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internal-docs/LaTeX2e+Proceedings+Templates+download/main.aux
Markyan04 0ed8318821 Improve layout and spacing; add enumitem
Update main.tex to tighten internal spacing and list formatting: add \usepackage{enumitem}, set compact float spacing (\textfloatsep, \floatsep, \intextsep, \abovecaptionskip, \belowcaptionskip), and configure \setlist for denser lists; enable \raggedbottom. Adjust figure include to 0.995\textwidth with trim+clip to avoid overfull boxes. Make small editorial tweaks ("time-step" hyphenation and minor rephrasing in the Conclusion). Recompiled artifacts (main.aux, main.log, main.pdf) were also updated.
2026-04-21 14:40:48 +08:00

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9.0 KiB
TeX

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