1.2.0 • Published 9 years ago

docproc v1.2.0

Weekly downloads
36
License
MIT
Repository
github
Last release
9 years ago

docproc

A document processing pipeline mostly used with search-index

docProc = require('docproc')
readableStream.pipe(docProc.pipeline(ops))

DocProc is a pumpify chain of transform streams that turns Plain Old JSON Objects into a format that can be indexed by search-index.

Each processed document must have the following fields:

  • id - document id
  • vector - vector, used for ranking
  • stored - the document that will be cached
  • raw - the unadulterated document
  • normalised - the "cleaned up" document.
  • tokenised - the tokenised document.

So

  {
    id: 'one',
    text: 'the first doc'
  }

becomes

  { id: 'one',
    normalised: { id: 'one', text: 'the first doc' },
    raw: { id: 'one', text: 'the first doc' },
    stored: { id: 'one', text: 'the first doc' },
    tokenised: { id: [ 'one' ], text: [ 'the', 'first', 'doc' ] },
    vector:
    { id: { one: 1, '*': 1 },
      text: { doc: 1, first: 1, the: 1, '*': 1 },
      '*': { one: 1, '*': 1, doc: 1, first: 1, the: 1 } } },

...after being passeds through docProc.

You can also compose document processing pipelines by reusing the stages provided, or by creating new ones using the node.js transform stream specification:

  docProc.customPipeline([
    new docProc.IngestDoc(),
    new docProc.CreateStoredDocument(),
    new docProc.NormaliseFields(),
    new docProc.Tokeniser({separator: ' '}),
    new docProc.RemoveStopWords({stopwords: []}),
    new docProc.CalculateTermFrequency(),
    new docProc.CreateCompositeVector(),
    new docProc.CreateSortVectors(),
    new docProc.FieldedSearch({fieldedSearch: false})
  ])

API

.defaultPipeline(options)

A function that returns a writable stream that contains a sensible default document processing pipeline

.customPipeline(pipeline)

A function that takes in an Array of pipeline stages where every stage is a transform stream and returns a writable stream.

CalculateTermFrequency

A transform stream that calculates term frequency.

CreateCompositeVector

A transform stream that calculates the composite vector- used for searching accross all fields.

CreateSortVectors

A transform stream that creates sort vectors.

CreateStoredDocument

A transform stream that defines the parts of each document that are to be cached in the index itself.

FieldedSearch

A transform stream that determines which fields can be searched on individually. In order to make indexes smaller, you can index fields that can be searched on.

IngestDoc

A transform stream that takes an unprocessed document and converts it into a structure that can be processed by search-index.

LowCase

A transform stream that converts text to lower case.

NormaliseFields

A transform stream that converts non-string fields into Strings.

RemoveStopWords

A transform stream that removes stopwords

Spy

A transform stream that will do nothing other than print out the state of the document to console.log. Use this when developing and debugging.

Tokeniser

A transform stream that splits fields down into their individual linguistic tokens

Options

See: https://github.com/fergiemcdowall/search-index/blob/master/doc/API.md#options-and-settings

1.2.0

9 years ago

1.1.0

9 years ago

1.0.3

9 years ago

1.0.2

9 years ago

1.0.1

9 years ago

1.0.0

9 years ago

0.0.11

9 years ago

0.0.10

9 years ago

0.0.9

9 years ago

0.0.8

10 years ago

0.0.7

10 years ago

0.0.6

10 years ago

0.0.5

10 years ago

0.0.4

10 years ago

0.0.3

10 years ago

0.0.2

10 years ago

0.0.1

10 years ago