Which of these data models is the most correct? - database

I'm in the process of creating the data model for an application I will be developing, and I was hoping to get some feedback on part of the model. The app will be a complete redevelopment of something that was created in Lotus Notes, and one of the main purposes of the redevelopment is to move toward a relational data storage layer.
The application is focused on managing Things. The requirements/constraints of the application are:
A Thing must have an associated Location.
A Location could be for example 'McDonalds', or 'Melbourne Uni, Building AK, Room 301' where 'Melbourne Uni', 'Building AK', and 'Room 301' are seperate related Locations.
(at least) 3 levels/tiers of Location must exist
There must be a provision for 'Other' locations, so that users can enter free text for a location that does not exist in the database
So I've come up with 4 different implementations of the above, but I don't really have enough DBA experience to know which one is the most correct.
Location / Thing relational model
Any thoughts and/or suggestions on this would be greatly appreciated!

Both option 1s are likely to prove inflexible and difficult to amend if your estimate of three levels proves to be insufficient.
In your option 2s, the entity that looks dubious is ThingOtherLocations. Anything that (from its name) is concatenating two different concepts is automatically suspect.If it is the case that you do have two separate concepts here, then the structure of option 2b does not need either OtherLocation or ThingOtherLocation. I suspect that the relation you are trying to represent (gets its name from) is actually another relation between locations - though I am not clear on this.
EDIT
In the light of your clarification of the ThingOtherLocations, I would suggest that you treat the text associated with Other simply as a new location, and store the new location along with other locations. There does not seem to be any reason to include special database handling for these cases.
EDIT
To deal with the child location issue, you might like to consider Joe Celko's work on nested sets. The primary reference for this is:
Joe Celko.
Joe Celko's Trees and Hierarchies in SQL for Smarties,
(The Morgan Kaufmann Series in Data Management Systems)
ISBN 1-55860-920-2

Related

Database Structure (zero-to-one-to-many relationships)

I am currently working on creating a database for a community partnership program for educational purposes. The structure of the DB should be simple be as stated above, the data tends to overlap in various of ways. There are four main categories; Internships, Jobs, Summer/Yearly Programs, and Other. Followed by an Address book/Contacts list.
This is the part where the data is difficult to structure. The employer and has relate to the "employment posting" and doing so relates to the school's academic departments, 6. But some employers require more than one. This data will then be followed by, how many openings?, posting date, follow up contact date, Student hired? if so, student evaluation, and Notes.
I'm not asking how to create the DB, but how would I organize and structure such a complex data collection? I have managed DB's, (putting in information) and I know how to build from scratch as needed. But I have been tasked with structuring somethings like this.
Here is an image of information needed to collect. (More or less)
Click me!
If you are stuck at the "How do I get started?" stage, I suggest that you start at a very high level (the conceptual data model), then refine only a bit to the logical data model, then to physical data model. Here is a short explanation of the 3 different kinds of data model. (Don't worry that it appears to be about data warehouses - these bits aren't specific to data warehouses.)
For a bit more detail, there is another article on data modeling - again, don't worry that it appears in the context of Agile - this is generally useful stuff even if you're not using Agile.
Another two things that might help are these questions (in this order):
What questions do I need the database to answer?
What information does it need to provide a home for? (Why? If it's not covered by part of the answer to the first question, challenge why it's needed.)

What is the most compact way to represent a database?

I have a database (20 tables, up to a maximum of 17 rows) that I need to represent schematically or graphically on one A4 sheet.
I'm looking for a way to do this, since I only know about ER models and I couldn't manage to squeeze it into a single page.
It could also be a textual representation, as long as it is a standardized way.
Some people call Data Models "ER Diagrams", which is what you appear to be doing; others call ERDs "Data Models". Don't worry about the common usage terms, we have a lot of non-professionals in the industry these days, who call apples oranges. Life is much easier when you use the correct labels.
The Entity Relation Diagram is a schematic of the Entities and Relations (only), that's why it is called an ER diagram and not a Data Model. Ten tables will easily fit onto an A4 page. You will have space to add notes and text.
The Data Model is the full schematic of the Entities, Relations and Attributes, with the Primary Key differentiated clearly. Depending on the stage of progress and the audience, or the logical vs physical rendering, it will additionally show:
the other Indices (other than the Primary Key)
DataTypes
full detail re the Relations
Associative tables (many-to-many, shown as a Relation at the Logical level; exposed as a table at the Physical level)
Subtypes/Supertypes fully exposed
Depending on whether you use the Relational modelling Standard or not, it will show the subtleties and complexities of the data and its Relations.
Obviously, if you use Standard notation, then you will be understood by more people, and you never have to go back and change it when more people learn the Standard and expect that notation.
Have a look at the Data Model provided in the link below. The first page is the ERD (28 Entities, while retaining the hierarchy). The DM is delivered in the subsequent 4 x A4 pages, each containing a logical cluster of tables; and all five pages are linked (make sure you find the notes re links, and click on them).
