Q11. After the pandemic, it’s been essential for everyone to wear a mask. However, you see many people not wearing masks when in public places. Which domain of AI can be used to build a system to detect people not wearing masks?
Ans. An online game that recognizes the image drawn is Quick, Draw developed by Google. It uses a neural network artificial intelligence to guess what the drawings represent.
The AI domain used by this game is Computer Vision
AI Reflection Project Cycle and Ethics Class 9 Question Answers
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Q13. What are the various stages of Al Project Cycle? Can you explain each with an example?
1. Problem Scoping: It is the first stage of AI Project cycle. It means to identify a specific problem. for example Cotton fields are damaged by the pink bollworm.
2. Data Acquisition: In this stage, we collect the data for our AI Project from various sources. for example collecting the images of fields, names of farmers, villages etc.
3. Data Exploration: This stage helps to analyse and understand the data by exploring different types of graphs and identify the pattern and trend out of it.
4. Modelling: This stage involves selecting appropriate AI models which match our requirement. After choosing the model, we implement it. This is known as the modelling stage.
5. Evaluation: In this stage, we evaluate each and every model tried and choose the model which gives the most efficient and reliable result. This stage of testing the model is called Evaluation.
6. Deployment: The last stage where we deploy our solution based on the model we have selected is called Deployment.
Q14. How is an Al project different from an IT project?
Ans. 4Ws problem canvas help in identifying four important parameters we need to know for solving a problem. It refers to Who, What, Where and Why
1. Who: In this block we find out who the ‘Stakeholders’ to this problem and what we know about them..
2. What: At this block, we need to determine the nature of the problem. What is the problem and how do you know that it is a problem?
3. Where: This blocks helps to focus on the context/situation/location of the problem.
4. Why: This block helps to think about the benefits which the stakeholders would get from the solution and how would it benefit them as well as the society.
Q16. Why is there a need to use a Problem Statement Template during problem scoping?
Ans. The Problem Statement Template helps us to summarise all the key points into one single Template so that in future, whenever there is a need to look back at the basis of the problem, we can take a look at the Problem Statement Template and understand the key elements of it.
Q17. What is Problem Scoping? What are the steps of Problem Scoping?
Ans. We should keep in mind while collecting data that the data which we collect is open-sourced and not someone’s property. Extracting private data can be an offense.
One of the most reliable and authentic sources of information are the open-sourced websites hosted by the government.
Q22. Imagine you are responsible to enable farmers from a village to take their produce to the market for sale. Can you draw a system map that encompasses all the steps and factors involved?
Ans. Data Exploration means to have a closer look of data which we collected in the previous step ie Data Acquisition to understand the data in a better way.
Significance of Data Exploration are:
1. It helps to understand the data in a better way.
For example: To create an AI solution to predict the next salary of employee then the data collected would be service years, salary amount, increment percentage, increment period, bonus, etc.
2. It is very useful to find Patterns and Trends in data.
For example: By exploring data, we might notice that increment also depends on total service years. Identifying such pattern is helpful in designing AI Solutions
3. Identifying missing terms.
For example: After collecting data we may find that salary of few employees are missing.
Q30. What do you think is the relevance of Data Visualization in Al?
Ans. Data Acquisition: It is the second stage of AI Project cycle. In this stage, we collect the data for our AI Project from various sources like surveys, web scraping, sensors etc
Data Exploration: It is the third step of AI Project Cycle. This stage mainly focus on understanding the data by exploring different types of graphs and identify the pattern and trend out of it.
Q33. Use an example to explain at least one Data Visualization technique.
1. Problem Scoping: It is the first step of AI Project cycle. It means to identify a specific problem. for example Cotton fields are damaged by the pink bollworm.
2. Data Acquisition: In this stage, we collect the data for our AI Project. for example collecting the images of fields, names of farmers, villages etc.
3. Data Exploration: This stage helps to analyse and understand the data by exploring different types of graphs and identify the pattern and trend out of it.
4. Modelling: This stage involves selecting appropriate AI models which match our requirement. After choosing the model, we implement it. This is known as the modelling stage.
5. Evaluation: In this stage, we evaluate each and every model tried and choose the model which gives the most efficient and reliable result. This stage of testing the model is called Evaluation.
6. Deployment: The last stage where we deploy our solution based on the model we have selected is called Deployment
Q38. What is Artificial Intelligence? Give an example where Al is used in day-to-day life.
Ans.Artificial intelligence is a technology that refers to the development of such machines which can perform such task that required Human Intelligence.
Some AI Applications
1. Face Lock in Smartphones
The front camera detects and captures the face and saves its features during initiation. Next time onwards, whenever the features match, the phone is unlocked.
