logo
#

Latest news with #AIcollaboration

Shifting Sands: UAE's Business Evolution Amid US Uncertainty
Shifting Sands: UAE's Business Evolution Amid US Uncertainty

Forbes

time03-07-2025

  • Business
  • Forbes

Shifting Sands: UAE's Business Evolution Amid US Uncertainty

Forced or organically, the world continues to evolve beyond the United States. It's not the United States is less important – it's just that our constant policy swings from Republican to Democrat Administration's and back have pushed the rest of the world to plan for a less US-centric world, to develop their own markets and trade partnerships, and invest in the industries of the future. At the recent Make it in the Emirates conference in Abu Dhabi, the ambivalence of the world towards the United States was on clear display. On the one hand, UAE officials – from government leaders to investment funds and corporate leaders, were bullish on the United States after the successful visit by President Trump's to the region a few weeks ago. The UAE announced a $10 billion collaboration on artificial intelligence with the United States - officially to build modern AI chips and create joint research facilities. In reality, the UAE will be building data centers for US companies, subsidizing the energy costs of AI, and will receive tech transfer in return. But both sides hope that it leads to greater research collaboration down the line. On the other hand, the 500 exhibitors at the event – manufacturers of everything from autos to food products, were not talking about US markets. They were talking about expansion towards Asia – (South Asia, East Asia and Australia), and towards Eastern Europe, Turkey and the Central Asian republics. The most common refrain was that the United States might changes the rules in the middle of the game – and that's if they even get visas to do business. Financiers line up to support UAE Manufacturing Alongside manufacturers, the banking and financial sectors had a strong presence, including home-grown fintech's providing a range of services to consumers and business. These were not just government-backed entities, but also consumer-facing fintechs, vendor financing arms and family offices. An interesting startup that has been rapidly growing in the UAE is amana, a fintech company with over 350,000 users and rapid recent growth. Founded in 2022 by Zaid Aboujeh and Karim Farra, a Wharton MBA and YPO member, amana is an online platform for trading stocks, crypto and other assets. When US tariffs were announced, traders flocked to its site to quickly adjust their portfolios; benefiting from the ability to balance their portfolios across multiple assets, including crypto, in one platform – an opportunity not available historically to many in the region. With uncertainty in the mainstream economy, it's not a surprise that crypto trading has been a key growth driver this year as well. amana has over 450 coins available for trading and investing - with 68% of amana's active traders engaging in crypto alongside other assets, while 20% trade only crypto. In a region that has long limited access to capital to the connected, elite and certain national groups– amana and others are democratizing market access and providing services for a rapidly growing financial ecosystem. The UAE, Saudi Arabia, Qatar and other countries in the region have two advantages that fintech's like amana can take advantage of – a strong digital public infrastructure where most residents are connected electronically, and a large population from South Asia that is very comfortable with online banking and fintech services. Beyond that, amana says that 20% of its usage last year came from Lebanon, and future growth will come from large, emerging markets in the region, including Egypt, Bahrain, Qatar and Jordan. The Founders of amana There are other signs that the UAE and other nations are clearly taking advantage of US policy fluctuations to build their own competitive advantages. Dubai and Abu Dhabi have both greatly expanded their free trade zones to attract businesses from other nations hit by the Trump tariffs. If a company can legitimately establish itself in the UAE, it can bypass harsh Trump tariffs and access UAE government-backed financing for business creation, expansion and manufacturing. For most businesses seeking access to global markets, this is really a win-win. As immigration policies tighten in the United States, many highly skilled professionals are exploring opportunities in the Gulf. Countries like the UAE are actively attracting global talent through strategic initiatives such as their AI partnership with the US – designed to support advanced research in state-of-the-art facilities. For many researchers, especially in nearby hubs like Bangalore, the Gulf offers both proximity and access to cutting-edge infrastructure without the barriers often faced when seeking entry into the US. The growth of startups like amana, the investments in the manufacturing and tech sectors, alongside free trade zones and an improved financial ecosystem suggest a country, and region, committed to growth. Similar growth is occurring across the GCC, including Saudi Arabia and Qatar. The implications for the United States may not be much at first glance. The Trump Administration has backed off on tariffs just as fast as its announced them in many cases. As a result, the UAE and other nations may not have time to launch all of these efforts to take advantage of US policy – there may be a completely different policy in place in 4 months and certainly again in 3 years. But that uncertainty makes the investment all the more critical for them and concerning to the United States.

