When do we have Push down code in SAP Hana - abap

I need an answer or better an explanation between SQL (Open/Native), CDS and AMDP.
I understand that in order to follow the rules of SAP and push the code down in DB HANA we must use CDS or/and AMDP. I have thought that if we still use only SQL Queries is the old way with which we use the Code in AS. I have read some articles or I have seen some videos in the internet and they have confused me.
Can someone explain me which is the best way for following the PUSH DOWN the CODE in HANA?
- Use of SQL queries Open or Native what it is?
- Use of CDS or AMDP are PUSH DOWN CODE technique for Hana.
Thanks

“Code push down” means that you execute the expensive main part of your computations in the database, not in the application code (= ABAP). How exactly you do that is related only indirectly.
For example, instead of SELECTing from two database tables and then mixing up rows in the ABAP code, pushing down means you run a JOIN in the database. This reduces the number of round trips with the database, exploits the columnar characteristics of SAP HANA, and benefits from other code-near-the-data effects, such as reduced amount of data that needs to be transported to the upper layer.
Whether you implement that as an OpenSQL query, a classical database view, a CDS view, or inside an AMDP, is not the main question. We found that resorting to simple OpenSQL queries on CDS views is the optimal choice for standard cases. When things get more complicated, my answer to this other question may give some more guidance when to use what.
Disclaimer: although I am working for SAP, there are many other opinions on the topic and some may look at this differently, so kindly do not understand this as a reliable official guidance that fits everything.
Note that code push down is not a silver bullet that fixes everything. In scenarios with many parallel consumers, pushing down large operations may clog up the database for the other users, such that you need to resort to different patterns, or find ways to limit resource consumption.

Related

BigQuery Testing, Debugging, and Design Patterns

We use BigQuery as the main data warehouse in our company.
We have gotten very efficient with SQL syntax and we write multi-page SQL queries with valid Syntax to analyze our data.
The main problem that we are struggling with are terrible logic mistakes in our queries. For example, it could be that a > should have been a >=, or that a join was treating NULL values the wrong way.
The effect is that we are getting wrong data out of BigQuery.
The logic within our data structure is so complicated ("what again was the definition of Customer Type ABC?") that it's terribly difficult to actually pull out anything useable. We estimate that up to 50% of analytics that we pull out of BigQuery are plain wrong.
Of course this is a problem that significantly hurts our bottom line and leads to wrong business decision. It has gotten so bad that we are craving for a normalized database structure that at least could be comprehended easier.
My hope is that maybe we are just missing certain design patterns to properly use BigQuery. However I find zero guidance about this online. The SQL we are using is so complex that I'm starting to think that although the Syntax is correct, SQL was not made for this. What we are doing feels like fitting a complex program into a single function, which in turn becomes untestable and a nightmare to work with.
I would appreciate any input and guidance
I can empathize here. I don't think your issue is unique, and there isn't one best practice. I can tell you what we have done to help with these same issues.
We are a small team of analysts, and only have a couple TB of data to crunch daily so your mileage will vary with these tips depending on your situation.
We use DBT - https://www.getdbt.com/. It has a free command line version, or you can pay for DBT cloud if you aren't confident with command line tools. It will help you go from Pages long SQL queries to smaller digestible chunks that are easier to maintain.
It helps with 3 main use cases for us.
database normalization/summarization - you can easily write queries, have them dependent on each other, have them scheduled to run at a certain time, while doing a lot of the more complex data engineering tasks for you. Such as making sure to run things in the right order, and that no circular references exist. This part of the tool helped us migrate away from pages long SQL queries to smaller digestible chunks that are useful in multiple applications.
documentation: there is a documentation site built in. So you can document a column and write out the definition of 'customer' easily.
Testing. We write loads of tests. We have a 100% accepted answer to certain metrics. Any time we need to reference this metric in other queries, or transform data to slice that metric by other dimensions, we write a test to make sure the new transformation matches back to the 100% accepted answer.
We have explored DBT, unfortunately we didn't have the bandwidth to support it at the company level. As an alternative we use airflow to build and maintain datasets in Bigquery. We use the BigQuery operators to interface with BQ through airflow. This helps us in the following ways:
Ability to build custom operators that can help with organizational level bells and whistles (integration with internal systems, data lifecycle management, lineage management etc.)
Ability to break down complex pieces of SQL into smaller manageable blocks that can be reused
Ability to incorporate testing in the process. You can build testing into your pipeline DAG or can build out separate DAGs of tests that can monitor your datasets and send out reports.
Ability to replay and recreate datasets
Ability to easily manage schema changes
I am sure there are other use cases where airflow helps, but these are some of the things that come to mind.

