Best practices - Big data with mysql - mysql

I have a video surveillance project running on a cloud infrastructure and using MySQL database.
We are now integrating some artificial intelligence into our project including face recognition, plate recognition, tag search, etc.. which implies a huge amount of data every day
All the photos and the images derived from those photos by image processing algorithms are stored in cloud storage but their references and tags are stored in the database.
I have been thinking of the best way to integrate this, do I have to stick to MySQL or use another system. The different options I thought about are:
1- Use another database MongoDB to store the photos references and tags. This will cost me another database server, as well as the integration with a new database system along with the existent MySQL server
2- Use elastic search to retrieve data and perform tag searching. This leads to question the capacity of MySql to store this amount of data
3- Stick with MySQL purely, but is the user experience will be impacted?
Would you guide me to the best option to choose or give me another proposal?
EDIT:
For more information:
The physical pictures are stored in cloud storage, only the URLs are stored in the database.
In the database, we will store the metadata of the picture like id, the id of the client, URL, tags, date of creation, etc...
Operations are of the type :
It will be generally a SELECTs based on different criteria and search by tags
How big the data is?
Imagine a camera placed outdoor in the street and each time it detects a face it will send an image.
Imagine thousands of cameras are doing so. Then, we are talking about millions of images per client.

MySQL can handle billions of rows. You have not provided enough other information to comment on the rest of your questions.
Large blobs (images, videos, etc) are probably best handled by some large, cheap, storage. And then, as you say, a URL to the blob would be stored in the database.
How many rows? How frequently inserting? Some desired SELECT statements? Is it mostly just writing to the database? Or will you have large, complex, queries?

Related

Best conventions for storing user uploaded images in a MYSQL database? [duplicate]

