Pembelajaran mesin yang kuat pada streaming data menggunakan Kafka dan Tensorflow-IO

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Ringkasan

Tutorial ini berfokus pada streaming data dari Kafka klaster menjadi tf.data.Dataset yang kemudian digunakan bersama dengan tf.keras untuk pelatihan dan inferensi.

Kafka pada dasarnya adalah platform streaming peristiwa terdistribusi yang menyediakan data streaming yang skalabel dan toleran terhadap kesalahan di seluruh jalur pipa data. Ini adalah komponen teknis penting dari kebanyakan perusahaan besar di mana pengiriman data mission-critical adalah persyaratan utama.

Mempersiapkan

Instal paket tensorflow-io dan kafka yang diperlukan

pip install tensorflow-io
pip install kafka-python

paket impor

import os
from datetime import datetime
import time
import threading
import json
from kafka import KafkaProducer
from kafka.errors import KafkaError
from sklearn.model_selection import train_test_split
import pandas as pd
import tensorflow as tf
import tensorflow_io as tfio

Validasi impor tf dan tfio

print("tensorflow-io version: {}".format(tfio.__version__))
print("tensorflow version: {}".format(tf.__version__))
tensorflow-io version: 0.23.1
tensorflow version: 2.8.0-rc0

Unduh dan atur instance Kafka dan Zookeeper

Untuk tujuan demo, instance berikut disiapkan secara lokal:

  • Kafka (Broker: 127.0.0.1:9092)
  • Penjaga kebun binatang (Node: 127.0.0.1:2181)
curl -sSOL https://downloads.apache.org/kafka/2.7.2/kafka_2.13-2.7.2.tgz
tar -xzf kafka_2.13-2.7.2.tgz

Menggunakan konfigurasi default (disediakan oleh Apache Kafka) untuk menjalankan instance.

./kafka_2.13-2.7.2/bin/zookeeper-server-start.sh -daemon ./kafka_2.13-2.7.2/config/zookeeper.properties
./kafka_2.13-2.7.2/bin/kafka-server-start.sh -daemon ./kafka_2.13-2.7.2/config/server.properties
echo "Waiting for 10 secs until kafka and zookeeper services are up and running"
sleep 10
Waiting for 10 secs until kafka and zookeeper services are up and running

Setelah contoh yang dimulai sebagai proses daemon, grep untuk kafka dalam daftar proses. Dua proses Java sesuai dengan instance zookeeper dan kafka.

