×
xpander.ai’s new step-by-step system makes AI agent more reliable
Written by
Published on
Join our daily newsletter for breaking news, product launches and deals, research breakdowns, and other industry-leading AI coverage
Join Now

The Agent Graph System (AGS) from Israeli startup xpander.ai represents a significant advancement in making AI agents more reliable and efficient when handling complex, multi-step tasks.

Core innovation: xpander.ai’s Agent Graph System introduces a structured, graph-based workflow that guides AI agents through API calls in a systematic manner, dramatically improving their reliability and efficiency.

  • The system restricts available tools at each step to only those relevant to the current task context, reducing errors and conflicting function calls
  • AGS works with underlying AI models like GPT-4 to enable more precise automation workflows
  • The technology includes AI-ready connectors that integrate with systems like NVIDIA NIM, enriching API tools with detailed documentation and schemas

Performance metrics: Benchmarking tests demonstrate substantial improvements in AI agent performance when using AGS combined with Agentic Interfaces.

  • AI agents achieved a 98% success rate in multi-step tasks, compared to 24% using traditional methods
  • Workflows were completed 38% faster than conventional approaches
  • The system used 31.5% fewer tokens, leading to reduced operational costs

Technical leadership: The founding team brings significant enterprise technology experience to address common AI agent challenges.

  • CEO David Twizer and CPO Ran Sheinberg both previously served as principal solutions architects at Amazon Web Services
  • Their experience with large-scale enterprise computing informed AGS’s design to be both powerful and accessible
  • The team focused on creating technology that can integrate with existing systems while allowing for future model upgrades

Real-world applications: The system has demonstrated practical benefits in complex business workflows.

  • One benchmark test involved coordinating research across LinkedIn and Crunchbase, with results organized in Notion
  • The system ensures tools are used in the correct sequence while maintaining consistent schema compliance
  • AGS includes built-in error management and fallback options, allowing agents to retry failed operations or find alternative workflows automatically

Future implications: As AI agents become more prevalent in enterprise environments, AGS’s structured approach to handling complex workflows positions it as a key enabling technology for the broader adoption of automation solutions.

  • The system’s ability to manage error handling and maintain context continuity addresses critical challenges in enterprise AI deployment
  • By making AI agent development more accessible, AGS could accelerate the adoption of automation across industries
  • The focus on API integration and structured workflows suggests a future where AI agents can reliably handle increasingly complex business processes
xpander.ai’s Agent Graph System makes AI agents more reliable, gives them info step-by-step

Recent News

Super Micro stock surges as company extends annual report deadline

Super Micro Computer receives filing extension from Nasdaq amid strong AI server sales, giving the manufacturer until February to resolve accounting delays.

BlueDot’s AI crash course may transform your career in just 5 days

Demand surges for specialized training programs that teach AI safety fundamentals as tech companies seek experts who can manage risks in artificial intelligence development.

Salesforce expands UAE presence with new Dubai AI hub

Salesforce expands its footprint in Dubai as the UAE advances its digital transformation agenda and emerges as a regional technology hub.