Prompt Templating and Techniques in LangChain for Smarter AI Responses
Prompt Templating and Techniques in LangChain for Smarter AI Responses

Geeky Gadgets

time16-06-2025

  • Business
  • Geeky Gadgets

Prompt Templating and Techniques in LangChain for Smarter AI Responses

What if you could transform the way language models understand and respond to your queries, making them not just tools but true collaborators in your projects? The art of prompt design holds this power, yet it's often underestimated. A poorly crafted prompt can lead to irrelevant, vague, or even misleading outputs, while a well-designed one can unlock a model's full potential. Enter LangChain—a framework that doesn't just simplify prompt creation but transforms it. With its dynamic templates and advanced tools, LangChain enables users to build smarter, more adaptable applications. Whether you're summarizing dense reports, automating customer support, or creating personalized learning experiences, the right prompts can make all the difference. The question is: are you using them effectively? James Briggs explores the essentials of prompt templating and uncover techniques that elevate your interactions with language models. You'll discover how LangChain's unique features—like dynamic prompt generation and chaining—allow you to scale your applications without sacrificing precision or creativity. We'll also delve into real-world examples that illustrate the fantastic potential of thoughtful prompt design, from streamlining workflows to enhancing user engagement. By the end, you'll not only understand the mechanics of effective prompts but also gain actionable insights to refine your approach. After all, the way you ask a question can be just as important as the answer you receive. What Is Prompt Templating? Prompt templating involves crafting structured input prompts to guide language models toward generating desired responses. By carefully designing prompts, you can influence the model's behavior to align with specific objectives. For instance, a well-constructed prompt can help a model summarize intricate documents, create engaging content, or answer queries with accuracy and relevance. LangChain improves this concept by allowing the creation of reusable, dynamic templates that adapt to varying inputs. This adaptability is essential for scaling applications that demand consistent, high-quality outputs from language models. By using LangChain's tools, you can ensure that your prompts remain effective across diverse use cases, saving time and improving efficiency. Key Techniques for Effective Prompt Design Designing prompts that yield optimal results requires a balance of clarity, context, and precision. Below are proven techniques to enhance your prompt design: Define the task clearly: Clearly state the task or question to avoid ambiguity. A well-defined prompt ensures the model understands the objective, reducing the likelihood of irrelevant or inaccurate responses. Clearly state the task or question to avoid ambiguity. A well-defined prompt ensures the model understands the objective, reducing the likelihood of irrelevant or inaccurate responses. Provide sufficient context: Include background information or examples to guide the model toward the desired outcome. For example, when summarizing a document, specify the target audience or key points to emphasize. Include background information or examples to guide the model toward the desired outcome. For example, when summarizing a document, specify the target audience or key points to emphasize. Use structured formats: Organize prompts with bullet points, numbered lists, or sections to make them easier for the model to interpret. Structured prompts improve clarity and help the model focus on specific elements. Organize prompts with bullet points, numbered lists, or sections to make them easier for the model to interpret. Structured prompts improve clarity and help the model focus on specific elements. Experiment with phrasing: Test different versions of the same prompt to identify which wording produces the best results. Iterative testing can reveal subtle changes that significantly impact the model's performance. LangChain simplifies this process by offering tools to create, test, and refine prompts, making sure you can iterate efficiently and achieve consistent results. LangChain Prompt Templating Explained Watch this video on YouTube. Dive deeper into LangChain with other articles and guides we have written below. How LangChain Enhances Prompt Optimization LangChain provides a comprehensive set of tools designed to streamline prompt templating and improve the performance of language models. These features include: Dynamic prompt generation: Create templates that adapt