ps -ef | grep kafka
kbuilder 27856 20044  4 20:28 ?        00:00:00 python /tmpfs/src/gfile/executor.py --input_notebook=/tmpfs/src/temp/docs/tutorials/kafka.ipynb --timeout=15000
kbuilder 28271     1 16 20:28 ?        00:00:01 java -Xmx512M -Xms512M -server -XX:+UseG1GC -XX:MaxGCPauseMillis=20 -XX:InitiatingHeapOccupancyPercent=35 -XX:+ExplicitGCInvokesConcurrent -XX:MaxInlineLevel=15 -Djava.awt.headless=true -Xlog:gc*:file=/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../logs/zookeeper-gc.log:time,tags:filecount=10,filesize=100M -Dcom.sun.management.jmxremote -Dcom.sun.management.jmxremote.authenticate=false -Dcom.sun.management.jmxremote.ssl=false -Dkafka.logs.dir=/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../logs -Dlog4j.configuration=file:./kafka_2.13-2.7.2/bin/../config/log4j.properties -cp /tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/activation-1.1.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/aopalliance-repackaged-2.6.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/argparse4j-0.7.0.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/audience-annotations-0.5.0.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/commons-cli-1.4.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/commons-lang3-3.8.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/connect-api-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/connect-basic-auth-extension-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/connect-file-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/connect-json-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/connect-mirror-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/connect-mirror-client-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/connect-runtime-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/connect-transforms-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/hk2-api-2.6.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/hk2-locator-2.6.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/hk2-utils-2.6.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jackson-annotations-2.10.5.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jackson-core-2.10.5.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jackson-databind-2.10.5.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jackson-dataformat-csv-2.10.5.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jackson-datatype-jdk8-2.10.5.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jackson-jaxrs-base-2.10.5.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jackson-jaxrs-json-provider-2.10.5.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jackson-module-jaxb-annotations-2.10.5.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jackson-module-paranamer-2.10.5.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jackson-module-scala_2.13-2.10.5.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jakarta.activation-api-1.2.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jakarta.annotation-api-1.3.5.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jakarta.inject-2.6.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jakarta.validation-api-2.0.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jakarta.ws.rs-api-2.1.6.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jakarta.xml.bind-api-2.3.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/javassist-3.25.0-GA.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/javassist-3.26.0-GA.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/javax.servlet-api-3.1.0.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/javax.ws.rs-api-2.1.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jaxb-api-2.3.0.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jersey-client-2.34.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jersey-common-2.34.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jersey-container-servlet-2.34.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jersey-container-servlet-core-2.34.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jersey-hk2-2.34.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jersey-server-2.34.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jetty-client-9.4.43.v20210629.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jetty-continuation-9.4.43.v20210629.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jetty-http-9.4.43.v20210629.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jetty-io-9.4.43.v20210629.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jetty-security-9.4.43.v20210629.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jetty-server-9.4.43.v20210629.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jetty-servlet-9.4.43.v20210629.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jetty-servlets-9.4.43.v20210629.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jetty-util-9.4.43.v20210629.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jetty-util-ajax-9.4.43.v20210629.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jopt-simple-5.0.4.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/kafka-clients-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/kafka-log4j-appender-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/kafka-raft-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/kafka-streams-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/kafka-streams-examples-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/kafka-streams-scala_2.13-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/kafka-streams-test-utils-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/kafka-tools-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/kafka_2.13-2.7.2-sources.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/kafka_2.13-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/log4j-1.2.17.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/lz4-java-1.7.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/maven-artifact-3.8.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/metrics-core-2.2.0.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/netty-buffer-4.1.59.Final.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/netty-codec-4.1.59.Final.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/netty-common-4.1.59.Final.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/netty-handler-4.1.59.Final.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/netty-resolver-4.1.59.Final.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/netty-transport-4.1.59.Final.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/netty-transport-native-epoll-4.1.59.Final.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/netty-transport-native-unix-common-4.1.59.Final.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/osgi-resource-locator-1.0.3.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/paranamer-2.8.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/plexus-utils-3.2.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/reflections-0.9.12.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/rocksdbjni-5.18.4.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/scala-collection-compat_2.13-2.2.0.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/scala-java8-compat_2.13-0.9.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/scala-library-2.13.3.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/scala-logging_2.13-3.9.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/scala-reflect-2.13.3.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/slf4j-api-1.7.30.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/slf4j-log4j12-1.7.30.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/snappy-java-1.1.7.7.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/zookeeper-3.5.9.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/zookeeper-jute-3.5.9.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/zstd-jni-1.4.5-6.jar org.apache.zookeeper.server.quorum.QuorumPeerMain ./kafka_2.13-2.7.2/config/zookeeper.properties
