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Scaling Projects with AI Software Development Services, AI Development Solutions, and AI-Based Software Development

Introduction

Scaling projects has become a critical challenge for modern enterprises, where speed, efficiency, and innovation define success. AI software development services, AI development solutions empower businesses to accelerate delivery, reduce costs, and improve scalability. By leveraging automation and intelligent systems, organizations can transform project execution and stay competitive in fast-changing markets.  

The blog below helps you explore the key benefits, challenges, real-world applications, and best practices for implementing AI in project scaling. 

What Is AI in Software Development and Why It Matters for Scaling Projects?

1. Definition of AI Software Development Services

AI software development services refer to the design, deployment, and management of intelligent systems that enhance the capabilities of traditional software. These services range from custom AI applications tailored to business needs, to machine learning models that learn from data and continuously improve performance. They also include automation solutions and full-scale enterprise AI platforms designed to support complex, large-scale operations. 

The scope of AI software development extends beyond coding; it integrates data engineering, cloud infrastructure, and security compliance to ensure enterprise readiness. Businesses adopting these services can automate routine processes, optimize workflows, and deliver smarter, faster applications. In essence, AI software development services provide the foundation for organizations seeking to scale projects with precision and agility. 

2. Core Technologies Powering AI-Based Software Development

The effectiveness of AI-based software development is rooted in four core technologies: machine learning, natural language processing (NLP), computer vision, and generative AI. Machine learning algorithms enable predictive insights and automated decision-making, while NLP powers chatbots, sentiment analysis, and multilingual support. Computer vision allows software to interpret images and video, driving innovations in quality control, healthcare diagnostics, and security. 

Generative AI adds a transformative dimension by creating content, code, and design prototypes, reducing development cycles and enabling rapid experimentation. These technologies are often combined within AI development solutions to deliver end-to-end capabilities for businesses. Together, they represent the technical backbone that makes scaling through AI not only possible but also sustainable. 

3. The Strategic Role of AI Development Solutions in Scaling Projects

AI development solutions are strategic because they directly address the biggest barriers to scaling time, cost, and complexity. By automating repetitive tasks, predicting risks, and optimizing resource allocation, AI accelerates project delivery without requiring proportional increases in human effort. This creates a multiplier effect; companies can handle more projects at a fraction of the time and cost. 

Beyond operational efficiency, AI solutions unlock new levels of innovation by enabling data-driven decision-making and adaptive system design. Enterprises using AI can personalize customer experiences, pivot strategies in real time, and outperform competitors in fast-moving markets. In this way, AI development solutions move beyond tools, they become core drivers of growth and scalability across industries. 

4. Key Industry Trends in AI Software Development Adoption 

AI software development adoption is surging as businesses seek greater automation, intelligence, and scalability. The global AI software platform market is estimated at around USD 26.65 billion in 2025, with forecasts projecting growth to USD 88 billion by 2034 at a CAGR of 14.2%. Meanwhile, broader forecasts for AI software and tools suggest a market of USD 127 billion in 2024, expanding at 28.2% CAGR to reach nearly USD 440 billion by 2029.   

Another major trend is the rapid expansion of enterprise AI adoption, with market projections ranging from USD 97 billion in 2025 to USD 229 billion by 2030 (CAGR 18.9%) in some analyses. Organizations are increasingly shifting from pilot projects to enterprise-wide deployments, with AI-as-a-Service (AIaaS) platforms lowering entry barriers and making AI more accessible. Companies are also emphasizing ROI-driven adoption, tracking gains in time-to-market, cost efficiency, and customer impact as primary metrics. 

Business Benefits of AI Software Development for Scaling 

1. Accelerated Time-to-Market with AI Development Solutions

AI development solutions streamline the software lifecycle by automating repetitive tasks such as code generation, testing, and deployment. This significantly reduces the time required to move from concept to production, allowing businesses to respond quickly to changing market demands. Faster releases translate into a competitive edge, especially in industries where speed defines success. 

Beyond automation, AI tools also provide predictive insights to identify potential roadblocks early in the process. This allows development teams to adjust proactively, minimizing delays and improving overall efficiency. By accelerating time-to-market, AI software development services ensure that enterprises can innovate continuously while maintaining high delivery standards. 

