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import logging
import math
import os
import random
from pathlib import Path
from random import randint

import numpy as np
import pandas as pd
import torch
from hydra._internal.utils import _locate
from hydra.utils import instantiate
from omegaconf import DictConfig, OmegaConf
from scipy.stats import entropy
from sklearn.model_selection import train_test_split
from sklearn.utils.class_weight import (compute_class_weight,
                                        compute_sample_weight)
from skorch.dataset import Dataset
from skorch.helper import predefined_split

from ..callbacks.metrics import get_callbacks
from ..score.score import infer_from_model
from .energy import *
from .file import load

logger = logging.getLogger(__name__)

def update_config_with_inference_params(config:DictConfig,mc_or_sc:str='sub_class',trained_on:str = 'id',path_to_models:str = 'models/tcga/') -> DictConfig:
    inference_config = config.copy()
    model = config['model_name']
    model = "-".join([word.capitalize() for word in model.split("-")])
    transforna_folder = "TransfoRNA_ID"
    if trained_on == "full":
        transforna_folder = "TransfoRNA_FULL"

    inference_config['inference_settings']["model_path"] = f'{path_to_models}{transforna_folder}/{mc_or_sc}/{model}/ckpt/model_params_tcga.pt'
    inference_config["inference"] = True
    inference_config["log_logits"] = False


    inference_config = DictConfig(inference_config)
    #train and model config should be fetched from teh inference model
    train_cfg_path = get_hp_setting(inference_config, "train_config")
    model_cfg_path = get_hp_setting(inference_config, "model_config")
    train_config = instantiate(train_cfg_path)
    model_config = instantiate(model_cfg_path)
    # prepare configs as structured dicts
    train_config = OmegaConf.structured(train_config)
    model_config = OmegaConf.structured(model_config)
    # update model config with the name of the model
    model_config["model_input"] = inference_config["model_name"]
    inference_config = OmegaConf.merge({"train_config": train_config, "model_config": model_config}, inference_config)
    return inference_config
    
def update_config_with_dataset_params_benchmark(train_data_df,configs):
    '''
    After tokenizing the dataset, some features in the config needs to be updated as they will be used 
    later by sub modules
    '''
    # set feedforward input dimension and vocab size
    #ss_tokens_id and tokens_id are the same
    configs["model_config"].second_input_token_len = train_data_df["second_input"].shape[1]
    configs["model_config"].tokens_len = train_data_df["tokens_id"].shape[1]
    #set batch per epoch (number of batches). This will be used later by both the criterion and the LR
    configs["train_config"].batch_per_epoch = train_data_df["tokens_id"].shape[0]/configs["train_config"].batch_size
    return 

def update_config_with_dataset_params_tcga(dataset_class,all_data_df,configs):
    configs["model_config"].ff_input_dim = all_data_df['second_input'].shape[1]
    configs["model_config"].vocab_size = len(dataset_class.seq_tokens_ids_dict.keys())
    configs["model_config"].second_input_vocab_size = len(dataset_class.second_input_tokens_ids_dict.keys())
    configs["model_config"].tokens_len = dataset_class.tokens_len
    configs["model_config"].second_input_token_len = dataset_class.tokens_len

    if configs["model_name"] == "seq-seq":
        configs["model_config"].tokens_len = math.ceil(dataset_class.tokens_len/2)
        configs["model_config"].second_input_token_len = math.ceil(dataset_class.tokens_len/2)
    

def update_dataclass_inference(cfg,dataset_class):
    seq_token_dict,ss_token_dict = get_tokenization_dicts(cfg)
    dataset_class.seq_tokens_ids_dict = seq_token_dict
    dataset_class.second_input_tokens_ids_dict = ss_token_dict
    dataset_class.tokens_len =cfg["model_config"].tokens_len
    dataset_class.max_length = get_hp_setting(cfg,'max_length')
    dataset_class.min_length = get_hp_setting(cfg,'min_length')
    return dataset_class

def set_seed_and_device(seed:int = 0,device_no:int=0):
    # set seed
    torch.backends.cudnn.deterministic = True
    random.seed(seed)
    torch.manual_seed(seed)
    torch.cuda.manual_seed(seed)
    np.random.seed(seed)
    torch.cuda.set_device(device_no)
    #CUDA_LAUNCH_BLOCKING=1 #for debugging

def sync_skorch_with_config(skorch_cfg: DictConfig,cfg:DictConfig):
    '''
    skorch config contains duplicate params to the train and model configs
    values of skorch config should be populated by those in the trian and 
    model config 
    '''

