| name | deep-interview |
| description | [OMX] Socratic deep interview with mathematical ambiguity gating before execution |
| argument-hint | [--quick|--standard|--deep] [--autoresearch] <idea or vague description> |
Deep Interview is an intent-first Socratic clarification loop before planning or implementation. It turns vague ideas into execution-ready specifications by asking targeted questions about why the user wants a change, how far it should go, what should stay out of scope, and what OMX may decide without confirmation.
<Use_When>
- The request is broad, ambiguous, or missing concrete acceptance criteria
- The user says "deep interview", "interview me", "ask me everything", "don't assume", or "ouroboros"
- The user wants to avoid misaligned implementation from underspecified requirements
- You need a requirements artifact before handing off to
ralplan, autopilot, ralph, or team
</Use_When>
<Do_Not_Use_When>
- The request already has concrete file/symbol targets and clear acceptance criteria
- The user explicitly asks to skip planning/interview and execute immediately
- The user asks for lightweight brainstorming only (use
plan instead)
- A complete PRD/plan already exists and execution should start
</Do_Not_Use_When>
<Why_This_Exists>
Execution quality is usually bottlenecked by intent clarity, not just missing implementation detail. A single expansion pass often misses why the user wants a change, where the scope should stop, which tradeoffs are unacceptable, and which decisions still require user approval. This workflow applies Socratic pressure + quantitative ambiguity scoring so orchestration modes begin with an explicit, testable, intent-aligned spec.
</Why_This_Exists>
<Depth_Profiles>
- Quick (
--quick): fast pre-PRD pass; target threshold <= 0.30; max rounds 5
- Standard (
--standard, default): full requirement interview; target threshold <= 0.20; max rounds 12
- Deep (
--deep): high-rigor exploration; target threshold <= 0.15; max rounds 20
- Autoresearch (
--autoresearch): same interview rigor as Standard, but specialized for $autoresearch mission readiness and .omx/specs/ artifact handoff
Profile max rounds is a hard cap, not a target. Do not continue only to reach a numbered round count. Extra Socratic rigor does not override the active threshold unless the profile/config changes.
If no flag is provided, use Standard.
<Mode_Flags>
--autoresearch: switch the interview into autoresearch-intake mode for $autoresearch handoff. In this mode, the interview should converge on a validator-ready research mission, write canonical artifacts under .omx/specs/, and preserve the explicit refine further vs launch boundary for downstream skill intake.
</Mode_Flags>
</Depth_Profiles>
<Execution_Policy>
- Ask ONE question per round (never batch multiple interview rounds into one
questions[] form)
- Ask about intent and boundaries before implementation detail
- Target the weakest clarity dimension each round after applying the stage-priority rules below
- Treat every answer as a claim to pressure-test before moving on: the next question should usually demand evidence or examples, expose a hidden assumption, force a tradeoff or boundary, or reframe root cause vs symptom
- Do not rotate to a new clarity dimension just for coverage when the current answer is still vague; stay on the same thread until one layer deeper, one assumption clearer, or one boundary tighter
- Before crystallizing, complete at least one explicit pressure pass that revisits an earlier answer with a deeper, assumption-focused, or tradeoff-focused follow-up
- Gather codebase facts via
explore before asking user about internals
omx explore is deprecated. Use normal repository inspection tools/subagents for simple read-only brownfield fact gathering; use omx sparkshell only for explicit shell-native read-only evidence, and keep ambiguous or non-shell-only investigation on the richer normal path.
- Always run a preflight context intake before the first interview question
- If initial context is oversized or would exceed the prompt budget, do not paste or forward the raw payload into interview prompts; request and record a prompt-safe initial-context summary first
- The oversized initial-context summary gate is blocking: wait for the concise summary before ambiguity scoring, crystallizing artifacts, or any downstream execution handoff
- The summary must preserve goals, constraints, success criteria, non-goals, decision boundaries, and references to any full source documents so downstream consumers receive a prompt-safe but faithful context
- Keep total prompt payloads within a safe budget by summarizing or trimming retained history; preserve newest/highest-signal answers and never let raw oversized context crowd out the current question
- Reduce user effort: ask only the highest-leverage unresolved question, and never ask the user for codebase facts that can be discovered directly
- For brownfield work, prefer evidence-backed confirmation questions such as "I found X in Y. Should this change follow that pattern?"
