View Source Ecto
Requirement: This guide expects that you have gone through the introductory guides and got a Phoenix application up and running.
Most web applications today need some form of data validation and persistence. In the Elixir ecosystem, we have Ecto
to enable this. Before we jump into building database-backed web features, we're going to focus on the finer details of Ecto to give a solid base to build our web features on top of. Let's get started!
Phoenix uses Ecto to provide builtin support to the following databases:
- PostgreSQL (via
postgrex
) - MySQL (via
myxql
) - MSSQL (via
tds
) - ETS (via
etso
) - SQLite3 (via
ecto_sqlite3
)
Newly generated Phoenix projects include Ecto with the PostgreSQL adapter by default. You can pass the --database
option to change or --no-ecto
flag to exclude this.
Ecto also provides support for other databases and it has many learning resources available. Please check out Ecto's README for general information.
This guide assumes that we have generated our new application with Ecto integration and that we will be using PostgreSQL. The introductory guides cover how to get your first application up and running. For using other databases, see the Using other databases section.
Using the schema and migration generator
Once we have Ecto and PostgreSQL installed and configured, the easiest way to use Ecto is to generate an Ecto schema through the phx.gen.schema
task. Ecto schemas are a way for us to specify how Elixir data types map to and from external sources, such as database tables. Let's generate a User
schema with name
, email
, bio
, and number_of_pets
fields.
$ mix phx.gen.schema User users name:string email:string \
bio:string number_of_pets:integer
* creating ./lib/hello/user.ex
* creating priv/repo/migrations/20170523151118_create_users.exs
Remember to update your repository by running migrations:
$ mix ecto.migrate
A couple of files were generated with this task. First, we have a user.ex
file, containing our Ecto schema with our schema definition of the fields we passed to the task. Next, a migration file was generated inside priv/repo/migrations/
which will create our database table that our schema maps to.
With our files in place, let's follow the instructions and run our migration:
$ mix ecto.migrate
Compiling 1 file (.ex)
Generated hello app
[info] == Running Hello.Repo.Migrations.CreateUsers.change/0 forward
[info] create table users
[info] == Migrated in 0.0s
Mix assumes that we are in the development environment unless we tell it otherwise with MIX_ENV=prod mix ecto.migrate
.
If we log in to our database server, and connect to our hello_dev
database, we should see our users
table. Ecto assumes that we want an integer column called id
as our primary key, so we should see a sequence generated for that as well.
$ psql -U postgres
Type "help" for help.
postgres=# \connect hello_dev
You are now connected to database "hello_dev" as user "postgres".
hello_dev=# \d
List of relations
Schema | Name | Type | Owner
--------+-------------------+----------+----------
public | schema_migrations | table | postgres
public | users | table | postgres
public | users_id_seq | sequence | postgres
(3 rows)
hello_dev=# \q
If we take a look at the migration generated by phx.gen.schema
in priv/repo/migrations/
, we'll see that it will add the columns we specified. It will also add timestamp columns for inserted_at
and updated_at
which come from the timestamps/1
function.
defmodule Hello.Repo.Migrations.CreateUsers do
use Ecto.Migration
def change do
create table(:users) do
add :name, :string
add :email, :string
add :bio, :string
add :number_of_pets, :integer
timestamps()
end
end
end
And here's what that translates to in the actual users
table.
$ psql
hello_dev=# \d users
Table "public.users"
Column | Type | Modifiers
---------------+-----------------------------+----------------------------------------------------
id | bigint | not null default nextval('users_id_seq'::regclass)
name | character varying(255) |
email | character varying(255) |
bio | character varying(255) |
number_of_pets | integer |
inserted_at | timestamp without time zone | not null
updated_at | timestamp without time zone | not null
Indexes:
"users_pkey" PRIMARY KEY, btree (id)
Notice that we do get an id
column as our primary key by default, even though it isn't listed as a field in our migration.
Repo configuration
Our Hello.Repo
module is the foundation we need to work with databases in a Phoenix application. Phoenix generated it for us in lib/hello/repo.ex
, and this is what it looks like.
defmodule Hello.Repo do
use Ecto.Repo,
otp_app: :hello,
adapter: Ecto.Adapters.Postgres
end
It begins by defining the repository module. Then it configures our otp_app
name, and the adapter
– Postgres
, in our case.
