logo
Beloved Oregon outdoor store to close all locations

Beloved Oregon outdoor store to close all locations

Daily Mail​13-05-2025

A long-standing outdoor store is closing all of its Oregon locations, marking the latest business casualty in Portland as crime remains at 'historic heights'. Next Adventure, a beloved outdoor gear store founded by childhood friends Deek Heykamp and Bryan Knudsen in 1997, swiftly grew into a 'beloved Portland institution' throughout its three decades in operation, making nearly $24 million in annual sales at its peak, Portland Business Journal reported. The business eventually expanded to four locations across Oregon - its flagship store in Portland's Central Eastside, another in Sandy, and two paddle centers in Portland and Columbia County.
However, all four locations are set to close later this year, the owners announced Monday afternoon. 'We're entering a very uncertain time, there are challenges and we're in our 60s,' Heykamp told the Business Journal. 'So when you're in uncertain times, and you make decisions as a leader, it's my and Bryan's responsibility to look at our business and make good decisions on how we can build stability and build the best possible outcome for everybody,' he added.
'And after a lot of work, we came up that this is the right direction to go.' Next Adventure began in a 1,600-square-foot retail space on S.E. Grand Avenue, selling used outdoor gear. Over the years, the company became an iconic Portland business. Its flagship store was particularly known for its 'Bargain Basement', featuring heavily discounted supplies and closeout sales.
This year marks the end of an era for the childhood friends, who considered selling the business but ultimately decided that, given the struggles in retail, closing up shop would be the smartest move. Citing 'uncertain times' and 'challenges' as factors in the decision, Heykamp described 'the current business climate and the challenges that we face as an industry, as a nation and as a city', as reported by the Business Journal. 'There's macroeconomics, there's big things, there's little things, there's interest rates, there's all kinds of things that we as business people face,' he told the outlet.
As the store officially closes, Next Adventure will hold a retirement store closing sale, with all outdoor gear inventory available for purchase starting May 28. While no exact closing date has been scheduled, the company stated that, 'due to the large volume of merchandise, it is anticipated that the sale will last into the summer', according to the Business Journal. The owners are now encouraging anyone who has made outdoor memories thanks to the store to stop by one last time and grab a deal before their next adventure.
'When we travel for trade shows, we have had people come up to us in the airport and tell us their story of how, because of Next Adventure, for the first time they were able to get out skiing or snowboarding or go hiking,' Heykamp told the Business Journal. 'That's got to be at the top of my list of favorite moments,' he added. 'Ones where we know that we touched people's lives.' 'The fact that we started this business to hang out together and to do fun adventures together, and now we get to do that full time in retirement, it sounds pretty exciting to me.'
Next Adventure's closure will be a particularly big blow for the city, as Portland and its stunning Oregon surroundings have long been hugely-popular among outdoorsy types. However, its just the latest business in Portland to close its doors, particularly in the outdoor retail sector. After nearly two decades, outdoor gear co-op REI closed its only Portland location, choosing not to renew the lease on its Pearl District building.
The reasoning was simple: rising security costs due to the increasing crime and theft plaguing the city. In a 2023 letter to members, the retailer said it would close the city's downtown store, which has ' had its highest number of break-ins and thefts in two decades '. REI spent $800,000 on additional security in 2022, and said that it did not believe a downtown Portland location would be possible in the near future. Six percent of burglary callouts in downtown Portland in 2022 were to REI, according to KOIN News. In November of that year, a car rammed its storefront during a dramatic robbery.
REI installed new safety glass, spent heavily on security guards and even stationed a 24-hour security trailer outside its store in a bid to stop theft - but all to no avail. At the time, the company's move was just the latest in a string of retailers pulling out of the city amid skyrocketing crime. Cracker Barrel, Walmart and Nike all closed stores in the area, citing underperformance and theft. 'In recent years, Portland has been dealing with increased crime in our neighborhood and beyond,' the 2023 letter to members read. Public data showed that since the pandemic, more than 2,600 downtown businesses have filed changes of address with the US Postal Service to leave their downtown ZIP codes.
While Portland has seen improvement in overall crime rates, issues continue to persist downtown at 'historic heights' - particularly with car and retail theft, according to Axios. However, a recent survey showed that efforts to revitalize the city are having an impact, with the majority of residents expressing increased optimism about the future, citing improvements in public safety and cleanliness, KOIN News reported . 'Organized crime is having a hard time doing business downtown and that's exactly what we want,' Downtown Portland Clean & Safe Executive Director Mark Wells told the outlet. 'A year ago, you would walk around, it would be very common to see open drug use and open drug dealing,' he added. 'It still exists, for sure, but it's dramatically decreased, and that adds to that sense of safety and security.'
Downtown Portland Clean & Safe, a non-profit providing 24-hour dispatch and cleaning services, has left nearly all 300 participating business satisfied with the results. According to the survey, business experiencing theft and shoplifting incidents dropped from 47 percent in 2023 to 30 percent in 2024. The number of businesses reporting the need to repair windows or any other physical damage dropped from 67 percent in 2023 to 47 percent in 2024. Additionally, 57 percent of businesses expressed a renewed comfortability about being located downtown. However, there are still areas in need of improvement. While nearly half of business reported employees quitting due to safety concerns in 2023, the figure reduced to just under one-third last year. 'We saw about a 17 percent decrease in those numbers,' Wells told the outlet. 'But a third, you know, that's still too high.'
Want more stories like this from the Daily Mail? Visit our profile page and hit the follow button above for more of the news you need.

