Tuesday, June 18, 2024

The Ascendancy of Large Language Model Development Companies

Large language model development companies are at the forefront of exciting advancements in artificial intelligence. Each large language model development company pushes the boundaries of how machines understand and generate human language, employing sophisticated neural networks to create models that excel in numerous tasks with exceptional accuracy.

Geniusee stands out as a leading company in this sector, utilizing their proficiency in custom software solutions to propel the development and application of large language models (LLMs) across various industries.

Decoding Large Language Models


Photo credits: https://geniusee.com/single-blog/comparison-of-generative-ai-tools-for-development-and-prompt-engineering

Large language models are advanced deep learning models trained on enormous datasets. They leverage transformer architectures comprising encoders and decoders equipped with self-attention mechanisms. This self-attention capability allows models to grasp the relationships between words and phrases within a text, making them highly effective in tasks such as text generation, summarization, and translation.

Transformers process entire sequences of text simultaneously, unlike traditional recurrent neural networks (RNNs) that handle inputs sequentially. This parallel processing capability significantly reduces training time and facilitates the creation of extremely large models with hundreds of billions of parameters. These parameters empower the models to ingest and learn from vast datasets sourced from the internet, including repositories like Common Crawl and Wikipedia.

Diverse Applications of Large Language Models

Large language models are incredibly versatile, finding applications across numerous fields.

Content Creation and Copywriting:

These models can generate high-quality written content based on input prompts, revolutionizing industries like marketing and journalism by saving time and resources while maintaining quality.

Knowledge Base Responses

LLMs can efficiently retrieve and provide precise answers to specific questions by tapping into extensive digital archives. This capability is invaluable for customer support and information services.

Sentiment Analysis and Text Classification

Businesses can use LLMs to analyze customer feedback, monitor social media sentiment, and classify text based on sentiment or topic, thereby improving products and services.

Automated Code Generation

LLMs can translate natural language prompts into code, assisting developers by automating routine coding tasks and generating scripts in multiple programming languages.

Multilingual Translation and Text Completion

These models facilitate the translation of text between languages and the completion of incomplete sentences, enhancing communication and accessibility.

Training Nuances of Large Language Models

The training of LLMs involves several stages, including zero-shot, few-shot, and fine-tuning learning methods. Zero-shot learning enables models to handle diverse requests without explicit training, while few-shot learning improves performance with a few relevant examples. Fine-tuning further hones the model's parameters using additional data tailored to specific applications.

LLMs are trained on vast quantities of high-quality data, where the models continuously tweak their parameters to improve the accuracy of predicting the next token in a sequence. This self-learning approach enables LLMs to generate human-like text and adapt to various tasks with remarkable efficiency.

Future Prospects of Large Language Models

The potential of LLMs to revolutionize industries is vast. Here are some ways these models are set to make a significant impact.

  • In healthcare, LLMs can assist in diagnosing medical conditions by analyzing patient records and medical literature and enhancing telehealth services with accurate and up-to-date medical information. They can also support healthcare providers by offering insights into the latest medical research and treatment options, improving patient outcomes.
  • In retail, they can predict customer preferences, allowing businesses to provide personalized recommendations and targeted promotions, thereby boosting sales and customer loyalty. Retailers can also use LLMs to analyze purchasing trends and optimize inventory management, reducing costs and increasing efficiency.
  • In finance, financial advisors can leverage LLMs to analyze market data and trends, provide timely and accurate investment advice, and improve risk management. Banks and financial institutions can use these models to automate customer service and fraud detection, enhancing security and customer satisfaction.
  • In Legal Services, LLMs streamline legal research by retrieving relevant case laws and legal precedents, minimizing the time and effort needed for legal professionals to prepare cases. They can also help draft legal documents and contracts., ensuring accuracy and compliance with regulations.
  • In Education, they personalize learning experiences by generating tailored educational content based on a student's progress and needs, assisting educators in creating lesson plans and grading assignments. Educational institutions can use LLMs to create adaptive learning platforms tailored to individual learning styles, improving student engagement and outcomes.

Addressing Challenges and Ethical Concerns

While LLMs offer numerous benefits, they also present challenges and ethical considerations.

