List signature judgments, proprietary frameworks, trusted data sources, and repeatable deliverables. For each, note inputs, outputs, tacit cues, and failure modes. This clarity reveals what can be translated into prompts, checklists, retrieval indexes, or agents without diluting the nuance that clients and colleagues rely on.
Locate moments where speed, scale, or consistency creates outsized impact: triage, prioritization, risk scoring, summarization, or outreach personalization. These are rich candidates for AI assistance that preserves accountability while giving your expertise superpowers through guided reasoning, factual grounding, and well-designed guardrails.
Decompose tacit reasoning into observable features: entities, relationships, thresholds, citations, or contradictions. Encode them as prompt instructions, evaluation rubrics, lightweight schemas, and feedback labels, so models can align with your standards and continuously improve through structured iteration and transparent, auditable decision trails.
Use role specification, constraints, stepwise objectives, and exemplars to shape outputs. Layer system instructions with reusable templates tied to your standards. Maintain a living library of prompts and counterexamples, so teams converge on reliable, auditable practices that scale across engagements, cases, or product lines.
Design review points where experts correct, annotate, and rate outputs. Their feedback trains rubrics, improves prompts, and tunes retrieval. Over time, less effort yields better results, and expertise compounds into institutional memory that new hires, partners, and future systems can trust and extend responsibly.
Orchestrate notes, knowledge bases, vector search, spreadsheets, and APIs through simple scripts or no-code glue. Trigger model calls at the right moments, capture provenance, and push results into familiar tools. This preserves continuity while adding superhuman recall, precision, and speed to everyday deliverables and decisions.
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