Optimisation as a Service  ·  Regnor SYS

Your operations
have optimal
parameters.

We build a simulator from your historical data, deploy an autonomous AI agent, and run experiments until the answer is found. Done for you. Delivered in a week.

Validated across
01 / Services

Five domains.
One pattern.

The autoresearch pattern is domain-agnostic. Anywhere you have a measurable objective, historical data, and controllable parameters, the same approach applies.

D_01
Inventory & Supply ChainLive
39.1%
Cost reduction · V3 experiment

Reorder points, safety stock, and order quantities optimised against your actual demand patterns and cost structure. Full perishable goods support with FIFO batch tracking, shelf-life-aware ordering, and waste-vs-stockout trade-off analysis.

Validated in production  ·  Perishable goods  ·  Lead times  ·  Discount tiers
Full experiment report — 15,435 simulations →
D_02
Pricing OptimisationLive
77.5%
Profit improvement · V4 experiment

Price elasticity modelling and optimal price point discovery across your product catalogue. We fit demand curves from historical sales data, then let the agent find prices that maximise revenue or margin — including bundle and loss-leader dynamics.

Revenue maximisation  ·  Sensitivity analysis  ·  Multi-product  ·  Competitor-aware
Full experiment report — 35,534 simulations →
D_03
Ad Spend AllocationComing Soon

Diminishing returns modelling per channel with optimised budget splits. We replace platform-reported ROAS with independently verified allocation across Google, Meta, and beyond.

Multi-channel  ·  Diminishing returns  ·  Monthly split output  ·  Fixed budget
D_04
Workforce SchedulingComing Soon

Shift staffing matched to demand patterns, minimising labour cost while meeting service level targets. Built for restaurants, retail, call centres, and any business with variable-demand shift work.

Shift optimisation  ·  Coverage gap analysis  ·  Demand-pattern matching  ·  Wage-aware
D_05
Logistics & RoutesComing Soon

Route sequence optimisation for delivery companies, field service, and last-mile operators. Minimise total distance, time, and fuel cost while respecting vehicle capacity and delivery time windows.

Route sequences  ·  Vehicle capacity  ·  Time windows  ·  Fuel cost savings
02 / How It Works

Done for you.
Delivered in a week.

A consulting engagement. You share your data. We scope the problem, build the simulator, run the autonomous optimisation loop, and deliver actionable parameter recommendations. No new software required.

01
Share Your Data

Sales history, costs, inventory levels, pricing records, schedules, or routes — whatever the domain requires. CSV, Excel, or direct export from your existing system.

02
We Build the Simulator

We define the objective metric and construct a deterministic model of your operations from your historical data. This is the foundation the agent runs experiments against.

03
Agent Runs Experiments

The autonomous AI agent adjusts parameters, measures results, keeps what works, and reverts what doesn't. 30 to 15,000 experiments depending on problem complexity.

03 / About

One person.
Full accountability.

Four years in global market research — structured intelligence models, data-driven analysis across technology, manufacturing, healthcare, and financial services. Then the same rigour applied to operational optimisation.

Every engagement is scoped, built, and delivered personally. No handoffs, no junior analysts, no outsourcing. You work directly with the person who built the system.

Connect on LinkedIn →
0
Service domains
0
Experiments run
0
Peak improvement
04 / Results

Real experiments.
Real results.

The same autonomous optimisation pattern validated across two domains at escalating levels of complexity. Each version is harder. Each version proves the pattern holds.

Inventory & Supply Chain
0%
Cost Reduction
V1 · 30 Experiments

5 products, fixed lead times, simple stockout and holding cost formula. The proof-of-concept that started the pattern.

The attention-grabbing result
0%
Cost Reduction
V2 · 300 Experiments

12 products, per-product lead times, quantity discount tiers, 36-parameter search space. The agent discovered sharp cliff boundaries where a 1-unit change caused an 8× jump in missed sales.

Real-world complexity
0%
Cost Reduction
V3 · 70 Experiments

12 products including perishables with FIFO batch tracking and variable shelf lives. Bayesian GP surrogate. Same improvement as V2, 77% fewer experiments, on a harder problem.

Smarter, not harder
Pricing Optimisation
0%
Profit Improvement
V1 · 4,691 Experiments

8 products with price elasticity and demand cliffs. The agent pushed every product to its exact cliff threshold — the highest price before demand collapses.

Cliff-edge pricing
0%
Profit Improvement
V2 · 7,203 Experiments

Cross-price elasticity across substitute groups, 3 product families. When premium_widget's price rose, demand shifted to standard_widget. The agent learned to optimise group-level dynamics.

Portfolio dynamics
0%
Profit Improvement
V4 · 118 Experiments

Monthly pricing across 3 product bundles, 99 parameters. £578k → £1,027k. The agent discovered that pricing budget_widget at cost generates £482k in bundle revenue.

The loss-leader discovery
05 / Why Regnor

What others provide.
What we provide.

Most approaches to operational improvement rely on guesswork, generic benchmarks, or tools that require you to do the work. This is different.

What you're comparing
Typical consultants / tools
Regnor
Basis for recommendations
Industry benchmarks and heuristics
Your actual historical data, modelled precisely
How parameters are found
Expert judgment or manual analysis
Autonomous AI agent running 30–15,000 experiments
Delivery timeline
Weeks to months
5–7 working days from data receipt
Software required
New platform, training, ongoing licence
None — implement in your existing tools
Accountability
Team handoffs, junior analysts
One person. Every engagement, start to finish
06 / FAQ

Overcome hesitations before they block conversions.

Every engagement is reviewed personally. If the pattern doesn't apply clearly in the scoping call, we say so and don't take the engagement.

What data do I need to provide?

Historical operational data — sales history, costs, inventory levels, pricing records, schedules, or routes depending on the domain. Minimum 3–6 months. CSV, Excel, or direct export from your existing system.

How long does it take?

5–7 working days from the moment we receive your data. Total timeline from first contact to delivered recommendations: typically 2–3 weeks including the scoping call.

What if the results aren't good?

We scope before we commit. If the pattern doesn't apply clearly in the scoping call, we say so and don't take the engagement. We don't take projects we don't expect to deliver meaningful results on.

Do I need to install any software?

No. You receive a recommendations document with optimal parameter values, a full experiment log, and structural findings. You implement the parameters in whatever tools you already use — ERP, spreadsheet, Shopify, or otherwise.

Is my data safe?

Client data is encrypted at rest, transmitted over HTTPS only, and deleted from all systems within 90 days of delivery. We act as a data processor under a signed DPA. No data is shared with third parties.

07 / Start
Optimisation as a Service  ·  Regnor SYS

Start with
one problem.

Share your data. Define the metric. We scope the engagement in one call and tell you exactly whether the pattern applies and by how much.