AI tool comparison
Statewright vs Together AI
Which one should you ship with? Here is the side-by-side panel verdict, pricing read, reviewer split, and community vote comparison.
AI Infrastructure
Statewright
State machines that control exactly which tools your AI agent can touch
50%
Panel ship
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Community
Paid
Entry
Statewright takes a provocative stance on AI agent reliability: instead of making models smarter, restrict what they can do. The framework lets you define explicit state machines that determine which tools an agent can access at each phase of a workflow. During planning, agents get read-only tools. During implementation, edit tools unlock. During validation, only test commands are available. The philosophy is captured in a single line from the README: "Agents are suggestions, states are laws." The core engine is written in Rust for deterministic, zero-LLM evaluation of state transitions. Plugin layers integrate with agents via MCP (Model Context Protocol), enforcing tool restrictions at the protocol level across most major platforms. The framework is Apache 2.0 for its core engine, with FSL licensing for extended features (converting to Apache 2.0 in 2029, self-hosting allowed for developers and teams now). The team published SWE-bench results showing models jumping from 2/10 to 10/10 success rates on five tasks when Statewright constraints were applied—a striking claim that has the HN crowd both skeptical and intrigued. This is genuinely novel territory: rather than prompt engineering or fine-tuning, it's architectural guardrails enforced at runtime. For production agent deployments where agents interacting with dangerous tools (databases, file systems, APIs) need hard constraints, this fills a real gap. 53 stars so far, but the HN traction suggests it's about to pop.
Infrastructure
Together AI
Fast inference for open-source LLMs at low cost
100%
Panel ship
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Community
Paid
Entry
Together AI provides fast, cheap inference for open-source models like Llama, Mistral, and DeepSeek. Features dedicated endpoints, fine-tuning, and a serverless API. Known for competitive pricing and low latency.
Reviewer scorecard
“Rust deterministic engine enforcing MCP-level tool restrictions is exactly the kind of hard guarantee you need before letting an agent touch production databases. This is infrastructure, not a toy.”
“Cheapest way to run Llama and Mistral models in production. The inference speed is competitive with major providers. OpenAI-compatible API makes switching easy.”
“The SWE-bench jump from 2/10 to 10/10 on five tasks is too small a sample to generalize from. Rigid state machines may reduce agent flexibility in ways that create new failure modes—agents that get stuck because a valid path violates the state graph.”
“The pricing is genuinely good and reliability has improved. The fine-tuning workflow is straightforward. A solid choice for open-source model deployment.”
“Formal methods for AI agents—think type systems but for behavior—is a research area that will matter enormously as agents enter regulated industries. Statewright is an early, practical instantiation of that idea. Watch this space.”
“Together is betting that the future is open-source models. As Llama and Mistral improve, inference providers like Together become the AWS of AI.”
“For creative workflows where spontaneity matters, hard state machine constraints sound like they'd kill the magic. I'd rather have a guardrail-light agent that occasionally needs correction than one that asks permission to proceed at every step.”
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