63 Commits

Author SHA1 Message Date
Palash Tyagi
d023acbaf7 Remove explicit Python version specification in CI workflow 2025-08-25 03:33:33 +01:00
Palash Tyagi
1cc087ca48 Improve version check output message in ci_checks.py 2025-08-25 03:26:03 +01:00
Palash Tyagi
c68c212de8 Update Python and uv setup actions in CI workflow 2025-08-25 03:20:06 +01:00
Palash Tyagi
c18ab93f2e Update Python and uv setup actions in run-benchmarks workflow 2025-08-25 03:18:49 +01:00
Palash Tyagi
b9f5051015 Refactor CI workflow to combine dependency installation and CI checks into a single step 2025-08-25 03:16:19 +01:00
Palash Tyagi
32471aff3b Add 'packaging' to dependencies installation in CI workflow 2025-08-25 03:12:36 +01:00
Palash Tyagi
ad9d2a7137 Update CI workflow to use 'uv run' for executing CI checks script 2025-08-25 03:10:36 +01:00
Palash Tyagi
ecbc1e0252 Rename job from 'docs-and-testcov' to 'ci-checks' and update dependency installation commands in CI workflow 2025-08-25 03:09:09 +01:00
Palash Tyagi
df292d65f0 Fix dependency installation command in CI workflow 2025-08-25 03:07:34 +01:00
Palash Tyagi
e45b1dc267 Rename workflow from 'docs-and-testcov' to 'ci-checks' 2025-08-25 03:07:22 +01:00
Palash Tyagi
7f45b32806 Update CI workflows to include 'test' and 'develop' branches for pull requests 2025-08-24 21:40:28 +01:00
Palash Tyagi
0346c59d9a Implement CI checks and remove deprecated PR checks script 2025-08-07 22:28:08 +01:00
c53693fa7b Merge pull request #72 from Magnus167/release/a20250805
Bump version to 0.0.1-a.20250805 in Cargo.toml
2025-08-05 00:11:57 +01:00
109d39b248 Merge branch 'main' into release/a20250805 2025-08-05 00:08:27 +01:00
Palash Tyagi
18ad6c689a Bump version to 0.0.1-a.20250805 in Cargo.toml 2025-08-05 00:06:49 +01:00
1fead78b69 Merge pull request #71 from Magnus167/prep-release-20250804
Update package version and enhance description in Cargo.toml
2025-08-04 23:27:12 +01:00
Palash Tyagi
6fb32e743c Update package version and enhance description in Cargo.toml 2025-08-04 23:15:24 +01:00
2cb4e46217 Merge pull request #69 from Magnus167/user-guide
Add user guide mdbook
2025-08-04 22:22:55 +01:00
Palash Tyagi
a53ba63f30 Rearrange links in the introduction for improved visibility 2025-08-04 22:20:58 +01:00
Palash Tyagi
dae60ea1bd Rearrange links in the README for improved visibility 2025-08-04 22:15:42 +01:00
Palash Tyagi
755dee58e7 Refactor machine learning user-guide 2025-08-04 22:14:17 +01:00
Palash Tyagi
9e6e22fc37 Add covariance functions and examples to documentation 2025-08-04 20:37:27 +01:00
Palash Tyagi
b687fd4e6b Add advanced matrix operations and Gaussian Naive Bayes examples to documentation 2025-08-04 19:21:36 +01:00
Palash Tyagi
68a01ab528 Enhance documentation with additional compute examples and stats functions 2025-08-04 15:52:57 +01:00
Palash Tyagi
23a01dab07 Update documentation links 2025-08-04 00:29:13 +01:00
Palash Tyagi
f4ebd78234 Comment out the release build command in gen.sh for clarity 2025-08-04 00:06:59 +01:00
Palash Tyagi
1475156855 Fix casing in user guide title for consistency 2025-08-04 00:05:31 +01:00
Palash Tyagi
080680d095 Update book metadata: correct author field and ensure consistent title casing 2025-08-04 00:05:13 +01:00
Palash Tyagi
2845f357b7 Revise introduction for clarity and detail, enhancing the overview of RustFrame's features and capabilities 2025-08-04 00:04:41 +01:00
Palash Tyagi
3d11226d57 Update machine learning documentation for clarity and completeness 2025-08-04 00:04:36 +01:00
Palash Tyagi
039fb1a98e Enhance utilities documentation with additional date and random number examples 2025-08-04 00:04:07 +01:00
Palash Tyagi
31a5ba2460 Improve data manipulation examples 2025-08-04 00:02:46 +01:00
Palash Tyagi
1a9f397702 Add more statistical routines and examples 2025-08-04 00:02:17 +01:00
Palash Tyagi
ecd06eb352 update format in README 2025-08-03 23:28:19 +01:00
Palash Tyagi
ae327b6060 Update user guide build script path in CI workflows 2025-08-03 23:28:03 +01:00
Palash Tyagi
83ac9d4821 Remove local build instructions from the introduction of the user guide 2025-08-03 23:25:17 +01:00
Palash Tyagi
ae27ed9373 Add instructions for building the user guide 2025-08-03 23:25:13 +01:00
Palash Tyagi
c7552f2264 Simplify user guide build steps in CI workflows 2025-08-03 23:24:54 +01:00
Palash Tyagi
3654c7053c Refactor build process 2025-08-03 23:23:10 +01:00
Palash Tyagi
1dcd9727b4 Update output directory structure for user guide and index files 2025-08-03 23:15:54 +01:00
Palash Tyagi
b62152b4f0 Update output directory for user guide and artifact upload in CI workflow 2025-08-03 23:01:54 +01:00
Palash Tyagi
a6a901d6ab Add step to install mdBook for user guide build in CI workflows 2025-08-03 22:16:53 +01:00
Palash Tyagi
676af850ef Add step to test user guide build in CI workflow 2025-08-03 22:13:25 +01:00
Palash Tyagi
ca2ca2a738 Add link to User Guide in the main index page 2025-08-03 22:11:15 +01:00
Palash Tyagi
4876a74e01 Add user guide build and output steps to CI workflow 2025-08-03 22:11:10 +01:00
Palash Tyagi
b78dd75e77 Add build script for RustFrame user guide using mdBook 2025-08-03 22:07:38 +01:00
Palash Tyagi
9db8853d75 Add user guide configuration and update .gitignore 2025-08-03 22:07:32 +01:00
Palash Tyagi
9738154dac Add user guide examples 2025-08-03 22:07:18 +01:00
7d0978e5fb Merge pull request #68 from Magnus167/update-docs
Enhance documentation with usage examples
2025-08-03 17:45:29 +01:00
Palash Tyagi
ed01c4b8f2 Enhance documentation with usage examples for crate::compute::models 2025-08-03 16:48:37 +01:00
Palash Tyagi
e6964795e3 Enhance documentation with usage examples for statistical routines and utilities 2025-08-03 16:48:02 +01:00
Palash Tyagi
d1dd7ea6d2 Enhance documentation with usage examples for core data-frame structures and operations 2025-08-03 16:46:20 +01:00
Palash Tyagi
676f78bb1e Enhance documentation with usage examples for boolean and series operations 2025-08-03 16:45:30 +01:00
Palash Tyagi
f7325a9558 Enhance documentation with usage examples for date generation utilities 2025-08-03 16:45:15 +01:00
Palash Tyagi
18b9eef063 Enhance documentation with usage examples for random number generation utilities 2025-08-03 16:45:00 +01:00
Palash Tyagi
f99f78d508 Update section headers in README.md for consistency 2025-08-03 16:44:34 +01:00
2926a8a6e8 Merge pull request #66 from Magnus167/update-readme
Update README
2025-08-03 00:30:28 +01:00
d851c500af Merge pull request #67 from Magnus167/comments-cleanup
Cleanup comments and formatting
2025-08-02 22:03:14 +01:00
Palash Tyagi
d741c7f472 Remove expected output comments from matrix operations examples in README.md 2025-08-02 21:59:42 +01:00
Palash Tyagi
7720312354 Improve comments for clarity in logistic regression, stats overview, PCA, correlation, descriptive statistics, and matrix tests 2025-08-02 21:59:22 +01:00
Palash Tyagi
5509416d5f Remove unused logo comment from README.md 2025-08-02 21:22:01 +01:00
Palash Tyagi
a451ba8cc7 Clean up comments and formatting in Game of Life example 2025-08-02 21:21:09 +01:00
Palash Tyagi
bce1bdd21a Update README 2025-07-31 22:52:29 +01:00
52 changed files with 1345 additions and 440 deletions

View File

@@ -1,34 +0,0 @@
# name: pr-checks
# on:
# pull_request:
# branches: [pr_checks_disabled_for_now]
# types:
# - opened
# # - synchronize
# - reopened
# - edited
# - ready_for_review
# concurrency:
# group: pr-checks-${{ github.event.number }}
# permissions:
# contents: read
# pull-requests: read
# checks: write
# jobs:
# pr-checks:
# name: pr-checks
# runs-on: ubuntu-latest
# steps:
# - uses: actions/checkout@v4
# - name: Run PR checks
# shell: bash
# env:
# GH_TOKEN: ${{ secrets.GITHUB_TOKEN }}
# PR_NUMBER: ${{ github.event.number }}
# run: |
# python .github/scripts/pr_checks.py $PR_NUMBER

View File

@@ -58,6 +58,14 @@
<h2>A lightweight dataframe & math toolkit for Rust</h2>
<hr style="border: 1px solid #d4d4d4; margin: 20px 0;">
<p>
🐙 <a href="https://github.com/Magnus167/rustframe">GitHub</a>
<br><br>
📖 <a href="https://magnus167.github.io/rustframe/user-guide">User Guide</a>
<br><br>
📚 <a href="https://magnus167.github.io/rustframe/docs">Docs</a> |
📊 <a href="https://magnus167.github.io/rustframe/benchmark-report/">Benchmarks</a>
@@ -65,8 +73,7 @@
🦀 <a href="https://crates.io/crates/rustframe">Crates.io</a> |
🔖 <a href="https://docs.rs/rustframe/latest/rustframe/">docs.rs</a>
<br><br>
🐙 <a href="https://github.com/Magnus167/rustframe">GitHub</a> |
🌐 <a href="https://gitea.nulltech.uk/Magnus167/rustframe">Gitea mirror</a>
<!-- 🌐 <a href="https://gitea.nulltech.uk/Magnus167/rustframe">Gitea mirror</a> -->
</p>
</main>
</body>

64
.github/scripts/ci_checks.py vendored Normal file
View File

@@ -0,0 +1,64 @@
import os
import sys
from typing import Any, Dict, Optional
import tomllib
import packaging.version
import requests
sys.path.append(os.getcwd())
ACCESS_TOKEN: Optional[str] = os.getenv("GH_TOKEN", None)
GITHUB_REQUEST_CONFIG = {
"Accept": "application/vnd.github.v3+json",
"Authorization": f"token {ACCESS_TOKEN}",
"X-GitHub-Api-Version": "2022-11-28",
}
REPO_OWNER_USERNAME: str = "Magnus167"
REPO_NAME: str = "rustframe"
REPOSITORY_WEB_LINK: str = f"github.com/{REPO_OWNER_USERNAME}/{REPO_NAME}"
CARGO_TOML_PATH: str = "Cargo.toml"
def load_cargo_toml() -> Dict[str, Any]:
if not os.path.exists(CARGO_TOML_PATH):
raise FileNotFoundError(f"{CARGO_TOML_PATH} does not exist.")
with open(CARGO_TOML_PATH, "rb") as file:
return tomllib.load(file)
def get_latest_crates_io_version() -> str:
url = "https://crates.io/api/v1/crates/rustframe"
try:
response = requests.get(url, headers=GITHUB_REQUEST_CONFIG)
response.raise_for_status()
data = response.json()
return data["crate"]["max_version"]
except requests.RequestException as e:
raise RuntimeError(f"Failed to fetch latest version from crates.io: {e}")
def get_current_version() -> str:
cargo_toml = load_cargo_toml()
version = cargo_toml.get("package", {}).get("version", None)
if not version:
raise ValueError("Version not found in Cargo.toml")
return version
def check_version() -> None:
latest_version = get_latest_crates_io_version()
latest_version_tuple = packaging.version.parse(latest_version)
current_version = get_current_version()
current_version_tuple = packaging.version.parse(current_version)
if latest_version_tuple >= current_version_tuple:
print(f"Current version {current_version_tuple} is less than or equal to latest version {latest_version_tuple} on crates.io.")
sys.exit(1)
print(f"Current version: {current_version_tuple}")
if __name__ == "__main__":
check_version()

