- Data Pragmatist
- Posts
- Difference between Artificial Intelligence (AI), Machine Learning (ML) and Deep Learning (DL); Best ChatGPT Prompt Ideas for Bloggers
Difference between Artificial Intelligence (AI), Machine Learning (ML) and Deep Learning (DL); Best ChatGPT Prompt Ideas for Bloggers
Sam Altman rejoins OpenAI’s board
Welcome to learning edition of the Data Pragmatist, your dose of all things data science and AI.
📖 Estimated Reading Time: 4 minutes. Missed our previous editions?
Today we are talking differences between Artificial Intelligence, Machine Learning and Deep Learning. As part of our learning series, Best ChatGPT Prompt Ideas for Bloggers.
Artificial Intelligence online short course from MIT
Study artificial intelligence and gain the knowledge to support its integration into your organization. If you're looking to gain a competitive edge in today's business world, then this artificial intelligence online course may be the perfect option for you.
On completion of the MIT Artificial Intelligence: Implications for Business Strategy online short course, you’ll gain:
Key AI management and leadership insights to support informed, strategic decision making.
A practical grounding in AI and its business applications, helping you to transform your organization into a future-forward business.
A road map for the strategic implementation of AI technologies in a business context.
🧠 Difference between Artificial Intelligence (AI), Machine Learning (ML) and Deep Learning (DL)
Differences between Artificial Intelligence, Machine Learning and Deep Learning
Artificial Intelligence (AI), Machine Learning (ML) and Deep Learning (DL) are three very hot buzzwords right now, and often seem to be used interchangeably.
They are not quite the same thing, but the perception that they are can sometimes lead to some confusion. So I thought it would be worth writing a piece to explain the difference.
Both terms crop up very frequently when the topic is Big Data, analytics, and the broader waves of technological change which are sweeping through our world.
In short, according Bernard Marr (Forbes) the best answer is that:
Artificial Intelligence is the broader concept of machines being able to carry out tasks in a way that we would consider “smart”.
And,
Machine Learning is a current application of AI based around the idea that we should really just be able to give machines access to data and let them learn for themselves.
And,
Deep Learning is a subset of machine learning in Artificial Intelligence (AI) that has networks capable of learning unsupervised from data that is unstructured or unlabeled. Also known as Deep Neural Learning or Deep Neural Network.
More differences between Artificial Intelligence, Machine Learning and Deep Learning
Artificial Intelligence (AI):
AI stands for Artificial intelligence, where intelligence is defined acquisition of knowledge intelligence is defined as a ability to acquire and apply knowledge.
The aim is to increase chance of success and not accuracy.
It work as a computer program that does smart work.
The goal is to simulate natural intelligence to solve complex problem.
AI is decision making.
It leads to develop a system to mimic human to respond behave in a circumstances.
AI will go for finding the optimal solution.
AI leads to intelligence or wisdom.
Machine Learning (ML):
ML stands for Machine Learning which is defined as the acquisition of knowledge or skill.
The aim is to increase accuracy, but it does not care about success.
It is a simple concept machine takes data and learn from data.
The goal is to learn from data on certain task to maximize the performance of machine on this task.
ML allows system to learn new things from data.
It involves in creating self learning algorithms.
ML will go for only solution for that whether it is optimal or not.
ML leads to knowledge.
Deep Learning (DL):
DL requires a lot of unlabeled training data to make concise conclusions while ML can use small data amounts provided by users.
Unlike ML, DL needs high-performance hardware.
ML requires features to be accurately identified by users while DL creates new features by itself.
ML divides tasks into small pieces and then combine received results into one conclusion while DL solves the problem on the end-to-end basis.
In comparison with ML, DL needs much more time to train.
Unlike DL, ML can provide enough transparency for its decisions.
🤝 Sam Altman rejoins OpenAI’s board LINK
An independent investigation found Sam Altman's conduct as CEO of OpenAI did not justify his removal, leading to his rejoining the board after a failed boardroom coup last fall.
The investigation, conducted by WilmerHale, involved interviews with board members and employees, reviewing over 30,000 documents, and concluded Altman and co-founder Greg Brockman are suitable leaders for OpenAI.
Despite OpenAI's vague public summary of the investigation, it highlighted that the firing was not due to product safety, financial concerns, or development pace, but rather a breakdown in trust with the previous board, with plans to strengthen conflict of interest policies and introduce a whistleblower hotline.
🤖 OpenAI CTO complained to board about ‘manipulative’ CEO Sam Altman LINK
OpenAI CTO Mira Murati was reported by the New York Times to have played a significant role in CEO Sam Altman's temporary removal, raising concerns about his leadership in a private memo and with the board.
Altman was accused of creating a toxic work environment, leading to fears among board members that key executives like Murati and co-founder Ilya Sutskever could leave, potentially causing a mass exit of talent.
Despite internal criticisms of Altman's leadership and management of OpenAI's startup fund, hundreds of employees threatened to leave if he was not reinstated, highlighting deep rifts within the company's leadership.
How did you like today's email? |
If you are interested in contributing to the newsletter, respond to this email. We are looking for contributions from you — our readers to keep the community alive and going.