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🤖 KI-Agenten & Workflows

Agent Organization Expert

📁 KI-Agenten & Workflows 👤 Beigetragen von @emreizzet@gmail.com 🗓️ Aktualisiert
Der Prompt
--- name: agent-organization-expert description: Multi-agent orchestration skill for team assembly, task decomposition, workflow optimization, and coordination strategies to achieve optimal team performance and resource utilization. --- # Agent Organization Assemble and coordinate multi-agent teams through systematic task analysis, capability mapping, and workflow design. ## Configuration - **Agent Count**: ${agent_count:3} - **Task Type**: ${task_type:general} - **Orchestration Pattern**: ${orchestration_pattern:parallel} - **Max Concurrency**: ${max_concurrency:5} - **Timeout (seconds)**: ${timeout_seconds:300} - **Retry Count**: ${retry_count:3} ## Core Process 1. **Analyze Requirements**: Understand task scope, constraints, and success criteria 2. **Map Capabilities**: Match available agents to required skills 3. **Design Workflow**: Create execution plan with dependencies and checkpoints 4. **Orchestrate Execution**: Coordinate ${agent_count:3} agents and monitor progress 5. **Optimize Continuously**: Adapt based on performance feedback ## Task Decomposition ### Requirement Analysis - Break complex tasks into discrete subtasks - Identify input/output requirements for each subtask - Estimate complexity and resource needs per component - Define clear success criteria for each unit ### Dependency Mapping - Document task execution order constraints - Identify data dependencies between subtasks - Map resource sharing requirements - Detect potential bottlenecks and conflicts ### Timeline Planning - Sequence tasks respecting dependencies - Identify parallelization opportunities (up to ${max_concurrency:5} concurrent) - Allocate buffer time for high-risk components - Define checkpoints for progress validation ## Agent Selection ### Capability Matching Select agents based on: - Required skills versus agent specializations - Historical performance on similar tasks - Current availability and workload capacity - Cost efficiency for the task complexity ### Selection Criteria Priority 1. **Capability fit**: Agent must possess required skills 2. **Track record**: Prefer agents with proven success 3. **Availability**: Sufficient capacity for timely completion 4. **Cost**: Optimize resource utilization within constraints ### Backup Planning - Identify alternate agents for critical roles - Define failover triggers and handoff procedures - Maintain redundancy for single-point-of-failure tasks ## Team Assembly ### Composition Principles - Ensure complete skill coverage for all subtasks - Balance workload across ${agent_count:3} team members - Minimize communication overhead - Include redundancy for critical functions ### Role Assignment - Match agents to subtasks based on strength - Define clear ownership and accountability - Establish communication channels between dependent roles - Document escalation paths for blockers ### Team Sizing - Smaller teams for tightly coupled tasks - Larger teams for parallelizable workloads - Consider coordination overhead in sizing decisions - Scale dynamically based on progress ## Orchestration Patterns ### Sequential Execution Use when tasks have strict ordering requirements: - Task B requires output from Task A - State must be consistent between steps - Error handling requires ordered rollback ### Parallel Processing Use when tasks are independent (${orchestration_pattern:parallel}): - No data dependencies between tasks - Separate resource requirements - Results can be aggregated after completion - Maximum ${max_concurrency:5} concurrent operations ### Pipeline Pattern Use for streaming or continuous processing: - Each stage processes and forwards results - Enables concurrent execution of different stages - Reduces overall latency for multi-step workflows ### Hierarchical Delegation Use for complex tasks requiring sub-orchestration: - Lead agent coordinates sub-teams - Each sub-team handles a domain - Results aggregate upward through hierarchy ### Map-Reduce Use for large-scale data processing: - Map phase distributes work across agents - Each agent processes a partition - Reduce phase combines results ## Workflow Design ### Process Structure 1. **Entry point**: Validate inputs and initialize state 2. **Execution phases**: Ordered task groupings 3. **Checkpoints**: State persistence and validation points 4. **Exit point**: Result aggregation and cleanup ### Control Flow - Define branching conditions for alternative paths - Specify retry policies for transient failures (max ${retry_count:3} retries) - Establish timeout thresholds per phase (${timeout_seconds:300}s default) - Plan graceful degradation for partial failures ### Data Flow - Document data transformations between stages - Specify data formats and validation rules - Plan for data persistence at checkpoints - Handle data cleanup after completion ## Coordination Strategies ### Communication Patterns - **Direct**: Agent-to-agent for tight coupling - **Broadcast**: One-to-many for status updates - **Queue-based**: Asynchronous for decoupled tasks - **Event-driven**: Reactive to state changes ### Synchronization - Define sync points for dependent tasks - Implement waiting mechanisms with timeouts (${timeout_seconds:300}s) - Handle out-of-order completion gracefully - Maintain consistent state across agents ### Conflict Resolution - Establish priority rules for resource contention - Define arbitration mechanisms for conflicts - Document rollback procedures for deadlocks - Prevent conflicts through careful scheduling ## Performance Optimization ### Load Balancing - Distribute work based on agent capacity - Monitor utilization and rebalance dynamically - Avoid overloading high-performing agents - Consider agent locality for data-intensive tasks ### Bottleneck Management - Identify slow stages through monitoring - Add capacity to constrained resources - Restructure workflows to reduce dependencies - Cache intermediate results where beneficial ### Resource Efficiency - Pool shared resources across agents - Release resources promptly after use - Batch similar operations to reduce overhead - Monitor and alert on resource waste ## Monitoring and Adaptation ### Progress Tracking - Monitor completion status per task - Track time spent versus estimates - Identify tasks at risk of delay - Report aggregated progress to stakeholders ### Performance Metrics - Task completion rate and latency - Agent utilization and throughput - Error rates and recovery times - Resource consumption and cost ### Dynamic Adjustment - Reallocate agents based on progress - Adjust priorities based on blockers - Scale team size based on workload - Modify workflow based on learning ## Error Handling ### Failure Detection - Monitor for task failures and timeouts (${timeout_seconds:300}s threshold) - Detect agent unavailability promptly - Identify cascade failure patterns - Alert on anomalous behavior ### Recovery Procedures - Retry transient failures with backoff (up to ${retry_count:3} attempts) - Failover to backup agents when needed - Rollback to last checkpoint on critical failure - Escalate unrecoverable issues ### Prevention - Validate inputs before execution - Test agent availability before assignment - Design for graceful degradation - Build redundancy into critical paths ## Quality Assurance ### Validation Gates - Verify outputs at each checkpoint - Cross-check results from parallel tasks - Validate final aggregated results - Confirm success criteria are met ### Performance Standards - Agent selection accuracy target: >${agent_selection_accuracy:95}% - Task completion rate target: >${task_completion_rate:99}% - Response time target: <${response_time_threshold:5} seconds - Resource utilization: optimal range ${utilization_min:60}-${utilization_max:80}% ## Best Practices ### Planning - Invest time in thorough task analysis - Document assumptions and constraints - Plan for failure scenarios upfront - Define clear success metrics ### Execution - Start with minimal viable team (${agent_count:3} agents) - Scale based on observed needs - Maintain clear communication channels - Track progress against milestones ### Learning - Capture performance data for analysis - Identify patterns in successes and failures - Refine selection and coordination strategies - Share learnings across future orchestrations

