_____ = Total points for this section
Divided by: ______ (number of statements answered) = ______ Average score for this section
Transfer your score to the Hardware accelerators for machine learning Index at the beginning of the Self-Assessment.
CRITERION #2: DEFINE:
INTENT: Formulate the stakeholder problem. Define the problem, needs and objectives.
In my belief, the answer to this question is clearly defined:
5 Strongly Agree
4 Agree
3 Neutral
2 Disagree
1 Strongly Disagree
1. Are all requirements met?
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2. What are the Hardware accelerators for machine learning tasks and definitions?
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3. What is the scope?
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4. Is data collected and displayed to better understand customer(s) critical needs and requirements.
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5. Is it clearly defined in and to your organization what you do?
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6. How do you build the right business case?
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7. What is a worst-case scenario for losses?
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8. Do you all define Hardware accelerators for machine learning in the same way?
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9. Has the improvement team collected the ‘voice of the customer’ (obtained feedback – qualitative and quantitative)?
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10. Who approved the Hardware accelerators for machine learning scope?
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11. Have all of the relationships been defined properly?
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12. How are consistent Hardware accelerators for machine learning definitions important?
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13. What Hardware accelerators for machine learning services do you require?
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14. Do you have organizational privacy requirements?
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15. When are meeting minutes sent out? Who is on the distribution list?
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16. Are approval levels defined for contracts and supplements to contracts?
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17. How do you manage unclear Hardware accelerators for machine learning requirements?
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18. What are the Roles and Responsibilities for each team member and its leadership? Where is this documented?
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19. What baselines are required to be defined and managed?
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20. What is the definition of Hardware accelerators for machine learning excellence?
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21. Who are the Hardware accelerators for machine learning improvement team members, including Management Leads and Coaches?
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22. What is out-of-scope initially?
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23. Is Hardware accelerators for machine learning linked to key stakeholder goals and objectives?
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24. What happens if Hardware accelerators for machine learning’s scope changes?
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25. What system do you use for gathering Hardware accelerators for machine learning information?
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26. What is the worst case scenario?
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27. How do you catch Hardware accelerators for machine learning definition inconsistencies?
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28. Has your scope been defined?
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29. Have specific policy objectives been defined?
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30. What are the Hardware accelerators for machine learning use cases?
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31. Are audit criteria, scope, frequency and methods defined?
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32. Do you have a Hardware accelerators for machine learning success story or case study ready to tell and share?
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33. Is Hardware accelerators for machine learning required?
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34. Has a high-level ‘as is’ process map been completed, verified and validated?
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35. What is the scope of the Hardware accelerators for machine learning work?
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36. In what way can you redefine the criteria of choice clients have in your category in your favor?
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37. How will variation in the actual durations of each activity be dealt with to ensure that the expected Hardware accelerators for machine learning results are met?
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38. How can the value of Hardware accelerators for machine learning be defined?
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39. Has a team charter been developed and communicated?
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40. What are (control) requirements for Hardware accelerators for machine learning Information?
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41. Why are you doing Hardware accelerators for machine learning and what is the scope?
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42. How do you manage scope?
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43. What customer feedback methods were used to solicit their input?
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44. How do you think the partners involved in Hardware accelerators for machine learning would have defined success?
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45. Does the team have regular meetings?
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46. What is in scope?
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47. How does the Hardware accelerators for machine learning manager ensure against scope creep?
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48. Where can you gather more information?
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49. What sort of initial information to gather?
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50. What key stakeholder process output measure(s) does Hardware accelerators