).until(0°) 4 loops 2 loops 1 loop 90° 180° 360° 90°do while(x != ) repeat().until() provides do/while-semantics. 90° ≣
  • 41. until(0°).repeat( ) 0 loops 2 loops 1 loop 90° 180° 0° 90°dowhile(x != ) 90° ≣ until().repeat() provides while/do-semantics.
  • 42. until(0°).repeat( ) 3 Even if the traversers in the input stream can not be bulked, the output traversers may be able to be. 90°
  • 44. filter(x)map(x) sideEffect(x)flatMap(x) one-to-one one-to-many one-to-(one-or-none) one-to-same out(“knows”) has(“name”,”gremlin”) groupCount(“m”) where(“a”,eq(“b”)) select(“a”,”b”) path() mean() sum() count() groupCount() many-to-one(reducers) order() values(“age”) values(“name”) and(x,y) or(x,y) coin(0.5) sample(10) simplePath() dedup() store(“m”) tree(“m”) subgraph(“m”) in(“created”) group(“m”) m label() id() * A collection of examples. Not the full step library. match(x,y,z) properties() outE(“knows”) V()
  • 45. values(“age”) filter(x)map(x) sideEffect(x)flatMap(x) one-to-one one-to-many one-to-(one-or-none) one-to-same out(“knows”) has(“name”,”gremlin”) path() groupCount() simplePath() m label() outE(“knows”) group(“m”) V()
  • 46. T[V [ E] ! T[N+ ] values(“age”) filter(x)map(x) sideEffect(x)flatMap(x) one-to-one one-to-many one-to-(one-or-none) one-to-same out(“knows”) has(“name”,”gremlin”) path() groupCount() simplePath() m label() outE(“knows”) T[?] ! T[path] T[V [ E] ! T[string] T[?] ! T[?] T[V [ E] ! ; [ T[V [ E] T[?] ! ; [ T[?] T[V ] ! T[V ]⇤ T[V ] ! T[E]⇤ group(“m”) V()T[?] ! T[map[?, N+ ]] T[G] ! T[V ]⇤
  • 47. T[V [ E] ! T[N+ ] values(“age”) out(“knows”) has(“name”,”gremlin”) groupCount() T[V [ E] ! ; [ T[V [ E] T[V ] ! T[V ]⇤ V()T[?] ! T[map[?, N+ ]] T[G] ! T[V ]⇤ g.V().has(“name”,”gremlin”). out(“knows”).values(“age”). groupCount()
  • 48. T[V [ E] ! T[N+ ]values(“age”) out(“knows”) has(“name”,”gremlin”) groupCount() T[V ] ! T[V ]⇤ V() T[?] ! T[map[?, N+ ]] T[G] ! T[V ]⇤ g.V().has(“name”,”gremlin”). out(“knows”).values(“age”). groupCount() Steps can be composed if their respective domains and ranges match. T[V [ E] ! ; [ T[V [ E]
  • 49. values(“age”) out(“knows”) has(“name”,”gremlin”) groupCount() T[V ] ! T[V ]⇤ V() T[G] ! T[V ]⇤ g.V().has(“name”,”gremlin”). out(“knows”).values(“age”). groupCount() T[V ] ! ; [ T[V ] T[V ] ! T[N+ ] T[N+ ] ! T[map[N+ , N+ ]]
  • 52. g.V().has(“name”,”gremlin”). out(“knows”).values(“age”). groupCount() one graph to many vertices (flatMap) one vertex to that vertex or no vertex (filter) ? …
  • 53. g.V().has(“name”,”gremlin”). out(“knows”).values(“age”). groupCount() one graph to many vertices (flatMap) one vertex to that vertex or no vertex (filter) one vertex to many friend vertices (flatMap) ? … name=gremlin
  • 54. g.V().has(“name”,”gremlin”). out(“knows”).values(“age”). groupCount() one graph to many vertices (flatMap) one vertex to that vertex or no vertex (filter) one vertex to many friend vertices (flatMap) one vertex to one age value (map) ? … 37 name=gremlin
