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This notebook shows how to enrich data by using the Apache Beam enrichment transform with Vertex AI Feature Store. The enrichment transform is an Apache Beam turnkey transform that lets you enrich data by using a key-value lookup. This transform has the following features:
- The transform has a built-in Apache Beam handler that interacts with Vertex AI to get precomputed feature values.
- The transform uses client-side throttling to manage rate limiting the requests.
- Optionally, you can configure a Redis cache to improve efficiency.
As of Apache Beam SDK version 2.55.0, online feature serving through Bigtable online serving and the Vertex AI Feature Store (legacy) method is supported. This notebook demonstrates how to use the Bigtable online serving approach with the enrichment transform in an Apache Beam pipeline.
This notebook demonstrates the following ecommerce product recommendation use case based on the BigQuery public dataset theLook eCommerce:
- Use a stream of online transactions from Pub/Sub that contains the following fields:
product_id
,user_id
, andsale_price
. - Deploy a pretrained model on Vertex AI based on the features
product_id
,user_id
,sale_price
,age
,gender
,state
, andcountry
. - Precompute the feature values for the pretrained model, and store the values in Vertex AI Feature Store.
- Enrich the stream of transactions from Pub/Sub with feature values from Vertex AI Feature Store by using the enrichment transform.
- Send the enriched data to the Vertex AI model for online prediction by using the
RunInference
transform, which predicts the product recommendation for the user.
Before you begin
Set up your environment and download dependencies.
Install Apache Beam
To use the enrichment transform with the built-in Vertex AI handler, install the Apache Beam SDK version 2.55.0 or later.
pip install apache_beam[interactive,gcp]==2.55.0 --quiet
pip install redis
# Use TensorFlow 2.13.0, because it is the latest version that has the prebuilt
# container image for Vertex AI model deployment.
# See https://cloud.google.com/vertex-ai/docs/predictions/pre-built-containers#tensorflow
pip install tensorflow==2.13
import json
import math
import os
import time
from typing import Any
from typing import Dict
import pandas as pd
from google.cloud import aiplatform
from google.cloud import pubsub_v1
from google.cloud import bigquery
from google.cloud import storage
from google.cloud.aiplatform_v1 import FeatureOnlineStoreAdminServiceClient
from google.cloud.aiplatform_v1 import FeatureRegistryServiceClient
from google.cloud.aiplatform_v1.types import feature_view as feature_view_pb2
from google.cloud.aiplatform_v1.types import \
feature_online_store as feature_online_store_pb2
from google.cloud.aiplatform_v1.types import \
feature_online_store_admin_service as \
feature_online_store_admin_service_pb2
import apache_beam as beam
import tensorflow as tf
import apache_beam.runners.interactive.interactive_beam as ib
from apache_beam.ml.inference.base import RunInference
from apache_beam.ml.inference.vertex_ai_inference import VertexAIModelHandlerJSON
from apache_beam.options import pipeline_options
from apache_beam.runners.interactive.interactive_runner import InteractiveRunner
from apache_beam.transforms.enrichment import Enrichment
from apache_beam.transforms.enrichment_handlers.vertex_ai_feature_store import VertexAIFeatureStoreEnrichmentHandler
from tensorflow import keras
from tensorflow.keras import layers
Authenticate with Google Cloud
This notebook reads data from Pub/Sub and Vertex AI. To use your Google Cloud account, authenticate this notebook.
from google.colab import auth
auth.authenticate_user()
Replace <PROJECT_ID>
and <LOCATION>
with the appropriate values for your Google Cloud account.
PROJECT_ID = "<PROJECT_ID>"
LOCATION = "<LOCATION>"
Train and deploy the model to Vertex AI
Fetch the training data from the BigQuery public dataset thelook-ecommerce.
train_data_query = """
WITH
order_items AS (
SELECT cast(user_id as string) AS user_id,
product_id,
sale_price,
FROM `bigquery-public-data.thelook_ecommerce.order_items`),
users AS (
SELECT cast(id as string) AS user_id,
age,
lower(gender) as gender,
lower(state) as state,
lower(country) as country,
FROM `bigquery-public-data.thelook_ecommerce.users`)
SELECT *
FROM order_items
LEFT OUTER JOIN users
USING (user_id)
"""
client = bigquery.Client(project=PROJECT_ID)
train_data = client.query(train_data_query).result().to_dataframe()
train_data.head()
Create a prediction dataframe that contains the product_id
to recommend to the user. Preprocess the data for columns that contain the categorical values.
