why attend

IDENTIFY is designed for the Ping community, by the Ping community. This year, you'll hear from real customers—some of the world's largest organizations—on how they're boosting employee and partner productivity, modernizing legacy IAM, driving customer engagement and enhancing security. You'll also see the latest capabilities and roadmap plans for the Ping Identity Platform, and you'll get hands-on experience in our new workshops to learn how you can make the most of an investment with Ping.

venue information

Bently Reserve

Featuring nine state-of-the-art-meeting rooms and the Banking Hall, the Bently Reserve boasts a collection of illustrious spaces that can accommodate any business event. Our boardrooms, some of which hosted the original Federal Reserve’s Board of Directors, feature timeless style and carefully curated modern art.

 

ADDRESS

301 Battery Street  |  San Francisco CA 94111


PHONE

(415) 294-2226


WEBSITE

www.bentlyreserve.com

helpful links

  • find hotels

    Take a look at all the places you can stay nearby.

    coming soon
  • getting there

    Not sure where to park the car or access transit?

    coming soon
  • be a speaker

    Find out how to become a contributor to IDENTIFY and other Ping events.

    learn more

IDENTIFY is Ping Identity’s user conference held in select cities around the globe. In 2017, we’re bringing together our customers in London, New York, and San Francisco for one-day events packed with keynotes, panels, and workshops. This year, we’re focused on how enterprises are improving security, increasing employee and partner productivity, and providing seamless customer engagement.

Ping Identity is the identity security company. We simplify how the world’s largest organizations, including over half of the Fortune 100, prevent security breaches, increase employee and partner productivity and provide personalized customer experiences. With Ping, enterprises can securely connect users to cloud, mobile and on-premises applications while managing identity and profile data at scale.