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xbaicai

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[untitled]

1 points·by xbaicai·14 dni temu·0 comments

[untitled]

1 points·by xbaicai·19 dni temu·0 comments

Type the scene. Seedance 2.0 Mini films it

seedance2mini.ai
2 points·by xbaicai·w zeszłym miesiącu·1 comments

ReAPI – one API for 200 image, video, audio and chat models

reapi.ai
2 points·by xbaicai·w zeszłym miesiącu·0 comments

Zorq AI – Multimodal workspace for video, image, and voice generation

zorq-ai.io
1 points·by xbaicai·2 miesiące temu·0 comments

GPT Image 2 – native multimodal image generator

gptimg.co
2 points·by xbaicai·3 miesiące temu·0 comments

[untitled]

1 points·by xbaicai·4 miesiące temu·0 comments

Nano Banana 2 – Google's Free 4K AI Image Generator

nanobananaflash.io
2 points·by xbaicai·4 miesiące temu·1 comments

Seedream 5.0 – ByteDance's AI image generator with web search and editing

seedance2.so
1 points·by xbaicai·5 miesięcy temu·1 comments

Seedream 5.0: ByteDance's AI image generator with 4K output

loraai.io
1 points·by xbaicai·5 miesięcy temu·1 comments

Seedance 2.0 – Multimodal AI Video Generation with Image/Video/Audio References

seedance2.so
1 points·by xbaicai·5 miesięcy temu·1 comments

Kling V3 Video Generator

loraai.io
2 points·by xbaicai·5 miesięcy temu·0 comments

I Built Videos with Soro2

soro2.net
1 points·by xbaicai·6 miesięcy temu·1 comments

Sora2

loraai.io
1 points·by xbaicai·6 miesięcy temu·1 comments

Z-Image-Turbo – Fast text-to-image with native CJK text rendering

zimageturbo.com
1 points·by xbaicai·7 miesięcy temu·1 comments

We Built GPT Image 1.5 Because AI Image Generators Still Suck

loraai.io
1 points·by xbaicai·7 miesięcy temu·2 comments

Nano Banana Flash – Google's Gemini 3 Flash Image Model

nanobananaflash.io
1 points·by xbaicai·7 miesięcy temu·2 comments

Wan 2.6 – Open-source AI video generator with native audio sync

wan26.io
1 points·by xbaicai·7 miesięcy temu·1 comments

Nano Banana Pro (4K) at $0.04/image

seedreamimage.com
1 points·by xbaicai·8 miesięcy temu·1 comments

Nano Banana Pro

loraai.io
2 points·by xbaicai·8 miesięcy temu·1 comments

comments

xbaicai
·14 dni temu·discuss
[flagged]
xbaicai
·19 dni temu·discuss
Seedance 2.0 Mini is the light, low-cost tier of the Seedance 2.0 family — text and images in, coherent cinematic clips out. Up to 1080p, at a fraction of Seedance 2.0 pricing.
xbaicai
·w zeszłym miesiącu·discuss
Seedance 2.0 Mini is the light, low-cost tier of the Seedance 2.0 family — text and images in, coherent cinematic clips out. Up to 1080p, at a fraction of Seedance 2.0 pricing.
xbaicai
·w zeszłym miesiącu·discuss
[flagged]
xbaicai
·2 miesiące temu·discuss
[dead]
xbaicai
·3 miesiące temu·discuss
[dead]
xbaicai
·4 miesiące temu·discuss
Mureka is an AI-powered music generation platform that lets you create complete, original songs from text prompts or lyrics. Whether you're a content creator, game developer, or just exploring music creation, you can generate professional-quality tracks without any musical training.