Bias and Fairness

LLMs can inadvertently propagate biases present in training data. Ensuring fairness and mitigating bias is crucial for responsible deployment. Developers need to implement strategies for detecting and correcting biases, fostering equitable and inclusive AI systems.

Privacy and Security

Large datasets often contain sensitive information. Protecting user privacy and data security is essential to maintain trust and comply with regulations. Robust encryption, anonymization, and access controls are necessary to safeguard data and prevent unauthorized access.

Misuse and Accountability

The robust capabilities of LLMs can be exploited for harmful purposes, including creating fake news or deepfakes. Implementing safeguards and establishing accountability is necessary to prevent misuse. Developers and policymakers must collaborate to create ethical guidelines and regulatory frameworks for the use of LLMs.

Conclusion

Large language model development companies are charting a course for a future where AI-driven applications perform tasks with human-like accuracy and efficiency. Geniusee is among the vanguard in this field, leveraging their expertise to develop and deploy LLMs that enhance various industries, from healthcare to finance. As this technology evolves, its influence on our daily lives will increase, presenting both new opportunities and challenges.

The journey of LLMs is just beginning, and the possibilities are endless. By embracing this technology and addressing its challenges, businesses can achieve new heights of innovation and efficiency. Now is the time to explore the potential of large language models and harness their power to transform your operations. Companies that invest in LLMs today will be well-positioned to lead in the AI-driven future, reaping the benefits of enhanced productivity, creativity, and decision-making capabilities.

For those looking to stay ahead of the curve, partnering with a forward-thinking large language model development company like Geniusee can provide the expertise and support needed to successfully integrate LLMs into your business strategy. By leveraging state-of-the-art AI technology, Geniusee can help you navigate the complexities of LLM development and implementation, ensuring that your organization remains competitive in an increasingly digital world.


by Web Desk via Digital Information World

Analyzing iOS 18's Threat to Third-Party Apps: $393M Revenue at Stake

Apple’s WWDC always leaves app developers wondering which of their apps will be replaced by new iOS features. This practice is known as “sherlocking” and goes back to when Apple introduced Sherlock 3, which was a clone of the third party app Watson.

With iOS 18 Apple is going to integrate several app features directly into the system with Apple Intelligence. This will impact many apps, especially those with over 1K monthly downloads, according to a year of Appfigures data. The impacted apps have earned about $393M and had 58M downloads last year.

Trail apps like AllTrails are most at risk from new iOS features offering offline trail maps and recommendations. These apps make up 78% of the “sherlocked” revenue and 40% of the downloads, with user spending up 28% and downloads up 32% from last year.

Grammar helper apps, led by Grammarly, will also be impacted. These apps earned $35.7M with 9.4M downloads last year and will now compete with Apple’s integrated AI tools. User spending was up 40% and downloads up 23% from the previous year.

Math solving and emoji making apps are also at risk. Math apps earned $23M with 9.5M downloads, emoji apps earned $7M with 10.6M downloads. Password managers are more impacted by traditional software changes as iOS 18 introduces a Passwords app for seamless use across Apple devices. These apps saw 48% increase in downloads and 38% increase in revenue over the past year.

But there is hope for developers. A smarter Siri in iOS 18 can help apps stand out with new features. Even with new Apple tools, third party apps that offer more value will continue to attract users. Developers who update their apps can still thrive, using Siri and Apple Search Ads for growth.

Critics say Apple’s approach of bringing third-party app features into iOS is actually killing competition, not innovation. “Sherlocking” not only limits developer growth but also gives Apple more control over the app store. That’s competition and diversity of ideas, gone.

It looks like innovation is slowing across Apple’s products, with updates being incremental rather than revolutionary. How long will Apple maintain its innovation pace and diversity of ideas? Balancing core features with external app support is key to being an innovator and having innovation in the ecosystem.




This post was created and fact-checked using AI-writing assistants and human reviewers.

Read next: Global Concern: 52% of US and 63% of UK Express Discomfort with AI-Generated News
by Unknown via Digital Information World

Monday, June 17, 2024

The New Way to Advertise your Brand is Through Comments of Social Media Posts

Marketers are adopting new marketing strategies to attract customers by running campaigns in places where users spend the most time on social media. Many users love commenting on social media posts and about 49% of the users which were surveyed by the YouGov Study for March 2023 said that they always prefer a social media platform where there is a commenting option available. 54.2% of the Gen-Z spend their time on social media to like and comment on different posts.

