Executive Advisor Board — Updated Product Roadmap
Date: April 14, 2026 Previous roadmap date: None — first roadmap Based on: Competitive analysis of 10 competitors + user needs research from Reddit, Indie Hackers, and startup validation communities
Current Product State
What’s Built and Shipped (v1.0.0)
| Capability |
Status |
Notes |
| 8 C-suite agent personas (CEO, CFO, CTO, CMO, COO, CHRO, GC, Board) |
Shipped |
File-based prompts in agents/*.txt |
| 76-field structured proposal form (12 sections) |
Shipped |
Most comprehensive input form in category |
| Sequential agent evaluation with streaming |
Shipped |
Progressive UI with agent queue display |
| Conflict-aware consolidation pass |
Shipped |
Separate LLM call synthesizing consensus/conflicts/concerns |
| Follow-up chat with full evaluation context |
Shipped |
Interactive exploration of any evaluation aspect |
| PDF export |
Shipped |
Client-side generation |
| AES-256-CBC encryption at rest |
Shipped |
Proposal data security |
| GDPR consent mechanism |
Shipped |
Required before submission |
| Audit trail logging |
Shipped |
All submissions and evaluations tracked |
| Rate limiting + data retention |
Shipped |
Configurable via admin settings |
| Custom agent CPT (ea_agent) |
Shipped |
Extensible via WordPress custom post types |
| n8n workflow adapter (optional) |
Shipped |
Routes through n8n for centralized monitoring |
Known Gaps from v1.0.0
| Item |
Status |
| CRO, CPO, CCO agent specifications |
Written in knowledgebase/agents-extended/ but NOT wired into runtime |
| Budget cap enforcement |
Admin setting exists but not enforced in API call paths |
| Widget support |
Referenced in CLAUDE.md but not implemented |
| Embeddings/guardrails/disambiguations |
Directory placeholders exist but are empty |
| Model reference mismatch |
Plugin header says “Claude Opus 4.5” but code defaults to Sonnet 4 |
Competitive Landscape Changes (Since Last Review)
New Competitor Entrants
| Competitor |
Type |
What They Do |
Threat Level |
|
Consensus AI (boardconsensus.ai) |
SaaS |
Direct boardroom simulator — assigns LLMs to C-suite roles, simulates debate with conflict flagging and voting, produces strategic briefs |
HIGH — most direct competitor |
| OpenClaw Multi-Agent Councils |
Framework/SaaS |
Multi-agent council workflows with CFO/CMO/CTO/COO personas, parallel monitoring, persistent memory across sessions |
MEDIUM — framework-oriented, not turnkey |
| Verve Intelligence |
SaaS |
AI startup validation platform delivering investor-grade due diligence in 30 minutes with “kill vector” analysis |
MEDIUM — overlaps on proposal evaluation |
| Deloitte Zora AI |
Enterprise |
Ready-to-deploy agents for finance, HR, supply chain, procurement, sales, marketing |
LOW — enterprise-only, not self-hosted |
| Deloitte C-Suite AI for CFOs |
Enterprise |
CFO-specific insights across 10 dimensions (IR, risk, M&A, cost optimization, ESG, talent) |
LOW — single-role, enterprise pricing |
Features Competitors Have Added
| Feature |
Who Has It |
Our Status |
| Multi-model support (GPT-4o, Claude, Gemini per agent) |
Consensus AI, OpenClaw |
Single model (Claude) only |
| Voting/polling mechanics for agent disagreements |
Consensus AI |
No voting — consolidation pass only |
| Persistent organizational memory across sessions |
OpenClaw, ChatGPT Projects |
No persistence — each evaluation is independent |
| Mobile app (iOS) |
Consensus AI (App Store listing) |
WordPress responsive only |
| Second/third-order effect analysis |
Consensus AI |
Not explicitly structured |
| Agent-to-agent debate (observable back-and-forth) |
Consensus AI, CrewAI, AutoGen |
Sequential evaluation — no inter-agent dialogue |
Eroded Differentiators
| Previously Unique Feature |
Competitor Matching It |
Erosion Level |
| Multi-perspective C-suite evaluation |
Consensus AI (5 agents), OpenClaw councils, ChatGPT Projects advisory boards |
Significant — no longer unique concept |
| Structured proposal input form |
Verve Intelligence (7-phase validation framework) |
Partial — our 76-field form remains most structured |
| Conflict identification between agents |
Consensus AI (conflict flagging + voting) |
Significant — Consensus adds voting resolution |
What Remains Differentiated
| Feature |
Why It’s Still Unique |
| 76-field, 12-section structured proposal form |
Most comprehensive structured input in category — forces rigorous preparation |
| Self-hosted WordPress deployment |
Only multi-agent board simulator that runs on customer’s own infrastructure |
| 8 shipped agents (11 specified) |
Broadest C-suite coverage including CHRO, GC, Board |
| GDPR/encryption/audit trail built in |
