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Why AI Projects Fail in Life Sciences

And How to Make Yours Succeed

AUTHORS

OLAF ACKER

Managing Director,

Advisory

NICK CARREL

Managing Principal,

Data Analytics Consulting

JONATHAN RIOUX

Managing Principal,

Data Analytics Consulting

AUTHORS

OLAF ACKER

Managing Director,

Advisory

NICK CARREL

Managing Principal,

Data Analytics Consulting

JONATHAN RIOUX

Managing Principal,

Data Analytics Consulting

Life sciences are not short on AI ambition. With their knowledge-intensive workflows, deep data assets and highly structured operating environments, pharma companies are uniquely positioned to realize value from AI.

Across the industry, leaders are investing in AI:

14%

Companies expect to spend 14% more on AI initiatives than in years past, according to EPAM’s 2025 AI report.

And the industry is confident in its AI adoption thus far:

51%

51% of respondents describe themselves as advanced when it comes to implementing AI.

8%

8% of Life Sciences firms describe themselves as disruptors.

Successful AI initiatives within pharma and biotech hinge on three areas:

01

Identifying value and building the right frameworks

02

Crafting — and implementing — a winning business case

03

Quantifying value and scaling success

Here we examine the first of these three pillars with a focus on strategy, governance and data. Why do businesses struggle to identify value? What foundational elements are missing? And most importantly, how can pharma companies avoid those pitfalls while building an AI strategy designed for true impact?

 

01

Build a Realistic and Comprehensive Understanding of the Current State

THE NUMBERS

74%

74% of companies struggle to achieve and scale value when adopting AI.

9%

While 63% of companies are piloting GenAI, only 9% are deploying it at any significant scale.

65%

65% of disruptors agree or strongly agree that they know the skills necessary for AI adoption, yet 46% of those disruptors believe their staff needs to upskill.

THE PROBLEM

Many organizations adopt a scattered strategy where they test hundreds of disparate use cases before strategically evaluating their existing technological maturity. This approach dilutes resources, creates technical debt and prevents meaningful scale.

THE IMPERATIVE

Successful Companies:

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Adopt a focused, high-value approach.
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Conduct a rigorous audit of their current data infrastructure, talent capabilities and technological readiness.
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Prioritize projects that align with their immediate capabilities while setting the groundwork for long-term structural improvements.
 

02

Develop a Clearly Defined Vision of Success

THE NUMBERS

39%

Despite 88% of organizations citing the presence of a data strategy, only 39% agree that their data strategy is completely aligned with key business objectives.

2.4x

Businesses with a defined vision are 2.4 times more likely to achieve their objectives effectively and drive sustained growth (Forbes).

THE PROBLEM

AI initiatives frequently launch as isolated experiments rather than strategic business drivers. Leadership engagement and a clearly defined AI vision aligned with business objectives are essential to success. Without leadership-driven change, businesses fail entirely.

THE IMPERATIVE

Successful Companies:

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Align every major AI initiative with core business goals to ensure relevancy and impact.
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Have executive-level leadership buy-in to drive accountability and inspire organizational support.
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Ensure both business and IT ownership and drive cross-functional alignment.
 

03

Involve Business Stakeholders Early in the Development Process

THE NUMBERS

88%

88% of companies report regular AI use in at least one business function.

40%

Over 40% of agentic AI initiatives are expected to be canceled by 2027 due to unclear business value and governance challenges. 

3x

Companies with senior leadership commitment are 3x more likely to achieve AI value.

THE PROBLEM

Centralized AI teams often work in isolation, developing solutions based on technical potential rather than real business pain points. When business stakeholders are excluded from the early ideation and design phases, projects risk misalignment with practical workflows and actual end-user needs. This disconnect means critical business context is overlooked and adoption barriers are underestimated.

AI solutions that are imposed top-down without early buy-in are far less likely to solve core problems or gain traction. Misunderstandings about workflows, data availability and regulatory realities can result in expensive initiatives that stall or get shelved, compounding skepticism about future AI investments.