- Route facts before judgment in the Ouroboros style: before presenting a user-facing interview round, classify whether the needed information is a discoverable fact, a fact needing confirmation, or a human decision. The interview is with the human for judgment, not for facts the agent can inspect.
- When unresolved ambiguity depends on current external best practices, official/upstream guidance, standards, or version-aware behavior, use
$best-practice-research as the bounded evidence wrapper before crystallizing requirements or handing off to planning/execution.
- Use these transcript/spec labels only; never use them as
omx question source values, and never replace the runtime source: "deep-interview" contract for user-facing deep-interview questions:
[from-code][auto-confirmed] — exact, high-confidence codebase facts from manifests/configs or direct source evidence, with no prescription attached.
[from-code] — codebase findings that are useful but inferred, pattern-based, or low/medium confidence and therefore need a confirmation-style user-facing round before being treated as settled.
[from-research] — externally sourced facts such as API limits, compatibility, or public documentation; facts only, not decisions.
[from-user] — goals, preferences, business logic, scope, non-goals, acceptance criteria, tradeoffs, and any decision-bearing interpretation.
- Treat
[from-code][auto-confirmed] and other non-user fact discoveries as context/transcript updates, not interview rounds: do not call omx question, do not create a pending deep-interview question obligation, and do not increment the user-facing round number for facts the agent can safely establish.
- Auto-confirm only descriptive facts. If a finding implies what the new feature should do, which pattern it should follow, which tradeoff to accept, or what should stay in/out of scope, route the entire decision-bearing question to the user as
[from-user] even when code or research facts are available.
- In attached-tmux Codex CLI, deep-interview uses
omx question as the required OMX-owned structured questioning path for every interview round
- When invoking
omx question through attached-tmux Bash/tool paths, preserve the leader-pane return target by prefixing the command with OMX_QUESTION_RETURN_PANE=$TMUX_PANE (or a concrete %pane value)
- If you launch
omx question in a background terminal, immediately wait for that background terminal to finish and read its JSON answer before scoring ambiguity, asking another round, or handing off
- Treat
answers[] as the primary omx question success contract. For a single interview round, read answers[0].answer; use legacy top-level answer only as a compatibility fallback when needed.
- If the current runtime is outside tmux and cannot render
omx question, use the native structured question tool when available; otherwise ask exactly one concise plain-text question and wait for the answer
- Re-score ambiguity after each answer and show progress transparently
- Once ambiguity is at or below the active profile threshold, stop ordinary questioning. Run the practical closure audit: crystallize/handoff when readiness gates pass; otherwise ask only the final closure question needed to satisfy a named gate.
- Treat
max_rounds as a stop cap, not evidence that more rounds are needed.
- Do not hand off to execution while ambiguity remains above threshold unless user explicitly opts to proceed with warning
- Do not crystallize or hand off while
Non-goals or Decision Boundaries remain unresolved, even if the weighted ambiguity threshold is met
- Treat early exit as a safety valve, not the default success path
- Persist mode state for resume safety with CLI-first state commands (
omx state write/read --input '<json>' --json); use state_write / state_read only when explicit MCP compatibility is enabled
</Execution_Policy>
Phase 0: Preflight Context Intake
- Parse
{{ARGUMENTS}} and derive a short task slug.
- Attempt to load the latest relevant context snapshot from
.omx/context/{slug}-*.md.
- Check whether the provided initial context or loaded snapshot is too large for safe prompt use. If it is oversized, the first interview round must ask for a concise prompt-safe summary instead of scoring ambiguity or continuing to downstream handoff.
- If no snapshot exists, create a minimum context snapshot with:
- Task statement
- Desired outcome
- Stated solution (what the user asked for)
- Probable intent hypothesis (why they likely want it)
- Known facts/evidence
- Constraints
- Unknowns/open questions
- Decision-boundary unknowns
- Likely codebase touchpoints
- Prompt-safe initial-context summary status (
not_needed, needed, or recorded)
- Save snapshot to
.omx/context/{slug}-{timestamp}.md (UTC YYYYMMDDTHHMMSSZ) and reference it in mode state.