# Create a prediction dataframe.
prediction_data = train_data['product_id'].sample(frac=1, replace=True)
# Preprocess data to handle categorical values.
train_data['gender'] = pd.factorize(train_data['gender'])[0]
train_data['state'] = pd.factorize(train_data['state'])[0]
train_data['country'] = pd.factorize(train_data['country'])[0]
train_data.head()
Convert the dataframe to tensors.
train_tensors = tf.convert_to_tensor(train_data.values, dtype=tf.float32)
prediction_tensors = tf.convert_to_tensor(prediction_data.values, dtype=tf.float32)
Based on this data, build a basic neural network model by using TensorFlow.
inputs = layers.Input(shape=(7,))
x = layers.Dense(7, activation='relu')(inputs)
x = layers.Dense(14, activation='relu')(x)
outputs = layers.Dense(1)(x)
model = keras.Model(inputs=inputs, outputs=outputs)
Train the model. This step takes about 90 seconds for one epoch.
EPOCHS = 1
model.compile(optimizer='adam', loss='mse')
model.fit(train_tensors, prediction_tensors, epochs=EPOCHS)
Save the model to the MODEL_PATH
variable.
# Create a new directory to save the model.
!mkdir model
# Save the model.
MODEL_PATH = './model/'
tf.saved_model.save(model, MODEL_PATH)
Stage the locally saved model to a Google Cloud Storage bucket. Use this Cloud Storage bucket to deploy the model to Vertex AI. Replace <BUCKET_NAME>
with the name of your Cloud Storage bucket. Replace <BUCKET_DIRECTORY>
with the path to your Cloud Storage bucket.
GCS_BUCKET = '<BUCKET_NAME>'
GCS_BUCKET_DIRECTORY = '<BUCKET_DIRECTORY>'
# Stage to the Cloud Storage bucket.
import glob
from google.cloud import storage
client = storage.Client(project=PROJECT_ID)
bucket = client.bucket(GCS_BUCKET)
def upload_model_to_gcs(model_path, bucket, gcs_model_dir):
for file in glob.glob(model_path + '/**', recursive=True):
if os.path.isfile(file):
path = os.path.join(gcs_model_dir, file[1 + len(model_path.rstrip("/")):])
blob = bucket.blob(path)
blob.upload_from_filename(file)
upload_model_to_gcs(MODEL_PATH, bucket, GCS_BUCKET_DIRECTORY)
Upload the model saved in the Cloud Storage bucket to Vertex AI Model Registry.
model_display_name = 'vertex-ai-enrichment'
aiplatform.init(project=PROJECT_ID, location=LOCATION)
model = aiplatform.Model.upload(
display_name = model_display_name,
description='Model used in the vertex ai enrichment notebook.',
artifact_uri="gs://" + GCS_BUCKET + "/" + GCS_BUCKET_DIRECTORY,
serving_container_image_uri='us-docker.pkg.dev/vertex-ai/prediction/tf2-cpu.2-13:latest',
)
Create an endpoint on Vertex AI.
endpoint = aiplatform.Endpoint.create(display_name = model_display_name,
project = PROJECT_ID,
location = LOCATION)
Deploy the model to the Vertex AI endpoint.
deployed_model_display_name = 'vertexai-enrichment-notebook'
model.deploy(endpoint = endpoint,
deployed_model_display_name = deployed_model_display_name,
machine_type = 'n1-standard-2')
model_endpoint_id = aiplatform.Endpoint.list(filter=f'display_name="{deployed_model_display_name}"')[0].name
print(model_endpoint_id)
8125472293125095424
Set up Vertex AI Feature Store for online serving
Set up the feature data in BigQuery.
feature_store_query = """
SELECT cast(id as string) AS user_id,
age,
lower(gender) as gender,
lower(state) as state,
lower(country) as country,
FROM `bigquery-public-data.thelook_ecommerce.users`
"""
# Fetch feature values from BigQuery.
client = bigquery.Client(project=PROJECT_ID)
data = client.query(feature_store_query).result().to_dataframe()
# Convert feature values to the string type. This step helps when creating tensors
# of these values for inference that requires the same data type.
data['gender'] = pd.factorize(data['gender'])[0]
data['gender'] = data['gender'].astype(str)
data['state'] = pd.factorize(data['state'])[0]
data['state'] = data['state'].astype(str)
data['country'] = pd.factorize(data['country'])[0]
data['country'] = data['country'].astype(str)
data.head()
Create a BigQuery dataset to use as the source for Vertex AI Feature Store.
dataset_id = "vertexai_enrichment"
dataset = bigquery.Dataset(f"{PROJECT_ID}.{dataset_id}")
dataset.location = "US"
dataset = client.create_dataset(
dataset, exists_ok=True, timeout=30
)
print("Created dataset - %s.%s" % (dataset, dataset_id))
Create a BigQuery view with the precomputed feature values.
view_id = "users_view"
view_reference = "%s.%s.%s" % (PROJECT_ID, dataset_id, view_id)
view = bigquery.Table(view_reference)
view = client.load_table_from_dataframe(data, view_reference)
Initialize clients for Vertex AI to create and set up an online store.