  • 55. g.V().has(“name”,”gremlin”). out(“knows”).values(“age”). groupCount() one graph to many vertices (flatMap) one vertex to that vertex or no vertex (filter) one vertex to many friend vertices (flatMap) one vertex to one age value (map) many age values to an age distribution (map — reducer) ? … 37 [37:2, 41:1, 24:1, 35:4]37 37 24 35 35 35 35 41 name=gremlin
  • 56. The Gremlin Traversal Language The Gremlin Traversal Machine
  • 57. a b c a b c Traversal creation via step composition Step parameterization via traversal and constant nesting a().b().c() a(b().c()).d(x)d(x) function com position function nesting fluent m ethods m ethod argum ents Any language that supports function composition and function nesting can host Gremlin. Gremlin Traversal Language
  • 58. class Traverser<V> { V value; long bulk; } class Step<S,E> { Traverser<E> processNextStart(); } f(x) class Traversal<S,E> implements Iterator<E> { E next(); Traverser<E> nextTraverser(); } The fundamental constructs of Gremlin’s machinery. Gremlin Traversal Machine interface TraversalStrategy { void apply(Traversal traversal); Set<TraversalStrategy> applyPrior(); Set<TraversalStrategy> applyPost(); } a db c a de ≣
  • 59. 1 Bytecode Gremlin-Java g.V(1). repeat(out(“knows”)).times(2). groupCount().by(“age”) [[V, 1] [repeat, [[out, knows]]] [times, 2] [groupCount] [by, age]] Traversal GraphStep GroupCountStep RepeatStep VertexStep GraphStep GroupCountStepVertexStep VertexStep Traversal Strategies GraphStep GroupCountStepVertexStep VertexStep translates compiles optimizes executes [29:2, 30:1, 31:1, 35:10]
  • 60. 1 Bytecode Gremlin-Python g.V(1). repeat(out(‘knows’)).times(2). groupCount().by(‘age’) [[V, 1] [repeat, [[out, knows]]] [times, 2] [groupCount] [by, age]] Traversal GraphStep GroupCountStep RepeatStep VertexStep GraphStep GroupCountStepVertexStep VertexStep Traversal Strategies GraphStep GroupCountStepVertexStep VertexStep translates compiles optimizes executes [29:2, 30:1, 31:1, 35:10]
  • 61. 1 Bytecode Gremlin-Python g.V(1). repeat(out(‘knows’)).times(2). groupCount().by(‘age’) [[V, 1] [repeat, [[out, knows]]] [times, 2] [groupCount] [by, age]] Traversal GraphStep GroupCountStep RepeatStep VertexStep GraphStep GroupCountStepVertexStep VertexStep Traversal Strategies GraphStep GroupCountStepVertexStep VertexStep translates compiles optimizes executes [29:2, 30:1, 31:1, 35:10] Gremlin language variant Language agnostic bytecode Execution engine assembly Execution engine optimization Execution engine evaluation LanguageMachine
  • 63. Python 2.7.2 (default, Oct 11 2012, 20:14:37) [GCC 4.2.1 Compatible Apple Clang 4.0 (tags/Apple/clang-418.0.60)] on darwin Type "help", "copyright", "credits" or "license" for more information. >>> from gremlin_python.structure.graph import Graph >>> from gremlin_python.driver.driver_remote_connection import DriverRemoteConnection Gremlin-Python CPython
  • 64. Python 2.7.2 (default, Oct 11 2012, 20:14:37) [GCC 4.2.1 Compatible Apple Clang 4.0 (tags/Apple/clang-418.0.60)] on darwin Type "help", "copyright", "credits" or "license" for more information. >>> from gremlin_python.structure.graph import Graph >>> from gremlin_python.driver.driver_remote_connection import DriverRemoteConnection >>> graph = Graph() >>> g = graph.traversal().withRemote(DriverRemoteConnection('ws://localhost:8182','g')) Gremlin-Python DriverRemoteConnection CPython
