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The Terawatt Time Bomb: Transformers, Trouble, and the Analog In-Memory Compute Fix

AI is heading for an energy crisis, with data centers projected to consume as much electricity as France by 2027. Big Tech's current solution—building more power plants—is unsustainable. Real solutions lie in energy-efficient computing (like in-memory and analog) and shifting AI to edge devices. Without these, AI’s progress risks being bottlenecked by electricity limits.
Shwetank Kumar
Shwetank Kumar · Apr 15th, 2025
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Rafał Siwek
Rafał Siwek · Apr 7th, 2025
This third article in the series on Distributed MLOps explores overcoming vendor lock-in by unifying AMD and NVIDIA GPUs in mixed clusters for distributed PyTorch training, all without requiring code rewrites: Mixing GPU Vendors: It demonstrates how to combine AWS g4ad (AMD) and g4dn (NVIDIA) instances, bridging ROCm and CUDA to avoid being tied to a single vendor. High-Performance Communication: It highlights the use of UCC and UCX to enable efficient operations like all_reduce and all_gather, ensuring smooth and synchronized training across diverse GPUs. Kubernetes Made Simple: How Kubernetes, enhanced by Volcano for gang scheduling, can orchestrate these workloads on heterogeneous GPU setups. Real-World Trade-Offs: While covering techniques like dynamic load balancing and gradient compression, it also notes challenges current limitations. Overall, the piece illustrates how integrating mixed hardware can maximize resource potential, delivering faster, scalable, and cost-effective machine learning training.
# MLOps
# Machine Learning
# Kubernetes
# PyTorch
# AWS
Adel Zaalouk
Adel Zaalouk · Mar 31st, 2025
The article argues that despite advancements in Large Language Models (LLMs), their limitations, such as knowledge cut-offs and the potential for hallucinations, necessitate the use of RAG. RAG addresses these limitations by combining the internal knowledge of LLMs (parametric memory) with external knowledge (non-parametric memory). The core of RAG involves a Retriever to fetch relevant information and a Generator to produce a response using this retrieved context. While traditionally fine-tuning focused on the generator, the original concept of RAG included end-to-end fine-tuning of both components, and fine-tuning embedding models is crucial for improving retrieval accuracy. The post also clarifies that long-context models do not negate the need for RAG, as retrieval helps focus the model on relevant information. Furthermore, the emergence of Agentic RAG extends RAG’s capabilities for more complex tasks by enabling multi-step retrieval and interaction with various tools. The choice between standard RAG and Agentic RAG depends on the complexity of the queries and the number of knowledge sources required. Ultimately, the article emphasizes that optimizing the entire RAG system, including fine-tuning the retriever, is key to its enduring relevance.
# RAG
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# Retrieval
The MLOps Python Package version 4.1.0 is now available, focusing on increased automation and reproducibility for machine learning workflows. This release transitions task automation from PyInvoke to the cleaner 'Just' system, integrates Gemini Code Assist for AI-powered GitHub pull request reviews, automates the deployment of GitHub rulesets for consistency, and ensures deterministic builds using a constraints.txt file for locked dependencies. The companion Cookiecutter MLOps Package template has also been updated to include these enhancements, facilitating easier project setup. Users are encouraged to upgrade to benefit from these improvements.
# MLOps
# Python
# Data Science
# Machine Learning
# Artificial Intelligence
Vishakha Gupta
Saurabh Shintre
Vishakha Gupta & Saurabh Shintre · Mar 25th, 2025
Retrieval-augmented generation (RAG) is currently the standard architecture to build AI chatbots. But it has one limitation that can lead to potentially disastrous consequences in the enterprise: the inability to provide role-based access control and information security. To make sure that sensitive or restricted information is not accidentally retrieved, it is very important to restrict information from going into a query’s context based on the user’s overall permission and sensitivity of the information. By integrating Realm’s secure connectors with ApertureDB’s graph-vector database engine, we deliver a scalable, real-time access control system ready for enterprise workloads.
