Freely available example datasets of hierarchical information, and realistic names - sql

I'm about to write some example applications and accompanying documents comparing ways of accessing information stored in relational databases. To demonstrate real-life requirements, I need to include a realistic dataset of hundreds of thousands of facts.
Is anyone aware of publicly available, free datasets of that magnitude, of datasets of human names with human-level variance, or hierarchical datasets of either large organizational hierarchies, or large hierarchical, categorized, product catalogues?
Please point me in the right direction, if you are.
Part 1, human names: http://timecenter.cs.aau.dk/software.htm
Part 2, hierarchical data: no answer yet

The wikipedia dump is pretty massive: obligatory wikipedia link.

Your own PC's directory tree is a large hierarchical structure with lots of facts. You probably have a few thousand "Facts" which are file names, modification dates, sizes, extra OS info, etc., etc.
If that's not large enough, find a server that you can login to. That will be larger.
Not large enough? Get a web crawler and start crawling a big web site. That can be as large as you have the patience to crawl.

http://dev.mysql.com/doc/sakila/en/sakila.html

Related

In MongoDB, if my queries do not involve any joins, can I assume that it will scale?

I have an APP that will be demanding in terms of pulling data. Each time a user logs in, data is pulled, each time a new page is visited data is pulled, etc.
Let's suppose that these queries will never involve joins.
Can I assume then that the queries will scale?
No, it does not follow that using MongoDB and not using joins means "your queries will scale." That's a myth told by MongoDB marketing, not real software engineering.
It depends what your query is doing. Every query has a cost, no matter what brand of datastore you use. Every data access needs to use resources on the server, and that resource usage adds up. Do you queries scan thousands or millions of documents in the MongoDB datastore? Do they need to do map-reduce? How many documents are in the query response? Is it pulling data that is cached, or will it cost I/O overhead to pull that data? How many requests per second do you need to serve? Can MongoDB support the rate of queries you need to do? Are you configuring a MongoDB replica set or a sharded cluster? How many shards do you queries need to visit to get their result? How powerful are the servers hosting each node?
These are some examples of the types of questions you need to understand and analyze for your queries and your MongoDB cluster (the list is not complete).
You don't need to give me the answers to these questions. I'm just using them to illustrate why it's a naive question to ask "will it scale?"
It's like asking "I'm need to drive my car to my brother's house, will I have to refill my fuel tank?" That's not enough information to answer the question. How far away is your brother's house? What type of vehicle do you have? What is its fuel efficiency? Is your vehicle laden with a lot of heavy cargo? How many times do you need to make the trip? How fast are you driving? How rough are the roads on the route?
There are probably many things to consider depending on your needs but i think the main difference comes from the document data model (that MongoDB is made to support and scale on)
Document => more related data in 1 place
fewer joins (expensive especially if data are in different machines)
fewer transactions (single document updates are atomic)
simpler smaller schema, more tailored to your application
data model, similar to the way programmers save their data on
objects(maps)/arrays
If you have many applications or too many different ways to access the same data, maybe you end up normalizing more your data to a more general data representation => losing some of the above benefits or duplicating some of your data to serve the different needs.

Where can I find various existing ontologies regarding certain aspects?

I need to create – possibly, by reusing various (parts of) existing ontologies – an ontological model regarding certain aspects – data communication, data processing, data storage, etc. – regarding a distributed system (platform, framework,...) used in the context of big data. Significant concepts, relations, restrictions, individuals should be considered as examples for a real software product like Hadoop or Git Large File Storage might be taking into account. Do someone know if there are ontologies that describes the system for one of the above or any other distributed system?
I don't know a specific vocabulary for that, but there are sites out there that can help you find what you need, e.g. http://lov.okfn.org/dataset/lov/

Are there any REAL advantages to NoSQL over RDBMS for structured data on one machine?

