A scalable feature store that makes it easy to align offline and online ML systems
Project description
Aligned
Aligned helps improving ML system visibility, while also reducing technical, and data debt, as described in Sculley et al. [2015].
Want to look at examples of how to use aligned
?
View the MatsMoll/aligned-example
repo.
This is done by providing an new innovative way of describing feature transformations, and data flow in ML systems. While also collecting dependency metadata that would otherwise be too inconvenient and error prone to manually type out.
Therefore, you get the following:
- Feature Store
- Feature Server
- Stream Processing
- Model Performance Monitoring - Documentation coming soon
- Data Catalog - Documentation coming soon
- Data Lineage - Documentation coming soon
- Data Quality Assurance
- Easy Data Loading
- Load Form Multiple Sources
All from the simple API of defining
As a result, loading model features is as easy as:
entities = {"passenger_id": [1, 2, 3, 4]}
await store.model("titanic").features_for(entities).to_pandas()
Aligned is still in active development, so changes are likely.
Feature Views
Write features as the should be, as data models. Then get code completion and typesafety by referencing them in other features.
This makes the features light weight, data source indipendent, and flexible.
class TitanicPassenger(FeatureView):
metadata = FeatureView.metadata_with(
name="passenger",
description="Some features from the titanic dataset",
batch_source=FileSource.csv_at("titanic.csv"),
stream_source=HttpStreamSource(topic_name="titanic")
)
passenger_id = Int32().as_entity()
# Input values
age = (
Float()
.description("A float as some have decimals")
.is_required()
.lower_bound(0)
.upper_bound(110)
)
name = String()
sex = String().accepted_values(["male", "female"])
survived = Bool().description("If the passenger survived")
sibsp = Int32().lower_bound(0, is_inclusive=True).description("Number of siblings on titanic")
cabin = String()
# Creates two one hot encoded values
is_male, is_female = sex.one_hot_encode(['male', 'female'])
Data sources
Alinged makes handling data sources easy, as you do not have to think about how it is done. Only define where the data is, and we handle the dirty work.
my_db = PostgreSQLConfig(env_var="DATABASE_URL")
redis = RedisConfig(env_var="REDIS_URL")
class TitanicPassenger(FeatureView):
metadata = FeatureView.metadata_with(
name="passenger",
description="Some features from the titanic dataset",
batch_source=my_db.table(
"passenger",
mapping_keys={
"Passenger_Id": "passenger_id"
}
),
stream_source=redis.stream(topic="titanic")
)
passenger_id = Int32().as_entity()
Fast development
Making iterativ and fast exploration in ML is important. This is why Aligned also makes it super easy to combine, and test multiple sources.
my_db = PostgreSQLConfig.localhost()
aws_bucket = AwsS3Config(...)
class SomeFeatures(FeatureView):
metadata = FeatureViewMetadata(
name="some_features",
description="...",
batch_source=my_db.table("local_features")
)
# Some features
...
class AwsFeatures(FeatureView):
metadata = FeatureViewMetadata(
name="aws",
description="...",
batch_source=aws_bucket.file_at("path/to/file.parquet")
)
# Some features
...
Describe Models
Usually will you need to combine multiple features for each model.
This is where a Model
comes in.
Here can you define which features should be exposed.
class Titanic(Model):
passenger = TitanicPassenger()
location = LocationFeatures()
metadata = Model.metadata_with(
name="titanic",
features=[
passenger.constant_filled_age,
passenger.ordinal_sex,
passenger.sibsp,
location.distance_to_shore,
location.distance_to_closest_boat
]
)
# Referencing the passenger's survived feature as the target
did_survive = passenger.survived.as_classification_target()
Data Enrichers
In manny cases will extra data be needed in order to generate some features.
We therefore need some way of enriching the data.
This can easily be done with Alinged's DataEnricher
s.
my_db = PostgreSQLConfig.localhost()
redis = RedisConfig.localhost()
user_location = my_db.data_enricher( # Fetch all user locations
sql="SELECT * FROM user_location"
).cache( # Cache them for one day
ttl=timedelta(days=1),
cache_key="user_location_cache"
).lock( # Make sure only one processer fetches the data at a time
lock_name="user_location_lock",
redis_config=redis
)
async def distance_to_users(df: DataFrame) -> Series:
user_location_df = await user_location.load()
...
return distances
class SomeFeatures(FeatureView):
metadata = FeatureViewMetadata(...)
latitude = Float()
longitude = Float()
distance_to_users = Float().transformed_using_features_pandas(
[latitude, longitude],
distance_to_users
)
Access Data
You can easily create a feature store that contains all your feature definitions. This can then be used to genreate data sets, setup an instce to serve features, DAG's etc.
store = await FileSource.json_at("./feature-store.json").feature_store()
# Select all features from a single feature view
df = await store.all_for("passenger", limit=100).to_pandas()
Centraliced Feature Store Definition
You would often share the features with other coworkers, or split them into different stages, like staging
, shadow
, or production
.
One option is therefore to reference the storage you use, and load the FeatureStore
from there.
aws_bucket = AwsS3Config(...)
store = await aws_bucket.json_at("production.json").feature_store()
# This switches from the production online store to the offline store
# Aka. the batch sources defined on the feature views
experimental_store = store.offline_store()
This json file can be generated by running aligned apply
.
Select multiple feature views
df = await store.features_for({
"passenger_id": [1, 50, 110]
}, features=[
"passenger:scaled_age",
"passenger:is_male",
"passenger:sibsp"
"other_features:distance_to_closest_boat",
]).to_polars()
Model Service
Selecting features for a model is super simple.
df = await store.model("titanic_model").features_for({
"passenger_id": [1, 50, 110]
}).to_pandas()
Feature View
If you want to only select features for a specific feature view, then this is also possible.
prev_30_days = await store.feature_view("match").previous(days=30).to_pandas()
sample_of_20 = await store.feature_view("match").all(limit=20).to_pandas()
Data quality
Alinged will make sure all the different features gets formatted as the correct datatype. In addition will aligned also make sure that the returend features aligne with defined constraints.
class TitanicPassenger(FeatureView):
...
age = (
Float()
.is_required()
.lower_bound(0)
.upper_bound(110)
)
sibsp = Int32().lower_bound(0, is_inclusive=True)
Then since our feature view have a is_required
and a lower_bound
, will the .validate(...)
command filter out the entites that do not follow that behavior.
from aligned.validation.pandera import PanderaValidator
df = await store.model("titanic_model").features_for({
"passenger_id": [1, 50, 110]
}).validate(
PanderaValidator() # Validates all features
).to_pandas()
Feature Server
You can define how to serve your features with the FeatureServer
. Here can you define where you want to load, and potentially write your features to.
By default will it aligned
look for a file called server.py
, and a FeatureServer
object called server
. However, this can be defined manually as well.
from aligned import RedisConfig, FileSource
from aligned.schemas.repo_definition import FeatureServer
store = FileSource.json_at("feature-store.json")
server = FeatureServer.from_reference(
store,
RedisConfig.localhost()
)
Then run aligned serve
, and a FastAPI server will start. Here can you push new features, which then transforms and stores the features, or just fetch them.
Stream Worker
You can also setup stream processing with a similar structure. However, here will a StreamWorker
be used.
by default will aligned
look for a worker.py
file with an object called worker
. An example would be the following.
from aligned import RedisConfig, FileSource
from aligned.schemas.repo_definition import FeatureServer
store = FileSource.json_at("feature-store.json")
server = FeatureServer.from_reference(
store,
RedisConfig.localhost()
)
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