2. Cost Efficiency Through AI-Based Software Development

AI-based software development reduces costs by minimizing reliance on manual labor and optimizing resource allocation. Intelligent systems handle repetitive and labor-intensive tasks, allowing teams to focus on high-value activities. As a result, companies achieve greater output with fewer resources, lowering operational expenses. 

Additionally, predictive analytics embedded in AI development solutions help prevent costly errors and downtime. By improving accuracy in decision-making and automating quality control, businesses avoid unnecessary expenditures on rework and inefficiencies. This cost-efficiency enables organizations to scale sustainably without inflating budgets. 

3. Improved Decision-Making with AI Software Development Services

AI software development services integrate advanced analytics to provide real-time visibility into operations and customer behavior. Machine learning models analyze vast datasets to uncover hidden patterns, enabling more informed strategic choices. Decision-makers gain access to predictive insights that support faster and more accurate responses to dynamic market conditions. 

Beyond operational data, AI can incorporate external signals such as customer sentiment or industry trends. This holistic view empowers leaders to align projects with both short-term needs and long-term objectives. By embedding intelligence into every layer of development, AI transforms decision-making from reactive to proactive. 

4. Enhancing Customer Experiences with AI Development Solutions

AI development solutions enable personalization at scale, allowing businesses to tailor services and products to individual preferences. Recommendation engines, powered by machine learning, boost customer satisfaction and increase conversion rates. Meanwhile, chatbots and virtual assistants provide seamless, 24/7 support in multiple languages. 

These AI-driven customer engagement tools not only improve satisfaction but also enhance loyalty over time. By analyzing feedback and behavioral data, companies can continuously refine offerings to meet evolving expectations. This ability to create dynamic, customer-centric experiences gives enterprises a decisive advantage in competitive markets.

5. Scalability and Flexibility Through AI-Driven Solutions

AI-driven solutions allow businesses to expand operations without linearly increasing costs or resources. Automated workflows and adaptive algorithms adjust to fluctuating demand, ensuring consistent performance even during rapid growth. This flexibility is particularly valuable for enterprises managing multi-regional or multi-channel projects. 

Furthermore, cloud-based AI software development services provide infrastructure that can scale up or down effortlessly. Enterprises benefit from elastic resources, reduced downtime, and the ability to launch new features faster. This scalable foundation ensures that organizations can pursue growth opportunities without being constrained by traditional limitations. 

Challenges of Scaling Projects Without AI Development Solutions 

1. Legacy Systems Limiting Innovation and Agility

Many enterprises still rely on legacy systems that are difficult to integrate with modern technologies. These outdated infrastructures slow down project delivery and limit the adoption of innovative AI-based software development practices. As a result, businesses struggle to remain agile in fast-evolving markets. 

Legacy systems also pose high maintenance costs, draining resources that could otherwise fuel innovation. Their lack of flexibility makes it challenging to deploy new applications at scale or adapt to changing customer expectations. Without AI-driven modernization, organizations risk falling behind competitors that adopt scalable and adaptive solutions. 

2. Talent Shortages in AI and Software Development

The global demand for skilled AI and software developers continues to outpace supply. Many organizations face difficulties in hiring and retaining talent with expertise in machine learning, NLP, or advanced automation. This shortage directly impacts the ability to scale projects efficiently and cost-effectively. 

Even when talent is available, competition drives salaries upward, further inflating project budgets. Smaller enterprises are particularly disadvantaged, as they lack the resources to compete with larger firms in securing top talent. Without AI development solutions to bridge this gap, growth opportunities remain constrained. 

3. Operational Inefficiencies in Traditional Development Models

Traditional software development models rely heavily on manual workflows, which slow down productivity. From testing to deployment, human intervention at every stage introduces delays and errors. These inefficiencies make it difficult to scale projects quickly or manage larger workloads. 

AI-driven automation addresses these pain points, but without it, enterprises must dedicate disproportionate time and resources to repetitive tasks. This reduces overall output and hinders the ability to deliver projects on time. Inefficient processes not only affect scalability but also reduce competitiveness in the market. 

4. Data Management Issues in AI-Based Software Development

Scaling projects requires reliable access to large volumes of high-quality data. However, many organizations face challenges with siloed systems, poor data governance, and fragmented information sources. This limits the effectiveness of both traditional and AI-based solutions. 

