module Picky
# = Picky Indexes
#
# A Picky Index defines
# * what backend it uses.
# * where its data comes from (a data source).
# * how this data it is indexed.
# * a number of categories that may or may not map directly to data categories.
#
# == Howto
#
# This is a step-by-step description on how to create an index.
#
# Start by choosing an Index or an Index.
# In the example, we will be using an in-memory index, Index.
#
# books = Index.new(:books)
#
# That in itself won't do much good, that's why we add a data source:
#
# books = Index.new(:books) do
# source Sources::CSV.new(:title, :author, file: 'data/books.csv')
# end
#
# In the example, we use an explicit Sources::CSV of Picky.
# However, anything that responds to #each, and returns an object that
# answers to #id, works.
#
# For example, a 3.0 ActiveRecord class:
#
# books = Index.new(:books) do
# source Book.order('isbn ASC')
# end
#
# Now we know where the data comes from, but not, how to categorize it.
#
# Let's add a few categories:
#
# books = Index.new(:books) do
# source Book.order('isbn ASC')
# category :title
# category :author
# category :isbn
# end
#
# Categories offer quite a few options, see Indexes::Base#category for details.
#
# After adding more options, it might look like this:
#
# books = Index.new(:books) do
# source Book.order('isbn ASC')
# category :title,
# partial: Partial::Substring.new(from: 1),
# similarity: Similarity::DoubleMetaphone.new(3),
# qualifiers: [:t, :title, :titulo]
# category :author,
# similarity: Similarity::Metaphone.new(2)
# category :isbn,
# partial: Partial::None.new,
# from: :legacy_isbn_name
# end
#
# For this to work, a Book should support methods #title, #author and #legacy_isbn_name.
#
# If it uses String ids, use #key_format to define a formatting method:
#
# books = Index.new(:books) do
# key_format :to_s
# source Book.order('isbn ASC')
# category :title
# category :author
# category :isbn
# end
#
# Finally, use the index for a Search:
#
# route %r{^/media$} => Search.new(books, dvds, mp3s)
#
# This class defines the indexing and index API that is exposed to the user
# as the #index method inside the Application class.
#
# It provides a single front for both indexing and index options. We suggest to always use the index API.
#
# Note: An Index holds both an *Indexed*::*Index* and an *Indexing*::*Index*.
#
class Index
attr_reader :name,
:categories
forward :[],
:dump,
:each,
:inject,
:reset_backend,
:to => :categories
# Create a new index with a given source.
#
# === Parameters
# * name: A name that will be used for the index directory and in the Picky front end.
#
# === Options (all are used in the block - not passed as a Hash, see examples)
# * source: Where the data comes from, e.g. Sources::CSV.new(...). Optional, can be defined in the block using #source.
# * result_identifier: Use if you'd like a different identifier/name in the results than the name of the index.
# * after_indexing: As of this writing only used in the db source. Executes the given after_indexing as SQL after the indexing process.
# * indexing: Call and pass either a tokenizer (responds to #tokenize) or the options for a tokenizer..
# * key_format: Call and pass in a format method for the ids (default is #to_i).
#
# Example:
# my_index = Index.new(:my_index) do
# source Sources::CSV.new(file: 'data/index.csv')
# key_format :to_sym
# category :bla
# result_identifier :my_special_results
# end
#
def initialize name
@name = name.intern
@categories = Categories.new
# Centralized registry.
#
Indexes.register self
instance_eval(&Proc.new) if block_given?
end
# API method.
#
# Sets/returns the backend used.
# Default is @Backends::Memory.new@.
#
def backend backend = nil
if backend
@backend = backend
reset_backend
else
@backend ||= Backends::Memory.new
end
end
# TODO Reinstate.
#
# # Ignore the categories with these qualifiers.
# #
# # Example:
# # search = Search.new(index1, index2, index3) do
# # ignore :name, :first_name
# # end
# #
# # Cleans up / optimizes after being called.
# #
# def ignore *qualifiers
# @ignored_categories ||= []
# @ignored_categories += qualifiers.map { |qualifier| @qualifier_mapper.map qualifier }.compact
# @ignored_categories.uniq!
# end
# SYMBOLS.
#
# # API method.
# #
# # Tells Picky to use Symbols internally.
# #
# def use_symbols
# @symbols = true
# end
# def use_symbols?
# @symbols
# end
# API method.
#
# Defines a searchable category on the index.
#
# === Parameters
# * category_name: This identifier is used in the front end, but also to categorize query text. For example, “title:hobbit” will narrow the hobbit query on categories with the identifier :title.
#
# === Options
# * indexing: Pass in either a tokenizer or tokenizer options.
# * partial: Partial::None.new or Partial::Substring.new(from: starting_char, to: ending_char). Default is Partial::Substring.new(from: -3, to: -1).
# * similarity: Similarity::None.new or Similarity::DoubleMetaphone.new(similar_words_searched). Default is Similarity::None.new.
# * qualifiers: An array of qualifiers with which you can define which category you’d like to search, for example “title:hobbit” will search for hobbit in just title categories. Example: qualifiers: [:t, :titre, :title] (use it for example with multiple languages). Default is the name of the category.
# * qualifier: Convenience options if you just need a single qualifier, see above. Example: qualifiers => :title. Default is the name of the category.
