Constant time pairing-based or elliptic curve based cryptography and digital signatures
Go to file
Mamy André-Ratsimbazafy 8c478df0c1
𝔽p12 extension - initial commit of squaring
2020-04-09 01:23:10 +02:00
benchmarks Cleanup in Montgomery Mul, Square, Pow 2020-03-22 13:24:37 +01:00
constantine 𝔽p12 extension - initial commit of squaring 2020-04-09 01:23:10 +02:00
formal_verification 30% faster constant-time inversion 2020-03-20 23:03:52 +01:00
helpers Less magics, les macros, faster compile-times (or not, Fp6 starts to get really slow, like 5s) + some cleanups in curve families + test 𝔽p6 on 32-bit 2020-03-22 12:28:53 +01:00
sage Somewhat working (?) sage script for quadratic/cubic non-residues 2020-03-22 21:57:15 +01:00
tests 𝔽p12 extension - initial commit of squaring 2020-04-09 01:23:10 +02:00
.gitignore Add sage script for BN and BLS12 curve families 2020-03-21 15:50:39 +01:00
.travis.yml Internals refactor + renewed focus on perf (#17) 2020-03-16 16:33:51 +01:00
LICENSE-APACHEv2 Switch to personal project -> update copyright 2020-02-08 11:42:35 +01:00
LICENSE-MIT Switch to personal project -> update copyright 2020-02-08 11:42:35 +01:00
README.md Fix link to curves config 2020-03-21 13:41:40 +01:00
azure-pipelines.yml Internals refactor + renewed focus on perf (#17) 2020-03-16 16:33:51 +01:00
constantine.nim Add modular reduce / bigint mod from 2 arbitrarily size bigint 2020-02-09 18:17:32 +01:00
constantine.nimble Less magics, les macros, faster compile-times (or not, Fp6 starts to get really slow, like 5s) + some cleanups in curve families + test 𝔽p6 on 32-bit 2020-03-22 12:28:53 +01:00

README.md

Constantine - Constant Time Elliptic Curve Cryptography

License: Apache License: MIT Stability: experimental
Build Status: Travis Build Status: Azure

This library provides constant-time implementation of elliptic curve cryptography.

Warning ⚠️: The library is in development state and cannot be used at the moment except as a showcase or to start a discussion on modular big integers internals.

Installation

You can install the developement version of the library through nimble with the following command

nimble install https://github.com/mratsim/constantine@#master

For speed it is recommended to prefer Clang, MSVC or ICC over GCC. GCC does not properly optimize add-with-carry and sub-with-borrow loops (see Compiler-caveats).

Further if using GCC, GCC 7 at minimum is required, previous versions generated incorrect add-with-carry code.

Target audience

The library aims to be a portable, compact and hardened library for elliptic curve cryptography needs, in particular for blockchain protocols and zero-knowledge proofs system.

The library focuses on following properties:

  • constant-time (not leaking secret data via side-channels)
  • performance
  • generated code size, datatype size and stack usage

in this order

Curves supported

At the moment the following curves are supported, adding a new curve only requires adding the prime modulus and its bitsize in constantine/config/curves.nim.

The following curves are configured:

ECDH / ECDSA curves

  • NIST P-224
  • Curve25519
  • NIST P-256 / Secp256r1
  • Secp256k1 (Bitcoin, Ethereum 1)

Pairing-Friendly curves

Families:

  • BN: Barreto-Naerig
  • BLS: Barreto-Lynn-Scott
  • FKM: Fotiadis-Konstantinou-Martindale

Curves:

  • BN254 (Zero-Knowledge Proofs, Snarks, Starks, Zcash, Ethereum 1)
  • BLS12-377 (Zexe)
  • BLS12-381 (Algorand, Chia Networks, Dfinity, Ethereum 2, Filecoin, Zcash Sapling)
  • BN446
  • FKM12-447
  • BLS12-461
  • BN462

Security

Hardening an implementation against all existing and upcoming attack vectors is an extremely complex task. The library is provided as is, without any guarantees at least until:

  • it gets audited
  • formal proofs of correctness are produced
  • formal verification of constant-time implementation is possible

Defense against common attack vectors are provided on a best effort basis.

Attackers may go to great lengths to retrieve secret data including:

  • Timing the time taken to multiply on an elliptic curve
  • Analysing the power usage of embedded devices
  • Detecting cache misses when using lookup tables
  • Memory attacks like page-faults, allocators, memory retention attacks

This is would be incomplete without mentioning that the hardware, OS and compiler actively hinder you by:

  • Hardware: sometimes not implementing multiplication in constant-time.
  • OS: not providing a way to prevent memory paging to disk, core dumps, a debugger attaching to your process or a context switch (coroutines) leaking register data.
  • Compiler: optimizing away your carefully crafted branchless code and leaking server secrets or optimizing away your secure erasure routine which is "useless" because at the end of the function the data is not used anymore.

A growing number of attack vectors is being collected for your viewing pleasure at https://github.com/mratsim/constantine/wiki/Constant-time-arithmetics

Performance

High-performance is a sought out property. Note that security and side-channel resistance takes priority over performance.

New applications of elliptic curve cryptography like zero-knowledge proofs or proof-of-stake based blockchain protocols are bottlenecked by cryptography.

In blockchain

Ethereum 2 clients spent or use to spend anywhere between 30% to 99% of their processing time verifying the signatures of block validators on R&D testnets Assuming we want nodes to handle a thousand peers, if a cryptographic pairing takes 1ms, that represents 1s of cryptography per block to sign with a target block frequency of 1 every 6 seconds.