Can Infinispan act as a replacement for a conventional RDBMS

Apologies if the title made no absolute sense. But, on the other hand, I would like to know if there is any programming model which would let us use Infinispan cache as a real datastore and not just a grid on top of an underlying rdbms.
I know Key-Value stores have real limitations but I couldn't stop thinking about the possibilities of an in-memory solution with all or a subset of RDBMS functionalities. For example: If I want to retrieve a particular set of Keys based on value>34.56%, just like how we would use a where clause in an sql stmt.
My doubt is not specific to infinispan but any IMKVS for that purpose. I know it's a shot in the dark considering the data structures and algorithms behind IMKVS specifications.
Any help or direction to resources which talk about these lines would be of great help.
I suggest you write down all the queries that you execute against SQL DB and check if these could be translated into KVS language.
In Infinispan you can index the values and execute queries for such filtering, but you can't do any table joins.
If you are in need for more powerful API, specifically using JPA, take a look at Hibernate OGM.
And while KVSs offer some level of reliability, in practice I wouldn't trust the documentation too much. You need to perform extensive testing of your system and check that you can retrieve the data even after various types of crashes and network failures (or that you can live with throwing the data away).

SQL Reporting Use stored proc or query/view

I'm a software developer not a TSQL or DBA expert, just background. One of my applications uses allot of SQL views for reporting purposes, at this stage (might change) the windows application execute the view and I display the data in a grid/table for reporting purposes. The views are becoming more and more complex and slower, that's one problem. I'm in the process of re-designing the application to use a web front-end for reporting. But my question is what is the best approach with reports in terms of SQL, should my reports be based on Stored Procedure or Views? Any other comments or advice on SQL reporting welcome, like I mentioned I'm a software developer and I try to stay clear of SQL work, but this has become an issue and I thought this is a good time to sharpen my SQL knowledge.
Thank you for reading.
Stored procedures (SPs) are a better choice than views, but views are much better than SQL queries embedded in reports. I know you didn't mention embedded SQL but I'm going to discuss it briefly to give a more rounded answer.
When you embed a SQL query in a report (or an application or anything outside of the database) you are assuming that all of the objects referenced are not going to change in any way. This is firstly a big assumption (and assumptions are bad) and secondly a crippling restriction on the database owner - they can't change anything because it might break something somewhere.
When you use an SP or a view to access a database you make the reasonable assumption that the name of the object you are calling (the SP or view) won't change and that any parameter set will remain constant or at least stay compatible. Both approaches hide away the logic of the query from the caller - the logic can be corrected and improved over time without affecting the caller. The entire database can be refactored or even redeisigned as long as the name of the exposed object (and any parameters) remain the same and the caller will never know.
The advantage of using an SP over a view is that you can do far more. For example it's a good idea to validate that parameter values are within expected ranges. If you have a particularly complex query you can break it down into smaller steps, using temp tables for example. Moving on to very heavy queries you could even do interim maintenance steps in an SP, updating stats for example.
I would recommend using SPs for all database access. You might not need to now, but it will give you much more scope to change things in the future if you need to.

Database approach to use for Dynamic Form Data Collection which is suitable for good Reports and Searching

