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ARTIFICIAL
INTELLIGENCE
What is Intelligence?
ACTIVITY 1
Lets”s look at a Smart Phone
Today’s phone can do much more than call people.
List out any 5 areas where you use Smart Phone.
ACTIVITY
List out some of the problems faced by the School. Fill it in the blank circles
UNDERSTANDING MEANING OF DATA
Look at he table below :
Does this dataset tell you a story?
Do you think it mirrors an
association between marks
obtained and attendance?
Can you extract 5 observations
from this dataset? [Although this is
a very small dataset, can you still
take a shot at it?
ACTIVITY
Open the URL https://data.gov.in/node/6721404 in your web browser.
Reference URL: https://myspeed.trai.gov.in/ - Click on this link.
Now answer a few questions:
1. Who owns and maintains this dataset?
2. What kind of data does it hold?
3. Why the Government of India stores these data?
4. Why has the government made this data public?
5. Do you see the use of such archives in Artificial Intelligence Machine Learning?
6. Can you do a simple web search and find three other such sources of data?
Activity
Create a dataset abbot yourself with the following attributes as fields
CAN YOU GUESS
Activity
Suppose you have a data set entailing images of different bikes and cars.
Now you need to train the machine on how to classify all the different images.
How will you create your labelled data?
(Minimum 5 points)
[Hint – If there are 2 wheels and 1 headlight on the front it will be labelled as a ‘Bike’]
Create a Presentation on
"People's Perception of AI"
Do an online search
on the topic how
people view AI
1
Do the search as
Images only
2
From the images
draw the conclusion
and prepare the
presentation
3
ACTIVITY:
Alexa or any other voice assistants works well when there is internet and
does not work where there is no internet.
Research on the web and make a document on your findings.

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ACTIVITIES.pptx

  • 3. ACTIVITY 1 Lets”s look at a Smart Phone Today’s phone can do much more than call people. List out any 5 areas where you use Smart Phone.
  • 4.
  • 5. ACTIVITY List out some of the problems faced by the School. Fill it in the blank circles
  • 6. UNDERSTANDING MEANING OF DATA Look at he table below : Does this dataset tell you a story? Do you think it mirrors an association between marks obtained and attendance? Can you extract 5 observations from this dataset? [Although this is a very small dataset, can you still take a shot at it?
  • 7. ACTIVITY Open the URL https://data.gov.in/node/6721404 in your web browser. Reference URL: https://myspeed.trai.gov.in/ - Click on this link. Now answer a few questions: 1. Who owns and maintains this dataset? 2. What kind of data does it hold? 3. Why the Government of India stores these data? 4. Why has the government made this data public? 5. Do you see the use of such archives in Artificial Intelligence Machine Learning? 6. Can you do a simple web search and find three other such sources of data?
  • 8. Activity Create a dataset abbot yourself with the following attributes as fields CAN YOU GUESS
  • 9. Activity Suppose you have a data set entailing images of different bikes and cars. Now you need to train the machine on how to classify all the different images. How will you create your labelled data? (Minimum 5 points) [Hint – If there are 2 wheels and 1 headlight on the front it will be labelled as a ‘Bike’]
  • 10. Create a Presentation on "People's Perception of AI" Do an online search on the topic how people view AI 1 Do the search as Images only 2 From the images draw the conclusion and prepare the presentation 3
  • 11. ACTIVITY: Alexa or any other voice assistants works well when there is internet and does not work where there is no internet. Research on the web and make a document on your findings.