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import types
import torch
import torch.nn.functional as F
import numpy as np
from torch import nn
from transformers import T5ForConditionalGeneration, T5EncoderModel, AutoModel, LogitsProcessor, LogitsProcessorList, PreTrainedModel
from functools import partial
from undecorate import unwrap
from types import MethodType
from utils import *
from ling_disc import DebertaReplacedTokenizer
from const import *
from lingconv_t5 import LingConvT5ForConditionalGeneration
from dataclasses import dataclass
from transformers.modeling_outputs import Seq2SeqLMOutput
from typing import Optional, Dict, Any



def vae_sample(mu, logvar):
    std = torch.exp(0.5 * logvar)
    eps = torch.randn_like(std)
    return eps * std + mu

class VAE(nn.Module):
    def __init__(self, args):
        super().__init__()
        self.encoder = nn.Sequential(
                nn.Linear(args.input_dim, args.hidden_dim),
                nn.ReLU(),
                nn.Linear(args.hidden_dim, args.hidden_dim),
                nn.ReLU(),
                )
        self.decoder = nn.Sequential(
                nn.Linear(args.latent_dim, args.hidden_dim),
                nn.ReLU(),
                nn.Linear(args.hidden_dim, args.hidden_dim),
                nn.ReLU(),
                nn.Linear(args.hidden_dim, args.input_dim),
                )
        self.fc_mu = nn.Linear(args.hidden_dim, args.latent_dim)
        self.fc_var = nn.Linear(args.hidden_dim, args.latent_dim)

    def forward(self, x):
        h = self.encoder(x)
        mu = self.fc_mu(h)
        logvar = self.fc_var(h)
        x = vae_sample(mu, logvar)
        o = self.decoder(x)
        return o, (mu, logvar)

class LingGenerator(nn.Module):
    def __init__(self, args, hidden_dim=1000):
        super().__init__()

        self.gen = T5EncoderModel.from_pretrained('google/flan-t5-small')
        self.hidden_size = self.gen.config.d_model
        self.ling_embed = nn.Linear(args.lng_dim, self.hidden_size)
        # self.gen = nn.Sequential(
        #         nn.Linear(args.lng_dim, 2*hidden_dim),
        #         nn.ReLU(),
        #         nn.BatchNorm1d(2*hidden_dim),
        #         nn.Linear(2*hidden_dim, 2*hidden_dim),
        #         nn.ReLU(),
        #         nn.BatchNorm1d(2*hidden_dim),
        #         nn.Linear(2*hidden_dim, hidden_dim),
        #         nn.ReLU(),
        #         )

        self.gen_type = args.linggen_type
        self.gen_input = args.linggen_input
        if self.gen_type == 'vae':
            self.gen_mu = nn.Linear(hidden_dim, args.lng_dim)
            self.gen_logvar = nn.Linear(hidden_dim, args.lng_dim)
        elif self.gen_type == 'det':
            self.projection = nn.Linear(self.hidden_size, args.lng_dim)

    def forward(self, batch):
        inputs_embeds = self.gen.shared(batch['sentence1_input_ids'])
        inputs_att_mask = batch['sentence1_attention_mask']
        bs = inputs_embeds.shape[0]

        if self.gen_input == 's+l':
            sentence1_ling = self.ling_embed(batch['sentence1_ling'])
            sentence1_ling = sentence1_ling.view(bs, 1, -1)
            inputs_embeds = inputs_embeds + sentence1_ling

        gen = self.gen(inputs_embeds=inputs_embeds,
                attention_mask=inputs_att_mask).last_hidden_state.mean(1)
        # gen = self.gen(batch['sentence1_ling'])

        cache = {}
        if self.gen_type == 'vae':
            mu = self.gen_mu(gen)
            logvar = self.gen_logvar(gen)
            output = vae_sample(mu, logvar)
            cache['linggen_mu'] = mu
            cache['linggen_logvar'] = logvar
        elif self.gen_type == 'det':
            output = self.projection(gen)

