Trading Applications
How 0.07 both helps and benefits users while trading.
Omira’s 0.07 model can be interacted with via both Omira’s web app and Telegram interface. 0.07 is engineered to answer any questions related to trading or DeFi, and to provide personalized suggestions & recommendations upon request.
Here are some examples of how best to apply 0.07 when trading:
Portfolio rebalancing recommendations:
Receive personalized recommendations pertaining to your portfolio distribution, based on profile parameters such as your risk appetite score & asset allocation boundaries.
Buy/Sell quantity suggestions:
Receive personalized suggestions pertaining to buy & sell amounts on tokens you are trading, based profile parameters such as your risk appetite score & asset allocation boundaries.
Take profit & DCA strategies:
Receive personalized take profit & DCA strategies on tokens you are trading, adapted to profile parameters such as your minimum profit target, maximum drawdown tolerance, risk appetite score and preferred trading timeframes.
Entry & Exit points:
Receive personalized suggestion pertaining to entry & exit points on tokens you are trading, adapted to profile parameters such as your minimum profit target, maximum drawdown tolerance, risk appetite score and preferred trading timeframes.
On-Chain Action Prompts
The 0.07 Agent is engineered to provide users with transaction prompts based on personalized recommendations provided. Should transaction prompts be signed by the user, 0.07 will automatically execute the transaction or series of transactions specified.
Users may edit the proposed transaction(s) or request a different execution should they wish to deviate from the proposed course of action. Here are some examples of transaction prompts which may be proposed by 0.07:
Buy X ETH of X token at X price
Sell X amount of X token at X price
DCA a total of X ETH into X token at X price, Y price & Z price
TP a total of X tokens at X price, Y price & Z price
Transaction prompts are only available via the Omira web app.
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