Developer Tools
MCP servers, CLIs, SDKs, APIs, and open source tooling for building on agentic AI platforms.
Building on agentic AI platforms requires the right developer tools—from MCP servers and CLIs to SDKs, APIs, and integration frameworks. Explore open source tooling, integration guides, and developer resources for building, extending, and connecting AI-powered applications.
615 articles in this category

How ibl.ai Makes AI Simple and Gives University Faculty Full Control
A practical look at how ibl.ai pairs “factory-default” simplicity with instructor-level control—working out of the box for busy faculty while offering deep prompt, corpus, and safety settings for those who want to tune pedagogy and governance.

Roman vs. Greek Experimentation: Pilot-First Framework
A practical, pilot-first framework—“Roman vs. Greek” experimentation—for universities to gather evidence through action, de-risk AI decisions, and scale what works using model-agnostic, faculty-governed deployments.

How ibl.ai Keeps Faculty at the Heart of the ibl.ai Experience
This article explains how ibl.ai keeps instructors at the center of teaching with an LLM-agnostic, faculty-controlled platform that delivers grounded answers from course materials, streamlines grading and content prep, and integrates directly with campus systems—cutting costs while preserving academic rigor and the human connection in learning.

How ibl.ai Keeps Your Campus’s Carbon Footprint Flat
This article outlines how ibl.ai enables campuses to scale generative AI without scaling emissions. By right-sizing models, running a single multi-tenant back end, enforcing token-based (pay-as-you-go) budgets, leveraging RAG to cut token waste, and choosing green hosting (renewable clouds, on-prem, or burst-to-green regions), universities keep energy use—and Scope 2 impact—flat even as usage rises. Built-in telemetry pairs with carbon-intensity data to surface real-time CO₂ per student metrics, aligning AI strategy with institutional climate commitments.

How ibl.ai Makes Top-Tier LLMs Affordable for Every Student
This article makes the case for democratizing AI in higher education by shifting from expensive per-seat licenses to ibl.ai—a model-agnostic, pay-as-you-go platform that universities can host in their own cloud with full code and data ownership. It details how campuses cut costs (up to 85% vs. ChatGPT in a pilot), maintain academic rigor via RAG-grounded, instructor-approved content, and scale equity through a multi-tenant deployment that serves every department. The takeaway: top-tier LLM experiences can be affordable, trustworthy, and accessible to every student.

How ibl.ai Cuts Cost Without Cutting Capability
This article explains how ibl.ai helps campuses deliver powerful AI—tutoring, content creation, and workflow support—without runaway costs. Instead of paying per-seat licenses, institutions control their TCO by choosing models per use case, hosting in their own cloud, and running a multi-tenant architecture that serves many departments on shared infrastructure. An application layer and APIs provide access to hundreds of models, hedging against price swings and lock-in. Crucially, ibl.ai keeps quality high with grounded, cited answers, faculty-first controls, and LMS-native integration. The piece outlines practical cost curves, shows how to right-size models to tasks, and makes the case that affordability comes from architectural control—not compromises on capability.

ibl.ai for Your University's Website
The article introduces ibl.ai, an AI chatbot tailor‑trained on a university’s own public and internal content to provide prospective students with immediate, accurate answers while freeing admissions staff from repetitive emails.

Microsoft Education AI Toolkit
Microsoft’s new AI Toolkit guides institutions through a full-cycle journey—exploration, data readiness, pilot design, scaled adoption, and continuous impact review—showing how to deploy AI responsibly for student success and operational efficiency.

Nature: LLMs Proficient Solving & Creating Emotional Intelligence Tests
A new Nature paper reveals that advanced language models not only surpass human performance on emotional intelligence assessments but can also author psychometrically sound tests of their own.

Multi-Agent Portfolio Collab with OpenAI Agents SDK
OpenAI’s tutorial shows how a hub-and-spoke agent architecture can transform investment research by orchestrating specialist AI “colleagues” with modular tools and full auditability.

BCG: AI-First Companies Win the Future
BCG’s new report argues that firms built around AI—not merely using it—will widen competitive moats, reshape P&Ls, and scale faster with lean, specialized teams.

McKinsey: Seizing the Agentic AI Advantage
McKinsey’s new report argues that proactive, goal-driven AI agents—supported by an “agentic AI mesh” architecture—can turn scattered pilot projects into transformative, bottom-line results.

LEGO/The Alan Turing Institute: Understanding GenAI Impact on Children
A new study reveals how children aged 8–12 are already using tools like ChatGPT, highlighting benefits, risks, and the urgent need for child-centred AI design and literacy.

OpenAI: Disrupting Malicious Uses of AI - June 2025
OpenAI’s latest threat-intelligence report reveals how ten malicious operations—from deep-fake influence campaigns to AI-generated cyber-espionage tools—were detected and dismantled, turning AI against the actors who tried to exploit it.

Oakland University: The Memory Paradox
Oakland University’s latest paper warns that offloading too much thinking to digital tools can erode human memory systems, arguing for education that strengthens internal knowledge even while embracing AI.

Apple: The Illusion of Thinking
Apple’s new study shows that Large Reasoning Models excel only up to a point—then abruptly collapse—revealing surprising limits in algorithmic rigor and problem-solving stamina.

OpenAI: A Practical Guide to Building Agents
OpenAI’s new guide demystifies how to design, orchestrate, and safeguard LLM-powered agents capable of executing complex, multi-step workflows.

Vanderbilt: The AI Labor Playbook
Vanderbilt University’s new playbook re-imagines generative AI as a scalable labor force—measured in tokens and led by humans—rather than a software product to simply buy and deploy.

OpenAI: AI in the Enterprise
OpenAI’s latest paper distills insights from seven frontier companies, showing how an iterative, security-first approach to AI can boost workforce performance, automate routine tasks, and power smarter products.

Microsoft: Shifting Work Patterns with GenAI
A six-month field experiment with 7,000+ workers shows Microsoft 365 Copilot slashing email time but leaving meetings—and broader workflows—largely unchanged.

Springer Nature: Why AI Won't Democratize Education
Springer Nature’s new paper argues that commercial AI tutors fall short of John Dewey’s vision of democratic education, and calls for publicly guided AI that augments teachers and fosters collaboration.

McKinsey: Open Source in Age of AI
McKinsey’s latest report uncovers why more than half of tech leaders are turning to open source AI for performance and cost advantages—while grappling with cybersecurity, compliance, and IP concerns.

BCG: AI Agents, and Model Context Protocol
BCG’s new report tracks the rise of increasingly autonomous AI agents, spotlighting Anthropic’s Model Context Protocol (MCP) as a game-changer for reliability, security, and real-world adoption.

Securing Agentic AI: Insights from Google & AWS
A joint Google–AWS report explains how the Agent-to-Agent (A2A) protocol and the MAESTRO threat-modeling framework can harden multi-agent AI systems against spoofing, replay attacks, and other emerging risks.