Even for the DM, I find it is best to present information:
in manageable or understandable chunks, an A4 page containing a logically related cluster,
which has to be complete it itself (all the parent tables must be shown), which leads to duplication
but I never duplicate anything
therefore I define it once, in its natural cluster, and use a collapsed Entity symbol wherever it is referenced, and link the reference to the full definition.
The other technique that I have found that seriously improves understanding, is to show the objects in their natural hierarchy. That technique is detailed in the Notation document.
Another option for you, with only ten tables, is to draw the schema at Data Model level, but only show the Primary Keys (exclude non-PK attributes); one small step beyond ERD, and one big step less than full DM. I do not recommend this, rather, give them the full DM as well as the ERD, on however many A4 pages it takes. People can stop at the first page, or go further if they want.
Link to Example ERD & Data Model
Link to IDEF1X Notation for those who are unfamiliar with the Relational Modelling Standard.
Instead of squeezing all information into a small area, try leaving out the non-essential columns. I don't know what the usage of your representation is, but if it is to be read by humans you should remember that the denser the information is packed, the more of it will simply be ignored by the human brain when processing the image.
Less is more, as usual.

have address columns in each table or an address table that is referenced by the other tables?

Say I had three tables: Accommodation, Train Stations and Airports. Would I have address columns in each table or an address table that is referenced by the other tables? Is there such a thing as over-normalization?
Database Normalization is all about constructing relations (tables) that maintain certain functional
dependencies among the facts (columns) within the relation (table) and among the various relations (tables)
making up the schema (database). Bit of a mouth-full, but that is what it is all about.
A Simple Guide to Five Normal Forms in Relational Database Theory
is the classic reference for normal forms. This paper defines in simple terms what the essence of each normal form is
and its significance with respect to database table design. This is a very good "touch-stone" reference.
To answer your specific question properly requires additional information. Some critical questions you have to ask
are:
Is an Address a simple fact (e.g. blob of text) or a composite fact (e.g.
composed of multiple attributes: Address line, City Name, Postal Code etc.)
What are the other "facts" relating to "Accommodation",
"Airport" and "Train Station"?
What sets of "facts" uniquely and minimally identify an "Airport", an "Accommodation"
and a "Train Station" (these facts are typically called a key or candidate key)?
What functional dependencies exist among Address facts and the facts
composing each relations key?
All this to say, the answer to your question is not as straight forward as one might hope for!
Is there such a thing as "over normalization"? Maybe. This depends on whether the
functional dependencies you have identified and used to build your tables are
of significance to your application domain.
For example, suppose it was determined that an address
was composed of multiple attributes; one of which is postal code. Technically a postal
code is a composite item too (at least Canadian Postal Codes are). Further normalizing your
database to recognize these facts would probably be an over-normalization. This is because
the components of a postal code are irrelevant to your application and therefore factoring
them into the database design would be an over-normalization.
For addresses, I would almost always create a separate address table. Not only for normalization but also for consistency in fields stored.
As for such a thing as over-normalization, absolutely there is! It's hard to give you guidance on what is and isn't over-normalization as I think it mostly comes from experience. However, follow the books on each level of normalization and then once it starts to get difficult to see where things are you've probably gone too far.
Look at all the sample/example databases you can as well. They will give you a good indication on when you should be splitting out data and when you shouldn't.
Also, be well aware of the type and amount of data you're storing, along with the speed of access, etc. A lot of modern web software is going fully de-normalized for many performance and scalability reason. It's worth looking into those for reason why and when you should and shouldn't de-normalize.
Would I have address columns in each table or an address table that is referenced by the other tables?
Can airports, train stations and accommodation each have a different address format?
A single ADDRESS table minimizes the work necessary dealing with addresses - suite, RR, postal/zip code, state/province...
Is there such a thing as over-normalization?
There are different levels of normalization. I've only encountered what I'd consider poor design rather than normalization.
Personally I'd go for another table.
I think it makes the design cleaner, makes reporting on addresses much simpler and will make any changes you need to make to the address schema easier.
If you need to have it denormalized later on you can always create two views that contain the Train station and airport information along with any address information you need.
This isn't really what I understand by normalisation. You don't seem to be talking about removing redundancy, just how to partition the storage or data model. I'm assuming that the example of addresses for Accommodation, Train Stations and Airports will all be disjoint?
As far as I know it would only be normalisation if you started thinking along the lines. Postcode is functionally dependent upon street address so should be factored out into its own table.
In which case this could be ever desirable or undesirable dependent upon context. Perhaps desirable if you administer the records and can ensure correctness, and less desirable if users can update their own records.
A related question is Is normalizing a person’s name going too far?
