#include "fft.h" #include "gf.h" #include "parameters.h" #include #include #include /** * @file fft.c * Implementation of the additive FFT and its transpose. * This implementation is based on the paper from Gao and Mateer:
* Shuhong Gao and Todd Mateer, Additive Fast Fourier Transforms over Finite Fields, * IEEE Transactions on Information Theory 56 (2010), 6265--6272. * http://www.math.clemson.edu/~sgao/papers/GM10.pdf
* and includes improvements proposed by Bernstein, Chou and Schwabe here: * https://binary.cr.yp.to/mcbits-20130616.pdf */ static void compute_fft_betas(uint16_t *betas); static void compute_subset_sums(uint16_t *subset_sums, const uint16_t *set, uint16_t set_size); static void radix_t(uint16_t *f, const uint16_t *f0, const uint16_t *f1, uint32_t m_f); static void radix_t_big(uint16_t *f, const uint16_t *f0, const uint16_t *f1, uint32_t m_f); static void fft_t_rec(uint16_t *f, const uint16_t *w, size_t f_coeffs, uint8_t m, uint32_t m_f, const uint16_t *betas); static void radix(uint16_t *f0, uint16_t *f1, const uint16_t *f, uint32_t m_f); static void radix_big(uint16_t *f0, uint16_t *f1, const uint16_t *f, uint32_t m_f); static void fft_rec(uint16_t *w, uint16_t *f, size_t f_coeffs, uint8_t m, uint32_t m_f, const uint16_t *betas); /** * @brief Computes the basis of betas (omitting 1) used in the additive FFT and its transpose * * @param[out] betas Array of size PARAM_M-1 */ static void compute_fft_betas(uint16_t *betas) { size_t i; for (i = 0; i < PARAM_M - 1; ++i) { betas[i] = (uint16_t) (1 << (PARAM_M - 1 - i)); } } /** * @brief Computes the subset sums of the given set * * The array subset_sums is such that its ith element is * the subset sum of the set elements given by the binary form of i. * * @param[out] subset_sums Array of size 2^set_size receiving the subset sums * @param[in] set Array of set_size elements * @param[in] set_size Size of the array set */ static void compute_subset_sums(uint16_t *subset_sums, const uint16_t *set, uint16_t set_size) { uint16_t i, j; subset_sums[0] = 0; for (i = 0; i < set_size; ++i) { for (j = 0; j < (1 << i); ++j) { subset_sums[(1 << i) + j] = set[i] ^ subset_sums[j]; } } } /** * @brief Transpose of the linear radix conversion * * This is a direct transposition of the radix function * implemented following the process of transposing a linear function as exposed by Bernstein, Chou and Schwabe here: * https://binary.cr.yp.to/mcbits-20130616.pdf * * @param[out] f Array of size a power of 2 * @param[in] f0 Array half the size of f * @param[in] f1 Array half the size of f * @param[in] m_f 2^{m_f} is the smallest power of 2 greater or equal to the number of coefficients of f */ static void radix_t(uint16_t *f, const uint16_t *f0, const uint16_t *f1, uint32_t m_f) { switch (m_f) { case 4: f[0] = f0[0]; f[1] = f1[0]; f[2] = f0[1] ^ f1[0]; f[3] = f[2] ^ f1[1]; f[4] = f[2] ^ f0[2]; f[5] = f[3] ^ f1[2]; f[6] = f[4] ^ f0[3] ^ f1[2]; f[7] = f[3] ^ f0[3] ^ f1[3]; f[8] = f[4] ^ f0[4]; f[9] = f[5] ^ f1[4]; f[10] = f[6] ^ f0[5] ^ f1[4]; f[11] = f[7] ^ f0[5] ^ f1[4] ^ f1[5]; f[12] = f[8] ^ f0[5] ^ f0[6] ^ f1[4]; f[13] = f[7] ^ f[9] ^ f[11] ^ f1[6]; f[14] = f[6] ^ f0[6] ^ f0[7] ^ f1[6]; f[15] = f[7] ^ f0[7] ^ f1[7]; break; case 3: f[0] = f0[0]; f[1] = f1[0]; f[2] = f0[1] ^ f1[0]; f[3] = f[2] ^ f1[1]; f[4] = f[2] ^ f0[2]; f[5] = f[3] ^ f1[2]; f[6] = f[4] ^ f0[3] ^ f1[2]; f[7] = f[3] ^ f0[3] ^ f1[3]; break; case 2: f[0] = f0[0]; f[1] = f1[0]; f[2] = f0[1] ^ f1[0]; f[3] = f[2] ^ f1[1]; break; case 1: f[0] = f0[0]; f[1] = f1[0]; break; default: radix_t_big(f, f0, f1, m_f); break; } } static void radix_t_big(uint16_t *f, const uint16_t *f0, const uint16_t *f1, uint32_t m_f) { uint16_t Q0[1 << (PARAM_FFT_T - 2)] = {0}; uint16_t Q1[1 << (PARAM_FFT_T - 2)] = {0}; uint16_t R0[1 << (PARAM_FFT_T - 2)] = {0}; uint16_t R1[1 << (PARAM_FFT_T - 2)] = {0}; uint16_t Q[1 << 2 * (PARAM_FFT_T - 2)] = {0}; uint16_t R[1 << 2 * (PARAM_FFT_T - 2)] = {0}; uint16_t n; size_t i; n = 1; n <<= m_f - 2; memcpy(Q0, f0 + n, 2 * n); memcpy(Q1, f1 + n, 2 * n); memcpy(R0, f0, 2 * n); memcpy(R1, f1, 2 * n); radix_t (Q, Q0, Q1, m_f - 1); radix_t (R, R0, R1, m_f - 1); memcpy(f, R, 4 * n); memcpy(f + 2 * n, R + n, 2 * n); memcpy(f + 3 * n, Q + n, 2 * n); for (i = 0; i < n; ++i) { f[2 * n + i] ^= Q[i]; f[3 * n + i] ^= f[2 * n + i]; } } /** * @brief Recursively computes syndromes of family w * * This function is a subroutine of the function fft_t * * @param[out] f Array receiving the syndromes * @param[in] w Array storing the family * @param[in] f_coeffs Length of syndromes vector * @param[in] m 2^m is the smallest power of 2 greater or equal to the length of family w * @param[in] m_f 2^{m_f} is the smallest power of 2 greater or equal to the length of f * @param[in] betas FFT constants */ static void fft_t_rec(uint16_t *f, const uint16_t *w, size_t f_coeffs, uint8_t m, uint32_t m_f, const uint16_t *betas) { uint16_t gammas[PARAM_M - 2] = {0}; uint16_t deltas[PARAM_M - 2] = {0}; uint16_t gammas_sums[1 << (PARAM_M - 1)] = {0}; uint16_t u[1 << (PARAM_M - 2)] = {0}; uint16_t f0[1 << (PARAM_FFT_T - 2)] = {0}; uint16_t f1[1 << (PARAM_FFT_T - 2)] = {0}; uint16_t betas_sums[1 << (PARAM_M - 1)] = {0}; uint16_t v[1 << (PARAM_M - 2)] = {0}; uint16_t beta_m_pow; size_t i, j, k; size_t x; // Step 1 if (m_f == 1) { f[0] = 0; x = 1; x <<= m; for (i = 0; i < x; ++i) { f[0] ^= w[i]; } f[1] = 0; betas_sums[0] = 0; x = 1; for (j = 0; j < m; ++j) { for (k = 0; k < x; ++k) { betas_sums[x + k] = betas_sums[k] ^ betas[j]; f[1] ^= PQCLEAN_HQC128_CLEAN_gf_mul(betas_sums[x + k], w[x + k]); } x <<= 1; } return; } // Compute gammas and deltas for (i = 0; i + 1 < m; ++i) { gammas[i] = PQCLEAN_HQC128_CLEAN_gf_mul(betas[i], PQCLEAN_HQC128_CLEAN_gf_inverse(betas[m - 1])); deltas[i] = PQCLEAN_HQC128_CLEAN_gf_square(gammas[i]) ^ gammas[i]; } // Compute gammas subset sums compute_subset_sums(gammas_sums, gammas, m - 1); /* Step 6: Compute u and v from w (aka w) * w[i] = u[i] + G[i].v[i] * w[k+i] = w[i] + v[i] = u[i] + (G[i]+1).v[i] * Transpose: * u[i] = w[i] + w[k+i] * v[i] = G[i].w[i] + (G[i]+1).w[k+i] = G[i].u[i] + w[k+i] */ k = 1; k <<= (m - 1) & 0xf; // &0xf is to let the compiler know that m-1 is small. if (f_coeffs <= 3) { // 3-coefficient polynomial f case // Step 5: Compute f0 from u and f1 from v f1[1] = 0; u[0] = w[0] ^ w[k]; f1[0] = w[k]; for (i = 1; i < k; ++i) { u[i] = w[i] ^ w[k + i]; f1[0] ^= PQCLEAN_HQC128_CLEAN_gf_mul(gammas_sums[i], u[i]) ^ w[k + i]; } fft_t_rec(f0, u, (f_coeffs + 1) / 2, m - 1, m_f - 1, deltas); } else { u[0] = w[0] ^ w[k]; v[0] = w[k]; for (i = 1; i < k; ++i) { u[i] = w[i] ^ w[k + i]; v[i] = PQCLEAN_HQC128_CLEAN_gf_mul(gammas_sums[i], u[i]) ^ w[k + i]; } // Step 5: Compute f0 from u and f1 from v fft_t_rec(f0, u, (f_coeffs + 1) / 2, m - 1, m_f - 1, deltas); fft_t_rec(f1, v, f_coeffs / 2, m - 1, m_f - 1, deltas); } // Step 3: Compute g from g0 and g1 radix_t(f, f0, f1, m_f); // Step 2: compute f from g if (betas[m - 1] != 1) { beta_m_pow = 1; x = 1; x <<= m_f; for (i = 1; i < x; ++i) { beta_m_pow = PQCLEAN_HQC128_CLEAN_gf_mul(beta_m_pow, betas[m - 1]); f[i] = PQCLEAN_HQC128_CLEAN_gf_mul(beta_m_pow, f[i]); } } } /** * @brief Computes the syndromes f of the family w * * Since the syndromes linear map is the transpose of multipoint evaluation, * it uses exactly the same constants, either hardcoded or precomputed by compute_fft_lut(...).
* This follows directives from Bernstein, Chou and Schwabe given here: * https://binary.cr.yp.to/mcbits-20130616.pdf * * @param[out] f Array of size 2*(PARAM_FFT_T) elements receiving the syndromes * @param[in] w Array of PARAM_GF_MUL_ORDER+1 elements * @param[in] f_coeffs Length of syndromes vector f */ void PQCLEAN_HQC128_CLEAN_fft_t(uint16_t *f, const uint16_t *w, size_t f_coeffs) { // Transposed from Gao and Mateer algorithm uint16_t betas[PARAM_M - 1] = {0}; uint16_t betas_sums[1 << (PARAM_M - 1)] = {0}; uint16_t u[1 << (PARAM_M - 1)] = {0}; uint16_t v[1 << (PARAM_M - 1)] = {0}; uint16_t deltas[PARAM_M - 1] = {0}; uint16_t f0[1 << (PARAM_FFT_T - 1)] = {0}; uint16_t f1[1 << (PARAM_FFT_T - 1)] = {0}; size_t i, k; compute_fft_betas(betas); compute_subset_sums(betas_sums, betas, PARAM_M - 1); /* Step 6: Compute u and v from w (aka w) * * We had: * w[i] = u[i] + G[i].v[i] * w[k+i] = w[i] + v[i] = u[i] + (G[i]+1).v[i] * Transpose: * u[i] = w[i] + w[k+i] * v[i] = G[i].w[i] + (G[i]+1).w[k+i] = G[i].u[i] + w[k+i] */ k = 1; k <<= PARAM_M - 1; u[0] = w[0] ^ w[k]; v[0] = w[k]; for (i = 