  • 65. Python 2.7.2 (default, Oct 11 2012, 20:14:37) [GCC 4.2.1 Compatible Apple Clang 4.0 (tags/Apple/clang-418.0.60)] on darwin Type "help", "copyright", "credits" or "license" for more information. >>> from gremlin_python.structure.graph import Graph >>> from gremlin_python.driver.driver_remote_connection import DriverRemoteConnection >>> graph = Graph() >>> g = graph.traversal().withRemote(DriverRemoteConnection('ws://localhost:8182','g')) # nested traversal with Python slicing and attribute interception extensions >>> g.V().hasLabel("person").repeat(both()).times(2).name[0:2].toList() [u'marko', u'marko'] Gremlin-Python Bytecode DriverRemoteConnection Gremlin Traversal Machine CPython JVM
  • 66. Python 2.7.2 (default, Oct 11 2012, 20:14:37) [GCC 4.2.1 Compatible Apple Clang 4.0 (tags/Apple/clang-418.0.60)] on darwin Type "help", "copyright", "credits" or "license" for more information. >>> from gremlin_python.structure.graph import Graph >>> from gremlin_python.driver.driver_remote_connection import DriverRemoteConnection >>> graph = Graph() >>> g = graph.traversal().withRemote(DriverRemoteConnection('ws://localhost:8182','g')) # nested traversal with Python slicing and attribute interception extensions >>> g.V().hasLabel("person").repeat(both()).times(2).name[0:2].toList() [u'marko', u'marko'] # a complex, nested multi-line traversal >>> g.V().match( ... as_(“a”).out("created").as_(“b”), ... as_(“b”).in_(“created").as_(“c”), ... as_(“a”).out("knows").as_(“c”)). ... select("c"). ... union(in_(“knows"),out("created")). ... name.toList() [u'ripple', u'marko', u'lop'] >>> Gremlin-Python Bytecode DriverRemoteConnection Gremlin Traversal Machine CPython JVM
  • 67. Cypher Bytecode Distinct query languages (not only Gremlin language variants) can generate bytecode for evaluation by any OLTP/OLAP TinkerPop-enabled graph system. Gremlin Traversal Machine
  • 68. SELECT DISTINCT ?c WHERE { ?a v:label "person" . ?a e:created ?b . ?b v:name ?c . ?a v:age ?d . FILTER (?d > 30) } [ [V], [match, [[as, a], [hasLabel, person]], [[as, a], [out, created], [as, b]], [[as, a], [has, age, gt(30)]]], [select, b], [by, name], [dedup] ] Bytecode
  • 69. Graph Database OLTP Graph Processor OLAP Bytecode Bytecode Bytecode TinkerGraph DSE Graph Titan Neo4j OrientDB IBM Graph … TinkerComputer Spark Giraph Hadoop Fulgora … Gremlin Traversal Machine Traversal Traversal Traversal Gremlin traversals can be executed against OLTP graph databases and OLAP graph processors. That means that if, e.g., SPARQL compiles to bytecode, it can execute both OLTP and OLAP.
  • 70. Graph Database OLTP Graph Processor OLAP Gremlin Traversal Machine Traversal Traversal Traversal TraversalStrategies TraversalStrategies optimizes Graph system providers (OLTP/OLAP) typically have custom strategies registered with the Gremlin traversal machine that take advantage of unique, provider-specific features.
