Edit model card

First :

layer_slices:
  - model: Undi95/MLewd-L2-Chat-13B
    start: 0
    end: 16
  - model: Undi95/MLewd-ReMM-L2-Chat-20B-Part1
    start: 8
    end: 20
  - model: Undi95/MLewd-L2-Chat-13B
    start: 17
    end: 32
  - model: Undi95/MLewd-ReMM-L2-Chat-20B-Part1
    start: 21
    end: 40

Inverted:

layer_slices:
  - model: Undi95/MLewd-ReMM-L2-Chat-20B-Part1
    start: 0
    end: 16
  - model: Undi95/MLewd-L2-Chat-13B
    start: 8
    end: 20
  - model: Undi95/MLewd-ReMM-L2-Chat-20B-Part1
    start: 17
    end: 32
  - model: Undi95/MLewd-L2-Chat-13B
    start: 21
    end: 40

Precise:

layer_slices:
  - model: Undi95/MLewd-L2-Chat-13B
    start: 0
    end: 8
  - model: Undi95/MLewd-ReMM-L2-Chat-20B-Part1
    start: 4
    end: 12
  - model: Undi95/MLewd-L2-Chat-13B
    start: 9
    end: 16
  - model: Undi95/MLewd-ReMM-L2-Chat-20B-Part1
    start: 13
    end: 22
  - model: Undi95/MLewd-L2-Chat-13B
    start: 17
    end: 24
  - model: Undi95/MLewd-ReMM-L2-Chat-20B-Part1
    start: 23
    end: 32
  - model: Undi95/MLewd-L2-Chat-13B
    start: 25
    end: 32
  - model: Undi95/MLewd-ReMM-L2-Chat-20B-Part1
    start: 33
    end: 40

PreciseInverted:

layer_slices:
  - model: Undi95/MLewd-ReMM-L2-Chat-20B-Part1
    start: 0
    end: 8
  - model: Undi95/MLewd-L2-Chat-13B
    start: 4
    end: 12
  - model: Undi95/MLewd-ReMM-L2-Chat-20B-Part1
    start: 9
    end: 16
  - model: Undi95/MLewd-L2-Chat-13B
    start: 13
    end: 22
  - model: Undi95/MLewd-ReMM-L2-Chat-20B-Part1
    start: 17
    end: 24
  - model: Undi95/MLewd-L2-Chat-13B
    start: 23
    end: 32
  - model: Undi95/MLewd-ReMM-L2-Chat-20B-Part1
    start: 25
    end: 32
  - model: Undi95/MLewd-L2-Chat-13B
    start: 33
    end: 40

Part1 = ReMM v2.1 merged /w MLewd low weight to keep consistency. I call this "dilution" and result show consistency and coherency without repeat/loop beside the small amount of duplicated datas.

The goal is to find the best way to interlace layers the best way possible to have a sweetspot between 13B and +30B.

Normal/Inverted is by chunk of 16 layers and Precise/PreciseInverted is by chunk of 8 layers.

All the models are made of 64(+1) layers. Need testing.

Prompt template: Alpaca

Below is an instruction that describes a task. Write a response that completes the request.

### Instruction:
{prompt}

### Response:

Open LLM Leaderboard Evaluation Results

Detailed results can be found here

Metric Value
Avg. 50.81
ARC (25-shot) 61.69
HellaSwag (10-shot) 85.32
MMLU (5-shot) 58.0
TruthfulQA (0-shot) 53.77
Winogrande (5-shot) 75.61
GSM8K (5-shot) 9.1
DROP (3-shot) 12.16
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