8.4 KiB
8.4 KiB
Fidelity AI Workspace Rules
This repository is a companion workspace for Fidelity iOS work, not the product codebase.
OpenCode should treat this project as a persistent context layer used to:
- keep current project state accurate
- capture durable information from daily work
- draft standups and Mattermost messages
- improve communication for the current manager or stakeholder in natural professional English
Hot Context
Keep the always-loaded context small. The hot set is:
profiles/fidelity/profile.mdagent-memory/behavior/agent-behavior.mdagent-memory/behavior/learning-sessions.mdagent-memory/memory/promotion-rules.mdagent-memory/integrations/technical-verification.mdagent-memory/workflows/ai-to-ai-prompting.mdproject-knowledge/00-start/start-here.mdproject-knowledge/01-current/current-work.mdproject-knowledge/01-current/work-items.mdproject-knowledge/03-context/project.mdproject-knowledge/03-context/process/communication.mdproject-knowledge/03-context/ios/index.mdproject-knowledge/03-context/ios/project-swift-guidance.mdproject-knowledge/04-people/manager.mdproject-knowledge/04-people/index.md
Load everything else lazily when the task actually needs it.
Do not preemptively load broad context sets, all work-item files, or all process notes unless the current task clearly requires them.
Required Behavior
- Assume the workspace may contain stale context until checked.
- Treat
project-knowledge/as the canonical clean project memory for humans and AI. Treatagent-memory/as agent operating memory. Treatai/inbox/as raw evidence only. - Treat
scripts/memory/as the project-agnostic interface for creating notes, searching memory, querying Bases, and running project knowledge health checks. - Treat
scripts/obsidian/as the current Obsidian adapter, not as the core memory abstraction. - Keep Obsidian Bases clean: templates in
project-knowledge/09-templates/must not be treated as real notes, and role mapping files such asproject-knowledge/04-people/manager.mdmust not be typed as people. - Maintain useful project-note properties when editing canonical notes, especially work-item relationships (
systems,workstreams,people,related) and daily note fields (focus,work-items,blockers). - Before answering questions that depend on current work state, inspect
project-knowledge/01-current/current-work.mdand the latest relevant daily note underproject-knowledge/06-daily/. - Prefer lazy loading over eager loading. Pull in only the smallest relevant files for the active task.
- If
ai/inbox/mattermost-latest.mdexists, inspect it for fresher communication context before answering standup, status, or manager-message prompts. - If the user asks for the latest/last/recent Mattermost message, the latest message from Jeff/current manager, or what someone just said, synchronize Mattermost first instead of relying on existing inbox context.
- If automatic refresh is uncertain, use the explicit latest-message flow: run the Mattermost sync command, then answer from the refreshed inbox only.
- For learning-style questions, answer from known context and verified facts only; label unknowns, assumptions, and inferences instead of inventing missing details.
- For learning sessions, prioritize durable architecture, process, ownership, debugging strategy, release mechanics, domain concepts, and decision rules over transient ticket status.
- If the user asks what to clarify, ask 3 to 5 high-leverage questions that would help a senior engineer ramp into the project, and include why each matters.
- Ask a concise clarification question when missing context materially changes the answer.
- If the user corrects or teaches the agent during a learning session, update the smallest correct canonical file or behavior surface when that learning should persist.
- For any meaningful prompt, decide whether the interaction introduces or corrects project memory.
- For analysis, review, translation, or drafting requests, answer first unless a memory update is required to avoid losing a clear durable fact.
- Do not create new canonical notes before answering unless the user asked to save the information, the destination is obvious, and the write is small and non-blocking.
- Prefer updating existing canonical files over creating new files during the critical path of a user-facing answer.
- If a sync command, extraction script, or inbox refresh fails, do not update logs, state, or context files from that failed attempt.
- Treat sync failures as operational errors, not project context.
mattermost-syncshould automatically promote high-confidence project facts without asking what to promote.- Prefer
project-knowledge/06-daily/as the default destination for new Mattermost-derived facts. - Promote to
project-knowledge/01-current/current-work.mdonly when the fact materially changes active work over the next few days. - Keep explicit Jira IDs and approved titles visible in
project-knowledge/02-work-items/and summarize active items inproject-knowledge/01-current/work-items.mdwhen they are useful for future standups or manager updates. - Promote to
project-knowledge/03-context/project.mdonly when the fact changes durable project understanding. - When a repeatedly mentioned person becomes relevant to project flow, create or update a file under
project-knowledge/04-people/. - Keep role-to-person mapping explicit in
project-knowledge/04-people/manager.mdand the roster inproject-knowledge/04-people/index.md. - Never promote tooling chatter, sync status, or generic conversation noise.
- Direct user prompts are also memory sources. Do not limit memory updates to explicit sync commands.
- If a new prompt corrects prior understanding, update the canonical file directly instead of keeping both versions alive.
- Do not ask what should be saved when the correct destination is already clear.
- If the user provides durable new facts, update the appropriate context files instead of leaving the new information only in chat history.
- When the prompt is primarily asking for analysis of a screenshot, message, or document, do not interrupt the answer to perform proactive note creation unless that persistence is the explicit goal.
- When creating a new canonical note from a known type, prefer
scripts/memory/memory.sh create <type> <slug> [title]so type-to-folder routing stays centralized. - If the Obsidian CLI adapter fails, fall back to direct Markdown operations and treat the failure as tooling status, not project context.
- If a previous context file is now stale or inaccurate, update that file directly.
- Prefer correcting canonical context over appending contradictory notes.
- Keep changes concise and auditable.
- When the topic is architectural or historical, prefer updating the relevant file under
project-knowledge/03-context/systems/,project-knowledge/03-context/workstreams/, or project-facingproject-knowledge/03-context/process/instead of overloadingproject-knowledge/03-context/project.md. - When the user asks Swift, SwiftUI, iOS architecture, testing, or debugging questions, use
project-knowledge/03-context/ios/and the local OpenCode iOS skills before answering. - When the user asks about programming concepts, dependency tooling, package managers, CI/build tooling, testing frameworks, or practices that may be outdated or opinion-sensitive, verify against primary/current documentation before making strong claims.
- For CocoaPods, podspecs, private specs repos, trunk/CDN behavior, Swift Package Manager, Xcode, Swift, Apple frameworks, and similar project-linked tooling, do not rely only on memory.
- When the user asks for a prompt for another AI, GitHub Copilot, or the Fidelity development machine, use
agent-memory/workflows/ai-to-ai-prompting.mdand generate a self-contained prompt. - If a Swift/iOS recommendation depends on current Apple APIs, Xcode behavior, or framework migration guidance, verify against official Apple or Swift documentation before making strong claims.
- Be aware that this is an agentic workspace. If a recurring gap appears in answers, propose and when appropriate apply a workspace improvement to commands, agents, skills, prompts, or process notes.
Communication
When drafting or polishing messages:
- use Context, Observation, Action when appropriate
- clarify auth state when relevant
- separate external reports from regressions
- preserve technical meaning while improving English