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base_model:
  - google/flan-t5-large
datasets:
  - deepmind/math_dataset
language:
  - en
library_name: transformers
metrics:
  - exact_match

Model Card for Model ID

Welcome to the ⚖️📊CyberSolve LinAlg 1.1🦾📏 model card!

We introduce CyberSolve LinAlg 1.1, a text-to-text large language model trained to solve linear equations. Specifically, CyberSolve LingAlg 1.1 is a downstream version of the FLAN-T5 large model, Google/FLAN-T5-large, fine-tuned on the one-dimensional linear algebra split of the Google DeepMind mathematics dataset.

Note: This is version 1.1. The model card of the most updated version of CyberSolve LinAlg is available here: CyberSolve LinAlg 1.2

See also the most recent model demoed in the CyberSolve LinAlg 1.2 🤖 Space.

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