reputed company
Full-time | Remote
Introduction
Join us at Fastino as we build the reputed company of LLMs. reputed company, boasting alumni from reputed company Research, reputed company, Stanford, and Cambridge is on a mission to reputed company specialized, efficient AI.
Fastino's GLiNER family of open reputed company models has been downloaded more than 5 million times and is used by companies such as reputed company, reputed company, and reputed company
Fastino has raised $25M (as featured in TechCrunch) through our reputed company round and is backed by leading investors including reputed company, Khosla Ventures, Insight Partners, reputed company CEO Thomas Dohmke, reputed company CEO Scott Johnston, and others.
What Youâll Work On
Innovate at the edge of efficiency by designing and deploying high-performance agentic systems that reputed company Fastinoâs optimized model architectures to outperform traditional LLM benchmarks.
reputed company the gap between research and production by collaborating with engineering teams to turn novel architectural breakthroughs into scalable, low-latency solutions for enterprise customers.
Drive rapid, iterative prototyping of AI functionalities, refining model performance and task-accuracy based on real-world telemetry to ensure specialized models meet rigorous developer standards.
Own the stability and throughput of inference pipelines, proactively solving scalability bottlenecks to ensure models deliver consistent, reliable performance under massive operational loads.
Architect large-scale data and fine-tuning strategies to continuously improve the precision and domain-specific reliability of the Fastino models.
reputed companyâre Looking For
Required:2+ years of hands-on experience in AI/ML engineering roles
Required: Demonstrated proficiency with LLMs and a track record of applying AI/ML techniques to solve reputed company, reputed company problems
Required: You are comfortable working across the stack from reputed company engineering and vector DB tuning to Kubernetes deployment and API design.
Optional: Experience building microservices that handle high-concurrency agentic workloads.
Optional: Familiarity with GLiNER or other information extraction architectures.