Training Details- June - July 2020 Computer Science and Engineering Department

Total Page:16

File Type:pdf, Size:1020Kb

Training Details- June - July 2020 Computer Science and Engineering Department Training Details- June - July 2020 Computer Science and Engineering Department S.No Enrollment No Name Training Platform Training Topic Company Name Trainer Designation Start date End date Baja application Turiyatita Technologies 1 00114807218 Ankit Gupta ANDROID CTO 16-06-2020 11-08-2020 development Pvt Ltd Machine Learning and Energy Prediction of 2 00196402717 Adhyansh Bhardwaj THE BIRD GROUP Mr. Ajay Kumar Sr. Engineer 22-06-2020 24-08-2020 Predictive Analysis Wind Farm Python, Tensorflow, Machine Learning, Deep Deep Learning Founder Coursera 3 00196407218 ABDUL WAHEED Learning, Computer Vision, Coursera Mr. Andrew NG 20-04-2020 20-06-2020 Specialization and deeplearning.ai Natural Language Processing 4 00214807218 Baljeet Singh Python, Js Web Development edx America 01-05-2020 15-08-2020 5 00296402717 ANJALI JOSHI ReactJS/Instadapp Blockchain Matic Networks Mr.Sachin Mittal Pre-Sales Engineer 10-04-2020 28-06-2020 Chaudhary 6 00314807218 Python Data Analyst DataCamp Hillary Green-Lerman Lead DataScientist 01-04-2020 26-05-2020 Sarimurrab Various platforms like 7 00396402717 Ankit Singh linkedin, YouTube, webD, E-learning Grad2live Mr. Rishikesh Founder 22-07-2020 22-09-2020 etc. COMPUTER VISION AND OPTICAL 8 00496402717 Anugrah Sebastian Google Colaboratory deeplearning.ai NA 05-05-2020 07-07-2020 CHARACTER RECOGNITION SYSTEM 9 00496407218 Kumar Dhruv Coursera Machine learning Coursera Google cloud training Training guide 06-09-2020 15-11-2020 Natural Language 10 00514802716 Aditya Python Processing (NLP) in Udemy Lazy Programmer Inc Instructor 10-08-2020 10-09-2020 Python Assosciate Professor, Introduction to Game 11 00596402717 Archit Agrawal Unity3D Coursera Course Brian Winn Michigan State 13-04-2020 11-05-2020 Development University 12 00614807218 Manish Hooda Blender 3D Modelling Udemy Rick Davidson NA 04-06-2020 07-08-2020 13 00714807218 manjeet android android application udemy rob percival instructor 25-07-2020 08-09-2020 14 00814802717 Ankita Kesari Tableau, Python data visualization IHS Markit taranjeet kaur software engineer 01-06-2020 03-07-2020 Scikit Learn and Jupyter Applied Machine Coursera (University of Kevyn Collins- 15 00896402717 Daksh Paul Assistant Professor 24-04-2020 06-06-2020 Notebook Learning in Python Michigan) Thompson Real Innerspring - Director - Retail and 16 00996402717 Divyansh Gupta Android Android Front End Nitin Gupta 28-06-2020 21-08-2020 KingKoil Channel Sales Lakshmikant 17 01014802717 Anurag Jain Python and Deep Learning AI Decelopment Freezonlabs Tech Lead 15-05-2020 10-08-2020 Rajamani Lakshmikant 18 01014802718 Anurag Jain Python and Deep Learning AI Decelopment Freezonlabs Tech Lead 15-05-2020 10-08-2020 Rajamani Applied Machine Coursera ( University 19 01096402717 Gaurav Scikit-Learn Prof. John Doe Professor 24-04-2020 08-06-2020 Learning in Python of Michigan ) The Complete 2020 20 01114802717 Anurag Shastri ML, AI, Web Dev Web Development Udemy Dr. Angela Yu Lead Instructor 01-05-2020 27-06-2020 Bootcamp Web Application MERN Stack Web EdNeed Technology 21 