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Artificial Intelligence is the bicycle for our Technology -- My Udacity AMA

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Firstly, Karen Baker and Martin McGovern from Udacity help organize and facilitate this AMA for the life long learners at Udacity. I am deeply thankful to Karen, Martin and Udacity for this opportunity to share the knowledge. QQ: What is the best piece of advice you've ever received in your career? VK: I have got some good advice from books as well as mentors. QQ: What suggestions do you have around building your portfolio?


Best Big Data Hadoop Architect- Hadoop Online Courses Simpliv

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Record and run settings a team which includes 2 Stanford-educated, ex-Googlers and 2 ex-Flipkart Lead Analysts. This team has decades of practical experience in working with large-scale data processing jobs. Relational Databases are so stuffy and old! Welcome to HBase – a database solution for a new age. HBase: Do you feel like your relational database is not giving you the flexibility you need anymore?


Pearson hires head of artificial intelligence

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Pearson is concentrating efforts in the area of artificial intelligence (AI) and has hired a former Intel executive, Milena Marinova, to be its senior vice president for AI products and solutions. The appointment has been described as "first of its kind" for the education industry. Marinova, who was previously senior director of AI Solutions for Intel's Artificial Intelligence Products Group, will act as a spokesperson for the role of AI in education while spearheading "the digital and AI transformation of Pearson". At Intel, Marinova led the development for commercial applications of AI across various industries, including Internet of Things, robotics and AR/VR, and advised Intel Capital on investments in these areas. She also previously held executive roles at Idealab, a startup incubator, and Hyundai Capital America.


More States Opting To 'Robo-Grade' Student Essays By Computer

NPR Technology

Students work on computers in Henderson, Nev. Several states including Utah and Ohio use automated grading on student essays written as part of standardized tests. Students work on computers in Henderson, Nev. Several states including Utah and Ohio use automated grading on student essays written as part of standardized tests. B: They can be scored quickly. C: They score without human bias.


Tonara launches an AI-powered tutoring service for budding musicians

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AI has an important role to play in the education industry, which also happens to be a lucrative and still–growing space. The global private tutoring market alone will be worth more than $102 billion by the end of this year, and public education offers an equally fruitful opportunity. AI-powered music tutoring app Tonara today announced the launch of its Tonaro 360 music tutoring service, along with a new music store. Throughout beta testing, music teachers reported up to a 68 percent increase in practice hours among students using Tonara 360. So how does it work?


Balanced Distribution Adaptation for Transfer Learning

arXiv.org Machine Learning

Transfer learning has achieved promising results by leveraging knowledge from the source domain to annotate the target domain which has few or none labels. Existing methods often seek to minimize the distribution divergence between domains, such as the marginal distribution, the conditional distribution or both. However, these two distances are often treated equally in existing algorithms, which will result in poor performance in real applications. Moreover, existing methods usually assume that the dataset is balanced, which also limits their performances on imbalanced tasks that are quite common in real problems. To tackle the distribution adaptation problem, in this paper, we propose a novel transfer learning approach, named as Balanced Distribution \underline{A}daptation~(BDA), which can adaptively leverage the importance of the marginal and conditional distribution discrepancies, and several existing methods can be treated as special cases of BDA. Based on BDA, we also propose a novel Weighted Balanced Distribution Adaptation~(W-BDA) algorithm to tackle the class imbalance issue in transfer learning. W-BDA not only considers the distribution adaptation between domains but also adaptively changes the weight of each class. To evaluate the proposed methods, we conduct extensive experiments on several transfer learning tasks, which demonstrate the effectiveness of our proposed algorithms over several state-of-the-art methods.


Clustering with Temporal Constraints on Spatio-Temporal Data of Human Mobility

arXiv.org Machine Learning

Extracting significant places or places of interest (POIs) using individuals' spatio-temporal data is of fundamental importance for human mobility analysis. Classical clustering methods have been used in prior work for detecting POIs, but without considering temporal constraints. Usually, the involved parameters for clustering are difficult to determine, e.g., the optimal cluster number in hierarchical clustering. Currently, researchers either choose heuristic values or use spatial distance-based optimization to determine an appropriate parameter set. We argue that existing research does not optimally address temporal information and thus leaves much room for improvement. Considering temporal constraints in human mobility, we introduce an effective clustering approach - namely POI clustering with temporal constraints (PC-TC) - to extract POIs from spatio-temporal data of human mobility. Following human mobility nature in modern society, our approach aims to extract both global POIs (e.g., workplace or university) and local POIs (e.g., library, lab, and canteen). Based on two publicly available datasets including 193 individuals, our evaluation results show that PC-TC has much potential for next place prediction in terms of granularity (i.e., the number of extracted POIs) and predictability.


Here Are Free AI Learning Resources For Beginners - Analytics India Magazine

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Given how artificial intelligence is a buzzing topic, it has sparked a slew of beginner-friendly introductory resources that clear the general concepts from this very broad topic. And for most newcomers, the most interesting topic in AI is Deep Learning. In fact, Google's Python-based Deep Learning framework Tensorflow has helped many a developer get up to speed with the technical concepts. Besides videos and free online courses, you must also have a reading list that helps you cover the math and statistics behind the algorithms. While YouTube videos remain the main learning source and a key starting point for beginners, there is a slew of resources, especially books that can help cement fundamental concepts.


Comparison of top data science libraries for Python, R and Scala [Infographic]

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Machine learning packages take care of the building and implementing the top machine learning algorithms, creating workflows, and in general helping to solve machine learning problems. They provide the primary toolkit for different classification, regression, and other problems. As an integral part of data science, data manipulation and analysis field represent libraries that carry out data scraping, ingestion, cleaning, pre-processing and other operations that allow you to "play with the data" and as a result to perform the analysis itself. With the help of visualization packages, you can display the data visually which is necessary for better understanding and interpreting the data. These packages contain numerous visualization charts as well as different options for representation.


The AI Skills Crisis And How To Close The Gap

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Now that nearly every company is considering how artificial intelligence (AI) applications can positively impact their businesses, they are on the hunt for professionals to help them make their vision a reality. According to research done by Glassdoor, data scientists have the No. 1 job in the United States. The survey looked at salary, job satisfaction and the number of job openings. If you have recent experience looking for AI specialists to join your team, it's quite clear that we're facing an AI skills crisis. In order to move AI projects from ideation into implementation, companies will need to determine how to close the AI skills gap so they have experts on their team to get the job done.