How We Deploy
ModelRocket is a premium enterprise platform for safe, explainable automation.
Each deployment involves building, testing, and calibrating a decision engine tailored to your organization, making your systems understand human intent and transforming your institutional knowledge into adaptable data-object models.
Pricing starts at $100,000 per year. Custom scoping may apply.
Enterprise |
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Multi-lingual Core Decision Engine |
Custom workflows with tailored systems integration and automation |
100,000 Qualified interactions included. (+$0.25 per incremental) |
You own all your data |
Comprehensive enterprise onboarding for business context and human intent |
Explainability and self-improvement analytics |
Dedicated account team & enterprise SLAs |
Frequently asked questions
ModelRocket creates an adaptive decision layer between your existing systems and your customers to enable complex enterprise commerce. Our Decision Engine uses proprietary behavioral prediction and decision analytics to understand complex needs like product configurations and real-world customer intents.
The technology manages multi-turn interactions safely and consistently, ensuring every automated decision follows your business logic, compliance rules, and performance goals. The result is faster revenue cycles, less friction, and more satisfied customers, all through a modular, auditable, and LLM-agnostic platform that works with the tools you already use.
ModelRocket is an adaptive decision layer designed for complex enterprise commerce.
Built on a foundation of self-improving behavioral science and decision analytics, our platform bridges what people mean with what systems must do, turning institutional knowledge into adaptable, explainable data models that improve over time.
And unlike most common AI or automation tools, it connects directly with your existing systems (CRM, proprietary search, catalogs, and workflows) to reason through real customer intent using your own business logic.
The result is automation that feels human, performs safely, and scales intelligently across every channel.
Example 1:
Regulated Industry Enterprise - “How do I do this safely?”
An employee asks an internal assistant, "What’s the safest way to send this RFP?"
How our system understands human intent
We detect the employee’s role and context (for example, HR vs. IT Security vs. Legal).
We interpret the word “safest” using the company’s own definitions (for HR, "no PII"; for Security, "meets encryption and data residency"; for Legal, "approved vendor plus NDA").
We ask targeted follow-ups only if needed (for example, "Does the RFP contain personal data?").
How we augment systems to guide the correct decision
We pull the right policies from your document management and policy portals, your DLP rules, and approved vendor lists.
We generate a recommended action path (tool, settings, recipients, redactions) and show why each step was chosen, mapping back to the relevant policy and control.
Outcome: A one-click "Do it safely" flow the employee can trust, plus a transparent explanation of the decision logic for audit and governance.
Example 2
Industrial Manufacturer - "Configure a $2M pump we can install next month."
A B2B buyer wants a complex pump with strict timing and performance constraints.
How our system understands human intent
We translate qualitative goals like “next month,” “energy-efficient,” “low maintenance” into measurable constraints and trade-offs (lead time window, efficiency ratings, service intervals).
We ask high-signal questions such as "Is installation window flexible by ±2 weeks?" or "Capex or lifetime cost priority?" to determine what matters most.
How we augment systems to guide the correct decision
We unify your ERP, PLM, inventory, pricing, and supplier data without forcing you to reorganize it.
We eliminate infeasible options (for example, parts stuck overseas) and rank viable configurations by the buyer’s weighted priorities.
We present the recommended configuration with an explanation scorecard (for example, 35% lead time, 30% energy cost, 20% output range, 15% maintenance), plus alternates if priorities shift.
Outcome: Sales and operations move faster with a configuration that is buildable, available, and defensible, backed by clear reasoning the buyer can sign off on.
Example 3
Consumer Finance - "Which credit card is right for me?"
A customer asks for a credit card recommendation.
How our system understands human intent
We infer preferences from natural language (for example, "I travel a lot but hate annual fees") and ask only the questions that matter (travel frequency, preferred airlines, fee tolerance).
We convert fuzzy terms like “worth it” into a weightable utility model (annual fee tolerance, reward multipliers, redemption value, lounge priority).
How we augment systems to guide the correct decision
We match the customer’s weighted preferences with your product catalog, pricing, and eligibility rules, plus live promotions.
We generate a ranked short list and an explainable pick (for example, "Card A: highest 2-year net value given your spend; Card B if you value lounge access over $200 per year").
We show the "why" with a transparent breakdown of how each factor influenced the recommendation.
Outcome: Higher conversions and fewer regrets. Customers see the logic behind the match, and your team has a compliant, auditable reasoning trail.
You own your data always. Every conversation, workflow, data model, and customer record generated through ModelRocket belongs to you and can be exported at any time. We believe in full data portability and transparency, so you will never be locked into our platform just to keep or use your own information.