“…16 Machine learning (ML) tools can be applied to solve many problems in chemical science and materials science, including mapping structure and property relationships, [19][20][21][22] discovering new compounds and materials, [23][24][25][26][27][28][29][30] recommending feasible chemical synthesis pathways, [31][32][33] and guiding automated experiments. [34][35][36] ML tools are data-driven; therefore, highquality, diverse, and well-organized data are the foundation of these studies. 8,37 However, the sparse, small, and difficult-toextract nature of polymer data severely restricts the application of these tools and even the development of polymer informatics.…”