twebit - Bitcoin analysis with machine learning

  •        3

Bitcoin analysis with machine learning

https://github.com/omergunal/twebit

Tags
Implementation
License
Platform

   




Related Projects

Learning-Bitcoin-from-the-Command-Line - The best way to learn to learn deeply about bitcoin is to avoid GUIs (even bitcoin-qt), and instead learn it from the command line

  •    Shell

This is a tutorial for working with Bitcoin (and Lightning) that teaches direct interact with the severs themselves, as the most robust and secure way to begin cryptocurrency work. NOTE: This is a draft in progress, so that I can get some feedback from early reviewers. It is not yet ready for use.

bitpredict - Machine learning for high frequency bitcoin price prediction

  •    Python

This project aims to make high frequency bitcoin price predictions from market microstructure data. The dataset is a series of one second snapshots of open buy and sell orders on the Bitfinex exchange, combined with a record of executed transactions. Data collection began 08/20/2015.A number of engineered features are used to train a Gradient Boosting model, and a theoretical trading strategy is simulated on historical and live data.

tforce_btc_trader - TensorForce Bitcoin Trading Bot

  •    Python

A TensorForce-based Bitcoin trading bot (algo-trader). Uses deep reinforcement learning to automatically buy/sell/hold BTC based on price history. This project goes with Episode 26+ of Machine Learning Guide. Those episodes are tutorial for this project; including an intro to Deep RL, hyperparameter decisions, etc.

bitcoin-reading-list - a reading list for learning to program Bitcoin transactions

  •    

a reading list for learning to program Bitcoin transactions

bitnodes - Bitnodes is currently being developed to estimate the size of the Bitcoin network by finding all the reachable nodes in the network ·

  •    Python

Bitnodes is currently being developed to estimate the size of the Bitcoin network by finding all the reachable nodes in the network. The current methodology involves sending getaddr messages recursively to find all the reachable nodes in the network, starting from a set of seed nodes. Bitnodes uses Bitcoin protocol version 70001 (i.e. >= /Satoshi:0.8.x/), so nodes running an older protocol version will be skipped.See Provisioning Bitcoin Network Crawler for steps on setting up a machine to run Bitnodes. The Redis Data contains the list of keys and their associated values that are written by the scripts in this project. If you wish to access the data, e.g. network snapshots, collected using this project, see Bitnodes API v1.0.


two1-python - The 21 command line interface and two1 bitcoin library

  •    Python

and much more.Please note that the 21 software is in beta. To protect the security of your systems while using 21, we highly recommend you install the software on a device other than your main laptop (e.g. 21 Bitcoin Computer, an old laptop, or an Amazon Virtual Machine) while the product is still in beta. You can read more security-related information here. Please send an email to security@21.co regarding any issue concerning security.

Bitcoin C#

  •    

Bitcoin C# is a port of the native Bitcoin P2P protocol into a C# library. Bitcoin C# makes it easy for C# application developers to add bitcoin features to their applications. The goal is to make Bitcoin C# the best C# implementation of the bitcoin protocol. => NEW 6/19-...

bitcoinxt - Bitcoin XT. Most recent release is H - Bitcoin Cash 2017 Nov Fork

  •    C++

Bitcoin XT is an implementation of a Bitcoin full node that embraces Bitcoin's original vision of simple, reliable, low-cost transactions for everyone in the world. Bitcoin XT originated as a series of patches on top of Bitcoin Core and is now a independently maintained software fork. See our notable features.XT uses the same data directories as Core so you can easily switch back and forth. You will keep and continue updating the same block chain.

Copay - The Secure, Shared Bitcoin Wallet

  •    Javascript

Copay is a secure bitcoin wallet platform for both desktop and mobile devices. The Copay app securely stores multiple, distinct bitcoin wallets, allowing both business and privacy-conscious users to keep funds carefully separated. It makes sharing a wallet simple and secure. It is one of the first bitcoin wallets to support the full Bitcoin Payment Protocol (BIP 0070-0073).

auto_ml - Automated machine learning for analytics & production

  •    Python

auto_ml is designed for production. Here's an example that includes serializing and loading the trained model, then getting predictions on single dictionaries, roughly the process you'd likely follow to deploy the trained model. All of these projects are ready for production. These projects all have prediction time in the 1 millisecond range for a single prediction, and are able to be serialized to disk and loaded into a new environment after training.

practical-machine-learning-with-python - Master the essential skills needed to recognize and solve complex real-world problems with Machine Learning and Deep Learning by leveraging the highly popular Python Machine Learning Eco-system

