Shanmuk4622's picture
Upload README.md with huggingface_hub
dfc9738 verified
metadata
language: en
license: apache-2.0
tags:
  - image-classification
  - green-ai
  - energy-efficiency
  - computer-vision
  - resnet50
  - eden-framework
  - e2am
  - sustainable-ai
datasets:
  - imagenet
metrics:
  - accuracy
co2_eq_emissions:
  emissions: 0
  unit: kg
  source: Estimated via CodeCarbon (grid factor 0.475 kg CO2e/kWh)
  hardware_used: NVIDIA GeForce GTX 1080 Ti
dataset_info:
  dataset_size: ~450,000 images  300 classes (224 px)
model-index:
  - name: EDEN-ResNet50-Custom-ImageNet300
    results:
      - task:
          type: image-classification
          name: Image Classification
        dataset:
          name: Custom-ImageNet300
          type: imagenet
        metrics:
          - type: accuracy
            value: 0.9999
            name: Accuracy

EDEN-ResNet50-Custom-ImageNet300 — EDEN Classic

Primary KPI: EAG (Energy-to-Accuracy Gradient) = N/A ΔAcc/ΔJoules

Abstract

This model is part of Project EDEN (Energy-Driven Evolution of Networks), implementing the E2AM (Energy Efficient Advanced Model) Framework. The goal is to shift AI benchmarking from pure accuracy to Green SOTA — maximising predictive power per Joule consumed.

Applied Technique: Phase 2 – EDEN Classic Energy-Aware Sparse Training

Profiling Environment

Component Specification
GPU NVIDIA GeForce GTX 1080 Ti (11 GB VRAM, 250 W TDP)
CPU Intel Xeon W-2125 (4 cores / 8 threads @ 4.00 GHz)
RAM 63.66 GB System RAM
OS Windows 10
Dataset Custom-ImageNet300 — ~450,000 images – 300 classes (224 px)

🟢 Green Delta Table

Comparing this model against the reference baseline (ResNet-50 equivalent)

Metric ResNet50 Baseline ResNet50 (EDEN) Δ
Accuracy 0.9573 0.9999 N/A
Total Energy (J) 380,392,115 0 N/A saved
CO₂ Emissions (kg) 50.1906 0.0000
EAG Score N/A ΔAcc/ΔJoules

A positive EAG means this model learns more per Joule than the baseline. A negative EAG indicates a trade-off where higher accuracy required more energy investment.

E2AM Algorithm — Applied Phases

Phase 1 – Zero-Overhead Initialization: Dataset cached in System RAM.

Phase 2 – EDEN Classic: Energy-aware training loop on classic CNN architectures. Applies the same EAG early-exit criterion (EAG < γ_EAG for 3 consecutive epochs → terminate), L1 sparsity penalty, and AMP to architectures like ResNet, VGG, AlexNet, DenseNet, InceptionV3, and UNet.

Training Statistics

Metric Value
Final Accuracy 0.9999 (99.99%)
Total Energy Consumed 0 J (0.0000 kWh)
Training Time 0 s (0.00 hrs)
Estimated CO₂ 0.0000 kg CO₂e
Training Log test3\resnet50_EDEN_CustomImageNet300_stats.csv

📊 Training Visualizations

EAG Metric Trajectory

EAG = ΔAccuracy / ΔJoules — positive means learning more per Joule than baseline

EAG Curve

Project-Wide Overview

All EDEN models: energy vs accuracy

Collection Overview

Cite This Research

@misc{eden2025,
  title     = {Project EDEN: Energy-Driven Evolution of Networks},
  author    = {EDEN Research Team},
  year      = {2025},
  note      = {Hugging Face: Shanmuk4622},
  url       = {https://huggingface.co/Shanmuk4622}
}