Datasets:
metadata
license: mit
language:
- en
tags:
- trading
- stock
- market
pretty_name: sunny thakur
size_categories:
- 10K<n<100K
LLM Trading Instruction Dataset β 2025 Edition
Filename: llm_trading_dataset_20250629_115540.jsonl
Size: 20,306 entries
Format: JSON Lines (.jsonl)
Created: June 29, 2025
Task Type: Instruction Tuning for Financial Signal Prediction
Target Use: Finetuning Instruction-Following LLMs (e.g., LLaMA, Mistral, GPT-NeoX)
π§ Dataset Overview
This dataset is crafted to train and evaluate large language models for predicting Buy/Sell signals based on technical indicators in real-world market conditions.
Each entry follows a structured instruction format, making it suitable for instruction-tuned or reinforcement-aligned LLMs.
π Format
Each line contains a JSON object with the following fields:
{
"instruction": "Given technical indicators, predict if it's a Buy or Sell signal.",
"input": "AAPL on 2025-03-14 with indicators: EMA20=229.85, EMA50=235.28, BB_upper=257.98, BB_lower=212.55, MACD=-5.63, MACD_signal=-2.33, RSI=30.81, CCI=-176.99, STOCH_K=12.19, STOCH_D=7.04",
"output": "Buy"
}
π Fields:
instruction: Standardized prompt for LLMs
input: Stock ticker, date, and key technical indicators
output: Target label β "Buy" or "Sell"
π οΈ Use Cases
Finetuning instruction-following models for financial forecasting
Training agents to act as trading advisors
Simulating AI portfolio decision-making
Building autonomous trading copilots
Researching interpretable signal generation
π Indicators Included
EMA20, EMA50 (Exponential Moving Averages)
BB_upper, BB_lower (Bollinger Bands)
MACD, MACD_signal (Trend Momentum)
RSI (Relative Strength Index)
CCI (Commodity Channel Index)
STOCH_K, STOCH_D (Stochastic Oscillator)
import json
with open("llm_trading_dataset_20250629_115540.jsonl") as f:
for line in f:
sample = json.loads(line)
print("Prompt:", sample["instruction"])
print("Input:", sample["input"])
print("Target:", sample["output"])
π License
MIT License (customizable) Attribution recommended for academic or commercial use. π€ Contact
For collab, model finetuning, or tool integrations: π§ [email protected]