Want to migrate bulk files (e.g VSAM) from Mainframe to Azure in the beginning of the Project, how that can be achieved ?
Any utility or do we need to write own scripts?
I suspect there are some utilities out there but I suspect they are most / all priced products. Since VSAM datasets are not defined using a language construct like DDL you will likely have to do most of the heavy lifting. Either writing your own programs or custom scripts. You didn’t mention operating system but I assume you’re working on z/OS.
Here are some things to consider:
The structure of the VSAM dataset is basically record oriented. There are three basic types you’ll run into that host application data:
Key Sequenced Datasets (KSDS)
Entry Sequenced Datasets (ESDS)
Relative Record datasets (RRDS)
Familiarize yourself with the means of defining the datasets as it will give you some insight into the dataset specifics. DFSMS Access Method Services Commands will show the utilities used to create them and get information like Keylength and offest of the key. DEFINE CLUSTER is the command to create the dataset. You mentioned you are moving the data toi Azure but this will help you understand the characteristics of the data you are moving.
Since there is no DDL for VSAM datasets you will generally find the structure in the programs that manipulate them like COBOL Copybooks, HLASM DSECTs and similar constructs. This is the long pole in the tent for you.
Consider what are the semantics of accessing the data. VSAM as an access method does have some ability to control read/write access on a macro level using a DEFINE CLUSTER option called SHAREOPTIONS. The SHAREOPTIONS instruct the operating system how to handle the VSAM buffers in terms of reading and writing so that multiple processes can access the same data. Its primitive if compared to sahred files systems like NFS. VSAM allows the application to control access (or serialization) using ENQ / DEQ functions. These enable applications to express intent in the cluster about a VSAM file and coordinate their own activities.
You might find that converting a VSAM file to a relational form like Db2 is better for you. Again, you’ll have to create the DDL to describe the tables, data formats and the like.
Another consideration is data conversion. You’ll find there is character data that is most likely in EBCDIC and needs to be converted to a new code page. Numeric data can be in Packed Decimal, Binary, or even text and will need to be converted.
The short answer is there isn’t an “Easy Button” to do what you want. Consider the data is only one of the questions that needs to be answered. Serialization and access to the data, codepage conversion, if you are moving some data but not others will you need to be able to map some of the converted data back to data on the mainframe.
Consider exploring IBM CDC classic replication. You can achieve it with click of buttons.
I have not done for Azure. So not sure about support.
We're approaching the migration of legacy OpenVMS RMS files into relational database (both MS SQL 2012 and Oracle 10g are available).
I wonder if there are:
Tools to retrieve schema of indexed files
Tools to parse indexed files
Tools to deal with custom RMS data formats (zoned decimals etc)
as a bundle/API/Library
Perhaps I should change the approach?
There are several tools available, notably through ODBC vendors (I work for one: Attunity).
1 >> Tools to retrieve schema of indexed files
Please clarify. Looking for just record/column layout and indexes within the files or also relationships between files.
1a) How are the files currently being used? Cobol, Basic, Fortran programs? Datatrieve?
They will be using some data definition method, so you want a tool which can exploit that.
Connx, and Attunity Connect can 'import' CDD definitions, BASIC - MAP files, Cobol Copybooks. Variants are typically covered as well. I have written many a (perl/awk) script to convert special definition to XML.
1b ) Analyze/RMS, or a program with calling RMS XAB's can get available index information. Atunity connect will know how to map those onto the fields from 1a)
1c ) There is no formal, stored, relationship between (indexed) files on OpenVMS. That's all in the program logic. However, some modestly smart Perl/Awk/DCL script can often generate a tablem of likely foreign/primary keys by looking at filed names and datatypes matches.
How many files / layouts / gigabytes are we talking about?
2 >> Tools to parse indexed files
Please clarify? Once the structure is known (question 1), the parsing is done by reading using that structure right? You never ever want to understand the indexed file internals. Just tell RMS to fetch records.
3 >> Tools to deal with custom RMS data formats (zoned decimals etc) as a bundle/API/Library
Again, please clarify. Once the structure is known just use the 'right' tool to read using that structure and surely it will honor the detailed data definitions.