kbuilder 28635     1 57 20:28 ?        00:00:05 java -Xmx1G -Xms1G -server -XX:+UseG1GC -XX:MaxGCPauseMillis=20 -XX:InitiatingHeapOccupancyPercent=35 -XX:+ExplicitGCInvokesConcurrent -XX:MaxInlineLevel=15 -Djava.awt.headless=true -Xlog:gc*:file=/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../logs/kafkaServer-gc.log:time,tags:filecount=10,filesize=100M -Dcom.sun.management.jmxremote -Dcom.sun.management.jmxremote.authenticate=false -Dcom.sun.management.jmxremote.ssl=false -Dkafka.logs.dir=/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../logs -Dlog4j.configuration=file:./kafka_2.13-2.7.2/bin/../config/log4j.properties -cp /tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/activation-1.1.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/aopalliance-repackaged-2.6.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/argparse4j-0.7.0.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/audience-annotations-0.5.0.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/commons-cli-1.4.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/commons-lang3-3.8.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/connect-api-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/connect-basic-auth-extension-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/connect-file-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/connect-json-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/connect-mirror-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/connect-mirror-client-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/connect-runtime-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/connect-transforms-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/hk2-api-2.6.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/hk2-locator-2.6.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/hk2-utils-2.6.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jackson-annotations-2.10.5.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jackson-core-2.10.5.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jackson-databind-2.10.5.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jackson-dataformat-csv-2.10.5.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jackson-datatype-jdk8-2.10.5.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jackson-jaxrs-base-2.10.5.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jackson-jaxrs-json-provider-2.10.5.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jackson-module-jaxb-annotations-2.10.5.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jackson-module-paranamer-2.10.5.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jackson-module-scala_2.13-2.10.5.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jakarta.activation-api-1.2.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jakarta.annotation-api-1.3.5.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jakarta.inject-2.6.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jakarta.validation-api-2.0.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jakarta.ws.rs-api-2.1.6.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jakarta.xml.bind-api-2.3.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/javassist-3.25.0-GA.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/javassist-3.26.0-GA.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/javax.servlet-api-3.1.0.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/javax.ws.rs-api-2.1.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jaxb-api-2.3.0.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jersey-client-2.34.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jersey-common-2.34.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jersey-container-servlet-2.34.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jersey-container-servlet-core-2.34.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jersey-hk2-2.34.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jersey-server-2.34.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jetty-client-9.4.43.v20210629.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jetty-continuation-9.4.43.v20210629.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jetty-http-9.4.43.v20210629.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jetty-io-9.4.43.v20210629.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jetty-security-9.4.43.v20210629.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jetty-server-9.4.43.v20210629.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jetty-servlet-9.4.43.v20210629.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jetty-servlets-9.4.43.v20210629.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jetty-util-9.4.43.v20210629.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jetty-util-ajax-9.4.43.v20210629.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/jopt-simple-5.0.4.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/kafka-clients-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/kafka-log4j-appender-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/kafka-raft-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/kafka-streams-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/kafka-streams-examples-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/kafka-streams-scala_2.13-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/kafka-streams-test-utils-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/kafka-tools-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/kafka_2.13-2.7.2-sources.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/kafka_2.13-2.7.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/log4j-1.2.17.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/lz4-java-1.7.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/maven-artifact-3.8.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/metrics-core-2.2.0.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/netty-buffer-4.1.59.Final.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/netty-codec-4.1.59.Final.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/netty-common-4.1.59.Final.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/netty-handler-4.1.59.Final.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/netty-resolver-4.1.59.Final.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/netty-transport-4.1.59.Final.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/netty-transport-native-epoll-4.1.59.Final.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/netty-transport-native-unix-common-4.1.59.Final.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/osgi-resource-locator-1.0.3.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/paranamer-2.8.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/plexus-utils-3.2.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/reflections-0.9.12.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/rocksdbjni-5.18.4.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/scala-collection-compat_2.13-2.2.0.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/scala-java8-compat_2.13-0.9.1.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/scala-library-2.13.3.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/scala-logging_2.13-3.9.2.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/scala-reflect-2.13.3.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/slf4j-api-1.7.30.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/slf4j-log4j12-1.7.30.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/snappy-java-1.1.7.7.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/zookeeper-3.5.9.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/zookeeper-jute-3.5.9.jar:/tmpfs/src/temp/docs/tutorials/kafka_2.13-2.7.2/bin/../libs/zstd-jni-1.4.5-6.jar kafka.Kafka ./kafka_2.13-2.7.2/config/server.properties
kbuilder 28821 27860  0 20:28 pts/0    00:00:00 /bin/bash -c ps -ef | grep kafka
kbuilder 28823 28821  0 20:28 pts/0    00:00:00 grep kafka