2. Smart assistants
Smart assistants like Apple’s Siri and Amazon’s Alexa recognize and understand and then provide a useful response.
3. Fraud and Risk Detection
Finance companies were fed with bad debts and losses every year. They decided to bring in data scientists to rescue them from losses. Over the years, banking companies learned to divide and conquer data via customer profiling, past expenditures, and other essential variables to analyse the probabilities of risk and default.
4. Medical Imaging
The application is used to read and convert 2D scan images into interactive 3D models that enable medical professionals to gain a detailed understanding of a patient’s health condition.
Q39. How is Machine Learning related to Artificial Intelligence?
Ans. Artificial Intelligence is the umbrella terminology which covers machine learning under it. In other words we can say that Machine learning is the subset of Artificial Intelligence.
Q40. Compare and contrast Rule-based and Learning-based approach in Al modeling indicating clearly when each of these may be used.
Ans. A Rule based approach is generally based on the data and rules fed to the machine, where the machine reacts accordingly to deliver the desired output.
Under learning approach, the machine is fed with data and the desired output to which the machine designs its own algorithm (or set of rules) to match the data to the desired output fed into the machine
Q41. Identify which of the following are examples of classification/regression/clustering.
a. Making a diagnosis for a patient on the basis of their symptoms b. Price prediction for a house coming up on sale c. HR shortlisting applications for interview based on information provided in candidates’ resume d. Credit Card Fraud prevention e. SPAM filters
Ans. Evaluation is the process of understanding the reliability of any AI model, based on outputs by feeding test dataset into the model and comparing with actual answers.
Q43. What are various Model evaluation techniques?
Ans.Deployment is an important phase in the AI project cycle because this is the stage where AI project start interacting with user and shows its accuracy and efficiency
Q50. What are some common challenges in deploying AI models?
Ans. No, it will not be considered as theft. It is an ethical concern.
Q59. Rakshit and Aman are talking about purchasing a new mobile. They discuss various features which they want in their mobile. Aman finds that, he started getting notification of various models of Mobiles that meets his requirement? Write which ethical concern the above example depicts.
Ans. Search for images of personal secretary on Google, displaying predominantly the images of Women is an example of Bias
Q63. An Ethical AI framework makes sure that transparency, fairness and accountability is develop into the systems to provide unbiased results. (True/False)
Ans. The following principles in AI Ethics affect the quality of AI solutions
Human Rights: AI systems should respect human rights and ensure that AI should not be used to take away their freedom.
Bias: Bias (partiality or preference for one over the other) often comes from the collected data. The bias in training data also appears in the results.
Privacy: AI system should keep our personal data safe and protected. We need to have rules which keep our individual and private data safe.
Inclusion: It means that AI must not discriminate against a particular group of population, causing them any kind of disadvantage.
Ans. Data Privacy: AI system should keep our personal data safe and protected. We need to have rules which keep our individual and private data safe. Here are a few things that we should take care of
▪ Does our AI collect personal data from people?
▪ What does it do with the data?
▪ Does our AI let people know about the data that it is collecting for its use?
▪ Will our AI ensure a person’s safety? Or will it compromise it?
Q67. Craft a description of how considerations for inclusivity are addressed during the development of AI models.
Ans. Inclusivity in AI development is addressed by ensuring that different dataset is used in designing AI models, people from different background are involved in designing process so that AI system will work well without biasedness.
1. AI System can be biased, if they are trained on faulty data.
2. AI often uses personal data which can be misused.
3. AI may cause unemployment in society.
4. AI system can be hacked and modified by hackers.
Q69. A company had been working on a secret AI recruiting tool. The machine-learning specialists uncovered a big problem: their new recruiting engine did not like women chefs. The system taught itself that male candidates are preferable. It penalised resumes that included the word “women chef”. This led to the failure of the tool. a. What aspect of AI ethics is illustrated in the given scenario? b. What could be the possible reasons for the ethical concern identified?
b. The possible reason would be that the training data must be biased.
Q70. As Artificially Intelligent machines become more and more powerful, their ability to accomplish tedious tasks is becoming better. Hence, it is now that AI machines have started replacing humans in factories. While people see it in a negative way and say AI has the power to bring mass unemployment and one day, machines would enslave humans, on the other hand, other people say that machines are meant to ease our lives. If machines over take monotonous and tedious tasks, humans should upgrade their skills to remain their masters always. What according to you is a better approach towards this ethical concern? Justify your answer.
Ans. According to me AI is to support human and not to replace human. Instead of fearing AI we have to focus on increasing our skills so that we can use AI to do our task smartly and quickly.