Orange background

Try Our AI Features

Explore what Daily8 AI can do for you:

Comments

No comments yet...

Related Articles

Master the Art of Prompt Engineering and Unlock AI's Full Potential
Master the Art of Prompt Engineering and Unlock AI's Full Potential

Geeky Gadgets

time18 minutes ago

  • Geeky Gadgets

Master the Art of Prompt Engineering and Unlock AI's Full Potential

What if mastering a single skill could transform the way you interact with AI, unlocking its full potential to solve problems, generate ideas, and streamline tasks? Welcome to the world of prompt engineering, a discipline that's quickly becoming indispensable in the age of artificial intelligence. Whether you're a curious beginner or a seasoned user, crafting the right prompts can mean the difference between mediocre results and new insights. Think of it as learning to ask the perfect question—one that guides AI to deliver exactly what you need, every time. This how-to, brought to you by Matthew Berman, is your roadmap to mastering this critical skill, from foundational principles to advanced techniques. Matthew Berman uncovers the secrets to creating clear, specific, and relevant prompts that drive consistent and high-quality outputs. You'll also explore advanced strategies, like iterative refinement and contextual framing, that can elevate your AI interactions to new heights. Along the way, we'll tackle common challenges, share practical examples, and reveal tips for optimizing prompts across diverse applications—from content creation to data analysis. By the end, you won't just understand prompt engineering—you'll be equipped to use it as a powerful tool to amplify your work and ideas. So, what makes a prompt truly effective? Let's explore the answer together. Mastering Prompt Engineering Understanding Prompt Engineering and Its Significance Prompt engineering involves designing and refining inputs—referred to as 'prompts'—to guide AI models in generating accurate and relevant outputs. The quality of a prompt directly impacts the AI's performance. For example, a well-constructed prompt can enable an AI to summarize complex topics, generate innovative ideas, or solve technical problems with precision. By mastering this skill, you can unlock the full potential of AI systems across diverse applications, such as content creation, data analysis, and customer support. Effective prompt engineering ensures that the AI delivers outputs that align with your objectives, making it an indispensable tool in using AI technology. Core Principles for Crafting Effective Prompts Creating effective prompts requires adherence to three fundamental principles: clarity, specificity, and relevance. These principles form the foundation of successful prompt engineering. Clarity: A clear prompt eliminates ambiguity, making sure the AI understands your request. For instance, instead of saying, 'Explain this,' specify what 'this' refers to and the type of explanation you require. A clear prompt might be, 'Explain the concept of renewable energy in simple terms.' A clear prompt eliminates ambiguity, making sure the AI understands your request. For instance, instead of saying, 'Explain this,' specify what 'this' refers to and the type of explanation you require. A clear prompt might be, 'Explain the concept of renewable energy in simple terms.' Specificity: Narrowing the scope of your request reduces the likelihood of irrelevant or generic responses. For example, instead of asking, 'Describe renewable energy,' you could say, 'List three advantages of solar energy compared to fossil fuels.' Narrowing the scope of your request reduces the likelihood of irrelevant or generic responses. For example, instead of asking, 'Describe renewable energy,' you could say, 'List three advantages of solar energy compared to fossil fuels.' Relevance: Align your prompt with the AI model's capabilities. Understanding the strengths and limitations of the system is crucial for crafting prompts that yield meaningful results. For example, some models excel at creative writing, while others are better suited for technical analysis. By applying these principles, you can create prompts that are actionable and precise, leading to more effective and reliable outputs. Prompt Engineering Guide : From Beginner to Advanced Watch this video on YouTube. Take a look at other insightful guides from our broad collection that might capture your interest in prompt writing. Advanced Techniques for Refining Prompts Refining prompts is an iterative process that involves testing and improving their effectiveness. Advanced techniques can help you fine-tune prompts for greater precision and relevance, especially when working on complex tasks. Iterative Adjustments: Analyze the AI's initial responses to identify areas for improvement. If the output is too vague, revise the prompt to include more detailed instructions. For example, instead of 'Explain climate change,' you might say, 'Explain the primary causes of climate change and their impact on global