{ "prompts": { "STS": "Retrieve semantically similar text.", "BitextMining": "Retrieve translations of the following text.", "Classification": "Classify the topic of the given text.", "MultilabelClassification": "Classify the topic of the given text.", "Clustering": "Classify the topic of the given text.", "PairClassification": "Retrieve semantically entailed text.", "query": "Given a question, retrieve passages that can help answer the question.", "document": "", "BulgarianStoreReviewSentimentClassfication": "Classify the sentiment of the given text.", "CzechProductReviewSentimentClassification": "Classify the sentiment of the given text.", "FinancialPhrasebankClassification": "Classify the sentiment of the given text.", "PoemSentimentClassification": "Classify the sentiment of the given text.", "EstonianValenceClassification": "Classify the sentiment of the given text.", "FilipinoShopeeReviewsClassification": "Classify the sentiment of the given text.", "SentimentAnalysisHindi": "Classify the sentiment of the given text.", "KurdishSentimentClassification": "Classify the sentiment of the given text.", "MacedonianTweetSentimentClassification": "Classify the sentiment of the given text.", "AfriSentiClassification": "Classify the sentiment of the given text.", "CataloniaTweetClassification": "Classify the sentiment of the given text.", "MultiHateClassification": "Classify the sentiment of the given text.", "NusaParagraphEmotionClassification": "Classify the sentiment of the given text.", "NusaX-senti": "Classify the sentiment of the given text.", "SwissJudgementClassification": "Classify the sentiment of the given text.", "PolEmo2.0-OUT": "Classify the sentiment of the given text.", "CSFDSKMovieReviewSentimentClassification": "Classify the sentiment of the given text.", "SlovakMovieReviewSentimentClassification": "Classify the sentiment of the given text.", "CyrillicTurkicLangClassification": "Classify the text into its language.", "IndicLangClassification": "Classify the text into its language.", "NordicLangClassification": "Classify the text into its language.", "ScalaClassification": "Classify the given sentence as linguistically acceptable or not acceptable.", "DalajClassification": "Classify the given sentence as linguistically acceptable or not acceptable.", "ToxicConversationsClassification": "Classify the given comments as either toxic or not toxic.", "IndonesianIdClickbaitClassification": "Classify the given text as either clickbait or not clickbait.", "KorSarcasmClassification": "Classify the given text as either sarcasm or not sarcasm.", "AmazonCounterfactualClassification": "Classify a given Amazon customer review text as either counterfactual or not counterfactual.", "MassiveIntentClassification": "Given a user utterance as query, find the user intents.", "PAC": "Classify the given clause as either abusive or not abusive.", "Banking77Classification": "Given an online banking query, find the corresponding intents.", "ImdbClassification": "Classify the sentiment expressed in the given movie review text from the IMDB dataset.", "MTOPDomainClassification": "Classify the intent domain of the given utterance in task-oriented conversation.", "MassiveScenarioClassification": "Given a user utterance as query, find the user scenarios.", "TweetSentimentExtractionClassification": "Classify the sentiment of a given tweet as either positive, negative, or neutral", "WikiCitiesClustering": "Classify the following city description by country.", "ArXivHierarchicalClusteringP2P": "Identify the main and secondary category of arXiv papers based on the titles and abstracts.", "ArXivHierarchicalClusteringS2S": "Identify the main and secondary category of arXiv papers based on the titles.", "BiorxivClusteringP2P.v2": "Identify the main category of bioRxiv papers based on the titles and abstracts.", "MedrxivClusteringP2P.v2": "Identify the main category of medRxiv papers based on the titles and abstracts.", "StackExchangeClustering.v2": "Identify the topic or theme of StackExchange posts based on the titles.", "StackExchangeClusteringP2P.v2": "Identify the topic or theme of StackExchange posts based on the given paragraphs.", "MedrxivClusteringS2S.v2": "Identify the main category of