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AI is evolving at such dramatic pace that any step forward is a step into the unknown. Analysts are already making predictions about how the future of AI will at least in part be shaped by risk. Walking the AI tightrope isnt about moving fast; its about moving smart.
While today’s AI excels in specific areas – think GPT-4 composing poetry or DeepMind’s AlphaFold predicting protein structures – it’s still miles away from genuine human-like intelligence. With experts like DeepMind’s Shane Legg predicting human-level AI by 2028, the race is on.
In the exponentially evolving world of AI-assisted software development, ensuring the quality and security of AI-generated code is more critical than ever. According to Gartner , it is estimated that 75% of enterprise software engineers will be using AI code assistants by 2028.
Artificial intelligence (AI) refers to the convergent fields of computer and data science focused on building machines with human intelligence to perform tasks that would previously have required a human being. For example, learning, reasoning, problem-solving, perception, language understanding and more.
The automation of business processes, enhanced productivity, flawlessness, and impeccable customer service are some of the results of AI implementation. There are several ways in which AI can catalyze the growth of retail businesses. AI can streamline all these activities, thereby creating a satisfying shopping experience.
Data is the fuel of AI applications, but the magnitude and scale of enterprise data often make it too expensive and time-consuming to use effectively. Because of the extremely high volume and various data types, most generative AI applications use a fraction of the total amount of data being stored and generated.
Editors note: This post is part of the AI On blog series, which explores the latest techniques and real-world applications of agentic AI, chatbots and copilots. Intelligent AI agents offer one such solution. AI avatars also referred to as digital humans are addressing key concerns and enhancing operations across industries.
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