Model Type | text-to-text, decoder-only, large language model |
|
Use Cases |
Areas: | Content Creation, Research and Education |
|
Applications: | Text Generation, Chatbots and Conversational AI, Text Summarization, NLP Research, Language Learning Tools, Knowledge Exploration |
|
Primary Use Cases: | Generate creative text formats, Power conversational interfaces, Generate summaries of text |
|
Limitations: | Bias or gaps in training data, Limited factual accuracy, Lack of common sense reasoning |
|
Considerations: | Responsible use guidelines are outlined. |
|
|
Additional Notes | Gemma models democratize access to state-of-the-art AI models enabling innovation for everyone. |
|
Supported Languages | |
Training Details |
Data Sources: | Web Documents, Code, Mathematics |
|
Data Volume: | |
|
Safety Evaluation |
Methodologies: | Red-teaming, Structured evaluations |
|
Findings: | Within acceptable thresholds for meeting internal policies |
|
Risk Categories: | Child safety, Content safety, Representational harms, Memorization, Large-scale harms |
|
Ethical Considerations: | These models underwent robust internal evaluations and mitigation strategies were proposed. |
|
|
Responsible Ai Considerations |
Fairness: | Input data pre-processing and posterior evaluations were conducted to scrutinize bias. |
|
Transparency: | Details on the model's architecture, capabilities, limitations, and evaluation processes are provided. |
|
Accountability: | Developers and users are encouraged to exercise caution and implement appropriate safeguards as per guidelines. |
|
Mitigation Strategies: | Continuous monitoring, human review, and exploration of de-biasing techniques during training. |
|
|
Input Output |
Input Format: | Text string, such as a question, a prompt, or a document. |
|
Accepted Modalities: | |
Output Format: | Generated English-language text |
|
|