98 lines
6.9 KiB
Markdown
98 lines
6.9 KiB
Markdown
# Roadmap: Konstruct
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## Overview
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Konstruct ships in three coarse phases ordered by dependency: first build the secure multi-tenant pipeline and prove that a Slack message triggers an LLM response (Phase 1 — Foundation), then add the agent capabilities that make it a real product: memory, tools, WhatsApp, and escalation (Phase 2 — Agent Features), then complete the operator-facing experience so tenants can self-onboard and pay (Phase 3 — Operator Experience). Phase 3 is gated on DB schema stability, which only exists after Phase 2 defines the memory and tool data models.
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## Phases
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**Phase Numbering:**
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- Integer phases (1, 2, 3): Planned milestone work
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- Decimal phases (2.1, 2.2): Urgent insertions (marked with INSERTED)
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Decimal phases appear between their surrounding integers in numeric order.
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- [x] **Phase 1: Foundation** - Secure multi-tenant pipeline with Slack end-to-end and basic agent response (completed 2026-03-23)
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- [x] **Phase 2: Agent Features** - Persistent memory, tool framework, WhatsApp integration, and human escalation (gap closure in progress) (completed 2026-03-24)
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- [x] **Phase 3: Operator Experience** - Admin portal, tenant onboarding, and Stripe billing (gap closure in progress)
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## Phase Details
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### Phase 1: Foundation
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**Goal**: Operators can deploy the platform, a Slack message triggers an LLM response back in-thread, and no tenant can ever see another tenant's data
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**Depends on**: Nothing (first phase)
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**Requirements**: CHAN-01, CHAN-02, CHAN-05, AGNT-01, LLM-01, LLM-02, TNNT-01, TNNT-02, TNNT-03, TNNT-04, PRTA-01, PRTA-02
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**Success Criteria** (what must be TRUE):
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1. A user can send a Slack @mention or DM to the AI employee and receive a coherent reply in the same thread — end-to-end in under 30 seconds
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2. Tenant A's messages, agent configuration, and conversation data are completely invisible to Tenant B — verified by integration tests with two-tenant fixtures
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3. A request that exceeds the per-tenant or per-channel rate limit is rejected with an informative response rather than silently dropped
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4. The LLM backend pool routes requests through LiteLLM to both Ollama (local) and Anthropic/OpenAI, with automatic fallback when a provider is unavailable
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5. A new AI employee can be configured with a custom name, role, and persona — and that persona is reflected in responses
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6. An operator can create tenants and design agents (name, role, persona, system prompt, tools, escalation rules) via the admin portal
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**Plans**: 4 plans
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Plans:
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- [ ] 01-01: Monorepo scaffolding, Docker Compose dev environment, shared Pydantic models, DB schema with RLS
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- [ ] 01-02: LiteLLM backend pool service with Ollama + Anthropic/OpenAI providers and Celery async dispatch
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- [ ] 01-03: Channel Gateway (Slack adapter), Message Router (tenant resolution), basic Agent Orchestrator (single agent, no memory/tools)
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- [ ] 01-04: Next.js admin portal with Auth.js v5, tenant CRUD, and Agent Designer module
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### Phase 2: Agent Features
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**Goal**: The AI employee maintains conversation memory, can execute tools, handles WhatsApp messages, and escalates to humans when rules trigger — making it a capable product rather than a demo
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**Depends on**: Phase 1
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**Requirements**: CHAN-03, CHAN-04, AGNT-02, AGNT-03, AGNT-04, AGNT-05, AGNT-06
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**Success Criteria** (what must be TRUE):
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1. The AI employee remembers context from earlier in the same conversation and can reference it accurately — tested at 30+ conversation turns without degradation
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2. A user can send a WhatsApp message to the AI employee and receive a reply — with per-tenant phone number isolation and business-function scoping enforced per Meta 2026 policy
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3. The agent can invoke a registered tool (e.g., knowledge base search) and incorporate the result into its response
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4. When a configured escalation rule triggers (e.g., failed resolution attempts), the conversation and full context are handed off to a human with no information lost
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5. Every LLM call, tool invocation, and handoff event is recorded in an immutable audit trail queryable by tenant
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**Plans**: 6 plans
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Plans:
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- [ ] 02-01: Conversational memory layer (Redis sliding window + pgvector long-term storage with HNSW index)
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- [ ] 02-02: Tool framework (registry, schema-validated execution, audit logging) — split into audit+tools+wiring
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- [ ] 02-03: WhatsApp adapter (Business Cloud API, per-tenant phone numbers, media download, Meta policy compliance)
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- [ ] 02-04: Human escalation/handoff with full context transfer and audit trail
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- [ ] 02-05: Cross-channel media support and multimodal LLM interpretation (Slack file_share, image_url content blocks, channel-aware outbound routing)
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- [ ] 02-06: Gap closure — re-wire escalation handler and WhatsApp outbound routing into pipeline, add tier-2 system prompt scoping
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### Phase 3: Operator Experience
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**Goal**: An operator can sign up, onboard their tenant through a web UI, connect their messaging channels, configure their AI employee, and manage their subscription — without touching config files or the command line
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**Depends on**: Phase 2
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**Requirements**: AGNT-07, LLM-03, PRTA-03, PRTA-04, PRTA-05, PRTA-06
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**Success Criteria** (what must be TRUE):
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1. An operator can connect Slack and WhatsApp to their tenant through a guided in-portal wizard without reading documentation
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3. A new tenant completes the full onboarding sequence (connect channel -> configure agent -> send test message) in under 15 minutes
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4. An operator can subscribe, upgrade, and cancel their plan through Stripe — and feature limits are enforced automatically based on subscription state
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5. The portal displays per-tenant agent cost and token usage, giving operators visibility into spending without requiring access to backend logs
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**Plans**: 5 plans
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Plans:
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- [ ] 03-01-PLAN.md — Backend foundation: DB migrations, billing models, encryption service, channel/billing/usage API endpoints, audit logger token metadata
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- [ ] 03-02-PLAN.md — Channel connection wizard (Slack OAuth + WhatsApp manual), onboarding flow with 3-step stepper, BYO API key settings page
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- [ ] 03-03-PLAN.md — Stripe billing page with subscription management, status badges, Checkout and Billing Portal redirects
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- [ ] 03-04-PLAN.md — Cost tracking dashboard with Recharts charts, budget alert badges, time range filtering
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- [ ] 03-05-PLAN.md — Gap closure: mount Phase 3 API routers on gateway, fix Slack OAuth and budget alert field name mismatches
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## Progress
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**Execution Order:**
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Phases execute in numeric order: 1 -> 2 -> 3
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| Phase | Plans Complete | Status | Completed |
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|-------|----------------|--------|-----------|
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| 1. Foundation | 4/4 | Complete | 2026-03-23 |
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| 2. Agent Features | 6/6 | Complete | 2026-03-24 |
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| 3. Operator Experience | 4/5 | Gap closure | — |
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---
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## Coverage Notes
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**LLM-03 conflict resolved:** BYO API keys confirmed in v1 scope per user decision during Phase 3 context gathering. Implemented via Fernet encryption in Phase 3.
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---
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*Roadmap created: 2026-03-23*
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*Coverage: 25/25 v1 requirements mapped*
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