1. What Is a Pictogram? 2

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1. What Is a Pictogram? 2 Canonbury Home Learning Year 2/3 Maths Steppingstone activity Lesson 5 – 26.06.2020 LO: To interpret and construct simple pictograms Success Criteria: 1. Read the information about pictograms 2. Use the information in the Total column to complete the pictogram 3. Find some containers around your house and experiment with their capacity – talk through the questions with someone you live with 1. What is a pictogram? 2. Complete the pictogram: A pictogram is a chart or graph which uses pictures to represent data. They are set out the same way as a bar chart but use pictures instead of bars. Each picture could represent one item or more than one. Today we will be drawing pictograms where each picture represents one item. 2. Use the tally chart to help you complete the pictogram: Canonbury Home Learning Year 2/3 Maths Lesson 5 – 26.06.2020 LO: To interpret and construct simple pictograms Task: You are going to be drawing pictograms 1-1 Success Criteria: 1. Read the information about pictograms 2. Task 1: Use the information in the table to complete the pictogram 3. Task 2: Use the information in the tally chart and pictogram to complete the missing sections of each Model: 2. 3. 1. What is a pictogram? A pictogram is a chart or graph which uses pictures to represent data. They are set out the same way as a bar chart but use pictures instead of bars. Each picture could represent one item or more than one. Today we will be drawing pictograms where each picture represents one item. Canonbury Home Learning Year 2/3 Maths Main activity Task 1 Task 2 Practice Practice Use the totals to complete the Complete the missing sections of the pictograms: tally charts and pictograms. 1. 1. 2. 2. 3. 3. Use the tally chart to complete the pictogram. 4. 4. Canonbury Home Learning Task 3 Task 4 Reasoning Problem solving Explain your answers. Canonbury Home Learning Challenge .
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