Phase 1: Initialize
- Parse
{{ARGUMENTS}} and depth profile (--quick|--standard|--deep).
- Detect project context:
- Run
explore to classify brownfield (existing codebase target) vs greenfield.
- For brownfield, collect relevant codebase context before questioning.
- Initialize state via
omx state write --input '{"mode":"deep-interview","active":true}' --json:
{
"active": true,
"current_phase": "deep-interview",
"state": {
"interview_id": "<uuid>",
"profile": "quick|standard|deep",
"type": "greenfield|brownfield",
"initial_idea": "<user input>",
"rounds": [],
"current_ambiguity": 1.0,
"threshold": 0.3,
"max_rounds": 5,
"challenge_modes_used": [],
"codebase_context": null,
"current_stage": "intent-first",
"current_focus": "intent",
"context_snapshot_path": ".omx/context/<slug>-<timestamp>.md"
}
}
- Announce kickoff with profile, threshold, and current ambiguity.
Phase 2: Socratic Interview Loop
Repeat until ambiguity <= threshold, the pressure pass is complete, the readiness gates are explicit, the user exits with warning, or max rounds are reached. This is a stop condition: below threshold, do not open a new ordinary interview branch.
2a) Generate next question
If the initial context is oversized and no prompt-safe summary has been recorded yet, the next question must be only a summary request. Do not score ambiguity, do not run readiness gates, and do not hand off to $ralplan, $autopilot, $ralph, or $team until that summary answer is captured.
Use:
- Original idea
- Prior Q&A rounds
- Current dimension scores
- Brownfield context (if any)
- Activated challenge mode injection (Phase 3)
Target the lowest-scoring dimension, but respect stage priority:
- Stage 1 — Intent-first: Intent, Outcome, Scope, Non-goals, Decision Boundaries
- Stage 2 — Feasibility: Constraints, Success Criteria
- Stage 3 — Brownfield grounding: Context Clarity (brownfield only)
Follow-up pressure ladder after each answer:
- Ask for a concrete example, counterexample, or evidence signal behind the latest claim
- Probe the hidden assumption, dependency, or belief that makes the claim true
- Force a boundary or tradeoff: what would you explicitly not do, defer, or reject?
- If the answer still describes symptoms, reframe toward essence / root cause before moving on
Prefer staying on the same thread for multiple rounds when it has the highest leverage. Breadth without pressure is not progress.
Maintain a Breadth Ledger across independent ambiguity tracks: scope, constraints, outputs, verification, brownfield integration, and any user-mentioned deliverable tracks. The ledger is a guard, not a mandatory rotation rule: stay deep on the current thread until it has been pressure-tested, then zoom out only when another material track remains unresolved and would change execution.
Detailed dimensions:
- Intent Clarity — why the user wants this
- Outcome Clarity — what end state they want
- Scope Clarity — how far the change should go
- Constraint Clarity — technical or business limits that must hold
- Success Criteria Clarity — how completion will be judged
- Context Clarity — existing codebase understanding (brownfield only)
Non-goals and Decision Boundaries are mandatory readiness gates. Ask about them early and keep revisiting them until they are explicit.
2b) Ask the question
Use the surface-appropriate structured questioning path for every interview round. In attached-tmux sessions, use OMX-owned structured questioning via omx question (this is the required structured-question equivalent and required AskUserQuestion equivalent for deep-interview). Outside tmux, use native structured input when available; otherwise ask exactly one concise plain-text question and wait for the answer. Present:
Round {n} | Target: {weakest_dimension} | Ambiguity: {score}%
{question}
omx question payload guidance for interview rounds:
- Deep-interview is Socratic: ask one focused round at a time. Do not use batch
questions[] to combine multiple interview rounds, even though omx question supports batch forms for other workflows.
- Use canonical
type values instead of authoring raw multi_select flags by hand. type: "single-answerable" is the default for one-path decisions; type: "multi-answerable" is the canonical shape for bounded multi-select rounds. The runtime will keep multi_select aligned with type.
- Use
single-answerable when exactly one answer should drive the next branch, the options are mutually exclusive, or selecting more than one answer would blur the decision boundary. Typical cases: handoff lane selection, choosing the primary failure mode, or confirming which of several competing interpretations is correct.
