Now send the JSON using the additional data. Also implemented the empty filter and the no filter like GRAB User {} and GRAB User
Introduction
ZipponDB is a relational database written entirely in Zig from stractch with 0 dependency.
ZipponDB goal is to be ACID, light, simple and high performance. It aim small to medium application that don't need fancy features but a simple and reliable database.
Why Zippon ?
- Open-source and written 100% in Zig with 0 dependency
- Relational database
- Simple and minimal query language
- Small, light, fast and implementable everywhere
Quickstart
You can build the binary directly from the source code (tuto is comming), or using the binary in the release (comming too).
You can then run it, starting a Command Line Interface. The first thing to do is to create a new database. For that run the command db new path/to/folder
, it will create a ZipponDB
folder with multiple stuffs inside. Then database metrics
to see if it worked. You can change between database by using db swap path/to/ZipponDB
.
Once the database created, you need to attach a schema to it (see next section for how to define a schema). For that you can run schema init path/to/schema.txt
. This will create new folder and empty files used to store data.
You can now start using the database by sending query like that: run "ADD User (name = 'Bob')"
.
Declare a schema
In ZipponDB you use structures, or struct for short, and not tables to organize how your data is store and manipulate. A struct have a name like User
and members like name
and age
.
Create a file with inside a schema that describe all structs. Compared to SQL, you can see it as a file where you declare all table name, columns name, data type and relationship. All struct have an id of the type UUID by default.
Here an example of a file:
User (
name: str,
email: str,
best_friend: User,
)
Note that the best friend is a link to another User
.
Here a more advance example with multiple struct:
User (
name: str,
email: str,
friends: []User,
posts: []Post,
comments: []Comment,
)
Post (
title: str,
image: str,
at: date,
like_by: []User,
comments: []Comment,
)
Comment (
content: str,
at: date,
like_by: []User,
)
Note: []
before the type mean a list/array of this type.
Migration to a new schema
Not yet implemented
In the future, you will be able to update the schema like add a new member to a struct and update the database. For the moment, you can't change the schema once init.
ZipponQL
ZipponDB use it's own query language, ZipponQL or ZiQL for short. Here the keys point to remember:
- 4 actions available:
GRAB
ADD
UPDATE
DELETE
- All query start with an action then a struct name
{}
Are filters[]
Are how much; what data()
Are new or updated data (Not already in file)||
Are additional options- By default all member that are not link are return
- To return link or only some members, specify them between
[]
Disclaimer: Lot of stuff are still missing and the language may change over time.
GRAB
The main action is GRAB
, this will parse files and return data.
Here how to return all User
without any filtering:
GRAB User
To get all User
above 18 years old:
GRAB User {age > 18}
To only return the name of User
:
GRAB User [name] {age > 18}
To return the 10 first User
:
GRAB User [10] {age > 18}
You can use both:
GRAB User [10; name] {age > 18}
To order it using the name:
GRAB User [10; name] {age > 10} |ASC name|
Use multiple condition:
GRAB User {name = 'Bob' AND (age > 30 OR age < 10)}
Not yet implemented
You can specify how much and what to return even for link inside struct. In this example I get 1 friend name for 10 User
:
GRAB User [10; friends [1; name]]
Using IN
You can use the IN
operator to check if something is in an array:
GRAB User { age > 10 AND name IN ['Adrien' 'Bob']}
This also work by using other filter. Here I get User
that have a best friend named Adrien:
GRAB User { bestfriend IN { name = 'Adrien' } }
When using an array with IN, it will return all User
that have at least ONE friend named Adrien:
GRAB User { friends IN { name = 'Adrien' } }
To get User
with ALL friends named Adrien:
GRAB User { friends ALLIN { name = 'Adrien' } }
You can use IN
on itself. Here I get all User
that liked a Comment
that is from 2024. Both queries return the same thing:
GRAB User { IN Comment {at > '2024/01/01'}.like_by}
GRAB Comment.like_by { at > '2024/01/01'}
You can optain a similar result with this query but it will return a list of Comment
with a member liked_by
that is similar to User
above. If you take all liked_by
inside all Comment
, it will be the same list but you can end up with duplicate as one User
can like multiple Comment
.
GRAB Comment [liked_by] {at > '2024/01/01'}
Return relationship
You can also return a relationship only. The filter will be done on User
but will return Comment
:
GRAB User.comments {name = 'Bob'}
You can do it as much as you like. This will return all User
that liked comments from Bob:
GRAB User.comments.like_by {name = 'Bob'}
This can also be use inside filter. Note that we need to specify User
because it is a different struct that Post
. Here I get all Post
that have a comment from Bob:
GRAB Post {comments IN User{name = 'Bob'}.comments}
Can also do the same but only for the first Bob found:
GRAB Post {comments IN User [1] {name = 'Bob'}.comments}
Be carefull, this will return all User
that liked a comment from 10 User
named Bob:
GRAB User.comments.like_by [10] {name = 'Bob'}
To get 10 User
that liked a comment from any User
named Bob, you need to use:
GRAB User.comments.like_by [comments [like_by [10]]] {name = 'Bob'}
Using !
