cancel
Showing results for 
Search instead for 
Did you mean: 
Jaipur
cancel
Showing results for 
Search instead for 
Did you mean: 

Roadmap for becoming a proficient Databricks Data Engineer in 2024

Rishabh-Pandey
Esteemed Contributor

Creating a roadmap for becoming a proficient Databricks Data Engineer in 2024 involves several key steps and milestones. Below is a detailed roadmap that includes the necessary skills, tools, and knowledge areas to focus on:

Q1: Foundation and Basics

  1. Introduction to Databricks:

    • Understand what Databricks is and its place in the data ecosystem.
    • Familiarize yourself with the Databricks interface and workspace.
  2. Basic Data Engineering Concepts:

    • Learn the basics of data engineering.
    • Understand ETL (Extract, Transform, Load) processes.
  3. Programming Skills:

    • Python: Focus on basics to advanced Python.
    • SQL: Master SQL for querying databases.
  4. Introduction to Apache Spark:

    • Learn the basics of Apache Spark.
    • Understand Spark architecture and components.

Q2: Intermediate Skills and Databricks Certification

  1. Databricks Platform:

    • Deep dive into the Databricks platform.
    • Understand Databricks notebooks, clusters, and jobs.
  2. Spark with Databricks:

    • Learn how to run Spark jobs on Databricks.
    • Explore RDDs, DataFrames, and Spark SQL.
  3. Data Ingestion and Storage:

    • Learn to ingest data from various sources (e.g., databases, CSV, JSON).
    • Understand Databricks Delta Lake for data storage.
  4. Databricks Certification:

    • Prepare for and obtain the Databricks Certified Associate Developer for Apache Spark certification.

Q3: Advanced Data Engineering and Specialization

  1. Advanced Spark Techniques:

    • Learn advanced Spark concepts like optimization, partitioning, and tuning.
    • Explore Spark MLlib for machine learning tasks.
  2. Data Engineering on Databricks:

    • Understand advanced data engineering workflows on Databricks.
    • Learn about Databricks Pipelines and scheduling ETL jobs.
  3. Delta Lake:

    • Deep dive into Delta Lake features such as ACID transactions, schema enforcement, and time travel.
    • Implement and optimize Delta Lake in your projects.
  4. Data Governance and Security:

    • Learn about data governance best practices.
    • Understand how to implement data security and compliance using Unity Catalog in Databricks.

Q4: Real-World Projects and Continuous Learning

  1. Real-World Projects:

    • Apply your skills to real-world data engineering projects.
    • Work on end-to-end ETL pipelines, data warehousing solutions, and data streaming applications.
  2. Advanced Databricks Features:

    • Explore Databricks features like Databricks SQL, Photon, and AutoML.
    • Understand how to use Databricks for data science and analytics.
  3. Community and Continuous Learning:

    • Join Databricks community groups and forums.
    • Attend webinars, conferences, and meetups.
    • Keep up with the latest trends and updates in the Databricks ecosystem.
  4. Further Certifications:

    • Aim for advanced certifications like Databricks Certified Professional Data Engineer.
Rishabh Pandey
2 REPLIES 2

Elham
New Contributor II

Thanks for clarifying the path to becoming a Data Engineer.😎

I really appreciate it.

Rishabh_Tiwari
Community Manager
Community Manager

Thank you for sharing this @Rishabh-Pandey I am sure it will help community members.

Thanks,

Rishabh

Connect with Databricks Users in Your Area

Join a Regional User Group to connect with local Databricks users. Events will be happening in your city, and you won’t want to miss the chance to attend and share knowledge.

If there isn’t a group near you, start one and help create a community that brings people together.

Request a New Group