- Use
multi-answerable when multiple options may all be true at once and you need to capture a bounded set of coexisting constraints, non-goals, risks, or acceptance checks in one round. Typical cases: selecting all out-of-scope items, all success metrics that must hold, or all deployment constraints that apply together.
- If one selected option would immediately require a follow-up question to disambiguate the others, prefer a
single-answerable round now and ask the follow-up next. Do not hide a branching interview tree inside one overloaded multi-select prompt.
- Keep interview options bounded and concrete. If the valid answers are already known, set
allow_other: false; only leave allow_other: true when the interview genuinely needs one user-supplied option that cannot be enumerated in advance.
- Read answers structurally from the primary
answers[] array. For a normal single-round interview response, use answers[0].answer as the source of truth; the top-level answer field is a legacy single-question projection/fallback only.
- For
single-answerable, expect one decisive selection in the value field of answers[0].answer plus its selected-values metadata. For multi-answerable, treat the selected-values field inside answers[0].answer as the source of truth for all chosen constraints/non-goals and preserve the full set in the transcript/spec. In legacy single-question projections, this is equivalent to: For multi-answerable, treat answer.selected_values as the source of truth.
Canonical bounded single-choice payload:
{
"question": "Which execution lane should own this once the interview is complete?",
"type": "single-answerable",
"options": [
{
"label": "Plan first",
"value": "ralplan",
"description": "Need architecture and test-shape review before execution"
},
{
"label": "Execute directly",
"value": "autopilot",
"description": "Requirements are already explicit enough for planning plus execution"
},
{
"label": "Refine further",
"value": "refine",
"description": "Clarification is still needed before any handoff"
}
],
"allow_other": false,
"other_label": "Other",
"source": "deep-interview"
}
Canonical bounded multi-select payload:
{
"question": "Which non-goals must stay out of scope for the first pass?",
"type": "multi-answerable",
"options": [
{
"label": "No UI redesign",
"value": "no-ui-redesign",
"description": "Keep layout and styling unchanged"
},
{
"label": "No new dependencies",
"value": "no-new-dependencies",
"description": "Work within the existing toolchain"
},
{
"label": "No API contract changes",
"value": "no-api-contract-changes",
"description": "Preserve external request and response shapes"
}
],
"allow_other": false,
"other_label": "Other",
"source": "deep-interview"
}
Canonical answer-shape reminders:
{
"answer": {
"kind": "option",
"value": "ralplan",
"selected_labels": ["Plan first"],
"selected_values": ["ralplan"]
}
}
{
"answer": {
"kind": "multi",
"value": ["no-new-dependencies", "no-api-contract-changes"],
"selected_labels": ["No new dependencies", "No API contract changes"],
"selected_values": ["no-new-dependencies", "no-api-contract-changes"]
}
}
2c) Score ambiguity
Score each weighted dimension in [0.0, 1.0] with justification + gap.
Greenfield: ambiguity = 1 - (intent × 0.30 + outcome × 0.25 + scope × 0.20 + constraints × 0.15 + success × 0.10)
Brownfield: ambiguity = 1 - (intent × 0.25 + outcome × 0.20 + scope × 0.20 + constraints × 0.15 + success × 0.10 + context × 0.10)
Readiness gate:
Non-goals must be explicit
Decision Boundaries must be explicit
- A pressure pass must be complete: at least one earlier answer has been revisited with an evidence, assumption, or tradeoff follow-up
- A practical closure audit must pass: another question would change execution materially, not merely polish wording or chase a narrow edge case
- If either gate is unresolved, or the pressure pass is incomplete, continue below threshold only with a final closure question that names the unresolved gate and would materially change execution.
- Treat a low ambiguity score as permission to audit closure, not permission to keep drilling indefinitely. If remaining uncertainty would not change implementation, crystallize the spec instead of opening a new branch.
- If ambiguity is
<= 0.10, another user-facing question is allowed only as that final closure question; otherwise crystallize immediately.
2d) Report progress
Show weighted breakdown table, readiness-gate status (Non-goals, Decision Boundaries), and the next focus dimension.