    #populate skorch params with params in train or model config if exists
    for key in skorch_cfg:
        if key in cfg["train_config"]:
            skorch_cfg[key] = cfg["train_config"][key]
        if key in cfg["model_config"]:
            skorch_cfg[key] = cfg["model_config"][key]

    return 

def instantiate_predictor(skorch_cfg: DictConfig,cfg:DictConfig,path: str=None):
    # convert config to omegaconf container
    predictor_config = OmegaConf.to_container(skorch_cfg)
    # Patch model device argument from the run config:
    if "device" in predictor_config:
        predictor_config["device"] = skorch_cfg["device"]
    for key, val in predictor_config.items():
        try:
            predictor_config[key] = _locate(val)
        except:
            continue
    #add callbacks to list of params    
    predictor_config["callbacks"] = get_callbacks(path,cfg)
    
    
    #save callbacks as instantiate changes the lrcallback from tuple to list,
    #then skorch's instantiate_callback throws an error
    callbacks_list = predictor_config["callbacks"]
    predictor_config["callbacks"] = "disable"

    #remove model from the cfg otherwise intantiate will throw an error as
    #models' scoring doesnt recieve input params
    predictor_config["module__main_config"] = \
        {key:cfg[key] for key in cfg if key not in ["model"]}
    #in case of tcga task, remove dataset at it its already instantiated        
    if 'dataset' in predictor_config['module__main_config']:
        del predictor_config['module__main_config']['dataset']

    #set train split to false in skorch model
    if not cfg['train_split']:
        predictor_config['train_split'] = False
    net = instantiate(predictor_config)
    #restore callback and instantiate it
    net.callbacks = callbacks_list
    net.task = cfg['task']
    net.initialize_callbacks()
    #prevents double initialization
    net.initialized_=True
    return net

def get_fused_seqs(seqs,num_sequences:int=1,max_len:int=30):
    '''
    fuse num_sequences sequences from seqs
    '''
    fused_seqs = []
    while len(fused_seqs) < num_sequences:
        #get two random sequences
        seq1 = random.choice(seqs)[:max_len]
        seq2 = random.choice(seqs)[:max_len]
        
        #select indeex to tuncate seq1 at between 60 to 70% of its length
        idx = random.randint(math.floor(len(seq1)*0.3),math.floor(len(seq1)*0.7))
        len_to_be_added_from_seq2 = len(seq1)-idx
        #truncate seq1 at idx
        seq1 = seq1[:idx]
        #get the rest from the beg of seq2
        seq2 = seq2[:len_to_be_added_from_seq2]
        #fuse seq1 and seq2
        fused_seq = seq1+seq2

        if fused_seq not in fused_seqs and fused_seq not in seqs:
            fused_seqs.append(fused_seq)

    return fused_seqs

def revert_seq_tokenization(tokenized_seqs,configs):
        window = configs["model_config"].window
        if configs["model_config"].tokenizer != "overlap":
            logger.error("Sequences are not reverse tokenized")
            return tokenized_seqs
        
        #currently only overlap tokenizer can be reverted
        seqs_concat = []
        for seq in tokenized_seqs.values:
            seqs_concat.append(''.join(seq[seq!='pad'])[::window]+seq[seq!='pad'][-1][window-1])
        
        return pd.DataFrame(seqs_concat,columns=["Sequences"])

def introduce_mismatches(seq, n_mismatches):
    seq = list(seq)
    for i in range(n_mismatches):
        rand_nt = randint(0,len(seq)-1)
        seq[rand_nt] = ['A','G','C','T'][randint(0,3)]
    return ''.join(seq)

def prepare_split(split_data_df,configs):
    '''
    This function returns tokens, token ids and labels for a given dataframes' split.
    It also moves tokens and labels to device
    '''

    model_input_cols = ['tokens_id','second_input','seqs_length']
    #token_ids
    split_data = torch.tensor(
        np.array(split_data_df[model_input_cols].values, dtype=float),
        dtype=torch.float,
    )
    split_weights = torch.tensor(compute_sample_weight('balanced',split_data_df['Labels']))
    split_data = torch.cat([split_data,split_weights[:,None]],dim=1)
    #tokens (chars)
    split_rna_seq = revert_seq_tokenization(split_data_df["tokens"],configs)