Buat topik kafka dengan spesifikasi berikut:

  • susy-train: partisi=1, faktor-replikasi=1
  • susy-test: partisi=2, faktor-replikasi=1
./kafka_2.13-2.7.2/bin/kafka-topics.sh --create --bootstrap-server 127.0.0.1:9092 --replication-factor 1 --partitions 1 --topic susy-train
./kafka_2.13-2.7.2/bin/kafka-topics.sh --create --bootstrap-server 127.0.0.1:9092 --replication-factor 1 --partitions 2 --topic susy-test
Created topic susy-train.
Created topic susy-test.

Jelaskan topik untuk detail tentang konfigurasi

./kafka_2.13-2.7.2/bin/kafka-topics.sh --describe --bootstrap-server 127.0.0.1:9092 --topic susy-train
./kafka_2.13-2.7.2/bin/kafka-topics.sh --describe --bootstrap-server 127.0.0.1:9092 --topic susy-test
Topic: susy-train PartitionCount: 1 ReplicationFactor: 1  Configs: segment.bytes=1073741824
    Topic: susy-train Partition: 0  Leader: 0 Replicas: 0   Isr: 0
Topic: susy-test  PartitionCount: 2 ReplicationFactor: 1  Configs: segment.bytes=1073741824
    Topic: susy-test  Partition: 0  Leader: 0 Replicas: 0   Isr: 0
    Topic: susy-test  Partition: 1  Leader: 0 Replicas: 0   Isr: 0

Faktor replikasi 1 menunjukkan bahwa data tidak direplikasi. Ini karena adanya satu broker dalam pengaturan kafka kami. Dalam sistem produksi, jumlah server bootstrap dapat berada dalam kisaran 100-an node. Di situlah toleransi kesalahan menggunakan replikasi muncul.

Silakan merujuk ke dokumentasi untuk rincian lebih lanjut.

Kumpulan Data SUSY

Kafka menjadi platform streaming acara, memungkinkan data dari berbagai sumber ditulis ke dalamnya. Misalnya:

  • Log lalu lintas web
  • Pengukuran astronomi
  • data sensor IoT
  • Review produk dan banyak lagi.

Untuk tujuan tutorial ini, memungkinkan download SUSY dataset dan memberi makan data ke kafka manual. Tujuan dari masalah klasifikasi ini adalah untuk membedakan antara proses sinyal yang menghasilkan partikel supersimetris dan proses latar belakang yang tidak.

curl -sSOL https://archive.ics.uci.edu/ml/machine-learning-databases/00279/SUSY.csv.gz

Jelajahi kumpulan data

Kolom pertama adalah label kelas (1 untuk sinyal, 0 untuk latar belakang), diikuti oleh 18 fitur (8 fitur tingkat rendah kemudian 10 fitur tingkat tinggi). 8 fitur pertama adalah sifat kinematik yang diukur oleh detektor partikel di akselerator. 10 fitur terakhir merupakan fungsi dari 8 fitur pertama. Ini adalah fitur tingkat tinggi yang diturunkan oleh fisikawan untuk membantu membedakan antara dua kelas.

COLUMNS = [
          #  labels
           'class',
          #  low-level features
           'lepton_1_pT',
           'lepton_1_eta',
           'lepton_1_phi',
           'lepton_2_pT',
           'lepton_2_eta',
           'lepton_2_phi',
           'missing_energy_magnitude',
           'missing_energy_phi',
          #  high-level derived features
           'MET_rel',
           'axial_MET',
           'M_R',
           'M_TR_2',
           'R',
           'MT2',
           'S_R',
           'M_Delta_R',
           'dPhi_r_b',
           'cos(theta_r1)'
           ]

Seluruh dataset terdiri dari 5 juta baris. Namun, untuk tujuan tutorial ini, mari pertimbangkan hanya sebagian kecil dari kumpulan data (100.000 baris) sehingga lebih sedikit waktu yang dihabiskan untuk memindahkan data dan lebih banyak waktu untuk memahami fungsionalitas api.

susy_iterator = pd.read_csv('SUSY.csv.gz', header=None, names=COLUMNS, chunksize=100000)
susy_df = next(susy_iterator)
susy_df.head()
# Number of datapoints and columns
len(susy_df), len(susy_df.columns)
(100000, 19)
# Number of datapoints belonging to each class (0: background noise, 1: signal)
len(susy_df[susy_df["class"]==0]), len(susy_df[susy_df["class"]==1])
(54025, 45975)

Pisahkan kumpulan data

train_df, test_df = train_test_split(susy_df, test_size=0.4, shuffle=True)
print("Number of training samples: ",len(train_df))
print("Number of testing sample: ",len(test_df))

x_train_df = train_df.drop(["class"], axis=1)
y_train_df = train_df["class"]

x_test_df = test_df.drop(["class"], axis=1)
y_test_df = test_df["class"]