Key features: - Generate songs from text descriptions or lyrics - Multiple genre and style options - Royalty-free music for commercial use - Edit and refine generated tracks

Would love to hear the HN community's thoughts on AI music generation!
xbaicai
·4 miesiące temu·discuss
Built on Gemini 3 Flash. Solves major AI image generation problems: accurate in-image text rendering, character consistency across generations, and fast iteration (~10s per 4K image). Free access. Supports natural language editing and integrates with video generation pipelines. Competes directly with Midjourney/DALL-E 3 but with better visual reasoning and no subscription required.
xbaicai
·5 miesięcy temu·discuss
ByteDance's latest image generation model featuring real-time web search integration, precise editing controls, and 4K output. Part of their Seed platform alongside Seedance 2.0 video generator.
xbaicai
·5 miesięcy temu·discuss
Generates up to 15 images in batch with 2K/4K resolution. Claims sub-2-second generation time with consistent quality across multiple aspect ratios.
xbaicai
·5 miesięcy temu·discuss
Been testing out these models for the past week and honestly pretty impressed with the speed-to-quality ratio. The image generation is solid, though I did notice some inconsistencies with complex prompts. For anyone looking for more resources on generative AI workflows, I found this site helpful: https://seedance2.so - has some decent tutorials and community discussions. Overall, the API integration was smoother than expected. Documentation could use more examples for edge cases, but the core functionality delivers. Worth checking out if you're building something that needs fast inference times.
xbaicai
·5 miesięcy temu·discuss
Direct AI video generation like a filmmaker. Reference any image, video, or audio to generate consistent, production-ready clips. Free to start.
xbaicai
·6 miesięcy temu·discuss
I Built Videos with Soro2 So You Don't Have to Wait on Another Waitlist Look, I'm tired of waitlists. We all are. OpenAI drops Sora, everyone gets hyped, then... crickets. You're stuck waiting while watching demo videos on Twitter from the 47 people who actually got access. So I tried Soro2 instead. No waitlist. Just works. Here's what I found. The Character Thing Actually Works This was the first thing that surprised me. You know how AI video usually can't keep a character consistent? Like, frame 1 shows a woman with brown hair, frame 50 she's suddenly blonde? Soro2 lets you upload a reference image and tag it with @username. Then you can reuse that character across different videos. I tested this with a cartoon mascot I made—generated 10 different videos, and the character actually looked the same in all of them. Not perfect, but way better than I expected. Physics That Don't Look Broken Water actually flows like water. Fabric moves like fabric. I made a test video of someone walking through a puddle, and the splash looked... right? Most AI video tools give you this uncanny valley motion where things sort of float or glitch. Soro2's physics engine seems to understand weight and momentum. Hair bounces naturally. Objects fall with proper gravity. It's the small stuff that makes it not look immediately "AI-generated." They Baked in Audio Every video comes with sound effects already synced. Footsteps line up with walking. If you generate a scene with rain, you get rain sounds. Is it perfect? No. But it saves you from having to hunt down stock audio or do Foley work yourself. For quick prototypes or social media content, this is huge. Multiple Models to Pick From They're not just running one model. You get:

Sora 2 (standard and Pro) Veo 3.1 & 3.1 Fast Nanobanana & Nanobanana Pro Seedream 4.5

I honestly don't know the technical differences between all of these, but having options means you can experiment with different styles without switching platforms. How It Actually Works

Type what you want in plain English. "A dog running through autumn leaves" or get detailed with camera angles and lighting. Optionally upload reference images for characters or style. Pick your model and duration (10-25 seconds depending on which model). Hit generate. Cloud GPUs do the work. Download 1080p video with audio included.

No local GPU needed. No Docker containers. No Python environments. Just a web interface. The Workflow is Fast I'm used to AI video tools taking 10-20 minutes per generation. Soro2 was noticeably faster—most of my tests came back in under 5 minutes. Not instant, but fast enough that I could iterate on ideas without losing momentum. What Could Be Better Prompt engineering still matters. Vague prompts give you vague results. You need to describe camera movements, lighting, time of day, specific actions. The more detail, the better. 25 seconds is still short. Yeah, it's longer than most tools, but you're not making a short film here. Think social media clips, not YouTube videos. No geographic blocks, but... they claim worldwide access with no VPN needed. I'm in the US so I can't verify this, but several testimonials mention it working in Germany and other regions where official tools are blocked. Use Cases I've Tested

Concept visualization for client pitches (way cheaper than hiring a videographer for mockups) Social media content (Instagram Reels, TikTok) Storyboarding (generate rough scenes before committing to real production) Product demos (for products that don't exist yet)