Without a robust data strategy, businesses cannot generate accurate insights or train effective AI models. Data inconsistencies create risks of poor decision-making, compliance failures, and reduced project outcomes. Addressing these issues is critical for organizations aiming to leverage AI software development services effectively. 

5. Risks of Relying on Conventional Software Development Services

Conventional software development often lacks the agility needed to handle rapid scaling. These methods cannot easily adapt to fluctuating demand, new technologies, or evolving customer needs. As a result, enterprises relying solely on traditional approaches face higher risks of stagnation. 

In addition, conventional models limit personalization and innovation, which are now essential for customer retention and competitive differentiation. By contrast, AI development solutions enable adaptive, customer-centric, and data-driven strategies. Ignoring this shift exposes businesses to lost opportunities and declining relevance in their industries. 

Specific Applications of AI in Scaling Software Development Projects

1. AI-Driven Code Generation and Automated Testing

AI-driven code generation tools, such as AI copilots, help developers produce high-quality code faster by automating repetitive tasks. This shortens the software development lifecycle (SDLC), allowing teams to focus on solving complex problems rather than writing boilerplate code. Automated testing ensures continuous integration and early detection of bugs, reducing costly rework. 

By embedding AI in testing frameworks, enterprises can run thousands of test cases in minutes instead of hours. This not only speeds up release cycles but also improves software reliability and performance at scale. The result is faster delivery of innovative products without compromising quality. 

GitHub Copilot, powered by OpenAI’s Codex, assists developers by suggesting context-aware code snippets in real time. Companies adopting Copilot have reported higher productivity and reduced error rates in code delivery. This showcases how AI-enabled development tools can accelerate project scaling in real-world environments. 

2. Intelligent Project Management with AI Development Solutions 

AI development solutions are revolutionizing project management by providing predictive insights into timelines, workloads, and risks. Machine learning models analyze historical project data to forecast potential delays and optimize sprint planning. This helps managers allocate resources more effectively while minimizing bottlenecks. 

Beyond forecasting, AI tools enhance collaboration by automating reporting and progress tracking. They generate actionable insights that allow stakeholders to adjust strategies quickly. By integrating intelligence into project management systems, organizations achieve higher efficiency and more predictable outcomes. 

Atlassian’s Jira, enhanced with AI-powered project tracking, uses machine learning to predict delivery dates based on task dependencies and team velocity. Teams leveraging these insights experience fewer missed deadlines and improved sprint efficiency. This demonstrates the practical impact of intelligent project management on scalability.

3. Customer-Centric AI Applications for Scalable Experiences

Customer-facing AI applications help enterprises deliver personalized experiences at scale. Recommendation engines analyze user behavior to suggest relevant products or services, driving higher engagement and conversions. Chatbots and virtual assistants provide 24/7 multilingual support, ensuring seamless customer interactions. 

Personalization also improves retention by aligning services with individual needs. Unlike traditional systems, AI applications learn continuously, refining recommendations and responses over time. This ability to serve millions of customers with tailored experiences is a cornerstone of scalable growth. 

Netflix employs AI recommendation algorithms that account for user history, preferences, and contextual viewing patterns. These systems are credited with influencing over 80% of content streamed on the platform. This illustrates how AI personalization can significantly scale engagement and customer satisfaction.

4. AI-Powered DevOps and Infrastructure Automation

AI in DevOps enables smarter cloud scaling and infrastructure monitoring. Algorithms detect anomalies, predict resource spikes, and automate provisioning, ensuring applications run smoothly during demand fluctuations. This reduces downtime and enhances resilience in large-scale deployments. 

Self-healing systems, powered by AI, can automatically identify and resolve issues before they impact users. This proactive approach minimizes manual intervention and reduces the risk of critical failures. By embedding intelligence into DevOps pipelines, organizations gain both scalability and reliability. 

Amazon Web Services (AWS) employs AI-powered monitoring tools like Amazon DevOps Guru to detect anomalies in application behavior. Enterprises using it report faster incident resolution and reduced operational overhead. This highlights how AI-powered DevOps can deliver scalable and efficient infrastructure management. 

