Business Intelligence And Big Data Apply A Design Theme

Business Intelligence And Big Dataapply A Design Themeto The Pre

Apply a Design Theme to the presentation Use APA style correctly throughout the presentation (this does not include the Times New Roman, 12 point font size– use the font size that is default for the Design Theme that is applied) Use correct grammar and punctuation Format correctly and consistently Include a cover slide , introduction slide at the beginning of the presentation, a conclusion slide at the end of the presentation, and a reference slide using APA format at the end of the presentation. Number all slides beginning with the cover slide as page 1 Utilize 10 references from scholarly sources … do NOT use Wikipedia or Patents (one source can be the textbook). References should be current (within the last ten years) Cite references within the presentation using correct APA format Include a minimum of 16 slides which will include the cover and reference slides Include at least one figure or one table in the presentation and format in APA style Include at least one slide that details global aspects of the project Highlight your knowledge of technology by including some transition and some animation Follow the 7x7 rule : No more than 7 bullets per slide, and no more than 7 words per bullet. If you wish to explain further in your presentation, please use the Notes Pane at the bottom of the slides.

Paper For Above instruction

Business Intelligence And Big Dataapply A Design Themeto The Pre

Business Intelligence And Big Dataapply A Design Themeto The Pre

This presentation explores the integration of Business Intelligence (BI) and Big Data with an emphasis on applying an effective design theme to enhance understanding and visual appeal. It covers essential aspects such as APA formatting, slide organization, visual elements, and global considerations, ensuring a comprehensive and professional presentation aligned with academic standards.

Introduction

In the rapidly evolving technological landscape, Business Intelligence and Big Data have become vital tools for organizations seeking to gain competitive advantages through data-driven decision-making. An effective presentation on this topic requires careful attention to design, referencing, and clarity. Applying a cohesive design theme not only enhances aesthetic appeal but also improves information delivery, making complex concepts more accessible. This paper outlines the key components necessary for developing a compelling PowerPoint presentation on Business Intelligence and Big Data, emphasizing APA formatting, visual aids, global aspects, and technological features.

Design and Formatting Considerations

To create an engaging presentation, applying a consistent design theme is essential. PowerPoint offers various themes that align with professional and technological aesthetics, such as minimalistic, modern, or corporate styles. These themes facilitate visual consistency across slides, including fonts, colors, and backgrounds. Using the default font size associated with the theme ensures legibility, while APA-style citations should be incorporated correctly throughout the slides. Proper grammar and punctuation are fundamental to maintaining academic integrity. Additionally, formatting should be uniform, with clear headings and consistent use of bullet points.

Slide Content and Structure

The presentation should include at least 16 slides, beginning with a cover slide that introduces the topic, followed by an introduction slide providing context and objectives. The body of the presentation should cover key topics such as the definition of Business Intelligence and Big Data, technologies involved, applications, benefits, challenges, and global perspectives. Visual elements such as figures or tables should be included to illustrate data trends or models, formatted in APA style, and integrated seamlessly into the content. At least one slide should address the global implications of adopting BI and Big Data technologies, highlighting international case studies or trends.

Visuals, Transitions, and Animations

Incorporating relevant figures and tables enhances comprehension. For example, a table comparing BI tools or a figure showing data flow architectures can be highly effective. Transitions and animations should be used strategically to emphasize key points, avoiding overuse that can distract from the message. The '7x7 rule' should be observed—each slide should feature no more than seven bullets, with each bullet containing no more than seven words. Additional explanations can be added via the Notes Pane, allowing for detailed speaker cues without cluttering slides.

References and Credibility

Teen references from scholarly sources published within the last ten years should be used to support content. Proper APA citations should be embedded within slides and included in a reference list at the end, reflecting current debates, methodologies, and case studies relevant to Business Intelligence and Big Data. Examples of credible sources include peer-reviewed journals, industry reports, and authoritative books, with at least one source from the course textbook.

Conclusion

This paper underscores the importance of integrating design, formatting, visual, and contextual elements to craft an impactful presentation on Business Intelligence and Big Data. Attention to APA style, global perspectives, and technological features ensures the delivery of a professional and academically rigorous presentation suitable for diverse audiences.

References

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