Designing A ChatBot Using Python: A Modified Approach by Abhijit Roy Chatbots are one of the top points in the digital strategies of companies worldwide. However, in 2020 brands were pushed to connect with and serve their customers online due to the pandemic. As a result, the global chatbot market value will steadily increase over…
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Automation in Healthcare: Top Chatbot Use Cases for Patient & Employee Experience Conversational chatbots are created for being contextual tools that provide responses as per the user’s requirements. Besides, it comes with various maturity levels that offer a similar intensity of the conversation. Basically, it is a type of chatbot that comes with higher levels…
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Definition of Natural-Language Understanding Gartner Information Technology Glossary That means there are no set keywords at set positions when providing an input. A natural language is one that has evolved over time via use and repetition. Latin, English, Spanish, and many other spoken languages are all languages that evolved naturally over time. Akkio offers a…
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The #1 Hotel Chatbot in 2023: boost direct bookings HiJiffy’s chatbot communicates in more than 100 languages, ensuring efficient communication with guests from all over the world. It should be noted that HiJiffy’s technology allows for a simple configuration process once the chatbot has been previously trained with the typical problems that most hotels face.…
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AI, machine learning and deep learning: Whats the difference? Artificial Intelligence is the broader concept of machines being able to carry out tasks in a way that we would consider “smart”. Therefore, if provided with data of weight and texture, it can predict accurately the type of fruit with those characteristics. For example, such machines…
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Deep Semantic Analytics: A Case Study Open-ended responders were generally representative of their overall panel characteristics. However, for all three groups, a higher proportion of open-ended responders were older, on active duty, Army members, and combat specialists. Education level did not have a significant effect on response to the open ended question. Following this, the…
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D-ID’s ‘Digital People’ Integrate with Canva’s Design Platform for the latest Generative AI Tools One of my summer projects was to create some materials to support faculty in their use of Canva with students. As part of that, I wanted to explore some of the new generative AI tools that Canva has introduced. A. I…
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10 AI use cases in manufacturing At the same time, unsupervised machine learning concerns itself with identifying patterns from data sets whose outcome isn’t yet known. For instance, engineers can use ML technology to spot unknown anomalies and faulty components in production lines. In the context of AI in manufacturing, the sub-technologies such as machine…
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8 Reasons to Use Chatbots For Recruiting One of the primary pain points we wanted to solve was the inefficiency and time-consuming nature of our traditional interview process. We were receiving a high volume of applications, and it was becoming increasingly difficult to schedule and conduct in-person interviews for all the candidates. This was causing…
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Generative AI: What Is It, Tools, Models, Applications and Use Cases Traditional AI, also known as classical AI or symbolic AI, refers to the early approach to artificial intelligence that emerged in the 1950s and dominated the field until the late 1980s. This approach uses symbolic rules and logic to model human cognition and problem-solving.…
Read more about IBM rolls out new generative AI features and models