بنقرة واحدة
bolta-agent-memory
Store and retrieve information across job runs - how agents learn and improve over time
التثبيت باستخدام Codex أو Claude انسخ هذا Prompt والصقه في Codex أو Claude أو مساعد آخر ليراجع صفحة Skill ويثبّتها لك.
القائمة
Store and retrieve information across job runs - how agents learn and improve over time
التثبيت باستخدام Codex أو Claude انسخ هذا Prompt والصقه في Codex أو Claude أو مساعد آخر ليراجع صفحة Skill ويثبّتها لك.
استنادا إلى تصنيف SOC المهني
Activate a paused job after preview and voice validation - the explicit trust moment where user says "yes, start posting"
Modify an existing agent's configuration including persona, model tier, enabled skills, and job settings
Create and onboard a new AI agent teammate from marketplace presets with conversational discovery and preview generation.
Handle @mention interactions where users ask agents for quick feedback on posts and drafts
Bolta Skills Registry - canonical index and orchestration layer for all Bolta skills, organized by plane
Export audit/activity events for a workspace (agent + human actions) for debugging and compliance.
| name | bolta.agent.memory |
| version | 2.0.0 |
| description | Store and retrieve information across job runs - how agents learn and improve over time |
| category | agent |
| roles_allowed | ["Viewer","Creator","Editor","Admin"] |
| required_scopes | ["workspace:read"] |
| agent_types | ["content_creator","reviewer","analytics","engagement","custom"] |
| safe_defaults | {"memory_scoped_per_agent":true,"allow_memory_updates":true} |
| tools_required | ["bolta.remember","bolta.recall"] |
| inputs_schema | {"type":"object","properties":{"action":{"type":"string","enum":["remember","recall"],"description":"Memory operation"},"key":{"type":"string","description":"Memory key (required for remember, optional for recall)"},"value":{"type":"string","description":"Value to store (required for remember)"}}} |
| outputs_schema | {"type":"object","properties":{"success":{"type":"boolean"},"key":{"type":"string"},"value":{"type":"string"},"updated_at":{"type":"string"},"count":{"type":"number","description":"Number of memories (for recall all)"},"memories":{"type":"array","items":{"type":"object"}}}} |
| organization | bolta.ai |
| author | Bolta Team |
Store and retrieve information across job runs. This is how agents learn and improve over time, accumulating context, preferences, and patterns that inform future decisions.
Purpose: Store a key-value pair in long-term memory
1. Validate input
2. Store memory
3. Return confirmation
Purpose: Retrieve information from long-term memory
1. If key provided
2. If key omitted
3. If memory not found
remember response:
{
"success": true,
"message": "Remembered: best_posting_time",
"action": "updated"
}
recall response (single key):
{
"success": true,
"key": "audience_preference",
"value": "Educational content performs 3x better than promotional. Focus on how-to guides.",
"updated_at": "2026-02-15T14:30:00Z"
}
recall response (all memories):
{
"success": true,
"count": 3,
"memories": [
{
"key": "audience_preference",
"value": "Educational content performs 3x better...",
"updated_at": "2026-02-15T14:30:00Z"
},
{
"key": "best_posting_time",
"value": "Thursday 9am EST - 2x avg engagement",
"updated_at": "2026-02-10T09:00:00Z"
}
]
}
Content Creator:
audience_preference — What content performs bestbest_posting_time — Optimal timing patternssuccessful_hooks — Hook styles that workavoid_topics — Topics that underperformedplatform_learnings — Platform-specific insightsReviewer:
creator_patterns — Common issues to watch forapproval_criteria — What makes content approve-worthyuser_preferences — How human likes feedback deliveredAnalytics:
performance_benchmarks — Baseline metrics by platformseasonal_patterns — Quarterly/monthly trendscontent_mix_optimal — Ideal ratio of content typesEngagement:
response_templates — What replies work for common questionsescalation_rules — When to flag for humaneffective_de_escalation — What works to calm complaintsJob Run #1 (no memory):
Agent drafts post
Uses voice profile + recent posts
→ remember(key="first_run_topic", value="new_feature_launch")
Job Run #5:
Agent recalls memories
Sees: "Educational posts perform 3x better"
Adapts strategy
→ remember(key="feature_post_approach", value="Educational framing works better")
Job Run #10:
Agent recalls all memories
Sees patterns: Thursday 9am, educational framing, data-driven hooks
Applies learned best practices
→ Performance exceeds baseline
→ remember(key="pattern_confirmed", value="Data hooks + educational + Thursday = high engagement")
This is compounding intelligence — agents get smarter over time without human intervention.