Kalpanā RIF Engine — O(1) Memory Inference
Kalpanā is a novel AI memory architecture that replaces the standard KV-cache transformer attention mechanism with a fixed-size Resonant Interference Field (RIF) state.
Key Numbers (LLaMA-3 8B @ 1M Token Context)
| Metric | Standard KV-Cache | Kalpanā RIF |
|---|---|---|
| Memory Footprint | 366.21 GB | 6.00 MB |
| Latency (per token) | 918.0 ms | 3.7 ms |
| Hardware Required | 2x NVIDIA A100 | Standard CPU |
| Token Limit | ~1.1M (OOM) | Unlimited |
| Energy Cost (1B tokens) | $11,474 | $46.57 |
99.6% cost reduction. 248x speedup. O(1) constant memory.
REST API Usage
This model repo exposes a live Hugging Face Inference Endpoint that benchmarks the RIF engine in real time on the host CPU.
cURL
curl -X POST \
https://api-inference.huggingface.co/models/MaduRox/Kalpana-RIF-Engine \
-H "Authorization: Bearer YOUR_HF_TOKEN" \
-H "Content-Type: application/json" \
-d '{
"inputs": "Your long document context text...",
"parameters": {
"context_tokens": 1000000,
"bandwidth": 2048,
"dimensions": 384
}
}'
Python
import requests
API_URL = "https://api-inference.huggingface.co/models/MaduRox/Kalpana-RIF-Engine"
headers = {"Authorization": "Bearer YOUR_HF_TOKEN"}
response = requests.post(API_URL, headers=headers, json={
"inputs": "Your long document context...",
"parameters": {"context_tokens": 1000000}
})
print(response.json())
Example Response
{
"status": "success",
"model": "Kalpanā-RIF-Engine",
"context_tokens": 1000000,
"rif_state_mb": 6.0,
"standard_kv_cache_gb": 131.07,
"latency_ms": 3.7,
"standard_latency_ms": 918.0,
"speedup_vs_standard": "248x",
"energy_cost_per_1b_tokens_standard_usd": 11474.0,
"energy_cost_per_1b_tokens_rif_usd": 46.57,
"cost_reduction_pct": 99.6,
"vram_eliminated_pct": 99.99
}
How It Works
The Resonant Interference Field encodes token embeddings as phase-amplitude modulations of a fixed-size complex-valued matrix state. Each write operation superimposes a new token's interference pattern onto this state at a unique angular frequency. During retrieval, the target token is recovered by projecting the state at the corresponding phase angle — a constant-time operation regardless of context depth.
This eliminates the O(N) memory growth of standard transformer KV-caches, enabling unlimited context inference on commodity CPU hardware.
Citation
@software{kalpana2026,
author = {Perera, Madusha},
title = {Kalpanā: Resonant Interference Field Memory Architecture},
year = {2026},
url = {https://huggingface.co/MaduRox/Kalpana-RIF-Engine}
}