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Power Your Job Hunt With This $40 AI Platform

Power Your Job Hunt With This $40 AI Platform

Entrepreneur30-06-2025
Disclosure: Our goal is to feature products and services that we think you'll find interesting and useful. If you purchase them, Entrepreneur may get a small share of the revenue from the sale from our commerce partners.
Did you know entrepreneurs have a harder time getting a job? A study at Rutgers discovered that 35% of recruiters are less likely to interview candidates with entrepreneurial experience. With that hurdle to overcome, these candidates need all the help they can get, and Canyon is ready to provide an assist.
Canyon helps users create resumes and land their dream jobs. Right now, a lifetime subscription to the Pro Plan can be yours for only $39.99 (reg. $684) with code CANYON20 until July 20.
Save time and boost your job search with Canyon's AI features
In today's job market, standing out is crucial. Canyon uses AI to help you craft the perfect resume and cover letter, optimizing things for each specific application. This can help you stand out and secure more interviews. It even assigns your resume a Canyon score, providing you with actionable feedback to make it better.
Once your resume is perfected, it's time to work on the cover letter. Canyon has an AI cover letter generator, which tailors it to both your job description and personal background in seconds. And you can add a professional-quality headshot too, as Canyon can generate realistic AI headshots to attach to your resume or post on your LinkedIn profile.
Unlike other AI resume builders, Canyon is also ready to help you autofill applications. This saves you tons of time in the job application process, instantly personalizing fields on your application. It also tracks your applications, storing them all in one place so you always know where you've applied.
Canyon doesn't stop at applications; it also prepares you for interviews with AI-powered mock sessions featuring tailored questions and actionable feedback.
Get a lifetime subscription to the Canyon Pro Plan for just $39.99 (reg. $684) with code CANYON20 until July 20.
StackSocial prices subject to change.
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AI Or The Human Touch? Striking A Balance In Customer Retention

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