Welcome to Open Exchange

At InterSystems, we deeply appreciate the rapid innovation enabled by open-source development. Our team acknowledges the significant impact of the community's dedication, which has been a driving force behind the evolution of software and data technology.

Top contributors

Featured applications

37 Application(s)
Filter
Show only
Last release on OEX
Categories
Works with
Industry
Clear filters
Application NameDeveloperMade withRatingLast updatedViewsInstalls

geo-vector-search

mathematical use of vector search

Robert Cemper
Docker
IPM
5.0 (3)27 Apr, 2024 268

llama-iris

Support for IRIS for Llama-index

Dmitry Maslennikov
Docker
Python
0.0 (0)16 Apr, 2024 207

InterSystems Ideas Waiting to be Implemented

AI extensibility Prompt keyword for Class and Method implementation. Also Prompt macro generator.

To accelerate capability of growing code generation. This proposal suggests new extensibility facilities and hooks that can be democratized to community and / or fulfilled by commercial partners. To add Training metadata to Refine a Large Language Model for code, a "Prompt Input" is associated with an expected "Code Output", as part of a class definition. This provide structured keywords to describe: * The expected output * And / Or Chain-of-thought to generate the correct output | /// The following Prompt describes the full implementation of the class Class alwo.Calculator [Abstract, Prompt = "Provides methods to Add, Subtract, Multiply and divide given numbers." ] { /// The following Prompt describes the full implementation of the method ClassMethod Add(arg1 As %Float, arg2 As %Float) As %Float [ Prompt ="Add numeric arguments and return result." ] { return arg1 + arg2 } ClassMethod Subtract(arg1 as %Float, arg2 As %Float) { &Prompt("Subtract numeric arguments and return result") ) } | The Prompt macro generates code based on the context of the method it is within. Once resolved, it automatically comments out the processed macro. | ClassMethod Subtract(arg1 as %Float, arg2 As %Float) { //&Prompt("Subtract arguments and return the result") return arg1 - arg2 //&Prompt("Model alwogen-objectscript-7.1.3") ) | The generator leveraged at compilation time could be configured in a similar way to how source control is configured for a namespace. Configuration could lock / exclude packages from being processed in this way. A "\prompt" compilation flag could be used to control the default environment behavior and editor compilation behavior. For example to force reprocessing of previously resolved prompts due to a newer more capable version of code Large Language Model, then a "\prompt=2" could be applied. Different models or third-party services could be applied depending the language of the given method. When redacting source code by "deployment", the existing "deploy" facility could be extended to also ensure removal of "Prompt" metadata from code.

A
by Alex Woodhead

3

Votes

1

Comments
Vote

langchain-iris

Support for IRIS for Langchain

Dmitry Maslennikov
Python
0.0 (0)16 Apr, 2024 148

workshop-vector-face

Face recognition using vectors and vector search.

Luis Angel Pérez Ramos
Docker
AI
4.8 (2)27 Mar, 2024 220

Vector-inside-IRIS

run vector search inside IRIS

Robert Cemper
Docker
Python
IPM
5.0 (1)21 Mar, 2024 189 1

iris-vector-search

Quick and easy ways to use iris vector search with Python.

F
Fan Ji
Docker
AI
ML
ML
4.0 (2)23 Feb, 2024 1.2k

iris-vector

Initial realization for Vector datatype support

Dmitry Maslennikov
Python
IPM
AI
4.8 (4)20 Sep, 2023 390 15