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About

Anthropic is an AI safety and research company founded in 2021 by seven former OpenAI employees, now operating as a Public Benefit Corporation with approximately 3,000 employees. The company develops the Claude family of large language models and associated AI assistant implementations, with a technical mandate centered on reliability, interpretability, and steerability. Under CEO Dario Amodei, Anthropic has reached a reported valuation of $183 billion while maintaining an explicit focus on AI systems aligned with human values and long-term societal benefit.

The core technical work spans AI safety research, interpretable AI systems, and steerable large language models. Claude, Anthropic's primary product line, is positioned as engineered for safety, accuracy, and security in production deployments. The company's research agenda prioritizes understanding failure modes and developing evaluation frameworks that account for reliability constraints in real-world inference scenarios, rather than pursuing capability benchmarks in isolation.

Anthropic's operational model combines frontier research with practical deployment considerations - balancing the latency-throughput-cost trade-offs inherent in large-scale language model serving while maintaining interpretability as a first-class constraint. The company approaches AI assistant development through the lens of alignment research, treating production systems as both products and testbeds for safety techniques. This dual mandate shapes technical priorities: understanding model behavior under distribution shift, quantifying uncertainty in high-stakes applications, and building systems where performance degradation is predictable and bounded.

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AN

Solutions Architect, Digital Native

Anthropic

San Francisco, California, United States (Hybrid)

$240K – $270K Yearly3mo ago

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