PacketZoom announced a partnership with Amazon CloudFront to include CloudFront in PacketZoom’s Mobile Expresslane service.
The bundled solution offers mobile app developers the first and only mobile platform for all their network performance needs.
PacketZoom is the leader in the mobile app acceleration space with its Mobile Expresslane technology, which speeds up mobile apps by up to 3x and rescues up to 90% of network disconnects for mobile app publishers including Glu, Sephora, Photofy, Upwork and others. PacketZoom improves the user experience on mobile apps by eliminating performance roadblocks in the mobile last mile. Its mobile platform offers a complete, end-to-end product suite for Mobile App Performance Management & Optimization (APMO).
Amazon’s CloudFront Web CDN solution securely delivers content by optimizing delivery in the middle mile. Together with PacketZoom’s last mobile mile acceleration, customers experience the optimal mobile app delivery solution.
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