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So I'm using an app that stores images heavily in the DB. What's your outlook on this? I'm more of a type to store the location in the filesystem, than store it directly in the DB.
What do you think are the pros/cons?
I'm in charge of some applications that manage many TB of images. We've found that storing file paths in the database to be best.
There are a couple of issues:
database storage is usually more expensive than file system storage
you can super-accelerate file system access with standard off the shelf products
for example, many web servers use the operating system's sendfile() system call to asynchronously send a file directly from the file system to the network interface. Images stored in a database don't benefit from this optimization.
things like web servers, etc, need no special coding or processing to access images in the file system
databases win out where transactional integrity between the image and metadata are important.
it is more complex to manage integrity between db metadata and file system data
it is difficult (within the context of a web application) to guarantee data has been flushed to disk on the filesystem
As with most issues, it's not as simple as it sounds. There are cases where it would make sense to store the images in the database.
You are storing images that are
changing dynamically, say invoices and you wanted
to get an invoice as it was on 1 Jan
2007?
The government wants you to maintain 6 years of history
Images stored in the database do not require a different backup strategy. Images stored on filesystem do
It is easier to control access to the images if they are in a database. Idle admins can access any folder on disk. It takes a really determined admin to go snooping in a database to extract the images
On the other hand there are problems associated
Require additional code to extract
and stream the images
Latency may be
slower than direct file access
Heavier load on the database server
File store. Facebook engineers had a great talk about it. One take away was to know the practical limit of files in a directory.
Needle in a Haystack: Efficient Storage of Billions of Photos
This might be a bit of a long shot, but if you're using (or planning on using) SQL Server 2008 I'd recommend having a look at the new FileStream data type.
FileStream solves most of the problems around storing the files in the DB:
The Blobs are actually stored as files in a folder.
The Blobs can be accessed using either a database connection or over the filesystem.
Backups are integrated.
Migration "just works".
However SQL's "Transparent Data Encryption" does not encrypt FileStream objects, so if that is a consideration, you may be better off just storing them as varbinary.
From the MSDN Article:
Transact-SQL statements can insert, update, query, search, and back up FILESTREAM data. Win32 file system interfaces provide streaming access to the data.
FILESTREAM uses the NT system cache for caching file data. This helps reduce any effect that FILESTREAM data might have on Database Engine performance. The SQL Server buffer pool is not used; therefore, this memory is available for query processing.
File paths in the DB is definitely the way to go - I've heard story after story from customers with TB of images that it became a nightmare trying to store any significant amount of images in a DB - the performance hit alone is too much.
In my experience, sometimes the simplest solution is to name the images according to the primary key. So it's easy to find the image that belongs to a particular record, and vice versa. But at the same time you're not storing anything about the image in the database.
The trick here is to not become a zealot.
One thing to note here is that no one in the pro file system camp has listed a particular file system. Does this mean that everything from FAT16 to ZFS handily beats every database?
No.
The truth is that many databases beat many files systems, even when we're only talking about raw speed.
The correct course of action is to make the right decision for your precise scenario, and to do that, you'll need some numbers and some use case estimates.
In places where you MUST guarantee referential integrity and ACID compliance, storing images in the database is required.
You cannot transactionaly guarantee that the image and the meta-data about that image stored in the database refer to the same file. In other words, it is impossible to guarantee that the file on the filesystem is only ever altered at the same time and in the same transaction as the metadata.
As others have said SQL 2008 comes with a Filestream type that allows you to store a filename or identifier as a pointer in the db and automatically stores the image on your filesystem which is a great scenario.
If you're on an older database, then I'd say that if you're storing it as blob data, then you're really not going to get anything out of the database in the way of searching features, so it's probably best to store an address on a filesystem, and store the image that way.
That way you also save space on your filesystem, as you are only going to save the exact amount of space, or even compacted space on the filesystem.
Also, you could decide to save with some structure or elements that allow you to browse the raw images in your filesystem without any db hits, or transfer the files in bulk to another system, hard drive, S3 or another scenario - updating the location in your program, but keep the structure, again without much of a hit trying to bring the images out of your db when trying to increase storage.
Probably, it would also allow you to throw some caching element, based on commonly hit image urls into your web engine/program, so you're saving yourself there as well.
Small static images (not more than a couple of megs) that are not frequently edited, should be stored in the database. This method has several benefits including easier portability (images are transferred with the database), easier backup/restore (images are backed up with the database) and better scalability (a file system folder with thousands of little thumbnail files sounds like a scalability nightmare to me).
Serving up images from a database is easy, just implement an http handler that serves the byte array returned from the DB server as a binary stream.
Here's an interesting white paper on the topic.
To BLOB or Not To BLOB: Large Object Storage in a Database or a Filesystem
The answer is "It depends." Certainly it would depend upon the database server and its approach to blob storage. It also depends on the type of data being stored in blobs, as well as how that data is to be accessed.
Smaller sized files can be efficiently stored and delivered using the database as the storage mechanism. Larger files would probably be best stored using the file system, especially if they will be modified/updated often. (blob fragmentation becomes an issue in regards to performance.)
Here's an additional point to keep in mind. One of the reasons supporting the use of a database to store the blobs is ACID compliance. However, the approach that the testers used in the white paper, (Bulk Logged option of SQL Server,) which doubled SQL Server throughput, effectively changed the 'D' in ACID to a 'd,' as the blob data was not logged with the initial writes for the transaction. Therefore, if full ACID compliance is an important requirement for your system, halve the SQL Server throughput figures for database writes when comparing file I/O to database blob I/O.
One thing that I haven't seen anyone mention yet but is definitely worth noting is that there are issues associated with storing large amounts of images in most filesystems too. For example if you take the approach mentioned above and name each image file after the primary key, on most filesystems you will run into issues if you try to put all of the images in one big directory once you reach a very large number of images (e.g. in the hundreds of thousands or millions).
Once common solution to this is to hash them out into a balanced tree of subdirectories.
Something nobody has mentioned is that the DB guarantees atomic actions, transactional integrity and deals with concurrency. Even referentially integrity is out of the window with a filesystem - so how do you know your file names are really still correct?
If you have your images in a file-system and someone is reading the file as you're writing a new version or even deleting the file - what happens?
We use blobs because they're easier to manage (backup, replication, transfer) too. They work well for us.
The problem with storing only filepaths to images in a database is that the database's integrity can no longer be forced.
If the actual image pointed to by the filepath becomes unavailable, the database unwittingly has an integrity error.
Given that the images are the actual data being sought after, and that they can be managed easier (the images won't suddenly disappear) in one integrated database rather than having to interface with some kind of filesystem (if the filesystem is independently accessed, the images MIGHT suddenly "disappear"), I'd go for storing them directly as a BLOB or such.
At a company where I used to work we stored 155 million images in an Oracle 8i (then 9i) database. 7.5TB worth.
Normally, I'm storngly against taking the most expensive and hardest to scale part of your infrastructure (the database) and putting all load into it. On the other hand: It greatly simplifies backup strategy, especially when you have multiple web servers and need to somehow keep the data synchronized.
