Today, the NLP (Natural Language Processing) Collective is launching on Stack Overflow.
Both question activity and pageviews pointed to the NLP space as one that has been consistently active for Stack Overflow, even before the era of generative AI. This area of practice continues to be one that attracts new learners and finds new applications, and that dynamic makes a good foundation for a subcommunity space.
There are a few potential discussion topics to dive into now. Please feel free to respond to any of these prompts, or to suggest others. Discussions here could be spun off into standalone questions as needed. (Please use the tag nlp-collective for any new questions specifically about this collective.)
Tags and scope
The tags currently being used to define the collective are: nlp, spacy, spacy-3, nltk, huggingface-transformers, word-embedding, sentiment-analysis, named-entity-recognition, tf-idf, bert-language-model, topic-modeling, stanford-nlp, opennlp, gensim, word2vec, and nlp-question-answering
Do these feel like the right tags? Are there any that seem missing, or any that don’t belong?
The focus brought by a collective brings an opportunity to assess the set of related tags and have conversations about optimizing them.
The tag wiki for nlp lists two NLP-specific tags, sharpnlp and clearnlp, that are not heavily used (with 9 and 2 questions, respectively, and none from the last few years). Should these be added to the collective, or are these more appropriate for consolidation or some other kind of “cleanup”?
Also see this discussion thread in the collective.
Content needs and community concerns
What are potential projects that the NLP collective members might collaborate on to improve the experience for both askers and readers of NLP questions? Can any resources be improved to reduce duplicate questions and help askers avoid posting off-topic questions?
Some community members may be concerned that the existence of the collective itself could inadvertently encourage off-topic questions. Are there ways to better route those potential askers to the appropriate Stack Exchange site, if there is one?
If you’re active in the tags and have found yourself wishing for improvements in some area, post your thoughts about what the ideal scenario might be. Even if it seems unrealistic, often that can be a great starting point for ideation and meaningful change.
Recognized Member (or “RM”) is the user role specific to Collectives that has additional privileges, most notably to designate specific answers as “recommended” and to oversee the review and publication of articles. It is intended for those who would be considered subject matter experts in the collective’s topic, or perhaps in some specific portion of the topic. While we generally see the RM group as the community leaders within each of these collectives, it’s up to the community to decide how the role operates in that regard.
The Recognized Member role in the NLP Collective will be open to any user with a gold or silver badge in one of the collective’s tags, and who has not been suspended in the past 12 months. Anyone who qualifies can express their interest in a comment or answer on this post. Those interested are also welcome to inquire about the RM role via the contact form if they feel more comfortable that way.
However, the Recognized Member role is not required to be part of helping define how the collective operates. The first step in being involved is participating in the discussion on this post!
The NLP Collective is intended as a space for a subcommunity to grow and thrive in ways that make sense for this area of practice. Community members well-versed in NLP are best suited to determine how to leverage the current features of the collective and to identify the areas that could most benefit from further development.
If you’re active in the NLP tags or in a related Stack Exchange community, what questions do you have about the collective? What opportunities or challenges do you see ahead?
Please note: the answers and discussion here are intended to be specific to the NLP Collective. If you have thoughts or feedback about collectives in general, please share those on this post instead.