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# GenAI
# Nexus AI
# FedML.ai

FEDML Nexus AI: Your Generative AI Platform at Scale

FedML is your generative AI platform at scale to enable developers and enterprises to build and commercialize their own generative AI applications easily, scalably, and economically. Its flagship product, FedML Nexus AI, provides unique features in enterprise AI platforms, model deployment, model serving, AI agent APIs, launching training/Inference jobs on serverless/decentralized GPU cloud, experimental tracking for distributed training, federated learning, security, and privacy.
Salman Avestimehr
Demetrios Brinkmann
Salman Avestimehr & Demetrios Brinkmann · May 7th, 2024
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# Machine Learning
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# LLM in Production
# Rungalileo.io
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# Scaling
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# Runway ML
# Video Machine Learning
# GPU
# Unstructure Data
# ML Workflow
# Galileo
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# Advertising Optimization
# Design ML
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Mohamed Elgendy
Demetrios Brinkmann
Mohamed Elgendy & Demetrios Brinkmann · May 3rd, 2024

What is AI Quality?

Delve into the multifaceted concept of AI Quality. Demetrios and Mo explore the idea that AI quality is dependent on the specific domain, equitable to the difference in desired qualities between a $1 pen and a $100 pen. Mo underscores the performance of a product being in sync with its intended functionality and the absence of unknown risks as the pillars of AI Quality. They emphasize the need for comprehensive quality checks and adaptability of standards to differing product traits. Issues affecting edge deployments like latency are also highlighted. A deep dive into the formation of gold standards for AI, the nuanced necessities for various use cases, and the paramount need for collaboration among AI builders, regulators, and infrastructure firms form the core of the discussion. Elgendy brings to light their ambitious AI Quality Conference, aiming to set tangible, effective, but innovation-friendly Quality standards for AI. The dialogue also accentuates the urgent need for diversification and representation in the tech industry, the variability of standards and regulations, and the pivotal role of testing in AI and machine learning. The episode concludes with an articulate portrayal of how enhanced testing can streamline the entire process of machine learning.
# AI Quality
# Quality Standards
# Kolena
# Kolena.io
Simon Karasik
Demetrios Brinkmann
Simon Karasik & Demetrios Brinkmann · Apr 30th, 2024

Handling Multi-Terabyte LLM Checkpoints

The talk provides a gentle introduction to the topic of LLM checkpointing: why is it hard, and how big are the checkpoints? It covers various tips and tricks for saving and loading multi-terabyte checkpoints, as well as the selection of cloud storage options for checkpointing.
# LLM Checkpoints
# Cloud Storage
# Nebius AI
Sol Rashidi
Demetrios Brinkmann
Sol Rashidi & Demetrios Brinkmann · Apr 26th, 2024

Leading Enterprise Data Teams

In the dynamic landscape of MLOps and data leadership, Sol shares invaluable insights on building successful teams and driving impactful projects. In this podcast episode, Sol delves into the importance of prioritizing relationships, introduces a pragmatic "Wrong Use Cases Formula" to streamline project prioritization, and emphasizes the critical role of effective communication in data leadership. Her wealth of experience and practical advice provides a roadmap for navigating the complexities of MLOps and leading data-driven initiatives to success.
# Enterprise Data Teams
# Leadership
# ExecutiveAI
Chad Sanderson
Demetrios Brinkmann
Chad Sanderson & Demetrios Brinkmann · Apr 24th, 2024

The Rise of Modern Data Management

In this session, Chad Sanderson, CEO of Gable.ai and author of the upcoming O’Reilly book: "Data Contracts," tackles the necessity of modern data management in an age of hyper iteration, experimentation, and AI. He will explore why traditional data management practices fail and how the cloud has fundamentally changed data development. The talk will cover a modern application of data management best practices, including data change detection, data contracts, observability, and CI/CD tests, and outline the roles of data producers and consumers. Attendees will leave with a clear understanding of modern data management's components and how to leverage them for better data handling and decision-making.
# Modern Data
# Machine Learning
# Gable.ai
Patrick Beukema
Patrick Beukema · Apr 20th, 2024

Beyond AGI, Can AI Help Save the Planet?