If you have a project/piece of functionality that is very performance sensitive, it may be smart to denormalize the database in some cases. However, this can lead to maintenance issues for various reasons. You may instead want to duplicate the data with cache tables but there are drawbacks to this as well. It's really a case by case basis but in normal practice, database normalization is a good thing. 99% of the non-normalized databases I've seen are not by design, but rather by a misunderstanding/mistake by the developer.
Would I have address columns in each table or an address table that is referenced by the other tables?
As others have alluded to, this is not really a question of normalization because you're not attempting to reduce redundancy or organize dependencies. Either way is perfectly acceptable. Moving the addresses to a separate table might make sense if you are going to have centralized validation or business logic specific to addresses.
Is there such a thing as over-normalization?
Yes. As has been mentioned, in large systems (lots of data, lots of transactions, or both) you can normalize to the point where performance becomes an issue. This is why lots of systems use denormalized database for reporting and querying.
In addition to performance though, there is also the issue of how easy the data is to query. In systems where there will be a lot of end-user querying of the data (can be dangerous!), a denormalized structure is easier for most non-technical or non-database people to understand.
Like most things we deal with, it's a trade-off between understanding, performance, and future maintainability and there is rarely a clear-cut answer to where you draw the line in any given system.
With experience, you will learn where the line is best drawn for the systems you write.
With that said, my preference is to err on the side of more vs less normalization.
If you are using Oracle 9i, you could store address objects in your tables. That would remove the (justified) concerns about address formats.
I agree with S.Lott, and would like to add:
A good answer depends on what you know already. The basic "math" of relational database theory, however, defines very well-defined, distinct levels of normalization. You cannot normalize anymore when you've reached the ultimate normal form.
Depending on what you want to model with your three entities, and how you identify them, you can come up with very different conceptual data models, all of which can be represented in a mix of normal forms -- or unnormalized at all (like 1 table for all data with descriptors and NULL holes all over the place...).
Consider you normalize your three entities to the ultimate normal form. I can now introduce a new requirement, or use case, or extension, which gives an upto-now descriptive attribute a somehow ordered, or referencing, or structured nature if you look at its content. Then, the model should represent this behavior, and what used to be an attribute perhaps will better be a separate entity referenced by other entities.
Over-normalization? Only in the sense that can you normalize a given model so it gets inefficient to store, or process, on a given DB platform. Depending on what can be handled efficiently there, you might want to de-normalize certain aspects, trading off redundancy for speed (data warehouse dbs do this all the time), and insight, or vice versa.
All (working) db designs I've seen so far either have a rather normalized conceptual data model, with quite some denormalization done at the logical and/or physical data model level (speaking in Sybase PowerDesigner terms) to make the model "manageable" -- either that, or they were not working, i.e. failed because the maintenance problems became kingsize real quick.
When you say "address", I presume you mean a complete address, like street, city, state/province, maybe country, and zip/postal code. That's 4 or 5 fields, maybe more if you allow for "address line 1" and "address line 2", care-of's, etc. That should definately be in a separate table, with an "addressid" to link to the Station, etc tables. Otherwise, you are creating 3 separate copies of the same set of field definitions. That's bad news because it creates extra effort to keep them consistent. Like, what if initially you are only dealing with U.S. addresses (I'm an American so I'll assume U.S.), but later you find you also need to allow for Canadians. You'll need to expand the size of the postal code field and add a country code. If there's a common table, then you only have to do this once. If there isn't, then you have to do this three times. And it's likely that the "three times" is not just changing the database schema, but changing every place in your programs that processes an address.
One of the benefits of normalization is to minimize the impact of changes.
There are times when you want to denormalize to make queries more efficient. But this should be done very cautiously, only after you have good reason to believe that the fully normalized model creates serious inefficiency problems. In my humble experience, most programmers are far to quick to denormalize, usually with a quick "oh, breaking that out into a separate table is too much trouble".
I think in this situation it is OK to have address columns in each table. You'll hardly have an address which will be used more than two times. Most of the adresses will be used just one per entity.
But what could be in an extra table are names of streets, cities, countries...
And most important every train station, accomodoation and airport will probably have just one address so it's an n:1 relation.
I can only add one more constructive note to the answers already posted here. However you choose to normalize your database, that very process becomes almost trivial when the addresses are standardized (look the same). This is because as you endeavor to prevent duplicates, all the addresses that are actually the same do look the same.
Now, standardizing addresses is not trivial. There are CASS services which do this for you (for US addresses) which have been certified by the USPS. I actually work for SmartyStreets where this is our expertise, so I'd suggest you start your search there. You can either perform batch processing or use the API to standardize the addresses as you receive them.
Without something like this, your database may be normalized, but duplicate address data (whether correct or incomplete and invalid, etc) will still seep in because of the many, many forms they can take. If you have any further questions about this, I'll personally assisty you.

Template Matching for relational database

I am trying to do the following:
we are trying to design a fraud detection system for stock market.
