How did SAIC's Q1 2026 EPS forecast compare to past trends?


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Science Applications International Corporation (SAIC) is expected to report quarterly earnings of $1.92 per share in Q1 2026, down from $2.14 per share in the year-ago period1. This decline in EPS suggests that SAIC may be facing challenges or managing its operations differently compared to the previous year.
- Recent Performance Context: SAIC's recent performance shows a decline in revenue and earnings compared to the previous year. The expected EPS of $1.92 for Q1 2026 is lower than the $2.14 reported for the same quarter in the previous year1. This indicates a potential downturn in profitability.
- Analyst Expectations and Historical Performance: Analysts' expectations for SAIC's Q1 2026 EPS are based on current market conditions and the company's recent performance. It is important to note that SAIC has experienced a 5-year EPS CAGR of 24%, which is higher than the expected EPS of $1.92 for Q1 20262. This suggests that while the company has had strong growth in the past, it may be facing short-term challenges.
- Dividend and Financial Health: SAIC has a history of paying dividends, with a recent dividend yield of 1.2% to 1.4%34. The company's earnings easily cover the dividend, indicating a strong financial position despite the expected EPS decline. This suggests that SAIC is managing its finances effectively to maintain shareholder returns.
- Future Outlook: SAIC's future outlook appears positive, with the company lifting its full-year earnings outlook after posting stronger-than-expected results for the fourth quarter6. The company's investments are expected to accelerate returns in fiscal 2026 and 20277, which could lead to improved EPS in the coming years.
In conclusion, SAIC's Q1 2026 EPS forecast represents a decline from the previous year's performance, but the company's historical EPS growth, dividend payments, and future outlook suggest resilience and potential for recovery.
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