medRxiv papers based on the titles.", "TwentyNewsgroupsClustering.v2": "Identify the topic or theme of the given news articles.", "SprintDuplicateQuestions": "Retrieve duplicate questions from Sprint forum.", "TwitterURLCorpus": "Retrieve tweets that are semantically similar to the given tweet.", "ArmenianParaphrasePC": "Retrieve paraphrases of the given sentence.", "OpusparcusPC": "Retrieve paraphrases of the given sentence.", "PawsXPairClassification": "Retrieve paraphrases of the given sentence.", "PpcPC": "Retrieve paraphrases of the given sentence.", "TwitterSemEval2015": "Retrieve tweets that are semantically similar to the given tweet.", "KorHateSpeechMLClassification": "Classify the sentiment of the given text.", "CEDRClassification": "Classify the emotion expressed in the given comment into: joy, sadness, surprise, fear, and anger.", "SummEvalSummarization.v2": "Given a news summary, retrieve other semantically similar summaries.", "AppsRetrieval": "Retrieve the most relevant code snippet for the given query.", "CodeEditSearchRetrieval": "Retrieve the most relevant code edit.", "CodeFeedbackMT": "Retrieve the most relevant response for the given query.", "CodeFeedbackST": "Retrieve the most relevant response for the given query.", "CodeSearchNetCCRetrieval": "Retrieve the most relevant code snippet for the given code snippet.", "CodeSearchNetRetrieval": "Retrieve the most relevant code snippet for the given query.", "CodeTransOceanContest": "Retrieve similar code to the given source code.", "CodeTransOceanDL": "Retrieve similar code to the given source code.", "CosQA": "Retrieve the most relevant code snippet for the given query.", "COIRCodeSearchNetRetrieval": "Retrieve the most relevant code summary for the given code snippet.", "StackOverflowQA": "Retrieve the most relevant response for the given query.", "SyntheticText2SQL": "Retrieve the most relevant sql code snippet for the given query.", "AILAStatutes": "Identify the most relevant statutes for the given situation.", "ArguAna": "Given a claim, find documents that refute the claim.", "LegalBenchCorporateLobbying": "Given a bill title, retrieve the corresponding bill summary.", "SCIDOCS": "Given a scientific paper title, retrieve paper abstracts that are cited by the given paper.", "TRECCOVID": "Given a query on COVID-19, retrieve documents that answer the query.", "CovidRetrieval": "Given a query on COVID-19, retrieve documents that answer the query.", "CQADupstackGamingRetrieval": "Given a question, retrieve questions that are semantically equivalent.", "CQADupstackUnixRetrieval": "Given a question, retrieve questions that are semantically equivalent.", "ClimateFEVERHardNegatives": "Given a claim about climate change, retrieve documents that support or refute the claim.", "FEVERHardNegatives": "Given a claim, retrieve documents that support or refute the claim.", "FiQA2018": "Given a financial question, retrieve passages that answer the question.", "HotpotQAHardNegatives": "Given a multi-hop question, retrieve passages that answer the question.", "Touche2020Retrieval.v3": "Given a question, retrieve passages that answer the question.", "WebLINXCandidatesReranking": "Given a web navigation step, retrieve relevant elements.", "AskUbuntuDupQuestions": "Retrieve duplicate questions from AskUbuntu forum.", "MindSmallReranking": "Retrieve relevant news articles based on user browsing history.", "NFCorpus": "Given a question, retrieve passages that answer the question.", "TRECCOVID-PL": "Given a query on COVID-19, retrieve documents that answer the query.", "SciFact": "Given a scientific claim, retrieve passages that support or refute the claim.", "SciFact-PL": "Given a scientific claim, retrieve passages that support or refute the claim.", "CmedqaRetrieval": "Given a question, retrieve passages that answer the question.", "CMedQAv2-reranking": "Given a question, retrieve passages that answer the question.", "AngryTweetsClassification": "Classify the sentiment of the given text.", "DanishPoliticalCommentsClassification": "Classify the sentiment of the given text.", "DKHateClassification": "Classify the given comments as either offensive or not offensive.", "LccSentimentClassification": "Classify the sentiment of