Install
openclaw skills install @deciqai/deliberate-practiceActivate when: user says 'I've been doing this for years but I'm not getting better'; someone suspects a skill plateau despite continued effort; designing a learning program for a high-performance outcome; an organization reports high training hours but low skill transfer. Do NOT activate when: goal is execution of existing skills rather than acquiring new ones (use deep-work instead); there is no identifiable expert performance benchmark to target.
openclaw skills install @deciqai/deliberate-practiceMost people confuse repetition with learning — they accumulate years of experience and plateau. Once an activity becomes automatic, executing it no longer builds new neural architecture. Ericsson, Krampe & Tesch-Römer (1993) showed the predictive variable is not hours of doing but hours of specifically deliberate practice — targeted, uncomfortable, feedback-rich repetition designed to build mental representations.
Cross-skill composition: Use feedback-loops first (audit your error signal); then metacognition (surface your current representation gap); use instead of deep-work when acquiring skills, not producing output; use alongside cognitive-evolution-stages for stage-aware practice design.
Trigger: plateau despite experience; designing high-performance learning program; training hours high but skill transfer low; evaluating whether practice is building capability or maintaining it. When NOT: goal is execution not acquisition (use deep-work); no expert benchmark exists; bottleneck is motivational not representational.
Engine mode: user has a concrete case → run The Process directly. Coach mode: user is unfamiliar or has no concrete case → guide step by step.
In Coach mode, respond one step at a time. Each [WAIT] is a hard stop — output only that step's question, then stop.
[WAIT — do not advance until user responds]
[WAIT — do not advance until user responds]
[WAIT — do not advance until user responds]
Step 1 — Define the sub-skill with precision. Not "get better at X" — specify the exact representational gap (e.g., "detect when counterpart shifts from positional to interest-based"). Step 2 — Find or construct the feedback mechanism. Latency >24h breaks action-result association. Expert feedback > peer one level above > simulation with ground truth. Step 3 — Diagnose the mental representation gap. Ask: "What does an expert see here that I don't?" Not what they do — the doing follows from the seeing. Step 4 — Design the repetition targeting the gap. Must trigger the sub-skill, produce in-session feedback, and be executable at dozens–hundreds of reps per session. Step 5 — Track representation progress, not output. Output metrics lag by weeks. Track: "Am I perceiving X earlier than before?" Step 6 — Apply the stop-rule. Comfort = automaticity maintenance. Redesign to a harder sub-skill. End session when concentration drops.
Target sub-skill (precise): [specific representational gap]
Expert mental representation: [what expert perceives that I currently don't]
Current representation gap: [specific failure mode]
Feedback — Source / Latency / Reliability:
Repetition — Exercise / Volume / Duration / Frequency:
Progress indicator (representation-level, not output): [what I will perceive by Week N]
Stop-rule triggers: comfortable → redesign; concentration drops → end; latency >24h → redesign
→ Method in Action: Berlin Violin Study (1991–1993)
Medicine/Surgery: sub-skill: laparoscopic tissue manipulation; feedback: simulator + debrief within 1h; rationalization to reject: "I'll improve with more cases." Writing: sub-skill: eliminate nominalization in first-draft prose; feedback: rewrite published paragraphs vs original; rationalization: "I write every day." Investment: sub-skill: identify customer concentration risk from footnotes in 20 min; feedback: 50-case retrospective library with outcomes.
Contribute packs via the deciqAI repo — requires sub-skill, expert representation, feedback latency, and common rationalization.
→ Primary sources: references/sources.md
[D] = designed upfront | [O] = observed in real use. [O] entries are more valuable.
| Fake move | Reality |
|---|---|
| [D] "I've been doing this for 10 years." | Duration is not deliberate practice. Years in automaticity = maintenance, not development. |
| [D] "I practice every day." | Comfortable daily repetition is automaticity reinforcement, not representation-building. |
| [D] "More cases/reps will help." | Only if structured to exceed current capability with rapid feedback. Otherwise more reps deepen the rut. |
| [D] "I can give myself feedback." | Self-feedback confirms what you already believe. External feedback from someone who sees the expert standard is required. |
| [D] "The discomfort means I'm doing it wrong." | Discomfort is the signal you are in deliberate practice. Comfort means automaticity. |
| [D] "My metrics are going up." | Output lags representation by weeks and is confounded by external factors. |
| → Add [O] entries after each real use — paste the actual failure pattern | What went wrong and why |
Part of deciqAI Knowledge Skills — open-source thinking skills that make rigor executable for AI agents. Built by deciqAI · https://deciqai.com · Contributions welcome — see the template at the repo root.