Example #1
0
    def forward(self, batch):  # pylint:disable=arguments-differ
        ''' A batch of inputs and targets '''
        encoded, encoder_attn_weights_tensor = self.encode(batch['inputs'])
        decoded = self.decode(
            encoded,
            right_shift(right_shift(batch['targets']),
                        shift=self.span - 1,
                        fill=self.sos_idx),
        )

        logits = decoded['logits']
        dims = list(range(1, logits.dim()))
        targets = left_shift(batch['targets'])
        nll = self.cross_entropy(logits, targets).sum(dims[:-1])
        smoothed_nll = self.label_smoothing(logits, targets).sum(dims)

        return {
            'smoothed_nll': smoothed_nll,
            'nll': nll,
            'encoder_attn_weights_tensor': encoder_attn_weights_tensor,
            'decoder_attn_weights_tensor':
            decoded['decoder_attn_weights_tensor'],
            'enc_dec_attn_weights_tensor':
            decoded['enc_dec_attn_weights_tensor']
        }
    def forward(self, batch):  # pylint:disable=arguments-differ
        ''' A batch of inputs and targets '''
        decoded = self.decode(self.encode(batch['inputs']),
                              right_shift(batch['targets']),
                              input_lens=batch['input_lens'])

        logits = decoded['logits']
        dims = list(range(1, logits.dim()))
        targets = left_shift(batch['targets'])
        nll = self.cross_entropy(logits, targets).sum(dims[:-1])
        smoothed_nll = self.label_smoothing(logits, targets).sum(dims)
        return smoothed_nll, nll
Example #3
0
    def forward(self, batch, global_mask=None):  # pylint:disable=arguments-differ
        ''' batch: length x bsz'''

        batch = batch.transpose(1, 0)
        targets = left_shift(batch)
        decoded = self.decode(right_shift(batch), global_mask=global_mask)

        state = decoded['state']
        if not self.adaptive:
            logits = self.embedding(state, reverse=True).transpose(2, 1)
            dims = list(range(1, logits.dim()))
            nll = self.cross_entropy(logits, targets).view(-1)
            smoothed_nll = self.label_smoothing(logits, targets).sum(dims)

            if not self.config.return_rank:
                return smoothed_nll, nll

            else:
                logits = logits.transpose(2, 1)
                assert targets.shape[0] == 1
                targets = targets.squeeze(0)
                target_logits = logits[:, range(targets.shape[0]), targets]
                rank = (logits > target_logits.unsqueeze(-1)).sum(dim=-1)
                return rank, nll

        else:
            if self.config.batch_length < state.size(1):
                state = state[:, -self.config.batch_length:].contiguous()
                targets = targets[:, -self.config.batch_length:].contiguous()

            state = state.view(-1, state.shape[-1])  # (bsz*L, embed_dim)
            targets = targets.contiguous().view(-1)  # (bsz*L, )

            if not self.config.return_rank:
                nll = self.adaptive_softmax(state, targets, keep_order=True)
                smoothed_nll = nll
                return smoothed_nll, nll

            else:
                nll, rank = self.adaptive_softmax(state,
                                                  targets,
                                                  keep_order=True,
                                                  return_rank=True)
                return rank, nll
Example #4
0
    def forward(self, batch):  # pylint:disable=arguments-differ
        ''' A batch of inputs and targets '''
        encoded = self.encode(batch['inputs'])
        decoded_annotation = self.decode_annotation(
            encoded, right_shift(batch['target_annotations']))

        logits = decoded_annotation['logits']
        loss = nll = self.annotation_cross_entropy(
            logits, left_shift(batch['target_annotations'])).sum(
                list(range(1,
                           logits.dim() - 1)))

        if self.decoders is not None:
            decoded = self.decode(encoded, batch['masked_targets'])
            logits = decoded['logits']

            nll += self.cross_entropy(logits, batch['targets']).sum(
                list(range(1,
                           logits.dim() - 1)))

            loss += self.label_smoothing(logits, batch['targets']).sum(
                list(range(1, logits.dim())))

        return loss, nll
Example #5
0
def start():
    # plain text
    with open('input.txt', 'rb') as f:
        plain = f.read()
    plain_splitted = utils.string_to_array(plain, 8)
    plain_binary_splitted = []
    for p in plain_splitted:
        plain_binary_splitted.append(utils.string_to_binary(p))
    print ''
    utils.debug('plain text', [plain])
    utils.debug('splitted', plain_splitted)
    utils.debug('plain binary', plain_binary_splitted)

    # key
    key = '12345678'
    key_binary = utils.string_to_binary(key)
    print ''
    utils.debug('key', key)
    utils.debug('key binary', key_binary, 8)

    # generate C, D
    cd0 = permute(key_binary, tables.PC1)
    c = [cd0[:len(tables.PC1) / 2]]
    d = [cd0[len(tables.PC1) / 2:]]
    print ''
    utils.debug('CD0', cd0, 7)
    for i in range(16):
        c.append(utils.left_shift(c[i], tables.LEFT_SHIFT[i]))
        d.append(utils.left_shift(d[i], tables.LEFT_SHIFT[i]))
        utils.debug('CD' + str(i + 1), c[i + 1] + d[i + 1], 7)

    # generate K
    print ''
    k = ['']
    for i in range(16):
        k.append(permute(c[i + 1] + d[i + 1], tables.PC2))
        utils.debug('K' + str(i + 1), k[i + 1], 6)

    final_cipher = ''
    for i in range(len(plain_splitted)):

        # generate L, R
        lr0 = permute(plain_binary_splitted[i], tables.IP)
        l = [lr0[:len(tables.IP) / 2]]
        r = [lr0[len(tables.IP) / 2:]]
        print ''
        utils.debug('L0', l[0], 8)
        utils.debug('R0', r[0], 8)

        # ---
        er = []
        a = ['']
        b = ['']
        pb = ['']
        for i in range(16):
            er.append(permute(r[i], tables.EXPANSION))
            a.append(utils.xor(er[i], k[i + 1]))
            b.append(sbox(a[i + 1]))
            pb.append(permute(b[i + 1], tables.PBOX))
            r.append(utils.xor(l[i], pb[i + 1]))
            l.append(r[i])
            print ''
            utils.debug('ER' + str(i), er[i], 6)
            utils.debug('A' + str(i + 1), a[i], 6)
            utils.debug('B' + str(i + 1), b[i], 4)
            utils.debug('PB' + str(i + 1), pb[i], 8)
            utils.debug('R' + str(i + 1), r[i + 1], 8)
            utils.debug('L' + str(i + 1), l[i + 1], 8)

        # cipher
        cipher_binary = permute(r[16] + l[16], tables.IP_INV)
        cipher_binary_splitted = utils.string_to_array(cipher_binary, 8)
        cipher = ''
        for i in range(len(cipher_binary_splitted)):
            cipher += utils.binary_to_hex(cipher_binary_splitted[i])
        print ''
        utils.debug('cipher binary', cipher_binary, 8)
        utils.debug('cipher', cipher)

        final_cipher += cipher

    utils.debug('final chiper', final_cipher)

    with open('output.txt', 'wb') as f:
        f.write(final_cipher)