the given text.", "NoRecClassification": "Classify the sentiment of the given text.", "NorwegianParliamentClassification": "Classify the sentiment of the given text.", "SwedishSentimentClassification": "Classify the sentiment of the given text.", "SweRecClassification": "Classify the sentiment of the given text.", "DanFeverRetrieval": "Given a claim, retrieve documents that support or refute the claim.", "SNLRetrieval": "Given a summary, retrieve the original article.", "SwednRetrieval": "Given a summary, retrieve the original article.", "TV2Nordretrieval": "Given a news summary, retrieve the original article.", "BengaliSentimentAnalysis": "Classify the sentiment of the given text.", "HindiDiscourseClassification": "Classify the given text into one of the five discourse modes: argumentative, narrative, descriptive, dialogic, and informative.", "MTOPIntentClassification": "Classify the intent of the given utterance in task-oriented conversation.", "TweetSentimentClassification": "Classify the sentiment of the given text.", "UrduRomanSentimentClassification": "Classify the sentiment of the given text as either positive, negative, or neutral.", "AmazonReviewsClassification": "Classify the given Amazon review into its appropriate rating category.", "BlurbsClusteringP2P": "Classify the given book title and blurb into its genre.", "BlurbsClusteringS2S": "Classify the given book title into its genre.", "FalseFriendsGermanEnglish": "Retrieve translations of the following text.", "XMarket": "Given a product name search, retrieve the corresponding product description.", "GerDaLIR": "Retrieve documents that are referenced by the given text.", "MLSUMClusteringP2P": "Classify the topic of the given news article.", "SummEvalFr": "Given a news summary, retrieve other semantically similar summaries.", "AllegroReviews": "Classify the sentiment of the given text.", "CBD": "Classify the given text as either cyberbullying or not.", "PolEmo2.0-IN": "Classify the sentiment of the given text.", "PSC": "Retrieve semantically similar text.", "EcomRetrieval": "Given a product name query, retrieve the corresponding product description.", "MedicalRetrieval": "Retrieve the most relevant response for the given query.", "VideoRetrieval": "Given a video search query, retrieve the titles of relevant videos.", "CMedQAv1-reranking": "Retrieve the most relevant response for the given query.", "Waimai": "Classify the sentiment of the given review as either positive or negative.", "OnlineShopping": "Classify the sentiment of the given review as either positive or negative.", "JDReview": "Classify the sentiment of the given review as either positive or negative.", "MultilingualSentiment": "Classify the sentiment of the given review as either positive, negative, or neutral.", "ToxicChatClassification": "Classify the given text as either toxic or not toxic.", "JapaneseSentimentClassification": "Classify the sentiment of the given text.", "WRIMEClassification": "Classify the sentiment of the given text.", "NLPJournalTitleAbsRetrieval.V2": "Given a paper's title, retrieve the corresponding abstract.", "NLPJournalTitleIntroRetrieval.V2": "Given a paper's title, retrieve the corresponding introduction.", "NLPJournalAbsIntroRetrieval.V2": "Given a paper's abstract, retrieve the corresponding introduction.", "NLPJournalAbsArticleRetrieval.V2": "Given a paper's abstract, retrieve the corresponding paper.", "ESCIReranking": "Given a product name query, retrieve the corresponding product description.", "DutchBookReviewSentimentClassification.v2": "Classify the sentiment of the given text.", "VaccinChatNLClassification": "Classify the intent of the given utterance.", "DutchColaClassification": "Classify the given sentence as linguistically acceptable or not acceptable.", "DutchGovernmentBiasClassification": "Classify the given government document as biased or unbiased.", "DutchSarcasticHeadlinesClassification": "Classify the given newspaper headline as sarcastic or not sarcastic.", "XLWICNLPairClassification": "Retrieve semantically similar text.", "CovidDisinformationNLMultiLabelClassification": "Classify the given social media post related to COVID-19 into its misinformation category.", "VABBClusteringS2S": "Identify