Skip to main content

No project description provided

Project description

DeepStrike Python SDK

Runtime framework built on a Rust kernel. The kernel owns loop control, context compression, governance, signal routing, and memory paging — the SDK owns all I/O (LLM calls, tool execution, disk, long-term memory).

Python is a first-class SDK for the Agent OS native profile: declarative governance and in-kernel signal routing are enabled by default on every run.

Install

pip install deepstrike

Requires Python 3.10+. The Rust kernel is distributed as a pre-built wheel (deepstrike._kernel).

When developing against a local kernel build, rebuild the extension from the repo root:

maturin develop --manifest-path crates/deepstrike-py/Cargo.toml

Quick start

import asyncio
from deepstrike import (
    FileSessionLog,
    InMemorySessionLog,
    LocalExecutionPlane,
    OpenAIProvider,
    RuntimeOptions,
    RuntimeRunner,
    collect_text,
    tool,
)

@tool
async def add(x: int, y: int) -> str:
    """Add two numbers."""
    return str(x + y)

plane = LocalExecutionPlane().register(add)
runner = RuntimeRunner(RuntimeOptions(
    provider=OpenAIProvider(api_key="sk-...", model="gpt-5-mini"),
    session_log=FileSessionLog(".deepstrike/sessions"),
    execution_plane=plane,
    max_tokens=4096,
))

asyncio.run(collect_text(runner.run(
    session_id="math-1",
    goal="What is 17 + 28?",
)))
# => "45"

Recipes — the canonical entry points

Most apps need one of two shapes. Start with the facades; drop to RuntimeRunner for streaming, tools, signals, memory, or governance.

from deepstrike import run_agent, run_fanout

# 1) Single agent — one prompt, one model, the text back.
answer = await run_agent(provider=provider, goal="What is 17 + 28?", tools=[add])

# 2) Parallel fan-out → synthesize over the kernel-gated DAG (safe from a stateless handler).
out = await run_fanout(
    provider=provider,
    tasks=["Summarize the auth module", "Summarize the data layer"],
    synthesize="Combine the findings into one summary.",
)
synthesis = out["synthesis"]

Same-session continuity is explicit via session_id:

await collect_text(runner.run(session_id="chat-1", goal="My name is Ada."))
reply = await collect_text(runner.run(session_id="chat-1", goal="What is my name?"))

Use InMemorySessionLog for process-local sessions or FileSessionLog when replay should survive restarts. wake(session_id) resumes from the event log without inserting a duplicate run_started event.

Streaming:

from deepstrike.providers.stream import TextDelta, ToolCallEvent, DoneEvent

async for event in runner.run(session_id="readme-1", goal="Summarize README.md"):
    if isinstance(event, TextDelta):
        print(event.delta, end="", flush=True)
    elif isinstance(event, ToolCallEvent):
        print(f"\n[→ {event.name}]")
    elif isinstance(event, DoneEvent):
        print(f"\ndone in {event.iterations} turns ({event.status})")

Architecture

┌─────────────────────────────────────────────────────────┐
│  RuntimeRunner (Layer 1.5)                              │
│  LLMProvider · ExecutionPlane · SessionLog · DreamStore │
└───────────────────────────┬─────────────────────────────┘
                            │ step(JSON event) ↔ actions / observations
┌───────────────────────────▼─────────────────────────────┐
│  deepstrike._kernel KernelRuntime                       │
│  P1 Syscall · P2 Sched · P3 MM · Proc · IPC             │
└─────────────────────────────────────────────────────────┘

The runner drives a single loop:

  1. Kernel returns an actioncall_provider, execute_tool, evaluate_milestone, or done.
  2. SDK executes the action (stream LLM, run tools, call milestone verifier).
  3. SDK feeds the result back as a kernel event (provider_result, tool_results, …).
  4. Kernel observations (compression, page-out, spool, signals, …) are drained into SessionLog.

Kernel session events carry an optional category tag (syscall · sched · mm · proc · ipc) for diagnostics and OS snapshot rebuilds.

What Agent OS gives you

The mechanisms above are not internal refactors — they change what you can build without custom runner code:

Kernel-mediated runtime (M0–M4)
Tool calls, spawns, compression, and signals pass through one kernel gate with an explicit lifecycle (Ready / Running / Blocked / Suspended). You implement I/O; the kernel decides when and whether. Node, Python, and Rust share the same decision path, so wake(session_id) and cross-language tooling see consistent behavior.

