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Gridmatic

Senior Software Engineer, Data Infrastructure

加入Gridmatic,担任库比蒂诺高级软件工程师,负责扩展可再生能源数据基础设施。享受灵活休假、股票期权及全面医疗福利。
Gridmatic
Gridmatic
库比蒂诺,美国 混合 全职 USD 210k–267k yearly UTC-07:00

Gridmatic

公司概况

Gridmatic

美国加利福尼亚州库比蒂诺

2016年

约50名员工,年收入估计在500万美元到1000万美元之间(来源: cience.com, climatebase.org)。

他们的业务

Gridmatic是一家私营的人工智能驱动的电力营销公司,专注于通过先进的机器学习算法优化可再生能源和电池存储操作。公司成立于2016年,专注于预测美国主要市场(如ERCOT(德克萨斯州)和CAISO(加利福尼亚州))的能源供应、需求、定价和电网交易(来源: cience.com, gridmatic.com)。他们的核心技术利用人工智能和机器学习模型来预测电力市场动态,从而帮助优化可再生能源发电机、电池存储系统和零售能源消费者的运营。这种创新的方法使Gridmatic能够与依赖手动流程的传统电力营销商区分开来(来源: gridmatic.com, gridmatic.com)。公司提供一系列产品和服务,包括为存储所有者提供的投标优化、收益分享协议,以及为大型能源用户(如数据中心)量身定制的零售能源合同(来源: gridmatic.com, gridmaticretail.com)。

项目与业绩

Gridmatic成功管理了多个显著项目,包括在德克萨斯州的50 MW / 100 MWh电池存储系统,该系统于2023年通过其5000万美元的能源存储基金投入运营(来源: gridmatic.com)。另一个重要项目是位于德克萨斯州斯卡里县的57 MW / 114 MWh Cross Trails电池能源存储系统(BESS),该项目与Energy Vault签订了10年的购电协议,预计将在最近的公告后开始建设(来源: ess-news.com)。此外,Gridmatic还参与了位于加利福尼亚州尼波莫的100 MW / 400 MWh Caballero BESS,作为Alpha Omega Power的优化者,并与Sol Systems在ERCOT签署了一份10 MW的太阳能购电协议(PPA),为EdgeConneX数据中心提供每小时匹配的清洁能源(来源: gridmatic.com)。这些项目突显了Gridmatic在可再生能源领域扩展其影响力的承诺。

近期发展

在过去两年中,Gridmatic取得了显著进展,包括在2023年11月关闭其5000万美元的能源存储基金,该基金使得50 MW的德克萨斯电池的运营成为可能,并计划管理总计高达500 MW(来源: gridmatic.com)。公司还在2024年与Sol Systems为EdgeConneX签署了一份10 MW的ERCOT太阳能PPA,并为Energy Vault的57 MW Cross Trails BESS获得了10年的购电协议(来源: gridmatic.com)。此外,Gridmatic与Alpha Omega Power合作,作为其100 MW Caballero BESS的优化者,该项目于2024年12月宣布,从而将其投资组合提升至300 MW(来源: ess-news.com)。公司还在2024年10月推出了Gridmatic Retail,专注于在德克萨斯州的增长并扩展到PJM市场。

在这里工作

Gridmatic雇佣了多样化的专业人才,包括研究人员、工程师、数据科学家和能源行业资深人士,他们共同为公司在能源领域的创新方法做出贡献。领导团队包括首席执行官兼创始人Matt Wytock、首席商业官David Miller和首席财务官Erin Kogan等(来源: gridmatic.com)。公司文化强调团队合作、持续学习、多样性和诚信,营造了一个重视工作与生活平衡的协作环境。招聘主要集中在其库比蒂诺总部,支持在ERCOT、CAISO和PJM市场的增长(来源: climatebase.org)。虽然具体福利没有公开详细说明,但Gridmatic作为湾区的ClimateTech初创企业,其竞争性福利与其使命驱动的理念相一致。


最后更新于 2月 23, 2026 | 报告问题

Gridmatic is a high-growth startup and a new kind of energy company, delivering affordable, clean power by optimizing renewable energy and grid-scale batteries. With offices in the Bay Area and Houston, we bring together Silicon Valley-style innovation with deep, hands-on expertise in real-world power markets and energy retail.

