Wed.Feb 23, 2022

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Analyzing Semantic Equivalence of Sentences Using BERT

Analytics Vidhya

This article was published as a part of the Data Science Blogathon. Introduction In this article, we will learn to train Bidirectional Encoder Representations from Transformers (BERT) in order to analyze the semantic equivalence of any two sentences, i.e. whether the two sentences convey the same meaning or not. The following aspects are covered in the […].

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Design Patterns in Machine Learning for MLOps

KDnuggets

This article outlines some of the most common design patterns encountered when creating successful Machine Learning solutions.

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Learn Mobile Price Prediction Through Four Classification Algorithms

Analytics Vidhya

This article was published as a part of the Data Science Blogathon. Introduction Mobile phones come in all sorts of prices, features, specifications and all. Price estimation and prediction is an important part of consumer strategy. Deciding on the correct price of a product is very important for the market success of a product. A new […]. The post Learn Mobile Price Prediction Through Four Classification Algorithms appeared first on Analytics Vidhya.

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10 Ways Organizations Can Prepare for Changes Brought on by the IoT

Smart Data Collective

The Internet of Things is becoming a big deal for people in countless professions. It is projected that there will be over 75 billion IoT devices by the year 2025. The IoT is creating a lot of new changes that we have to prepare for. There are many benefits of living in a much more connected world. However, the IoT is also driving a number of new challenges as well.

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Navigating the Future: Generative AI, Application Analytics, and Data

Generative AI is upending the way product developers & end-users alike are interacting with data. Despite the potential of AI, many are left with questions about the future of product development: How will AI impact my business and contribute to its success? What can product managers and developers expect in the future with the widespread adoption of AI?

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Blood Cell Detection in Image Using Naive Approach

Analytics Vidhya

This article was published as a part of the Data Science Blogathon. The basics of object detection problems are how the data would look like. Now, this article will discuss the different deep learning architectures that we can use to solve object detection problems. Let us first discuss the problem statement that we’ll be working […]. The post Blood Cell Detection in Image Using Naive Approach appeared first on Analytics Vidhya.

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Cloud Storage Adoption is the Need of the Hour for Business

KDnuggets

The rush towards cloud storage means that the cloud has to offer a valuable proposition to businesses. Let’s explore why businesses regardless of their size should consider moving to the cloud.

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Data-Centric Firms Address Athena Shortcomings with Smart Indexing

Smart Data Collective

There are a lot of benefits of data scalability. The size and the variety of data that enterprises have to deal with have become more complex and larger. Traditional relational databases provide certain benefits, but they are not suitable to handle big and various data. That is when data lake products started gaining popularity, and since then, more companies introduced lake solutions as part of their data infrastructure.

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KDnuggets™ News 22:n08, Feb 23: Complete Collection of Data Science Cheat Sheets; Easy Guide to Choose the Right Machine Learning Algorithm

KDnuggets

The Complete Collection of Data Science Cheat Sheets - Part 2; An Easy Guide to Choose the Right Machine Learning Algorithm; How to Become a Successful Data Science Freelancer in 2022; Essential Machine Learning Algorithms: A Beginner’s Guide; Orchestrate a Data Science Project in Python With Prefect.

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Cloudera: Enabling the Cloud-Native, Data-Driven Techco

Cloudera

The telecommunications industry has been doing well since the pandemic started (not that many would notice). Revenues have remained relatively stable, while consumption has gone up, as virtual engagement has become the primary mode of operations for many businesses (and families!) In the mean-time, digital transformation has been accelerating both as a means to respond to the pandemic, and as a mechanism to drive costs down further, allowing for margin growth.

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Collecting multiple community viewpoints after a crime

IBM Big Data Hub

Seeing George Floyd have his breath forcibly taken from him in 2020 left me with a strong urge to act. But what could I do? Inside of IBM, the Black community and allies decided to use data and technology to turn the frustration of #BlackLivesMatter into something that can actually make a difference. I felt compelled to join in. Through a design thinking workshop, I got enthused about the idea of using AI to gather and process the various viewpoints that occur after a crime in a community.

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Get Better Network Graphs & Save Analysts Time

Many organizations today are unlocking the power of their data by using graph databases to feed downstream analytics, enahance visualizations, and more. Yet, when different graph nodes represent the same entity, graphs get messy. Watch this essential video with Senzing CEO Jeff Jonas on how adding entity resolution to a graph database condenses network graphs to improve analytics and save your analysts time.

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Where ML Research Meets Data Science Practice: Learning With Small Data

Dataiku

In January, Dataiku’s Léo Dreyfus-Schmidt and Reda Affane presented our annual webinar on up-and-coming machine learning (ML) trends — this year, with a spin on grounding those research trends in reality with actual use cases from our data science team. In this blog series, we’re going to break up their main topics (data drift and anomaly detection, learning with small data, retail markdown optimization, and uplift modeling and causal inference) so they’re digestible and accessible as you aim to

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Cap Table Management 101+Downloadable Excel Template

Jet Global

A capitalization table, more commonly referred to as a “cap table,” provides a detailed record of the ownership stakes held by various investors, employees, and others who own shares in your company. The cap table documents who owns what, when it was acquired, what conditions may apply to ownership of specific shares, and more. On a practical level, the cap table serves a fairly obvious purpose; after all, you can’t effectively manage your company’s ownership shares without knowing who owns them

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What is Hyperconverged Storage?

Nutanix

Hyperconverged storage is a complex data storage solution. Learn what it is, how it compares to other solutions and how Nutanix can help your business grow.

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How Can NLP Help My Business Implement Self-Serve Analytics?

Smarten

What is Natural Language Processing and Why Do I Need it in My Advanced Analytics Solution? What is Natural Language Processing (NLP)? Natural Language Processing utilizes artificial intelligence to translate computer code and language into real world, human language. While the goal is to simplify human interaction with computers, NLP is a complex mix of computational linguistics and computer science.

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How Embedded Analytics Gets You to Market Faster with a SAAS Offering

Start-ups & SMBs launching products quickly must bundle dashboards, reports, & self-service analytics into apps. Customers expect rapid value from your product (time-to-value), data security, and access to advanced capabilities. Traditional Business Intelligence (BI) tools can provide valuable data analysis capabilities, but they have a barrier to entry that can stop small and midsize businesses from capitalizing on them.