Many users in the comments like to ask for information about a specific product (45%), according to a survey by YPlus in February 2024. About 75% of the people who were surveyed also said that most of the replies in the comment section of a post give best recommendations. Now brands are making their marketing strategies in a way that attracts customers through the comment section. Instagram and TikTok are trying some ways to implement strategies that can bring more engagement to posts through the comment section. Commenting on posts can also impact the number of followers on the account.

Brands are also trying to advertise their products through group chats. Many users have group chats on different social media accounts. About 53.3% Gen-Z in America use social media for directing messaging on various platforms like Instagram, WhatsApp and Discord. Brands want to somehow get inside the group chats but that is not possible. Meta is thinking of ways to further monetize WhatsApp. In a recent interview, Mark Zuckerberg said that the number of WhatsApp users in the USA is growing rapidly and can reach 67.7 million by the end of 2024.


Chart: emarketer

Source: Analyst Forecasts 58 Billion Queries from AI Overview by 2024, $17 Billion Ad Revenue by 2027
by Arooj Ahmed via Digital Information World

How To Use Google Docs Secret Feature to Detect AI Content Writing

The emergence of AI, particularly ChatGPT has elevated the the bar of intelligence, with the unprecedented ability to collect information, and make logical sense, something that even humans may find difficult to do. AI tools have tremendously helped people from different walks of life and professions with greater productivity, creative thinking, and innovative solutions. But at the same time, such tools have made us too dependent upon them, almost making our brains rot and dusty.

In retaliation to AI tools, mainly ChatGPT, many people have pushed the development of software to prevent AI use in different professions and job spaces, mainly those that require creativity, whether it be, content writing, news reporting, office presentations, sales pitches, or graduation speeches.

Software like GPTZero and OrignalityAI have successfully ensured and fulfilled their task to accurately detect AI written ratio. However, these tools are not totally free, as they require paid subscriptions after the use of free credits and points.

But do not worry, in this article, we will guide you how to use Google Docs to detect AI in any writing without using any paid tool. Before going into the details, an overview of this method is that the person whose AI you want to detect must use Google Docs (from scratch) and they must share the editable doc version with you, which will allow you to see all their past history of changes in the document and if AI is used, then it will appear in large blocks with fewer edits and short timeline (i.e. hundreds of words in just few minutes or seconds, which is something an authentic human writer mostly don't do).

Note, if the writer is using any other content editor and pasting content from other platforms then this method is not going to help in AI detection, so it is advised that students and writers stick to only Google Docs for their all writing work from zero with ideally just 1 device and user id, so that it could produce an inspectable editing history, which will help editors see how the content is produced.

So, here is the detailed explanation of how to use Google Docs to detect AI written content, weather you are a educator, teacher or a person who manages team of content writers.

Step 1:

The writer should share the editable Google Doc version with you (if you are a content manager).

This is done by looking at the top right corner (on PC devices), where you’ll find the Share button with a lock icon on its. While same can be done on mobile devices but with just a little bit of variation in settings/appearance.

Uncover AI-Written Text with Google Docs' Edit Tracking

Click on share, a new window will pop up, in the new window under the "General Access" section click on the "Restricted" dropdown menu, and change it "Anyone with the link".


Now with the updated permission setting the Doc. file can be viewed by anyone, but outsiders can only view that Doc and can't edit it or see its history. Now we need to adjust the role setting. Which is available right next to the "Anyone with the link" option as "Viewer".

Google Docs reveals AI writing by tracking edits: large text blocks with few changes signal AI.

Click on "Viewer" drop down option and then select "Editor" role. Once the Editor is selected, click on the copy link to save it on a clipboard and share it with the person responsible for auditing the content. (These were the instruction a writer/student or anyone creating the content should follow to make the Doc. file viewable and editable).

Step 2:

This step is for managers or teachers who want to know if AI has been used in their work or not.
First, you must access the Google Doc file by clicking on the link provided by the author/writer. Then go to the top left corner and select the File dropdown option, now find/select "Version history" and then click on See version history. Alternatively, you can quickly access this with a keyboard shortcut "Ctrl + Alt + Shift + H" on windows and "⌘ + Option + Shift + h" on mac devices.  

