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How to Create Dynamic Conversations Based on Generative Language Models

Author: Marli Tucker

While efficiently optimizing customer experiences, successful intelligent virtual assistants (IVAs) have typically required extensive training, which is time-consuming and expensive.

In its most recent update, the Kore.ai XO Platform tackles these challenges head-on by utilizing advanced large language models (LLMs) and generative AI technologies in Zero-Shot and Few-Shot learning models. This powerful combination allows for a more effective and efficient learning process, making it easier to overcome obstacles along the way.

With the addition of Generative Language Models, the Kore.ai XO Platform takes things to a whole new level. From smart co-piloting to dynamic conversations, the Kore.ai XO Platform is designed to make IVA development a seamless experience. In this blog, we will discuss how advanced training models within the XO Platform allow you to accelerate bot development with Zero-Shot and Few-Shot models.

You might also like: The Rise of Zero-Shot and Few-Shot Learning Models



Understanding Zero-Shot Training Models

Zero-Shot training can be used to expand the AI engine’s ability to understand the intent of an utterance or to understand sentiment. To understand Zero-Shot training let’s consider solving a less complicated task. A good example of a language task using Zero-Shot learning is sentiment analysis. Sentiment analysis involves determining the emotional tone or sentiment expressed in a piece of text, such as a customer question or a product review, and categorizing it as positive, negative, or neutral.

Here is how Zero-Shot learning applies to sentiment analysis:

Imagine you have an AI model trained to analyze sentiments in English text, but now you want to use it to analyze sentiments in a language it has never seen before, say, Japanese. This is where Zero-Shot learning can be useful.

Initially, your AI model may not have any specific training data or examples of sentiment analysis in Japanese.

However, it knows the general principles of sentiment analysis, such as recognizing positive words like "good," or "happy", negative words like "bad," or "sad", and understanding the context in which they appear.

With Zero-Shot learning, the model can apply the knowledge it gained from analyzing sentiments in English to Japanese. It understands that positive words in English are likely to have similar counterparts in Japanese, even though it has never seen those Japanese words before. This is called Transfer Learning.

By looking at the context of words and phrases in Japanese text, the model can make educated guesses about the sentiment expressed, even without explicit training.

Over time, as it encounters more Japanese text and sees how humans have labeled sentiments in Japanese, the model can fine-tune its understanding and become better at sentiment analysis in that language.


So, in this scenario, Zero-Shot learning helps the AI model apply its existing knowledge from one language (English) to solve a similar language task in a language it hasn't been directly trained on (Japanese), making it adaptable and versatile in analyzing sentiments across different languages.

The advantage of using Zero-Shot models is that you can enable rapid development by eliminating extensive training effort. This approach integrates with the Open AI GPT-3 model to process customer requests efficiently, including identifying intentions and extracting entities. 

All of this can be accomplished without any training provided to the virtual assistant. This greatly decreases the required training and gives your customers the finest conversational experience possible.

Few-Shot Training Models

Few-Shot training models allow you to output consistent high performance with only 1/10th of the necessary training. The Few-Shot model utilizes the Kore.ai Custom Fine-Tuned LLM to handle customer requests. It delivers greater consistency in responding to customer requests and allows for additional training to be provided with ease. The model is both robust and secure, as it does not share data with third-party sources and does not require any additional costs for activation.

How Few-Shot Training Models Work

When a new utterance reaches the Few-Shot Knowledge Graph, the Large Language Model determines possible and definitive intent matches. This model uses semantic similarity, and when similarity crosses the threshold, then pattern recognition is used. The identified intents are then sent to the Ranking and Resolver modules, where the winning intent is identified. Once this process is completed, the assistant responds to the query.

Training this model primarily involves adding tags and alternative questions to FAQs. Other training features, such as term synonyms, traits, context, etc., are optional but still recommended to improve performance for specific use cases where the LLM cannot identify the intent.

Considering which one is better for your business? Check out the advantages and considerations of both below. 


Advantages and Considerations for the Zero-Shot and Few-Shot Models 

When considering the Zero-Shot and Few-Shot models, it is important for businesses to understand their respective strengths and limitations. The Zero-Shot model is ideal for simple tasks like answering frequently asked questions or providing basic information. However, it may not be as effective for more complex tasks that require a deeper understanding of customer needs.

On the other hand, the Few-Shot model is better suited for complex tasks and can handle disambiguation and false positives with some training. This makes it a more flexible option as businesses can provide additional training as needed. Furthermore, the Few-Shot model consistently delivers high performance, enabling businesses to provide a more personalized experience for their customers.


Build Engaging and Intelligent Conversational Experiences with Generative Language Models

Kore.ai simplifies the enhancement of customer experiences by leveraging the capabilities of large language models and generative AI. Introducing the Zero-Shot and Few-Shot models offers innovative solutions that allow companies to achieve this goal without the need for extensive training or high costs.  Both models are designed to help businesses speed up their conversational AI journey and provide superior customer experiences. However, the best choice will depend on the specific needs and goals of each individual business.

The Kore.ai XO Platform has transformed intelligent virtual assistant development by introducing these versatile and efficient models, enabling businesses to positively engage with their customers anytime and anywhere. By carefully assessing their requirements and objectives, businesses can select the model that aligns best with their needs and ultimately thrive in this highly competitive market.

Want to learn more? 

Explore Kore.ai Generative Language Models


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