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import torch
import torch.nn as nn
import numpy as np
import random
import enum
import traceback

import os
import sys
import json

F_DIR = os.path.dirname(os.path.realpath(__file__))


class XlitError(enum.Enum):
    lang_err = "Unsupported langauge ID requested ;( Please check available languages."
    string_err = "String passed is incompatable ;("
    internal_err = "Internal crash ;("
    unknown_err = "Unknown Failure"
    loading_err = "Loading failed ;( Check if metadata/paths are correctly configured."


class Encoder(nn.Module):
    """
    Simple RNN based encoder network
    """

    def __init__(
        self,
        input_dim,
        embed_dim,
        hidden_dim,
        rnn_type="gru",
        layers=1,
        bidirectional=False,
        dropout=0,
        device="cpu",
    ):
        super(Encoder, self).__init__()

        self.input_dim = input_dim  # src_vocab_sz
        self.enc_embed_dim = embed_dim
        self.enc_hidden_dim = hidden_dim
        self.enc_rnn_type = rnn_type
        self.enc_layers = layers
        self.enc_directions = 2 if bidirectional else 1
        self.device = device

        self.embedding = nn.Embedding(self.input_dim, self.enc_embed_dim)

        if self.enc_rnn_type == "gru":
            self.enc_rnn = nn.GRU(
                input_size=self.enc_embed_dim,
                hidden_size=self.enc_hidden_dim,
                num_layers=self.enc_layers,
                bidirectional=bidirectional,
            )
        elif self.enc_rnn_type == "lstm":
            self.enc_rnn = nn.LSTM(
                input_size=self.enc_embed_dim,
                hidden_size=self.enc_hidden_dim,
                num_layers=self.enc_layers,
                bidirectional=bidirectional,
            )
        else:
            raise Exception("unknown RNN type mentioned")

    def forward(self, x, x_sz, hidden=None):
        """
        x_sz: (batch_size, 1) -  Unpadded sequence lengths used for pack_pad

        Return:
            output: (batch_size, max_length, hidden_dim)
            hidden: (n_layer*num_directions, batch_size, hidden_dim) | if LSTM tuple -(h_n, c_n)

        """
        batch_sz = x.shape[0]
        # x: batch_size, max_length, enc_embed_dim
        x = self.embedding(x)

        ## pack the padded data
        # x: max_length, batch_size, enc_embed_dim -> for pack_pad
        x = x.permute(1, 0, 2)
        x = nn.utils.rnn.pack_padded_sequence(x, x_sz, enforce_sorted=False)  # unpad

        # output: packed_size, batch_size, enc_embed_dim --> hidden from all timesteps
        # hidden: n_layer**num_directions, batch_size, hidden_dim | if LSTM (h_n, c_n)
        output, hidden = self.enc_rnn(x)

        ## pad the sequence to the max length in the batch
        # output: max_length, batch_size, enc_emb_dim*directions)
        output, _ = nn.utils.rnn.pad_packed_sequence(output)

        # output: batch_size, max_length, hidden_dim
        output = output.permute(1, 0, 2)

        return output, hidden


class Decoder(nn.Module):
    """
    Used as decoder stage
    """

    def __init__(
        self,
        output_dim,
        embed_dim,
        hidden_dim,
        rnn_type="gru",
        layers=1,
        use_attention=True,
        enc_outstate_dim=None,  # enc_directions * enc_hidden_dim
        dropout=0,
        device="cpu",
    ):
        super(Decoder, self).__init__()

        self.output_dim = output_dim  # tgt_vocab_sz
        self.dec_hidden_dim = hidden_dim
        self.dec_embed_dim = embed_dim
        self.dec_rnn_type = rnn_type
        self.dec_layers = layers
        self.use_attention = use_attention
        self.device = device
        if self.use_attention:
            self.enc_outstate_dim = enc_outstate_dim if enc_outstate_dim else hidden_dim
        else:
            self.enc_outstate_dim = 0

        self.embedding = nn.Embedding(self.output_dim, self.dec_embed_dim)

