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BigWeave v8 90B

The BigWeave models aim to identify merge settings equaling or surpassing the performance of Goliath-120b. The version number merely tracks various attempts and is not a quality indicator. Only results demonstrating good performance are retained and shared.

This version is a passthrough merge of Platypus2-70b-instruct + WinterGoddess-1.4x-70b.

The 90b size allows for 4bit quants to fit into 48GB of VRAM.

Prompting Format

Vicuna and Alpaca.

Merge process

The models used in the merge are Platypus2-70b-instruct and WinterGoddess-1.4x-70b.

Acknowledgements

@garage-bAInd For creating Platypus2

@Sao10K For creating WinterGoddess

@alpindale For creating the original Goliath

@chargoddard For developing mergekit.

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