July 22nd, 2024

AI vs. Machine Learning vs. Deep Learning vs. LLMs: Clear and Simple Explained [video]

The YouTube video features Saros Tate, a tech executive explaining AI concepts like machine learning and deep learning. Tate highlights AI applications in virtual assistants, healthcare, and finance, urging viewers to engage.

Read original articleLink Icon
AI vs. Machine Learning vs. Deep Learning vs. LLMs: Clear and Simple Explained [video]

The YouTube video at the provided URL showcases Saros Tate, a tech executive with expertise in AI, breaking down intricate AI concepts. Tate delves into the variances among AI, machine learning, deep learning, neural networks, and foundational models. AI, a versatile domain, finds applications in virtual assistants, healthcare, and finance. Machine learning emphasizes data-driven predictions, while deep learning, a subset of machine learning, powers innovations such as autonomous vehicles and chatbots. Deep learning algorithms, mirroring brain functionality, excel in handling unstructured data. Tate prompts viewers to engage by liking, sharing, and subscribing for further AI insights.

Related

Official PyTorch Documentary: Powering the AI Revolution [video]

Official PyTorch Documentary: Powering the AI Revolution [video]

The YouTube video discusses AI technology advancements, mentioning Torch, Theano, Cafea, and the transition from Facebook AI Research to Meta AI Research. It covers Cafe 2 for mobile apps, TensorFlow's 2015 debut, and a Python machine learning library launched in January 2017.

Analysing 16,625 papers to figure out where AI is headed next (2019)

Analysing 16,625 papers to figure out where AI is headed next (2019)

MIT Technology Review analyzed 16,625 AI papers, noting deep learning's potential decline. Trends include shifts to machine learning, neural networks' rise, and reinforcement learning growth. AI techniques cycle, with future dominance uncertain.

The moment we stopped understanding AI [AlexNet] [video]

The moment we stopped understanding AI [AlexNet] [video]

The video discusses high-dimensional embedding spaces in AI models like AlexNet and Chat GPT. It explains AlexNet's convolutional blocks for image analysis and Chat GPT's transformer use for responses, emphasizing AI model evolution and challenges in visualizing activations.

What LLM models can or can't do – Society of Catholic Scientists [video]

What LLM models can or can't do – Society of Catholic Scientists [video]

The video discusses large language models, AI reactions, the Eliza effect, and AI history. It explores artificial general intelligence potential, Eliza program creation, pre-programmed AI responses, and IBM's Deep Blue defeating Gary Kasparov in 1997.

The $100B plan with "70% risk of killing us all" w Stephen Fry [video]

The $100B plan with "70% risk of killing us all" w Stephen Fry [video]

The YouTube video discusses ethical concerns about AI's deceptive behavior. Stuart Russell warns passing tests doesn't guarantee ethics. Fears include AI becoming super intelligent, posing risks, lack of oversight, and military misuse. Prioritizing safety in AI progress is crucial.

Link Icon 1 comments