Primary Skills: Machine Learning (Expert), Python (Advanced), Spark (Advanced), Data Mining (Expert), Leadership (Experienced)
Contract Type: C2H
Duration: 6+ months
Location: Bangalore/ Pune
Job Summary
Join an industry trailblazer in cloud-first networking and security services at an unparalleled time of transformation. As a Senior Data Scientist within our data science team, you'll lead pivotal AI Ops and Generative AI projects, turning innovative ideas into impactful AI solutions in close collaboration with our software engineering and product teams. The role demands a blend of technical prowess in AI and ML solutions, a passion for simplifying complex network security issues, and the drive to be a part of a leading team shaping the future of networking technologies.
Key Responsibilities
Must-Have Skills
Preferred Industry Experience
This opportunity is not just a job but a pivotal role in leading the evolution of AI Ops and Generative AI capabilities within a company that prioritizes diversity, innovation, and the well-being of its employees.
About Akraya
Akraya is an award-winning IT staffing firm consistently recognized for our commitment to excellence and a thriving work environment. Most recently, we were recognized Inc's Best Workplaces 2024 and Silicon Valley's Best Places to Work by the San Francisco Business Journal (2024) and Glassdoor's Best Places to Work (2023 & 2022)!
Industry Leaders in IT Staffing
As staffing solutions providers for Fortune 100 companies, Akraya's industry recognitions solidify our leadership position in the IT staffing space. We don't just connect you with great jobs, we connect you with a workplace that inspires!
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