to various inputs, reducing redundancy and improving efficiency. This flexibility allows you to handle diverse scenarios without manually rewriting prompts. Create templates that adapt to various inputs, reducing redundancy and improving efficiency. This flexibility allows you to handle diverse scenarios without manually rewriting prompts. Integration with external data: Enrich prompts by incorporating data from APIs, databases, or other sources. Providing the model with richer context enhances its ability to generate accurate and relevant outputs. Enrich prompts by incorporating data from APIs, databases, or other sources. Providing the model with richer context enhances its ability to generate accurate and relevant outputs. Chaining prompts: Link multiple prompts together to handle complex workflows, such as multi-step reasoning or document analysis. This feature is particularly useful for tasks requiring sequential logic or layered responses. These capabilities enable you to fine-tune your prompts, making sure higher accuracy and relevance in the model's outputs. LangChain's tools are designed to support both novice and experienced users, making prompt optimization accessible and effective. Strategies for Maximizing Model Performance While effective prompt design is crucial, optimizing language model performance involves additional strategies. Consider the following approaches to achieve the best results: Select the right model: Different models excel at different tasks. Choose a model that aligns with your application's specific needs to maximize performance and efficiency. Different models excel at different tasks. Choose a model that aligns with your application's specific needs to maximize performance and efficiency. Optimize token usage: Keep prompts concise to avoid exceeding token limits, which can lead to incomplete or truncated outputs. Conciseness ensures the model focuses on the most critical information. Keep prompts concise to avoid exceeding token limits, which can lead to incomplete or truncated outputs. Conciseness ensures the model focuses on the most critical information. Evaluate and iterate: Regularly assess the quality of the model's responses and refine your prompts based on performance insights. Continuous evaluation helps identify areas for improvement and ensures consistent results. LangChain supports these strategies with tools for monitoring and analyzing interactions, allowing you to refine your workflows and achieve optimal outcomes. Real-World Applications of Prompt Templating Prompt templating has demonstrated its value across a wide range of industries, driving innovation and efficiency. Below are some practical examples of its application: Customer support: Automate responses to frequently asked questions by designing prompts that address specific customer needs. This approach improves response times and enhances customer satisfaction. Automate responses to frequently asked questions by designing prompts that address specific customer needs. This approach improves response times and enhances customer satisfaction. Content creation: Generate blog posts, marketing copy, or social media content with prompts tailored to your brand's tone and style. Customized prompts ensure consistency and creativity in your content. Generate blog posts, marketing copy, or social media content with prompts tailored to your brand's tone and style. Customized prompts ensure consistency and creativity in your content. Data analysis: Summarize reports, extract insights, or create visualizations by guiding the model with structured prompts. This application streamlines complex data processing tasks. Summarize reports, extract insights, or create visualizations by guiding the model with structured prompts. This application streamlines complex data processing tasks. Education: Develop interactive learning tools by crafting prompts that simulate tutoring or provide personalized feedback. Educational prompts can enhance engagement and support individualized learning experiences. These use cases highlight how prompt templating can enhance productivity, scalability, and innovation across diverse domains. By using LangChain's tools and techniques, you can unlock new possibilities for language model applications. Media Credit: James Briggs Filed Under: AI, Guides Latest Geeky Gadgets Deals Disclosure: Some of our articles include affiliate links. If you buy something through one of these links, Geeky Gadgets may earn an affiliate commission. Learn about our Disclosure Policy.

DOWNLOAD THE APP

Get Started Now: Download the App

Ready to dive into a world of global content with local flavor? Download Daily8 app today from your preferred app store and start exploring.
app-storeplay-store