Remove Analytics Remove DataOps Remove Hadoop
article thumbnail

Top Companies to work for if you are a data scientist

Data Science 101

The company develops a DataOps platform that can allow business to manage streaming data flows. 1010 Data has its headquarter in the New York and the company has over 15 years of experience in handling data analytics with over 850 clients across various industries. This company is great for business analytics. 2 StreamSets.

article thumbnail

What Is a Data Fabric and How Does a Data Catalog Support It?

Alation

A data fabric utilizes continuous analytics over existing, discoverable, and inferred metadata assets to support the design, deployment, and utilization of integrated and reusable data across all environments, including hybrid and multi-cloud platforms.” Automated Data Orchestration (AKA DataOps). ” 1. Spoiler alert!

DataOps 52
professionals

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

article thumbnail

phData Awarded Snowflake 2023 Partner of the Year

phData

Through our work, phData has boasted a 98 percent average renewal rate for phData Elastic Operations, DataOps, and MLOps. Leading Marketing Company – Dive into this story of how phData helped a massive marketing company migrate successfully to Snowflake from Hadoop using Snowpark.

DataOps 52
article thumbnail

Big data engineer

Dataconomy

They not only manage extensive data architectures but also pave the way for effective data analytics and innovative solutions. Familiarity with big data tools Proficiency with big data tools like Apache Hadoop and Apache Spark is vital, as these technologies are key to managing extensive datasets efficiently.

article thumbnail

Big data management

Dataconomy

Big data management refers to the strategies and processes involved in handling extensive volumes of structured and unstructured data to ensure high data quality and accessibility for analytics and business intelligence applications. Data quality issues: Ensuring data cleansing and validation is critical for reliable analytics.