(I know it is quite simple to write one yourself, just thought there would be something in the industry)
Famous last words... 'quite simple'. Entire companies have been build and thrive doing just that for general cases. I admit that for specific cases it can be relatively straightforward, but 'the devil is in the details'.
In the Attunity Connect case we have a UDT (User Defined data Type) to handle the 'odd' cases, often involving DATES. Dates in integers, in strings, as units since xxx are all available out of the box, but for example some have -1 meaning 'some high date' which needs some help to be stored in a DB.
All the databases have some bulk load tool (BCP, SQL$LOADER).
As long as you can deliver data conforming to what those expect (tabular, comma-seperated, quoted-or-not, escapes-or-not) you should be in good shape.
The EGH tool Vselect may be a handy, and high performance, way to bulk read indexed files, filter and format some and spit out sequential files for the DB loaders. It can read RMS indexed file faster than RMS can! (It has its own metadata language though!)
Attunity offers full access and replication services.
They include a CDC (change data capture) to not a only load the data, but to also keep it up to date in near-real-time. That's useful for 'evolution' versus 'revolution'.
Check out Attunity 'Replicate'. Once you have a data dictionary, just point to the tables desired (include, exlude filters), point to a target DB and click to replicate. Of course there are options for (global or per-table) transformations (like an AREA-CODE+EXHANGE+NUMBER to single phone number, or adding a modified date columns ).
Will this be a single big switch conversion, or is there desire to migrate the data and keep the old systems alive for days, months, years perhaps, all along keeping the data in close sync?
Hope this helps some,
Hein van den Heuvel.
OP: Perhaps I should change the approach? Probably.
You might consider finding data migration vendors, some which likely have off-the-shelf solutions, if not as a COTS tool, more likely packaged as a service (I don't think this is a big market).
What this won't help you with is what I think of as much bigger problem with the application code: who is going to change all the code that is making RMS calls, in the corresponding code that makes relational DB calls? How will the entity ("Joe Programmer", or some tool), know where the data migrated to, so that he can write the correct call? What are you doing to do about the fact that the data representation is like to change?
Ideally you'd like an automated migration tool, that will move the data itself (therefore knows that datalayouts and representation changes), and will make the code changes that correspond. You can look for these kind of vendors, too.
I currently have a filesystem path I would like to index into a SQL database. I need to access the data so that I can do queries against files based on modified times, or partial names, or many other items.
Is there a way to somehow sync a filesystem to a database automatically, or even access a filesystem in a sql-like interface, without having to crawl through folders recursively?
I was checking the Microsoft Sync Framework 2.0, since it supports SQL databases now, however it doesn't appear to support syncing files to databases.
I'm sure other vendors do something similar, such as Microsoft for the database of files in Media Center, or programs like TVersity storing a database of the files as well.
You don't mention a programming language but here is how I would do it and I think it's the way most media apps maintaining a library do it (although they might be writter in different languages and use the win32 api).
Using .net to get your initial data I would once recursively scan the directory and then add all information to the database. Then I would run a service using a FileSystemWatcher object to be notified about changes and process the events accordingly.
It sounds like what you want is Windows Search. (or the Windows 7 Library feature if you're feeling bleeding edge).
Ultimately though something has to crawl the disk to pull the info out, whether it's you or a third party service.
As an aside SQL may not be the best tool for that particular job, depending on exactly what you want to search for. Tree structures are notoriously tricky to represent in relational databases efficiently - your searches could get quite expensive!
It may not be a pure programming question but I'm looking for information about enCapsa. Do you know what it is, have you ever used it? I'm reading some papers about it but I can't really see how it works and what it can be used for in an IT company (and this is what i am supposed to find out).
Basically enCapsa is a shared data storage system, focused on providing a way for storing any kind of data (even from etherogeneous data sources such as different designed db tables) and consequently obtain it through a sort of human friendly queries, just like on a search engine. They offer the possibility to upload data from everywhere (it's CSV based) and later download to use wherever you need it.
Usages are many, consider it's a centralized DB accessible through web and they say it meets high security standard.
A usefull way to employ this service is to have data stored in there without the need to keep them synchronized across company computers.
Can you please point to alternative data storage tools and give good reasons to use them instead of good-old relational databases? In my opinion, most applications rarely use the full power of SQL--it would be interesting to see how to build an SQL-free application.
