Proof layer · Backspace

Tokenized GPU pools for sweeps, evolution, and RL—with spend controls and reproducible manifests.

Capability pillar

Compute-Driven Backtesting & Model Research

Tokenized GPU pools for sweeps, evolution, and RL—with spend controls and reproducible manifests.

How Compute-Driven Backtesting & Model Research works on the platform
schematic
Parallel backtest grid feeding a fitness frontier and manifest hashesFitness surfacemulti-objective · paretoRun manifestsha256:7f3a…tokens burned

Parameter grids burn compute tokens deliberately; manifests bind code, data slices, and kernels so results replay bit-for-bit.

Massively Parallel Backtesting Grid

Run thousands of parameter sweeps using tokenized GPU units with configurable compute spend.

Genetic Algorithm Strategy Optimizer

Evolve strategies via mutation, crossover, and multi-objective fitness using compute credits.

Reinforcement Learning Lab

Train RL agents (PPO, DQN, SAC) on synthetic or historical order books with custom reward functions.

Latency-Aware Backtests

Model realistic microstructure: slippage, queue position, routing delays, and venue-specific latency.

Cross-Asset Correlation Explorer

GPU-accelerated correlation matrices, PCA, clustering, and anomaly detection with interactive exploration.