Author: Arne Schinkel

Prompts

For PLAI to act on your behalf and complete tasks, it needs your instructions. Your tasks or questions to the AI are called “Prompts” and are entered via the PLAI interface, similar to a chat. Here you can request legal tasks such as creating an employment contract or answering legal questions. There are certain pre-set…
Read more


28. December 2023 0

Collections

On what context should PLAI rely for your task? In other words, based on which information should the AI provide its response? You can create collections based on your company’s internal data, such as template contracts and all contracts, legal briefs, analyses, opinions, lawsuits, pleadings, etc., ever created. Choose one or more collections for each…
Read more


28. December 2023 0

Attachments

In addition to collections, when submitting a prompt, you can also attach additional files that the task should reference. For example, you can attach a client’s employment contract to your prompt and instruct PLAI to search for critical clauses in that contract. PLAI can then compare the employment contract with the information from an associated…
Read more


28. December 2023 0

Anonymization

All files you upload to PLAI – whether entire datasets for collections or individual documents as attachments – can be anonymized upon request. Anonymization, which involves redacting or obfuscating personally identifiable information, is an essential requirement for the secure and privacy-compliant use of your own datasets. You have the autonomy to decide which types of…
Read more


28. December 2023 0

Session

If you stay within a session, you can incorporate the previous PLAI dialogue into your new prompts. This allows for the inclusion of previous questions and answers in the new prompt. For example: “Condense the text just created and phrase it so that even legal laypeople can understand.” You can ask follow-up questions to the…
Read more


28. December 2023 0

Temperature

The temperature parameter influences the randomness of the LLM’s response. The outputs are not deterministic; instead, probabilities for various responses are calculated. The temperature, typically ranging from 0 to 1, regulates this probability distribution. A higher temperature value (close to 1) increases randomness, leading to more diverse and creative responses. A lower value (close to…
Read more


28. December 2023 0

Semantic Search

PLAI utilizes a semantic search algorithm to provide relevant context for the LLM. Semantic search, also known as vector search, goes beyond traditional text-based search algorithms. Its aim is not only to find exact keyword matches but also to understand the meaning of words and the context of a query. Vector search employs vectors to…
Read more


4. January 2024 0