The Elephant in the Room Is this using OpenAI's actual Sora model? The branding says "Sora 2" but I have no idea if this is licensed, reverse-engineered, or just marketing. The output quality is good, but I can't verify the underlying tech. That said—it works, it's accessible, and it's not asking me to join a waitlist or verify my use case. For prototyping and experimentation, that's enough for me right now.
xbaicai
·6 miesięcy temu·discuss
Discovering Sora 2: A Game Changer in Video Creation Hey folks! I want to share something truly exciting that’s making waves in the video creation space—Sora 2 from OpenAI. Released in September 2025, this innovative tool is designed to help anyone create stunning videos without the usual hassle. Let’s take a closer look at what makes Sora 2 stand out. What is Sora 2? Sora 2 is a versatile video generator that allows you to create videos from text prompts or images. It’s not just about making videos; it’s about making them better and faster. Here are some key features:

Synchronized Audio: One of the coolest things about Sora 2 is its ability to generate audio that matches the video perfectly. This means you get seamless dialogue, sound effects, and background music without needing extra editing.

Video Length Options: You can create videos that are up to 25 seconds long with the Pro version. This is great for storytelling or showcasing products effectively.

Variety of Styles: Whether you want an anime look, a cinematic feel, or something more artistic, Sora 2 lets you choose from various styles, and switching between them is easy.

How to Use Sora 2 Getting started with Sora 2 is simple. Here’s a quick rundown of the steps:

Select Your Mode: Choose between text-to-video or image-to-video options.

Write Your Scene: Describe what you want in detail. The more specifics you provide, the better the output.

Adjust Settings: Decide on the video length, aspect ratio (16:9 or 9:16), and style.

Generate Your Video: Click generate and watch as Sora 2 creates your video in just a couple of minutes.

Unique Features Worth Noting One standout feature is the Characters option. You can record yourself or someone else, and Sora 2 will integrate that person’s likeness and voice into the generated videos. This adds a personal touch that’s hard to achieve with other tools. For those using the Pro version, there’s a Storyboard mode that allows you to plan and arrange multiple scenes, making it easier to create complex narratives. Why It Matters If you’re into making videos—whether for social media, marketing, or personal projects—Sora 2 can save you a lot of time and effort. It’s designed to help you focus on creativity rather than getting bogged down in technical details. The pricing is also quite reasonable. You can create 10-second videos for just 2 credits, and 15-second videos for 3 credits. The Pro version offers even more features for a few extra credits. Final Thoughts Sora 2 is a fantastic tool for anyone looking to elevate their video creation game. With its quick generation times and high-quality outputs, it’s perfect for creators who want to produce engaging content without the usual headaches. Give Sora 2 a shot and see how it can transform your video projects. I’d love to hear your thoughts or experiences with it in the comments! Happy creating!
xbaicai
·7 miesięcy temu·discuss
I've been experimenting with Z-Image-Turbo lately and wanted to share some findings.

What it is: A 6B-parameter diffusion model that runs surprisingly fast. On my RTX 4090, I'm getting results in under a second with 8-9 sampling steps. The VRAM footprint is reasonable enough to run locally without enterprise hardware.

The interesting part: Text rendering actually works. If you've tried generating images with text using other models, you know the pain – garbled letters, missing characters, nonsensical glyphs. This one handles both English and Chinese text with decent accuracy. Not perfect, but noticeably better than what I've seen elsewhere.

Technical bits:

Single-stream DiT architecture Works with ComfyUI (there's a workflow floating around) LoRA training is supported The model weights are on Hugging Face under Tongyi-MAI What I'm using it for: Mostly quick mockups and thumbnail generation where readable text matters. The speed makes iteration painless.

Curious if anyone else has been playing with this. Would love to hear about edge cases or interesting use cases you've found.
xbaicai
·7 miesięcy temu·discuss
Look, we've all been there. You type a detailed prompt into an AI image generator, hit generate, and get back something that's... technically correct but completely misses the point. After burning through 20 credits and rephrasing your prompt for the tenth time, you give up and just pick whatever's closest.

That's the exact frustration that led us to build GPT Image 1.5.

The Real Problem Nobody's Talking About Most image generators treat your prompts like a bag of keywords. They see "modern office space with plants" and spit out generic stock photo vibes. But that's not how humans communicate. When a designer says they want something "modern," they're bringing context—maybe they mean Scandinavian minimalism, or maybe they're thinking sleek tech startup aesthetic.

