Find Jobs
Hire Freelancers

Build an Azure Regression Model to Predict Sales by Day & SKU -- 2

£250-750 GBP

Completed
Posted over 7 years ago

£250-750 GBP

Paid on delivery
I'm looking for somebody that can build an Azure workflow to predict the sales of a given product by specifying a date and product code. The dataset is 4 years of data, showing the total of each product by date DATE | PRODUCT_CODE | TOTAL_SOLD 26/10/2016 | ABD_1 | 100 26/10/2016 | ABD_2 | 65 26/10/2016 | ABD_1 | 78 The data will need to be used to produce an accurate model. Certain logic needs to be considered. 1. 3 Seasonal peaks are seen each year which has a massive increase in the total sold, one of the seasons the date changes each year. 2. Mondays are always higher in total sold, the day of the week is the biggest influence of total sold. The dataset can be produced and altered in any format you require to best achieve results. Please message for any clarification.
Project ID: 11923658

About the project

3 proposals
Remote project
Active 7 yrs ago

Looking to make some money?

Benefits of bidding on Freelancer

Set your budget and timeframe
Get paid for your work
Outline your proposal
It's free to sign up and bid on jobs
Awarded to:
User Avatar
Dear Client I am an experienced Machine Learning engineer and passionate about building the models, that really predict. So, I am ready to proceed to your problem and will build you a model to give you 90%+ accuracy. I intend to use Weka, if you prefer. As i am good in using that. Please let me know if you have any questions. Warm Regards Zulfiqar
£388 GBP in 7 days
0.0 (0 reviews)
0.0
0.0

About the client

Flag of UNITED KINGDOM
Halifax, United Kingdom
5.0
2
Member since Oct 26, 2016

Client Verification

Thanks! We’ve emailed you a link to claim your free credit.
Something went wrong while sending your email. Please try again.
Registered Users Total Jobs Posted
Freelancer ® is a registered Trademark of Freelancer Technology Pty Limited (ACN 142 189 759)
Copyright © 2024 Freelancer Technology Pty Limited (ACN 142 189 759)
Loading preview
Permission granted for Geolocation.
Your login session has expired and you have been logged out. Please log in again.