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advanced-real-numbers-128.cpp
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advanced-real-numbers-128.cpp
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//==================================================================================
// BSD 2-Clause License
//
// Copyright (c) 2014-2022, NJIT, Duality Technologies Inc. and other contributors
//
// All rights reserved.
//
// Author TPOC: contact@openfhe.org
//
// Redistribution and use in source and binary forms, with or without
// modification, are permitted provided that the following conditions are met:
//
// 1. Redistributions of source code must retain the above copyright notice, this
// list of conditions and the following disclaimer.
//
// 2. Redistributions in binary form must reproduce the above copyright notice,
// this list of conditions and the following disclaimer in the documentation
// and/or other materials provided with the distribution.
//
// THIS SOFTWARE IS PROVIDED BY THE COPYRIGHT HOLDERS AND CONTRIBUTORS "AS IS"
// AND ANY EXPRESS OR IMPLIED WARRANTIES, INCLUDING, BUT NOT LIMITED TO, THE
// IMPLIED WARRANTIES OF MERCHANTABILITY AND FITNESS FOR A PARTICULAR PURPOSE ARE
// DISCLAIMED. IN NO EVENT SHALL THE COPYRIGHT HOLDER OR CONTRIBUTORS BE LIABLE
// FOR ANY DIRECT, INDIRECT, INCIDENTAL, SPECIAL, EXEMPLARY, OR CONSEQUENTIAL
// DAMAGES (INCLUDING, BUT NOT LIMITED TO, PROCUREMENT OF SUBSTITUTE GOODS OR
// SERVICES; LOSS OF USE, DATA, OR PROFITS; OR BUSINESS INTERRUPTION) HOWEVER
// CAUSED AND ON ANY THEORY OF LIABILITY, WHETHER IN CONTRACT, STRICT LIABILITY,
// OR TORT (INCLUDING NEGLIGENCE OR OTHERWISE) ARISING IN ANY WAY OUT OF THE USE
// OF THIS SOFTWARE, EVEN IF ADVISED OF THE POSSIBILITY OF SUCH DAMAGE.
//==================================================================================
/*
Advanced examples for 128-bit implementation of CKKS
*/
// Define PROFILE to enable TIC-TOC timing measurements
#define PROFILE
#include "openfhe.h"
using namespace lbcrypto;
void AutomaticRescaleDemo(ScalingTechnique scalTech);
void ManualRescaleDemo(ScalingTechnique scalTech);
void HybridKeySwitchingDemo1();
void HybridKeySwitchingDemo2();
void FastRotationsDemo1();
void FastRotationsDemo2();
int main(int argc, char* argv[]) {
/*
* Our 128-bit implementation of CKKS includes two variants called
* "FIXEDMANUAL" and "FIXEDAUTO", respectively. Note that 128-bit
* CKKS supports does not support the FLEXIBLEAUTO mode.
*
* To turn on the 128-bit mode, run "cmake -DNATIVE_SIZE=128 .."
*
* Before we start, we need to say a few words about the rescale
* operation, which is central in CKKS. Whenever we multiply two
* ciphertexts c1 and c2 which encrypt numbers m1*D and m2*D
* respectively, we get a result that looks like m1*m2*D^2. Since the
* scaling factor of this number is D^2, we say that the result is of
* depth 2. It is clear that a ciphertext of depth 2 cannot be added
* to ciphertexts of depth 1, because their scaling factors are
* different. Rescaling takes a ciphertext of depth 2, and makes it of
* depth 1 by an operation that looks a lot like dividing by D=2^p.
*
* For efficiency reasons, our implementation of CKKS works in the
* RNS space, which means that we avoid working with big numbers and
* we only work with native integers. One complication that arises
* from this is that we can only rescale by dividing by certain prime
* numbers and not D=2^p.
*
* There are two ways to deal with this. The first is to choose prime
* numbers as close to 2^p as possible, and assume that the scaling
* factor remains the same. This inevitably incurs some approximation
* error, and this is why we refer to it as the FIXEDMANUAL variant.
* The second way of dealing with this is to track how the scaling
* factor changes and try to adjust for it. This is what we call the
* FLEXIBLEAUTO variant of CKKS. Only the approximate approach is supported
* for 128-bit CKKS. We also include FIXEDAUTO, which is an automated
* version of FIXEDMANUAL that does all rescaling automatically.
