Lead Bigdata Consultant Apply
Position: Lead Bigdata Consultant
Location:- O`Fallon, MO (Day 1 Onsite)
Duration:- Long Term Contract
Required Exp- 12+ years
Bigdata Consultant
Job Description:
Strong People management, leadership, organizational skills. Outstanding communication (written and verbal) skills.
Experience leveraging open-source tools, predictive analytics, machine learning, Advanced Statistics, and other data techniques to perform basic analyses.
Demonstrated basic knowledge of statistical analytical techniques, coding, and data engineering.
Experience developing and configuring dashboards is a plus.
Demonstrated judgement when escalating issues to the project team.
High proficiency in Python/Spark, Hadoop platforms & tools (Hive, Impala, Airflow, NiFi), SQL.
Curiosity, creativity, and excitement for technology and innovation.
Demonstrated quantitative and problem-solving abilities.
Expert proficiency in using Python/Scala, Spark (tuning jobs), SQL, Hadoop platforms to build Big Data products & platforms.
Comfortable in developing shell scripts for automation.
Proficient in standard software development, such as version control, testing, and deployment.
Experience with visualization tools like tableau, looker.
At least 5 years leading collaborative work in complex engineering projects in an Agile setting e.g. Scrum.
Extensive data warehousing/data lake development experience with strong data modelling and data integration experience.
Good SQL and higher-level programming languages with solid knowledge of data mining, machine learning algorithms and tools.
Strong hands-on experience in Analytics & Computer Science.
Demonstrated basic knowledge of statistical analytical techniques, coding, and data engineering.
Experience in building and deploying production-level data-driven applications and data processing workflows/pipelines and/or implementing machine learning systems at scale in Java, Scala, or Python and deliver analytics involving all phases like data ingestion, feature engineering, modelling, tuning, evaluating, monitoring, and presenting.
At least 12 years of relevant hands-on experience as a Data Engineer in an individual contributor capacity.
Able to lead the implementation of machine learning production systems.
Demonstrated ability, through hands-on experience, to develop production machine learning pipelines.
Experience leveraging open-source tools, predictive analytics, machine learning, Advanced Statistics, and other data techniques to perform basic analyses.
Demonstrated basic knowledge of statistical analytical techniques, coding, and data engineering.
Experience developing and configuring dashboards is a plus.
Demonstrated judgement when escalating issues to the project team.
High proficiency in Python/Spark, Hadoop platforms & tools (Hive, Impala, Airflow, NiFi), SQL.
Curiosity, creativity, and excitement for technology and innovation.
Demonstrated quantitative and problem-solving abilities.
Expert proficiency in using Python/Scala, Spark (tuning jobs), SQL, Hadoop platforms to build Big Data products & platforms.
Comfortable in developing shell scripts for automation.
Proficient in standard software development, such as version control, testing, and deployment.
Experience with visualization tools like tableau, looker.
At least 5 years leading collaborative work in complex engineering projects in an Agile setting e.g. Scrum.
Extensive data warehousing/data lake development experience with strong data modelling and data integration experience.
Good SQL and higher-level programming languages with solid knowledge of data mining, machine learning algorithms and tools.
Strong hands-on experience in Analytics & Computer Science.
Demonstrated basic knowledge of statistical analytical techniques, coding, and data engineering.
Experience in building and deploying production-level data-driven applications and data processing workflows/pipelines and/or implementing machine learning systems at scale in Java, Scala, or Python and deliver analytics involving all phases like data ingestion, feature engineering, modelling, tuning, evaluating, monitoring, and presenting.
At least 12 years of relevant hands-on experience as a Data Engineer in an individual contributor capacity.
Able to lead the implementation of machine learning production systems.
Demonstrated ability, through hands-on experience, to develop production machine learning pipelines.