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Title: Data Scientist / Statistician. Experience working with data analysis and visualization tools such as MiniTab, JMP, Tableau. Project management acumen and/or experience a big plus, to include schedule management and/or familiarity working within JIRA/Conflunece (Atlassian) suite.
Full-timeExpandApply NowActive JobUpdated 19 days ago - UpvoteDownvoteShare Job
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Key Responsibilities:Works in project teams as subject matter expert to design and development of program methods, processes and systems to consolidate and analyze structured and unstructured, diverse big data sourcesPerforms complicated statistical and data -mining analysis, using statistical tools like R, SAS and MATlab input and design of data acquisition systems, data structure and database design.
$198,000Full-timeExpandApply NowActive JobUpdated Today - UpvoteDownvoteShare Job
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Apache Hadoop or Apache Spark (for big data processing) The Data Scientist will be responsible for driving insights from the vast amounts of patient and environmental data available within our data warehouse.
RemoteExpandApply NowActive JobUpdated 2 days ago - UpvoteDownvoteShare Job
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We are currently seeking an experienced data scientist to join the Big Data and Advanced Analytics department. As part of the Data Analytics team, the Lead Data Scientist will work closely with the Data Engineering team and business functions to solve real-world oil and gas midstream problems using machine learning, data science algorithms and artificial intelligence.
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Hands-on experience developing and deploying models using MLops framework utilizing Databricks /Azure services ( Synapse, Azure Data Factory, Power BI) or AWS tools (SageMaker, Glue, EMR) or GCP (Dataflow, Big Query, Cloud Run.
Full-timeExpandApply NowActive JobUpdated 15 days ago - UpvoteDownvoteShare Job
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The Scientists help push the envelope of what is possible in the big data space; streaming live data into a data lake and experimenting with data in the data sandbox.
$95,000 a yearFull-timeRemoteExpandApply NowActive JobUpdated 26 days ago - UpvoteDownvoteShare Job
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Familiarity with big data and distributed/cloud computing technologies such as Apache Airflow, Kafka, We are looking for a Senior Data Scientist that will help us discover the.
Full-timeExpandApply NowActive JobUpdated 19 days ago - UpvoteDownvoteShare Job
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Experience with big data platforms (e.g., Hadoop, Spark) and cloud services (e.g., AWS, Azure, or GCP) As the first Senior Data Scientist providing Consumer Insights, your role is pivotal in driving data informed strategy.
Full-timeExpandApply NowActive JobUpdated 13 days ago - UpvoteDownvoteShare Job
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Experience with big data technologies and tools, such as Databricks, Hadoop, Spark, etc., is a plus. As a Computer Scientist on the Fraud Team, you will be responsible for spearheading the development and execution of an innovative Artificial Intelligence (AI), Machine Learning (ML), Deep Learning (DL), and Natural Language Processing (NLP) strategy to combat various fraudulent activities, including bot attacks, Account Takeover (ATO) incidents, phishing schemes, theft, and product misuse.
$267,600 a yearFull-timeExpandApply NowActive JobUpdated 24 days ago - UpvoteDownvoteShare Job
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Office of the Attorney General of Texas requires the services of 3 Data Scientist (Big Data Engineer) 2, hereafter referred to as Candidate(s), who meets the general qualifications of Data Scientist (Big Data Engineer) 2, Data/Database Administration and the specifications outlined in this document for the Office of the Attorney General of Texas.
ExpandApply NowActive JobUpdated 2 months ago - UpvoteDownvoteShare Job
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This is a blue-sky role that gives you a chance to roll up your sleeves and dive into big data sets in order to build simulations and experimentation systems at scale, build optimization algorithms and leverage cutting-edge technologies across Amazon.
$212,800 a yearFull-timeExpandApply NowActive JobUpdated 21 days ago - UpvoteDownvoteShare Job
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2+ years of data/research scientist, statistician or quantitative analyst in an internet-based company with complex and big data sources experience. 1+ years of data querying languages (e.g. SQL), scripting languages (e.g. Python) or statistical/mathematical software (e.g. R, SAS, Matlab, etc.
$206,800 a yearFull-timeExpandApply NowActive JobUpdated 14 days ago - UpvoteDownvoteShare Job
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You're proficient in tools like Python, R, SQL, and big data platforms like Hadoop or Spark. As the Principal Data Scientist at our client , you'll be at the forefront of our data strategy, developing models and algorithms that unlock the full potential of our data.
Full-timeExpandApply NowActive JobUpdated 1 month ago - UpvoteDownvoteShare Job
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Experience with Spark, SQL, Tableau, Google Analytics, BigQuery (or any other Big data/Cloud equivalent) etc. 3+ years of data scientist experience with proven industry experience in a large scale environment (PBs scale & globally distributed teams.
Full-timeExpandApply NowActive JobUpdated 1 month ago - UpvoteDownvoteShare Job
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Experience with big data technologies such as Spark and TensorFlow is a plus. Lead a team of Data Scientist and Machine Learning Experts. Looking for a a Lead Data Scientist with expertise in Algorithm Development and Python.
Full-timeExpandApply NowActive JobUpdated 1 month ago
big data scientist jobs in Austin, ME, Missouri
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