    #labels
    split_labels = torch.tensor(
        np.array(split_data_df["Labels"], dtype=int),
        dtype=torch.long,
    )
    return split_data, split_rna_seq, split_labels

def prepare_model_inference(cfg,path):
    # instantiate skorch model
    net = instantiate_predictor(cfg["model"]["skorch_model"], cfg,path)
    net.initialize()

    logger.info(f"Model loaded from {cfg['inference_settings']['model_path']}")
    net.load_params(f_params=f'{cfg["inference_settings"]["model_path"]}')
    net.labels_mapping_dict = dict(zip(cfg["model_config"].class_mappings,list(np.arange(cfg["model_config"].num_classes))))
    #save embeddings
    if cfg['log_embedds']:
        net.save_embedding=True
        net.gene_embedds = []
        net.second_input_embedds = []
    return net

def prepare_data_benchmark(tokenizer,test_ad, configs):
    """
    This function recieves anddata and prepares the anndata in a format suitable for training
    It also set default parameters in the config that cannot be known until preprocessing step
    is done.
    all_data_df is heirarchical pandas dataframe, so can be accessed  [AA,AT,..,AC ]
    """
    ###get tokenized train set
    train_data_df = tokenizer.get_tokenized_data()
    
    ### update config with data specific params
    update_config_with_dataset_params_benchmark(train_data_df,configs)

    ###tokenize test set
    test_data_df = tokenize_set(tokenizer,test_ad.var)

    ### get tokens(on device), seqs and labels(on device)
    train_data, train_rna_seq, train_labels =  prepare_split(train_data_df,configs)
    test_data, test_rna_seq, test_labels =  prepare_split(test_data_df,configs)

    class_weights = compute_class_weight(class_weight='balanced',classes=np.unique(train_labels.flatten()),y=train_labels.flatten().numpy())

    
    #omegaconfig does not support float64 as datatype so conversion to str is done 
    # and reconversion is done in criterion
    configs['model_config'].class_weights = [str(x) for x in list(class_weights)]

    if configs["train_split"]:
        #stratify train to get valid
        train_data,valid_data,train_labels,valid_labels = stratify(train_data,train_labels,configs["valid_size"])
        valid_ds = Dataset(valid_data,valid_labels)
        valid_ds=predefined_split(valid_ds)
    else:
        valid_ds = None

    all_data= {"train_data":train_data, 
               "valid_ds":valid_ds,
               "test_data":test_data, 
               "train_rna_seq":train_rna_seq,
               "test_rna_seq":test_rna_seq,
               "train_labels_numeric":train_labels,
               "test_labels_numeric":test_labels}

    if configs["task"] == "premirna":
        generalization_test_set = get_add_test_set(tokenizer,\
            dataset_path=configs["train_config"].datset_path_additional_testset)
    

    #get all vocab from both test and train set
    configs["model_config"].vocab_size = len(tokenizer.seq_tokens_ids_dict.keys())
    configs["model_config"].second_input_vocab_size = len(tokenizer.second_input_tokens_ids_dict.keys())
    configs["model_config"].tokens_mapping_dict = tokenizer.seq_tokens_ids_dict

    
    if configs["task"] == "premirna":
        generalization_test_data = []
        for test_df in generalization_test_set:
            #no need to read the labels as they are all one
            test_data_extra, _, _ =  prepare_split(test_df,configs)
            generalization_test_data.append(test_data_extra)
        all_data["additional_testset"] = generalization_test_data

    #get inference dataset
    # if do inference and inference datasert path exists
    get_inference_data(configs,tokenizer,all_data)

    return all_data

def prepare_inference_results_benchmarck(net,cfg,predicted_labels,logits,all_data):
    iterables = [["Sequences"], np.arange(1, dtype=int)]
    index = pd.MultiIndex.from_product(iterables, names=["type of data", "indices"])
    rna_seqs_df = pd.DataFrame(columns=index, data=np.vstack(all_data["infere_rna_seq"]["Sequences"].values))

    iterables = [["Logits"], list(net.labels_mapping_dict.keys())]
    index = pd.MultiIndex.from_product(iterables, names=["type of data", "indices"])
    logits_df = pd.DataFrame(columns=index, data=np.array(logits))