So I've been trying hard to figure out if NoSQL is really bringing that much value outside of auto-sharding and handling UNSTRUCTURED data.
Assuming I can fit my STRUCTURED data on a single machine OR have an effective 'auto-sharding' feature for SQL, what advantages do any NoSQL options offer? I've determined the following:
Document-based (MongoDB, Couchbase, etc) - Outside of it's 'auto-sharding' capabilities, I'm having a hard time understanding where the benefit is. Linked objects are quite similar to SQL joins, while Embedded objects significantly bloat doc size and causes a challenge regarding to replication (a comment could belong to both a post AND a user, and therefore the data would be redundant). Also, loss of ACID and transactions are a big disadvantage.
Key-value based (Redis, Memcached, etc) - Serves a different use case, ideal for caching but not complex queries
Columnar (Cassandra, HBase, etc ) - Seems that the big advantage here is more how the data is stored on disk, and mostly useful for aggregations rather than general use
Graph (Neo4j, OrientDB, etc) - The most intriguing, the use of both edges and nodes makes for an interesting value-proposition, but mostly useful for highly complex relational data rather than general use.
I can see the advantages of Key-value, Columnar and Graph DBs for specific use cases (Caching, social network relationship mapping, aggregations), but can't see any reason to use something like MongoDB for STRUCTURED data outside of it's 'auto-sharding' capabilities.
If SQL has a similar 'auto-sharding' ability, would SQL be a no-brainer for structured data? Seems to me it would be, but I would like the communities opinion...
NOTE: This is in regards to a typical CRUD application like a Social Network, E-Commerce site, CMS etc.
If you're starting off on a single server, then many advantages of NoSQL go out the window. The biggest advantages to the most popular NoSQL are high availability with less down time. Eventual consistency requirements can lead to performance improvements as well. It really depends on your needs.
Document-based - If your data fits well into a handful of small buckets of data, then a document oriented database. For example, on a classifieds site we have Users, Accounts and Listings as the core data. The bulk of search and display operations are against the Listings alone. With the legacy database we have to do nearly 40 join operations to get the data for a single listing. With NoSQL it's a single query. With NoSQL we can also create indexes against nested data, again with results queried without Joins. In this case, we're actually mirroring data from SQL to MongoDB for purposes of search and display (there are other reasons), with a longer-term migration strategy being worked on now. ElasticSearch, RethinkDB and others are great databases as well. RethinkDB actually takes a very conservative approach to the data, and ElasticSearch's out of the box indexing is second to none.
Key-value store - Caching is an excellent use case here, when you are running a medium to high volume website where data is mostly read, a good caching strategy alone can get you 4-5 times the users handled by a single server. Key-value stores (RocksDB, LevelDB, Redis, etc) are also very good options for Graph data, as individual mapping can be held with subject-predicate-target values which can be very fast for graphing options over the top.
Columnar - Cassandra in particular can be used to distribute significant amounts of load for even single-value lookups. Cassandra's scaling is very linear to the number of servers in use. Great for heavy read and write scenarios. I find this less valuable for live searches, but very good when you have a VERY high load and need to distribute. It takes a lot more planning, and may well not fit your needs. You can tweak settings to suite your CAP needs, and even handle distribution to multiple data centers in the box. NOTE: Most applications do emphatically NOT need this level of use. ElasticSearch may be a better fit in most scenarios you would consider HBase/Hadoop or Cassandra for.
Graph - I'm not as familiar with graph databases, so can't comment here (beyond using a key-value store as underlying option).
Given that you then comment on MongoDB specifically vs SQL ... even if both auto-shard. PostgreSQL in particular has made a lot of strides in terms of getting unstrictured data usable (JSON/JSONB types) not to mention the power you can get from something like PLV8, it's probably the most suited to handling the types of loads you might throw at a document store with the advantages of NoSQL. Where it happens to fall down is that replication, sharding and failover are bolted on solutions not really in the box.
For small to medium loads sharding really isn't the best approach. Most scenarios are mostly read so having a replica-set where you have additional read nodes is usually better when you have 3-5 servers. MongoDB is great in this scenario, the master node is automagically elected, and failover is pretty fast. The only weirdness I've seen is when Azure went down in late 2014, and only one of the servers came up first, the other two were almost 40 minutes later. With replication any given read request can be handled in whole by a single server. Your data structures become simpler, and your chances of data loss are reduced.
Again in my own example above, for a mediums sized classifieds site, the vast majority of data belongs to a single collection... it is searched against, and displayed from that collection. With this use case a document store works much better than structured/normalized data. The way the objects are stored are much closer to their representation in the application. There's less of a cognitive disconnect and it simply works.
