Add Row
Add Element
cropper
update
AIbizz.ai
update
Add Element
  • Home
  • Categories
    • AI Trends
    • Technology Analysis
    • Business Impact
    • Innovation Strategies
    • Investment Insights
    • AI Marketing
    • AI Software
    • AI Reviews
Add Row
Add Element
April 21.2025
3 Minutes Read

Why Updating Old SAS Programs with PROC LOESS Matters for AI Learning

Heatmap showing sulfate deposits over geographical area

Understanding the Importance of Updating SAS Programs

SAS programmers often take pride in the longevity of their code, ensuring that programs written decades ago still run smoothly. This capability can be both a blessing and a curse. While it alleviates the need for constant code revision, it can hinder programmers from embracing modern advancements. As technology progresses, so do the tools and techniques available for data analysis, and revisiting old SAS programs can yield significant benefits. Updating old code not only fosters efficiency but also enhances visualization and analysis through more contemporary methods.

Modernizing SAS with PROC LOESS: A Unique Case Study

A recent case study highlights the benefits of updating SAS programs, particularly those utilizing the LOESS procedure—a method used for smoothing data. This analytical technique proves useful for visualizing trends, especially in geographical datasets like sulfate deposits across the United States. With programs such as SAS evolving over the years, incorporating recent features not only simplifies code but makes it far more efficient and effective in producing clear visual representations.

Graphical Evolution: Incorporating New Features

The transition from traditional graphing procedures like GPLOT to more innovative methods such as the Graph Template Language (GTL) and PROC SGPLOT showcases the evolution of SAS programming. By adopting these newer tools, users can create cleaner, more informative visualizations. For instance, a recent example demonstrated a PROC LOESS application in which older procedures have been substituted with PROC SGPLOT, which supports complex graphical outputs without cluttered coding.

Benefits of Updated Visualization Techniques

One of the significant advantages of using modern techniques is the ability to enhance data presentation. As seen in the sulfate deposit analysis, the use of PROC SGPLOT made it possible to create visually appealing graphs that are not only simpler to produce but also offer more flexibility for adjustments. Options like COLORRESPONSE=SO4 allow for gradient coloring based on data values, enhancing reader engagement and comprehension.

The Importance of Continuous Learning in AI

In many ways, updating SAS programs parallels the learning journeys in AI education. As artificial intelligence continues to evolve, the pathways for learning are constantly being refined. Just as SAS programmers must stay informed about enhancements to optimize their code, modern learners in AI must remain vigilant about emerging concepts and methodologies to stay relevant in this rapidly changing field. Pursuing an AI learning path today can provide a robust education necessary for succeeding in future tech landscapes.

Looking Forward: Trends on the Horizon

As we stand on the brink of technological advancements, the future of programming—including SAS—is closely tied to the adoption of artificial intelligence and machine learning tools. The speed at which these tools evolve will likely influence how programming languages and procedures adapt and improve their functional capabilities. The next iteration of SAS, anticipated to launch with SAS 9.4M9, is expected to incorporate AI features that further streamline data analysis and visualization.

By embracing continuous updates to their skills and tools, programmers can better navigate the growing complexities of data science and analytics. As they sharpen their understanding of tools like PROC LOESS, they also align themselves with the larger movement toward incorporating AI learning and innovations into their workflows.

Actionable Insights for SAS Programmers and AI Learners

For those involved in the SAS community as well as AI learners, the principle remains the same—stay adaptable. Regularly revisiting and updating old code not only keeps skills sharp but also opens doors to revised techniques that promote clearer insights from data. Meanwhile, those venturing into AI can benefit from practical updates as they define their own learning paths.

