--- language: en pretty_name: Job Training Data for JSON Extraction task_categories: - text-generation tags: - json - web-scraping - job-postings - training-data - json-extraction size_categories: medium --- # Job Training Data Training dataset for fine-tuning LLMs to extract structured JSON from job postings. ## Description This dataset contains **12,000 examples** of job postings in markdown format paired with their JSON extractions. Used to train the `job-posting-extractor-qwen` model. ## Data Format Each example contains: - `instruction`: What to do (e.g., "Extract job fields as JSON"). - `input`: Job posting in markdown format. - `output`: Expected JSON output (as a string). ### Example Entry ```json { "instruction": "Extract all job fields as JSON object.", "input": "# Job Position\n**Position:** Platform Engineer\n**Company:** DATAECONOMY\n**Location:** Charlotte, NC\n\n## Job Description\nRole: Platform engineer...", "output": "{\"job_title\": \"Platform Engineer\", \"company\": \"DATAECONOMY\", \"location\": \"Charlotte, NC\"}" } ``` ## How It Was Created 1. Data sourced from webscraped job postings. 2. Converted to markdown using template-based generation. 3. JSON labels programmatically extracted from the scraped data. 4. Augmented with 15 instruction variations. ## Dataset Statistics | Metric | Value | |--------|-------| | Total examples | 12,000 | | Unique JSON fields | 7 (job_title, company, location, work_type, description, experience_level, salary) | | Instruction variations | 15 | ## Files - `job_training_data.json`: Main training data (12,000 examples). ## License & Attribution This dataset is licensed under the **Creative Commons Attribution 4.0 International (CC BY 4.0)** license. You are free to **use, share, copy, modify, and redistribute** this material for any purpose (including commercial use), **provided that proper attribution is given**. ### Attribution requirements Any reuse, redistribution, or derivative work **must** include: 1. **The creator's name**: `HelixCipher` 2. **A link to the original repository**: https://github.com/HelixCipher/fine-tuning-an-local-llm-for-web-scraping 3. **An indication of whether changes were made** 4. **A reference to the license (CC BY 4.0)** #### Example Attribution > This work is based on *Fine-Tuning An Local LLM for Web Scraping* by `HelixCipher`. > Original source: https://github.com/HelixCipher/fine-tuning-an-local-llm-for-web-scraping > Licensed under the Creative Commons Attribution 4.0 International (CC BY 4.0). You may place this attribution in a README, documentation, credits section, or other visible location appropriate to the medium. Full license text: https://creativecommons.org/licenses/by/4.0/