01214802717 Anushka Verma Development - Mr. Krishna Kumar Tech Lead 01-05-2020 01-09-2020 Development Pvt. Ltd. EdNeed Python and Django 22 01214807218 Shikha Gupta Django Full stack web Udemy Jose Portilla Instructor 30-05-2020 31-07-2020 development Image filter Using Online Platform of Duke 23 01396402717 Mayank Shrivastava HTML,CSS,JavaScri Coursera Susuan H Rodger Professor 01-07-2020 31-07-2020 University in Coursera pt 24 01596402717 Nitin Mittal ReactJS/instadapp Blockchain Matic network Mr. Sachin Mittal Pre-Sales Engineer 10-04-2020 28-06-2020 Web development, 25 01614802717 Ayush Mishra Node.js Web Development Udemy Colt Steele Machine Learning 01-06-2020 15-07-2020 Instructor Machine Learning, Python, Machine Learning in 26 01696402717 Priyanshu Sinha SuperDatascience CEO 01-06-2020 06-08-2020 Jupyter Notebooks Python Page 1 of 16 Training Details- June - July 2020 Computer Science and Engineering Department S.No Enrollment No Name Training Platform Training Topic Company Name Trainer Designation Start date End date Deep Learning using Neural Networks and 27 01714802717 Bharat Sharma Coursera Mr. Andrew Ng Instructor 01-05-2020 31-07-2020 Tensorflow Deep Learning Nodejs backend 28 01796402717 Rahul Gupta Metvy Metvy Shivay Lamba Product manager 15-03-2020 15-05-2020 development Associate Professor Front-End Web UI (The Hong Kong 29 01896402717 Rakesh Yadav BootStrap 5 Frameworks and Coursera Jogesh K. Muppala 01-04-2020 10-05-2020 University of Science Tools: Bootstrap 5 and Technology) Associate Professor Front-End Web UI (The Hong Kong 30 01896402717 Rakesh Yadav BootStrap 4 Frameworks and Coursera Jogesh K. Muppala 01-04-2020 10-05-2020 University of Science Tools: Bootstrap 4 and Technology) Full Stack Web Webcommerce (India) 31 01996402717 Ritwik Sharma Image Face Detection Mr. Basant Pandey Director 20-03-2020 20-04-2020 Development Private Limited Server-side Development with 32 02096402717 Rohit Sroa Online Coursera Jogesh K. Muppala Associate Professor 15-06-2020 15-07-2020 NodeJS, Express and MongoDB Amazon Web Services, Cloud Cost 33 02214802717 Deepanshu Rana OpsLyft Aayush Kumar CEO 01-05-2020 30-06-2020 ReactJs, Python Dashboard Purely theoritical so no Bits and bytes of 34 02396402717 Shubham Sharma Coursera Nil Nil 15-07-2020 21-08-2020 platform used network Web Developer 35 02414802717 Gaurav Cherwal Web Development Eople Internet Pvt Ltd. CEO 20-04-2020 20-07-2020 Internship 36 02596402717 Stuti Jain Kotlin Kotlin programming Coursera CEO 26-04-2020 17-05-2020 Full stack Web Development 37 02614802717 Himanshu Gupta ( MEN ), HTML, CSS, NSUTIIF Xpreco Solutions Mr. Dheeraj Kaushik CEO 01-06-2020 31-07-2020 AWS Angular , Firebase , HTML5 Educator and 38 02714802717 Hunny Angular Internshala Mr. Samarth Agarwal 01-05-2020 12-06-2020 ,CSS3 , TypeScript App/Web Developer CEO/Founder Landing AI; Co- founder, Coursera; Adjunct Professor, 39 02796402717 Sunmeet Oberoi Tensorflow Deep Learning Coursera Mr. Andrew Ng Stanford University; 26-04-2020 26-06-2020 formerly Chief Scientist,Baidu and founding lead of Google Brain 40 02814802717 Jaskaran Singh Udemy/Machine Learning NLP Udemy nil nil 02-05-2020 02-06-2020 41 02914802717 Jaspreet Singh Angular and Firebase Angular development Internshala