GenEd – e-learning course production case study

View demo
Type:
E-learning course
Technique:
2D, interactive slides
Industry:
Education

About the client

GenEd AI is at the forefront of integrating human creativity with artificial intelligence to revolutionize education. With expertise in AI course design, human-in-the-loop quality assurance, AI content production, and research validation, GenEd AI ensures that AI-driven education is engaging, accurate, and impactful.

Goal

Blue Carrot, in collaboration with GenEd, embarked on a journey to explore emerging innovations, assess their real-world applicability, and develop a production process to seamlessly integrate AI tools at every stage of the development of an e-learning course, starting from instructional design to scripting and video creation. The goal was to accelerate production speed, reduce costs, and minimize the need for Subject Matter Experts (SMEs), thus enhancing efficiency, resilience, and scalability across the entire workflow.

Challenges

Due to the novelty of these technologies, the lack of standards, and their lack of prior experience within the market, the main challenges were as follows:

  • Maintaining the high quality of courses while integrating AI;
  • Adapting the production process to new technologies and emerging tools;
  • Creating proprietary workflows for interacting with these technologies;
  • Validating the obtained results with subject matter experts;
  • Validating the obtained results with the general audience/consumers of the content.

What we did

Exploring new technologies
We began with an in-depth exploration of new technologies, focusing on understanding their limitations and potential applications. Our first step was to examine the capabilities and constraints of OpenAI's large language model (LLM).

Addressing expertise gaps in learning design
The lack of subject matter experts is a challenge in developing quality online learning content. Using LLMs in learning design can help address this issue, speeding up instructional design and reducing the time needed from experts.

Testing AI-driven course development
To validate this approach, GenEd conducted a study for which we developed two courses—one using traditional methods and the other leveraging new AI-driven technologies.

Results
Both courses were blindly reviewed by experts using predefined evaluation criteria, with no indication of which course was created by which method. Blind expert reviews showed both met the same quality standards, but the AI-driven approach was 25 times faster.

Evaluating AI avatars in learning
The next step was researching how learners perceive educational videos featuring AI avatars. With 83 adult participants, results showed that while learners could easily distinguish AI avatars from real instructors, their presence had no impact on learning outcomes—suggesting initial skepticism is more about perception than effectiveness.

Creating a demonstration course
After thoroughly analyzing all the most uncertain aspects, we created a demonstration course on Decision-Driven Decision Making (DDDM) to showcase the practical application of all the tools in a real-world case.

Project breakdown

The project consisted of the following stages:

  1. Developing the learning strategy;

  2. Creating blueprints;

  3. Writing video scripts;

  4. Designing interactive and assessment components;

  5. Validating all deliverables with an expert;

  6. Producing media components, including videos, UI interface visuals, and the storyline shell.

Results

Integrating AI tools at every production stage enabled us to achieve a course development process that is 25 times faster than traditional methods, all while maintaining the same quality. AI-driven instructional design significantly lessened our dependency on SMEs; synthetic videos allowed us to bypass live filming, enhancing efficiency, scalability, and cost-effectiveness. Remarkably, the entire lesson was created in less than a week.

The research results and demo project were presented at AIED 2023, a leading conference on AI in education held in Japan, where they were well received by the audience. Attendees viewed the study as innovative and pioneering, particularly for its practical approach to applying generative AI in learning design. One professor from a Japanese university approached the team afterward, calling the DDDM prototype a “notable step” and asking about potential future studies to build on it. Another attendee appreciated the side-by-side comparison of traditional and AI-driven workflows, commenting that it was “refreshing to see real-world applications, not just theory.” The presentation sparked interest and discussion about further exploring AI in education. Since then, the paper has been cited multiple times a week in studies worldwide, reflecting its ongoing relevance.

GenEd – e-learning course production case study
View demo

Let’s talk
about your
project

Book a call
(Name missed)
(Email missed)
(Wrong Email format)
(Description missed)
*By submitting this form you agree that you are familiarized with our Privacy Policy and accept that your personal data will be processed in accordance with such policies.
Book a call