    #add Labels,entropy to df
    all_data["infere_rna_seq"]["Labels",'0'] = predicted_labels
    all_data["infere_rna_seq"].set_index("Sequences",inplace=True)

    #log logits if required
    if cfg["log_logits"]:
        seq_logits_df = logits_df.join(rna_seqs_df).set_index(("Sequences",0))
        all_data["infere_rna_seq"] = all_data["infere_rna_seq"].join(seq_logits_df)
    else:
        all_data["infere_rna_seq"].columns = ['Labels']

    return 

def prepare_inference_results_tcga(cfg,predicted_labels,logits,all_data,max_len):

    logits_clf = load('/'.join(cfg["inference_settings"]["model_path"].split('/')[:-2])\
        +'/analysis/logits_model_coef.yaml')
    threshold = round(logits_clf['Threshold'],2)


    iterables = [["Sequences"], np.arange(1, dtype=int)]
    index = pd.MultiIndex.from_product(iterables, names=["type of data", "indices"])
    rna_seqs_df = pd.DataFrame(columns=index, data=np.vstack(all_data["infere_rna_seq"]["Sequences"].values))

    iterables = [["Logits"], cfg['model_config'].class_mappings]
    index = pd.MultiIndex.from_product(iterables, names=["type of data", "indices"])
    logits_df = pd.DataFrame(columns=index, data=np.array(logits))

    #add Labels,novelty to df
    all_data["infere_rna_seq"]["Net-Label"] = predicted_labels
    all_data["infere_rna_seq"]["Is Familiar?"] = entropy(logits,axis=1) <= threshold

    all_data["infere_rna_seq"].set_index("Sequences",inplace=True)

    #log logits if required
    if cfg["log_logits"]:
        seq_logits_df = logits_df.join(rna_seqs_df).set_index(("Sequences",0))
        all_data["infere_rna_seq"] = all_data["infere_rna_seq"].join(seq_logits_df)
       
    all_data["infere_rna_seq"].index.name = f'Sequences, Max Length={max_len}'

    return 

def prepare_inference_data(cfg,infer_pd,dataset_class):
    #tokenize sequences
    infere_data_df = tokenize_set(dataset_class,infer_pd,inference=True)
    infere_data,infere_rna_seq,_ = prepare_split(infere_data_df,cfg)

    all_data = {}
    all_data["infere_data"] = infere_data
    all_data["infere_rna_seq"] = infere_rna_seq
    return all_data

def get_inference_data(configs,dataset_class,all_data):

    if configs["inference"]==True and configs["inference_settings"]["sequences_path"] is not None:
        inference_file = configs["inference_settings"]["sequences_path"]
        inference_path = Path(__file__).parent.parent.parent.absolute() / f"{inference_file}"

        infer_data = load(inference_path)
        #check if infer_data has secondary structure
        if "Secondary" not in infer_data:
            infer_data['Secondary'] = dataset_class.get_secondary_structure(infer_data["Sequences"])
        if "Labels" not in infer_data:
            infer_data["Labels"] = [0]*len(infer_data["Sequences"].values)
        
        dataset_class.seqs_dot_bracket_labels = infer_data


        dataset_class.min_length = 0
        dataset_class.limit_seqs_to_range(logger)
        infere_data_df = dataset_class.get_tokenized_data(inference=True)
        infere_data,infere_rna_seq,_ = prepare_split(infere_data_df,configs)

        all_data["infere_data"] = infere_data
        all_data["infere_rna_seq"] = infere_rna_seq

def get_add_test_set(dataset_class,dataset_path):
    all_added_test_set = []
    #get paths of all files in mirbase and mirgene
    paths_mirbase = dataset_path+"mirbase/"
    files_mirbase = os.listdir(paths_mirbase)
    for f_idx,_ in enumerate(files_mirbase):
        files_mirbase[f_idx] = paths_mirbase+files_mirbase[f_idx]
    