View File

@@ -1,236 +0,0 @@
import os
import sys
import urllib.request
import urllib.error
import json
from typing import Any, Dict, List, Optional, Tuple
import warnings
import urllib.parse
from time import sleep
sys.path.append(os.getcwd())
ACCESS_TOKEN: Optional[str] = os.getenv("GH_TOKEN", None)
REQUEST_CONFIG = {
"Accept": "application/vnd.github.v3+json",
"Authorization": f"token {ACCESS_TOKEN}",
"X-GitHub-Api-Version": "2022-11-28",
}
REPO_OWNER_USERNAME: str = "Magnus167"
REPO_NAME: str = "rustframe"
REPOSITORY_WEB_LINK: str = f"github.com/{REPO_OWNER_USERNAME}/{REPO_NAME}"
def perform_api_call(
target_url: str,
call_headers: Optional[dict] = REQUEST_CONFIG,
query_parameters: Dict[str, Any] = {},
http_method: str = "GET",
maximum_attempts: int = 5,
) -> Any:
assert http_method in ["GET", "DELETE", "POST", "PATCH", "PUT"]
attempt_count = 0
while attempt_count < maximum_attempts:
try:
if query_parameters:
encoded_parameters = urllib.parse.urlencode(query_parameters)
target_url = f"{target_url}?{encoded_parameters}"
http_request_object = urllib.request.Request(target_url, method=http_method)
if call_headers:
for key, value in call_headers.items():
http_request_object.add_header(key, value)
with urllib.request.urlopen(http_request_object) as server_response:
if server_response.status == 404:
raise Exception(f"404: {target_url} not found.")
return json.loads(server_response.read().decode())
except urllib.error.HTTPError as error_details:
unrecoverable_codes = [403, 404, 422]
if error_details.code in unrecoverable_codes:
raise Exception(f"Request failed: {error_details}")
print(f"Request failed: {error_details}")
attempt_count += 1
sleep(1)
except Exception as error_details:
print(f"Request failed: {error_details}")
attempt_count += 1
sleep(1)
raise Exception("Request failed")
valid_title_prefixes: List[str] = [
"Feature:",
"Bugfix:",
"Documentation:",
"CI/CD:",
"Misc:",
"Suggestion:",
]
def validate_title_format(
item_title: str,
) -> bool:
estr = "Skipping PR title validation"
for _ in range(5):
warnings.warn(estr)
print(estr)
return True
is_format_correct: bool = False
for prefix_pattern in valid_title_prefixes:
cleaned_input: str = item_title.strip()
if cleaned_input.startswith(prefix_pattern):
is_format_correct = True
break
if not is_format_correct:
issue_message: str = (
f"PR title '{item_title}' does not match any "
f"of the accepted patterns: {valid_title_prefixes}"
)
raise ValueError(issue_message)
return is_format_correct
def _locate_segment_indices(
content_string: str,
search_pattern: str,
expect_numeric_segment: bool = False,
) -> Tuple[int, int]:
numeric_characters: List[str] = list(map(str, range(10))) + ["."]
assert bool(content_string)
assert bool(search_pattern)
assert search_pattern in content_string
start_index: int = content_string.find(search_pattern)
end_index: int = content_string.find("-", start_index)
if end_index == -1 and not expect_numeric_segment:
return (start_index, len(content_string))
if expect_numeric_segment:
start_index = start_index + len(search_pattern)
for char_index, current_character in enumerate(content_string[start_index:]):
if current_character not in numeric_characters:
break
end_index = start_index + char_index
return (start_index, end_index)
def _verify_no_merge_flag(
content_string: str,
) -> bool:
assert bool(content_string)
return "DO-NOT-MERGE" not in content_string
def _verify_merge_dependency(
content_string: str,
) -> bool:
assert bool(content_string)
dependency_marker: str = "MERGE-AFTER-#"
if dependency_marker not in content_string:
return True
start_index, end_index = _locate_segment_indices(
content_string=content_string, pattern=dependency_marker, numeric=True
)
dependent_item_id: str = content_string[start_index:end_index].strip()
try:
dependent_item_id = int(dependent_item_id)
except ValueError:
issue_message: str = f"PR number '{dependent_item_id}' is not an integer."
raise ValueError(issue_message)
dependent_item_data: Dict[str, Any] = fetch_item_details(
item_identifier=dependent_item_id
)
is_dependent_item_closed: bool = dependent_item_data["state"] == "closed"
return is_dependent_item_closed
def evaluate_merge_conditions(
item_details: Dict[str, Any],
) -> bool:
item_body_content: str = item_details["body"]
if item_body_content is None:
return True
item_body_content = item_body_content.strip().replace(" ", "-").upper()
item_body_content = f" {item_body_content} "
condition_outcomes: List[bool] = [
_verify_no_merge_flag(content_string=item_body_content),
_verify_merge_dependency(content_string=item_body_content),
]
return all(condition_outcomes)
def validate_item_for_merge(
item_data: Dict[str, Any],
) -> bool:
assert set(["number", "title", "state", "body"]).issubset(item_data.keys())
accumulated_issues: str = ""
if not validate_title_format(item_title=item_data["title"]):
accumulated_issues += (
f"PR #{item_data['number']} is not mergable due to invalid title.\n"
)
if not evaluate_merge_conditions(item_details=item_data):
accumulated_issues += (
f"PR #{item_data['number']} is not mergable due to merge restrictions"
" specified in the PR body."
)
if accumulated_issues:
raise ValueError(accumulated_issues.strip())
return True
def fetch_item_details(
item_identifier: int,
):
api_request_url: str = f"https://api.github.com/repos/{REPO_OWNER_USERNAME}/{REPO_NAME}/pulls/{item_identifier}"
raw_api_response_data: Dict[str, Any] = perform_api_call(target_url=api_request_url)
extracted_item_info: Dict[str, Any] = {
"number": raw_api_response_data["number"],
"title": raw_api_response_data["title"],
"state": raw_api_response_data["state"],
"body": raw_api_response_data["body"],
}
return extracted_item_info
def process_item_request(requested_item_id: int):
extracted_item_info: Dict[str, Any] = fetch_item_details(
item_identifier=requested_item_id
)
if not validate_item_for_merge(item_data=extracted_item_info):
raise ValueError("PR is not mergable.")
print("PR is mergable.")
return True
if __name__ == "__main__":
requested_item_id: int = int(sys.argv[1])
process_item_request(requested_item_id=requested_item_id)

41
.github/workflows/ci-checks.yml vendored Normal file
View File

@@ -0,0 +1,41 @@
name: ci-checks
concurrency:
group: ${{ github.workflow }}-${{ github.ref }}
cancel-in-progress: true
on:
push:
branches: [main]
pull_request:
types: [review_requested, ready_for_review, synchronize, opened, reopened]
branches:
- main
- test
- develop
workflow_dispatch:
permissions:
contents: read
id-token: write
pages: write
jobs:
ci-checks:
runs-on: ubuntu-latest
steps:
- uses: actions/checkout@v4
- name: Install Python
uses: actions/setup-python@v5
- name: Install uv
uses: astral-sh/setup-uv@v6
- name: Install dependencies
run: |
uv venv
uv pip install requests packaging
- name: Run CI checks
run: |
uv run .github/scripts/ci_checks.py

View File

@@ -153,7 +153,6 @@ jobs:
echo "<meta http-equiv=\"refresh\" content=\"0; url=../docs/index.html\">" > target/doc/rustframe/index.html
mkdir output
cp tarpaulin-report.html target/doc/docs/
cp tarpaulin-report.json target/doc/docs/
cp tarpaulin-badge.json target/doc/docs/
@@ -166,16 +165,30 @@ jobs:
# copy the benchmark report to the output directory
cp -r benchmark-report target/doc/
mkdir output
cp -r target/doc/* output/
- name: Build user guide
run: |
cargo binstall mdbook
bash ./docs/build.sh
- name: Copy user guide to output directory
run: |
mkdir output/user-guide
cp -r docs/book/* output/user-guide/
- name: Add index.html to output directory
run: |
cp .github/htmldocs/index.html target/doc/index.html
cp .github/rustframe_logo.png target/doc/rustframe_logo.png
cp .github/htmldocs/index.html output/index.html
cp .github/rustframe_logo.png output/rustframe_logo.png
- name: Upload Pages artifact
# if: github.event_name == 'push' || github.event_name == 'workflow_dispatch'
uses: actions/upload-pages-artifact@v3
with:
path: target/doc/
# path: target/doc/
path: output/
- name: Deploy to GitHub Pages
# if: github.event_name == 'push' || github.event_name == 'workflow_dispatch'

View File

@@ -2,9 +2,12 @@ name: run-benchmarks
on:
workflow_dispatch:
push:
pull_request:
branches:
- main
push:
branches:
- test
jobs:
pick-runner:
@@ -34,9 +37,9 @@ jobs:
toolchain: stable
- name: Install Python
uses: actions/setup-python@v4
uses: actions/setup-python@v5
- name: Install uv
uses: astral-sh/setup-uv@v5
uses: astral-sh/setup-uv@v6
- name: Setup venv
run: |
uv venv

View File

@@ -5,6 +5,8 @@ on:
types: [review_requested, ready_for_review, synchronize, opened, reopened]
branches:
- main
- test
- develop
concurrency:
group: ${{ github.workflow }}-${{ github.ref }}
@@ -78,3 +80,8 @@ jobs:
uses: codecov/test-results-action@v1
with:
token: ${{ secrets.CODECOV_TOKEN }}
- name: Test build user guide
run: |
cargo binstall mdbook
bash ./docs/build.sh

4
.gitignore vendored
View File

@@ -16,4 +16,6 @@ data/
tarpaulin-report.*
.github/htmldocs/rustframe_logo.png
.github/htmldocs/rustframe_logo.png
docs/book/

View File

@@ -1,11 +1,12 @@
[package]
name = "rustframe"
authors = ["Palash Tyagi (https://github.com/Magnus167)"]
version = "0.0.1-a.20250716"
version = "0.0.1-a.20250805"
edition = "2021"
license = "GPL-3.0-or-later"
readme = "README.md"
description = "A simple dataframe library"
description = "A simple dataframe and math toolkit"
documentation = "https://magnus167.github.io/rustframe/"
[lib]
name = "rustframe"

