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USACO Dataset
This dataset contains problems from the USA Computing Olympiad (USACO) organized by seasons. Each season runs from November of the previous year → October of the current year, plus the US Open. One JSONL file per season is provided (usaco_<season>.jsonl) for efficient storage and loading.
Dataset Statistics
- Total Problems: 680
- Total Seasons: 14
- Total Sample Cases: 854
- Total Test Cases: 9,055
Data Structure
Each record contains:
id: Unique stable identifier for the problemcontest_name: USACO contest name (e.g., "USACO_24jan")difficulty_group: Problem difficulty level (bronze, silver, gold, platinum)problem_name: Name of the specific problemproblem_statement: Problem description in Markdown formatsample_data: Dictionary withinputsandoutputslists for sample test casestest_data: Dictionary withinputsandoutputslists for test casesnum_sample_cases: Number of sample test casesnum_test_cases: Number of test casesseason: Season year (e.g., "2024")checker: Always null (USACO uses standard output checking)checker_interface: Always null (USACO uses standard output checking)
Seasons Available
| Season | Problems | File |
|---|---|---|
| 2025 | 48 | usaco_2025.jsonl |
| 2024 | 48 | usaco_2024.jsonl |
| 2023 | 48 | usaco_2023.jsonl |
| 2022 | 48 | usaco_2022.jsonl |
| 2021 | 48 | usaco_2021.jsonl |
| 2020 | 48 | usaco_2020.jsonl |
| 2019 | 47 | usaco_2019.jsonl |
| 2018 | 47 | usaco_2018.jsonl |
| 2017 | 47 | usaco_2017.jsonl |
| 2016 | 48 | usaco_2016.jsonl |
| 2015 | 38 | usaco_2015.jsonl |
| 2014 | 54 | usaco_2014.jsonl |
| 2013 | 55 | usaco_2013.jsonl |
| 2012 | 56 | usaco_2012.jsonl |
Difficulty Distribution
| Difficulty | Problems |
|---|---|
| Bronze | 192 |
| Gold | 184 |
| Platinum | 118 |
| Silver | 186 |
Loading Examples
from datasets import load_dataset
import json
# Load all seasons (merged dataset)
all_ds = load_dataset("vectorzhou/USACO", split="train")
# Load a specific season using data_files
s2025 = load_dataset(
"vectorzhou/USACO",
data_files="usaco_2025.jsonl",
split="train",
)
# Or load directly as JSONL
with open("usaco_2025.jsonl", 'r') as f:
problems_2025 = [json.loads(line) for line in f]
# Filter by difficulty across all seasons
bronze_problems = all_ds.filter(lambda x: x['difficulty_group'] == 'bronze')
# Filter by season (when loading all data)
season_2024 = all_ds.filter(lambda x: x['season'] == '2024')
# Access a specific problem
problem = all_ds[0]
print(f"Contest: {problem['contest_name']}")
print(f"Difficulty: {problem['difficulty_group']}")
print(f"Problem: {problem['problem_name']}")
print(f"Season: {problem['season']}")
print(f"Sample inputs: {len(problem['sample_data']['inputs'])}")
print(f"Has custom checker: {problem['checker'] is not None}") # Always False for USACO
Data Organization
The dataset follows USACO's seasonal structure:
- November-December: Counted towards the following year's season
- January-October + US Open: Counted towards the current year's season
- Each season typically contains 3-4 contests with Bronze, Silver, Gold, and Platinum divisions
Format Benefits
- JSONL format for easy streaming and processing
- Season-based files for selective loading of specific time periods
- Consistent schema across all seasons
- Efficient storage with one record per line
Data Source
The data was crawled from the USACO platform and organized into the following structure:
- Problem statements in Markdown format
- Sample and test cases with input/output pairs
- Contest and difficulty metadata
- Season classification for temporal organization
- Comprehensive coverage of available problems
License
Please respect the original terms of use of the USACO platform when using this dataset.
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