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12c - All - Unit 7                                          A01 18/11/08




                                                                                                                                           Design and create a
                                                                                                                     Explain clearly how
                                                                                              Full details of data
                     Explain thoroughy
                     the background to




                                                                            Justify success
                                                         Identify project




                                                                                              to be collected
                                         Set a complex




                                                                                                                                           questionnaire
                                                                                                                     to process it
                     the problem




                                         Hypothesis




                                                         Objectives




                                                                            criteria
           Name




Abbas, Numan
Akhtar, Farsia
Banars, Mohmmad
Dobie, Gary
Durkin, Laura
Elves, Jamie
Exley, Craig
Flynn, Samantha
Fradgley, Nathan
Greenwood, David
Hagan, James
Hails, Tony
Henderson, Jamie
Hussain, Amar
Hussain, Muzaid
Johnston, Jordan
Jones, Tony
Khan, Muzafar
Lambert, Shaun
Lappin, Andrew
McDonald, Gemma
McPartlin, Emma
Noble, Stacey
Nordmann, Naomi
Rahman, Mohammed
Rutter, Sarah
Williams, Kyle
Zafar, Khuram
gather a wide range
of data



Justify sample and
size



Hardware &
Software required
                         A02




Identify areas of
potentail errors in
their sampling


Describe the
constraints that will
affect your study



Explain steps taken
to eliminate bias



Create an effective
interface



Collect data and
store it securely
                         A03




thorough
understanding of
data protection
legislation


Effective structure
to present the
results of their study
range of validation
methods to reduce
errors



Appropriate
formatting
                       A04




Functions to
summarise the data



Fully analise the
data



Test plan to check
spreadsheet



3 different charts
which link in with
your hypothesis


Explain why you
have chosen the
                       A05




chart


Formatting and
labelling to produce
professional charts



Presentation on
your findings


Talk about;
Hypothesis, range of
tables, graphs and
charts,
                       A06
Prepare a detailed
commentary to
explain their
findings
                       A06



Advanced
PowerPoint features
Candidates will
evaluate whether the
analysis has
supported or
disproved the
hypothesis and met
the identified
success evaluate
They willcriteria
the effectiveness of
the spreadsheet
model



Target 2008/09
12c - All - Unit 7 18/11/08
             A01                                                                   A02
Name         Explain thoroughy the background Justify problem criteria of data to be collected processaitwide range of data size
                         Set a complex Hypothesisthe success details Explain clearly howandgather a questionnaire and
                                   Identify project Objectives
                                                to          Full                   Design to create        Justify sample
Abbas, Numan
Akhtar, Farsia
Banars, Mohmmad
Dobie, Gary
Durkin, Laura
Elves, Jamie
Exley, Craig
Flynn, Samantha
Fradgley, Nathan
Greenwood, David
Hagan, James
Hails, Tony
Henderson, Jamie
Hussain, Amar
Hussain, Muzaid
Johnston, Jordan
Jones, Tony
Khan, Muzafar
Lambert, Shaun
Lappin, Andrew
McDonald, Gemma
McPartlin, Emma
Noble, Stacey
Nordmann, Naomi
Rahman, Mohammed
Rutter, Sarah
Williams, Kyle
Zafar, Khuram
A03                          A04
Hardware & Software required the constraints thatsampling your bias store it securely range of validation methods to reduce
          Identify areas of potentail errors in Create an affect
                      Describe Explain steps taken toeffectivedatathorough understanding of data protection legislation their s
                                                their will eliminate study
                                                           Collect interface
                                                                        and  Effective structure to present the results of
                                                                                                      Appropriate formatting
A05                                A06
Functions to summarise the plan to3check spreadsheetwhy link in withchosen the chartproduce Hypothesis, range ofPowerPoint fea
           Fully analise
                       Test data    different charts whichFormatting and labelling to about; Prepare a detailed commentary to ex
                                               Explain     you have Presentation on your findings
                                                                     your hypothesis
                                                                                 Talk         professional charts tables, graphs
                                                                                                        Advanced
CandidatesThey will evaluate the the analysis has the spreadsheet model the hypothesis and met the identified success criteria
          will evaluate whether effectiveness of supported or disproved
                      Target 2008/09
Abbas, Numan
Akhtar, Farsia
Banars, Mohmmad
Dobie, Gary
Durkin, Laura
Elves, Jamie
Exley, Craig
Flynn, Samantha
Fradgley, Nathan
Greenwood, David
Hagan, James
Hails, Tony
Henderson, Jamie
Hussain, Amar
Hussain, Muzaid
Johnston, Jordan
Jones, Tony
Khan, Muzafar
Lambert, Shaun
Lappin, Andrew
McDonald, Gemma
McPartlin, Emma
Noble, Stacey
Nordmann, Naomi
Rahman, Mohammed
Rutter, Sarah
Williams, Kyle
Zafar, Khuram

