Collaborating Authors

Noam Chomsky and GPT-3


"You can't go to a physics conference and say: I've got a great theory. It accounts for everything and is so simple it can be captured in two words: "Anything goes."" Every now and then engineers make an advance, and scientists and lay people begin to ponder the question of whether that advance might yield important insight into the human mind. Descartes wondered whether the mind might work on hydraulic principles; throughout the second half of the 20th century, many wondered whether the digital computer would offer a natural metaphor for the mind. The latest hypothesis to attract notice, both within the scientific community, and in the world at large, is the notion that a technology that is popular today, known as large language models, such as OpenAI's GPT-3, might offer important insight into the mechanics of the human mind. Enthusiasm for such models has grown rapidly; OpenAI's Chief Science Officer Ilya Sutskever recently suggested that such systems could conceivably be "slightly conscious".

How Robotics Can Make Oil And Gas Production Safer


Robotics in oil and gas production can save several lives every year by executing tasks that are too dangerous for workers. Oil and gas production involves some of the most dangerous jobs in the world. Tasks such as oil drilling, roughneck jobs and maintenance tests, among others, cause several worker deaths every year. In fact, a study found that there are several deaths in oil and gas production that are never reported. Such points and facts beg the question, what makes oil and gas production so dangerous?

AI Lead Generation Guide for Small Business


You're about to get some help in filling your sales pipeline. AI lead generation and machine learning is a thing. And in this guide, I'm going to show you how artificial intelligence is going to transform lead generation for your business. Artificial intelligence (AI) has grown by leaps and bounds. In fact, lots of companies are using AI technology to improve lead generation.

Meta's 'MyoSuite' AI platform could help doctors develop better prosthetics


Meta's AI division has been busy in recent months finding ways to make concrete production more sustainable and machine translation better. Now one of the company's ML teams has created a tool that builds realistic musculoskeletal simulations that run up to 4,000 times faster than state-of-the-art prosthetics. According to Meta CEO Mark Zuckerberg, the company can train the models to do things like twirl pens and rotate objects. Mark Zuckerberg just announced MyoSuite, a new AI platform we developed to build realistic musculoskeletal simulations to help accelerate development of prosthetics. It could also help us build avatars that move more realistically in the metaverse.

Council Post: Formidable Human-AI Relations Can Accelerate Sustainability Efforts


AJ Abdallat is CEO of Beyond Limits, a leader in artificial intelligence and cognitive computing. Artificial intelligence (AI), machine learning (ML) and similar digitalization solutions are modifying the way the world's most influential companies and industries -- as well as entire cities -- function every day. When working in harmony with humans, AI and other automation systems have the potential to make huge impacts on economic growth across the globe, going so far as to support solving humanity's most critical roadblocks, from streamlining energy production to improving grid systems and achieving more sustainable operations for nearly every major industry on Earth. As the CEO of an AI company making advanced digitalization software products and solutions, the paradigm of enabling people and AI to work together on achieving more sustainable operations is always top of mind; its importance cannot be curbed. As we move into the future, I'm confident there will be plenty of jobs for both humans and AI so long as they are able to function in conjunction with one another.

SBERT vs. Data2vec on Text Classification


I personally do believe all the fancy ML research and advanced AI algorithm works have very minimal value if not zero until the date when they can be applied to real-life projects without asking the users for an insane amount of resources and excessive domain knowledge. And Hugging Face builds the bridge. Hugging Face is the home for thousands of pre-trained models which have made great contributions to democratizing artificial intelligence through open source and open science. Today, I want to give you an end-to-end code demo to compare two of the most popular pre-trained models by conducting a multi-label text classification analysis. The first model is SentenceTransformers (SBERT).

Various Challenges for Applying Machine Learning in Healthcare


Machine Learning is being used in many industries such as automobile, manufacturing, and retail industries. With the development of machine learning and deep learning algorithms, there are a huge number of useful predictions such as predicting the stock prices, house prices and loan default prediction. Furthermore, there is data available in different formats that could be used for machine learning predictions. As the data keeps growing, there is a lot of scope for development in the field of machine learning, and predictions are going to get better and better in the future. One of the interesting applications of machine learning is in the field of healthcare.

How Snowflake Survives a Downturn, According to Wall Street Analysts – Business Insider


While data science and machine learning represents a substantial growth opportunity for Snowflake, it might not necessarily need to over-invest in …

Anomalo Integrates With Databricks to Help Enterprises Build Confidence in Their Data


A leader in the data warehousing and machine learning space, Databricks helps organizations streamline their data ingestion and management and …