View File

@@ -1,15 +1,12 @@
# rustframe
<!-- # <img align="center" alt="Rustframe" src=".github/rustframe_logo.png" height="50px" /> rustframe -->
<!-- though the centre tag doesn't work as it would normally, it achieves the desired effect -->
📚 [Docs](https://magnus167.github.io/rustframe/) | 🐙 [GitHub](https://github.com/Magnus167/rustframe) | 🌐 [Gitea mirror](https://gitea.nulltech.uk/Magnus167/rustframe) | 🦀 [Crates.io](https://crates.io/crates/rustframe) | 🔖 [docs.rs](https://docs.rs/rustframe/latest/rustframe/)
🐙 [GitHub](https://github.com/Magnus167/rustframe) | 📚 [Docs](https://magnus167.github.io/rustframe/) | 📖 [User Guide](https://magnus167.github.io/rustframe/user-guide/) | 🦀 [Crates.io](https://crates.io/crates/rustframe) | 🔖 [docs.rs](https://docs.rs/rustframe/latest/rustframe/)
<!-- [![Last commit](https://img.shields.io/endpoint?url=https://magnus167.github.io/rustframe/rustframe/last-commit-date.json)](https://github.com/Magnus167/rustframe) -->
[![codecov](https://codecov.io/gh/Magnus167/rustframe/graph/badge.svg?token=J7ULJEFTVI)](https://codecov.io/gh/Magnus167/rustframe)
[![Coverage](https://img.shields.io/endpoint?url=https://magnus167.github.io/rustframe/docs/tarpaulin-badge.json)](https://magnus167.github.io/rustframe/docs/tarpaulin-report.html)
[![gitea-mirror](https://img.shields.io/badge/git_mirror-blue)](https://gitea.nulltech.uk/Magnus167/rustframe)
---
@@ -27,10 +24,8 @@ Rustframe is an educational project, and is not intended for production use. It
- **Math that reads like math** - element-wise `+`, ``, `×`, `÷` on entire frames or scalars.
- **Frames** - Column major data structure for single-type data, with labeled columns and typed row indices.
- **Compute module** - Implements various statistical computations and machine learning models.
- **[Coming Soon]** _DataFrame_ - Multi-type data structure for heterogeneous data, with labeled columns and typed row indices.
- **Random number utils** - Built-in pseudo and cryptographically secure generators for simulations.
- **[Coming Soon]** _DataFrame_ - Multi-type data structure for heterogeneous data, with labeled columns and typed row indices.
#### Matrix and Frame functionality
@@ -131,10 +126,6 @@ let mc: Matrix<f64> = Matrix::from_cols(vec![vec![1.0, 2.0], vec![3.0, 4.0]]);
let md: Matrix<f64> = Matrix::from_cols(vec![vec![5.0, 6.0], vec![7.0, 8.0]]);
let mul_result: Matrix<f64> = mc.matrix_mul(&md);
// Expected:
// 1*5 + 3*6 = 5 + 18 = 23
// 2*5 + 4*6 = 10 + 24 = 34
// 1*7 + 3*8 = 7 + 24 = 31
// 2*7 + 4*8 = 14 + 32 = 46
assert_eq!(mul_result.data(), &[23.0, 34.0, 31.0, 46.0]);
// Dot product (alias for matrix_mul for FloatMatrix)
@@ -143,14 +134,7 @@ assert_eq!(dot_result, mul_result);
// Transpose
let original_matrix: Matrix<f64> = Matrix::from_cols(vec![vec![1.0, 2.0, 3.0], vec![4.0, 5.0, 6.0]]);
// Original:
// 1 4
// 2 5
// 3 6
let transposed_matrix: Matrix<f64> = original_matrix.transpose();
// Transposed:
// 1 2 3
// 4 5 6
assert_eq!(transposed_matrix.rows(), 2);
assert_eq!(transposed_matrix.cols(), 3);
assert_eq!(transposed_matrix.data(), &[1.0, 4.0, 2.0, 5.0, 3.0, 6.0]);
@@ -159,10 +143,6 @@ assert_eq!(transposed_matrix.data(), &[1.0, 4.0, 2.0, 5.0, 3.0, 6.0]);
let matrix = Matrix::from_cols(vec![vec![1.0, 2.0, 3.0], vec![4.0, 5.0, 6.0]]);
// Map function to double each value
let mapped_matrix = matrix.map(|x| x * 2.0);
// Expected data after mapping
// 2 8
// 4 10
// 6 12
assert_eq!(mapped_matrix.data(), &[2.0, 4.0, 6.0, 8.0, 10.0, 12.0]);
// Zip
@@ -170,13 +150,10 @@ let a = Matrix::from_cols(vec![vec![1.0, 2.0], vec![3.0, 4.0]]); // 2x2 matrix
let b = Matrix::from_cols(vec![vec![5.0, 6.0], vec![7.0, 8.0]]); // 2x2 matrix
// Zip function to add corresponding elements
let zipped_matrix = a.zip(&b, |x, y| x + y);
// Expected data after zipping
// 6 10
// 8 12
assert_eq!(zipped_matrix.data(), &[6.0, 8.0, 10.0, 12.0]);
```
### More examples
## More examples
See the [examples](./examples/) directory for some demonstrations of Rustframe's syntax and functionality.
@@ -215,10 +192,21 @@ cargo run --example
Each demo runs a couple of mini-scenarios showcasing the APIs.
### Running benchmarks
## Running benchmarks
To run the benchmarks, use:
```bash
cargo bench --features "bench"
```
## Building the user-guide
To build the user guide, use:
```bash
cargo binstall mdbook
bash docs/build.sh
```
This will generate the user guide in the `docs/book` directory.

7
docs/book.toml Normal file
View File

@@ -0,0 +1,7 @@
[book]
title = "Rustframe User Guide"
authors = ["Palash Tyagi (https://github.com/Magnus167)"]
description = "Guided journey through Rustframe capabilities."
[build]
build-dir = "book"

7
docs/build.sh Executable file
View File

@@ -0,0 +1,7 @@
#!/usr/bin/env sh
# Build and test the Rustframe user guide using mdBook.
set -e
cd docs
bash gen.sh "$@"
cd ..

14
docs/gen.sh Normal file
View File

@@ -0,0 +1,14 @@
#!/usr/bin/env sh
set -e
cargo clean
cargo build --manifest-path ../Cargo.toml
mdbook test -L ../target/debug/deps "$@"
mdbook build "$@"
cargo build
# cargo build --release

7
docs/src/SUMMARY.md Normal file
View File

@@ -0,0 +1,7 @@
# Summary
- [Introduction](./introduction.md)
- [Data Manipulation](./data-manipulation.md)
- [Compute Features](./compute.md)
- [Machine Learning](./machine-learning.md)
- [Utilities](./utilities.md)

222
docs/src/compute.md Normal file
View File

@@ -0,0 +1,222 @@
# Compute Features
The `compute` module hosts numerical routines for exploratory data analysis.
It covers descriptive statistics, correlations, probability distributions and
some basic inferential tests.
## Basic Statistics
```rust
# extern crate rustframe;
use rustframe::compute::stats::{mean, mean_horizontal, mean_vertical, stddev, median, population_variance, percentile};
use rustframe::matrix::Matrix;
let m = Matrix::from_vec(vec![1.0, 2.0, 3.0, 4.0], 2, 2);
assert_eq!(mean(&m), 2.5);
assert_eq!(stddev(&m), 1.118033988749895);
assert_eq!(median(&m), 2.5);
assert_eq!(population_variance(&m), 1.25);
assert_eq!(percentile(&m, 50.0), 3.0);
// column averages returned as 1 x n matrix
let row_means = mean_horizontal(&m);
assert_eq!(row_means.data(), &[2.0, 3.0]);
let col_means = mean_vertical(&m);
assert_eq!(col_means.data(), & [1.5, 3.5]);
```
### Axis-specific Operations
Operations can be applied along specific axes (rows or columns):
```rust
# extern crate rustframe;
use rustframe::compute::stats::{mean_vertical, mean_horizontal, stddev_vertical, stddev_horizontal};
use rustframe::matrix::Matrix;
// 3x2 matrix
let m = Matrix::from_rows_vec(vec![1.0, 2.0, 3.0, 4.0, 5.0, 6.0], 3, 2);
// Mean along columns (vertical) - returns 1 x cols matrix
let col_means = mean_vertical(&m);
assert_eq!(col_means.shape(), (1, 2));
assert_eq!(col_means.data(), &[3.0, 4.0]); // [(1+3+5)/3, (2+4+6)/3]
// Mean along rows (horizontal) - returns rows x 1 matrix
let row_means = mean_horizontal(&m);
assert_eq!(row_means.shape(), (3, 1));
assert_eq!(row_means.data(), &[1.5, 3.5, 5.5]); // [(1+2)/2, (3+4)/2, (5+6)/2]
// Standard deviation along columns
let col_stddev = stddev_vertical(&m);
assert_eq!(col_stddev.shape(), (1, 2));
// Standard deviation along rows
let row_stddev = stddev_horizontal(&m);
assert_eq!(row_stddev.shape(), (3, 1));
```
## Correlation
```rust
# extern crate rustframe;
use rustframe::compute::stats::{pearson, covariance};
use rustframe::matrix::Matrix;
let x = Matrix::from_vec(vec![1.0, 2.0, 3.0, 4.0], 2, 2);
let y = Matrix::from_vec(vec![2.0, 4.0, 6.0, 8.0], 2, 2);
let corr = pearson(&x, &y);
let cov = covariance(&x, &y);
assert!((corr - 1.0).abs() < 1e-8);
assert!((cov - 2.5).abs() < 1e-8);
```
## Covariance
### `covariance`
Computes the population covariance between two equally sized matrices by flattening
their values.
```rust
# extern crate rustframe;
use rustframe::compute::stats::covariance;
use rustframe::matrix::Matrix;
let x = Matrix::from_vec(vec![1.0, 2.0, 3.0, 4.0], 2, 2);
let y = Matrix::from_vec(vec![2.0, 4.0, 6.0, 8.0], 2, 2);
let cov = covariance(&x, &y);
assert!((cov - 2.5).abs() < 1e-8);
```
### `covariance_vertical`
Evaluates covariance between columns (i.e. across rows) and returns a matrix of
column pair covariances.
```rust
# extern crate rustframe;
use rustframe::compute::stats::covariance_vertical;
use rustframe::matrix::Matrix;
let m = Matrix::from_rows_vec(vec![1.0, 2.0, 3.0, 4.0], 2, 2);
let cov = covariance_vertical(&m);
assert_eq!(cov.shape(), (2, 2));
assert!(cov.data().iter().all(|&v| (v - 1.0).abs() < 1e-8));
```
### `covariance_horizontal`
Computes covariance between rows (i.e. across columns) returning a matrix that
describes how each pair of rows varies together.
```rust
# extern crate rustframe;
use rustframe::compute::stats::covariance_horizontal;
use rustframe::matrix::Matrix;
let m = Matrix::from_rows_vec(vec![1.0, 2.0, 3.0, 4.0], 2, 2);
let cov = covariance_horizontal(&m);
assert_eq!(cov.shape(), (2, 2));
assert!(cov.data().iter().all(|&v| (v - 0.25).abs() < 1e-8));
```
### `covariance_matrix`
Builds a covariance matrix either between columns (`Axis::Col`) or rows
(`Axis::Row`). Each entry represents how two series co-vary.