Longer, sturdier sessions (Layer-1 spool + semantic page-out)
Oversized tool results (> 50 KB) stay in context as a preview plus a .spool/ reference — the model reads the full payload on demand via ordinary file tools. When pressure triggers semantic eviction, the SDK summarizes archived content into DreamStore and satisfies page_in_requested on the way back in. Long tasks survive token pressure instead of failing mid-run.

Safety and governance by default (OS native profile)
Every run loads declarative governance_policy (deny / ask_user / rate-limit / param rules) and in-kernel signal routing (attention_policy, default queue 64). Dangerous tools, external interrupts, and approval flows are policy — not ad-hoc checks in your handlers.

Long-term memory as syscalls (Phase-7)
write_memory and query_memory run outside the main tool loop: kernel validation before DreamStore.commit, search → select_memoriesmemory_retrieval_result on query. Failed writes emit memory_validation_failed for audit; good memory is durable without polluting history.

Multi-agent and multi-signal orchestration
Sub-agents register in the kernel process table (agent_process_changed); parent runs suspend explicitly until sub_agent_completed. Signals get disposition (Interrupt / Queue / Observe / Dropped) in-kernel, so gateways, cron, and heartbeats compose with the main loop instead of racing it.

Observable like an OS log
Spool, page-out, signals, processes, budgets, and memory events land in SessionLog with categories. Rebuild an OS snapshot (page_out_count, spool_count, process_by_agent, memory counters) from one event stream — replay still strips audit events when reconstructing LLM messages.

You need… Use…
Policy before tools run governance_policy (default: allow-all native profile)
External interrupts signal_source + in-kernel attention_policy
Spawn / memory-write quotas resource_quota (set_resource_quota)
Huge tool output Automatic Layer-1 spool; optional custom result_spool
Durable recall across runs DreamStore + semantic page_out via dream_summarizer
Programmatic memory I/O runner.write_memory() / runner.query_memory()
Debug / compliance SessionLog events + OS snapshot helpers

Dynamic workflows

Instead of planning and executing a hard task in one long context window, hand the kernel a declarative DAG and let it spawn a fresh-context sub-agent per node. The kernel owns the control flow (gate · budget · suspend-on-join · resume); your SDK runs the agents. See the top-level overview for the full pattern catalog.

from deepstrike import WorkflowSpec, WorkflowNodeSpec

# One fresh-context verifier per rule (no inherited author context → can't rubber-stamp),
# then a skeptic that reviews their flags. The kernel spawns the 3 verifiers as one gated
# batch, suspends on the join, and runs the skeptic once they complete.
outcome = await runner.run_workflow(WorkflowSpec(nodes=[
    WorkflowNodeSpec(task="Rule: money is integer cents — violated?", role="verify"),
    WorkflowNodeSpec(task="Rule: all errors propagate — violated?",    role="verify"),
    WorkflowNodeSpec(task="Rule: timestamps are UTC — violated?",       role="verify"),
    WorkflowNodeSpec(task="Skeptic: which flags are real violations?",  role="verify", depends_on=[0, 1, 2]),
]))
# => {"completed": ["wf-node0", …], "failed": []}

A node's kind selects the control-flow shape; the same executor drives them all, every spawn passing the syscall gate:

Node kind Behavior
spawn (default) Run the node's agent once
loop (max_iters) Re-run until the agent signals it's done, capped at max_iters
classify (branches) The classifier's result selects one branch; the rest are pruned
tournament (entrants) Generate N entrants, then a pairwise-judge bracket to one winner
reduce (reducer) Tokenless host-compute — a pure function (dedupe_lines / merge_json_arrays / concat / count, or your own via the reducers option) over the node's dependency outputs

0.2.11 capabilities

  • Runtime fan-out — give a node the submit_workflow_nodes_tool and its agent can append nodes to the live DAG mid-run (true loop-until-done; one verifier per claim it discovers). Recorded and replayed on resume_workflow.
  • Quarantine, no escape — set trust="quarantined" on a node that reads untrusted content; it's denied write-capable isolation in-kernel, and any nodes it submits are coerced to quarantined too (no privilege escalation).
  • Structured output — set output_schema on a node; the runner instructs the agent, validates the result against the JSON-Schema subset, and re-runs once with the errors on mismatch. A node that never conforms fails (its dependents starve).
  • Budget as signal — with a max_workflow_nodes / max_concurrent_subagents quota installed, each spawned node's goal carries its remaining headroom so a coordinator can size its fan-out to fit.