*
* We have designed FIXEDAUTO so it hides all the nuances of
* tracking the depth of ciphertexts and having to call the rescale
* operation. Therefore, FIXEDAUTO is more appropriate for users
* who do not want to get into the details of the underlying crypto
* and math, or who want to put together a quick prototype. On the
* contrary, FIXEDMANUAL is more appropriate for production
* applications that have been optimized by experts.
*
* The first two parts of this demo introduce the two variants, by
* implementing the same computation, using both FIXEDAUTO and FIXEDMANUAL.
*
*/
#if NATIVEINT == 128 && !defined(__EMSCRIPTEN__)
AutomaticRescaleDemo(FIXEDAUTO);
// Note that FLEXIBLEAUTO is not supported for 128-bit CKKS
ManualRescaleDemo(FIXEDMANUAL);
/*
* Our implementation of CKKS supports two different algorithms
* for key switching, namely BV and HYBRID. BV corresponds to
* a technique also known as digit decomposition (both RNS and based
* on a digit size). GHS (not implemented separately anymore) corresponds to ciphertext
* modulus doubling. HYBRID combines the characteristics of both
* BV and GHS. Please refer to the documentation of KeySwitchBVGen,
* KeySwitchGHSGen, and KeySwitchHybridGen in keyswitch-bv.h/cpp and keyswitch-hybrid.h/cpp for more
* details about the different key switch techniques.
*
* For most cases, HYBRID will be the most appropriate and efficient
* key switching technique, and this is why we devote the third and
* fourth part of this demo to HYBRID key switching.
*/
HybridKeySwitchingDemo1();
HybridKeySwitchingDemo2();
/*
* The final parts of this demo showcase our implementation of an
* optimization technique called hoisting. The idea is simple - when
* we want to perform multiple different rotations to the same
* ciphertext, we can compute one part of the rotation algorithm once,
* and reuse it multiple times. Please refer to the documentation of
* EvalFastRotationPrecompute in keyswitch-bv.h/cpp and keyswitch-hybrid.h/cpp
* for more details on hoisting in BV and HYBRID key switching.
*/
FastRotationsDemo1();
FastRotationsDemo2();
#else
std::cout << "This demo only runs for 128-bit CKKS." << std::endl;
#endif
return 0;
}
void AutomaticRescaleDemo(ScalingTechnique scalTech) {
/* Please read comments in main() for an introduction to what the
* rescale operation is. Knowing about Rescale() is not necessary
* to use the FIXEDAUTO CKKS variant, it is however needed to
* understand what's happening underneath.
*
* FIXEDAUTO is a variant of CKKS that automatically
* performs rescaling before every multiplication.
* This is done to make it easier for users to write FHE
* computations without worrying about the depth of ciphertexts
* or rescaling.
*/
if (scalTech == FIXEDAUTO) {
std::cout << "\n\n\n ===== FixedAutoDemo ============= " << std::endl;
}
uint32_t batchSize = 8;
CCParams<CryptoContextCKKSRNS> parameters;
parameters.SetMultiplicativeDepth(6);
parameters.SetScalingModSize(90);
parameters.SetBatchSize(batchSize);
CryptoContext<DCRTPoly> cc = GenCryptoContext(parameters);
std::cout << "CKKS scheme is using ring dimension " << cc->GetRingDimension() << std::endl << std::endl;
cc->Enable(PKE);
cc->Enable(KEYSWITCH);
cc->Enable(LEVELEDSHE);
auto keys = cc->KeyGen();
cc->EvalMultKeyGen(keys.secretKey);
// Input
std::vector<double> x = {1.0, 1.01, 1.02, 1.03, 1.04, 1.05, 1.06, 1.07};
Plaintext ptxt = cc->MakeCKKSPackedPlaintext(x);
std::cout << "Input x: " << ptxt << std::endl;
auto c = cc->Encrypt(keys.publicKey, ptxt);
/* Computing f(x) = c*x^18 + c*x^9 + d
*
* In the following we compute f(x) with a computation
* that has a multiplicative depth of 5 or 6.
*
* The result is correct, even though there is no call to
* the Rescale() operation.
