Our machine-learning powered cloud video API improves efficiency by compressing video files an average of 60% better without changing file format or losing quality. The scene-based optimization with Per-Title Encoding enhances the viewing experience, while reducing storage and delivery costs.
Make each video more efficient automatically
Get the most out of each video with unique optimization per title. Try it now.
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Maintain Quality
Download Faster
Delivery Savings
Storage Savings
Each frame of video analyzed for complexity.
Scenes crated based on frame similarity, complexity, and motion.
Deep assessment of scenes using wide range of vectors like motion, color quality sharpness and other traits.
Encoding parameters automatically selected to maximize results for each scene.
Scene is encoded individually using parameters recommended by AI.
Final optimized video and all renditions ready to play.
You probably already know that no two videos are the same. Furthermore, each video has a wide variety of scenes that would benefit from specific encoding settings to maximize visual quality, while keeping file sizes as small as possible. The limitations of encoding technology often require engineers to use the same encoding settings for each video, preventing the full realization of video quality and delivery performance potential. And with viewers across the world with limited access to internet bandwidth, the consequences of a fixed settings can deprive a large number of your users from the video experience we all deserve.
Improve User Experience
Smaller video files load much faster and make playback possible with low bandwidths.
Get the highest video quality possible at low bitrates, with settings automatically tailored to your content.
Reduce Costs
As your content library grows, smaller files can lead to monumental savings on storage costs.
Reduce the bandwidth your growing user-base consumes each month.
We love creating powerful solutions that are aligned with the needs of your business.
Contact us with any questions. We'd love to help.
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