The operating system for engineering outcomes

Engineering is now measurable.

Binomial transforms code, pull requests, tickets, delivery workflows, and AI-assisted engineering activity into a financial and operational model of engineering performance.

For CTOs, CFOs, and operators who need more than dashboards, anecdotes, and lagging indicators.

Built for leadership teams managing modern, AI-assisted engineering organizations.

Connects to GitHub and Jira

Models risk, cost, quality, throughput, and control

Measures AI-driven engineering behavior and expense

Built for executive decision-making

AI Economics

AI is changing how software gets built. Binomial measures whether it is making engineering better.

Modern engineering organizations are increasingly AI-assisted. Binomial helps leadership understand what AI tooling costs, where it is being used, whether it is increasing throughput, and where it may be introducing churn, fragility, or risk.

The future of engineering is AI-assisted. The future of leadership is knowing what that costs and what it delivers.

AI Spend

Track AI tooling and inference cost across teams, repos, and workflows.

AI Adoption

Measure actual usage patterns, not vanity rollout metrics.

AI Effectiveness

Compare AI-driven engineering activity against throughput, review burden, rework, and delivery outcomes.

AI Risk

Identify where AI-generated code is increasing duplication, hallucinated logic, weak testing, or architectural drift.

System framing

Most organizations instrument engineering. Very few model it.

Engineering is now one of the largest drivers of cost, speed, execution risk, and operational complexity in modern companies. Yet most leadership teams still manage it through fragmented tools, lagging metrics, and intuition. Binomial creates a unified model of how engineering actually performs, including the growing financial and operational impact of AI-assisted development.

Workflow Intelligence

Connect ticketing and delivery systems to reveal drag, churn, delay, and execution friction.

Financial Intelligence

Quantify remediation cost, technical debt concentration, engineering inefficiency, and AI tooling expense in executive terms.

Governance Intelligence

Measure standards drift, compliance posture, ownership fragility, and policy adherence before they become systemic problems.

Outcome pillars

The metrics that matter are not buried in tooling.

Risk

Surface architectural, security, delivery, compliance, and AI-generated code exposure before it compounds.

Cost

Translate technical drag, code decay, and engineering inefficiency into quantified financial impact.

Throughput

Measure how work actually moves through the system, not how teams describe it.

Control

Turn standards, governance, and operating expectations into enforceable mechanisms.

AI Economics

Understand where AI is creating leverage, where it is adding cost, and where it is increasing operational risk.

Product modules

One platform. Multiple lenses.

Binomial Evaluate

Deep analysis where engineering work is created.

Deep analysis across pull requests, code quality, architecture, security, compliance, and AI-generated patterns.

Binomial Model

The living system underneath the metrics.

A living model of engineering performance built from source control, workflow, and delivery telemetry.

Binomial Policy

Governance that is active, inspectable, and enforceable.

Codify standards, governance, and compliance expectations into active enforcement.

Binomial Cost

Translate engineering drag into leadership visibility.

Translate remediation effort, technical drag, engineering inefficiency, and budget priorities into leadership visibility.

Binomial AI Economics

Distinguish real AI leverage from expensive noise.

Track AI spend, adoption, code impact, and engineering outcomes to separate measurable leverage from trend-driven cost.

Executive metrics preview

An executive control surface for modern engineering.

Featured insight

Your engineering organization is not under-instrumented. It is under-modeled.

Binomial reveals what activity metrics and isolated tooling cannot.

Delivery Risk Index Elevated
Estimated Remediation Exposure $2.4M
AI Tooling Spend $418K annualized
AI Leverage Score Positive in 3 teams, negative in 1
Architecture Drift 7 systems flagged
Review Efficiency +18%
Knowledge Fragility 14 critical files
Compliance Posture 2 material concerns

Why Binomial

Beyond dashboards. Beyond developer tooling.

Not just activity tracking

Modeled outcomes

Not just code scanning

System-level intelligence

Not just visibility

Enforceable control

Not just AI adoption

Measurable AI economics

Not just for engineering

For the business

Final call

Make engineering legible.

Binomial gives leadership a system for understanding how software is built, where risk accumulates, how delivery degrades, what AI is costing, and what it will take to improve.