1; i < k; ++i) { u[i] = w[i] ^ w[k + i]; v[i] = PQCLEAN_HQC128_CLEAN_gf_mul(betas_sums[i], u[i]) ^ w[k + i]; } // Compute deltas for (i = 0; i < PARAM_M - 1; ++i) { deltas[i] = PQCLEAN_HQC128_CLEAN_gf_square(betas[i]) ^ betas[i]; } // Step 5: Compute f0 from u and f1 from v fft_t_rec(f0, u, (f_coeffs + 1) / 2, PARAM_M - 1, PARAM_FFT_T - 1, deltas); fft_t_rec(f1, v, f_coeffs / 2, PARAM_M - 1, PARAM_FFT_T - 1, deltas); // Step 3: Compute g from g0 and g1 radix_t(f, f0, f1, PARAM_FFT_T); // Step 2: beta_m = 1 so f = g } /** * @brief Computes the radix conversion of a polynomial f in GF(2^m)[x] * * Computes f0 and f1 such that f(x) = f0(x^2-x) + x.f1(x^2-x) * as proposed by Bernstein, Chou and Schwabe: * https://binary.cr.yp.to/mcbits-20130616.pdf * * @param[out] f0 Array half the size of f * @param[out] f1 Array half the size of f * @param[in] f Array of size a power of 2 * @param[in] m_f 2^{m_f} is the smallest power of 2 greater or equal to the number of coefficients of f */ static void radix(uint16_t *f0, uint16_t *f1, const uint16_t *f, uint32_t m_f) { switch (m_f) { case 4: f0[4] = f[8] ^ f[12]; f0[6] = f[12] ^ f[14]; f0[7] = f[14] ^ f[15]; f1[5] = f[11] ^ f[13]; f1[6] = f[13] ^ f[14]; f1[7] = f[15]; f0[5] = f[10] ^ f[12] ^ f1[5]; f1[4] = f[9] ^ f[13] ^ f0[5]; f0[0] = f[0]; f1[3] = f[7] ^ f[11] ^ f[15]; f0[3] = f[6] ^ f[10] ^ f[14] ^ f1[3]; f0[2] = f[4] ^ f0[4] ^ f0[3] ^ f1[3]; f1[1] = f[3] ^ f[5] ^ f[9] ^ f[13] ^ f1[3]; f1[2] = f[3] ^ f1[1] ^ f0[3]; f0[1] = f[2] ^ f0[2] ^ f1[1]; f1[0] = f[1] ^ f0[1]; break; case 3: f0[0] = f[0]; f0[2] = f[4] ^ f[6]; f0[3] = f[6] ^ f[7]; f1[1] = f[3] ^ f[5] ^ f[7]; f1[2] = f[5] ^ f[6]; f1[3] = f[7]; f0[1] = f[2] ^ f0[2] ^ f1[1]; f1[0] = f[1] ^ f0[1]; break; case 2: f0[0] = f[0]; f0[1] = f[2] ^ f[3]; f1[0] = f[1] ^ f0[1]; f1[1] = f[3]; break; case 1: f0[0] = f[0]; f1[0] = f[1]; break; default: radix_big(f0, f1, f, m_f); break; } } static void radix_big(uint16_t *f0, uint16_t *f1, const uint16_t *f, uint32_t m_f) { uint16_t Q[2 * (1 << (PARAM_FFT - 2))] = {0}; uint16_t R[2 * (1 << (PARAM_FFT - 2))] = {0}; uint16_t Q0[1 << (PARAM_FFT - 2)] = {0}; uint16_t Q1[1 << (PARAM_FFT - 2)] = {0}; uint16_t R0[1 << (PARAM_FFT - 2)] = {0}; uint16_t R1[1 << (PARAM_FFT - 2)] = {0}; size_t i, n; n = 1; n <<= m_f - 2; memcpy(Q, f + 3 * n, 2 * n); memcpy(Q + n, f + 3 * n, 2 * n); memcpy(R, f, 4 * n); for (i = 0; i < n; ++i) { Q[i] ^= f[2 * n + i]; R[n + i] ^= Q[i]; } radix(Q0, Q1, Q, m_f - 1); radix(R0, R1, R, m_f - 1); memcpy(f0, R0, 2 * n); memcpy(f0 + n, Q0, 2 * n); memcpy(f1, R1, 2 * n); memcpy(f1 + n, Q1, 2 * n); } /** * @brief Evaluates f at all subset sums of a given set * * This function is a subroutine of the function fft. * * @param[out] w Array * @param[in] f Array * @param[in] f_coeffs Number of coefficients of f * @param[in] m Number of betas * @param[in] m_f Number of coefficients of f (one more than its degree) * @param[in] betas FFT constants */ static void fft_rec(uint16_t *w, uint16_t *f, size_t f_coeffs, uint8_t m, uint32_t m_f, const uint16_t *betas) { uint16_t f0[1 << (PARAM_FFT - 2)] = {0}; uint16_t f1[1 << (PARAM_FFT - 2)] = {0}; uint16_t gammas[PARAM_M - 2] = {0}; uint16_t deltas[PARAM_M - 2] = {0}; uint16_t gammas_sums[1 << (PARAM_M - 2)] = {0}; uint16_t u[1 << (PARAM_M - 2)] = {0}; uint16_t v[1 << (PARAM_M - 2)] = {0}; uint16_t tmp[PARAM_M - (PARAM_FFT - 1)] = {0}; uint16_t beta_m_pow; size_t i, j, k; size_t x; // Step 1 if (m_f == 1) { for (i = 0; i < m; ++i) { tmp[i] = PQCLEAN_HQC128_CLEAN_gf_mul(betas[i], f[1]); } w[0] = f[0]; x = 1; for (j = 0; j < m; ++j) { for (k = 0; k < x; ++k) { w[x + k] = w[k] ^ tmp[j]; } x <<= 1; } return; } // Step 2: compute g if (betas[m - 1] != 1) { beta_m_pow = 1; x = 1; x <<= m_f; for (i = 1; i < x; ++i) { beta_m_pow = PQCLEAN_HQC128_CLEAN_gf_mul(beta_m_pow, betas[m - 1]); f[i] = PQCLEAN_HQC128_CLEAN_gf_mul(beta_m_pow, f[i]); } } // Step 3 radix(f0, f1, f, m_f); // Step 4: compute gammas and deltas for (i = 0; i + 1 < m; ++i) { gammas[i] = PQCLEAN_HQC128_CLEAN_gf_mul(betas[i], PQCLEAN_HQC128_CLEAN_gf_inverse(betas[m - 1])); deltas[i] = PQCLEAN_HQC128_CLEAN_gf_square(gammas[i]) ^ gammas[i]; } // Compute gammas sums compute_subset_sums(gammas_sums, gammas, m - 1); // Step 5 fft_rec(u, f0, (f_coeffs + 1) / 2, m - 1, m_f - 1, deltas); k = 1; k <<= (m - 1) & 0xf; // &0xf is to let the compiler know that m-1 is small. if (f_coeffs <= 3) { // 3-coefficient polynomial f case: f1 is constant w[0] = u[0]; w[k] = u[0] ^ f1[0]; for (i = 1; i < k; ++i) { w[i] = u[i] ^ PQCLEAN_HQC128_CLEAN_gf_mul(gammas_sums[i], f1[0]); w[k + i] = w[i] ^ f1[0]; } } else { fft_rec(v, f1, f_coeffs / 2, m - 1, m_f - 1, deltas); // Step 6 memcpy(w + k, v, 2 * k); w[0] = u[0]; w[k] ^= u[0]; for (i = 1; i < k; ++i) { w[i] = u[i] ^ PQCLEAN_HQC128_CLEAN_gf_mul(gammas_sums[i], v[i]); w[k + i] ^= w[i]; } } } /** * @brief Evaluates f on all fields elements using an additive FFT algorithm * * f_coeffs is the number of coefficients of f (one less than its degree).
* The FFT proceeds recursively to evaluate f at all subset sums of a basis B.
* This implementation is based on the paper from Gao and Mateer:
* Shuhong Gao and Todd Mateer, Additive Fast Fourier Transforms over Finite Fields, * IEEE Transactions on Information Theory 56 (2010), 6265--6272. * http://www.math.clemson.edu/~sgao/papers/GM10.pdf
* and includes improvements proposed by Bernstein, Chou and Schwabe here: * https://binary.cr.yp.to/mcbits-20130616.pdf
* Note that on this first call (as opposed to the recursive calls to fft_rec), gammas are equal to betas, * meaning the first gammas subset sums are actually the subset sums of betas (except 1).
