Finance Train Article Writing Competition – Win Exciting Prizes

This competition is now closed.

Finance Train aspires to provide quality content that the financial community can use. We recognise that many discerning members of the financial community have perspectives to share. We call upon the young and the experienced financial warriors to pen an article (600-800 word long) in collaboration or as a solo effort.

Every tournament worth its name should have a trophy to be won, however, modest. The winner of the first place in Finance Train's first ever article competition will win an Amazon Gift Voucher worth $150.

The second place will win a Gift Voucher worth $100, and the third place winner will win a Gift Voucher worth $75.

So pull out that word app, key in your thoughts on any topic in finance and send it to us anytime between 9th Sept and 31st Oct 2011.

May the best writer win!

You may find these interesting

Welcome to Finance Train
Hello and Welcome, We are excited to present to you the all new community and content website exclu...
Equity Vs. Debt Financing
Choosing between equity and debt is one of the most common decision made by business managers while ...
Finance Train Premium
Accelerate your finance career with cutting-edge data skills.
Join Finance Train Premium for unlimited access to a growing library of ebooks, projects and code examples covering financial modeling, data analysis, data science, machine learning, algorithmic trading strategies, and more applied to real-world finance scenarios.
I WANT TO JOIN
JOIN 30,000 DATA PROFESSIONALS

Free Guides - Getting Started with R and Python

Enter your name and email address below and we will email you the guides for R programming and Python.

Saylient AI Logo

Accelerate your finance career with cutting-edge data skills.

Join Finance Train Premium for unlimited access to a growing library of ebooks, projects and code examples covering financial modeling, data analysis, data science, machine learning, algorithmic trading strategies, and more applied to real-world finance scenarios.