Using Google Docs to detect AI: version history shows quick, unedited content typical of AI.

Upon selecting it on the right-hand side, the previous version history will pop up, allowing you to see all the changes a writer made.

How To Use Google Docs Secret Feature to Detect AI

Now, coming to the most important point of how AI content can be detected. Well, it's pretty simple. An AI-generated work (most of the time) will not have a major version history since no (or very few) edits would have been made, and all the paragraphs will show all at once as if it has been copied and pasted. This will be a direct indication that writers or students have used AI.
On other side, a legit human crafted article or paper will show a detailed timeline of edits, which ideally shows several revisions, typos, and grammar mistakes made from start to finish, followed by the process of error fixation. Google Docs is good at recording and showing this in the history timeline Below is an example of an authentic document, more likely written by a human. 

Google Docs' Version history feature is a handy tool that can help content managers and educators detect AI patterns in student's assignments and writer's tasks. Human writers mostly have a decent history of edits and timeline that shows paragraph by paragraph movement (with appropriate time duration) and error fixations along the way, while most of the AI generated content lacks such editing history as it shows no or very few versions in timeline, with nearly no errors or fixation in the process.



It's important to note that if you are a new content editor or manager it might take you some time to understand how the Google Doc's Version history works and how you can use to discern human or an AI pattern. For context, it works just like a Layers and History option of Adobe Photoshop or any other modern photo editing tool, in Photoshop the layers panel lists all the objects while history panel help users go back and forth in time to restore their desired work at anytime. Just like that Google Doc's Version history feature helps user restore any previously added/removed text. However, in our case we can use to detect if writers/students are being honest with their use of AI-written content. 

While using AI software like ChatGPT for tasks that enhance human productivity should be encouraged—such as brainstorming ideas, improving rewriting structures, or quickly summarizing long documents—the mindless use (or abuse) of artificial intelligence chatbots and other tech tools is a significant problem. It corrupts human morality and critical thinking abilities.

Read next: 

Is Your Smartphone Eavesdropping? Here's How to Protect Your Privacy
by Ahmed Naeem via Digital Information World

Global Concern: 52% of US and 63% of UK Express Discomfort with AI-Generated News

Today the world is worried about the impact of AI on news and misinformation. A new report from the Reuters Institute for the Study of Journalism shows the problems news organizations are facing as they try to reach their audiences.

The report, based on surveys of nearly 100,000 people across 47 countries, shows newsrooms are struggling to make money and keep people interested, especially with new tech like AI. Google and OpenAI are building tools that can summarize news and pull readers away from traditional news sites.

Many are wary of AI producing news, especially when it comes to sensitive topics like politics. In the US, 52 percent respondents said they would be uncomfortable with mostly AI generated news, in the UK it’s even higher (63 percent). However, even with all that fuss about AI, people are more okay with AI helping journalists do their job better.


Nic Newman who led the research was surprised how many are worried about AI affecting the reliability and trust of news. Concerns about fake news have also gone up recently, especially in places like South Africa and the US where elections are coming up soon.

Another big issue is that not many people want to pay for news online. Despite a small uptick during the pandemic, only 17% of people in 20 countries pay for news online and that number hasn’t changed in three years.

Social media influencers, especially on platforms like TikTok, are now playing a big role in how people get their news. Around 57% of TikTok users who follow news there pay attention to individual personalities rather than traditional news sources. Newsrooms have to figure out how to connect directly with their audience and use these platforms well, especially to reach younger people.

For example Vitus “V” Spehar, a TikTok creator with millions of followers, is popular for delivering news while lying under a desk. This is a far cry from how news is presented on TV. The report also found that popular news figures in the US like Tucker Carlson and Joe Rogan are more known for their opinions on politics than for actual reporting.

Read next:

• Google Integrates AI in Chrome History, Privacy Issues Arise

• How We Can Save The Environment by Extending The Smartphone Lifetime

• From SIM to eSIM: The Next Step in Digital Evolution

• 12 Best Online Resources For Digital Marketers and SEOs (2024)

by Asim BN via Digital Information World

Google Integrates AI in Chrome History, Privacy Issues Arise

Google is rolling out AI across all its products and Chrome is part of that. Recently they added AI to the browsing history feature in Chrome. This means AI will be used to help you find and retrieve websites you’ve visited before. But this has raised questions about how much AI should have access to and learn from our browsing history and data.

