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Dec 18, 2023 - Jupyter Notebook
linkedin-analytics
Here are 10 public repositories matching this topic...
A professional LinkedIn analytics tool for tracking post performance with deterministic metrics. 100% ToS compliant—no scraping, no automation. Built with Next.js, Tailwind CSS, and Firebase.
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Jan 24, 2026 - TypeScript
A compact, code-first reference implementation of a LinkedIn analytics medallion pipeline for Databricks.
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Feb 27, 2026 - Jupyter Notebook
LinkedIn company data extractor
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Nov 11, 2025 - Python
LinkedIn Analytics Dashboard scraper for automation, LinkedIn insights, reporting.
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Dec 2, 2025
AI-powered LinkedIn post analyzer that optimizes content for virality using deterministic metrics, hook analysis, and engagement prediction.
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Jan 21, 2026 - TypeScript
LinkedIn profile/post analyzer tool.
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Apr 7, 2026 - JavaScript
Predict LinkedIn post performance before you publish. GO/WAIT/IMPROVE/NO verdict, impressions, debate score, cringe detection. CLI + MCP + AI Skill. Zero LLM calls.
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Apr 4, 2026
📊 Scrape and analyze LinkedIn data effortlessly to generate customizable reports and track engagement metrics in one centralized dashboard.
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Apr 9, 2026
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