Storing Json object in redis for fast querying - json

I've been using MongoDB to store and query schema-less json documents (~10 mn records). The queries typically involve finding json documents having a matching key-value pair and run into seconds. I was looking at ways to make queries run faster and came across the Redis database. Would it be a good idea to shift to Redis? Is there a better database for my use-case?
Also, could someone please explain how I could store schema-less json objects in Redis (and be able to query them later)?
Thanks!

UPDATE: As of at least March 21, 2017, RedisLabs supports a module called RedisJSON that adds a JSON datatype.
See e.g. https://oss.redislabs.com/redisjson/

Redis doesn't do JSON, or rather it just treats it as an opaque string, but in some cases (perhaps yours) that's all you need. In such cases, store your document as is and give it a meaningful key name (e.g. the document's id).
Querying is a little, but just so, trickier. When upserting/removing your document, you'll need to maintain an index for each k-v that you'll later want to query. The index maps the values relevant doc ids, so querying by value means first accessing the index and then fetching the actual JSON documents.

Related

searching Mysql table with Elasticsearch

Lets say I have the following "expenses" MySQL Table:
id
amount
vendor
tag
1
100
google
foo
2
450
GitHub
bar
3
22
GitLab
fizz
4
75
AWS
buzz
I'm building an API that should return expenses based on partial "vendor" or "tag" filters, so vendor="Git" should return records 2&3, and tag="zz" should return records 3&4.
I was thinking of utilizing elasticsearch capabilities, but I'm not sure the correct way..
most articles I read suggest replicating the table records (using logstash pipe or other methods) to elastic index.
So my API doesn't even query the DB and return an array of documents directly from ES?
Is this considered good practice? replicating the whole table to elastic?
What about table relations... What If I want to filter by nested table relation?...
So my API doesn't even query the DB and return an array of documents
directly from ES?
Yes, As you are doing query to elasticsearch, you will get result only from Elasticsearch. Another way is, just get id from Elasticsearch and use id to retrive documeents from MySQL, but this might impact response time.
Is this considered good practice? replicating the whole table to
elastic? What about table relations... What If I want to filter by
nested table relation?...
It is not about good practice or bad practice, it is all about what type of functionality and use case you want to implement and based on that technology stack can be used and data can be duplicated. There is lots of company using Elasticsearch as secondary data source where they have duplicated data just because there usecase is best fit with Elasticsearh or other NoSQL db.
Elasticsearch is NoSQL DB and it is not mantain any relationship between data. Hence, you need to denormalize your data before indexing to the Elasticsearch. You can read this article for more about denormalizetion and why it is required.
ElasticSearch provide Nested and Join data type for parent child relationship but both have some limitation and performance impact.
Below is what they have mentioned for join field type:
The join field shouldn’t be used like joins in a relation database. In
Elasticsearch the key to good performance is to de-normalize your data
into documents. Each join field, has_child or has_parent query adds a
significant tax to your query performance. It can also trigger global
ordinals to be built.
Below is what they have mentioned for nested field type:
When ingesting key-value pairs with a large, arbitrary set of keys,
you might consider modeling each key-value pair as its own nested
document with key and value fields. Instead, consider using the
flattened data type, which maps an entire object as a single field and
allows for simple searches over its contents. Nested documents and
queries are typically expensive, so using the flattened data type for
this use case is a better option.
most articles I read suggest replicating the table records (using
logstash pipe or other methods) to elastic index.
Yes, You can use logstash or any language client like java, python etc, to sync data from DB to Elasticsearch. You can check this SO answer for more information on this.
Your Search Requirements
If you go ahead with Elasticsearch then you can use N-Gram Tokenizer or Regex Query and achieve your search requirements.
Maybe you can try TiDB: https://medium.com/#shenli3514/simplify-relational-database-elasticsearch-architecture-with-tidb-c19c330b7f30
If you want to scale your MySQL and have fast filtering and aggregating, TiDB could simplify the architecture and reduce development work.

Storing large JSON data in Postgres is infeasible, so what are the alternatives?

