NEW! AutoAlign™ From Armilla AI
Unlock Robust Generative AI Solutions
With the Groundbreaking New Platform
No more fear of your generative AI solutions promoting bias,
hallucinating, or simply wandering off topic.
Benefits of AutoAlign
-
Immediate Value
A wide range of out-of-the-box alignment controls available, with the ability to customize or create new controls. -
High Performance
Combines the strength of guardrails and fine-tuning, enabling greater robustness than either alone can provide. -
No Data Required
Concept-based approach requires minimal data, and minimal human-in-the-loop contact. Auto generates targeted synthetic data. -
Automated Testing
Each alignment scenario can be tested and assessed independently. Detect bias, security holes, tonality issues, hallucinations easily. -
Supports Major Base Models
Including OpenAI LLMs like GPT, Stable Diffusion image generation models, open source models, with Bard and others coming soon.
STEP 1
Define:
Use out-of-the-box alignment controls or define your own performance expectations using concepts (not datasets), enabling very broad alignment to your goals.
Example use cases:
Currently Supported Alignment Controls
Class | Functionality | Description | Control Type |
---|---|---|---|
Security | Privacy filtering | Redacts PII and sensitive information, preventing leakage to / from the base model | Guardrail |
Fact checking | Provides a framework for detecting hallucinations and validating information returned from the model | Guardrail | |
Jailbreaks | Provides robustness testing, fine-tuning and prevention of common hacking attempts | Hybrid | |
Toxicity | Provides detection and interception of toxic inputs & outputs | Guardrail | |
Bias | Stereotypical tuning | Change stereotypical conventions and mitigate biases from training data that has been incorporated into the base model | Fine-tuning |
Ethical filtering rules | Provide and fine-tune with additional context to ensure context-appropiate responses | Hybrid | |
Custom | Custome datasets | Allows custom datasets to be used for answering and guardrails around its answers | Hybrid |
Transfer learning and custom classification | Allows development of custom training of default classifications as well as smaller / more secure models | Fine-tuning | |
Prompt optimization | Optimizes responses via generated prompt engineering | Guardrail | |
Tonality | Provides fine-tuning for adjusting the tonality and behavior of the model | Fine-tuning |