Machine Learning Engineer (The AI Innovator)
Company: Unreal Gigs
Location: San Francisco
Posted on: November 13, 2024
Job Description:
Are you passionate about designing, building, and maintaining
data pipelines that support robust data architectures and
facilitate seamless data flow? Do you excel in creating scalable
solutions that empower data-driven decision-making? If you're ready
to develop and optimize data systems that drive impactful
analytics, our client has the perfect role for you. We're seeking a
Data Engineer (aka The Data Pipeline Architect) to build and manage
cloud-based data infrastructures that support analytical needs and
operational efficiencies.As a Data Engineer at our client, you'll
collaborate with data scientists, analysts, and software engineers
to construct data pipelines and storage solutions that are both
efficient and secure. Your role will be critical in ensuring data
systems are optimized for performance, reliability, and
scalability.Key Responsibilities:
- Design and Implement Scalable Data Pipelines: Develop and
maintain data pipelines that support data ingestion,
transformation, and integration using cloud technologies. You'll
automate data workflows and ensure the seamless movement of data
between various systems.
- Manage and Optimize Data Storage Solutions: Architect and
maintain data lakes and data warehouses using platforms like
BigQuery, Redshift, Snowflake, or similar cloud-based solutions.
You'll ensure data structures are built for performance and
scalability.
- Collaborate with Data Teams for Strategy Development: Work
closely with data scientists, analysts, and business stakeholders
to understand data requirements and align data solutions with
business goals. You'll provide input on data models and storage
strategies.
- Ensure Data Quality and Reliability: Implement and manage
processes for data validation, error handling, and consistency
checks. You'll ensure the quality of data is maintained through
robust testing and monitoring practices.
- Develop and Automate ETL Processes: Build ETL (Extract,
Transform, Load) workflows to handle complex data transformations.
You'll automate data extraction and transformation to support
efficient data integration and reporting.
- Monitor and Maintain Data Infrastructure: Use monitoring tools
to track the performance and reliability of data systems. You'll
proactively identify and resolve potential issues to maintain
system health and performance.
- Optimize Data Processing and Resource Management: Implement
strategies for efficient resource allocation and cost-effective
data processing. You'll leverage parallel processing and cloud
capabilities to enhance performance.Required Skills:
- Cloud Data Platform Expertise: Experience with cloud data
platforms such as AWS (Redshift, S3, Glue), GCP (BigQuery,
Dataflow), or Azure (Azure Data Lake, Synapse). You're proficient
in handling cloud-based data solutions.
- Programming and Scripting Knowledge: Proficiency in Python,
Java, or Scala for building data pipelines and data processing
tasks. You can write clean, efficient code for automation.
- ETL and Data Pipeline Management: Proven ability to develop,
maintain, and optimize ETL processes that handle large volumes of
data. You're experienced with orchestration tools like Apache
Airflow or Luigi.
- SQL and Database Management: Strong ability to write complex
SQL queries and work with relational and NoSQL databases.
- Problem-Solving and Critical Thinking: Excellent
problem-solving skills with a proactive approach to identifying and
resolving data-related challenges. Educational Requirements:
- Bachelor's or Master's degree in Computer Science, Data
Engineering, or a related field. Equivalent experience in data
engineering and cloud technologies may be considered.
- Certifications in cloud data engineering (e.g., Google
Professional Data Engineer, AWS Certified Big Data - Specialty,
Microsoft Certified: Azure Data Engineer Associate) are a plus.
Experience Requirements:
- 3+ years of experience in data engineering, with a proven track
record of building and managing cloud-based data systems.
- Experience with real-time data processing frameworks like
Apache Kafka or AWS Kinesis is advantageous.
- Familiarity with containerization and microservices
architecture is a plus.
#J-18808-Ljbffr
Keywords: Unreal Gigs, Davis , Machine Learning Engineer (The AI Innovator), Engineering , San Francisco, California
Didn't find what you're looking for? Search again!
Loading more jobs...