Enterprise-grade data handling in a self-hosted plugin |
| Extensible via WordPress CPT + hooks/filters |
No-code agent customization for WordPress users |
Updated Gap Analysis
Parity Gaps (Must-Have to Compete)
| # |
Feature |
Who Has It |
Priority |
Effort |
| P1 |
Wire CRO, CPO, CCO agents into runtime |
Consensus (5 agents), OpenClaw (4+) |
Critical |
S — specs exist, need runtime integration |
| P2 |
Budget cap enforcement in API paths |
Table stakes for production use |
Critical |
S — setting exists, enforce in call path |
| P3 |
Multi-model support (at least Claude + GPT-4o) |
Consensus, OpenClaw, AI Agent Hub WP |
High |
M — abstract model provider in shared Claude API client |
| P4 |
Model reference cleanup (header vs runtime) |
Internal quality |
Critical |
S — trivial text fix |
White-Space Opportunities (Differentiation)
| # |
Opportunity |
Why It’s Unique |
User Need Evidence |
Priority |
| W1 |
Proposal version comparison (“v1 vs v2” re-evaluation) |
No competitor offers before/after delta analysis showing how revisions improved scores |
Users on Reddit report needing iterative feedback loops, not one-shot evaluation |
High |
| W2 |
Persistent organizational context across evaluations |
Self-hosted WordPress stores org context locally — competitors can’t match data sovereignty |
#1 Reddit complaint: AI “forgets everything every conversation” costing 91+ hours/year |
High |
| W3 |
“Boardroom Questions” preparation drill |
Generate likely tough questions each agent would ask in a live board meeting, with coaching on answers |
Users say the tool should teach them to “anticipate questions from different perspectives” (from docs) |
High |
| W4 |
Industry-specific evaluation templates (SaaS, healthcare, manufacturing, nonprofit) |
Pre-configured proposal templates + agent rubric adjustments per industry vertical |
Verve Intelligence does vertical validation; no board simulator does industry-tuned evaluation |
Medium |
| W5 |
Agent personality spectrum (conservative ↔ aggressive risk tolerance) |
Let users dial agent risk appetite to simulate different board compositions |
No competitor offers tunable agent personalities — all use fixed personas |
Medium |
AI-Native Opportunities
| # |
Opportunity |
How Claude/AI Enables It |
Competitor Status |
| A1 |
Proactive weakness detection before full board evaluation |
Pre-scan proposal for obvious gaps using lightweight Claude call, suggest improvements before costly 8-agent run |
No competitor offers pre-evaluation coaching |
| A2 |
Agent-to-agent deliberation (observable debate) |
Extended thinking + multi-turn agent exchange where CFO challenges CTO’s cost assumptions, etc. |
Consensus has debate mechanics; ours could show the reasoning chain |
| A3 |
Executive summary → action items → project plan pipeline |
Post-evaluation, generate a concrete implementation plan from the board’s recommendations |
All competitors stop at advisory output — none generate actionable project plans |
| A4 |
Tavily-powered real-time market context injection |
Agents cite current market data, competitor info, and industry benchmarks during evaluation |
No competitor injects live web research into agent evaluations |
| A5 |
RAG knowledge base per organization |
Embed company documents (financials, org charts, strategy docs) for context-aware evaluation |
OpenClaw has persistent memory; WordPress + Pinecone enables private, self-hosted RAG |
Updated Feature Roadmap
Tier 1 — Critical (Next Build Cycle)
- [ ] Wire CRO, CPO, CCO agents into runtime — Specifications exist in knowledgebase/agents-extended/; register as default agents in get_active_agents(), add .txt prompt files to agents/ — S
- [ ] Enforce budget cap in API call paths — Check ea_budget_cap setting before each Claude API call, return user-friendly error when exceeded — S
- [ ] Fix model reference mismatch — Update plugin header description to match runtime default (claude-sonnet-4-20250514); add admin setting for model selection — S
- [ ] Proposal version comparison — Store evaluation results with version numbers; add “Revise & Resubmit” flow that pre-fills previous proposal data; generate delta report showing score changes per agent — M
- [ ] Pre-evaluation proposal scan — Lightweight Claude call (~500 tokens) that identifies missing sections, weak areas, and obvious gaps before running full 8-11 agent evaluation; saves users money on incomplete proposals — M
Tier 2 — High Value (Near-Term)
- [ ] Persistent organizational context — New DB table storing org profile (industry, size, strategy docs summary, previous evaluations); auto-inject into agent prompts; accumulates across evaluations — L