# The labels are set as the kafka message keys so as to store data
# in multiple-partitions. Thus, enabling efficient data retrieval
# using the consumer groups.
x_train = list(filter(None, x_train_df.to_csv(index=False).split("\n")[1:]))
y_train = list(filter(None, y_train_df.to_csv(index=False).split("\n")[1:]))

x_test = list(filter(None, x_test_df.to_csv(index=False).split("\n")[1:]))
y_test = list(filter(None, y_test_df.to_csv(index=False).split("\n")[1:]))
Number of training samples:  60000
Number of testing sample:  40000
NUM_COLUMNS = len(x_train_df.columns)
len(x_train), len(y_train), len(x_test), len(y_test)
(60000, 60000, 40000, 40000)

Simpan data kereta dan pengujian di kafka

Menyimpan data dalam kafka mensimulasikan lingkungan untuk pengambilan data jarak jauh berkelanjutan untuk tujuan pelatihan dan inferensi.

def error_callback(exc):
    raise Exception('Error while sendig data to kafka: {0}'.format(str(exc)))

def write_to_kafka(topic_name, items):
  count=0
  producer = KafkaProducer(bootstrap_servers=['127.0.0.1:9092'])
  for message, key in items:
    producer.send(topic_name, key=key.encode('utf-8'), value=message.encode('utf-8')).add_errback(error_callback)
    count+=1
  producer.flush()
  print("Wrote {0} messages into topic: {1}".format(count, topic_name))

write_to_kafka("susy-train", zip(x_train, y_train))
write_to_kafka("susy-test", zip(x_test, y_test))
Wrote 60000 messages into topic: susy-train
Wrote 40000 messages into topic: susy-test

Tentukan dataset kereta tfio

The IODataset kelas digunakan untuk streaming data dari kafka ke tensorflow. Mewarisi kelas dari tf.data.Dataset dan dengan demikian memiliki semua fungsi yang berguna tf.data.Dataset keluar dari kotak.

def decode_kafka_item(item):
  message = tf.io.decode_csv(item.message, [[0.0] for i in range(NUM_COLUMNS)])
  key = tf.strings.to_number(item.key)
  return (message, key)

BATCH_SIZE=64
SHUFFLE_BUFFER_SIZE=64
train_ds = tfio.IODataset.from_kafka('susy-train', partition=0, offset=0)
train_ds = train_ds.shuffle(buffer_size=SHUFFLE_BUFFER_SIZE)
train_ds = train_ds.map(decode_kafka_item)
train_ds = train_ds.batch(BATCH_SIZE)
2022-01-07 20:29:21.602817: E tensorflow/stream_executor/cuda/cuda_driver.cc:271] failed call to cuInit: CUDA_ERROR_NO_DEVICE: no CUDA-capable device is detected

Bangun dan latih modelnya

# Set the parameters

OPTIMIZER="adam"
LOSS=tf.keras.losses.BinaryCrossentropy(from_logits=True)
METRICS=['accuracy']
EPOCHS=10
# design/build the model
model = tf.keras.Sequential([
  tf.keras.layers.Input(shape=(NUM_COLUMNS,)),
  tf.keras.layers.Dense(128, activation='relu'),
  tf.keras.layers.Dropout(0.2),
  tf.keras.layers.Dense(256, activation='relu'),
  tf.keras.layers.Dropout(0.4),
  tf.keras.layers.Dense(128, activation='relu'),
  tf.keras.layers.Dropout(0.4),
  tf.keras.layers.Dense(1, activation='sigmoid')
])

print(model.summary())
Model: "sequential"
_________________________________________________________________
 Layer (type)                Output Shape              Param #   
=================================================================
 dense (Dense)               (None, 128)               2432      
                                                                 
