Sr. Advanced Analyst

New York
US$120000 - US$135000 per year

Sr. Advanced Analyst
Consulting
$120,000-$135,000
New York, NY

My client is looking for a Senior Advanced Analyst to come into the space with developed knowledge on advanced analytics in the consulting sector. This consulting firm is seeking an expert in SQL who will actively extract data and be able to form a story. In this role, you will also be using Python to determine the meaning of the data by building various types of models such as Linear and Regression models.

THE COMPANY:

This company is a mid-sized consulting firm that has been around for over 15 years. Over the past two years, they have taken it upon themselves to grow and expand in order to efficiently target different forms of clients around the world. They are looking for new candidates with a developed knowledge of the advanced analytics sector that will bring about different forms of insights and allow them to grow further.

THE ROLE:

This role will require you to utilize your past analytical experiences and technical skills in SQL and Python to assist clients in designated projects. You will:

  • Use SQL for extensive querying of data and develop regression and decision trees using Python
  • Communicate with different department and clients that are trying to understand how to best operate their businesses
  • Use SQL to pull data and determine the needs of clients though optimizing and visualizing
  • Work collaboratively with a team of high performing, developed analysts
  • Apply your previously learned Python based machine learning and modeling skills to your everyday work like to determine important aspects of your research
  • Collaboratively work with a team of other Advances Analysts, both Sr and Junior, to learn the best practices
  • Derive insights and then actively translate the language over in order to be able to communicate it to the various stakeholders

YOUR SKILLS AND EXPERIENCE:

  • Proven commercial experience in an Advanced analytics role
  • consulting experience would be a plus
  • Bachelor's degree or equivalent in a STEM field
  • Proficiency in Python and SQL
  • Be able to communicate with different verticals and translate findings
  • Have machine learning and modeling experience using Python
  • Have Querying experience using SQL
  • Developed understanding and knowledge on how to extract data and maximize from doing so

BENEFITS:

  • Competitive salary package depending on years of experience
  • Paid volunteer time off
  • Educational assistance program
  • Paid parental leave
  • Flexible and open work arrangements
  • Training and development programs that will accelerate your career growth
  • Health & Dental insurance
  • 401K
  • Vacation time & paid holidays

HOW TO APPLY:
Please register your interest by sending your CV to Gamou Ngom via the Apply link on this page.

KEYWORDS:
Optimization, SQL, Python, data extraction, data analytics, consumer analytics, advanced analytics, retail, modeling, advanced analytics, Predictive modeling, regression,Python, optimization, linear regression, time series

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63955/GN
New York
US$120000 - US$135000 per year
  1. Permanent
  2. Campaign Analayst

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