Pour les demandes entreprises : (+33) 970 466 303

Pour les demandes particuliers : (+33) 180 272 016

A propos de la formation Google Cloud Big Data and Machine Learning Fundamentals

This training introduces Google Cloud's big data and machine learning products and services that support the data-to-AI lifecycle. It delves into the processes, challenges, and benefits of building a Big Data and Machine Learning pipeline with Vertex AI on Google Cloud.

Détails
Objectifs pédagogiques de la formation Google Cloud Big Data and Machine Learning Fundamentals
  • Identify the data-to-AI lifecycle on Google Cloud and key products in big data and machine learning
  • Design streaming pipelines using Dataflow and Pub/Sub
  • Analyze large-scale big data with BigQuery
  • Recognize various options for creating machine learning solutions on Google Cloud
  • Describe a machine learning workflow and its key stages using Vertex AI.

Qui devrait suivre cette formation Google Cloud Big Data and Machine Learning Fundamentals ?

Public visé par la formation Google Cloud Big Data and Machine Learning Fundamentals

Data analysts, data scientists, and business analysts new to Google Cloud. Those involved in designing data processing pipelines, creating and maintaining machine learning models, querying datasets, visualizing query results, and generating reports. IT executives and decision-makers considering Google Cloud for data science.

Prérequis de la formation Google Cloud Big Data and Machine Learning Fundamentals

Basic knowledge in: SQL or basic database query language. Data engineering workflow, including extraction, transformation, loading, analysis, modeling, and deployment. Machine learning models, distinguishing between supervised and unsupervised models.

Formations Similaires

Déroulé de la formation Google Cloud Big Data and Machine Learning Fundamentals


Module 1: Big Data and Machine Learning on Google Cloud

Explore key components of Google Cloud infrastructure.

Introduction to various big data and machine learning products and services.

Objectives: Identify different aspects of Google Cloud infrastructure, recognize big data and machine learning products.


Module 2: Data Engineering for Streaming Data

Introduction to Google Cloud's solution for managing streaming data.

End-to-end data workflow overview.

Objectives: Describe an end-to-end data streaming workflow, identify challenges in modern data pipelines, create real-time collaborative dashboards.


Module 3: Big Data with BigQuery

Introduction to BigQuery, Google's serverless data warehouse.

Exploration of BigQuery ML.

Objectives: Describe basics of BigQuery, explain its processing and data storage, define BigQuery ML project phases, create custom machine learning models.


Module 4: Machine Learning Options on Google Cloud

Explore four different options for creating machine learning models.

Introduction to Vertex AI.

Objectives: Identify various options for creating ML models, define Vertex AI, describe AI solutions in horizontal and vertical markets.


Module 5: Machine Learning Workflow with Vertex AI

Focus on three key phases of the ML workflow in Vertex AI.

Hands-on practice creating a machine learning model with AutoML.

Objectives: Describe ML workflow stages, identify tools supporting each stage, create an end-to-end ML workflow using AutoML.


Module 6: Course Synthesis

Review of course topics.

Provide additional resources for further learning.

Objectives: Describe the data-to-AI lifecycle on Google Cloud, identify key big data and machine learning products.

Formations Similaires
Qlikview Détails
Qlik Sense Détails
SAP HANA Détails
SAP BI(BO) Détails
Suite Microsoft (SSIS-SSAS-SSRS) Détails
Data Science Détails
Python Détails
Talend Détails
Microsoft BI (MCSE) Détails
Microsoft Power BI Détails
sap bi / bw Détails
Informatica PowerCenter Détails
Big Data & machine learning Détails
Machine Learning Supervisé et Non Supervisé Détails
Machine Learning pratique Détails
Business Data Analyst Détails
Finance Data Analyst (Power BI, Python pour Finance) Détails
Data Analysts – Analyse et Interprétation de Données Détails
Power BI Data Analyst Associate (PL-300) Détails
IIBA ECBA Détails
Apache Spark 3.5 & Databricks Détails

Vous pouvez faire l’inscription ou la demande du devis avec un seul click