
Phenom Strengthens AWS Alliance in New AI Agents Marketplace Category
'Many of the top companies in the world use Phenom's AI and Agentic AI solutions to address their unique industry-specific talent challenges and advance their human resource teams,' said Saumil Gandhi, SVP, Corporate Development at Phenom.
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Phenom introduced breakthrough innovations including X+ Ontologies, X+ Agent Studio, and industry-specific X+ Agents that bridge the gap between business strategy and HR execution. These purpose-built agents streamline essential processes across industries like healthcare, retail, financial services, and manufacturing — from candidate sourcing to talent development — while transforming unstructured enterprise data into actionable insights.
With the availability of AI Agents and Tools in AWS Marketplace, customers can accelerate their procurement process to drive AI innovation, reducing the time needed for vendor evaluations and complex negotiations. With centralized purchasing using AWS accounts, customers maintain visibility and control over licensing, payments, and access through AWS.
When Phenom AI and automation are applied strategically to address specific industry hiring and retention needs, the impact is measurable and significant, including:
$7M annual savings with 88% staffing vendor reduction achieved by a popular airline that unified contingent labor and enabled chatbot-driven candidate discovery to direct source more than 80% of positions while maintaining a 12-14 day time to fill across 22,000 contractors
$1.3M first-year ROI by a global aerospace leader whose recruiters eliminated manual scheduling to save 15 hours a week, accelerate hiring by 24%, and generate 4,500+ quality hires through intelligent candidate matching
85% improvement in screening time by a leading healthcare system (from 20 minutes to 3 minutes) and 57% better interview-to-hire ratio with workflow automations for high-volume hiring
25% reduction in agency fees by a global manufacturer that saved 603 hours in one quarter — including 144 hours from automated interview scheduling alone — while scaling hiring from 1,200 to 3,500 annually across 65 countries
'Many of the top companies in the world use Phenom's AI and Agentic AI solutions to address their unique industry-specific talent challenges and advance their human resource teams,' said Saumil Gandhi, SVP, Corporate Development at Phenom. 'Our AWS Marketplace integration ensures customers can deploy these game-changing capabilities with increased speed and efficiency — whether they're solving critical staffing shortages in healthcare, meeting compliance requirements in financial services, or managing seasonal workforce fluctuations in retail and hospitality.'
With a purpose of helping a billion people find the right work, Phenom seamlessly connects candidates, employees, recruiters, talent marketers, talent leaders, hiring managers, HR and HRIT — empowering diverse and global enterprises with innovative products including Phenom X+ Agentic AI and Generative AI, Career Site, Chatbot, CMS, Talent CRM, X+ Screening, Hiring Automations, Automated Interview Scheduling, Interview Intelligence, Talent Experience Engine, Campaigns, University Recruiting, Contingent Talent Hiring, Onboarding, Talent Marketplace, Workforce Intelligence, Career Pathing, Gigs, Mentoring, and Referrals.
To learn more about Phenom's AI and AI agents in AWS Marketplace, visit here. To see Phenom's AI in action, request a demo.
To learn more about the new Agents and Tools category in AWS Marketplace, visit https://aws.amazon.com/marketplace/solutions/ai-agents-and-tools/.
About Phenom
Phenom is an applied AI company that helps organizations hire faster, develop better and retain longer. By uniquely combining proprietary industry-specific AI, agentic AI, automation and personalized experiences, its Intelligent Talent Experience platform helps companies fundamentally reshape their HR processes and strategies for scalable and sustainable transformation. Driven by a purpose to help a billion people find the right work, Phenom takes a holistic approach that unifies the entire talent journey, augmenting human capabilities and creating a symbiotic relationship between technology and talent.
Phenom has earned accolades including: Inc. 5000's fastest-growing companies (5 consecutive years), Deloitte Technology's Fast 500 (4 consecutive years), 11 Brandon Hall 'Excellence in Technology' awards including Gold for 'Best Advance in Generative AI for Business Impact,' Business Intelligence Group's Artificial Intelligence Excellence Awards (3 consecutive years), The Cloud Awards 2025/2024, The A.I. Awards 2024, and a regional Timmy Award for launching and optimizing HelpOneBillion.com (2020).
Headquartered in Greater Philadelphia, Phenom also has offices in India, Israel, the Netherlands, Germany and the United Kingdom.
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