I am working on a project which involves collecting dynamic form data. These forms are user-defined (think surveymonkey) and thus a fixed schema cannot be defined for them. Data in terms of questions/answers would be retrieved for these forms and then stored into the database. Reporting/Searching on this answers (filtering and aggregation) is of utmost importance. There are two approaches which are feasible.
Use a SQL database and store the each field data as a separate row. Reporting/Searching is then done via SQL. My apprehension is that it would result in complicated joins for reporting.
Use a NoSQL database like MongoDB. This seems to be a perfect fit for storing the dynamic data since it is schema-less. However, I am not sure how good its reporting capabilities are.
It seems easier for target users to learn sql than to define map/reduce queries. How easy would it be to build a UI for reporting/searching over mongoDB.
Simple things like - list of users who gave a particular set of answers. How many such users over a period of time etc?
Thanks,
Pulkit
It's already been mentioned in the comments, but I'll re-iterate that you should look at Mongo's map/reduce functionality for reporting and the aggregation framework.
Having done map/reduce in both Couch and Mongo I can say that they are very similar. It's definitely a barrier to entry for a developer that isn't familiar with it, but once you get a few working examples, it's not too bad.
Consider that Mongo can output a map/reduce job to a collection, which I've found to be really useful. This means you can schedule the jobs and run them periodically and output to a place that you can then report on. It's not that hard to create a framework that lets developers write simple Javascript map and reduce functions and then plug them in to be run on a schedule.
The aggregation framework is much easier to understand for a developer coming from SQL. Still a learning curve, but not as bad as map/reduce. It is much more well suited to ad-hoc reporting queries and there is nothing comparable in Couch.
You could maybe make a reporting UI that maps to the aggregation framework, but I wouldn't try to do something similar for map/reduce queries.

Why use SQL database? [closed]