The fact is that SQL JOIN operations kill performance, especially when aggregating data across those joins. For a single query for a single user it's fine, even with a dozen of them. When you get to dozens of joins with thousands of simultaneous users, it starts to fall apart. At this point you have several choices...
Caching - caching is always a great approach, and the less often your data changes, the better the approach. This can be anything from a set of memcache/redis instances to using something like MongoDB, RethinkDB or ElasticSearch to hold composite records. The challenge here comes down to updating or invalidating your cached data.
Migrating - migrating your data to a data store that better represents your needs can be a good idea as well. If you need to handle massive writes, or very massive read scenarios no SQL database can keep up. You could NEVER handle the likes of Facebook or Twitter on SQL.
Something in between - As you need to scale it depends on what you are doing and where your pain points are as to what will be the best solution for a given situation. Many developers and administrators fear having data broken up into multiple places, but this is often the best answer. Does your analytical data really need to be in the same place as your core operational data? For that matter do your logins need to be tightly coupled? Are you doing a lot of correlated queries? It really depends.
Personal Opinions Ahead
For me, I like the safety net that SQL provides. Having it as the central store for core data it's my first choice. I tend to treat RDBMS's as dumb storage, I don't like being tied to a given platform. I feel that many people try to over-normalize their data. Often I will add an XML or JSON field to a table so additional pieces of data can be stored without bloating the scheme, specifically if it's unlikely to ever be queried... I'll then have properties in my objects in the application code that store in those fields. A good example may be a payment... if you are currently using one system, or multiple systems (one for CC along with Paypal, Google, Amazon etc) then the details of the transaction really don't affect your records, why create 5+ tables to store this detailed data. You can even use JSON for primary storage and have computed columns derived and persisted from that JSON for broader query capability and indexing where needed. Databases like postgresql and mysql (iirc) offer direct indexing against JSON data as well.
When data is a natural fit for a document store, I say go for it... if the vast majority of your queries are for something that fits better to a single record or collection, denormalize away. Having this as a mirror to your primary data is great.
For write-heavy data you want multiple systems in play... It depends heavily on your needs here... Do you need fast hot-query performance? Go with ElasticSearch. Do you need absolute massive horizontal scale, HBase or Cassandra.
The key take away here is not to be afraid to mix it up... there really isn't a one size fits all. As an aside, I feel that if PostgreSQL comes up with a good in the box (for the open-source version) solution for even just replication and automated fail-over they're in a much better position than most at that point.
I didn't really get into, but feel I should mention that there are a number of SaaS solutions and other providers that offer hybrid SQL systems. You can develop against MySQL/MariaDB locally and deploy to a system with SQL on top of a distributed storage cluster. I still feel that HBase or ElasticSearch are better for logging and analitical data, but the SQL on top solutions are also compelling.
More: http://www.mongodb.com/nosql-explained
Schema-less storage (or schema-free). Ability to modify the storage (basically add new fields to records) without having to modify the storage 'declared' schema. RDBMSs require the explicit declaration of said 'fields' and require explicit modifications to the schema before a new 'field' is saved. A schema-free storage engine allows for fast application changes, just modify the app code to save the extra fields, or rename the fields, or drop fields and be done.
Traditional RDBMS folk consider the schema-free a disadvantage because they argue that on the long run one needs to query the storage and handling the heterogeneous records (some have some fields, some have other fields) makes it difficult to handle. But for a start-up the schema-free is overwhelmingly alluring, as fast iteration and time-to-market is all that matter (and often rightly so).
You asked us to assume that either the data can fit on a single machine, OR your database has an effective auto-sharding feature.
Going with the assumption that your SQL data has an auto-sharding feature, that means you're talking about running a cluster. Any time you're running a cluster of machines you have to worry about fault-tolerance.
For example, let's say you're using the simplest approach of sharding your data by application function, and are storing all of your user account data on server A and your product catalog on server B.
Is it acceptable to your business if server A goes down and none of your users can login?
Is it acceptable to your business if server B goes down and no one can buy things?
If not, you need to worry about setting up data replication and high-availability failover. Doable, but not pleasant or easy for SQL databases. Other types of sharding strategies (key, lookup service, etc) have the same challenges.
Many NoSQL databases will automatically handle replication and failovers. Some will do it out of the box, with very little configuration. That's a huge benefit from an operational point of view.
Full disclosure: I'm an engineer at FoundationDB, a NoSQL database that automatically handles sharding, replication, and fail-over with very little configuration. It also has a SQL layer so you you don't have to give up structured data.

