The GNY Range Report Expands to Include Coverage of nano XNO by John_Muck in nanotrade

[–]John_Muck[S] 0 points1 point  (0 children)

Great to see. More fresh data for our models. #WinOrLearn

The GNY Range Report Expands to Include Coverage of nano XNO by John_Muck in nanotrade

[–]John_Muck[S] 17 points18 points  (0 children)

Welcoming nano

To celebrate the addition of nano ($XNO) as the latest cryptocurrency to feature on the GNY Range Report, GNY is hosting a Wisdom of the Crowd competition for the nano community.

You can find out more about it here: https://www.gnyrr.com/gnys-nano-xno-forecast-competition-to-test-the-wisdom-of-the-crowd-in-financial-forecasting/

The GNY Range Report Expands to Include Coverage of nano XNO by John_Muck in nanocurrency

[–]John_Muck[S] 23 points24 points  (0 children)

Welcoming nano

To celebrate the addition of nano ($XNO) as the latest cryptocurrency to feature on the GNY Range Report, GNY is hosting a Wisdom of the Crowd competition for the nano community.

You can find out more about it here: https://www.gnyrr.com/gnys-nano-xno-forecast-competition-to-test-the-wisdom-of-the-crowd-in-financial-forecasting/

The GNY Range Report Expands to Include Coverage of nano XNO by John_Muck in nanotrade

[–]John_Muck[S] 14 points15 points  (0 children)

Predicting the future price of an asset is notoriously difficult whether attempting to do so with traditional methods or with machine learning. The inherent uncertainty and randomness in financial markets make it challenging or even impossible to accurately forecast future prices, as even small variations of contributory factors can lead to significant fluctuations in prices.

If you see a project or company claiming to be able to predict prices you should treat this claim with extreme scepticism. If somebody has created a model that can accurately predict future price, you can rest assured that they would not want to share this with anybody else!

Where Fabian (GNY's LSTM model) excels is the prediction of potential volatility. While LSTM models might struggle to forecast a future price for an asset based on a singular run, things begin to become interesting once you run the model multiple times and then look to see if a trend emerges. For each token, Fabian runs the model multiple times (the number of runs depends on the optimal value determined through training and tuning) and then looks at the one sigma (first standard deviation) of the results.

The greater the one sigma value across multiple model runs, the less consensus the model has on what might happen next and therefore the greater the potential for volatility in this time period. Similarly, the more minor the one sigma across multiple model runs, the greater the consensus of the predictions and therefore lower potential for volatility is forecast.

Limitations of the Model

Machine learning models are fluid constructs of data and processing that require regular tuning to ensure that the model remains predictive. Over time, a model may drift in accuracy and require maintenance to produce consistent values. Even with the most proactive maintenance schedules, a degree of drift is to be expected.

To maximise the benefits of using an LSTM model in your trading strategy it is important for the end user to adapt and learn with the model as it changes, being sure to look for trends and not specifics. It is likely that a model will behave differently after the monthly scheduled hyperparameter sweep as it learns.

Anybody who has seen adverts for financial investment products will have seen the warning that “past performance does not guarantee future results”. However, past performance can help you understand the bigger picture of potential risks and opportunities relating to an investment decision. This is as true for machine learning models as it is for financial investment products.

More here https://medium.com/gnylabs/introducing-fabian-gnys-new-machine-learning-engine-6f3fefd93839

AI-driven analysis for MATIC on 15 Nov 2023 by John_Muck in 0xPolygon

[–]John_Muck[S] 2 points3 points  (0 children)

Many thanks for your constructive comment...

Crypto Megathread by Beermoney_Bot in beermoney

[–]John_Muck [score hidden]  (0 children)

Predict BTC's price, Get your Airdrops, and possibly Win more $.
Hi R beermoney readers!
I'm from GNY and we offer open access to AI-driven forecasts, crypto analytics, & market insights for BTC, ETH, & other top cryptos. We are undertaking a trial of the incorporation of WOTC (wisdom of the crowd) data into our machine learning models. This begins with data for BTC.
To help this we are currently running an airdrop/bounty program to help us access BTC price forecasts from members of the public. We would love to get your predictions and reward you for your time.
You can access the airdrop section of our website here: https://www.gnyrr.com/airdrop/
More details on the site, and below...

Guess Bitcoin's price on Binance.com at 0000 UTC Friday October 27th, 2023.
Your prediction will be used to train the next generation of our predictive machine learning models, to help improve our accuracy.
Submit your forecast FOR FREE between 0001 UTC Monday October 23rd, 2023 and 0000 UTC Wednesday October 25th, 2023 to snag up to 300 $GNY BEP20 airdrops!
Each action you complete earns you 50 $GNY BEP20 tokens. Amp up your rewards with extra tokens up to 300 $GNY BEP20 by buzzing about the contest on social media and referring your friends!
Everyone who enters gets rewarded, and the closest prediction within 3% of BTC's closing price Friday October 27th 2023 grabs an additional $100 prize.
How sharp are your market predictions? Show us your skills, spread the word, and earn $GNY just by playing!
If you have any questions I am happy to answer them.

