> For the complete documentation index, see [llms.txt](https://docs.tensorplex.ai/tensorplex-docs/llms.txt). Markdown versions of documentation pages are available by appending `.md` to page URLs; this page is available as [Markdown](https://docs.tensorplex.ai/tensorplex-docs/tensorplex-lst/security.md).

# Security

The security of Tensorplex LST is the highest priority beginning at the time of its initial deployment, but users should understand the risks involved with Tensorplex LST before engaging on the platform.

Given the limitations of the Finney network, a native solution would not work currently and the v1 relies on an interchain architecture as a stopgap. As Bittensor introduces smart contract functionality, the v2 will exist on Bittensor natively.

The following smart contracts of our V1 are audited by [Quantstamp](https://certificate.quantstamp.com/full/tensorplex-stake/7a7c3615-5f16-4129-86e6-ee4f37fdaf0a/index.html):&#x20;

* [`stTAO` Contract](https://etherscan.io/address/0xf70d99735575031915c8b28e499916ea2649ad4f#code)
* [`stTAO` Proxy Contract](https://etherscan.io/token/0xB60acD2057067DC9ed8c083f5aa227a244044fD6#code)


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