In zero-knowledge proofs

According to https://medium.com/loopring-protocol/zksnark-prover-optimizations-3e9a3e5578c0 a 16-core CPU can prove 20 transfers/second or 10 transactions/second. The previous implementation was 15x slower and one of the key optimizations was changing the elliptic curve cryptography backend. It had a direct implication on hardware cost and/or cloud computing resources required.

Measuring performance

To measure the performance of Constantine

git clone https://github.com/mratsim/constantine
nimble bench_fp_clang
nimble bench_fp2_clang

As mentioned in the Compiler caveats section, GCC is up to 2x slower than Clang due to mishandling of carries and register usage.

On my machine, for selected benchmarks on the prime field for popular pairing-friendly curves.

⚠️ Measurements are approximate and use the CPU nominal clock: Turbo-Boost and overclocking will skew them.
==========================================================================================================

All benchmarks are using constant-time implementations to protect against side-channel attacks.

Compiled with Clang
Running on Intel(R) Core(TM) i9-9980XE CPU @ 3.00GHz (overclocked all-core Turbo @4.1GHz)

--------------------------------------------------------------------------------
Addition        Fp[BN254]               0 ns         0 cycles
Substraction    Fp[BN254]               0 ns         0 cycles
Negation        Fp[BN254]               0 ns         0 cycles
Multiplication  Fp[BN254]              21 ns        65 cycles
Squaring        Fp[BN254]              18 ns        55 cycles
Inversion       Fp[BN254]            6266 ns     18799 cycles
--------------------------------------------------------------------------------
Addition        Fp[BLS12_381]           0 ns         0 cycles
Substraction    Fp[BLS12_381]           0 ns         0 cycles
Negation        Fp[BLS12_381]           0 ns         0 cycles
Multiplication  Fp[BLS12_381]          45 ns       136 cycles
Squaring        Fp[BLS12_381]          39 ns       118 cycles
Inversion       Fp[BLS12_381]       15683 ns     47050 cycles
--------------------------------------------------------------------------------

Notes:
  GCC is significantly slower than Clang on multiprecision arithmetic.
  The simplest operations might be optimized away by the compiler.

Compiler caveats

Unfortunately compilers and in particular GCC are not very good at optimizing big integers and/or cryptographic code even when using intrinsics like addcarry_u64.

Compilers with proper support of addcarry_u64 like Clang, MSVC and ICC may generate code up to 20~25% faster than GCC.

This is explained by the GMP team: https://gmplib.org/manual/Assembly-Carry-Propagation.html and can be reproduced with the following C code.

See https://gcc.godbolt.org/z/2h768y

#include <stdint.h>
#include <x86intrin.h>

void add256(uint64_t a[4], uint64_t b[4]){
  uint8_t carry = 0;
  for (int i = 0; i < 4; ++i)
    carry = _addcarry_u64(carry, a[i], b[i], &a[i]);
}

GCC

add256:
        movq    (%rsi), %rax
        addq    (%rdi), %rax
        setc    %dl
        movq    %rax, (%rdi)
        movq    8(%rdi), %rax
        addb    $-1, %dl
        adcq    8(%rsi), %rax
        setc    %dl
        movq    %rax, 8(%rdi)
        movq    16(%rdi), %rax
        addb    $-1, %dl
        adcq    16(%rsi), %rax
        setc    %dl
        movq    %rax, 16(%rdi)
        movq    24(%rsi), %rax
        addb    $-1, %dl
        adcq    %rax, 24(%rdi)
        ret

Clang

add256:
        movq    (%rsi), %rax
        addq    %rax, (%rdi)
        movq    8(%rsi), %rax
        adcq    %rax, 8(%rdi)
        movq    16(%rsi), %rax
        adcq    %rax, 16(%rdi)
        movq    24(%rsi), %rax
        adcq    %rax, 24(%rdi)
        retq

Inline assembly

Constantine uses inline assembly for a very restricted use-case: "conditional mov", and a temporary use-case "hardware 128-bit division" that will be replaced ASAP (as hardware division is not constant-time).

Using intrinsics otherwise significantly improve code readability, portability, auditability and maintainability.

Future optimizations

In the future more inline assembly primitives might be added provided the performance benefit outvalues the significant complexity. In particular, multiprecision multiplication and squaring on x86 can use the instructions MULX, ADCX and ADOX to multiply-accumulate on 2 carry chains in parallel (with instruction-level parallelism) and improve performance by 15~20% over an uint128-based implementation. As no compiler is able to generate such code even when using the _mulx_u64 and _addcarryx_u64 intrinsics, either the assembly for each supported bigint size must be hardcoded or a "compiler" must be implemented in macros that will generate the required inline assembly at compile-time.

Such a compiler can also be used to overcome GCC codegen deficiencies, here is an example for add-with-carry: https://github.com/mratsim/finite-fields/blob/d7f6d8bb/macro_add_carry.nim

Sizes: code size, stack usage

Thanks to 10x smaller key sizes for the same security level as RSA, elliptic curve cryptography is widely used on resource-constrained devices.

Constantine is actively optimize for code-size and stack usage. Constantine does not use heap allocation.

At the moment Constantine is optimized for 32-bit and 64-bit CPUs.

When performance and code size conflicts, a careful and informed default is chosen. In the future, a compile-time flag that goes beyond the compiler -Os might be provided.

Example tradeoff

Unrolling Montgomery Multiplication brings about 15% performance improvement which translate to ~15% on all operations in Constantine as field multiplication bottlenecks all cryptographic primitives. This is considered a worthwhile tradeoff on all but the most constrained CPUs with those CPUs probably being 8-bit or 16-bit.

License

Licensed and distributed under either of

or

at your option. This file may not be copied, modified, or distributed except according to those terms.