Why is FICO a gainer?


Aime
Fair Isaac Corporation (FICO) has experienced a 0.42% pre-market percentage change and a 0.17% post-market percentage change on April 17, 20251. The stock's performance over the recent two weeks has been mixed, with a significant decline of 7.06% on April 4, followed by a 2.34% increase on April 7, and then a 10.19% surge on April 92.
- Partnerships and Product Expansions: FICO's recent partnerships with Fujitsu Limited and Nationwide Building Society, as well as the release of its FICO® Score Mortgage Simulator, highlight the company's efforts to enhance its product offerings3. These strategic moves could potentially drive revenue and earnings by attracting more customers and expanding market reach.
- Positive Analyst Ratings: Despite a significant stock price decline over the past month, analysts remain optimistic about FICO's future performance. BofA Securities initiated coverage on FICO with a Buy rating and set a price target of $2,800, citing undervaluation and growth potential in its software business34. RBC Capital also upgraded FICO's stock rating to Outperform and raised the price target to $2,170, highlighting improvements in Software (ETR:SOWGn) Annual Contract Value35.
- Expected Earnings Growth: Analysts project FICO to report a non-GAAP profit of $6.11 per share for Q2 2025, representing a growth of 20% from $5.09 per share in the year-ago quarter. For the full fiscal 2025, analysts forecast non-GAAP EPS of $23.89, marking an impressive 34.4% increase from $17.78 in fiscal 2024. In fiscal 2026, its earnings are expected to further surge 31.5% year-over-year to $31.41 per share6.
In conclusion, FICO's stock performance appears to be influenced by a combination of factors including its strategic partnerships, positive analyst ratings, and expected earnings growth. These factors could contribute to the stock's potential for future gains.
FICO Trend
Source:
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FICO Pre-Market Percentage Change, FICO Post-Market Percentage Change
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