I have large JSON data, greater than 2kB, in each record of my table and currently, these are being stored in JSONB field.
My tech stack is Django and Postgres.
I don't perform any updates/modifications on this json data but i do need to read it, frequently and fast. However, due to the JSON data being larger than 2kB, Postgres splits it into chunks and puts it into the TOAST table, and hence the read process has become very slow.
So what are the alternatives? Should i use another database like MongoDB to store these large JSON data fields?
Note: I don't want to pull the keys out from this JSON and turn them into columns. This data comes from an API.
It is hard to answer specifically without knowing the details of your situation, but here are some things you may try:
Use Postgres 12 (stored) generated columns to maintain the fields or smaller JSON blobs that are commonly needed. This adds storage overhead, but frees you from having to maintain this duplication yourself.
Create indexes for any JSON fields you are querying (Postgresql allows you to create indexes for JSON expressions).
Use a composite index, where the first field in the index the field you are querying on, and the second field (/json expression) is that value you wish to retrieve. In this case Postgresql should retrieve the value from the index.
Similar to 1, create a materialised view which extracts the fields you need and allows you to query them quickly. You can add indexes to the materialised view too. This may be a good solution as materialised views can be slow to update, but in your case your data doesn't update anyway.
Investigate why the toast tables are being slow. I'm not sure what performance you are seeing, but if you really do need to pull back a lot of data then you are going to need fast data access whatever database you choose to go with.
Your mileage may vary with all of the above suggestions, especially as each will depend on your particular use case. (see the questions in my comment)
However, the overall idea is to use the tools that Postgresql provides to make your data quickly accessible. Yes this may involve pulling the data out of its original JSON blob, but this doesn't need to be done manually. Postgresql provides some great tools for this.
If you just need to store and read fully this json object without using the json structure in your WHERE query, what about simply storing this data as binary in a bytea column? https://www.postgresql.org/docs/current/datatype-binary.html

Are indexes cheaper in NoSql (Mongodb) compare to sql server

In our project, we are storing 'Product catalog' JSON in SQL database. This JSON contains multiple key-value pairs. This JSON is dynamic in nature since there could be many permutations and combinations of key-value.
We did not have to parse this JSON till now.
But now, we have a requirement where we would have to parse and select a product based on Key-value. These key-value pairs will be approx 40 in count.
Generally, We do not think of making indexes on 40 columns in SQL server (especially on transaction table). But if we move this data to NoSQL server (MongoDB) for instance, and store this JSON in dictionary/documents, it will automatically create the indexes on all of the items.
Wouldn't this slow down the insertion or 'Indexes are cheaper in NoSQL compare to SQL.'? Or they are implemented differently there?
Following link has a very good explanation about 'how Indexes are managed in Documentdb'. This is not a generic implementation across the NoSql, but this gives a very good understanding.
http://www.vldb.org/pvldb/vol8/p1668-shukla.pdf

Native JSON support in MYSQL 5.7 : what are the pros and cons of JSON data type in MYSQL?

In MySQL 5.7 a new data type for storing JSON data in MySQL tables has been
added. It will obviously be a great change in MySQL. They listed some benefits
Document Validation - Only valid JSON documents can be stored in a
JSON column, so you get automatic validation of your data.
Efficient Access - More importantly, when you store a JSON document in a JSON column, it is not stored as a plain text value. Instead, it is stored
in an optimized binary format that allows for quicker access to object
members and array elements.
Performance - Improve your query
performance by creating indexes on values within the JSON columns.
This can be achieved with “functional indexes” on virtual columns.
Convenience - The additional inline syntax for JSON columns makes it
very natural to integrate Document queries within your SQL. For
example (features.feature is a JSON column): SELECT feature->"$.properties.STREET" AS property_street FROM features WHERE id = 121254;
WOW ! they include some great features. Now it is easier to manipulate data. Now it is possible to store more complex data in column.
So MySQL is now flavored with NoSQL.