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I'm not quite sure stackoverflow is a place for such a general question, but let's give it a try.
Being exposed to the need of storing application data somewhere, I've always used MySQL or sqlite, just because it's always done like that. As it seems like the whole world is using these databases (most of all software products, frameworks, etc), it is rather hard for a beginning developer like me to start thinking about whether this is a good solution or not.
Ok, say we have some object-oriented logic in our application, and objects are related to each other somehow. We need to map this logic to the storage logic, so relations between database objects are required too. This leads us to using relational database, and I'm ok with that - to put it simple, our database table rows sometimes will need to have references to other tables' rows. But why use SQL language for interaction with such a database?
SQL query is a text message. I can understand this is cool for actually understanding what it does, but isn't it silly to use text table and column names for a part of application that no one ever seen after deploynment? If you had to write a data storage from scratch, you would have never used this kind of solution. Personally, I would have used some 'compiled db query' bytecode, that would be assembled once inside a client application and passed to the database. And it surely would name tables and colons by id numbers, not ascii-strings. In the case of changes in table structure those byte queries could be recompiled according to new db schema, stored in XML or something like that.
What are the problems of my idea? Is there any reason for me not to write it myself and to use SQL database instead?
EDIT To make my question more clear. Most of answers claim that SQL, being a text query, helps developers better understand the query itself and debug it more easily. Personally, I haven't seen people writing SQL queries by hand for a while. Everyone I know, including me, is using ORM. This situation, in which we build up a new level of abstraction to hide SQL, leads to thinking if we need SQL or not. I would be very grateful if you could give some examples in which SQL is used without ORM purposely, and why.
EDIT2 SQL is an interface between a human and a database. The question is why do we have to use it for application/database interaction? I still ask for examples of human beings writing/debugging SQL.
Everyone I know, including me, is using ORM
Strange. Everyone I know, including me, still writes most of the SQL by hand. You typically end up with tighter, more high performance queries than you do with a generated solution. And, depending on your industry and application, this speed does matter. Sometimes a lot. yeah, I'll sometimes use LINQ for a quick-n-dirty where I don't really care what the resulting SQL looks like, but thus far nothing automated beats hand-tuned SQL for when performance against a large database in a high-load environment really matters.
If all you need to do is store some application data somewhere, then a general purpose RDBMS or even SQLite might be overkill. Serializing your objects and writing them to a file might be simpler in some cases. An advantage to SQLite is that if you have a lot of this kind of information, it is all contained in one file. A disadvantage is that it is more difficult to read it. For example, if you serialize you data to YAML, you can read the file with any text editor or shell.
Personally, I would have used some
'compiled db query' bytecode, that
would be assembled once inside a
client application and passed to the
database.
This is how some database APIs work. Check out static SQL and prepared statements.
Is there any reason for me not to
write it myself and to use SQL
database instead?
If you need a lot of features, at some point it will be easier to use an existing RDMBS then to write your own database from scratch. If you don't need many features, a simpler solution may be wiser.
The whole point of database products is to avoid writing the database layer for every new program. Yes, a modern RDMBS might not always be a perfect fit for every project. This is because they were designed to be very general, so in practice, you will always get additional features you don't need. That doesn't mean it is better to have a custom solution. The glove doesn't always need to be a perfect fit.
UPDATE:
But why use SQL language for
interaction with such a database?
Good question.
The answer to that may be found in the original paper describing the relational model A Relational Model of Data for Large Shared Data Banks, by E. F. Codd, published by IBM in 1970. This paper describes the problems with the existing database technologies of the time, and explains why the relational model is superior.
The reason for using the relational model, and thus a logical query language like SQL, is data independence.
Data independence is defined in the paper as:
"... the independence of application programs and terminal activities from the growth in data types and changes in data representations."
Before the relational model, the dominate technology for databases was referred to as the network model. In this model, the programmer had to know the on-disk structure of the data and traverse the tree or graph manually. The relational model allows one to write a query against the conceptual or logical scheme that is independent of the physical representation of the data on disk. This separation of logical scheme from the physical schema is why we use the relational model. For a more on this issue, here are some slides from a database class. In the relational model, we use logic based query languages like SQL to retrieve data.
Codd's paper goes into more detail about the benefits of the relational model. Give it a read.
SQL is a query language that is easy to type into a computer in contrast with the query languages typically used in a research papers. Research papers generally use relation algebra or relational calculus to write queries.
In summary, we use SQL because we happen to use the relational model for our databases.
If you understand the relational model, it is not hard to see why SQL is the way it is. So basically, you need to study the relation model and database internals more in-depth to really understand why we use SQL. It may be a bit of a mystery otherwise.
UPDATE 2:
SQL is an interface between a human
and a database. The question is why do
we have to use it for
application/database interaction? I
still ask for examples of human beings
writing/debugging SQL.
