February 2, 2026Product UpdateSource: Suno Blog

Suno Releases V4 with Full Song Production and Stem Separation

Suno has released V4, its latest AI music generation model capable of producing full radio-quality songs with separate audio stems. Musicians can edit individual instrument and vocal tracks, enabling hybrid AI-human music production.

Suno has released V4, a major upgrade to its AI music generation platform that produces full-length songs with audio quality approaching professional studio recordings. The model generates complete arrangements across genres including pop, rock, hip-hop, electronic, classical, and jazz.

V4's breakthrough feature is stem separation output. Every generated song comes with separate audio tracks for vocals, drums, bass, keyboards, guitars, and other instruments. This allows musicians and producers to remix, rearrange, and combine AI-generated elements with their own recordings, enabling a hybrid workflow that bridges AI generation and human creativity.

The vocal quality has improved dramatically, with V4 generating singing voices that capture nuance, emotion, and stylistic authenticity. Users can specify vocal characteristics including gender, age range, style (breathy, powerful, raspy), and emotional tone. The model also supports generated harmonies and background vocals.

Suno has introduced a collaboration feature where multiple users can iterate on a song, with each person modifying different stems or sections. This has created a new mode of music creation where AI generates a starting point that human musicians refine and personalize.

V4 is available on Suno's Pro plan at $10/month. The free tier allows five generations per day with watermarked output. Suno has also launched licensing options for commercial use, addressing the copyright questions raised by the recent federal court ruling on AI-generated music.

Related Tools

More News

March 13, 2026Product Update

NVIDIA Launches NIM Microservices for Enterprise AI Deployment

NVIDIA has launched NIM (NVIDIA Inference Microservices), a suite of containerized AI model serving packages that reduce enterprise AI deployment time from weeks to hours with optimized inference performance.

March 13, 2026Industry

AI Agents Market Reaches $15 Billion as Enterprise Adoption Surges

The global market for AI agents — autonomous AI systems that can plan, execute, and iterate on complex multi-step tasks — has reached $15 billion in annual spending, according to a new report from McKinsey. This represents a 200% increase from 2025, driven by enterprise adoption of agentic AI for customer service, software development, data analysis, and business process automation. The report identifies three tiers of AI agent adoption: basic agents that handle single-step tasks like email responses and appointment scheduling (adopted by 65% of enterprises), intermediate agents that manage multi-step workflows like report generation and data pipeline management (35% adoption), and advanced agents that autonomously execute complex processes like code deployment and financial analysis (8% adoption). The largest spending categories are customer service agents ($4.2B), coding agents ($3.8B), and data analysis agents ($2.5B). McKinsey projects the market will reach $45 billion by 2028 as agent reliability improves and enterprises become more comfortable delegating complex decisions to AI. Key enabling platforms include OpenAI's Agents SDK, Anthropic's Claude computer-use capabilities, and LangChain's agent framework. The report warns that agent governance and monitoring remain underdeveloped, with most enterprises lacking adequate oversight mechanisms for autonomous AI actions.

March 12, 2026Product Update

Microsoft 365 Copilot Gets Custom AI Agents and Actions

Microsoft has updated 365 Copilot with custom AI agent creation, allowing organizations to build agents that automate complex workflows spanning Word, Excel, Outlook, Teams, and SharePoint without code.

March 12, 2026Analysis

GPT-5.2's Agentic Mode Transforms Enterprise Workflows

OpenAI's GPT-5.2 introduced a fundamentally new approach to agentic task completion that is already transforming enterprise workflows. The model can now maintain coherent plans across 50+ sequential tool calls with parallel execution, reducing latency in complex automation pipelines by up to 60%. Early enterprise adopters report that GPT-5.2's agentic mode handles tasks like multi-step data analysis, cross-platform content publishing, and automated code review workflows that previously required custom orchestration code. The key innovation is what OpenAI calls deliberative alignment — a training approach that lets the model dynamically allocate compute to harder sub-tasks while breezing through simpler ones. This means a single agentic session can handle both quick lookups and deep reasoning without manual configuration. Several Fortune 500 companies have reported 40-70% time savings on analyst workflows by deploying GPT-5.2 agents through the API. However, reliability remains a concern — OpenAI acknowledges a 3-5% failure rate on chains exceeding 30 steps, and enterprise deployments require human-in-the-loop checkpoints for critical decisions.