Although RecipeCategory
and IngredientCategory
have very similar names and attributes, they are in fact two different entity types, because each of them (a) carries a specific business domain meaning, (b) has distinct kinds of relationships and (c) entails a particular set of rules.
In this regard, if the intention is to implement a relational database (RDB), it is quite helpful to perform an analysis of the business domain of interest (in order to construct a conceptual model) in terms of entity types (i.e., types or prototypes of entity occurrences), their attributes and interrelationships before thinking in terms of tables, columns and constraints (points that correspond to the logical model). Proceeding in this fashion, it is much easier to capture the meaning of the business domain with accuracy and then reflect it in an actual RDB structure.
#Business domain rules
Recipe and RecipeCategory
Let us start working with two entity types: Recipe
and RecipeCategory
. In the scenario in question, it appears reasonable to affirm that:
- A Recipe is classified by zero-one-or-many RecipeCategories
- A RecipeCategory classifies zero-one-or-many Recipes
Such situation indicates, yes, that Recipe
and RecipeCategory
are involved in a many-to-many (M:N) relationship, which implies the existence of an associative entity type, that I am going to call RecipeCategorization
.
Ingredient and IngredientCategory
Then, let us deal with Ingredient
and IngredientCategory
. In this case, we can affirm that:
- An Ingredient is grouped by zero-one-or-many IngredientCategories
- An IngredientCategory groups zero-one-or-many Ingredients
This means that Recipe
and RecipeCategory
are connected in another M:N relationship, which entails the existence of another associative entity type, that I denominated IngredientCategorization
.
RecipeCategory and IngredientCategory
As discussed above, one can observe that the concrete occurrences of RecipeCategory
are meant to be (directly) associated with the specific instances of Recipe
, and not with the occurrences of Ingredient
. In the same manner, the concrete instances of IngredientCategory
are meant to be (directly) connected with the specific occurrences of Ingredient
, and not with the instances of Recipe
. Therefore, RecipeCategory
and IngredientCategory
are distinct entity types, and demand their own respective individual considerations.
Recipe and Ingredient
Finally, we can assume that:
- A Recipe includes one-to-many Ingredients
- An Ingredient is included in zero-one-or-many Recipes
Thus, there is another M:N relationship, this time between Recipe
and Ingredient
, which reveals the existence of other associative entity type, that I am going to entitle RecipeListing
.
#Illustrative IDEF1X model
Then, from the aforementioned analysis and consequent formulations, I created the IDEF1X† model shown in Figure 1:
As demonstrated, each entity type is depicted in its corresponding individual box, and is displayed directly related to (i) its own attributes, contained in the respective box, and to (ii) the entity types that apply, by way of the relationship lines.
Of course, there are other indirect relationships that should be derived via the direct connections exposed here.
#Logical and physical elements
Once we have analyzed and defined the pertinent types of the things of significance, it is time to determine how to manage them by means of mathematical relations (declared and visualized as tables, if created on a certain SQL database management system), which are composed of domains (portrayed as columns) and tuples (pictured as rows).
As relations are abstract resources, Dr. E. F. Codd —the originator of the relational paradigm— envisioned the utility of representing them in tabular form, so that, e.g., the users and implementers of a RDB can approach them in a more familiar way. In this respect, even though a relational table has a concrete shape, it is still a logical element of a given database, and its components, e.g., columns, rows and constraints are logical as well.
In this regard, it is very important and of vast pragmatical value to distinguish logical from physical elements. For instance, in file systems, a physical record can be made up of zero, one or more fields. In the case of a RDB, the logical elements can be served by one or more physical units (at a lower level of abstraction, then), e.g., indexes, records, pages, extents, etc.
Thus, in accordance with the points detailed above, a table —being a logical level component— does not have fields (which may well be part of the underlying concrete scaffoldings supporting a table declaration, but work at the physical level).
#Expository logical SQL-DDL structure
That being said, and based on the IDEF1X model previously presented, both RecipeCategory
and IngredientCategory
(and the rest of the identified entity types too) require an individual base table that stands for each of them, as exemplified in the following DDL structure:
-- You have to determine which are the most fitting
-- data types and sizes for all your table columns
-- depending on your business context characteristics.
-- Also, you should make accurate tests to define the
-- most convenient physical implementation settings; e.g.,
-- a good INDEXing strategy based on query tendencies.
-- As one would expect, you are free to make use of
-- your preferred (or required) naming conventions.
CREATE TABLE RecipeCategory ( -- Plays a ‘look-up’ role.
