
Open
Posted
•
Ends in 6 hours
Paid on delivery
Build Master Historical Database from Binance USDT-Margined Futures Data (2019–2026) for BTC, ETH, SOL, BNB, XRP We need an experienced data engineer / Python developer to create a single master database from Binance public historical futures data. Symbols: BTCUSDT, ETHUSDT, SOLUSDT, BNBUSDT, XRPUSDT (USDT-margined perpetual futures) Link to data: [login to view URL] Deliverables: - Automated or semi-automated scripts to download all required daily .zip / .csv files. - Clean, merge, and store everything into one well-structured master database. - Proper timestamp alignment, data quality checks, handling of missing days, compression, and indexing for fast querying. - Clear documentation + scripts so we can update the database in the future. - Final database schema explanation and sample queries. • Scaling and normalisation • Feature engineering • Producing a consolidated master database for model training if you’ve tackled stock or crypto data before, this should be straightforward and quick.
Project ID: 40487955
3 proposals
Open for bidding
Remote project
Active 4 days ago
Set your budget and timeframe
Get paid for your work
Outline your proposal
It's free to sign up and bid on jobs
3 freelancers are bidding on average ₹1,317 INR for this job

Hi, I can build the Binance USDT-margined futures data pipeline and master database with reproducible Python scripts. My delivery approach would be: - download the required daily ZIP/CSV files from Binance public data - normalize the BTC, ETH, SOL, BNB, and XRP futures files into one consistent schema - align timestamps and detect missing days or duplicate rows - merge everything into a compressed master dataset suitable for querying or model training - include data-quality checks and sample queries - document how to refresh the database later with new daily files I would keep the workflow script-based so you can rerun it instead of receiving a one-off manual file. Bid: ₹1400 Delivery: 3 days Best, Dhhoho Automation
₹1,400 INR in 3 days
0.0
0.0

Lucknow, India
Member since Sep 25, 2021
₹600-1500 INR
₹600-1500 INR
₹600-1500 INR
₹1500-12500 INR
₹600-1500 INR
$250-750 AUD
$1500-3000 USD
$50-100 USD
$10-30 USD
₹1500-12500 INR
€12-18 EUR / hour
$10-30 AUD
₹600-3000 INR
₹12500-37500 INR
₹600-1500 INR
₹750-1250 INR / hour
$2-8 USD / hour
$250-750 USD
₹600-1500 INR
₹1500-12500 INR
₹1000000-2500000 INR
₹750-1250 INR / hour
₹12500-37500 INR
$1500-3000 USD
₹12500-37500 INR