*/
auto c2 = cc->EvalMult(c, c); // x^2
auto c4 = cc->EvalMult(c2, c2); // x^4
auto c8 = cc->EvalMult(c4, c4); // x^8
auto c16 = cc->EvalMult(c8, c8); // x^16
auto c9 = cc->EvalMult(c8, c); // x^9
auto c18 = cc->EvalMult(c16, c2); // x^18
auto cRes1 = cc->EvalAdd(cc->EvalAdd(c18, c9), 1.0); // Final result 1
auto cRes2 = cc->EvalSub(cc->EvalAdd(c18, c9), 1.0); // Final result 2
auto cRes3 = cc->EvalMult(cc->EvalAdd(c18, c9), 0.5); // Final result 3
Plaintext result1, result2, result3;
std::cout.precision(8);
cc->Decrypt(keys.secretKey, cRes1, &result1);
result1->SetLength(batchSize);
std::cout << "x^18 + x^9 + 1 = " << result1 << std::endl;
cc->Decrypt(keys.secretKey, cRes2, &result2);
result2->SetLength(batchSize);
std::cout << "x^18 + x^9 - 1 = " << result2 << std::endl;
cc->Decrypt(keys.secretKey, cRes3, &result3);
result3->SetLength(batchSize);
std::cout << "0.5*x^18 + 0.5*x^9 = " << result3 << std::endl;
}
void ManualRescaleDemo(ScalingTechnique scalTech) {
/* Please read comments in main() for an introduction to what the
* rescale operation is, and what's the FIXEDMANUAL variant of CKKS.
*
* Even though FIXEDMANUAL does not implement automatic rescaling
* as FIXEDAUTO does, this does not mean that it does not abstract
* away some of the nitty-gritty details of using CKKS.
*
* In CKKS, ciphertexts are defined versus a large ciphertext modulus Q.
* Whenever we rescale a ciphertext, its ciphertext modulus becomes
* smaller too. All homomorphic operations require that their inputs are
* defined over the same ciphertext modulus, and therefore, we need to
* adjust one of them if their ciphertext moduli do not match. The way
* this is done in the original CKKS paper is through an operation called
* Modulus Switch. In our implementation, we call this operation
* LevelReduce, and both FIXEDMANUAL and FIXEDAUTO do it automatically.
* As far as we know, automatic level reduce does not incur any performance
* penalty and this is why it is performed in both FIXEDMANUAL and
* FIXEDAUTO.
*
* Overall, we believe that automatic modulus switching and rescaling make
* CKKS much easier to use, at least for non-expert users.
*/
std::cout << "\n\n\n ===== FixedManualDemo ============= " << std::endl;
uint32_t batchSize = 8;
CCParams<CryptoContextCKKSRNS> parameters;
parameters.SetMultiplicativeDepth(5);
parameters.SetScalingModSize(90);
parameters.SetBatchSize(batchSize);
CryptoContext<DCRTPoly> cc = GenCryptoContext(parameters);
cc->Enable(PKE);
cc->Enable(KEYSWITCH);
cc->Enable(LEVELEDSHE);
std::cout << "CKKS scheme is using ring dimension " << cc->GetRingDimension() << std::endl << std::endl;
auto keys = cc->KeyGen();
cc->EvalMultKeyGen(keys.secretKey);
// Input
std::vector<double> x = {1.0, 1.1, 1.2, 1.3, 1.4, 1.5, 1.6, 1.7};
Plaintext ptxt = cc->MakeCKKSPackedPlaintext(x);
std::cout << "Input x: " << ptxt << std::endl;
auto c = cc->Encrypt(keys.publicKey, ptxt);
/* Computing f(x) = x^18 + x^9 + 1
*
* Compare the following with the corresponding code
* for FIXEDAUTO. Here we need to track the depth of ciphertexts
* and call Rescale() whenever needed. In this instance it's still
* not hard to do so, but this can be quite tedious in other
* complicated computations (e.g., in bootstrapping).
*
*/
// x^2
auto c2_depth2 = cc->EvalMult(c, c);
auto c2_depth1 = cc->Rescale(c2_depth2);
// x^4
auto c4_depth2 = cc->EvalMult(c2_depth1, c2_depth1);
auto c4_depth1 = cc->Rescale(c4_depth2);
// x^8
auto c8_depth2 = cc->EvalMult(c4_depth1, c4_depth1);
auto c8_depth1 = cc->Rescale(c8_depth2);
// x^16
auto c16_depth2 = cc->EvalMult(c8_depth1, c8_depth1);
auto c16_depth1 = cc->Rescale(c16_depth2);
// x^9
auto c9_depth2 = cc->EvalMult(c8_depth1, c);
// x^18
auto c18_depth2 = cc->EvalMult(c16_depth1, c2_depth1);
// Final result
auto cRes_depth2 = cc->EvalAdd(cc->EvalAdd(c18_depth2, c9_depth2), 1.0);
auto cRes_depth1 = cc->Rescale(cRes_depth2);
Plaintext result;
std::cout.precision(8);
cc->Decrypt(keys.secretKey, cRes_depth1, &result);
result->SetLength(batchSize);
std::cout << "x^18 + x^9 + 1 = " << result << std::endl;
}
void HybridKeySwitchingDemo1() {
/*
* Please refer to comments in the demo-simple_real_number.cpp
* for a brief introduction on what key switching is and to
* find reference for HYBRID key switching.
