--- language: - en tags: - t5 - qa - askscience - lfqa - information retrieval datasets: - eli5 metrics: - rouge widget: - text: "why aren't there more planets in our solar system?" example_title: "solar system" - text: "question: what is a probability distribution? context: I am just learning about statistics." example_title: "probability distribution" - text: "question: What are the underlying physical processes by which exercise helps us lose weight? context: I started working out two weeks ago and already feel a lot better, and started to think about it and became deeply confused." example_title: "pumpen" - text: "what is a neural network?" example_title: "deep learning" - text: "What are the primary mechanisms that computers use to understand human language?" example_title: "NLP" inference: parameters: max_length: 96 no_repeat_ngram_size: 2 encoder_no_repeat_ngram_size: 4 repetition_penalty: 3.51 length_penalty: 0.8 num_beams: 4 early_stopping: True --- # t5 - base- askscience - [t5-v1_1](https://huggingface.co/google/t5-v1_1-base) trained on the entirety of the _askscience_ sub-section of the eli5 dataset for one epoch. - compare to bart on eli5 [here](https://huggingface.co/yjernite/bart_eli5) - note that for the inference API, the model is restricted to outputting 96 tokens - by using the model in python with the transformers library, you can get longer outputs. ## training - for inputs, the model was presented with the post title and the post selftext encoded as: `question: context: `. You may see better results if queries are posed in this fashion. - The top two replies were aggregated and presented to the model as the output text. - Training for longer will be explored, but given that the dataset has 127k examples and the loss flatlines at 0.5 epochs so this model should be fairly viable.