diff --git a/output/battlecards/cards/card_02_ai_infrastructure.md b/output/battlecards/cards/card_02_ai_infrastructure.md index bf36ef2..482a0ca 100644 --- a/output/battlecards/cards/card_02_ai_infrastructure.md +++ b/output/battlecards/cards/card_02_ai_infrastructure.md @@ -9,7 +9,7 @@ - Tech debt spiked to $121B in 2025 — 4x the 5-year average — as companies rush to build AI infrastructure *(Source: tech debt tracking data, 2025)* - NVIDIA data center revenue grew from $1.57B (FY2020 Q1) to $75.2B (FY2027 Q1) — a 48x increase *(Source: NVIDIA earnings reports)* -![](mini_capex_trajectory.png) +![](../charts/mini_capex_trajectory.png) ## Impact diff --git a/output/battlecards/cards/card_03_gpu_utilization.md b/output/battlecards/cards/card_03_gpu_utilization.md index cd87451..ec3500e 100644 --- a/output/battlecards/cards/card_03_gpu_utilization.md +++ b/output/battlecards/cards/card_03_gpu_utilization.md @@ -9,7 +9,7 @@ - CPU utilization is at 8% and memory utilization at 20% — systemic over-provisioning across all resources *(Source: Cast AI 2026)* - 69% CPU over-provisioning (up from 40% YoY) and 79% memory over-provisioning *(Source: Cast AI 2026)* -![](mini_gpu_utilization.png) +![](../charts/mini_gpu_utilization.png) ## Impact diff --git a/output/battlecards/cards/card_04_startup_valuations.md b/output/battlecards/cards/card_04_startup_valuations.md index 2e786f9..1f5fa1d 100644 --- a/output/battlecards/cards/card_04_startup_valuations.md +++ b/output/battlecards/cards/card_04_startup_valuations.md @@ -9,7 +9,7 @@ - Revenue multiples for AI startups range from 100x to 500x, far exceeding dot-com era peaks of 50-100x *(Source: PitchBook/CB Insights data)* - Burn rates are enormous: OpenAI alone has consumed over $7B in funding while pursuing path to profitability *(Source: public filings and media reports)* -![](mini_startup_multiples.png) +![](../charts/mini_startup_multiples.png) ## Impact diff --git a/output/battlecards/cards/card_05_enterprise_deployment.md b/output/battlecards/cards/card_05_enterprise_deployment.md index 45acbd6..c361a35 100644 --- a/output/battlecards/cards/card_05_enterprise_deployment.md +++ b/output/battlecards/cards/card_05_enterprise_deployment.md @@ -9,7 +9,7 @@ - ServiceNow partner SnowGeek achieved 73% midnight escalation reduction, 65% MTTR improvement, and $2.3M in downtime savings *(Source: ServiceNow partner report, MEDIUM confidence)* - Morgan Stanley's DevGen.AI reviewed 9M+ lines of legacy code, saving 280,000 developer hours *(Source: Morgan Stanley, 2025)* -![](mini_enterprise_savings.png) +![](../charts/mini_enterprise_savings.png) ## Impact diff --git a/output/battlecards/cards/card_06_developer_adoption.md b/output/battlecards/cards/card_06_developer_adoption.md index 693ee26..8ad550c 100644 --- a/output/battlecards/cards/card_06_developer_adoption.md +++ b/output/battlecards/cards/card_06_developer_adoption.md @@ -9,7 +9,7 @@ - 84% of developers use or plan to use AI coding tools, with 51% using them daily *(Source: JetBrains/Stack Overflow surveys)* - Code acceptance rate is ~30% initially, but code retention is 88% — suggesting AI-assisted code, once accepted, proves reliable *(Source: GitHub data)* -![](mini_developer_adoption.png) +![](../charts/mini_developer_adoption.png) ## Impact diff --git a/output/battlecards/cards/card_07_code_quality_caveats.md b/output/battlecards/cards/card_07_code_quality_caveats.md index 1ce6054..2781a6b 100644 --- a/output/battlecards/cards/card_07_code_quality_caveats.md +++ b/output/battlecards/cards/card_07_code_quality_caveats.md @@ -9,7 +9,7 @@ - 7.2% drop in delivery stability from AI use, measured via DORA metrics *(Source: Google DORA report, 2024)* - 6.4% secret leakage rate in AI-generated code — credentials, API keys, and tokens embedded unintentionally *(Source: security analysis)* -![](mini_code_vulnerabilities.png) +![](../charts/mini_code_vulnerabilities.png) ## Impact diff --git a/output/battlecards/cards/card_08_long_term_productivity.md b/output/battlecards/cards/card_08_long_term_productivity.md index 08c8653..4df4944 100644 --- a/output/battlecards/cards/card_08_long_term_productivity.md +++ b/output/battlecards/cards/card_08_long_term_productivity.md @@ -9,7 +9,7 @@ - Google reports 21% of code in their codebase is now AI-assisted, with measurable quality improvements *(Source: Google internal research)* - Realistic productivity gain range: 20-67% across studies, with higher gains in tasks involving boilerplate and documentation *(Source: multiple academic and industry studies)* -![](mini_productivity_trajectory.png) +![](../charts/mini_productivity_trajectory.png) ## Impact