the main category of the given paper based on the title.", "VABBClusteringP2P": "Identify the main category of the given paper based on the title and abstract.", "ArguAna-NL.v2": "Given a claim, find documents that refute the claim.", "SCIDOCS-NL.v2": "Given a scientific paper title, retrieve paper abstracts that are cited by the given paper.", "SciFact-NL.v2": "Given a scientific claim, retrieve passages that support or refute the claim.", "DutchNewsArticlesRetrieval": "Given a news title, retrieve the original article.", "OpenTenderRetrieval": "Given a title, retrieve the corresponding article.", "VABBRetrieval": "Given a paper's title, retrieve the corresponding abstract.", "GeoreviewClassification": "Classify the given review into its appropriate rating category.", "InappropriatenessClassification": "Classify the given message as either sensitive topic or not.", "KinopoiskClassification": "Classify the sentiment of the given movie review.", "RuReviewsClassification": "Classify the sentiment of the given review as either positive, negative, or neutral.", "RuSciBenchGRNTIClassification": "Identify the main category of the given paper based on the title and abstract.", "RuSciBenchOECDClassification": "Identify the main category of the given paper based on the title and abstract.", "GeoreviewClusteringP2P": "Identify the organization category based on the given review.", "RuSciBenchGRNTIClusteringP2P": "Identify the main category of the given paper based on the title and abstract.", "RuSciBenchOECDClusteringP2P": "Identify the main category of the given paper based on the title and abstract.", "SensitiveTopicsClassification": "Classify the given text into sensitive topics.", "RiaNewsRetrievalHardNegatives.v2": "Given a news title, retrieve the original article.", "PersianFoodSentimentClassification": "Classify the sentiment of the given text as either positive or negative.", "SynPerChatbotConvSAClassification": "Classify the sentiment of the given text.", "SynPerChatbotConvSAToneChatbotClassification": "Classify the sentiment of the given text.", "SynPerChatbotConvSAToneUserClassification": "Classify the sentiment of the given text.", "SynPerChatbotSatisfactionLevelClassification": "Classify the satisfaction level of the given text.", "SynPerTextToneClassification.v3": "Classify the tone of the given text.", "DeepSentiPers.v2": "Classify the sentiment of the given text.", "PersianTextEmotion.v2": "Classify the emotion expressed in the given text into: joy, sadness, surprise, fear, anger, and love.", "StyleClassification": "Classify the style of the given text as either formal or informal.", "PerShopDomainClassification": "Classify the domain of the given utterance in shopping dialogue.", "PerShopIntentClassification": "Classify the intent of the given utterance in shopping dialogue.", "SynPerChatbotRAGFAQPC": "Retrieve the most relevant response for the given query.", "FarsiParaphraseDetection": "Retrieve semantically similar text.", "SynPerTextKeywordsPC": "Identify keywords in the given text.", "SynPerQAPC": "Retrieve the most relevant response for the given query.", "ParsinluQueryParaphPC": "Retrieve semantically similar text.", "SynPerChatbotRAGFAQRetrieval": "Retrieve the most relevant response for the given query.", "HotpotQA-FaHardNegatives": "Given a multi-hop question, retrieve passages that answer the question.", "ArguAna-Fa.v2": "Given a claim, find documents that refute the claim.", "QuoraRetrieval-Fa.v2": "Retrieve questions that are semantically equivalent to the given one.", "SCIDOCS-Fa.v2": "Given a scientific paper title, retrieve paper abstracts that are cited by the given paper.", "SciFact-Fa.v2": "Given a scientific claim, retrieve passages that support or refute the claim.", "TRECCOVID-Fa.v2": "Given a query on COVID-19, retrieve documents that answer the query.", "FEVER-FaHardNegatives": "Given a claim, retrieve documents that support or refute the claim.", "SAMSumFa": "Retrieve the most relevant summary for the given conversation.", "SynPerChatbotSumSRetrieval": "Retrieve the most relevant summary for the given conversation.", "SynPerChatbotRAGSumSRetrieval": "Retrieve the most relevant summary for the given conversation.", "ArguAna-VN": "Given a