*
* In this demo, we focus on how to choose the number of digits
* in HYBRID key switching, and how that affects the usage and
* efficiency of the CKKS scheme.
*
*/
std::cout << "\n\n\n ===== HybridKeySwitchingDemo1 ============= " << std::endl;
uint32_t batchSize = 8;
CCParams<CryptoContextCKKSRNS> parameters;
parameters.SetMultiplicativeDepth(5);
parameters.SetScalingModSize(90);
parameters.SetBatchSize(batchSize);
parameters.SetScalingTechnique(FIXEDAUTO);
// uint32_t ringDimension = 0; // 0 means the library will choose it based on securityLevel
/*
* dnum is the number of large digits in HYBRID decomposition
*
* If not supplied (or value 0 is supplied), the default value is
* set as follows:
* - If multiplicative depth is > 3, then dnum = 3 digits are used.
* - If multiplicative depth is 3, then dnum = 2 digits are used.
* - If multiplicative depth is < 3, then dnum is set to be equal to
* multDepth+1
*/
uint32_t dnum = 2;
/* To understand the effects of changing dnum, it is important to
* understand how the ciphertext modulus size changes during key
* switching.
*
* In our RNS implementation of CKKS, every ciphertext corresponds
* to a large number (which is represented as small integers in RNS)
* modulo a ciphertext modulus Q, which is defined as the product of
* (multDepth+1) prime numbers: Q = q0 * q1 * ... * qL. Each qi is
* selected to be close to the scaling factor D=2^p, hence the total
* size of Q is approximately:
*
* sizeof(Q) = (multDepth+1)*scaleModSize.
*
* HYBRID key switching takes a number d that's defined modulo Q,
* and performs 4 steps:
* 1 - Digit decomposition:
* Split d into dnum digits - the size of each digit is roughly
* ceil(sizeof(Q)/dnum)
* 2 - Extend ciphertext modulus from Q to Q*P
* Here P is a product of special primes
* 3 - Multiply extended component with key switching key
* 4 - Decrease the ciphertext modulus back down to Q
*
* It's not necessary to understand how all these stages work, as
* long as it's clear that the size of the ciphertext modulus is
* increased from sizeof(Q) to sizeof(Q)+sizeof(P) in stage 2. P
* is always set to be as small as possible, as long as sizeof(P)
* is larger than the size of the largest digit, i.e., than
* ceil(sizeof(Q)/dnum). Therefore, the size of P is inversely
* related to the number of digits, so the more digits we have, the
* smaller P has to be.
*
* The tradeoff here is that more digits means that the digit
* decomposition stage becomes more expensive, but the maximum
* size of the ciphertext modulus Q*P becomes smaller. Since
* the size of Q*P determines the necessary ring dimension to
* achieve a certain security level, more digits can in some
* cases mean that we can use smaller ring dimension and get
* better performance overall.
*
* We show this effect with demos HybridKeySwitchingDemo1 and
* HybridKeySwitchingDemo2.
*
*/
parameters.SetNumLargeDigits(dnum);
CryptoContext<DCRTPoly> cc = GenCryptoContext(parameters);
std::cout << "CKKS scheme is using ring dimension " << cc->GetRingDimension() << std::endl;
std::cout << "- Using HYBRID key switching with " << dnum << " digits" << std::endl << std::endl;
cc->Enable(PKE);
cc->Enable(KEYSWITCH);
cc->Enable(LEVELEDSHE);
auto keys = cc->KeyGen();
cc->EvalRotateKeyGen(keys.secretKey, {1, -2});
// Input
std::vector<double> x = {1.0, 1.1, 1.2, 1.3, 1.4, 1.5, 1.6, 1.7};
Plaintext ptxt = cc->MakeCKKSPackedPlaintext(x);
std::cout << "Input x: " << ptxt << std::endl;
auto c = cc->Encrypt(keys.publicKey, ptxt);
TimeVar t;
TIC(t);
auto cRot1 = cc->EvalRotate(c, 1);
auto cRot2 = cc->EvalRotate(cRot1, -2);
double time2digits = TOC(t);
// Take note and compare the runtime to the runtime
// of the same computation in the next demo.