    paths_mirgene = dataset_path + "mirgene/"
    files_mirgene = os.listdir(paths_mirgene)
    for f_idx,_ in enumerate(files_mirgene):
        files_mirgene[f_idx] = paths_mirgene+files_mirgene[f_idx]
    files = files_mirbase+files_mirgene
    for f in files:
        #tokenize test set
        test_pd = load(f)
        test_pd = test_pd.drop(columns='Unnamed: 0')
        test_pd["Sequences"] = test_pd["Sequences"].astype(object)
        test_pd["Secondary"] = test_pd["Secondary"].astype(object)
        #convert dataframe to anndata
        test_pd["Labels"] = 1

        dataset_class.seqs_dot_bracket_labels = test_pd
        dataset_class.limit_seqs_to_range()
        all_added_test_set.append(dataset_class.get_tokenized_data())
    return all_added_test_set

def get_tokenization_dicts(cfg):
    tokenization_path='/'.join(cfg['inference_settings']['model_path'].split('/')[:-2])
    seq_token_dict = load(tokenization_path+'/seq_tokens_ids_dict')
    ss_token_dict = load(tokenization_path+'/second_input_tokens_ids_dict')
    return seq_token_dict,ss_token_dict

def get_hp_setting(cfg,hp_param):
    model_parent_path=Path('/'.join(cfg['inference_settings']['model_path'].split('/')[:-2]))
    hp_settings = load(model_parent_path/'meta/hp_settings.yaml')
    
    #hp_param could be in hp_settings .keyes or in a key of a key
    hp_val = hp_settings.get(hp_param)
    if not hp_val:
        for key in hp_settings.keys():
            try:
                hp_val = hp_settings[key].get(hp_param)
            except:
                pass
            if hp_val != None:
                break
    if hp_val == None:
        raise ValueError(f"hp_param {hp_param} not found in hp_settings")

    return hp_val

def get_model(cfg,path):

    cfg["model_config"] = get_hp_setting(cfg,'model_config')

    sync_skorch_with_config(cfg["model"]["skorch_model"],cfg)
    cfg['model_config']['model_input'] = cfg['model_name']
    net = prepare_model_inference(cfg,path)
    return cfg,net

def stratify(train_data,train_labels,valid_size):
    return train_test_split(train_data, train_labels,
                                                    stratify=train_labels, 
                                                    test_size=valid_size)
 
def tokenize_set(dataset_class,test_pd,inference:bool=False):
    #reassign the sequences to test
    dataset_class.seqs_dot_bracket_labels = test_pd
    #prevent sequences with len < min lenght from being deleted
    dataset_class.limit_seqs_to_range()
    return  dataset_class.get_tokenized_data(inference)

def add_original_seqs_to_predictions(short_to_long_df,pred_df):
    short_to_long_df.set_index('Sequences',inplace=True)
    pred_df = pd.merge(pred_df,short_to_long_df[['Trimmed','Original_Sequence']],right_index=True,left_index=True,how='left')    
    #filter repeated indexes
    pred_df = pred_df[~pred_df.index.duplicated(keep='first')]  
    return pred_df

def add_ss_and_labels(infer_data):
    #check if infer_data has secondary structure
    if "Secondary" not in infer_data:
        infer_data["Secondary"] = fold_sequences(infer_data["Sequences"].tolist())['structure_37'].values
    if "Labels" not in infer_data:
        infer_data["Labels"] = [0]*len(infer_data["Sequences"].values)
    return infer_data

def chunkstring_overlap(string, window):
        return (
            string[0 + i : window + i] for i in range(0, len(string) - window + 1, 1)
        )

def create_short_seqs_from_long(df,max_len):
    long_seqs = df['Sequences'][df['Sequences'].str.len()>max_len].values
    short_seqs_pd = df[df['Sequences'].str.len()<=max_len]
    feature_tokens_gen = list(
            chunkstring_overlap(feature, max_len)
            for feature in long_seqs
        )
    original_seqs = []
    shortened_seqs = []
    for i,feature_tokens in enumerate(feature_tokens_gen):
        curr_trimmed_seqs = [feature for feature in feature_tokens]
        shortened_seqs.extend(curr_trimmed_seqs)
        original_seqs.extend([long_seqs[i]]*len(curr_trimmed_seqs))
    short_to_long_dict = dict(zip(shortened_seqs,original_seqs))
    shortened_df = pd.DataFrame(data=shortened_seqs,columns=['Sequences'])
    df = shortened_df.append(short_seqs_pd).reset_index(drop=True)
    #add a column in df to indicate if the sequence was trimmed and another column to indicate the original sequence
    df['Trimmed'] = False
    df.loc[shortened_df.index,'Trimmed'] = True
    df['Original_Sequence'] = df['Sequences']
    df.loc[shortened_df.index,'Original_Sequence'] = df.loc[shortened_df.index,'Sequences'].map(short_to_long_dict)
    return df

