Skills Development Initialize Agent Collaboration Session

Initialize Agent Collaboration Session

v20260612
init
Use this command to set up a structured multi-agent collaboration environment within AgentHub. It allows you to define the core task, specify the required number of agents, and configure detailed evaluation criteria (metrics, directions, and commands) for both quantitative benchmarking and qualitative LLM judging. This is the starting point for any agent competition or complex AI workflow.
Get Skill
214 downloads
Overview

/hub:init — Create New Session

Initialize an AgentHub collaboration session. Creates the .agenthub/ directory structure, generates a session ID, and configures evaluation criteria.

Usage

/hub:init                                                    # Interactive mode
/hub:init --task "Optimize API" --agents 3 --eval "pytest bench.py" --metric p50_ms --direction lower
/hub:init --task "Refactor auth" --agents 2                  # No eval (LLM judge mode)

What It Does

If arguments provided

Pass them to the init script:

python {skill_path}/scripts/hub_init.py \
  --task "{task}" --agents {N} \
  [--eval "{eval_cmd}"] [--metric {metric}] [--direction {direction}] \
  [--base-branch {branch}]

If no arguments (interactive mode)

Collect each parameter:

  1. Task — What should the agents do? (required)
  2. Agent count — How many parallel agents? (default: 3)
  3. Eval command — Command to measure results (optional — skip for LLM judge mode)
  4. Metric name — What metric to extract from eval output (required if eval command given)
  5. Direction — Is lower or higher better? (required if metric given)
  6. Base branch — Branch to fork from (default: current branch)

Output

AgentHub session initialized
  Session ID: 20260317-143022
  Task: Optimize API response time below 100ms
  Agents: 3
  Eval: pytest bench.py --json
  Metric: p50_ms (lower is better)
  Base branch: dev
  State: init

Next step: Run /hub:spawn to launch 3 agents

For content or research tasks (no eval command → LLM judge mode):

AgentHub session initialized
  Session ID: 20260317-151200
  Task: Draft 3 competing taglines for product launch
  Agents: 3
  Eval: LLM judge (no eval command)
  Base branch: dev
  State: init

Next step: Run /hub:spawn to launch 3 agents

Baseline Capture

If --eval was provided, capture a baseline measurement after session creation:

  1. Run the eval command in the current working directory
  2. Extract the metric value from stdout
  3. Append baseline: {value} to .agenthub/sessions/{session-id}/config.yaml
  4. Display: Baseline captured: {metric} = {value}

This baseline is used by result_ranker.py --baseline during evaluation to show deltas. If the eval command fails at this stage, warn the user but continue — baseline is optional.

After Init

Tell the user:

  • Session created with ID {session-id}
  • Baseline metric (if captured)
  • Next step: /hub:spawn to launch agents
  • Or /hub:spawn {session-id} if multiple sessions exist
Info
Category Development
Name init
Version v20260612
Size 2.74KB
Updated At 2026-06-13
Language