# Getting Started With Redis OM ## Introduction This tutorial will walk you through installing Redis OM, creating your first model, and using it to save and validate data. ## Prerequisites Redis OM requires Python version 3.9 or above and a Redis instance to connect to. ## Python Make sure you are running **Python version 3.9 or higher**: ``` python --version Python 3.9.0 ``` If you don't have Python installed, you can download it from [Python.org](https://www.python.org/downloads/), use [Pyenv](https://github.com/pyenv/pyenv), or install Python with your operating system's package manager. ## Redis Redis OM saves data in Redis, so you will need Redis installed and running to complete this tutorial. ### Downloading Redis The latest version of Redis is available from [Redis.io](https://redis.io/). You can also install Redis with your operating system's package manager. **NOTE:** This tutorial will guide you through starting Redis locally, but the instructions will also work if Redis is running on a remote server. ### Installing Redis On Windows Redis doesn't run directly on Windows, but you can use Windows Subsystem for Linux (WSL) to run Redis. See [our video on YouTube](https://youtu.be/_nFwPTHOMIY) for a walk-through. Windows users can also use Docker. See the next section on running Redis with Docker for more information. ### Running Redis With Docker Instead of installing Redis manually or with a package manager, you can run Redis with Docker. The official Redis Docker image is hosted on [Docker Hub](https://hub.docker.com/_/redis). **TIP:** If you plan on using Docker, we recommend the [redismod](https://hub.docker.com/r/redislabs/redismod) image because it includes the RediSearch and RedisJSON modules. You start Redis with Docker with the `docker run` command, like this: docker run -d -p 6379:6379 redislabs/redismod **NOTE**: We'll talk more about this command (specifically, the arguments chosen) when we discuss running Redis later in this guide. ## Recommended: RediSearch and RedisJSON Redis OM relies on the [RediSearch][redisearch-url] and [RedisJSON][redis-json-url] Redis modules to support [rich queries](querying.md) and [embedded models](embedded_models.md). You don't need these Redis modules to use Redis OM's data modeling, validation, and persistence features, but we recommend them to get the most out of Redis OM. The easiest way to run these Redis modules during local development is to use the [redismod](https://hub.docker.com/r/redislabs/redismod) Docker image. You can quickly start Redis with the redismod Docker image by running the following command: docker run -d -p 6379:6379 redislabs/redismod **TIP:** The `-d` option runs Redis in the background. For other installation methods, follow the "Quick Start" guides on both modules' home pages for alternative installation methods. ## Start Redis Before you get started with Redis OM, make sure you start Redis. The command you use to start Redis will depend on how you installed it. ### Ubuntu Linux (Including WSL) If you installed Redis using `apt`, start it with the `systemctl` command: sudo systemctl restart redis.service Otherwise, you can start the server manually: redis-server start ### macOS with Homebrew brew services start redis ### Docker The command to start Redis with Docker depends on the image you've chosen to use. #### Docker with the `redismod` image (recommended) docker run -d -p 6379:6379 redislabs/redismod ### Docker with the `redis` image docker run -d -p 6379:6379 redis ## Installing Redis OM You can install Redis OM with `pip` by running the following command: pip install redis-om Or, if you're using Poetry, you can install Redis OM with the following command: poetry install redis-om With Pipenv, the command is: pipenv install redis-om ## Setting the Redis URL Environment Variable We're almost ready to create a Redis OM model! But first, we need to make sure that Redis OM knows how to connect to Redis. By default, Redis OM tries to connect to Redis on your localhost at port 6379. Most local install methods will result in Redis running at this location, in which case you don't need to do anything special. However, if you configured Redis to run on a different port, or if you're using a remote Redis server, you'll need to set the `REDIS_URL` environment variable. The `REDIS_URL` environment variable follows the redis-py URL format: redis://[[username]:[password]]@localhost:6379/[database number] The default connection is equivalent to the following `REDIS_URL` environment variable: redis://@localhost:6379 **TIP:** Redis databases are numbered, and the default is 0. You can leave off the database number to use the default database. Other supported prefixes include "rediss" for SSL connections and "unix" for Unix domain sockets: rediss://[[username]:[password]]@localhost:6379/0 unix://[[username]:[password]]@/path/to/socket.sock?db=0 