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# Distributed Iterative Graph Processing (Pregel)

Distributed graph processing enables you to do online analytical processing directly on graphs stored in ArangoDB. This is intended to help you gain analytical insights on your data, without having to use external processing systems. Examples of algorithms to execute are PageRank, Vertex Centrality, Vertex Closeness, Connected Components, Community Detection. This system is not useful for typical online queries, where you just do work on a small set of vertices. These kind of tasks are better suited for AQL.

Check out the hands-on ArangoDB Pregel Tutorial to learn more.

The processing system inside ArangoDB is based on: Pregel: A System for Large-Scale Graph Processing – Malewicz et al. (Google), 2010. This concept enables us to perform distributed graph processing, without the need for distributed global locking.

## Prerequisites

If you run a single ArangoDB instance in single-server mode, there are no requirements regarding the modeling of your data. All you need is at least one vertex collection and one edge collection.

In cluster mode, the collections need to be sharded in a specific way to ensure correct results: The outgoing edges of a vertex need to be on the same DB-Server as the vertex. This is guaranteed by SmartGraphs.

SmartGraphs (and thus Pregel in cluster deployments) are only available in the
**Enterprise Edition**.

Note that the performance may be better, if the number of your shards / collections matches the number of CPU cores.

## Arangosh API

### Starting an Algorithm Execution

The Pregel API is accessible through the `@arangodb/pregel`

package.

To start an execution you need to specify the **algorithm** name and a
named graph (SmartGraph in cluster). Alternatively you can specify the vertex
and edge collections. Additionally you can specify custom parameters which vary
for each algorithm. The `start()`

method will always return a unique ID which
can be used to interact with the algorithm and later on.

The below version of the `start`

method can be used for named graphs:

```
var pregel = require("@arangodb/pregel");
var params = {};
var execution = pregel.start("<algorithm>", "<yourgraph>", params);
```

`params`

needs to be an object, the valid keys are mentioned below in the section
Available Algorithms

Alternatively you might want to specify the vertex and edge collections directly. The call-syntax of the `start`

method changes in this case. The second argument must be an object with the keys `vertexCollections`

and `edgeCollections`

.

```
var pregel = require("@arangodb/pregel");
var params = {};
var execution = pregel.start("<algorithm>", {vertexCollections:["vertices"], edgeCollections:["edges"]}, {});
```

The last argument is still the parameter object. See below for a list of algorithms and parameters.

### Status of an Algorithm Execution

The code returned by the `pregel.start(...)`

method can be used to
track the status of your algorithm.

```
var execution = pregel.start("sssp", "demograph", {source: "vertices/V"});
var status = pregel.status(execution);
```

The result will tell you the current status of the algorithm execution.
It will tell you the current `state`

of the execution, the current global superstep, the runtime, the global aggregator values as
well as the number of send and received messages.

Valid values for the `state`

field include:

- “running” algorithm is still running
- “done”: The execution is done, the result might not be written back into the collection yet.
- “canceled”: The execution was permanently canceled, either by the user or by an error.
- “in error”: The execution is in an error state. This can be caused by primary DBServers being not reachable or being non responsive. The execution might recover later, or switch to “canceled” if it was not able to recover successfully
- “recovering”: The execution is actively recovering, will switch back to “running” if the recovery was successful

The object returned by the `status`

method might for example look something like this:

```
{
"state" : "running",
"gss" : 12,
"totalRuntime" : 123.23,
"aggregators" : {
"converged" : false,
"max" : true,
"phase" : 2
},
"sendCount" : 3240364978,
"receivedCount" : 3240364975
}
```

### Canceling an Execution / Discarding results

To cancel an execution which is still running, and discard any intermediate results you can use the `cancel`

method.
This will immediately free all memory taken up by the execution, and will make you lose all intermediary data.

