Optimizing AI with Data & Strategy
In today’s Tech Pulse, gain insight into how:
Each of these articles is penned by members of Forbes Technology Council, key luminaries shaping the future of technology leadership.
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AI Success Hinges on Optimal Data Strategy
Eilon Reshef - Cofounder & Chief Product Officer Gong
AI has penetrated nearly every facet of business operations, promising enhanced productivity and decision-making. However, the efficacy of AI technologies is intrinsically linked to the quality of the data they process.
Without a strategic approach to data collection and utilization, AI systems fail to deliver their potential, emphasizing the need for a robust data foundation to foster actionable insights and sustainable business growth.
Explore key insights on building a robust data strategy below:
???Data Quantity & Completeness: Ensure your data is comprehensive. This includes capturing both structured and unstructured data from various sources to provide AI systems with a complete dataset, thereby enhancing the reliability of the insights generated.
???Data Quality: Focus on the accuracy and objectivity of data. Automated data capture minimizes human error and bias, enabling AI systems to produce more precise outputs and supporting better decision-making processes.
???Data Context: Align data with specific business contexts. AI must be tailored to understand unique business nuances, ensuring its insights' relevancy and enhancing decision-making capabilities.
Navigating the Abundance of AI: Effective Strategies for Implementation
Michael Meucci - President & CEO Arcadia
AI's expansive growth hints at a future where it pervades every segment of business, predicted to reach a market size of $1.3 trillion by 2032. Yet, this abundance, while beneficial, presents significant challenges.
The profusion of AI tools and output can overwhelm them, requiring a strategic approach to harness their potential effectively. Embracing AI isn’t just about adopting new technologies but integrating them seamlessly into existing workflows to enhance productivity and decision-making.
Here's how businesses can optimally manage and implement AI:
???Integration into Daily Workflows: Instead of standalone solutions, embedding AI tools into everyday business processes can increase usability and effectiveness.
???Selective & Strategic Use: AI should not be a panacea for all operational challenges. It's vital to assess when AI is appropriate and select tools that align with specific business needs, avoiding the allure of using AI just for the sake of innovation.
?? Choosing the Right AI Model: Not all AI tools fit all purposes. Businesses must select AI models carefully, considering whether a generalist or specialist tool is required based on the use case to prevent inefficiencies and enhance outcomes.
???High-Quality, Fresh Data: Effective AI implementation relies on high-quality data. Regular updates and training of AI models with relevant data ensure that outputs are accurate and truly beneficial for the organization.
AI as a Strategic Tool to Manage Spiraling Cloud Costs
Jyoti Bansal - Founder & CEO Harness
The rise of AI has significantly impacted cloud costs, contributing to a 30% increase in cloud spending for businesses, with tales of unchecked expenses causing monetary shocks.
However, despite the challenges of managing these burgeoning costs, AI also presents solutions that can strategically address and mitigate spending issues through enhanced understanding and automation.
Explore strategies to leverage AI for controlling cloud costs:
?? Enhanced Spending Insight: AI-driven tools simplify cloud cost analysis, allowing stakeholders to inquire about expenditures in plain language and receive clear, actionable insights. This shift from complex spreadsheets to intuitive queries is a game-changer in financial operations.
??? Actionable Recommendations: Beyond visibility, AI tools now suggest optimal actions for cost savings, such as shutting down idle resources or adjusting storage strategies. These recommendations are tailored based on historical data and current usage patterns.
???Automation of Cost Fixes: Possibly the most significant leap forward is automating the recommended cost-saving measures. Tools that automatically adjust resource usage without human intervention can drastically reduce waste, ensuring that cloud resources are economically optimized.
???Predictive Spending & Governance: AI technologies manage current expenditures and can predict future costs and automate purchasing decisions to align with these forecasts. Additionally, AI-driven governance models enforce standardized practices across teams, preventing costly deviations.
Wrapping Up
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Business Owner at Analysis Group
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Product Leader in Data Analytics & AI| Innovation and Transformation| Pioneering GenAI Solutions for the Future of Finance.
1 周Eilon Reshef's insight that AI success relies on data quality and completeness is crucial. We must recognize that data is AI's fuel, and better quality of data directly translates to better AI results. Consequently, we need to implement an optimal data strategy now.