For more details about how to connect to Redis with Redis OM, see the [connections documentation](connections.md). ### Redis Cluster Support Redis OM supports connecting to Redis Cluster, but this preview release does not support doing so with the `REDIS_URL` environment variable. However, you can connect by manually creating a connection object. See the [connections documentation](connections.md) for examples of connecting to Redis Cluster. Support for connecting to Redis Cluster via `REDIS_URL` will be added in a future release. ## Defining a Model In this tutorial, we'll create a `Customer` model that validates and saves data. Let's start with a basic definition of the model. We'll add features as we go along. ```python import datetime from redis_om.model import HashModel class Customer(HashModel): first_name: str last_name: str email: str join_date: datetime.date age: int bio: str ``` There are a few details to note: 1. Our `Customer` model extends the `HashModel` class. This means that it will be saved to Redis as a hash. The other model class that Redis OM provides is `JsonModel`, which we'll discuss later. 2. We've specified the model's fields using Python type annotations. Let's dig into these two details a bit more. ### The HashModel Class When you subclass `HashModel`, your subclass is both a Redis OM model, with methods for saving data to Redis, *and* a Pydantic model. This means that you can use Pydantic field validations with your Redis OM models, which we'll cover later, when we talk about validation. But this also means you can use Redis OM models anywhere you would use a Pydantic model, like in your FastAPI applications. 🤯 ### Type Annotations The type annotations you add to your model fields are used for a few purposes: * Validating data with Pydantic validators * Serializing data Redis * Deserializing data from Redis We'll see examples of these throughout the course of this tutorial. An important detail about the `HashModel` class is that it does not support `list`, `set`, or mapping (like `dict`) types. This is because Redis hashes cannot contain lists, sets, or other hashes. If you want to model fields with a list, set, or mapping type, or another model, you'll need to use the `JsonModel` class, which can support these types, as well as embedded models. ## Creating Models Let's see what creating a model object looks like: ```python import datetime from redis_om.model import HashModel class Customer(HashModel): first_name: str last_name: str email: str join_date: datetime.date age: int bio: str andrew = Customer( first_name="Andrew", last_name="Brookins", email="andrew.brookins@example.com", join_date=datetime.date.today(), age=38, bio="Python developer, works at Redis, Inc." ) ``` ### Optional Fields What would happen if we left out one of these fields, like `bio`? ```python import datetime from redis_om.model import HashModel from pydantic import ValidationError class Customer(HashModel): first_name: str last_name: str email: str join_date: datetime.date age: int bio: str # All fields are required because none of the fields # are marked `Optional`, so we get a validation error: try: Customer( first_name="Andrew", last_name="Brookins", email="andrew.brookins@example.com", join_date=datetime.date.today(), age=38 # <- We didn't pass in a bio! ) except ValidationError as e: print(e) """ ValidationError: 1 validation error for Customer bio field required (type=value_error.missing) """ ``` If we want the `bio` field to be optional, we need to change the type annotation to use `Optional`. ```python import datetime from typing import Optional from redis_om.model import HashModel class Customer(HashModel): first_name: str last_name: str email: str join_date: datetime.date age: int bio: Optional[str] # <- Now, bio is an Optional[str] ``` Now we can create `Customer` objects with or without the `bio` field. ### Default Values Fields can have default values. You set them by assigning a value to a field. ```python import datetime from typing import Optional from redis_om.model import HashModel class Customer(HashModel): first_name: str last_name: str email: str join_date: datetime.date age: int bio: Optional[str] = "Super dope" # <- We added a default here ``` Now, if we create a `Customer` object without a `bio` field, it will use the default value. ```python import datetime from typing import Optional from redis_om.model import HashModel class Customer(HashModel): first_name: str last_name: str email: str join_date: datetime.date age: int bio: Optional[str] = "Super dope" andrew = Customer( first_name="Andrew", last_name="Brookins", email="andrew.brookins@example.com", join_date=datetime.date.today(), age=38) # <- Notice, we didn't give a bio! print(andrew.bio) # <- So we got the default value. #> 'Super Dope' ``` The model will then save this default value to Redis the next time you