Your AI consultant, live and ready to work with you
The RIDE Agent interviews you through a structured four-phase discovery framework — Research, Identify, Develop, Evaluate — and produces an executive-grade Work Plan. Multilingual. No login required.
The RIDE framework
A four-phase method, used in hundreds of consulting engagements, now encoded as an AI agent.
R — Research
The agent asks targeted questions about your business, context and constraints, and pulls live web evidence when needed.
I — Identify
It synthesizes the problem space and identifies the real underlying challenge, beyond the initial symptoms.
D — Develop
It proposes concrete options, trade-offs and a recommended path forward, anchored in domain expertise.
E — Evaluate
It outputs an executive-grade Work Plan you can share with stakeholders, complete with milestones and success criteria.
Who it's for
Mining & heavy industry
Operations leaders facing GISTM, TSM, water, tailings or governance decisions.
Executives
Leaders wanting a rapid, structured first draft of a Work Plan before engaging a consulting firm.
Consulting teams
Internal advisors who want a RIDE-based discovery companion for client engagements.
Ideas that feed RIDE Agent
The same editorial and engineering posture behind RIDE, explained in long form.
Featured cases connected to RIDE Agent
RIDE Agent is the front door: it triages a problem into a scoped Work Plan. These cases show what happens when that Work Plan meets Data Riders delivery.
Muiraquitãna — Amazonian AI (April 2026 launch)
A sibling agent case. Same editorial discipline, applied to a museum and a territory instead of a mine.
Read case
GISTM.ai — AI platform for tailings compliance
When a RIDE conversation surfaces a tailings-governance gap, GISTM.ai is the delivery platform.
Read case
AI agent for water balance & governance
Same architecture family as RIDE: a curated knowledge base, a tight system prompt, a curatorial loop.
Read case
Water management pilot at a mining complex
From the first RIDE conversation to diagnosis, KPIs, instrumentation and an operating AI agent.
Read case