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Chris France5 min read

Unlocking Growth with Gen AI : The 5 Frictions Corporates Can't Ignore

Unlocking Growth with Gen AI : The 5 Frictions Corporates Can't Ignore
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Generative AI (Gen AI) holds immense promise for transforming how consumer brands personalize experiences, streamline operations, and engage with customers.. However, the harsh reality is that many corporations are failing to harness the full potential of GenAI. 

Structural issues (rigid organizational hierarchies, siloed departments, outdated legacy systems) and the need for substantial upskilling are major hurdles. In fact many organizations are simply not able to work with GenAI today due to legacy system architectures, data privacy concerns, and a lack of AI expertise hindering effective implementation. 

Let's dive into the specific barriers and what can be done to overcome them. 

1. Missing Key Talent & Expertise 

One of the most pressing challenges is the severe shortage of talent with expertise in AI and data analytics. The rapid pace of AI development has outstripped the internal capabilities of many companies, leaving them struggling to find and train the necessary talent. According to recent studies, 70% of corporate leaders report a critical skills gap that hampers business performance and innovation. While 79% of organizations are attempting to address these gaps, the task remains daunting.

Leaders reporting critical skills gap
70%
Organizations addressing skills gap
79%
What to do about it
Close the Skills Gap with Targeted Initiatives
Forge Strategic Partnerships
Collaborate with educational institutions and strategic partners. Offer specialized Gen AI courses tailored to your corporate needs.

Create Internal AI Academies

Establish in-house training academies focusing on AI and data science. Incentivize employees to earn certifications and enhance their skills.

Hire the Right Talent

Prioritize recruiting data scientists, AI specialists, and machine learning engineers. Don’t overlook AI ethicists to ensure responsible AI implementation.

2. Outdated Governance and Policy 

Outdated governance frameworks often penalize risk-taking, which stifles the experimentation necessary for AI innovation. These rigid structures are a significant barrier, preventing companies from exploring the full potential of GenAI. Training materials are often inadequate, and the governance structures in place discourage the necessary level of experimentation.

What to do about it
Establish Robust Governance Frameworks
Develop Adaptive Governance Policies
Revise existing policies to encourage innovation while maintaining control. This might involve creating "safe sandboxes" where AI experimentation can occur with reduced regulatory oversight.

Implement Ethical AI Guidelines

Create clear guidelines for ethical AI use, emphasizing transparency and fairness. You could also consider forming an AI ethics committee to oversee these practices.

Conduct Regular Audits

Implement regular audits to assess the effectiveness of AI governance frameworks. This includes ensuring that the guidelines are keeping pace with AI advancements and addressing any emerging risks.

3. Alignment of Objectives and Vision 

A lack of alignment between AI initiatives and broader business objectives can create gaps in strategy and understanding. Companies often find themselves developing AI solutions in silos, leading to disjointed efforts that do not align with the company’s overall vision or goals.

What to do about it
Align AI Initiatives with Strategic Objectives
Develop a Unified AI Strategy
Ensure that AI initiatives are aligned with the company’s overall strategic goals. This requires clear communication between departments and a unified vision from leadership. 

Engage Stakeholders

Involve all relevant stakeholders in the planning and execution of AI projects. This helps ensure that AI solutions are not only innovative but also relevant to the company’s core mission.

 

4. Unpredictable Market and Cultural Dynamics

Market forces and cultural factors add unpredictability to AI adoption. Rapid changes in costs, performance, and consumer expectations can create volatility, making it difficult for companies to maintain a steady course in their AI initiatives. Additionally, cultural resistance to new technologies can lead to reputational risks.

What to do about it
Anticipate and Adapt to Market Shifts
Monitor Market Trends
Stay informed about market trends and be ready to pivot AI strategies as necessary. This involves continuous market research and a flexible approach to AI adoption. 

Address Cultural Resistance

Develop change management programs that emphasize the benefits of AI while addressing concerns about job displacement and other fears. Foster a culture of innovation where employees are encouraged to engage with new technologies.

 

5. Surprise Risk Vectors  

New AI models can introduce risks that are not well understood due to their novel nature. These risks, which might include unexpected ethical dilemmas or operational challenges, can be particularly dangerous if not anticipated and managed proactively.

What to do about it
Implement Proactive Risk Management
Develop an Early Warning System
Create mechanisms to detect emerging risks early. This could include regular risk reviews, scenario planning exercises, and the use of AI-driven tools that predict potential pitfalls based on historical data.

Implement Safeguards

Develop technical and non-technical safeguards to mitigate these risks. This could include setting limits on AI decision-making capabilities or maintaining human oversight over critical AI functions.

Create a Flexible Response Plan

Develop a dynamic risk management plan that can be quickly adapted as new risks emerge. Itn should include predefined responses to various risk scenarios, as well as the flexibility to update protocols as new information becomes available.

Strategic Patience Is Key in Adopting Gen AI Solutions 

As companies venture into the realm of generative AI, it's essential to tread carefully. While the technology promises transformative benefits, most solutions are still in their early stages. This means the risks are significant, and a misstep can lead to costly setbacks. It's crucial to have a well-thought-out strategy that considers both the potential rewards and the inherent challenges. Rather than rushing into deployment, businesses should focus on building the necessary infrastructure, skills, and governance frameworks to support GenAI initiatives sustainably. 

Planning these initiatives with caution is absolutely necessary. Companies need to set realistic expectations and be prepared for a learning curve. The integration of AI across different departments, from marketing to HR, will require continuous adaptation and refinement. As we move forward, the focus should be on measured, strategic adoption, ensuring that each step is aligned with broader business goals and ethical considerations.  

In our next article, we’ll dive into how AI is being strategically implemented across various enterprise functions, showcasing the innovative approaches current market leaders are using to drive efficiency and innovation. Stay tuned! 

 

 

For tailored strategies and expert guidance, contact us today, and let's secure your brand's future in an AI-driven world.

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Chris France

Chris France is a serial co-founder, technologist, and AI expert. He has been a digital pioneer for nearly two decades, designing and building data products leveraging applied machine learning and advanced data visualization. His experience spans roles in product leadership, platform design, and software development across a diverse range of sectors, including large enterprises, startups, and nonprofits.

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