Large Language Models: Helping Manage Data
Open Source For You|December 2023
Generative AI and large language models (LLMs) are the future, and promise a revolution in data management. However, development of LLMs is still very costly and inaccessible to smaller organisations. This will change as the years go by, and AI becomes more commonplace.
Large Language Models: Helping Manage Data

AI technology is changing the way the world does business. Generative artificial intelligence (generative AI) refers to the use of large language models (LLMs) to create new content, like text, images, music, audio, and videos.

LLMs are generative AI models that use deep learning techniques known as transformers. These models excel at natural language processing (NLP) tasks, including language translation, text classification, sentiment analysis, text generation, and question-answering. LLMs are trained with vast data sets from various sources, sometimes boasting hundreds of billions of parameters. They could fundamentally transform how we handle, interact with and master data.

Prominent examples of large language models include OpenAI’s GPT3, Google’s BERT, and XLNet, based on a whopping 175 billion parameters.

Industry adoption of large language models

Generative AI is primed to make an increasingly strong impact on enterprises over the next five years.

The generative AI-based LLMs market is poised for remarkable growth, with estimations pointing towards a staggering valuation of $188.62 billion by the year 2032. - Brainy Insights

The world’s total stock of usable text data is between 4.6 trillion and 17.2 trillion tokens. This includes all the world’s books, all scientific papers, all news articles, all of Wikipedia, all publicly available code, and much of the rest of the internet, filtered for quality (e.g., web pages, blogs, social media). Recent estimates place the total figure at 3.2 trillion tokens. One of today’s leading LLMs was trained on 1.4 trillion tokens. – Forbes

この蚘事は Open Source For You の December 2023 版に掲茉されおいたす。

7 日間の Magzter GOLD 無料トラむアルを開始しお、䜕千もの厳遞されたプレミアム ストヌリヌ、9,000 以䞊の雑誌や新聞にアクセスしおください。

この蚘事は Open Source For You の December 2023 版に掲茉されおいたす。

7 日間の Magzter GOLD 無料トラむアルを開始しお、䜕千もの厳遞されたプレミアム ストヌリヌ、9,000 以䞊の雑誌や新聞にアクセスしおください。

OPEN SOURCE FOR YOUのその他の蚘事すべお衚瀺
Helgrind: Detecting Synchronisation Issues in Multithreaded Programs
Open Source For You

Helgrind: Detecting Synchronisation Issues in Multithreaded Programs

Let's explore how Helgrind can be used to detect and debug multithreading issues with the help of a multithreaded C program.

time-read
3 分  |
November 2024
The Perfect Process of Booting a PC
Open Source For You

The Perfect Process of Booting a PC

Booting a PC seems as simple as eating a cake. But are you aware of all that goes on behind-the-scenes to bake a delicious cake or seamlessly boot a PC?

time-read
3 分  |
November 2024
Exploring eBPF and its Integration with Kubernetes
Open Source For You

Exploring eBPF and its Integration with Kubernetes

eBPF, a game-changing technology that extends the capabilities of the Linux kernel, offers significant advantages for Kubernetes networking. It also greatly improves Kubernetes observability by capturing detailed telemetry data directly from the kernel. Read on to find out how its integration with Kubernetes has immense benefits.

time-read
5 分  |
November 2024
Deploying Generative AI LLMs on Docker
Open Source For You

Deploying Generative AI LLMs on Docker

Built on massive datasets, large language models or LLMS are closely associated with generative Al. Integrating these models with Docker has quite a few advantages.

time-read
8 分  |
November 2024
Containerisation: The Cornerstone of Multi-Cloud and Hybrid Cloud Success
Open Source For You

Containerisation: The Cornerstone of Multi-Cloud and Hybrid Cloud Success

Open source containerisation software provides the flexibility, cost-effectiveness, and community support needed to build and manage complex multi-cloud and hybrid cloud environments. By leveraging this software, businesses can unlock the full potential of multicloud and hybrid cloud architectures while minimising vendor lock-in risks.

time-read
3 分  |
November 2024
From Virtual Machines to Docker Containers: The Evolution of Software Development
Open Source For You

From Virtual Machines to Docker Containers: The Evolution of Software Development

Containerisation and Kubernetes have eased software development, making it faster and better. Let's see where these are headed, looking at trends that are making life easier for developers.

time-read
10+ 分  |
November 2024
India's Leap in Supercomputing: Innovating for Tomorrow
Open Source For You

India's Leap in Supercomputing: Innovating for Tomorrow

As India strides towards self-sufficiency in supercomputing, embracing this evolution isn't just an option-it is pivotal for global competitiveness and technological leadership.

time-read
5 分  |
November 2024
SageMath: A Quick Introduction to Cybersecurity
Open Source For You

SageMath: A Quick Introduction to Cybersecurity

In the previous articles in this SageMath series, we delved into graph theory and explored its applications using SageMath. In this seventh article in the series, it is time to shift our focus to another crucial subfield of computer science: cybersecurity and cryptography.

time-read
10+ 分  |
November 2024
Efficient Prompt Engineering: Getting the Right Answers
Open Source For You

Efficient Prompt Engineering: Getting the Right Answers

OpenAl's GPT-3 and GPT-4 are powerful tools that can generate human-like text, answer questions, and provide insights. However, the quality of these outputs depends heavily on how you frame the input, or prompt. Efficient prompt engineering ensures you get the right answers by designing inputs that guide the AI towards relevant, clear, and useful responses. Let's find out how to craft effective prompts with examples.

time-read
4 分  |
November 2024
Analysing Linus Torvald's Critique of Docker
Open Source For You

Analysing Linus Torvald's Critique of Docker

This article looks at Docker's security flaws, particularly its shared-kernel model, and contrasts it with traditional VMs for better isolation. It discusses Linus Torvalds' concerns, explores mitigation techniques, and proposes a roadmap for building a more secure containerisation platform using hardware-assisted virtualisation, true isolation, and a robust orchestration layer.

time-read
8 分  |
November 2024