--- license: cc-by-4.0 configs: - config_name: default data_files: sustainability_criteria.jsonl task_categories: - text-classification - text-retrieval language: - en - de tags: - sustainability - procurement - criteria - german pretty_name: Sustainability Procurement Criteria --- # Sustainability Procurement Criteria This dataset contains sustainability procurement criteria organized by groups of goods and services (GGS) (German: Waren- und Dienstleistungsgruppen; WDG). It originates from validated Excel files and has been converted to JSONL format for easy consumption. ## Dataset Structure ### Format - **Format**: JSONL (JSON Lines) - one JSON object per line - **Encoding**: UTF-8 - **Compression**: None ### Files The dataset is provided as a single merged JSONL file (`sustainability_criteria.jsonl`) containing criteria from all groups of goods and services (WDG; Waren- und Dienstgruppen). Each record includes WDG identifiers (`WDG_ID`, `wdg_name_en`, `wdg_name_de`) to distinguish criteria by category. ### Fields Each JSONL line contains the following fields: | Field | Type | Description | |-------|------|-------------| | `WDG_ID` | string | Waren- und Dienstleistungsgruppe identifier | | `wdg_name_en` | string | Waren- und Dienstleistungsgruppe (Goods and Services Group) - English name | | `wdg_name_de` | string | Waren- und Dienstleistungsgruppe (Goods and Services Group) - German name | | `source_file` | string | Original Excel filename (e.g., Food_V1.0.xlsx) | | `Handlungsfeld-ID` | string | Action field identifier (WDG-specific) | | `Handlungsfeld` | string | Action field name (German) (WDG-specific) | | `Kriterium-ID` | string | Criterion identifier (WDG-specific) | | `Kategorie Kriterium` | string | Criterion category (EK, TS, ZK, TB) | | `Ausschreibungskriterium` | string | Procurement criterion description | | `Ambitionsniveau: Basis` | string | Basic ambition level | | `Ambitionsniveau: Gute Praxis` | string | Good practice ambition level | | `Ambitionsniveau: Vorbild` | string | Best practice ambition level | | `Nachweise` | string | Evidence/documentation requirements | | `Nachhaltigkeitsdimensionen` | string | Sustainability dimensions | | `Quelle` | string | Source reference identifiers | | `Kommentar` | list | Additional comments and notes | ### Notes - **Empty fields**: Fields with no value are represented as empty strings - **Forward-filled hierarchical data**: `Handlungsfeld-ID` and `Handlungsfeld` values are propagated downward within each file - **Source references**: Use the `Quelle` field to look up source details in the corresponding `*_metadata.json` file ### WDG-Specific Fields Fields marked as **(WDG-specific)** are unique to each Waren- und Dienstleistungsgruppe (goods and services group). These fields may vary across different WDGs. All other fields are standardized across all WDGs. ## Data Description ### Criterion Categories - **EK** (Eignungskriterium): Selection criterion - **TS** (Technische Spezifikation): Technical specification - **ZK** (Zuschlagskriterium): Award criterion - **TB** (Zwingende Teilnahmebedingung): Mandatory participation condition ### Sustainability Dimensions - **ökologisch**: Environmental/Ecological - **sozial**: Social - **ökonomisch**: Economic ### Ambition Levels - **Basis**: Basic level - **Gute Praxis**: Good practice - **Vorbild**: Best practice / exemplary ## Usage Examples ### Load with Hugging Face Datasets Library #### Basic Loading ```python from datasets import load_dataset # Load the entire dataset catalog = load_dataset("IntelliProcure/sustainability_criteria") # Access the train split criteria = catalog['train'] print(f"Total criteria: {len(criteria)}") print(f"Columns: {criteria.column_names}") ``` #### Working with the Dataset ```python from datasets import load_dataset catalog = load_dataset("IntelliProcure/sustainability_criteria") criteria = catalog['train'] # Convert to pandas DataFrame df = criteria.to_pandas() # Access specific records first_record = criteria[0] print(first_record['Ausschreibungskriterium']) # Get multiple records first_ten = criteria[:10] # Filter criteria by category selection_criteria = criteria.filter(lambda x: x['Kategorie Kriterium'] == 'EK') # Filter by sustainability