BigQuery for Big data engineers – Master Big Query Internals Download
A Complete & deep knowledge BigQuery guide for Data engineers & Analysts; Hands-On Bigquery via Console, CLI, Python lib
What you’ll learn
- Learn Full In & Out of Google Cloud BigQuery with proper HANDS-ON examples from scratch.
- Get an Overview of Google Cloud Platform and a brief introduction to the set of services it provides.
- Start with Bigquery core concepts like understanding its Architecture, Dataset, Table, View, Materialized View, Schedule queries, Limitations & Quotas.
- ADVANCE Big query topics like Query Execution plan, Efficient schema design, Optimization techniques, Partitioning, Clustering, etc.
- Build Big data pipelines using various Google Cloud Platform services – Dataflow, Pub/Sub, BigQuery, Cloud storage, Beam, Data Studio, Cloud Composer/Airflow.
- Learn to interact with Bigquery using Web Console, Command Line, Python Client Library etc.
- Learn Best practices to follow in Real-Time Projects for Performance and Cost saving for every component of Big query.
- Bigquery Pricing models for Storage, Querying, API requests, DMLs and free operations.
- Data-sets and Queries used in lectures are available in resources tab. This will save your typing efforts.
Requirements
- Basic knowledge of SQL
Description
Note : This Bigquery course is NOT intended to teach SQL or PostgreSQL. The focus of the course is kept to give you In-depth knowledge of Google Bigquery concepts/Internals.
“BigQuery is server-less, highly scalable, and cost-effective Data warehouse designed for Google cloud Platform (GCP) to store and query petabytes of data.”
What’s included in the course ?
-
Brief introduction to the set of services Google Cloud provides.
-
Complete In-depth knowledge of Google BigQuery concepts explained from Scratch to ADVANCE to Real-Time implementation.
-
Each and every BigQuery concept is explained with HANDS-ON examples.
-
Includes each and every, even thin detail of Big Query.
-
Learn to interact with BigQuery using its Web Console, Bq CLI and Python Client Library.
-
Create, Load, Modify and Manage BigQuery Datasets, Tables, Views, Materialized Views etc.
-
*Exclusive* – Query Execution Plan, Efficient schema design, Optimization techniques, Partitioning, Clustering.
-
Build and deploy end-to-end data pipelines (Batch & Stream) of Real-Time case studies in GCP.
-
Services used in the pipelines- Dataflow, Apache Beam, Pub/Sub, Bigquery, Cloud storage, Data Studio, Cloud Composer/Airflow etc.
-
Learn Best practices and Optimization techniques to follow in Real-Time Google Cloud BigQuery Projects.
After completing this course, you can start working on any BigQuery project with full confidence.
Add-Ons
-
Questions and Queries will be answered very quickly.
-
Queries and datasets used in lectures are attached in the course for your convenience.
-
I am going to update it frequently, every time adding new components of Bigquery.
Who this course is for:
- Students who want to learn Deep Internals of BigQuery components
- Data engineers, intending to build end-to-end Data pipelines in GCP (Google Cloud Platform)
- Anyone planning to give Google Cloud Data engineer certification.