Skip to main content

Community Version of the B2B Antigravity PySpark Framework. Essential utilities for AWS FinOps and Cloud cost optimization.

Project description

🚀 Antigravity Lite (FinOps & AWS Glue Tools)

AWS Financial Auditor and Smart S3 Manager for PySpark Ecosystems


🛑 The Silent AWS Glue Killer: Spark's Catalyst Optimizer

Have you ever wondered why your massive PySpark cluster just hangs for hours, consuming 100% CPU without writing a single byte of data when processing a Wide Dataframe?

Many Data Engineers blame data skew or bad partitioning, panicking and upscaling AWS Glue Worker instances to expensive G.4X or G.8X tiers. But throwing money at RAM is not the solution. The architectural solution is not buying more RAM; it's isolating the math.

📦 Installation

pip install antigravity-lite

🛠 Included Open-Source Tools

1. Smart S3 Renamer (S3Finalizer - Universal API)

Tired of PySpark polluting your Datalake with part-00000... strings and empty _SUCCESS files? S3Finalizer is a native Boto3 utility that scans raw outputs and renames them sequentially and cleanly without breaking cluster concurrency. It works with Apache Spark, AWS Glue DynamicFrames, and standard S3 files seamlessly.

from antigravity_lite.io.s3_finalizer import S3Finalizer

finalizer = S3Finalizer(bucket_name="my-corporate-datalake")

# Automatically re-sequence and format any outputs natively
finalizer.sequence_files(
    s3_prefix="raw_zone/sales/",
    pattern="ENTERPRISE_REPORT_{seq:04d}.parquet",
    starts_with="",      # Optional: Target specific outputs (e.g. "0000_part")
    ends_with=".parquet",# Optional: Ignore non-parquet files
    contains="part"      # Optional: Filter
)
# Magic Output: ENTERPRISE_REPORT_0001.parquet

2. AWS Glue FinOps Auditor (AgAuditor)

Inject this standalone tool to scan your AWS CloudWatch telemetry and compute exactly how many thousands of dollars you are wasting each month on inflated AWS Worker instances just to keep Spark's Catalyst Optimizer from crashing.

from antigravity_lite.auditor.finops import AgAuditor

# Scan the cluster using CloudWatch and AWS APIs
AgAuditor.run_aws_audit(region="us-east-1", dias_analisis=7)

Console Output: It will accurately map your allocated Workers (G.1X, G.4X) against real compressed JVM Heap usage to reveal your exact financial capital leak.

3. S3 Directory Explorer (AgS3DirectoryLister)

Tired of discovering that AWS S3 is a flat namespace and doesn't have real "folders"? Listing hierarchies in Boto3 using the CommonPrefixes property is frustrating. AgS3DirectoryLister abstracts all the pain of native pagination and returns a clean logical "folder" tree.

from antigravity_lite.io import AgS3DirectoryLister

explorer = AgS3DirectoryLister()
child_folders = explorer.list_folders("s3://your-bucket/datalake/bronze/")

# Imprime un cómodo árbol en tu terminal emulando un `ls`
explorer.print_tree("s3://your-bucket/datalake/bronze/")

# Cuenta archivos exactos en toda la jerarquía
total_parquet = explorer.count_files("s3://your-bucket/datalake/bronze/", suffix=".parquet")
print(f"Total archivos Parquet: {total_parquet}")

4. Multithreaded S3 Smart Copier (AgS3SmartCopier)

Cloning or merging massive Datalakes in S3 using traditional iterative scripts chokes your network and takes all afternoon. Additionally, spinning up a Spark cluster just to "copy data" is a gross waste of AWS billing. AgS3SmartCopier spins up an asynchronous swarm in pure Python ThreadPoolExecutor to transfer thousands of files applying mathematical filters, at a fraction of the time of a conventional Boto3 script.

from antigravity_lite.io import AgS3SmartCopier

copier = AgS3SmartCopier()

# Ultra-fast massive copy without spinning up Spark
copier.copy_path(
    origin_path="s3://data-lake/raw/",
    dest_path="s3://data-lake/historical/",
    starts_with="SALES_2026",
    ends_with=".parquet",    # Filters to ignore hidden trash files
    max_workers=10           # CPU threads fired simultaneously
)

5. Memory Optimizing Chunker (DataFrameChunkerLite)

Does your Spark cluster throw Java Heap Space / OutOfMemoryError when saving Wide DataFrames with dozens of columns? DataFrameChunkerLite intercepts Spark's execution graph, truncating the mathematical lineage using Logarithmic Tree-Reduction methodologies so your cluster survives without scaling your AWS infrastructure.

