Skip to main content

Speakers

For Business

Training 2 or more people?

Get your team access to the full DataCamp library, with centralized reporting, assignments, projects and more
Try DataCamp for BusinessFor a bespoke solution book a demo.

Building an Internal Data Skills Academy

May 2024
Share

In September 2019, McKinsey urged organizations to establish in-house "data academies" to enhance their employees' data literacy and prepare them for a data-inundated world. Five years after this call to action, building a data academy is essential for driving organization-wide data skills transformation.

This webinar will cover the key steps for building an internal data academy, including defining learning paths, securing executive support, defining learning personas, scaling learning communities, and much more. We will also showcase examples from DataCamp for Business customers who have achieved success with their own internal data academies.

Key Takeaways:

  • How in-house data academies can scale your workforce’s data skills
  • Best practices for launching data academies including defining learning paths, securing executive support, developing learning communities, and more.
  • A showcase of successful data academies and keys to their success.

Summary

Creating an internal data skills academy within organizations is essential in managing the current wave of disruption driven by technological advancements such as generative AI. As digital startups have disrupted various industries over the past three decades, organizations now face the challenge of equipping their workforce with necessary data and AI skills. This webinar explores the skills shift required by technological advances, emphasizing the importance of data literacy in decision-making, innovation, and employee experience. With 87.9% of organizations prioritizing data analytics investments, the demand for data scientists has surged by 650% since 2012. The discussion highlights the risks of inadequate data skills, including poor decision-making and decreased innovation, and suggests that internal data academies can address these gaps by upskilling employees. Five key practices for building a successful data academy are presented, focusing on personalization, goal orientation, communication, community building, and measurement of outcomes.

Key Takeaways:

  • Technological advancements require a skills shift, demanding data and AI literacy.
  • Data academies act as centralized hubs for upskilling and reskilling employees in data and AI skills.
  • Personalization and goal orientation are essential in the success of data academies.
  • Community engagement and a clear communication strategy improve the effectiveness of data academies.
  • Measuring the impact of data academies is important for continuous improvement and demonstrating ROI.

Deep Dives

Technological Disruption and Skills Transformation

Over the past thirty years, digital startups ha ...
Read More

ve significantly disrupted a wide range of industries, from finance and travel to retail and transport. This disruption has been driven by technological innovations, such as digital money transfer applications, digital banks, and platforms like Airbnb and Uber. In today's era, generative AI presents a new wave of disruption, compelling organizations to rethink business models and skills requirements. The webinar emphasizes that technological advancements lead to shifts in skills, as seen with the rise of software literacy in the 2000s and data literacy in the 2020s. Organizations must now concentrate on data and AI literacy to stay competitive. "Shifts in technology lead to shifts in skills," states the speaker. This transformation highlights the need for internal data skills academies to equip employees with the necessary capabilities to manage this evolving environment.

Importance of Data Literacy and Organizational Challenges

Data literacy has become an essential component of organizational success, as highlighted by the increasing demand for data scientists and the prevalence of chief data officers. According to the New Vantage Partners' 2024 report, 87.9% of leaders view investments in data analytics as a top priority. However, many organizations struggle to become data-driven, often citing data literacy and culture as significant barriers. The webinar identifies key risks associated with inadequate data skills, including poor decision-making, decreased innovation, and a negative employee experience. A survey by Accenture and Click reveals that 74% of employees feel stressed by data tasks, leading to stress and burnout. To address these challenges, internal data skills academies provide a solution by promoting a data-driven culture and enhancing employees' data literacy, ultimately driving better decision-making and innovation.

Building a Successful Data Academy: Key Practices

The success of a data academy hinges on five core principles: personalization, goal orientation, communication, community building, and measurement of outcomes. Personalization involves adapting learning experiences to meet the unique needs of different roles within an organization. Goal orientation emphasizes aligning learning objectives with transformational business goals, ensuring a measurable impact. Effective communication strategies and community engagement are essential for maximizing participation and promoting a sense of shared purpose. The webinar highlights the importance of thinking like a marketer to drive engagement and the role of ambassadors in promoting data literacy within teams. Lastly, measuring the impact of a data academy using models like the Kirkpatrick evaluation model allows organizations to assess learning outcomes, behavioral changes, and ROI, enabling continuous improvement.

Case Studies and Implementation Strategies

Several case studies illustrate the successful implementation of data academies and their transformative impact on organizations. Allianz upskilled over 6,000 employees using personalized learning paths, resulting in significant time savings and enhanced data skills application. Rolls-Royce's engineering team achieved a 100-fold increase in data handling speed through Python upskilling. Meanwhile, Colgate-Palmolive's adapted learning paths for diverse roles improved data-driven decision-making across the organization. These examples demonstrate the effectiveness of goal-oriented upskilling programs in achieving measurable business outcomes. The webinar highlights the importance of starting small and iterating when establishing a data academy, advocating for pilot programs to build momentum and gain executive buy-in. By leveraging personalized learning journeys and aligning them with strategic business goals, organizations can successfully manage the challenges of the data-driven era.


Related

white paper

5 Best Practices for Building Data Science Skills Academies

Best practices and expert advice on setting up an in-house skills academy

white paper

5 Best Practices for Building Data Science Skills Academies

Best practices and expert advice on setting up an in-house skills academy

webinar

Building an In-House Data Academy

Learn the key steps for building an internal data academy.

webinar

Building Sustainable Learning Cultures: Strategies for Maximizing Data Upskilling Programs

In this webinar, we will discuss practical approaches for anyone engaged in data upskilling to sustain learning engagement within their organizations.

webinar

Empowering Data Teams: How to Approach Upskilling and Continuous Learning

During this webinar, we delve into the challenges of upskilling data teams and provide actionable insights on how to approach it systematically.

webinar

Scaling Data & AI Literacy with a Persona-Driven Framework

In this session, three experts walk you through the steps of creating a successful data training program.

Hands-on learning experience

Companies using DataCamp achieve course completion rates 6X higher than traditional online course providers

Learn More

Upskill your teams in data science and analytics

Learn More

Join 5,000+ companies and 80% of the Fortune 1000 who use DataCamp to upskill their teams.

Don’t just take our word for it.