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Actual-Time App Efficiency Monitoring with Apache Pinot


Introduction

In in the present day’s fast-paced software program improvement atmosphere, making certain optimum utility efficiency is essential. Monitoring real-time metrics corresponding to response instances, error charges, and useful resource utilization can assist keep excessive availability and ship a seamless person expertise. Apache Pinot, an open-source OLAP datastore, affords the power to deal with real-time knowledge ingestion and low-latency querying, making it an acceptable resolution for monitoring utility efficiency at scale. On this article, we’ll discover learn how to implement a real-time monitoring system utilizing Apache Pinot, with a deal with establishing Kafka for knowledge streaming, defining Pinot schemas and tables, querying efficiency knowledge with Python, and visualizing metrics with instruments like Grafana.

Real-Time Monitoring of Application Performance Metrics with Apache Pinot

Studying Goals

  • Find out how Apache Pinot can be utilized to construct a real-time monitoring system for monitoring utility efficiency metrics in a distributed atmosphere.
  • Learn to write and execute SQL queries in Python to retrieve and analyze real-time efficiency metrics from Apache Pinot.
  • Achieve hands-on expertise in establishing Apache Pinot, defining schemas, and configuring tables to ingest and retailer utility metrics knowledge in real-time from Kafka.
  • Perceive learn how to combine Apache Pinot with visualization instruments like Grafana or Apache Superset.

This text was printed as part of the Information Science Blogathon.

Use Case: Actual-time Software Efficiency Monitoring

Let’s discover a situation the place we ’re managing a distributed utility serving hundreds of thousands of customers throughout a number of areas. To take care of optimum efficiency, we have to monitor varied efficiency metrics:

  • Response Instances– How shortly our utility responds to person requests.
  • Error Charges: The frequency of errors in your utility.
  • CPU and Reminiscence Utilization: The sources your utility is consuming.

Deploy Apache Pinot to create a real-time monitoring system that ingests, shops, and queries efficiency knowledge, enabling fast detection and response to points.

Use Case: Real-time Application Performance Monitoring

System Structure

  • Information Sources:
    • Metrics and logs are collected from totally different utility providers.
    • These logs are streamed to Apache Kafka for real-time ingestion.
  • Information Ingestion:
    • Apache Pinot ingests this knowledge immediately from Kafka matters, offering real-time processing with minimal delay.
    • Pinot shops the information in a columnar format, optimized for quick querying and environment friendly storage.
  • Querying:
    • Pinot acts because the question engine, permitting you to run advanced queries towards real-time knowledge to achieve insights into utility efficiency.
    • Pinot’s distributed structure ensures that queries are executed shortly, at the same time as the quantity of knowledge grows.
  • Visualization:
    • The outcomes from Pinot queries will be visualized in real-time utilizing instruments like Grafana or Apache Superset, providing dynamic dashboards for monitoring KPI’s.
    • Visualization is vital to creating the information actionable, permitting you to observe KPIs, set alerts, and reply to points in real-time.

Setting Up Kafka for Actual-Time Information Streaming

Step one is to arrange Apache Kafka to deal with real-time streaming of our utility’s logs and metrics. Kafka is a distributed streaming platform that enables us to publish and subscribe to streams of information in real-time. Every microservice in our utility can produce log messages or metrics to Kafka matters, which Pinot will later devour

Set up Java

To run Kafka, we shall be putting in Java on our system-

sudo apt set up openjdk-11-jre-headless -y
Setting Up Kafka for Real-Time Data Streaming

Confirm the Java Model

java –model
Setting Up Kafka for Real-Time Data Streaming: Apache Pinot

Downloading Kafka

wget https://downloads.apache.org/kafka/3.4.0/kafka_2.13-3.4.0.tgz
sudo mkdir /usr/native/kafka-server
sudo tar xzf kafka_2.13-3.4.0.tgz

Additionally we have to transfer the extracted recordsdata to the folder given below-

sudo mv kafka_2.13-3.4.0/* /usr/native/kafka-server
Setting Up Kafka for Real-Time Data Streaming

