Originally appeared here:
UK targets “despicable individuals” who create AI sex deepfakes with new law
Tag: tech
-
UK targets “despicable individuals” who create AI sex deepfakes with new law
Under new law, those who create the “horrific images” would face a fine and possible jail time. -
Why the US government’s overreliance on Microsoft is a big problem
Microsoft continues to get a free pass after series of cybersecurity failures.Go Here to Read this Fast! Why the US government’s overreliance on Microsoft is a big problem
Originally appeared here:
Why the US government’s overreliance on Microsoft is a big problem -
The Limitations and Advantages of Retrieval Augmented Generation (RAG)
The Practical Limitations and Advantages of Retrieval Augmented Generation (RAG)
The Value of RAG
Imagine RAG as highly intelligent librarian who can sift through a digital library in seconds to answer your questions. Sometimes the librarian finds relevant and useful information to answer your questions , but other times they miss the mark.
Source: Dalle3 Let’s explore situations in which RAG excels and those in which it falls short. In a future work, I will explore a series of approaches that can be used individually or in combination to improve RAGs capabilities — which will support better responses when used with a language model.
Where RAG Falls Short
Even the most intelligent librarian has their challenges , some of which include the ability to reason iteratively, ensuring that they are retrieving the most useful documents, and ensure that the information they are sourcing from is relevant and unbiased.
Piecing Together the Puzzle with Iterative Reasoning: One of the key limitations of current RAG is its lack of iterative reasoning capabilities. RAG is unable to fully understand whether the data that is being retrieved is the most relevant information the language model needs to effectively solve the problem.
For example, if you were to pose a question such as “What does the impact of new environmental regulations passed in 2024 have on my latest white paper?” a RAG-enabled system would attempt to retrieve the data most semantically similar to the query. It might return the top X documents that have information on new policies, but are they the relevant policies for the specific paper the user is referencing?
As humans, we would approach this problem with reasoning skills. We would first read the white paper to understand its content and then determine what type of environmental policies best apply. Then based on that knowledge we would perform a search for those white papers. This iterative reasoning process — understanding the problem, formulating a more targeted search strategy, and then retrieving the most useful information — is a capability that current RAG implementations lack.
Organization Matters: The performance and effectiveness of RAG is heavily dependent on the organization and structure of the underlying data it is accessing. The ability for the retrieval algorithm to identify and surface the most useful documents is greatly influenced by how that information is cataloged and stored as well as how semantically similar the query is to the data retrieved.
In our library analogy, imagine a scenario where 500 books on various subjects are simply placed haphazardly on a single shelf, without any categorization or tagging. Trying to find the most relevant resources to answer a specific query would be a feat. You may stumble across some potentially useful books, but have no reliable way to assess which ones contain the most pertinent information. If those same 500 books were organized by genre, with clear metadata and subject tags, the retrieval process becomes significantly more efficient and effective. Rather than blindly scanning the entire shelf, the RAG implementation could quickly zero in on the most relevant section(s).
The same principles apply to how data is stored and indexed for RAG implementations in real-world applications. If the underlying datasets lack coherent organization, categorization, and metadata, the retrieval algorithms will struggle to identify the most valuable information. Ensuring data is properly structured, cataloged, and accessible is a critical.
The Good, the Bad, and the Biased : The quality of the data retrieved by a RAG implementation is only as good as the data it has access to. If the information in the underlying source systems, be it databases, online file storage, or other data repositories, contains outdated, incomplete, or biased content, the RAG implementation will have no way to discern this. It will simply retrieve and pass along this flawed information to the language model responsible for generating the final output.
Where RAG Models Shine
Accessing Domain Specific and Confidential Information: One of the key advantages of RAG is the ability to leverage domain-specific and even confidential information that may not be included in a language model’s standard training data. This can be particularly beneficial for organizations working on proprietary, cutting-edge research and projects. For example, if a company is conducting groundbreaking research in quantum computing that has not yet been publicly released, a RAG implementation could be granted access to these internal data sources. This would allow the language model to access specialized knowledge to engage in discussions about the company’s latest developments, without needing to be trained on that confidential information.
However, exposing sensitive, internal data to externally hosted language models (such as GPT, LLAMA, etc.) is not risk free. Organizations must exercise due diligence to ensure proper data security measures are in place to protect their intellectual property and confidential information.
Bringing the Latest News to Your Conversation: One of the key advantages of RAG is its ability to provide language models with access to the most up-to-date information, going beyond the fixed cutoff date of the language model’s original training data.If a language model were to rely solely on its inherent knowledge, its information would be limited to what was available at the time it was trained.
RAG implementations, on the other hand, can be integrated with live data sources such as the internet, constantly updating databases, news feeds, etc. This allows the language model to utilize current information when generating responses.