Plaintext result;
std::cout.precision(8);
cc->Decrypt(keys.secretKey, cRot2, &result);
result->SetLength(batchSize);
std::cout << "x rotate by -1 = " << result << std::endl;
std::cout << " - 2 rotations with HYBRID (2 digits) took " << time2digits << "ms" << std::endl;
/* Interested users may set the following if to 1
* to observe the prime numbers comprising Q and P,
* and how these change with the number of digits
* dnum.
*/
#if 0
const auto cryptoParamsCKKS =
std::dynamic_pointer_cast<CryptoParametersCKKSRNS>(
cc->GetCryptoParameters());
auto paramsQ = cc->GetElementParams()->GetParams();
std::cout << "\nModuli in Q:" << std::endl;
for (uint32_t i = 0; i < paramsQ.size(); i++) {
// q0 is a bit larger because its default size is 60 bits.
// One can change this by supplying the firstModSize argument
// in genCryptoContextCKKS.
std::cout << "q" << i << ": " << paramsQ[i]->GetModulus() << std::endl;
}
auto paramsQP = cryptoParamsCKKS->GetParamsQP();
std::cout << "Moduli in P: " << std::endl;
BigInteger P = BigInteger(1);
for (uint32_t i = 0; i < paramsQP->GetParams().size(); i++) {
if (i > paramsQ.size()) {
P = P * BigInteger(paramsQP->GetParams()[i]->GetModulus());
std::cout << "p" << i - paramsQ.size() << ": "
<< paramsQP->GetParams()[i]->GetModulus() << std::endl;
}
}
auto QBitLength = cc->GetModulus().GetLengthForBase(2);
auto PBitLength = P.GetLengthForBase(2);
std::cout << "\nQ = " << cc->GetModulus() << " (bit length: " << QBitLength
<< ")" << std::endl;
std::cout << "P = " << P << " (bit length: " << PBitLength << ")"
<< std::endl;
std::cout << "Total bit-length of ciphertext modulus: "
<< QBitLength + PBitLength << std::endl;
std::cout << "Given this ciphertext modulus, a ring dimension of "
<< cc->GetRingDimension() << " gives us 128-bit security."
<< std::endl;
#endif
}
void HybridKeySwitchingDemo2() {
/*
* Please refer to comments in HybridKeySwitchingDemo1.
*
*/
std::cout << "\n\n\n ===== HybridKeySwitchingDemo2 ============= " << std::endl;
uint32_t batchSize = 8;
CCParams<CryptoContextCKKSRNS> parameters;
parameters.SetMultiplicativeDepth(5);
parameters.SetScalingModSize(90);
parameters.SetBatchSize(batchSize);
parameters.SetScalingTechnique(FIXEDAUTO);
// uint32_t ringDimension = 0; // 0 means the library will choose it based on securityLevel
/*
* Here we use dnum = 3 digits. Even though 3 digits are
* more than the two digits in the previous demo and the
* cost of digit decomposition is higher, the increase in
* digits means that individual digits are smaller, and we
* can perform key switching by using only one special
* prime in P (instead of two in the previous demo).
*
* This also means that the maximum size of ciphertext
* modulus in key switching is smaller by 60 bits, and it
* turns out that this decrease is adequate to warrant a
* smaller ring dimension to achieve the same security
* level (128-bits).