Mr. Samarth Agarwal Trainer 01-05-2020 12-06-2020 Front end web 42 03014802717 Jayesh Navoria ReactJS developement using Coursera Jogesh K. Muppala Project instructor 15-06-2020 25-07-2020 reactjs Developind websites ASTORIANZ HTML,CSS,JAVASCRIPT, for Astorianz 43 03414802717 Kunal Krishan Jha INDUSTRIES PVT. Vivek Bagaria Director 11-06-2020 31-07-2020 JQUERY,NODEJS,PHP homepage, tour and LTD. travels,hospitaity sites Android App 44 03514802716 DHEERAJ Kotlin Development using Internshala Not Applicable 23-05-2020 30-07-2020 KOTLIN Complete python 45 03514802717 Kushagra Singh Atom editor Udemy Dev nirwal Instructor 01-05-2020 31-05-2020 bootcamp Stock Pricing Model 46 03714802717 Manthan Keim Python, JPMC JPMorgan Chase & Co. PM 01-05-2020 27-06-2020 and Visualisation Page 2 of 16 Training Details- June - July 2020 Computer Science and Engineering Department S.No Enrollment No Name Training Platform Training Topic Company Name Trainer Designation Start date End date Android 47 03814802717 Mayank Kochar Android Studio LearnCodeOnline.in Video Creator 10-05-2020 15-06-2020 Development Lend A Hand 48 03914802717 NIKHIL BAGLA Php,html,css,js Coursera Charles Severance Clinical Professor 22-04-2020 22-06-2020 Website HTML, CSS, JavaScript, 49 04014802717 Nitesh Sharma jQuery, Bootstrap, PHP, Web Development Udemy Mr. Issam Baou Instructor 08-09-2020 27-07-2020 MySQL Ms team, java script, Software Mr. Sandesh 50 04114802717 Nitin Kumar adaptive.io, Microsoft- Innovaccer Sde 1 19-04-2020 19-06-2020 development Chaudhary botframework Python bootcamp and 51 04214802717 Nitish Negi Online learning Udemy Dev nirwal Instructor 01-04-2020 30-04-2020 games 52 04314802717 Parinay Visual Studio Code Python Bootcamp Udemy Dev Nirwal Instructor 01-05-2020 31-05-2020 Data Science Master 53 04414802717 Parth Gautam Jupyter Notebook Coding Blocks Mr Prateek Narang Co-founder 09-06-2019 09-10-2019 Course Senior Technical Allen Goldberg, Program Manager, Abhishek 54 04431402717 AWS Educate AWS Specialization Coursera Morgan Willis, Adam Senior Cloud 11-06-2020 04-08-2020 Maheshwari Becker Technologist, Technical Tra Chances Gym Web Mr Ashwini Kumar CEO, Software 55 04714802717 Prateek Aggarwal Django Espoirsoft 13-04-2020 15-06-2020 Application Singh Developer Data Structures- 56 04814802717 Priyanshu Khullar C++ Coding Ninjas Mr Ankush Singla Co-Founder 01-03-2020 30-06-2020 Teaching Assistant Head of data 57 05014802717 Pushkar Django Text Analyzer Udemy Jose Portillia 20-05-2020 20-07-2020 science,Pierian Data React-The Complete 58 05214802717 Raja Rai React Udemy Angela Yu Angela Yu 14-05-2020 24-09-2020 Guide The Data Science Jyputer Notbook, Google Course 2020: 59 05314802717 Rajat Jain Udemy 365 Careers Instructor 15-05-2020 15-08-2020 Colab Complete Data Science Bootcamp. 60 05514802717 Ritika Tilwalia Jupyter Notebook Deep learning Coursera Andrew Ng Foundation 08-04-2020 08-05-2020 61 05714802717 Rohit Singh WordPress Web Development Sivious it solution Shambhavi jha HR manager 01-06-2020 30-06-2020 62 05814802717 Rohit Vatwani Wordpress Web Development Sivious IT solution Ms. Shambhavi HR Manager 01-06-2020 30-06-2020 Core Machine Electronics & ICT Professor and ML 63 05914802717 Ruchir Bisht Machine Learning Prof.
