Developing AI-Powered Virtual Color Consultation Tools for Retail and Professional Customers

Main Article Content

Raviteja Meda

Abstract

The "AI-Powered Virtual Color Consultation Tools" project aims to dazzle professionals and non-experts alike with automatically generated color palettes. Color sets for any kind of design need are achievable in minutes through our easy-to-use system based on state-of-the-art color harmonization rules and AI technology that learns how to effectively combine them. The smart research assistants of this project won't substitute designers and lay users, but instead boost their creativity and efficiency, filtering out unwanted colors and unsaturated configurations.


 


Colors affect moods and emotions. While colors dominate our visual experience, little attention is normally paid to their combination. Achieving an effective and pleasant color design is notoriously difficult and time-consuming. Yet appropriate and harmonious color combinations can significantly enhance the quality of life of individuals – affecting relaxation in a residence, concentration in a classroom, or thrill in an amusement park, for example. Our thesis is that everybody can act as a designer and organize colors according to his or her personal preference. The color design should merely comply with a user's desire, avoiding the danger of an unpleasant experience caused by random mixing schemes. To achieve that, an automatic retrieval system for personal color design is proposed here. Such a system can offer color design suggestions when powered by additional color rules. Wouldn't it be nice to start or finish well-evaluated color designs in minutes with the help of a personal color palette that would serve a particular purpose and taste?

Article Details

How to Cite
Raviteja Meda. (2023). Developing AI-Powered Virtual Color Consultation Tools for Retail and Professional Customers. Journal for ReAttach Therapy and Developmental Diversities, 6(10s(2), 2083–2100. https://doi.org/10.53555/jrtdd.v6i10s(2).3577
Section
Articles
Author Biography

Raviteja Meda

Lead Incentive Compensation Developer

References

Venkata Krishna Azith Teja Ganti, Chandrashekar Pandugula,Tulasi Naga Subhash Polineni, Goli Mallesham (2023) Exploring the Intersection of Bioethics and AI-Driven Clinical Decision-Making: Navigating the Ethical Challenges of Deep Learning Applications in Personalized Medicine and Experimental Treatments. Journal of Material Sciences & Manufacturing Research. SRC/JMSMR-230

Sondinti, K., & Reddy, L. (2023). Optimizing Real-Time Data Processing: Edge and Cloud Computing Integration for Low-Latency Applications in Smart Cities. Available at SSRN 5122027.

Malempati, M., Sriram, H. K., Kaulwar, P. K., Dodda, A., & Challa, S. R. Leveraging Artificial Intelligence for Secure and Efficient Payment Systems: Transforming Financial Transactions, Regulatory Compliance, and Wealth Optimization.

Chava, K. (2023). Generative Neural Models in Healthcare Sampling: Leveraging AI-ML Synergies for Precision-Driven Solutions in Logistics and Fulfillment. Available at SSRN 5135903.

Komaragiri, V. B. The Role of Generative AI in Proactive Community Engagement: Developing Scalable Models for Enhancing Social Responsibility through Technological Innovations

Chakilam, C. (2023). Leveraging AI, ML, and Generative Neural Models to Bridge Gaps in Genetic Therapy Access and Real-Time Resource Allocation. Global Journal of Medical Case Reports, 3(1), 1289. https://doi.org/10.31586/gjmcr.2023.1289

Lahari Pandiri, Srinivasarao Paleti, Pallav Kumar Kaulwar, Murali Malempati, & Jeevani Singireddy. (2023). Transforming Financial And Insurance Ecosystems Through Intelligent Automation, Secure Digital Infrastructure, And Advanced Risk Management Strategies. Educational Administration: Theory and Practice, 29(4), 4777–4793. https://doi.org/10.53555/kuey.v29i4.9669

Challa, K. Dynamic Neural Network Architectures for Real-Time Fraud Detection in Digital Payment Systems Using Machine Learning and Generative AI

Mahesh Recharla, Sai Teja Nuka, Chaitran Chakilam, Karthik Chava, & Sambasiva Rao Suura. (2023). Next-Generation Technologies for Early Disease Detection and Treatment: Harnessing Intelligent Systems and Genetic Innovations for Improved Patient Outcomes. Journal for ReAttach Therapy and Developmental Diversities, 6(10s(2), 1921–1937. https://doi.org/10.53555/jrtdd.v6i10s(2).3537

Phanish Lakkarasu, Pallav Kumar Kaulwar, Abhishek Dodda, Sneha Singireddy, & Jai Kiran Reddy Burugulla. (2023). Innovative Computational Frameworks for Secure Financial Ecosystems: Integrating Intelligent Automation, Risk Analytics, and Digital Infrastructure. International Journal of Finance (IJFIN) - ABDC Journal Quality List, 36(6), 334-371.