Conclusion
Retrieval Augmented Generation (RAG) is a powerful technique that can enhance language models by providing access to a wealth of information beyond their initial training. However, it is important to be aware of the limitations of RAG, such as the need for iterative reasoning, the importance of well organized data, and the potential for biased or outdated information. In a future work, I will explore a series of approaches to improve the capabilities of RAG — enhancing the quality of responses generated by a language model.
The Limitations and Advantages of Retrieval Augmented Generation (RAG) was originally published in Towards Data Science on Medium, where people are continuing the conversation by highlighting and responding to this story.
Originally appeared here:
The Limitations and Advantages of Retrieval Augmented Generation (RAG)Go Here to Read this Fast! The Limitations and Advantages of Retrieval Augmented Generation (RAG)
-
AI Mapping: Using Neural Networks to Identify House Numbers
Comparing artificial and convolutional neural networks in classifying Google Street View house numbers
Originally appeared here:
AI Mapping: Using Neural Networks to Identify House NumbersGo Here to Read this Fast! AI Mapping: Using Neural Networks to Identify House Numbers
-
8 Plots for Explaining Linear Regression to a Layman
Explain regression to a non-technical audience with residual, weight, effect and SHAP plots
Originally appeared here:
8 Plots for Explaining Linear Regression to a LaymanGo Here to Read this Fast! 8 Plots for Explaining Linear Regression to a Layman
-
Apple highlights device recycling, iPhone trade-in, and the removal of leather for Earth Day
Building up to Earth Day, Apple is highlighting it’s wide device recycling program, how to trade in old iPhones, and how it has eliminated the use of leather in it’s products.
Image Credit: AppleApple has refreshed its trade-in page ahead of Earth Day, prompting users to rummage through their tech stash for things that can be traded in or recycled.
“This Earth Day, let’s put your used device to good use. You can trade it in and get credit toward your next purchase,” Apple’s trade-in page reads. “Or if it’s not eligible, we’ll recycle it for free.”
Originally appeared here:
Apple highlights device recycling, iPhone trade-in, and the removal of leather for Earth Day -
Apple wants to make grooved keys to stop nasty finger oil transfer to MacBook Pro screens
Apple is researching a novel way to keep MacBook Pro displays clean — by changing the structure of keys on the keyboard.
Every key would have a groove or gully around it to collect dirt and keep it off the top of the keysApple has previously issued support documents about keeping displays clean, and it’s also tried very many times to make a new keyboard. Some attempts have been less successful than others.
But now in a newly-granted patent called “Keycap particle evacuation structure,” Apple is looking to see if a clean keyboard means a clean screen.
Originally appeared here:
Apple wants to make grooved keys to stop nasty finger oil transfer to MacBook Pro screens -
Rode’s MagSafe Phone Cage and new mount will give a boost to your iPhone videography
Rode has launched a pair of iPhone accessories to improve smartphone videography, with the Phone Cage and Magnetic Mount designed to help mobile content creators.
Rode Phone CageLaunched during NAB 2024, Rode’s newest videography tools are aimed at turning an iPhone into a filmmaking device. To do that, Rode has come up with ways to handle the iPhone as if it’s a camera, with two new accessories.
The Phone Cage is a smartphone mounting system that consists of a ring grip with a central MagSafe-compatible mounting disk, holding the iPhone in the middle of the rig. Able to be used as an ergonomic grip for filmmaking, the Phone Cage is both rugged and lightweight, thanks to its aluminum construction.
Rode’s MagSafe Phone Cage and new mount will give a boost to your iPhone videographyRode’s MagSafe Phone Cage and new mount will give a boost to your iPhone videography -
Apple, Google, Meta, others struggle when it comes to ad transparency
A new report suggests that every tech giant has failed to provide crucial ad transparency tools to its user base, leaving the door open for disinformation and manipulation.
On Tuesday, Mozilla and CheckFirst, a Finland-based research company, released a report detailing how tech companies like Apple, Google, TikTok, and X handle ad transparency. Ultimately, the report found that all platforms could be doing more to disclose why a user is seeing an advertisement and who is behind the ad.The research team conducted a comprehensive evaluation of the transparency tools, using over 20 parameters that encompassed functionality, data accessibility, and accuracy. The research was carried out between December 2023 and January 2024.
The study believes that, for best transparency practices, platforms should follow the five recommendations outlined below.
Go Here to Read this Fast! Apple, Google, Meta, others struggle when it comes to ad transparency
Originally appeared here:
Apple, Google, Meta, others struggle when it comes to ad transparency -
The best weapons in Fallout 4 and where to find them
The sprawling wasteland of Fallout 4 can be tough without a solid shooter at your side. Luckily, we’ve discovered where you can the best weapons can be found.Go Here to Read this Fast! The best weapons in Fallout 4 and where to find them
Originally appeared here:
The best weapons in Fallout 4 and where to find them