# * source: Use a different source than the index uses. If you think you need that, there might be a better solution to your problem. Please post to the mailing list first with your application.rb :)
# * from: Take the data from the data category with this name. Example: You have a source Sources::CSV.new(:title, file:'some_file.csv') but you want the category to be called differently. The you use from: category(:similar_title, :from => :title).
#
def category category_name, options = {}
new_category = Category.new category_name.intern, self, options
categories << new_category
new_category = yield new_category if block_given?
new_category
end
# Restrict categories to the given ones.
#
# Functionally equivalent as if indexes didn't
# have the categories at all.
#
# Note: Probably only makes sense when an index
# is used in multiple searches. If not, why even
# have the categories?
#
# TODO Redesign.
#
def only *qualifiers
raise "Sorry, Picky::Search#only has been removed in version."
# @qualifier_mapper.restrict_to *qualifiers
end
# The directory used by this index.
#
# Note: Used @directory ||=, but needs to be dynamic.
#
def directory
::File.join(Picky.root, 'index', PICKY_ENVIRONMENT, name.to_s)
end
# Make this category range searchable with a fixed range. If you need other
# ranges, define another category with a different range value.
#
# Example:
# You have data values inside 1..100, and you want to have Picky return
# not only the results for 47 if you search for 47, but also results for
# 45, 46, or 47.2, 48.9, in a range of 2 around 47, so (45..49).
#
# Then you use:
# ranged_category :values_inside_1_100, 2
#
# Optionally, you give it a precision value to reduce the error margin
# around 47 (Picky is a bit liberal).
# Index.new :range do
# ranged_category :values_inside_1_100, 2, precision: 5
# end
#
# This will force Picky to maximally be wrong 5% of the given range value
# (5% of 2 = 0.1) instead of the default 20% (20% of 2 = 0.4).
#
# We suggest not to use much more than 5 as a higher precision is more
# performance intensive for less and less precision gain.
#
# == Protip 1
#
# Create two ranged categories to make an area search:
# Index.new :area do
# ranged_category :x, 1
# ranged_category :y, 1
# end
#
# Search for it using for example:
# x:133, y:120
#
# This will search this square area (* = 133, 120: The "search" point entered):
#
# 132 134
# | |
# --|---------|-- 121
# | |
# | * |
# | |
# --|---------|-- 119
# | |
#
# Note: The area does not need to be square, but can be rectangular.
#
# == Protip 2
#
# Create three ranged categories to make a volume search.
#
# Or go crazy and use 4 ranged categories for a space/time search! ;)
#
# === Parameters
# * category_name: The category_name as used in #category.
# * range: The range (in the units of your data values) around the query point where we search for results.
#
# -----|<- range ->*------------|-----
#
# === Options
# * precision: Default is 1 (20% error margin, very fast), up to 5 (5% error margin, slower) makes sense.
# * anchor: Where to anchor the grid.
# * ... all options of #category.
#
def ranged_category category_name, range, options = {}
precision = options.delete(:precision) || 1
anchor = options.delete(:anchor) || 0.0
# Note: :key_format => :to_f ?
#
options = { partial: Partial::None.new }.merge options
category category_name, options do |cat|
Category::Location.install_on cat, range, precision, anchor
end
end
# HIGHLY EXPERIMENTAL Not correctly working yet. Try it if you feel "beta".
#
# Also a range search see #ranged_category, but on the earth's surface.
#
# Parameters:
# * lat_name: The latitude's name as used in #category.
# * lng_name: The longitude's name as used in #category.
# * radius: The distance (in km) around the query point which we search for results.
#
# Note: Picky uses a square, not a circle. That should be ok for most usages.
#
# -----------------------------
# | |
# | |
# | |
# | |
# | |
# | *<- radius ->|
# | |
# | |
# | |
# | |
# | |
# -----------------------------
#
# Options
# * precision: Default 1 (20% error margin, very fast), up to 5 (5% error margin, slower) makes sense.
# * lat_from: The data category to take the data for the latitude from.
# * lng_from: The data category to take the data for the longitude from.
#
# THINK Will have to write a wrapper that combines two categories that are
# indexed simultaneously, since lat/lng are correlated.
#
def geo_categories lat_name, lng_name, radius, options = {}
# Extract lat/lng specific options.
#
lat_from = options.delete :lat_from
lng_from = options.delete :lng_from
# One can be a normal ranged_category.
#
ranged_category lat_name, radius*0.00898312, options.merge(from: lat_from)
# The other needs to adapt the radius depending on the one.
#
# Depending on the latitude, the radius of the longitude
# needs to enlarge, the closer we get to the pole.
#
# In our simplified case, the radius is given as if all the
# locations were on the 45 degree line.
#
# This calculates km -> longitude (degrees).
#
# A degree on the 45 degree line is equal to ~222.6398 km.
# So a km on the 45 degree line is equal to 0.01796624 degrees.
#
ranged_category lng_name, radius*0.01796624, options.merge(from: lng_from)
end
def to_stats
stats = <<-INDEX
#{name} (#{self.class}):
#{"source: #{source}".indented_to_s}
#{"categories: #{categories.to_stats}".indented_to_s}
INDEX
stats << "result identifier: \"#{result_identifier}\"".indented_to_s unless result_identifier.to_s == name.to_s
stats << "\n"
stats
end
# Identifier used for technical output.
#
def identifier
name
end
#
#
def to_s
"#{self.class}(#{name}, result_id: #{result_identifier}, source: #{@source}, categories: #{categories})"
end
end
end