The TOFFEE Project
The TOFFEE Project

Documentation :: TOFFEE-DataCenter with GlusterFS Storage Cluster

Written by: Kiran Kankipati - Published: 15-Nov-2017

TOFFEE-DataCenter with GlusterFS Storage Cluster: GlusterFS Storage Cluster (cloud storage) is a distributed cluster network-attached storage file system often used in cloud computing, streaming media services, and content delivery networks (CDN). GlusterFS can be implemented as file-based mirroring and replication, file-based striping, file-based load balancing, volume failover, scheduling and disk caching, storage quotas, and volume snapshots. And this can span across tens and hundreds of servers. GlusterFS is open-source, incredibly powerful, easy to scale and relatively easy to setup and because of these reasons the biggest players in IT world such as Facebook, and many others are building their entire IT storage infrastructure with GlusterFS. With TOFFEE-DataCenter you can optimize huge data volumes of GlusterFS servers connected between the main data-center(s) and remotely connected remote disaster recovery site(s) as shown below.

TOFFEE-DataCenter WAN Optimization with GlusterFS Storage Cluster

For example here is TOFFEE-DataCenter (or TOFFEE) optimized ISP networks(tunnels) between countries. In this case there is an ISP in Libya having slow backbone Internet, hence he can establish a TOFFEE based optimized tunnel between Romania Data-center (having high-speed internet) and Libya. Similarly there is another ISP in Argentina is able to boost his backbone Internet services by establishing a tunnel between his ISP and US West-Coast (California) Data-center. For more details click HERE.
TOFFEE-DataCenter optimized ISP network tunnels between countries

ISPs can also build multiple TOFFEE optimized tunnels for redundancy, load-share, etc. And in this case the ISP in Argentina established two tunnels. One between Argentina ISP to US West-Coast (California) Data-center and the other between Argentina ISP Romania Data-center as shown below.
TOFFEE-DataCenter optimized ISP network tunnels between countries2

Learn more about: TOFFEE WAN Optimization deployment

Suggested Topics:

TOFFEE - WAN Optimization

 TOFFEE (and or TOFFEE-DataCenter) deployment in SD-WAN Applications ↗

 TOFFEE (and or TOFFEE-DataCenter) deployment with VPN devices ↗

 TOFFEE (and or TOFFEE-DataCenter) deployment with web-proxy cache ↗

 TOFFEE (and or TOFFEE-DataCenter) deployment in Large Infrastructure and or ISP Networks ↗

 TOFFEE (and or TOFFEE-DataCenter) optimized Satellite (inflight/marine/defense) ISP Networks ↗

 TOFFEE (and or TOFFEE-DataCenter) optimized Mobile Wireless Backhaul Networks ↗

 TOFFEE (and or TOFFEE-DataCenter) optimized Wireless Mesh-Networks - B.A.T.M.A.N [ (Open Mesh)] ↗

 TOFFEE Download :: TOFFEE-1.1.70-1-portable ↗

 VPN Network Optimization via TOFFEE WAN Optimization ↗

 TOFFEE Benchmarks :: TOFFEE-1.1.28 ↗

 TOFFEE with Hardware Compression and Decompression Accelerator Cards ↗

 DIY TOFFEE WAN Optimization Device with Intel Celeron Mini PC ↗

 TOFFEE Documentation :: TOFFEE-1.1.24-3-rpi2 ↗

 TOFFEE deployment topology guide ↗

 TOFFEE hardware selection guide ↗

 TOFFEE License ↗


 TOFFEE-DataCenter - WAN Optimization ↗

 TOFFEE - WAN Optimization ↗

 TOFFEE-Mocha - WAN Emulator ↗

 TOFFEE-Butterscotch - Save and Optimize your Internet/WAN bandwidth ↗


Recommended Topics:

Featured Educational Video:

Win free sponsor giveaway gifts:

Skype VOIP Data - WAN Acceleration:
  > reduce/eliminate Jitter
  > no more call drops
  > accelerate any VOIP (including long-distance Skype calls)

Research :: Optimization of network data (WAN Optimization) at various levels:
Network File level network data WAN Optimization

Learn Linux Systems Software and Kernel Programming:
Linux, Kernel, Networking and Systems-Software online classes

Hardware Compression and Decompression Accelerator Cards:
TOFFEE Architecture with Compression and Decompression Accelerator Card

Research :: Content Delivery Networks (CDN):
CDN Networks

The TOFFEE Project - v8.30 :: Updated: 12-May-2018 :: © 2018 :: Author: Kiran Kankipati
Your IP: :: Browser: CCBot/2.0 (