Avinash Pamisetty. (2023). Integration Of Artificial Intelligence And Machine Learning In National Food Service Distribution Networks. Educational Administration: Theory and Practice, 29(4), 4979–4994. https://doi.org/10.53555/kuey.v29i4.9876

Pamisetty, V. (2023). Optimizing Public Service Delivery through AI and ML Driven Predictive Analytics: A Case Study on Taxation, Unclaimed Property, and Vendor Services. International Journal of Finance (IJFIN)-ABDC Journal Quality List, 36(6), 124-149.

Venkata Narasareddy Annapareddy, Anil Lokesh Gadi, Venkata Bhardwaj Komaragiri, Hara Krishna Reddy Koppolu, & Sathya Kannan. (2023). AI-Driven Optimization of Renewable Energy Systems: Enhancing Grid Efficiency and Smart Mobility Through 5G and 6G Network Integration. Educational Administration: Theory and Practice, 29(4), 4748–4763. https://doi.org/10.53555/kuey.v29i4.9667

Someshwar Mashetty. (2023). Revolutionizing Housing Finance with AI-Driven Data Science and Cloud Computing: Optimizing Mortgage Servicing, Underwriting, and Risk Assessment Using Agentic AI and Predictive Analytics. International Journal of Finance (IJFIN) - ABDC Journal Quality List, 36(6), 182-209. https://ijfin.com/index.php/ijfn/article/view/IJFIN_36_06_009

Lahari Pandiri, & Subrahmanyasarma Chitta. (2023). AI-Driven Parametric Insurance Models: The Future of Automated Payouts for Natural Disaster and Climate Risk Management. Journal for ReAttach Therapy and Developmental Diversities, 6(10s(2), 1856–1868. https://doi.org/10.53555/jrtdd.v6i10s(2).3514

Botlagunta Preethish Nandan, & Subrahmanya Sarma Chitta. (2023). Machine Learning Driven Metrology and Defect Detection in Extreme Ultraviolet (EUV) Lithography: A Paradigm Shift in Semiconductor Manufacturing. Educational Administration: Theory and Practice, 29(4), 4555–4568. https://doi.org/10.53555/kuey.v29i4.9495

Kaulwar, P. K., Pamisetty, A., Mashetty, S., Adusupalli, B., & Pandiri, L. Harnessing Intelligent Systems and Secure Digital Infrastructure for Optimizing Housing Finance, Risk Mitigation, and Enterprise Supply Networks

Srinivasarao Paleti. (2023). Data-First Finance: Architecting Scalable Data Engineering Pipelines for AI-Powered Risk Intelligence in Banking. International Journal of Finance (IJFIN) - ABDC Journal Quality List, 36(6), 403-429.

Kaulwar, P. K. (2023). Tax Optimization and Compliance in Global Business Operations: Analyzing the Challenges and Opportunities of International Taxation Policies and Transfer Pricing. International Journal of Finance (IJFIN)-ABDC Journal Quality List, 36(6), 150-181.

Abhishek Dodda. (2023). Digital Trust and Transparency in Fintech: How AI and Blockchain Have Reshaped Consumer Confidence and Institutional Compliance. Educational Administration: Theory and Practice, 29(4), 4921–4934. https://doi.org/10.53555/kuey.v29i4.9806

Singireddy, J., & Kalisetty, S. Optimizing Tax Preparation and Filing Services: A Comparative Study of Traditional Methods and AI Augmented Tax Compliance Frameworks.

Murali Malempati. (2023). A Data-Driven Framework For Real-Time Fraud Detection In Financial Transactions Using Machine Learning And Big Data Analytics. Journal for ReAttach Therapy and Developmental Diversities, 6(10s(2), 1954–1963. https://doi.org/10.53555/jrtdd.v6i10s(2).3563

Malempati, M., Sriram, H. K., Kaulwar, P. K., Dodda, A., & Challa, S. R. Leveraging Artificial Intelligence for Secure and Efficient Payment Systems: Transforming Financial Transactions, Regulatory Compliance, and Wealth Optimization

Phanish Lakkarasu. (2023). Generative AI in Financial Intelligence: Unraveling its Potential in Risk Assessment and Compliance. International Journal of Finance (IJFIN) - ABDC Journal Quality List, 36(6), 241-273.