Recommended publications
  • Identificação De Textos Em Imagens CAPTCHA Utilizando Conceitos De
    Identificação de Textos em Imagens CAPTCHA utilizando conceitos de Aprendizado de Máquina e Redes Neurais Convolucionais Relatório submetido à Universidade Federal de Santa Catarina como requisito para a aprovação da disciplina: DAS 5511: Projeto de Fim de Curso Murilo Rodegheri Mendes dos Santos Florianópolis, Julho de 2018 Identificação de Textos em Imagens CAPTCHA utilizando conceitos de Aprendizado de Máquina e Redes Neurais Convolucionais Murilo Rodegheri Mendes dos Santos Esta monografia foi julgada no contexto da disciplina DAS 5511: Projeto de Fim de Curso e aprovada na sua forma final pelo Curso de Engenharia de Controle e Automação Prof. Marcelo Ricardo Stemmer Banca Examinadora: André Carvalho Bittencourt Orientador na Empresa Prof. Marcelo Ricardo Stemmer Orientador no Curso Prof. Ricardo José Rabelo Responsável pela disciplina Flávio Gabriel Oliveira Barbosa, Avaliador Guilherme Espindola Winck, Debatedor Ricardo Carvalho Frantz do Amaral, Debatedor Agradecimentos Agradeço à minha mãe Terezinha Rodegheri, ao meu pai Orlisses Mendes dos Santos e ao meu irmão Camilo Rodegheri Mendes dos Santos que sempre estiveram ao meu lado, tanto nos momentos de alegria quanto nos momentos de dificuldades, sempre me deram apoio, conselhos, suporte e nunca duvidaram da minha capacidade de alcançar meus objetivos. Agradeço aos meus colegas Guilherme Cornelli, Leonardo Quaini, Matheus Ambrosi, Matheus Zardo, Roger Perin e Victor Petrassi por me acompanharem em toda a graduação, seja nas disciplinas, nos projetos, nas noites de estudo, nas atividades extracurriculares, nas festas, entre outros desafios enfrentados para chegar até aqui. Agradeço aos meus amigos de infância Cássio Schmidt, Daniel Lock, Gabriel Streit, Gabriel Cervo, Guilherme Trevisan, Lucas Nyland por proporcionarem momentos de alegria mesmo a distância na maior parte da caminhada da graduação.
    [Show full text]
  • Vikas Sindhwani Google May 17-19, 2016 2016 Summer School on Signal Processing and Machine Learning for Big Data
    Real-time Learning and Inference on Emerging Mobile Systems Vikas Sindhwani Google May 17-19, 2016 2016 Summer School on Signal Processing and Machine Learning for Big Data Abstract: We are motivated by the challenge of enabling real-time "always-on" machine learning applications on emerging mobile platforms such as next-generation smartphones, wearable computers and consumer robotics systems. On-device models in such settings need to be highly compact, and need to support fast, low-power inference on specialized hardware. I will consider the problem of building small-footprint non- linear models based on kernel methods and deep learning techniques, for on-device deployments. Towards this end, I will give an overview of various techniques, and introduce new notions of parsimony rooted in the theory of structured matrices. Such structured matrices can be used to recycle Gaussian random vectors in order to build randomized feature maps in sub-linear time for approximating various kernel functions. In the deep learning context, low-displacement structured parameter matrices admit fast function and gradient evaluation. I will discuss how such compact nonlinear transforms span a rich range of parameter sharing configurations whose statistical modeling capacity can be explicitly tuned along a continuum from structured to unstructured. I will present empirical results on mobile speech recognition problems, and image classification tasks. I will also briefly present some basics of TensorFlow: a open-source library for numerical computations on data flow graphs. Tensorflow enables large-scale distributed training of complex machine learning models, and their rapid deployment on mobile devices. Bio: Vikas Sindhwani is Research Scientist in the Google Brain team in New York City.