5. Predictive Analytics and Risk Management with AI Solutions

Predictive analytics helps businesses anticipate future market shifts and operational risks. By analyzing historical and real-time data, AI models forecast demand trends, identify potential bottlenecks, and recommend preemptive actions. This empowers organizations to stay ahead of uncertainties while scaling. 

In risk management, AI systems detect anomalies that signal fraud, compliance issues, or system vulnerabilities. Early detection allows enterprises to mitigate risks before they escalate into costly problems. This creates a safer and more controlled environment for large-scale operations. 

JPMorgan Chase leverages AI for real-time fraud detection, processing billions of transactions daily. The system identifies suspicious patterns within milliseconds, protecting customers while ensuring scalability of operations. This demonstrates the critical role of AI-driven predictive analytics in risk management. 

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Real-World Case Studies in AI-Based Software Development 

1. JPMorgan Chase: Scaling Fraud Detection and Risk Scoring With AI Development Solutions 

JPMorgan Chase processes billions of transactions daily, creating a highly complex environment for fraud detection. Traditional rule-based systems often failed to detect sophisticated fraud patterns and produced too many false positives. This inefficiency increased operational costs and reduced customer confidence in digital banking. 

To address this, the bank implemented AI development solutions powered by machine learning algorithms. These systems analyze transaction data in real time, learning continuously from new fraud attempts to detect subtle anomalies. By embedding AI across its risk management processes, JPMorgan Chase built a scalable and adaptive fraud detection framework. 

The adoption of AI has significantly reduced fraudulent transactions and minimized false alarms. Customers experience smoother approvals while the bank lowers costs tied to manual reviews. With AI at the core, JPMorgan Chase has improved security, compliance, and scalability across its global operations.

2. Amazon: Driving Personalization and Dynamic Pricing With AI-Based Software Development

Amazon faced the challenge of delivering personalized shopping experiences to millions of customers across countless product categories. Manual segmentation and traditional pricing strategies could not keep pace with rapidly changing customer behavior and competitive pressures. This created limits on revenue growth and margin optimization. 

The company turned to AI-based recommendation engines and dynamic pricing algorithms to transform its retail operations. Machine learning models analyze browsing patterns, purchase history, and contextual data to generate personalized product suggestions. Dynamic pricing systems adjust prices instantly based on demand, competitor moves, and inventory levels. 

As a result, AI-driven personalization now influences more than 35% of Amazon’s total sales. Customers benefit from relevant recommendations and fair, competitive prices, leading to stronger loyalty. On a scale, these AI solutions allow Amazon to optimize margins while maintaining its leadership in global e-commerce. 

3. Mayo Clinic: Enhancing Diagnostics and Patient Support With AI-Driven Solutions

Mayo Clinic faced growing pressure to deliver faster and more accurate diagnostic services. Human-only analysis of complex imaging data often resulted in delays, higher workloads, and potential errors. These limitations restricted the scalability of healthcare services and posed risks to patient outcomes. 

To improve efficiency, Mayo Clinic integrated AI-powered diagnostic tools into its imaging workflows. Computer vision models assist radiologists in detecting anomalies, while NLP-based tools help clinicians interpret unstructured medical notes. AI-powered chatbots further support patients by answering common health questions and easing the burden on staff. 

The integration of AI has led to more accurate diagnoses and quicker turnaround times for imaging results. Doctors can dedicate more attention to complex cases, boosting overall efficiency and quality of care. Patients benefit from faster services and better outcomes, proving AI’s role in scaling healthcare delivery. 

Innovative AI Solutions Transforming Scalability

1. Generative AI for Content, Design, and Software Development

Generative AI is redefining how businesses create and scale digital assets, from written content to UI/UX designs. In software development, it accelerates coding by generating context-aware snippets and automating documentation. This reduces development cycles and enables rapid experimentation without adding extra headcount. 

Beyond development, generative AI enhances creative workflows by producing prototypes, marketing copy, and even synthetic training data. Enterprises use these capabilities to scale operations faster while maintaining quality. As adoption grows, generative AI will become an essential driver of productivity and innovation. 

2. Computer Vision as a Core AI Development Solution

Computer vision brings intelligence to systems by enabling them to interpret and analyze visual data at scale. Applications range from quality control in manufacturing to medical imaging in healthcare. By automating tasks traditionally reliant on human vision, enterprises achieve higher accuracy and efficiency. 

