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		<title>How Quiq Uses LLMs to Enhance Language Understanding and Generation Capabilities for CX</title>
		<link>https://execsintheknow.com/how-quiq-uses-llms-to-enhance-language-understanding-and-generation-capabilities-for-cx/</link>
		
		<dc:creator><![CDATA[Elysia McMahan]]></dc:creator>
		<pubDate>Tue, 27 Jun 2023 00:15:08 +0000</pubDate>
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		<category><![CDATA[Large Language Model (LLM)]]></category>
		<guid isPermaLink="false">https://execsintheknow.com/?p=13996</guid>

					<description><![CDATA[<p>AI driven customer service automation has taken a leap forward with recent AI advances. In the past, systems primarily relied on Natural Language Understanding (NLU) to match user intent with predefined responses.  However, with the emergence of more powerful AI, such as the Large Language Models (LLMs)  used inside OpenAI&#8217;s ChatGPT, customer support platforms like Quiq can now handle more complex and open-ended questions with greater finesse.  In this article, ....</p>
<p>The post <a href="https://execsintheknow.com/how-quiq-uses-llms-to-enhance-language-understanding-and-generation-capabilities-for-cx/">How Quiq Uses LLMs to Enhance Language Understanding and Generation Capabilities for CX</a> appeared first on <a href="https://execsintheknow.com">Execs In The Know</a>.</p>
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										<content:encoded><![CDATA[<p><span style="font-weight: 400;">AI driven customer service automation has taken a leap forward with recent AI advances. In the past, systems primarily relied on Natural Language Understanding (NLU) to match user intent with predefined responses. </span></p>
<p><span style="font-weight: 400;">However, with the emergence of more powerful AI, such as the Large Language Models (LLMs)  used inside OpenAI&#8217;s ChatGPT, customer support platforms like Quiq can now handle more complex and open-ended questions with greater finesse. </span></p>
<p><span style="font-weight: 400;">In this article, we will explore how LLMs are revolutionizing customer service by enhancing language understanding, information retrieval, and language generation capabilities.</span></p>
<h3><strong>Enhanced Language Understanding</strong></h3>
<p><span style="font-weight: 400;">LLMs possess the ability to &#8220;read&#8221; human language and decipher the underlying meaning of complex and nuanced questions. </span></p>
<p><span style="font-weight: 400;">Unlike prior-generation NLU systems that focus on identifying just one question, LLMs excel in understanding multiple questions within a single user query. LLMs can seamlessly handle contention between phrases and decipher the blended context, eliminating the need to map questions to singular intents. </span></p>
<p><span style="font-weight: 400;">LLMs can also understand additional characteristics of the customer’s question, such as the sentiment or the subject of the inquiry (e.g. “I have a question” vs “My daughter has a question”). All of these additional characteristics can be incorporated to provide a more accurate and personalized response.</span></p>
<p><span style="font-weight: 400;">Another benefit of LLMs is that there is no training required for language understanding, unlike a traditional NLU system which required training phrases to teach the AI how to recognize each intent. Because LLMs have been built from an enormous language training set, there is no additional training required to understand language.</span></p>
<p><span style="font-weight: 400;">Consequently, customers experience reduced friction, faster issue resolution, and improved communication with LLM-powered Assistants that are easier to build than prior-generation solutions.</span></p>
<h3><strong>Problem Decomposition</strong></h3>
<p><span style="font-weight: 400;">To answer customers’ questions with the highest accuracy, </span><a href="https://quiq.com/"><span style="font-weight: 400;">Quiq</span></a><span style="font-weight: 400;"> uses LLMs to gather additional understanding about a customer’s question beyond just the intent. With the benefit of this additional information, more accurate answers can be provided. We call this “problem decomposition” &#8211; iteratively deconstructing the question to tease out more and more clues that can be used to find the right answer. </span></p>
<p><span style="font-weight: 400;">For instance, determining whether a user requesting a quote is a customer or a prospect can be automated by looking at the conversation transcript through the reasoning capabilities inherent in LLMs. This approach significantly minimizes the need for direct user inquiries, enabling Quiq to extract pertinent information efficiently. With this additional context of whether the user is a customer or prospect, a customized quote can be provided.</span></p>
<h3><strong>Empowering Information Retrieval</strong></h3>