Providers

Resource quotas are opt-in and flow through the same replayable kernel event ABI:

from deepstrike import MemoryWriteRateLimit, ResourceQuota

runner = RuntimeRunner(RuntimeOptions(
    # ...
    resource_quota=ResourceQuota(
        max_concurrent_subagents=4,
        max_spawn_depth=2,
        memory_writes_per_window=MemoryWriteRateLimit(max_writes=20, window_ms=60_000),
    ),
))

The top-level package exports the base providers OpenAIProvider, OpenAIResponsesProvider, and AnthropicProvider. Every other backend is a factory function in deepstrike.providers, with a protocol argument where a backend speaks both the OpenAI- and Anthropic-compatible wire:

from deepstrike.providers import deepseek, kimi, minimax

ds = deepseek(api_key="...")                          # OpenAI-compatible wire (default)
dsA = deepseek(api_key="...", protocol="anthropic")   # Anthropic-compatible wire
mm = minimax(api_key="...")                           # MiniMax defaults to the Anthropic wire
Entry Import from Backend
OpenAIProvider / OpenAIResponsesProvider deepstrike OpenAI (and OpenAI-compatible)
AnthropicProvider deepstrike Anthropic Messages API
deepseek · kimi · qwen · glm · minimax · gemini · ollama deepstrike.providers the respective vendor (factory functions)

All providers accept retry_config for exponential backoff and share a CircuitBreaker.

extensions are forwarded to the provider while SDK-owned structural fields remain protected.


Context model (four slots)

The kernel renders context as four LLM API slots — only history is compressed.

Slot Source Role
system_stable system partition Identity, rules — never changes within a run
system_knowledge knowledge partition Preloaded memory, skill defs — low frequency
turns[0] task_state + signals Goal, plan, progress, compression log, runtime signals
turns[1..N] history Conversation transcript
runner = RuntimeRunner(RuntimeOptions(
    initial_memory=["User prefers chartreuse."],  # → Slot 2
    system_prompt="You are a helpful assistant.",  # → Slot 1
    # ...
))
  • memory(query) / knowledge(query) meta-tool results → history (tool results)
  • Inbound signals are routed by the in-kernel attention policy and rendered into Slot 3

Full reference: docs/concepts/context-slots-compression.md


Runtime options

from deepstrike import (
    DEFAULT_NATIVE_GOVERNANCE_POLICY,
    DEFAULT_SANDBOX_POLICY,
    validate_declarative_policy,
    AgentIdentity,
    AgentRunSpec,
)
from deepstrike.runtime import DEFAULT_NATIVE_ATTENTION_POLICY
from deepstrike.governance import GovernancePolicy, GovernancePolicyRule

runner = RuntimeRunner(RuntimeOptions(
    provider=provider,
    session_log=FileSessionLog(".deepstrike/sessions"),
    execution_plane=plane,

    # Scheduler budget
    max_tokens=128_000,
    max_turns=25,
    timeout_ms=60_000,

    # Agent OS native profile (defaults shown)
    governance_policy=DEFAULT_NATIVE_GOVERNANCE_POLICY,
    attention_policy=DEFAULT_NATIVE_ATTENTION_POLICY,  # SignalRouter queue size 64

    # Host I/O
    extensions={"temperature": 0.1},
    skill_dir="./skills",
    knowledge_source=my_ks,
    signal_source=gw,
    dream_store=my_store,
    agent_id="my-agent",
    initial_memory=["..."],

    # Memory paging & compression (SDK-side I/O)
    compression_store=archive_store,
    dream_provider=dream_llm,
    dream_summarizer=my_dream_summarizer,  # semantic page_out → DreamStore