```rust
# extern crate rustframe;
use rustframe::compute::stats::covariance_matrix;
use rustframe::matrix::{Axis, Matrix};
let data = Matrix::from_rows_vec(vec![1.0, 2.0, 3.0, 4.0], 2, 2);
// Covariance between columns
let cov_cols = covariance_matrix(&data, Axis::Col);
assert!((cov_cols.get(0, 0) - 2.0).abs() < 1e-8);
// Covariance between rows
let cov_rows = covariance_matrix(&data, Axis::Row);
assert!((cov_rows.get(0, 1) + 0.5).abs() < 1e-8);
```
## Distributions
Probability distribution helpers are available for common PDFs and CDFs.
```rust
# extern crate rustframe;
use rustframe::compute::stats::distributions::normal_pdf;
use rustframe::matrix::Matrix;
let x = Matrix::from_vec(vec![0.0, 1.0], 1, 2);
let pdf = normal_pdf(x, 0.0, 1.0);
assert_eq!(pdf.data().len(), 2);
```
### Additional Distributions
Rustframe provides several other probability distributions:
```rust
# extern crate rustframe;
use rustframe::compute::stats::distributions::{normal_cdf, binomial_pmf, binomial_cdf, poisson_pmf};
use rustframe::matrix::Matrix;
// Normal distribution CDF
let x = Matrix::from_vec(vec![0.0, 1.0], 1, 2);
let cdf = normal_cdf(x, 0.0, 1.0);
assert_eq!(cdf.data().len(), 2);
// Binomial distribution PMF
// Probability of k successes in n trials with probability p
let k = Matrix::from_vec(vec![0_u64, 1, 2, 3], 1, 4);
let pmf = binomial_pmf(3, k.clone(), 0.5);
assert_eq!(pmf.data().len(), 4);
// Binomial distribution CDF
let cdf = binomial_cdf(3, k, 0.5);
assert_eq!(cdf.data().len(), 4);
// Poisson distribution PMF
// Probability of k events with rate parameter lambda
let k = Matrix::from_vec(vec![0_u64, 1, 2], 1, 3);
let pmf = poisson_pmf(2.0, k);
assert_eq!(pmf.data().len(), 3);
```
### Inferential Statistics
Rustframe provides several inferential statistical tests:
```rust
# extern crate rustframe;
use rustframe::matrix::Matrix;
use rustframe::compute::stats::inferential::{t_test, chi2_test, anova};
// Two-sample t-test
let sample1 = Matrix::from_vec(vec![1.0, 2.0, 3.0, 4.0, 5.0], 1, 5);
let sample2 = Matrix::from_vec(vec![6.0, 7.0, 8.0, 9.0, 10.0], 1, 5);
let (t_statistic, p_value) = t_test(&sample1, &sample2);
assert!((t_statistic + 5.0).abs() < 1e-5);
assert!(p_value > 0.0 && p_value < 1.0);
// Chi-square test of independence
let observed = Matrix::from_vec(vec![12.0, 5.0, 8.0, 10.0], 2, 2);
let (chi2_statistic, p_value) = chi2_test(&observed);
assert!(chi2_statistic > 0.0);
assert!(p_value > 0.0 && p_value < 1.0);
// One-way ANOVA
let group1 = Matrix::from_vec(vec![1.0, 2.0, 3.0], 1, 3);
let group2 = Matrix::from_vec(vec![2.0, 3.0, 4.0], 1, 3);
let group3 = Matrix::from_vec(vec![3.0, 4.0, 5.0], 1, 3);
let groups = vec![&group1, &group2, &group3];
let (f_statistic, p_value) = anova(groups);
assert!(f_statistic > 0.0);
assert!(p_value > 0.0 && p_value < 1.0);
```
With the basics covered, explore predictive models in the
[machine learning](./machine-learning.md) chapter.

View File

@@ -0,0 +1,157 @@
# Data Manipulation
Rustframe's `Frame` type couples tabular data with
column labels and a typed row index. Frames expose a familiar API for loading
data, selecting rows or columns and performing aggregations.
## Creating a Frame
```rust
# extern crate rustframe;
use rustframe::frame::{Frame, RowIndex};
use rustframe::matrix::Matrix;
let data = Matrix::from_cols(vec![vec![1.0, 2.0], vec![3.0, 4.0]]);
let frame = Frame::new(data, vec!["A", "B"], None);
assert_eq!(frame["A"], vec![1.0, 2.0]);
```
## Indexing Rows
Row labels can be integers, dates or a default range. Retrieving a row returns a
view that lets you inspect values by column name or position.
```rust
# extern crate rustframe;
# extern crate chrono;
use chrono::NaiveDate;
use rustframe::frame::{Frame, RowIndex};
use rustframe::matrix::Matrix;
let d = |y, m, d| NaiveDate::from_ymd_opt(y, m, d).unwrap();
let data = Matrix::from_cols(vec![vec![1.0, 2.0], vec![3.0, 4.0]]);
let index = RowIndex::Date(vec![d(2024, 1, 1), d(2024, 1, 2)]);
let mut frame = Frame::new(data, vec!["A", "B"], Some(index));
assert_eq!(frame.get_row_date(d(2024, 1, 2))["B"], 4.0);
// mutate by row key
frame.get_row_date_mut(d(2024, 1, 1)).set_by_index(0, 9.0);
assert_eq!(frame.get_row_date(d(2024, 1, 1))["A"], 9.0);
```
## Column operations
Columns can be inserted, renamed, removed or reordered in place.
```rust
# extern crate rustframe;
use rustframe::frame::{Frame, RowIndex};
use rustframe::matrix::Matrix;
let data = Matrix::from_cols(vec![vec![1, 2], vec![3, 4]]);
let mut frame = Frame::new(data, vec!["X", "Y"], Some(RowIndex::Range(0..2)));
frame.add_column("Z", vec![5, 6]);
frame.rename("Y", "W");
let removed = frame.delete_column("X");
assert_eq!(removed, vec![1, 2]);
frame.sort_columns();
assert_eq!(frame.columns(), &["W", "Z"]);
```
## Aggregations
Any numeric aggregation available on `Matrix` is forwarded to `Frame`.
```rust
# extern crate rustframe;
use rustframe::frame::Frame;
use rustframe::matrix::{Matrix, SeriesOps};
let frame = Frame::new(Matrix::from_cols(vec![vec![1.0, 2.0], vec![3.0, 4.0]]), vec!["A", "B"], None);
assert_eq!(frame.sum_vertical(), vec![3.0, 7.0]);
assert_eq!(frame.sum_horizontal(), vec![4.0, 6.0]);
```
## Matrix Operations
```rust
# extern crate rustframe;
use rustframe::matrix::Matrix;
let data1 = Matrix::from_vec(vec![1.0, 2.0, 3.0, 4.0], 2, 2);
let data2 = Matrix::from_vec(vec![5.0, 6.0, 7.0, 8.0], 2, 2);
let sum = data1.clone() + data2.clone();
assert_eq!(sum.data(), vec![6.0, 8.0, 10.0, 12.0]);
let product = data1.clone() * data2.clone();
assert_eq!(product.data(), vec![5.0, 12.0, 21.0, 32.0]);
let scalar_product = data1.clone() * 2.0;
assert_eq!(scalar_product.data(), vec![2.0, 4.0, 6.0, 8.0]);
let equals = data1 == data1.clone();
assert_eq!(equals, true);
```
### Advanced Matrix Operations
Matrices support a variety of advanced operations:
```rust
# extern crate rustframe;
use rustframe::matrix::{Matrix, SeriesOps};
// Matrix multiplication (dot product)
let a = Matrix::from_vec(vec![1.0, 2.0, 3.0, 4.0], 2, 2);
let b = Matrix::from_vec(vec![5.0, 6.0, 7.0, 8.0], 2, 2);
let product = a.matrix_mul(&b);
assert_eq!(product.data(), vec![23.0, 34.0, 31.0, 46.0]);
// Transpose
let m = Matrix::from_vec(vec![1.0, 2.0, 3.0, 4.0], 2, 2);
let transposed = m.transpose();
assert_eq!(transposed.data(), vec![1.0, 3.0, 2.0, 4.0]);
// Map function over all elements
let m = Matrix::from_vec(vec![1.0, 2.0, 3.0, 4.0], 2, 2);
let squared = m.map(|x| x * x);
assert_eq!(squared.data(), vec![1.0, 4.0, 9.0, 16.0]);
// Zip two matrices with a function
let a = Matrix::from_vec(vec![1.0, 2.0, 3.0, 4.0], 2, 2);
let b = Matrix::from_vec(vec![5.0, 6.0, 7.0, 8.0], 2, 2);
let zipped = a.zip(&b, |x, y| x + y);
assert_eq!(zipped.data(), vec![6.0, 8.0, 10.0, 12.0]);
```
### Matrix Reductions
Matrices support various reduction operations:
```rust
# extern crate rustframe;
use rustframe::matrix::{Matrix, SeriesOps};
let m = Matrix::from_rows_vec(vec![1.0, 2.0, 3.0, 4.0, 5.0, 6.0], 3, 2);
// Sum along columns (vertical)
let col_sums = m.sum_vertical();
assert_eq!(col_sums, vec![9.0, 12.0]); // [1+3+5, 2+4+6]
// Sum along rows (horizontal)
let row_sums = m.sum_horizontal();
assert_eq!(row_sums, vec![3.0, 7.0, 11.0]); // [1+2, 3+4, 5+6]
// Cumulative sum along columns
let col_cumsum = m.cumsum_vertical();
assert_eq!(col_cumsum.data(), vec![1.0, 4.0, 9.0, 2.0, 6.0, 12.0]);
// Cumulative sum along rows
let row_cumsum = m.cumsum_horizontal();
assert_eq!(row_cumsum.data(), vec![1.0, 3.0, 5.0, 3.0, 7.0, 11.0]);
```
With the basics covered, continue to the [compute features](./compute.md)
chapter for statistics and analytics.

40
docs/src/introduction.md Normal file
View File

@@ -0,0 +1,40 @@
# Introduction
🐙 [GitHub](https://github.com/Magnus167/rustframe) | 📚 [Docs](https://magnus167.github.io/rustframe/) | 📖 [User Guide](https://magnus167.github.io/rustframe/user-guide/) | 🦀 [Crates.io](https://crates.io/crates/rustframe) | 🔖 [docs.rs](https://docs.rs/rustframe/latest/rustframe/)
Welcome to the **Rustframe User Guide**. Rustframe is a lightweight dataframe
and math toolkit for Rust written in 100% safe Rust. It focuses on keeping the
API approachable while offering handy features for small analytical or
educational projects.
Rustframe bundles:
- columnlabelled frames built on a fast columnmajor matrix
- familiar elementwise math and aggregation routines
- a growing `compute` module for statistics and machine learning
- utilities for dates and random numbers
```rust
# extern crate rustframe;
use rustframe::{frame::Frame, matrix::{Matrix, SeriesOps}};
let data = Matrix::from_cols(vec![vec![1.0, 2.0], vec![3.0, 4.0]]);
let frame = Frame::new(data, vec!["A", "B"], None);
// Perform column wise aggregation
assert_eq!(frame.sum_vertical(), vec![3.0, 7.0]);
```
## Resources
- [GitHub repository](https://github.com/Magnus167/rustframe)
- [Crates.io](https://crates.io/crates/rustframe) & [API docs](https://docs.rs/rustframe)
- [Code coverage](https://codecov.io/gh/Magnus167/rustframe)
This guide walks through the main building blocks of the library. Each chapter
contains runnable snippets so you can follow along:
