7.2 KiB
AI Agent Ideas for ARIS
Brainstorm document. Not all ideas are feasible or desirable - just capturing possibilities.
1. Feed Curation Agent
Sits between the reconciler and UI. Reranks/filters the raw feed based on learned preferences and context.
Examples:
- User always dismisses weather items in the morning → agent deprioritizes them
- User frequently taps calendar items before meetings → agent boosts them 30 minutes prior
- Deduplicates or groups related items ("3 meetings in the next hour")
- Learns time-of-day patterns (work items in morning, personal in evening)
Interface:
interface FeedAgent {
process(
items: FeedItem[],
context: Context,
userPreferences: UserPreferences,
): Promise<FeedItem[]>
}
Fits naturally as a post-processor after reconciliation.
2. Query Agent
User asks natural language questions about their feed or connected data.
Examples:
- "What's on my calendar tomorrow?"
- "When's my next flight?"
- "Summarize my day"
- "Do I have any conflicts this week?"
- "What did I have scheduled last Tuesday?"
Behavior:
- Agent queries relevant sources directly or searches recent feed history
- Synthesizes data into conversational response
- Could generate a temporary filtered feed view
3. Proactive Agent
Monitors context changes and triggers actions without user prompting.
Examples:
- Near grocery store + "buy milk" in tasks → surfaces reminder
- Calendar conflict detected → alerts before it happens
- Weather changing → suggests leaving earlier for commute
- Unusual traffic on commute route → notifies user
- Meeting in 10 minutes but user hasn't moved → gentle nudge
- Package delivered + user is home → notification
Implementation considerations:
- Needs background processing / push capability
- Privacy implications of continuous monitoring
- Battery/resource usage on mobile
4. Source Configuration Agent
Helps users set up and tune sources through conversation.
Examples:
- "Show me fewer emails"
- "Only show calendar events for work"
- "I don't care about weather"
- "Prioritize tasks over calendar"
- "Add my Spotify account"
Behavior:
- Translates natural language into source config changes
- Can explain what each source does
- Helps troubleshoot when sources aren't working
5. Feed Item Generation Agent (AI-Native Sources)
Some sources are AI-powered rather than API-driven.
Examples:
- Daily briefing: "You have 4 meetings today, busiest is 2-4pm"
- Pattern-based reminders: "You usually go to the gym on Tuesdays"
- Suggested actions: "You haven't responded to Sarah's email from yesterday"
- Weekly review: "You completed 12 tasks this week, 3 are overdue"
- Context synthesis: "Your flight lands at 3pm, you have a meeting at 5pm - that's tight"
These are sources that implement DataSource but use an LLM internally.
6. Action Agent
Executes actions on behalf of the user based on feed items.
Examples:
- "Snooze this reminder for 1 hour"
- "RSVP yes to this event"
- "Mark this task as done"
- "Send a quick reply saying I'll be late"
- "Book an Uber to this location"
Considerations:
- Needs action capabilities per source
- Confirmation UX for destructive/costly actions
- OAuth scopes for write access
7. Explanation Agent
Explains why items appear in the feed.
Examples:
- User asks "Why am I seeing this?"
- Agent explains: "This calendar event starts in 15 minutes and you marked it as important"
- Helps users understand and trust the system
- Useful for debugging source behavior
8. Cross-Source Reasoning Agent
Connects information across multiple sources to surface insights.
Examples:
- Calendar shows dinner reservation + weather source shows rain → "Bring an umbrella to dinner"
- Flight delayed + calendar has meeting after landing → "Your 3pm meeting may be affected by flight delay"
- Task "buy birthday gift" + calendar shows birthday party tomorrow → boosts task priority
- Email mentions address + maps knows traffic → "Leave by 2pm to make your 3pm appointment"
This is more complex - requires understanding relationships between items.
9. Memory Agent
Maintains long-term memory of user interactions and preferences.
Examples:
- Remembers user dismissed a recurring item 5 times → stops showing it
- Knows user's home/work locations from patterns
- Tracks what times user typically checks the feed
- Remembers user's stated preferences from conversations
- Builds implicit preference model over time
Feeds into other agents (especially Feed Curation).
10. Onboarding Agent
Guides new users through setup conversationally.
Examples:
- "What apps do you use for calendar?"
- "Would you like to see weather in your feed?"
- "What's most important to you - tasks, calendar, or communications?"
- Progressively enables sources based on conversation
- Explains privacy implications of each source
11. Anomaly Detection Agent
Surfaces unusual patterns or items that break routine.
Examples:
- "You have a meeting at 6am tomorrow - that's unusual for you"
- "This is your first free afternoon in 2 weeks"
- "You haven't completed any tasks in 3 days"
- "Your calendar is empty tomorrow - did you mean to block time?"
12. Delegation Agent
Handles tasks the user delegates via natural language.
Examples:
- "Remind me about this tomorrow"
- "Schedule a meeting with John next week"
- "Add milk to my shopping list"
- "Find a time that works for both me and Sarah"
Requires write access to various sources.
13. Summary Agent
Generates periodic summaries of feed activity.
Examples:
- Morning briefing: "Here's your day ahead"
- Evening recap: "Here's what happened today"
- Weekly digest: "This week you had 12 meetings, completed 8 tasks"
- Travel summary: "Your trip to NYC: 3 flights, 2 hotels, 5 meetings"
Could be a scheduled AI-native source.
14. Notification Agent
Decides what deserves a push notification vs. passive feed presence.
Examples:
- High-priority items get pushed
- Learns what user actually responds to
- Batches low-priority items into digest notifications
- Respects focus modes / do-not-disturb
Reduces notification fatigue while ensuring important items aren't missed.
15. Conversation Agent
General-purpose assistant that can discuss feed items.
Examples:
- User taps an item and asks "Tell me more about this"
- "What should I prepare for this meeting?"
- "What's the best route to this location?"
- "Who else is attending this event?"
Contextual conversation anchored to specific feed items.
Implementation Priority Suggestion
If implementing incrementally:
- Feed Curation Agent - highest value, fits existing architecture
- Query Agent - natural user expectation for AI assistant
- Summary Agent - low risk, high perceived value
- Proactive Agent - differentiator, but complex
- Cross-Source Reasoning - advanced, builds on others
Open Questions
- Where do agents run? (Client, server, edge?)
- How to handle agent latency in feed rendering?
- Privacy model for agent memory/learning?
- How do agents interact with third-party sources?
- Cost management for LLM calls?