Mash-up
A mash-up can be seen as a composite app that is combining reusable data, presentation, and new logic. It is often seen as web solution, but this approach can be used for native app development as well. Data is everywhere. The government and various organizations have made their data publicly available through APIs. Mash-up solutions do not need to worry about the content in particular, but more about the presentation. They may occur as enterprise, data-oriented, or consumer mash-ups.
The app may gather data from multiple sources, combine and enrich them, and then present them in an app. An example of that could be as simple as producing infographics from the provided data. Another example is getting photos from Flickr and presenting them on a Google map. There are plenty of other and more sophisticated solutions that you can think of. A mash-up can be a great contribution to the development of an MVP or a Proof of Concept (PoC). Often, when it turns out that a mash-up is a profitable solution, it mostly has the function of aggregator. An example is a website comparing insurance companies.
Keep in mind that you can develop a mash-up solution relatively fast, but the monetization of it could be more difficult. Again, the biggest downside of a mash-up is the dependency on third parties. If things start to become more serious, then do not just consume their data. You need to do more than that. Avoid a potential shutdown of your business in case the company, that is delivering the data, decides to discontinue its services. You can reduce that risk if you make that company a real key partner. Although there still is a dependency, it is no longer a problem because it has become a manageable one.
- Hands-On Data Structures and Algorithms with Rust
- 數據庫技術與應用教程(Access)
- Creating Mobile Apps with Sencha Touch 2
- Hadoop與大數據挖掘(第2版)
- 深入淺出MySQL:數據庫開發、優化與管理維護(第2版)
- 企業級數據與AI項目成功之道
- 數據庫技術實用教程
- Chef Essentials
- Hadoop集群與安全
- 探索新型智庫發展之路:藍迪國際智庫報告·2015(上冊)
- Spark分布式處理實戰
- 爬蟲實戰:從數據到產品
- 信息融合中估計算法的性能評估
- 大數據測試技術:數據采集、分析與測試實踐(在線實驗+在線自測)
- Cognitive Computing with IBM Watson