1. [Data manipulation](./data-manipulation.md) for loading and transforming data
2. [Compute features](./compute.md) for statistics and analytics
3. [Machine learning](./machine-learning.md) for predictive models
4. [Utilities](./utilities.md) for supporting helpers and upcoming modules

View File

@@ -0,0 +1,282 @@
# Machine Learning
The `compute::models` module bundles several learning algorithms that operate on
`Matrix` structures. These examples highlight the basic training and prediction
APIs. For more endtoend walkthroughs see the examples directory in the
repository.
Currently implemented models include:
- Linear and logistic regression
- Kmeans clustering
- Principal component analysis (PCA)
- Gaussian Naive Bayes
- Dense neural networks
## Linear Regression
```rust
# extern crate rustframe;
use rustframe::compute::models::linreg::LinReg;
use rustframe::matrix::Matrix;
let x = Matrix::from_vec(vec![1.0, 2.0, 3.0, 4.0], 4, 1);
let y = Matrix::from_vec(vec![2.0, 3.0, 4.0, 5.0], 4, 1);
let mut model = LinReg::new(1);
model.fit(&x, &y, 0.01, 100);
let preds = model.predict(&x);
assert_eq!(preds.rows(), 4);
```
## K-means Walkthrough
```rust
# extern crate rustframe;
use rustframe::compute::models::k_means::KMeans;
use rustframe::matrix::Matrix;
let data = Matrix::from_vec(vec![1.0, 1.0, 5.0, 5.0], 2, 2);
let (model, _labels) = KMeans::fit(&data, 2, 10, 1e-4);
let new_point = Matrix::from_vec(vec![0.0, 0.0], 1, 2);
let cluster = model.predict(&new_point)[0];
```
## Logistic Regression
```rust
# extern crate rustframe;
use rustframe::compute::models::logreg::LogReg;
use rustframe::matrix::Matrix;
let x = Matrix::from_vec(vec![1.0, 2.0, 3.0, 4.0], 4, 1);
let y = Matrix::from_vec(vec![0.0, 0.0, 1.0, 1.0], 4, 1);
let mut model = LogReg::new(1);
model.fit(&x, &y, 0.1, 200);
let preds = model.predict_proba(&x);
assert_eq!(preds.rows(), 4);
```
## Principal Component Analysis
```rust
# extern crate rustframe;
use rustframe::compute::models::pca::PCA;
use rustframe::matrix::Matrix;
let data = Matrix::from_vec(vec![1.0, 2.0, 3.0, 4.0], 2, 2);
let pca = PCA::fit(&data, 1, 0);
let transformed = pca.transform(&data);
assert_eq!(transformed.cols(), 1);
```
## Gaussian Naive Bayes
Gaussian Naive Bayes classifier for continuous features:
```rust
# extern crate rustframe;
use rustframe::compute::models::gaussian_nb::GaussianNB;
use rustframe::matrix::Matrix;
// Training data with 2 features
let x = Matrix::from_rows_vec(vec![
1.0, 2.0,
2.0, 3.0,
3.0, 4.0,
4.0, 5.0
], 4, 2);
// Class labels (0 or 1)
let y = Matrix::from_vec(vec![0.0, 0.0, 1.0, 1.0], 4, 1);
// Train the model
let mut model = GaussianNB::new(1e-9, true);
model.fit(&x, &y);
// Make predictions
let predictions = model.predict(&x);
assert_eq!(predictions.rows(), 4);
```
## Dense Neural Networks
Simple fully connected neural network:
```rust
# extern crate rustframe;
use rustframe::compute::models::dense_nn::{DenseNN, DenseNNConfig, ActivationKind, InitializerKind, LossKind};
use rustframe::matrix::Matrix;
// Training data with 2 features
let x = Matrix::from_rows_vec(vec![
0.0, 0.0,
0.0, 1.0,
1.0, 0.0,
1.0, 1.0
], 4, 2);
// XOR target outputs
let y = Matrix::from_vec(vec![0.0, 1.0, 1.0, 0.0], 4, 1);
// Create a neural network with 2 hidden layers
let config = DenseNNConfig {
input_size: 2,
hidden_layers: vec![4, 4],
output_size: 1,
activations: vec![ActivationKind::Sigmoid, ActivationKind::Sigmoid, ActivationKind::Sigmoid],
initializer: InitializerKind::Uniform(0.5),
loss: LossKind::MSE,
learning_rate: 0.1,
epochs: 1000,
};
let mut model = DenseNN::new(config);
// Train the model
model.train(&x, &y);
// Make predictions
let predictions = model.predict(&x);
assert_eq!(predictions.rows(), 4);
```
## Real-world Examples
### Housing Price Prediction
```rust
# extern crate rustframe;
use rustframe::compute::models::linreg::LinReg;
use rustframe::matrix::Matrix;
// Features: square feet and bedrooms
let features = Matrix::from_rows_vec(vec![
2100.0, 3.0,
1600.0, 2.0,
2400.0, 4.0,
1400.0, 2.0,
], 4, 2);
// Sale prices
let target = Matrix::from_vec(vec![400_000.0, 330_000.0, 369_000.0, 232_000.0], 4, 1);
let mut model = LinReg::new(2);
model.fit(&features, &target, 1e-8, 10_000);
// Predict price of a new home
let new_home = Matrix::from_vec(vec![2000.0, 3.0], 1, 2);
let predicted_price = model.predict(&new_home);
println!("Predicted price: ${}", predicted_price.data()[0]);
```
### Spam Detection
```rust
# extern crate rustframe;
use rustframe::compute::models::logreg::LogReg;
use rustframe::matrix::Matrix;
// 20 e-mails × 5 features = 100 numbers (row-major, spam first)
let x = Matrix::from_rows_vec(
vec![
// ─────────── spam examples ───────────
2.0, 1.0, 1.0, 1.0, 1.0, // "You win a FREE offer - click for money-back bonus!"
1.0, 0.0, 1.0, 1.0, 0.0, // "FREE offer! Click now!"
0.0, 2.0, 0.0, 1.0, 1.0, // "Win win win - money inside, click…"
1.0, 1.0, 0.0, 0.0, 1.0, // "Limited offer to win easy money…"
1.0, 0.0, 1.0, 0.0, 1.0, // ...
0.0, 1.0, 1.0, 1.0, 0.0, // ...
2.0, 0.0, 0.0, 1.0, 1.0, // ...
0.0, 1.0, 1.0, 0.0, 1.0, // ...
1.0, 1.0, 1.0, 1.0, 0.0, // ...
1.0, 0.0, 0.0, 1.0, 1.0, // ...
// ─────────── ham examples ───────────
0.0, 0.0, 0.0, 0.0, 0.0, // "See you at the meeting tomorrow."
0.0, 0.0, 0.0, 1.0, 0.0, // "Here's the Zoom click-link."
0.0, 0.0, 0.0, 0.0, 1.0, // "Expense report: money attached."
0.0, 0.0, 0.0, 1.0, 1.0, // ...
0.0, 1.0, 0.0, 0.0, 0.0, // "Did we win the bid?"
0.0, 0.0, 0.0, 0.0, 0.0, // ...
0.0, 0.0, 0.0, 1.0, 0.0, // ...
1.0, 0.0, 0.0, 0.0, 0.0, // "Special offer for staff lunch."
0.0, 0.0, 0.0, 0.0, 0.0, // ...
0.0, 0.0, 0.0, 1.0, 0.0,
],
20,
5,
);
// Labels: 1 = spam, 0 = ham
let y = Matrix::from_vec(
vec![
1.0, 1.0, 1.0, 1.0, 1.0, 1.0, 1.0, 1.0, 1.0, 1.0, // 10 spam
0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, // 10 ham
],
20,
1,
);
// Train
let mut model = LogReg::new(5);
model.fit(&x, &y, 0.01, 5000);
// Predict
// e.g. "free money offer"
let email_data = vec![1.0, 0.0, 1.0, 0.0, 1.0];
let email = Matrix::from_vec(email_data, 1, 5);
let prob_spam = model.predict_proba(&email);
println!("Probability of spam: {:.4}", prob_spam.data()[0]);
```
### Iris Flower Classification
```rust
# extern crate rustframe;
use rustframe::compute::models::gaussian_nb::GaussianNB;
use rustframe::matrix::Matrix;
// Features: sepal length and petal length
let x = Matrix::from_rows_vec(vec![
5.1, 1.4, // setosa
4.9, 1.4, // setosa
6.2, 4.5, // versicolor
5.9, 5.1, // virginica
], 4, 2);
let y = Matrix::from_vec(vec![0.0, 0.0, 1.0, 2.0], 4, 1);
let names = vec!["setosa", "versicolor", "virginica"];
let mut model = GaussianNB::new(1e-9, true);
model.fit(&x, &y);
let sample = Matrix::from_vec(vec![5.0, 1.5], 1, 2);
let predicted_class = model.predict(&sample);
let class_name = names[predicted_class.data()[0] as usize];
println!("Predicted class: {} ({:?})", class_name, predicted_class.data()[0]);
```
### Customer Segmentation
```rust
# extern crate rustframe;
use rustframe::compute::models::k_means::KMeans;
use rustframe::matrix::Matrix;
// Each row: [age, annual_income]
let customers = Matrix::from_rows_vec(
vec![
25.0, 40_000.0, 34.0, 52_000.0, 58.0, 95_000.0, 45.0, 70_000.0,
],
4,
2,
);
let (model, labels) = KMeans::fit(&customers, 2, 20, 1e-4);
let new_customer = Matrix::from_vec(vec![30.0, 50_000.0], 1, 2);
let cluster = model.predict(&new_customer)[0];
println!("New customer belongs to cluster: {}", cluster);
println!("Cluster labels: {:?}", labels);
```
For helper functions and upcoming modules, visit the
[utilities](./utilities.md) section.

63
docs/src/utilities.md Normal file
View File

@@ -0,0 +1,63 @@
# Utilities
Utilities provide handy helpers around the core library. Existing tools
include:
- Date utilities for generating calendar sequences and businessday sets
- Random number generators for simulations and testing
## Date Helpers
```rust
# extern crate rustframe;
use rustframe::utils::dateutils::{BDatesList, BDateFreq, DatesList, DateFreq};
// Calendar sequence
let list = DatesList::new("2024-01-01".into(), "2024-01-03".into(), DateFreq::Daily);
assert_eq!(list.count().unwrap(), 3);
// Business days starting from 20240102
let bdates = BDatesList::from_n_periods("2024-01-02".into(), BDateFreq::Daily, 3).unwrap();
assert_eq!(bdates.list().unwrap().len(), 3);
```
## Random Numbers
The `random` module offers deterministic and cryptographically secure RNGs.
```rust
# extern crate rustframe;
use rustframe::random::{Prng, Rng};
let mut rng = Prng::new(42);
let v1 = rng.next_u64();
let v2 = rng.next_u64();
assert_ne!(v1, v2);
```
## Stats Functions
```rust
# extern crate rustframe;
use rustframe::matrix::Matrix;
use rustframe::compute::stats::descriptive::{mean, median, stddev};
let data = Matrix::from_vec(vec![1.0, 2.0, 3.0, 4.0, 5.0], 1, 5);
let mean_value = mean(&data);
assert_eq!(mean_value, 3.0);
let median_value = median(&data);
assert_eq!(median_value, 3.0);
let std_value = stddev(&data);
assert_eq!(std_value, 2.0_f64.sqrt());
```
Upcoming utilities will cover:
- Data import/export helpers
- Visualization adapters
- Streaming data interfaces
Contributions to these sections are welcome!

