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Generates comprehensive marketing intelligence briefings from cross-agent learnings, confidence scores, and playbooks. Use for quarterly planning, strategy reviews, onboarding, or identifying knowledge gaps.
npx claudepluginhub indranilbanerjee/digital-marketing-proHow this skill is triggered — by the user, by Claude, or both
Slash command
/digital-marketing-pro:intelligence-reportThe summary Claude sees in its skill listing — used to decide when to auto-load this skill
Generate a comprehensive intelligence briefing from the brand's compound intelligence system. This command surfaces the accumulated knowledge that agents have built over time — total learnings captured, confidence distribution across insights, top patterns identified across agents and channels, actionable playbooks generated from proven strategies, and intelligence base health metrics showing w...
Generates marketing performance reports with executive summaries, key metrics tables, trend analysis, wins/misses, and prioritized optimizations for campaigns or channels.
Use this skill when the user wants a strategic, cross-functional analysis that connects paid, organic, content, and retention into one unified view. This is NOT a weekly summary — it is a decision engine that finds the hidden connections between channels. Activate when the user says "full marketing review", "how is everything doing", "weekly brain", "give me the full picture", "marketing intelligence report", "what should I focus on this week", "retention and acquisition together", "connect the dots across channels", or any request that implies synthesizing all marketing dimensions into one strategic recommendation. Do NOT use for simple weekly overviews or single-channel questions — those belong to ds-channel-report or the individual channel skills. This skill launches parallel subagents. Works best with Dataslayer MCP connected. Also works with manual data.
Core creative strategy reasoning methodology for the motion-creative plugin. This is a reference skill — it defines how to think about performance, competitive intelligence, and concept generation. Other skills read this for methodology. Only invoke directly when the user asks about the creative strategy framework itself or when no action skill matches. For specific tasks, route to: analyze-ad, performance-analysis, create-concepts, build-brief, write-hooks, find-iterations, industry-trends, qa-feedback, weekly-performance, etc.
Share bugs, ideas, or general feedback.
Generate a comprehensive intelligence briefing from the brand's compound intelligence system. This command surfaces the accumulated knowledge that agents have built over time — total learnings captured, confidence distribution across insights, top patterns identified across agents and channels, actionable playbooks generated from proven strategies, and intelligence base health metrics showing where the knowledge is strong and where gaps exist. The intelligence report turns raw accumulated data into strategic advantage by synthesizing cross-agent patterns that no single agent would surface alone. Use it for quarterly planning, strategy reviews, onboarding new team members to a brand's marketing intelligence, or identifying which areas need more experimentation and data collection to strengthen decision-making confidence.
The user must provide (or will be prompted for):
~/.claude-marketing/brands/_active-brand.json for the active slug, then load ~/.claude-marketing/brands/{slug}/profile.json. Apply brand positioning, channel mix, campaign history, and strategic objectives. Also check for guidelines at ~/.claude-marketing/brands/{slug}/guidelines/_manifest.json — if present, load restrictions. Check for agency SOPs at ~/.claude-marketing/sops/. If no brand exists, ask: "Set up a brand first (/digital-marketing-pro:brand-setup)?" — or proceed with defaults.intelligence-graph.py get-stats --brand {slug} to retrieve the intelligence base overview — total learnings captured, learnings by agent and channel, confidence score distribution (high, moderate, low), date range of intelligence, and most recent learning timestamp.intelligence-graph.py get-patterns --brand {slug} for key dimensions — channel performance patterns, audience response patterns, timing and seasonality patterns, creative and messaging patterns, and budget efficiency patterns. If a focus area was specified, weight pattern retrieval toward that dimension. Identify patterns that span multiple agents (e.g., a timing pattern confirmed by both the email specialist and social media manager).intelligence-graph.py export-playbook --brand {slug} --scenario {scenario} to synthesize relevant learnings into a step-by-step actionable playbook. Each playbook step references the specific learnings and confidence levels that support it. If no playbook was requested, generate a summary of the top three available playbooks based on the strongest pattern clusters.A structured intelligence briefing containing: