# Desktop & Workstation Hardware Guide A detailed guide crossing high-performance AI models with hardware availability and pricing (prices in BRL). > **Important Note:** Proprietary models like **Claude Opus 4.5**, **GPT-5.2**, and **Gemini 3 Pro** represent the cutting edge of Cloud AI. For **Local AI**, we focus on efficiently running models that approximate this power using **MoE (Mixture of Experts)** technology, specifically **GLM-4.7**, **DeepSeek**, and **OSS120B-GPT**. ## AI Model Scaling for Local Hardware Mapping mentioned top-tier models to their local "runnable" equivalents. | Citation Model | Real Status | Local Equivalent (GPU) | Size (Params) | | :--- | :--- | :--- | :--- | | **Claude Opus 4.5** | API Only | **GLM-4.7** (MoE) | ~9B to 16B (Highly Efficient) | | **GPT-5.2** | API Only | **DeepSeek-V3** (MoE) | ~236B (Single RTX High RAM) | | **Gemini 3 Pro** | API Only | **OSS120B-GPT** (MoE) | ~120B (Single RTX) | | **GPT-4o** | API Only | DeepSeek-V2-Lite | ~16B (efficient) | ### Recommended Models (GGUF Links & File Sizes) **GLM-4-9B Chat (9B parameters):** - **Q4_K_M:** [bartowski/glm-4-9b-chat-GGUF](https://huggingface.co/bartowski/glm-4-9b-chat-GGUF) - 5.7GB file, needs 8GB VRAM - **Q6_K:** Same link - 8.26GB file, needs 10GB VRAM - **Q8_0:** Same link - 9.99GB file, needs 12GB VRAM **DeepSeek-V3 (671B total, 37B active MoE):** - **Q2_K:** [bartowski/deepseek-ai_DeepSeek-V3-GGUF](https://huggingface.co/bartowski/deepseek-ai_DeepSeek-V3-GGUF) - ~280GB file, needs 32GB VRAM - **Q4_K_M:** Same link - 409GB file, needs 48GB VRAM (2x RTX 3090) - **Q6_K:** Same link - 551GB file, needs 64GB VRAM (impossible on consumer GPUs) **Mistral Large 2407 (123B parameters):** - **Q2_K:** [bartowski/Mistral-Large-Instruct-2407-GGUF](https://huggingface.co/bartowski/Mistral-Large-Instruct-2407-GGUF) - ~50GB file, needs 24GB VRAM - **Q4_K_M:** Same link - ~75GB file, needs 32GB VRAM (2x RTX 3060) - **Q6_K:** Same link - ~95GB file, needs 48GB VRAM (2x RTX 3090) ## Compatibility Matrix (GPU x Model x Quantization) Defining how well each GPU runs the listed models, focusing on "Best Performance". **Quantization Legend:** * **Q4_K_M:** The "Gold Standard" for home use. Good balance of speed and intelligence. * **Q5_K_M / Q6_K:** High quality, slower, requires more VRAM. * **Q8_0:** Near perfection (FP16 equivalent), but very heavy. * **Offload CPU:** Model fits in system RAM, not VRAM (slow). | GPU | VRAM | System RAM | **GLM-4-9B**
*(Q4_K_M: 5.7GB)* | **DeepSeek-V3**
*(Q2_K: 280GB)* | **Mistral Large**
*(Q4_K_M: 75GB)* | | :--- | :--- | :--- | :--- | :--- | :--- | | **RTX 3050** | 8 GB | 16 GB | **Q8_0** (Perfect) | CPU Offload (Very Slow) | Impossible | | **RTX 3060** | 12 GB | 32 GB | **Q8_0** (Instant) | CPU Offload (Slow) | CPU Offload (Slow) | | **RTX 4060 Ti** | 16 GB | 32 GB | **Q8_0** (Overkill) | CPU Offload (Slow) | CPU Offload (Slow) | | **RTX 3090** | 24 GB | 64 GB | **Q8_0** (Dual Models) | CPU Offload (Usable) | **Q2_K** (Fits!) | | **2x RTX 3090** | 48 GB | 128 GB | N/A | **Q4_K_M** (Good) | **Q4_K_M** (Perfect) | | **4x RTX 3090** | 96 GB | 256 GB | N/A | **Q6_K** (Excellent) | **Q6_K** (Excellent) | ## Market Pricing & Minimum Specs *Approximate prices in BRL (R$).* | GPU | Used Price (OLX/ML) | New Price (ML) | Min System RAM | RAM Cost (Approx.) | Min CPU | **GLM-4-9B** | **DeepSeek-V3** | **Mistral Large** | | :--- | :--- | :--- | :--- | :--- | :--- | :--- | :--- | :--- | | **RTX 3050 (8GB)** | R$ 750 - R$ 950 | R$ 1.400 - R$ 1.600 | 16 GB (DDR4) | R$ 180 (Used) | i5-10400 / Ryzen 3600 | ✅ **Q8_0** (10GB) | ❌ Too small | ❌ Too small | | **RTX 3060 (12GB)** | R$ 1.100 - R$ 1.400 | R$ 1.800 - R$ 2.400 | 32 GB (DDR4) | R$ 350 (Used Kit) | Ryzen 5 5600X / i5-12400F | ✅ **Q8_0** (10GB) | ⚠️ CPU offload only | ⚠️ CPU offload only | | **RTX 4060 Ti (16GB)** | R$ 2.000 - R$ 2.300 | R$ 2.800 - R$ 3.200 | 32 GB (DDR5) | R$ 450 (Used Kit) | Ryzen 7 5700X3D / i5-13400F | ✅ **Q8_0** (10GB) | ⚠️ CPU offload only | ⚠️ CPU offload only | | **RTX 3070 (8GB)** | R$ 1.200 - R$ 1.500 | N/A | 32 GB (DDR4) | R$ 350 (Used Kit) | Ryzen 7 5800X | ✅ **Q6_K** (8GB) | ❌ Too small | ❌ Too small | | **RTX 3090 (24GB)** | R$ 3.500 - R$ 4.500 | R$ 10.000+ (Rare) | 64 GB (DDR4/5) | R$ 700 (Kit 32x2) | Ryzen 9 5900X / i7-12700K | ✅ **Q8_0** (10GB) | ⚠️ CPU offload (280GB) | ✅ **Q2_K** (24GB) | | **RTX 4090 (24GB)** | R$ 9.000 - R$ 11.000 | R$ 12.000 - R$ 15.000 | 64 GB (DDR5) | R$ 900 (Kit 32x2) | Ryzen 9 7950X / i9-13900K | ✅ **Q8_0** (10GB) | ⚠️ CPU offload (280GB) | ✅ **Q2_K** (24GB) | | **RTX 4080 Super (16GB)** | R$ 6.000 - R$ 7.000 | R$ 7.500 - R$ 9.000 | 64 GB (DDR5) | R$ 900 (Kit 32x2) | Ryzen 9 7900X | ✅ **Q8_0** (10GB) | ⚠️ CPU offload only | ⚠️ CPU offload only | | **2x RTX 3090 (48GB)** | R$ 7.000 - R$ 9.000 | N/A | 128 GB (DDR4/5) | R$ 1.400 (Kit 64x2) | Ryzen 9 5950X / i9-12900K | ✅ Multiple models | ✅ **Q4_K_M** (409GB) | ✅ **Q4_K_M** (75GB) | ## Technical Analysis & DeepSeek Support To achieve performance similar to **GLM 4** or **DeepSeek** locally, consider these factors: ### 1. GGUF File Sizes vs VRAM Requirements **GLM-4-9B (9 billion parameters):** - Q2_K: 3.99GB file → needs 6GB VRAM - Q4_K_M: 5.7GB file → needs 8GB VRAM - Q6_K: 8.26GB file → needs 10GB VRAM - Q8_0: 9.99GB file → needs 12GB VRAM **DeepSeek-V3 (671B total, 37B active MoE):** - Q2_K: ~280GB file → needs 32GB VRAM (impossible on single consumer GPU) - Q4_K_M: 409GB file → needs 48GB VRAM (2x RTX 3090 minimum) - Q6_K: 551GB file → needs 64GB VRAM (3x RTX 3090 or data center) **Mistral Large 2407 (123B parameters):** - Q2_K: ~50GB file → needs 24GB VRAM (RTX 3090/4090) - Q4_K_M: ~75GB file → needs 32GB VRAM (2x RTX 3060 or better) - Q6_K: ~95GB file → needs 48GB VRAM (2x RTX 3090) ### 2. Reality Check: DeepSeek-V3 Needs Serious Hardware **DeepSeek-V3** is a 671B parameter MoE model. Even with only 37B active parameters per token, the GGUF files are massive: - **Minimum viable:** Q2_K at 280GB requires 32GB VRAM (impossible on consumer GPUs) - **Recommended:** Q4_K_M at 409GB requires 48GB VRAM (2x RTX 3090 = R$ 8.000+) - **For most users:** Stick to **GLM-4-9B** or **Mistral Large** for local AI **GLM-4-9B** is the sweet spot: - Q8_0 (9.99GB) runs perfectly on RTX 3060 12GB - Near-identical performance to much larger models - Costs under R$ 2.000 total system cost ### 3. DeepSeek & MoE (Mixture of Experts) in General Bots **DeepSeek-V2/V3** uses an architecture called **MoE (Mixture of Experts)**. This is highly efficient but requires specific support. **General Bots Offline Component (llama.cpp):** The General Bots local LLM component is built on `llama.cpp`, which fully supports MoE models like DeepSeek and Mixtral efficiently. * **MoE Efficiency:** Only a fraction of parameters are active for each token generation. DeepSeek-V2 might have 236B parameters total, but only uses ~21B per token. * **Running DeepSeek:** * On an **RTX 3060**, you can run **DeepSeek-V2-Lite (16B)** exceptionally well. * It offers performance rivaling much larger dense models. * **Configuration:** Simply select the model in your `local-llm` setup. The internal `llama.cpp` engine handles the MoE routing automatically. No special Flags (`-moe`) are strictly required in recent versions, but ensuring you have the latest `botserver` update guarantees the `llama.cpp` binary supports these architectures. ### 4. Recommended Configurations by Budget **Entry Level (R$ 2.500 total):** - **GPU:** RTX 3060 12GB (Used ~R$ 1.300) - **RAM:** 32 GB DDR4 (~R$ 350) - **Runs:** GLM-4-9B Q8_0 (perfect), Mistral-7B, Llama-3-8B - **File sizes:** 10GB models fit comfortably **Prosumer (R$ 5.000 total):** - **GPU:** RTX 3090 24GB (Used ~R$ 4.000) - **RAM:** 64 GB DDR4 (~R$ 700) - **Runs:** GLM-4-9B + Mistral Large Q2_K (24GB), multiple models simultaneously - **File sizes:** Up to 50GB models **Enterprise (R$ 10.000+):** - **GPU:** 2x RTX 3090 (48GB total VRAM) - **RAM:** 128 GB DDR4/5 (~R$ 1.400) - **Runs:** DeepSeek-V3 Q4_K_M (409GB), Mistral Large Q4_K_M (75GB) - **File sizes:** 400GB+ models with excellent performance