Course Information

  • Sessions 4 days
  • Duration 30 hrs
  • Level Intermediate
  • Assessment NA

Venue

Kuala Lumpur: G-3A-02, Suite Pejabat Korporat, KL Gateway, No 2, Jalan kerinchi, Gerbang kernichi Lestari, 59200 Kuala Lumpur, Malaysia
Penang: Jalan Sungai Dua, 11700 Penang, Malaysia.

Download Course Brochure

Certification

  • Certificate of Completion from Tertiary Courses - Upon meeting at least 75% attendance and passing the assessment(s), participants will receive a Certificate of Completion from Tertiary Courses.

Google Cloud Certified Professional Machine Learning Engineer Training

Course Code: C997
  • HRDF

What's This Course About

Dive into the profound capabilities of Machine Learning on the Google Cloud Platform with Tertiary Courses. Our in-depth curriculum sheds light on the myriad of hosting options available, be it Serverless, container-based, or via virtual machines, ensuring that you're equipped to make informed decisions tailored to your specific needs. Grasp the essence of enabling GCP's ML AIs and hone your skills in preparing data through Cloud Dataflow and Dataprep, pivotal for any robust ML pipeline.

As we advance, delve into the intriguing world of modeling predictions for diverse media including images, video, text-to-speech, and cloud translation. Our hands-on approach ensures you're adept at employing AutoML for streamlined ML tasks. We further delve into intricate machine learning and deep learning modules, wrapping up with a comprehensive understanding of modern ML architectures. This course is an indispensable asset for those enthusiastic about harnessing the full potential of machine learning on GCP.

Register for Google Cloud Certification

Once you are prepared for the exam, you can register for the certification here. We are  Kryterion Authorized Testing Center. You can take the certification exam at our test center. Note that the course fee does not include the certification exam fee. 

WSQ Funding

Full Fee 3,600.00 Before GST
GST 324.00 9% of fee
Baseline Nett 2,124.00 SG/PR age 21+ · 50% funded
MCES / SME Nett 1,404.00 SG age 40+ · 70% funded
Funding and Grant Applications

No funding is available for this course

Course Fee

MYR3,600.00

Additional Note

Please bring your own laptop for hands-on training. If you don't have laptop, we can provide spare laptop for training use.

Disclaimer: The course dates displayed on our website are tentative and subject to trainer availability. We will confirm the final date after checking with the trainer. You are also welcome to email us your preferred date at sales@tertiarycourses.com.my, and we will do our best to coordinate with the trainer's schedule.

Post-Course Support

  • We may provide consultation related to the subject matter after the course.
  • Please email your queries to sales@tertiarycourses.com.my and we will forward your queries to the subject matter experts and get back to you as soon as possible.

Cancellation & Reschedule Policy

  • We reserve the right to cancel or re-schedule the course due to unforeseen circumstances. If the course is cancelled, we will refund 100% to participants.
  • Note: the venue of the training is subject to changes due to class size and availability of the classroom. The minimum class size to start a class is 3 Pax.

Course Details

Course Details

What You'll Learn

Topic 1 Google Cloud Big Data and Machine Learning Fundamentals

  • Data-to-AI lifecycle on Google Cloud and the major products of big data and machine learning.
  • Design streaming pipelines with Dataflow and Pub/Sub and dDesign streaming pipelines with Dataflow and Pub/Sub.
  • Options to build machine learning solutions on Google Cloud.
  • Machine learning workflow and the key steps with Vertex AI and build a machine learning pipeline using AutoML.

Topic 2 How Google does Machine Learning

  • Vertex AI Platform and how it's used to quickly build, train, and deploy AutoML machine learning models without writing any code
  • Best practices for implementing machine learning on Google Cloud
  • Leverage Google Cloud tools and environment to do ML
  • Responsible AI best practices

Topic 3 Launching into Machine Learning

  • Improve data quality and perform exploratory data analysis
  • Build and train AutoML Models using Vertex AI and BigQuery ML
  • Optimize and evaluate models using loss functions and performance metrics
  • Create repeatable and scalable training, evaluation, and test datasets

Topic 4 TensorFlow on Google Cloud

  • Create TensorFlow and Keras machine learning models and describe their key components.
  • Use the tf.data library to manipulate data and 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.

Topic 5 Feature Engineering

  • 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.

Topic 6 Machine Learning in the Enterprise

  • 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

Topic 7 Production Machine Learning Systems

  • Compare static versus dynamic training and inference
  • Manage model dependencies
  • Set up distributed training for fault tolerance, replication, and more
  • Export models for portability

Topic 8 Machine Learning Operations (MLOps)

  • 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.
  • ML Pipelines on Google Cloud

Final Assessment

  • Written Assessment (SAQ)
  • Practical Performance (PP)

Course Info

Promotion Code

Your will get 10% discount voucher for 2nd course onwards if you write us a Google review.

Minimum Entry Requirement

Knowledge and Skills

  • Able to operate using computer functions
  • Minimum 3 GCE ‘O’ Levels Passes including English or WPL Level 5 (Average of Reading, Listening, Speaking & Writing Scores)

Attitude

  • Positive Learning Attitude
  • Enthusiastic Learner

Experience

  • Minimum of 1 year of working experience.

Target Age Group: 18-65 years old

Minimum Software/Hardware Requirement

Software:

TBD

Hardware: Window or Mac Laptops

Job Roles

Job Roles

  • Data Scientist
  • Machine Learning Engineer
  • AI Engineer
  • Data Analyst
  • Software Engineer
  • Cloud Solutions Architect
  • Research Scientist
  • Application Developer
  • Big Data Engineer
  • Business Intelligence Developer
  • Robotics Engineer
  • Quantitative Analyst
  • Systems Analyst
  • Product Manager
  • Technical Program Manager

Trainers

Trainers

Saeid is co-founder of Skymics Sdn Bhd. He has 8 years of experience in the field of IoT (Internet of Things) and Information Technology. He is a certified IBM IoT Practitioner and instructor, and a Certified Citizen Data Scientist Train-The-Trainer. He has been co-inventor of 3 inventions during the last 4 years.

Review

Write Your Own Review

You're reviewing: Google Cloud Certified Professional Machine Learning Engineer Training