Like most other things, It depends on the expected size and Budget.
We have implemented a document imaging system that stores all it's images in SQL2005 blob fields. There are several hundred GB at the moment and we are seeing excellent response times and little or no performance degradation. In addition, fr regulatory compliance, we have a middleware layer that archives newly posted documents to an optical jukebox system which exposes them as a standard NTFS file system.
We've been very pleased with the results, particularly with respect to:
Ease of Replication and Backup
Ability to easily implement a document versioning system
If this is web-based application then there could be advantages to storing the images on a third-party storage delivery network, such as Amazon's S3 or the Nirvanix platform.
Assumption: Application is web enabled/web based
I'm surprised no one has really mentioned this ... delegate it out to others who are specialists -> use a 3rd party image/file hosting provider.
Store your files on a paid online service like
Amazon S3
Moso Cloud Storage
Another StackOverflow threads talking about this here.
This thread explains why you should use a 3rd party hosting provider.
It's so worth it. They store it efficiently. No bandwith getting uploaded from your servers to client requests, etc.
If you're not on SQL Server 2008 and you have some solid reasons for putting specific image files in the database, then you could take the "both" approach and use the file system as a temporary cache and use the database as the master repository.
For example, your business logic can check if an image file exists on disc before serving it up, retrieving from the database when necessary. This buys you the capability of multiple web servers and fewer sync issues.
I'm not sure how much of a "real world" example this is, but I currently have an application out there that stores details for a trading card game, including the images for the cards. Granted the record count for the database is only 2851 records to date, but given the fact that certain cards have are released multiple times and have alternate artwork, it was actually more efficient sizewise to scan the "primary square" of the artwork and then dynamically generate the border and miscellaneous effects for the card when requested.
The original creator of this image library created a data access class that renders the image based on the request, and it does it quite fast for viewing and individual card.
This also eases deployment/updates when new cards are released, instead of zipping up an entire folder of images and sending those down the pipe and ensuring the proper folder structure is created, I simply update the database and have the user download it again. This currently sizes up to 56MB, which isn't great, but I'm working on an incremental update feature for future releases. In addition, there is a "no images" version of the application that allows those over dial-up to get the application without the download delay.
This solution has worked great to date since the application itself is targeted as a single instance on the desktop. There is a web site where all of this data is archived for online access, but I would in no way use the same solution for this. I agree the file access would be preferable because it would scale better to the frequency and volume of requests being made for the images.
Hopefully this isn't too much babble, but I saw the topic and wanted to provide some my insights from a relatively successful small/medium scale application.
SQL Server 2008 offers a solution that has the best of both worlds : The filestream data type.
Manage it like a regular table and have the performance of the file system.
It depends on the number of images you are going to store and also their sizes. I have used databases to store images in the past and my experience has been fairly good.
IMO, Pros of using database to store images are,
A. You don't need FS structure to hold your images
B. Database indexes perform better than FS trees when more number of items are to be stored
C. Smartly tuned database perform good job at caching the query results
D. Backups are simple. It also works well if you have replication set up and content is delivered from a server near to user. In such cases, explicit synchronization is not required.
If your images are going to be small (say < 64k) and the storage engine of your db supports inline (in record) BLOBs, it improves performance further as no indirection is required (Locality of reference is achieved).
Storing images may be a bad idea when you are dealing with small number of huge sized images. Another problem with storing images in db is that, metadata like creation, modification dates must handled by your application.
I have recently created a PHP/MySQL app which stores PDFs/Word files in a MySQL table (as big as 40MB per file so far).
Pros:
Uploaded files are replicated to backup server along with everything else, no separate backup strategy is needed (peace of mind).
Setting up the web server is slightly simpler because I don't need to have an uploads/ folder and tell all my applications where it is.
I get to use transactions for edits to improve data integrity - I don't have to worry about orphaned and missing files
Cons:
mysqldump now takes a looooong time because there is 500MB of file data in one of the tables.
Overall not very memory/cpu efficient when compared to filesystem
I'd call my implementation a success, it takes care of backup requirements and simplifies the layout of the project. The performance is fine for the 20-30 people who use the app.
Im my experience I had to manage both situations: images stored in database and images on the file system with path stored in db.
The first solution, images in database, is somewhat "cleaner" as your data access layer will have to deal only with database objects; but this is good only when you have to deal with low numbers.
Obviously database access performance when you deal with binary large objects is degrading, and the database dimensions will grow a lot, causing again performance loss... and normally database space is much more expensive than file system space.
On the other hand having large binary objects stored in file system will cause you to have backup plans that have to consider both database and file system, and this can be an issue for some systems.
Another reason to go for file system is when you have to share your images data (or sounds, video, whatever) with third party access: in this days I'm developing a web app that uses images that have to be accessed from "outside" my web farm in such a way that a database access to retrieve binary data is simply impossible. So sometimes there are also design considerations that will drive you to a choice.
Consider also, when making this choice, if you have to deal with permission and authentication when accessing binary objects: these requisites normally can be solved in an easier way when data are stored in db.
I once worked on an image processing application. We stored the uploaded images in a directory that was something like /images/[today's date]/[id number]. But we also extracted the metadata (exif data) from the images and stored that in the database, along with a timestamp and such.
In a previous project i stored images on the filesystem, and that caused a lot of headaches with backups, replication, and the filesystem getting out of sync with the database.
In my latest project i'm storing images in the database, and caching them on the filesystem, and it works really well. I've had no problems so far.
Second the recommendation on file paths. I've worked on a couple of projects that needed to manage large-ish asset collections, and any attempts to store things directly in the DB resulted in pain and frustration long-term.
The only real "pro" I can think of regarding storing them in the DB is the potential for easy of individual image assets. If there are no file paths to use, and all images are streamed straight out of the DB, there's no danger of a user finding files they shouldn't have access to.
That seems like it would be better solved with an intermediary script pulling data from a web-inaccessible file store, though. So the DB storage isn't REALLY necessary.
The word on the street is that unless you are a database vendor trying to prove that your database can do it (like, let's say Microsoft boasting about Terraserver storing a bajillion images in SQL Server) it's not a very good idea. When the alternative - storing images on file servers and paths in the database is so much easier, why bother? Blob fields are kind of like the off-road capabilities of SUVs - most people don't use them, those who do usually get in trouble, and then there are those who do, but only for the fun of it.
Storing an image in the database still means that the image data ends up somewhere in the file system but obscured so that you cannot access it directly.
+ves:
database integrity
its easy to manage since you don't have to worry about keeping the filesystem in sync when an image is added or deleted
-ves:
performance penalty -- a database lookup is usually slower that a filesystem lookup
you cannot edit the image directly (crop, resize)
Both methods are common and practiced. Have a look at the advantages and disadvantages. Either way, you'll have to think about how to overcome the disadvantages. Storing in database usually means tweaking database parameters and implement some kind of caching. Using filesystem requires you to find some way of keeping filesystem+database in sync.