        return output, cache


class LingDisc(nn.Module):
    def __init__(self,
                 model_name,
                 disc_type,
                 disc_ckpt,
                 lng_dim=40,
                 quant_nbins=1,
                 disc_lng_dim=None,
                 lng_ids=None,
                 **kwargs):
        super().__init__()
        if disc_type == 't5':
            self.encoder = T5EncoderModel.from_pretrained(model_name)
            hidden_dim = self.encoder.config.d_model
            self.dropout = nn.Dropout(0.2)
            self.lng_dim = disc_lng_dim if disc_lng_dim else lng_dim
            self.quant = quant_nbins > 1
            self.quant = False
            if self.quant:
                self.ling_classifier = nn.Linear(hidden_dim, self.lng_dim * quant_nbins)
            else:
                self.ling_classifier = nn.Linear(hidden_dim, self.lng_dim)
            lng_ids = torch.tensor(lng_ids) if lng_ids is not None else None
            # from const import used_indices
            # lng_ids = torch.tensor(used_indices)
            self.register_buffer('lng_ids', lng_ids)
        elif disc_type == 'deberta':
            self.encoder= DebertaReplacedTokenizer.from_pretrained(
                    pretrained_model_name_or_path=disc_ckpt,
                    tok_model_name = model_name,
                    problem_type='regression', num_labels=40)
            self.quant = False

        self.disc_type = disc_type

    def forward(self, **batch):
        if not 'attention_mask' in batch:
            if 'input_ids' in batch:
                att_mask = torch.ones_like(batch['input_ids'])
            else:
                att_mask = torch.ones_like(batch['logits'])[:,:,0]
        else:
            att_mask = batch['attention_mask']
        if 'input_ids' in batch:
            enc_output = self.encoder(input_ids=batch['input_ids'],
                    attention_mask=att_mask)
        elif 'logits' in batch:
            logits = batch['logits']
            scores = F.softmax(logits, dim = -1)
            onehot = F.one_hot(logits.argmax(-1), num_classes=logits.shape[2]).float().to(logits.device)
            onehot_ = scores - scores.detach() + onehot

            embed_layer = self.encoder.get_input_embeddings()
            if isinstance(embed_layer, nn.Sequential):
                for i, module in enumerate(embed_layer):
                    if i == 0:
                        embeds = torch.matmul(onehot_, module.weight)
                    else:
                        embeds = module(embeds)
            else:
                embeds =  onehot_ @ embed_layer.weight
                embeds = torch.matmul(onehot_, embed_layer.weight)

            enc_output = self.encoder(inputs_embeds=embeds,
                    attention_mask=att_mask)
        if self.disc_type == 't5':
            sent_emb = self.dropout(enc_output.last_hidden_state.mean(1))
            bs = sent_emb.shape[0]
            output = self.ling_classifier(sent_emb)
            if self.quant:
                output = output.reshape(bs, -1, self.lng_dim)
            if self.lng_ids is not None:
                output = torch.index_select(output, 1, self.lng_ids)
        elif self.disc_type == 'deberta':
            output = enc_output.logits
        return output

class SemEmb(T5EncoderModel):
    def __init__(self, config, sep_token_id):
        super().__init__(config)
        self.sep_token_id = sep_token_id
        hidden_dim = self.config.d_model
        self.projection = nn.Sequential(nn.ReLU(),
                nn.Dropout(0.2),
                nn.Linear(hidden_dim, 1))

    def compare_sem(self, **batch):
        bs = batch['attention_mask'].shape[0]
        ones = torch.ones((bs, 1), device=batch['attention_mask'].device)
        sep = torch.ones((bs, 1), dtype=torch.long,
                device=batch['attention_mask'].device) * self.sep_token_id
        att_mask = torch.cat([batch['attention_mask'], ones, batch['sentence2_attention_mask']], dim=1)
        if 'logits' in batch:
            input_ids = torch.cat([batch['input_ids'], sep], dim=1)
            embeds1 = self.shared(input_ids)

            logits = batch['logits']
            scores = F.softmax(logits, dim = -1)
            onehot = F.one_hot(logits.argmax(-1), num_classes=logits.shape[2]).float().to(logits.device)
            onehot_ = scores - scores.detach() + onehot

