112×
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 across every GPU, CPU, TPU, and mobile SoC. No new hardware required.

112×
CPU · vs MKL Sparse
Intel Xeon — FE Solver, 80% sparse
Turns every CPU into an AI engine
+ 40× on Kimi K2.5
63×
GPU · NVIDIA B200 · 0% Sparsity
Beats cuBLAS, cuSparse & ROCm
Pure Zero FLOP elimination
+ 158× on LLM Proxy Matrix
View Benchmarks → Verification Kit info@rolv.ai
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112× vs MKL Sparse · 63× on B200 at 0% Sparsity · 99.1% Energy Saved · 158× LLM Proxy Matrix · 40× Kimi K2.5 on Intel Xeon · 50M+ Tokens/Second · +44% Battery Life · +32% EV Range · Deterministic & Hash-Verified · University of Miami Validated · 112× vs MKL Sparse · 63× on B200 at 0% Sparsity · 99.1% Energy Saved · 158× LLM Proxy Matrix · 40× Kimi K2.5 on Intel Xeon · 50M+ Tokens/Second · +44% Battery Life · +32% EV Range · Deterministic & Hash-Verified · University of Miami Validated ·
01 Key Metrics
vs Best Sparse (MKL)

FE Solver, 80% sparse — Intel Xeon

0%Energy Saved

vs CSR Sparse on same workload

50M+Tokens / Second

Planetary-scale AI inference

NVIDIA B200 — 0% Sparsity

Beats cuBLAS, cuSparse & ROCm

02 The Two Big Stories

Where It Really Matters

CPU Story 112×
vs MKL CSR Sparse — Intel Xeon @ 2.20GHz

The world has billions of CPUs already deployed in servers, workstations, and edge devices. Standard sparse libraries like MKL CSR — supposedly optimised for exactly this — are still 112× slower than ROLVSPARSE© on an 80% sparse FE Solver workload.

And on Kimi K2.5 expert slices (~87% sparse), ROLVSPARSE© achieves 40× acceleration on those same commodity Xeon CPUs — turning the global CPU installed base into the largest AI inference network ever built.

ROLV per iter0.000476 s
MKL CSR Sparse0.053517 s → 112×
Dense PyTorch MKL0.023720 s → 49.85×
Energy saved vs sparse99.1%
Kimi K2.5 speedup40× (87% sparse)
Solver calls verified100,000 · Seed 123456
GPU Story 63×
NVIDIA B200 — at 0% sparsity

This is the headline that changes everything. ROLVSPARSE© achieves 63× speedup on an NVIDIA B200 — the most advanced GPU on the planet — at zero percent sparsity. No sparse structure to exploit. Pure Zero FLOP elimination doing work that every other library leaves on the table.

cuBLAS, cuSparse, and ROCm are all beaten. This isn't a sparse trick — it's a fundamental improvement to how floating-point operations are executed at the primitive level.

Speedup63× on B200
Sparsity used0% — none needed
vs cuBLASFaster
vs cuSparseFaster
vs ROCmFaster
LLM Proxy Matrix158× · 99.37% energy saved
03 The Problem

AI Is Drowning
In Zeros

Modern AI models — LLMs, recommendation systems, graph networks — are 50–99% sparse. The vast majority of matrix values are zero.

Standard compute libraries like cuBLAS and MKL process every value. They multiply every zero, burn every watt, waste every cycle.

ROLVSPARSE© eliminates Zero FLOPs at the primitive level. No new silicon. Deterministic. Verifiable.

Model / WorkloadSparsity → Wasted Compute
Taobao Ads RecSys
>99%
Netflix RecSys
~95%
Kimi K2.5 slices
87%
FE Solver (chassis)
80%
Mistral-7B Pruned
55%
Llama-3 70B FFN
50%
04 Performance Highlights

The Hit List

Verified · Deterministic · Platform-Agnostic

CPU · FE Solver112×
vs MKL CSR Sparse

Mobile chassis drop-test, 80% sparse. ROLV: 0.000476s. MKL CSR: 0.053517s. 99.1% energy saved.

HardwareIntel Xeon 2.20GHz
GPU63×
NVIDIA B200 · 0% Sparsity

Beats cuBLAS, cuSparse & ROCm. No sparse structure needed — pure Zero FLOP elimination at the primitive level.

Sparsity usedZero — 0%
LLM Proxy158×
4096×5120 Matrix

Nsight Compute verified. 99.37% energy saved. Demonstrates ROLVSPARSE© on real LLM proxy workloads.

Energy saved99.37%
CPU · Kimi K2.540×
Intel Xeon

On Kimi K2.5 expert slices (~87% sparse). Turns the global CPU base into the world's largest AI inference network.

Sparsity~87%
Energy50–99%
Energy Savings

Across hundreds of workloads. Slashes CapEx and OpEx for every AI deployment — mobile to hyperscale.