Now I can imagine a query for JSON data something like
SELECT * FROM t1
WHERE JSON_EXTRACT(data,"$.series") IN
(
SELECT JSON_EXTRACT(data,"$.inverted")
FROM t1 | {"series": 3, "inverted": 8}
WHERE JSON_EXTRACT(data,"$.inverted")<4 );
So can I store huge small relations in few json colum? Is it good? Does it break normalization. If this is possible then I guess it will act like NoSQL in a MySQL column. I really want to know more about this feature. Pros and cons of MySQL JSON data type.
SELECT * FROM t1
WHERE JSON_EXTRACT(data,"$.series") IN ...
Using a column inside an expression or function like this spoils any chance of the query using an index to help optimize the query. The query shown above is forced to do a table-scan.
The claim about "efficient access" is misleading. It means that after the query examines a row with a JSON document, it can extract a field without having to parse the text of the JSON syntax. But it still takes a table-scan to search for rows. In other words, the query must examine every row.
By analogy, if I'm searching a telephone book for people with first name "Bill", I still have to read every page in the phone book, even if the first names have been highlighted to make it slightly quicker to spot them.
MySQL 5.7 allows you to define a virtual column in the table, and then create an index on the virtual column.
ALTER TABLE t1
ADD COLUMN series AS (JSON_EXTRACT(data, '$.series')),
ADD INDEX (series);
Then if you query the virtual column, it can use the index and avoid the table-scan.
SELECT * FROM t1
WHERE series IN ...
This is nice, but it kind of misses the point of using JSON. The attractive part of using JSON is that it allows you to add new attributes without having to do ALTER TABLE. But it turns out you have to define an extra (virtual) column anyway, if you want to search JSON fields with the help of an index.
But you don't have to define virtual columns and indexes for every field in the JSON document—only those you want to search or sort on. There could be other attributes in the JSON that you only need to extract in the select-list like the following:
SELECT JSON_EXTRACT(data, '$.series') AS series FROM t1
WHERE <other conditions>
I would generally say that this is the best way to use JSON in MySQL. Only in the select-list.
When you reference columns in other clauses (JOIN, WHERE, GROUP BY, HAVING, ORDER BY), it's more efficient to use conventional columns, not fields within JSON documents.
I presented a talk called How to Use JSON in MySQL Wrong at the Percona Live conference in April 2018. I'll update and repeat the talk at Oracle Code One in the fall.
There are other issues with JSON. For example, in my tests it required 2-3 times as much storage space for JSON documents compared to conventional columns storing the same data.
MySQL is promoting their new JSON capabilities aggressively, largely to dissuade people against migrating to MongoDB. But document-oriented data storage like MongoDB is fundamentally a non-relational way of organizing data. It's different from relational. I'm not saying one is better than the other, it's just a different technique, suited to different types of queries.
You should choose to use JSON when JSON makes your queries more efficient.
Don't choose a technology just because it's new, or for the sake of fashion.
Edit: The virtual column implementation in MySQL is supposed to use the index if your WHERE clause uses exactly the same expression as the definition of the virtual column. That is, the following should use the index on the virtual column, since the virtual column is defined AS (JSON_EXTRACT(data,"$.series"))
SELECT * FROM t1
WHERE JSON_EXTRACT(data,"$.series") IN ...
Except I have found by testing this feature that it does NOT work for some reason if the expression is a JSON-extraction function. It works for other types of expressions, just not JSON functions. UPDATE: this reportedly works, finally, in MySQL 5.7.33.
The following from MySQL 5.7 brings sexy back with JSON sounds good to me:
Using the JSON Data Type in MySQL comes with two advantages over
storing JSON strings in a text field:
Data validation. JSON documents will be automatically validated and
invalid documents will produce an error. Improved internal storage
format. The JSON data is converted to a format that allows quick read
access to the data in a structured format. The server is able to
lookup subobjects or nested values by key or index, allowing added
flexibility and performance.
...
Specialised flavours of NoSQL stores
(Document DBs, Key-value stores and Graph DBs) are probably better
options for their specific use cases, but the addition of this
datatype might allow you to reduce complexity of your technology
stack. The price is coupling to MySQL (or compatible) databases. But
that is a non-issue for many users.
