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deepdow (read as "wow") is a Python package connecting portfolio optimization and deep learning. Its goal is to
facilitate research of networks that perform weight allocation in one forward pass.
deepdow attempts to merge two very common steps in portfolio optimization
Forecasting of future evolution of the market (LSTM, GARCH,...)
Optimization problem design and solution (convex optimization, ...)
It does so by constructing a pipeline of layers. The last layer performs the allocation and all the previous ones serve
as feature extractors. The overall network is fully differentiable and one can optimize its parameters by gradient
descent algorithms.
deepdow is not ...
focused on active trading strategies, it only finds allocations to be held over some horizon (buy and hold)
one implication is that transaction costs associated with frequent, short-term trades, will not be a primary concern
a reinforcement learning framework, however, one might easily reuse deepdow layers in other deep learning applications
a single algorithm, instead, it is a framework that allows for easy experimentation with powerful building blocks
Some features
all layers built on torch and fully differentiable
integration with mlflow and tensorboard via callbacks
provides variety of losses like sharpe ratio, maximum drawdown, ...
simple to extend and customize
CPU and GPU support
Citing
If you use deepdow (including ideas proposed in the documentation, examples and tests) in your research please make sure to cite it.
To obtain all the necessary citing information, click on the DOI badge at the beginning of this README and you will be automatically redirected to an external website.
Note that we are currently using Zenodo.