        if self.dec_rnn_type == "gru":
            self.dec_rnn = nn.GRU(
                input_size=self.dec_embed_dim
                + self.enc_outstate_dim,  # to concat attention_output
                hidden_size=self.dec_hidden_dim,  # previous Hidden
                num_layers=self.dec_layers,
                batch_first=True,
            )
        elif self.dec_rnn_type == "lstm":
            self.dec_rnn = nn.LSTM(
                input_size=self.dec_embed_dim
                + self.enc_outstate_dim,  # to concat attention_output
                hidden_size=self.dec_hidden_dim,  # previous Hidden
                num_layers=self.dec_layers,
                batch_first=True,
            )
        else:
            raise Exception("unknown RNN type mentioned")

        self.fc = nn.Sequential(
            nn.Linear(self.dec_hidden_dim, self.dec_embed_dim),
            nn.LeakyReLU(),
            # nn.Linear(self.dec_embed_dim, self.dec_embed_dim), nn.LeakyReLU(), # removing to reduce size
            nn.Linear(self.dec_embed_dim, self.output_dim),
        )

        ##----- Attention ----------
        if self.use_attention:
            self.W1 = nn.Linear(self.enc_outstate_dim, self.dec_hidden_dim)
            self.W2 = nn.Linear(self.dec_hidden_dim, self.dec_hidden_dim)
            self.V = nn.Linear(self.dec_hidden_dim, 1)

    def attention(self, x, hidden, enc_output):
        """
        x: (batch_size, 1, dec_embed_dim) -> after Embedding
        enc_output: batch_size, max_length, enc_hidden_dim *num_directions
        hidden: n_layers, batch_size, hidden_size | if LSTM (h_n, c_n)
        """

        ## perform addition to calculate the score

        # hidden_with_time_axis: batch_size, 1, hidden_dim
        ## hidden_with_time_axis = hidden.permute(1, 0, 2) ## replaced with below 2lines
        hidden_with_time_axis = torch.sum(hidden, axis=0)

        hidden_with_time_axis = hidden_with_time_axis.unsqueeze(1)

        # score: batch_size, max_length, hidden_dim
        score = torch.tanh(self.W1(enc_output) + self.W2(hidden_with_time_axis))

        # attention_weights: batch_size, max_length, 1
        # we get 1 at the last axis because we are applying score to self.V
        attention_weights = torch.softmax(self.V(score), dim=1)

        # context_vector shape after sum == (batch_size, hidden_dim)
        context_vector = attention_weights * enc_output
        context_vector = torch.sum(context_vector, dim=1)
        # context_vector: batch_size, 1, hidden_dim
        context_vector = context_vector.unsqueeze(1)

        # attend_out (batch_size, 1, dec_embed_dim + hidden_size)
        attend_out = torch.cat((context_vector, x), -1)

        return attend_out, attention_weights

    def forward(self, x, hidden, enc_output):
        """
        x: (batch_size, 1)
        enc_output: batch_size, max_length, dec_embed_dim
        hidden: n_layer, batch_size, hidden_size | lstm: (h_n, c_n)
        """
        if (hidden is None) and (self.use_attention is False):
            raise Exception("No use of a decoder with No attention and No Hidden")

        batch_sz = x.shape[0]

        if hidden is None:
            # hidden: n_layers, batch_size, hidden_dim
            hid_for_att = torch.zeros(
                (self.dec_layers, batch_sz, self.dec_hidden_dim)
            ).to(self.device)
        elif self.dec_rnn_type == "lstm":
            hid_for_att = hidden[0]  # h_n
        else:
            hid_for_att = hidden

        # x (batch_size, 1, dec_embed_dim) -> after embedding
        x = self.embedding(x)

        if self.use_attention:
            # x (batch_size, 1, dec_embed_dim + hidden_size) -> after attention
            # aw: (batch_size, max_length, 1)
            x, aw = self.attention(x, hid_for_att, enc_output)
        else:
            x, aw = x, 0

        # passing the concatenated vector to the GRU
        # output: (batch_size, n_layers, hidden_size)
        # hidden: n_layers, batch_size, hidden_size | if LSTM (h_n, c_n)
        output, hidden = (
            self.dec_rnn(x, hidden) if hidden is not None else self.dec_rnn(x)
        )

