Dataset Viewer
Duplicate
The dataset viewer is not available for this split.
Job manager crashed while running this job (missing heartbeats).
Error code:   JobManagerCrashedError

Need help to make the dataset viewer work? Make sure to review how to configure the dataset viewer, and open a discussion for direct support.

YAML Metadata Warning: empty or missing yaml metadata in repo card (https://huggingface.co/docs/hub/datasets-cards)

Recipe1M Processed Dataset Collection

Abstract

This repository provides two complementary processed datasets derived from the Recipe1M dataset:

  1. Instruction-Ingredient Alignment Dataset (processed_instructions.json): Fine-grained instruction-ingredient alignment at the fragment level with multi-granularity ingredient representations
  2. Multimodal Recipe Dataset (train_data.json, val_data.json, test_data.json): Recipe data with ingredient-image mappings and recipe images for multimodal learning

Together, these datasets enable comprehensive recipe understanding tasks including ingredient recognition, instruction generation, multimodal learning, and cooking process modeling.



Dataset Overview

Dataset Files Key Features Primary Use Cases
Instruction-Ingredient Alignment processed_instructions.json Fragment-level alignment, multi-granularity ingredients Instruction parsing, ingredient extraction, process understanding
Multimodal Recipe Data train_data.json, val_data.json, test_data.json Image mappings, standardized ingredients, train/val/test splits Multimodal learning, image-based retrieval, model training

Dataset 1: Instruction-Ingredient Alignment

Overview

Fine-grained instruction-ingredient alignment where each cooking instruction is fragmented at ingredient boundaries and aligned with corresponding ingredient information at three levels of granularity.

File Structure

processed_instructions.json

  • Format: JSON dictionary with recipe IDs as keys
  • Recipe ID Format: 10-character hexadecimal (e.g., e40cfb8510)

Data Schema

{
  "id": "recipe_id",
  "instructions": [
    {
      "instruction": "cooking step text fragment",
      "raw_ing": "original ingredient with quantity",
      "final_ing": "standardized ingredient name",
      "no_with_ing": "ingredient without modifiers"
    }
  ]
}

Field Descriptions

Top-Level Fields

Field Type Description Example
id String Unique recipe identifier "e40cfb8510"
instructions List Cooking steps with ingredient alignment See below

Instruction Object Fields

Field Type Description Example
instruction String Instruction text fragment "stir together flour,"
raw_ing String/null Original ingredient with quantities "2 c. flour"
final_ing String/null Standardized ingredient name "flour"
no_with_ing String/null Ingredient without modifiers "flour"

Note: null values indicate instruction steps without specific ingredient references (e.g., cooking techniques, equipment preparation).

Example Data

{
  "id": "e40cfb8510",
  "instructions": [
    {
      "instruction": "stir together flour,",
      "raw_ing": "2 c. flour",
      "final_ing": "flour",
      "no_with_ing": "flour"
    },
    {
      "instruction": " soda ",
      "raw_ing": "1 teaspoon baking soda",
      "final_ing": "baking soda",
      "no_with_ing": "baking soda"
    },
    {
      "instruction": "and salt.",
      "raw_ing": "1/2 teaspoon salt",
      "final_ing": "salt",
      "no_with_ing": "salt"
    },
    {
      "instruction": "stir into a very stiff batter.",
      "raw_ing": null,
      "final_ing": null,
      "no_with_ing": null
    },
    {
      "instruction": "bake 1 hour at 325 degrees.",
      "raw_ing": null,
      "final_ing": null,
      "no_with_ing": null
    }
  ]
}

Key Features

  • Instruction Fragmentation: Instructions split at ingredient boundaries while maintaining grammatical structure
  • Multi-Granularity: Three levels of ingredient representation (raw, final, no modifiers)
  • Complete Process: Includes all steps, both ingredient-specific and technique-only
  • Ingredient Repetition: Tracks multiple uses of the same ingredient throughout the recipe

Dataset 2: Multimodal Recipe Data

Overview

Structured recipe data with ingredient-image mappings, standardized ingredient names, and associated recipe images. Split into training, validation, and test sets for machine learning workflows.

