Search This Blog

September 14, 2021

Urgent Requirement || Sr. Machine Learning Data Analyst/ Data Scientist || Charlotte, NC & Austin, TX . initially remote.

Hi,

 

Hope you are doing well!        

                                                                                                                                                                                                                

Please see the job details below and let me know if you would be interested in this role.

If interested, please send me your resume, your contact details, your availability, and a good time to connect with you.

 

Role: Sr. Machine Learning Data Analyst/ Data Scientist

Location : Charlotte, NC & Austin, TX . initially remote.

Duration: Long Term Contract

 

  • Partner with business owners across the company (sales, product, marketing, care, sales, etc.) to extract and analyze data from large data tables using SQL, Python to translate findings into actions.
  • Routinely write efficient, legible, commented, and reproducible code.
  • Understand data models consisting of business-user-friendly data marts from online and offline data sources.
  • Work closely with data engineers in order to automate the collection and analysis of the raw data required for the models you build.
  • Clearly, scope, track, execute and communicate on projects (ticketing system experience is a plus) in an agile environment.
  • Machine Learning experience is must.
  • Minimum experience 10+ years

 

 

 

Akash Raj

Recruiter | VBeyond Corporation

https://www.linkedin.com/in/akash-raj-55897918b/

+1 716-952-9960

akashr@vbeyond.com

 

Amwell Commons,, 390 Amwell Road, Hillsborough, New Jersey, USA – 088 44

www.vbeyond.com

 

The content of this email is confidential and intended for the recipient specified in message only. It is strictly forbidden to share any part of this message with any third party, without a written consent of the sender. If you received this message by mistake, please reply to this message and follow with its deletion, so that we can ensure such a mistake does not occur in the future.