2e) Persist state
Append round result and updated scores via omx state write --input '<json>' --json; use state_write only when explicit MCP compatibility is enabled.
2f) Round controls
- Do not offer early exit before the first explicit assumption probe and one persistent follow-up have happened
- Apply a Dialectic Rhythm Guard: track consecutive non-user fact discoveries and confirmation-style answers (
[from-code][auto-confirmed], [from-code], or [from-research]). After 3 consecutive non-user or confirmation answers, the next material user-facing round must solicit direct human judgment ([from-user]) unless the closure audit says the interview is ready to crystallize.
- Round 4+: allow explicit early exit with risk warning
- Soft warning at profile midpoint (e.g., round 3/6/10 depending on profile)
- Hard cap at profile
max_rounds; never treat this cap as a desired interview length or quota
Phase 3: Challenge Modes (assumption stress tests)
Use each mode once when applicable. These are normal escalation tools, not rare rescue moves:
- Contrarian (round 2+ or immediately when an answer rests on an untested assumption): challenge core assumptions
- Simplifier (round 4+ or when scope expands faster than outcome clarity): probe minimal viable scope
- Ontologist (round 5+ and ambiguity > 0.25, or when the user keeps describing symptoms): ask for essence-level reframing
Track used modes in state to prevent repetition.
Phase 4: Crystallize Artifacts
When threshold is met (or user exits with warning / hard cap):
- Write interview transcript summary to:
.omx/interviews/{slug}-{timestamp}.md
(kept for ralph PRD compatibility)
- Write execution-ready spec to:
.omx/specs/deep-interview-{slug}.md
Spec should include:
- Metadata (profile, rounds, final ambiguity, threshold, context type)
- Context snapshot reference/path (for ralplan/team reuse)
- Prompt-safe initial-context summary when oversized context was provided, plus references to any full source documents
- Clarity breakdown table
- Intent (why the user wants this)
- Desired Outcome
- In-Scope
- Out-of-Scope / Non-goals
- Decision Boundaries (what OMX may decide without confirmation)
- Constraints
- Testable acceptance criteria
- Assumptions exposed + resolutions
- Pressure-pass findings (which answer was revisited, and what changed)
- Brownfield evidence vs inference notes for any repository-grounded confirmation questions
- Technical context findings
- Full or condensed transcript
Autoresearch specialization
When the clarified task is specifically about $autoresearch, or the skill is invoked with --autoresearch, keep the interview domain-specific and emit skill-consumable artifacts without skipping clarification.
- Accepted seed inputs:
topic, evaluator, keep-policy, slug, existing mission draft text, and prior evaluator examples/templates
- Required interview focus: mission clarity, evaluator readiness, keep policy, slug/session naming, and whether the draft is ready to launch now or should refine further
- Canonical artifact path:
.omx/specs/deep-interview-autoresearch-{slug}.md
- Launch artifact bundle:
.omx/specs/autoresearch-{slug}/mission.md, .omx/specs/autoresearch-{slug}/sandbox.md, and .omx/specs/autoresearch-{slug}/result.json
- Launch artifact directory:
.omx/specs/autoresearch-{slug}/
- Required artifact sections:
Mission Draft
Evaluator Draft
Launch Readiness
Seed Inputs
Confirmation Bridge
- Required launch artifacts under
.omx/specs/autoresearch-{slug}/:
mission.md
sandbox.md
result.json
- Launch-readiness rule: mark the draft as not launch-ready while the evaluator command still contains placeholder markers such as
<...>, TODO, TBD, REPLACE_ME, CHANGEME, or your-command-here
- Structured result contract:
result.json should point to the draft + mission/sandbox artifacts and carry the finalized topic, evaluatorCommand, keepPolicy, slug, launchReady, and blockedReasons fields so $autoresearch can consume it directly
- Confirmation bridge: after artifact generation, offer at least
refine further and launch; do not run direct CLI launch or detached/split tmux launch, and only hand off to $autoresearch after explicit confirmation
- Handoff rule: downstream execution must preserve the clarified mission intent, evaluator expectations, decision boundaries, and launch-readiness status from this artifact rather than bypassing the draft review step
Phase 5: Execution Bridge
Present execution options after artifact generation using explicit handoff contracts. Treat the deep-interview spec as the current requirements source of truth and preserve intent, non-goals, decision boundaries, acceptance criteria, and any residual-risk warnings across the handoff.