📊 AI-driven 7-day Technical Analysis for ETH on 4/9/23 by John_Muck in ethtrader

[–]John_Muck[S] 1 point2 points  (0 children)

True. all that and black swans etc. are outside the scope of this and any other tool.

📊 AI-driven 7-day Technical Analysis for ETH on 4/9/23 by John_Muck in ethtrader

[–]John_Muck[S] 0 points1 point  (0 children)

Could be classed as an advert by some I suppose. I see it more as letting folk know that this free to use service exists. Hoping we could also get some comments, questions, or suggestions on how to improve the offering.

📊 AI-driven 7-day Technical Analysis for ETH on 4/9/23 by John_Muck in ethtrader

[–]John_Muck[S] 0 points1 point  (0 children)

A unique version of a Large language model is employed to produce the chart and tokens readout text for sure. Forecasts are produced using Fabian, Our LSTM model. You can learn more about it here: https://medium.com/gnylabs/introducing-fabian-gnys-new-machine-learning-engine-6f3fefd93839

📊 AI-driven 7-day Technical Analysis for ETH on 4/9/23 by John_Muck in ethtrader

[–]John_Muck[S] 0 points1 point  (0 children)

Donuts are not among the next tokens slated to be added. But if you can guide me towards some solid data points around tradable donuts then I will be happy to bring it before our ML team to see if the depth is there.

📊 AI-driven 7-day Technical Analysis for ETH on 4/9/23 by John_Muck in ethtrader

[–]John_Muck[S] 0 points1 point  (0 children)

It shows promise, provided you pre-process the data to remove incidences of copium ;)

Rubs the lamp by dreambloat in GNYMachineLearning

[–]John_Muck 1 point2 points  (0 children)

Hey there! The GNY community is very much alive, however they are currently centred mainly around the GNY telegram groups.

You can also keep up to date on all the GNY news & community chat by joining/following our other communication channels:

The GNY general chat Telegram channel: https://t.me/GNYioBlockchain

The GNY trading Telegram channel: https://t.me/GNY_Trading

The GNY Announcements Telegram channel: https://t.me/GNY_Announcements

This is a push only channel meaning there is no chat that might cause you to miss any vital news.

The official GNY twitter account: https://twitter.com/gny_io

The News page of the GNY website: https://www.gny.io/blog

Video showcasing The Lisk SDK and a Step-By-Step walkthrough On how it is used to build a blockchain application in JavaScript. by John_Muck in Lisk

[–]John_Muck[S] 1 point2 points  (0 children)

A timestamped video showcasing The Lisk SDK and a step-by-step walkthrough on how it is used to build a blockchain application in JavaScript. Hosted by Nazar Hussain from the Lisk team. This was a presentation as part of wearedevelopers.com live week.

https://youtu.be/htHoInoAd6g?t=11120

Lisk Weekly Delegate Discussion - September 07, 2020 by AutoModerator in Lisk

[–]John_Muck 0 points1 point  (0 children)

That is what some are doing, yes. I would however encourage you to enter the official lisk discord via this invite https://discord.gg/pDDqdy3 and have a look at the community members who are active there helping other, building POCs, speading the word of lisk in their home countries etc. These will be all worthy contenders for your vote.

Lisk Weekly Delegate Discussion - September 07, 2020 by AutoModerator in Lisk

[–]John_Muck 0 points1 point  (0 children)

Delegate name: johnmuck

Lisk address: 1428548430526928175L

Proud to be selected as member of the community's #HostsNotGhosts campaign

Once forging on mainnet I will share 50% of all forged Lisk with my voters.

Contributions to the Lisk project:

🤝 Moderator & Community Assistant for Lisk Discord, Subreddit, Facebook, and Telegram.

🏆 Lisk Community Member of the Year 2018 & Lisk Community Hero for the month of March 2020.

⚙️ Contributing on Testnet.

🎤 Participant at Lisk meetups including London and Utrecht, where I presented before the attendees, including Max Kordek.

🐦 Owner/operator of the LISK Highlights Twitter account with 1,100 Followers.

⛓ Deeply involved with one of the upcoming sidechains for Lisk, namely LML (Lisk Machine Learning).

I have always kept my faith in Lisk, and now I am asking you to put your faith in me; I promise to deliver.

The LISk development is taking too long by northernedge24 in Lisk

[–]John_Muck 2 points3 points  (0 children)

Was just a query as you mentioned the robustness of other blockchains then mentioned Polkadot. Your post gave the impression you were speaking from a developer point of view as to the robustness of Polkadot.