Our repo has three main tasks - to bring in all the common query functions from [Ecto.Repo
], to set the otp_app
name equal to our application name, and to configure our database adapter. We'll talk more about how to use Hello.Repo
in a bit.
When phx.new
generated our application, it included some basic repository configuration as well. Let's look at config/dev.exs
.
...
# Configure your database
config :hello, Hello.Repo,
username: "postgres",
password: "postgres",
hostname: "localhost",
database: "hello_dev",
show_sensitive_data_on_connection_error: true,
pool_size: 10
...
We also have similar configuration in config/test.exs
and config/runtime.exs
(formerly config/prod.secret.exs
) which can also be changed to match your actual credentials.
The schema
Ecto schemas are responsible for mapping Elixir values to external data sources, as well as mapping external data back into Elixir data structures. We can also define relationships to other schemas in our applications. For example, our User
schema might have many posts, and each post would belong to a user. Ecto also handles data validation and type casting with changesets, which we'll discuss in a moment.
Here's the User
schema that Phoenix generated for us.
defmodule Hello.User do
use Ecto.Schema
import Ecto.Changeset
schema "users" do
field :bio, :string
field :email, :string
field :name, :string
field :number_of_pets, :integer
timestamps()
end
@doc false
def changeset(user, attrs) do
user
|> cast(attrs, [:name, :email, :bio, :number_of_pets])
|> validate_required([:name, :email, :bio, :number_of_pets])
end
end
Ecto schemas at their core are simply Elixir structs. Our schema
block is what tells Ecto how to cast our %User{}
struct fields to and from the external users
table. Often, the ability to simply cast data to and from the database isn't enough and extra data validation is required. This is where Ecto changesets come in. Let's dive in!
Changesets and validations
Changesets define a pipeline of transformations our data needs to undergo before it will be ready for our application to use. These transformations might include type-casting, user input validation, and filtering out any extraneous parameters. Often we'll use changesets to validate user input before writing it to the database. Ecto repositories are also changeset-aware, which allows them not only to refuse invalid data, but also perform the minimal database updates possible by inspecting the changeset to know which fields have changed.
Let's take a closer look at our default changeset function.
def changeset(user, attrs) do
user
|> cast(attrs, [:name, :email, :bio, :number_of_pets])
|> validate_required([:name, :email, :bio, :number_of_pets])
end
Right now, we have two transformations in our pipeline. In the first call, we invoke Ecto.Changeset.cast/3
, passing in our external parameters and marking which fields are required for validation.
cast/3
first takes a struct, then the parameters (the proposed updates), and then the final field is the list of columns to be updated. cast/3
also will only take fields that exist in the schema.
Next, Ecto.Changeset.validate_required/3
checks that this list of fields is present in the changeset that cast/3
returns. By default with the generator, all fields are required.
We can verify this functionality in IEx
. Let's fire up our application inside IEx by running iex -S mix
. In order to minimize typing and make this easier to read, let's alias our Hello.User
struct.
$ iex -S mix
iex> alias Hello.User
Hello.User
Next, let's build a changeset from our schema with an empty User
struct, and an empty map of parameters.
iex> changeset = User.changeset(%User{}, %{})
#Ecto.Changeset<
action: nil,
changes: %{},
errors: [
name: {"can't be blank", [validation: :required]},
email: {"can't be blank", [validation: :required]},
bio: {"can't be blank", [validation: :required]},
number_of_pets: {"can't be blank", [validation: :required]}
],
data: #Hello.User<>,
valid?: false
>
Once we have a changeset, we can check if it is valid.
iex> changeset.valid?
false
Since this one is not valid, we can ask it what the errors are.
iex> changeset.errors
[
name: {"can't be blank", [validation: :required]},
email: {"can't be blank", [validation: :required]},
bio: {"can't be blank", [validation: :required]},
number_of_pets: {"can't be blank", [validation: :required]}
]
Now, let's make number_of_pets
optional. In order to do this, we simply remove it from the list in the changeset/2
function, in Hello.User
.
|> validate_required([:name, :email, :bio])
Now casting the changeset should tell us that only name
, email
, and bio
can't be blank. We can test that by running recompile()
inside IEx and then rebuilding our changeset.
iex> recompile()
Compiling 1 file (.ex)
:ok
iex> changeset = User.changeset(%User{}, %{})
#Ecto.Changeset<
action: nil,
changes: %{},
errors: [
name: {"can't be blank", [validation: :required]},
email: {"can't be blank", [validation: :required]},
bio: {"can't be blank", [validation: :required]}
],
data: #Hello.User<>,
valid?: false
>
iex> changeset.errors
[
name: {"can't be blank", [validation: :required]},
email: {"can't be blank", [validation: :required]},
bio: {"can't be blank", [validation: :required]}
]
What happens if we pass a key-value pair that is neither defined in the schema nor required?
