Here is the complete HTML — select all and copy: html ROLVSPARSE© — Eliminate Zero FLOPs. Unlock AI's True Speed.
ROLV
Fort Lauderdale, FL · ROLV, LLC · rolv.ai

Zero
FLOPs.
Eliminated.

ROLVSPARSE© is a platform-agnostic, deterministic compute primitive that eliminates wasted Zero FLOPs — delivering orders-of-magnitude speedups and up to 99% energy savings. No new hardware. No retraining. No model changes.

243×
NVIDIA B200 · 70% Sparse
Peak GPU speedup
vs. cuBLAS / cuSPARSE
40×
CPU · Intel Xeon
Kimi K2.5 Expert Slice
~87% sparsity — commodity CPU
99%
Energy Saved
Sparse workloads
vs. dense baseline
Validated by University of Miami
243× NVIDIA B200 Peak Speedup · 40.3× on Commodity CPU — No New Hardware · 99% Energy Saved · University of Miami Frost Institute Validated · Platform-Agnostic · GPU · CPU · TPU · Mobile · EV · Patents Pending: Binary · Quantum · DNA · Optical · Plant · 243× NVIDIA B200 Peak Speedup · 40.3× on Commodity CPU — No New Hardware · 99% Energy Saved · University of Miami Frost Institute Validated · Platform-Agnostic · GPU · CPU · TPU · Mobile · EV · Patents Pending: Binary · Quantum · DNA · Optical · Plant ·
01 CPU Breakthrough — March 2026

The CPU Breakthrough.

ROLV delivers massive acceleration on commodity CPUs with no new hardware required. Validated on a standard Intel Xeon against the exact Kimi K2.5 expert FFN matrix (7168×2048, batch=512, ~87% sparsity).

The World’s Largest GPU Cluster

There are billions of CPUs already deployed across data centers, enterprise servers, edge devices, and consumer hardware. With ROLV, that installed base — quietly humming along running the world’s software — becomes the largest high-performance AI compute cluster ever assembled. No procurement. No shipping. No waiting. The hardware already exists; ROLV simply unlocks it.

AI for Everyone, Everywhere

For the first time, the same compute primitive that accelerates a hyperscaler’s 100,000-GPU supercluster runs identically — and transformatively — on the chip inside your pocket. ROLV democratizes AI inference across the full spectrum of hardware: from flagship smartphones and electric vehicles to on-premise servers and the largest AI factories on earth. One primitive. Every platform. No trade-offs.

40.3×
Per-Iteration Speedup
Dense: 244 ms → ROLV: 6.07 ms per iteration
84,413 tok/s
Token Throughput (512 tokens/iter)
Dense baseline: 2,097 tok/s — 40× gain
97.9%
Energy Saved (200 iterations)
17,371 J → 360 J — same commodity CPU
193×
FE Solver Speedup
Mobile-phone chassis drop-test · 99.5% energy saved · 2× Intel Xeon
Reproduce on Your Hardware →
02 Full Benchmark Suite

Cross-Platform Benchmarks.

Best per-sparsity results across NVIDIA B200, AMD MI300X, Google TPU, Intel Xeon, AMD EPYC, and Apple M4. All validated by the University of Miami Frost Institute for Data Science and Computing. Compared vs. native vendor libraries (cuBLAS, cuSPARSE, ROCm, XLA, MKL).

