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Imagine a place
Staff Software Engineer, Gaming Features
Location
California
Posted
73 days ago
Salary
$248K - $279K / year
Seniority
Lead
Job Description
Staff Software Engineer, Gaming Features
Discord
• Design, build, and maintain features that help users connect and make friends through gaming on our platform, across desktop and mobile. • Engage with developers, game studios and other partners to find opportunities and address challenges. • Collaborate with Engineers, Designers, Product Owners, and Data Scientists to build engaging experiences. • Partner with Content, Marketing and ML teams to improve ranking and discovery systems. • Build innovative features that help users discover new friendships and deepen existing ones.
Job Requirements
- 8+ years of experience as a software engineer
- Experience with React/TS, Python or other modern programming languages
- Track record of shipping incremental + delightful features that improve user experience
- Comfortable switching between different technical stacks and learning new ones
- Enjoy collaborating with product, design and other stakeholders
- Holistic approach to problem solving
- Experience leading projects, gathering requirements, supporting partners and mentoring others
- Discord user and want to make product better!
Benefits
- equity
- benefits
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