  •    Jupyter

"Data is the new oil" is a saying which you must have heard by now along with the huge interest building up around Big Data and Machine Learning in the recent past along with Artificial Intelligence and Deep Learning. Besides this, data scientists have been termed as having "The sexiest job in the 21st Century" which makes it all the more worthwhile to build up some valuable expertise in these areas. Getting started with machine learning in the real world can be overwhelming with the vast amount of resources out there on the web. "Practical Machine Learning with Python" follows a structured and comprehensive three-tiered approach packed with concepts, methodologies, hands-on examples, and code. This book is packed with over 500 pages of useful information which helps its readers master the essential skills needed to recognize and solve complex problems with Machine Learning and Deep Learning by following a data-driven mindset. By using real-world case studies that leverage the popular Python Machine Learning ecosystem, this book is your perfect companion for learning the art and science of Machine Learning to become a successful practitioner. The concepts, techniques, tools, frameworks, and methodologies used in this book will teach you how to think, design, build, and execute Machine Learning systems and projects successfully.

breadwallet - breadwallet - bitcoin wallet

  •    Objective-C

mode, breadwallet connects directly to the bitcoin network with the fastperformance you need on a mobile device.**the next step in wallet security:**breadwallet is designed to protect you from malware, browser security holes,*even physical theft*. With AES hardware encryption, app sandboxing, keychainand code signatures, breadwallet represents a significant security advance overweb and desktop wallets, and other mobile platforms.**beautiful simplicity:**Simplicity is breadwallet's core design pr

bitcoin-wallet - Bitcoin Wallet app for your Android device

  •    Java

Bitcoin Wallet app for your Android device. Standalone Bitcoin node, no centralized backend required.

bitcoin-abe - Abe: block browser for Bitcoin and similar currencies

  •    Python

This software reads the Bitcoin block file, transforms and loads the data into a database, and presents a web interface similar to Bitcoin Block Explorer, http://blockexplorer.com/.Abe draws inspiration from Bitcoin Block Explorer (BBE) and BlockChain.info and seeks some level of compatibility with them but uses a completely new implementation.

bitcore-lib - A pure and powerful JavaScript Bitcoin library

  •    Javascript

A pure and powerful JavaScript Bitcoin library.Bitcoin is a powerful new peer-to-peer platform for the next generation of financial technology. The decentralized nature of the Bitcoin network allows for highly resilient bitcoin infrastructure, and the developer community needs reliable, open-source tools to implement bitcoin apps and services.

bitcore-node - Extensible full node using the Bitcore build of Bitcoin

  •    Javascript

A Bitcoin blockchain indexing and query service. Intended to be used with as a Bitcoin full node or in conjunction with a Bitcoin full node.There is no upgrade path from previous versions of Bitcore Node due to the removal of the included Bitcoin Core software. By installing this version, you must resynchronize the indexes from scratch.

btcd - An alternative full node bitcoin implementation written in Go (golang)

  •    Go

btcd is an alternative full node bitcoin implementation written in Go (golang).This project is currently under active development and is in a Beta state. It is extremely stable and has been in production use since October 2013.

StratisBitcoinFullNode - Bitcoin full node in C#

  •    CSharp

Stratis is an implementation of the Bitcoin protocol in C# on the .NET Core platform. The node can run on the Bitcoin and Stratis networks. Stratis Bitcoin is based on the NBitcoin project.For Proof of Stake support on the Stratis token the node is using NStratis which is a POS implementation of NBitcoin.

Bitcoin - Most popular Crypto Currency

  •    C++

Bitcoin uses peer-to-peer technology to operate with no central authority or banks; managing transactions and the issuing of bitcoins is carried out collectively by the network. Bitcoin is open-source; its design is public, nobody owns or controls Bitcoin and everyone can take part. Through many of its unique properties, Bitcoin allows exciting uses that could not be covered by any previous payment system.

palladium - Framework for setting up predictive analytics services

  •    Python

Palladium provides means to easily set up predictive analytics services as web services. It is a pluggable framework for developing real-world machine learning solutions. It provides generic implementations for things commonly needed in machine learning, such as dataset loading, model training with parameter search, a web service, and persistence capabilities, allowing you to concentrate on the core task of developing an accurate machine learning model. Having a well-tested core framework that is used for a number of different services can lead to a reduction of costs during development and maintenance due to harmonization of different services being based on the same code base and identical processes. Palladium has a web service overhead of a few milliseconds only, making it possible to set up services with low response times. A configuration file lets you conveniently tie together existing components with components that you developed. As an example, if what you want to do is to develop a model where you load a dataset from a CSV file or an SQL database, and train an SVM classifier to predict one of the rows in the data given the others, and then find out about your model's accuracy, then that's what Palladium allows you to do without writing a single line of code. However, it is also possible to independently integrate own solutions.





We have large collection of open source products. Follow the tags from Tag Cloud >>


Open source products are scattered around the web. Please provide information about the open source projects you own / you use. Add Projects.