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12c Level 3 Unit 3

  • 1. 12c - All - Unit 7 A01 18/11/08 Design and create a Explain clearly how Full details of data Explain thoroughy the background to Justify success Identify project to be collected Set a complex questionnaire to process it the problem Hypothesis Objectives criteria Name Abbas, Numan Akhtar, Farsia Banars, Mohmmad Dobie, Gary Durkin, Laura Elves, Jamie Exley, Craig Flynn, Samantha Fradgley, Nathan Greenwood, David Hagan, James Hails, Tony Henderson, Jamie Hussain, Amar Hussain, Muzaid Johnston, Jordan Jones, Tony Khan, Muzafar Lambert, Shaun Lappin, Andrew McDonald, Gemma McPartlin, Emma Noble, Stacey Nordmann, Naomi Rahman, Mohammed Rutter, Sarah Williams, Kyle Zafar, Khuram
  • 2. gather a wide range of data Justify sample and size Hardware & Software required A02 Identify areas of potentail errors in their sampling Describe the constraints that will affect your study Explain steps taken to eliminate bias Create an effective interface Collect data and store it securely A03 thorough understanding of data protection legislation Effective structure to present the results of their study
  • 3. range of validation methods to reduce errors Appropriate formatting A04 Functions to summarise the data Fully analise the data Test plan to check spreadsheet 3 different charts which link in with your hypothesis Explain why you have chosen the A05 chart Formatting and labelling to produce professional charts Presentation on your findings Talk about; Hypothesis, range of tables, graphs and charts, A06
  • 4. Prepare a detailed commentary to explain their findings A06 Advanced PowerPoint features Candidates will evaluate whether the analysis has supported or disproved the hypothesis and met the identified success evaluate They willcriteria the effectiveness of the spreadsheet model Target 2008/09
  • 5. 12c - All - Unit 7 18/11/08 A01 A02 Name Explain thoroughy the background Justify problem criteria of data to be collected processaitwide range of data size Set a complex Hypothesisthe success details Explain clearly howandgather a questionnaire and Identify project Objectives to Full Design to create Justify sample Abbas, Numan Akhtar, Farsia Banars, Mohmmad Dobie, Gary Durkin, Laura Elves, Jamie Exley, Craig Flynn, Samantha Fradgley, Nathan Greenwood, David Hagan, James Hails, Tony Henderson, Jamie Hussain, Amar Hussain, Muzaid Johnston, Jordan Jones, Tony Khan, Muzafar Lambert, Shaun Lappin, Andrew McDonald, Gemma McPartlin, Emma Noble, Stacey Nordmann, Naomi Rahman, Mohammed Rutter, Sarah Williams, Kyle Zafar, Khuram
  • 6. A03 A04 Hardware & Software required the constraints thatsampling your bias store it securely range of validation methods to reduce Identify areas of potentail errors in Create an affect Describe Explain steps taken toeffectivedatathorough understanding of data protection legislation their s their will eliminate study Collect interface and Effective structure to present the results of Appropriate formatting
  • 7. A05 A06 Functions to summarise the plan to3check spreadsheetwhy link in withchosen the chartproduce Hypothesis, range ofPowerPoint fea Fully analise Test data different charts whichFormatting and labelling to about; Prepare a detailed commentary to ex Explain you have Presentation on your findings your hypothesis Talk professional charts tables, graphs Advanced
  • 8. CandidatesThey will evaluate the the analysis has the spreadsheet model the hypothesis and met the identified success criteria will evaluate whether effectiveness of supported or disproved Target 2008/09
  • 9. Abbas, Numan Akhtar, Farsia Banars, Mohmmad Dobie, Gary Durkin, Laura Elves, Jamie Exley, Craig Flynn, Samantha Fradgley, Nathan Greenwood, David Hagan, James Hails, Tony Henderson, Jamie Hussain, Amar Hussain, Muzaid Johnston, Jordan Jones, Tony Khan, Muzafar Lambert, Shaun Lappin, Andrew McDonald, Gemma McPartlin, Emma Noble, Stacey Nordmann, Naomi Rahman, Mohammed Rutter, Sarah Williams, Kyle Zafar, Khuram