Free
$0Free plan available.
Samary is a Chrome extension designed to summarize job ads, providing a structured and clear overview of the most important information. It works across various job portals, using ChatGPT to improve the quality of the summaries. The extension aims to eliminate the need to sift through long and unstructured job descriptions, saving time and effort for job seekers.
1. Install the Chrome extension. 2. Navigate to a supported job portal. 3. Search for jobs or open a specific job advertisement. 4. Click the "Summarize Job Post" button. 5. View the generated summary in a pop-up window.
The summary is generated by AI and is generally accurate, offering a reliable overview of key points and requirements. We recommend reviewing the original job description for complete details.
You can contact the developers to request the integration of your preferred job portal.
The extension is currently available only for Chrome on desktop computers, though mobile functionality is planned for future updates.
The extension includes a free trial covering 20 job summaries. Paid packages are available afterward; please contact the developers if you have concerns regarding the current pricing.
Free plan available.
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