No cost, no commitment - we'll make a personal intro
PS
Prakhar Srivastava
Senior Software Engineer specializing in backend infrastructure, cloud automation, and reliability
OracleStony Brook UniversityMountain View, CA8 Years ExperienceSenior Level
Connect with Prakhar
Prakhar already has a relationship with Reval, so a warm intro from us gets a much better response than cold outreach.
Typically responds within 24 hours
Recommended
Already have an account?
About
End-to-end deployment owner for Oracle document delivery/print services in a hospital-like production environment, focused on reliability/performance at scale (thousands of systems). Also describes implementing event-driven RAG/agentic LLM workflows with attention to embeddings/index consistency, latency, and measurable improvements in response relevance and operational efficiency.
Hire with Reval
Find your next great hire
Our AI agents source, screen, and vet candidates for your open roles. Get qualified candidates within 48 hours.
Senior Full-Stack Software Engineer specializing in cloud, AI, and distributed systems
San Francisco, CA12y exp
GoogleStanford University
“Built Reval as a full-stack product/company, using a Next.js frontend with Java Spring and Python FastAPI backends, including AI-driven workflows powered by frontier models. Has hands-on experience improving search UX and relevance with a KNN-based people search, and emphasizes heavy testing and dataset iteration to manage LLM nondeterminism.”
Senior Software Engineer specializing in large-scale backend reliability and media platforms
San Bruno, California6y exp
GoogleSan Francisco State University
“Backend/data engineer with experience on large-scale consumer platforms (Google and Meta), building high-traffic Python microservices (REST/gRPC) on Kubernetes with strong reliability/observability practices. Delivered AWS container-based deployments with CI/CD and IaC, and built AWS Glue ETL pipelines on S3 with schema evolution and data quality controls; also has demonstrated SQL tuning impact (15% latency reduction) and incident ownership for batch pipelines.”