List of AI News about function calling
| Time | Details |
|---|---|
|
2026-02-12 18:09 |
OpenAI unveils ultra‑low latency GPT-5.3 Codex Spark: 7 business-ready coding use cases and performance analysis
According to Greg Brockman on X, OpenAI launched GPT-5.3-Codex-Spark in research preview with ultra-low latency for code generation and editing, enabling faster build cycles and interactive development. According to OpenAI’s X post, the model targets near-instant code suggestions and tool control, which can reduce developer wait time and improve IDE responsiveness for tasks like code completion, refactoring, and inline debugging. As reported by OpenAI on X, the lower latency expands practical applications for real-time copilots in terminals, pair-programming bots, and on‑device agents that require rapid function calling. According to OpenAI’s announcement video, product teams can leverage Codex Spark for live prototyping, automated test generation, and CI pipeline fixes, potentially shortening commit-to-deploy time and decreasing context-switching costs. According to OpenAI on X, Codex Spark is a research preview, so enterprises should pilot it in sandboxed workflows, benchmark token latency against existing code models, and evaluate reliability, security, and license compliance before broader rollout. |
|
2026-02-11 21:48 |
JSON vs Plain Text Prompts: 5 Practical Ways to Boost LLM Reliability and Data Extraction – 2026 Analysis
According to God of Prompt on Twitter, teams should pick JSON prompts for complex, structured outputs and plain text for simplicity, aligning format with task goals; as reported by God of Prompt’s blog, JSON schemas improve LLM reliability for multi-field data extraction, function calling, and tool use, while plain text speeds prototyping and creative ideation. According to the God of Prompt article, enforcing JSON with schemas and validators reduces hallucinations in enterprise workflows like RAG pipelines, analytics, and CRM ticket parsing, while plain text works best for lightweight Q&A and brainstorming. As reported by God of Prompt, a hybrid approach—natural-language instructions plus a strict JSON output schema—yields higher pass rates in evaluation harnesses and makes downstream parsing cheaper and more robust for production AI systems. |
|
2026-02-05 09:17 |
OpenAI Structured Output Schemas: Latest Guide to Framework 2 and GPT-5 Function Calling
According to @godofprompt on Twitter, OpenAI's internal standard for structured output emphasizes defining exact JSON schemas instead of requesting general summaries. The framework proposes returning a precise JSON object with fields for main point, supporting evidence, and a confidence score. This approach leverages GPT-5's function calling capabilities, enabling more reliable and actionable outputs for enterprise AI applications, as reported by the original tweet. |
|
2025-09-24 17:53 |
Gemini Live Model API Update: Enhanced Function Calling and Reliability for AI Developers
According to @googleaidevs, the latest Gemini Live model update introduces significant improvements through the Live API, including more reliable function calling. These enhancements are designed to support developers creating advanced AI-powered applications, increasing operational stability and enabling more robust enterprise integrations. Verified by Sundar Pichai’s tweet, the update highlights Google’s commitment to practical AI deployment and positions Gemini Live as a competitive solution for scalable business automation (source: @googleaidevs, Sundar Pichai on X, Sep 24, 2025). |
|
2025-08-05 17:26 |
OpenAI Unveils Advanced Agentic Workflow AI Models with Function Calling, Web Search, and Python Execution
According to OpenAI (@OpenAI), the latest AI models are engineered specifically for agentic workflows, offering robust support for function calling, integrated web search, Python code execution, configurable reasoning effort, and comprehensive chain-of-thought access (source: OpenAI, Twitter, August 5, 2025). These capabilities allow businesses to automate complex tasks, streamline data analysis, and enable intelligent decision-making in real-time scenarios. The practical applications span customer service automation, dynamic data retrieval, and workflow optimization, presenting significant business opportunities for enterprises seeking scalable AI-driven solutions. |
|
2025-05-29 12:11 |
DeepSeek-R1-0528 Launches with Improved AI Benchmark Performance, Reduced Hallucinations, and Enhanced JSON Functionality
According to DeepSeek (@deepseek_ai), the newly released DeepSeek-R1-0528 introduces significant upgrades including improved benchmark performance, enhanced front-end capabilities, and a notable reduction in AI hallucinations. The update also adds support for JSON output and function calling, allowing for greater integration into business workflows and improved reliability in enterprise applications. API usage remains unchanged, ensuring seamless adoption for existing developers. These advancements present notable opportunities for businesses seeking robust, production-ready AI solutions with increased accuracy and integration flexibility (source: DeepSeek on Twitter, May 29, 2025). |