    # Sub-agents & milestones
    run_spec=AgentRunSpec(
        identity=AgentIdentity(agent_id="my-agent", session_id="session-1"),
        role="orchestrator",
        goal="...",  # overridden by run() goal on start_run
    ),
    milestone_contract=my_contract,
    milestone_policy="require_verifier",
    on_milestone_evaluate=my_verifier,
    sub_agent_harness=SubAgentHarnessConfig(eval_provider=eval_provider, max_attempts=3),

    # Governance UX (AskUser path)
    on_permission_request=lambda req: {"approved": True, "responder": "user"},
))
Option Purpose
governance_policy Declarative deny / ask_user / rate-limit / param rules loaded into the kernel before start_run
attention_policy In-kernel signal router queue size (default 64)
on_permission_request Resolves tool_gated + suspended → kernel resume with approved/denied call IDs
compression_store Writes archived messages on compressed observations
dream_summarizer Summarizes page_out { tier_hint: "semantic" } into DreamStore during a run
dream_provider Separate LLM for dream() idle consolidation (falls back to provider)
result_spool Custom large-result spool (default: .spool/ under cwd)

Validate policies before starting a run:

result = validate_declarative_policy(
    gov_policy=DEFAULT_SANDBOX_POLICY,
    attention_policy=DEFAULT_NATIVE_ATTENTION_POLICY,
)
assert result["valid"], result["errors"]

Rebuild an OS diagnostics snapshot from session events:

from deepstrike.runtime.os_snapshot import rebuild_os_snapshot_from_session_events

events = [e.event for e in await session_log.read(session_id)]
snap = rebuild_os_snapshot_from_session_events(events)
# snap["page_out_count"], snap["spool_count"], snap["signals"], …

Large result spool (Layer 1)

When a single tool result exceeds 50 KB, the kernel keeps a short preview in context and emits large_result_spooled. The SDK writes the full payload to .spool/ under the process cwd and logs spool_ref in the session.

LocalExecutionPlane transparently resolves read-tool arguments that point at .spool/ paths:

# Kernel context shows a preview + spool reference.
# LLM calls read_file(path=".spool/abc123…") → full content returned.

No configuration is required. Pass a custom result_spool on RuntimeOptions to change the directory (see tests/test_semantic_page_out_dream.py and spool-related tests).


Tools

from deepstrike import tool, read_file

plane.register(tool(name="search", description="Search.", parameters=schema)(my_fn))
plane.register(read_file)     # built-in: read files (also resolves .spool/ refs)
plane.unregister("search")

Execution planes:

Plane Use case
LocalExecutionPlane In-process tools (default)
FilteredExecutionPlane Capability-filtered sub-agent tools
ProcessSandboxPlane OS subprocess isolation
McpProxyPlane MCP server tools
RemoteVpcPlane Remote execution

Mount capabilities on an active run:

runner.mount_tool(schema)
runner.mount_skill("summarize", "Summarize text")
runner.unmount_capability("tool", "search")

Skills

Set skill_dir — the kernel auto-injects a skill meta-tool, and the LLM loads skills by name on demand.

runner = RuntimeRunner(RuntimeOptions(
    provider=provider,
    session_log=InMemorySessionLog(),
    execution_plane=plane,
    max_tokens=4096,
    skill_dir="./skills",
))
---
name: summarize
description: Summarize text into 2-3 concise bullet points
when_to_use: When you need to condense long text
effort: 1
---
1. Identify the 2-3 most important points
2. Express each as a concise bullet

Knowledge

Implement KnowledgeSource — the kernel injects a knowledge meta-tool. Runtime retrieval results land in history as tool results. Use initial_memory for durable preload into Slot 2.

Before tool execution the kernel may emit page_in_requested; the SDK satisfies it from DreamStore, KnowledgeSource, and a local semantic page-out cache, then feeds page_in back to the kernel.

from deepstrike import KnowledgeSource

class VectorSearch(KnowledgeSource):
    async def init(self) -> None:
        await vector_db.connect()

    async def retrieve(self, query: str, top_k: int = 5) -> list[str]:
        return await vector_db.search(query, top_k)

runner = RuntimeRunner(RuntimeOptions(
    provider=provider,
    session_log=InMemorySessionLog(),
    execution_plane=plane,
    knowledge_source=VectorSearch(),
))

Memory

WorkingMemory (SDK-side scratch pad)

WorkingMemory is an SDK helper — not the kernel working partition. Kernel task state renders into Slot 3 (turns[0]).

