Deep learning research requires working at scale. Training on massive data sets or multilayered deep networks is computationally intensive and can take an impractically long time as deep learning models are bound by memory. The key here is to compose the deep learning models in a structured way so that they are decoupled from the engineering and data, enabling researchers to conduct fast research.
]]>