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CloudApp vs Google Cloud Filestore: What are the differences?
CloudApp: Create and share GIFs, screen recordings, and annotated screenshots. Provider of enterprise file sharing and screen grab technology. It's used by designers, builders, thought-leaders, and influencers to collaborate faster; Google Cloud Filestore: High-performance, fully managed file storage. Cloud Filestore is a managed file storage service for applications that require a filesystem interface and a shared filesystem for data. Filestore gives users a simple, native experience for standing up managed Network Attached Storage (NAS) with their Google Compute Engine and Kubernetes Engine instances. The ability to fine-tune Filestore’s performance and capacity independently leads to predictably fast performance for your file-based workloads.
CloudApp and Google Cloud Filestore can be primarily classified as "Cloud File Storage" tools.
Some of the features offered by CloudApp are:
- Screen Capture
- Snipping Tool
- Screen Recorder
On the other hand, Google Cloud Filestore provides the following key features:
- Fast - Cloud Filestore offers low latency for file operations. For workloads that are latency sensitive, like content management systems, databases, random i/o, or other metadata intensive applications, Filestore provides high IOPS with minimal variability in performance.
- Consistent - With Cloud Filestore, you pay a predictable price for predictable performance. Users independently pick the IOPS and the storage capacity you need with Filestore, which enables you to tune your filesystem for a particular workload. The performance you experience for a particular workload will be consistent over time.
- Simple - Cloud Filestore is a fully managed, NoOps service that is integrated with the rest of the Google Cloud portfolio. You can easily mount Filestore volumes on Compute Engine VMs. Filestore is also tightly integrated with Google Kubernetes Engine so your containers can reference the same shared data.