Odofoley Oquaye Customer Success Manager

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Odofoley Oquaye Customer Success Manager

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contact name: Odofoley Oquaye
contact job function details: customer success
contact job function: support

contact job title: Customer Success Manager

contact job seniority: manager

contact person city: Raleigh

contact person state: North Carolina

contact person country: United States

contact person zip code:

business name: First.

business domain: first.io

business facebook URL: https://www.facebook.com/Firstanalytics

business linkedin: http://www.linkedin.com/company/10226796

business twitter: http://twitter.com/firstleads

business website: http://www.first.io

germany telegram data

business angellist: http://angel.co/firsthq

business found year: 2014

business city:

business zip code:

business state:

business country:

business language: English

business employee: 36

james chillcott senior partner

business category: computer software

business specialty: computer software

business technology: route_53,rackspace_mailgun,sendgrid,gmail,google_apps,amazon_aws,segment_io,greenhouse_io,itunes,mobile_friendly,ruby_on_rails,google_analytics,facebook_web_custom_audiences,google_play,linkedin_display_ads__formerly_bizo,heapanalytics,hotjar,google_font_api,facebook_login,varnish,facebook_widget,nginx,customer_io,phusion_passenger

business description: FirstΓÇÖs machine learning models predict who will sell by tracking 700+ signals across 214 million people nation-wide. WeΓÇÖve distilled this amazingly complex science into a simple, easy-to-use app.