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Bipolar disorder poses significant challenges due to disruptive manic episodes often missed by traditional clinical monitoring. This research proposes a multimodal AI framework that integrates keystroke dynamics and circadian rhythm analysis via smartphones to predict manic episodes 3 to 7 days prior to clinical onset. Combining fine-grained cognitive-motor behavioral features from typing patterns with physiological markers of circadian disruption, this approach leverages temporal convolutional and LSTM networks enhanced with attention mechanisms for robust prediction. The model will be validated through longitudinal monitoring to assess predictive accuracy and reliability. Such early detection can enable timely interventions, reducing personal and societal burdens while advancing digital mental health methodologies rooted in precision psychiatry.