I know the Specification for the frauds (they are like templates).
so I want to know if I can design a template, and find all records that match this template.
Notice:
I can't use the traditional queries cause the templates are complex
for example one of my Fraud is circular trading,it's like this :
A bought from B, and B bought from C, And C bought from A (it's a cycle)
and this cycle can include 4 or 5 persons.
is there any good suggestion for this situation.
I don't see why you can't use "traditional queries" as you've stated. SQL can be used to write extraordinarily complex queries. For that matter I'm not sure that this is a hugely challenging question.
Firstly, I'd look at the behavior you have described as vary transactional, therefore I treat the transactions as a model. I'd likely have a transactions table with some columns like buyer, seller, amount, etc...
You could alternatively have the shares as its own table and store say the previous 100 owners of that share in the same table using STI (Single Table Inheritance) buy putting all the primary keys of the owners into an "owners" column in your shares table like 234/823/12334/1234/... that way you can do complex queries and see if that share was owned by the same person or look for patterns in the string really easily and quickly.
-update-
I wouldn't suggest making up a "small language" I don't see why you'd want to do something like that when you have huge selection of wonderful languages and databases to choose from, all of which have well refined and tested methods to solve exactly what you are doing.
My best advice is pop open your IDE (thumbs up for TextMate) and pick your favorite language (Ruby in my case). Find some sample data and create your database and start writing some code! You can't go wrong trying to experiment like this, it'll will totally expose better ways to go about it than we can dream up here on Stackoverflow.
Definitely Data Mining. But as you point out, you've already got the models (your templates). Look up fraud DETECTION rather than prevention for better search results?
I know a some banks use SPSS PASW Modeler for fraud detection. This is very intuitive and you can see what you are doing as you play around with the data. So you can implement your templates. I agree with Joseph, you need to get playing, making some new data structures.
Maybe a timeseries model?
Theoretically you could develop a "Small Language" first, something with a simple syntax (that makes expressing the domain - in your case fraud patterns - easy) and from it generate one or more SQL queries.
As most solutions, this could be thought of as a slider: at one extreme there is the "full Fraud Detection Language" at the other, you could just build stored procedures for the most common cases, and write new stored procedures which use the more "basic" blocks you wrote before to implement the various patterns.
What you are trying to do falls under the Data Mining umbrella, so you could also try to learn more about it: maybe you can find a Data Mining package for your specific DB (you didn't specify) and see if it helps you finding common patterns in your data.

Designing tables for storing various requirements and stats for multiplayer game

Original Question:
Hello,
I am creating very simple hobby project - browser based multiplayer game. I am stuck at designing tables for storing information about quest / skill requirements.
For now, I designed my tables in following way:
table user (basic information about users)
table stat (variety of stats)
table user_stats (connecting each user with stats)
Another example:
table monsters (basic information about npc enemies)
table monster_stats (connecting monsters with stats, using the same stat table from above)
Those were the simple cases. I must admit, that I am stuck while designing requirements for different things, e.g quests. Sample quest A might have only minimum character level requirement (and that is easy to implement) - but another one, quest B has multitude of other reqs (finished quests, gained skills, possessing specific items, etc) - what is a good way of designing tables for storing this kind of information?
In a similar manner - what is an efficient way of storing information about skill requirements? (specific character class, min level, etc).
I would be grateful for any help or information about creating database driven games.
Edit:
Thank You for the answers, yet I would like to receive more. As I am having some problems designing an rather complicated database layout for craftable items, I am starting a max bounty for this question.
I would like to receive links to articles / code snippets / anything connected with best practices of designing databases for storing game data (an good example of this kind of information is availibe on buildingbrowsergames.com).
I would be grateful for any help.
I'll edit this to add as many other pertinent issues as I can, although I wish the OP would address my comment above. I speak from several years as a professional online game developer and many more years as a hobbyist online game developer, for what it's worth.
Online games imply some sort of persistence, which means that you have broadly two types of data - one is designed by you, the other is created by the players in the course of play. Most likely you are going to store both in your database. Make sure you have different tables for these and cross-reference them properly via the usual database normalisation rules. (eg. If your player crafts a broadsword, you don't create an entire new row with all the properties of a sword. You create a new row in the player_items table with the per-instance properties, and refer to the broadsword row in the item_types table which holds the per-itemtype properties.) If you find a row of data is holding some things that you designed and some things that the player is changing during play, you need to normalise it out into two tables.
This is really the typical class/instance separation issue, and applies to many things in such games: a goblin instance doesn't need to store all the details of what it means to be a goblin (eg. green skin), only things pertinent to that instance (eg. location, current health). Some times there is a subtlety to the act of construction, in that instance data needs to be created based on class data. (Eg. setting a goblin instance's starting health based upon a goblin type's max health.) My advice is to hard-code these into your code that creates the instances and inserts the row for it. This information only changes rarely since there are few such values in practice. (Initial scores of depletable resources like health, stamina, mana... that's about it.)
