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Understanding Gradient Descent in Linear Regression

· 5 min read
Vadim Nicolai
Senior Software Engineer at Vitrifi

Introduction

Gradient descent is a fundamental optimization algorithm used in machine learning to minimize the cost function and find the optimal parameters of a model. In the context of linear regression, gradient descent helps in finding the best-fitting line by iteratively updating the model parameters. This article delves into the mechanics of gradient descent in linear regression, focusing on how the parameters are updated and the impact of the sign of the gradient.

Understanding Linear Regression in Machine Learning

· 4 min read
Vadim Nicolai
Senior Software Engineer at Vitrifi

Introduction

Linear regression is a fundamental algorithm in supervised machine learning, widely used for predicting continuous outcomes. It models the relationship between a dependent variable and one or more independent variables by fitting a linear equation to observed data. This article delves into the components of linear regression, explaining how inputs, parameters, and the cost function work together to create a predictive model.

Technical Analysis of Key NVIDIA Partners - A Comparative Study

· 10 min read
Vadim Nicolai
Senior Software Engineer at Vitrifi

Introduction

NVIDIA's growth and innovation in the technology sector are significantly supported by its strategic partnerships with key companies in the semiconductor industry. This article provides a comparative technical analysis of several major NVIDIA partners, including Taiwan Semiconductor Manufacturing Company (TSMC), Samsung Electronics, Micron Technology, SK hynix, ASML Holding, Applied Materials, and ASE Technology. By examining their financial indicators, technical metrics, and growth potential, investors can gain insights into why these companies present compelling investment opportunities.

Correct Exchange Mapping in VeighNa to Resolve IB Security Definition Errors

· 14 min read
Vadim Nicolai
Senior Software Engineer at Vitrifi

Introduction

In the intricate world of algorithmic trading, seamless integration between trading platforms and broker APIs is paramount.

One common issue when interfacing with Interactive Brokers (IB) API is encountering the error:

ERROR:root:Error - ReqId: 1, Code: 200, Message: No security definition has been found for the request

This error typically arises due to incorrect exchange mapping, preventing Interactive Brokers (IB) from recognizing the requested security. This article delves into the importance of accurate exchange mapping within the VeighNa trading platform, provides a detailed overview of IB's symbol rules, explains the updatePortfolio method, and offers guidance on implementing correct mappings to avoid such errors.

Understanding the Sniper Algorithm Implementation in Algorithmic Trading

· 8 min read
Vadim Nicolai
Senior Software Engineer at Vitrifi

Introduction

In the realm of algorithmic trading, execution algorithms play a pivotal role in optimizing trade orders to minimize market impact and slippage. One such algorithm is the Sniper Algorithm, which is designed to execute trades discreetly and efficiently by capitalizing on favorable market conditions.

This article aims to review and understand the implementation of the Sniper Algorithm as provided in the VeighNa trading platform's open-source repository. By dissecting the code and explaining its components, we hope to provide clarity on how the algorithm functions and how it can be utilized in practical trading scenarios.

Backtesting NVIDIA Stock Strategies on VeighNa - Moving Average Crossover Strategy

· 15 min read
Vadim Nicolai
Senior Software Engineer at Vitrifi

Introduction

Backtesting is essential for validating trading strategies, especially in the high-frequency and volatile world of stocks like NVIDIA (NVDA). Using VeighNa, an open-source algorithmic trading system, provides traders with the flexibility to thoroughly test strategies and optimize for performance. In this guide, we'll walk through setting up VeighNa, backtesting a simple Moving Average Crossover strategy on NVIDIA, explaining the strategy in detail, troubleshooting common installation issues, and optimizing your strategy.

Automating Financial Data Collection and Uploading to Hugging Face for Algorithmic Trading

· 6 min read
Vadim Nicolai
Senior Software Engineer at Vitrifi

Introduction

In the fast-paced world of algorithmic trading, accessing reliable and timely financial data is essential for backtesting strategies, optimizing models, and making data-driven trading decisions. Automating data collection can streamline your workflow and ensure that you have access to the most recent market information. In this guide, we’ll walk through how to automate the collection of stock data using Python and yfinance, and how to upload this data to Hugging Face for convenient access and future use.

Although this article uses NVIDIA stock data as an example, the process is applicable to any publicly traded company or financial instrument. By integrating data collection and storage into one automated pipeline, traders and analysts can focus on what matters most—developing strategies and maximizing returns.

Algorithmic Trading with VeighNa and Interactive Brokers - Installation Guide and Troubleshooting

· 5 min read
Vadim Nicolai
Senior Software Engineer at Vitrifi

Introduction

Algorithmic trading is transforming the financial landscape, and frameworks like VeighNa combined with Interactive Brokers (IB) offer traders the tools they need to optimize their trading strategies and automate execution across global markets. However, setting up these tools on macOS, particularly on Apple Silicon (M1/M2), can be tricky due to package compatibility issues. This guide will walk you through the installation process of VeighNa with IB on macOS, highlighting all the potential gotchas we encountered, along with their solutions.

Predicting Bank Failures Using Gradient Descent and Machine Learning

· 6 min read
Vadim Nicolai
Senior Software Engineer at Vitrifi

Introduction

Predicting bank failures is a vital concern in financial risk management, as it can prevent economic crises and protect investors and depositors. Machine learning, particularly algorithms optimized through Gradient Descent, offers powerful tools for identifying early warning signs of bank failures. In this article, we focus on how Gradient Descent and related machine learning methods are used to predict bank failures, helping institutions and regulators manage risks more effectively.

Understanding Gradient Descent and Its Applications in Trading Algorithms

· 6 min read
Vadim Nicolai
Senior Software Engineer at Vitrifi

Introduction

Gradient Descent is a fundamental optimization algorithm used in machine learning and quantitative finance. In the context of algorithmic trading, it helps in optimizing predictive models, from price forecasting to portfolio optimization. Understanding how Gradient Descent works and how it can be applied in the financial markets is crucial for developing effective trading strategies.

In this article, we will explore the concept of Gradient Descent, its variations, and its applications in trading.