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Test : Introduction to AI - 2 - Class 10 MCQ


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10 Questions MCQ Test Artificial Intelligence for Class 10 - Test : Introduction to AI - 2

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Test : Introduction to AI - 2 - Question 1

Which of the following is an example of a CV?

Detailed Solution for Test : Introduction to AI - 2 - Question 1

In the context of Artificial Intelligence, CV stands for Computer Vision. Computer Vision is a field of AI that enables machines to interpret and make decisions based on visual data. Here's how the options relate to Computer Vision:

  1. Self-driving cars: These use computer vision to recognize and interpret the environment, including objects, road signs, and other vehicles.

  2. Smart Interactions: This can involve computer vision for recognizing gestures or facial expressions.

  3. Face Locks: This is a direct application of computer vision where facial recognition technology is used for security purposes.

  4. All of these: Since all the listed options involve the application of computer vision technology, this is the most accurate choice.

So the correct answer is:

4. All of these

 

 

 

 

4o mini

 

 

 

Test : Introduction to AI - 2 - Question 2

Which of the following translate digital visual data into descriptions then turned into the computer-readable language to aid the decision-making?

Detailed Solution for Test : Introduction to AI - 2 - Question 2
Computer Vision
- Computer Vision is the technology that translates digital visual data into descriptions.
- It is used to analyze and understand images or videos.
- By using algorithms and machine learning, computer vision systems can recognize objects, identify patterns, and make decisions based on visual data.
- Computer vision helps computers see and interpret visual information like humans do.
- It plays a crucial role in various applications such as facial recognition, autonomous vehicles, medical imaging, and surveillance systems.
- The process involves multiple steps, including image acquisition, preprocessing, feature extraction, and decision-making.
- Computer vision systems can convert visual data into a computer-readable language, enabling computers to make automated decisions based on the analyzed information.
- Computer vision has a wide range of practical applications and is continuously evolving with advancements in technology.
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Test : Introduction to AI - 2 - Question 3

Which of the following is an example of NLP?

Detailed Solution for Test : Introduction to AI - 2 - Question 3
Example of NLP:
Online translators:
- Online translators use Natural Language Processing (NLP) techniques to understand and translate text from one language to another.
- NLP algorithms analyze the structure, grammar, and context of the input text to generate accurate translations.
- These translators can handle complex sentences, idioms, and different language nuances, making them effective tools for communication.
Email filters:
- Email filters rely on NLP to classify and categorize incoming emails based on their content.
- NLP algorithms analyze the text in emails to identify spam, phishing attempts, or important messages.
- By understanding the language patterns, keywords, and context, email filters can effectively separate legitimate emails from unwanted or malicious ones.
Smart Assistants:
- Smart assistants like Siri, Alexa, and Google Assistant use NLP techniques to understand user queries and provide relevant responses.
- NLP algorithms process and interpret the user's spoken or written language to perform tasks or answer questions.
- These assistants can understand and respond to a wide range of commands and queries, making them valuable tools for productivity and convenience.
All of these:
- All the examples mentioned above - online translators, email filters, and smart assistants - are applications of NLP.
- They demonstrate how NLP enables machines to understand and process human language effectively.
- NLP plays a crucial role in improving communication, automating tasks, and enhancing user experiences in various domains.
In conclusion, all of the given options (A, B, C) are examples of NLP. Online translators, email filters, and smart assistants utilize NLP techniques to understand and process human language for translation, categorization, and interaction purposes.
Test : Introduction to AI - 2 - Question 4

Which of the following is an example of data science?