    [Show full text]
  • BRKIOT-2394.Pdf
    Unlocking the Mystery of Machine Learning and Big Data Analytics Robert Barton Jerome Henry Distinguished Architect Principal Engineer @MrRobbarto Office of the CTAO CCIE #6660 @wirelessccie CCDE #2013::6 CCIE #24750 CWNE #45 BRKIOT-2394 Cisco Webex Teams Questions? Use Cisco Webex Teams to chat with the speaker after the session How 1 Find this session in the Cisco Events Mobile App 2 Click “Join the Discussion” 3 Install Webex Teams or go directly to the team space 4 Enter messages/questions in the team space BRKIOT-2394 © 2020 Cisco and/or its affiliates. All rights reserved. Cisco Public 3 Tuesday, Jan. 28th Monday, Jan. 27th Wednesday, Jan. 29th BRKIOT-2600 BRKIOT-2213 16:45 Enabling OT-IT collaboration by 17:00 From Zero to IOx Hero transforming traditional industrial TECIOT-2400 networks to modern IoT Architectures IoT Fundamentals 08:45 BRKIOT-1618 Bootcamp 14:45 Industrial IoT Network Management PSOIOT-1156 16:00 using Cisco Industrial Network Director Securing Industrial – A Deep Dive. Networks: Introduction to Cisco Cyber Vision PSOIOT-2155 Enhancing the Commuter 13:30 BRKIOT-1775 Experience - Service Wireless technologies and 14:30 BRKIOT-2698 BRKIOT-1520 Provider WiFi at the Use Cases in Industrial IOT Industrial IoT Routing – Connectivity 12:15 Cisco Remote & Mobile Asset speed of Trains and Beyond Solutions PSOIOT-2197 Cisco Innovates Autonomous 14:00 TECIOT-2000 Vehicles & Roadways w/ IoT BRKIOT-2497 BRKIOT-2900 Understanding Cisco's 14:30 IoT Solutions for Smart Cities and 11:00 Automating the Network of Internet Of Things (IOT) BRKIOT-2108 Communities Industrial Automation Solutions Connected Factory Architecture Theory and 11:00 Practice PSOIOT-2100 BRKIOT-1291 Unlock New Market 16:15 Opening Keynote 09:00 08:30 Opportunities with LoRaWAN for IOT Enterprises Embedded Cisco services Technologies IOT IOT IOT Track #CLEMEA www.ciscolive.com/emea/learn/technology-tracks.html Cisco Live Thursday, Jan.
    [Show full text]
  • Warned That Big, Messy AI Systems Would Generate Racist, Unfair Results
    JULY/AUG 2021 | DON’T BE EVIL warned that big, messy AI systems would generate racist, unfair results. Google brought her in to prevent that fate. Then it forced her out. Can Big Tech handle criticism from within? BY TOM SIMONITE NEW ROUTES TO NEW CUSTOMERS E-COMMERCE AT THE SPEED OF NOW Business is changing and the United States Postal Service is changing with it. We’re offering e-commerce solutions from fast, reliable shipping to returns right from any address in America. Find out more at usps.com/newroutes. Scheduled delivery date and time depend on origin, destination and Post Office™ acceptance time. Some restrictions apply. For additional information, visit the Postage Calculator at http://postcalc.usps.com. For details on availability, visit usps.com/pickup. The Okta Identity Cloud. Protecting people everywhere. Modern identity. For one patient or one billion. © 2021 Okta, Inc. and its affiliates. All rights reserved. ELECTRIC WORD WIRED 29.07 I OFTEN FELT LIKE A SORT OF FACELESS, NAMELESS, NOT-EVEN- A-PERSON. LIKE THE GPS UNIT OR SOME- THING. → 38 ART / WINSTON STRUYE 0 0 3 FEATURES WIRED 29.07 “THIS IS AN EXTINCTION EVENT” In 2011, Chinese spies stole cybersecurity’s crown jewels. The full story can finally be told. by Andy Greenberg FATAL FLAW How researchers discovered a teensy, decades-old screwup that helped Covid kill. by Megan Molteni SPIN DOCTOR Mo Pinel’s bowling balls harnessed the power of physics—and changed the sport forever. by Brendan I. Koerner HAIL, MALCOLM Inside Roblox, players built a fascist Roman Empire.
    [Show full text]
  • Gmail Smart Compose: Real-Time Assisted Writing
    Gmail Smart Compose: Real-Time Assisted Writing Mia Xu Chen∗ Benjamin N Lee∗ Gagan Bansal∗ [email protected] [email protected] [email protected] Google Google Google Yuan Cao Shuyuan Zhang Justin Lu [email protected] [email protected] [email protected] Google Google Google Jackie Tsay Yinan Wang Andrew M. Dai [email protected] [email protected] [email protected] Google Google Google Zhifeng Chen Timothy Sohn Yonghui Wu [email protected] [email protected] [email protected] Google Google Google Figure 1: Smart Compose Screenshot. ABSTRACT our proposed system design and deployment approach. This system In this paper, we present Smart Compose, a novel system for gener- is currently being served in Gmail. ating interactive, real-time suggestions in Gmail that assists users in writing mails by reducing repetitive typing. In the design and KEYWORDS deployment of such a large-scale and complicated system, we faced Smart Compose, language model, assisted writing, large-scale serv- several challenges including model selection, performance eval- ing uation, serving and other practical issues. At the core of Smart ACM Reference Format: arXiv:1906.00080v1 [cs.CL] 17 May 2019 Compose is a large-scale neural language model. We leveraged Mia Xu Chen, Benjamin N Lee, Gagan Bansal, Yuan Cao, Shuyuan Zhang, state-of-the-art machine learning techniques for language model Justin Lu, Jackie Tsay, Yinan Wang, Andrew M. Dai, Zhifeng Chen, Timothy training which enabled high-quality suggestion prediction, and Sohn, and Yonghui Wu. 2019. Gmail Smart Compose: Real-Time Assisted constructed novel serving infrastructure for high-throughput and Writing. In The 25th ACM SIGKDD Conference on Knowledge Discovery and real-time inference.