ecosystems.' Analyze the AI's initial responses to identify areas for improvement. If the output is too vague, revise the prompt to include more detailed instructions. For example, instead of 'Explain climate change,' you might say, 'Explain the primary causes of climate change and their impact on global ecosystems.' Contextual Framing: Adding context or constraints to your prompt can guide the AI toward more accurate and relevant responses. For instance, specifying 'Assume the audience is unfamiliar with technical jargon' helps the AI tailor its output for a non-technical audience. Adding context or constraints to your prompt can guide the AI toward more accurate and relevant responses. For instance, specifying 'Assume the audience is unfamiliar with technical jargon' helps the AI tailor its output for a non-technical audience. Layered Prompts: For complex tasks, use a series of prompts to guide the AI step by step. For example, start with 'Create an outline for a report on renewable energy,' followed by 'Expand on each section of the outline with detailed explanations.' These techniques allow you to refine prompts systematically, making sure that the AI delivers outputs that meet your expectations. Strategies for Iterative Optimization Prompt optimization is a continuous process that involves experimentation and refinement. A systematic approach can help you develop prompts that consistently deliver high-quality results. Experiment with Variations: Test different phrasing, formats, and structures to determine which version produces the best results. For example, compare the effectiveness of an open-ended question versus a directive statement for the same task. Test different phrasing, formats, and structures to determine which version produces the best results. For example, compare the effectiveness of an open-ended question versus a directive statement for the same task. Maintain a Prompt Log: Keep a record of prompts and their corresponding outputs. This helps you track what works, identify patterns, and build a library of effective prompts for future use. Keep a record of prompts and their corresponding outputs. This helps you track what works, identify patterns, and build a library of effective prompts for future use. Evaluate Outputs: Assess the AI's responses based on criteria such as relevance, coherence, and completeness. For instance, if the goal is to generate a persuasive argument, check whether the output includes logical reasoning, evidence, and a clear conclusion. By following these strategies, you can refine your prompts over time, making sure consistent and reliable performance from the AI. Addressing Common Challenges in Prompt Engineering Even with careful crafting, prompts may sometimes fail to produce satisfactory results. Understanding common challenges and their solutions can help you troubleshoot effectively. Vague or Irrelevant Outputs: Revisit the prompt's clarity and specificity. Ensure the instructions are explicit and provide additional context if needed. For example, instead of 'Describe this topic,' specify, 'Describe the benefits of renewable energy with three examples.' Revisit the prompt's clarity and specificity. Ensure the instructions are explicit and provide additional context if needed. For example, instead of 'Describe this topic,' specify, 'Describe the benefits of renewable energy with three examples.' Overly Generic Responses: Add constraints or request more detail. For instance, instead of 'Explain renewable energy,' you could say, 'Explain renewable energy with a focus on solar and wind power.' Add constraints or request more detail. For instance, instead of 'Explain renewable energy,' you could say, 'Explain renewable energy with a focus on solar and wind power.' Task Complexity: Break down large tasks into smaller, manageable components. For example, instead of asking the AI to 'Write a detailed report,' divide the task into sections, such as 'Create an outline' and 'Expand on each section.' By addressing these challenges systematically, you can refine your prompts to achieve better outcomes and more precise results. Maximizing the Potential of AI Models To fully use AI models, it is essential to align your prompts with the model's strengths. Some models excel at creative tasks, such as storytelling or brainstorming, while others are better suited for analytical or technical challenges. Familiarize yourself with the specific capabilities of the AI system you are using and tailor your prompts accordingly. Additionally, staying informed about advancements in AI technology can help you adapt your prompt engineering techniques. As models evolve, new features and capabilities may become available, offering opportunities to enhance your interactions with AI systems. By combining a deep understanding of the model's capabilities with effective prompt engineering techniques, you can maximize the value of AI in your work and achieve superior outcomes. Media Credit: Matthew Berman 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.