dimension ecological = criteria.filter( lambda x: 'ökologisch' in x['Nachhaltigkeitsdimensionen'] ) # Get records from specific action field food_criteria = criteria.filter(lambda x: x['Handlungsfeld'] == 'Food') ``` #### Advanced Filtering and Analysis ```python from datasets import load_dataset import pandas as pd catalog = load_dataset("IntelliProcure/sustainability_criteria") df = catalog['train'].to_pandas() # Find all criteria by multiple dimensions multi_dim = df[ df['Nachhaltigkeitsdimensionen'].str.contains('ökologisch|sozial', na=False) ] # Group by action field by_field = df.groupby('Handlungsfeld').size() print(by_field) # Get statistics on ambition levels print(df[['Ambitionsniveau: Basis', 'Ambitionsniveau: Gute Praxis']].notna().sum()) # Find criteria with all three ambition levels complete = df[ (df['Ambitionsniveau: Basis'] != '') & (df['Ambitionsniveau: Gute Praxis'] != '') & (df['Ambitionsniveau: Vorbild'] != '') ] ``` #### Stream Large Datasets ```python from datasets import load_dataset # Stream data without downloading entirely (useful for large datasets) catalog = load_dataset("IntelliProcure/sustainability_criteria", streaming=True) criteria_stream = catalog['train'] # Iterate through records for i, record in enumerate(criteria_stream): if i >= 100: # Process first 100 break print(record['Kriterium-ID'], record['Ausschreibungskriterium']) ``` #### Access Dataset Information ```python from datasets import load_dataset catalog = load_dataset("IntelliProcure/sustainability_criteria") criteria = catalog['train'] # Dataset info print(criteria.info) print(criteria.features) print(f"Number of records: {len(criteria)}") # Column names and types print(criteria.column_names) for feature_name, feature_type in criteria.features.items(): print(f" {feature_name}: {feature_type}") # Get unique values print(f"Unique action fields: {criteria.unique('Handlungsfeld')}") print(f"Unique categories: {criteria.unique('Kategorie Kriterium')}") ``` ### Load with Pandas ```python import pandas as pd # Load the merged JSONL file df = pd.read_json('sustainability_criteria.jsonl', lines=True) # Filter by WDG food_criteria = df[df['wdg_name_en'] == 'Food'] # Filter by category procurement_criteria = df[df['Kategorie Kriterium'] == 'EK'] # Filter by sustainability dimension ecological = df[df['Nachhaltigkeitsdimensionen'].str.contains('ökologisch', na=False)] ``` ### Load with Json Module ```python import json with open('sustainability_criteria.jsonl', 'r', encoding='utf-8') as f: for line in f: record = json.loads(line) print(record['Ausschreibungskriterium']) ``` ### Resolve Source References ```python import json # Load metadata to resolve source references with open('sustainability_criteria_metadata.json', 'r', encoding='utf-8') as f: metadata = json.load(f) sources = metadata['sources'] # Example: resolve a source reference quelle_value = "Q-1, Q-2" source_ids = [s.strip() for s in quelle_value.split(',')] for sid in source_ids: if sid in sources: print(f"{sid}: {sources[sid]}") ``` #### Filter by WDG ```python from datasets import load_dataset catalog = load_dataset("IntelliProcure/sustainability_criteria") criteria = catalog['train'] # Filter by English WDG name food_criteria = criteria.filter(lambda x: x['wdg_name_en'] == 'Food') # Filter by German WDG name food_criteria_de = criteria.filter(lambda x: x['wdg_name_de'] == 'Lebensmittel') # Filter by source file food_v1 = criteria.filter(lambda x: x['source_file'] == 'Food_V1.0') # Get unique WDGs df = criteria.to_pandas() print(df['wdg_name_en'].unique()) print(df['wdg_name_de'].unique()) ``` ## Sources Each criterion includes references to source documents. Source details are provided in the metadata files. Common sources include: - EU GPP (Green Public Procurement) criteria - German environmental labels and standards - Industry-specific guidelines - Sustainability certifications ## License CC-BY-4.0 ## Citation If you use this dataset, please cite: ```bibtex @dataset{sustainability_criteria, title = {Sustainability Procurement Criteria}, year = {2025}, url = {https://huggingface.co/datasets/IntelliProcure/sustainability_criteria} } ``` --- **Last Updated**: 2026-02-18 **Dataset Version**: 1.0 **Format Version**: 1.0