Big Data in Oil & Gas – Collection, Cleaning & Analysis – One Day USD 150 / Two Days USD 250 Per Pax
Description
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Introduction to Big Data in the Oil & Gas Industry
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Understanding what “big data” means in energy operations
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The 5Vs: Volume, Velocity, Variety, Veracity, and Value
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Role of big data in digital transformation and decision-making
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Sources of Big Data in Oil & Gas
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Exploration: seismic, geological, and geophysical data
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Production: sensors, SCADA, and IoT devices
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Business operations: ERP, maintenance, and logistics data
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Data Acquisition and Collection Methods
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Collecting data from field instruments, sensors, and control systems
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Integrating legacy systems with modern digital platforms
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Real-time data streaming and edge collection technologies
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Data Storage and Management
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Overview of data lakes, warehouses, and hybrid storage
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Cloud-based storage solutions (AWS, Azure, Google Cloud)
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Ensuring scalability, accessibility, and data integrity
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Data Cleaning and Preprocessing
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Handling missing, duplicated, and inconsistent data
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Data validation and quality assurance techniques
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Automation tools for preprocessing and cleansing
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Data Integration and Transformation
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Combining structured and unstructured data
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ETL (Extract, Transform, Load) workflows and best practices
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Common tools: Apache NiFi, Talend, and Informatica
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Data Governance and Security
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Establishing data ownership and accountability
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Policies for data access, privacy, and protection
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Compliance with energy industry standards and regulations
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Exploratory Data Analysis (EDA)
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Identifying patterns, correlations, and outliers
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Using descriptive statistics and visualization tools
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Case study: analyzing production and equipment performance data
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Big Data Analytics Tools and Technologies
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Overview of Hadoop, Spark, and Kafka
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Using Python, R, and SQL for data analytics
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Data visualization with Power BI and Tableau
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Machine Learning and Predictive Analytics
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Leveraging big data for predictive maintenance and production forecasting
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Applying ML models to improve decision-making
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Integration of AI-driven analytics in field operations
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Implementing Big Data Projects in Oil & Gas
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Planning data-driven initiatives
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Building cross-functional teams and selecting the right tools
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Measuring project success and ROI
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Future Trends and Innovations in Big Data
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Edge analytics, digital twins, and real-time decision systems
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Role of big data in sustainability and emission monitoring
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The evolving future of data-driven oilfield operations