We tackled this by building on GPT-5's language architecture. Not because it's trendy, but because it actually gets nuance. It understands the difference between "cozy coffee shop" and "hipster coffee shop" without you having to spell out every single detail.

Two Modes That Actually Make Sense Text-to-Image: Pretty straightforward. Describe what you want, get an image. Great for when you're starting from scratch or need to visualize an idea quickly.

Image Editing: This is where it gets interesting. Upload an image and tell the system what to change using plain English. "Make the background a beach" or "replace the laptop with a tablet." The fidelity controls let you decide how much of the original to keep—super useful when you need surgical edits versus complete overhauls.

Quality Tiers That Don't Feel Like a Scam We have three quality levels, and here's the honest truth about each:

Low: Fast and dirty. Use this when you're brainstorming or need to test five different concepts in two minutes.

Medium: The sweet spot for most work. Good enough for client presentations and internal reviews.

High: When it absolutely has to look polished. Final deliverables, print materials, stuff that matters.

No hidden "premium ultra max" tier. No artificial limitations to push you toward expensive plans. Just pick what fits your workflow.

Aspect Ratios Without the Headache Three options: square (1:1), portrait (2:3), and landscape (3:2). That's it. We're not trying to offer 47 different sizes because honestly, these three cover like 95% of real-world use cases. Instagram posts, blog headers, presentation slides—done.

Built for Teams Who Ship We're not positioning this as a toy for hobbyists. GPT Image 1.5 is for:

Design teams who need to mock up interfaces fast Marketing people cranking out campaign assets on deadline Product managers who need to show stakeholders what they're thinking Anyone who's tired of spending half their day wrestling with AI tools Commercial Rights Included Yeah, you can actually use these images in your products. Seems obvious, but you'd be surprised how many tools have weird licensing restrictions buried in the fine print.
xbaicai
·7 miesięcy temu·discuss
Nano Banana Flash – Google's Gemini 3 Flash Image Model for AI Image Generation and Editing

I've been experimenting with Google's Gemini 3 Flash Image (internally codenamed "nano-banana"), and I wanted to share what makes this model architecturally interesting compared to other image generation approaches. What Makes It Different Most image generation models follow a diffusion-based architecture (Stable Diffusion, DALL-E, Midjourney). Nano Banana takes a different approach – it's built on Google's Gemini multimodal foundation, meaning it shares the same underlying transformer architecture that handles text, making it natively conversational. Key technical characteristics:

Prompt-driven editing: Unlike traditional inpainting that requires masks, you can describe edits conversationally ("make the sky darker", "change the shirt to blue") Multi-image composition: Accepts up to 3,000 images per prompt for blending and composition Character consistency: Maintains visual consistency across multiple generated images – useful for storyboarding or product variations SynthID watermarking: Invisible digital watermark embedded at generation time (not post-processing)

Use Cases Where It Excels From my testing, it's particularly strong at:

Product photography variations: Generate multiple angles or contexts for the same product while maintaining visual consistency Iterative design: The conversational interface means you can refine without starting over Multi-image blending: Combining reference images with text prompts for precise control

Technical Limitations Worth noting:

Maximum 7MB per file for inline data Output quality varies with prompt specificity (like all LLMs, prompt engineering matters) The conversational approach means you need to think about context window management for long editing sessions

The model is accessible via standard REST APIs, making integration straightforward if you're already using Google Cloud infrastructure. Why This Matters The interesting shift here isn't just another image model – it's the convergence of language and vision models into a unified architecture. The same transformer that understands your code or writes your emails can now edit your images. This has implications for:

Tooling: IDEs and development environments can integrate image generation as naturally as code completion Workflows: Designers can describe changes in natural language rather than learning complex UI tools Accessibility: Lower barrier to entry for image manipulation

Open Questions I'm curious what the HN community thinks about:

How do you handle version control for conversationally-edited images? What's the right abstraction for programmatic access – should we treat it like a stateful session or stateless function calls? For production use, how do you validate consistency across generated image sets?

The codebase is closed-source (it's Google), but the API is well-documented and the model is available for experimentation through AI Studio. Would love to hear if anyone else has been working with this or has thoughts on the architectural approach.

