Your forecasting model is missing key data points. How will you navigate through uncertainty?
When your forecasting model lacks crucial data, steering through uncertainty can be daunting. Here's how to proceed effectively:
- Review historical trends for patterns that can inform your current model.
- Engage with experts or stakeholders for qualitative insights to supplement missing data.
- Consider scenario planning to explore various outcomes and prepare for multiple eventualities.
How do you adapt your forecasting methods when faced with incomplete data? Share your strategies.
Your forecasting model is missing key data points. How will you navigate through uncertainty?
When your forecasting model lacks crucial data, steering through uncertainty can be daunting. Here's how to proceed effectively:
- Review historical trends for patterns that can inform your current model.
- Engage with experts or stakeholders for qualitative insights to supplement missing data.
- Consider scenario planning to explore various outcomes and prepare for multiple eventualities.
How do you adapt your forecasting methods when faced with incomplete data? Share your strategies.
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Ever driven through a dense fog without a clear map? That’s forecasting without key data. Your move? Simplify. - Start by revisiting old patterns—they often whisper what’s ahead. - Then, talk to the ground—the people closest to the action know more than reports show. Lastly, - plan for 'what ifs'—scenarios bridge gaps when certainty fails. "Uncertainty isn’t the enemy; rigidity is." Adapt, stay sharp, and steer the conversation to solutions, not excuses. When data is incomplete, do you find clarity in simplicity or complexity?
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I focus on making the best of what's available. I use interpolation, variables, or historical trends to fill gaps and ensure continuity. Scenario analysis helps anticipate a range of outcomes, while expert input adds qualitative insights. remaining flexible, updating forecasts as new data comes in helps. Ultimately, transparency about assumptions builds trust and keeps everyone aligned.
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When forecasting, historical data is always the starting point as it will give insights that will help you understand the pass trend. However, for this historic data to be useful, the data is supposed to be accurate and complete and have the specificity needed. Expert consultation and insight is important to top up historical data. Experts have certain insights that only them can have. They might give you too much data. A pre-designed template will tailor the info given. Always a base document with comments and explanations to fall back on. This helps to find and correct steps when realizing important data is missing. Automating the forecast process will also help in easily adjusting data.
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In my opinion, historical data is good to rely on. It can be wrong, but the chances are less. If you don't have historical data, then you should definitely consult stakeholders or experts, like your manager, who can give you some direction on where you can work.
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Plusieurs options sont possibles : - Analyse des données historiques - Établir des correspondances de SKU afin de rattacher des donnés historiques sur le produit à analyser. - Pendre de la hauteur sur le produit à analyser : voir comment évolue le groupe de produit auquel il appartient (saisonnalité, paterne propre au groupe de produit …) - Réaliser une analyse top/bottom et bottom/up pour croiser les résultats afin d‘identifier d’éventuelles concordances ou incohérences - Récolter des input quali des autres départements (acheteurs, commerciaux …) pour définir une prévision et/ou valider ou invalider une projection.