- [ ] Boardroom Questions drill mode — Post-evaluation feature generating 5-10 tough questions per agent with coaching on how to answer; exportable as preparation worksheet — M
- [ ] Agent-to-agent deliberation display — After individual evaluations, run a second pass where agents with conflicting assessments exchange one rebuttal each; display as observable debate thread — L
- [ ] Multi-model provider support — Abstract model selection in shared Claude API client; support Claude, GPT-4o, and Gemini; per-agent model assignment in admin — M
- [ ] Industry-specific evaluation templates — 4 starter templates (SaaS/Tech, Healthcare, Manufacturing, Nonprofit) with pre-configured form defaults and adjusted agent rubrics — M
Tier 3 — Strategic (Medium-Term)
- [ ] Tavily-powered market context injection — Before agent evaluation, run Tavily search for industry/competitor data; inject as context alongside proposal; agents cite real market data — L
- [ ] RAG knowledge base per organization — Pinecone integration using shared library client; users upload company docs (org chart, financials, strategy deck); agents reference during evaluation — L
- [ ] Agent personality tuning — Admin slider for each agent (conservative ↔ aggressive risk tolerance); adjusts prompt language and evaluation thresholds — M
- [ ] Executive summary → action plan pipeline — Post-consolidation feature generating a structured implementation plan with owners, timelines, milestones, and dependencies from board recommendations — M
- [ ] Evaluation history dashboard — User-facing dashboard showing all past evaluations, score trends, and improvement tracking across proposal versions — M
Tier 4 — Exploratory (Future Consideration)
- [ ] Parallel agent processing — Run agents concurrently (3-4 at a time) for faster evaluation; requires rate limit management and UI redesign for non-sequential display
- [ ] Mobile-optimized evaluation view — Dedicated mobile layout for reviewing results and chat on phone/tablet (form submission remains desktop-recommended)
- [ ] WordPress Multisite support — Shared agent library with per-site customization; centralized billing/usage tracking across network
- [ ] SaaS distribution option — Hosted version for users without WordPress; would require full rewrite of auth/storage layer
- [ ] Board composition presets — Named board configurations (e.g., “Growth Board” emphasizes CMO/CRO/CPO; “Risk Board” emphasizes CFO/GC/COO) with one-click selection
- [ ] Webhook/Zapier integration — Post-evaluation webhook firing to external systems for workflow integration (Slack notifications, CRM updates, project management tools)
Removed / Deprioritized Items
| Item |
Disposition |
Rationale |
| Widget support |
Removed |
Referenced in CLAUDE.md but the shortcode approach is sufficient; widgets add complexity with no clear user value for a full-page evaluation tool |
| Ecclectic advisor variants |
Deprioritized to Tier 4 |
Creative/non-standard advisors (from knowledgebase) are interesting but dilute the core professional advisory positioning; revisit after core agents are complete |
Cross-Product Opportunities
| Opportunity |
Products Involved |
Description |
| Multi-model provider abstraction |
Executive Advisor, Career Coach, all Claude-powered plugins |
Abstract model selection out of individual plugins into shared library ITI Claude API client; support Claude, GPT-4o, Gemini with per-plugin configuration |
| Persistent user context pattern |
Executive Advisor, Career Coach, Estate Manager |
WordPress-based organizational/user profile that accumulates across sessions; shared DB schema and injection pattern |
| Tavily market research integration |
Executive Advisor, SEO Assistant, AEO Optimizer, Factchecker |
Shared pattern for injecting real-time web research into agent prompts; already in shared library (class-iti-tavily-api.php) but needs agent-integration pattern |
| PDF export improvements |
Executive Advisor, Career Coach, Journey Mapper |
Shared PDF generation with consistent branding, better formatting, and server-side rendering option |
| Pre-evaluation input validation |
Executive Advisor, Career Coach |
Lightweight AI scan of user inputs before expensive multi-agent processing; shared pattern for “is this input ready?” checks |
New Skills Identified
1. multi-agent-deliberation-design
-
Category: AI architecture
-
Description: Design multi-agent deliberation workflows including agent-to-agent debate, voting mechanics, conflict resolution strategies, and consensus synthesis. Use when building products where multiple AI agents must evaluate the same input from different perspectives and resolve disagreements.