gDatabase Optimization: Need a really big database to test some of the features of sql server

I have done database optimization for dbs upto 3GB size. Need a really large database to test optimization.
Simply generating a lot of data and throwing it into a table proves nothing about the DBMS, the database itself, the queries being issued against it, or the applications interacting with them, all of which factor into the performance of a database-dependent system.
The phrase "I have done database optimization for [databases] up to 3 GB" is highly suspect. What databases? On what platform? Using what hardware? For what purposes? For what scale? What was the model? What were you optimizing? What was your budget?
These same questions apply to any database, regardless of size. I can tell you first-hand that "optimizing" a 250 GB database is not the same as optimizing a 25 GB database, which is certainly not the same as optimizing a 3 GB database. But that is not merely on account of the database size, it is because databases that contain 250 GB of data invariably deal with requirements that are vastly different from those addressed by a 3 GB database.
There is no magic size barrier at which you need to change your optimization strategy; every optimization requires in-depth knowledge of the specific data model and its usage requirements. Maybe you just need to add a few indexes. Maybe you need to remove a few indexes. Maybe you need to normalize, denormalize, rewrite a couple of bad queries, change locking semantics, create a data warehouse, implement caching at the application layer, or look into the various kinds of vertical scaling available for your particular database platform.
I submit that you are wasting your time attempting to create a "really big" database for the purposes of trying to "optimize" it with no specific requirements in mind. Various data-generation tools are available for when you need to generate data fitting specific patterns for testing against a specific set of scenarios, but until you have that information on hand, you won't accomplish very much with a database full of unorganized test data.
The best way to do this is to create your schema and write a script to populate it with lots of random(ish) dummy data. Random, meaning that your text-fields don't necessarily have to make sense. 'ish', meaning that the data distribution and patterns should generally reflect your real-world DB usage.
Edit: a quick Google search reveals a number of commercial tools that will do this for you if you don't want to write your own populate scripts: DB Data Generator, DTM Data Generator. Disclaimer: I've never used either of these and can't really speak to their quality or usefulness.
Here is a free procedure I wrote to generate Random person names. Quick and dirty, but it works and might help.
http://www.joebooth-consulting.com/products/genRandNames.sql
I use Red-Gate's Data Generator regularly to test out problems as well as loads on real systems and it works quite well. That said, I would agree with Aaronnaught's sentiment in that the overall size of the database isn't nearly as important as the usage patterns and the business model. For example, generating 10 GB of data on a table that will eventually get no traffic will not provide any insight into optimization. The goal is to replicate the expected transaction and storage loads you anticipate to occur in order to identify bottlenecks before they occur.

What informataion analysis techniques are there for the qualitative analysis of user generated data?

There's a few algorithms we have for sorting data, finding the maximum and minimum, finding the shortest path between nodes etc.
I've started looking into the qualitative analysis of user-generated data and have come across latent semantic anaylsis. What other techniques exists for the analysis of textual data ... and possibly other media?
That's...a pretty broad question. Analysis of user-generated data, textual or otherwise, is typically done through specialized applications of general data mining techniques. If you're interested in learning more about this extremely wide field, I'd start with that wikipedia link, follow all its references, then hit Google Scholar. By then you should know what sorts of techniques you're interested in.
If you have a specific problem in mind, post about it; there's a community of AI guys here on SO and one of us can probably suggest an approach, or at least a more focused line of research.