Reset the Configuration Information by the Command

sudo systemctl daemon-reload

Beginning Kafka

Assuming Kafka and Zookeeper are already put in, Kafka will be began utilizing beneath instructions:

# Begin Zookeeper
zookeeper-server-start.sh config/zookeeper.properties

# Begin Kafka server
kafka-server-start.sh config/server.properties
Starting Kafka: Apache Pinot

Creating Kafka Matters

Subsequent, creation of a Kafka matter for our utility metrics. Matters are the channels via which knowledge flows in Kafka. Right here, we’ve created a subject named app-metrics with 3 partitions and a replication issue of 1. The variety of partitions distributes the information throughout Kafka brokers, whereas the replication issue controls the extent of redundancy by figuring out what number of copies of the information exist.

kafka-topics.sh --create --topic app-metrics --bootstrap-server localhost:9092 --partitions 3 --replication-factor 1

Publishing Information to Kafka

Our utility can publish metrics to the Kafka matter in real-time. This script simulates sending utility metrics to the Kafka matter each second. The metrics embody particulars corresponding to service identify, endpoint, standing code, response time, CPU utilization, reminiscence utilization, and timestamp.

from confluent_kafka import Producer
import json
import time

# Kafka producer configuration
conf = {'bootstrap.servers': "localhost:9092"}
producer = Producer(**conf)

# Operate to ship a message to Kafka
def send_metrics():
    metrics = {
        "service_name": "auth-service",
        "endpoint": "/login",
        "status_code": 200,
        "response_time_ms": 123.45,
        "cpu_usage": 55.2,
        "memory_usage": 1024.7,
        "timestamp": int(time.time() * 1000)
    }
    producer.produce('app-metrics', worth=json.dumps(metrics))
    producer.flush()

# Simulate sending metrics each 2 seconds
whereas True:
    send_metrics()
    time.sleep(2)

Defining Pinot Schema and Desk Configuration

With Kafka arrange and streaming knowledge, the following step is to configure Apache Pinot to ingest and retailer this knowledge. This entails defining a schema and making a desk in Pinot.

Schema Definition

The schema defines the construction of the information that Pinot will ingest. It specifies the size (attributes) and metrics (measurable portions) that shall be saved, in addition to the information sorts for every subject. Create a JSON file named “app_performance_ms_schema.json” with the next content material:

{
  "schemaName": "app_performance_ms",
  "dimensionFieldSpecs": [
    {"name": "service", "dataType": "STRING"},
    {"name": "endpoint", "dataType": "STRING"},
    {"name": "s_code", "dataType": "INT"}
  ],
  "metricFieldSpecs": [
    {"name": "response_time", "dataType": "DOUBLE"},
    {"name": "cpu_usage", "dataType": "DOUBLE"},
    {"name": "memory_usage", "dataType": "DOUBLE"}
  ],
  "dateTimeFieldSpecs": [
    {
      "name": "timestamp",
      "dataType": "LONG",
      "format": "1:MILLISECONDS:EPOCH",
      "granularity": "1:MILLISECONDS"
    }
  ]
}

Desk Configuration

The desk configuration file tells Pinot learn how to handle the information, together with particulars on knowledge ingestion from Kafka, indexing methods, and retention insurance policies.

Create one other JSON file named “app_performance_metrics_table.json” with the next content material:

{
  "tableName": "appPerformanceMetrics",
  "tableType": "REALTIME",
  "segmentsConfig": {
    "timeColumnName": "timestamp",
    "schemaName": "appMetrics",
    "replication": "1"
  },
  "tableIndexConfig": {
    "loadMode": "MMAP",
    "streamConfigs": {
      "streamType": "kafka",
      "stream.kafka.matter.identify": "app_performance_metrics",
      "stream.kafka.dealer.checklist": "localhost:9092",
      "stream.kafka.client.sort": "lowlevel"
    }
  }
}

This configuration specifies that the desk will ingest knowledge from the app_performance_metrics Kafka matter in real-time. It makes use of the timestamp column as the first time column and configures indexing to assist environment friendly queries.