def infer_from_pd(cfg,net,infer_pd,DataClass,attention_flag:bool=False):
    try:
        max_len = net.module_.transformer_layers.pos_encoder.pe.shape[1]+1
    except:
        max_len = 30#for baseline models

    if cfg['model_name'] == 'seq-seq':
        max_len = max_len*2 - 1

    if len(infer_pd['Sequences'][infer_pd['Sequences'].str.len()>max_len].values)>0:
        infer_pd = create_short_seqs_from_long(infer_pd,max_len)
    infer_pd = add_ss_and_labels(infer_pd)
    if cfg['model_name'] == 'seq-seq':
        cfg['model_config']['tokens_len'] *=2 
        cfg['model_config']['second_input_token_len'] *=2 
        
        
    #create dataclass to tokenize infer sequences
    dataset_class = DataClass(infer_pd,cfg)
    #update datasetclass with tokenization dicts and tokens_len
    dataset_class = update_dataclass_inference(cfg,dataset_class)
    #tokenize sequences
    all_data = prepare_inference_data(cfg,infer_pd,dataset_class)
    
    #inference on custom data
    predicted_labels,logits,attn_scores_first_list,attn_scores_second_list = infer_from_model(net,all_data["infere_data"])  
    if attention_flag:
        #in case of baseline or seq models
        if not attn_scores_second_list:
            attn_scores_second_list = attn_scores_first_list
            
        attn_scores_first = np.array(attn_scores_first_list)
        seq_lengths = all_data['infere_rna_seq']['Sequences'].str.len().values
        #get attention scores for each sequence
        attn_scores_list = [attn_scores_first[i,:seq_lengths[i],:seq_lengths[i]].flatten().tolist() for i in range(len(seq_lengths))]
        attn_scores_first_df = pd.DataFrame(data = {'attention_first':attn_scores_list})
        attn_scores_first_df.index = all_data['infere_rna_seq']['Sequences'].values

        attn_scores_second = np.array(attn_scores_second_list)
        attn_scores_list = [attn_scores_second[i,:seq_lengths[i],:seq_lengths[i]].flatten().tolist() for i in range(len(seq_lengths))]
        attn_scores_second_df = pd.DataFrame(data = {'attention_second':attn_scores_list})
        attn_scores_second_df.index = all_data['infere_rna_seq']['Sequences'].values

        attn_scores_df = attn_scores_first_df.join(attn_scores_second_df)
        attn_scores_df['Secondary'] = infer_pd["Secondary"].values
    else:
        attn_scores_df = None
    
    gene_embedds_df = None
    #net.gene_embedds is a list of tensors. convert them to a numpy array
    if cfg['log_embedds']:
        gene_embedds = np.vstack(net.gene_embedds)
        if cfg['model_name'] not in ['baseline']:
            second_input_embedds = np.vstack(net.second_input_embedds)
            gene_embedds = np.concatenate((gene_embedds,second_input_embedds),axis=1)
        gene_embedds_df = pd.DataFrame(data=gene_embedds)
        gene_embedds_df.index = all_data['infere_rna_seq']['Sequences'].values
        gene_embedds_df.columns = ['gene_embedds_'+str(i) for i in range(gene_embedds_df.shape[1])]

    return predicted_labels,logits,gene_embedds_df,attn_scores_df,all_data,max_len,net,infer_pd

def log_embedds(cfg,net,seqs_df):
    gene_embedds = np.vstack(net.gene_embedds)
    if not cfg['model_name'] in ['seq','baseline']:
        second_input_embedds = np.vstack(net.second_input_embedds)
        gene_embedds = np.concatenate((gene_embedds,second_input_embedds),axis=1)
    
    return seqs_df.join(pd.DataFrame(data=gene_embedds))