Goal-mode follow-ups
Include these product-facing suggestions when they fit the clarified spec, without removing the existing $ralplan, $autopilot, $ralph, and $team handoff options:
$ultragoal — default goal-mode follow-up for implementation or general goal-oriented follow-up specs that should be converted into durable Codex/OMX goals with sequential completion tracking.
$autoresearch-goal — use when the clarified context is a research project: a research question, reference/literature gathering, evaluator-backed analysis, or professor/critic-style deliverable.
$performance-goal — use when the clarified context is an optimization or performance project with measurable speed, latency, throughput, memory, benchmark, or evaluator criteria.
Recommend $ultragoal as the default durable goal-mode follow-up because it supersedes Ralph for goal tracking. Preserve $team for coordinated parallel implementation and keep $ralph only as an explicit fallback for persistent single-owner execution/verification when the user specifically selects it.
1. $ralplan (Recommended)
- Input Artifact:
.omx/specs/deep-interview-{slug}.md (optionally accompanied by the transcript/context snapshot for traceability)
- Invocation:
$plan --consensus --direct <spec-path>
- Consumer Behavior: Treat the deep-interview spec as the requirements source of truth. Do not repeat the interview by default; refine architecture/feasibility around the clarified intent and boundaries instead.
- Skipped / Already-Satisfied Stages: Requirements discovery, ambiguity clarification, and early intent-boundary elicitation
- Expected Output: Canonical planning artifacts under
.omx/plans/, especially prd-*.md and test-spec-*.md
- Best When: Requirements are clear enough to stop interviewing, but architectural validation / consensus planning is still desirable
- Next Recommended Step: Use the approved planning artifacts with
$ultragoal as the default durable goal-mode follow-up (optionally with $team for parallel lanes); choose $autoresearch-goal for research validation or $performance-goal for measurable optimization, and use $ralph only as an explicit fallback when a narrow single-owner persistence loop is requested
2. $autopilot
- Input Artifact:
.omx/specs/deep-interview-{slug}.md
- Invocation:
$autopilot <spec-path>
- Consumer Behavior: Use the deep-interview spec as the clarified execution brief. Preserve intent, non-goals, decision boundaries, and acceptance criteria as binding context for planning/execution.
- Skipped / Already-Satisfied Stages: Initial requirement discovery and ambiguity reduction
- Expected Output: Planning/execution progress, QA evidence, and validation artifacts produced by autopilot
- Best When: The clarified spec is already strong enough for direct planning + execution without an additional consensus gate
- Next Recommended Step: Continue through autopilot's execution/QA/validation flow; if coordination-heavy execution emerges, prefer
$team under a leader-owned $ultragoal ledger, using $ralph only as an explicit fallback when a narrow single-owner persistence loop is requested
3. $ralph (Explicit fallback only)
- Input Artifact:
.omx/specs/deep-interview-{slug}.md
- Invocation:
$ralph <spec-path>
- Consumer Behavior: Use the spec's acceptance criteria and boundary constraints as the persistence target. Do not reopen requirements discovery unless the user explicitly asks to refine further.
- Skipped / Already-Satisfied Stages: Requirement interview, ambiguity clarification, and initial scope-definition work
- Expected Output: Iterative execution progress and verification evidence tracked against the clarified criteria
- Best When: The user explicitly asks for Ralph's persistent sequential completion pressure; otherwise use
$ultragoal for durable goal tracking and completion checkpoints
- Next Recommended Step: If this explicit fallback is selected, continue Ralph's persistence loop; if work expands into coordination-heavy lanes, hand off to
$team under $ultragoal checkpointing rather than promoting Ralph as the next default
4. $team
- Input Artifact:
.omx/specs/deep-interview-{slug}.md
- Invocation:
$team <spec-path>
- Consumer Behavior: Treat the spec as shared execution context for coordinated parallel work. Preserve the clarified intent, non-goals, decision boundaries, and acceptance criteria as common lane constraints.
