Myriad: a real-world testbed to bridge trajectory optimization and deep learning
About
We present Myriad, a testbed written in JAX for learning and planning in real-world continuous environments. The primary contributions of Myriad are threefold. First, Myriad provides machine learning practitioners access to trajectory optimization techniques for application within a typical automatic differentiation workflow. Second, Myriad presents many real-world optimal control problems, ranging from biology to medicine to engineering, for use by the machine learning community. Formulated in continuous space and time, these environments retain some of the complexity of real-world systems often abstracted away by standard benchmarks. As such, Myriad strives to serve as a stepping stone towards application of modern machine learning techniques for impactful real-world tasks. Finally, we use the Myriad repository to showcase a novel approach for learning and control tasks. Trained in a fully end-to-end fashion, our model leverages an implicit planning module over neural ordinary differential equations, enabling simultaneous learning and planning with complex environment dynamics.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| End-to-end learning and planning | Bacteria | Cost (Best)-7.98 | 1 | |
| End-to-end learning and planning | Bear Populations | Best Cost12.28 | 1 | |
| End-to-end learning and planning | Bioreactor | Best Cost-1.39 | 1 | |
| End-to-end learning and planning | Cancer Treatment | Best Cost20.57 | 1 | |
| End-to-end learning and planning | Cart-Pole Swing-Up | Cost (Best)87.78 | 1 | |
| End-to-end learning and planning | Glucose | Best Cost1.35e+3 | 1 | |
| End-to-end learning and planning | HIV Treatment | Best Cost-823.1 | 1 | |
| End-to-end learning and planning | Mould Fungicide | Best Cost23.5 | 1 | |
| End-to-end learning and planning | Mountain Car | Cost (Best)8.57 | 1 | |
| End-to-end learning and planning | Pendulum | Best Cost25.53 | 1 |