View File

@@ -3,7 +3,7 @@
//! It demonstrates matrix operations like shifting, counting neighbors, and applying game rules.
//! The game runs in a loop, updating the board state and printing it to the console.
//! To modify the behaviour of the example, please change the constants at the top of this file.
//! By default,
use rustframe::matrix::{BoolMatrix, BoolOps, IntMatrix, Matrix};
use rustframe::random::{rng, Rng};
@@ -21,8 +21,6 @@ fn main() {
let debug_mode = args.contains(&"--debug".to_string());
let print_mode = if debug_mode { false } else { PRINT_BOARD };
// Initialize the game board.
// This demonstrates `BoolMatrix::from_vec`.
let mut current_board =
BoolMatrix::from_vec(vec![false; BOARD_SIZE * BOARD_SIZE], BOARD_SIZE, BOARD_SIZE);
@@ -31,15 +29,11 @@ fn main() {
add_simulated_activity(&mut current_board, BOARD_SIZE);
let mut generation_count: u32 = 0;
// `previous_board_state` will store a clone of the board.
// This demonstrates `Matrix::clone()` and later `PartialEq` for `Matrix`.
let mut previous_board_state: Option<BoolMatrix> = None;
let mut board_hashes = Vec::new();
// let mut print_board_bool = true;
let mut print_bool_int = 0;
loop {
// if print_board_bool {
if print_bool_int % SKIP_FRAMES == 0 {
print_board(&current_board, generation_count, print_mode);
@@ -47,7 +41,6 @@ fn main() {
} else {
print_bool_int += 1;
}
// `current_board.count()` demonstrates a method from `BoolOps`.
board_hashes.push(hash_board(&current_board, primes.clone()));
if detect_stable_state(&current_board, &previous_board_state) {
println!(
@@ -68,10 +61,8 @@ fn main() {
add_simulated_activity(&mut current_board, BOARD_SIZE);
}
// `current_board.clone()` demonstrates `Clone` for `Matrix`.
previous_board_state = Some(current_board.clone());
// This is the core call to your game logic.
let next_board = game_of_life_next_frame(&current_board);
current_board = next_board;
@@ -106,7 +97,6 @@ fn print_board(board: &BoolMatrix, generation_count: u32, print_mode: bool) {
print_str.push_str("| ");
for c in 0..board.cols() {
if board[(r, c)] {
// Using Index trait for Matrix<bool>
print_str.push_str("██");
} else {
print_str.push_str(" ");
@@ -188,74 +178,38 @@ pub fn game_of_life_next_frame(current_game: &BoolMatrix) -> BoolMatrix {
if rows == 0 && cols == 0 {
return BoolMatrix::from_vec(vec![], 0, 0); // Return an empty BoolMatrix
}
// Assuming valid non-empty dimensions (e.g., 25x25) as per typical GOL.
// Your Matrix::from_vec would panic for other invalid 0-dim cases.
// Define the 8 neighbor offsets (row_delta, col_delta)
let neighbor_offsets: [(isize, isize); 8] = [
(-1, -1),
(-1, 0),
(-1, 1), // Top row (NW, N, NE)
(-1, 1),
(0, -1),
(0, 1), // Middle row (W, E)
(0, 1),
(1, -1),
(1, 0),
(1, 1), // Bottom row (SW, S, SE)
(1, 1),
];
// 1. Initialize `neighbor_counts` with the first shifted layer.
// This demonstrates creating an IntMatrix from a function and using it as a base.
let (first_dr, first_dc) = neighbor_offsets[0];
let mut neighbor_counts = get_shifted_neighbor_layer(current_game, first_dr, first_dc);
// 2. Add the remaining 7 neighbor layers.
// This demonstrates element-wise addition of matrices (`Matrix + Matrix`).
for i in 1..neighbor_offsets.len() {
let (dr, dc) = neighbor_offsets[i];
let next_neighbor_layer = get_shifted_neighbor_layer(current_game, dr, dc);
// `neighbor_counts` (owned IntMatrix) + `next_neighbor_layer` (owned IntMatrix)
// uses `impl Add for Matrix`, consumes both, returns new owned `IntMatrix`.
neighbor_counts = neighbor_counts + next_neighbor_layer;
}
// 3. Apply Game of Life rules using element-wise operations.
// Rule: Survival or Birth based on neighbor counts.
// A cell is alive in the next generation if:
// (it's currently alive AND has 2 or 3 neighbors) OR
// (it's currently dead AND has exactly 3 neighbors)
// `neighbor_counts.eq_elem(scalar)`:
// Demonstrates element-wise comparison of a Matrix with a scalar (broadcast).
// Returns an owned `BoolMatrix`.
let has_2_neighbors = neighbor_counts.eq_elem(2);
let has_3_neighbors = neighbor_counts.eq_elem(3); // This will be reused
let has_3_neighbors = neighbor_counts.eq_elem(3);
// `has_2_neighbors | has_3_neighbors`:
// Demonstrates element-wise OR (`Matrix<bool> | Matrix<bool>`).
// Consumes both operands, returns an owned `BoolMatrix`.
let has_2_or_3_neighbors = has_2_neighbors | has_3_neighbors.clone(); // Clone has_3_neighbors as it's used again
let has_2_or_3_neighbors = has_2_neighbors | has_3_neighbors.clone();
// `current_game & &has_2_or_3_neighbors`:
// `current_game` is `&BoolMatrix`. `has_2_or_3_neighbors` is owned.
// Demonstrates element-wise AND (`&Matrix<bool> & &Matrix<bool>`).
// Borrows both operands, returns an owned `BoolMatrix`.
let survives = current_game & &has_2_or_3_neighbors;
// `!current_game`:
// Demonstrates element-wise NOT (`!&Matrix<bool>`).
// Borrows operand, returns an owned `BoolMatrix`.
let is_dead = !current_game;
// `is_dead & &has_3_neighbors`:
// `is_dead` is owned. `has_3_neighbors` is owned.
// Demonstrates element-wise AND (`Matrix<bool> & &Matrix<bool>`).
// Consumes `is_dead`, borrows `has_3_neighbors`, returns an owned `BoolMatrix`.
let births = is_dead & &has_3_neighbors;
// `survives | births`:
// Demonstrates element-wise OR (`Matrix<bool> | Matrix<bool>`).
// Consumes both operands, returns an owned `BoolMatrix`.
let next_frame_game = survives | births;
next_frame_game

View File

@@ -16,7 +16,7 @@ fn student_passing_example() {
// Hours studied for each student
let hours = vec![1.0, 2.0, 3.0, 4.0, 5.0, 6.0, 7.0, 8.0, 9.0];
// 0 = fail, 1 = pass
// Label: 0 denotes failure and 1 denotes success
let passed = vec![0.0, 0.0, 0.0, 0.0, 1.0, 1.0, 1.0, 1.0, 1.0];
let x = Matrix::from_vec(hours.clone(), hours.len(), 1);

View File

@@ -6,9 +6,9 @@ use rustframe::matrix::{Axis, Matrix};
/// Demonstrates some of the statistics utilities in Rustframe.
///
/// The example is split into three parts:
/// 1. Basic descriptive statistics on a small data set.
/// 2. Covariance and correlation calculations.
/// 3. Simple inferential tests (t-test and chi-square).
/// - Basic descriptive statistics on a small data set
/// - Covariance and correlation calculations
/// - Simple inferential tests (t-test and chi-square)
fn main() {
descriptive_demo();
println!("\n-----\n");

View File

@@ -1,3 +1,16 @@
//! Algorithms and statistical utilities built on top of the core matrices.
//!
//! This module groups together machinelearning models and statistical helper
//! functions. For quick access to basic statistics see [`stats`](crate::compute::stats), while
//! [`models`](crate::compute::models) contains small learning algorithms.
//!
//! ```
//! use rustframe::compute::stats;
//! use rustframe::matrix::Matrix;
//!
//! let m = Matrix::from_vec(vec![1.0, 2.0, 3.0], 3, 1);
//! assert_eq!(stats::mean(&m), 2.0);
//! ```
pub mod models;
pub mod stats;

View File

@@ -1,3 +1,15 @@
//! Common activation functions used in neural networks.
//!
//! Functions operate element-wise on [`Matrix`] values.
//!
//! ```
//! use rustframe::compute::models::activations::sigmoid;
//! use rustframe::matrix::Matrix;
//!
//! let x = Matrix::from_vec(vec![0.0], 1, 1);
//! let y = sigmoid(&x);
//! assert!((y.get(0,0) - 0.5).abs() < 1e-6);
//! ```
use crate::matrix::{Matrix, SeriesOps};
pub fn sigmoid(x: &Matrix<f64>) -> Matrix<f64> {

View File

@@ -1,3 +1,30 @@
//! A minimal dense neural network implementation for educational purposes.
//!
//! Layers operate on [`Matrix`] values and support ReLU and Sigmoid
//! activations. This is not meant to be a performant deeplearning framework
//! but rather a small example of how the surrounding matrix utilities can be
//! composed.
//!
//! ```
//! use rustframe::compute::models::dense_nn::{ActivationKind, DenseNN, DenseNNConfig, InitializerKind, LossKind};
//! use rustframe::matrix::Matrix;
//!
//! // Tiny network with one input and one output neuron.
//! let config = DenseNNConfig {
//! input_size: 1,
//! hidden_layers: vec![],
//! output_size: 1,
//! activations: vec![ActivationKind::Relu],
//! initializer: InitializerKind::Uniform(0.5),
//! loss: LossKind::MSE,
//! learning_rate: 0.1,
//! epochs: 1,
//! };
//! let mut nn = DenseNN::new(config);
//! let x = Matrix::from_vec(vec![1.0, 2.0], 2, 1);
//! let y = Matrix::from_vec(vec![2.0, 3.0], 2, 1);
//! nn.train(&x, &y);
//! ```
use crate::compute::models::activations::{drelu, relu, sigmoid};
use crate::matrix::{Matrix, SeriesOps};
use crate::random::prelude::*;

View File

@@ -1,3 +1,16 @@
//! Gaussian Naive Bayes classifier for dense matrices.
//!
//! ```
//! use rustframe::compute::models::gaussian_nb::GaussianNB;
//! use rustframe::matrix::Matrix;
//!
//! let x = Matrix::from_vec(vec![1.0, 2.0, 1.0, 2.0], 2, 2); // two samples
//! let y = Matrix::from_vec(vec![0.0, 1.0], 2, 1);
//! let mut model = GaussianNB::new(1e-9, false);
//! model.fit(&x, &y);
//! let preds = model.predict(&x);
//! assert_eq!(preds.rows(), 2);
//! ```
use crate::matrix::Matrix;
use std::collections::HashMap;

View File

@@ -1,3 +1,14 @@
//! Simple k-means clustering working on [`Matrix`] data.