RecipeCategoryCode CHAR(2) NOT NULL, -- This column can retain the values: ‘O’ for ‘Omnivorous’; ‘VT’ for ‘Vegetarian’; ‘VG’ for ‘Vegan’; etc.
Name CHAR(30) NOT NULL,
Description CHAR(60) NOT NULL,
Etcetera CHAR(30) NOT NULL,
CreatedDateTime DATETIME NOT NULL,
CONSTRAINT RecipeCategory_PK PRIMARY KEY (RecipeCategoryCode),
CONSTRAINT RecipeCategory_AK1 UNIQUE (Name), -- ALTERNATE KEY.
CONSTRAINT RecipeCategory_AK2 UNIQUE (Description) -- ALTERNATE KEY.
);
CREATE TABLE Recipe (
RecipeNumber INT NOT NULL,
Name CHAR(30) NOT NULL,
Description CHAR(60) NOT NULL,
Etcetera CHAR(30) NOT NULL,
CreatedDateTime DATETIME NOT NULL,
CONSTRAINT Recipe_PK PRIMARY KEY (RecipeNumber),
CONSTRAINT Recipe_AK1 UNIQUE (Name), -- ALTERNATE KEY.
CONSTRAINT Recipe_AK2 UNIQUE (Description) -- ALTERNATE KEY.
);
CREATE TABLE RecipeCategorization ( -- Represents an associative entity type.
RecipeNumber INT NOT NULL,
RecipeCategoryCode CHAR(2) NOT NULL, -- Contains meaningful and readable values.
Etcetera CHAR(30) NOT NULL,
ClassifiedDateTime DATETIME NOT NULL,
CONSTRAINT RecipeCategorization_PK PRIMARY KEY (RecipeNumber, RecipeCategoryCode), -- Composite PK.
CONSTRAINT RecipeCategorization_to_Recipe_FK FOREIGN KEY (RecipeNumber)
REFERENCES Recipe (RecipeNumber),
CONSTRAINT RecipeCategorization_to_RecipeCategory_FK FOREIGN KEY (RecipeCategoryCode)
REFERENCES RecipeCategory (RecipeCategoryCode)
);
CREATE TABLE IngredientCategory ( -- Plays a ‘look-up’ role.
IngredientCategoryNumber INT NOT NULL,
Name CHAR(30) NOT NULL,
Description CHAR(60) NOT NULL,
Etcetera CHAR(30) NOT NULL,
CreatedDateTime DATETIME NOT NULL,
CONSTRAINT IngredientCategory_PK PRIMARY KEY (IngredientCategoryNumber),
CONSTRAINT IngredientCategory_AK1 UNIQUE (Name), -- ALTERNATE KEY.
CONSTRAINT IngredientCategory_AK2 UNIQUE (Description) -- ALTERNATE KEY.
);
CREATE TABLE Ingredient (
IngredientNumber INT NOT NULL,
Name CHAR(30) NOT NULL,
Description CHAR(60) NOT NULL,
Etcetera CHAR(30) NOT NULL,
CreatedDateTime DATETIME NOT NULL,
CONSTRAINT Ingredient_PK PRIMARY KEY (IngredientNumber),
CONSTRAINT Ingredient_AK1 UNIQUE (Name), -- ALTERNATE KEY.
CONSTRAINT Ingredient_AK2 UNIQUE (Description) -- ALTERNATE KEY.
);
CREATE TABLE IngredientCategorization ( -- Stands for an ssociative entity type.
IngredientNumber INT NOT NULL,
IngredientCategoryNumber INT NOT NULL,
Etcetera CHAR(30) NOT NULL,
GroupedDateTime DATETIME NOT NULL,
CONSTRAINT IngredientCategorization_PK PRIMARY KEY (IngredientNumber, IngredientCategoryNumber), -- Composite PK.
CONSTRAINT IngredientCategorization_to_Ingredient_FK FOREIGN KEY (IngredientNumber)
REFERENCES Ingredient (IngredientNumber),
CONSTRAINT IngredientCategorization_to_IngredientCategory_FK FOREIGN KEY (IngredientCategoryNumber)
REFERENCES IngredientCategory (IngredientCategoryNumber)
);
CREATE TABLE IngredientListing ( -- Denotes an associative entity type
RecipeNumber INT NOT NULL,
IngredientNumber INT NOT NULL,
Etcetera CHAR(30) NOT NULL,
IncludedDateTime DATETIME NOT NULL,
CONSTRAINT IngredientListing_PK PRIMARY KEY (RecipeNumber, IngredientNumber), -- Composite PK.
