^AI Algorithm - 5885899 at Accenture
Nashville, TN 37209, USA -
Full Time


Start Date

Immediate

Expiry Date

06 Dec, 25

Salary

64.0

Posted On

07 Sep, 25

Experience

3 year(s) or above

Remote Job

Yes

Telecommute

Yes

Sponsor Visa

No

Skills

Python, Neural Networks, Keras, Open Source

Industry

Information Technology/IT

Description

Accenture Flex offers you the flexibility of local fixed-duration project-based work powered by Accenture, a leading global professional services company. Accenture is consistently recognized on FORTUNE’s 100 Best Companies to Work For and Diversity Inc’s Top 50 Companies For Diversity lists.
As an Accenture Flex employee, you will apply your skills and experience to help drive business transformation for leading organizations and communities. In addition to delivering innovative solutions for Accenture’s clients, you will work with a highly skilled, diverse network of people across Accenture businesses who are using the latest emerging technologies to address today’s biggest business challenges.
You will receive competitive rewards and access to benefits programs and world-class learning resources. Accenture Flex employees work in their local metro area onsite at the project, significantly reducing and/or eliminating the demands to travel.

Key Responsibilities:

  • Builds machine-learning based products/solutions which provide descriptive, diagnostic, predictive, or prescriptive models based on data. Uses or develops machine-learning algorithms such as supervised and unsupervised learning, deep learning, reinforcement learning, Bayesian analysis, and/or others to solve applied problems in various disciplines such as data analytics, computer vision, and robotics.
  • Interacts with users to define requirements for breakthrough product/solutions.
  • In either research environments or specific product environments, utilizes current programming methodologies to translate machine learning models and data-processing methods into software.
  • Completes programming, testing, debugging, documentation and/or deployment of libraries.

Basic Qualifications:

  • Minimum 3+ years of work experience
  • Minimum 3 years work experience in Neural Networks, Python, TensorFlow, Open Source , Keras, PyTorch, machine learning loss functions, Adaptability
  • HS Diploma / GED

Preferred Qualifications:

  • Bachelor’s or Associate’s

Compensation at Accenture varies depending on a wide array of factors, which may include but are not limited to the specific office location, role, skill set, and level of experience. As required by local law, Accenture provides a reasonable range of compensation for roles that may be hired in California, Colorado, District of Columbia, Illinois, Maryland, Minnesota, New York or Washington as set forth below.
We accept applications on an on-going basis and there is no fixed deadline to apply.
Information on benefits is here.
Role Location Hourly Salary Range
California $54.00 to $64.00
Colorado $54.00 to $64.00
District of Columbia $54.00 to $64.00
Illinois $54.00 to $64.00
Minnesota $54.00 to $64.00
Maryland $54.00 to $64.00
New York/ New Jersey $54.00 to $64.00
Washington $54.00 to $64.00

How To Apply:

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Responsibilities
  • Builds machine-learning based products/solutions which provide descriptive, diagnostic, predictive, or prescriptive models based on data. Uses or develops machine-learning algorithms such as supervised and unsupervised learning, deep learning, reinforcement learning, Bayesian analysis, and/or others to solve applied problems in various disciplines such as data analytics, computer vision, and robotics.
  • Interacts with users to define requirements for breakthrough product/solutions.
  • In either research environments or specific product environments, utilizes current programming methodologies to translate machine learning models and data-processing methods into software.
  • Completes programming, testing, debugging, documentation and/or deployment of libraries
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