Try and find a consistent terminology to separate instance data from type data - this will make life easier later when you're patching a live game and trying not to trash the hard work of your players by editing the wrong tables. This also makes caching a lot easier - you can typically cache your class/type data with impunity because it only ever changes when you, the designer, pushes new data up there. You can run it through memcached, or consider loading it all at start up time if your game has a continuous process (ie. is not PHP/ASP/CGI/etc), etc.
Remember that deleting anything from your design-side data is risky once you go live, since player-generated data may refer back to it. Test everything thoroughly locally before deploying to the live server because once it's up there, it's hard to take it down. Consider ways to be able to mark rows of such data as removed in a safe fashion - maybe a boolean 'live' column which, if set to false, means it just won't show up in the typical query. Think about the impact on players if you disable items they earned (and doubly if these are items they paid for).
The actual crafting side can't really be answered without knowing how you want to design your game. The database design must follow the game design. But I'll run through a trivial idea. Maybe you will want to be able to create a basic object and then augment it with runes or crystals or whatever. For that, you just need a one-to-many relationship between item instance and augmentation instance. (Remember, you might have item type and augmentation type tables too.) Each augmentation can specify a property of an item (eg. durability, max damage done in combat, weight) and a modifier (typically as a multiplier, eg. 1.1 to add a 10% bonus). You can see my explanation for how to implement these modifying effects here and here - the same principles apply for temporary skill and spell effects as apply for permanent item modification.
For character stats in a database driven game, I would generally advise to stick with the naïve approach of one column (integer or float) per statistic. Adding columns later is not a difficult operation and since you're going to be reading these values a lot, you might not want to be performing joins on them all the time. However, if you really do need the flexibility, then your method is fine. This strongly resembles the skill level table I suggest below: lots of game data can be modelled in this way - map a class or instance of one thing to a class or instance of other things, often with some additional data to describe the mapping (in this case, the value of the statistic).
Once you have these basic joins set up - and indeed any other complex queries that result from the separation of class/instance data in a way that may not be convenient for your code - consider creating a view or a stored procedure to perform them behind the scenes so that your application code doesn't have to worry about it any more.
Other good database practices apply, of course - use transactions when you need to ensure multiple actions happen atomically (eg. trading), put indices on the fields you search most often, use VACUUM/OPTIMIZE TABLE/whatever during quiet periods to keep performance up, etc.
(Original answer below this point.)
To be honest I wouldn't store the quest requirement information in the relational database, but in some sort of script. Ultimately your idea of a 'requirement' takes on several varying forms which could draw on different sorts of data (eg. level, class, prior quests completed, item possession) and operators (a level might be a minimum or a maximum, some quests may require an item whereas others may require its absence, etc) not to mention a combination of conjunctions and disjunctions (some quests require all requirements to be met, whereas others may only require 1 of several to be met). This sort of thing is much more easily specified in an imperative language. That's not to say you don't have a quest table in the DB, just that you don't try and encode the sometimes arbitrary requirements into the schema. I'd have a requirement_script_id column to reference an external script. I suppose you could put the actual script into the DB as a text field if it suits, too.
Skill requirements are suited to the DB though, and quite trivial given the typical game system of learning skills as you progress through levels in a certain class:
table skill_levels
{
int skill_id FOREIGN KEY;
int class_id FOREIGN KEY;
int min_level;
}
myPotentialSkillList = SELECT * FROM skill_levels INNER JOIN
skill ON skill_levels.skill_id = skill.id
WHERE class_id = my_skill
ORDER BY skill_levels.min_level ASC;
Need a skill tree? Add a column prerequisite_skill_id. And so on.
Update:
Judging by the comments, it looks like a lot of people have a problem with XML. I know it's cool to bash it now and it does have its problems, but in this case I think it works. One of the other reasons that I chose it is that there are a ton of libraries for parsing it, so that can make life easier.
The other key concept is that the information is really non-relational. So yes, you could store the data in any particular example in a bunch of different tables with lots of joins, but that's a pain. But if I kept giving you a slightly different examples I bet you'd have to modify your design ad infinitum. I don't think adding tables and modifying complicated SQL statements is very much fun. So it's a little frustrating that #scheibk's comment has been voted up.
Original Post:
I think the problem you might have with storing quest information in the database is that it isn't really relational (that is, it doesn't really fit easily into a table). That might be why you're having trouble designing tables for the data.
On the other hand, if you put your quest information directly into code, that means you'll have to edit the code and recompile each time you want to add a quest. Lame.
So if I was you I might consider storing my quest information in an XML file or something similar. I know that's the generic solution for just about anything, but in this case it sounds right to me. XML is really made for storing non-relation and/or hierarchical data, just like the stuff you need to store for your quest.
Summary: You could come up with your own schema, create your XML file, and then load it at run time somehow (or even store the XML in the database).
