Hire a web Developer and Designer to upgrade and boost your online presence with cutting edge Technologies

Thursday 8 April 2021

Conversational AI vs. Generative AI: What is the Key Difference?

 Artificial intelligence (AI) is advancing rapidly, giving rise to new capabilities and applications. Two areas at the forefront are conversational AI and generative AI. While related in some ways, these two types of AI have distinct differences.

Here are the 10 key differences between conversational AI and generative AI:

key differences between conversational AI and generative AI

Conversational AI:

Conversational AI, also known as chatbots, are AI systems designed to have natural conversations with humans. The goal is for the chatbot to understand the user's intent and provide relevant and useful responses.

Some examples of conversational AI include:

  • Customer service chatbots - These are programmed to handle common customer inquiries and requests like checking order status, resetting passwords, or answering frequently asked questions. This frees up human customer service agents to handle more complex issues.

  • Virtual assistants - Voice-based assistants like Amazon's Alexa, Apple's Siri, and Google Assistant use natural language processing to understand commands and questions. They provide information, play music, set alarms, control smart home devices, and more through conversation.

  • Automated booking agents - Chatbots can be used to book appointments, travel arrangements, and other services that involve multi-step conversations and information exchange.

The key capabilities behind conversational AI are natural language processing to understand text and speech, dialogue management to handle conversations, and access to knowledge bases or other data sources to respond accurately.

Generative AI:

Generative AI refers to AI systems that can generate new content, such as text, images, audio, and video. The AI is trained on large volumes of data and learns the patterns to produce high-quality, original output.

Some examples of generative AI applications include:

  • AI writing assistants - Tools like Jasper and Rytr use natural language generation to transform bullet points into written articles and reports. The AI handles translating ideas into coherent, grammatically correct text.

  • Deepfakes - This controversial technology uses neural networks to swap faces in videos or generate fabricated images and audio of public figures saying or doing things they didn't actually do.

  • Text-to-image generators - DALL-E 2 and Stable Diffusion can create remarkably realistic and creative images based on text prompts. This opens up applications ranging from illustration to digital art.

  • Text-to-speech - Voice synthesis turns text into human-sounding vocal audio. AI speech generators like Replica Studios and WellSaid Labs accurately mimic voices, inflections, and accents.

The key enabler behind generative AI is the ability to produce novel, high-quality artifacts after training on large datasets, unlike hand-coded rules or retrieval from existing libraries. The results often require human judgement, however, to catch errors.

In summary, conversational AI aims to understand and respond appropriately during interactions with humans. Generative AI seeks to create new content from scratch based on patterns learned from data. Both represent significant advances bringing AI closer to human capabilities. The possibilities for innovation and disruption across many sectors are immense as these technologies continue evolving.

No comments:

Post a Comment

Connect broadband

7 Ways to Handle Large Data Files for Machine Learning

 Exploring and applying machine learning algorithms to datasets that are too large to fit into memory is pretty common. This leads to quest...