Role Proficiency:
Independently interprets data and analyses results using statistical techniques
Outcomes:
Independently Mine and acquire data from primary and secondary sources and reorganize the data in a format that can be easily read by either a machine or a person; generating insights and helping clients make better decisions. Develop reports and analysis that effectively communicate trends patterns and predictions using relevant data. Utilizes historical data sets and planned changes to business models and forecast business trends Working alongside teams within the business or the management team to establish business needs. Creates visualizations including dashboards flowcharts and graphs to relay business concepts through visuals to colleagues and other relevant stakeholders. Set FAST goalsMeasures of Outcomes:
Schedule adherence to tasks Quality – Errors in data interpretation and Modelling Number of business processes changed due to vital analysis. Number of insights generated for business decisions Number of stakeholder appreciations/escalations Number of customer appreciationsOutputs Expected:
Data Mining:
Acquiring data from various sources
Reorganizing/Filtering data:
Analysis:
Create Data Models:
Create Reports:
Document:
Manage knowledge:
Status Reporting:
Code:
Code Versioning:
bitbucket, etc.
Quality:
Performance Management:
Skill Examples:
Analytical Skills: Ability to work with large amounts of data: facts figures and number crunching. Communication Skills: Ability to present findings or translate the data into an understandable document Critical Thinking: Ability to look at the numbers trends and data; coming up with new conclusions based on the findings. Attention to Detail: Making sure to be vigilant in the analysis to come with accurate conclusions. Quantitative skills - knowledge of statistical methods and data analysis software Presentation Skills - reports and oral presentations to senior colleagues Mathematical skills to estimate numerical data. Work in a team environment Proactively ask for and offer helpKnowledge Examples:
Proficient in mathematics and calculations Spreadsheet tools such as Microsoft Excel or Google Sheets Advanced knowledge of Tableau or PowerBI SQL Python DBMS Operating Systems and software platforms Knowledge about customer domain and also sub domain where problem is solved Code version control e.g. git bitbucket etcAdditional Comments:
Proven experience as a Machine Learning Engineer understanding of data structures, data modeling and software architecture.
Deep knowledge of Math, Probability, Statistics and Algorithms
Ability to write robust code in Python, Java
Familiarity with machine learning frameworks
Excellent communication skills
Ability to work in a team
Outstanding analytical and problem-solving skills