*
*/
uint32_t dnum = 3;
parameters.SetNumLargeDigits(dnum);
CryptoContext<DCRTPoly> cc = GenCryptoContext(parameters);
// Compare the ring dimension in this demo to the one in
// the previous.
std::cout << "CKKS scheme is using ring dimension " << cc->GetRingDimension() << std::endl;
std::cout << "- Using HYBRID key switching with " << dnum << " digits" << std::endl << std::endl;
cc->Enable(PKE);
cc->Enable(KEYSWITCH);
cc->Enable(LEVELEDSHE);
auto keys = cc->KeyGen();
cc->EvalRotateKeyGen(keys.secretKey, {1, -2});
// Input
std::vector<double> x = {1.0, 1.1, 1.2, 1.3, 1.4, 1.5, 1.6, 1.7};
Plaintext ptxt = cc->MakeCKKSPackedPlaintext(x);
std::cout << "Input x: " << ptxt << std::endl;
auto c = cc->Encrypt(keys.publicKey, ptxt);
TimeVar t;
TIC(t);
auto cRot1 = cc->EvalRotate(c, 1);
auto cRot2 = cc->EvalRotate(cRot1, -2);
// The runtime here is smaller than in the previous demo.
double time3digits = TOC(t);
Plaintext result;
std::cout.precision(8);
cc->Decrypt(keys.secretKey, cRot2, &result);
result->SetLength(batchSize);
std::cout << "x rotate by -1 = " << result << std::endl;
std::cout << " - 2 rotations with HYBRID (3 digits) took " << time3digits << "ms" << std::endl;
/* Interested users may set the following if to 1
* to observe the prime numbers comprising Q and P,
* and how these change with the number of digits
* dnum.
*/
#if 0
const auto cryptoParamsCKKS =
std::dynamic_pointer_cast<CryptoParametersCKKSRNS>(
cc->GetCryptoParameters());
auto paramsQ = cc->GetElementParams()->GetParams();
std::cout << "\nModuli in Q:" << std::endl;
for (uint32_t i = 0; i < paramsQ.size(); i++) {
// q0 is a bit larger because its default size is 60 bits.
// One can change this by supplying the firstModSize argument
// in genCryptoContextCKKS.
std::cout << "q" << i << ": " << paramsQ[i]->GetModulus() << std::endl;
}
auto paramsQP = cryptoParamsCKKS->GetParamsQP();
std::cout << "Moduli in P: " << std::endl;
BigInteger P = BigInteger(1);
for (uint32_t i = 0; i < paramsQP->GetParams().size(); i++) {
if (i > paramsQ.size()) {
P = P * BigInteger(paramsQP->GetParams()[i]->GetModulus());
std::cout << "p" << i - paramsQ.size() << ": "
<< paramsQP->GetParams()[i]->GetModulus() << std::endl;
}
}
auto QBitLength = cc->GetModulus().GetLengthForBase(2);
auto PBitLength = P.GetLengthForBase(2);
std::cout << "\nQ = " << cc->GetModulus() << " (bit length: " << QBitLength
<< ")" << std::endl;
std::cout << "P = " << P << " (bit length: " << PBitLength << ")"
<< std::endl;
std::cout << "Given this ciphertext modulus, a ring dimension of "
<< cc->GetRingDimension() << " gives us 128-bit security."
<< std::endl;
#endif
}
void FastRotationsDemo1() {
/*
* In CKKS, whenever someone applies a rotation R() to a ciphertext
* encrypted with key s, we get a result which is not valid under
* key s, but under the same rotation R(s) of s. Therefore, after
* every rotation we need to perform key switching, making them as
* expensive as multiplications.
*
* As mentioned earlier (in comments of HybridKeySwitchingDemo1),
* key switching involves the following steps:
* 1 - Digit decomposition
* 2 - Extend ciphertext modulus from Q to Q*P
* 3 - Multiply extended component with key switching key
* 4 - Decrease the ciphertext modulus back down to Q
*
* A useful observation is that the first two steps are independent
* of the particular rotation we want to perform. Steps 3-4 on the
* other hand depend on the specific rotation we have at hand,
* because each rotation index has a different key switch key.
*
* This observation means that, if we want to perform multiple
* different rotations to the same ciphertext, we can perform
* the first two steps once, and then only perform steps 3-4 for
* each rotation. This technique is called hoisting, and we have
* implemented it for all three key switching techniques (BV, GHS,
* HYBRID) in OpenFHE.
*
* The benefits expected by this technique differ depending on the
* key switching algorithms we're using. BV is the technique that
* gets the greatest benefits, because the digit decomposition is
* the most expensive part. However, HYBRID also benefits from
* hoisting, and we show this in this part of the demo.
