TF Quant Finance is a high-performance library of quantitative finance components built on TensorFlow, aimed at research and production workloads. It implements pricing engines, risk measures, stochastic models, optimizers, and random number generators that are differentiable and vectorized for accelerators. Users can value options and fixed-income instruments, simulate paths, fit curves, and calibrate models while leveraging TensorFlow’s jit compilation and automatic differentiation. The codebase is organized as modular math and finance primitives so you can combine building blocks or target end-to-end examples. It includes Bazel builds, tests, and example notebooks to accelerate learning and adoption in real workflows. With hardware acceleration and differentiable models, it enables modern techniques like gradient-based calibration and end-to-end learning of market dynamics.
Features
- Differentiable pricing, risk, and stochastic modeling in TensorFlow
- Vectorized, accelerator-ready math primitives and RNGs
- Curve fitting, calibration, and optimization utilities
- Example notebooks for options, rates, and simulation workflows
- Bazel builds and test targets for reproducibility
- Composable design to assemble bespoke quant pipelines