Example XML:
<quests>
<quest name="Return Ring to Mordor">
<characterReqs>
<level>60</level>
<finishedQuests>
<quest name="Get Double Cheeseburger" />
<quest name="Go to Vegas for the Weekend" />
</finishedQuests>
<skills>
<skill name="nunchuks" />
<skill name="plundering" />
</skills>
<items>
<item name="genie's lamp" />
<item name="noise cancelling headphones for robin williams' voice />
</items>
</characterReqs>
<steps>
<step number="1">Get to Mordor</step>
<step number="2">Throw Ring into Lava</step>
<step number="3">...</step>
<step number="4">Profit</step>
</steps>
</quest>
</quests>
It sounds like you're ready for general object oriented design (OOD) principles. I'm going to purposefully ignore the context (gaming, MMO, etc) because that really doesn't matter to how you do a design process. And me giving you links is less useful than explaining what terms will be most helpful to look up yourself, IMO; I'll put those in bold.
In OOD, the database schema comes directly from your system design, not the other way around. Your design will tell you what your base object classes are and which properties can live in the same table (the ones in 1:1 relationship with the object) versus which to make mapping tables for (anything with 1:n or n:m relationships - for exmaple, one user has multiple stats, so it's 1:n). In fact, if you do the OOD correctly, you will have zero decisions to make regarding the final DB layout.
The "correct" way to do any OO mapping is learned as a multi-step process called "Database Normalization". The basics of which is just as I described: find the "arity" of the object relationships (1:1, 1:n,...) and make mapping tables for the 1:n's and n:m's. For 1:n's you end up with two tables, the "base" table and a "base_subobjects" table (eg. your "users" and "user_stats" is a good example) with the "foreign key" (the Id of the base object) as a column in the subobject mapping table. For n:m's, you end up with three tables: "base", "subobjects", and "base_subobjects_map" where the map has one column for the base Id and one for the subobject Id. This might be necessary in your example for N quests that can each have M requirements (so the requirement conditions can be shared among quests).
That's 85% of what you need to know. The rest is how to handle inheritance, which I advise you to just skip unless you're masochistic. Now just go figure out how you want it to work before you start coding stuff up and the rest is cake.
The thread in #Shea Daniel's answer is on the right track: the specification for a quest is non-relational, and also includes logic as well as data.
Using XML or Lua are examples, but the more general idea is to develop your own Domain-Specific Language to encode quests. Here are a few articles about this concept, related to game design:
The Whimsy Of Domain-Specific Languages
Using a Domain Specific Language for Behaviors
Using Domain-Specific Modeling towards Computer Games Development Industrialization
You can store the block of code for a given quest into a TEXT field in your database, but you won't have much flexibility to use SQL to query specific parts of it. For instance, given the skills a character currently has, which quests are open to him? This won't be easy to query in SQL, if the quest prerequisites are encoded in your DSL in a TEXT field.
You can try to encode individual prerequisites in a relational manner, but it quickly gets out of hand. Relational and object-oriented just don't go well together. You can try to model it this way:
Chars <--- CharAttributes --> AllAttributes <-- QuestPrereqs --> Quests
And then do a LEFT JOIN looking for any quests for which no prereqs are missing in the character's attributes. Here's pseudo-code:
SELECT quest_id
FROM QuestPrereqs
JOIN AllAttributes
LEFT JOIN CharAttributes
GROUP BY quest_id
HAVING COUNT(AllAttributes) = COUNT(CharAttributes);
But the problem with this is that now you have to model every aspect of your character that could be a prerequisite (stats, skills, level, possessions, quests completed) as some kind of abstract "Attribute" that fits into this structure.
This solves this problem of tracking quest prerequisites, but it leaves you with another problem: the character is modeled in a non-relational way, essentially an Entity-Attribute-Value architecture which breaks a bunch of relational rules and makes other types of queries incredibly difficult.
Not directly related to the design of your database, but a similar question was asked a few weeks back about class diagram examples for an RPG
I'm sure you can find something useful in there :)
Regarding your basic structure, you may (depending on the nature of your game) want to consider driving toward convergence of representation between player character and non-player characters, so that code that would naturally operate the same on either doesn't have to worry about the distinction. This would suggest, instead of having user and monster tables, having a character table that represents everything PCs and NPCs have in common, and then a user table for information unique to PCs and/or user accounts. The user table would have a character_id foreign key, and you could tell a player character row by the fact that a user row exists corresponding to it.
For representing quests in a model like yours, the way I would do it would look like:
quest_model
===============
id
name ['Quest for the Holy Grail', 'You Killed My Father', etc.]
etc.
quest_model_req_type
===============
id
name ['Minimum Level', 'Skill', 'Equipment', etc.]
etc.
quest_model_req
===============
id
quest_id
quest_model_req_type_id
value [10 (for Minimum Level), 'Horseback Riding' (for Skill), etc.]
quest
===============
id
quest_model_id
user_id
status
etc.
