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37 lines
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37 lines
2.3 KiB
Markdown
---
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description: Earn $, track data & compute provenance, and get more data
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cover: ../.gitbook/assets/cover/data_scientists_banner.png
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coverY: 0
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---
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# 📊 Data Scientists
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### How does Ocean benefit data scientists?
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It offers three main benefits:
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* **Earn.** You can earn $ by doing crypto price predictions via [Predictoor](../predictoor/), by curating data in [Data Farming](../data-farming/), competing in a [data challenge](join-a-data-challenge.md), and by selling data & models.
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* **More Data.** Use [Compute-to-Data](../developers/compute-to-data/) to access private data to run your AI modeling algorithms against, data which was previously inaccessible. Browse [Ocean Market](https://market.oceanprotocol.com) and other Ocean-powered markets to find more data to improve your AI models.
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* **Provenance.** The acts of publishing data, purchasing data, and consuming data are all recorded on the blockchain to make a tamper-proof audit trail. Know where your AI training data came from!
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### How do data scientists start using Ocean?
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Here are the most relevant Ocean tools to work with:
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* The [**ocean.py**](ocean.py/) library is built for the key environment of data scientists: Python. It can simply be imported alongside other Python data science tools like numpy, matplotlib, scikit-learn and tensorflow. You can use it to publish & sell data assets, buy assets, transfer ownership, and more.
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* Predictoor's [**pdr-backend repo**](https://github.com/oceanprotocol/pdr-backend) has Python-based tools to run bots for crypto prediction or trading.
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* [**Compete in a data challenge**](join-a-data-challenge.md), or [sponsor one](sponsor-a-data-challenge.md).
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### Are there mental models for earning $ in data?
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Yes. This section has two other pages which elaborate:
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* [The Data Value Creation Loop](the-data-value-creation-loop.md) lays out the life cycle of data, and how to focus towards high-value use cases.
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* [What data is valuable](data-engineers.md) helps think about pricing data.
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### Further resources
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The blog post ["How Ocean Can Benefit Data Scientists"](https://blog.oceanprotocol.com/how-ocean-can-benefit-data-scientists-7e502e5f1a5f) elaborates further on the benefits of more data, provenance, and earning.
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<figure><img src="../.gitbook/assets/gif/my-data.gif" alt="" width="360"><figcaption></figcaption></figure>
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