Note the language about document validation as it is an important factor. I guess a battery of tests need to be performed for comparisons of the two approaches. Those two being:
Mysql with JSON datatypes
Mysql without
The net has but shallow slideshares as of now on the topic of mysql / json / performance from what I am seeing.
Perhaps your post can be a hub for it. Or perhaps performance is an after thought, not sure, and you are just excited to not create a bunch of tables.
From my experience, JSON implementation at least in MySql 5.7 is not very useful due to its poor performance.
Well, it is not so bad for reading data and validation. However, JSON modification is 10-20 times slower with MySql that with Python or PHP.
Lets imagine very simple JSON:
{ "name": "value" }
Lets suppose we have to convert it to something like that:
{ "name": "value", "newName": "value" }
You can create simple script with Python or PHP that will select all rows and update them one by one. You are not forced to make one huge transaction for it, so other applications will can use the table in parallel. Of course, you can also make one huge transaction if you want, so you'll get guarantee that MySql will perform "all or nothing", but other applications will most probably not be able to use database during transaction execution.
I have 40 millions rows table, and Python script updates it in 3-4 hours.
Now we have MySql JSON, so we don't need Python or PHP anymore, we can do something like that:
UPDATE `JsonTable` SET `JsonColumn` = JSON_SET(`JsonColumn`, "newName", JSON_EXTRACT(`JsonColumn`, "name"))
It looks simple and excellent. However, its speed is 10-20 times slower than Python version, and it is single transaction, so other applications can not modify the table data in parallel.
So, if we want to just duplicate JSON key in 40 millions rows table, we need to not use table at all during 30-40 hours. It has no sence.
About reading data, from my experience direct access to JSON field via JSON_EXTRACT in WHERE is also extremelly slow (much slower that TEXT with LIKE on not indexed column). Virtual generated columns perform much faster, however, if we know our data structure beforehand, we don't need JSON, we can use traditional columns instead. When we use JSON where it is really useful, i. e. when data structure is unknown or changes often (for example, custom plugin settings), virtual column creation on regular basis for any possible new columns doesn't look like good idea.
Python and PHP make JSON validation like a charm, so it is questionable do we need JSON validation on MySql side at all. Why not also validate XML, Microsoft Office documents or check spelling? ;)
I got into this problem recently, and I sum up the following experiences:
1, There isn't a way to solve all questions.
2, You should use the JSON properly.
One case:
I have a table named: CustomField, and it must two columns: name, fields.
name is a localized string, it content should like:
{
"en":"this is English name",
"zh":"this is Chinese name"
...(other languages)
}
And fields should be like this:
[
{
"filed1":"value",
"filed2":"value"
...
},
{
"filed1":"value",
"filed2":"value"
...
}
...
]
As you can see, both the name and the fields can be saved as JSON, and it works!
However, if I use the name to search this table very frequently, what should I do? Use the JSON_CONTAINS,JSON_EXTRACT...? Obviously, it's not a good idea to save it as JSON anymore, we should save it to an independent table:CustomFieldName.
From the above case, I think you should keep these ideas in mind:
Why MYSQL support JSON?
Why you want to use JSON? Did your business logic just need this? Or there is something else?
Never be lazy
Thanks
Strong disagree with some of things that are said in other answers (which, to be fair, was a few years ago).
We have very carefully started to adopt JSON fields with a healthy skepticism. Over time we've been adding this more.
This generally describes the situation we are in:
Like 99% of applications out there, we are not doing things at a massive scale. We work with many different applications and databases, the majority of these are capable of running on modest hardware.
We have processes and know-how in place to make changes if performance does become a problem.
We have a general idea of which tables are going to be large and think carefully about how we optimize queries for them.
We also know in which cases this is not really needed.
We're pretty good at data validation and static typing at the application layer.
Lastly,
When we use JSON for storing complex data, that data is never referenced directly by other tables. We also tend to never need to use them in where clauses in hot paths.
So with all this in mind, using a little JSON field instead of 1 or more tables vastly reduces the complexity of queries and data model. Removing this complexity makes it easier to write certain queries, makes our code simpler and just generally saves time.
