Services Console

Turn AI consulting intake into a scoped audit plan and pipeline decision.

Capture prospect details, generate a deterministic engagement scope, and track status without external AI calls or hidden scoring.

Start Intake
Advisory intake journey

Move from first signal to scoped engagement with commercial clarity.

Make the path from intake, risk posture, and package comparison feel guided without hiding the deterministic rules.

  • Guided intake
  • Commercial clarity
  • Delivery path
Active Prospects
5
Saved in this browser
Default SLA
10d
Launch readiness sprint
Service Packages
4
Ready for deterministic scope
Feedback Queue
0
GitHub issues when env is set
Consulting Intake

These inputs are the only drivers of the generated scope. Changing any field updates the recommendation immediately.

Risk areas

Select the concrete risks the engagement must investigate.

Deterministic Scope Generator

The package is chosen from a fixed scoring rule. No AI, API, or background call is used.

Recommended Package

Governance + Eval Buildout

Best for growth and enterprise teams building repeatable AI assurance operations.

Critical
Timeline
4-6 weeks
Commercial
Scoped retainer
Rule path
3 stage + 4 use case + 2 timeline + 3 risks
Deliverables
  • Intake summary with assumptions, constraints, and launch decision criteria.
  • AI system inventory covering data sources, model vendors, human review, and owners.
  • Prioritized risk register with severity, owner, mitigation, and proof needed.
  • Customer journey risk map with launch approval gates.
  • Golden-task evaluation pack with acceptance thresholds.
  • Data handling review covering retention, redaction, and vendor boundaries.
  • Measurement plan for offline evals, review sampling, and production monitors.
  • Engagement roadmap with weekly milestones and decision checkpoints.
Open Questions
  • Who owns executive sign-off for launch, remediation, or pilot expansion?
  • Which production data can be sampled for evaluation without creating new risk?
  • What customer, compliance, or security evidence must be produced before launch?
  • What internal milestone should this engagement unblock?
  • Which parts of the current stack are mandatory versus replaceable?
  • Which examples define a correct, borderline, and failed response?
  • Which data classes are prohibited from model prompts or logs?
  • What signals will prove the system is safe enough to launch?
Scope explanation

Series A / scaling + Customer-facing copilots + 3 selected risk areas. The console prioritizes higher-governance packages when stage, regulated risk, security exposure, or timeline pressure increase.

Risk controls
  • Confirm named business, technical, security, and review owners before work starts.
  • Define stop/go gates for pilot, launch, and rollback decisions.
  • Require golden tasks, reviewer sampling, drift thresholds, and launch-blocking eval gates.
  • Map prohibited data, retention limits, redaction ownership, and vendor logging boundaries.
  • Define offline eval coverage, production monitors, sample rates, and failure triage SLAs.
Prospect Pipeline

Track engagement status from intake through audit delivery and follow-up.

Current intake readiness: Customer-facing copilots is not launch-ready. Treat this as a control-build engagement before any expansion, with executive sign-off and evidence review before release.

5 saved prospects
New Intake1
Northstar Health
Growth · Decision support
Model Risk Audit
Confirm PHI boundary and clinical owner
Scoping1
LedgerLoop
Series A · Agentic workflows
Launch Readiness Sprint
Map tool permissions and approval policy
Proposal Sent1
CampusOps
Seed · Internal automation
Automation Feasibility Sprint
Send fixed-fee acceptance deadline
Audit Active1
ScaleRiver
Enterprise · Customer-facing copilots
Governance + Eval Buildout
Review eval rubric with security
Follow-up1
ClausePilot
Seed · Knowledge retrieval
Launch Readiness Sprint
Schedule monitor implementation review
Pipeline Table
ProspectStatusPackageNext stepValueDue
Northstar HealthModel Risk AuditConfirm PHI boundary and clinical owner$18kJul 2
LedgerLoopLaunch Readiness SprintMap tool permissions and approval policy$12kJul 5
CampusOpsAutomation Feasibility SprintSend fixed-fee acceptance deadline$6kJul 8
ScaleRiverGovernance + Eval BuildoutReview eval rubric with security$32kJul 12
ClausePilotLaunch Readiness SprintSchedule monitor implementation review$12kJul 16
Service Packages

Fixed offers keep AGI Consultant practical: audit evidence, launch gates, and operating plans.

Automation Feasibility Sprint

Best for early internal workflows with narrow data access and clear human review.

5 business days$6k fixed
  • Feasibility scorecard
  • Workflow risk map
  • Pilot backlog

Launch Readiness Sprint

Best for teams preparing a customer-facing or revenue-critical AI launch.

10 business days$12k fixed
  • Launch gate checklist
  • Eval starter pack
  • Risk register

Model Risk Audit

Best for products with privacy, security, regulatory, or accuracy exposure.

3 weeks$18k fixed
  • Control review
  • Red-team plan
  • Executive findings deck

Governance + Eval Buildout

Best for growth and enterprise teams building repeatable AI assurance operations.

Current
4-6 weeksScoped retainer
  • Governance operating model
  • Eval roadmap
  • Monitoring design
Feedback Plumbing

The shared floating feedback widget remains wired to Firebase captures and GitHub Issues when environment variables are configured.

GitHub repo target: alibad/agiconsultant
Operating Rules
  • Keep recommendations deterministic and traceable to intake answers.
  • Position services around audit evidence, owners, and launch gates.
  • Avoid broad claims about predicting AGI timelines.
Open domain
Proposal Email

A client-ready first follow-up based on the current scope and risk posture.

Next Operator Action

Take the copied scope into a discovery call, verify assumptions, and update the prospect card once package fit and launch blockers are confirmed.