The Table displays the current market share of the streaming service industry. Netflix and Prime Video hold two large pieces and they also both provide different sports content.

Data downloaded from Kaggle & Statista

Service Market Share %
Amazon Prime Video 22
Netflix 21
Max 13
Disney+ 12
Hulu 10
Paramount+ 9
Apple TV+ 8
Peacock 1
Other 4

This plot shows the difference in player market value between the National Football League and English Premier League. The EPL has higher overall player valuations, while the NFL has the highest individual player valuation. The NFL’s wider range of player market values can be explained in part because of the larger roster sizes.

Data used from Spotrac- NFL Player Market Value & Football Benchmark

These charts show the market value of athletes in the National Football League and English Premier League in comparison to their salaries. The market value of an athlete is an analytical measure based on performance in comparison to others who play the same position in It can be seen at first glance that the NFL matches their athletes’ market values with their salaries fairly well. On the other hand, the EPL has a wider gap in between their athletes’ market values and salaries. The ability to invest in players and pay them what they deserve is an important factor is determining the quality of the games being played.

Data used from Spotrac- NFL Player Market Value, Spotrac- EPL Player Contracts, Spotrac- NFL Player Contracts, & Football Benchmark

These pie charts provided show the share of total revenue of the potential sports shown on these services. We can see that the the NFL gains more revenue, respectively. However it is split among more teams. Potential … should be aware of this when examining both leagues alike. In both markets there is shares up for grabs, but can be hard to compete with previously established organizations. The competitive market of the respective leagues emphasizes this ability, with the percentage of total revenue somewhat evenly spread across the entire market.

Data downloaded from Statista & Statista

In the United States, average prices for services that provide Live TV vary from service. In 2024, consumers of traditional cable companies like Comcast and Charter spent the highest amount per month, at 120 and 97 U.S. dollars. Whereas, streaming TV services like Hulu, Live TV, and YouTube TV cost less. Then there are talks of new joint venture with Disney, Warner Bros. Discovery, and Fox to provide a way to stream sports. This new venture is likely to cost around $40.(USD)

Data downloaded from Statista

These Pie Charts show the different age demographics of each leagues fans and their interest levels.

Data Downloaded from: Statista & Statista

This dashboard was created using Quarto in RStudio, and the R Language and Environment.

The dataset used to create this dashboard was downloaded from Statista and Kaggle

This dashboard was created with help from Artificial Intelligance Copilot

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