Datasets:
image image | question_id string | exam_name string | exam_year int64 | subject string | question_type string | correct_answer string | paper_id int64 |
|---|---|---|---|---|---|---|---|
N24T3001 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["1"] | null | |
N24T3002 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3003 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3004 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["2"] | null | |
N24T3005 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3006 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["1"] | null | |
N24T3007 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3008 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3009 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["1"] | null | |
N24T3010 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["1"] | null | |
N24T3011 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["2"] | null | |
N24T3012 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3013 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3014 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3015 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3016 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["1"] | null | |
N24T3017 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3018 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["1"] | null | |
N24T3019 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3020 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3021 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["2"] | null | |
N24T3022 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3023 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["2"] | null | |
N24T3024 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["2"] | null | |
N24T3025 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["1", "3"] | null | |
N24T3026 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3027 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["2"] | null | |
N24T3028 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3029 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["2"] | null | |
N24T3030 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3031 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3032 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3033 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["2"] | null | |
N24T3034 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3035 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3036 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["2"] | null | |
N24T3037 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3038 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["2"] | null | |
N24T3039 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3040 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3041 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3042 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3043 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3044 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3045 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3046 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3047 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["1"] | null | |
N24T3048 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3049 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3050 | NEET | 2,024 | Physics | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3051 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3052 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["2"] | null | |
N24T3053 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3054 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3055 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3056 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3057 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["1"] | null | |
N24T3058 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["2"] | null | |
N24T3059 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["2"] | null | |
N24T3060 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["1"] | null | |
N24T3061 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3062 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3063 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["2"] | null | |
N24T3064 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3065 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3066 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3067 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["1"] | null | |
N24T3068 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3069 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["1"] | null | |
N24T3070 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["1"] | null | |
N24T3071 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["2"] | null | |
N24T3072 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["1"] | null | |
N24T3073 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["2"] | null | |
N24T3074 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3075 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3076 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["2"] | null | |
N24T3077 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3078 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["1"] | null | |
N24T3079 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3080 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3081 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3082 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3083 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3084 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["2"] | null | |
N24T3085 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3086 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3087 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["2"] | null | |
N24T3088 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3089 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3090 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3091 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["2"] | null | |
N24T3092 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["2"] | null | |
N24T3093 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3094 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3095 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3096 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["2"] | null | |
N24T3097 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3098 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["4"] | null | |
N24T3099 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["3"] | null | |
N24T3100 | NEET | 2,024 | Chemistry | MCQ_SINGLE_CORRECT | ["3"] | null |
JEE/NEET LLM Benchmark Dataset
π View the live leaderboard β β interactive results across JEE Advanced, JEE Main & NEET, with open/closed-weight badges, contamination flags, and per-run cost.
A benchmark for evaluating vision-capable LLMs on Indian competitive exam questions (JEE Advanced & NEET). Each question is the original exam image; models answer via the OpenRouter API and are scored with authentic, exam-specific marking schemes β including partial credit for JEE Advanced multiple-correct questions.
Supported question types: Single Correct MCQ, Multiple Correct MCQ, Matching List MCQ, Integer, and stem-based Integer (INTEGER_2). Every image carries metadata: exam, year, subject, question type, paper, and verified correct answer(s).
Dataset Composition
| Exam | Year | Set | Subjects | Questions |
|---|---|---|---|---|
| NEET | 2024 | Code T3 | Physics, Chemistry, Botany, Zoology | 200 |
| NEET | 2025 | Code 45 | Physics, Chemistry, Biology | 180 |
| NEET | 2026 | Code 13 | Physics, Chemistry, Biology | 180 |
| JEE Advanced | 2024 | Paper 1 & 2 | Physics, Chemistry, Mathematics | 102 |
| JEE Advanced | 2025 | Paper 1 & 2 | Physics, Chemistry, Mathematics | 96 |
| JEE Advanced | 2026 | Paper 1 & 2 | Physics, Chemistry, Mathematics | 102 |
| Total | 860 |
Subjects are evenly balanced within each set β NEET 2024 has 50 per subject; NEET 2025/2026 have 45 Physics, 45 Chemistry, 90 Biology; every JEE Advanced set splits equally across the three subjects.