Claude 4 Models & Claude Code Fundamentals : What You Need to Know
Claude 4 Models & Claude Code Fundamentals : What You Need to Know

Geeky Gadgets

time18 minutes ago

  • Geeky Gadgets

Claude 4 Models & Claude Code Fundamentals : What You Need to Know

What if artificial intelligence could not only understand your most complex questions but also respond with the precision and nuance of a human expert? Enter the Claude 4 models—a new leap in AI technology that's redefining what's possible in natural language processing. With their ability to generate context-aware, human-like text and tackle intricate tasks across industries, these models are more than just tools; they're collaborators. Whether summarizing dense reports in seconds or crafting personalized learning experiences, Claude 4 models promise to transform the way we interact with technology. But what makes them so uniquely powerful? The answer lies in their sophisticated architecture and innovative design principles, which balance innovative advancements with practical adaptability. In this video, Tina Huang unpacks the core fundamentals of Claude 4 models, from their fantastic Claude Code architecture to the technical innovations that set them apart. You'll discover how these models achieve unparalleled contextual understanding, adapt seamlessly to diverse applications, and integrate effortlessly into existing workflows. Whether you're a tech enthusiast curious about the latest in AI or a professional exploring practical applications for your industry, this guide offers insights that are both accessible and deeply informative. As we explore the inner workings and real-world potential of Claude 4, one question lingers: how far can this technology take us in bridging the gap between human ingenuity and machine intelligence? Overview of Claude 4 Key Features of Claude 4 Models Claude 4 models distinguish themselves through their ability to process and generate human-like text with remarkable accuracy. Their design emphasizes advanced contextual understanding and adaptability, allowing them to tackle diverse tasks and complex queries effectively. Some of the standout features include: Contextual Understanding: These models excel at interpreting nuanced language patterns, making sure responses are both relevant and precise. These models excel at interpreting nuanced language patterns, making sure responses are both relevant and precise. Task Versatility: From summarizing extensive documents to generating creative content, Claude 4 models adapt seamlessly to a variety of use cases. From summarizing extensive documents to generating creative content, Claude 4 models adapt seamlessly to a variety of use cases. Industry Applicability: Their capabilities extend across sectors such as healthcare, finance, education, and more, showcasing their broad utility. For example, these models can summarize dense reports in seconds, craft engaging marketing content, or answer intricate technical questions with clarity. Their ability to adapt to specific domains highlights their versatility and practical value. The Claude Code Architecture At the core of Claude 4 models lies the Claude Code architecture, a robust framework that combines scalability with modularity. This architecture is built on transformer-based neural networks, making sure efficient processing of large datasets while maintaining high accuracy. The key architectural principles include: Modularity: The architecture allows for seamless updates and enhancements without disrupting existing functionalities, making sure long-term adaptability. The architecture allows for seamless updates and enhancements without disrupting existing functionalities, making sure long-term adaptability. Pre-Training and Fine-Tuning: Pre-training exposes the model to vast datasets to establish a foundational understanding of language, while fine-tuning tailors it to specific tasks or industries. Pre-training exposes the model to vast datasets to establish a foundational understanding of language, while fine-tuning tailors it to specific tasks or industries. Scalability: The design supports integration into diverse systems, making sure consistent performance across varying workloads and environments. This dual approach of pre-training and fine-tuning ensures that the models are both flexible and highly specialized, meeting the unique needs of different users and industries. The Claude Code architecture is a testament to the balance between innovation and practicality in AI design. Claude 4 Models & Claude Code Fundamentals Overview Watch this video on YouTube. Here are more detailed guides and articles that you may find helpful on Claude 4 models. Technical Advancements in Claude 4 Claude 4 models introduce several technical innovations that enhance their performance, efficiency, and usability. These advancements include: Improved Computational Efficiency: Optimized algorithms reduce processing time while maintaining high levels of accuracy, making the models faster and more reliable. Optimized algorithms reduce processing time while maintaining high levels of accuracy, making the models faster and more reliable. Enhanced Scalability: The models can handle larger datasets and more complex queries without compromising performance, making sure robust functionality in demanding scenarios. The models can handle larger datasets and more complex queries without compromising performance, making sure robust functionality in demanding scenarios. Refined Contextual Comprehension: Advanced NLP techniques improve the models' ability to understand and respond to nuanced inputs, making interactions more natural and intuitive. Advanced NLP techniques improve the models' ability to understand and respond to nuanced inputs, making interactions more natural and intuitive. Error-Handling Mechanisms: Real-time error detection and correction ensure reliable outputs, even in challenging or ambiguous situations. Real-time error detection and correction ensure reliable outputs, even in challenging or ambiguous situations. Reinforcement Learning: The models continuously improve by learning from user feedback, adapting to evolving needs and preferences over time. These innovations make Claude 4 models not only more efficient but also more adaptable to dynamic environments. Their ability to evolve ensures they remain relevant as user requirements and technological landscapes change. Watch this video on YouTube. Seamless System Integration A defining strength of Claude 4 models is their ease of integration into existing systems. Designed for compatibility, these models work seamlessly with APIs and cloud-based solutions, minimizing the need for extensive reconfiguration. The benefits of this seamless integration include: Ease of Deployment: Organizations can quickly incorporate the models into their workflows with minimal effort, reducing implementation time and costs. Organizations can quickly incorporate the models into their workflows with minimal effort, reducing implementation time and costs. Platform Compatibility: Claude 4 models are designed to function across various platforms, making sure broad accessibility and usability. Claude 4 models are designed to function across various platforms, making sure broad accessibility and usability. Customizable Applications: Businesses can tailor the models to specific use cases, enhancing operational efficiency and delivering targeted solutions. For instance, customer service platforms can use Claude 4 models to provide instant, accurate responses to inquiries, while educational tools can use their capabilities to create personalized learning experiences. This flexibility makes them a valuable asset across industries. Applications Across Industries The versatility of Claude 4 models is evident in their wide-ranging applications across multiple sectors. Some notable use cases include: Healthcare: Assisting in diagnosing medical conditions by analyzing patient data and providing evidence-based recommendations, improving patient outcomes. Assisting in diagnosing medical conditions by analyzing patient data and providing evidence-based recommendations, improving patient outcomes. Finance: Automating tasks such as fraud detection, risk assessment, and financial forecasting, enhancing decision-making processes. Automating tasks such as fraud detection, risk assessment, and financial forecasting, enhancing decision-making processes. Education: Developing personalized learning tools, creating interactive educational content, and improving the overall learning experience for students. Developing personalized learning tools, creating interactive educational content, and improving the overall learning experience for students. Creative Industries: Generating content, designing marketing strategies, and aiding in product development, fostering innovation and creativity. Their ability to replicate human creativity and adapt to specialized tasks makes them indispensable in both technical and creative fields. By addressing specific challenges and streamlining workflows, Claude 4 models empower organizations to achieve greater efficiency and innovation. Media Credit: Tina Huang Filed Under: AI, Top News 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.

