• Products

    Digital Trust & Safety Platform

    Fight fraud without sacrificing growth

    Learn more

    Platform solutions

    • Payment Protection
    • Account Defense
    • Dispute Management
    • Content Integrity
    • Sift Connect
    • Passwordless Authentication

    Sift innovations

    • PSD2 Solution
    • New Releases & Enhancements
  • Industries

    One solution, any industry

    Learn how Sift can work for your industry

    Learn more

    Featured Industries

    • Fintech
    • Payment Service Providers
    • Retail
  • Customers

    Case studies by industry

    See how leading brands succeed with Sift

    Learn more

    Featured Customers

    • DoorDash
    • Uphold
    • Paula’s Choice
  • Partners
  • Fraud Center
  • Resources

    Fraud-fighting resources

    Explore fraud trends and insights

    Learn more

    • Blog
    • Demos
    • Infographics
    • Ebooks & Reports
    • Videos
    • Podcasts
    • One-Pagers
    • Webinars
    • Trust & Safety University
  • Company

    Why leaders choose Sift

    Technology, community, and partnership

    Learn more

    Our mission: Help everyone trust the internet

    • About
    • Careers
    • News & Press
Talk to an expert
Products
  • Digital Trust & Safety Platform
  • Payment Protection
  • Account Defense
  • Dispute Management
  • Content Integrity
  • Sift Connect
  • Passwordless Authentication
  • PSD2 Solution
  • New Releases & Enchancements
Industries
  • Fintech
  • Retail
  • Payment Service Providers
Customers
Partners
Fraud Center
Resources
  • Blog
  • Ebooks & Reports
  • One-Pagers
  • Demos
  • Videos
  • Webinars
  • Infographics
  • Podcasts
  • Trust and Safety University
Company
  • Search Careers
  • Our Company
  • Contact Us
  • Engineering Blog
Talk to an expert Sign in
  • Blog Home
  • machine learning

Digital Trust & Safety

Technology

10 Surprising Ways Machine Learning is Being Used Outside Tech – Part 1

By Roxanna "Evan" Ramzipoor

18 Apr 2017

Digital Trust & Safety

Fraud

Machine Learning Isn’t Always a Black Box

By Janet Wagner

23 Jan 2017

Digital Trust & Safety

Fraud

6 Things We Learned About Fraud Last Year – And What’s Next for 2017

By Sarah Beldo

5 Jan 2017

Digital Trust & Safety

6 Myths About Machine Learning

By Janet Wagner

10 Nov 2016

Digital Trust & Safety

Which Startups Will Succeed in the Future of FinTech [Q&A]

By Sarah Beldo

11 Oct 2016

Fraud

9 Questions to Ask When Choosing a Machine Learning Fraud Detection Solution

By Sarah Beldo

12 Apr 2016

Company

Fraud

5 Top Themes from MRC Vegas 2016

By Sripad Sriram

21 Mar 2016

Fraud

News roundup: 3 stories that caught our eye

By Sarah Beldo

28 Jan 2016

Fraud

4 Main Takeaways From Sift Science’s Webinar With OpenTable

By Sarah Beldo

14 Dec 2015

Posts navigation

prev 1 2 3 4 5 6 7 Next
  • Company
  • About Us
  • Careers
  • News & Press
  • Partner With Us
  • Blog
  • Support
  • Help Center
  • Contact Support
  • System Status
  • Trust & Safety University
  • Fraud Management
  • Developers
  • Overview
  • APIs
  • Client Libraries
  • Integration Guides
  • Tutorials
  • Engineering Blog
  • Social

Don’t miss a thing

Get industry trends, insights, and actionable fraud-fighting tips.

You're on the list.

You can unsubscribe at any time. Please see our Website Privacy Notice.
Do Not Sell My Personal Information

If you are using a screen reader and are having problems using this website, please email support@sift.com for assistance.

© 2023 Sift Science, Inc. All rights reserved. Sift and the Sift logo are trademarks or registered trademarks of Sift Science, Inc.
Privacy & Terms

Secure your business from login to chargeback

Stop fraud, break down data silos, and lower friction with Sift.

  • Achieve up to 285% ROI
  • Increase user acceptance rates up to 99%
  • Drop time spent on manual review up to 80%
Your information will be used to contact you about our service and subscribe you to our direct marketing communications. You can, of course, unsubscribe at any time. Please see our Website Privacy Notice.