storing serialized objects to disk instead of using a database - object

I'm building a small application and I'd rather not have the expense (hosting, hassle) of a database. I'm thinking of just writing a class (call it Settings) for each user, and serializing it to disk as xml.
When a user logs in, I'll deserialize the xml back into List, scroll through until I find the user I need, and then I've got everything I need.
I suppose I can wrap it all in a Singleton if I need to.
I'm imagining this would be rather crummy for a big application, but we're talking about 100 hits a day kind of stuff.
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Do you really think that you will need more time to setup the DB, compared to implementing your file-based solution? I would be surprised, actually and I would much rather go the DB way.

Related

Combine CouchDB databases with replication while recording source db

I’m just starting out with CouchDB (2.1), and I’m planning to use it to replicate confidential per-user data from a mobile app up to my server. I’ve read that per-user databases are the best way to do this, and I’ve set that up. Each database has a mix of user-created documents of types Foo and Bar.
Now, I’d also like to be able to collect multi-user slices of that data together into one database and build views on it for admin reporting. Say I want a database which contains all the Foos from all users. So far so good, an entry in _replicator with a filter from each user database to one target does the job.
But looking at the combined database, I can’t tell which user a given Foo came from. I could write the user id into each document within the per-user database but that seems redundant and adds the complexity of validation. Is there any other way?
CouchDB's replicator simply tries to match up the exact state of a given document in the target database — and if it can't, it stores ± the exact source contents anyway (as a conflicting version).
Furthermore the _rev field of a document, which the replication system uses to check if a document needs to be updated, is actually based on (a hash over) the other document fields.
So unfortunately you can't add metadata during replication. This would indeed be handy for this and other per-user vs. shared replication situations, but it's not something CouchDB currently supports, and it would break some optimizations to add support for it.
I could write the user id into each document within the per-user database but that seems redundant and adds the complexity of validation. Is there any other way?
Including something like a .user field in each document is the right solution.
As far as being redundant, I wouldn't think of it that way — or at least, not as a bad thing. You'll find with CouchDB (and like other NoSQL stores) there's a trend to "denormalize" data to begin with. Especially given the things replication lets me do operationally and architecturally, I'd much rather have a self-contained document than one that relies on metadata derived from a database name.
I'm not sure exactly how in your case an extra field will make validation more complex, so I can't fully speak to that. You do want to make sure the user writing the document has set it "honestly", and so yes there is a bit more complication, but usually not too burdensome in most cases.

Does there exist a language with the characteristic of storing variables in persistent storage?

I had this idea this morning, and was thinking about how to implement it when it occurred to me somebody has probably already done this. I searched but found nothing, here's my idea:
In short, all variable storage is stored in persistent storage. I don't mean battery backed up RAM. I mean more like a database.
To use common technologies to explain what I mean: Lets say you were to use an SQL database for this persistent storage. An array/list would be stored as a table with one column. An ordered list would be stored as two columns with the first being a sequence number. A hash would be a table with two columns, the first being the key, the second being the value. All simple stuff. But what I'm getting at is that you could do large data moving/calculating/reporting operations with native language constructs without all that mucking about in hyper... I mean without all that SQL and loading data from the database.
I was thinking sort of like the way you can do matrix math in APL. It would be native to the language and all the underpinning storage would just work. And in reality it would use a record manager more than a SQL database. That was just to explain.
Of course this would be horribly slow, but solid state disk is getting bigger faster and cheaper, so this might not be as unwieldy as it might first seem.
Anyway, is this a novel idea or has somebody done this before?
MUMPS has something like that.
Database interaction is transparently built into the language. The MUMPS language provides a hierarchical database made up of persistent sparse arrays, which is implicitly “opened” for every MUMPS application. All variable names prefixed with the caret character (“^”) use permanent (instead of RAM) storage, will maintain their values after the application exits, and will be visible to (and modifiable by) other running applications.
Of course, it’s explicit—thus not applied to all variables—but still automatic.
How persistent are you talking? The localStorage API works well (persists across browser tabs and sessions) so long as you know users can choose to clear it out. Your question sounds eerily like WebKit client-side database storage though.
Well, to point out the obvious, there is SQL.

Access MDB database. Linux: how to get a very odd pattern from the DB?

I'm in a VERY difficult problem.
I have a Microsoft Access Data Base, but it was made in the most chaotic way possible. The DB has like 150+ tables, Only uses like 50% of the tables. The relations are almost random. But, somehow, it delivers some information.
I need to get a particular component of the DB, but is so tangled that I can not manage to get into the table that creates that value. I revised every table, one by one, and found nothing.
I used mdbtools for Linux to try to inspect with more details the DB. But unfortunately has not been developed in years, and it closes every time. Maybe because the DB is "big" ? -700 mg-
I'm wondering: is there a way to see all the relations the arrives to the particular value I'm looking? Or to decompile the DB? I have no idea in which language it was made. I'm suspecting that it was made in Visual, just because is rather crappy.
Well, waiting for some help.
I would suggest using (still) MS Access for this. But, if relationships look messy on the diagram, you can query one of the system tables (MSysRelationships) directly to get ALL the relationships you need (e.g. for particular table etc.):
To unhide system tables in early versions of Access (97-2003), follow the instructions here:
For Access 2007, do the following:

