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Chronos: Un model fundacional tokenitzat per a la predicció de sèries temporals×Moirai: Transformer Universal per a la Predicció de Sèries Temporals×
CampAprenentatge profundAprenentatge profund
FamíliaMachine learningMachine learning
Any d'origen20242024
Autor originalAbdul Fatir Ansari et al. (Amazon)Gerald Woo et al. (Salesforce)
TipusPre-trained language-model-based time-series forecasterFoundation model for zero-shot time-series forecasting
Font seminalAnsari, A. F., Stella, L., Turkmen, C., Zhang, X., Mercado, P., Shen, H., et al. (2024). Chronos: Learning the language of time series. Transactions on Machine Learning Research. link ↗Woo, G., Liu, C., Kumar, A., Xiong, C., Savarese, S., & Sahoo, D. (2024). Unified training of universal time series forecasting transformers. ICML. link ↗
ÀliesChronos Forecasting Model, Amazon Chronos, Tokenized Time-Series LLM, Kronos Zaman Serisi ModeliUnified Time-Series Transformer, Universal Forecasting Transformer, MOIRAI, Evrensel Zaman Serisi Tahmin Transformatörü
Relacionats23
ResumChronos is a family of pre-trained probabilistic forecasting models introduced by Ansari et al. at Amazon in 2024. It adapts the language-model paradigm to time series by quantizing continuous values into discrete tokens, enabling a standard transformer to be trained on a large heterogeneous corpus of time-series data. The result is a zero-shot forecasting model that generalizes across domains without requiring dataset-specific retraining.Moirai is a foundation model for universal time-series forecasting introduced by Gerald Woo and colleagues at Salesforce Research in 2024 and presented at ICML. The core idea is to pre-train a single large Transformer on an exceptionally diverse corpus of time-series data (LOTSA) spanning many domains and frequencies, enabling zero-shot and few-shot forecasting on unseen datasets without task-specific retraining. Moirai employs patch-based tokenization, any-variate attention, and a mixture-of-distributions output head to handle variable frequencies, multiple variates, and probabilistic prediction in a unified architecture.
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ScholarGateCompara mètodes: Chronos · Moirai. Recuperat el 2026-06-17 de https://scholargate.app/ca/compare