from deepstrike import WorkingMemory

mem = WorkingMemory()
mem.set("step", 1)
mem.get("step")  # 1
mem.clear()

DreamStore (long-term memory)

from deepstrike import DreamStore

class MyStore(DreamStore):
    async def load_sessions(self, agent_id): ...
    async def load_memories(self, agent_id): ...
    async def commit(self, agent_id, result, existing): ...
    async def search(self, agent_id, query, top_k): ...
    async def save_session(self, data): ...

runner = RuntimeRunner(RuntimeOptions(
    provider=provider,
    session_log=InMemorySessionLog(),
    execution_plane=plane,
    dream_store=MyStore(),
    agent_id="my-agent",  # enables memory meta-tool + semantic page-out archival
))

Three memory paths:

Path When What happens
In-session memory(query) LLM calls meta-tool DreamStore.search() → history tool result
initial_memory Run start Injected into Slot 2 (system_knowledge)
Semantic page_out Kernel evicts with tier_hint: "semantic" SDK summarizes via dream_summarizer / dream_providerDreamStore.commit()
dream(agent_id) Explicit idle call IdlePipeline batch-consolidates past sessions
import time
from deepstrike.providers.stream import DoneEvent

async for event in runner.dream("my-agent", now_ms=int(time.time() * 1000)):
    if isinstance(event, DoneEvent):
        print(event.dream_result)

Custom semantic summarizer:

async def dream_summarizer(archived, ctx):
    return f"Long-term summary for action={ctx.get('action')}"

runner = RuntimeRunner(RuntimeOptions(
    # ...
    dream_store=MyStore(),
    agent_id="my-agent",
    dream_summarizer=dream_summarizer,
))

Phase-7 memory syscalls (write_memory / query_memory)

await runner.write_memory({
    "metadata": {
        "name": "prefers-small-tests",
        "description": "User prefers focused unit tests",
        "kind": "feedback",
        "created_at": 1,
        "updated_at": 1,
    },
    "content": "User prefers focused unit tests for SDK behavior.",
}, session_id="my-session")

hits = await runner.query_memory({
    "current_context": "Need testing preferences",
    "active_tools": [],
    "already_surfaced": [],
    "top_k": 5,
}, session_id="my-session")

Session events: memory_written, memory_queried, memory_validation_failed, memory_retrieval_result.


Governance

In-kernel declarative policy (preferred)

Every run loads governance_policy into the kernel via load_governance_policy:

from deepstrike import DEFAULT_SANDBOX_POLICY
from deepstrike.governance import GovernancePolicy, GovernancePolicyRule, GovernanceRateLimit

policy = GovernancePolicy(
    rules=[
        GovernancePolicyRule(pattern="read_file", action="allow"),
        GovernancePolicyRule(pattern="write_file", action="ask_user"),
        GovernancePolicyRule(pattern="*", action="deny"),
    ],
    rate_limits=[GovernanceRateLimit(tool="api_call", max_calls=10, window_ms=60_000)],
)

runner = RuntimeRunner(RuntimeOptions(
    provider=provider,
    session_log=InMemorySessionLog(),
    execution_plane=plane,
    governance_policy=policy,
    on_permission_request=lambda req: {"approved": True, "responder": "cli"},
))
  • deny → tool rejected with tool_denied
  • ask_usertool_gated + suspended; resolve via on_permission_request, then kernel resume

Default when omitted: allow-all (DEFAULT_NATIVE_GOVERNANCE_POLICY).

Standalone Governance class

Governance wraps the native governance evaluator for SDK-side use (tests, custom gates). It is not wired automatically into RuntimeRunner — use governance_policy for run-time enforcement.

from deepstrike import Governance

gov = Governance("allow")
gov.add_permission_rule("danger.*", "deny")
gov.block_tool("rm_rf")
gov.evaluate("read_file", '{"path":"x"}')

SDK PermissionManager

PermissionManager is a separate SDK-side permission layer for apps that manage their own approval UX outside the kernel loop.

from deepstrike import PermissionManager, PermissionMode

pm = PermissionManager(PermissionMode.DEFAULT)
pm.grant("fs", "read")
pm.evaluate("fs", "read")

Signals

Inbound signals are routed by the in-kernel attention policy (default queue size 64):