    [Show full text]
  • The Machine Learning Journey with Google
    The Machine Learning Journey with Google Google Cloud Professional Services The information, scoping, and pricing data in this presentation is for evaluation/discussion purposes only and is non-binding. For reference purposes, Google's standard terms and conditions for professional services are located at: https://enterprise.google.com/terms/professional-services.html. 1 What is machine learning? 2 Why all the attention now? Topics How Google can support you inyour 3 journey to ML 4 Where to from here? © 2019 Google LLC. All rights reserved. What is machine0 learning? 1 Machine learning is... a branch of artificial intelligence a way to solve problems without explicitly codifying the solution a way to build systems that improve themselves over time © 2019 Google LLC. All rights reserved. Key trends in artificial intelligence and machine learning #1 #2 #3 #4 Democratization AI and ML will be core Specialized hardware Automation of ML of AI and ML competencies of for deep learning (e.g., MIT’s Data enterprises (CPUs → GPUs → TPUs) Science Machine & Google’s AutoML) #5 #6 #7 Commoditization of Cloud as the platform ML set to transform deep learning for AI and ML banking and (e.g., TensorFlow) financial services © 2019 Google LLC. All rights reserved. Use of machine learning is rapidly accelerating Used across products © 2019 Google LLC. All rights reserved. Google Translate © 2019 Google LLC. All rights reserved. Why all the attention0 now? 2 Machine learning allows us to solve problems without codifying the solution. © 2019 Google LLC. All rights reserved. San Francisco New York © 2019 Google LLC. All rights reserved.
    [Show full text]
  • Google's 'Project Nightingale' Gathers Personal Health Data
    Google's 'Project Nightingale' Gathers Personal Health Data on Millions of Americans; Search giant is amassing health records from Ascension facilities in 21 states; patients not yet informed Copeland, Rob . Wall Street Journal (Online) ; New York, N.Y. [New York, N.Y]11 Nov 2019. ProQuest document link FULL TEXT Google is engaged with one of the U.S.'s largest health-care systems on a project to collect and crunch the detailed personal-health information of millions of people across 21 states. The initiative, code-named "Project Nightingale," appears to be the biggest effort yet by a Silicon Valley giant to gain a toehold in the health-care industry through the handling of patients' medical data. Amazon.com Inc., Apple Inc. and Microsoft Corp. are also aggressively pushing into health care, though they haven't yet struck deals of this scope. Share Your Thoughts Do you trust Google with your personal health data? Why or why not? Join the conversation below. Google began Project Nightingale in secret last year with St. Louis-based Ascension, a Catholic chain of 2,600 hospitals, doctors' offices and other facilities, with the data sharing accelerating since summer, according to internal documents. The data involved in the initiative encompasses lab results, doctor diagnoses and hospitalization records, among other categories, and amounts to a complete health history, including patient names and dates of birth. Neither patients nor doctors have been notified. At least 150 Google employees already have access to much of the data on tens of millions of patients, according to a person familiar with the matter and the documents.
