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metadata
license: apache-2.0
datasets:
  - JeanKaddour/minipile
  - BEE-spoke-data/wikipedia-20230901.en-deduped
  - BEE-spoke-data/knowledge-inoc-concat-v1
language:
  - en
inference:
  parameters:
    max_new_tokens: 64
    do_sample: true
    temperature: 0.8
    repetition_penalty: 1.05
    no_repeat_ngram_size: 4
    epsilon_cutoff: 0.0006
    renormalize_logits: true
widget:
  - text: My name is El Microondas the Wise, and
    example_title: El Microondas
  - text: Kennesaw State University is a public
    example_title: Kennesaw State University
  - text: >-
      Bungie Studios is an American video game developer. They are most famous
      for developing the award winning Halo series of video games. They also
      made Destiny. The studio was founded
    example_title: Bungie
  - text: The Mona Lisa is a world-renowned painting created by
    example_title: Mona Lisa
  - text: >-
      The Harry Potter series, written by J.K. Rowling, begins with the book
      titled
    example_title: Harry Potter Series
  - text: >-
      Question: I have cities, but no houses. I have mountains, but no trees. I
      have water, but no fish. What am I?

      Answer:
    example_title: Riddle
  - text: The process of photosynthesis involves the conversion of
    example_title: Photosynthesis
  - text: >-
      Jane went to the store to buy some groceries. She picked up apples,
      oranges, and a loaf of bread. When she got home, she realized she forgot
    example_title: Story Continuation
  - text: >-
      Problem 2: If a train leaves Station A at 9:00 AM and travels at 60 mph,
      and another train leaves Station B at 10:00 AM and travels at 80 mph, when
      will they meet if the distance between the stations is 300 miles?

      To determine
    example_title: Math Problem
  - text: In the context of computer programming, an algorithm is
    example_title: Algorithm Definition
pipeline_tag: text-generation

BEE-spoke-data/mega-ar-126m-4k

This may not be the best language model, but it is a language model! It's interesting for several reasons, not the least of which is that it's not technically a transformer.

Details:

  • 768 hidden size, 12 layers
  • no MEGA chunking, 4096 context length
  • EMA dimension 16, shared dimension 192
  • tokenizer: GPT NeoX
  • train-from-scratch

For more info on MEGA (& what some of the params above mean), check out the model docs or the original paper

Usage

Usage is the same as any other small textgen model.

Given the model's small size and architecture, it's probably best to leverage its longer context by adding input context to "see more" rather than "generate more".

evals

Initial data:

hf-causal-experimental (pretrained=BEE-spoke-data/mega-ar-126m-4k,revision=main,trust_remote_code=True,dtype='float'), limit: None, provide_description: False, num_fewshot: 0, batch_size: 4

Task Version Metric Value Stderr
arc_easy 0 acc 0.4415 ± 0.0102
acc_norm 0.3969 ± 0.0100
boolq 1 acc 0.5749 ± 0.0086
lambada_openai 0 ppl 94.9912 ± 3.9682
acc 0.2408 ± 0.0060
openbookqa 0 acc 0.1660 ± 0.0167
acc_norm 0.2780 ± 0.0201
piqa 0 acc 0.5974 ± 0.0114
acc_norm 0.5914 ± 0.0115
winogrande 0 acc 0.4830 ± 0.0140