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Quantised models for lightweight efficiency: Gemma 3 introduces official quantised versions, significantly reducing model size while preserving output accuracya bonus for developers optimising for mobile or resource-constrained environments. The models performance advantages are clearly illustrated in the Chatbot Arena Elo Score leaderboard.
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Artem Rodichev is the Founder and CEO of Ex-human , a company focused on building empathetic AI characters for engaging conversations. Before founding Ex-human, Artem was the Head of AI at Replika from 2017 to 2021, where he led the development one of the most popular English-speaking chatbots, growing its user base to 10 million in the U.S.
AI now plays a pivotal role in the development and evolution of the automotive sector, in which Applus+ IDIADA operates. Within this landscape, we developed an intelligent chatbot, AIDA (Applus Idiada Digital Assistant) an Amazon Bedrock powered virtual assistant serving as a versatile companion to IDIADAs workforce.
Tech Leaders & Their Concerns Related to the Risks of AI Geoffrey Hinton Geoffrey Hinton – a famous AI tech leader (and godfather of this field), who recently quit Google, has voiced his concerns about rapid development in AI and its potential dangers. How Can We Overcome the Risks of AI Systems?
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At a time when other leading AI companies like Google and OpenAI are closely guarding their secret sauce, Meta decided to give away , for free, the code that powers its innovative new AI large language model , Llama 2. What matters more at this point, they say, is how that misinformation is distributed.
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EVENT — ODSC East 2024 In-Person and Virtual Conference April 23rd to 25th, 2024 Join us for a deep dive into the latest data science and AI trends, tools, and techniques, from LLMs to data analytics and from machine learning to responsibleAI. Secondly, governments are investing in building their own internal AI capabilities.
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One only needs to recall the infamous chatbot Tay released by Microsoft. It only took a few hours of interacting online before the AI become so hostile and racist that the tech giant had to quickly pull the plug. Data privacy violations One industry that is extremely hopeful about generative AI is healthcare.
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