Master Databricks Certified Data Engineer Associate Training
Published 10/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.55 GB | Duration: 1h 55m
Databricks for Data Engineers: ETL, Delta Lake, and Apache Spark, Build Pipelines and Workflows for Success. UNOFFICIAL
What you'll learn
Fundamentals of Databricks and its role in data engineering.
How to work with the Databricks Lakehouse platform, combining data lakes and data warehouses.
Best practices for data ingestion and ETL processes.
Delta Lake features for ensuring data reliability and performance.
How to handle various data formats like Parquet, CSV, and JSON.
Metadata and catalog management using Hive Metastore and Databricks Catalog.
The basics of Apache Spark and its use for data transformations.
Working with DataFrames and Spark SQL for querying and manipulating data.
Techniques to optimize data transformations and performance.
How to automate workflows and pipelines using Databricks Jobs and Workflows.
Implementing data governance, access control, and monitoring pipelines.
Performance tuning techniques such as caching, data skipping, and cluster optimization.
Streaming data processing using Structured Streaming in Databricks.
Ensuring data quality through validations and expectations.
and much more
Requirements
Willingness or Interest to learn about Databricks Certified Data Engineer Associate for Success.
Description
IMPORTANT before enrolling:This course is designed to complement your preparation for certification exams, but it is not a substitute for official vendor materials. It is not endorsed by the certification vendor, and you will not receive the official certification study material or a voucher as part of this course.Unlock the full potential of data engineering with Databricks, the cutting-edge platform designed for handling large-scale data pipelines, ETL processes, and advanced analytics. This comprehensive course is perfect for data engineers, analysts, and anyone looking to enhance their skills in building efficient, scalable data workflows using the Databricks Lakehouse platform. Whether you're new to Databricks or looking to deepen your understanding, this course will guide you through the core concepts and advanced techniques required to excel in data engineering.We begin by introducing Databricks and its key components, explaining how it streamlines data engineering tasks. You'll learn about the innovative Databricks Lakehouse architecture, which merges the benefits of data lakes and data warehouses, offering a unified approach to data management and analytics.As we dive deeper into working with data, you'll explore data ingestion and ETL (Extract, Transform, Load) processes, mastering best practices for preparing and processing data. You'll gain hands-on experience with Delta Lake, the powerful storage layer that enhances data reliability and performance within Databricks. We'll cover various data formats and sources, ensuring you're well-versed in handling formats like Parquet, CSV, and JSON, as well as managing metadata with Hive Metastore and Databricks Catalog.A key part of the course focuses on Apache Spark, the engine behind Databricks. You'll discover how Spark simplifies data processing, enabling fast and scalable transformations. You'll work with DataFrames for data manipulation, explore Spark SQL for querying and transforming data, and learn optimization techniques that ensure efficient data processing, such as predicate pushdown and vectorized I/O.Moving on to pipeline management, the course covers essential concepts like data engineering workflows, and you'll learn how to automate these workflows using Databricks Jobs. We'll introduce Databricks' workflow orchestration tools, teaching you how to set task dependencies and triggers to ensure seamless pipeline execution.Data management and governance are vital in any data engineering project. This course will teach you the fundamentals of data governance, including implementing role-based access control (RBAC) to manage permissions. You'll also learn how to monitor and audit your data pipelines for performance, maintain data versioning, and track lineage using Delta Lake, ensuring data integrity throughout the lifecycle.Performance optimization is another crucial area we'll explore. You'll learn how to configure clusters for different workloads, use caching and data skipping to enhance query performance, and troubleshoot common performance issues. Advanced Delta Lake optimization techniques, such as OPTIMIZE and ZORDER, will help you further enhance the performance of your data operations.Finally, we'll delve into advanced topics like streaming data processing with Structured Streaming in Databricks, handling late-arriving data, and ensuring data quality through validations and expectations. This ensures you're well-prepared for real-time data challenges in today's fast-paced data environments.By the end of this course, you'll be equipped with the skills to build, optimize, and manage scalable data pipelines, master Databricks and Apache Spark, and implement best practices in data governance, performance tuning, and streaming. Whether you're preparing for a career in data engineering or seeking to improve your expertise, this course will set you on the path to success.Thank you
Overview
Section 1: Introduction to Databricks and Data Engineering
Lecture 1 What is Databricks?
Lecture 2 Introduction to the Databricks Lakehouse Platform
Section 2: Working with Data on Databricks
Lecture 3 Data Ingestion and ETL Concepts
Lecture 4 Understanding Delta Lake
Lecture 5 Data Sources and Formats in Databricks
Lecture 6 Managing Metadata and Catalogs
Section 3: Transforming Data with Apache Spark
Lecture 7 Introduction to Apache Spark for Data Engineering
Lecture 8 Working with DataFrames
Lecture 9 Optimizing Data Transformations
Lecture 10 Understanding Spark SQL
Section 4: Managing Pipelines and Workflows
Lecture 11 Introduction to Data Engineering Workflows
Lecture 12 Using Databricks Jobs for Pipeline Automation
Lecture 13 Orchestrating Workflows with Databricks Workflows
Lecture 14 Introduction to Task Dependencies and Triggers
Section 5: Data Management and Governance
Lecture 15 Data Governance Fundamentals
Lecture 16 Implementing Access Controls
Lecture 17 Monitoring and Auditing Data Pipelines
Lecture 18 Data Versioning and Lineage with Delta Lake
Section 6: Performance Optimization and Troubleshooting
Lecture 19 Optimizing Cluster Configuration
Lecture 20 Understanding Caching and Data Skipping
Lecture 21 Troubleshooting Common Performance Issues
Lecture 22 Delta Lake Optimization Techniques
Section 7: Advanced Concepts in Data Engineering
Lecture 23 Introduction to Streaming Data with Structured Streaming
Lecture 24 Handling Late Data and Watermarking
Lecture 25 Ensuring Data Quality with Expectations and Validations
Data Engineers looking to enhance their skills in building scalable, efficient data pipelines using Databricks.,Data Analysts who want to expand their knowledge of data engineering and processing large-scale datasets.,Developers working with big data platforms who need to understand the tools and workflows within Databricks.,Business Intelligence Professionals seeking to leverage Databricks for more advanced analytics and ETL processes.,Anyone interested in Databricks who wants to learn how to manage data pipelines, optimize performance, and implement data governance.,Whether you're new to Databricks or looking to deepen your expertise, this course will provide you with the tools and techniques to excel in data engineering.
Code:
Bitte
Anmelden
oder
Registrieren
um Code Inhalt zu sehen!
Code:
Bitte
Anmelden
oder
Registrieren
um Code Inhalt zu sehen!
Code:
Bitte
Anmelden
oder
Registrieren
um Code Inhalt zu sehen!
Code:
Bitte
Anmelden
oder
Registrieren
um Code Inhalt zu sehen!