You might get inconsistent results if you cancel an execution while it is already in its `done`

state. The data is written
multi-threaded into all collection shards at once, this means there are multiple transactions simultaneously. A transaction might
already be committed when you cancel the execution job, therefore you might see the result in your collection. This does not apply
if you configured the execution to not write data into the collection.

```
// start a single source shortest path job
var execution = pregel.start("sssp", "demograph", {source: "vertices/V"});
pregel.cancel(execution);
```

## AQL integration

ArangoDB supports retrieving temporary Pregel results through the ArangoDB query language (AQL).
When our graph processing subsystem finishes executing an algorithm, the result can either be written back into the
database or kept in memory. In both cases the result can be queried via AQL. If the data was not written to the database
store it is only held temporarily, until the user calls the `cancel`

method. For example, a user might want to query
only nodes with the highest rank from the result set of a PageRank execution.

```
FOR v IN PREGEL_RESULT(<handle>)
FILTER v.value >= 0.01
RETURN v._key
```

By default, the `PREGEL_RESULT`

AQL function will return the `_key`

of each vertex plus the result
of the computation. In case the computation was done for vertices from different vertex collection,
just the `_key`

values may not be sufficient to tell vertices from different collections apart. In
this case, the `PREGEL_RESULT`

can be given a second parameter `withId`

, which will make it return
the `_id`

values of the vertices as well:

```
FOR v IN PREGEL_RESULT(<handle>, true)
FILTER v.value >= 0.01
RETURN v._id
```

Please note that `PREGEL_RESULT`

will only work for results of Pregel jobs that were stored with
the `store`

parameter set to `false`

in their job configuration.

## Algorithm Parameters

There are a number of general parameters which apply to almost all algorithms:

`store`

: Defaults to*true*. If true, the Pregel engine will write results back to the database. If the value is*false*then you can query the results via AQL. See AQL integration.`maxGSS`

: Maximum number of global iterations for this algorithm`parallelism`

: Number of parallel threads to use per worker. Does not influence the number of threads used to load or store data from the database (this depends on the number of shards).`async`

: Algorithms which support async mode, will run without synchronized global iterations, might lead to performance increases if you have load imbalances.`resultField`

: Most algorithms will write the result into this field`useMemoryMaps`

: Use disk based files to store temporary results. This might make the computation disk-bound, but allows you to run computations which would not fit into main memory. It is recommended to set this flag for larger datasets.`shardKeyAttribute`

: shard-key that edge-collections are sharded after (default:`vertex`

)

## Available Algorithms

### Page Rank

PageRank is a well known algorithm to rank documents in a graph. The algorithm will run until
the execution converges. Specify a custom threshold with the parameter `threshold`

, to run for a fixed
number of iterations use the `maxGSS`

parameter.

```
var pregel = require("@arangodb/pregel");
pregel.start("pagerank", "graphname", {maxGSS: 100, threshold:0.00000001, resultField:'rank'})
```

#### Seeded PageRank

It is possible to specify an initial distribution for the vertex-documents in your graph. To define these
seed ranks / centralities you can specify a `sourceField`

in the properties for this algorithm.
If the specified field is set on a document *and* the value is numeric, then it will be
used instead of the default initial rank of `1 / numVertices`

.

```
var pregel = require("@arangodb/pregel");
pregel.start("pagerank", "graphname", {maxGSS: 20, threshold:0.00000001, sourceField:'seed', resultField:'rank'})
```

### Single-Source Shortest Path

Calculates the distance of each vertex to a certain shortest path. The algorithm will run until it converges, the iterations are bound by the diameter (the longest shortest path) of your graph.

```
var pregel = require("@arangodb/pregel");
pregel.start("sssp", "graphname", {source:"vertices/1337"})
```

### Connected Components

There are two algorithms to find connected components in a graph. To find weakly connected components (WCC) you can use the algorithm named “connectedcomponents”, to find strongly connected components (SCC) you can use the algorithm named “scc”. Both algorithm will assign a component ID to each vertex.