        # output :shp: (batch_size * 1, hidden_size)
        output = output.view(-1, output.size(2))

        # output :shp: (batch_size * 1, output_dim)
        output = self.fc(output)

        return output, hidden, aw


class Seq2Seq(nn.Module):
    """
    Used to construct seq2seq architecture with encoder decoder objects
    """

    def __init__(
        self, encoder, decoder, pass_enc2dec_hid=False, dropout=0, device="cpu"
    ):
        super(Seq2Seq, self).__init__()

        self.encoder = encoder
        self.decoder = decoder
        self.device = device
        self.pass_enc2dec_hid = pass_enc2dec_hid

        if self.pass_enc2dec_hid:
            assert (
                decoder.dec_hidden_dim == encoder.enc_hidden_dim
            ), "Hidden Dimension of encoder and decoder must be same, or unset `pass_enc2dec_hid`"
        if decoder.use_attention:
            assert (
                decoder.enc_outstate_dim
                == encoder.enc_directions * encoder.enc_hidden_dim
            ), "Set `enc_out_dim` correctly in decoder"
        assert (
            self.pass_enc2dec_hid or decoder.use_attention
        ), "No use of a decoder with No attention and No Hidden from Encoder"

    def forward(self, src, tgt, src_sz, teacher_forcing_ratio=0):
        """
        src: (batch_size, sequence_len.padded)
        tgt: (batch_size, sequence_len.padded)
        src_sz: [batch_size, 1] -  Unpadded sequence lengths
        """
        batch_size = tgt.shape[0]

        # enc_output: (batch_size, padded_seq_length, enc_hidden_dim*num_direction)
        # enc_hidden: (enc_layers*num_direction, batch_size, hidden_dim)
        enc_output, enc_hidden = self.encoder(src, src_sz)

        if self.pass_enc2dec_hid:
            # dec_hidden: dec_layers, batch_size , dec_hidden_dim
            dec_hidden = enc_hidden
        else:
            # dec_hidden -> Will be initialized to zeros internally
            dec_hidden = None

        # pred_vecs: (batch_size, output_dim, sequence_sz) -> shape required for CELoss
        pred_vecs = torch.zeros(batch_size, self.decoder.output_dim, tgt.size(1)).to(
            self.device
        )

        # dec_input: (batch_size, 1)
        dec_input = tgt[:, 0].unsqueeze(1)  # initialize to start token
        pred_vecs[:, 1, 0] = 1  # Initialize to start tokens all batches
        for t in range(1, tgt.size(1)):
            # dec_hidden: dec_layers, batch_size , dec_hidden_dim
            # dec_output: batch_size, output_dim
            # dec_input: (batch_size, 1)
            dec_output, dec_hidden, _ = self.decoder(
                dec_input,
                dec_hidden,
                enc_output,
            )
            pred_vecs[:, :, t] = dec_output

            # # prediction: batch_size
            prediction = torch.argmax(dec_output, dim=1)

            # Teacher Forcing
            if random.random() < teacher_forcing_ratio:
                dec_input = tgt[:, t].unsqueeze(1)
            else:
                dec_input = prediction.unsqueeze(1)

        return pred_vecs  # (batch_size, output_dim, sequence_sz)

    def inference(self, src, max_tgt_sz=50, debug=0):
        """
        single input only, No batch Inferencing
        src: (sequence_len)
        debug: if True will return attention weights also
        """
        batch_size = 1
        start_tok = src[0]
        end_tok = src[-1]
        src_sz = torch.tensor([len(src)])
        src_ = src.unsqueeze(0)

        # enc_output: (batch_size, padded_seq_length, enc_hidden_dim*num_direction)
        # enc_hidden: (enc_layers*num_direction, batch_size, hidden_dim)
        enc_output, enc_hidden = self.encoder(src_, src_sz)

        if self.pass_enc2dec_hid:
            # dec_hidden: dec_layers, batch_size , dec_hidden_dim
            dec_hidden = enc_hidden
        else:
            # dec_hidden -> Will be initialized to zeros internally
            dec_hidden = None

        # pred_arr: (sequence_sz, 1) -> shape required for CELoss
        pred_arr = torch.zeros(max_tgt_sz, 1).to(self.device)
        if debug:
            attend_weight_arr = torch.zeros(max_tgt_sz, len(src)).to(self.device)