 dropout (Dropout)           (None, 128)               0         
                                                                 
 dense_1 (Dense)             (None, 256)               33024     
                                                                 
 dropout_1 (Dropout)         (None, 256)               0         
                                                                 
 dense_2 (Dense)             (None, 128)               32896     
                                                                 
 dropout_2 (Dropout)         (None, 128)               0         
                                                                 
 dense_3 (Dense)             (None, 1)                 129       
                                                                 
=================================================================
Total params: 68,481
Trainable params: 68,481
Non-trainable params: 0
_________________________________________________________________
None
# compile the model
model.compile(optimizer=OPTIMIZER, loss=LOSS, metrics=METRICS)
# fit the model
model.fit(train_ds, epochs=EPOCHS)
Epoch 1/10
/tmpfs/src/tf_docs_env/lib/python3.7/site-packages/tensorflow/python/util/dispatch.py:1082: UserWarning: "`binary_crossentropy` received `from_logits=True`, but the `output` argument was produced by a sigmoid or softmax activation and thus does not represent logits. Was this intended?"
  return dispatch_target(*args, **kwargs)
938/938 [==============================] - 31s 33ms/step - loss: 0.4817 - accuracy: 0.7691
Epoch 2/10
938/938 [==============================] - 30s 32ms/step - loss: 0.4550 - accuracy: 0.7875
Epoch 3/10
938/938 [==============================] - 31s 32ms/step - loss: 0.4512 - accuracy: 0.7911
Epoch 4/10
938/938 [==============================] - 31s 32ms/step - loss: 0.4487 - accuracy: 0.7940
Epoch 5/10
938/938 [==============================] - 31s 32ms/step - loss: 0.4466 - accuracy: 0.7934
Epoch 6/10
938/938 [==============================] - 31s 32ms/step - loss: 0.4459 - accuracy: 0.7933
Epoch 7/10
938/938 [==============================] - 31s 32ms/step - loss: 0.4448 - accuracy: 0.7935
Epoch 8/10
938/938 [==============================] - 31s 32ms/step - loss: 0.4439 - accuracy: 0.7950
Epoch 9/10
938/938 [==============================] - 31s 32ms/step - loss: 0.4421 - accuracy: 0.7956
Epoch 10/10
938/938 [==============================] - 31s 32ms/step - loss: 0.4425 - accuracy: 0.7962
<keras.callbacks.History at 0x7fb364fd2a90>

Karena hanya sebagian kecil dari kumpulan data yang digunakan, akurasi kami dibatasi hingga ~78% selama fase pelatihan. Namun, jangan ragu untuk menyimpan data tambahan dalam kafka untuk performa model yang lebih baik. Juga, karena tujuannya hanya untuk mendemonstrasikan fungsionalitas set data tfio kafka, jaringan saraf yang lebih kecil dan tidak terlalu rumit digunakan. Namun, seseorang dapat meningkatkan kompleksitas model, memodifikasi strategi pembelajaran, menyesuaikan parameter hiper, dll untuk tujuan eksplorasi. Untuk pendekatan awal, silakan lihat ini artikel .

Menyimpulkan data uji

Untuk menyimpulkan pada data uji dengan mengikuti semantik 'tepat-sekali' bersama dengan kesalahan-toleransi, streaming.KafkaGroupIODataset dapat dimanfaatkan.

Tentukan kumpulan data uji tfio

The stream_timeout blok parameter untuk durasi yang diberikan untuk titik data baru yang akan mengalir ke topik. Ini menghilangkan kebutuhan untuk membuat kumpulan data baru jika data dialirkan ke topik secara terputus-putus.

test_ds = tfio.experimental.streaming.KafkaGroupIODataset(
    topics=["susy-test"],
    group_id="testcg",
    servers="127.0.0.1:9092",
    stream_timeout=10000,
    configuration=[
        "session.timeout.ms=7000",
        "max.poll.interval.ms=8000",
        "auto.offset.reset=earliest"
    ],
)

def decode_kafka_test_item(raw_message, raw_key):
  message = tf.io.decode_csv(raw_message, [[0.0] for i in range(NUM_COLUMNS)])
  key = tf.strings.to_number(raw_key)
  return (message, key)

test_ds = test_ds.map(decode_kafka_test_item)
test_ds = test_ds.batch(BATCH_SIZE)
WARNING:tensorflow:From /tmpfs/src/tf_docs_env/lib/python3.7/site-packages/tensorflow_io/python/experimental/kafka_group_io_dataset_ops.py:188: take_while (from tensorflow.python.data.experimental.ops.take_while_ops) is deprecated and will be removed in a future version.
Instructions for updating:
Use `tf.data.Dataset.take_while(...)

Meskipun kelas ini dapat digunakan untuk tujuan pelatihan, ada beberapa peringatan yang perlu diperhatikan. Setelah semua pesan dibaca dari kafka dan offset terbaru berkomitmen menggunakan streaming.KafkaGroupIODataset , konsumen tidak restart membaca pesan dari awal. Jadi, saat pelatihan, hanya mungkin untuk melatih untuk satu zaman dengan data yang terus mengalir masuk. Fungsionalitas semacam ini memiliki kasus penggunaan yang terbatas selama fase pelatihan di mana, setelah titik data dikonsumsi oleh model, ia tidak lagi diperlukan dan dapat dibuang.

