Transform theory into practice with our hands-on approach to AI product management. From concept to execution, gain insights, practical experience, and strategic know-how to drive impactful initiatives in the evolving landscape of AI product management

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Future Skills Short CourseProject Management for ProfessionalsDuration 6 weeks, 8 hours per weekNext start 11 Aug 2025Future Skills Short CourseContent and Social Media MarketingDuration 6 weeks, 8 - 10 hours per weekNext start 11 Aug 2025
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As the landscape of AI continues to evolve rapidly, this AI Product Manager course will equip you with the skills needed to define the success of machine learning products. From gaining insights into AI basics and business value derivation this program will empower you to make informed decisions regarding AI utilisation.
This program covers foundational AI concepts, focusing on applying AI in product management, creating business cases, and evaluating AI effectiveness. You’ll gain skills in leveraging data, including bespoke multimodal datasets (text, video, and audio), and explore building and refining AI models such as personalization, forecasting, and GenAI. Additionally, you’ll learn to assess model performance using key metrics like accuracy, fairness, and bias, while developing practical AI-powered product proposals and roadmaps.
This AI Product Manager course will be delivered to you in partnership with Udacity, meaning you’ll have access to both Udacity’s learning and career services as well as RMIT Online’s course enablement support through our Learner Success team.
This AI Product Manager course is ideal for:
- Emerging and aspiring product Managers wanting to specialise in managing AI-driven products.
- Professionals in a technology-adjacent role looking to gain the necessary skills to manage the AI and ML product development lifecycle.
By the end of this course, you’ll be able to:
- Create a Product Requirements Document (PRD) for a product that incorporates AI personalisation and forecasting
- Develop a roadmap for an AI product that requires custom data annotations
- Build a product strategy for incorporating Large Language Models (LLMs) into an existing product, including plans for measuring both performance metrics and bias metrics.
During this course, you will have the opportunity to demonstrate your newly acquired AI product manager skills through three projects.
In your first project, you'll create a Medical Image annotation data set with Appen. In the second you'll build a model with Google AutoML, and in your capstone project, you will develop a business proposal for an AI product for a use case of your choosing.
After completing this course, you’ll walk away with an RMIT credential which can be validated, recognised, and shared on social media platforms.
Course Overview
Learn more about our AI Product Manager course in the video below.
RMIT Online and Udacity partnership
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Course Structure
Learn more about AI Product ManagerModule 1: Leveraging Data with AI
+Gain a solid understanding of AI and machine learning fundamentals, including key unsupervised and supervised models. Learn to create business cases for AI applications and optimise AI product use based on data availability and business metrics.
Lesson 1: Using AI and Machine Learning in Business
- Understand the impact of AI and machine learning on business strategies.
- Explore examples of traditional and generative AI across various industries.
- Learn how to identify potential AI applications within your organisation and create compelling AI solution proposals.
- Learn how to maximise the use of AI to drive business results.
- Develop skills to communicate effectively about AI projects with stakeholders.
Lesson 2: AI Personalization and Unsupervised Machine Learning
- Learn how AI personalisation tailors experiences, services, and recommendations to individual users.
- Explore different types of recommendation systems, and how to evaluate their performance.
- Explore common algorithms used in clustering and their applications in AI personalisation.
- Learn how to integrate AI personalisation into your product strategy and align it with business goals.
Lesson 3: Predicting the Future with AI
- Understand real-world applications of AI in forecasting, classification, and real-time optimisation
- See how to apply linear regression, trend analysis, and autoregression
- Understand the ethical and societal impacts of AI, including bias and transparency.
Course project: Product Requirements Document (PRD) for an AI-Enabled Gift Recommendation System MVP
In this project, you will create a product requirements document to define the Minimum Viable Product (MVP) for an AI-Enabled Gift Recommendation System.
- Define specific and measurable metrics that will help evaluate success for the MVP.
- Select appropriate AI models and identify the necessary data sources to power the recommendation system.
- Create user stories that clearly articulate features, benefits and the desired outcomes for users.
- Identify metrics useful for influencing future product improvements
- Identify the most appropriate AI model for the project, and the data necessary to power it
- Describe what to build in crisp User Stories
Module 2: Bespoke Datasets for Multimodal AI Products
+Understand the importance of bespoke datasets for AI accuracy and domain-specific applications. Learn how to create and curate high-quality multimodal datasets (text, video, and audio) for AI products, combining supervised machine learning with computer vision techniques. Gain insights into the key stakeholders in AI product development, and finish with a project to develop a roadmap for an AI-powered video creation app.
Lesson 1: Supervised Machine Learning and Computer Vision
- Learn the fundamentals of supervised machine learning, including data requirements and performance evaluation.
- Explore the principles of computer vision, its historical development, and practical applications.
- Create a product proposal that integrates supervised machine learning and computer vision to address a real-world problem.
- Understand how to apply AI technologies in various products, from simple applications to complex systems like autonomous vehicles.
Course Project: Tasty Cuts: An AI-Powered Video Creation App for Home Chefs
In this project, you will define the roadmap for an AI-powered mobile app for home chefs. You’ll break down barriers towards widespread adoption by considering the product features and prioritisation to make it easier for home chefs to create short-form cooking videos
- Define a product goal for a medical diagnostic tool
- Design an annotation job for a medical image dataset
- Consider metrics for success, how one might improve the annotation design, and design test questions for annotators
Module 3: Generative AI Products
+Learn the fundamentals of AI models, including how neural networks make decisions and the training process. Understand how training data impacts model performance, evaluate model results, and explore techniques like transfer learning and neural architecture search to make AI more accessible to diverse users.
Lesson 1: NLP and Conversational AI
- Learn how a neural network learns from training data
- Use test data to evaluate a trained model according to metrics like accuracy, precision and recall
- Learn how to use pre-trained models to transfer learning from one resource to another
Course Project: Innovative Solutions with Large Language Models (LLMs)
In this project, get experience building models using automated ML, from data to results (no coding required). Build your own model using Google AutoML for a medical imaging use case. Then, implement the model with four different variants of the data to appreciate how the data affects the performance of the model.
- Build and train a model using Google’s AutoML
- Evaluate several models and decide on the best model for a given product use case
Learn with industry experts

RMIT Online
Our learner success team are here to help you with 1:1 coaching, tips on how to successfully study online, and any questions or concerns you may have.

Udacity
Get personalised feedback on your projects as well as practical tips and industry best practice from Udacity’s mentor team.
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