        # dec_input: (batch_size, 1)
        dec_input = start_tok.view(1, 1)  # initialize to start token
        pred_arr[0] = start_tok.view(1, 1)  # initialize to start token
        for t in range(max_tgt_sz):
            # dec_hidden: dec_layers, batch_size , dec_hidden_dim
            # dec_output: batch_size, output_dim
            # dec_input: (batch_size, 1)
            dec_output, dec_hidden, aw = self.decoder(
                dec_input,
                dec_hidden,
                enc_output,
            )
            # prediction :shp: (1,1)
            prediction = torch.argmax(dec_output, dim=1)
            dec_input = prediction.unsqueeze(1)
            pred_arr[t] = prediction
            if debug:
                attend_weight_arr[t] = aw.squeeze(-1)

            if torch.eq(prediction, end_tok):
                break

        if debug:
            return pred_arr.squeeze(), attend_weight_arr
        # pred_arr :shp: (sequence_len)
        return pred_arr.squeeze().to(dtype=torch.long)

    def active_beam_inference(self, src, beam_width=3, max_tgt_sz=50):
        """Active beam Search based decoding
        src: (sequence_len)
        """

        def _avg_score(p_tup):
            """Used for Sorting
            TODO: Dividing by length of sequence power alpha as hyperparam
            """
            return p_tup[0]

        batch_size = 1
        start_tok = src[0]
        end_tok = src[-1]
        src_sz = torch.tensor([len(src)])
        src_ = src.unsqueeze(0)

        # enc_output: (batch_size, padded_seq_length, enc_hidden_dim*num_direction)
        # enc_hidden: (enc_layers*num_direction, batch_size, hidden_dim)
        enc_output, enc_hidden = self.encoder(src_, src_sz)

        if self.pass_enc2dec_hid:
            # dec_hidden: dec_layers, batch_size , dec_hidden_dim
            init_dec_hidden = enc_hidden
        else:
            # dec_hidden -> Will be initialized to zeros internally
            init_dec_hidden = None

        # top_pred[][0] = Σ-log_softmax
        # top_pred[][1] = sequence torch.tensor shape: (1)
        # top_pred[][2] = dec_hidden
        top_pred_list = [(0, start_tok.unsqueeze(0), init_dec_hidden)]

        for t in range(max_tgt_sz):
            cur_pred_list = []

            for p_tup in top_pred_list:
                if p_tup[1][-1] == end_tok:
                    cur_pred_list.append(p_tup)
                    continue

                # dec_hidden: dec_layers, 1, hidden_dim
                # dec_output: 1, output_dim
                dec_output, dec_hidden, _ = self.decoder(
                    x=p_tup[1][-1].view(1, 1),  # dec_input: (1,1)
                    hidden=p_tup[2],
                    enc_output=enc_output,
                )

                ## π{prob} = Σ{log(prob)} -> to prevent diminishing
                # dec_output: (1, output_dim)
                dec_output = nn.functional.log_softmax(dec_output, dim=1)
                # pred_topk.values & pred_topk.indices: (1, beam_width)
                pred_topk = torch.topk(dec_output, k=beam_width, dim=1)

                for i in range(beam_width):
                    sig_logsmx_ = p_tup[0] + pred_topk.values[0][i]
                    # seq_tensor_ : (seq_len)
                    seq_tensor_ = torch.cat((p_tup[1], pred_topk.indices[0][i].view(1)))

                    cur_pred_list.append((sig_logsmx_, seq_tensor_, dec_hidden))

            cur_pred_list.sort(key=_avg_score, reverse=True)  # Maximized order
            top_pred_list = cur_pred_list[:beam_width]

            # check if end_tok of all topk
            end_flags_ = [1 if t[1][-1] == end_tok else 0 for t in top_pred_list]
            if beam_width == sum(end_flags_):
                break

        pred_tnsr_list = [t[1] for t in top_pred_list]

        return pred_tnsr_list

    def passive_beam_inference(self, src, beam_width=7, max_tgt_sz=50):
        """
        Passive Beam search based inference
        src: (sequence_len)
        """

        def _avg_score(p_tup):
            """Used for Sorting
            TODO: Dividing by length of sequence power alpha as hyperparam
            """
            return p_tup[0]

        def _beam_search_topk(topk_obj, start_tok, beam_width):
            """search for sequence with maxim prob
            topk_obj[x]: .values & .indices shape:(1, beam_width)
            """
            # top_pred_list[x]: tuple(prob, seq_tensor)
            top_pred_list = [
                (0, start_tok.unsqueeze(0)),
            ]