* Also note that f is altered during computation (twisted at each level). * * @param[out] w Array * @param[in] f Array of 2^PARAM_FFT elements * @param[in] f_coeffs Number coefficients of f (i.e. deg(f)+1) */ void PQCLEAN_HQC128_CLEAN_fft(uint16_t *w, const uint16_t *f, size_t f_coeffs) { uint16_t betas[PARAM_M - 1] = {0}; uint16_t betas_sums[1 << (PARAM_M - 1)] = {0}; uint16_t f0[1 << (PARAM_FFT - 1)] = {0}; uint16_t f1[1 << (PARAM_FFT - 1)] = {0}; uint16_t deltas[PARAM_M - 1] = {0}; uint16_t u[1 << (PARAM_M - 1)] = {0}; uint16_t v[1 << (PARAM_M - 1)] = {0}; size_t i, k; // Follows Gao and Mateer algorithm compute_fft_betas(betas); // Step 1: PARAM_FFT > 1, nothing to do // Compute gammas sums compute_subset_sums(betas_sums, betas, PARAM_M - 1); // Step 2: beta_m = 1, nothing to do // Step 3 radix(f0, f1, f, PARAM_FFT); // Step 4: Compute deltas for (i = 0; i < PARAM_M - 1; ++i) { deltas[i] = PQCLEAN_HQC128_CLEAN_gf_square(betas[i]) ^ betas[i]; } // Step 5 fft_rec(u, f0, (f_coeffs + 1) / 2, PARAM_M - 1, PARAM_FFT - 1, deltas); fft_rec(v, f1, f_coeffs / 2, PARAM_M - 1, PARAM_FFT - 1, deltas); k = 1; k <<= PARAM_M - 1; // Step 6, 7 and error polynomial computation memcpy(w + k, v, 2 * k); // Check if 0 is root w[0] = u[0]; // Check if 1 is root w[k] ^= u[0]; // Find other roots for (i = 1; i < k; ++i) { w[i] = u[i] ^ PQCLEAN_HQC128_CLEAN_gf_mul(betas_sums[i], v[i]); w[k + i] ^= w[i]; } } /** * @brief Arranges the received word vector in a form w such that applying the additive FFT transpose to w yields the BCH syndromes of the received word vector. * * Since the received word vector gives coefficients of the primitive element alpha, we twist accordingly.
* Furthermore, the additive FFT transpose needs elements indexed by their decomposition on the chosen basis, * so we apply the adequate permutation. * * @param[out] w Array of size 2^PARAM_M * @param[in] vector Array of size VEC_N1_SIZE_BYTES */ void PQCLEAN_HQC128_CLEAN_fft_t_preprocess_bch_codeword(uint16_t *w, const uint64_t *vector) { uint16_t r[1 << PARAM_M] = {0}; uint16_t gammas[PARAM_M - 1] = {0}; uint16_t gammas_sums[1 << (PARAM_M - 1)] = {0}; size_t i, j, k; // Unpack the received word vector into array r for (i = 0; i < VEC_N1_SIZE_64 - (PARAM_N1 % 64 != 0); ++i) { for (j = 0; j < 64; ++j) { r[64 * i + j] = (uint8_t) ((vector[i] >> j) & 1); } } // Last byte for (j = 0; j < PARAM_N1 % 64; ++j) { r[64 * i + j] = (uint8_t) ((vector[i] >> j) & 1); } // Complete r with zeros memset(r + PARAM_N1, 0, 2 * ((1 << PARAM_M) - PARAM_N1)); compute_fft_betas(gammas); compute_subset_sums(gammas_sums, gammas, PARAM_M - 1); // Twist and permute r adequately to obtain w k = 1; k <<= PARAM_M - 1; w[0] = 0; w[k] = -r[0] & 1; for (i = 1; i < k; ++i) { w[i] = -r[gf_log[gammas_sums[i]]] & gammas_sums[i]; w[k + i] = -r[gf_log[gammas_sums[i] ^ 1]] & (gammas_sums[i] ^ 1); } } /** * @brief Retrieves the error polynomial error from the evaluations w of the ELP (Error Locator Polynomial) on all field elements. * * @param[out] error Array of size VEC_N1_SIZE_BYTES * @param[in] w Array of size 2^PARAM_M */ void PQCLEAN_HQC128_CLEAN_fft_retrieve_bch_error_poly(uint64_t *error, const uint16_t *w) { uint16_t gammas[PARAM_M - 1] = {0}; uint16_t gammas_sums[1 << (PARAM_M - 1)] = {0}; uint64_t bit; uint16_t k; size_t i, index; compute_fft_betas(gammas); compute_subset_sums(gammas_sums, gammas, PARAM_M - 1); error[0] ^= 1 ^ ((uint16_t) - w[0] >> 15); k = 1; k <<= PARAM_M - 1; index = PARAM_GF_MUL_ORDER; bit = 1 ^ ((uint16_t) - w[k] >> 15); error[index / 8] ^= bit << (index % 64); for (i = 1; i < k; ++i) { index = PARAM_GF_MUL_ORDER - gf_log[gammas_sums[i]]; bit = 1 ^ ((uint16_t) - w[i] >> 15); error[index / 64] ^= bit << (index % 64); index = PARAM_GF_MUL_ORDER - gf_log[gammas_sums[i] ^ 1]; bit = 1 ^ ((uint16_t) - w[k + i] >> 15); error[index / 64] ^= bit << (index % 64); } }