Technology Analysis

0 Views

0 Comments

Write A Comment

*
*
Related Posts All Posts
06.14.2025

Transform Spare Parts Inventory Management with AI Technology Insights

Update Understanding the Need for Optimized Inventory Management In today's fast-paced industrial environment, managing spare parts inventory effectively is essential for maintaining asset performance and minimizing downtime. The costs associated with equipment failure can escalate quickly, making predictive maintenance strategies critical. However, uncertainties surrounding equipment failures pose a significant challenge, driving industries to hold more inventory than necessary. This article explores how integrating AI technology into spare parts inventory management can streamline processes, reduce waste, and enhance service delivery. A Simulated Approach to Optimize Inventory Levels At the heart of optimizing spare parts inventory lies a simulation-based approach, particularly leveraging SAS's programming capabilities. By employing tools such as PROC LIFEREG and PROC LIFETEST, organizations can accurately model asset lifetimes using statistical distributions, specifically the Weibull distribution. This modeling not only helps predict failures but also incorporates uncertainty in failure events, allowing companies to tailor their inventory strategies effectively. Practical Insights on Stochastic Simulation The integration of stochastic simulation into inventory planning allows decision-makers to visualize various failure scenarios. This predictive capability is essential for understanding key performance metrics such as availability and backlog. For instance, an airline fleet might set a target of having 95% of asset failures fulfilled from its inventory without delay—an important performance indicator known as the Type 1 service level or fill rate. By achieving this balance, businesses can significantly cut costs while meeting operational needs. The Data-Driven Analytics Advantage Utilizing a comprehensive approach that combines descriptive, predictive, and prescriptive analytics can dramatically enhance inventory decisions. Descriptive analytics sheds light on historical trends, while predictive analytics helps forecast future needs. Most importantly, prescriptive analytics offers recommendations on optimal inventory levels based on these insights. Real-World Application: Case Study in Fleet Optimization Consider a fleet of aircraft where each asset must be replaced upon failure. By analyzing historical removal data, businesses can track operational hours and failure incidents to robustly predict inventory requirements. The data-driven methods enable firms to optimize spare parts inventory levels—leading to improved asset uptime and diminished costs. Future Predictions: The Impact of AI on Inventory Management As AI technology continues to evolve, the future of spare parts inventory management will likely see even greater integration of machine learning algorithms. By automating inventory decisions and utilizing real-time data analytics, businesses can enhance efficiency and reduce reliance on manual interventions. This continual improvement may redefine industry standards and results in unprecedented gains in asset performance management. Conclusion: Embracing the Future of Spare Parts Management The journey towards effective spare parts inventory optimization is crucial for industries reliant on high asset performance. By leveraging simulation-based techniques and evolving AI technologies, companies can meet the challenges posed by uncertainties in equipment performance. Those looking to modernize their inventory practices should focus on integrating these technologies, which not only foster innovation but also yield substantial cost savings and improved service levels. To learn more about how to optimize your spare parts inventory and implement AI technologies effectively, explore the available resources in AI learning paths that cater to innovators in your industry.

06.14.2025

Unlock Accuracy in Machine Learning with Hyperparameter Tuning Fun

Update Understanding Hyperparameter Tuning in AI Building a machine learning model isn’t just about plugging in data and hitting the train button. It’s deeply nuanced, requiring fine-tuning to achieve that coveted accuracy. Hyperparameter tuning serves as a crucial step in enhancing the performance of your machine learning model. But how can you ensure that your model reaches its peak potential while navigating complex variables? Let’s decode that mystery while exploring the fun aspects of tuning! Making Sense of Hyperparameters Think of hyperparameters like the ingredients in a recipe. Just as changing the oven temperature can alter how a cake turns out, tweaking hyperparameters will affect how well your model learns from data. Hyperparameters are values you set before training a model; they dictate how the model will be trained. For example, consider parameters like learning rate, batch size, and the number of estimators in a tree-based model. Setting these values appropriately is vital, as it can significantly impact your model’s performance. AI Learning and Its Potential As we delve into the world of AI learning, understanding hyperparameter tuning brings us closer to harnessing artificial intelligence’s full potential. Even a 1% boost in accuracy can notably sway results in various applications, from predicting stock trends to diagnosing medical conditions. As our reliance on AI grows, so does the need for sophisticated models that learn effectively without overfitting or becoming overly complex. Hyperparameter Autotuning: The Smart Approach Manual tuning of hyperparameters can be a cumbersome process. Imagine trying to bake a cake again and again, adjusting the temperature and time for each attempt. Not very efficient, right? However, with hyperparameter autotuning, you can let your computer handle the tedious work. It tests multiple combinations of hyperparameters and identifies what works best for your model. This saving of time and effort allows data scientists to focus on more strategic tasks, leveraging AI’s capabilities to automate decisions about model parameters. Overfitting: A Key Challenge While tuning is essential for model improvement, there's a flip side. Overfitting your model to your training data can yield excellent results on paper but fails spectacularly in real applications. It’s like making a cake that tastes amazing to you, but when your friends try to recreate it with their ingredients, it can go awry. A successful model must generalize well across different datasets, maintaining accuracy without being overly tailored to the training data. The Future of Hyperparameter Tuning Looking ahead, innovations in AI science suggest that hyperparameter tuning will become more user-friendly with the integration of AI itself. Imagine algorithms that can predict optimal hyperparameters based on previous learning experiences! As we advance, we may also see educational pathways in AI aiming to make hyperparameter tuning accessible even to beginners. Who knows, the next ground-breaking AI tool could be just around the corner, simplifying yet another layer of complexity. Actionable Insights for Better Models As you embark on your AI journey, remember: tuning is not just a technical necessity but an opportunity for creativity. Don’t shy away from experimentation! Gather feedback from each model iteration and use the insights to fine-tune your process. Whether it’s in finance, healthcare, or any other sector, improved accuracy can translate to significant gains—both financially and operationally. Join the AI Learning Path Today The landscape of AI is rapidly changing, and by understanding hyperparameter tuning, you're gaining crucial insights that could reshape your AI learning path. Whether you’re a seasoned data scientist or just dipping your toes into the AI waters, mastering these concepts will empower you to create more effective machine learning models. Embrace the fun of the learning journey and explore how your newfound skills can impact your career path!