Detailed Solution for Test : Introduction to AI - 2 - Question 4
Data Science Example: Price Comparison websites
Price comparison websites are an example of data science because they involve the use of data analysis techniques to gather and compare prices from various sources. Here is a detailed explanation:
1. Data Collection:
- Price comparison websites collect data from different online retailers and sources.
- This data includes product information, prices, availability, and customer reviews.
- The websites use web scraping techniques to retrieve this information.
2. Data Processing:
- The collected data is processed and cleaned to remove any inconsistencies or errors.
- This involves data normalization, standardization, and deduplication.
- The processed data is stored in a structured format for efficient analysis.
3. Data Analysis:
- Data science techniques such as statistical analysis and machine learning are used to analyze the collected data.
- The websites utilize algorithms to compare prices and identify the best deals.
- They also provide visualizations and insights to help users make informed purchasing decisions.
4. Personalization:
- Price comparison websites often personalize their recommendations based on user preferences and historical data.
- They use collaborative filtering and recommendation algorithms to suggest relevant products to users.
- This enhances the user experience and increases the likelihood of finding the best deals.
5. Continuous Improvement:
- Data science techniques are continuously applied to improve the accuracy and efficiency of price comparison websites.
- They analyze user feedback and behavior to refine their algorithms and provide better recommendations.
- The websites also monitor market trends and adjust their data collection and analysis strategies accordingly.
Overall, price comparison websites exemplify the application of data science in collecting, processing, analyzing, and providing valuable insights to users for making informed purchasing decisions.
Test : Introduction to AI - 2 - Question 5

You are getting Amazon, Netflix, Spotify, youtube recommendations are based on which of the following?

Detailed Solution for Test : Introduction to AI - 2 - Question 5
Amazon, Netflix, Spotify, and YouTube recommendations are based on user behavior.
User behavior is the key factor in determining the recommendations provided by these platforms. Here is a detailed explanation of how user behavior influences the recommendations:
1. User preferences:
- These platforms collect data on users' preferences, such as the types of products they browse or purchase (Amazon), the genres of movies or TV shows they watch (Netflix), the genres of music they listen to (Spotify), and the types of videos they watch (YouTube).
- User preferences are used to create a profile that reflects their interests and tastes.
2. Machine learning algorithms:
- These platforms employ complex machine learning algorithms that analyze user behavior patterns and preferences.
- These algorithms take into account factors like previous interactions, ratings, reviews, and search history.
3. Personalization:
- Based on the collected data and analysis, personalized recommendations are generated for each user.
- The algorithms consider similarities between users with similar preferences and behaviors to suggest products, movies, songs, or videos that the user might enjoy.
4. Continuous learning:
- These platforms are constantly learning and adapting to users' changing preferences and behavior.
- Feedback from users, such as ratings, reviews, and interactions, is used to further refine the recommendations.
5. Recommendations based on trends:
- In addition to user behavior, these platforms may also consider popular trends, new releases, and trending content to provide a mix of personalized recommendations and popular choices.
Conclusion:
The recommendations provided by Amazon, Netflix, Spotify, and YouTube are primarily based on user behavior. The platforms analyze user preferences, employ machine learning algorithms, personalize recommendations, and continuously learn from user feedback to provide tailored suggestions. These recommendations are designed to enhance user experience and help users discover new content that aligns with their interests and preferences.
Test : Introduction to AI - 2 - Question 6

The full form of NLU is _____________

Detailed Solution for Test : Introduction to AI - 2 - Question 6
The full form of NLU is Natural Language Understanding.
- Natural Language Understanding (NLU) is a subfield of artificial intelligence (AI) that focuses on the interaction between computers and human language.
- NLU aims to enable computers to understand and interpret human language in a way that is meaningful and useful.
- It involves the development of algorithms and models that can process and analyze natural language data, such as text or speech, to extract relevant information and derive meaning from it.
- NLU systems often incorporate techniques from various fields, including linguistics, machine learning, and natural language processing (NLP).
- NLU is used in various applications, such as virtual assistants, chatbots, voice recognition systems, sentiment analysis, text classification, and information retrieval.
- By understanding natural language, computers can better communicate and interact with humans, leading to improved user experiences and more efficient information processing.
Test : Introduction to AI - 2 - Question 7

