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TrueFoundry Releases Cognita: An Open-Source RAG Framework for Building Modular and Production-Ready Applications

Marktechpost

The field of artificial intelligence is rapidly evolving, and taking a prototype to production stage can be quite challenging. A Seamless Transition to Production AI development often begins in experimental environments such as Jupyter notebooks, which are useful for prototyping but not well-suited for production environments.

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Meta AI Researchers Open-Source Pearl: A Production-Ready Reinforcement Learning AI Agent Library

Marktechpost

Although RL has made significant advancements in recent years, its implementation to solve real-world problems is still a daunting task, and Pearl has showcased its abilities to bridge this gap by offering comprehensive and production-grade solutions. Crafted by the Applied Reinforcement Learning team @AIatMeta.

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Meet Neosync: The Open Source Solution for Synchronizing and Anonymizing Production Data Across Development Environments and Testing

Marktechpost

In software development, teams often face challenges when working with sensitive production data for testing and development purposes. As technology advances, a new open-source solution called Neosync has emerged to streamline and simplify this process. This ensures a robust and reliable testing environment for developers.

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Fine-tuning Google Gemma with Unsloth

Analytics Vidhya

The ability to change a simple English question into a complex code opens up a number of possibilities in developer productivity and a quick software development lifecycle. Introduction Converting natural language queries into code is one of the toughest challenges in NLP.

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New Study: 2018 State of Embedded Analytics Report

Why do some embedded analytics projects succeed while others fail? We surveyed 500+ application teams embedding analytics to find out which analytics features actually move the needle. Read the 6th annual State of Embedded Analytics Report to discover new best practices. Brought to you by Logi Analytics.

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Meta raises the bar with open source Llama 3 LLM

AI News

Meta has introduced Llama 3 , the next generation of its state-of-the-art open source large language model (LLM). “With Llama 3, we set out to build the best open models that are on par with the best proprietary models available today,” said Meta in a blog post announcing the release. . in real-world scenarios.

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Databricks claims DBRX sets ‘a new standard’ for open-source LLMs

AI News

Databricks has announced the launch of DBRX, a powerful new open-source large language model that it claims sets a new bar for open models by outperforming established options like GPT-3.5 It even outperforms Anthropic’s closed-source model Claude on certain benchmarks. on industry benchmarks.

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Monetizing Analytics Features: Why Data Visualizations Will Never Be Enough

Think your customers will pay more for data visualizations in your application? Five years ago they may have. But today, dashboards and visualizations have become table stakes. Discover which features will differentiate your application and maximize the ROI of your embedded analytics. Brought to you by Logi Analytics.

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3 Challenges of Building Complex Dashboards with Open Source Components

Speaker: Ryan MacCarrigan, Founding Principal, LeanStudio

Many product teams use charting components and open source code libraries to get dashboards and reporting functionality quickly. But what happens when you have a growing user base and additional feature requests?

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LLMs in Production: Tooling, Process, and Team Structure

Speaker: Dr. Greg Loughnane and Chris Alexiuk

Technology professionals developing generative AI applications are finding that there are big leaps from POCs and MVPs to production-ready applications. However, during development – and even more so once deployed to production – best practices for operating and improving generative AI applications are less understood.