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MOMENT 1 Small

Developed by AutonLab
MOMENT is a series of foundation models for general time series analysis, supporting various time series tasks with out-of-the-box effectiveness and performance improvements through fine-tuning.
Downloads 38.03k
Release Time : 10/10/2024

Model Overview

MOMENT is a series of foundation models for general time series analysis, serving as a fundamental building block for diverse time series analysis tasks. It offers out-of-the-box effectiveness, supports zero-shot forecasting, few-shot classification scenarios, and can be fine-tuned with in-distribution data and task-specific data to enhance performance.

Model Features

Multi-task support
Serves as a fundamental building block for diverse time series analysis tasks such as forecasting, classification, anomaly detection, and data imputation.
Out-of-the-box
Ready to use with little to no task-specific samples, supporting scenarios like zero-shot forecasting and few-shot classification.
Fine-tunability
Can be fine-tuned with in-distribution data and task-specific data to enhance performance.

Model Capabilities

Time series forecasting
Time series classification
Anomaly detection
Data imputation
Representation learning

Use Cases

Healthcare
ECG classification
Using MOMENT for electrocardiogram (ECG) classification tasks.
Supports parameter-efficient fine-tuning (PEFT) in multi-GPU environments to address real-world ECG classification problems.
Industrial forecasting
Time series forecasting
Using MOMENT for time series forecasting tasks.
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