Standard Bank Tanzania |
Jobs in Tanzania 2022: New Job Vacancies at Standard Bank Tanzania 2022
Data Engineer 💥TAMISEMI: CHECK FORM 5 SELECTION, VYUO VYA UFUNDI NA KATI 2022. BONYEZA HAPA💥
💥AJIRA MPYA ZA SENSA 2022. NAFASI 200,500 (LAKI MBILI NA MIA TANO) TUMA MAOMBI NA CHECK UPDATES ZOTE. CLICK HERE!💥
💥PDF Files - Form Five and Colleges Joining Instructions 2022/23 | Download Free. BONYEZA HAPA!💥
💥NIDA: PATA NAMBA YA KITAMBULISHO CHAKO CHA NIDA BURE. BONYEZA HAPA!💥
💥UNASUBIRI NINI? FOLLOW US ON INSTAGRAM. CLICK HERE!
AJIRA MPYA TANZANIA 2022 | NAFASI MPYA ZA KAZI 2022
Standard Bank Tanzania Jobs 2022Job Overview
Career Area: Engineering
Location: USA, Dar es Salaam Region, Tanzania
Job Type: Full-Time Regular
Job ID: 64621
Recommended:
PAST PAPERS ZA DARASA LA 7 MPAKA FORM SIX | NECTA AND MOCK EXAMS 1988 - 2019. CLICK HERE!
Job Purpose
The Data Engineer will play a pivotal role in building and operationalizing the minimally inclusive data necessary for the enterprise data and analytics initiatives following industry standard practices and tools. The bulk of the data engineer’s work would be in building, managing, and optimizing data pipelines and then moving these data pipelines effectively into production for key data and analytics consumers like business/data analysts, data scientists or any persona that needs curated data for data and analytics use cases across the enterprise. Guarantee compliance with data governance and data security requirements while creating, improving, and operationalizing these integrated and reusable data pipelines, will be the key interface in operationalizing data and analytics on behalf of the business unit(s) and organizational outcomes.
Key Responsibilities
- Build data pipelines: Managed data pipelines consist of a series of stages through which data flows (for example, from data sources or endpoints of acquisition to integration to consumption for specific use cases). These data pipelines must be created, maintained and optimized as workloads move from development to production for specific use cases. Architecting, creating and maintaining data pipelines will be the primary responsibility of the data engineer.
- Drive Automation through effective metadata management: The data engineer will be responsible for using innovative and modern tools, techniques and architectures to partially or completely automate the most-common, repeatable and tedious data preparation and integration tasks in order to minimize manual and error-prone processes and improve productivity. The data engineer will also need to assist with renovating the data management infrastructure to drive automation in data integration and management.
Recommended:
CHECK SCHOLARSHIPS OPPORTUNITIES TO STUDY ABROAD CLICK HERE!This will include (but not be limited to):
- Learning and using modern data preparation, integration and AI-enabled metadata management tools and techniques.
- Tracking data consumption patterns.
- Performing intelligent sampling and caching.
- Monitoring schema changes.
- Recommending — or sometimes even automating — existing and future integration flows.
- The newly hired data engineer will need strong collaboration skills in order to work with varied stakeholders within the organization. In particular, the data engineer will work in close relationship with data science teams and with business (data) analysts in refining their data requirements for various data and analytics initiatives and their data consumption requirements.
- The data engineer should be curious and knowledgeable about new data initiatives and how to address them. This includes applying their data and/or domain understanding in addressing new data requirements. They will also be responsible for proposing appropriate (and innovative) data ingestion, preparation, integration and operationalization techniques in optimally addressing these data requirements. The data engineer will be required to train counterparts such as [data scientists, data analysts, LOB users or any data consumers] in these data pipelining and preparation techniques, which make it easier for them to integrate and consume the data they need for their own use cases.The data engineer will be considered a blend of data and analytics “expert,” “data guru” and “fixer.” This role will promote the available data and analytics capabilities and expertise to business unit leaders and educate them in leveraging these capabilities in achieving their business goals.
Read Also:
NEW TANZANIAN JOBS, INTERNSHIPS AND VOLUNTEERING OPPORTUNITIES 2022 (1,475 POSTS)Qualifications
Foundational knowledge of Data Management practices –
- Strong experience with various Data Management architectures like Data Warehouse, Data Lake, Data Hub, Relational database management systems (RDBMS) and the supporting processes like Data Integration, Governance, Metadata Management
- Strong ability to design, build and manage data pipelines for data structures encompassing data transformation, data models, schemas, metadata and workload management.
- Strong experience in working with large, heterogeneous datasets in building and optimizing data pipelines, pipeline architectures and integrated datasets using traditional data integration technologies. These should include ETL/ELT, data replication/CDC, message-oriented data movement, API design and access and upcoming data ingestion and integration technologies such as stream data integration, CEP and data virtualization.
Free CV Writing and Download, Cover/Job Application Letters, Interview Questions and It's Best Answers plus Examples. Click Here!
Basic experience in working with data governance/data quality and data security teams and specifically information stewards and privacy and security officers in moving data pipelines into production with appropriate data quality, governance and security standards and certification. Ability to build quick prototypes and to translate prototypes into data products and services in a diverse ecosystem –
- Demonstrated success in working with large, heterogeneous datasets to extract business value using popular data preparation tools such as Trifacta, Paxata, Unifi, others to reduce or even automate parts of the tedious data preparation tasks.
- Strong experience with popular database programming languages including SQL, PL/SQL, others for relational databases and certifications on upcoming NoSQL/Hadoop oriented databases like MongoDB, Cassandra, others for nonrelational databases.
- Strong experience in working with SQL on Hadoop tools and technologies including HIVE, Impala, Presto, and others from an open source perspective and Hortonworks Data Flow (HDF), Dremio, Informatica, Talend, and others from a commercial vendor perspective.
- Strong experience with advanced analytics tools for Object-oriented/object function scripting using languages such as R, Python, Java, C++, Scala, and others.
No comments:
Post a Comment