Urgency Typical disposition
critical / high interrupt_now — may yield a new call_provider action
normal / low queue — buffered; no action until dequeued
queue full dropped
from deepstrike import SignalGateway, ScheduledPrompt, RuntimeSignal
from deepstrike.runtime import DEFAULT_NATIVE_ATTENTION_POLICY

gw = SignalGateway()
gw.schedule(ScheduledPrompt(goal="standup", run_at_ms=target_time))
gw.ingest(RuntimeSignal(kind="alert", payload={}, urgency="normal"))

runner = RuntimeRunner(RuntimeOptions(
    provider=provider,
    session_log=InMemorySessionLog(),
    execution_plane=plane,
    signal_source=gw,
    attention_policy=DEFAULT_NATIVE_ATTENTION_POLICY,
))

runner.interrupt()  # cooperative abort → kernel timeout path
gw.destroy()

Each routed signal produces a signal_disposed session event (category: "ipc").


Sub-agents

Spawn isolated child agents through the kernel process table:

from deepstrike import AgentRunSpec, AgentIdentity
from deepstrike.providers.stream import DoneEvent

async for event in runner.spawn_sub_agent(AgentRunSpec(
    identity=AgentIdentity(agent_id="researcher-1", session_id="child-session"),
    role="explore",
    goal="Find three sources on topic X",
    isolation="worktree",
)):
    if isinstance(event, DoneEvent):
        print(event.status)

Requires an active parent run (run() / wake() in progress). The kernel emits agent_process_changed; the default SubAgentOrchestrator runs the child with a filtered execution plane and feeds sub_agent_completed back.


Harness (evaluation framework)

from deepstrike import (
    SinglePassHarness, EvalLoopHarness, HarnessLoop, HarnessRequest,
    SubAgentHarnessConfig, QualityGate,
)

outcome = await SinglePassHarness(runner).run(HarnessRequest(goal="Say hello"))

class ContainsHello(QualityGate):
    async def evaluate(self, request, outcome) -> bool:
        return "hello" in outcome.result.lower()

outcome = await EvalLoopHarness(runner, gate=ContainsHello(), max_attempts=3).run(req)

loop = HarnessLoop(runner, eval_provider=eval_provider, max_attempts=3, skill_dir="./skills")

runner = RuntimeRunner(RuntimeOptions(
    provider=provider,
    session_log=InMemorySessionLog(),
    execution_plane=plane,
    sub_agent_harness=SubAgentHarnessConfig(eval_provider=eval_provider, max_attempts=3),
))
async for event in loop.run_streaming(HarnessRequest(goal="Write a haiku")):
    if event.type == "done":
        print(event.verdict.passed, event.verdict.feedback)

Stream events

Import from deepstrike.providers.stream:

Class Key fields
TextDelta delta
ThinkingDelta delta
ToolCallEvent id, name, arguments
ToolDeltaEvent call_id, name, delta, chunk?
ToolSuspendEvent call_id, name, suspension_id, payload?
ToolResultEvent call_id, content, is_error
PermissionRequestEvent tool_name, reason
DoneEvent iterations, total_tokens, status
ErrorEvent message

status: completed · max_turns · token_budget · timeout · user_abort · error · milestone_pending


Further reading

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

deepstrike-0.2.33.tar.gz (412.8 kB view details)

Uploaded Source

Built Distributions

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

deepstrike-0.2.33-cp310-abi3-win_arm64.whl (1.0 MB view details)

Uploaded CPython 3.10+Windows ARM64

deepstrike-0.2.33-cp310-abi3-win_amd64.whl (1.1 MB view details)

Uploaded CPython 3.10+Windows x86-64

deepstrike-0.2.33-cp310-abi3-musllinux_1_2_x86_64.whl (1.4 MB view details)

Uploaded CPython 3.10+musllinux: musl 1.2+ x86-64

deepstrike-0.2.33-cp310-abi3-musllinux_1_2_aarch64.whl (1.3 MB view details)

Uploaded CPython 3.10+musllinux: musl 1.2+ ARM64

deepstrike-0.2.33-cp310-abi3-manylinux_2_17_x86_64.manylinux2014_x86_64.whl (1.2 MB view details)

Uploaded CPython 3.10+manylinux: glibc 2.17+ x86-64

deepstrike-0.2.33-cp310-abi3-manylinux_2_17_aarch64.manylinux2014_aarch64.whl (1.1 MB view details)

Uploaded CPython 3.10+manylinux: glibc 2.17+ ARM64

deepstrike-0.2.33-cp310-abi3-macosx_11_0_arm64.whl (1.1 MB view details)

Uploaded CPython 3.10+macOS 11.0+ ARM64

deepstrike-0.2.33-cp310-abi3-macosx_10_12_x86_64.whl (1.1 MB view details)

Uploaded CPython 3.10+macOS 10.12+ x86-64

File details

Details for the file deepstrike-0.2.33.tar.gz.