Quick Start
Load the dataset
from datasets import load_dataset
import json
dataset = load_dataset("Reja1/jee-neet-benchmark", split="test")
example = dataset[0]
image = example["image"] # PIL image
correct = json.loads(example["correct_answer"]) # e.g. ["A"], ["B", "C"], ["42"]
Setup
git clone https://huggingface.co/datasets/Reja1/jee-neet-benchmark
cd jee-neet-benchmark
git lfs pull # fetch images + metadata (stored in Git LFS)
uv sync
echo "OPENROUTER_API_KEY=your_key" > .env
Run the benchmark
Evaluate a vision-capable model on the full dataset:
uv run python src/benchmark_runner.py --model "google/gemini-3.1-pro-preview"
Run a single exam and year:
uv run python src/benchmark_runner.py --model "openai/gpt-5.5" --exam_name NEET --exam_year 2026
uv run python src/benchmark_runner.py --model "anthropic/claude-opus-4.7" --exam_name JEE_ADVANCED --exam_year 2026
Run only specific questions (comma-separated IDs):
uv run python src/benchmark_runner.py --model "openai/gpt-5.5" --question_ids "N24T3001,JA26P1M01"
Run a model 3 times for variance analysis:
uv run python src/benchmark_runner.py --model "x-ai/grok-4.3" --exam_name NEET --exam_year 2026 --num_runs 3
Override the sampling temperature from the config:
uv run python src/benchmark_runner.py --model "openai/gpt-5.5" --temperature 0.7
Pin OpenRouter routing to a specific provider β e.g. the model's official host instead of a third-party reseller. Fallbacks are disabled, so a request fails (and is retried) rather than silently routing elsewhere. Useful when resellers serve a different quantization than the official endpoint:
uv run python src/benchmark_runner.py --model "moonshotai/kimi-k2.6" --exam_name JEE_ADVANCED --exam_year 2026 --provider-only moonshotai
Resume an interrupted run (skips already-completed questions):
uv run python src/benchmark_runner.py --model "openai/gpt-5.5" --resume results/<run_dir>
Re-score an existing run after updating the answer key β no API calls:
uv run python src/benchmark_runner.py --score-only results/<run_dir>
Analyse results
Build a cross-model leaderboard from all local results:
uv run python scripts/generate_leaderboard.py
Hosted leaderboard (HuggingFace Static Space)
Live at huggingface.co/spaces/Reja1/jee-neet-benchmark-leaderboard.
Generate a self-contained, dark-themed HTML leaderboard β all results grouped by exam+year, with open-weight badges and contamination footnotes drawn from scripts/model_metadata.yaml:
uv run python scripts/generate_leaderboard.py --html space/index.html
One-time setup (requires huggingface-cli login): create a Static Space named jee-neet-benchmark-leaderboard via the HF web UI, then clone it into space/ (gitignored from this repo):
git clone https://huggingface.co/spaces/Reja1/jee-neet-benchmark-leaderboard space
Regenerate and publish after each model run:
uv run python scripts/generate_leaderboard.py --html space/index.html
cd space && git add -A && git commit -m "update leaderboard" && git push
Aggregate repeated runs of one model for variance stats:
uv run python scripts/aggregate_runs.py --pattern "x-ai_grok-4.3_NEET_2026"
Configure the model list and parameters in configs/benchmark_config.yaml; run src/benchmark_runner.py --help for the full option list. Each run writes a timestamped folder under results/ with predictions.jsonl (raw responses), summary.jsonl (per-question scores, tokens, cost, latency), and summary.md (human-readable report).
Scoring
API/parse failures and skipped questions score 0 (no penalty), since they are not a deliberate wrong choice.
NEET β Single Correct MCQ: +4 correct, β1 incorrect.
JEE Main (supported in code; no questions in the current dataset) β Single Correct MCQ: +4 / β1. Integer: +4 / 0.
JEE Advanced
| Question type | Marking |
|---|---|
| Single Correct MCQ | +3 correct, β1 incorrect |
| Multiple Correct MCQ | Partial: +4 all correct Β· +3 for 3/4 Β· +2 for 2/3+ Β· +1 for 1/2+ Β· β1 if any wrong option chosen |
| Integer | +4 correct, 0 incorrect |
| Matching List MCQ | +4 correct, β1 incorrect |
Stem-based Integer (INTEGER_2) |
+2 correct, 0 incorrect |
Data Fields & Answer Format
Each record exposes: image, question_id, exam_name, exam_year (int), subject, question_type (MCQ_SINGLE_CORRECT, MCQ_MULTIPLE_CORRECT, MCQ_MATCHING, INTEGER, INTEGER_2), paper_id, and correct_answer β a JSON-serialized string parsed with json.loads(). MCQ answers are option identifiers (["A"], ["B", "C"]); Integer answers are numbers as strings (["42"], ["12.75"]). A few single-correct questions list multiple acceptable options; a prediction matching any one is correct.
Models return answers in <answer>...</answer> tags: <answer>A</answer>, <answer>B,D</answer> (multiple correct), <answer>42</answer> / <answer>12.75</answer> (numeric), or <answer>SKIP</answer>.
Limitations & Data Contamination
These are publicly administered exams, widely published online after each sitting, so questions may appear in models' training data β especially for older years. High scores may partly reflect memorization rather than reasoning. Treat this as an evaluation on publicly available exam questions, not a contamination-free reasoning test; compare across years (older = higher contamination risk) and cross-reference with contamination-resistant benchmarks (e.g. GPQA, Humanity's Last Exam).
Other caveats: a single prompt template per question type (results vary with phrasing); one run per model by default (non-deterministic outputs vary slightly); performance is sensitive to image quality; English only; requires vision models on OpenRouter.
Citation
@misc{rejaullah_2025_jeeneetbenchmark,
title={JEE/NEET LLM Benchmark},
author={Md Rejaullah},
year={2025},
howpublished={\url{https://huggingface.co/datasets/Reja1/jee-neet-benchmark}},
}
Contact & License
Questions or collaboration: @RejaullahmdMd on X. Released under the MIT License.
- Downloads last month
- 1,388