HyperConv is a TensorFlow layer that combines local convolution, global hypernetwork-based modulation, and associative memory, designed for efficient long-context representation learning without self-attention.

Primary use cases:

  • Embedding models
  • Retrieval and similarity search
  • Long-context sequence modeling

HyperConv is the mainstay of all openlem series since openlem2 of OpenLab-NLP.

First released: 2025-12-15 (UTC)

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Collection including OpenLab-NLP/HyperConv-Layer