A weakly connected components means that there exist a path from every vertex pair in that component. WCC is a very simple and fast algorithm, which will only work correctly on undirected graphs. Your results on directed graphs may vary, depending on how connected your components are.

In the case of SCC a component means every vertex is reachable from any other vertex in the same component. The algorithm is more complex than the WCC algorithm and requires more RAM, because each vertex needs to store much more state. Consider using WCC if you think your data may be suitable for it.

```
var pregel = require("@arangodb/pregel");
// weakly connected components
pregel.start("connectedcomponents", "graphname")
// strongly connected components
pregel.start("scc", "graphname")
```

### Hyperlink-Induced Topic Search (HITS)

HITS is a link analysis algorithm that rates Web pages, developed by Jon Kleinberg (The algorithm is also known as hubs and authorities).

The idea behind Hubs and Authorities comes from the typical structure of the web: Certain websites known as hubs, serve as large directories that are not actually authoritative on the information that they hold. These hubs are used as compilations of a broad catalog of information that leads users direct to other authoritative webpages. The algorithm assigns each vertex two scores: The authority-score and the hub-score. The authority score rates how many good hubs point to a particular vertex (or webpage), the hub score rates how good (authoritative) the vertices pointed to are. For more see https://en.wikipedia.org/wiki/HITS_algorithm

Our version of the algorithm
converges after a certain amount of time. The parameter *threshold* can be used to set a limit for the convergence (measured as maximum absolute difference of the hub and
authority scores between the current and last iteration)
When you specify the result field name, the hub score will be stored in `<result field>_hub`

and the authority score in
`<result field>_auth`

.
The algorithm can be executed like this:

```
var pregel = require("@arangodb/pregel");
var handle = pregel.start("hits", "yourgraph", {threshold:0.00001, resultField: "score"});
```

### Vertex Centrality

Centrality measures help identify the most important vertices in a graph. They can be used in a wide range of applications:
For example they can be used to identify *influencers* in social networks, or *middle-men* in terrorist networks.
There are various definitions for centrality, the simplest one being the vertex degree.
These definitions were not designed with scalability in mind. It is probably impossible to discover an efficient algorithm which computes them in a distributed way.
Fortunately there are scalable substitutions available, which should be equally usable for most use cases.

#### Effective Closeness

A common definitions of centrality is the **closeness centrality** (or closeness).
The closeness of a vertex in a graph is the inverse average length of the shortest path between the vertex
and all other vertices. For vertices *x*, *y* and shortest distance *d(y,x)* it is defined as

Effective Closeness approximates the closeness measure. The algorithm works by iteratively estimating the number
of shortest paths passing through each vertex. The score will approximates the real closeness score, since
it is not possible to actually count all shortest paths due to the horrendous O(n^2 * d) memory requirements.
The algorithm is from the paper *Centralities in Large Networks: Algorithms and Observations (U Kang et.al. 2011)*

ArangoDBs implementation approximates the number of shortest path in each iteration by using a HyperLogLog counter with 64 buckets.
This should work well on large graphs and on smaller ones as well. The memory requirements should be **O(n * d)** where
*n* is the number of vertices and *d* the diameter of your graph. Each vertex will store a counter for each iteration of the
algorithm. The algorithm can be used like this

```
const pregel = require("@arangodb/pregel");
const handle = pregel.start("effectivecloseness", "yourgraph", {resultField: "closeness"});
```

#### LineRank

Another common measure is the betweenness* centrality:
It measures the number of times a vertex is part of shortest paths between any pairs of vertices.
For a vertex *v* betweenness is defined as

Where the σ represents the number of shortest paths between *x* and *y*, and σ(v) represents the
number of paths also passing through a vertex *v*. By intuition a vertex with higher betweenness centrality will have more information
passing through it.