Workloads100s Verified
Mobile & EV+44%
Battery & +32% EV Range

Camera AI +2.82×, audio DSP +1.73×, on-device search +2.7×. EVs: faster sensor fusion & vision AI.

ScaleMobile → Auto
Throughput50M+
Tokens / Second

Planetary-scale AI inference. Global throughput across cloud, edge, and on-device simultaneously.

ScaleGlobal
VerifiedHash-
Verified
Deterministic Everywhere

Identical normalized outputs across all architectures. Hash-verified every run. Verify in minutes with the open-source kit.

ValidatorUniv. of Miami
Patents5 Para-
digms
Future-Proof IP

Patents filed across binary, quantum, DNA, optical, and plant-based AI computing. Every paradigm covered.

CoverageAll Paradigms
05 Real-World Benchmarks

Every Number Verified

Independently validated by the University of Miami Frost Institute. All results deterministic and hash-verified. Run them yourself.

Featured · Hash-Verified · Deterministic
Finite Element Solver — Mobile Phone Chassis Drop-Test

Stiffness matrix: 8192×8192 · Sparsity: 80%
Solver calls: 100,000 · Intel Xeon @ 2.20GHz
Multi-CPU optimized · Seed: 123456

A_hash: 383bcac3…8426b18b
V_hash: af6b0400…f444c51b
ROLV vs Dense PyTorch (MKL)
49.85×
98.0% energy saved
0.000476s vs 0.023720s / iter
ROLV vs Best Sparse (MKL CSR)
112.48×
99.1% energy saved
0.000476s vs 0.053517s / iter
WorkloadPlatformSparsitySpeedupEnergy Saved
FE Solver — Mobile Chassis (vs CSR Sparse MKL)Intel Xeon80%112.48×99.1%
LLM Proxy Matrix 4096×5120 (Nsight Compute)NVIDIA GPUVariable158×99.37%
Large Recommendation GEMM (32k×32k)NVIDIA B200High98×99.0%
FE Solver — Mobile Chassis (vs Dense PyTorch)Intel Xeon80%49.85×98.0%
Netflix RecSys SubsampleNVIDIA GPU~95%61×89.5%
Llama-3 70B FFN LayerNVIDIA B20050%50×98.0%
Stanford OGB ogbn-products GraphNVIDIA GPU80%49×98.0%
Mistral-7B Wanda PrunedAMD MI300X55%15.8×93.7%
Taobao Ads RecommenderCPU>99.999%2×52.3%

Full suite: rolv.ai/benchmarks  ·  Validated by University of Miami Frost Institute for Data Science and Computing

06 Mobile & EV

Real-World Device Impact

📱

Smartphones

ROLVSPARSE© accelerates on-device AI across every major mobile workload without new chips or firmware changes.

+44%
Battery Life
2.82×
Camera AI
2.7×
On-Device Search
1.73×
Audio DSP

Electric Vehicles

First-layer vision, sensor fusion, and range prediction all accelerated on existing automotive SoCs — no hardware change.

+32%
Driving Range
Faster
Sensor Fusion
Faster
Vision AI
07 Platforms

Every Chip.
Every Arch.

Platform-agnostic by design. One primitive across all hardware — identical deterministic outputs everywhere. No vendor lock-in.

Patents: binary · quantum · DNA · optical · plant-based AI computing
NVIDIA
GPU · B200 · Datacenter
AMD
GPU · MI300X · ROCm
Intel
CPU · Xeon · Arc
Google TPU
TPU · Cloud AI
Apple M
M-Series · Neural Engine
Qualcomm
Snapdragon · Edge
MediaTek
Mobile · IoT
Mobile SoCs
ARM · RISC-V
Future HW
Quantum · Optical · DNA
08 Founder

Proven
Innovator

"ROLVSPARSE© doesn't just accelerate AI — it reduces energy consumption, democratizes compute, and makes any device an ultra-efficient AI engine."
Rolv E. Heggenhougen — Founder, ROLV LLC
Architected ROLVSPARSE© math and codebase solo since June 2025
Filed patents across binary, quantum, DNA, optical, and plant AI
Executed hundreds of benchmarks across NVIDIA, AMD, Intel, Google, Apple
Built the open-source deterministic verification kit
30+
Years in technology
12+
Companies, 4 continents
2
Companies taken public
2
U.S. patents held

Three decades of deep technology innovation — from founding and scaling companies globally to building what may be the most impactful compute primitive since BLAS.

info@rolv.ai  ·  rolv.ai

09 Validation

Independently Verified.
Openly Reproducible.

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

Benchmarks independently validated. Deterministic and reproducible results confirmed across all tested platforms.

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.

github.com/rolv-ai →
03 Full Suite
Hundreds of Verified Workloads

Synthetic and real-world benchmarks across NVIDIA, AMD, Intel, Google TPU, and Apple M-series. Every result linked and verifiable.

rolv.ai/benchmarks →