File metadata

  • Download URL: deepstrike-0.2.33.tar.gz
  • Upload date:
  • Size: 412.8 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: twine/6.1.0 CPython/3.13.12

File hashes

Hashes for deepstrike-0.2.33.tar.gz
Algorithm Hash digest
SHA256 32446be12706548a7d1434c582fca6a377df9d757aad5522beae1e3cd2edaf7f
MD5 31e9dd4c18fa26cba8ca01cd8c788a15
BLAKE2b-256 cffbf4cc923d331cbdcf7dd9cedd3cfde2feb13caf17e8b1ef469fa493175fcf

See more details on using hashes here.

Provenance

The following attestation bundles were made for deepstrike-0.2.33.tar.gz:

Publisher: release-python.yml on kongusen/deepstrike

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

File details

Details for the file deepstrike-0.2.33-cp310-abi3-win_arm64.whl.

File metadata

  • Download URL: deepstrike-0.2.33-cp310-abi3-win_arm64.whl
  • Upload date:
  • Size: 1.0 MB
  • Tags: CPython 3.10+, Windows ARM64
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: twine/6.1.0 CPython/3.13.12

File hashes

Hashes for deepstrike-0.2.33-cp310-abi3-win_arm64.whl
Algorithm Hash digest
SHA256 83ccdfbb140ba4b1107333193712e4975804f8fde9f27d808e9ca33062830a4a
MD5 4e1bd167975b6414c72da56778ad3de7
BLAKE2b-256 8c99384fa7c6100e56378a7fd5164222bba61ab89dfda626a1961f8d45bc9e80

See more details on using hashes here.

Provenance

The following attestation bundles were made for deepstrike-0.2.33-cp310-abi3-win_arm64.whl:

Publisher: release-python.yml on kongusen/deepstrike

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

File details

Details for the file deepstrike-0.2.33-cp310-abi3-win_amd64.whl.

File metadata

  • Download URL: deepstrike-0.2.33-cp310-abi3-win_amd64.whl
  • Upload date:
  • Size: 1.1 MB
  • Tags: CPython 3.10+, Windows x86-64
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: twine/6.1.0 CPython/3.13.12

File hashes

Hashes for deepstrike-0.2.33-cp310-abi3-win_amd64.whl
Algorithm Hash digest
SHA256 432e00a138ad91492331513554b8024573dfd411f4db27815d497f2356e11c1b
MD5 f304002bae3b9aa5aee256125d569ebb
BLAKE2b-256 eb92be7b641a8cfcfe59c1c1266f6ac757ef4dca3d9455688abd67df7d27d9d4

See more details on using hashes here.

Provenance

The following attestation bundles were made for deepstrike-0.2.33-cp310-abi3-win_amd64.whl:

Publisher: release-python.yml on kongusen/deepstrike

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

File details

Details for the file deepstrike-0.2.33-cp310-abi3-musllinux_1_2_x86_64.whl.

File metadata

File hashes

Hashes for deepstrike-0.2.33-cp310-abi3-musllinux_1_2_x86_64.whl
Algorithm Hash digest
SHA256 ae571c71093213ca7318ee359a6be35ed2c032fca8125dec983944fc84087aad
MD5 f6e55ac40ca63a666c6b2e36a8977e71
BLAKE2b-256 afed6e708707ef25a042cfb5cb4c0d08932dfff94d54261476b651ee1def468c

See more details on using hashes here.

Provenance

The following attestation bundles were made for deepstrike-0.2.33-cp310-abi3-musllinux_1_2_x86_64.whl:

Publisher: release-python.yml on kongusen/deepstrike

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

File details

Details for the file deepstrike-0.2.33-cp310-abi3-musllinux_1_2_aarch64.whl.

