StackAI
StackAI is an enterprise AI automation platform to build end-to-end internal tools and processes with AI agents in a fully compliant and secure way. Designed for large organizations, it enables teams to automate complex workflows across operations, compliance, finance, IT, and support without heavy engineering.
With StackAI you can:
• Connect knowledge bases (SharePoint, Confluence, Notion, Google Drive, databases) with versioning, citations, and access controls.
• Deploy AI agents as chat assistants, advanced forms, or APIs integrated into Slack, Teams, Salesforce, HubSpot, or ServiceNow.
• Govern usage with enterprise security: SSO (Okta, Azure AD, Google), RBAC, audit logs, PII masking, data residency, and cost controls.
• Route across OpenAI, Anthropic, Google, or local LLMs with guardrails, evaluations, and testing.
• Start fast with templates for Contract Analyzer, Support Desk, RFP Response, Investment Memo Generator, and more.
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Robin by Atera
Robin by Atera is an autonomous IT support agent designed to automatically diagnose and resolve technical issues across devices and cloud environments. The system acts as an AI-powered IT assistant that manages support requests from start to finish without human intervention. Robin receives requests from platforms such as Slack, Microsoft Teams, email, and IT service management tools, verifies the user’s identity, and gathers technical context to understand the problem. It can then perform approved actions on devices, networks, or cloud systems to resolve the issue. By automating troubleshooting and IT support workflows, Robin helps organizations reduce downtime and improve support efficiency.
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Claude for Life Sciences
Claude for Life Sciences is an AI-powered research platform developed by Anthropic, tailored explicitly for life sciences workflows such as drug discovery, experimental design, and regulatory documentation. The solution connects Claude’s large-language-model capabilities with key research environments and data sources, linking to platforms like lab information systems, genomic analysis tools, and biomedical databases, so scientists can move seamlessly from hypothesis generation through data interpretation to publication-ready outputs. The system also introduces “skills” and specialized connectors built for life-science use cases; for example, a skill for single-cell RNA-seq quality control, or integration with spatial-biology toolchains, enabling meaningful dialogue with analytic pipelines rather than simply raw prompts. By embedding into existing workflows, it reports performance that exceeds human baseline on protocol comprehension tasks, supports natural-language queries.
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