**LineRank** approximates the random walk betweenness of every vertex in a graph. This is the probability that someone starting on
an arbitrary vertex, will visit this node when he randomly chooses edges to visit.
The algorithm essentially builds a line graph out of your graph (switches the vertices and edges), and then computes a score similar to PageRank.
This can be considered a scalable equivalent to vertex betweenness, which can be executed distributedly in ArangoDB.
The algorithm is from the paper *Centralities in Large Networks: Algorithms and Observations (U Kang et.al. 2011)*

```
const pregel = require("@arangodb/pregel");
const handle = pregel.start("linerank", "yourgraph", {"resultField": "rank"});
```

### Community Detection

Graphs based on real world networks often have a community structure. This means it is possible to find groups of vertices such that each each vertex group is internally more densely connected than outside the group. This has many applications when you want to analyze your networks, for example Social networks include community groups (the origin of the term, in fact) based on common location, interests, occupation, etc.

#### Label Propagation

*Label Propagation* can be used to implement community detection on large graphs. The idea is that each
vertex should be in the community that most of his neighbors are in. We iteratively determine this by first
assigning random Community ID’s. Then each iteration, a vertex will send it’s current community ID to all his neighbor vertices.
Then each vertex adopts the community ID he received most frequently during the iteration.

The algorithm runs until it converges, which likely never really happens on large graphs. Therefore you need to specify a maximum iteration bound which suits you. The default bound is 500 iterations, which is likely too large for your application. Should work best on undirected graphs, results on directed graphs might vary depending on the density of your graph.

```
const pregel = require("@arangodb/pregel");
const handle = pregel.start("labelpropagation", "yourgraph", {maxGSS:100, resultField: "community"});
```

#### Speaker-Listener Label Propagation

The Speaker-listener Label Propagation (SLPA) can be used to implement community detection. It works similar to the label propagation algorithm, but now every node additionally accumulates a memory of observed labels (instead of forgetting all but one label).

Before the algorithm run, every vertex is initialized with an unique ID (the initial community label). During the run three steps are executed for each vertex:

- Current vertex is the listener all other vertices are speakers
- Each speaker sends out a label from memory, we send out a random label with a probability proportional to the number of times the vertex observed the label
- The listener remembers one of the labels, we always choose the most frequently observed label

```
const pregel = require("@arangodb/pregel");
const handle = pregel.start("slpa", "yourgraph", {maxGSS:100, resultField: "community"});
```

You can also execute SLPA with the `maxCommunities`

parameter to limit the number of output communities.
Internally the algorithm will still keep the memory of all labels, but the output is reduced to just he `n`

most frequently
observed labels.

```
const pregel = require("@arangodb/pregel");
const handle = pregel.start("slpa", "yourgraph", {maxGSS:100, resultField:"community", maxCommunities:1});
// check the status periodically for completion
pregel.status(handle);
```

## Limits

Pregel algorithms in ArangoDB will by default store temporary vertex and edge data in main memory. For large datasets this is going to cause problems, as servers may run out of memory while loading the data.

To avoid servers from running out of memory while loading the dataset, a Pregel job can be started with the
attribute `useMemoryMaps`

set to `true`

. This will make the algorithm use memory-mapped files as a backing
storage in case of huge datasets. Falling back to memory-mapped files might make the computation disk-bound, but
may be the only way to complete the computation at all.

Parts of the Pregel temporary results (aggregated messages) may also be stored in main memory, and currently the aggregation cannot fall back to memory-mapped files. That means if an algorithm needs to store a lot of result messages temporarily, it may consume a lot of main memory.

In general it is also recommended to set the `store`

attribute of Pregel jobs to `true`

to make a job store
its value on disk and not just in main memory. This way the results are removed from main memory once a Pregel
job completes. If the `store`

attribute is explicitly set to `false`

, result sets of completed Pregel runs
will not be removed from main memory until the result set is explicitly discarded by a call to the `cancel`

function (or a shutdown of the server).