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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
End of preview. Expand in Data Studio

JEE/NEET LLM Benchmark Dataset

License: MIT Live Leaderboard

πŸ† 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, βˆ’1 incorrect.

JEE Main (supported in code; no questions in the current dataset) β€” Single Correct MCQ: +4 / βˆ’1. Integer: +4 / 0.

JEE Advanced

Question type Marking
Single Correct MCQ +3 correct, βˆ’1 incorrect
Multiple Correct MCQ Partial: +4 all correct Β· +3 for 3/4 Β· +2 for 2/3+ Β· +1 for 1/2+ Β· βˆ’1 if any wrong option chosen
Integer +4 correct, 0 incorrect
Matching List MCQ +4 correct, βˆ’1 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.

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