Space efficient embedded Haskell persistence solution

I'm looking for a persistence solution (maybe a NoSQL db? or something else...) that has the following criteria:
1) Has a Haskell API
2) Is disk space efficient--the db could easily get to many gigabytes of data but I need it to run well on a typical desktop. I need something that stores the data as efficiently as possible. So, for example, storing field names in a record would be bad.
3) High performance for reading sequential records. The typical use case is start somewhere and then read forward straight through the data--reading through possibly millions of records as quickly as possible.
4) Data is basically never changed (would only be changed if it was discovered data was incorrect somehow), just logged
5) It should act directly on file(s) that can be easily moved/copied around. It should not be calling a separate running server.
If you remove the "single file" requirement with no other running process, everything else can be fulfilled by every standard RDBMS, and depending on the type of data, sometimes especially well by columnar stores in particular.
The only single-file solution I know of is sqlite. Mainly sqlite founders when a single db needs to be accessed by multiple concurrent processes. If that isn't the case, then I wouldn't be surprised if you could scale it up singificantly.
Additionally, if you're only looking for sequential scans and key-value stores, you could just go with berkeleydb, which is known to be high-performance for very large data sets.
There are high quality Haskell bindings for talking to both sqlite and berkeleydb.
Edit: For sequential access only, its also blindingly straightforward to roll your own layer with the binary or cereal packages -- you basically need to write a helper function to wrap reading records from a file sequentially rather than all at once. An abstraction for folding over them is nice as well. Then you can decide to append to a single file, or spread your writes across files as you go. Either way, that's the most lightweight and straightforward option of all. The only drawback is having to worry about durability -- safe writes in the presence of interrupts, and all that other stuff that a good DB solution should take care of for you.
CouchDB ticks most of your boxes:
1) http://hackage.haskell.org/package/CouchDB
2) Depends on how you use it. You can store any binary data in it, but its up to you to know what it means. Or you can store XML or JSON, which is less space efficient but easier to migrate as your schema evolves (which it will).
3) Don't know, but its used for big web sites.
4) CouchDB uses a CM-like concept of updates and baselines, so old data stays around. It can be purged later as obsolete, but I think thats optional.
5) No. Its written in Erlang and runs (I believe) as a separate process. But why is that a problem?

Strategies for search across disparate data sources

I am building a tool that searches people based on a number of attributes. The values for these attributes are scattered across several systems.
As an example, dateOfBirth is stored in a SQL Server database as part of system ABC. That person's sales region assignment is stored in some horrible legacy database. Other attributes are stored in a system only accessible over an XML web service.
To make matters worse, the the legacy database and the web service can be really slow.
What strategies and tips should I consider for implementing a search across all these systems?
Note: Although I posted an answer, I'm not confident its a great answer. I don't intend to accept my own answer unless no one else gives better insight.
You could consider using an indexing mechanism to retrieve and locally index the data across all the systems, and then perform your searches against the index. Searches would be an awful lot faster and more reliable.
Of course, this just shifts the problem from one part of your system to another - now your indexing mechanism has to handle failures and heterogeneous systems, but that may be an easier problem to solve.
Another factor is how often the data changes. If you have to query data in real-time that goes stale very quickly, then indexing may not be practical.
If you can get away with a restrictive search, start by returning a list based on the search criteria corresponding to the fastest data source. Then join up those records with the other systems and remove records which don't match the search criteria.
If you have to implement OR logic, this approach is not going to work.
While not an actual answer, this might at least get you partway to a workable solution. We had a similar situation at a previous employer - lots of data sources, different ways of accessing those data sources, different access permissions, military/government/civilian sources, etc. We used Mule, which is built around the Enterprise Service Bus concept, to connect these data sources to our application. My details are a bit sketchy, as I wasn't the actual implementor, just an integrator, but what we did was define a channel in Mule. Then you write a simple integration piece to go between the channel and the data source, and the application and the channel. The integration piece does the work of making the actual query, and formatting the results, so we had a generic SQL integration piece for accessing a database, and for things like web services, we had some base classes that implemented common functionality, so the actual customization of the integration piecess was a lot less work than it sounds like. The application could then query the channel, which would handle accessing the various data sources, transforming them into a normalized bit of XML, and return the results to the application.
This had a lot of advantages for our situation. We could include new data sources for existing queries by simply connecting them to the channel - the application didn't have to know or care what data sources where there, as it only looked at the data from the channel. Since data can be pushed or pulled from the channel, we could have a data source update the application when, for example, it was updated.
It took a while to get it configured and working, but once we got it going, we were pretty successful with it. In our demo setup, we ended up with 4 or 5 applications acting as both producers and consumers of data, and connecting to maybe 10 data sources.
Have you thought of moving the data into a separate structure?
For example, Lucene stores data to be searched in a schema-less inverted indexed. You could have a separate program that retrieves data from all your different sources and puts them in a Lucene index. Your search could work against this index and the search results could contain a unique identifier and the system it came from.
http://lucene.apache.org/java/docs/
(There are implementations in other languages as well)
Have you taken a look at YQL? It may not be the perfect solution but I might give you starting point to work from.
Well, for starters I'd parallelize the queries to the different systems. That way we can minimize the query time.
You might also want to think about caching and aggregating the search attributes for subsequent queries in order to speed things up.
You have the option of creating an aggregation service or middleware that aggregates all the different systems so that you can provide a single interface for querying. If you do that, this is where I'd do the previously mentioned cache and parallize optimizations.
However, with all of that it you will need weighing up the development time/deployment time /long term benefits of the effort against migrating the old legacy database to a faster more modern one. You haven't said how tied into other systems those databases are so it may not be a very viable option in the short term.
EDIT: in response to data going out of date. You can consider caching if your data if you don't need the data to always match the database in real time. Also, if some data doesn't change very often (e.g. dates of birth) then you should cache them. If you employ caching then you could make your system configurable as to what tables/columns to include or exclude from the cache and you could give each table/column a personalizable cache timeout with an overall default.
Use Pentaho/Kettle to copy all of the data fields that you can search on and display into a local MySQL database
http://www.pentaho.com/products/data_integration/
Create a batch script to run nightly and update your local copy. Maybe even every hour. Then, write your query against your local MySQL database and display the results.

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