Job Title: Data Engineering Associate
Salary : Rs 20-35 Lacs P.A
Company: JP Morgan Chase Bank
Location: Mumbai (All Areas)
Qualifications: MBA/PGDM
Experience: 2-6 Years
ABOUT JP MORGAN CHASE BANK
JP Morgan Chase Bank, frequently said genuinely as JP Morgan Chase is one of the most important and oldest financial establishments in the United States. Established through a chain of mergers and acquisitions relationship once more to the nineteenth century, JP Morgan Chase provides a sizeable range of monetary services consisting of funding banking, asset manipulation, private banking, and treasury and securities services to companies, governments, institutions, and those globally.
Headquartered in New York City, JP Morgan Chase operates in over one hundred markets and has assets totaling over $3 trillion, making it one of the Big Four banks within the United States. The company is known for its strong retail banking operations under the Chase brand, serving millions of customers and small organizations with banking products alongside credit score playing cards, mortgages, and personal loans.
JPMorgan Chase is likewise diagnosed for its function in shaping worldwide financial markets and its commitment to innovation, sustainability, and corporate responsibility. The agency employs hundreds of human beings internationally and performs a widespread role in the international monetary offerings business enterprise.
Job Overview
A Data Engineering Associate specializes in handling and transforming records into usable codecs for analysis. Responsibilities include designing statistics pipelines, integrating facts from various sources, and making sure facts are first-rate and integrity. They collaborate with records scientists and analysts to recognize facts requirements and optimize database systems. Proficiency in SQL, ETL (Extract, Transform, Load) tactics, and database management structures (DBMS) like MySQL or PostgreSQL are essential. Strong trouble-fixing competencies and interest in elements are crucial for ensuring efficient facts workflows and helping organizational selection-making methods.
Requirements of Data Engineering Associate:
Technical Skills:
- Database Management Systems (DBMS): Proficiency in SQL (Structured Query Language) is fundamental as it permits Data Engineering Associates to retrieve, control, and manipulate information saved in relational databases which include MySQL, PostgreSQL, or Oracle. Knowledge of NoSQL databases like MongoDB or Cassandra is also beneficial for handling unstructured or semi-based facts.
- ETL (Extract, Transform, Load) Processes: Understanding and reveling in ETL techniques are critical. This involves extracting facts from diverse resources, reworking them into a steady format appropriate for evaluation, and loading them into a destination database or statistics warehouse. Tools including Apache Airflow, Talend, Informatica, or custom scripts are often used for automating and coping with ETL workflows correctly.
- Data Modeling and Warehousing: Familiarity with information modeling techniques to design schemas that optimize information garage and retrieval. Knowledge of information warehousing standards and systems (e.g., Amazon Redshift, Google BigQuery) is valuable for managing huge volumes of based records and permitting speedy analytical queries.
- Programming Languages: Proficiency in programming languages including Python, Java, or Scala is essential for scripting ETL tactics, growing information pipelines, and integrating information throughout specific systems. Python, particularly, is broadly used for its versatility in statistics manipulation and integration duties.
- Data Quality and Governance: Understanding records fine standards and enforcing facts governance methods to ensure data accuracy, consistency, and reliability in the course of its lifecycle. This entails identifying and rectifying statistics anomalies and adhering to regulatory necessities (e.g., GDPR, HIPAA) related to facts management and privacy. (Data Engineering Associate)
- Big Data Technologies: Familiarity with big records frameworks like the Hadoop ecosystem (HDFS, MapReduce, Hive, Spark) and streaming platforms (e.g., Apache Kafka) is useful for processing and reading big datasets in actual-time or batch mode.
Analytical and Problem-Solving Skills of Data Engineering Associate:
- Critical Thinking: Ability to investigate complicated records troubles, pick out root reasons, and endorse effective answers to optimize data pipelines and beautify records reliability and overall performance.
- Statistical Analysis: Basic expertise in statistical methods and strategies to interpret facts tendencies, perform hypothesis testing, and validate analytical models evolved via information scientists or analysts.
Soft Skills:
- Communication: Effective communication competencies are essential for participating with move-functional teams, which include records scientists, analysts, and commercial enterprise stakeholders. Data Engineering Associates have to translate technical standards into actionable insights and pointers.
- Teamwork: Collaborating efficiently within a group’s surroundings, sharing understanding, and contributing to collective hassle-solving efforts.
Education and Experience:
- Education: A bachelor’s degree in Computer Science, Information Technology, Data Science, or a related field is usually required. Advanced levels or certifications in data engineering, database control, or associated disciplines can offer an aggressive advantage.
- Experience: Entry-level positions may additionally require 1-3 years of relevant revel in facts engineering, database management, or associated roles. Practical experience with data integration, ETL methods, and database control structures gained via internships or instructional initiatives is relatively valued. (Data Engineering Associate)
Additional Considerations:
- Continuous Learning: Keeping abreast of industry tendencies, rising technologies, and exceptional practices in data engineering is vital for professional increase and staying competitive within the subject.
- Adaptability: Ability to adapt to evolving business requirements, technological advancements, and converting records landscapes to constantly improve records infrastructure and techniques.
Other Job’s