Inside our existing IEx shell, let's create a params
map with valid values plus an extra random_key: "random value"
.
iex> params = %{name: "Joe Example", email: "joe@example.com", bio: "An example to all", number_of_pets: 5, random_key: "random value"}
%{
bio: "An example to all",
email: "joe@example.com",
name: "Joe Example",
number_of_pets: 5,
random_key: "random value"
}
Next, let's use our new params
map to create another changeset.
iex> changeset = User.changeset(%User{}, params)
#Ecto.Changeset<
action: nil,
changes: %{
bio: "An example to all",
email: "joe@example.com",
name: "Joe Example",
number_of_pets: 5
},
errors: [],
data: #Hello.User<>,
valid?: true
>
Our new changeset is valid.
iex> changeset.valid?
true
We can also check the changeset's changes - the map we get after all of the transformations are complete.
iex(9)> changeset.changes
%{bio: "An example to all", email: "joe@example.com", name: "Joe Example",
number_of_pets: 5}
Notice that our random_key
key and "random_value"
value have been removed from the final changeset. Changesets allow us to cast external data, such as user input on a web form or data from a CSV file into valid data into our system. Invalid parameters will be stripped and bad data that is unable to be cast according to our schema will be highlighted in the changeset errors.
We can validate more than just whether a field is required or not. Let's take a look at some finer-grained validations.
What if we had a requirement that all biographies in our system must be at least two characters long? We can do this easily by adding another transformation to the pipeline in our changeset which validates the length of the bio
field.
def changeset(user, attrs) do
user
|> cast(attrs, [:name, :email, :bio, :number_of_pets])
|> validate_required([:name, :email, :bio, :number_of_pets])
|> validate_length(:bio, min: 2)
end
Now, if we try to cast data containing a value of "A"
for our user's bio
, we should see the failed validation in the changeset's errors.
iex> recompile()
iex> changeset = User.changeset(%User{}, %{bio: "A"})
iex> changeset.errors[:bio]
{"should be at least %{count} character(s)",
[count: 2, validation: :length, kind: :min, type: :string]}
If we also have a requirement for the maximum length that a bio can have, we can simply add another validation.
def changeset(user, attrs) do
user
|> cast(attrs, [:name, :email, :bio, :number_of_pets])
|> validate_required([:name, :email, :bio, :number_of_pets])
|> validate_length(:bio, min: 2)
|> validate_length(:bio, max: 140)
end
Let's say we want to perform at least some rudimentary format validation on the email
field. All we want to check for is the presence of the @
. The Ecto.Changeset.validate_format/3
function is just what we need.
def changeset(user, attrs) do
user
|> cast(attrs, [:name, :email, :bio, :number_of_pets])
|> validate_required([:name, :email, :bio, :number_of_pets])
|> validate_length(:bio, min: 2)
|> validate_length(:bio, max: 140)
|> validate_format(:email, ~r/@/)
end
If we try to cast a user with an email of "example.com"
, we should see an error message like the following:
iex> recompile()
iex> changeset = User.changeset(%User{}, %{email: "example.com"})
iex> changeset.errors[:email]
{"has invalid format", [validation: :format]}
There are many more validations and transformations we can perform in a changeset. Please see the Ecto Changeset documentation for more information.
Data persistence
We've explored migrations and schemas, but we haven't yet persisted any of our schemas or changesets. We briefly looked at our repository module in lib/hello/repo.ex
earlier, and now it's time to put it to use.
Ecto repositories are the interface into a storage system, be it a database like PostgreSQL or an external service like a RESTful API. The Repo
module's purpose is to take care of the finer details of persistence and data querying for us. As the caller, we only care about fetching and persisting data. The Repo
module takes care of the underlying database adapter communication, connection pooling, and error translation for database constraint violations.