    [Show full text]
  • Training Details- June - July 2019 Computer Science and Engineering Department
    Training Details- June - July 2019 Computer Science and Engineering Department S.No. First Name Last Name Training Platform Company Name Trainer Designation Start date End date Android & IOS / React & React 1 Shubham kakkar Cupido Bhupender Founder ( co-founder ) 01-06-2019 31-08-2019 native ( JavaScript ) 2 Shivani Dalmia Python/Machine Learning DRDO Kamaldeep Scientist 'D' 03-06-2019 15-07-2019 HTML5, CSS, Bootstrap4, jQuery, 3 Himanshu Gupta Meta Design Solutions Alok Lamba Sr. Software Developer 17-06-2019 26-07-2019 PHP, MySQL 4 Prateek Aggarwal Java, Android Studio Indian Road Safety Campaign Rishi Dayanand B.Tech (IIT Delhi) 12-06-2019 11-07-2019 HTML,CSS, JavaScript,JQuery, 5 Vishal Khurana Tariffo Enterprises Prashant Singh Web Developer 01-06-2019 30-06-2019 Bootstrap 6 Manan Mehta Python and other python libraries Coding blocks Prateek Narang Mentor 07-06-2019 31-07-2019 7 Deepanshu jindal Python Coding blocks Prateek narang Co-Founder 10-06-2019 25-07-2019 ADRDE(Aerial Delivery 8 Jyoti Pachori Deep Learning Research and Development Ajitabh Tiwari Scientist 'D' 03-06-2019 02-07-2019 Establishment),DRDO ,Agra 9 Richa Singh Java ee Cetpa Infotech private limited Mr. Hasan Arshi Trainer in java ee 05-06-2019 28-07-2019 Leading india AI (Bennett 10 Yash Chaudhary Machine learning / deep learning Surbhi Gupta Mentor / Phd scholar 24-06-2019 19-07-2019 University) Project leader , data 11 Yash Chaudhary ML / deep learning Northcorp Sagar 10-06-2019 05-08-2019 scientist 2 12 Deepanshu Rana ReactJs, Amazon Web Services Opslyft Aayush
    [Show full text]
  • 321444 1 En Bookbackmatter 533..564
    Index 1 Abdominal aortic aneurysm, 123 10,000 Year Clock, 126 Abraham, 55, 92, 122 127.0.0.1, 100 Abrahamic religion, 53, 71, 73 Abundance, 483 2 Academy award, 80, 94 2001: A Space Odyssey, 154, 493 Academy of Philadelphia, 30 2004 Vital Progress Summit, 482 Accelerated Math, 385 2008 U.S. Presidential Election, 257 Access point, 306 2011 Egyptian revolution, 35 ACE. See artificial conversational entity 2011 State of the Union Address, 4 Acquired immune deficiency syndrome, 135, 2012 Black Hat security conference, 27 156 2012 U.S. Presidential Election, 257 Acxiom, 244 2014 Lok Sabha election, 256 Adam, 57, 121, 122 2016 Google I/O, 13, 155 Adams, Douglas, 95, 169 2016 State of the Union, 28 Adam Smith Institute, 493 2045 Initiative, 167 ADD. See Attention-Deficit Disorder 24 (TV Series), 66 Ad extension, 230 2M Companies, 118 Ad group, 219 Adiabatic quantum optimization, 170 3 Adichie, Chimamanda Ngozi, 21 3D bioprinting, 152 Adobe, 30 3M Cloud Library, 327 Adonis, 84 Adultery, 85, 89 4 Advanced Research Projects Agency Network, 401K, 57 38 42, 169 Advice to a Young Tradesman, 128 42-line Bible, 169 Adwaita, 131 AdWords campaign, 214 6 Affordable Care Act, 140 68th Street School, 358 Afghan Peace Volunteers, 22 Africa, 20 9 AGI. See Artificial General Intelligence 9/11 terrorist attacks, 69 Aging, 153 Aging disease, 118 A Aging process, 131 Aalborg University, 89 Agora (film), 65 Aaron Diamond AIDS Research Center, 135 Agriculture, 402 AbbVie, 118 Ahmad, Wasil, 66 ABC 20/20, 79 AI. See artificial intelligence © Springer Science+Business Media New York 2016 533 N.
