AI Adoption and Readiness in Manufacturing
Interesting review on AI readiness and maturity towards the AI implementation in manufacturing firms
Bea Vallina, PhD.
7/23/20252 min read
HEIMBERGER, H., HORVAT, D., JÄGER, A. y SCHULTMANN, F., 2025. Exploring AI Adoption in Manufacturing: An Empirical Study on Effects of AI Readiness. International Journal of Production Economics, pp. 109733. ISSN 0925-5273.
Quantitative Survey Study / Large-scale empirical analysis. Germany. Manufacturing (general) - applicable to Food Processing, Dairy, Meat. Full-scale (1,334 firms)
Technologies:
AI applications (machine learning, pattern recognition).
Self-learning algorithms with pattern recognition capabilities. Various levels from standalone to fully integrated production systems.
Industrial applications:
Production process management
Quality control
Predictive maintenance
Internal logistics management
Maturity and readiness
Tech: "Majority of companies fall into medium (49%) or high (40%) technological readiness categories. Solid technological foundation established."
Eco-fin: "Gap between AI readiness and actual adoption suggests apprehension towards implementation. 14% adoption rate despite higher readiness levels."
Organisational: "High level organisational readiness less frequently achieved (28%). One in four manufacturers exhibit no (5%) or only low (20%) organisational readiness."
Supply chain: "AI applications in internal logistics management (6% adoption). Supply chain integration limited but present."
Legal framework: "Data security measures: 60% implement few measures, 33% various security measures. Regulatory compliance addressed through security protocols."
Results
AI Adoption Rate
14% of German manufacturing companies
Binary variable (0/1) across 4 application areas
Representative sample
Technological Readiness
89% medium-high level
Ordinal scale (0-4 levels)
Statistically significant
Organisational
75% medium-high level
Ordinal scale (0-4 levels)
p<0.05
Combined Readiness Impact
3x higher odds
Logistic regression OR=3.04
p<0.01
Implementation factors
Levers
Data availability (82% basic-large), IT infrastructure (69% adequate), security measures (93% implemented)
Clear ROI expectations for complex product manufacturers
Training programmes (81% offered), innovation culture (73% present), R&D cooperation (57%)
Industry sector influence (automotive 31% vs others ~14%)
Barriers
Limited integration capabilities, legacy system constraints
Unclear returns on investment, cost concerns for medium-sized firms
Skills gaps (47% lack digital skills), resistance to change, cultural barriers
Regulatory uncertainty, sector-specific constraints (chemicals/pharma 7% adoption)
KEY findings
Finding 1: Despite relatively high AI readiness levels (89% technological, 75% organisational), actual adoption remains low (14%), indicating implementation hesitancy.
Finding 2: Combined AI readiness significantly more predictive than individual dimensions - holistic approach essential for successful adoption.
Finding 3: Structural characteristics crucial - product complexity provides 3x advantage, firm size shows U-shaped relationship.
Finding 4: Organisational readiness emerges as more critical than technological readiness for actual implementation success.
Research by: Beatriz Vallina, PhD
Thesis Supervisors: Roberto Cervelló, Prof.PhD & Juan José Lull, PhD
Institution: Doctorate in Agrifood Economics, Universitat Politècnica de València
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