HOME > Development > Datadog Monitoring A Full Basic to ADVANCE Datadog guide

Datadog Monitoring A Full Basic to ADVANCE Datadog guide

  • Development
  • Apr 30, 2025
SynopsisDatadog Monitoring – A Full Basic to ADVANCE Datadog gu...
Datadog Monitoring A Full Basic to ADVANCE guide  No.1

Datadog Monitoring – A Full Basic to ADVANCE Datadog guide, available at $99.99, has an average rating of 4.58, with 135 lectures, 8 quizzes, based on 845 reviews, and has 6055 subscribers.

You will learn about Learn In & Out of Datadog monitoring tool with proper HANDS-ON examples from Basic to Advance level. Datadog Agent setup & configuration in Windows Host and Docker containers. Datadog core concepts like Datadog Architecture, Pricing, Datadog Agent manager, Understanding installation root directory etc. Infrastructure Monitoring for Hosts, Processes, Containers, Events, Serverless function (AWS lambda). Understand the Tagging concept in Datadog and its benefits. Implement Tagging in Container and Non-container environments. Create Custom Metrics using Custom Agent check and a Python application (DogStatsD). Tailored Datadog Dashboards to get overview of Hosts health using Timeseries, Query Value, Table, Group, Summaries, Stream widgets and Template variables. Build Datadog Notebooks using Timeseries, Text, Table cells. Configure Datadog Monitors & Alerts using Tag, Template, Conditional variables and Notification, Re-notification messages. EXCLUSIVE – Datadog Log Management including Log collection, LOG PIPELINE, Log Explorers & Views in Datadog. Application Performance Monitoring (APM) and Continuous Profiling for a Python Flask web application. EXCLUSIVE – Instrument Flask application for Traces, TRACE PIPELINE for Ingestion Control (Sampling), Datadog APM Views & Explorers. Datadog Account Management for Administrators – Grant Roles & Permissions, API keys, SAML Group mappings, Audit Trail, Sensitive Data Scanner. This course is ideal for individuals who are Monitoring engineers who want to add Datadog monitoring tool in their skillset. or DevOps Engineers or Application Developers It is particularly useful for Monitoring engineers who want to add Datadog monitoring tool in their skillset. or DevOps Engineers or Application Developers.

Enroll now: Datadog Monitoring – A Full Basic to ADVANCE Datadog guide

Summary

Title: Datadog Monitoring – A Full Basic to ADVANCE Datadog guide

Price: $99.99

Average Rating: 4.58

Number of Lectures: 135

Number of Quizzes: 8

Number of Published Lectures: 135

Number of Published Quizzes: 8

Number of Curriculum Items: 143

Number of Published Curriculum Objects: 143

Original Price: $99.99

Quality Status: approved

Status: Live

What You Will Learn

  • Learn In & Out of Datadog monitoring tool with proper HANDS-ON examples from Basic to Advance level.
  • Datadog Agent setup & configuration in Windows Host and Docker containers.
  • Datadog core concepts like Datadog Architecture, Pricing, Datadog Agent manager, Understanding installation root directory etc.
  • Infrastructure Monitoring for Hosts, Processes, Containers, Events, Serverless function (AWS lambda).
  • Understand the Tagging concept in Datadog and its benefits. Implement Tagging in Container and Non-container environments.
  • Create Custom Metrics using Custom Agent check and a Python application (DogStatsD).
  • Tailored Datadog Dashboards to get overview of Hosts health using Timeseries, Query Value, Table, Group, Summaries, Stream widgets and Template variables.
  • Build Datadog Notebooks using Timeseries, Text, Table cells.
  • Configure Datadog Monitors & Alerts using Tag, Template, Conditional variables and Notification, Re-notification messages.
  • EXCLUSIVE – Datadog Log Management including Log collection, LOG PIPELINE, Log Explorers & Views in Datadog.
  • Application Performance Monitoring (APM) and Continuous Profiling for a Python Flask web application.
  • EXCLUSIVE – Instrument Flask application for Traces, TRACE PIPELINE for Ingestion Control (Sampling), Datadog APM Views & Explorers.
  • Datadog Account Management for Administrators – Grant Roles & Permissions, API keys, SAML Group mappings, Audit Trail, Sensitive Data Scanner.
  • Who Should Attend

  • Monitoring engineers who want to add Datadog monitoring tool in their skillset.
  • DevOps Engineers
  • Application Developers
  • Target Audiences

  • Monitoring engineers who want to add Datadog monitoring tool in their skillset.
  • DevOps Engineers
  • Application Developers
  • “Datadog is an observability service for cloud-scale applications, providing monitoring of servers, databases, tools, and services, through a SaaS-based data analytics platform.”

    What’s included in the course ?

  • Complete Datadog monitoring tool’s features explained from Scratch to In-depth Advance level.

  • Covers a wide scope of almost all the Datadog features listed in Datadog’s official documentation.

  • Datadog Agent setup & configuration, Metrics, Events, Infrastructure Monitoring, Log Management, Application Performance Monitoring, Continuous Profiling, UI Monitoring, Dashboards, Notebooks, Monitors and many more.

  • Each Datadog monitoring feature and the associated concepts are demonstrated with proper Theory and Real-time Hands-On examples.

  • Interact with Multiple integrationssupported by Datadog monitoring tool.

  • Build and Instrument a Python Flask application for Application Performance Monitoring and Continuous Profiling.

  • Exclusive Datadog Topicslike End-to-End Log Pipeline (LMS), Trace Pipeline (APM), Datadog Containerized Agent, Application Instrumentation etc.

  • This course is useful for Application developers too as there are multiple sections in the course that involves Instrumenting Applications to generate Custom Metrics, Custom Events, Traces etc.