- Skipped / Already-Satisfied Stages: Requirement clarification and early ambiguity reduction
- Expected Output: Coordinated multi-agent execution against the shared spec, with evidence that can later feed Ultragoal checkpoints by default, or an explicit Ralph verification pass only when requested
- Best When: The task is large, multi-lane, or blocker-sensitive enough to justify coordinated parallel execution instead of a single persistent loop
- Next Recommended Step: Follow the team verification path when the coordinated execution phase finishes; checkpoint completion through
$ultragoal by default, escalating to a separate Ralph loop only when the user explicitly asks for that persistent verification/fix owner
5. Refine further
- Input Artifact: Existing transcript, context snapshot, and current spec draft
- Invocation: Continue the interview loop
- Consumer Behavior: Re-enter questioning to resolve the highest-leverage remaining uncertainty
- Skipped / Already-Satisfied Stages: None beyond already-captured context
- Expected Output: A lower-ambiguity spec with tighter boundaries and fewer unresolved assumptions
- Best When: Residual ambiguity is still too high, the user wants stronger clarity, or the above-threshold / early-exit warning indicates too much risk to proceed cleanly
- Next Recommended Step: Return to one of the execution handoff contracts above once the spec is sufficiently clarified
Residual-Risk Rule: If the interview ended via early exit, hard-cap completion, or above-threshold proceed-with-warning, explicitly preserve that residual-risk state in the handoff so the downstream skill knows it inherited a partially clarified brief.
IMPORTANT: Deep-interview is a requirements mode. On handoff, invoke the selected skill using the contract above. Do NOT implement directly inside deep-interview.
<Tool_Usage>
- Use
explore for codebase fact gathering
- Use
omx question as the OMX-native structured user-input tool for each interview round when an attached tmux renderer is available
- From attached-tmux Bash/tool paths, call it as
OMX_QUESTION_RETURN_PANE=$TMUX_PANE omx question ... unless an explicit %pane return target is already known
- If the current runtime is outside tmux and cannot render
omx question, use native structured input when available; otherwise ask exactly one concise plain-text question and wait for the answer
- After
omx question returns JSON, prefer answers[0].answer / answers[]; use legacy answer only as a fallback for older records
- Use
omx state write/read --input '<json>' --json for resumable mode state; state_write / state_read are explicit MCP compatibility fallbacks only
- If the interview cannot ask a required
omx question round, persist the blocker as terminal state with active: false and current_phase: "blocked"; do not write a terminal blocked phase with active: true
- Read/write context snapshots under
.omx/context/
- Record whether the oversized-context summary gate is not needed, pending, or satisfied before any scoring or handoff step
- Save transcript/spec artifacts under
.omx/interviews/ and .omx/specs/
</Tool_Usage>
<Escalation_And_Stop_Conditions>
- User says stop/cancel/abort -> persist state and stop
- Ambiguity stalls for 3 rounds (+/- 0.05) -> force Ontologist mode once
- Max rounds reached -> proceed with explicit residual-risk warning
- All dimensions >= 0.9 -> allow early crystallization even before max rounds
</Escalation_And_Stop_Conditions>
<Final_Checklist>
## Suggested Config (optional)
Deep-interview reads runtime defaults from the first existing config source in this order:
- Repository-local
.omx/config.toml
- Repository-root
omx.toml
- User-global
~/.omx/config.toml
This section is currently a deep-interview-specific runtime override surface, not a general replacement for Codex config.toml or .omx-config.json model/env routing.
Malformed config files are ignored fail-soft so $deep-interview activation can continue with built-in defaults.
Explicit --quick, --standard, or --deep invocation flags override defaultProfile.
[omx.deepInterview]
defaultProfile = "standard"
quickThreshold = 0.30
standardThreshold = 0.20
deepThreshold = 0.15
quickMaxRounds = 5
standardMaxRounds = 12
deepMaxRounds = 20
enableChallengeModes = true
Resume
If interrupted, rerun $deep-interview. Resume from persisted mode state via omx state read --input '{"mode":"deep-interview"}' --json.
Recommended 3-Stage Pipeline
deep-interview -> ralplan -> autopilot
- Stage 1 (deep-interview): clarity gate
- Stage 2 (ralplan): feasibility + architecture gate
- Stage 3 (autopilot): execution + QA + validation gate