Storing data for faster search

Just a general question.
I was wondering how companies like facebook and google search through millions of data in such a short span of time.
Lets say if i have to login, I enter my user credentials on the login page. How does fb and google store username and password so that they can go through millions/ billions of username and check if the user exist or not?
If there is a startup, how should they save their user's data so that later on searching and extracting users details can be faster. Should we create a separate table for user based on first alphabet of their user name? or is their any other better way to do this?
Let me know if there is any good article related to this question that you would suggest me to read.
Searching for data in a centralized database will be a bottle neck as the application data size grows. If you are thinking of scaling problems when starting the development of application itself, make sure your system can easily be deployed to parallel systems.
For example, think of scenarios where your data can't fit on a single database server however good configuration it is. You must split this data on to multiple hosts. This is called sharding. In sharding, data gets distributed to multiple hosts based on some keys. Take the same example of Facebook. It can maintain a database server for each country (just an assumption, I don't really know how they have implemented it). So when a user tries to login from India, his user will be searched only in Indian users database rather than the whole user base of Facebook. Considering the huge database size of Facebook, reducing the search space from whole user base to indian user base will definitely improve the query performance.
Database servers like MongoDB, and ElasticSearch provide in built support for sharding. With the help of these features, we can horizontally scale a system by adding more and more machines than vertical scaling (Scaling a single server to it's fullest capacity).

Best database model for saas application (1 db per account VS 1 db for everyone)