Complexity and performance is something that needs to be carefully balanced. JSON fields should not be blindly applied, but for the cases where this works it's fantastic.
'JSON fields don't perform well' is a valid reason to not use JSON fields, if you are at a place where that performance difference matters.
One specific example is that we have a table where we store settings for video transcoding. The settings table has 1 'profile' per row, and the settings themselves have a maximum nesting level of 4 (arrays and objects).
Despite this being a large database overall, there's only a few hundreds of these records in the database. Suggesting to split this into 5 tables would yield no benefit and lots of pain.
This is an extreme example, but we have plenty of others (with more rows) where the decision to use JSON fields is a few years in the past, and hasn't yet caused an issue.
Last point: it is now possible to directly index on JSON fields.

Storing Data in MySQL as JSON

I thought this was a n00b thing to do. And, so, I've never done it. Then I saw that FriendFeed did this and actually made their DB scale better and decreased latency. I'm curious if I should do this. And, if so, what's the right way to do it?
Basically, what's a good place to learn how to store everything in MySQL as a CouchDB sort of DB? Storing everything as JSON seems like it'd be easier and quicker (not to build, less latency).
Also, is it easy to edit, delete, etc., things stored as JSON on the DB?
Everybody commenting seems to be coming at this from the wrong angle, it is fine to store JSON code via PHP in a relational DB and it will in fact be faster to load and display complex data like this, however you will have design considerations such as searching, indexing etc.
The best way of doing this is to use hybrid data, for example if you need to search based upon datetime MySQL (performance tuned) is going to be a lot faster than PHP and for something like searching distance of venues MySQL should also be a lot faster (notice searching not accessing). Data you do not need to search on can then be stored in JSON, BLOB or any other format you really deem necessary.
Data you need to access is very easily stored as JSON for example a basic per-case invoice system. They do not benefit very much at all from RDBMS, and could be stored in JSON just by json_encoding($_POST['entires']) if you have the correct HTML form structure.
I am glad you are happy using MongoDB and I hope that it continues to serve you well, but don't think that MySQL is always going to be off your radar, as your app increases in complexity you may well end up needing an RDBMS for some functionality and features (even if it is just for retiring archived data or business reporting)
MySQL 5.7 Now supports a native JSON data type similar to MongoDB and other schemaless document data stores:
JSON support
Beginning with MySQL 5.7.8, MySQL supports a native JSON type. JSON values are not stored as strings, instead using an internal binary format that permits quick read access to document elements. JSON documents stored in JSON columns are automatically validated whenever they are inserted or updated, with an invalid document producing an error. JSON documents are normalized on creation, and can be compared using most comparison operators such as =, <, <=, >, >=, <>, !=, and <=>; for information about supported operators as well as precedence and other rules that MySQL follows when comparing JSON values, see Comparison and Ordering of JSON Values.
MySQL 5.7.8 also introduces a number of functions for working with JSON values. These functions include those listed here:
Functions that create JSON values: JSON_ARRAY(), JSON_MERGE(), and JSON_OBJECT(). See Section 12.16.2, “Functions That Create JSON Values”.
Functions that search JSON values: JSON_CONTAINS(), JSON_CONTAINS_PATH(), JSON_EXTRACT(), JSON_KEYS(), and JSON_SEARCH(). See Section 12.16.3, “Functions That Search JSON Values”.
Functions that modify JSON values: JSON_APPEND(), JSON_ARRAY_APPEND(), JSON_ARRAY_INSERT(), JSON_INSERT(), JSON_QUOTE(), JSON_REMOVE(), JSON_REPLACE(), JSON_SET(), and JSON_UNQUOTE(). See Section 12.16.4, “Functions That Modify JSON Values”.
Functions that provide information about JSON values: JSON_DEPTH(), JSON_LENGTH(), JSON_TYPE(), and JSON_VALID(). See Section 12.16.5, “Functions That Return JSON Value Attributes”.
