Deep long-tailed recognition has been widely studied to address the issue of imbalanced data distributions in real-world scenarios. However, there has been insufficient focus on the design of neural architectures, despite empirical evidence suggesting that architecture can significantly impact performance. In this paper, we attempt to mitigate long-tailed issues through architectural improvements. To simplify the design process, we utilize Differential Architecture Search (DARTS) to achieve this goal. Unfortunately, existing DARTS methods struggle to perform well in long-tailed scenarios. To tackle this challenge, we introduce Long-Tailed Differential Architecture Search (LT-DARTS). Specifically, we conduct extensive experiments to explore architectural components that demonstrate better performance on long-tailed data and propose a new search space based on our observations. This ensures that the architecture obtained through our search process incorporates superior components. Additionally, we propose replacing the learnable linear classifier with an Equiangular Tight Frame (ETF) classifier to further enhance our method. This classifier effectively alleviates the biased search process and prevents performance collapse. Extensive experimental evaluations demonstrate that our approach consistently improves upon existing methods from an orthogonal perspective and achieves state-of-the-art results with simple enhancements.