<p><span style="font-weight: 400;">During the Language Understanding and Problem Decomposition phases, information is gathered to determine the attributes to be used for Information Retrieval. For example, if a user asked “I want to get a quote to add my 16-year-old daughter to my policy #ABC123” the attributes in the following table could have been determined. LLMs can easily extract this level of understanding, while prior generations would have been unlikely to capture all of the information provided and would have likely annoyed the customer with follow up questions like “What is the age of the new driver?”</span></p>
<table>
<tbody>
<tr>
<td><b>Attribute</b></td>
<td><b>Value</b></td>
</tr>
<tr>
<td><span style="font-weight: 400;">Intent</span></td>
<td><span style="font-weight: 400;">Get Policy Modification Quote</span></td>
</tr>
<tr>
<td><span style="font-weight: 400;">Relationship</span></td>
<td><span style="font-weight: 400;">Existing Customer</span></td>
</tr>
<tr>
<td><span style="font-weight: 400;">Policy #</span></td>
<td><span style="font-weight: 400;">ABC123</span></td>
</tr>
<tr>
<td><span style="font-weight: 400;">Modification</span></td>
<td><span style="font-weight: 400;">Add Driver</span></td>
</tr>
<tr>
<td><span style="font-weight: 400;">Driver Age</span></td>
<td><span style="font-weight: 400;">16</span></td>
</tr>
<tr>
<td><span style="font-weight: 400;">Driver Gender</span></td>
<td><span style="font-weight: 400;">Female</span></td>
</tr>
</tbody>
</table>
<p><span style="font-weight: 400;">Once all the attributes needed for information retrieval have been collected, the answer to the question can be gathered from knowledge articles or by querying internal data through APIs. Knowledge retrieval is achieved through a &#8220;semantic similarity technique&#8221;, wherein the LLM compares the user&#8217;s input with existing content to find the most relevant articles or responses and this is combined with account or product-specific data returned from APIs to company internal systems. By leveraging this approach, Quiq ensures that customers receive accurate and contextually appropriate information.</span></p>
<h3><strong>LLM-Driven Language Generation</strong></h3>
<p><span style="font-weight: 400;">Once all of the relevant information is gathered to answer the customer’s question, the LLM is then employed to generate responses tailored to the specific conversation context and customer&#8217;s needs. </span></p>
<p><span style="font-weight: 400;">To ensure that the LLM uses only the trusted information that Quiq has provided, Quiq establishes guardrails for the experience by injecting rulesets into the prompts, using self-defense strategies and mechanisms, managing conversation context, and harnessing LLM-powered reasoning to ensure brand voice and response accuracy.</span></p>
<h3><strong>Preserving Brand Identity</strong></h3>
<p><span style="font-weight: 400;">Maintaining a consistent brand voice is essential in customer interactions. Quiq ensures brand preservation by injecting the brand’s distinctive voice into the prompt engineering process. By integrating brand knowledge into LLM prompts, Quiq aligns the AI responses with the established brand identity, delivering a seamless customer experience that stays consistent.</span></p>
<h3><strong>Monitoring and Content Moderation</strong></h3>
<p><span style="font-weight: 400;">Prior to sending responses to customers, Quiq employs a series of pre and post-processing steps to monitor user inputs and LLM outputs. These steps ensure the validity of both questions and answers, guarding against potential issues. </span></p>
<p><span style="font-weight: 400;">Content moderation mechanisms evaluate the generated response for compliance with guidelines, identifying any unauthorized information or prompt manipulation attempts. If any concerns arise, Quiq avoids sending the response, offering an alternative question or an opportunity to retry.</span></p>
<h3><strong>Final Thoughts</strong></h3>
<p><span style="font-weight: 400;">The integration of LLMs within customer support platforms like Quiq is revolutionizing how customer service is delivered. The latest AI can handle open-ended and more nuanced questions yielding automated resolution rates beyond anything achieved in the past. </span></p>
<p><span style="font-weight: 400;">LLMs&#8217; enhanced language understanding capabilities enable a deeper comprehension of complex queries, while information retrieval techniques and semantic similarity evaluation ensure accurate and relevant responses. </span></p>
<p><span style="font-weight: 400;">By harnessing LLM-driven language generation, Quiq-powered customer support interactions become more personalized, streamlined, and aligned with the brand&#8217;s voice. With ongoing advancements in AI, LLMs will continue to revolutionize customer service, empowering organizations to provide exceptional support experiences.</span></p>
<hr />
<p><span style="font-weight: 400;">By Mike Myer, CEO and Founder of <a href="https://quiq.com/">Quiq</a>.</span></p>
<p>The post <a href="https://execsintheknow.com/how-quiq-uses-llms-to-enhance-language-understanding-and-generation-capabilities-for-cx/">How Quiq Uses LLMs to Enhance Language Understanding and Generation Capabilities for CX</a> appeared first on <a href="https://execsintheknow.com">Execs In The Know</a>.</p>
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