            embeds2 =  onehot_ @ self.shared.weight
            embeds1_2 = torch.cat([embeds1, embeds2], dim=1)
            hidden_units = super().forward(inputs_embeds=embeds1_2,
                    attention_mask=att_mask).last_hidden_state.mean(1)
        elif 'sentence2_input_ids' in batch:
            input_ids = torch.cat([batch['input_ids'], sep, batch['sentence2_input_ids']], dim=1)
            hidden_units = super().forward(input_ids=input_ids,
                    attention_mask=att_mask).last_hidden_state.mean(1)
        probs = self.projection(hidden_units)
        return probs

def prepare_inputs_for_generation(
        combine_method,
        ling2_only,
        self,
        input_ids,
        past_key_values=None,
        attention_mask=None,
        head_mask=None,
        decoder_head_mask=None,
        cross_attn_head_mask=None,
        use_cache=None,
        encoder_outputs=None,
        sentence1_ling=None,
        sentence2_ling=None,
        **kwargs
    ):
        # cut decoder_input_ids if past is used
        if past_key_values is not None:
            input_ids = input_ids[:, -1:]

        cached = use_cache and len(past_key_values) > 0

        input_ids = input_ids.clone()
        decoder_inputs_embeds = self.shared(input_ids)

        if combine_method == 'layer_injection':
            # For layer injection, we'll pass the ling embeddings separately
            ling_embed = sentence2_ling if ling2_only else (sentence1_ling + sentence2_ling)
        elif combine_method == 'decoder_add_first' and not cached:
            sentence2_ling = torch.cat([sentence2_ling,
                torch.repeat_interleave(torch.zeros_like(sentence2_ling), input_ids.shape[1] - 1, dim=1)], dim = 1)
        elif combine_method == 'decoder_concat':
            if ling2_only:
                decoder_inputs_embeds = torch.cat([sentence2_ling, decoder_inputs_embeds], dim=1)
            else:
                decoder_inputs_embeds = torch.cat([sentence1_ling, sentence2_ling, decoder_inputs_embeds], dim=1)

        if combine_method == 'decoder_add' or (not cached and combine_method == 'decoder_add_first'):
            if ling2_only:
                decoder_inputs_embeds = decoder_inputs_embeds + sentence2_ling
            else:
                decoder_inputs_embeds = decoder_inputs_embeds + sentence1_ling + sentence2_ling

        return {
            "decoder_inputs_embeds": decoder_inputs_embeds,
            "past_key_values": past_key_values,
            "encoder_outputs": encoder_outputs,
            "attention_mask": attention_mask,
            "head_mask": head_mask,
            "decoder_head_mask": decoder_head_mask,
            "cross_attn_head_mask": cross_attn_head_mask,
            "use_cache": use_cache,
            "ling_embed": ling_embed if combine_method == 'layer_injection' else None,
        }

class LogitsAdd(LogitsProcessor):
    def __init__(self, sentence2_ling):
        super().__init__()
        self.sentence2_ling = sentence2_ling

    def __call__(self, input_ids, scores):
        return scores + self.sentence2_ling

class EncoderDecoderVAE(LingConvT5ForConditionalGeneration):
    def __init__(self, config, args, pad_token_id, sepeos_token_id, vocab_size = 32128):
        if args.combine_method == 'layer_injection':
            if args.injection_layer < 0 or args.injection_layer >= config.num_decoder_layers:
                raise ValueError(f"Invalid injection layer: {args.injection_layer}. Must be between 0 and {config.num_decoder_layers - 1}.")
            config.ling_injection_layer = args.injection_layer
            config.ling_injection_type = args.injection_type  # 'first' or 'all'
            
        super().__init__(config)
        