As solar and wind become the fastest-growing sources of electricity, variability from weather and grid conditions makes energy prices more volatile. Gridmatic tackles this challenge with industry-leading forecasting and optimization-and gives our team the opportunity to work on problems that truly matter. Forecasting and trading energy are the foundation of what we do. We ingest large-scale data-weather, prices, load, and grid conditions-to build probabilistic machine learning forecasts that drive real operational decisions. Our work directly determines when power is bought, stored, or deployed, turning uncertainty into value for customers and the grid.

Our impact is measurable. Gridmatic is the most profitable participant in ERCOT's wholesale market and operates the top-performing battery asset in CAISO. Profitable without venture capital, we offer a collaborative, low-ego environment where rigorous thinking, autonomy, and continuous learning are core to how we work.

We're looking for an engineer to help lead the scaling and reliability of our data infrastructure, which is core to the ML work we do at Gridmatic.

Forecasting energy prices is challenging. We have very effective price forecasting models, but we'd like to go much further - scaling the amount of data we can use in our ML models by a factor of 10-100x by incorporating petabyte-scale weather data, increasing spatial granularity of our price forecasting, and more.

We'd also like someone who can tackle the challenge of scaling and improving reliability of our data platform. We deal with a lot of real-world problems when ingesting data from external sources - downtime, late-arriving data, changing schemas. Improving the reliability of our data pipelines will be critical to our ability to make an impact on the grid.

What we're looking for

  • Experience building the infrastructure for large-scale data processing pipelines (both batch and streaming) using tools like Spark, Kafka, Apache Flink, and Apache Beam.
  • Experience designing and implementing large-scale data storage systems (feature store, timeseries DBs) for ML use cases. Strong familiarity with relational databases, data warehouses, object storage, timeseries data, and being adept at DB schema design.
  • Experience building data pipelines for external data sources that are observable, debuggable, and verifiably correct. Have dealt with challenges like data versioning, point-in-time correctness, and evolving schemas.
  • Strong distributed systems and infrastructure skills. Comfortable scaling and debugging Kubernetes services, writing Terraform, and working with orchestration tools like Flyte, Airflow, or Temporal.
  • Strong software engineering skills. Being able to write easy-to-extend and well-tested code.

Our stack includes: Python, GCP, Kubernetes, Terraform, Flyte, React/NextJS, Postgres, BigQuery

What you might work on

  • Owning and scaling our data infrastructure by several orders of magnitude. This includes our data pipelines, distributed data processing, and data storage.
  • Building a unified feature store for all our ML models.
  • Efficient storing and loading hundreds of terabytes of weather data for use in AI-based weather models.
  • Processing and storing predictions and evaluation metrics for large-scale forecasting models.

You might be great for this role if

  • You have 4+ years of experience building data infrastructure or data platforms
  • You have experience with ML infrastructure and have worked at companies that use ML for core business functions
  • You're comfortable with ambiguity and a fast-moving environment, and have a bias for action
  • You learn and pick up new skills quickly
  • You're motivated in making a real-world impact on climate and energy

$210,000 - $267,000 a year

You will also receive Stock Options (ISOs)

Taking care of you today

  • Continuing Education Opportunities
  • Flexible PTO
  • Medical, Dental and Vision plans with competitive employer contributions
  • Pre-Tax commuter benefits
  • $1500/year non profit donation matching program through Millie
  • Home Office Stipend

Protecting your future for you and your family

  • 401K contribution match up to 4%
  • Company-paid parental leave
  • Company Paid Life Insurance
  • Stock Option Loan Program

FAQ

What's your policy on remote work?

We value the ability to work and collaborate in-person in our early stage as a startup, so Gridmatic has a hybrid policy that will ask you to work in our Cupertino office 3 days a week.

What is your interview process?

You'll usually have a chat with the hiring manager or someone on the team about your background and experience. After that, depending on the role, you'll either have a technical phone screen with an engineer, or work on a take-home project. If that goes well, we'll have you on site in Cupertino for an interview panel with the team, which usually takes about 4 hours.

Join our team and make a difference! Click below or email us at [email protected].

We may use artificial intelligence (AI) tools to support parts of the hiring process, such as reviewing applications, analyzing resumes, or assessing responses. These tools assist our recruitment team but do not replace human judgment. Final hiring decisions are ultimately made by humans. If you would like more information about how your data is processed, please contact us.

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关于这个角色

2026年3月19日

全职

公司

2026年3月19日

混合

USD 210k–267k yearly

Gridmatic

gridmatic.com

  •  库比蒂诺,美国

4+ years

UTC-07:00