Google Cloud ML Engineer

Empowering ML Engineers with Google Cloud

Start Date

23rd June 2025

Course Duration

360 Hrs

Course Overview

Master the end-to-end lifecycle of AI and Machine Learning solutions using Google Cloud. This program empowers learners with in-demand skills in data processing, model training, deployment, and MLOps, leveraging powerful tools like TensorFlow, Keras, Vertex AI, and BigQuery ML.

Key Features

Skills Covered

Next cohort starts on 23rd June

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Training Options

Associate
Foundation Track

Batch starting from:

23rd June

₹20,000 ₹25,000

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Professional
Career Accelerator Track
(Everything in Associate+)

Batch starting from:

23rd June

₹25,000 ₹30,000

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Course Curriculum

Eligibility

  • Basic programming knowledge (preferably Python)
  • Familiarity with cloud computing concepts is helpful but not mandatory
  • Suitable for graduates, professionals, and tech enthusiasts with an interest in AI/ML

Course Content

  • Recognize the data-to-AI technologies and tools offered by Google Cloud.
  • Use generative AI capabilities in applications.
  • Choose between different options to develop an AI project on Google Cloud.
  • Build ML models end-to-end by using Vertex AI.
  • Design and build a TensorFlow input data pipeline.
  • Use the tf.data library to manipulate data in large datasets.
  • Use the Keras Sequential and Functional APIs for simple and advanced model creation.
  • Train, deploy, and productionalize ML models at scale with Vertex AI.
  • Describe Vertex AI Feature Store and compare the key required aspects of a good feature.
  • Perform feature engineering using BigQuery ML, Keras, and TensorFlow.
  • Discuss how to preprocess and explore features with Dataflow and Dataprep.
  • Use tf.Transform.
  • Describe data management, governance, and preprocessing options
  • Identify when to use Vertex AutoML, BigQuery ML, and custom training
  • Implement Vertex Vizier Hyperparameter Tuning
  • Explain how to create batch and online predictions, setup model monitoring, and create pipelines using Vertex AI
  • Compare static versus dynamic training and inference
  • Manage model dependencies
  • Set up distributed training for fault tolerance, replication, and more
  • Export models for portability
  • Identify and use core technologies required to support effective MLOps.
  • Adopt the best CI/CD practices in the context of ML systems.
  • Configure and provision Google Cloud architectures for reliable and effective MLOps environments.
  • Implement reliable and repeatable training and inference workflows.

Course Certificate

Google Cloud ML Engineer Certificate

Salary Scale

Maximum
35 LPA
Average
18 LPA
Minimum
8 LPA

Job Role

Tools & Technologies

Why Join this Program

Industry-Aligned Curriculum

Designed with input from Google Cloud experts to match real-world job demands.

Mentorship & Doubt Support

1:1 sessions with professionals and dedicated guidance throughout.

Learn by working on real-world problems

Capstone projects involving real world data sets with virtual labs for hands-on learning

Career Support

Resume building, mock interviews, and placement assistance to land your dream ML role.

Google Cloud ML Engineer FAQs

This course is ideal for software developers, data scientists, AI/ML enthusiasts, IT professionals, and organizations seeking to upskill in cloud-based machine learning using Google Cloud tools.
No. While prior experience helps, this course is beginner-friendly and starts with foundational concepts. Basic programming knowledge (especially Python) is recommended.
You’ll work with cutting-edge tools such as Vertex AI, TensorFlow, Keras, BigQuery ML, Dataflow, Dataprep, tf.Transform, and Vertex Feature Store.
Absolutely. This certification equips you to:
  • Offer ML solutions as a freelancer
  • Build scalable AI products
  • Optimize workflows using GCP in startup environments
  • Absolutely. The program includes hands-on labs and real-world projects using Google Cloud tools to simulate industry-relevant AI/ML workflows.
    Yes. The course modules closely follow Google Cloud’s official learning tracks and cover practical applications to help learners transition into certification and real-world implementation.
    Yes. Basic to intermediate knowledge of Python is essential, especially for writing ML models, data pipelines, and using SDKs.
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