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Business situation

Demand forecasts burdened with excessive variability

Forecasts regularly deviate from reality. The production plan requires frequent adjustments, inventory levels rise or fall abruptly, and operational decisions are corrected during execution

Forecast accuracy becomes a key factor affecting:

product availability

financial performance stability

working capital

How this situation looks in practice

Sales forecasts are created based on historical data, spreadsheets, and team experience. In practice, this means:


manual plan corrections after each major market change,

tensions between sales, production, and logistics,

difficulty in assessing whether deviation results from seasonality, campaigns, or estimation error,

lack of a common, numerical reference point when making decisions.

The process works, but requires constant intervention. Stability depends on the knowledge of specific individuals,
not on a repeatable analytical mechanism.

Business consequences

inventory surpluses or product shortages

frozen working capital

costly production plan changes

inventory surpluses or product shortages

increased decision-making pressure on management and finance

Even a several-percentage-point improvement in forecast accuracy can mean a significant difference in inventory levels, turnover, and margin.

How we approach diagnosis

We begin the analysis by assessing demand variability, assortment structure, and historical data quality.

We examine:

stability of seasonal patterns

impact of promotions and external factors

level of data aggregation and their consistency

translation of forecast error into inventory, product availability, and production plan changes

We then assess the economic potential of the project: what impact on inventory, production levels, and working capital can be achieved by improving accuracy by a specific value. The implementation decision is based on measurable scenarios, not on the assumption that “the model will be better”.

CASE Study

Sales forecasting

Better decisions in sales forecasting

The pharmaceutical sales forecasting process was time-consuming and largely relied on manual data analysis. High forecast error levels hindered production planning and product availability.

Solution

We implemented ML/DL models for pharmaceutical sales forecasting and dedicated dashboards with the most important information and insights from data for independent analysis by the client.

Result

Forecast accuracy improved by 5-6 percentage points compared to previously used methods. The organization began operating in a more data-driven decision-making model, and forecast automation reduced the time specialists spent on data analysis.

Contact

A conversation is the first step to identifying the organization’s needs and assessing the project’s feasibility.

Schedule a consultation