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Petroleum Data Analyst

Description

We are seeking an experienced Petroleum Data Analyst to join our upstream operations team in Abu Dhabi. In this critical role, you will be responsible for analyzing complex well integrity datasets to ensure operational safety and efficiency. You will be a key contributor to the maintenance and enhancement of our Well Integrity Management System (WIMS), transforming raw data into actionable insights for engineering and operations teams. The ideal candidate will leverage their deep analytical expertise to identify trends, predict potential issues, and support data-driven decision-making. This position requires a strong technical background in data analytics, combined with a solid understanding of petroleum engineering principles. Join us to play a vital part in upholding the highest standards of well integrity for our assets. This is a full-time, on-site role offering a unique opportunity to make a significant impact.

Requirements

1. Minimum 7 years of professional experience in data analytics.

2. Bachelor's degree in Computer Science, Information Technology, Petroleum Engineering, or a related field.

3. Proficiency in SQL for complex data querying, aggregation, and manipulation.

4. Experience with data analysis and scripting languages such as Python or R.

5. Demonstrated experience with data visualization tools like Power BI, Tableau, or Spotfire.

6. Strong understanding of database management and data warehousing principles.

7. Experience analyzing large, complex datasets from various sources.

8. Familiarity with upstream petroleum operations and well lifecycle data.

Desirable

1. Direct experience within petroleum, reservoir engineering, or well integrity domains.

2. Hands-on experience with Well Integrity Management Systems (WIMS).

3. Knowledge of geosciences or engineering data systems (e.g., Petrel, OFM).

4. Experience with statistical modeling and machine learning techniques.

5. Familiarity with cloud data platforms like Azure or AWS.

Role Highlights

πŸ’° Compensation

AED 30,000 – AED 40,000

πŸ“ Location

Abu Dhabi, UAE

πŸ’Ό Work Location Type

Onsite

πŸ“ˆ Job Level

Mid Level

βŒ› Experience

7+ years

🏒 Department

Energy

🏭 Industry

Oil, Gas & Mining

πŸ”Ή Sub-Industry

Oil & Gas

Total Applications :

557


Important information

How did you hear about us? *

Which country's passport do you hold? *

Email *(Please ensure the email matches the one mentioned in your CV or resume)

LinkedIn Profile URL *

Please provide your current and expected salary in the box below: *

Please mention your notice period *

Please answer the following 6 short questions. These help our team better understand your strengths and areas of experience.

It’s completely fine to select β€˜No’ if something doesn’t apply to your background β€” we’re looking for a good fit, not a perfect one.

If you select β€˜Yes’ for any question, you’re welcome to use it as a guide to highlight relevant experience in your CV, where applicable.

1. Do you have a Bachelor's degree in Computer Science, Information Technology, Petroleum Engineering, or a related field? *

2. Do you possess a minimum of 7 years of professional experience in a data analytics role? *

3. Is a significant portion of your data analytics experience within the petroleum, reservoir, or well integrity domains? *

4. Do you have hands-on experience with Well Integrity Management Systems (WIMS)? *

5. Are you proficient in using SQL for data querying and analysis? *

6. Are you able to work full-time, on-site in Abu Dhabi, UAE? *

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