In MySQL 5.7.9 and later, you can use column->path as shorthand for JSON_EXTRACT(column, path). This works as an alias for a column wherever a column identifier can occur in an SQL statement, including WHERE, ORDER BY, and GROUP BY clauses. This includes SELECT, UPDATE, DELETE, CREATE TABLE, and other SQL statements. The left hand side must be a JSON column identifier (and not an alias). The right hand side is a quoted JSON path expression which is evaluated against the JSON document returned as the column value.
See Section 12.16.3, “Functions That Search JSON Values”, for more information about -> and JSON_EXTRACT(). For information about JSON path support in MySQL 5.7, see Searching and Modifying JSON Values. See also Secondary Indexes and Virtual Generated Columns.
More info:
https://dev.mysql.com/doc/refman/5.7/en/json.html
CouchDB and MySQL are two very different beasts. JSON is the native way to store stuff in CouchDB. In MySQL, the best you could do is store JSON data as text in a single field. This would entirely defeat the purpose of storing it in an RDBMS and would greatly complicate every database transaction.
Don't.
Having said that, FriendFeed seemed to use an extremely custom schema on top of MySQL. It really depends on what exactly you want to store, there's hardly one definite answer on how to abuse a database system so it makes sense for you. Given that the article is very old and their main reason against Mongo and Couch was immaturity, I'd re-evaluate these two if MySQL doesn't cut it for you. They should have grown a lot by now.
json characters are nothing special when it comes down to storage, chars such as
{,},[,],',a-z,0-9.... are really nothing special and can be stored as text.
the first problem your going to have is this
{
profile_id: 22,
username: 'Robert',
password: 'skhgeeht893htgn34ythg9er'
}
that stored in a database is not that simple to update unless you had your own proceedure and developed a jsondecode for mysql
UPDATE users SET JSON(user_data,'username') = 'New User';
So as you cant do that you would Have to first SELECT the json, Decode it, change it, update it, so in theory you might as well spend more time constructing a suitable database structure!
I do use json to store data but only Meta Data, data that dont get updated often, not related to the user specific.. example if a user adds a post, and in that post he adds images ill parse the images and create thumbs and then use the thumb urls in a json format.
To illustrate how difficult it is to get JSON data using a query, I will share the query I made to handle this.
It doesn't take into account arrays or other objects, just basic datatypes. You should change the 4 instances of column to the column name storing the JSON, and change the 4 instances of myfield to the JSON field you want to access.
SELECT
SUBSTRING(
REPLACE(REPLACE(REPLACE(column, '{', ''), '}', ','), '"', ''),
LOCATE(
CONCAT('myfield', ':'),
REPLACE(REPLACE(REPLACE(column, '{', ''), '}', ','), '"', '')
) + CHAR_LENGTH(CONCAT('myfield', ':')),
LOCATE(
',',
SUBSTRING(
REPLACE(REPLACE(REPLACE(column, '{', ''), '}', ','), '"', ''),
LOCATE(
CONCAT('myfield', ':'),
REPLACE(REPLACE(REPLACE(column, '{', ''), '}', ','), '"', '')
) + CHAR_LENGTH(CONCAT('myfield', ':'))
)
) - 1
)
AS myfield
FROM mytable WHERE id = '3435'
This is an old question, but I am still able to see this at the top of the search result of Google, so I guess it would be meaningful to add a new answer 4 years after the question is asked.
First of all, there is better support in storing JSON in RDBMS. You may consider switching to PostgreSQL (although MySQL has supported JSON since v5.7.7). PostgreSQL uses very similar SQL commands as MySQL except they support more functions. One of the functions they added is that they provide JSON data type and you are now able to query the JSON stored. (Some reference on this) If you are not making up the query directly in your program, for example, using PDO in php or eloquent in Laravel, all you need to do is just to install PostgreSQL on your server and change database connection settings. You don't even need to change your code.
Most of the time, as the other answers suggested, storing data as JSON directly in RDBMS is not a good idea. There are some exception though. One situation I can think of is a field with variable number of linked entry.
For example, for storing tag of a blog post, normally you will need to have a table for blog post, a table of tag and a matching table. So, when the user wants to edit a post and you need to display which tag is related to that post, you will need to query 3 tables. This will damage the performance a lot if your matching table / tag table is long.
