Motivated by analyzing long-term physiological time series, like 24 hours electrocardiogram, we design a computationally efficient spectral embedding algorithm that is suitable to handle "big data". We measure the affinity between any pair of two points via a set of landmarks, which is composed of a small number of points, and "diffuse" on the dataset via the landmark set to achieve a spectral embedding. We coined the algorithm RObust and Scalable Embedding via LANdmark Diffusion (ROSELAND). The algorithm is applied to study the arterial blood pressure waveform dynamics during a liver transplant operation lasting for 12 hours long. The proposed Roseland could help researchers handle big datasets or long-term physiological signals if the spectral embedding is considered, and the landmark idea beyond Roseland could be applied to speed up other algorithms.