  • 71. Most OLTP graph systems have a traversal strategy that combines [V,has*]-sequences into a single global index-based flatMap-step. g.V().has(“name”,”gremlin”). out(“knows”).values(“age”). groupCount() one graph to many vertices using index lookup (flatMap) GraphStepStrategy one graph to many vertices (flatMap) one vertex to that vertex or no vertex (filter) ? … compiles optimizes name=gremlin DataStax Enterprise Graph
  • 72. Most OLAP graph systems have a traversal strategy that bypasses Traversal semantics and implements reducers using the native API of the system. g.V().count() one graph to long (map — reducer) rdd.count() 12,146,934 compiles one graph to many vertices (flatMap) many vertices to long (map — reducer) … 12,146,934 optimizes SparkInterceptorStrategy …
  • 73. Physical Machine DataProgram Traversal Heap/DiskMemory Memory Memory/Graph System Physical Machine Java Virtual Machine bytecode steps DataProgram Memory/DiskMemory Physical Machine instructions Java Virtual Machine Gremlin Traversal Machine From the physical computing machine to the Gremlin traversal machine.
  • 74. Stakeholders Language Providers Gremlin Language Variant Distinct Query Language Application Developers Graph System Providers OLAP Provider OLTP Provider
  • 75. Stakeholders Application Developers One query language for all OLTP/OLAP systems. GremlinG = (V, E) Real-time and analytic queries are represented in Gremlin. Graph Database OLTP Graph Processor OLAP
  • 76. Stakeholders Application Developers One query language for all OLTP/OLAP systems. No vendor lock-in. Apache TinkerPop as the JDBC for graphs. DataStax Enterprise Graph
  • 77. Stakeholders Application Developers One query language for all OLTP/OLAP systems. No vendor lock-in. Gremlin is embedded in the developer’s language. Iterator<String> result = g.V().hasLabel(“person”). order().by(“age”). limit(10).values(“name”) vs. ResultSet result = statement.executeQuery( “SELECT name FROM People n” + “ ORDER BY age n” + “ LIMIT 10”) Grem lin-Java SQL in Java No “fat strings.” The developer writes their graph database/processor queries in their native programming language.
  • 78. Stakeholders Language Providers Gremlin Language Variant Distinct Query Language Easy to generate bytecode. GraphTraversal.getMethods() .findAll { GraphTraversal.class == it.returnType } .collect { it.name } .unique() .each { pythonClass.append( """ def ${it}(self, *args): self.bytecode.add_step(“${it}”, *args) return self “””)} Gremlin-Python’s source code is programmatically generated using Java reflection.
  • 79. Stakeholders Language Providers Gremlin Language Variant Distinct Query Language Easy to generate bytecode. Bytecode executes against TinkerPop-enabled systems. Language providers write a translator for the Gremlin traversal machine, not a particular graph database/processor. DataStax Enterprise Graph
  • 80. Graph Database OLTP Graph Processor OLAP Stakeholders Language Providers Gremlin Language Variant Distinct Query Language Easy to generate bytecode. Bytecode executes against TinkerPop-enabled systems. Provider can focus on design, not evaluation. Gremlin Traversal Machine The language designer does not have to concern themselves with OLTP or OLAP execution. They simply generate bytecode and the Gremlin traversal machine handles the rest.
  • 81. Easy to implement core interfaces. Graph System Providers Stakeholders OLAP Provider OLTP Provider Vertex Edge Graph Transaction TraversalStrategy Property key=value ? ? ?
  • 82. Provider supports all provided languages. Easy to implement core interfaces. Graph System Providers Stakeholders OLAP Provider OLTP Provider The provider automatically supports all query languages that have compilers that generate Gremlin bytecode.
  • 83. OLTP providers can leverage existing OLAP systems. Provider supports all provided languages. Easy to implement core interfaces. Graph System Providers Stakeholders OLAP Provider OLTP Provider DSE Graph leverages SparkGraphComputer for OLAP processing. DataStax Enterprise Graph
  • 84. Stakeholders Language Providers Gremlin Language Variant Distinct Query Language Application Developers Graph System Providers OLAP Provider OLTP Provider One query language for all OLTP/OLAP systems. No vendor lock-in. Gremlin is embedded in the developer’s language. Easy to generate bytecode. Bytecode executes against TinkerPop-enabled systems. Provider can focus on design, not evaluation. Easy to implement core interfaces. Provider supports all provided languages. OLTP providers can leverage existing OLAP systems.