In large-scale projects, computer vision supports predictive maintenance, defect detection, and compliance monitoring. These capabilities reduce operational costs while improving safety and performance. As industries digitize further, computer vision will remain a cornerstone of scalable AI development solutions. 

3. Agentic AI for Autonomous Project Execution

Agentic AI introduces self-governing systems that can plan, act, and optimize tasks with minimal human intervention. These agents manage workflows across software development, operations, and customer service. By making autonomous decisions, they reduce delays and free up human teams for strategic work. 

At scale, agentic AI can orchestrate complex, multi-step processes such as sprint planning, testing, and deployment. These systems adapt dynamically to changes, ensuring continuous delivery and resilience. As enterprises embrace autonomy, agentic AI will play a central role in transforming scalability.

4. AI for Sustainable and Efficient Software Development

AI contributes to sustainability by optimizing energy usage in data centers and reducing waste in IT operations. Predictive analytics forecast demand and adjust infrastructure loads to minimize environmental impact. This not only lowers costs but also supports ESG commitments for enterprises. 

Efficiency gains extend to development pipelines where AI reduces redundant testing and streamlines workflows. By automating resource-intensive tasks, organizations improve productivity while cutting their carbon footprint. Sustainable AI practices ensure scalability is achieved without compromising environmental responsibility.

How to Implement AI Software Development Services Effectively

1. Assessing Readiness for AI Development Solutions

Before adopting AI software development services, businesses must assess their current processes and infrastructure. This involves identifying areas where AI can deliver the greatest impact, such as automation, decision-making, or customer engagement. A clear readiness assessment ensures that resources are allocated to the most valuable opportunities. 

Organizations should also evaluate cultural and organizational readiness for AI adoption. Leadership buy-in, stakeholder alignment, and realistic expectations are critical for successful deployment. Without this foundation, even advanced AI development solutions may fail to achieve meaningful results. 

2. Building a Strong Data Foundation for AI-Based Software Development

AI-based software development depends on access to high-quality, well-structured data. Enterprises must establish robust systems for data collection, cleaning, and integration across silos. This creates the foundation needed to train accurate and reliable AI models. 

Strong governance practices are equally important for ensuring compliance and security. Companies should implement data quality standards, privacy safeguards, and ongoing monitoring. A mature data ecosystem is what ultimately enables AI solutions to scale effectively and responsibly. 

3. Choosing the Right AI Software Development Partner

Selecting the right partner is critical when implementing AI development solutions. Businesses should evaluate providers based on technical expertise in AI/ML frameworks, cloud platforms, and security compliance. Proven experience in delivering enterprise-scale projects is a key indicator of reliability. 

Partnerships should also extend beyond technical skills to include strategic alignment. The best AI development companies act as advisors, helping enterprises identify opportunities and mitigate risks. This collaborative approach ensures long-term scalability and sustainable results. 

4. Pilot Testing AI Development Solutions Before Scaling

Pilot testing allows enterprises to validate AI solutions in a controlled environment before full-scale deployment. This step helps identify technical challenges, resource requirements, and potential ROI. By starting small, businesses can refine models and minimize risks. 

Successful pilots provide measurable outcomes that justify further investment. They also create internal momentum by showcasing early wins to stakeholders. With a proven pilot, enterprises are better positioned to scale AI-based software development confidently. 

5. Upskilling Teams to Work with AI-Based Software Development Tools

AI implementation is most effective when teams are equipped with the right skills and mindset. Training programs should focus on enabling employees to collaborate with AI systems rather than replace them. This ensures smoother adoption and greater trust in new technologies. 

Continuous learning initiatives help employees stay updated with evolving AI tools and frameworks. By building in-house expertise, organizations reduce reliance on external vendors over time. Ultimately, a well-trained workforce is essential for scaling AI software development successfully. 

Measuring the ROI of AI Software Development Solutions

1. Key Metrics for Evaluating AI-Driven Scalability

To measure the ROI of AI software development services, organizations must track metrics tied to productivity, cost savings, and speed. Key indicators include reductions in time-to-market, fewer manual errors, and improved output per developer. These metrics reveal how effectively AI accelerates scalability compared to traditional methods. 