By storing the tags as JSON in the blog post table, the same action only requires a single table search. The user will then be able to see the blog post to be edit quicker, but this will damage the performance if you want to make a report on what post is linked to a tag, or maybe search by tag.
You may also try to de-normalize the database. By duplicating the data and storing the data in both ways, you can receive benefit of both method. You will just need a little bit more time to store your data and more storage space (which is cheap comparing to the cost of more computing power)
It really depends on your use case. If you are storing information that has absolutely no value in reporting, and won't be queried via JOINs with other tables, it may make sense for you to store your data in a single text field, encoded as JSON.
This could greatly simplify your data model. However, as mentioned by RobertPitt, don't expect to be able to combine this data with other data that has been normalized.
I would say the only two reasons to consider this are:
performance just isn't good enough with a normalised approach
you cannot readily model your particularly fluid/flexible/changing data
I wrote a bit about my own approach here:
What scalability problems have you encountered using a NoSQL data store?
(see the top answer)
Even JSON wasn't quite fast enough so we used a custom-text-format approach. Worked / continues to work well for us.
Is there a reason you're not using something like MongoDB? (could be MySQL is "required"; just curious)
Here is a function that would save/update keys of a JSON array in a column and another function that retrieves JSON values. This functions are created assuming that the column name of storing the JSON array is json. It is using PDO.
Save/Update Function
function save($uid, $key, $val){
global $dbh; // The PDO object
$sql = $dbh->prepare("SELECT `json` FROM users WHERE `id`=?");
$sql->execute(array($uid));
$data = $sql->fetch();
$arr = json_decode($data['json'],true);
$arr[$key] = $val; // Update the value
$sql=$dbh->prepare("UPDATE `users` SET `json`=? WHERE `id`=?");
$sql->execute(array(
json_encode($arr),
$uid
));
}
where $uid is the user's id, $key - the JSON key to update and it's value is mentioned as $val.
Get Value Function
function get($uid, $key){
global $dbh;
$sql = $dbh->prepare("SELECT `json` FROM `users` WHERE `id`=?");
$sql->execute(array($uid));
$data = $sql->fetch();
$arr = json_decode($data['json'], true);
return $arr[$key];
}
where $key is a key of JSON array from which we need the value.
It seems to me that everyone answering this question is kind-of missing the one critical issue, except #deceze -- use the right tool for the job. You can force a relational database to store almost any type of data and you can force Mongo to handle relational data, but at what cost? You end up introducing complexity at all levels of development and maintenance, from schema design to application code; not to mention the performance hit.
In 2014 we have access to many database servers that handle specific types of data exceptionally well.
Mongo (document storage)
Redis (key-value data storage)
MySQL/Maria/PostgreSQL/Oracle/etc (relational data)
CouchDB (JSON)
I'm sure I missed some others, like RabbirMQ and Cassandra. My point is, use the right tool for the data you need to store.
If your application requires storage and retrieval of a variety of data really, really fast, (and who doesn't) don't shy away from using multiple data sources for an application. Most popular web frameworks provide support for multiple data sources (Rails, Django, Grails, Cake, Zend, etc). This strategy limits the complexity to one specific area of the application, the ORM or the application's data source interface.
Early support for storing JSON in MySQL has been added to the MySQL 5.7.7 JSON labs release (linux binaries, source)! The release seems to have grown from a series of JSON-related user-defined functions made public back in 2013.
This nascent native JSON support seems to be heading in a very positive direction, including JSON validation on INSERT, an optimized binary storage format including a lookup table in the preamble that allows the JSN_EXTRACT function to perform binary lookups rather than parsing on every access. There is also a whole raft of new functions for handling and querying specific JSON datatypes:
CREATE TABLE users (id INT, preferences JSON);
INSERT INTO users VALUES (1, JSN_OBJECT('showSideBar', true, 'fontSize', 12));
SELECT JSN_EXTRACT(preferences, '$.showSideBar') from users;
+--------------------------------------------------+
| id | JSN_EXTRACT(preferences, '$.showSideBar') |
+--------------------------------------------------+
| 1 | true |
+--------------------------------------------------+
IMHO, the above is a great use case for this new functionality; many SQL databases already have a user table and, rather than making endless schema changes to accommodate an evolving set of user preferences, having a single JSON column a single JOIN away is perfect. Especially as it's unlikely that it would ever need to be queried for individual items.