Let's head back over to IEx with iex -S mix
, and insert a couple of users into the database.
iex> alias Hello.{Repo, User}
[Hello.Repo, Hello.User]
iex> Repo.insert(%User{email: "user1@example.com"})
[debug] QUERY OK db=6.5ms queue=0.5ms idle=1358.3ms
INSERT INTO "users" ("email","inserted_at","updated_at") VALUES ($1,$2,$3) RETURNING "id" ["user1@example.com", ~N[2021-02-25 01:58:55], ~N[2021-02-25 01:58:55]]
{:ok,
%Hello.User{
__meta__: #Ecto.Schema.Metadata<:loaded, "users">,
bio: nil,
email: "user1@example.com",
id: 1,
inserted_at: ~N[2021-02-25 01:58:55],
name: nil,
number_of_pets: nil,
updated_at: ~N[2021-02-25 01:58:55]
}}
iex> Repo.insert(%User{email: "user2@example.com"})
[debug] QUERY OK db=1.3ms idle=1402.7ms
INSERT INTO "users" ("email","inserted_at","updated_at") VALUES ($1,$2,$3) RETURNING "id" ["user2@example.com", ~N[2021-02-25 02:03:28], ~N[2021-02-25 02:03:28]]
{:ok,
%Hello.User{
__meta__: #Ecto.Schema.Metadata<:loaded, "users">,
bio: nil,
email: "user2@example.com",
id: 2,
inserted_at: ~N[2021-02-25 02:03:28],
name: nil,
number_of_pets: nil,
updated_at: ~N[2021-02-25 02:03:28]
}}
We started by aliasing our User
and Repo
modules for easy access. Next, we called Repo.insert/2
with a User struct. Since we are in the dev
environment, we can see the debug logs for the query our repository performed when inserting the underlying %User{}
data. We received a two-element tuple back with {:ok, %User{}}
, which lets us know the insertion was successful.
We could also insert a user by passing a changeset to Repo.insert/2
. If the changeset is valid, the repository will use an optimized database query to insert the record, and return a two-element tuple back, as above. If the changeset is not valid, we receive a two-element tuple consisting of :error
plus the invalid changeset.
With a couple of users inserted, let's fetch them back out of the repo.
iex> Repo.all(User)
[debug] QUERY OK source="users" db=5.8ms queue=1.4ms idle=1672.0ms
SELECT u0."id", u0."bio", u0."email", u0."name", u0."number_of_pets", u0."inserted_at", u0."updated_at" FROM "users" AS u0 []
[
%Hello.User{
__meta__: #Ecto.Schema.Metadata<:loaded, "users">,
bio: nil,
email: "user1@example.com",
id: 1,
inserted_at: ~N[2021-02-25 01:58:55],
name: nil,
number_of_pets: nil,
updated_at: ~N[2021-02-25 01:58:55]
},
%Hello.User{
__meta__: #Ecto.Schema.Metadata<:loaded, "users">,
bio: nil,
email: "user2@example.com",
id: 2,
inserted_at: ~N[2021-02-25 02:03:28],
name: nil,
number_of_pets: nil,
updated_at: ~N[2021-02-25 02:03:28]
}
]
That was easy! Repo.all/1
takes a data source, our User
schema in this case, and translates that to an underlying SQL query against our database. After it fetches the data, the Repo then uses our Ecto schema to map the database values back into Elixir data structures according to our User
schema. We're not just limited to basic querying – Ecto includes a full-fledged query DSL for advanced SQL generation. In addition to a natural Elixir DSL, Ecto's query engine gives us multiple great features, such as SQL injection protection and compile-time optimization of queries. Let's try it out.
iex> import Ecto.Query
Ecto.Query
iex> Repo.all(from u in User, select: u.email)
[debug] QUERY OK source="users" db=0.8ms queue=0.9ms idle=1634.0ms
SELECT u0."email" FROM "users" AS u0 []
["user1@example.com", "user2@example.com"]
First, we imported [Ecto.Query
], which imports the from/2
macro of Ecto's Query DSL. Next, we built a query which selects all the email addresses in our users table. Let's try another example.
