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metadata
license: other
datasets:
  - wikipedia
pipeline_tag: text-generation
tags:
  - llama2
  - prompt
  - reverse prompt
  - qa
  - questiona
  - answer
  - builder
  - prompt writer
  - 32k
  - long context
  - real long context
  - rhetoric
  - agents
  - markdown
  - from scratch

QA Builder - 32k sequence length

Welcome to the training progress of my new language model with a 32k configuration. Training a model is a meticulous process, and it is in this configuration that the size of the sequence stands out in a crucial way, allowing greater ability to understand and generate text.

Why 32k?

Sequence size is critical. A longer sequence allows the model to understand more extensive context, capturing nuances and details that might otherwise be missed. Additionally, with the expansion to 32k, we have more space to incorporate sophisticated elements such as rhetoric, allowing for more persuasive and eloquent expression.

Here are the painstaking steps through which the model is being trained:

  1. Wikipedia Titles+Introduction: A solid foundation is built using Wikipedia titles, providing an overview of various topics.
  2. Titles + Wikipedia Content: Deepening understanding, the full content of Wikipedia articles is incorporated.
  3. Classic Books: An immersion in the nuances of historical literary language, training the model with texts from classic books.
  4. Articles: Incorporating detailed and updated information from articles from different fields of knowledge.
  5. QA (Questions and Answers): Improving model responsiveness and understandability with a dataset of questions and answers.
  6. Rhetoric: Rhetoric plays a vital role in refining the model's ability to understand and generate persuasive speeches. For this, he is exposed to materials rich in rhetorical elements.

I look forward to sharing the results of this fascinating project with you all!

Training Status

In my last tests with the sequence of length 2048, I achieved great models. With just a 4090 GPU, I trained models in 24 hours. I'll try to replicate the success with this 32k setup over the next few hours and post the result.

I am currently on step 2/6 of training. Each stage lasts 4 to 6 hours. I'm releasing the partial models, and at the end, I will also release the datasets, all 100% synthetic and formatted in Markdown.

Results so far: [Results shown show model-specific metrics] (if you have problems on eval, set same max_length)

Task Version Metric Value Stderr
winogrande 0 acc 0.5162 ± 0.014

hf-causal (max_length=3200), limit: None, provide_description: False, num_fewshot: 0, batch_size: None

Task Version Metric Value Stderr
openbookqa 0 acc 0.1380 ± 0.0154
acc_norm 0.3420 ± 0.0212
piqa 0 acc 0.6289 ± 0.0113
acc_norm 0.6251 ± 0.0113

hf-causal (max_length=1280), limit: None, provide_description: False, num_fewshot: 0, batch_size: None

Task Version Metric Value Stderr
arc_challenge 0 acc 0.1903 ± 0.0115
acc_norm 0.2270 ± 0.0122
hellaswag 0 acc 0.2892 ± 0.0045
acc_norm 0.3114 ± 0.0046

Next update: 9/9 - 02:30 GMT

Your contribution and feedback are always valuable. Follow along and share your thoughts as we move forward on this exciting journey!