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README.md
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- en
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datasets:
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- togethercomputer/RedPajama-Data-1T
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- Muennighoff/natural-instructions
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widget:
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inference:
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parameters:
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temperature: 0.7
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- en
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datasets:
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- togethercomputer/RedPajama-Data-1T
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- togethercomputer/RedPajama-Data-Instruct
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widget:
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- text: |-
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Label the tweets as either 'positive', 'negative', 'mixed', or 'neutral':
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Tweet: I can say that there isn't anything I would change.
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Label: positive
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Tweet: I'm not sure about this.
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Label: neutral
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Tweet: I liked some parts but I didn't like other parts.
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Label: mixed
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Tweet: I think the background image could have been better.
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Label: negative
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Tweet: I really like it.
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Label:
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example_title: Sentiment Analysis
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- text: |-
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Please answer the following question:
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Question: What is the capital of Canada?
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Answer: Ottawa
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Question: What is the currency of Switzerland?
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Answer: Swiss franc
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Question: In which country is Wisconsin located?
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Answer:
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example_title: Question Answering
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- text: >-
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Given a news article, classify its topic.
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Possible labels: 1. World 2. Sports 3. Business 4. Sci/Tech
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Article: A nearby star thought to harbor comets and asteroids now appears to
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be home to planets, too.
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Label: Sci/Tech
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Article: Soaring crude prices plus worries about the economy and the outlook
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for earnings are expected to hang over the stock market next week during the
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depth of the summer doldrums.
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Label: Business
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Article: Murtagh a stickler for success Northeastern field hockey coach
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Cheryl Murtagh doesn't want the glare of the spotlight that shines on her to
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detract from a team that has been the America East champion for the past
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three years and has been to the NCAA tournament 13 times.
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Label::
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example_title: Topic Classification
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- text: |-
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Paraphrase the given sentence into a different sentence.
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Input: Can you recommend some upscale restaurants in New York?
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Output: What upscale restaurants do you recommend in New York?
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Input: What are the famous places we should not miss in Paris?
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Output: Recommend some of the best places to visit in Paris?
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Input: Could you recommend some hotels that have cheap price in Zurich?
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Output:
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example_title: Paraphrasing
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- text: >-
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Given a review from Amazon's food products, the task is to generate a short
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summary of the given review in the input.
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Input: I have bought several of the Vitality canned dog food products and
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have found them all to be of good quality. The product looks more like a
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stew than a processed meat and it smells better. My Labrador is finicky and
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she appreciates this product better than most.
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Output: Good Quality Dog Food
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Input: Product arrived labeled as Jumbo Salted Peanuts...the peanuts were
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actually small sized unsalted. Not sure if this was an error or if the
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vendor intended to represent the product as 'Jumbo'.
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Output: Not as Advertised
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Input: My toddler loves this game to a point where he asks for it. That's a
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big thing for me. Secondly, no glitching unlike one of their competitors
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(PlayShifu). Any tech I don’t have to reach out to support for help is a
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good tech for me. I even enjoy some of the games and activities in this.
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Overall, this is a product that shows that the developers took their time
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and made sure people would not be asking for refund. I’ve become bias
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regarding this product and honestly I look forward to buying more of this
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company’s stuff. Please keep up the great work.
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Output:
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example_title: Text Summarization
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- text: |-
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Identify which sense of a word is meant in a given context.
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Context: The river overflowed the bank.
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Word: bank
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Sense: river bank
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Context: A mouse takes much more room than a trackball.
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Word: mouse
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Sense: computer mouse
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Context: The bank will not be accepting cash on Saturdays.
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Word: bank
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Sense: commercial (finance) banks
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Context: Bill killed the project
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Word: kill
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Sense:
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example_title: Word Sense Disambiguation
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- text: >-
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Given a pair of sentences, choose whether the two sentences agree
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(entailment)/disagree (contradiction) with each other.
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Possible labels: 1. entailment 2. contradiction
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Sentence 1: The skier was on the edge of the ramp. Sentence 2: The skier was
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dressed in winter clothes.
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Label: entailment
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Sentence 1: The boy skated down the staircase railing. Sentence 2: The boy
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is a newbie skater.
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Label: contradiction
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Sentence 1: Two middle-aged people stand by a golf hole. Sentence 2: A
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couple riding in a golf cart.
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Label:
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example_title: Natural Language Inference
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inference:
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parameters:
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temperature: 0.7
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