Research pipeline
A multi-stage constraint system that reconstructs, filters, and stress-tests a search-space to identify which semantic structures are stable enough to act on.
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A multi-stage constraint system that reconstructs, filters, and stress-tests a search-space to identify which semantic structures are stable enough to act on.
This post contains the structured cluster data derived from Instagram image analysis. It is presented in full without interpretation.
This post documents the intermediate data produced after scraping and initial structuring. It shows what is actually being analysed before any creative conclusions are formed.
A JupyterLab workflow for extracting Google Maps reviews, filtering for causally useful customer experience signals, and turning local competitor reviews into unmet-demand analysis.
A plain-language companion to the SEO Python codebase, explaining how the workflow uses search-result collection, NLP text processing, keyphrase extraction, embeddings, network analysis, and association rule mining for semantic SEO research.
How Python can be used to collect search-result data, expose semantic structure, identify unresolved topic clusters, and develop original content strategy from evidence rather than imitation.