AI will play a central role in solving some of our greatest environmental challenges. The technology that we need to solve these problems is in a nascent stage -- we are just getting started. For example, the combination of remote sensing (satellites) and high-performance AI operating at a global scale in real-time unlocks unprecedented avenues to new intelligence. MLOPs is often overlooked on AI teams, and typically there is a lot of friction in integrating software engineering best practices into the ML/AI workflow. However, performance ML/AI depends on extremely tight feedback loops from the user back to the model that enables high iteration velocity and ultimately continual improvement. We are making progress but environmental causes need your help. Join us fight for sustainability and conservation.
# Environmental AI
# AI2
# allenai.org
Verena Weber
Demetrios Brinkmann
Verena Weber & Demetrios Brinkmann · Apr 17th, 2024

GenAI in Production - Challenges and Trends

The goal of this talk is to provide insights into challenges for Generative AI in production as well as trends aiming to solve some of these challenges. The challenges and trends Verena sees are: Model size and moving towards a mixture of expert architectures context window - breakthroughs for context lengths from unimodality to multimodality, next step large action models? regulation in the form of the EU AI Act Verena uses the differences between Gemini 1.0 and Gemini 1.5 to exemplify some of these trends.
# GenAI
# EU AI Act
# AI
Shane Morris
Demetrios Brinkmann
Shane Morris & Demetrios Brinkmann · Apr 5th, 2024

Data Engineering in the Federal Sector

Let's focus on autonomous systems rather than automation, and then super-narrow it down to smaller, cheaper, and more accessible autonomous systems.
# Data Engineering
# Federal Sector
# Devis
# Devis.com
Peter Guagenti
Demetrios Brinkmann
Peter Guagenti & Demetrios Brinkmann · Apr 2nd, 2024

What Business Stakeholders Want to See from the ML Teams

Peter Guagenti shares his expertise in the tech industry, discussing topics from managing large-scale tech legacy applications and data experimentation to the evolution of the Internet. He returns to his history of building and transforming businesses, such as his work in the early 90s for People magazine's website and his current involvement in AI development for software companies. Guagenti discusses the use of predictive modeling in customer management and emphasizes the importance of re-architecting solutions to fit customer needs. He also delves deeper into the AI tools' effectiveness in software development and the value of maintaining privacy. Guagenti sees a bright future in AI democratization and shares his company's development of AI coding assistants. Discussing successful entrepreneurship, Guagenti highlights balancing technology and go-to-market strategies and the value of failing fast.
# ML Teams
# Business Stakeholders
# Tabnine
# Tabnine.com
Amritha Arun Babu
Abhik Choudhury
Demetrios Brinkmann
Amritha Arun Babu, Abhik Choudhury & Demetrios Brinkmann · Mar 29th, 2024

MLOps - Design Thinking to Build ML Infra for ML and LLM Use Cases

As machine learning (ML) and large language models (LLMs) continue permeating industries, robust ML infrastructure and operations (ML Ops) are crucial to deploying these AI systems successfully. This podcast discusses best practices for building reusable, scalable, and governable ML Ops architectures tailored to ML and LLM use cases.
# MLOps
# ML Infra
# LLM Use Cases
# Klaviyo
# IBM
Bandish Shah
Davis Blalock
Demetrios Brinkmann
Bandish Shah, Davis Blalock & Demetrios Brinkmann · Mar 22nd, 2024

The Art and Science of Training LLMs

What's hard about language models at scale? Turns out...everything. MosaicML's Davis and Bandish share war stories and lessons learned from pushing the limits of LLM training and helping dozens of customers get LLMs into production. They cover what can go wrong at every level of the stack, how to make sure you're building the right solution, and some contrarian takes on the future of efficient models.
# LLMs
# MosaicML
# Databricks
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