Type inference is implemented through the two classes `ForwardTypeInferenceAnalysis` and `BackwardTypeInferenceAnalysis`, which can be used as forward and backward dataflow analyses with the MLIR sparse dataflow analysis framework. Both classes rely on a type resolver, which must be a class inheriting `TypeResolver` and that specifies which types are to be considered as unresolved and that resolves the actual types for the values related to an operation based on the previous state of type inference. The type inference state for an operation is represented by an instance of the class `LocalInferenceState`, which maps the values related to an operation to instances of `InferredType` (either indicating the inferred type as an `mlir::Type` or indicating that no type has been inferred, yet). The local type inference by a type resolver can be implemented with type constraints (instances of sub-classes of `TypeConstraint`), which can be combined into a `TypeConstraintSet`. The latter provides a function that attempts to apply the constraints until the resulting type inference state converges. There are multiple, predefined type constraint classes for common constraints (e.g., if two values must have the same type or the same element type). These exist both as static constraints and as dynamic constraints. Some pre-defined type constraints depend on a class that yields a pair of values for which the contraints shall be applied (e.g., yielding two operands or an operand and a result, etc.).
📒 Read documentation | 💛 Community support | 📚 FHE resources
Concrete is an open-source FHE Compiler which simplifies the use of fully homomorphic encryption (FHE).
FHE is a powerful cryptographic tool, which allows computation to be performed directly on encrypted data without needing to decrypt it first. With FHE, you can build services that preserve privacy for all users. FHE is also great against data breaches as everything is done on encrypted data. Even if the server is compromised, in the end no sensitive data is leaked.
Since writing FHE programs can be difficult, Concrete, based on LLVM, make this process easier for developers.
Main features
- Ability to compile Python functions (that may include NumPy) to their FHE equivalents, to operate on encrypted data
- Support for large collection of operators
- Partial support for floating points
- Support for table lookups on integers
- Support for integration with Client / Server architectures
Installation
| OS / HW | Available on Docker | Available on PyPI |
|---|---|---|
| Linux | Yes | Yes |
| Windows | Yes | Coming soon |
| Windows Subsystem for Linux | Yes | Yes |
| macOS 11+ (Intel) | Yes | Yes |
| macOS 11+ (Apple Silicon: M1, M2, etc.) | Yes | Yes |
The preferred way to install Concrete is through PyPI:
pip install -U pip wheel setuptools
pip install concrete-python
You can get the concrete-python docker image by pulling the latest docker image:
docker pull zamafhe/concrete-python:v2.0.0
You can find more detailed installation instructions in installing.md
Getting started
from concrete import fhe
def add(x, y):
return x + y
compiler = fhe.Compiler(add, {"x": "encrypted", "y": "encrypted"})
inputset = [(2, 3), (0, 0), (1, 6), (7, 7), (7, 1), (3, 2), (6, 1), (1, 7), (4, 5), (5, 4)]
print(f"Compiling...")
circuit = compiler.compile(inputset)
print(f"Generating keys...")
circuit.keygen()
examples = [(3, 4), (1, 2), (7, 7), (0, 0)]
for example in examples:
encrypted_example = circuit.encrypt(*example)
encrypted_result = circuit.run(encrypted_example)
result = circuit.decrypt(encrypted_result)
print(f"Evaluation of {' + '.join(map(str, example))} homomorphically = {result}")
or if you have a simple function that you can decorate, and you don't care about explicit steps of key generation, encryption, evaluation and decryption:
from concrete import fhe
@fhe.compiler({"x": "encrypted", "y": "encrypted"})
def add(x, y):
return x + y
inputset = [(2, 3), (0, 0), (1, 6), (7, 7), (7, 1), (3, 2), (6, 1), (1, 7), (4, 5), (5, 4)]
print(f"Compiling...")
circuit = add.compile(inputset)
examples = [(3, 4), (1, 2), (7, 7), (0, 0)]
for example in examples:
result = circuit.encrypt_run_decrypt(*example)
print(f"Evaluation of {' + '.join(map(str, example))} homomorphically = {result}")
Documentation
Full, comprehensive documentation is available at https://docs.zama.ai/concrete.
Target users
Concrete is a generic library that supports a variety of use cases. Because of this flexibility, it doesn't provide primitives for specific use cases.
If you have a specific use case, or a specific field of computation, you may want to build abstractions on top of Concrete.
One such example is Concrete ML, which is built on top of Concrete to simplify Machine Learning oriented use cases.
Tutorials
Various tutorials are proposed in the documentation to help you start writing homomorphic programs:
- How to use Concrete with Decorators
- Partial support of Floating Points
- How to perform Table Lookup
If you have built awesome projects using Concrete, feel free to let us know and we'll link to it.
Project layout
concrete project is a set of several modules which are high-level frontends, compilers, backends and side tools.
frontendsdirectory contains apythonfrontend.compilersdirectory contains theconcrete-compilerandconcrete-optimizermodules.concrete-compileris a compiler that:- synthetize a FHE computation dag expressed as a MLIR dialect
- compile to a set of artifacts
- and provide tools to manipulate those artifacts at runtime.
concrete-optimizeris a specific module used by the compiler to find the best, secure and accurate set of cryptographic parameters for a given dag.
- The
backendsdirectory contains implementations of cryptographic primitives on different computation unit, used byconcrete-compilerruntime.concrete-cpumodule provides CPU implementation, whileconcrete-cudamodule provides GPU implementation using the CUDA platform. - The
toolsdirectory contains side tools used by the rest of the project.
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Citing Concrete
To cite Concrete in academic papers, please use the following entry:
@Misc{Concrete,
title={{Concrete: TFHE Compiler that converts python programs into FHE equivalent}},
author={Zama},
year={2022},
note={\url{https://github.com/zama-ai/concrete}},
}
License
This software is distributed under the BSD-3-Clause-Clear license. If you have any questions, please contact us at hello@zama.ai.