THE IMPERATIVE

Successful Companies:

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Involve business stakeholders from day one by embedding them in project ideation, requirement gathering, and solution design.
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Establish cross-functional steering committees to ensure alignment between AI strategy, end-user needs, and compliance requirements.
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Co-create and iterate AI solutions in partnership with business owners to maximize relevance, drive adoption, and ensure measurable impact on operational and clinical outcomes.
 

04

Secure Strong Buy-In at Every Level of the Organization

THE NUMBERS

51%

51% of life sciences organizations cite resistance to change as the top barrier to AI adoption.

58%

58% of employees haven’t used AI at work.

24%

Just 24% are confident in their organization’s AI policies.  

THE PROBLEM

Even when executives endorse an AI project, adoption can stall if end users don't trust or understand the technology. Clinical researchers, data scientists and compliance officers may see AI as a disruption to their daily work rather than a tool that can help them.

THE IMPERATIVE

Successful Companies:

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Champion Aggressive Change Management
Involve end users early in the development process to ensure the tools solve actual daily friction.
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Provide Comprehensive Training Programs
Establish clear communication channels to foster understanding and skill development.
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Demonstrate Early Wins
Build momentum and trust among your workforce by showcasing the technology's initial successes.
 

05

Establish the Right Governance Frameworks With Speed

THE NUMBERS

18 months

On average, businesses expect it will take them 18 months to roll out an effective governance strategy for AI. 

68%

68% of companies acknowledge lacking the necessary governance to manage AI risk. 

37%

Only 37% have established an AI ethics committee to guide these initiatives. 

THE PROBLEM

In order to see change, businesses must establish governance now. Waiting a year and a half leaves organizations exposed to severe security risks and regulatory breaches. This reactive approach is a critical misstep in an era defined by rapid technological advancement.

THE IMPERATIVE

Successful Companies:

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Define clear roles, responsibilities and decision-making processes.
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Consider which type of governance model works best for your organization.
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Address ethical considerations, bias mitigation, model management, risk management and regulatory compliance early before they become disruptive.


Governance in Centralized, De-centralized & Hybrid Models

Decentralized or Federated Governance

Central CTO or enterprise teams provide guidance, and divisions own workflows.

Common Context: Typical in organizations with strong divisional independence and diverse business models.

Hybrid Model

Central AI strategy with business unit-level autonomy, often supported by external expertise.

When it Fits: Common in organizations with independent business units and differing needs or ways of working.

Centralized Governance Committees

A single cross-functional body oversees AI.

What it Controls: Approval workflows, risk tiers, documentation standards and ongoing monitoring.

 

06

Strengthen and Maintain Solid Data Foundations

THE NUMBERS

57%

57% of life sciences professionals say data silos are their top technical challenge, a barrier that consistently derails AI initiatives and curbs value creation.

80%

80% of organizations report poor data quality or availability, leading to an average loss of $12.9 million annually.

49%

49% of experts cite ontology gaps blocking FAIR (Findable, Accessible, Interoperable, Reusable) data management.

THE PROBLEM

AI requires accessible, high-quality and harmonized data, but most life sciences organizations struggle with data that is fragmented across silos, subject to inconsistent standards and rarely aligned with FAIR principles. Critical information is scattered across disconnected legacy systems, hindering collaboration and making it nearly impossible to build the reliable datasets needed for robust, compliant AI models.

This fragmentation slows innovation and erodes trust in AI outcomes. When data cannot be easily found, trusted or reused, teams spend excessive time cleaning and prepping information rather than developing new solutions. The net effect is wasted resources, stalled initiatives and missed opportunities.