//!
//! ```
//! use rustframe::compute::models::k_means::KMeans;
//! use rustframe::matrix::Matrix;
//!
//! let data = Matrix::from_vec(vec![1.0, 1.0, 5.0, 5.0], 2, 2);
//! let (model, labels) = KMeans::fit(&data, 2, 10, 1e-4);
//! assert_eq!(model.centroids.rows(), 2);
//! assert_eq!(labels.len(), 2);
//! ```
use crate::compute::stats::mean_vertical;
use crate::matrix::Matrix;
use crate::random::prelude::*;

View File

@@ -1,3 +1,16 @@
//! Ordinary least squares linear regression.
//!
//! ```
//! use rustframe::compute::models::linreg::LinReg;
//! use rustframe::matrix::Matrix;
//!
//! let x = Matrix::from_vec(vec![1.0, 2.0, 3.0, 4.0], 4, 1);
//! let y = Matrix::from_vec(vec![2.0, 3.0, 4.0, 5.0], 4, 1);
//! let mut model = LinReg::new(1);
//! model.fit(&x, &y, 0.01, 100);
//! let preds = model.predict(&x);
//! assert_eq!(preds.rows(), 4);
//! ```
use crate::matrix::{Matrix, SeriesOps};
pub struct LinReg {

View File

@@ -1,3 +1,16 @@
//! Binary logistic regression classifier.
//!
//! ```
//! use rustframe::compute::models::logreg::LogReg;
//! use rustframe::matrix::Matrix;
//!
//! let x = Matrix::from_vec(vec![1.0, 2.0, 3.0, 4.0], 4, 1);
//! let y = Matrix::from_vec(vec![0.0, 0.0, 1.0, 1.0], 4, 1);
//! let mut model = LogReg::new(1);
//! model.fit(&x, &y, 0.1, 100);
//! let preds = model.predict(&x);
//! assert_eq!(preds[(0,0)], 0.0);
//! ```
use crate::compute::models::activations::sigmoid;
use crate::matrix::{Matrix, SeriesOps};

View File

@@ -1,3 +1,19 @@
//! Lightweight machinelearning models built on matrices.
//!
//! Models are intentionally minimal and operate on the [`Matrix`](crate::matrix::Matrix) type for
//! inputs and parameters.
//!
//! ```
//! use rustframe::compute::models::linreg::LinReg;
//! use rustframe::matrix::Matrix;
//!
//! let x = Matrix::from_vec(vec![1.0, 2.0, 3.0, 4.0], 4, 1);
//! let y = Matrix::from_vec(vec![2.0, 3.0, 4.0, 5.0], 4, 1);
//! let mut model = LinReg::new(1);
//! model.fit(&x, &y, 0.01, 1000);
//! let preds = model.predict(&x);
//! assert_eq!(preds.rows(), 4);
//! ```
pub mod activations;
pub mod dense_nn;
pub mod gaussian_nb;

View File

@@ -1,3 +1,14 @@
//! Principal Component Analysis using covariance matrices.
//!
//! ```
//! use rustframe::compute::models::pca::PCA;
//! use rustframe::matrix::Matrix;
//!
//! let data = Matrix::from_rows_vec(vec![1.0, 1.0, 2.0, 2.0], 2, 2);
//! let pca = PCA::fit(&data, 1, 0);
//! let projected = pca.transform(&data);
//! assert_eq!(projected.cols(), 1);
//! ```
use crate::compute::stats::correlation::covariance_matrix;
use crate::compute::stats::descriptive::mean_vertical;
use crate::matrix::{Axis, Matrix, SeriesOps};
@@ -44,11 +55,7 @@ mod tests {
#[test]
fn test_pca_basic() {
// Simple 2D data, points along y=x line
// Data:
// 1.0, 1.0
// 2.0, 2.0
// 3.0, 3.0
// Simple 2D data with points along the y = x line
let data = Matrix::from_rows_vec(vec![1.0, 1.0, 2.0, 2.0, 3.0, 3.0], 3, 2);
let (_n_samples, _n_features) = data.shape();
@@ -71,15 +78,7 @@ mod tests {
assert!((pca.components.get(0, 0) - 1.0).abs() < EPSILON);
assert!((pca.components.get(0, 1) - 1.0).abs() < EPSILON);
// Test transform
// Centered data:
// -1.0, -1.0
// 0.0, 0.0
// 1.0, 1.0
// Projected: (centered_data * components.transpose())
// (-1.0 * 1.0 + -1.0 * 1.0) = -2.0
// ( 0.0 * 1.0 + 0.0 * 1.0) = 0.0
// ( 1.0 * 1.0 + 1.0 * 1.0) = 2.0
// Test transform: centered data projects to [-2.0, 0.0, 2.0]
let transformed_data = pca.transform(&data);
assert_eq!(transformed_data.rows(), 3);
assert_eq!(transformed_data.cols(), 1);

View File

@@ -1,3 +1,16 @@
//! Covariance and correlation helpers.
//!
//! This module provides routines for measuring the relationship between
//! columns or rows of matrices.
//!
//! ```
//! use rustframe::compute::stats::correlation;
//! use rustframe::matrix::Matrix;
//!
//! let x = Matrix::from_vec(vec![1.0, 2.0, 3.0, 4.0], 2, 2);
//! let cov = correlation::covariance(&x, &x);
//! assert!((cov - 1.25).abs() < 1e-8);
//! ```
use crate::compute::stats::{mean, mean_horizontal, mean_vertical, stddev};
use crate::matrix::{Axis, Matrix, SeriesOps};
@@ -137,10 +150,7 @@ mod tests {
#[test]
fn test_covariance_scalar_same_matrix() {
// M =
// 1,2
// 3,4
// mean = 2.5
// Matrix with rows [1, 2] and [3, 4]; mean is 2.5
let data = vec![1.0, 2.0, 3.0, 4.0];
let m = Matrix::from_vec(data.clone(), 2, 2);
@@ -152,10 +162,7 @@ mod tests {
#[test]
fn test_covariance_scalar_diff_matrix() {
// x =
// 1,2
// 3,4
// y = 2*x
// Matrix x has rows [1, 2] and [3, 4]; y is two times x
let x = Matrix::from_vec(vec![1.0, 2.0, 3.0, 4.0], 2, 2);
let y = Matrix::from_vec(vec![2.0, 4.0, 6.0, 8.0], 2, 2);
@@ -167,10 +174,7 @@ mod tests {
#[test]
fn test_covariance_vertical() {
// M =
// 1,2
// 3,4
// cols are [1,3] and [2,4], each var=1, cov=1
// Matrix with rows [1, 2] and [3, 4]; columns are [1,3] and [2,4], each var=1, cov=1
let m = Matrix::from_rows_vec(vec![1.0, 2.0, 3.0, 4.0], 2, 2);
let cov_mat = covariance_vertical(&m);
@@ -184,10 +188,7 @@ mod tests {
#[test]
fn test_covariance_horizontal() {
// M =
// 1,2
// 3,4
// rows are [1,2] and [3,4], each var=0.25, cov=0.25
// Matrix with rows [1,2] and [3,4], each var=0.25, cov=0.25
let m = Matrix::from_rows_vec(vec![1.0, 2.0, 3.0, 4.0], 2, 2);
let cov_mat = covariance_horizontal(&m);
@@ -201,10 +202,7 @@ mod tests {
#[test]
fn test_covariance_matrix_vertical() {
// Test with a simple 2x2 matrix
// M =
// 1, 2
// 3, 4
// Test with a simple 2x2 matrix with rows [1, 2] and [3, 4]
// Expected covariance matrix (vertical, i.e., between columns):
// Col1: [1, 3], mean = 2
// Col2: [2, 4], mean = 3
@@ -212,9 +210,7 @@ mod tests {
// Cov(Col2, Col2) = ((2-3)^2 + (4-3)^2) / (2-1) = (1+1)/1 = 2
// Cov(Col1, Col2) = ((1-2)*(2-3) + (3-2)*(4-3)) / (2-1) = ((-1)*(-1) + (1)*(1))/1 = (1+1)/1 = 2
// Cov(Col2, Col1) = 2
// Expected:
// 2, 2
// 2, 2
// Expected matrix filled with 2
let m = Matrix::from_rows_vec(vec![1.0, 2.0, 3.0, 4.0], 2, 2);
let cov_mat = covariance_matrix(&m, Axis::Col);
@@ -226,10 +222,7 @@ mod tests {
#[test]
fn test_covariance_matrix_horizontal() {
// Test with a simple 2x2 matrix
// M =
// 1, 2
// 3, 4
// Test with a simple 2x2 matrix with rows [1, 2] and [3, 4]
// Expected covariance matrix (horizontal, i.e., between rows):
// Row1: [1, 2], mean = 1.5
// Row2: [3, 4], mean = 3.5
@@ -237,9 +230,7 @@ mod tests {
// Cov(Row2, Row2) = ((3-3.5)^2 + (4-3.5)^2) / (2-1) = (0.25+0.25)/1 = 0.5
// Cov(Row1, Row2) = ((1-1.5)*(3-3.5) + (2-1.5)*(4-3.5)) / (2-1) = ((-0.5)*(-0.5) + (0.5)*(0.5))/1 = (0.25+0.25)/1 = 0.5
// Cov(Row2, Row1) = 0.5
// Expected:
// 0.5, -0.5
// -0.5, 0.5
// Expected matrix: [[0.5, -0.5], [-0.5, 0.5]]
let m = Matrix::from_rows_vec(vec![1.0, 2.0, 3.0, 4.0], 2, 2);
let cov_mat = covariance_matrix(&m, Axis::Row);

View File

@@ -1,3 +1,15 @@
//! Descriptive statistics for matrices.
//!
//! Provides means, variances, medians and other aggregations computed either
//! across the whole matrix or along a specific axis.
//!
//! ```
//! use rustframe::compute::stats::descriptive;
//! use rustframe::matrix::Matrix;
//!
//! let m = Matrix::from_vec(vec![1.0, 2.0, 3.0, 4.0], 2, 2);
//! assert_eq!(descriptive::mean(&m), 2.5);
//! ```
use crate::matrix::{Axis, Matrix, SeriesOps};
pub fn mean(x: &Matrix<f64>) -> f64 {
@@ -350,11 +362,7 @@ mod tests {
let data: Vec<f64> = (1..=24).map(|x| x as f64).collect();
let x = Matrix::from_vec(data, 4, 6);
// columns:
// 1, 5, 9, 13, 17, 21
// 2, 6, 10, 14, 18, 22
// 3, 7, 11, 15, 19, 23
// 4, 8, 12, 16, 20, 24
// columns contain sequences increasing by four starting at 1 through 4
let er0 = vec![1., 5., 9., 13., 17., 21.];
let er50 = vec![3., 7., 11., 15., 19., 23.];

View File

@@ -1,3 +1,16 @@
//! Probability distribution functions applied element-wise to matrices.
//!
//! Includes approximations for the normal, uniform and gamma distributions as
//! well as the error function.
//!
//! ```
//! use rustframe::compute::stats::distributions;
//! use rustframe::matrix::Matrix;
//!
//! let x = Matrix::from_vec(vec![0.0], 1, 1);
//! let pdf = distributions::normal_pdf(x.clone(), 0.0, 1.0);
//! assert!((pdf.get(0,0) - 0.3989).abs() < 1e-3);
//! ```
use crate::matrix::{Matrix, SeriesOps};
use std::f64::consts::PI;

View File

@@ -1,3 +1,14 @@
//! Basic inferential statistics such as ttests and chisquare tests.
//!
//! ```
//! use rustframe::compute::stats::inferential;
//! use rustframe::matrix::Matrix;
//!
//! let a = Matrix::from_vec(vec![1.0, 2.0], 2, 1);
//! let b = Matrix::from_vec(vec![1.1, 1.9], 2, 1);
//! let (t, _p) = inferential::t_test(&a, &b);
//! assert!(t.abs() < 1.0);
//! ```
use crate::matrix::{Matrix, SeriesOps};
use crate::compute::stats::{gamma_cdf, mean, sample_variance};

View File

@@ -1,3 +1,16 @@
//! Statistical routines for matrices.
//!
//! Functions are grouped into submodules for descriptive statistics,
//! correlations, probability distributions and basic inferential tests.
//!
//! ```
//! use rustframe::compute::stats;
//! use rustframe::matrix::Matrix;
//!
//! let m = Matrix::from_vec(vec![1.0, 2.0, 3.0, 4.0], 2, 2);
//! let cov = stats::covariance(&m, &m);