call `save()`. ### Automatic Primary Keys Models generate a globally unique primary key automatically without needing to talk to Redis. ```python import datetime from typing import Optional from redis_om.model import HashModel class Customer(HashModel): first_name: str last_name: str email: str join_date: datetime.date age: int bio: Optional[str] = "Super dope" andrew = Customer( first_name="Andrew", last_name="Brookins", email="andrew.brookins@example.com", join_date=datetime.date.today(), age=38) print(andrew.pk) #> '01FJM6PH661HCNNRC884H6K30C' ``` The ID is available *before* you save the model. The default ID generation function creates [ULIDs](https://github.com/ulid/spec), though you can change the function that generates the primary key for models if you'd like to use a different kind of primary key. ## Validating Data Redis OM uses [Pydantic][pydantic-url] to validate data based on the type annotations you assign to fields in a model class. This validation ensures that fields like `first_name`, which the `Customer` model marked as a `str`, are always strings. **But every Redis OM model is also a Pydantic model**, so you can use Pydantic validators like `EmailStr`, `Pattern`, and many more for complex validations! For example, we defined the `join_date` for our `Customer` model earlier as a `datetime.date`. So, if we try to create a model with a `join_date` that isn't a date, we'll get a validation error. Let's try it now: ```python import datetime from typing import Optional from redis_om.model import HashModel from pydantic import ValidationError class Customer(HashModel): first_name: str last_name: str email: str join_date: datetime.date age: int bio: Optional[str] = "Super dope" try: Customer( first_name="Andrew", last_name="Brookins", email="a@example.com", join_date="not a date!", # <- The problem line! age=38 ) except ValidationError as e: print(e) """ pydantic.error_wrappers.ValidationError: 1 validation error for Customer join_date invalid date format (type=value_error.date) """ ``` ### Models Coerce Values By Default You might wonder what qualifies as a "date" in our last validation example. By default, Redis OM will try to coerce input values to the correct type. That means we can pass a date string for `join_date` instead of a `date` object: ```python import datetime from typing import Optional from redis_om.model import HashModel class Customer(HashModel): first_name: str last_name: str email: str join_date: datetime.date age: int andrew = Customer( first_name="Andrew", last_name="Brookins", email="a@example.com", join_date="2020-01-02", # <- We're passing a YYYY-MM-DD date string now age=38 ) print(andrew.join_date) #> 2021-11-02 type(andrew.join_date) #> datetime.date # The model parsed the string automatically! ``` This ability to combine parsing (in this case, a YYYY-MM-DD date string) with validation can save you a lot of work. However, you can turn off coercion -- check the next section on using strict validation. ### Strict Validation You can turn on strict validation to reject values for a field unless they match the exact type of the model's type annotations. You do this by changing a field's type annotation to use one of the ["strict" types provided by Pydantic](https://pydantic-docs.helpmanual.io/usage/types/#strict-types). Redis OM supports all of Pydantic's strict types: `StrictStr`, `StrictBytes`, `StrictInt`, `StrictFloat`, and `StrictBool`. If we wanted to make sure that the `age` field only accepts integers and doesn't try to parse a string containing an integer, like "1", we'd use the `StrictInt` class. ```python import datetime from typing import Optional from pydantic import StrictInt, ValidationError from redis_om.model import HashModel class Customer(HashModel): first_name: str last_name: str email: str join_date: datetime.date age: StrictInt # <- Instead of int, we use StrictInt bio: Optional[str] # Now if we use a string instead of an integer for `age`, # we get a validation error: try: Customer( first_name="Andrew", last_name="Brookins", email="a@example.com", join_date="2020-01-02", # <- A date as a string shouldn't work now! age="38" ) except ValidationError as e: print(e) """ pydantic.error_wrappers.ValidationError: 1 validation error for Customer join_date Value must be a datetime.date object (type=value_error) """ ``` Pydantic doesn't include a `StrictDate` class, but we can create our own. In this example, we create a `StrictDate` type that we'll use to validate that `join_date` is a `datetime.date` object. ```python import datetime from typing import Optional from pydantic import ValidationError from redis_om.model import HashModel class StrictDate(datetime.date): @classmethod def __get_validators__(cls) -> 'CallableGenerator': yield cls.validate @classmethod def validate(cls, value: datetime.date, **kwargs) -> datetime.date: if not