            for obj in topk_obj:
                new_lst_ = list()
                for itm in top_pred_list:
                    for i in range(beam_width):
                        sig_logsmx_ = itm[0] + obj.values[0][i]
                        seq_tensor_ = torch.cat((itm[1], obj.indices[0][i].view(1)))
                        new_lst_.append((sig_logsmx_, seq_tensor_))

                new_lst_.sort(key=_avg_score, reverse=True)
                top_pred_list = new_lst_[:beam_width]
            return top_pred_list

        batch_size = 1
        start_tok = src[0]
        end_tok = src[-1]
        src_sz = torch.tensor([len(src)])
        src_ = src.unsqueeze(0)

        enc_output, enc_hidden = self.encoder(src_, src_sz)

        if self.pass_enc2dec_hid:
            # dec_hidden: dec_layers, batch_size , dec_hidden_dim
            dec_hidden = enc_hidden
        else:
            # dec_hidden -> Will be initialized to zeros internally
            dec_hidden = None

        # dec_input: (1, 1)
        dec_input = start_tok.view(1, 1)  # initialize to start token

        topk_obj = []
        for t in range(max_tgt_sz):
            dec_output, dec_hidden, aw = self.decoder(
                dec_input,
                dec_hidden,
                enc_output,
            )

            ## π{prob} = Σ{log(prob)} -> to prevent diminishing
            # dec_output: (1, output_dim)
            dec_output = nn.functional.log_softmax(dec_output, dim=1)
            # pred_topk.values & pred_topk.indices: (1, beam_width)
            pred_topk = torch.topk(dec_output, k=beam_width, dim=1)

            topk_obj.append(pred_topk)

            # dec_input: (1, 1)
            dec_input = pred_topk.indices[0][0].view(1, 1)
            if torch.eq(dec_input, end_tok):
                break

        top_pred_list = _beam_search_topk(topk_obj, start_tok, beam_width)
        pred_tnsr_list = [t[1] for t in top_pred_list]

        return pred_tnsr_list


class GlyphStrawboss:
    def __init__(self, glyphs="en"):
        """list of letters in a language in unicode
        lang: List with unicodes
        """
        if glyphs == "en":
            # Smallcase alone
            self.glyphs = [chr(alpha) for alpha in range(97, 123)] + ["é", "è", "á"]
        else:
            self.dossier = json.load(open(glyphs, encoding="utf-8"))
            self.numsym_map = self.dossier["numsym_map"]
            self.glyphs = self.dossier["glyphs"]

        self.indoarab_num = [chr(alpha) for alpha in range(48, 58)]

        self.char2idx = {}
        self.idx2char = {}
        self._create_index()

    def _create_index(self):

        self.char2idx["_"] = 0  # pad
        self.char2idx["$"] = 1  # start
        self.char2idx["#"] = 2  # end
        self.char2idx["*"] = 3  # Mask
        self.char2idx["'"] = 4  # apostrophe U+0027
        self.char2idx["%"] = 5  # unused
        self.char2idx["!"] = 6  # unused
        self.char2idx["?"] = 7
        self.char2idx[":"] = 8
        self.char2idx[" "] = 9
        self.char2idx["-"] = 10
        self.char2idx[","] = 11
        self.char2idx["."] = 12
        self.char2idx["("] = 13
        self.char2idx[")"] = 14
        self.char2idx["/"] = 15
        self.char2idx["^"] = 16

        for idx, char in enumerate(self.indoarab_num):
            self.char2idx[char] = idx + 17
        # letter to index mapping
        for idx, char in enumerate(self.glyphs):
            self.char2idx[char] = idx + 27  # +20 token initially