Little question, I'm developing a saas software (erp).
I designed it with 1 database per account for these reasons :
I make a lot of personalisation, and need to add specific table columns for each account.
Easier to manage db backup (and reload data !)
Less risky : sometimes I need to run SQL queries on a table, in case of an error with bad query (update / delete...), only one customer is affected instead of all of them.
Bas point : I'm turning to have hundreds of databases...
I'm hiring a company to manage my servers, and they said that it's better to have only one database, with a few tables, and put all data in the same tables with column as id_account. I'm very very surprised by these words, so I'm wondering... what are your ideas ?
Thanks !
Frederic
The current environment I am working in, we handle millions of records from numerous clients. Our solution is to use Schema to segregate each individual client. A schema allows you to partition your clients into separate virtual databases while inside a single db. Each schema will have an exact copy of the tables from your application.
The upside:
Segregated client data
data from a single client can be easily backed up, exported or deleted
Programming is still the same, but you have to select the schema before db calls
Moving clients to another db or standalone server is a lot easier
adding specific tables per client is easier (see below)
single instance of the database running
tuning the db affects all tenants
The downside:
Unless you manage your shared schema properly, you may duplicate data
Migrations are repeated for every schema
You have to remember to select the schema before db calls
hard pressed to add many negatives... I guess I may be biased.
Adding Specific Tables: Why would you add client specific tables if this is SAAS and not custom software? Better to use a Postgres DB with a Hstore field and store as much searchable data as you like.
Schemas are ideal for multi-tenant databases Link Link
A lot of what I am telling you depends on your software stack, the capabilities of your developers and the backend db you selected (all of which you neglected to mention)
Your hardware guys should not decide your software architecture. If they do, you are likely shooting yourself in the leg before you even get out of the gate. Get a good senior software architect, the grief they will save you, will likely save your business.
I hope this helps...
Bonne Chance

How facebook store and access text data

I was trying to learn database design techniques by myself. As facebook is an example of huge data processing system, I was wondering how to process that huge amount data. I came to know they use MySQL as core database engine and ‘Memcached’ to cache data and reduce database access.
I just to want to know how they store text data like status or comments. Do they just store it in some table of MySQL database or use any kind of technique?
Additionally it will be a bonus if anyone can provide information about their storing technique for media like images or videos.
(If asking that kind of information about an organization is illegal or unethical then I am sorry for asking).
Here are two relevant notes from the Facebook engineering team
TAO: The power of the graph
Needle in a haystack: efficient storage of billions of photos

Manage large amount of data and images within

my question is similar to other friend posted here...we are trying to develop an application that supports possibly terabytes of information based on a land registry in Paraguay with images and normal data.
The problem is that we want to reduce the cost of operation to minimum as possible because it´s like a competition between companies, and for that reason we want to use a free database....I have read a lot of information about it but I am still confused. We have to realize that the people who is gonna use it are government people so the DB has to be easy to manage at the same time.
What would u people recommend me?
Thanu very much
MySQL and even SQLite already have spatial indexes, so no problem there.
To store the datafiles you could use a BLOB field, but it's usually much better (and easier to optimise) to store as files. To keep the files related to the DB records you can either put the full path (or URL) in a varchar field, or store the image in a path calculated by the record's ID.
To easily scale into the multi-terabyte store, plan from the start on using several servers. If the data is read-mostly, an easy way is to store the images on different hosts, each with a static HTTP server, and the database records where is each image. then put a webapp frontend for the database, where the URLs for each image directly point to the appropriate storage server. That way you can keep adding storage without creating a bottleneck on the 'central' server.
Postgresql, SQL Server 2008 and Any recent version of Oracle all have spatial indexing, table partitioning and BLOBs and are capable of acting as the back-end of a large geographic database. You might also want to check out two open-source GIS applications: GRASS and QGIS, which might support doing what you want with less modification work than writing a bespoke application. Both can use Postgresql and other database back-ends.
As for support, any commercial or open-source database is going to need the attentions of a competent DBA if you want to get it to work well on terabyte-size databases. I don't think you will get away with a model of pure end-user support - attempts to do this are unlikely to work.
It sounds like the image files will be a considerable amount of your storage. Don't store them in a database just store the file location details in the database.
(If you want access via the internet try Amazon Storage. It isn't free but very cheap and they handle the scaleability for you. )
Another cautionary note on using B/C/LOBs, as I've been bitten on exponential DB growth by storing internally w/in the DB.
What about storing the GIS maps on a separate server and just store the LAT/LONG "shape" of the area w/in the DB. The GIS can be updated separately w/out the cost of storing the images in the main database.
Smaller to admin. Less cost to backup.
Whilst not meeting your criteria of being free, I would strongly recommend you consider using SQL Server 2008, because of two Gfeatures in this version which could help:
FILESTREAM - allows you to store your binary images within the filesystem, rather than within the database itself. This will make your database much more manageable whilst still allowing you to query the data in the usual way.
GEOGRAPHIC DATA TYPES - support for geospatial (lat/long) datatypes is likely to be very valuable to your solution.
Good luck!
Use ESRI's Image Server. You won't need a database to serve the images. Its very easy to use. It also works off of files and its fast and handles many image formats. Plus it does image processing on the fly and supports many clients. AutoCAD, Microstation, ArcMap, ArcIMS, ArcServer...etc.
Image Server