Awesome Public Datasets (APD) - eSports: OpenDota Data Dump
An eSports section item in the Awesome Public Datasets (APD) repository that describes and links to the OpenDota data dump, making this large Dota 2 dataset discoverable via an awesome-style meta directory of public datasets.
About this tool
Awesome Public Datasets (APD) – eSports: OpenDota Data Dump
Category: Themed Directories
Tags: datasets, games, research
Source: GitHub – APD core entry
Overview
This item is an entry in the Awesome Public Datasets (APD) repository’s eSports section. It describes and links to the OpenDota Data Dump, a large public dataset for Dota 2. The APD entry functions as a meta-directory record so researchers and developers can easily discover and access the OpenDota dataset.
Features
- Directory listing within APD:
- Included as an
eSports-category item in the Awesome Public Datasets core configuration. - Provides a structured YAML description (
opendota-dump.yml) with metadata about the dataset.
- Included as an
- Dataset focus:
- Points to the OpenDota Data Dump, a large-scale public dataset derived from Dota 2 matches.
- Intended for use in eSports analytics, game data mining, and research on gameplay, players, and match outcomes.
- Discoverability:
- Makes the OpenDota dataset discoverable via the APD “awesome-style” meta directory.
- Can be surfaced in category/tag-based lists (e.g.,
eSports,games,datasets,research).
- Metadata and tagging:
- Tagged under
datasets,games, andresearchto help filtering and search in the APD ecosystem. - Identified with a stable slug:
awesome-public-datasets-apd-esports-opendota-data-dump.
- Tagged under
- Brand association:
- Listed under the awesome-public-datasets brand, aligning with other curated public data resources.
Use Cases
- Academic and industrial research on eSports performance and strategies.
- Machine learning and data science projects using Dota 2 match data (prediction, recommendation, behavior analysis).
- Game analytics for understanding meta changes, hero balance, and player behavior.
Access
- Directory entry and metadata:
https://github.com/awesomedata/apd-core/tree/master/core//eSports/opendota-dump.yml
(The APD entry links out to the actual OpenDota data dump; dataset hosting and format details are provided at the linked destination rather than in the directory record itself.)
Pricing
- No pricing information is listed in the APD directory entry. The OpenDota Data Dump is cataloged as a public dataset; consult the linked OpenDota resource for any specific usage terms or limits.
Loading more......
Information
Categories
Similar Products
6 result(s)A curated Awesome-style collection of biological and genomics datasets, including ENCODE, EMPIAR, Ensembl Genomes, GEO, Gene Ontology, GloBI, LINCS, HGDP, HMP, ICOS PSP Benchmark, HapMap, JCB DataViewer (via BioStudies), and KEGG. Each entry links out to the primary dataset resource along with a corresponding YAML metadata file in the awesomedata/apd-core GitHub repository, making this part of a larger meta collection of Awesome data directories.
A curated subset of the Awesome Public Datasets meta-collection, focusing on economics-related data sources such as macroeconomic indicators, trade statistics, productivity, corporate registries, and long-run historical series. This portion of the awesome list aggregates high‑quality, openly accessible economics datasets useful for research, data science, and policy analysis.
A curated Awesome-style subdirectory under the Awesome Public Datasets project focusing on Energy-related datasets (e.g., AMPds, BLUEd, COMBED, DBFC, ECO, Global Power Plant Database). It aggregates and links to high-quality, structured energy datasets useful for research and data science.
A curated subset of the Awesome Data project focused on social sciences datasets, including political conflict, legal information, surveys, religion, and violence data. The listed resources (e.g., ACLED, Correlates of War, GDELT, General Social Survey, etc.) are part of a broader awesome-style meta collection of high-quality open datasets for researchers and practitioners.
A curated entry in the Awesome Public Datasets (APD) collection for eSports, referencing the CS:GO Competitive Matchmaking Damage dataset on Kaggle. It provides structured metadata and categorization so this dataset can be discovered as part of a larger awesome-style directory of public datasets.
The CyberSecurity category of the Awesome Public Datasets (APD) meta-directory, listing curated cybersecurity-related datasets such as CCCS-CIC-AndMal-2020 and Traffic and Log Data Captured During a Cyber Defense Exercise. It is part of the broader Awesome-style collection of high-quality, topic-organized resources.