API_ENDPOINT = f"{LOCATION}-aiplatform.googleapis.com"
admin_client = FeatureOnlineStoreAdminServiceClient(
client_options={"api_endpoint": API_ENDPOINT}
)
registry_client = FeatureRegistryServiceClient(
client_options={"api_endpoint": API_ENDPOINT}
)
Create an online store instances on Vertex AI.
feature_store_name = "vertexai_enrichment"
online_store_config = feature_online_store_pb2.FeatureOnlineStore(
bigtable=feature_online_store_pb2.FeatureOnlineStore.Bigtable(
auto_scaling=feature_online_store_pb2.FeatureOnlineStore.Bigtable.AutoScaling(
min_node_count=1, max_node_count=1, cpu_utilization_target=80
)
)
)
create_store_lro = admin_client.create_feature_online_store(
feature_online_store_admin_service_pb2.CreateFeatureOnlineStoreRequest(
parent=f"projects/{PROJECT_ID}/locations/{LOCATION}",
feature_online_store_id=feature_store_name,
feature_online_store=online_store_config,
)
)
create_store_lro.result()
For the store instances created previously, use BigQuery as the data source to create feature views.
feature_view_name = "users"
bigquery_source = feature_view_pb2.FeatureView.BigQuerySource(
uri=f"bq://{view_reference}", entity_id_columns=["user_id"]
)
create_view_lro = admin_client.create_feature_view(
feature_online_store_admin_service_pb2.CreateFeatureViewRequest(
parent=f"projects/{PROJECT_ID}/locations/{LOCATION}/featureOnlineStores/{feature_store_name}",
feature_view_id=feature_view_name,
feature_view=feature_view_pb2.FeatureView(
big_query_source=bigquery_source,
),
)
)
create_view_lro.result()
Pull feature values from BigQuery into the feature store.
sync_response = admin_client.sync_feature_view(
feature_view=f"projects/{PROJECT_ID}/locations/{LOCATION}/featureOnlineStores/{feature_store_name}/featureViews/{feature_view_name}"
)
while True:
feature_view_sync = admin_client.get_feature_view_sync(
name=sync_response.feature_view_sync
)
if feature_view_sync.run_time.end_time.seconds > 0:
if feature_view_sync.final_status.code == 0
print("feature view sync completed for %s" % feature_view_sync.name)
else:
print("feature view sync failed for %s" % feature_view_sync.name)
break
time.sleep(10)
Confirm the sync creation.
admin_client.list_feature_view_syncs(
parent=f"projects/{PROJECT_ID}/locations/{LOCATION}/featureOnlineStores/{feature_store_name}/featureViews/{feature_view_name}"
)
Publish messages to Pub/Sub
Use the Pub/Sub Python client to publish messages.
# Replace <TOPIC_NAME> with the name of your Pub/Sub topic.
TOPIC = "<TOPIC_NAME> "
# Replace <SUBSCRIPTION_NAME> with the subscription path for your topic.
SUBSCRIPTION = "<SUBSCRIPTION_NAME>"
Retrieve sample data from a public dataset in BigQuery. Convert it into Python dictionaries, and then send it to Pub/Sub.
read_query = """
SELECT cast(user_id as string) AS user_id,
product_id,
sale_price,
FROM `bigquery-public-data.thelook_ecommerce.order_items`
LIMIT 5;
"""
client = bigquery.Client(project=PROJECT_ID)
data = client.query(read_query).result().to_dataframe()
data.head()
messages = data.to_dict(orient='records')
publisher = pubsub_v1.PublisherClient()
topic_name = publisher.topic_path(PROJECT_ID, TOPIC)
subscription_path = publisher.subscription_path(PROJECT_ID, SUBSCRIPTION)
for message in messages:
data = json.dumps(message).encode('utf-8')
publish_future = publisher.publish(topic_name, data)
Use the Vertex AI Feature Store enrichment handler
The VertexAIFeatureStoreEnrichmentHandler
is a built-in handler in the Apache Beam SDK versions 2.55.0 and later.
Configure the VertexAIFeatureStoreEnrichmentHandler
handler with the following required parameters:
project
: the Google Cloud project ID for the feature storelocation
: the region of the feature store, for exampleus-central1
api_endpoint
: the public endpoint of the feature storefeature_store_name
: the name of the Vertex AI feature storefeature_view_name
: the name of the feature view within the Vertex AI feature storerow_key
: The field name in the input row containing the entity ID for the feature store. This value is used to extract the entity ID from each element. The entity ID is used to fetch feature values for that specific element in the enrichment transform.