Ganti, V. K. A. T., Pandugula, C., Polineni, T. N. S., & Mallesham, G. Transforming Sports Medicine with Deep Learning and Generative AI: Personalized Rehabilitation Protocols and Injury Prevention Strategies for Professional Athletes.

Sondinti, K., & Reddy, L. (2023). The Socioeconomic Impacts of Financial Literacy Programs on Credit Card Utilization and Debt Management among Millennials and Gen Z Consumers. Available at SSRN 5122023

Hara Krishna Reddy Koppolu, Venkata Bhardwaj Komaragiri, Venkata Narasareddy Annapareddy, Sai Teja Nuka, & Anil Lokesh Gadi. (2023). Enhancing Digital Connectivity, Smart Transportation, and Sustainable Energy Solutions Through Advanced Computational Models and Secure Network Architectures. Journal for ReAttach Therapy and Developmental Diversities, 6(10s(2), 1905–1920. https://doi.org/10.53555/jrtdd.v6i10s(2).3535

Kannan, S. The Convergence of AI, Machine Learning, and Neural Networks in Precision Agriculture: Generative AI as a Catalyst for Future Food Systems

Sriram, H. K. (2023). Harnessing AI Neural Networks and Generative AI for Advanced Customer Engagement: Insights into Loyalty Programs, Marketing Automation, and Real-Time Analytics. Educational Administration: Theory and Practice, 29(4), 4361-4374.

Chava, K. (2023). Revolutionizing Patient Outcomes with AI-Powered Generative Models: A New Paradigm in Specialty Pharmacy and Automated Distribution Systems. Available at SSRN 5136053

Malviya, R. K., & Kothpalli Sondinti, L. R. (2023). Optimizing Real-Time Data Processing: Edge and Cloud Computing Integration for Low-Latency Applications in Smart Cities. Letters in High Energy Physics, 2023

Challa, K. (2023). Transforming Travel Benefits through Generative AI: A Machine Learning Perspective on Enhancing Personalized Consumer Experiences. Educational Administration: Theory and Practice. Green Publication. https://doi. org/10.53555/kuey. v29i4, 9241.

Pamisetty, A. (2023). AI Powered Predictive Analytics in Digital Banking and Finance: A Deep Dive into Risk Detection, Fraud Prevention, and Customer Experience Management. Fraud Prevention, and Customer Experience Management (December 11, 2023).

Pamisetty, V. (2023). Intelligent Financial Governance: The Role of AI and Machine Learning in Enhancing Fiscal Impact Analysis and Budget Forecasting for Government Entities. Journal for ReAttach Therapy and Developmental Diversities, 6, 1785-1796.

Pallav Kumar Kaulwar, Avinash Pamisetty, Someshwar Mashetty, Balaji Adusupalli, & Lahari Pandiri. (2023). Harnessing Intelligent Systems and Secure Digital Infrastructure for Optimizing Housing Finance, Risk Mitigation, and Enterprise Supply Networks. International Journal of Finance (IJFIN) - ABDC Journal Quality List, 36(6), 372-402. https://ijfin.com/index.php/ijfn/article/view/IJFIN_36_06_015

Adusupalli, B. (2023). DevOps-Enabled Tax Intelligence: A Scalable Architecture for Real-Time Compliance in Insurance Advisory. In Journal for Reattach Therapy and Development Diversities. Green Publication. https://doi.org/10.53555/jrtdd.v6i10s(2).358

Abhishek Dodda. (2023). NextGen Payment Ecosystems: A Study on the Role of Generative AI in Automating Payment Processing and Enhancing Consumer Trust. International Journal of Finance (IJFIN) - ABDC Journal Quality List, 36(6), 430-463. https://ijfin.com/index.php/ijfn/article/view/IJFIN_36_06_017

Sneha Singireddy. (2023). Integrating Deep Learning and Machine Learning Algorithms in Insurance Claims Processing: A Study on Enhancing Accuracy, Speed, and Fraud Detection for Policyholders. Educational Administration: Theory and Practice, 29(4), 4764–4776. https://doi.org/10.53555/kuey.v29i4.9668

Sondinti, K., & Reddy, L. (2023). Towards Quantum-Enhanced Cloud Platforms: Bridging Classical and Quantum Computing for Future Workloads. Available at SSRN 5058975

Ganti, V. K. A. T., Edward, A., Subhash, T. N., & Polineni, N. A. (2023). AI-Enhanced Chatbots for Real-Time Symptom Analysis and Triage in Telehealth Services.

