Continually Improving Models for Smarter AI
At Clarifai, one of our ongoing company values is to continuously improve AI. We believe that without technology that consistently learns and adapts to the data that powers it, developers could end up with inaccurate and “dumb” AI.
As a part of our commitment to delivering reliable and accurate computer vision models, we’re excited to announce that we’ve released a new version of our General Model available to use! The new version of the General Model boasts better performance for our computer vision AI than the previous iteration of the General Model. Current
We also have upgraded a few existing models from beta to general availability due to performance improvements we’ve made over the last few months which have led to better accuracy (up to 99% accurate on some models.) Those models include previous beta models for Moderation, Celebrity, Face Detection, Textures & Patterns, General Embedding, and Face Embedding. The models that currently remain in beta we are still feverishly working on to improve before moving to general availability.
We’re always working on making the experience with Clarifai a simple and seamless one. We’re looking forward to announcing some more exciting product releases and news coming your way. If you have any feedback on any of the models, we’d love to hear it! Please don’t hesitate to reach out to us.
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