GCP200MIGTERADATA

Migrating Teradata Users to BigQuery

In this course you will learn how to translate various concepts in Teradata to the analogous concepts in BigQuery. You will learn how the high-level architectures of Teradata and BigQuery compare, understand differences in how to configure datasets and tables, map data types in Teradata to data types in BigQuery, understand schema mapping from Teradata to BigQuery, optimize your new schemas in BigQuery, and do a high-level comparison of SQL dialects in Teradata and BigQuery

Google Cloud
✓ Official training Google CloudLevel Fundamentals⏱️ 1 day (7h)

What you will learn

  • Compare architecture and provisioning of resources in Teradata and BigQuery
  • Configure datasets and tables in BigQuery
  • Map and compare data types in Teradata to data types in BigQuery
  • Map and optimize schemas from Teradata to BigQuery
  • Translate SQL from Teradata to BigQuery

Prerequisites

  • Experience using Teradata as a data warehouse for managing data and performing SQL analysis. Basic experience with BigQuery is recommended, but not required for this course.

Target audience

  • Customers

Training Program

5 modules to master the fundamentals

Objectives

  • Compare architecture and provisioning of resources in Teradata and BigQuery
  • Describe the concept of a slot in BigQuery

Topics covered

  • →Quick reminder of Teradata architecture
  • →Overview of BigQuery architecture
  • →Separation of compute and storage in BigQuery
  • →BigQuery Slots
  • →Workload management in BigQuery

Objectives

  • Understand the resource hierarchy in BigQuery
  • Configure datasets and tables in BigQuery

Topics covered

  • →Resource Hierarchy in Teradata
  • →Resource Hierarchy in BigQuery
  • →Creating resources in BigQuery
  • →Sharing resources in BigQuery

Activities

Lab: Provisioning and Managing Resources in BigQuery

Objectives

  • How data types map from Teradata to BigQuery
  • Understand data types unique to BigQuery

Topics covered

  • →Mapping for data types from Teradata to BigQuery
  • →Data types unique to BigQuery

Objectives

  • Define schemas in BigQuery
  • Implement partitioning and clustering in BigQuery

Topics covered

  • →Schema definitions in BigQuery
  • →Partitioning in BigQuery
  • →Clustering in BigQuery

Activities

Lab: Schema Migration to BigQuery

Objectives

  • Understand query capabilities in BigQuery SQL
  • Write user-defined functions and procedures in BigQuery SQL

Topics covered

  • →SELECT statements
  • →DML statements
  • →DDL statements
  • →UDFs and Procedures

Activities

Lab: Writing SQL for BigQuery

Quality Process

SFEIR Institute's commitment: an excellence approach to ensure the quality and success of all our training programs. Learn more about our quality approach

Teaching Methods Used
  • Lectures / Theoretical Slides — Presentation of concepts using visual aids (PowerPoint, PDF).
  • Technical Demonstration (Demos) — The instructor performs a task or procedure while students observe.
  • Guided Labs — Guided practical exercises on software, hardware, or technical environments.
  • Quiz / MCQ — Quick knowledge check (paper-based or digital via tools like Kahoot/Klaxoon).
Evaluation and Monitoring System

The achievement of training objectives is evaluated at multiple levels to ensure quality:

  • Continuous Knowledge Assessment : Verification of knowledge throughout the training via participatory methods (quizzes, practical exercises, case studies) under instructor supervision.
  • Progress Measurement : Comparative self-assessment system including an initial diagnostic to determine the starting level, followed by a final evaluation to validate skills development.
  • Quality Evaluation : End-of-session satisfaction questionnaire to measure the relevance and effectiveness of the training as perceived by participants.

Upcoming sessions

March 3, 2026
Distanciel • Français
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July 3, 2026
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November 6, 2026
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700€ excl. VAT

per learner