Vankayalapati, R. K. (2023). Unifying Edge and Cloud Computing: A Framework for Distributed AI and Real-Time Processing. Available at SSRN 5048827.

Annapareddy, V. N., & Seenu, A. (2023). Generative AI in Predictive Maintenance and Performance Enhancement of Solar Battery Storage Systems. Predictive Maintenance and Performance Enhancement of Solar Battery Storage Systems (December 30, 2023).

Kannan, S., & Saradhi, K. S. Generative AI in Technical Support Systems: Enhancing Problem Resolution Efficiency Through AIDriven Learning and Adaptation Models.

Sambasiva Rao Suura, Karthik Chava, Mahesh Recharla, & Chaitran Chakilam. (2023). Evaluating Drug Efficacy and Patient Outcomes in Personalized Medicine: The Role of AI-Enhanced Neuroimaging and Digital Transformation in Biopharmaceutical Services. Journal for ReAttach Therapy and Developmental Diversities, 6(10s(2), 1892–1904. https://doi.org/10.53555/jrtdd.v6i10s(2).3536

Murali Malempati, D. P., & Rani, S. (2023). Autonomous AI Ecosystems for Seamless Digital Transactions: Exploring Neural Network-Enhanced Predictive Payment Models. International Journal of Finance (IJFIN), 36(6), 47-69.

Nuka, S. T. (2023). Generative AI for Procedural Efficiency in Interventional Radiology and Vascular Access: Automating Diagnostics and Enhancing Treatment Planning. Journal for ReAttach Therapy and Developmental Diversities. Green Publication. https://doi. org/10.53555/jrtdd. v6i10s (2), 3449

Koppolu, H. K. R. Deep Learning and Agentic AI for Automated Payment Fraud Detection: Enhancing Merchant Services Through Predictive Intelligence

Anil Lokesh Gadi. (2023). Engine Heartbeats and Predictive Diagnostics: Leveraging AI, ML, and IoT-Enabled Data Pipelines for Real-Time Engine Performance Optimization. International Journal of Finance (IJFIN) - ABDC Journal Quality List, 36(6), 210-240. https://ijfin.com/index.php/ijfn/article/view/IJFIN_36_06_010

Recharla, M., & Chitta, S. AI-Enhanced Neuroimaging and Deep Learning-Based Early Diagnosis of Multiple Sclerosis and Alzheimer’s.

Paleti, S. Transforming Money Transfers and Financial Inclusion: The Impact of AI-Powered Risk Mitigation and Deep Learning-Based Fraud Prevention in Cross-Border Transactions.4907-4920

Moore, C. (2023). AI-powered big data and ERP systems for autonomous detection of cybersecurity vulnerabilities. Nanotechnology Perceptions, 19, 46-64.

Jha, K. M., Bodepudi, V., Boppana, S. B., Katnapally, N., Maka, S. R., & Sakuru, M. (2023). Deep Learning-Enabled Big Data Analytics for Cybersecurity Threat Detection in ERP Ecosystems.

Boppana, S. B., Moore, C. S., Bodepudi, V., Jha, K. M., Maka, S. R., & Sadaram, G. (2021). AI And ML Applications In Big Data Analytics: Transforming ERP Security Models For Modern Enterprises.

Jha, K. M., Bodepudi, V., Boppana, S. B., Katnapally, N., Maka, S. R., & Sakuru, M. (2023). Deep Learning-Enabled Big Data Analytics for Cybersecurity Threat Detection in ERP Ecosystems.

Katnapally, N., Murthy, L., & Sakuru, M. (2021). Automating Cyber Threat Response Using Agentic AI and Reinforcement Learning Techniques. J. Electrical Systems, 17(4), 138-148.

Velaga, V. (2022). Enhancing Supply Chain Efficiency and Performance Through ERP Optimization Strategies.