Senior Developer

Pearson Carter
10 months ago
Applications closed

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Full-Stack Developer

Join a dynamic team at an innovative platform, where you’ll help turn ideas into reality. We’re looking for an experienced Full-Stack Developer to build, optimize, and scale new features while contributing to a culture of collaboration and learning.

Key Responsibilities:

  • Develop and maintain features to enhance the user experience
  • Collaborate with cross-functional teams to deliver product enhancements
  • Optimize and scale existing systems
  • Lead development sprints and keep the team on track with the roadmap
  • Share knowledge and mentor team members

About You:

  • 3-5 years of experience in small/startup teams
  • Strong in PHP (Symfony or Laravel), MySQLHTML/CSS, and modern JS (TypeScript/React is a plus)
  • Experience with AWS and Git
  • Bonus: Knowledge of Machine LearningAI, or Data Analytics
  • Passionate about building impactful solutions

If you're a creative, problem-solving developer ready to make a real difference, apply now!

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