Musk says he regrets some posts he made about Trump
Musk says he regrets some posts he made about Trump

BreakingNews.ie

time36 minutes ago

  • BreakingNews.ie

Musk says he regrets some posts he made about Trump

Billionaire Elon Musk said on Wednesday he regrets some of the posts he made last week about US president Donald Trump as they went "too far". Mr Trump and Mr Musk began exchanging insults last week on social media, with the Tesla and SpaceX chief executive describing the president's sweeping tax and spending bill as a "disgusting abomination". Advertisement Mr Trump said on Saturday their relationship was over but has since said that he would not have a problem if Mr Musk called and wished him well. "I regret some of my posts about President Donald Trump last week. They went too far," Mr Musk wrote in a post on his social media platform X. He did not say which specific posts he was talking about. Tesla shares in Frankfurt were up 2.44 per cent after Mr Musk's post. Since the dispute began, Mr Musk has deleted some social media posts critical of Trump, including one signalling support for impeaching the president, and another suggesting Mr Trump is in the Jeffrey Epstein files. Sources close to Mr Musk had said his anger has started to subside, and that they believe he may want to repair his relationship with Mr Trump.

DOWNLOAD THE APP

Get Started Now: Download the App

Ready to dive into the world of global news and events? Download our app today from your preferred app store and start exploring.
app-storeplay-store