Customer-facing metrics are equally important, such as conversion rates, response times, and satisfaction scores. Tracking these outcomes highlights how AI solutions impact both operational efficiency and user experience. Together, financial and non-financial metrics provide a complete view of AI’s return on investment. 

2. ROI Case Studies from AI-Based Software Development Projects

Real-world case studies provide evidence of AI’s tangible impact on business performance. For example, Netflix credits its AI recommendation engine with driving over 80% of viewer activity, translating into higher engagement and retention. Similarly, fintech companies report millions saved annually through AI-powered fraud detection. 

These examples demonstrate how AI adoption leads to measurable revenue growth and cost efficiencies. Enterprises can use such benchmarks to set expectations and build stronger business cases for AI investment. Case studies also provide practical lessons on implementation strategies that maximize ROI.

3. Common Pitfalls in Measuring ROI from AI Development Solutions

Despite clear benefits, many organizations struggle to measure ROI accurately due to poorly defined goals. Without clear KPIs, businesses may misattribute improvements to AI or fail to capture long-term value. This leads to skepticism among stakeholders and delays in scaling efforts. 

Another pitfall is focusing solely on short-term financial returns. AI initiatives often deliver their greatest impact through long-term process improvements and innovation. By balancing immediate metrics with future potential, enterprises can create a more realistic and sustainable ROI framework.

Future Trends in AI Software Development for Project Scaling

1. The Next Decade of AI-Based Software Development 

The next decade will see AI embedded into every stage of the software development lifecycle. From automated coding to self-healing infrastructure, AI will drive continuous delivery and reduce reliance on human intervention. This will make scaling projects faster, more efficient, and more resilient. 

Generative AI will expand beyond code suggestions into full-stack application generation. Enterprises will use AI agents capable of planning, executing, and optimizing projects with minimal oversight. These advancements will fundamentally shift software development from manual creation to AI-driven orchestration. 

2. Staying Ahead with AI Software Development Services 

To remain competitive, businesses must adopt flexible architectures that integrate AI seamlessly with existing systems. Hybrid human–AI teams will become the norm, combining human creativity with machine efficiency. This synergy will allow enterprises to innovate faster while managing complexity at scale. 

Investing in AI research and development will also be essential for long-term success. Companies that prioritize continuous experimentation with AI tools and frameworks will stay ahead of competitors. By embracing AI software development services strategically, organizations can secure a scalable foundation for future growth. 

Unlocking Global Growth with AI-Powered

At SmartDev, we understand the complexity of scaling and the importance of building future-ready systems. With proven expertise in AI-based software development, enterprise AI solutions, and end-to-end delivery, we help organizations unlock efficiency and innovation at scale. Our mission is to turn ambitious ideas into intelligent, market-ready solutions. 

Now is the time to move beyond experimentation and put AI to work for your enterprise. Whether you need to accelerate product delivery, optimize operations, or enhance customer engagement, SmartDev provides the expertise and AI development services to make it happen. Together, we can scale your projects with precision and impact. 

If your business is ready to take the next step, let’s start a conversation. Partner with SmartDev to explore AI-powered development solutions designed to help you scale smarter, faster, and more sustainably. Visit SmartDev’s AI-Powered Software Development Services to begin your journey today. 


References

  1. Artificial Intelligence Software Platform Market | Precedence Research 
  2. AI Software Market Shows Strong Growth as Organizations Accelerate AI Adoption | Futurum Group 
  3. Enterprise AI Market | Mordor Intelligence 
  4. GitHub Copilot and OpenAI Codex: Real-Time Code Suggestions | TechBriefers 
  5. How Netflix’s Recommendation Algorithm Works | Stratoflow 
  6. Amazon DevOps Guru | AWS 
  7. JPMorgan Launches AI Fraud Shield | The Silicon Review 
  8. AI Improves Patient Experience | Mayo Clinic 

 

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Ngoc Nguyen

著者 Ngoc Nguyen

Ngoc, a content writer at SmartDev, is passionate about blending technology and storytelling to create meaningful digital experiences. With a background in content strategy, SEO, and marketing, she enjoys turning ideas into stories that resonate with audiences. Interested in how IT, AI, and emerging tech shape our lives, she’s driven to make these topics more accessible through clear, engaging writing. Always curious and eager to grow, Ngoc is excited to explore new tools and contribute to projects that connect people with technology.

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