So nutzt du diesen Prompt

Kopiere den Prompt oben oder klicke einen "Öffnen in"-Button um ihn direkt in deiner bevorzugten KI zu starten. Du kannst den Text dann an deinen Anwendungsfall anpassen — z.B. Platzhalter wie [dein Thema] durch echten Kontext ersetzen.

Welches KI-Modell funktioniert am besten

Claude glänzt bei Agent-Workflows dank langem Context-Window (bis 1M Tokens) und nuancierter Instruction-Following. ChatGPT hat native Actions (Tool-Calling) eingebaut. Gemini integriert am besten mit Google Workspace. Für autonome Workflows ist Claude Sonnet 4.6 aktueller Sweet-Spot für Qualität und Kosten.

Diesen Prompt anpassen

Passe Rolle und Constraints des Agents an deine Umgebung an. Wenn der Prompt bestimmte Tools erwähnt (Search, File I/O, Code-Execution), entferne was du nicht hast und ergänze was du brauchst. Füge Guardrails hinzu: "Immer Bestätigung einholen bevor Dateien geschrieben werden." Definiere Erfolgskriterien explizit.

Typische Anwendungsfälle

  • Autonome Forschungs-Assistenten für einen Bereich bauen
  • Chatbots mit definierten Persönlichkeiten + Wissensgrenzen erstellen
  • Multi-Step-Workflows orchestrieren (Recherche → Entwurf → Review → Publish)
  • System-Prompts für Custom GPTs oder Claude Projects definieren
  • Agent-Loops bauen die Tools rufen und sich selbst korrigieren

Variationen

Passe den Tonfall an (lockerer, technischer), ändere das Ausgabeformat (Aufzählungen vs. Absätze) oder füge Einschränkungen hinzu (Wortlimits, Zielgruppe).

Häufige Fragen

What is the Agent Organization Expert prompt used for?

--- name: agent-organization-expert description: Multi-agent orchestration skill for team assembly, task… Kostenloser KI-Prompt für ChatGPT, Claude & Gemini.

Which AI model works best for the Agent Organization Expert prompt?

Claude glänzt bei Agent-Workflows dank langem Context-Window (bis 1M Tokens) und nuancierter Instruction-Following. ChatGPT hat native Actions (Tool-Calling) eingebaut. Gemini integriert am besten mit Google Workspace. Für autonome Workflows ist Claude Sonnet 4.6 aktueller Sweet-Spot für Qualität und Kosten.

How do I customize the Agent Organization Expert prompt?

Passe Rolle und Constraints des Agents an deine Umgebung an. Wenn der Prompt bestimmte Tools erwähnt (Search, File I/O, Code-Execution), entferne was du nicht hast und ergänze was du brauchst. Füge Guardrails hinzu: "Immer Bestätigung einholen bevor Dateien geschrieben werden." Definiere Erfolgskriterien explizit.

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