        self.prepare_inputs_for_generation = types.MethodType(
                partial(prepare_inputs_for_generation, args.combine_method, args.ling2_only),
                self)
        self.args = args
        self.pad_token_id = pad_token_id
        self.eos_token_id = sepeos_token_id
        hidden_dim = self.config.d_model if not 'logits' in args.combine_method else vocab_size
        if args.combine_method == 'fusion1':
            self.fusion = nn.Sequential(
                    nn.Linear(hidden_dim + 2 * args.lng_dim, hidden_dim),
                    )
        elif args.combine_method == 'fusion2':
            self.fusion = nn.Sequential(
                    nn.Linear(hidden_dim + 2 * args.lng_dim, hidden_dim),
                    nn.ReLU(),
                    nn.Linear(hidden_dim, hidden_dim),
                    )
        elif 'concat' in args.combine_method or 'add' in args.combine_method or 'layer_injection' in args.combine_method:
            if args.ling_embed_type == 'two-layer':
                self.ling_embed = nn.Sequential(
                        nn.Linear(args.lng_dim, args.lng_dim),
                        nn.ReLU(),
                        nn.Linear(args.lng_dim, hidden_dim),
                        )
            else:
                self.ling_embed = nn.Linear(args.lng_dim, hidden_dim)
            self.ling_dropout = nn.Dropout(args.ling_dropout)
        self.ling_embed.apply(self._init_weights)

        if args.ling_vae:
            self.ling_mu = nn.Linear(hidden_dim, hidden_dim)
            self.ling_logvar = nn.Linear(hidden_dim, hidden_dim)
            nn.init.xavier_uniform_(self.ling_embed.weight)
            nn.init.xavier_uniform_(self.ling_mu.weight)
            nn.init.xavier_uniform_(self.ling_logvar.weight)


        generate_with_grad = unwrap(super().generate)
        self.generate_with_grad = MethodType(generate_with_grad, self)
        self.generate_original = super().generate

    def _init_weights(self, module):
        std = self.args.initializer_range
        if isinstance(module, nn.Linear):
            module.weight.data.normal_(mean=0.0, std=std)
            if module.bias is not None:
                module.bias.data.zero_()
        elif isinstance(module, nn.Embedding):
            module.weight.data.normal_(mean=0.0, std=std)
            if module.padding_idx is not None:
                module.weight.data[module.padding_idx].zero_()

    def get_fusion_layer(self):
        if 'fusion' in self.args.combine_method:
            return self.fusion
        elif 'concat' in self.args.combine_method or 'add' in self.args.combine_method:
            return self.ling_embed
        else:
            return None

    def sample(self, mu, logvar):
        std = torch.exp(0.5 * logvar)
        return mu + std * torch.randn_like(std)

    def _process_ling_embeddings(self, sentence1_ling, sentence2_ling, 
                               sentence1_ling_embed, sentence2_ling_embed, bs):
        """Helper method to process linguistic embeddings"""
        cache = {}
        
        # Process sentence1 embedding
        if sentence1_ling_embed is not None:
            sentence1_ling = sentence1_ling_embed
        elif sentence1_ling is not None:
            sentence1_ling = self.ling_embed(self.ling_dropout(sentence1_ling))
        else:
            sentence1_ling = None
            
        # Process sentence2 embedding
        if sentence2_ling_embed is not None:
            sentence2_ling = sentence2_ling_embed
        elif sentence2_ling is not None:
            sentence2_ling = self.ling_embed(self.ling_dropout(sentence2_ling))
        else:
            sentence2_ling = None

        # Apply VAE if configured
        if self.args.ling_vae and sentence1_ling is not None and sentence2_ling is not None:
            sentence1_ling = F.leaky_relu(sentence1_ling)
            sent1_mu, sent1_logvar = self.ling_mu(sentence1_ling), self.ling_logvar(sentence1_ling)
            sentence1_ling = self.sample(sent1_mu, sent1_logvar)

            sentence2_ling = F.leaky_relu(sentence2_ling)
            sent2_mu, sent2_logvar = self.ling_mu(sentence2_ling), self.ling_logvar(sentence2_ling)
            sentence2_ling = self.sample(sent2_mu, sent2_logvar)
            
            cache.update({
                'sent1_mu': sent1_mu, 'sent1_logvar': sent1_logvar,
                'sent2_mu': sent2_mu, 'sent2_logvar': sent2_logvar,
                'sentence1_ling': sentence1_ling, 'sentence2_ling': sentence2_ling
            })
        else:
            if sentence2_ling is not None:
                cache['sentence2_ling'] = sentence2_ling
            if sentence1_ling is not None:
                cache['sentence1_ling'] = sentence1_ling

