From Watson to ChatGPT: AI Chatbots and Limitations
ChatGPT has a long way to go for enterprise adoption. This blog explains the limitations to ChatGPT in its current form.
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Join For FreeThe release of ChatGPT and the responses it provided brought back the Conversation AI to the forefront and made Conversation AI available to everyone through a simple web interface. We saw many creative ways to use ChatGPT and how it might impact the future and questions around whether it will replace the Google Search engine and jobs.
Well, let’s address this question with the below analysis.
From early Watson systems to ChatGPT, a fundamental issue still remains with Conversational AI.
Lack of Domain Intelligence.
While ChatGPT definitely advances in the field of Conversational AI, I like to call out the following from my book — Real AI: Chatbots (published in 2019).
"AI can learn but can’t think."
Thinking would always be left to humans on how to use the output of an AI system. AI systems and their knowledge will always be boxed to what it has learned but can never be generalized (like humans) where domain expertise and intelligence are required.
What is an example of Domain Intelligence?
Take a simple example where you ask the Conversational AI agent to “Suggest outfits for Shorts and Saree.”
Fundamentally, any skilled person would treat them as two different options — matching outfits with Shorts and matching outfits with Saree OR asking clarifying questions, OR suggesting these options are disjoint and can’t be combined.
But with ChatGPT (or any general-purpose Conversational AI), the response was as shown below. Clearly, without understanding the domain and context, trying to fill in some responses. This is a very simple example, but the complexity grows exponentially, for deep expertise and correlation are required -like a doctor recommending options for treatment. This is the precise reason why we saw many failures when AI agents were used in solving Health problems. They tried to train general-purpose AI rather than building domain-expert AI systems.
The other issue with this Generative Dialog AI system is as follows:
Explainability – Making the AI output explainable on how it arrived. I have described this in my earlier blog – Responsible And Ethical AI
Trust and Recommendation Bias – Rght recommendation and adaptability. I have explained this in my earlier blog.
For more details, I have explained this concept in my short ebook – Real AI: Chatbots (2019).
You can find the book online on my website or enroll for a free video course.
The intent of this blog was to bring awareness to ChatGPT and its current limitations. Any Technology usually has a set of limitations, and understanding these limitations will help you design and develop solutions keeping these limitations in mind.
ChatGPT definitely advances Conversation AI, and a lot of time and effort would have gone into building this. However, it has a long way to go for enterprise adoption.
To make ChatPT relevant for enterprise adoption, we need the following:
- Domain Adaptability
- Domain Intelligence
- Explainability
- Transparency
- Non-biased
- Privacy
- Scalability – Compute power for Training and Inference
- Lower Environmental Footprint
In my view, ChatGPT and other AI chatbots to follow will be similar to any other tool to assist you with the required information, and you will use your thinking and intelligence to get work done.
So, sit back and relax; the current version of ChatGPT will not replace anything which requires thinking and deep expertise!!
On a lighter note, this blog is not written by ChatGPT :)
Published at DZone with permission of Navveen Balani, DZone MVB. See the original article here.
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