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求人Tesla

Associate Power Systems Engineer, Megapack

Tesla

Associate Power Systems Engineer, Megapack

Tesla

Red Hill, Queensland

·

On-site

·

Full-time

·

Today

What To Expect
Come join us as we build the power system of the future with clean and sustainable energy!

In this role you will help the Tesla team to design, model, and integrate our utility scale batteries to the electricity network, enabling the green energy transformation.

Tesla is looking for power systems engineers to build on our in-house modelling and grid connection study capability for our energy storage systems at mass scales.

You will interface with utilities, independent power providers, and system operators in technical power systems discussions, and influence our systems design to facilitate scaling on the grid.

You will be responsible for developing detailed models of our technology and controls strategies operating on the grid and forming microgrids of different sizes.

The role is diverse, fast-paced, and spans multiple levels of electrical, controls, firmware design, and grid-operations. You will work at the cutting edge of technology and help to define the future of the electrical grid.

What You'll Do

  • Act as the technical representative for power flow, short circuit, and dynamic modelling discussions with customers
  • Ability to articulate power systems analyses/results and the interaction of Tesla's technology with the grid
  • Work with both the product design team and the firmware/software teams to keep models current with the technology roadmap
  • Work with the product design team to feed power systems requirement into the product specification to influence system architecture
  • Work with customers and business development team to create models to represent the Tesla Energy system in power flow and dynamic modelling software tools
  • Continue to increase our in-house capability to model Tesla's product in power systems analysis software, to include microgrid applications with various interconnected resources and larger "macro" grid applications


  • What You'll Bring

  • Bachelor level study minimum in Electrical Engineering, with demonstrable knowledge of Power Systems Engineering
  • Hands on experience with at least two power system modelling tools: PSCAD, PSS\E, DIgSILENT, SSAT
  • Experience with modelling and simulations of inverter-based generation
  • Experience with performance of interconnection and engineering studies like stability, protection coordination, harmonics, insulation coordination, arch flash, and ground grid analyses
  • Strong working knowledge of control theory, ability to implement PID control
  • Ability to work cross functionally with customers, engineering, business development, and deployment personnel
  • Direct experience with AEMO is an advantage


  • , Tesla

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    Teslaについて

    Tesla

    Tesla

    Public

    A financial leasing taxi company that provides vehicles to customers

    140,000+

    従業員数

    Ciudad De Panamá

    本社所在地

    $800B

    企業価値

    レビュー

    3.1

    5件のレビュー

    ワークライフバランス

    1.5

    報酬

    1.2

    企業文化

    1.3

    キャリア

    1.8

    経営陣

    1.1

    15%

    友人に勧める

    良い点

    Strong financial performance

    Revenue growth

    Company achieving targets

    改善点

    Poor compensation and raises below inflation

    Union-busting and anti-labor practices

    Unpaid work demands and wage theft

    給与レンジ

    1,397件のデータ

    Junior/L3

    Mid/L4

    Junior/L3 · Associate Analyst

    2件のレポート

    $94,875

    年収総額

    基本給

    $82,500

    ストック

    -

    ボーナス

    -

    $92,000

    $97,750

    面接体験

    4件の面接

    難易度

    3.5

    / 5

    期間

    14-28週間

    体験

    ポジティブ 0%

    普通 75%

    ネガティブ 25%

    面接プロセス

    1

    Application Review

    2

    Recruiter Screen

    3

    Technical Phone Screen

    4

    Take-home Assignment

    5

    Panel Interview

    6

    Offer

    よくある質問

    Coding/Algorithm

    Technical Knowledge

    Behavioral/STAR

    System Design

    Machine Learning Concepts