Deploying the Schema and Desk Configuration

As soon as the schema and desk configuration are prepared, we are able to deploy them to Pinot utilizing the next instructions:

bin/pinot-admin.sh AddSchema -schemaFile app_performance_ms_schema.json -exec
bin/pinot-admin.sh AddTable -tableConfigFile app_performance_metrics_table.json -schemaFile app_performance_ms_schema.json -exec

After deployment, Apache Pinot will begin ingesting knowledge from the Kafka matter app-metrics and making it obtainable for querying.

Querying Information to Monitor KPIs

As Pinot ingests knowledge, now you can begin querying it to observe key efficiency indicators (KPIs). Pinot helps SQL-like queries, permitting us to retrieve and analyze knowledge shortly. Right here’s a Python script that queries the typical response time and error charge for every service over the previous 5 minutes:

import requests
import json

# Pinot dealer URL
pinot_broker_url = "http://localhost:8099/question/sql"

# SQL question to get common response time and error charge
question = """
SELECT service_name, 
       AVG(response_time_ms) AS avg_response_time,
       SUM(CASE WHEN status_code >= 400 THEN 1 ELSE 0 END) / COUNT(*) AS error_rate
FROM appPerformanceMetrics 
WHERE timestamp >= in the past('PT5M') 
GROUP BY service_name
"""

# Execute the question
response = requests.submit(pinot_broker_url, knowledge=question, headers={"Content material-Sort": "utility/json"})

if response.status_code == 200:
    outcome = response.json()
    print(json.dumps(outcome, indent=4))
else:
    print("Question failed with standing code:", response.status_code)
Querying Data to Monitor KPIs: Apache Pinot

This script sends a SQL question to Pinot to calculate the typical response time and error charge for every service within the final 5 minutes. These metrics are essential for understanding the real-time efficiency of our utility.

Understanding the Question Outcomes

  • Common Response Time: Offers perception into how shortly every service is responding to requests. Larger values would possibly point out efficiency bottlenecks.
  • Error Fee: Exhibits the proportion of requests that resulted in errors (standing codes >= 400). A excessive error charge may sign issues with the service.

Visualizing the Information: Integrating Pinot with Grafana

Grafana is a well-liked open-source visualization instrument that helps integration with Apache Pinot. By connecting Grafana to Pinot, we are able to create real-time dashboards that show metrics like response instances, error charges, and useful resource utilization. Instance dashboard can embody the next information-

  • Response Instances frequency: A line chart with space exhibiting the typical response time for every service over the previous 24 hours.
  • Error Charges: A stacked bar chart highlighting providers with excessive error charges, serving to you determine problematic areas shortly.
  • Classes Utilization: An space chart displaying CPU and reminiscence utilization developments throughout totally different providers.

This visualization setup offers a complete view of our utility’s well being and efficiency, enabling us to observe KPIs repeatedly and take proactive measures when points come up.

Visualizing the Data: Integrating Pinot with Grafana: Apache Pinot

Superior Concerns

As our real-time monitoring system with Apache Pinot expands, there are a number of superior points to handle for sustaining its effectiveness:

  • Information Retention and Archiving:
    • Problem: As your utility generates growing quantities of knowledge, managing storage effectively turns into essential to keep away from inflated prices and efficiency slowdowns.
    • Answer: Implementing knowledge retention insurance policies helps handle knowledge quantity by archiving or deleting older information which are not wanted for rapid evaluation. Apache Pinot automates these processes via its phase administration and knowledge retention mechanisms.
  • Scaling Pinot:
    • Problem: The rising quantity of knowledge and question requests can pressure a single Pinot occasion or cluster setup.
    • Answer: Apache Pinot helps horizontal scaling, enabling you to develop your cluster by including extra nodes. This ensures that the system can deal with elevated knowledge ingestion and question masses successfully, sustaining efficiency as your utility grows.
  • Alerting :
    • Problem: Detecting and responding to efficiency points with out automated alerts will be difficult, probably delaying drawback decision.
    • Answer: Combine alerting methods to obtain notifications when metrics exceed predefined thresholds. You need to use instruments like Grafana or Prometheus to arrange alerts, making certain you’re promptly knowledgeable of any anomalies or points in your utility’s efficiency.
  • Efficiency Optimization:
    • Problem: With a rising dataset and complicated queries, sustaining environment friendly question efficiency can develop into difficult.
    • Answer: Constantly optimize your schema design, indexing methods, and question patterns. Make the most of Apache Pinot’s instruments to observe and tackle efficiency bottlenecks. Make use of partitioning and sharding methods to higher distribute knowledge and queries throughout the cluster.

