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UID:pretalx-pycon-lithuania-2026-E38VJA@pretalx.com
DTSTART;TZID=EET:20260410T143000
DTEND;TZID=EET:20260410T145500
DESCRIPTION:With o1\, OpenAI ushered a new era: LLMs with reasoning capabil
 ities. This new breed of models broadened the concept of scaling laws\, sh
 ifting focus from train-time to inference-time compute. But how do these m
 odels work? What do we think their architectures look like\, and what data
  do we use to train them? And finally - and perhaps more importantly: how 
 expensive can they get\, and what can we use them for?
DTSTAMP:20260619T093759Z
LOCATION:Krantas/Shore 213 (3rd building)
SUMMARY:From OpenAI to DeepSeek: New Scaling Laws for LLMs that can Reason 
 - Luca Baggi
URL:https://pretalx.com/pycon-lithuania-2026/talk/E38VJA/
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