Important Note: This is the Community Edition and is strictly limited to a maximum of 100 columns. If you run this on a wider dataframe, it will safely reject execution.

from antigravity_lite.core import DataFrameChunkerLite

# 1. Provide the wide dataframe and the primary key
chunker = DataFrameChunkerLite(df_crashing, id_cols=["client_id"], chunk_size=20)

def business_logic(chunk_df, index):
    # This logic now runs isolated and safe from Catalyst OOM
    for c in chunk_df.columns:
        if c != "client_id":
            chunk_df = chunk_df.withColumn(c, chunk_df[c] * 1.5)
    return chunk_df

# 2. Slice and safely process in parallel
results = chunker.process_chunks(business_logic)

# 3. Merges back all the columns automatically using O(log N) Binary Trees
df_final = chunker.join_chunks(results) 

6. Massive Binary Stream Concatenator (AgStreamConcatenator)

Are you trying to concatenate 100 GBs of CSV fragments into a single file but Python crashes with MemoryError using pandas or open().read()? This utility implements high-performance constant memory O(1) piping. It dynamically transfers chunks of bytes directly to the disk (or S3) keeping a hard limit on RAM usage, while intelligently evading redundant CSV headers.

from antigravity_lite.io import AgStreamConcatenator

joiner = AgStreamConcatenator()

# Merging local fragments into a single massive file (Preserves only the header of the first file)
joiner.concat_local(
    input_paths=["chunk1.csv", "chunk2.csv", "chunk3.csv"], 
    output_path="massive_combined.csv",
    has_header=True
)

# Merging massive AWS S3 files natively without downloading them to local disk!
joiner.concat_s3(
    input_s3_uris=["s3://lake/c1.csv", "s3://lake/c2.csv"],
    output_s3_uri="s3://lake/combined.csv",
    has_header=True
)

💎 Commercial Licensing (Antigravity PRO)

The Lite version can tell you you're burning thousands of dollars... Purchasing the Antigravity PRO Enterprise License actually fixes it.

If your AgAuditor report flags an "⚠️ AST/OOM RISK" or your Heap spikes past 85%, you need the DataFrameChunker mathematical engine (Exclusive to the Pro B2B Edition). The enterprise version intercepts Spark's low-level planner and vertically slices the execution plan using Logarithmic Binary Trees (Tree Reduce) to forcibly truncate the AST Lineage. This drops your memory footprint so drastically that you can process half-a-billion operations on tiny G.1X clusters at zero OutOfMemory risk.

💻 Request a Proof-of-Concept or Live Architecture Demo for B2B deployment by connecting via LinkedIn.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

antigravity_lite-0.1.16.tar.gz (20.6 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

antigravity_lite-0.1.16-py3-none-any.whl (18.8 kB view details)

Uploaded Python 3

File details

Details for the file antigravity_lite-0.1.16.tar.gz.

File metadata

  • Download URL: antigravity_lite-0.1.16.tar.gz
  • Upload date:
  • Size: 20.6 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: twine/6.1.0 CPython/3.13.12

File hashes

Hashes for antigravity_lite-0.1.16.tar.gz
Algorithm Hash digest
SHA256 f422eede8277d6df09f0be334db59ed791666d611a6735bf06c599d7bae6bf09
MD5 e3772fd3e0e1161e82c4c4d92ae669b4
BLAKE2b-256 9d3c7241f0059d5011660af63c3ffc14de60764a256e7a590a4b3680406080f1

See more details on using hashes here.

Provenance

The following attestation bundles were made for antigravity_lite-0.1.16.tar.gz:

Publisher: publish-lite.yml on andresvega925/AntigravityFW

Attestations: Values shown here reflect the state when the release was signed and may no longer be current.

File details

Details for the file antigravity_lite-0.1.16-py3-none-any.whl.

File metadata

File hashes

Hashes for antigravity_lite-0.1.16-py3-none-any.whl
Algorithm Hash digest
SHA256 0d138a380c134131d1ac407e40bd08e93d4d9afd1cb2a7f58443bf2f79f65051
MD5 ea9a03161ebd49da02e3375bf3b791f1
BLAKE2b-256 ad15da21958f0988486156488c2bcdad5d163f413dc1bf17aedcf2f3e72badec

See more details on using hashes here.

Provenance

The following attestation bundles were made for antigravity_lite-0.1.16-py3-none-any.whl:

Publisher: publish-lite.yml on andresvega925/AntigravityFW

Attestations: Values shown here reflect the state when the release was signed and may no longer be current.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page