The full form of NLG is ___________

Detailed Solution for Test : Introduction to AI - 2 - Question 7
Natural Language Generation (NLG)
NLG stands for Natural Language Generation. It is a subfield of artificial intelligence (AI) that focuses on generating natural language texts or speech from structured data or other forms of non-linguistic input. NLG systems analyze and interpret data to produce human-like language output that is coherent and understandable.
Uses of NLG
- NLG is used in various applications such as chatbots, virtual assistants, and customer service automation to generate responses and interact with users in a more natural and human-like manner.
- NLG is also utilized in data visualization to automatically generate textual summaries, explanations, or reports based on the underlying data.
- In journalism, NLG is employed to automatically generate news articles and reports based on structured data or event descriptions.
- NLG is used in e-commerce to generate product descriptions and personalized recommendations for customers.
Benefits of NLG
- NLG reduces the time and effort required to create content by automatically generating human-like language.
- It can handle large amounts of data and generate customized reports or summaries based on specific criteria.
- NLG enables personalized communication and improves user engagement by providing natural language responses.
- It can assist in decision-making processes by generating detailed explanations or insights from complex data.
Conclusion
NLG plays a crucial role in transforming structured data into human-readable and understandable language. Its applications span across various domains and industries, offering benefits such as efficiency, personalization, and improved user experiences.
Test : Introduction to AI - 2 - Question 8

Which of the following is not a domain of AI?

Detailed Solution for Test : Introduction to AI - 2 - Question 8
Explanation:

  • Data Science: Data science is a domain of AI that involves the extraction, analysis, and interpretation of large sets of data to gain insights and make informed decisions.

  • Computer Vision: Computer vision is a domain of AI that focuses on enabling computers to understand and interpret visual information from images or videos.

  • Natural Language Processing: Natural language processing is a domain of AI that deals with the interaction between computers and human language, including speech recognition, natural language understanding, and natural language generation.

  • Neural Network: Neural networks are an integral part of AI and machine learning. They are algorithms inspired by the structure and function of the human brain, used for pattern recognition and learning from data.


Since all the given options - Data Science, Computer Vision, Natural Language Processing, and Neural Network - are domains of AI, the correct answer is option D: Neural Network.
Test : Introduction to AI - 2 - Question 9

Which of the following is not AI?

Detailed Solution for Test : Introduction to AI - 2 - Question 9
Explanation:
The correct answer is C: An automated Air Conditioner. Here's why:
Humanoid Robots:
- Humanoid robots are designed to resemble and perform tasks like humans.
- They use AI algorithms and technologies to sense and interact with the environment.
- They can learn and adapt to their surroundings, making them an example of AI.
Self-Driving Cars:
- Self-driving cars use AI algorithms and technologies, such as computer vision and machine learning, to navigate and operate without human intervention.
- They can sense the environment, make decisions, and control the vehicle based on the gathered data.
- They continuously learn and improve their driving capabilities, making them an example of AI.
An Automated Air Conditioner:
- While an automated air conditioner may have some level of automation and smart features, it does not typically utilize AI algorithms or technologies.
- Automated air conditioners primarily rely on pre-programmed settings and sensors to maintain desired temperature levels.
- They do not possess the ability to learn or adapt to changing conditions, making them an example of automation rather than AI.
In conclusion:
- Humanoid robots and self-driving cars are examples of AI as they utilize AI algorithms and technologies to perform tasks and adapt to their environment.
- An automated air conditioner, on the other hand, lacks the use of AI and primarily relies on pre-programmed settings and sensors for automation.
Test : Introduction to AI - 2 - Question 10

Which of the following is the very first humanoid robot?

Detailed Solution for Test : Introduction to AI - 2 - Question 10

The First Humanoid Robot: Sophia



  • Sophia is the very first humanoid robot among the options given.

  • Sophia was developed by Hanson Robotics and introduced to the public in 2016.

  • She is known for her human-like appearance and ability to express emotions.

  • Sophia has made numerous appearances at events around the world, including interviews and speeches.

  • She has been featured in various media outlets and has become a popular figure in the field of robotics and artificial intelligence.


Other Humanoid Robots



  • ASIMO is a humanoid robot developed by Honda.

  • ASIMO was introduced in 2000 and has been recognized for its advanced capabilities in mobility and interaction.

  • Pepper is a humanoid robot developed by SoftBank Robotics.

  • Pepper is designed to be a companion robot and is equipped with features for communication and interaction with humans.

  • Romeo is a humanoid robot developed by Aldebaran Robotics (now SoftBank Robotics).

  • Romeo was designed to assist elderly and disabled individuals in their daily activities.


Conclusion



  • Among the options given, Sophia is the first humanoid robot.

  • ASIMO, Pepper, and Romeo are also notable humanoid robots, but they were developed and introduced after Sophia.

  • Sophia's human-like appearance and expressive abilities have made her a prominent figure in the field of robotics.

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