iex> Repo.one(from u in User, where: ilike(u.email, "%1%"),
select: count(u.id))
[debug] QUERY OK source="users" db=1.6ms SELECT count(u0."id") FROM "users" AS u0 WHERE (u0."email" ILIKE '%1%') []
1
Now we're starting to get a taste of Ecto's rich querying capabilities. We used Repo.one/2
to fetch the count of all users with an email address containing 1
, and received the expected count in return. This just scratches the surface of Ecto's query interface, and much more is supported such as sub-querying, interval queries, and advanced select statements. For example, let's build a query to fetch a map of all user id's to their email addresses.
iex> Repo.all(from u in User, select: %{u.id => u.email})
[debug] QUERY OK source="users" db=0.9ms
SELECT u0."id", u0."email" FROM "users" AS u0 []
[
%{1 => "user1@example.com"},
%{2 => "user2@example.com"}
]
That little query packed a big punch. It both fetched all user emails from the database and efficiently built a map of the results in one go. You should browse the Ecto.Query documentation to see the breadth of supported query features.
In addition to inserts, we can also perform updates and deletes with Repo.update/2
and Repo.delete/2
to update or delete a single schema. Ecto also supports bulk persistence with the Repo.insert_all/3
, Repo.update_all/3
, and Repo.delete_all/2
functions.
There is quite a bit more that Ecto can do and we've only barely scratched the surface. With a solid Ecto foundation in place, we're now ready to continue building our app and integrate the web-facing application with our backend persistence. Along the way, we'll expand our Ecto knowledge and learn how to properly isolate our web interface from the underlying details of our system. Please take a look at the Ecto documentation for the rest of the story.
In our contexts guide, we'll find out how to wrap up our Ecto access and business logic behind modules that group related functionality. We'll see how Phoenix helps us design maintainable applications, and we'll find out about other neat Ecto features along the way.
Using other databases
Phoenix applications are configured to use PostgreSQL by default, but what if we want to use another database, such as MySQL? In this section, we'll walk through changing that default whether we are about to create a new application, or whether we have an existing one configured for PostgreSQL.
If we are about to create a new application, configuring our application to use MySQL is easy. We can simply pass the --database mysql
flag to phx.new
and everything will be configured correctly.
$ mix phx.new hello_phoenix --database mysql
This will set up all the correct dependencies and configuration for us automatically. Once we install those dependencies with mix deps.get
, we'll be ready to begin working with Ecto in our application.
If we have an existing application, all we need to do is switch adapters and make some small configuration changes.
To switch adapters, we need to remove the Postgrex dependency and add a new one for MyXQL instead.
Let's open up our mix.exs
file and do that now.
defmodule HelloPhoenix.MixProject do
use Mix.Project
. . .
# Specifies your project dependencies.
#
# Type `mix help deps` for examples and options.
defp deps do
[
{:phoenix, "~> 1.4.0"},
{:phoenix_ecto, "~> 4.4"},
{:ecto_sql, "~> 3.10"},
{:myxql, ">= 0.0.0"},
...
]
end
end
Next, we need to configure our adapter to use the default MySQL credentials by updating config/dev.exs
:
config :hello_phoenix, HelloPhoenix.Repo,
username: "root",
password: "",
database: "hello_phoenix_dev"
If we have an existing configuration block for our HelloPhoenix.Repo
, we can simply change the values to match our new ones. You also need to configure the correct values in the config/test.exs
and config/runtime.exs
(formerly config/prod.secret.exs
) files as well.
The last change is to open up lib/hello_phoenix/repo.ex
and make sure to set the :adapter
to Ecto.Adapters.MyXQL
.
Now all we need to do is fetch our new dependency, and we'll be ready to go.
$ mix deps.get
With our new adapter installed and configured, we're ready to create our database.
$ mix ecto.create
The database for HelloPhoenix.Repo has been created. We're also ready to run any migrations, or do anything else with Ecto that we may choose.
$ mix ecto.migrate
[info] == Running HelloPhoenix.Repo.Migrations.CreateUser.change/0 forward
[info] create table users
[info] == Migrated in 0.2s
Other options
While Phoenix uses the Ecto
project to interact with the data access layer, there are many other data access options, some even built into the Erlang standard library. ETS – available in Ecto via etso
– and DETS are key-value data stores built into OTP. OTP also provides a relational database called Mnesia with its own query language called QLC. Both Elixir and Erlang also have a number of libraries for working with a wide range of popular data stores.
The data world is your oyster, but we won't be covering these options in these guides.