ARCHIVES
Embedding Artificial Intelligence for Personal Voice Assistant Using NLP
¹Assistant Professor, Computer Science and Engineering, K.L.N. College of Engineering, Sivagangai, Tamilnadu, India. ²³⁴⁵ Final Year Students, Computer Science and Engineering, K.L.N. College of Engineering, Sivagangai, Tamilnadu, India.
Published Online: January-February 2024
Pages: 01-03
Cite this article
↗ https://www.doi.org/10.59256/ijire.20240501001Abstract
View PDFThe voice assistance is an software which is able to provide a detailed response as a voice based output according to an instruction in a prompt. To seamless integration of quick responses to queries and up-to-date weather information enhances daily routines, promoting efficiency and convenience. To achieve these capabilities, technologies like NLTK, pyttsx3, and speech recognition libraries play a pivotal role. To summarize, the convergence of these tools is gradually transforming the futuristic concept of an indispensable personal assistant into an attainable reality. AI technologies have revolutionized digital assistant interactions, but as they integrate into daily life, addressing bias, ambiguity, and ethics becomes crucial.
Related Articles
2024
Embedding Artificial Intelligence for Personal Voice Assistant Using NLP
2024
Analysis of Pedestrian Steel Bridge subjected the Seismic Load and Wind Load using Damper at different Span
2024
ML-Driven Facial Synthesis from Spoken Words Using Conditional GANs
2024
Research on smart baby cradle using sensor technology
2024
Multimodal Biometric Login System Using Face and Signature
2024
Optimization of Geometrical Characteristics of Building by Using Diagrid System against Lateral Forces
2024
PDF-Chat SaaS Platform Using MERN Stack
2024
Social Media App for Connecting Similar Interests People Using flutter
2024
Simulation and FPGA based Implementation of PI and FUZZY Controllers for Cascaded Asymmetric Multilevel Inverter
2024
Soft Computing Technique for Harmonic Mitigation of Enhancing Grid-Integrated Photovoltaic (PV) System Power Quality