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# Data privacy and security
# Knowledge graph and graph databases
# Vector/similarity/semantic search
Efficient GPU orchestration is crucial in MLOps to support the distributed training and serving of increasingly complex models.
# NVIDIA
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# Amd
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# Machine learning
# MLOps
The post critiques AI evaluation methods from a physicist's perspective, highlighting a troubling lack of scientific rigor compared to fields like physics. While physicists meticulously define success criteria before experiments (like CERN's specific statistical requirements for the Higgs boson), AI benchmarking suffers from three critical problems: Benchmarks are abandoned once models perform well, creating an endless cycle without measuring meaningful progress. With models training on vast internet data, benchmarks are likely contaminated, essentially giving open-book exams to models that have already seen the material. Current methods fail to properly measure generalization - whether models truly understand concepts versus memorizing patterns. The author proposes a "Standard Model of AI Evaluation" bringing together cognitive scientists, AI researchers, philosophers, and evaluation experts to create hypothesis-driven benchmarks rather than difficulty-driven ones. This framework would require pre-registered hypotheses, contamination prevention strategies, and clearly defined success criteria. The post concludes by asking whether systems potentially transforming society deserve evaluation standards at least as rigorous as those used for testing new particles.
# AI
# Physics
# Methodology
Jessica Michelle Rudd, PhD, MPH
Jessica Michelle Rudd, PhD & MPH · Mar 12th, 2025
Dataplex acts as the ultimate pantry organizer for your data ecosystem, ensuring clarity, freshness, and accessibility. Creating structured "lakes" and "zones" helps teams efficiently manage data assets, track lineage, and maintain rich metadata documentation. With Dataplex, your data kitchen stays tidy, making it easier to serve up accurate and actionable insights.
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# Metadata
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This series explores the potential of distributed MLOps in accelerating AI innovation. From foundational strategies like data and pipeline parallelism to advanced techniques for unifying mixed AMD and NVIDIA GPU clusters, the articles provide insights into building scalable, cost-effective systems. - Distributed Training: Leveraging frameworks like PyTorch DDP, MPI, and Ray to split workloads across GPUs and nodes, reducing training times from years to days. - Mixed Hardware Ecosystems: Bridging CUDA and ROCm with UCC/UCX to unify AMD and NVIDIA GPUs, eliminating vendor lock-in and maximizing infrastructure ROI. - Kubernetes Orchestration: Automating GPU resource allocation, fault tolerance, and gang scheduling with tools like Volcano and Kubeflow for enterprise-scale efficiency. - Performance Optimization: Techniques like RDMA, NUMA alignment, GPU sharing (MIG/SR-IOV), and collective communication tuning (NCCL/RCCL) to achieve near-linear scaling. Whether scaling trillion-parameter models or managing mergers with fragmented infrastructures, this series describes how teams can transform the available hardware into unified collectives — driving faster innovation, reducing costs, and future-proofing MLOps pipelines.
# MLOps
# Machine Learning
# Pytorch
# Kubernetes
# Cloud
Traditional RAG improves LLM accuracy by retrieving relevant documents but has limitations in query refinement and hallucination prevention. Agentic RAG enhances this by introducing AI agents that iteratively refine queries, assess retrieval quality, and make dynamic tool selections. This blog explores the challenges of vanilla RAG, the advantages of agentic RAG, and a practical implementation using ApertureDB and SmolAgents for research paper retrieval.
# RAG
# AI Agents
# Gen AI
# Multimodal AI
# Vector Search
# Semantic Search
# Similarity Search
Kopal Garg
Kopal Garg · Mar 3rd, 2025
This blog explores how NVIDIA’s BioNeMo accelerates the design of therapeutic protein binders using generative AI. It walks through an end-to-end AI pipeline, showcasing how GPU-accelerated microservices enhance protein structure prediction, de novo binder design, molecular docking, and stability validation - reducing development time from months to days.
# Generative AI
# NVIDIA’s BioNeMo
# GPU-accelerated microservices
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