claim, find documents that refute the claim.", "SciFact-VN": "Given a scientific claim, retrieve passages that support or refute the claim.", "ClimateFEVER-VN": "Given a claim about climate change, retrieve documents that support or refute the claim.", "FEVER-VN": "Given a claim, retrieve documents that support or refute the claim.", "DBPedia-VN": "Given a query, retrieve relevant entity descriptions.", "HotpotQA-VN": "Given a multi-hop question, retrieve passages that answer the question.", "TRECCOVID-VN": "Given a query on COVID-19, retrieve documents that answer the query.", "SCIDOCS-VN": "Given a scientific paper title, retrieve paper abstracts that are cited by the given paper.", "Quora-VN": "Retrieve questions that are semantically equivalent to the given one.", "CQADupstackAndroid-VN": "Given a question, retrieve questions that are semantically equivalent.", "CQADupstackGis-VN": "Given a question, retrieve questions that are semantically equivalent.", "CQADupstackMathematica-VN": "Given a question, retrieve questions that are semantically equivalent.", "CQADupstackPhysics-VN": "Given a question, retrieve questions that are semantically equivalent.", "CQADupstackProgrammers-VN": "Given a question, retrieve questions that are semantically equivalent.", "CQADupstackStats-VN": "Given a question, retrieve questions that are semantically equivalent.", "CQADupstackTex-VN": "Given a question, retrieve questions that are semantically equivalent.", "CQADupstackUnix-VN": "Given a question, retrieve questions that are semantically equivalent.", "CQADupstackWebmasters-VN": "Given a question, retrieve questions that are semantically equivalent.", "CQADupstackWordpress-VN": "Given a question, retrieve questions that are semantically equivalent.", "Banking77VNClassification": "Given an online banking query, find the corresponding intents.", "EmotionVNClassification": "Classify the emotion expressed in the given Twitter message into one of the six emotions: anger, fear, joy, love, sadness, and surprise.", "AmazonCounterfactualVNClassification": "Classify a given Amazon customer review text as either counterfactual or not counterfactual.", "MTOPDomainVNClassification": "Classify the intent domain of the given utterance in task-oriented conversation.", "TweetSentimentExtractionVNClassification": "Classify the sentiment of a given tweet as either positive, negative, or neutral", "ToxicConversationsVNClassification": "Classify the given comments as either toxic or not toxic.", "ImdbVNClassification": "Classify the sentiment expressed in the given movie review text from the IMDB dataset.", "MTOPIntentVNClassification": "Classify the intent of the given utterance in task-oriented conversation.", "MassiveScenarioVNClassification": "Given a user utterance as query, find the user scenarios.", "MassiveIntentVNClassification": "Given a user utterance as query, find the user intents.", "AmazonReviewsVNClassification": "Classify the given Amazon review into its appropriate rating category.", "AmazonPolarityVNClassification": "Classify the given Amazon review as either positive or negative.", "SprintDuplicateQuestions-VN": "Retrieve duplicate questions from Sprint forum.", "TwitterSemEval2015-VN": "Retrieve tweets that are semantically similar to the given tweet.", "TwitterURLCorpus-VN": "Retrieve tweets that are semantically similar to the given tweet.", "TwentyNewsgroupsClustering-VN": "Identify the topic or theme of the given news articles.", "RedditClusteringP2P-VN": "Identify the topic or theme of Reddit posts based on the titles and posts.", "StackExchangeClusteringP2P-VN": "Identify the topic or theme of StackExchange posts based on the given titles and paragraphs.", "StackExchangeClustering-VN": "Identify the topic or theme of StackExchange posts based on the titles.", "RedditClustering-VN": "Identify the topic or theme of Reddit posts based on the titles.", "SciDocsRR-VN": "Given a title of a scientific paper, retrieve the titles of other relevant papers.", "AskUbuntuDupQuestions-VN": "Retrieve duplicate questions from AskUbuntu forum.", "StackOverflowDupQuestions-VN": "Retrieve duplicate questions from StackOverflow forum." }, "default_prompt_name": null, "similarity_fn_name": "cosine" }