Namun, fungsi ini menonjol dalam hal inferensi yang kuat dengan semantik tepat satu kali.

mengevaluasi kinerja pada data uji

res = model.evaluate(test_ds)
print("test loss, test acc:", res)
34/Unknown - 0s 2ms/step - loss: 0.4434 - accuracy: 0.8194
2022-01-07 20:34:29.402707: E tensorflow_io/core/kernels/kafka_kernels.cc:774] REBALANCE: Local: Assign partitions
2022-01-07 20:34:29.406789: E tensorflow_io/core/kernels/kafka_kernels.cc:776] Retrieved committed offsets with status code: 0
625/625 [==============================] - 11s 17ms/step - loss: 0.4437 - accuracy: 0.7915
test loss, test acc: [0.4436523914337158, 0.7915250062942505]
2022-01-07 20:34:40.051954: E tensorflow_io/core/kernels/kafka_kernels.cc:1001] Local: Timed out

Karena inferensi didasarkan pada semantik 'tepat sekali', evaluasi pada set pengujian hanya dapat dijalankan sekali. Untuk menjalankan inferensi lagi pada data uji, kelompok konsumen baru harus digunakan.

Melacak lag offset dari testcg kelompok konsumen

./kafka_2.13-2.7.2/bin/kafka-consumer-groups.sh --bootstrap-server 127.0.0.1:9092 --describe --group testcg
GROUP           TOPIC           PARTITION  CURRENT-OFFSET  LOG-END-OFFSET  LAG             CONSUMER-ID                                  HOST            CLIENT-ID
testcg          susy-test       0          21626           21626           0               rdkafka-534f63d0-b91e-4976-a3ca-832b6c91210e /10.142.0.103   rdkafka
testcg          susy-test       1          18374           18374           0               rdkafka-534f63d0-b91e-4976-a3ca-832b6c91210e /10.142.0.103   rdkafka

Setelah current-offset pertandingan yang log-end-offset untuk semua partisi, ini menunjukkan bahwa konsumen (s) telah menyelesaikan mengambil semua pesan dari topik kafka.

Pembelajaran online

Paradigma pembelajaran mesin online sedikit berbeda dari cara tradisional/konvensional dalam melatih model pembelajaran mesin. Dalam kasus sebelumnya, model terus mempelajari/memperbarui parameternya secara bertahap segera setelah titik data baru tersedia dan proses ini diharapkan berlanjut tanpa batas. Ini tidak seperti pendekatan yang terakhir di mana dataset adalah tetap dan model iterates di atasnya n beberapa kali. Dalam pembelajaran online, data yang pernah digunakan oleh model mungkin tidak tersedia untuk pelatihan lagi.

Dengan memanfaatkan streaming.KafkaBatchIODataset , sekarang mungkin untuk melatih model dalam mode ini. Mari lanjutkan menggunakan dataset SUSY kami untuk mendemonstrasikan fungsi ini.

Dataset pelatihan tfio untuk pembelajaran online

The streaming.KafkaBatchIODataset mirip dengan streaming.KafkaGroupIODataset di API itu. Selain itu, dianjurkan untuk memanfaatkan stream_timeout parameter untuk mengkonfigurasi durasi yang dataset akan memblokir pesan baru sebelum waktu keluar. Dalam contoh di bawah ini, dataset dikonfigurasi dengan stream_timeout dari 10000 milidetik. Ini menyiratkan bahwa, setelah semua pesan dari topik telah dikonsumsi, kumpulan data akan menunggu tambahan 10 detik sebelum waktu habis dan memutuskan sambungan dari klaster kafka. Jika pesan baru dialirkan ke topik sebelum waktu habis, konsumsi data dan pelatihan model dilanjutkan untuk titik data yang baru dikonsumsi tersebut. Untuk memblokir tanpa batas, set ke -1 .