06.13.2025

Unlock AI Potential: Master Smarter Data Management with SAS Viya

Update Understanding the Backbone of AI: Data Management In the world of artificial intelligence (AI), a fundamental principle remains: AI is only as powerful as the data behind it. Often encapsulated in the phrase "garbage in, garbage out," the means by which data is collected, managed, and utilized greatly influences the quality of AI outcomes. Poor data management leads to flawed models, biased predictions, and opaque decision-making processes, consequently impacting organizational effectiveness. As businesses transition to more AI-integrated operations, a solid data management foundation becomes essential. The Reality of Data Management Challenges Despite the urgency for AI readiness, many organizations face significant hurdles in basic data management. A recent study by DBTA revealed that only 40.9% of enterprises take a proactive approach to their data management strategies. This discrepancy exposes various issues, such as siloed data, inefficient data pipelines, and inconsistent governance practices, which collectively hinder the potential of AI projects. Casper Pedersen, SAS’ Data Lead in EMEA, identifies six prevalent challenges disrupting effective data management frameworks across industries, including data infrastructure complexity and storage inefficiency. The inability to efficiently manage data often leads to stalled AI pilots, frustrating teams eager to demonstrate the ROI of their technological investments. Common Challenges in Data Management Let’s further explore the specific challenges organizations face in making their data fit for AI initiatives: Data Infrastructure Complexity: As different teams utilize various data formats, complexities emerge in data structures. Schema drift can break models and bog down pipelines, resulting in increased cloud costs and sluggish performance. SAS SpeedyStore addresses these issues by unifying different data types into a single, efficient engine, allowing data engineers to focus more on developing models rather than managing chaotic data flows. Storage Inefficiency: Many teams are caught between the high cost of fast storage and the performance issues associated with cheap storage. Legacy storage solutions often struggle to efficiently manage data, often leading to organizations effectively 'paying through the nose' for their data, even when it is infrequently used. The Integral Role of SAS Viya SAS Viya offers various tools to tackle these common pain points through innovative data management solutions. By streamlining processes and reducing reliance on multiple tools, organizations can create more efficient AI frameworks. With SAS Viya, enterprises can: Consolidate different data types for a holistic view. Optimize AI performance through in-memory computing. Achieve real-time analytics capabilities, ensuring timely decision-making. Future Perspectives on Data Management and AI The evolving landscape of AI necessitates a shift towards smart data management practices. Companies focused on integrating solutions like SAS Viya are likely to experience a competitive edge as they better manage their data inputs. As AI continues to develop, firms that prioritize establishing robust data infrastructures may find themselves at the forefront of industry innovation. Actionable Insights for Businesses Organizations should evaluate their current data management strategies against the challenges outlined above. Companies are encouraged to: Conduct a data maturity assessment to identify existing gaps. Invest in integrated data management solutions such as SAS Viya. Empower data teams with tools that reduce complexity and promote efficiency. As enterprises grapple with evolving technologies, understanding the interplay between data management and AI capabilities can shape their future successes. Transforming how data is managed is not just about remaining relevant; it's about survival in a technology-driven marketplace. Businesses that take steps now to create a robust data management foundation can position themselves to leverage the potential of AI fully, aligning themselves with future industry standards. Conclusion In a world where AI technologies play an increasing role, recognizing and overcoming data management challenges can unlock new potentials for businesses. To navigate the complexities and reap the benefits of AI, companies should proactively seek solutions that offer clarity and efficiency in their data management strategies.

Add Row
Add Element
cropper
update
AI Market News
cropper
update

The latest news and updates on AI technology. This blog is meant to be used to get more information and insight into AI.

  • update
  • update
  • update
  • update
  • update
  • update
  • update
Add Element
Add Element
Add Element

ABOUT US

We keep people up to date on the AI industry in regards to AI software, marketing, applications and practical uses.

Add Element

© 2025 Divine Web Consultants All Rights Reserved. 8595 Pelham Rd Suite 400 #721, Greenville, SC 29341 . Contact Us . Terms of Service . Privacy Policy

{"company":"Divine Web Consultants","address":"8595 Pelham Rd Suite 400 #721","city":"Greenville","state":"SC","zip":"29341","email":"support@divinewebconsultants.com","tos":"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","privacy":"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"}

Terms of Service

Privacy Policy

Core Modal Title

Sorry, no results found

You Might Find These Articles Interesting

T
Please Check Your Email
We Will Be Following Up Shortly
*
*
*