--- datasets: - natural_instructions - the_pile - cot - Muennighoff/P3 inference: parameters: max_new_tokens: 5 temperature: 1.0 top_k: 1 language: - en pipeline_tag: text-generation widget: - example_title: "Sentiment Analysis" text: |- The task is to label the post's emotion as sadness, joy, love, anger, fear, or surprise. Input: I'm feeling quite sad and sorry for myself but ill snap out of it soon. Output: sadness Input: I am just feeling cranky and blue. Output: anger Input: I can have for a treat or if i am feeling festive. Output: - example_title: "Country Currency" text: |- Return the currency of the given country. Input: Switzerland Output: Swiss Franc Input: India Output: - example_title: "Tweet Eval Hate" text: |- Label whether the following tweet contains hate speech against either immigrants or women. Hate Speech (HS) is commonly defined as any communication that disparages a person or a group on the basis of some characteristic such as race, color, ethnicity, gender, sexual orientation, nationality, religion, or other characteristics. Possible labels: 1. hate speech 2. not hate speech Tweet: HOW REFRESHING! In South Korea, there is no such thing as 'political correctness" when it comes to dealing with Muslim refugee wannabes via @user Label: hate speech Tweet: New to Twitter-- any men on here know what the process is to get #verified? Label: not hate speech Tweet: Dont worry @user you are and will always be the most hysterical woman. Label: - example_title: "Entity Recognition" text: |- Extract all the names of people, places, and organizations from the following sentences. Sentence: Satya Nadella, the CEO of Microsoft, was visiting the Bahamas last May. Entities: Satya Nadella, Microsoft, Bahamas Sentence: Pacific Northwest cities include Seattle and Portland, which I have visited with Vikash. Entities: - example_title: "Data Clearning" text: |- Format the data into a CSV file: Input: Jane Doe jane.doe@gmail.com (520) 382 2435 Output: Jane Doe,jane.doe@gmail.com,520-382-2435 Input: Peter Lee (510) 333-2429 email: peter@yahoo.com Output: ---

GPT-JT

# Model Summary We present GPT-JT, a fork of GPT-6B, trained for 20,000 steps, that outperforms most 100B+ parameter models at classification, and improves most tasks relative to GPT-J-6B. GPT-JT was trained with a new decentralized algorithm on computers networked on slow 1Gbps links. GPT-JT is a bidirectional dense model, trained through UL2 objective with NI, P3, COT, the pile data. **Please check out our [Online Demo](https://huggingface.co/spaces/togethercomputer/TOMA-app)!.** # Quick Start ```python from transformers import pipeline pipe = pipeline(model='togethercomputer/GPT-JT-6B-v1') pipe('''"I do not like this!" Is it positive or negative? A:''') ``` or ```python from transformers import AutoTokenizer, AutoModelForCausalLM tokenizer = AutoTokenizer.from_pretrained("togethercomputer/GPT-JT-6B-v1") model = AutoModelForCausalLM.from_pretrained("togethercomputer/GPT-JT-6B-v1") ``` # Training Data We fine-tune [GPT-J-6B](https://huggingface.co/EleutherAI/gpt-j-6B) on NI, P3, COT, the pile data. - [Natural-Instructions](https://github.com/allenai/natural-instructions) - [P3](https://huggingface.co/datasets/Muennighoff/P3) - [MMLU-COT](https://github.com/jasonwei20/flan-2/blob/main/mmlu-cot.json) - [the pile](https://huggingface.co/datasets/the_pile) # Hyperparameters We used AdamW with a learning rate of 1e-5 and global batch size of 64, and train for 20k steps. We used mix-precision training where the activation is in FP16 while the optimizer states are kept in FP32. We use both data parallelism and pipeline parallelism to conduct training. During training, we truncate the input sequence to 2048 tokens, and for input sequence that contains less than 2048 tokens, we concatenate multiple sequences into one long sequence to improve the data efficiency. # Infrastructure We used [the Together Research Computer](https://together.xyz/) to conduct training.