Skillquality 0.45

ai-market-landscape

Real-time competitive analysis of the AI market. Covers foundation models, products, pricing, moats, and strategic positioning across major AI labs and emerging players.

Price
free
Protocol
skill
Verified
no

What it does

AI Market Landscape Skill

Generate a comprehensive, up-to-date analysis of the AI competitive landscape — the market context every AI PM needs.

When to Use

  • User asks "What's the current AI landscape?"
  • User wants a competitive analysis of AI companies
  • User needs context on a specific AI market segment (models, agents, enterprise, consumer)
  • User says /ai-market-landscape followed by a focus area
  • Before any strategy interview to build fresh market context

Framework: AI Market Landscape (6 Sections)

Section 1: The AI Stack (Where Value Accrues)

Map the current AI value chain:

Layer 5: Applications    (ChatGPT, Perplexity, Cursor, vertical SaaS)
Layer 4: Orchestration   (LangChain, agent frameworks, MCP)
Layer 3: Models          (GPT-4, Claude, Gemini, Llama, Mistral)
Layer 2: Infrastructure  (AWS, Azure, GCP, Together, Fireworks)
Layer 1: Compute         (NVIDIA, AMD, custom chips - TPU, Trainium)

For each layer:

  • Who are the key players?
  • Where is commoditization happening?
  • Where is differentiation strongest?
  • Where is the most value being captured today vs. in 2 years?

Section 2: Foundation Model Landscape

Compare the major model providers:

DimensionLab ALab BLab CLab DLab E
Latest model
Key capability
Pricing (input/output per 1M tokens)
Open vs. closed
Primary distribution
Enterprise strategy
Safety approach
Funding / valuation

Section 3: Product Landscape

Map AI products by category:

Consumer AI:

  • General assistants (ChatGPT, Claude, Gemini)
  • Search (Perplexity, SearchGPT, Gemini)
  • Creative (Midjourney, DALL-E, Suno, Runway)
  • Productivity (Notion AI, Copilot, Jasper)

Developer AI:

  • Code (Cursor, GitHub Copilot, Claude Code, Windsurf)
  • APIs & platforms (major LLM provider APIs, cloud AI platforms)
  • Infrastructure (Vercel AI SDK, LangChain, LlamaIndex)

Enterprise AI:

  • Horizontal (Microsoft Copilot, Google Workspace AI, Salesforce Einstein)
  • Vertical (Harvey for law, Abridge for healthcare, Palantir AIP)

Agents & Automation:

  • Computer use agents (browser and desktop automation)
  • Workflow automation (Make, Zapier AI, n8n)
  • Autonomous coding (Devin, Claude Code, Codex)

Section 4: Strategic Dynamics

Analyze the key strategic questions shaping the market:

Open vs. Closed:

  • Open-weight model strategies vs. closed-model approaches
  • Impact on commoditization, developer loyalty, enterprise adoption
  • Where does open-source win? Where does it lose?

Consumer vs. Enterprise:

  • Consumer-first strategies (chatbot → enterprise upsell)
  • Enterprise-first strategies (API → consumer product)
  • Google's distribution advantage (Android, Chrome, Workspace, Search)

Horizontal vs. Vertical:

  • Can horizontal AI products win vertical use cases?
  • When do vertical AI startups have a wedge?
  • The data moat question: does proprietary data still matter?

Agents & Autonomy:

  • Where is agentic AI working today vs. hype?
  • Trust and safety challenges with autonomous agents
  • The "human-in-the-loop" spectrum

Section 5: Market Sizing & Trends

Current market data (research the latest):

  • Total AI market size and growth rate
  • AI infrastructure spend
  • Enterprise AI adoption rates
  • Consumer AI MAU trends
  • Developer tool market

Key trends to track:

  • Model capability improvement curves
  • Price per token trajectory (deflationary)
  • Multimodal adoption
  • AI regulation (EU AI Act, US executive orders)
  • AI talent market dynamics

Section 6: Implications for Product Decisions

Based on the landscape, highlight:

  • Key questions each company is wrestling with right now
  • Strategic tensions shaping product roadmaps
  • Product opportunities where each company has a gap
  • Open debates in the AI product community

Output Format

Write as an analyst briefing — data-driven, opinionated, and actionable. Use tables for comparisons. Include specific numbers and sources. Aim for ~2500 words.

Research-First Workflow (CRITICAL)

This skill is ONLY valuable with fresh data:

  1. Research extensively — Do 10-15 web searches covering: latest model releases, funding rounds, product launches, market reports, earnings calls, developer surveys, and thought leader commentary.
  2. Cite everything — Include [linked source](url) inline for all data points.
  3. Date the analysis — Include "As of [date]" so the user knows the freshness.
  4. Display the complete landscape analysis.

What Good Looks Like

  • Demonstrates you follow the AI market closely
  • Shows you understand competitive dynamics beyond surface level
  • Provides specific data points to drop in strategy discussions
  • Reveals understanding of where value accrues vs. commoditizes
  • Builds the context needed for "what would you build?" questions

Capabilities

skillsource-aroyburman-codesskill-ai-market-landscapetopic-agent-skillstopic-claude-codetopic-claude-skillstopic-frameworkstopic-metricstopic-pm-toolstopic-product-managementtopic-product-strategy

Install

Quality

0.45/ 1.00

deterministic score 0.45 from registry signals: · indexed on github topic:agent-skills · 6 github stars · SKILL.md body (4,986 chars)

Provenance

Indexed fromgithub
Enriched2026-05-18 19:14:46Z · deterministic:skill-github:v1 · v1
First seen2026-05-18
Last seen2026-05-18

Agent access