Optionally, to provide more configuration values to connect with the Vertex AI client, the VertexAIFeatureStoreEnrichmentHandler
handler accepts a keyword argument (kwargs). For more information, see FeatureOnlineStoreServiceClient
.
The VertexAIFeatureStoreEnrichmentHandler
handler returns the latest feature values from the feature store.
row_key = 'user_id'
vertex_ai_handler = VertexAIFeatureStoreEnrichmentHandler(project=PROJECT_ID,
location=LOCATION,
api_endpoint = API_ENDPOINT,
feature_store_name=feature_store_name,
feature_view_name=feature_view_name,
row_key=row_key)
Use the enrichment transform
To use the enrichment transform, the EnrichmentHandler
parameter is required. You can also use configuration parameters to specify a lambda
for a join function, a timeout, a throttler, and a repeater (retry strategy). For more information, see Parameters.
To use the Redis cache, apply the with_redis_cache
hook to the enrichment transform. The coders for encoding and decoding the input and output for the cache are optional and are internally inferred.
The following example demonstrates the code needed to add this transform to your pipeline.
with beam.Pipeline() as p:
output = (p
...
| "Enrich with Vertex AI" >> Enrichment(vertex_ai_handler)
| "RunInference" >> RunInference(model_handler)
...
)
To make a prediction, use the following fields: product_id
, quantity
, price
, customer_id
, and customer_location
. Retrieve the value of the customer_location
field from Bigtable.
The enrichment transform performs a cross_join
by default.
Use the VertexAIModelHandlerJSON
interface to run inference
Because the enrichment transform outputs data in the format beam.Row
, in order to align it with the VertexAIModelHandlerJSON
interface, convert the output into a list of tensorflow.tensor
. Some enriched fields are of string
type. For tensor creation, all values must be of the same type. Therefore, convert any string
type fields to int
type fields before creating a tensor.
def convert_row_to_tensor(element: beam.Row):
element_dict = element._asdict()
row = list(element_dict.values())
for i, r in enumerate(row):
if isinstance(r, str):
row[i] = int(r)
return tf.convert_to_tensor(row, dtype=tf.float32).numpy().tolist()
Initialize the model handler with the preprocessing function.
model_handler = VertexAIModelHandlerJSON(endpoint_id=model_endpoint_id,
project=PROJECT_ID,
location=LOCATION,
).with_preprocess_fn(convert_row_to_tensor)
Define a DoFn
to format the output.
class PostProcessor(beam.DoFn):
def process(self, element, *args, **kwargs):
print('Customer %d who bought product %d is recommended to buy product %d' % (element.example[0], element.example[1], math.ceil(element.inference[0])))
Run the pipeline
Configure the pipeline to run in streaming mode.
options = pipeline_options.PipelineOptions()
options.view_as(pipeline_options.StandardOptions).streaming = True # Streaming mode is set to True
Pub/Sub sends the data in bytes. Convert the data to beam.Row
objects by using a DoFn
.
class DecodeBytes(beam.DoFn):
"""
The DecodeBytes `DoFn` converts the data read from Pub/Sub to `beam.Row`.
First, decode the encoded string. Convert the output to
a `dict` with `json.loads()`, which is used to create a `beam.Row`.
"""
def process(self, element, *args, **kwargs):
element_dict = json.loads(element.decode('utf-8'))
yield beam.Row(**element_dict)
Use the following code to run the pipeline.
with beam.Pipeline(options=options) as p:
_ = (p
| "Read from Pub/Sub" >> beam.io.ReadFromPubSub(subscription=subscription_path)
| "ConvertToRow" >> beam.ParDo(DecodeBytes())
| "Enrichment" >> Enrichment(vertex_ai_handler)
| "RunInference" >> RunInference(model_handler)
| "Format Output" >> beam.ParDo(PostProcessor())
)
Customer 25005 who bought product 14235 is recommended to buy product 8944 Customer 62544 who bought product 14235 is recommended to buy product 23313 Customer 17228 who bought product 14235 is recommended to buy product 6600 Customer 54015 who bought product 14235 is recommended to buy product 19682 Customer 16569 who bought product 14235 is recommended to buy product 6441
Clean up resources
# Delete feature views.
admin_client.delete_feature_view(
name=f"projects/{PROJECT_ID}/locations/{LOCATION}/featureOnlineStores/{feature_store_name}/featureViews/{feature_view_name}"
)
# Delete online store instance.
admin_client.delete_feature_online_store(
name=f"projects/{PROJECT_ID}/locations/{LOCATION}/featureOnlineStores/{feature_store_name}",
force=True,
)
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