//! assert!((cov - 1.25).abs() < 1e-8);
//! ```
pub mod correlation;
pub mod descriptive;
pub mod distributions;

View File

@@ -1,3 +1,19 @@
//! Core data-frame structures such as [`Frame`] and [`RowIndex`].
//!
//! The [`Frame`] type stores column-labelled data with an optional row index
//! and builds upon the [`crate::matrix::Matrix`] type.
//!
//! # Examples
//!
//! ```
//! use rustframe::frame::{Frame, RowIndex};
//! use rustframe::matrix::Matrix;
//!
//! let data = Matrix::from_cols(vec![vec![1, 2], vec![3, 4]]);
//! let frame = Frame::new(data, vec!["L", "R"], Some(RowIndex::Int(vec![10, 20])));
//! assert_eq!(frame.columns(), &["L", "R"]);
//! assert_eq!(frame.index(), &RowIndex::Int(vec![10, 20]));
//! ```
use crate::matrix::Matrix;
use chrono::NaiveDate;
use std::collections::HashMap;

View File

@@ -1,3 +1,21 @@
//! High-level interface for working with columnar data and row indices.
//!
//! The [`Frame`](crate::frame::Frame) type combines a matrix with column labels and a typed row
//! index, similar to data frames in other data-analysis libraries.
//!
//! # Examples
//!
//! ```
//! use rustframe::frame::{Frame, RowIndex};
//! use rustframe::matrix::Matrix;
//!
//! // Build a frame from two columns labelled "A" and "B".
//! let data = Matrix::from_cols(vec![vec![1.0, 2.0], vec![3.0, 4.0]]);
//! let frame = Frame::new(data, vec!["A", "B"], None);
//!
//! assert_eq!(frame["A"], vec![1.0, 2.0]);
//! assert_eq!(frame.index(), &RowIndex::Range(0..2));
//! ```
pub mod base;
pub mod ops;

View File

@@ -1,3 +1,16 @@
//! Trait implementations that allow [`Frame`] to reuse matrix operations.
//!
//! These modules forward numeric and boolean aggregation methods from the
//! underlying [`Matrix`](crate::matrix::Matrix) type so that they can be called
//! directly on a [`Frame`].
//!
//! ```
//! use rustframe::frame::Frame;
//! use rustframe::matrix::{Matrix, SeriesOps};
//!
//! let frame = Frame::new(Matrix::from_cols(vec![vec![1.0, 2.0]]), vec!["A"], None);
//! assert_eq!(frame.sum_vertical(), vec![3.0]);
//! ```
use crate::frame::Frame;
use crate::matrix::{Axis, BoolMatrix, BoolOps, FloatMatrix, SeriesOps};

View File

@@ -1,3 +1,14 @@
//! Logical reductions for boolean matrices.
//!
//! The [`BoolOps`] trait mirrors common boolean aggregations such as `any` and
//! `all` over rows or columns of a [`BoolMatrix`].
//!
//! ```
//! use rustframe::matrix::{BoolMatrix, BoolOps};
//!
//! let m = BoolMatrix::from_vec(vec![true, false], 2, 1);
//! assert!(m.any());
//! ```
use crate::matrix::{Axis, BoolMatrix};
/// Boolean operations on `Matrix<bool>`

View File

@@ -1028,9 +1028,7 @@ mod tests {
#[test]
fn test_from_rows_vec() {
// Representing:
// 1 2 3
// 4 5 6
// Matrix with rows [1, 2, 3] and [4, 5, 6]
let rows_data = vec![1.0, 2.0, 3.0, 4.0, 5.0, 6.0];
let matrix = Matrix::from_rows_vec(rows_data, 2, 3);
@@ -1042,19 +1040,14 @@ mod tests {
// Helper function to create a basic Matrix for testing
fn static_test_matrix() -> Matrix<i32> {
// Column-major data:
// 1 4 7
// 2 5 8
// 3 6 9
// Column-major data representing a 3x3 matrix of sequential integers
let data = vec![1, 2, 3, 4, 5, 6, 7, 8, 9];
Matrix::from_vec(data, 3, 3)
}
// Another helper for a different size
fn static_test_matrix_2x4() -> Matrix<i32> {
// Column-major data:
// 1 3 5 7
// 2 4 6 8
// Column-major data representing a 2x4 matrix of sequential integers
let data = vec![1, 2, 3, 4, 5, 6, 7, 8];
Matrix::from_vec(data, 2, 4)
}
@@ -1132,10 +1125,7 @@ mod tests {
#[test]
fn test_from_cols_basic() {
// Representing:
// 1 4 7
// 2 5 8
// 3 6 9
// Matrix with columns forming a 3x3 sequence
let cols_data = vec![vec![1, 2, 3], vec![4, 5, 6], vec![7, 8, 9]];
let matrix = Matrix::from_cols(cols_data);
@@ -1512,8 +1502,7 @@ mod tests {
// Delete the first row
matrix.delete_row(0);
// Should be:
// 3 6 9
// Resulting data should be [3, 6, 9]
assert_eq!(matrix.rows(), 1);
assert_eq!(matrix.cols(), 3);
assert_eq!(matrix.data(), &[3, 6, 9]);

View File

@@ -1,3 +1,18 @@
//! Core matrix types and operations.
//!
//! The [`Matrix`](crate::matrix::Matrix) struct provides a simple columnmajor 2D array with a
//! suite of numeric helpers. Additional traits like [`SeriesOps`](crate::matrix::SeriesOps) and
//! [`BoolOps`](crate::matrix::BoolOps) extend functionality for common statistics and logical reductions.
//!
//! # Examples
//!
//! ```
//! use rustframe::matrix::Matrix;
//!
//! let m = Matrix::from_cols(vec![vec![1, 2], vec![3, 4]]);
//! assert_eq!(m.shape(), (2, 2));
//! assert_eq!(m[(0,1)], 3);
//! ```
pub mod boolops;
pub mod mat;
pub mod seriesops;

View File

@@ -1,3 +1,14 @@
//! Numeric reductions and transformations over matrix axes.
//!
//! [`SeriesOps`] provides methods like [`SeriesOps::sum_vertical`] or
//! [`SeriesOps::map`] that operate on [`FloatMatrix`] values.
//!
//! ```
//! use rustframe::matrix::{Matrix, SeriesOps};
//!
//! let m = Matrix::from_cols(vec![vec![1.0, 2.0], vec![3.0, 4.0]]);
//! assert_eq!(m.sum_horizontal(), vec![4.0, 6.0]);
//! ```
use crate::matrix::{Axis, BoolMatrix, FloatMatrix};
/// "Series-like" helpers that work along a single axis.
@@ -215,20 +226,13 @@ mod tests {
// Helper function to create a FloatMatrix for SeriesOps testing
fn create_float_test_matrix() -> FloatMatrix {
// 3x3 matrix (column-major) with some NaNs
// 1.0 4.0 7.0
// 2.0 NaN 8.0
// 3.0 6.0 NaN
// 3x3 column-major matrix containing a few NaN values
let data = vec![1.0, 2.0, 3.0, 4.0, f64::NAN, 6.0, 7.0, 8.0, f64::NAN];
FloatMatrix::from_vec(data, 3, 3)
}
fn create_float_test_matrix_4x4() -> FloatMatrix {
// 4x4 matrix (column-major) with some NaNs
// 1.0 5.0 9.0 13.0
// 2.0 NaN 10.0 NaN
// 3.0 6.0 NaN 14.0
// NaN 7.0 11.0 NaN
// 4x4 column-major matrix with NaNs inserted at positions where index % 5 == 0
// first make array with 16 elements
FloatMatrix::from_vec(
(0..16)

View File

@@ -1,3 +1,13 @@
//! Cryptographically secure random number generator.
//!
//! On Unix systems this reads from `/dev/urandom`; on Windows it uses the
//! system's preferred CNG provider.
//!
//! ```
//! use rustframe::random::{crypto_rng, Rng};
//! let mut rng = crypto_rng();
//! let _v = rng.next_u64();
//! ```
#[cfg(unix)]
use std::{fs::File, io::Read};

View File

@@ -1,3 +1,18 @@
//! Random number generation utilities.
//!
//! Provides both a simple pseudo-random generator [`Prng`](crate::random::Prng) and a
//! cryptographically secure alternative [`CryptoRng`](crate::random::CryptoRng). The
//! [`SliceRandom`](crate::random::SliceRandom) trait offers shuffling of slices using any RNG
//! implementing [`Rng`](crate::random::Rng).
//!
//! ```
//! use rustframe::random::{rng, SliceRandom};
//!
//! let mut rng = rng();
//! let mut data = [1, 2, 3, 4];
//! data.shuffle(&mut rng);
//! assert_eq!(data.len(), 4);
//! ```
pub mod crypto;
pub mod prng;
pub mod random_core;

View File

@@ -1,3 +1,11 @@
//! A tiny XorShift64-based pseudo random number generator.
//!
//! ```
//! use rustframe::random::{rng, Rng};
//! let mut rng = rng();
//! let x = rng.next_u64();
//! assert!(x >= 0);
//! ```
use std::time::{SystemTime, UNIX_EPOCH};
use crate::random::Rng;

View File

@@ -1,3 +1,11 @@
//! Core traits for random number generators and sampling ranges.
//!
//! ```
//! use rustframe::random::{rng, Rng};
//! let mut r = rng();
//! let value: f64 = r.random_range(0.0..1.0);
//! assert!(value >= 0.0 && value < 1.0);
//! ```
use std::f64::consts::PI;
use std::ops::Range;

View File

@@ -1,3 +1,11 @@
//! Extensions for shuffling slices with a random number generator.
//!
//! ```
//! use rustframe::random::{rng, SliceRandom};
//! let mut data = [1, 2, 3];
//! data.shuffle(&mut rng());
//! assert_eq!(data.len(), 3);
//! ```
use crate::random::Rng;
/// Trait for randomizing slices.

View File

@@ -1,3 +1,10 @@
//! Generation and manipulation of calendar date sequences.
//!
//! ```
//! use rustframe::utils::dateutils::dates::{DateFreq, DatesList};
//! let list = DatesList::new("2024-01-01".into(), "2024-01-03".into(), DateFreq::Daily);
//! assert_eq!(list.count().unwrap(), 3);
//! ```
use chrono::{Datelike, Duration, NaiveDate, Weekday};
use std::collections::HashMap;
use std::error::Error;

View File

@@ -1,3 +1,13 @@
//! Generators for sequences of calendar and business dates.
//!
//! See [`dates`] for all-day calendars and [`bdates`] for business-day aware
//! variants.
//!
//! ```
//! use rustframe::utils::dateutils::{DatesList, DateFreq};
//! let list = DatesList::new("2024-01-01".into(), "2024-01-02".into(), DateFreq::Daily);
//! assert_eq!(list.count().unwrap(), 2);
//! ```
pub mod bdates;
pub mod dates;

View File

@@ -1,3 +1,14 @@
//! Assorted helper utilities.
//!
//! Currently this module exposes date generation utilities in [`dateutils`](crate::utils::dateutils),
//! including calendar and business date sequences.
//!
//! ```
//! use rustframe::utils::DatesList;
//! use rustframe::utils::DateFreq;
//! let dates = DatesList::new("2024-01-01".into(), "2024-01-03".into(), DateFreq::Daily);
//! assert_eq!(dates.count().unwrap(), 3);
//! ```
pub mod dateutils;
pub use dateutils::{BDateFreq, BDatesGenerator, BDatesList};