Data success comes more easily if senior leaders make it a priority and show in their own work how analytics should be used to drive business outcomes.
1. Share and leverage the knowledge of others
One of the obstacles to effective collaboration around data is grading yourself against your peers. In other fields, it’s easy to rate and clone processes that lead to low manufacturing defect rates or efficient supply chain execution. Data is more slippery, and so the sources and skill sets that serve one team or company best might not work the same way at another.
Overcome these challenges by ensuring that your data collaboration efforts are as inclusive as possible, bringing collaborators into the fold early to discuss and improve processes and outcomes. Starnes said IT is typically best positioned to support the bottom-up work of making data platforms efficient, effective and credible, while business leadership can work from the top down to put the money and strategic support behind the last mile of data delivery and collaboration.
2. Cater to a wide range of knowledge and talent
Giving every employee access to seemingly limitless data sources and analytical tools won’t turn them all into equally effective knowledge workers. Although that approach may serve trained data scientists and can help data savants bubble up to the surface, it’s not the most effective or coordinated way to collaborate.
“There are plenty of organizations that have failed despite having massive data warehouses and big analytics investments,” Miller said.
Instead, ask your talented employees to articulate the problems they need data to solve, and have the experts focus on ways to help them.
3. Create spaces where contributors can seek advice
Instead of putting more training hours on people’s calendars, create spaces that encourage employees to ask questions. These can be virtual spaces for teams, or drop-in clinics, of sorts, with a rotating cast of collaborators who can bring a wide range of skills to the table.
Whatever platform is used to create the space where a data community can convene, it’s crucial that it’s flexible. As we learned from this year’s sudden shift away from commuting, business travel and office usage, data consumption trends and analytical needs will change. In 2019, trends emphasized pushing more data to smaller screens and mobile devices. But over the past several months, the share of data consumed at desktop screens has climbed considerably.
4. Make data easy to question and validate
Many dramatic stories of data and analysis focus on a game-changing realization or an unanticipated surprise. The real world is more prosaic. The truth is that data is frequently used to confirm well-founded intuitions and assumptions.
“Most executives have a gut sense of how they’re doing, and when they see the analytics, they aren’t often all that surprised,” Miller said. “So if they see a number and wonder where it came from, you need to be able to track it back to the source.”
One effective way to ensure that happens is to put a human face on every piece of data and analysis exchanged. You can do this by certifying data sources—effectively putting a mark of approval to show the data is up-to-date and trustworthy. And there should be cultural support and incentives for providing timely responses and explanations, so that decisions aren’t stalled and insights aren’t discarded by users who don’t have time to wait for the explanation.
Discovering the crucial facts and most valuable insights is a collaborative process.
Ask contributors how data and analysis played a role in a recent success. Discuss the most-loved and least-loved data experiences and search for common threads.
Visit Tableau.com to learn how to empower more people with data and explore stories of data-driven collaboration.