Claude-night-market research

Multi-source research across code, discourse, and academic channels.

install
source · Clone the upstream repo
git clone https://github.com/athola/claude-night-market
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/athola/claude-night-market "$T" && mkdir -p ~/.claude/skills && cp -r "$T/plugins/tome/skills/research" ~/.claude/skills/athola-claude-night-market-research && rm -rf "$T"
manifest: plugins/tome/skills/research/SKILL.md
source content

Research Session Orchestrator

Run a full multi-source research session: classify the domain, dispatch parallel agents, synthesize findings, and output a formatted report.

Workflow

Step 1: Classify Domain

Run the domain classifier on the topic:

from tome.scripts.domain_classifier import classify
result = classify(topic)
# result.domain, result.triz_depth, result.channel_weights

If confidence < 0.6, ask the user to confirm or override the domain classification before proceeding.

Step 2: Plan Research

from tome.scripts.research_planner import plan
research_plan = plan(result)
# research_plan.channels, research_plan.weights, research_plan.triz_depth

Step 3: Create Session

from tome.session import SessionManager
mgr = SessionManager(Path.cwd())
session = mgr.create(topic, result.domain, result.triz_depth, research_plan.channels)

Step 4: Dispatch Agents

Launch research agents in parallel using the Agent tool. Use this mapping:

ChannelAgent TypePrompt Includes
code
tome:code-searcher
topic
discourse
tome:discourse-scanner
topic, domain, subreddits
academic
tome:literature-reviewer
topic, domain
triz
tome:triz-analyst
topic, domain, triz_depth

Rules:

  • Always dispatch code and discourse agents
  • Dispatch academic agent only if "academic" is in research_plan.channels
  • Dispatch triz agent only if "triz" is in research_plan.channels AND triz_depth != "light"
  • Dispatch all eligible agents in a SINGLE message (parallel, not sequential)

Each agent prompt must include:

  1. The topic string
  2. The domain classification
  3. Any channel-specific context (subreddits for discourse, triz_depth for triz)
  4. Instruction to return findings as JSON

Step 5: Collect and Synthesize

After all agents return:

  1. Parse each agent's findings into Finding objects
  2. Merge using
    tome.synthesis.merger.merge_findings()
  3. Rank using
    tome.synthesis.ranker.rank_findings()

Step 6: Generate Output

from tome.output.report import format_report, format_brief, format_transcript

# Default to report format
output = format_report(session)

# Save to docs/research/
output_path = f"docs/research/{session.id}-{slug}.md"

Save the session state:

mgr.save(session)

Step 7: Present Results

Display a brief summary to the user:

  • Number of findings per channel
  • Top 3 findings by relevance
  • Path to saved report

Then offer interactive refinement: "Use

/tome:dig \"subtopic\"
to explore specific areas."

Error Handling

  • If an agent fails, continue with remaining agents
  • If all agents fail, report the error and suggest manual research approaches
  • If synthesis produces 0 findings, state this clearly rather than generating an empty report
  • Save session state even on partial failure

Output Format Selection

FlagFormatFunction
(default)report
format_report()
--format brief
brief
format_brief()
--format transcript
transcript
format_transcript()