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Removing 26 layers from RefalMachine/RuadaptQwen3-4B-Instruct === Parameters: 4,007,937,536 Layers: 36

--- Original Model Generation --- Prompt: 'Paris is the capital of' Generated: Paris is the capital of France and one of the world's most visited cities, attracting over 22 million tourists annually. It is renowned for its rich history, iconic landmarks, and vibrant cultural scene. Located in the north-central part of metropolitan France

Prompt: 'The theory of relativity states that' Generated: The theory of relativity states that the speed of light in a vacuum is constant for all observers, regardless of their motion or the motion of the light source. However, when light travels through a medium such as water or glass, its speed decreases.

Removing layers: 100%|██████████| 36/36 [00:00<00:00, 235194.62it/s] --- Pruned Model: RefalMachine/RuadaptQwen3-4B-Instruct Parameters: 1,383,736,320 Layers: 10

--- Pruning Results --- Parameter reduction: 2,624,201,216 (65.48%) Layer reduction: 26 layers (72.22%)

--- Pruned Model Generation ---

Prompt: 'Paris is the capital of' Generated: Paris is the capital ofmindlessamenterics getArguments argumentsстаходходсякаясясякийкийломовскийowskiowskiкуроновavirus pandemic pandemicінийскийскийскомановсяkosсяскойскомскийломецкийばшиестьяжиковикованов

Prompt: 'The theory of relativity states that' Generated: The theory of relativity states thatophys physicists physicistsэнсяENCEScapeable measurable measurableizableizable Technologiescape знанияведенияведениячинстваствоствастваствутуKENkenohanaотовкаясяся......

?

?(fulnessfulamentericsallymenteamente Swal Swal

Example 1 completed! Parameter reduction: 65.48%

DEPTH PRUNING RESULTS SUMMARY

Model Method Param Reduction Layers Removed

RefalMachine/RuadaptQwen3-4B-Instruct Layer Count 65.48 % 26/36
RefalMachine/RuadaptQwen3-4B-Instruct Percentage 70.51 % 28/36

Total examples tested: 2 Depth pruning examples completed successfully!

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