Because the database is a relational database, it only understands relational query languages. Internally it uses a relational algebra like language for specifying queries which it then turns into a query plan. So, we write our query in a form we can understand (SQL), the DB takes our SQL query and turns it into its internal query language. Then it takes the query and tries to find a "query plan" for executing the query. Then it executes the query plan and returns the result.
At some point, we must encode our query in a format that the database understands. The database only knows how to convert SQL to its internal representation, that is why there is always SQL at some point in the chain. It cannot be avoided.
When you use ORM, your just adding a layer on top of the SQL. The SQL is still there, its just hidden. If you have a higher-level layer for translating your request into SQL, then you don't need to write SQL directly which is beneficial in some cases. Some times we do not have such a layer that is capable of doing the kinds of queries we need, so we must use SQL.
Given the fact that you used MySQL and SQLite, I understand your point of view completely. Most DBMS have features that would require some of the programming from your side, while you get it from database for free:
Indexes - you can store large amounts of data and still be able to filter and search very quickly because of indexes. Of course, you could implement you own indexing, but why reinvent the wheel
data integrity - using database features like cascading foreign keys can ensure data integrity across the system. You only need to declare relationship between data, and system takes care of the rest. Of course, once more, you could implement constraints in code, but it's more work. Consider, for example, deletion, where you would have to write code in object's destructor to track all dependent objects and act accordingly
ability to have multiple applications written in different programming languages, working on different operating systems, some even distributed across the network - all using the same data stored in a common database
dead easy implementation of observer pattern via triggers. There are many cases where only some data depends on some other data and it does not affect UI aspect of application. Ensuring consistency can be very tricky or require a lot of programming. Of course, you could implement trigger-like behavior with objects but it requires more programming than simple SQL definition
There are some good answers here. I'll attempt to add my two cents.
I like SQL, I can think in it pretty easily. The queries produced by layers on top of the DB (like ORM frameworks) are usually hideous. They'll select tons of extra stuff, join in things you don't need, etc.; all because they don't know that you only want a small part of the object in this code. When you need high performance, you'll often end up going in and using at least some custom SQL queries in an ORM system just to speed up a few bottlenecks.
Why SQL? As others have said, it's easy for humans. It makes a good lowest common denominator. Any language can make SQL and call command line clients if necessary, and they is pretty much always a good library.
Is parsing out the SQL inefficient? Somewhat. The grammar is pretty structured, so there aren't tons of ambiguities that would make the parser's job really hard. The real thing is that the overhead of parsing out SQL is basically nothing.
Let's say you run a query like "SELECT x FROM table WHERE id = 3", and then do it again with 4, then 5, over and over. In that case, the parsing overhead may exist. That's why you have prepared statements (as others have mentioned). The server parses the query once, and can swap in the 3 and 4 and 5 without having to reparse everything.
But that's the trivial case. In real life, your system may join 6 tables and have to pull hundreds of thousands of records (if not more). It may be a query that you let run on a database cluster for hours, because that's the best way to do things in your case. Even with a query that takes only a minute or two to execute, the time to parse the query is essentially free compared to pulling records off disk and doing sorting/aggregation/etc. The overhead of sending the ext "LEFT OUTER JOIN ON" is only a few bytes compared to sending special encoded byte 0x3F. But when your result set is 30 MB (let alone gigs+), those few extra bytes are worthless compared to not having to mess with some special query compiler object.
Many people use SQL on small databases. The biggest one I interact with is only a few dozen gigs. SQL is used on everything from tiny files (like little SQLite DBs may be) up to terabyte size Oracle clusters. Considering it's power, it's actually a surprisingly simple and small command set.
It's an ubiquitous standard. Pretty much every programming language out there has a way to access SQL databases. Try that with a proprietary binary protocol.
Everyone knows it. You can find experts easily, new developers will usually understand it to some degree without requiring training
SQL is very closely tied to the relational model, which has been thoroughly explored in regard to optimization and scalability. But it still frequently requires manual tweaking (index creation, query structure, etc.), which is relatively easy due to the textual interface.
But why use SQL language for interaction with such a database?
I think it's for the same reason that you use a human-readable (source code) language for interaction with the compiler.
Personally, I would have used some 'compiled db query' bytecode, that would be assembled once inside a client application and passed to the database.
This is an existing (optional) feature of databases, called "stored procedures".
Edit:
I would be very grateful if you could give some examples in which SQL is used without ORM purposely, and why
When I implemented my own ORM, I implemented the ORM framework using ADO.NET: and using ADO.NET includes using SQL statements in its implementation.
After all the edits and comments, the main point of your question appears to be : why is the nature of SQL closer to being a human/database interface than to being an application/database interface ?
And the very simple answer to that question is : because that is exactly what it was originally intended to be.
The predecessors of SQL (QUEL being presumably the most important one) were intended to be exactly that : a QUERY language, i.e. one that didn't have any of INSERT, UPDATE, DELETE.
Moreover, it was intended to be a query language that could be used by any user, provided that user was aware of the logical structure of the database, and obviously knew how to express that logical structure in the query language he was using.
