This presentation discusses the use of IBM Watson for data analytics on the YouTube dataset. It covers the history and architecture of Watson, insights and recommendations for the YouTube dataset, and the importance of data analytics for businesses. The presentation also includes a bibliography of relevant sources.
Contribute Materials
Your contribution can guide someone’s learning journey. Share your
documents today.
Name of the Student: Name of the university:
Secure Best Marks with AI Grader
Need help grading? Try our AI Grader for instant feedback on your assignments.
The requirement to use IBM Watson The tool is a Business Intelligence tool which is used for processing An example is included here Where was X born? The birth place fo Einstien is included by the visualization. Structured Unstructu red
A brief history of Watson Started in 2007, lead David Ferrucci Initial goal:Natural language processing Knowledge Extraction Need: Gathering knowledge that would not be possibleby the usual system.
BasicArchitecture IBMBasicArchitecture IBM WatsonWatson
Paraphrase This Document
Need a fresh take? Get an instant paraphrase of this document with our AI Paraphraser
INTRODUCTION TO CURRENT PROJECT The selected dataset Youtube.xlsx contains the information about different videos uploaded in the period of 2006 to 2018. The data dictionary has the following columns Video_id, Trending_date, Title, Channel_title, Category_id, Publish_date, Time_frame, Publish_day_of_week, Publish_country, Tags, Views, Likes, Dislikes, Comments_count, Comments_disable, Ratings_disabled, Video_error_or_removed. The description of each columns are given in the question file.
ADVANCED INSIGHTS The advanced insights have been developed after the dashboards have been developed. The main goal for the insights are that they would be able to provide the organizations with useful in information so that they would be able to use it for future endeavours. The YouTube dataset has been used here for the development of the insights on the topic and the insights on dislikes have been developed here.
INSIGHT 1
Secure Best Marks with AI Grader
Need help grading? Try our AI Grader for instant feedback on your assignments.
RESEARCH From the analysis it is found that, the dataset contains data only about 18 categories which are listed below; 1-Film & Animation 10- Music 29 – Non-profits & Activism 20 – Gaming 22 - People & Blogs 23 – Comedy 43 - Shows 44 - Trailers 24 - Entertainment 22 - People & Blogs 23 – Comedy From the analysis it is found that, the dataset contains data only about 18 categories which are listed below; 43 - Shows 44 - Trailers 15 - Pets & Animals 17 – Sports 25 - News & Politics 19 - Travel & Events 26 – How to & Style 2 Autos & Vehicles 27 - Education 28 - Science & Technology 30 – Movies
RECOMMENDATIONS The content manager would be advised to take the following recommendations into considerations: It has been suggested to the Content Manager to enhance the quality of the videos in the You tube.There have been various music videos uploaded in the min t h and gaining the most viewed category in the YouTube. The quality of the music video might help in increasing the viewers in the YouTube. There has been slow growth in the video upload as compared to GB than US, France, and Canada. Therefore, users need to be encouraged to upload their videos over the Youtube. Dislikes for the videos should be minimized as it reduces the interest of the other users therefore, it is suggested to check and remove the contents that can be disliked by the audience.
Secure Best Marks with AI Grader
Need help grading? Try our AI Grader for instant feedback on your assignments.
CONCLUSION For conclusion it can be said that data analytics is very important for any type of business and the report consists the details of the Youtude dataset. The analysis has tried to gather information about the current trends in the YouTube videos and the uploads which are made in YouTube for the entertainment of the audience. Visualizations an graphs from datasets have beenprovided from IBM Watson for the reference of the readers.
BIBLIOGRAPHY Silverman, B. W. (2018).Density estimation for statistics and data analysis. Routledge. Agresti, A. (2018).An introduction to categorical data analysis. Wiley. Wickham, H. (2016).ggplot2: elegant graphics for data analysis. Springer. Ott, R. L., & Longnecker, M. T. (2015).An introduction to statistical methods and data analysis. Nelson Education. Schabenberger, O., & Gotway, C. A. (2017).Statistical methods for spatial data analysis. CRC press. Yan, C. G., Wang, X. D., Zuo, X. N., & Zang, Y. F. (2016). DPABI: data processing & analysis for (resting-state) brain imaging.Neuroinformatics,14(3), 339-351.