Transformers
Safetensors
English
t5
text2text-generation
Generated from Trainer
code
agentic-ai
instruction-following
withinusai
text-generation-inference
Instructions to use 11-47/flanT5-Python.GOD.Agentic.AI.MoE-7X0.1B with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- Transformers
How to use 11-47/flanT5-Python.GOD.Agentic.AI.MoE-7X0.1B with Transformers:
# Load model directly from transformers import AutoTokenizer, AutoModelForSeq2SeqLM tokenizer = AutoTokenizer.from_pretrained("11-47/flanT5-Python.GOD.Agentic.AI.MoE-7X0.1B") model = AutoModelForSeq2SeqLM.from_pretrained("11-47/flanT5-Python.GOD.Agentic.AI.MoE-7X0.1B") - Notebooks
- Google Colab
- Kaggle
| license: other | |
| library_name: transformers | |
| base_model: | |
| - gss1147/flanT5-MoE-7X0.1B-PythonGOD-25k | |
| tags: | |
| - t5 | |
| - text2text-generation | |
| - generated_from_trainer | |
| - code | |
| - agentic-ai | |
| - instruction-following | |
| - withinusai | |
| language: | |
| - en | |
| datasets: | |
| - gss1147/Python_GOD_Coder_25k | |
| - WithinUsAI/Got_Agentic_AI_5k | |
| model-index: | |
| - name: flanT5-MoE-7X0.1B-PythonGOD-AgenticAI | |
| results: [] | |
| # flanT5-MoE-7X0.1B-PythonGOD-AgenticAI | |
| **flanT5-MoE-7X0.1B-PythonGOD-AgenticAI** is a text-to-text generation model from **WithIn Us AI**, built as a fine-tuned derivative of **`gss1147/flanT5-MoE-7X0.1B-PythonGOD-25k`** and further trained for coding-oriented and agentic-style instruction following. | |
| This model is intended for lightweight local or hosted inference workflows where a compact instruction-tuned model is useful for structured responses, code help, implementation planning, and tool-oriented prompting. | |
| ## Model Summary | |
| This model is designed for: | |
| - code-oriented instruction following | |
| - lightweight agentic prompting | |
| - implementation planning | |
| - coding assistance | |
| - structured text generation | |
| - compact text-to-text tasks | |
| Because this model is built in the **Flan-T5 / T5 text-to-text style**, it is best prompted with clear task instructions and expected outputs rather than open-ended chat-only prompting. | |
| ## Base Model | |
| This model is a fine-tuned version of: | |
| - **`gss1147/flanT5-MoE-7X0.1B-PythonGOD-25k`** | |
| ## Training Data | |
| The current repository metadata identifies the following datasets in the model lineage: | |
| - **`gss1147/Python_GOD_Coder_25k`** | |
| - **`WithinUsAI/Got_Agentic_AI_5k`** | |
| This model card reflects the currently visible metadata on the Hugging Face repository. | |
| ## Intended Use | |
| Recommended use cases include: | |
| - Python and general coding help | |
| - instruction-based code generation | |
| - implementation planning | |
| - structured assistant responses | |
| - compact agentic AI experiments | |
| - transformation tasks such as rewriting, summarizing, and reformatting technical text | |
| ## Suggested Use Cases | |
| This model can be useful for: | |
| - generating small code snippets | |
| - rewriting code instructions into actionable steps | |
| - producing structured implementation plans | |
| - answering coding questions in text-to-text format | |
| - converting prompts into concise development outputs | |
| - supporting lightweight agent-style task decomposition | |
| ## Out-of-Scope Use | |
| This model should not be relied on for: | |
| - legal advice | |
| - medical advice | |
| - financial advice | |
| - fully autonomous high-stakes decision making | |
| - security-critical code generation without human review | |
| - production deployment without evaluation and testing | |
| All generated code and technical guidance should be reviewed by a human before real-world use. | |
| ## Architecture and Format | |
| This repository is currently tagged as: | |
| - **`t5`** | |
| - **`text2text-generation`** | |
| The model is distributed as a standard Hugging Face Transformers checkpoint with files including: | |
| - `config.json` | |
| - `generation_config.json` | |
| - `model.safetensors` | |
| - `tokenizer.json` | |
| - `tokenizer_config.json` | |
| - `training_args.bin` | |
| ## Prompting Guidance | |
| This model is best used with direct instruction prompts. Clear task framing tends to work better than vague prompts. | |
| ### Example prompt styles | |
| **Code generation** | |
| > Write a Python function that loads a JSON file, validates required keys, and returns cleaned records. | |
| **Implementation planning** | |
| > Create a step-by-step implementation plan for building a Flask API with authentication and logging. | |
| **Debugging help** | |
| > Explain why this Python function fails on missing keys and rewrite it with safe error handling. | |
| **Agentic task framing** | |
| > Break this software request into ordered implementation steps, dependencies, and testing tasks. | |
| ## Strengths | |
| This model may be especially useful for: | |
| - compact inference footprints | |
| - instruction-following behavior | |
| - coding-oriented prompt tasks | |
| - text transformation workflows | |
| - lightweight task decomposition | |
| - structured output generation | |
| ## Limitations | |
| Like other compact language models, this model may: | |
| - hallucinate APIs or implementation details | |
| - produce incomplete or overly simplified code | |
| - lose accuracy on long or complex prompts | |
| - make reasoning mistakes on deep multi-step tasks | |
| - require prompt iteration for best results | |
| - underperform larger models on advanced planning or debugging | |
| Human review is strongly recommended. | |
| ## Training and Attribution Notes | |
| WithIn Us AI is the creator of this model release and its packaging, naming, and fine-tuning presentation. | |
| This card does **not** claim ownership over third-party or upstream assets unless explicitly stated by their original creators. Credit remains with the creators of the upstream base model and any datasets used in training. | |
| ## License | |
| This model card uses: | |
| - `license: other` | |
| Use the repository `LICENSE` file or project-specific license text to define the exact redistribution and usage terms. | |
| ## Acknowledgments | |
| Thanks to: | |
| - **WithIn Us AI** | |
| - the creators of **`gss1147/flanT5-MoE-7X0.1B-PythonGOD-25k`** | |
| - the dataset creators behind **`gss1147/Python_GOD_Coder_25k`** and **`WithinUsAI/Got_Agentic_AI_5k`** | |
| - the Hugging Face ecosystem | |
| - the broader open-source ML community | |
| ## Disclaimer | |
| This model may produce inaccurate, incomplete, insecure, or biased outputs. All generations, especially code and implementation guidance, should be reviewed and tested before real-world use. |