    [Show full text]
  • Deep Learning on Mobile Devices – a Review
    Deep Learning on Mobile Devices – A Review Yunbin Deng FAST Labs, BAE Systems, Inc. Burlington MA 01803 ABSTRACT Recent breakthroughs in deep learning and artificial intelligence technologies have enabled numerous mobile applications. While traditional computation paradigms rely on mobile sensing and cloud computing, deep learning implemented on mobile devices provides several advantages. These advantages include low communication bandwidth, small cloud computing resource cost, quick response time, and improved data privacy. Research and development of deep learning on mobile and embedded devices has recently attracted much attention. This paper provides a timely review of this fast-paced field to give the researcher, engineer, practitioner, and graduate student a quick grasp on the recent advancements of deep learning on mobile devices. In this paper, we discuss hardware architectures for mobile deep learning, including Field Programmable Gate Arrays (FPGA), Application Specific Integrated Circuit (ASIC), and recent mobile Graphic Processing Units (GPUs). We present Size, Weight, Area and Power (SWAP) considerations and their relation to algorithm optimizations, such as quantization, pruning, compression, and approximations that simplify computation while retaining performance accuracy. We cover existing systems and give a state-of-the-industry review of TensorFlow, MXNet, Mobile AI Compute Engine (MACE), and Paddle-mobile deep learning platform. We discuss resources for mobile deep learning practitioners, including tools, libraries, models, and performance benchmarks. We present applications of various mobile sensing modalities to industries, ranging from robotics, healthcare and multi- media, biometrics to autonomous drive and defense. We address the key deep learning challenges to overcome, including low quality data, and small training/adaptation data sets.
    [Show full text]
  • Understanding Alphabet and Google, 2017
    This research note is restricted to the personal use of [email protected]. Understanding Alphabet and Google, 2017 Published: 24 February 2017 ID: G00297707 Analyst(s): Tom Austin, David Mitchell Smith, Yefim V. Natis, Isabelle Durand, Ray Valdes, Bettina Tratz-Ryan, Roberta Cozza, Daniel O'Connell, Lydia Leong, Jeffrey Mann, Andrew Frank, Brian Blau, Chris Silva, Mark Hung, Adam Woodyer, Matthew W. Cain, Steve Riley, Martin Reynolds, Whit Andrews, Alexander Linden, David Yockelson, Joe Mariano Google's size, market differentiation, rapid pace of innovation and ambitions can complicate fully understanding the vendor and its fit to current digital business needs. CIOs and IT leaders can use this report to explore in detail selected topics from the Gartner Vendor Rating. Key Findings ■ Two outcomes are apparent more than a year after the creation of the Alphabet-Google structure: Google is beginning to show increased momentum and has made significant investments in its enterprise offerings (most of its 2016 acquisitions were focused on this); and it is applying more discipline in Alphabet's "Other Bets." ■ Google is flourishing despite challenging external market factors: adverse publicity, competitors, government regulators and law enforcement. ■ Google values data, encourages bold investments in long-term horizons, pivots plans based on results in near real time, and reveres user-oriented engineering excellence. ■ Google is fully committed to 100% cloud-based and web-scale infrastructure, massive scaling, the maximum rate of change, and stream-lined business processes for itself and its customers. Recommendations CIOs and IT leaders managing vendor risk and performance should: ■ Plan for a long-term strategic relationship with Google based on an assumption that "what you see is what you get." Major vendor changes to core culture and fundamental operating principles in response to customer requests usually come slowly, if at all.
    [Show full text]
  • Transcript Is Provided for the Convenience of Investors Only, for a Full Recording Please See the Q3 2016 Earnings Call Webcast
    This transcript is provided for the convenience of investors only, for a full recording please see the Q3 2016 Earnings Call webcast . Q3 2016 Earnings Call October 27, 2016 Candice (Operator): Good day, ladies and gentlemen, and welcome to the Alphabet Q3 2016 earnings call. At this time, all participants are in a listen­only mode. Later we will conduct question­and­answer session and instructions will follow at that time. If anyone should require operator assistance, please press star then zero on your touchtone telephone. As a reminder, today's conference call is being recorded. I would like to turn the conference over to Ellen West, head of investor relations. Please go ahead. Ellen West, VP ­ Investor Relations: Thank you. Good afternoon, everyone, and welcome to Alphabet's third quarter 2016 earnings conference call. With us today are Ruth Porat and Sundar Pichai. While you have been waiting for the call to start, you have been listen ing to Dua Lipa, a rising new pop star from London whose most recent single on YouTube has found fans all over the world and cracked the top 40 in the U.S. ahead of her debut album release early next year. Now I'll quickly cover the safe harbor. Some of the statements that we make today may be considered forward looking, including statements regarding our future investments, our long­term growth and innovation, the expected performance of our businesses, and our expected level of capital expenditures. These statements involve a number of risks and uncertainties that could cause actual results to differ materially.
    [Show full text]