Lead- Machine Learning Ops
First Abu Dhabi Bank
Abu Dhabi
On-site
AED 120,000 - 200,000
Full time
18 days ago
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Job summary
A leading bank, looking for a Data Scientist to transform data capabilities, ensuring data quality and enabling ML Ops frameworks. The role requires innovative thinking, hands-on experience with modeling tools, and the ability to present findings effectively. Candidates should possess advanced qualifications in ML and data science methodologies.
Qualifications
- 5+ years experience in ML tooling and ML Ops practice setup.
- Good to be certified in Model Ops, ML Ops.
- Expertise in distributed computing environments and big data platforms.
Responsibilities
- Propose innovative data mining approaches to solve business problems.
- Ensure data quality with automatic algorithms and visual assessments.
- Promote datasets into the Feature Store for reuse.
Skills
Machine Learning
Statistical Modelling
Data Mining
Python Coding
Terraform
Big Data Technologies
Deep Learning
Education
Graduate or bachelor's degree in Computer Science / Information Technology, Engineering
Tools
DataIKU
SAS Viya
Azure ML OPS
- Enabling Engineering / Transforming capabilities to support ML, Build tool Supported or business needed custom transformations to perform data preparation and make it ready for ML, Enable End to End MLOps framework, Automated pipelines, containerization, templatization, CI / CD, etc.
- The role requires job holder to be a creative thinker and able to propose innovative ways to look at business problems by using data mining (the process of discovering new patterns from large datasets) approaches on the set of Information available. They will need to validate their findings using an experimental and iterative approach. Also, Data Scientist will need to be able to present back their findings to the business by exposing their assumptions and validation work in a way that can be easily understood by their business counterparts.
- Datasets in the Analytical tool to be promoted into the Feature Store, showing both data quality and trustworthiness, and can assist with simplifying re-use. Users can access feature store to reuse cleaned / reference datasets in their projects.
- To Enable data quality with an automatic meaning detection algorithm (With in the FABselected Analytical tool of choice) and support using the built-in / custom developed visual tools for establishing data quality. For example, each column includes a simple histogram to show the number of valid records in the column. The user can drill deeper to view a detailed histogram, summary statistics, and the ability to drop invalid rows with just a few clicks. Automatically sorted visual data quality assessments and statistical summaries on categorical and numerical data. Machine learning based visual assessment of values clustering. Automatically detect and handle unique and invalid values and outliers and a Wizard for anomaly detection.
Qualifications
- 5+ Years of Experience in AL ML Tooling and ML Ops Practice Setup
- Solid hands on Modelling tools Like DataIKU, SAS Viya or had already used Azure ML OPS.
- Terraform experience, Python Coding Required.
- Candidate must possess at least a Graduate or bachelor’s degree in Computer Science / Information Technology, Engineering (Computer / Telecommunication) or equivalent.
- Good to be certified in Model Ops, ML Ops.
- SAS (Base SAS,EMiner ,EG)
- Statistical modelling, Machine Learning and AI(Pattern recognition, Natural language processing, computer vision)
- Deep learning technologies (Neural networks, LSTM, GAN,RNN,etc..)
- Deep learning frameworks(Tensorflow / pytorch / Maxnet)
- Experience in drafting solution architecture frameworks that rely on API’s and microservice
- Expertise in distributed computing environments / big data platforms (Cloudera, Hadoop, Apache spark,Elasticsearch, etc.) as well as common database systems and value stores (SQL, Hive, HBase, etc.)
Additional Information