CONSTRAINT IngredientListing_to_Recipe_FK FOREIGN KEY (RecipeNumber)
REFERENCES Recipe (RecipeNumber),
CONSTRAINT IngredientListing_to_Ingredient_FK FOREIGN KEY (IngredientNumber)
REFERENCES Ingredient (IngredientNumber)
);
--
--
With such structure, you prevent ambiguities and all their logical and pragmatic repercussions. You avoid mixing up
- the representation of multiple entity types in a single “shared” table, and
- the meaning and intention of each of their attributes (in “shared” columns),
which permits restricting much more easily their corresponding domains of values and the subsequent references through FOREIGN KEY (FK) constraints. The queries and result sets become much more clear because each aspect is approached separately.
This structure, hence, aids by itself in reflecting the business context under consideration with precision, remaining consistent with the characteristics delimited in the conceptual analysis, and guaranteeing that the data (every assertion in the form of a row) complies with the business rules.
Practical considerations regarding the RecipeCategory table
Seing that the RecipeCategory
table is supposed to (1) fulfill a look-up role and (2) would hold only a few rows, I consider that it would be very advantageous to declare it with a PRIMARY KEY
(PK) constraint on a column that keeps values that are meaningful and, at the same time, physically light and narrow, i.e., of type CHAR(2)
or maybe CHAR(3)
. So it might comprise, e.g., the rows that follow:
+-——————————————————-+-——————————-+-—————————————————————————-+-————-+-————-+ | RecipeCategoryCode | Name | Description | Etc… | Cre… | +-——————————————————-+-——————————-+-—————————————————————————-+-————-+-————-+ | O | Omnivorous | Category of recipes that… | … | … | +--------------------+------------+---------------------------+------+------+ | VT | Vegetarian | Category of recipes that… | … | … | +--------------------+------------+---------------------------+------+------+ | VG | Vegan | Category of recipes that… | … | … | +--------------------+------------+---------------------------+------+------+ | F | Foo | Category of recipes that… | … | … | +--------------------+------------+---------------------------+------+------+ | B | Bar | Category of recipes that… | … | … | +--------------------+------------+---------------------------+------+------+
In this manner, when such PK column “migrates” to the RecipeCategorization
table as a column with a FK constraint, it will have stable values that maintain their meaning and intention, making the result sets much more readable than, say, an INT
value, which definitely can assist in the interpretation of the information obtained through, e.g., derived tables (those fetched back by virtue of a SELECT statement or a VIEW definition).
All this remains in agreement with the spirit of the relational model†† published in 1970 by Dr. Codd, where he included the following relevant note:
Naturally, as with any data put into and retrieved from a computer system, the user will normally make far more effective use of the data if he is aware of its meaning.
Relational databases and application programs
The extract of your question cited below has to do, among other things, with the “link” between (a) the database under discussion and (b) the application programs (apps) that will work along with it:
I tested the ideas in the related Q & A Relational tables with same content, custom solution. It's easier to handle data on the frontend side and housekeeping, but data integrity could be an issue if the database grows.
It is opportune to point out that the data, in its essence and of its nature, is a highly valuable organizational asset; as a result, it must be administered as such. This fundamental resource tends to outlive apps, app development platforms and programming paradigms.
With that, a RDB ought to be an independent (self-protective, self-describing, etc.) software component that is capable of being shared by multiple apps, and it must not be “coupled” —using object oriented programming parlance— with the code of any of these apps.
Consequently, you should (a) manage the data by dint of the instruments provided by the relational theory, the modeling platforms and the SQL sytem of choice, and (b) shape and implement the relevant processes and the graphical user interface with the pertinent app development tools. In this way, all the software components will work harmonically; they will be independent but, at the same time, well interconnected.
#Endnote and reference
† Integration Definition for Information Modeling (IDEF1X) is a highly recommendable data modeling technique that was established as a standard in december 1993 by the United States National Institute of Standards and Technology (NIST). It is solidly based on (a) some of the early relational model works authored by Dr. E. F. Codd; on (b) the Entity-Relationship view, developed by Dr. P. P. Chen; and also on (c) the Logical Database Design Technique, created by Robert G. Brown.
†† Codd, E. F. (June 1970). A Relational Model of Data for Large Shared Data Banks, Communications of the ACM, Volume 13 Issue 6 (pp. 377-387). New York, NY, USA.