--- language: en license: apache-2.0 tags: - image-classification - green-ai - energy-efficiency - computer-vision - efficientnetv2 - eden-framework - e2am - sustainable-ai datasets: - imagenet metrics: - accuracy co2_eq_emissions: emissions: 1.3947 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-EfficientNetV2-Custom-ImageNet300 results: - task: type: image-classification name: Image Classification dataset: name: Custom-ImageNet300 type: imagenet metrics: - type: accuracy value: 0.9895 name: Accuracy - type: f1 value: 0.9891 name: F1 Score --- # EDEN-EfficientNetV2-Custom-ImageNet300 — *SOTA Optimized* > **Primary KPI:** EAG (Energy-to-Accuracy Gradient) = `-8.6906e-11` 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 – Progressive Unfreezing + AMP (E2AM SOTA) ## 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 | **EfficientNetV2 (EDEN)** | Δ | |---|---|---|---| | Accuracy | 0.9573 | **0.9895** | `+3.21%` | | Total Energy (J) | 380,392,115 | **10,570,275** | `97.22% saved` | | CO₂ Emissions (kg) | 50.1906 | **1.3947** | — | | **EAG Score** | — | **-8.6906e-11** | 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 pre-loaded into pinned System RAM to eliminate disk I/O power spikes. **Phase 2 – Progressive Unfreezing:** Backbone frozen for the first `E_unfreeze` epochs (only the classification head trains). At `E_unfreeze`, all layers are unfrozen and the learning rate is decayed. Gradient accumulation over N micro-batches simulates large batch sizes without proportional VRAM cost, slashing power-draw spikes. **AMP (Automated Mixed Precision):** `torch.cuda.amp.autocast()` halves GPU memory bandwidth, reducing energy per backward pass. **Sparse Regularisation:** L1 penalty `λ·Σ|W|` applied to trainable weights, driving dead neurons to zero and enabling future pruning. ## Training Statistics | Metric | Value | |---|---| | Final Accuracy | 0.9895 (98.95%) | | Total Energy Consumed | 10,570,275 J (2.9362 kWh) | | Training Time | 15,538 s (4.32 hrs) | | Estimated CO₂ | 1.3947 kg CO₂e | | Training Log | `test1\eden_unfrozen_custom_imagenet_efficientNet.csv` | ## 📊 Training Visualizations ### Accuracy & Energy over Training > Green = accuracy (left axis) · Orange dashed = cumulative energy (right axis) ![Training Curve](training_curve.png) ### EAG Metric Trajectory > EAG = ΔAccuracy / ΔJoules — positive means learning more per Joule than baseline ![EAG Curve](eag_curve.png) ### Project-Wide Overview *All EDEN models: energy vs accuracy* ![Collection Overview](https://huggingface.co/Shanmuk4622/EDEN-Core-Scripts/resolve/main/energy_accuracy_overview.png) ## Cite This Research ```bibtex @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} } ```