{"passport":{"unfragile":{"@version":"1.0","version":"2026-05","artifact":{"id":"reddit-1sexdhk","slug":"you-can-now-fine-tune-gemma-4-locally-8gb-vram-bug","name":"You can now fine-tune Gemma 4 locally 8GB VRAM + Bug Fixes","type":"finetune","url":"https://i.redd.it/dbzd9qey1stg1.png","page_url":"https://unfragile.ai/you-can-now-fine-tune-gemma-4-locally-8gb-vram-bug","categories":["model-training"],"tags":["localllama"],"pricing":{"model":"unknown","free":false,"starting_price":null},"status":"active","verified":false},"capabilities":[{"id":"reddit-1sexdhk__cap_0","uri":"capability://memory.knowledge.local.model.fine.tuning","name":"local model fine-tuning","description":"This capability allows users to fine-tune the Gemma 4 model locally on machines with a minimum of 8GB VRAM. It utilizes a modified training loop that optimizes GPU memory usage while enabling gradient accumulation, allowing for effective training without the need for extensive cloud resources. This local fine-tuning approach is distinct because it provides developers with full control over the training data and hyperparameters, ensuring privacy and customization.","intents":["How can I fine-tune the Gemma 4 model with my own dataset?","What steps are needed to adjust the model's parameters locally?","Can I optimize the model for specific tasks without cloud dependency?"],"best_for":["data scientists working on personalized AI solutions"],"limitations":["Requires significant local computational resources; performance may vary based on hardware specifications"],"requires":["NVIDIA GPU with at least 8GB VRAM","Python 3.8+","PyTorch 1.10+"],"input_types":["text","structured data"],"output_types":["fine-tuned model weights","evaluation metrics"],"categories":["memory-knowledge","machine-learning"],"confidence":0.5,"matches":0,"success_rate":0},{"id":"reddit-1sexdhk__cap_1","uri":"capability://automation.workflow.bug.fix.integration","name":"bug fix integration","description":"This capability involves integrating recent bug fixes into the Gemma 4 model, ensuring that users benefit from the latest improvements without needing to manually update their installations. The integration process uses a version control system to track changes and automatically apply patches, making it seamless for users to maintain an up-to-date model.","intents":["How do I ensure my Gemma 4 model is up to date with the latest fixes?","What is the process for integrating bug fixes into my local model?","Can I automate the update process for my AI model?"],"best_for":["developers maintaining AI models in production"],"limitations":["Requires familiarity with version control systems; may not cover all edge cases in bug fixes"],"requires":["Git installed","Python 3.8+"],"input_types":["code","model configuration"],"output_types":["updated model","change logs"],"categories":["automation-workflow","software-maintenance"],"confidence":0.5,"matches":0,"success_rate":0}],"trust":{"score":47,"verified":false,"data_access_risk":"low","permissions":["NVIDIA GPU with at least 8GB VRAM","Python 3.8+","PyTorch 1.10+","Git installed"],"failure_modes":["Requires significant local computational resources; performance may vary based on hardware specifications","Requires familiarity with version control systems; may not cover all edge cases in bug fixes","builder identity is not verified yet","no observed match outcomes yet"],"rank_breakdown":{"adoption":0.9,"quality":0.14,"ecosystem":0.18,"match_graph":0.25,"freshness":0.75,"weights":{"adoption":0.35,"quality":0.2,"ecosystem":0.1,"match_graph":0.3,"freshness":0.05}},"observed_outcomes":{"matches":0,"success_rate":0,"avg_confidence":0,"top_intents":[],"last_matched_at":null},"maintenance":{"status":"active","updated_at":"2026-05-24T12:16:25.061Z","last_scraped_at":"2026-05-04T07:50:54.765Z","last_commit":null},"community":{"stars":null,"forks":null,"weekly_downloads":null,"model_downloads":null,"model_likes":null}},"distribution":{"claim_url":"https://unfragile.ai/submit?claim=you-can-now-fine-tune-gemma-4-locally-8gb-vram-bug","compare_url":"https://unfragile.ai/compare?artifact=you-can-now-fine-tune-gemma-4-locally-8gb-vram-bug"}},"signature":"sPZ4BC5TOvmJQuTMMgW/AES+N8rgD6n9O/FMHtUbWEvZLb4hIryOg/O+wWkgD1LOjUXpwX0kB8SadavuuCoTDA==","signedAt":"2026-06-22T11:26:29.685Z","signedBy":"unfragile.ai","version":1},"_links":{"self":"https://unfragile.ai/api/v1/passport/you-can-now-fine-tune-gemma-4-locally-8gb-vram-bug","artifact":"https://unfragile.ai/you-can-now-fine-tune-gemma-4-locally-8gb-vram-bug","verify":"https://unfragile.ai/api/v1/verify?slug=you-can-now-fine-tune-gemma-4-locally-8gb-vram-bug","publicKey":"https://unfragile.ai/api/v1/trust-passport-public-key","spec":"https://unfragile.ai/trust","schema":"https://unfragile.ai/schema.json","docs":"https://unfragile.ai/docs"}}