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CrowdStrike has redefined security with the world’s most advanced cloud-native platform that protects and enables the people, processes and technologies that drive modern enterprise. Tested and proven, the world's largest organizations trust CrowdStrike to stop breaches with unparalleled protection against the most sophisticated cyberattacks. The CrowdStrike culture has been built upon our Core Values since the day we began. We are Fanatical About the Customer, Relentlessly Focused on Innovation and believe that our Limitless Passion drives Unlimited Potential for every CrowdStriker. As a purpose-built remote-first company, we believe cultivating a connected culture for every employee, no matter where they are in the world, is a key ingredient in building a high-performing, diverse team. We don’t have a mission statement. We’re on a mission—to stop breaches. Ready to join a mission that matters?
Applied AI Developer
Location
United States
Posted
58 days ago
Salary
$125K - $180K / year
Seniority
Senior
Job Description
Applied AI Developer
CrowdStrike
• Design and develop new AI-powered applications with browser-based and conversational interfaces to support modern HR functions. • Build and maintain shared infrastructure that supports a growing portfolio of agentic AI applications, including AWS EC2 servers, Airflow workflows, CI/CD pipelines, and Snowflake integrations. • Integrate LLM APIs into enterprise applications and HR workflows, delivering tangible AI-powered features. • Partner with HR stakeholders to translate needs into AI solutions that improve the employee experience. • Collaborate with data scientists to deploy and manage AI systems, ensuring scalability, reliability, and efficiency. • Experiment with and implement agentic frameworks to extend future AI capabilities.
Job Requirements
- 5-7 years of experience pushing technical work forward in innovative ways, including but not limited to: analytics, data science, software engineering, or another technical discipline.
- Proficiency in Python.
- A genuine curiosity about how systems work and a drive to build excellent products.
- Comfort working with AI-assisted development tools (Claude Code or equivalent) as a core part of your workflow, including the judgment to critically evaluate and refine generated output.
- Familiarity with cloud infrastructure, workflow orchestration, and CI/CD practices.
- Experience working with APIs, web applications, and data pipelines.
- Exposure to data warehouses (Snowflake or similar).
- Strong problem-solving skills, self-motivation, and the ability to thrive in a remote-first environment.
Benefits
- Market leader in compensation and equity awards
- Comprehensive physical and mental wellness programs
- Competitive vacation and holidays for recharge
- Paid parental and adoption leaves
- Professional development opportunities for all employees regardless of level or role
- Employee Networks, geographic neighborhood groups, and volunteer opportunities to build connections
- Vibrant office culture with world class amenities
- Great Place to Work Certified™ across the globe
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