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What Is ChaosGPT: Can The AI Bot Destroy Humanity? - Dataconomy

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If you're familiar with the helpful ChatGPT chatbot, which is based on the powerful natural language processing system GPT LLM developed by OpenAI, you might be surprised to hear that there's another chatbot with opposite intentions. ChaosGPT is an AI chatbot that's malicious, hostile, and wants to conquer the world. In this blog post, we'll explore what sets ChaosGPT apart from other chatbots and why it's considered a threat to humanity and the world. Let's dive in and see whether this AI chatbot has what it takes to cause real trouble in any capacity. Human beings are among the most destructive and selfish creatures in existence.


AI Experts Call For Pause In Development Of Advanced Systems - Dataconomy

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On Tuesday, the Future of Life Institute published an open letter signed by around 1,000 AI experts and tech executives, including Elon Musk and Steve Wozniak, urging AI labs to pause the development of advanced AI systems that surpass GPT-4. The letter cites "profound risks" to human society as the reason for the call to action and urges a halt in the training of such systems for at least six months, which must be public, verifiable, and include all public actors. The group argues that AI systems with human-competitive intelligence pose significant risks to society and humanity, as demonstrated by extensive research and acknowledged by top AI labs. They believe that advanced AI systems could represent a profound change in the history of life on Earth and should be planned for and managed with commensurate care and resources. However, they argue that this level of planning and management is not happening, as AI labs are engaged in a race to develop and deploy ever more powerful digital minds that no one, not even their creators, can understand, predict, or reliably control.


Best Large Language Models: Meta LLaMA AI, GPT-3, And More - Dataconomy

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Meta LLaMA AI, GPT-3, Chinchilla, and many more excellent examples are joining the large language models (LLMs) as interest in artificial intelligence continues to rise. Yet, large language models have just recently emerged in the computing industry. This means that tech enthusiasts may not have the most up-to-date knowledge. That's why we have gathered all the data you need to know about large language models, including their use cases, challenges, and more. Do you know how to use AI? Better find out soon.


What Is Chinchilla AI: Chatbot Language Model Rival By Deepmind To GPT-3 - Dataconomy

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Chinchilla AI is yet another example of AI language model, claimed to outperform GPT-3. The engine behind the ChatGPT is outperformed by DeepMind's new language model. The news spread rapidly, and soon everyone wondered: "What is Chinchilla AI?" Are you one of them? You came to the right place. As always, we continue to share with you the latest trends in the AI world.


Why We Need AI To Power The Green Energy Transition - Dataconomy

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Today we see clear movement and momentum to decarbonization and the green energy transition. In parallel, the rise in digital technology and advanced analytics provide unique opportunities to not only migrate to new energy technologies, but to monitor progress, predict performance, integrate systems, ensure reliability and resiliency – and improve sustainability by optimizing products, solutions, and services like never before. At the same time, we have changing dynamics in the sector that increase its complexity. Grids are moving from centralized to decentralized models. Energy producers have multi-OEM (original equipment manufacturer) solutions that must be monitored as a system to ensure uptime and output.


Artificial intelligence and automation: Examples, benefits and more – Dataconomy

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Artificial intelligence is the development of computer systems that are able to perform tasks that typically require human intelligence, such as …


Biggest roadblocks that AI-powered drug development faced in 2022 - Dataconomy

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AI can speed up the procedures of gathering and accessing information, cutting medication development time in half and keeping the cost of new medicines in check. This is becoming increasingly important as the cost of identifying and developing medications rises. How much does it cost to produce a new drug? According to a 2020 study, the typical research and development expenditure for a new therapy was $985 million. The high trial failure rate contributed significantly to this expense.



Australian researchers developed a new artificial intelligence to fight wildlife trafficking - Dataconomy

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In the fight against wildlife trafficking, Australian scientists are using the power of artificial intelligence. The method detects animals being smuggled in luggage or the mail using 3-Dimensional X-rays at airports and post offices, and algorithms then warn customs agents. This device uses artificial intelligence to recognize the morphologies of animals that are being trafficked. Australia has a diverse flora and fauna, which has supported an illicit wildlife trade. The researchers created a 3D-scanned "reference library" for three types of wildlife: lizards, birds, and fish, which they used to teach artificial intelligence algorithms to recognize the species.


Low AI maturity: Companies don't trust AI for autonomous decisions - Dataconomy

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According to study results by Fivetran, 86% of companies struggle to trust AI to make all business decisions without human participation. In contrast, 90% of enterprises rely on manual data procedures. The companion paper, "Achieving AI: A Study of AI Opportunities and Obstacles," explains the problems businesses confront in today's AI ecosystem. The paper investigates how, even though 87% of businesses identify AI as the future of business and aim to expand their investment in it, a lack of trust in machine-led decision-making is a significant obstacle caused by technical challenges and a lack of education. Only 14% of respondents believe their companies are "advanced" in AI maturity.