Hardware Accelerators For Machine Learning A Complete Guide - 2020 Edition. Gerardus Blokdyk
Чтение книги онлайн.

Читать онлайн книгу Hardware Accelerators For Machine Learning A Complete Guide - 2020 Edition - Gerardus Blokdyk страница 5

СКАЧАТЬ about Hardware accelerators for machine learning?

      <--- Score

      64. When a Hardware accelerators for machine learning manager recognizes a problem, what options are available?

      <--- Score

      65. Is the need for organizational change recognized?

      <--- Score

      66. For your Hardware accelerators for machine learning project, identify and describe the business environment, is there more than one layer to the business environment?

      <--- Score

      67. What is the recognized need?

      <--- Score

      68. Are there regulatory / compliance issues?

      <--- Score

      69. What is the problem or issue?

      <--- Score

      70. What vendors make products that address the Hardware accelerators for machine learning needs?

      <--- Score

      71. What would happen if Hardware accelerators for machine learning weren’t done?

      <--- Score

      72. What extra resources will you need?

      <--- Score

      73. Will new equipment/products be required to facilitate Hardware accelerators for machine learning delivery, for example is new software needed?

      <--- Score

      74. What are the clients issues and concerns?

      <--- Score

      75. What Hardware accelerators for machine learning events should you attend?

      <--- Score

      76. Are employees recognized or rewarded for performance that demonstrates the highest levels of integrity?

      <--- Score

      77. Who needs budgets?

      <--- Score

      78. Are your goals realistic? Do you need to redefine your problem? Perhaps the problem has changed or maybe you have reached your goal and need to set a new one?

      <--- Score

      79. Think about the people you identified for your Hardware accelerators for machine learning project and the project responsibilities you would assign to them, what kind of training do you think they would need to perform these responsibilities effectively?

      <--- Score

      80. Do you need to avoid or amend any Hardware accelerators for machine learning activities?

      <--- Score

      81. Are there any revenue recognition issues?

      <--- Score

      82. Looking at each person individually – does every one have the qualities which are needed to work in this group?

      <--- Score

      83. Who needs to know?

      <--- Score

      84. How much are sponsors, customers, partners, stakeholders involved in Hardware accelerators for machine learning? In other words, what are the risks, if Hardware accelerators for machine learning does not deliver successfully?

      <--- Score

      85. Consider your own Hardware accelerators for machine learning project, what types of organizational problems do you think might be causing or affecting your problem, based on the work done so far?

      <--- Score

      86. What should be considered when identifying available resources, constraints, and deadlines?

      <--- Score

      87. What are the timeframes required to resolve each of the issues/problems?

      <--- Score

      88. What do you need to start doing?

      <--- Score

      89. What tools and technologies are needed for a custom Hardware accelerators for machine learning project?

      <--- Score

      90. Will Hardware accelerators for machine learning deliverables need to be tested and, if so, by whom?

      <--- Score

      91. Do you need different information or graphics?

      <--- Score

      92. What is the extent or complexity of the Hardware accelerators for machine learning problem?

      <--- Score

      93. How does it fit into your organizational needs and tasks?

      <--- Score

      94. What needs to stay?

      <--- Score

      95. Are you dealing with any of the same issues today as yesterday? What can you do about this?

      <--- Score

      96. What needs to be done?

      <--- Score

      97. What do employees need in the short term?

      <--- Score

      Add up total points for this section: _____ = 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?

      <--- Score

      2. СКАЧАТЬ