Esther - xenodataset

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Counterculture has always functioned as a means to envision non-hegemonic futures. However, we have observed/seen/experience/witnessed how phenomena like grunge, techno, or queer movements have succumbed to capitalism's ability to commodify them into commercial content. Is it possible to imagine something non-capitalizable? The mediaeval mystic definition of imagination as "thinking with images" has evolved into its contemporary understanding as "the capacity to represent possibilities other than present possibilities" (Picón, et al., 2024). Therefore, a deficiency in imagination is correlated with image generation and a lack of potential alternative futures (Fisher, 2016). In the era of crowd-generated imagery and automated cognition, the question arises: what form would counterculture assume?

AI models, designed to generate images akin to their training dataset, contribute to the homogenization of imagination. The tendency to the trend is pervasive in the contemporary technological landscape and is identified as a primary cause of cultural biases. Technical and social attempts to rectify biased or incomplete data, such as the unlearning machine (Nguyên, et al. 2024), have proven unsuccessful. Conversely, artists like Mimi Onuoha or Caroline Sinders propose the use of datasets to identify underrepresented identities, resulting in their research: missing datasets or feminist dataset. Acknowledging the impossibility of seeking impartial data, these two researchers leverage the potential of datasets to an artistic format capable of subverting homogenizing practices.

Similarly to the missing datasets, the concept of the Weird serves as an ally in recovering what is absent, repressed, forgotten, or ignored (Fisher, 2018). This includes entities deemed as “monster”, originating from "monere," which signify the manifestation of aspects that society tends to avoid, thereby neglecting intrinsic revelations. In this semantic family the term "xeno", referred to the liminal and the weird, is recovered by the Xenofemisnists (Hester, 2018) gaining significance due to its lack of classificatory criteria

The XenoVisual Studies collective explores images generated by and for cognitive assemblages between humans, machines and the xeno (Hayles, 2017). They generate images of xenobodies by hacking generative protocols, repurposing tools, gathering images of existing and fictional species as training data, engaging in algorithmic apophenia, or creating invented languages (XenoVisual Studies, 2024). The whole co-imagining movement occurs in a collaborative environment where communities most affected by biased data meet with artists and technologists. Subsequently, xenovisuals become operational images (Parikka, 2023), crafted by  (machines) cognizers for other (machines) cognizers in the pursuit of creating new imaginaries. Unclassifiable image datasets serve as catalysts for imagining future fictions, interpreting the dataset not merely as a format or data container but as imaginal matter for cognizers.

Xenoimages from the project Xenoimage Dataset (2022) and the collective XenoVisual Studies (2024) by Mar Osés, Miguel Rangil, Inna Mart, Pilar del Puerto, Mon Cano, Levi Jose Jiménez Rufes, Claudia Vanesa Figueroa Muro and Esther Rizo-Casado. See other cognizers contributions in our protocols list.

TSNE Xenoimage Dataset aligned visualisation.
TSNE Xenoimages close up.




Xenoimage Dataset TSNE Distribution