data_cleansing ============== Data Cleansing framework for Ruby with additional support for Rails and Mongoid * http://github.com/reidmorrison/data_cleansing ## Introduction It is important to keep internal data free of unwanted escape characters, leading or trailing blanks and even newlines. Similarly it would be useful to be able to attach a cleansing solution to a field in a model and have the data cleansed transparently when required. DataCleansing is a framework that allows any data cleansing to be applied to specific attributes or fields. At this time it does not supply the cleaning solutions themselves since they are usually straight forward, or so complex that they don't tend to be too useful to others. However, over time built-in cleansing solutions may be added. Feel free to submit any suggestions via a ticket or pull request. ## Features * Supports global cleansing definitions that can be associated with any Ruby, Rails, Mongoid, or other model. * Supports custom cleansing definitions that can be defined in-line using block. * A cleansing block can access the other attributes in the model in determining how to cleanse the current attribute * In a cleansing block other can also be modified if necessary * Cleansers are executed in the order they are defined. As a result multiple cleansers can be run against the same field and the order is preserved * Multiple cleansers can be specified for a list of attributes at the same time * Inheritance is supported. The cleansers for parent classes are run before the child's cleansers * Cleansers can be called outside of a model instance for cases where fields need to be cleansed before the model is created, or needs to be found * Logging of data cleansing with the before and after values for troubleshooting. Depending on the log level all modified fields are logged, or just the ones completely wiped out to nil ## ActiveRecord (ActiveModel) Features * Passes the value of the attribute before the Rails type cast so that the original text can be cleansed before passing back to rails for type conversion. This is important for numeric and date fields where spaces and control characters can have undesired effects ## Examples ### Ruby Example ```ruby require 'data_cleansing' # Define a global cleaner DataCleansing.register_cleaner(:strip) {|string| string.strip!} class User include DataCleansing::Cleanse attr_accessor :first_name, :last_name # Strip leading and trialing whitespace from first_name and last_name cleanse :first_name, :last_name, :cleaner => :strip end u = User.new u.first_name = ' joe ' u.last_name = "\n black\n" puts "Before data cleansing #{u.inspect}" # Before data cleansing Before data cleansing # u.cleanse_attributes! puts "After data cleansing #{u.inspect}" # After data cleansing After data cleansing # ``` ### Rails Example ```ruby # Define a global cleanser DataCleansing.register_cleaner(:strip) {|string| string.strip!} # 'users' table has the following columns :first_name, :last_name, :address1, :address2 class User < ActiveRecord::Base include DataCleansing::Cleanse # Use a global cleaner cleanse :first_name, :last_name, :cleaner => :strip # Define a once off cleaner cleanse :address1, :address2, :cleaner => Proc.new {|string| string.strip!} # Automatically cleanse data before validation before_validation :cleanse_attributes! end # Create a User instance u = User.new(:first_name => ' joe ', :last_name => "\n black\n", :address1 => "2632 Brown St \n") puts "Before data cleansing #{u.attributes.inspect}" u.validate puts "After data cleansing #{u.attributes.inspect}" u.save! ``` ### Advanced Ruby Example ```ruby require 'data_cleansing' # Define a global cleaners DataCleansing.register_cleaner(:strip) {|string| string.strip!} DataCleansing.register_cleaner(:upcase) {|string| string.upcase!} class User include DataCleansing::Cleanse attr_accessor :first_name, :last_name, :title, :address1, :address2, :gender # Use a global cleaner cleanse :first_name, :last_name, :cleaner => :strip # Define a once off cleaner cleanse :address1, :address2, :cleaner => Proc.new {|string| string.strip!} # Use multiple cleaners, and a custom block cleanse :title, :cleaner => [:strip, :upcase, Proc.new {|string| "#{string}." unless string.end_with?('.')}] # Change the cleansing rule based on the value of other attributes in that instance of user # The 'title' is retrieved from the current instance of the user cleanse :gender, :cleaner => [ :strip, :upcase, Proc.new do |gender| if (gender == "UNKNOWN") && (title == "MR.") "Male" else "Female" end end ] end u = User.new u.first_name = ' joe ' u.last_name = "\n black\n" u.address1 = "2632 Brown St \n" u.title = " \nmr \n" u.gender = " Unknown " puts "Before data cleansing #{u.inspect}" # Before data cleansing # u.cleanse_attributes! puts "After data cleansing #{u.inspect}" # After data cleansing # ``` ## Rails configuration When DataCleansing is used in a Rails environment it can be configured using the regular Rails configuration mechanisms. For example: ```ruby module MyApplication class Application < Rails::Application # Data Cleansing Configuration # Attributes who's values are to be masked out during logging config.data_cleansing.register_masked_attributes :bank_account_number, :social_security_number # Optionally override the default log level # Set to :trace or :debug to log all fields modified # Set to :info to log only those fields which were nilled out # Set to :warn or higher to disable logging of cleansing actions config.data_cleansing.logger.level = :info # Register any global cleaners config.data_cleansing.register_cleaner(:strip) {|string| string.strip!} end end ``` ## Logging DataCleansing uses SemanticLogger for logging due to it's excellent integration with Rails and its ability to log data in it's raw form to Mongo and to files. If running a Rails application it is recommended to install the gem rails_semantic_logger which replaces the default Rails logger. It is however possible to configure the semantic_logger gem to use the existing Rails logger in a Rails initializer as follows: ```ruby SemanticLogger.default_level = Rails.logger.level SemanticLogger.add_appender(Rails.logger) ``` By changing the log level for DataCleansing the type of output for data cleansing can be controlled: * :trace or :debug to log all fields modified * :info to log only those fields which were nilled out * :warn or higher to disable logging of cleansing actions To change the log level, either use the Rails configuration approach, or set it directly: ```ruby DataCleansing.logger.level = :info ``` ## Notes Cleaners are called in the order in which they are defined, so subsequent cleaners can assume that the previous cleaners have run and can therefore access or even modify previously cleaned attributes ## Installation ### Add to an existing Rails project Add the following line to Gemfile ```ruby gem 'data_validation' ``` Install the Gem with bundler bundle install ## Architecture DataCleansing has been designed to support externalized data cleansing routines. In this way the data cleansing routine itself can be loaded from a datastore and applied dynamically at runtime. Although not supported out of the box, this design allows for example for the data cleansing routines to be stored in something like [ZooKeeper](http://zookeeper.apache.org/). Then any changes to the data cleansing routines can be pushed out immediately to every server that needs it. DataCleansing is designed to support any Ruby model. In this way it can be used in just about any ORM or DOM. For example, it currently easily supports both Rails and Mongoid models. Some extensions have been added to support these frameworks. For example, in Rails it obtains the raw data value before Rails has converted it. Which is useful for cleansing integer or float fields as raw strings before Rails tries to convert it to an integer or float. ## Dependencies DataCleansing requires the following dependencies * Ruby V1.8.7, V1.9.3 or V2 and greater * Rails V2 or greater for Rails integration ( Only if Rails is being used ) * Mongoid V2 or greater for Mongoid integration ( Only if Mongoid is being used ) ## Meta * Code: `git clone git://github.com/reidmorrison/data_cleansing.git` * Home: * Issues: * Gems: This project uses [Semantic Versioning](http://semver.org/). ## Authors Reid Morrison :: reidmo@gmail.com :: @reidmorrison ## License Copyright 2013 Reid Morrison Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with the License. You may obtain a copy of the License at http://www.apache.org/licenses/LICENSE-2.0 Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the specific language governing permissions and limitations under the License.