        # Reshape embeddings
        if sentence1_ling is not None:
            sentence1_ling = sentence1_ling.view(bs, 1, -1)
        if sentence2_ling is not None:
            sentence2_ling = sentence2_ling.view(bs, 1, -1)
            
        return sentence1_ling, sentence2_ling, cache

    def encode(self, 
               input_ids=None,
               attention_mask=None,
               sentence1_ling=None,
               sentence2_ling=None,
               sentence1_ling_embed=None,
               sentence2_ling_embed=None,
               inputs_embeds=None,
               ):
        if inputs_embeds is None:
            inputs_embeds = self.shared(input_ids)
        inputs_att_mask = attention_mask if attention_mask is not None else torch.ones_like(input_ids)
        bs = inputs_embeds.shape[0]
        
        if self.args.combine_method in ('input_concat', 'input_add'):
            sentence1_ling, sentence2_ling, cache = self._process_ling_embeddings(
                sentence1_ling, sentence2_ling,
                sentence1_ling_embed, sentence2_ling_embed, bs
            )
            
            if self.args.combine_method == 'input_concat':
                if self.args.ling2_only:
                    inputs_embeds = torch.cat([inputs_embeds, sentence2_ling], dim=1)
                    inputs_att_mask = torch.cat([inputs_att_mask,
                        torch.ones((bs, 1)).to(inputs_embeds.device)], dim=1)
                else:
                    inputs_embeds = torch.cat([inputs_embeds, sentence1_ling, sentence2_ling], dim=1)
                    inputs_att_mask = torch.cat([inputs_att_mask,
                        torch.ones((bs, 2)).to(inputs_embeds.device)], dim=1)
            elif self.args.combine_method == 'input_add':
                if self.args.ling2_only:
                    inputs_embeds = inputs_embeds + sentence2_ling
                else:
                    inputs_embeds = inputs_embeds + sentence1_ling + sentence2_ling
        else:
            cache = {}

        return self.encoder(inputs_embeds=inputs_embeds,
                attention_mask=inputs_att_mask), inputs_att_mask, cache

    def decode(self,
              sentence2_input_ids=None,
              sentence1_ling=None,
              sentence2_ling=None,
              encoder_outputs=None,
              encoder_attention_mask=None,
              decoder_inputs_embeds=None,
              decoder_attention_mask=None,
              generate=False,
              sentence1_ling_embed=None,
              sentence2_ling_embed=None,
              ling_embed=None,
              generate_with_grad=False,
              **kwargs
              ):
        bs = encoder_outputs[0].shape[0]
        cache = {}
        
        if decoder_inputs_embeds is None:
            if self.args.combine_method in ('embed_concat', 'decoder_concat', 'decoder_add', 
                                        'logits_add', 'decoder_add_first', 'layer_injection'):
                sentence1_ling, sentence2_ling, cache = self._process_ling_embeddings(
                    sentence1_ling, sentence2_ling,
                    sentence1_ling_embed, sentence2_ling_embed, bs
                )
                
                if (self.args.combine_method == 'decoder_add_first' or 
                    (self.args.combine_method == 'layer_injection' and 
                    self.args.injection_type == 'first')) and not generate:
                    sentence2_ling = torch.cat([sentence2_ling,
                        torch.repeat_interleave(torch.zeros_like(sentence2_ling), 
                        sentence2_input_ids.shape[1] - 1, dim=1)], dim = 1)
            else:
                sentence1_ling, sentence2_ling = None, None
        
        if generate:
            if self.args.combine_method == 'logits_add':
                logits_processor = LogitsProcessorList([LogitsAdd(sentence2_ling.view(bs, -1))])
            else:
                logits_processor = LogitsProcessorList()

