MIREI is a research workspace that builds encoder/decoder text-embedding models under matched conditions, tracks shared training pipelines, and benchmarks their performance differences.
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Updated
Jul 8, 2026 - Python
MIREI is a research workspace that builds encoder/decoder text-embedding models under matched conditions, tracks shared training pipelines, and benchmarks their performance differences.
Source code for the diploma thesis: Bias Measurement in LLM2Vec embeddings. Explores how transforming Causal Language Models (like Llama & Mistral) into text encoders affects the geometric structure and encoding of gender bias.
Gradient Ascent for Text Encoders of CLIP-like models, including CLIP, BLIP, SigLIP, LLM2CLIP. Get a model's 'opinion' tokens about an image.
predicting brain activation regions based on sentences
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