Author: Giuseppina Schiavone

“The Good, The Bad and The Ugly”, this was the incredibly catchy title of the workshop on ChatGPT organized by TechLabs Rotterdam on the 20th of April 2023.

ChatGPT is an artificial intelligence (AI) chatbot developed by OpenAI and released in November 2022. ChatGPT falls under the umbrella of Generative AI, or AI tools used to generate original text, images and sound by responding to conversational text prompts.

I share in this post my takeaways from the workshop complemented with additional links.

The goals of the workshop were to:

After a short introduction by Andreea Moga about TechLabs Rotterdam and it’s role to spread digital education to all via high quality and up-to-date study material and professional mentorship, Morraya Benhammou and Marvin Kunz took the floor.

Morraya Benhammou, Lecturer & Educational Educator at the Hague University of Applied Sciences shared her experience on the use of ChatGPT in education. She provided powerful examples in which ChatGPT improved her productivity and facilitated the planning and execution of particularly tedious tasks, from exams and study programs preparation to students’ tests evaluation and grading. This gave her more space to build relationships and connect with her students and time for creativity. Among others, I found the following aspects of her talk very interesting:

Marvin Kunz, Behavioral Scientist and Data&AI consultant, dived into more practical aspects proving examples and tips for prompting ChatGPT. Marvin shared his daily work experience with ChatGPT and other tools of Generative AI and again he highlighted how they are boosting his productivity, for example in code writing, scientific literature reviews, synthesis of market analysis, production of reports and creating visually appealing presentations.

He explained how the models behind this chatbot, generally referred as Large Language Models (LLMs) are trained: ChatGPT’s model “learned” from massive corpus of text by trying to predict what words might come next in a sentence (sequential learning), learning is reinforced using human feedback through a machine learning technique known as Reinforcement Learning with Human Feedback (RLHF). The sources of data on which the GTP-3 model, the base model of ChatGPT, was trained, include books and literature, websites and online content, news articles, datasets, conversational data from social media, Wikipedia, forming a pool of about 300 billion words and covering a time period of 3 years, from 2016 to 2019. It is to be noted that “ChatGPT is not connected to the internet, and it can occasionally produce incorrect answers. It has limited knowledge of world and events after 2021 and may also occasionally produce harmful instructions or biased content”. Nevertheless, recently, new plugins developed for ChatGPT allow it to access to third-party knowledge sources and databases, including the web.

Marvin also mentioned key differences between ChatGPT and the most recent ChatGPT Plus based on GPT-4 model (such as higher accuracy, multimodality, higher number of processed words at time up to 25,000, some level of turn down of inappropriate requests that could potentially generate harmful responses), and some of the competitors of OpenAI’s products (such as Midjourney, Stable Diffusion for generating images from natural language descriptions compete with DALL-E; as AI chatbot Google Bard, using Google’s own LaMDA language model, competes with ChatGPT, using OpenAI’s GPT-3.5 model).

Among others, I found the following topics of his talk very interesting:

I belive that the workshop was a success in terms of content, lessons learnt and interactions among the participants.

Why is Generative AI relevant for SAAC?

SAAC’s mission is to help organizations becoming more transparent and accountable through the strategic exploitation of data. The services that we offer span from sustainability reporting, design of data-driven sustainability strategies, to sustainability analytics training and research. Operationalizing these services require processing, analyzing, modeling, visualizing and reporting large amount of complex data of different modality (e.g. text, tabular data, satellite images). Generative AI might offer interesting solutions for optimizing these services, think about automatic scan of sustainability reports for auditing on compliance to the recently adopted European Corporate Sustainability Reporting Directive, semi-supervised compilation of sustainability reports according to guidelines, AI-guided design of client-custom sustainability strategies to name few possible applications. Responsible use of Generative AI could accelerate the European Green Deal race to make Europe a net-zero emission and more inclusive economy by 2050.