While it's still early days, the MySQL server team are doing a great job of communicating the changes on the blog.
JSON is a valid datatype in PostgreSQL database as well. However, MySQL database has not officially supported JSON yet. But it's baking: http://mysqlserverteam.com/json-labs-release-native-json-data-type-and-binary-format/
I also agree that there are many valid cases that some data is better be serialized to a string in a database. The primary reason might be when it's not regularly queried, and when it's own schema might change - you don't want to change the database schema corresponding to that. The second reason is when the serialized string is directly from external sources, you may not want to parse all of them and feed in the database at any cost until you use any. So I'll be waiting for the new MySQL release to support JSON since it'll be easier for switching between different database then.
I know this is really late but I did have a similar situation where I used a hybrid approach of maintaining RDBMS standards of normalizing tables upto a point and then storing data in JSON as text value beyond that point. So for example I store data in 4 tables following RDBMS rules of normalization. However in the 4th table to accomodate dynamic schema I store data in JSON format. Every time I want to retrieve data I retrieve the JSON data, parse it and display it in Java. This has worked for me so far and to ensure that I am still able to index the fields I transform to json data in the table to a normalized manner using an ETL. This ensures that while the user is working on the application he faces minimal lag and the fields are transformed to a RDBMS friendly format for data analysis etc. I see this approach working well and believe that given MYSQL (5.7+) also allows parsing of JSON this approach gives you the benefits of both RDBMS and NOSQL databases.
I use json to record anything for a project, I use three tables in fact ! one for the data in json, one for the index of each metadata of the json structure (each meta is encoded by an unique id), and one for the session user, that's all.
The benchmark cannot be quantified at this early state of code, but for exemple I was user views (inner join with index) to get a category (or anything, as user, ...), and it was very slow (very very slow, used view in mysql is not the good way).
The search module, in this structure, can do anything I want, but, I think mongodb will be more efficient in this concept of full json data record.
For my exemple, I user views to create tree of category, and breadcrumb, my god ! so many query to do ! apache itself gone ! and, in fact, for this little website, I use know a php who generate tree and breadcrumb, the extraction of the datas is done by the search module (who use only index), the data table is used only for update.
If I want, I can destroy the all indexes, and regenerate it with each data, and do the reverse work to, like, destroy all the data (json) and regenerate it only with the index table.
My project is young, running under php and mysql, but, sometime I thing using node js and mongodb will be more efficient for this project.
Use json if you think you can do, just for do it, because you can ! and, forget it if it was a mistake; try by make good or bad choice, but try !
Low
a french user
I believe that storing JSON in a mysql database does in fact defeat the purpose of using RDBMS as it is intended to be used. I would not use it in any data that would be manipulated at some point or reported on, since it not only adds complexity but also could easily impact performance depending on how it is used.
However, I was curious if anyone else thought of a possible reason to actually do this. I was thinking to make an exception for logging purposes. In my case, I want to log requests that have a variable amount of parameters and errors. In this situation, I want to use tables for the type of requests, and the requests themselves with a JSON string of different values that were obtained.
In the above situation, the requests are logged and never manipulated or indexed within the JSON string field. HOWEVER, in a more complex environment, I would probably try to use something that has more of an intention for this type of data and store it with that system. As others have said, it really depends on what you are trying to accomplish, but following standards always helps longevity and reliability!
You can use this gist: https://gist.github.com/AminaG/33d90cb99c26298c48f670b8ffac39c3
After installing it to the server (just need root privilege not super), you can do something like this:
select extract_json_value('{"a":["a","2"]}','(/a)')
It will return
a 2
.You can return anything inside JSON by using this
The good part is that it is support MySQL 5.1,5.2,5.6. And you do not need to install any binary on the server.
Based on old project common-schema, but it is still working today
https://code.google.com/archive/p/common-schema/