*
*/
std::cout << "\n\n\n ===== FastRotationsDemo1 ============= " << std::endl;
uint32_t batchSize = 8;
CCParams<CryptoContextCKKSRNS> parameters;
parameters.SetMultiplicativeDepth(1);
parameters.SetScalingModSize(90);
parameters.SetBatchSize(batchSize);
CryptoContext<DCRTPoly> cc = GenCryptoContext(parameters);
uint32_t N = cc->GetRingDimension();
std::cout << "CKKS scheme is using ring dimension " << N << std::endl << std::endl;
cc->Enable(PKE);
cc->Enable(KEYSWITCH);
cc->Enable(LEVELEDSHE);
auto keys = cc->KeyGen();
cc->EvalRotateKeyGen(keys.secretKey, {1, 2, 3, 4, 5, 6, 7});
// Input
std::vector<double> x = {0, 0, 0, 0, 0, 0, 0, 1};
Plaintext ptxt = cc->MakeCKKSPackedPlaintext(x);
std::cout << "Input x: " << ptxt << std::endl;
auto c = cc->Encrypt(keys.publicKey, ptxt);
Ciphertext<DCRTPoly> cRot1, cRot2, cRot3, cRot4, cRot5, cRot6, cRot7;
// First, we perform 7 regular (non-hoisted) rotations
// and measure the runtime.
TimeVar t;
TIC(t);
cRot1 = cc->EvalRotate(c, 1);
cRot2 = cc->EvalRotate(c, 2);
cRot3 = cc->EvalRotate(c, 3);
cRot4 = cc->EvalRotate(c, 4);
cRot5 = cc->EvalRotate(c, 5);
cRot6 = cc->EvalRotate(c, 6);
cRot7 = cc->EvalRotate(c, 7);
double timeNoHoisting = TOC(t);
auto cResNoHoist = c + cRot1 + cRot2 + cRot3 + cRot4 + cRot5 + cRot6 + cRot7;
// M is the cyclotomic order and we need it to call EvalFastRotation
uint32_t M = 2 * N;
// Then, we perform 7 rotations with hoisting.
TIC(t);
auto cPrecomp = cc->EvalFastRotationPrecompute(c);
cRot1 = cc->EvalFastRotation(c, 1, M, cPrecomp);
cRot2 = cc->EvalFastRotation(c, 2, M, cPrecomp);
cRot3 = cc->EvalFastRotation(c, 3, M, cPrecomp);
cRot4 = cc->EvalFastRotation(c, 4, M, cPrecomp);
cRot5 = cc->EvalFastRotation(c, 5, M, cPrecomp);
cRot6 = cc->EvalFastRotation(c, 6, M, cPrecomp);
cRot7 = cc->EvalFastRotation(c, 7, M, cPrecomp);
double timeHoisting = TOC(t);
// The time with hoisting should be faster than without hoisting.
auto cResHoist = c + cRot1 + cRot2 + cRot3 + cRot4 + cRot5 + cRot6 + cRot7;
Plaintext result;
std::cout.precision(8);
cc->Decrypt(keys.secretKey, cResNoHoist, &result);
result->SetLength(batchSize);
std::cout << "Result without hoisting = " << result << std::endl;
std::cout << " - 7 rotations on x without hoisting took " << timeNoHoisting << "ms" << std::endl;
cc->Decrypt(keys.secretKey, cResHoist, &result);
result->SetLength(batchSize);
std::cout << "Result with hoisting = " << result << std::endl;
std::cout << " - 7 rotations on x with hoisting took " << timeHoisting << "ms" << std::endl;
}
void FastRotationsDemo2() {
/*
* This demo is identical to the previous one, with the exception
* that we use BV key switching instead of HYBRID.
*
* The benefits expected by hoisting differ depending on the
* key switching algorithms we're using. BV is the technique that
* gets the greatest benefits, because the digit decomposition is
* the most expensive part. However, HYBRID also benefits from
* hoisting, and we show this in this part of the demo.
*
*/
std::cout << "\n\n\n ===== FastRotationsDemo2 ============= " << std::endl;
uint32_t batchSize = 8;
CCParams<CryptoContextCKKSRNS> parameters;
parameters.SetMultiplicativeDepth(1);
parameters.SetScalingModSize(90);
parameters.SetBatchSize(batchSize);
parameters.SetScalingTechnique(FIXEDAUTO);
parameters.SetKeySwitchTechnique(BV);
/*
* This controls how many multiplications are possible without rescaling.
* The number of multiplications (maxRelinSkDeg) is maxDepth - 1.
* This is useful for an optimization technique called lazy
* re-linearization (only applicable in FIXEDMANUAL, as
* FIXEDAUTO implements automatic rescaling).