Plain text files in a filesystem
Very simple to create and edit
Easy for users to manipulate with simple tools (i.e. text editors, grep etc)
Efficient storage of binary documents
XML or JSON files on disk
As above, but with a bit more ability to validate the structure.
Spreadsheet / CSV file
Very easy model for business users to understand
Subversion (or similar disk based version control system)
Very good support for versioning of data
Berkeley DB (Basically, a disk based hashtable)
Very simple conceptually (just un-typed key/value)
Quite fast
No administration overhead
Supports transactions I believe
Amazon's Simple DB
Much like Berkeley DB I believe, but hosted
Google's App Engine Datastore
Hosted and highly scalable
Per document key-value storage (i.e. flexible data model)
CouchDB
Document focus
Simple storage of semi-structured / document based data
Native language collections (stored in memory or serialised on disk)
Very tight language integration
Custom (hand-written) storage engine
Potentially very high performance in required uses cases
I can't claim to know anything much about them, but you might also like to look into object database systems.
Matt Sheppard's answer is great (mod up), but I would take account these factors when thinking about a spindle:
Structure : does it obviously break into pieces, or are you making tradeoffs?
Usage : how will the data be analyzed/retrieved/grokked?
Lifetime : how long is the data useful?
Size : how much data is there?
One particular advantage of CSV files over RDBMSes is that they can be easy to condense and move around to practically any other machine. We do large data transfers, and everything's simple enough we just use one big CSV file, and easy to script using tools like rsync. To reduce repetition on big CSV files, you could use something like YAML. I'm not sure I'd store anything like JSON or XML, unless you had significant relationship requirements.
As far as not-mentioned alternatives, don't discount Hadoop, which is an open source implementation of MapReduce. This should work well if you have a TON of loosely structured data that needs to be analyzed, and you want to be in a scenario where you can just add 10 more machines to handle data processing.
For example, I started trying to analyze performance that was essentially all timing numbers of different functions logged across around 20 machines. After trying to stick everything in a RDBMS, I realized that I really don't need to query the data again once I've aggregated it. And, it's only useful in it's aggregated format to me. So, I keep the log files around, compressed, and then leave the aggregated data in a DB.
Note I'm more used to thinking with "big" sizes.
The filesystem's prety handy for storing binary data, which never works amazingly well in relational databases.
Try Prevayler:
http://www.prevayler.org/wiki/
Prevayler is alternative to RDBMS. In the site have more info.
If you don't need ACID, you probably don't need the overhead of an RDBMS. So, determine whether you need that first. Most of the non-RDBMS answers provided here do not provide ACID.
Custom (hand-written) storage engine / Potentially very high performance in required uses cases
http://www.hdfgroup.org/
If you have enormous data sets, instead of rolling your own, you might use HDF, the Hierarchical Data Format.
http://en.wikipedia.org/wiki/Hierarchical_Data_Format:
HDF supports several different data models, including multidimensional arrays, raster images, and tables.
It's also hierarchical like a file system, but the data is stored in one magic binary file.
HDF5 is a suite that makes possible the management of extremely large and complex data collections.
Think petabytes of NASA/JPL remote sensing data.
G'day,
One case that I can think of is when the data you are modelling cannot be easily represented in a relational database.
Once such example is the database used by mobile phone operators to monitor and control base stations for mobile telephone networks.
I almost all of these cases, an OO DB is used, either a commercial product or a self-rolled system that allows heirarchies of objects.
I've worked on a 3G monitoring application for a large company who will remain nameless, but whose logo is a red wine stain (-: , and they used such an OO DB to keep track of all the various attributes for individual cells within the network.
Interrogation of such DBs is done using proprietary techniques that are, usually, completely free from SQL.
HTH.
cheers,
Rob
Object databases are not relational databases. They can be really handy if you just want to stuff some objects in a database. They also support versioning and modify classes for objects that already exist in the database. db4o is the first one that comes to mind.
In some cases (financial market data and process control for example) you might need to use a real-time database rather than a RDBMS. See wiki link
There was a RAD tool called JADE written a few years ago that has a built-in OODBMS. Earlier incarnations of the DB engine also supported Digitalk Smalltalk. If you want to sample application building using a non-RDBMS paradigm this might be a start.
