Advisory Services

partners

Are you starting a machine learning (ML/AI) project? We will help you avoid data preparation mistakes at the project start. A consistent, rule-based, well-documented cascade of steps applied to raw data to filter and balance it, will make all the difference when modeling begins. Let us share our experience in real-world pharma R&D. Some key points must be considered when embarking on ML projects, and you will be well on your way to a successful ML/AI implementation. 

Are you looking to set up or upgrade your science informatics tools, to make a critical hiring decision, or to get up to speed on the current developments in the life sciences software industry? We bring to the table extensive practical experience in the field as an active practitioner, strict client confidentiality, and an industry insider perspective.

Need to deal with data that doesn't quite fit into off-the-shelf software? Are you working with an overseas IT partner organization who are new to your particular situation? You do not have the resources or the time to babysit the issues? We can help.

We offer project-based as well as longer term, retainer-based confidential advisory services to:

  • Hands-on R&D executives looking to cut through marketing hype
  • Disruptive technology teams looking for an outside advisor to provide input in ongoing project meetings
  • Companies looking to setup or upgrade their science informatics architecture
  • Companies looking to make a key hiring decision or interviewing a key job candidate
  • Investment professionals researching a potential deal
  • Startups entering the space and looking to make an impact or to focus their offering

 

Contact us at  services_at_saberinformatics_dot_com or  call us to schedule a one-on-one conversation.

About Us

Saber Informatics is a US data science consultancy founded in 2012.

Our focus is on pharmaceutical R&D, specifically data preparation for ML/AI initiatives.

  info@saberinformatics.com

Recent News

blair witch proj
published 2 months 3 weeks ago
mountain
published 2 years 7 months ago