Conclusion

Efficient real-time monitoring is important for making certain the efficiency and reliability of recent functions. Apache Pinot affords a robust resolution for real-time knowledge processing and querying, making it well-suited for complete monitoring methods. By implementing the methods mentioned and contemplating superior matters like scaling and safety, you possibly can construct a sturdy and scalable monitoring system that helps you keep forward of potential efficiency points, making certain a clean expertise on your customers.

Key Takeaways

  • Apache Pinot is adept at dealing with real-time knowledge ingestion and offers low-latency question efficiency, making it a robust instrument for monitoring utility efficiency metrics. It integrates properly with streaming platforms like Kafka, enabling rapid evaluation of metrics corresponding to response instances, error charges, and useful resource utilization.
  • Kafka streams utility logs and metrics, which Apache Pinot then ingests. Configuring Kafka matters and linking them with Pinot permits for steady processing and querying of efficiency knowledge, making certain up-to-date insights.
  • Correctly defining schemas and configuring tables in Apache Pinot is essential for environment friendly knowledge administration. The schema outlines the information construction and kinds, whereas the desk configuration controls knowledge ingestion and indexing, supporting efficient real-time evaluation.
  • Apache Pinot helps SQL-like queries for in-depth knowledge evaluation. When used with visualization instruments corresponding to Grafana or Apache Superset, it allows the creation of dynamic dashboards that present real-time visibility into utility efficiency, aiding within the swift detection and backbone of points.

Incessantly Requested Questions

Q1. What makes Apache Pinot appropriate for real-time utility efficiency monitoring?

A. Apache Pinot is optimized for low-latency querying, making it ultimate for situations the place real-time insights are essential. Its capability to ingest knowledge from streaming sources like Kafka and deal with large-scale, high-throughput knowledge units permits it to offer up-to-the-minute analytics on utility efficiency metrics.

Q2. How does Apache Pinot deal with real-time knowledge ingestion from Kafka?

A. Apache Pinot is designed to ingest real-time knowledge by immediately consuming messages from Kafka matters. It helps each low-level and high-level Kafka shoppers, permitting Pinot to course of and retailer knowledge with minimal delay, making it obtainable for rapid querying.

Q3. What are the important thing parts wanted to arrange a real-time monitoring system utilizing Apache Pinot?

A. To arrange a real-time monitoring system with Apache Pinot, you want:
Information Sources: Software logs and metrics streamed to Kafka.
Apache Pinot: For real-time knowledge ingestion and querying.
Schema and Desk Configuration: Definitions in Pinot for storing and indexing the metrics knowledge.
Visualization Instruments: Instruments like Grafana or Apache Superset for creating real-time dashboards

Q4. Can I take advantage of different knowledge streaming platforms moreover Kafka with Apache Pinot?

A. Sure, Apache Pinot helps integration with different knowledge streaming platforms like Apache Pulsar and AWS Kinesis. Whereas this text focuses on Kafka, the identical rules apply when utilizing totally different streaming platforms, although configuration particulars will fluctuate.

The media proven on this article shouldn’t be owned by Analytics Vidhya and is used on the Creator’s discretion.

Whats up World : Myself Kartik Sharma, working as senior knowledge engineer and enterprise analyst for Zensar Applied sciences Ltd. I’m new to running a blog and simply attempting it out for enjoyable. “A techno geek who by accident fell in love with phrases.”

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