- Trigger scenarios:
- Designing agent-to-agent debate features for Executive Advisor
- Building any product requiring structured AI disagreement and resolution
- Evaluating CrewAI vs AutoGen vs custom orchestration for deliberation
- Designing voting/polling mechanics for multi-agent outputs
- Optimizing token costs in multi-agent sequential vs parallel pipelines
-
Products that need it: Executive Advisor (primary), any future multi-agent ITI product
-
Source justification: Consensus AI’s voting mechanics, CrewAI/AutoGen benchmark showing 42-86% decision accuracy variance by framework, OpenClaw council architecture — deliberation design is a methodology gap in the current Skills library
2. business-proposal-evaluation
-
Category: Business consulting
-
Description: Evaluate business proposals through structured executive rubrics covering financial viability, strategic alignment, operational feasibility, legal/compliance risk, and organizational readiness. Use when building or refining AI agents that assess business proposals from specific C-suite perspectives.
- Trigger scenarios:
- Writing or refining Executive Advisor agent prompts
- Building evaluation rubrics for new C-suite personas
- Creating industry-specific evaluation templates
- Designing proposal scoring and decision frameworks
- Coaching users on proposal preparation and weakness identification
-
Products that need it: Executive Advisor (primary), potentially Career Coach (for career proposal evaluation)
-
Source justification: The existing executive-* Skills (CEO, CFO, etc.) cover individual perspectives but no Skill covers the meta-methodology of structured multi-perspective proposal evaluation as a discipline
Sources
Competitors Analyzed
| Competitor |
Category |
Source |
| Consensus AI (boardconsensus.ai) |
Direct — AI boardroom simulator |
Web search, product page |
| OpenClaw Multi-Agent Councils |
Direct — multi-agent advisory workflows |
Web search, product page (launchmyopenclaw.com) |
| McKinsey Lilli |
Adjacent — enterprise AI advisor platform |
Web search, mckinsey.com |
| Deloitte Zora AI |
Adjacent — enterprise agentic AI |
Web search, deloitte.com press release |
| Deloitte C-Suite AI for CFOs |
Adjacent — role-specific executive AI |
Web search, deloitte.com |
| Deloitte Enterprise AI Navigator |
Adjacent — multi-perspective AI strategy |
Web search, deloitte.com press release |
| ChatGPT Projects (advisory board pattern) |
Substitute — DIY advisory boards |
Web search, flexos.work, newcfo.ai |
| Verve Intelligence |
Adjacent — AI startup validation |
Web search, marketminute.com |
| CrewAI / AutoGen frameworks |
Platform — multi-agent orchestration |
Web search, dev.to, benchmarks |
| WordPress AI Agent Hub plugin |
Platform — WP multi-agent |
Web search, wordpress.org |
User Needs Sources
| Source |
Key Insight |
| Indie Hackers analysis of 500 Reddit AI complaints |
#1 frustration is memory/context loss (91+ hrs/year wasted), not hallucination |
| r/AiForSmallBusiness (Marblism review) |
Users want $39-100/month tools saving 21+ hrs/week; 70% draft quality is acceptable with human refinement |
| r/smallbusiness thread |
Users frustrated by overhyped AI tools that “don’t live up to what the AI gurus make you believe” |
| r/SaaS thread |
Gap between “glorified chatbots” and enterprise-only ($1K+/month) platforms |
| r/AiForSmallBusiness (40+ tools review) |
Real value comes from combining 2-4 specialized tools; consistency and reproducibility matter more than raw capability |
Search Queries Used
- “AI business advisor consultant tools multi-agent personas 2026 competitors”
- “AI executive advisory tool multi-perspective business analysis features 2026”
- “Reddit r/consulting r/startups r/smallbusiness AI business advisor tool complaints 2026”
- “ChatGPT custom GPTs business advisor board of directors multi-agent simulation 2026”
- “AI multi-agent debate deliberation business decisions startup tools 2026 CrewAI AutoGen”
- “Reddit AI business proposal evaluation feedback tool startups consulting 2026”
- “Consensus AI boardroom simulator features pricing 2026”
- “WordPress AI consultant advisor plugin multi-agent 2026”