online_train_ds = tfio.experimental.streaming.KafkaBatchIODataset(
    topics=["susy-train"],
    group_id="cgonline",
    servers="127.0.0.1:9092",
    stream_timeout=10000, # in milliseconds, to block indefinitely, set it to -1.
    configuration=[
        "session.timeout.ms=7000",
        "max.poll.interval.ms=8000",
        "auto.offset.reset=earliest"
    ],
)

Setiap item bahwa online_train_ds menghasilkan adalah tf.data.Dataset sendiri. Dengan demikian, semua transformasi standar dapat diterapkan seperti biasa.

def decode_kafka_online_item(raw_message, raw_key):
  message = tf.io.decode_csv(raw_message, [[0.0] for i in range(NUM_COLUMNS)])
  key = tf.strings.to_number(raw_key)
  return (message, key)

for mini_ds in online_train_ds:
  mini_ds = mini_ds.shuffle(buffer_size=32)
  mini_ds = mini_ds.map(decode_kafka_online_item)
  mini_ds = mini_ds.batch(32)
  if len(mini_ds) > 0:
    model.fit(mini_ds, epochs=3)
2022-01-07 20:34:42.024915: E tensorflow_io/core/kernels/kafka_kernels.cc:774] REBALANCE: Local: Assign partitions
2022-01-07 20:34:42.025797: E tensorflow_io/core/kernels/kafka_kernels.cc:776] Retrieved committed offsets with status code: 0
Epoch 1/3
313/313 [==============================] - 1s 2ms/step - loss: 0.4561 - accuracy: 0.7909
Epoch 2/3
313/313 [==============================] - 1s 2ms/step - loss: 0.4538 - accuracy: 0.7909
Epoch 3/3
313/313 [==============================] - 1s 2ms/step - loss: 0.4499 - accuracy: 0.7947
Epoch 1/3
313/313 [==============================] - 1s 2ms/step - loss: 0.4347 - accuracy: 0.8018
Epoch 2/3
313/313 [==============================] - 1s 2ms/step - loss: 0.4314 - accuracy: 0.8048
Epoch 3/3
313/313 [==============================] - 1s 2ms/step - loss: 0.4286 - accuracy: 0.8063
Epoch 1/3
313/313 [==============================] - 1s 2ms/step - loss: 0.4480 - accuracy: 0.7910
Epoch 2/3
313/313 [==============================] - 1s 2ms/step - loss: 0.4425 - accuracy: 0.7945
Epoch 3/3
313/313 [==============================] - 1s 2ms/step - loss: 0.4390 - accuracy: 0.7970
Epoch 1/3
313/313 [==============================] - 1s 2ms/step - loss: 0.4434 - accuracy: 0.7965
Epoch 2/3
313/313 [==============================] - 1s 2ms/step - loss: 0.4380 - accuracy: 0.7974
Epoch 3/3
313/313 [==============================] - 1s 2ms/step - loss: 0.4354 - accuracy: 0.7992
Epoch 1/3
313/313 [==============================] - 1s 2ms/step - loss: 0.4522 - accuracy: 0.7909
Epoch 2/3
313/313 [==============================] - 1s 2ms/step - loss: 0.4475 - accuracy: 0.7910
Epoch 3/3
313/313 [==============================] - 1s 2ms/step - loss: 0.4435 - accuracy: 0.7947
Epoch 1/3
313/313 [==============================] - 1s 2ms/step - loss: 0.4464 - accuracy: 0.7906
Epoch 2/3
313/313 [==============================] - 1s 2ms/step - loss: 0.4467 - accuracy: 0.7922
Epoch 3/3
313/313 [==============================] - 1s 2ms/step - loss: 0.4424 - accuracy: 0.7933
2022-01-07 20:35:04.916208: E tensorflow_io/core/kernels/kafka_kernels.cc:1001] Local: Timed out

Model yang dilatih secara bertahap dapat disimpan secara berkala (berdasarkan kasus penggunaan) dan dapat digunakan untuk menyimpulkan data uji dalam mode online atau offline.

Referensi:

  • Baldi, P., P. Sadowski, dan D. Whiteson. “Mencari Partikel Eksotis dalam Fisika Energi Tinggi dengan Pembelajaran Mendalam.” Nature Communications 5 (2 Juli 2014)

  • SUSY Dataset: https://archive.ics.uci.edu/ml/datasets/SUSY#