isinstance(value, datetime.date): raise ValueError("Value must be a datetime.date object") return value class Customer(HashModel): first_name: str last_name: str email: str join_date: StrictDate age: int bio: Optional[str] # Now if we use a string instead of a date object for `join_date`, # we get a validation error: try: Customer( first_name="Andrew", last_name="Brookins", email="a@example.com", join_date="2020-01-02", # <- A string shouldn't work now! age="38" ) except ValidationError as e: print(e) """ pydantic.error_wrappers.ValidationError: 1 validation error for Customer join_date Value must be a datetime.date object (type=value_error) """ ``` ## Saving Models We can save the model to Redis by calling `save()`: ```python import datetime from redis_om.model import HashModel class Customer(HashModel): first_name: str last_name: str email: str join_date: datetime.date age: int andrew = Customer( first_name="Andrew", last_name="Brookins", email="andrew.brookins@example.com", join_date=datetime.date.today(), age=38) andrew.save() ``` ## Examining Your Data In Redis You can view the data stored in Redis for any Redis OM model. First, get the key of a model instance you want to inspect. The `key()` method will give you the exact Redis key used to store the model. **NOTE:** The naming of this method may be confusing. This is not the primary key, but is instead the Redis key for this model. For this reason, the method name may change. In this example, we're looking at the key created for the `Customer` model we've been building: ```python import datetime from typing import Optional from redis_om.model import HashModel class Customer(HashModel): first_name: str last_name: str email: str join_date: datetime.date age: int bio: Optional[str] = "Super dope" andrew = Customer( first_name="Andrew", last_name="Brookins", email="andrew.brookins@example.com", join_date=datetime.date.today(), age=38) andrew.save() andrew.key() #> 'mymodel.Customer:01FKGX1DFEV9Z2XKF59WQ6DC9T' ``` With the model's Redis key, you can start `redis-cli` and inspect the data stored under that key. Here, we run `JSON.GET` command with `redis-cli` using the running "redis" container that this project's Docker Compose file defines: ``` $ docker-compose exec -T redis redis-cli HGETALL mymodel.Customer:01FKGX1DFEV9Z2XKF59WQ6DC9r 1) "pk" 2) "01FKGX1DFEV9Z2XKF59WQ6DC9T" 3) "first_name" 4) "Andrew" 5) "last_name" 6) "Brookins" 7) "email" 8) "andrew.brookins@example.com" 9) "join_date" 10) "2021-11-02" 11) "age" 12) "38" 13) "bio" 14) "Super dope" ``` ## Getting a Model If you have the primary key of a model, you can call the `get()` method on the model class to get the model's data. ```python import datetime from typing import Optional from redis_om.model import HashModel class Customer(HashModel): first_name: str last_name: str email: str join_date: datetime.date age: int bio: Optional[str] = "Super dope" andrew = Customer( first_name="Andrew", last_name="Brookins", email="andrew.brookins@example.com", join_date=datetime.date.today(), age=38) andrew.save() assert Customer.get(andrew.pk) == andrew ``` ## Querying for Models With Expressions Redis OM comes with a rich query language that allows you to query Redis with Python expressions. To show how this works, we'll make a small change to the `Customer` model we defined earlier. We'll add `Field(index=True)` to tell Redis OM that we want to index the `last_name` and `age` fields: ```python import datetime from typing import Optional from pydantic import EmailStr from redis_om.model import ( Field, HashModel, Migrator ) class Customer(HashModel): first_name: str last_name: str = Field(index=True) email: EmailStr join_date: datetime.date age: int = Field(index=True) bio: Optional[str] # Now, if we use this model with a Redis deployment that has the # RediSearch module installed, we can run queries like the following. # Before running queries, we need to run migrations to set up the # indexes that Redis OM will use. You can also use the `migrate` # CLI tool for this! Migrator().run() # Find all customers with the last name "Brookins" Customer.find(Customer.last_name == "Brookins").all() # Find all customers that do NOT have the last name "Brookins" Customer.find(Customer.last_name != "Brookins").all() # Find all customers whose last name is "Brookins" OR whose age is # 100 AND whose last name is "Smith" Customer.find((Customer.last_name == "Brookins") | ( Customer.age == 100 ) & (Customer.last_name == "Smith")).all() ``` Many more types of queries are possible. learn more about querying with Redis OM, see the [documentation on querying](docs/querying.md). ## Next Steps Now that you know the basics of working with Redis OM, continue on for all the nitty-gritty details about [models and fields](models_and_fields.md). [redisearch-url]: https://oss.redis.com/redisearch/ [redis-json-url]: https://oss.redis.com/redisjson/