            generate_fn = self.generate_with_grad if generate_with_grad else self.generate_original
            dec_output = generate_fn(
                    attention_mask=encoder_attention_mask,
                    encoder_outputs=encoder_outputs,
                    sentence1_ling=sentence1_ling,
                    sentence2_ling=sentence2_ling,
                    logits_processor = logits_processor,
                    # renormalize_logits=True,
                    # do_sample=True,
                    # top_p=0.8,
                    eos_token_id=self.eos_token_id,
                    # min_new_tokens=3,
                    # repetition_penalty=1.2,
                    max_length=self.args.max_length,
                    use_cache=True,
                    **kwargs
                    )
            return dec_output, cache

        if sentence2_input_ids is not None:
            labels = sentence2_input_ids.clone()
            labels[labels == self.pad_token_id] = -100
        else:
            labels = None

        if decoder_inputs_embeds is None:
            decoder_input_ids = self._shift_right(sentence2_input_ids)
            decoder_inputs_embeds = self.shared(decoder_input_ids)

            if self.args.combine_method == 'decoder_concat':
                if self.args.ling2_only:
                    decoder_inputs_embeds = torch.cat([sentence2_ling, decoder_inputs_embeds], dim=1)
                    decoder_attention_mask = torch.cat([torch.ones((bs, 1)).to(decoder_inputs_embeds.device), decoder_attention_mask], dim=1)
                    labels = torch.cat([torch.ones((bs, 1), dtype=torch.int64).to(decoder_inputs_embeds.device) * self.pad_token_id,
                        labels], dim=1)
                else:
                    decoder_inputs_embeds = torch.cat([sentence1_ling, sentence2_ling, decoder_inputs_embeds], dim=1)
                    decoder_attention_mask = torch.cat([torch.ones((bs, 2)).to(decoder_inputs_embeds.device), decoder_attention_mask], dim=1)
                    labels = torch.cat([torch.ones((bs, 2), dtype=torch.int64).to(decoder_inputs_embeds.device) * self.pad_token_id,
                        labels], dim=1)
            elif self.args.combine_method == 'decoder_add' or self.args.combine_method == 'decoder_add_first' :
                if self.args.ling2_only:
                    decoder_inputs_embeds = decoder_inputs_embeds + self.args.combine_weight * sentence2_ling
                else:
                    decoder_inputs_embeds = decoder_inputs_embeds + sentence1_ling + sentence2_ling

        if ling_embed is None:
            ling_embed = sentence2_ling

        dec_output = super().forward(
                decoder_inputs_embeds=decoder_inputs_embeds,
                decoder_attention_mask=decoder_attention_mask,
                encoder_outputs=encoder_outputs,
                attention_mask=encoder_attention_mask,
                labels=labels,
                ling_embed=ling_embed,
                **kwargs
                )
        if self.args.combine_method == 'logits_add':
            dec_output.logits = dec_output.logits + self.args.combine_weight * sentence2_ling
            vocab_size = dec_output.logits.size(-1)
            dec_output.loss = F.cross_entropy(dec_output.logits.view(-1, vocab_size), labels.view(-1))
        return dec_output, cache

    def generate(self, *args, **kwargs):
        return self.forward(*args, **kwargs, generate=True)


    def forward(self,
                input_ids=None,
                attention_mask=None,
                labels=None,
                decoder_attention_mask=None,
                decoder_inputs_embeds=None,
                sentence1_ling=None,
                sentence2_ling=None,
                sentence1_ling_embed=None,
                sentence2_ling_embed=None,
                inputs_embeds=None,
                generate=False,
                encoder_outputs=None,
                encoder_attention_mask=None,
                ling_embed=None,
                generate_with_grad=False,
                **kwargs):

        cache = {}
        if encoder_outputs is None:
            encoder_outputs, encoder_attention_mask, cache = self.encode(
                input_ids=input_ids,
                attention_mask=attention_mask,
                sentence1_ling=sentence1_ling,
                sentence2_ling=sentence2_ling,
                sentence1_ling_embed=sentence1_ling_embed,
                sentence2_ling_embed=sentence2_ling_embed,
                inputs_embeds=inputs_embeds
            )
        