Dense < 70% sparsity · Sparse ≥ 70% sparsity

SparsityMetricNVIDIA B200AMD MI300XGoogle TPUIntel XeonAMD EPYCApple M4Verify
0%Speedup / Energy63.23× / 98.4%21.78× / 95.4%1.88× / 46.7%7.93× / 87.4%9.23× / 89.2%3.60× / 72.6%
10%Speedup / Energy63.22× / 98.4%21.88× / 95.4%1.79× / 46–47%7.69× / 87.0%9.32× / 89.3%3.60× / 72.6%
20%Speedup / Energy63.21× / 98.4%21.86× / 95.4%1.87× / 46–47%7.56× / 86.8%9.34× / 89.3%3.60× / 72.6%
30%Speedup / Energy63.22× / 98.4%21.75× / 95.3%1.77× / 46–47%7.54× / 86.7%9.15× / 89.1%3.60× / 72.6%
40%Speedup / Energy63.21× / 98.4%21.09× / 95.2%1.77× / 46–47%7.69× / 87.0%9.32× / 89.3%3.60× / 72.6%
50%Speedup / Energy63.18× / 98.4%20.88× / 95.1%1.77× / 46–47%7.40× / 86.5%9.23× / 89.2%3.60× / 72.6%
60%Speedup / Energy63.20× / 98.4%20.50× / 95.4%62.43× / 98.4%25.15× / 96.0%9.26× / 89.2%3.60× / 72.6%
70% ★Speedup / Energy243.07× / 99.6%242.19× / 99.7%51.16× / 98.1%40.57× / 95.5%9.24× / 89.2%3.60× / 72.6%
80%Speedup / Energy159.85× / 99.4%163.48× / 99.5%36.36× / 97.3%28.96× / 94.5%107.58× / 99.1%3.60× / 72.6%
90%Speedup / Energy79.05× / 98.7%84.56× / 99.5%16.71× / 94.0%12.72× / 91.9%116.67× / 99.1%3.60× / 72.6%
95%Speedup / Energy39.80× / 97.5%88.28× / 99.5%9.39× / 89.4%6.33× / 83.9%109.25× / 99.1%3.60× / 72.6%
99%Speedup / Energy8.27× / 87.9%35.00× / 94.5%2.41× / 58.6%1.87× / 37.2%95.93× / 99.0%3.60× / 72.6%

★ Peak sparse region begins at 70% sparsity. All results independently validated. View Frost Institute PDF ↗

03 Real-World Applications

Production-Scale Results.

All production-scale workloads — real models, real datasets. Sorted by per-iteration speedup. Nsight-validated results included where noted.

193×
99.5% energy saved
Finite Element Solver — Mobile Phone Chassis Drop-Test
8192×8192 stiffness matrix · 50% sparsity · 2× Intel Xeon
158×
99.4% energy saved
LLM Proxy Matrix (Nsight Compute) — 4096×5120
50% sparsity · vs cuSPARSE CSR · 40.5M tok/s · NVIDIA B200 · Nsight-validated ↗
98.8×
99.0% energy saved
Large Recommendation GEMM (Meta-style ranking)
32,768×32,768 · 50% sparsity · NVIDIA B200
61.9×
89.5% energy saved
Netflix RecSys (Production-scale subsample)
~95% sparsity · real Netflix Prize data
50.5×
98.0% energy saved
Llama-3 70B FFN (exact production shape)
8192×28,672 gate/up_proj · 50% sparsity · 7.18M tok/s · NVIDIA B200
49.2×
98.0% energy saved
Stanford OGB ogbn-products Graph GNN
30k nodes · 80% sparsity · large-scale GNN
39.1×
97.4% energy saved
Mistral-7B Wanda Pruned FFN — NVIDIA B200
55% sparsity · 4096×14,336 · 1000 iters · Verify ↗
35.7×
96.9% energy saved
GPT-J-6B MLP Pruned
~40% sparsity · real pruned LLM layer
29.6×
96.0% energy saved
Llama-2-7B Pruned 70% (Neural Magic retrained)
NVIDIA B200 · Verify ↗
22.1×
95.5% energy saved
Llama-2-7B FFN 70% — H100 NVL
8.76M tok/s · 237 TFLOPS · 91.32× vs cuSPARSE
18.8×
94.7% energy saved
MusicGen-large FFN (Generative Audio)
55% sparsity · 8192×2048 · NVIDIA B200
15.8×
93.7% energy saved
Mistral-7B Wanda — AMD MI300X
55% sparsity · 4096×14,336 · Verify ↗
9.7×
89.7% energy saved
KIMI K2.5 Expert Matrix
7168×2048 · 2× NVIDIA B200 · 16.16M tok/s · 474.3 TFLOPS
6.2×
79.5% energy saved
BERT-Base Pruned
90% sparsity
4.84×
79.3% energy saved
BERT on AMD MI300X (70% sparse)
vs COO baseline · Verify ↗
4.1×
75.3% energy saved
Llama-2-7B Ultrachat Pruned 50% (AMD MI300X)
ROCm run · Verify ↗
4.0×
75.0% energy saved
Google ViT-Huge Attention Pruned
90% sparsity · 1280×1280 · NVIDIA B200
2.2×
54.6% energy saved
ViT-Base Attention (Pixel / Android on-device)
95% sparsity · NVIDIA B200
Full Benchmark PDF ↗ Verification Kit ↗
04 Mobile & EV

