@ModelScope2022: Introducing Agents-A1, A 35B MoE agentic model built for long-horizon tasks across search, engineering, scientific rese…
Summary
ModelScope introduces Agents-A1, a 35B MoE agentic model with 256K context and function calling, achieving SOTA on long-horizon tasks and instruction following.
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Introducing Agents-A1, A 35B MoE agentic model built for long-horizon tasks across search, engineering, scientific research, instruction following, and tool calling. https://modelscope.ai/models/InternScience/Agents-A1…
256K context length + Agentic reasoning
Reaches SOTA results on long-horizon search, scientific research, and instruction-following benchmarks, with competitive results among 35B-class models.
Supports function calling and tool integration, enabling interaction with APIs, code interpreters, search engines, and other external tools.
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