        # index to letter mapping
        for char, idx in self.char2idx.items():
            self.idx2char[idx] = char

    def size(self):
        return len(self.char2idx)

    def word2xlitvec(self, word):
        """Converts given string of gyphs(word) to vector(numpy)
        Also adds tokens for start and end
        """
        try:
            vec = [self.char2idx["$"]]  # start token
            for i in list(word):
                vec.append(self.char2idx[i])
            vec.append(self.char2idx["#"])  # end token

            vec = np.asarray(vec, dtype=np.int64)
            return vec

        except Exception as error:
            print("Error In word:", word, "Error Char not in Token:", error)
            sys.exit()

    def xlitvec2word(self, vector):
        """Converts vector(numpy) to string of glyphs(word)"""
        char_list = []
        for i in vector:
            char_list.append(self.idx2char[i])

        word = "".join(char_list).replace("$", "").replace("#", "")  # remove tokens
        word = word.replace("_", "").replace("*", "")  # remove tokens
        return word


class XlitPiston:
    """
    For handling prediction & post-processing of transliteration for a single language
    Class dependency: Seq2Seq, GlyphStrawboss
    Global Variables: F_DIR
    """

    def __init__(
        self, weight_path, tglyph_cfg_file, iglyph_cfg_file="en", device="cpu"
    ):

        self.device = device
        self.in_glyph_obj = GlyphStrawboss(iglyph_cfg_file)
        self.tgt_glyph_obj = GlyphStrawboss(glyphs=tglyph_cfg_file)

        self._numsym_set = set(
            json.load(open(tglyph_cfg_file, encoding="utf-8"))["numsym_map"].keys()
        )
        self._inchar_set = set("abcdefghijklmnopqrstuvwxyzéèá")
        self._natscr_set = set().union(
            self.tgt_glyph_obj.glyphs, sum(self.tgt_glyph_obj.numsym_map.values(), [])
        )

        ## Model Config Static                TODO: add defining in json support
        input_dim = self.in_glyph_obj.size()
        output_dim = self.tgt_glyph_obj.size()
        enc_emb_dim = 300
        dec_emb_dim = 300
        enc_hidden_dim = 512
        dec_hidden_dim = 512
        rnn_type = "lstm"
        enc2dec_hid = True
        attention = True
        enc_layers = 1
        dec_layers = 2
        m_dropout = 0
        enc_bidirect = True
        enc_outstate_dim = enc_hidden_dim * (2 if enc_bidirect else 1)

        enc = Encoder(
            input_dim=input_dim,
            embed_dim=enc_emb_dim,
            hidden_dim=enc_hidden_dim,
            rnn_type=rnn_type,
            layers=enc_layers,
            dropout=m_dropout,
            device=self.device,
            bidirectional=enc_bidirect,
        )
        dec = Decoder(
            output_dim=output_dim,
            embed_dim=dec_emb_dim,
            hidden_dim=dec_hidden_dim,
            rnn_type=rnn_type,
            layers=dec_layers,
            dropout=m_dropout,
            use_attention=attention,
            enc_outstate_dim=enc_outstate_dim,
            device=self.device,
        )
        self.model = Seq2Seq(enc, dec, pass_enc2dec_hid=enc2dec_hid, device=self.device)
        self.model = self.model.to(self.device)
        weights = torch.load(weight_path, map_location=torch.device(self.device))

        self.model.load_state_dict(weights)
        self.model.eval()

    def character_model(self, word, beam_width=1):
        in_vec = torch.from_numpy(self.in_glyph_obj.word2xlitvec(word)).to(self.device)
        ## change to active or passive beam
        p_out_list = self.model.active_beam_inference(in_vec, beam_width=beam_width)
        result = [
            self.tgt_glyph_obj.xlitvec2word(out.cpu().numpy()) for out in p_out_list
        ]

        # List type
        return result

    def numsym_model(self, seg):
        """tgt_glyph_obj.numsym_map[x] returns a list object"""
        if len(seg) == 1:
            return [seg] + self.tgt_glyph_obj.numsym_map[seg]

        a = [self.tgt_glyph_obj.numsym_map[n][0] for n in seg]
        return [seg] + ["".join(a)]

    def _word_segementer(self, sequence):

        sequence = sequence.lower()
        accepted = set().union(self._numsym_set, self._inchar_set, self._natscr_set)
        # sequence = ''.join([i for i in sequence if i in accepted])

        segment = []
        idx = 0
        seq_ = list(sequence)
        while len(seq_):
            # for Number-Symbol
            temp = ""
            while len(seq_) and seq_[0] in self._numsym_set:
                temp += seq_[0]
                seq_.pop(0)
            if temp != "":
                segment.append(temp)

            # for Target Chars
            temp = ""
            while len(seq_) and seq_[0] in self._natscr_set:
                temp += seq_[0]
                seq_.pop(0)
            if temp != "":
                segment.append(temp)