        dec_output, cache2 = self.decode(
            sentence2_input_ids=labels,
            sentence1_ling=sentence1_ling,
            sentence2_ling=sentence2_ling,
            decoder_inputs_embeds=decoder_inputs_embeds,
            decoder_attention_mask=decoder_attention_mask,
            encoder_outputs=encoder_outputs,
            encoder_attention_mask=encoder_attention_mask,
            generate=generate,
            sentence1_ling_embed=sentence1_ling_embed,
            sentence2_ling_embed=sentence2_ling_embed,
            ling_embed=ling_embed,
            generate_with_grad=generate_with_grad,
            **kwargs
        )
        
        cache.update(cache2)
        if generate:
            return dec_output
        else:
            return MySeq2SeqLMOutput(
                loss=dec_output.loss,
                logits=dec_output.logits,
                past_key_values=dec_output.past_key_values,
                decoder_hidden_states=dec_output.decoder_hidden_states,
                decoder_attentions=dec_output.decoder_attentions,
                cross_attentions=dec_output.cross_attentions,
                encoder_last_hidden_state=encoder_outputs[0],
                encoder_hidden_states=getattr(encoder_outputs, 'hidden_states', None),
                encoder_attentions=getattr(encoder_outputs, 'attentions', None),
                cache=cache
                )

    def infer_with_cache(self, batch):
        dec_output, _, cache = self(batch, generate = True)
        return dec_output, cache

    def infer(self, batch):
        dec_output, _ = self.infer_with_cache(batch)
        return dec_output

    def infer_with_feedback_BP(self, ling_disc, sem_emb, batch, tokenizer, progress=None):
        from torch.autograd import grad
        interpolations = []
        def line_search():
            eta = 1e3
            sem_prob = 1
            patience = 4
            while patience > 0:
                param_ = param - eta * grads
                with torch.no_grad():
                    new_loss, pred = get_loss(param_)
                max_len = pred.shape[1]
                lens = torch.where(pred == self.eos_token_id, 1, 0).argmax(-1) + 1
                sem_batch = {**batch,
                             'sentence2_input_ids': pred,
                             'sentence2_attention_mask': sequence_mask(lens, max_len = max_len)
                             }
                sem_prob = torch.sigmoid(sem_emb.compare_sem(**sem_batch)).item()
                if new_loss < loss and sem_prob >= 0.90 and lens.item() > 1:
                    return param_
                eta *= 2.25
                patience -= 1
            return False

        def get_loss(param):
            if self.args.feedback_param == 'l':
                batch.update({'sentence2_ling_embed': param})
            elif self.args.feedback_param == 's':
                batch.update({'inputs_embeds': param})

            if self.args.feedback_param == 'logits':
                logits = param
                pred = param.argmax(-1)
            else:
                outputs = self.generate(**batch, output_scores=True, return_dict_in_generate=True, generate_with_grad=True)
                pred = outputs.sequences
                logits = torch.stack(outputs.scores, dim=1)
            out = ling_disc(logits = logits)
            probs = F.softmax(out, 1)
            if ling_disc.quant:
                loss = F.cross_entropy(out, batch['sentence2_discr'])
            else:
                loss = F.mse_loss(out, batch['sentence2_ling'])
            return loss, pred

        if self.args.feedback_param == 'l':
            ling2_embed = self.ling_embed(batch['sentence2_ling'])
            param = torch.nn.Parameter(ling2_embed, requires_grad = True)
        elif self.args.feedback_param == 's':
            inputs_embeds = self.shared(batch['input_ids'])
            param = torch.nn.Parameter(inputs_embeds, requires_grad = True)
        elif self.args.feedback_param == 'logits':
            logits = self.infer_with_cache(batch)[1]['scores']
            param = torch.nn.Parameter(logits, requires_grad = True)
        num_iter = 0
        while num_iter < 3:
            loss, pred = get_loss(param)
            pred_text = tokenizer.batch_decode(pred.cpu().numpy(),
                    skip_special_tokens=True)[0]
            interpolations.append(pred_text)
            if loss < 1:
                break
            self.zero_grad()
            grads = grad(loss, param)[0]
            param = line_search()
            if param is False:
                break
            num_iter += 1
            if progress is not None:
                progress((num_iter, None), unit='intermediate paraphrase generated.')
        return pred, [pred_text, interpolations]