*/
// This is the size of the first modulus
// by default, firstModSize is set to 105
uint32_t firstModSize = 100;
/*
* The digit size is only used in BV key switching and
* it allows us to perform digit decomposition at a finer granularity.
* Under normal circumstances, digit decomposition is what we call
* RNS decomposition, i.e., each digit is roughly the size of the
* qi's that comprise the ciphertext modulus Q. When using BV, in
* certain cases like having to perform rotations without any
* preceding multiplication, we need to have smaller digits to prevent
* noise from corrupting the result. In this case, using digitSize = 10
* does the trick. Users are encouraged to set this to 0 (i.e., RNS
* decomposition) and see how the results are incorrect.
*/
uint32_t digitSize = 10;
parameters.SetFirstModSize(firstModSize);
parameters.SetDigitSize(digitSize);
CryptoContext<DCRTPoly> cc = GenCryptoContext(parameters);
uint32_t N = cc->GetRingDimension();
std::cout << "CKKS scheme is using ring dimension " << N << std::endl << std::endl;
cc->Enable(PKE);
cc->Enable(KEYSWITCH);
cc->Enable(LEVELEDSHE);
auto keys = cc->KeyGen();
cc->EvalRotateKeyGen(keys.secretKey, {1, 2, 3, 4, 5, 6, 7});
// Input
std::vector<double> x = {0, 0, 0, 0, 0, 0, 0, 1};
Plaintext ptxt = cc->MakeCKKSPackedPlaintext(x);
std::cout << "Input x: " << ptxt << std::endl;
auto c = cc->Encrypt(keys.publicKey, ptxt);
Ciphertext<DCRTPoly> cRot1, cRot2, cRot3, cRot4, cRot5, cRot6, cRot7;
// First, we perform 7 regular (non-hoisted) rotations
// and measure the runtime.
TimeVar t;
TIC(t);
cRot1 = cc->EvalRotate(c, 1);
cRot2 = cc->EvalRotate(c, 2);
cRot3 = cc->EvalRotate(c, 3);
cRot4 = cc->EvalRotate(c, 4);
cRot5 = cc->EvalRotate(c, 5);
cRot6 = cc->EvalRotate(c, 6);
cRot7 = cc->EvalRotate(c, 7);
double timeNoHoisting = TOC(t);
auto cResNoHoist = c + cRot1 + cRot2 + cRot3 + cRot4 + cRot5 + cRot6 + cRot7;
// M is the cyclotomic order and we need it to call EvalFastRotation
uint32_t M = 2 * N;
// Then, we perform 7 rotations with hoisting.
TIC(t);
auto cPrecomp = cc->EvalFastRotationPrecompute(c);
cRot1 = cc->EvalFastRotation(c, 1, M, cPrecomp);
cRot2 = cc->EvalFastRotation(c, 2, M, cPrecomp);
cRot3 = cc->EvalFastRotation(c, 3, M, cPrecomp);
cRot4 = cc->EvalFastRotation(c, 4, M, cPrecomp);
cRot5 = cc->EvalFastRotation(c, 5, M, cPrecomp);
cRot6 = cc->EvalFastRotation(c, 6, M, cPrecomp);
cRot7 = cc->EvalFastRotation(c, 7, M, cPrecomp);
double timeHoisting = TOC(t);
/* The time with hoisting should be faster than without hoisting.
* Also, the benefits from hoisting should be more pronounced in this
* case because we're using BV. Of course, we also observe less
* accurate results than when using HYBRID, because of using
* digitSize = 10 (Users can decrease digitSize to see the accuracy
* increase, and performance decrease).
*/
auto cResHoist = c + cRot1 + cRot2 + cRot3 + cRot4 + cRot5 + cRot6 + cRot7;
Plaintext result;
std::cout.precision(8);
cc->Decrypt(keys.secretKey, cResNoHoist, &result);
result->SetLength(batchSize);
std::cout << "Result without hoisting = " << result << std::endl;
std::cout << " - 7 rotations on x without hoisting took " << timeNoHoisting << "ms" << std::endl;
cc->Decrypt(keys.secretKey, cResHoist, &result);
result->SetLength(batchSize);
std::cout << "Result with hoisting = " << result << std::endl;
std::cout << " - 7 rotations on x with hoisting took " << timeHoisting << "ms" << std::endl;
}