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Advanced inferencing
In the
advanced inferencing tutorials
section, you will discover useful techniques to leverage our inferencing libraries or how you can use the inference results in your application logic:
Continuous audio sampling
Multi-impulse
Count objects using FOMO
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Generate physics simulation datasets
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Continuous audio sampling
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