def set_grad(module, state):
    if module is not None:
        for p in module.parameters():
            p.requires_grad = state

def set_grad_except(model, name, state):
    for n, p in model.named_parameters():
        if not name in n:
            p.requires_grad = state

class SemEmbPipeline():
    def __init__(self,
            ckpt = "/data/mohamed/checkpoints/ling_conversion_sem_emb_best.pt"):
        self.tokenizer = T5Tokenizer.from_pretrained("google/flan-t5-base")
        self.model = SemEmb(T5EncoderModel.from_pretrained('google/flan-t5-base'), self.tokenizer.get_vocab()['</s>'])
        state = torch.load(ckpt)
        self.model.load_state_dict(state['model'], strict=False)
        self.model.eval()
        self.model.cuda()

    def __call__(self, sentence1, sentence2):
        sentence1 = self.tokenizer(sentence1, return_attention_mask = True, return_tensors = 'pt')
        sentence2 = self.tokenizer(sentence2, return_attention_mask = True, return_tensors = 'pt')
        sem_logit = self.model(
                sentence1_input_ids = sentence1.input_ids.cuda(),
                sentence1_attention_mask = sentence1.attention_mask.cuda(),
                sentence2_input_ids = sentence2.input_ids.cuda(),
                sentence2_attention_mask = sentence2.attention_mask.cuda(),
                )
        sem_prob = torch.sigmoid(sem_logit).item()
        return sem_prob

class LingDiscPipeline():
    def __init__(self,
                 model_name="google/flan-t5-base",
                 disc_type='deberta',
                 disc_ckpt='mohdelgaar/lingconv-discriminator',
                 # disc_type='t5',
                 # disc_ckpt='/data/mohamed/checkpoints/ling_conversion_ling_disc.pt',
                 ):
        self.tokenizer = T5Tokenizer.from_pretrained(model_name)
        self.model = LingDisc(model_name, disc_type, disc_ckpt)
        self.model.eval()
        self.model.cuda()

    def __call__(self, sentence):
        inputs = self.tokenizer(sentence, return_tensors = 'pt')
        with torch.no_grad():
            ling_pred = self.model(input_ids=inputs.input_ids.cuda())
        return ling_pred

def get_model(args, tokenizer, device):
    if args.pretrain_disc or args.disc_loss or args.disc_ckpt:
        ling_disc = LingDisc(args.model_name, args.disc_type, args.disc_model_path).to(device)
    else:
        ling_disc = None

    if args.model_path:
        model = EncoderDecoderVAE.from_pretrained(args.model_path, args, tokenizer.pad_token_id, tokenizer.eos_token_id).to(device)
    else:
        model = EncoderDecoderVAE.from_pretrained(args.model_name, args, tokenizer.pad_token_id, tokenizer.eos_token_id).to(device)

    if args.sem_loss or args.model_path:
        if args.sem_loss_type == 'shared':
            sem_emb = model.encoder
        elif args.sem_loss_type == 'dedicated':
            sem_emb = SemEmb.from_pretrained(args.sem_model_path, tokenizer.eos_token_id).to(device)
        else:
            raise NotImplementedError('Semantic loss type')
    else:
        sem_emb = None

    return model, ling_disc, sem_emb

@dataclass
class MySeq2SeqLMOutput(Seq2SeqLMOutput):
    """
    Extends Seq2SeqLMOutput to include a cache dictionary for additional model outputs.
    
    Args:
        cache (`Dict[str, Any]`):
            Dictionary containing additional model outputs like linguistic features,
            VAE parameters, scores, etc.
    """
    cache: Optional[Dict[str, Any]] = None