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language: en tags:

  • seq2seq
  • t5
  • text-generation
  • recipe-generation pipeline_tag: text2text-generation

Team Members

  • Prajay (JustAPR)
  • Ajitesh
  • Umesh
  • Avinash
  • Vikas
  • Varshith

Dataset

RecipeNLG: A Cooking Recipes Dataset for Semi-Structured Text Generation. This dataset contains 2,231,142 cooking recipes (>2 millions) with size of 2.14 GB. It's processed in more careful way.

Example

{
  "NER": [
    "oyster crackers",
    "salad dressing",
    "lemon pepper",
    "dill weed",
    "garlic powder",
    "salad oil"
  ],
  "directions": [
    "Combine salad dressing mix and oil.",
    "Add dill weed, garlic powder and lemon pepper.",
    "Pour over crackers; stir to coat.",
    "Place in warm oven.",
    "Use very low temperature for 15 to 20 minutes."
  ],
  "ingredients": [
    "12 to 16 oz. plain oyster crackers",
    "1 pkg. Hidden Valley Ranch salad dressing mix",
    "1/4 tsp. lemon pepper",
    "1/2 to 1 tsp. dill weed",
    "1/4 tsp. garlic powder",
    "3/4 to 1 c. salad oil"
  ],
  "link": "www.cookbooks.com/Recipe-Details.aspx?id=648947",
  "source": "Gathered",
  "title": "Hidden Valley Ranch Oyster Crackers"
}

How To Use

# Installing requirements
pip install transformers
from transformers import FlaxAutoModelForSeq2SeqLM
from transformers import AutoTokenizer

MODEL_NAME_OR_PATH = "JustAPR/resGen"
tokenizer = AutoTokenizer.from_pretrained(MODEL_NAME_OR_PATH, use_fast=True)
model = FlaxAutoModelForSeq2SeqLM.from_pretrained(MODEL_NAME_OR_PATH)

prefix = "items: "
# generation_kwargs = {
#     "max_length": 512,
#     "min_length": 64,
#     "no_repeat_ngram_size": 3,
#     "early_stopping": True,
#     "num_beams": 5,
#     "length_penalty": 1.5,
# }
generation_kwargs = {
    "max_length": 512,
    "min_length": 64,
    "no_repeat_ngram_size": 3,
    "do_sample": True,
    "top_k": 60,
    "top_p": 0.95
}


special_tokens = tokenizer.all_special_tokens
tokens_map = {
    "<sep>": "--",
    "<section>": "\n"
}
def skip_special_tokens(text, special_tokens):
    for token in special_tokens:
        text = text.replace(token, "")

    return text

def target_postprocessing(texts, special_tokens):
    if not isinstance(texts, list):
        texts = [texts]
    
    new_texts = []
    for text in texts:
        text = skip_special_tokens(text, special_tokens)

        for k, v in tokens_map.items():
            text = text.replace(k, v)

        new_texts.append(text)

    return new_texts

def generation_function(texts):
    _inputs = texts if isinstance(texts, list) else [texts]
    inputs = [prefix + inp for inp in _inputs]
    inputs = tokenizer(
        inputs, 
        max_length=256, 
        padding="max_length", 
        truncation=True, 
        return_tensors="jax"
    )

    input_ids = inputs.input_ids
    attention_mask = inputs.attention_mask

    output_ids = model.generate(
        input_ids=input_ids, 
        attention_mask=attention_mask,
        **generation_kwargs
    )
    generated = output_ids.sequences
    generated_recipe = target_postprocessing(
        tokenizer.batch_decode(generated, skip_special_tokens=False),
        special_tokens
    )
    return generated_recipe
items = []
a = input()
for x in range(3):#to generate 3 recipies on given ingridents
    items.append(a)

generated = generation_function(items)
for text in generated:
    sections = text.split("\n")
    for section in sections:
        section = section.strip()
        if section.startswith("title:"):
            section = section.replace("title:", "")
            headline = "TITLE"
        elif section.startswith("ingredients:"):
            section = section.replace("ingredients:", "")
            headline = "INGREDIENTS"
        elif section.startswith("directions:"):
            section = section.replace("directions:", "")
            headline = "DIRECTIONS"
        
        if headline == "TITLE":
            print(f"[{headline}]: {section.strip().capitalize()}")
        else:
            section_info = [f"  - {i+1}: {info.strip().capitalize()}" for i, info in enumerate(section.split("--"))]
            print(f"[{headline}]:")
            print("\n".join(section_info))

    print("-" * 130)

Output: ```text [TITLE]: Macaroni and corn [INGREDIENTS]: - 1: 2 c. macaroni - 2: 2 tbsp. butter - 3: 1 tsp. salt - 4: 4 slices bacon - 5: 2 c. milk - 6: 2 tbsp. flour - 7: 1/4 tsp. pepper - 8: 1 can cream corn [DIRECTIONS]: - 1: Cook macaroni in boiling salted water until tender. - 2: Drain. - 3: Melt butter in saucepan. - 4: Blend in flour, salt and pepper. - 5: Add milk all at once. - 6: Cook and stir until thickened and bubbly. - 7: Stir in corn and bacon. - 8: Pour over macaroni and mix well.

[TITLE]: Grilled provolone and bacon sandwich [INGREDIENTS]: - 1: 2 slices provolone cheese - 2: 2 slices bacon - 3: 2 slices sourdough bread - 4: 2 slices pickled ginger [DIRECTIONS]: - 1: Place a slice of provolone cheese on one slice of bread. - 2: Top with a slice of bacon. - 3: Top with a slice of pickled ginger. - 4: Top with the other slice of bread. - 5: Heat a skillet over medium heat. - 6: Place the sandwich in the skillet and cook until the cheese is melted and the bread is golden brown.

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