For example, paying for cloud backups is seen as an annoyance until you lose or have your device stolen and the backup saves your data. Similarly, AI in Chrome’s History Search will help you find web pages based on the content not just the page title or URL. Last week a research Leopeva64 discovered signs of this new AI feature but details were still unclear.

Luckily Chrome is evolving and Google has updated the History Search feature. According to the update, you’ll soon be able to search your browsing history based on the actual content of web pages. This will make browsing history search much faster whether you’re browsing through the History page or searching directly from the address bar using '@history' followed by keywords.
Despite the benefits, the AI in browsing history raises valid privacy concerns. Leopeva64’s discovery showed Google’s acknowledgement of this through a disclaimer. It says Google and its human reviewers may access certain data such as search terms, content from relevant web pages and AI-generated outputs. Google assures that this data is encrypted and stored locally on your device to support the History Search feature.


While AI needs data to work, privacy conscious users will find these disclosures uncomfortable. Locally processing data on the device would be more private. This is similar to Microsoft’s Copilot AI’s Recall feature which was criticized and delayed due to similar privacy concerns.

The acceptance of Chrome’s History Search feature will depend on if it’s an optional feature or a default one to speed up AI development. User reaction will be key since the feature is still under development by Google, so we have to watch and wait, for now.

Read next: Analyst Forecasts 58 Billion Queries from AI Overview by 2024, $17 Billion Ad Revenue by 2027

by Web Desk via Digital Information World

Sunday, June 16, 2024

How We Can Save The Environment by Extending The Smartphone Lifetime

With global temperature increasing every passing year, resulting in famine, droughts, tsunamis, and making several countries severely hot, climate change is the biggest concern among people. People have protested over the decades to push political and social change towards more eco-friendly choices on the societal and individual levels to prevent global warming. Such changes include moving towards renewable energy, consuming less meat to stop the release of methane gas, and many more.

Since every collective effort counts, no matter how small it may be, we as humans have the moral obligation to save and prevent the nature of the world from deteriorating.

A little fact that I’m sure you won’t be aware of is that in Germany, almost 20 million smartphones are sold each year, according to the BitKom report, and what's even more staggering is the fact that 8% of Germany’s CO2 emission is due to communication technologies.

A recent scientific peer-reviewed paper by the Wuppertal Institute titled Circularity as the Service discussed detailed, comprehensive mechanisms and strategies in which you can extend the lifespan of your smartphones to reduce CO2 emissions. The paper also argued that most people buy cell phones due to their deterioration and reduced functionality.

The paper further mentioned that even though German people replace their smartphones at an average of 2.5 years, if the public can extend it to 5 to 7 years, we can reduce the carbon emission produced by these gadgets by half. If the lifespan of smartphones is increased, the demands can be significantly reduced.
In fact, an Austrian survey found that users want to use their smartphones for longer periods of time, around 5 years, rather than to replace them every 2.5 years.

As per the Environmental Product Declaration, the production phase causes 80% of the CO2 emission and this can be reduced if fewer phones are produced. The report also found the types of smartphone users to give a better perspective to the phone manufacturer to what type of phones are bought by the public so they can provide all the needs in a smartphone that can last over several years.

The paper categorizes smartphone users into groups: approximately 10% to 15% prioritize sustainability, 25% to 30% are pragmatists, and 20% to 25% prioritize aesthetics and high performance. This segmentation helps manufacturers understand consumer preferences and develop smartphones that meet durability expectations over several years.

Furthermore, the suggestion of repairability was majorly highlighted in the paper, emphasizing that smartphone companies must provide repair services for modular and designed parts at cheap rates. Additionally, security suggestions were also made to be at least 7 years because so far, android devices provide security for 4 years and Apple for 6 years.

Well, there you have it folks, another great way to protect our nature and at the same time save yourself the mental strain and the financial cost to buy a new smartphone every other 2 to 3 years.


Read next: From SIM to eSIM: The Next Step in Digital Evolution
by Ahmed Naeem via Digital Information World