  • For Datadog Administrators, there is a section for Datadog Account Management that involves Granting Roles & Permissions, API keys, SAML Group mappings, Audit Trail, Sensitive Data Scanner etc.

  • Course is packed with many Datadog Tips & Tricks that can be very helpful in your day to day interaction with Datadog monitoring tool in Real projects.

  • After completing this Datadog course, you can start working on any Real-time Datadog monitoring project with full confidence.

    Please go through the above Course content/Curriculum to get more details of it.

    Course Curriculum

    Chapter 1: Introduction

    Lecture 1: Introduction to Monitoring in SDLC

    Lecture 2: What is Datadog monitoring tool

    Lecture 3: Key functionalities of monitoring tools

    Lecture 4: Announcement

    Lecture 5: Monitoring Terminologies

    Lecture 6: Architecture of Datadog

    Chapter 2: Pricing and Setup

    Lecture 1: Datadog Pricing

    Lecture 2: Datadog Setup and account creation

    Chapter 3: Datadog Agent

    Lecture 1: Datadog Agent Manager

    Lecture 2: Datadog Agents Directory Tour

    Lecture 3: Datadog Agent Manager continued

    Chapter 4: Infrastructure Monitoring – Host

    Lecture 1: Host Map

    Lecture 2: Agent, System, Ntp metrics in Host Map

    Chapter 5: Tags in Datadog

    Lecture 1: Introduction to Tagging

    Lecture 2: Unified Service Tagging (Reserved Tags) in Datadog

    Lecture 3: Filtering, Grouping on Tags

    Lecture 4: Assigning Tags from datadog.yaml file

    Lecture 5: Announcement1

    Lecture 6: Host Map Options

    Chapter 6: Infrastructure Monitoring – Processes

    Lecture 1: Process Explorer – Part 1

    Lecture 2: Process Explorer – Part 2

    Lecture 3: Scrubbing Sensitive data

    Lecture 4: Create Custom Process metrics

    Chapter 7: Infrastructure Monitoring – Containers

    Lecture 1: Introduction

    Lecture 2: Docker Setup

    Lecture 3: Containerized Docker Agent Setup

    Lecture 4: Container Map and Live Containers

    Lecture 5: Realistic approach to run Docker agent

    Lecture 6: Environment Variables Translation rules

    Lecture 7: Run Docker Agent from Docker Compose file

    Chapter 8: Metrics and Metric Views in Datadog

    Lecture 1: What are Metrics ?

    Lecture 2: Why Datadog Agent aggregates metrics

    Lecture 3: Count, Rate, Gauge, Set Metric types

    Lecture 4: Histogram Metric type

    Lecture 5: Distribution Metric type

    Lecture 6: Datadogs Summary View for Metrics

    Lecture 7: Metric Explorer

    Chapter 9: Custom Metrics – Agent Check

    Lecture 1: Custom Metrics Fundamentals

    Lecture 2: Custom Metrics submission types

    Lecture 3: Create Custom Check for COUNT metric type

    Lecture 4: Custom Agent check running

    Lecture 5: Metric Without Limits

    Lecture 6: Create Custom Check for GAUGE metric type

    Lecture 7: Create Custom Check for RATE metric type

    Lecture 8: Create Custom Check for HISTOGRAM metric type

    Chapter 10: Custom Metrics – DogStatsD & Python app

    Lecture 1: Python application code to instrument

    Lecture 2: increment() & decrement() functions for COUNT metric type

    Lecture 3: Instrument Python app for COUNT metric type

    Lecture 4: Instrument Python app for GAUGE metric type

    Lecture 5: Instrument Python app for HISTOGRAM & DISTRIBUTION

    Chapter 11: Events

    Lecture 1: Introduction to Events

    Lecture 2: Event Log Check to capture Windows Events

    Lecture 3: Create Custom events

    Lecture 4: Event Explorer

    Chapter 12: Notebooks

    Lecture 1: Create notebook – Add Timeseries Cell

    Lecture 2: Add Text, Table cells in notebook

    Lecture 3: Notebook Settings

    Lecture 4: Notebook Templates

    Chapter 13: Dashboards

    Lecture 1: Introduction to Dashboards

    Lecture 2: Timeseries widget

    Lecture 3: Find Correlations in metrics

    Lecture 4: Query values, Table, Top list widgets

    Lecture 5: Groups, Annotations, Summaries, List, Stream widgets

    Lecture 6: Template Variables

    Lecture 7: Dashboard Settings

    Chapter 14: Monitors & Alerts

    Lecture 1: Create Host Monitor

    Lecture 2: Tag, Template, Conditional Variables

    Lecture 3: Draft Notification messages

    Lecture 4: Draft Renotification message

    Lecture 5: EVAL function

    Lecture 6: Trigger Monitor & Test notifications

    Lecture 7: Manage Monitors View

    Lecture 8: Downtime

    Chapter 15: Logs Collection

    Lecture 1: Introduction to Datadogs Log Management

    Lecture 2: Configurations required to collect logs from Python App

    Lecture 3: Python application to generate logs

    Lecture 4: Containerized Log collection

    Chapter 16: Logs Preprocessing – Datadog Log Pipelines

    Lecture 1: Introduction to Log pipelines

    Instructors

  • Datadog Monitoring A Full Basic to ADVANCE guide  No.2
    Cstech Training
    Online Instructor
  • Rating Distribution

  • 1 stars: 23 votes
  • 2 stars: 11 votes
  • 3 stars: 73 votes
  • 4 stars: 316 votes
  • 5 stars: 426 votes
  • Frequently Asked Questions

    How long do I have access to the course materials?

    You can view and review the lecture materials indefinitely, like an on-demand channel.

    Can I take my courses with me wherever I go?

    Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!