            # for Input-Roman Chars
            temp = ""
            while len(seq_) and seq_[0] in self._inchar_set:
                temp += seq_[0]
                seq_.pop(0)
            if temp != "":
                segment.append(temp)

            temp = ""
            while len(seq_) and seq_[0] not in accepted:
                temp += seq_[0]
                seq_.pop(0)
            if temp != "":
                segment.append(temp)

        return segment

    def inferencer(self, sequence, beam_width=10):

        seg = self._word_segementer(sequence[:120])
        lit_seg = []

        p = 0
        while p < len(seg):
            if seg[p][0] in self._natscr_set:
                lit_seg.append([seg[p]])
                p += 1

            elif seg[p][0] in self._inchar_set:
                lit_seg.append(self.character_model(seg[p], beam_width=beam_width))
                p += 1

            elif seg[p][0] in self._numsym_set:  # num & punc
                lit_seg.append(self.numsym_model(seg[p]))
                p += 1
            else:
                lit_seg.append([seg[p]])
                p += 1

        ## IF segment less/equal to 2 then return combinotorial,
        ## ELSE only return top1 of each result concatenated
        if len(lit_seg) == 1:
            final_result = lit_seg[0]

        elif len(lit_seg) == 2:
            final_result = [""]
            for seg in lit_seg:
                new_result = []
                for s in seg:
                    for f in final_result:
                        new_result.append(f + s)
                final_result = new_result

        else:
            new_result = []
            for seg in lit_seg:
                new_result.append(seg[0])
            final_result = ["".join(new_result)]

        return final_result


class XlitEngine:
    """
    For Managing the top level tasks and applications of transliteration
    Global Variables: F_DIR
    """

    def __init__(self, lang2use="hi", config_path="models/default_lineup.json"):
        lineup = json.load(open(os.path.join(F_DIR, config_path), encoding="utf-8"))
        models_path = os.path.join(F_DIR, "models")
        self.lang_config = {}
        if lang2use in lineup:
            self.lang_config[lang2use] = lineup[lang2use]
        else:
            raise Exception(
                "XlitError: The entered Langauge code not found. Available are {}".format(
                    lineup.keys()
                )
            )
        self.langs = {}
        self.lang_model = {}
        for la in self.lang_config:
            try:
                print("Loading {}...".format(la))
                self.lang_model[la] = XlitPiston(
                    weight_path=os.path.join(
                        models_path, self.lang_config[la]["weight"]
                    ),
                    tglyph_cfg_file=os.path.join(
                        models_path, self.lang_config[la]["script"]
                    ),
                    iglyph_cfg_file="en",
                )
                self.langs[la] = self.lang_config[la]["name"]
            except Exception as error:
                print("XlitError: Failure in loading {} \n".format(la), error)
                print(XlitError.loading_err.value)

    def translit_word(self, eng_word, lang_code="hi", topk=7, beam_width=10):
        if eng_word == "":
            return []
        if lang_code in self.langs:
            try:
                res_list = self.lang_model[lang_code].inferencer(
                    eng_word, beam_width=beam_width
                )
                return res_list[:topk]

            except Exception as error:
                print("XlitError:", traceback.format_exc())
                print(XlitError.internal_err.value)
                return XlitError.internal_err
        else:
            print("XlitError: Unknown Langauge requested", lang_code)
            print(XlitError.lang_err.value)
            return XlitError.lang_err

    def translit_sentence(self, eng_sentence, lang_code="hi", beam_width=10):
        if eng_sentence == "":
            return []

        if lang_code in self.langs:
            try:
                out_str = ""
                for word in eng_sentence.split():
                    res_ = self.lang_model[lang_code].inferencer(
                        word, beam_width=beam_width
                    )
                    out_str = out_str + res_[0] + " "
                return out_str[:-1]

            except Exception as error:
                print("XlitError:", traceback.format_exc())
                print(XlitError.internal_err.value)
                return XlitError.internal_err

        else:
            print("XlitError: Unknown Langauge requested", lang_code)
            print(XlitError.lang_err.value)
            return XlitError.lang_err


if __name__ == "__main__":

    engine = XlitEngine()
    y = engine.translit_sentence("Hello World !")
    print(y)