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Welcome to the PlusEV Wiki

This wiki serves as the central knowledge base for PlusEV AI Quant Trading Private Limited. It documents our research frameworks, systems, engineering, processes & operational knowledge.


Current Scope

  • Research systems covering historical backtesting and live strategy execution
  • Quantitative frameworks focused on risk-first trading
  • Internal SOPs for experimentation, validation, and deployment
  • Data pipelines and analytics infrastructure

Core Areas

Research

Ownership: Primary — Rikk · Secondary — Pawan

Products & Systems

Ownership: Primary — Pawan · Secondary — Rikk

BacktestIQ — Strategy Simulation Platform

Purpose: Historical strategy evaluation & simulation

  • Problem
 Traders develop strategies but lack visibility into how they would have performed historically, leading to uncertainty and unmanaged risk.
  • Solution
 BacktestIQ simulates trading strategies on historical market data, enabling traders to evaluate performance across months or years before deploying real capital.
  • Who benefits
 Traders, investors, funds, researchers validating strategy ideas prior to live implementation.
  • Related systems
 Backtesting Engine, Experimentation SOP

SignalAI — AI-Powered Decision Support

Purpose: Data-driven trade signal generation

  • Problem
 Real-time trading decisions are often emotional and inconsistent due to cognitive overload.
  • Solution
 SignalAI analyzes multiple market variables simultaneously to generate quantitatively backed buy/sell signals, reducing emotional bias.
  • Who benefits
 Traders, investors, funds, researchers seeking systematic, rule-based decision support.
  • Related systems
 Alpha Research, Market Regimes

TradeAnalyzer — Risk & Performance Analysis

Purpose: Risk management and performance diagnostics

  • Problem
 Poor position sizing and lack of performance analysis lead to severe drawdowns and capital erosion.
  • Solution
 TradeAnalyzer evaluates historical trading performance and guides future position sizing and risk limits.
  • Who benefits
 Traders, investors, funds, researchers aiming to improve discipline, risk control, and long-term consistency.
  • Related systems
 Risk Engine, Failure Analysis

StrategyLive — Automated Execution

Purpose: Strategy automation & live execution

  • Problem
 Manual strategy execution is error-prone, slow, and difficult to scale.
  • Solution
 StrategyLive automates execution of validated strategies with real-time monitoring and controls.
  • Who benefits
 Traders, investors, funds, researchers seeking hands-free, rules-based strategy deployment.
  • Related systems
 Live Trading System, Risk Engine

Engineering

Data

Operations



Reference