The original ideas behind QUEL/SQL were that a database was built using "just any mechanism conceivable", that the "real" database could be really just anything (e.g. one single gigantic XML file - allthough 'XML' was not considered a valid option at the time), and that there would be "some kind of machinery" that understood how to transform the actual structure of that 'just anything' into the logical relational structure as it was perceived by the SQL user.
The fact that in order to actually achieve that, the underlying structures are required to lend themselves to "viewing them relationally", was not understood as well in those days as it is now.
Yes, it is annoying to have to write SQL statements to store and retrieve objects.
That's why Microsoft have added things like LINQ (language integrated query) into C# and VB.NET to make it possible to query databases using objects and methods instead of strings.
Most other languages have something similar with varying levels of success depending on the abilities of that language.
On the other hand, it is useful to know how SQL works and I think it is a mistake to shield yourself entirely from it. If you use the database without thinking you can write extremely inefficient queries and index the database incorrectly. But once you understand how to use SQL correctly and have tuned your database, you have a very powerful tried-and-tested tool available for finding exactly the data you need extremely quickly.
My biggest reason for SQL is Ad-hoc reporting. That report your business users want but don't know that they need it yet.
SQL is an interface between a human
and a database. The question is why do
we have to use it for
application/database interaction? I
still ask for examples of human beings
writing/debugging SQL.
I use sqlite a lot right from the simplest of tasks (like logging my firewall logs directly to a sqlite database) to more complex analytic and debugging tasks in my day-to-day research. Laying out my data in tables and writing SQL queries to munge them in interesting ways seems to be the most natural thing to me in these situations.
On your point about why it is still used as an interface between application/database, this is my simple reasoning:
There is about 3-4 decades of
serious research in that area
starting in 1970 with Codd's seminal
paper on Relational Algebra.
Relational Algebra forms the
mathematical basis to SQL (and other
QLs), although SQL does not
completely follow the relational
model.
The "text" form of the language
(aside from being easily
understandable to humans) is also
easily parsable by machines (say
using a grammar parser like like
lex) and is easily convertable to whatever "bytecode" using any number of optimizations.
I am not sure if doing this in any
other way would have yielded
compelling benefits in the generic cases. Otherwise it
would have been probably discovered
and adopted in the 3 decades of
research. SQL probably provides the
best tradeoffs when bridging the
divide between humans/databases and
applications/databases.
The question that then becomes interesting to ask is, "What are the real benefits of doing SQL in any other "non-text" way?" Will google for this now:)
SQL is a common interface used by the DBMS platform - the entire point of the interface is that all database operations can be specified in SQL without needing supplementary API calls. This means that there is a common interface across all clients of the system - application software, reports and ad-hoc query tools.
Secondly, SQL gets more and more useful as queries get more complex. Try using LINQ to specify a 12-way join a with three conditions based on existential predicates and a condition based on an aggregate calculated in a subquery. This sort of thing is fairly comprehensible in SQL but unlikely to be possible in an ORM.
In many cases an ORM will do 95% of what you want - most of the queries issued by applications are simple CRUD operations that an ORM or other generic database interface mechanism can handle easily. Some operations are best done using custom SQL code.
However, ORMs are not the be-all and end-all of database interfacing. Fowler's Patterns of Enterprise Application Architecture has quite a good section on other types of database access strategy with some discussion of the merits of each.
There are often good reasons not to use an ORM as the primary database interface layer. An example of a good one is that platform database libraries like ADO.Net often do a good enough job and integrate nicely with the rest of the environment. You might find that the gain from using some other interface doesn't really outweigh the benefits from the integration.
However, the final reason that you can't really ignore SQL is that you are ultimately working with a database if you are doing a database application. There are many, many WTF stories about screw-ups in commercial application code done by people who didn't understand databases properly. Poorly thought-out database code can cause trouble in so many ways, and blithely thinking that you don't need to understand how the DBMS works is an act of Hubris that is bound to come and bite you some day. Worse yet, it will come and bite some other poor schmoe who inherits your code.
While I see your point, SQL's query language has a place, especially in large applications with a lot of data. And to point out the obvious, if the language wasn't there, you couldn't call it SQL (Structured Query Language). The benefit of having SQL over the method you described is SQL is generally very readable, though some really push the limits on their queries.
I whole heartly agree with Mark Byers, you should not shield yourself from SQL. Any developer can write SQL, but to really make your application perform well with SQL interaction, understanding the language is a must.
If everything was precompiled with bytecode as you described, I'd hate to be the one to have to debug the application after the original developer left (or even after not seeing the code for 6 months).
I think the premise of the question is incorrect. That SQL can be represented as text is immaterial. Most modern databases would only compile queries once and cache them anyway, so you already have effectively a 'compiled bytecode'. And there's no reason this couldn't happen client-wise though I'm not sure if anyone's done it.
You said SQL is a text message, well I think of him as a messenger, and, as we know, don't shoot the messenger. The real issue is that relations are not a good enough way of organising real world data. SQL is just lipstick on the pig.
If the first part you seem to refer to what is usually called the Object - relational mapping impedance. There are already a lot of frameworks to alleviate that problem. There are tradeofs as well. Some things will be easier, others will get more complex, but in the general case they work well if you can afford the extra layer.