Other OODBMS products include Objectivity, GemStone (You will need to get VisualWorks Smalltalk to run the Smalltalk version but there is also a java version). There were also some open-source research projects in this space - EXODUS and its descendent SHORE come to mind.
Sadly, the concept seemed to die a death, probably due to the lack of a clearly visible standard and relatively poor ad-hoc query capability relative to SQL-based RDMBS systems.
An OODBMS is most suitable for applications with core data structures that are best represented as a graph of interconnected nodes. I used to say that the quintessential OODBMS application was a Multi-User Dungeon (MUD) where rooms would contain players' avatars and other objects.
You can go a long way just using files stored in the file system. RDBMSs are getting better at handling blobs, but this can be a natural way to handle image data and the like, particularly if the queries are simple (enumerating and selecting individual items.)
Other things that don't fit very well in a RDBMS are hierarchical data structures and I'm guessing geospatial data and 3D models aren't that easy to work with either.
Services like Amazon S3 provide simpler storage models (key->value) that don't support SQL. Scalability is the key there.
Excel files can be useful too, particularly if users need to be able to manipulate the data in a familiar environment and building a full application to do that isn't feasible.
There are a large number of ways to store data - even "relational databse" covers a range of alternatives from a simple library of code that manipulates a local file (or files) as if it were a relational database on a single user basis, through file based systems than can handle multiple-users to a generous selection of serious "server" based systems.
We use XML files a lot - you get well structured data, nice tools for querying same the ability to do edits if appropriate, something that's human readable and you don't then have to worry about the db engine working (or the workings of the db engine). This works well for stuff that's essentially read only (in our case more often than not generated from a db elsewhere) and also for single user systems where you can just load the data in and save it out as required - but you're creating opportunities for problems if you want multi-user editing - at least of a single file.
For us that's about it - we're either going to use something that will do SQL (MS offer a set of tools that run from a .DLL to do single user stuff all the way through to enterprise server and they all speak the same SQL (with limitations at the lower end)) or we're going to use XML as a format because (for us) the verbosity is seldom an issue.
We don't currently have to manipulate binary data in our apps so that question doesn't arise.
Murph
One might want to consider the use of an LDAP server in the place of a traditional SQL database if the application data is heavily key/value oriented and hierarchical in nature.
BTree files are often much faster than relational databases. SQLite contains within it a BTree library which is in the public domain (as in genuinely 'public domain', not using the term loosely).
Frankly though, if I wanted a multi-user system I would need a lot of persuading not to use a decent server relational database.
Full-text databases, which can be queried with proximity operators such as "within 10 words of," etc.
Relational databases are an ideal business tool for many purposes - easy enough to understand and design, fast enough, adequate even when they aren't designed and optimized by a genius who could "use the full power," etc.
But some business purposes require full-text indexing, which relational engines either don't provide or tack on as an afterthought. In particular, the legal and medical fields have large swaths of unstructured text to store and wade through.
Also:
* Embedded scenarios - Where usually it is required to use something smaller then a full fledged RDBMS. Db4o is an ODB that can be easily used in such case.
* Rapid or proof-of-concept development - where you wish to focus on the business and not worry about persistence layer
CAP theorem explains it succinctly. SQL mainly provides "Strong Consistency: all clients see the same view, even in presence of updates".
K.I.S.S: Keep It Small and Simple
I would offer RDBMS :)
If you do not wont to have troubles with set up/administration go for SQLite.
Built in RDBMS with full SQL support. It even allows you to store any type of data in any column.
Main advantage against for example log file: If you have huge one, how are you going to search in it? With SQL engine you just create index and speed up operation dramatically.
About full text search: SQLite has modules for full text search too..
Just enjoy nice standard interface to your data :)
One good reason not to use a relational database would be when you have a massive data set and want to do massively parallel and distributed processing on the data. The Google web index would be a perfect example of such a case.
Hadoop also has an implementation of the Google File System called the Hadoop Distributed File System.
I would strongly recommend Lua as an alternative to SQLite-kind of data storage.
Because:
The language was designed as a data description language to begin with
The syntax is human readable (XML is not)
One can compile Lua chunks to binary, for added performance
This is the "native language collection" option of the accepted answer. If you're using C/C++ as the application level, it is perfectly reasonable to throw in the Lua engine (100kB of binary) just for the sake of reading configs/data or writing them out.