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November October- Optimizing Your MusicMaster Database for Peak Performance
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- Traveling for the Love of Music Part 3: Sinéad O’Connor and Shane MacGowan Tribute at Carnegie Hall
Using MusicMaster to Conduct a Deeper Analysis based on Music Research Scores posted on May 29th, 2024
By Joe Knapp, President/Founder – MusicMaster
Bringing your research scores into MusicMaster lets you do a very detailed analysis that can uncover some interesting trends.
For example, I’ve found that the audience prefers songs that are not “begging” or “desperate” sounding. They prefer songs that have a “happy” or “charitable” mood. Unexpectedly, they also seem to prefer songs, at least in the oldies format, that have an “angry” tone.
Clicking on the header of each column instantly sorts the list by that field, allowing you to make comparisons and observations.
I’ve also discovered that the audience prefers medium or up-tempo songs over slow or down tempo songs. The gender of the singer doesn’t matter at all when it comes to audience favorability. There is a slight correlation between Era, however. The newer songs are preferred over the older songs, in this case being 1964-1973 versus 1955-1963.
These results, of course, will vary greatly from one format to another. But, if you’re doing music research, bringing those scores into MusicMaster is easy and quite valuable. You can learn things about your audience that you cannot see by looking at the same numbers in the research analysis software alone.
With your scores in MusicMaster, you can easily establish Rules and Optimum Goals to help the AI scheduling engine select the ideal song for each position in your log.
If you need help with this, we’re always here for you. Music scheduling is all we do, so we tend to do it very well!
(For Part 1 of Joe’s series on Music Research, view this article: https://musicmaster.com/newsletters/0224.php#coj)