Battery Life & Driving Range.

ROLV eliminates wasted Zero-FLOPs even in dense workloads — giving both speed and battery life gains on mobile SoCs and automotive compute. Measured on NVIDIA B200 (best proxy for 2026 flagship hardware).

📱 Mobile Benchmark — 2026 Flagship Phones
Camera AI — First Layer Vision2.82×+50.4% battery
Always-On Audio DSP Filtering1.73×+33.0% battery
On-Device AI Search (Embeddings)2.70×+49.1% battery

Overall: up to +44.1% increased battery life on the same phone.

🚗 EV Benchmark — 2026 Electric Vehicles
First-Layer Vision (Safety-Critical)2.30×+36.7% range
Sensor Fusion & Kalman Filter1.65×+25.6% range
Battery Management & Range Prediction2.06×+33.4% range

Overall: up to +31.9% increased driving range on the same battery. If you own a Tesla with Grok, ROLV would speed up Grok responses while improving energy efficiency.

05 Independently Verified

Trusted Validation.

01 Academic
University of Miami Frost Institute for Data Science and Computing

Benchmarks independently validated. Deterministic and reproducible results confirmed across all tested platforms. Backend-agnostic reproducibility verified.

View Validation PDF →
02 Open Source
ROLV Verification Kit — GitHub

Run benchmarks in minutes. Hash-verified outputs. Identical normalized results across every architecture — verify every claim yourself. Nsight-validated tolerance harness included.

github.com/rolvai/rolv-verifier →
03 Full Suite
All Benchmarks — PDF Download

Complete benchmark suite across NVIDIA, AMD, Intel, Google TPU, and Apple M-series. Synthetic and real-world production-scale workloads. Every result linked and verifiable.

Download Benchmarks PDF →
06 ROLV Sparse Memory Threshold

The RSMT Calculator.

Memory capacity, not compute, is the true AI bottleneck. The RSMT identifies the exact density where sparse storage saves your model from VRAM exhaustion and performance degradation.

ROLV Unit Calculator
07 Leadership

The Founder.

Rolv E. Heggenhougen, CEO of ROLV, LLC, is the founder of two public companies and technology companies across Norway, Sweden, Denmark, Latvia, Germany, Switzerland, Australia, China, and the U.S.

He spearheads the elimination of the Zero-FLOP bottleneck across global AI infrastructure with novel sparse matrix arithmetic paradigms — a compute primitive that works across GPUs, TPUs, CPUs, mobile SoCs, and next-generation accelerators with no changes to existing hardware or model stacks.

Mr. Heggenhougen has financed several start-up companies and holds deep cross-disciplinary expertise spanning AI compute architecture, patent law, and international technology commercialization.

He is fluent in Norwegian, Danish, and Swedish with working knowledge of German, a graduate of the University of Miami, attended Oslo University Law School, and is a certified pilot.

PATENTS
2 patents issued, 6 pending (as of Oct 2025) with the U.S. Patent Office. Covering Binary, Quantum, DNA, Optical, and Plant platforms for AI processing, plus Mobile Phone and EV applications.
COMPANIES
Founder of two public companies and tech ventures across 9 countries including Norway, Sweden, Germany, Switzerland, Australia, China, and the U.S.
EDUCATION
Graduate of University of Miami. Attended Oslo University Law School. Certified pilot.
VALIDATION
All ROLV benchmarks independently validated by the University of Miami Frost Institute for Data Science and Computing.