Section 2: What is Machine Learning?

Pataasin ang iyong marka sa homework at exams ngayon gamit ang Quizwiz!

In supervised learning, what is the data like? a. It has labels b. It doesn't have labels c. It is partially labeled

A

Is machine learning a rapidly growing field? A) Yes. B) No.

A

How do machine learning algorithms work? A) By using trial and error to teach computers to perform tasks. B) By using statistical methods to enable computers to learn from data and make predictions or decisions based on that data. C) By executing code to perform specific tasks. D) By requiring human input to perform complex tasks.

B

How does machine learning differ from traditional computer programming? a) It relies on pre-defined rules and algorithms b) It focuses on learning from data c) It requires human intervention d) It can only be used for specific tasks

B

In conclusion, what is machine learning and what does it enable computers to do? A) It is a method for computers to perform complex tasks through human input and enables computers to perform tasks only with human input. B) It is a rapidly evolving field that has the potential to transform the way we interact with technology and enables computers to learn from data and make predictions or decisions, making it possible to solve complex problems and perform tasks that were previously only possible for humans to do. C) It is a type of computer program that can only perform tasks described in code and enables computers to perform tasks through executing code. D) It is a process of teaching computers to perform tasks through trial and error and enables computers to perform tasks that are too complex or too time-consuming for humans to do.

B

What are computers good at performing? A) Tasks that require a deeper understanding of subject matter. B) Tasks that can be described in code and executed by a computer program. C) Tasks that can only be performed by humans. D) Tasks that require a combination of human and computer input.

B

What is data analysis? a) A field that encompasses machine learning and data analysis b) The examination and interpretation of data c) A tool for automating decision making d) The study of computer science and artificial intelligence

B

What is machine learning all about? a. Automating manual tasks b. Predicting results based on incoming data c. Performing mathematical operations

B

What is machine learning? a. A form of AI that does not exist in the industry b. The science of getting computers to act without being explicitly programmed c. A technique for implementing artificial intelligence d. The analysis of data to drive action towards a business goal

B

What is the hardest part of using machine learning? a. Implementing the algorithms b. Obtaining and preparing the data c. Deciding on the right model

B

What is the key takeaway from this talk on machine learning? a. Machine learning can replace human labor b. The ultimate goal of machine learning is to learn from data and make predictions c. The hardest part of machine learning is choosing the right algorithm

B

Why is machine learning crucial for companies? a. It saves time and money b. It enables companies to make better decisions based on data c. It replaces human labor

B

How is machine learning related to data science? a. They are completely unrelated b. They are completely different c. They are closely related and often overlap d. Machine learning is a subset of data science

C

What are the different categories of machine learning mentioned by the speaker? a. Unsupervised and supervised learning b. Supervised, unsupervised, and semi-supervised learning c. Supervised, unsupervised, and reinforcement learning

C

What are the stages involved in building a machine learning model? a) Model evaluation, model training, data preparation, model selection, data collection b) Data preparation, model selection, data collection, model evaluation, model training c) Data collection, data preparation, model selection, model training, model evaluation d) Model selection, data preparation, data collection, model training, model evaluation

C

What is narrow AI? a. A human-like intelligence exhibited by machines b. A machine that can exhibit a broad range of human-like abilities c. A machine that is specialized in a specific task d. A form of AI that does not exist in the industry

C

What are some applications of machine learning? A) Computer vision, natural language processing, recommendation systems, and speech recognition. B) Game design, website development, and graphic design. C) Automotive engineering, aerospace engineering, and civil engineering. D) Medical research, biotechnology, and environmental science.

A

What are some of the applications of machine learning? a) Natural language processing, computer vision, speech recognition, recommendation systems, predictive modeling b) Artificial intelligence, computer graphics, network security, game development, image processing c) Data analysis, data science, database management, web development, software engineering d) Human-computer interaction, computer networks, cryptography, computer architecture, parallel computing

A

What are some tasks that are more difficult for computers to perform? A) Detecting human emotions and recognizing objects such as a cat. B) Performing complex mathematical calculations. C) Recognizing patterns in data. D) Executing code to play a game of chess.

A

What are the benefits of machine learning? A) It allows computers to perform tasks that are too complex or too time-consuming for humans to do. B) It enables computers to perform tasks only with human input. C) It makes it possible for computers to perform tasks that were previously only possible for humans to do. D) It reduces the need for humans to perform complex tasks.

A

What is AI? a. A human-like intelligence exhibited by machines b. A form of intelligence that only exists in humans c. A machine that can only perform specific tasks d. A form of intelligence that can only be found in animals

A

What is data engineering? a. The process of collecting, storing, and organizing data in a way that makes it usable for analysis b. The analysis of data to drive action towards a business goal c. The science of getting computers to act without being explicitly programmed d. A technique for machine learning that involves the use of artificial neural networks

A

What is data science? a) A field that encompasses machine learning and data analysis b) The examination and interpretation of data c) A tool for automating decision making d) The study of computer science and artificial intelligence

A

What is the definition of machine learning? A) The ability of computers or machines to learn from data and make predictions or take actions without being explicitly programmed to do so. B) A type of computer program that can only perform tasks described in code. C) A method for computers to perform complex tasks through human input. D) The process of teaching computers to perform tasks through trial and error.

A

What is the main goal of unsupervised learning? a. To create categories based on data points b. To predict future outcomes c. To make real-time decisions

A

What is the purpose of reinforcement learning? a. To learn through trial and error and rewards and punishments b. To make predictions based on incoming data c. To automate manual tasks

A

What is deep learning? a. A technique for implementing artificial intelligence b. A form of AI that does not exist in the industry c. A machine that is specialized in a specific task d. A technique for machine learning that involves the use of artificial neural networks

D

What is the goal of machine learning? a) To improve human decision making b) To automate the process of decision making c) To create algorithms and models d) To identify patterns in data

D


Kaugnay na mga set ng pag-aaral

Anatomy and Physiology: Chapter 7

View Set

- ALL 46 PRESIDENTS OF THE USA -

View Set

Risk Management: Emergency and Spill Response

View Set