File Structure

File Purpose Recipe IDs Example
train_data.json Training set df203c7b00, da3722f92a, ...
val_data.json Validation set da3722f92a, ...
test_data.json Test set da36dcb1f9, ...

Data Schema

{
  "recipe_id": {
    "ing_img_ids": [image_id or null, ...],
    "ing_text_18k": ["standardized_name" or null, ...],
    "ing_texts": ["original ingredient text" or null, ...],
    "instructions": ["step 1", "step 2", ...],
    "recipe_img_ids": ["image1.jpg", "image2.jpg", ...]
  }
}

Field Descriptions

Field Type Description Example
ing_img_ids List[int/null] Image IDs from ingredient database [17263, 8861, None, ...]
ing_text_18k List[str/null] Standardized names (18K vocabulary) ['butter', 'olive oil', None, ...]
ing_texts List[str/null] Original text with quantities ['1 teaspoon butter', '2 teaspoons olive oil', ...]
instructions List[str] Cooking steps in order ['melt butter', 'add garlic', ...]
recipe_img_ids List[str] Recipe image filenames ['50cbeb2173.jpg', '95f9aa7309.jpg', ...]

Example Data

{
  "da3722f92a": {
    "ing_img_ids": [17263, 8861, 11498, 3496, None, 578],
    "ing_text_18k": ["butter", "olive oil", "garlic cloves", "shrimp", None, "lemon"],
    "ing_texts": [
      "1 teaspoon butter",
      "2 teaspoons olive oil",
      "3 garlic cloves, minced or pressed",
      "1 lb california shrimp or 1 lb spiny lobster",
      None,
      "1 lemon, juice of"
    ],
    "instructions": [
      "melt butter and oil together in saute pan.",
      "add garlic, saute for one minute, and add shrimp.",
      "saute for one minute, add wine, lemon juice, salt, and pepper.",
      "saute quickly while sauce reduces and shrimp turns pink.",
      "do not overcook.",
      "sprinkle with parsley before serving."
    ],
    "recipe_img_ids": [
      "50cbeb2173.jpg",
      "95f9aa7309.jpg",
      "b81c7c2b13.jpg",
      "977929a1ff.jpg"
    ]
  }
}

Key Features

  • Multimodal Alignment: Links text ingredients to visual representations
  • Standardization: 18K ingredient vocabulary for consistency
  • Image References: Both ingredient images and recipe images
  • Train/Val/Test Split: Ready for supervised learning workflows
  • Null Handling: Graceful handling of missing image mappings


Related Resources

These processed datasets build upon:

  • Recipe1M Dataset: Original source of recipe data and images
  • Ingredient Image Database: Referenced by ing_img_ids
  • Recipe Image Database: Referenced by recipe_img_ids
  • 18K Ingredient Vocabulary: Used for standardization

License

Please refer to the original Recipe1M dataset license and terms of use. These processed versions maintain the same licensing requirements as the source dataset.


Citation

If you use these datasets, please cite the original Recipe1M work:

@inproceedings{salvador2017learning,
  title={Learning Cross-Modal Embeddings for Cooking Recipes and Food Images},
  author={Salvador, Amaia and Hynes, Nicholas and Aytar, Yusuf and Marin, Javier and 
          Ofli, Ferda and Weber, Ingmar and Torralba, Antonio},
  booktitle={Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition},
  year={2017}
}

Acknowledgments

These datasets are derived from the Recipe1M dataset. We acknowledge the original authors for their valuable contribution to the research community. The processing includes instruction-ingredient alignment and multimodal mappings to enable new research directions.


Appendix: Quick Reference

Dataset 1: Instruction-Ingredient Alignment

  • Files: processed_instructions.json
  • Key Features: Fragment-level alignment, 3 granularity levels
  • Best For: Instruction parsing, ingredient extraction

Dataset 2: Multimodal Recipe Data

  • Files: train_data.json, val_data.json, test_data.json
  • Key Features: Image mappings, train/val/test split
  • Best For: Multimodal learning, ingredient recognition

Common Recipe ID Format

  • Format: 10-character hexadecimal
  • Example: da3722f92a, e40cfb8510
  • Usage: Links recipes across both datasets
Downloads last month
40