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I am trying to implement a simple pseudo labelling function based of Dong-Hyun Lee paper, and I won't get the accuracy I get, was wondering if someone can have a look and tell me what I am doing wrong in my function:

def alpha_weight(step):
    if step < T1:
      return 0.0
    elif step > T2:
      return af
    else:
      return ((step-T1) / (T2-T1))*af

classifier_optimizer = tf.keras.optimizers.Adam()

def train_step(images, labels, eval_images, eval_labels, psuedo_images, pesudo_labels, step):

    with tf.GradientTape() as gen_tape:
        generated_images = classifier(images, training=True)
        generated_pesudo_images = classifier(psuedo_images, training=False)

        loss_fn = tf.keras.losses.SparseCategoricalCrossentropy(from_logits=True)

        main_loss = loss_fn(labels, generated_images)
        psuedo_loss = alpha_weight(step) * loss_fn( pesudo_labels, generated_pesudo_images )
        loss = main_loss + psuedo_loss

    gradients_of_classifier = gen_tape.gradient(loss, classifier.trainable_variables)

    classifier_optimizer.apply_gradients(zip(gradients_of_classifier, classifier.trainable_variables))

    acc = tf.reduce_mean(tf.metrics.sparse_categorical_accuracy(tf.constant(eval_labels), classifier(eval_images))).numpy()

    avg_main_loss.update_state(loss)

    main_loss = avg_main_loss.result()

    print("Step {} :::::: Loss: {} accuracy: {} alpha value {} ".format( step, main_loss, acc, alpha_weight(step)) )