You can use !
to return the opposite. Use with IN
, it check if it is NOT is the list. Use it with filters, it return entities that do not respect the filter.
This will return all User
that didn't like a Comment
in 2024:
GRAB User { !IN Comment {at > '2024/01/01'}.like_by}
Be carefull because this do not return the same, it return all User
that liked a Comment
not in 2024:
GRAB Comment.like_by !{ at > '2024/01/01'}
Which is the same as:
GRAB Comment.like_by { at < '2024/01/01'}
ADD
The ADD
action will add one entity into the database.
The synthax is similare but use ()
, this mean that the data is not yet in the database.
Here an example:
ADD User (name = 'Bob', age = 30, email = 'bob@email.com', scores = [1 100 44 82])
You need to specify all member when adding an entity (default value are comming).
Not yet implemented
And you can also add them in batch
ADD User (name = 'Bob', age = 30, email = 'bob@email.com', scores = [1 100 44 82]) (name = 'Bob2', age = 33, email = 'bob2@email.com', scores = [])
You don't need to specify the member in the second entity as long as the order is respected.
ADD User (name = 'Bob', age = 30, email = 'bob@email.com', scores = [1 100 44 82]) ('Bob2', 33, 'bob2@email.com', [])
DELETE
Similare to GRAB
but delete all entity found using the filter and return the list of UUID deleted.
DELETE User {name = 'Bob'}
UPDATE
A mix of GRAB
and ADD
. This take a filter first, then the new data.
Here we update the 5 first User named adrien
to add a capital and become Adrien
.
UPDATE User [5] {name='adrien'} TO (name = 'Adrien')
Note that compared to ADD
, you don't need to specify all member between ()
. Only the one specify will be updated.
Not yet implemented
You can use operations on itself too when updating:
UPDATE User {name = 'Bob'} TO (age += 1)
You can also manipulate array, like adding or removing values.
UPDATE User {name='Bob'} TO (scores APPEND 45)
UPDATE User {name='Bob'} TO (scores REMOVEAT [0 1 2])
For now there is 4 keywords to manipulate list:
APPEND
: Add value at the end of the list.REMOVE
: Check the list and if the same value is found, delete it.REMOVEAT
: Delete the value at a specific index.CLEAR
: Remove all value in the array.
Except CLEAR
that take no value, each can use one value or an array of value, if chose an array it will perform the operation on all value in the array.
For relationship, you can use filter on it:
UPDATE User {name='Bob'} TO (comments APPEND {id = '000'})
UPDATE User {name='Bob'} TO (comments REMOVE { at < '2023/12/31'})
I may include more options later.
Link query - Not yet implemented
You can also link query. Each query return a list of UUID of a specific struct. You can use it in the next query.
Here an example where I create a new Comment
that I then append to the list of comment of one specific User
.
ADD Comment (content='Hello world', at=NOW, like_by=[]) => added_comment => UPDATE User {id = '000'} TO (comments APPEND added_comment)
The name between =>
is the variable name of the list of UUID used for the next queries, you can have multiple one if the link have more than 2 queries. You can also just use one =>
but the list of UUID is discard in that case.
Data types
Their is 5 data type for the moment:
int
: 64 bit integerfloat
: 64 bit float. Need to have a dot,1.
is a float1
is an integer.bool
: Boolean, can betrue
orfalse
string
: Character array between''
UUID
: Id in the UUID format, used for relationship, ect. All struct have an id member.
Comming soon:
date
: A date in yyyy/mm/dddatetime
: A date time in yyyy/mm/dd/hh/mm/sstime
: A time in hh/mm/ss
All data type can be an array of those type using [] in front of it. So []int is an array of integer.
All data type can also be null
. Expect array that can only be empty.
Lexique
- Struct: A struct of how to store data. E.g.
User
- Entity: An entity is one instance of a struct.
- Member: A member is one data saved in a struct. E.g.
name
inUser
How does it work ?
TODO: Create a tech doc of what is happening inside.
Roadmap
v0.1 - Base
- UUID
- CLI
- Tokenizers
- ZiQL parser
- Schema engine
- File engine
v0.2 - Usable
- B+Tree
- Relationships
- Date
- Link query
- Docker
v0.3 - QoL
- Schema migration
- Dump/Bump data
- Recovery
- Better CLI
v0.4 - Usability
- Server
- Python interface
- Go interface
v0.5 - In memory
- In memory option
- Cache
v0.6 - Performance
- Transaction
- Multi threading
- Lock manager
v0.7 - Safety
- Auth
- Metrics
- Durability
v0.8 - Advanced
- Query optimizer
v0.9 - Docs
- ZiQL tuto
- Deployment tuto
- Code docs
- CLI help
v1.0 - Web interface
- Query builder
- Tables
- Schema visualization
- Dashboard metrics
Let's see where it (or my brain) start explode ;)