Technical specs for reference:

Model: Gemini 3 Flash Image Output: 1290 tokens per image Max images per prompt: 3,000 Max file size: 7MB (inline/console) Watermarking: SynthID (invisible, embedded)
xbaicai
·7 miesięcy temu·discuss
The Problem Current AI video generators struggle with audio integration. Most tools generate silent videos, forcing creators to manually add and sync audio in post-production. This breaks the creative flow and adds hours of work. Even when audio is supported, lip-sync is often off, creating an uncanny valley effect.

What We Built Wan 2.6 is a multimodal AI platform that generates videos at 1080p resolution (24fps) with audio baked in from the start. Key features:

Text-to-video: Describe what you want, get a video with synchronized audio Image-to-video: Animate static images with motion and sound Native audio sync: Audio isn't added afterwards—it's generated as part of the video creation process Precise lip-sync: Character mouth movements match the audio naturally AI image generation: Create images when you need them for video inputs How It Works We're using a breakthrough approach where audio and visual generation happen in a unified pipeline rather than as separate steps. This allows the model to understand the relationship between sound and motion from the ground up, resulting in more natural synchronization.

The system runs at 1080p (full HD) at 24fps, which hits the sweet spot between quality and generation speed. We've optimized for realistic motion and coherent multi-shot storytelling—something earlier models struggled with.

Why Open Source? We believe generative AI works best when the community can inspect, improve, and build upon it. Making Wan 2.6 open-source means:

Transparency in how the model works Community contributions to improve quality Easier integration into creative workflows No vendor lock-in for creators Use Cases We've Seen Early users are creating:

Marketing videos from product descriptions Animated social media content Concept visualizations for pitches Educational content with narration Character animations with dialogue Technical Details The model is built on a multimodal architecture that processes text, image, and audio signals simultaneously. We're generating at 1080p resolution with 24fps frame rate, which provides cinematic quality while keeping generation times reasonable.

Try It Out The platform is live at https://wan26.io. We're offering free access to let people experiment and give us feedback. We'd love to hear what you think—especially if you run into edge cases or have ideas for improvements.

What's Next We're working on:

Longer video generation (currently optimized for shorter clips) More control over camera angles and scene composition Better handling of complex multi-character scenes API access for developers We'd love your feedback! What would you use this for? What features are missing? Any creative use cases we haven't thought of?

Questions we expect:

How does this compare to Runway/Pika/Sora? Our main differentiator is native audio sync. Most competitors generate silent videos or add audio as a post-process. We also prioritize being open-source.

What are the limitations? Like all AI video generators, we occasionally produce artifacts or inconsistent motion. Longer videos are harder to keep coherent. We're actively working on these.

Can I use this commercially? Yes, the open-source nature means you can use generated content in commercial projects (check our license for specifics).
xbaicai
·8 miesięcy temu·discuss
Current market rates for high-end AI image generation:

Replicate (Flux Pro): $0.14/image Fal.ai (Flux Pro): $0.14/image Midjourney: $0.28/image (on basic plan) Us (Gemini 3 Pro): $0.04/image for 1K-2K, $0.12 for 4K That's 71% cheaper than the alternatives, for what we believe is technically superior output.

Gemini 3 Pro Image (released Nov 20, 2025) solves problems that have plagued AI image generation:

1. Text Actually Works

Generate logos with crisp, legible typography Create infographics with readable labels Render multi-language text correctly No more garbled characters or broken fonts 2. Google Search Grounding

Pulls real-time data for factual accuracy Generate weather maps with actual conditions Create charts with verified information Reduces hallucinations significantly 3. Native 4K Resolution

True 4096px output, not upscaled Print-quality results Professional texture detail Supports 1K, 2K, 4K natively 4. Multi-Object Consistency

Maintain consistency across 5+ people Blend 14+ objects in single composition Professional scene complexity Coherent group portraits 5. Studio-Level Physics Control

复制 Prompt: "Product shot, 85mm lens, f/1.4, golden hour lighting, color grade: warm cinematic, focus: foreground sharp" The model actually understands and applies these parameters correctly.
xbaicai
·8 miesięcy temu·discuss
Nano Banana Pro: Next-Gen AI Image Editor,perfect character consistency, and 8x faster processing. Nano Banana Pro delivers professional-grade results with revolutionary multi-step generation workflow.