THE IMPERATIVE

Successful Companies:

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Invest in enterprise-wide data integration platforms and federated data models to break down silos and enable secure, centralized access while protecting compliance.
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Establish robust data quality frameworks and company-wide semantic standards, making information consistent, interpretable, and reusable across the organization.
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Embrace and operationalize FAIR data principles (Findable, Accessible, Interoperable, Reusable) to enable seamless data discovery, sharing, and scaling of insights throughout the enterprise.
 

07

Deliver Measurable Value Before Solutions Become Obsolete

THE NUMBERS

85%

85% of pharma leaders report inadequate data and technology foundations hinder AI adoption.

50%

50% of genAI projects were abandoned after proof of concept due to poor data quality and shifting business priorities.

81%

81% report achieving analytic accuracy and operational efficiency as the top barrier to implementation.

THE PROBLEM

AI initiatives in life sciences often fail because slow, fragmented development cycles can't keep pace with the rapidly evolving landscape of research, regulation and technology. By the time solutions are ready for deployment, the original business problem may have changed or the technology is already outdated.

This "too little, too late" dynamic is worsened when teams work in isolation or stick to rigid assumptions, leading to "solution obsolescence." This often results in wasted investment and increased technical debt.

THE IMPERATIVE

Successful Companies:

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Commit to agile, iterative development processes that allow rapid adjustment of project goals and technical approaches as business needs and technologies change.
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Schedule regular alignment reviews with business stakeholders to ensure ongoing relevance and value.
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Build modular, upgradable AI architectures that enable swift integration of new data sources, algorithms, and compliance requirements as they arise.
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Foster a culture of continuous learning and adaptation, so teams can pivot quickly and maximize the long-term value of their AI investments.
 

08

Foster Realistic Expectations About AI Capabilities

THE NUMBERS

71%

71% of CTOs and CIOs reported facing unrealistic ROI demands from leadership regarding AI initiative.

80%

While 80% of respondents set efficiency as an objective for AI initiatives, the most successful organizations also prioritize growth and innovation, avoiding a narrow focus on cost-cutting.

50%

50% of GenAI budgets go to sales and marketing, but back-office automation often yields better ROI.

THE PROBLEM

AI is often seen as a cure-all for complex business problems, but this sets projects up for failure. Underestimating the need for quality data, iterative development and human oversight — while overestimating AI's speed as a "plug-and-play" solution — drives poor planning, stakeholder disengagement and increased regulatory risk.

THE IMPERATIVE

Successful Companies:

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Set clear, realistic expectations at the outset by educating stakeholders about the true capabilities and limitations of AI, including where human expertise, oversight, or consensus remains vital.
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Encourage an experimental, learning mindset — frame AI adoption as an evolving journey, not a single transformational leap — so initial setbacks become opportunities for improvement.
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Build in periodic project reviews focused on aligning technical progress with business value and communicating results honestly, fostering transparency and organizational learning at every stage.
cta bg

Build the Foundations for AI Success

The difference between the 95% of organizations playing with AI and the 5% transforming their businesses is strategic and foundational discipline. A successful enterprise AI strategy starts with a clear long-term ambition, aligning business and IT across governance, roles and technology. The data foundation that follows must balance local ownership with enterprise-wide consistency through federated models and semantic standardization that make fragmented data discoverable, interoperable and usable for trusted search and scalable AI.

bg mob new

Build the Foundations for AI Success

The difference between the 95% of organizations playing with AI and the 5% transforming their businesses is strategic and foundational discipline. A successful enterprise AI strategy starts with a clear long-term ambition, aligning business and IT across governance, roles and technology. The data foundation that follows must balance local ownership with enterprise-wide consistency through federated models and semantic standardization that make fragmented data discoverable, interoperable and usable for trusted search and scalable AI.

CONTRIBUTORS

BERT
CARDOEN

Senior Consultant,

Advisory

DOMINIK
RIEDT

Senior Consultant,

Advisory

SASCHA
ROSENBERG

Senior Consultant,

Advisory

DR. MAXIM
POLIKARPOV

Senior Manager,
Advisory