File metadata

File hashes

Hashes for deepstrike-0.2.33-cp310-abi3-musllinux_1_2_aarch64.whl
Algorithm Hash digest
SHA256 62a88a810cc3ddb3bc74a05455ae151fcc92b8c8addc5f658882be6f7434882d
MD5 58d144ac193d35026b94479486aa8406
BLAKE2b-256 37428e07de2f63e8d50d45f16a240d614fe66d00c372a59f4eec345ae5b3381e

See more details on using hashes here.

Provenance

The following attestation bundles were made for deepstrike-0.2.33-cp310-abi3-musllinux_1_2_aarch64.whl:

Publisher: release-python.yml on kongusen/deepstrike

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

File details

Details for the file deepstrike-0.2.33-cp310-abi3-manylinux_2_17_x86_64.manylinux2014_x86_64.whl.

File metadata

File hashes

Hashes for deepstrike-0.2.33-cp310-abi3-manylinux_2_17_x86_64.manylinux2014_x86_64.whl
Algorithm Hash digest
SHA256 18a4b5691aa8691f0e3cca097b6d0ec1297d603c9fff5cb913f32fb07add03f6
MD5 737acbddf5d666656f3ad371d31a173b
BLAKE2b-256 7c9646bc99ec4f1e78d294e26a6fd8463f6d19ff250fb78c5a3b7bf9a5156417

See more details on using hashes here.

Provenance

The following attestation bundles were made for deepstrike-0.2.33-cp310-abi3-manylinux_2_17_x86_64.manylinux2014_x86_64.whl:

Publisher: release-python.yml on kongusen/deepstrike

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

File details

Details for the file deepstrike-0.2.33-cp310-abi3-manylinux_2_17_aarch64.manylinux2014_aarch64.whl.

File metadata

File hashes

Hashes for deepstrike-0.2.33-cp310-abi3-manylinux_2_17_aarch64.manylinux2014_aarch64.whl
Algorithm Hash digest
SHA256 43c99f623f432915a6a5814d2f7bb83ba80dcc0addda34fe6e7f0e112c36a9a2
MD5 bfe2c145d60196ee40a9fcbadb639b1d
BLAKE2b-256 f809db4f11fde2d999a5a44811b2d0e781a831af500a59cffdf1f2ec7e837be8

See more details on using hashes here.

Provenance

The following attestation bundles were made for deepstrike-0.2.33-cp310-abi3-manylinux_2_17_aarch64.manylinux2014_aarch64.whl:

Publisher: release-python.yml on kongusen/deepstrike

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

File details

Details for the file deepstrike-0.2.33-cp310-abi3-macosx_11_0_arm64.whl.

File metadata

File hashes

Hashes for deepstrike-0.2.33-cp310-abi3-macosx_11_0_arm64.whl
Algorithm Hash digest
SHA256 2d39803fb96c3dcc666365901d4a4ed3d749f6301d20a7c1e1ce93a83b437dae
MD5 db2830efbf40f94c64d4f0ea4f545587
BLAKE2b-256 e715d5dbb0a44e91f04ce6a858296f4d1fe1dd10becd3dc08afe3139e0b4a7cf

See more details on using hashes here.

Provenance

The following attestation bundles were made for deepstrike-0.2.33-cp310-abi3-macosx_11_0_arm64.whl:

Publisher: release-python.yml on kongusen/deepstrike

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

File details

Details for the file deepstrike-0.2.33-cp310-abi3-macosx_10_12_x86_64.whl.

File metadata

File hashes

Hashes for deepstrike-0.2.33-cp310-abi3-macosx_10_12_x86_64.whl
Algorithm Hash digest
SHA256 1955fee65c133c6c9b3d4c3b9128fd7dfd05db3759c9a0e0dd553c80c5db137a
MD5 c361ca5bfc2c179cb3d62b907896e7b1
BLAKE2b-256 941fe5fea541e95d8c3cc5d4d40ddff1dd8f73a97336b656377d298a5891685e

See more details on using hashes here.

Provenance

The following attestation bundles were made for deepstrike-0.2.33-cp310-abi3-macosx_10_12_x86_64.whl:

Publisher: release-python.yml on kongusen/deepstrike

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