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A view within Yellowfin is a metadata layer of a physical view or table within your data source. Report writers select a view to run queries against a database. They can do data analysis and create reports using the fields in the view, without seeing, or having to know anything about, the underlying data structures in the database.

The role of a view is to provide an intuitive interface for non-technical report writers to run reports and perform data analysis against a database.

See View Creation for more information.

Who is the view Administrator?

Views are created by an administrator. There is no standard profile for a view administrator. Within a company, the person designated as the view administrator may be the database administrator, an applications manager or developer, a project manager, or a business user who has acquired enough technical skills to create views for other users.

A view administrator should have the following skills and level of technical knowledge:



Ability to analyse user needs

The view administrator must have the skills to conduct user needs analyses to create categories and fields that are relevant to the user vocabulary, and to develop views that meet the needs of the user community.

Database knowledge

A View administrator needs to have a good working knowledge of the company’s database management system (DBMS), how the databases are deployed, the logical database structure, and the type of data stored in company databases

Structured Query Language (SQL)

A working knowledge of SQL is necessary

What does a view contain?

A view contains the following structures:


The purpose of categories is to provide logical groupings of fields within a view. The name of a category should intuitive to the business user and provide an indication of the fields that it is likely to contain.
For example a category called ‘Private details’ is likely to contain a person’s name, age and gender.


A field is a named component that maps to data or a derivation of data in the database. The name of a field should be drawn from the business vocabulary of the targeted user group.
For example, fields used in a view used by a product manager could be Product, Life Cycle, or Release Date. A view used by a financial analyst could contain fields such as Profit Margin, and Return on Investment.
The fields that report writers see in a view infer SQL structures that have been inserted into a database schema.

Field Types

When creating a VIEW, you define and categorise fields. The definition of a field reveals how it can be used in analysis and reports. A field can be defined as a dimension or a metric. Each type of field serves a different purpose:

Dimension fields retrieve the data that will provide the basis for analysis in a report. Dimensions typically retrieve character-type data (employee names, company names, etc.), or dates (years, quarters, etc.)

Metric fields retrieve numeric data that is the result of calculations on data in the database.
Metrics tend to be dynamic: the values they return depend on the dimensions they are used with. For example, if you include Person and Age in a query, Age per person is calculated.
Basic Metrics do not need to have an aggregate calculation (such as a SUM or AVERAGE) performed on them within a report.

Pre-Defined Filters are fields where a set of conditions have been set up when the view was created. This assists users to limit the data returned in a query to only the expected results. For example if the filter is called ‘United States’ then only data from the united states would be included in the results.

Parameters are fields which are used to capture user defined values and pass them into calculated fields or filters. These parameters can assist in conducting what if analysis.

How are views used?

Views are used by Yellowfin report writers. The view meta-data is stored within the Centralised Yellowfin repository. An end user connects to a view via a web browser when running a report.

By using a view, the end user automatically has access to data within your source system. Access to data is restricted by the fields that are available in the view. These fields have been created by the administrator based on the report users needs.

Assisting Data Analysis

A view can represent the data needs of any specific application, system, or group of users. For example, a view can contain fields that represent the data needs of the Marketing or Accounting departments in a company.
A view can also represent the data needs of a section within a department or any set of organized procedures such as a payroll or inventory system.

Who uses views?

Yellowfin report writers use views for reporting and analysis. The view should provide them with categories and fields relevant to their business domain.

How are fields presented for report writers?

Fields are displayed as nodes in a folder tree as shown below.

View design methodology

The view design methodology consists of four stages:

  1. Analysis of business problem and planning the view solution
  2. Building the view
  3. Defining fields and Creating Calculated Fields
  4. Publishing the view to users

Each implementation phase is based on an assumption that you have completed an initial planning phase.

  1. Plan the view
    The analysis of user requirements and design are the most important stages in the process. Users must be heavily involved in the development process if the view is going to fulfil their needs both with the business language used to name fields and the data that can be accessed.
    Implementation will be very quick and easy if this stage is carried out properly. You should note the following points:
    1. You must fully understand the data analysis and reporting needs of the target audience for the view. Do not create fields by looking at the columns available in the database, but identify columns that are required as a result your user needs analysis.
    2. Understand the source system data and business rules required for generating the required fields for users.
  2. Building the view
    You create an entity relationship diagram for the underlying database structure of your view. This includes the selecting the appropriate tables and columns of the source database and the joins by which they are linked.
  3. Defining Fields
    Select columns form your source system tables and organise these fields into categories. These are fields that you have identified from an analysis of user reporting needs. You can create additional calculated fields and filters to enhance user reporting capabilities and optimise query performance.
    Test the integrity of your view structure. You should also perform tests using the report writer on the view.
  4. Publish the View
    You can publish your view to users for testing, and eventually for production use, by expanding the number of users that have access to the view.

The table below outlines the major phases in a typical view development cycle:

Development phase



Identify the target data source and become familiar with its structure.
Know what data is contained within each table required for the view and the joins that related the tables to each other.


Identify what information the users need. Identify what standard reports they require.
Familiarise yourself with their business terminology so that you can name fields sensibly.
Plan Identify a project strategy. For example, how many views should be created and which ones should have the capacity to be linked and to what level.


Build the view either on the database or through the Yellowfin view builder.
Test frequently during the build process for validity and reliability of inferred SQL.


Form a small group of users, preferably power users who have some knowledge of what information they expect to get from the view.
Pre-Release the view to these users by adding them the access security list for the view.
Ask the users to perform thorough tests simulating live usage of the view(s).


Migrate the view from your Test to Production environments.
Change access security of the view so that it is available to the target user base.


Update and maintain the view as the data sources and user requirements change and grow.

Note: View design should always be driven primarily by user requirements and NOT the data source structure.