So a quest_model is the core definition of the quest structure; each quest_model can have 0..n associated quest_model_req rows, which are requirements specific to that quest model. Every quest_model_req is associated with a quest_model_req_type, which defines the general type of requirement: achieving a Minimum Level, having a Skill, possessing a piece of Equipment, and so on. The quest_model_req also has a value, which configures the requirement for this specific quest; for example, a Minimum Level type requirement might have a value of 20, meaning you must be at least level 20.
The quest table, then, is individual instances of quests that players are undertaking or have undertaken. The quest is associated with a quest_model and a user (or perhaps character, if you ever want NPCs to be able to do quests!), and has a status indicating where the progress of the quest stands, and whatever other tracking turns out useful.
This is a bare-bones structure that would, of course, have to be built out to accomodate the needs of particular games, but it should illustrate the direction I'd recommend.
Oh, and since someone else threw around their credentials, mine are that I've been a hobbyist game developer on live, public-facing projects for 16 years now.
I'd be extremely careful of what you actually store in a DB, especially for an MMORPG. Keep in mind, these things are designed to be MASSIVE with thousands of users, and game code has to execute excessively quickly and send a crap-ton of data over the network, not only to the players on their home connections but also between servers on the back-end. You're also going to have to scale out eventually and databases and scaling out are not two things that I feel mix particularly well, particularly when you start sharding into different regions and then adding instance servers to your shards and so on. You end up with a whole lot of servers talking to databases and passing a lot of data, some of which isn't even relevant to the game at all (SQL text going to a SQL server is useless network traffic that you should cut down on).
Here's a suggestion: Limit your SQL database to storing only things that will change as players play the game. Monsters and monster stats will not change. Items and item stats will not change. Quest goals will not change. Don't store these things in a SQL database, instead store them in the code somewhere.
Doing this means that every server that ever lives will always know all of this information without ever having to query a database. Now, you don't store quests at all, you just store accomplishments of the player and the game programatically determines the affects of those quests being completed. You don't waste data transferring information between servers because you're only sending event ID's or something of that nature (you can optimize the data you pass by only using just enough bits to represent all the event ID's and this will cut down on network traffic. May seem insignificant but nothing is insignificant in massive network apps).
Do the same thing for monster stats and item stats. These things don't change during gameplay so there's no need to keep them in a DB at all and therefore this information NEVER needs to travel over the network. The only thing you store is the ID of the items or monster kills or anything like that which is non-deterministic (i.e. it can change during gameplay in a way which you can't predict). You can have dedicated item servers or monster stat servers or something like that and you can add those to your shards if you end up having huge numbers of these things that occupy too much memory, then just pass the data that's necessary for a particular quest or area to the instance server that is handling that thing to cut down further on space, but keep in mind that this will up the amount of data you need to pass down the network to spool up a new instance server so it's a trade-off. As long as you're aware of the consequences of this trade-off, you can use good judgement and decide what you want to do. Another possibility is to limit instance servers to a particular quest/region/event/whatever and only equip it with enough information to the thing it's responsible for, but this is more complex and potentially limits your scaling out since resource allocation will become static instead of dynamic (if you have 50 servers of each quest and suddenly everyone goes on the same quest, you'll have 49 idle servers and one really swamped server). Again, it's a trade-off so be sure you understand it and make good choices for your application.
Once you've identified exactly what information in your game is non-deterministic, then you can design a database around that information. That becomes a bit easier: players have stats, players have items, players have skills, players have accomplishments, etc, all fairly easy to map out. You don't need descriptions for things like skills, accomplishments, items, etc, or even their effects or names or anything since the server can determine all that stuff for you from the ID's of those things at runtime without needing a database query.
Now, a lot of this probably sounds like overkill to you. After all, a good database can do queries very rapidly. However, your bandwidth is extremely precious, even in the data center, so you need to limit your use of it to only what is absolutely necessary to send and only send that data when it's absolutely necessary that it be sent.
Now, for representing quests in code, I would consider the specification pattern (http://en.wikipedia.org/wiki/Specification_pattern). This will allow you to easily build up quest goals in terms of what events are needed to ensure that the specification for completing that quest is met. You can then use LUA (or something) to define your quests as you build the game so that you don't have to make massive code changes and rebuild the whole damn thing to make it so that you have to kill 11 monsters instead of 10 to get the Sword of 1000 truths in a particular quest. How to actually do something like that I think is beyond the scope of this answer and starts to hit the edge of my knowledge of game programming so maybe someone else on here can help you out if you choose to go that route.
Also, I know I used a lot of terms in this answer, please ask if there are any that you are unfamiliar with and I can explain them.
