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I am creating a system with multiple entities, those entities have some common properties like name, phone number and address, etc. On the other hand these entities do have some uncommon properties.

To make it clearer the entities are: restaurants, hospitals, clinic, pharmacies, medical labs, craftsmen, the system is designed to be a ranking system these ranks and reviews entered by the users.

In other words I need to implement another yelp.com system.

My question is how to design the database in such a way to be optimized for search and ease of use?

Do I need different tables for each entity or is there a way to make one system to handle all of the entities.

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What do you think you need to do? You will find your get a better quality of answer and that people are more willing to help you if you are able to demonstrate that you have tried something for yourself. Stack Overflow won't just reverse-engineer something for you. –  Ben Jun 9 '12 at 11:33
sorry for that; it is not what I intended to do, it is just I like the way yelp.com is doing it. –  RaedK Jun 9 '12 at 11:40
Start with a normalized relational model, first; then, worry about searches; you could use Sphinx or Solr to get fast & advanced searches without having to denormalize your data. (also, your database design has nothing to do with "ease of use", unless the user has direct access to the database via SQL... ;-) ) –  Rafa Jul 3 '12 at 21:56

3 Answers 3

I will assume you have already decided on a relational database since you indicated SQL Server in your tags, and that the model you are asking about is the table design for the problem you have described.

There are a lot of discussions of inheritance in database design and some are discussed here.

I would say that unless the entities are really similar, it makes little sense to share things like names in a common table. On the other hand, if you need a single set of geographic coordinates and an icon type to display on a map, then that set might obviously be across entity types. Still one could solve that with UNION at the time of the query, so it perhaps shouldn't be your overriding design principle unless geography is a primary facet of your application and even then, one might simply split geolocation into its own table with appropriate indexing.

I would first lay out all the attributes for your different entities and decide which ones are very similar. Some of those will be so similar that they would be in the same table with a type indicator column. For instance, you listed hospital and clinic - I can't imagine these would have very many differences unless you had extensive details about the services or sub-departments and even then I expect a clinic would simply be a hospital with fewer entries in its related services or departments table.

I would be more interested in the nature of the uncommon qualities, because unless they were very extensive, all of these entities would seem to be in the same table. Since the first step in relational data modeling is to identify all the attribute data first and then identify the relations to candidate keys, I would see about gathering the atttributes first and seeing just how many differences there are.

Optimizing for search is going to depend upon how your searches are defined. For instance if you are searching by location, you might have your entities tagged with a metro area only or full geolocation. There is indexing which would help you be able to search on distance from a location. If you need to choose only certain types of entities, you would ensure that your indexes included that column. At this point, denormalization is not going to help your search as much as indexing which covers the queries. Denormalization works best when the result sets are large. The point of search is to give users result sets, which, by definition, must be small for them to be able to find them useful. A list of 1000 restaurants is not useful to a user, since they can only eat at a handful in a day.

As far as ease of use, I assume you are talking about ease of access from a programming perspective. If you end up with an EAV model, you can always make it easier to query by using views. If you have a single entity table but want easier ways to get just hospitals, again, views can help, so just because you have a certain underlying database model, you can still present it to other levels of the system in different ways, and these don't always necessarily introduce a lot of performance issues, since the optimizer can work very well with views (as long as they don't encounter things they have a hard time working around like aggregates which stop them being able to rearrange them as easily).

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well, actually the differences are much more than the similarities, for the hospital clinic thing I though I could create a medical section since there is a lot of similarities, but for the other categories, would it be good to make separate table for each category. because there is indeed a lot of deep details about each category; for instance restaurants do have food they serve, meal cost, parking, delivery, etc. while craftsmen have other characteristics such as what craft he do, and even more what sub craft he do. –  RaedK Jun 9 '12 at 12:51
@RaedKanan I expect you will have auxiliary tables which are specific to a range of types. I'm wondering if you will have a strict hierarchy of entity types or whether it would be a many-to-one - e.g. restaurant->chinese vs craftsmen->roofing+craftsmen->siding - perhaps only certain levels have auxiliary tables. If the schema has to change too frequently, you may need to consider an EAV model (database within a database) for certain aspects of their attributes or a more freeform feature like XML columns or a document database –  Cade Roux Jun 9 '12 at 13:27
I think I will have both a many-one and a hierarchy, example will be categorized into surgery, dental, diabetes, etc. and then if that clinic takes cash or credit card, what insurance companies deals with. restaurants goes in same way is that restaurant a Chinese one and a many to one relationship (if it has a parking or/and good for groups, etc.) and one major problem with this that some categories will have more levels than the others. so lets say I want to use RDBMS; because I am new database design. using a specific table for each category is not a good technique?? –  RaedK Jun 9 '12 at 13:54
@RaedKanan I would have an entity table with name, phone, primary type, etc. There might be a supplemental restaurant table which is used for all entities of primary type RESTAURANT which contains restaurant-only attributes. The categories table would link categories to an entity, like a restaurant might be in both chinese and japanese category (some categories might be restricted to a type, but others might be across types), but this would probably not be a restaurant-specific thing. Taking cash or credit card would be something which would also link to all entities, regardless of type. –  Cade Roux Jun 9 '12 at 15:28
@RaedKanan Parking would be relevant to all entities as well, not just restaurants. Requires reservations might be something which is only for restaurants, but some doctors might be appointment only, a similar thing. The temptation to have schema-free database is strong, but this will have processing overhead to compensate for less design. –  Cade Roux Jun 9 '12 at 15:31

It's been hyped but CQRS can defenitly help you here. Just reading and investigating about it will make you better prepared if you don't go with pure CQRS (whatever that is)

The key to optimize for searches is

  • no joining

    A relational database is know for it joins of course but you can minimize them by "denormalisation" to speed up queries

  • have the best indexes possible

    Read a few books that discuss the ins and outs of indexing. The best advice here is to make the index cover the query so it doesn't have to join either

If you realy need to scale out (opposed to scale up), meaning you want to gain performance just by adding machines, you need to read about noSQL databases since they allow sharding and are all about not joining. I don't know enough about them how they behave with searches other than a seek (which is very fast due to the sharding). The have downsides like no good support for ad hoq reporting though so you need to investigate/experiment/proof of concept.

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  • If you are not yet fixed with a RDBMS, I would suggest you to read about NoSQL databases like MongoDB and CouchDB.
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I already started using MSSQL, I have tried something, I have created one general table for the common properties, and linking that table to other tables, I have created a punch of tables for each category, so let us say for restaurants I just save the common fields in the General table, and what type of food and other specific details for the restaurants in a collection of tables, and for Gyms lets say I also store the common fields with that same General table, and anther punch of tables to store details specific to gyms, etc. –  RaedK Jun 9 '12 at 12:17

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