In the second part you seem to complain about SQL being text (it uses strings instead of ids, etc)... SQL is a query language. Any language (computer or otherwise) that is meant to be read or written by humans is text oriented for that matter. Assembly, C, PHP, you name it. Why? Because, well... it does make sense, doesn't it?
If you want precompiled queries, you already have stored procedures. Prepared statements are also compiled once on the fly, IIRC. Most (if not all) db drivers talk to the database server using a binary protocol anyway.
yes, text is a bit inefficient. But actually getting the data is a lot more costly, so the text based sql is reasonably insignificant.
SQL was created to provide an interface to make ad hoc queries against a relational database.
Generally, most relational databases understand some form of SQL.
Object-oriented databases exist, and (presumably) use objects to do their querying... but as I understand it, OO databases have a lot more overheard, and relational databases work just fine.
Relational Databases also allow you to operate in a "disconnected" state. Once you have the information you asked for, you can close the database connection. With an OO database, you either need to return all objects related to the current one (and the ones they're related to... and the... etc...) or reopen the connection to retrieve new objects as they are accessed.
In addition to SQL, you also have ORMs (object-relational mappings) that map objects to SQL and back. There are quite a few of them, including LINQ (.NET), the MS Entity Framework (.NET), Hibernate (Java), SQLAlchemy (Python), ActiveRecord (Ruby), Class::DBI (Perl), etc...
A database language is useful because it provides a logical model for your data independent of any applications that use it. SQL has a lot of shortcomings however, not the least being that its integration with other languages is poor, type support is about 30 years behind the rest of the industry and it has never been a truly relational language anyway.
SQL has survived mostly because the database market has been and remains dominated by the three mega-vendors who have a vested interest in protecting their investment. That's changing and SQL's days are probably numbered but the model that will finally replace it probably hasn't arrived yet - although there are plenty of contenders around these days.
I don't think most people are getting your question, though I think it's very clear. Unfortunately I don't have the "correct" answer. I would guess it's a combination of several things:
Semi-arbitrary decisions when it was designed such as ease of use, not needing a SQL compiler (or IDE), portability, etc.
It happened to catch on well (probably due to similar reasons)
And now due to historical reasons (compatibility, well known, proven, etc.) continues to be used.
I don't think most companies have bothered with another solution because it works well, isn't much of a bottleneck, it's a standard, blah, blah..
One of the Unix design principles can be said thusly, "Write programs to handle text streams, because that is a universal interface.".
And that, I believe, is why we typically use SQL instead of some 'byte-SQL' that only has a compilation interface. Even if we did have a byte-SQL, someone would write a "Text SQL", and the loop would be complete.
Also, MySQL and SQLite are less full-featured than, say, MSSQL and Oracle SQL. So you're still in the low end of the SQL pool.
Actually there are a few non-SQL database (like Objectivity, Oracle Berkeley DB, etc.) products came but non of them succeeded. In future if someone finds intuitive alternative for SQL, that will answer your question.
There are a lot of non relational database systems. Here are just a few:
Memcached
Tokyo Cabinet
As far as finding a relational database that doesn't use SQL as its primary interface, I think you won't find it. Reason: SQL is a great way to talk about relations. I can't figure out why that's a big deal to you: if you don't like SQL, put an abstraction over it (like an ORM) so you don't have to worry about it. Let the abstraction worry about it. It gets you to the same place.
However, the problem your'e really mentioning here is the object-relation disconnect - the problem is with the relation itself. Objects and relational-tuples don't always lend themselves to be a 1-1 relationship, which is the reason why a developer can frustrated with a database. The solution to that is to use a different database type.
Because often, you cannot be sure that (citing you) "no one ever seen after deployment". Knowing that there is an easy interface for reporting and for dataset level querying is a good path for evolution of your app.
You're right, that there are other solutions that may be valid in some situations: XML, plain text files, OODB...
But having a set of common interfaces (like ODBC) is a huge plus for the life of data.
I think the reason might be the search/find/grab algorithms the sql laungage is connected to do. Remember that sql has been developed for 40 years - and the goal has been both preformence wise and user firendly wise.
Ask yourself what the best way of finding 2 attibutes is. Now why investigating that each time you would want to do something that includes that each time you develope your application. Assuming the main goal is the developing of your application when developing an application.
An application has similarities with other applications, a database has similarities with other databases. So there should be a "best way" of these to interact, logically.
Also ask yourself how you would develop a better console only application that does not use sql laungage. If you cannot do that I think you need to develope a new kind of GUI that are even more fundamentally easier to use than with a console - to develope things from it. And that might actually be possible. But still most development of applications is based around console and typing.
Then when it comes to laungage I don´t think you can make a much more fundamentally easier text laungage than sql. And remember that each word of anything is inseperatly connected to its meaning - if you remove the meaning the word cannot be used - if you remove the word you cannot communicate the meaning. You have nothing to describe it with (And maybe you cannot even think it beacuse it woulden´t be connected to anything else you have thought before...).
So basically the best possible algorithms for database manipulation are assigned to words - if you remove these words you will have to assign these manipulations something else - and what would that be?
i think you can use ORM
if and only if you know the basic of sql.
else the result there isn't the best