Edit: didn't notice your addition about craftable items. I'm going to assume that these are things that a player can create specifically in the game, like custom items. If a player can continually change these items, then you can just combine the attributes of what they're crafted as at runtime but you'll need to store the ID of each attribute in the DB somewhere. If you make a finite number of things you can add on (like gems in Diablo II) then you can eliminate a join by just adding that number of columns to the table. If there are a finite number of items that can be crafted and a finite number of ways that differnet things can be joined together into new items, then when certain items are combined, you needn't store the combined attributes; it just becomes a new item which has been defined at some point by you already. Then, they just have that item instead of its components. If you clarify the behavior your game is to have I can add additional suggestions if that would be useful.
I would approach this from an Object Oriented point of view, rather than a Data Centric point of view. It looks like you might have quite a lot of (poss complex) objects - I would recommend getting them modeled (with their relationships) first, and relying on an ORM for persistence.
When you have a data-centric problem, the database is your friend. What you have done so far seems to be quite right.
On the other hand, the other problems you mention seem to be behaviour-centric. In this case, an object-oriented analisys and solution will work better.
For example:
Create a quest class with specificQuest child classes. Each child should implement a bool HasRequirements(Player player) method.
Another option is some sort of rules engine (Drools, for example if you are using Java).
If i was designing a database for such a situation, i might do something like this:
Quest
[quest properties like name and description]
reqItemsID
reqSkillsID
reqPlayerTypesID
RequiredItems
ID
item
RequiredSkills
ID
skill
RequiredPlayerTypes
ID
type
In this, the ID's map to the respective tables then you retrieve all entries under that ID to get the list of required items, skills, what have you. If you allow dynamic creation of items then you should have a mapping to another table that contains all possible items.
Another thing to keep in mind is normalization. There's a long article here but i've condensed the first three levels into the following more or less:
first normal form means that there are no database entries where a specific field has more than one item in it
second normal form means that if you have a composite primary key all other fields are fully dependent on the entire key not just parts of it in each table
third normal is where you have no non-key fields that are dependent on other non-key fields in any table
[Disclaimer: i have very little experience with SQL databases, and am new to this field. I just hope i'm of help.]
I've done something sort of similar and my general solution was to use a lot of meta data. I'm using the term loosely to mean that any time I needed new data to make a given decision(allow a quest, allow using an item etc.) I would create a new attribute. This was basically just a table with an arbitrary number of values and descriptions. Then each character would have a list of these types of attributes.
Ex: List of Kills, Level, Regions visited, etc.
The two things this does to your dev process are:
1) Every time there's an event in the game you need to have a big old switch block that checks all these attribute types to see if something needs updating
2) Everytime you need some data, check all your attribute tables BEFORE you add a new one.
I found this to be a good rapid development strategy for a game that grows organically(not completely planned out on paper ahead of time) - but it's one big limitation is that your past/current content(levels/events etc) will not be compatible with future attributes - i.e. that map won't give you a region badge because there were no region badges when you coded it. This of course requires you to update past content when new attributes are added to the system.
just some little points for your consideration :
1) Always Try to make your "get quest" requirements simple.. and "Finish quest" requirements complicated..
Part1 can be done by "trying to make your quests in a Hierarchical order":
example :
QuestA : (Kill Raven the demon) (quest req: Lvl1)
QuestA.1 : Save "unkown" in the forest to obtain some info.. (quest req : QuestA)
QuestA.2 : Craft the sword of Crystal ... etc.. (quest req : QuestA.1 == Done)
QuestA.3 : ... etc.. (quest req : QuestA.2 == Done)
QuestA.4 : ... etc.. (quest req : QuestA.3 == Done)
etc...
QuestB (Find the lost tomb) (quest req : ( QuestA.statues == Done) )
QuestC (Go To the demons Hypermarket) ( Quest req: ( QuestA.statues == Done && player.level== 10)
etc....
Doing this would save you lots of data fields/table joints.
ADDITIONAL THOUGHTS:
if you use the above system, u can add an extra Reward field to ur quest table called "enableQuests" and add the name of the quests that needs to be enabled..
Logically.. you'd have an "enabled" field assigned to each quest..
2) A minor solution for Your crafting problem, create crafting recipes, Items that contains To-be-Crafted-item crafting requirements stored in them..
so when a player tries to craft an item.. he needs to buy a recipe 1st.. then try crafting..
a simple example of such item Desc would be:
ItemName: "Legendary Sword of the dead"
Craftevel req. : 75
Items required:
Item_1 : Blade of the dead
Item_2 : A cursed seal
item_3 : Holy Gemstone of the dead
etc...
and when he presses the "craft" Action, you can parse it and compare against his inventory/craft box...
so Your Crafting DB will have only 1 field (or 2 if u want to add a crafting LvL req. , though it will already be included in the recipe.
ADDITIONAL THOUGHTS:
Such items, can be stored in xml format in the table .. which would make it much easier to parse...
3) A similar XML System can be applied to Your quest system.. to implement quest-ending requirements..

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